Chaos scales graph processing from secondary storage to multiple machines in a cluster. Earlier systems that process graphs from secondary storage are restricted to a single ma- chine, and therefore limited by the bandwidth and capacity of the storage system on a single machine. Chaos is limited only by the aggregate bandwidth and capacity of all storage devices in the entire cluster. Chaos builds on the streaming partitions introduced by X-Stream in order to achieve sequential access to storage, but parallelizes the execution of streaming partitions. Chaos is novel in three ways. First, Chaos partitions for sequential storage access, rather than for locality and load balance, re- sulting in much lower pre-processing times. Second, Chaos di...
Research areas: Graph mining algorithmsLarge graphs with billions of nodes and edges are increasingl...
With the increasing availability and scale of graph data from Web 2.0, graph partitioning becomes on...
The abundance of large graphs and the high potential for insight extraction from them have fueled in...
Chaos scales graph processing from secondary storage to multiple machines in a cluster. Earlier syst...
The determinant of performance in scale-up graph process-ing on a single system is the speed at whic...
With the rapidly growing demand of graph processing in the real world, a large number of iterative g...
Existing distributed graph analytics systems are categorized into two main groups: those that focus ...
Graph processing systems are used in a wide variety of fields, ranging from biology to social networ...
Recent studies show that graph processing systems on a single machine can achieve competitive perfor...
Iterative computation on large graphs has challenged system research from two aspects: (1) how to co...
Computing connected components is a core operation on graph data. Since billion-scale graphs cannot ...
Abstract—Graph analysis performs many random reads and writes, thus these workloads are typically pe...
Graph analysis performs many random reads and writes, thus, these workloads are typically performed ...
With the increasing availability and scale of graph data from Web 2.0, graph partitioning becomes on...
X-Stream is a system for processing both in-memory and out-of-core graphs on a single shared-memory ...
Research areas: Graph mining algorithmsLarge graphs with billions of nodes and edges are increasingl...
With the increasing availability and scale of graph data from Web 2.0, graph partitioning becomes on...
The abundance of large graphs and the high potential for insight extraction from them have fueled in...
Chaos scales graph processing from secondary storage to multiple machines in a cluster. Earlier syst...
The determinant of performance in scale-up graph process-ing on a single system is the speed at whic...
With the rapidly growing demand of graph processing in the real world, a large number of iterative g...
Existing distributed graph analytics systems are categorized into two main groups: those that focus ...
Graph processing systems are used in a wide variety of fields, ranging from biology to social networ...
Recent studies show that graph processing systems on a single machine can achieve competitive perfor...
Iterative computation on large graphs has challenged system research from two aspects: (1) how to co...
Computing connected components is a core operation on graph data. Since billion-scale graphs cannot ...
Abstract—Graph analysis performs many random reads and writes, thus these workloads are typically pe...
Graph analysis performs many random reads and writes, thus, these workloads are typically performed ...
With the increasing availability and scale of graph data from Web 2.0, graph partitioning becomes on...
X-Stream is a system for processing both in-memory and out-of-core graphs on a single shared-memory ...
Research areas: Graph mining algorithmsLarge graphs with billions of nodes and edges are increasingl...
With the increasing availability and scale of graph data from Web 2.0, graph partitioning becomes on...
The abundance of large graphs and the high potential for insight extraction from them have fueled in...