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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Distance between deterministic policies that are not probability distributions

This question asks if there is a way to measure distance between policies that are in fact probability distributions. In the case of continuous control with deterministic policies where they take a ...
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MountainCar openAI gym reset

In the documentation of MountainCar, it is said that the start position should be between -0.6 and -0.4. When printing the starting state for several trials, I found that the results is more between -...
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Looking for a multiagent payload transport simulation RL environments

Hi I'm looking for any multiagent payload transport environments publicly available for experimentation, like the one shown here https://youtu.be/7gE_n6b5-LM Any similar environments where the agents ...
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Python Open AI Gym Model.learn() getting error

I am trying to do CartRacing-v2 env. When I run mode.learn I'm getting error import gym from stable_baselines3 import PPO from stable_baselines3.common.vec_env import DummyVecEnv from ...
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How can we approximate infinite horizon MDP with finite horizon MDP in the context of reinforcement learning?

For a given value of "discount factor" (and reward values' range) in fixed finite horizon markov decision process (MDP), upto how many episodes we have to extend this MDP so that we can ...
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How to use JAX vmap to efficiently calculate importance sampling estimate

I have code to calculate the off-policy importance sampling estimate commonly used in reinforcement learning. It is not important to know what that is, but for someone who does it might help them ...
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How can i render openai gym in windows python3(cartpole)

The programs I use are colab, vscode, vscode-jupyter, kaggle, pycharm. Pyton version 3.10.7 I tried to render the cartpole environment in every program I use. I tried many different gym package ...
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Reinforcement learning with multiple variables and products

I have been reading a lot about Reinforcement Learning (RL) lately, All the material covers about applying RL to one Item (Predicting price of a single stock, price of a single flight) using one ...
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The 'Box' object has no attribute 'spaces'

I'm trying to implement a game class where you have to stay in the 49-51 number range as long as possible. The state space is given by a range from 0 to 100, the initial state is the number 47 or the ...
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Need the source code of Human-level control through deep reinforcement learning [closed]

i am reading the paper:Human-level control through deep reinforcement learning.can i find the source code of the paper in internet? i google github,find some people's implementation,but i want to find ...
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How to include Temporal Difference in Monte Carlo Tree Search?

Im wondering how TD can be included in MCTS to enhance its learning? Most TD applications use the Reward obtained in the next state S', however, in MCTS rewards are obtained after a whole rollout, so, ...
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Whenever I try to use env.render() for OpenAIgym I get "AssertionError"?

I am trying to learn Reinforcement learning. I wanted to build a Reinforcement Learning model for autonomous driving. However, whenever I use env.render() while training the Reinforcement learning ...
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My Heap allocation dramatically increase while running a DQN in python

My DQN implementation is as follows: class DQNAgent(nn.Module): def __init__(self, state_size, action_size): super().__init__() self.state_size = state_size self....
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Tensorflow DqnAgent policy vs collect_policy

Since there is no explanation in the TF API doc on what collect_policy really is, I looked into the source code: https://github.com/tensorflow/agents/blob/master/tf_agents/agents/dqn/dqn_agent.py Can ...
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Variable actions in Deep Reinforcement Learning

I'm trying to teach an AI the combat mechanics of a system similar to Darkest Dungeon. The goal is for the AI to be able to act well controlling NPCs with random stats and random skills. This means ...
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Understanding Markov Property further

I was studying about the markov property in reinforcement learning, which is supposed to be one of the important assumptions of this field. In that it says, that while considering the probability of ...
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How to access training metrics with a custom logger in Stable Baselines 3?

With stable baselines 3 it is possible to access metrics and info of the environment by using self.training_env.get_attr("your_attribute_name"), however, how does one access the training ...
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Learning MDP but this Lotto question has me stumped

I'm trying to understand MDP more as I get into reinforcement learning but this question has me stumped. if anyone has any clues as to how I would be best to go about this: Assume that Bob has $20 to ...
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Trivial DQN RL does not converge. ML model does not choose the obvious and trivial answer

I am working on a DQN hypothetical project just to learn how to use the environments. I have successfully tested GYM DQN environments and also have customized it with certain degree of success. The ...
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how is a neural network used in reinforcement learning?

so far i have a game, i run 1000 rounds of the game performing random moves. The state of the board , the reward and the action taken are all stored. then the same game is played, but befor each ...
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Choosing a neural network architecture for Snake AI Agent [closed]

I'm new to machine learning and reinforcement learning, and I'm attempting to create an AI agent that learns to play Snake. I am having trouble choosing / developing a neural network architecture that ...
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How to set your own value function in Reinforecement learning?

I am new to using reinforcement learning, I only read the first few chapters in R.Sutton (so I have a small theoretical background). I try to solve a combinatorial optimization problem which can be ...
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Scale / normalize a SINGLE sample of different features

The existing normalization / scaling methods use multiple samples of features for techniques like min-max normalization, or scaling by subtracting mean and dividing by standard deviation. For example, ...
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Coordinates x and y in respect to the boundaries of a surface - Action Space RL

I have been reading a research paper about placing an item in a constrained area like the surface of a box or a pallet and I found equations about the coordinates x and y that I didn't understand. The ...
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Multi-agent reinforcement learning versus multi-objective reinforcement learning

everyone. What is the difference between Multi-agent reinforcement learning and Multi-objective reinforcement learning? And can you explain the pros and cons of the two methods? I think both methods ...
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How to have multiple actions for multiple agents at the same time using DQN

I work on DQN with 12 agents in my environment. At the same time, each agent has a different state and is supposed to take a different action. But when I try to send all 12 states at the same time to ...
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Why does GradientTape behave differently when watching loop operations as opposed to array operations?

