Constructing high-quality neural network ensembles for pattern classification and prediction.
Current system supports solving problems of sizes (expandable):
For neural network learning tasks: product of input and output dimensions up to 5,000, sample size up to 2,000.
For optimization problems: the number of variables up to 10,000, the number of Jacobian nonzero elements up to 200,000, Hessian nonzero elements up to 1,000,000.
A comprehensive set of interface methods is available for convenient connections to GOT services:
Web user interface for task and account management;
Standalone client program for more responsive interaction;
Service API for C/C++, JAVA, MATLAB, Python programs;
Connection to cloud compute services (e.g. Amazon E2C) for unlimited, on-demand system scalability.
Comprehensive model support:
Supports problem types: unconstrained and constrained, linear and nonlinear, continuous, mixed-integer and combinatorial optimization problems.
Supports a comprehensive set of solvers (MINPACK, IPOPT, all GAMS solvers) with automatic and intelligent solver selection for the submission.
Supports problem submissions formatted in GOT, GAMS, AMPL, ZIMPL model specifications.