IT Application Administrator

Warrington
9 months ago
Applications closed

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For our IT team we reuire an experiended IT Application Administrator. This role will be required for a fixed term of 6 months, with an option of extension. You will work on a hybrid or remote basis, and you can be based anywhere in the UK.

The objective of this role is to install various application components and establish connectivity with applicable application servers, license servers, and databases.

Responsibilities (more detailed description available upon request):

  • Installation & Configuration of Applications

  • Definition of connections and ensuring proper integration with applicable servers.

  • System configuration and setup to align with business requirements.

  • Assist with data migration as needed.

  • Testing & Validation

  • Training & Support

  • Production Deployment & Ongoing Support

    Requirements:

  • Experience in configuring and maintaining applications.

  • Knowledge of server-based systems and experience in defining and managing system connections.

  • Hands-on experience with data migration, ensuring data integrity and security.

  • Understanding of system testing, UAT processes, and troubleshooting methodologies

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