Feb. 7, 2024, 5:42 a.m. | Idan Achituve Idit Diamant Arnon Netzer Gal Chechik Ethan Fetaya

cs.LG updates on arXiv.org arxiv.org

As machine learning becomes more prominent there is a growing demand to perform several inference tasks in parallel. Running a dedicated model for each task is computationally expensive and therefore there is a great interest in multi-task learning (MTL). MTL aims at learning a single model that solves several tasks efficiently. Optimizing MTL models is often achieved by computing a single gradient per task and aggregating them for obtaining a combined update direction. However, these approaches do not consider an …

aggregation bayesian cs.lg demand gradient inference machine machine learning multi-task learning running tasks uncertainty

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