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., 2009; An et al., 2015; Li et al., 2022). Moreover, BEMD with classification tools based on machine learning (ML) or associated with deep learning (DL) have led to interesting findings in the biomedical
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flagship Llama language models and publish state-of-the-art research in Machine Learning. We are currently seeking talented researchers with experience in Language Research to join our EMEA sites and work
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computing problems have been explored from the perspective of machine learning and Artificial Intelligence (AI). The combination of AI with computational sciences has given rise to a wide spectrum of
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, Stability. The candidate should have ideally, at least 2 years post-PhD experience (as a Post-Doc or Assistant Professor), a strong background in Computer Sciences and Mathematics, and a strong track record
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.2021.118920 [3] Trends in Chemistry, 6, (2024), doi.org/10.1016/j.trechm.2023.12.001 [4] Machine Learning for Advanced Functional Materials, Springer, (2023); doi.org/10.1007/978-981-99-0393-1_8 Funding
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CNRS - National Center for Scientific Research | Nantes, Pays de la Loire | France | about 2 months ago
or R. - Knowledge of machine learning methods. - Ability to work independently and as part of a team, and at the interface between life sciences and computer science. - Good writing and communication
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algorithms e.g. using machine learning approaches for enhanced data analysis and acquisition, experiment automation, etc. The work will take place in the Algorithms & scientific Data Analysis group, in close
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fields of artificial intelligence, signal processing, and machine learning. Previous experience in the field of classification would be a considerable asset. Technical Skills: - Good programming skills
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. This last aspect is particularly developed using machine learning methods, in which the team has recognized experience. These methods are deployed on a wide variety of study sites and projects, including
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, including construction, overlay, and establishment of similarity criteria, to optimize data structuring. • Integration of elements and techniques of artificial intelligence, including Machine Learning and