Programmers usually write test cases to test onboard software. However, this procedure is time-consuming and needs sufficient prior knowledge. As a result, small satellite developers may not be able to test the software thoroughly. A promising direction to solve this problem is reinforcement learning (RL) based testing. It searches testing commands to maximise the return, which represents the testing goal. Testers need not specify prior knowledge besides the reward function and hyperparameters. Reinforcement learning has matured in software testing scenarios, such as GUI testing. However, migration from such scenarios to onboard software testing is still challenging because of different environments. This work is the first research to appl...
In the context of urgent climate challenges and the pressing need for rapid technology development, ...
Reinforcement learning (RL) is a new propitious research space that is well-known nowadays on the in...
The data set available for pre-release training of a machine learning based system is often not repr...
Background: End-user satisfaction is not only dependent on the correct functioning of the software s...
This paper presents and analyzes Reinforcement Learning (RL) based approaches to solve spacecraft co...
During exploratory performance testing, software testers evaluate the performance of a software syst...
The state space of Android apps is huge, and its thorough exploration during testing remains a signi...
Generally, for executing a test activity, several testing resources such as a testing environment, i...
Performance bottlenecks resulting in high response times and low throughput of software systems can ...
System operators are faced with increasingly volatile operating conditions. In order to manage syste...
Reinforcement learning entails many intuitive and useful approaches to solving various problems. Its...
Testing web applications through the GUI can be complex and time-consuming, as it involves checking ...
The future of space exploration depends on robust, reliable communication systems. As the number of ...
Future space missions require technological advances to meet more stringent requirements. Next gener...
Software performance assurance is of great importance for the success of software products, which ar...
In the context of urgent climate challenges and the pressing need for rapid technology development, ...
Reinforcement learning (RL) is a new propitious research space that is well-known nowadays on the in...
The data set available for pre-release training of a machine learning based system is often not repr...
Background: End-user satisfaction is not only dependent on the correct functioning of the software s...
This paper presents and analyzes Reinforcement Learning (RL) based approaches to solve spacecraft co...
During exploratory performance testing, software testers evaluate the performance of a software syst...
The state space of Android apps is huge, and its thorough exploration during testing remains a signi...
Generally, for executing a test activity, several testing resources such as a testing environment, i...
Performance bottlenecks resulting in high response times and low throughput of software systems can ...
System operators are faced with increasingly volatile operating conditions. In order to manage syste...
Reinforcement learning entails many intuitive and useful approaches to solving various problems. Its...
Testing web applications through the GUI can be complex and time-consuming, as it involves checking ...
The future of space exploration depends on robust, reliable communication systems. As the number of ...
Future space missions require technological advances to meet more stringent requirements. Next gener...
Software performance assurance is of great importance for the success of software products, which ar...
In the context of urgent climate challenges and the pressing need for rapid technology development, ...
Reinforcement learning (RL) is a new propitious research space that is well-known nowadays on the in...
The data set available for pre-release training of a machine learning based system is often not repr...