Customer Cases
Pricing

Maximizing User Experience with WeTest CrashSight's Support for Multiple Platforms (Part One)

WeTest CrashSight is a leading crash management platform that helping mobile, PC and console developers locate and resolve issues more quickly and efficiently.

WeTest CrashSight is a leading crash management platform that helping mobile, PC and console developers locate and resolve issues more quickly and efficiently. In this article, we will discuss WeTest CrashSight features and how it can help businesses improve their user experience.

Basic features:

Exception overview

• WeTest CrashSight displays the crash rate, numbers of crashes, affected devices, and connected users, as well as hourly top problems in real time by project.

• WeTest CrashSight displays the daily distribution of systems, devices, and application versions in real time.

• WeTest CrashSight displays the daily top problems with the most severe impact in real time.

Crash/ANR/Error reporting

• Crash reporting:

Report comprehensive and accurate crash data and supports fatal out of memory (FOOM) errors.

• ANR reporting:

Optimizes the ANR detection scheme to improve the detection accuracy.

• Error reporting:

Report the level information of errors at the engine layer and custom error messages.

Problem categorization and analysis

WeTest CrashSight provides the following capabilities for a single exception:

• Display of basic information, including abnormal stack, tracking data, system log, and

device model and system.

• In-depth analysis of information, including affected version, device information, reporting trends, custom data, stack recategorization, and characteristic statistics.

WeTest Crashsight advantages.png

For any inquiries, please contact: 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.