Sequence-to-Sequence (seq2seq) Encoder-Decoder Neural Networks, Clearly Explained!!!

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  • เผยแพร่เมื่อ 26 มิ.ย. 2024
  • In this video, we introduce the basics of how Neural Networks translate one language, like English, to another, like Spanish. The ideas is to convert one sequence of things into another sequence of things, and thus, this type of neural network can be applied to all sort so of problems, including translating amino acids into 3-dimensional structures.
    NOTE: This StatQuest assumes that you are already familiar with...
    Long, Short-Term Memory (LSTM): • Long Short-Term Memory...
    ...and...
    Word Embedding: • Word Embedding and Wor...
    Also, if you'd like to go through Ben Trevett's tutorials, see: github.com/bentrevett/pytorch...
    Finally, here's a link to the original manuscript: arxiv.org/abs/1409.3215
    If you'd like to support StatQuest, please consider...
    Patreon: / statquest
    ...or...
    TH-cam Membership: / @statquest
    ...buying my book, a study guide, a t-shirt or hoodie, or a song from the StatQuest store...
    statquest.org/statquest-store/
    ...or just donating to StatQuest!
    www.paypal.me/statquest
    Lastly, if you want to keep up with me as I research and create new StatQuests, follow me on twitter:
    / joshuastarmer
    0:00 Awesome song and introduction
    3:43 Building the Encoder
    8:27 Building the Decoder
    12:58 Training The Encoder-Decoder Model
    14:40 My model vs the model from the original manuscript
    #StatQuest #seq2seq #neuralnetwork

ความคิดเห็น • 321

  • @statquest
    @statquest  ปีที่แล้ว +8

    To learn more about Lightning: lightning.ai/
    Support StatQuest by buying my book The StatQuest Illustrated Guide to Machine Learning or a Study Guide or Merch!!! statquest.org/statquest-store/

    • @graedy2
      @graedy2 หลายเดือนก่อน +1

      One of the best channels on youtube! Wanted to provide some constructive criticism: Either I am blind or you have forgotten to link the og paper you show in the video in the video description.

    • @statquest
      @statquest  หลายเดือนก่อน +1

      @@graedy2 Here it is: arxiv.org/abs/1409.3215

  • @tornadospin9
    @tornadospin9 ปีที่แล้ว +117

    This channel is like the Khan Academy of neural networks, machine learning, and statistics. Truly remarkable explanations

    • @statquest
      @statquest  ปีที่แล้ว +6

      Thank you!

    • @eliaborras9834
      @eliaborras9834 6 หลายเดือนก่อน +3

      it's way better :) khan Academy does not have such cool songs =:)

  • @cat-a-lyst
    @cat-a-lyst ปีที่แล้ว +12

    I literally searched everywhere and finally came across your channel. seems like gradient descent worked fine .

  • @reinerheiner1148
    @reinerheiner1148 ปีที่แล้ว +43

    This channel is gold. I remember how, for my first coding job, where I had no programming knowledge (lol) but had no choice than to take it anyways, I quickly had to learn php and mysql. To get myself started, I searched for the simplest php coding books and then got myself two books from the php & mysql for kids series, even though I was already in my mid twenties. Long story short, I quickly learned the basics, and did code for a living. Complex topics don't have to be complex, in fact they are always built on building blocks of simple concepts and can be explained and taught as such IMHO. Thank you so much for explaining it KISS style. Because once again, I have to learn machine learning more or less from scratch, but this time for my own personal projects.

    • @statquest
      @statquest  ปีที่แล้ว +3

      BAM! I'm glad my videos are helpful. :)

  • @gabip265
    @gabip265 ปีที่แล้ว +9

    I can't thank you enough for these tutorials on NLP. From the first tutorial related to RNNs to this tutorial, you explained so concisely and clearly notions that I have struggled and was scared to tackle for couple of weeks, due to the amount of papers/tutorials someone should read/watch in order to be up to date with the most recent advancement in NLP/ASR. You jump-started my journey and made it much more pleasant! Thank you so much!

    • @statquest
      @statquest  ปีที่แล้ว

      Glad I could help!

  • @rachit7185
    @rachit7185 ปีที่แล้ว +15

    An awesome video as always! Super excited for videos on attention, transformers and LLM. In the era of AI and ChatGPT, these are going to go viral, making this knowledge accessible to more people, explained in a much simpler manner.

  • @paulk6900
    @paulk6900 ปีที่แล้ว +4

    I just wanted to mention that I really love and appreciate you as well as your content. You have been an incredible inspiration for me and my friends to found our own start up im the realm of AI without any prior knowledge. Through your videos I was capable to get a basic overview about most of the important topics and to do my own research according to those outlines. So without taking into consideration if the start up fails or not, I am still great full for you and I guess the implications that I got out of your videos led to a path that will forever change my life. So thanks❤

    • @statquest
      @statquest  ปีที่แล้ว

      BAM! And good luck with the start up!!!

  • @m.taufiqaffandi
    @m.taufiqaffandi ปีที่แล้ว +8

    This is amazing. Can't wait for the Transormers tutorial to be released.

  • @diamondstep3957
    @diamondstep3957 ปีที่แล้ว +2

    Love your videos Josh! Thanks for sharing all your knowledge in such a concise way.

  • @mateuszsmendowski2677
    @mateuszsmendowski2677 11 หลายเดือนก่อน +1

    Coming from video about LSTMs. Again, the explanation is so smooth. Everything is perfectly discussed. I find it immersively useful to refresh my knowledge base. Respect!

    • @statquest
      @statquest  11 หลายเดือนก่อน +1

      Glad it was helpful!

  • @ligezhang4735
    @ligezhang4735 10 หลายเดือนก่อน +1

    Wonderful tutorial! Studying on Statquest is really like a recursive process. I first search for transformers, then follow the links below all the way to RNN, and finally study backward all the way to the top! That is a really good learning experience thanks!

