# Zeus Strategy: First Generation of GodStra Strategy with maximum # AVG/MID profit in USDT # Author: @Mablue (Masoud Azizi) # github: https://github.com/mablue/ # IMPORTANT: INSTALL TA BEFOUR RUN(pip install ta) # freqtrade hyperopt --hyperopt-loss SharpeHyperOptLoss --spaces buy sell roi --strategy Zeus # --- Do not remove these libs --- from datetime import timedelta, datetime from typing import Optional from freqtrade import data from freqtrade.persistence import Trade from freqtrade.strategy.parameters import CategoricalParameter, DecimalParameter, IntParameter, BooleanParameter from numpy.lib import math from freqtrade.strategy.interface import IStrategy import pandas from pandas import DataFrame import time import logging import calendar from freqtrade.loggers import setup_logging from freqtrade.strategy.strategy_helper import merge_informative_pair # -------------------------------- # Add your lib to import here import ta from functools import reduce import numpy as np import talib.abstract as talib from freqtrade.strategy.strategy_helper import merge_informative_pair import freqtrade.vendor.qtpylib.indicators as qtpylib from random import shuffle logger = logging.getLogger(__name__) operators = [ "D", # Disabled gene ">", # Indicator, bigger than cross indicator "<", # Indicator, smaller than cross indicator "=", # Indicator, equal with cross indicator "C", # Indicator, crossed the cross indicator "CA", # Indicator, crossed above the cross indicator "CB", # Indicator, crossed below the cross indicator ">R", # Normalized indicator, bigger than real number "=R", # Normalized indicator, equal with real number "R", # Normalized indicator devided to cross indicator, bigger than real number "/=R", # Normalized indicator devided to cross indicator, equal with real number "/ 10) # TODO : it ill callculated in populate indicators. dataframe[indicator] = gene_calculator(dataframe, indicator) dataframe[crossed_indicator] = gene_calculator(dataframe, crossed_indicator) indicator_trend_sma = f"{indicator}-SMA-{TREND_CHECK_CANDLES}" if operator in ["UT", "DT", "OT", "CUT", "CDT", "COT"]: dataframe[indicator_trend_sma] = gene_calculator(dataframe, indicator_trend_sma) if operator == ">": condition = (dataframe[indicator].shift(decalage) > dataframe[crossed_indicator].shift(decalage)) elif operator == "=": condition = (np.isclose(dataframe[indicator].shift(decalage), dataframe[crossed_indicator].shift(decalage))) elif operator == "<": condition = (dataframe[indicator].shift(decalage) < dataframe[crossed_indicator].shift(decalage)) elif operator == "C": condition = ( (qtpylib.crossed_below(dataframe[indicator].shift(decalage), dataframe[crossed_indicator].shift(decalage))) | (qtpylib.crossed_above(dataframe[indicator].shift(decalage), dataframe[crossed_indicator].shift(decalage))) ) elif operator == "CA": condition = ( qtpylib.crossed_above(dataframe[indicator].shift(decalage), dataframe[crossed_indicator].shift(decalage))) elif operator == "CB": condition = ( qtpylib.crossed_below(dataframe[indicator].shift(decalage), dataframe[crossed_indicator].shift(decalage))) elif operator == ">R": condition = (dataframe[indicator].shift(decalage) > real_num) elif operator == "=R": condition = (np.isclose(dataframe[indicator].shift(decalage), real_num)) elif operator == "R": condition = (dataframe[indicator].shift(decalage).div(dataframe[crossed_indicator].shift(decalage)) > real_num) elif operator == "/=R": condition = (np.isclose(dataframe[indicator].shift(decalage).div(dataframe[crossed_indicator].shift(decalage)), real_num)) elif operator == "/ dataframe[indicator_trend_sma].shift(decalage)) elif operator == "DT": condition = (dataframe[indicator].shift(decalage) < dataframe[indicator_trend_sma].shift(decalage)) elif operator == "OT": condition = (np.isclose(dataframe[indicator].shift(decalage), dataframe[indicator_trend_sma].shift(decalage))) elif operator == "CUT": condition = ( ( qtpylib.crossed_above(dataframe[indicator].shift(decalage), dataframe[indicator_trend_sma].shift(decalage)) ) & ( dataframe[indicator].shift(decalage) > dataframe[indicator_trend_sma].shift(decalage) ) ) elif