BOOKS - Ultimate MLOps for Machine Learning Models Use Real Case Studies to Efficient...
Ultimate MLOps for Machine Learning Models Use Real Case Studies to Efficiently Build, Deploy, and Scale Machine Learning Pipelines with MLOps - Saurabh D. Dorle 2024 PDF | EPUB Orange Education Pvt Ltd, AVA BOOKS
US $5.85

Views
589493
Ultimate MLOps for Machine Learning Models Use Real Case Studies to Efficiently Build, Deploy, and Scale Machine Learning Pipelines with MLOps
Author: Saurabh D. Dorle
Year: 2024
Number of pages: 484
Format: PDF | EPUB
File size: 10.1 MB
Language: ENG

The only MLOps guide you'll ever need. This book is an essential resource for professionals aiming to streamline and optimize their Machine Learning operations. This comprehensive guide provides a thorough understanding of the MLOps life cycle, from model development and training to deployment and monitoring. By delving into the intricacies of each phase, the book equips readers with the knowledge and tools needed to create robust, scalable, and efficient Machine Learning workflows. Key chapters include a deep dive into essential MLOps tools and technologies, effective data pipeline management, and advanced model optimization techniques. The book also addresses critical aspects such as scalability challenges, data and model governance, and security in machine learning operations. Each topic is presented with practical insights and real-world case studies, enabling readers to apply best practices in their job roles. Whether you are a data scientist, ML engineer, or IT professional, this book empowers you to take your Machine Learning projects from concept to production with confidence. This book is for data scientists, Machine Learning engineers, and data engineers aiming to master MLOps for effective model management in production. It’s also ideal for researchers and stakeholders seeking insights into how MLOps drives business strategy and scalability, as well as anyone with a basic grasp of Python and Machine Learning looking to enter the field of Data Science in production.

You may also be interested in: