This paper describes a dynamic framework for mapping the threads of parallel applications to the computation cores of parallel systems. We propose a feedback-based mechanism where the performance of each thread is collected and used to drive the reinforcement-learning policy of assigning affinities of threads to CPU cores. The proposed framework is flexible enough to address different optimization criteria, such as maximum processing speed and minimum speed variance among threads. We evaluate the framework on the Ant Colony optimization parallel benchmark from the heuristic optimization application domain, and demonstrate that we can achieve an improvement of 12% in the execution time compared to the default operating system scheduling/mapp...
Future integrated systems will contain billions of transistors, composing tens to hundreds of IP cor...
Conventionally programmed systems (e.g. robots) are not able to adapt to unforeseen changes in their...
This thesis presents feedback-driven adaptive algorithms for efficient scheduling of parallel jobs o...
This paper describes a dynamic framework for mapping the threads of parallel applications to the com...
This paper describes a dynamic framework for mapping the threads of parallel applications to the com...
This paper introduces a resource allocation framework specifically tailored for addressing the probl...
This paper introduces a reinforcement-learning based resource allocation framework for dynamic place...
This paper introduces a learning-based framework for dynamic placement of threads of parallel applic...
This paper introduces a learning-based framework for dynamic placement of threads of parallel applic...
We report on the improvements. that can be achieved by applying machine learning techniques, in part...
Modern day hardware platforms are parallel and diverse, ranging from mobiles to data centers. Mains...
We report on the improvements that can be achieved by applying machine learning techniques, in parti...
Reinforcement learning is an important family of algo-rithms that have been extremely effective in f...
Scientific applications are large, complex, irregular, and computationally intensive and are charact...
In this study, we investigate a real-time system where computationally intensive tasks are executed ...
Future integrated systems will contain billions of transistors, composing tens to hundreds of IP cor...
Conventionally programmed systems (e.g. robots) are not able to adapt to unforeseen changes in their...
This thesis presents feedback-driven adaptive algorithms for efficient scheduling of parallel jobs o...
This paper describes a dynamic framework for mapping the threads of parallel applications to the com...
This paper describes a dynamic framework for mapping the threads of parallel applications to the com...
This paper introduces a resource allocation framework specifically tailored for addressing the probl...
This paper introduces a reinforcement-learning based resource allocation framework for dynamic place...
This paper introduces a learning-based framework for dynamic placement of threads of parallel applic...
This paper introduces a learning-based framework for dynamic placement of threads of parallel applic...
We report on the improvements. that can be achieved by applying machine learning techniques, in part...
Modern day hardware platforms are parallel and diverse, ranging from mobiles to data centers. Mains...
We report on the improvements that can be achieved by applying machine learning techniques, in parti...
Reinforcement learning is an important family of algo-rithms that have been extremely effective in f...
Scientific applications are large, complex, irregular, and computationally intensive and are charact...
In this study, we investigate a real-time system where computationally intensive tasks are executed ...
Future integrated systems will contain billions of transistors, composing tens to hundreds of IP cor...
Conventionally programmed systems (e.g. robots) are not able to adapt to unforeseen changes in their...
This thesis presents feedback-driven adaptive algorithms for efficient scheduling of parallel jobs o...