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1Localization Testing with Example | Importance & ApplicationsThis article explains localization testing with examples and other related concepts which need to be cleared before you release an app in a region that is not yours. Read till the end to learn everything related to localization.
2Appium Capabilities: What Are They, and What Are Their Benefits?Appium capabilities in software testing refer to the configuration settings and options that can be set to control the behavior and characteristics of the Appium framework during mobile app testing. In this article we will take a deeper look into it.
3How to Perform Localization Testing?How to perform localization testing is one of the most frequent questions whether it is from newbies in the industry or the client's first project to be improvised. This blog post curates them all and explains the basics and benefits of Game Localization.
5Optimizing Keyframe Recognition in App Startup Time-Consuming Analysis Using Scikit-LearnThis article briefly introduces the model optimization process using the scikit-learn image classification algorithm in start-up time-consuming applications. In the subsequent sequel, TensorFlow CNN, transfer learning, and other algorithms will be used to provide a comparison of recognition effects.