Details zum E-Book

Data Science Fundamentals Pocket Primer. An Essential Guide to Data Science Concepts and Techniques

Data Science Fundamentals Pocket Primer. An Essential Guide to Data Science Concepts and Techniques

Mercury Learning and Information, Oswald Campesato

E-book
This book, part of the Pocket Primer series, introduces the basic concepts of data science using Python 3 and other applications. It offers a fast-paced introduction to data analytics, statistics, data visualization, linear algebra, and regular expressions. The book features numerous code samples using Python, NumPy, R, SQL, NoSQL, and Pandas. Companion files with source code and color figures are available.
Understanding data science is crucial in today's data-driven world. This book provides a comprehensive introduction, covering key areas such as Python 3, data visualization, and statistical concepts. The practical code samples and hands-on approach make it ideal for beginners and those looking to enhance their skills.
The journey begins with working with data, followed by an introduction to probability, statistics, and linear algebra. It then delves into Python, NumPy, Pandas, R, regular expressions, and SQL/NoSQL, concluding with data visualization techniques. This structured approach ensures a solid foundation in data science.
  • 1. Working With Data
  • 2. Intro to Probability and Statistics
  • 3. Linear Algebra Concepts
  • 4. Introduction to Python
  • 5. Introduction to NumPy
  • 6. Introduction to Pandas
  • 7. Introduction to R
  • 8. Regular Expressions
  • 9. SQL and NoSQL
  • 10. Data Visualization
  • Titel: Data Science Fundamentals Pocket Primer. An Essential Guide to Data Science Concepts and Techniques
  • Autor: Mercury Learning and Information, Oswald Campesato
  • Originaler Titel: Data Science Fundamentals Pocket Primer. An Essential Guide to Data Science Concepts and Techniques
  • ISBN: 9781836645825, 9781836645825
  • Veröffentlichungsdatum: 2024-07-30
  • Format: E-book
  • Artikelkennung: e_45nt
  • Verleger: Mercury_Learning