The field of software verification has produced a wide array of algorithmic techniques that can prove a variety of properties of a given program. It has been demonstrated that the performance of these techniques can vary up to 4 orders of magnitude on the same verification problem. Even for verification experts, it is difficult to decide which tool will perform best on a given problem. For general users, deciding the best tool for their verification problem is effectively impossible. In this work, we present Graves, a selection strategy based on graph neural networks (GNNs). Graves generates a graph representation of a program from which a GNN predicts a score for a verifier that indicates its performance on the program. We evaluate Gra...
This paper presents Verisig 2.0, a verification tool for closed-loop systems with neural network (NN...
The abundance of publicly available source code repositories, in conjunction with the advances in ne...
The success of Deep Learning and its potential use in many safety-critical applications has motivate...
This study analyzes how applicable Graph Neural Networks (GNNs) can be used for learning the labels ...
Formal verification of neural networks is essential for their deployment in safetycritical areas. Ma...
Formal verification of neural networks is essential for their deployment in safety-critical areas. M...
Deep neural networks have achieved great success on many tasks and even surpass human performance in...
Machine learning models and in particular Deep Neural Networks are being deployed in an ever increas...
International audienceIncreasing the automaticity of proofs in deductive verification of C programs ...
The demand for formal verification tools for neural networks has increased as neural networks have b...
Foundational verification allows programmers to build software which has been empirically shown to ...
This paper presents a neural network based verification method in an HMMbased online Korean handwr...
Recently, Graph Neural Networks (GNNs) have been applied for scheduling jobs over clusters, achievin...
As neural networks are increasingly being integrated into mission-critical systems, it is becoming c...
SMT solvers are often used in the back end of different software engineering tools—e.g., program ver...
This paper presents Verisig 2.0, a verification tool for closed-loop systems with neural network (NN...
The abundance of publicly available source code repositories, in conjunction with the advances in ne...
The success of Deep Learning and its potential use in many safety-critical applications has motivate...
This study analyzes how applicable Graph Neural Networks (GNNs) can be used for learning the labels ...
Formal verification of neural networks is essential for their deployment in safetycritical areas. Ma...
Formal verification of neural networks is essential for their deployment in safety-critical areas. M...
Deep neural networks have achieved great success on many tasks and even surpass human performance in...
Machine learning models and in particular Deep Neural Networks are being deployed in an ever increas...
International audienceIncreasing the automaticity of proofs in deductive verification of C programs ...
The demand for formal verification tools for neural networks has increased as neural networks have b...
Foundational verification allows programmers to build software which has been empirically shown to ...
This paper presents a neural network based verification method in an HMMbased online Korean handwr...
Recently, Graph Neural Networks (GNNs) have been applied for scheduling jobs over clusters, achievin...
As neural networks are increasingly being integrated into mission-critical systems, it is becoming c...
SMT solvers are often used in the back end of different software engineering tools—e.g., program ver...
This paper presents Verisig 2.0, a verification tool for closed-loop systems with neural network (NN...
The abundance of publicly available source code repositories, in conjunction with the advances in ne...
The success of Deep Learning and its potential use in many safety-critical applications has motivate...