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July 07, 2023Amazon’s Yang Liu, general chair of this year’s meeting of the Association for Computational Linguistics, on the road ahead for LLMs.
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July 03, 2023With little training data and no mapping of speech to phonemes, Amazon researchers used voice conversion to generate Irish-accented training data in Alexa’s own voice.
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June 28, 2023Four CVPR papers from Prime Video examine a broad set of topics related to efficient model training for understanding and synthesizing long-form cinematic content.
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July 9 - 14, 2023
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July 17 - 22, 2023
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July 24 - 29, 2023
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July 06, 2023The program exposes students to computer science as they create their own Alexa skills.
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June 30, 2023University teams are competing to build multimodal conversational agents that assist customers in completing tasks requiring multiple steps.
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June 28, 2023Ongoing collaboration includes Amazon joining the UW Center for the Future of Cloud Infrastructure.
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June 27, 2023Two Max Planck Society researchers receive funding for projects to develop new ways to advance a more circular economy.
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Personalized dialogue agents (DAs) powered by large pre-trained language models (PLMs) often rely on explicit persona descriptions to maintain personality consistency. However, such descriptions may not always be available or may pose privacy concerns. To tackle this bottleneck, we introduce PersonaPKT, a lightweight transfer learning approach that can build persona-consistent dialogue models without explicit
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Machine Translation Summit 2023 (MTS)2023The expectations of e-commerce customers include the ability to shop online in their preferred language. Modern e-commerce platforms utilize machine translation to provide multilingual product information at scale. However, maintaining machine translation quality that keeps up with an ever-expanding product information remains an open challenge for industrial machine translation systems. Topical clustering
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Pool-based active learning techniques have had success producing multi-class classifiers that achieve high accuracy with fewer labels compared to random labeling. However, in an industrial setting where we often have class-level business targets to achieve (e.g., 95% recall at 95% precision for each class), active learning techniques continue to acquire labels for classes that have already met their targets
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Companies offering web services routinely run randomized online experiments to estimate the “causal impact” associated with the adoption of new features and policies on key performance metrics of interest. These experiments are used to estimate a variety of effects: the increase in click rate due to the repositioning of a banner, the impact on subscription rate as a consequence of a discount or special
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2023We present a novel strategy to generate learned learning rate schedules for any optimizer using reinforcement learning (RL). Our approach trains a Proximal Policy Optimization (PPO) agent to predict optimal learning rate schedules for SGD, which we compare with other optimizer-scheduler combinations and full grid search. Our experiments show that the agent learns to generate dynamic schedules that result
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July 05, 2023Amazon Research Award recipient Shrikanth Narayanan is on a mission to make inclusive human-AI conversational experiences.
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June 07, 2023Team earned $500,000 for its performance in a challenge focused on advancing next-generation virtual assistants that help humans complete real-world tasks by continuously learning.
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May 24, 2023How ARA recipient Supreeth Shashikumar is using machine learning to help hospitals detect sepsis — before it’s too late.
Working at Amazon
View allMeet the people driving the innovation essential to being the world’s most customer-centric company.
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June 21, 2023The senior applied science manager envisions machine learning as the path to a better experience for Amazon customers.
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April 05, 2023As a senior principal applied scientist at Amazon Web Services, Leino is continuing his career as a leading expert in program verification.
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March 14, 2023Ren Zhang and her team tackle the interesting science challenges behind surfacing the most relevant offerings.