Power Platform and Integration Developer

Aberdeen
11 months ago
Applications closed

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ROLE

The Power Platform and Integration Developer reports to the Analytics and Integration Lead and forms key part of the Integration capacity within the team. Developing timely and precise Power Platform applications (Power Apps) along smart automation (Power Automate), the Power Platform and Integration Developer ensures that the Power Platform forms a central part of the integration journey of our business applications and data

RESPONSIBILITIES

Supporting Analytics and Integration Program: Collaborate with cross-functional teams to maintain and enhance our application footprint, and the modern data platform, leveraging your expertise in Power Platform, data integration and automation techniques.
Stay up to date with innovation: Understand best practice of data engineering and its application, and stay up-to-date with emerging technologies in the low-code application development and automation space
Analyse, Model and Organise Workflows: Work with a range of stakeholders and business users to understand their workflows and patterns, with a view to designing and delivering applications, integration and automation which delivers the highest value for money
Ensure quality and reliability: Drive improvements in application quality, understanding how users interact with applications and data, and ensure that downstream workflows are processed effectively, efficiently, robustly and timely. Implementing data validation, processing, management, and controls where necessary, to ensure applications and integrations are suitable. Maintaining Data Governance: Ensuring that data governance policies and procedures are followed, and that data lineage and cataloguing is maintained for data discoverability.
Maintaining Documentation: Ensuring that application support documentation, workflow documentation, automation documentation are accurate, timely and comprehensive for the wider team to be able to use and support
Bringing New Application and Automation Projects to Life: Take the lead in initiating, designing, and executing integration projects, ensuring their entire lifecycle is managed effectively through Dev, Test and Production
Performance Monitoring: Optimise and tune workflows, pipelines and applications to increase and improve performance and efficiency and being able to communicate the impact of poorly performing automation workflows and integrations
REQUIREMENTS:

Appropriate professional qualification or equivalent experience.
Exceptional problem-solving skills to tackle complex automation and integration challenges.
Familiarity with Power BI is desirable but not essential
Ability to establish, document and communicate Power Apps applications and Power Automate workflows with both peers and stakeholders
Experience working with Power Apps, Power Automate, Sharepoint and integration tools that will help to deliver the analytics and integration strategy
Experience working with APIs (REST, SOAP, OData) from a data integration perspective. 
Prior experience in the Oil & Gas industry is not required; however, a passion for working with automation and integration is a must

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