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of large biological datasets. The successful candidate will design novel machine learning techniques for cancer data science, incorporating approaches such as Neural Cellular Automata, Neural Ordinary
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interdisciplinary innovation and multicultural integration, upholding the motto, "Seeking Truth and Taking Responsibility" and its guiding ethos of "Sincerity, Benevolence, Prudence, and Diligence." The Zhengzhou
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and responsibilities: Designing and leading analyses to integrate genetic and molecular data in various populations, taking advantage of the exceptionally rich data available at the Centre; Developing
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of the national public health, during the construction of a core base for building a national medical science and technology innovation system, we focus on the research and development (R&D) of innovative vaccines
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ecologies (e.g., in response to antibiotic challenge, in interacting microbial communities). Collaborate with the experimental group members to design experiments, analyze data, and test theoretical
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. Knowledge of haematopoiesis, immune-oncology, or tumour biology. Organizational and social skills: Ability to design and execute computational research independently, with a strong emphasis on rigor and
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. They will be part of a multidisciplinary and international environment and will be highly supported in developing their scientific career and learn new skills. Key responsibilities: Designing and performing
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disorders: Artificial Intelligence and mathematical modelling, with key edges in pattern finding across diverse data and multiple observables across scales Multi-omics bioinformatic analysis, with a
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phenotyping of complex brain organoids models. Design, perform and analyse empirical data leveraging genetic and/or pharmacological multiplexed perturbations. Generating reliable data for publication in
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", Hangzhou Advanced Institute prioritizes talent cultivation, scientific research, and innovation entrepreneurship. It aims to create a technology innovation ecosystem that integrates talent development