Data Model Bugs
نویسندگان
چکیده
In todays internet-centric world, web applications are replacing desktop applications. Cloud systems are frequently used to store and manage user data. Given the complexity inherent in web applications, it is imperative to ensure that this data is never invalidated. We overview existing techniques for data model verification in web applications, list bugs discovered by these tools, and investigate their impact, difficulty of detection, and possibilities of prevention.
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