Zeus_11 clean
This commit is contained in:
58
Zeus_11.json
58
Zeus_11.json
@@ -16,63 +16,7 @@
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"max_open_trades": {
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"max_open_trades": 3
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},
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"buy": {
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"buy_rsi_1d": 45,
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"buy_rsi_1h": 49,
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"buy_sum_rsi_1d": 17.9,
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"buy_sum_rsi_1h": 11.5
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},
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"sell": {
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"pHSL": -0.99,
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"pPF_1": 0.022,
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"pSL_1": 0.015,
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"pPF_2": 0.05,
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"pSL_2": 0.03,
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"profit_b_no_change": false,
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"profit_b_old_sma10": false,
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"profit_b_over_rsi": true,
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"profit_b_quick_gain": false,
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"profit_b_quick_gain_3": true,
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"profit_b_quick_lost": true,
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"profit_b_short_loss": false,
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"profit_b_sma10": true,
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"profit_b_sma20": false,
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"profit_b_sma5": true,
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"profit_b_very_old_sma10": false,
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"profit_h_no_change": false,
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"profit_h_old_sma10": false,
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"profit_h_over_rsi": true,
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"profit_h_quick_gain": true,
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"profit_h_quick_gain_3": false,
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"profit_h_quick_lost": true,
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"profit_h_short_loss": true,
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"profit_h_sma10": true,
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"profit_h_sma20": true,
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"profit_h_sma5": true,
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"profit_h_very_old_sma10": false,
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"sell_b_RSI": 87,
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"sell_b_RSI2": 82,
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"sell_b_RSI2_percent": 0.007,
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"sell_b_RSI3": 75,
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"sell_b_candels": 23,
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"sell_b_percent": 0.014,
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"sell_b_percent3": 0.018,
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"sell_b_profit_no_change": 0.003,
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"sell_b_profit_percent10": 0.0011,
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"sell_b_too_old_day": 10,
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"sell_b_too_old_percent": 0.013,
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"sell_h_RSI": 82,
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"sell_h_RSI2": 75,
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"sell_h_RSI2_percent": 0.011,
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"sell_h_RSI3": 97,
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"sell_h_candels": 6,
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"sell_h_percent": 0.009,
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"sell_h_percent3": 0.016,
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"sell_h_profit_no_change": 0.017,
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"sell_h_profit_percent10": 0.0014,
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"sell_h_too_old_day": 300,
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"sell_h_too_old_percent": 0.004
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},
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"protection": {
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"protection_fibo": 9,
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"protection_percent_buy_lost": 3
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324
Zeus_11.py
324
Zeus_11.py
@@ -28,6 +28,11 @@ import talib.abstract as talib
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import freqtrade.vendor.qtpylib.indicators as qtpylib
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import requests
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from datetime import timezone, timedelta
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import matplotlib.pyplot as plt
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from mpl_toolkits.mplot3d import Axes3D
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from sklearn.linear_model import LinearRegression
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from sklearn.preprocessing import PolynomialFeatures
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from sklearn.pipeline import make_pipeline
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logger = logging.getLogger(__name__)
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@@ -47,10 +52,7 @@ class Zeus_11(IStrategy):
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# ROI table:
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minimal_roi = {
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"0": 0.564,
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"567": 0.273,
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"2814": 0.12,
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"7675": 0
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"0": 10
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}
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# Stoploss:
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@@ -112,72 +114,6 @@ class Zeus_11(IStrategy):
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trades = list()
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max_profit_pairs = {}
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profit_b_no_change = BooleanParameter(default=True, space="sell")
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profit_b_quick_lost = BooleanParameter(default=True, space="sell")
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profit_b_sma5 = BooleanParameter(default=True, space="sell")
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profit_b_sma10 = BooleanParameter(default=True, space="sell")
