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FVLLMONTI: The 3D Neural Network Compute Cube (N2C 2 ) Concept for Efficient Transformer Architectures Towards Speech-to-Speech Translation

Authors : Ian O’Connor (Embedded Systems Laboratory (ESL)), Sara Mannaa (Embedded Systems Laboratory (ESL))

Conférence : Communications avec actes dans un congrès international - 31/03/2024 - Design, Automation and Test in Europe Conference | The European Event for Electronic System Design & Test

This multi-partner-project contribution introduces
the midway results of the Horizon 2020 FVLLMONTI project.
In this project we develop a new and ultra-efficient class of ANN
accelerators, the neural network compute cube (N
2C2), which is specifically designed to execute complex machine learning tasks in a 3D technology, in order to provide the high computing power and ultra-high efficiency needed for future edgeAI applications.
We showcase its effectiveness by targeting the challenging class of Transformer ANNs, tailored for Automatic Speech Recognition and Machine Translation, the two fundamental components of speech-to-speech translation. To gain the full benefit of the accelerator design, we develop disruptive vertical transistor technologies and execute design-technology-co-optimization (DTCO) loops from single device, to cell and compute cube level. Further, a hardware-software-co-optimization is executed, e.g. by compressing the executed speech recognition and translation models for
energy efficient executing without substantial loss in precision.