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Open Source LLMs: Systems Architecture, Efficient Fine-Tuning, and High-Performance Scaling at Enterprise Scale

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Management number 233423632 Release Date 2026/06/27 List Price US$90.00 Model Number 233423632
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Open Source LLMs is a production-focused engineering manual for developers, ML engineers, platform teams, and technical leaders who want to design, fine-tune, deploy, scale, secure, and optimize open source large language models in real enterprise environments.This is not a beginner’s guide.This is not a prompt engineering book.This is not a collection of tutorials.This book shows you how to build and operate an enterprise-grade LLM platform.What This Book TeachesYou will learn how to:Architect open source LLM systems for real production workloadsModel GPU memory usage, KV cache growth, and token throughputOptimize latency (TTFB, p95, p99) and eliminate tail bottlenecksDeploy high-performance inference engines at scaleImplement dynamic batching and multi-GPU parallelismFine-tune efficiently using LoRA, QLoRA, PEFT, and alignment strategiesModel cost per token and forecast GPU-hour consumptionDesign RAG systems that scale without exploding context costSecure LLM platforms against prompt injection and data leakageImplement multi-tenant isolation and SLA enforcementBuild observability pipelines for token-level telemetryMigrate from closed APIs to fully controlled open infrastructureDeploy in hybrid cloud and regulated on-prem environmentsBuilt Around a Real Enterprise PlatformUnlike fragmented AI books, this guide evolves one cohesive system throughout:Each chapter upgrades it:From model internals to distributed scalingFrom fine-tuning to production hardeningFrom inference optimization to governance and complianceFrom cost modeling to executive communication frameworksYou won’t just learn theory.You will design a real production blueprint.Deep Engineering FocusThis book goes beyond surface-level explanations.It includes:GPU memory math for 7B to 70B modelsKV cache scaling lawsTokens-per-second modelingCost-per-million-token forecastingFailure case studies from real production patternsPerformance regression methodologiesHardware accelerator considerationsHybrid cloud architecture designIf you are building AI systems that must handle:Thousands of concurrent usersStrict compliance requirementsMulti-region deploymentsEnterprise security standardsThis book was written for you.Who This Book Is ForML Engineers deploying open modelsPlatform Engineers building internal AI platformsDevOps and MLOps p Read more

ASIN B0GQJHKL1C
XRay Not Enabled
Language English
File size 705 KB
Page Flip Enabled
Word Wise Not Enabled
Print length 325 pages
Accessibility Learn more
Screen Reader Supported
Publication date February 27, 2026
Enhanced typesetting Enabled

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