Timeframe
5m
Direction
Long Only
Stoploss
-50.0%
Trailing Stop
No
ROI
0m: 1000.0%
Interface Version
2
Startup Candles
N/A
Indicators
25
freqtrade/freqtrade-strategies
Strategy 003 author@: Gerald Lonlas github@: https://github.com/freqtrade/freqtrade-strategies
import copy
import logging
import pathlib
import rapidjson
import freqtrade.vendor.qtpylib.indicators as qtpylib
import numpy as np
import talib.abstract as ta
from freqtrade.strategy.interface import IStrategy
from freqtrade.strategy import merge_informative_pair, timeframe_to_minutes
from freqtrade.exchange import timeframe_to_prev_date
from pandas import DataFrame, Series, concat
from functools import reduce
import math
from typing import Dict
from freqtrade.persistence import Trade
from datetime import datetime, timedelta
from technical.util import resample_to_interval, resampled_merge
from technical.indicators import zema, VIDYA, ichimoku
import time
log = logging.getLogger(__name__)
# log.setLevel(logging.DEBUG)
try:
import pandas_ta as pta
except ImportError:
log.error(
"IMPORTANT - please install the pandas_ta python module which is needed for this strategy. "
"If you're running Docker, add RUN pip install pandas_ta to your Dockerfile, otherwise run: "
"pip install pandas_ta"
)
else:
log.info("pandas_ta successfully imported")
###########################################################################################################
## NostalgiaForInfinityV8 by iterativ ##
## https://github.com/iterativv/NostalgiaForInfinity ##
## ##
## Strategy for Freqtrade https://github.com/freqtrade/freqtrade ##
## ##
###########################################################################################################
## GENERAL RECOMMENDATIONS ##
## ##
## For optimal performance, suggested to use between 4 and 6 open trades, with unlimited stake. ##
## A pairlist with 40 to 80 pairs. Volume pairlist works well. ##
## Prefer stable coin (USDT, BUSDT etc) pairs, instead of BTC or ETH pairs. ##
## Highly recommended to blacklist leveraged tokens (*BULL, *BEAR, *UP, *DOWN etc). ##
## Ensure that you don't override any variables in you config.json. Especially ##
## the timeframe (must be 5m). ##
## use_sell_signal must set to true (or not set at all). ##
## sell_profit_only must set to false (or not set at all). ##
## ignore_roi_if_buy_signal must set to true (or not set at all). ##
## ##
###########################################################################################################
## HOLD SUPPORT ##
## ##
## -------- SPECIFIC TRADES ---------------------------------------------------------------------------- ##
## In case you want to have SOME of the trades to only be sold when on profit, add a file named ##
## "nfi-hold-trades.json" in the user_data directory ##
## ##
## The contents should be similar to: ##
## ##
## {"trade_ids": [1, 3, 7], "profit_ratio": 0.005} ##
## ##
## Or, for individual profit ratios(Notice the trade ID's as strings: ##
## ##
## {"trade_ids": {"1": 0.001, "3": -0.005, "7": 0.05}} ##
## ##
## NOTE: ##
## * `trade_ids` is a list of integers, the trade ID's, which you can get from the logs or from the ##
## output of the telegram status command. ##
## * Regardless of the defined profit ratio(s), the strategy MUST still produce a SELL signal for the ##
## HOLD support logic to run ##
## * This feature can be completely disabled with the holdSupportEnabled class attribute ##
## ##
## -------- SPECIFIC PAIRS ----------------------------------------------------------------------------- ##
## In case you want to have some pairs to always be on held until a specific profit, using the same ##
## "hold-trades.json" file add something like: ##
## ##
## {"trade_pairs": {"BTC/USDT": 0.001, "ETH/USDT": -0.005}} ##
## ##
## -------- SPECIFIC TRADES AND PAIRS ------------------------------------------------------------------ ##
## It is also valid to include specific trades and pairs on the holds file, for example: ##
## ##
## {"trade_ids": {"1": 0.001}, "trade_pairs": {"BTC/USDT": 0.001}} ##
###########################################################################################################
## DONATIONS ##
## ##
## Absolutely not required. However, will be accepted as a token of appreciation. ##
## ##
## BTC: bc1qvflsvddkmxh7eqhc4jyu5z5k6xcw3ay8jl49sk ##
## ETH (ERC20): 0x83D3cFb8001BDC5d2211cBeBB8cB3461E5f7Ec91 ##
## BEP20/BSC (ETH, BNB, ...): 0x86A0B21a20b39d16424B7c8003E4A7e12d78ABEe ##
## ##
## REFERRAL LINKS ##
## ##
## Binance: https://accounts.binance.com/en/register?ref=37365811 ##
## Kucoin: https://www.kucoin.com/ucenter/signup?rcode=rJTLZ9K ##
## Huobi: https://www.huobi.com/en-us/topic/double-reward/?invite_code=ubpt2223 ##
###########################################################################################################
class NfiNextModded(IStrategy):
INTERFACE_VERSION = 2
# ROI table:
minimal_roi = {
"0": 10,
}
stoploss = -0.50
# Trailing stoploss (not used)
trailing_stop = False
trailing_only_offset_is_reached = True
trailing_stop_positive = 0.01
trailing_stop_positive_offset = 0.03
use_custom_stoploss = False
# Optimal timeframe for the strategy.
timeframe = '5m'
res_timeframe = 'none'
info_timeframe_1h = '1h'
info_timeframe_1d = '1d'
# BTC informative
has_BTC_base_tf = False
has_BTC_info_tf = True
has_BTC_daily_tf = False
# Backtest Age Filter emulation
has_bt_agefilter = False
bt_min_age_days = 3
# Exchange Downtime protection
has_downtime_protection = False
# Do you want to use the hold feature? (with hold-trades.json)
holdSupportEnabled = True
# Coin Metrics
coin_metrics = {}
coin_metrics['top_traded_enabled'] = False
coin_metrics['top_traded_updated'] = False
coin_metrics['top_traded_len'] = 10
coin_metrics['tt_dataframe'] = DataFrame()
coin_metrics['top_grossing_enabled'] = False
coin_metrics['top_grossing_updated'] = False
coin_metrics['top_grossing_len'] = 20
coin_metrics['tg_dataframe'] = DataFrame()
coin_metrics['current_whitelist'] = []
# Run "populate_indicators()" only for new candle.
process_only_new_candles = True
# These values can be overridden in the "ask_strategy" section in the config.
use_sell_signal = True
sell_profit_only = False
ignore_roi_if_buy_signal = True
# Number of candles the strategy requires before producing valid signals
startup_candle_count: int = 480
# Optional order type mapping.
order_types = {
'buy': 'limit',
'sell': 'limit',
'trailing_stop_loss': 'limit',
'stoploss': 'limit',
'stoploss_on_exchange': False,
'stoploss_on_exchange_interval': 60,
'stoploss_on_exchange_limit_ratio': 0.99
}
#############################################################
buy_params = {
#############
# Enable/Disable conditions
"buy_condition_1_enable": True,
"buy_condition_2_enable": True,
"buy_condition_3_enable": True,
"buy_condition_4_enable": True,
"buy_condition_5_enable": True,
"buy_condition_6_enable": True,
"buy_condition_7_enable": True,
"buy_condition_8_enable": True,
"buy_condition_9_enable": True,
"buy_condition_10_enable": True,
"buy_condition_11_enable": True,
"buy_condition_12_enable": True,
"buy_condition_13_enable": True,
"buy_condition_14_enable": True,
"buy_condition_15_enable": True,
"buy_condition_16_enable": True,
"buy_condition_17_enable": True,
"buy_condition_18_enable": True,
"buy_condition_19_enable": True,
"buy_condition_20_enable": True,
"buy_condition_21_enable": True,
"buy_condition_22_enable": True,
"buy_condition_23_enable": True,
"buy_condition_24_enable": True,
"buy_condition_25_enable": True,
"buy_condition_26_enable": True,
"buy_condition_27_enable": True,
"buy_condition_28_enable": True,
"buy_condition_29_enable": True,
"buy_condition_30_enable": True,
"buy_condition_31_enable": True,
"buy_condition_32_enable": True,
"buy_condition_33_enable": True,
"buy_condition_34_enable": True,
"buy_condition_35_enable": False,
"buy_condition_36_enable": False,
"buy_condition_37_enable": True,
"buy_condition_38_enable": True,
"buy_condition_39_enable": True,
"buy_condition_40_enable": True,
"buy_condition_41_enable": True,
"buy_condition_42_enable": True,
"buy_condition_43_enable": True,
"buy_condition_44_enable": True,
"buy_condition_45_enable": True,
"buy_condition_46_enable": True,
"buy_condition_47_enable": True,
"buy_condition_48_enable": True,
#############
}
sell_params = {
#############
# Enable/Disable conditions
"sell_condition_1_enable": True,
"sell_condition_2_enable": True,
"sell_condition_3_enable": True,
"sell_condition_4_enable": True,
"sell_condition_5_enable": True,
"sell_condition_6_enable": True,
"sell_condition_7_enable": True,
"sell_condition_8_enable": True,
#############
}
profit_target_params = {
#############
# Enable/Disable conditions
"profit_target_1_enable": False,
#############
}
#############################################################
buy_protection_params = {
1: {
"ema_fast": False,
"ema_fast_len": "26",
"ema_slow": True,
"ema_slow_len": "12",
"close_above_ema_fast": False,
"close_above_ema_fast_len": "200",
"close_above_ema_slow": False,
"close_above_ema_slow_len": "200",
"sma200_rising": False,
"sma200_rising_val": "28",
"sma200_1h_rising": False,
"sma200_1h_rising_val": "50",
"safe_dips_threshold_0": 0.028,
"safe_dips_threshold_2": 0.3,
"safe_dips_threshold_12": 0.48,
"safe_dips_threshold_144": 0.9,
"safe_pump": False,
"safe_pump_type": "70",
"safe_pump_period": "24",
"btc_1h_not_downtrend": False,
"close_over_pivot_type": "none", # pivot, sup1, sup2, sup3, res1, res2, res3
"close_over_pivot_offset": 1.0,
"close_under_pivot_type": "none", # pivot, sup1, sup2, sup3, res1, res2, res3
"close_under_pivot_offset": 1.0
},
2: {
"ema_fast": True,
"ema_fast_len": "50",
"ema_slow": True,
"ema_slow_len": "20",
"close_above_ema_fast": False,
"close_above_ema_fast_len": "200",
"close_above_ema_slow": False,
"close_above_ema_slow_len": "200",
"sma200_rising": False,
"sma200_rising_val": "50",
"sma200_1h_rising": True,
"sma200_1h_rising_val": "48",
"safe_dips_threshold_0": 0.028,
"safe_dips_threshold_2": 0.3,
"safe_dips_threshold_12": 0.48,
"safe_dips_threshold_144": 0.9,
"safe_pump": False,
"safe_pump_type": "20",
"safe_pump_period": "24",
"btc_1h_not_downtrend": False,
"close_over_pivot_type": "none", # pivot, sup1, sup2, sup3, res1, res2, res3
"close_over_pivot_offset": 1.0,
"close_under_pivot_type": "res3", # pivot, sup1, sup2, sup3, res1, res2, res3
"close_under_pivot_offset": 1.4
},
3: {
"ema_fast": False,
"ema_fast_len": "100",
"ema_slow": False,
"ema_slow_len": "100",
"close_above_ema_fast": False,
"close_above_ema_fast_len": "200",
"close_above_ema_slow": False,
"close_above_ema_slow_len": "200",
"sma200_rising": False,
"sma200_rising_val": "30",
"sma200_1h_rising": False,
"sma200_1h_rising_val": "36",
"safe_dips_threshold_0": None,
"safe_dips_threshold_2": None,
"safe_dips_threshold_12": None,
"safe_dips_threshold_144": None,
"safe_pump": True,
"safe_pump_type": "110",
"safe_pump_period": "36",
"btc_1h_not_downtrend": False,
"close_over_pivot_type": "none", # pivot, sup1, sup2, sup3, res1, res2, res3
"close_over_pivot_offset": 1.0,
"close_under_pivot_type": "none", # pivot, sup1, sup2, sup3, res1, res2, res3
"close_under_pivot_offset": 1.0
},
4: {
"ema_fast": True,
"ema_fast_len": "50",
"ema_slow": True,
"ema_slow_len": "12",
"close_above_ema_fast": False,
"close_above_ema_fast_len": "200",
"close_above_ema_slow": False,
"close_above_ema_slow_len": "200",
"sma200_rising": False,
"sma200_rising_val": "50",
"sma200_1h_rising": False,
"sma200_1h_rising_val": "20",
"safe_dips_threshold_0": 0.028,
"safe_dips_threshold_2": 0.3,
"safe_dips_threshold_12": 0.48,
"safe_dips_threshold_144": 0.9,
"safe_pump": False,
"safe_pump_type": "110",
"safe_pump_period": "48",
"btc_1h_not_downtrend": False,
"close_over_pivot_type": "none", # pivot, sup1, sup2, sup3, res1, res2, res3
"close_over_pivot_offset": 1.0,
"close_under_pivot_type": "none", # pivot, sup1, sup2, sup3, res1, res2, res3
"close_under_pivot_offset": 1.0
},
5: {
"ema_fast": False,
"ema_fast_len": "100",
"ema_slow": False,
"ema_slow_len": "50",
"close_above_ema_fast": False,
"close_above_ema_fast_len": "100",
"close_above_ema_slow": False,
"close_above_ema_slow_len": "200",
"sma200_rising": False,
"sma200_rising_val": "50",
"sma200_1h_rising": False,
"sma200_1h_rising_val": "50",
"safe_dips_threshold_0": 0.028,
"safe_dips_threshold_2": 0.3,
"safe_dips_threshold_12": 0.48,
"safe_dips_threshold_144": 0.9,
"safe_pump": True,
"safe_pump_type": "120",
"safe_pump_period": "36",
"btc_1h_not_downtrend": False,
"close_over_pivot_type": "none", # pivot, sup1, sup2, sup3, res1, res2, res3
"close_over_pivot_offset": 1.0,
"close_under_pivot_type": "none", # pivot, sup1, sup2, sup3, res1, res2, res3
"close_under_pivot_offset": 1.0
},
6: {
"ema_fast": False,
"ema_fast_len": "50",
"ema_slow": True,
"ema_slow_len": "100",
"close_above_ema_fast": False,
"close_above_ema_fast_len": "200",
"close_above_ema_slow": False,
"close_above_ema_slow_len": "200",
"sma200_rising": False,
"sma200_rising_val": "50",
"sma200_1h_rising": False,
"sma200_1h_rising_val": "50",
"safe_dips_threshold_0": 0.028,
"safe_dips_threshold_2": 0.3,
"safe_dips_threshold_12": 0.48,
"safe_dips_threshold_144": 0.9,
"safe_pump": True,
"safe_pump_type": "120",
"safe_pump_period": "36",
"btc_1h_not_downtrend": False,
"close_over_pivot_type": "none", # pivot, sup1, sup2, sup3, res1, res2, res3
"close_over_pivot_offset": 1.0,
"close_under_pivot_type": "none", # pivot, sup1, sup2, sup3, res1, res2, res3
"close_under_pivot_offset": 1.0
},
7: {
"ema_fast": True,
"ema_fast_len": "100",
"ema_slow": True,
"ema_slow_len": "12",
"close_above_ema_fast": False,
"close_above_ema_fast_len": "200",
"close_above_ema_slow": False,
"close_above_ema_slow_len": "200",
"sma200_rising": False,
"sma200_rising_val": "50",
"sma200_1h_rising": False,
"sma200_1h_rising_val": "50",
"safe_dips_threshold_0": 0.028,
"safe_dips_threshold_2": 0.3,
"safe_dips_threshold_12": 0.48,
"safe_dips_threshold_144": 0.9,
"safe_pump": True,
"safe_pump_type": "80",
"safe_pump_period": "24",
"btc_1h_not_downtrend": False,
"close_over_pivot_type": "none", # pivot, sup1, sup2, sup3, res1, res2, res3
"close_over_pivot_offset": 1.0,
"close_under_pivot_type": "none", # pivot, sup1, sup2, sup3, res1, res2, res3
"close_under_pivot_offset": 1.0
},
8: {
"ema_fast": True,
"ema_fast_len": "12",
"ema_slow": True,
"ema_slow_len": "12",
"close_above_ema_fast": True,
"close_above_ema_fast_len": "200",
"close_above_ema_slow": False,
"close_above_ema_slow_len": "200",
"sma200_rising": False,
"sma200_rising_val": "36",
"sma200_1h_rising": True,
"sma200_1h_rising_val": "20",
"safe_dips_threshold_0": 0.016,
"safe_dips_threshold_2": 0.11,
"safe_dips_threshold_12": 0.26,
"safe_dips_threshold_144": 0.44,
"safe_pump": True,
"safe_pump_type": "120",
"safe_pump_period": "24",
"btc_1h_not_downtrend": False,
"close_over_pivot_type": "none", # pivot, sup1, sup2, sup3, res1, res2, res3
"close_over_pivot_offset": 1.0,
"close_under_pivot_type": "res3", # pivot, sup1, sup2, sup3, res1, res2, res3
"close_under_pivot_offset": 1.05
},
9: {
"ema_fast": True,
"ema_fast_len": "100",
"ema_slow": False,
"ema_slow_len": "50",
"close_above_ema_fast": False,
"close_above_ema_fast_len": "200",
"close_above_ema_slow": False,
"close_above_ema_slow_len": "200",
"sma200_rising": False,
"sma200_rising_val": "50",
"sma200_1h_rising": False,
"sma200_1h_rising_val": "50",
"safe_dips_threshold_0": None,
"safe_dips_threshold_2": None,
"safe_dips_threshold_12": None,
"safe_dips_threshold_144": None,
"safe_pump": False,
"safe_pump_type": "100",
"safe_pump_period": "24",
"btc_1h_not_downtrend": False,
"close_over_pivot_type": "none", # pivot, sup1, sup2, sup3, res1, res2, res3
"close_over_pivot_offset": 1.0,
"close_under_pivot_type": "res3", # pivot, sup1, sup2, sup3, res1, res2, res3
"close_under_pivot_offset": 1.1
},
10: {
"ema_fast": True,
"ema_fast_len": "35",
"ema_slow": True,
"ema_slow_len": "12",
"close_above_ema_fast": False,
"close_above_ema_fast_len": "200",
"close_above_ema_slow": False,
"close_above_ema_slow_len": "200",
"sma200_rising": False,
"sma200_rising_val": "50",
"sma200_1h_rising": False,
"sma200_1h_rising_val": "24",
"safe_dips_threshold_0": 0.016,
"safe_dips_threshold_2": 0.11,
"safe_dips_threshold_12": 0.26,
"safe_dips_threshold_144": 0.44,
"safe_pump": True,
"safe_pump_type": "120",
"safe_pump_period": "24",
"btc_1h_not_downtrend": False,
"close_over_pivot_type": "none", # pivot, sup1, sup2, sup3, res1, res2, res3
"close_over_pivot_offset": 1.0,
"close_under_pivot_type": "res3", # pivot, sup1, sup2, sup3, res1, res2, res3
"close_under_pivot_offset": 1.6
},
11: {
"ema_fast": False,
"ema_fast_len": "50",
"ema_slow": True,
"ema_slow_len": "20",
"close_above_ema_fast": False,
"close_above_ema_fast_len": "200",
"close_above_ema_slow": False,
"close_above_ema_slow_len": "200",
"sma200_rising": False,
"sma200_rising_val": "24",
"sma200_1h_rising": True,
"sma200_1h_rising_val": "36",
"safe_dips_threshold_0": 0.022,
"safe_dips_threshold_2": 0.18,
"safe_dips_threshold_12": 0.34,
"safe_dips_threshold_144": 0.56,
"safe_pump": False,
"safe_pump_type": "120",
"safe_pump_period": "36",
"btc_1h_not_downtrend": False,
"close_over_pivot_type": "none", # pivot, sup1, sup2, sup3, res1, res2, res3
"close_over_pivot_offset": 1.0,
"close_under_pivot_type": "none", # pivot, sup1, sup2, sup3, res1, res2, res3
"close_under_pivot_offset": 1.0
},
12: {
"ema_fast": False,
"ema_fast_len": "50",
"ema_slow": False,
"ema_slow_len": "50",
"close_above_ema_fast": False,
"close_above_ema_fast_len": "200",
"close_above_ema_slow": False,
"close_above_ema_slow_len": "200",
"sma200_rising": False,
"sma200_rising_val": "50",
"sma200_1h_rising": True,
"sma200_1h_rising_val": "24",
"safe_dips_threshold_0": 0.028,
"safe_dips_threshold_2": 0.3,
"safe_dips_threshold_12": 0.48,
"safe_dips_threshold_144": 0.9,
"safe_pump": True,
"safe_pump_type": "120",
"safe_pump_period": "24",
"btc_1h_not_downtrend": False,
"close_over_pivot_type": "none", # pivot, sup1, sup2, sup3, res1, res2, res3
"close_over_pivot_offset": 1.0,
"close_under_pivot_type": "res3", # pivot, sup1, sup2, sup3, res1, res2, res3
"close_under_pivot_offset": 1.3
},
13: {
"ema_fast": False,
"ema_fast_len": "50",
"ema_slow": False,
"ema_slow_len": "50",
"close_above_ema_fast": False,
"close_above_ema_fast_len": "200",
"close_above_ema_slow": False,
"close_above_ema_slow_len": "200",
"sma200_rising": False,
"sma200_rising_val": "50",
"sma200_1h_rising": True,
"sma200_1h_rising_val": "24",
"safe_dips_threshold_0": 0.028,
"safe_dips_threshold_2": 0.3,
"safe_dips_threshold_12": 0.48,
"safe_dips_threshold_144": 0.9,
"safe_pump": False,
"safe_pump_type": "50",
"safe_pump_period": "24",
"btc_1h_not_downtrend": False,
"close_over_pivot_type": "none", # pivot, sup1, sup2, sup3, res1, res2, res3
"close_over_pivot_offset": 1.0,
"close_under_pivot_type": "none", # pivot, sup1, sup2, sup3, res1, res2, res3
"close_under_pivot_offset": 1.0
},
14: {
"ema_fast": False,
"ema_fast_len": "50",
"ema_slow": False,
"ema_slow_len": "50",
"close_above_ema_fast": False,
"close_above_ema_fast_len": "200",
"close_above_ema_slow": False,
"close_above_ema_slow_len": "200",
"sma200_rising": True,
"sma200_rising_val": "30",
"sma200_1h_rising": True,
"sma200_1h_rising_val": "50",
"safe_dips_threshold_0": 0.028,
"safe_dips_threshold_2": 0.3,
"safe_dips_threshold_12": 0.48,
"safe_dips_threshold_144": 0.9,
"safe_pump": False,
"safe_pump_type": "100",
"safe_pump_period": "24",
"btc_1h_not_downtrend": False,
"close_over_pivot_type": "none", # pivot, sup1, sup2, sup3, res1, res2, res3
"close_over_pivot_offset": 1.0,
"close_under_pivot_type": "none", # pivot, sup1, sup2, sup3, res1, res2, res3
"close_under_pivot_offset": 1.5
},
15: {
"ema_fast": False,
"ema_fast_len": "50",
"ema_slow": True,
"ema_slow_len": "50",
"close_above_ema_fast": False,
"close_above_ema_fast_len": "200",
"close_above_ema_slow": False,
"close_above_ema_slow_len": "200",
"sma200_rising": False,
"sma200_rising_val": "50",
"sma200_1h_rising": False,
"sma200_1h_rising_val": "50",
"safe_dips_threshold_0": 0.028,
"safe_dips_threshold_2": 0.3,
"safe_dips_threshold_12": 0.48,
"safe_dips_threshold_144": 0.9,
"safe_pump": True,
"safe_pump_type": "80",
"safe_pump_period": "36",
"btc_1h_not_downtrend": False,
"close_over_pivot_type": "none", # pivot, sup1, sup2, sup3, res1, res2, res3
"close_over_pivot_offset": 1.0,
"close_under_pivot_type": "none", # pivot, sup1, sup2, sup3, res1, res2, res3
"close_under_pivot_offset": 1.0
},
16: {
"ema_fast": False,
"ema_fast_len": "50",
"ema_slow": True,
"ema_slow_len": "50",
"close_above_ema_fast": False,
"close_above_ema_fast_len": "200",
"close_above_ema_slow": False,
"close_above_ema_slow_len": "50",
"sma200_rising": False,
"sma200_rising_val": "50",
"sma200_1h_rising": False,
"sma200_1h_rising_val": "50",
"safe_dips_threshold_0": 0.027,
"safe_dips_threshold_2": 0.26,
"safe_dips_threshold_12": 0.44,
"safe_dips_threshold_144": 0.84,
"safe_pump": True,
"safe_pump_type": "120",
"safe_pump_period": "24",
"btc_1h_not_downtrend": False,
"close_over_pivot_type": "none", # pivot, sup1, sup2, sup3, res1, res2, res3
"close_over_pivot_offset": 1.0,
"close_under_pivot_type": "none", # pivot, sup1, sup2, sup3, res1, res2, res3
"close_under_pivot_offset": 1.0
},
17: {
"ema_fast": False,
"ema_fast_len": "50",
"ema_slow": False,
"ema_slow_len": "50",
"close_above_ema_fast": False,
"close_above_ema_fast_len": "200",
"close_above_ema_slow": False,
"close_above_ema_slow_len": "200",
"sma200_rising": False,
"sma200_rising_val": "50",
"sma200_1h_rising": False,
"sma200_1h_rising_val": "50",
"safe_dips_threshold_0": 0.028,
"safe_dips_threshold_2": 0.3,
"safe_dips_threshold_12": 0.48,
"safe_dips_threshold_144": 0.9,
"safe_pump": False,
"safe_pump_type": "120",
"safe_pump_period": "24",
"btc_1h_not_downtrend": False,
"close_over_pivot_type": "none", # pivot, sup1, sup2, sup3, res1, res2, res3
"close_over_pivot_offset": 1.0,
"close_under_pivot_type": "none", # pivot, sup1, sup2, sup3, res1, res2, res3
"close_under_pivot_offset": 1.0
},
18: {
"ema_fast": True,
"ema_fast_len": "100",
"ema_slow": True,
"ema_slow_len": "50",
"close_above_ema_fast": False,
"close_above_ema_fast_len": "200",
"close_above_ema_slow": True,
"close_above_ema_slow_len": "200",
"sma200_rising": True,
"sma200_rising_val": "44",
"sma200_1h_rising": True,
"sma200_1h_rising_val": "72",
"safe_dips_threshold_0": 0.026,
"safe_dips_threshold_2": 0.24,
"safe_dips_threshold_12": 0.42,
"safe_dips_threshold_144": 0.8,
"safe_pump": True,
"safe_pump_type": "120",
"safe_pump_period": "24",
"btc_1h_not_downtrend": False,
"close_over_pivot_type": "none", # pivot, sup1, sup2, sup3, res1, res2, res3
"close_over_pivot_offset": 1.0,
"close_under_pivot_type": "none", # pivot, sup1, sup2, sup3, res1, res2, res3
"close_under_pivot_offset": 1.0
},
19: {
"ema_fast": True,
"ema_fast_len": "50",
"ema_slow": True,
"ema_slow_len": "100",
"close_above_ema_fast": False,
"close_above_ema_fast_len": "200",
"close_above_ema_slow": False,
"close_above_ema_slow_len": "200",
"sma200_rising": False,
"sma200_rising_val": "36",
"sma200_1h_rising": False,
"sma200_1h_rising_val": "36",
"safe_dips_threshold_0": 0.028,
"safe_dips_threshold_2": 0.3,
"safe_dips_threshold_12": 0.48,
"safe_dips_threshold_144": 0.9,
"safe_pump": False,
"safe_pump_type": "50",
"safe_pump_period": "24",
"btc_1h_not_downtrend": True,
"close_over_pivot_type": "none", # pivot, sup1, sup2, sup3, res1, res2, res3
"close_over_pivot_offset": 1.0,
"close_under_pivot_type": "none", # pivot, sup1, sup2, sup3, res1, res2, res3
"close_under_pivot_offset": 1.0
},
20: {
"ema_fast": False,
"ema_fast_len": "50",
"ema_slow": True,
"ema_slow_len": "50",
"close_above_ema_fast": False,
"close_above_ema_fast_len": "200",
"close_above_ema_slow": False,
"close_above_ema_slow_len": "200",
"sma200_rising": False,
"sma200_rising_val": "50",
"sma200_1h_rising": False,
"sma200_1h_rising_val": "50",
"safe_dips_threshold_0": None,
"safe_dips_threshold_2": None,
"safe_dips_threshold_12": None,
"safe_dips_threshold_144": None,
"safe_pump": False,
"safe_pump_type": "50",
"safe_pump_period": "24",
"btc_1h_not_downtrend": False,
"close_over_pivot_type": "none", # pivot, sup1, sup2, sup3, res1, res2, res3
"close_over_pivot_offset": 1.0,
"close_under_pivot_type": "none", # pivot, sup1, sup2, sup3, res1, res2, res3
"close_under_pivot_offset": 1.0
},
21: {
"ema_fast": False,
"ema_fast_len": "50",
"ema_slow": True,
"ema_slow_len": "50",
"close_above_ema_fast": False,
"close_above_ema_fast_len": "200",
"close_above_ema_slow": False,
