Cookies & analytics consent
We serve candidates globally, so we only activate Google Tag Manager and other analytics after you opt in. This keeps us aligned with GDPR/UK DPA, ePrivacy, LGPD, and similar rules. Essential features still run without analytics cookies.
Read how we use data in our Privacy Policy and Terms of Service.
🤖 15+ AI Agents working for you. Find jobs, score and update resumes, cover letter, interview questions, missing keywords, and lots more.

Incedo Inc. • New York, New York, United States
Role & seniority: Senior Quality Engineer with 5+ years in software quality assurance and test automation, focused on data engineering environments.
BDD frameworks: Behave, Cucumber, pytest-bdd, Playwright (UI validations)
Test runners and automation: TestNG, Selenium WebDriver
Languages: Python, Java (or other test-automation languages)
Data/ETL: ETL/ELT processes, data ingestion, data pipelines; data quality and integrity testing
Data platforms: SQL, data warehouses, cloud platforms (e.g., AWS Glue, Snowflake)
CI/CD: Jenkins, GitHub Actions
Other: Defect tracking, test data management, environment setup
Define acceptance criteria and BDD scenarios for data ingestion and pipeline processes with cross-functional teams
Design, develop, and maintain automated BDD test suites; validate data transformations and end-to-end data flow
Integrate automated tests into CI/CD, analyze results, generate reports, and communicate findings; help resolve defects
Bachelor’s degree in CS/Engineering or related field
5+ years QA/test automation, preferably in data engineering
Proficiency with BDD frameworks and Gherkin; experience with Python/Java
Strong knowledge of ETL/ELT, data pipelines, data quality, and data integrity
Proficiency with SQL, data warehouses, cloud data platforms (e.g., Snowflake, AWS Glue)
Experience with CI/CD (Jenkins, GitHub Actions); defect tr
We are seeking a skilled Quality Engineer with hands-on experience in Behavior-Driven Development (BDD) to ensure the quality and reliability of our data ingestion and pipeline solutions. The ideal candidate will collaborate with cross-functional teams to define, implement, and automate BDD test scenarios for complex data workflows.
Responsibilities Collaborate with product owners, data engineers, and business analysts to define acceptance criteria and BDD scenarios for data ingestion and pipeline processes. Design, develop, and maintain automated BDD test suites using frameworks such as Behave, Cucumber, pytest-bdd, and Playwright for Ui validations. Validate data integrity, transformation logic, and end-to-end data flow from source to target systems. Identify, document, and track defects; work with development teams to resolve issues. Integrate automated tests into CI/CD pipelines for continuous quality assurance. Analyze test results, generate reports, and communicate findings to stakeholders. Contribute to test data management and environment setup for data pipeline testing. Stay current with industry best practices in data quality, test automation, and BDD methodologies.
Required Skills & Qualifications Bachelor’s degree in Computer Science, Engineering, or related field. 5+ years of experience in software quality assurance or test automation, preferably in data engineering environments. Strong experience with BDD frameworks (Behave, Cucumber, pytest-bdd, Playwright) and Gherkin syntax. Experience with Implementing Test Runners such as TestNG, Selenium WebDriver to run tests, document reporting, and results. Proficiency in Python, Jav,a or another programming language used for test automation. Solid understanding of ETL/ELT processes, data ingestion, and data pipeline architectures. Experience in testing data transformations, data quality, and data integrity. Familiarity with relational databases (SQL), data warehouses, and cloud data platforms (e.g., AWS Glue) and Snowflake. Experience with CI/CD tools (e.g., Jenkins, GitHub Actions). Excellent analytical, problem-solving, and communication skills.
Preferred Skills Knowledge of data governance and data privacy best practices. Exposure to containerization (Docker, Kubernetes) and infrastructure as code.