Location
Remote United States
United States
Remote United States
United States
Salary
(Yearly)
(Yearly)
(Yearly)
(Yearly)
(Hourly)
Undisclosed
0
USD
170000
-
200000
Date posted
October 12, 2025
Job type
Full-time
Experience level
Mid level

Job Description

About Us

At Harmattan AI, we are a next-generation defense prime building autonomous and scalable defense systems. Driven by rigorous engineering developments of new defense products based on recent robotics and AI developments, we are on a steep growth trajectory. If you are interested in a career in a highly technical environment, thrive on pushing boundaries, and want to achieve ambitious goals, we would love to hear from you.

About the Role

As Senior UX Operational Engineer, you will lead the technical bridge between AI research and real-world mission deployment. You’ll ensure that advanced ML models are productionized, monitored, and interpretable for operators in high-stakes environments.

You will architect the infrastructure that makes AI reliable, defining inference pipelines, MLOps standards, and monitoring frameworks that survive austere, contested conditions.

Responsibilities

Applied ML & Infrastructure

  • Translate research models into production-ready services with low-latency performance.

  • Architect and operate ML pipelines for data ingestion, training, validation, deployment, and monitoring.

  • Define model instrumentation to track drift, bias, and reliability in real-time.

MLOps Framework

  • Design scalable inference frameworks using tools such as MLflow, Kubeflow, Airflow, or equivalents.

  • Implement best practices for versioning, reproducibility, and compliance with ITAR and DoD constraints.

  • Partner with backend and security teams to ensure robustness across on-prem and GovCloud environments.

Collaboration & Leadership

  • Work cross-functionally with Algorithm, Product, and UX teams to ensure AI outputs enhance, not overwhelm, operator decision-making.

  • Mentor engineers and set the technical direction for Harmattan’s AI backbone.

Candidate Requirements

  • Educational Background: M.S. or Ph.D. in AI, Robotics, Applied Math, or related field.

  • Experience: 7–12 years in applied ML / MLOps roles with production-grade systems.

  • Technical Skills: Deep understanding of model deployment at scale, ML pipeline orchestration, and monitoring tools.

  • Domain Knowledge: Experience in defense, aerospace, autonomous systems, or other mission-critical environments.

  • Mindset: Systems thinker with technical rigor and an operator-centered approach.

  • Clearance: Eligible for U.S. DoD Security Clearance (Secret or above preferred).

  • Commitment: 100% dedication to Harmattan AI’s mission, vision, and ambitious growth plans, ready to go the extra mile to ensure operational excellence.

Location and Commitments

  • Contract Type: Full-time / Permanent

  • Work Schedule: Washington DC (on-site preferred)

  • Compensation: $170K-$200K + equity + benefits

  • Start Date: November 2025

We look forward to hearing how you can help shape the future of autonomous defense systems at Harmattan AI.

Apply now
Harmattan AI is hiring a Senior UX Operational Engineer. Apply through Homebase and and make the next move in your career!
Apply now
Companies size
51-100
employees
Founded in
2024
Headquaters
Paris, France
Country
France
Industry
Defense & Space
Social media
Visit website

Similar AI jobs

Here are other jobs you might want to apply for.

US.svg
United States

Senior Site Reliability Engineer, Storage

Full-time
MLOps / DevOps Engineer
US.svg
United States

Staff Site Reliability Engineer, Storage

Full-time
MLOps / DevOps Engineer
GE.svg
Germany

Network Engineer - High Side Engineering

Full-time
MLOps / DevOps Engineer
US.svg
United States

Offensive Security Engineer, Agent Security

Full-time
MLOps / DevOps Engineer
JP.svg
Japan

Forward Deployed Engineer, Infrastructure Specialist (EMEA & APAC)

Full-time
MLOps / DevOps Engineer
JP.svg
Japan

Senior Support Engineer - Tokyo

Full-time
MLOps / DevOps Engineer
Open Modal