QA Engineer — AI Testing Skills
Emplay Inc. · Home, KS · 3 wk ago
EngineeringFull-time
Job Summary
We are looking for a proactive QA Engineer with 3–4 years of experience and strong hands-on expertise in manual and automation testing. The ideal candidate is detail-oriented, passionate about quality, and experienced in building reliable test strategies for web, API, and backend systems. You will play a key role in ensuring product stability by driving test planning, execution, automation, and release validation — and by actively leveraging AI tools to enhance testing efficiency in a fast-paced agile environment.
Key Responsibilities
- Develop and maintain detailed test plans, test cases, and test scenarios aligned with functional and non-functional requirements.
- Prioritize testing efforts based on risk assessment and business impact.
- Collaborate with stakeholders to ensure complete requirement coverage before testing begins.
- Use AI tools to auto-generate test cases, edge cases, and boundary conditions from user stories and specifications.
- Conduct thorough functional, integration, and regression testing on RESTful APIs using tools like Postman or Swagger.
- Validate backend data accuracy and integrity through well-structured SQL queries including joins and aggregations.
- Identify and document API contract violations and data inconsistencies across environments.
- Design, build, and maintain scalable test automation frameworks using Python, Pytest, or Playwright.
- Embed automated test suites into CI/CD pipelines to enable continuous quality checks.
- Continuously refactor and improve automation scripts to reduce flakiness and maintenance effort.
- Use AI copilot tools to accelerate test script authoring and maintenance.
- Actively use AI tools to generate test cases, identify coverage gaps, and speed up exploratory testing.
- Apply AI-driven insights to detect recurring defect patterns and prevent quality regressions across releases.
- Evaluate and adopt emerging AI-powered and self-healing test tools to improve team productivity and test reliability.
- Craft effective prompts to extract structured test plans, BDD scenarios, and API contract tests from AI assistants.
- Participate actively in sprint ceremonies including planning, stand-ups, reviews, and retrospectives.
- Work alongside developers and DevOps teams to shift quality left and catch issues early in the development cycle.
- Support defect triage, root cause analysis, and pre-release quality sign-off.
- Mentor junior QA engineers on testing best practices, automation techniques, and AI tool usage.
- Maintain clear and up-to-date documentation including test reports, traceability matrices, and release notes.
- Communicate quality risks clearly to both technical and non-technical stakeholders.
Must-Have Skills
- Solid understanding of software testing concepts, QA methodologies, and SDLC/STLC.
- Proven experience in manual testing across web and API layers.
- Strong experience with API testing tools — Postman, Swagger, or similar.
- Hands-on expertise in SQL including complex queries, joins, and data integrity validation.
- Practical experience with automation testing using Selenium, Python, Pytest, or Playwright.
- Hands-on use of AI tools (ChatGPT, GitHub Copilot, Claude, or similar) in a QA workflow.
- Ability to craft effective prompts to produce structured test plans and BDD scenarios.
- Exposure to version control systems (Git).
- Strong analytical, debugging, and documentation skills.
Nice-to-Have Skills
- Experience with CI/CD pipelines — Jenkins, GitHub Actions, or Azure DevOps.
- Familiarity with test management tools such as JIRA, TestRail, or Zephyr.
- Knowledge of performance testing tools like JMeter or Locust.
- Basic understanding of security testing concepts.
- Experience with AI-native testing platforms such as Mabl, Testim, or Applitools.
- Cloud testing experience on AWS or Azure.
- BDD experience with Cucumber or Gherkin.
- Basic awareness of testing AI/ML model outputs — hallucination detection, prompt injection risks.
Qualifications
- Bachelor's degree in Computer Science, Engineering, or a related field.
- 3–4 years of hands-on QA experience across web, API, and backend systems.
- Demonstrated use of AI tools in a testing workflow — examples or project references preferred.
- ISTQB Foundation (or higher), Selenium certification, or equivalent QA certification is a plus.
- Strong communication skills with the ability to articulate quality risks to technical and non-technical stakeholders.