MIT 6.S191: Recurrent Neural Networks, Transformers, and Attention

Ғылым және технология

MIT Introduction to Deep Learning 6.S191: Lecture 2
Recurrent Neural Networks
Lecturer: Ava Amini
** New 2024 Edition **
For all lectures, slides, and lab materials: introtodeeplearning.com
Lecture Outline
0:00​ - Introduction
3:42​ - Sequence modeling
5:30​ - Neurons with recurrence
12:20 - Recurrent neural networks
14:08 - RNN intuition
17:14​ - Unfolding RNNs
19:54 - RNNs from scratch
22:41 - Design criteria for sequential modeling
24:24 - Word prediction example
31:50​ - Backpropagation through time
33:40 - Gradient issues
37:15​ - Long short term memory (LSTM)
40:00​ - RNN applications
44:00- Attention fundamentals
46:46 - Intuition of attention
49:13 - Attention and search relationship
51:22 - Learning attention with neural networks
57:45 - Scaling attention and applications
1:00:08 - Summary
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Пікірлер: 48

  • @wolpumba4099
    @wolpumba409923 күн бұрын

    *Abstract* This lecture delves into the realm of sequence modeling, exploring how neural networks can effectively handle sequential data like text, audio, and time series. Beginning with the limitations of traditional feedforward models, the lecture introduces Recurrent Neural Networks (RNNs) and their ability to capture temporal dependencies through the concept of "state." The inner workings of RNNs, including their mathematical formulation and training using backpropagation through time, are explained. However, RNNs face challenges such as vanishing gradients and limited memory capacity. To address these limitations, Long Short-Term Memory (LSTM) networks with gating mechanisms are presented. The lecture further explores the powerful concept of "attention," which allows networks to focus on the most relevant parts of an input sequence. Self-attention and its role in Transformer architectures like GPT are discussed, highlighting their impact on natural language processing and other domains. The lecture concludes by emphasizing the versatility of attention mechanisms and their applications beyond text data, including biology and computer vision. *Sequence Modeling and Recurrent Neural Networks* - 0:01: This lecture introduces sequence modeling, a class of problems involving sequential data like audio, text, and time series. - 1:32: Predicting the trajectory of a moving ball exemplifies the concept of sequence modeling, where past information aids in predicting future states. - 2:42: Diverse applications of sequence modeling are discussed, spanning natural language processing, finance, and biology. *Neurons with Recurrence* - 5:30: The lecture delves into how neural networks can handle sequential data. - 6:26: Building upon the concept of perceptrons, the idea of recurrent neural networks (RNNs) is introduced. - 7:48: RNNs address the limitations of traditional feedforward models by incorporating a "state" that captures information from previous time steps, allowing the network to model temporal dependencies. - 10:07: The concept of "state" in RNNs is elaborated upon, representing the network's memory of past inputs. - 12:23: RNNs are presented as a foundational framework for sequence modeling tasks. *Recurrent Neural Networks* - 12:53: The mathematical formulation of RNNs is explained, highlighting the recurrent relation that updates the state at each time step based on the current input and previous state. - 14:11: The process of "unrolling" an RNN is illustrated, demonstrating how the network processes a sequence step-by-step. - 17:17: Visualizing RNNs as unrolled networks across time steps aids in understanding their operation. - 19:55: Implementing RNNs from scratch using TensorFlow is briefly discussed, showing how the core computations translate into code. *Design Criteria for Sequential Modeling* - 22:45: The lecture outlines key design criteria for effective sequence modeling, emphasizing the need for handling variable sequence lengths, maintaining memory, preserving order, and learning conserved parameters. - 24:28: The task of next-word prediction is used as a concrete example to illustrate the challenges and considerations involved in sequence modeling. - 25:56: The concept of "embedding" is introduced, which involves transforming language into numerical representations that neural networks can process. - 28:42: The challenge of long-term dependencies in sequence modeling is discussed, highlighting the need for networks to retain information from earlier time steps. *Backpropagation Through Time* - 31:51: The lecture explains how RNNs are trained using backpropagation through time (BPTT), which involves backpropagating gradients through both the network layers and time steps. - 33:41: Potential issues with BPTT, such as exploding and vanishing gradients, are discussed, along with strategies to mitigate them. *Long Short Term Memory (LSTM)* - 37:21: To address the limitations of standard RNNs, Long Short-Term Memory (LSTM) networks are introduced. - 37:35: LSTMs employ "gating" mechanisms that allow the network to selectively retain or discard information, enhancing its ability to handle long-term dependencies. *RNN Applications* - 40:03: Various applications of RNNs are explored, including music generation and sentiment classification. - 40:16: The lecture showcases a musical piece generated by an RNN trained on classical music. *Attention Fundamentals* - 44:00: The limitations of RNNs, such as limited memory capacity and computational inefficiency, motivate the exploration of alternative architectures. - 46:50: The concept of "attention" is introduced as a powerful mechanism for identifying and focusing on the most relevant parts of an input sequence. *Intuition of Attention* - 48:02: The core idea of attention is to extract the most important features from an input, similar to how humans selectively focus on specific aspects of visual scenes. - 49:18: The relationship between attention and search is illustrated using the analogy of searching for relevant videos on KZread. *Learning Attention with Neural Networks* - 51:29: Applying self-attention to sequence modeling is discussed, where the network learns to attend to relevant parts of the input sequence itself. - 52:05: Positional encoding is explained as a way to preserve information about the order of elements in a sequence. - 53:15: The computation of query, key, and value matrices using neural network layers is detailed, forming the basis of the attention mechanism. *Scaling Attention and Applications* - 57:46: The concept of attention heads is introduced, where multiple attention mechanisms can be combined to capture different aspects of the input. - 58:38: Attention serves as the foundational building block for Transformer architectures, which have achieved remarkable success in various domains, including natural language processing with models like GPT. - 59:13: The broad applicability of attention beyond text data is highlighted, with examples in biology and computer vision. i summarized the transcript with gemini 1.5 pro

