CoursesData ScienceDevelopmentNumPy

100+ Exercises – Python Programming – Data Science – NumPy

What you’ll learn

  • solve over 100 exercises in NumPy
  • deal with real programming problems in data science
  • work with documentation and Stack Overflow
  • guaranteed instructor support

Requirements

  • completed course ‘200+ Exercises – Programming in Python – from A to Z’
  • completed course ‘210+ Exercises – Python Standard Libraries – from A to Z’
  • completed course ‘150+ Exercises – Object Oriented Programming in Python – OOP’
  • basic knowledge of NumPy library

Description

——————————————————————————

RECOMMENDED LEARNING PATH

——————————————————————————

  • 200+ Exercises – Programming in Python – from A to Z
  • 210+ Exercises – Python Standard Libraries – from A to Z
  • 150+ Exercises – Object Oriented Programming in Python – OOP
  • 100+ Exercises – Unit tests in Python – unittest framework
  • 100+ Exercises – Python Programming – Data Science – NumPy
  • 100+ Exercises – Python Programming – Data Science – Pandas
  • 100+ Exercises – Python – Data Science – scikit-learn
  • 250+ Exercises – Data Science Bootcamp in Python

——————————————————————————

COURSE DESCRIPTION

——————————————————————————

100+ Exercises – Python Programming – Data Science – NumPy

Welcome to the course 100+ Exercises – Python Programming – Data Science – NumPy, where you can test your Python programming skills in data science, specifically in NumPy.

The course is designed for people who have basic knowledge in Python and NumPy library. It consists of 100 exercises with solutions.

This is a great test for people who are learning the Python language and data science and are looking for new challenges. Exercises are also a good test before the interview.

If you’re wondering if it’s worth taking a step towards Python, don’t hesitate any longer and take the challenge today.

Who this course is for:

  • everyone who wants to learn by doing
  • everyone who wants to improve their Python programming skills
  • everyone who wants to improve their data science skills
  • everyone who wants to prepare for an interview

Leave a Reply

Your email address will not be published. Required fields are marked *

Back to top button

Adblock Detected

Please consider supporting use by disabling your ad blocker