Data Engineer with C# Dot Net asp.net with SQL Server SSIS SSRS

Nexus Jobs Careers
London
3 months ago
Applications closed

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Data Engineer with C# Dot Net asp.net with SQL Server SSIS SSRS

Our Client is a bank based in Central London who are looking to recruit at least 7 years plus experience as a Data Engineer with the ability to work with C# Dot net and SQL Server with SSIS.

You must have solid expertise of at least 7 years experience of working with and developing software with C# Dot Net and MS SQL Server and SSIS, SSRS and SSAS SSIS is very important for this position.

Must be an excellent problem solver and adept writing documentation for all projects.

You ideally have worked on banking systems particularly Core Banking.

Responsible for the development and delivery of new systems to automate and streamline processes required by different departments.

To support the internal IT department with changes and upgrades to software platforms.

To be primary contact for all technical questions relating to in-house bespoke systems and interfacing.

Analysis of issues pertaining to problems or errors raised by in-house systems, i.e. CORE, SharePoint interface,

Equation, Kondor, Eximbills, end of day cycle....

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