There is something about the workings of GradientTape that escapes my understanding. Suppose we want to train an agent on the classic bandit problem using an actor-critic RL framework. There are two ...
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Deep Q Network Reinforcement learning on RC car track - Understanding Rewards + Backpropagation

I have used openai’s gyms and done some basic reinforcement learning tutorials found on medium and YouTube. These are all using virtual environments. I am now struggling to understand how to adapt ...
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Ray monitoring fails when binding to empty address

I'm learning to use RLlib. I've been running it in my debugger on an example script, and it works, but for some reason I get an error message about the monitoring service failing. This is the ...
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I want to start reinforcement learning but I have some error so I can't make any progress

I'm trying to start reinforcement learning in Window by using vscode but have some errors. import gym #from tqdm import tqdm from gym.envs.registration import register import msvcrt class _Getch: ...
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Add a regularization term to the objective of a stable-baseline3 model

I'm using stable-baseline3's PPO implementation (see here) and wanted to play with the model a little bit further. More specifically, I wanted to add a regularization term to the objective which ...
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Problem with Deep Sarsa algorithm which work with pytorch (Adam optimizer) but not with keras/Tensorflow (Adam optimizer)

I have a deep sarsa algorithm which work great on Pytorch on lunar-lander-v2 and I would use with Keras/Tensorflow. It use mini-batch of size 64 which are used 128 time to train at each episode. There ...
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time series prediction with feedback

I have a multi-dimensional data, but it misses target variable. I want a model to predict a value for this data that could be passed to my loss function which can be then used as a feedback for ...
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OPenAI Gym Retro error: "AttributeError: module 'gym.utils.seeding' has no attribute 'hash_seed'"

I am using WSL2 and Ubuntu 20.4, I create a fresh virtual enviroment using (venv), and install gym-retro as the OpenAI official page states (https://retro.readthedocs.io/en/latest/getting_started.html)...
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Pygame Nash Equlibruim

I'm a beginner in Python, I'm trying to create a game based on the concept of the prisoner's dilemma from the game theory. My goal is then to incorporate an AI(Q-learning...) for player 2 to see if he ...
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Multiprocessing in StableBaselines3 - how is batch size distributed?

I am following this multiprocessing notebook. I want to understand how the batch_size parameter of the model is distributed across the multiple environments. I have a model trained with 1 worker on 1 ...
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Episode Length and train_batch_size compatibility with RLLib PPO

I have created a custom single agent Gym environment which I am trying to train using a quite a simple action space and reward function. self.action_space = spaces.MultiDiscrete([3, 3]) Each gym step ...
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OpenAI Gym CarRacing

I want to create a reinforcement learning model using stable-baselines3 PPO that can drive OpenAI Gym Car racing environment and I have been having a lot of errors and package compatibility issues. I ...
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What controls the second dimension of tf observations/ what a qnet accepts in its place?

Short version. I cant find the variable(s) that control either: A) The 2nd dimension of a variable in a trajectory, eg the 3 in Trajectory({'action': <tf.Tensor: shape=(64, 3), or B) the number of ...
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DQN can't converge

i am work on a project.i use the dqn to maximize return. this picture are some env states. i found that dqn did learn a bit, but after a while it stopped improving and even started to decline. this my ...
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Vowpal Wabbit Contextual Bandit correct usage

I am currently using the Vowpal Wabbit package in order to simulate a Contextual Bandit. I had a couple of questions regarding the usage of the library: I have multiple contexts/categories where the ...
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How to create action space in GYM with only two values 0 or 1

I want an action space which will have only 2 values of 0 or 1. I have created using the following code. from gym import spaces import numpy as np space = spaces.Box(np.array([0]),np.array([1])) print(...
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Reinforcement Learning with DQN approach on stock prices

I have programmed a reinforcement model with a DQN approach that is supposed to make purchase decisions based on stock prices. For the training I use two stock prices. One has an upward trend and one ...
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How to input images in rllib

last time I saw library rllib: https://docs.ray.io/en/latest/rllib/index.html. It has amazing features for reinforcement learning, but unfortunately, I couldn't find a way to input images as an ...
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AttributeError: 'RandomAgent' object has no attribute 'update_parameters' Error

class for agent code class RandomAgent: """ This taxi driver selects actions randomly. You better not get into this taxi! """ def __init__(self, env): ...
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Difference between Matched Rewards and Observed Rewards in Azure Personalizer?

Question in title. I've been searching around and can't seem to find much of an explanation about the two. Say you have a model that uses 20% of the rank calls for exploration. I suspect matched ...
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Where is source for tensorflow gym environments implementation

I need to implement custom tensorflow gym environment to use it with tf agents. Is there a code on Github for "standard" gym environment? Eg cart pole Please note this is tensorflow specific ...
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Comparison of behavior of reinforcement learning models (3D Balance Ball Environment)

I have two models and I want to compare their behavior. The environment I am using is quite similar to the 3D Balance Ball Environment. Therefore, I have implemented a discretization of the area of ...
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ValueError: The truth value of an array with more than one element is ambiguous. Use a.any() or a.all() while training Reinforcement learning agent

I am trying to run a deep reinforcement learning algorithm DDPG USING Keras-rl2 on a gym environment provided by the robo-gym (https://github.com/jr-robotics/robo-gym) library. I am facing this error ...
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How to set total_timesteps in Stable-Baseline, model.learn() function?

I'm using Stable-Baseline to train A2C model. My data length is 9000. So how many total_timesteps in model.learn should I set? model.learn(total_timesteps = 9000) # ? I did some research and some ...
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