At a Glance
- Tasks: Deploy and scale AI platforms directly within client teams, driving real business outcomes.
- Company: Join a leading tech firm revolutionising AI deployment in enterprises.
- Benefits: Competitive salary, flexible work options, and opportunities for professional growth.
- Other info: Be part of a pioneering team shaping the future of AI deployment.
- Why this job: Make a tangible impact by solving complex AI challenges in diverse industries.
- Qualifications: Experience with cloud-native systems and AI platforms; strong problem-solving skills.
The predicted salary is between 80000 - 100000 Β£ per year.
Role Description This is not a consulting role.
It is not a project delivery role.
It is not a research position.
A Forward Deployed AI Engineer is a production engineer who works embedded inside a client's enterprise, shoulder to shoulder with their teams, to make complex AI platforms work in real, messy organizational environments.
You own outcomes: time-to-value, adoption, reliability, and scalability.
Not delivery milestones.
Outcomes.
The market is beginning to understand what leading technology companies have demonstrated: AI products fail not because the models are weak but because deployment is broken.
The gap between a successful AI pilot and an AI capability that scales is bridged by engineers who can translate platform capability into measurable business value inside a real enterprise environment.
That is this role.
Forward Deployed AI Engineers form the execution spine of our Reinvention Deployment Engineering pods.
We are building the largest FDE capability in the services industry.
The engineers who join at this stage will define what the role looks like at scale and will have access to the hardest enterprise AI problems in the market across every industry.
Key Responsibilities Embed directly with client engineering and business teams to deploy, scale, and operationalize AI platforms β Anthropic, Open AI, Microsoft, Google, Salesforce, SAP, or Palantir β inside enterprise environments Own production outcomes end-to-end: time-to-value, reliability, adoption velocity, and scalability, with business metrics attached β not just delivery milestones Move from ambiguous business problem to working production system through rapid experimentation: days to prototype, weeks to production-ready Design and govern AI architectures across the full enterprise stack: identity, data, security, governance, platform layer, and workflow integration Translate technical architecture into business impact for client CTO, CFO, and CISO; shape use case roadmaps, ROI backlogs, and AI adoption strategy Build reusable patterns, playbooks, and accelerators that the client owns after you leave β enabling the client team to run it without you Lead design workshops, proofs of concept, architecture walkthroughs, and code-with sessions with client engineering and leadership teams Codify patterns and delivery learnings that scale across engagements and contribute to the growth of the FDE practice Basic Qualifications Engineering experience with cloud-native systems (APIs, microservices, containerization, serverless).
Deep expertise in designing and deploying agentic solutions (agents, orchestration, context engineering, RAG, workflows) in production environments.
Experience with AI platforms β Open AI, Claude, Vertex AI, plus open-source models β including building abstraction layers to manage multi-provider pipelines.
Substantial experience deploying to production, CI/CD, infrastructure as code (Terraform, Helm), monitoring, and debugging.
Demonstrated end-to-end delivery ownership in a client-embedded environment, internal projects, vendor labs, or team-only deployments do not qualify Proven ability to articulate business value: can quantify the impact of deployments in terms a CFO would recognize and act on Experience presenting to and building trust with senior client stakeholders, CTO, CFO, or CISO level Non-linear profiles are expected and welcomed, assessment is based on demonstrated deployment experience and outcome ownership, not CV pattern matching #J-18808-Ljbffr