Unlike their offline traditional counterpart, online machine learning models are capable of handling data distribution shifts while serving at the test time. However, they have limitations in addressing this phenomenon. They are either expensive or unreliable. We propose augmenting an online learning approach called test-time adaptation with a continual conscious active fine-tuning layer to develop an enhanced variation that can handle drastic data distribution shifts reliably and cost-effectively. The proposed augmentation incorporates the following aspects: a continual aspect to confront the ever-ending data distribution shifts, a conscious aspect to imply that fine-tuning is a distribution-shift-aware process that occurs at the appropria...
When deployed in the real world, machine learning models inevitably encounter changes in the data di...
Automated Machine Learning (AutoML) has been used successfully in settings where the learning task i...
The research that constitutes this thesis was driven by the two related goals in mind. The first one...
Machine learning (ML) has become ubiquitous in various disciplines and applications, serving as a po...
Designing robust models is critical for reliable deployment of artificial intelligence systems. Deep...
The standard supervised learning paradigm works effectively when training data shares the same distr...
Machine learning models are subject to changing circumstances, and will degrade over time. Nowadays,...
We present a novel hybrid technique for improving the predictive per-formance of an online Machine L...
Many modern machine learning algorithms, though successful, are still based on heuristics. In a typi...
International audienceNetwork-traffic data commonly arrives in the form of fast data streams; online...
Automated Machine Learning (AutoML) has been used successfully in settings where the learning task i...
Machine-learned components, particularly those trained using deep learning methods, are becoming int...
PhD thesisMany practical problems such as forecasting, real-time decisionmaking, streaming data appl...
Test-time adaptation (TTA) seeks to tackle potential distribution shifts between training and testin...
Machine learning is becoming an attractive topic for researchers and industrial firms in the area of...
When deployed in the real world, machine learning models inevitably encounter changes in the data di...
Automated Machine Learning (AutoML) has been used successfully in settings where the learning task i...
The research that constitutes this thesis was driven by the two related goals in mind. The first one...
Machine learning (ML) has become ubiquitous in various disciplines and applications, serving as a po...
Designing robust models is critical for reliable deployment of artificial intelligence systems. Deep...
The standard supervised learning paradigm works effectively when training data shares the same distr...
Machine learning models are subject to changing circumstances, and will degrade over time. Nowadays,...
We present a novel hybrid technique for improving the predictive per-formance of an online Machine L...
Many modern machine learning algorithms, though successful, are still based on heuristics. In a typi...
International audienceNetwork-traffic data commonly arrives in the form of fast data streams; online...
Automated Machine Learning (AutoML) has been used successfully in settings where the learning task i...
Machine-learned components, particularly those trained using deep learning methods, are becoming int...
PhD thesisMany practical problems such as forecasting, real-time decisionmaking, streaming data appl...
Test-time adaptation (TTA) seeks to tackle potential distribution shifts between training and testin...
Machine learning is becoming an attractive topic for researchers and industrial firms in the area of...
When deployed in the real world, machine learning models inevitably encounter changes in the data di...
Automated Machine Learning (AutoML) has been used successfully in settings where the learning task i...
The research that constitutes this thesis was driven by the two related goals in mind. The first one...