Close

Presentation

This content is available for: Tech Program Reg Pass, Exhibits Reg Pass. Upgrade Registration
ROI Preservation in Streaming Lossy Compression
DescriptionToday’s state-of-the-art scientific high-performance computing (HPC) applications generate extensive data in diverse domains, placing a significant strain on data transfer and storage systems. Most compression algorithms are more computationally complex, requiring more processing power and time to compress and decompress data. However, these algorithms tend to achieve higher compression ratios resulting in smaller compressed data sizes. Real-time streaming applications demand high data throughput. Therefore, striking a right balance between compression efficiency and computational complexity is essential. This poster explores two key aspects: interpolation method of 'sz3' algorithm for data reconstruction and the application of 'szx' algorithm on a 'Region of Interest(ROI)' - where a lesser data distortion is needed. We perform a through evaluation using NYX scientific dataset. Experiments show that compression ratio is improved by ~2x. Compression and decompression rates are improved by ~5-7x when contiguous ROI is preserved and only certain recursive levels of sx3 are processed.
Event Type
ACM Student Research Competition: Graduate Poster
ACM Student Research Competition: Undergraduate Poster
Posters
TimeTuesday, 14 November 202310am - 5pm MST
Registration Categories
TP
XO/EX