Questions tagged [reinforcement-learning]

Reinforcement learning is an area of machine learning and computer science concerned with how to select an action in a state that maximizes a numerical reward in a particular environment.

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'UnityEnvironment' object has no attribute 'get_agent_groups' ( mlagents_envs 0.16.1 )

python version as Python 3.6.10 :: Anaconda, Inc. And was able to follow this docs successfully But then i want to control environment with PYTHON-API so i followed this and with my code from ...
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PPO vs A3C parallelized performance variation

I am currently running a custom environment in parallel using openai and Ray and I've run into a curious development. For whatever reason, I am getting wildly different computational speeds from PPO ...
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'UnityEnvironment' object has no attribute 'behavior_spec'

I followed this link to doc to create environment of my own. But when i run this from mlagents_envs.environment import UnityEnvironment env = UnityEnvironment(file_name="v1-ball-cube-game.x86_64") ...
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Deep Q Learning implementation on Tensorflow 2.2

I have some doubts over the implementation of deep Q networks in Tensorflow 2.2. The doubts arise because I do not really understand how Tensorflow does back-propagation for deep q networks. I am also ...
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Why not use simulated environment as an known model to do model-based reinforcement learning

I'm a newbee in DRL, what I have seen is that many cases used a simulated model as RL learning envrionment to do model-free RL, such as DQN family and PG family. So the question is 1, we already have ...
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Number of time steps in one iteration of RLlib training

I am new to reinforcement learning and I am working on the RL of a custom environment in OpenAI gym with RLlib. When I create a custom environment, do I need to specify the number of episodes in the ...
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19 views

Unexpected action distribution for custom RL environment

I am working on creating a custom environment and training a RL agent on it. I am using stable-baselines because it seems to implement all the latest RL algorithms, and seems to be as close to "plug ...
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Tic tac toe game not learning to win

In this tic tac toe game using RL I penalize the agent if it does not win. The RL agent is player X. The model trains for 10'000 episodes. To determine the q values I update just the array indices for ...
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Show the Q table with Q values

I am working with Q learning with python. I have a Q values as : {(1, 0): {'down': 0, 'right': 2, 'up': 0, 'left': 0}, (0, 1): {'down': 1, 'right': 1, 'up': 0, 'left': 0}, (1, 1): {'down': 2, 'right':...
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In a DQN, can Prioritized Experience Replay actually perform worse than a regular Experience Replay?

I've written a Double DQN-based stock trading bot using mainly time series stock data. I've recently upgraded my Experience Replay(ER) code with a version of Prioritized Experience Replay (PER) ...
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1answer
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How to connect output layers to the input layer of another neural network?

The Actor-network has 5 input neurons representing the state values and will produce one output value held by one output neuron. The Q Network has 6 input neurons: 5 representing the state values ...
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How to use the NEAT AI module to build an AI game using pygame and python

I am making an AI that plays Chrome's Dino game. I am using pygame to build the game. This is my first AI project and as a result I am referencing a series of tutorials on youtube where the guy makes ...
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REINFORCE algorithm for a continuous action space

I have recently started exploring and playing around with reinforcement learning, and have managed to wrap my head around discrete action spaces, and have working implementations of a few environments ...
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Train an agent to play Snake Game using TD algorithms

I was trying to use my knowledge gained from this course to implement an RL agent for playing the classic game of snake. In most of the examples given in internet , this task has been done by using ...
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Image to Text - Pytesseract struggles with digits on windows

I'm trying to preprocess frames of a game in real-time for a ML project. I want to extract numbers from the frame, so I chose Pytesseract, since it looked quite good with text. Though, no matter how ...
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Tensorflow.js constant retraining

I have a application were we gather and classify images triggered by motion detection. We have a model trained on a lot of images that works OK. I have converted it to TF.js format and are able to ...
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RuntimeError: the derivative for 'indices' is not implemented

I am following this online tutorial for coding a DQN,https://github.com/philtabor/Youtube-Code-Repository/blob/master/ReinforcementLearning/DeepQLearning/torch_deep_q_model.py , however I am running ...
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AttributeError: type object 'FooEnv' has no attribute 'reset'

