An empirical study of 1,004 bugs in template engine-based applications finds abnormal rendering results as the most common symptom (48.61%) and documents 17 root causes with fix patterns that often involve host-side logic changes.
On a Test of Whether one of Two Random Variables is Stochastically Larger than the Other
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A floor plan-agnostic gait drift detector identifies informative sensor-to-sensor transitions, analyzes duration fluctuations with non-parametric tests against a baseline, and aggregates daily results, matching or exceeding floor-plan-dependent baselines on simulated home layouts.
AI coding agents produce pull requests with substantially more commits and slightly higher description-to-diff similarity than human developers, based on analysis of 29,095 merged PRs.
Case study of 18,020 Kubernetes PRs shows label-diff congruence is prevalent and stable, with higher congruence linked to fewer review participants among core developers and more among one-time contributors.
citing papers explorer
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Understanding Bugs in Template Engine-Based Applications: Symptoms, Root Causes, and Fix Patterns
An empirical study of 1,004 bugs in template engine-based applications finds abnormal rendering results as the most common symptom (48.61%) and documents 17 root causes with fix patterns that often involve host-side logic changes.
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Floor Plan-Agnostic Detection of Gait Speed Drifts Using Ambient Sensors
A floor plan-agnostic gait drift detector identifies informative sensor-to-sensor transitions, analyzes duration fluctuations with non-parametric tests against a baseline, and aggregates daily results, matching or exceeding floor-plan-dependent baselines on simulated home layouts.
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How AI Coding Agents Modify Code: A Large-Scale Study of GitHub Pull Requests
AI coding agents produce pull requests with substantially more commits and slightly higher description-to-diff similarity than human developers, based on analysis of 29,095 merged PRs.
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Efficiency for Experts, Visibility for Newcomers: A Case Study of Label-Code Alignment in Kubernetes
Case study of 18,020 Kubernetes PRs shows label-diff congruence is prevalent and stable, with higher congruence linked to fewer review participants among core developers and more among one-time contributors.