Weaviate for RAG Weaviate for RAG

Weaviate for RAG

Schema‑Aware Vector Search with Hybrid Queries

    • $9.99
    • $9.99

Publisher Description

"Weaviate for RAG: Schema‑Aware Vector Search with Hybrid Queries"
Built for experienced engineers, search specialists, and AI architects, this book treats retrieval-augmented generation as a systems problem rather than a prompt-engineering trick. It shows how Weaviate becomes most powerful when retrieval is designed deliberately: schema, vector spaces, lexical indexes, filters, rerankers, and generative workflows all shaping answer quality. Readers who already know the basics of embeddings and LLM applications will find a rigorous guide to building RAG that is precise, explainable, and production-ready.
Across the book, you will learn how to design collections for high-fidelity retrieval, model properties for both semantic and keyword access, and use named vectors to partition retrieval intent. The text goes deep on BM25F, filtering, metadata-aware recall, hybrid fusion, weighting strategies, reranking, and prompt context assembly. Just as importantly, it teaches how to diagnose failure modes, evaluate retrieval quality, tune multi-stage pipelines, and adapt architectures as corpus shape, query mix, and operational requirements change.
A distinguishing feature of this book is its version-aware, engineering-first perspective. It addresses practical consequences of Weaviate milestones such as hybrid fusion defaults and named-vector support, helping teams migrate safely without losing relevance quality. The result is a focused, advanced blueprint for building grounded, maintainable RAG systems that continue to perform as data models, ranking strategies, and platform capabi

GENRE
Computers & Internet
RELEASED
2026
May 12
LANGUAGE
EN
English
LENGTH
292
Pages
PUBLISHER
NobleTrex Press
SELLER
PublishDrive Inc.
SIZE
7.3
MB
Kueue for Batch and AI Jobs Kueue for Batch and AI Jobs
2026
LanceDB LanceDB
2026
Chroma in Production Chroma in Production
2026
Milvus at Scale Milvus at Scale
2026
pgvector for Postgres pgvector for Postgres
2026
Typesense Search Typesense Search
2026