Customer Cases
Pricing

PerfDog & Service(v11.1) Version Update

PerfDog v11.1 enhances cross-platform testing with new Windows, iOS, PlayStation support, advanced GPU/CPU metrics, high-FPS capture, and improved web reporting and stability.

Version Update

PerfDog & Service(v11.1) Version Update

1. Added support for Windows remote device debugging;
2. Added support for new features and indicators for Windows devices
2.1 Added support for detailed information on Windows general test device disks;
2.2 Added support for Windows general test process version information;
2.3 Added support for Windows general test shortcut keys to obtain resolution;
2.4 Added support for Windows general test Disk monitoring indicators;
2.5 Added support for Windows general test Network monitoring indicators;
2.6 Added support for all types of GPU Graphic monitoring indicators for Windows general test;
2.7 Added support for Windows general test CPU core frequency;
2.8 Added support for Windows general test AppTreeCPU;
2.9 Added support for Windows deep analysis Vsync signal;
3. Added support for Windows deep analysis (Unreal);
4. Added support for the latest PlayStation Pro;
5. Added support for the latest iOS system;
6. Added support for general test iOS high frame rate mode, breaking the limit of the maximum frame rate display of 60 in WIFI mode;
7. Added support for mobile CPU maximum frequency monitoring, which is convenient for monitoring the impact of frequency reduction;
8. Added support for adding Label column to subpage of general test export file;
9. Added support for adding version information to general test export file;
10. Added support for adding key information pinning function to deep analysis;
11. Added support for customizing data display style of Web use case details page;
12. Added support for label duration statistics of Web use case details page;
13. Added support for Web customizing dual-cell power consumption;
14. Added support for hiding when there is no data on Web;
15. Added support for archiving mark of Web details page;
16. Optimized cache file storage time to 7 days;
17. Optimized thread CPU usage display logic;
18. Optimized x86_64 program execution;
19. Optimized the test process to customize maximum Java heap size;
20. Optimized the algorithm for deep analysis average frame time;
21. Optimized iOS WIFI connection;
22. Optimized iOS 17 and above initialization;
23. Optimized IQOO 12 adaptive refresh FPS acquisition problem;
24. Optimized the long-term testing problem of Hongmeng;
25. Optimized the prompt of exceeding the value limit on the Web side;
26. Optimized the single point display on the Web side;
27. Optimized the Web side screenshot to not cover the bottom chart;
28. Optimized the title display of the Web side report page;
29. Fixed some known issues to improve stability.

PD网络测试推广
Latest Posts
1Performance Test Scenario Design Methodology: A Comprehensive Guide Learn how to design effective performance test scenarios with 4 core frameworks (Baseline, Capacity, Stability, Exception). A step-by-step guide for performance test engineers in 2026.
2The Cheating Economics of Engineering Metrics: Why KPIs Fail in Performance Reviews Learn why engineering metrics fail with the cheating economics of vanity KPIs. Discover real examples, pitfalls & how to implement effective Agile metrics for tech teams.
3Enhancing Business Value with Automation: Practical Team Practices Learn how QJIAYI Tech Quality Team enhances automation business value with practical practices. 10k+ test cases, 80+ monthly bugs detected—turn automation into a business-driven capability.
4Testing Fundamentals: A Better Solution for Balancing Product Quality and Testing Efficiency Learn how to balance product quality and testing efficiency with context-driven testing, RBT & practical QA strategies. A better solution for agile testing teams to deliver high-quality products faster.
5AI Testing: The Challenges of AIGC Implementation in the Testing Domain Explore the key challenges of AIGC implementation in the software testing domain. Learn how AIGC impacts testing processes, quality, and efficiency for testers and AI R&D professionals.