Agricultural Scientist

Location

United States

Posted

3 days ago

Salary

0

Seniority

Mid Level

Job Description

Agricultural Scientist

National Institute of Food and Agriculture

Role Description Make an impact while you learn. The Semester of Service Program offers students a volunteer project-based opportunity to support real Federal missions, gaining hands-on experience and career-ready skills. Students must be enrolled at least half-time in an accredited trade school, technical/vocational institute, junior college, college, university, or other accredited educational institution. With this project, you'll support a program through research and data analytics. Qualifications - Strong interest in Natural or Agricultural Sciences. - Knowledge, skills, or abilities related to project needs. Requirements - Must be enrolled not less than half-time in an accredited trade school, technical or vocational institute, junior college, college, university, or other accredited educational institution. - Must be in good academic standing as defined by your institution. - Attach a copy of your transcripts to your application package for verification.

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Role Description Make an impact while you learn. The Semester of Service Program offers students a volunteer project-based opportunity to support real Federal missions, gaining hands-on experience and valuable career-ready skills. Students must be enrolled not less than half-time in an accredited trade school, technical or vocational institute, junior college, college, university, or other accredited educational institution. With this project, you'll support a data science based project. Qualifications - Applicants will be considered based on their knowledge, skills or abilities related to project needs. - Specifically, applicants should have experience in: - Python - R - Git - SAS - Basic statistics - Data Processing Requirements - To qualify, you must be enrolled not less than half-time in an accredited trade school, technical or vocational institute, junior college, college, university, or other accredited educational institution. - You also must be in good academic standing as defined by your institution. - Attach a copy of your transcripts to your application package for verification.

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• Transform complex distributor transaction data into actionable sales opportunities. • Develop predictive models, recommendation engines, and commercial analytics solutions that directly influence sales strategies and revenue growth. • Work with large-scale B2B datasets containing thousands of customers, products, SKUs, and branch locations. • Turn raw ERP data into meaningful insights, dashboards, and opportunity recommendations for commercial teams and business leaders. • Support sales teams, executive decision-making, and business growth initiatives.

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