Paradigmas computacionales y eficiencia arquitectónica en sistemas de alto rendimiento: una revisión sistemática
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https://doi.org/10.5281/zenodo.20632782Palabras clave:
Paradigmas computacionales, eficiencia arquitectónica, computación de alto rendimiento, memoria, sistemas distribuidosResumen
Los paradigmas computacionales han evolucionado como respuesta a restricciones crecientes de procesamiento, memoria, comunicación, almacenamiento, confiabilidad, escalabilidad y volumen de datos. El presente artículo tuvo como objetivo analizar la relación entre paradigmas computacionales y eficiencia arquitectónica en sistemas de alto rendimiento, considerando la evolución epistemológica de la computación, las arquitecturas paralelas y distribuidas, las redes de interconexión, la jerarquía de memoria, la computación en la nube, los modelos post-nube, la gestión de grandes datos y la heterogeneidad del hardware. La investigación se desarrolló bajo un enfoque cualitativo, documental y de revisión sistemática con alcance integrativo, siguiendo la lógica PRISMA para la identificación, cribado, elegibilidad e inclusión de documentos. El corpus final estuvo conformado por 39 documentos científicos y técnicos relacionados con ciencia de la computación, arquitectura de computadores, high-performance computing, cloud computing, edge computing, big data, memoria, caché, DRAM, GPU, APU y redes de interconexión. Los resultados evidencian que la eficiencia arquitectónica no depende únicamente de la velocidad del procesador, sino de la articulación entre cómputo, memoria, comunicación, datos, software, energía y confiabilidad. Se concluye que los paradigmas computacionales contemporáneos avanzan hacia modelos híbridos, distribuidos, heterogéneos, confiables y orientados a datos, capaces de responder a los desafíos de la ciencia intensiva en información, la inteligencia artificial y los sistemas computacionales emergentes.
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