    • @statquest
      @statquest  10 หลายเดือนก่อน

      Hooray! I'm glad these videos are helpful. By the way, here's the link to the transformers video: th-cam.com/video/zxQyTK8quyY/w-d-xo.html

  • @sheiphanshaijan1249
    @sheiphanshaijan1249 ปีที่แล้ว +3

    Been waiting for this for so long. ❤. Thank you Josh.

  • @MCMelonslice
    @MCMelonslice ปีที่แล้ว +2

    Incredible, Josh. This is exactly what I needed right now!

  • @juliali3081
    @juliali3081 7 หลายเดือนก่อน +4

    It took me more than 16 minutes (the length of the video) to get what happens since I have to pause the video to think, but I should say it is very clearly explained! Love your video!!

    • @statquest
      @statquest  7 หลายเดือนก่อน

      Hooray! I'm glad the video was helpful. Now that you understand Seq2Seq, I bet you could understand Transformers relatively easily: th-cam.com/video/zxQyTK8quyY/w-d-xo.html

  • @AI_Financier
    @AI_Financier ปีที่แล้ว +1

    Great video! thanks for producing such a high quality, clear and yet simple tutorial

  • @KR-fy3ls
    @KR-fy3ls ปีที่แล้ว +2

    Been waiting for this from you. Love it.

  • @ZinzinsIA
    @ZinzinsIA ปีที่แล้ว +1

    Absolutely amazing as always, thank you so much. Can't wait for attention and transformers lessons, it will again help me so much for my current internship !

  • @Er1kth3b00s
    @Er1kth3b00s ปีที่แล้ว +1

    Amazing! Can't wait to check out the Self-Attention and Transformers 'Quests!

  • @fancytoadette
    @fancytoadette ปีที่แล้ว +2

    Omg I’m sooooooo happy that you are making videos on this!!! Have been heard it a lot but never figured it out until today 😂 cannot wait for the ones on attention and transformers ❤ Again thank you for making these awesome videos they really helped me A LOT

    • @statquest
      @statquest  ปีที่แล้ว

      Thank you very much! :)

  • @bibhutibaibhavbora8770
    @bibhutibaibhavbora8770 8 หลายเดือนก่อน +1

    See this is the kind of explanation I was waiting for❤

    • @statquest
      @statquest  8 หลายเดือนก่อน

      bam!

  • @enestemel9490
    @enestemel9490 ปีที่แล้ว +1

    Thank you Joshhh !!! I really love the way you teach everything

  • @shafiullm
    @shafiullm ปีที่แล้ว +2

    I got my finals of my final course in my final day tomorrow of my undergraduate journey and you posted this exactly few hours ago.. thats a triple final bam for me

    • @statquest
      @statquest  ปีที่แล้ว +1

      Good luck! :)

    • @paulaoges5525
      @paulaoges5525 21 วันที่ผ่านมา

      exact same situation bro

  • @juaneshberger9567
    @juaneshberger9567 10 หลายเดือนก่อน +1

    Best ML vids out there, thanks!

    • @statquest
      @statquest  10 หลายเดือนก่อน

      Wow, thanks!

  • @alecrodrigue
    @alecrodrigue 7 หลายเดือนก่อน +1

    awesome vid as always Josh :)

    • @statquest
      @statquest  7 หลายเดือนก่อน

      Thank you!

  • @yasharzargari4360
    @yasharzargari4360 28 วันที่ผ่านมา +1

    This channel is awesome. Thank you

    • @statquest
      @statquest  27 วันที่ผ่านมา

      Thanks!

  • @sheldonsebastian7232
    @sheldonsebastian7232 ปีที่แล้ว +1

    Yaas more on Transformers! Waiting for statquest illustrated book on those topics!

    • @statquest
      @statquest  ปีที่แล้ว

      I'm working on it! :)

  • @timmygilbert4102
    @timmygilbert4102 ปีที่แล้ว

    Can't wait to see the stanford parser head structure explained as a step towards attention!

    • @statquest
      @statquest  ปีที่แล้ว +1

      I'll keep that in mind.

  • @Sarifmen
    @Sarifmen ปีที่แล้ว +3

    We are getting to Transformers. LEETS GOOO

  • @jamesmina7258
    @jamesmina7258 16 วันที่ผ่านมา +1

    thank you so much, I learn from this vedio a lot about LLM

    • @statquest
      @statquest  16 วันที่ผ่านมา

      Glad to hear that! I also have videos on transformers (which are the foundation of LLMs) here: th-cam.com/video/zxQyTK8quyY/w-d-xo.html and th-cam.com/video/bQ5BoolX9Ag/w-d-xo.html

  • @user-te7tu7tk8f
    @user-te7tu7tk8f 2 หลายเดือนก่อน +1

    Thank you, so I now can have intuition of why the name is encoder and decoder, that I've curious for full 1 years.

    • @statquest
      @statquest  2 หลายเดือนก่อน

      bam! :)

  • @xxxiu13
    @xxxiu13 8 หลายเดือนก่อน +1

    Great explanation!

    • @statquest
      @statquest  8 หลายเดือนก่อน

      Thanks!

  • @WeightsByDev
    @WeightsByDev 2 หลายเดือนก่อน +1

    This video is very helpful... BAM!

    • @statquest
      @statquest  2 หลายเดือนก่อน

      Thank you!

  • @hannahnelson4569
    @hannahnelson4569 25 วันที่ผ่านมา +1

    This is pretty cool!

    • @statquest
      @statquest  25 วันที่ผ่านมา

      Thanks!

  • @GenesisChat
    @GenesisChat 3 หลายเดือนก่อน +1

    14:34 seems like a painful training, but one that, added to great compassion for other students, led you to produce those marvels of good education materials!

    • @statquest
      @statquest  3 หลายเดือนก่อน

      Thank you!

