MI & Data Analyst

Chelmsley Wood
17 hours ago
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MI & Data Analyst

Birmingham

£28,000-£45,000 DOE

Monday-Friday

MPJ Recruitment is partnering with a fast-growing, entrepreneurial business who operate within the motor claims industry. Backed by a highly experienced leadership team with over 40 years of industry expertise, the business continues to expand and is now looking to recruit a MI & Data Analyst for their Birmingham-based team.

The MI (Management Information) and Data Analyst will be responsible for collecting, analysing, and interpreting data to provide actionable insights that support the businesses decision-making. They will design and deliver management information (MI) reports, dashboards, and data visualisations, ensuring accuracy, integrity, and availability of data across the business for both internal and external stakeholders.

Key Responsibilities

Data Analysis & Reporting

Develop, maintain, and continuously improve MI reports and dashboards for both internal stakeholders and our clients.
Take ownership of internal and external dashboards, analysing data to identify trends, patterns, and opportunities for operational and commercial improvements.
Prepare and deliver client MI packs in line with contractual requirements and service level agreements.
Provide accurate and timely ad-hoc reporting for management, finance, operational teams, and clients as required.Data Management & Integrity

Ensure accuracy, consistency, and completeness of data across multiple systems.
Support data governance and compliance with internal and external regulations (e.g., GDPR).
Collaborate with IT and system owners to optimise data flows and integrations.Business Insights & Decision Support

Translate complex data into clear, concise insights and recommendations.
Support strategic projects with data-driven analysis.
Monitor KPIs and performance metrics, highlighting risks and opportunities.Tools & Systems

Build and optimise Power BI dashboards and other visualisation tools.
Use Jira, Excel, and other analytics tools to extract and manipulate data.
Support automation of reporting processes to improve efficiency.Skills & Competencies

Strong analytical and problem-solving skills with exceptional attention to detail.
Advanced Excel (pivot tables, formulas, macros) and Power BI skills.
Knowledge of data modelling and reporting best practices.
Clear communicator - able to present complex data in a business-friendly way.
Ability to work independently while managing multiple priorities.
Knowledge of data governance, compliance, and GDPR (desirable).
Knowledge of Jira (advantageous)Interested in knowing more? CLICK APPLY

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