Data Analyst

Clyst Honiton
1 year ago
Applications closed

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Data Analyst

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Data Analyst

Data Analyst

Data Analyst

Exeter

£32k

In office, going hybrid after probation

My client produces and manufactures a range of products and are a well-known household name.

They are well established and continue to thrive.

They are looking for a data analyst to join their team.

This role requires experience delivering accurate reporting to drive business performance.

You will work to ensure accurate and reliable reporting is being produced.

If you have any experience in an ecommerce, logistics, or warehouse environment it will be of particular interest to them.

Benefits:

Flexitime

Free Parking

Pension Scheme

Life Assurance

Cycle to Work Scheme

Free Eye Tests

Employee rewards scheme

And more…

Role Responsibilities:

ETL processes

Collect, clean and analyse data

Build, develop, and maintain data models, dashboards, and systems

Optimise data processes

Track project progress

Help to analyse pricing

Manage the removal and obsolescence of certain data relating to stock

Support ERP implementation and data migration projects

Necessary Experience:

Experience with SQL, VBA, Visualisation tools such as PowerBI

Great verbal and written communication skills

Experience working with Costing, and Profit data

If you have any experience with the following it will be useful:

Please note that these are 'nice to have'.

CRM Systems (SalesLogix, Salesforce, HubSpot, Zoho or other CRM)

ERP Systems (Sage1000 or any other ERP system)

Warehouse Management Systems experience

SOP systems

This is a fantastic opportunity for a data analyst with ecommerce or warehouse experience, to join a fantastic business with a family feel and fantastic support network.
This is an urgent vacancy, so please apply early to avoid disappointment.

Please apply quoting reference (phone number removed)

Key words: PowerBI, SQL, VBA, data analyst, visualisation, ETL, ERP, CRM, Sage1000, SalesLogix, Excel, WMS, Warehouse Management System, SOP, PowerBI, SQL, VBA, data analyst, visualisation, ETL, ERP, CRM, Sage1000, SalesLogix, Excel, WMS, Warehouse Management System, SOP, PowerBI, SQL, VBA, data analyst, visualisation, ETL, ERP, CRM, Sage1000, SalesLogix, Excel, WMS, Warehouse Management System, SOP, PowerBI, SQL, VBA, data analyst, visualisation, ETL, ERP, CRM, Sage1000, SalesLogix, Excel, WMS, Warehouse Management System, SOP, PowerBI, SQL, VBA, data analyst, visualisation, ETL, ERP, CRM, Sage1000, SalesLogix, Excel, WMS, Warehouse Management System, SOP

If you are interested in this position please click 'apply'.

Hunter Selection Limited is a recruitment consultancy with offices UK wide, specialising in permanent & contract roles within Engineering & Manufacturing, IT & Digital, Science & Technology and Service & Sales sectors.

Please note as we receive a high level of applications we can only respond to applicants whose skills & qualifications are suitable for this position. No terminology in this advert is intended to discriminate against any of the protected characteristics that fall under the Equality Act 2010.

For the purposes of the Conduct Regulations 2003, when advertising permanent vacancies we are acting as an Employment Agency, and when advertising temporary/contract vacancies we are acting as an Employment Business

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