Search by job, company or skills

Xebia

Data & AI-backed QA Engineer

This job is no longer accepting applications

new job description bg glownew job description bg glownew job description bg svg
  • Posted 5 months ago

Job Description

Job Description Data & AI-backed QA Engineer (57 years)

We are seeking a highly skilled Automation, Data & AI-backed QA Engineer with 57 years of

proven expertise in automation testing, data pipeline validation, and AI-driven quality

assurance practices. The ideal candidate will bring deep knowledge of test automation

frameworks, strong data testing expertise, and innovative approaches leveraging AI/ML to

enhance quality, coverage, and defect prediction.

Key Responsibilities

Design, develop, and maintain automation test frameworks for web, API, and datacentric

applications.

Perform data pipeline testing (ETL/ELT validation, schema verification, data integrity,

reconciliation, and transformations across multiple sources/sinks).

Implement AI/ML-powered testing solutions (e.g., intelligent test selection, selfhealing

tests, defect clustering, log anomaly detection).

Collaborate with engineering and data teams to ensure quality across data pipelines,

APIs, and distributed systems.

Conduct data validation testing for structured/unstructured data in cloud and onpremise

environments.

Integrate automation into CI/CD pipelines with robust monitoring and reporting.

Analyze results, detect patterns using AI tools, and generate data-driven quality

insights.

Advocate modern QA practices (shift-left, continuous testing, risk-based prioritization).

Required Skills & Experience

57 years of hands-on experience in automation testing.

good expertise in Selenium with Java or Python.

Hands-on experience with Maven, TestNG, Cucumber, or equivalent frameworks.

Proven experience in API Testing (Postman, RestAssured, etc.).

Strong background in data testing, including:

ETL/ELT pipeline validation (batch & streaming).

SQL queries for data verification and reconciliation.

Data quality checks (completeness, accuracy, consistency, duplicates).

Working with large datasets (RDBMS, data lakes, cloud warehouses such as

Snowflake/BigQuery/Redshift).

Familiarity with big data tools (Spark, Hadoop, Kafka) is a plus.

Proficiency with CI/CD pipelines (Jenkins, GitHub Actions, Azure DevOps, etc.).

Experience with AI-assisted testing approaches (self-healing, model-based testing,

intelligent prioritization).

Proficiency with version control (Git) and Agile tools (ADO/Jira).

Strong debugging, analytical and risk mitigation skills.

Excellent communication skills with ability to collaborate effectively.

More Info

Job Type:
Industry:
Employment Type:

About Company

Job ID: 128238345