Patents by Inventor Seyednaser Nourashrafeddin

Seyednaser Nourashrafeddin 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).

  • Publication number: 20240112129
    Abstract: A dynamic supply chain planning system for analysis of historical lead time data that uses machine learning algorithms to forecast future lead times based on historical lead time data, weather data and financial data related to locations and dates within the supply chain.
    Type: Application
    Filed: December 13, 2023
    Publication date: April 4, 2024
    Inventors: Phillip WILLIAMS, Zhen LIN, Behrouz HAJI SOLEIMANI, Seyednaser NOURASHRAFEDDIN, Chantal BISSON-KROL, Marcio OLIVEIRA ALMEIDA
  • Patent number: 11886514
    Abstract: Machine learning segmentation methods and systems that perform segmentation quickly, efficiently, cheaply, and optionally provides an interactive feature that allows a user to alter the segmentation until a desired result is obtained. The automated machine learning segmentation tool receives all potentially important attributes and provides segmentation of items. It also receives information about important features of the data and finds how best to differentiate between groups using cluster-based machine learning algorithms. In addition, visualization of the segmentation explains to a user how the segmentation was obtained.
    Type: Grant
    Filed: April 14, 2020
    Date of Patent: January 30, 2024
    Assignee: Kinaxis Inc.
    Inventors: Marcio Oliveira Almeida, Seyednaser Nourashrafeddin, Jean-François Dubeau, Ivy Blackmore, Zhen Lin
  • Patent number: 11887044
    Abstract: A dynamic supply chain planning system for analysis of historical lead time data that uses machine learning algorithms to forecast future lead times based on historical lead time data, weather data and financial data related to locations and dates within the supply chain.
    Type: Grant
    Filed: May 10, 2022
    Date of Patent: January 30, 2024
    Assignee: Kinaxis Inc.
    Inventors: Phillip Williams, Zhen Lin, Behrouz Haji Soleimani, Seyednaser Nourashrafeddin, Chantal Bisson-Krol, Marcio Oliveira Almeida
  • Publication number: 20230394091
    Abstract: Machine learning segmentation methods and systems that perform segmentation quickly, efficiently, cheaply, and optionally provides an interactive feature that allows a user to alter the segmentation until a desired result is obtained. The automated machine learning segmentation tool receives all potentially important attributes and provides segmentation of items. It also receives information about important features of the data and finds how best to differentiate between groups using cluster-based machine learning algorithms. In addition, visualization of the segmentation explains to a user how the segmentation was obtained.
    Type: Application
    Filed: August 17, 2023
    Publication date: December 7, 2023
    Inventors: Marcio Oliveira Almeida, Seyednaser Nourashrafeddin, Jean-Francois Dubeau, Ivy Blackmore, Zhen Lin
  • Patent number: 11809499
    Abstract: Machine learning segmentation methods and systems that perform segmentation quickly, efficiently, cheaply, and optionally provides an interactive feature that allows a user to alter the segmentation until a desired result is obtained. The automated machine learning segmentation tool receives all potentially important attributes and provides segmentation of items. It also receives information about important features of the data and finds how best to differentiate between groups using cluster-based machine learning algorithms. In addition, visualization of the segmentation explains to a user how the segmentation was obtained.
    Type: Grant
    Filed: April 14, 2020
    Date of Patent: November 7, 2023
    Assignee: Kinaxis Inc.
    Inventors: Marcio Oliveira Almeida, Seyednaser Nourashrafeddin, Jean-François Dubeau, Ivy Blackmore, Zhen Lin
  • Publication number: 20230325743
    Abstract: A method and system for a machine learning duster analysis of historical lead time data, which is augmented by one or more features. The data can also be divided into groups, based on time-density of the data, with clustering performed on each group. Furthermore, clustering can also be projected onto two dimensions. in addition, the historical lead time data is separated into a plurality of tolerance zones based on tolerance criteria. The clusters are separated in accordance with a tolerance zone of each group; and further separated according to one or more lead time identifiers to provide one or more separated clusters.
    Type: Application
    Filed: June 15, 2023
    Publication date: October 12, 2023
    Inventors: Marcio OLIVEIRA ALMEIDA, Zhen LIN, Behrouz HAJI SOLEIMANI, Seyednaser NOURASHRAFEDDIN, Chantal BISSON-KROL
  • Patent number: 11748678
    Abstract: A method and system for a machine learning duster analysis of historical lead time data, which is augmented by one or more features. The data can also be divided into groups, based on time-density of the data, with clustering performed on each group. Furthermore, clustering can also be projected onto two dimensions. In addition, the historical lead time data is separated into a plurality of tolerance zones based on tolerance criteria. The clusters are separated in accordance with a tolerance zone of each group; and further separated according to one or more lead time identifiers to provide one or more separated clusters.
    Type: Grant
    Filed: September 27, 2021
    Date of Patent: September 5, 2023
    Assignee: Kinaxis Inc.
