Sr Data Engineer

Response Informatics
Salford
17 hours ago
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Duration of assignment: 4 Months
Onsite Days: 5
Work Location: UK Salford
Hybrid: Hybrid,State: Manchester; City: Salford Zip: M50 2UE
Job description:
Key Responsibilities
Design, develop, and maintain metadata-driven data pipelines using ADF and Databricks.
Build and implement end-to-end metadata frameworks, ensuring scalability and reusability.
Optimize data workflows leveraging SparkSQL and Pandas for large-scale data processing.
Collaborate with cross-functional teams to integrate data solutions into enterprise architecture.
Implement CI/CD pipelines for automated deployment and testing of data solutions.
Ensure data quality, governance, and compliance with organizational standards.
Provide technical leadership and take complete ownership of assigned projects.
Technical Skills Required
Azure Data Factory (ADF): Expertise in building and orchestrating data pipelines.
Databricks: Hands-on experience with notebooks, clusters, and job scheduling.
Pandas: Advanced data manipulation and transformation skills.
SparkSQL: Strong knowledge of distributed data processing and query optimization.
CI/CD: Experience with tools like Azure DevOps, Git, or similar for automated deployments.
Metadata-driven architecture: Proven experience in designing and implementing metadata frameworks.
Programming: Proficiency in Python and/or Scala for data engineering tasks

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