Founding offer · lifetime membership for a single £24, exclusive to our first members · closes 20 June Claim your place →
Global Research Partnerships £24 Lifetime Log inCreate free account

Funded Projects › H2020

ChipAI · Energy-efficient and high-bandwidth neuromorphic nanophotonic Chips for Artificial Intelligence systems

H2020Status: CLOSED1 March 201930 November 2022EU funding €3,892,005Call H2020-FETOPEN-2018-2020

The same way the internet revolutionized our society, the rise of Artificial Intelligence (AI) that can learn without the need of explicit instructions is transforming our life. AI uses brain inspired neural network algorithms powered by computers. However, these central processing units (CPU) are extremely energy inefficient at implementing these tasks. This represents a major bottleneck for energy efficient, scalable and portable AI systems. Reducing the energy consumption of the massively dense interconnects in existing CPUs needed to emulate complex brain functions is a major challenge. ChipAI aims at developing a nanoscale photonics-enabled technology capable of deliver compact, high-bandwidth and energy efficiency CPUs using optically interconnected spiking neuron-like sources and detectors. ChipAI will pursue its main goal through the exploitation of Resonant Tunnelling (RT) semiconductor nanostructures embedded in sub-wavelength metal cavities, with dimensions 100 times smaller over conventional devices, for efficient light confinement, emission and detection. Key elements developed are non-linear RT nanoscale lasers, LEDs, detectors, and synaptic optical links on silicon substrates to make an economically viable technology. This platform will be able to fire and detect neuron-like light-spiking (pulsed) signals at rates 1 billion times faster than biological neurons (>10 GHz per spike rates) and requiring ultralow energy (<10 fJ). This radically new architecture will be tested for spike-encoding information processing towards validation for use in artificial neural networks. This will enable the development of real-time and offline portable AI and neuromorphic (brain-like) CPUs. In perspective, ChipAI will not only lay the foundations of the new field of neuromorphic optical computing, as will enable new non-AI functional applications in biosensing, imaging and many other fields where masses of cheap miniaturized pulsed sources and detectors are needed.

Consortium · 9 organisations

coordinator

INTERNATIONAL IBERIAN NANOTECHNOLOGY LABORATORY

PT · €653,625

participant

FCIENCIAS.ID - ASSOCIACAO PARA A INVESTIGACAO E DESENVOLVIMENTO DE CIENCIAS

PT · €287,500

participant

IBM RESEARCH GMBH

CH · €509,156

participant

IQE plc

UK · €380,000

thirdParty

FACULDADE DE CIENCIAS DA UNIVERSIDADE DE LISBOA

PT

participant

UNIVERSITAT DE LES ILLES BALEARS

ES · €256,875

participant

UNIVERSITY OF GLASGOW

UK · €660,223

participant

TECHNISCHE UNIVERSITEIT EINDHOVEN

NL · €604,701

participant

UNIVERSITY OF STRATHCLYDE

UK · €539,925

Research fields

View the official record on CORDIS →

← Find collaborators and more funded projects

Source: CORDIS, Publications Office of the European Union. Global Research Partnerships surfaces open EU research data to help you find collaborators; we are not affiliated with the European Union.