L-7 RAG (Retrieval Augmented Generation)

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In this video, we dive into the fascinating world of RAG, or Retrieval-Augmented Generation.

We'll explore what RAG is, why it’s an essential tool in the realm of artificial intelligence, and how it functions. Starting with the theory behind RAG, we'll break down its components and explain its significance in enhancing the capabilities of generative models. Then, we'll move on to a practical demonstration, showing you how to implement RAG in real-world scenarios. Whether you're a beginner looking to understand the basics or an enthusiast seeking to deepen your knowledge, this video provides a comprehensive overview of Retrieval-Augmented Generation and its applications.
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I'm searching a good content about RAG for a long time, its very useful to understand about RAG process.

hariharavalliappan
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Very easy and perfect way to explain, thanks mam.

Please come up with fine tuning, deployment on cloud, how to test llm model's performance kind of videos.

Your way of explanation is very simple and effective.

sagarbhamburkar
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Thank you for a detailed and easy-to-understand tutorial.
I have a request, please create a tutorial to implement RAG on any LLM and on any document, such as text files and databases. I'll surely do research from my side, but a help from mentor speeds up the learning process.

muhammadmujtaba-ai
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thank you for the video . I like your consistency in moving with GenAI and LLM videos . Lots of love and Success Ahead . Can we make any video where input is image and do the RAG. waiting for it.

neuralnetworkpro
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mam please upload few real case oriented LLM projects.

DevShahin-zmni
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Super and easy videos to follow. Keep the good work going.

AkulSamartha
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Do I need to pay openai to use their api?.

amalkuttu
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i had an interview,

using openai, i have created a chat bot similar like chatgpt,
im able to exactly answer the input question from the document(data)

during streamlit, im able to create preview the chatbot, during the each input question the output is not generated fastly, in top right corner their is a option "Running" is previewed then only after 15sec its able to give the answer.

because of this, im not able to explain the answer and i lost the job

p.logesharavind
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Can you please make a vide on how to add chat history for this RAG

AkulSamartha
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I followed your steps in installation of pytorch and torch vision and open cv yolo v5 etc..success fully I installed opencv2 with cuda support and installed successfully pytorch and torch vision etc but in installation of yolo v5 I got struck at ultralytics then I got know python 3.6 is not compatible with installation of ultralytics. Now I again flashed os into board and I created new virtual environment with python 3.8 now pytorch is not getting installed as my jetpack SDK is 4.5 and I cannot upgrade to 5 as hardware is not supported, but in many articles it is said that ultralytics is important how do I handle this situation 😅

floatonArt
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ma'am plz make the conversational chatbot having previous context too

Rits-lr
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Hi Aarohi,
Can you create a video on RAG Implementation on ODA Chatbot where the bot need to interact with the Oracle ADW

karthiknangunuri
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Really its good explanation so thanks mam and it is very helpful to students

chinnaiahkotadi
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Hi Ma’am, your videos are really helpful. Thank you so much for sharing these contents. Through your videos I quickly get to know the new technology coming in the market. But if possible can you hide the api key and in general any keys you use in your videos?

anirbansarkar
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is is RAG just like search key word and provide output ?

shantilalzanwar
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Arohi mam, your tutorials are really helpful for me as you explain each and every function, line of code and concept, you are doing great great job

saaduddinshaikh
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Wow Nice training you made our life easy. Please do post tutorials regularly

dgbits
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Can you please explain about the LLM hyper parameters and how it is helpful to get good results

manikd
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Clear and to the point . Really like your style of teaching. Learnt quite a bit here. Thank you!!

gkhan
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Really good explanation. Thanks Aarohi!

aminelongo