# Questions tagged [q-learning]

Q-learning is a model-free reinforcement learning technique.

q-learning

453
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### reinforcement learning reward choices

To start with, this is not a homework thing. In my attempt to finally get a practical working knowledge of table based re-inforcement learning, I came up with a very silly and easy dice game, serving ...

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### How to define action if the actions are state-dependent and the action space are huge?

I'm trying to use RL to solve my problem. This problem has a huge state space (discrete) and a huge action space. Also, the actions available for each state are varied (depending on the state). Hence, ...

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### How can I log Q-values of DQN using custom callback from stable baselines 3 in Tensorboard?

I am trying to log Q-values using custom callback, but I am new in this field and not sure the code below is the correct way to do it.
class CustomLoggingCallback(BaseCallback):
def __init__(self, ...

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1
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41
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### Why do I get different testing result using the same Q-value table

I am studying ML and was trying to make a reinforcement learning algorithm for a gymnasium environment. I already made a q-learning for a very basic and simple problem and I decided to use the same ...

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### Understanding shapes in enviroment

import random
import numpy as np
class AbilityStone:
def __init__(self):
self.positive1 = []
self.positive2 = []
self.negative = []
self.actions_left = 30
...

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1
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41
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### How can i proceed further in this AI/ML project? [closed]

I have 10 datasets (.csv) each with 100,000 rows, with each row containing 5 inputs ( -4.0f to +4.0f) and a output column (0/1). I want to train a Neural Network using this and predict the test ...

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29
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### How to Implement 'game rules' when training a Deep Q Network

I am trying to make a Deep-Q-network that teaches itself to play modified versions of tictactoe (a m,n,k-game)
I want to make sure the network does not place a mark where there already is a mark
I ...

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77
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### What kind of reward should I set in q-learning to get values closer to the result I expect?

I'm working on a Q-learning project using OpenAI Gym and PyBullet drones. My goal is to control the height of the drone so that it stays at a height of 1 and remains stable at that point. I'm using ...

2
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1
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55
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### Haskell GriWorld Infinite loop

I'm trying to code a GridWorld simulation in Haskell via reinforcement learning. I'm stuck because I keep falling into an infinite loop on line 109. I've been staring at this problem for a week, and I ...

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### Why is my DQN exhibiting performance decrease over the training cycle to solve the Travelling Salesman Problem?

I am currently trying to train a DQN (using gym and pytorch) to solve small instances of the Travelling salesman problem (for now I just want to solve a size 10 problem as I know it is capable of ...

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### Does anyone have an Atari breakout Deep Q-learning implementation that works?

I have been trying to use the implementation that is provided by Keras but get this error:
19 # Use the Baseline Atari environment because of Deepmind helper functions
---> 20 env = make_atari(&...

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### Pytorch deepQL code that fail when using tensor.flatten() instead a One Hot Encoding function

Im working on a DeepQL code but i have found a problem I have been unable to solve, the short Story is that I have a code that works 100% reading from the enviroment class an integer and passing ...

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1
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334
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### Does initializing a Q-table with zeros introduce bias towards the first action in reinforcement learning? [closed]

I'm working on a reinforcement learning problem where I've initialised the Q-table with zeros. I noticed that when all Q-values for different actions are initially set to zero, the arg-max function ...

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77
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### Game-like model in Q-learning

I have a modeling question. I am sorry I am new to reinforcement learning.
Suppose we have a game in the style pacman. the agent has access to left-front, center-front, right-front circles and must ...

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### Using non-negative derivative to enforce same results between functions

I have been reading the paper QMIX: Monotonic value function factorisation for deep multi-agent reinforcement Learning to understand some concepts about Q-function factorisation. There is this part ...

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### How to resolve the issue of Input layer expects different dimensions

--------------------------------------------------------------------------
ValueError Traceback (most recent call last)
Cell In[92], line 5
3 dqn_only_embedding = ...

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1
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### Qtable index out of bounds

Im trying to make a simple Q-learning AI in gms2, but im horrible messing with grinds and aways get the same problem when i try to update the qTable:
index out of bounds
project is simple, the AI can ...