operator == "CDT": condition = ( ( qtpylib.crossed_below(dataframe[indicator].shift(decalage), dataframe[indicator_trend_sma].shift(decalage)) ) & ( dataframe[indicator].shift(decalage) < dataframe[indicator_trend_sma].shift(decalage) ) ) elif operator == "COT": condition = ( ( ( qtpylib.crossed_below(dataframe[indicator].shift(decalage), dataframe[indicator_trend_sma].shift(decalage)) ) | ( qtpylib.crossed_above(dataframe[indicator].shift(decalage), dataframe[indicator_trend_sma].shift(decalage)) ) ) & ( np.isclose(dataframe[indicator].shift(decalage), dataframe[indicator_trend_sma].shift(decalage)) ) ) return condition, dataframe class Zeus_5(IStrategy): # * 1/43: 86 trades. 72/6/8 Wins/Draws/Losses. Avg profit 12.66%. Median profit 11.99%. Total profit 0.10894395 BTC ( 108.94Σ%). Avg duration 3 days, 0:31:00 min. Objective: -48.48793 # "max_open_trades": 10, # "stake_currency": "BTC", # "stake_amount": 0.01, # "tradable_balance_ratio": 0.99, # "timeframe": "4h", # "dry_run_wallet": 0.1, # Buy hyperspace params: buy_b_params = { "buy_b_cat": "R", "=R", "R", "=R", "R", "=R", " bool: allow_to_buy = True informative, _ = self.dp.get_analyzed_dataframe(pair=pair, timeframe=self.timeframe) info_last_candle = informative.iloc[-1].squeeze() info_previous_last_candle = informative.iloc[-2].squeeze() info_previous_5_candle = informative.iloc[-5].squeeze() btc, _ = self.dp.get_analyzed_dataframe(pair="BTC/USDT", timeframe=self.timeframe) btc_last_candle = btc.iloc[-1].squeeze() btc_previous_last_candle = btc.iloc[-2].squeeze() btc_previous_5_candle = btc.iloc[-5].squeeze() # if self.stop_buy_for_all is True: # if (btc_last_candle['percent20'] > 0) & (btc_last_candle['min200'] == btc_previous_5_candle['min200']): # self.btc_allow_to_buy.value: # self.stop_buy_for_all = False # logger.info("1 - BUYING IS ENABLED %s date %s", pair, info_last_candle['date']) # else: # logger.info("1 - BUYING IS BLOCKED BY BTC FALL %s date %s", pair, info_last_candle['date']) # return False # if self.stop_buying.get(pair, None) is None: # print("enable buying tag", pair) # self.stop_buying[pair] = False # # if self.stop_buying[pair] is True: # if (info_last_candle['min200'] == info_previous_5_candle['min200']): # # if (info_last_candle['rsi5'] > 20) & (info_last_candle['rsi'] > 30): # # print("1 - Enable buying ", pair, info_last_candle['date'], info_last_candle['rsi5']) # logger.info("1 - Enable buying %s date %s", pair, info_last_candle['date']) # self.stop_buying[pair] = False # # if self.stop_buying[pair]: # allow_to_buy = False # logger.info("3 - cancel buying %s date %s", pair, info_last_candle['date']) # else: # logger.info("3 - accept buying %s date %s", pair, info_last_candle['date']) return allow_to_buy 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].squeeze() previous_last_candle = dataframe.iloc[-2].squeeze() previous_5_candle = dataframe.iloc[-5].squeeze() expected_profit = 0.01 minutes = (current_time - trade.open_date_utc).seconds / 60 days = (current_time - trade.open_date_utc).days candels_past = int(minutes / 5) positive = 0 negative = 0 if (candels_past > 12) & (candels_past <= 24): # print(trade.pair, trade.open_rate, candels_past, minutes, (current_time - trade.open_date_utc).seconds) sum_percent = 0 for candel in range(0, candels_past): df = dataframe.iloc[candel - candels_past].squeeze() rate = (df['close'] - trade.open_rate) / trade.open_rate if df['percent'] < 0: negative = negative + 1 else: positive = positive + 1 sum_percent = sum_percent + df['percent'] # print(candels_past - candel, df['date'], rate, df['percent'], sum_percent) # print(trade.pair, "positive=", positive, "negative=", negative, "pourcent=", # positive / (positive + negative), # "sum_percent=", sum_percent) ###### btc, _ = self.dp.get_analyzed_dataframe(pair="BTC/USDT", timeframe=self.timeframe) btc_last_candle = btc.iloc[-1].squeeze() btc_previous_last_candle = btc.iloc[-2].squeeze() # if ( # (btc_last_candle['percent'] < -0.02) | (btc_last_candle['percent5'] < -0.04)) & (current_profit > -0.03): # self.stop_buy_for_all = True # return "btc_fall" # bb_width_lim = last_candle['bb_width'] / 4 # bb_width_up = last_candle['bb_upperband'] * (1 - last_candle['bb_width'] / 5) if (self.market_overview_pct5 < 0) | (last_candle['pct_change_1_4h'] < 0): max_percent = 0.004 # last_candle['bb_width'] / 3.5 # 0.005 max_profit = 0.004 # last_candle['bb_width'] * 3 / 4 # 0.015 if (current_profit > 0.01) & \ (last_candle['percent10'] < -0.005) & ((current_time - trade.open_date_utc).seconds >= 3600): return 'b_percent10' if (current_profit > max_profit) & \ ((last_candle['percent'] < - max_percent) | (last_candle['percent3'] < -max_percent) | ( last_candle['percent5'] < -max_percent)): return 'b_percent_quick' if (current_profit >= - self.sell_b_too_old_percent.value) & (days >= self.sell_b_too_old_day.value) \ & (days < self.sell_b_too_old_day.value * 2) \ & (previous_last_candle['sma10'] > last_candle['sma10']) & (last_candle['percent3'] < 0): return "b_too_old_0.01" if (current_profit >= - self.sell_b_too_old_percent.value * 2) & (days >= self.sell_b_too_old_day.value * 2) \ & (days < self.sell_b_too_old_day.value * 3) \ & (previous_last_candle['sma10'] > last_candle['sma10']) & (last_candle['percent3'] < 0): return "b_too_old_0.02" if (current_profit >= - self.sell_b_too_old_percent.value * 3) & (days >= self.sell_b_too_old_day.value * 3) \ & (previous_last_candle['sma10'] > last_candle['sma10']) & (last_candle['percent3'] < 0): return "b_too_old_0.03" if self.profit_b_quick_lost.value and (current_profit >= max_profit) & ( last_candle['percent3'] < -max_percent): return "b_quick_lost" if self.profit_b_no_change.value and (current_profit > self.sell_b_profit_no_change.value) \ & (last_candle['percent10'] < self.sell_b_profit_percent10.value) & (last_candle['percent5'] < 0) \ & ((current_time - trade.open_date_utc).seconds >= 3600): return "b_no_change" if (current_profit > self.sell_b_percent.value) & (last_candle['percent3'] < - self.sell_b_percent3.value) \ & ((current_time - trade.open_date_utc).seconds <= 300 * self.sell_b_candels.value): return "b_quick_gain_param" if self.profit_b_sma5.value: if (current_profit > expected_profit) \ & ((previous_5_candle['sma5'] > last_candle['sma5']) \ | (last_candle['percent3'] < -expected_profit) | ( last_candle['percent5'] < -expected_profit)) \ & ((last_candle['percent'] < 0) & (last_candle['percent3'] < 0)): # print("over_bb_band_sma10_desc", pair, trade, " profit=", current_profit, " rate=", current_rate) return 'b_sma5' if self.profit_b_sma10.value: if (current_profit > expected_profit) \ & ((previous_5_candle['sma10'] > last_candle['sma10']) \ | (last_candle['percent3'] < -expected_profit) | ( last_candle['percent5'] < -expected_profit)) \ & ((last_candle['percent'] < 0) & (last_candle['percent3'] < 0)): # print("over_bb_band_sma10_desc", pair, trade, " profit=", current_profit, " rate=", current_rate) return 'b_sma10' if self.profit_b_sma20.value: if (current_profit > max_percent) \ & (previous_last_candle['sma10'] > last_candle['sma10']) \ & ((current_time - trade.open_date_utc).seconds >= 3600) \ & ((previous_last_candle['sma20'] > last_candle['sma20']) & ((last_candle['percent5'] < 0) | (last_candle['percent10'] < 0) | ( last_candle['percent20'] < 0))): # print("over_bb_band_sma10_desc", pair, trade, " profit=", current_profit, " rate=", current_rate) return 'b_sma20' if self.profit_b_over_rsi.value: if (current_profit > 0) & (previous_last_candle[ 'rsi'] > self.sell_b_RSI.value): # & (last_candle['percent'] < 0): #| (previous_last_candle['rsi'] > 75 & last_candle['rsi'] < 70)): # print("over_rsi", pair, trade, " profit=", current_profit, " rate=", current_rate) return 'b_over_rsi' if (current_profit > 0) & (previous_last_candle['rsi'] > self.sell_b_RSI2.value) & \ (last_candle[ 'percent'] < - self.sell_b_RSI2_percent.value): # | (previous_last_candle['rsi'] > 75 & last_candle['rsi'] < 