Mawl: a domain-specific language for form-based services
نویسندگان
چکیده
منابع مشابه
Mawl: A Domain-Specific Language for Form-Based Services
ÐA form-based service is one in which the flow of data between service and user is described by a sequence of query/ response interactions, or forms. Mawl is a domain-specific language for programming form-based services in a device-independent manner. We focus on Mawl's form abstraction, which is the means for separating service logic from user interface description, and show how this simple a...
متن کاملMawl : a Domain - speci c Language for Form - based Services
A form-based service is one in which the ow of data between service and user is described by a sequence of query/response interactions, or forms. Mawl is a domain-speci c language for programming form-based services in a device-independent manner. We focus on Mawl's form abstraction, which is the means for separating service logic from user interface description, and show how this simple abstra...
متن کاملExperience with a Domain Specific Language for Form-based Services
A form-based service is one in which the ow of data between service and user is described by a sequence of query/response interactions, or forms. A form provides a user interface that presents service data to the user, collects information from a user and returns it to the service. Mawl is a domain-speci c language for programming form-based services in a device-independent manner. We describe ...
متن کاملExperience with a Domain Speci c Language for Form - based Services
A form-based service is one in which the ow of data between service and user is described by a sequence of query/response interactions, or forms. A form provides a user interface that presents service data to the user, collects information from a user and returns it to the service. Mawl is a domain-speci c language for programming form-based services in a device-independent manner. We describe ...
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In recent years, Deep Learning (DL) has found great success in domains such as multimedia understanding. However, the complex nature of multimedia data makes it difficult to develop DL-based software. The state-of-the-art tools, such as Caffe, TensorFlow, Torch7, and CNTK, while are successful in their applicable domains, are programming libraries with fixed user interface, internal representat...
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ژورنال
عنوان ژورنال: IEEE Transactions on Software Engineering
سال: 1999
ISSN: 0098-5589
DOI: 10.1109/32.798323