DS1 spectrogram: Can LLMs Compress (and Decompress)? Evaluating Code Understanding and Execution via Invertibility

Can LLMs Compress (and Decompress)? Evaluating Code Understanding and Execution via Invertibility

January 19, 20262601.13398v1

Authors

Nickil Maveli,Antonio Vergari,Shay B. Cohen

Abstract

LLMs demonstrate strong performance on code benchmarks, yet round-trip code execution reveals limitations in their ability to maintain consistent reasoning across forward and backward execution. We present RoundTripCodeEval (RTCE), a comprehensive benchmark consisting of four distinct code execution reasoning tasks designed to rigorously test round-trip consistency.

RTCE provides an execution-free, exact-match evaluation of bijection fidelity, assessing whether models preserve a consistent one-to-one mapping between encoding and decoding operations across various algorithms and directions. We systematically evaluate state-of-the-art Code-LLMs using zero-shot prompting, supervised fine-tuning on execution traces, and self-reflection mechanisms.

Each yields modest improvements, but none closes the gap, indicating that current LLMs struggle with true round-trip consistency, which demonstrates that they lack the internal coherence required for trustworthy code reasoning. RTCE surfaces several new and previously unmeasured insights that are not captured by existing I/O-prediction, execution-reasoning, or round-trip natural-language benchmarks.

We will release the code and the dataset upon acceptance.

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