  • @cat-a-lyst
    @cat-a-lyst ปีที่แล้ว +1

    you are an excellent teacher

    • @statquest
      @statquest  ปีที่แล้ว

      Thank you! 😃

  • @MariaHendrikx
    @MariaHendrikx 7 หลายเดือนก่อน +1

    Really well explained! Thnx! :D

    • @statquest
      @statquest  7 หลายเดือนก่อน

      Thank you!

  • @Foba_Bett
    @Foba_Bett 3 หลายเดือนก่อน +1

    These videos are doing god's work. Nothing even comes close.

    • @statquest
      @statquest  3 หลายเดือนก่อน

      Thank you!

  • @Andreatuzze
    @Andreatuzze 8 วันที่ผ่านมา +1

    You are amazing TRIPLEBAAAAAMMMM

    • @statquest
      @statquest  7 วันที่ผ่านมา +1

      Thanks!

  • @amortalbeing
    @amortalbeing 6 หลายเดือนก่อน +1

    I liked it a lot. thanks ❤

    • @statquest
      @statquest  6 หลายเดือนก่อน

      Thank you! :)

  • @user-se8ld5nn7o
    @user-se8ld5nn7o 2 หลายเดือนก่อน

    Another amazing video and I cannot thank you enough to help us understand neural network in a such friendly way!
    At 4:48, you mentioned "because the vocabulary contains a mix of words and symbols, we refer to the individual elements in a vocabulary as tokens" . I wonder if this applies to models like GPT when it's about "limits of the context length (e.g., GPT3.5, 4096 tokens) or control the output token size.

    • @statquest
      @statquest  2 หลายเดือนก่อน

      Yes, GPT models are based on tokens, however, tokens are usually word fragments, rather than whole words. That's why each word counts as more than one token.

  • @kadirkaandurmaz4391
    @kadirkaandurmaz4391 ปีที่แล้ว +1

    Wow. Splendid!..

  • @bfc7649
    @bfc7649 22 วันที่ผ่านมา +1

    Love your vids

    • @statquest
      @statquest  22 วันที่ผ่านมา

      Thanks!

  • @BHAVYAJAIN-lw1fo
    @BHAVYAJAIN-lw1fo ปีที่แล้ว +2

    cant wait for the tranformers video

    • @statquest
      @statquest  ปีที่แล้ว +1

      Me too. I'm working on it right now.

  • @CelinePhan
    @CelinePhan ปีที่แล้ว +1

    love your songs so much

  • @ygbr2997
    @ygbr2997 ปีที่แล้ว

    using as the first input in the decoder to start the whole translation does appear to be magical

    • @statquest
      @statquest  ปีที่แล้ว

      It's essentially a placeholder to get the translation started. You could probably start with anything, as long as you were consistent.

  • @baocaohoang3444
    @baocaohoang3444 ปีที่แล้ว +1

    Best channel ever ❤

  • @hawawaa1168
    @hawawaa1168 ปีที่แล้ว +1

    yoooo Lets goooooo , Josh posted !

  • @Rumit_Pathare
    @Rumit_Pathare ปีที่แล้ว +1

    you posted this video when I needed the most Thanks man and really awesome 👍🏻

    • @statquest
      @statquest  ปีที่แล้ว +1

      HOORAY!!! BAM! :)

  • @advaithsahasranamam6170
    @advaithsahasranamam6170 ปีที่แล้ว +1

    Great explanation, love it!
    PS do you have a suggestion for where I can learn to work with seq2seq with tensorflow?

    • @statquest
      @statquest  ปีที่แล้ว

      Unfortunately I don't. :(

    • @codinghighlightswithsadra7343
      @codinghighlightswithsadra7343 9 หลายเดือนก่อน

      can you share the code if you find how to work with seq2seq with tensorflow Please?

  • @khaikit1232
    @khaikit1232 ปีที่แล้ว +1

    Hi Josh,
    Thanks for the much-needed content on encoder-decoder! :)
    However, I had a few questions/clarifications in mind:
    1) Do the number of cells between each layer within the Encoder or Decoder be the same?
    2) From the illustration of the model, the information from the second layer of the encoder will only flow to the second layer of the decoder. Is this understanding correct?
    3) Building off from 2), does the number of cells from each layer of the Encoder have to be equal to the number of cells from each corresponding layer of the Decoder?
    4) Do the number of layers between the decoder & encoder have to be the same?
    I think my main problem is trying to visualise the model architecture and how the information flows if there are different numbers of cells/layers. Like how would an encoder with 3 layers and 2 cells per layer connect to the decoder that perhaps have only 1 layer but 3 cells.

    • @statquest
      @statquest  ปีที่แล้ว +1

      First, the important thing is that there are no rules in neural networks, just conventions. That said, in the original manuscript (and in pretty much every implementation), the number of LSTMs per layer and the number of layers are always equal in the Encoder and the Decoder - this makes it easy for the context vector to connect the two sets of LSTMs. However, if you want to come up with a different strategy, there are no rules that say you can't do it that way - you just have to figure out how to make it work.

  • @tupaiadhikari
    @tupaiadhikari 11 หลายเดือนก่อน +1

    Thank you Professor Josh, now I understand the working of Se2Seq models completely. If possible can you make a python based coding video either in Keras or Pytorch so that we can follow it completely through code? Thanks once again Professor Josh !

    • @statquest
      @statquest  11 หลายเดือนก่อน +2

      I'm working on the PyTorch Lightning videos right now.

    • @arshdeepkaur8842
      @arshdeepkaur8842 4 หลายเดือนก่อน +1

      Thanks@@statquest

  • @user-qd1sb6ho8l
    @user-qd1sb6ho8l ปีที่แล้ว

    Thank you, Josh. You are amazing.
    Would you please teach Graph Neural Networks?

    • @statquest
      @statquest  ปีที่แล้ว

      I'll keep that in mind.

