Description
Coursera Machine Learning is the name of the video training collection in the field of machine learning. The topic of machine learning has become very widespread today, and in fact, it is considered a solution to progress towards artificial intelligence at a very high level. In this training course, you can strengthen your knowledge in the field of machine learning by learning the most effective and key techniques and learning how to implement them. In this course, the material has been prepared for you theoretically and practically.
In this course and at the beginning of specific chapters, you will begin to learn about different concepts such as parametric and non-parametric algorithms, kernels, neural networks, etc. You will also be able to build intelligent robots that have the ability to understand and control by watching this course and learning the basics of machine learning. This course is also designed and published for those interested who want to learn machine learning in a practical and practical way.
What you will learn in the Coursera Machine Learning training series:
- Basic to advanced machine learning
- Familiarity with techniques and practical skills in your real projects
- Learning material from a theoretical and practical aspect to improve skills
- Getting familiar with and understanding the use of parametric and non-parametric algorithms
- Familiarity with neural networks and artificial intelligence in practice
- And…
Course details:
- Publisher: Coursera
- English language
- Duration: Assuming 8 hours of work per week, about 2 months
- Number of courses: 3
- teacher : Andrew Ng Eddy Shyu, Aarti Bagul and Geoff Ladwig
- File format: mp4
- Course Level: Introductory
- Presenting institution/university: DeepLearning.AI and Stanford University
Courses available in the Coursera Machine Learning training set:
Course 1
Supervised Machine Learning: Regression and Classification
Course 2
Advanced Learning Algorithms
Course 3
Unsupervised Learning, Recommenders, Reinforcement Learning
Pictures
Coursera Machine Learning course prerequisites
What background knowledge is necessary for the Machine Learning Specialization?
Learners should understand basic coding (for loops, functions, if/else statements) and high school-level math (arithmetic, algebra). Any additional math concepts will be explained along the way.
Who is the Machine Learning Specialization for?
The Machine Learning Specialization is a beginner-level program aimed at those new to AI and looking to gain a foundational understanding of machine learning models and real-world experience building systems using Python.
This specialization is suitable for learners with some basic knowledge of programming and high-school level math, as well as early-stage professionals in software engineering and data analysis who wish to upskill in machine learning.
Coursera Machine Learning sample video
Installation guide
After extracting, watch with your favorite player.
English subtitle
Quality: 720p
This educational series consists of 3 separate courses.
Changes:
On September 17, 1401, the Advanced Learning Algorithms course replaced the previous version with a new subtitle.
On December 22, 1401, the Advanced Learning Algorithms course replaced the previous version with 3 new lessons from the second week.
On July 14, 1402, the Unsupervised Learning, Recommenders, Reinforcement Learning course along with 3 new lessons from the second week replaced the previous version.
download link
Course 1 – Supervised Machine Learning: Regression and Classification
Download additional files (Jupyter Notebooks, Python Scripts, etc.)
Course 2 – Advanced Learning Algorithms
Download additional files (Jupyter Notebooks, Python Scripts, etc.)
Course 3 – Unsupervised Learning, Recommenders, Reinforcement Learning
Download additional files (Jupyter Notebooks, Python Scripts, etc.)
Password file(s): www.downloadly.ir
Size
2.6 GB
Be the first to comment