Data Analyst - Revenue/Sales

Think Specialist Recruitment
London
1 day ago
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We are working with a powerhouse in the logistics and e-commerce world (with their London based HQ) and have a very exciting opportunity for someone to join them as a Data Analyst for the next 3+ months, with a great potential of something permanent being available for the right person.

In this role you would be working very closely with the commercial team, focused on supporting the team with data analysis, reporting and performance insights, in particular looking at success factors, lead times, sales volumes etc.

Your main focus will be around building and maintaining dashboards, analysis of sales performance and helping teams use data more effectively.

Additionally, you'll be working across the wider commercial teams and providing Salesforce support, so it's a necessity that you have great communication skills as well as Salesforce (or similar CRM) knowledge.

This is a project to help cleanse data and catch up, really we need someone that has some form of Data Analytics experience (2+ years) and in particular within a sales or revenue capacity.

You'd be working a standard 9-5 day, Monday to Friday, and to start can work a 4 in/1 out hybrid split, and then after settling work 3/2.

The offices you'd be working in are based in-between Marylebone and Fitzrovia, less than a 10 minute walk to Oxford Circus Station.

As this is temporary, you'd be completing weekly timesheets and paid each Friday, working at...

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