181 computer-security-"https:"-"https:"-"https:"-"https:"-"ASTON-UNIVERSITY" positions at Zintellect
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-ARS Ornamental Research Program in Miami, FL. The fellow will participate in a team effort to maintain and characterize Ornamental Genetic Resources (OGRs) by discovering molecular resources using
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, project assignment, program rules, and availability of the participant. What are the provisions? You will receive a stipend to be determined by AFIT. Stipends are typically based on a participant’s academic
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the guidance of a mentor, this opportunity will involve: developing and applying methods in computational biology and artificial intelligence to gather information about gene function in the legume family; using
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initiative are encouraged, research directions will be developed in consultation with the mentor to ensure feasibility and alignment with program objectives. The successful candidate will publish research and
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research and development comprises many technologies related to computation, storage, privacy, security, and analytics that apply broadly across mission areas. Location Washington, D.C. or remote from within
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twelve-week research appointment, with the possibility to be renewed for additional research periods. Appointments may be extended depending on funding availability, project assignment, program rules, and
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. Contingencies All awards and active participation in the program are contingent upon security access approval to Oak Ridge National Laboratory, agreement with the Terms of Appointment, and completion of all
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. Research Project: This project aims to use large language models (LLM) to extract and analyze discussions on social media platforms, including Reddit, for the detection of any emerging topics on safety
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ingredients, sophisticated formulations, and innovative dosage forms; Advance Human Subject Safety for Bioequivalence Studies - Conducting meta-analysis to determine appropriate safety strategies to ensure
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: You will develop skills in safety signal detection, learn to identify data quality issues that could obscure safety signals, and understand challenges in identifying rare adverse events in minority