Data Scientist (Artificial Intelligence Risk)

U.S. Department of Defense
Richmond
1 day ago
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See below for important information regarding this job.


Location and Salary Information

  • Battle Creek, MI: $147,945- $192,331
  • Columbus, OH: $154,378 - $197,200
  • Dayton, OH: $153,455- $197,200
  • Fort Belvoir, VA: $169,279 - $197,200
  • New Cumberland, PA: $169,279 - $197,200
  • Ogden, UT: $147,945- $192,331
  • Philadelphia, PA: $163,023- $197,200
  • Richmond, VA: $154,542- $197,200

Duties

  • Responsible for DLA's Artificial Intelligence (AI) risk management, governance, and policy for the responsible, ethical, and safe use of AI.
  • Serves as the implementation Responsible AI Administrator and principal advisor for DLA on the safe and responsible use of AI.
  • Reports to the Artificial Intelligence Officer (AIO), in the Office of the Chief Data and Analytics Officer (OCDAO) and has the authority and responsibility for establishing the implementation, planning, and direction of internal AI risk management
  • Collaborates and coordinates AI implementation program activities with the AIO in ensuring AI promotion, innovation, and risk management adhere to DLA AI governance
  • Works alongside the AIO, CDAO, J6 Information Officer and DLA senior staff, and various DoD and governmental offices in advancing the DLA AI implementation program

Requirements

  • Must be a U.S. citizen
  • Tour of Duty: Set Schedule
  • Security Requirements: Critical Sensitive with Top Secret Access
  • Appointment is subject to the completion of a favorable suitability or fitness determination, where reciprocity cannot be applied; unfavorably adjudicated background checks will be grounds for removal.
  • Fair Labor Standards Act (FLSA): Exempt
  • Selective Service Requirement: Males born after 12-31-59 must be registered or exempt from Selective Service.
  • Recruitment Incentives: Not Authorized
  • Bargaining Unit Status: No
  • Pre-Employment Physical: Not Required
  • Selectees are required to have a REAL ID or other acceptable identification documents to access certain federal facilities. See https://www.tsa.gov/real-id for more information.
  • This position and any future selections from this announcement may be used to fill various shifts located within DLA Information Operations (J6) locations.


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