Complete verification of deep neural networks (DNNs) can exactly determine whether the DNN satisfies a desired trustworthy property (e.g., robustness, fairness) on an infinite set of inputs or not. Despite the tremendous progress to improve the scalability of complete verifiers over the years on individual DNNs, they are inherently inefficient when a deployed DNN is updated to improve its inference speed or accuracy. The inefficiency is because the expensive verifier needs to be run from scratch on the updated DNN. To improve efficiency, we propose a new, general framework for incremental and complete DNN verification based on the design of novel theory, data structure, and algorithms. Our contributions implemented in a tool named IVAN yiel...
Despite the large number of sophisticated deep neural network (DNN) verification algorithms, DNN ver...
Deep neural networks are increasingly being used as controllers for safety-critical systems. Because...
Computing systems are becoming ever more complex, increasingly often incorporating deep learning com...
Complete verification of deep neural networks (DNNs) can exactly determine whether the DNN satisfies...
Machine learning models and in particular Deep Neural Networks are being deployed in an ever increas...
The success of Deep Learning and its potential use in many safety-critical applications has motivate...
In the last decade, deep learning has enabled remarkable progress in various fields such as image re...
In recent years, a number of methods for verifying DNNs have been developed. Because the approaches ...
The increasing use of deep neural networks for safety-critical applications, such as autonomous driv...
The increasing use of deep neural networks in a variety of applications, including some safety-criti...
Existing neural network verifiers compute a proof that each input is handled correctly under a given...
Neural networks are tools that are often used to perform functions such as object recognition in ima...
Deep neural networks (DNNs) play an increasingly important role in various computer systems. In ord...
It has increasingly been recognised that verification can contribute to the validation and debugging...
Formal verification of neural networks is critical for their safe adoption in real-world application...
Despite the large number of sophisticated deep neural network (DNN) verification algorithms, DNN ver...
Deep neural networks are increasingly being used as controllers for safety-critical systems. Because...
Computing systems are becoming ever more complex, increasingly often incorporating deep learning com...
Complete verification of deep neural networks (DNNs) can exactly determine whether the DNN satisfies...
Machine learning models and in particular Deep Neural Networks are being deployed in an ever increas...
The success of Deep Learning and its potential use in many safety-critical applications has motivate...
In the last decade, deep learning has enabled remarkable progress in various fields such as image re...
In recent years, a number of methods for verifying DNNs have been developed. Because the approaches ...
The increasing use of deep neural networks for safety-critical applications, such as autonomous driv...
The increasing use of deep neural networks in a variety of applications, including some safety-criti...
Existing neural network verifiers compute a proof that each input is handled correctly under a given...
Neural networks are tools that are often used to perform functions such as object recognition in ima...
Deep neural networks (DNNs) play an increasingly important role in various computer systems. In ord...
It has increasingly been recognised that verification can contribute to the validation and debugging...
Formal verification of neural networks is critical for their safe adoption in real-world application...
Despite the large number of sophisticated deep neural network (DNN) verification algorithms, DNN ver...
Deep neural networks are increasingly being used as controllers for safety-critical systems. Because...
Computing systems are becoming ever more complex, increasingly often incorporating deep learning com...