Please note that pay ranges are country specific. As a result, the stated currency is not meant to be converted into any other currency. 70,000 - 75,000 USD
Senior Scientist, Oceans Science
Location
United States
Posted
15 days ago
Salary
$124K - $130K / year
Seniority
Senior
No structured requirement data.
Job Description
Senior Scientist, Oceans Science
Environmental Defense Fund
Role Description Science and Innovation (S&I) at EDF seeks candidates for a Senior Scientist position with proven topical expertise to develop and oversee EDF’s new Phytoplankton Carbon Solutions (PCS) Research Initiative. PCS are a set of marine carbon dioxide removal methods that attempt to manipulate aspects of the ocean’s biological carbon pump to enhance carbon sequestration in the ocean. The selected candidate will: - Develop and manage a portfolio of research projects and partnerships. - Conduct research relevant to the program. - Contribute to EDF’s overall ocean and climate science capacity. - Collaborate with other EDF scientists, economists, and policy experts. - Communicate the results of research to stakeholders and government decision makers. Key Responsibilities - Manage design of public requests for proposals, external research projects, and research portfolio. - Manage relationships with prospective and funded grantees and partner institutions. - Develop and maintain relationships with external scientists and organizations. - Work closely with operations and grants staff to ensure alignment of scientific objectives and administrative processes. - Participate in advancing EDF organizational effectiveness and culture goals. - Keep up to date with scientific and gray literature on PCS. - Conduct independent research and lead the analysis and writing of papers for publication. - Analyze, interpret, and communicate scientific data to policymakers and external partners. - Organize meetings with grantees and other partners and stakeholders. - Attend and represent EDF at external meetings. - Serve as a subject matter expert and provide scientific expertise to other EDF programs. - Support fundraising and progress reports for donors. - Apply excellent organizational, communication, and planning skills. - Mentor more junior scientists, fellows, and interns. - Additional responsibilities as required. Qualifications - A PhD in ocean science, biological oceanography, biogeochemistry, marine ecology, or related field, with at least 5 years’ relevant experience. - Senior-level contributor with full mastery of subject matter, demonstrated by scholarly publications and involvement in conferences. - Proven history of leading comprehensive science-focused projects. - Ability to work independently and support a multi-disciplinary team. - Excellent written and oral communication skills. - Experience in performing rigorous analysis in support of highly visible work. - Initiates and maintains extensive contacts within the scientific community. - Ability to lead and mentor others. - Experience in supporting fundraising initiatives. - Willingness for occasional domestic and international travel up to 15% of the time. Benefits - Strong total rewards package encompassing competitive salary. - Robust benefits. - Professional development opportunities consistent with a modern global organization.
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