existing and custom freqtrade strategies supporting the new hyperstrategy format.

Overview

freqtrade-strategies

Description

Existing and self-developed strategies, rewritten to support the new HyperStrategy format from the freqtrade-develop branch.

Status

This is pure development / break'n'fix stuff. Use absolutely at your own risk. Not recommended to use with live money!

How To

IMPORTANT: All those are Auto-HyperOptable Strategies that only work with the lastest freqtrade develop branch. No more seperate files for hyperopt & strategy are needed. Please make yourself aware of this new format and ensure you are running those with the latest develop branch!

HyperOpt

Run hyperopt as outlined in the documentation just ommiting the --hyperopt parameter, example:

freqtrade backtesting--config ./user_data/config.json --hyperopt-loss SortinoHyperOptLossDaily --spaces all --strategy CombinedBinHAndClucHyperStrategy --epochs 1000 --timerange 20210301-20210331

Backtest

Can be ran as usual, by providing the same strategy name as in hyperopt above.

freqtrade backtesting --strategy CombinedBinHAndClucHyperStrategy --config ./user_data/config.json --timerange 20210101-20210316

Credits

Freqtrade (https://www.freqtrade.io/) is used as the underlying trading framework so all credit to them. This repository aims to provide custom strategies for this framework and create an automated pipeline where the strategies can evolve over nightly builds by ML optimizations running on each build.

Contribute

In order to contribute, simply fork the repository, make changes and create a pull request.

Support

[email protected]

Owner
digital workspace alchemist
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