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Udemy – Machine Learning & Deep Learning in Python & R 2021-11

Udemy – Machine Learning & Deep Learning in Python & R 2021-11

Published on: 2021-12-07 01:23:31

Categories: 28

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Description

Machine Learning & Deep Learning in Python & R. name, a period of training machine learning and deep learning in languages, Python and R, which is the topics of regression, etc. decision trees, etc. SVM, etc. neural networks time series cover. This course, all the steps that a person must have during the grasping business issues by linear regression solve the cover. Most courses only focus on how the analysis did focus on them, but we believe what the before and after analysis occurs much more important is, for example, before running analysis that you are correct, you have to pre-processing to make it do, or do later analysis, you can rate the effectiveness of The مدلتان will evaluate and get results that really your business, assist the interpretation of the very most from your analysis is.

What course in Machine Learning & Deep Learning in Python & R learn:

Specifications volume :

Publisher: Udemy
teachers: Start-Tech Academy
language: English,
educational level: introductory to advanced,
the number of lessons: 282 lessons in 42 sections
Duration Time: 35h 0m

This course

Machine Learning & Deep Learning in Python & R

Prerequisite course:

Students will need to install Anaconda software but we have a separate lecture to guide you install the same

Images

Machine Learning & Deep Learning in Python & R

Sample movie

Installation guide

After the Extract, etc. with the Player your desired view.

Subtitles: English

Quality: 720p

Changes:

Version 2021/4 has increased by 1 lesson compared to 2021/2.

Version 2021/11 has not changed in the number of courses compared to 2021/4, but its total time has decreased by 1 minute.

Download link

Download Part 1 – 3 GB

Download Part 2 – 3 GB

Download Part 3 – 3 GB

Download Part 4 – 1.90 GB

Password file(s): www.abc.com

File size

10.90 GB

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