Группа :: Разработка/Python
Пакет: python-module-BlockCanvas
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Текущая версия: 3.1.1-alt1.svn20090901
Время сборки: 6 октября 2009, 14:28 ( 761.1 недели назад )
Размер архива: 1029.52 Kb
Домашняя страница: http://pypi.python.org/pypi/BlockCanvas
Лицензия: BSD and GPLv2
О пакете: Enthought Numerical Modeling
Описание:
Список всех майнтейнеров, принимавших участие
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Время сборки: 6 октября 2009, 14:28 ( 761.1 недели назад )
Размер архива: 1029.52 Kb
Домашняя страница: http://pypi.python.org/pypi/BlockCanvas
Лицензия: BSD and GPLv2
О пакете: Enthought Numerical Modeling
Описание:
The BlockCanvas project provides a visual environment for creating simulation
experiments, where function and data are separated. Thus, you can define your
simulation algorithm by visually connecting function blocks into a data flow
network, and then run it with various data sets (known as "contexts");
likewise, you can use the same context in a different functional simulation.
The project provides support for plotting, function searching and inspection,
and optimization. It includes a stand-alone application that demonstrates the
block-canvas environment, but the same functionality can be incorporated into
other applications.
The BlockCanvas project relies on included libraries that allow multiple data
sets using Numeric arrays to be incorporated in a Traits-based model in a way
that is simple, fast, efficient, and consistent.
Текущий майнтейнер: Eugeny A. Rostovtsev (REAL) experiments, where function and data are separated. Thus, you can define your
simulation algorithm by visually connecting function blocks into a data flow
network, and then run it with various data sets (known as "contexts");
likewise, you can use the same context in a different functional simulation.
The project provides support for plotting, function searching and inspection,
and optimization. It includes a stand-alone application that demonstrates the
block-canvas environment, but the same functionality can be incorporated into
other applications.
The BlockCanvas project relies on included libraries that allow multiple data
sets using Numeric arrays to be incorporated in a Traits-based model in a way
that is simple, fast, efficient, and consistent.
Список всех майнтейнеров, принимавших участие
в данной и/или предыдущих сборках пакета: Список rpm-пакетов, предоставляемый данным srpm-пакетом:
- python-module-BlockCanvas