Patents by Inventor Sairam Ravu

Sairam Ravu has filed for patents to protect the following inventions. This listing includes patent applications that are pending as well as patents that have already been granted by the United States Patent and Trademark Office (USPTO).

  • Patent number: 11676264
    Abstract: A system for characterizing a specimen is disclosed. In one embodiment, the system includes a characterization sub-system configured to acquire one or more images a specimen, and a controller communicatively coupled to the characterization sub-system. The controller may be configured to: receive from the characterization sub-system one or more training images of one or more defects of a training specimen; generate one or more augmented images of the one or more defects of the training specimen; generate a machine learning classifier based on the one or more augmented images of the one or more defects of the training specimen; receive from the characterization sub-system one or more target images of one or more target features of a target specimen; and determine one or more defects of the one or more target features with the machine learning classifier.
    Type: Grant
    Filed: July 21, 2020
    Date of Patent: June 13, 2023
    Assignee: KLA Corporation
    Inventors: Martin Plihal, Saravanan Paramasivam, Jacob George, Niveditha Lakshmi Narasimhan, Sairam Ravu, Somesh Challapalli, Prasanti Uppaluri
  • Patent number: 11379967
    Abstract: Methods and systems for improved detection and classification of defects of interest (DOI) is realized based on values of one or more automatically generated attributes derived from images of a candidate defect. Automatically generated attributes are determined by iteratively training, reducing, and retraining a deep learning model. The deep learning model relates optical images of candidate defects to a known classification of those defects. After model reduction, attributes of the reduced model are identified which strongly relate the optical images of candidate defects to the known classification of the defects. The reduced model is subsequently employed to generate values of the identified attributes associated with images of candidate defects having unknown classification. In another aspect, a statistical classifier is employed to classify defects based on automatically generated attributes and attributes identified manually.
    Type: Grant
    Filed: January 16, 2020
    Date of Patent: July 5, 2022
    Assignee: KLA Corporation
    Inventors: Jacob George, Saravanan Paramasivam, Martin Plihal, Niveditha Lakshmi Narasimhan, Sairam Ravu, Prasanti Uppaluri
  • Patent number: 11237119
    Abstract: Wafer inspection with stable nuisance rates and defect of interest capture rates are disclosed. This technique can be used for discovery of newly appearing defects that occur during the manufacturing process. Based on a first wafer, defects of interest are identified based on the classified filtered inspection results. For each remaining wafer, the defect classifier is updated and defects of interest in the next wafer are identified based on the classified filtered inspection results.
    Type: Grant
    Filed: December 7, 2017
    Date of Patent: February 1, 2022
    Assignee: KLA-Tencor Corporation
    Inventors: Martin Plihal, Erfan Soltanmohammadi, Saravanan Paramasivam, Sairam Ravu, Ankit Jain, Prasanti Uppaluri, Vijay Ramachandran
  • Publication number: 20210027445
    Abstract: A system for characterizing a specimen is disclosed. In one embodiment, the system includes a characterization sub-system configured to acquire one or more images a specimen, and a controller communicatively coupled to the characterization sub-system. The controller may be configured to: receive from the characterization sub-system one or more training images of one or more defects of a training specimen; generate one or more augmented images of the one or more defects of the training specimen; generate a machine learning classifier based on the one or more augmented images of the one or more defects of the training specimen; receive from the characterization sub-system one or more target images of one or more target features of a target specimen; and determine one or more defects of the one or more target features with the machine learning classifier.
    Type: Application
    Filed: July 21, 2020
    Publication date: January 28, 2021
    Inventors: Martin Plihal, Saravanan Paramasivam, Jacob George, Niveditha Lakshmi Narasimhan, Sairam Ravu, Somesh Challapalli, Prasanti Uppaluri
  • Publication number: 20200234428
    Abstract: Methods and systems for improved detection and classification of defects of interest (DOI) is realized based on values of one or more automatically generated attributes derived from images of a candidate defect. Automatically generated attributes are determined by iteratively training, reducing, and retraining a deep learning model. The deep learning model relates optical images of candidate defects to a known classification of those defects. After model reduction, attributes of the reduced model are identified which strongly relate the optical images of candidate defects to the known classification of the defects. The reduced model is subsequently employed to generate values of the identified attributes associated with images of candidate defects having unknown classification. In another aspect, a statistical classifier is employed to classify defects based on automatically generated attributes and attributes identified manually.
    Type: Application
    Filed: January 16, 2020
    Publication date: July 23, 2020
    Inventors: Jacob George, Saravanan Paramasivam, Martin Plihal, Niveditha Lakshmi Narasimhan, Sairam Ravu, Prasanti Uppaluri
  • Patent number: 10267748
    Abstract: Methods and systems for training an inspection-related algorithm are provided. One system includes one or more computer subsystems configured for performing an initial training of an inspection-related algorithm with a labeled set of defects thereby generating an initial version of the inspection-related algorithm and applying the initial version of the inspection-related algorithm to an unlabeled set of defects. The computer subsystem(s) are also configured for altering the labeled set of defects based on results of the applying. The computer subsystem(s) may then iteratively re-train the inspection-related algorithm and alter the labeled set of defects until one or more differences between results produced by a most recent version and a previous version of the algorithm meet one or more criteria. When the one or more differences meet the one or more criteria, the most recent version of the inspection-related algorithm is outputted as the trained algorithm.
    Type: Grant
    Filed: October 12, 2017
    Date of Patent: April 23, 2019
    Assignee: KLA-Tencor Corp.
    Inventors: Martin Plihal, Erfan Soltanmohammadi, Saravanan Paramasivam, Sairam Ravu, Ankit Jain, Sarath Shekkizhar, Prasanti Uppaluri
  • Publication number: 20180197714
    Abstract: Wafer inspection with stable nuisance rates and defect of interest capture rates are disclosed. This technique can be used for discovery of newly appearing defects that occur during the manufacturing process. Based on a first wafer, defects of interest are identified based on the classified filtered inspection results. For each remaining wafer, the defect classifier is updated and defects of interest in the next wafer are identified based on the classified filtered inspection results.
    Type: Application
    Filed: December 7, 2017
    Publication date: July 12, 2018
    Inventors: Martin Plihal, Erfan Soltanmohammadi, Saravanan Paramasivam, Sairam Ravu, Ankit Jain, Prasanti Uppaluri, Vijay Ramachandran
  • Publication number: 20180106732
    Abstract: Methods and systems for training an inspection-related algorithm are provided. One system includes one or more computer subsystems configured for performing an initial training of an inspection-related algorithm with a labeled set of defects thereby generating an initial version of the inspection-related algorithm and applying the initial version of the inspection-related algorithm to an unlabeled set of defects. The computer subsystem(s) are also configured for altering the labeled set of defects based on results of the applying. The computer subsystem(s) may then iteratively re-train the inspection-related algorithm and alter the labeled set of defects until one or more differences between results produced by a most recent version and a previous version of the algorithm meet one or more criteria. When the one or more differences meet the one or more criteria, the most recent version of the inspection-related algorithm is outputted as the trained algorithm.
    Type: Application
    Filed: October 12, 2017
    Publication date: April 19, 2018
    Inventors: Martin Plihal, Erfan Soltanmohammadi, Saravanan Paramasivam, Sairam Ravu, Ankit Jain, Sarath Shekkizhar, Prasanti Uppaluri