We are looking for an experienced Azure Data Engineer to design and build scalable data pipelines on Azure. The role involves ingesting raw data, transforming it through curated layers, and delivering high-quality Gold-layer datasets for analytics and reporting using Azure Databricks.
Requirements
Key Responsibilities
- Design, build, and maintain end-to-end data pipelines on Azure
- Ingest raw data from multiple sources and transform it into Bronze, Silver, and Gold layers
- Develop scalable data processing solutions using Azure Databricks
- Build optimized data models to support analytics and business reporting
- Ensure data quality, reliability, and performance across pipelines
- Implement CI/CD and version control best practices for data engineering
- Collaborate with analytics, platform, and business teams
Must-Have Skills
- Strong hands-on experience with Azure Data Engineering
- Experience working with Azure Databricks
- Proficiency in Python and PySpark
- Strong SQL and analytical skills
- Experience building and maintaining data pipelines
- Hands-on with Git/GitHub for version control
- Exposure to CI/CD tools (Azure DevOps, Jenkins, or similar)
Good-to-Have Skills
- Experience with dbt
- Knowledge of Terraform or Infrastructure-as-Code
- Experience with Azure services like ADLS, Azure Data Factory
- Understanding of data modeling and analytics engineering concepts
Nice to Have
- Experience in Agile/Scrum environments
- Strong communication and stakeholder management skills
Benefits
What We Offer
- Opportunity to work on modern cloud data platforms
- Challenging, high-impact data projects
- Collaborative and engineering-driven culture
Sponsored
Explore Data
Skills in this job
People also search for
Similar Jobs
More jobs at Mindera
Sponsored
Apply for this position
Sign In to ApplyAbout Mindera
At Mindera we use technology to build products we are proud of, with people we love. Software Engineering Applications, including Web and Mobile, are at the core of what we do at Mindera.We partner with our clients, to understand their product and deli...
Category:
Data