Strimpel J Python for Algorithmic Trading Cookbook Recipes with Python 2024
General:
Name: Strimpel J Python for Algorithmic Trading Cookbook Recipes with Python 2024
Format: pdf
Size: 9.84 MB
Book:
Title: Python for Algorithmic Trading Cookbook
Author: Jason Strimpel;
Language: polski
Year: 2024
Subjects: Science & Technology, Engineering, Engineering – General & Miscellaneous, Business Aspects of Engineering
Publisher: Packt Publishing
ISBN: 9781835087763
Total pages: 412
Description:
Transform financial market data into algorithmic trading strategies and deploy them into a live trading environment with recipes leveraging modern Python libraries like pandas, Polars, and DuckDB
- Follow practical, productiongrade Python recipes to acquire, visualize, and store financial market data
- Design, backtest, and evaluate the performance of trading strategies using professional techniques
- Deploy trading strategies built in Python to a live trading environment with API connectivity
Get Python code for algorithmic trading along with practical guidance from Jason Strimpel, founder of PyQuant News and a veteran of global trading and risk management. This highly practical book takes you from core algorithmic trading concepts and modern data acquisition to rigorous backtesting and strategy execution. Detailed recipes show you how to use the OpenBB Platform to source free equities, options, and futures data. Using that data, accelerate research with Parquet, Polars, DuckDB, and ArcticDB. You’ll engineer alpha factors with SciPy and statsmodels, using PCA to find latent factors, regression to hedge beta, and measure FamaFrench exposures. Then optimize backtests with walkforward analysis using VectorBT and build productiongrade backtests with Zipline Reloaded. You’ll evaluate alpha with pro tools like Alphalens Reloaded and PyFolio and apply agentic AI workflows to automate research and code generation. For execution, you’ll connect to Interactive Brokers’ API to stream ticks, place and manage orders, retrieve portfolio state, and deploy strategies with monitoring and risk KPIs suitable for live trading. By the end of this book, you’ll not only understand the essentials, but you’ll also have the code templates and patterns to implement, evaluate, and operate Pythonbased algorithmic trading strategies.
- Acquire equities, futures, and options data using OpenBB and FMP
- Process and analyze time series data efficiently with pandas and Polars
- Store and query massive datasets with ArcticDB, DuckDB, and Parquet
- Visualize trading data using Matplotlib, Seaborn, and Plotly Dash
- Engineer alpha factors using PCA, regression, and FamaFrench models
- Backtest strategies with VectorBT and Zipline Reloaded frameworks
- Evaluate performance and risk using Alphalens Reloaded and PyFolio
- Deploy and automate live trades using the Interactive Brokers API
This book is for traders, investors, and Python enthusiasts who need practical code to acquire, analyze, and automate algorithmic trading strategies using modern, highperformance Python tools. Readers should have some exposure to investing or trading, a basic familiarity with Python syntax, and a basic knowledge of libraries such as Pandas and NumPy. This book is ideal for discretionary traders who want to adopt a systematic approach and apply professional techniques, such as factor modeling, backtesting, and execution automation, to trading workflows using Python.
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