Data Engineer with Power Automate

London
2 months ago
Applications closed

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Job Overview:

We are seeking a highly skilled and detail-oriented Data Engineer with expertise in Power Automate to join our growing team. The ideal candidate will have strong experience in designing, building, and optimizing data workflows, automation processes, and integrating systems using Power Automate. This role will involve working closely with cross-functional teams to support data operations, optimize data workflows, and automate business processes efficiently and effectively.

Key Responsibilities:

  • Design, develop, and implement automated workflows and processes using Power Automate to streamline data operations, integrate systems, and enhance data pipelines.

  • Collaborate with business stakeholders to identify automation opportunities and define data-driven solutions that increase efficiency and reduce manual work.

  • Build and maintain ETL pipelines for data extraction, transformation, and loading, using Power Automate and other related tools.

  • Develop, deploy, and manage automated reporting systems, data synchronization tasks, and scheduled data refresh operations.

  • Ensure data quality, accuracy, and integrity throughout the automation process, addressing any data-related issues that arise.

  • Work with cloud-based data platforms (e.g., Azure, AWS, etc.) to support the integration and automation of data flows.

  • Develop scripts, triggers, and other automation solutions to facilitate seamless data exchange between internal and external systems.

  • Optimize performance and troubleshoot any issues within existing Power Automate workflows, ensuring reliability and scalability.

  • Document and maintain detailed records of workflows, automation processes, and data-related solutions for team reference and compliance.

  • Stay updated with the latest trends, technologies, and best practices in automation and data engineering.

    Required Qualifications:

  • Bachelor's degree in Computer Science, Engineering, Information Systems, or a related field (or equivalent work experience).

  • Proven experience as a Data Engineer, Data Automation Specialist, or similar role, with a focus on Power Automate.

  • Strong hands-on experience with Power Automate, including designing and implementing workflows, automating processes, and system integrations.

  • Solid understanding of data integration, ETL processes, and data pipelines.

  • Proficiency in scripting languages (e.g., PowerShell, SQL, Python) and automation technologies.

  • Strong experience working with cloud platforms such as Microsoft Azure, AWS, or similar.

  • Experience in data warehousing, data modeling, and data architecture best practices.

  • Knowledge of Power BI and integrating Power Automate with BI platforms is a plus.



Excellent analytical, problem-solving, and troubleshooting skills.

* Strong communication skills with the ability to collaborate with business and technical teams effectively

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