  • @roczhang2009
    @roczhang2009 9 หลายเดือนก่อน +1

    Hey, thanks for your awesome work in explaining these complex concepts concisely and clearly! However, I did have some confusion after watching this video for the first time (I cleared them by watching it several times) and wanted to share these notes with you since I think they could potentially make the video even better:
    1. The "ir vamos y " tokens in the decoding layer are a bit misleading in two ways:
    a. I thought "ir" and "y" stood for the "¡" and "!" in "¡Vamos!" Thus, I was expecting the first output from the decoding layer to be "ir" instead of "vamos."
    b. The position of the "" token is also a bit misleading because I thought it was the end-of-sentence token for "¡Vamos!" and wondered why we would start from the end of the sentence. I think " ir vamos y" would have been easier to follow and would cause less confusion.
    2. [6:20] One silly question I had at this part was, "Is each value of the 2-D embedding used as an input for each LSTM cell, or are the two values used twice as inputs for two cells?" Since 2 and 2 are such a great match, lol.
    3. One important aspect that is missing, IMO, in several videos is how the training stage is done. Based on my understanding, what's explained in this video is the inference stage. I think training is also very worth explaining (basically how the networks learn the weights and biases in a certain model structure design).
    4. Another tip is that I felt as the topic gets more complicated, it's worth making the video longer too. 16 minutes for this topic felt a little short for me.
    Anyways, this is still one of the best tutorial videos I've watched. Thank you for your effort!!

    • @statquest
      @statquest  9 หลายเดือนก่อน +1

      Sorry you had trouble with this video, but I'm glad you were able to finally figure things out. To answer your question, the 2 embedding values are used for both LSTMs in the first layer. (in other words, both LSTMs in the first layers get the exact same input values). If you understand the basics of backpropagation ( th-cam.com/video/IN2XmBhILt4/w-d-xo.html ), then really all you need to know about how this model is trained is how "teacher-forcing" is used. Other than that, there's no difference from a normal Neural Network. That said, I also plan on creating a video where we code this exact network in PyTorch and in that video I'll show how this specific model is trained.

    • @roczhang2009
      @roczhang2009 9 หลายเดือนก่อน +1

      Can't wait to learn the coding part from you too. And thanks for your patient reply to every comment. It's amazing. @@statquest

  • @datasciencepassions4522
    @datasciencepassions4522 ปีที่แล้ว +1

    Awesome!

  • @kmc1741
    @kmc1741 ปีที่แล้ว +1

    I'm a student who studies in Korea. I love your video and I appreciate that you made these videos. Can I ask you when does the video about 'Transformers' upload? It'll be big help for me to study NLP. Thank you.

    • @statquest
      @statquest  ปีที่แล้ว

      I'm working on it right now, so it will, hopefully, be out sometime in June.

  • @dsagman
    @dsagman 8 หลายเดือนก่อน +1

    this is my homework assignment today. how did youtube know to put this in my feed? maybe the next statquest will explain. 😂

    • @statquest
      @statquest  8 หลายเดือนก่อน

      bam! :)

  • @user-if6ny5dk9z
    @user-if6ny5dk9z 5 หลายเดือนก่อน +1

    Thank You Sir...................

    • @statquest
      @statquest  5 หลายเดือนก่อน

      Most welcome!

  • @prashlovessamosa
    @prashlovessamosa ปีที่แล้ว +1

    Damm again awesome stuff.

  • @ilirhajrullahu4083
    @ilirhajrullahu4083 6 หลายเดือนก่อน

    This channel is great. I have loved the series so far, thank you very much!
    I have a question:
    Why do we need a second layer for the encoder and decoder? Could I have achieved the same result using only 1 layer?

    • @statquest
      @statquest  6 หลายเดือนก่อน +1

      Yes. I just wanted to show how the layers worked.

  • @shashankagarwal4047
    @shashankagarwal4047 11 หลายเดือนก่อน +1

    Thanks!

    • @statquest
      @statquest  11 หลายเดือนก่อน

      Hooray!!! Thank you so much for supporting StatQuest!!! TRIPLE BAM!!! :)

  • @jakemitchell6552
    @jakemitchell6552 ปีที่แล้ว +2

    Please do a series on time series forecasting with fourier components (short-time fourier transform) and how to combine multiple frame-length stft outputs into a single inversion call (wavelets?)

    • @statquest
      @statquest  ปีที่แล้ว +2

      I'll keep that in mind, but I might not be able to get to it soon.

  • @mitchynz
    @mitchynz ปีที่แล้ว

    Hi Josh - this one didn't really click for me. There's no 'aha' moment that I get with almost all your videos. I think we need to walk through the maths - or have a a follow up - even if it takes an hour. Perhaps a guest lecturer or willing student (happy to offer my time) ... alas I guess as the algorithms become more complex the less reasonable this becomes, however you did a masterful job simplifying CNN's that I've never seen elsewhere so I'm sure if anyone can do it, you can! Thanks regardless - there's a lot of joy in this community thanks to your teaching.

    • @statquest
      @statquest  ปีที่แล้ว

      Yeah - it was a little bit of a bummer that I couldn't do the math all the way through. I'm working on something like that for Transformers and we'll see if I can pull it off. The math might have to be a separate video.

  • @siddharthadevanv8256
    @siddharthadevanv8256 ปีที่แล้ว

    You're videos are really amazing... ❤ Can you make a video on boltzmann machines?

    • @statquest
      @statquest  ปีที่แล้ว

      I'll keep that in mind.

  • @coolrohitjha2008
    @coolrohitjha2008 10 หลายเดือนก่อน +1

    Great lecture Josh!!! What is the significance of using multiple LSTM cells since we already have multiple embeddings for each word?
    TIA

    • @statquest
      @statquest  10 หลายเดือนก่อน

      The word embeddings tell us about the individual words. The LSTM cells tell us how the words are related to each other - they capture the context.

