April 25, 2024, 7:42 p.m. | Michael Fore, Simranjit Singh, Dimitrios Stamoulis

cs.LG updates on arXiv.org arxiv.org

arXiv:2404.15804v1 Announce Type: new
Abstract: In this preliminary study, we investigate a GPT-driven intent-based reasoning approach to streamline tool selection for large language models (LLMs) aimed at system efficiency. By identifying the intent behind user prompts at runtime, we narrow down the API toolset required for task execution, reducing token consumption by up to 24.6\%. Early results on a real-world, massively parallel Copilot platform with over 100 GPT-4-Turbo nodes show cost reductions and potential towards improving LLM-based system efficiency.

abstract api arxiv consumption cs.ai cs.lg efficiency gpt language language models large language large language models llm llms narrow prompts reasoning study token tool type via

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