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SaLinA: Sequential Learning of Agents

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arxiv 2110.07910 v1 pith:DKXHRVBI submitted 2021-10-15 cs.LG cs.AI

SaLinA: Sequential Learning of Agents

classification cs.LG cs.AI
keywords salinalearningsequentialalgorithmspytorchadoptionagentsaims
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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SaLinA is a simple library that makes implementing complex sequential learning models easy, including reinforcement learning algorithms. It is built as an extension of PyTorch: algorithms coded with \SALINA{} can be understood in few minutes by PyTorch users and modified easily. Moreover, SaLinA naturally works with multiple CPUs and GPUs at train and test time, thus being a good fit for the large-scale training use cases. In comparison to existing RL libraries, SaLinA has a very low adoption cost and capture a large variety of settings (model-based RL, batch RL, hierarchical RL, multi-agent RL, etc.). But SaLinA does not only target RL practitioners, it aims at providing sequential learning capabilities to any deep learning programmer.

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