Machine learning algorithms are complex to model on hardware. This is due to the fact that these algorithms require a lot of complex design systems, which are not easily synthesizable. Therefore, over the years, multiple researchers have developed various state-of-the art techniques, each of them has certain distinct advantages over the others. In this text, we compare the different techniques for hardware modelling of different machine learning (ML) algorithms, and their hardware-level performance. This text will be useful for any researcher or system designer that needs to first evaluate the optimum techniques for ML design, and then inspired by this, they can further extend it and optimize the system’s performance. Our evaluation is base...
In traditional computer architecture, there are six primary components: the controller, arithmetic u...
Modern handheld devices rely on specialized hardware for evaluating machine learning algorithms. Thi...
Advanced computing systems have long been enablers for breakthroughs in Machine Learning (ML) algori...
Machine learning algorithms are complex to model on hardware. This is due to the fact that these alg...
Machine learning (ML) has been extensively employed for strategy optimization, decision making, data...
The innovation in computer architecture and the development of simulation tools are influencing each...
The innovation in computer architecture and the development of simulation tools are influencing each...
Machine Learning involves analysing large sets of training data to make predictions and decisions to...
The aim of this project is to develop customizable hardware that can perform Machine Learning tasks....
Training machine learning (ML) algorithms is a computationally intensive process, which is frequentl...
The resurgence of machine learning since the late 1990s has been enabled by significant advances in ...
Advanced computing systems have long been enablers for breakthroughs in Machine Learning (ML) algori...
In recent years, the advancements in specialized hardware architectures have supported the industry ...
Modern handheld devices rely on specialized hardware for evaluating machine learning algorithms. Thi...
Modern handheld devices rely on specialized hardware for evaluating machine learning algorithms. Thi...
In traditional computer architecture, there are six primary components: the controller, arithmetic u...
Modern handheld devices rely on specialized hardware for evaluating machine learning algorithms. Thi...
Advanced computing systems have long been enablers for breakthroughs in Machine Learning (ML) algori...
Machine learning algorithms are complex to model on hardware. This is due to the fact that these alg...
Machine learning (ML) has been extensively employed for strategy optimization, decision making, data...
The innovation in computer architecture and the development of simulation tools are influencing each...
The innovation in computer architecture and the development of simulation tools are influencing each...
Machine Learning involves analysing large sets of training data to make predictions and decisions to...
The aim of this project is to develop customizable hardware that can perform Machine Learning tasks....
Training machine learning (ML) algorithms is a computationally intensive process, which is frequentl...
The resurgence of machine learning since the late 1990s has been enabled by significant advances in ...
Advanced computing systems have long been enablers for breakthroughs in Machine Learning (ML) algori...
In recent years, the advancements in specialized hardware architectures have supported the industry ...
Modern handheld devices rely on specialized hardware for evaluating machine learning algorithms. Thi...
Modern handheld devices rely on specialized hardware for evaluating machine learning algorithms. Thi...
In traditional computer architecture, there are six primary components: the controller, arithmetic u...
Modern handheld devices rely on specialized hardware for evaluating machine learning algorithms. Thi...
Advanced computing systems have long been enablers for breakthroughs in Machine Learning (ML) algori...