2018-01-28 01:33:04 +00:00
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# pragma pylint: disable=missing-docstring, invalid-name, pointless-string-statement
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2021-12-18 09:15:59 +00:00
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from datetime import datetime
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2018-01-15 08:35:11 +00:00
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import talib.abstract as ta
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2018-01-28 01:33:04 +00:00
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from pandas import DataFrame
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2018-03-17 21:44:47 +00:00
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2018-01-15 08:35:11 +00:00
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import freqtrade.vendor.qtpylib.indicators as qtpylib
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2021-12-13 00:27:09 +00:00
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from freqtrade.persistence import Trade
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2022-03-30 08:39:07 +00:00
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from freqtrade.strategy.interface import IStrategy
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2018-01-15 08:35:11 +00:00
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2021-12-18 09:00:25 +00:00
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2021-08-26 05:25:53 +00:00
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class StrategyTestV2(IStrategy):
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2018-01-15 08:35:11 +00:00
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"""
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2021-08-26 05:25:53 +00:00
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Strategy used by tests freqtrade bot.
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2019-09-14 08:00:32 +00:00
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Please do not modify this strategy, it's intended for internal use only.
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Please look at the SampleStrategy in the user_data/strategy directory
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or strategy repository https://github.com/freqtrade/freqtrade-strategies
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for samples and inspiration.
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2018-01-15 08:35:11 +00:00
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"""
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2019-08-26 18:16:03 +00:00
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INTERFACE_VERSION = 2
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2018-01-15 08:35:11 +00:00
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# Minimal ROI designed for the strategy
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minimal_roi = {
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2018-11-25 19:44:40 +00:00
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"40": 0.0,
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"30": 0.01,
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"20": 0.02,
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"0": 0.04
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2018-01-15 08:35:11 +00:00
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}
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# Optimal stoploss designed for the strategy
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stoploss = -0.10
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2021-04-03 14:54:47 +00:00
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# Optimal timeframe for the strategy
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2020-06-02 07:36:04 +00:00
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timeframe = '5m'
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2018-01-20 22:40:41 +00:00
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2018-11-17 09:26:15 +00:00
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# Optional order type mapping
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2018-11-15 05:58:24 +00:00
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order_types = {
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'buy': 'limit',
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'sell': 'limit',
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2018-11-25 16:22:56 +00:00
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'stoploss': 'limit',
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'stoploss_on_exchange': False
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2018-11-15 05:58:24 +00:00
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}
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2019-10-23 15:58:26 +00:00
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# Number of candles the strategy requires before producing valid signals
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2019-10-23 15:57:38 +00:00
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startup_candle_count: int = 20
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2018-11-25 19:44:40 +00:00
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# Optional time in force for orders
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order_time_in_force = {
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'buy': 'gtc',
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'sell': 'gtc',
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}
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2021-12-24 10:38:43 +00:00
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# By default this strategy does not use Position Adjustments
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position_adjustment_enable = False
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2019-01-26 18:22:45 +00:00
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def informative_pairs(self):
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2019-01-22 18:17:08 +00:00
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"""
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2019-01-26 18:22:45 +00:00
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Define additional, informative pair/interval combinations to be cached from the exchange.
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2019-01-22 18:17:08 +00:00
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These pair/interval combinations are non-tradeable, unless they are part
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of the whitelist as well.
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For more information, please consult the documentation
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:return: List of tuples in the format (pair, interval)
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Sample: return [("ETH/USDT", "5m"),
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("BTC/USDT", "15m"),
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]
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"""
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return []
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2018-07-29 18:36:03 +00:00
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def populate_indicators(self, dataframe: DataFrame, metadata: dict) -> DataFrame:
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2018-01-15 08:35:11 +00:00
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"""
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Adds several different TA indicators to the given DataFrame
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Performance Note: For the best performance be frugal on the number of indicators
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you are using. Let uncomment only the indicator you are using in your strategies
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or your hyperopt configuration, otherwise you will waste your memory and CPU usage.
