Required Skills & Experience
Experience - 13-16 years experience
Category
Must-Have Experience
.NET Ecosystem
Expert-level mastery of C#, .NET 8/Core, Microservices architecture, and building reusable NuGet packages/frameworks.
AI Orchestration
Hands-on production experience with Semantic Kernel, AutoGen, or LangChain (.NET preferred).
Automation & Agents
Proven experience deploying Function Calling (Tools), multi-agent systems, and autonomous workflows.
Data & Search
Expertise in Vector Databases (Azure AI Search, Pinecone, Qdrant) and hybrid search strategies.
DevOps / MLOps
Experience with GitHub Actions, Azure DevOps, CI/CD pipelines, AI observability (latency, cost, accuracy metrics).
Cloud Platforms
Strong experience with Azure (preferred) or AWS/GCP AI services.
Preferred Qualifications
-
Experience leading AI transformation initiatives at scale.
-
Strong knowledge of secure AI design patterns and governance.
-
Experience integrating AI into legacy enterprise environments.
-
Familiarity with LLM evaluation frameworks and benchmarking techniques.
Leadership & Soft Skills
-
Strategic thinker with hands-on execution capability.
-
Strong stakeholder communication and influencing skills.
-
Ability to balance innovation with enterprise stability.
-
Mentorship mindset with experience scaling engineering capability.
Success Metrics
-
Reduction in AI adoption friction across engineering teams.
-
Measurable improvements in AI reliability, cost efficiency, and latency.
-
Successful deployment of enterprise-grade agentic automation solutions.
-
Increased AI engineering maturity within the organization.