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Evaluating Pretrained models for Deployable Lifelong Learning

Authors :
Lekkala, Kiran
Bhargava, Eshan
Ge, Yunhao
Itti, Laurent
Publication Year :
2023

Abstract

We create a novel benchmark for evaluating a Deployable Lifelong Learning system for Visual Reinforcement Learning (RL) that is pretrained on a curated dataset, and propose a novel Scalable Lifelong Learning system capable of retaining knowledge from the previously learnt RL tasks. Our benchmark measures the efficacy of a deployable Lifelong Learning system that is evaluated on scalability, performance and resource utilization. Our proposed system, once pretrained on the dataset, can be deployed to perform continual learning on unseen tasks. Our proposed method consists of a Few Shot Class Incremental Learning (FSCIL) based task-mapper and an encoder/backbone trained entirely using the pretrain dataset. The policy parameters corresponding to the recognized task are then loaded to perform the task. We show that this system can be scaled to incorporate a large number of tasks due to the small memory footprint and fewer computational resources. We perform experiments on our DeLL (Deployment for Lifelong Learning) benchmark on the Atari games to determine the efficacy of the system.<br />Comment: In submission to CoLLA 2024. Also published in the Proceedings of WACV 2024 Workshop on Pretraining

Details

Database :
arXiv
Publication Type :
Report
Accession number :
edsarx.2311.13648
Document Type :
Working Paper