Customer-obsessed science
Research areas
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September 26, 2025To transform scientific domains, foundation models will require physical-constraint satisfaction, uncertainty quantification, and specialized forecasting techniques that overcome data scarcity while maintaining scientific rigor.
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Featured news
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Command-lines are a common attack surface in cybersecurity. Yet they often contain sensitive user information, creating a dual challenge: systems must detect suspicious commands accurately while protecting user privacy. Existing approaches typically tackle one challenge without the other. To address this gap, we present PASTRAL, a practical framework for privacy-preserving detection of suspicious command-lines
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Continual Learning (CL) is a vital requirement for deploying large language models (LLMs) in today’s dynamic world. Existing approaches seek to acquire task-specific knowledge via parameter efficient fine-tuning (PEFT) with reduced compute overhead. However, sequential FT often sacrifices performance retention and forward transfer, especially under replay-free constraints. We introduce ELLA, a novel CL
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AES Show 20252025Surround sound systems commonly distribute loudspeakers along standardized layouts for multichannel audio reproduction. However in less controlled environments, practical layouts vary in loudspeaker quantity, placement, and listening locations / areas. Deviations from standard layouts introduce sound-field errors that degrade acoustic timbre, imaging, and clarity of audio content reproduction. This work
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IEEE Big Data 20252025Enterprise relational databases increasingly contain vast amounts of non-semantic data—IP addresses, product identifiers, encoded keys, and timestamps—that challenge traditional semantic analysis. This paper introduces a novel Character-Level Autoencoder (CAE) approach that automatically identifies and groups semantically identical columns in nonsemantic relational datasets by detecting column similarities
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IJCNLP-AACL 20252025In recent years, dense retrieval has been the focus of information retrieval (IR) research. While effective, dense retrieval produces uninterpretable dense vectors, and suffers from the drawback of large index size. Learned sparse retrieval (LSR) has emerged as promising alternative, achieving competitive retrieval performance while also being able to leverage the classical inverted index data structure
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