Intro to RAG for AI (Retrieval Augmented Generation)

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Matthew Berman

Matthew Berman

12 күн бұрын

This is an intro video to retrieval-augmented generation (RAG). RAG is great for giving AI long-term memory and external knowledge, reducing costs, and much more.
Be sure to check out Pinecone for all your Vector DB needs: www.pinecone.io/
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Пікірлер: 414
@matthew_berman
@matthew_berman 10 күн бұрын
What's your favorite use case for RAG?
@HanzDavid96
@HanzDavid96 10 күн бұрын
Giving the LLM/Agents a mind for long term planning and remembering stuff associatively. The memory is the half agi within the generative multiagentic system where the LLM is the context processor.
@FunwithBlender
@FunwithBlender 10 күн бұрын
I specialize in Retrieval-Augmented Generation (RAG). Your introduction is good, but it lacks technical depth. You glossed over chunking and how to use it correctly based on the data. Pinecone is good, but it's not necessarily better than vector databases built in Rust or Go, like Qdrant and Weaviate (which are free and open source). It's also important to explain in-memory vector database solutions using tools like FAISS or on-disk solutions like Qdrant and Pinecone, and to discuss the pros and cons of each. A significant omission is not addressing implicit behavior or implicit data versus explicit data, and their relationship with graph databases. Rerankers might be too advanced a concept; often, you can achieve better results by optimizing chunking, similar to how tokenization is used for semantic understanding. Often, agents are unnecessary, and having a chain-of-thought agent before sending to the LLM can be a waste. Additionally, discussing the similarities between the internals of a transformer and a vector database is intriguing. Overall, the video feels like a Pinecone sponsorship. Regarding fine-tuning, it's about improving the understanding or behavior of an LLM in a specific domain at the cost of losing understanding in other areas. You should only fine-tune if the model does not seem to understand. Use RAG when the model lacks knowledge or when you want to reduce hallucinations, but relying solely on vector databases is a missed opportunity. One micro aspect you did not touch on is tokenization. The two biggest things people often overlook are chunking and tokenization, and there are massive gains to be made when these are properly understood.
@Spudster3
@Spudster3 10 күн бұрын
Using my local scanned (searchable) PDF documents in RAG.
@FunwithBlender
@FunwithBlender 10 күн бұрын
one good use is ecommerce products for conversational shopping...creating new experiences...built a few prototypes of this as mvps for pitches...its a night and day experience
@dakotaep1
@dakotaep1 10 күн бұрын
@@FunwithBlender Great comment! What is your go to open source RAG pipeline? I am beginning to learn and discover all these tools. It is pretty amazing.
@ICProfessional
@ICProfessional 10 күн бұрын
Would be great a full tutorial on RAG
@paelnever
@paelnever 10 күн бұрын
Yeah, and would be great one with open source tools, not an advertorial for a closed source company.
@flying-higher
@flying-higher 10 күн бұрын
@@paelnever GPT4All has a new vector tech I'm playing with.
@ripstar2
@ripstar2 10 күн бұрын
I would love to see this. I do process automatisation with a combination of KIs and zapier for companies. RAG opens up a ton of new opportunities for my clients.
@gligoran
@gligoran 9 күн бұрын
I would love a full RAG tutorial as well, but maybe first without Pinecone. The missing piece for me is how to embed large documents. Do you have to split them into sections or how does that work?
@expchrist
@expchrist 9 күн бұрын
Please do a tutorial on rag using pine cone!
@dombayo
@dombayo 10 күн бұрын
A vector database tutorial would be great! Excellent content.
@gabrielsandstedt
@gabrielsandstedt 10 күн бұрын
You can ask Claude 3.5 create a locally run vector database. It will manage it in a day and you will avoid having to pay for another clouded service. I did it and it worked.
