Fullstack AI/ML Engineer
boomi
Job Description
Key Responsibilities
- AI Agent Design & Engineering:
Architect, build, and orchestrate intelligent agents using ChatB, Agent Studio, and LLM frameworks (e.g., OpenAI, Anthropic, Claude, Gemini). - Internal Platform Innovation (Customer Zero):
Lead the design, experimentation, and validation of new AI workflows that drive measurable internal productivity improvements. - Multi-Agent Systems:
Design agent hierarchies and orchestration pipelines using coordination frameworks (LangChain, AutoGen, CrewAI, Semantic Kernel). - Applied Research:
Investigate and integrate state-of-the-art AI techniques (tool use, reasoning, memory, reflection, RAG, and function calling). - Integration Engineering:
Build APIs and connectors enabling agents to interact with Boomi’s integration and automation ecosystem. - System Architecture & Performance:
Ensure that deployed agents meet enterprise standards for security, observability, and scalability. - Knowledge Graphs & Retrieval:
Implement vector databases, knowledge graphs, and retrieval pipelines to enhance context-aware responses. - Evaluation & Metrics:
Define KPIs, monitor LLM behaviors, and evaluate model performance through offline and live testing. - Collaboration & Enablement:
Work with platform, data, and UX teams to deliver integrated AI services and assist internal users with adoption and best practices. - Documentation & Standardization:
Develop reusable frameworks, templates, and design patterns for internal AI applications. - Ethics & Governance:
Support internal guidelines for AI transparency, data governance, and model safety within enterprise deployments. - Tooling & MLOps Integration:
Integrate pipelines with LLMOps, CI/CD, and API gateways for repeatable deployment. - Mentorship & Evangelism:
Mentor internal teams on AI agent architectures, experimental methods, and technical excellence.
Essential Skills & Qualifications
- Bachelor’s or Master’s degree in Computer Science, Artificial Intelligence, Data Science, or Software Engineering (RQF Level 6+).
- Advanced coding skills in Python, TypeScript, or JavaScript.
- Experience with LLM-based development, RAG pipelines, and agent orchestration frameworks.
- Deep understanding of API design, microservices, and event-driven architectures.
- Familiarity with machine learning frameworks (PyTorch, TensorFlow, Hugging Face).
- Experience working with vector databases (Pinecone, Weaviate, Chroma, FAISS) and retrieval systems.
- Knowledge of data pipelines and ETL tools, especially integration with the Boomi platform.
- Exposure to AI ethics, model evaluation, and prompt optimization techniques.
- Experience deploying workloads to cloud platforms (AWS, Azure, GCP) using modern DevOps and infrastructure-as-code practices.
- Understanding of containerization (Docker, Kubernetes) for scalable AI deployments.
- Excellent communication and stakeholder engagement skills, capable of bridging research and engineering domains.
- Research-oriented mindset with a track record of innovation, rapid prototyping, and cross-functional collaboration.