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1
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### flappy bird linear q leanring approximation don't learn

Before asking for help, I apologize for my English. I'm from Switzerland, so it is not my first language. I am currently building a reinforcement learning bot to learn how to play Flappy Bird. I am ...

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82
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### Q Learning agent taking too many steps to reach goal

I'm currently working on implementing Q-learning for the FrozenLake-v1 environment in OpenAI Gym. However, my agent seems to like taking a lot of unnecessary steps to get to the goal. I've reviewed my ...

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1
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79
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### Python Gymnasium Render being forced

I'm new to gym and I tried to do a simple qlearning programm but for some (weird) reason it won't let me get rid of the rendering part (which is taking forever)...
Here is my programm:
import ...

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56
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### How to do Q learning delayed reward

I am making a game. In this game all agensts interacts with each other and next state and reward
can be calculated after all agents’ action is determined.
I want to train agent’s action based on Q ...

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### In the context of Reinforcement Learning, specifically the Deep Q Learning algorithm, the training process based on not meaningful target values?

In the context of Reinforcement Learning, specifically the Deep Q Learning algorithm,
the online network is trained by minimizing the loss function between Q-values predicted by the online network and ...

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### How to avoid infinite changes per action in non-terminal Deep Q learning

To my knowledge, Deep Q learning with gradient descent follows a process of:
Initialise random weights and biases
Take an action from starting state
Determine reward
Make changes to weights and ...

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1
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358
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### Q-table not updating in FrozenLake-v1 environment using Q-learning

I'm currently working on implementing Q-learning for the FrozenLake-v1 environment in OpenAI Gym. However, my Q-table doesn't seem to be updating during training, and it remains filled with zeros. I'...

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### How can I edit this Q-learning code's logic playing Chopsticks(hand game)?

def reverse_state(state): # reverse the state
return np.array([state[1, :],state[0, :]])
def env(Q, epsilon, eta, gamma, pi):
state = np.array([[1, 1], [1, 1]]) # 초기 상태 first state
turn = ...

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32
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### Issue with Agent Collecting 10 Products and Returning to Starting Point in a 12x11 Matrix

I have a 12x11 matrix. I want my agent to start from row 0, column 5 (reward points 1) and collect 10 products (reward points 100) and return to the starting point again. The problem is that once the ...

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1
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104
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### Training deep q neural network to drive physical robot through a maze. Calculating q values of all possible actions too computationally expensive

I am trying to train a neural network to navigate a physical robot through a maze. I have no training data and have to use reinforcement learning to train it. I am using a deep q network. However I am ...

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55
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### In Cartpole-v1 gym, can we solve the environment with only the linear and angular position through Q-Learning?

I'm trying to solve the cartpole-v1 gym environment with only the linear and angular position, but the mean reward of the last 100 episodes isn't greater than 20 rewards. The longest train i made was ...

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63
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### When the action is to move right in CartPole, it moves to the left side. Why it is like that? How can this be resolved?

In my experiments, I'm using OpenAI's CartPole-v1 environment. I need to set a state and then perform an action on that state. When I perform a specific action, it does not behave as expected. For ...

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### Vectorizing a loop via numpy for qlearner/dyna-q implementation

I have a 100 x 4 sized 2d numpy array A (q table), and another array B (experience table) that gets continuously updated with a 4 element tuple (representing state, action, state_prime, reward). I ...

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145
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### Problem with Q-learning/TD(0) for Tic-Tac-Toe

I have some bug in my code that apparently prevents my actors from learning the game properly. The code is an implementation of tabular q-learning, where the intention is to simultaneously train two ...

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0
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113
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### How to go from an episodic task to a continuing one

I have implemented a Q-Learning algorithm for an episodic undiscounted (i.e. discount factor = 1) task. The task is to escape from a predator, so the way I have implemented it now is to set a maximum ...

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1
answer

521
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### Difficulty Implementing DQN for Gym's Taxi-v3 Problem

I've been working on solving the Gym Taxi-v3 problem using reinforcement learning algorithms. Initially, I applied tabular Q-learning and after 10,000 training iterations, the algorithm achieved a ...

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101
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### TypeError: 'NoneType' object is not iterable in batch = Transition(*zip(*transitions))

There is an error in the line batch = Transition(*zip(*transitions)).
TypeError: 'NoneType' object is not iterable
def optimize_model():
if len(memory) < BATCH_SIZE:
return
...

