Curriculum
-
1
Book Preview
-
2
Introduction
-
(Included in full purchase)
Introduction
-
(Included in full purchase)
-
3
Chapter 1 : Introduction to MLOps
-
(Included in full purchase)
Introduction to MLOps
-
(Included in full purchase)
-
4
Chapter 2 : Understanding Machine Learning Lifecycle
-
(Included in full purchase)
Understanding Machine Learning Lifecycle
-
(Included in full purchase)
-
5
Chapter 3 : Essential Tools and Technologies in MLOps
-
(Included in full purchase)
Essential Tools and Technologies in MLOps
-
(Included in full purchase)
-
6
Chapter 4 : Data Pipelines and Management in MLOps
-
(Included in full purchase)
Data Pipelines and Management in MLOps
-
(Included in full purchase)
-
7
Chapter 5 : Model Development and Training
-
(Included in full purchase)
Model Development and Training
-
(Included in full purchase)
-
8
Chapter 6 : Model Optimization Techniques for Performance
-
(Included in full purchase)
Model Optimization Techniques for Performance
-
(Included in full purchase)
-
9
Chapter 7 : Efficient Model Deployment and Monitoring Strategies
-
(Included in full purchase)
Efficient Model Deployment and Monitoring Strategies:
-
(Included in full purchase)
-
10
Chapter 8 : Scalability Challenges and Solutions in MLOps
-
(Included in full purchase)
Scalability Challenges and Solutions in MLOps
-
(Included in full purchase)
-
11
Chapter 9 : Data, Model Governance, and Compliance in Production Environments
-
(Included in full purchase)
Data, Model Governance, and Compliance in Production Environments
-
(Included in full purchase)
-
12
Chapter 10 : Security in Machine Learning Operations
-
(Included in full purchase)
Security in Machine Learning Operations
-
(Included in full purchase)
-
13
Chapter 11 : Case Studies and Future Trends in MLOps
-
(Included in full purchase)
Case Studies and Future Trends in MLOps
-
(Included in full purchase)
-
14
INDEX
-
(Included in full purchase)
INDEX
-
(Included in full purchase)
About the course
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. It equips you with the practical skills to ensure your models are reliable, secure, and compliant with regulations. By the end, you will be well-positioned to navigate the ever-evolving landscape of MLOps and unlock the true potential of your machine learning initiatives.
.jpg)
About the Author
Saurabh Dorle holds a Master’s degree in Machine Learning from the Maharashtra Institute of Technology, Pune, and a Bachelor’s degree in Computer Engineering from Pune University, Pune. He is a distinguished expert in the field of Data Science. Over the past six years, Saurabh has amassed extensive experience, leading and developing end-to-end solutions that have delivered substantial value across diverse industries, including media and entertainment, telecom, retail, and E-commerce.