HR Senior Data Analyst

Nottingham
1 day ago
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We're on the hunt for a Senior HR Data Analyst to join a progressive HR Data team of a fast-paced energy client. In this role, you'll dive into a broad spectrum of HR data - from reward analytics and internal performance KPIs to statutory reporting, operational insights, and project-based HR data initiatives. You'll turn complex data into compelling stories, leveraging Power BI dashboards and visualisations to deliver clear, impactful insights that drive real business decisions.

Initially it will be a six-month contract - with strong potential to extend. This full-time, 40-hours-per-week role offers a hybrid working setup, based out of the Nottingham office.

Accountabilities:

Turning HR data into clear, actionable insights.
Ensuring compliance and data privacy at every step.
Bringing KPIs to life with dynamic dashboards and visualizations.
Automating workflows and building low-code solutions for efficiency.
Leading cross-functional teams as the go-to data expert.
Coaching analysts to deliver top-quality results.

Knowledge and Skills:

Excel expert with VBA & automation skills.
Power BI pro, crafting dynamic dashboards and robust data models.
Analytical problem-solver, curious about new tech and innovative workflows.
Data-savvy communicator, ensuring accuracy, clarity, and compliance.
Enterprise reporting specialist, turning complex data into actionable insights.
Cross-functional leader, driving large-scale data projects and aligning stakeholders. Experienced in low-code Microsoft tools (PowerApps, SharePoint, Teams, Fabric).

Rullion celebrates and supports diversity and is committed to ensuring equal opportunities for both employees and applicants

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