Master Numpy Foundation and Practice Challenging Exercises

Master Numpy Foundation and Practice Challenging Exercises
MP4 | Video: h264, 1280x720 | Audio: AAC, 44.1 KHz, 2 Ch
Genre: eLearning | Language: English + srt | Duration: 102 lectures (8h 14m) | Size: 3.64 GB

This course helps you to build the foundation to work with Data Science.

Learn how to use Numpy from fundamentals of python and practice 80 exercises and 350 quiz questions

Learn Python Basics for Data Science

Learn Numpy

60 challeg exercises in Numpy along with hints and solution files with explanation text for strong practice

20 exercises in Python along with hints and solution files with explanation text for practice

Extensive and challeg quiz along with explanation for answers for all 350 questions

Understand Key Statistics concepts

Learn elaborately on how to implement key statistics concepts in Numpy

Understand Key Linear Algebra concepts

How to use numpy to implement key linear algebra concepts

Basic Computer Knowledge

No Python knowledge is required

No Data Science knowledge is required

This course is not just learning numpy and python basics, but also provides students and programmers to get practice with lot of challeg exercises while you learn. Thus, students get strong hands-on with numpy at the end of this course.


No of Exercises in Python: 20

No of Exercises in Numpy: 60+

These exercises are specially designed to get the hands on immediately after completion of every topic. The solution files contain not just the code alone, but also embedded with the detailed explanation of the solution. Additionally, hints files are provided for exercises inorder for students to avoid viewing the solution before completing the exercise.


No of questions: 350

You might think that every course has got quiz, then what's so special about quiz in this course.

This course contains specially designed quiz to have challeg questions with explanations for answers. The questions include testing the output of the code, questions forces students to analyse all the choices etc.


At high level, this course covers following chapters:

Python Basics


Statistics concepts

Numpy for Statistics

Linear Algebra Concepts

Numpy for Linear Algebra


Besides lecture duration, students will spend valuable 60 hours for exercises and quiz questions. You can see the detail of this in preview videos.

Bners of Data Science

Students or anyone interested towards Data Science career path

Existing Software Programmers who want to shift to Data Science career


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