  • @benetramioicomas3785
    @benetramioicomas3785 5 หลายเดือนก่อน +1

    Hello! Awesome video as everything from this channel, but I have a question: how do you calculate the amount of weights and biases of both your network and the original one? If you could break down how you did it, it would be very useful! Thanks!

    • @statquest
      @statquest  5 หลายเดือนก่อน

      I'm not sure I understand your question. Are you asking how the weights and biases are trained?

    • @benetramioicomas3785
      @benetramioicomas3785 5 หลายเดือนก่อน

      No, in the video, in the minute 15:48, you say that your model has 220 weights and biases. How do you calculaamte this number?

    • @statquest
      @statquest  5 หลายเดือนก่อน +1

      @@benetramioicomas3785 I wrote the model in PyTorch and then printed out all trainable parameters with a "for" loop that also counted the number of trainable parameters. Specifically, I wrote this loop to print out all of the weights and biases:
      for name, param in model.named_parameters():
      print(name, param.data)
      To count the number of weights and biases, I used this loop:
      total_trainable_params = sum(p.numel() for p in model.parameters() if p.requires_grad)

  • @ririnch7408
    @ririnch7408 ปีที่แล้ว +2

    Hello, thank you for the wonderful tutorial once again. Just a question about word2vec output of embedding values, I'm a bit confused as to how we can input multiple embedding values from one word input into LSTM input. Unrolling it doesn't seem to make sense since its based on one word, if so, do we sum up all these embedding values into another layer of y=x and with weights associated them in order to get a single value for a single word input?

    • @ririnch7408
      @ririnch7408 ปีที่แล้ว

      Or do we use each individual embedding value as input for different LSTM cell? (Which would mean that we can have 100-1000+ LSTM cells per word)

    • @statquest
      @statquest  ปีที่แล้ว

      When we have multiple inputs to a single LSTM cell, extra connections to each subunit are created with additional weights for the new inputs. So, instead of just one connection from the input to the subunit that controls how much of the long-term memory to remember, we have one connection per input to that same subunit, each with its own weight. Likewise, extra connections are added from the inputs to all of the other subunits.

  • @TonnyPodiyan
    @TonnyPodiyan ปีที่แล้ว +1

    Hello Sir, I was going through your stats videos (qq plot, distribution etc)and loved your content. I would be really grateful, if you can make something regarding a worm plot. Nothing comes up on youtube when I search it.

    • @statquest
      @statquest  ปีที่แล้ว +2

      I'll keep that in mind.

  • @utkarshujwal3286
    @utkarshujwal3286 5 หลายเดือนก่อน

    Dr. Starmer thanks for the video and I had a doubt about this one. While I could understand the training cycle of the model I ain't quite sure about how inference testing is done, because during inference there wont be any tokens to be fed into the decoder side of the model, then how would it come up with a response?
    If I have to keep it crisp I couldnt understand how the architecture distinguishes training from inference? Is there some signal passed into the decoder side of the model.

    • @statquest
      @statquest  5 หลายเดือนก่อน

      For inference, we provide the context vector from the encoder and provide a start token () to the decoder, and then, based on that, the decoder creates an output token. If that token is , it's done, otherwise it takes that token as input the decoder again, etc...

  • @weipenghu4463
    @weipenghu4463 11 วันที่ผ่านมา +1

    谢谢!

    • @statquest
      @statquest  11 วันที่ผ่านมา

      TRIPLE BAM!!! Thank you for supporting StatQuest!!! :)

  • @anupmandal5396
    @anupmandal5396 6 หลายเดือนก่อน +1

    Awesome Video. Please make a video on GAN and BPTT. Request.....

    • @statquest
      @statquest  6 หลายเดือนก่อน +1

      I'll keep those topics in mind.

    • @anupmandal5396
      @anupmandal5396 6 หลายเดือนก่อน +1

      @@statquest Thank you sir.

  • @szymonkaczmarski8477
    @szymonkaczmarski8477 ปีที่แล้ว

    Great video! Finally some good explanation! I have a question regarding SOS and EOS tokens, sometimes it is mentioned that the decoder start the process of decoding by taking the SOS token, how does the whole picture differ then, for the both input sentences we always have then SOS and EOS tokens?

    • @statquest
      @statquest  ปีที่แล้ว +1

      It really doesn't change anything since the embeddings and everything are learned based on what you use. If you use EOS to start things in the decoder, then the embeddings and weights in the decoder learn that EOS is what is used at the start. If you use SOS at the start in the decoder, then the decoder and weights in the decoder learn that SOS is what is used. It really doesn't matter.

    • @szymonkaczmarski8477
      @szymonkaczmarski8477 ปีที่แล้ว +1

      @@statquest thank you! cannot wait for the transformers video!

  • @BooleanDisorder
    @BooleanDisorder 4 หลายเดือนก่อน +1

    300 million bams! ❤

    • @statquest
      @statquest  4 หลายเดือนก่อน +1

      Thank you!

  • @harshmittal63
    @harshmittal63 3 หลายเดือนก่อน

    Hi Josh, I have a question at time stamp 11:54.
    Why are we feeding the token to the decoder, shouldn't we feed the (start of sequence) token to initiate the translation?
    Thank you for sharing these world-class tutorials for free :)
    Cheers!

    • @statquest
      @statquest  3 หลายเดือนก่อน

      You can feed whatever you want into the decoder to get it initialized. I use because that is what they used in the original manuscript. But we could have used .

  • @Xayuap
    @Xayuap ปีที่แล้ว

    hi, 9:00 does the deco connects to the encoder 1 on 1?
    or do we have to connect each deco output to each encoder input all to all fully connected fashion?

    • @statquest
      @statquest  ปีที่แล้ว +1

      The connections are the exact same as they are within the encoder when we unroll the LSTMs - the long-term memories (cell states) that come out of one LSTM are connected the long-term memories of the next LSTM - the short term memories (hidden states) that come out of one LSTM are connected to the short-term memories of the next LSTM.

