TEST - Data Analyst - DO NOT APPLY

Surbiton
1 day ago
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The Pilot Group- Data Analyst

Today’s world runs on critical infrastructure and technology. Pilot Group are dedicated to improving people’s lives and the environment. We lead the way in SMART, SAFE and SUSTAINABLE infrastructure solutions. With combined experience over 5 decades spanning across electronics, electrical, heating and lighting markets, we pride ourselves in working in partnership with organisations world-wide to deliver integrated technology to improve working environments and transport systems.

Our businesses cover energy management, EV charging, traffic control systems, and Electrical Wholesale working across a wide range of commercial and industrial applications.

The role will have a heavy focus in working on one of the individual business units ESL.

About ESL;

ESL connects the demand and supply of industrial electrical components. As the world shifts to a more electric future, ESL helps customers procure their needs in this space by thinking and operating differently.

The company joins supply chains together in a simple and easy-to-deliver way. ESL sources requirements internationally to develop long-term relationships with customers and suppliers, we hold stock in three warehouses (UK, Europe and America), we provide next-day delivery, and we provide local service in many countries by communicating in more than 18 different languages.

ESL is headquartered in Manchester with people located around the world. It was founded by two female entrepreneurs 17 years ago- (both are still in the business) and the company has continued to deliver double-digit growth year after year. The company has 75 amazing people with brilliant skills.

Main Duties/Responsibilities Data Analyst:

Development of management information packs to support accounts team and analysis of financial performance, including monthly P&L and cash flow analysis.

Act as a finance business partner to the operational teams (including purchasing, logistics, sales) to provide meaningful insight and drive both short- and long-term initiatives.

Support management team to provide clear view of actuals vs forecast with clear analysis as appropriate.

Work closely with Data Strategy & Analytics Lead to support business requirements and prioritise workload.

Design and deliver deep-dive analysis to aid commercial leads in understanding historical/current business performance, across functions, to promote commercial opportunities across sales and supply chain.

Deliver ad hoc metrics and insights to support Finance and Operational teams, promote use of data for decision making, where possible

Manipulate and analyse large data sets for ad-hoc and routine reporting.

Additional project work to support expansion plans.

Ad-hoc tasks as required by senior finance and operational team.

Data Analyst - Ideal Requirements

Professional experience with BI dashboarding & visualisation tools (preferably Power BI).

Proven experience with financial modelling.

Proficiency with Microsoft Excel for data preparation, financial modelling & data visualization.

Experience with a Cloud Data Warehouse, such as Google BigQuery (ideally), Redshift, Snowflake, Azure Data Warehouse.

Proficiency with SQL for data wrangling, cleaning, preparation & summarisation.

Strong financial modelling and analytical skills, with advanced skills in excel.

Experience with PowerPoint for presenting insights to business stakeholders

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