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Python for Algorithmic Trading Cookbook

Python for Algorithmic Trading Cookbook

By : Jason Strimpel
4.2 (19)
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Python for Algorithmic Trading Cookbook

Python for Algorithmic Trading Cookbook

4.2 (19)
By: Jason Strimpel

Overview of this book

Discover how Python has made algorithmic trading accessible to non-professionals with unparalleled expertise and practical insights from Jason Strimpel, founder of PyQuant News and a seasoned professional with global experience in trading and risk management. This book guides you through from the basics of quantitative finance and data acquisition to advanced stages of backtesting and live trading. Detailed recipes will help you leverage the cutting-edge OpenBB SDK to gather freely available data for stocks, options, and futures, and build your own research environment using lightning-fast storage techniques like SQLite, HDF5, and ArcticDB. This book shows you how to use SciPy and statsmodels to identify alpha factors and hedge risk, and construct momentum and mean-reversion factors. You’ll optimize strategy parameters with walk-forward optimization using VectorBT and construct a production-ready backtest using Zipline Reloaded. Implementing all that you’ve learned, you’ll set up and deploy your algorithmic trading strategies in a live trading environment using the Interactive Brokers API, allowing you to stream tick-level data, submit orders, and retrieve portfolio details. By the end of this algorithmic trading book, you'll not only have grasped the essential concepts but also the practical skills needed to implement and execute sophisticated trading strategies using Python.
Table of Contents (16 chapters)
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Building technical strategies with VectorBT

This recipe introduces you to the powerful vector-based backtesting library VectorBT. One of the most compelling advantages of using VectorBT is its speed in running simulations. Whether you are testing a single strategy or optimizing across a multi-dimensional parameter space, VectorBT’s performance is optimized to deliver results in a fraction of the time traditional methods would require.

Built on top of well-established libraries such as pandas, NumPy, and Numba, VectorBT seamlessly integrates into the data science ecosystem. It leverages pandas for its DataFrame structure, which is familiar to most quants. NumPy’s numerical computing abilities provide the mathematical backbone, ensuring that heavy calculations are performed efficiently. However, the real game-changer is Numba, a Just-In-Time (JIT) compiler that translates Python functions to optimized machine code at runtime. Thanks to Numba, VectorBT can execute loops...

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