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profit_b_sma20 = BooleanParameter(default=True, space="sell")
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profit_b_quick_gain = BooleanParameter(default=True, space="sell")
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profit_b_quick_gain_3 = BooleanParameter(default=True, space="sell")
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profit_b_old_sma10 = BooleanParameter(default=True, space="sell")
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profit_b_very_old_sma10 = BooleanParameter(default=True, space="sell")
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profit_b_over_rsi = BooleanParameter(default=True, space="sell")
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profit_b_short_loss = BooleanParameter(default=True, space="sell")
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sell_b_percent = DecimalParameter(0, 0.02, decimals=3, default=0.01, space='sell')
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sell_b_percent3 = DecimalParameter(0, 0.02, decimals=3, default=0.01, space='sell')
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sell_b_candels = IntParameter(0, 48, default=12, space='sell')
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sell_b_too_old_day = IntParameter(0, 10, default=300, space='sell')
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sell_b_too_old_percent = DecimalParameter(0, 0.02, decimals=3, default=0.01, space='sell')
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sell_b_profit_no_change = DecimalParameter(0, 0.02, decimals=3, default=0.005, space='sell')
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sell_b_profit_percent12 = DecimalParameter(0, 0.002, decimals=4, default=0.001, space='sell')
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sell_b_RSI = IntParameter(70, 98, default=88, space='sell')
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sell_b_RSI2 = IntParameter(70, 98, default=88, space='sell')
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sell_b_RSI3 = IntParameter(70, 98, default=80, space='sell')
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sell_b_RSI2_percent = DecimalParameter(0, 0.02, decimals=3, default=0.01, space='sell')
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# sell_b_expected_profit = DecimalParameter(0, 0.01, decimals=3, default=0.01, space='sell')
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profit_h_no_change = BooleanParameter(default=True, space="sell")
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profit_h_quick_lost = BooleanParameter(default=True, space="sell")
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profit_h_sma5 = BooleanParameter(default=True, space="sell")
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profit_h_sma10 = BooleanParameter(default=True, space="sell")
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profit_h_sma20 = BooleanParameter(default=True, space="sell")
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profit_h_quick_gain = BooleanParameter(default=True, space="sell")
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profit_h_quick_gain_3 = BooleanParameter(default=True, space="sell")
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profit_h_old_sma10 = BooleanParameter(default=True, space="sell")
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profit_h_very_old_sma10 = BooleanParameter(default=True, space="sell")
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profit_h_over_rsi = BooleanParameter(default=True, space="sell")
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profit_h_short_loss = BooleanParameter(default=True, space="sell")
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sell_h_percent = DecimalParameter(0, 0.02, decimals=3, default=0.01, space='sell')
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sell_h_percent3 = DecimalParameter(0, 0.02, decimals=3, default=0.01, space='sell')
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sell_h_candels = IntParameter(0, 48, default=12, space='sell')
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sell_h_too_old_day = IntParameter(0, 10, default=300, space='sell')
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sell_h_too_old_percent = DecimalParameter(0, 0.02, decimals=3, default=0.01, space='sell')
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sell_h_profit_no_change = DecimalParameter(0, 0.02, decimals=3, default=0.005, space='sell')
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sell_h_profit_percent12 = DecimalParameter(0, 0.002, decimals=4, default=0.001, space='sell')
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sell_h_RSI = IntParameter(70, 98, default=88, space='sell')
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sell_h_RSI2 = IntParameter(70, 98, default=88, space='sell')
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sell_h_RSI3 = IntParameter(70, 98, default=80, space='sell')
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sell_h_RSI2_percent = DecimalParameter(0, 0.02, decimals=3, default=0.01, space='sell')
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protection_percent_buy_lost = IntParameter(1, 10, default=5, space='protection')
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# protection_nb_buy_lost = IntParameter(1, 2, default=2, space='protection')
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protection_fibo = IntParameter(1, 10, default=2, space='protection')
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# trailing stoploss hyperopt parameters
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# hard stoploss profit
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sell_allow_decrease = DecimalParameter(0.005, 0.02, default=0.2, decimals=2, space='sell', optimize=True, load=True)
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pairs = {
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pair: {
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"first_buy": 0,
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@@ -199,13 +135,13 @@ class Zeus_11(IStrategy):
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"BTC/USDT", "ETH/USDT", "DOGE/USDT", "XRP/USDT", "SOL/USDT"]
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}
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def min_max_scaling(self, series: pd.Series) -> pd.Series:
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"""Normaliser les données en les ramenant entre 0 et 100."""
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return 100 * (series - series.min()) / (series.max() - series.min())
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def z_score_scaling(self, series: pd.Series) -> pd.Series:
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"""Normaliser les données en utilisant Z-Score Scaling."""
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return (series - series.mean()) / series.std()
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# def min_max_scaling(self, series: pd.Series) -> pd.Series:
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# """Normaliser les données en les ramenant entre 0 et 100."""