70)): # print("over_rsi", pair, trade, " profit=", current_profit, " rate=", current_rate) return 'b_over_rsi_2' if (current_profit > 0) & (previous_last_candle['rsi'] > self.sell_b_RSI3.value) & \ (last_candle['close'] >= last_candle['max200']) & (last_candle[ 'percent'] < - self.sell_b_RSI2_percent.value): # | (previous_last_candle['rsi'] > 75 & last_candle['rsi'] < 70)): # print("over_rsi", pair, trade, " profit=", current_profit, " rate=", current_rate) return 'b_over_rsi_max' if self.profit_b_short_loss.value: if (current_profit > -expected_profit) & (previous_last_candle['percent10'] > 0.04) & ( last_candle['percent'] < 0) \ & (days >= 1): # | (previous_last_candle['rsi'] > 75 & last_candle['rsi'] < 70)): # print("over_rsi", pair, trade, " profit=", current_profit, " rate=", current_rate) return 'b_short_lost' else: max_percent = 0.005 # last_candle['bb_width'] / 3.5 # 0.005 max_profit = 0.01 # last_candle['bb_width'] * 3 / 4 # 0.015 if (current_profit > max_profit) & ( (last_candle['percent'] < -max_percent) | (last_candle['percent3'] < -max_percent) | ( last_candle['percent5'] < -max_percent)): return 'h_percent_quick' # if (last_candle['bb_width'] < 0.02) & (current_profit > 0) & (last_candle['close'] > bb_width_up) & \ # ((last_candle['percent'] < - bb_width_lim) | (last_candle['percent3'] < - bb_width_lim) | (last_candle['percent5'] < - bb_width_lim)): # return 'h_bb_width_max' if (current_profit >= - self.sell_h_too_old_percent.value) & (days >= self.sell_h_too_old_day.value) \ & (days < self.sell_h_too_old_day.value * 2) \ & (previous_last_candle['sma10'] > last_candle['sma10']) & (last_candle['percent3'] < 0): return "h_too_old_0.01" if (current_profit >= - self.sell_h_too_old_percent.value * 2) & (days >= self.sell_h_too_old_day.value * 2) \ & (days < self.sell_h_too_old_day.value * 3) \ & (previous_last_candle['sma10'] > last_candle['sma10']) & (last_candle['percent3'] < 0): return "h_too_old_0.02" if (current_profit >= - self.sell_h_too_old_percent.value * 3) & (days >= self.sell_h_too_old_day.value * 3) \ & (previous_last_candle['sma10'] > last_candle['sma10']) & (last_candle['percent3'] < 0): return "h_too_old_0.03" if self.profit_h_quick_lost.value and (current_profit >= max_profit) & ( last_candle['percent3'] < -max_percent): return "h_quick_lost" if self.profit_h_no_change.value and (current_profit > self.sell_h_profit_no_change.value) \ & (last_candle['percent10'] < self.sell_h_profit_percent10.value) & (last_candle['percent5'] < 0) \ & ((current_time - trade.open_date_utc).seconds >= 3600): return "h_no_change" if (current_profit > self.sell_h_percent.value) & (last_candle['percent3'] < - self.sell_h_percent3.value) \ & ((current_time - trade.open_date_utc).seconds <= 300 * self.sell_h_candels.value): return "h_quick_gain_param" if self.profit_h_sma5.value: if (current_profit > expected_profit) \ & ((previous_5_candle['sma5'] > last_candle['sma5']) \ | (last_candle['percent3'] < -expected_profit) | ( last_candle['percent5'] < -expected_profit)) \ & ((last_candle['percent'] < 0) & (last_candle['percent3'] < 0)): # print("over_bb_band_sma10_desc", pair, trade, " profit=", current_profit, " rate=", current_rate) return 'h_sma5' if self.profit_h_sma10.value: if (current_profit > expected_profit) \ & ((previous_5_candle['sma10'] > last_candle['sma10']) \ | (last_candle['percent3'] < -expected_profit) | ( last_candle['percent5'] < -expected_profit)) \ & ((last_candle['percent'] < 0) & (last_candle['percent3'] < 0)): # print("over_bb_band_sma10_desc", pair, trade, " profit=", current_profit, " rate=", current_rate) return 'h_sma10' if self.profit_h_sma20.value: if (current_profit > max_percent) \ & (previous_last_candle['sma10'] > last_candle['sma10']) \ & ((current_time - trade.open_date_utc).seconds >= 3600) \ & ((previous_last_candle['sma20'] > last_candle['sma20']) & ((last_candle['percent5'] < 0) | (last_candle['percent10'] < 0) | ( last_candle['percent20'] < 0))): # print("over_bb_band_sma10_desc", pair, trade, " profit=", current_profit, " rate=", current_rate) return 'h_sma20' if