Senior Data Engineer, Databricks, Home Based

Blacklist Ratings
Manchester
4 days ago
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Senior Data Engineer, Databricks, Home Based

Company: Blacklist Ratings


Salary: £60,000 – £70,000 + benefits. This role is fully home based with one day per month at the Nottingham office.


Employment type: Full-time


Seniority level: Mid-Senior level


Job function: Information Technology, Data Infrastructure and Analytics


Strong commercial knowledge of Databricks and Performant SQL is required, alongside very strong data modelling, data design and experience with testing and agile environments.


Expanding SaaS product company is looking for a number of Senior Data Engineers as they continue to grow. In these hands‑on roles you will be part of the team responsible for designing, creating, deploying and managing the company’s data assets, guiding and influencing other members of the data engineering team, and writing excellent quality, clean and high‑performance code.


Responsibilities

  • Work with the Data Architects and Data team to determine technical delivery and functionality.
  • Design data solutions based on optimal performance, scalability and reliability.
  • Create, optimise and maintain logical and physical data models, including data warehouses and data lakes.
  • Design and manage the data integration process.
  • Work with the team to improve their skills and knowledge (mentoring, training coaching, etc).
  • Contribute as a member of the agile team.
  • Work closely with Data Scientists, Data Engineers and BA's to understand the data needs of the business.

Skills Required

  • Very strong knowledge of data modelling, data engineering and data design.
  • Excellent knowledge of Databricks and Performant SQL.
  • Experience analysing complex business problems and designing workable technical solutions.
  • Excellent knowledge of the SDLC, including testing and delivery in an agile environment.
  • Excellent knowledge of ETL.
  • Experience of data warehousing and data lake solutions.
  • Good experience working in an Agile environment.


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