Data Support Analyst

Royal Leamington Spa
9 months ago
Applications closed

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Role: Data Support Analyst
Location: Leamington Spa (must be able to drive)
Working Model: Hybrid, 2 days/Week
Salary: Between £28-£32K
You’re smart, great with people and a fast learner.
You’re probably not quite a data nerd, but you know how to analyse complex information and explain things in an accessible way.
You’ll likely have graduated in an analytical degree such as Maths, Computer Science Biology, Chemistry or Physics, but equally you might be a Sports Science, Economics or Psychology graduate – the main thing is that you will have had to do some analytical/data work as part of your degree and will be comfortable working in a data-focused company (you’ll need a 2:1 or above). If not, relevant experience in the data analytics field is juuuust fine.
This company is one of the UK’s sustainability success stories – they’ve grown considerably and are showing no sign of slowing down, and they are looking for graduates to join them in various positions, from customer-facing account management, graduate data-consultant through to international compliance analyst positions.
They provide critical data consultancy services to some of the largest companies in the UK and beyond, and they are an important part of the climate fightback, so if you care about sustainability and climate change, you’ll be working for a company you’ll be proud of.
The main skillset you’ll need for this role is to be technically adept with datasets. That means anybody who has a strong background with SQL for data extraction and analytics, and Excel for reporting and analysis would be a good fit for this role. However, another part of your role is to support technical input and read into complex C# code in order to suggest improvements. So, if you’ve worked in an application support role or have had a role that is hands on with C#, this is crucial for your technical understanding of the software environment in which the data is used.
Another important thing is that you must possess exceptionally strong communication skills and an ability to learn and progress your skills quickly. You'll likely be the sort of person who excels in new situations where you have to think on your feet and uses your intelligence and intuition to solve problems and get things done (hintthere may be an assessment centre involved as part of the recruitment process!).
The company is looking to adapt to emerging technological and cultural changes which will help them evolve into new and innovative ways of working. With that in mind, they want people in their team to have a passion for working with cutting edge technologies and have an understanding of the latest technology trends such as Machine Learning and AI.
The salary for the role is between £30-£35 + a bonus of up to 10% and other benefits, and there’s plenty of room to grow and expand into either of various pathway within the business.
If you’re curious and want to find out more please apply for a swift response or call us (google us for our number!)
We welcome diverse applicants and are dedicated to treating all applicants with dignity and respect, regardless of background

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