We are seeking an SDET who is passionate about test automation, quality engineering, and leveraging Generative AI to drive smarter, faster, and more efficient testing outcomes. The ideal candidate will have a strong foundation in automation frameworks, API and UI validation, and a forward-thinking mindset to integrate AI tools and techniques into everyday quality processes. This role is ideal for someone who enjoys building automation systems, optimizing pipelines, and experimenting with AI-driven testing strategies to scale quality with intelligence.
Responsibilities:
- Design, develop, and maintain end-to-end automation frameworks for UI, API, and backend testing.
- Leverage Generative AI tools to accelerate test case design, script generation, and data preparation.
- Integrate AI-based validation and anomaly detection into automation workflows for smarter quality insights.
- Collaborate with developers and product teams to ensure testability, performance, and reliability from the start.
- Enhance and maintain CI/CD-integrated automation pipelines (GitHub Actions / Jenkins / Azure DevOps).
- Lead initiatives to reduce manual effort using intelligent automation and AI-driven utilities.
- Drive best practices in shift-left testing, code quality, and continuous testing in agile sprints.
- Mentor junior engineers on automation, coding standards, and the use of AI tools in testing.
The core requirements for the job include the following:
Automation Frameworks:
- Expertise in Selenium / Playwright.
- Strong programming skills in Java / Python / JavaScript.
- Experience in building custom automation frameworks (hybrid, keyword, BDD - Cucumber / SpecFlow).
- Familiarity with API testing using Postman, REST Assured, SuperTest, or equivalent.
- Knowledge of test data management, mocking (WireMock), and contract testing (Pact).
AI and Smart Testing Tools:
- Exposure to AI-assisted testing tools (e. g., Testim.io, Mabl, LambdaTest SmartTest, or similar).
- Hands-on experience or interest in using GenAI tools (ChatGPT, Copilot, etc. ) for generating test data, test cases, and automating repetitive QA tasks.
- Understanding of AI model testing, prompt validation, or data-driven AI validation is a plus.
DevOps and Cloud Integration:
- Experience with CI/CD automation, Jenkins, GitHub Actions, or Azure DevOps.
- Knowledge of Docker / Kubernetes and cloud environments (AWS / Azure).
- Exposure to test environment orchestration and parallel execution on cloud platforms.
Performance and Reliability:
- Familiarity with JMeter / k6 / Gatling for performance and load testing.
- Basic awareness of observability tools (Grafana, ELK, Prometheus) for system quality insights.
Soft Skills:
- Strong analytical, debugging, and problem-solving abilities.
- Ability to think creatively about automation efficiency using AI.
- Collaborative team player with excellent communication skills.
- Curious mindset, open to experimenting with AI-driven quality engineering tools.
Preferred Qualifications:
- Bachelor's or Master's in Computer Science, Engineering, or related field.
- Proven experience in scaling automation across microservices and cloud-native applications.
- Exposure to LLM-based productivity tools or building internal AI-driven test accelerators.
- Experience with test analytics dashboards or quality intelligence systems.
.jpg?1769320091)
