LangChain Explained in 13 Minutes | QuickStart Tutorial for Beginners

Ғылым және технология

In this video, we're going to explore the core concepts of LangChain and understand how the framework can be used to build your own large language model applications.
Code for the video is available here:
github.com/rabbitmetrics/lang...
▬▬▬▬▬▬ V I D E O C H A P T E R S & T I M E S T A M P S ▬▬▬▬▬▬
0:00 Introduction and overview
0:38 Why Langchain?
3:40 The value proposition of Langchain
4:50 Unpacking Langchain
5:42 LLM Wrappers
6:58 Prompts and Prompt Templates
7:45 Chains
9:00 Embeddings and VectorStores
11:40 An example of a Langchain Agent

Пікірлер: 321

  • @imtanuki4106
    @imtanuki410611 ай бұрын

    90% (or more) of tech tutorials start with code, without providing a conceptual overview, as you have done. This video is phenomenal...

  • @rabbitmetrics

    @rabbitmetrics

    11 ай бұрын

    Appreciate it! 🙏 Thanks for watching

  • @adamgkruger
    @adamgkruger Жыл бұрын

    I've noticed a significant lack of comprehensive resources that cover LangChain thoroughly. Your work on the subject is highly valued. Thank you

  • @artic4873

    @artic4873

    6 ай бұрын

    Yes, there's not enough books on it. The documentation is sparse

  • @andrewflewelling4294

    @andrewflewelling4294

    2 ай бұрын

    Agreed. This was the perfect introduction, for me at this time, to Lang chain.

  • @zerorusher
    @zerorusher11 ай бұрын

    This is the best 101 video I found on the subject. Most of the other videos assume you're already somewhat familiar with the tools or aren't that beginner friendly.

  • @jayhu6075
    @jayhu6075 Жыл бұрын

    One of the best QuickStart streaming that I've seen. A clearly explanation in combination with images. Many thanks.

  • @rabbitmetrics

    @rabbitmetrics

    Жыл бұрын

    Thank you! 🙏

  • @ranjithpals
    @ranjithpals7 ай бұрын

    Your video really helps understand the basics of langchain and provides a good context as well. I'm looking forward to more such videos !

  • @chukypedro818
    @chukypedro818 Жыл бұрын

    With immediate effect I have subscribe to your awesome channel. Explanation to LangChain was clear and concise. I really learnt a lot in just 12 minutes.

  • @garratygarret8559
    @garratygarret85598 ай бұрын

    Thank you for the video. I think it gives a really good introduction to the topic without much distraction. Absolutely pleasant to follow even for a non-native speaker.

  • @maya-akim
    @maya-akim Жыл бұрын

    This was an awesome and very straightforward video. I believe that it's the most useful video about LangChain that exists I've seen so far. Even people that don't know much about programming can follow. Thanks so much!

  • @sitedev
    @sitedev Жыл бұрын

    Thank you. I have watched a lot of videos that attempt to explain LLM's and LangChain as successfully as you have here but fail to do it as succinctly as you have. I was looking for a video that I can share with my clients that explains what LLM's and LangChain are without being too dumbed down or being too 'over their heads' and this video is perfect for that! So, again - thank you.

  • @rabbitmetrics

    @rabbitmetrics

    Жыл бұрын

    Glad it was helpful! I really appreciate the comment, thank you very much 🙏

  • @guitarcrax127
    @guitarcrax1278 ай бұрын

    Excellent intro, especially for an experienced programmer to start using after a single watch. Learned a lot in a short time with it. Thanks for making.

  • @rabbitmetrics

    @rabbitmetrics

    7 ай бұрын

    You're welcome! Thanks for watching

  • @steve_wk
    @steve_wk11 ай бұрын

    I've been watching a lot of AI videos, this is definitely one the best - well-organized and very clear

  • @danquixote6072
    @danquixote6072 Жыл бұрын

    Having read through the LangChain's conceptual documentation, I must say this video is a great accompaniment. Very clear and well presented and for a non coder like myself, easy to understand. (I'd pay for a LangChain manual for 5 year olds!) . Subscribed.

  • @rabbitmetrics

    @rabbitmetrics

    Жыл бұрын

    Thank you! 🙏 Glad it was helpful

  • @lukaskettner3597

    @lukaskettner3597

    Жыл бұрын

    Companion*

  • @Janeilliams
    @Janeilliams7 ай бұрын

    Wow, this video on lang-chain have all the pieces i have been searching for. Thank you so much for taking time and making this awesome video.

