BERT explained: Training, Inference, BERT vs GPT/LLamA, Fine tuning, [CLS] token

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  • čas přidán 1. 06. 2024
  • Full explanation of the BERT model, including a comparison with other language models like LLaMA and GPT. I cover topics like: training, inference, fine tuning, Masked Language Models (MLM), Next Sentence Prediction (NSP), [CLS] token, sentence embedding, text classification, question answering, self-attention mechanism. Everything is visually explained step by step.
    I also review the background knowledge in order to understand BERT, by starting from an introduction to large language models (LLM) and the attention mechanism.
    Slides PDF: github.com/hkproj/bert-from-s...
    BERT paper: arxiv.org/abs/1810.04805
    Chapters
    00:00 - Introduction
    02:00 - Language Models
    03:10 - Training (Language Models)
    07:23 - Inference (Language Models)
    09:15 - Transformer architecture (Encoder)
    10:28 - Input Embeddings
    14:17 - Positional Encoding
    17:14 - Self-Attention and causal mask
    29:14 - BERT (overview)
    32:08 - BERT vs GPT/LLaMA
    34:25 - Left context and right context
    36:36 - BERT pre-training
    37:05 - Masked Language Model
    45:01 - [CLS] token
    48:26 - BERT fine-tuning
    49:00 - Text classification
    50:50 - Question answering
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Komentáře • 94

  • @JRB463
    @JRB463 Před 4 měsíci +5

    Thanks for breaking this down so well. As a privacy lawyer, this is the first time someone has managed to explain this to me in a way that I can actually understand!

  • @prashlovessamosa
    @prashlovessamosa Před 7 měsíci +6

    Hello you are one of the best teacher I have found in my life.

  • @meili-ai
    @meili-ai Před 7 měsíci +8

    Love the way you explain things, so clear. Excellent Work!

  • @greyxray
    @greyxray Před 3 měsíci +1

    i was trying to get the full picture of this for so long… seeing this felt just like getting a days long headache gone. thank you!

  • @1tahirrauf
    @1tahirrauf Před 7 měsíci +1

    Thanks Umar. I really appreciate your time and effort you put in creating these videos. I am anxiously waiting for the implementation video.

  • @hengtaoguo7274
    @hengtaoguo7274 Před 3 měsíci +1

    This video is awesome! Worth watching multiple times as refresher. Please keep up the good work!🎉🎉🎉

  • @Nereus22
    @Nereus22 Před 5 měsíci +2

    I'm coming here from the trasformers video, and again really really good and detailed explanations! Keep up the good work and thank you!

  • @hessame9496
    @hessame9496 Před 4 měsíci

    Man! You know how to explain these topics! Please continue uploading these great videos for the good of the community! Really appreciate it!

  • @user-xk7dy4nb7w
    @user-xk7dy4nb7w Před 6 měsíci +1

    Great primer or BERT. Excellent illustrations, and you explained the concepts very well.

  • @LongLeNgoc-qq5qn
    @LongLeNgoc-qq5qn Před 7 měsíci +2

    Excellent video sir! Can't wait to see coding BERT from scratch.

  • @advaitpatole8988
    @advaitpatole8988 Před 4 měsíci +3

    Thank you sir you explain these topics in great detail.Please keep uploading , excellent work.

  • @mmaxpo9852
    @mmaxpo9852 Před 5 měsíci +2

    Thanks Umar, I really appreciate your time and effort you put in creating these videos, very appreciate to create video coding BERT from scratch with PyTorch.

  • @Daily_language
    @Daily_language Před 2 měsíci +1

    explained much clearer than my prof. Great!

  • @rjkunal
    @rjkunal Před 3 měsíci

    Man, you are an excellent teacher. I must say.

  • @CandiceWinfield
    @CandiceWinfield Před 7 měsíci

    As a student, I do really appreciate your vedios. On the Internet, there's barely the guide about how to code a complete model, most of the vedio is talking about the theory. But if we don't walk through the code, we couldn't understand and use the model well. So I subscribe your channel to see your vedios about how to code a model from scratch, it's really awesome! Very clear and comprehensible. Can't wait to see Coding a BERT from scratch!

  • @linuxmanju
    @linuxmanju Před měsícem +1

    Brilliant video, thank you for sharing.

