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Git 2.55 Released with Faster Performance, Smarter Hooks, and Expanded Rust Integration
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GNOME Files Supercharges Search with Faster Results, Smarter Filters, and Better File Discovery
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PorteuX 2.6 Released with Linux 6.19, TLP Support, and Smarter Hardware Optimization
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NixOS 26.05 ‘Yarara’ Released with Systemd Initrd by Default and Major Infrastructure Updates
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LibreOffice 26.4 Beta Experiments with AI Writing Features and Smarter Editing Tools
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Btrfs Snapshot Deletion Gets Faster as Developers Tackle One of the Filesystem’s Biggest Pain Points
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Linux Kernel 7.1 Officially Released with New NTFS Driver, Intel FRED, and Major Code Cleanup
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Linux 7.1-rc2 Released with Driver Fixes, Steam Deck OLED Audio Repair, and Growing AI Patch Trends
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Web element relocalization in evolving web applications: A comparative analysis and extension study
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Correction to: Is this build failure related to my patch? An empirical study of unrelated build failures in continuous integration
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Empirical studies on adversarial reverse engineering with students
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Aspect-centric vulnerability understanding via semantics-aware commit representation learning
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An empirical study of LLM-based refactoring consistency
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Is your prompt poisoning code? Defect induction rates and security mitigation strategies
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MinsC2Rust: LLM-driven project-level code migration from C to safe Rust
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Software dependencies 2.0: An empirical study of reuse and integration of pre-trained models in open-source projects
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Security issues in python open-source software: a mining study from GitHub
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Fedora Governance Changes Take Effect as Project Refines Leadership, Policy, and Contributor Oversight
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The Growth of Vulnerability Management: The Rise of Agentic AI Pentesting
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A recommendation system for predicting dependencies among software changes insights from an empirical study on OpenStack
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Open source software development tool installation
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Multi-scenario benchmark for autonomous driving systems: Exposing diverse behavioral anomalies
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: ntrastive Learning for Autoated tch Correctness Aessment in Program Repair
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Identifying performance-sensitive configurations in software systems with LLM-based agents