At a Glance
- Tasks: Build AI-powered features that transform finance management for over 40,000 customers.
- Company: Join Pleo, a progressive tech company revolutionising spend management.
- Benefits: Enjoy remote work options, competitive salary, and comprehensive healthcare.
- Other info: Collaborative team environment with excellent career growth opportunities.
- Why this job: Make a real impact by turning innovative AI concepts into functional solutions.
- Qualifications: Experience in shipping customer-facing AI products and strong Python skills required.
The predicted salary is between 70000 - 90000 ÂŁ per year.
About Pleo
Messy spend management is tricky business. And tedious processes are a lose-lose situation for all involved, not just finance. At Pleo, we're changing that. We build spend solutions that make managing money seamless, empowering, and surprisingly effective for finance teams and employees alike - with a vision to help all businesses âgo beyondâ. The word âPleoâ actually means âmore than youâd expectâ, and living by that mantra has been the secret to our success over the last 10 years.
Now, weâre at a pivotal moment in our journey; every move we make has a direct impact on our 40,000+ customers, our business, and our collective success. We need people who take pride in uncovering customer needs, who turn complex problems into simple solutions, challenge the way things are done (respectfully), and always aim high. With great ambitions driving us forward, we canât say weâve got this whole thing figured out. And frankly, thatâs half the fun! What we can say is that weâre a driven, progressive, and, importantly, a kind bunch of 850+ people from over 100 nationalities, all committed to delivering the future of business spending, together.
About the role
This is an exciting opportunity to help shape how Pleo builds AI-powered product features, working alongside software engineers, data engineers and data scientists to take ideas from prototype to production. Pleo has over 40,000 customers and a decade of unique spend data â an incredible foundation to build on. Your mission will be to harness this data to create real product value.
Who youâll be working with and reporting to
This is not a solo end-to-end role. You'll work as part of a small, complementary data team â pairing with a Staff Data Platform Engineer and a Staff Data Scientist â each bringing distinct skills while you bring applied AI engineering and data context. Together, the team covers the full chain from data to shipped product. While part of the Data team and reporting directly into our Director of Data Product, you'll work embedded in product squads across the business. Your core focus is on building and shipping AI-powered features â with a strong collaborative element across Product Engineering, GenAI Core, and Data Platform teams.
What youâll be doing
- Work alongside product engineers and data specialists to build and ship AI-powered products including spend intelligence, automated actions, agentic workflows, and more.
- Work directly with Product, Design, Engineering, and business stakeholders to advise and prioritise on what's actually worth building. You aren't just implementing specs, you're discovering and defining the product.
- Own the evaluation, monitoring, and operationalisation of AI features â setting up evals, tracking drift and performance, and managing prompt changes safely in production. You will help establish how Pleo does this at scale and own the development in production.
- Partner with our GenAI Core platform team to define and prioritise what tooling is being built for the whole company, and subsequently act as a champion for the use and adoption of our tooling.
What you bring
You will thrive in this role if you have:
- Proven experience shipping GenAI features at scale in a customer-facing product. You've moved past prototype phases and ideally have experience shipping multi-step, tool-using agents in a user-facing product.
- The ability to translate complex business challenges and product visions into scalable AI solutions. In other words, you can autonomously scope, design and build.
- Experience setting up evals, monitoring, and production observability for LLM-based systems.
- Solid experience with the modern AI stack including Vector DBs, orchestration frameworks and LLM APIs.
- Experience building APIs, services and data retrieval pipelines (RAG, vector search...) to feed data into LLMs.
- Deep proficiency with Python for both data and software engineering, SQL and BigQuery or similar major cloud providers.
To share extra context, our current tech stack includes GCP, BigQuery, Airflow, Python, SQL on the Data side and AWS, Kotlin, Javascript, Typescript on the Product side while our infrastructure is containerised with Kubernetes. Experience across those technologies or languages would be considered a bonus.
