Azure Data Engineer

InterQuest
UK
7 months ago
Applications closed

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Role – Azure Data Engineer Locations – Reading or Harrogate or York – (Hybrid, 3 days a week from home) Salary - £70K The Azure Data Engineer will have a background working in large organisations on enterprise platforms. Skills and experience Technical knowledge of Azure Data Platform, including, but not limited to; Azure Data Lake Azure Synapse Analytics Azure SQL Database Azure Data Factory Good level of knowledge on Power BI Good understanding on Microsoft reference architectures and when they should be used. Working knowledge of Data Platform Design Able to articulate and demonstrate the capabilities of Microsoft Azure Data Platform with regards to how Data & Analytics can provide solutions to business problems. Ability to articulate business benefits of Data & Analytics to client stakeholders. Knowledge of Dynamics 365 ERP – data model knowledge a significant benefit Knowledge of Dynamics 365 CRM – data model knowledge a significant benefit Understanding of Azure data integration technologies Knowledge of Modern Workplace Working knowledge of Azure DevOps They will also preferably have the following skills, attributes and experience: 3 Years in Data & Analytics Experience of Agile delivery methods Experience of mentoring junior staff Deployment of Azure solutions using Azure DevOps CI/CD pipelines Data integration from source systems using Azure Data Factory and SQL Server Integration Services Data analysis, modelling, cleansing and enrichment. Using Power BI for data visualization and self-service Bl Experience of large-scale ERP and/or CRM implementations Experience of working with remote teams Proficiency in SQL and Python Analyse current business practices, processes and procedures and identify future opportunities for leveraging Microsoft Azure data & analytics PaaS services Good understanding of Data Governance, including Master Data Management (MDM) and Data Quality tools and processes InterQuest Group is acting as an employment agency for this vacancy. InterQuest Group is an equal opportunities employer and we welcome applications from all suitably qualified persons regardless of age, disability, gender, religion/belief, race, marriage, civil partnership, pregnancy, maternity, sex or sexual orientation. Please make us aware if you require any reasonable adjustments throughout the recruitment process.

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