At a Glance
- Tasks: Join us as a Forward Deployed Engineer, shaping AI solutions for real energy challenges.
- Company: Hypercube, a fast-growing AI-for-energy company with a focus on innovation.
- Benefits: Enjoy competitive salary, flexible working, and a £2,000 training budget.
- Other info: Be part of a diverse team and help shape the future of energy technology.
- Why this job: Make a real impact in the energy sector while developing your career in AI.
- Qualifications: Experience with cloud platforms like AWS or Azure; strong communication skills are essential.
The predicted salary is between 70000 - 90000 £ per year.
Compensation: £70,000 – £90,000 Base + Performance Related Bonus + Benefits
Role: Forward Deployed Engineer (FDE) – Senior AI
Location: UK-based, fast-growing AI-for-energy company; flexible remote/hybrid with regular client travel
Cloud Experience: Must have AWS or Azure (certifications desirable)
Management: No direct line management required
Consultancy/Energy Experience: Highly beneficial, not essential
Visa Sponsorship: Not currently available; right to work and UK residency required
Flexibility: Genuinely flexible on how, when, and where you work — we care about quality of delivery, not location
Diversity & Inclusion: Actively building a diverse team — we particularly encourage applications from women and underrepresented groups in technology and energy
Who We Are
Hypercube is a rapidly growing AI-for-energy company building CAIRN, an operational intelligence platform that connects data, workflows, and decision-making across the energy asset lifecycle. We work with asset owners, operators, traders, and fund managers to replace fragmented tools and manual processes with a single intelligent layer across their portfolio.
Our belief is simple: real impact in a complex sector requires deep understanding, not just good software. We put our best engineers directly alongside clients, embedded in their world, solving real operational problems, and what we learn in the field continuously shapes the platform.
Role Purpose
Most AI engineers build for platforms. You'll build for decisions, real ones, at real energy companies, at the point where AI meets actual megawatts.
As one of Hypercube's first Forward Deployed Engineers, you'll help build the function from the ground up, working alongside the team to shape how we deploy, how we engage clients, and how we grow. You'll embed with clients, own the technical relationship, and make CAIRN work where the data is real, the stakes are high, and the requirements were never written down. You'll run discovery sessions with operations directors and trading desks, deploy AI workflows that change how energy assets are managed, and stay with the client until the system is running, trusted, and delivering measurable value.
This is a role for someone who is energised by the complexity of real energy operations, thrives when navigating uncertainty and shaping solutions from the ground up, and is just as confident presenting to a CFO as they are debugging a data pipeline. Strong communication with clients and internally with the platform and engineering teams is as important here as technical ability. The evidence you bring back from the field is what drives the CAIRN roadmap forward.
Key Responsibilities
- Client deployment & delivery
- Own end-to-end AI deployments at assigned accounts, from scoping through to production and ongoing operation
- Configure CAIRN's AI modules to each client's operational context, data landscape, and workflow requirements
- Build a deep working knowledge of CAIRN, its architecture, modules, and limits, so you can configure and extend it with confidence and communicate its capabilities honestly with clients
- Work with data pipelines and APIs to connect client data sources to CAIRN's AI layer
- Build human-in-the-loop controls into every deployment, ensuring that where AI informs high-stakes operational decisions, the right people remain accountable for the outcome
- Define measurable success metrics with clients from day one and track them throughout delivery
- Understand the commercial context of each account, what success is worth to the client, what is in scope, and what a strong ROI case looks like, and keep that front of mind throughout delivery
Stakeholder engagement & communication
- Lead structured discovery sessions with stakeholders at all levels, from operations engineers to C-suite
- Engage confidently in technical and commercial conversations with energy sector experts and build credibility through genuine sector depth and strong relationships
- Run client playbacks and roadmap sessions that translate technical progress into business outcomes
- Build trusted relationships and internal champions who drive adoption
- Handle difficult conversations about scope, timelines, and platform limitations
Quality & standards
- Write production-grade code that is readable, tested, documented, and maintainable by others
- Hold every client-facing output, code, documentation, presentations, and workshops, to the same high standard
- Make architecture decisions that balance quality, safety, latency, cost, and model risk, and communicate those tradeoffs clearly to clients
- Contribute to the FDE playbook: configuration patterns, integration templates, and AI governance frameworks
Collaboration & platform contribution
- Mentor and collaborate with other FDEs, sharing field learnings, deployment patterns, and hard-won experience as the practice grows
- Work closely with the platform and engineering teams, sharing field evidence that drives the CAIRN roadmap forward
- Raise feature requests and bug reports with the client context needed to prioritise them
Technical Skills & Experience
We value potential alongside proven experience. Apply even if you meet only some criteria.
- Core skills
- Agentic AI & LLMs: Production experience deploying large language models and agent-based workflows, not just notebooks
- Agent orchestration frameworks: Hands-on experience with LangGraph, LangChain, LlamaIndex, or CrewAI building multi-step agentic systems
- RAG & knowledge systems: Practical experience designing and building retrieval-augmented generation pipelines
- AI evals and observability: Experience building evaluation frameworks and using tools such as LangSmith to monitor and constrain agent behaviour in production
- LLMOps: Familiarity with the operational practices for deploying, monitoring, and maintaining LLMs in production environments
- Data science and model development: Ability to build, evaluate, and deploy bespoke predictive models where off-the-shelf AI approaches are insufficient, with practical experience in model training, feature engineering, and evaluation
- Python: Clean, production-quality code under real-world constraints, incomplete data, unreliable APIs, shifting requirements
- Cloud AI (AWS/Azure): Deploying AI solutions in production, including monitoring and reliability
- Data pipelines: Comfortable building and maintaining ETL/ELT pipelines connecting messy source systems to AI applications
- SQL: Solid querying and data modelling skills
- AI model management: MLFlow, Hugging Face, or equivalent
Nice to have
- Experience with time-series modelling, anomaly detection, or forecasting in operational or industrial contexts
- Infrastructure as Code (Terraform or equivalent)
- Containers: Docker, Kubernetes
- Streaming: Kafka, Kinesis
- Relevant certifications (AWS, Azure, Anthropic, Databricks, or equivalent)
Desirable experience
- Energy sector background, whether in engineering, analysis, consulting, or an operational role
- Client-facing or consulting experience alongside technical delivery
- A track record of building in messy, real-world environments and making things work reliably
- Public engagement through blogging, speaking, or open-source contribution
What's in it for you?
