QA Engineer

JOB DESCRIPTION

Work collaboratively with software developers (frontend, backend, DevOps), quality assurance analysts, delivery leaders, and product leaders to plan, execute and manage quality assurance and testing activities end to end.
Review product, functional and technical requirements required for the release/sprint and provide timely and meaningful feedback with a focus on the quality of solutions built using a test-first approach.
Create detailed, comprehensive, and well-structured test plans, test cases, test scenarios, test acceptance criteria as deemed necessary to carry out end-to-end testing and QA activities as committed.
Work with the Head of Product, QA, tech lead and others to estimate, prioritize, plan and coordinate testing/QA activities.
Identify, record, and document bugs, suggest valuable improvements and enhancements to the solution and track all reported defects and issues and help developers to resolve them.
Perform thorough regression testing when bugs are resolved and when a new release is made.
Work with the rest of the QA team to develop and apply testing processes and help continuously improve the QA/testing processes, approaches, and tools used.
Work closely with the delivery lead/QA Lead to help provide QA/testing metrics such as defects count (total vs resolved), time to resolution, defect density, and other metrics as necessary.
Stay up-to-date with the latest trends in QA and testing practices/processes and in new testing tools and test strategies

JOB REQUIREMENT

A Bachelor's degree in Computer Science, Information Systems, Software Engineering, Information Technology or a related field.
At least 2+ years of working experience as a software QA engineer/ software tester with web, mobile and full stack testing (backend and frontend testing).
Ability to write clear, concise and comprehensive test cases, test scenarios and test scripts and being able to plan, execute and manage test cases from end to end throughout the SDLC/STLC.
Strong knowledge in QA and testing processes and methodologies practiced in an agile culture and be able to continuously improve/suggest improvements to the QA/testing processes and enhance QA automation coverage.
Must have solid understanding of ATDD/TDD/ BDD approaches and processes used for testing web and mobile applications and support in having 90 % or more automation coverage using tools such as cucumber, gherkin.
Must be self-driven to follow through defects with developers, other QA engineers and technical delivery leadership to attain a high quality outcome for the team with a quality first approach.
Experience in performance and/or security testing is a plus.
Excellent English communication skills
Experience having worked in an agile environment with clear knowledge of Agile/Scrum and related processes.
Having worked with FinTech/Capital Markets/Blockchain or a related domain with ability to test high complex functions.
Nice to have: 
Interest in automated testing
Having worked with FinTech/Capital Markets/Blockchain or a related domain with ability to test high complex functions.
Experience in performance and/or security testing is a plus.

WHAT'S ON OFFER

CONTACT

PEGASI – IT Recruitment Consultancy | Email: recruit@pegasi.com.vn | Tel: +84 28 3622 8666
We are PEGASI – IT Recruitment Consultancy in Vietnam. If you are looking for new opportunity for your career path, kindly visit our website www.pegasi.com.vn for your reference. Thank you!

Job Summary

Company Type:

Blockchain, Finance, Fintech

Technical Skills:

Location:

Ho Chi Minh, Ha Noi, Da Nang - Viet Nam

Working Policy:

Salary:

Negotiation

Job ID:

J01224

Status:

Close

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