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the practical adoption of IBFD. In this postdoctoral project, you will investigate novel integrated microwave circuit architectures that address the front-end challenges of IBFD in MIMO systems. The research will
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compute continuum for 6G RAN open architectures. The Advanced Networking Lab is a member of the Center for Wireless Technology Eindhoven (CWTe) which is part of the Department of Electrical Engineering
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United Kingdom Application Deadline 1 Jan 2026 - 00:00 (UTC) Type of Contract Other Job Status Full-time Is the job funded through the EU Research Framework Programme? Not funded by a EU programme Is the Job
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Profile Recognised Researcher (R2) Country Sweden Application Deadline 12 Jan 2026 - 22:59 (UTC) Type of Contract Temporary Job Status Full-time Is the job funded through the EU Research Framework Programme
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society and improve human health. We explore how biological systems, and innovative technologies can be used to convert biomass into valuable products. We use advanced computational technologies to discover
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contribute to grant applications, establishing a great foundation for the next step in your academic career. About us The Department of Computer Science and Engineering at Chalmers and University
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and setup: Within the project, we follow a multidisciplinary collaborative approach for which we are have recruited 3 PhD students focusing on material science, advanced in vivo imaging and computation
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communicate the results of your research verbally and in writing in English. Supervise master’s and/or PhD students to a certain extent. Collaboration with international academia and with industrial partners
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. To be considered, all applicants must submit: Cover letter Curriculum vitae with complete publication list BSc, MSc and PhD transcripts Research statement elaborating how you plan to contribute
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techniques—including vision-language architectures (e.g., CLIP, BLIP), fine-tuning large language models for clinical NLP, and self-supervised contrastive learning—the models will learn to effectively combine