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December 5, 20256 min readA multiagent architecture separates data perception, tool knowledge, execution history, and code generation, enabling ML automation that works with messy, real-world inputs.
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November 20, 20254 min read
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October 20, 20254 min read
Featured news
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IEEE - The Bulletin of the Technical Committee on Data Engineering2021The customer experience of online shopping is largely contingent on the accuracy of product classification. Considering the amount of products and all the possible categories, it is desirable to construct a framework to auto-assign products into correct categories at scale. Machine learning based systems often suffer from poor data quality, such as incomplete item descriptions, adversarial noise in the
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IEEE APS/URSI 20212021This paper proposes a simulation methodology to optimize MIMO antenna designs for the system performance parameters. The proposed design flow provides a co-simulation bench to evaluate MIMO antenna designs with system-level criteria. In one example, two MIMO antenna designs are considered, where both of them meet conventional antenna design parameters. The proposed methodology identifies the antenna design
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ICPP 20212021Low-precision computation, which has been widely supported in contemporary hardware, is considered as one of the most effective methods to accelerate convolutional neural networks. However, low-precision computation is not widely used to speed up Winograd, an algorithm for fast convolution computation, due to the numerical error introduced by combining Winograd transformation and quantization. In this paper
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Speech Synthesis Workshop2021Artificial speech synthesis has made a great leap in terms of naturalness as recent Text-to-Speech (TTS) systems are capable of producing speech with similar quality to human recordings. However, not all speaking styles are easy to model: highly expressive voices are still challenging even to recent TTS architectures since there seems to be a trade-off between expressiveness in a generated audio and its
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KDD 2021 Workshop on Data-Efficient Machine Learning2021In a large-scale Spoken Language Understanding system, Natural Language Understanding (NLU) models are typically decoupled, i.e, trained and updated independently, from the upstream Automatic Speech Recognition (ASR) system that provides textual hypotheses for the user’s voice signal as input to NLU. Such ASR hypotheses often contain errors causing severe performance degradation as the downstream NLU models
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