Customer Cases
Pricing

Gain More Insights from Our PerfDog WhitePaper

DOWNLOAD THE 2024 PERFDOG WHITEPAPER AND LEARN MORE ABOUT PERFDOG & PERFORMANCE TESTING!

In pursuit of excellence in performance testing, we are thrilled to announce the release of the 2024 PerfDog WhitePaper. As part of our ongoing efforts to contribute to the software testing community, the paper will serve as a comprehensive guide for software testing engineers and QA experts worldwide, offering insights into the unique metrics and features that set PerfDog apart.

What's Inside the WhitePaper

What is PerfDog

PerfDog, developed by WeTest, is a comprehensive and user-friendly performance testing tool trusted by over 600,000 software testing engineers worldwide. It supports various platforms including Android, iOS, Unity, and more, and offers real-time, multi-dimensional data monitoring, crash log analysis, and other essential features. With over 200 performance metrics, PerfDog provides a complete, multi-dimensional view of device performance across platforms, empowering developers to optimize their applications for the best user experience. It's a plug-and-play tool that simplifies performance testing and analysis, making it an essential tool for developers and testers alike.
 

Explanation of Major Metrics

PerfDog offers major metrics to help developers analyze and optimize their applications' performance. These metrics include FPS, Jank, Stutter, and various CPU and GPU performance indicators. PerfDog's comprehensive monitoring capabilities enable developers to identify bottlenecks and inefficiencies in their applications, such as complex UI elements, resource-intensive operations, and inefficient memory management. By understanding the key metrics and their implications, developers can make informed decisions to improve their app's performance and deliver a smooth user experience across platforms and devices.

Performance Testing Functions

PerfDog supports game testing across Android, iOS, PC, and Switch platforms, as well as Unreal Engine and Unity game engines. It also offers Systrace mode for analyzing event tracking on Android/iOS, and an engine mode for in-depth analysis of CPU scheduling, thread status, and rendering. Additionally, PerfDog provides a network testing feature for simulating weak networks and a custom data extension for real-time synchronization of performance-related data.

PerfDogService

PerfDogService is a background service program that enhances PerfDog's performance testing capabilities by providing automated testing features and supporting performance data extraction through open interfaces. It facilitates multi-device parallel testing, flexible test configuration, and the use of Python scripts for automated testing. PerfDogService is compatible with over a dozen popular languages, can be deployed on major system platforms like Windows, Mac, and Linux, and supports a variety of interfaces for tasks like creating tasks, archiving cases, and sharing cases.

 

How to Download

Step 1: To download the PerfDog 2024 White Paper, simply click : Download Center  and choose "Download" of "PerfDog 2024 White Paper". (Note: You will need to complete a pop-up form first to access the download link)

For more questions and services, please contact WeTest team → wetest@wetest.net

PD网络测试推广
Latest Posts
1Top Performance Bottleneck Solutions: A Senior Engineer’s Guide Learn how to identify and resolve critical performance bottlenecks in CPU, Memory, I/O, and Databases. A veteran engineer shares real-world case studies and proven optimization strategies to boost your system scalability.
2Comprehensive Guide to LLM Performance Testing and Inference Acceleration Learn how to perform professional performance testing on Large Language Models (LLM). This guide covers Token calculation, TTFT, QPM, and advanced acceleration strategies like P/D separation and KV Cache optimization.
3Mastering Large Model Development from Scratch: Beyond the AI "Black Box" Stop being a mere AI "API caller." Learn how to build a Large Language Model (LLM) from scratch. This guide covers the 4-step training process, RAG vs. Fine-tuning strategies, and how to master the AI "black box" to regain freedom of choice in the generative AI era.
4Interface Testing | Is High Automation Coverage Becoming a Strategic Burden? Is your automated testing draining efficiency? Learn why chasing "automation coverage" leads to a maintenance trap and how to build a value-oriented interface testing strategy.
5Introducing an LLMOps Build Example: From Application Creation to Testing and Deployment Explore a comprehensive LLMOps build example from LINE Plus. Learn to manage the LLM lifecycle: from RAG and data validation to prompt engineering with LangFlow and Kubernetes.