What's new
Warez.Ge

This is a sample guest message. Register a free account today to become a member! Once signed in, you'll be able to participate on this site by adding your own topics and posts, as well as connect with other members through your own private inbox!

LangGraph for Multi-Step Reasoning Build Advanced AI Reasoning Pipelines

voska89

Moderator
Staff member
Top Poster Of Month
47442ad9e30c4e877301dc34bafa2bc7.webp

Free Download LangGraph for Multi-Step Reasoning: Build Advanced AI Reasoning Pipelines
English | November 28, 2025 | ASIN: B0G4C9K7GT | 403 pages | Epub | 404.37 KB
Build AI systems that think in graphs, not brittle chains-ship faster, slash token costs, and keep your auditors smiling.​

Book Summary
LangGraph for Multi-Step Reasoning is the hands-on field guide for developers and data leaders who need production-grade language-model workflows. Starting with a single "Hello-Graph," you'll learn how to decompose complex prompts into nodes, edges, and state buckets that can branch, loop, and self-critique-without drowning in glue code.
The book moves from fundamentals to real deployments: a FAQ assistant, a sentiment-triage bot, a planner-executor architecture, and a multi-agent research writer. Each chapter layers in observability, compliance, and cost-management so your prototype doesn't explode at 2 a.m. You'll wire Prometheus metrics, integrate circuit breakers, add PII scrubbing, and generate token-cost dashboards-all inside LangGraph's declarative framework.
Whether you're migrating fragile LangChain chains or starting fresh, these recipes demonstrate how to delegate tasks to specialised agents, evaluate their work with LLM critics, and merge results into polished, stakeholder-ready deliverables. The tone is conversational, the code is copy-paste-ready, and every pattern has been battle-tested on real SaaS workloads.
What's Inside
Graph-Driven Reasoning: Design conditional branches, parallel fan-outs, and iterative loops that outperform linear chains in speed, accuracy, and cost.
State Management Demystified: Persist context, cache intermediate results, and recover gracefully from failures without spaghetti globals.
Observability at Token Level: Instrument spans, export Prometheus metrics, and build Grafana dashboards that show latency, spend, and success ratios in real time.
Security & Compliance Built-In: PII detection, cost guards, rate limits, and immutable audit trails meet enterprise policies from day one.
Deployment Recipes: FastAPI micro-service, serverless Lambda, and Docker + CI/CD pipelines-complete with blue-green rollouts.
Stop juggling prompts and start crafting resilient reasoning pipelines-grab your copy of LangGraph for Multi-Step Reasoning today and turn large-language models into reliable, cost-effective software components.


Recommend Download Link Hight Speed | Please Say Thanks Keep Topic Live

Rapidgator
gtylc.7z.html
DDownload
gtylc.7z
AlfaFile
gtylc.7z

Links are Interchangeable - Single Extraction
 

Users who are viewing this thread

Back
Top