AI Platform SRE: Reliability, Security & Infra in London

AI Platform SRE: Reliability, Security & Infra in London

London Full-Time 110000 - 220000 £ / year (est.) No working from home possible
duvo.ai

At a Glance

  • Tasks: Own the reliability, security, and infrastructure for our AI operations platform.
  • Company: Join a fast-moving team dedicated to solving real problems for enterprise customers.
  • Benefits: Competitive salary, equity options, unlimited AI budget, and autonomy in your work.
  • Other info: Be part of a motivated team that values ownership, feedback, and rapid iteration.
  • Why this job: Make a real impact by building cutting-edge AI solutions that enterprises rely on.
  • Qualifications: Experience with distributed systems, security, observability, and automation is essential.

The predicted salary is between 110000 - 220000 £ per year.

Who We Are

Enterprise teams still copy data between systems all day. Work gets stuck in emails, legacy UIs, and handoffs. That chaos is costly, slow, and risky. We're a fast-moving team on a mission to end it for good. Traction is strong and we're solving real problems for real customers—but to win, we need exceptional talent. We stay humble, do the work, and let results speak.

What We Are Building

We're building the AI operations platform for retail and CPG enterprises—a horizontal platform where AI agents execute end-to-end work across UIs and APIs with governance built in. Where copilots stop, Duvo finishes the job. Business users specify the outcome; agents plan, act, request approvals on exceptions, and learn with every run. We start with a retail wedge (category management, supply chain, finance ops) where ROI is obvious, then expand to adjacent functions and sectors. Velocity is our moat: ship fast, iterate faster, compound learning.

The role

You will own the reliability, security, and infrastructure that lets our platform run AI agents for enterprise customers. This isn't traditional web app SRE — our agents execute arbitrary code in sandboxes, make unpredictable external API calls, and run for hours. Keeping this reliable, secure, and observable is the job. You'll be part of newly formed SRE team as one of the first team members. Infrastructure is currently owned collectively by product engineers — you'll take ownership, inherit real infrastructure (25+ Terraform modules, full OpenTelemetry pipeline, Prometheus/Grafana monitoring), and build the reliability practice from scratch. Your unit of ownership: platform reliability, infrastructure, observability, and incident response. You own sandbox infrastructure and capacity; the AI Platform Engineer owns sandbox behaviour and runtime logic. We're a growing product team scaling into multiple initiatives, each with a lead, engineers, a design engineer, and an AI-focused engineer.

What We're Looking For

  • Distributed systems experience. You've designed and operated systems that scale. You understand failure modes, capacity planning, and the trade-offs between consistency, availability, and latency in real production environments.
  • Security mindset. You'll handle enterprise data flowing through sandboxed environments, manage KMS encryption, configure Cloud Armor WAF rules, and ensure network isolation between tenant workloads. Security is a default consideration, not an afterthought.
  • Observability and incident response. You build monitoring and alerting that catches problems before customers do. When incidents happen, you lead structured responses, find root causes, and drive lasting fixes — not just restarts.
  • Infrastructure as code and automation. You automate everything you can. You've worked with IaC tools, CI/CD pipelines, and container orchestration in production. Manual runbooks make you uncomfortable.
  • Shipping and ownership. You don't just maintain systems — you improve them. You take ownership of reliability projects from proposal to production, and you measure the results.
  • Judgment on where to invest. You'll decide what to automate first, where to invest in reliability vs. ship speed, and make incident calls with incomplete information.

You might also

  • Have experience with GCP, Kubernetes, or similar cloud-native infrastructure.
  • Have worked with sandboxed execution environments or multi-tenant isolation.
  • Be comfortable with AI/ML production systems — understanding the unique reliability challenges of LLM-based applications.
  • Have a product engineering background — you've built features and understand the developer experience you're supporting.

This is not for you if

  • You want a traditional ops role where you follow runbooks — we're building the reliability practice, not maintaining one.
  • You want to build AI features — see AI Platform Engineer.

Our tech stack

  • GCP (Cloud Run, GKE, GCS)
  • Terraform, Docker
  • Prometheus, Grafana, Loki, OpenTelemetry
  • TypeScript and Python services (you'll read and occasionally modify application code, but deep language expertise isn't required)
  • Postgres, Redis

How we work

  • Initiative-driven. We organise around customer problems, not org charts. Problems surface through product feedback, competitive analysis, and direct customer conversations — then we prioritise, build, and ship weekly.
  • Customer-obsessed. We solve real problems, not hypothetical ones. Features that don't move customer metrics get cut.
  • Iterative by default. We ship small, learn fast, and never get attached to yesterday's code. This means things break sometimes — we fix forward.
  • AI-first leverage. We use AI to move faster and focus human time where it matters most. If a tool can do it, a person shouldn't.
  • Direct feedback. We give each other actionable feedback immediately. This can feel uncomfortable — we think that's worth it.
  • Autonomy with accountability. We trust people to make decisions and hold them to outcomes, not process.

