Université de Lorraine

(Postdoc offer) Statistical and Tensor Methods for Spatiotemporal Heterogeneous Data Analysis

2024-12-31 (Europe/Paris)
Guardar trabajo

Offer Description

We are offering a postdoc position on the development of statistical and tensor decomposition methods for representation learning of heterogeneous data with application to the analysis neuroimaging data.

Location: The CRAN laboratory (University of Lorraine) at Nancy, France, with visits to the MLSP laboratory (UMBC) in Maryland, USA. The candidate will work with Prof. Sebastian Miron, Dr. Ricardo Borsoi and Prof. David Brie in the CRAN laboratory, Nancy, and with Prof. Tülay Adali at the MLSP laboratory, UMBC, USA.

The starting date is flexible (the position is open until filled).

Description: The analysis of spatiotemporal data is a fundamental problem in multiple domains such as neuroscience, epidemiology, climate science and pollution monitoring. Developing representation learning methods for spatiotemporal data that can effectively and jointly handle data from diverse modalities poses a significant challenge. A particular difficulty is to devise flexible models which are directly interpretable, readily providing insight into the relationships that are learned from the data. The candidate will develop flexible representations learning and data analysis methods specifically designed to handle heterogeneous spatiotemporal data, effectively utilizing both algebraic (matrix and tensor decompositions) and statistical frameworks to generate results that are interpretable and backed by statistical guarantees. The developed methods will be applied to personalized medicine, with the aim to elucidate the interplay between neuroimaging data (e.g., fMRI) and cognitive/socioeconomic factors as well as their temporal evolution.

Candidate profile: Ph.D. degree in signal processing, machine learning or applied mathematics or related fields.

To apply: If interested, please send your application including an academic CV and a motivation letter to sebastian.miron@univ-lorraine.fr, ricardo.borsoi@univ-lorraine.fr, david.brie@univ-lorraine.fr, and adali@umbc.edu.

For further information, please see: https://cran-simul.github.io/assets/jobs/P_postdoc_these_NSF_2024.pdf

Requirements

Research Field

Engineering » Electrical engineering

Education Level

PhD or equivalent

Languages

ENGLISH

Level

Good

Internal Application form(s) needed

Aplicar ahora

Completa el formulario a continuación para solicitar este puesto.
Allowed file types: PDF, DOC, DOCX, TXT, RTF
Allowed file types: PDF, DOC, DOCX, TXT, RTF

*Al solicitar un trabajo listado en Academic Positions, aceptas nuestros términos y condiciones y política de privacidad.

Al enviar esta solicitud, usted consiente que retengamos sus datos personales para fines relacionados con el servicio. Valoramos su privacidad y manejaremos su información de manera segura. Si desea que sus datos sean eliminados, por favor contáctenos directamente.

DESCRIPCIÓN DEL PUESTO

Título
(Postdoc offer) Statistical and Tensor Methods for Spatiotemporal Heterogeneous Data Analysis
Ubicación
34 Cours Léopold Nancy, Francia
Publicado
2024-05-06
Fecha límite de aplicación
2024-12-31 23:59 (Europe/Paris)
2024-12-31 23:59 (CET)
Tipo de trabajo
Guardar trabajo

Sobre el empleador

Université de Lorraine promotes innovation through the dialogue of knowledge, taking advantage of the variety and strength of its scientific fields...

Visita la página del empleador

Esto puede ser de tu interés

...
Speeding Up DNA Analysis With String Algorithms Centrum Wiskunde & Informatica (CWI) 4 minutos de lectura
...
Deciphering the Gut’s Clues to Our Health University of Turku 5 minutos de lectura
...
Understanding Users to Optimise 3D Experiences Centrum Wiskunde & Informatica (CWI) 5 minutos de lectura
...
Control Systems: The Key to Our Automated Future? Max Planck Institute for Software Systems (MPI-SWS) 5 minutos de lectura
Más historias