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Bug fixes in the preprocessor / relu constraints #72

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merged 44 commits into from
Jul 15, 2018
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representation, needed for sparse factorization.
still WIP
@guykatzz guykatzz merged commit d19aa18 into master Jul 15, 2018
matanost pushed a commit that referenced this pull request Nov 2, 2021
* initial work on sparse matrix representation

* store/restore functionality

* addLastRow functionality

* getRow and getColumn

* column-merging functionality

* added an interface class

* introducing also sparse vectors

* added addLastColumn functionality

* another unittest

* get sparse columns/matrices in dense form

* WIP on storing the constraint matrix inside the tableau in sparse form

* more WIP, fixed a few bugs, still have a couple of failing tests

* fixed some test issues

* initialization

* resize _a along with the rest

* sparse lu factors

* store also the transposed versions of F and V

* starting work on the sparse GE

* some work on changing the values within an existing sparse
representation, needed for sparse factorization.
still WIP

* refactoring and new functionality for CSRMatrix: any kind of
insertions and deletions

* support for empty initialization and counting elements

* sparse GE is now working. minor bug fixes elsewhere

* compute Ft and Vt as part of the G-elimination process

* tests

* basis oracles can return also sparse columns, not just dense

* sparse LU factorization class

* switch to using the sparse factorization in the engine/tableau

* bug fix in mergeColumns, and nicer printing

* bug fix

* bug fix

* bug fix: merging columns does not delete the actual column, just
leaves it empty

* configuration changes

* optimization: since the sparse columns of A are needed all the time,
just compute them once-and-for-all

* a more efficient implementation of sparse vectors

* comments and unit tests

* cleanup

* keep _A in dense column-major format, too, instead of repeatedly
invoking toDense() to gets its columns

* bad deletes

* bug fix in test

* bug fixes: relu constraint propagation, and the handling of merged
variables in the preprocessor

* new test
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