Book Content
chapters • 15h24m total length
1. Laying the foundations for reproducible data analysis
2. Creating attractive data visualizations
3. Statistical data analysis and probability
4. Dealing with data and numerical issues
5. Web mining, Databases and Big Data
6. Signal processing and timeseries
7. Selecting stocks with financial data analysis
8. Text mining and social network analysis
9. Ensemble learning and dimension reduction
10. Evaluating classifiers, regressors and clusters
11. Analyzing images
12. Parallelism and performance
13. Appendix A: Glossary
14. Appendix B: Function Reference
15. Appendix C: Online Resources
16. Appendix D: Tips and Tricks for Command Line and Miscellaneous Tools














