Distributed Machine Learning Patterns – Manning Publications (2024)
English | Tutorial | Size: 9.01 MB
Practical patterns for scaling machine learning from your laptop to a distributed cluster.
Distributing machine learning systems allow developers to handle extremely large datasets across multiple clusters, take advantage of automation tools, and benefit from hardware accelerations. This book reveals best practice techniques and insider tips for tackling the challenges of scaling machine learning systems.
In Distributed Machine Learning Patterns you will learn how to:
Apply distributed systems patterns to build scalable and reliable machine learning projects
Build ML pipelines with data ingestion, distributed training, model serving, and more
Automate ML tasks with Kubernetes, TensorFlow, Kubeflow, and Argo Workflows
Make trade-offs between different patterns and approaches
Manage and monitor machine learning workloads at scale
Inside Distributed Machine Learning Patterns you’ll learn to apply established distributed systems patterns to machine learning projects-plus explore cutting-edge new patterns created specifically for machine learning. Firmly rooted in the real world, this book demonstrates how to apply patterns using examples based in TensorFlow, Kubernetes, Kubeflow, and Argo Workflows. Hands-on projects and clear, practical DevOps techniques let you easily launch, manage, and monitor cloud-native distributed machine learning pipelines.
about the technology
Deploying a machine learning application on a modern distributed system puts the spotlight on reliability, performance, security, and other operational concerns. In this in-depth guide, Yuan Tang, project lead of Argo and Kubeflow, shares patterns, examples, and hard-won insights on taking an ML model from a single device to a distributed cluster.
about the book
Distributed Machine Learning Patterns provides dozens of techniques for designing and deploying distributed machine learning systems. In it, you’ll learn patterns for distributed model training, managing unexpected failures, and dynamic model serving. You’ll appreciate the practical examples that accompany each pattern along with a full-scale project that implements distributed model training and inference with autoscaling on Kubernetes.
what’s inside
Data ingestion, distributed training, model serving, and more
Automating Kubernetes and TensorFlow with Kubeflow and Argo Workflows
Manage and monitor workloads at scale
about the reader
For data analysts and engineers familiar with the basics of machine learning, Bash, Python, and Docker.
about the author
Yuan Tang is a project lead of Argo and Kubeflow, maintainer of TensorFlow and XGBoost, and author of numerous open source projects.
RAPIDGATOR
rapidgator.net/file/cafb3eb642bdd2f2b5ee844ee2881590/Distributed_Machine_Learning_Patterns_-_Manning_Publications_(2024).rar.html