Description
NEFCO is scaling from $1B to $5B, and high-quality product data is foundational to that growth. We are looking for a detail-oriented, technically curious Product Data Operations Analyst to maintain, enrich, and improve product data quality across ERP, PIM, supplier, and analytics systems — while identifying opportunities to automate workflows and strengthen data governance.
What You'll Do
- Maintain and enrich product data attributes — descriptions, specs, classifications, images, and identifiers (UNSPSC, GTIN, MPN) — across ERP and PIM systems.
- Source missing attributes from suppliers, manufacturers, and third-party databases.
- Support new product onboarding: review, validate, and enrich data before loading into downstream systems.
- Apply data quality standards and run regular audits to catch gaps, inconsistencies, and duplicates.
- Build and maintain dashboards tracking data quality KPIs, completeness scores, and enrichment progress.
- Use SQL, Excel, Power Query, ETL tools, and AI-assisted scripting to automate data prep and validation workflows.
- Partner with Pricing, Sales, Supply Chain, IT, and Operations to translate business needs into data requirements.
- Support ERP/PIM improvement initiatives; assist with supplier portals, catalog syndication, and compliance projects.
- Train end-users on data best practices and self-service tools.
Requirements
Qualifications
- Bachelor’s degree in business, Information Systems, Data Analytics, or related field (or equivalent experience).
- 2–4 years in product data, master data, PIM/ERP data management, catalog operations, or a related analytics role.
- Solid SQL skills and strong Excel proficiency (pivot tables, Power Query, lookups, data validation).
- Working knowledge of ETL concepts and comfort with scripting, automation, or AI-assisted data tools.
- Experience with ERP or PIM systems; Epicor Eclipse or Salsify a plus.
- Detail-oriented, organized, and able to manage competing priorities.
- Clear communicator with both technical and non-technical stakeholders.
- Power BI, Tableau, or similar BI tools.
- Python for data manipulation and automation.
- Experience with ETL pipelines, APIs, or FTP/SFTP data exchanges.
- Background in industrial distribution, manufacturing, or wholesale.
- Exposure to AI-assisted enrichment tools or LLMs for classification and content generation.
- Familiarity with data governance, taxonomy management, or product classification.
What Success Looks Like
- Product data is more complete, accurate, and easier for teams to use.
- Data quality issues are discovered early and resolved through repeatable processes.
- Manual cleanup is accomplished through automation, ETL workflows, and better source collection.
- Product onboarding is consistent and less reliant on tribal knowledge.
- Stakeholders trust the data because standards and ownership are clearly defined.