Dynamics 365 Developer (with Power Platform expertise)

Glasgow
7 months ago
Applications closed

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Data Analyst

Dynamics 365 Developer (with Power Platform expertise)
📍 Location: Central Scotland (Remote-first with occasional on-site collaboration)
đź’° Salary: Competitive, based on experience and qualifications
đź•’ Type: Full-time / Permanent

The Role

We're on the lookout for a talented Dynamics 365 Developer to help drive digital transformation across our client’s business. As the cornerstone of their business applications, D365 is central to operations—and we need someone who knows how to make it work smarter, faster, and better.

You’ll design, develop, and enhance solutions across the Dynamics 365 ecosystem, while leveraging the Power Platform (Power Apps, Power Automate, Power BI) to extend and automate business processes. If you're a D365 expert who’s passionate about creating robust, integrated solutions—this role is built for you.

What You'll Be Doing



Design, build, and deploy solutions primarily within Dynamics 365 (CE and/or F&O), ensuring seamless integration across the Microsoft stack

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Extend and customize D365 using Power Platform tools—Power Apps, Power Automate, and Dataverse

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Integrate D365 with Microsoft 365, Azure services, and third-party APIs to deliver connected business solutions

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Automate workflows and data processes to improve business efficiency and accuracy

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Translate business requirements into scalable low-code and no-code solutions

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Support D365 system upgrades, enhancements, and maintenance activities

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Collaborate across departments to drive adoption of D365 solutions and best practices

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Ensure compliance, governance, and security across D365 and Power Platform environments

What We're Looking For

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3+ years’ experience working with Microsoft Dynamics 365 (Sales, Customer Service, Field Service, Finance & Operations, etc.)

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Strong knowledge of Power Platform—especially Power Apps, Power Automate, and Dataverse

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Proven ability to build end-to-end solutions integrating D365 with Microsoft 365, Azure, and external APIs

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Comfortable with data modeling and data management within D365, SharePoint, and SQL

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Familiarity with tools like PowerShell, JSON, and REST APIs is a bonus

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Strong communication and stakeholder engagement skills

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Relevant certifications (MB-200, MB-400, PL-100, PL-400) are advantageous

Why Join Us?

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Competitive salary based on experience

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Remote-first culture with occasional in-person sessions for project collaboration

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Private healthcare, pension, and wellness support

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Support for Microsoft certifications and ongoing training

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A chance to lead meaningful digital transformation initiatives

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A collaborative environment where your expertise in D365 truly matters

Apply Now

Ready to transform business with Dynamics 365?
We’d love to hear how you’ve used D365 and the Power Platform to deliver impact. Share your story—or better yet, show us your best work

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