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# return 100 * (series - series.min()) / (series.max() - series.min())
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#
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# def z_score_scaling(self, series: pd.Series) -> pd.Series:
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# """Normaliser les données en utilisant Z-Score Scaling."""
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# return (series - series.mean()) / series.std()
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def confirm_trade_entry(self, pair: str, order_type: str, amount: float, rate: float, time_in_force: str,
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current_time: datetime, entry_tag: Optional[str], **kwargs) -> bool:
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@@ -232,7 +168,7 @@ class Zeus_11(IStrategy):
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self.pairs[pair]['current_profit'] = 0
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print(
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f"|{'-' * 18}+{'-' * 12}+{'-' * 12}+{'-' * 20}+{'-' * 14}+{'-' * 8}+{'-' * 10}+{'-' * 7}+{'-' * 13}+{'-' * 14}+{'-' * 14}+{'-' * 7}+{'-' * 12}|"
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f"|{'-' * 18}+{'-' * 12}+{'-' * 5}+{'-' * 20}+{'-' * 14}+{'-' * 8}+{'-' * 10}+{'-' * 7}+{'-' * 13}+{'-' * 14}+{'-' * 14}+{'-' * 7}+{'-' * 12}|"
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)
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stake_amount = self.adjust_stake_amount(pair, last_candle)
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@@ -305,7 +241,7 @@ class Zeus_11(IStrategy):
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last_candle = dataframe.iloc[-1].squeeze()
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before_last_candle = dataframe.iloc[-2].squeeze()
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count_of_buys = trade.nr_of_successful_entries
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#count_of_buys = trade.nr_of_successful_entries
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max_touch_before = self.pairs[pair]['max_touch']
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self.pairs[pair]['last_max'] = max(last_candle['haclose'], self.pairs[pair]['last_max'])
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@@ -317,9 +253,10 @@ class Zeus_11(IStrategy):
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expected_profit = self.expectedProfit(pair, last_candle)
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if (last_candle['rsi_1d'] > 50) & (last_candle['percent12'] < 0.0):
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if (last_candle['percent3'] < 0.0) & (current_profit > last_candle['min_max200'] / 3):
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self.trades = list()
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return 'min_max200_' + str(count_of_buys)
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return 'mx_' + str(count_of_buys)
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if (last_candle['percent12'] <= -0.01) & (current_profit >= expected_profit):
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self.trades = list()
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return 'profit_' + str(count_of_buys)
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@@ -327,6 +264,7 @@ class Zeus_11(IStrategy):
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and ((last_candle['rsi'] >= 75) or before_last_candle['rsi'] >= 75):
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self.trades = list()
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return 'rsi_' + str(count_of_buys)
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self.pairs[pair]['max_touch'] = max(last_candle['haclose'], self.pairs[pair]['max_touch'])
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def informative_pairs(self):
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# get access to all pairs available in whitelist.
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@@ -346,10 +284,10 @@ class Zeus_11(IStrategy):
