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Sparsity Controllable Hyperdimensional Computing for Genome Sequence Matching Acceleration

Title
Sparsity Controllable Hyperdimensional Computing for Genome Sequence Matching Acceleration
Author(s)
Chen, HanningKim, YeseongSadredini, ElahehGupta, SaranshLatapie, HugoImani, Mohsen
Issued Date
2023-10-16
Citation
IFIP/IEEE International Conference on Very Large Scale Integration, VLSI-SoC 2023, pp.44 - 49
Type
Conference Paper
ISBN
9798350325997
ISSN
2324-8432
Abstract
In this paper, we propose a Hyper-Dimensional genome analysis platform. Instead of working with original sequences, our method maps the genome sequences into high-dimensional space and performs sequence matching with simple and parallel similarity searches. At the algorithm level, we revisit the sequence searching with brain-like memorization that Hyper-Dimensional computing natively supports. Instead of working on the original data, we map all data points into high-dimensional space, enabling the main sequence searching operations to process in a hardware-friendly way. We accordingly design a density-aware FPGA implementation. Our solution searches the similarity of an encoded query and large-scale genome library through different chunks. We exploit the holographic representation of patterns to stop search operations on libraries with a lower chance of a match. This translates our computation from dense to highly sparse just after a few chuck-based searches. Our evaluation shows that our accelerator can provide 46× speedup and 188× energy efficiency improvement compared to a state-of-the-art GPU implementation. Results show that our accelerator achieves up to 3440.6 GCUPS using a single Xilinx Alveo U280 board. © 2023 IEEE.
URI
http://hdl.handle.net/20.500.11750/47907
DOI
10.1109/VLSI-SoC57769.2023.10321874
Publisher
International Federation for Information Processing Technical Committee
Related Researcher
  • 김예성 Kim, Yeseong
  • Research Interests Embedded Systems for Edge Intelligence; Brain-Inspired HD Computing for AI; In-Memory Computing
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Appears in Collections:
Department of Electrical Engineering and Computer Science Computation Efficient Learning Lab. 2. Conference Papers

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