Enormous amounts of data are generated and analyzed in the latest semiconductor industry. Established yield prediction studies have dealt with one type of data or a dataset from one procedure. However, semiconductor device fabrication comprises hundreds of processes, and various factors affect device yields. This challenge is addressed in this study by using an expandable input data-based framework to include divergent factors in the prediction and by adapting explainable artificial intelligence (XAI), which utilizes model interpretation to modify fabrication conditions. After preprocessing the data, the procedure of optimizing and comparing several machine learning models is followed to select the best performing model for the dataset, whi...
[[abstract]]The rapid innovation of new process technologies in the semiconductor industry, especial...
Manufacturers address the distinct operational objectives of product innovation and manufacturing ef...
Thesis: S.M. in Engineering Systems, Massachusetts Institute of Technology, School of Engineering, I...
Gordon E. Moore found that density of transistors doubled every two years on a microchip. However, n...
We develop a data-driven decision model to improve process quality in manufacturing. A challenge for...
In semiconductor manufacturing, data-driven methodologies have enabled the resolution of various iss...
By the spread of miniaturized components, like the 0201mm size-code (200 × 100 µm) passives, utilizi...
By the spread of miniaturized components, like the 0201mm size-code (200 × 100 μm) passives, utilizi...
Thesis: S.M., Massachusetts Institute of Technology, Department of Electrical Engineering and Comput...
This paper studies the issues of designing a Bayesian framework for the reliable diagnosis of variou...
abstract: Yield is a key process performance characteristic in the capital-intensive semiconductor f...
[[abstract]]The yield of semiconductor manufacturing can be improved through a learning process. A l...
A semiconductor fab has complex wafer lot movements between machines and workstations. To ensure a s...
A yield model was developed allowing the calculation of yield using defect density data of manufactu...
A neural network-based process model is proposed to optimize the semiconductor manufacturing process...
[[abstract]]The rapid innovation of new process technologies in the semiconductor industry, especial...
Manufacturers address the distinct operational objectives of product innovation and manufacturing ef...
Thesis: S.M. in Engineering Systems, Massachusetts Institute of Technology, School of Engineering, I...
Gordon E. Moore found that density of transistors doubled every two years on a microchip. However, n...
We develop a data-driven decision model to improve process quality in manufacturing. A challenge for...
In semiconductor manufacturing, data-driven methodologies have enabled the resolution of various iss...
By the spread of miniaturized components, like the 0201mm size-code (200 × 100 µm) passives, utilizi...
By the spread of miniaturized components, like the 0201mm size-code (200 × 100 μm) passives, utilizi...
Thesis: S.M., Massachusetts Institute of Technology, Department of Electrical Engineering and Comput...
This paper studies the issues of designing a Bayesian framework for the reliable diagnosis of variou...
abstract: Yield is a key process performance characteristic in the capital-intensive semiconductor f...
[[abstract]]The yield of semiconductor manufacturing can be improved through a learning process. A l...
A semiconductor fab has complex wafer lot movements between machines and workstations. To ensure a s...
A yield model was developed allowing the calculation of yield using defect density data of manufactu...
A neural network-based process model is proposed to optimize the semiconductor manufacturing process...
[[abstract]]The rapid innovation of new process technologies in the semiconductor industry, especial...
Manufacturers address the distinct operational objectives of product innovation and manufacturing ef...
Thesis: S.M. in Engineering Systems, Massachusetts Institute of Technology, School of Engineering, I...