Building Natural Language and LLM Pipelines : Build production-grade RAG, tool contracts, and context engineering with Haystack and LangGraph

Modern LLM applications often break in production due to brittle pipelines, loose tool definitions, and noisy context. This book shows you how to build production-ready, context-aware systems using Haystack and LangGraph. You’ll learn to design deterministic pipelines with strict tool contracts and deploy them as microservices. Through structured context engineering, you’ll orchestrate reliable agent workflows and move beyond simple prompt-based interactions.

You'll start by understanding LLM behavior—tokens, embeddings, and transformer models—and see how prompt engineering has evolved into a full context engineering discipline. Then, you'll build retrieval-augmented generation (RAG) pipelines with retrievers, rankers, and custom components using Haystack’s graph-based architecture. You’ll also create knowledge graphs, synthesize unstructured data, and evaluate system behavior using Ragas and Weights & Biases. In LangGraph, you’ll orchestrate agents with supervisor-worker patterns, typed state machines, retries, fallbacks, and safety guardrails.

By the end of the book, you’ll have the skills to design scalable, testable LLM pipelines and multi-agent systems that remain robust as the AI ecosystem evolves.

*Email sign-up and proof of purchase required

Commencez ce livre dès aujourd'hui pour 0 €

  • Accédez à tous les livres de l'app pendant la période d'essai
  • Sans engagement, annulez à tout moment
Essayer gratuitement
Plus de 52 000 personnes ont noté Nextory 5 étoiles sur l'App Store et Google Play.

D'autres ont également lu

Passer la liste
  1. Architecting AI Software Systems : Crafting robust and scalable AI systems for modern software development

    Richard D Avila, Imran Ahmad

  2. LLMs in Enterprise : Design strategies, patterns, and best practices for large language model development

    Ahmed Menshawy, Mahmoud Fahmy

  3. DataRobot : Practical Automation for Enterprise AI

    Richard Johnson

  4. Machine Learning for Algorithmic Trading : Predictive models to extract signals from market and alternative data for systematic trading strategies with Python

    Stefan Jansen

  5. Databricks Certified Data Engineer Associate Study Guide : In-Depth Guidance and Practice

    Derar Alhussein

  6. Cleaning Data for Effective Data Science : Doing the other 80% of the work with Python, R, and command-line tools

    David Mertz

  7. Building Data-Driven Applications with LlamaIndex : A practical guide to retrieval-augmented generation (RAG) to enhance LLM applications

    Andrei Gheorghiu

  8. Web Development with Django : Learn to build modern web applications with a Python-based framework

    Bharath Chandra K S, Ben Shaw, Saurabh Badhwar, Chris Guest, Andrew Bird

  9. Learn Amazon SageMaker : A guide to building, training, and deploying machine learning models for developers and data scientists

    Julien Simon

  10. Machine Learning and Generative AI for Marketing : Take your data-driven marketing strategies to the next level using Python

    Nicholas C. Burtch, Yoon Hyup Hwang

  11. A Handbook of Computational Linguistics: Artificial Intelligence in Natural Language Processing

  12. 5.0

    Databricks Certified Associate Developer for Apache Spark Using Python : The ultimate guide to getting certified in Apache Spark using practical examples with Python

    Saba Shah


Catégories associées