长期负载请求继续限制高性能处理器的性能。为了提高处理器的潜伏能力,建筑师主要依赖两种关键技术:复杂的数据预脱水和较大的芯片固定缓存。在这项工作中,我们表明:1)即使是先进的先进预摘要,也只能预测一半的外芯片负载请求,平均在广泛的工作负载中,而2)由于尺寸的增加,并且片上缓存的复杂性,花片载荷请求的延迟的很大一部分用于访问片上缓存层次结构。这项工作的目的是通过从其关键路径上删除片上缓存访问延迟来加速片外负载请求。为此,我们提出了一种称为爱马仕(Hermes)的新技术,其关键想法是:1)准确预测哪些负载请求可能会偏离芯片,2)猜测预测的芯片外载荷直接从主芯片负载所需的数据内存,同时也同时访问此类负载的高速缓存层次结构。为了启用爱马仕,我们开发了一种新的轻巧,基于智障的外芯片加载预测技术,该技术学会使用多个程序功能(例如,程序计数器的序列)来识别芯片外负载请求。对于每个负载请求,预测器都会观察一组程序功能,以预测负载是否会外芯片。如果预计负载将放置芯片,Hermes一旦生成负载的物理地址,就会直接向内存控制器发出投机请求。如果预测是正确的,则负载最终会错过缓存层次结构,并等待正在进行的投机请求完成,从而将芯片上缓存层次结构访问延迟隐藏在离芯片外负载的关键路径中。我们的评估表明,爱马仕显着提高了最先进的基线的性能。我们开源爱马仕。
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The devastation caused by the coronavirus pandemic makes it imperative to design automated techniques for a fast and accurate detection. We propose a novel non-invasive tool, using deep learning and imaging, for delineating COVID-19 infection in lungs. The Ensembling Attention-based Multi-scaled Convolution network (EAMC), employing Leave-One-Patient-Out (LOPO) training, exhibits high sensitivity and precision in outlining infected regions along with assessment of severity. The Attention module combines contextual with local information, at multiple scales, for accurate segmentation. Ensemble learning integrates heterogeneity of decision through different base classifiers. The superiority of EAMC, even with severe class imbalance, is established through comparison with existing state-of-the-art learning models over four publicly-available COVID-19 datasets. The results are suggestive of the relevance of deep learning in providing assistive intelligence to medical practitioners, when they are overburdened with patients as in pandemics. Its clinical significance lies in its unprecedented scope in providing low-cost decision-making for patients lacking specialized healthcare at remote locations.
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A challenge in spoken language translation is that plenty of spoken content is long-form, but short units are necessary for obtaining high-quality translations. To address this mismatch, we fine-tune a general-purpose, large language model to split long ASR transcripts into segments that can be independently translated so as to maximize the overall translation quality. We compare to several segmentation strategies and find that our approach improves BLEU score on three languages by an average of 2.7 BLEU overall compared to an automatic punctuation baseline. Further, we demonstrate the effectiveness of two constrained decoding strategies to improve well-formedness of the model output from above 99% to 100%.
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The Conditional Neural Process (CNP) family of models offer a promising direction to tackle few-shot problems by achieving better scalability and competitive predictive performance. However, the current CNP models only capture the overall uncertainty for the prediction made on a target data point. They lack a systematic fine-grained quantification on the distinct sources of uncertainty that are essential for model training and decision-making under the few-shot setting. We propose Evidential Conditional Neural Processes (ECNP), which replace the standard Gaussian distribution used by CNP with a much richer hierarchical Bayesian structure through evidential learning to achieve epistemic-aleatoric uncertainty decomposition. The evidential hierarchical structure also leads to a theoretically justified robustness over noisy training tasks. Theoretical analysis on the proposed ECNP establishes the relationship with CNP while offering deeper insights on the roles of the evidential parameters. Extensive experiments conducted on both synthetic and real-world data demonstrate the effectiveness of our proposed model in various few-shot settings.
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Causal phenomena associated with rare events frequently occur across a wide range of engineering and mathematical problems, such as risk-sensitive safety analysis, accident analysis and prevention, and extreme value theory. However, current methods for causal discovery are often unable to uncover causal links between random variables that manifest only when the variables first experience low-probability realizations. To address this issue, we introduce a novel algorithm that performs statistical independence tests on data collected from time-invariant dynamical systems in which rare but consequential events occur. We seek to understand if the state of the dynamical system causally affects the likelihood of the rare event. In particular, we exploit the time-invariance of the underlying data to superimpose the occurrences of rare events, thus creating a new dataset, with rare events are better represented, on which conditional independence tests can be more efficiently performed. We provide non-asymptotic bounds for the consistency of our algorithm, and validate the performance of our algorithm across various simulated scenarios, with applications to traffic accidents.
