Site Reliability Engineer (SRE) Artificial Intelligence (AI) Engineer
Leidos
Software Engineering, Data Science
Remote
USD 131,300-237,350 / year
Posted on Feb 19, 2026
The U.S. Navy’s Service Management, Integration, and Transport (SMIT) program has an opening for a Site Reliability Automation and Orchestration Engineer on a high-visibility DoD program that provides engineering support to the Navy Marine Corps Intranet (NMCI), the largest information technology (IT) network in the world. This position will provide many opportunities to challenge and grow your skills.
The AI Reliability Engineer (AI-SRE) is responsible for integrating artificial intelligence and machine learning capabilities into Site Reliability Engineering (SRE) operations to improve system reliability, availability, performance, and operational efficiency. This role serves as a horizontal enabler across SRE pods, leveraging AI-driven insights to reduce operational toil, accelerating incident response, enhance observability, and enable predictive reliability engineering. The AI-SRE partners closely with infrastructure, network, application, cyber, and platform SRE teams to transform operational data into actionable intelligence while ensuring AI solutions are safe, explainable, auditable, and aligned with SRE principles.
Key Responsibilities
AIOps & Observability Intelligence
- Design, develop, and maintain AI/ML models for anomaly detection, trend analysis, and signal correlation across metrics, logs, traces, and events.
- Reduce alert noise through intelligent alert grouping, suppression, and prioritization.
- Enhance observability platforms with AI-generated insights supporting SLO and error-budget management.
AI-Assisted Incident Management
- Implement AI-driven incident classification, enrichment, and summarization.
- Provide probable root-cause analysis recommendations based on historical and real-time telemetry.
- Support on-call and incident response teams with AI-guided remediation suggestions.
- Contribute AI insights to post-incident reviews and reliability improvement plans.
Automation & Ops-as-Code Enablement
- Apply AI techniques to identify repetitive operational tasks and automation opportunities.
- Assist in generating, validating, and optimizing automation playbooks and workflows.
- Analyze automation execution data to improve success rates, resiliency, and reuse.
Knowledge Management & Runbook Intelligence
- Build and maintain AI-searchable knowledge repositories containing runbooks, SOPs, lessons learned, and historical incident data.
- Enable natural-language access to operational knowledge for SREs and operations staff.
- Reduce dependency on tribal knowledge through intelligent documentation and discovery.
Predictive Reliability Engineering
- Develop predictive models for capacity planning, failure forecasting, configuration risk, and reliability debt identification.
- Support proactive remediation strategies to prevent incidents before customer impact.
- Assist SRE leadership in data-driven prioritization of reliability investments.
Governance, Security & Trust
- Ensure AI solutions adhere to organizational security, compliance, and data-handling policies.
- Establish guardrails for AI recommendations, human-in-the-loop decision making, and automation execution.
- Promote transparency, explainability, and auditability of AI-driven operational decisions.
Required Qualifications
Education and Requirements:
- Bachelor’s degree in computer science, Engineering, Information Systems, Data Science, or related discipline
- 5+ years in Site Reliability Engineering, DevOps, IT Operations, or Systems Engineering
- 2+ years applying AI/ML techniques in operational, analytics, or automation contexts
- Demonstrated experience supporting production systems in high-availability environments
- Must have an active Secret Clearance in order to be considered for the position
Technical Skills
- Proficiency in data analysis tooling
- Experience with machine learning fundamentals (anomaly detection, clustering, time-series analysis, NLP)
- Familiarity with observability platforms (metrics, logs, traces, events)
- Experience with automation frameworks and infrastructure-as-code concepts
- Strong understanding of distributed systems and operational telemetry
If you're looking for comfort, keep scrolling. At Leidos, we outthink, outbuild, and outpace the status quo — because the mission demands it. We're not hiring followers. We're recruiting the ones who disrupt, provoke, and refuse to fail. Step 10 is ancient history. We're already at step 30 — and moving faster than anyone else dares.
Original Posting:
February 18, 2026For U.S. Positions: While subject to change based on business needs, Leidos reasonably anticipates that this job requisition will remain open for at least 3 days with an anticipated close date of no earlier than 3 days after the original posting date as listed above.
Pay Range:
Pay Range $131,300.00 - $237,350.00The Leidos pay range for this job level is a general guideline only and not a guarantee of compensation or salary. Additional factors considered in extending an offer include (but are not limited to) responsibilities of the job, education, experience, knowledge, skills, and abilities, as well as internal equity, alignment with market data, applicable bargaining agreement (if any), or other law.