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Freqtrade Strategy Collection

Summary

This is a collection of strategies that should be categorized by the default timeframe.

I am aiming to automatically backtest all strategies on small trending time ranges.

Organization

All Strategies go into the strategy folder.

Backtesting data is from NFI. So currently only limited to kucoin and binance. Timeframes only have 5m , 15m, 1h, 1d. If you need more, I am willing to fork NFIData and add more timeframes. And maybe more exchanges.

Results

Please note that strategy name doesn't always mean the file name. If the file name doesn't match, you will have to search the strategy folder for the strategy file.

I am still looking for a way to add the results here.. Until then you can check the results in the results folder

Time ranges

Time ranges per trend is as follows.

Trend Timerange
Downtrend 20210509-20210524
Uptrend 20210127-20210221
Sidetrend 20210518-20210610
Final 20210425-20210610

How to contribute

You can add your strategy into ./user_data/strategies. Then add your strategy in the strategy_.env file. Create a pull request.

Please create an issue if you are using something other than the provided timeframe or something more than the freqtrade:develop tree.

Organization

All Strategies go into the strategy folder.

Backtesting data is from NFI. So currently only limited to kucoin and binance. Timeframes only have 5m , 15m, 1h, 1d. If you need more, I am willing to fork NFIData and add more timeframes. And maybe more exchanges.

How to contribute

You can add your strategy into ./user_data/strategies. Then add your strategy in the strategy_.env file. Create a pull request.

Please create an issue if you are using something other than the provided timeframe or something more than the freqtrade:develop tree.

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  • Python 98.9%
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