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Education and Experience: Appropriate PhD in a related field. Preferred Qualifications: Experience with machine learning and deep neural network techniques. Experience with wearable and sensors placed in
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agencies. Strong written communication, analytical, and organizational skills. Ability to train, validate, apply machine learning models to complex data sets. Preferred Qualifications PhD preferred in Data
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Salary: $62,500 annually Special Instructions: A cover letter and resume are strongly recommended. You may upload these in the CV/Resume section. Required Education and Experience Appropriate PhD in a
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the following areas (though not limited to these): AI and Machine Learning Cybersecurity and Privacy Robotics and Autonomous Systems Cloud Computing and Edge Computing The Department of Computer Science prepares
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Type Staff Job Description Our Commitment Texas A&M University is committed to enriching the learning and working environment by promoting a culture that respects all perspectives, talents & lived
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Description Our Commitment Texas A&M University is committed to enriching the learning and working environment by promoting a culture that respects all perspectives, talents & lived experiences. Embracing
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organizational skills. Ability to train, validate, apply machine learning models to complex data sets. Preferred Qualifications Masters or PhD in an area related to Data Science, Urban and Regional Sciences
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: Appropriate PhD in related field Knowledge, Skills, and Abilities: Familiarity with appropriate laboratory and technical equipment; ability to effectively use a computer and applicable software to create data
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in hosting Institute visitors and assist in making IQSE sponsored activities successful. Qualifications PhD in Physics A well-qualified candidate for this position will also possess: Interdisciplinary
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upon future funding. Qualifications Required Education and Experience Appropriate PhD in a related field. Preferred Qualifications Experience with machine learning and deep neural network techniques