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{{Event | {{Event | ||
− | |Acronym= | + | |Acronym=Cluster 2021 |
− | |Title=IEEE Cluster | + | |Title=2021 IEEE International Conference on Cluster Computing |
|Ordinal=23 | |Ordinal=23 | ||
|In Event Series=Event Series:IEEE Cluster | |In Event Series=Event Series:IEEE Cluster | ||
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|Event Status=as scheduled | |Event Status=as scheduled | ||
|Event Mode=online | |Event Mode=online | ||
− | |Academic Field=Computer Science | + | |Academic Field=Computer Science; Distributed Computing |
|Official Website=https://clustercomp.org/2021/ | |Official Website=https://clustercomp.org/2021/ | ||
|Submission Link=https://ssl.linklings.net/conferences/ieeecluster/ | |Submission Link=https://ssl.linklings.net/conferences/ieeecluster/ | ||
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|Contributor Type=organization | |Contributor Type=organization | ||
|Organization=IEEE Computer Society, Institute of Electrical and Electronics Engineers | |Organization=IEEE Computer Society, Institute of Electrical and Electronics Engineers | ||
+ | }} | ||
+ | {{Organizer | ||
+ | |Contributor Type=organization | ||
+ | |Organization=IEEE Technical Community on Scalable Computing, IEEE Computer Society, Institute of Electrical and Electronics Engineers | ||
}} | }} | ||
{{Event Metric}} | {{Event Metric}} |
Revision as of 09:17, 28 November 2023
The document "Cluster 2021" was published on "2023-11-28T13:16:24" on the website "ConfIDent" under the URL https://confident-conference.org/index.php/Event:IEEE Cluster 2021.
The document "Cluster 2021" describes an event in the sense of a conference.
The document "Cluster 2021" contains information about the event "Cluster 2021" with start date "2021/09/07" and end date "2021/09/10".
The event "Cluster 2021" is part of the event series identified by [[Event Series:IEEE Cluster]]
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Venue
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Topics
Area 1: Application, Algorithms, and Libraries
- HPC and Big Data application studies on large-scale clusters
- Applications at the boundary of HPC and Big Data
- New applications for converged HPC/Big Data clusters
- Application-level performance and energy modeling and measurement
- Novel algorithms on clusters
- Hybrid programming techniques in applications and libraries (e.g., MPI+X)
- Cluster benchmarks
- Application-level libraries on clusters
- Effective use of clusters in novel applications
- Performance evaluation tools
Area 2: Architecture, Network/Communications, and Management
- Node and system architecture for HPC and Big Data clusters
- Architecture for converged HPC/Big Data clusters
- Energy-efficient cluster architectures
- Packaging, power and cooling
- Accelerators, reconfigurable and domain-specific hardware
- Heterogeneous clusters
- Interconnect/memory architectures
- Single system/distributed image clusters
- Administration, monitoring and maintenance tools
Area 3: Programming and System Software
- Cluster system software/operating systems
- Programming models for converged HPC/Big Data/Machine Learning systems
- System software supporting the convergence of HPC, Big Data, and Machine Learning processing
- Cloud-enabling cluster technologies and virtualization
- Energy-efficient middleware
- Cluster system-level protocols and APIs
- Cluster security
- Resource and job management
- Programming and software development environments on clusters
- Fault tolerance and high-availability
Area 4: Data, Storage, and Visualization
- Cluster architectures for Big Data storage and processing
- Middleware for Big Data management
- Cluster-based cloud architectures for Big Data
- Storage systems supporting the convergence of HPC and Big Data processing
- File systems and I/O libraries
- Support and integration of non-volatile memory
- Visualization clusters and tiled displays
- Big data visualization tools
- Programming models for Big Data processing
- Big Data application studies on cluster architectures