Inteligência, Inovação e Tecnologia.
Senior Analytics Engineer
Location
Brazil
Posted
9 days ago
Salary
0
Seniority
Senior
Job Description
Senior Analytics Engineer
Leega
• Work directly within tribes requiring the development of data pipelines and new dashboards. • Strong experience as an Analytics Engineer, BI Engineer, or in a similar role. • Minimum proven experience: 5 to 6 years (required). • Advanced SQL: deep knowledge of schema design, query optimization, and dimensional/relational modeling. • Advanced experience with DBT: professional use in building, testing, and documenting data transformation pipelines. • Experience with Airflow: building, maintaining, and orchestrating complex data pipelines. • Google Cloud Platform (GCP): • Expertise in BigQuery: in-depth knowledge of performance tuning, cost management, and advanced platform features. • Familiarity with other GCP data services (e.g., Google Cloud Storage). • Experience with BI/visualization platforms: proficiency in developing dashboards on the Looker Platform.
Job Requirements
- Analytical and consultative skills
- Consultative profile: ability to communicate with non-technical stakeholders, gather business requirements, and translate them into data solutions.
- Analytical and critical thinking: ability to go beyond the "what" (data) and address the "why" (root-cause analysis), proposing solutions based on insights.
- Documentation and governance: strong culture of documentation, tagging, and promoting data governance.
- Programming: knowledge of Python for task automation, building custom pipelines, and/or exploratory analyses.
- Knowledge of business metrics (optional): familiarity with product metrics (AARRR), marketing (LTV, CAC), or financial metrics.
Benefits
- 100% Remote
Related Guides
Related Categories
Related Job Pages
More Analytics Engineer Jobs
• Serás referencia técnica en arquitectura de medición digital, responsable de diseñar, implementar y mantener los sistemas que garantizan que el dato llega limpio, íntegro y escalable desde cualquier fuente. • Gestionar contenedores GTM (cliente y servidor), diseñando soluciones adaptadas a las limitaciones técnicas de cada cliente. • Implementar y resolver problemáticas en Firebase, Measurement Protocol y server-side tracking. • Desplegar y gestionar contenedores GTM Server-Side garantizando contexto first-party y seguridad del dato. • Modelar datos en BigQuery con SQL para optimización de costes y rendimiento. • Desarrollar scripts para la extracción y carga automatizada de datos desde APIs de terceros. • Garantizar la calidad del dato: integridad, ausencia de duplicidades y rupturas de sesión. • Auditar implementaciones y mantener actualizada la documentación de la arquitectura tecnológica.
ETL Engineer
Ensemble Health PartnersEnsemble Health Partners is a hospital and healthcare company that partners with client hospitals to help them develop processes, train teams, reach their finan
• Design and develop new ETL and Business Intelligence Solutions • Monitor and enhance production jobs and legacy ETL processes • Collaborate with existing team for database design and maintenance • Troubleshoot and resolve technical issues while ensuring data security
• Design, develop, and maintain Databricks ETL/ELT pipelines to process Medicaid claims, eligibility, encounters, provider files, and supplemental datasets • Ingest data from MMIS systems, state data warehouses, managed care organizations, and other Medicaid program data sources • Implement transformation, validation, and enrichment logic aligned to Medicaid data quality standards • Optimize Spark jobs for performance and cost efficiency across large Medicaid datasets • Build and maintain Data Lake models for auditability, lineage, and compliance • Develop Power BI semantic models, dashboards, and reports that support Medicaid operations • Collaborate with Medicaid program staff, policy teams, actuaries, and data governance groups
• Partner with business stakeholders to translate domain knowledge into structured analytical and semantic representations. • Design, develop, and maintain enterprise semantic models. • Collaborate with data engineers to shape silver and gold datasets. • Build AI-ready data products by enriching datasets with business definitions and hierarchies. • Develop and optimize Power BI semantic models. • Create and manage standardized KPIs and calculations using DAX. • Document business logic, data definitions, and metric context. • Implement data governance controls. • Publish trusted semantic models and datasets. • Monitor and optimize model performance.




