Student Assistant (m/w/d) in Computer Vision and Deep Learning ResearchEintrag vom 12.12.2024 Stelle ist zu besetzen ab: 15.01.2024Angebotsnr. 118250 Beschreibung We are seeking a motivated student assistant to join our project, "Data-Efficient Hybrid Multi-Task Approach for Object Detection in Real-World Applications", under the KiKIT program at the Karlsruhe Institute of Technology (KIT). This research focuses on enhancing vision systems by integrating data-driven methods with prior knowledge, emphasizing multi-task learning (MTL) to improve performance with minimal labeled data. Responsibilities:- Assist in collecting and preprocessing datasets for object detection, depth estimation, and semantic segmentation. - Support the implementation and testing of MTL models, incorporating prior knowledge to optimize system robustness and efficiency. - Conduct experiments to evaluate model performance across real-world scenarios. - Document methodologies, experiments, and results for future research and reproducibility.Requirements: - Enrollment in a Master's program in Computer Science, Data Science, Electrical Engineering, or a related field. - Proficiency in Python and experience with machine learning frameworks such as TensorFlow or PyTorch. - Solid understanding of machine learning and computer vision concepts. - Strong analytical skills and the ability to work both independently and collaboratively.Benefits: - Hands-on experience in advanced machine learning research. - Flexible working hours to accommodate your academic schedule. - A collaborative environment within a leading research institution.Position Details: Duration: 40 hours per month for 6 months, with the possibility of extension.Mode of Work: Hybrid, with primarily online collaboration depending on task requirements.Application Process: Interested candidates should send their CV, a brief cover letter, and academic transcripts to moussa.sbeyti@kit.edu. Anhang PDF: KIT_MKS_HIWI.pdf, 148 kB
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