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# f"|{'-' * 18}+{'-' * 12}+{'-' * 12}+{'-' * 20}+{'-' * 14}+{'-' * 8}+{'-' * 10}+{'-' * 7}+{'-' * 13}+{'-' * 14}+{'-' * 14}+{'-' * 7}+{'-' * 12}|"
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# )
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print(
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f"| {'Date':<16} | {'Action':<10} | {'Pair':<10} | {'Trade Type':<18} | {'Rate':>12} | {'Dispo':>6} | {'Profit':>8} | {'Pct':>5} | {'max_touch':>11} | {'last_lost':>12} | {'last_max':>12} | {'Buys':>5} | {'Stake':>10} |"
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f"| {'Date':<16} | {'Action':<10} | {'Pair':<5} | {'Trade Type':<18} | {'Rate':>12} | {'Dispo':>6} | {'Profit':>8} | {'Pct':>5} | {'max_touch':>11} | {'last_lost':>12} | {'last_max':>12} | {'Buys':>5} | {'Stake':>10} |"
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)
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print(
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f"|{'-' * 18}+{'-' * 12}+{'-' * 12}+{'-' * 20}+{'-' * 14}+{'-' * 8}+{'-' * 10}+{'-' * 7}+{'-' * 13}+{'-' * 14}+{'-' * 14}+{'-' * 7}+{'-' * 12}|"
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f"|{'-' * 18}+{'-' * 12}+{'-' * 5}+{'-' * 20}+{'-' * 14}+{'-' * 8}+{'-' * 10}+{'-' * 7}+{'-' * 13}+{'-' * 14}+{'-' * 14}+{'-' * 7}+{'-' * 12}|"
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)
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self.columns_logged += 1
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date = str(date)[:16] if date else "-"
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@@ -380,12 +318,17 @@ class Zeus_11(IStrategy):
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pct_max = round((last_candle['close'] - self.pairs[pair]['first_buy']) / self.pairs[pair]['first_buy'], 3) # round(100 * self.pairs[pair]['current_profit'], 1)
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if trade_type is not None:
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if np.isnan(last_candle['rsi_1d']):
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string = ' '
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else:
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string = (str(int(last_candle['rsi_1d']))) + " " + str(int(last_candle['rsi_diff_1d']))
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trade_type = trade_type \
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+ " " + str(round(100 * last_candle['sma5_pct_1d'], 0))
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# + " " + str(round(last_candle['sma5_diff_1h'], 1))
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+ " " + string \
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+ " " + str(int(last_candle['rsi_1h'])) \
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+ " " + str(int(last_candle['rsi_diff_1h']))
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print(
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f"| {date:<16} | {action:<10} | {pair:<10} | {trade_type or '-':<18} | {rate or '-':>12} | {dispo or '-':>6} | {profit or '-':>8} | {pct_max or '-':>5} | {max_touch or '-':>11} | {last_lost or '-':>12} | {round(self.pairs[pair]['last_max'], 2) or '-':>12} | {buys or '-':>5} | {stake or '-':>10} |"
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f"| {date:<16} | {action:<10} | {pair[0:3]:<3} | {trade_type or '-':<18} | {rate or '-':>12} | {dispo or '-':>6} | {profit or '-':>8} | {pct_max or '-':>5} | {max_touch or '-':>11} | {last_lost or '-':>12} | {round(self.pairs[pair]['last_max'], 2) or '-':>12} | {buys or '-':>5} | {stake or '-':>10} |"
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)
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def populate_indicators(self, dataframe: DataFrame, metadata: dict) -> DataFrame:
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@@ -415,6 +358,7 @@ class Zeus_11(IStrategy):
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dataframe['max50_diff'] = (dataframe['max50'] - dataframe['close']) / dataframe['close']
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dataframe['sma5'] = talib.SMA(dataframe, timeperiod=5)
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dataframe['sma5_pct'] = (dataframe['sma5'] - dataframe['sma5']) / dataframe['sma5']
