BOOKS - Machine Learning Algorithms in Depth (Final Release)
Machine Learning Algorithms in Depth (Final Release) - Vadim Smolyakov 2024 PDF Manning Publications BOOKS
ECO~15 kg CO²

1 TON

Views
24755

Telegram
 
Machine Learning Algorithms in Depth (Final Release)
Author: Vadim Smolyakov
Year: 2024
Pages: 328
Format: PDF
File size: 26.6 MB
Language: ENG



Pay with Telegram STARS
The book "Machine Learning Algorithms in Depth Final Release" delves into the intricacies of machine learning algorithms, providing readers with a comprehensive understanding of the subject matter. The book covers various aspects of machine learning, including supervised and unsupervised learning, neural networks, deep learning, and natural language processing. It also explores the history of machine learning, its applications, and the challenges associated with it. The author emphasizes the importance of understanding the process of technological evolution and the need to develop a personal paradigm for perceiving the technological advancements in modern knowledge. This paradigm is essential for the survival of humanity and the unity of people in a world filled with conflicts. The book begins by introducing the concept of machine learning and its significance in today's technology-driven world. It explains how machine learning has revolutionized various industries, such as healthcare, finance, marketing, and transportation, among others. The author highlights the importance of understanding the underlying principles of machine learning to harness its full potential. The next chapter delves into the different types of machine learning algorithms, including linear regression, decision trees, random forests, support vector machines, and neural networks. Each algorithm is explained in detail, along with examples and exercises to help readers grasp the concepts better. The chapter also discusses the advantages and disadvantages of each algorithm, allowing readers to make informed decisions about their use in different scenarios. The following chapters explore supervised and unsupervised learning, providing insights into the strengths and weaknesses of each approach.
Книга «Алгоритмы машинного обучения в глубоком окончательном выпуске» углубляется в тонкости алгоритмов машинного обучения, предоставляя читателям исчерпывающее понимание предмета. Книга охватывает различные аспекты машинного обучения, включая обучение с учителем и без учителя, нейронные сети, глубокое обучение и обработку естественного языка. Также исследуется история машинного обучения, его применения и связанные с ним проблемы. Автор подчеркивает важность понимания процесса технологической эволюции и необходимость разработки личностной парадигмы восприятия технологических достижений в современном знании. Эта парадигма необходима для выживания человечества и единства людей в мире, наполненном конфликтами. Книга начинается с представления концепции машинного обучения и его значения в современном мире, основанном на технологиях. В нем объясняется, как машинное обучение произвело революцию в различных отраслях, таких как здравоохранение, финансы, маркетинг и транспорт. Автор подчеркивает важность понимания основополагающих принципов машинного обучения, чтобы полностью использовать его потенциал. В следующей главе рассматриваются различные типы алгоритмов машинного обучения, включая линейную регрессию, деревья решений, случайные леса, машины опорных векторов и нейронные сети. Каждый алгоритм подробно объясняется вместе с примерами и упражнениями, чтобы помочь читателям лучше понять концепции. Также в главе обсуждаются преимущества и недостатки каждого алгоритма, позволяющие читателям принимать обоснованные решения об их использовании в разных сценариях. Следующие главы исследуют контролируемое и неконтролируемое обучение, предоставляя понимание сильных и слабых сторон каждого подхода.
''

You may also be interested in:

Learn Autonomous Programming with Python Utilize Python|s capabilities in Artificial Intelligence, Machine Learning, Deep Learning and robotic process automation
Python Programming The Crash Course for Python – Learn the Secrets of Machine Learning, Data Science Analysis and Artificial Intelligence. Introduction to Deep Learning for Beginners
Learn Autonomous Programming with Python Utilize Python|s capabilities in Artificial Intelligence, Machine Learning, Deep Learning and robotic process automation
Machine Learning and Deep Learning in Computational Toxicology (Computational Methods in Engineering and the Sciences)
Easy Learning Data Structures & Algorithms Python 3 Data Structures and Algorithms Guide in Python
Information Theory, Inference, and Learning Algorithms
Applied Learning Algorithms for Intelligent IoT
Federated Learning From Algorithms to System Implementation
Federated Learning From Algorithms to System Implementation
Learning Algorithms Through Programming and Puzzle Solving
Deep Learning for 3D Vision Algorithms and Applications
Various Deep Learning Algorithms in Computational Intelligence
Python Programming The Crash Course for Python Projects – Learn the Secrets of Machine Learning, Data Science Analysis and Artificial Intelligence. Introduction to Deep Learning for Beginners
Rage Inside the Machine The Prejudice of Algorithms, and How to Stop the Internet Making Bigots of Us All
Machine Vision Inspection Systems Machine Learning-Based Approaches (Machine Vision Inspection Systems, Volume 2)
Learn Autonomous Programming with Python: Utilize Python|s capabilities in artificial intelligence, machine learning, deep learning and robotic process automation (English Edition)
Supervised Machine Learning with Python A Comprehensive guide to Supervised Learning for 2024
Supervised Machine Learning with Python: A Comprehensive guide to Supervised Learning for 2024
Supervised Machine Learning with Python A Comprehensive guide to Supervised Learning for 2024
Inside Deep Learning Math, Algorithms, Models
A Human|s Guide to Machine Intelligence How Algorithms Are Shaping Our Lives and How We Can Stay in Control
Information Management and Machine Intelligence: Proceedings of ICIMMI 2019 (Algorithms for Intelligent Systems)
Python Programming, Deep Learning 3 Books in 1 A Complete Guide for Beginners, Python Coding for AI, Neural Networks, & Machine Learning, Data Science/Analysis with Practical Exercises for Learners
Evolutionary Deep Learning: Genetic algorithms and neural networks
Learning Algorithms A Programmer|s Guide to Writing Better Code
Multimodal Scene Understanding Algorithms, Applications and Deep Learning
Inside Deep Learning Math, Algorithms, Models (MEAP)
Easy Learning Data Structures & Algorithms C++ Graphic Data Structures & Algorithms
Bioinformatics Algorithms an Active Learning Approach, Vol. 2 (2nd edition)
Bioinformatics Algorithms an Active Learning Approach, Vol. 1 (2nd edition)
Evolutionary Deep Learning Genetic algorithms and neural networks (MEAP)
Learning Algorithms A Programmer’s Guide to Writing Better Code (Early Release)
Computer Vision Principles, Algorithms, Applications, Learning 5th Edition
The Death of Hitler|s War Machine The Final Destruction of the Wehrmacht
Guide to Competitive Programming Learning and Improving Algorithms Through Contests, 3rd Edition
Integrating Deep Learning Algorithms to Overcome Challenges in Big Data Analytics
Deep Learning Systems Algorithms, Compilers, and Processors for Large-Scale Production
Machine Learning Techniques and Analytics for Cloud Security (Advances in Learning Analytics for Intelligent Cloud-IoT Systems)
The Art of 64-Bit Assembly, Volume 1 x86-64 Machine Organization and Programming (Final)
Deep Learning with JAX (Final Release)