ダウンロード [UDEMY] Machine Learning and AI Support Vector Machines in Python [FTU] GloDLS torrent - GloDLS
トレントの詳細については "[UDEMY] Machine Learning and AI Support Vector Machines in Python [FTU] GloDLS"

[UDEMY] Machine Learning and AI Support Vector Machines in Python [FTU] GloDLS

To download this torrent, you need a BitTorrent client: Vuze or BTGuard
このトレントをダウンロードしてください。
Download using Magnet Link

健康:
シーズ: 18
リーチャ: 0
完了: 441 
最終チェック: 26-09-2019 12:33:17

アップローダ評判ポイント : 14786





Write a Review for the Uploader:   230   Say Thanks with one good review:
Share on Facebook


Details
名前:[UDEMY] Machine Learning and AI Support Vector Machines in Python [FTU] GloDLS
_DESCRIPTION_:


Artificial Intelligence and Data Science Algorithms in Python for Classification and Regression

Created by: Lazy Programmer Inc.
Last updated: 1/2019
Language: English
Caption (CC): Included
Torrent Contains: 150 Files, 9 Folders
Course Source: https://www.udemy.com/support-vector-machines-in-python/

What you'll learn

• Apply SVMs to practical applications: image recognition, spam detection, medical diagnosis, and regression analysis
• Understand the theory behind SVMs from scratch (basic geometry)
• Use Lagrangian Duality to derive the Kernel SVM
• Understand how Quadratic Programming is applied to SVM
• Support Vector Regression
• Polynomial Kernel, Gaussian Kernel, and Sigmoid Kernel
• Build your own RBF Network and other Neural Networks based on SVM

Requirements

• Calculus, Linear Algebra, Probability
• Python and Numpy coding
• Logistic Regression

Description

Support Vector Machines (SVM) are one of the most powerful machine learning models around, and this topic has been one that students have requested ever since I started making courses.

These days, everyone seems to be talking about deep learning, but in fact there was a time when support vector machines were seen as superior to neural networks. One of the things you’ll learn about in this course is that a support vector machine actually is a neural network, and they essentially look identical if you were to draw a diagram.

The toughest obstacle to overcome when you’re learning about support vector machines is that they are very theoretical. This theory very easily scares a lot of people away, and it might feel like learning about support vector machines is beyond your ability. Not so!

In this course, we take a very methodical, step-by-step approach to build up all the theory you need to understand how the SVM really works. We are going to use Logistic Regression as our starting point, which is one of the very first things you learn about as a student of machine learning. So if you want to understand this course, just have a good intuition about Logistic Regression, and by extension have a good understanding of the geometry of lines, planes, and hyperplanes.

This course will cover the critical theory behind SVMs:

• Linear SVM derivation
• Hinge loss (and its relation to the Cross-Entropy loss)
• Quadratic programming (and Linear programming review)
• Slack variables
• Lagrangian Duality
• Kernel SVM (nonlinear SVM)
• Polynomial Kernels, Gaussian Kernels, Sigmoid Kernels, and String Kernels
• Learn how to achieve an infinite-dimensional feature expansion
• Projected Gradient Descent
• SMO (Sequential Minimal Optimization)
• RBF Networks (Radial Basis Function Neural Networks)
• Support Vector Regression (SVR)
• Multiclass Classification

For those of you who are thinking, "theory is not for me", there’s lots of material in this course for you too!

In this course, there will be not just one, but two full sections devoted to just the practical aspects of how to make effective use of the SVM.

We’ll do end-to-end examples of real, practical machine learning applications, such as:

• Image recognition
• Spam detection
• Medical diagnosis
• Regression analysis

For more advanced students, there are also plenty of coding exercises where you will get to try different approaches to implementing SVMs.
These are implementations that you won't find anywhere else in any other course.
Thanks for reading, and I’ll see you in class!

HARD PREREQUISITES / KNOWLEDGE YOU ARE ASSUMED TO HAVE:

• Calculus
• Linear Algebra / Geometry
• Basic Probability
• Logistic Regression
• Python coding: if/else, loops, lists, dicts, sets
• Numpy coding: matrix and vector operations, loading a CSV file

TIPS (for getting through the course):

• Watch it at 2x.
• Take handwritten notes. This will drastically increase your ability to retain the information.
• Write down the equations. If you don't, I guarantee it will just look like gibberish.
• Ask lots of questions on the discussion board. The more the better!
• The best exercises will take you days or weeks to complete.
• Write code yourself, don't just sit there and look at my code. This is not a philosophy course!

WHAT ORDER SHOULD I TAKE YOUR COURSES IN?:

• Check out the lecture "What order should I take your courses in?" (available in the Appendix of any of my courses, including the free Numpy course)

Who this course is for:

• Beginners who want to know how to use the SVM for practical problems
• Experts who want to know all the theory behind the SVM
• Professionals who want to know how to effectively tune the SVM for their application.




YouTube動画:
カテゴリ:Tutorials
言語:English  English
合計サイズ:3.05 GB
情報のハッシュ:1DCA37E8DB24F33437B3E2E63A250099AC69B11C
を追加することによって:Prom3th3uS Super AdministratorMovie PirateVIP
追加日:2019-03-09 14:04:42
トレントステータス:Torrent Verified


評価:Not Yet Rated (Log in to rate it)


Tracker:
https://tracker.fastdownload.xyz:443/announce

_THIS_TORRENT_HAS_BACKUP_TRACKERS_
URLシーダーリーチャ完了
https://tracker.fastdownload.xyz:443/announce1048
udp://tracker.torrent.eu.org:451/announce2025
udp://tracker.cyberia.is:6969/announce2017
udp://tracker.leechers-paradise.org:6969/announce204
udp://open.stealth.si:80/announce1065
udp://hk1.opentracker.ga:6969/announce000
udp://tracker.cyberia.is:6969/announce2017
https://opentracker.xyz:443/announce000
https://t.quic.ws:443/announce1048
udp://9.rarbg.to:2710/announce102
udp://tracker.opentrackr.org:1337/announce20118
udp://ipv4.tracker.harry.lu:80/announce000
udp://tracker.coppersurfer.tk:6969/announce1073
udp://tracker.internetwarriors.net:1337/announce1011
udp://open.demonii.si:1337/announce2013


ファイルリスト: 





Comments
コメントはまだ投稿されました