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2020-03-08 10:35:31 +00:00
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:param dataframe: Dataframe with data from the exchange
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2018-07-29 18:36:03 +00:00
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:param metadata: Additional information, like the currently traded pair
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2018-07-25 06:54:01 +00:00
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:return: a Dataframe with all mandatory indicators for the strategies
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2018-01-15 08:35:11 +00:00
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"""
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# Momentum Indicator
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# ------------------------------------
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# ADX
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dataframe['adx'] = ta.ADX(dataframe)
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# MACD
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macd = ta.MACD(dataframe)
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dataframe['macd'] = macd['macd']
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dataframe['macdsignal'] = macd['macdsignal']
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dataframe['macdhist'] = macd['macdhist']
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# Minus Directional Indicator / Movement
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dataframe['minus_di'] = ta.MINUS_DI(dataframe)
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# Plus Directional Indicator / Movement
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dataframe['plus_di'] = ta.PLUS_DI(dataframe)
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# RSI
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dataframe['rsi'] = ta.RSI(dataframe)
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2018-02-14 11:01:30 +00:00
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2018-01-15 08:35:11 +00:00
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# Stoch fast
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stoch_fast = ta.STOCHF(dataframe)
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dataframe['fastd'] = stoch_fast['fastd']
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dataframe['fastk'] = stoch_fast['fastk']
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2018-01-18 05:44:37 +00:00
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2018-01-15 08:35:11 +00:00
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# Bollinger bands
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bollinger = qtpylib.bollinger_bands(qtpylib.typical_price(dataframe), window=20, stds=2)
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dataframe['bb_lowerband'] = bollinger['lower']
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dataframe['bb_middleband'] = bollinger['mid']
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dataframe['bb_upperband'] = bollinger['upper']
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2019-09-14 08:00:32 +00:00
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2018-01-15 08:35:11 +00:00
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# EMA - Exponential Moving Average
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2019-09-13 17:49:34 +00:00
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dataframe['ema10'] = ta.EMA(dataframe, timeperiod=10)
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2018-01-15 08:35:11 +00:00
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return dataframe
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2018-07-29 18:36:03 +00:00
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def populate_buy_trend(self, dataframe: DataFrame, metadata: dict) -> DataFrame:
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2018-01-15 08:35:11 +00:00
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"""
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Based on TA indicators, populates the buy signal for the given dataframe
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:param dataframe: DataFrame
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2018-07-29 18:36:03 +00:00
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:param metadata: Additional information, like the currently traded pair
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2018-01-15 08:35:11 +00:00
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:return: DataFrame with buy column
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"""
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dataframe.loc[
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(
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(dataframe['rsi'] < 35) &
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(dataframe['fastd'] < 35) &
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(dataframe['adx'] > 30) &
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(dataframe['plus_di'] > 0.5)
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) |
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(
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(dataframe['adx'] > 65) &
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(dataframe['plus_di'] > 0.5)
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),
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'buy'] = 1
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return dataframe
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2018-07-29 18:36:03 +00:00
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def populate_sell_trend(self, dataframe: DataFrame, metadata: dict) -> DataFrame:
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2018-01-15 08:35:11 +00:00
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"""
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Based on TA indicators, populates the sell signal for the given dataframe
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:param dataframe: DataFrame
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2018-07-29 18:36:03 +00:00
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:param metadata: Additional information, like the currently traded pair
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2018-01-15 08:35:11 +00:00
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:return: DataFrame with buy column
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"""
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dataframe.loc[
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(
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(
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(qtpylib.crossed_above(dataframe['rsi'], 70)) |
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(qtpylib.crossed_above(dataframe['fastd'], 70))
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) &
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(dataframe['adx'] > 10) &
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(dataframe['minus_di'] > 0)
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) |
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(
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(dataframe['adx'] > 70) &
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(dataframe['minus_di'] > 0.5)
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),
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'sell'] = 1
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return dataframe
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2021-12-13 00:27:09 +00:00
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2022-01-08 15:20:02 +00:00
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def adjust_trade_position(self, trade: Trade, current_time: datetime, current_rate: float,
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current_profit: float, min_stake: float, max_stake: float, **kwargs):
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2021-12-13 00:27:09 +00:00
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if current_profit < -0.0075:
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2022-01-15 16:36:13 +00:00
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orders = trade.select_filled_orders('buy')
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return round(orders[0].cost, 0)
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2021-12-13 00:27:09 +00:00
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return None
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