Gypscie: A Cross-Platform AI Artifact Management System
Fabio Porto, Eduardo Ogasawara, Gabriela Moraes Botaro, Julia Neumann Bastos, Augusto Fonseca, Esther Pacitti, Patrick Valduriez

TL;DR
Gypscie is a cross-platform system that manages AI artifacts through a knowledge graph and rule-based reasoning, simplifying AI application development and deployment.
Contribution
It introduces Gypscie, a unified platform for managing AI artifacts with semantic reasoning and cross-platform scheduling capabilities.
Findings
Supports a broader range of AI lifecycle functionalities.
Successfully optimizes and schedules dataflows across platforms.
Provides provenance for explainability.
Abstract
Artificial Intelligence (AI) models, encompassing both traditional machine learning (ML) and more advanced approaches such as deep learning and large language models (LLMs), play a central role in modern applications. AI model lifecycle management involves the end-to-end process of managing these models, from data collection and preparation to model building, evaluation, deployment, and continuous monitoring. This process is inherently complex, as it requires the coordination of diverse services that manage AI artifacts such as datasets, dataflows, and models, all orchestrated to operate seamlessly. In this context, it is essential to isolate applications from the complexity of interacting with heterogeneous services, datasets, and AI platforms. In this paper, we introduce Gypscie, a cross-platform AI artifact management system. By providing a unified view of all AI artifacts, the…
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