ERP Data Coordinator

Kingsnorth, Medway
7 months ago
Applications closed

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We are working with an established electrical manufacturer in the Rochester area who are looking to employ an ERP Data Coordinator permanently, in office.

You must hold a clean driving license with your own vehicle as there is no public transport to the site.

The package includes a competitive salary, annual leave and pension packages, secure on-site parking, and company socials within a friendly team!

Duties of this role:

Developing and Running Routines to identify Data which is either absent or inaccurate, then investigating the Root Causes, and arranging appropriate remediation.
Creating, Documenting, and Implementing Data Entry and Change Control Procedures, Designed for simplicity of use, and the minimisation of user error.
Implementing the expansion of new Classes of Data onto the ERP System, in liaison with key stakeholders.
Working as part of the Project Team to ensure Data Collection, Insertion or Transfer onto the new Database.
Assist in ensuring the correct User Security Access for ERP Data, and assist in general Data Protection tasks.Requirements for this role:

Previous experience of using ERP Systems.
Understanding of Manufacturing Principles and Environment.
Basic SQL Server skills, with an understanding of Relational Databases.
Good MS Excel and associated analytical skills.
Solid general MS Office competence.
Ability to communicate effectively, internally and cross-departmentally.
Strong attention to detail, with high level of accuracy.
Excellent documentation abilities.
The ability to think critically.Please note that only candidates who live locally, with a full right to work will be considered for this role.

CVs in Word Format to (url removed)

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