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graduate-student research assistant to support the research activities surrounding simulation-based research projects (e.g., development of a grant proposal, literature review, various simulation-based
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the development of excellent doctoral and postdoctoral training programmes and collaborative research projects worldwide. By doing so, they achieve a structuring impact on higher education institutions, research
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candidate has strong knowledge on full stack development and has practical experiences in software applications development and systems integration. This position requires expertise and skills of managing
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team to make collective decisions regarding the Living Data Project. Qualifications: Detail-oriented. Familiarity with Excel. Experience with Ecology and Evolution. Education/Experience: Undergraduate
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Hirst lab is focusing on the development and improvement of molecular assays and bioinformatics tools to study the epigenetic causes of cancers and to discover new targets for potential cures. In
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automated platforms, including advanced robotics, specialized chemical instruments, and software with the use of Python • Overseeing and participating in research projects and platform development
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; excellent note-taking ability; proficiency in English; French language skills highly desired; interest in international development. This role requires travel to Senegal for short-term research. All
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Assistant provides direct support to a Principal Investigator in the development and conduct of activities related to her research collaborations, specifically related to a CIHR funded project to understand
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to assist the research groups with molecular and cellular experiments as part of active research projects or process development. The individual will be joining dedicated and highly motivated teams
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cardiac precision medicine through artificial intelligence and machine learning. The postdoctoral fellow will contribute to the development of a comprehensive, multi-modal framework for predicting and