What are the responsibilities and job description for the MDM Engineer position at Vaarida Technologies llc?
- Strategy & Governance: Define and lead the MDM strategy, including data governance policies, stewardship, and the creation of a "golden record" for domains like Customer, Supplier, or Product.
- Implementation & Architecture: Design and implement MDM technology solutions, including data modeling, data integration, match/merge rules, and ETL processes.Team Leadership: Lead, mentor, and manage a team of MDM professionals (data analysts, stewards), setting performance expectations and managing project deliverables.
- Cross-Functional Collaboration: Partner with business leaders (Sales, Finance, Marketing) and IT to translate business requirements into technical design specifications.
- Data Quality & Monitoring: Oversee the establishment of data quality rules, monitoring KPIs, and resolving data quality issues.
- Change Management: Drive organizational change to adopt new data standards, ensuring that master data is treated as a strategic asset.
- Proven track record of managing complex data, MDM, or governance projects.
- Strong proficiency in Agile/Scrum methodologies and tools (e.g., Jira, Confluence, Smartsheet, MS Project).
- Master Data & Governance: Deep understanding of master data management principles, data governance frameworks, and large-scale data quality improvement initiatives.
- Proven ability to capture/document requirements, assess business impacts and tradeoffs, and align stakeholders through interviews, workshops, and requirements harmonization.
Technical Data Skills:
- 7 years of experience in data analysis, specifically focused on data-related initiatives, MDM, or data governance.
- Industry-standard certifications in data management or analytics preferred.
- Deep familiarity with D&B data architecture, hierarchies, and enrichment preferred.
- Hands-on experience with data profiling, source system analysis, and KPI definition.
- Strong SQL & Python expertise and experience querying large, complex data sets.
- Experience with at least one analytics platform (e.g., Hadoop, Spark, Snowflake).
- Experience with BI tools such as Tableau, Thought Spot, or Business Objects.
- Data Architecture & Quality: Understanding of data architecture principles, data lineage, and experience maintaining data dictionaries/definitions.
- Tools & Platforms: Exposure to tools such as Collibra, Data Hub (or equivalent for governance and data quality).
- Collaboration & Communication: Ability to navigate a matrixed organization, work across time zones, drive consensus among competing priorities, and build strong stakeholder relationships.
- Execution & Accountability: Strong problem-solving skills with a track record of delivering results on time and within budget in large, complex programs