SUrvey Network for Deep Imaging Analysis and Learning

Akronyymi

SUNDIAL

Rahoitetun hankkeen kuvaus

Though Big Data has become common in many domains nowadays, the challenges to develop efficient and automated mining of the ever increasing data sets by new generations of data scientists are eminent. These challenges span wide swathes of society, business and research. Astronomers with their high-tech observatories are historically at the forefront of this field, but obviously, the impact in e.g. commercial applications, security, environmental monitoring and experimental research is immense. We aim to contribute to this general discussion by training a number of young scientists in the fields of computer science and astronomy, focussing on techniques of automated learning from large quantities of data to answer fundamental questions on the evolution of properties of galaxies. While these techniques will lead to major advances in our understanding of the formation and evolution of galaxies, we will also promote, in collaboration with industry, much more general applications in society, e.g. in medical imaging or remote sensing. We have put together a team of astronomers and computer scientists, from academic and private sector partners, to develop techniques to detect and classify ultra-faint galaxies and galaxy remnants in a deep survey of the Fornax cluster, and use the results to study how galaxies evolve in the dense environment of galaxy clusters. With a team of young researchers we will develop novel computer science algorithms addressing fundamental topics in galaxy formation, such as the huge dark matter fractions inferred by theory, and the lack of detected angular momentum in galaxies. The collaboration is unique - it will develop a platform for deep symbiosis of two radically different strands of approaches: purely data-driven machine learning and specialist approaches based on techniques developed in astronomy. Young scientists trained with such skills are highly demanded both in research and business.The duration of the project was originally 48 months, till 31/3/2021. An extension of 6 months till 30/9/2021 was granted. The project therefore last 54 months which is indicated in all related project activities
Näytä enemmän

Aloitusvuosi

2017

Päättymisvuosi

2021

Myönnetty rahoitus

269 145.36 €
Participant
Algoteca de Coimbra (PT)
Participant
CHAMBRE DE COMMERCE ET DÍNDUSTRIDE REGION PARIS-ILE-DE-FRANCE (FR)
Participant
CHAMBRE DE COMMERCE ET D'INDUSTRIE DE REGION PARIS ILE-DE-FRANCE (FR)
262 875.6 €
Participant
ADCIS (FR)
Participant
CLEVERFRANKE B.V. (NL)
Participant
Target Holding BV (NL)
Participant
FUNDACION CENTRO DE TECNOLOGIAS DE INTERACCION VISUAL Y COMUNICACIONES VICOMTECH (ES)
Participant
INSTITUTO DE ASTROFISICA DE CANARIAS (ES)
247 872.96 €
Participant
ISTITUTO NAZIONALE DI ASTROFISICA (IT)
258 061.32 €
Participant
THE UNIVERSITY OF BIRMINGHAM (UK)
364 383.84 €
Participant
IBM RESEARCH GMBH (CH)
Participant
UNIVERSITA DEGLI STUDI DI NAPOLI FEDERICO II (IT)
258 061.32 €
Participant
UNIVERSITEIT GENT (BE)
501 120 €
Participant
RUPRECHT-KARLS-UNIVERSITAET HEIDELBERG (DE)
249 216.48 €
Participant
RIJKSUNIVERSITEIT GRONINGEN (NL)
1 191 746.64 €
Coordinator

Myönnetty summa

3 602 484 €

Rahoittaja

Euroopan unioni

Rahoitusmuoto

European Training Networks

Puiteohjelma

Horizon 2020 Framework Programme

Haku

Ohjelman osa
EXCELLENT SCIENCE - Marie Skłodowska-Curie Actions (5220)
Fostering new skills by means of excellent initial training of researchers (5221)
Aihe
Innovative Training Networks (MSCA-ITN-2016)
Haun tunniste
H2020-MSCA-ITN-2016

Muut tiedot

Rahoituspäätöksen numero

721463

Tunnistetut aiheet

computer science, information science, algorithms