English

ATC: an Advanced Tucker Compression library for multidimensional data

Mathematical Software 2024-07-02 v4

Abstract

We present ATC, a C++ library for advanced Tucker-based lossy compression of dense multidimensional numerical data in a shared-memory parallel setting, based on the sequentially truncated higher-order singular value decomposition (ST-HOSVD) and bit plane truncation. Several techniques are proposed to improve speed, memory usage, error control and compression rate. First, a hybrid truncation scheme is described which combines Tucker rank truncation and TTHRESH quantization [Ballester-Ripoll et al., IEEE Trans. Visual. Comput. Graph., 2020]. We derive a novel expression to approximate the error of truncated Tucker decompositions in the case of core and factor perturbations. Furthermore, we parallelize the quantization and encoding scheme and adjust this phase to improve error control. Moreover, implementation aspects are described, such as an ST-HOSVD procedure using only a single transposition. We also discuss several usability features of ATC, including the presence of multiple interfaces, extensive data type support and integrated downsampling of the decompressed data. Numerical results show that ATC maintains state-of-the-art Tucker compression rates, while providing average speed-up factors of 2.2-3.5 and halving memory usage. Furthermore, our compressor provides precise error control, only deviating 1.4% from the requested error on average. Finally, ATC often achieves higher compression than non-Tucker-based compressors in the high-error domain.

Keywords

Cite

@article{arxiv.2107.01384,
  title  = {ATC: an Advanced Tucker Compression library for multidimensional data},
  author = {Wouter Baert and Nick Vannieuwenhoven},
  journal= {arXiv preprint arXiv:2107.01384},
  year   = {2024}
}

Comments

The ATC software is publicly available at the following repository: https://gitlab.kuleuven.be/numa/software/atc

R2 v1 2026-06-24T03:51:45.941Z