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.

Luxoft • Bengaluru, Karnataka, India
Role & seniority: QA Engineer, 5+ years of experience (potentially senior-level).
Stack/tools: UI automation (Selenium WebDriver with Java; Playwright with TypeScript); E2E testing; API testing (REST, Postman, Playwright API); CI/CD (GitHub Actions, GitLab, Jenkins, AWS CodeBuild); AWS environments (dev/stage/prod); data/workflows; test utilities; Page Object patterns; Allure/trace tooling (nice-to-have).
Manual testing: analyze requirements, create/maintain test plans and cases, perform functional/regression/exploratory/integration testing; validate data transformations and large datasets.
Automation: develop/maintain UI automation, implement cross-service E2E scenarios, build reusable utilities, integrate tests into CI/CD, configure tests in AWS environments.
Quality engineering: contribute to QA strategy/automation roadmap, improve stability and reduce flakiness, define KPIs, support test data/environment setup.
Must-have skills: 5+ years QA experience (manual + automation); strong client-server/web testing; testing Agentic AI workflows; hands-on with Selenium WebDriver (Java) and Playwright (TypeScript); REST API testing; solid QA lifecycle/Agile knowledge; CI/CD and Git proficiency; AWS familiarity; ability to analyze complex workflows and large datasets; strong communication.
Nice-to-haves: Capital Markets/trading/market data exposure; AI/ML system validation; test reporting (Allure, Playwright Trace Viewer); p
Project description We are looking for a QA Engineer to join our team working on a cloud based high performance analytics platform used in the Capital Markets domain for validating, transforming, and analyzing large volumes of financial data. Ideal candidate can own both manual functional testing and test automation (UI + E2E) across our front-end interfaces, analytics workflows, and API layers. You will contribute to quality strategy, build automation frameworks, and help the team deliver a highly reliable platform used by financial analysts and enterprise clients.
Responsibilities Manual Testing Analyze requirements, acceptance criteria, and specifications for new features. Create and maintain test plans, test cases, and test scenarios across UI, API, and data workflows. Perform functional, regression, exploratory, and integration testing. Validate correctness of data transformation, analytical workflows, and large dataset processing. Collaborate closely with Product, Developers, and Data/AI Engineers to clarify expected behavior. Automation
Nice to have skills Experience with Capital Markets, trading, market data, or financial analytics. Exposure to AI/ML-based systems and their validation approaches. Knowledge of modern test reporting systems (Allure, Playwright Trace Viewer). Experience with performance testing (JMeter). Python scripting experience for test data generation and automation utilities.