A Diagonal Structured State Space Model on Loihi 2 for Efficient Streaming Sequence Processing
Deep State-Space Models (SSM) demonstrate state-of-the art performance on long-range sequence modeling tasks. While the recurrent structure of SSMs can be efficiently implemented as a convolution or as a parallel scan during training, recurrent token-by-token processing cannot currently be implement...
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Zusammenfassung: | Deep State-Space Models (SSM) demonstrate state-of-the art performance on
long-range sequence modeling tasks. While the recurrent structure of SSMs can
be efficiently implemented as a convolution or as a parallel scan during
training, recurrent token-by-token processing cannot currently be implemented
efficiently on GPUs. Here, we demonstrate efficient token-by-token inference of
the SSM S4D on Intel's Loihi 2 state-of-the-art neuromorphic processor. We
compare this first ever neuromorphic-hardware implementation of an SSM on
sMNIST, psMNIST, and sCIFAR to a recurrent and a convolutional implementation
of S4D on Jetson Orin Nano (Jetson). While we find Jetson to perform better in
an offline sample-by-sample based batched processing mode, Loihi 2 outperforms
during token-by-token based processing, where it consumes 1000 times less
energy with a 75 times lower latency and a 75 times higher throughput compared
to the recurrent implementation of S4D on Jetson. This opens up new avenues
towards efficient real-time streaming applications of SSMs. |
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DOI: | 10.48550/arxiv.2409.15022 |