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Enterprise AI Analysis: Will It Survive? Deciphering the Fate of AI-Generated Code in Open Source

Enterprise AI Analysis

Will It Survive? Deciphering the Fate of AI-Generated Code in Open Source

Executive Impact: Key Findings

This analysis investigates the long-term viability of AI-generated code in open-source projects. Contrary to the 'disposable code' hypothesis, AI-authored code survives significantly longer, with a 15.8 percentage-point lower modification rate. However, modification profiles differ, with AI code showing higher corrective rates and human code higher adaptive rates. Predictability of *when* modifications occur remains challenging, while *which* lines are modification-prone is more tractable.

0 AI Code Survival Advantage
0 AI Corrective Rate
0 Human Adaptive Rate

Deep Analysis & Enterprise Applications

Select a topic to dive deeper, then explore the specific findings from the research, rebuilt as interactive, enterprise-focused modules.

Survival analysis demonstrates that AI-generated code survives significantly longer than human-authored code, challenging the 'disposable code' narrative. This analysis tracks code units from their birth (PR merge) through matched observation windows, revealing a 15.8 percentage-point lower modification rate for AI-authored code (Hazard Ratio = 0.842, p < 0.001) at the line level. This suggests that AI-generated code is not as fragile as commonly assumed, raising questions about maintenance paradigms. The log-rank test confirms statistical significance of these survival differences.

15.8% Lower Modification Rate for AI Code (Line Level)
Aspect AI-Authored Code Human-Authored Code
Modification Rate (Line-Level) 53.9% 69.3%
Survival Duration (Median) 118.4 days 120.5 days
Key Survival Factors
  • Lower Hazard Ratio (0.842)
  • Less frequent changes
  • Potential 'no one owns it' effect
  • Higher churn
  • Active maintenance
  • Clear ownership patterns

While AI code survives longer, its modification profile differs from human code. AI-authored code shows higher corrective (bug-fix) and preventive rates, while human-authored code exhibits higher adaptive rates. This suggests that AI-generated code may require more immediate bug fixes or security patches upon modification, whereas human code is more often adapted to environmental changes (e.g., dependency updates). The effect sizes are small (Cramér's V = 0.116), indicating that authorship explains a modest portion of variance, with per-agent variation often exceeding the agent-human gap.

+3.3pp Higher Corrective Rate for AI Code
-5.1pp Lower Adaptive Rate for AI Code

Enterprise Process Flow

AI Generates Code
Code Merged
Modification Occurs
Intent Classified (Corrective, Adaptive, Perfective, Preventive, Other)

Predicting the fate of AI-generated code at birth presents asymmetric challenges. Localizing *which* lines are modification-prone is tractable (AUC-ROC = 0.671), with domain-specific textual features providing reliable signals. However, predicting *when* modifications will occur remains challenging (Macro F1 = 0.285), as temporal dynamics are largely driven by external organizational factors not captured by static analysis, such as bug surface, priority shifts, and maintainer availability. This implies that while code content offers some predictive power for 'where', 'when' is much harder to forecast.

0.671 AUC-ROC for Localizing Modification-Prone Lines
0.285 Macro F1 for Predicting Modification Timing (Challenging)

Impact on Code Review Workflows

By pinpointing modification-prone lines, AI models can significantly reduce the inspection scope from entire files to 13-30% of lines, enabling focused and efficient code reviews. This allows human developers to prioritize critical sections, leading to better resource allocation and potentially preventing future issues before they manifest. However, the difficulty in predicting when these modifications will occur highlights the need for dynamic, post-deployment signals like production error logs or CI failures to provide more timely insights.

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