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Django (/ ˈ dʒ æ ŋ ɡ oʊ / JANG-goh; sometimes stylized as django) [5] is a free and open-source, Python-based web framework that runs on a web server. It follows the model–template–views (MTV) architectural pattern .
Ready for next release, Unit tests for v.4 and up Yes Yes Yes Yes Yes No [82] Yes Templates Fat-Free Framework: PHP >= 5.4 [83] Any MVC, RMR Push-pull Yes Data mappers for SQL, MongoDB, Flat-File Built-in Yes Yes Yes APC, Memcache, XCache, WinCache, and Filesystem Yes No ? ? FuelPHP: PHP >= 5.3.3 [84] Yes MVC, HMVC Push Yes Yes PHPUnit Yes Yes ...
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Diagram of interactions in MVC's Smalltalk-80 interpretation. Model–view–controller (MVC) is a software design pattern [1] commonly used for developing user interfaces that divides the related program logic into three interconnected elements.
JIT causes a slight to noticeable delay in the initial execution of an application, due to the time taken to load and compile the input code. Sometimes this delay is called "startup time delay" or "warm-up time". In general, the more optimization JIT performs, the better the code it will generate, but the initial delay will also increase.
The view engines used in the ASP.NET MVC 3 and MVC 4 frameworks are Razor and the Web Forms. [ 29 ] [ 30 ] Both view engines are part of the MVC 3 framework. By default, the view engine in the MVC framework uses Razor .cshtml and .vbhtml , or Web Forms .aspx pages to design the layout of the user interface pages onto which the data is composed.
Instead of the controller of the MVC pattern, or the presenter of the MVP pattern, MVVM has a binder, which automates communication between the view and its bound properties in the view model. The view model has been described as a state of the data in the model.
In some machine learning scenarios, with models where the training dataset is incrementally added to in time (e.g. in active learning), cold start refers to training the model on the so far obtained labeled pool with new data added de novo, instead of training the model on new data with all its knowledge from previous trainings (warm start). [5]