  • @hoi5771
    @hoi5771 Před 6 měsíci +2

    We need more videos from you sir..
    Like explaining more papers and LLMs

  • @ansonlau7040
    @ansonlau7040 Před měsícem +1

    Thank you so much Jamil, it's really helps a lot!!😁

  • @MagusArtStudios
    @MagusArtStudios Před 7 měsíci +1

    I've been using a Bert models summary endpoint and it's pretty good! Bert is underrated AF.

  • @charlesity
    @charlesity Před 6 měsíci +1

    Amazing explanations!

  • @rameshundralla6001
    @rameshundralla6001 Před 2 měsíci +1

    Wow , what an explanation!!Thanks a lot

  • @nahidzeinali1991
    @nahidzeinali1991 Před 3 měsíci

    thanks a lot, I love all your presentations, please talk about GPT and other models as well.

  • @xuanloc5111
    @xuanloc5111 Před 7 měsíci +1

    Excellent work!

  • @nilamkale5263
    @nilamkale5263 Před 3 měsíci

    Thank you for explaining bert in layman's language 👍

  • @akshayshelke5779
    @akshayshelke5779 Před 5 měsíci

    Please create more content it is helping us lot.....thanks for video

  • @Hima_inshorts
    @Hima_inshorts Před 3 měsíci

    Thanku for information video.....
    after this video , I got a idea for my work❤...,

  • @user-yf7qv8zj6y
    @user-yf7qv8zj6y Před 7 měsíci +1

    Thanks for providing a good quality of video as always. As a newbie of computer vision tasks, I still have found myself struggling with training and inference of source code with dataset. Would you please upload an informative video to show and explain the entire process of how we can do this with an open source code? Thanks.

  • @bishwadeepsikder3018
    @bishwadeepsikder3018 Před 3 měsíci +1

    Great video explanation, could you please explain how the embeddings are generated from the token ids for the positional encodings are added?

  • @xuehanjiang3474
    @xuehanjiang3474 Před 2 měsíci +1

    very clear! thank you!

  • @RayGuo-bo6nr
    @RayGuo-bo6nr Před 7 měsíci +2

    谢谢你! Hope you enjoy the life in China.

  • @mahmoudghareeb7124
    @mahmoudghareeb7124 Před 7 měsíci +1

    Great as usual ❤❤

  • @user-wr4yl7tx3w
    @user-wr4yl7tx3w Před 6 měsíci +1

    your Chanel is pretty awesome

  • @amitshukla1495
    @amitshukla1495 Před 7 měsíci

    Waiting for the BERT implementation from scratch !

  • @MW-ez1mw
    @MW-ez1mw Před 3 měsíci

    Thank you Umar for this great video! One confusion I have is about CLS token at 47:49, you mentioned we should use it because it can attend to all other words, since the first row don't have any 0 values(in the orange matrix). But wouldn't it also hold true for other tokens/rows in this matrix? Since this organge matrix is derived from softmax(QKt/sqrt(d)), while calculating this orange matrix, each row(word) in Q will multiple with every column of Kt matrix. Wouldn't this process enable each word to interact with all the rest words of the input? Sorry if I missed anything.

  • @mokira3d48
    @mokira3d48 Před 7 měsíci

    Very good guys!

  • @arpanswain4303
    @arpanswain4303 Před 3 měsíci

    Could you please make a video on Complete Gpt architecture, different versions....your explanations are really good!!!!

  • @user-wr4yl7tx3w
    @user-wr4yl7tx3w Před 6 měsíci +1

    best video explanation by far

    • @umarjamilai
      @umarjamilai  Před 6 měsíci

      Thank you for your feedback. Make sure to like and subscribe! Hopefully you'll love my future as much as this one.

  • @enggm.alimirzashortclipswh6010

    If you could make a video on one of the finetuning tasks with example dataset and finetuning BERT on it, that basically would complete this lecture as one video contains every single information.