@fabrizio-6172
@fabrizio-6172 6 күн бұрын
Great ​@@gabrielsandstedt
@positivevibe142
@positivevibe142 10 күн бұрын
That's great! PLeaaaaaaaaaaaaaaaaaase, build a LOCAL PRIVATE version that uses open source models, not API or any cloud thing!
@JustinsOffGridAdventures
@JustinsOffGridAdventures 10 күн бұрын
Look a Matt's older videos. He shows you how to use local model like LLama 3 as well as using RAG tools without the use of an API key. Before I got here in the wilderness I had set myself set up with a pretty good AI testing laboratory. I had to switch gears from building race cars and AI testing platforms to chopping down trees.
@lucidzfl
@lucidzfl 10 күн бұрын
we run weaviate - its phenomenal local.
@positivevibe142
@positivevibe142 10 күн бұрын
@@JustinsOffGridAdventures Wilderness, chopping out trees, nature, greens, fresh air, away from technology.... 🤔!!!!! Sounds like you did the right thing to me and truly living this life! Normally people spend their entire life on jobs waiting to retire then move out to enjoy their lives, while took the shortcut. Good for you Justin.
@positivevibe142
@positivevibe142 10 күн бұрын
@@lucidzfl I've tried many available options, but not this one! I'll give it a try. Thanks. If you don't mind me asking, I had some problems with the other options I used like: inaccurate information retrieval, frequent "no info found" messages, significantly smaller answer sizes compared to my input text, and difficulty handling large files (around 40K words each). Should I expect better results from Weaviate compared to the other options I've tried?
@lucidzfl
@lucidzfl 10 күн бұрын
@@positivevibe142 so i do a boatload of rag and there are many ways to do it. When it comes to weaviate i leave the blobs fairly short (
@Dant110
@Dant110 10 күн бұрын
I would like a deeper dive into RAG and an end to end pinecone tutorial! Thanks for the great video!
@gabrielsandstedt
@gabrielsandstedt 10 күн бұрын
You could use pinecone but Claude 3.5 can build you a custom vector search algorithm that will work and you can store locally using sqlite
@ErickJohnson-qx8tb
@ErickJohnson-qx8tb 10 күн бұрын
YESSS DO ITT PLEASE 🙏
@forifand
@forifand 10 күн бұрын
A full tutorial would be great - thanks so much 👍
@JustinsOffGridAdventures
@JustinsOffGridAdventures 10 күн бұрын
Great video! I've bee following you for awhile and have set up some edge LLM's using your tutorials. RAG is the future for any business wanting to truly utilize their data. to the fullest. I think that a lot of companies aren't even sure how they can implement their data for the greater good of the business while saving money at the same time. Videos like this help clarify the subject. Please do a video on Pinecone. I'm sure there is a lot of us that would like to see it's capabilities. Keep up the great work.
@JulioCesarjcfalcone
@JulioCesarjcfalcone 10 күн бұрын
I would love to see a tutorial on how to use RAG! I was just thinking on how to solve some of this knowledge problem on a small project I'm working on
@ytrew9717
@ytrew9717 10 күн бұрын
Very well explained : short and clear with good examples, thanks!
@nareshtaneja7038
@nareshtaneja7038 10 күн бұрын
Thanks you for making this Video. I am a Non Techie trying to get easy to understand method of querying my documents using RAG with open source LLMs. Would eagerly await your full tutorial on this topic .
@mcarrusa
@mcarrusa 10 күн бұрын
PLEASE do the how-to on setting this up. It is a key piece to the puzzle, for sure. Thank you for all the great content!
@everquetdesign
@everquetdesign 9 күн бұрын
I would also like more tutorials on RAG and techniques to improve chatbots. Thanks Matthew for this content. I like your posts on news but tutorials are also useful and appreciated given your ability to communicate such concepts.
@bitcloud2304
@bitcloud2304 4 күн бұрын
Just discovered this channel and it quickly leapfrogged others as one of my favorite AI channels. I'm a Data Scientist starting to work in the LLM arena and these videos are super helpful. I'd love a full tutorial on RAG!
