Comments (1)
Thanks for the comments. Sure, the paper discusses a number of features unique to the LINFA library (specifically, an adaptive surrogate model and the adaptive selection of annealing increments) and the appendix contains a detailed description of a number of tests cases. To make sure these results are reproducible, we have included all tests cases in this GitHub repository. It is possible to run these cases simply following the instructions reported either in the "readme.md" file or in the "Numerical Benchmark" section of the paper. Hope this answers your questions, otherwise please let us know for any further questions you may have. Thanks Again.
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Related Issues (15)
- update call to torch.meshgrid HOT 1
- create easy calls for scripts to run test cases and post-process results HOT 1
- finalize tutorial
- table and figure links in sphinx documentation HOT 1
- run test cases from command line HOT 1
- linfa.models is not included in built packages HOT 2
- Missing DOI in the paper HOT 6
- .idea folder HOT 1
- Contributing guide HOT 1
- comparison with other software packages HOT 4
- Running examples from the test suite HOT 2
- Plotting outputs with linfa.plot_res HOT 1
- Examples in the online documentation HOT 4
- CI test coverage ? HOT 1
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