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Automated emotion recognition in speech is a long-standing problem. While early work on emotion recognition relied on hand-crafted features and simple classifiers, the field has now embraced end-to-end feature learning and classification using deep neural networks. In parallel to these models, researchers have proposed several data augmentation techniques to increase the size and variability of existing labeled datasets. Despite many seminal contributions in the field, we still have a poor understanding of the interplay between the network architecture and the choice of data augmentation. Moreover, only a handful of studies demonstrate the generalizability of a particular model across multiple datasets, which is a prerequisite for robust real-world performance. In this paper, we conduct a comprehensive evaluation of popular deep learning approaches for emotion recognition. To eliminate bias, we fix the model architectures and optimization hyperparameters using the VESUS dataset and then use repeated 5-fold cross validation to evaluate the performance on the IEMOCAP and CREMA-D datasets. Our results demonstrate that long-range dependencies in the speech signal are critical for emotion recognition and that speed/rate augmentation offers the most robust performance gain across models.
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We report on novel investigations into training models that make sentences concise. We define the task and show that it is different from related tasks such as summarization and simplification. For evaluation, we release two test sets, consisting of 2000 sentences each, that were annotated by two and five human annotators, respectively. We demonstrate that conciseness is a difficult task for which zero-shot setups with large neural language models often do not perform well. Given the limitations of these approaches, we propose a synthetic data generation method based on round-trip translations. Using this data to either train Transformers from scratch or fine-tune T5 models yields our strongest baselines that can be further improved by fine-tuning on an artificial conciseness dataset that we derived from multi-annotator machine translation test sets.
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Consider two brands that want to jointly test alternate web experiences for their customers with an A/B test. Such collaborative tests are today enabled using \textit{third-party cookies}, where each brand has information on the identity of visitors to another website. With the imminent elimination of third-party cookies, such A/B tests will become untenable. We propose a two-stage experimental design, where the two brands only need to agree on high-level aggregate parameters of the experiment to test the alternate experiences. Our design respects the privacy of customers. We propose an estimater of the Average Treatment Effect (ATE), show that it is unbiased and theoretically compute its variance. Our demonstration describes how a marketer for a brand can design such an experiment and analyze the results. On real and simulated data, we show that the approach provides valid estimate of the ATE with low variance and is robust to the proportion of visitors overlapping across the brands.
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数据驱动的湍流建模正在经历数据科学算法和硬件开发后的兴趣激增。我们讨论了一种使用可区分物理范式的方法,该方法将已知的物理学与机器学习结合起来,以开发汉堡湍流的闭合模型。我们将1D汉堡系统视为一种原型测试问题,用于建模以对流为主的湍流问题中未解决的术语。我们训练一系列模型,这些模型在后验损失函数上结合了不同程度的物理假设,以测试模型在一系列系统参数(包括粘度,时间和网格分辨率)上的疗效。我们发现,以部分微分方程形式的归纳偏差的约束模型包含已知物理或现有闭合方法会产生高度数据效率,准确和可推广的模型,并且表现优于最先进的基准。以物理信息形式添加结构还为模型带来了一定程度的解释性,可能为封闭建模的未来提供了垫脚石。
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组织依靠机器学习工程师(MLE)来操作ML,即部署和维护生产中的ML管道。操作ML或MLOP的过程包括(i)数据收集和标记的连续循环,(ii)实验以改善ML性能,(iii)在多阶段部署过程中评估,以及(iv)监视(iv)性能下降。当一起考虑这些责任似乎令人震惊 - 任何人如何进行MLOP,没有解决的挑战,对工具制造商有什么影响?我们对在包括聊天机器人,自动驾驶汽车和金融在内的许多应用程序中工作的18个MLE进行了半结构化的民族志访谈。我们的访谈暴露了三个变量,这些变量控制了生产ML部署的成功:速度,验证和版本。我们总结了成功实验,部署和维持生产绩效的共同实践。最后,我们讨论了受访者的痛点和反图案,对工具设计产生了影响。
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