self.profit_h_over_rsi.value: if (current_profit > 0) & (previous_last_candle[ 'rsi'] > self.sell_h_RSI.value): # & (last_candle['percent'] < 0): #| (previous_last_candle['rsi'] > 75 & last_candle['rsi'] < 70)): # print("over_rsi", pair, trade, " profit=", current_profit, " rate=", current_rate) return 'h_over_rsi' if (current_profit > 0) & (previous_last_candle['rsi'] > self.sell_h_RSI2.value) & \ (last_candle[ 'percent'] < - self.sell_h_RSI2_percent.value): # | (previous_last_candle['rsi'] > 75 & last_candle['rsi'] < 70)): # print("over_rsi", pair, trade, " profit=", current_profit, " rate=", current_rate) return 'h_over_rsi_2' if (current_profit > 0) & (previous_last_candle['rsi'] > self.sell_h_RSI3.value) & \ (last_candle['close'] >= last_candle[ 'max200']): # | (previous_last_candle['rsi'] > 75 & last_candle['rsi'] < 70)): # print("over_rsi", pair, trade, " profit=", current_profit, " rate=", current_rate) return 'h_over_rsi_max' if self.profit_h_short_loss.value: if (current_profit > -expected_profit) & (previous_last_candle['percent10'] > 0.04) & ( last_candle['percent'] < 0) \ & (days >= 1): # | (previous_last_candle['rsi'] > 75 & last_candle['rsi'] < 70)): # print("over_rsi", pair, trade, " profit=", current_profit, " rate=", current_rate) return 'h_short_lost' def informative_pairs(self): # get access to all pairs available in whitelist. pairs = self.dp.current_whitelist() informative_pairs = [(pair, '1d') for pair in pairs] informative_pairs += [(pair, '4h') for pair in pairs] return informative_pairs def populate_indicators(self, dataframe: DataFrame, metadata: dict) -> DataFrame: # Add all ta features dataframe['trend_ichimoku_base'] = ta.trend.ichimoku_base_line( dataframe['high'], dataframe['low'], window1=9, window2=26, visual=False, fillna=False ) KST = ta.trend.KSTIndicator( close=dataframe['close'], roc1=10, roc2=15, roc3=20, roc4=30, window1=10, window2=10, window3=10, window4=15, nsig=9, fillna=False ) dataframe['trend_kst_diff'] = KST.kst_diff() dataframe['pct_change'] = dataframe['close'].pct_change(5) dataframe['min'] = talib.MIN(dataframe['close'], timeperiod=self.buy_min_horizon.value) dataframe['min10'] = talib.MIN(dataframe['close'], timeperiod=10) dataframe['min20'] = talib.MIN(dataframe['close'], timeperiod=20) dataframe['min50'] = talib.MIN(dataframe['close'], timeperiod=50) dataframe['min200'] = talib.MIN(dataframe['close'], timeperiod=200) dataframe['min200_1'] = dataframe['min200'] * 1.005 dataframe['moy200_12'] = dataframe['min200'].rolling(12).mean() dataframe['max50'] = talib.MAX(dataframe['close'], timeperiod=50) dataframe['max200'] = talib.MAX(dataframe['close'], timeperiod=200) dataframe['min_max200'] = (dataframe['max200'] - dataframe['min200']) / dataframe['min200'] dataframe['min_max50'] = (dataframe['max50'] - dataframe['min50']) / dataframe['min50'] dataframe['rsi'] = talib.RSI(dataframe) dataframe['rsi5'] = talib.RSI(dataframe, timeperiod=5) dataframe['sma5'] = talib.SMA(dataframe, timeperiod=5) dataframe['sma10'] = talib.SMA(dataframe, timeperiod=10) dataframe['sma10xpct+'] = dataframe['sma10'] * 1.015 dataframe['sma10xpct-'] = dataframe['sma10'] * 0.985 dataframe['sma20'] = talib.SMA(dataframe, timeperiod=20) dataframe['sma50'] = talib.SMA(dataframe, timeperiod=50) dataframe['sma100'] = talib.SMA(dataframe, timeperiod=100) dataframe["percent"] = (dataframe["close"] - dataframe["open"]) / dataframe["open"] dataframe["percent5"] = dataframe["percent"].rolling(5).sum() dataframe["percent3"] = dataframe["percent"].rolling(3).sum() dataframe["percent10"] = dataframe["percent"].rolling(10).sum() dataframe["percent20"] = dataframe["percent"].rolling(20).sum() dataframe["percent50"] = dataframe["percent"].rolling(50).sum() dataframe["volume10"] = dataframe["volume"].rolling(10).mean() # Bollinger Bands bollinger = qtpylib.bollinger_bands(qtpylib.typical_price(dataframe), window=20, stds=2) dataframe['bb_lowerband'] = bollinger['lower'] dataframe['bb_middleband'] = bollinger['mid'] dataframe['bb_upperband'] = bollinger['upper'] dataframe["bb_percent"] = ( (dataframe["close"] - dataframe["bb_lowerband"]) / (dataframe["bb_upperband"] - dataframe["bb_lowerband"]) ) dataframe["bb_width"] = ( (dataframe["bb_upperband"] - dataframe["bb_lowerband"]) / dataframe["bb_middleband"] ) dataframe['bb_lower_var_5'] = (dataframe['bb_lowerband'] - dataframe['min50']).rolling(5).var() dataframe['bb_lower_5'] = 100 * ((dataframe['bb_lowerband'].rolling(5).mean() / dataframe['bb_lowerband']) - 1) dataframe['bb_lower_width_5'] = (dataframe['bb_lowerband'] * (1 + dataframe['bb_width'] / 4)) # dataframe['bb_min'] = ta.MIN(dataframe['bb_lowerband'], timeperiod=36) dataframe['distance_min'] = (dataframe['close'] - dataframe['min']) / dataframe['close'] dataframe['min1.1'] = 1.01 * dataframe['min'] dataframe['normal'] = 100 * (dataframe['close'] / dataframe['close'].rolling(200).mean()) dataframe['normal_var_20'] = dataframe['normal'].rolling(20).var() dataframe['normal_var_50'] = dataframe['normal'].rolling(50).var() dataframe['min_max_close'] = ( (dataframe['max200'] - dataframe['close']) / (dataframe['close'] - dataframe['min200'])) dataframe['sar'] = talib.SAR(dataframe) # Normalization tib = dataframe['trend_ichimoku_base'] dataframe['trend_ichimoku_base'] = (tib - tib.min()) / (tib.max() - tib.min()) tkd = dataframe['trend_kst_diff'] dataframe['trend_kst_diff'] = (tkd - tkd.min()) / (tkd.max() - tkd.min()) # test = dataframe['trend_ichimoku_base'].tail(200) # dataframe['trend_ichimoku_base_2'] = (test - test.min()) / (test.max() - test.min()) dataframe[buy_crossed_indicator0] = gene_calculator(dataframe, buy_crossed_indicator0) dataframe[buy_indicator0] = gene_calculator(dataframe, buy_indicator0) dataframe["cond1"] = dataframe[buy_indicator0].div(dataframe[buy_crossed_indicator0]) # test = dataframe.copy().tail(200) # test[buy_crossed_indicator0] = gene_calculator(test, buy_crossed_indicator0) # test[buy_indicator0] = gene_calculator(test, buy_indicator0) # dataframe["cond2"] = test[buy_indicator0].div(test[buy_crossed_indicator0]) dataframe['atr'] = talib.ATR(dataframe, timeperiod=14) ################### INFORMATIVE 1D informative = self.dp.get_pair_dataframe(pair=metadata['pair'], timeframe="1d") informative["rsi"] = talib.RSI(informative) informative["max3"] = talib.MAX(informative['close'], timeperiod=3) informative["min3"] = talib.MIN(informative['close'], timeperiod=3) informative['pct_change_1'] = informative['close'].pct_change(1) informative['pct_change_3'] = informative['close'].pct_change(3) informative['pct_change_5'] = informative['close'].pct_change(5) informative['sma3'] = talib.SMA(informative, timeperiod=3) informative['sma5'] = talib.SMA(informative, timeperiod=5) informative['sma10'] = talib.SMA(informative, timeperiod=10) informative['sar'] = talib.SAR(informative) bollinger = qtpylib.bollinger_bands(qtpylib.typical_price(informative), window=20, stds=2) informative['bb_lowerband'] = bollinger['lower'] informative['bb_middleband'] = bollinger['mid'] informative['bb_upperband'] = bollinger['upper'] informative["bb_percent"] = ( (informative["close"] - informative["bb_lowerband"]) / (informative["bb_upperband"] - informative["bb_lowerband"]) ) informative["bb_width"] = ( (informative["bb_upperband"] - informative["bb_lowerband"]) / informative["bb_middleband"] ) dataframe = merge_informative_pair(dataframe, informative, self.timeframe, "1d", ffill=True) ######################## INFORMATIVE 4h informative = self.dp.get_pair_dataframe(pair=metadata['pair'], timeframe="4h") informative["rsi"] = talib.RSI(informative) informative['pct_change_1'] = informative['close'].pct_change(1) informative['pct_change_3'] = informative['close'].pct_change(3) informative['pct_change_5'] = informative['close'].pct_change(5) dataframe = merge_informative_pair(dataframe, informative, self.timeframe, "4h", ffill=True) return dataframe def populate_buy_trend(self, dataframe: DataFrame, metadata: dict) -> DataFrame: ok = False # if self.dp: # if self.dp.runmode.value in ('live', 'dry_run'): # ok = (self.market_overview['up'] / (self.market_overview['down'] + self.market_overview['up']) > 0.35) conditions = [] IND = 'trend_ichimoku_base' REAL = self.buy_h_real.value OPR = self.buy_h_cat.value DFIND = dataframe[IND] # print(DFIND.mean()) if OPR == ">R": conditions.append(DFIND > REAL) elif OPR == "=R": conditions.append(np.isclose(DFIND, REAL)) elif OPR == "= 10) & (dataframe['pct_change'] < - self.buy_h_pct.value) & (dataframe['close'] <= dataframe['min200'] * 1.002) & (dataframe['pct_change_1_1d'] > 0) & (dataframe['pct_change_3_1d'] > 0) & (dataframe['pct_change_5_1d'] > 0) # self.buy_h_pct_5.value) # & (dataframe['close_1d'] < dataframe['bb_lowerband_1d'] * self.buy_h_bb_lowerband.value) & (dataframe['bb_width_1d'] >= self.buy_h_bb_width.value) & (dataframe['close'] <= dataframe['sma5_1d']) & (dataframe['sma10_1d'].shift(1) <= dataframe['sma10_1d']) & (dataframe['cond1'] <= 0.45) # self.buy_real_num0.value / 2) & (dataframe['trend_ichimoku_base'] <= 0.1) , ['buy', 'buy_tag']] = (1, 'buy_h') conditions = [] IND = 'trend_ichimoku_base' REAL = self.buy_b_real.value OPR = self.buy_b_cat.value DFIND = dataframe[IND] # print(DFIND.mean()) if OPR == ">R": conditions.append(DFIND > REAL) elif OPR == "=R": conditions.append(np.isclose(DFIND, REAL)) elif OPR == "= 10) & (dataframe['pct_change'] < - self.buy_b_pct.value) & (dataframe['close'] <= dataframe['min200'] * 1.002) & (dataframe['pct_change_1_1d'] > 0) & (dataframe['pct_change_3_1d'] < 0) # self.buy_b_pct_3.value) & (dataframe['pct_change_5_1d'] < 0) # self.buy_b_pct_5.value) # & (dataframe['close_1d'] < dataframe['bb_lowerband_1d'] * self.buy_b_bb_lowerband.value) & (dataframe['bb_width_1d'] >= self.buy_b_bb_width.value) & (dataframe['close'] <= dataframe['sma5_1d']) & (dataframe['sma10_1d'].shift(1) <= dataframe['sma10_1d']) & (dataframe['cond1'] <= 0.45) # self.buy_real_num0.value / 2) , ['buy', 'buy_tag']] = (1, 'buy_b') for decalage in range(self.buy_decalage_deb_0.value, self.buy_decalage0.value): # if self.buy_0.value: conditions = list() condition1, dataframe = condition_generator( dataframe, buy_operator0, buy_indicator0, buy_crossed_indicator0, self.buy_real_num0.value, self.buy_decalage0.value ) conditions.append(condition1) dataframe.loc[ ( reduce(lambda x, y: x & y, conditions) & (ok) & (dataframe['volume10'].shift(decalage) * dataframe['close'].shift(decalage) / 1000 >= 10) & (dataframe['sma10'].shift(1) <= dataframe['sma10']) & (dataframe['bb_width'] >= 0.05) & (dataframe['close'] < dataframe['bb_middleband']) & (dataframe['open'] < dataframe['sma10']) & (dataframe['open'] < dataframe['sma20']) & (dataframe['min50'].shift(decalage) == dataframe['min50']) & (dataframe['min10'] <= dataframe['min50'] * 1.02) & (dataframe['percent20'].shift(decalage) <= self.buy_0_percent20.value) # & (dataframe['min20'] == dataframe['min50']) & (dataframe['distance_min'] <= self.buy_0_distance.value) & ((dataframe['close'] - dataframe['open'].shift(decalage)) / dataframe['open'].shift( decalage) <= 0.005) # & (dataframe['bb_lower_var_5'] <= self.buy_1_bb_lower_var_5.value) & (dataframe['bb_lower_5'] <= self.buy_1_bb_lower_5.value) # & (dataframe['percent_1d'] >= self.buy_1_percent_1d_num.value) # & (dataframe['percent_4h'] > 0) # & (dataframe['percent3_4h'] <= self.buy_1_percent_4h_num.value) ), ['buy', 'buy_tag']] = (1, 'buy_1_' + str(decalage)) for decalage in range(self.buy_decalage_deb_2.value, self.buy_decalage2.value): # if self.buy_2.value: dataframe.loc[ ( (dataframe['cond1'].shift(decalage) <= 0.45) # self.buy_real_num0.value / 2) & (ok) & (dataframe['volume10'].shift(decalage) * dataframe['close'].shift(decalage) / 1000 >= 10) & (dataframe['bb_width'] >= 0.05) & (dataframe['close'] < dataframe['sma10']) & (dataframe['open'] < dataframe['sma20']) & (dataframe['open'] < dataframe['sma10']) & (dataframe['min50'].shift(decalage) == dataframe['min50']) & (dataframe['percent20'].shift(decalage) <= self.buy_2_percent20.value) & (dataframe['distance_min'] <= self.buy_2_distance.value) & ((dataframe['close'] - dataframe['open'].shift(decalage)) / dataframe['open'].shift( decalage) <= 