AI-powered edge devices currently lack the ability to adapt their embedded inference models to the ever-changing envi ronment. To tackle this issue, Continual Learning (CL) strategies aim at incrementally improving the decision capabilities based on newly acquired data. In this work, after quantifying memory and computational requirements of CL algorithms, we define a novel HW/SW extreme-edge platform featuring a low power RISC-V octa-core cluster tailored for on-demand incremental learning over locally sensed data. The presented multi-core HW/SW architecture achieves a peak performance of 2.21 and 1.70 MAC/cycle, respectively, when running forward and backward steps of the gradient descent. We report the trade-off between memory footprint,...
The robustness of autonomous inference-only devices deployed in the real world is limited by data di...
Continual Learning (CL) is a machine learning approach which focuses on continuous learning of data ...
Real-time on-device continual learning is needed for new applications such as home robots, user pers...
AI-powered edge devices currently lack the ability to adapt their embedded inference models to the e...
Edge AI systems are increasingly being adopted in a wide range of application domains. These systems...
Continual learning approaches help deep neural network models adapt and learn incrementally by tryin...
Training deep neural networks at the edge on light computational devices, embedded systems and robot...
Training deep networks on light computational devices is nowadays very challenging. Continual learni...
Continual learning approaches help deep neural network models adapt and learn incrementally by tryin...
In the last few years, research and development on Deep Learning models & techniques for ultra-l...
The number of Internet of Things (IoT) edge devices are exponentially on the rise that have both com...
In the last few years, research and development on Deep Learning models and techniques for ultra-low...
Random forests (RFs) use a collection of decision trees (DTs) to perform the classification or regre...
The robustness of autonomous inference-only devices deployed in the real world is limited by data di...
Continual Learning (CL) is a machine learning approach which focuses on continuous learning of data ...
Real-time on-device continual learning is needed for new applications such as home robots, user pers...
AI-powered edge devices currently lack the ability to adapt their embedded inference models to the e...
Edge AI systems are increasingly being adopted in a wide range of application domains. These systems...
Continual learning approaches help deep neural network models adapt and learn incrementally by tryin...
Training deep neural networks at the edge on light computational devices, embedded systems and robot...
Training deep networks on light computational devices is nowadays very challenging. Continual learni...
Continual learning approaches help deep neural network models adapt and learn incrementally by tryin...
In the last few years, research and development on Deep Learning models & techniques for ultra-l...
The number of Internet of Things (IoT) edge devices are exponentially on the rise that have both com...
In the last few years, research and development on Deep Learning models and techniques for ultra-low...
Random forests (RFs) use a collection of decision trees (DTs) to perform the classification or regre...
The robustness of autonomous inference-only devices deployed in the real world is limited by data di...
Continual Learning (CL) is a machine learning approach which focuses on continuous learning of data ...
Real-time on-device continual learning is needed for new applications such as home robots, user pers...