Why is this role a good fit for you
This role is a good fit for you if:
- You are a software engineer with product instincts. You build with the user in mind. You understand that a model is only as good as the problem it solves.
- You have moved past prototyping and have a deep understanding of the realities of LLMOps, data retrieval, prompt and context engineering, as well as model evaluation in production. You don't just call APIs, you understand the data feeding the AI system and can reason about data quality, architecture, and retrieval without needing a dedicated data engineer beside you at all times.
This role is not a good fit for you if:
- You want to focus on research and algorithm development. We need someone who cares about shipping solutions to production right now, turning AI concepts into functional features that solve real financial problems today.
- You need a perfectly groomed backlog, structured tooling and pre-defined specs. We expect our Staff Engineers to be able to navigate ambiguity, to autonomously scope solutions and build any new tooling that might be required.
- You can't explain complex AI trade-offs to a CEO or a designer without losing them in the weeds. You work well with stakeholders who are very technically or commercially focused.
How youâll develop in this role
In your first 6 months at Pleo, youâll:
- Familiarise yourself with our codebase, tooling and roadmap.
- Partner with our Principal Engineer to define and own our approach to AI feature development.
- Contribute to shaping the roadmap for tooling and features developed by our GenAI Core team.
- Collaborate with Product and Data teams to ship a first feature to production.
Weâre committed to helping you develop your career, whether that means taking on bigger projects, stepping into leadership, or acquiring new skills!
The location
Please note: We can hire on a remote, hybrid or in-person set-up in any of the locations listed on the advert but you will need to be physically based in the country of your choice with a valid right to work. We are unable to offer visa sponsorship for this role.
Show me the benefits!
- Your own Pleo card (no more out-of-pocket spending!)
- Lunch is on us for your work days - enjoy catered meals or receive a lunch allowance based on your local office.
- Comprehensive private healthcare - depending on your location, coverage options include Vitality, Alan or MĂŠdis.
- We offer 25 days of holiday + your public holidays.
- For our Team, we offer both hybrid and fully remote working options.
- We use MyndUp to give our employees access to free mental health and well-being support with great success so far.
- Paid parental leave - we want to make sure that we're supportive of families and help you feel that you don't have to compromise your family due to work.
The interview process
We want to ensure you are set-up for success and understand what will be expected of you. If your application is successful, our interview process is as follows:
- Intro call: A 30-minute chat with our Talent Partner to discuss the role and your background.
- Hiring Manager interview: A 60-minute conversation to deep dive into your knowledge and experience.
- System design interview: A 75-minute practical session with our engineers focusing on scoping and designing an AI feature.
- Live coding interview: A 75-minute practical session with our engineers focusing on implementing your solution.
- Final interview: A leadership interview focusing on your behavioural, communication and collaboration skills.
Transparency is important to us so we also wanted to share some insights about what weâre looking for in applications to ensure you can set yourself up for success!
CV writing and content: we receive a lot of CVs, and many of them are AI-generated. We love seeing people leverage AIâitâs a big focus for us internally tooâbut without human intervention, these CVs can sometimes become generic and fail to show a candidate in the best light. What we're really looking for is the specific details of real impact that only you know from your previous experience. A top tip from us is to use the âAchieved X, as measured by Y, by doing Zâ formula (credit: Laszlo Bock, ~2014) to give a really clear picture of what youâve worked on. A final note: including links to your previous companies' websites is a huge help and allows us to truly understand your background!
Application care: every single application we receive is reviewed by a human (yes, hundreds of them) because we believe that candidates' efforts should be matched by an equal level of human care. This means that we expect a similar level of attention put into your application. Read and answer the application questions carefully, they make a huge difference in our decision-making process.
Profile to role fit: this is neither a research-driven nor a traditional data or software engineering role. We're looking for someone with proven experience shipping customer-facing AI products who can also confidently operate at Staff level in a SaaS organisation. This means we'll be looking for evidence that you can own fairly complex initiatives that have organisation-wide impacts beyond just building and shipping.