"close_above_ema_slow_len": "200",
"sma200_rising": False,
"sma200_rising_val": "50",
"sma200_1h_rising": False,
"sma200_1h_rising_val": "50",
"safe_dips_threshold_0": 0.025,
"safe_dips_threshold_2": 0.23,
"safe_dips_threshold_12": 0.4,
"safe_dips_threshold_144": 0.7,
"safe_pump": False,
"safe_pump_type": "50",
"safe_pump_period": "24",
"btc_1h_not_downtrend": False,
"close_over_pivot_type": "none", # pivot, sup1, sup2, sup3, res1, res2, res3
"close_over_pivot_offset": 1.0,
"close_under_pivot_type": "none", # pivot, sup1, sup2, sup3, res1, res2, res3
"close_under_pivot_offset": 1.0
},
22: {
"ema_fast": False,
"ema_fast_len": "50",
"ema_slow": False,
"ema_slow_len": "50",
"close_above_ema_fast": False,
"close_above_ema_fast_len": "200",
"close_above_ema_slow": False,
"close_above_ema_slow_len": "200",
"sma200_rising": False,
"sma200_rising_val": "50",
"sma200_1h_rising": False,
"sma200_1h_rising_val": "50",
"safe_dips_threshold_0": 0.028,
"safe_dips_threshold_2": 0.3,
"safe_dips_threshold_12": 0.48,
"safe_dips_threshold_144": 0.9,
"safe_pump": True,
"safe_pump_type": "110",
"safe_pump_period": "24",
"btc_1h_not_downtrend": False,
"close_over_pivot_type": "none", # pivot, sup1, sup2, sup3, res1, res2, res3
"close_over_pivot_offset": 1.0,
"close_under_pivot_type": "res3", # pivot, sup1, sup2, sup3, res1, res2, res3
"close_under_pivot_offset": 1.6
},
23: {
"ema_fast": False,
"ema_fast_len": "50",
"ema_slow": True,
"ema_slow_len": "15",
"close_above_ema_fast": False,
"close_above_ema_fast_len": "200",
"close_above_ema_slow": False,
"close_above_ema_slow_len": "200",
"sma200_rising": True,
"sma200_rising_val": "24",
"sma200_1h_rising": False,
"sma200_1h_rising_val": "50",
"safe_dips_threshold_0": 0.022,
"safe_dips_threshold_2": 0.1,
"safe_dips_threshold_12": 0.3,
"safe_dips_threshold_144": 0.84,
"safe_pump": True,
"safe_pump_type": "100",
"safe_pump_period": "24",
"btc_1h_not_downtrend": False,
"close_over_pivot_type": "none", # pivot, sup1, sup2, sup3, res1, res2, res3
"close_over_pivot_offset": 1.0,
"close_under_pivot_type": "none", # pivot, sup1, sup2, sup3, res1, res2, res3
"close_under_pivot_offset": 1.0
},
24: {
"ema_fast": False,
"ema_fast_len": "50",
"ema_slow": False,
"ema_slow_len": "50",
"close_above_ema_fast": False,
"close_above_ema_fast_len": "200",
"close_above_ema_slow": False,
"close_above_ema_slow_len": "200",
"sma200_rising": False,
"sma200_rising_val": "30",
"sma200_1h_rising": True,
"sma200_1h_rising_val": "36",
"safe_dips_threshold_0": 0.016,
"safe_dips_threshold_2": 0.11,
"safe_dips_threshold_12": 0.26,
"safe_dips_threshold_144": 0.44,
"safe_pump": False,
"safe_pump_type": "10",
"safe_pump_period": "24",
"btc_1h_not_downtrend": False,
"close_over_pivot_type": "none", # pivot, sup1, sup2, sup3, res1, res2, res3
"close_over_pivot_offset": 1.0,
"close_under_pivot_type": "none", # pivot, sup1, sup2, sup3, res1, res2, res3
"close_under_pivot_offset": 1.0
},
25: {
"ema_fast": False,
"ema_fast_len": "50",
"ema_slow": False,
"ema_slow_len": "100",
"close_above_ema_fast": False,
"close_above_ema_fast_len": "50",
"close_above_ema_slow": False,
"close_above_ema_slow_len": "200",
"sma200_rising": False,
"sma200_rising_val": "20",
"sma200_1h_rising": True,
"sma200_1h_rising_val": "36",
"safe_dips_threshold_0": 0.024,
"safe_dips_threshold_2": 0.22,
"safe_dips_threshold_12": 0.38,
"safe_dips_threshold_144": 0.66,
"safe_pump": True,
"safe_pump_type": "120",
"safe_pump_period": "24",
"btc_1h_not_downtrend": False,
"close_over_pivot_type": "pivot", # pivot, sup1, sup2, sup3, res1, res2, res3
"close_over_pivot_offset": 0.98,
"close_under_pivot_type": "res3", # pivot, sup1, sup2, sup3, res1, res2, res3
"close_under_pivot_offset": 1.4
},
26: {
"ema_fast": False,
"ema_fast_len": "100",
"ema_slow": True,
"ema_slow_len": "12",
"close_above_ema_fast": False,
"close_above_ema_fast_len": "200",
"close_above_ema_slow": False,
"close_above_ema_slow_len": "200",
"sma200_rising": False,
"sma200_rising_val": "30",
"sma200_1h_rising": False,
"sma200_1h_rising_val": "50",
"safe_dips_threshold_0": 0.016,
"safe_dips_threshold_2": 0.1,
"safe_dips_threshold_12": 0.11,
"safe_dips_threshold_144": 0.22,
"safe_pump": True,
"safe_pump_type": "100",
"safe_pump_period": "36",
"btc_1h_not_downtrend": True,
"close_over_pivot_type": "none", # pivot, sup1, sup2, sup3, res1, res2, res3
"close_over_pivot_offset": 1.0,
"close_under_pivot_type": "res3", # pivot, sup1, sup2, sup3, res1, res2, res3
"close_under_pivot_offset": 1.35
},
27: {
"ema_fast": False,
"ema_fast_len": "50",
"ema_slow": False,
"ema_slow_len": "100",
"close_above_ema_fast": False,
"close_above_ema_fast_len": "50",
"close_above_ema_slow": False,
"close_above_ema_slow_len": "200",
"sma200_rising": False,
"sma200_rising_val": "30",
"sma200_1h_rising": False,
"sma200_1h_rising_val": "50",
"safe_dips_threshold_0": 0.028,
"safe_dips_threshold_2": 0.3,
"safe_dips_threshold_12": 0.48,
"safe_dips_threshold_144": 0.9,
"safe_pump": True,
"safe_pump_type": "50",
"safe_pump_period": "36",
"btc_1h_not_downtrend": True,
"close_over_pivot_type": "none", # pivot, sup1, sup2, sup3, res1, res2, res3
"close_over_pivot_offset": 1.0,
"close_under_pivot_type": "none", # pivot, sup1, sup2, sup3, res1, res2, res3
"close_under_pivot_offset": 1.0
},
28: {
"ema_fast": False,
"ema_fast_len": "50",
"ema_slow": True,
"ema_slow_len": "12",
"close_above_ema_fast": False,
"close_above_ema_fast_len": "50",
"close_above_ema_slow": False,
"close_above_ema_slow_len": "200",
"sma200_rising": False,
"sma200_rising_val": "30",
"sma200_1h_rising": False,
"sma200_1h_rising_val": "50",
"safe_dips_threshold_0": 0.028,
"safe_dips_threshold_2": 0.3,
"safe_dips_threshold_12": 0.48,
"safe_dips_threshold_144": 0.9,
"safe_pump": True,
"safe_pump_type": "120",
"safe_pump_period": "36",
"btc_1h_not_downtrend": False,
"close_over_pivot_type": "none", # pivot, sup1, sup2, sup3, res1, res2, res3
"close_over_pivot_offset": 0.99,
"close_under_pivot_type": "res3", # pivot, sup1, sup2, sup3, res1, res2, res3
"close_under_pivot_offset": 1.32
},
29: {
"ema_fast": False,
"ema_fast_len": "50",
"ema_slow": False,
"ema_slow_len": "100",
"close_above_ema_fast": False,
"close_above_ema_fast_len": "50",
"close_above_ema_slow": False,
"close_above_ema_slow_len": "200",
"sma200_rising": False,
"sma200_rising_val": "30",
"sma200_1h_rising": False,
"sma200_1h_rising_val": "50",
"safe_dips_threshold_0": None,
"safe_dips_threshold_2": None,
"safe_dips_threshold_12": None,
"safe_dips_threshold_144": None,
"safe_pump": False,
"safe_pump_type": "110",
"safe_pump_period": "36",
"btc_1h_not_downtrend": False,
"close_over_pivot_type": "none", # pivot, sup1, sup2, sup3, res1, res2, res3
"close_over_pivot_offset": 1.0,
"close_under_pivot_type": "pivot", # pivot, sup1, sup2, sup3, res1, res2, res3
"close_under_pivot_offset": 1.01
},
30: {
"ema_fast": False,
"ema_fast_len": "50",
"ema_slow": True,
"ema_slow_len": "12",
"close_above_ema_fast": False,
"close_above_ema_fast_len": "200",
"close_above_ema_slow": False,
"close_above_ema_slow_len": "200",
"sma200_rising": False,
"sma200_rising_val": "30",
"sma200_1h_rising": False,
"sma200_1h_rising_val": "50",
"safe_dips_threshold_0": None,
"safe_dips_threshold_2": None,
"safe_dips_threshold_12": None,
"safe_dips_threshold_144": None,
"safe_pump": False,
"safe_pump_type": "110",
"safe_pump_period": "36",
"btc_1h_not_downtrend": False,
"close_over_pivot_type": "none", # pivot, sup1, sup2, sup3, res1, res2, res3
"close_over_pivot_offset": 1.0,
"close_under_pivot_type": "none", # pivot, sup1, sup2, sup3, res1, res2, res3
"close_under_pivot_offset": 1.0
},
31: {
"ema_fast": False,
"ema_fast_len": "50",
"ema_slow": False,
"ema_slow_len": "100",
"close_above_ema_fast": False,
"close_above_ema_fast_len": "50",
"close_above_ema_slow": False,
"close_above_ema_slow_len": "100",
"sma200_rising": False,
"sma200_rising_val": "30",
"sma200_1h_rising": False,
"sma200_1h_rising_val": "50",
"safe_dips_threshold_0": 0.02,
"safe_dips_threshold_2": 0.14,
"safe_dips_threshold_12": 0.32,
"safe_dips_threshold_144": 0.5,
"safe_pump": False,
"safe_pump_type": "10",
"safe_pump_period": "48",
"btc_1h_not_downtrend": True,
"close_over_pivot_type": "sup3", # pivot, sup1, sup2, sup3, res1, res2, res3
"close_over_pivot_offset": 0.98,
"close_under_pivot_type": "none", # pivot, sup1, sup2, sup3, res1, res2, res3
"close_under_pivot_offset": 1.0
},
32: {
"ema_fast": False,
"ema_fast_len": "50",
"ema_slow": True,
"ema_slow_len": "12",
"close_above_ema_fast": False,
"close_above_ema_fast_len": "50",
"close_above_ema_slow": False,
"close_above_ema_slow_len": "100",
"sma200_rising": False,
"sma200_rising_val": "30",
"sma200_1h_rising": True,
"sma200_1h_rising_val": "50",
"safe_dips_threshold_0": 0.028,
"safe_dips_threshold_2": 0.3,
"safe_dips_threshold_12": 0.48,
"safe_dips_threshold_144": 0.9,
"safe_pump": True,
"safe_pump_type": "80",
"safe_pump_period": "48",
"btc_1h_not_downtrend": False,
"close_over_pivot_type": "none", # pivot, sup1, sup2, sup3, res1, res2, res3
"close_over_pivot_offset": 1.0,
"close_under_pivot_type": "none", # pivot, sup1, sup2, sup3, res1, res2, res3
"close_under_pivot_offset": 1.0
},
33: {
"ema_fast": False,
"ema_fast_len": "50",
"ema_slow": True,
"ema_slow_len": "12",
"close_above_ema_fast": False,
"close_above_ema_fast_len": "50",
"close_above_ema_slow": False,
"close_above_ema_slow_len": "100",
"sma200_rising": False,
"sma200_rising_val": "30",
"sma200_1h_rising": False,
"sma200_1h_rising_val": "50",
"safe_dips_threshold_0": 0.028,
"safe_dips_threshold_2": 0.3,
"safe_dips_threshold_12": 0.48,
"safe_dips_threshold_144": 0.9,
"safe_pump": True,
"safe_pump_type": "120",
"safe_pump_period": "24",
"btc_1h_not_downtrend": False,
"close_over_pivot_type": "none", # pivot, sup1, sup2, sup3, res1, res2, res3
"close_over_pivot_offset": 1.0,
"close_under_pivot_type": "none", # pivot, sup1, sup2, sup3, res1, res2, res3
"close_under_pivot_offset": 1.0
},
34: {
"ema_fast": False,
"ema_fast_len": "50",
"ema_slow": False,
"ema_slow_len": "100",
"close_above_ema_fast": False,
"close_above_ema_fast_len": "50",
"close_above_ema_slow": False,
"close_above_ema_slow_len": "100",
"sma200_rising": False,
"sma200_rising_val": "30",
"sma200_1h_rising": False,
"sma200_1h_rising_val": "50",
"safe_dips_threshold_0": 0.028,
"safe_dips_threshold_2": 0.3,
"safe_dips_threshold_12": 0.48,
"safe_dips_threshold_144": 0.9,
"safe_pump": False,
"safe_pump_type": "10",
"safe_pump_period": "24",
"btc_1h_not_downtrend": False,
"close_over_pivot_type": "none", # pivot, sup1, sup2, sup3, res1, res2, res3
"close_over_pivot_offset": 0.99,
"close_under_pivot_type": "none", # pivot, sup1, sup2, sup3, res1, res2, res3
"close_under_pivot_offset": 1.0
},
35: {
"ema_fast": False,
"ema_fast_len": "50",
"ema_slow": False,
"ema_slow_len": "12",
"close_above_ema_fast": False,
"close_above_ema_fast_len": "50",
"close_above_ema_slow": False,
"close_above_ema_slow_len": "100",
"sma200_rising": False,
"sma200_rising_val": "30",
"sma200_1h_rising": False,
"sma200_1h_rising_val": "50",
"safe_dips_threshold_0": 0.028,
"safe_dips_threshold_2": 0.3,
"safe_dips_threshold_12": 0.48,
"safe_dips_threshold_144": 0.9,
"safe_pump": True,
"safe_pump_type": "120",
"safe_pump_period": "24",
"btc_1h_not_downtrend": False,
"close_over_pivot_type": "none", # pivot, sup1, sup2, sup3, res1, res2, res3
"close_over_pivot_offset": 1.0,
"close_under_pivot_type": "res3", # pivot, sup1, sup2, sup3, res1, res2, res3
"close_under_pivot_offset": 1.1
},
36: {
"ema_fast": False,
"ema_fast_len": "50",
"ema_slow": False,
"ema_slow_len": "100",
"close_above_ema_fast": False,
"close_above_ema_fast_len": "50",
"close_above_ema_slow": False,
"close_above_ema_slow_len": "100",
"sma200_rising": False,
"sma200_rising_val": "30",
"sma200_1h_rising": False,
"sma200_1h_rising_val": "50",
"safe_dips_threshold_0": None,
"safe_dips_threshold_2": None,
"safe_dips_threshold_12": None,
"safe_dips_threshold_144": None,
"safe_pump": False,
"safe_pump_type": "10",
"safe_pump_period": "24",
"btc_1h_not_downtrend": False,
"close_over_pivot_type": "none", # pivot, sup1, sup2, sup3, res1, res2, res3
"close_over_pivot_offset": 1.0,
"close_under_pivot_type": "none", # pivot, sup1, sup2, sup3, res1, res2, res3
"close_under_pivot_offset": 1.0
},
37: {
"ema_fast": True,
"ema_fast_len": "50",
"ema_slow": True,
"ema_slow_len": "12",
"close_above_ema_fast": False,
"close_above_ema_fast_len": "200",
"close_above_ema_slow": False,
"close_above_ema_slow_len": "100",
"sma200_rising": False,
"sma200_rising_val": "30",
"sma200_1h_rising": False,
"sma200_1h_rising_val": "50",
"safe_dips_threshold_0": 0.028,
"safe_dips_threshold_2": 0.3,
"safe_dips_threshold_12": 0.48,
"safe_dips_threshold_144": 0.9,
"safe_pump": True,
"safe_pump_type": "120",
"safe_pump_period": "48",
"btc_1h_not_downtrend": False,
"close_over_pivot_type": "none", # pivot, sup1, sup2, sup3, res1, res2, res3
"close_over_pivot_offset": 1.0,
"close_under_pivot_type": "res3", # pivot, sup1, sup2, sup3, res1, res2, res3
"close_under_pivot_offset": 1.5
},
38: {
"ema_fast": False,
"ema_fast_len": "50",
"ema_slow": False,
"ema_slow_len": "100",
"close_above_ema_fast": False,
"close_above_ema_fast_len": "50",
"close_above_ema_slow": False,
"close_above_ema_slow_len": "100",
"sma200_rising": False,
"sma200_rising_val": "30",
"sma200_1h_rising": False,
"sma200_1h_rising_val": "50",
"safe_dips_threshold_0": 0.028,
"safe_dips_threshold_2": 0.3,
"safe_dips_threshold_12": 0.48,
"safe_dips_threshold_144": 0.9,
"safe_pump": False,
"safe_pump_type": "10",
"safe_pump_period": "36",
"btc_1h_not_downtrend": True,
"close_over_pivot_type": "none", # pivot, sup1, sup2, sup3, res1, res2, res3
"close_over_pivot_offset": 1.0,
"close_under_pivot_type": "none", # pivot, sup1, sup2, sup3, res1, res2, res3
"close_under_pivot_offset": 1.0
},
39: {
"ema_fast": False,
"ema_fast_len": "100",
"ema_slow": True,
"ema_slow_len": "12",
"close_above_ema_fast": False,
"close_above_ema_fast_len": "100",
"close_above_ema_slow": False,
"close_above_ema_slow_len": "200",
"sma200_rising": False,
"sma200_rising_val": "30",
"sma200_1h_rising": False,
"sma200_1h_rising_val": "20",
"safe_dips_threshold_0": None,
"safe_dips_threshold_2": None,
"safe_dips_threshold_12": None,
"safe_dips_threshold_144": None,
"safe_pump": False,
"safe_pump_type": "50",
"safe_pump_period": "48",
"btc_1h_not_downtrend": True,
"close_over_pivot_type": "none", # pivot, sup1, sup2, sup3, res1, res2, res3
"close_over_pivot_offset": 1.0,
"close_under_pivot_type": "none", # pivot, sup1, sup2, sup3, res1, res2, res3
"close_under_pivot_offset": 1.0
},
40: {
"ema_fast": True,
"ema_fast_len": "50",
"ema_slow": True,
"ema_slow_len": "12",
"close_above_ema_fast": False,
"close_above_ema_fast_len": "200",
"close_above_ema_slow": True,
"close_above_ema_slow_len": "200",
"sma200_rising": False,
"sma200_rising_val": "30",
"sma200_1h_rising": False,
"sma200_1h_rising_val": "20",
"safe_dips_threshold_0": 0.028,
"safe_dips_threshold_2": 0.3,
"safe_dips_threshold_12": 0.48,
"safe_dips_threshold_144": 0.9,
"safe_pump": True,
"safe_pump_type": "100",
"safe_pump_period": "48",
"btc_1h_not_downtrend": True,
"close_over_pivot_type": "none", # pivot, sup1, sup2, sup3, res1, res2, res3
"close_over_pivot_offset": 1.0,
"close_under_pivot_type": "none", # pivot, sup1, sup2, sup3, res1, res2, res3
"close_under_pivot_offset": 1.2
},
41: {
"ema_fast": False,
"ema_fast_len": "50",
"ema_slow": True,
"ema_slow_len": "12",
"close_above_ema_fast": False,
"close_above_ema_fast_len": "200",
"close_above_ema_slow": False,
"close_above_ema_slow_len": "200",
"sma200_rising": False,
"sma200_rising_val": "30",
"sma200_1h_rising": False,
"sma200_1h_rising_val": "20",
"safe_dips_threshold_0": 0.015,
"safe_dips_threshold_2": 0.1,
"safe_dips_threshold_12": 0.24,
"safe_dips_threshold_144": 0.42,
"safe_pump": True,
"safe_pump_type": "120",
"safe_pump_period": "24",
"btc_1h_not_downtrend": True,
"close_over_pivot_type": "none", # pivot, sup1, sup2, sup3, res1, res2, res3
"close_over_pivot_offset": 1.0,
"close_under_pivot_type": "none", # pivot, sup1, sup2, sup3, res1, res2, res3
"close_under_pivot_offset": 1.0
},
42: {
"ema_fast": False,
"ema_fast_len": "12",
"ema_slow": False,
"ema_slow_len": "12",
"close_above_ema_fast": False,
"close_above_ema_fast_len": "200",
"close_above_ema_slow": False,
"close_above_ema_slow_len": "200",
"sma200_rising": False,
"sma200_rising_val": "30",
"sma200_1h_rising": False,
"sma200_1h_rising_val": "20",
"safe_dips_threshold_0": 0.027,
"safe_dips_threshold_2": 0.26,
"safe_dips_threshold_12": 0.44,
"safe_dips_threshold_144": 0.84,
"safe_pump": True,
"safe_pump_type": "10",
"safe_pump_period": "24",
"btc_1h_not_downtrend": True,
"close_over_pivot_type": "none", # pivot, sup1, sup2, sup3, res1, res2, res3
"close_over_pivot_offset": 1.0,
"close_under_pivot_type": "none", # pivot, sup1, sup2, sup3, res1, res2, res3
"close_under_pivot_offset": 1.0
},
43: {
"ema_fast": False,
"ema_fast_len": "12",
"ema_slow": False,
"ema_slow_len": "12",
"close_above_ema_fast": False,
"close_above_ema_fast_len": "200",
"close_above_ema_slow": False,
"close_above_ema_slow_len": "200",
"sma200_rising": False,
"sma200_rising_val": "30",
"sma200_1h_rising": False,
"sma200_1h_rising_val": "20",
"safe_dips_threshold_0": 0.024,
"safe_dips_threshold_2": 0.22,
"safe_dips_threshold_12": 0.38,
"safe_dips_threshold_144": 0.66,
"safe_pump": False,
"safe_pump_type": "100",
"safe_pump_period": "24",
"btc_1h_not_downtrend": True,
"close_over_pivot_type": "none", # pivot, sup1, sup2, sup3, res1, res2, res3
"close_over_pivot_offset": 1.0,
"close_under_pivot_type": "none", # pivot, sup1, sup2, sup3, res1, res2, res3
"close_under_pivot_offset": 1.0
},
44: {
"ema_fast": False,
"ema_fast_len": "12",
"ema_slow": False,
"ema_slow_len": "12",
"close_above_ema_fast": False,
"close_above_ema_fast_len": "200",
"close_above_ema_slow": False,
"close_above_ema_slow_len": "200",
"sma200_rising": False,
"sma200_rising_val": "30",
"sma200_1h_rising": False,
"sma200_1h_rising_val": "20",
"safe_dips_threshold_0": None,
"safe_dips_threshold_2": None,
"safe_dips_threshold_12": None,
"safe_dips_threshold_144": None,
"safe_pump": False,
"safe_pump_type": "100",
"safe_pump_period": "24",
"btc_1h_not_downtrend": False,
"close_over_pivot_type": "none", # pivot, sup1, sup2, sup3, res1, res2, res3
"close_over_pivot_offset": 1.0,
"close_under_pivot_type": "none", # pivot, sup1, sup2, sup3, res1, res2, res3
"close_under_pivot_offset": 1.0
},
45: {
"ema_fast": True,
"ema_fast_len": "15",
"ema_slow": True,
"ema_slow_len": "12",
"close_above_ema_fast": False,
"close_above_ema_fast_len": "200",
"close_above_ema_slow": False,
"close_above_ema_slow_len": "200",
"sma200_rising": False,
"sma200_rising_val": "20",
"sma200_1h_rising": False,
"sma200_1h_rising_val": "20",
"safe_dips_threshold_0": 0.028,
"safe_dips_threshold_2": 0.3,
"safe_dips_threshold_12": 0.48,
"safe_dips_threshold_144": 0.9,
"safe_pump": False,
"safe_pump_type": "100",
"safe_pump_period": "24",
"btc_1h_not_downtrend": True,
"close_over_pivot_type": "none", # pivot, sup1, sup2, sup3, res1, res2, res3
"close_over_pivot_offset": 1.0,
"close_under_pivot_type": "none", # pivot, sup1, sup2, sup3, res1, res2, res3
"close_under_pivot_offset": 1.0
},
46: {
"ema_fast": False,
"ema_fast_len": "50",
"ema_slow": True,
"ema_slow_len": "12",
"close_above_ema_fast": False,
"close_above_ema_fast_len": "200",
"close_above_ema_slow": False,
"close_above_ema_slow_len": "200",
"sma200_rising": False,
"sma200_rising_val": "30",
"sma200_1h_rising": False,
"sma200_1h_rising_val": "20",
"safe_dips_threshold_0": 0.028,
"safe_dips_threshold_2": 0.06,
"safe_dips_threshold_12": 0.25,
"safe_dips_threshold_144": 0.26,
"safe_pump": False,
"safe_pump_type": "100",
"safe_pump_period": "24",
"btc_1h_not_downtrend": True,
"close_over_pivot_type": "none", # pivot, sup1, sup2, sup3, res1, res2, res3
"close_over_pivot_offset": 1.0,
"close_under_pivot_type": "res3", # pivot, sup1, sup2, sup3, res1, res2, res3
"close_under_pivot_offset": 2.0
},
47: {
"ema_fast": False,
"ema_fast_len": "12",
"ema_slow": True,
"ema_slow_len": "12",
"close_above_ema_fast": False,
"close_above_ema_fast_len": "200",
"close_above_ema_slow": False,
"close_above_ema_slow_len": "200",
"sma200_rising": False,
"sma200_rising_val": "30",
"sma200_1h_rising": False,
"sma200_1h_rising_val": "24",
"safe_dips_threshold_0": 0.025,
"safe_dips_threshold_2": 0.05,
"safe_dips_threshold_12": 0.25,
"safe_dips_threshold_144": 0.5,
"safe_pump": True,
"safe_pump_type": "120",
"safe_pump_period": "24",
"btc_1h_not_downtrend": False,
"close_over_pivot_type": "none", # pivot, sup1, sup2, sup3, res1, res2, res3
"close_over_pivot_offset": 1.0,
"close_under_pivot_type": "none", # pivot, sup1, sup2, sup3, res1, res2, res3
"close_under_pivot_offset": 1.0
},
48: {
"ema_fast": True,
"ema_fast_len": "12",
"ema_slow": True,
"ema_slow_len": "12",
"close_above_ema_fast": True,
"close_above_ema_fast_len": "200",
"close_above_ema_slow": True,
"close_above_ema_slow_len": "200",
"sma200_rising": True,
"sma200_rising_val": "30",
"sma200_1h_rising": True,
"sma200_1h_rising_val": "24",
"safe_dips_threshold_0": None,
"safe_dips_threshold_2": None,
"safe_dips_threshold_12": None,
"safe_dips_threshold_144": None,
"safe_pump": False,
"safe_pump_type": "120",
"safe_pump_period": "24",
"btc_1h_not_downtrend": False,
"close_over_pivot_type": "none", # pivot, sup1, sup2, sup3, res1, res2, res3
"close_over_pivot_offset": 1.0,
"close_under_pivot_type": "none", # pivot, sup1, sup2, sup3, res1, res2, res3
"close_under_pivot_offset": 1.0
}
}
# 24 hours - level 10
buy_pump_pull_threshold_10_24 = 2.2
buy_pump_threshold_10_24 = 0.42
# 36 hours - level 10
buy_pump_pull_threshold_10_36 = 2.0
buy_pump_threshold_10_36 = 0.58
# 48 hours - level 10
buy_pump_pull_threshold_10_48 = 2.0
buy_pump_threshold_10_48 = 0.8
# 24 hours - level 20
buy_pump_pull_threshold_20_24 = 2.2
buy_pump_threshold_20_24 = 0.46
# 36 hours - level 20
buy_pump_pull_threshold_20_36 = 2.0
buy_pump_threshold_20_36 = 0.6
# 48 hours - level 20
buy_pump_pull_threshold_20_48 = 2.0
buy_pump_threshold_20_48 = 0.81
# 24 hours - level 30
buy_pump_pull_threshold_30_24 = 2.2
buy_pump_threshold_30_24 = 0.5
# 36 hours - level 30
buy_pump_pull_threshold_30_36 = 2.0
buy_pump_threshold_30_36 = 0.62
# 48 hours - level 30
buy_pump_pull_threshold_30_48 = 2.0
buy_pump_threshold_30_48 = 0.82
# 24 hours - level 40
buy_pump_pull_threshold_40_24 = 2.2
buy_pump_threshold_40_24 = 0.54
# 36 hours - level 40
buy_pump_pull_threshold_40_36 = 2.0
buy_pump_threshold_40_36 = 0.63
# 48 hours - level 40
buy_pump_pull_threshold_40_48 = 2.0
buy_pump_threshold_40_48 = 0.84
# 24 hours - level 50
buy_pump_pull_threshold_50_24 = 1.75
buy_pump_threshold_50_24 = 0.6
# 36 hours - level 50
buy_pump_pull_threshold_50_36 = 1.75
buy_pump_threshold_50_36 = 0.64
# 48 hours - level 50
buy_pump_pull_threshold_50_48 = 1.75
buy_pump_threshold_50_48 = 0.85
# 24 hours - level 60
buy_pump_pull_threshold_60_24 = 1.75
buy_pump_threshold_60_24 = 0.62
# 36 hours - level 60
buy_pump_pull_threshold_60_36 = 1.75
buy_pump_threshold_60_36 = 0.66
# 48 hours - level 60
buy_pump_pull_threshold_60_48 = 1.75
buy_pump_threshold_60_48 = 0.9
# 24 hours - level 70
buy_pump_pull_threshold_70_24 = 1.75
buy_pump_threshold_70_24 = 0.63
# 36 hours - level 70
buy_pump_pull_threshold_70_36 = 1.75
buy_pump_threshold_70_36 = 0.67
# 48 hours - level 70
buy_pump_pull_threshold_70_48 = 1.75
buy_pump_threshold_70_48 = 0.95
# 24 hours - level 80
buy_pump_pull_threshold_80_24 = 1.75
buy_pump_threshold_80_24 = 0.64
# 36 hours - level 80
buy_pump_pull_threshold_80_36 = 1.75
buy_pump_threshold_80_36 = 0.68
# 48 hours - level 80
buy_pump_pull_threshold_80_48 = 1.75
buy_pump_threshold_80_48 = 1.0
# 24 hours - level 90
buy_pump_pull_threshold_90_24 = 1.75
buy_pump_threshold_90_24 = 0.65
# 36 hours - level 90
buy_pump_pull_threshold_90_36 = 1.75
buy_pump_threshold_90_36 = 0.69
# 48 hours - level 90
buy_pump_pull_threshold_90_48 = 1.75
buy_pump_threshold_90_48 = 1.1
# 24 hours - level 100
buy_pump_pull_threshold_100_24 = 1.7
buy_pump_threshold_100_24 = 0.66
# 36 hours - level 100
buy_pump_pull_threshold_100_36 = 1.7
buy_pump_threshold_100_36 = 0.7
# 48 hours - level 100
buy_pump_pull_threshold_100_48 = 1.4
buy_pump_threshold_100_48 = 1.6
# 24 hours - level 110
buy_pump_pull_threshold_110_24 = 1.7
buy_pump_threshold_110_24 = 0.7
# 36 hours - level 110
buy_pump_pull_threshold_110_36 = 1.7
buy_pump_threshold_110_36 = 0.74
# 48 hours - level 110
buy_pump_pull_threshold_110_48 = 1.4
buy_pump_threshold_110_48 = 1.8