  • @dudefromsa
    @dudefromsa9 ай бұрын

    I found this to be very comprehensive and indeed useful.

  • @HarshGupta-sf4rj
    @HarshGupta-sf4rjАй бұрын

    I never comment on any video but your flawless explanation made me, Thank you for such a masterpiece.

  • @rabbitmetrics

    @rabbitmetrics

    19 күн бұрын

    Appreciate the kind words! 🙏 Thanks for watching

  • @nickfergis1425
    @nickfergis14258 ай бұрын

    solid instructor. good intro langchain at the right level of depth. For as quick as he rips thru a huge amount of information, he is still pretty easy to follow.

  • @ernikitamalviya
    @ernikitamalviya8 ай бұрын

    Thank you so much for covering all the components in just 13 mins. Though, it took an hour to learn and absorb everything :D

  • @ejclearwater
    @ejclearwater3 ай бұрын

    I have been searching and searching for an explanation of how to do this exact thing!! Yasssssss thank yooouuu! ❤

  • @Bragheto
    @Bragheto Жыл бұрын

    This is gold! Thank you!❤

  • @miguelangelromerogutierrez9626
    @miguelangelromerogutierrez96269 ай бұрын

    Very good explanation with a simple example to understand how it works! Thanks for this content

  • @rabbitmetrics

    @rabbitmetrics

    8 ай бұрын

    You're welcome! Thanks for watching

  • @ratral
    @ratral Жыл бұрын

    Thank you very much for watching the video, a very well-structured clarification. 👍

  • @rabbitmetrics

    @rabbitmetrics

    Жыл бұрын

    Much appreciated! Thanks for watching

  • @axelrein9901
    @axelrein9901 Жыл бұрын

    This is amazing stuff. Would love to see a deeper dive into it.

  • @rabbitmetrics

    @rabbitmetrics

    Жыл бұрын

    Thanks for watching! I'm already working on some deep dive videos

  • @saddam7008
    @saddam700810 ай бұрын

    This video really explains A-Z about langchain. This is damn good man.

  • @rabbitmetrics

    @rabbitmetrics

    8 ай бұрын

    Appreciate the comment! Thanks for watching

  • @KayYesYouTuber
    @KayYesYouTuber8 ай бұрын

    Simply fantastic. Thank you very much for explaining it so well.

  • @rabbitmetrics

    @rabbitmetrics

    7 ай бұрын

    Appreciate the comment! 🙏 Thanks for watching

  • @repairstudio4940
    @repairstudio494010 ай бұрын

    This is a absolutely wonderfuk video on LangChain and its clear and concise. Coukd you do a tutorial for beginners??? 🙏🏼

  • @TheAlokgupta83in
    @TheAlokgupta83in10 ай бұрын

    This is a cool explanation of how langchain works.

  • @mwonderlin
    @mwonderlin Жыл бұрын

    This is excellent - I have a question re the splitting, lets imagine you have email templates that average like 2000 tokens a piece or IG captions with like 500 tokens - should things like this be embedded as one chunk or what is the advantage to splitting up into say 100 token splits?

  • @anandakumar31
    @anandakumar312 ай бұрын

    Excellent video for beginners who want to start on Langchain. Well explained.

  • @rabbitmetrics

    @rabbitmetrics

    2 ай бұрын

    Thanks! Glad it was useful

  • @hectorprx
    @hectorprx10 ай бұрын

    Thanks for the clarity , all the best

  • @rakeshmr3329
    @rakeshmr33293 ай бұрын

    Really fantastic crisp explanation of LLM nothing more nothing less.

  • @rabbitmetrics

    @rabbitmetrics

    3 ай бұрын

    Thank you!

  • @lpanebr
    @lpanebr Жыл бұрын

    Great video! Do you know if pinecone works with other languages? For example to store and then retrieve?

  • @leventyuksel93
    @leventyuksel9310 ай бұрын

    Amazing tutorial and explanation, thank you!

  • @mhm7129
    @mhm71298 ай бұрын

    Excellent work!

  • @bharatpanchal8582
    @bharatpanchal85824 ай бұрын

    Thank you for explaining all the components. Highly appreciate it.

