Ensure that there is an audit trail for traceability/lineage for AI/LLM based decisions Establish and maintain continuous delivery pipelines, optimizing for the DORA metrics: deployment frequency, lead time, change failure rate, and mean time to recovery Build observability into every system from day one - instrumentation, structured logging, alerting, and dashboards that give the team confidence to ship fast Write clean, testable, well-factored code; practice continuous integration, continuous refactoring, and small batch delivery as daily habits Actively explore the PACE team's domain, emerging tools, and adjacent problem spaces - bring new ideas and challenge assumptions Work directly with PACE team's domain experts to understand problems deeply before building solutions Collaborate across teams and organizations to integrate data sources and align on technical direction Contribute to the engineering culture of a new team - shaping practices, running retrospectives, and helping the team continuously improve Represent your work through demos, design discussions, and clear written communication Bachelors Degree in Computer Science, Computer Engineering, related field, or equivalent work experience 3+ years experience building and shipping production software systems Strong track record of delivering AI-powered systems at scale, including model integration, evaluation, and production monitoring Deep practical experience with modern software engineering practices: continuous integration, continuous delivery, trunk-based development, and incremental delivery Proficient in Python and at least one other high-level programming language Experience building data pipelines and working with connected data across multiple sources Experience with cloud infrastructure and container technologies including Kubernetes and Docker Demonstrated ability to build observability into production systems - metrics, tracing, logging, and alerting A curious mindset - you dig into unfamiliar domains, ask why things work the way they do, and seek out knowledge beyond your immediate responsibilities Excellent written and verbal communication skills with both technical and non-technical audiences. Masters degree in Computer Science, Computer Engineering, related field, or equivalent work experience Experience working in or building software for regulated industries (compliance, legal, safety, or similar domain) Familiarity with the principles in Accelerate and practical experience improving DORA metrics in a team setting Experience with test-driven development, continuous refactoring, small batch delivery, and collective code ownership Experience securing AI/LLM systems that process sensitive or regulated data, including prompt injection defense, data handling policies, and audit trail requirements Experience with LLM application patterns: retrieval-augmented generation, prompt engineering, evaluation frameworks, and human-in-the-loop workflows Experience with MLOps practices including model versioning, experiment tracking, and performance monitoring in production Track record of building systems that connect and make sense of heterogeneous data sources at enterprise scale Experience helping establish engineering culture on a new or transforming team.