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Python for Algorithmic Trading Cookbook

Python for Algorithmic Trading Cookbook - Second Edition

By : Jason Strimpel
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Python for Algorithmic Trading Cookbook

Python for Algorithmic Trading Cookbook

By: Jason Strimpel

Overview of this book

Get practical Python code for algorithmic trading from Jason Strimpel, founder of PyQuant News and a veteran of global trading, risk management, and machine learning. This hands-on guide shows you how to turn market data into tested, automated trading strategies using modern Python tools. You’ll source equities, options, and futures data with OpenBB and FMP, then accelerate Python for data analysis workflows with Pandas, Polars, Parquet, DuckDB, and ArcticDB. You’ll visualize market data with Matplotlib, Seaborn, and Plotly Dash before moving into alpha research and quantitative trading techniques. Detailed recipes help you engineer alpha factors with PCA, regression, Fama-French models, SciPy, and statsmodels. You’ll design and evaluate quantitative trading strategies using VectorBT, Zipline Reloaded, Alphalens Reloaded, and PyFolio, including walk-forward analysis and risk-aware performance review. For execution, you’ll connect to the Interactive Brokers API to stream ticks, manage orders, retrieve portfolio state, and monitor live trading workflows. By the end, you’ll have reusable Python templates for researching, backtesting, evaluating, and operating algorithmic trading strategies.
Table of Contents (19 chapters)
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17
Other Books You May Enjoy
18
Index

11

Assess Backtest Risk and Performance Metrics with Pyfolio

No single risk or performance metric tells the entire story of how a strategy might perform in live trading. Metrics such as the Sharpe ratio, for instance, focus mainly on returns relative to volatility but neglect other risks such as drawdown or tail risk. Similarly, using only maximum drawdown as a measure ignores the risk-adjusted returns and might discard strategies that are robust but temporarily underperforming. The composite view obtained through multiple metrics provides a more nuanced understanding of how the strategy is likely to behave under varying market conditions. Taking it a step further, visualizing risk and performance metrics over time can capture strategy dynamics over time. A strategy might exhibit robust metrics during a bull market but underperform in terms of risk-adjusted returns during a bear or sideways market.

In this chapter, we introduce Pyfolio Reloaded (Pyfolio), which is a risk and performance...

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Python for Algorithmic Trading Cookbook
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