Be responsible for the implementation of AI and automation tools to improve SDLC efficiency, incorporating the use of tools like ChatGPT Enterprise, Gene. AI, Atlassian Intelligence, Test Assist, and others.
Complete implementation strategies within Business Units and teams for AI-powered SDLC automation initiatives.
Identify high-friction phases of the SDLC and define automation opportunities using generative AI, LLMs, and internal agents.
Coordinate multi-functional teams (R&D, IT, DFP, DevEx) to align automation capabilities with BU priorities.
Technical Enablement & Integration Support
Serve as the technical point of contact for internal integrations using low-code, no-code, or custom solutions.
Mentor engineering teams and integration engineers on how to connect AI-powered tools into SDLC workflows (e.g., planning, testing, bug triage).
Tool Operationalization & Community Engagement
Serve as Product Owner for critical AI and automation projects that drive software transformation initiatives.
Support the development and improvement of playbooks and guidelines for AI-powered developer enablement.
Strategy, Metrics, and Continuous Improvement
Establish benchmarks and success criteria for automation pilots and scaled deployments (e.g., time saved, bugs caught, quality uplift).
Conduct retrospectives and feedback loops with technical and business collaborators to improve approach and roadmap.
Stay ahead of AI trends and propose strategic adjustments.
How You Get Here
Education:
Bachelor’s degree/ equivalent experience in Computer Science, Engineering, Information Systems, or related technical field.
Experience:
5+ years in a role involving platform engineering, software development process improvement, or enterprise technology enablement.
Familiarity with integrating AI/ML tools or enterprise SaaS solutions in development environments is a strong plus.