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in a highly competitive international context. The project aims to prototype energy efficient solutions that will enable the HL-LHC and SKA to reliably process and analyze the huge volumes of raw data
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at TalTech´s web-page: https://taltech.ee/en/phd-admission The following application documents should be sent to S CV Motivation letter Degree certificates as required by the university Copy of the passport
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, contribute to a better world. We look forward to receiving your application! We invite applications for a fully funded PhD student position to join the research group of Jan Glaubitz to work on Bayesian
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enrolled in a PhD. Scientific advisor: Bernardo Silva Workplace: INESC TEC, Porto, Portugal Maintenance stipend: 1309.64, according to the table of monthly maintenance stipend for FCT grants (https
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for a PhD education Master students can apply, but the MSc degree must be obtained and documented by 1st of July 2025 You must meet the requirements for admission to the faculty's doctoral program (https
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application! We invite applications for a fully funded PhD student position to join the research group of Jan Glaubitz to work on Bayesian Computational Mathematics for reliable and trustworthy uncertainty
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web-page: https://taltech.ee/en/phd-admission The following application documents should be sent to hadi.raja@taltech.ee CV Motivation letter Degree certificates as required by the university A research
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Interest in issues about nanoelectronics and surface science Previous knowledge in lithography, surface characterization, or electrical characterization is desirable High degree of motivation and reliability
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reliability, or fault-mitigation techniques. Strong programming skills (C/C++, Python; hardware-description languages “e.g., HLS, VHDL” is a plus). Motivation to pursue a PhD and contribute to applied AI
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. This postdoctoral position is funded through Hi!PARIS Chair ATLAS (Advancing efficient, reliable and science-informed Learning for non-euclidean data with Application to molecule and biological network Structures