
Supervisory Biologist/Toxicologist/Chemical Engineer/Physical Scientist/Chemist
Environmental Protection AgencyThe closing date of this vacancy is extended to . This position is in the Office of Chemical Safety and Pollution Prevention, Office of Mission Critical Operations, Regulatory and Information Services Division, Science Advisory Committees Branch. About: The Office of Chemical Safety and Pollution Prevention This is an office-centered position--you must physically report to one of the duty stations stated in this announcement on a regular basis (location TBD after candidate selected).You will: Plan, organize, and manage the activities of the Branch to ensure quality of technical science and engineering efforts and compliance with policy matters. Exercise supervisory personnel managementresponsibilities to promote an environment that empowers employees to participate in and contribute to effective mission accomplishment. Serve as a subject matter expert and principal point of contact for planning, implementing, and evaluating scientific peer reviews related to major science and science policy issues. Serve as an authority/consultant on various workgroups, panels or committees to establish/maintain partnerships and collaboration with internal and external stakeholders, and the larger scientific community. One or more positions may be filled (in the organization advertised and/or in other organizations), if appropriate to the position.
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