WO2024123391A1 - Repliement d'opérations de sommation cumulative à l'aide de multiplications de matrice - Google Patents
Repliement d'opérations de sommation cumulative à l'aide de multiplications de matrice Download PDFInfo
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- WO2024123391A1 WO2024123391A1 PCT/US2023/024475 US2023024475W WO2024123391A1 WO 2024123391 A1 WO2024123391 A1 WO 2024123391A1 US 2023024475 W US2023024475 W US 2023024475W WO 2024123391 A1 WO2024123391 A1 WO 2024123391A1
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- WO
- WIPO (PCT)
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- program code
- target operation
- matrix multiplication
- reformulated
- target
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Abstract
Un procédé mis en œuvre par processeur pour reformuler une opération de sommation cumulative dans un réseau neuronal artificiel comprend la réception d'un ensemble de code de programme. Une opération cible dans l'ensemble de code de programme est identifiée. L'opération cible comprend une opération de sommation cumulative. L'opération cible dans l'ensemble de code de programme est reformulée à l'aide d'une première opération de multiplication de matrice pour produire une opération cible reformulée. Un ensemble mis à jour de code de programme comprenant l'opération cible reformulée est délivré.
Applications Claiming Priority (1)
Application Number | Priority Date | Filing Date | Title |
---|---|---|---|
IN202241070368 | 2022-12-06 |
Publications (1)
Publication Number | Publication Date |
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WO2024123391A1 true WO2024123391A1 (fr) | 2024-06-13 |
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