Further reading
You made it to the end of the book! What are you going to do now? Read more books! Machine learning, and in particular, deep learning, is a fast-moving field, so any reading list risks being outdated by the time you read it. However, the following list aims to show you the most relevant books that have a safety net of remaining relevant over the coming years.
General data analysis
Wes McKinney, Python for Data Analysis, http://wesmckinney.com/pages/book.html.
Wes is the original creator of pandas, a popular Python data-handling tool that we saw in Chapter 2, Applying Machine Learning to Structured Data. pandas is a core component of any data science workflow in Python and will remain so for the foreseeable future. Investing in sound knowledge of the tools he presents is definitely worth your time.
Sound science in machine learning
Marcos Lopez de Prado, Advances in Financial Machine Learning, https://www.wiley.com/en-us/Advances+in+Financial+Machine+Learning-p-9781119482086.
Marcos...