# 24 hours - level 120
buy_pump_pull_threshold_120_24 = 1.7
buy_pump_threshold_120_24 = 0.78
# 36 hours - level 120
buy_pump_pull_threshold_120_36 = 1.7
buy_pump_threshold_120_36 = 0.78
# 48 hours - level 120
buy_pump_pull_threshold_120_48 = 1.4
buy_pump_threshold_120_48 = 2.0
# 5 hours - level 10
buy_dump_protection_10_5 = 0.4
# 5 hours - level 20
buy_dump_protection_20_5 = 0.44
# 5 hours - level 30
buy_dump_protection_30_5 = 0.50
# 5 hours - level 40
buy_dump_protection_40_5 = 0.58
# 5 hours - level 50
buy_dump_protection_50_5 = 0.66
# 5 hours - level 60
buy_dump_protection_60_5 = 0.74
buy_1_min_inc = 0.022
buy_1_rsi_max = 32.0
buy_2_r_14_max = -75.0
buy_1_mfi_max = 46.0
buy_1_rsi_1h_min = 30.0
buy_1_rsi_1h_max = 84.0
buy_2_rsi_1h_diff = 39.0
buy_2_mfi = 49.0
buy_2_cti_max = -0.9
buy_2_r_480_min = -95.0
buy_2_r_480_max = -46.0
buy_2_cti_1h_max = 0.9
buy_2_volume = 2.0
buy_3_bb40_bbdelta_close = 0.057
buy_3_bb40_closedelta_close = 0.023
buy_3_bb40_tail_bbdelta = 0.418
buy_3_cti_max = -0.5
buy_3_cci_36_osc_min = -0.25
buy_3_crsi_1h_min = 20.0
buy_3_r_480_1h_min = -48.0
buy_3_cti_1h_max = 0.82
buy_4_bb20_close_bblowerband = 0.98
buy_4_bb20_volume = 10.0
buy_4_cti_max = -0.8
buy_5_ema_rel = 0.84
buy_5_ema_open_mult = 0.02
buy_5_bb_offset = 0.999
buy_5_cti_max = -0.5
buy_5_r_14_max = -94.0
buy_5_rsi_14_min = 25.0
buy_5_mfi_min = 18.0
buy_5_crsi_1h_min = 12.0
buy_5_volume = 1.6
buy_6_ema_open_mult = 0.019
buy_6_bb_offset = 0.984
buy_6_r_14_max = -85.0
buy_6_crsi_1h_min = 15.0
buy_6_cti_1h_min = 0.0
buy_7_ema_open_mult = 0.031
buy_7_ma_offset = 0.978
buy_7_cti_max = -0.9
buy_7_rsi_max = 45.0
buy_8_bb_offset = 0.986
buy_8_r_14_max = -98.0
buy_8_cti_1h_max = 0.95
buy_8_r_480_1h_max = -18.0
buy_8_volume = 1.8
buy_9_ma_offset = 0.968
buy_9_bb_offset = 0.982
buy_9_mfi_max = 50.0
buy_9_cti_max = -0.85
buy_9_r_14_max = -94.0
buy_9_rsi_1h_min = 20.0
buy_9_rsi_1h_max = 88.0
buy_9_crsi_1h_min = 21.0
buy_10_ma_offset_high = 0.94
buy_10_bb_offset = 0.984
buy_10_r_14_max = -88.0
buy_10_cti_1h_min = -0.5
buy_10_cti_1h_max = 0.94
buy_11_ma_offset = 0.956
buy_11_min_inc = 0.022
buy_11_rsi_max = 37.0
buy_11_mfi_max = 46.0
buy_11_cci_max = -120.0
buy_11_r_480_max = -32.0
buy_11_rsi_1h_min = 30.0
buy_11_rsi_1h_max = 84.0
buy_11_cti_1h_max = 0.91
buy_11_r_480_1h_max = -25.0
buy_11_crsi_1h_min = 26.0
buy_12_ma_offset = 0.927
buy_12_ewo_min = 2.0
buy_12_rsi_max = 32.0
buy_12_cti_max = -0.9
buy_13_ma_offset = 0.99
buy_13_cti_max = -0.92
buy_13_ewo_max = -6.0
buy_13_cti_1h_max = -0.88
buy_13_crsi_1h_min = 10.0
buy_14_ema_open_mult = 0.014
buy_14_bb_offset = 0.989
buy_14_ma_offset = 0.945
buy_14_cti_max = -0.85
buy_15_ema_open_mult = 0.0238
buy_15_ma_offset = 0.958
buy_15_rsi_min = 28.0
buy_15_cti_1h_min = -0.2
buy_16_ma_offset = 0.942
buy_16_ewo_min = 2.0
buy_16_rsi_max = 36.0
buy_16_cti_max = -0.9
buy_17_ma_offset = 0.999
buy_17_ewo_max = -7.0
buy_17_cti_max = -0.96
buy_17_crsi_1h_min = 12.0
buy_17_volume = 2.0
buy_18_bb_offset = 0.986
buy_18_rsi_max = 33.5
buy_18_cti_max = -0.85
buy_18_cti_1h_max = 0.91
buy_18_volume = 2.0
buy_19_rsi_1h_min = 30.0
buy_19_chop_max = 21.3
buy_20_rsi_14_max = 36.0
buy_20_rsi_14_1h_max = 16.0
buy_20_cti_max = -0.84
buy_20_volume = 2.0
buy_21_rsi_14_max = 14.0
buy_21_rsi_14_1h_max = 28.0
buy_21_cti_max = -0.902
buy_21_volume = 2.0
buy_22_volume = 2.0
buy_22_bb_offset = 0.984
buy_22_ma_offset = 0.98
buy_22_ewo_min = 5.6
buy_22_rsi_14_max = 36.0
buy_22_cti_max = -0.54
buy_22_r_480_max = -40.0
buy_22_cti_1h_min = -0.5
buy_23_bb_offset = 0.984
buy_23_ewo_min = 3.4
buy_23_rsi_14_max = 28.0
buy_23_cti_max = -0.74
buy_23_rsi_14_1h_max = 80.0
buy_23_r_480_1h_min = -95.0
buy_23_cti_1h_max = 0.92
buy_24_rsi_14_max = 50.0
buy_24_rsi_14_1h_min = 66.9
buy_25_ma_offset = 0.953
buy_25_rsi_4_max = 30.0
buy_25_cti_max = -0.78
buy_25_cci_max = -200.0
buy_26_zema_low_offset = 0.9405
buy_26_cti_max = -0.72
buy_26_cci_max = -166.0
buy_26_r_14_max = -98.0
buy_26_cti_1h_max = 0.95
buy_26_volume = 2.0
buy_27_wr_max = -95.0
buy_27_r_14 = -100.0
buy_27_wr_1h_max = -90.0
buy_27_rsi_max = 46.0
buy_27_volume = 2.0
buy_28_ma_offset = 0.928
buy_28_ewo_min = 2.0
buy_28_rsi_14_max = 33.4
buy_28_cti_max = -0.84
buy_28_r_14_max = -97.0
buy_28_cti_1h_max = 0.95
buy_29_ma_offset = 0.984
buy_29_ewo_max = -4.2
buy_29_cti_max = -0.96
buy_30_ma_offset = 0.962
buy_30_ewo_min = 6.4
buy_30_rsi_14_max = 34.0
buy_30_cti_max = -0.87
buy_30_r_14_max = -97.0
buy_31_ma_offset = 0.962
buy_31_ewo_max = -5.2
buy_31_r_14_max = -94.0
buy_31_cti_max = -0.9
buy_32_ma_offset = 0.942
buy_32_rsi_4_max = 46.0
buy_32_cti_max = -0.86
buy_32_rsi_14_min = 19.0
buy_32_crsi_1h_min = 10.0
buy_32_crsi_1h_max = 60.0
buy_33_ma_offset = 0.988
buy_33_ewo_min = 9.0
buy_33_rsi_max = 32.0
buy_33_cti_max = -0.88
buy_33_r_14_max = -98.0
buy_33_cti_1h_max = 0.92
buy_33_volume = 2.0
buy_34_ma_offset = 0.97
buy_34_ewo_max = -4.0
buy_34_cti_max = -0.95
buy_34_r_14_max = -99.9
buy_34_crsi_1h_min = 8.0
buy_34_volume = 2.0
buy_35_ma_offset = 0.984
buy_35_ewo_min = 7.8
buy_35_rsi_max = 32.0
buy_35_cti_max = -0.8
buy_35_r_14_max = -95.0
buy_36_ma_offset = 0.98
buy_36_ewo_max = -5.0
buy_36_cti_max = -0.82
buy_36_r_14_max = -97.0
buy_36_crsi_1h_min = 12.0
buy_37_ma_offset = 0.984
buy_37_ewo_min = 8.3
buy_37_ewo_max = 11.1
buy_37_rsi_14_min = 26.0
buy_37_rsi_14_max = 46.0
buy_37_crsi_1h_min = 12.0
buy_37_crsi_1h_max = 56.0
buy_37_cti_max = -0.85
buy_37_cti_1h_max = 0.92
buy_37_r_14_max = -97.0
buy_37_close_1h_max = 0.1
buy_38_ma_offset = 0.98
buy_38_ewo_max = -4.4
buy_38_cti_max = -0.95
buy_38_r_14_max = -97.0
buy_38_crsi_1h_min = 0.5
buy_39_cti_max = -0.1
buy_39_r_1h_max = -22.0
buy_39_cti_1h_min = -0.1
buy_39_cti_1h_max = 0.4
buy_40_cci_max = -150.0
buy_40_rsi_max = 30.0
buy_40_r_14_max = -99.9
buy_40_cti_max = -0.8
buy_41_ma_offset_high = 0.95
buy_41_cti_max = -0.95
buy_41_cci_max = -178.0
buy_41_ewo_1h_min = 0.5
buy_41_r_480_1h_max = -14.0
buy_41_crsi_1h_min = 14.0
buy_42_ema_open_mult = 0.018
buy_42_bb_offset = 0.992
buy_42_ewo_1h_min = 2.8
buy_42_cti_1h_min = -0.5
buy_42_cti_1h_max = 0.88
buy_42_r_480_1h_max = -12.0
buy_43_bb40_bbdelta_close = 0.045
buy_43_bb40_closedelta_close = 0.02
buy_43_bb40_tail_bbdelta = 0.5
buy_43_cti_max = -0.75
buy_43_r_480_min = -94.0
buy_43_cti_1h_min = -0.75
buy_43_cti_1h_max = 0.45
buy_43_r_480_1h_min = -80.0
buy_44_ma_offset = 0.982
buy_44_ewo_max = -18.0
buy_44_cti_max = -0.73
buy_44_crsi_1h_min = 8.0
buy_45_bb40_bbdelta_close = 0.039
buy_45_bb40_closedelta_close = 0.0231
buy_45_bb40_tail_bbdelta = 0.24
buy_45_ma_offset = 0.948
buy_45_ewo_min = 2.0
buy_45_ewo_1h_min = 2.0
buy_45_cti_1h_max = 0.76
buy_45_r_480_1h_max = -20.0
buy_46_ema_open_mult = 0.0332
buy_46_ewo_1h_min = 0.5
buy_46_cti_1h_min = -0.9
buy_46_cti_1h_max = 0.5
buy_47_ewo_min = 3.2
buy_47_ma_offset = 0.952
buy_47_rsi_14_max = 46.0
buy_47_cti_max = -0.93
buy_47_r_14_max = -97.0
buy_47_ewo_1h_min = 2.0
buy_47_cti_1h_min = -0.9
buy_47_cti_1h_max = 0.3
buy_48_ewo_min = 8.5
buy_48_ewo_1h_min = 14.0
buy_48_r_480_min = -25.0
buy_48_r_480_1h_min = -50.0
buy_48_r_480_1h_max = -10.0
buy_48_cti_1h_min = 0.5
buy_48_crsi_1h_min = 10.0
# Sell
sell_condition_1_enable = True
sell_condition_2_enable = True
sell_condition_3_enable = True
sell_condition_4_enable = True
sell_condition_5_enable = True
sell_condition_6_enable = True
sell_condition_7_enable = True
sell_condition_8_enable = True
# 48h for pump sell checks
sell_pump_threshold_48_1 = 0.9
sell_pump_threshold_48_2 = 0.7
sell_pump_threshold_48_3 = 0.5
# 36h for pump sell checks
sell_pump_threshold_36_1 = 0.72
sell_pump_threshold_36_2 = 4.0
sell_pump_threshold_36_3 = 1.0
# 24h for pump sell checks
sell_pump_threshold_24_1 = 0.68
sell_pump_threshold_24_2 = 0.62
sell_pump_threshold_24_3 = 0.88
sell_rsi_bb_1 = 79.0
sell_rsi_bb_2 = 80.0
sell_rsi_main_3 = 83.0
sell_dual_rsi_rsi_4 = 73.4
sell_dual_rsi_rsi_1h_4 = 79.6
sell_ema_relative_5 = 0.024
sell_rsi_diff_5 = 4.4
sell_rsi_under_6 = 79.0
sell_rsi_1h_7 = 81.7
sell_bb_relative_8 = 1.1
# Profit over EMA200
sell_custom_profit_bull_0 = 0.012
sell_custom_rsi_under_bull_0 = 34.0
sell_custom_profit_bull_1 = 0.02
sell_custom_rsi_under_bull_1 = 35.0
sell_custom_profit_bull_2 = 0.03
sell_custom_rsi_under_bull_2 = 36.0
sell_custom_profit_bull_3 = 0.04
sell_custom_rsi_under_bull_3 = 44.0
sell_custom_profit_bull_4 = 0.05
sell_custom_rsi_under_bull_4 = 45.0
sell_custom_profit_bull_5 = 0.06
sell_custom_rsi_under_bull_5 = 49.0
sell_custom_profit_bull_6 = 0.07
sell_custom_rsi_under_bull_6 = 50.0
sell_custom_profit_bull_7 = 0.08
sell_custom_rsi_under_bull_7 = 57.0
sell_custom_profit_bull_8 = 0.09
sell_custom_rsi_under_bull_8 = 50.0
sell_custom_profit_bull_9 = 0.1
sell_custom_rsi_under_bull_9 = 46.0
sell_custom_profit_bull_10 = 0.12
sell_custom_rsi_under_bull_10 = 42.0
sell_custom_profit_bull_11 = 0.20
sell_custom_rsi_under_bull_11 = 30.0
sell_custom_profit_bear_0 = 0.012
sell_custom_rsi_under_bear_0 = 34.0
sell_custom_profit_bear_1 = 0.02
sell_custom_rsi_under_bear_1 = 35.0
sell_custom_profit_bear_2 = 0.03
sell_custom_rsi_under_bear_2 = 37.0
sell_custom_profit_bear_3 = 0.04
sell_custom_rsi_under_bear_3 = 44.0
sell_custom_profit_bear_4 = 0.05
sell_custom_rsi_under_bear_4 = 48.0
sell_custom_profit_bear_5 = 0.06
sell_custom_rsi_under_bear_5 = 50.0
sell_custom_rsi_over_bear_5 = 78.0
sell_custom_profit_bear_6 = 0.07
sell_custom_rsi_under_bear_6 = 52.0
sell_custom_rsi_over_bear_6 = 78.0
sell_custom_profit_bear_7 = 0.08
sell_custom_rsi_under_bear_7 = 57.0
sell_custom_rsi_over_bear_7 = 77.0
sell_custom_profit_bear_8 = 0.09
sell_custom_rsi_under_bear_8 = 55.0
sell_custom_rsi_over_bear_8 = 75.5
sell_custom_profit_bear_9 = 0.1
sell_custom_rsi_under_bear_9 = 46.0
sell_custom_profit_bear_10 = 0.12
sell_custom_rsi_under_bear_10 = 42.0
sell_custom_profit_bear_11 = 0.20
sell_custom_rsi_under_bear_11 = 30.0
# Profit under EMA200
sell_custom_under_profit_bull_0 = 0.01
sell_custom_under_rsi_under_bull_0 = 38.0
sell_custom_under_profit_bull_1 = 0.02
sell_custom_under_rsi_under_bull_1 = 46.0
sell_custom_under_profit_bull_2 = 0.03
sell_custom_under_rsi_under_bull_2 = 47.0
sell_custom_under_profit_bull_3 = 0.04
sell_custom_under_rsi_under_bull_3 = 48.0
sell_custom_under_profit_bull_4 = 0.05
sell_custom_under_rsi_under_bull_4 = 49.0
sell_custom_under_profit_bull_5 = 0.06
sell_custom_under_rsi_under_bull_5 = 50.0
sell_custom_under_profit_bull_6 = 0.07
sell_custom_under_rsi_under_bull_6 = 52.0
sell_custom_under_profit_bull_7 = 0.08
sell_custom_under_rsi_under_bull_7 = 57.0
sell_custom_under_profit_bull_8 = 0.09
sell_custom_under_rsi_under_bull_8 = 50.0
sell_custom_under_profit_bull_9 = 0.1
sell_custom_under_rsi_under_bull_9 = 46.0
sell_custom_under_profit_bull_10 = 0.12
sell_custom_under_rsi_under_bull_10 = 42.0
sell_custom_under_profit_bull_11 = 0.2
sell_custom_under_rsi_under_bull_11 = 30.0
sell_custom_under_profit_bear_0 = 0.01
sell_custom_under_rsi_under_bear_0 = 38.0
sell_custom_under_profit_bear_1 = 0.02
sell_custom_under_rsi_under_bear_1 = 56.0
sell_custom_under_profit_bear_2 = 0.03
sell_custom_under_rsi_under_bear_2 = 57.0
sell_custom_under_profit_bear_3 = 0.04
sell_custom_under_rsi_under_bear_3 = 57.0
sell_custom_under_profit_bear_4 = 0.05
sell_custom_under_rsi_under_bear_4 = 57.0
sell_custom_under_profit_bear_5 = 0.06
sell_custom_under_rsi_under_bear_5 = 57.0
sell_custom_under_rsi_over_bear_5 = 78.0
sell_custom_under_profit_bear_6 = 0.07
sell_custom_under_rsi_under_bear_6 = 57.0
sell_custom_under_rsi_over_bear_6 = 78.0
sell_custom_under_profit_bear_7 = 0.08
sell_custom_under_rsi_under_bear_7 = 57.0
sell_custom_under_rsi_over_bear_7 = 80.0
sell_custom_under_profit_bear_8 = 0.09
sell_custom_under_rsi_under_bear_8 = 50.0
sell_custom_under_rsi_over_bear_8 = 82.0
sell_custom_under_profit_bear_9 = 0.1
sell_custom_under_rsi_under_bear_9 = 46.0
sell_custom_under_profit_bear_10 = 0.12
sell_custom_under_rsi_under_bear_10 = 42.0
sell_custom_under_profit_bear_11 = 0.2
sell_custom_under_rsi_under_bear_11 = 30.0
# SMA descending
sell_custom_dec_profit_min_1 = 0.05
sell_custom_dec_profit_max_1 = 0.12
# Under EMA100
sell_custom_dec_profit_min_2 = 0.07
sell_custom_dec_profit_max_2 = 0.16
# Trail 1
sell_trail_profit_min_1 = 0.03
sell_trail_profit_max_1 = 0.05
sell_trail_down_1 = 0.05
sell_trail_rsi_min_1 = 10.0
sell_trail_rsi_max_1 = 20.0
# Trail 2
sell_trail_profit_min_2 = 0.1
sell_trail_profit_max_2 = 0.4
sell_trail_down_2 = 0.03
sell_trail_rsi_min_2 = 20.0
sell_trail_rsi_max_2 = 50.0
# Trail 3
sell_trail_profit_min_3 = 0.06
sell_trail_profit_max_3 = 0.2
sell_trail_down_3 = 0.05
# Trail 4
sell_trail_profit_min_4 = 0.03
sell_trail_profit_max_4 = 0.06
sell_trail_down_4 = 0.02
# Under & near EMA200, accept profit
sell_custom_profit_under_profit_min_1 = 0.001
sell_custom_profit_under_profit_max_1 = 0.008
sell_custom_profit_under_rel_1 = 0.024
sell_custom_profit_under_rsi_diff_1 = 4.4
sell_custom_profit_under_profit_2 = 0.03
sell_custom_profit_under_rel_2 = 0.024
sell_custom_profit_under_rsi_diff_2 = 4.4
# Under & near EMA200, take the loss
sell_custom_stoploss_under_rel_1 = 0.002
sell_custom_stoploss_under_rsi_diff_1 = 10.0
# Long duration/recover stoploss 1
sell_custom_stoploss_long_profit_min_1 = -0.08
sell_custom_stoploss_long_profit_max_1 = -0.04
sell_custom_stoploss_long_recover_1 = 0.14
sell_custom_stoploss_long_rsi_diff_1 = 4.0
# Long duration/recover stoploss 2
sell_custom_stoploss_long_recover_2 = 0.06
sell_custom_stoploss_long_rsi_diff_2 = 40.0
# Pumped 48h 1, under EMA200
sell_custom_pump_under_profit_min_1 = 0.04
sell_custom_pump_under_profit_max_1 = 0.09
# Pumped trail 1
sell_custom_pump_trail_profit_min_1 = 0.05
sell_custom_pump_trail_profit_max_1 = 0.07
sell_custom_pump_trail_down_1 = 0.05
sell_custom_pump_trail_rsi_min_1 = 20.0
sell_custom_pump_trail_rsi_max_1 = 70.0
# Stoploss, pumped, 48h 1
sell_custom_stoploss_pump_max_profit_1 = 0.01
sell_custom_stoploss_pump_min_1 = -0.02
sell_custom_stoploss_pump_max_1 = -0.01
sell_custom_stoploss_pump_ma_offset_1 = 0.94
# Stoploss, pumped, 48h 1
sell_custom_stoploss_pump_max_profit_2 = 0.025
sell_custom_stoploss_pump_loss_2 = -0.05
sell_custom_stoploss_pump_ma_offset_2 = 0.92
# Stoploss, pumped, 36h 3
sell_custom_stoploss_pump_max_profit_3 = 0.008
sell_custom_stoploss_pump_loss_3 = -0.12
sell_custom_stoploss_pump_ma_offset_3 = 0.88
# Recover
sell_custom_recover_profit_1 = 0.06
sell_custom_recover_min_loss_1 = 0.12
sell_custom_recover_profit_min_2 = 0.01
sell_custom_recover_profit_max_2 = 0.05
sell_custom_recover_min_loss_2 = 0.06
sell_custom_recover_rsi_2 = 46.0
# Profit for long duration trades
sell_custom_long_profit_min_1 = 0.03
sell_custom_long_profit_max_1 = 0.04
sell_custom_long_duration_min_1 = 900
# Profit Target Signal
profit_target_1_enable = False
#############################################################
plot_config = {
'main_plot': {
'ema_12_1h': {'color': 'rgba(200,200,100,0.4)'},
'ema_15_1h': {'color': 'rgba(200,180,100,0.4)'},
'ema_20_1h': {'color': 'rgba(200,160,100,0.4)'},
'ema_25_1h': {'color': 'rgba(200,140,100,0.4)'},
'ema_26_1h': {'color': 'rgba(200,120,100,0.4)'},
'ema_35_1h': {'color': 'rgba(200,100,100,0.4)'},
'ema_50_1h': {'color': 'rgba(200,80,100,0.4)'},
'ema_100_1h': {'color': 'rgba(200,60,100,0.4)'},
'ema_200_1h': {'color': 'rgba(200,40,100,0.4)'},
'sma_200_1h': {'color': 'rgba(150,20,100,0.4)'},
'pm': {'color': 'rgba(100,20,100,0.5)'}
},
'subplots': {
'buy tag': {'buy_tag': {'color': 'green'}},
'RSI/BTC': {
'btc_not_downtrend_1h': {'color': 'yellow'},
'btc_rsi_14_1h': {'color': 'green'},
'rsi_14_1h': {'color': '#f41cd1'},
'crsi': {'color': 'blue'}
},
'pump': {
'cti_1h': {'color': 'pink'},
'safe_pump_24_10_1h': {'color': '#481110'},
'safe_pump_24_20_1h': {'color': '#481120'},
'safe_pump_24_30_1h': {'color': '#481130'},
'safe_pump_24_40_1h': {'color': '#481140'},
'safe_pump_24_50_1h': {'color': '#481150'},
'safe_pump_24_60_1h': {'color': '#481160'},
'safe_pump_24_70_1h': {'color': '#481170'},
'safe_pump_24_80_1h': {'color': '#481180'},
'safe_pump_24_90_1h': {'color': '#481190'},
'safe_pump_24_100_1h': {'color': '#4811A0'},
'safe_pump_24_120_1h': {'color': '#4811C0'},
'safe_pump_36_10_1h': {'color': '#721110'},
'safe_pump_36_20_1h': {'color': '#721120'},
'safe_pump_36_30_1h': {'color': '#721130'},
'safe_pump_36_40_1h': {'color': '#721140'},
'safe_pump_36_50_1h': {'color': '#721150'},
'safe_pump_36_60_1h': {'color': '#721160'},
'safe_pump_36_70_1h': {'color': '#721170'},
'safe_pump_36_80_1h': {'color': '#721180'},
'safe_pump_36_90_1h': {'color': '#721190'},
'safe_pump_36_100_1h': {'color': '#7211A0'},
'safe_pump_36_120_1h': {'color': '#7211C0'},
'safe_pump_48_10_1h': {'color': '#961110'},
'safe_pump_48_20_1h': {'color': '#961120'},
'safe_pump_48_30_1h': {'color': '#961130'},
'safe_pump_48_40_1h': {'color': '#961140'},
'safe_pump_48_50_1h': {'color': '#961150'},
'safe_pump_48_60_1h': {'color': '#961160'},
'safe_pump_48_70_1h': {'color': '#961170'},
'safe_pump_48_80_1h': {'color': '#961180'},
'safe_pump_48_90_1h': {'color': '#961190'},
'safe_pump_48_100_1h': {'color': '#9611A0'},
'safe_pump_48_120_1h': {'color': '#9611C0'}
}
}
}
#############################################################
# CACHES
hold_trades_cache = None
target_profit_cache = None
#############################################################
def __init__(self, config: dict) -> None:
super().__init__(config)
if self.target_profit_cache is None:
self.target_profit_cache = Cache(
self.config["user_data_dir"] / "data-nfi-profit_target_by_pair.json"
)
# If the cached data hasn't changed, it's a no-op
self.target_profit_cache.save()
def get_hold_trades_config_file(self):
proper_holds_file_path = self.config["user_data_dir"].resolve() / "nfi-hold-trades.json"
if proper_holds_file_path.is_file():
return proper_holds_file_path
strat_file_path = pathlib.Path(__file__)
hold_trades_config_file_resolve = strat_file_path.resolve().parent / "hold-trades.json"
if hold_trades_config_file_resolve.is_file():
log.warning(
"Please move %s to %s which is now the expected path for the holds file",
hold_trades_config_file_resolve,
proper_holds_file_path,
)
return hold_trades_config_file_resolve
# The resolved path does not exist, is it a symlink?
hold_trades_config_file_absolute = strat_file_path.absolute().parent / "hold-trades.json"
if hold_trades_config_file_absolute.is_file():
log.warning(
"Please move %s to %s which is now the expected path for the holds file",
hold_trades_config_file_absolute,
proper_holds_file_path,
)
return hold_trades_config_file_absolute
def load_hold_trades_config(self):
if self.hold_trades_cache is None:
hold_trades_config_file = self.get_hold_trades_config_file()
if hold_trades_config_file:
log.warning("Loading hold support data from %s", hold_trades_config_file)
self.hold_trades_cache = HoldsCache(hold_trades_config_file)
if self.hold_trades_cache:
self.hold_trades_cache.load()
def whitelist_tracker(self):
if sorted(self.coin_metrics['current_whitelist']) != sorted(self.dp.current_whitelist()):
log.info("Whitelist has changed...")
self.coin_metrics['top_traded_updated'] = False
self.coin_metrics['top_grossing_updated'] = False
# Update pairlist
self.coin_metrics['current_whitelist'] = self.dp.current_whitelist()
# Move up BTC for largest data footprint
self.coin_metrics['current_whitelist'].insert(0, self.coin_metrics['current_whitelist'].pop(
self.coin_metrics['current_whitelist'].index(f"BTC/{self.config['stake_currency']}")))
def top_traded_list(self):
log.info("Updating top traded pairlist...")
tik = time.perf_counter()
self.coin_metrics['tt_dataframe'] = DataFrame()
# Build traded volume dataframe
for coin_pair in self.coin_metrics['current_whitelist']:
coin = coin_pair.split('/')[0]
# Get the volume for the daily informative timeframe and name the column for the coin
pair_dataframe = self.dp.get_pair_dataframe(pair=coin_pair, timeframe=self.info_timeframe_1d)
pair_dataframe.set_index('date')
if self.config['runmode'].value in ('live', 'dry_run'):
pair_dataframe = pair_dataframe.iloc[-7:, :]
# Set the date index of the self.coin_metrics['tt_dataframe'] once
if not 'date' in self.coin_metrics['tt_dataframe']:
self.coin_metrics['tt_dataframe']['date'] = pair_dataframe['date']
self.coin_metrics['tt_dataframe'].set_index('date')
# Calculate daily traded volume
pair_dataframe[coin] = pair_dataframe['volume'] * qtpylib.typical_price(pair_dataframe)
# Drop the columns we don't need
pair_dataframe.drop(columns=['open', 'high', 'low', 'close', 'volume'], inplace=True)
# Merge it in on the date key
self.coin_metrics['tt_dataframe'] = self.coin_metrics['tt_dataframe'].merge(pair_dataframe, on='date',
how='left')
# Forward fill empty cells (due to different df shapes)
self.coin_metrics['tt_dataframe'].fillna(0, inplace=True)
# Store and drop date column for value sorting
pair_dates = self.coin_metrics['tt_dataframe']['date']
self.coin_metrics['tt_dataframe'].drop(columns=['date'], inplace=True)
# Build columns and top traded coins
column_names = [f"Coin #{i}" for i in range(1, self.coin_metrics['top_traded_len'] + 1)]
self.coin_metrics['tt_dataframe'][column_names] = self.coin_metrics['tt_dataframe'].apply(
lambda x: x.nlargest(self.coin_metrics['top_traded_len']).index.values, axis=1, result_type='expand')
self.coin_metrics['tt_dataframe'].drop(
columns=[col for col in self.coin_metrics['tt_dataframe'] if col not in column_names], inplace=True)
# Re-add stored date column
self.coin_metrics['tt_dataframe'].insert(loc=0, column='date', value=pair_dates)
self.coin_metrics['tt_dataframe'].set_index('date')
self.coin_metrics['top_traded_updated'] = True
log.info("Updated top traded pairlist (tail-5):")
log.info(f"\n{self.coin_metrics['tt_dataframe'].tail(5)}")
tok = time.perf_counter()
log.info(f"Updating top traded pairlist took {tok - tik:0.4f} seconds...")
def top_grossing_list(self):
log.info("Updating top grossing pairlist...")
tik = time.perf_counter()
self.coin_metrics['tg_dataframe'] = DataFrame()
# Build grossing volume dataframe
for coin_pair in self.coin_metrics['current_whitelist']:
coin = coin_pair.split('/')[0]
# Get the volume for the daily informative timeframe and name the column for the coin
pair_dataframe = self.dp.get_pair_dataframe(pair=coin_pair, timeframe=self.info_timeframe_1d)
pair_dataframe.set_index('date')
if self.config['runmode'].value in ('live', 'dry_run'):
pair_dataframe = pair_dataframe.iloc[-7:, :]
# Set the date index of the self.coin_metrics['tg_dataframe'] once
if not 'date' in self.coin_metrics['tg_dataframe']:
self.coin_metrics['tg_dataframe']['date'] = pair_dataframe['date']
self.coin_metrics['tg_dataframe'].set_index('date')
# Calculate daily grossing rate
pair_dataframe[coin] = pair_dataframe['close'].pct_change() * 100
# Drop the columns we don't need
pair_dataframe.drop(columns=['open', 'high', 'low', 'close', 'volume'], inplace=True)
# Merge it in on the date key
self.coin_metrics['tg_dataframe'] = self.coin_metrics['tg_dataframe'].merge(pair_dataframe, on='date',
how='left')
# Forward fill empty cells (due to different df shapes)
self.coin_metrics['tg_dataframe'].fillna(0, inplace=True)
self.coin_metrics['tg_dataframe'].to_html('pct_df.html')
# Store and drop date column for value sorting
pair_dates = self.coin_metrics['tg_dataframe']['date']
self.coin_metrics['tg_dataframe'].drop(columns=['date'], inplace=True)
# Build columns and top grossing coins
column_names = [f"Coin #{i}" for i in range(1, self.coin_metrics['top_grossing_len'] + 1)]
self.coin_metrics['tg_dataframe'][column_names] = self.coin_metrics['tg_dataframe'].apply(
lambda x: x.nlargest(self.coin_metrics['top_grossing_len']).index.values, axis=1, result_type='expand')
self.coin_metrics['tg_dataframe'].drop(
columns=[col for col in self.coin_metrics['tg_dataframe'] if col not in column_names], inplace=True)
# Re-add stored date column
self.coin_metrics['tg_dataframe'].insert(loc=0, column='date', value=pair_dates)
self.coin_metrics['tg_dataframe'].set_index('date')
self.coin_metrics['top_grossing_updated'] = True
log.info("Updated top grossing pairlist (tail-5):")
log.info(f"\n{self.coin_metrics['tg_dataframe'].tail(5)}")
tok = time.perf_counter()
log.info(f"Updating top grossing pairlist took {tok - tik:0.4f} seconds...")
def is_top_coin(self, coin_pair, row_data, top_length) -> bool:
return coin_pair.split('/')[0] in row_data.loc['Coin #1':f"Coin #{top_length}"].values
def bot_loop_start(self, **kwargs) -> None:
"""
Called at the start of the bot iteration (one loop).
Might be used to perform pair-independent tasks
(e.g. gather some remote resource for comparison)
:param **kwargs: Ensure to keep this here so updates to this won't break your strategy.
