Saved in:
Bibliographic Details
Main Authors: Ali, Hyacinth, Galasso-Carbonnel, Jessie, Sahraoui, Houari
Format: Preprint
Published: 2026
Subjects:
Online Access:https://arxiv.org/abs/2605.18764
Tags: Add Tag
No Tags, Be the first to tag this record!
_version_ 1866910234226720768
author Ali, Hyacinth
Galasso-Carbonnel, Jessie
Sahraoui, Houari
author_facet Ali, Hyacinth
Galasso-Carbonnel, Jessie
Sahraoui, Houari
contents Artificial Intelligence (AI) pipelines have become integral to modern research, supporting fields such as Medical Sciences, Agriculture, and Social Sciences, and enabling large-scale data analysis, predictive modeling, and the automation of complex tasks. However, designing and implementing AI solutions remains challenging for many researchers due to the expertise required in the design and development of end-to-end AI systems. To address this gap, we present Domain-Driven Adaptable AI Pipelines (DDAP), a controlled, human-in-the-loop, agentic framework that leverages large language models to guide users in a systematic construction of AI pipelines and their corresponding implementation code. DDAP structures the development process into four stages: problem definition, compute environment specification, pipeline generation, and code generation. Through this staged interaction, the framework adapts to domain context, user expertise, and resource constraints, while maintaining user control over key decisions. We evaluate DDAP across multiple datasets spanning business, biology, and health science domains by comparing its AI models against expert-developed models. The experimental results show that DDAP achieves competitive results in several tasks compared to expert baselines, although performance varies across problem types, particularly for text-based clustering tasks. By combining guided interaction, adaptability, and reproducibility, DDAP demonstrates that a controlled agentic framework can generate competitive AI pipelines for non-expert users.
format Preprint
id arxiv_https___arxiv_org_abs_2605_18764
institution arXiv
publishDate 2026
record_format arxiv
spellingShingle From Intent to AI Pipelines: A Controlled Agentic Framework for Non-AI Expert Scientists
Ali, Hyacinth
Galasso-Carbonnel, Jessie
Sahraoui, Houari
Information Retrieval
Artificial Intelligence
Artificial Intelligence (AI) pipelines have become integral to modern research, supporting fields such as Medical Sciences, Agriculture, and Social Sciences, and enabling large-scale data analysis, predictive modeling, and the automation of complex tasks. However, designing and implementing AI solutions remains challenging for many researchers due to the expertise required in the design and development of end-to-end AI systems. To address this gap, we present Domain-Driven Adaptable AI Pipelines (DDAP), a controlled, human-in-the-loop, agentic framework that leverages large language models to guide users in a systematic construction of AI pipelines and their corresponding implementation code. DDAP structures the development process into four stages: problem definition, compute environment specification, pipeline generation, and code generation. Through this staged interaction, the framework adapts to domain context, user expertise, and resource constraints, while maintaining user control over key decisions. We evaluate DDAP across multiple datasets spanning business, biology, and health science domains by comparing its AI models against expert-developed models. The experimental results show that DDAP achieves competitive results in several tasks compared to expert baselines, although performance varies across problem types, particularly for text-based clustering tasks. By combining guided interaction, adaptability, and reproducibility, DDAP demonstrates that a controlled agentic framework can generate competitive AI pipelines for non-expert users.
title From Intent to AI Pipelines: A Controlled Agentic Framework for Non-AI Expert Scientists
topic Information Retrieval
Artificial Intelligence
url https://arxiv.org/abs/2605.18764