ML Ops Engineer - Clearance Required
LMI Consulting, LLC | |||||||||
United States, North Carolina, Fort Bragg | |||||||||
3571 Butner Road (Show on map) | |||||||||
Feb 04, 2026 | |||||||||
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ML Ops Engineer - Clearance Required Job Locations
US-NC-Fort Bragg
Overview LMI is seeking an ML Ops Engineer to support the operationalization, sustainment, and continuous improvement of computer vision models used on autonomous edge platforms for a Special Operations customer. This role is responsible for the lifecycle management of machine learning models that operate onboard disconnected edge systems in tactical environments. A successful ML Ops Engineer ensures models remain accurate, testable, versioned, and safely deployable without requiring operators to be AI experts. This position bridges field operations, data science, and autonomy software to ensure models improve over time without degrading mission performance or introducing unsafe behavior. This position requires an active Secret clearance. LMI is a new breed of digital solutions provider dedicated to accelerating government impact with innovation and speed. Investing in technology and prototypes ahead of need, LMI brings commercial-grade platforms and mission-ready AI to federal agencies at commercial speed. Leveraging our mission-ready technology and solutions, proven expertise in federal deployment, and strategic relationships, we enhance outcomes for the government, efficiently and effectively. With a focus on agility and collaboration, LMI serves the defense, space, healthcare, and energy sectors-helping agencies navigate complexity and outpace change. Headquartered in Tysons, Virginia, LMI is committed to delivering impactful results that strengthen missions and drive lasting value. Responsibilities Solution Design: * Design the ML lifecycle for computer vision models operating on edge platforms * Establish model versioning, validation, and deployment patterns suitable for disconnected tactical environments * Develop guardrails to ensure autonomy behavior remains predictable and auditable * Create architectures for collecting operational data and feeding it back into retraining pipelines Development: * Build and maintain pipelines for model packaging, testing, and deployment to edge systems * Implement automated testing to ensure new models do not degrade performance * Develop repeatable processes so operators can update systems without ML expertise * Integrate data science outputs into fieldable, supportable software packages Testing and Quality Assurance: * Validate model performance against real operational data * Conduct regression testing to ensure updated models maintain or improve detection and tracking performance * Ensure traceability of which model versions were used during specific operations Maintenance and Support: * Support field units in updating and maintaining onboard models * Troubleshoot issues related to model performance and deployment in operational environments * Continuously improve processes for safe model iteration and deployment Documentation: * Create technical documentation for model lifecycle processes * Develop operator friendly guides for updating and validating onboard systems * Document model versioning, testing results, and deployment procedures Qualifications Qualifications: * Experience implementing ML Ops practices for computer vision or edge autonomous systems * Understanding of model versioning, validation, and deployment pipelines * Experience working with disconnected or bandwidth constrained environments * Familiarity with containerization and packaging of ML models for deployment * Understanding of how to translate data science outputs into operational software * Strong problem solving and analytical skills * Ability to work independently and as part of a team * Excellent communication and interpersonal skills * Must possess an active Secret clearance Preferred Qualifications: * Experience with autonomous systems, robotics, or unmanned platforms * Experience supporting Special Operations or tactical technology programs * Familiarity with computer vision model development and evaluation * Experience designing data pipelines for model retraining from field collected data * Understanding of responsible AI principles and human in the loop autonomy systems The target salary range for this position is $140,000 - 185,000. The salary range displayed represents the typical salary range for this position and is not a guarantee of compensation. Individual salaries are determined by various factors including, but not limited to location, internal equity, business considerations, client contract requirements, and candidate qualifications, such as education, experience, skills, and security clearances. #LI-SH1 LMI is an Equal Opportunity Employer. LMI is committed to the fair treatment of all and to our policy of providing applicants and employees with equal employment opportunities. LMI recruits, hires, trains, and promotes people without regard to race, color, religion, sex, sexual orientation, gender identity, national origin, pregnancy, disability, age, protected veteran status, citizenship status, genetic information, or any other characteristic protected by applicable federal, state, or local law. If you are a person with a disability needing assistance with the application process, please contact accommodations@lmi.org Colorado Residents: In any materials you submit, you may redact or remove age-identifying information such as age, date of birth, or dates of school attendance or graduation. You will not be penalized for redacting or removing this information. Need help finding the right job? We can recommend jobs specifically for you!
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Feb 04, 2026