Data Engineer

iProov
London
1 week ago
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LocationLondon, United Kingdom# Data Engineer at iProovLocationLondon, United KingdomSalary£50000 - £65000 /yearJob TypeFull-timeDate PostedDecember 12th, 2025Apply NowData Engineer****About iProoviProov provides science-based biometric solutions that enable the world’s most security-conscious organizations to streamline secure remote onboarding and authentication for digital and physical access. Our award-winning liveness technology and iSOC offer unmatched resilience against deepfakes and generative AI threats while ensuring effortless, scalable user experiences. Trusted by leading governments and enterprises, including the U.S. Department of Homeland Security, U.K. Home Office, GovTech Singapore, ING, and UBS, iProov sets the standard in biometric identity assurance.This global trust is built not only on our technology but on the strength of the people behind it. For us, diversity at iProov is about reflecting the customers we serve, holding the principles of equality and inclusion at the heart of everything we do and all that we stand for, embracing differences, creating possibilities, and growing together. We aim to foster a culture where individuals of all backgrounds feel confident in bringing their whole selves to work, feel included, and their talents are nurtured, empowering them to contribute fully to our purpose.The Role****Reports to: Head of Data Analytics & Business IntelligenceLocation: London, UK - HybridComp: £50k-£65k (base) + Company Performance Bonus (10%) + Share Options + UK iProov BenefitsThis is an exciting opportunity for a software engineer who loves working with data to help build and evolve reliable, high-impact data pipelines and reporting platforms, using modern technologies in a cloud-native environment. You’ll take real ownership of data quality, resilience and innovation while collaborating with talented teams to deliver trusted insights at scale.How you can make an impact* Advance our data warehousing and reporting capabilities, moving the team from "building mode" to "scaling mode."* Share the responsibility for platform uptime, helping to harden pipelines, improve observability, and ensure systems can handle increasing data volume without manual intervention.* Contribute to a high-quality codebase through peer code reviews and documentation, helping to maintain a culture of clean, reusable, and tested code.* Act as a technical liaison for the Science and Analytics members of the team, translating their complex requirements into efficient GCP infrastructure and Kubernetes deployments.* Proactively identify bottlenecks in our existing flows & implement modern solutionsWhat we would like to see from you* A proven track record of writing clean, modular Python in a professional team environment, with the ability to read, debug, and improve existing codebases.* Hands-on experience with Google Cloud Platform data services, including containerized applications (Kubernetes/Docker) and orchestration tools (Airflow/Composer).* Experience with Git workflows, pull requests, and CI/CD pipelines, with a clear understanding that great engineering is a collaborative team sport.* Comfort interacting with both MongoDB (NoSQL) and SQL warehouses, including an understanding of how to handle schema evolution and data consistency across different systems.* Strong debugging skills and a desire to find root causes rather than just patching errors.* Motivation to deliver features quickly while caring about the long-term health of the platform, and a willingness to constructively challenge processes to improve team velocity.Benefits* 25 days Annual Leave, plus 8 Bank Holidays (more holiday with service - up to an extra 5 days off per year based on your continuous service)* Growth Shares allocated after passing probation (6 months of service)* Salary sacrifice schemes including: Pension, Cycle To Work and Electric Car Scheme* Nursery Sacrifice Scheme* Work Overseas Perk - Work globally for up to 2 weeks* Life Assurance* SmartHealth - Access to private GP, Psychologist, Nutritionist along with tailored fitness plans for both you and your family* Benefit from personalized 1:1 career coaching with our in-house Occupational Psychologist* Award winning L&D platform with personal allocated training budgets* Enhanced paid family leave* Pension - 5% employee, 3% employer* Flexible hybrid working environment* Free Barista Coffee/Tea, biscuits with fruit in the WeWork office* Free access to WeWork discounts and free online well-being sessions* Vitality Health - a range of options available on this belowThe Vitality Programme includes a number of reward benefits that all employees have access to as part of the plan, for example:* Private Health cover including Dental, Optical, and Audiology* 50% off monthly gym memberships* Apple watches significantly discounted based member vitality status* Half price trainers with Runners Need* Weekly rewards – Free coffee with Café Nero* Monthly rewards – Free Cinema ticket* Discounts on travel with Expedia (hotels) and Mr & Mrs Smith with discounts getting greater throughout the year based on a members vitality status* Amazon prime free months based on activity* Up to 25% cashback at Waitrose when buying healthy foods* 75% off stays at Champneys Health Spas* Allen Carr’s £299 no smoking programme for free* Access to Vitality Healthy Mind with 30% off Headspace subscriptions and the ability to earn Vitality points for using Buddhify, Calm and Headspace* Discounts on Weight Watchers* 50%-80% off Comprehensive Private Health screeningsOur Culture & Recruitment ProcessAt iProov, we're incredibly proud of the culture we've carefully curated. Our culture enables diverse thought, curiosity and innovation. Our team strives to do everything to the highest standard possible to achieve the remarkable. To do that we need different perspectives, experiences and ideas alongside an environment where these are welcomed - we want everyone to feel confident in bringing their full capabilities to work. We firmly believe psychological safety is key to building and nurturing great teams. We’re a small and dynamic company, that means having the right skills is important, and we know that our best work emerges when people feel secure, welcomed and respected.As an equal opportunities employer, we encourage applications from people of all backgrounds. We’re committed to building a workforce that is representative of the people we serve. We will not put someone at a disadvantage or treat them less favourably because of race, color, national origin, ancestry, age, disability, creed, religion or belief, sex, sexual orientation, gender reassignment, marriage or civil partnership, or pregnancy and maternity. Our goal is to find people who are passionate about creating a safer, more secure world.Our recruitment process is designed to be fair and transparent, focusing solely on your qualifications, competence, and suitability for the role. We review all applications carefully and will be in touch with shortlisted candidates regarding the next steps in our interview process. If you need an adjustment for a disability or any other reason during the hiring process, please send a request to
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