0.005) & (dataframe['bb_lower_5'] <= self.buy_2_bb_lower_5.value) ), ['buy', 'buy_tag']] = (1, 'buy_2_' + str(decalage)) # d = dataframe.tail(1).iloc[0] # print(metadata['pair'], d['cond1'], d['bb_width'], d['close'], d['sma10'], d['sma20']) for decalage in range(self.buy_decalage_deb_3.value, self.buy_decalage3.value): # if self.buy_3.value: dataframe.loc[ ( (dataframe['cond1'].shift(decalage) <= 0.2) & (ok) & (dataframe['volume10'].shift(decalage) * dataframe['close'].shift(decalage) / 1000 >= 10) #  & (dataframe['sma10'].shift(1) <= dataframe['sma10']) & (dataframe['bb_width'] >= 0.05) & (dataframe['close'] < dataframe['sma10']) & (dataframe['open'] < dataframe['sma20']) & (dataframe['open'] < dataframe['sma10']) & (dataframe['min50'].shift(decalage) == dataframe['min50']) # & (dataframe['min10'] <= dataframe['min50'] * 1.02) & (dataframe['percent20'].shift(decalage) <= self.buy_3_percent20.value) & (dataframe['distance_min'] <= self.buy_3_distance.value) & ((dataframe['close'] - dataframe['open'].shift(decalage)) / dataframe['open'].shift( decalage) <= 0.005) # & (dataframe['bb_lower_var_5'] <= self.buy_3_bb_lower_var_5.value) & (dataframe['bb_lower_5'] <= self.buy_3_bb_lower_5.value) # & (dataframe['percent_4h'] > 0) # & (dataframe['percent3_4h'] <= self.buy_3_percent_4h_num.value) ), ['buy', 'buy_tag']] = (1, 'buy_3_' + str(decalage)) dataframe.loc[ ( (dataframe['trend_ichimoku_base'] <= 0.12) & (dataframe['bb_width'] > 0.018) & (dataframe['rsi'] < 79) & (dataframe['close'] < dataframe['sma10']) & (dataframe['close'] < dataframe['bb_lower_width_5']) & (dataframe['close'] < dataframe['min50'] * 1.005) & (dataframe['percent'].shift(1) > -0.003) ), ['buy', 'buy_tag']] = (1, 'buy_ichimoku') # d = dataframe.tail(1) # print(metadata['pair'], d['percent50'].iloc[0], d['buy'].iloc[0], d['buy_tag'].iloc[0]) dataframe.loc[ ( # (dataframe['min_max50'] >= 0.03) # & (dataframe['bb_width'] >= 0.02) (dataframe['cond1'].shift(2) <= 0.75) & (dataframe['bb_width'] > 0.018) & (dataframe['rsi'] < 72) & (dataframe['close'] < dataframe['min50'] * 1.006) & (dataframe['min_max_close'] > 2) # & (dataframe['volume'] * dataframe['close'] / 1000 >= 10) # & (dataframe['percent'] > -0.003) # & (dataframe['percent'].shift(1) > -0.003) # & (dataframe['percent5'] > -0.003) # & (dataframe['min200'].shift(2) <= dataframe['min200']) # & (dataframe['pct_change_1_1d'] > 0) # & (dataframe['pct_change_3_1d'] > 0) # & (dataframe['pct_change_5_1d'] > 0) ), ['buy', 'buy_tag']] = (1, 'buy_min_max') return dataframe def populate_sell_trend(self, dataframe: DataFrame, metadata: dict) -> DataFrame: return dataframe def adjust_trade_position(self, trade: Trade, current_time: datetime, current_rate: float, current_profit: float, min_stake: float, max_stake: float, **kwargs): dataframe, _ = self.dp.get_analyzed_dataframe(trade.pair, self.timeframe) if (len(dataframe) < 1): return None last_candle = dataframe.iloc[-1].squeeze() filled_buys = trade.select_filled_orders('buy') count_of_buys = len(filled_buys) condition = (last_candle['cond1'] <= 0.75) & (last_candle['bb_width'] > 0.018) & ( last_candle['rsi'] < 72) & (last_candle['close'] < last_candle['min50'] * 1.006) & (last_candle['min_max_close'] > 2) # print(reduce(lambda x, y: x & y, condition)) if (0 < count_of_buys <= self.max_dca_orders) & (current_profit < -0.15) & (condition): try: print(last_candle['cond1'],last_candle['bb_width'],last_candle['rsi'],last_candle['close'],last_candle['percent5'], last_candle['trend_ichimoku_base']) # This returns first order stake size stake_amount = self.config['stake_amount'] * (count_of_buys + 1) # filled_buys[0].cost # This then calculates current safety order size # stake_amount = stake_amount * 1.5 #pow(2, count_of_buys) print("-----------" + trade.pair + " " + str(current_profit) + "---------------------") print("count_of_buys = " + str(count_of_buys)) print("stake_amount = " + str(stake_amount)) return stake_amount except Exception as exception: print("exception") return None return None