Data Analyst

Leeds, Kent
1 week ago
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Data Analyst – Remote - £55,000 (flexible) + Excellent benefits

Overview:

An exciting opportunity has arisen with a global pharmaceutical transport and manufacturing business.

As the Data Analyst you will be responsible for the Operations domain(s) of reporting and data analysis that are central in the companies operational model. This includes:

Strategic, operational, and quantitative data analysis for operations.

Setting up and developing models and dashboards for continuous business follow-up.

Supporting service initiatives with data-driven value add.

Your main task is to apply advanced data mining, modeling, analytics, and information gathering to influence and develop the overall performance of our operational and financial KPIs (e.g., growth, availability, reliability, and gross margin). You should also, on a need basis, support Operations Management decision-making by providing fact-based presentations based on data analysis.

Responsibilities:

Functional Responsibilities:

Reporting, KPIs, and Dashboards:

With the help of advanced analytics, support the line organization in developing our operational KPI portfolio.

Develop and maintain Operations KPI portfolio.

Create reporting that connects operational data with other relevant data (e.g., financial or data generated by our products) to be used to develop the organization and our performance.

Compiling data and performing regular reporting in a standardized format of the company’s operational performance.

Monthly reporting on a corporate level.

Weekly reporting for weekly business reviews on EMT and OMT level.

Regular reporting (monthly or bi-weekly) into various forums needing information as a basis for decisions.

Sharing of information within the Operations, as well as with relevant stakeholders (Sales, R&D, Supply Chain).

Continuous development of standard reporting.

Ensuring that different reports are built in a way that enables drill-down and comparison of data without glitches due to data source discrepancies.

Operational Controlling and Data Mining:

Using your knowledge about our business and data models to support with requests that are outside our standard reporting and KPIs. Compiling data and searching for patterns to ensure we have intelligence to take informed decisions and setting internal priorities.

Provide decision support to Operations Management.

Develop and implement Operations overall analytics/machine learning strategy.

Professional Capabilities:

Strategic mindset and ability to work with the entire organization.

Strong communication & presentation skills.

Strong planning and execution skills are required.

Strong numerical modeling skills.

Strong analytical skills.

Basic programming skills.

Package:

££50,000-£60,000 depending on skills & experience

Fully remote

25 days annual leave + bank holidays

Company pension contribution

Corporate bonus (between 0-10-%)

Private healthcare

  • many more

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