Steps By Step Tutorial To Fine Tune LLAMA 2 With Custom Dataset Using LoRA And QLoRA Techniques

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  • Опубликовано: 20 сен 2024

Комментарии • 128

  • @kalyandey5195
    @kalyandey5195 7 месяцев назад +25

    Amazing !!! I have red the book -"Generative AI on AWS" today and learnt all the concepts of quantization, PEFT, LoRA, QLoRA and you have uploaded the video for the same!! Thanks a lot!!

  • @bluelightning5350
    @bluelightning5350 7 месяцев назад +37

    Please make vidoes on theoretical concepts such as LLM model internals, Mixture of Experts, RLHF and so on.

  • @nasiksami2351
    @nasiksami2351 7 месяцев назад +4

    Thank you for the video. The main issue I face from these tutorials is the custom dataset preparation part. Here also the dataset is loaded from HF.
    I have a tabular NLP classification dataset in my local. Let's say sentiment analysis dataset.
    How should I prepare the dataset and run the llm finetuning locally?
    Thank you again for this tutorial. I hope you'll show us the implementation of actual local, own dataset finetuning.
    Also, there's a paper called TabLLM, which uses LLM on numeric tabular datasets. Making a video on that one would be so much helpful regarding implementing it on the custom private dataset. Thank you again, and keep bringing good content as always

  • @shakilkhan4306
    @shakilkhan4306 7 месяцев назад +6

    I started my fine tuning journeys ,
    hope it would be something interesting

  • @DataDorz
    @DataDorz 7 месяцев назад +6

    Amazing video Krish, Can you also make a video on how to build RAG based LLM for Q&A over multiple documents where we can actually compare between two or more documents.

  • @pedroluisbroca204
    @pedroluisbroca204 6 месяцев назад +4

    This guy's excitement for NLP is adorable but man needs to get out more, the real world is calling!

  • @sanadasaradha8638
    @sanadasaradha8638 7 месяцев назад +2

    Actually this the video i want to ask you but you read my mind before I ask that why I am saying now Krish sir is mind reader

  • @Abdullah_kwl
    @Abdullah_kwl 7 месяцев назад +1

    Make theocratical videos on PEFT, LoRA, QLoRA, how quantization work, how quantize a model and Mixture of experts works

  • @avanthikar2608
    @avanthikar2608 7 месяцев назад +2

    Can you please upload videos indepth of how different prompting techniques like chain of thought, self consistency, knowledge generation etc were practically used with which the outputs of the models based on use cases are getting improved

  • @AngelBautistaMartinez
    @AngelBautistaMartinez 6 месяцев назад

    Mistral's medium posts helped me a ton, then found enterprise for hands on work

    • @otakudnp3880
      @otakudnp3880 5 месяцев назад

      does mistral have a medium page?
      but finding it

  • @sathiyalokeswaranlingeswar5062
    @sathiyalokeswaranlingeswar5062 7 часов назад

    great tutorial

  • @janarddansarkar3447
    @janarddansarkar3447 2 месяца назад

    Could you please explain the parameters, what does they mean, what is the effect of these in the model performance and what is the significance etc. ?? In interviews, they ask such questions only, because almost all the candidates has a lot of project from various online resources, but we need the underneath principle behind the working of finetuning with different params.

  • @bikramsubedi3456
    @bikramsubedi3456 3 месяца назад

    for tuning this model the format of dataset must be same or i may use any others format too such as row with text only without and [INST] or if labelled data are required then i use csv with two rows for prompt and answer??

  • @akandesoji3580
    @akandesoji3580 7 месяцев назад +3

    Amazing how did you know all this sir😢😢😢😢

  • @saqibmumtaz9380
    @saqibmumtaz9380 4 месяца назад

    Please also make a video on mathematical concepts and the intuition behind the LLMs.
    Already subscribed and liked the video, as you are doing an amazing job.

  • @ruiteixeira2324
    @ruiteixeira2324 5 месяцев назад +1

    May I ask a question? I used your code to fine-tune llama2 7b-chat on my data and the code works perfectly, but for some reason my new LLM can't predict the EOS token. So, every time I ask the model to generate text, it will generate tokens until it reaches the max_length. I think there is something wrong with the way Lora is using this EOS token. Do you have any idea how to fix this?
    By the way, amazing video. Thanks.

