Sort by
Refine Your Search
-
Listed
-
Category
-
Program
-
Field
-
efficient compression performance, each module relies on a rigid, manual design. Furthermore, these modules cannot be jointly optimized end-to-end. In parallel, recent years have seen the resounding success
-
in nematodes. Much of our work now focuses on the evolution of egg-laying behaviour and the transitions to viviparity. In parallel, we are also interested in characterizing the natural history, ecology
-
validated at CPPM. In parallel, the candidate will improve data reconstruction algorithms by using artificial intelligence techniques (e.g. neural networks), to optimize the separation between signal and
-
cell biology, microfluidics and microscopy. Previous experience in one of these fields will be appreciated, good experimental skills in general and a taste for meticulousness are essential. In parallel
-
skills in general and a taste for meticulousness are essential. In parallel, interest for soft matter concepts and modelling will be of help to interpret the data. Experience in data analysis (including
-
engineering; Formal methods, models, and languages; Interactive and cognitive systems; Distributed systems, parallel computing, and networks. The successful candidate will work closely with teams specializing
-
. The overarching aim is to reveal how intracellular trafficking pathways are constructed, adapted, and regulated, while running in parallel with ongoing efforts aimed at developing therapeutic strategies to control
-
and writing scientific code - Knowledge of at least one of the parallel programming paradigms (MPI, OpenMP, GPU) - Proficiency in both spoken and written English is essential (work will be carried out
-
multiple species co-exist in sympatry. Among some sympatric species, a parallel evolution of dorsal color pattern has been observed (Llaurens et al. JEB, 2021) and substantial heterospecific interactions
-
, Interactive and Cognitive Systems, Distributed Systems, Parallel Computing, and Networks. The host team, DAISY, is a joint CNRS, Grenoble INP, and UGA research team handling research challenges