At a Glance
- Tasks: Lead the development of AI-driven products and ensure systems are reliable and scalable.
- Company: Dynamic startup focused on real-world impact and innovative technology.
- Benefits: Fully remote work, hands-on coding, and opportunities for mentorship.
- Other info: Fast-paced environment where ownership and leadership are key to success.
- Why this job: Make a real difference by building impactful systems that enhance customer performance.
- Qualifications: Strong engineering skills in AWS, Python, and experience with ML and LLMs.
The predicted salary is between 100000 - 150000 £ per year.
You're the kind of person who doesn't sit on the sidelines drawing diagrams while someone else does the hard work. You build. You break things. You fix them properly. And when something "works," you're already thinking about how it survives scale, customers, and reality.
Right now, there's a platform already delivering value in a high-performance environment where marginal gains matter, and decisions aren't theoretical - they show up in outcomes that people care about deeply. It's not a blank slate. It's live, in use, and trusted. But under the surface, it's messy in the way fast-moving, ambitious systems tend to be. Pipelines overlap. Models exist, but not all of them belong in production. Architecture decisions need to be made with the next 10x in mind, not the last sprint.
This is where you come in. You'll take ownership of an AI-driven product built on a uniquely rich, real-world dataset - one that captures performance, behaviour, and context at a level most teams never get access to. The job isn't to chase hype. It's to make systems reliable, scalable, and actually useful to the people depending on them.
You'll move between layers comfortably. One moment you're deep in AWS, thinking about how to stabilise and monitor pipelines across multiple customers. The next, you're shaping how models (both traditional ML and LLMs) fit into a product that needs to be fast, interpretable, and trusted. Then you're back in the code, making sure it all holds together.
This is not about building the most complex system. It's about building the right one. There's a strong bias toward pragmatism here. If a deterministic workflow beats a "clever" model, you choose the workflow. If an agent adds risk without clear value, you push back. If something can't be explained simply, it's not ready.
You'll work closely with product and commercial teams, translating complexity into clarity and helping shape what actually gets built. From a leadership perspective, this isn't consensus-driven. You're expected to challenge, to question, and to take ownership. The team needs someone who raises the bar, mentors others, and drives decisions forward, especially when things are unclear or uncomfortable. You don't wait for permission. You move things.
Technically, you're still very hands-on. Strong software engineering fundamentals are a given. The current environment spans AWS, TypeScript (React / React Native), and data infrastructure (Postgres, MongoDB, pipelines). That said, strong Python backgrounds - especially from ML-heavy environments - are highly relevant. What matters is that you've built real systems, not just models in isolation.
Most importantly, you've done this before: taken models, pipelines, or data-heavy systems and turned them into production-grade platforms that scale across customers, use cases, and environments. You've seen what breaks. You've fixed it. And you've made it better the second time.
Key things we're looking for:
- Deep, hands-on engineering capability across backend, data, and cloud (AWS)
- Experience combining ML and LLMs into real, working systems
- Strong track record of productionising and scaling AI/data platforms
- Ability to simplify messy systems and make architecture decisions that last
- Product mindset: you care about outcomes, not just technical elegance
- Clear communicator who can explain complex ideas simply
- Proven leadership: mentoring, setting standards, and pushing back when needed
Things you should know:
- This is a startup environment: speed, ambiguity, and ownership come with the territory
- The focus is on scaling and stabilising what exists, not chasing blue-sky ideas
- You'll be expected to lead from the front, not from a distance, in a fully remote context
- There is real impact here: what you build directly affects how customers perform in the real world
FAQ's
- Is this hands-on? Very. You'll be writing code and shaping systems daily.
- Is this more ML or engineering? Both—but with a strong bias toward production engineering.
- Do I need TypeScript experience? Helpful, but not essential if your Python/ML background is strong.
- Is this a leadership role? Yes, but through ownership and action, not hierarchy.
- Visa sponsorship: Not currently available
If you've read this far and this feels like your kind of problem, email me directly at anika@seekr.inc with the subject "Built to Scale" and tell me about a system you took from messy to production-ready.
Chief Technology Officer employer: SEEKR
As a Chief Technology Officer at our innovative startup, you'll thrive in a dynamic environment that values hands-on engineering and pragmatic solutions. We foster a culture of ownership and collaboration, where your contributions directly impact customer performance and drive meaningful outcomes. With opportunities for mentorship and professional growth, you'll be part of a team that challenges the status quo and embraces the complexities of building scalable AI-driven platforms.
StudySmarter Expert Advice🤫
We think this is how you could land Chief Technology Officer
✨Tip Number 1
Get your hands dirty! When you’re in the interview, don’t just talk about your past experiences—show them how you’ve built, broken, and fixed systems. Share specific examples of how you’ve tackled messy architectures and turned them into reliable platforms.
✨Tip Number 2
Be ready to challenge the status quo. This role is all about ownership and pushing back when needed. During your discussions, demonstrate your ability to question assumptions and suggest practical solutions that focus on outcomes rather than just technical elegance.
✨Tip Number 3
Communicate clearly! You’ll need to explain complex ideas simply, so practice breaking down your thought process. Use analogies or straightforward language to make your points clear, especially when discussing how you’ve integrated ML and LLMs into production systems.
✨Tip Number 4
Don’t forget to apply through our website! It’s the best way to ensure your application gets noticed. Plus, it shows you’re serious about joining a team that values speed and ownership in a startup environment.
We think you need these skills to ace Chief Technology Officer
Some tips for your application 🫡
Be Authentic:When you're writing your application, let your personality shine through! We want to see the real you, so don’t be afraid to share your passion for technology and how you've tackled challenges in the past.
Show Your Impact:Make sure to highlight specific examples of how you've taken messy systems and turned them into reliable, scalable platforms. We love seeing tangible outcomes, so share the results of your hard work!
Keep It Clear and Concise:While we appreciate detail, clarity is key. Use straightforward language to explain complex ideas, just like you would when communicating with your team. We want to understand your thought process without getting lost in jargon.
Apply Through Our Website:We encourage you to apply directly through our website. It’s the best way for us to keep track of your application and ensure it gets the attention it deserves. Plus, it shows you're keen on joining our team!
How to prepare for a job interview at SEEKR
✨Know Your Tech Inside Out
Make sure you’re well-versed in the technologies mentioned in the job description, especially AWS, TypeScript, and Python. Be ready to discuss your hands-on experience with these tools and how you've used them to build or scale systems in the past.
✨Showcase Your Pragmatic Approach
Prepare examples that highlight your ability to make practical decisions over theoretical ones. Discuss times when you chose a straightforward solution over a complex model and how that benefited the project or team.
✨Communicate Clearly
Practice explaining complex technical concepts in simple terms. You’ll need to demonstrate that you can translate intricate ideas into clear, actionable insights for both technical and non-technical stakeholders.
✨Demonstrate Leadership Through Action
Think of instances where you took ownership of a project or led a team through ambiguity. Be ready to share how you mentored others, set standards, and pushed back on ideas when necessary, showcasing your proactive leadership style.