As with general graph processing systems, partitioning data over a cluster of machines improves the scalability of graph database management systems. However, these systems will incur additional network cost during the execution of a query workload, due to inter-partition traversals. Workload-agnostic partitioning algorithms typically minimise the likelihood of any edge crossing partition boundaries. However, these partitioners are sub-optimal with respect to many workloads, especially queries, which may require more frequent traversal of specific subsets of inter-partition edges. Furthermore, they are largely unsuited to operating incrementally on dynamic, growing graphs. We present a new graph partitioning algorithm, Loom, that operates o...
Graph partitioning is considered to be a standard solution to process huge graphs efficiently when p...
Searching and mining large graphs today is critical to a variety of application domains, ranging fro...
Many graph-related applications face the challenge of managing excessive and ever-growing graph data...
As with general graph processing systems, partitioning data over a cluster of machines improves the ...
As with general graph processing systems, partitioning data over a cluster of machines improves the ...
As with general graph processing systems, partitioning data over a cluster of machines improves the ...
Partitioning large graphs, in order to balance storage and processing costs across multiple physical...
Partitioning large graphs, in order to balance storage and processing costs across multiple physical...
Partitioning large graphs, in order to balance storage and processing costs across multiple physical...
Partitioning large graphs, in order to balance storage and processing costs across multiple physical...
Partitioning large graphs, in order to balance storage and processing costs across multiple physical...
Graph partitioning has long been seen as a viable approach to addressing Graph DBMS scalability. A p...
Graph partitioning has long been seen as a viable approach to addressing Graph DBMS scalability. A p...
Graph partitioning has long been seen as a viable approach to addressing Graph DBMS scalability. A p...
Graph partitioning has long been seen as a viable approach to addressing Graph DBMS scalability. A p...
Graph partitioning is considered to be a standard solution to process huge graphs efficiently when p...
Searching and mining large graphs today is critical to a variety of application domains, ranging fro...
Many graph-related applications face the challenge of managing excessive and ever-growing graph data...
As with general graph processing systems, partitioning data over a cluster of machines improves the ...
As with general graph processing systems, partitioning data over a cluster of machines improves the ...
As with general graph processing systems, partitioning data over a cluster of machines improves the ...
Partitioning large graphs, in order to balance storage and processing costs across multiple physical...
Partitioning large graphs, in order to balance storage and processing costs across multiple physical...
Partitioning large graphs, in order to balance storage and processing costs across multiple physical...
Partitioning large graphs, in order to balance storage and processing costs across multiple physical...
Partitioning large graphs, in order to balance storage and processing costs across multiple physical...
Graph partitioning has long been seen as a viable approach to addressing Graph DBMS scalability. A p...
Graph partitioning has long been seen as a viable approach to addressing Graph DBMS scalability. A p...
Graph partitioning has long been seen as a viable approach to addressing Graph DBMS scalability. A p...
Graph partitioning has long been seen as a viable approach to addressing Graph DBMS scalability. A p...
Graph partitioning is considered to be a standard solution to process huge graphs efficiently when p...
Searching and mining large graphs today is critical to a variety of application domains, ranging fro...
Many graph-related applications face the challenge of managing excessive and ever-growing graph data...