Files
Freqtrade/Zeus_8d_2.py
Jérôme Delacotte 7c239227d8 first commit
2025-03-06 11:01:43 +01:00

278 lines
11 KiB
Python

# 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__)
class Zeus_8d_2(IStrategy):
# Buy hyperspace params:
buy_params = {
"buy_min_horizon": 23,
"buy_min_max_n": 0.16,
"buy_rsi": 10,
"decalage": 8,
}
# Sell hyperspace params:
sell_params = {
"sell_b_RSI": 75,
"sell_percent": 0.1,
"sell_profit_percent": 0.1,
}
# Protection hyperspace params:
protection_params = {
"protection_nb_buy_lost": 3,
"protection_percent_buy_lost": 17,
"protection_start_buying_rsi_1d": 17,
"protection_stop_buying_rsi_1d": 51,
}
# ROI table: # value loaded from strategy
minimal_roi = {
"0": 10
}
# Stoploss:
stoploss = -1.0 # value loaded from strategy
# Trailing stop:
trailing_stop = False # value loaded from strategy
trailing_stop_positive = None # value loaded from strategy
trailing_stop_positive_offset = 0.0 # value loaded from strategy
trailing_only_offset_is_reached = False # value loaded from strategy
# Buy hypers
timeframe = '4h'
stop_buying = {}
# DCA config
# position_adjustment_enable = True
plot_config = {
"main_plot": {
"min200": {
"color": "#86c932"
},
"min50": {
"color": "white"
},
# "max200": {
# "color": "yellow"
# },
"sma3_1d": {
"color": "pink"
},
"sma5_1d": {
"color": "blue"
},
"sma10_1d": {
"color": "orange"
},
"close_1d": {
"color": "#73e233",
},
"low": {
"color": "cyan",
},
"bb_lowerband": {
"color": "#da59a6"},
"bb_upperband": {
"color": "#da59a6",
}
},
"subplots": {
# "Ind": {
# "trend_ichimoku_base": {
# "color": "#dd1384"
# },
# "trend_kst_diff": {
# "color": "#850678"
# }
# },
# "BB": {
# "bb_width": {
# "color": "white"
# },
# "bb_lower_5": {
# "color": "yellow"
# }
# },
"Rsi": {
"rsi_1d": {
"color": "pink"
},
# "rsi_1h": {
# "color": "green"
# },
"rsi5": {
"color": "yellow"
},
"rsi3_1d": {
"color": "red"
}
},
# "Percent": {
# "pct_change_1_1d": {
# "color": "green"
# },
# "pct_change_3_1d": {
# "color": "orange"
# },
# "pct_change_5_1d": {
# "color": "red"
# }
# }
}
}
buy_min_horizon = IntParameter(1, 100, default=7, space='buy')
buy_rsi = IntParameter(1, 30, default=12, space='buy')
buy_min_max_n = DecimalParameter(0.01, 0.2, decimals=2, default=0.05, space='buy')
buy_percent = DecimalParameter(1.005, 1.02, decimals=3, default=1.01, space='buy')
decalage = IntParameter(1, 12, default=6, space='buy')
sell_b_RSI = IntParameter(60, 98, default=60, space='sell')
sell_profit_percent = DecimalParameter(0.1, 1.5, decimals=1, default=0.8, space='sell')
sell_percent = DecimalParameter(0.01, 0.30, decimals=2, default=0.05, space='sell')
# protection_percent_buy_lost = IntParameter(1, 30, default=3, space='protection')
# protection_nb_buy_lost = IntParameter(1, 3, default=3, space='protection')
protection_stop_buying_rsi_1d = IntParameter(50, 100, default=76, space='protection')
protection_start_buying_rsi_1d = IntParameter(1, 50, default=30, space='protection')
# def confirm_trade_entry(self, pair: str, order_type: str, amount: float, rate: float, time_in_force: str,
# current_time: datetime, entry_tag: Optional[str], **kwargs) -> bool:
# allow_to_buy = True
# # info_previous_last_candle = informative.iloc[-2].squeeze()
# # dataframe, _ = self.dp.get_analyzed_dataframe(pair, self.timeframe)
# # last_candle = dataframe.iloc[-1].squeeze()
#
# 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_previous_last_candle = dataframe.iloc[-3].squeeze()
#
# if (current_profit > self.buy_min_max_n.value * self.sell_profit_percent.value):
# # \
# # & (previous_last_candle['rsi5'] > self.sell_b_RSI.value) \
# # & (previous_last_candle['rsi5'] > last_candle['rsi5']) \
# # & (previous_last_candle['rsi5'] > previous_previous_last_candle['rsi5']):
# logger.info("Sell ==> %s ", pair + " " + str(current_time) + " " + str(current_profit)
# + " " + str(self.buy_min_max_n.value * self.sell_profit_percent.value)
# + " " + str(previous_previous_last_candle['rsi5']) + " " + str(
# previous_last_candle['rsi5']) + " " + str(last_candle['rsi5'])
# )
# return 'profit_1' # + str(self.sell_percent.value)
#
# return None
def populate_indicators(self, dataframe: DataFrame, metadata: dict) -> DataFrame:
# Add all ta features
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_n'] = talib.MIN(dataframe['close'], timeperiod=self.buy_min_horizon.value)
dataframe['max_n'] = talib.MAX(dataframe['close'], timeperiod=self.buy_min_horizon.value)
dataframe['min_max_n'] = (dataframe['max_n'] - dataframe['min_n']) / dataframe['min_n']
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['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['percent_lost_n'] = dataframe["percent"].rolling(self.protection_lost_candles.value).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['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['min_max_close'] = (
(dataframe['max200'] - dataframe['close']) / (dataframe['close'] - dataframe['min200']))
return dataframe
def populate_buy_trend(self, dataframe: DataFrame, metadata: dict) -> DataFrame:
dataframe.loc[
(
(dataframe['rsi5'] < self.protection_stop_buying_rsi_1d.value)
& (dataframe['rsi5'] > self.protection_start_buying_rsi_1d.value)
# & (dataframe['rsi5'].shift(1) < self.buy_rsi.value)
# & (dataframe['rsi5'].shift(1) < dataframe['rsi5'])
# & (dataframe['rsi5'].shift(1) < dataframe['rsi5'].shift(2))
& (dataframe['min_n'].shift(self.decalage.value) == dataframe['min_n'])
& (dataframe['min_max_n'] >= self.buy_min_max_n.value)
& (dataframe['close'] <= dataframe['min_n'] * self.buy_percent.value)
), ['buy', 'buy_tag']] = (1, 'buy_adx_inf')
return dataframe
def populate_sell_trend(self, dataframe: DataFrame, metadata: dict) -> DataFrame:
return dataframe