16 machine-learning "https:" "https:" "https:" "https:" "https:" "https:" "Université de Bordeaux " positions in Latvia
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attached separately Where to apply Website https://www.rtu.lv/en/studies/doctoral-studies/admission-phd/application-proces… Requirements Research FieldEconomics » Business economicsEducation LevelMaster
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FAIR principles, combined with skills in statistical analysis, machine learning and/or data science. Experience with programming languages such as R, Python, or similar will be considered an advantage
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, interpretable machine learning, trustworthy and responsible AI, and the integration of NLP and XAI methods into complex systems and decision-support platforms. The successful candidate is expected to develop
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trustworthiness of AI systems. Key research directions include (but not limited to): adversarial machine learning, data poisoning and model manipulation, secure and privacy-preserving AI, trustworthy and
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accordance with FAIR principles, combined with skills in statistical analysis, machine learning and/or data science. Experience with programming languages such as R, Python, or similar will be considered
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the design of lifelong learning courses focused on smart systems. Where to apply E-mail tenure@rtu.lv Requirements Research FieldEngineering » Electrical engineeringEducation LevelPhD or equivalent Skills
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the Law on the State Language must be submitted. In other cases, the candidate undertakes to acquire basic competence in the state language during the first year of their tenure at RTU (in accordance with
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incorporate clinical, lifestyle, and nutritional factors to build predictive models through advanced bioinformatics and machine learning. By identifying molecular signatures that distinguish responders from non
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into actionable insights, novel tools, and impactful research outcomes. Key Responsibilities Develop, implement, and optimise AI/ML models (artificial intelligence/classical machine learning, deep learning
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to contribute to a project at the intersection of biotechnology, drug development, and computational analysis. Candidate will be involved in: Collaborating with computer scientists and engineers to develop AI