Data Engineer

staffing connect
Newbury
4 days ago
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Details

Newbury Hybrid 2 days onsite mandatory
Client Gamma
RRF ID 2026-18851
£400 per day Outside IR35
Duration 3 months initial
Start ASAP

Overview

We are looking for an experienced Data Engineer to design and deliver scalable, secure, and high performance data solutions. The role focuses heavily on Snowflake architecture, cloud data platforms, and modern data pipeline development.

Key Responsibilities

  • Design and architect data solutions using Snowflake

  • Optimise workflows and integrations using Openflow

  • Develop and maintain ETL and ELT pipelines from Salesforce, relational databases, files, and NoSQL sources

  • Implement dimensional modelling to support data warehousing and BI reporting

  • Build and optimise data pipelines across Azure and AWS

  • Ensure data quality, governance, and security best practices

  • Enable reporting and analytics through Power BI and Tableau integration

  • Collaborate with cross functional teams to translate business requirements into technical solutions

Required Skills and Experience

  • Strong hands on experience with Snowflake

  • Experience with Openflow for workflow automation and orchestration

  • Solid knowledge of SQL Server and relational database concepts

  • Experience wi...

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