Staying Up to Date and the Future of Data Science
Throughout the book we've learned about many data science tools and techniques. But, as such a new and dynamic field, data science is constantly changing and evolving. New software packages and libraries are being released every week, libraries like TensorFlow have daily updates, and new statistical methods are being developed all the time. Staying up to date with data science is as important as building a solid data science foundation. In this final chapter, we'll learn ways to stay current on data science developments, as well as discussing topics we didn't have time to cover in this book, including:
- Blogs, newsletters, books, and academic sources to keep an eye on
- Data science competition websites
- Learning platforms
- Cloud services
- Other places to keep an eye on
- Other data science topics we didn't cover
- The future of data science
At the end of the chapter...