I am new in Python and I faced with a problem in my code. I try to build my custom environment for a Deep Q-Network program. The name of my environment is "FooEnv".But when I run the main code, I ...
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Minimax DQNAgent with TensorFlow Agents

I've taken a look at the docs here: https://www.tensorflow.org/agents/tutorials/1_dqn_tutorial Also at the implementation of various agents and policies here: https://github.com/tensorflow/agents/...
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RuntimeError: Error(s) in loading state_dict for Actor - torch.load()

I have created a custom environment in open ai gym and i am facing error while loading the weights Could some one help me to resolve the issue . I am training a TD3 network in a custom environment ...
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Reinforcement learning with hard constraints

The environment is a directed graph that consists of nodes which have their own "goodness"(marked green) and edges that have prices(marked red). In this environment exists Price(P) constraint. The ...
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Why Unity's ML-Agents are not working with Google Colab

I am trying to train ML-Agents on Google colab but every time it fails with the same given error. WARNING:tensorflow:From /usr/local/lib/python3.6/dist-packages/tensorflow_core/python/compat/...
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Difficulty in training Lunar Lander Discrete

I have implemented DQN and A2C algorithm using Tensor Flow 2 and python 3.6 . It worked well in Cartpole (it learned how to play in about 100 episodes it scored about 150 and later improved to 500 ...
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Deep Reinforcement Learning detailed algorithm [closed]

I've been searching for a reference containing a detailed deep reinforcement learning algorithm, but couldn't find one that fits my needs up to this moment. I've come through many simplified pseudo-...
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PyTorch Model Training: RuntimeError: cuDNN error: CUDNN_STATUS_INTERNAL_ERROR

After training a PyTorch model on a GPU for several hours, the program fails with the error RuntimeError: cuDNN error: CUDNN_STATUS_INTERNAL_ERROR Training Conditions Neural Network: PyTorch 4-...
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25 views

using gather on argmax is different than taking max

I'm trying to learn to train a double-DQN algorithm on tensorflow and it doesn't work. to make sure everything is fine I wanted to test something. I wanted to make sure that using tf.gather on the ...
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1answer
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Is it okay to remove most oldest experiences of DQN

I have created a DQN with a max memory size of 100000. I have a function that removes the oldest element in the memory if its size is greater than the max size. When I ran it doing 200 episodes, I ...
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Can a computer learn strategies of a game by analyzing others' game? [closed]

I'm wondering if there is any reinforcement learning technique capable of learning how to play a game and some strategies from it simply by analyzing matches played by others instead of playing it ...
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Is this example of off policy correct?

I am reading Sutton and Barto and want to make sure I am clear. For Off Policy learning can we think of a robot in a particular terrain - say on sand - as the target policy but use the robot's policy ...
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Create custom environment in openai gym with game screen as observation

I have made a game using PyGame. I want to use output of the game screen as the custom as the observation rather than a set of distances and angles. (I have seen the documentation to make custom ...
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1answer
25 views

Tensorflow Reinforcement Learning RNN returning NaN's after Optimization with GradientTape

def create_example_model(): tf.keras.backend.set_floatx('float64') model = Sequential() model.add(LSTM(128, input_shape=((60, len(df_train.columns))))) model.add(Dense(64, activation='...
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q-agent is really broken, can't decide between a reward of 0 and -1

I was using a dqn for something; it wasn't working. I simplified the problem so that there are 2 actions: 0 and 1. Each action corresponds to a single reward: 0 or -1. Still, my q agent is ...
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should dqn state values need to be 0 to 1 only

should the values of the state in DQN need to be only 0 to 1 for example state = [0, 0, 0, 1, 1, 1, 1, 0, 1, 0] or it can have a state with values greater than 1 eh state = [6, 5, 4, 1, 1, 1, 2, 3, ...
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Ray RLllib: Export policy for external use

I have a PPO policy based model that I train with RLLib using the Ray Tune API on some standard gym environments (with no fancy preprocessing). I have model checkpoints saved which I can load from and ...
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Is learning and cumulative reward a good metrics to evaluate a RL model?

i am new to reinforcement learning. I have a problem here that i am using DQN on. I have plotted a cumulative reward curve while learning and taking actions. After 100 episodes and it shows a lot of ...
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Why does the monobeast update the parameters of actor and critic at the same time?

