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Exploitation Specialist/Data Scientist - Senior

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Chesterfield
1 week ago
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Overview

Leidos is actively hiring for an Exploitation Specialist/Data Scientist (Senior) to join our team in St. Louis, MO.

Job Summary:

This work requires staff to perform deep data investigations on complex problems using applied statistics, building algorithms, and collaborating with domain expertise to convey complicated realities to non-technical audiences.

Responsibilities
  • Provide embedded GEOINT/ Data Science expertise to assure continuity of Precise Imagery data provision to the customer.

  • Deliver service solutions that integrate best practices to modernize current practices.

  • Perform data investigations on complex problems using applied statistics, building algorithms and collaborating with domain expertise to convey complicated realities to non-technical audiences.

  • Provide data visualization of disparate sources via dashboards that can be understood by non-technical audiences.

  • Coordinate utilization and sustainment of the new database management processes and workflows with database developers and analysts.

  • Ensure new workflows have ability to be integrated seamlessly with our modernized database applications and enterprise-level APIs.

  • Data modeling and simulation of production and change detection data of in-house created data.

  • Data visualization of production metrics of in-house created data.

  • Statistical analysis of in-house created data.

  • Scripting and coding to include converting Visual/Basic MapInfo scripts to Python.

  • Implementing enterprise database management processes.

  • Automating repetitive data management tasks.

Basic Qualifications
  • Bachelor’s degree in related field

  • Typically requires a BA degree and 8 – 12 years of prior relevant experience or Masters with 6 – 10 years of prior relevant experience.

  • A combination of 9 years of demonstrated experience in any three of the following tools/methodologies:

    • Python

    • ArcGIS, ArcSDE, ArcPro

    • Quantum GIS (QGIS)

    • PostgreSQL, PostGIS, PgAdmin

    • Application programming interfaces (APIs)

    • Using applied statistics

    • Building algorithms

  • Understanding and familiarity with the following tools:

    • MapInfo, MapBasic

  • Active TS/SCI clearance with ability to be approved to Poly

Qualifications
  • Experience with workflow management systems, such as Flowable

Come break things (in a good way). Then build them smarter.

We\'re the tech company everyone calls when things get weird. We don’t wear capes (they’re a safety hazard), but we do solve high-stakes problems with code, caffeine, and a healthy disregard for “how it’s always been done.”

Pay Range: Pay Range $89,700.00 - $162,150.00


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