@User-actSpacing
@User-actSpacing 10 күн бұрын
What a great commercial
@dcmumby
@dcmumby 10 күн бұрын
RAG requires a knowledge graph DB as well in order to find information not directly mentioned which is a limitation of RAG, a tutorial incorporating both would be amazing
@afonsolfm
@afonsolfm 7 күн бұрын
Great videos man! Listening them every day now.
@AbdulMajeed-lf5sq
@AbdulMajeed-lf5sq 10 күн бұрын
This is one of the best videos I watched from you as a junior AI engineer 👌🏼 BEAUTIFUL
@shuntera
@shuntera 10 күн бұрын
Be interested to see best practices for keeping the RAG database up to date. For example if a new PDF is dropped into a watched folder the PDF gets submitted to the embedding model automatically. Likewise for PDFs that are out of date and removed which should them be dropped from the vector database.
@antaishizuku
@antaishizuku 10 күн бұрын
You could add a useage count, entered date, last accessed date, etc and have a background thread check for old info. Like say 2-3 years unless its something your llm wouldn't know
@jack.splash2334
@jack.splash2334 10 күн бұрын
A tutorial would be amazing! It’s exactly what I need for something I wanted to experiment with
@BrankoPetrovic-f2z
@BrankoPetrovic-f2z 10 күн бұрын
I've heard about RAG before, but this video helped me understand it much better. Thank you for sharing your knowledge! I would greatly appreciate it if you could make another video demonstrating how to use it with a real-life example
@dennis383838
@dennis383838 10 күн бұрын
Rag tutorial please, especially use case of local open source llm. Thanks!
@dennis383838
@dennis383838 10 күн бұрын
With long term memory implementation, as well. All open source, please.
@youdaloser1
@youdaloser1 2 күн бұрын
100% on board with seeing a full tutorial. Also highly interested in seeing a fully open-sourced setup.
@paultoensing3126
@paultoensing3126 8 күн бұрын
Yes! Please set up a full tutorial for us. This is powerful. I have a Custom GPT business and I’ve always known I need to incorporate RAG in the most pragmatic way possible to advance my capabilities. So it sounds like Pinecone is the way to go. Thanks so much for your help.
@bobwarfieldoz
@bobwarfieldoz 8 күн бұрын
Yes please, more information about Pinecone and RAG! Great content, thanks!
@sahilverma9330
@sahilverma9330 10 күн бұрын
Finally an explanation without using complex terminologies. Thank you Matthew. Lets do one with RAG + Agents
@youcandosomethingaboutit
@youcandosomethingaboutit 10 күн бұрын
00:02 An intro to RAG and its misunderstood nature 01:51 RAG is efficient for continually providing new knowledge to large language models 03:42 RAG enables adding external knowledge to AI models 05:29 RAG allows AI to access and incorporate new information into its responses. 07:25 Utilizing embedding models to enhance AI understanding 09:12 RAG enhances AI by providing external knowledge sources 11:10 Utilizing external knowledge for AI searches 12:57 RAG simplifies retrieval augmented generation process
@middleman-theory
@middleman-theory 8 күн бұрын
Yes, we need a full tutorial please. This is great knowledge and a very simple to understand video! I actually have a pinecone account, and started using it when I first started playing around with Auto-GPT, but I haven't used it since. I'm interested in developing some new projects soon, and RAG sounds like something I need to be thinking about.
@lydiayuna9155
@lydiayuna9155 8 күн бұрын
This is by far the best AI educational video!! Please share more RAG solution , this will be very very useful for your audience !!
@dieyoung
@dieyoung 9 күн бұрын
This is exactly what I've been looking for! Thanks so much for this
@studiophantomanimation
@studiophantomanimation 10 күн бұрын
Claude's new Projects feature is like a simple RAG. I've given it all the knowledge about a novel I'm working on and it has been surprisingly good at understanding all the nuances. Way better than a normal conversation.
