
Data Scientist
Immigration and Customs EnforcementView Common Definitions of terms found in this announcement. Organizational Location: These positions are located in the Department of Homeland Security, U.S. Immigration and Customs Enforcement, Chief Financial Officer, in Washington, District of Columbia. These are non-bargaining unit positions.As an Data Scientist, GS-14 you will perform the following duties: Extract insights from a wide range of qualitative and quantitative data to inform budgetary and financial decisions by identifying and collecting data from various sources, performing data cleaning and wrangling, conducting data analyses, interpreting findings, and presenting results to audiences, including the OCFO leadership. Coordinates with stakeholders to collectrequirements and develop data products, such as forecast models, cost projection calculators, interactive dashboards, automated reports, and performance outcome (KPI) visualizations. Coordinates with data owners to secure data access, discusses data sharing agreements, and performs data engineering tasks to prepare reliable quality data for analyses. Studies the current operational workflow, evaluates opportunities for automation, designs and develops automated processes, and promotes end user adoption. Conducts end user training and outreach to strengthen the data analytics capabilities of OCFO.
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