In the original paper of IMPALA, the state value estimation and the policy output are outputs of the same lstm layer, so the actor and critic are exactly the same network with the same parameters. And ...
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Pytorch: Backpropogate more than one loss

I want to backpropogate more than one sample. That means more than one loss in PyTorch. I want to do that at a specific timestamp. I am trying to do that: losso = 0 for g, logprob in ...
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Optimal betting strategy using neural networks

Imagine that we have a classic guess game that has only two possible variants – 1 or 0 which are set randomly. Each time you guess right, you take a reward equals to your bet. And if you guess wrong, ...
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Is there any standard code structure for implementation of AI-based algorithms (ML, DL, RL) using Python?

I have worked actively on AI-based algorithms including ML, DL and recently RL. I'm aware of designing ANN or DNN are up AI-developer, and It's empirical. However, still, I'm wondering if there is any ...
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How to set initial queue length (queue_count) in simmer R?

I am trying to run a simmer environment multiple times with a changing initial queue. How can a set an initial queue? I tried set_queue_count() but this function does not exist. As follows you can ...
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48 views

Why target action is computed with respect to random actions in Reinforcement Learning loss

I understand the theory behind Policy Gradient algorithms. My question here is related to the basic REINFORCE algorithm, and in particular I'm a bit confused with the trick made usually to translate ...
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No step set via 'step' argument or tf.summary.experimental.set_step()

I am receiving this error in my pyhon code for deep reinforcement learning, "No step set via 'step' argument or tf.summary.experimental.set_step()" This is the code for reinforcement learning using ...
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29 views

State values in Deep Reinforcment Learning

I am learning deep reinforcement learning. I'm a bit confused in state values. Is it possible to use dynamic values in states or do we have to use discrete values and create a state for each value we ...
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Reinforcement Learning - Walking simulator with moving obstacles

My project is to build an assistive system for navigating blind people in outdoor environments. I plan to apply reinforcement learning which takes an RGB image as an input and outputs the action to ...
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Tensorflow 2 ValueError: Shapes (20, 1) and (20, 2) are incompatible in gym environment

Just for learning I wanted to test this code. But there is a problem in it. I do not understand the problem. It says: ValueError: Shapes (20, 1) and (20, 2) are incompatiblefrom the line loss = ...
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TicTacToe with Policy Gradient not working

I want to implement the policy gradient algorithm from RL for the game TIC-TAC-TOE. I have watched some examples. E.g. https://www.youtube.com/watch?v=UT9pQjVhcaU&t=724s But when I simulate my ...
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Tensorflow 2 ValueError: No gradients provided for any variable: ['dense_20/kernel:0', 'dense_20/bias:0', 'dense_21/kernel:0', 'dense_21/bias:0']

I am implementing the Policy gradient algorithm for TIC-TAC-TO. In my neural network I want to tune my weights according the loss function with Adam optimizer. It is not working. Error: ValueError:...
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Tensorflow 2: How can I use AdamOptimizer.minimize() for updating weights

In the first Tensorflow it was possible to just minimize()without any var_list. In Tensorflow 2 it is important to have a var_listincluded. In my project I want to use the policy gradient algorithm to ...
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How to solve UserWarning: Using a target size (torch.Size([])) that is different to the input size (torch.Size([1]))?

I am trying to run code from a book I purchased about reinforcement learning in Pytorch. The code should work according to the book, but for me the model doesn't converge and the reward remains ...
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How to define the reward function in reinforcement learning?

Im working on a project lately and im trying to solve a problem with reinforcement learning and i have serious issues with shaping the reward function. The problem is designing a device with maximum ...

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