Customer Cases
Pricing

Advantages of Performance Testing

In DevOps process, performance testing of your apps is something you should always have in place.

Let us find out what are the benefits of performance testing:

 

Ensure a stable performance for the features

Performance testing validates the fundamental features of the software, which helps you to deliver stable and reliable systems into production.

 

Satisfy and retain your users

First impression is crucial to potential customers. Measuring application performance helps you solve performance issues before being complained about by your users.

 

Measure the speed, accuracy, and stability

It is also about satisfying and retaining your users. Performance testing like WeTest PerfDog helps you measure the speed, accuracy, and stability of the apps, which provides you with significant and comprehensive information on how well the app performs for your business.

 

Improve optimization and load capability

Identify your app’s capacity and help your organization deal with possible sudden volume to prevent performance pitfalls.

 

Eliminate bottlenecks and improve quality

Overall, performance testing is necessary. It is better to spend effective testing on your applications before they are released, rather than fixing the pre-existing issues all the time after.

 

Ensure that your app performs well in real-world conditions, so try WeTest PerfDog for your performance testing.

 

For inquiries, please reach out to us at 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.