Senior Data Engineer

Farringdon
1 month ago
Applications closed

Related Jobs

View all jobs

Senior Data Engineer

Senior Data Engineer

Senior Data Engineer

Senior Data Engineer - Apache Nifi - DV Cleared

Senior Data Engineer Product Engineering & Design London

Senior Data Engineer

Senior Data Engineer (Start-up / FinTech)

Hyre AI is seeking a seasoned data engineer to join a 'tech for good' early-stage fintech at a crucial stage of their growth. If you're passionate about autonomy, making a significant impact, and contributing to a safer world for consumers, this role is for you.

The successful candidate will play a pivotal role in shaping our client's data infrastructure, developing their product, and serving as a cornerstone of the engineering team. We're looking for a resourceful senior data engineer who can drive initiatives, bring fresh ideas daily, and collaborate with a super talented team to achieve our client's mission of eradicating scams.

Skills & Experience You'll Need:

  • Experience: Ideally, you've honed your skills over 5+ years, working on strategic, hands-on projects and managing your workload independently.

  • Programming Languages: Proficiency in programming languages such as Python, SQL, or Scala.

  • Tools: Familiarity with tools like Spark and workflow engines like Airflow, Dagster, or Temporal is a plus.

  • Cloud: Good experience with cloud platforms (e.g. AWS, GCP), containerisation (e.g. Docker, Kubernetes), and infrastructure as code (e.g. Terraform).

  • Data Architecture: Strong understanding of data architectures, data modelling, and designing scalable, fault-tolerant data pipelines, as well as experience with data lakes and warehouses.

  • Data Governance: Proven experience working in sensitive data contexts with a solid understanding of data governance practices, privacy concerns, and regulations (e.g., GDPR).

  • Problem-Solving: A passion for tackling complex data challenges, adept at navigating data quality issues, anticipating failures, and effectively identifying root causes.

  • Adaptability: Willingness to take on new challenges, quickly pick up new tools and technologies, and possibly bring experience from adjacent disciplines like software engineering or infrastructure.

  • Industry: Prior experience in fintech or banking is a plus, but experience building large-scale systems in any sensitive data context is a great start.

    What You’ll Be Doing:

  • Building scalable, robust, and well-tested data infrastructure and processing pipelines that integrates with customers’ systems to combat fraud effectively.

  • Designing and implementing elegant, intuitive, production-grade, transparent data products that drive impact for the business and our customers.

  • Contributing to shaping technical and cultural foundations—setting standards, selecting tools, reviewing code, and promoting collaboration.

  • Owning data products, monitoring their performance, ensuring ongoing quality, and building robust upgrade processes, all while championing data governance best practices and ensuring sensitive data is handled with utmost care.

  • Establishing and maintaining automated testing and CI/CD pipelines to ensure high-quality, seamless deployments.

    Location & Salary:

    This role is based in Farringdon, London, with an expectation of 3+ days per week on-site. We offer a highly competitive salary, complemented by a generous equity package. Visa sponsorship is available for exceptional candidates

Get the latest insights and jobs direct. Sign up for our newsletter.

By subscribing you agree to our privacy policy and terms of service.

Industry Insights

Discover insightful articles, industry insights, expert tips, and curated resources.

McKinsey & Company Data‑Science Jobs in 2025: Your Complete UK Guide to Turning Data into Impact

When CEOs need to unlock billion‑pound efficiencies or launch AI‑first products, they often call McKinsey & Company. What many graduates don’t realise is that behind every famous strategy deck sits a global network of data scientists, engineers and AI practitioners—unified under QuantumBlack, AI by McKinsey. From optimising Formula One pit stops to reducing NHS wait times, McKinsey’s analytics teams turn messy data into operational gold. With the launch of the McKinsey AI Studio in late 2024 and sustained demand for GenAI strategy, the firm is growing its UK analytics headcount faster than ever. The McKinsey careers portal lists 350+ open analytics roles worldwide, over 120 in the UK, spanning data science, machine‑learning engineering, data engineering, product management and AI consulting. Whether you love Python notebooks, Airflow DAGs, or white‑boarding an LLM governance roadmap for a FTSE 100 board, this guide details how to land a McKinsey data‑science job in 2025.

Data Science vs. Data Mining vs. Business Intelligence Jobs: Which Path Should You Choose?

Data Science has evolved into one of the most popular and transformative professions of the 21st century. Yet as the demand for data-related roles expands, other fields—such as Data Mining and Business Intelligence (BI)—are also thriving. With so many data-centric career options available, it can be challenging to determine where your skills and interests best align. If you’re browsing Data Science jobs on www.datascience-jobs.co.uk, you’ve no doubt seen numerous listings that mention machine learning, analytics, or business intelligence. But how does Data Science really differ from Data Mining or Business Intelligence? And which path should you follow? This article demystifies these three interrelated yet distinct fields. We’ll define the core aims of Data Science, Data Mining, and Business Intelligence, highlight where their responsibilities overlap, explore salary ranges, and provide real-world examples of each role in action. By the end, you’ll have a clearer sense of which profession could be your ideal fit—and how to position yourself for success in this ever-evolving data landscape.

UK Visa & Work Permits Explained: Your Essential Guide for International Data Science Talent

Data science has rapidly evolved into a driving force for businesses and organisations worldwide. In the United Kingdom, companies across sectors—including finance, retail, healthcare, tech start-ups, and government agencies—are turning to data-driven insights to boost competitiveness and innovation. Whether you specialise in statistical modelling, machine learning, or advanced analytics, data scientists are in high demand throughout the UK’s vibrant tech ecosystem. If you’re an international data scientist aiming to launch or grow your career in the UK, one essential part of the journey is navigating the country’s visa and work permit system. From understanding how to secure sponsorship as a Skilled Worker to exploring the Global Talent Visa for leading experts, this article will help you understand the most relevant routes, criteria, and practical steps for your move. Let’s delve into everything you need to know about working in data science in the UK as an international professional.