- Machine Learning for Finance
- Jannes Klaas
- 160字
- 2021-06-11 13:26:14
Who this book is for
There are three kinds of people who would benefit the most from this book:
- Data scientists who want to break into finance and would like to know about the spectrum of possible applications and relevant problems
- Developers in any FinTech business or quantitative finance professionals who look to upgrade their skill set and want to incorporate advanced ML methods into their modeling process
- Students who would like to prepare themselves for the labor market and learn some practical skills valued by employers
This book assumes you have some working knowledge in linear algebra, statistics, probability theory, and calculus. However, you do not have to be an expert in any of those topics.
To follow the code examples, you should be comfortable with Python and the most common data science libraries, such as pandas, NumPy, and Matplotlib. The book's example code is presented in Jupyter Notebooks.
Explicit knowledge of finance is not required.
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