  • @RahulPrajapati-jg4dg
    @RahulPrajapati-jg4dg Před 5 měsíci

    Best Explained, can you please add some more videos regarding different different architecture related bert and transformers

  • @1tahirrauf
    @1tahirrauf Před 7 měsíci +1

    Thank you, Umar, for the video. I genuinely appreciate and enjoy your content. I'm looking forward to your implementation video.
    I have a question. At 6:14, you mentioned that the output of the Encoder would be a sequence of 10 tokens. In the case of BERT, wouldn't the output be simply the contextualized embeddings of the input token (rather than next token of sequence)? Thank you

    • @umarjamilai
      @umarjamilai  Před 7 měsíci

      Hi! It depends on which task BERT has been fine tuned for. If you fine tune it for the next token prediction task, it will return 10 tokens, of which the last one is the next token. If you fine tune it for another task, then the output will still be 10 tokens (since a transformer is a sequence-to-sequence network), but you need to interpret the output differently based on the task.

  • @ariouathanane
    @ariouathanane Před dnem

    Awesome explanation.
    Cls token is important just because there is no zero values with others token?

  • @christianespana1
    @christianespana1 Před měsícem

    Hey bro, great and amazing work. Please do a video about coding BERT from scratch

  • @modaya3382
    @modaya3382 Před 6 měsíci

    Thanks for your efforts, I would love if you can make a tutorial on how to code OCR from scratch. Thanks

  • @VishalSingh-wt9yj
    @VishalSingh-wt9yj Před 3 měsíci +1

    thanks sir

  • @xugefu
    @xugefu Před 6 dny

    Thanks!

  • @thecraftssmith1599
    @thecraftssmith1599 Před 3 měsíci

    In 12:56 you mentioned the idea of Cosine function to denote similarities between words. Can you tell me in which research paper this idea is most skill-fully mentioned.

  • @Vignesh-ho2dn
    @Vignesh-ho2dn Před měsícem

    Great video. Thank you. Could you please do coding BERT from scratch? I'm very curious to learn how to implement MLM and NSP tasks in PyTorch

  • @li-pingho1441
    @li-pingho1441 Před 7 měsíci +1

    what a awesome video!!!!!!!

  • @user-kg9zs1xh3u
    @user-kg9zs1xh3u Před 5 měsíci +1

    Thanks Umar Jamil,

  • @brajeshmohapatra9614
    @brajeshmohapatra9614 Před 2 měsíci

    Hello Umar. Could you please make a video coding BERT, MLM and NSP from scratch like the previous video on Transformer? That would be very helpful to us.

  • @yonistoller1
    @yonistoller1 Před 5 měsíci

    Fantastic content, like always. Just worth noting that Q and K (and V) don't necessarily have to be the same in self attention

    • @umarjamilai
      @umarjamilai  Před 5 měsíci +1

      In Self-Attention the Q, K and V are always the same, that's why it's called self-attention. When K, V are coming from somewhere else (and are different from Q), in that case we talk about cross-attention.

  • @kingsleysoo8307
    @kingsleysoo8307 Před 11 dny

    Isnt the value vector for each Q,K,V should be different? Or say it is not necessary to be equal? And the product of the softmax function should be dot product again with Value Tensor V?

  • @Lilina3456
    @Lilina3456 Před 4 měsíci

    Thank you that was really helpful, can you olease do vision language models.

  • @Koi-vv8cy
    @Koi-vv8cy Před 7 měsíci +1

    I like it

  • @tubercn
    @tubercn Před 6 měsíci +1

    Thanks for your wonderful tutorial, waiting for the code part👀👀

  • @sathish331977
    @sathish331977 Před 6 měsíci

    excellent explanation of BERT , Thank you Umar. Can you suggest how to implement this for a NER type of task

    • @umarjamilai
      @umarjamilai  Před 6 měsíci +1

      In the future I plan to make a video on how to code BERT from scratch, but it's gonna take some time :D

  • @user-wr4yl7tx3w
    @user-wr4yl7tx3w Před 6 měsíci

    I think I followed your explanation of how BERT can be fine-tuned for Q&A, but still I am amazed how that can work. For example, fine-tuning, so that it knows the financial capital of China is Shanghai doesn't mean that it knows the financial capital of Indonesia.

    • @umarjamilai
      @umarjamilai  Před 6 měsíci

      Of course. The LLM will only know the concepts it is taught. If you never mention Indonesia in the training or fine-tune dataset, the LLM will never know what is Indonesia or its capital Jakarta.

