Deep AI/Agentic Engineer
Our client are a private equity backed firm who are looking for a Deep AI/Agentic Engineer to lead the design and delivery of the organisations complex AI-native engagements, from agentic systems to semantic layers. Pair hands-on technical leadership with client trust, shaping both enterprise outcomes and the firm's long-term engineering capability.
Responsibilities:
You will design and build production-grade AI systems across:
- LLM applications using modern orchestration patterns, prompt frameworks, and evaluation loops.
- Multi-agent architectures, including planning, delegation, safety constraints, and monitoring.
- Retrieval & vector-based systems, embeddings, structured reasoning, and semantic workflows.
- Ontology & knowledge modelling literacy, enabling more precise reasoning and data alignment.
- Integrations & automation, including API workflows, tools, and enterprise connectors.
Skills:
- 6–8 years in Software/ application engineering, AI engineering, or applied data engineering.
- Strong experience with LLMs, embeddings, RAG, retrieval stacks, and vector stores.
- Hands-on experience in multi-agent systems, agent orchestration, or MCP-like tool patterns.
- Proficiency in Python, including ability to build production-grade workflows.
- Experience with at least one cloud AI ecosystem (Azure/OpenAI, GCP/Vertex, Anthropic, AWS etc.).
- Familiarity with semantic modelling, ontologies, or knowledge graph thinking - literacy required, mastery a bonus.