  • @ramankhanna9526
    @ramankhanna9526 4 месяца назад

    thanks for the video , it would be better if u can show documentation side by side with ur testing plz

  • @sajidchoudhary1165
    @sajidchoudhary1165 7 месяцев назад +1

    Yes, please make a theoretical video as well on all open source llms

  • @paul-andrejacques2488
    @paul-andrejacques2488 2 месяца назад

    Very Amazing video. Please make vidoes using json or csv file as a dataset

  • @arri5812
    @arri5812 7 месяцев назад

    thank you sir for this video, please make videos on theortical concepts needed to understand this fine tuning process. It will mean alot thanks sir

  • @zulaysolis5145
    @zulaysolis5145 6 месяцев назад

    Wow thanks for breaking it down step by step.

  • @Shrieenidhi
    @Shrieenidhi 10 дней назад

    I didn't understand "NousResearch/Llama-2-7b-chat-hf" this part. The original version of this model belongs to "meta-llama/Llama-2-7b-chat-hf". Since you are reducimg the precision, are you using this "NousResearch" model or what's the use in using this model. Also, what's the difference between these two models?

  • @A.M.8181
    @A.M.8181 7 месяцев назад

    Can you tell me what dataset templates should be used for fine-tuning? What fields should be there? If I need the model to answer questions in chat mode, like a first-line support bot, make a summary of the text I insert - are these different sets and as a result different models? That is, it turns out that I need already 2 models, each solves a specific task? If, for example, there is a production department and a financial department in the company, then is it better to use 2 separate small models and they are tailored to a separate knowledge sphere or use one large one? Show how to fine-tune on a local computer in the VSC environment on an RTX4090 video card

  • @vsneelesh3692
    @vsneelesh3692 7 месяцев назад

    need a theory content also sir . I would help in making the foundations stronger

  • @fl028
    @fl028 3 месяца назад

    Hi everyone,
    I have a question about data preparation and fine tuning of LLMs. What should the data format look like in the fine tuning process? On the one hand, it can be pure text to add special knowledge to the LLM. On the other hand, the data set can be structured in question and answer / prompt and answer format.
    What do you think? Do you have any recommendations for me?
    Thank you and best regards!

  • @VijayKumar-ib3qc
    @VijayKumar-ib3qc 7 месяцев назад

    Hi Krish,
    Thanks for the video.
    What is the purpose of developing the model using PEFT? Is the objective is to mimic CHATGPT where you ask questions and you get the answer?

  • @PranavBaviskar
    @PranavBaviskar 4 месяца назад

    Thanks for the video. Could you please create an end-to-end implementation video where you use Streamlit and local CPU?

  • @sanadasaradha8638
    @sanadasaradha8638 7 месяцев назад +1

    Sir do a video on how to transfer the customer data into q&a format for fine tuning to llms

  • @pratibhagoudar6817
    @pratibhagoudar6817 7 месяцев назад +1

    Hi krish sir!
    I have worked on this script 2 days back, and I am eagerly waiting for your explanation about this llama.
    And my doubt is that,
    I think you didn't gone through this cell,
    "Reload the fp16 and merge it with lora weights " Explain this code cell and how it will merge and where it could be stored. For this particular block error : I'm getting out of the memory issue .
    And waiting for math's behind peft and theriotical knowledge...
    I hope this comment you will read,,
    And hope for response to my question!!!
    Thank you🌹

    • @SayaliYadav-h7x
      @SayaliYadav-h7x 7 месяцев назад

      you should change your google Colab memory runtime

    • @pratibhagoudar6817
      @pratibhagoudar6817 7 месяцев назад

      @@SayaliYadav-h7xi have worked with it's T4 gpu.. Do i need to change to another runtime?

  • @praffulvyas-m7f
    @praffulvyas-m7f 7 месяцев назад

    Thank you for this amazing video. Can u also explain how to create custom dataset in Q/A format from the raw text and fine tune it and should we fine tune or use RAG if we want reponse from a particular domain only.Thanks

  • @vishalaiml1649
    @vishalaiml1649 5 месяцев назад

    Hi Krishnaik, can you please create a Series on securing LLM responses, and Guardrails as it is burning topic now a days. Sincere Request.

  • @wasimmemon2284
    @wasimmemon2284 6 месяцев назад

    Hi Krish, I had a doubt:
    Will quantization decrease the accuracy of the whole model? Will that mean that we will get less accurate results?

