Difference between revisions of "User:Pschiavo"
From iis-projects
(→Introduction) |
(→Project description) |
||
Line 25: | Line 25: | ||
* [[Hardware Accelerators for Lossless Quantized Deep Neural Networks]] (semester/master thesis) | * [[Hardware Accelerators for Lossless Quantized Deep Neural Networks]] (semester/master thesis) | ||
* If you have your personal idea, you can also contact me for projects! | * If you have your personal idea, you can also contact me for projects! | ||
− | |||
− | |||
− | |||
− | |||
− | |||
− | |||
− | |||
− | |||
− | |||
− | |||
==Required Skills== | ==Required Skills== | ||
To work on this project, you will need: | To work on this project, you will need: |
Revision as of 10:16, 14 June 2019
Contents
Pasquale Davide Schiavone
Pasquale Davide Schiavone is a PhD student at the Integrated Systems Laboratory of ETH Zurich in the Digital Systems group led by Prof. Luca Benini. He obtained a BSc. and a MSc. from "Politecnico di Torino" in computer engineering in 2013 and 2016 respectively. His main research focus is on low-power energy-efficient computer architectures for Internet-Of-Things systems and brain-machine interfaces through EEG and neural action potential signals.
From January to June 2018 I visited the Centre of Bio-Inspired Technology at Imperial College London in the Next Generation Neural Interfaces group.
Interests
- Computer and System Architecture
- Digital ASIC Design
- Embedded systems
- Heterogeneous multicore architectures for energy-efficient and low-power embedded systems
- Brain-Machine interface
Available projects
- Implementation of the RISC-V Bit Manipulation (RVB) extensions for our RISC-V core (semester/master thesis)
- Arnold: Developing efficient IoT data processing applications for a versatile PULPissimo-based SoC in 22nm FDSOI (semester/master thesis)
- Cerebellum: Design of a Programmable Smart-Peripheral for the Ariane Core (semester/master thesis)
- Design of Scalable Event-driven Neural-Recording Digital Interface (semester/master thesis)
- Hardware Accelerators for Lossless Quantized Deep Neural Networks (semester/master thesis)
- If you have your personal idea, you can also contact me for projects!
Required Skills
To work on this project, you will need:
- to have worked in the past with at least one RTL language (SystemVerilog or Verilog or VHDL) - having followed the VLSI1 class or equivalent is mandatory, VLSI2 course recommended
- to have prior knowledge in assembler/C program language
Other skills that you might find useful include:
- to be strongly motivated for a difficult but super-cool project
If you want to work on this project, but you think that you do not match some the required skills, we can give you some preliminary exercise to help you fill in the gap.
Status: Available
- Supervision: Pasquale Davide Schiavone, Robert Balas, Florian Zaruba
Professor
Completed projects
- Deep Learning for Brain-Computer Interface (semester thesis)
Contact Information
- Office: J89
- e-mail: pschiavo@iis.ee.ethz.ch