"""
# Coin metrics mechanism
if self.coin_metrics['top_traded_enabled'] or self.coin_metrics['top_grossing_enabled']:
self.whitelist_tracker()
if self.coin_metrics['top_traded_enabled'] and not self.coin_metrics['top_traded_updated']:
self.top_traded_list()
if self.coin_metrics['top_grossing_enabled'] and not self.coin_metrics['top_grossing_updated']:
self.top_grossing_list()
if self.config["runmode"].value not in ("live", "dry_run"):
return super().bot_loop_start(**kwargs)
if self.holdSupportEnabled:
self.load_hold_trades_config()
return super().bot_loop_start(**kwargs)
def get_ticker_indicator(self):
return int(self.timeframe[:-1])
def sell_over_main(self, current_profit: float, last_candle) -> tuple:
if last_candle['close'] > last_candle['ema_200']:
if (last_candle['moderi_96']):
if current_profit >= 0.20:
if last_candle['rsi_14'] < 30.0 and (last_candle['cmf'] < 0.0):
return True, 'signal_profit_o_bull_12_1'
elif (last_candle['rsi_14'] < 27.0):
return True, 'signal_profit_o_bull_12_9'
elif 0.20 > current_profit >= 0.12:
if last_candle['rsi_14'] < 42.0 and (last_candle['cmf'] < 0.0):
return True, 'signal_profit_o_bull_11_1'
elif (last_candle['rsi_14'] < 39.0):
return True, 'signal_profit_o_bull_11_9'
elif 0.12 > current_profit >= 0.1:
if last_candle['rsi_14'] < 46.0 and (last_candle['cmf'] < 0.0):
return True, 'signal_profit_o_bull_10_1'
elif (last_candle['rsi_14'] < 48.0):
return True, 'signal_profit_o_bull_10_9'
elif 0.1 > current_profit >= 0.09:
if last_candle['rsi_14'] < 50.0 and (last_candle['cmf'] < 0.0):
return True, 'signal_profit_o_bull_9_1'
elif (last_candle['rsi_14'] < 49.0):
return True, 'signal_profit_o_bull_9_9'
elif 0.09 > current_profit >= 0.08:
if (last_candle['rsi_14'] < 57.0) and (last_candle['cmf'] < 0.0):
return True, 'signal_profit_o_bull_8_1'
elif (last_candle['rsi_14'] < 56.0) and (last_candle['cmf'] < -0.4):
return True, 'signal_profit_o_bull_8_3'
elif (last_candle['rsi_14'] < 58.0) and (last_candle['r_14'] == 0.0):
return True, 'signal_profit_o_bull_8_4'
elif (last_candle['rsi_14'] < 48.0):
return True, 'signal_profit_o_bull_8_9'
elif 0.08 > current_profit >= 0.07:
if (last_candle['rsi_14'] < 51.0) and (last_candle['cmf'] < 0.0):
return True, 'signal_profit_o_bull_7_1'
if last_candle['rsi_14'] > 83.0 and (last_candle['r_14'] == 0.0):
return True, 'signal_profit_o_bull_7_2'
elif (last_candle['rsi_14'] < 54.0) and (last_candle['cmf'] < -0.4):
return True, 'signal_profit_o_bull_7_3'
elif (last_candle['rsi_14'] < 55.0) and (last_candle['r_14'] == 0.0):
return True, 'signal_profit_o_bull_7_4'
elif (last_candle['rsi_14'] < 45.0):
return True, 'signal_profit_o_bull_7_9'
elif 0.07 > current_profit >= 0.06:
if (last_candle['rsi_14'] < 50.0) and (last_candle['cmf'] < 0.0):
return True, 'signal_profit_o_bull_6_1'
if last_candle['rsi_14'] > 82.0 and (last_candle['r_14'] == 0.0):
return True, 'signal_profit_o_bull_6_2'
elif (last_candle['rsi_14'] < 52.0) and (last_candle['cmf'] < -0.4):
return True, 'signal_profit_o_bull_6_3'
elif (last_candle['rsi_14'] < 53.0) and (last_candle['r_14'] == 0.0):
return True, 'signal_profit_o_bull_6_4'
elif (last_candle['cti'] > 0.95):
return True, 'signal_profit_o_bull_6_5'
elif (last_candle['rsi_14'] < 42.0):
return True, 'signal_profit_o_bull_6_9'
elif 0.06 > current_profit >= 0.05:
if (last_candle['rsi_14'] < 46.0) and (last_candle['cmf'] < 0.0):
return True, 'signal_profit_o_bull_5_1'
if last_candle['rsi_14'] > 80.0 and (last_candle['r_14'] == 0.0):
return True, 'signal_profit_o_bull_5_2'
elif (last_candle['rsi_14'] < 50.0) and (last_candle['cmf'] < -0.4):
return True, 'signal_profit_o_bull_5_3'
elif (last_candle['rsi_14'] < 52.0) and (last_candle['r_14'] == 0.0):
return True, 'signal_profit_o_bull_5_4'
elif (last_candle['cti'] > 0.952):
return True, 'signal_profit_o_bull_5_5'
elif (last_candle['rsi_14'] < 50.0) and (last_candle['sma_200_dec_20_1h']) and (
last_candle['cmf'] < 0.0):
return True, 'signal_profit_o_bull_5_6'
elif (last_candle['rsi_14'] < 41.0):
return True, 'signal_profit_o_bull_5_9'
elif 0.05 > current_profit >= 0.04:
if (last_candle['rsi_14'] < 45.0) and (last_candle['cmf'] < 0.0):
return True, 'signal_profit_o_bull_4_1'
elif (last_candle['rsi_14'] < 48.0) and (last_candle['cmf'] < -0.4):
return True, 'signal_profit_o_bull_4_3'
elif (last_candle['rsi_14'] < 50.0) and (last_candle['r_14'] == 0.0):
return True, 'signal_profit_o_bull_4_4'
elif (last_candle['cti'] > 0.954):
return True, 'signal_profit_o_bull_4_5'
elif (last_candle['rsi_14'] < 48.0) and (last_candle['sma_200_dec_20_1h']) and (
last_candle['cmf'] < 0.0):
return True, 'signal_profit_o_bull_4_6'
elif (last_candle['rsi_14'] < 40.0):
return True, 'signal_profit_o_bull_4_9'
elif 0.04 > current_profit >= 0.03:
if (last_candle['rsi_14'] < 37.0) and (last_candle['cmf'] < 0.0):
return True, 'signal_profit_o_bull_3_1'
elif (last_candle['rsi_14'] < 43.0) and (last_candle['cmf'] < -0.4):
return True, 'signal_profit_o_bull_3_3'
elif (last_candle['rsi_14'] < 48.0) and (last_candle['r_14'] == 0.0):
return True, 'signal_profit_o_bull_3_4'
elif (last_candle['cti'] > 0.956):
return True, 'signal_profit_o_bull_3_5'
elif (last_candle['rsi_14'] < 43.0) and (last_candle['sma_200_dec_20_1h']) and (
last_candle['cmf'] < 0.0):
return True, 'signal_profit_o_bull_3_6'
elif (last_candle['rsi_14'] < 35.0):
return True, 'signal_profit_o_bull_3_9'
elif 0.03 > current_profit >= 0.02:
if (last_candle['rsi_14'] < 36.0) and (last_candle['cmf'] < 0.0):
return True, 'signal_profit_o_bull_2_1'
elif (last_candle['rsi_14'] < 42.0) and (last_candle['cmf'] < -0.4):
return True, 'signal_profit_o_bull_2_3'
elif (last_candle['rsi_14'] < 46.0) and (last_candle['r_14'] == 0.0):
return True, 'signal_profit_o_bull_2_4'
elif (last_candle['cti'] > 0.958):
return True, 'signal_profit_o_bull_2_5'
elif (last_candle['rsi_14'] < 42.0) and (last_candle['sma_200_dec_20_1h']) and (
last_candle['cmf'] < 0.0):
return True, 'signal_profit_o_bull_2_6'
elif (last_candle['rsi_14'] < 42.0) and (last_candle['cmf_1h'] < -0.05) and (
last_candle['cti_1h'] > 0.85):
return True, 'signal_profit_o_bull_2_7'
elif last_candle['rsi_14'] < 40.0 and (last_candle['cmf'] < -0.25):
return True, 'signal_profit_o_bull_2_8'
elif (last_candle['rsi_14'] < 34.0):
return True, 'signal_profit_o_bull_2_9'
elif 0.02 > current_profit >= 0.012:
if (last_candle['rsi_14'] < 34.0) and (last_candle['cmf'] < 0.0):
return True, 'signal_profit_o_bull_1_1'
elif (last_candle['rsi_14'] < 41.0) and (last_candle['cmf'] < -0.4):
return True, 'signal_profit_o_bull_1_3'
elif (last_candle['rsi_14'] < 44.0) and (last_candle['r_14'] == 0.0):
return True, 'signal_profit_o_bull_1_4'
elif (last_candle['cti'] > 0.96):
return True, 'signal_profit_o_bull_1_5'
elif (last_candle['rsi_14'] < 41.0) and (last_candle['sma_200_dec_20_1h']) and (
last_candle['cmf'] < 0.0):
return True, 'signal_profit_o_bull_1_6'
elif (last_candle['rsi_14'] < 41.0) and (last_candle['cmf_1h'] < -0.05) and (
last_candle['cti_1h'] > 0.85):
return True, 'signal_profit_o_bull_1_7'
elif last_candle['rsi_14'] < 39.0 and (last_candle['cmf'] < -0.25):
return True, 'signal_profit_o_bull_1_8'
elif (last_candle['rsi_14'] < 32.0):
return True, 'signal_profit_o_bull_1_9'
else:
if current_profit >= 0.20:
if last_candle['rsi_14'] < 30.0 and (last_candle['cmf'] < 0.0):
return True, 'signal_profit_o_bear_12_1'
elif (last_candle['rsi_14'] < 28.0):
return True, 'signal_profit_o_bear_12_9'
elif 0.20 > current_profit >= 0.12:
if last_candle['rsi_14'] < 42.0 and (last_candle['cmf'] < 0.0):
return True, 'signal_profit_o_bear_11_1'
elif (last_candle['rsi_14'] < 40.0):
return True, 'signal_profit_o_bear_11_9'
elif 0.12 > current_profit >= 0.10:
if last_candle['rsi_14'] < 46.0 and (last_candle['cmf'] < 0.0):
return True, 'signal_profit_o_bear_10_1'
elif (last_candle['rsi_14'] < 49.0):
return True, 'signal_profit_o_bear_10_9'
elif 0.10 > current_profit >= 0.09:
if last_candle['rsi_14'] < 55.0 and (last_candle['cmf'] < 0.0):
return True, 'signal_profit_o_bear_9_1'
elif (last_candle['rsi_14'] > 75.5):
return True, 'signal_profit_o_bear_9_2'
elif (last_candle['rsi_14'] < 50.0):
return True, 'signal_profit_o_bear_9_9'
elif 0.09 > current_profit >= 0.08:
if (last_candle['rsi_14'] < 57.0) and (last_candle['cmf'] < 0.0):
return True, 'signal_profit_o_bear_8_1'
elif (last_candle['rsi_14'] > 77.0):
return True, 'signal_profit_o_bear_8_2'
elif (last_candle['rsi_14'] < 58.0) and (last_candle['cmf'] < -0.4):
return True, 'signal_profit_o_bear_8_3'
elif (last_candle['rsi_14'] < 59.0) and (last_candle['r_14'] == 0.0):
return True, 'signal_profit_o_bear_8_4'
elif (last_candle['rsi_14'] < 49.0):
return True, 'signal_profit_o_bear_8_9'
elif 0.08 > current_profit >= 0.07:
if (last_candle['rsi_14'] < 52.0) and (last_candle['cmf'] < 0.0):
return True, 'signal_profit_o_bear_7_1'
elif (last_candle['rsi_14'] > 78.0):
return True, 'signal_profit_o_bear_7_2'
elif (last_candle['rsi_14'] < 55.0) and (last_candle['cmf'] < -0.4):
return True, 'signal_profit_o_bear_7_3'
elif (last_candle['rsi_14'] < 57.0) and (last_candle['r_14'] == 0.0):
return True, 'signal_profit_o_bear_7_4'
elif (last_candle['rsi_14'] < 46.0):
return True, 'signal_profit_o_bear_7_9'
elif 0.07 > current_profit >= 0.06:
if (last_candle['rsi_14'] < 51.0) and (last_candle['cmf'] < 0.0):
return True, 'signal_profit_o_bear_6_1'
elif (last_candle['rsi_14'] > 78.0):
return True, 'signal_profit_o_bear_6_2'
elif (last_candle['rsi_14'] < 52.0) and (last_candle['cmf'] < -0.4):
return True, 'signal_profit_o_bear_6_3'
elif (last_candle['rsi_14'] < 56.0) and (last_candle['r_14'] == 0.0):
return True, 'signal_profit_o_bear_6_4'
elif (last_candle['cti'] > 0.94):
return True, 'signal_profit_o_bear_6_5'
elif (last_candle['rsi_14'] < 43.0):
return True, 'signal_profit_o_bear_6_9'
elif 0.06 > current_profit >= 0.05:
if (last_candle['rsi_14'] < 49.0) and (last_candle['cmf'] < 0.0):
return True, 'signal_profit_o_bear_5_1'
elif (last_candle['rsi_14'] < 50.0) and (last_candle['cmf'] < -0.4):
return True, 'signal_profit_o_bear_5_3'
elif (last_candle['rsi_14'] < 54.0) and (last_candle['r_14'] == 0.0):
return True, 'signal_profit_o_bear_5_4'
elif (last_candle['cti'] > 0.942):
return True, 'signal_profit_o_bear_5_5'
elif (last_candle['rsi_14'] < 50.0) and (last_candle['sma_200_dec_20_1h']) and (
last_candle['cmf'] < 0.0):
return True, 'signal_profit_o_bear_5_6'
elif (last_candle['rsi_14'] < 42.0):
return True, 'signal_profit_o_bear_5_9'
elif 0.05 > current_profit >= 0.04:
if (last_candle['rsi_14'] < 46.0) and (last_candle['cmf'] < 0.0):
return True, 'signal_profit_o_bear_4_1'
elif (last_candle['rsi_14'] < 48.0) and (last_candle['cmf'] < -0.4):
return True, 'signal_profit_o_bear_4_3'
elif (last_candle['rsi_14'] < 52.0) and (last_candle['r_14'] == 0.0):
return True, 'signal_profit_o_bear_4_4'
elif (last_candle['cti'] > 0.944):
return True, 'signal_profit_o_bear_4_5'
elif (last_candle['rsi_14'] < 48.0) and (last_candle['sma_200_dec_20_1h']) and (
last_candle['cmf'] < 0.0):
return True, 'signal_profit_o_bear_4_6'
elif (last_candle['rsi_14'] < 41.0):
return True, 'signal_profit_o_bear_4_9'
elif 0.04 > current_profit >= 0.03:
if (last_candle['rsi_14'] < 38.0) and (last_candle['cmf'] < 0.0):
return True, 'signal_profit_o_bear_3_1'
elif (last_candle['rsi_14'] < 44.0) and (last_candle['cmf'] < -0.4):
return True, 'signal_profit_o_bear_3_3'
elif (last_candle['rsi_14'] < 50.0) and (last_candle['r_14'] == 0.0):
return True, 'signal_profit_o_bear_3_4'
elif (last_candle['cti'] > 0.946):
return True, 'signal_profit_o_bear_3_5'
elif (last_candle['rsi_14'] < 44.0) and (last_candle['sma_200_dec_20_1h']) and (
last_candle['cmf'] < 0.0):
return True, 'signal_profit_o_bear_3_6'
elif (last_candle['rsi_14'] < 36.0):
return True, 'signal_profit_o_bear_3_9'
elif 0.03 > current_profit >= 0.02:
if (last_candle['rsi_14'] < 37.0) and (last_candle['cmf'] < 0.0):
return True, 'signal_profit_o_bear_2_1'
elif (last_candle['rsi_14'] < 43.0) and (last_candle['cmf'] < -0.4):
return True, 'signal_profit_o_bear_2_3'
elif (last_candle['rsi_14'] < 48.0) and (last_candle['r_14'] == 0.0):
return True, 'signal_profit_o_bear_2_4'
elif (last_candle['cti'] > 0.948):
return True, 'signal_profit_o_bear_2_5'
elif (last_candle['rsi_14'] < 43.0) and (last_candle['sma_200_dec_20_1h']) and (
last_candle['cmf'] < 0.0):
return True, 'signal_profit_o_bear_2_6'
elif (last_candle['rsi_14'] < 43.0) and (last_candle['cmf_1h'] < -0.05) and (
last_candle['cti_1h'] > 0.85):
return True, 'signal_profit_o_bear_2_7'
elif (last_candle['rsi_14'] < 35.0):
return True, 'signal_profit_o_bear_2_9'
elif 0.02 > current_profit >= 0.012:
if (last_candle['rsi_14'] < 35.0) and (last_candle['cmf'] < 0.0):
return True, 'signal_profit_o_bear_1_1'
elif (last_candle['rsi_14'] < 43.0) and (last_candle['cmf'] < -0.12):
return True, 'signal_profit_o_bear_1_3'
elif (last_candle['rsi_14'] < 46.0) and (last_candle['r_14'] == 0.0):
return True, 'signal_profit_o_bear_1_4'
elif (last_candle['cti'] > 0.95):
return True, 'signal_profit_o_bear_1_5'
elif (last_candle['rsi_14'] < 43.0) and (last_candle['sma_200_dec_20_1h']) and (
last_candle['cmf'] < 0.0):
return True, 'signal_profit_o_bear_1_6'
elif (last_candle['rsi_14'] < 43.0) and (last_candle['cmf_1h'] < -0.05) and (
last_candle['cti_1h'] > 0.85):
return True, 'signal_profit_o_bear_1_7'
elif (last_candle['rsi_14'] < 33.0):
return True, 'signal_profit_o_bear_1_9'
return False, None
def sell_under_main(self, current_profit: float, last_candle) -> tuple:
if last_candle['close'] < last_candle['ema_200']:
if (last_candle['moderi_96']):
if current_profit >= 0.20:
if last_candle['rsi_14'] < 30.0 and (last_candle['cmf'] < 0.0):
return True, 'signal_profit_u_bull_12_1'
elif (last_candle['rsi_14'] < 28.0):
return True, 'signal_profit_u_bull_12_9'
elif 0.20 > current_profit >= 0.12:
if last_candle['rsi_14'] < 42.0 and (last_candle['cmf'] < 0.0):
return True, 'signal_profit_u_bull_11_1'
elif (last_candle['rsi_14'] < 43.0):
return True, 'signal_profit_u_bull_11_9'
elif 0.12 > current_profit >= 0.10:
if last_candle['rsi_14'] < 46.0 and (last_candle['cmf'] < 0.0):
return True, 'signal_profit_u_bull_10_1'
elif (last_candle['rsi_14'] < 49.0):
return True, 'signal_profit_u_bull_10_9'
elif 0.10 > current_profit >= 0.09:
if last_candle['rsi_14'] < 50.0 and (last_candle['cmf'] < 0.0):
return True, 'signal_profit_u_bull_9_1'
elif (last_candle['rsi_14'] < 50.0):
return True, 'signal_profit_u_bull_9_9'
elif 0.09 > current_profit >= 0.08:
if last_candle['rsi_14'] < 57.0 and (last_candle['cmf'] < 0.0):
return True, 'signal_profit_u_bull_8_1'
elif (last_candle['rsi_14'] < 58.0) and (last_candle['cmf'] < -0.4):
return True, 'signal_profit_u_bull_8_3'
elif (last_candle['rsi_14'] < 58.0) and (last_candle['r_14'] == 0.0):
return True, 'signal_profit_u_bull_8_4'
elif (last_candle['rsi_14'] < 49.0):
return True, 'signal_profit_u_bull_8_9'
elif 0.08 > current_profit >= 0.07:
if last_candle['rsi_14'] < 52.0 and (last_candle['cmf'] < 0.0):
return True, 'signal_profit_u_bull_7_1'
if last_candle['rsi_14'] > 83.0 and (last_candle['r_14'] == 0.0):
return True, 'signal_profit_u_bull_7_2'
elif (last_candle['rsi_14'] < 54.0) and (last_candle['cmf'] < -0.4):
return True, 'signal_profit_u_bull_7_3'
elif (last_candle['rsi_14'] < 55.0) and (last_candle['r_14'] == 0.0):
return True, 'signal_profit_u_bull_7_4'
elif (last_candle['rsi_14'] < 46.0):
return True, 'signal_profit_u_bull_7_9'
elif 0.07 > current_profit >= 0.06:
if last_candle['rsi_14'] < 50.0 and (last_candle['cmf'] < 0.0):
return True, 'signal_profit_u_bull_6_1'
if last_candle['rsi_14'] > 82.0 and (last_candle['r_14'] == 0.0):
return True, 'signal_profit_u_bull_6_2'
elif (last_candle['rsi_14'] < 52.0) and (last_candle['cmf'] < -0.4):
return True, 'signal_profit_u_bull_6_3'
elif (last_candle['rsi_14'] < 53.0) and (last_candle['r_14'] == 0.0):
return True, 'signal_profit_u_bull_6_4'
elif (last_candle['cti'] > 0.95):
return True, 'signal_profit_u_bull_6_5'
elif (last_candle['rsi_14'] < 43.0):
return True, 'signal_profit_u_bull_6_9'
elif 0.06 > current_profit >= 0.05:
if last_candle['rsi_14'] < 48.0 and (last_candle['cmf'] < 0.0):
return True, 'signal_profit_u_bull_5_1'
if last_candle['rsi_14'] > 80.0 and (last_candle['r_14'] == 0.0):
return True, 'signal_profit_u_bull_5_2'
elif (last_candle['rsi_14'] < 51.0) and (last_candle['cmf'] < -0.4):
return True, 'signal_profit_u_bull_5_3'
elif (last_candle['rsi_14'] < 54.0) and (last_candle['r_14'] == 0.0):
return True, 'signal_profit_u_bull_5_4'
elif (last_candle['cti'] > 0.952):
return True, 'signal_profit_u_bull_5_5'
elif (last_candle['rsi_14'] < 51.0) and (last_candle['sma_200_dec_20_1h']) and (
last_candle['cmf'] < 0.0):
return True, 'signal_profit_u_bull_5_6'
elif (last_candle['rsi_14'] < 42.0):
return True, 'signal_profit_u_bull_5_9'
elif 0.05 > current_profit >= 0.04:
if last_candle['rsi_14'] < 47.0 and (last_candle['cmf'] < 0.0):
return True, 'signal_profit_u_bull_4_1'
elif (last_candle['rsi_14'] < 50.0) and (last_candle['cmf'] < -0.4):
return True, 'signal_profit_u_bull_4_3'
elif (last_candle['rsi_14'] < 52.0) and (last_candle['r_14'] == 0.0):
return True, 'signal_profit_u_bull_4_4'
elif (last_candle['cti'] > 0.954):
return True, 'signal_profit_u_bull_4_5'
elif (last_candle['rsi_14'] < 50.0) and (last_candle['sma_200_dec_20_1h']) and (
last_candle['cmf'] < 0.0):
return True, 'signal_profit_u_bull_4_6'
elif (last_candle['rsi_14'] < 41.0):
return True, 'signal_profit_u_bull_4_9'
elif 0.04 > current_profit >= 0.03:
if last_candle['rsi_14'] < 46.0 and (last_candle['cmf'] < 0.0):
return True, 'signal_profit_u_bull_3_1'
elif (last_candle['rsi_14'] < 49.0) and (last_candle['cmf'] < -0.4):
return True, 'signal_profit_u_bull_3_3'
elif (last_candle['rsi_14'] < 50.0) and (last_candle['r_14'] == 0.0):
return True, 'signal_profit_u_bull_3_4'
elif (last_candle['cti'] > 0.956):
return True, 'signal_profit_u_bull_3_5'
elif (last_candle['rsi_14'] < 49.0) and (last_candle['sma_200_dec_20_1h']) and (
last_candle['cmf'] < 0.0):
return True, 'signal_profit_u_bull_3_6'
elif (last_candle['rsi_14'] < 36.0):
return True, 'signal_profit_u_bull_3_9'
elif 0.03 > current_profit >= 0.02:
if last_candle['rsi_14'] < 45.0 and (last_candle['cmf'] < 0.0):
return True, 'signal_profit_u_bull_2_1'
elif (last_candle['rsi_14'] < 46.0) and (last_candle['cmf'] < -0.4):
return True, 'signal_profit_u_bull_2_3'
elif (last_candle['rsi_14'] < 48.0) and (last_candle['r_14'] == 0.0):
return True, 'signal_profit_u_bull_2_4'
elif (last_candle['cti'] > 0.958):
return True, 'signal_profit_u_bull_2_5'
elif (last_candle['rsi_14'] < 46.0) and (last_candle['sma_200_dec_20_1h']) and (
last_candle['cmf'] < 0.0):
return True, 'signal_profit_u_bull_2_6'
elif (last_candle['rsi_14'] < 46.0) and (last_candle['cmf_1h'] < -0.05) and (
last_candle['cti_1h'] > 0.85):
return True, 'signal_profit_u_bull_2_7'
elif last_candle['rsi_14'] < 41.0 and (last_candle['cmf'] < -0.25):
return True, 'signal_profit_u_bull_2_8'
elif (last_candle['rsi_14'] < 35.0):
return True, 'signal_profit_u_bull_2_9'
elif 0.02 > current_profit >= 0.01:
if (last_candle['rsi_14'] < 37.0) and (last_candle['cmf'] < 0.0):
return True, 'signal_profit_u_bull_1_1'
elif (last_candle['rsi_14'] < 43.0) and (last_candle['cmf'] < -0.4):
return True, 'signal_profit_u_bull_1_3'
elif (last_candle['rsi_14'] < 47.0) and (last_candle['r_14'] == 0.0):
return True, 'signal_profit_u_bull_1_4'
elif (last_candle['cti'] > 0.96):
return True, 'signal_profit_u_bull_1_5'
elif (last_candle['rsi_14'] < 43.0) and (last_candle['sma_200_dec_20_1h']) and (
last_candle['cmf'] < 0.0):
return True, 'signal_profit_u_bull_1_6'
elif (last_candle['rsi_14'] < 43.0) and (last_candle['cmf_1h'] < -0.05) and (
last_candle['cti_1h'] > 0.85):
return True, 'signal_profit_u_bull_1_7'
elif last_candle['rsi_14'] < 40.0 and (last_candle['cmf'] < -0.25):
return True, 'signal_profit_u_bull_1_8'
elif (last_candle['rsi_14'] < 33.0):
return True, 'signal_profit_u_bull_1_9'
else:
if current_profit >= 0.20:
if last_candle['rsi_14'] < 30.0:
return True, 'signal_profit_u_bear_12_1'
elif 0.20 > current_profit >= 0.12:
if last_candle['rsi_14'] < 42.0:
return True, 'signal_profit_u_bear_11_1'
elif 0.12 > current_profit >= 0.10:
if last_candle['rsi_14'] < 46.0:
return True, 'signal_profit_u_bear_10_1'
elif 0.10 > current_profit >= 0.09:
if last_candle['rsi_14'] < 50.0:
return True, 'signal_profit_u_bear_9_1'
elif (last_candle['rsi_14'] > 82.0):
return True, 'signal_profit_u_bear_9_2'
elif 0.09 > current_profit >= 0.08:
if last_candle['rsi_14'] < 57.0:
return True, 'signal_profit_u_bear_8_1'
elif (last_candle['rsi_14'] > 80.0):
return True, 'signal_profit_u_bear_8_2'
elif 0.08 > current_profit >= 0.07:
if last_candle['rsi_14'] < 56.0:
return True, 'signal_profit_u_bear_7_1'
elif (last_candle['rsi_14'] > 78.0):
return True, 'signal_profit_u_bear_7_2'
elif 0.07 > current_profit >= 0.06:
if last_candle['rsi_14'] < 54.0:
return True, 'signal_profit_u_bear_6_1'
elif (last_candle['rsi_14'] > 78.0):
return True, 'signal_profit_u_bear_6_2'
elif (last_candle['rsi_14'] < 56.0) and (last_candle['cmf'] < -0.2):
return True, 'signal_profit_u_bear_6_3'
elif (last_candle['cti'] > 0.94):
return True, 'signal_profit_u_bear_6_5'
elif 0.06 > current_profit >= 0.05:
if last_candle['rsi_14'] < 52.0:
return True, 'signal_profit_u_bear_5_1'
elif (last_candle['rsi_14'] < 57.0) and (last_candle['cmf'] < -0.2):
return True, 'signal_profit_u_bear_5_3'
elif (last_candle['rsi_14'] < 58.0) and (last_candle['r_14'] == 0.0):
return True, 'signal_profit_u_bear_5_4'
elif (last_candle['cti'] > 0.942):
return True, 'signal_profit_u_bear_5_5'
elif (last_candle['rsi_14'] < 57.0) and (last_candle['sma_200_dec_20_1h']) and (
last_candle['cmf'] < 0.0):
return True, 'signal_profit_u_bear_5_6'
elif 0.05 > current_profit >= 0.04:
if last_candle['rsi_14'] < 50.0:
return True, 'signal_profit_u_bear_4_1'
elif (last_candle['rsi_14'] < 56.0) and (last_candle['cmf'] < -0.05):
return True, 'signal_profit_u_bear_4_3'
elif (last_candle['rsi_14'] < 57.0) and (last_candle['r_14'] == 0.0):
return True, 'signal_profit_u_bear_4_4'
elif (last_candle['cti'] > 0.944):
return True, 'signal_profit_u_bear_4_5'
elif (last_candle['rsi_14'] < 56.0) and (last_candle['sma_200_dec_20_1h']) and (
last_candle['cmf'] < 0.0):
return True, 'signal_profit_u_bear_4_6'
elif 0.04 > current_profit >= 0.03:
if last_candle['rsi_14'] < 48.0:
return True, 'signal_profit_u_bear_3_1'
elif (last_candle['rsi_14'] < 55.0) and (last_candle['cmf'] < -0.05):
return True, 'signal_profit_u_bear_3_3'
elif (last_candle['rsi_14'] < 56.0) and (last_candle['r_14'] == 0.0):
return True, 'signal_profit_u_bear_3_4'
elif (last_candle['cti'] > 0.946):
return True, 'signal_profit_u_bear_3_5'
elif (last_candle['rsi_14'] < 55.0) and (last_candle['sma_200_dec_20_1h']) and (
last_candle['cmf'] < 0.0):
return True, 'signal_profit_u_bear_3_6'
elif 0.03 > current_profit >= 0.02:
if last_candle['rsi_14'] < 55.0: # 46
return True, 'signal_profit_u_bear_2_1'
elif (last_candle['rsi_14'] < 54.0) and (last_candle['cmf'] < -0.05):
return True, 'signal_profit_u_bear_2_3'
elif (last_candle['rsi_14'] < 55.0) and (last_candle['r_14'] == 0.0):
return True, 'signal_profit_u_bear_2_4'
elif (last_candle['cti'] > 0.948):
return True, 'signal_profit_u_bear_2_5'
elif (last_candle['rsi_14'] < 54.0) and (last_candle['sma_200_dec_20_1h']) and (
last_candle['cmf'] < 0.0):
return True, 'signal_profit_u_bear_2_6'
elif (last_candle['rsi_14'] < 54.0) and (last_candle['cmf_1h'] < -0.05) and (
last_candle['cti_1h'] > 0.85):
return True, 'signal_profit_u_bear_2_7'
elif 0.02 > current_profit >= 0.01:
if (last_candle['rsi_14'] < 38.0) and (last_candle['cmf'] < 0.0):
return True, 'signal_profit_u_bear_1_1'
elif (last_candle['rsi_14'] < 44.0) and (last_candle['cmf'] < -0.05):
return True, 'signal_profit_u_bear_1_3'
elif (last_candle['rsi_14'] < 48.0) and (last_candle['r_14'] == 0.0):
return True, 'signal_profit_u_bear_1_4'
elif (last_candle['cti'] > 0.95):
return True, 'signal_profit_u_bear_1_5'
elif (last_candle['rsi_14'] < 44.0) and (last_candle['sma_200_dec_20_1h']) and (
last_candle['cmf'] < 0.0):
return True, 'signal_profit_u_bear_1_6'
elif (last_candle['rsi_14'] < 44.0) and (last_candle['cmf_1h'] < -0.05) and (
last_candle['cti_1h'] > 0.85):
return True, 'signal_profit_u_bear_1_7'
elif (last_candle['rsi_14'] < 34.0):
return True, 'signal_profit_u_bear_1_9'
return False, None
def sell_pump_main(self, current_profit: float, last_candle) -> tuple:
if last_candle['sell_pump_48_1_1h']:
if (last_candle['moderi_96']):
if current_profit >= 0.2:
if (last_candle['rsi_14'] < 30.5) and (last_candle['cmf'] < 0.0):
return True, 'signal_profit_p_bull_48_12_1'
elif 0.2 > current_profit >= 0.12:
if (last_candle['rsi_14'] < 42.5) and (last_candle['cmf'] < 0.0):
return True, 'signal_profit_p_bull_48_11_1'
elif 0.12 > current_profit >= 0.1:
if (last_candle['rsi_14'] < 46.5) and (last_candle['cmf'] < 0.0):
return True, 'signal_profit_p_bull_48_10_1'
elif 0.1 > current_profit >= 0.09:
if (last_candle['rsi_14'] < 50.5) and (last_candle['cmf'] < 0.0):
return True, 'signal_profit_p_bull_48_9_1'
elif 0.09 > current_profit >= 0.08:
if (last_candle['rsi_14'] < 57.5) and (last_candle['cmf'] < 0.0):
return True, 'signal_profit_p_bull_48_8_1'
elif 0.08 > current_profit >= 0.07:
if (last_candle['rsi_14'] < 52.0) and (last_candle['cmf'] < 0.0):
return True, 'signal_profit_p_bull_48_7_1'
elif 0.07 > current_profit >= 0.06:
if (last_candle['rsi_14'] < 51.0) and (last_candle['cmf'] < 0.0):
return True, 'signal_profit_p_bull_48_6_1'
elif (last_candle['rsi_14'] < 58.0) and (last_candle['cmf'] < -0.12):
return True, 'signal_profit_p_bull_48_6_3'
elif (last_candle['rsi_14'] < 56.0) and (last_candle['r_14'] == 0):
return True, 'signal_profit_p_bull_48_6_4'
elif 0.06 > current_profit >= 0.05:
if (last_candle['rsi_14'] < 47.0) and (last_candle['cmf'] < 0.0):
return True, 'signal_profit_p_bull_48_5_1'
elif (last_candle['rsi_14'] < 56.0) and (last_candle['cmf'] < -0.12):
return True, 'signal_profit_p_bull_48_5_3'
elif (last_candle['rsi_14'] < 54.0) and (last_candle['r_14'] == 0):
return True, 'signal_profit_p_bull_48_5_4'
elif 0.05 > current_profit >= 0.04:
if (last_candle['rsi_14'] < 46.0) and (last_candle['cmf'] < 0.0):
return True, 'signal_profit_p_bull_48_4_1'
elif (last_candle['rsi_14'] < 54.0) and (last_candle['cmf'] < -0.12):
return True, 'signal_profit_p_bull_48_4_3'
elif (last_candle['rsi_14'] < 53.0) and (last_candle['r_14'] == 0):
return True, 'signal_profit_p_bull_48_4_4'
elif 0.04 > current_profit >= 0.03:
if (last_candle['rsi_14'] < 40.0) and (last_candle['cmf'] < 0.0):
return True, 'signal_profit_p_bull_48_3_1'
elif (last_candle['rsi_14'] < 46.0) and (last_candle['cmf'] < -0.12):
return True, 'signal_profit_p_bull_48_3_3'
elif (last_candle['rsi_14'] < 50.0) and (last_candle['r_14'] == 0):
return True, 'signal_profit_p_bull_48_3_4'
elif 0.03 > current_profit >= 0.02:
if (last_candle['rsi_14'] < 38.0) and (last_candle['cmf'] < 0.0):
return True, 'signal_profit_p_bull_48_2_1'
elif (last_candle['rsi_14'] < 44.0) and (last_candle['cmf'] < -0.12):
return True, 'signal_profit_p_bull_48_2_3'
elif (last_candle['rsi_14'] < 48.0) and (last_candle['r_14'] == 0):
return True, 'signal_profit_p_bull_48_2_4'
elif 0.02 > current_profit >= 0.01:
if (last_candle['rsi_14'] < 35.0) and (last_candle['cmf'] < 0.0):
return True, 'signal_profit_p_bull_48_1_1'
elif (last_candle['rsi_14'] < 38.0) and (last_candle['cmf'] < -0.12):
return True, 'signal_profit_p_bull_48_1_3'
elif (last_candle['rsi_14'] < 46.0) and (last_candle['r_14'] == 0):
return True, 'signal_profit_p_bull_48_1_4'
else:
if current_profit >= 0.2:
if (last_candle['rsi_14'] < 30.5) and (last_candle['cmf'] < 0.0):
return True, 'signal_profit_p_bear_48_12_1'
elif 0.2 > current_profit >= 0.12:
if (last_candle['rsi_14'] < 42.5) and (last_candle['cmf'] < 0.0):