@davidlavin4774
@davidlavin4774 10 күн бұрын
Slight pet peeve of mine - I think presenting it this way makes it sound like you must use an embedding model/vector db to do RAG. The basic version of RAG is just that idea of passing additional, retrieved info with the prompt to the LLM. Yes, the embedding model w/ vector db is a very efficient way of doing that - especially with large amounts of data. But it is not the only way to accomplish it, and may not even be the best way to do it, depending on the use case.
@TheLegomom2
@TheLegomom2 4 күн бұрын
Yes definitely need to expand on RAG, vector database and pinecone. Full end to end process for incorporating specific business data sets to generate highly customized content. Creative/marketing use case if possible.
@samtabby3373
@samtabby3373 10 күн бұрын
I like your style of explaining things. Thank you for your videos as I've learned a lot from you.
@fasteddiegarcia1
@fasteddiegarcia1 3 күн бұрын
Yes please create a tutorial video showcasing step by step instructions around practical techniques for RAG, local open source vector databases, and automations
@levicarr8345
@levicarr8345 10 күн бұрын
I would really appreciate more videos following this rabbit hole (RAG, pinecone, knowledge Graphs, LangChain)
@stuffaboutthings8679
@stuffaboutthings8679 10 күн бұрын
Yes ! To all of the walk through on setting up local rag llms and mixed agents
@tchadcarby8439
@tchadcarby8439 8 күн бұрын
Thank you for your hard work Mathew! Please do videos on all suggestions that you made in this video.
@thecobrasnakes
@thecobrasnakes 10 күн бұрын
Yess we want a tutorial! Amazing content thank you !
@JeffParkerTexas
@JeffParkerTexas 8 күн бұрын
Yes, please do a step-by-step guide!!! Thank you!
@brianWreaves
@brianWreaves 10 күн бұрын
🏆 Very helpful, with just the main points... love it! As with other, looking forward to more details.
@piparsforever
@piparsforever 10 күн бұрын
Yes, please, show advanced RAG solution including ranking and SQL usage.
@Sven_Dongle
@Sven_Dongle 10 күн бұрын
Come up with an index, store data as a BLOB, then use SQL to retrieve it and add it to prompt.
@luizcamillo9933
@luizcamillo9933 9 күн бұрын
This is a great and very easy to understand explanation. Please make a full tutorial!
@williamross4062
@williamross4062 7 күн бұрын
A full tutorial is NEEDED
@andredinizwolf7076
@andredinizwolf7076 10 күн бұрын
Great knowledge!! Please create a new video about pinecone..
@fourlokouva
@fourlokouva 10 күн бұрын
Great explanation of RAG and how it differs from fine-tuning and prompt engineering
@BenoitStPierre
@BenoitStPierre 10 күн бұрын
The OpenAI Dev Days from last year had a great session on optimizing LLMs. Their progression was to try few-shot, then RAG, then fine-tuning - and their description of fine-tuning was that it was a good way to provide "intuition" to the model, but not knowledge.
@jprak123asd
@jprak123asd 10 күн бұрын
Brilliant!! Yes, a deeper dive will help
@FullEvent5678
@FullEvent5678 9 күн бұрын
I'd be very happy to see the whole process presented in a video ♥
@rahuljauhari3240
@rahuljauhari3240 10 күн бұрын
amazing explanation of RAG thank you!!
@michaeldolmos
@michaeldolmos 9 күн бұрын
Love to see a full tutorial.!
@basedbuz
@basedbuz 10 күн бұрын
I have said that it's less about compute power and now about organization of data and mimicking the brain. This is one way to do it
@patrickbowen8408
@patrickbowen8408 9 күн бұрын
Yes, full tutorial on rag and pinecone. Provide details on keeping private data private.
@Maltesse1015
@Maltesse1015 5 күн бұрын
Looking forward for the Tutorial 🎉!!
