The semiconductors industry benefits greatly from the integration of Machine Learning (ML)-based techniques in Technology Computer-Aided Design (TCAD) methods. The performance of ML models however relies heavily on the quality and quantity of training datasets. They can be particularly difficult to obtain in the semiconductor industry due to the complexity and expense of the device fabrication. In this paper, we propose a self-augmentation strategy for improving ML-based device modeling using variational autoencoder-based techniques. These techniques require a small number of experimental data points and does not rely on TCAD tools. To demonstrate the effectiveness of our approach, we apply it to a deep neural network-based prediction task ...
Due to the aggressive scaling down of logic semiconductors, the difficulty of semiconductor componen...
Consumer electronics have become an integral part of people’s life putting at their disposal immense...
The industrial production of semiconductor assemblies is subject to high requirements. As a result, ...
A machine learning (ML) model by combing two autoencoders and one linear regression model is propose...
A machine learning (ML) model by combing two autoencoders and one linear regression model is propose...
A state-of-the-art Machine Learning (ML) based approach, by modeling the behavior of Gallium Nitride...
A state-of-the-art Machine Learning (ML) based approach, by modeling the behavior of Gallium Nitride...
A state-of-the-art Machine Learning (ML) based approach, by modeling the behavior of Gallium Nitride...
A state-of-the-art Machine Learning (ML) based approach, by modeling the behavior of Gallium Nitride...
A state-of-the-art Machine Learning (ML) based approach, by modeling the behavior of Gallium Nitride...
A state-of-the-art Machine Learning (ML) based approach, by modeling the behavior of Gallium Nitride...
In this dissertation, we propose two algorithms for semiconductor modeling and classification to uti...
In this dissertation, we propose two algorithms for semiconductor modeling and classification to uti...
This work investigates the possibility to replace numerical TCAD device simulations with a multi-lay...
Analog integrated circuit (IC) design has undergone several technical advancements following Moore's...
Due to the aggressive scaling down of logic semiconductors, the difficulty of semiconductor componen...
Consumer electronics have become an integral part of people’s life putting at their disposal immense...
The industrial production of semiconductor assemblies is subject to high requirements. As a result, ...
A machine learning (ML) model by combing two autoencoders and one linear regression model is propose...
A machine learning (ML) model by combing two autoencoders and one linear regression model is propose...
A state-of-the-art Machine Learning (ML) based approach, by modeling the behavior of Gallium Nitride...
A state-of-the-art Machine Learning (ML) based approach, by modeling the behavior of Gallium Nitride...
A state-of-the-art Machine Learning (ML) based approach, by modeling the behavior of Gallium Nitride...
A state-of-the-art Machine Learning (ML) based approach, by modeling the behavior of Gallium Nitride...
A state-of-the-art Machine Learning (ML) based approach, by modeling the behavior of Gallium Nitride...
A state-of-the-art Machine Learning (ML) based approach, by modeling the behavior of Gallium Nitride...
In this dissertation, we propose two algorithms for semiconductor modeling and classification to uti...
In this dissertation, we propose two algorithms for semiconductor modeling and classification to uti...
This work investigates the possibility to replace numerical TCAD device simulations with a multi-lay...
Analog integrated circuit (IC) design has undergone several technical advancements following Moore's...
Due to the aggressive scaling down of logic semiconductors, the difficulty of semiconductor componen...
Consumer electronics have become an integral part of people’s life putting at their disposal immense...
The industrial production of semiconductor assemblies is subject to high requirements. As a result, ...