NULLED.org » Tutorials » Advanced LangChain Techniques: Mastering RAG Applications

Advanced LangChain Techniques: Mastering RAG Applications

Posted by: AD-TEAM on 31-08-2024, 03:45
See Orignal Post @ Nulled.Org



Advanced LangChain Techniques: Mastering RAG Applications
Advanced LangChain Techniques: Mastering RAG Applications
.MP4, AVC, 1280x720, 30 fps | English, AAC, 2 Ch | 3h 29m | 1.98 GB
Instructor: Markus Lang


Elevate Your RAG Applications to the Next Level

What you'll learn

  • Learn LangChain Expression Language (LCEL)
  • Master advanced RAG techniques using the LangChain framework
  • Evaluate RAG pipelines using the RAGAS framework
  • Apply NeMo Guardrails for safe and reliable AI interactions


Requirements

  • LangChain Basics
  • Intermediate Python Skills (OOP, Datatypes, Functions, modules etc.)
  • Basic Terminal and Docker knowledge


Description

What to Expect from This Course


Welcome to our course on Advanced Retrieval-Augmented Generation (RAG) with the LangChain Framework!

In this course, we dive into advanced techniques for Retrieval-Augmented Generation, leveraging the powerful LangChain framework to enhance your AI-powered language tasks. LangChain is an open-source tool that connects large language models (LLMs) with other components, making it an essential resource for developers and data scientists working with AI.

Course Highlights

Focus on RAG Techniques: This course provides a deep understanding of Retrieval-Augmented Generation, guiding you through the intricacies of the LangChain framework. We cover a range of topics from basic concepts to advanced implementations, ensuring you gain comprehensive knowledge.

Comprehensive Content: The course is designed for developers, software engineers, and data scientists with some experience in the world of LLMs and LangChain. Throughout the course, you'll explore:

  • LCEL Deepdive and Runnables
  • Chat with History
  • Indexing API
  • RAG Evaluation Tools
  • Advanced Chunking Techniques
  • Other Embedding Models
  • Query Formulation and Retrieval
  • Cross-Encoder Reranking
  • Routing
  • Agents
  • Tool Calling
  • NeMo Guardrails
  • Langfuse Integration


Additional Resources

  • Helper Scripts: Scripts for data ingestion, inspection, and cleanup to streamline your workflow.
  • Full-Stack App and Docker: A comprehensive chatbot application with a React frontend and FastAPI backend, complete with Docker support for easy setup and deployment.
  • Additional resources are available to support your learning.


Happy Learning! :-)

Who this course is for:

Software Engineers and Data Scientists with Experience in Langchain who want to bring RAG applications to the next level

More Info









We need your support!
Make a donation to help us stay online
        
Bitcoin (BTC)
bc1q08g9d22cxkawsjlf8etuek2pc9n2a3hs4cdrld
	
Bitcoin Cash (BCH)
qqvwexzhvgauxq2apgc4j0ewvcak6hh6lsnzmvtkem

Ethereum (ETH)
0xb55513D2c91A6e3c497621644ec99e206CDaf239

Litecoin (LTC)
ltc1qt6g2trfv9tjs4qj68sqc4uf0ukvc9jpnsyt59u

USDT (ERC20)
0xb55513D2c91A6e3c497621644ec99e206CDaf239

USDT (TRC20)
TYdPNrz7v1P9riWBWZ317oBgJueheGjATm

Dear visitor, you enter the site as unregistered member.
We recommend you to register or log in.
Information
Users of Guest are not allowed to comment this publication.