The core of many large-scale machine learning (ML) applications, such as neural networks (NN), support vector machine (SVM), and convolutional neural network (CNN), is the training algorithm that iteratively updates model parameters by processing massive datasets. From a plethora of studies aiming at accelerating ML, being data parallelization and parameter server, the prevalent assumption is that all data points are equivalently relevant to model parameter updating. In this article, we challenge this assumption by proposing a criterion to measure a data point's effect on model parameter updating, and experimentally demonstrate that the majority of data points are non-critical in the training process. We develop a slim learning framework, t...
In distributed training of deep neural networks, parallel minibatch SGD is widely used to speed up t...
Data quality affects machine learning (ML) model performances, and data scientists spend considerabl...
Abstract. The chapter introduces the latest developments and results of Iterative Single Data Algori...
The core of many large-scale machine learning (ML) applications, such as neural networks (NN), suppo...
Machine learning (ML), a computational self-learning platform, is expected to be applied in a variet...
Robustness of a model plays a vital role in large scale machine learning. Classical estimators in ro...
ML systems contend with an ever-growing processing load of physical world data. These systems are ...
Machine learning has achieved tremendous successes and played increasingly essential roles in many a...
Robustness of machine learning, often referring to securing performance on different data, is always...
<p>Large scale machine learning has many characteristics that can be exploited in the system designs...
Finding a dataset of minimal cardinality to characterize the optimal parameters of a model is of par...
While machine learning is traditionally a resource intensive task, embedded systems, autonomous navi...
Machine learning teaches computers to think in a similar way to how humans do. An ML models work by ...
abstract: Recently, a well-designed and well-trained neural network can yield state-of-the-art resul...
Pervasive and networked computers have dramatically reduced the cost of collecting and distributing ...
In distributed training of deep neural networks, parallel minibatch SGD is widely used to speed up t...
Data quality affects machine learning (ML) model performances, and data scientists spend considerabl...
Abstract. The chapter introduces the latest developments and results of Iterative Single Data Algori...
The core of many large-scale machine learning (ML) applications, such as neural networks (NN), suppo...
Machine learning (ML), a computational self-learning platform, is expected to be applied in a variet...
Robustness of a model plays a vital role in large scale machine learning. Classical estimators in ro...
ML systems contend with an ever-growing processing load of physical world data. These systems are ...
Machine learning has achieved tremendous successes and played increasingly essential roles in many a...
Robustness of machine learning, often referring to securing performance on different data, is always...
<p>Large scale machine learning has many characteristics that can be exploited in the system designs...
Finding a dataset of minimal cardinality to characterize the optimal parameters of a model is of par...
While machine learning is traditionally a resource intensive task, embedded systems, autonomous navi...
Machine learning teaches computers to think in a similar way to how humans do. An ML models work by ...
abstract: Recently, a well-designed and well-trained neural network can yield state-of-the-art resul...
Pervasive and networked computers have dramatically reduced the cost of collecting and distributing ...
In distributed training of deep neural networks, parallel minibatch SGD is widely used to speed up t...
Data quality affects machine learning (ML) model performances, and data scientists spend considerabl...
Abstract. The chapter introduces the latest developments and results of Iterative Single Data Algori...