Evaluation of Clustering Algorithms on GPU-Based Edge Computing Platforms
Autor/es
Cecilia, José María; Cano, Juan Carlos; Morales García, Juan; Llanes, Antonio; Imbernón Tudela, BaldomeroFecha
2020-11-06Disciplina/s
Ingeniería, Industria y ConstrucciónMateria/s
IoT applicationsGPU computing
Clustering algorithms
Intelligent systems
Edge computing
Cloud computing
Low-power
Resumen
Internet of Things (IoT) is becoming a new socioeconomic revolution in which data and immediacy are the main ingredients. IoT generates large datasets on a daily basis but it is currently considered as “dark data”, i.e., data generated but never analyzed. The efficient analysis of this data is mandatory to create intelligent applications for the next generation of IoT applications that benefits society. Artificial Intelligence (AI) techniques are very well suited to identifying hidden patterns and correlations in this data deluge. In particular, clustering algorithms are of the utmost importance for performing exploratory data analysis to identify a set (a.k.a., cluster) of similar objects. Clustering algorithms are computationally heavy workloads and require to be executed on high-performance computing clusters, especially to deal with large datasets. This execution on HPC infrastructures is an energy hungry procedure with additional issues, such as high-latency communications or priv...