Crash course: Introduction to Pandas and NumPy

Bottom-up introduction to Python data science frameworks: NumPy and Pandas

Ratings 4.47 / 5.00
Crash course: Introduction to Pandas and NumPy

What You Will Learn!

  • NumPy arrays
  • Operations on NumPy arrays
  • Image processing with NumPy
  • Vectorial operations
  • The framework Pandas
  • Pandas DataFrame
  • Manipulating Pandas DataFrame
  • Arithmetic operations and statistical computations

Description

Are you ready to take your data skills to the next level? Our course on Pandas and NumPy is designed to help you master these powerful libraries and unlock the full potential of your data.


Pandas and NumPy are two of the most popular Python libraries for data manipulation and analysis. Together, they provide a powerful toolset for working with structured data in Python and enable you to perform complex data tasks with ease and efficiency.


In this course, you will learn the fundamentals of Pandas and NumPy and how to use them to solve real-world data problems. You will learn how to load and manipulate data with Pandas, perform mathematical operations and statistical analyses with NumPy, and use the two libraries together to solve complex data tasks.


Our experienced instructors will guide you through the material with hands-on examples and exercises, and you will have the opportunity to apply your knowledge to real-world datasets. By the end of the course, you will have a solid understanding of Pandas and NumPy and be able to use them confidently in your own data projects.


Don't miss this opportunity to learn from the experts and take your data skills to the next level. Enroll now and join our community of data professionals who are mastering Pandas and NumPy and making a difference with data.


Who Should Attend!

  • To those interested in data science and machine learning
  • For those who want to improve their Python knowledge
  • For those who want to improve the performance of their Python code

TAKE THIS COURSE

Tags

  • Data Science
  • NumPy
  • Pandas

Subscribers

29

Lectures

27

TAKE THIS COURSE



Related Courses