CodeSSM: Towards State Space Models for Code Understanding
About
Although transformers dominate many code-specific tasks, they have significant limitations. This paper explores State Space Models (SSMs) as a promising alternative for code understanding tasks such as retrieval, classification, and clone detection. We introduce CodeSSM, the first SSM-based model trained on code corpora to assess its effectiveness. Our results demonstrate that SSMs are more sample-efficient and can extrapolate to longer contexts beyond the pretraining length. Extensive experiments show that SSMs offer a viable alternative to transformers, addressing several their limitations. Additionally, CodeSSM reduces memory usage by up to 64\% compared to transformers at a context length of 2048, with greater savings as context length grows.
Related benchmarks
| Task | Dataset | Result | Rank | |
|---|---|---|---|---|
| Question Answering | SQA (test) | MRR0.7608 | 4 | |
| Code Search | NLCodeSearch (test) | MRR25.39 | 4 | |
| Type Inference | Type Inference (test) | F1 Score59.7 | 4 |