
The Hidden Cost of AI-Generated Code
Evaluating Energy Efficiency in LLM-Produced Software
This research evaluates the energy efficiency and performance of code generated by large language models across multiple programming languages and platforms.
Key findings:
- LLM-generated code tends to be less energy efficient than human-written code
- Performance varies significantly across different programming languages
- Models struggle with creating optimized solutions for computationally intensive tasks
- Understanding these efficiency gaps is crucial for sustainable software development
For engineering teams, this research highlights important considerations when integrating AI code generation into development workflows, particularly for performance-critical applications where energy consumption matters.
AI-Powered, But Power-Hungry? Energy Efficiency of LLM-Generated Code