return True, 'signal_profit_p_bear_48_11_1'
elif 0.12 > current_profit >= 0.1:
if (last_candle['rsi_14'] < 46.5) and (last_candle['cmf'] < 0.0):
return True, 'signal_profit_p_bear_48_10_1'
elif 0.1 > current_profit >= 0.09:
if (last_candle['rsi_14'] < 50.5) and (last_candle['cmf'] < 0.0):
return True, 'signal_profit_p_bear_48_9_1'
elif 0.09 > current_profit >= 0.08:
if (last_candle['rsi_14'] < 57.5) and (last_candle['cmf'] < 0.0):
return True, 'signal_profit_p_bear_48_8_1'
elif 0.08 > current_profit >= 0.07:
if (last_candle['rsi_14'] < 53.0) and (last_candle['cmf'] < 0.0):
return True, 'signal_profit_p_bear_48_7_1'
elif 0.07 > current_profit >= 0.06:
if (last_candle['rsi_14'] < 52.0) and (last_candle['cmf'] < 0.0):
return True, 'signal_profit_p_bear_48_6_1'
elif (last_candle['rsi_14'] < 58.0) and (last_candle['cmf'] < -0.12):
return True, 'signal_profit_p_bear_48_6_3'
elif (last_candle['rsi_14'] < 58.0) and (last_candle['r_14'] == 0):
return True, 'signal_profit_p_bear_48_6_4'
elif 0.06 > current_profit >= 0.05:
if (last_candle['rsi_14'] < 50.0) and (last_candle['cmf'] < 0.0):
return True, 'signal_profit_p_bear_48_5_1'
elif (last_candle['rsi_14'] < 56.0) and (last_candle['cmf'] < -0.12):
return True, 'signal_profit_p_bear_48_5_3'
elif (last_candle['rsi_14'] < 56.0) and (last_candle['r_14'] == 0):
return True, 'signal_profit_p_bear_48_5_4'
elif 0.05 > current_profit >= 0.04:
if (last_candle['rsi_14'] < 47.0) and (last_candle['cmf'] < 0.0):
return True, 'signal_profit_p_bear_48_4_1'
elif (last_candle['rsi_14'] < 54.0) and (last_candle['cmf'] < -0.12):
return True, 'signal_profit_p_bear_48_4_3'
elif (last_candle['rsi_14'] < 54.0) and (last_candle['r_14'] == 0):
return True, 'signal_profit_p_bear_48_4_4'
elif 0.04 > current_profit >= 0.03:
if (last_candle['rsi_14'] < 40.0) and (last_candle['cmf'] < 0.0):
return True, 'signal_profit_p_bear_48_3_1'
elif (last_candle['rsi_14'] < 44.0) and (last_candle['cmf'] < -0.12):
return True, 'signal_profit_p_bear_48_3_3'
elif (last_candle['rsi_14'] < 52.0) and (last_candle['r_14'] == 0):
return True, 'signal_profit_p_bear_48_3_4'
elif 0.03 > current_profit >= 0.02:
if (last_candle['rsi_14'] < 40.0) and (last_candle['cmf'] < 0.0):
return True, 'signal_profit_p_bear_48_2_1'
elif (last_candle['rsi_14'] < 42.0) and (last_candle['cmf'] < -0.12):
return True, 'signal_profit_p_bear_48_2_3'
elif (last_candle['rsi_14'] < 50.0) and (last_candle['r_14'] == 0):
return True, 'signal_profit_p_bear_48_2_4'
elif 0.02 > current_profit >= 0.01:
if (last_candle['rsi_14'] < 36.0) and (last_candle['cmf'] < 0.0):
return True, 'signal_profit_p_bear_48_1_1'
elif (last_candle['rsi_14'] < 40.0) and (last_candle['cmf'] < -0.12):
return True, 'signal_profit_p_bear_48_1_3'
elif (last_candle['rsi_14'] < 48.0) and (last_candle['r_14'] == 0):
return True, 'signal_profit_p_bear_48_1_4'
elif last_candle['sell_pump_36_1_1h']:
if (last_candle['moderi_96']):
if current_profit >= 0.2:
if (last_candle['rsi_14'] < 30.5) and (last_candle['cmf'] < 0.0):
return True, 'signal_profit_p_bull_36_12_1'
elif 0.2 > current_profit >= 0.12:
if (last_candle['rsi_14'] < 42.5) and (last_candle['cmf'] < 0.0):
return True, 'signal_profit_p_bull_36_11_1'
elif 0.12 > current_profit >= 0.1:
if (last_candle['rsi_14'] < 46.5) and (last_candle['cmf'] < 0.0):
return True, 'signal_profit_p_bull_36_10_1'
elif 0.1 > current_profit >= 0.09:
if (last_candle['rsi_14'] < 50.5) and (last_candle['cmf'] < 0.0):
return True, 'signal_profit_p_bull_36_9_1'
elif 0.09 > current_profit >= 0.08:
if (last_candle['rsi_14'] < 57.5) and (last_candle['cmf'] < 0.0):
return True, 'signal_profit_p_bull_36_8_1'
elif 0.08 > current_profit >= 0.07:
if (last_candle['rsi_14'] < 52.0) and (last_candle['cmf'] < 0.0):
return True, 'signal_profit_p_bull_36_7_1'
elif 0.07 > current_profit >= 0.06:
if (last_candle['rsi_14'] < 51.0) and (last_candle['cmf'] < 0.0):
return True, 'signal_profit_p_bull_36_6_1'
elif (last_candle['rsi_14'] < 58.0) and (last_candle['cmf'] < -0.2):
return True, 'signal_profit_p_bull_36_6_3'
elif (last_candle['rsi_14'] < 56.0) and (last_candle['r_14'] == 0):
return True, 'signal_profit_p_bull_36_6_4'
elif 0.06 > current_profit >= 0.05:
if (last_candle['rsi_14'] < 47.0) and (last_candle['cmf'] < 0.0):
return True, 'signal_profit_p_bull_36_5_1'
elif (last_candle['rsi_14'] < 56.0) and (last_candle['cmf'] < -0.2):
return True, 'signal_profit_p_bull_36_5_3'
elif (last_candle['rsi_14'] < 54.0) and (last_candle['r_14'] == 0):
return True, 'signal_profit_p_bull_36_5_4'
elif 0.05 > current_profit >= 0.04:
if (last_candle['rsi_14'] < 46.0) and (last_candle['cmf'] < 0.0):
return True, 'signal_profit_p_bull_36_4_1'
elif (last_candle['rsi_14'] < 54.0) and (last_candle['cmf'] < -0.2):
return True, 'signal_profit_p_bull_36_4_3'
elif (last_candle['rsi_14'] < 53.0) and (last_candle['r_14'] == 0):
return True, 'signal_profit_p_bull_36_4_4'
elif 0.04 > current_profit >= 0.03:
if (last_candle['rsi_14'] < 40.0) and (last_candle['cmf'] < 0.0):
return True, 'signal_profit_p_bull_36_3_1'
elif (last_candle['rsi_14'] < 46.0) and (last_candle['cmf'] < -0.2):
return True, 'signal_profit_p_bull_36_3_3'
elif (last_candle['rsi_14'] < 50.0) and (last_candle['r_14'] == 0):
return True, 'signal_profit_p_bull_36_3_4'
elif 0.03 > current_profit >= 0.02:
if (last_candle['rsi_14'] < 38.0) and (last_candle['cmf'] < 0.0):
return True, 'signal_profit_p_bull_36_2_1'
elif (last_candle['rsi_14'] < 44.0) and (last_candle['cmf'] < -0.2):
return True, 'signal_profit_p_bull_36_2_3'
elif (last_candle['rsi_14'] < 48.0) and (last_candle['r_14'] == 0):
return True, 'signal_profit_p_bull_36_2_4'
elif 0.02 > current_profit >= 0.01:
if (last_candle['rsi_14'] < 35.0) and (last_candle['cmf'] < 0.0):
return True, 'signal_profit_p_bull_36_1_1'
elif (last_candle['rsi_14'] < 38.0) and (last_candle['cmf'] < -0.2):
return True, 'signal_profit_p_bull_36_1_3'
elif (last_candle['rsi_14'] < 46.0) and (last_candle['r_14'] == 0):
return True, 'signal_profit_p_bull_36_1_4'
else:
if current_profit >= 0.2:
if (last_candle['rsi_14'] < 30.5) and (last_candle['cmf'] < 0.0):
return True, 'signal_profit_p_bear_36_12_1'
elif 0.2 > current_profit >= 0.12:
if (last_candle['rsi_14'] < 42.5) and (last_candle['cmf'] < 0.0):
return True, 'signal_profit_p_bear_36_11_1'
elif 0.12 > current_profit >= 0.1:
if (last_candle['rsi_14'] < 46.5) and (last_candle['cmf'] < 0.0):
return True, 'signal_profit_p_bear_36_10_1'
elif 0.1 > current_profit >= 0.09:
if (last_candle['rsi_14'] < 50.5) and (last_candle['cmf'] < 0.0):
return True, 'signal_profit_p_bear_36_9_1'
elif 0.09 > current_profit >= 0.08:
if (last_candle['rsi_14'] < 57.5) and (last_candle['cmf'] < 0.0):
return True, 'signal_profit_p_bear_36_8_1'
elif 0.08 > current_profit >= 0.07:
if (last_candle['rsi_14'] < 53.0) and (last_candle['cmf'] < 0.0):
return True, 'signal_profit_p_bear_36_7_1'
elif 0.07 > current_profit >= 0.06:
if (last_candle['rsi_14'] < 52.0) and (last_candle['cmf'] < 0.0):
return True, 'signal_profit_p_bear_36_6_1'
elif (last_candle['rsi_14'] < 58.0) and (last_candle['cmf'] < -0.2):
return True, 'signal_profit_p_bear_36_6_3'
elif (last_candle['rsi_14'] < 58.0) and (last_candle['r_14'] == 0):
return True, 'signal_profit_p_bear_36_6_4'
elif 0.06 > current_profit >= 0.05:
if (last_candle['rsi_14'] < 50.0) and (last_candle['cmf'] < 0.0):
return True, 'signal_profit_p_bear_36_5_1'
elif (last_candle['rsi_14'] < 56.0) and (last_candle['cmf'] < -0.2):
return True, 'signal_profit_p_bear_36_5_3'
elif (last_candle['rsi_14'] < 56.0) and (last_candle['r_14'] == 0):
return True, 'signal_profit_p_bear_36_5_4'
elif 0.05 > current_profit >= 0.04:
if (last_candle['rsi_14'] < 47.0) and (last_candle['cmf'] < 0.0):
return True, 'signal_profit_p_bear_36_4_1'
elif (last_candle['rsi_14'] < 54.0) and (last_candle['cmf'] < -0.2):
return True, 'signal_profit_p_bear_36_4_3'
elif (last_candle['rsi_14'] < 54.0) and (last_candle['r_14'] == 0):
return True, 'signal_profit_p_bear_36_4_4'
elif 0.04 > current_profit >= 0.03:
if (last_candle['rsi_14'] < 40.0) and (last_candle['cmf'] < 0.0):
return True, 'signal_profit_p_bear_36_3_1'
elif (last_candle['rsi_14'] < 44.0) and (last_candle['cmf'] < -0.2):
return True, 'signal_profit_p_bear_36_3_3'
elif (last_candle['rsi_14'] < 52.0) and (last_candle['r_14'] == 0):
return True, 'signal_profit_p_bear_36_3_4'
elif 0.03 > current_profit >= 0.02:
if (last_candle['rsi_14'] < 40.0) and (last_candle['cmf'] < 0.0):
return True, 'signal_profit_p_bear_36_2_1'
elif (last_candle['rsi_14'] < 42.0) and (last_candle['cmf'] < -0.2):
return True, 'signal_profit_p_bear_36_2_3'
elif (last_candle['rsi_14'] < 50.0) and (last_candle['r_14'] == 0):
return True, 'signal_profit_p_bear_36_2_4'
elif 0.02 > current_profit >= 0.01:
if (last_candle['rsi_14'] < 36.0) and (last_candle['cmf'] < 0.0):
return True, 'signal_profit_p_bear_36_1_1'
elif (last_candle['rsi_14'] < 40.0) and (last_candle['cmf'] < -0.2):
return True, 'signal_profit_p_bear_36_1_3'
elif (last_candle['rsi_14'] < 48.0) and (last_candle['r_14'] == 0):
return True, 'signal_profit_p_bear_36_1_4'
elif last_candle['sell_pump_24_1_1h']:
if (last_candle['moderi_96']):
if current_profit >= 0.2:
if (last_candle['rsi_14'] < 30.5) and (last_candle['cmf'] < 0.0):
return True, 'signal_profit_p_bull_24_12_1'
elif 0.2 > current_profit >= 0.12:
if (last_candle['rsi_14'] < 42.5) and (last_candle['cmf'] < 0.0):
return True, 'signal_profit_p_bull_24_11_1'
elif 0.12 > current_profit >= 0.1:
if (last_candle['rsi_14'] < 46.5) and (last_candle['cmf'] < 0.0):
return True, 'signal_profit_p_bull_24_10_1'
elif 0.1 > current_profit >= 0.09:
if (last_candle['rsi_14'] < 50.5) and (last_candle['cmf'] < 0.0):
return True, 'signal_profit_p_bull_24_9_1'
elif 0.09 > current_profit >= 0.08:
if (last_candle['rsi_14'] < 57.5) and (last_candle['cmf'] < 0.0):
return True, 'signal_profit_p_bull_24_8_1'
elif 0.08 > current_profit >= 0.07:
if (last_candle['rsi_14'] < 52.0) and (last_candle['cmf'] < 0.0):
return True, 'signal_profit_p_bull_24_7_1'
elif 0.07 > current_profit >= 0.06:
if (last_candle['rsi_14'] < 51.0) and (last_candle['cmf'] < 0.0):
return True, 'signal_profit_p_bull_24_6_1'
elif (last_candle['rsi_14'] < 58.0) and (last_candle['cmf'] < -0.3):
return True, 'signal_profit_p_bull_24_6_3'
elif (last_candle['rsi_14'] < 56.0) and (last_candle['r_14'] == 0):
return True, 'signal_profit_p_bull_24_6_4'
elif 0.06 > current_profit >= 0.05:
if (last_candle['rsi_14'] < 47.0) and (last_candle['cmf'] < 0.0):
return True, 'signal_profit_p_bull_24_5_1'
elif (last_candle['rsi_14'] < 56.0) and (last_candle['cmf'] < -0.3):
return True, 'signal_profit_p_bull_24_5_3'
elif (last_candle['rsi_14'] < 54.0) and (last_candle['r_14'] == 0):
return True, 'signal_profit_p_bull_24_5_4'
elif 0.05 > current_profit >= 0.04:
if (last_candle['rsi_14'] < 46.0) and (last_candle['cmf'] < 0.0):
return True, 'signal_profit_p_bull_24_4_1'
elif (last_candle['rsi_14'] < 54.0) and (last_candle['cmf'] < -0.3):
return True, 'signal_profit_p_bull_24_4_3'
elif (last_candle['rsi_14'] < 53.0) and (last_candle['r_14'] == 0):
return True, 'signal_profit_p_bull_24_4_4'
elif 0.04 > current_profit >= 0.03:
if (last_candle['rsi_14'] < 40.0) and (last_candle['cmf'] < 0.0):
return True, 'signal_profit_p_bull_24_3_1'
elif (last_candle['rsi_14'] < 46.0) and (last_candle['cmf'] < -0.3):
return True, 'signal_profit_p_bull_24_3_3'
elif (last_candle['rsi_14'] < 50.0) and (last_candle['r_14'] == 0):
return True, 'signal_profit_p_bull_24_3_4'
elif 0.03 > current_profit >= 0.02:
if (last_candle['rsi_14'] < 38.0) and (last_candle['cmf'] < 0.0):
return True, 'signal_profit_p_bull_24_2_1'
elif (last_candle['rsi_14'] < 44.0) and (last_candle['cmf'] < -0.3):
return True, 'signal_profit_p_bull_24_2_3'
elif (last_candle['rsi_14'] < 48.0) and (last_candle['r_14'] == 0):
return True, 'signal_profit_p_bull_24_2_4'
elif 0.02 > current_profit >= 0.01:
if (last_candle['rsi_14'] < 35.0) and (last_candle['cmf'] < 0.0):
return True, 'signal_profit_p_bull_24_1_1'
elif (last_candle['rsi_14'] < 38.0) and (last_candle['cmf'] < -0.3):
return True, 'signal_profit_p_bull_24_1_3'
elif (last_candle['rsi_14'] < 46.0) and (last_candle['r_14'] == 0):
return True, 'signal_profit_p_bull_24_1_4'
else:
if current_profit >= 0.2:
if (last_candle['rsi_14'] < 30.5) and (last_candle['cmf'] < 0.0):
return True, 'signal_profit_p_bear_24_12_1'
elif 0.2 > current_profit >= 0.12:
if (last_candle['rsi_14'] < 42.5) and (last_candle['cmf'] < 0.0):
return True, 'signal_profit_p_bear_24_11_1'
elif 0.12 > current_profit >= 0.1:
if (last_candle['rsi_14'] < 46.5) and (last_candle['cmf'] < 0.0):
return True, 'signal_profit_p_bear_24_10_1'
elif 0.1 > current_profit >= 0.09:
if (last_candle['rsi_14'] < 50.5) and (last_candle['cmf'] < 0.0):
return True, 'signal_profit_p_bear_24_9_1'
elif 0.09 > current_profit >= 0.08:
if (last_candle['rsi_14'] < 57.5) and (last_candle['cmf'] < 0.0):
return True, 'signal_profit_p_bear_24_8_1'
elif 0.08 > current_profit >= 0.07:
if (last_candle['rsi_14'] < 53.0) and (last_candle['cmf'] < 0.0):
return True, 'signal_profit_p_bear_24_7_1'
elif 0.07 > current_profit >= 0.06:
if (last_candle['rsi_14'] < 52.0) and (last_candle['cmf'] < 0.0):
return True, 'signal_profit_p_bear_24_6_1'
elif (last_candle['rsi_14'] < 58.0) and (last_candle['cmf'] < -0.3):
return True, 'signal_profit_p_bear_24_6_3'
elif (last_candle['rsi_14'] < 58.0) and (last_candle['r_14'] == 0):
return True, 'signal_profit_p_bear_24_6_4'
elif 0.06 > current_profit >= 0.05:
if (last_candle['rsi_14'] < 50.0) and (last_candle['cmf'] < 0.0):
return True, 'signal_profit_p_bear_24_5_1'
elif (last_candle['rsi_14'] < 56.0) and (last_candle['cmf'] < -0.3):
return True, 'signal_profit_p_bear_24_5_3'
elif (last_candle['rsi_14'] < 56.0) and (last_candle['r_14'] == 0):
return True, 'signal_profit_p_bear_24_5_4'
elif 0.05 > current_profit >= 0.04:
if (last_candle['rsi_14'] < 47.0) and (last_candle['cmf'] < 0.0):
return True, 'signal_profit_p_bear_24_4_1'
elif (last_candle['rsi_14'] < 54.0) and (last_candle['cmf'] < -0.3):
return True, 'signal_profit_p_bear_24_4_3'
elif (last_candle['rsi_14'] < 54.0) and (last_candle['r_14'] == 0):
return True, 'signal_profit_p_bear_24_4_4'
elif 0.04 > current_profit >= 0.03:
if (last_candle['rsi_14'] < 40.0) and (last_candle['cmf'] < 0.0):
return True, 'signal_profit_p_bear_24_3_1'
elif (last_candle['rsi_14'] < 44.0) and (last_candle['cmf'] < -0.3):
return True, 'signal_profit_p_bear_24_3_3'
elif (last_candle['rsi_14'] < 52.0) and (last_candle['r_14'] == 0):
return True, 'signal_profit_p_bear_24_3_4'
elif 0.03 > current_profit >= 0.02:
if (last_candle['rsi_14'] < 40.0) and (last_candle['cmf'] < 0.0):
return True, 'signal_profit_p_bear_24_2_1'
elif (last_candle['rsi_14'] < 42.0) and (last_candle['cmf'] < -0.3):
return True, 'signal_profit_p_bear_24_2_3'
elif (last_candle['rsi_14'] < 50.0) and (last_candle['r_14'] == 0):
return True, 'signal_profit_p_bear_24_2_4'
elif 0.02 > current_profit >= 0.01:
if (last_candle['rsi_14'] < 36.0) and (last_candle['cmf'] < 0.0):
return True, 'signal_profit_p_bear_24_1_1'
elif (last_candle['rsi_14'] < 40.0) and (last_candle['cmf'] < -0.3):
return True, 'signal_profit_p_bear_24_1_3'
elif (last_candle['rsi_14'] < 48.0) and (last_candle['r_14'] == 0):
return True, 'signal_profit_p_bear_24_1_4'
return False, None
def sell_dec_main(self, current_profit: float, last_candle) -> tuple:
if (self.sell_custom_dec_profit_max_1 > current_profit >= self.sell_custom_dec_profit_min_1) and (
last_candle['sma_200_dec_20']):
return True, 'signal_profit_d_1'
elif (self.sell_custom_dec_profit_max_2 > current_profit >= self.sell_custom_dec_profit_min_2) and (
last_candle['close'] < last_candle['ema_100']):
return True, 'signal_profit_d_2'
return False, None
def sell_trail_main(self, current_profit: float, last_candle, max_profit: float) -> tuple:
if (self.sell_trail_profit_max_1 > current_profit >= self.sell_trail_profit_min_1) and (
self.sell_trail_rsi_min_1 < last_candle['rsi_14'] < self.sell_trail_rsi_max_1) and (
max_profit > (current_profit + self.sell_trail_down_1)) and (last_candle['moderi_96'] == False):
return True, 'signal_profit_t_1'
elif (self.sell_trail_profit_max_2 > current_profit >= self.sell_trail_profit_min_2) and (
self.sell_trail_rsi_min_2 < last_candle['rsi_14'] < self.sell_trail_rsi_max_2) and (
max_profit > (current_profit + self.sell_trail_down_2)) and (
last_candle['ema_25'] < last_candle['ema_50']):
return True, 'signal_profit_t_2'
elif (self.sell_trail_profit_max_3 > current_profit >= self.sell_trail_profit_min_3) and (
max_profit > (current_profit + self.sell_trail_down_3)) and (last_candle['sma_200_dec_20_1h']):
return True, 'signal_profit_t_3'
elif (self.sell_trail_profit_max_4 > current_profit >= self.sell_trail_profit_min_4) and (
max_profit > (current_profit + self.sell_trail_down_4)) and (last_candle['sma_200_dec_24']) and (
last_candle['cmf'] < 0.0):
return True, 'signal_profit_t_4'
return False, None
def sell_duration_main(self, current_profit: float, last_candle, trade: 'Trade', current_time: 'datetime') -> tuple:
# Pumped pair, short duration
if (last_candle['sell_pump_24_1_1h']) and (0.2 > current_profit >= 0.07) and (
current_time - timedelta(minutes=30) < trade.open_date_utc):
return True, 'signal_profit_p_s_1'
elif (self.sell_custom_long_profit_min_1 < current_profit < self.sell_custom_long_profit_max_1) and (
current_time - timedelta(minutes=self.sell_custom_long_duration_min_1) > trade.open_date_utc):
return True, 'signal_profit_l_1'
return False, None
def sell_under_min(self, current_profit: float, last_candle) -> tuple:
if ((last_candle['moderi_96']) == False):
# Downtrend
if (
self.sell_custom_profit_under_profit_max_1 > current_profit >= self.sell_custom_profit_under_profit_min_1) and (
last_candle['close'] < last_candle['ema_200']) and (((last_candle['ema_200'] - last_candle[
'close']) / last_candle['close']) < self.sell_custom_profit_under_rel_1) and (
last_candle['rsi_14'] > last_candle['rsi_14_1h'] + self.sell_custom_profit_under_rsi_diff_1):
return True, 'signal_profit_u_e_1'
else:
# Uptrend
if (current_profit >= self.sell_custom_profit_under_profit_2) and (
last_candle['close'] < last_candle['ema_200']) and (((last_candle['ema_200'] - last_candle[
'close']) / last_candle['close']) < self.sell_custom_profit_under_rel_2) and (
last_candle['rsi_14'] > last_candle['rsi_14_1h'] + self.sell_custom_profit_under_rsi_diff_2):
return True, 'signal_profit_u_e_2'
return False, None
def sell_stoploss(self, current_profit: float, max_profit: float, max_loss: float, last_candle, previous_candle_1,
trade: 'Trade', current_time: 'datetime') -> tuple:
# Under & near EMA200, local uptrend move
if (
(current_profit < -0.05)
and (last_candle['close'] < last_candle['ema_200'])
and (last_candle['cmf'] < 0.0)
and (((last_candle['ema_200'] - last_candle['close']) / last_candle['close']) < 0.004)
and last_candle['rsi_14'] > previous_candle_1['rsi_14']
and (last_candle['rsi_14'] > (last_candle['rsi_14_1h'] + 10.0))
and (last_candle['sma_200_dec_24'])
and (current_time - timedelta(minutes=2880) > trade.open_date_utc)
):
return True, 'signal_stoploss_u_e_1'
# Under EMA200, local strong uptrend move
if (
(current_profit < -0.08)
and (last_candle['close'] < last_candle['ema_200'])
and (last_candle['cmf'] < 0.0)
and last_candle['rsi_14'] > previous_candle_1['rsi_14']
and (last_candle['rsi_14'] > (last_candle['rsi_14_1h'] + 24.0))
and (last_candle['sma_200_dec_20'])
and (last_candle['sma_200_dec_24'])
and (current_time - timedelta(minutes=2880) > trade.open_date_utc)
):
return True, 'signal_stoploss_u_e_2'
# Under EMA200, pair negative, low max rate
if (
(current_profit < -0.08)
and (max_profit < 0.04)
and (last_candle['close'] < last_candle['ema_200'])
and (last_candle['ema_25'] < last_candle['ema_50'])
and (last_candle['sma_200_dec_20'])
and (last_candle['sma_200_dec_24'])
and (last_candle['sma_200_dec_20_1h'])
and (last_candle['ema_vwma_osc_32'] < 0.0)
and (last_candle['ema_vwma_osc_64'] < 0.0)
and (last_candle['ema_vwma_osc_96'] < 0.0)
and (last_candle['cmf'] < -0.0)
and (last_candle['cmf_1h'] < -0.0)
and (last_candle['btc_not_downtrend_1h'] == False)
and (current_time - timedelta(minutes=1440) > trade.open_date_utc)
):
return True, 'signal_stoploss_u_e_doom'
# Under EMA200, pair and BTC negative, low max rate
if (
(-0.05 > current_profit > -0.09)
and (last_candle['btc_not_downtrend_1h'] == False)
and (last_candle['ema_vwma_osc_32'] < 0.0)
and (last_candle['ema_vwma_osc_64'] < 0.0)
and (max_profit < 0.005)
and (max_loss < 0.09)
and (last_candle['sma_200_dec_24'])
and (last_candle['cmf'] < -0.0)
and (last_candle['close'] < last_candle['ema_200'])
and (last_candle['ema_25'] < last_candle['ema_50'])
and (last_candle['cti'] < -0.8)
and (last_candle['r_480'] < -50.0)
):
return True, 'signal_stoploss_u_e_b_1'
# Under EMA200, pair and BTC negative, CTI, Elder Ray Index negative, normal max rate
elif (
(-0.1 > current_profit > -0.2)
and (last_candle['btc_not_downtrend_1h'] == False)
and (last_candle['ema_vwma_osc_32'] < 0.0)
and (last_candle['ema_vwma_osc_64'] < 0.0)
and (last_candle['ema_vwma_osc_96'] < 0.0)
and (max_profit < 0.05)
and (max_loss < 0.2)
and (last_candle['sma_200_dec_24'])
and (last_candle['sma_200_dec_20_1h'])
and (last_candle['cmf'] < -0.45)
and (last_candle['close'] < last_candle['ema_200'])
and (last_candle['ema_25'] < last_candle['ema_50'])
and (last_candle['cti'] < -0.8)
and (last_candle['r_480'] < -97.0)
):
return True, 'signal_stoploss_u_e_b_2'
return False, None
def sell_pump_dec(self, current_profit: float, last_candle) -> tuple:
if (0.03 > current_profit >= 0.005) and (last_candle['sell_pump_48_1_1h']) and (
last_candle['sma_200_dec_20']) and (last_candle['close'] < last_candle['ema_200']):
return True, 'signal_profit_p_d_1'
elif (0.06 > current_profit >= 0.04) and (last_candle['sell_pump_48_2_1h']) and (
last_candle['sma_200_dec_20']) and (last_candle['close'] < last_candle['ema_200']):
return True, 'signal_profit_p_d_2'
elif (0.09 > current_profit >= 0.06) and (last_candle['sell_pump_48_3_1h']) and (
last_candle['sma_200_dec_20']) and (last_candle['close'] < last_candle['ema_200']):
return True, 'signal_profit_p_d_3'
elif (0.04 > current_profit >= 0.02) and (last_candle['sma_200_dec_20']) and (last_candle['sell_pump_24_2_1h']):
return True, 'signal_profit_p_d_4'
return False, None
def sell_pump_extra(self, current_profit: float, last_candle, max_profit: float) -> tuple:
# Pumped 48h 1, under EMA200
if (self.sell_custom_pump_under_profit_max_1 > current_profit >= self.sell_custom_pump_under_profit_min_1) and (
last_candle['sell_pump_48_1_1h']) and (last_candle['close'] < last_candle['ema_200']):
return True, 'signal_profit_p_u_1'
# Pumped 36h 2, trail 1
elif (last_candle['sell_pump_36_2_1h']) and (
self.sell_custom_pump_trail_profit_max_1 > current_profit >= self.sell_custom_pump_trail_profit_min_1) and (
self.sell_custom_pump_trail_rsi_min_1 < last_candle[
'rsi_14'] < self.sell_custom_pump_trail_rsi_max_1) and (
max_profit > (current_profit + self.sell_custom_pump_trail_down_1)):
return True, 'signal_profit_p_t_1'
return False, None
def sell_recover(self, current_profit: float, last_candle, max_loss: float) -> tuple:
if (max_loss > self.sell_custom_recover_min_loss_1) and (current_profit >= self.sell_custom_recover_profit_1):
return True, 'signal_profit_r_1'
elif (max_loss > self.sell_custom_recover_min_loss_2) and (
self.sell_custom_recover_profit_max_2 > current_profit >= self.sell_custom_recover_profit_min_2) and (
last_candle['rsi_14'] < self.sell_custom_recover_rsi_2) and (
last_candle['ema_25'] < last_candle['ema_50']):
return True, 'signal_profit_r_2'
return False, None
def sell_r_1(self, current_profit: float, last_candle) -> tuple:
if 0.02 > current_profit >= 0.012:
if last_candle['r_480'] > -0.4:
return True, 'signal_profit_w_1_1'
elif 0.03 > current_profit >= 0.02:
if last_candle['r_480'] > -0.5:
return True, 'signal_profit_w_1_2'
elif 0.04 > current_profit >= 0.03:
if last_candle['r_480'] > -0.6:
return True, 'signal_profit_w_1_3'
elif 0.05 > current_profit >= 0.04:
if last_candle['r_480'] > -0.7:
return True, 'signal_profit_w_1_4'
elif 0.06 > current_profit >= 0.05:
if last_candle['r_480'] > -1.0:
return True, 'signal_profit_w_1_5'
elif 0.07 > current_profit >= 0.06:
if last_candle['r_480'] > -2.0:
return True, 'signal_profit_w_1_6'
elif 0.08 > current_profit >= 0.07:
if last_candle['r_480'] > -2.2:
return True, 'signal_profit_w_1_7'
elif 0.09 > current_profit >= 0.08:
if last_candle['r_480'] > -2.4:
return True, 'signal_profit_w_1_8'
elif 0.1 > current_profit >= 0.09:
if last_candle['r_480'] > -2.6:
return True, 'signal_profit_w_1_9'
elif 0.12 > current_profit >= 0.1:
if (last_candle['r_480'] > -2.5) and (last_candle['rsi_14'] > 72.0):
return True, 'signal_profit_w_1_10'
elif 0.2 > current_profit >= 0.12:
if (last_candle['r_480'] > -2.0) and (last_candle['rsi_14'] > 78.0):
return True, 'signal_profit_w_1_11'
elif current_profit >= 0.2:
if (last_candle['r_480'] > -1.0) and (last_candle['rsi_14'] > 80.0):
return True, 'signal_profit_w_1_12'
return False, None
def sell_r_2(self, current_profit: float, last_candle) -> tuple:
if 0.02 > current_profit >= 0.012:
if (last_candle['r_480'] > -4.0) and (last_candle['rsi_14'] > 79.0) and (
last_candle['stochrsi_fastk_96'] > 99.0) and (last_candle['stochrsi_fastd_96'] > 99.0):
return True, 'signal_profit_w_2_1'
elif 0.03 > current_profit >= 0.02:
if (last_candle['r_480'] > -4.1) and (last_candle['rsi_14'] > 79.0) and (
last_candle['stochrsi_fastk_96'] > 99.0) and (last_candle['stochrsi_fastd_96'] > 99.0):
return True, 'signal_profit_w_2_2'
elif 0.04 > current_profit >= 0.03:
if (last_candle['r_480'] > -4.2) and (last_candle['rsi_14'] > 79.0) and (
last_candle['stochrsi_fastk_96'] > 99.0) and (last_candle['stochrsi_fastd_96'] > 99.0):
return True, 'signal_profit_w_2_3'
elif 0.05 > current_profit >= 0.04:
if (last_candle['r_480'] > -4.3) and (last_candle['rsi_14'] > 79.0) and (
last_candle['stochrsi_fastk_96'] > 99.0) and (last_candle['stochrsi_fastd_96'] > 99.0):
return True, 'signal_profit_w_2_4'
elif 0.06 > current_profit >= 0.05:
if (last_candle['r_480'] > -4.4) and (last_candle['rsi_14'] > 79.0) and (
last_candle['stochrsi_fastk_96'] > 99.0) and (last_candle['stochrsi_fastd_96'] > 99.0):
return True, 'signal_profit_w_2_5'
elif 0.07 > current_profit >= 0.06:
if (last_candle['r_480'] > -4.5) and (last_candle['rsi_14'] > 79.0) and (
last_candle['stochrsi_fastk_96'] > 99.0) and (last_candle['stochrsi_fastd_96'] > 99.0):
return True, 'signal_profit_w_2_6'
elif 0.08 > current_profit >= 0.07:
if (last_candle['r_480'] > -5.0) and (last_candle['rsi_14'] > 80.0) and (
last_candle['stochrsi_fastk_96'] > 99.0) and (last_candle['stochrsi_fastd_96'] > 99.0):
return True, 'signal_profit_w_2_7'
elif 0.09 > current_profit >= 0.08:
if (last_candle['r_480'] > -5.0) and (last_candle['rsi_14'] > 80.5) and (
last_candle['stochrsi_fastk_96'] > 99.0) and (last_candle['stochrsi_fastd_96'] > 99.0):
return True, 'signal_profit_w_2_8'
elif 0.1 > current_profit >= 0.09:
if (last_candle['r_480'] > -4.8) and (last_candle['rsi_14'] > 80.5) and (
last_candle['stochrsi_fastk_96'] > 99.0) and (last_candle['stochrsi_fastd_96'] > 99.0):
return True, 'signal_profit_w_2_9'
elif 0.12 > current_profit >= 0.1:
if (last_candle['r_480'] > -4.4) and (last_candle['rsi_14'] > 80.5) and (
last_candle['stochrsi_fastk_96'] > 99.0) and (last_candle['stochrsi_fastd_96'] > 99.0):
return True, 'signal_profit_w_2_10'
elif 0.2 > current_profit >= 0.12:
if (last_candle['r_480'] > -3.2) and (last_candle['rsi_14'] > 81.0) and (
last_candle['stochrsi_fastk_96'] > 99.0) and (last_candle['stochrsi_fastd_96'] > 99.0):
return True, 'signal_profit_w_2_11'
elif current_profit >= 0.2:
if (last_candle['r_480'] > -3.0) and (last_candle['rsi_14'] > 81.5) and (
last_candle['stochrsi_fastk_96'] > 99.0) and (last_candle['stochrsi_fastd_96'] > 99.0):