@gustavdreadcam80
@gustavdreadcam80 10 күн бұрын
I'm defintely interested in doing RAG but more so in doing it locally. Especially with all the important information I can't trust a service for storing it, if there is a local way of doing it I'd be very interested in building a RAG pipeline. Great video for explaining the basics of it.
@gsmorgan
@gsmorgan 10 күн бұрын
A deeper dive on how to set-up RAG with Pinecone and an embedding model would be great!
@ignaciopincheira23
@ignaciopincheira23 2 күн бұрын
It is essential to conduct a thorough preprocessing of the documents before entering them into the RAG. This involves extracting the text, tables, and images, and processing the latter through a vision module. Additionally, it is crucial to maintain content coherence by ensuring that references to tables and images are correctly preserved in the text. Only after this processing should the documents be entered into a LLM.
@bitsie_studio
@bitsie_studio 10 күн бұрын
Would absolutely love to see a tutorial on this. Thanks for doing something more technical like this, Love it!
@KonradTamas
@KonradTamas 10 күн бұрын
YeYe, do the Tutorial
@garic4
@garic4 10 күн бұрын
In KZfaq, there are hundreds of channels baffling buzzwords and lame tutorials about these concepts without putting real effort on creating meaningful videos. And this channel is not one of those. I appreciate your videos Matt, thank you for the great content
@garic4
@garic4 10 күн бұрын
Oh and please publish both tutorials , Picone and more RAG applications - those are the future and using agents with that is golden for the near future for all of us
@svetoslavlyubenov8521
@svetoslavlyubenov8521 8 күн бұрын
It will be great to do a full tutorial. If you add multimodal RAG and agents functionalities it will be even better.
@BigBadBurrow
@BigBadBurrow 10 күн бұрын
Thanks, Matt, interesting concept. A video tutorial would be great!
@laurenceturpin1409
@laurenceturpin1409 10 күн бұрын
An excellent tutorial I would really like you to do a deeper dive into RAG and show how you would set it up.
@jk-2033
@jk-2033 10 күн бұрын
This was very interesting and a full step by step video would be very helpful!
@TheAstralftw
@TheAstralftw 10 күн бұрын
Great stuff. Thanks
@ronaldgaines336
@ronaldgaines336 10 күн бұрын
Yes please do Pinecone RAG demo. Thanks!
@alanmorgan2536
@alanmorgan2536 10 күн бұрын
I've been dreaming about using RAG to compile the summary of key references I use in my profession (Geophysical interpretation). Obviously, professionals may not utilize every key learning from published materials and some information may be conflicting with other published materials in the same field. What would be immensely useful is a method of adding weights to information you utilize on a daily basis and to identify where an AI finds conflicts in logic. If a conflict is found, a model can be taught which path to follow.
@PersianMate
@PersianMate 9 күн бұрын
yes please! I’d like to see a full tutorial on how to do the whole process
@shonnspencer1162
@shonnspencer1162 10 күн бұрын
please continue to educate and show us the RAG vectoring tutuorial. Great video!
@attilazimler1614
@attilazimler1614 9 күн бұрын
Hi, thanks for the video, a deeper dive would be interesting :) thanks :)
@antaishizuku
@antaishizuku 10 күн бұрын
I have been working on a chromadb vector database sothis is awesome! Thanks!
@Rw223x
@Rw223x 10 күн бұрын
Thanks!
@Copa20777
@Copa20777 10 күн бұрын
This topic is the kind of knowledge everyone thinks they have and brush over.. thanks Matthew
@jr21294
@jr21294 10 күн бұрын
For search, there are two ways to do it: lexical or semantic search. RAG can also be used with lexical search
@corytimm142
@corytimm142 6 күн бұрын
I would love to see a video on how to do all of this with open source software that I can run locally. A project combining RAG with Ollama models would be awesome
@rickzhong6657
@rickzhong6657 9 күн бұрын
Great top view of RAG concept, please give us a detail walk-through on a concrete coding example, many thanks! 🙏
@PureMoss
@PureMoss 9 күн бұрын
Would love to see both the tutorial and deeper dive using RAG
@IamiAGorynT
@IamiAGorynT 10 күн бұрын
Great video. A step-by-step video on RAG and Pinecone would be great! 👍
@eduardomenezes4924
@eduardomenezes4924 10 күн бұрын
Please more videos about RAG including latest developments.