About your application
English first. Since it's our company language, please submit your application in English. Youâll be using it a lot if you join us.
A fair look for everyone. Our talent team reads every single application to ensure the process is fair. To keep things running smoothly, we only accept applications through our systemâour support team canât pass on calls or emails.
Diversity drives us. We can only reach our goals if our team reflects the world around us. That starts with you hitting apply, even if you don't tick every single box. We encourage people from all backgrounds and experiences to join us.
Interview at your best. We want you to feel comfortable throughout the process. If you have any accessibility requirements or need a specific format, email belonging@pleo.io. Weâll design a process that works for you.
Your data is safe. When you apply, we process your personal data as a data processor. For more information on how Pleo processes personal data, read our Privacy Policy here.
Applying for multiple roles? Nothing is stopping you, and we assess every role independently. However, we do look for alignment, so make sure you can explain why your interest and experience are right for each specific role.
Reapplying. If youâre applying for the same role again, please wait six months from your last decision before hitting submit.
Staff Applied AI Engineer employer: Pleo
Contact Detail:
Pleo Recruiting Team
StudySmarter Expert Advice đ¤Ť
We think this is how you could land Staff Applied AI Engineer
â¨Tip Number 1
Get to know Pleo and its mission! Research our products and values so you can speak confidently about how your skills align with what we do. This shows us you're genuinely interested and not just sending out applications blindly.
â¨Tip Number 2
Network like a pro! Connect with current Pleo employees on LinkedIn or attend industry events where we might be present. A friendly chat can go a long way in making a memorable impression.
â¨Tip Number 3
Prepare for the interview process by practising common questions and scenarios related to AI engineering. We want to see how you think on your feet, so consider doing mock interviews with friends or using online platforms.
â¨Tip Number 4
Apply through our website! Itâs the best way to ensure your application gets the attention it deserves. Plus, it shows us youâre serious about joining the Pleo team and ready to take that next step.
We think you need these skills to ace Staff Applied AI Engineer
Some tips for your application đŤĄ
Craft a Unique CV: We want to see the real you, so make sure your CV stands out! Use the formula 'Achieved X, as measured by Y, by doing Z' to highlight your impact. This helps us understand what you've done and how it relates to the role.
Answer Application Questions Thoughtfully: Take your time with the application questions. We read every single one, and thoughtful answers can really make a difference in our decision-making process. Show us you care about this opportunity!
Show Your Experience with AI Products: Since we're looking for someone who has shipped customer-facing AI products, make sure to highlight your relevant experience. We want to know how you've tackled complex challenges and delivered real value.
Apply Through Our Website: Remember, we only accept applications through our system. So, head over to our website and submit your application there. Itâs the best way to ensure it gets the attention it deserves!
How to prepare for a job interview at Pleo
â¨Know Your Stuff
Make sure youâre well-versed in the technologies mentioned in the job description, like Python, SQL, and the modern AI stack. Brush up on your experience with LLMs and how they can be applied to real-world problems. Being able to discuss specific projects where you've successfully shipped AI features will definitely impress.
â¨Showcase Your Problem-Solving Skills
Prepare to discuss how you've tackled complex business challenges in the past. Use the 'Achieved X, as measured by Y, by doing Z' formula to clearly articulate your impact. This will help demonstrate your ability to translate product visions into scalable AI solutions.
â¨Collaborate Like a Pro
Since this role involves working closely with various teams, be ready to share examples of how you've successfully collaborated with product engineers, data scientists, and other stakeholders. Highlight your communication skills and how youâve navigated ambiguity in previous projects.
â¨Be Ready for Practical Tests
Expect practical sessions during the interview process, such as system design and live coding. Practice scoping and designing AI features beforehand, and brush up on your coding skills. Being prepared for these hands-on assessments will show that you can not only talk the talk but also walk the walk.