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Dataset supporting publication "Realisation of early-exit dynamic neural networks on reconfigurable hardware"

Dataset supporting publication "Realisation of early-exit dynamic neural networks on reconfigurable hardware"
Dataset supporting publication "Realisation of early-exit dynamic neural networks on reconfigurable hardware"
This dataset supports the publication " Realisation of Early-Exit Dynamic Neural Networks on Reconfigurable Hardware " to be published in the IEEE Transactions on Computer-Aided Design of Integrated Circuits and Systems. This dataset contains: - 'Fig5a.csv': Data supporting Fig. 5 (a): Experimental results comparing average Execution Time per sample. Average values are calculated based on each exit point trigger rate (ai). - 'Fig5b.csv': Data supporting Fig. 5 (b): Experimental results comparing average Energy Consumption per sample. Average values are calculated based on each exit point trigger rate (ai). - 'Fig6a.csv': Data supporting Fig. 6 (a): Comparison of the pipeline and parallel designs over average execution time across early-exit LeNet-5, AlexNet, VGG19 and ResNet32. - 'Fig6b.csv': Data supporting Fig. 6 (b): Comparison of the pipeline and parallel designs over average energy consumption across early-exit LeNet-5, AlexNet, VGG19 and ResNet32. - 'Fig6c.csv': Data supporting Fig. 6 (c): Comparison of the pipeline and parallel designs over average data movement across early-exit LeNet-5, AlexNet, VGG19 and ResNet32. - 'Table2.csv': Data supporting TABLE II: Execution Time (ms). - 'Table3.csv': Data supporting TABLE III: Energy Consumption (mJ), with (w/ EE) and without (w/oEE) early exits. - 'Table4.csv': Data supporting TABLE IV: Performance Comparison With Exisiting Implementations. - 'Fig7a.csv': Data supporting Fig. 7 (a): On an 3 point early-exit Resnet-32 shows each exit’s trigger rate for different Confidence Thresholds. - 'Fig7b.csv': Data supporting Fig. 7 (b): On an 3 point early-exit Resnet-32 the percentage difference of parallel over pipeline approaches over Energy and Time for different Confidence Thresholds. Related projects: Engineering and Physical Sciences Research Council (EPSRC) under EP/S030069/1 Licence: CC BY 4.0
University of Southampton
Dimitriou, Anastasios
02f87799-17dc-4271-96c3-8b30e64e659e
Xun, Lei
d30d0c37-7c17-4eed-b02c-1a0f81844f17
Hare, Jonathon
65ba2cda-eaaf-4767-a325-cd845504e5a9
Merrett, Geoff
89b3a696-41de-44c3-89aa-b0aa29f54020
Dimitriou, Anastasios
02f87799-17dc-4271-96c3-8b30e64e659e
Xun, Lei
d30d0c37-7c17-4eed-b02c-1a0f81844f17
Hare, Jonathon
65ba2cda-eaaf-4767-a325-cd845504e5a9
Merrett, Geoff
89b3a696-41de-44c3-89aa-b0aa29f54020

Dimitriou, Anastasios (2024) Dataset supporting publication "Realisation of early-exit dynamic neural networks on reconfigurable hardware". University of Southampton doi:10.5258/SOTON/D3174 [Dataset]

Record type: Dataset

Abstract

This dataset supports the publication " Realisation of Early-Exit Dynamic Neural Networks on Reconfigurable Hardware " to be published in the IEEE Transactions on Computer-Aided Design of Integrated Circuits and Systems. This dataset contains: - 'Fig5a.csv': Data supporting Fig. 5 (a): Experimental results comparing average Execution Time per sample. Average values are calculated based on each exit point trigger rate (ai). - 'Fig5b.csv': Data supporting Fig. 5 (b): Experimental results comparing average Energy Consumption per sample. Average values are calculated based on each exit point trigger rate (ai). - 'Fig6a.csv': Data supporting Fig. 6 (a): Comparison of the pipeline and parallel designs over average execution time across early-exit LeNet-5, AlexNet, VGG19 and ResNet32. - 'Fig6b.csv': Data supporting Fig. 6 (b): Comparison of the pipeline and parallel designs over average energy consumption across early-exit LeNet-5, AlexNet, VGG19 and ResNet32. - 'Fig6c.csv': Data supporting Fig. 6 (c): Comparison of the pipeline and parallel designs over average data movement across early-exit LeNet-5, AlexNet, VGG19 and ResNet32. - 'Table2.csv': Data supporting TABLE II: Execution Time (ms). - 'Table3.csv': Data supporting TABLE III: Energy Consumption (mJ), with (w/ EE) and without (w/oEE) early exits. - 'Table4.csv': Data supporting TABLE IV: Performance Comparison With Exisiting Implementations. - 'Fig7a.csv': Data supporting Fig. 7 (a): On an 3 point early-exit Resnet-32 shows each exit’s trigger rate for different Confidence Thresholds. - 'Fig7b.csv': Data supporting Fig. 7 (b): On an 3 point early-exit Resnet-32 the percentage difference of parallel over pipeline approaches over Energy and Time for different Confidence Thresholds. Related projects: Engineering and Physical Sciences Research Council (EPSRC) under EP/S030069/1 Licence: CC BY 4.0

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More information

Published date: 2024

Identifiers

Local EPrints ID: 497282
URI: http://eprints.soton.ac.uk/id/eprint/497282
PURE UUID: 0a6c31b0-ef1b-4240-8da6-cda4c9a569ac
ORCID for Jonathon Hare: ORCID iD orcid.org/0000-0003-2921-4283
ORCID for Geoff Merrett: ORCID iD orcid.org/0000-0003-4980-3894

Catalogue record

Date deposited: 17 Jan 2025 17:41
Last modified: 24 Feb 2025 05:01

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Contributors

Creator: Anastasios Dimitriou
Contributor: Lei Xun
Research team head: Jonathon Hare ORCID iD
Research team head: Geoff Merrett ORCID iD

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