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candidate will investigate new algorithms and models to develop, implement, and test multimodal machine learning algorithms to analyze and recognize multimodal human behavior in real world settings. Specific
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existing software to meet specific research needs. Maintain and extend existing applications and correct systems bugs. Test system upgrades. Maintain/update documentation. Analyze alternative algorithms, new
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and correct systems bugs. Test system upgrades. Maintain/update documentation. Analyze alternative algorithms, new routines and system changes and suggest program and/or system changes. Document new
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algorithms Preparation of manuscripts Flexibility, excellence, and passion are vital qualities within CMU. Inclusion, collaboration and cultural sensitivity are valued proficiencies at CMU. Therefore, we
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algorithms Preparation of manuscripts Flexibility, excellence, and passion are vital qualities within CMU. Inclusion, collaboration and cultural sensitivity are valued proficiencies at CMU. Therefore, we
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We are seeking a part-time Research Assistant in computer vision and machine learning for human behavior analysis. The successful candidate will investigate new algorithms and models for analyzing
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dynamics (algorithms and current practice). Experience in AI/ML. Experience in application performance optimization. Familiarity with parallel programming models (e.g., OpenMP, MPI, CUDA). Experience
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experience from which comparable knowledge is demonstrated may be considered. Preferred Qualifications Ph.D. degree. Demonstrated expertise in computational biophysics and molecular dynamics (algorithms and
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Theoretic algorithms of defense, and how those can/should be modified to account for human attacker’s biases. To accomplish this goal, we study attacker’s behavior and create cognitive computational models
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, Algorithmic Foundations of Optimization, Data Mining, Machine/Artificial Intelligence A combination of education and relevant experience from which comparable knowledge is demonstrated may be considered