  • @AbdullahiAhmad-Babura
    @AbdullahiAhmad-Babura 7 месяцев назад +1

    Amazing following for a long time you are doing well

  • @AbhishekChaudhary-y5f
    @AbhishekChaudhary-y5f 19 дней назад

    Krish sir, can you tell me for fine tunning llama 3 why most of the people are using alpaca format, is this a straight away rule, or it just like it works well with alpaca format for fine-tunning.

  • @flyingsnow1357
    @flyingsnow1357 7 месяцев назад +2

    Can we do fine tuning on unsupervised data?

  • @rishijain8231
    @rishijain8231 7 месяцев назад

    Amazing video! Can you please make a video on the theoretical aspects as well?

  • @ashish_sinhrajput5173
    @ashish_sinhrajput5173 6 месяцев назад +1

    what modification i need to do i i wanted to fine-tune this llama model on text-Summarization task... ?

  • @ssen081
    @ssen081 7 месяцев назад

    Please conduct sessions on running AI models on cloud platforms like AWS, Azue and Google

  • @oxydol3456
    @oxydol3456 4 месяца назад

    it's working as charm wow.

  • @coldedkiller1125
    @coldedkiller1125 7 месяцев назад

    Sir this is a great video, but Please give a method that dont use hugging face to download the model, because we may have to train the same model again with new data. Also in the video we have download the model but how to load the model if it is locally available ?

  • @anushareddygudipati5169
    @anushareddygudipati5169 6 месяцев назад

    Amazing! Can you please make video on how to use fine tuned model in RAG.

  • @vijaydas2962
    @vijaydas2962 7 месяцев назад

    looks like a typo!! Are we not supposed to be using "new_model" instead of "model" while testing the fine tuned model? I'm referring to this line-----> pipeline(task="text-generation", model=model, tokenizer=tokenizer, max_length=200). I think correct argument should be --> model=new_model instead of model=model ??

  • @ArunkumarMTamil
    @ArunkumarMTamil 4 месяца назад

    how is Lora fine-tuning track changes from creating two decomposition matrix? How the ΔW is determined?

  • @sanjaykrish8719
    @sanjaykrish8719 4 месяца назад

    You are a gem ❤❤

  • @sayantikachatterjee5032
    @sayantikachatterjee5032 4 месяца назад

    why we set fp16=False,
    bf16=False in training_arguments = TrainingArguments() ?

  • @rahulhiware4049
    @rahulhiware4049 6 месяцев назад

    @Krish Can you load the fine-tuned model and then test/check it on the test data? In last code snippet I guess you are using the base model to get the results. Please correct me if I am wrong.
    Coping that line of code here which I am doubtful of.
    pipe = pipeline(task="text-generation", model=model, tokenizer=tokenizer, max_length=200)

    • @KushagraKumar-s1g
      @KushagraKumar-s1g 6 месяцев назад

      I have the same doubts. It seems it is picking the old base model and not the fined-tune one. Correct me if I am wrong

  • @SayaliYadav-h7x
    @SayaliYadav-h7x 7 месяцев назад

    I have already run this script one month ago, but this model cannot provide accurate answers as on custom data on which this llama2 model is trained .

  • @pranabsingharoy3270
    @pranabsingharoy3270 7 месяцев назад

    Why you are train for 1 epoch only? What will be the optimal number of epochs?

  • @gideongyimah217
    @gideongyimah217 7 месяцев назад +1

    Can you please upload a video on how to finetune LLM model to work on or understand local language given a dataset on local languages

    • @ashishmehra5143
      @ashishmehra5143 7 месяцев назад +1

      Finetuning happens when you cannot train the model for each user or each use case. If you want the model to work in a specific native language, the Llama2 model should have been trained in the same native language. Remember you are training the model with the data and the current Llama2 model is training on the English dataset.

  • @Ankit-b8d3s
    @Ankit-b8d3s 7 месяцев назад

    from where did you learn ? can you share some resources , so that i can learn all of these from one place ?

  • @MohaKashani
    @MohaKashani Месяц назад

    Your google colab code has conflict of packages and can not be run. I suppose just recently something has changed with the hidden package versions and so the problem has raised, or?

  • @dibyanshuchatterjee4126
    @dibyanshuchatterjee4126 6 месяцев назад

    Can you please make a video on DPO fine tuning method and its implementation.

  • @divyagarh
    @divyagarh 6 месяцев назад

    Thanks for uploading! how to create the dataset from your HTML/PDF content to train the model?

