Ferroelectric-enhanced analog accelerators for robust, ultra-low power edge intelligence

Ferroelectric-enhanced analog accelerators for robust, ultra-low power edge intelligence

Description of the granted funding

A future driven by artificial intelligence (AI)-enhanced systems is expected to make our life easier, safer, or simply more entertaining. Yet, achieving these expectations in the realm of smart and interconnected devices (internet of things, 6G wireless communication, smart health monitoring, etc.) requires solving crucial challenges in the computation of AI models. Most importantly, computing these models on classical processors requires excessive computing power. In this project, we propose to investigate extremely energy-efficient neuromorphic computing, i.e., computing systems inspired by our brain, based on novel ferroelectric devices that are able to mimic biological computing mechanisms. We will create a library of these devices, fabricated and modelled, and ready to be integrated into typical computer-aided design tools used to design microelectronic systems. This also paves the way to building unique, multi-faceted neuromorphic expertise in Finland.
Show more

Starting year

2024

End year

2026

Granted funding


Jussi Ryynänen Orcid -palvelun logo
444 082 €

Martin Andraud Orcid -palvelun logo
444 082 €


Funder

Research Council of Finland

Funding instrument

Targeted Academy projects

Other information

Funding decision number

359046

Fields of science

Electronic, automation and communications engineering, electronics

Research fields

Sähkötekniikka ja elektroniikka
Ferroelectric-enhanced analog accelerators for robust, ultra-low power edge intelligence - Research.fi