Designing Agentic Search Architectures: A Systems Engineering Guide to Building Self-Correcting, Low-Latency Retrieval Pipelines for Complex Data Silos

Prijzen vanaf
23,97

Uitgelicht

VERGELIJK ALLE AANBIEDERS (3)

Beschrijving

Bol Designing Agentic Search Architectures: A Systems Engineering Guide to Building Self-Correcting, Low-Latency Retrieval Pipelines for Complex Data SilosEnterprise search breaks when real data gets messy, scattered, outdated, permissioned, and too complex for a single vector lookup to handle.Are your RAG systems missing critical context, returning weak answers, or slowing down when queries span documents, databases, APIs, and knowledge graphs? Do you need retrieval pipelines that can plan, evaluate, retry, route, and correct themselves before the final answer reaches the user?Designing Agentic Search Architectures gives engineers and AI architects a practical systems guide for building modern retrieval pipelines that go beyond passive search. This book shows how to design agentic search systems that combine state machines, query expansion, multi-agent routing, corrective RAG, heterogeneous storage, MCP-based ingestion, caching, benchmarking, and security controls into production-ready retrieval workflows.Inside, you'll learn how to build search architectures that can: - Decompose complex questions into executable retrieval plans- Route tasks across vector databases, SQL systems, graph databases, and external APIs- Use corrective RAG loops to evaluate, prune, retry, and verify retrieved context- Reduce latency and token cost with caching, streaming, and prompt compression- Secure enterprise retrieval with RBAC, auditing, tenant isolation, and controlled tool access- Test and benchmark agentic retrieval pipelines before deploymentWhat makes this book different is its systems-engineering focus. Instead of treating AI search as a simple prompt-and-vector problem, it shows how to structure retrieval as a controlled, observable, self-correcting architecture built for complex data silos.This book is for AI engineers, software engineers, data engineers, solution architects, and technical leaders building serious RAG, agentic AI, enterprise search, and retrieval infrastructure.

Vergelijk aanbieders (3)

Shop
Prijs
Verzendkosten
Totale prijs
23,97
Gratis
23,97
Naar shop
Gratis Shipping Costs
23,97
Gratis
23,97
Naar shop
Gratis Shipping Costs
24,99
2,99
27,98
Naar shop
2,99 Shipping Costs
Beschrijving (2)
Bol

Designing Agentic Search Architectures: A Systems Engineering Guide to Building Self-Correcting, Low-Latency Retrieval Pipelines for Complex Data SilosEnterprise search breaks when real data gets messy, scattered, outdated, permissioned, and too complex for a single vector lookup to handle.Are your RAG systems missing critical context, returning weak answers, or slowing down when queries span documents, databases, APIs, and knowledge graphs? Do you need retrieval pipelines that can plan, evaluate, retry, route, and correct themselves before the final answer reaches the user?Designing Agentic Search Architectures gives engineers and AI architects a practical systems guide for building modern retrieval pipelines that go beyond passive search. This book shows how to design agentic search systems that combine state machines, query expansion, multi-agent routing, corrective RAG, heterogeneous storage, MCP-based ingestion, caching, benchmarking, and security controls into production-ready retrieval workflows.Inside, you'll learn how to build search architectures that can: - Decompose complex questions into executable retrieval plans- Route tasks across vector databases, SQL systems, graph databases, and external APIs- Use corrective RAG loops to evaluate, prune, retry, and verify retrieved context- Reduce latency and token cost with caching, streaming, and prompt compression- Secure enterprise retrieval with RBAC, auditing, tenant isolation, and controlled tool access- Test and benchmark agentic retrieval pipelines before deploymentWhat makes this book different is its systems-engineering focus. Instead of treating AI search as a simple prompt-and-vector problem, it shows how to structure retrieval as a controlled, observable, self-correcting architecture built for complex data silos.This book is for AI engineers, software engineers, data engineers, solution architects, and technical leaders building serious RAG, agentic AI, enterprise search, and retrieval infrastructure.

Amazon

Pagina's: 195, Paperback, Independently published


Productspecificaties

Merk Independently Published
EAN
  • 9798197778048
Maat

Prijzen voor het laatst bijgewerkt op:

Uitgelichte Keuze
23,97
Naar shop