LOCA SERIES: "Mixed-Precision Quantization techniques for Energy-efficient DNN Inference"

Data: 17/Jul/2024 Time: 11:00

Place:

[HYBRID] Room: 1-3-2, BSC Main Building and Online via Zoom.

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Abstract:

In this project, we aimed to enhance the computational efficiency and deployment feasibility of neural networks through mixed precision quantization. We implemented two quantization-aware training (QAT) methods. Our results demonstrated significant reductions in model bit-width assignments while maintaining accuracy comparable to full-precision models.
 
Speaker: Omar Lahyani
 
Short bio:
Omar Lahyani is a fifth-year engineering student at Ecole Polytechnique de Tunisie. During 2024, he worked as a research intern at Barcelona Supercomputing Center (BSC) to develop his final thesis and obtain his diploma with a project focused on efficient AI acceleration.

Speakers

Speaker: Omar Lahyani. Synthesis and Physical design of ICs, Computer Sciences, BSC.
Host: Francesc Moll. Synthesis and Physical design of ICs Group Manager, Computer Sciences, BSC.