Hallmark Features Prepares students for future careers with the most current and relevant real-world applications Students implement hands-on, real-world case studies through free open source Python and data science libraries, free and open real-world datasets from government, industry and academia, and free, freemium and free-trial offerings of software and cloud vendors. Students work with artificial-intelligence technologies including natural language processing, data mining Twitter®, IBM® WatsonTM, speech synthesis, speech recognition, supervised and unsupervised machine learning, deep learning, and big data with Hadoop, Spark, SQL/NoSQL and the Internet of Things (IoT). Extensive static, dynamic and interactive 2D and 3D visualizations and animations. Artificial Intelligence-a key intersection between computer science and data science-is emphasized, with all six data-science implementation case study chapters rooted in AI technologies and/or discussions of the big data hardware and software infrastructure that enables AI-based solutions. Helps instructors adapt to a range of computer-science and data-science courses with the flexible modular architecture Content is divided into groups of related chapters that instructors can easily include or omit. The Preface includes a chapter dependency chart to help instructors plan their syllabi. Chapters 1-11 cover the examples, exercises and projects (EEPs) traditionally associated with introductory computer-science Python programming courses. Chapters 1-10 each include optional brief Intro to Data Science sections that prepare students for the Data Science Case Studies in Chapters 12-17.
In these intro sections, the Deitels present data science history and terminology, Python's statistics module, basic descriptive statistics, measures of central tendency, measures of dispersion, static and dynamic visualizations (Seaborn and Matplotlib), simulation, data preparation with pandas, CSV file manipulation, time series and simple linear regression. Chapters 12-17 are fully implemented AI- and big-data-based data-science case studies. Most instructors will cover the core Python content. Computer-science courses will likely work through more of Chapters 1-11 and fewer of Chapters 12-17 and the Intro to Data Science sections. Data science courses will likely work through the Intro to Data Science sections, fewer of Chapters 1-11 and more of Chapters 12-17. Functional-Style Programming Topics help students write more concise programs that are easier to debug and parallelize. Provides hundreds of real-world examples, challenging exercises, and projects for both computer science and data science topics Examples, exercises, projects (EEPs) and implementation case studies give students an engaging, challenging and entertaining introduction to Python programming, while also involving them in hands-on data science. Jupyter Notebooks allow users to combine text, graphics, audio, video and interactive coding functionality, in a web browser for interactive programming exercises and self-checks.
Self-Check Exercises and Answers after most sections enable students to test their knowledge of the concepts with short-answer questions and interactive IPython coding sessions.