return True, 'signal_profit_w_2_12'
return False, None
def sell_r_3(self, current_profit: float, last_candle) -> tuple:
if 0.02 > current_profit >= 0.012:
if (last_candle['r_480'] > -3.0) and (last_candle['rsi_14'] > 74.0) and (
last_candle['stochrsi_fastk_96'] > 99.0) and (last_candle['stochrsi_fastd_96'] > 99.0):
return True, 'signal_profit_w_3_1'
elif 0.03 > current_profit >= 0.02:
if (last_candle['r_480'] > -3.5) and (last_candle['rsi_14'] > 74.0) and (
last_candle['stochrsi_fastk_96'] > 99.0) and (last_candle['stochrsi_fastd_96'] > 99.0):
return True, 'signal_profit_w_3_2'
elif 0.04 > current_profit >= 0.03:
if (last_candle['r_480'] > -4.0) and (last_candle['rsi_14'] > 74.0) and (
last_candle['stochrsi_fastk_96'] > 99.0) and (last_candle['stochrsi_fastd_96'] > 99.0):
return True, 'signal_profit_w_3_3'
elif 0.05 > current_profit >= 0.04:
if (last_candle['r_480'] > -4.5) and (last_candle['rsi_14'] > 79.0) and (
last_candle['stochrsi_fastk_96'] > 99.0) and (last_candle['stochrsi_fastd_96'] > 99.0):
return True, 'signal_profit_w_3_4'
return False, None
def sell_r_4(self, current_profit: float, last_candle) -> tuple:
if (0.02 > current_profit >= 0.012):
if (last_candle['r_480'] > -2.0) and (last_candle['rsi_14'] > 78.0) and (last_candle['cti'] > 0.9):
return True, 'signal_profit_w_4_1'
elif (0.03 > current_profit >= 0.02):
if (last_candle['r_480'] > -2.5) and (last_candle['rsi_14'] > 78.0) and (last_candle['cti'] > 0.9):
return True, 'signal_profit_w_4_2'
elif (0.04 > current_profit >= 0.03):
if (last_candle['r_480'] > -3.0) and (last_candle['rsi_14'] > 78.0) and (last_candle['cti'] > 0.9):
return True, 'signal_profit_w_4_3'
elif (0.05 > current_profit >= 0.04):
if (last_candle['r_480'] > -3.5) and (last_candle['rsi_14'] > 78.0) and (last_candle['cti'] > 0.9):
return True, 'signal_profit_w_4_4'
elif (0.06 > current_profit >= 0.05):
if (last_candle['r_480'] > -4.0) and (last_candle['rsi_14'] > 78.0) and (last_candle['cti'] > 0.9):
return True, 'signal_profit_w_4_5'
elif (0.07 > current_profit >= 0.06):
if (last_candle['r_480'] > -4.5) and (last_candle['rsi_14'] > 79.0) and (last_candle['cti'] > 0.9):
return True, 'signal_profit_w_4_6'
elif (0.08 > current_profit >= 0.07):
if (last_candle['r_480'] > -5.0) and (last_candle['rsi_14'] > 79.0) and (last_candle['cti'] > 0.9):
return True, 'signal_profit_w_4_7'
elif (0.09 > current_profit >= 0.08):
if (last_candle['r_480'] > -5.5) and (last_candle['rsi_14'] > 79.0) and (last_candle['cti'] > 0.9):
return True, 'signal_profit_w_4_8'
elif (0.1 > current_profit >= 0.09):
if (last_candle['r_480'] > -4.0) and (last_candle['rsi_14'] > 79.0) and (last_candle['cti'] > 0.9):
return True, 'signal_profit_w_4_9'
elif (0.12 > current_profit >= 0.1):
if (last_candle['r_480'] > -3.0) and (last_candle['rsi_14'] > 79.0) and (last_candle['cti'] > 0.9):
return True, 'signal_profit_w_4_10'
elif (0.2 > current_profit >= 0.12):
if (last_candle['r_480'] > -2.5) and (last_candle['rsi_14'] > 80.0) and (last_candle['cti'] > 0.9):
return True, 'signal_profit_w_4_11'
elif (current_profit >= 0.2):
if (last_candle['r_480'] > -2.0) and (last_candle['rsi_14'] > 80.0) and (last_candle['cti'] > 0.9):
return True, 'signal_profit_w_4_12'
return False, None
def sell_r_5(self, current_profit: float, last_candle) -> tuple:
if (0.02 > current_profit >= 0.012):
if (last_candle['r_480'] > -1.0) and (last_candle['rsi_14'] > 75.0) and (last_candle['cti_1h'] > 0.92):
return True, 'signal_profit_w_5_1'
elif (0.03 > current_profit >= 0.02):
if (last_candle['r_480'] > -1.5) and (last_candle['rsi_14'] > 75.0) and (last_candle['cti_1h'] > 0.92):
return True, 'signal_profit_w_5_2'
elif (0.04 > current_profit >= 0.03):
if (last_candle['r_480'] > -2.0) and (last_candle['rsi_14'] > 75.0) and (last_candle['cti_1h'] > 0.92):
return True, 'signal_profit_w_5_3'
elif (0.05 > current_profit >= 0.04):
if (last_candle['r_480'] > -2.5) and (last_candle['rsi_14'] > 75.0) and (last_candle['cti_1h'] > 0.92):
return True, 'signal_profit_w_5_4'
elif (0.06 > current_profit >= 0.05):
if (last_candle['r_480'] > -3.0) and (last_candle['rsi_14'] > 75.0) and (last_candle['cti_1h'] > 0.92):
return True, 'signal_profit_w_5_5'
elif (0.07 > current_profit >= 0.06):
if (last_candle['r_480'] > -3.5) and (last_candle['rsi_14'] > 75.0) and (last_candle['cti_1h'] > 0.92):
return True, 'signal_profit_w_5_6'
elif (0.08 > current_profit >= 0.07):
if (last_candle['r_480'] > -4.0) and (last_candle['rsi_14'] > 75.0) and (last_candle['cti_1h'] > 0.92):
return True, 'signal_profit_w_5_7'
elif (0.09 > current_profit >= 0.08):
if (last_candle['r_480'] > -4.5) and (last_candle['rsi_14'] > 75.0) and (last_candle['cti_1h'] > 0.92):
return True, 'signal_profit_w_5_8'
elif (0.1 > current_profit >= 0.09):
if (last_candle['r_480'] > -3.0) and (last_candle['rsi_14'] > 75.0) and (last_candle['cti_1h'] > 0.92):
return True, 'signal_profit_w_5_9'
elif (0.12 > current_profit >= 0.1):
if (last_candle['r_480'] > -2.5) and (last_candle['rsi_14'] > 75.0) and (last_candle['cti_1h'] > 0.92):
return True, 'signal_profit_w_5_10'
elif (0.2 > current_profit >= 0.12):
if (last_candle['r_480'] > -2.0) and (last_candle['rsi_14'] > 75.0) and (last_candle['cti_1h'] > 0.92):
return True, 'signal_profit_w_5_11'
elif (current_profit >= 0.2):
if (last_candle['r_480'] > -1.5) and (last_candle['rsi_14'] > 80.0) and (last_candle['cti_1h'] > 0.92):
return True, 'signal_profit_w_5_12'
return False, None
def sell_r_6(self, current_profit: float, last_candle) -> tuple:
if (0.02 > current_profit >= 0.012):
if (last_candle['r_14'] > -0.1) and (last_candle['rsi_14'] > 75.0) and (last_candle['cti'] > 0.8) and (
last_candle['cci'] > 200.0):
return True, 'signal_profit_w_6_1'
elif (0.03 > current_profit >= 0.02):
if (last_candle['r_14'] > -0.2) and (last_candle['rsi_14'] > 75.0) and (last_candle['cti'] > 0.8) and (
last_candle['cci'] > 200.0):
return True, 'signal_profit_w_6_2'
elif (0.04 > current_profit >= 0.03):
if (last_candle['r_14'] > -0.3) and (last_candle['rsi_14'] > 75.0) and (last_candle['cti'] > 0.8) and (
last_candle['cci'] > 200.0):
return True, 'signal_profit_w_6_3'
elif (0.05 > current_profit >= 0.04):
if (last_candle['r_14'] > -0.4) and (last_candle['rsi_14'] > 75.0) and (last_candle['cti'] > 0.8) and (
last_candle['cci'] > 200.0):
return True, 'signal_profit_w_6_4'
elif (0.06 > current_profit >= 0.05):
if (last_candle['r_14'] > -0.5) and (last_candle['rsi_14'] > 75.0) and (last_candle['cti'] > 0.8) and (
last_candle['cci'] > 200.0):
return True, 'signal_profit_w_6_5'
elif (0.07 > current_profit >= 0.06):
if (last_candle['r_14'] > -0.6) and (last_candle['rsi_14'] > 75.0) and (last_candle['cti'] > 0.8) and (
last_candle['cci'] > 200.0):
return True, 'signal_profit_w_6_6'
elif (0.08 > current_profit >= 0.07):
if (last_candle['r_14'] > -1.0) and (last_candle['rsi_14'] > 75.0) and (last_candle['cti'] > 0.8) and (
last_candle['cci'] > 200.0):
return True, 'signal_profit_w_6_7'
elif (0.09 > current_profit >= 0.08):
if (last_candle['r_14'] > -1.5) and (last_candle['rsi_14'] > 75.0) and (last_candle['cti'] > 0.8) and (
last_candle['cci'] > 200.0):
return True, 'signal_profit_w_6_8'
elif (0.1 > current_profit >= 0.09):
if (last_candle['r_14'] > -1.0) and (last_candle['rsi_14'] > 75.0) and (last_candle['cti'] > 0.8) and (
last_candle['cci'] > 200.0):
return True, 'signal_profit_w_6_9'
elif (0.12 > current_profit >= 0.1):
if (last_candle['r_14'] > -0.75) and (last_candle['rsi_14'] > 75.0) and (last_candle['cti'] > 0.8) and (
last_candle['cci'] > 200.0):
return True, 'signal_profit_w_6_10'
elif (0.2 > current_profit >= 0.12):
if (last_candle['r_14'] > -0.5) and (last_candle['rsi_14'] > 75.0) and (last_candle['cti'] > 0.8) and (
last_candle['cci'] > 200.0):
return True, 'signal_profit_w_6_11'
elif (current_profit >= 0.2):
if (last_candle['r_14'] > -0.1) and (last_candle['rsi_14'] > 75.0) and (last_candle['cti'] > 0.8) and (
last_candle['cci'] > 200.0):
return True, 'signal_profit_w_6_12'
return False, None
def mark_profit_target(self, pair: str, trade: "Trade", current_time: "datetime", current_rate: float,
current_profit: float, last_candle, previous_candle_1) -> tuple:
# if self.profit_target_1_enable:
# if (current_profit > 0) and (last_candle['zlema_4_lowKF'] > last_candle['lowKF']) and (previous_candle_1['zlema_4_lowKF'] < previous_candle_1['lowKF']) and (last_candle['cci'] > -100) and (last_candle['hrsi'] > 70):
# return pair, "mark_profit_target_01"
return None, None
def sell_profit_target(self, pair: str, trade: "Trade", current_time: "datetime", current_rate: float,
current_profit: float, last_candle, previous_candle_1, previous_rate, previous_sell_reason,
previous_time_profit_reached) -> tuple:
# if self.profit_target_1_enable and previous_sell_reason == "mark_profit_target_01":
# if (current_profit > 0) and (current_rate < (previous_rate - 0.005)):
# return True, 'sell_profit_target_01'
return False, None
def sell_quick_mode(self, current_profit: float, max_profit: float, last_candle, previous_candle_1) -> tuple:
if (0.06 > current_profit > 0.02) and (last_candle['rsi_14'] > 80.0):
return True, 'signal_profit_q_1'
if (0.06 > current_profit > 0.02) and (last_candle['cti'] > 0.95):
return True, 'signal_profit_q_2'
if (0.04 > current_profit > 0.02) and (last_candle['pm'] <= last_candle['pmax_thresh']) and (
last_candle['close'] > last_candle['sma_21'] * 1.1):
return True, 'signal_profit_q_pmax_bull'
if (0.045 > current_profit > 0.005) and (last_candle['pm'] > last_candle['pmax_thresh']) and (
last_candle['close'] > last_candle['sma_21'] * 1.016):
return True, 'signal_profit_q_pmax_bear'
if (last_candle['momdiv_sell_1h'] == True) and (current_profit > 0.02):
return True, 'signal_profit_q_momdiv_1h'
if (last_candle['momdiv_sell'] == True) and (current_profit > 0.02):
return True, 'signal_profit_q_momdiv'
if (last_candle['momdiv_coh'] == True) and (current_profit > 0.02):
return True, 'signal_profit_q_momdiv_coh'
return False, None
def sell_ichi(self, current_profit: float, max_profit: float, max_loss: float, last_candle, previous_candle_1,
trade: 'Trade', current_time: 'datetime') -> tuple:
if (0.0 < current_profit < 0.05) and (current_time - timedelta(minutes=1440) > trade.open_date_utc) and (
last_candle['rsi_14'] > 78.0):
return True, 'signal_profit_ichi_u'
elif (max_loss > 0.07) and (current_profit > 0.02):
return True, 'signal_profit_ichi_r_0'
elif (max_loss > 0.06) and (current_profit > 0.03):
return True, 'signal_profit_ichi_r_1'
elif (max_loss > 0.05) and (current_profit > 0.04):
return True, 'signal_profit_ichi_r_2'
elif (max_loss > 0.04) and (current_profit > 0.05):
return True, 'signal_profit_ichi_r_3'
elif (max_loss > 0.03) and (current_profit > 0.06):
return True, 'signal_profit_ichi_r_4'
elif (0.05 < current_profit < 0.1) and (current_time - timedelta(minutes=720) > trade.open_date_utc):
return True, 'signal_profit_ichi_slow'
elif (0.07 < current_profit < 0.1) and (max_profit - current_profit > 0.025) and (max_profit > 0.1):
return True, 'signal_profit_ichi_t'
return False, None
def sell_long_mode(self, current_profit: float, max_profit: float, max_loss: float, last_candle, previous_candle_1,
previous_candle_2, previous_candle_3, previous_candle_4, previous_candle_5, trade: 'Trade',
current_time: 'datetime', buy_tag) -> tuple:
# Sell signal 1
if (last_candle['rsi_14'] > 78.0) and (last_candle['close'] > last_candle['bb20_2_upp']) and (
previous_candle_1['close'] > previous_candle_1['bb20_2_upp']) and (
previous_candle_2['close'] > previous_candle_2['bb20_2_upp']) and (
previous_candle_3['close'] > previous_candle_3['bb20_2_upp']) and (
previous_candle_4['close'] > previous_candle_4['bb20_2_upp']) and (
previous_candle_5['close'] > previous_candle_5['bb20_2_upp']):
if (last_candle['close'] > last_candle['ema_200']):
if (current_profit > 0.01):
return True, 'sell_long_1_1_1'
else:
if (current_profit > 0.01):
return True, 'sell_long_1_2_1'
# Sell signal 2
elif (last_candle['rsi_14'] > 79.0) and (last_candle['close'] > last_candle['bb20_2_upp']) and (
previous_candle_1['close'] > previous_candle_1['bb20_2_upp']) and (
previous_candle_2['close'] > previous_candle_2['bb20_2_upp']):
if (last_candle['close'] > last_candle['ema_200']):
if (current_profit > 0.01):
return True, 'sell_long_2_1_1'
else:
if (current_profit > 0.01):
return True, 'sell_long_2_2_1'
# Sell signal 3
elif (last_candle['rsi_14'] > 82.0):
if (last_candle['close'] > last_candle['ema_200']):
if (current_profit > 0.01):
return True, 'sell_long_3_1_1'
else:
if (current_profit > 0.01):
return True, 'sell_long_3_2_1'
# Sell signal 4
elif (last_candle['rsi_14'] > 78.0) and (last_candle['rsi_14_1h'] > 80.0):
if (last_candle['close'] > last_candle['ema_200']):
if (current_profit > 0.01):
return True, 'sell_long_4_1_1'
else:
if (current_profit > 0.01):
return True, 'sell_long_4_2_1'
# Sell signal 6
elif (last_candle['close'] < last_candle['ema_200']) and (last_candle['close'] > last_candle['ema_50']) and (
last_candle['rsi_14'] > 79.5):
if (current_profit > 0.01):
return True, 'sell_long_6_1'
# Sell signal 7
elif (last_candle['rsi_14_1h'] > 82.0) and (last_candle['crossed_below_ema_12_26']):
if (last_candle['close'] > last_candle['ema_200']):
if (current_profit > 0.01):
return True, 'sell_long_7_1_1'
else:
if (current_profit > 0.01):
return True, 'sell_long_7_2_1'
# Sell signal 8
elif (last_candle['close'] > last_candle['bb20_2_upp_1h'] * 1.05):
if (last_candle['close'] > last_candle['ema_200']):
if (current_profit > 0.01):
return True, 'sell_long_8_1_1'
else:
if (current_profit > 0.01):
return True, 'sell_long_8_2_1'
elif (0.02 < current_profit <= 0.06) and (max_profit - current_profit > 0.04) and (
last_candle['cmf'] < 0.0) and (last_candle['sma_200_dec_24']):
return True, 'sell_long_t_1'
elif (0.06 < current_profit <= 0.12) and (max_profit - current_profit > 0.06) and (last_candle['cmf'] < 0.0):
return True, 'sell_long_t_2'
elif (0.12 < current_profit <= 0.24) and (max_profit - current_profit > 0.08) and (last_candle['cmf'] < 0.0):
return True, 'sell_long_t_3'
elif (0.24 < current_profit <= 0.5) and (max_profit - current_profit > 0.09) and (last_candle['cmf'] < 0.0):
return True, 'sell_long_t_4'
elif (0.5 < current_profit <= 0.9) and (max_profit - current_profit > 0.1) and (last_candle['cmf'] < 0.0):
return True, 'sell_long_t_5'
elif (0.03 < current_profit <= 0.06) and (current_time - timedelta(minutes=720) > trade.open_date_utc) and (
last_candle['r_480'] > -20.0):
return True, 'sell_long_l_1'
return self.sell_stoploss(current_profit, max_profit, max_loss, last_candle, previous_candle_1, trade,
current_time)
def sell_pivot(self, current_profit: float, max_profit: float, max_loss: float, last_candle, previous_candle_1,
trade: 'Trade', current_time: 'datetime') -> tuple:
if (last_candle['close'] > (last_candle['res3_1d'] * 2.2)):
if (0.02 > current_profit >= 0.012):
if (last_candle['r_14'] >= -0.0) and (last_candle['rsi_14'] > 79.0) and (last_candle['r_480'] > -3.0):
return True, 'signal_profit_pv_1_1_1'
elif (0.03 > current_profit >= 0.02):
if (last_candle['r_14'] > -0.4) and (last_candle['rsi_14'] > 76.0) and (last_candle['r_480'] > -5.0):
return True, 'signal_profit_pv_1_2_1'
elif (0.04 > current_profit >= 0.03):
if (last_candle['r_14'] > -0.8) and (last_candle['rsi_14'] > 74.0) and (last_candle['r_480'] > -10.0):
return True, 'signal_profit_pv_1_3_1'
elif (0.05 > current_profit >= 0.04):
if (last_candle['r_14'] > -1.0) and (last_candle['rsi_14'] > 70.0) and (last_candle['r_480'] > -15.0):
return True, 'signal_profit_pv_1_4_1'
elif (0.06 > current_profit >= 0.05):
if (last_candle['r_14'] > -1.2) and (last_candle['rsi_14'] > 66.0) and (last_candle['r_480'] > -20.0):
return True, 'signal_profit_pv_1_5_1'
elif (0.07 > current_profit >= 0.06):
if (last_candle['r_14'] > -1.6) and (last_candle['rsi_14'] > 60.0) and (last_candle['r_480'] > -25.0):
return True, 'signal_profit_pv_1_6_1'
elif (0.08 > current_profit >= 0.07):
if (last_candle['r_14'] > -2.0) and (last_candle['rsi_14'] > 56.0) and (last_candle['r_480'] > -30.0):
return True, 'signal_profit_pv_1_7_1'
elif (last_candle['close'] > (last_candle['res3_1d'] * 1.3)):
if (0.02 > current_profit >= 0.012):
if (last_candle['rsi_14'] > 80.0) and (last_candle['cti_1h'] > 0.84) and (
last_candle['cmf'] < 0.0) and (last_candle['cci'] > 200.0):
return True, 'signal_profit_pv_2_1_1'
elif (last_candle['rsi_14'] > 79.0) and (last_candle['r_14'] > -1.0) and (last_candle['cti'] > 0.9):
return True, 'signal_profit_pv_2_1_2'
elif (0.03 > current_profit >= 0.02):
if (last_candle['rsi_14'] > 78.0) and (last_candle['cti_1h'] > 0.84) and (
last_candle['cmf'] < 0.0) and (last_candle['cci'] > 200.0):
return True, 'signal_profit_pv_2_2_1'
elif (last_candle['rsi_14'] > 77.0) and (last_candle['r_14'] > -3.0) and (last_candle['cti'] > 0.9):
return True, 'signal_profit_pv_2_2_2'
elif (0.04 > current_profit >= 0.03):
if (last_candle['rsi_14'] > 76.0) and (last_candle['cti_1h'] > 0.84) and (
last_candle['cmf'] < 0.0) and (last_candle['cci'] > 200.0):
return True, 'signal_profit_pv_2_3_1'
elif (last_candle['rsi_14'] > 75.0) and (last_candle['r_14'] > -5.0) and (last_candle['cti'] > 0.9):
return True, 'signal_profit_pv_2_3_2'
elif (0.05 > current_profit >= 0.04):
if (last_candle['rsi_14'] > 72.0) and (last_candle['cti_1h'] > 0.84) and (
last_candle['cmf'] < 0.0) and (last_candle['cci'] > 200.0):
return True, 'signal_profit_pv_2_4_1'
elif (last_candle['rsi_14'] > 71.0) and (last_candle['r_14'] > -7.0) and (last_candle['cti'] > 0.9):
return True, 'signal_profit_pv_2_4_2'
elif (0.06 > current_profit >= 0.05):
if (last_candle['rsi_14'] > 68.0) and (last_candle['cti_1h'] > 0.84) and (
last_candle['cmf'] < 0.0) and (last_candle['cci'] > 200.0):
return True, 'signal_profit_pv_2_5_1'
elif (last_candle['rsi_14'] > 67.0) and (last_candle['r_14'] > -9.0) and (last_candle['cti'] > 0.9):
return True, 'signal_profit_pv_2_5_2'
elif (0.07 > current_profit >= 0.06):
if (last_candle['rsi_14'] > 60.0) and (last_candle['cti_1h'] > 0.84) and (
last_candle['cmf'] < 0.0) and (last_candle['cci'] > 200.0):
return True, 'signal_profit_pv_2_6_1'
elif (last_candle['rsi_14'] > 59.0) and (last_candle['r_14'] > -9.0) and (last_candle['cti'] > 0.9):
return True, 'signal_profit_pv_2_6_2'
elif (0.08 > current_profit >= 0.07):
if (last_candle['rsi_14'] > 58.0) and (last_candle['cti_1h'] > 0.84) and (
last_candle['cmf'] < 0.0) and (last_candle['cci'] > 200.0):
return True, 'signal_profit_pv_2_7_1'
elif (last_candle['rsi_14'] > 57.0) and (last_candle['r_14'] > -9.0) and (last_candle['cti'] > 0.9):
return True, 'signal_profit_pv_2_7_2'
return False, None
def custom_sell(self, pair: str, trade: 'Trade', current_time: 'datetime', current_rate: float,
current_profit: float, **kwargs):
dataframe, _ = self.dp.get_analyzed_dataframe(pair, self.timeframe)
last_candle = dataframe.iloc[-1]
previous_candle_1 = dataframe.iloc[-2]
previous_candle_2 = dataframe.iloc[-3]
previous_candle_3 = dataframe.iloc[-4]
previous_candle_4 = dataframe.iloc[-5]
previous_candle_5 = dataframe.iloc[-6]
buy_tag = 'empty'
if hasattr(trade, 'buy_tag') and trade.buy_tag is not None:
buy_tag = trade.buy_tag
buy_tags = buy_tag.split()
max_profit = ((trade.max_rate - trade.open_rate) / trade.open_rate)
max_loss = ((trade.open_rate - trade.min_rate) / trade.min_rate)
# Long mode
if all(c in ['45', '46', '47'] for c in buy_tags):
sell, signal_name = self.sell_long_mode(current_profit, max_profit, max_loss, last_candle,
previous_candle_1, previous_candle_2, previous_candle_3,
previous_candle_4, previous_candle_5, trade, current_time, buy_tag)
if sell and (signal_name is not None):
return f"{signal_name} ( {buy_tag})"
# Skip remaining sell logic for long mode
return None
# Quick sell mode
if all(c in ['empty', '32', '33', '34', '35', '36', '37', '38', '40'] for c in buy_tags):
sell, signal_name = self.sell_quick_mode(current_profit, max_profit, last_candle, previous_candle_1)
if sell and (signal_name is not None):
return f"{signal_name} ( {buy_tag})"
# Ichi Trade management
if all(c in ['39'] for c in buy_tags):
sell, signal_name = self.sell_ichi(current_profit, max_profit, max_loss, last_candle, previous_candle_1,
trade, current_time)
if sell and (signal_name is not None):
return f"{signal_name} ( {buy_tag})"
# Over EMA200, main profit targets
sell, signal_name = self.sell_over_main(current_profit, last_candle)
if sell and (signal_name is not None):
return f"{signal_name} ( {buy_tag})"
# Under EMA200, main profit targets
sell, signal_name = self.sell_under_main(current_profit, last_candle)
if sell and (signal_name is not None):
return f"{signal_name} ( {buy_tag})"
# The pair is pumped
sell, signal_name = self.sell_pump_main(current_profit, last_candle)
if sell and (signal_name is not None):
return f"{signal_name} ( {buy_tag})"
# The pair is descending
sell, signal_name = self.sell_dec_main(current_profit, last_candle)
if sell and (signal_name is not None):
return f"{signal_name} ( {buy_tag})"
# Trailing
sell, signal_name = self.sell_trail_main(current_profit, last_candle, max_profit)
if sell and (signal_name is not None):
return f"{signal_name} ( {buy_tag})"
# Duration based
sell, signal_name = self.sell_duration_main(current_profit, last_candle, trade, current_time)
if sell and (signal_name is not None):
return f"{signal_name} ( {buy_tag})"
# Under EMA200, exit with any profit
sell, signal_name = self.sell_under_min(current_profit, last_candle)
if sell and (signal_name is not None):
return f"{signal_name} ( {buy_tag})"
# Stoplosses
sell, signal_name = self.sell_stoploss(current_profit, max_profit, max_loss, last_candle, previous_candle_1,
trade, current_time)
if sell and (signal_name is not None):
return f"{signal_name} ( {buy_tag})"
# Pumped descending pairs
sell, signal_name = self.sell_pump_dec(current_profit, last_candle)
if sell and (signal_name is not None):
return f"{signal_name} ( {buy_tag})"
# Extra sells for pumped pairs
sell, signal_name = self.sell_pump_extra(current_profit, last_candle, max_profit)
if sell and (signal_name is not None):
return f"{signal_name} ( {buy_tag})"
# Extra sells for trades that recovered
sell, signal_name = self.sell_recover(current_profit, last_candle, max_loss)
if sell and (signal_name is not None):
return f"{signal_name} ( {buy_tag})"
# Williams %R based sell 1
sell, signal_name = self.sell_r_1(current_profit, last_candle)
if sell and (signal_name is not None):
return f"{signal_name} ( {buy_tag})"
# Williams %R based sell 2
sell, signal_name = self.sell_r_2(current_profit, last_candle)
if sell and (signal_name is not None):
return f"{signal_name} ( {buy_tag})"
# Williams %R based sell 3
sell, signal_name = self.sell_r_3(current_profit, last_candle)
if sell and (signal_name is not None):
return f"{signal_name} ( {buy_tag})"
# Williams %R based sell 4, plus CTI
sell, signal_name = self.sell_r_4(current_profit, last_candle)
if (sell) and (signal_name is not None):
return f"{signal_name} ( {buy_tag})"
# Williams %R based sell 5, plus RSI and CTI 1h
sell, signal_name = self.sell_r_5(current_profit, last_candle)
if sell and (signal_name is not None):
return f"{signal_name} ( {buy_tag})"
# Williams %R based sell 6, plus RSI, CTI, CCI
sell, signal_name = self.sell_r_6(current_profit, last_candle)
if sell and (signal_name is not None):
return f"{signal_name} ( {buy_tag})"
# Pivot points based sells
sell, signal_name = self.sell_pivot(current_profit, max_profit, max_loss, last_candle, previous_candle_1, trade,
current_time)
if sell and (signal_name is not None):
return f"{signal_name} ( {buy_tag})"
# Profit Target Signal
# Check if pair exist on target_profit_cache
if self.target_profit_cache is not None and pair in self.target_profit_cache.data:
previous_rate = self.target_profit_cache.data[pair]['rate']
previous_sell_reason = self.target_profit_cache.data[pair]['sell_reason']
previous_time_profit_reached = datetime.fromisoformat(
self.target_profit_cache.data[pair]['time_profit_reached'])
sell, signal_name = self.sell_profit_target(pair, trade, current_time, current_rate, current_profit,
last_candle, previous_candle_1, previous_rate,
previous_sell_reason, previous_time_profit_reached)
if sell and signal_name is not None:
return f"{signal_name} ( {buy_tag})"
pair, mark_signal = self.mark_profit_target(pair, trade, current_time, current_rate, current_profit,
last_candle, previous_candle_1)
if pair:
self._set_profit_target(pair, mark_signal, current_rate, current_time)
# Sell signal 1
if self.sell_condition_1_enable and (last_candle['rsi_14'] > self.sell_rsi_bb_1) and (
last_candle['close'] > last_candle['bb20_2_upp']) and (
previous_candle_1['close'] > previous_candle_1['bb20_2_upp']) and (
previous_candle_2['close'] > previous_candle_2['bb20_2_upp']) and (
previous_candle_3['close'] > previous_candle_3['bb20_2_upp']) and (
previous_candle_4['close'] > previous_candle_4['bb20_2_upp']) and (
previous_candle_5['close'] > previous_candle_5['bb20_2_upp']):
if (last_candle['close'] > last_candle['ema_200']):
if (current_profit > 0.01):
return f"sell_signal_1_1_1 ( {buy_tag})"
else:
if (current_profit > 0.01):
return f"sell_signal_1_2_1 ( {buy_tag})"
elif (max_loss > 0.5):
return f"sell_signal_1_2_2 ( {buy_tag})"
# Sell signal 2
elif (self.sell_condition_2_enable) and (last_candle['rsi_14'] > self.sell_rsi_bb_2) and (
last_candle['close'] > last_candle['bb20_2_upp']) and (
previous_candle_1['close'] > previous_candle_1['bb20_2_upp']) and (
previous_candle_2['close'] > previous_candle_2['bb20_2_upp']):
if (last_candle['close'] > last_candle['ema_200']):
if (current_profit > 0.01):
return f"sell_signal_2_1_1 ( {buy_tag})"
else:
if (current_profit > 0.01):
return f"sell_signal_2_2_1 ( {buy_tag})"
elif (max_loss > 0.5):
return f"sell_signal_2_2_2 ( {buy_tag})"
# Sell signal 3
elif (self.sell_condition_3_enable) and (last_candle['rsi_14'] > self.sell_rsi_main_3):
if (last_candle['close'] > last_candle['ema_200']):
if (current_profit > 0.01):
return f"sell_signal_3_1_1 ( {buy_tag})"
else:
if (current_profit > 0.01):
return f"sell_signal_3_2_1 ( {buy_tag})"
elif (max_loss > 0.5):
return f"sell_signal_3_2_2 ( {buy_tag})"
# Sell signal 4
elif self.sell_condition_4_enable and (last_candle['rsi_14'] > self.sell_dual_rsi_rsi_4) and (
last_candle['rsi_14_1h'] > self.sell_dual_rsi_rsi_1h_4):
if (last_candle['close'] > last_candle['ema_200']):
if (current_profit > 0.01):
return f"sell_signal_4_1_1 ( {buy_tag})"
else:
if (current_profit > 0.01):
return f"sell_signal_4_2_1 ( {buy_tag})"
elif (max_loss > 0.5):
return f"sell_signal_4_2_2 ( {buy_tag})"
# Sell signal 6
elif self.sell_condition_6_enable and (last_candle['close'] < last_candle['ema_200']) and (
last_candle['close'] > last_candle['ema_50']) and (last_candle['rsi_14'] > self.sell_rsi_under_6):
if (current_profit > 0.01):
return f"sell_signal_6_1 ( {buy_tag})"
elif (max_loss > 0.5):
return f"sell_signal_6_2 ( {buy_tag})"
# Sell signal 7
elif self.sell_condition_7_enable and (last_candle['rsi_14_1h'] > self.sell_rsi_1h_7) and (
last_candle['crossed_below_ema_12_26']):
if (last_candle['close'] > last_candle['ema_200']):
if (current_profit > 0.01):
return f"sell_signal_7_1_1 ( {buy_tag})"
else:
if (current_profit > 0.01):
return f"sell_signal_7_2_1 ( {buy_tag})"
elif (max_loss > 0.5):
return f"sell_signal_7_2_2 ( {buy_tag})"
# Sell signal 8
elif self.sell_condition_8_enable and (
last_candle['close'] > last_candle['bb20_2_upp_1h'] * self.sell_bb_relative_8):
if (last_candle['close'] > last_candle['ema_200']):
if (current_profit > 0.01):
return f"sell_signal_8_1_1 ( {buy_tag})"
else:
if (current_profit > 0.01):
return f"sell_signal_8_2_1 ( {buy_tag})"
elif (max_loss > 0.5):
return f"sell_signal_8_2_2 ( {buy_tag})"
return None
def range_percent_change(self, dataframe: DataFrame, method, length: int) -> float:
"""
Rolling Percentage Change Maximum across interval.
