Forward Deployed Engineer

Birmingham
4 days ago
Create job alert

Forward Deployed Engineer
Location: Remote – Must be UK based
Type: Full-Time
Salery: £60,000-£166,000 depending on experience
Industry: AI / Enterprise GenAI / Agentic Systems

Are you building production-grade GenAI systems — not just demos?

We’re partnering with a cutting-edge AI organisation delivering transformative, agentic AI solutions to enterprise clients. They are looking for a Senior GenAI Solutions Engineer to embed with customers, lead deployments, and build bespoke AI systems that drive measurable business impact.

This is a high-ownership, customer-facing role at the intersection of AI engineering, cloud deployment, and strategic solution delivery.

What You’ll Be Doing



Design and deploy enterprise-grade RAG and multi-agent systems

*

Build transformative agentic AI solutions using tools such as LangChain and LangGraph

*

Lead technical delivery from prototype to stable production release

*

Deploy ML systems across AWS, Azure, or GCP environments

*

Embed within client teams to co-develop AI solutions aligned to KPIs

*

Conduct technical debugging and root cause analysis

*

Rapidly prototype innovative AI systems in ambiguous environments

*

Drive adoption and demonstrate measurable business outcomes

*

Implement best practices across AI engineering, DevOps, and MLOps

What We’re Looking For

*

Proven experience building GenAI applications (RAG, multi-agent systems, fine-tuning)

*

Strong understanding of Model Context Protocols, A2A Protocols, Agent Developer Kits, and LLM orchestration and evaluation

*

Experience deploying production-grade ML/GenAI systems in cloud environments (AWS, Azure, or GCP)

*

Strong hands-on data science expertise (pandas, scikit-learn, PyTorch, etc.)

*

DevOps and infrastructure experience including Docker, Kubernetes, Terraform, CI/CD pipelines (GitHub Actions, Jenkins, CircleCI), and GitOps workflows

*

Full-stack engineering capability (Python, JavaScript or similar stacks)

*

Experience in customer-facing technical roles (5+ years)

*

Ability to communicate complex AI concepts to both technical and non-technical audiences

*

Strong risk awareness and proactive problem-solving mindset

Ideal Profile

*

Have scoped and delivered complex systems in fast-moving, ambiguous environments

*

Understand how AI model behaviour impacts product experience

*

Can move seamlessly between engineering teams and executive stakeholders

*

Take ownership of delivery and outcomes — not just code

Education

Graduate degree in Computer Science, Engineering, Statistics, Operations Research, or equivalent practical experience.

Why Join?

*

Work on truly transformative AI deployments

*

High autonomy and ownership

*

Fully Remote working options

*

Direct client impact with measurable KPI outcomes

*

Opportunity to shape next-generation agentic AI systems

*

Fast-growing, innovation-driven environment

First round interviews are being arranged, please send in your CV for a confidential discission

Related Jobs

View all jobs

Senior Electronics Engineer

Vehicle Mechanic Assessors

Mechanical Engineer (Building Services)

Senior Mechanical Design Engineer

Mechanical Design Engineer

Mechanical Engineer (Building Services)

Subscribe to Future Tech Insights for the latest jobs & insights, direct to your inbox.

By subscribing, you agree to our privacy policy and terms of service.

Industry Insights

Discover insightful articles, industry insights, expert tips, and curated resources.

How Many Edge Computing Tools Do You Need to Know to Get an Edge Computing Job?

If you’re trying to start or grow a career in edge computing, it can feel like you’re navigating a maze of tools, frameworks and platforms — Kubernetes, Docker, IoT frameworks, AWS Greengrass, Azure IoT Edge, OpenShift, TinyML toolkits, networking orchestration, real-time streaming frameworks, and on it goes. Scroll job boards and community forums and it’s easy to conclude that unless you master every buzzword imaginable, you’ll never get a job. Here’s the honest truth most edge computing hiring managers won’t necessarily say out loud: 👉 They don’t hire you because you know every edge computing tool — they hire you because you can solve real system problems using the tools you know. Tools matter, yes — but only when they support clear outcomes: reliable systems, performance at scale, secure edge deployments and real business value. So how many edge computing tools do you actually need to know to secure a job? For most edge computing roles, the answer is fewer than you think — and a lot clearer when sorted by fundamentals and roles. This guide shows you what matters, what doesn’t, and how to focus your time wisely so you come across as capable, confident and employable.

What Hiring Managers Look for First in Edge Computing Job Applications (UK Guide)

In today’s fast-evolving tech landscape, edge computing is one of the most sought-after fields — blending distributed systems, embedded systems, networking, cloud, IoT, data and real-time processing. But that also means hiring managers are highly selective. They scan applications fast and look for signals of relevance, impact, technical depth and real-world delivery long before they read every line. This guide demystifies what hiring managers in edge computing look for first in your application — so you can tailor your CV, portfolio and cover letter to jump out of the stack. Whether you’re targeting edge systems roles, embedded IoT edge jobs, edge-native data roles, edge platform engineering or edge-AI positions, this checklist will help you position your experience in a way hiring managers can trust immediately.

The Skills Gap in Edge Computing Jobs: What Universities Aren’t Teaching

Edge computing is rapidly moving from niche concept to critical infrastructure. As organisations deploy connected devices, sensors, autonomous systems and real-time analytics, processing data closer to where it is generated has become essential. From smart cities and manufacturing to healthcare, transport, defence and telecommunications, edge computing underpins systems where latency, reliability and resilience matter. Demand for edge computing skills across the UK is rising steadily — yet employers consistently report difficulty finding candidates who are genuinely job-ready. Despite growing interest and academic coverage, universities are not fully preparing graduates for real edge computing jobs. This article explores the edge computing skills gap in depth: what universities teach well, what they consistently miss, why the gap exists, what employers actually want, and how jobseekers can bridge the divide to build sustainable careers in edge computing.