1,387 machine-learning "https:" "https:" "https:" "https:" "https:" "https:" "https:" "Univ" "Univ" positions at The Ohio State University
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students. Demonstrate an ability to cultivate positive learning environments. Teach one course per year in the FABE undergraduate and graduate engineering programs. Work collaboratively with university
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research and outreach. Learn more here: https://hr.osu.edu/careers/ . In accordance with the Disaster Preparedness and University State of Emergency Policy 6.17 this position has been designated as a
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of Care Clinic. Position Overview The Opportunity The successful candidate will practice and teach veterinary students in the College’s Frank Stanton Veterinary Spectrum of Care (SOC) Clinic in a full-time
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intelligence and machine learning methods, including supervised learning, deep learning, and computer vision, to analyze agricultural and engineering datasets Design and implement wired and wireless networking
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system to fight cancer at all levels (https://cancer.osu.edu/piio ). Launched in July 2019 as part of a $102 Million pledge from Pelotonia (pelotonia.org), the PIIO represents Ohio State's commitment
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. Required Qualifications: ● Machine Learning Frameworks: Demonstrated proficiency in implementing and fine-tuning models using PyTorch or TensorFlow. ● Natural Language Processing (NLP): Experience
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knowledge at the intersection of engineering and health science disciplines, learn new techniques, and position yourself well for your future training and career goals. Although an ideal candidate will have
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downstream machine learning use cases. The ideal candidate has hands-on experience with OMOP, Databricks, and modern data stacks, and understands the real-world challenges of clinical data harmonization across
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knowledge of artificial intelligence (AI)/ machine learning (ML) working on oncological projects. This appointment is for 2 years with a possibility of renewal based on performance. However, each year
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computer science, Data Science, Digital Humanities, or a related field. Four years of relevant experience. Four years of relevant experience. Required Qualifications: ● Machine Learning Frameworks: Demonstrated