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Main Authors: Fagnoni, Théo, Altin, Mahsun, Chung, Chia En, Kingston, Phillip, Tuning, Alan, Mohamed, Dana O., Adnani, Inès
Format: Preprint
Published: 2025
Subjects:
Online Access:https://arxiv.org/abs/2507.11288
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author Fagnoni, Théo
Altin, Mahsun
Chung, Chia En
Kingston, Phillip
Tuning, Alan
Mohamed, Dana O.
Adnani, Inès
author_facet Fagnoni, Théo
Altin, Mahsun
Chung, Chia En
Kingston, Phillip
Tuning, Alan
Mohamed, Dana O.
Adnani, Inès
contents This paper introduces the Opus Prompt Intention Framework, designed to improve complex Workflow Generation with instruction-tuned Large Language Models (LLMs). We propose an intermediate Intention Capture layer between user queries and Workflow Generation, implementing the Opus Workflow Intention Framework, which consists of extracting Workflow Signals from user queries, interpreting them into structured Workflow Intention objects, and generating Workflows based on these Intentions. Our results show that this layer enables LLMs to produce logical and meaningful outputs that scale reliably as query complexity increases. On a synthetic benchmark of 1,000 multi-intent query-Workflow(s) pairs, applying the Opus Prompt Intention Framework to Workflow Generation yields consistent improvements in semantic Workflow similarity metrics. In this paper, we introduce the Opus Prompt Intention Framework by applying the concepts of Workflow Signal and Workflow Intention to LLM-driven Workflow Generation. We present a reproducible, customizable LLM-based Intention Capture system to extract Workflow Signals and Workflow Intentions from user queries. Finally, we provide empirical evidence that the proposed system significantly improves Workflow Generation quality compared to direct generation from user queries, particularly in cases of Mixed Intention Elicitation.
format Preprint
id arxiv_https___arxiv_org_abs_2507_11288
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle Opus: A Prompt Intention Framework for Complex Workflow Generation
Fagnoni, Théo
Altin, Mahsun
Chung, Chia En
Kingston, Phillip
Tuning, Alan
Mohamed, Dana O.
Adnani, Inès
Artificial Intelligence
This paper introduces the Opus Prompt Intention Framework, designed to improve complex Workflow Generation with instruction-tuned Large Language Models (LLMs). We propose an intermediate Intention Capture layer between user queries and Workflow Generation, implementing the Opus Workflow Intention Framework, which consists of extracting Workflow Signals from user queries, interpreting them into structured Workflow Intention objects, and generating Workflows based on these Intentions. Our results show that this layer enables LLMs to produce logical and meaningful outputs that scale reliably as query complexity increases. On a synthetic benchmark of 1,000 multi-intent query-Workflow(s) pairs, applying the Opus Prompt Intention Framework to Workflow Generation yields consistent improvements in semantic Workflow similarity metrics. In this paper, we introduce the Opus Prompt Intention Framework by applying the concepts of Workflow Signal and Workflow Intention to LLM-driven Workflow Generation. We present a reproducible, customizable LLM-based Intention Capture system to extract Workflow Signals and Workflow Intentions from user queries. Finally, we provide empirical evidence that the proposed system significantly improves Workflow Generation quality compared to direct generation from user queries, particularly in cases of Mixed Intention Elicitation.
title Opus: A Prompt Intention Framework for Complex Workflow Generation
topic Artificial Intelligence
url https://arxiv.org/abs/2507.11288