Data Engineer

Radar Healthcare
Leeds
2 weeks ago
Applications closed

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Data Engineer

Data Engineer

Data Engineer

Data Engineer

Data Engineer

Data Engineer

Data Engineer

Radar Healthcare


Our Story

At Radar Healthcare, we’re dedicated to improving patient safety by bringing together the expertise of healthcare professionals and the power of intuitive software. Our innovative platform has been developed in partnership with industry experts to ensure organisations always meet regulatory standards – making it easier than ever for healthcare providers to deliver top-quality care to their patients.


Our Values

  • Customer focused with a partnership approach
  • Open, honest and transparent
  • Innovative
  • Ethical, trustworthy and caring

Our People & Culture

We celebrate a diverse and passionate team that encapsulates our vision, purpose and values. We provide a supportive environment with opportunities for learning, community socials and a location that offers flexibility and comfort.


Seniority Level

Entry level


Employment Type

Full-time


Job Function

Information Technology


Industries

Technology, Information and Internet


The Opportunity

Radar Healthcare is seeking a talented Data Engineer to join our innovative team and contribute to our mission of transforming healthcare through data‑driven solutions. In this role, you will design, develop, and maintain scalable data pipelines to ingest, process, and store large volumes of data from diverse sources. Your collaboration with developers, product owners and business stakeholders will be crucial to understand data requirements and ensure data quality and accessibility. You will optimise existing data infrastructure, implement validation and monitoring solutions, and develop ETL processes to load data into warehouses and lakes. Ensuring data security and compliance with industry standards, you will write and maintain comprehensive documentation while staying updated with the latest industry trends and best practices.


What You’ll Be Doing

  • Design, develop, and maintain scalable and robust data pipelines to ingest, process, and store large volumes of data from various sources.
  • Collaborate with Developers, Product Owners, and business stakeholders to understand data requirements and ensure data quality and accessibility.
  • Optimize and enhance existing data infrastructure for performance, reliability, and scalability.
  • Implement data validation and monitoring solutions to ensure data integrity and accuracy.
  • Develop and maintain ETL processes, including data extraction, transformation, and loading into data warehouses and data lakes.
  • Ensure data security and compliance with industry standards and regulations.
  • Write and maintain comprehensive documentation for data engineering processes and workflows.
  • Stay updated with the latest industry trends and best practices in data engineering and big data technologies.

Your Journey So Far

  • Relevant Data Engineer qualifications, including degrees and masters.
  • Proven experience as a Data Engineer or in a similar role, with a strong understanding of data architecture and ETL processes.
  • Proficiency in programming languages such as Python, Java, or Scala.
  • Strong knowledge of SQL and experience with relational databases (e.g., MS SQL, MongoDB).
  • Familiarity with cloud platforms such as Azure, and related data services.
  • Experience with data warehousing solutions and data modelling concepts.
  • Strong problem‑solving skills and attention to detail.
  • Excellent communication and collaboration abilities.

Even Better If You…

  • Have knowledge of machine learning concepts and experience working with data scientists.
  • Are familiar with data visualisation tools such as Sisense or similar.

Benefits

  • 💰 A competitive salary, dependent on experience.
  • 💜 Values‑led culture - we’re extremely proud of our culture.
  • 📖 Learning & development budget of £1,000 each year.
  • 🏢 Flexible working – base expectation 1 day per month in the office.
  • 🏝️ 25 days holiday (+ bank holidays) with option to buy up to a week.
  • 🎂 Birthdays off and a surprise celebration.
  • 🤝🏽 Charity leave – company time to support charity each year.
  • 🧠 Mental healthcare – face‑to‑face counselling, an app, and Employee Assistance Program.
  • 👩🏾⚕️ Healthcare cover via Medicash – reimbursements for appointments.
  • 💛 Life cover – payout of 3x salary for beneficiaries.
  • 💐 Compassionate leave – up to 5 days off if you lose a loved one.
  • 🤕 Paid sick leave – enhanced after 6 months.
  • 🍼 Enhanced family leave – maternity/adoption and paternity options.
  • 💵 Pension – 3% salary contribution.
  • 💻 Technology – laptop and WFH risk assessment.
  • 🐶 Dog friendly office.
  • 🎈 Socials – company events at least four times per year.
  • 🧩 Discounts on cinema, vouchers, gym memberships, days out.
  • ✨ Monthly £ allowance on flexible benefits platform.

Accessibility

If you require any special considerations or adjustments to our application and interviewing process, please let us know. We are committed to an inclusive and accessible experience for all candidates.


Join Us

We’d love to hear from you! If this role isn’t quite right for you but you feel like Radar Healthcare could be a fit, please connect on our careers site and we will keep you in the loop about future opportunities. You can also learn more about our mission, values and culture through our podcast, LinkedIn, Instagram, and Glassdoor.


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