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QuaRL: Quantization for Fast and Environmentally Sustainable
  Reinforcement Learning

QuaRL: Quantization for Fast and Environmentally Sustainable Reinforcement Learning

2 October 2019
Srivatsan Krishnan
Maximilian Lam
Sharad Chitlangia
Zishen Wan
Gabriel Barth-Maron
Aleksandra Faust
Vijay Janapa Reddi
    MQ
ArXivPDFHTML

Papers citing "QuaRL: Quantization for Fast and Environmentally Sustainable Reinforcement Learning"

5 / 5 papers shown
Title
HEPPO: Hardware-Efficient Proximal Policy Optimization -- A Universal Pipelined Architecture for Generalized Advantage Estimation
HEPPO: Hardware-Efficient Proximal Policy Optimization -- A Universal Pipelined Architecture for Generalized Advantage Estimation
Hazem Taha
Ameer M. S. Abdelhadi
35
1
0
22 Jan 2025
The Impact of Quantization and Pruning on Deep Reinforcement Learning
  Models
The Impact of Quantization and Pruning on Deep Reinforcement Learning Models
Heng Lu
Mehdi Alemi
Reza Rawassizadeh
34
1
0
05 Jul 2024
Neural Network Compression for Reinforcement Learning Tasks
Neural Network Compression for Reinforcement Learning Tasks
Dmitry A. Ivanov
D. Larionov
Oleg V. Maslennikov
V. Voevodin
OffRL
AI4CE
43
0
0
13 May 2024
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
44
10
0
07 May 2024
ProSky: NEAT Meets NOMA-mmWave in the Sky of 6G
ProSky: NEAT Meets NOMA-mmWave in the Sky of 6G
Ahmed Benfaid
N. Adem
Abdurrahman Elmaghbub
11
1
0
13 Oct 2022
1