Senior Data Engineer — Enterprise Data Platform
emp
Job Description
- Design, implement, and maintain data pipelines and storage layers following a medallion architecture (landing → bronze → silver), operating as the enterprise tenant within our multi-tenant data platform and unified enterprise metastore
- Develop and operate pull-based data ingestion flows using Azure Data Factory and custom Python-based API connectors to land data from diverse enterprise source systems
- Build and maintain transformation pipelines with strong focus on data quality, lineage, and observability from landing zone through to consumption-ready layers
- Implement data security features including PII masking, tenant isolation, and retention policies in line with enterprise compliance requirements
- Collaborate with data product teams and enterprise stakeholders to drive self-service adoption and best practices
- Establish monitoring, alerting, and cost tracking integrations for pipeline operations
- Contribute to infrastructure as code and CI/CD practices for platform deployment and management
Skills & Requirements
What We're Looking For
- 5+ years of experience building scalable, maintainable, and self-service data solutions
- Strong background in batch and streaming pipeline design, orchestration, and schema management
- Hands-on experience with Databricks (Unity Catalog, Delta Lake), Apache Spark, and Python/SQL
- Experience with Azure cloud services, particularly Azure Data Factory, Azure Data Lake Storage (ADLS), and related data integration tooling
- Deep understanding of data quality validation and monitoring frameworks
- Familiarity with medallion architecture patterns and layered data processing
- Excellent collaboration skills across engineering, product, and enterprise stakeholder teams
- Proven ability to write clean, maintainable, and well-structured code
- Strong problem-solving mindset
- Demonstrated experience with AI-assisted coding: spec-driven development, systematic validation of AI-generated output (functional and technical), and a controlled-adopter approach — AI amplifies productivity, the human owns every line that ships.