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The Ethereal
DYAD: A Descriptive Yet Abjuring Density efficient approximation to linear neural network layers
December 11, 2023 ยท Entered Twilight ยท ๐ arXiv.org
Repo contents: README.md, sparse_babylm_pretraining, sparse_transformers, structbabySparse
Authors
Sarin Chandy, Varun Gangal, Yi Yang, Gabriel Maggiotti
arXiv ID
2312.06881
Category
cs.LG: Machine Learning
Cross-listed
cs.CL
Citations
1
Venue
arXiv.org
Repository
https://github.com/asappresearch/dyad
โญ 2
Last Checked
3 months ago
Abstract
We devise, implement and performance-asses DYAD, a layer which can serve as a faster and more memory-efficient approximate replacement for linear layers, (nn.Linear() in Pytorch). These layers appear in common subcomponents, such as in the ff module of Transformers. DYAD is based on a bespoke near-sparse matrix structure which approximates the dense "weight" matrix W that matrix-multiplies the input in the typical realization of such a layer, a.k.a DENSE. Our alternative near-sparse matrix structure is decomposable to a sum of 2 matrices permutable to a block-sparse counterpart. These can be represented as 3D tensors, which in unison allow a faster execution of matrix multiplication with the mini-batched input matrix X compared to DENSE (O(rows(W ) x cols(W )) --> O( rows(W ) x cols(W ) # of blocks )). As the crux of our experiments, we pretrain both DYAD and DENSE variants of 2 sizes of the OPT arch and 1 size of the Pythia arch, including at different token scales of the babyLM benchmark. We find DYAD to be competitive (>= 90%) of DENSE performance on zero-shot (e.g. BLIMP), few-shot (OPENLM) and finetuning (GLUE) benchmarks, while being >=7-15% faster to train on-GPU even at 125m scale, besides surfacing larger speedups at increasing scale and model width.
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