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 2.99 SPS 3.99 Kuriér GLS 3.49 SPS Parcel Shop 2.99 Packeta kurýr 3.99 Pošta 3.99 Zberné miesto DPD 2.99 Zberné miesto DPD 0.00 Packeta 2.99

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

The Knowledge Engine

Building RAG Systems: Retrieval-Augmented Generation with Python and Vector Databases

Jazyk AngličtinaAngličtina
Kniha Brožovaná
Kniha The Knowledge Engine RICHARD BOOZMAN
Libristo kód: 52270821
Nakladateľstvo Independently published, máj 2026
LLMs are powerful.But without the right data, they are limited.Retrieval Augmented Generation, RAG,... Celý popis
? points 55 b Nové Nové
22.65
Skladom u dodávateľa Odosielame za 9-15 dní

30 dní na vrátenie tovaru

LLMs are powerful.
But without the right data, they are limited.

Retrieval Augmented Generation, RAG, transforms AI systems by combining language models with external knowledge sources, enabling accurate, context aware, and up to date responses.

"The Knowledge Engine" is a practical, hands on guide to building RAG systems using Python and modern vector database technologies.

This book shows you how to design intelligent systems that retrieve, reason, and generate with precision.


Why RAG is essential for modern AI

Standalone models struggle with:

  • outdated knowledge
  • hallucinations
  • lack of domain specific context
  • limited accuracy in complex queries

RAG solves these problems by integrating retrieval systems with generation models.

With RAG, you can:

  • connect AI to real data sources
  • improve accuracy and relevance
  • reduce hallucinations
  • build domain specific AI systems
  • create scalable knowledge driven applications

What you will learn
  • fundamentals of retrieval augmented generation
  • how vector databases work
  • embeddings and similarity search
  • building retrieval pipelines
  • integrating LLMs with external data
  • chunking and indexing strategies
  • optimizing retrieval performance
  • evaluation and improvement of RAG systems
  • scaling and deploying RAG applications
  • monitoring and maintaining knowledge systems

From documents to intelligent systems

Throughout the book, you will learn how to:

  • convert raw data into searchable embeddings
  • design efficient retrieval systems
  • connect retrieval pipelines with generation models
  • build reliable AI applications
  • optimize performance and cost
  • deploy scalable RAG systems

Each chapter is focused on practical implementation.


Practical applications
  • enterprise knowledge assistants
  • document search and analysis systems
  • customer support automation
  • internal company knowledge bases
  • AI powered research tools

These examples reflect real world use cases.


Who this book is for
  • AI engineers
  • machine learning engineers
  • data scientists
  • backend developers working with AI
  • professionals building knowledge systems

If you want to build AI systems that are accurate, context aware, and connected to real data, this book provides the roadmap.

Retrieve with precision.
Generate with intelligence.
Build knowledge driven AI systems.

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

Informácie o knihe

Celý názov The Knowledge Engine
Jazyk Angličtina
Väzba Kniha - Brožovaná
Dátum vydania 2026
Počet strán 316
EAN 9798258793430
Libristo kód 52270821
Nakladateľstvo Independently published
Váha 426
Rozmery 152 x 229 x 17
Darujte túto knihu ešte dnes
Je to jednoduché
1 Pridajte knihu do košíka a vyberte možnosť doručiť ako darček 2 Obratom Vám zašleme poukaz 3 Knihu zašleme na adresu obdarovaného

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