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  • Book Overview & Buying Building Natural Language and LLM Pipelines
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Building Natural Language and LLM Pipelines

Building Natural Language and LLM Pipelines

By : Laura Funderburk
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Building Natural Language and LLM Pipelines

Building Natural Language and LLM Pipelines

By: Laura Funderburk

Overview of this book

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
Table of Contents (18 chapters)
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1
Part 1: The Foundation of Reliable AI
4
Part 2: Building The Tool Layer with Haystack
9
Part 3: Deployment and Agentic Orchestration
12
Part 4: The Future of Agentic AI
16
Other Books You May Enjoy
17
Index

1

Introduction to Natural Language Processing Pipelines

In classic data science, designing and implementing data pipelines is crucial for ensuring that businesses and the public can obtain reliable insights into data. Data pipelinesidx_67780b5e allow us to extract information systematically and then process it for further consumption. With the adventidx_7919dcc0 of natural language processing (NLP) and the emergence of large language models (LLMs), we can now process heaps of unstructured data, such as idx_45694e7btext, audio, and images.

This paradigm shift has unlocked remarkable capabilities, but as we enter 2026, the industry is at a critical inflection point. The era of pure experimentation with LLMs and agents is over. Enterprises and users are no longer asking, “Can AI do this?” but rather, “Can this AI be trusted?” As organizations move to scale AI agents from siloed pilots to enterprise-wide workflows, the focus has drastically shifted from raw performance...

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Building Natural Language and LLM Pipelines
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