:param dataframe: DataFrame The original OHLC dataframe
:param method: High to Low / Open to Close
:param length: int The length to look back
"""
if method == 'HL':
return (dataframe['high'].rolling(length).max() - dataframe['low'].rolling(length).min()) / dataframe[
'low'].rolling(length).min()
elif method == 'OC':
return (dataframe['open'].rolling(length).max() - dataframe['close'].rolling(length).min()) / dataframe[
'close'].rolling(length).min()
else:
raise ValueError(f"Method {method} not defined!")
def top_percent_change(self, dataframe: DataFrame, length: int) -> float:
"""
Percentage change of the current close from the range maximum Open price
:param dataframe: DataFrame The original OHLC dataframe
:param length: int The length to look back
"""
if length == 0:
return (dataframe['open'] - dataframe['close']) / dataframe['close']
else:
return (dataframe['open'].rolling(length).max() - dataframe['close']) / dataframe['close']
def range_maxgap(self, dataframe: DataFrame, length: int) -> float:
"""
Maximum Price Gap across interval.
:param dataframe: DataFrame The original OHLC dataframe
:param length: int The length to look back
"""
return dataframe['open'].rolling(length).max() - dataframe['close'].rolling(length).min()
def range_maxgap_adjusted(self, dataframe: DataFrame, length: int, adjustment: float) -> float:
"""
Maximum Price Gap across interval adjusted.
:param dataframe: DataFrame The original OHLC dataframe
:param length: int The length to look back
:param adjustment: int The adjustment to be applied
"""
return self.range_maxgap(dataframe, length) / adjustment
def range_height(self, dataframe: DataFrame, length: int) -> float:
"""
Current close distance to range bottom.
:param dataframe: DataFrame The original OHLC dataframe
:param length: int The length to look back
"""
return dataframe['close'] - dataframe['close'].rolling(length).min()
def safe_pump(self, dataframe: DataFrame, length: int, thresh: float, pull_thresh: float) -> bool:
"""
Determine if entry after a pump is safe.
:param dataframe: DataFrame The original OHLC dataframe
:param length: int The length to look back
:param thresh: int Maximum percentage change threshold
:param pull_thresh: int Pullback from interval maximum threshold
"""
return (dataframe[f'oc_pct_change_{length}'] < thresh) | (
self.range_maxgap_adjusted(dataframe, length, pull_thresh) > self.range_height(dataframe, length))
def safe_dips(self, dataframe: DataFrame, thresh_0, thresh_2, thresh_12, thresh_144) -> bool:
"""
Determine if dip is safe to enter.
:param dataframe: DataFrame The original OHLC dataframe
:param thresh_0: Threshold value for 0 length top pct change
:param thresh_2: Threshold value for 2 length top pct change
:param thresh_12: Threshold value for 12 length top pct change
:param thresh_144: Threshold value for 144 length top pct change
"""
return ((dataframe['tpct_change_0'] < thresh_0) &
(dataframe['tpct_change_2'] < thresh_2) &
(dataframe['tpct_change_12'] < thresh_12) &
(dataframe['tpct_change_144'] < thresh_144))
def informative_pairs(self):
# get access to all pairs available in whitelist.
pairs = self.dp.current_whitelist()
# Assign tf to each pair so they can be downloaded and cached for strategy.
informative_pairs = [(pair, self.info_timeframe_1h) for pair in pairs]
informative_pairs.extend([(pair, self.info_timeframe_1d) for pair in pairs])
if self.config['stake_currency'] in ['USDT', 'BUSD', 'USDC', 'DAI', 'TUSD', 'PAX', 'USD', 'EUR', 'GBP']:
btc_info_pair = f"BTC/{self.config['stake_currency']}"
else:
btc_info_pair = "BTC/USDT"
informative_pairs.append((btc_info_pair, self.timeframe))
informative_pairs.append((btc_info_pair, self.info_timeframe_1h))
informative_pairs.append((btc_info_pair, self.info_timeframe_1d))
return informative_pairs
def informative_1d_indicators(self, dataframe: DataFrame, metadata: dict) -> DataFrame:
tik = time.perf_counter()
assert self.dp, "DataProvider is required for multiple timeframes."
# Get the informative pair
informative_1d = self.dp.get_pair_dataframe(pair=metadata['pair'], timeframe=self.info_timeframe_1d)
# Top traded coins
if self.coin_metrics['top_traded_enabled']:
informative_1d = informative_1d.merge(self.coin_metrics['tt_dataframe'], on='date', how='left')
informative_1d['is_top_traded'] = informative_1d.apply(
lambda row: self.is_top_coin(metadata['pair'], row, self.coin_metrics['top_traded_len']), axis=1)
column_names = [f"Coin #{i}" for i in range(1, self.coin_metrics['top_traded_len'] + 1)]
informative_1d.drop(columns=column_names, inplace=True)
# Top grossing coins
if self.coin_metrics['top_grossing_enabled']:
informative_1d = informative_1d.merge(self.coin_metrics['tg_dataframe'], on='date', how='left')
informative_1d['is_top_grossing'] = informative_1d.apply(
lambda row: self.is_top_coin(metadata['pair'], row, self.coin_metrics['top_grossing_len']), axis=1)
column_names = [f"Coin #{i}" for i in range(1, self.coin_metrics['top_grossing_len'] + 1)]
informative_1d.drop(columns=column_names, inplace=True)
# Pivots
informative_1d['pivot'], informative_1d['res1'], informative_1d['res2'], informative_1d['res3'], informative_1d[
'sup1'], informative_1d['sup2'], informative_1d['sup3'] = pivot_points(informative_1d, mode='fibonacci')
# Smoothed Heikin-Ashi
informative_1d['open_sha'], informative_1d['close_sha'], informative_1d['low_sha'] = HeikinAshi(informative_1d,
smooth_inputs=True,
smooth_outputs=False,
length=10)
tok = time.perf_counter()
log.debug(f"[{metadata['pair']}] informative_1d_indicators took: {tok - tik:0.4f} seconds.")
return informative_1d
def informative_1h_indicators(self, dataframe: DataFrame, metadata: dict) -> DataFrame:
tik = time.perf_counter()
assert self.dp, "DataProvider is required for multiple timeframes."
# Get the informative pair
informative_1h = self.dp.get_pair_dataframe(pair=metadata['pair'], timeframe=self.info_timeframe_1h)
# EMA
informative_1h['ema_12'] = ta.EMA(informative_1h, timeperiod=12)
informative_1h['ema_15'] = ta.EMA(informative_1h, timeperiod=15)
informative_1h['ema_20'] = ta.EMA(informative_1h, timeperiod=20)
informative_1h['ema_25'] = ta.EMA(informative_1h, timeperiod=25)
informative_1h['ema_26'] = ta.EMA(informative_1h, timeperiod=26)
informative_1h['ema_35'] = ta.EMA(informative_1h, timeperiod=35)
informative_1h['ema_50'] = ta.EMA(informative_1h, timeperiod=50)
informative_1h['ema_100'] = ta.EMA(informative_1h, timeperiod=100)
informative_1h['ema_200'] = ta.EMA(informative_1h, timeperiod=200)
# SMA
informative_1h['sma_200'] = ta.SMA(informative_1h, timeperiod=200)
informative_1h['sma_200_dec_20'] = informative_1h['sma_200'] < informative_1h['sma_200'].shift(20)
# RSI
informative_1h['rsi_14'] = ta.RSI(informative_1h, timeperiod=14)
# EWO
informative_1h['ewo_sma'] = ewo_sma(informative_1h, 50, 200)
# BB
bollinger = qtpylib.bollinger_bands(qtpylib.typical_price(informative_1h), window=20, stds=2)
informative_1h['bb20_2_low'] = bollinger['lower']
informative_1h['bb20_2_mid'] = bollinger['mid']
informative_1h['bb20_2_upp'] = bollinger['upper']
# Chaikin Money Flow
informative_1h['cmf'] = chaikin_money_flow(informative_1h, 20)
# Williams %R
informative_1h['r_480'] = williams_r(informative_1h, period=480)
# CTI
informative_1h['cti'] = pta.cti(informative_1h["close"], length=20)
# CRSI (3, 2, 100)
crsi_closechange = informative_1h['close'] / informative_1h['close'].shift(1)
crsi_updown = np.where(crsi_closechange.gt(1), 1.0, np.where(crsi_closechange.lt(1), -1.0, 0.0))
informative_1h['crsi'] = (ta.RSI(informative_1h['close'], timeperiod=3) + ta.RSI(crsi_updown,
timeperiod=2) + ta.ROC(
informative_1h['close'], 100)) / 3
# Ichimoku
ichi = ichimoku(informative_1h, conversion_line_period=20, base_line_periods=60, laggin_span=120,
displacement=30)
informative_1h['chikou_span'] = ichi['chikou_span']
informative_1h['tenkan_sen'] = ichi['tenkan_sen']
informative_1h['kijun_sen'] = ichi['kijun_sen']
informative_1h['senkou_a'] = ichi['senkou_span_a']
informative_1h['senkou_b'] = ichi['senkou_span_b']
informative_1h['leading_senkou_span_a'] = ichi['leading_senkou_span_a']
informative_1h['leading_senkou_span_b'] = ichi['leading_senkou_span_b']
informative_1h['chikou_span_greater'] = (informative_1h['chikou_span'] > informative_1h['senkou_a']).shift(
30).fillna(False)
informative_1h.loc[:, 'cloud_top'] = informative_1h.loc[:, ['senkou_a', 'senkou_b']].max(axis=1)
# SSL
ssl_down, ssl_up = SSLChannels(informative_1h, 10)
informative_1h['ssl_down'] = ssl_down
informative_1h['ssl_up'] = ssl_up
# MOMDIV
mom = momdiv(informative_1h)
informative_1h['momdiv_buy'] = mom['momdiv_buy']
informative_1h['momdiv_sell'] = mom['momdiv_sell']
informative_1h['momdiv_coh'] = mom['momdiv_coh']
informative_1h['momdiv_col'] = mom['momdiv_col']
# Pump protections
informative_1h['hl_pct_change_48'] = self.range_percent_change(informative_1h, 'HL', 48)
informative_1h['hl_pct_change_36'] = self.range_percent_change(informative_1h, 'HL', 36)
informative_1h['hl_pct_change_24'] = self.range_percent_change(informative_1h, 'HL', 24)
informative_1h['oc_pct_change_48'] = self.range_percent_change(informative_1h, 'OC', 48)
informative_1h['oc_pct_change_36'] = self.range_percent_change(informative_1h, 'OC', 36)
informative_1h['oc_pct_change_24'] = self.range_percent_change(informative_1h, 'OC', 24)
informative_1h['hl_pct_change_5'] = self.range_percent_change(informative_1h, 'HL', 5)
informative_1h['low_5'] = informative_1h['low'].shift().rolling(5).min()
informative_1h['safe_pump_24_10'] = self.safe_pump(informative_1h, 24, self.buy_pump_threshold_10_24,
self.buy_pump_pull_threshold_10_24)
informative_1h['safe_pump_36_10'] = self.safe_pump(informative_1h, 36, self.buy_pump_threshold_10_36,
self.buy_pump_pull_threshold_10_36)
informative_1h['safe_pump_48_10'] = self.safe_pump(informative_1h, 48, self.buy_pump_threshold_10_48,
self.buy_pump_pull_threshold_10_48)
informative_1h['safe_pump_24_20'] = self.safe_pump(informative_1h, 24, self.buy_pump_threshold_20_24,
self.buy_pump_pull_threshold_20_24)
informative_1h['safe_pump_36_20'] = self.safe_pump(informative_1h, 36, self.buy_pump_threshold_20_36,
self.buy_pump_pull_threshold_20_36)
informative_1h['safe_pump_48_20'] = self.safe_pump(informative_1h, 48, self.buy_pump_threshold_20_48,
self.buy_pump_pull_threshold_20_48)
informative_1h['safe_pump_24_30'] = self.safe_pump(informative_1h, 24, self.buy_pump_threshold_30_24,
self.buy_pump_pull_threshold_30_24)
informative_1h['safe_pump_36_30'] = self.safe_pump(informative_1h, 36, self.buy_pump_threshold_30_36,
self.buy_pump_pull_threshold_30_36)
informative_1h['safe_pump_48_30'] = self.safe_pump(informative_1h, 48, self.buy_pump_threshold_30_48,
self.buy_pump_pull_threshold_30_48)
informative_1h['safe_pump_24_40'] = self.safe_pump(informative_1h, 24, self.buy_pump_threshold_40_24,
self.buy_pump_pull_threshold_40_24)
informative_1h['safe_pump_36_40'] = self.safe_pump(informative_1h, 36, self.buy_pump_threshold_40_36,
self.buy_pump_pull_threshold_40_36)
informative_1h['safe_pump_48_40'] = self.safe_pump(informative_1h, 48, self.buy_pump_threshold_40_48,
self.buy_pump_pull_threshold_40_48)
informative_1h['safe_pump_24_50'] = self.safe_pump(informative_1h, 24, self.buy_pump_threshold_50_24,
self.buy_pump_pull_threshold_50_24)
informative_1h['safe_pump_36_50'] = self.safe_pump(informative_1h, 36, self.buy_pump_threshold_50_36,
self.buy_pump_pull_threshold_50_36)
informative_1h['safe_pump_48_50'] = self.safe_pump(informative_1h, 48, self.buy_pump_threshold_50_48,
self.buy_pump_pull_threshold_50_48)
informative_1h['safe_pump_24_60'] = self.safe_pump(informative_1h, 24, self.buy_pump_threshold_60_24,
self.buy_pump_pull_threshold_60_24)
informative_1h['safe_pump_36_60'] = self.safe_pump(informative_1h, 36, self.buy_pump_threshold_60_36,
self.buy_pump_pull_threshold_60_36)
informative_1h['safe_pump_48_60'] = self.safe_pump(informative_1h, 48, self.buy_pump_threshold_60_48,
self.buy_pump_pull_threshold_60_48)
informative_1h['safe_pump_24_70'] = self.safe_pump(informative_1h, 24, self.buy_pump_threshold_70_24,
self.buy_pump_pull_threshold_70_24)
informative_1h['safe_pump_36_70'] = self.safe_pump(informative_1h, 36, self.buy_pump_threshold_70_36,
self.buy_pump_pull_threshold_70_36)
informative_1h['safe_pump_48_70'] = self.safe_pump(informative_1h, 48, self.buy_pump_threshold_70_48,
self.buy_pump_pull_threshold_70_48)
informative_1h['safe_pump_24_80'] = self.safe_pump(informative_1h, 24, self.buy_pump_threshold_80_24,
self.buy_pump_pull_threshold_80_24)
informative_1h['safe_pump_36_80'] = self.safe_pump(informative_1h, 36, self.buy_pump_threshold_80_36,
self.buy_pump_pull_threshold_80_36)
informative_1h['safe_pump_48_80'] = self.safe_pump(informative_1h, 48, self.buy_pump_threshold_80_48,
self.buy_pump_pull_threshold_80_48)
informative_1h['safe_pump_24_90'] = self.safe_pump(informative_1h, 24, self.buy_pump_threshold_90_24,
self.buy_pump_pull_threshold_90_24)
informative_1h['safe_pump_36_90'] = self.safe_pump(informative_1h, 36, self.buy_pump_threshold_90_36,
self.buy_pump_pull_threshold_90_36)
informative_1h['safe_pump_48_90'] = self.safe_pump(informative_1h, 48, self.buy_pump_threshold_90_48,
self.buy_pump_pull_threshold_90_48)
informative_1h['safe_pump_24_100'] = self.safe_pump(informative_1h, 24, self.buy_pump_threshold_100_24,
self.buy_pump_pull_threshold_100_24)
informative_1h['safe_pump_36_100'] = self.safe_pump(informative_1h, 36, self.buy_pump_threshold_100_36,
self.buy_pump_pull_threshold_100_36)
informative_1h['safe_pump_48_100'] = self.safe_pump(informative_1h, 48, self.buy_pump_threshold_100_48,
self.buy_pump_pull_threshold_100_48)
informative_1h['safe_pump_24_110'] = self.safe_pump(informative_1h, 24, self.buy_pump_threshold_110_24,
self.buy_pump_pull_threshold_110_24)
informative_1h['safe_pump_36_110'] = self.safe_pump(informative_1h, 36, self.buy_pump_threshold_110_36,
self.buy_pump_pull_threshold_110_36)
informative_1h['safe_pump_48_110'] = self.safe_pump(informative_1h, 48, self.buy_pump_threshold_110_48,
self.buy_pump_pull_threshold_110_48)
informative_1h['safe_pump_24_120'] = self.safe_pump(informative_1h, 24, self.buy_pump_threshold_120_24,
self.buy_pump_pull_threshold_120_24)
informative_1h['safe_pump_36_120'] = self.safe_pump(informative_1h, 36, self.buy_pump_threshold_120_36,
self.buy_pump_pull_threshold_120_36)
informative_1h['safe_pump_48_120'] = self.safe_pump(informative_1h, 48, self.buy_pump_threshold_120_48,
self.buy_pump_pull_threshold_120_48)
informative_1h['sell_pump_48_1'] = (informative_1h['hl_pct_change_48'] > self.sell_pump_threshold_48_1)
informative_1h['sell_pump_48_2'] = (informative_1h['hl_pct_change_48'] > self.sell_pump_threshold_48_2)
informative_1h['sell_pump_48_3'] = (informative_1h['hl_pct_change_48'] > self.sell_pump_threshold_48_3)
informative_1h['sell_pump_36_1'] = (informative_1h['hl_pct_change_36'] > self.sell_pump_threshold_36_1)
informative_1h['sell_pump_36_2'] = (informative_1h['hl_pct_change_36'] > self.sell_pump_threshold_36_2)
informative_1h['sell_pump_36_3'] = (informative_1h['hl_pct_change_36'] > self.sell_pump_threshold_36_3)
informative_1h['sell_pump_24_1'] = (informative_1h['hl_pct_change_24'] > self.sell_pump_threshold_24_1)
informative_1h['sell_pump_24_2'] = (informative_1h['hl_pct_change_24'] > self.sell_pump_threshold_24_2)
informative_1h['sell_pump_24_3'] = (informative_1h['hl_pct_change_24'] > self.sell_pump_threshold_24_3)
tok = time.perf_counter()
log.debug(f"[{metadata['pair']}] informative_1h_indicators took: {tok - tik:0.4f} seconds.")
return informative_1h
def normal_tf_indicators(self, dataframe: DataFrame, metadata: dict) -> DataFrame:
tik = time.perf_counter()
# BB 40 - STD2
bb_40_std2 = qtpylib.bollinger_bands(dataframe['close'], window=40, stds=2)
dataframe['bb40_2_low'] = bb_40_std2['lower']
dataframe['bb40_2_mid'] = bb_40_std2['mid']
dataframe['bb40_2_delta'] = (bb_40_std2['mid'] - dataframe['bb40_2_low']).abs()
dataframe['closedelta'] = (dataframe['close'] - dataframe['close'].shift()).abs()
dataframe['tail'] = (dataframe['close'] - dataframe['bb40_2_low']).abs()
# BB 20 - STD2
bb_20_std2 = qtpylib.bollinger_bands(qtpylib.typical_price(dataframe), window=20, stds=2)
dataframe['bb20_2_low'] = bb_20_std2['lower']
dataframe['bb20_2_mid'] = bb_20_std2['mid']
dataframe['bb20_2_upp'] = bb_20_std2['upper']
# EMA 200
dataframe['ema_12'] = ta.EMA(dataframe, timeperiod=12)
dataframe['ema_13'] = ta.EMA(dataframe, timeperiod=13)
dataframe['ema_15'] = ta.EMA(dataframe, timeperiod=15)
dataframe['ema_16'] = ta.EMA(dataframe, timeperiod=16)
dataframe['ema_20'] = ta.EMA(dataframe, timeperiod=20)
dataframe['ema_25'] = ta.EMA(dataframe, timeperiod=25)
dataframe['ema_26'] = ta.EMA(dataframe, timeperiod=26)
dataframe['ema_35'] = ta.EMA(dataframe, timeperiod=35)
dataframe['ema_50'] = ta.EMA(dataframe, timeperiod=50)
dataframe['ema_100'] = ta.EMA(dataframe, timeperiod=100)
dataframe['ema_200'] = ta.EMA(dataframe, timeperiod=200)
# SMA
dataframe['sma_5'] = ta.SMA(dataframe, timeperiod=5)
dataframe['sma_15'] = ta.SMA(dataframe, timeperiod=15)
dataframe['sma_20'] = ta.SMA(dataframe, timeperiod=20)
dataframe['sma_30'] = ta.SMA(dataframe, timeperiod=30)
dataframe['sma_200'] = ta.SMA(dataframe, timeperiod=200)
dataframe['sma_200_dec_20'] = dataframe['sma_200'] < dataframe['sma_200'].shift(20)
dataframe['sma_200_dec_24'] = dataframe['sma_200'] < dataframe['sma_200'].shift(24)
# MFI
dataframe['mfi'] = ta.MFI(dataframe)
# CMF
dataframe['cmf'] = chaikin_money_flow(dataframe, 20)
# EWO
dataframe['ewo_sma'] = ewo_sma(dataframe, 50, 200)
# RSI
dataframe['rsi_4'] = ta.RSI(dataframe, timeperiod=4)
dataframe['rsi_14'] = ta.RSI(dataframe, timeperiod=14)
dataframe['rsi_20'] = ta.RSI(dataframe, timeperiod=20)
# Chopiness
dataframe['chop'] = qtpylib.chopiness(dataframe, 14)
# Zero-Lag EMA
dataframe['zema_61'] = zema(dataframe, period=61)
# Williams %R
dataframe['r_14'] = williams_r(dataframe, period=14)
dataframe['r_480'] = williams_r(dataframe, period=480)
# Stochastic RSI
stochrsi = ta.STOCHRSI(dataframe, timeperiod=96, fastk_period=3, fastd_period=3, fastd_matype=0)
dataframe['stochrsi_fastk_96'] = stochrsi['fastk']
dataframe['stochrsi_fastd_96'] = stochrsi['fastd']
# Modified Elder Ray Index
dataframe['moderi_32'] = moderi(dataframe, 32)
dataframe['moderi_64'] = moderi(dataframe, 64)
dataframe['moderi_96'] = moderi(dataframe, 96)
# EMA of VWMA Oscillator
dataframe['ema_vwma_osc_32'] = ema_vwma_osc(dataframe, 32)
dataframe['ema_vwma_osc_64'] = ema_vwma_osc(dataframe, 64)
dataframe['ema_vwma_osc_96'] = ema_vwma_osc(dataframe, 96)
# hull
dataframe['hull_75'] = hull(dataframe, 75)
# CRSI (3, 2, 100)
crsi_closechange = dataframe['close'] / dataframe['close'].shift(1)
crsi_updown = np.where(crsi_closechange.gt(1), 1.0, np.where(crsi_closechange.lt(1), -1.0, 0.0))
dataframe['crsi'] = (ta.RSI(dataframe['close'], timeperiod=3) + ta.RSI(crsi_updown, timeperiod=2) + ta.ROC(
dataframe['close'], 100)) / 3
# zlema
dataframe['zlema_68'] = zlema(dataframe, 68)
# CTI
dataframe['cti'] = pta.cti(dataframe["close"], length=20)
# For sell checks
dataframe['crossed_below_ema_12_26'] = qtpylib.crossed_below(dataframe['ema_12'], dataframe['ema_26'])
# Heiken Ashi
heikinashi = qtpylib.heikinashi(dataframe)
heikinashi["volume"] = dataframe["volume"]
# Profit Maximizer - PMAX
dataframe['pm'], dataframe['pmx'] = pmax(heikinashi, MAtype=1, length=9, multiplier=27, period=10, src=3)
dataframe['source'] = (dataframe['high'] + dataframe['low'] + dataframe['open'] + dataframe['close']) / 4
dataframe['pmax_thresh'] = ta.EMA(dataframe['source'], timeperiod=9)
dataframe['sma_21'] = ta.SMA(dataframe, timeperiod=21)
dataframe['sma_68'] = ta.SMA(dataframe, timeperiod=68)
dataframe['sma_75'] = ta.SMA(dataframe, timeperiod=75)
# HLC3
dataframe['hlc3'] = (dataframe['high'] + dataframe['low'] + dataframe['close']) / 3
# CCI
dataframe['cci'] = ta.CCI(dataframe, source='hlc3', timeperiod=20)
# CCI Oscillator
cci_36 = ta.CCI(dataframe, timeperiod=36)
cci_36_max = cci_36.rolling(self.startup_candle_count).max()
cci_36_min = cci_36.rolling(self.startup_candle_count).min()
dataframe['cci_36_osc'] = (cci_36 / cci_36_max).where(cci_36 > 0, -cci_36 / cci_36_min)
# MOMDIV
mom = momdiv(dataframe)
dataframe['momdiv_buy'] = mom['momdiv_buy']
dataframe['momdiv_sell'] = mom['momdiv_sell']
dataframe['momdiv_coh'] = mom['momdiv_coh']
dataframe['momdiv_col'] = mom['momdiv_col']
# Dip protection
dataframe['tpct_change_0'] = self.top_percent_change(dataframe, 0)
dataframe['tpct_change_2'] = self.top_percent_change(dataframe, 2)
dataframe['tpct_change_12'] = self.top_percent_change(dataframe, 12)
dataframe['tpct_change_144'] = self.top_percent_change(dataframe, 144)
# Volume
dataframe['volume_mean_4'] = dataframe['volume'].rolling(4).mean().shift(1)
dataframe['volume_mean_30'] = dataframe['volume'].rolling(30).mean()
if not self.config['runmode'].value in ('live', 'dry_run'):
# Backtest age filter
dataframe['bt_agefilter_ok'] = False
dataframe.loc[dataframe.index > (12 * 24 * self.bt_min_age_days), 'bt_agefilter_ok'] = True
else:
# Exchange downtime protection
dataframe['live_data_ok'] = (dataframe['volume'].rolling(window=72, min_periods=72).min() > 0)
tok = time.perf_counter()
log.debug(f"[{metadata['pair']}] normal_tf_indicators took: {tok - tik:0.4f} seconds.")
