Exclusive | Caltech Researchers Claim Radical Compression of High-Fidelity AI Models - WSJ
<a href="https://news.google.com/rss/articles/CBMiuANBVV95cUxPNEh0UjBvam15d1ZUcHVyZ2dIUlB5TEZDd3BJRDdnS1hScm5zQWhFREs5LXRMRmVVN203aWRjS2QzVDM4OEJMUFRBV2RWeFNfQ2NoZTR0cFBWaGY1RzNaNEVVcGFvY29FaTczOTNSWGUyeXFUQVdfaUM1cGRwWVBQaXVLcnVQdC0zMUxJWEtqTW9WWDI2R3pTLU5qbUNsR00yaWxWVEV5TlRzSnFPRk1lUVdaM0VLbzl1TlFCU05zdWhVX09faVI0cDN0SDZrNHBLQWJ4RW8yYzBkd0w0UGxadXB4eVlOenN4aWZkM3J4YnVrRGJQNEtxZGxjZXFSLWdZY2x4TnpiQTZxaXBseEMycDM4TUE3cFVYSXVWWTRvWHd0Q2Vzd2NLU2ExOFJkZmdQa3J4by1zSXl0LUJ4dFhka0hYWERxT1JSNW9oZk15LTF6Sy1CZXozdXNJXzJhU3ZRUmh1a05zVHVjOGpTMERNb3pIUE1EeDU1bzZPbV9yY2hzd2pheUs4NUhiRDc2R1U4ZWFRV202R2RqUFlvTWNVNzk4WE9SS3N4VlhBa29EeGpPZTFlWkFtVQ?oc=5" target="_blank">Exclusive | Caltech Researchers Claim Radical Compression of High-Fidelity AI Models</a> <font color="#6f6f6f">WSJ</font>
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When Labels Are Scarce: A Systematic Mapping of Label-Efficient Code Vulnerability Detection
arXiv:2604.00079v1 Announce Type: cross Abstract: Machine-learning-based code vulnerability detection (CVD) has progressed rapidly, from deep program representations to pretrained code models and LLM-centered pipelines. Yet dependable vulnerability labeling remains expensive, noisy, and uneven across projects, languages, and CWE types, motivating approaches that reduce reliance on human labeling. This survey maps these approaches, synthesizing five paradigm families and the mechanisms they use. It connects mechanisms to token, graph, hybrid, and knowledgebased representations, and consolidates evaluation and reporting axes that limit comparison (label-budget specification, compute/cost assumptions, leakage, and granularity mismatches). A Design Map and constraintfirst Decision Guide distil
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