Vincenzo Lomonaco, Valerio De Caro, C. Gallicchio, Antonio Carta, Christos Sardianos, Iraklis Varlamis, K. Tserpes, M. Coppola, Mina Marmpena, S. Politi, E. Schoitsch, D. Bacciu
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AI-Toolkit: A Microservices Architecture for Low-Code Decentralized Machine Intelligence
Artificial Intelligence and Machine Learning toolkits such as Scikit-learn, PyTorch and Tensorflow provide today a solid starting point for the rapid prototyping of R&D solutions. However, they can be hardly ported to heterogeneous decentralised hardware and real-world production environments. A common practice involves outsourcing deployment solutions to scalable cloud infrastructures such as Amazon SageMaker or Microsoft Azure. In this paper, we proposed an open-source microservices-based architecture for decentralised machine intelligence which aims at bringing R&D and deployment functionalities closer following a low-code approach. Such an approach would guarantee flexible integration of cutting-edge functionalities while preserving complete control over the deployed solutions at negligible costs and maintenance efforts.