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» Algorithms Researcher Profile First Stage Researcher (R1) Application Deadline 12 Mar 2026 - 23:59 (UTC) Country France Type of Contract Temporary Job Status Full-time Hours Per Week 35 Offer Starting Date 1
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deer and chamois to predation (by lynx and hunters) – investigation of the existence of trophic cascades. The successful candidate will be based at the Centre for Functional and Evolutionary Ecology
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7 Feb 2026 Job Information Organisation/Company CNRS Department Institut de Recherche en Informatique de Toulouse Research Field Computer science Mathematics » Algorithms Researcher Profile First
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Olivier Gossner and funded by an advanced ERC grant. The research themes include information asymmetries and belief hierarchies, encompassing their modeling, applications, and algorithmic aspects. Research
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speciation is a major research avenue in evolutionary biology. Comparing allopatric and sympatric populations of closely-related species provides a way to distinguish among traits involved in triggering
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with electronics, FPGA/embedded systems, analog circuits or mixed-signal systems; familiarity with NumPy/SciPy/PyTorch; interest in hardware-algorithm co-design and energy-efficiency evaluation
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algorithms have been developed, most based on a hybrid architecture combining transform coding and predictive coding. Standards such as H.264/AVC, HEVC, and VVC follow this principle. While they offer highly
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of molecular networks • Have knowledge of molecular networking (Molecular Network (MN) and Feature Based Molecular Networking (FBMN)) and similarity algorithms: ie, Cosine score • Master the English language
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skills (Matlab, Python, C++) are a significant asset. •Knowledge of artificial intelligence techniques and associated optimization algorithms would be appreciated. •Good knowledge of English (working
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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