Proximal Policy Optimization | ChatGPT uses this

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  • čas přidán 28. 08. 2024

Komentáře • 38

  • @CodeEmporium
    @CodeEmporium  Před 8 měsíci +5

    Thanks for watching! If you think I deserve it, please consider hitting that like button as it will help spread this channel. More break downs to come!

  • @martinleykauf6857
    @martinleykauf6857 Před 12 dny

    Hi! I'm writing my thesis currently and using PPO in my project. Your video was of great help to get a more intuitive understanding about the algorithm! Keep it up man, very very helpful.

  • @user-mx9eu5bb7i
    @user-mx9eu5bb7i Před 8 měsíci +4

    I like the clarity that your video provides. Thanks for this primer. A couple things, though, that were a bit unclear and perhaps you could elaborate on here in the comments.
    - It wasn't obvious to me how/why you would submit all of the states at once (to either network) and update with an average loss as opposed to training on each state independently. I get that we have an episode of related/dependent states here -- maybe that's why we use the average instead of the directly associated discounted future reward?
    - Secondly, in your initial data sampling stage you collected outputs from the policy network. During the training phase of the network it looks like you're sampling again but your values are different. How is this possible unless you're network has changed somehow? Maybe you're using drop-out or something like that?
    Forgive the questions -- I'm just learning about this methodology for the first time.

    • @user-zl7km3jx1k
      @user-zl7km3jx1k Před měsícem

      I'm also interested in the answer to the second question.

  • @user-ir1pm2pd1k
    @user-ir1pm2pd1k Před 6 měsíci +4

    Hi! Great video! Could you answer my question about training policy? This happening on 10:00. Why obtained probability of actions are different from probs, taken on gathering data? I think that we havent changed policy network before this action. So, if we havent changed network yet, on 10:08 we would have received ratio == 1 on every step(

  • @srivatsa1193
    @srivatsa1193 Před 8 měsíci

    I ve really enjoyed this series so far. Great work ! The world needs more pasionate teachers like youeself. Cheers!

    • @CodeEmporium
      @CodeEmporium  Před 8 měsíci

      Thanks so much for the kind words I really appreciate it :)

  • @vastabyss6496
    @vastabyss6496 Před 8 měsíci +7

    What's the purpose of having a separate policy network and value network? Wouldn't the value network already give you the best move in a given state, since we can simply select the action the value network predicts will have the highest future reward?

    • @yeeehees2973
      @yeeehees2973 Před 5 měsíci

      More to do with balancing exploration/exploitation, as simply picking the maximum Q-value from the value network yields suboptimal results due to limited exploration. Alternatively, using on a policy network would yield too noisy updates, resulting in unstable training.

    • @sudiptasarkar4438
      @sudiptasarkar4438 Před 4 měsíci

      ​@@yeeehees2973I feel that this video is misleading at 02:06. Previously I thought value function objective is to estimate the max reward value of current state, but this guy is saying otherwise

    • @yeeehees2973
      @yeeehees2973 Před 4 měsíci +1

      @@sudiptasarkar4438 the Q-values inherently try to maximize the future rewards, so a Q value of being in a certain state can be interpreted as maximums future reward given this state.

    • @patrickmann4122
      @patrickmann4122 Před 3 měsíci

      It helps with something called “baselining” which is a variance reduction technique to improve policy gradients

    • @user-vr3pt7yp9d
      @user-vr3pt7yp9d Před 2 měsíci +1

      That’s because this kind of algorithm deals with continuous action not like DQN. That’s the key point of involving policy gradient to Q-learning which is the value network.

  • @ericgonzales5057
    @ericgonzales5057 Před 6 měsíci +2

    WHERE DID YOU LEARN THIS?!??! PLEASE ANSWER

  • @swagatochakraborty2583
    @swagatochakraborty2583 Před 5 měsíci

    Great presentation. One question : why the policy network is a separate network than the value network? Seems like the probability of the actions should be based on estimating the expected reward values I think in my Coursera course on Reinforcement learning - I saw they were using the same network and simply copying over the weights from one to another. So they were essentially the time shifted version of the same network and trained just once.

