Masters Internships

Every year 10 Masters-level student Internship Projects on data science will be funded (typical funding scale: €3,500). The projects should be interdisciplinary, and advance the state of the art in terms of novel designs/solutions/systems/results related to data science and data intelligence. This action will be coordinated with the relevant MSc programs of the partner institutions, but will also be open to students from other universities, in order to ensure a high-quality cohort of interns. The interns will have the opportunity to collaborate with researchers from different disciplines, and gain experience on real research problems.

2022 Call for proposals (closed)

The diiP institute will support interdisciplinary projects that advance the state of the art in terms of novel designs/solutions/systems/results related to data science and data intelligence. Thanks to additional financing, diiP will support projects related to fairness of AI algorithms and to detection/analysis of disinformation (a.k.a. fake news).

The diiP institute will pay the stipend of the intern (as specified by the university), for a period of up to 6 months (up to €3,500). The internships should take place between January-August of the following calendar year.

The leader of the project (principal investigator) must be affiliated with one of the diiP partner institutions: Université Paris Cité, SciencesPo, Université Sorbonne Nord, and INED. Collaborations among partner institutions and synergies with other interdisciplinary IdEx institutes at the Université Paris Cité are encouraged.

This call is now closed.

 

2022 second call for proposals (closed)

The diiP institute has the possibility to fund some extra Masters projects for 2022. If you have not submitted an application to our first call, you can now apply until October 29, 12 noon (Paris time).

Please follow the guidelines and instructions on how to apply.

This call is now closed.

2024

Deep learning-based prediction of protein-carbohydrate interactions

Tatiana Galochkina

2024

Automated segmentation and clustering of spICP-ToF-MS time series

Mickael Tharaud

2024

DNA methylation in patients: A new meta-analysis of EPIC data across borders

Maud De Dieuleveult

2024

Identification of image circulation by AI in large collections of historical photographs

Daniel Foliard

2024

Deep learning for estimating gas concentration maps from satellite or airborne hyperspectral images

Andrés Almansa

2024

Blind Image Deblurring via Latent Diffusion Models

Andrés Almansa

2024

Investigating Diffusion Models for Astronomical Image Deconvolution – boosting the synergy between Euclid and LSST

Alexandre Boucaud

2024

Biomarker prediction from images of histological slides of cancerous tissues
using modern AI techniques: comparisons of different neural architectures

Nicolas Loménie

2024

Compact representations to detect gravitational waves from extreme-mass ratio inspirals

Quentin Baghi

2024

Towards design of protein knottin using deep learning

Jean-Christophe Gelly

2024

Exploring the similarities of a large bank of protein pockets in a perspective of
multiple protein-ligand interactions prediction

Anne-Claude Camproux

2024

Deep Mendelian Randomization: explaining causality between different hereditary traits at genome-wide scale

Marie Verbanck

2024

Modeling conditioned place preference test for evaluation of addictiveness of substances: toward experimental design optimization & smart data analysis

Emmanuel Curis

2024

Diffusion Models Based Visual Counterfactual Explanations

Valerie Mezger

2023

OpenStreetMap and Sentinel-2 data for the production of environmental indices for demographic studies

Sylvain Lobry

2023

Mining molecular dynamics open data

Pierre Poulain

2023

Prediction of protein-carbohydrate binding sites using deep learning methods

Tatiana Galochkina

2023

Exploration of press articles related to Covid-19 at the European level within the Covid-19 Museum

Yves Rozenholc

2023

Machine Learning for Photometric redshift estimation of LSST galaxies

Simona Mei

2023

Deep learning to model genetic pleiotropy to understand the human genetic architecture

Marie Verbanck

2023

Generalization of a method enabling to update vineyard geographic databases from satellite data

Camille Kurtz

2023

Diffusion Models Based Unpaired Image-to-Image Translation to Reveal Subtle Phenotypes

Valérie Mezger

2023

Enhancing earthquake location with domain adapation

Leonard Seydoux

2022

Monitoring the seismic activity of Mayotte through image processing of fiber optic signals

Lise Retailleau

2022

Automatic detection and location of hydro-acoustic signals linked to Mayotte submarine eruption

Jean-Marie Saurel

2022

Investigating regulatory B cell differentiation and their therapeutic effect in neuroinflammatory disease through single cell analyses and computational biology

Simon Fillatreau

2022

Transcriptomic Analysis using Intensive Randomization

Dorota Desaulle

2022

Random projections for the reduction of gravitational wave template banks

Eric Chassande-Mottin

2022

“Search for features in astrophysical objects close to cosmic neutrinos”. An indirect approach to cosmic neutrino association with astrophysical objects

Yvonne Becherini

2022

Multiple imputation for heterogeneous biological data

Matthieu Resche-Rigon

2022

Tracking auto-immune diseases in electronic health record

Maud De Dieuleveult

2022

Modeling genetic pleiotropy using machine learning to understand the human genetic architecture

Marie Verbanck

2022

Combining visual and textual information for enhancing pathologic case retrieval systems in radiological practices

Florence Cloppet

2022

Veracity assessment framework for discovering social activities in urban big datasets

Soror Sahri

2022

Deep Learning-based EEG Epilepsy Detection and Analysis

Jerome Cartailler

2021

Inferring cultural transmission of reproductive success through machine learning methods

Frédéric Austerlitz

2021

Large image time series analysis for updating vineyard geographic databases

Camille Kurtz

2021

Smoothing of incomplete air pollution regions of interest from satellite observations

Laurent Wendling

2021

Combining visual and textual informations for enhancing image retrieval systems in radiological practices

Florence Cloppet

2021

Automatic production of environmental indicators from freely available remote sensing data: from a global to a local scale

Sylvain Lobry

2021

Digital Pathology: when AI meets with anatomo-pathology

Nicolas Loménie

2021

Machine learning model of volcanic lava properties helps understanding the dynamics of volcanic eruptions

Charles Le Losq

2021

ComplexNeuroViz: Complexity Visualisation for Neural Machine Translation

Nicolas Ballier

2021

Machine learning for the study of EEG data recorded during general anesthesia

Laurent Oudre

2021

Influence of blood pressure and aqueous humor dynamics on the response to glaucoma medication: a data-driven computational study

Marcela Szopos

2021

Machine Learning techniques applied to eye movement analysis for early screening of learning disorders in young children

Zoï Kapoula

2021

Artificial Intelligence for source deblending in the next generation of astrophysical big data imaging surveys – Combining Euclid and LSST

Marc Huertas-Company

2021

Malvasia – MAchine Learning to VAlue Single Interferometer Analysis

Agata Trovato

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