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of the project The Laboratory for Dynamic Biomolecule Design is recruiting a research employee to carry out our research theme. The research overview of the laboratory is shown below. To understand the functions
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and solve them with various engineering approaches.Our laboratory aims to design faster and more scalable quantum computers by exploring their systems and software, as modern computer engineering
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technology and develop human resources. The AI Computing Team explores the design and realization method of advanced machine learning systems by working across multiple layers, including circuits, devices
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Institute of Technology and some Japanese companies for a millimetre-wave metasurface project using nonlinear circuits such as diodes. Importantly, during this position, you are expected to visit our foreign
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(Required) PhD in Information Theory, Mathematics or related fields Strong research skills and a solid track record of publications Excellent written and verbal communication skills in English. Knowledge
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. Engage in ongoing and active research. 2. Participate and contribute in the activities of the Analysis & PDE unit and OIST math group. Qualifications: (Required) PhD in Mathematics. Report to: Professor
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the activities of the Representation Theory and Algebraic Combinatorics Unit. Qualifications: (Required) 1. PhD in Mathematics. 2. Speaking/Listening Proficiency in English. Report to: Dr Liron Speyer
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decarbonization •Decentralized energy systems •Social acceptance of smart energy technologies •Data governance •Institutional design •Equitable and innovative business models * Assigned department Existing
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project titled “The Green Innovation Fund/Promotion of Carbon Recycling using CO2 from Biomanufacturing Technology as a Direct Raw Material,” led by NEDO. To achieve the objectives of this project
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position) Designing a machine-learning-based bias correction method using retrospective forecasts and reanalysis data for comparative calibration. Topic 3: Development of seasonal prediction models (one–two