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dataframe['sma10'] = talib.SMA(dataframe, timeperiod=10)
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dataframe['sma20'] = talib.SMA(dataframe, timeperiod=20)
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dataframe["percent"] = (dataframe["close"] - dataframe["open"]) / dataframe["open"]
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@@ -484,7 +428,7 @@ class Zeus_11(IStrategy):
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# Normaliser les données de 'close'
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# normalized_close = self.min_max_scaling(dataframe['close'])
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################### INFORMATIVE 1h
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# informative = self.dp.get_pair_dataframe(pair=metadata['pair'], timeframe="1h")
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informative = self.dp.get_pair_dataframe(pair=metadata['pair'], timeframe="1h")
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# x_percent = 0.01
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# n_hours = 6
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# n_candles = n_hours * 60 # metadata["timeframe"] # Convertir en bougies
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@@ -492,10 +436,17 @@ class Zeus_11(IStrategy):
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# informative["max_profit"] = dataframe["informative"].rolling(n_candles).max()
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# informative["profit_hit"] = dataframe["informative"] >= informative["close"] * (1 + x_percent)
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#
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# dataframe = merge_informative_pair(dataframe, informative, self.timeframe, "1h", ffill=True)
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informative['rsi'] = talib.RSI(informative['close'], length=7)
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informative['rsi_diff'] = informative['rsi'] - informative['rsi'].shift(1)
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informative['sma5'] = talib.SMA(informative, timeperiod=5)
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informative['sma5_pct'] = 100 * (informative['sma5'] - informative['sma5'].shift(1)) / informative['sma5']
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dataframe = merge_informative_pair(dataframe, informative, self.timeframe, "1h", ffill=True)
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################### INFORMATIVE 1d
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informative = self.dp.get_pair_dataframe(pair=metadata['pair'], timeframe="1d")
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informative['rsi'] = talib.RSI(informative['close'], length=7)
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informative['rsi_diff'] = informative['rsi'] - informative['rsi'].shift(1)
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informative['sma5'] = talib.SMA(informative, timeperiod=5)
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informative['sma5_pct'] = 100 * (informative['sma5'] - informative['sma5'].shift(1)) / informative['sma5']
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sorted_close_prices = informative['close'].tail(365).sort_values()
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@@ -548,6 +499,7 @@ class Zeus_11(IStrategy):
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# Order(id=2396, trade=1019, order_id=29870026652, side=buy, filled=0.00078, price=63921.01,
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# status=closed, date=2024-08-26 02:20:11)
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dataframe['last_price'] = buy.price
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self.pairs[trade.pair]['last_buy'] = buy.price
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print(buy)
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count = count + 1
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amount += buy.price * buy.filled
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@@ -610,11 +562,12 @@ class Zeus_11(IStrategy):
