BOOKS - Microservices for Machine Learning Design, implement, and manage high-perform...
Microservices for Machine Learning Design, implement, and manage high-performance ML systems with microservices - Rohit Ranjan 2024 PDF | EPUB | MOBI BPB Publications BOOKS
3 TON

Views
87017

Telegram
 
Microservices for Machine Learning Design, implement, and manage high-performance ML systems with microservices
Author: Rohit Ranjan
Year: 2024
Format: PDF | EPUB | MOBI
File size: 10.1 MB
Language: ENG



Pay with Telegram STARS
Designing and managing high-performance machine learning (ML) systems is a complex task that requires a deep understanding of various technologies and their interplay. The book "Microservices for Machine Learning" provides a comprehensive guide to designing, implementing, and managing such systems using microservices architecture. This approach allows for breaking down the overall system into smaller, independent components, each responsible for a specific task, making it easier to maintain, scale, and evolve over time. The book covers the entire lifecycle of an ML system, from conceptualization to deployment and maintenance, and provides practical advice on how to navigate the rapidly changing landscape of ML technology. It emphasizes the importance of understanding the underlying principles of ML and the need for a personal paradigm for perceiving the technological process of developing modern knowledge as the basis for the survival of humanity and the survival of the unification of people in a warring state. The book is divided into four parts: Part I provides an overview of ML systems and their importance in today's technology landscape, while Part II delves into the details of designing and implementing microservices for ML. Part III discusses the challenges of deploying and maintaining ML systems in production environments, and Part IV offers guidance on how to evolve and adapt to new technologies and trends.
Проектирование и управление высокопроизводительными системами машинного обучения (ML) является сложной задачей, требующей глубокого понимания различных технологий и их взаимодействия. Книга «Микросервисы для машинного обучения» содержит исчерпывающее руководство по проектированию, внедрению и управлению такими системами с использованием архитектуры микросервисов. Такой подход позволяет разбивать всю систему на более мелкие, независимые компоненты, каждый из которых отвечает за конкретную задачу, что облегчает ее обслуживание, масштабирование и развитие с течением времени. Книга охватывает весь жизненный цикл ML-системы, от концептуализации до развертывания и обслуживания, и содержит практические советы о том, как ориентироваться в быстро меняющейся среде ML-технологии. В ней подчеркивается важность понимания основополагающих принципов МИ и необходимость личностной парадигмы восприятия технологического процесса развития современного знания как основы выживания человечества и выживания объединения людей в воюющем государстве. Книга разделена на четыре части: в части I представлен обзор ML-систем и их важности в современном технологическом ландшафте, а в части II - подробности проектирования и внедрения микросервисов для ML. В части III обсуждаются проблемы развертывания и обслуживания ML-систем в производственных средах, а в части IV предлагаются рекомендации по развитию и адаптации к новым технологиям и тенденциям.
''

You may also be interested in:

Learning TensorFlow.js Powerful Machine Learning in javascript
Federated Learning (Synthesis Lectures on Artificial Intelligence and Machine Learning)
Disease Prediction using Machine Learning, Deep Learning and Data Analytics
Disease Prediction using Machine Learning, Deep Learning and Data Analytics
Building Intelligent Systems Using Machine Learning and Deep Learning Security, Applications and Its Challenges
Risk Modeling Practical Applications of Artificial Intelligence, Machine Learning, and Deep Learning
Building Intelligent Systems Using Machine Learning and Deep Learning Security, Applications and Its Challenges
Machine Learning with Python A Comprehensive Guide To Algorithms, Deep Learning Techniques, And Practical Applications
Hands-On Unsupervised Learning Using Python: How to Build Applied Machine Learning Solutions from Unlabeled Data
Elements of Causal Inference: Foundations and Learning Algorithms (Adaptive Computation and Machine Learning series)
Adversarial Machine Learning: Attack Surfaces, Defence Mechanisms, Learning Theories in Artificial Intelligence
Machine Learning: Master Supervised and Unsupervised Learning Algorithms with Real Examples (English Edition)
Machine Learning and Deep Learning in Natural Language Processing
Machine Learning and Deep Learning in Real-Time Applications
Machine Learning and Deep Learning in Neuroimaging Data Analysis
Machine Learning and Deep Learning in Neuroimaging Data Analysis
Machine Learning - A Journey To Deep Learning With Exercises And Answers
Statistical Reinforcement Learning Modern Machine Learning Approaches
Distributional Reinforcement Learning (Adaptive Computation and Machine Learning)
Machine Learning and Deep Learning in Natural Language Processing
Python Machine Learning for Beginners Learning from Scratch Numpy, Pandas, Matplotlib, Seaborn, SKlearn and TensorFlow 2.0
Generative AI with Python Harnessing The Power Of Machine Learning And Deep Learning To Build Creative And Intelligent Systems
Default Loan Prediction Based On Customer Behavior Using Machine Learning And Deep Learning With Python, Second Edition
Machine Learning with Python Cookbook Practical Solutions from Preprocessing to Deep Learning, 2nd Edition (Final Release)
Data Scientist Pocket Guide Over 600 Concepts, Terminologies, and Processes of Machine Learning and Deep Learning Assembled
Machine Learning. Supervised Learning Techniques and Tools Nonlinear Models Exercises with R, SAS, STATA, EVIEWS and SPSS
Learning Genetic Algorithms with Python Empower the Performance of Machine Learning and AI Models with the Capabilities of a Powerful Search Algorithm
Machine Learning with Python Cookbook Practical Solutions from Preprocessing to Deep Learning, 2nd Edition (Final Release)
Programming Machine Learning From Coding to Deep Learning
Machine Learning in Elixir Learning to Learn with Nx and Axon
Machine Learning in Elixir Learning to Learn with Nx and Axon
Implementing Azure Cloud Design Patterns: Implement efficient design patterns for data management, high availability, monitoring and other popular patterns on your Azure Cloud
Machine Learning: Fundamental Algorithms for Supervised and Unsupervised Learning With Real-World Applications (Advanced Data Analytics Book 1)
Data Science Crash Course Thyroid Disease Classification and Prediction Using Machine Learning and Deep Learning with Python GUI, Second Edition
Programming-Based Formal Languages and Automata Theory: Design, Implement, Validate, and Prove (Texts in Computer Science)
Service-Oriented Architecture Analysis and Design for Services and Microservices, 2nd Edition
Principles of Web API Design Delivering Value with APIs and Microservices (Final Release)
Machine Learning for Materials Discovery: Numerical Recipes and Practical Applications (Machine Intelligence for Materials Science)
Ultimate Microservices with Go Combine the Power of Microservices with Go to Build Highly Scalable, Maintainable, and Efficient Systems
Ultimate Microservices with Go Combine the Power of Microservices with Go to Build Highly Scalable, Maintainable, and Efficient Systems