Large-scale Graph Analysis: System, Algorithm and Optimization
Yingxia Shao ; Bin Cui ; Lei Chen
This book introduces readers to a workload-aware methodology for large-scale graph algorithm optimization in graph-computing
systems, and proposes several optimization techniques that can enable these systems to handle advanced graph algorithms efficiently. Les mer
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På grunn av Brexit-tilpasninger og tiltak for å begrense covid-19 kan det dessverre oppstå forsinket levering
This book introduces readers to a workload-aware methodology for large-scale graph algorithm optimization in graph-computing
systems, and proposes several optimization techniques that can enable these systems to handle advanced graph algorithms efficiently.
More concretely, it proposes a workload-aware cost model to guide the development of high-performance algorithms. On the basis
of the cost model, the book subsequently presents a system-level optimization resulting in a partition-aware graph-computing
engine, PAGE. In addition, it presents three efficient and scalable advanced graph algorithms - the subgraph enumeration,
cohesive subgraph detection, and graph extraction algorithms.
This book offers a valuable reference guide for junior researchers, covering the latest advances in large-scale graph analysis; and for senior researchers, sharing state-of-the-art solutions based on advanced graph algorithms. In addition, all readers will find a workload-aware methodology for designing efficient large-scale graph algorithms.
This book offers a valuable reference guide for junior researchers, covering the latest advances in large-scale graph analysis; and for senior researchers, sharing state-of-the-art solutions based on advanced graph algorithms. In addition, all readers will find a workload-aware methodology for designing efficient large-scale graph algorithms.