Hands:on experience across multiple agentic AI projects, ideally spanning both industrial and academic environments. Should be comfortable working at the intersection of large language models, symbolic reasoning, knowledge representation, workflow orchestration, evaluation, and full:stack (web) product development.
This is a role for someone who can move from research concepts to working systems: designing agent architectures, implementing reasoning workflows, testing reliability, building user:facing interfaces, and ensuring that agentic behaviour is interpretable, controllable, and robust.
Key responsibilities
:Design and implement real:world agentic AI systems using modern agent frameworks and orchestration tools.
:Develop agentic workflows that go beyond chat, including complex analytical pipelines, multi:step research workflows, tool:using agents, knowledge:grounded agents, and structured decision:support systems.
:Work with knowledge:based AI architectures, including retrieval:augmented generation, knowledge graphs, symbolic rules, structured domain models, ontologies, and hybrid reasoning systems.
:Develop and apply mechanisms for controlling inference, including planning constraints, reasoning policies, guardrails, validation layers, tool:use control, and human:in:the:loop checkpoints.
:Explore and implement neuro:symbolic approaches for agentic reasoning, combining LLM:based reasoning with symbolic, rule:based, graph:based, or formally structured methods.
:Build transparent AI methods that make agent behaviour traceable, explainable, testable, and auditable.
:Create evaluation and testing frameworks for agentic systems, including benchmark tasks, regression tests, failure:mode analysis, trace inspection, robustness testing, and task:level performance measurement.
:Develop full:stack prototypes and production applications, integrating backend services, APIs, databases, frontend interfaces, model providers, and orchestration layers.
:Collaborate with researchers, engineers, product teams, and domain experts to translate ambiguous real:world problems into reliable agentic workflows.
:Stay current with developments in agentic AI, reasoning systems, LLM orchestration, AI evaluation, and applied neuro:symbolic methods.
Required experience
:Must have neuro symbolic reasoning experience.
:Strong multi:project experience developing real:world AI agents or agentic workflows.
:Demonstrated focus on agentic reasoning, including planning, decomposition, tool use, multi:step inference, workflow execution, or autonomous task completion.
:Experience in either industrial AI development, academic research, or ideally both.
:Hands:on e