  • @yangminqi839
    @yangminqi839 11 หลายเดือนก่อน

    Hi Josh! Your video is amazing! But I have one question:
    When building the Encoder, you mentioned that 2 LSTM cells and 2 LSTM layer are used, I think one LSTM layer has only 1 LSTM cell (in terms of Pytorch's nn.LSTM) if we don't unroll, isn't it? So is there two different LSTM neural networks (nn.LSTM) are used, each one has two layers, and each layer has 1 LSTM cell? Or there is just one LSTM neural network with 2 layers, and 2 LSTM cells in one layer (this means nn.LSTM can have multiple LSTM cells) ? Which one is correct? I think is the former, please correct me if I'm wrong!
    Many Thanks!!

    • @statquest
      @statquest  11 หลายเดือนก่อน +1

      For nn.LSTM(), the "num_layers" parameter determines how many layers you have, and the "hidden_size" parameter controls how many cells are in each layer. Due to how the math is done, it may seem that changing "hidden_size" just makes a larger or smaller cell, but it's the equivalent of changing the number of cells. So, when I coded this, set "input_size=2", "hidden_size=2" and "num_layers=2". This is the equivalent of having 2 cells per layer and 2 layers.

    • @yangminqi839
      @yangminqi839 11 หลายเดือนก่อน

      @@statquest Thanks for your sincere reply! I think I have got your idea. You say that "hidden_size" parameter controls how many cells are in each layer, I think it's true under the situation that each cell generates a scalar output. But for Pytorch's nn.LSTMCell(input_size, output_size), only 1 nn.LSTMCell can transform the input of "input_size" to output of "output_size", which will involve some matrix multiplication not only scalar multiplication, isn't it? So even set "hidden_size=2" and "num_layers=2", I think the LSTM neural network has 2 layers and each layer have just 1 cell (nn.LSTMCell). Is my understanding right? Please correct me if I'm wrong.
      Thanks again!!!

    • @statquest
      @statquest  11 หลายเดือนก่อน

      @@yangminqi839 nn.LSTMCell() creates the equivalent of a stack of "cells" when you set hidden size > 1. This is "equivalent" because of how the math is implemented.

  • @theneumann7
    @theneumann7 ปีที่แล้ว +1

    perfect as usual🦾

  • @marswang7111
    @marswang7111 ปีที่แล้ว +1

    Love it

  • @harshilsajan4397
    @harshilsajan4397 5 หลายเดือนก่อน

    Hi great video!
    Just a question, to give the input to lstm, the input length will be constrained by lstm length right? For example 'let's' in first one and 'go' in second one.

    • @statquest
      @statquest  5 หลายเดือนก่อน

      I'm not sure what you mean by "lstm length". The idea here is that we can just copy the same sets of LMTMs as many times as we need to hand inputs of different lengths.

  • @rrrprogram8667
    @rrrprogram8667 ปีที่แล้ว +2

    Hey... Hope u r doing good.....
    So u are about to reach MEGA BAMMMMM

    • @statquest
      @statquest  ปีที่แล้ว +1

      Yes! I can't wait! :)

  • @spp626
    @spp626 ปีที่แล้ว

    Hello Josh! I really like your videos and explanation. Here I m with a doubt. Can we use the data of last 150 years for stock price prediction like crude oil etc in time series using garch? I have done the analysis by garch model but does it seem an over large data? Or should I use data of last 50 or 60 years only? Could you please help me out? Thank you in advance.

    • @statquest
      @statquest  ปีที่แล้ว

      Unfortunately I don't know much about GARCH.

    • @spp626
      @spp626 ปีที่แล้ว +1

      @@statquest oh OK..thank you for your reply! 🤗

  • @chrischauhan1649
    @chrischauhan1649 8 หลายเดือนก่อน +1

    This is what the internet is made for, world class education at home for free.

    • @statquest
      @statquest  8 หลายเดือนก่อน

      Thanks!

  • @avishkaravishkar1451
    @avishkaravishkar1451 6 หลายเดือนก่อน

    Hi Josh. Are the 2 embeddings added up before it goes as an input to lstm?

    • @statquest
      @statquest  6 หลายเดือนก่อน

      They are multiplied by individual weights then summed and then a bias is added. The weights and bias are trained with backpropagation.

  • @101alexmartin
    @101alexmartin 5 หลายเดือนก่อน +1

    Thanks for the video Josh, it’s very clearly explained.
    I have a technical question about the Decoder, that I might have missed during the video. How can you dynamically change the sequence lenght fed to the Decoder? In other words, how can you unroll the decoder’s lstms? For instance, when you feed the token to the (let’s say, already trained) Decoder, and then you get and feed it together with the token, the length of the input sequence to the decoder dynamically grows from 1 () to 2 (+). The architecture of the NN cannot change, so I’m unsure on how to implement this.
    Cheers! 👍🏻👍🏻

    • @statquest
      @statquest  5 หลายเดือนก่อน +1

      When using the Encoder-Decoder for translation, you pass the tokens (or words) to the decoder one at a time. So we start by passing to the decoder and it predicts "vamos". So then we pass "vamos" (not + vamos) to the same decoder and repeat, passing one token to the decoder at a time until we get .

