Senior Analytics Engineers / Mid Analytics Engineers
# Think Data Be Smart #
About Us: DataSmart is a Portuguese company, positioning itself as a consulting company of excellence, with over 20 years of existence. We are specialized in Technologies and Information Systems services, for the Portuguese and International markets. We pride ourselves on fostering a culture of involvement, experience, and excellence.
Join our team as a Senior Analytics Engineers / Mid Analytics Engineers (Hybrid – Lisbon)!
What You’ll Do:.
- Design and implement scalable analytical data models using Star Schema, Dimensional Modeling, and Medallion Architecture.
- Create semantic layers that enable consistent reporting, analytics, and machine learning consumption.
- Manage schema evolution while maintaining data consistency and governance standards.
- Optimize large-scale analytical models for performance and maintainability.
- Develop and maintain ELT/ETL pipelines to transform raw data into trusted analytical datasets.
- Build advanced data transformations using SQL, Python, PySpark, and Spark SQL.
- Automate data processing workflows and improve pipeline reliability.
- Ensure data is structured and accessible for BI, Data Science, and ML teams.
- Implement and manage orchestration workflows using tools such as Airflow, Azure Data Factory, Databricks Workflows, or Microsoft Fabric.
- Automate scheduling, dependency management, and recovery processes.
- Improve operational efficiency through workflow optimization and automation.
- Define and implement data quality frameworks and validation rules.
- Monitor data quality, completeness, accuracy, freshness, and SLA compliance.
- Establish end-to-end observability and alerting mechanisms.
- Identify and resolve data issues before they impact consumers.
- Optimize SQL queries and analytical workloads.
- Implement partitioning, clustering, and performance-tuning strategies.
- Improve processing efficiency for large-scale datasets.
- Ensure analytical models and semantic layers perform efficiently under growing demand.
- Document business rules, transformation logic, and data lineage.
- Support governance initiatives using tools such as Purview or Unity Catalog.
- Maintain traceability of data across source systems and analytical layers.
- Ensure compliance with organizational data standards.
- Design and optimize semantic models for Power BI and other BI platforms.
- Improve DAX calculations and reporting performance.
- Enable self-service analytics through well-structured business-friendly data models.
- Implement CI/CD pipelines and DevOps practices for data products.
- Apply version control and automated testing to data pipelines.
- Promote coding standards, peer reviews, and deployment automation.
- Contribute to a reliable and scalable analytics engineering ecosystem.
- Partner with Data Engineers, Data Scientists, ML Engineers, Product Owners, and Business stakeholders.
- Translate business requirements into technical data solutions.
- Ensure analytical solutions align with business goals and decision-making needs.
- Support integrated, value-driven delivery across teams.
Qualifications:
- Understanding of business objectives and key performance indicators.
- Reporting, analytics, and machine learning use cases.
- Business requirements, priorities, and expected outcomes.
- Clear definition of success criteria for analytical products.
- Access to source systems, databases, APIs, and data feeds.
- Data dictionaries and source system documentation.
- Existing analytical models and data flows.
- Understanding of data ownership and stewardship.
- Access to cloud platforms and data warehouses (Snowflake, Synapse, BigQuery, Redshift, Delta Lake, ADLS, etc.).
- Existing orchestration, transformation, and monitoring tools.
- Current architecture diagrams and technical documentation.
- Development, testing, and production environments.
- Data governance policies and standards.
- Existing cataloging and lineage solutions.
- Security, privacy, and access-control requirements.
- Regulatory and compliance considerations.
- Defined SLAs and operational expectations.
- Existing quality rules and validation frameworks.
- Monitoring and alerting requirements.
- Incident management and escalation processes.
- Agile methodology and delivery processes.
- Backlog priorities and roadmap visibility.
- Team roles, responsibilities, and dependencies.
- Jira boards, workflows, and planning mechanisms.
- Access to key stakeholders and business representatives.
- Collaboration with Data Engineering, BI, Data Science, and ML teams.
- Defined communication channels and governance forums.
- Clear ownership boundaries and decision-making processes.
- Authority to influence architecture and technical standards.
- Visibility into long-term data strategy and roadmap.
- Opportunities to mentor engineers and shape best practices.
- Ownership of complex analytical solutions and platform improvements.
- Clear technical guidance and architectural standards.
- Access to mentoring and knowledge-sharing opportunities.
- Well-defined project scope and priorities.
- Opportunities to progressively increase ownership and technical responsibility.
- English proficiency at a professional level (minimum B2).
- Living in Portugal and available to work in a hybrid model in Lisbon.
At DataSmart, you will have the opportunity to integrate into a solid company and participate in projects of high recognition, nationally and internationally, with an appealing technological environment and career progression.
Excellence in the way to the future!
Connect with Us: Follow us on LinkedIn for updates on career opportunities, company news, and industry insights! For further details, visit us at www.datasmart.pt
#JoinOurTeam #DataSmart #ThinkDataBeSmart #DataModeling #Architecture