  • @rabbitmetrics

    @rabbitmetrics

    4 ай бұрын

    You're welcome! Thanks for watching

  • @luiscosta9261
    @luiscosta92618 ай бұрын

    Great explanation! I learned a ton with your video

  • @MrAloha
    @MrAloha11 ай бұрын

    Excellent! I've spent hours looking for this 13 minute tutorial. You fa man! Thanks! 💪😁🌴🤙

  • @rabbitmetrics

    @rabbitmetrics

    11 ай бұрын

    Glad you found it! 😊 Thanks for watching

  • @ilianos
    @ilianos Жыл бұрын

    Great explanatory video! Would you provide a link to this Jypter notebook?

  • @Swanidhi
    @Swanidhi9 ай бұрын

    Great content! Just what someone who just jumped into Gen AI would need to solve diverse use cases. Subscribed!

  • @rabbitmetrics

    @rabbitmetrics

    8 ай бұрын

    Appreciate it! Thanks for watching

  • @felipeblin8616
    @felipeblin8616 Жыл бұрын

    Great video clear and simple. I wonder is it were possible how can we use this with azure OpenAI

  • @stereo_stan
    @stereo_stan10 ай бұрын

    This was so helpful! What are your thoughts on connecting langchain and flutterflow?

  • @4.0.4
    @4.0.4 Жыл бұрын

    The coolest thing about enhancing LLMs like this is that locally-runnable models will be very interesting (no huge API call costs) and smarter than by default.

  • @ignfishiv

    @ignfishiv

    Жыл бұрын

    I would love local LLMs! Though I doubt that one advanced as GTP-3.5/4 will be able to be run locally for a few years because of the required computational power. I still look forward to the day that it becomes a thing though!

  • @leonidsdreams3919

    @leonidsdreams3919

    Жыл бұрын

    The costs are not the advantage. Hosting things on your own hardware is usually more expensive, especially if you need multiple models(embedding model, LLM, maybe a text to speech). The advantage I see is that you could use custom models trained on your data

  • @oryxchannel

    @oryxchannel

    Жыл бұрын

    Enter neuromorphics: kzread.info/dash/bejne/d4yVr7Oemtazips.html

  • @ciaranryan9485
    @ciaranryan94856 ай бұрын

    Hi there, is there a way to combine steps 4 and 5? I assumed you would be using the Agent to answer questions on the autoencoder that we had focused on for the whole video, but then we just used it to do some maths. I think it would be useful if it could answer questions based on the embeddings we have in our index?

  • @spicer41282
    @spicer41282 Жыл бұрын

    Your approach on this Langchain vid garnered you a Subscriber! Thanks!

  • @rabbitmetrics

    @rabbitmetrics

    Жыл бұрын

    Appreciate the support! Thanks for watching

  • @dozieweon
    @dozieweon6 ай бұрын

    This is very insightful and straight to the point.

  • @rabbitmetrics

    @rabbitmetrics

    4 ай бұрын

    Thank you!

  • @raffdev
    @raffdev8 ай бұрын

    Thanks for sharing the knowledge 👍

  • @emptiness116
    @emptiness116 Жыл бұрын

    Thank you for your contribution through the KZread space

  • @rabbitmetrics

    @rabbitmetrics

    Жыл бұрын

    Appreciate it! Thanks for watching

  • @ramp2011
    @ramp2011 Жыл бұрын

    Excellent video. THank you for sharing. Would love to see a video on Langchain Agents. Thank you

  • @rabbitmetrics

    @rabbitmetrics

    Жыл бұрын

    You're welcome! Thanks for watching

  • @noomondai
    @noomondai Жыл бұрын

    Awesome work thanks a lot!

  • @alaad1009
    @alaad10094 ай бұрын

    What a beautiful video. You Sir are a great teacher ! Thank You !

  • @rabbitmetrics

    @rabbitmetrics

    4 ай бұрын

    Thank you!

  • @kailashbalasubramaniyam230
    @kailashbalasubramaniyam230 Жыл бұрын

    Great video, what is the first app that you were using to explain the diagram ?

  • @alanwunsche-official
    @alanwunsche-official Жыл бұрын

    Great. Would love to have access to the code as well. Thanks!

  • @tosinlitics949
    @tosinlitics9494 ай бұрын

    Amazing short video packed with knowledge. Just smashed that subscribe button!

  • @rabbitmetrics

    @rabbitmetrics

    4 ай бұрын

    Appreciate the support, thanks for watching!

  • @zh4842
    @zh4842 Жыл бұрын

    Great job, what is the soft that you use to draw these magic things?

  • @pleabargain
    @pleabargain11 ай бұрын

    Fascinating. Thank you for this.

