Data Analyst - Harnham

Jobster
Leicester
1 day ago
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Overview

FinOps Data Analyst

Up to £47,000 | Leicester | Hybrid (4 days onsite)


About The Role

We're working with a major UK retail brand to hire a FinOps Data Analyst for their Finance Analytics team. You'll provide analytical support and reporting solutions across multiple finance functions, working closely with SQL engineers and Finance stakeholders.


This hands-on role uses SQL and Python daily to explore data, identify trends, and deliver actionable insights that drive financial decision-making. The team is modernising their data platform with Databricks and Medallion Architecture, giving you exposure to cutting-edge technologies.


Key Responsibilities

  • Build analytical solutions and reporting across 4 finance areas: Accounts Payable, Cash Accounting, Commercial Services, and Operations.
  • Perform SQL-based data exploration, validation, and transformation.
  • Use Python (Pandas/Numpy) for analysis, automation, and data profiling.
  • Build Power BI dashboards to visualise financial metrics.
  • Support ad-hoc analysis by exploring trends and anomalies.
  • Engage with stakeholders to gather requirements and deliver analytical outputs.
  • Contribute to self-service analytics and data literacy initiatives.

Current Projects

  • Databricks Modernisation: Exposure to Databricks as the team builds Gold Standard Medallion Architecture.
  • Self-Service Analytics: Reducing ad-hoc queries by building reusable assets.
  • BAU Finance Support: Ongoing analytics across AP, Cash Accounting, Commercial Services, and Operations.
  • Analytical Automation: Using Python/SQL to streamline recurring finance analysis.
  • Future ML/AI: The team will explore machine learning applications in finance analytics.

Requirements
Essential

  • Strong SQL (querying, joins, CTEs, window functions, data profiling).
  • Python for data analysis (Pandas, Numpy).
  • Power BI experience (dashboard creation, no heavy DAX required).
  • Strong analytical mindset and communication skills.
  • Onsite presence: Able to work in Leicester 4 days/week (5 days for the first 3 months).

Desirable

  • Databricks or modern cloud data platforms.
  • Experience within a Finance team or working with financial data.
  • Data warehousing knowledge.

What You'll Get

  • Salary up to £47,000.
  • Exposure to modern data tech (Databricks, Medallion Architecture).
  • ML/AI exposure as the team evolves.
  • Hybrid working (4 days onsite after initial training).
  • Career development in a major UK retailer.

Interview Process

  • Stage 1: Informal discussion with Analytics Manager (45 mins, virtual).
  • Stage 2: In-person assessment (3 hours total).
  • 2 hours: Analytical task using SQL/Python on a provided dataset.
  • 1 hour: Discussion reviewing your approach and reasoning.

Working Arrangements

  • First 3 months: 5 days/week onsite for training.
  • After 3 months: 4 days/week onsite, 1 day remote.

This is a fantastic opportunity for a Data Analyst looking to specialise in Finance analytics while developing skills in modern data platforms and ML/AI.


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