An Exploratory Study on Machine Learning Model Stores
Minke Xiu, Zhen Ming (Jack) Jiang, Bram Adams

TL;DR
This study explores and compares features of three popular machine learning model stores, highlighting their differences from mobile app stores and providing insights into ML-specific software engineering practices.
Contribution
It offers an initial comparison of model store information elements and contrasts them with mobile app stores, revealing unique and shared features among these platforms.
Findings
65% of information elements are shared among all three model stores.
Few models are available across multiple model stores.
Model stores share five information elements with mobile app stores.
Abstract
Recent advances in Artificial Intelligence, especially in Machine Learning (ML), have brought applications previously considered as science fiction (e.g., virtual personal assistants and autonomous cars) into the reach of millions of everyday users. Since modern ML technologies like deep learning require considerable technical expertise and resource to build custom models, reusing existing models trained by experts has become essential. This is why in the past year model stores have been introduced, which, similar to mobile app stores, offer organizations and developers access to pre-trained models and/or their code to train, evaluate, and predict samples. This paper conducts an exploratory study on three popular model stores (AWS marketplace, Wolfram neural net repository, and ModelDepot) that compares the information elements (features and policies) provided by model stores to those…
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Taxonomy
TopicsScientific Computing and Data Management · Advanced Data Storage Technologies · Machine Learning in Materials Science
