Data Engineer In Test ensuring data reliability and observability for sports marketing analytics. Collaborating with cross-functional teams to build monitoring frameworks and validation checks.
Responsibilities
Ensure the accuracy of data and the health, reliability, and observability of analytics and data systems.
Build monitoring, alerting, and validation frameworks for early detection of data issues, pipeline failures, performance degradation, and system-level risks.
Develop SQL-based data quality checks, Python-driven automation, and reliability safeguards to monitor data pipelines, transformations, and analytics outputs.
Track system health signals such as freshness, volume anomalies, latency, and job stability.
Define reliability standards, SLAs, and alerting strategies with data engineering, analytics, and platform teams.
Requirements
Advanced SQL skills for building data quality checks, anomaly detection, alerting logic, and monitoring queries, ideally in Snowflake or similar cloud data warehouses.
Strong Python proficiency for automation, validation frameworks, orchestration, and system health checks.
Experience designing and maintaining data quality and reliability frameworks, including freshness, completeness, accuracy, volume, and schema validation.
Solid understanding of data pipelines and analytics workflows, including ETL/ELT processes, transformations, and downstream consumption.
Experience monitoring system and pipeline health, including job failures, latency, throughput, and SLA adherence.
Familiarity with alerting and observability concepts, such as thresholds, anomaly detection, alert fatigue reduction, and incident prioritization.
Ability to perform root-cause analysis and contribute to remediation and prevention of recurring issues.
Experience with automation and testing frameworks such as Playwright, Selenium, Cypress, or similar tools is a strong asset.
Understanding of end-to-end testing concepts, including validation of analytics dashboards, alerts, and user-facing data flows.
Ability to integrate automated checks into CI/CD or scheduled workflows.
Proficiency with version control (Git) and collaborative development workflows.
Experience writing maintainable, well-documented code and SQL.
Familiarity with CI/CD pipelines, task schedulers, or orchestration tools (e.g., Airflow, dbt, or similar) is beneficial.
Strong analytical mindset with attention to detail and a proactive approach to identifying risk.
Ability to work cross-functionally with data engineering, analytics, and platform teams.
Clear communication skills to explain data and system issues to both technical and non-technical stakeholders.
Benefits
Professional Growth: Work on a variety of projects, enhancing your testing skills across different applications and technologies.
Impactful Work: Play a key role in delivering high-quality solutions that shape the future of the sports and entertainment industries.
Collaborative Environment: Be part of a team that values ideas, fosters a supportive atmosphere, and encourages continuous learning and improvement.
Innovative Culture: Join a company committed to revolutionizing fan and stakeholder engagement through cutting-edge technology.
Equal Opportunity Employer: Two Circles is an equal-opportunity employer. We celebrate diversity and are committed to creating an inclusive environment for all employees.
Senior Data Engineer supporting AI - enabled financial compliance initiative with data pipelines and ingestion processes. Collaborating with diverse teams in a mission - critical regulated environment.
Data Architect leading the definition and construction of cloud data architecture for Kyndryl. Participating in significant technological modernization initiatives, focusing on Google Cloud Platform.
Senior Data Engineer driving data intelligence requirements and scalable data solutions for a global consulting firm. Collaborating across functions to enhance Microsoft architecture and analytics capabilities.
Experienced AI Engineer designing and building production - grade agentic AI systems using generative AI and large language models. Collaborating with data engineers, data scientists in a tech - driven company.
Intermediate Data Engineer designing and building data pipelines for travel industry data management. Collaborating across teams to ensure reliable data for analytics and reporting.
Data Engineer managing and organizing datasets for AI models at Walaris, developing AI - driven autonomous systems for defense and security applications.
Data Engineer designing and maintaining data pipelines at Black Semiconductor. Collaborating with process, equipment, and IT teams to support manufacturing analytics and decision - making.
Junior Data Engineer role focusing on Business Intelligence and Big Data at Avanade. Collaborating on data analysis and SQL queries in a supportive learning environment.
GCP Data Engineer designing and developing data processing modules for Ki, an algorithmic insurance carrier. Working closely with multiple teams to optimize data pipelines and reporting.
Data Engineer at Securian Financial optimizing scalable data pipelines for AI and advanced analytics. Collaborating with teams to deliver secure and accessible data solutions.