Data Quality Lead / Data Engineer
RIT Solutions, Inc. - Ashburn, Virginia, United States, 22011
Work at RIT Solutions, Inc.
Overview
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Overview
Key Responsibilities:
1. Data Quality Management: - Develop and implement data quality strategies, policies, and procedures. - Monitor data quality metrics and establish processes to improve data integrity, accuracy, and completeness. - Implement data quality tools and solutions to automate data quality checks and validation processes. 2. Data Engineering & Data Lake: - Collaborate with data engineering teams to design, implement, and maintain data quality pipelines within data lakes. - Ensure data governance and compliance standards are adhered to across all data engineering projects. - Optimize data storage and retrieval processes for efficiency and performance. 3. Data Quality Implementation: - Lead data quality initiatives and projects, ensuring timely and successful delivery. - Conduct data quality assessments and audits to identify and resolve data quality issues. - Work closely with business and IT stakeholders to understand data quality requirements and develop solutions to meet their needs. 4. Monitoring & Improvement: - Continuously monitor data quality metrics and implement corrective actions as needed. - Develop and maintain data quality dashboards and reports to track progress and communicate findings to stakeholders. - Conduct root cause analysis of data quality issues and implement preventive measures. 5. Experience with Databricks & Azure: - Utilize Databricks for data processing, analysis, and quality assurance. - Leverage Azure services for data storage, management, and integration. - Implement and manage data quality solutions using Databricks and Azure tools. 6. Collaboration & Mitigation: - Work with business teams and upstream application teams to mitigate data quality issues at the source. - Collaborate with stakeholders to define and implement new data quality (DQ) business rules. - Build exception handling and inline data quality processes within Databricks for the entire data lifecycle. 7. Data Profiling & Rule Definition: - Perform data profiling to identify data quality issues and opportunities for improvement. - Work with business stakeholders to define and implement data quality rules and standards. - Ensure data quality rules are integrated into data processing workflows and monitored for compliance. 8. Issue Management: - Implement a robust issue management process to track and remediate data quality-related issues. - Identify data quality issues proactively by understanding different consumption patterns and implementing checks and balances. - Monitor data quality and publish regular reports on data health. 9. Leadership & Collaboration: - Lead analysts and the daily monitoring team to identify data anomalies. - Work closely with domain leads and business data stewards in the remediation process. - Foster a culture of data quality awareness and continuous improvement. 10. Reporting & Communication: - Create and present data quality reports to senior management and stakeholders. - Communicate data quality progress, challenges, and solutions effectively to both technical and non-technical audiences. - Collaborate with cross-functional teams to ensure data quality standards are met.
Qualifications:
- Minimum of 5 years of experience in data engineering, data quality management, and data lake implementation. - Proven experience with Databricks and Azure. - Strong analytical and problem-solving skills. - Excellent communication and presentation skills. - Ability to work effectively in a fast-paced, dynamic environment. - Knowledge of data governance and compliance standards.
Preferred Skills:
- Experience with other data quality tools and technologies. - Certification in data management or data quality. - Familiarity with machine learning and AI techniques.