Fabrizio Ottati

Ph.D. in Ingegneria Elettrica, Elettronica E Delle Comunicazioni , 36th cycle (2020-2023)

Ph.D. obtained in 2024

Dissertation:

Efficient Deep Learning Inference: A Digital Hardware Perspective - Evaluating and improving performance and efficiency of artificial and spiking neural networks hardware accelerators (Abstract)

Tutors:

Luciano Lavagno Mario Roberto Casu

Research presentation:

Poster

Profile

Research topic

Efficient hardware architectures for brain-inspired computing

Research interests

Big Data, Machine Learning, Neural Networks and Data Science
Micro- and nanotechnologies, devices, systems and applications
VLSI theory, design and applications

Biography

Fabrizio Ottati received the Bachelor of Science (2017) and Master of Science (2020) degrees in Electronic Engineering at Politecnico di Torino, where he has joined the doctoral program in Electrical, Electronics and Communications Engineering, in 2020.
His main research activities focus on innovative digital architectures for the brain-inspired computing paradigm. In particular, he is interested in the Hyperdimensional Computing, Spiking Neural Networks, silicon retinas and neuromorphic computing. He is deeply involved with the open-source neuromorphic community, collaborating with researchers from all over the world and maintaining many open-source projects.

Teaching

Teachings

Master of Science

MostraNascondi A.A. passati

Publications

Works published during the Ph.D. View all publications in Porto@Iris