Ugrás a tartalomhoz

 

Knowledge-driven Exploratory Performance Data Analysis for Execute-Order-Validate Blockchains

  • Metaadatok
Tartalom: http://hdl.handle.net/10890/40952
Archívum: Műegyetem Digitális Archívum
Gyűjtemény: 1. Tudományos közlemények, publikációk
Konferenciák gyűjteményei
BME MIT PhD Minisymposium
BME MIT PhD Minisymposium, 2023, 30th
Cím:
Knowledge-driven Exploratory Performance Data Analysis for Execute-Order-Validate Blockchains
Létrehozó:
Al-Gburi, Noor
Kocsis, Imre
Dátum:
2023-04-24T07:25:30Z
2023-04-24T07:25:30Z
2023
Tartalmi leírás:
Exploratory data analysis (EDA) of the performance characteristics of complex IT systems, such as enterprise blockchain solutions, would significantly benefit from explicit representations of, and inference on knowledge about the analyzed system. However, connecting EDA and knowledge representation is not part of the current practice. As a novel approach, this paper presents a generic hierarchical activity ontology, connected to Hyperledger Fabric experiments with end-to-end delay, endorsement delay, ordering delay, and block validation observations. On this basis, we present rules for inferring knowledge-based visualization declarations on this ontology. Lastly, we generate Jupyter notebooks for the inferred sequence of visualizations.
Nyelv:
angol
Típus:
könyvfejezet
Formátum:
application/pdf
Azonosító: