CryptoFrog - My First Strategy for freqtrade

Overview

cryptofrog-strategies

CryptoFrog - My First Strategy for freqtrade

NB: (2021-04-20) You'll need the latest freqtrade develop branch otherwise you might see weird "supersell" results in your backtraces. Head to the freqtrade discord for more info.

Heavily borrowing ideas from:

Things to Know

  • Fairly conservative strategy focusing on longer holds to find large peaks
  • Designed to trade altcoins against stablecoins, and I've used USDT intentionally to gain relative stability within BTC/ETH dump cycles
  • Hyperopted with Sharpe.
  • Protections need to be enabled. I've included a basic template config - hit me up on the freqtrade discord for any info but no surprises expected really
  • Included a live_plotting.ipynb notebook that can be used to immediately and easily view backtest results

TODO

  • Better buy signals
  • Better informative pair work looking for BTC/ETH trends
  • More testing

Preprequisites

You'll need:

  • Python 3.7+
  • Jupyter Notebook for the live_plotting.ipynb
  • Solipsis_v4 custom_indicators.py (now included in this repo - thanks for the go-ahead @werkkrew)
  • finta
  • TA-Lib (I run my bot on a Raspberry Pi 400, so you'll need to build TA-Lib as per the Freqtrade docs if you're doing the same)
  • Pandas
  • Numpy
Owner
Robert Davey
Robert Davey
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