  • @sujoyroy3157
    @sujoyroy3157 Жыл бұрын

    How is the relevant info (as a vector representation) and question (as a vector representation) combined as a prompt to query the LLM? The example you show is a standard ChatGPT textual prompting scenario. The LLM will spit out what it knows and not what it does not know. So what application will this info be useful for? Also is there any associated paper or benchmark that investigates the performance of extracting "relevant information" using this chunking method or is it implementing some DL based Q/A paper?

  • @muhammadhaseeb2895
    @muhammadhaseeb28956 ай бұрын

    Absolutely love the way you explained.

  • @rabbitmetrics

    @rabbitmetrics

    5 ай бұрын

    Thank you!

  • @shyama5612
    @shyama56124 ай бұрын

    Excellent intro. Harrison would approve!

  • @rabbitmetrics

    @rabbitmetrics

    4 ай бұрын

    Thank you!

  • @jakobstyrupbrodersen926
    @jakobstyrupbrodersen92610 ай бұрын

    Excellent introduction! Thanks a lot :-)

  • @johnshaff
    @johnshaff Жыл бұрын

    I inspected Langchain code as soon as it was released, ran some tests and never used it since. Im surprised so many consider its limitations acceptable. Using embedding similarity as a query filter is like trying to answer a prompt by comparing every chunk of text to your prompt. It makes absolutely no sense because often times an answer looks nothing like a question, and/or the data needed to answer a question looks nothing like the question. The purpose of the embedding layer in a transformer neural network is to prepare the prompt tensor for further processing through the remaining model layers. It’s like bringing your prompt to the starting line of a long process to be answered, but instead of bringing just the prompt to the starting line, langchain brings the entire text your asking the question of to the starting line with your question and asking them to look at each other and be like “hey, whoever looks like me, stand over here with me. Ok now the rest of you go away and I’m going to ask chatgpt to see which of you remaining can help answer me”. This is a slight of hand trick, trying to replace everything that happens after the starting line, with chatgpt, but it doesn’t really work for 2 big reasons: (1) chatgpt context is not large enough to transform both the entire text your asking a question of + your prompt, and the same limitation applies to batching (2) your embeddings are incomplete because they were not created by the network, but simply hacking the first layer in a sense

  • @MeatCatCheesyBlaster

    @MeatCatCheesyBlaster

    Жыл бұрын

    Interesting take. I suspect most people don't understand the technology enough to see how it works. Would be helpful if you could make a video explanation

  • @albertocambronero1326

    @albertocambronero1326

    Жыл бұрын

    Biggest limitation right know that we can’t get over with, is chat GPTs context length, there is no way around that unless the contexts is greatly increase by OpenAI themselves or we could train our gpt4 model on large texts

  • @dendrites

    @dendrites

    Жыл бұрын

    @@albertocambronero1326 I agree. It would cool if there was a sort of "short term memory model" that could hold personal data. I don't see expanding context length as a parsimonious solution. Model queries produce the best results when they are sort and poignant. Any time you need to bring a ton of context to the prompt it reduces the relative weight of the primary question. Imagine a patient friend who accepts questions with an unrestricted context length. They have never read the book Great Gadsby (i.e. this would be like your personal data) - so to ask them a question about Jay Gatsby the question must begin by reading them the entire Great Gatsby novel, followed by "thee end... Where did Jay Gatsby go to college?" Then to ask them another Gatsby question it requires reading them the novel, again, and again. It would be awesome if there was a way to side-load a small personalized model that can plug into a LLM for extended capabilities.

  • @albertocambronero1326

    @albertocambronero1326

    Жыл бұрын

    ​@@dendrites amazing response, I did not know what was going on under the scenes with the context and did not know model queries produce the best results when they are sort and poignant. I believe that if you send the novel it would be stored in the context of the model and then you would be able multiple questions (?) or would the novel be lossing importance (weight) as more and more contexts is added? Referring to the comment that started this thread, the complicated bit about training the model on a certain topic, lets say: we train the existing GPT4 model in the book Great Gadsby it would probably know how to answer questions about the book, but it could not analize the whole book to find linguistic trends in the book (like what is the most talked about topic in the book) unless you ALSO feed the model with an article about "the most talked topic in the book". I mean I want my GPT4 model to read the book and analize the whole picture of what the book is about without needing extra articles about the book. (my use case is to make GPT4 analyze thousands of reviews and answer questions about it, but right now using NLP techniques sounds like a more duable option right now or at least until we have an option to extend GPT4 knowledge)

  • @ugaaga198

    @ugaaga198

    11 ай бұрын

    You can't say simply "it doesn't really work". It really depends on the use case. There are true limitations and some creativity might be required to leverage it. The context size might me sufficient for smaller use cases or it might be sufficient to break down bigger questions into smaller questions with their own contexts and then summarize etc.

