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. The aim of the project is to extend cycle life by the controlled release of active lithium. Your tasks Develop lithiation agents to recover lost active lithium during operation of the battery Develop
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. Postdoc position on self-healing strategies for lithium-ion batteries Your tasks Develop lithiation agents to recover lost active lithium during operation of the battery Develop electrochemical protocols
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characterization. Project background The highly interdisciplinary project is about the development, characterization, modeling, and application of micro-and nanoscale ultrasound contrast agents for molecular imaging
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. Empa is a research institution of the ETH Domain. Empa's Laboratory 'Particles-Biology Interactions' and its group 'Multi-omics for healthcare materials' are looking for a candidate for an
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energy planning to national system studies of Switzerland, and European-wide multi-sector energy integration. Job description Main Tasks Apply our in-house energy system modelling frameworks to analyze and
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of our Materials Vision Tech initiative, we focus on multi-element gradient thin film systems, i.e. their rapid deposition and automated multi-technique characterization. Within the Swiss-Polish innovation
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Thun explores the possibility of high throughput materials development. In the context of our Materials Vision Tech initiative, we focus on multi-element gradient thin film systems, i.e. their rapid
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interdisciplinary expertise in energy transitions, with a solid understanding of photovoltaics, renewable energy integration, multi-energy systems, and energy conversion and storage technologies. You have strong
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to work with a diverse, motivated, and multi-cultural team in a creative research environment. Support for personalized professional development and mentoring with the ability to build a strong support
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Metagenomics, meta-transcriptomics and metabolomics data analysis and familiarity with gut microbiome research. Machine learning for genomics (representation learning, generative models, causal inference). Multi