Eirinaios Michelakis, Rajasekar Krishnamurthy, et al.
SIGMOD/PODS 2009
Large-scale Machine Learning (ML) algorithms are often iterative, using repeated read-only data access and I/O-bound matrix-vector multiplications. Hence, it is crucial for performance to fit the data into single-node or distributed main memory to enable fast matrix-vector operations. General-purpose compression struggles to achieve both good compression ratios and fast decompression for block-wise uncompressed operations. Therefore, we introduce Compressed Linear Algebra (CLA) for lossless matrix compression. CLA encodes matrices with lightweight, value-based compression techniques and executes linear algebra operations directly on the compressed representations. We contribute effective column compression schemes, cache-conscious operations, and an efficient sampling-based compression algorithm. Our experiments show good compression ratios and operations performance close to the uncompressed case, which enables fitting larger datasets into available memory. We thereby obtain significant end-to-end performance improvements.
Eirinaios Michelakis, Rajasekar Krishnamurthy, et al.
SIGMOD/PODS 2009
Peter J. Haas
WSC 2014
Peter D. Kirchner, Matthias Boehm, et al.
IPDPSW 2014
Wenlei Xie, Yuanyuan Tian, et al.
ICDE 2015