  • @RobbieMraz
    @RobbieMraz29 күн бұрын

    Thank you this is the info I was looking for.

  • @kevon217
    @kevon217 Жыл бұрын

    great overview and slides

  • @CinematicHeartstrings
    @CinematicHeartstrings2 ай бұрын

    Thank you very much for the video! Really helpfull to kickstart with LangChain

  • @rabbitmetrics

    @rabbitmetrics

    19 күн бұрын

    Glad it was helpful!

  • @limster5
    @limster511 ай бұрын

    Thank you for this video. Now I can start work on my Langchain. Have subscribed!

  • @rabbitmetrics

    @rabbitmetrics

    11 ай бұрын

    You're welcome! Thanks for watching

  • @ALEJANDV1
    @ALEJANDV18 ай бұрын

    Thank you very much, Rabbitmetrics! This tutorial is absolutely a gem for someone looking for a clear and concise overview of the main concepts!

  • @rabbitmetrics

    @rabbitmetrics

    7 ай бұрын

    Thank you! I'm glad it was helpful

  • @xGogita
    @xGogita2 ай бұрын

    Brilliant. Structured and clear.

  • @rabbitmetrics

    @rabbitmetrics

    19 күн бұрын

    Thank you!

  • @hardikmehta8308
    @hardikmehta83088 ай бұрын

    Fantastic overview of Langchain! Thank you @Rabbitmetrics

  • @auslei
    @auslei8 ай бұрын

    I am finding the challenge is the splitting of documents. It needs to be large enough to cater for the search but small for context windows. I tried to use large pieces and another split when trying to extract information. Not sure if it is the "right" way.

  • @TheOGDesigner
    @TheOGDesigner9 ай бұрын

    Great explanation, thanks!

  • @user-nk7lx2rw4t
    @user-nk7lx2rw4t5 ай бұрын

    Excellent overview - Thanks!

  • @rabbitmetrics

    @rabbitmetrics

    5 ай бұрын

    You're welcome, thanks for watching!

  • @zenfoil
    @zenfoil2 ай бұрын

    👍 Your explanation is so structure and clear. I can understand how langchain works now even though I don’t know your python codes at all.

  • @rabbitmetrics

    @rabbitmetrics

    2 ай бұрын

    Thanks! 🙏 Glad it was helpful

  • @ayhamkanhoush2912
    @ayhamkanhoush29125 ай бұрын

    this video was nice and gives a good intro to the topic

  • @andre-le-bone-aparte
    @andre-le-bone-aparte Жыл бұрын

    just found your channel. Excellent Content - another sub for you sir!

  • @rabbitmetrics

    @rabbitmetrics

    Жыл бұрын

    Thank you I appreciate the support!

  • @henrisiepmann3501
    @henrisiepmann350111 ай бұрын

    Great explanation!

  • @roberthuff3122
    @roberthuff3122 Жыл бұрын

    Subscribed. Others have clamored for the notebook. I do as well. Thank you.

  • @alioraqsa
    @alioraqsa Жыл бұрын

    This is really great video!

  • @petrkushnir8178
    @petrkushnir81786 ай бұрын

    Bloody brilliant!

  • @micbab-vg2mu
    @micbab-vg2mu Жыл бұрын

    Great video! Thank you.

  • @youngsdiscovery8909
    @youngsdiscovery8909 Жыл бұрын

    super helpful. I think langchain engineer could hold significant value in the current job market

  • @rabbitmetrics

    @rabbitmetrics

    Жыл бұрын

    I agree!

  • @bwilliams060
    @bwilliams060 Жыл бұрын

    Excellent unpack! Can you please provide a link to this notebook?

  • @realJeremyZhang
    @realJeremyZhang10 ай бұрын

    Awesome Explanation

  • @peralser
    @peralser Жыл бұрын

    Wonderful video. Thanks.

  • @lee1221ee
    @lee1221ee Жыл бұрын

    great! I can use this video to teach my friend

  • @SokoBuilds
    @SokoBuilds11 ай бұрын

    One thing I noticed is that the dimensions in the vector store isn’t the correct amount required for ada-002. Wondering why that is as it could inhibit performance.