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1
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118
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### Is there a mathematical proof of the effectiveness of the target network trailing in Deep Q learning?

It seems to be common practice in Deep Q-learning to have the target network trailing the main network, and syncing them every 100 or so steps, but I am not clear as to why that is.
The best ...

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1
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53
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### i am facing this error in q learning how can i fix this?

how to Fix this error occurring in Q-learning algorithm
**how to Fix this error occurring in Q-learning algorithm**
action=np.argmax(Q[stateS,:])
stateSprime, reward, done, ...

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1
answer

114
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### "No execution and no error messages when running 'dqn.test' "

When running the code scores = dqn.test(env, nb_episodes=100, visualize=False), I am encountering an issue where the execution takes a long time without producing any output or error messages. The ...

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1
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416
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### In a DQN for Q-learning, how should I apply high gamma values during experience replay?

I'm using pyTorch to implement a Q-Learning approach to card game, where the rewards come only at the end of the hand when a score is calculated. I am using experience replay with high gammas (0.5-0....

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2
answers

418
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### Why is q_table[state, action] giving me an index error?

I am trying to make a reinforcement learning model using GYM library by OpenAI and using the Frozen Lake environment initialized as:
env = gym.make("FrozenLake-v1")
While coding the q-...

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1
answer

486
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### Q Learning code error while running how can I fix it?

I am trying to write a simple python program that implements Q-Learning on the OpenAI Gym Environment Frozen Lake. I found the program code on data camp website you will find the code and link below:
...

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### Computing loss in Deep Q Learning having a Q network with multiple outputs

I am currently trying to understand and implement DQN on a small self-coded snake replica. I can't find anything specific regarding this problem, every DQN tutorial/explanation I come across tends to ...

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1
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### What is the difference between grid[index] VS grid[index, :] in python

In this https://colab.research.google.com/drive/1gS2aJo711XJodqqPIVIbzgX1ktZzS8d8?usp=sharing , they used np.max(qtable[new_state, :])
But I did an experiment and I don't understand the need of : . My ...

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152
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### MellowMax operator returning +INF

MellowMax is a softmax operator that can be used instead of Max in the context of Deep Q Learning. Using Mellow Max has been shown to remove the need for a target network. Link to paper: https://arxiv....

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1
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### only integers, slices (`:`), ellipsis (`...`), numpy.newaxis (`None`) and integer or boolean arrays are valid indices while using Q table

I am getting this error while using Q learning method with openai gym
IndexError Traceback (most recent call last)
~\AppData\Local\Temp\ipykernel_10800\268253893.py in &...

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1
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141
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### Deep Q Learning Approach for the card game Schnapsen

So I have a DQN Agent that plays the card game Schnapsen. I wont bore you with the details of the game as they are not so related to the question I am about to ask. The only important point is that ...

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1
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### I am working on 'https://berkeleyai.github.io/cs188-website/project3.html' reinforcement learning in Pacman project

In this project we are asked to will implement value iteration and Q-learning, and test our agents first on Gridworld (from class), then apply them to a simulated robot controller (Crawler) and Pacman....

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### Defining state and action for Q-learning in the code

I am trying to understand the following code for the simulator to avoid collision with the help of Q-learning. The examples and tutorials which I followed had the space divided into blocks such as ...

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### python The truth value of an array with more than one element is ambiguous. Use a.any() or a.all() in q-learning

`
def state_to_bucket(state):
bucket_indice = []
for i in range(len(state)):
max_bucket = NUM_BUCKETS[i] - 1
minimum = STATE_BOUNDS[i][0]
maximum = STATE_BOUNDS[i][1]
...

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1
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46
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### confusion in selecting reward in q-learning

I am new to the field of Q-learning (QL) and I am trying to implement a small task using QL in MATLAB. The task is : Say there is one transmitter, one receiver and between them there are 10 relays. ...

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1
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369
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### DQN not converging

I am trying to implement DQN in openai-gym's "lunar lander" environment.
It shows no sign of converging after 3000 episodes for training. (for comparison, a very simple policy gradient ...