LIBRISTO
LIBROAMANTO
povinné
Staňte sa súčasťou komunity milovníkov kníh z celého sveta a získajte hromadu výhod. Založiť účet zdarma
0
Doprava zadarmo s Packetou nad 59.99 €
Kuriér DPD 2.99 Zberné miesto GLS 2.49 SPS 3.99 SPS Parcel Shop 2.99 Packeta kurýr 3.99 Pošta 3.99 Zberné miesto DPD 2.99 Kuriér GLS 3.99 Packeta 2.99

Doprava zdarma pre objednávky nad 59,99 € s Packetou a SPS Boxmi.

Domain-Specific Small Language Models

Efficient AI for local deployment

Jazyk AngličtinaAngličtina
E-kniha Adobe ePub DRM
Nakladateľstvo Manning, jún 2026
Get the eBook free when you register your print book at Manning.When you need a language model to re... Celý popis
? points 112 b Nové Nové
46.27
Skladom Ihneď na stiahnutie

Get the eBook free when you register your print book at Manning.When you need a language model to respond accurately and quickly about a specific field of knowledge, the sprawling capacity of a LLM may hurt more than it helps. This book teaches you to build generative AI models optimized for specific fields. Perfect for cost- or hardware-constrained environments, Small Language Models (SLMs) train on domain specific data for high-quality results in specific tasks. In this book youll develop SLMs that can generate everything from Python code to protein structures and antibody sequencesall on commodity hardware. In Domain-Specific Small Language Models youll discover: Model sizing best practices Open source libraries, frameworks, utilities and runtimes Fine-tuning techniques for custom datasets Hugging Faces libraries for SLMs Running SLMs on commodity hardware Model optimization or quantization Foreword by Matthew R. Versaggi. About the technology Small-footprint language models trained on custom data sets and hosted locally can perform as well as large generalist models in speed and accuracy, often at a fraction of the cost. Domain-Specific Small Language Models shows you how to build privacy-preserving and regulation-compliant SLMs for agentic systems, specialist applications, and deployment on the edge. About the book This is a practical book that shows you how to adapt pretrained open source models to your domain using transfer learning and parameter-efficient fine-tuning. Youll learn to minimize cost through optimization and quantization, develop secure APIs to serve your models, and deploy SLMs on commodity hardwareincluding small devices. The hands-on examples include integrating SLMs into RAG systems and agentic workflows. What's inside ONNX and other quantization methods Integrate SLMs into end-to-end applications Deploy SLMs on laptops, smartphones, and other devices About the reader For AI engineers familiar with Python. About the author Guglielmo Iozzia is a Director of AI and Applied Mathematics at Merck & Co. and a Distinguished Member of the American Society for Artificial Intelligence. He specializes in AI biomedical applications. The technical editor on this book was Riccardo Mattivi. Table of Contents Part 1 1 Small language models Part 2 2 Tuning for a specific domain 3 End-to-end transformer fine-tuning 4 Running inference 5 Exploring ONNX 6 Quantizing for your production environment Part 3 7 Generating Python code 8 Generating protein structures Part 4 9 Advanced quantization techniques 10 Profiling insights 11 Deployment and serving 12 Running on your laptop 13 Creating end-to-end LLM applications 14 Advanced components for LLM applications 15 Test-time compute and small language models

Herečka & Polyglotka
EWA KASP pre
Prehrať video
Ewa Kasp
Libristo má najväčší výber cudzojazyčnej literatúry. Preto si knihy kupujem tu.

Prihlásenie

Prihláste sa k svojmu účtu. Ešte nemáte Libristo účet? Vytvorte si ho teraz!

 
povinné
povinné

Nemáte účet? Získajte výhody Libristo účtu!

Vďaka Libristo účtu budete mať všetko pod kontrolou.

Vytvoriť Libristo účet
Knižný radca Libroamiko
Ahoj, som Libroamiko, môžem pomôcť?