LGCLSEJan 16, 2024

Code Generation with AlphaCodium: From Prompt Engineering to Flow Engineering

arXiv:2401.08500v1124 citationsHas Code
Originality Incremental advance
AI Analysis

This addresses code generation challenges for developers and AI practitioners, offering a domain-specific improvement that is incremental but with strong gains.

The authors tackled the problem of code generation with LLMs by proposing AlphaCodium, a test-based, multi-stage iterative flow, which increased GPT-4 accuracy (pass@5) from 19% to 44% on the CodeContests validation set.

Code generation problems differ from common natural language problems - they require matching the exact syntax of the target language, identifying happy paths and edge cases, paying attention to numerous small details in the problem spec, and addressing other code-specific issues and requirements. Hence, many of the optimizations and tricks that have been successful in natural language generation may not be effective for code tasks. In this work, we propose a new approach to code generation by LLMs, which we call AlphaCodium - a test-based, multi-stage, code-oriented iterative flow, that improves the performances of LLMs on code problems. We tested AlphaCodium on a challenging code generation dataset called CodeContests, which includes competitive programming problems from platforms such as Codeforces. The proposed flow consistently and significantly improves results. On the validation set, for example, GPT-4 accuracy (pass@5) increased from 19% with a single well-designed direct prompt to 44% with the AlphaCodium flow. Many of the principles and best practices acquired in this work, we believe, are broadly applicable to general code generation tasks. Full implementation is available at: https://github.com/Codium-ai/AlphaCodium

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