    • @Dad-rk8pi
      @Dad-rk8pi Před 6 měsíci +1

      ​@umarjamilai sir, I have some confusion, as you mentioned about MLM and NSP, how does that work in code? Does it pass one sentence (A) with some masking (and loss be called L) and simultaneously guess sentence B from sentence A (and loss for that be called L') and then train itself minimising L+L'? Like does it work on one loop like:
      for i in sthg:
      Fill MLM
      Evaluate loss in guessing word
      Guess sentence B from current filled sentence
      Evaluate loss in guessing sentence
      Minimise the total loss?
      Is there something that I can learn (as tutorials) for understanding how filling in the blanks and guessing next sentence works?

    • @Dad-rk8pi
      @Dad-rk8pi Před 6 měsíci

      ​@@umarjamilaior is it calculated as MLM first and then NSP (like two different loops?)

    • @tubercn
      @tubercn Před 6 měsíci +1

      @@Dad-rk8pi Thanks for your question, i am too, waiting someone can answer this

    • @umarjamilai
      @umarjamilai  Před 6 měsíci +1

      @@Dad-rk8pi Hi! It is calculated as two separate task, for which the loss is summed up as L1 + L2. I saw many different implementations of BERT online and so far the most trustworthy is the Hugging Face one.

  • @srikanthganta7626
    @srikanthganta7626 Před 6 měsíci

    Thanks, most of it great! But the Q&A fine-tuning is confusing.

  • @KaushikJaiswal-eh4zt
    @KaushikJaiswal-eh4zt Před 27 dny

    Loved your explaination of Transformers, BERT and all other videos around the same.
    Btw I have query for above video. The part where you are explaining training and inference of language model there you mentioned Transformer Encoder architecture. Shouldn't that be decoder based architecture as the inference is generative type. Please help me understand the same if it is Encoder type only
    @Umar Jamil

  • @learnwithaali
    @learnwithaali Před 6 měsíci

    In the framework of scaled dot-product attention, particularly within the context of Transformer architectures, a key consideration is the interaction between the query (q), key (k), and value (v) matrices. This mechanism typically involves scaling the product of q and k by the square root of the dimensionality (d), followed by the application of the softmax function, and subsequently multiplying this result with the v matrix. A critical aspect of this process is the role of the attention heads in processing tokens. If we consider a scenario where each attention head is exposed to the entirety of the token set throughout the training process, how might this influence the effectiveness and efficiency of the model? This question assumes particular relevance in a setting where the embedding dimension is fixed at 512, and the model is dealing with a substantial number of tokens, potentially in the range of 10,000. Could such a comprehensive exposure of all heads to all tokens potentially compromise the model's performance, or are there mechanisms within the architecture that mitigate this concern?

    • @umarjamilai
      @umarjamilai  Před 6 měsíci +1

      To be honest, within the context of multihead attention, all the tokens are exposed to each head, but each head is only working with a different part of the embedding of each token. This is exactly what happens in the vanilla Transformer and also in BERT and works wonderfully. For example, if the embedding size is 512 and we have 4 attention heads, the first attention head will see the first 128 dimensions of each token, that is, the range [0...127], the second head will see the range [128...255], the third the next 128 dimensions and so on...
      So I don't understand your question: the transformer is already working like this, and so does BERT. In BERT, particularly, each token attends also to tokens coming after it in the sentence, which is called its "right context".
      Hope my explanation clarifies your doubts

    • @learnwithaali
      @learnwithaali Před 6 měsíci

      @@umarjamilai First of all, I'd like to express my gratitude for your insightful videos. They've been a great resource as I embark on my PhD journey in generative AI in Spain. Though I'm originally from Pakistan, I've been living in Spain since I was nine years old. Now, regarding my query about the Transformer model: I appreciate your explanation of the multihead attention mechanism and how each attention head interacts with a different segment of the token's embedding. However, my question specifically focuses on the logic behind multiplying the attention weights by the value matrix (V). While I understand that the product of the key (K) and query (Q) matrices indicates the relationship between tokens, the rationale behind subsequently multiplying this result by V isn't clear to me. Could you please clarify the purpose or reasoning behind this step in the attention mechanism?

