Source: stopt Maintainer: Debian Math Team Uploaders: Pierre Gruet , Xavier Warin Section: math Priority: optional Build-Depends: debhelper-compat (= 13), dh-python, Build-Depends-Arch: cmake, coinor-libcoinutils-dev, coinor-libosi-dev, coinor-libclp-dev, libboost-chrono-dev, libboost-log-dev, libboost-mpi-dev, libboost-random-dev, libboost-serialization-dev, libboost-system-dev, libboost-test-dev, libboost-thread-dev, libboost-timer-dev, libeigen3-dev, libopenmpi-dev, libgeners-dev, pybind11-dev, python3-dev, python3-docutils, python3-numpy Build-Depends-Indep: texlive-fonts-extra , texlive-latex-recommended , texlive-plain-generic , texlive-pstricks , texlive-science Standards-Version: 4.6.2 Vcs-Browser: https://salsa.debian.org/math-team/stopt Vcs-Git: https://salsa.debian.org/math-team/stopt.git Homepage: https://gitlab.com/stochastic-control/StOpt/ Rules-Requires-Root: no Package: libstopt5 Architecture: any Section: libs Depends: ${shlibs:Depends}, ${misc:Depends} Suggests: stopt-doc (= ${binary:Version}) Description: library for stochastic optimization problems (shared library) The STochastic OPTimization library (StOpt) aims at providing tools in C++ for solving some stochastic optimization problems encountered in finance or in the industry. Different methods are available: - dynamic programming methods based on Monte Carlo with regressions (global, local, kernel and sparse regressors), for underlying states following some uncontrolled Stochastic Differential Equations; - dynamic programming with a representation of uncertainties with a tree: transition problems are here solved by some discretizations of the commands, resolution of LP with cut representation of the Bellman values; - Semi-Lagrangian methods for Hamilton Jacobi Bellman general equations for underlying states following some controlled Stochastic Differential Equations; - Stochastic Dual Dynamic Programming methods to deal with stochastic stock management problems in high dimension. Uncertainties can be given by Monte Carlo and can be represented by a state with a finite number of values (tree); - Some branching nesting methods to solve very high dimensional non linear PDEs and some appearing in HJB problems. Besides some methods are provided to solve by Monte Carlo some problems where the underlying stochastic state is controlled. For each method, a framework is provided to optimize the problem and then simulate it out of the sample using the optimal commands previously computed. Parallelization methods based on OpenMP and MPI are provided in this framework permitting to solve high dimensional problems on clusters. The library should be flexible enough to be used at different levels depending on the user's willingness. . This package contains the shared libraries: one which allows for multithreading (libstopt-mpi) and one which does not (libstopt). Package: libstopt-dev Architecture: any Section: libdevel Depends: libstopt5 (= ${binary:Version}), coinor-libcoinutils-dev, coinor-libosi-dev, coinor-libclp-dev, libboost-chrono-dev, libboost-log-dev, libboost-mpi-dev, libboost-random-dev, libboost-serialization-dev, libboost-system-dev, libboost-test-dev, libboost-thread-dev, libboost-timer-dev, libeigen3-dev, libgeners-dev, libopenmpi-dev, ${misc:Depends} Suggests: stopt-doc (= ${binary:Version}) Description: library for stochastic optimization problems (development package) The STochastic OPTimization library (StOpt) aims at providing tools in C++ for solving some stochastic optimization problems encountered in finance or in the industry. Different methods are available: - dynamic programming methods based on Monte Carlo with regressions (global, local, kernel and sparse regressors), for underlying states following some uncontrolled Stochastic Differential Equations; - dynamic programming with a representation of uncertainties with a tree: transition problems are here solved by some discretizations of the commands, resolution of LP with cut representation of the Bellman values; - Semi-Lagrangian methods for Hamilton Jacobi Bellman general equations for underlying states following some controlled Stochastic Differential Equations; - Stochastic Dual Dynamic Programming methods to deal with stochastic stock management problems in high dimension. Uncertainties can be given by Monte Carlo and can be represented by a state with a finite number of values (tree); - Some branching nesting methods to solve very high dimensional non linear PDEs and some appearing in HJB problems. Besides some methods are provided to solve by Monte Carlo some problems where the underlying stochastic state is controlled. For each method, a framework is provided to optimize the problem and then simulate it out of the sample using the optimal commands previously computed. Parallelization methods based on OpenMP and MPI are provided in this framework permitting to solve high dimensional problems on clusters. The library should be flexible enough to be used at different levels depending on the user's willingness. . This package contains the headers and the static libraries (libstopt-mpi which allows for multithreading, and libstopt which does not). Package: stopt-examples Architecture: all Depends: ${misc:Depends} Suggests: g++, libstopt-dev, python3-numpy, python3-stopt Enhances: libstopt-dev, python3-stopt Multi-Arch: foreign Description: library for stochastic optimization problems (programs examples) This package provides some programs written to solve mathematical problems using the StOpt library. The source code is provided, examples are available in C++ and in Python. C++ source code has to be built against the libstopt-dev package if one wants to run it. Package: python3-stopt Architecture: any Section: python Depends: ${python3:Depends}, ${shlibs:Depends}, ${misc:Depends} Provides: ${python3:Provides} Description: library for stochastic optimization problems (Python 3 bindings) The STochastic OPTimization library (StOpt) aims at providing tools in C++ for solving some stochastic optimization problems encountered in finance or in the industry. Python 3 bindings are provided by this package in order to allow one to use the C++ library in a Python code. Package: stopt-doc Architecture: all Section: doc Depends: ${misc:Depends} Suggests: libstopt5 (= ${binary:Version}), libstopt-dev (= ${binary:Version}), stopt-examples (= ${binary:Version}), python3-stopt (= ${binary:Version}) Multi-Arch: foreign Description: library for stochastic optimization problems (documentation) The STochastic OPTimization library (StOpt) aims at providing tools in C++ for solving some stochastic optimization problems encountered in finance or in the industry. Python 3 bindings are also provided in order to allow one to use the C++ library in a Python code. . This package contains the documentation about the type of problems that can be solved, the mathematical framework, its implementation, and the examples.