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MACHINE LEARNING MODEL SCALING SYSTEM WITH ENERGY EFFICIENT NETWORK DATA TRANSFER FOR POWER AWARE HARDWARE

机译:机器学习模型缩放系统,具有电动感知硬件的节能网络数据传输

摘要

The present disclosure is related to machine learning model swap (MLMS) framework for that selects and interchanges machine learning (ML) models in an energy and communication efficient way while adapting the ML models to real time changes in system constraints. The MLMS framework includes an ML model search strategy that can flexibly adapt ML models for a wide variety of compute system and/or environmental changes. Energy and communication efficiency is achieved by using a similarity-based ML model selection process, which selects a replacement ML model that has the most overlap in pre-trained parameters from a currently deployed ML model to minimize memory write operation overhead. Other embodiments may be described and/or claimed.
机译:本公开涉及机器学习模型交换(MLMS)框架,用于以能量和通信有效的方式选择和交换机器学习(ML)模型,同时将ML模型适应系统约束中的实时变化。 MLMS框架包括ML模型搜索策略,可以灵活地适应各种计算系统和/或环境变化的ML模型。 通过使用基于相似性的ML模型选择过程来实现能量和通信效率,该模型选择过程从当前部署的ML模型中选择具有最多重叠的替代ML模型,以最小化存储器写入操作开销。 可以描述和/或要求保护其他实施例。

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