parallel problem server
The Parallel Problems Server: an Interactive Tool for Large Scale Machine Learning
Imagine that you wish to classify data consisting of tens of thousands of ex(cid:173) amples residing in a twenty thousand dimensional space. We describe the Parallel Prob(cid:173) lems Server (PPServer) and MATLAB*P. In tandem they allow users of networked computers to work transparently on large data sets from within Matlab. This work is motivated by the desire to bring the many benefits of scientific computing algorithms and computational power to machine learning researchers. We demonstrate the usefulness of the system on a number of tasks.
The Parallel Problems Server: an Interactive Tool for Large Scale Machine Learning
Jr., Charles Lee Isbell, Husbands, Parry
Imagine that you wish to classify data consisting of tens of thousands of examples residing in a twenty thousand dimensional space. How can one apply standard machine learning algorithms? We describe the Parallel Problems Server (PPServer) and MATLAB*P. In tandem they allow users of networked computers to work transparently on large data sets from within Matlab. This work is motivated by the desire to bring the many benefits of scientific computing algorithms and computational power to machine learning researchers. We demonstrate the usefulness of the system on a number of tasks. For example, we perform independent components analysis on very large text corpora consisting of tens of thousands of documents, making minimal changes to the original Bell and Sejnowski Matlab source (Bell and Sejnowski, 1995). Applying ML techniques to data previously beyond their reach leads to interesting analyses of both data and algorithms.
- North America > United States > Tennessee (0.04)
- North America > United States > California > Alameda County > Berkeley (0.04)
- Africa > South Africa (0.04)
- Africa > Ethiopia (0.04)
The Parallel Problems Server: an Interactive Tool for Large Scale Machine Learning
Jr., Charles Lee Isbell, Husbands, Parry
Imagine that you wish to classify data consisting of tens of thousands of examples residing in a twenty thousand dimensional space. How can one apply standard machine learning algorithms? We describe the Parallel Problems Server (PPServer) and MATLAB*P. In tandem they allow users of networked computers to work transparently on large data sets from within Matlab. This work is motivated by the desire to bring the many benefits of scientific computing algorithms and computational power to machine learning researchers. We demonstrate the usefulness of the system on a number of tasks. For example, we perform independent components analysis on very large text corpora consisting of tens of thousands of documents, making minimal changes to the original Bell and Sejnowski Matlab source (Bell and Sejnowski, 1995). Applying ML techniques to data previously beyond their reach leads to interesting analyses of both data and algorithms.
- North America > United States > Tennessee (0.04)
- North America > United States > California > Alameda County > Berkeley (0.04)
- Africa > South Africa (0.04)
- Africa > Ethiopia (0.04)
The Parallel Problems Server: an Interactive Tool for Large Scale Machine Learning
Jr., Charles Lee Isbell, Husbands, Parry
Imagine that you wish to classify data consisting of tens of thousands of examples residingin a twenty thousand dimensional space. How can one apply standard machine learning algorithms? We describe the Parallel Problems Server(PPServer) and MATLAB*P. In tandem they allow users of networked computers to work transparently on large data sets from within Matlab. This work is motivated by the desire to bring the many benefits of scientific computing algorithms and computational power to machine learning researchers. We demonstrate the usefulness of the system on a number of tasks. For example, we perform independent components analysis on very large text corpora consisting of tens of thousands of documents, making minimal changes to the original Bell and Sejnowski Matlab source (Bell and Sejnowski, 1995).Applying ML techniques to data previously beyond their reach leads to interesting analyses of both data and algorithms.
- North America > United States > Tennessee (0.04)
- North America > United States > California > Alameda County > Berkeley (0.04)
- Africa > South Africa (0.04)
- Africa > Ethiopia (0.04)