Distributed Machine Learning Systems
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Narrado por:
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Virtual Voice
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De:
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Ajit Singh
Este título utiliza narración de voz virtual
Voz Virtual es una narración generada por computadora para audiolibros..
Philosophy
The core philosophy of this book is to bridge the gap between theory and practice. Machine learning is not merely a collection of algorithms; it is an engineering discipline. Similarly, distributed systems are not just theoretical models but the real-world infrastructure that powers modern technology.
Key Features
1. Structured Progression: The book follows a carefully curated path from fundamental principles to advanced, state-of-the-art topics, ensuring a smooth learning curve for beginners while offering substantial depth for advanced learners.
2. Framework-Agnostic Concepts with Practical Implementations: Core principles are taught in a general way, but are always demonstrated using popular, industry-standard frameworks like TensorFlow, PyTorch, Horovod, and Ray.
3. Complete Capstone Project: The final chapter provides a complete, step-by-step walkthrough of a real-world DIY project, including fully-explained, working code, to consolidate learning and provide a portfolio-worthy accomplishment.
4. Focus on the "Why": The book emphasizes not just how to use a tool or technique, but why it was designed that way and what trade-offs it embodies, fostering deeper and more durable knowledge.
5. Up-to-Date Content: Includes modern topics such as training Large Language Models (LLMs), Federated Learning, and MLOps for distributed environments.
To Whom This Book Is For
This book is primarily intended for:
1. Undergraduate Students (B.Tech/B.E.): Senior-level students in Computer Science, Information Technology, AI & Machine Learning, and Data Science who have a basic understanding of machine learning and are taking a course on distributed systems, parallel computing, or advanced ML.
2. Graduate Students (M.Tech/M.S./Ph.D.): Students specializing in Machine Learning, AI, or High-Performance Computing who need a comprehensive resource for their research and coursework.
3. Machine Learning Engineers & Data Scientists: Professionals in the industry who need to scale their models and workflows from a single machine to a distributed cluster.
4. Software Engineers & System Architects: Developers and architects who are tasked with building the infrastructure and platforms to support large-scale machine learning applications.
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