Internal Business Systems Data Analyst

Person Centred Software Ltd
Guildford
2 days ago
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Internal Business Systems Data Analyst

Location: Guildford | Hybrid

Team: Business Systems

About PCS

At Person Centred Software, we build technology that improves the lives of people living and working in social care. Our Connected Care Platform brings together a range of software solutions that help care providers deliver outstanding care and operate more efficiently.

The role

We’re looking for an Internal Business Systems Data Analyst to join our Business Systems team, helping to ensure our internal systems are powered by reliable data and meaningful insights.

This role is ideal for someone who enjoys working with complex datasets, improving data quality, and building reporting that helps teams make better decisions across the organisation.

You’ll work closely with the Internal Business Systems Lead and teams across the business to gather data requirements, design data flows between systems, and build reporting that supports both operational and strategic decision making.

You’ll develop and maintain Power BI dashboards and reports, support data warehouse modelling, and help ensure the accuracy, integrity and usability of business-critical data across our internal platforms.

What we’re looking for
  • Strong experience working with SQL and data analysis
  • Experience building reports and dashboards using Power BI
  • Experience working with CRM, ERP or finance system datasets
  • Familiarity with data warehousing and Azure Fabric
  • Strong analytical skills and attention to detail
  • A collaborative approach to working with stakeholders across the business

Experience with Python or C#, HubSpot or NetSuite, or integration platforms such as Zapier or Celigo would be a bonus.

Why join us

You’ll have the opportunity to build systems that support a fast-growing SaaS company while contributing to technology that helps improve social care.

What we offer
  • A base salary of up to £45-60K and bonusdepending on experience
  • Modern town centre offices in Guildford
  • 25 days holiday
  • Contributory pension scheme
  • Additional benefits

At Person Centred Software, we’re leading the digital revolution in social care. Our technology is reshaping an industry that impacts millions—driving efficiency, improving outcomes, and setting new standards. Every day, your work will help modernise and future-proof social care.

Tech That Transforms–automation, real-time data—our solutions are redefining how social care operates

Join the Market Leader– Trusted by thousands, we set the benchmark for digital transformation in social care

Drive Meaningful Innovation– Work at the forefront of a sector ready for change, where your skills fuel real-world impact

Challenge Yourself, Make a Difference– If you love tech and solving big challenges, we want to hear from you

Work with the Best– Join a team of top-tier professionals passionate about using technology to drive change


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