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MLOps Engineer — AI/ML Systems & Deployment (TS/SCI Preferred)
$150k – $180k/yr Dayton, US hybrid full time senior Mar 24, 2026
About this role
MLOps Engineer — AI/ML Systems & Deployment (TS/SCI Preferred)
Dayton, OH (On-site Preferred) | Remote Eligible (U.S.-based, Clearance-Ready)
Clearance-Eligible Role | Mission-Critical AI/ML Systems
About the Role
At Rackner, we build systems where advanced technologies move beyond prototypes and into real-world operational use.
We are seeking an MLOps Engineer to support the deployment and lifecycle management of AI/ML systems within a secure, mission-focused environment.
This is not a research role.
This is where models become reliable, deployable, and auditable systems.
You will operate at the intersection of:
machine learning
cloud-native infrastructure
distributed systems
…and ensure AI/ML systems are production-ready in environments where reliability and performance matter.
What You’ll Do
Own the ML Lifecycle (End-to-End)
Build and operate production-grade ML pipelines
Orchestrate workflows using Kubeflow, Airflow, or Argo
Implement model versioning, lineage, and reproducibility standards
Operationalize AI/ML Systems
Deploy models into secure and constrained environments
Transition workflows from experimentation → containerized pipelines → production systems
Enable both batch and real-time inference architectures
Engineer for Reliability
Design systems for reproducibility, auditability, and stability
Monitor model performance and system health using Prometheus, Grafana, OpenTelemetry
Detect and resolve issues such as model drift and system degradation
Build Cloud-Native ML Infrastructure
Deploy and manage Kubernetes-based ML workloads
Containerize pipelines using Docker
Support scalable training and inference workflows
Establish Data Discipline
Support feature engineering and dataset preparation
Implement data versioning and governance practices (e.g., lakeFS)
Apply metadata and data management standards
Create Repeatable Systems
Develop runbooks, playbooks, and documentation
Build systems that are operationally sustainable and transferable
What You Bring
Core Experience
Experience deploying ML systems into production environments
Strong programming skills in Python
Hands-on experience with:
ML pipeline tools (Kubeflow, Airflow, Argo)
Experiment tracking tools (MLflow, ClearML)
Infrastructure & Systems
Experience with Kubernetes and containerized systems (Docker)
Familiarity with CI/CD pipelines
Understanding of distributed systems and scalable architectures
ML Application Exposure
Experience working with:
LLMs or transformer-based models
Computer vision systems (YOLO, Faster R-CNN)
Focus on deployment and integration, not pure research
Mindset
Systems thinker who prioritizes reliability over novelty
Comfortable operating in complex, evolving environments
Focused on delivering real-world outcomes
Clearance Requirements
Active TS/SCI clearance strongly preferred
Candidates with an active Secret clearance may be considered and supported for upgrade
Candidates without an active clearance must be:
U.S. citizens
eligible to obtain and maintain a clearance
able to work in a CAC-enabled or secure environment
Note: Start timelines and work scope may vary depending on clearance status and program requirements
Why This Role Matters (What You Get)
This role is a career accelerator for engineers who want to:
Move beyond experimentation and own production systems
Work across ML, infrastructure, and deployment pipelines
Build in high-trust, secure environments
Develop high-demand MLOps expertise in constrained systems
Deliver systems that are used, not just built
Who We Are
Rackner is a software consultancy that builds cloud-native solutions for startups, enterprises, and the public sector. We are an energetic, growing team focused on solving complex problems through:
Distributed systems
DevSecOps
AI/ML
Cloud-native architecture
Our approach is cloud-first, cost-effective, and outcome-driven, delivering systems that scale and perform in real-world environments.
Benefits & Perks
100% covered certifications & training aligned to your role
401(k) with 100% match up to 6%
Highly competitive PTO
Comprehensive Medical, Dental, Vision coverage
Life Insurance + Short & Long-Term Disability
Home office & equipment plan
Industry-leading weekly pay schedule
Apply
If you’re an engineer who wants to move from building models → owning production systems, we’d like to connect.
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