[Paper] Chiseling Out Efficiency: Structured Skeleton Supervision for Efficient Code Generation

Published: (June 4, 2026 at 09:49 PM EDT)
2 min read
Source: arXiv

Source: arXiv - 2606.06821v1

Overview

Large Language Models (LLMs) are capable of generating syntactically correct and functionally complete programs, greatly streamlining software development. However, recent studies reveal that these programs typically execute substantially slower than human-optimized counterparts. Existing approaches to bridging this efficiency gap typically involve either iteratively optimizing code after generation or fine-tuning models on corpora of efficient code. Yet, these methods expose the model to efficiency signals only by mimicking complete, optimized solutions, without explicitly encoding the structural code patterns essential for achieving high runtime performance. Addressing this gap presents two core challenges: (1) extracting and representing latent, efficiency-oriented structural patterns embedded within complex syntax and control flows, and (2) effectively learning these patterns without destabilizing the semantic training of LLMs. To tackle these challenges, we propose EffiSkel, an efficiency skeleton-guided framework that explicitly extracts and learns efficiency skeletons-abstract, reusable structural patterns underpinning efficient code-by leveraging three complementary strategies. These skeletons are integrated into a multi-task learning regime that jointly optimizes code generation and skeleton prediction. Experiments across multiple programming languages and benchmarks demonstrate that EffiSkel significantly enhances both functional correctness and efficiency, resulting on Mercury with DeepSeek-Coder (7B) a +11.11% (vs. EffiCoder) and +3.71% (vs. CodeDPO) higher Efficiency Ratio (ER), and a +0.36 (vs. EffiCoder) and +0.22 (vs. CodeDPO) increase in Average Speedup (AS). These results highlight the effectiveness of explicitly modeling efficiency skeletons in improving the runtime performance of code generated by LLMs.

Key Contributions

This paper presents research in the following areas:

  • cs.SE

Methodology

Please refer to the full paper for detailed methodology.

Practical Implications

This research contributes to the advancement of cs.SE.

Authors

  • Yu Yu
  • Zhihong Sun
  • Jia Li
  • Yao Wan
  • Chuanyi Li
  • Hongyu Zhang
  • Ruyun Wang
  • Tao Huang
  • Zhi Jin
  • Ge Li
  • Chen Lyu

Paper Information

  • arXiv ID: 2606.06821v1
  • Categories: cs.SE
  • Published: June 5, 2026
  • PDF: Download PDF
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