Delivering Discovery, eClinical, and Imaging Solutions to the Global Biopharmaceutical Industry
Senior Agentic AI Engineer
Location
United Kingdom
Posted
2 days ago
Salary
0
Seniority
Senior
Job Description
Senior Agentic AI Engineer
Perceptive Inc.
• Own the design, implementation, and operationalization of complex agentic AI systems that drive automation, scalability, and data quality across medical imaging clinical trials. • Lead the delivery of multi-step, production-grade agentic workflows supporting imaging intake, quality control, protocol compliance, data validation, and structured decision support. • Provide technical leadership, mentoring engineers, and shaping best practices for agent reliability and evaluation. • Ensure AI systems meet quality, safety, and regulatory expectations. • Lead discovery and design discussions with Product, Imaging Operations, Clinical Ops, QA, Security, and Regulatory teams. • Drive alignment between business objectives, product strategy, and technical implementation. • Act as a technical point of contact for stakeholders on agentic AI capabilities and limitations. • Lead technical design reviews for agentic AI features and platform components. • Mentor and coach mid-level engineers on agent design, evaluation strategies, failure analysis, and production readiness. • Define team-level best practices for prompt engineering, retrieval grounding, evaluation metrics, and observability. • Develop evaluation frameworks to measure task success, grounding quality, hallucination risk, and regression across agent versions. • Build scalable backend services, APIs, and orchestration layers supporting agent execution in production. • Own production deployments of agentic systems, including CI/CD pipelines, environment promotion, and rollback strategies. • Define observability standards: tracing agent reasoning, tool calls, retrieval events, errors, and cost telemetry. • Ensure systems meet security, privacy, and compliance requirements.
Job Requirements
- Solid professional software engineering experience.
- Experience working in cross-functional environments with product and operational teams.
- Deep practical experience with retrieval-augmented generation (RAG) patterns, including chunking strategies, embedding management, retrieval quality evaluation, and traceability.
- Experience building scalable backend services, APIs, and pipelines supporting AI-driven workflows.
- Experience working with or strong understanding of medical imaging workflows (e.g., DICOM metadata, modality concepts, imaging QC processes), preferred.
- Experience developing software in regulated or quality-sensitive environments, with attention to validation, auditability, and traceability, preferred.
- Demonstrated ownership of complex systems from design through production.
- Proven ability to lead technical initiatives and mentor engineers.
- Strong experience operationalizing AI systems at scale.
- Master’s degree in Computer Science, Engineering, Data Science, or related field or equivalent practical experience.
- Master’s degree or relevant AI/ML specialization is a plus.
- English: Fluent.
Benefits
- 25 days’ holiday (with the option to buy more)
- Health Cash Plan
- Optional private health, dental insurance, and health screens
- Cycle to work scheme
- Generous pension scheme with up to 10% employer contribution
- Life assurance
- Season ticket loan
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