The amount of data generated every day is growing exponentially in the big data era. A significant portion of this data is stored as graphs in various domains, such as online retail and social networks. Analyzing large-scale graphs provides important insights that are highly utilized in many areas, such as recommendation systems, banking systems, and medical diagnosis. To accommodate analysis on large-scale graphs, developers from industry and academia design the distributed graph processing systems. However, processing graphs in a distributed manner suffers performance inefficiencies caused by workload imbalance and redundant computations. For instance, while data centers are trending towards a large amount of heterogeneous processing ma...
In the Big Data era, graph processing has been widely used to represent complex system structure, ca...
As the study of large graphs over hundreds of gigabytes becomes increasingly popular for various dat...
Graph analytics systems are used in a wide variety of applications including health care, electronic...
The amount of data generated every day is growing exponentially in the big data era. A significant p...
Graph processing is increasingly popular in a variety of scientific and engineering domains. Consequ...
Distributed, shared-nothing architectures of commodity machines are a popular design choice for the ...
Distributed graph processing systems such as Pregel, PowerGraph, or GraphX have gained popularity du...
Graph processing is increasingly popular in a variety of scientific and engineering domains. Consequ...
Graphs have become increasingly important to represent highly-interconnected structures and schema-l...
Graphs have become increasingly important to represent highly-interconnected structures and schema-l...
Graph processing is increasingly used in a variety of domains, from engineering to logistics and fro...
Existing distributed graph analytics systems are categorized into two main groups: those that focus ...
Pregel [23] was recently introduced as a scalable graph min-ing system that can provide significant ...
Graph processing is increasingly used in a variety of domains, from engineering to logistics and fro...
Load imbalance in an application can lead to degradation of performance and a significant drop in sy...
In the Big Data era, graph processing has been widely used to represent complex system structure, ca...
As the study of large graphs over hundreds of gigabytes becomes increasingly popular for various dat...
Graph analytics systems are used in a wide variety of applications including health care, electronic...
The amount of data generated every day is growing exponentially in the big data era. A significant p...
Graph processing is increasingly popular in a variety of scientific and engineering domains. Consequ...
Distributed, shared-nothing architectures of commodity machines are a popular design choice for the ...
Distributed graph processing systems such as Pregel, PowerGraph, or GraphX have gained popularity du...
Graph processing is increasingly popular in a variety of scientific and engineering domains. Consequ...
Graphs have become increasingly important to represent highly-interconnected structures and schema-l...
Graphs have become increasingly important to represent highly-interconnected structures and schema-l...
Graph processing is increasingly used in a variety of domains, from engineering to logistics and fro...
Existing distributed graph analytics systems are categorized into two main groups: those that focus ...
Pregel [23] was recently introduced as a scalable graph min-ing system that can provide significant ...
Graph processing is increasingly used in a variety of domains, from engineering to logistics and fro...
Load imbalance in an application can lead to degradation of performance and a significant drop in sy...
In the Big Data era, graph processing has been widely used to represent complex system structure, ca...
As the study of large graphs over hundreds of gigabytes becomes increasingly popular for various dat...
Graph analytics systems are used in a wide variety of applications including health care, electronic...