Rate the Article: AI-Powered Code Autocompletion and Bug Detection for Developers, IJSR, Call for Papers, Online Journal
International Journal of Science and Research (IJSR)

International Journal of Science and Research (IJSR)
Call for Papers | Fully Refereed | Open Access | Double Blind Peer Reviewed

ISSN: 2319-7064

Downloads: 8 | Views: 134 | Weekly Hits: ⮙2 | Monthly Hits: ⮙8

Research Paper | Computer Science and Information Technology | United States of America | Volume 14 Issue 2, February 2025 | Rating: 5.4 / 10


AI-Powered Code Autocompletion and Bug Detection for Developers

Omkar Reddy Polu


Abstract: Today's software programming has changed into extensive productivity, fewer human errors, and therefore helps enhance the reliability of software based on AI - powered code autocompletion and bug detection. This research takes into account various machine learning - based autocompletion models such as Codex and AlphaCode, which provide context - aware and syntactically correct suggestions in as much as 45% fewer keystrokes. It also examines some AI - assisted bug detection techniques such as Graph Neural Networks, symbolic execution, or static analysis that give users the ability to detect syntactic error, logical inconsistency, and security vulnerabilities with an accuracy above 90%. However, even with such advances, there are still some problems, including AI hallucinations, false positives, run - time expensive, and explainability. The next wave of improvement will incorporate human and AI interaction, knowledge distillation for efficiency, explainable AI (XAI), adversarial training, and federated learning. Combining these into the DevSecOps pipeline will allow debugging and security analysis of software in near real - time while automating code generation and improving the security robustness of the software using AI.


Keywords: Artificial Intelligence, Code Autocompletion, Bug Detection, Machine Learning, Large Language Models, Codex, AlphaCode, Graph Neural Networks, Symbolic Execution, Static Analysis, AI Hallucinations, False Positives, Explainable AI, Federated Learning, DevSecOps, Software Security, Automated Debugging, Code Efficiency


Edition: Volume 14 Issue 2, February 2025,


Pages: 1878 - 1881



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