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Main Authors: Soni, Aditya, Das, Mayukh, Parayil, Anjaly, Ghosh, Supriyo, Shandilya, Shivam, Cheng, Ching-An, Gopal, Vishak, Khairy, Sami, Mittag, Gabriel, Hosseinkashi, Yasaman, Bansal, Chetan
Format: Preprint
Published: 2024
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Online Access:https://arxiv.org/abs/2411.06815
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author Soni, Aditya
Das, Mayukh
Parayil, Anjaly
Ghosh, Supriyo
Shandilya, Shivam
Cheng, Ching-An
Gopal, Vishak
Khairy, Sami
Mittag, Gabriel
Hosseinkashi, Yasaman
Bansal, Chetan
author_facet Soni, Aditya
Das, Mayukh
Parayil, Anjaly
Ghosh, Supriyo
Shandilya, Shivam
Cheng, Ching-An
Gopal, Vishak
Khairy, Sami
Mittag, Gabriel
Hosseinkashi, Yasaman
Bansal, Chetan
contents The difficulty of exploring and training online on real production systems limits the scope of real-time online data/feedback-driven decision making. The most feasible approach is to adopt offline reinforcement learning from limited trajectory samples. However, after deployment, such policies fail due to exogenous factors that temporarily or permanently disturb/alter the transition distribution of the assumed decision process structure induced by offline samples. This results in critical policy failures and generalization errors in sensitive domains like Real-Time Communication (RTC). We solve this crucial problem of identifying robust actions in presence of domain shifts due to unseen exogenous stochastic factors in the wild. As it is impossible to learn generalized offline policies within the support of offline data that are robust to these unseen exogenous disturbances, we propose a novel post-deployment shaping of policies (Streetwise), conditioned on real-time characterization of out-of-distribution sub-spaces. This leads to robust actions in bandwidth estimation (BWE) of network bottlenecks in RTC and in standard benchmarks. Our extensive experimental results on BWE and other standard offline RL benchmark environments demonstrate a significant improvement ($\approx$ 18% on some scenarios) in final returns wrt. end-user metrics over state-of-the-art baselines.
format Preprint
id arxiv_https___arxiv_org_abs_2411_06815
institution arXiv
publishDate 2024
record_format arxiv
spellingShingle Streetwise Agents: Empowering Offline RL Policies to Outsmart Exogenous Stochastic Disturbances in RTC
Soni, Aditya
Das, Mayukh
Parayil, Anjaly
Ghosh, Supriyo
Shandilya, Shivam
Cheng, Ching-An
Gopal, Vishak
Khairy, Sami
Mittag, Gabriel
Hosseinkashi, Yasaman
Bansal, Chetan
Machine Learning
The difficulty of exploring and training online on real production systems limits the scope of real-time online data/feedback-driven decision making. The most feasible approach is to adopt offline reinforcement learning from limited trajectory samples. However, after deployment, such policies fail due to exogenous factors that temporarily or permanently disturb/alter the transition distribution of the assumed decision process structure induced by offline samples. This results in critical policy failures and generalization errors in sensitive domains like Real-Time Communication (RTC). We solve this crucial problem of identifying robust actions in presence of domain shifts due to unseen exogenous stochastic factors in the wild. As it is impossible to learn generalized offline policies within the support of offline data that are robust to these unseen exogenous disturbances, we propose a novel post-deployment shaping of policies (Streetwise), conditioned on real-time characterization of out-of-distribution sub-spaces. This leads to robust actions in bandwidth estimation (BWE) of network bottlenecks in RTC and in standard benchmarks. Our extensive experimental results on BWE and other standard offline RL benchmark environments demonstrate a significant improvement ($\approx$ 18% on some scenarios) in final returns wrt. end-user metrics over state-of-the-art baselines.
title Streetwise Agents: Empowering Offline RL Policies to Outsmart Exogenous Stochastic Disturbances in RTC
topic Machine Learning
url https://arxiv.org/abs/2411.06815