Data Engineer - Snowflake, Informatica, Oracle

London
8 months ago
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Data Engineer

Data Engineer

Data Engineer

Data Engineer

Data Engineer

Data Engineer

Data Engineers - Oracle, Informatica, Snowflake

We're looking for experienced Data Engineers to help design and deliver a Remediation Data Hub for a major financial services client. This is an exciting opportunity to work on a high-impact program focused on regulatory redress and data integrity.

📍 Location: UK-based (Remote - with ad-hoc and expensed client visits)

🔧 Tech Stack: Oracle | Snowflake | Informatica | PL/SQL | PySpark | Power BI

🔑 Key Responsibilities:

  • Build scalable, auditable data pipelines for ingestion, transformation, and downstream use.

  • Work across multiple platforms (Oracle, Snowflake, Informatica).

  • Collaborate with architects, analysts, and stakeholders to align data solutions with business and regulatory requirements.

  • Develop data models and logic for segmentation, audit trails, and reporting.

  • Support code reviews, testing, and documentation.

    ✅ Ideal Candidate:

  • Proficient in SQL, PL/SQL, or PySpark.

  • Experienced with Oracle, Snowflake, and/or Informatica.

  • Background in financial services, ideally with remediation or regulatory experience.

  • Strong understanding of data governance, lineage, and secure data handling.

    This role will be an initial 6 month contract, outside of IR35 and will be paid at circa £400 - £450 depending on skills and experience

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