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# **************
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# Identifier le prix de début et de fin de chaque chute
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drop_stats = dataframe.groupby('drop_id').agg(
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start_price=('close', 'first'), # Prix au début de la chute
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end_price=('close', 'last'), # Prix à la fin de la chute
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)
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# # Identifier le prix de début et de fin de chaque chute
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# drop_stats = dataframe.groupby('drop_id').agg(
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# start_price=('close', 'first'), # Prix au début de la chute
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# end_price=('close', 'last'), # Prix à la fin de la chute
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# )
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return dataframe
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@@ -639,12 +592,154 @@ class Zeus_11(IStrategy):
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dataframe.loc[
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(
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(dataframe['down_count'].shift(1) < - 6)
|
||||
& (dataframe['down_count'] == 0)
|
||||
& (dataframe['down_pct'].shift(1) <= -0.5)
|
||||
), ['enter_long', 'enter_tag']] = (1, 'buy_hapercent')
|
||||
(dataframe['rsi_1h'] < 70)
|
||||
& (dataframe['rsi_diff_1h'] > -5)
|
||||
# (dataframe['down_count'].shift(1) < - 6)
|
||||
# & (dataframe['down_count'] == 0)
|
||||
# & (dataframe['down_pct'].shift(1) <= -0.5)
|
||||
), ['enter_long', 'enter_tag']] = (1, 'down')
|
||||
dataframe['test'] = np.where(dataframe['enter_long'] == 1, dataframe['close'] * 1.01, np.nan)
|
||||
|
||||
# for i in range(len(dataframe) - 48):
|
||||
# last_candle = dataframe.iloc[i]
|
||||
# if last_candle['enter_long'] is not None:
|
||||
# if last_candle['enter_long'] == 1:
|
||||
# futur_candle = dataframe.iloc[i + 48]
|
||||
# sma5pct_1h = last_candle['sma5_pct_1h']
|
||||
# sma5pct_1d = last_candle['sma5_pct_1d']
|
||||
# i = i + 48
|
||||
# print(f"{i} ===> ;{sma5pct_1d:.2f};{sma5pct_1h:.2f};{100 * futur_candle['percent48']:.1f}")
|
||||
|
||||
# print(dataframe.columns)
|
||||
#
|
||||
# colonnes = [
|
||||
# 'hapercent', 'close_02', 'pct_change', 'max200_diff',
|
||||
# 'max50_diff', 'sma5_pct', 'percent', 'percent3',
|
||||
# 'percent5', 'percent12', 'percent24', 'percent48', 'rsi',
|
||||
# 'bb_percent', 'down_count',
|
||||
# 'up_count', 'down_pct', 'up_pct', 'volume_1h', 'rsi_1h',
|
||||
# 'sma5_pct_1h', 'volume_1d', 'rsi_1d', 'sma5_pct_1d',
|
||||
# 'pct_min_max_1d']
|
||||
#
|
||||
# exclude_cols = ['date', 'enter_tag', 'close', 'open', 'low', 'high', 'haclose', 'haopen', 'halow', 'hahigh'
|
||||
# , 'date_1h', 'close_1h', 'open_1h', 'low_1h', 'high_1h', 'haclose_1h', 'haopen_1h', 'halow_1h', 'hahigh_1h'
|
||||
# , 'date_1d', 'close_1d', 'open_1d', 'low_1d', 'high_1d', 'haclose_1d', 'haopen_1d', 'halow_1d', 'hahigh_1d']
|
||||
# for column in colonnes:
|
||||
# for column2 in colonnes:
|
||||
# print('===============================================')
|
||||
# print(f"Colonne 1: {column} Colonne 2: {column2}")
|
||||
# list_1 = []
|
||||
# list_2 = []
|
||||
# data = []
|
||||
# key_1 = column
|
||||
# key_2 = column2
|
||||
# futur = 'percent48'
|
||||
#
|
||||
# for i in range(200, len(dataframe) - 48):
|
||||
# last_candle = dataframe.iloc[i]
|
||||
# if last_candle['enter_long'] is not None and last_candle['enter_long'] == 1:
|
||||
# futur_candle = dataframe.iloc[i + 48]
|
||||
# val_1 = last_candle[key_1]
|
||||
# val_2 = last_candle[key_2]
|
||||
# if not np.isnan(val_1) and not np.isnan(val_2):
|
||||
# value = 100 * futur_candle[futur]
|
||||
# list_1.append(val_2)
|
||||
# list_2.append(val_1)
|
||||
# data.append(value)
|
||||
# i += 48 # skip to avoid overlapping trades
|
||||
#
|
||||
# # Tes données sous forme de listes
|
||||
# x = np.array(list_1) # axe X
|
