DeepEverest: Accelerating Declarative Top-K Queries for Deep Neural Network Interpretation
We design, implement, and evaluate DeepEverest, a system for the efficient execution of interpretation by example queries over the activation values of a deep neural network. DeepEverest consists of an efficient indexing technique and a query execution algorithm with various optimizations. We prove...
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Zusammenfassung: | We design, implement, and evaluate DeepEverest, a system for the efficient
execution of interpretation by example queries over the activation values of a
deep neural network. DeepEverest consists of an efficient indexing technique
and a query execution algorithm with various optimizations. We prove that the
proposed query execution algorithm is instance optimal. Experiments with our
prototype show that DeepEverest, using less than 20% of the storage of full
materialization, significantly accelerates individual queries by up to 63x and
consistently outperforms other methods on multi-query workloads that simulate
DNN interpretation processes. |
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DOI: | 10.48550/arxiv.2104.02234 |