100+ Exercises – Python Programming – Data Science – NumPy
Welcome to the 100+ Exercises – Python Programming – Data Science – NumPy course, where you can test your Python programming skills in data science, specifically in NumPy.
Some topics you will find in the exercises:
working with numpy arrays
generating numpy arrays
generating numpy arrays with random values
iterating through arrays
dealing with missing values
working with matrices
reading/writing files
joining arrays
reshaping arrays
computing basic array statistics
sorting arrays
filtering arrays
image as an array
linear algebra
matrix multiplication
determinant of the matrix
eigenvalues and eignevectors
inverse matrix
shuffling arrays
working with polynomials
working with dates
working with strings in array
solving systems of equations
This course is designed for people who have basic knowledge in Python and NumPy package. 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. Many popular topics were covered in this course.
If you’re wondering if it’s worth taking a step towards Python, don’t hesitate any longer and take the challenge today.
Specification: 100+ Exercises – Python – Data Science – NumPy – 2022
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2 reviews for 100+ Exercises – Python – Data Science – NumPy – 2022
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Price | $9.99 |
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Provider | |
Duration | 1 hour |
Year | 2022 |
Level | Beginner |
Language | English |
Certificate | Yes |
Quizzes | Yes |
$19.99 $9.99
Lakshya Vohra –
There were literally 100+ exercises on numpy and that too of such a good level. Very good course to have.
Jawad Mehmood –
The course is very good and I have learned a lot from the exercises. After completing the course, I am now much more confident in working on numpy arrays and also have quite good understanding of dimensions. Recommended for Data Scientist and ML Engineers.