Silhouette: Toward Performance-Conscious and Transferable CPU Embeddings

12/15/2022
by   Tarikul Islam Papon, et al.
0

Learned embeddings are widely used to obtain concise data representation and enable transfer learning between different data sets and tasks. In this paper, we present Silhouette, our approach that leverages publicly-available performance data sets to learn CPU embeddings. We show how these embeddings enable transfer learning between data sets of different types and sizes. Each of these scenarios leads to an improvement in accuracy for the target data set.

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