return dataframe
def resampled_tf_indicators(self, dataframe: DataFrame, metadata: dict) -> DataFrame:
# Indicators
# -----------------------------------------------------------------------------------------
dataframe['rsi_14'] = ta.RSI(dataframe, timeperiod=14)
return dataframe
def base_tf_btc_indicators(self, dataframe: DataFrame, metadata: dict) -> DataFrame:
tik = time.perf_counter()
# Indicators
# -----------------------------------------------------------------------------------------
dataframe['rsi_14'] = ta.RSI(dataframe, timeperiod=14)
# Add prefix
# -----------------------------------------------------------------------------------------
ignore_columns = ['date', 'open', 'high', 'low', 'close', 'volume']
dataframe.rename(columns=lambda s: f"btc_{s}" if s not in ignore_columns else s, inplace=True)
tok = time.perf_counter()
log.debug(f"[{metadata['pair']}] base_tf_btc_indicators took: {tok - tik:0.4f} seconds.")
return dataframe
def info_tf_btc_indicators(self, dataframe: DataFrame, metadata: dict) -> DataFrame:
tik = time.perf_counter()
# Indicators
# -----------------------------------------------------------------------------------------
dataframe['rsi_14'] = ta.RSI(dataframe, timeperiod=14)
dataframe['not_downtrend'] = ((dataframe['close'] > dataframe['close'].shift(2)) | (dataframe['rsi_14'] > 50))
# Add prefix
# -----------------------------------------------------------------------------------------
ignore_columns = ['date', 'open', 'high', 'low', 'close', 'volume']
dataframe.rename(columns=lambda s: f"btc_{s}" if s not in ignore_columns else s, inplace=True)
tok = time.perf_counter()
log.debug(f"[{metadata['pair']}] info_tf_btc_indicators took: {tok - tik:0.4f} seconds.")
return dataframe
def daily_tf_btc_indicators(self, dataframe: DataFrame, metadata: dict) -> DataFrame:
tik = time.perf_counter()
# Indicators
# -----------------------------------------------------------------------------------------
dataframe['pivot'], dataframe['res1'], dataframe['res2'], dataframe['res3'], dataframe['sup1'], dataframe[
'sup2'], dataframe['sup3'] = pivot_points(dataframe, mode='fibonacci')
# Add prefix
# -----------------------------------------------------------------------------------------
ignore_columns = ['date', 'open', 'high', 'low', 'close', 'volume']
dataframe.rename(columns=lambda s: f"btc_{s}" if s not in ignore_columns else s, inplace=True)
tok = time.perf_counter()
log.debug(f"[{metadata['pair']}] daily_tf_btc_indicators took: {tok - tik:0.4f} seconds.")
return dataframe
def populate_indicators(self, dataframe: DataFrame, metadata: dict) -> DataFrame:
tik = time.perf_counter()
'''
--> BTC informative (5m/1h)
___________________________________________________________________________________________
'''
if self.config['stake_currency'] in ['USDT', 'BUSD', 'USDC', 'DAI', 'TUSD', 'PAX', 'USD', 'EUR', 'GBP']:
btc_info_pair = f"BTC/{self.config['stake_currency']}"
else:
btc_info_pair = "BTC/USDT"
if self.has_BTC_daily_tf:
btc_daily_tf = self.dp.get_pair_dataframe(btc_info_pair, '1d')
btc_daily_tf = self.daily_tf_btc_indicators(btc_daily_tf, metadata)
dataframe = merge_informative_pair(dataframe, btc_daily_tf, self.timeframe, '1d', ffill=True)
drop_columns = [f"{s}_1d" for s in ['date', 'open', 'high', 'low', 'close', 'volume']]
dataframe.drop(columns=dataframe.columns.intersection(drop_columns), inplace=True)
if self.has_BTC_info_tf:
btc_info_tf = self.dp.get_pair_dataframe(btc_info_pair, self.info_timeframe_1h)
btc_info_tf = self.info_tf_btc_indicators(btc_info_tf, metadata)
dataframe = merge_informative_pair(dataframe, btc_info_tf, self.timeframe, self.info_timeframe_1h,
ffill=True)
drop_columns = [f"{s}_{self.info_timeframe_1h}" for s in ['date', 'open', 'high', 'low', 'close', 'volume']]
dataframe.drop(columns=dataframe.columns.intersection(drop_columns), inplace=True)
if self.has_BTC_base_tf:
btc_base_tf = self.dp.get_pair_dataframe(btc_info_pair, self.timeframe)
btc_base_tf = self.base_tf_btc_indicators(btc_base_tf, metadata)
dataframe = merge_informative_pair(dataframe, btc_base_tf, self.timeframe, self.timeframe, ffill=True)
drop_columns = [f"{s}_{self.timeframe}" for s in ['date', 'open', 'high', 'low', 'close', 'volume']]
dataframe.drop(columns=dataframe.columns.intersection(drop_columns), inplace=True)
'''
--> Informative timeframe
___________________________________________________________________________________________
'''
if self.info_timeframe_1d != 'none':
informative_1d = self.informative_1d_indicators(dataframe, metadata)
dataframe = merge_informative_pair(dataframe, informative_1d, self.timeframe, self.info_timeframe_1d,
ffill=True)
drop_columns = [f"{s}_{self.info_timeframe_1d}" for s in ['date', 'open', 'high', 'low', 'close', 'volume']]
dataframe.drop(columns=dataframe.columns.intersection(drop_columns), inplace=True)
if self.info_timeframe_1h != 'none':
informative_1h = self.informative_1h_indicators(dataframe, metadata)
dataframe = merge_informative_pair(dataframe, informative_1h, self.timeframe, self.info_timeframe_1h,
ffill=True)
drop_columns = [f"{s}_{self.info_timeframe_1h}" for s in ['date']]
dataframe.drop(columns=dataframe.columns.intersection(drop_columns), inplace=True)
'''
--> Resampled to another timeframe
___________________________________________________________________________________________
'''
if self.res_timeframe != 'none':
resampled = resample_to_interval(dataframe, timeframe_to_minutes(self.res_timeframe))
resampled = self.resampled_tf_indicators(resampled, metadata)
# Merge resampled info dataframe
dataframe = resampled_merge(dataframe, resampled, fill_na=True)
dataframe.rename(columns=lambda s: f"{s}_{self.res_timeframe}" if "resample_" in s else s, inplace=True)
dataframe.rename(
columns=lambda s: s.replace("resample_{}_".format(self.res_timeframe.replace("m", "")), ""),
inplace=True)
drop_columns = [f"{s}_{self.res_timeframe}" for s in ['date']]
dataframe.drop(columns=dataframe.columns.intersection(drop_columns), inplace=True)
'''
--> The indicators for the normal (5m) timeframe
___________________________________________________________________________________________
'''
dataframe = self.normal_tf_indicators(dataframe, metadata)
tok = time.perf_counter()
log.debug(f"[{metadata['pair']}] Populate indicators took a total of: {tok - tik:0.4f} seconds.")
return dataframe
def populate_buy_trend(self, dataframe: DataFrame, metadata: dict) -> DataFrame:
dataframe.loc[
(
# Coin's price hits 24h low, then buy, check this every 5m timeframe
(dataframe["close"] <= dataframe["low"].shift().rolling(288).min()) & # Guard: tema is raising
(dataframe['volume'] > 0) # Make sure Volume is not 0
),
'buy'] = 1
return dataframe
def populate_sell_trend(self, dataframe: DataFrame, metadata: dict) -> DataFrame:
dataframe.loc[:, 'sell'] = 0
return dataframe
def confirm_trade_exit(self, pair: str, trade: "Trade", order_type: str, amount: float,
rate: float, time_in_force: str, sell_reason: str, **kwargs) -> bool:
"""
Called right before placing a regular sell order.
Timing for this function is critical, so avoid doing heavy computations or
network requests in this method.
For full documentation please go to https://www.freqtrade.io/en/latest/strategy-advanced/
When not implemented by a strategy, returns True (always confirming).
:param pair: Pair that's about to be sold.
:param trade: trade object.
:param order_type: Order type (as configured in order_types). usually limit or market.
:param amount: Amount in quote currency.
:param rate: Rate that's going to be used when using limit orders
:param time_in_force: Time in force. Defaults to GTC (Good-til-cancelled).
:param sell_reason: Sell reason.
Can be any of ['roi', 'stop_loss', 'stoploss_on_exchange', 'trailing_stop_loss',
'sell_signal', 'force_sell', 'emergency_sell']
:param **kwargs: Ensure to keep this here so updates to this won't break your strategy.
:return bool: When True is returned, then the sell-order is placed on the exchange.
False aborts the process
"""
if self._should_hold_trade(trade, rate, sell_reason):
return False
self._remove_profit_target(pair)
return True
def _set_profit_target(self, pair: str, sell_reason: str, rate: float, current_time: "datetime"):
self.target_profit_cache.data[pair] = {
"rate": rate,
"sell_reason": sell_reason,
"time_profit_reached": current_time.isoformat()
}
self.target_profit_cache.save()
def _remove_profit_target(self, pair: str):
if self.target_profit_cache is not None:
self.target_profit_cache.data.pop(pair, None)
self.target_profit_cache.save()
def _should_hold_trade(self, trade: "Trade", rate: float, sell_reason: str) -> bool:
if self.config['runmode'].value not in ('live', 'dry_run'):
return False
if not self.holdSupportEnabled:
return False
# Just to be sure our hold data is loaded, should be a no-op call after the first bot loop
self.load_hold_trades_config()
if not self.hold_trades_cache:
# Cache hasn't been setup, likely because the corresponding file does not exist, sell
return False
if not self.hold_trades_cache.data:
# We have no pairs we want to hold until profit, sell
return False
# By default, no hold should be done
hold_trade = False
trade_ids: dict = self.hold_trades_cache.data.get("trade_ids")
if trade_ids and trade.id in trade_ids:
trade_profit_ratio = trade_ids[trade.id]
current_profit_ratio = trade.calc_profit_ratio(rate)
if sell_reason == "force_sell":
formatted_profit_ratio = f"{trade_profit_ratio * 100}%"
formatted_current_profit_ratio = f"{current_profit_ratio * 100}%"
log.warning(
"Force selling %s even though the current profit of %s < %s",
trade, formatted_current_profit_ratio, formatted_profit_ratio
)
return False
elif current_profit_ratio >= trade_profit_ratio:
# This pair is on the list to hold, and we reached minimum profit, sell
formatted_profit_ratio = f"{trade_profit_ratio * 100}%"
formatted_current_profit_ratio = f"{current_profit_ratio * 100}%"
log.warning(
"Selling %s because the current profit of %s >= %s",
trade, formatted_current_profit_ratio, formatted_profit_ratio
)
return False
# This pair is on the list to hold, and we haven't reached minimum profit, hold
hold_trade = True
trade_pairs: dict = self.hold_trades_cache.data.get("trade_pairs")
if trade_pairs and trade.pair in trade_pairs:
trade_profit_ratio = trade_pairs[trade.pair]
current_profit_ratio = trade.calc_profit_ratio(rate)
if sell_reason == "force_sell":
formatted_profit_ratio = f"{trade_profit_ratio * 100}%"
formatted_current_profit_ratio = f"{current_profit_ratio * 100}%"
log.warning(
"Force selling %s even though the current profit of %s < %s",
trade, formatted_current_profit_ratio, formatted_profit_ratio
)
return False
elif current_profit_ratio >= trade_profit_ratio:
# This pair is on the list to hold, and we reached minimum profit, sell
formatted_profit_ratio = f"{trade_profit_ratio * 100}%"
formatted_current_profit_ratio = f"{current_profit_ratio * 100}%"
log.warning(
"Selling %s because the current profit of %s >= %s",
trade, formatted_current_profit_ratio, formatted_profit_ratio
)
return False
# This pair is on the list to hold, and we haven't reached minimum profit, hold
hold_trade = True
return hold_trade
# Elliot Wave Oscillator
def ewo(dataframe, sma1_length=5, sma2_length=35):
sma1 = ta.EMA(dataframe, timeperiod=sma1_length)
sma2 = ta.EMA(dataframe, timeperiod=sma2_length)
smadif = (sma1 - sma2) / dataframe['close'] * 100
return smadif
def ewo_sma(dataframe, sma1_length=5, sma2_length=35):
sma1 = ta.SMA(dataframe, timeperiod=sma1_length)
sma2 = ta.SMA(dataframe, timeperiod=sma2_length)
smadif = (sma1 - sma2) / dataframe['close'] * 100
return smadif
# Chaikin Money Flow
def chaikin_money_flow(dataframe, n=20, fillna=False) -> Series:
"""Chaikin Money Flow (CMF)
It measures the amount of Money Flow Volume over a specific period.
http://stockcharts.com/school/doku.php?id=chart_school:technical_indicators:chaikin_money_flow_cmf
Args:
dataframe(pandas.Dataframe): dataframe containing ohlcv
n(int): n period.
fillna(bool): if True, fill nan values.
Returns:
pandas.Series: New feature generated.
"""
mfv = ((dataframe['close'] - dataframe['low']) - (dataframe['high'] - dataframe['close'])) / (
dataframe['high'] - dataframe['low'])
mfv = mfv.fillna(0.0) # float division by zero
mfv *= dataframe['volume']
cmf = (mfv.rolling(n, min_periods=0).sum()
/ dataframe['volume'].rolling(n, min_periods=0).sum())
if fillna:
cmf = cmf.replace([np.inf, -np.inf], np.nan).fillna(0)
return Series(cmf, name='cmf')
# Williams %R
def williams_r(dataframe: DataFrame, period: int = 14) -> Series:
"""Williams %R, or just %R, is a technical analysis oscillator showing the current closing price in relation to the high and low
of the past N days (for a given N). It was developed by a publisher and promoter of trading materials, Larry Williams.
Its purpose is to tell whether a stock or commodity market is trading near the high or the low, or somewhere in between,
of its recent trading range.
The oscillator is on a negative scale, from −100 (lowest) up to 0 (highest).
"""
highest_high = dataframe["high"].rolling(center=False, window=period).max()
lowest_low = dataframe["low"].rolling(center=False, window=period).min()
WR = Series(
(highest_high - dataframe["close"]) / (highest_high - lowest_low),
name=f"{period} Williams %R",
)
return WR * -100
# Volume Weighted Moving Average
def vwma(dataframe: DataFrame, length: int = 10):
"""Indicator: Volume Weighted Moving Average (VWMA)"""
# Calculate Result
pv = dataframe['close'] * dataframe['volume']
vwma = Series(ta.SMA(pv, timeperiod=length) / ta.SMA(dataframe['volume'], timeperiod=length))
return vwma
# Modified Elder Ray Index
def moderi(dataframe: DataFrame, len_slow_ma: int = 32) -> Series:
slow_ma = Series(ta.EMA(vwma(dataframe, length=len_slow_ma), timeperiod=len_slow_ma))
return slow_ma >= slow_ma.shift(1) # we just need true & false for ERI trend
# Exponential moving average of a volume weighted simple moving average
def ema_vwma_osc(dataframe, len_slow_ma):
slow_ema = Series(ta.EMA(vwma(dataframe, len_slow_ma), len_slow_ma))
return ((slow_ema - slow_ema.shift(1)) / slow_ema.shift(1)) * 100
# zlema
def zlema(dataframe, timeperiod):
lag = int(math.floor((timeperiod - 1) / 2))
if isinstance(dataframe, Series):
ema_data = dataframe + (dataframe - dataframe.shift(lag))
else:
ema_data = dataframe['close'] + (dataframe['close'] - dataframe['close'].shift(lag))
return ta.EMA(ema_data, timeperiod=timeperiod)
# zlhull
def zlhull(dataframe, timeperiod):
lag = int(math.floor((timeperiod - 1) / 2))
if isinstance(dataframe, Series):
wma_data = dataframe + (dataframe - dataframe.shift(lag))
else:
wma_data = dataframe['close'] + (dataframe['close'] - dataframe['close'].shift(lag))
return ta.WMA(
2 * ta.WMA(wma_data, int(math.floor(timeperiod / 2))) - ta.WMA(wma_data, timeperiod),
int(round(np.sqrt(timeperiod)))
)
# hull
def hull(dataframe, timeperiod):
if isinstance(dataframe, Series):
return ta.WMA(
2 * ta.WMA(dataframe, int(math.floor(timeperiod / 2))) - ta.WMA(dataframe, timeperiod),
int(round(np.sqrt(timeperiod)))
)
else:
return ta.WMA(
2 * ta.WMA(dataframe['close'], int(math.floor(timeperiod / 2))) - ta.WMA(dataframe['close'], timeperiod),
int(round(np.sqrt(timeperiod)))
)
# PMAX
def pmax(df, period, multiplier, length, MAtype, src):
period = int(period)
multiplier = int(multiplier)
length = int(length)
MAtype = int(MAtype)
src = int(src)
mavalue = f'MA_{MAtype}_{length}'
atr = f'ATR_{period}'
pm = f'pm_{period}_{multiplier}_{length}_{MAtype}'
pmx = f'pmX_{period}_{multiplier}_{length}_{MAtype}'
# MAtype==1 --> EMA
# MAtype==2 --> DEMA
# MAtype==3 --> T3
# MAtype==4 --> SMA
# MAtype==5 --> VIDYA
# MAtype==6 --> TEMA
# MAtype==7 --> WMA
# MAtype==8 --> VWMA
# MAtype==9 --> zema
if src == 1:
masrc = df["close"]
elif src == 2:
masrc = (df["high"] + df["low"]) / 2
elif src == 3:
masrc = (df["high"] + df["low"] + df["close"] + df["open"]) / 4
if MAtype == 1:
mavalue = ta.EMA(masrc, timeperiod=length)
elif MAtype == 2:
mavalue = ta.DEMA(masrc, timeperiod=length)
elif MAtype == 3:
mavalue = ta.T3(masrc, timeperiod=length)
elif MAtype == 4:
mavalue = ta.SMA(masrc, timeperiod=length)
elif MAtype == 5:
mavalue = VIDYA(df, length=length)
elif MAtype == 6:
mavalue = ta.TEMA(masrc, timeperiod=length)
elif MAtype == 7:
mavalue = ta.WMA(df, timeperiod=length)
elif MAtype == 8:
mavalue = vwma(df, length)
elif MAtype == 9:
mavalue = zema(df, period=length)
df[atr] = ta.ATR(df, timeperiod=period)
df['basic_ub'] = mavalue + ((multiplier / 10) * df[atr])
df['basic_lb'] = mavalue - ((multiplier / 10) * df[atr])
basic_ub = df['basic_ub'].values
final_ub = np.full(len(df), 0.00)
basic_lb = df['basic_lb'].values
final_lb = np.full(len(df), 0.00)
for i in range(period, len(df)):
final_ub[i] = basic_ub[i] if (
basic_ub[i] < final_ub[i - 1]
or mavalue[i - 1] > final_ub[i - 1]) else final_ub[i - 1]
final_lb[i] = basic_lb[i] if (
basic_lb[i] > final_lb[i - 1]
or mavalue[i - 1] < final_lb[i - 1]) else final_lb[i - 1]
df['final_ub'] = final_ub
df['final_lb'] = final_lb
pm_arr = np.full(len(df), 0.00)
for i in range(period, len(df)):
pm_arr[i] = (
final_ub[i] if (pm_arr[i - 1] == final_ub[i - 1]
and mavalue[i] <= final_ub[i])
else final_lb[i] if (
pm_arr[i - 1] == final_ub[i - 1]
and mavalue[i] > final_ub[i]) else final_lb[i]
if (pm_arr[i - 1] == final_lb[i - 1]
and mavalue[i] >= final_lb[i]) else final_ub[i]
if (pm_arr[i - 1] == final_lb[i - 1]
and mavalue[i] < final_lb[i]) else 0.00)
pm = Series(pm_arr)
# Mark the trend direction up/down
pmx = np.where((pm_arr > 0.00), np.where((mavalue < pm_arr), 'down', 'up'), np.NaN)
return pm, pmx
def calc_streaks(series: Series):
# logic tables
geq = series >= series.shift(1) # True if rising
eq = series == series.shift(1) # True if equal
logic_table = concat([geq, eq], axis=1)
streaks = [0] # holds the streak duration, starts with 0
for row in logic_table.iloc[1:].itertuples(): # iterate through logic table
if row[2]: # same value as before
streaks.append(0)
continue
last_value = streaks[-1]
if row[1]: # higher value than before
streaks.append(last_value + 1 if last_value >=
0 else 1) # increase or reset to +1
else: # lower value than before
streaks.append(last_value - 1 if last_value <
0 else -1) # decrease or reset to -1
return streaks
# SSL Channels
def SSLChannels(dataframe, length=7):
ATR = ta.ATR(dataframe, timeperiod=14)
smaHigh = dataframe['high'].rolling(length).mean() + ATR
smaLow = dataframe['low'].rolling(length).mean() - ATR
hlv = Series(np.where(dataframe['close'] > smaHigh, 1, np.where(dataframe['close'] < smaLow, -1, np.NAN)))
hlv = hlv.ffill()
sslDown = np.where(hlv < 0, smaHigh, smaLow)
sslUp = np.where(hlv < 0, smaLow, smaHigh)
return sslDown, sslUp
def pivot_points(dataframe: DataFrame, mode='fibonacci') -> Series:
hlc3_pivot = (dataframe['high'] + dataframe['low'] + dataframe['close']).shift(1) / 3
hl_range = (dataframe['high'] - dataframe['low']).shift(1)
if mode == 'simple':
res1 = hlc3_pivot * 2 - dataframe['low'].shift(1)
sup1 = hlc3_pivot * 2 - dataframe['high'].shift(1)
res2 = hlc3_pivot + (dataframe['high'] - dataframe['low']).shift()
sup2 = hlc3_pivot - (dataframe['high'] - dataframe['low']).shift()
res3 = hlc3_pivot * 2 + (dataframe['high'] - 2 * dataframe['low']).shift()
sup3 = hlc3_pivot * 2 - (2 * dataframe['high'] - dataframe['low']).shift()
elif mode == 'fibonacci':
res1 = hlc3_pivot + 0.382 * hl_range
sup1 = hlc3_pivot - 0.382 * hl_range
res2 = hlc3_pivot + 0.618 * hl_range
sup2 = hlc3_pivot - 0.618 * hl_range
res3 = hlc3_pivot + 1 * hl_range
sup3 = hlc3_pivot - 1 * hl_range
return hlc3_pivot, res1, res2, res3, sup1, sup2, sup3
def HeikinAshi(dataframe, smooth_inputs=False, smooth_outputs=False, length=10):
df = dataframe[['open', 'close', 'high', 'low']].copy().fillna(0)
if smooth_inputs:
df['open_s'] = ta.EMA(df['open'], timeframe=length)
df['high_s'] = ta.EMA(df['high'], timeframe=length)
df['low_s'] = ta.EMA(df['low'], timeframe=length)
df['close_s'] = ta.EMA(df['close'], timeframe=length)
open_ha = (df['open_s'].shift(1) + df['close_s'].shift(1)) / 2
high_ha = df.loc[:, ['high_s', 'open_s', 'close_s']].max(axis=1)
low_ha = df.loc[:, ['low_s', 'open_s', 'close_s']].min(axis=1)
close_ha = (df['open_s'] + df['high_s'] + df['low_s'] + df['close_s']) / 4
else:
open_ha = (df['open'].shift(1) + df['close'].shift(1)) / 2
high_ha = df.loc[:, ['high', 'open', 'close']].max(axis=1)
low_ha = df.loc[:, ['low', 'open', 'close']].min(axis=1)
close_ha = (df['open'] + df['high'] + df['low'] + df['close']) / 4
open_ha = open_ha.fillna(0)
high_ha = high_ha.fillna(0)
low_ha = low_ha.fillna(0)
close_ha = close_ha.fillna(0)
if smooth_outputs:
open_sha = ta.EMA(open_ha, timeframe=length)
high_sha = ta.EMA(high_ha, timeframe=length)
low_sha = ta.EMA(low_ha, timeframe=length)
close_sha = ta.EMA(close_ha, timeframe=length)
return open_sha, close_sha, low_sha
else:
return open_ha, close_ha, low_ha
# Mom DIV
def momdiv(dataframe: DataFrame, mom_length: int = 10, bb_length: int = 20, bb_dev: float = 2.0,
lookback: int = 30) -> DataFrame:
mom: Series = ta.MOM(dataframe, timeperiod=mom_length)
upperband, middleband, lowerband = ta.BBANDS(mom, timeperiod=bb_length, nbdevup=bb_dev, nbdevdn=bb_dev, matype=0)
buy = qtpylib.crossed_below(mom, lowerband)
sell = qtpylib.crossed_above(mom, upperband)
hh = dataframe['high'].rolling(lookback).max()
ll = dataframe['low'].rolling(lookback).min()
coh = dataframe['high'] >= hh
col = dataframe['low'] <= ll
df = DataFrame({
"momdiv_mom": mom,
"momdiv_upperb": upperband,
"momdiv_lowerb": lowerband,
"momdiv_buy": buy,
"momdiv_sell": sell,
"momdiv_coh": coh,
"momdiv_col": col,
}, index=dataframe['close'].index)
return df
class Cache:
def __init__(self, path):
self.path = path
self.data = {}
self._mtime = None
self._previous_data = {}
try:
self.load()
except FileNotFoundError:
pass
@staticmethod
def rapidjson_load_kwargs():
return {"number_mode": rapidjson.NM_NATIVE}
@staticmethod
def rapidjson_dump_kwargs():
return {"number_mode": rapidjson.NM_NATIVE}
def load(self):
if not self._mtime or self.path.stat().st_mtime_ns != self._mtime:
self._load()
def save(self):
if self.data != self._previous_data:
self._save()
def process_loaded_data(self, data):
return data
def _load(self):
# This method only exists to simplify unit testing
with self.path.open("r") as rfh:
try:
data = rapidjson.load(
rfh,
**self.rapidjson_load_kwargs()
)
except rapidjson.JSONDecodeError as exc:
log.error("Failed to load JSON from %s: %s", self.path, exc)
else:
self.data = self.process_loaded_data(data)
self._previous_data = copy.deepcopy(self.data)
self._mtime = self.path.stat().st_mtime_ns
def _save(self):
# This method only exists to simplify unit testing
rapidjson.dump(
self.data,
self.path.open("w"),
**self.rapidjson_dump_kwargs()
)
self._mtime = self.path.stat().st_mtime
self._previous_data = copy.deepcopy(self.data)
class HoldsCache(Cache):
@staticmethod
def rapidjson_load_kwargs():
return {
"number_mode": rapidjson.NM_NATIVE,
"object_hook": HoldsCache._object_hook,
}
@staticmethod
def rapidjson_dump_kwargs():
return {
"number_mode": rapidjson.NM_NATIVE,
"mapping_mode": rapidjson.MM_COERCE_KEYS_TO_STRINGS,
}
def save(self):
raise RuntimeError("The holds cache does not allow programatical save")
def process_loaded_data(self, data):
trade_ids = data.get("trade_ids")
trade_pairs = data.get("trade_pairs")
if not trade_ids and not trade_pairs:
return data
open_trades = {}
for trade in Trade.get_trades_proxy(is_open=True):
open_trades[trade.id] = open_trades[trade.pair] = trade
r_trade_ids = {}
if trade_ids:
if isinstance(trade_ids, dict):
# New syntax
for trade_id, profit_ratio in trade_ids.items():
if not isinstance(trade_id, int):
log.error(
"The trade_id(%s) defined under 'trade_ids' in %s is not an integer",
trade_id, self.path
)
continue
if not isinstance(profit_ratio, float):
log.error(
"The 'profit_ratio' config value(%s) for trade_id %s in %s is not a float",
profit_ratio,
trade_id,
self.path
)
if trade_id in open_trades:
formatted_profit_ratio = f"{profit_ratio * 100}%"
log.warning(
"The trade %s is configured to HOLD until the profit ratio of %s is met",
open_trades[trade_id],
formatted_profit_ratio
)
r_trade_ids[trade_id] = profit_ratio
else:
log.warning(
"The trade_id(%s) is no longer open. Please remove it from 'trade_ids' in %s",
trade_id,
self.path
)
else:
# Initial Syntax
profit_ratio = data.get("profit_ratio")
if profit_ratio:
if not isinstance(profit_ratio, float):
log.error(
"The 'profit_ratio' config value(%s) in %s is not a float",
profit_ratio,
self.path
)
else:
profit_ratio = 0.005
formatted_profit_ratio = f"{profit_ratio * 100}%"
for trade_id in trade_ids:
if not isinstance(trade_id, int):
log.error(
"The trade_id(%s) defined under 'trade_ids' in %s is not an integer",
trade_id, self.path
)
continue
if trade_id in open_trades:
log.warning(
"The trade %s is configured to HOLD until the profit ratio of %s is met",
open_trades[trade_id],
formatted_profit_ratio
)
r_trade_ids[trade_id] = profit_ratio
else:
log.warning(
"The trade_id(%s) is no longer open. Please remove it from 'trade_ids' in %s",
trade_id,
self.path
)
r_trade_pairs = {}
if trade_pairs:
for trade_pair, profit_ratio in trade_pairs.items():
if not isinstance(trade_pair, str):
log.error(
"The trade_pair(%s) defined under 'trade_pairs' in %s is not a string",
trade_pair, self.path
)
continue
if "/" not in trade_pair:
log.error(
"The trade_pair(%s) defined under 'trade_pairs' in %s does not look like "
"a valid '<TOKEN_NAME>/<STAKE_CURRENCY>' formatted pair.",
trade_pair, self.path
)
continue
if not isinstance(profit_ratio, float):
log.error(
"The 'profit_ratio' config value(%s) for trade_pair %s in %s is not a float",
profit_ratio,
trade_pair,
self.path
)
formatted_profit_ratio = f"{profit_ratio * 100}%"
if trade_pair in open_trades:
log.warning(
"The trade %s is configured to HOLD until the profit ratio of %s is met",
open_trades[trade_pair],
formatted_profit_ratio
)
else:
log.warning(
"The trade pair %s is configured to HOLD until the profit ratio of %s is met",
trade_pair,
formatted_profit_ratio
)
r_trade_pairs[trade_pair] = profit_ratio
r_data = {}
if r_trade_ids:
r_data["trade_ids"] = r_trade_ids
if r_trade_pairs:
r_data["trade_pairs"] = r_trade_pairs
return r_data
@staticmethod
def _object_hook(data):
_data = {}
for key, value in data.items():
try:
key = int(key)
except ValueError:
pass
_data[key] = value
return _data