  • @samiragh63
    @samiragh6324 күн бұрын

    Can't be waiting for another extraordinary lecture. Thank you Alex and Ava.

  • @jamesgambrah58
    @jamesgambrah5824 күн бұрын

    As I await the commencement of this lecture, I reflect fondly on my past experiences, which have been nothing short of excellent.

  • @dg-ov4cf

    @dg-ov4cf

    22 күн бұрын

    Indeed.

  • @frankhofmann5819
    @frankhofmann581923 күн бұрын

    I'm sitting here in wonderful Berlin at the beginning of May and looking at this incredibly clear presentation! Wunderbar! And thank you very much for the clarity of your logic!

  • @jessenyokabi4290
    @jessenyokabi429023 күн бұрын

    Another extraordinary lecture FULL of refreshing insights. Thank you, Alex and Ava.

  • @pavalep
    @pavalep6 күн бұрын

    Thank you for being the pioneers in teaching Deep Learning to Common folks like me :) Thank you Alexander and Ava 👍

  • @pavinthiagu
    @pavinthiagu23 күн бұрын

    Thankyou for uploading the Lectures. Its helpful for students all around the globe.

  • @shivangsingh603
    @shivangsingh60323 күн бұрын

    That was explained very well! Thanks a lot Ava

  • @danielberhane2559
    @danielberhane25597 күн бұрын

    Thank you for another great lecture, Alexander and Ava !!!

  • @pw7225
    @pw722523 күн бұрын

    Ava is such a talented teacher. (And Alex, too, of course.)

  • @mikapeltokorpi7671
    @mikapeltokorpi767124 күн бұрын

    Very good lecture. Also perfect timing in respect of my next academic and professional steps.

  • @victortg0
    @victortg023 күн бұрын

    This was an extraordinary explanation of Transformers!

  • @AleeEnt863
    @AleeEnt86324 күн бұрын

    Thank you, Ava!

  • @shahriarahmadfahim6457
    @shahriarahmadfahim645721 күн бұрын

    Can't believe how amazingly the two lecturers squeeze so much content and explain with such clarity in an hour! Would be great if you published the lab with the preceding lecture coz the lecture ended setting up the mood for the lab haha. But not complaining, thanks again for such amazing stuffs!

  • @elaina1002
    @elaina100224 күн бұрын

    I am currently studying deep learning and find it very encouraging. Thank you very much!

  • @a0z9
    @a0z915 күн бұрын

    Ojalá todo el mundo fuera así de competente. Da gusto aprender de gente que tiene las ideas claras.

  • @srirajaniswarnalatha2306
    @srirajaniswarnalatha23066 күн бұрын

    Thanks for your detailed explanation

  • @mrkshsbwiwow3734
    @mrkshsbwiwow373411 күн бұрын

    what an awesome lecture, thank you!

  • @ghaithal-refai4550
    @ghaithal-refai45509 күн бұрын

    Thanks for the video, but statquest did better video on this topic with more details.

  • @ikpesuemmanuel7359
    @ikpesuemmanuel735924 күн бұрын

    When will the labs be available, and how can one have access? It was a great session that improved my knowledge of sequential modeling and introduced me to Self-attention. Thank you, Alex and Ava.

  • @hopeafloats
    @hopeafloats24 күн бұрын

    Amazing stuff, thanks to every one associated with #AlexanderAmini channel.

  • @anwaargh5204
    @anwaargh52048 күн бұрын

    mistake at the slide that appeared at moment (18:38), the last layer is layer t , it is not layer 3 (i.e., ... means that we have alt least one un-appeared one layer ).

  • @SandeepPawar1
    @SandeepPawar120 күн бұрын

    Fantastic 🎉 thank you

  • @gmemon786
    @gmemon78618 күн бұрын

    Great lecture, thank you! When will the labs be available?

