Senior MLOps Platform Engineer
Our AI Center of Excellence builds the next generation of Agentic AI products that autonomously reason, plan, and act on behalf of our customers. To deliver these capabilities at scale, we need a platform engineering group that provides a robust, secure, and highly available MLOps foundation across both on premise clusters and AWS. The team works closely with data scientists, product engineers, and SREs to turn experimental models into reliable services that power mission critical applications. Shape the end-to-end lifecycle of cutting-edge AI services—from model training to production inference. Influence architecture decisions for a hybrid cloud environment that will serve thousands of concurrent agents. Collaborate with world-class researchers and product teams while enjoying a strong engineering culture focused on automation, observability, and reliability.
Responsibilities:
- Design, implement, and operate a unified MLOps platform that supports both on-premise Kubernetes clusters and AWS.
- Develop reusable CI/CD pipelines (GitLab CI) for model packaging, containerization, automated testing, canary releases, and rollbacks.
- Build observability, monitoring, and alerting stacks (Prometheus, Grafana, OpenTelemetry, CloudWatch) to track inference latency, throughput, resource utilization, and data drift for real time and batch workloads.
- Create self-service tooling (CLI, SDKs, UI dashboards) that allows data science and product teams to register models, define inference endpoints, and manage versioning without deep DevOps involvement.
- Architect and maintain data pipelines that feed training data, model artifacts, and inference logs into a governed data lake (S3, on prem object store).
- Collaborate with research and product engineers to translate experimental Agentic AI prototypes into production grade services, ensuring reproducibility, security, and compliance.
- Drive performance optimization for inference workloads (GPU/CPU scaling, model quantization, batching strategies).
- Champion best practices in security (IAM, network policies, secret management), cost efficiency, and disaster recovery for the hybrid infrastructure.
- Mentor junior engineers and contribute to internal knowledge bases, upskilling, and review processes.
Qualifications:
- Must be a U.S. Citizen
- BS in computer science or related engineering field
- 5+ years of experience building and operating production grade software infrastructure, preferably in a hybrid onprem / cloud environment
- Deep expertise with Kubernetes (cluster provisioning, Helm, operators, custom resources) and container runtimes (Docker, OCI)
- Hands on experience with AWS services (EKS, SageMaker, S3, IAM, CloudWatch, Step Functions) and the ability to bridge onprem resources with AWS via VPN/Direct Connect
- Strong software engineering skills in Python and at least one compiled language (Go, Rust, or Java) for building platform components and SDKs
- Proficiency with CI/CD and GitOps tooling (Argo CD, Flux, Gitlab, GitHub Actions, or similar)
- Solid understanding of distributed systems (consensus, fault tolerance, load balancing) and experience tuning high throughput, low latency inference pipelines
- Experience with data engineering frameworks (Airflow, Prefect, Kafka, Spark, Flink) and building robust, versioned data pipelines
- Familiarity with observability stacks (Prometheus, Grafana, OpenTelemetry, ELK) and the ability to define meaningful SLIs/SLOs for AI services
- Track record of collaborating with research or product teams to move prototypes to production, translating experimental code into maintainable services
- Strong problem solving mindset, excellent written and verbal communication, and a passion for building scalable AI platforms
- Working knowledge of Scrum and Agile software development methodology
Pay Range: There are a host of factors that can influence final salary including, but not limited to, geographic location, Federal Government contract labor categories and contract wage rates, relevant prior work experience, specific skills and competencies, education, and certifications. Our employees value the flexibility at CACI that allows them to balance quality work and their personal lives. We offer competitive compensation, benefits and learning and development opportunities. Our broad and competitive mix of benefits options is designed to support and protect employees and their families. Since this position can be worked in more than one location, the range shown is the national average for the position. The proposed salary range for this position is: $82,100-$172,400 CACI is an Equal Opportunity Employer. All qualified applicants will receive consideration for employment without regard to race, color, religion, sex, pregnancy, sexual orientation, age, national origin, disability, status as a protected veteran, or any other protected characteristic.