Data  Science and Machine Learning are the leading buzzwords  of today. 
    This book  covers all aspects of these subjects, from data definition and categorization,  classification techniques, clustering and ML algorithms to data  stream and association rule mining, language data processing and neural networks. It explains descriptive and inferential statistical analysis, probability distribution and density functions as well as time series.  It also describes the fundamentals of Python  programming, the Python environment and libraries such  as scikit-learn, NumPy and pandas, and takes a deep dive  into data visualization modules and tools. 
    Mastery of  these areas will enable students to become proficient  and effective data scientists. 
    Salient features
      - Ideal for undergraduate courses on Data Science and Analytics
- Provides step-by-step instructions for setting up the Python environment  and executing various libraries and packages
- All chapters include relevant case studies, their Python code and  output; the last chapter is dedicated to case studies
- Over 300 exercise questions comprising MCQs, programming exercises and  concept-based questions, with answers provided for quick reference
- Bibliography at the end of every chapter for further reading
- Android app with chapter-wise PowerPoint slides and job interview  questions
Chapter-wise  PowerPoint slides are available at: www.universitiespress.com/DataScienceandAnalyticswithPython