- Build the function. You are one of Hypercube's first FDEs. What you help shape becomes the playbook everyone else follows
- Field ownership. You own your deployments end-to-end, the approach, the architecture, the relationships, and the outcome
- Direct platform influence. The evidence you bring from the field shapes what CAIRN becomes
- Work that matters. The energy transition needs better decisions. You'll be building the tools that make them possible
- Career development. A clear path to Principal FDE and beyond, with transparent progression criteria and active mentorship
- Personal branding. Support developing your public profile, speaking, writing, and representing Hypercube in the energy AI conversation
- Genuine flexibility. We are genuinely flexible on how, when, and where you work. We care about the quality of what you deliver, not where you deliver it from
Benefits
- Enhanced pension
- Performance related bonus
- Enhanced maternity/paternity
- Peer cash award scheme
- Cycle to work scheme
- Flexible remote/hybrid working (with regular client travel)
- Events and community participation
- Private health insurance
- Health cash plan
- EV leasing scheme
- Training and events budget (£2,000/yr)
- Mentorship programmes
Diversity & Inclusion
We are actively working to build a team that reflects the diversity of the sector we want to transform. We particularly encourage applications from women and underrepresented groups in technology and energy, and we are committed to a fair, structured hiring process for every candidate.
Ready to Apply?
If this role excites you, apply via our careers page or contact us directly, even if you meet only some criteria. We want engineers who are energised by client impact, not just platform depth. If you are considering whether to apply, we would rather you did — diverse teams build better things.
N.B. We are currently not able to sponsor visas.
Forward Deployed Engineer in Scotland employer: Hypercube Consulting
Hypercube is an exceptional employer for Forward Deployed Engineers, offering a unique opportunity to shape the future of AI in the energy sector while enjoying genuine flexibility in work arrangements. With a strong focus on employee growth, mentorship, and a commitment to diversity and inclusion, you will be part of a pioneering team that values your contributions and encourages personal branding and public engagement. The collaborative work culture fosters innovation and allows you to make a real impact on critical energy decisions, all while enjoying competitive benefits and a clear path for career advancement.
StudySmarter Expert Advice🤫
We think this is how you could land Forward Deployed Engineer in Scotland
✨Tip Number 1
Get to know the company inside out! Research Hypercube's projects, values, and culture. This will help you tailor your conversations and show that you're genuinely interested in being part of the team.
✨Tip Number 2
Network like a pro! Connect with current employees on LinkedIn or attend industry events. Building relationships can give you insider info and might even lead to a referral — which is always a bonus!
✨Tip Number 3
Prepare for those tricky technical questions! Brush up on your cloud experience, especially AWS or Azure, and be ready to discuss how you've tackled real-world problems in energy operations. Confidence is key!
✨Tip Number 4
Don’t forget to showcase your soft skills! Being able to communicate effectively with clients and stakeholders is just as important as your technical abilities. Practice explaining complex concepts in simple terms.
We think you need these skills to ace Forward Deployed Engineer in Scotland
Some tips for your application 🫡
Tailor Your Application:Make sure to customise your CV and cover letter to highlight your relevant experience and skills that match the Forward Deployed Engineer role. We want to see how your background aligns with our mission at Hypercube!
Showcase Your Technical Skills:Don’t hold back on demonstrating your technical prowess! Include specific examples of your work with AI, cloud platforms like AWS or Azure, and any relevant projects that showcase your ability to tackle real-world problems.
Communicate Clearly:Strong communication is key in this role, so make sure your application reflects that. Use clear, concise language and structure your documents well. We want to see how you can convey complex ideas simply and effectively.
Apply Through Our Website:We encourage you to apply directly through our careers page. It’s the best way for us to receive your application and ensures you’re considered for the role. Plus, it shows you’re keen to join our team!
How to prepare for a job interview at Hypercube Consulting
✨Know Your Tech Inside Out
Make sure you have a solid grasp of the technologies mentioned in the job description, especially AWS or Azure. Brush up on your cloud experience and be ready to discuss how you've used these platforms in real-world scenarios.
✨Understand the Energy Sector
Familiarise yourself with the energy sector and its challenges. Being able to speak knowledgeably about industry trends and operational complexities will help you build credibility with interviewers and show that you're genuinely interested in the role.
✨Prepare for Client-Facing Scenarios
Since this role involves direct client engagement, think of examples where you've successfully navigated difficult conversations or built strong relationships. Be ready to demonstrate your communication skills and how you can translate technical jargon into business outcomes.
✨Showcase Your Problem-Solving Skills
Be prepared to discuss specific challenges you've faced in previous roles and how you approached solving them. Highlight your ability to work in messy, real-world environments and how you’ve made things work reliably under pressure.