Data Engineer

Michael Bailey Associates
england
9 months ago
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Urgently seeking an IT Data Engineer

Initial 6 Month contract and you will be required to visit site weekly in London.

Banking background in a must AND recent and proven experience of Unix, SQL and batch scheduling tools.

We’re looking for an IT support analyst to:

support the Service & Product Manager across several technical domains uphold high standards for timely issue resolution ensure workflows, processes, tooling and applications are of the highest quality standard contribute expertise to the management of existing and new IT products and services define workarounds for known errors and initiate process improvements automate manual tasks participate in project work and small development

Skills and requirements:

technical skills required for this role is Linux, Oracle, ETL tools, Control-M and Windows shell scripting and an exposure to Postgres, WebSphere, Tomcat and Apache would also be advantageous although not essential. a natural ability to solve complex issues strong analytical, problem-solving and synthesizing skills (you know how to figure stuff out) supported both packaged and custom solutions banking know-how

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Michael Bailey International is acting as an Employment Business in relation to this vacancy.

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