HYSYNTH: Context-Free LLM Approximation for Guiding Program Synthesis
#AI #arXiv #GitHub
#AI #LanguageModels #ProgramSynthesis #OpenSourceAI #GitHub #arXiv
Link to paper:
Paper by: Shraddha Barke, Emmanuel Anaya Gonzalez, Saketh Ram Kasibatla, Taylor Berg-Kirkpatrick, Nadia Polikarpova
Presentation by team:
Explore our AI innovations and solutions tailored for diverse business challenges at
The paper “HYSYNTH: Context-Free LLM Approximation for Guiding Program Synthesis“ presents a novel hybrid approach combining large language models (LLMs) and symbolic methods to tackle program synthesis challenges. This method uses LLM completions to learn a task-specific, context-free surrogate model, significantly enhancing the synthesis process across various domains. By outperforming both unguided search and direct sampling from LLMs, as well as existing program synthesizers, the research establishes a promising direction for scalable and efficie
1 view
26
10
2 months ago 00:08:50 1
HYSYNTH: Context-Free LLM Approximation for Guiding Program Synthesis