Data Engineer (Azure) - Remote, Latin America
Bluelight ConsultingResponsibilities
- ETL Data Engineering: Develop and maintain ETL data engineering processes using Python (PySpark) within Azure Synapse Analytics Notebooks, and/or Azure Synapse Analytics Pipelines, to ensure efficient data extractions, transformation, and loading.
- Data Warehousing: Apply your expertise in data warehousing, understanding star schemas, facts, and dimensions, to design and build effective data storage structures in a Massively Parallel Processing (MPP) SWL Pool.
- Data Source Expertise: Extract data from various sources, including REST APIs, SWL database tables, and CSV files.
- Azure Synapse Analytics Expertise: Utilize your deep knowledge of Azure Synapse Analytics to design and optimize data notebooks/pipelines for scalability and performance.
- Data Fabric Concepts: Contribute to the implementation and understanding of other Data Fabric concepts, such as data lakes, lakehouses, delta lakes, and data cataloging, to enhance data management capabilities.
- Data Modeling: Collaborate with data architects to create data models and schemas that align with business requirements.
- Data Quality: Implement data quality checks and validation processes to maintain data accuracy and consistency.
- Performance Tuning: Identify and resolve performance bottlenecks and optimize ETL data notebooks/pipelines to meet SLAs.
- Monitoring and Troubleshooting: Monitoring ETL jobs, d
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