83 machine-learning-"https:" "https:" "https:" "https:" "https:" positions at KU LEUVEN
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power consumption trends or including the energy penalty of machine learning solutions themselves. And the energy efficiency at the transceiver hardware will be put in a broader perspective of
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in a multidisciplinary team of international researchers and show willingness to learn and explore innovative technologies and techniques. You have a creative mindset, enjoy taking initiative, and
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: gerda.claeskens@kuleuven.be Where to apply Website https://www.kuleuven.be/personeel/jobsite/jobs/60597754?hl=en Requirements Research FieldMathematicsEducation LevelMaster Degree or equivalent
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resistance, via machine learning approaches. This doctoral project also foresees three secondments, each for the duration of three months, during which you will have the opportunity to visit partner
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of your study programme you work on the development and improvement of the curriculum, including shaping learning sequences across individual courses, rethinking academic education in light of future
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, including shaping learning sequences across individual courses, rethinking academic education in light of future societal challenges, and strengthening relationships with the work field. You are willing
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with the colleagues of your study programme you work on the development and improvement of the curriculum, including shaping learning sequences across individual courses, rethinking academic education in light of
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postdoc position BEE2.You can apply for this job no later than November 15, 2025 via the online application tool: http://www.kuleuven.be/eapplyingforjobs/light/60343030Please provide your C.V. and a
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13 Dec 2025 Job Information Organisation/Company KU LEUVEN Research Field Architecture » Design Engineering » Communication engineering Engineering » Computer engineering Engineering » Electrical
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communications systems with experts in wireless communication, signal processing, digital, analog and mm-wave design, and machine learning. This is a unique opportunity to develop innovative, multi-disciplinary