    • @101alexmartin
      @101alexmartin 5 หลายเดือนก่อน

      @@statquest Thanks for the reply. I see your point. Do you iterate then on the whole Encoder-Decoder model or just on the Decoder? In other words, is the input to the model Let’s + go + in the first iteration? Or do we just run the Encoder once to get the context vector and iterate over the Decoder, so that the input is just one word at a time (starting with )? In this last case, I assume we have to update the cell and hidden states for each new word we input to the Decoder

    • @statquest
      @statquest  5 หลายเดือนก่อน +1

      @@101alexmartin In this case, we have to calculate the values for input one word at a time, just like for the output - this is because the Long and Short Term memories have to be updated by each word sequentially. As you might imagine, this is a little bit of a computational bottleneck. And this bottleneck was one of the motivations for Transformers, which you can learn about here: th-cam.com/video/zxQyTK8quyY/w-d-xo.html and here: th-cam.com/video/bQ5BoolX9Ag/w-d-xo.html (NOTE: you might also want to watch this video on attention first: th-cam.com/video/PSs6nxngL6k/w-d-xo.html )

    • @101alexmartin
      @101alexmartin 5 หลายเดือนก่อน

      @@statquest thanks for your reply. What do you mean by calculating the values for the input one word at a time? Do you mean that the input to the model in the first iteration would be [Let’s, go, EOS] and for the second iteration it would be [Let’s, go, vamos]? Or do you mean that you only use the Encoder once, to get the context vector output when you input [Let’s, go], and then you just focus on the Decoder, initializing it with the Encoder context vector in the first iteration, and then iterating over the Decoder (i.e over a LSTM architecture built for an input sequence length of 1), using the cell and hidden states of previous iterations to initialize the LSTM, until you get [EOS] as output?

    • @statquest
      @statquest  5 หลายเดือนก่อน +1

      @@101alexmartin What I mean is that we start by calculating the context vector (the long and short term memories) for "let's". Then we plug those values into the unrolled LSTMs that we use for "go", and keep doing that, calculating the context vector one word at a time, until we get to the end up of the input. Watching the video on Transformers may help you understand the distinction that I'm making here between doing things sequentially vs. in parallel.

  • @zhangeluo3947
    @zhangeluo3947 9 หลายเดือนก่อน

    Thank you so much sir for your clear explanation! But I have a question is that if you do word embedding for all tokens in d (let's say >2) dimensions, is that mean we can use the number of LSTM cells as d rather than just 2 cells for each layer? Or even more deep layers not just 2? Thank you!

    • @zhangeluo3947
      @zhangeluo3947 9 หลายเดือนก่อน +1

      Sorry, pardon my impatience, that's solved haha: 14:41

    • @statquest
      @statquest  9 หลายเดือนก่อน

      BAM! However, it's worth noting that an LSTM can also be configured to accept multiple inputs. So you could have a single LSTM layer that takes more than a single input.

  • @Nono-de3zi
    @Nono-de3zi 11 หลายเดือนก่อน

    What is the activation function used in the output fully connected layer (between the final short-term memories and the inputs to the Softmax)? Is it an identity activation gate? I see in various documentations "linear", "affine", etc.

    • @statquest
      @statquest  11 หลายเดือนก่อน +2

      In this case I used the identity function.

  • @Luxcium
    @Luxcium ปีที่แล้ว

    Oups 🙊 What is « *Seq2Seq* » I must go watch *Long Short Term-Memory* I think I will have to check out the quest also *Word Embedding and Word2Vec…* and then I will be happy to come back to learn with Josh 😅 I am impatient to learn *Attention for Neural Networks* _Clearly Explained_

  • @slolom001
    @slolom001 4 หลายเดือนก่อน

    Awesome videos! I was wondering how do people training larger models, know "im ready to press train" on the big version? Because if some of their assumptions were wrong they wasted all that time training. Is there some smaller version they can create to verify theyre getting good results, and theyre ready to train the big one?

    • @statquest
      @statquest  4 หลายเดือนก่อน +1

      Usually you start with a smaller training dataset and see how it works first.

  • @omarmohamed-hc5uf
    @omarmohamed-hc5uf 3 หลายเดือนก่อน +1

    can someone explain to me more thoroughly what is the purpose of the multiple layers with multiple LSTM cells of the encoder-decoder model for seq2seq problems because i didn't understand it too well from the video as the explanation was too vague. but still it's a great video 👍

    • @statquest
      @statquest  3 หลายเดือนก่อน

      We use multiple layers and multiple LSTMs so that we can have more parameters to fit the model to the data. The more parameters we have, the more complicated a dataset we can train the model on.

  • @pranaymandadapu9666
    @pranaymandadapu9666 7 หลายเดือนก่อน

    First of all, thank you so much for the clear explanation!
    I was confused when you said in the decoder during training that the next word we will give to the LSTM is not the predicted word, but we will use the word in training data. How will you let the network know whether the predicted token is correct?

    • @statquest
      @statquest  7 หลายเดือนก่อน

      I'm working on a video on how to code and train these networks that will help make this clear. In the mean time, know that we just compare all of the predicted output values to what we know should be the output values.

    • @pranaymandadapu9666
      @pranaymandadapu9666 7 หลายเดือนก่อน

      @@statquest thank you so much!

  • @marswang7111
    @marswang7111 ปีที่แล้ว +2

    😀😀😀Love it

    • @statquest
      @statquest  ปีที่แล้ว

      Double thanks! :)

  • @HAAH999
    @HAAH999 10 หลายเดือนก่อน

    When we connect the outputs from layer 1 to layer 2, do we connect both long/short memories or only the short term memory?

    • @statquest
      @statquest  10 หลายเดือนก่อน

      We connect the short term memories from one layer to the inputs of the next layer (which are different from the short term memories in the next layer).

  • @magtazeum4071
    @magtazeum4071 ปีที่แล้ว

    Hi Josh, is there a bundle of pdf books on statictics to purchase in your store ? I already bought the studyguide on linear regression .

    • @statquest
      @statquest  ปีที่แล้ว +1

      You can buy my book, and it has (among other things) Gradient Descent, Decision Trees, Naive Bayes (and Gaussian Naive Bayes).

    • @magtazeum4071
      @magtazeum4071 ปีที่แล้ว

      @@statquest ok . Thank you . Is it available to buy on your website?

