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technicians in the completion of assignments. Provide technical direction to other staff, associates, and/ or students, as needed. As an Engineering Manager, serve as the integrating lead engineer for different
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); execute PoCs and tech transfer with foundries, equipment/materials/metrology vendors. Data & Platforms: Establish robust data governance and MLOps pipelines; develop reusable algorithms and prototype
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closely with a small, dedicated team, you will: Design and implement SLAM-based navigation algorithms for GPS-denied forest environments (45%) Develop multi-sensor integration software for LiDAR, cameras
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that do not confer an academic degree, in the area or area related to that requested in the tender. Preferential factors: Have demonstrable experience in the use of machine learning algorithms applied
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, and practical exercises – to cater to different learning styles). Liaise with USC AI Educator for best practices and synergy of programs. Essential Function Yes Percentage of Time 25 Job Duty Teaching
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, APIs, and SDKs by reading documentation • Excellent understanding of machine learning techniques and algorithms, such as k-NN, Naive Bayes, SVM, Decision Forests, etc. • Experience with common data
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in which he/she will be asked to perform the duties for which he/she was recruited at a different location. Job responsibilities and duties Participation in the scientific and technical execution
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University of North Carolina at Chapel Hill | Chapel Hill, North Carolina | United States | about 5 hours ago
/or machine learning/artificial intelligence algorithms. Projects may also include work focused on the analysis of spatial and geographic data and work extrapolating results to different spatial scales
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proactively propose and execute practical solutions to research challenges. Develop and implement AI and machine-learning based methods for different use cases: images, video, speech, unstructured text, etc
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Molecular Medicine, led by Prof Julien Gagneur, develops computational approaches to study the genetic basis of gene regulation and its implication in diseases. Applications of our work range from