Microsoft MWP Lead

Newcastle upon Tyne
9 months ago
Applications closed

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Job Title: MWP Technical Lead - M365 / Share Point

Job Type: Full-Time

About Us: You will be working for a dynamic and innovative organization dedicated to leveraging cutting-edge technology to drive business success. The role is looking for a talented Microsoft 365 SharePoint Specialist with expertise in Power Platform to join as the MWP Stream Lead.

Key Responsibilities:

Design, develop, and maintain SharePoint Online sites and solutions to meet business needs.
Implement and manage SharePoint workflows, forms, and document libraries.
Utilize Power Platform (Power Apps, Power Automate, Power BI) to create custom business applications and automate processes.
Collaborate with stakeholders to gather requirements and translate them into technical solutions.
Provide technical support and training to end-users on SharePoint and Power Platform solutions.
Ensure data integrity, security, and compliance within SharePoint and Power Platform environments.
Stay up-to-date with the latest Microsoft 365 and Power Platform features and best practices.

Preferred Qualifications:

Microsoft certifications in SharePoint and/or Power Platform.
Experience with SharePoint migration projects.
Knowledge of scripting languages such as PowerShell.
Familiarity with Agile methodologies.

Benefits:

Competitive salary and benefits package.
Opportunities for professional development and growth.
Collaborative and inclusive work environment.
Flexible working hours and remote work options.
Company annual bonus

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