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Data Engineer - Azure Databricks

UST
Leicester
2 weeks ago
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Overview

The successful candidate will be part of the team transforming from a traditional SQL team to a modern hybrid cloud platform bringing together the best data, analytical and reporting tools to deliver new and enhance existing products and support our users.

You will work with Finance, Product, Warehouse, Marketing, the Brand teams, almost everyone to design and build the data solutions needed to measure, report and analyze the performance of the business and its operations.

This position is within the BIS Finance Workstream, where our primary responsibility is to complete projects for Next Finance. Our focus lies in technologies such as Azure, Databricks, Power BI, and ADF. We actively explore and adopt new technologies to innovate and enhance our processes.

We are looking for people who want to learn new skills, get hands-on experience with the latest technologies and become very knowledgeable of BIS systems. Successful candidates will join a great team with a real mix of experience, knowledge and skills.

Responsibilities
  • Design and build data solutions to measure, report and analyze business performance and operations
  • Collaborate with Finance, Product, Warehouse, Marketing and Brand teams
  • Work within the BIS Finance Workstream on Next Finance projects
  • Leverage technologies such as Azure, Databricks, Power BI, and ADF
  • Adopt new technologies to innovate and improve processes
Qualifications
  • DataBricks or similar and Azure Data Factory
  • Languages: SQL, Python
  • Data Platform: Azure Data Lake and SQL Server RDBMS
  • ETL: SQL Server Integration Services and ADF
  • Experience collaborating in a large, fast-paced, multifunctional technical team
Nice to have
  • Languages: PySQL, C#, R
  • Reporting: PowerBI or similar
  • Modelling: SQL Server SSAS Tabular (DAX) / Dimensional Modelling / Data Warehousing
  • SQL MI / DB
  • ETL: Active Batch, API, Event Hub, Kafka
  • AI / ML


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