Official Release for RandBLAS 1.0 #116
rileyjmurray
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Today marks RandBLAS' second-ever release, its first stable release, and its first release featuring the contributions of someone who showed up entirely out of the blue (shoutout to Rylie Weaver)!
New features for core functionality
The semantics of
SparseDist::major_axis
have changed in RandBLAS 1.0. As a result of this change, SparseSkOps can represent LESS-Uniform operators and operators for plain row or column sampling with replacement. (This is in addition to hashing-style operators like CountSketch, which we've supported since version 0.2.)We have four new functions for sampling from index sets.
weights_to_cdf
sample_indices_iid
sample_indices_iid_uniform
repeated_fisher_yates
We have two new functions for getting low-level data for a sketching operator's explicit representation:
fill_dense_unpacked
andfill_sparse_unpacked_nosub
. These are useful if you want to incorporate RandBLAS' sketching functionality into other frameworks, like Kokkos, cuBLAS, or MKL.Finally, there's
sketch_symmetric
, overloaded for sketching from the left or right.Quality-of-life improvements
Error
is now in the public API.print_buff_to_stream
is for writing MATLAB-style or NumPy-style string representations of matrices to a provided stream, like std::cout.Significantly revised APIs for sketching distributions and operators
SketchingDistribution
andSketchingOperator
C++20 concepts.DenseDist::isometry_scale
andSparseDist::isometry_scale
, whose meanings are explained in the SketchingDistribution docs.DenseSkOp::next_state
andSparseSkOp::next_state
are computed at construction time, without actually performing any random sampling. This means that one can define a sequence of independent sketching without changing an RNGState's "key" and without realizing any of them explicitly.Statistical tests
Contributors
I'd like to start by acknowledging the contributions of Parth Nobel (@PTNobel) to RandBLAS' development. Parth and I have worked on-and-off on several projects involving RandNLA algorithms. None of these projects has been published yet, but they've had a significant role in uncovering bugs and setting development priorities for RandBLAS. (As a recent example in the latter category, I probably wouldn't have added the "sample_indices_iid" function were it not for its relevance to one of our projects.) This led me to be quite surprised when I noticed that Parth technically hasn't made a commit to the RandBLAS repository! Let this statement set the record straight: Parth has made very real contributions to RandBLAS, even if the commit history doesn't currently reflect that.
Rylie Weaver (@RylieWeaver), the aforementiƒoned out-of-the-blue contributor, helped write our Kolmogorov–Smirnov tests for repeated Fisher–Yates.
I wrote a lot of code (as one might imagine).
Funding acknowledgements
This work was wholly supported by LDRD funding from Sandia National Laboratories.
Sandia National Laboratories is a multi-mission laboratory managed and operated by National Technology and Engineering Solutions of Sandia, LLC., a wholly owned subsidiary of Honeywell International, Inc., for the U.S. Department of Energy’s National Nuclear Security Administration under contract DE-NA-0003525.
This discussion was created from the release Official Release for RandBLAS 1.0.
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