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Anàlisi d'autories institucional

Gracia-Moran, JoaquinAutor (correspondència)Ruiz, Juan CarlosAutor o coautorDe Andres, DavidAutor o coautorSaiz-Adalid, Luis-JAutor o coautor

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1 demaig de 2025
Publicacions
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Conferència publicada
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Allocating ECC parity bits into BF16-encoded CNN parameters: A practical experience report

Publicat a: 75-80 - 2024-01-01 (), DOI: 10.1145/3697090.3697092

Autors:

Gracia-Moran, J; Ruiz, JC; de Andres, D; Saiz-Adalid, LJ
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Afiliacions

Univ Politecn Valencia, Inst ITACA, Valencia, Spain - Autor o coautor
Univ Politecn Valencia, Valencia, Spain - Autor o coautor

Resum

Using low-precision data types, like the Brain Floating Point 16 (BF16) format, can reduce Convolutional Neural Networks (CNNs) memory usage in edge devices without significantly affecting their accuracy. Adding in-parameter zero-space Error Correction Codes (ECCs) can enhance the robustness of BF16-based CNNs. However, implementing this technique raises practical questions. For instance, when the available invariant1 and non-significant2 bits in parameters for error correction are sufficient for the required protection level, the proper selection and combination of these bits become crucial. On the other hand, if the set of available bits is inadequate, converting nearly invariant bits to invariants might be considered. These decisions impact ECC decoder complexity and may affect the overall CNN performance. This report examines such implications using Lenet-5 and GoogLenet as case studies.
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Paraules clau

Bf16Convolutional neural networkError correction codes

Indicis de qualitat

Anàlisi del lideratge dels autors institucionals

Hi ha un lideratge significatiu, ja que alguns dels autors pertanyents a la institució apareixen com a primer o últim signant, es pot apreciar en el detall: Primer Autor (Gracia Morán, Joaquín) i Últim Autor (Saiz Adalid, Luis Jose).

l'autor responsable d'establir les tasques de correspondència ha estat Gracia Morán, Joaquín.

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Reconeixements vinculats a l’ítem

DEFADAS project, Grant PID2020-120271RB-I00, funded by MCIN/AEI/10.13039/501100011033
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