@dizzident
@dizzident 10 күн бұрын
I would kill for a full RAG tutorial...
@TrevorMatthews
@TrevorMatthews 10 күн бұрын
Ok that was awesome. Of course I’d like to know more! I’ve had a hard time understanding rag til now for some odd reason. Would also love a tutorial on pinecone and embedding.
@plantbasedman
@plantbasedman 10 күн бұрын
definitely want a deeper dive
@lasithchandrasekara5200
@lasithchandrasekara5200 10 күн бұрын
Great video, please do a deeper dive into RAG and later DSPy video as well.
@kamelirzouni4730
@kamelirzouni4730 10 күн бұрын
Thank you for this wonderful explanation on RAG, very informative. Just a note regarding Claude's Context Window: it's 200K and not 100K.
@bradstudio
@bradstudio 9 күн бұрын
PLEASE DO A FULL RAG SETUP TUTORIAL!! 🔥
@vishal.dekatearess
@vishal.dekatearess 2 күн бұрын
Hi Matthew, This video is very informative about basic RAG, Please provide a tutorial on Pinecone
@strazzi2
@strazzi2 9 күн бұрын
A deeper dive into RAG and embeddings would be a great help for developers like me. I work in C# with GPT4o and I use REST rather than Python, but then OK, you can't always get what you want 🙂
@ThinkAI1st
@ThinkAI1st 3 күн бұрын
Would love to see a complete tutorial on Pinecone and RAG.
@stonibeauchamp4588
@stonibeauchamp4588 8 күн бұрын
Full tutorial would be fantastic!
@KiLVaiDeN
@KiLVaiDeN 8 күн бұрын
A clever way to make an ad, here for Pinecone, by delivering knowledge. It's much more acceptable this way. Well done, and thanks for the intro to RAG :) The people @Pinecone must be proud of this video. I've just to say that, it's more about giving AI an optimized context than truly giving them a "memory". The title feels a bit misleading. A real memory would be a workable space where the AI stores itself the required data for later retrieval, and which becomes part of its infrastructure. This is not it.
@user-gh3di2rc3o
@user-gh3di2rc3o 10 күн бұрын
Berman seems happy today, but watch out when he is on the RAG.
@DrFukuro
@DrFukuro 10 күн бұрын
Do it, but without pinecone, with opensource, locally working tools only.
@naetuir
@naetuir 8 күн бұрын
I would love to see a full tutorial using pinecone.
@ianvecmanis5642
@ianvecmanis5642 10 күн бұрын
I'd like to you to expand on this Matt! Thanks!
@BeTheFeatureNotTheBug
@BeTheFeatureNotTheBug 8 күн бұрын
Yeah deeper dive!
@dawiesnyman3939
@dawiesnyman3939 8 күн бұрын
Would actually love to see a trial that shows rag without hiding to much of the workings in another framework.
@chetanreddy6128
@chetanreddy6128 10 күн бұрын
Hey it would be very very helpful if you drop a detailed video on rag setting up and usage!
@majoorF
@majoorF 10 күн бұрын
open prompt language model. No limit to the prompt input of a language model. You can basically add an additional large language model of data within you prompt. :)
@id10tothe9
@id10tothe9 6 күн бұрын
yes pleez gives us the tutorial!
@ProzacgodAI
@ProzacgodAI 10 күн бұрын
God I wish I had this like a 18 months ago, it was kinda hard for me to jump into it and figure it out. I'm glad I can at least confirm my process was at least successful.
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