Crypto Trading Strategy Backtester Save

Easy-to-use cryptocurrency trading strategy simulator and backtester

Project README

Crypto Trading Strategy Backtester

Easy-to-use cryptocurrency trading strategy simulator

backtester

Features

  • You can run it fast, and it is easy to use.
  • There are no complexities and no database usage in this project. Even dependencies are a few.
  • It is easy to modify and customize.
  • It generates many different statistical parameters in a complete report.
  • This project saves the downloaded data for offline usage, so no unnecessary downloads are required.
  • This project generates practical datasets for data scientists.
  • After backtesting, you can see the opened and closed positions on an interactive chart.
  • You can read the code for educational purposes.

Run

  1. Clone the repository.
  2. Run pip3 install -r requirements.txt.
  3. Run python3 main.py.

This will backtest an example strategy for trading Bitcoin.

Config

To define the strategy, you can:

  • Change config.py constants.
  • Define new indicators in indicators.py.
  • Change _is_it_time_to_open_long_position and _is_it_time_to_open_short_position methods.
  • Change _check_conditions_to_close_long_position and _check_conditions_to_close_short_position methods.

Config.py Description

  • COINS_SYMBOL: The trading pair
  • START_DEPOSIT: How much money do we have to start trading with?
  • LEVERAGE: Futures trading leverage
  • OPEN_POSITION_FEE_PERCENT and CLOSE_POSITION_FEE_PERCENT: Exchange fees
  • USE_LONG_POSITIONS and USE_SHORT_POSITIONS: Are we trading in the futures market?
  • TAKE_PROFIT_PERCENTS_LIST and STOP_LOSS_PERCENTS_LIST: Set multiple take profit and stop losses for your positions
  • MOVING_AVERAGE_SIZE andINDICATORS_TIMEFRAME: If use some indicators, you can set them up here.
  • START_YEAR, START_MONTH, START_DAY, START_HOUR, START_MINUTE , and START_SECOND: Starting time for trading
  • END_YEAR, END_MONTH, END_DAY, END_HOUR, END_MINUTE , and END_SECOND: Starting time for trading
  • TIMEFRAME: The main time frame used for iterating candles and checking the take profits and stop losses
  • IMPORTANT_RECENT_CANDLES_TIMEFRAME: Generated output dataset candles timeframe
  • IMPORTANT_RECENT_CANDLES_COUNT: Number of candles in the generated output dataset
  • OPEN_POSITION_TIMEFRAME: We want to open the position at some exact rounded times
  • REPORT_PERCENTILES_COUNT: Number of percentiles used in the statistical analysis report
  • TEST_SET_SIZE_RATIO: How big is the final generated test set of our dataset?
  • MINIMUM_NUMBER_OF_CANDLES_TO_START_TRADING: Do not start trading soon!

Output

  • A plot in plot.png, for example:

plot

  • Another plot to see the opened and closed positions on an interactive chart
  • A complete report on candle statistics (as the program text output)
  • A complete report on opened and closed positions (as the program text output)
  • A complete report on the strategy (in deposit_changes.csv)
  • A spreadsheet containing opened and closed positions (in positions.csv)
  • Two datasets for data science and machine learning purposes (test.csv and train.csv)

To Do

  • Use 5m, 15m, 1h, etc. instead of m5, m15, h1, etc.
  • Use Python private methods in some cases

See Also

Credits

Erfan Alimohammadi and Amir Reza Shahmiri

Open Source Agenda is not affiliated with "Crypto Trading Strategy Backtester" Project. README Source: Erfaniaa/crypto-trading-strategy-backtester

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