Language: English + subtitle | Duration: 10h 42m | Size: 2.25 GB By Roberto Infante - Published 3/2026
Build intelligent LLM-powered applications with agentic workflows and tool-based agents.
AI Agents Video Course
AI-powered applications are rapidly becoming the new normal. Personal productivity assistants, coding agents, smarter search, and automated reporting tools are popping up everywhere. The LangChain ecosystem, and standards like MCP are driving this new gold rush. This book helps you claim your spot.
In this course, you’ll discover:
- Prompt and context engineering for accurate, hallucination-resistant systems
- Advanced RAG for summarization, semantic search, and reliable Q&A
- Structured, multi-step agentic workflows with LangGraph
- Tool-based agents that adapt in real time
- Multi-agent systems for complex, real-world tasks
- MCP integration to expose, compose, and consume plug-and-play tools
AI Agents and Applications is your hands-on guide to creating real, production-ready language model solutions. With LangChain and LangGraph, you’ll orchestrate powerful agentic workflows and build dynamic tool-based agents that can search, summarize, reason, and act. You’ll move from essential prompt engineering to advanced Retrieval Augmented Generation (RAG), and finally to deploying multi-agent systems using modern integration standards like the Model Context Protocol (MCP).
About the Technology
This book teaches you to design reliable LLM-powered systems by focusing on the concepts, architectures, and design patterns that will stay stable even as models and APIs change. You’ll learn to structure prompts, compose modular chains, and build RAG pipelines that ingest documents, split them into chunks, embed them, retrieve the right context, and ground answers to elliminate (or vastly reduce) hallucinations.
About the Course Content
Along the way you’ll build concrete applications—summarization and Q&A engines, context-aware chatbots with memory, and tool-using AI agents that orchestrate multi-step workflows with branching logic. For the examples, the book uses Python, LangChain, LangGraph, and LangSmith, but you’ll be able to generalize to other frameworks. You’ll understand with clarity and confidence how to keep integrations maintainable, manage context limits and cost/latency tradeoffs, and evaluate, debug, and monitor behavior so your systems work in production.
About the Author
Roberto Infante is an AI innovator with deep FinTech experience, working for a London-based hedge fund. He specializes in building agentic systems for both plain vanilla and exotic quantitative analysis.
"The playbook for building AI systems that actually work at scale." - Muntazir Abidi, Auquan "The book explains the topic really well. It's clear and does not go into irrelevant details. I really enjoyed it." - Piotr Jastrzebski "A perfect bridge between AI theory and real-world implementation." - Abdullah Al Imran, Aon PLC
Download Links:
MEGA
- Part 1 (Mega.nz)(https://mega.nz/file/FY1WwAJR#ELFeFHVl4eEOYsXAK3ny7IJXfxYk-L8kudm4OFIRqFA)
- Part 2 (Mega.nz)(https://mega.nz/file/lRFhjYrb#0lvtrgC1woJGAtZgT1nlwH_tSewczAsYzHg28pGba3M)
- Part 3 (Mega.nz)(https://mega.nz/file/FdkVkZrK#MVpOddyCjRZDQd35I5sn0eGMomXV8QI23li1L1cIMuE)
MEDIAFIRE
O čemu se radi?
Ova objava pripada kategoriji Tutorijali i pokriva sve ključne aspekte teme. Svaka sekcija je pažljivo pripremljena kako bi vam pružila jasne informacije i korisne savete.
Pratite o0o0o0o blog za redovna ažuriranja, tutorijale i najnovije vesti iz sveta IT tehnologije. Naš tim je posvećen pružanju tačnih i korisnih informacija na srpskom jeziku.
Zaključak
Nadam se da vam je ovaj članak bio od pomoći. Slobodno ostavite komentar ili podelite ovaj sadržaj sa prijateljima koji bi mogli imati koristi od ovih informacija.
Za više sličnih sadržaja, posetiteTutorijalikategoriju.