convexjlr 0.8.0.9000
- Updates for
Julia v0.7 and v1.0.
- Drop
XRJulia support, as it does not work with Julia v0.7 and v1.0.
convexjlr 0.7.1.9000
- Default
SCS solver doesn’t have verbose = FALSE default option any more.
- Users can choose
ECOS as the solver for convex problems.
- Users can set a bunch of options for both
SCS and ECOS solvers.
convexjlr 0.7.0.9000
- The users can set maximal iteration times for the convex problem solver in
cvx_optim.
- Bug correction for handling of
diag.
convexjlr 0.7.0
- Remove deprecated
setup function.
- Use
JuliaCall as the default backend.
convexjlr 0.6.1.9000
- Fix deprecation warnings from
JuliaCall backend.
- Fix some little bugs.
- Add the option in
convex_setup to set the path to julia binary.
convexjlr 0.6.1
- The second release on CRAN.
convexjlr 0.6.0.9000
- Supports multiple ways to connect to
julia, one way is through package XRJulia, and the other way is to use package JuliaCall. The difference is as follows:
XRJulia connects to julia, which is the default for convexjlr, the advantage is the simplicity of the installation process, once you have a working R and working julia, it should be okay to use convexjlr in this way. Note that if you have the latest Julia version (v0.6.0) installed, then you have to use the latest version of XRJulia.
JuliaCall embeds julia in R, the advantage is the performance, for example, if your convex problem involves large matrice or long vectors, you may wish to use JuliaCall backend for convexjlr; the disadvantage is the installation process, since embedding julia needs compilations.
convexjlr 0.5.1.9000
- Added a
NEWS.md file to track changes to the package.
- Re-organize tests.
- Deprecate
setup, should use convex_setup.
convexjlr 0.5.1
convexjlr 0.5.0
- The first release on CRAN.