LEARNING FOR LIFE

Get Yourself a Better Life! Free eLearning Download

  • Technical
    • Internet & Networking
    • Security & Hacking
    • AI | Artificial intelligence
    • OS & Server
    • WEB/HTML/CSS/AJAX
    • Database & SQL
    • Programming
    • Perl & PHP
    • .Net & Java
    • Mobile Development
    • C/C++/C#
    • Game Development
    • Unix & Linux
    • MAC OS X
    • Windows
    • OFFICE
    • Operation Systems
    • Hardware
  • Graphic & Media
    • Photography
    • 3D
    • Adobe Product Training
    • Art & Drawing & Painting
    • Film & Film Making
    • Game Designing
    • Music Training
    • Tutorials for designer
  • Business
    • Business & Investing
    • Writing & Affiliate
    • Marketing
    • Sales
    • Economics & Finances
    • Seo & Site Traffic
    • Stock & ForEX
  • Life Stype
    • Self Improvement | MP
    • Mindset | NLP
    • Fashion / Clothing / Grooming
    • Seduction
    • Fighting / Martial Arts
    • Food / Drink / Cooking
    • Health / Fitness / Massage
    • Languages / Accents
    • Magic / Illusions / Tricks
    • Psychology / Body Language
  • Engineering & Science
    • Cultures & History
    • Electrical & Architecture
    • Mathematics & Physics
    • Medical
  • Entertainment
    • Comic
    • Manga
    • Novel
    • Magazine
  • PC Game
    • Mac Game
    • Xbox Game
    • Play Station Game
Home » Ebooks & Tutorials » Technical » Programming » Unsupervised Machine Learning with Python | Udemy

Unsupervised Machine Learning with Python | Udemy

22/05/2021 Tut4DL Leave a Comment


Unsupervised Machine Learning with Python | Udemy
English | Size: 4.22 GB
Genre: eLearning

What you’ll learn
Clustering Algorithms: Hierarchical, DBSCAN, K Means, Gaussian Mixture Model
Dimensions Reduction: Principal Component Analysis (PCA)
Implementation of clustering algorithms and principal component analysis in Python
Applications of clustering and PCA using real world data

Unsupervised Machine Learning involves finding patterns in datasets.

After taking this course, students will be able to understand, implement in Python, and apply algorithms of Unsupervised Machine Learning to real-world datasets.

This course is designed for:

Scientists, engineers, and programmers and others interested in machine learning/data science

No prior experience with machine learning is needed

Students should have knowledge of

Basic linear algebra (vectors, transpose, matrices, matrix multiplication, inverses, determinants, linear spaces)

Basic probability and statistics (mean, covariance matrices, normal distributions)

Python 3 programming

The core of this course involves detailed study of the following algorithms:

Clustering: Hierarchical, DBSCAN, K Means & Gaussian Mixture Model

Dimension Reduction: Principal Component Analysis

The course presents the math underlying these algorithms including normal distributions, expectation maximization, and singular value decomposition. The course also presents detailed explanation of code design and implementation in Python, including use of vectorization for speed up, and metrics for measuring quality of clustering and dimension reduction.

The course codes are then used to address case studies involving real-world data to perform dimension reduction/clustering for the Iris Flowers Dataset, MNIST Digits Dataset (images), and BBC Text Dataset (articles).

Plenty of examples are presented and plots and animations are used to help students get a better understanding of the algorithms.

Course also includes a number of exercises (theoretical, Jupyter Notebook, and programming) for students to gain additional practice.

All resources (presentations, supplementary documents, demos, codes, solutions to exercises) are downloadable from the course Github site.

