A Repository of Method Fragments for Agent-Oriented Development of Learning-Based Edge Computing Systems
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2021
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IEEE
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García-Magariño, I., Nasralla, M. N., & Lloret, J. (2021). A Repository of Method Fragments for Agent-Oriented Development of Learning-Based Edge Computing Systems . IEEE Network, 35(1), 156-162
Abstract
The upcoming avenue of IoT with the massive generated data makes it really hard to train centralized systems with machine learning in real-time. This problem can be addressed with learn-based edge computing systems where the learning is performed in a distributed way on the nodes. In particular, this work focuses on developing multi-agent systems for implementing learn-based edge computing systems. The diversity of methodologies in agent-oriented software engineering reflects the complexity of developing multi-agent systems. The division of the development processes into method fragments facilitates the application of agent-oriented methodologies and their study. In this line of research, this work proposes a database for implementing a repository of method fragments considering the development of learn-based edge computing systems and the information recommended by the FIPA technical committee. This repository makes method fragments available from different methodologies and computerizes certain metrics and queries over the existing method fragments. This work has compared the performance of several combinations of dimensionality reduction methods and machine learning techniques (i.e. support vector regression, k-nearest neighbors and multi-layer perceptron neural networks) in a simulator of a learn-based edge computing system for estimating profits and customers.