    • @statquest
      @statquest  ปีที่แล้ว +1

      @@magtazeum4071 Yep: statquest.org/statquest-store/

    • @magtazeum4071
      @magtazeum4071 ปีที่แล้ว +1

      @@statquest Thank you very much Josh ❤

    • @magtazeum4071
      @magtazeum4071 ปีที่แล้ว +1

      @@statquest Just purchased it ❤

  • @The-Martian73
    @The-Martian73 ปีที่แล้ว +1

    Hello Josh !!😊

  • @dslkgjsdlkfjd
    @dslkgjsdlkfjd 7 หลายเดือนก่อน

    Do the LSTMS in the second layers have the same weights and biases as the LSTMS in the first layer? Sorry if I missed that part.

    • @statquest
      @statquest  7 หลายเดือนก่อน

      This question is answered at 8:48

    • @dslkgjsdlkfjd
      @dslkgjsdlkfjd 7 หลายเดือนก่อน

      Ahhh thank you this clears up the LSTMs in the encoder and decoder. However are the weights in biases in the 2 different LSTM cells in the encoder at layer 1 different form the weights and biases in the 2 different LSTM cells in the encoder at layer 2? Thank you for amazing response time on my first message! @@statquest

    • @statquest
      @statquest  7 หลายเดือนก่อน

      @@dslkgjsdlkfjd This is answered at 6:41

    • @dslkgjsdlkfjd
      @dslkgjsdlkfjd 7 หลายเดือนก่อน +1

      BAM!!!@@statquest

  • @user-dk3mk4il3g
    @user-dk3mk4il3g 7 หลายเดือนก่อน

    Hi sir, one question can there be a case where number of layers in decoder could be different than the encoder. Or it can never happen due to size of context vector? will adding a new layer in decoder give any advantage?

    • @statquest
      @statquest  7 หลายเดือนก่อน

      I don't know. It's possible that the context vector requires the number to be the same.

  • @scorinth
    @scorinth ปีที่แล้ว

    So, if I understand correctly, the context vector in this example has 8 dimensions?
    2 dimensions to the word embedding, times 2 since each layer outputs long and short term states, times two because there are two layers.
    So the context vector can be represented by 8 scalars...?

    • @statquest
      @statquest  ปีที่แล้ว

      Each line that I drew for the "context vector" represents a single value, and there are 8 lines. The first layer of LSTMs has 2 LSTM cells, so it as 2 short-term memories and 2 long-term memories; 4 values total. The second layer of LSTMs also has 2 LSTM cells, so another 4 values. So there are 8 values in the context vector.

  • @Jai-tl3iq
    @Jai-tl3iq 5 หลายเดือนก่อน

    Sir, So in encoder-decoder architecture, will the number of LSTM units be the same as the number of words in a sequence? I mean, I've seen in many drawings, illustrations, they have three words and the same number of three LSTM cells?

    • @statquest
      @statquest  5 หลายเดือนก่อน

      No. We set the number of LSTMs in advance of getting any input and then just unroll them as many times as needed for different input lengths.

  • @GenesisChat
    @GenesisChat 3 หลายเดือนก่อน

    As other people say, these lessons are gold. Le'ts say SOTA.
    There's a very little detail I don't understand though. Why using the words let's to go in the example, when what we want to translate let's go? It kinds of make things somewhat confusing to me...

    • @statquest
      @statquest  3 หลายเดือนก่อน

      I'm not sure I understand your question. Can you clarify it?

    • @mangokavun
      @mangokavun 2 หลายเดือนก่อน

      @@statquest The question is why did you use "Let's *to* go" instead of "Let's go" starting 4:18. Where's that "to" coming from that's fed into the network?

    • @statquest
      @statquest  2 หลายเดือนก่อน +1

      @@mangokavun To make the example mildly interesting, I wanted to be able use at least 2 different input phrases: "let's go", which translates to "vamos", and "to go", which translates to "ir". So the input vocabulary has the tokens "lets", "to", "go", and "" so that I can create different input phrases. Likewise, the output vocabulary has "ir", "vamos", "y", and "" so that we can correctly translate the input phrases. NOTE: I included "y" (which translates to "and") in the output just to show that the transformer could learn not to use it.

  • @falconer8518
    @falconer8518 ปีที่แล้ว

    To train the model, it is enough to make a backprop for the decoder Or you need to update the weights for the encoder ?

    • @statquest
      @statquest  ปีที่แล้ว

      Remember the weights and biases start out as random numbers, so if you don't train the weights and biases in the Encoder, you might as well replace the LSTMs and the Embedding Layer with just a random set of weights. So, if you want to go through the trouble of adding LSTMs and embedding layers to the Encoder, you should train those weights and biases.

    • @falconer8518
      @falconer8518 ปีที่แล้ว

      @@statquest How do I update weights and bais in encoder ? Do I need to account for all inputs or update only the last one ? I don't really understand how to implement this because it scares me that the encoder doesn't have a part with a linear layer

    • @statquest
      @statquest  ปีที่แล้ว

      @@falconer8518 A forward step through the entire network begins with the encoder and ends after predicting two tokens, one for "vamos" and one for EOS. You then pass both of the predicted tokens and the known values (vamos and EOS) into the loss function. If this is confusing, don't worry, I'll make a video about how to do it as soon as I can. In the mean time, check out Ben's github tutorials: github.com/bentrevett/pytorch-seq2seq/tree/rewrite

    • @falconer8518
      @falconer8518 ปีที่แล้ว +1

      @@statquest Thank you so much for your help, I think I'm starting to understand how to implement this, I also hope that you will make a video on the topic of backprop for seq2seq model, since there is very little material on the Internet about this and usually one to many rnn is disassembled

  • @amrutumrankar4609
    @amrutumrankar4609 4 หลายเดือนก่อน

    In this full network where does we are telling to convert English word to Spanish word? for example in LSTM OR in Neural network before SoftMax function?

    • @statquest
      @statquest  4 หลายเดือนก่อน

      The whole thing does the job. There is no single part that does the translation.