When deploying machine learning models in high-stakes robotics applications, the ability to detect unsafe situations is crucial. Early warning systems can provide alerts when an unsafe situation is imminent (in the absence of corrective action). To reliably improve safety, these warning systems should have a provable false negative rate; i.e. of the situations that are unsafe, fewer than $\epsilon$ will occur without an alert. In this work, we present a framework that combines a statistical inference technique known as conformal prediction with a simulator of robot/environment dynamics, in order to tune warning systems to provably achieve an $\epsilon$ false negative rate using as few as $1/\epsilon$ data points. We apply our framework to a...
Task learning in robotics requires repeatedly executing the same actions in different states to lear...
Robots are increasingly expected to go beyond controlled environments in laboratories and factories,...
Reinforcement learning is an increasingly popular framework that enables robots to learn to perform ...
Reinforcement learning (RL) algorithms can achieve state-of-the-art performance in decision-making a...
We are motivated by the problem of performing failure prediction for safety-critical robotic systems...
As safety violations can lead to severe consequences in real-world robotic applications, the increas...
The algorithm-design paradigm of algorithms using predictions is explored as a means of incorporatin...
Complex safety-critical cyber-physical systems, such as autonomous cars or collaborative robots, are...
This paper focuses on the problem of detecting and reacting to changes in the distribution of a sens...
International audienceMachine learning (ML) provides no guarantee of safe operation in safety-critic...
Autonomous systems increasingly use components that incorporate machine learning and other AI-based ...
Artificial Intelligence systems are characterized by always less interactions with humans today, lea...
Implementation of learning-based control remains challenging due to the absence of safety guarantees...
© 2014 IEEE. This paper presents a novel approach to the run-time detection of faults in autonomous ...
Safe handling of hazardous driving situations is a task of high practical relevance for building rel...
Task learning in robotics requires repeatedly executing the same actions in different states to lear...
Robots are increasingly expected to go beyond controlled environments in laboratories and factories,...
Reinforcement learning is an increasingly popular framework that enables robots to learn to perform ...
Reinforcement learning (RL) algorithms can achieve state-of-the-art performance in decision-making a...
We are motivated by the problem of performing failure prediction for safety-critical robotic systems...
As safety violations can lead to severe consequences in real-world robotic applications, the increas...
The algorithm-design paradigm of algorithms using predictions is explored as a means of incorporatin...
Complex safety-critical cyber-physical systems, such as autonomous cars or collaborative robots, are...
This paper focuses on the problem of detecting and reacting to changes in the distribution of a sens...
International audienceMachine learning (ML) provides no guarantee of safe operation in safety-critic...
Autonomous systems increasingly use components that incorporate machine learning and other AI-based ...
Artificial Intelligence systems are characterized by always less interactions with humans today, lea...
Implementation of learning-based control remains challenging due to the absence of safety guarantees...
© 2014 IEEE. This paper presents a novel approach to the run-time detection of faults in autonomous ...
Safe handling of hazardous driving situations is a task of high practical relevance for building rel...
Task learning in robotics requires repeatedly executing the same actions in different states to lear...
Robots are increasingly expected to go beyond controlled environments in laboratories and factories,...
Reinforcement learning is an increasingly popular framework that enables robots to learn to perform ...