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Research areas
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March 20, 202615 min readSimplifying and clarifying the assembly code for core operations enabled automated optimization and verification.
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March 19, 202611 min read
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February 25, 202611 min read
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February 17, 20263 min read
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Featured news
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2026Modern conversational AI systems require sophisticated Named Entity Recognition (NER) capabilities that can handle complex, contextual dialogue patterns. While Large Language Models (LLMs) excel at understanding conversational semantics, their inference latency and inability to efficiently incorporate emerging entities make them impractical for production deployment. Moreover, the scarcity of conversational
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AAAI 2026 Workshop on Graphs and more Complex Structures For Learning and Reasoning2026Dialogue State Tracking (DST) requires precise extraction of structured information from multi-domain conversations, a task where Large Language Models (LLMs) struggle despite their impressive general capabilities. We present GEM (Graph-Enhanced Mixture-of-Experts), a novel framework that combines language models and graph-structured dialogue understanding with ReAct agent-based reasoning for superior DST
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ICDMAI 20262026Vision-Language Models (VLMs) have demonstrated impressive capabilities in general- purpose multi-modal tasks, but their adaptation to specialized sports analysis remains relatively unexplored. This paper bridges this gap by investigating VLM's effectiveness for automated cricket scene classification, addressing critical bottlenecks in current workflows that require 45-50 minutes of human intervention.
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AAMAS 20262026Existing content recommender systems usually depend on centrally stored interaction histories, creating vendor lock-in and disadvantaging newer providers who lack sufficient user data. They also limit users' ability to understand, control, or edit how their preferences are represented, since profiles are learned as opaque latent vectors within provider-controlled models. We propose a user-centric alternative
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AAAI 2026 Workshop on Agentic AI in Financial Services2026Financial AI systems suffer from a critical blind spot: while Retrieval-Augmented Generation (RAG) excels at finding relevant documents, language models still generate calculation errors and regulatory violations during reasoning, even with perfect retrieval. This paper introduces VERAFI (Verified Agentic Financial Intelligence), an agentic framework with neurosymbolic policy generation for verified financial
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