Research

Computational engineering to tackle global challenges.

Cimne menu projects

Discover our latest research projects

Innovation

Delivering tangible solutions for the benefit of all.

Cimne menu nuclear

See how advanced simulation enhances nuclear safety

Community

A thriving network of global innovators, thinkers, and life-long learners in numerical methods.

Cimne menu unesco

Learn how the UNESCO Chair in Numerical Methods spearheads frontier innovation in the Global South

About

We are a pioneering research and innovation centre in computational engineering, founded in 1987.

Cimne menu people

People at CIMNE: Meet the talent that makes it possible.

See how advanced simulation enhances nuclear safety

Learn how the UNESCO Chair in Numerical Methods spearheads frontier innovation in the Global South

News

Back

eFlows4HPC is now an affiliated project of the HiPEAC network

May 7, 2021

eFlows4HPC is now an affiliated project of the HiPEAC network. eFlows4HPC aims to deliver a workflow software stack and an additional set of services to enable the integration of HPC simulations and modelling with big data analytics and machine learning in scientific and industrial applications.

The software stack will allow creating innovative adaptive workflows that efficiently use the computing resources considering novel storage solutions. On top of this software stack, the project will build an HPC Workflow as a Service (HPCWaaS) platform to facilitate the reusability of these complex workflows in federated HPC infrastructure.

hipeac

The goal is to provide methodologies and tools that enable sharing and reuse of existing workflows and that assist when adapting workflow templates to create new workflow instances. The project aims to demonstrate the workflow software stack through use cases of three application Pillars with high industrial and social relevance: manufacturing, climate, and urgent computing for natural hazards.

Related News

CIMNE-ETSII Lab Uses AI and Satellite Data to Monitor Water Quality
CIMNE-ETSII Lab Uses AI and Satellite Data to Monitor Water Quality

Experts at the CIMNE-UPM ETSII Lab (Aula CIMNE-UPM ETSII) have evaluated the effectiveness of Machine Learning (ML) and satellite imagery to assess water quality in inland settings. In a recent study, Ms. Laura Cáceres, Dr Jorge Rodríguez Chueca and Dr David J....

Tags

Share: