WEDGE: Synthesizing Performance Constraints for Evaluating and Improving Code Efficiency
–Neural Information Processing Systems
Large Language Models (LLMs) have been increasingly used to optimize code efficiency. Evaluating their effectiveness and further suggesting optimization opportunities often rely on high-quality tests to demonstrate the performance bottlenecks presented in the program. However, existing approaches rely on a limited set of hand-curated inputs or LLM-generated uninteresting length-stressing tests, failing to reveal more nuanced optimization opportunities. We present WEDGE, a framework for generating performance-stressing input given the program under test.
Neural Information Processing Systems
Jun-12-2026, 15:04:58 GMT
- Technology: