Data Engineer
Listed on 2026-06-12
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IT/Tech
Data Engineering, Data Analyst
Digital products play a central role in how we create value for customers, support the teams who serve them, and shape the consumer experience.
Our product organization brings together small, empowered teams that move with clarity, speed, and purpose, enabling digital to be a meaningful source of advantage across Coca‑Cola’s North America Operating Unit.
Our work spans customer journeys, service delivery, sales workflows, and the platforms that connect them. We are raising our standards for product craft and rebuilding the systems behind these experiences. In this role, you will build, own and help transform:
- Data pipelines and transformations for a defined domain (ingest, clean, transform, publish)
- Well‑documented datasets and basic semantic models that enable reporting and analysis
- Data quality checks (freshness, completeness, validity) and participation in monitoring/alerting
- Datasets that support machine learning use cases (e.g., feature and label tables) with clear definitions
- Incremental improvements to pipeline performance, cost, and reliability with guidance
- Collaboration with partners to clarify requirements and iterate on data products
Build ML‑powered data products that model transaction drivers and surface optimized actions as insights to be embedded within integrated internal and external digital experiences that shape how our beverage brands activate across retail, food service, and digital channels. The success of our products is tied directly to measurable transaction lift at the point of sale, a primary objective of the North America Operating Unit and The Coca‑Cola Company as a whole.
HowWe Work
- Empowered to solve problems, not just build features
- Accountable for outcomes, not output
- Collaborative by default, from discovery through delivery
- Continuously learning, using data and customer insight to improve
- Partner in Data Discovery & Solution Shaping
- Partner with Product, Analytics, and Engineering to understand data needs, definitions, and success metrics
- Learn source systems and data flows; help map entities, identifiers, and key business rules
- Contribute to data modeling and design decisions with guidance (schemas, grain, slowly changing dimensions, etc.)
- Propose simpler, more reliable approaches (e.g., reuse shared datasets, standardize definitions) to improve trust and usability
- Build & Maintain Data Pipelines
- Build and maintain batch and/or streaming pipelines to ingest data from source systems into our analytical platform
- Develop transformations to clean, standardize, and enrich data using agreed‑upon patterns and tools (e.g., SQL, Python, dbt)
- Contribute to pipeline orchestration and deployment (version control, code reviews, scheduled runs) and follow team standards
- Support ML workflows by helping produce curated training datasets and feature‑ready tables, following established patterns
- Help monitor pipeline health and data quality; investigate failures with guidance and improve runbooks and alerts over time
- Own End‑to‑End Data Outcomes
- Implement and maintain data quality checks and basic observability (tests, audits, monitoring) for pipelines you contribute to
- Document datasets and transformations (definitions, lineage, caveats) so others can confidently use and interpret the data
- Help ensure ML datasets are reproducible by supporting basic versioning/lineage and clearly documenting training data assumptions
- Drive incremental improvements to reliability, performance, and cost; follow data access, privacy, and retention guidelines
- Contribute to a Strong Data Culture
- Help evolve data standards (naming conventions, modeling patterns, documentation) to improve consistency and reuse
- Promote a culture of data trust through quality checks, clear definitions, and thoughtful change management
- Collaborate with platform partners to leverage shared tooling and improve the developer experience for data workflows
- Strong SQL fundamentals (joins, aggregation, window functions, performance basics)
- Data modeling mindset
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Cares about clear definitions, grain, and making data usable - Pragmatic problem solving
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Debugs issues, makes sensible tradeoffs, and…
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