RemoteRemoteFull TimeSeniorPosted Today
This is a remote position.
Are you passionate about building reliable, scalable data platforms and improving data quality at an enterprise level? We are looking for a Senior Data Engineer – Data Quality & Observability to lead the implementation of a modern data quality framework, enabling engineering teams to detect, monitor, and prevent data issues before they impact business operations.
In this role, you'll drive the implementation of engineering-owned data quality practices, operationalize GX Core , establish validation standards, and build observability solutions that improve confidence across reporting, synchronization processes, and operational workflows.
Responsibilities- Design and implement a scalable data quality framework across the platform.
- Lead the implementation and operationalization of GX Core (Great Expectations) as the primary data validation framework.
- Develop and maintain reusable data quality rules using a Rule-as-Code approach.
- Create automated validation checks for business-critical datasets and workflows.
- Implement data observability, monitoring, alerting, and reporting solutions.
- Define and maintain data lineage across key business domains.
- Design validation processes for data completeness, accuracy, integrity, consistency, reconciliation, freshness, and anomaly detection.
- Integrate data quality validations into CI/CD pipelines and release processes.
- Develop dashboards and reports to monitor data quality trends and operational health.
- Investigate root causes of recurring data issues and implement preventive solutions.
- Collaborate with Data Engineering, Application Engineering, QA, Product, and Support teams to establish ownership and governance for data quality.
- Define standards for governance, validation frequency, remediation workflows, and quality metrics.
- Continuously improve data quality processes and establish long-term observability best practices.
Requisitos
- 5+ years of experience as a Data Engineer or in similar data engineering roles.
- Strong experience designing and implementing enterprise Data Quality frameworks.
- Hands-on experience with GX Core (Great Expectations) or similar tools such as Soda .
- Strong SQL skills and experience working with Aurora PostgreSQL and Amazon Redshift .
- Experience designing data validation rules, reconciliation processes, and observability solutions.
- Experience building and maintaining ETL pipelines and large-scale data workflows.
- Strong understanding of data modeling, referential integrity, synchronization, and batch processing.
- Experience integrating data validation into CI/CD pipelines.
- Experience with Git and engineering best practices such as Rule-as-Code.
- Experience building dashboards, alerts, and reporting for operational monitoring.
- Strong analytical and problem-solving skills with experience performing root cause analysis.
- Experience collaborating with cross-functional engineering teams.
- Excellent communication and documentation skills.
- ? Fully remote position.
- ? Opportunity to build enterprise-scale data quality and observability solutions.
- ? High-impact role with ownership over data quality strategy and engineering best practices.
- ? Collaborative environment working alongside Data Engineering, QA, Product, and Application Engineering teams.
- ? Opportunity to work with modern data validation, observability, and cloud data technologies while driving continuous improvement across the platform.