  • @ravikumar46931
    @ravikumar46931 7 месяцев назад +1

    Can we train
    this model locally by creating a virtual environment (e.g. conda) ?

    • @ashishmehra5143
      @ashishmehra5143 7 месяцев назад

      It is possible but you need a very high VRAM to process.

  • @abduljalilhassan1798
    @abduljalilhassan1798 7 месяцев назад

    Krish Naik please discuss how to evaluate the model ?

  • @KumR
    @KumR 7 месяцев назад

    waiting for the ollama video buddy

  • @ابوالقاسم-ن3خ
    @ابوالقاسم-ن3خ 7 месяцев назад +1

    Can we use this for other languages such as Arabic Thanks a lot!!

  • @Mintusir9
    @Mintusir9 7 месяцев назад +1

    Hello sir ❤
    Can you make a welding detection project using AI
    Is it possible to you or not
    If you make then please make

    • @ashishmehra5143
      @ashishmehra5143 7 месяцев назад

      You do not need an LLM model for it. Wedding possibility is a classification problem and it is very easy to make a model if you know logistic regression or decision tree algorithm. These are week learners with a low accuracy but your use case is solvable by the said algorithms.

    • @Mintusir9
      @Mintusir9 7 месяцев назад

      @@ashishmehra5143 you can do this project then please make a video

  • @adanpalma4026
    @adanpalma4026 2 месяца назад

    I m not surw if you said. But what is the avg hardware configuration?

  • @Iampercey
    @Iampercey 5 месяцев назад

    @Krish- After done fine tuning of the model, how can I run the fine-tuned model on local machine

  • @TechKnowledgeForYou780
    @TechKnowledgeForYou780 5 месяцев назад

    Hi Sir, Thanks for the information. Could you please share that pdf(Parameter - Efficient Transform learning for NLP).

  • @markandsweep
    @markandsweep 6 месяцев назад

    Thanks Krish

  • @AppleFlickFix
    @AppleFlickFix 4 месяца назад

    Hi folks, can anyone help?
    he had taken from the hugging-face for the final demonstration of the output but we need to test the fine-tuned model right?

  • @aravindraamasamy9453
    @aravindraamasamy9453 7 месяцев назад

    I want to integrate my database to the llm model , is it possible to finetune that. Can you show demo for integrating databses and fine tuning the llm model based on it.

  • @CosmosTraveler8008
    @CosmosTraveler8008 5 месяцев назад

    Sir can you create videos for evaluation of LLMs

  • @nareshmalviya3100
    @nareshmalviya3100 3 месяца назад

    When i load the model. I facing error config.json not appear. And my model saved adapter_config.json
    Please provide solution.......

  • @ganeshkumara8501
    @ganeshkumara8501 2 месяца назад

    i created my owndata set with my company data.It is showing wrong answers why?

  • @tirthbharatiya2611
    @tirthbharatiya2611 7 месяцев назад

    hey Krish, why I'm not able to see course request form on TechNeuron and why there is no new content?

  • @NIKHILPRASAD-e1g
    @NIKHILPRASAD-e1g 7 месяцев назад

    downloaded the dataset and entered my own one prompt template by replacing other, and was not able to achieve the result for it, Kindly help me.

  • @raghuvallikkat3384
    @raghuvallikkat3384 5 месяцев назад

    Hi Krish, Hi ,
    I want to fine tune a code generator model with our organisational data specific to embedded Software. code generated should be specific to the chipset we are using. I was thinking of using starcoder/CodeLLAMA as a base model and fine tune with QLORA. But I dont have much clarity of the format in which I should prepare the custom data set. Can you please help on this. Will joining the group with subscription will help to get some 1:1 guidance

  • @TheAmazonExplorer731
    @TheAmazonExplorer731 7 месяцев назад

    Please make a vido with demo that robot perform task using LLM

  • @nimesh.akalanka
    @nimesh.akalanka 4 месяца назад

    How can I fine-tune the LLAMA 3 8B model for free on my local hardware, specifically a ThinkStation P620 Tower Workstation with an AMD Ryzen Threadripper PRO 5945WX processor, 128 GB DDR4 RAM, and two NVIDIA RTX A4000 16GB GPUs in SLI? I am new to this and have prepared a dataset for training. Is this feasible?

  • @tirthbhatt3340
    @tirthbhatt3340 7 месяцев назад

    Hello krish could you please make videos on Auto gen?

