Forward Deployed AI Engineer

Harnham - Data and Analytics Recruitment
London, United Kingdom
Last week
£80,000 – £130,000 pa

Salary

£80,000 – £130,000 pa

Job Type
Permanent
Work Pattern
Flexible
Work Location
Hybrid
Seniority
Mid
Education
Degree
Posted
20 May 2026 (Last week)

Forward Deployed Engineer (AI and Knowledge Graphs)


London - UK Remote

The Company
They are a Series A funded AI startup building a platform that brings together vast, fragmented scientific data into an interactive knowledge graph. Their technology maps cause and effect relationships between diseases, proteins and drugs to accelerate drug discovery and research. With strong commercial traction and a growing client base across pharma, biotech and research organisations, they are scaling a small, highly collaborative team across engineering and solutions.

The Role
As a Forward Deployed Engineer, you will work directly with end clients to take the platform from trial through to production deployment, acting as a technical partner throughout the journey. You will balance hands on engineering with customer facing problem solving, translating complex requirements into robust, scalable solutions.

Key responsibilities include:

  • Leading technical delivery for customer integrations, from scoping through to production rollout
  • Working closely with end users ranging from highly technical teams to more non technical stakeholders
  • Designing and building AI driven workflows, including LLM and retrieval augmented generation use cases
  • Integrating knowledge graph data into customer environments using APIs, graph databases or analytical platforms
  • Partnering with a solutions consultant who brings deep industry expertise, while you own technical feasibility and execution
  • Feeding recurring customer needs back into the core product to support long term scalability

Your Skills and Experience
You will bring a strong engineering foundation and enjoy working close to customers in fast paced, ambiguous environments.

Key requirements include:

  • Strong commercial experience building and deploying AI or LLM powered systems into production
  • Hands on experience designing, building and debugging LLM workflows, including familiarity with RAG approaches
  • Experience working with modern data platforms and warehouses such as Snowflake or BigQuery
  • Exposure to graph databases and knowledge graphs is highly desirable, (Neo4J)
  • Comfort working in small teams or startup environments, with a proactive, delivery focused mindset
  • Ability to communicate clearly with both technical and non technical stakeholders

What They Offer

  • The chance to work on meaningful technology with real impact on healthcare and drug discovery
  • A small, collaborative team environment with direct access to senior leadership
  • Genuine flexibility around location and working style
  • Strong scope for career growth as the company scales

How to Apply
If you are excited by customer facing engineering, applied AI and working in a high impact startup environment, apply now to learn more about this opportunity.

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