KDCloud 2010 - The 1st International Workshop on Knowledge Discovery Using Cloud and Distributed Computing Platforms (KDCloud, 2010)
Topics/Call fo Papers
The 1st International Workshop on Knowledge Discovery Using Cloud and Distributed Computing Platforms (KDCloud, 2010) provides an international platform to share and discuss recent research results in adopting cloud and distributed computing resources for data mining and knowledge discovery tasks.
Synopsis: Processing large datasets using dedicated supercomputers alone is not an economical solution. Recent trends show that distributed computing is becoming a more practical and economical solution for many organizations. Cloud computing, which is a large-scale distributed computing, has attracted significant attention of both industry and academia in recent years. Cloud computing is fast becoming a cheaper alternative to costly centralized systems. Many recent studies have shown the utility of cloud computing in data mining, machine learning and knowledge discovery. This workshop intends to bring together researchers, developers, and practitioners from academia, government, and industry to discuss new and emerging trends in cloud computing technologies, programming models, and software services and outline the data mining and knowledge discovery approaches that can efficiently exploit this modern computing infrastructures. This workshop also seeks to identify the greatest challenges in embracing cloud computing infrastructure for scaling algorithms to petabyte sized datasets. Thus, we invite all researchers, developers, and users to participate in this event and share, contribute, and discuss the emerging challenges in developing data mining and knowledge discovery solutions and frameworks around cloud and distributed computing platforms.
Topics: The major topics of interest to the workshop include but are not limited to:
Programing models and tools needed for data mining, machine learning, and knowledge discovery
Scalability and complexity issues
Security and privacy issues relevant to KD community
Best use cases: are there a class of algorithms that best suit to cloud and distributed computing platforms
Performance studies comparing clouds, grids, and clusters
Performance studies comparing various distributed file systems for data intensive applications
Customizations and extensions of existing software infrastructures such as Hadoop for streaming, spatial, and spatiotemporal data mining
Applications: Earth science, climate, energy, business, text, web and performance logs, medical, biology, image and video.
Proceedings: Accepted papers will be included in a ICDM Workshop Proceedings volume, to be published by IEEE Computer Society Press, which will also be included in the IEEE Digital Library.
Synopsis: Processing large datasets using dedicated supercomputers alone is not an economical solution. Recent trends show that distributed computing is becoming a more practical and economical solution for many organizations. Cloud computing, which is a large-scale distributed computing, has attracted significant attention of both industry and academia in recent years. Cloud computing is fast becoming a cheaper alternative to costly centralized systems. Many recent studies have shown the utility of cloud computing in data mining, machine learning and knowledge discovery. This workshop intends to bring together researchers, developers, and practitioners from academia, government, and industry to discuss new and emerging trends in cloud computing technologies, programming models, and software services and outline the data mining and knowledge discovery approaches that can efficiently exploit this modern computing infrastructures. This workshop also seeks to identify the greatest challenges in embracing cloud computing infrastructure for scaling algorithms to petabyte sized datasets. Thus, we invite all researchers, developers, and users to participate in this event and share, contribute, and discuss the emerging challenges in developing data mining and knowledge discovery solutions and frameworks around cloud and distributed computing platforms.
Topics: The major topics of interest to the workshop include but are not limited to:
Programing models and tools needed for data mining, machine learning, and knowledge discovery
Scalability and complexity issues
Security and privacy issues relevant to KD community
Best use cases: are there a class of algorithms that best suit to cloud and distributed computing platforms
Performance studies comparing clouds, grids, and clusters
Performance studies comparing various distributed file systems for data intensive applications
Customizations and extensions of existing software infrastructures such as Hadoop for streaming, spatial, and spatiotemporal data mining
Applications: Earth science, climate, energy, business, text, web and performance logs, medical, biology, image and video.
Proceedings: Accepted papers will be included in a ICDM Workshop Proceedings volume, to be published by IEEE Computer Society Press, which will also be included in the IEEE Digital Library.
Other CFPs
- The 2010 International Workshop on Spatial and Spatiotemporal Data Mining (SSTDM-10)
- The 2010 Workshop on Social Interactions Analysis and Services Providers (SIASP)
- IEEE ICDM Workshop on Visual Analytics and Knowledge Discovery ? VAKD '10
- IEEE International Workshop on Privacy Aspects of Data Mining
- Third International Workshop on Semantic Aspects in Data Mining (SADM'10)
Last modified: 2010-06-04 19:32:22