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cells from different mouse models with accelerated aging phenotype. The work of the PhD candidate will include data mining and integration of these datasets with resulting identification of candidate
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accelerated aging phenotype. The work of the PhD candidate will include data mining and integration of these datasets with resulting identification of candidate regulators of age-associated reprogramming
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Description For our location in Hamburg we are seeking: PhD Position in Laser Plasma Acceleration Remuneration Group 13 | Limited: 3 years | Starting date: earliest possible | ID: MDO004/2025
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focuses on two central aspects: accelerating technology development and designing sustainable P2X value chains. As a PhD researcher, you will contribute to the new stack designs for high-temperature
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, the European “Green Deal” and the phase-out of lignite. Funded by the German Federal Ministry of Research, Technology and Space, the project focuses on two central aspects: accelerating technology development
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accelerators for science. Currently, the new FAIR (Facility for Antiproton and Ion Research) one of the world´s largest research projects, is being built in international cooperation. GSI and FAIR offer
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Tackle the challenge of computationally expensive meta-optimization procedures by developing and using dedicated tools and processors Contribute to our sparse auto-differentiation libraries to accelerate
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domains are e.g., signal-/image processing, artificial intelligence and machine learning. Tasks: research and development in designing and programming field programmable gate arrays (FPGAs) for accelerating
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: Develop an event-driven RL algorithm that sparsely updates network state and parameters that will significantly improve energy to-solution efficiency compared to conventional digital accelerators when
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developing and using dedicated tools and processors Contribute to our sparse auto-differentiation libraries to accelerate the training of state-space models Collaborate closely with our internal partners