Students should have a Python installation, such as the Anaconda platform, on their machine with the ability to run programs in the command window and in Jupyter Notebooks

Who this course is for:
Scientists, engineers and programmers interested in data science/machine learning

https://nitro.download/view/10F3482E28A38B5/UnsupervisedMachineLearningwithPython.part01.rar
https://nitro.download/view/0FB43EF38904A75/UnsupervisedMachineLearningwithPython.part02.rar
https://nitro.download/view/094537E7AD158F2/UnsupervisedMachineLearningwithPython.part03.rar
https://nitro.download/view/E31FBB206420D17/UnsupervisedMachineLearningwithPython.part04.rar
https://nitro.download/view/2746D362DD258DC/UnsupervisedMachineLearningwithPython.part05.rar
https://nitro.download/view/DE0E5BE65EEB7C1/UnsupervisedMachineLearningwithPython.part06.rar
https://nitro.download/view/DCFD1802EE0794A/UnsupervisedMachineLearningwithPython.part07.rar
https://nitro.download/view/364F4DF3B501CF3/UnsupervisedMachineLearningwithPython.part08.rar
https://nitro.download/view/D17BB244E0D1409/UnsupervisedMachineLearningwithPython.part09.rar
https://nitro.download/view/B5B2687259470AC/UnsupervisedMachineLearningwithPython.part10.rar
https://nitro.download/view/89783F9219B1625/UnsupervisedMachineLearningwithPython.part11.rar

https://rapidgator.net/file/3c93fa6e34c79e5a5b398195b03fd170/UnsupervisedMachineLearningwithPython.part01.rar.html
https://rapidgator.net/file/7baf17d73c25ea915d658c5210a6eda7/UnsupervisedMachineLearningwithPython.part02.rar.html
https://rapidgator.net/file/4a3a332d355b9eba1ae942ee28f651a1/UnsupervisedMachineLearningwithPython.part03.rar.html
https://rapidgator.net/file/6749991876bac1a227a9bccf9a5696b8/UnsupervisedMachineLearningwithPython.part04.rar.html
https://rapidgator.net/file/06ffa20e166fb5ffe1e059ba74e8dc6e/UnsupervisedMachineLearningwithPython.part05.rar.html
https://rapidgator.net/file/0b94904815371f7e6a64f0dbe1dcec5e/UnsupervisedMachineLearningwithPython.part06.rar.html
https://rapidgator.net/file/1627e6858f52a0c7e6d8a2850c1fa3fa/UnsupervisedMachineLearningwithPython.part07.rar.html
https://rapidgator.net/file/89f4acbd88c6784a59bbc4e14a69eb80/UnsupervisedMachineLearningwithPython.part08.rar.html
https://rapidgator.net/file/8b8558460fa749741bae825480ed1d1f/UnsupervisedMachineLearningwithPython.part09.rar.html
https://rapidgator.net/file/970ac06630a338f6131bd43693456ba0/UnsupervisedMachineLearningwithPython.part10.rar.html
https://rapidgator.net/file/6bd5680e641325ebeefe0b244ef5e537/UnsupervisedMachineLearningwithPython.part11.rar.html

If any links die or problem unrar, send request to
https://forms.gle/e557HbjJ5vatekDV9

Programming

← UX Research: Mobile Diary Studies | Lynda The Future of Audit | Lynda →

Leave a Reply Cancel reply

Your email address will not be published. Required fields are marked *

This site uses Akismet to reduce spam. Learn how your comment data is processed.

  • BBC – The Americas (2025) Part 02: Mexico
  • Pluralsight – Red Hat Certified Specialist in Linux Diagnostics and Troubleshooting (EX342)
  • Lady Camara-TENOKE
  • Udemy – LLM & Generative AI Masterclass Langchain, HuggingFace
  • The Gnomon Workshop – Virtual Makeup Design Volume 2 – Lighting & Rendering using KeyShot & Photoshop with Neville Page

Meta

  • Log in
  • Entries feed
  • Comments feed
  • WordPress.org

2019 2020 2021 2022 2023 2024 Advanced AWS Azure BBC Beginners BitBook BOOKWARE Certified Cisco Cloud Comic Complete Course Data Design eBook Fundamentals Guide Hybrid iLEARN Introduction JavaScript Learn Learning LinkedIn Linux Lynda Masterclass Microsoft Packt Pluralsight Programming Python Security Skillshare Training Udemy Using XQZT

Copyright © 2025 · Equilibre on Genesis Framework · WordPress · Log in