Loading…

Loading grant details…

Active HORIZON European Commission

Application Aware, Life-Cycle Oriented Model-Hardware Co-Design Framework for Sustainable, Energy Efficient ML Systems

€3.74M EUR

Funder European Commission
Recipient Organization Proyectos Y Sistemas de Mantenimiento Sl
Country Spain
Start Date Oct 01, 2022
End Date Jun 30, 2026
Duration 1,368 days
Number of Grantees 7
Roles Participant; Coordinator; Associated Partner
Data Source European Commission
Grant ID 101070408
Grant Description

AI is increasingly becoming a significant factor in the CO2 footprint of the European economy.

To avoid a conflict between sustainability and economic competitiveness and to allow the European economy to leverage AI for its leadership in a climate friendly way, new technologies to reduce the energy requirements of all parts of AI system are needed. A key problem is the fact that tools (e.g.

PyTorch) and methods that currently drive the rapid spread and democratization of AI prioritize performance and functionality while paying little attention to the CO2 footprint.

As a consequence, we see rapid growth in AI applications, but not much so in AI applications that are optimized for low power and sustainability.

To change that we aim to develop an interactive design framework and associated models, methods and tools that will foster energy efficiency throughout the whole life-cycle of ML applications: from the design and exploration phase that includes exploratory iterations of training, testing and optimizing different system versions through the final training of the production systems (which often involves huge amounts of data, computation and epochs) and (where appropriate) continuous online re-training during deployment for the inference process.

The framework will optimize the ML solutions based on the application tasks, across levels from hardware to model architecture.

AI developers from all experience levels will be able to make use of the framework through its emphasis on human-centric interactive transparent design and functional knowledge cores, instead of the common blackbox and fully automated optimization approaches in AutoML.

The framework will be made available on the AI4EU platform and disseminated through close collaboration with initiatives such as the ICT 48 networks.

It will also be directly exploited by the industrial partners representing various parts of the relevant value chain: from software framework, through hardware to AI services.

All Grantees

Institut National de Recherche En Informatique Et Automatique; Proyectos Y Sistemas de Mantenimiento Sl; Ibm Research Gmbh; Sas Upmem; Kobenhavns Universitet; Deutsches Forschungszentrum Fur Kunstliche Intelligenz Gmbh; Rheinland-Pfalzische Technische Universitat

Advertisement
Apply for grants with GrantFunds
Advertisement
Browse Grants on GrantFunds
Interested in applying for this grant?

Complete our application form to express your interest and we'll guide you through the process.

Apply for This Grant