Approximate Computing for Power and Energy Optimisation
Acronym
APROPOS
Description of the granted funding
The Approximate Computing for Power and Energy Optimisation ETN will train 15 ESRs to tackle the challenges of future embedded and high-performance computing energy efficiency by using disruptive methodologies. Following the current trend, by 2040 computers will need more electricity than the world energy resources can generate. On the communications side, energy consumption in mobile broadband networks is comparable to datacenters. To make things worse, Internet-of-Things will soon connect up to 50 billion devices through wireless networks to the cloud. APROPOS aims at decreasing energy consumption in both distributed computing and communications for cloud-based cyber-physical systems. We propose adaptive Approximate Computing to optimize energy-accuracy trade-offs. Luckily, in many parts of the global data acquisition, transfer, computation, and storage systems there exists the possibility to trade off accuracy to less power and less time consumed. As examples, numerous sensors are measuring noisy or inexact inputs; the algorithms processing the acquired signals can be stochastic; the applications using the data may be satisfied with an “acceptable” accuracy instead of exact and absolutely correct results; the system may be resilient against occasional errors; and a coarse classification may be enough for a data mining system. By introducing a new dimension, accuracy, to the design optimization, the energy efficiency can even be improved by a factor of 10x-50x. We will train the spearheads of the future generation to cope with the technologies, methodologies, and tools for successfully applying Approximate Computing to power and energy saving. The training, in this first ever ITN addressing approximate computing, is to a large extent done by researching energy-accuracy trade-offs on circuit, architecture, software, and system-level solutions, bringing together world leading experts from European organizations to train the ESR fellows.
Show moreStarting year
2020
End year
2025
Granted funding
Wirepas Oy
280 805.76 €
Participant
ECOLE CENTRALE DE LYON (FR)
274 802.04 €
Participant
UNIVERSITAT POLITECNICA DE VALENCIA (ES)
250 904.88 €
Participant
POLITECNICO DI MILANO (IT)
261 499.68 €
Participant
IBM RESEARCH GMBH (CH)
281 276.64 €
Participant
TECHNISCHE UNIVERSITEIT DELFT (NL)
265 619.88 €
Participant
POLITECNICO DI TORINO (IT)
261 499.68 €
Participant
TECHNISCHE UNIVERSITAET WIEN (AT)
264 207.24 €
Participant
UNIVERSITEIT VAN AMSTERDAM (NL)
265 619.88 €
Participant
KUNGLIGA TEKNISKA HOEGSKOLAN (SE)
281 982.96 €
Participant
THE QUEEN'S UNIVERSITY OF BELFAST (UK)
303 172.56 €
Participant
ALMA MATER STUDIORUM - UNIVERSITA DI BOLOGNA (IT)
261 499.68 €
Participant
Amount granted
4 095 308 €
Funder
European Union
Funding instrument
Marie Skłodowska-Curie Innovative Training Networks (ITN)
Framework programme
Horizon 2020 Framework Programme
Call
Programme part
EXCELLENT SCIENCE - Marie Skłodowska-Curie Actions (5220 Fostering new skills by means of excellent initial training of researchers (5221 )
Topic
Innovative Training Networks (MSCA-ITN-2020Call ID
H2020-MSCA-ITN-2020 Other information
Funding decision number
956090
Identified topics
energy, power