Economist
Location
United States
Posted
70 days ago
Salary
$90K - $175K / year
Seniority
Mid Level
No structured requirement data.
Job Description
Economist
Barrow Wise Consulting
Role Description Enjoy problem-solving, need a venue to display your creativity, and emerging technologies pique your interest; if so, Barrow Wise Consulting, LLC is for you. As a multi-disciplined leader, you understand the gifts that set you apart from everyone else. Demonstrate innovative solutions to our clients. Join Barrow Wise Consulting, LLC today. The Economist will support Barrow Wise's Maryland project and perform the following duties: - Lead policy development and provide regulatory clauses concerning electricity transmission - Develop the economic strategy for the expansion of utility services including transmission lines across the State - Develop the economic justification for high-threshold ratepayer protections - Audit the complex Cost-of-Service Studies (COSS) submitted by utility companies - Analyze engineering documentation and list the impacts - Provide testimony in reports and as an expert witness - Work Remotely but some travel to Maryland is required Qualifications - U.S. Citizenship - Advanced degree (Master's or Ph.D.) in Economics, Finance or Public Policy - Deep, practical expertise in Class Cost Allocation, Jurisdictional Cost-of-Service Studies (COSS), and utility revenue requirement modeling - 10+ years of applied experience in regulatory economics, utility finance, or rate design Benefits - Competitive compensation packages - Excellent benefits - Opportunities for growth and advancement
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