Pavel Popov

Quality Assurance Automation Engineer

Nizhny Novgorod, Nizhny Novgorod Oblast, Russia
email-iconphone-icongithub-logolinkedin-logotwitter-logostackoverflow-logofacebook-logo
Join Prog.AI to see contacts
email-iconphone-icongithub-logolinkedin-logotwitter-logostackoverflow-logofacebook-logo
Join Prog.AI to see contacts

Summary

🤩
Rockstar
🎓
Top School
Pavel Popov is a Quality Assurance Automation Engineer with six years’ experience building reliable test infrastructure for desktop, mobile and embedded systems. He has hands-on expertise automating Android and Aurora OS UI tests (including a custom Appium-based framework for tablets), backend API testing with Python/Pytest, and CI-driven regression pipelines. Pavel contributes to the prominent open-source OpenVINO toolkit, improving test coverage, fixing inference and build issues, and refining CMake-based test infrastructure. His background in data analysis and early engineering roles gives him a practical edge in data validation, test design and cross-disciplinary collaboration. Based in Nizhny Novgorod, he pairs methodical QA practices with a pragmatic focus on accelerating test execution and reproducible results.
code6 years of coding experience
job2 years of employment as a software developer
bookНижегородский Государственный Технический Университет им. Р.Е.Алексеева (НГТУ)
github-logo-circle

Github Skills (10)

c-language10
cmake10
cprogramming-language10
testing10
openvino9
computer-vision7
deeplearning-ai7
deep-learning7
inference7
ai6

Programming languages (2)

C++Jupyter Notebook

Github contributions (5)

github-logo-circle
openvinotoolkit/openvino

Nov 2021 - Dec 2022

OpenVINO™ is an open-source toolkit for optimizing and deploying AI inference
Role in this project:
userQA Engineer / Test Automation Engineer
Contributions:3 reviews, 6 commits, 9 PRs in 1 year
Contributions summary:Pavel's commits primarily involve modifying and adding tests to the OpenVINO toolkit. They fixed issues related to skipping tests, particularly within the context of inference requests and I/O tensors. The user also addressed build failures related to static libraries and introduced enhancements to the testing infrastructure. Their work included adjusting CMake configurations related to components and installation.
inference-enginepytorchmodel-optimizerdeep-learninggpu
pazamelin/openvino

Sep 2021 - Dec 2022

OpenVINO™ Toolkit repository
Contributions:41 pushes, 9 branches in 1 year 3 months
pytorchdeep-learninggpuopenvino-toolkitcomputer-vision
Find and Hire Top DevelopersWe’ve analyzed the programming source code of over 60 million software developers on GitHub and scored them by 50,000 skills. Sign-up on Prog,AI to search for software developers.
Request Free Trial
Pavel Popov - Quality Assurance Automation Engineer