LightNobel: Improving Sequence Length Limitation in Protein Structure Prediction Model via Adaptive Activation Quantization
Seunghee Han, Soongyu Choi, Joo-Young Kim

TL;DR
LightNobel introduces a hardware-software co-designed accelerator with adaptive activation quantization to significantly enhance the scalability of protein structure prediction models for long sequences, achieving substantial speed, efficiency, and memory improvements.
Contribution
The paper presents a novel co-designed accelerator and a token-wise adaptive quantization method that together overcome sequence length limitations in protein structure prediction models.
Findings
Achieves up to 8.44x speedup over NVIDIA A100
Reduces peak memory by up to 120.05x
Maintains negligible accuracy loss
Abstract
Recent advances in Protein Structure Prediction Models (PPMs), such as AlphaFold2 and ESMFold, have revolutionized computational biology by achieving unprecedented accuracy in predicting three-dimensional protein folding structures. However, these models face significant scalability challenges, particularly when processing proteins with long amino acid sequences (e.g., sequence length > 1,000). The primary bottleneck that arises from the exponential growth in activation sizes is driven by the unique data structure in PPM, which introduces an additional dimension that leads to substantial memory and computational demands. These limitations have hindered the effective scaling of PPM for real-world applications, such as analyzing large proteins or complex multimers with critical biological and pharmaceutical relevance. In this paper, we present LightNobel, the first hardware-software…
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