Early applicantEasy applyFull-timeWork from Office
Sign in to apply on web or download the app for more options.
Job Description
NVIDIA is the world leader in GPU Computing. We are passionate about markets include gaming, automotive, professional vision, HPC, datacenters and networking in addition to our traditional OEM business. NVIDIA is also well positioned as the ‘AI Computing Company’, and NVIDIA GPUs are the brains powering modern Deep Learning software frameworks, accelerated analytics, modern data centers, and driving autonomous vehicles. We have some of the most experienced and dedicated people in the world working for us. If you are dedicated, forward-thinking, and if working with hard-working technical people across countries sounds exciting, this job is for you.
We are now looking for a Software QA Development Engineer; you will collaborate with multi-functional groups. SWQA Developer Engineer at NVIDIA is responsible for test planning, execution, and reporting, you will also write scripts to automate testing, design and develop tools for QA team, or develop integration tests for validation, so QA Engineer can improve productivity or optimize test plan. As a SWQA Developer, you must identify weak spots and constantly design better and creative test plans to break software and identify potential issues. You will have a huge impact on the quality of NVIDIA's products.
What you’ll be doing:
- Review product requirements and develop test matrix.
- Build test plan, design test case, execute and report test progress, bugs, and results to management.
- Automate test cases and assist in the architecture, crafting and implementing of test frameworks.
- Manage bug lifecycle and co-work with inter-groups to drive for solutions.
- In-house repro and verify customer issues/fixes.
What we need to see:
- BS or higher degree or equivalent experience in CS/EE/CE plus equivalent with 2+ years QA experience.
- Proficient in Unix/Linux and shell/python programming skills.
- Rich experience in test cases development, tests automation in API/UI and failure analysis.
- Solid experience with AI development tools, including creating test cases, automating test cases, and ensuring comprehensive code coverage, among other related tasks
- Good knowledge and hands-on experience in model testing and LLM benchmarking
- Good QA sense including attention to detail, problem-solving, data analysis, quality standards knowledge, time management etc.
- Excellent communicator, fluent written and verbal English.
- Good teamwork with ability to work independently.
- Passion to learn new hardcore technology.
Ways to stand out from the crowd:
- Experience working with NVIDIA GPU hardware is a strong plus
- Background in deep learning frameworks is a plus
- Experience in parallel programming ideally CUDA/OpenCL is a plus
Key Responsibilities
Review product requirements and develop test matrices.
Build test plans, design test cases, execute tests, and report progress and bugs.
Automate test cases and assist in the architecture and implementation of test frameworks.
Manage bug lifecycle and collaborate with cross-functional groups to drive solutions.
In-house reproduce and verify customer issues and fixes.
Requirements
Bachelor's degree or higher in Computer Science
Electrical Engineering
or Computer Engineering
Skills Required
Unix/LinuxShell scriptingPythonTest case developmentTest automationAPI testingUI testingFailure analysisAI development toolsModel testingLLM benchmarkingAttention to detailProblem solvingData analysisTime managementCommunicationTeamworkAbility to work independentlyNVIDIA GPU hardwareDeep learning frameworksCUDAOpenCLParallel programming
App exclusive · Free
Smart Job AI Coach
Your personal interview coach on every job — readiness tips, profile improvements, and role-specific prep. Available only in the Pulse Job app.
Interview readiness
See how prepared you are and what to improve for each role.
Personalized tips
Actionable suggestions based on your profile and the job.
After you apply
Keep coaching momentum from job detail through application success.