TRACE: A Fast Transformer-based General-Purpose Lossless Compressor
Yu Mao, Yufei Cui, Tei‐Wei Kuo, Chun Jason Xue
Abstract
Deep-learning-based compressor has received interests recently due to much improved compression ratio. However, modern approaches suffer from long execution time. To ease this problem, this paper targets on cutting down the execution time of deep-learning-based compressors. Building history-dependencies sequentially (e.g., recurrent neural networks) is responsible for long inference latency. Instead, we introduce transformer into deep learning compressors to build history-dependencies in parallel. However, existing transformer is too heavy in computation and incompatible to compression tasks.
Topics & Concepts
TransformerComputer scienceDeep learningLossless compressionInferenceGas compressorComputationArtificial intelligenceMachine learningData compressionAlgorithmEngineeringElectrical engineeringMechanical engineeringVoltageAlgorithms and Data CompressionParallel Computing and Optimization TechniquesAdvanced Data Storage Technologies