Overview
Machine Learning Engineer LOCATION:Huntsville, Al JOB STATUS:Full-time CLEARANCE: TS/SCI w CI/Poly CERTIFICATION: TRAVEL:As needed Astrion seeking a Machine Learning Engineerto join our analytics team working on an innovative MLOps workload leveraging cutting-edge technologies and supporting a government customer in Huntsville, Alabama. This role will be responsible for delivering automation to key national security missions interacting with petabyte-scale data on supercomputing resources. The ideal candidate will have a background in AI/ML model development and deployment and have experience in Python programming, handling SQL databases, and working in command line interfaces. The team will work with technologies including:
- Open source, commercial, and government software packages such as Docker, Python, Jupiter Notebooks, PostgreSQL, and other tools.
- Leverage GitOps patterns and CI/CD with tools like GitLab and GitHub.
REQUIRED QUALIFICATIONS / SKILLS
- TS/SCI with CI Polygraph
- Degree in Computer Science, Statistics, Mathematics, Physics or another quantitative field.
- 1-3 years of experience working with ML frameworks
- Programming proficiency in Python and extensive knowledge of ML frameworks, libraries data structures, and data modeling.
- Solid understanding of the full ML development lifecycle.
- Experience working with SQL and NoSQL databases.
- Experience with both Linux and Windows operating systems.
- Knowledge of CI/CD and Agile methodologies.
- Understanding of software design and system integration.
PREFERRED QUALIFICATIONS / SKILLS
- Experience with petabyte scale data sets
- Experience with multi-INT analytics
- Experience deploying, monitoring, and scaling models in production environments
Work Environment
- Working conditions are normal for an office environment.
- Fast paced, deadline-oriented environment.
- May require periods of non-traditional working hours including consecutive nights or weekends (if applicable).
RESPONSIBILITIES
- Integrate ML systems with other software components, ensuring that machine learning pipelines work within the overall product architecture.
- Manage the transition from prototype to production, including setting up model deployment pipelines and monitoring solutions.
- Construct optimized data pipelines to feed ML models; run tests and experiments and document findings.
- Monitor model performance post-deployment including managing model drift, rollback, and failure scenarios.
- Write clean, testable, maintainable code in Python and other languages.
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