QA Data Automation Engineer
Orca AI
Software Engineering, Quality Assurance
Israel
Posted on Feb 5, 2026
QA Data Automation Engineer
- R&D
- Israel
Description
We are looking for a QA Data Automation Engineer to join our Data Team in a dynamic and challenging role, providing critical test coverage for Orca’s data pipelines, reporting layers, and analytics solutions.
In this role, you will be responsible for validating data integrity end-to-end — from raw ingestion and transformation layers to dashboards and downstream consumers. You will design and maintain automated tests to ensure accurate, reliable, and scalable data systems.
Key Responsibilities
- Develop and maintain automated QA tests for data pipelines, transformations, and data products.
- Validate data flow across the system, including: ingestion, transformations, reports/dashboards.
- Perform data quality testing (completeness, consistency, accuracy, timeliness, schema validation).
- Write and execute SQL-based tests to validate logic, joins, aggregations, metrics, and anomalies.
- Build automation frameworks and validation scripts using Python.
- Work closely with Data Engineers and Analytics/BI stakeholders to define test coverage and acceptance criteria.
- Investigate failures and data issues, providing clear RCA and actionable bug reports.
- Document test plans, test scenarios, expected results, and automation coverage.
- Track issues in Jira, including reproducible steps and supporting evidence.
- Continuously improve QA processes for better monitoring, reliability, and faster releases.
Requirements
- 4+ years of QA experience, including experience with automation or data validation flows.
- QA Methodology knowledge (STP, QA cycles)
- Proven experience testing data systems (ETL/ELT pipelines, DWH, analytics platforms, BI reports).
- Strong SQL skills – ability to write complex queries for validation and troubleshooting.
- Strong Python skills – writing scripts/tests for automated validations (pytest is a plus).
- Hands-on experience working with Data Lakes / Data Warehouses such as Snowflake (preferred).
- Strong understanding of bug lifecycle management using Jira.
- High attention to detail, critical thinking, and problem-solving mindset.
- Excellent communication skills and ability to work cross-functionally in a fast-paced environment.
Nice to Have
- Knowledge of cloud platforms (AWS).
- Experience working with large-scale datasets, partitions, and performance tuning.