Senior Data Engineer Azure Databricks and Data Factory

TLP Consultancy Ltd
Epsom
2 months ago
Applications closed

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Senior Data Engineer - Azure Data - Burton-on-Trent - Hybrid

Senior Data Engineer Azure Databricks and Data Factory

Job Title: Senior Software Engineer (with some Data engineering experience or someone willing to learn Data Engineering)

Location: Epsom, Surrey (3 days a week in the office)

AZURE/ DATAFACTORY/DATAFLOW/DATABRICKS/.NET/C#/PYTHON

Job Overview:

Join our innovative team as a Senior Software Engineer! Lead the design, development, and maintenance of data workflows using Azure Databricks and Azure Data Factory. Collaborate with marketing teams to leverage CRM data for impactful campaigns while mentoring junior engineers and shaping the success of web apps, APIs, and MarTech solutions. If you're passionate about cloud technologies and software engineering with strong communication skills, this is your chance to make a real impact!

Key Responsibilities:

  • Design, develop, and deploy cloud-based solutions on Azure.
  • Collaborate with Product Owners, SMEs, and vendors to meet business requirements.
  • Implement CI/CD pipelines and DevOps practices for seamless deployments.
  • Mentor and guide junior engineers, fostering growth and collaboration.
  • Ensure robust quality assurance and automated testing processes.

Essential Qualifications:

  • 3 years experience of relevant experience in data engineering or software development.
  • Strong background with Azure technologies (Databricks, Data Factory, SQL, Python).
  • Experience with CRM platforms like MS Dynamics 365 or SFMC.

Why Join Us?

  • Work with cutting-edge Azure and MarTech tools.
  • Collaborate across teams in a dynamic, agile environment.
  • Opportunity to grow, learn, and thrive in a supportive, flexible company.

Seniority level: Mid-Senior level

Employment type: Full-time

Job function: Engineering, Marketing, and Information Technology

Industries: Motor Vehicle Manufacturing, Wholesale Motor Vehicles and Parts, and Retail Motor Vehicles

Apply Now.


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