Free Download Mastering Machine Learning in Artificial Intelligence (2024)
Published 8/2024
Created by EDUCBA Bridging the Gap
MP4 | Video: h264, 1280×720 | Audio: AAC, 44.1 KHz, 2 Ch
Genre: eLearning | Language: English | Duration: 10 Lectures ( 1h 35m ) | Size: 999 MB
Unlock the potential of AI with our Machine Learning course – master essential techniques and algorithms today!
What you’ll learn:
Fundamental concepts of Machine Learning within the context of Artificial Intelligence.
Techniques and applications of supervised learning.
Methods and use cases for unsupervised learning.
Various clustering techniques and their practical applications.
Different distance measures and their importance in ML tasks.
Techniques for dimensionality reduction and data visualization.
Principles and algorithms of association rule learning.
Basics of reinforcement learning and reward-based learning.
Different types of reinforcement learning, including model-free methods.
Advanced reinforcement learning techniques, including model-based methods.
Requirements:
Basic understanding of mathematics and statistics. Familiarity with programming, preferably in Python. An interest in data science and artificial intelligence. A computer with Python installed or the ability to install Python and related libraries. Internet access for additional resources and course materials.
Description:
Introduction:Delve into the exciting world of Machine Learning, a crucial aspect of Artificial Intelligence, with this comprehensive course. Designed to equip you with the foundational knowledge and practical skills required to excel in the field, this course covers essential machine learning techniques, algorithms, and applications.Section 1: Machine Learning of Artificial IntelligenceLecture 1: Introduction to Machine Learning AIBegin with an overview of Machine Learning (ML) within the broader context of Artificial Intelligence (AI). Understand the fundamental concepts, the evolution of ML, and its significance in today’s technology-driven world.Lecture 2: Supervised LearningExplore supervised learning, a primary ML technique. Learn how to train models using labeled data, understand various algorithms like linear regression, decision trees, and support vector machines, and grasp their practical applications.Lecture 3: Unsupervised LearningDiscover unsupervised learning, where the goal is to find hidden patterns in data without predefined labels. Study key algorithms such as k-means clustering and principal component analysis (PCA), and their use cases in real-world scenarios.Lecture 4: ClusteringDelve deeper into clustering, a popular unsupervised learning method. Understand different clustering techniques, including hierarchical clustering and density-based clustering, and learn how to apply them to group similar data points effectively.Lecture 5: Distance MeasuresLearn about various distance measures used in machine learning to calculate the similarity or dissimilarity between data points. Study measures like Euclidean distance, Manhattan distance, and cosine similarity, and their importance in clustering and classification tasks.Lecture 6: Dimensionality ReductionUnderstand the concept of dimensionality reduction, which simplifies large datasets while preserving their essential features. Explore techniques like PCA and t-SNE, and learn how they help in visualizing and analyzing high-dimensional data.Lecture 7: Association Rule LearningDive into association rule learning, a method for discovering interesting relationships between variables in large datasets. Study algorithms like Apriori and Eclat, and understand their applications in market basket analysis and recommendation systems.Lecture 8: Reinforcement LearningExplore reinforcement learning, where agents learn to make decisions by interacting with their environment. Understand the principles of reward-based learning and study key algorithms like Q-learning and deep Q-networks (DQNs).Lecture 9: Types of Reinforcement Learning Part 1Examine the different types of reinforcement learning, starting with model-free methods. Learn about policy-based and value-based approaches, and understand their applications in various domains, from robotics to gaming.Lecture 10: Types of Reinforcement Learning Part 2Continue exploring reinforcement learning by studying model-based methods. Understand how models of the environment are used to plan actions and improve learning efficiency, and explore advanced techniques like Monte Carlo methods and temporal difference learning.Conclusion:By the end of this section, you will have a solid understanding of various machine learning techniques and their practical applications. Equipped with this knowledge, you’ll be prepared to tackle complex data problems and contribute to AI projects with confidence.
Who this course is for:
Aspiring data scientists and AI professionals seeking to build a solid foundation in machine learning.
Software developers and engineers looking to enhance their AI and machine learning skills.
Students and beginners interested in starting a career in AI and machine learning.
Business professionals and analysts who want to leverage machine learning for data-driven decision-making.
Anyone with a passion for technology and a desire to understand the principles and applications of machine learning.
Homepage
www.udemy.com/course/mastering-machine-learning-in-artificial-intelligence/
DDOWNLOAD
Rapidgator
dzcyk.Mastering.Machine.Learning.in.Artificial.Intelligence.2024.part1.rar.html
dzcyk.Mastering.Machine.Learning.in.Artificial.Intelligence.2024.part2.rar.html
Fikper
dzcyk.Mastering.Machine.Learning.in.Artificial.Intelligence.2024.part2.rar.html
dzcyk.Mastering.Machine.Learning.in.Artificial.Intelligence.2024.part1.rar.html
Leave a Reply
You must be logged in to post a comment.