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Scalability Bottlenecks in Multi-Agent Reinforcement Learning Systems

Scalability Bottlenecks in Multi-Agent Reinforcement Learning Systems

10 February 2023
Kailash Gogineni
Peng Wei
Tian-Shing Lan
Guru Venkataramani
ArXivPDFHTML

Papers citing "Scalability Bottlenecks in Multi-Agent Reinforcement Learning Systems"

8 / 8 papers shown
Title
Emergence of Roles in Robotic Teams with Model Sharing and Limited Communication
Emergence of Roles in Robotic Teams with Model Sharing and Limited Communication
Ian O'Flynn
Harun Šiljak
23
0
0
01 May 2025
Task Offloading in Vehicular Edge Computing using Deep Reinforcement Learning: A Survey
Task Offloading in Vehicular Edge Computing using Deep Reinforcement Learning: A Survey
Ashab Uddin
Ahmed Hamdi Sakr
Ning Zhang
OffRL
62
0
0
10 Feb 2025
SwiftRL: Towards Efficient Reinforcement Learning on Real
  Processing-In-Memory Systems
SwiftRL: Towards Efficient Reinforcement Learning on Real Processing-In-Memory Systems
Kailash Gogineni
Sai Santosh Dayapule
Juan Gómez Luna
Karthikeya Gogineni
Peng Wei
Tian-Shing Lan
Mohammad Sadrosadati
Onur Mutlu
Guru Venkataramani
50
10
0
07 May 2024
AccMER: Accelerating Multi-Agent Experience Replay with Cache
  Locality-aware Prioritization
AccMER: Accelerating Multi-Agent Experience Replay with Cache Locality-aware Prioritization
Kailash Gogineni
Yongsheng Mei
Peng Wei
Tian-Shing Lan
Guru Venkataramani
18
13
0
31 May 2023
Towards Efficient Multi-Agent Learning Systems
Towards Efficient Multi-Agent Learning Systems
Kailash Gogineni
Peng Wei
Tian-Shing Lan
Guru Venkataramani
27
4
0
22 May 2023
MAC-PO: Multi-Agent Experience Replay via Collective Priority
  Optimization
MAC-PO: Multi-Agent Experience Replay via Collective Priority Optimization
Yongsheng Mei
Hanhan Zhou
Tian-Shing Lan
Guru Venkataramani
Peng Wei
39
38
0
21 Feb 2023
Accelerating Training and Inference of Graph Neural Networks with Fast
  Sampling and Pipelining
Accelerating Training and Inference of Graph Neural Networks with Fast Sampling and Pipelining
Tim Kaler
Nickolas Stathas
Anne Ouyang
A. Iliopoulos
Tao B. Schardl
C. E. Leiserson
Jie Chen
GNN
70
53
0
16 Oct 2021
Multi-Agent Reinforcement Learning for Problems with Combined Individual
  and Team Reward
Multi-Agent Reinforcement Learning for Problems with Combined Individual and Team Reward
Hassam Sheikh
Ladislau Bölöni
39
36
0
24 Mar 2020
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