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An Algorithmic Trading Library for Crypto-Assets in Python

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Catalyst is an algorithmic trading library for crypto-assets written in Python. It allows trading strategies to be easily expressed and backtested against historical data (with daily and minute resolution), providing analytics and insights regarding a particular strategy's performance. Catalyst also supports live-trading of crypto-assets starting with four exchanges (Binance, Bitfinex, Bittrex, and Poloniex) with more being added over time. Catalyst empowers users to share and curate data and build profitable, data-driven investment strategies. Please visit catalystcrypto.io to learn more about Catalyst.

Catalyst builds on top of the well-established Zipline project. We did our best to minimize structural changes to the general API to maximize compatibility with existing trading algorithms, developer knowledge, and tutorials. Join us on the Catalyst Forum for questions around Catalyst, algorithmic trading and technical support. We also have a Discord group with the #catalyst_dev and #catalyst_setup dedicated channels.

Overview

  • Ease of use: Catalyst tries to get out of your way so that you can focus on algorithm development. See examples of trading strategies provided.
  • Support for several of the top crypto-exchanges by trading volume: Bitfinex, Bittrex, Poloniex and Binance.
  • Secure: You and only you have access to each exchange API keys for your accounts.
  • Input of historical pricing data of all crypto-assets by exchange, with daily and minute resolution. See Catalyst Market Coverage Overview.
  • Backtesting and live-trading functionality, with a seamless transition between the two modes.
  • Output of performance statistics are based on Pandas DataFrames to integrate nicely into the existing PyData eco-system.
  • Statistic and machine learning libraries like matplotlib, scipy, statsmodels, and sklearn support development, analysis, and visualization of state-of-the-art trading systems.
  • Addition of Bitcoin price (btc_usdt) as a benchmark for comparing performance across trading algorithms.

Go to our Documentation Website.

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An Algorithmic Trading Library for Crypto-Assets in Python

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