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Data Engineer - Ms Dynamics 365, ADF, SQL, SSIS

Connected IT
Birmingham
5 days ago
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Data Engineer - Ms Dynamics 365, Azure Data Factory, SQL, SSIS

We have an exciting new permanent opportunity for a dynamic Data Engineer to join a fantastic & growing team at the best timing possible as the business has just embarked on a data transformation journey.

This role will give you the chance to showcase your expertise to help shape data integration methodologies, processes, and standards, driving adoption and best practices across the team.

You’ll be working closely with Data Architects, Developers and business stakeholders and will be involved in some exciting projects as well as BAU activities like building and maintaining efficient data pipelines between Dynamics 365 CRM, Azure SQL databases, SharePoint, and analytical platforms using tools such as SSIS,Azure Data Factory, and KingswaySoft.

We’re looking for someone with good experience of Microsoft Dynamics 365 CRM data structures and architecture and experience orchestrating data pipelines using Azure Data Factory. Hands-on experience with SQL Server Integration Services (SSIS), including complex package development & strong T-SQL skills with experience in query optimisation and performance tuning.

In addition to the technical capabilities aforementioned, we’re looking for someone with a very proactive ap...

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