Skip to main content
Grzegorz Gąsiewski avatar

Grzegorz Gąsiewski has completed

Writing Efficient Python Code

Start course For Free
4 hours
4,000 XP
Statement of Accomplishment Badge

Loved by learners at thousands of companies


Course Description

As a Data Scientist, the majority of your time should be spent gleaning actionable insights from data -- not waiting for your code to finish running. Writing efficient Python code can help reduce runtime and save computational resources, ultimately freeing you up to do the things you love as a Data Scientist. In this course, you'll learn how to use Python's built-in data structures, functions, and modules to write cleaner, faster, and more efficient code. We'll explore how to time and profile code in order to find bottlenecks. Then, you'll practice eliminating these bottlenecks, and other bad design patterns, using Python's Standard Library, NumPy, and pandas. After completing this course, you'll have the necessary tools to start writing efficient Python code!
For Business

GroupTraining 2 or more people?

Get your team access to the full DataCamp library, with centralized reporting, assignments, projects and more
Try DataCamp for BusinessFor a bespoke solution book a demo.
  1. 1

    Foundations for efficiencies

    Free

    In this chapter, you'll learn what it means to write efficient Python code. You'll explore Python's Standard Library, learn about NumPy arrays, and practice using some of Python's built-in tools. This chapter builds a foundation for the concepts covered ahead.

    Play Chapter Now
    Welcome!
    50 xp
    Pop quiz: what is efficient
    50 xp
    A taste of things to come
    100 xp
    Zen of Python
    50 xp
    Building with built-ins
    50 xp
    Built-in practice: range()
    100 xp
    Built-in practice: enumerate()
    100 xp
    Built-in practice: map()
    100 xp
    The power of NumPy arrays
    50 xp
    Practice with NumPy arrays
    100 xp
    Bringing it all together: Festivus!
    100 xp
  2. 2

    Timing and profiling code

    In this chapter, you will learn how to gather and compare runtimes between different coding approaches. You'll practice using the line_profiler and memory_profiler packages to profile your code base and spot bottlenecks. Then, you'll put your learnings to practice by replacing these bottlenecks with efficient Python code.

    Play Chapter Now
For Business

GroupTraining 2 or more people?

Get your team access to the full DataCamp library, with centralized reporting, assignments, projects and more

datasets

Baseball statistics

collaborators

Collaborator's avatar
Chester Ismay
Collaborator's avatar
Becca Robins
Logan Thomas HeadshotLogan Thomas

Scientific Software Technical Trainer, Enthought

See More

Join over 14 million learners and start Writing Efficient Python Code today!

Create Your Free Account

GoogleLinkedInFacebook

or

By continuing, you accept our Terms of Use, our Privacy Policy and that your data is stored in the USA.