Data Quality Policy & Framework Implementation
Define and operationalize enterprise Data Quality policies, procedures, and standards.
Establish standardized data quality dimensions and certification frameworks.
Implement scalable validation frameworks across ingestion, transformation, and serving layers.
Embed “quality-by-design” principles into data product lifecycle.
Data Observability Platform Development
Design and implement end-to-end data observability capabilities including:
Data freshness and SLA monitoring
Volume and distribution anomaly detection
Schema drift and pipeline health monitoring
Data lineage validation and reliability tracking
Develop automated alerting and incident detection mechanisms.
Custom Data Applications (DataApps) Development
Build custom Data Quality and Observability applications using:
Databricks native capabilities
Streamlit / Databricks Apps
Python-based backend services
Develop user interfaces enabling:
Data quality rule configuration
Dataset certification workflows
Quality score visualization
Issue tracking and remediation workflows
Enable self-service quality monitoring for engineering and analytics teams.
Azure & Databricks Platform Integration
Implement data quality checks within Azure-based data pipelines and Databricks workflows.
Integrate monitoring with:
ADLS Gen2
Databricks Lakehouse architecture
Batch and streaming pipelines
Develop reusable frameworks leveraging Spark and Delta Lake.
Optimize performance and scalability of quality validation workloads.
Automation & Engineering Excellence
Integrate DQ checks into CI/CD and deployment pipelines.
Develop metadata-driven quality monitoring solutions.
Implement automated remediation and self-healing workflows where applicable.
Ensure auditability, traceability, and governance compliance.
Metrics, Reporting & Adoption
Define enterprise Data Quality KPIs and reliability SLAs.
Build dashboards tracking platform-wide data trust scores.
Drive adoption of standardized DQ practices across engineering teams.
Support audit and compliance reporting initiatives.
Data Quality Score
Leadership & Collaboration
Act as technical lead for Data Quality and Observability engineering.
Mentor engineers on best practices for data reliability.
Collaborate with Data Engineering, Governance, and Platform Architecture teams.
Contribute to long-term evolution of the enterprise data platform.
QUALIFICATIONS, EXPERIENCE AND SKILLS
Education
Bachelor’s or master’s degree in computer science, Data Engineering, Information Systems, or related field.
Experience
8+ years of experience in Data Quality engineering roles within Data Platforms/Data Engineering teams.
Proven experience building custom applications on Databricks or data platforms.
Experience designing enterprise Data Quality or Data Observability solutions.
Hands-on experience developing internal data tools or platform applications.
Technical Skills (Required)
Cloud & Data Platform
Strong expertise in:
- Microsoft Azure
- Databricks Lakehouse platform
- ADLS Gen2
- Distributed data processing using Spark
- Application & DataApp Development
- Experience building DataApps using:
- Streamlit
- Databricks Apps or notebook-based applications
- Python backend development
- Experience designing UI-driven data engineering tools or internal platforms.
- Data Quality & Observability
- Experience implementing data validation frameworks.
- Strong SQL and Python programming skills.
- Knowledge of anomaly detection, monitoring, and data reliability concepts.
- Engineering & Integration
- CI/CD integration for data pipelines.
- REST API integrations and automation workflows.
- Metadata-driven architectures and lineage concepts.
- Experience building DataApps using:
Core Competencies
- Platform-first engineering mindset.
- Strong problem-solving and analytical thinking.
- Ability to translate governance requirements into scalable technical solutions.
- Strong stakeholder collaboration and communication skills.
- Ownership mindset with ability to lead initiatives end-to-end.
Preferred
- Experience with Great Expectations, Deequ, Soda, or similar frameworks.
- Experience with streaming data validation.
- Exposure to AI-driven data observability or anomaly detection.
- Experience building enterprise internal developer platforms.
#LI-AA6
Skills Required
- 8+ years of experience in Data Quality engineering roles within Data Platforms/Data Engineering teams.
- Bachelor's or master's degree in computer science, Data Engineering, Information Systems, or related field.
- Proven experience building custom applications on Databricks or data platforms.
- Hands-on experience developing internal data tools or platform applications.
- Strong SQL and Python programming skills.
- Experience implementing data validation frameworks.
DP World Compensation & Benefits Highlights
The following summarizes recurring compensation and benefits themes identified from responses generated by popular LLMs to common candidate questions about DP World and has not been reviewed or approved by DP World.
-
Fair & Transparent Compensation — Fair & Transparent Compensation: Pay is considered competitive in many contexts, with strong salary perceptions in several regions. Feedback suggests compensation is sometimes viewed as equitable, with salary practices described as compliant and fair.
-
Wellbeing & Lifestyle Benefits — Wellbeing & Lifestyle Benefits: Wellness initiatives, flexible working hours, and practical supports like reimbursements for mobile, home internet, and home‑office equipment are emphasized. Feedback suggests these benefits contribute meaningfully to everyday work‑life needs.
-
Healthcare Strength — Healthcare Strength: Health coverage is described as comprehensive in some locations, including medical emergency coverage and life insurance. A broader emphasis on health, safety, and wellbeing programs reinforces this support.
DP World Insights
What We Do
Trade is the lifeblood of the global economy, creating opportunities and improving the quality of life for people around the world. DP World exists to make the world’s trade flow better, changing what’s possible for the customers and communities we serve globally. With a dedicated, diverse and professional team of more than 108,000 employees, spanning 74 countries on six continents, DP World is pushing trade further and faster towards a seamless supply chain that’s fit for the future. We’re rapidly transforming and integrating our businesses – Ports and Terminals, Marine Services, Logistics and Technology – and uniting our global infrastructure with local expertise to create stronger, more efficient end-to-end supply chain solutions that can change the way the world trades. What’s more, we’re reshaping the future by investing in innovation. From intelligent delivery systems to automated warehouse stacking, we’re at the cutting edge of disruptive technology, pushing the sector towards better ways to trade, minimising disruptions from the factory floor to the customer’s door. We make trade flow, to change what’s possible for everyone.









