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Cipher, a backtesting framework.

Project description

Cipher - trading strategy backtesting framework

Tests

Documentation: https://cipher.nanvel.com

Features:

  • well-structured, simple to use, extensible
  • multiple trading sessions at the same time
  • complex exit strategies can be implemented (trailing take profit, etc.)
  • multiple data sources support (multiple exchanges, symbols, timeframes, etc.)
  • signal generation and signal handlers are splitted
  • simple to run, just python my_strategy.py
  • works in Google Colab
  • finplot and mplfinance plotters
  • TA: pandas-ta is included, you can still use your libraries of choice

Usage

Initialize a new strategies folder and create a strategy:

pip install cipher-bt
mkdir my_strategies
cd my_strategies

cipher init
cipher new my_strategy
python my_strategy.py

EMA crossover strategy example:

import numpy as np

from cipher import Cipher, Session, Strategy


class EmaCrossoverStrategy(Strategy):
    def __init__(self, fast_ema_length=9, slow_ema_length=21, trend_ema_length=200):
        self.fast_ema_length = fast_ema_length
        self.slow_ema_length = slow_ema_length
        self.trend_ema_length = trend_ema_length

    def compose(self):
        df = self.datas.df
        df["fast_ema"] = df.ta.ema(length=self.fast_ema_length)
        df["slow_ema"] = df.ta.ema(length=self.slow_ema_length)
        df["trend_ema"] = df.ta.ema(length=self.trend_ema_length)

        df["difference"] = df["fast_ema"] - df["slow_ema"]

        # this column is required, it triggers on_entry, has to be bool
        df["entry"] = np.sign(df["difference"].shift(1)) != np.sign(df["difference"])

        df["max_6"] = df["high"].rolling(window=6).max()
        df["min_6"] = df["low"].rolling(window=6).min()

        return df

    def on_entry(self, row: dict, session: Session):
        if row["difference"] > 0 and row["close"] > row["trend_ema"]:
            # start a new long session
            session.position += "0.01"
            session.stop_loss = row["min_6"]
            session.take_profit = row["close"] + 1.5 * (row["close"] - row["min_6"])

        elif row["difference"] < 0 and row["close"] < row["trend_ema"]:
            # start a new short session
            session.position -= "0.01"
            session.stop_loss = row["max_6"]
            session.take_profit = row["close"] - 1.5 * (row["max_6"] - row["close"])

    # def on_<signal>(self, row: dict, session: Session) -> None:
    #     """Custom signal handler, called for each open session.
    #     We can adjust or close position or adjust brackets here."""
    #     # session.position = 1
    #     # session.position = base(1)  # same as the one above
    #     # session.position = '1'  # int, str, float are being converted to Decimal
    #     # session.position = quote(100)  # sets position worth 100 quote asset
    #     # session.position += 1  # adds to the position
    #     # session.position -= Decimal('1.25')  # reduces position by 1.25
    #     # session.position += percent(50)  # adds 50% more position
    #     # session.position *= 1.5  # has the same effect as the one above
    #     pass
    #
    # def on_take_profit(self, row: dict, session: Session) -> None:
    #     """Called once take profit hit, default action - close position.
    #     We can adjust the position and brackets here and let the session continue."""
    #     session.position = 0
    #
    # def on_stop_loss(self, row: dict, session: Session) -> None:
    #     """Called once stop loss hit, default action - close position.
    #     We can adjust the position and brackets here and let the session continue."""
    #     session.position = 0
    #
    # def on_stop(self, row: dict, session: Session) -> None:
    #     """Called for each open session when the dataframe end reached.
    #     We have an opportunity to close open sessions, otherwise - they will be ignored."""
    #     session.position = 0


def main():
    cipher = Cipher()
    cipher.add_source("binance_spot_ohlc", symbol="BTCUSDT", interval="1h")
    cipher.set_strategy(EmaCrossoverStrategy())
    cipher.run(start_ts="2020-01-01", stop_ts="2020-04-01")
    cipher.set_commission("0.0025")
    print(cipher.sessions)
    print(cipher.stats)
    cipher.plot()


if __name__ == "__main__":
    main()

Development

brew install poetry
poetry install
poetry shell

pytest tests

cipher --help

Disclaimer

This software is for educational purposes only. Do not risk money which you are afraid to lose. USE THE SOFTWARE AT YOUR OWN RISK. THE AUTHORS AND ALL AFFILIATES ASSUME NO RESPONSIBILITY FOR YOUR TRADING RESULTS.

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