Over the past few years, the interest and application of machine learning algorithms has risen exponentially. Machine learning has found extensive use in diverse fields like self-driving cars, speech recognition, image processing, computer vision, molecular biology, security etc. A lot of recent research involves evaluation of machine learning applications on different architectures. In this thesis, we evaluate the performance of six common machine learning algorithms: K-Means, K-Nearest Neighbors, Linear Regression, Latent Dirichlet Allocation, Deep Neural Network, and Radix Sort on RAPID. RAPID is a highly parallel computer architecture developed at Oracle Labs for accelerating and improving the performance of database analytic workloads....
Machine learning algorithms have opened up countless doors for scientists tackling problems that had...
The thesis tries to investigate on how a machine learning tool can be used to achieve performance pr...
The amount of available data has allowed the field of machine learning to flourish. But with growing...
Over the past few years, the interest and application of machine learning algorithms has risen expon...
The resurgence of machine learning since the late 1990s has been enabled by significant advances in ...
Huge data sets containing millions of training examples with a large number of attributes are relati...
This dissertation work presents various approaches toward accelerating training of deep neural netwo...
We are at the beginning of the multicore era. Computers will have increasingly many cores (processor...
Performance analysis tools are essential to the maintenance of efficient parallel execution of scien...
Consistently growing architectural complexity and machine scales make creating accurate performance ...
Quicksort is well-know algorithm used for sorting, making O(n log n) comparisons to sort a dataset o...
Traditional machine learning has been largely concerned with developing techniques for small or mode...
In this community review report, we discuss applications and techniques for fast machine learning (M...
This thesis improves the accuracy and run-time of two selected machine learning algorithms, the firs...
The move to more parallel computing architectures places more responsibility on the programmer to ac...
Machine learning algorithms have opened up countless doors for scientists tackling problems that had...
The thesis tries to investigate on how a machine learning tool can be used to achieve performance pr...
The amount of available data has allowed the field of machine learning to flourish. But with growing...
Over the past few years, the interest and application of machine learning algorithms has risen expon...
The resurgence of machine learning since the late 1990s has been enabled by significant advances in ...
Huge data sets containing millions of training examples with a large number of attributes are relati...
This dissertation work presents various approaches toward accelerating training of deep neural netwo...
We are at the beginning of the multicore era. Computers will have increasingly many cores (processor...
Performance analysis tools are essential to the maintenance of efficient parallel execution of scien...
Consistently growing architectural complexity and machine scales make creating accurate performance ...
Quicksort is well-know algorithm used for sorting, making O(n log n) comparisons to sort a dataset o...
Traditional machine learning has been largely concerned with developing techniques for small or mode...
In this community review report, we discuss applications and techniques for fast machine learning (M...
This thesis improves the accuracy and run-time of two selected machine learning algorithms, the firs...
The move to more parallel computing architectures places more responsibility on the programmer to ac...
Machine learning algorithms have opened up countless doors for scientists tackling problems that had...
The thesis tries to investigate on how a machine learning tool can be used to achieve performance pr...
The amount of available data has allowed the field of machine learning to flourish. But with growing...