Senior Data Engineer
Mustang Cat | |
| |
12800 Northwest Freeway (Show on map) | |
May 06, 2026 | |
|
Building Texas...
Powering the World
.
Since 1952, Mustang has proudly served the construction, oil & gas, power generation, marine, and manufacturing industries as the authorized Caterpillar dealer for Southeast Texas. Start your career with Mustang Cat - one of America's Greatest Midsize Workplaces of 2025!
Snowflake, Semantic Layer & Enterprise Data Platform Mustang Cat is seeking a highly experienced Senior Data Engineer to design, own, and govern the enterprise data environment, with a strong focus on Snowflake, semantic layer design, trusted reporting, and enterprise data modeling. This role is responsible for ensuring that data is structured, transformed, secured, documented, and made available in a way that supports accurate operational and financial reporting across the business. The Senior Data Engineer will act as the technical steward of the enterprise data platform, ensuring that data models, reporting layers, metric definitions, semantic structures, and data quality standards are intentionally designed and consistently applied. The successful candidate must be deeply experienced in Snowflake, advanced SQL, dimensional modeling, analytics-ready data structures, and semantic layer design. This role will work closely with business stakeholders, reporting teams, application owners, integration engineers, and external vendors to ensure that the data warehouse becomes a trusted foundation for reporting, analytics, and future advanced use cases. While this role will collaborate with engineers responsible for ingestion, integrations, and data movement, the Senior Data Engineer will focus primarily on data architecture, modeling, semantic layer design, reporting-layer reliability, governance, and platform stewardship. Key Responsibilities: Snowflake Data Platform Ownership & Design Own the design and evolution of the enterprise data platform, including:
Data Modeling & Semantic Layer Design Define conformed dimensions, fact tables, shared reference data, hierarchies, and reusable reporting models to ensure consistency across analytics and reporting. Establish and maintain semantic layer standards so business definitions, calculations, KPIs, and measures are applied consistently across tools and teams. Partner with reporting and analytics teams to ensure models align with how data is consumed in Power BI and other reporting tools. Help move critical reporting logic out of isolated reports, spreadsheets, and disconnected BI models into governed Snowflake and semantic-layer structures where appropriate. Ensure business metrics are defined once, documented clearly, and used consistently across the enterprise. Data Quality, Trust & Governance Identify upstream data quality issues, transformation gaps, integration problems, and reporting inconsistencies that affect trust in enterprise reporting. Establish ownership and accountability for critical data domains, business definitions, and reporting metrics. Ensure data lineage, freshness, completeness, accuracy, and reliability expectations are clearly defined and measurable. Partner with integration and data movement resources to ensure pipelines conform to data quality, modeling, and governance standards. Support the validation of key operational and financial metrics from source systems through Snowflake and into reporting outputs. Environment Management & Standards
Ensure the data environment aligns with security, compliance, audit, and operational requirements. Act as a gatekeeper for changes that materially affect data structure, semantic definitions, reporting logic, or data integrity. Collaboration with Integration & Analytics Teams Review and approve data structures, transformations, and reporting-layer changes implemented by internal teams or vendor partners. Partner with analytics, Power BI, and business reporting teams to ensure data is usable, performant, accurate, and well-documented. Serve as an escalation point for complex Snowflake, data modeling, semantic layer, metric definition, and platform design decisions. Translate business reporting requirements into clear data structures, models, and reusable reporting objects. Documentation & Knowledge Stewardship
Required Qualifications:
Preferred Qualifications:
What Success Looks Like: The Snowflake environment is clearly structured, documented, and consistently implemented. Business metrics, reporting definitions, and semantic models are defined once and used consistently across analytics and reporting. Core facts, dimensions, hierarchies, and business entities are reusable, trusted, and aligned with business needs. Data quality issues are detected early and addressed systematically. Reporting teams consume trusted, well-modeled datasets rather than rebuilding logic in individual reports or spreadsheets. Integration pipelines conform to defined data standards, contracts, and quality expectations. Power BI and other reporting tools are supported by governed data models and reliable semantic structures. The data platform scales without fragmentation, uncontrolled complexity, or inconsistent reporting logic. Check out the Mustang Cat Anthem to see our mission in action! | |
May 06, 2026