  • @Stoicbob
    @Stoicbob11 ай бұрын

    amazing tutorial. thank you. you are amazing

  • @jordanchristley1306
    @jordanchristley13069 ай бұрын

    Highly appreciated video

  • @WilmanArambillete
    @WilmanArambillete8 ай бұрын

    great video thanks for sharing. I have a question i am a newbie at this, why do we need to do the query in the vector DB? I mean the idea is to use an LLM, inject my data which could be stored into a DB and then ask the model which would include my data to get a response right? But why do i need to do a syntatic search to my DB then ? I am confused

  • @florinfilip6355

    @florinfilip6355

    19 күн бұрын

    Wilman, embeddings must be stored somewhere (typical a vector database) in order to retrieve the document relevant to the question quickly using the indexes.

  • @bingolio
    @bingolio Жыл бұрын

    EXCELLENT OVERVIEW: Pls note Pinecone as of 1 week is NOT allowing new, free accounts to do any operations! PLS CONSIDER DOING SIMILAR VID FOSS end to end, There is a lot of interest. THANK YOU

  • @bunnihilator
    @bunnihilator11 ай бұрын

    Can these LLM return an entity data with all its attributes, or do they only return conversation text?

  • @leonardosouzaconradodesant6213
    @leonardosouzaconradodesant62134 ай бұрын

    Great!!! Fantastic! Awesome! Thank you for sharing!

  • @rabbitmetrics

    @rabbitmetrics

    4 ай бұрын

    Thanks for watching!

  • @DrAIScience
    @DrAIScience3 ай бұрын

    Very interesting..can we do this for image search? Query and similarity search for image search and image match? Can we see embeddings of images like text that you presented?. Thanks

  • @daffertube
    @daffertube9 ай бұрын

    How do you store a API key in the .env ? I created the .env file in the root and I get error 500 when trying to open the .env and even chatgpt doesn't know why.

  • @musumo1908
    @musumo190811 ай бұрын

    Thanks! This is the best high level langchain video I have watched. Im not a programmer but this overview is invaluable...its clearly explained and demystified the dark arts of langchain 😂😂...question, whats the most straightforward way of converting website data into vectors? Is there some way to scrape urls...looking to create simple q&a agents for small websites...thanks

  • @rabbitmetrics

    @rabbitmetrics

    11 ай бұрын

    I’m glad it was helpful, I appreciate the comment! Regarding scraping urls, take a look at the latest video I’ve uploaded kzread.info/dash/bejne/e2GWx6qlnpytpdY.html In that video I’m using LangChain’s integration with Apify to extract content from my own webpage

  • @musumo1908

    @musumo1908

    11 ай бұрын

    @@rabbitmetrics thanks. Yes took a look. Will see what I can do. Came across Apify in my research yesterday ! Will try to run this with llamaindex ….Im teaching myself! There’s not many apify videos around so thanks

  • @PhoebePhuu
    @PhoebePhuuАй бұрын

    Your explanation is super clear to understand for me as a beginner. I want to know brief steps for the code flow as titles just like 1.Creating environment to get keys, 2. etc.,. Can anyone answer it?

  • @venkatkasthala1554
    @venkatkasthala1554Ай бұрын

    Thanks a lot. Very good explanation.

  • @rabbitmetrics

    @rabbitmetrics

    19 күн бұрын

    Thanks!

  • @namenl2205
    @namenl2205Ай бұрын

    so well explained! :)

  • @rabbitmetrics

    @rabbitmetrics

    19 күн бұрын

    Thanks!

  • @conne637
    @conne63710 ай бұрын

    Can someone explain to me, how the question & and the relevant (personal) data is combined when promting the model? Also, if I understand this correctly, using LangChain after all would enlarge the promt and hence number of tokens needed / cost? Thanks in advance!

  • @spacedust8061
    @spacedust80619 ай бұрын

    thank you a lot, really helped

  • @attilavass6935
    @attilavass6935 Жыл бұрын

    Great explanation, thank you! Would you mind sharing the code in a Colab notebook?

  • @rabbitmetrics

    @rabbitmetrics

    Жыл бұрын

    You're welcome! I've updated the video description with a link to the notebook

  • @vikaspoddar9456
    @vikaspoddar9456 Жыл бұрын

    🎉🎉🎉 Great overview of LangChain, can you do similar video on using LangChain on open_assistant and weiviate vector database

  • @rabbitmetrics

    @rabbitmetrics

    Жыл бұрын

    Thanks! That’s a good idea for a video

  • @AMYclubNFTs
    @AMYclubNFTs Жыл бұрын

    that's so amazing !!!

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