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Paper

MADQRL: Distributed Quantum Reinforcement Learning Framework for Multi-Agent Environments

by Abhishek Sawaika arxiv/2604.11131
Free2AITools Nexus Index
35.9
S: Semantic 50

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A: Authority 0
P: Popularity 0
R: Recency 68
Q: Quality 60
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Reinforcement learning (RL) is one of the most practical ways to learn from real-life use-cases. Motivated from the cognitive methods used by humans makes it a widely acceptable strategy in the field of artificial intelligence. Most of the environments used for RL are often high-dimensional, and traditional RL algorithms becomes computationally expensive and challenging to effectively learn from such systems. Recent advancements in practical demonstration of quantum computing (QC) theories, s...

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Registry ID 2604.11131
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BibTeX
@misc{arxiv_2604_11131,
  author = {Abhishek Sawaika},
  title = {MADQRL: Distributed Quantum Reinforcement Learning Framework for Multi-Agent Environments Paper},
  year = {2026},
  howpublished = {\url{https://arxiv.org/abs/2604.11131}},
  note = {Accessed via Free2AITools.}
}
APA Style
Abhishek Sawaika. (2026). MADQRL: Distributed Quantum Reinforcement Learning Framework for Multi-Agent Environments [Paper]. Free2AITools. https://arxiv.org/abs/2604.11131

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Semantic (S) 50

Query-time baseline · scored live at search

Authority (A) 0
Popularity (P) 0
Recency (R) 68
Quality (Q) 60

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FNI V2.0 for MADQRL: Distributed Quantum Reinforcement Learning Framework for Multi-Agent Environments: Authority (A:0), Popularity (P:0), Recency (R:68), Quality (Q:60). Semantic (S) is a query-time baseline scored live at search.

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πŸ“ Executive Summary

"Reinforcement learning (RL) is one of the most practical ways to learn from real-life use-cases. Motivated from the cognitive methods used by humans makes it a widely acceptable strategy in the field of artificial intelligence. Most of the environments used for RL are often high-dimensional, and traditional RL algorithms becomes computationally expensive and challenging to effectively learn from such systems. Recent advancements in practical demonstration of quantum computing (QC) theories, s..."

❝ Cite Node

@article{Sawaika2026MADQRL:,
  title={MADQRL: Distributed Quantum Reinforcement Learning Framework for Multi-Agent Environments},
  author={Abhishek Sawaika},
  journal={arXiv preprint arXiv:2604.11131},
  year={2026}
}

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Abhishek Sawaika

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⏱️68RecencyFNI pillar
βœ…60QualityFNI pillar
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id
2604.11131
slug
2604.11131
source
arxiv
author
Abhishek Sawaika
license
arXiv
tags
arxiv:cs.AI, arxiv:cs.LG, arxiv:cs.MA, reinforcement

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