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Life-Changing Brands
Senior Data Analytics Engineer
Location
Uruguay
Posted
47 days ago
Salary
0
Seniority
Senior
Job Description
Senior Data Analytics Engineer
Trafilea Tech E-commerce Group
• Take ownership of our BI ecosystem and drive high-impact improvements in data reliability, performance, and business insights. • This role sits at the intersection of data engineering, analytics, and business strategy, working closely with Marketing and cross-functional teams to ensure data is not only accurate — but actionable. • Play a key role in transforming how the company uses data to make decisions. • Own and improve the reliability and performance of dashboards and reporting systems • Design and optimize data models and SQL transformations in the data warehouse • Build and maintain scalable BI solutions using Tableau and cloud data platforms • Implement data quality checks, monitoring, and anomaly detection systems • Partner with stakeholders to translate business needs into robust data products • Improve query performance and reduce reporting inefficiencies • Define and standardize KPI frameworks, especially for Marketing metrics • Ensure documentation, ownership, and governance across all BI assets
Job Requirements
- 4–6+ years in BI, Analytics Engineering, or Data Engineering
- Advanced SQL (CTEs, window functions, performance tuning)
- Strong experience with Tableau
- Experience working with data warehouses and transformation layers
- Hands-on experience with Git and version-controlled workflows
- Strong analytical mindset and attention to detail
- Ability to work with both technical and business stakeholders
- Nice to have
- Experience with AWS stack (S3, Redshift, Athena, Glue, etc.)
- Experience with dbt, Airflow, or modern ELT pipelines
- Background in Marketing analytics (CAC, ROAS, LTV, funnels, etc.)
Benefits
- 100% Remote
- USD competitive salary
- paid time off
- and more.
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