  • @somtirthadas9347
    @somtirthadas9347 6 месяцев назад

    RuntimeError: Found no NVIDIA driver on your system. Please check that you have an NVIDIA GPU and installed a driver. I'm facing this error in google colab while running the GPU compatibility part. What can be the solution?

  • @AngelYahirHernàndezGarcìa
    @AngelYahirHernàndezGarcìa 6 месяцев назад

    Good tutorial!

  • @MasterMan2015
    @MasterMan2015 Месяц назад

    Does anyone retrain LLma 2 on monolingual data (let's say some data in a sepecific low resource language XX) and then finetune it on parallel data en - XX ?

  • @sanjanakumar7525
    @sanjanakumar7525 5 месяцев назад

    Can you please update the link to the code? The one given in the description does not work anymore

  • @yajuvendra15
    @yajuvendra15 6 месяцев назад

    Hello Krish, May I know how can we deploy this as an app in a kubernetis enviroment. thanks

  • @vidhanrathore2296
    @vidhanrathore2296 3 месяца назад

    Hi Your video is amaizing but I am not able to assess the code can provide me the github link I can utilize it.
    Please please............

  • @AbhinavKumar-tx5er
    @AbhinavKumar-tx5er Месяц назад

    Boss the code link provided in the description is not working

  • @Hizar_127
    @Hizar_127 5 месяцев назад

    I have a 50k sample dataset i want to fine tune the model.. can i do with this code ??

  • @gokulraj6633
    @gokulraj6633 7 месяцев назад

    Will the same code work for llama 13b chat . If not can you share Collab for fine tuning llama 13b .

  • @mayankmaurya9990
    @mayankmaurya9990 6 месяцев назад

    Hi krish, If I have client data and don't want to load from huggingface then How can I do this?

  • @s.sanket7
    @s.sanket7 4 месяца назад

    How can I save the fine tuned model locally?

  • @SyafieWork
    @SyafieWork 4 месяца назад

    If I am using langchain, can i still use this method?

  • @sumayyaafreen3499
    @sumayyaafreen3499 6 месяцев назад

    Can we use LLAMA for urdu language applications?

  • @azkarathore4355
    @azkarathore4355 3 месяца назад

    Can we finetune llama3 model for machine translation task

  • @rohanpandey9957
    @rohanpandey9957 7 месяцев назад +1

    need a whole playlist on llms sir

  • @lixiasong3459
    @lixiasong3459 7 месяцев назад +1

    Sir, can I run the code on my local vs code?

    • @ashishmehra5143
      @ashishmehra5143 7 месяцев назад +1

      Yes if your local compute has enough processing power to run it.

  • @lester3340
    @lester3340 Месяц назад

    it seems you are following any blog or article to show us how to finetuned, it is not worth. I wish, if you can create your own datasets and then ask any question to that model, would be more practice and useful, I tried doing that but failed, in self made datasets it won't work, but following the pre built datasets works.

  • @dipali5562
    @dipali5562 5 месяцев назад +5

    buy 4bit quantization don't u think we will be loosing information ?

    • @mehul4mak
      @mehul4mak Месяц назад

      There's some reduction in performance but we get low latency and reduced model size. Its trade off.

  • @jadedboy-kx3vm
    @jadedboy-kx3vm 4 месяца назад

    How can i get my model in gguf format?

  • @shaikirfanrahim7334
    @shaikirfanrahim7334 7 месяцев назад

    Please make video on oneDNN

  • @FuzzyLab
    @FuzzyLab 5 месяцев назад

    How i can pass my model to .gruff ?

  • @Archive-zv7mc
    @Archive-zv7mc 2 месяца назад

    At the end of the day js permanent 😂

  • @abduljalilhassan1798
    @abduljalilhassan1798 7 месяцев назад

    We are still waiting for theoretical part

  • @k4f
    @k4f 6 месяцев назад

    This video makes my LoRA hard

  • @enough200
    @enough200 7 месяцев назад +1

    why dont you explain the theory also

  • @explorewithshiljoy
    @explorewithshiljoy 7 месяцев назад +1

    Apologies, but upon viewing your video, I found the explanation lacking. It's crucial to have a strong initial explanation, especially when presenting more intricate concepts like fine tuning.

    • @sparkledark3713
      @sparkledark3713 5 месяцев назад

      He said it's an overview. Just a rundown before starting the video:

  • @agrawal1207
    @agrawal1207 6 месяцев назад

    The video was just to show off your knowledge, it wasn't a tutorial to anything