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data processing capabilities, and to high-end GPU servers. The candidate is expected to contribute to the long track record of the group in producing new knowledge of and modeling approaches
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under ETH Zurich Excellent working conditions, including access to modern GPU and computing infrastructure and sensor equipment A competitive salary in accordance with the regulations of ETH Zurich Active
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clusters with thousands of CPU and GPU cores. Selection process Interested applicants are encouraged to send the following documents directly to Elvar Ö Jónsson (elvarorn@hi.is ) and Gianluca Levi (giale
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in the United Kingdom, Taiwan, Korea, Austria and Japan, plays a central role in the study of such theories. We developed state of the art (open source) software working on GPU- and CPU-based
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machines, to shared GPU servers, the Delft AI Cluster that is shared across departments, as well as DelftBlue, which is one of the top 250 supercomputers in the world. Your supervisors will be Dr. Holger
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access to the compute resources of TU Delft, ranging from personal machines, to shared GPU servers, the Delft AI Cluster that is shared across departments, as well as DelftBlue, which is one of the top 250
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us to run large numerical simulations with billions grid points on mixed computer architectures including CPU and GPU machines. A current project is preparing the code set for the next generation of
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PhD candidate in the automated detection of measurable residual disease in hematological malignancie
-of-the-art compute & GPU infrastructure Collaborative and supportive research environment with expertise in both the generation (wetlab) and the analysis (drylab) of high-end cytometry data. Attendance
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national high-performance computing facilities (both CPU and GPU-based) to conduct large-scale simulations efficiently. Working closely with experimental collaborators to validate computational predictions
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sequencing of DNA. Two Nvidia Tesla T4 graphics processing units (GPU) are integrated on servers for performing basecalling of long reads, including calling of modified bases for epigenomics analyses