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Analysis

This paper introduces MATUS, a novel approach for bug detection that focuses on mitigating noise interference by extracting and comparing feature slices related to potential bug logic. The key innovation lies in guiding target slicing using prior knowledge from buggy code, enabling more precise bug detection. The successful identification of 31 unknown bugs in the Linux kernel, with 11 assigned CVEs, strongly validates the effectiveness of the proposed method.
Reference

MATUS has spotted 31 unknown bugs in the Linux kernel. All of them have been confirmed by the kernel developers, and 11 have been assigned CVEs.

AI#LLM Performance👥 CommunityAnalyzed: Jan 3, 2026 06:20

GPT-4 Quality Decline

Published:May 31, 2023 03:46
1 min read
Hacker News

Analysis

The article expresses concerns about a perceived decline in the quality of GPT-4's responses, noting faster speeds but reduced accuracy, depth, and code quality. The author compares it unfavorably to previous performance and suggests potential model changes on platforms like Phind.com.
Reference

It is much faster than before but the quality of its responses is more like a GPT-3.5++. It generates more buggy code, the answers have less depth and analysis to them, and overall it feels much worse than before.