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vertical use cases. IQU´s R&D offers well-established experimentation tools in 5G and IoT. IQU is active in many EU-funded research projects related to 5G, 6G Smart Grid, and IoT in collaboration with big
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Requirements - Proven knowledge on current 5G systems and services. - Accredited hands-on experience on RF instruments, i.e. Spectrum Analyzers. - Demonstrated knowledge on short range wireless communication
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vertical use cases. IQU´s R&D offers well-established experimentation tools in 5G and IoT. IQU is active in many EU-funded research projects related to 5G, 6G Smart Grid, and IoT in collaboration with big
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for an indefinite employment contract within the framework of a Line of Research R&D+i line: 5G digital transformation through NETAPPS Técnico Superior. I.U.I. de Tecnologías de la Información y
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for beyond 5G wireless systems, channel estimation and mobile location. Moreover the candidate will provide contributions to numeric simulation implementation, hardware demonstrations using SDR platforms, and
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will work within the Information & Computing Lab (I&CLab) research group on the design and implementation of solutions to secure 5G/&G infrastructure with quantum communication & information technologies
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candidate will analyze massive Key Performance Indicators (KPIs) and service-level demands collected in operational 4G/5G networks, and draw insights on their dynamics and long-term evolution as the 5G
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systems. - Strong background in telecommunications, networking, and/or computing. - Experiences in building wireless systems or experimental testbeds. - Familiarity with 5G standards and/or open-source
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preceding the deadline for the programme call. • Academic record – 30 • Work and/or research experience – 45 > 2 years in the field of 5G and/or positioning: 45; > 1 year in the field of 5G and/or positioning
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. Bega, M. Gramaglia, M. Fiore, A. Banchs, X. Costa-Perez, DeepCog: Cognitive Network Management in Sliced 5G Networks with Deep Learning, IEEE INFOCOM 2019 [11] https://networks.imdea.org/team/imdea