At a Glance
- Tasks: Design and build data pipelines to unify investment data across global platforms.
- Company: Innovative fintech tackling data challenges in private markets.
- Benefits: Competitive salary, bonuses, hybrid work, and great career growth.
- Other info: Collaborative culture with opportunities to shape AI-driven solutions.
- Why this job: Make a real impact by solving complex data problems with cutting-edge technology.
- Qualifications: Strong Python skills and a passion for clean engineering.
The predicted salary is between 90000 - 140000 β¬ per year.
There's a quiet data problem at the heart of private markets and a London fintech is building the infrastructure to solve it.
Every PE fund, credit strategy and infrastructure vehicle reports NAVs, capital calls and investor positions differently. Different fund admins. Different formats. Different cadences. Some APIs are terrible. Many don't exist at all.
Now imagine giving a wealth manager in Zurich, a private bank in Hong Kong and an adviser in Sydney one clean, regulator-ready view across all of it - in near real time. That's the challenge that we need a software & data engineer to solve.
You'll own ingestion pipelines from global fund administrators, design scalable data models across relational, NoSQL and Delta architectures, and solve the reconciliation problems that turn fragmented investment data into a clean, unified layer the platform can rely on.
You'll also help shape how AI gets embedded into the platform - not as a side experiment, but as core infrastructure.
The engineering environment is modern and evolving fast. You get room to shape systems, not just maintain them. Python and Azure underpin a modern distributed data platform built around ingestion pipelines, lakehouse architecture, streaming workflows, CI/CD, observability and product-facing data services.
The team is actively pushing further into AI-native workflows - using LLMs to improve ingestion, reconciliation and reporting, while investing heavily in data quality, lineage and platform reliability.
The wider application stack is React, TypeScript and Node, so this isn't a siloed data engineer role hidden away from the product. Engineers here work across the platform where it makes sense: infrastructure, pipelines, APIs, application architecture and the data experiences exposed to end users.
Engineering culture matters too. Leadership comes from deep trading-tech and asset management infrastructure backgrounds. Pragmatic people. Low ego. Strong technical standards. The kind of environment where good architectural pushback is welcomed.
You'll enjoy logging every morning if:
- Care deeply about data quality and clean engineering
- Enjoy solving messy, high-consequence data problems
- Like operating across data, infrastructure and application engineering
- Want ownership, not endless Jira ticket throughput
- Are curious about fintech, wealth or private markets
- See AI as an opportunity to build better systems, not just automate tasks
You don't need prior private markets experience. What matters is strong engineering judgement, deep Python capability and the ability to navigate messy, real-world data problems without overengineering them.
Curious to know more? Hit apply or send me a DM β informal first conversations are taking place now.
Data Engineer - Investment Platform in London employer: LinkedIn
Join a forward-thinking fintech in Central London that prioritises innovation and collaboration, offering a dynamic work culture where your contributions directly impact the evolution of investment data solutions. With competitive salaries, bonuses, and a commitment to employee growth through hands-on experience with cutting-edge technologies like AI and cloud platforms, this role provides an exceptional opportunity for those passionate about data engineering. Embrace a supportive environment that values technical excellence and encourages you to shape the future of finance.
StudySmarter Expert Adviceπ€«
We think this is how you could land Data Engineer - Investment Platform in London
β¨Tip Number 1
Network like a pro! Reach out to people in the fintech space, especially those working with data engineering. Use LinkedIn to connect and donβt be shy about asking for informational chats. You never know who might have the inside scoop on job openings!
β¨Tip Number 2
Show off your skills! Create a portfolio showcasing your projects, especially those involving Python and data pipelines. Share it during interviews or even in your LinkedIn profile. Itβs a great way to demonstrate your capabilities beyond just words.
β¨Tip Number 3
Prepare for technical interviews by brushing up on your problem-solving skills. Practice coding challenges that focus on data structures and algorithms. This will help you feel more confident when tackling those tricky questions that come up in interviews.
β¨Tip Number 4
Donβt forget to apply through our website! Weβre always on the lookout for talented individuals like you. Plus, applying directly can sometimes give you a better chance of getting noticed by the hiring team.
We think you need these skills to ace Data Engineer - Investment Platform in London
Some tips for your application π«‘
Tailor Your CV:Make sure your CV reflects the skills and experiences that align with the Data Engineer role. Highlight your Python expertise, experience with data pipelines, and any work you've done with Azure or AI technologies.
Craft a Compelling Cover Letter:Use your cover letter to tell us why you're passionate about solving data problems in fintech. Share specific examples of how you've tackled messy data challenges in the past and how you see AI enhancing data systems.
Showcase Your Projects:If you've worked on relevant projects, whether personal or professional, include them in your application. We love seeing real-world applications of your skills, especially if they involve data quality and engineering.
Apply Through Our Website:For the best chance of getting noticed, apply directly through our website. It helps us keep track of your application and ensures it reaches the right people quickly!
How to prepare for a job interview at LinkedIn
β¨Know Your Data Inside Out
Make sure you understand the intricacies of data engineering, especially in relation to investment platforms. Brush up on your knowledge of ingestion pipelines, data models, and how to handle messy data. Being able to discuss specific challenges and solutions you've encountered will show your expertise.
β¨Showcase Your Python Skills
Since Python is a key part of the role, be prepared to demonstrate your coding skills. You might be asked to solve a problem on the spot or discuss past projects where you used Python effectively. Practising common data engineering problems can help you feel more confident.
β¨Understand the Fintech Landscape
Familiarise yourself with the current trends in fintech, particularly around private markets and wealth management. Being able to discuss how these trends impact data engineering will impress your interviewers and show that you're genuinely interested in the industry.
β¨Emphasise Collaboration and Communication
This role isn't just about coding; it's about working across teams. Be ready to talk about how you've collaborated with others in the past, especially in cross-functional settings. Highlighting your ability to communicate complex ideas clearly will set you apart.