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ML Engineer

Job in Omaha, Douglas County, Nebraska, 68197, USA
Listing for: Agile Defense, Inc.
Full Time position
Listed on 2026-02-15
Job specializations:
  • IT/Tech
    Data Engineer, Data Analyst
Salary/Wage Range or Industry Benchmark: 60000 - 80000 USD Yearly USD 60000.00 80000.00 YEAR
Job Description & How to Apply Below

Requisition #:1418

Job Title:ML Engineer

Location:Omaha, NE

Clearance Level:Active DoD Top Secret

Overview

At Agile Defense we know that action defines the outcome and new challenges require new solutions. That’s why we always look to the future and embrace change with an unmovable spirit and the courage to build for what comes next.

Our vision is to bring adaptive innovation to support our nation's most important missions through the seamless integration of advanced technologies, elite minds, and unparalleled agility—leveraging a foundation of speed, flexibility, and ingenuity to strengthen and protect our nation’s vital interests. We are currently looking for an ML Engineer to support our contract with the DRAID CDAO ADA IR Program.

As an ML Engineer at Agile Defense, you will be joining a team of professionals that secure, scalable data architectures and AI/ML pipelines. This role will support data science and engineering activities, partnering with product teams, data engineers, mission stakeholders, and technologists to unlock the value of structured and unstructured data in support of national defense priorities. You will implement data engineering activities and develop and deploy pipelines and platforms that organize and make complicated data meaningful.

Responsibilities/Duties

Build Scalable Data & ML Infrastructure
  • Design and implement medallion architecture (Bronze/Silver/Gold) using Databricks for reliable data processing and ML model training
  • Develop automated data pipelines that process structured and unstructured data from multiple sources into analytics‑ready formats
  • Create robust ETL/ELT workflows using Apache Spark and modern data engineering practices for both batch and streaming data
  • Build and maintain data quality monitoring and validation systems across the entire data and ML lifecycle
Drive ML Platform Excellence
  • Implement MLOps best practices including automated model training, validation, deployment, and monitoring using MLflow and Databricks workflows
  • Design scalable ML inference systems that handle high-volume, low-latency predictions in production environments
  • Create comprehensive monitoring and alerting systems for model performance, data drift, and system health
  • Build self‑service ML capabilities that enable data scientists to deploy and monitor their own models efficiently
Enable Advanced Analytics & Business Intelligence
  • Design and maintain data models that support both machine learning workloads and business intelligence requirements
  • Create integration points between ML systems and business intelligence platforms (Tableau, Power

    BI, Qlik Sense)
  • Implement data governance standards and metadata management systems that ensure data quality and compliance
  • Collaborate with analysts and data scientists to optimize data architecture for both predictive modeling and reporting needs
Ensure Data Quality & Governance
  • Implement comprehensive data governance frameworks including data lineage tracking, quality monitoring, and compliance controls
  • Design and maintain data catalogs and metadata management systems that enable efficient data discovery across the organization
  • Establish data quality standards and automated testing frameworks for both analytical and ML workloads
  • Work with stakeholders to define data definitions, business logic, and governance policies
Integrate with Enterprise Systems
  • Build integrations with MAVEN Smart Systems (Palantir Foundry) environments to support operational and predictive analytics
  • Connect Databricks-based systems with enterprise data warehouses, streaming platforms, and business applications
  • Implement security and compliance controls that meet enterprise requirements while enabling self‑service capabilities
  • Collaborate with platform engineers to integrate ML systems with broader application architecture and infrastructure
Required Skills

What You’ll Bring
  • 5+ years of technical experience, including 3+ years building production data pipelines and ML infrastructure using distributed computing platforms like Databricks.
  • Strong data engineering skills in Python, PySpark, and Spark SQL with experience implementing medallion architecture and modern data platform patterns
  • Produ…
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