||||
# y = np.array(list_2) # axe Y
|
||||
# z = np.array(data) # valeur à afficher (performance future)
|
||||
# # print(len(list_2), len(list_2), len(data))
|
||||
# # print(f"Min/max H1: {min(list_1):.5f}, {max(list_1):.5f}")
|
||||
# # print(f"Min/max 1D: {min(list_2):.5f}, {max(list_2):.5f}")
|
||||
# # print(f"Min/max Data: {min(data):.5f}, {max(data):.5f}")
|
||||
# # Fusionner X et Y comme variables indépendantes
|
||||
# XY = np.column_stack((x, y))
|
||||
# # Modèle
|
||||
# model = LinearRegression()
|
||||
# model.fit(XY, z)
|
||||
# # Coefficients
|
||||
# a, b = model.coef_
|
||||
# c = model.intercept_
|
||||
# r_squared = model.score(XY, z)
|
||||
# print(f"Coefficient de détermination R² : {r_squared:.4f}")
|
||||
# print(f"Équation estimée : Z = {a:.4f} * X + {b:.4f} * Y + {c:.4f}")
|
||||
|
||||
# degree = 2 # Pour inclure X², Y², XY
|
||||
# poly_model = make_pipeline(PolynomialFeatures(degree), LinearRegression())
|
||||
# poly_model.fit(XY, z)
|
||||
#
|
||||
# # Pour afficher les coefficients :
|
||||
# linreg = poly_model.named_steps['linearregression']
|
||||
# print("Coefficients:", linreg.coef_)
|
||||
# print("Intercept:", linreg.intercept_)
|
||||
#
|
||||
#
|
||||
# # Données factices
|
||||
# # x = np.random.uniform(-2, 2, 500)
|
||||
# # y = np.random.uniform(-2, 2, 500)
|
||||
# # z = np.sin(x) * np.cos(y) * 10 # variation factice
|
||||
#
|
||||
# # Discrétisation (binning)
|
||||
# xbins = np.linspace(min(x), max(x), 20)
|
||||
# ybins = np.linspace(min(y), max(y), 20)
|
||||
#
|
||||
# # Création des bins 2D
|
||||
# H, xedges, yedges = np.histogram2d(x, y, bins=[xbins, ybins], weights=z)
|
||||
# counts, _, _ = np.histogram2d(x, y, bins=[xbins, ybins]) # pour normaliser
|
||||
#
|
||||
# # Moyenne dans chaque bin (évite division par 0)
|
||||
# H_avg = np.divide(H, counts, out=np.zeros_like(H), where=counts != 0)
|
||||
#
|
||||
# # Préparer coordonnées pour le graphique
|
||||
# xpos, ypos = np.meshgrid(xedges[:-1], yedges[:-1], indexing="ij")
|
||||
# xpos = xpos.ravel()
|
||||
# ypos = ypos.ravel()
|
||||
# zpos = np.zeros_like(xpos)
|
||||
#
|
||||
# dx = dy = (xedges[1] - xedges[0]) * 0.9
|
||||
# dz = H_avg.ravel()
|
||||
#
|
||||
# # Affichage
|
||||
# fig = plt.figure(figsize=(12, 8))
|
||||
# ax = fig.add_subplot(111, projection='3d')
|
||||
# colors = plt.cm.RdYlGn((dz - dz.min()) / (dz.max() - dz.min() + 1e-5)) # Normalisation
|
||||
#
|
||||
# ax.bar3d(xpos, ypos, zpos, dx, dy, dz, color=colors, shade=True)
|
||||
#
|
||||
# ax.set_xlabel(f"{key_1}")
|
||||
# ax.set_ylabel(f"{key_2}")
|
||||
# ax.set_zlabel('Perf. moyenne sur 48 bougies')
|
||||
# ax.set_title('Performance 48 bougies (%)')
|
||||
# plt.show()
|
||||
|
||||
# plt.figure(figsize=(10, 8))
|
||||
# scatter = plt.scatter(
|
||||
# list_1,
|
||||
# list_2,
|
||||
# c=data, # La couleur selon la performance future
|
||||
# cmap='RdYlGn', # Dégradé rouge -> jaune -> vert
|
||||
# alpha=0.8,
|
||||
# edgecolors='k'
|
||||
# )
|
||||
# plt.xlabel(f"{key_1}")
|
||||
# plt.ylabel(f"{key_2}")
|
||||
# plt.title(f"Performance future")
|
||||
# plt.colorbar(scatter, label="Performance 48 bougies (%)")
|
||||
# plt.grid(True)
|
||||
# plt.show()
|
||||
|
||||
# plt.figure(figsize=(10, 6))
|
||||
# plt.scatter(list_1, data, c='blue', alpha=0.6)
|
||||
# plt.xlabel("SMA5 % sur 1 jour")
|
||||
# plt.ylabel("Variation du prix après 48 bougies (%)")
|
||||
# plt.title("Lien entre variation SMA5 1j et performance 48h")
|
||||
# plt.grid(True)
|
||||
# plt.show()
|
||||
|
||||
return dataframe
|
||||
|
||||
def populate_sell_trend(self, dataframe: DataFrame, metadata: dict) -> DataFrame:
|
||||
@@ -652,15 +747,17 @@ class Zeus_11(IStrategy):
|
||||
|
||||
def adjust_trade_position(self, trade: Trade, current_time: datetime,
|
||||
current_rate: float, current_profit: float, min_stake: float,
|
||||
max_stake: float, **kwargs):
|
||||
# ne rien faire si ordre deja en cours
|
||||
max_stake: float, **kwargs): # ne rien faire si ordre deja en cours
|
||||
if trade.has_open_orders:
|
||||
#print("has open orders : true")
|
||||
return None
|
||||
if (self.wallets.get_available_stake_amount() < 50): # or trade.stake_amount >= max_stake:
|
||||
#print("wallet too low")
|
||||
return 0
