Book Image

Hands-On Financial Trading with Python

By : Jiri Pik, Sourav Ghosh
Book Image

Hands-On Financial Trading with Python

By: Jiri Pik, Sourav Ghosh

Overview of this book

Creating an effective system to automate your trading can help you achieve two of every trader’s key goals; saving time and making money. But to devise a system that will work for you, you need guidance to show you the ropes around building a system and monitoring its performance. This is where Hands-on Financial Trading with Python can give you the advantage. This practical Python book will introduce you to Python and tell you exactly why it’s the best platform for developing trading strategies. You’ll then cover quantitative analysis using Python, and learn how to build algorithmic trading strategies with Zipline using various market data sources. Using Zipline as the backtesting library allows access to complimentary US historical daily market data until 2018. As you advance, you will gain an in-depth understanding of Python libraries such as NumPy and pandas for analyzing financial datasets, and explore Matplotlib, statsmodels, and scikit-learn libraries for advanced analytics. As you progress, you’ll pick up lots of skills like time series forecasting, covering pmdarima and Facebook Prophet. By the end of this trading book, you will be able to build predictive trading signals, adopt basic and advanced algorithmic trading strategies, and perform portfolio optimization to help you get —and stay—ahead of the markets.
Table of Contents (15 chapters)
1
Section 1: Introduction to Algorithmic Trading
3
Section 2: In-Depth Look at Python Libraries for the Analysis of Financial Datasets
9
Section 3: Algorithmic Trading in Python

What is an algorithmic trading strategy?

Any algorithmic trading strategy should entail the following:

  • It should be a model based on an underlying market theory since only then can you find its predictive power. Fitting a model to data with great backtesting results is simple, but usually does not provide sound predictions.
  • It should be as simple as possible – the more complex the strategy, the less likely it is to perform well in the long term (overfitting).
  • It should restrict the strategy for a well-defined set of financial assets (trading universe) based on the following:

    a) Their returns profile.

    b) Their returns not being correlated.

    c) Their trading patterns – you do not want to trade an illiquid asset; you restrict yourself just to significantly traded assets.

  • It should define the relevant financial data:

    a) Frequency: Daily, monthly, intraday, and suchlike 

    b) Data source

  • It should define the model's parameters.
  • It should define...