Data Engineer

Searchability
united kingdom, united kingdom
4 weeks ago
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Data Engineer


  • Opportunity for aData Engineerto join an organisation operating in the Retail Consultancy space who’re on an exciting growth journey
  • Salary up to £45,000 + some fantastic benefits including remote working, wellness days, employee assistance programmes and much more
  • Apply online or contact Chelsea Hackett via



WHO WE ARE:


We partner with consumer goods companies to enhance their data strategies, drive business growth, and uncover valuable insights. Our advanced technology platform is designed specifically for Consumer Goods professionals, providing adaptability and scalability. Through close collaboration with clients, we help them achieve their goals across Retail, Out of Home, E-Commerce, and Field Sales.



OUR BENEFITS:

  • Generous Holiday allowance + bank holidays
  • Professional development opportunities
  • Company social events
  • Mental wellbeing and support
  • Pension Contribution
  • Life Insurance
  • Flexible/remote working
  • And more…



WHAT WILL YOU BE DOING?


We are looking for a skilled data professional to design and optimise ETL pipelines in Snowflake and Azure Data Factory, ensuring seamless data integration and transformation.

This role involves building and managing semantic data models in Snowflake and Power BI to support scalable, user-friendly analytics and reporting. You will also develop Snowflake stored procedures using Python to automate workflows and handle complex data transformations.

Maintaining data integrity and accessibility within Snowflake will be essential for effective data warehousing operations. Additionally, you will collaborate closely with analytics and business teams to align data models with reporting needs and overall business objectives.


DATA ENGINEER – ESSENTIAL SKILLS


  • Strong experience in Data Engineering, with a focus on data modeling, ETL, and Snowflake.
  • Experience with Azure Data Factory and related Azure services.
  • Python
  • PowerBI
  • Excellent communication



TO BE CONSIDERED…

Please either apply by clicking online or emailing me directly . By applying to this role you give express consent for us to process and submit (subject to required skills) your application to our client in conjunction with this vacancy only.


KEY SKILLS: Snowflake, Azure Data Factory, PowerBI, Python, SQL, ETL

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