Course Curriculum

  1. 1

    Free Preview

    1. Free Preview Free preview
  2. 2

    Chapter 1: An Overview of Data Science

    1. (Included in full purchase)
  3. 3

    Chapter 2: Comparing Programming Languages and Various Environments

    1. (Included in full purchase)
  4. 4

    Chapter 3: Setting Up Data Science Environment

    1. (Included in full purchase)
  5. 5

    Chapter 4: Importing and Cleaning Data in Python and R

    1. (Included in full purchase)
  6. 6

    Chapter 5: Data Wrangling and Manipulation in Python and R

    1. (Included in full purchase)
  7. 7

    Chapter 6: Data Visualization in Python and R

    1. (Included in full purchase)
  8. 8

    Chapter 7: Introduction to Data Science Algorithms

    1. (Included in full purchase)
  9. 9

    Chapter 8: Implementing Machine Learning Models

    1. (Included in full purchase)
  10. 10

    Chapter 9: Version Control with Git

    1. (Included in full purchase)
  11. 11

    Chapter 10: Data Science and Analytics in Industry

    1. (Included in full purchase)
  12. 12

    Chapter 11: Advanced Topics and Next Steps

    1. (Included in full purchase)
    2. (Included in full purchase)

About the Course

Data science often fails beginners not because of complex algorithms, but because setting up the right tools, environments, and workflows is confusing and poorly explained. Practical Data Science Environments with Python and R fills that gap by focusing on the practical foundations required to work effectively in real data science settings. You begin by developing a clear understanding of the data science landscape, including how different programming languages, tools, and platforms are used across analytics and machine learning workflows. As you advance, you learn how to import structured and unstructured data, apply systematic cleaning and transformation techniques, and perform exploratory analysis to understand data behavior. You will implement and evaluate foundational models while learning how to organize code, manage versions with Git, and follow workflows used in professional data teams. The final chapters connect these skills to industry use cases, advanced topics, and next steps, preparing you to continue growing beyond the basics.

Meet Your Instructor

Astha Puri is a senior data science leader at a Fortune 10 healthcare organization, where she builds large-scale recommendation systems that shape millions of user journeys each day. Over the past nine years, she has honed her expertise in machine learning, personalization, and applied AI through roles at Oracle, Twilio, and CVS Health. Rohan Mathur Rohan is a Senior Software Engineer in Nvidia’s autonomous vehicles division, specializing in large-scale data analytics, machine learning, and fleet data strategies. His work helps shape the data systems that power perception and decision-making for next-generation autonomous driving.