RAG Application using @LangChain @OpenAI and FAISS #llm #rag #python #langchain #vectordata

preview_player
Показать описание
I built a powerful Retrieval-Augmented Generation (RAG) pipeline using Langchain OpenAI API and FAISS database.

In this video, you'll learn:

What is RAG and why is it powerful? Understand the core concepts behind RAG and how it leverages retrieval and generation techniques.

Setting up the toolbox: Discover the essential Python libraries you'll need to build your RAG pipeline.

Building the retrieval component: Learn how to embed and store your documents, and perform similarity search using cosine similarity.

Crafting the prompt builder: Explore strategies for constructing informative prompts that guide the large language model (LLM).

Integrating the LLM: Learn how to connect your RAG pipeline with an LLM of your choice, like OpenAI API or Llama2.

Putting it all together: Witness the magic unfold as we combine these components into a seamless RAG pipeline.

Testing and exploring: Experiment with different prompts and observe how they influence the generated text.

By the end of this video, you'll be equipped with the knowledge and skills to build your own RAG pipeline and unlock its potential for various NLP applications, from question answering to creative text generation.

Click to subscribe & join the AI adventure!

#rag #GoogleGemini #embedding #cosinefunction #Python #AI #MachineLearning #textgeneration #gemini #langchain #llamaindex #vector #pinecone #chromadb #langchain #faiss #vectordada #gpt #ragsystem

Connect with me on Social Media-
Рекомендации по теме
Комментарии
Автор

This videos on RAG Applications is much helpful!👌👌👌👌👌👌

onlysatyamvishwakarma
Автор

Must say that this series on RAG is one of the most comprehensive resources I have come across. Looking forward to future sessoins esp. RAG vs finetuning and RAG Evaluation. 👏

mansoorbaig
Автор

Super sunny sir please keep continuing this series
Don't stop

darshanrokkad
Автор

Great content here keep it up. How would I persist the Vectorstore to disk and load it later for use?

kgotsocomfort
Автор

Hi Sunny,

I’m I able to meet you and talk to you about my research using RAG.

henrymakinde
Автор

Why don't you show the demo using llama2, 3 or any other powerful open source model sir. Please use open source models.

ayushmishra
Автор

Thanks for sharing it, could you please share with groq api

SantK
Автор

Can you please also make video for data engineering like Kafka Hadoop

ARkhan-xwud
Автор

23:14 I am new to Azure. Can you please suggest where we can store our PDF file data in Azure and then perform data ingestion steps?

Momentum_Option_Buyer