Your One-Stop Torrenting Solution – Join the Best!
https://www.Torrenting.com

Tharakan L. Machine Learning Algorithms Simplified 2023

Download!Download this torrent!

Tharakan L. Machine Learning Algorithms Simplified 2023

To start this P2P download, you have to install a BitTorrent client like qBittorrent

Category: Other
Total size: 8.00 MB
Added: 2025-03-10 23:38:46

Share ratio: 7 seeders, 4 leechers
Info Hash: AC6B0C690B0BE0D5C95714085C3ADBA782C4D59C
Last updated: 2.6 hours ago

Description:

Textbook in PDF format Machine Learning Simplified: A Comprehensive Guide to Supervised, Unsupervised, and Semi-Supervised Algorithms. In today's data-driven world, Machine Learning has become an essential tool for businesses and organizations of all sizes. This powerful technology enables computers to learn from data without being explicitly programmed, making it possible to solve complex problems and uncover hidden insights. However, understanding the intricacies of machine learning can be daunting, especially for those without a background in Computer Science or mathematics. Your Essential Guide to Machine Learning Fundamentals Enter "Machine Learning Simplified," a comprehensive guide that breaks down the complex concepts of Machine Learning into easily understandable terms. This book is designed for anyone interested in learning about Machine learning, whether they are complete beginners or experienced professionals seeking to expand their knowledge. Demystifying Supervised Learning Algorithms The book begins by introducing the fundamental concepts of supervised learning, where algorithms are trained on labeled data to learn a mapping from inputs to outputs. This section covers a wide range of supervised learning algorithms, including linear regression, logistic regression, decision trees, support vector machines, and neural networks. Understanding Unsupervised Learning Techniques Next, the book delves into the world of unsupervised learning, where algorithms are tasked with finding patterns or structure in unlabeled data. This section covers various unsupervised learning techniques, including clustering algorithms, dimensionality reduction techniques, and anomaly detection algorithms. Bridging the Gap with Semi-Supervised Learning The book then explores the concept of semi-supervised learning, which combines labeled and unlabeled data to improve the performance of machine learning algorithms. This section covers various semi-supervised learning techniques, including self-training, co-training, and graph-based methods. Real-World Applications and Practical Examples Throughout the book, the author provides numerous real-world examples to illustrate the concepts of machine learning. These examples demonstrate how machine learning is used in various domains, such as healthcare, finance, marketing, and social media. A Comprehensive Resource for All Levels of Expertise Whether you are a complete beginner or an experienced professional seeking to expand your knowledge of Machine Learning, "Machine Learning Simplified" is an essential resource. The book's clear and concise explanations, combined with its abundance of real-world examples, make it an ideal guide for anyone interested in learning about this powerful technology