|
||||
|
||||
dataframe, _ = self.dp.get_analyzed_dataframe(trade.pair, self.timeframe)
|
||||
last_candle = dataframe.iloc[-1].squeeze()
|
||||
last_candle_3 = dataframe.iloc[-4].squeeze()
|
||||
# prépare les données
|
||||
count_of_buys = trade.nr_of_successful_entries
|
||||
current_time = current_time.astimezone(timezone.utc)
|
||||
@@ -669,15 +766,18 @@ class Zeus_11(IStrategy):
|
||||
hours = (current_time - trade.date_last_filled_utc).total_seconds() / 3600.0
|
||||
|
||||
if (len(dataframe) < 1):
|
||||
#print("dataframe empty")
|
||||
return None
|
||||
pair = trade.pair
|
||||
if pair not in ('BTC/USDC', 'XRP/USDC', 'BTC/USDT', 'XRP/USDT'):
|
||||
print(f"{pair} not in allowed pairs list")
|
||||
return None
|
||||
max_buys = 20
|
||||
|
||||
filled_buys = trade.select_filled_orders('buy')
|
||||
count_of_buys = len(filled_buys)
|
||||
# filled_buys = trade.select_filled_orders('buy')
|
||||
# count_of_buys = len(filled_buys)
|
||||
if count_of_buys >= max_buys:
|
||||
#print(f"count_of_buys {count_of_buys} > {max_buys} max buys")
|
||||
return None
|
||||
|
||||
# if 'buy' in last_candle:
|
||||
@@ -685,16 +785,20 @@ class Zeus_11(IStrategy):
|
||||
# else:
|
||||
# condition = False
|
||||
# self.protection_nb_buy_lost.value
|
||||
limit = last_candle['limit']
|
||||
# limit = last_candle['limit']
|
||||
stake_amount = self.config['stake_amount'] + 50 * self.fibo[count_of_buys]
|
||||
|
||||
current_time_utc = current_time.astimezone(timezone.utc)
|
||||
open_date = trade.open_date.astimezone(timezone.utc)
|
||||
days_since_open = (current_time_utc - open_date).days
|
||||
pct_max = round((last_candle['close'] - self.pairs[trade.pair]['last_buy']) / self.pairs[trade.pair]['last_buy'], 3)
|
||||
# current_time_utc = current_time.astimezone(timezone.utc)
|
||||
# open_date = trade.open_date.astimezone(timezone.utc)
|
||||
# days_since_open = (current_time_utc - open_date).days
|
||||
pct_max = round((last_candle['close'] - self.pairs[trade.pair]['last_buy']) / self.pairs[trade.pair]['last_buy'], 4)
|
||||
|
||||
# if (days_since_open > count_of_buys) & (0 < count_of_buys <= max_buys) & (current_rate <= limit) & (last_candle['enter_long'] == 1):
|
||||
if ((last_candle['enter_long'] == 1) or last_candle['percent48'] < - 0.03) \
|
||||
if (
|
||||
(
|
||||
last_candle['enter_long'] == 1)
|
||||
or (last_candle['percent48'] < - 0.03 and last_candle['rsi_diff_1h'] > -5)
|
||||
) \
|
||||
and (pct_max < -0.012 - (count_of_buys * 0.001)):
|
||||
try:
|
||||
|
||||
@@ -702,7 +806,7 @@ class Zeus_11(IStrategy):
|
||||
# stake_amount = stake_amount * pow(1.5, count_of_buys)
|
||||
# print(
|
||||
# f"Adjust {current_time} price={trade.pair} rate={current_rate:.4f} buys={count_of_buys} limit={limit:.4f} stake={stake_amount:.4f}")
|
||||
|
||||
trade_type = last_candle['enter_tag'] if last_candle['enter_long'] == 1 else 'pct48'
|
||||
self.log_trade(
|
||||
last_candle=last_candle,
|
||||
date=current_time,
|
||||
@@ -710,7 +814,7 @@ class Zeus_11(IStrategy):
|
||||
dispo=dispo,
|
||||
pair=trade.pair,
|
||||
rate=current_rate,
|
||||
trade_type=last_candle['enter_tag'],
|
||||
trade_type=trade_type,
|
||||
profit=round(current_profit, 4), # round(current_profit * trade.stake_amount, 2),
|
||||
buys=trade.nr_of_successful_entries + 1,
|
||||
stake=round(stake_amount, 2)
|
||||
@@ -722,6 +826,10 @@ class Zeus_11(IStrategy):
|
||||
except Exception as exception:
|
||||
print(exception)
|
||||
return None
|
||||
pcte=-0.012 - (count_of_buys * 0.001)
|
||||
|
||||
if not self.dp.runmode.value in ('backtest', 'hyperopt'):
|
||||
logger.error(f"adjust_trade_position {trade.pair} tag={last_candle['enter_long']} pct48={last_candle['percent48']:.1f} pctmax={pct_max:.4f} pcte={pcte:.4f}")
|
||||
return None
|
||||
|
||||
def adjust_stake_amount(self, pair: str, dataframe: DataFrame):
|
||||
|
||||
15
Zeus_11.txt
15
Zeus_11.txt
@@ -1,15 +0,0 @@
|
||||
[Achats]
|
||||
BTC/USDT=63400
|
||||
ETH/USDT=2570
|
||||
ETC/USDT=10
|
||||
DOGE/USDT=0.106
|
||||
SOL/USDT=150
|
||||
XRP/USDT=0.584
|
||||
|
||||
[Ventes]
|
||||
BTC/USDT=63979
|
||||
ETH/USDT=2542
|
||||
ETC/USDT=70
|
||||
DOGE/USDT=0.122
|
||||
SOL/USDT=150.24
|
||||
XRP/USDT=0.6
|
||||
Reference in New Issue
Block a user