AI Engineering Leader
Damco
AI Engineering Leader
We are seeking a highly hands-on AI Engineering leader with deep expertise in Generative AI, Agentic systems, and production-grade AI platforms. This role is not a pure management rolethe ideal candidate will actively design, build, and scale AI systems (RAG, agents, evaluation frameworks) while leading engineering initiatives and influencing platform strategy. The candidate must demonstrate strong AI + AWS cloud expertise, with proven experience delivering enterprise-grade AI solutions in production environments.
Core Responsibilities
AI System Design & Development
Design and build production-grade GenAI systems, including:
Multi-agent architectures
Retrieval-Augmented Generation (RAG) pipelines
GraphRAG implementations
Autonomous agent workflows and orchestration
Develop and integrate AI agents with tools, APIs, and enterprise systems
Implement MCP-based agent communication and tool-use frameworks
Apply advanced prompt engineering techniques for reliability and performance
Agentic AI & Evaluation
Build and deploy multi-agent orchestration systems
Develop and implement:
Agent evaluation frameworks
RAG evaluation pipelines
Measure and optimize:
Output quality
Hallucination rates
Relevance and groundedness
Continuously improve models through evaluation-driven iteration
Engineering & Platform Development
Develop APIs and services using:
Python (primary)
.NET (preferred)
Build scalable AI services with:
REST APIs
Microservices architecture
Contribute to web-based AI applications using:
Angular / TypeScript (preferred)
Integrate AI systems into enterprise workflows and applications
Cloud & Infrastructure (AWS Focus)
Design and deploy AI solutions on AWS, leveraging:
Lambda, S3, EC2, EKS, Glue, SNS, SQS
Kafka-based streaming architectures
Build scalable and secure AI pipelines using cloud-native patterns
Implement cost-efficient and high-performance AI workloads
DevOps & CI/CD
Design and implement CI/CD pipelines using GitHub Actions
Integrate AI workflows into CI/CD pipelines with strong AWS integration
Ensure:
Automated deployment
Testing and validation of AI systems
Continuous monitoring and iteration
AI Development Tooling
Leverage modern AI development tools and ecosystems, including:
Claude (Claude API / Claude Code)
Cursor AI (AI-assisted development workflows)
Build and optimize developer workflows using AI-assisted coding tools
Required Qualifications
10+ years of overall engineering experience
5+ years of hands-on AI/ML / GenAI development in production environments
Strong experience building:
AI agents (minimum 2+ implementations)
GraphRAG systems (minimum 2+ implementations)
MCP-based integrations (minimum 1+)
Proven expertise in:
Multi-agent orchestration
RAG pipelines
Agent and RAG evaluation frameworks
Strong programming skills in:
Python (must-have)
Experience with:
API development and system integration
Strong experience with:
AWS cloud platform (must-have)
Preferred Qualifications
Experience with:
.NET / C# development
Terraform (Infrastructure as Code)
Experience building:
Web applications using Angular / TypeScript
Familiarity with:
Kafka-based streaming systems
Exposure to:
Advanced AI orchestration frameworks (LangChain, LangGraph, etc.)