Title
An Empirical Study of Computation-Intensive Loops for Identifying and Classifying Loop Kernels: Full Research Paper.
Abstract
The process of performance tuning is time consuming and costly even if it is carried out automatically. It is crucial to learn from the experience of experts. Our long-term goal is to construct a database of facts extracted from specific performance tuning histories of computation-intensive applications such that we can search the database for promising optimization patterns that fit a given kernel. In this study, as a significant step toward our goal, we explored a thousand computation-intensive applications in terms of the distribution of kernel classes, each of which is related to expected efficiency and specific tuning patterns. To statistically estimate the distribution of the kernel classes, 100 loops were randomly sampled and then manually classified by experienced performance engineers. The result indicates that 50-70% of the kernels are memory-bound and hence difficult to run efficiently on modern scalar processors. In addition, based on the classification results, we constructed experimental classifiers for identifying loop kernels and for predicting kernel classes, which achieved cross-validated classification accuracy of 81% and 65%, respectively.
Year
DOI
Venue
2017
10.1145/3030207.3030217
ICPE
Field
DocType
Citations 
Kernel (linear algebra),Data mining,Scalar processor,Radial basis function kernel,Kernel embedding of distributions,Computer science,Tree kernel,Artificial intelligence,Performance tuning,Machine learning,Empirical research,Computation
Conference
1
PageRank 
References 
Authors
0.36
18
4
Name
Order
Citations
PageRank
Masatomo Hashimoto1685.97
Masaaki Terai231.73
Toshiyuki Maeda3213.70
Kazuo Minami4608.57