17 OCT 2024 - Welcome Back to TorrentFunk! Get your pirate hat back out. Streaming is dying and torrents are the new trend. Account Registration works again and so do Torrent Uploads. We invite you all to start uploading torrents again!
TORRENT DETAILS
[FTUForum.com] [UDEMY] Beginner To Advanced Guide On Machine Learning With R Tool [FTU]
TORRENT SUMMARY
Status:
All the torrents in this section have been verified by our verification system
Learn Machine Learning with the help of R programming
Created by : Elementary Learners Last updated : 2/2019 Language : English Caption (CC) : Included Torrent Contains : 99 Files, 8 Folders Course Source : https://www.udemy.com/beginner-to-advanced-guide-on-machine-learning-with-r-tool/
• R programming • R studio should be installed already • Basic knowledge of programming • Basic knowledge of mathematics
Description
Inspired by the field of Machine Learning? Then this course is for you!
This course is intended for both freshers and experienced hoping to make the bounce to Data Science.
R is a statistical programming language which provides tools to analyze data and for creating high-level graphics.
The topic of Machine Learning is getting exceptionally hot these days in light of the fact that these learning algorithms can be utilized as a part of a few fields from software engineering to venture managing an account. Students, at the end of this course, will be technically sound in the basics and the advanced concepts of Machine Learning.
Who this course is for :
• Freshers • Professionals • Anyone interested in machine learning.
For More Udemy Free Courses >>> https://ftuforum.com/ For more Lynda and other Courses >>> https://www.freecoursesonline.me/ Our Forum for discussion >>> https://discuss.ftuforum.com/
VISITOR COMMENTS (0 )
FILE LIST
Filename
Size
0. Websites you may like/How you can help Team-FTU.txt
237 B
1. Module-1 Introduction to Course/1. 1.1 Introduction to the Course.mp4
17.7 MB
1. Module-1 Introduction to Course/1. 1.1 Introduction to the Course.vtt
2.5 KB
1. Module-1 Introduction to Course/2. 1.2 Pre-Requisite.mp4
3.5 MB
1. Module-1 Introduction to Course/2. 1.2 Pre-Requisite.vtt
776 B
1. Module-1 Introduction to Course/3. 1.3 What you will Learn.mp4
3.7 MB
1. Module-1 Introduction to Course/3. 1.3 What you will Learn.vtt
1.9 KB
1. Module-1 Introduction to Course/4. 1.4 Techniques of Machine Learning.mp4
6.1 MB
1. Module-1 Introduction to Course/4. 1.4 Techniques of Machine Learning.vtt
4.2 KB
2. Module-2 Introduction to validation and its Methods/1. 2.1 Introduction to Cross Validation.mp4
3.5 MB
2. Module-2 Introduction to validation and its Methods/1. 2.1 Introduction to Cross Validation.vtt
2.4 KB
2. Module-2 Introduction to validation and its Methods/2. 2.2 Cross Validation Method.mp4
5.3 MB
2. Module-2 Introduction to validation and its Methods/2. 2.2 Cross Validation Method.vtt
3.6 KB
2. Module-2 Introduction to validation and its Methods/3. 2.3 Caret package.mp4
15.8 MB
2. Module-2 Introduction to validation and its Methods/3. 2.3 Caret package.vtt
8.2 KB
2. Module-2 Introduction to validation and its Methods/3.1 Programs.zip.zip
11 KB
3. Module-3 Classification/1. 3.1 Introduction to Classification.mp4
3.2 MB
3. Module-3 Classification/1. 3.1 Introduction to Classification.vtt
1.9 KB
3. Module-3 Classification/2. 3.2 KNN- K Nearest Neighbors.mp4
6.1 MB
3. Module-3 Classification/2. 3.2 KNN- K Nearest Neighbors.vtt
3.6 KB
3. Module-3 Classification/3. 3.3 Implementation of KNN Algorithm.mp4
14.7 MB
3. Module-3 Classification/3. 3.3 Implementation of KNN Algorithm.vtt