Position Summary: Title: AI Developer
Duration: Months – Long Term
Location: Washington, DC
Hybrid Onsite: / Days onsite per week from Day The overall purpose of position: Support “AI pod” and analyse client needs, stand up prototypes, and convert those prototypes into secure, production-ready applications.
- Will own the end-to-end development life cycle for changing client efforts while constantly scouting, testing, and injecting emerging AI technologies into the process.
- Candidate must pair an exceptional delivery discipline with hands-on engineering agility, moving seamlessly from whiteboard to working demo and back again.
Scope of work: Exploration & Scoping - Rapidly synthesize client pain points into concise problem statements, success metrics, and guardrails.
- Evaluate feasibility, cost, risk, and ROI for multiple GenAI solution paths (RAG, agentic workflows, synthetic-data pipelines, etc.).
- Aid in maintaining a dynamic backlog of ideas, continuously assisting in reprioritized against business value.
Rapid Build & Iteration - Spin up end-to-end prototypes using technologies like AWS Bedrock / SageMaker, FastAPI, Streamlit React, , or whatever framework or architecture efficiently to meet client needs
- Implement evaluation harnesses for accuracy, latency, and cost, demo tangible progress each Sprint.
- Capture stakeholder feedback live and fold it into the next sprint with minimal overhead.
Adapt & Enhance - Refactor architecture as user requirements shift or new data sources emerge.
- Introduce cutting-edge libraries or architectures when they offer measurable uplift.
- Document decision trade-offs and lessons learned for future waves.
Hardening & Transition - Elevate promising POCs into client-compliant pilots and integrate CI/CD pipelines.
- Produce all delivery artifacts: architecture diagrams, security traceability, runbooks, video demos.
- Alignment to client and AFS security practices.
- Creating/Updating existing relevant client documentation.
- Aiding in creation of video demos
- Conducting live demos
- Guide pilots through acceptance, hand-off, and sustainment planning with operations teams.
Emerging-Tech Tracking & Best Practices - Track Client GenAI trends (open-source LLMs, small-context agents, memory-efficient RAG) and run spike proofs to gauge fit.
- Present briefings to the Innovation leadership (when applicable) and seed reusable patterns into our internal asset library.
- Mentor junior practitioners on prompt engineering, token-cost governance, and evaluation best practices.
Qualification and experience: - Bachelor's degree in technology, innovation, or related field of study.
- + years delivering data products or full stack applications .
- + years building & deploying GenAI applications.
- Practical understanding of technologies like:
- AWS core services using Bedrock or SageMaker for LLM hosting
- Java, Python, FastAPI, Docker, GitHub Actions, Terraform or AWS CDK
- React / , TypeScript, and modern vector stores
- LangChain, LlamaIndex, LangGraph, or equivalent RAG / agent frameworks
- Demonstrated ability to compress ideation → demo → hardened pilot into < days
- Exceptional verbal, written, and presentation skills.
- Able to translate technical insights into executive-ready stories.
- High comfort operating in fast-paced, ambiguous environments where priorities shift rapidly.
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