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-01193000) Co-funded by ERDF - European Regional Development Fund through the Innovation and Digital Transition Thematic Programme (COMPETE 2030) within the scope of Portugal 2030. 1. GRANT DESCRIPTION Type
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until the end of the project. Scientific advisor: Tânia Esteves Workplace: INESC TEC, Braga, Portugal Maintenance stipend: 1040.98, according to the table of monthly maintenance stipend for FCT grants
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-01392400) Co-funded by ERDF - European Regional Development Fund through the NORTE 2030 Regional Program under the scope of Portugal 2030. 1. GRANT DESCRIPTION Type of grant: Research Initiation Grant (BII
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by ERDF - European Regional Development Fund through the Innovation and Digital Transition Thematic Programme (COMPETE 2030) within the scope of Portugal 2030. 1. GRANT DESCRIPTION Type of grant
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development new functionalities associated with eBPF technology. Specifically, it aims to explore its applicability to new domains (e.g., observability in HPC systems) as well as the design and development
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to variations in defects and processes.; 3. Produce transferable knowledge (prototypes, technical reports, articles) that supports industrial adoption and the evolution of the state of the art. 3. BRIEF
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15198 (COMPETE2030-FEDER-00886200) co-funded by the ERDF - European Regional Development Fund through Innovation and Digital Transition Program - COMPETE 2030 under the scope of Portugal 2030 and by
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to collaborate on this ambitious project, namely by contributing to technical capacity building, tool development, and the strengthening of the x-Energy Lab’s laboratory infrastructure. More specifically, this
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select the appropriate methods for the study; - Develop the research capacity through the application of the selected methods; - Apply a critical spirit in the evaluation of the research process and the
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developing an efficient storage solution for AI applications deployed at HPC centers. In detail, the work will focus on the development of a storage solution that optimizes the persistence of checkpoints of AI