  • @enisten
    @enisten21 күн бұрын

    How do you predict the first word? Can you only start predicting after the first word has come in? Or can you assume a zero input to predict the first word?

  • @TheViral_fyp
    @TheViral_fyp19 күн бұрын

    Wow great 👍 job buddy i wanna your book suggestion for DSA!

  • @wingsoftechnology5302
    @wingsoftechnology530210 күн бұрын

    can you please share the Lab session or codes as well to try out?

  • @giovannimurru
    @giovannimurru21 күн бұрын

    Great lecture as always! Can’t wait to start the software labs. Just curious why isn’t the website served over https? Is there any particular reason?

  • @Priyanshuc2425
    @Priyanshuc242513 күн бұрын

    Hey if possible please upload how you implement this things practically in labs. Theory is important so does practical work

  • @enisten
    @enisten13 күн бұрын

    How can we be sure that our predicted output vector will always correspond to a word? There are an infinite number of vectors in any vector space but only a finite number of words in the dictionary. We can always compute the training loss as long as every word is mapped to a vector, but what use is the resulting callibrated model if its predictions will not necessarily correspond to a word?

  • @ps3301
    @ps330119 күн бұрын

    Is there any similar lessons on liquid neural network with some real number calculation ?

  • @futuretl1250
    @futuretl12505 күн бұрын

    Recurrent neural networks are easier to understand if we understand recursion😁

  • @mdidris7719
    @mdidris771915 күн бұрын

    excellent so great idris italy

  • @chezhian4747
    @chezhian474713 күн бұрын

    Dear Alex and Ava, Thank you so much for the insightful sessions on deep learning which are the best I've come across in youtube. I've a query and would appreciate a response from you. In case if we want to translate a sentence from English to French and if we use an encoder decoder transformer architecture, based on the context vector generated from encoder, the decoder predicts the translated word one by one. My question is, for the logits generated by decoder output, does the transformer model provides weightage for all words available in French. For e.g. if we consider that there are N number of words in French, and if softmax function is applied to the logits generated by decoder, does softmax predicts the probability percentage for all those N number of words.

  • @lucasgandara4175
    @lucasgandara417524 күн бұрын

    Dude, How i'd love to be there sometime.

  • @abdelazizeabdullahelsouday8118
    @abdelazizeabdullahelsouday811822 күн бұрын

    Was waiting for it from the last one last week, Amazing ! Please i have send you an email asking for some quires, could you let me know how can i get the answers or if there is any channel to connect? thanks in advance

  • @vishnuprasadkorada1187
    @vishnuprasadkorada118724 күн бұрын

    Where can we find the software labs material ? As I am eager to implement the concepts practically 🙂 Btw I love these lectures as an ML student .... Thank you 😊

  • @abdelazizeabdullahelsouday8118

    @abdelazizeabdullahelsouday8118

    23 күн бұрын

    Plz if you know that let know, thanks in advance

  • @hakanakkurt9415

    @hakanakkurt9415

    18 күн бұрын

    @@abdelazizeabdullahelsouday8118 links in the syllabus, docs.google.com/document/d/1lHCUT_zDLD71Myy_ulfg7jaciCj1A7A3FY_-TFBO5l8/

  • @TheNewton
    @TheNewton16 күн бұрын

    51:52 Position Encoding - isn't this just the same as giving everything a number/timestep? but with a different name (order,sequence,time,etc) ,so we're still kinda stuck with discrete steps. If everything is coded by position in a stream of data wont parts at the end of the stream be further and further away in a space from the beginning. So if a long sentence started with a pronoun but then ended with a noun the pronoun representing the noun would be harder and harder to relate the two: 'it woke me early this morning, time to walk the cat'

  • @roxymigurdia1
    @roxymigurdia123 күн бұрын

    thanks daddy

  • @turhancan97
    @turhancan9722 күн бұрын

    Initially, N-gram statistical models were commonly used for language processing. This was followed by vanilla neural networks, which were popular but not enough. The popularity then shifted to RNN and its variants, despite their own limitations discussed in the video. Currently, the transformer architecture is in use and has made a significant impact. This is evident in applications such as ChatGPT, Gemini, and other Language Models. I look forward to seeing more advanced models and their applications in the future.

  • @01_abhijeet49
    @01_abhijeet4922 күн бұрын

    Miss was stressed if she made the presentation complex

  • @4threich166
    @4threich16623 күн бұрын

    Are you married? Still I love you

  • @AshokKumar-mg1wx

    @AshokKumar-mg1wx

    22 күн бұрын

    Be respectful

  • @Nasser-bp6qf

    @Nasser-bp6qf

    14 күн бұрын

    Cringe

  • @user-tb8yi9dk9f
    @user-tb8yi9dk9f19 күн бұрын

    When lab code will be released?

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