Büskens, ChristofWassel, DennisDennisWassel2020-03-092020-03-092013-04-25https://media.suub.uni-bremen.de/handle/elib/507Mathematical Optimization in general and Nonlinear Programming in particular, are applied by many scientific disciplines, such as the automotive sector, the aerospace industry, or the space agencies. With some established NLP solvers having been available for decades, and with the mathematical community being rather conservative in this respect, many of their programming standards are severely outdated. It is safe to assume that such usability shortcomings impede the wider use of NLP methods; a representative example is the use of static workspaces by legacy FORTRAN codes. This dissertation gives an account of the construction of the European NLP solver WORHP by using and combining software standards and techniques that have not previously been applied to mathematical software to this extent. Examples include automatic code generation, a consistent reverse communication architecture and the elimination of static workspaces. The result is a novel, industrial-grade NLP solver that overcomes many technical weaknesses of established NLP solvers and other mathematical software.eninfo:eu-repo/semantics/openAccessNLPmathematical optimizationnumerical optimizationmathematical softwaresoftware engineering510Exploring novel designs of NLP solvers: Architecture and Implementation of WORHPNeuartige Design-Ansätze für NLP-Solver: Architektur und Implementierung von WORHPDissertationurn:nbn:de:gbv:46-00103260-11