Optimizing Differential Computation for Large-Scale Graph Processing
Abstract
References
Index Terms
- Optimizing Differential Computation for Large-Scale Graph Processing
Recommendations
Efficient Processing of Large Graphs via Input Reduction
HPDC '16: Proceedings of the 25th ACM International Symposium on High-Performance Parallel and Distributed ComputingLarge-scale parallel graph analytics involves executing iterative algorithms (e.g., PageRank, Shortest Paths, etc.) that are both data- and compute-intensive. In this work we construct faster versions of iterative graph algorithms from their original ...
Tuning the granularity of parallelism for distributed graph processing
Popular distributed graph processing frameworks, such as Pregel and GraphLab, are based on the vertex-centric computation model, where users write their customized Compute function for each vertex to process the data iteratively. Vertices are evenly ...
Understanding Graph Computation Behavior to Enable Robust Benchmarking
HPDC '15: Proceedings of the 24th International Symposium on High-Performance Parallel and Distributed ComputingGraph processing is important for a growing range of applications. Current performance studies of parallel graph computation employ a large variety of algorithms and graphs. To explore their robustness, we characterize behavior variation across ...
Comments
Information & Contributors
Information
Published In
![cover image ACM Conferences](/cms/asset/e430a6d0-7975-4807-b40a-7ef7dd082fdf/3661304.cover.jpg)
Sponsors
Publisher
Association for Computing Machinery
New York, NY, United States
Publication History
Check for updates
Author Tags
Qualifiers
- Research-article
- Research
- Refereed limited
Conference
Acceptance Rates
Contributors
Other Metrics
Bibliometrics & Citations
Bibliometrics
Article Metrics
- 0Total Citations
- 18Total Downloads
- Downloads (Last 12 months)18
- Downloads (Last 6 weeks)15
Other Metrics
Citations
View Options
Get Access
Login options
Check if you have access through your login credentials or your institution to get full access on this article.
Sign in