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MLPerf Tiny Benchmark
by
Ahmed, Sebastian
, Banbury, Colby
, Parekh, Videet
, Montino, Pietro
, Torrini, Antonio
, Kiraly, Csaba
, Tran, Nhan
, Kanter, David
, Xu, Xuesong
, Tran, Honson
, Pau, Danilo
, Holleman, Jeremy
, Thakker, Urmish
, Gibellini, Stephen
, Niu Wenxu
, Jeffries, Nat
, Warden, Peter
, Duarte, Javier
, Giuseppe Di Guglielmo
, Reddi, Vijay Janapa
, Torelli, Peter
, Cordaro, Jay
in
Anomalies
/ Benchmarks
/ Image classification
/ Machine learning
/ Modular design
2021
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MLPerf Tiny Benchmark
by
Ahmed, Sebastian
, Banbury, Colby
, Parekh, Videet
, Montino, Pietro
, Torrini, Antonio
, Kiraly, Csaba
, Tran, Nhan
, Kanter, David
, Xu, Xuesong
, Tran, Honson
, Pau, Danilo
, Holleman, Jeremy
, Thakker, Urmish
, Gibellini, Stephen
, Niu Wenxu
, Jeffries, Nat
, Warden, Peter
, Duarte, Javier
, Giuseppe Di Guglielmo
, Reddi, Vijay Janapa
, Torelli, Peter
, Cordaro, Jay
in
Anomalies
/ Benchmarks
/ Image classification
/ Machine learning
/ Modular design
2021
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While trying to remove the title from your shelf something went wrong :( Kindly try again later!
Do you wish to request the book?
MLPerf Tiny Benchmark
by
Ahmed, Sebastian
, Banbury, Colby
, Parekh, Videet
, Montino, Pietro
, Torrini, Antonio
, Kiraly, Csaba
, Tran, Nhan
, Kanter, David
, Xu, Xuesong
, Tran, Honson
, Pau, Danilo
, Holleman, Jeremy
, Thakker, Urmish
, Gibellini, Stephen
, Niu Wenxu
, Jeffries, Nat
, Warden, Peter
, Duarte, Javier
, Giuseppe Di Guglielmo
, Reddi, Vijay Janapa
, Torelli, Peter
, Cordaro, Jay
in
Anomalies
/ Benchmarks
/ Image classification
/ Machine learning
/ Modular design
2021
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Paper
MLPerf Tiny Benchmark
2021
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Overview
Advancements in ultra-low-power tiny machine learning (TinyML) systems promise to unlock an entirely new class of smart applications. However, continued progress is limited by the lack of a widely accepted and easily reproducible benchmark for these systems. To meet this need, we present MLPerf Tiny, the first industry-standard benchmark suite for ultra-low-power tiny machine learning systems. The benchmark suite is the collaborative effort of more than 50 organizations from industry and academia and reflects the needs of the community. MLPerf Tiny measures the accuracy, latency, and energy of machine learning inference to properly evaluate the tradeoffs between systems. Additionally, MLPerf Tiny implements a modular design that enables benchmark submitters to show the benefits of their product, regardless of where it falls on the ML deployment stack, in a fair and reproducible manner. The suite features four benchmarks: keyword spotting, visual wake words, image classification, and anomaly detection.
Publisher
Cornell University Library, arXiv.org
Subject
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