Oracle PLSQL Developer

Edinburgh
1 week ago
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We are partnered with a leading global consultancy that is searching for a contractor with the following skillset to work on a LONG-TERM contract within the FINANCIAL SERVICES sector:

Role: Oracle PLSQL Developer

Location: Edinburgh

Style: Hybrid

Rate: up to £400 per day (inside IR35)

Duration: 12 months

Key Skills:

  • Oracle as primary skill and Snowflake/Other Data Engineering as secondary

  • Strong hands-on Oracle PL/SQL development and Performance tuning skills. This person should ideally have some solution design experience or be able to design based on the requirements/discussions with cross-functional teams (if/wherever needed).

  • The candidate is expected to have some experience working in a Software Development/Web application-based Agile project.

  • UK experience is a must and Edinburgh based

  • Banking and lending experience preferred.

    If you are interested and have the relevant experience, please apply promptly and we will contact you to discuss it further.

    Yilmaz Moore

    Senior Delivery Consultant

    London | Bristol | Amsterdam

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