DFX: A Low-latency Multi-FPGA Appliance for Accelerating Transformer-based Text Generation

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Transformer is a deep learning language model widely used for natural language processing (NLP) services in datacenters. Among transformer models, Generative Pretrained Transformer (GPT) has achieved remarkable performance in text generation, or natural language generation (NLG), which needs the processing of a large input context in the summarization stage, followed by the generation stage that produces a single word at a time. The conventional platforms such as GPU are specialized for the parallel processing of large inputs in the summarization stage, but their performance significantly degrades in the generation stage due to its sequential characteristic. Therefore, an efficient hardware platform is required to address the high latency caused by the sequential characteristic of text generation. In this paper, we present DFX, a multi-FPGA acceleration appliance that executes GPT-2 model inference end-to-end with low latency and high throughput in both summarization and generation stages. DFX uses model parallelism and optimized dataflow that is model-and-hardware-aware for fast simultaneous workload execution among devices. Its compute cores operate on custom instructions and provide GPT-2 operations end-to-end. We implement the proposed hardware architecture on four Xilinx Alveo U280 FPGAs and utilize all of the channels of the high bandwidth memory (HBM) and the maximum number of compute resources for high hardware efficiency. DFX achieves 5.58 × speedup and 3.99 × energy efficiency over four NVIDIA V100 GPUs on the modern GPT-2 model. DFX is also 8.21 × more cost-effective than the GPU appliance, suggesting that it is a promising solution for text generation workloads in cloud datacenters.
Publisher
IEEE Computer Society
Issue Date
2022-10-03
Language
English
Citation

55th Annual IEEE/ACM International Symposium on Microarchitecture, MICRO 2022, pp.616 - 630

DOI
10.1109/MICRO56248.2022.00051
URI
http://hdl.handle.net/10203/301244
Appears in Collection
EE-Conference Papers(학술회의논문)
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