NumPy for Numerical Computation
20% off Numerical Python for All, Everybody & Anybody Black Friday special
Kelvin Kobina Fosu
Summary
- Reed courses certificate of completion - Free
Add to basket or enquire
Overview
Numerical Computing with NumPy
Slicing
Shaping & Reshaping
Stacking
NumPy Arrays
Axes and Math operations
Dimensions
Random and choice methods
Certificates
Reed courses certificate of completion
Digital certificate - Included
Will be downloadable when all lectures have been completed
Curriculum
-
Introduction 11:47
-
Dimensions and Operators Exercise 09:51
-
Byte, Type and Size 02:51
-
Arange Argument 05:03
-
Shape and Reshaping 13:30
-
Slicing 15:25
-
Sum, Max, Min, Linspace 04:31
-
Random and Choice Methods 11:31
-
Axes 06:55
-
Mathematical Functions- Addition, square root, standard deviation, etc 05:13
-
Stacking 05:03
Course media
Description
Learn numerical python to gain practical knowledge in how the NumPy package is used in scientific computing.
NumPy is used by Data Scientists, used in the fields of machine learning, used in data visualization, used in data evaluation, and the likes with its high-level syntax.
In this course, we would learn lots of different methods used in scientific computing, exploring the Numpy package with lots of exercises including handling or fixing some of the errors we might encounter, slicing, reshaping, converting a list to a NumPy array for fast processing.
The course assumes you already have python3, Anaconda already installed and you're comfortable using Jupyter notebook. Also, some background understanding of python basics is okay.
You'll have free -downloadable access to the course activities/ exercise from the first section of the course module. The jupyter notebook exercise file has been well commented on so you understand what we are trying to achieve with each line of code.
This should help you practice on your own while watching the video.
Also, more sessions will be added as they are being edited.
*Python 3* is the version of python used in the lectures and Jupyter notebook is the IDE used in programming for the course.
It should be noted that python and anaconda installations and downloads and setting up anaconda and python is not taught in this course.
Who is this course for?
- Beginners
- Teachers
- Educators
- Python developers
- Hobbyist
Requirements
-
Computer
-
Python 3
-
Anaconda-Jupyter notebook
Questions and answers
Currently there are no Q&As for this course. Be the first to ask a question.
Reviews
Currently there are no reviews for this course. Be the first to leave a review.
Legal information
This course is advertised on reed.co.uk by the Course Provider, whose terms and conditions apply. Purchases are made directly from the Course Provider, and as such, content and materials are supplied by the Course Provider directly. Reed is acting as agent and not reseller in relation to this course. Reed's only responsibility is to facilitate your payment for the course. It is your responsibility to review and agree to the Course Provider's terms and conditions and satisfy yourself as to the suitability of the course you intend to purchase. Reed will not have any responsibility for the content of the course and/or associated materials.