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Human-Like Neural Nets by Catapulting

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Anthropic/OpenAI may be spending more than $1000 for every $100 you pay them

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CLASH: Evaluating Language Models on Judging High-Stakes Dilemmas from Multiple Perspectives

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Efficient and Stealthy Jailbreak Attacks via Adversarial Prompt Distillation from LLMs to SLMs

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Stable Geometry, Reversing Poles: The Bipolar Structure of AI Occupational Substitutability and Its Decade-Scale Inversion

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Automated IEP Generation from Traditional Chinese Parent-Teacher Interviews via Corpus-Grounded Feature Diffusion

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Plan, Watch, Recover: A Benchmark and Architectures for Proactive Procedural Assistance

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