  • @ZhechengLi-wk8gy
    @ZhechengLi-wk8gy Před 8 měsíci

    Like your channel very much, looking forward to the coding part of RL.😀

  • @ashishbhong5901
    @ashishbhong5901 Před 8 měsíci

    Good presentation and break down of concepts. Liked your video.

  • @burnytech
    @burnytech Před měsícem

    Great stuff mate

  • @0xabaki
    @0xabaki Před 6 měsíci

    haha finally no one has done quiz time yet!
    I propose the following answers:
    0) seeing the opportunity cost of an action is low
    1) A
    2) B
    3) D

  • @2_Tou
    @2_Tou Před 3 měsíci

    I think the calculation shown on 5:45 is not the advantage.
    The advantage of an action is calculated by taking the average value of all actions in that state and find the difference between the average value and the value of the action you are interested in.
    That calculation looks more like a MC target to me.
    Please point out if I made a mistake because I always do...

  • @pushkinarora5800
    @pushkinarora5800 Před 27 dny

    Q1: B
    Q2: B
    Q3:B

  • @OPASNIY_KIRPI4
    @OPASNIY_KIRPI4 Před 7 měsíci

    Please explain how you can apply back propagation over the network simply by using a single loss number? As far as I understand, an input vector and a target vector are needed to train a neural network. I will be very grateful for an explanation.

    • @CodeEmporium
      @CodeEmporium  Před 7 měsíci

      The single loss is “back propagated” through the network to compute the gradient of the loss with respect to each parameter of the network. This gradient is later used by an optimizer algorithm (like gradient descent) to update the neural network parameter, effectively “learning”. I have a video coming out on this tomorrow explaining back propagation in my new playlist “Deep Learning 101”. So do keep an eye out for this

    • @OPASNIY_KIRPI4
      @OPASNIY_KIRPI4 Před 7 měsíci +1

      Thanks for the answer! I'm waiting for a video on this topic.

  • @victoruzondu6625
    @victoruzondu6625 Před 5 měsíci

    What are vf updates and how do we get the value for our clipped ratio.
    You didn't seem to explain them
    I could only tell the last quiz is a B because the other options complement the policy nextwork not the value network

  • @footube3
    @footube3 Před 7 měsíci

    Could you please explain what up, down, left and right signify. In which data structure are we going up, down, left or right?

    • @CodeEmporium
      @CodeEmporium  Před 7 měsíci

      Up down left and right are individual actions that an agent can possibly take. You could store these data types in an “enum” and sample a random action from this

  • @obieda_ananbeh
    @obieda_ananbeh Před 8 měsíci

    Thank you!

  • @inderjeetsingh2367
    @inderjeetsingh2367 Před 8 měsíci

    Thanks for sharing 🙏

  • @paull923
    @paull923 Před 8 měsíci +1

    Great video! Especially, the quizzes are a good idea. B B B I‘d say

    • @CodeEmporium
      @CodeEmporium  Před 8 měsíci +2

      Thanks so much! It’s fun making them too. I thought it would be a good way to engage. And yep the 3 Bs sound right to me too 😊

  • @zakariaabderrahmanesadelao3048
    @zakariaabderrahmanesadelao3048 Před 8 měsíci +2

    The answer is B.

  • @BboyDschafar
    @BboyDschafar Před 8 měsíci

    FEEDBACK.
    Either from experts/ teachers, or from the enviroment.

  • @sashayakubov6924
    @sashayakubov6924 Před 3 měsíci

    I did not understand nothing... apparently I'll need to ask chatgpt for clarificaions

  • @id104442304
    @id104442304 Před 7 měsíci +1

    bbb