What we offer

  • Unlimited AI budget. We don't just allow AI tools — we strongly encourage them. Want to try a new tool? Buy it. Want to automate part of your workflow? Do it.
  • Autonomy to do your best work. Want to meet someone to learn from? Set it up. Want a mentor? Go get one. Want to fly out to talk to an important customer? Just ask.
  • A real AI product with real customers. You're not building demos or internal tools. Enterprise customers use what you ship, and their feedback drives what you build next.
  • A sharp, motivated team that values ownership and candour.

Compensation 250.000,- CZK / month with a meaningful equity component. You can trade salary for additional equity if you prefer more upside.

How we hire

We respect your time and aim to move fast:

  • Hiring manager screen (30 min). We'll talk about systems you've built and operated, how you handle incidents, and whether there's mutual fit.
  • Remote task (async, time-boxed, ~1 hour). A realistic infrastructure or reliability exercise — an incident response scenario, an IaC task, or a monitoring design challenge. Not LeetCode.
  • Technical interview (Prague, ~1 hour). Meet the team. We'll go deeper on system design, security thinking, and incident response. No trick questions — we want to see how you reason about production systems.
  • On-site trial day (2 days). Work on a real infrastructure problem with us and see how we operate. Fully compensated.

Compensation Range: €110K - €220K

AI Platform SRE: Reliability, Security & Infra in London employer: duvo.ai

At our company, we pride ourselves on fostering a dynamic and innovative work culture that empowers employees to take ownership of their projects and drive meaningful change. With a strong focus on AI-driven solutions for retail and CPG enterprises, we offer exceptional growth opportunities, an unlimited AI budget for experimentation, and a collaborative environment where your contributions directly impact real customers. Join us in Prague, where you'll be part of a motivated team dedicated to solving complex problems while enjoying the autonomy to excel in your role.

duvo.ai

Contact Details:

duvo.ai Recruitment Team

StudySmarter Expert Advice🤫

We think this is how you could land AI Platform SRE: Reliability, Security & Infra in London

Tip Number 1

Network like a pro! Attend industry meetups, webinars, or even local tech events. Chatting with folks in the field can lead to opportunities that aren’t even advertised yet. Plus, it’s a great way to get your name out there!

Tip Number 2

Show off your skills! Create a portfolio or GitHub repository showcasing your projects and contributions. When you apply through our website, include links to your work so we can see what you’re capable of!

Tip Number 3

Prepare for interviews by practising common SRE scenarios. Think about how you’d handle incidents or improve system reliability. We love candidates who can think on their feet and demonstrate their problem-solving skills!

Tip Number 4

Follow up after interviews! A quick thank-you email can go a long way. It shows your enthusiasm for the role and keeps you fresh in our minds as we make decisions.

We think you need these skills to ace AI Platform SRE: Reliability, Security & Infra in London

Distributed Systems Experience
Capacity Planning
Security Mindset
KMS Encryption Management
Cloud Armor WAF Configuration
Network Isolation
Observability

Some tips for your application 🫡

Show Your Passion:When you're writing your application, let your enthusiasm for the role shine through! We want to see that you’re genuinely excited about the opportunity to work with us and tackle the challenges we face in building our AI operations platform.

Tailor Your Experience:Make sure to highlight your relevant experience in distributed systems, security, and observability. We’re looking for specific examples of how you've tackled similar challenges in the past, so don’t hold back on those details!

Be Clear and Concise:Keep your application straightforward and to the point. We appreciate clarity, so avoid jargon and make it easy for us to understand your skills and experiences. Remember, less is often more!

Apply Through Our Website:We encourage you to apply directly through our website. It’s the best way for us to receive your application and ensures you’re considered for the role. Plus, it shows you’re proactive and keen to join our team!

How to prepare for a job interview at duvo.ai

Know Your Systems Inside Out

Make sure you can discuss your experience with distributed systems in detail. Be ready to explain how you've designed and operated scalable systems, including the failure modes you've encountered and how you handled them. This will show that you understand the complexities of real production environments.

Security is Key

Since security is a major focus for this role, brush up on your knowledge of managing enterprise data in sandboxed environments. Be prepared to talk about KMS encryption, Cloud Armor WAF rules, and network isolation. Show that security isn't just an afterthought for you, but a fundamental part of your approach.

Demonstrate Your Observability Skills

Be ready to discuss how you've built monitoring and alerting systems that catch issues before they affect customers. Share examples of incidents you've led responses to, focusing on how you identified root causes and implemented lasting fixes. This will highlight your proactive approach to incident management.

Embrace Automation

Talk about your experience with Infrastructure as Code (IaC) tools and CI/CD pipelines. Share specific examples of how you've automated processes in the past and why manual runbooks make you uncomfortable. This will demonstrate your commitment to improving systems and your ability to drive reliability projects from start to finish.