|
Showing 1 - 2 of
2 matches in All Departments
Scientific applications involve very large computations that strain
the resources of whatever computers are available. Such
computations implement sophisticated mathematics, require deep
scientific knowledge, depend on subtle interplay of different
approximations, and may be subject to instabilities and sensitivity
to external input. Software able to succeed in this domain
invariably embeds significant domain knowledge that should be
tapped for future use. Unfortunately, most existing scientific
software is designed in an ad hoc way, resulting in monolithic
codes understood by only a few developers. Software architecture
refers to the way software is structured to promote objectives such
as reusability, maintainability, extensibility, and feasibility of
independent implementation. Such issues have become increasingly
important in the scientific domain, as software gets larger and
more complex, constructed by teams of people, and evolved over
decades. In the context of scientific computation, the challenge
facing mathematical software practitioners is to design, develop,
and supply computational components which deliver these objectives
when embedded in end-user application codes. The Architecture of
Scientific Software addresses emerging methodologies and tools for
the rational design of scientific software, including component
integration frameworks, network-based computing, formal methods of
abstraction, application programmer interface design, and the role
of object-oriented languages. This book comprises the proceedings
of the International Federation for Information Processing (IFIP)
Conference on the Architecture of Scientific Software, which was
held in Ottawa, Canada, in October 2000. It will prove invaluable
reading for developers of scientific software, as well as for
researchers in computational sciences and engineering.
Scientific applications involve very large computations that strain
the resources of whatever computers are available. Such
computations implement sophisticated mathematics, require deep
scientific knowledge, depend on subtle interplay of different
approximations, and may be subject to instabilities and sensitivity
to external input. Software able to succeed in this domain
invariably embeds significant domain knowledge that should be
tapped for future use. Unfortunately, most existing scientific
software is designed in an ad hoc way, resulting in monolithic
codes understood by only a few developers. Software architecture
refers to the way software is structured to promote objectives such
as reusability, maintainability, extensibility, and feasibility of
independent implementation. Such issues have become increasingly
important in the scientific domain, as software gets larger and
more complex, constructed by teams of people, and evolved over
decades. In the context of scientific computation, the challenge
facing mathematical software practitioners is to design, develop,
and supply computational components which deliver these objectives
when embedded in end-user application codes. The Architecture of
Scientific Software addresses emerging methodologies and tools for
the rational design of scientific software, including component
integration frameworks, network-based computing, formal methods of
abstraction, application programmer interface design, and the role
of object-oriented languages. This book comprises the proceedings
of the International Federation for Information Processing (IFIP)
Conference on the Architecture of Scientific Software, which was
held in Ottawa, Canada, in October 2000. It will prove invaluable
reading for developers of scientific software, as well as for
researchers in computational sciences and engineering.
|
You may like...
Cold Pursuit
Liam Neeson, Laura Dern
Blu-ray disc
R39
Discovery Miles 390
|