Customer-obsessed science
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January 19, 2024Attention-based representation of multi-image inputs improves performance on downstream vision-language tasks.
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January 17, 2024Representing facts using knowledge triplets rather than natural language enables finer-grained judgments.
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December 26, 2023Theoretical analysis and experiments show that clipped stochastic gradient descent (SGD) enables robust online statistical estimation.
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December 20, 2023Novel architectures and carefully prepared training data enable state-of-the-art performance.
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January 17, 2024The submission period is open now and closes on March 6.
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January 03, 2024Researchers honored for their contributions to the scientific community in 2023.
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November 16, 2023Outlive: The Science and Art of Longevity by Peter Attia named as the best science book of 2023.
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October 10, 2023The system has expanded from generating peak computation-load forecasts one year in advance to a series of forecasts that include per-minute forecasts several months into the future.
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ECIR 20242024Recommender systems play a crucial role in the e-commerce stores, enabling customers to explore products and facilitating the discovery of relevant items. Typical recommender systems are built using n most recent user interactions, where value of n is chosen based on trade-off between incremental gains in performance and compute/memory costs associated with processing long sequences. State-of-the-art recommendation
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Transactions on Machine Learning Research2024Bayesian Optimization (BO) is an effective method for finding the global optimum of expensive black-box functions. However, it is well known that applying BO to high-dimensional optimization problems is challenging. To address this issue, a promising solution is to use a local search strategy that partitions the search domain into local regions with high likelihood of containing the global optimum, and
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ICASSP 20242024We propose an approach for continuous prediction of turn-taking and backchanneling locations in spoken dialogue by fusing a neural acoustic model with a large language model (LLM). Experiments on the Switchboard human-human conversation dataset demonstrate that our approach consistently outperforms the baseline models with single modality. We also develop a novel multi-task instruction fine- tuning strategy
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CVCI 20242024State of the art methods for anomaly localisation in product images take a patch based approach that models an anomaly patch in an image as an outlier to a distribution of normal image patches. These approaches require the avail-ability of sufficient normal and sometimes even abnormal product images. In this work we present a zero/few-shot anomaly localisation method, where, given an image and a set of
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ICASSP 20242024We introduce a real-time, multichannel speech enhancement algorithm which maintains the spatial cues of stereo recordings including two speech sources. Recognizing that each source has unique spatial information, our method utilizes a dual-path structure, ensuring the spatial cues remain unaffected during enhancement by applying source-specific common-band gain. This method also seamlessly integrates pretrained
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January 25, 2024Amazon IIT–Bombay AI-ML Initiative seeks to advance artificial intelligence and machine learning research within speech, language, and multimodal-AI domains.
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January 04, 2024Program empowers students from diverse backgrounds to become industry leaders through scholarship, research, and career opportunities.
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December 19, 2023Four professors awarded for research in machine learning and robotics; two doctoral candidates awarded fellowships.
Working at Amazon
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December 11, 2023Amazon senior principal engineer Luu Tran is helping the Alexa team innovate by collaborating closely with scientist colleagues.
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October 24, 2023Jetter says her goals include lowering barriers to understanding technology and cultivating a more diverse workforce.
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October 16, 2023Former Amazon applied science intern Margarida Ferreira conducts research to make complex cloud resources easier to manage.