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
[FreeTutorials.Us] Udemy - Mathematical Foundation For Machine Learning And AI
TORRENT SUMMARY
Status:
All the torrents in this section have been verified by our verification system
For More Udemy Free Courses >>> https://freetutorials.us/ For more Lynda and other Courses >>> https://www.freecoursesonline.me/ Forum for discussion >>> https://1hack.us/
Learn the core mathematical concepts for machine learning and learn to implement them in R and python
Created by : Eduonix Learning Solutions, Eduonix-Tech Last updated : 12/2018 Language : English Course Source : https://www.udemy.com/mathematical-foundation-for-machine-learning-and-ai/
What you'll learn
• Refresh the mathematical concepts for AI and Machine Learning • Learn to implement algorithms in python • Understand the how the concepts extend for real world ML problems
Course content all 19 lectures 04:16:13
Requirements
• Basic knolwedge of python is assumed as concepts are coded in python and R
Description
Artificial Intelligence has gained importance in the last decade with a lot depending on the development and integration of AI in our daily lives. The progress that AI has already made is astounding with the self-driving cars, medical diagnosis and even betting humans at strategy games like Go and Chess.
The future for AI is extremely promising and it isn’t far from when we have our own robotic companions. This has pushed a lot of developers to start writing codes and start developing for AI and ML programs. However, learning to write algorithms for AI and ML isn’t easy and requires extensive programming and mathematical knowledge.
Mathematics plays an important role as it builds the foundation for programming for these two streams. And in this course, we’ve covered exactly that. We designed a complete course to help you master the mathematical foundation required for writing programs and algorithms for AI and ML.
The course has been designed in collaboration with industry experts to help you breakdown the difficult mathematical concepts known to man into easier to understand concepts. The course covers three main mathematical theories: Linear Algebra, Multivariate Calculus and Probability Theory.
Linear Algebra – Linear algebra notation is used in Machine Learning to describe the parameters and structure of different machine learning algorithms. This makes linear algebra a necessity to understand how neural networks are put together and how they are operating.
It covers topics such as:
Scalars, Vectors, Matrices, Tensors
Matrix Norms
Special Matrices and Vectors
Eigenvalues and Eigenvectors
Multivariate Calculus – This is used to supplement the learning part of machine learning. It is what is used to learn from examples, update the parameters of different models and improve the performance.
It covers topics such as:
Derivatives
Integrals
Gradients
Differential Operators
Convex Optimization
Probability Theory – The theories are used to make assumptions about the underlying data when we are designing these deep learning or AI algorithms. It is important for us to understand the key probability distributions, and we will cover it in depth in this course.
It covers topics such as:
Elements of Probability
Random Variables
Distributions
Variance and Expectation
Special Random Variables
The course also includes projects and quizzes after each section to help solidify your knowledge of the topic as well as learn exactly how to use the concepts in real life.
At the end of this course, you will not have not only the knowledge to build your own algorithms, but also the confidence to actually start putting your algorithms to use in your next projects.
Enroll now and become the next AI master with this fundamentals course!
Who this course is for :
• Any one who wants to refresh or learn the mathematical tools required for AI and machine learning will find this course very useful.
VISITOR COMMENTS (0 )
FILE LIST
Filename
Size
0. Websites you may like/How you can help Team-FTU.txt
237 B
1. Introduction/1. Introduction.mp4
27.8 MB
2. Linear Algebra/1. Scalars, Vectors, Matrices, and Tensors.mp4
215.5 MB
2. Linear Algebra/2. Vector and Matrix Norms.mp4
53.1 MB
2. Linear Algebra/3. Vectors, Matrices, and Tensors in Python.mp4
114 MB
2. Linear Algebra/3.1 Project 1 - Vectors, Matrices, and Tensors in Python.zip.zip
176.6 KB
2. Linear Algebra/4. Special Matrices and Vectors.mp4
121.1 MB
2. Linear Algebra/5. Eigenvalues and Eigenvectors.mp4
64.3 MB
2. Linear Algebra/6. Norms and Eigendecomposition.mp4
177.9 MB
2. Linear Algebra/6.1 Project 2 - Norms and Eigendecomposition.zip.zip
232 KB
3. Multivariate Calculus/1. Introduction to Derivatives.mp4
143.3 MB
3. Multivariate Calculus/2. Basics of Integration.mp4