  • @user-qr2wv8gb7v
    @user-qr2wv8gb7v Před 6 měsíci

    Please tell us about AliBi using the example of embedding in Llama 🙃 Instead of rotary coding 🙂

  • @InquilineKea
    @InquilineKea Před 3 měsíci

    What's the dimension in most LLMs like mixtral

  • @syedabdul8509
    @syedabdul8509 Před 5 měsíci +1

    Shouldn't for Q&A tesk, linear layer should be 3 classes for each token, because for all other tokens apart from T10 and T27, there should be another class which will say NOT START/END.

    • @umarjamilai
      @umarjamilai  Před 5 měsíci

      Nope. Since we have two linear layers, each token will either be "Start/NOT_Start" or "End/Not_End". This means each token can be in 4 possible states: "Start - End", "Not_Start - End", "Start - Not_End" and "Not_Start - Not_End". This also covers the case in which the same token is the start and the end token at the same time, because the softmax score for that token will be the highest for both linear layers for the "Start" and the "End" class.

    • @syedabdul8509
      @syedabdul8509 Před 5 měsíci

      @@umarjamilai Oh here by 2 linear layers you mean parallel layers. I assumed 2 linear layers as in series like an MLP.
      Also, if I think now, we don't require two separate layers right, we can use a single layer with output as 2 neurons, where each neuron will be binary START/NOT_START and other will be END/NOT_END.

    • @Vignesh-ho2dn
      @Vignesh-ho2dn Před měsícem

      @umarjamilai Then in this case, how do we ensure end_token is always start_token?

  • @Tiger-Tippu
    @Tiger-Tippu Před 6 měsíci

    Hi Umar ,please let me know the diff between Language models vs foundation models

    • @umarjamilai
      @umarjamilai  Před 6 měsíci

      A Foundation Model is a large language model, just trained on a massive amount of data that only big tech can afford (Meta, Google, etc.). Foundation Models have been pre-trained on a variety of data, so they can easily be fine tuned for a specific task or even used with zero shot prompting on unseen tasks.

  • @dineshrajant4000
    @dineshrajant4000 Před 7 měsíci

    Please do a video on GPT and LLaMA too....!!

    • @umarjamilai
      @umarjamilai  Před 7 měsíci

      I have two videos on LLaMA, check them out ;-)

  • @MariemStudiesWithMe
    @MariemStudiesWithMe Před 6 měsíci

    Hit the like button if you are impatiently waiting for " code bert from scratch" video🎉

  • @Udayanverma
    @Udayanverma Před 7 měsíci

    25:00 your input sequence is different and you are explaining matrix for different sequence!! isnt it a mistake ?

    • @umarjamilai
      @umarjamilai  Před 7 měsíci

      Hi! I didn't understand what is a mistake... The whole video I have referenced the first line of the Chinese poem. Sometimes, even for different inputs, I reference the same matrix so that people know we are talking about the same concept.

    • @Udayanverma
      @Udayanverma Před 7 měsíci

      you were using seq of China.... but table was not referring to that. in fact you said relation of EOS but table was confusing as it didnt refer to the same seq you were basing on. All in all i loved all your vidoes its just this one appeared out of sync in that period rest its cool. already watching your 2 hr video :)

    • @swiftmindai
      @swiftmindai Před 7 měsíci

      At the point 25:00, he was just trying to explain causal mask concept with regards to the self attention in case of usual vanila transformer where the tokens doesn't interact with token which comes after it and hence made them -inf before applying softmax and ultimately become 0 after softmax is applied to them. But, It doesn't apply in case of BERT which particularly use MLM concept where by masking certain tokens at either side. Again, this is my understanding from his explanation. Once @Umar does coding, it would be more clearer I believe.

  • @s8x.
    @s8x. Před 9 dny

    is BERT outdated now?

  • @mdriad4521
    @mdriad4521 Před 5 měsíci

    I would better if you cover coding part as well..

  • @souronion3822
    @souronion3822 Před 2 měsíci

    I’ll use the restroom beef or Ethel come

  • @souronion3822
    @souronion3822 Před 2 měsíci

    Tomorrow

  • @haohuangzhang6917
    @haohuangzhang6917 Před 4 měsíci +1

    You are a legend

  • @PP-qi9vn
    @PP-qi9vn Před 7 měsíci

    Thanks!