    Inventors: Marcio Oliveira Almeida, Zhen Lin, Behrouz Haji Soleimani, Seyednaser Nourashrafeddin, Chantal Bisson-Krol
  • Publication number: 20230103269
    Abstract: A method and system for a machine learning cluster analysis of historical lead time data, which is augmented by one or more features. The data can also be divided into groups, based on time-density of the data, with clustering performed on each group. Furthermore, clustering can also be projected onto two dimensions. In addition, the historical lead time data is separated into a plurality of tolerance zones based on tolerance criteria. The clusters are separated in accordance with a tolerance zone of each group; and further separated according to one or more lead time identifiers to provide one or more separated clusters.
    Type: Application
    Filed: September 27, 2021
    Publication date: March 30, 2023
    Inventors: Marcio Oliveira Almeida, Zhen Lin, Behrouz Haji Soleimani, Seyednaser Nourashrafeddin, Chantal Bisson-Krol
  • Publication number: 20220335378
    Abstract: A dynamic supply chain planning system for analysis of historical lead time data that uses machine learning algorithms to forecast future lead times based on historical lead time data, weather data and financial data related to locations and dates within the supply chain.
    Type: Application
    Filed: May 10, 2022
    Publication date: October 20, 2022
    Inventors: Phillip WILLIAMS, Zhen LIN, Behrouz HAJI SOLEIMANI, Seyednaser NOURASHRAFEDDIN, Chantal BISSON-KROL, Marcio OLIVEIRA ALMEIDA
  • Patent number: 11361276
    Abstract: A dynamic supply chain planning system for analysis of historical lead time data that uses machine learning algorithms to forecast future lead times based on historical lead time data, weather data and financial data related to locations and dates within the supply chain.
    Type: Grant
    Filed: October 1, 2020
    Date of Patent: June 14, 2022
    Assignee: KINAXIS INC.
    Inventors: Phillip Williams, Zhen Lin, Behrouz Haji Soleimani, Seyednaser Nourashrafeddin, Chantal Bisson-Krol, Marcio Oliveira Almeida
  • Publication number: 20220101234
    Abstract: A method and system for a machine learning duster analysis of historical lead time data, which is augmented by one or more features. The data can also be divided into groups, based on time-density of the data, with clustering performed on each group. Furthermore, clustering can also be projected onto two dimensions. In addition, the historical lead time data is separated into a plurality of tolerance zones based on tolerance criteria. The clusters are separated in accordance with a tolerance zone of each group; and further separated according to one or more lead time identifiers to provide one or more separated clusters.
    Type: Application
    Filed: September 27, 2021
    Publication date: March 31, 2022
    Inventors: Marcio Oliveira Almeida, Zhen Lin, Behrouz Haji Soleimani, Seyednaser Nourashrafeddin, Chantal Bisson-Krol
  • Patent number: 11188856
    Abstract: A method and system for a machine learning cluster analysis of historical lead time data, which is augmented by one or more features. The data can also be divided into groups, based on time-density of the data, with clustering performed on each group. Furthermore, clustering can also be projected onto two dimensions. In addition, the historical lead time data is separated into a plurality of tolerance zones based on tolerance criteria. The clusters are separated in accordance with a tolerance zone of each group; and further separated according to one or more lead time identifiers to provide one or more separated clusters.
    Type: Grant
    Filed: October 1, 2020
    Date of Patent: November 30, 2021
    Assignee: Kinaxis Inc.
    Inventors: Marcio Oliveira Almeida, Zhen Lin, Behrouz Haji Soleimani, Seyednaser Nourashrafeddin, Chantal Bisson-Krol
  • Publication number: 20210117863
    Abstract: Methods and systems that provide machine learning interpretability. SHAP values of historical and predicted data, along with features of both, are used to provide a measure of the impact of training data points on a predictions. Removal of an individual training data point from a training data set, followed by comparing the resulting prediction with that obtained by the full training data set, also provides a measure of influence of individual training data points on forecasts.
    Type: Application
    Filed: October 19, 2020
    Publication date: April 22, 2021
    Inventors: Behrouz Haji Soleimani, Andrea Pagotto, Seyednaser Nourashrafeddin, Chantal Bisson-Krol
  • Publication number: 20210110298
    Abstract: A computer-implemented method of interactive machine learning in which a user is provided with predicted results from a trained machine learning model. The user can take the predicted results and either: i) adjust the predicted results an input the adjusted results as new data; or ii) adjust the predicted data to retrain the model.
    Type: Application
    Filed: November 27, 2019
    Publication date: April 15, 2021
    Inventors: Chantal Bisson-Krol, Zhen Lin, Ishan Amlekar, Kevin Shen, Seyednaser Nourashrafeddin, Sebastien Ouellet
  • Publication number: 20210110299
    Abstract: A computer-implemented method of interactive machine learning in which a user is provided with predicted results from a trained machine learning model. The user can take the predicted results and adjust the predicted data to retrain the model.
    Type: Application
    Filed: November 28, 2019
    Publication date: April 15, 2021
    Inventors: Chantal Bisson-Krol, Zhen Lin, Ishan Amlekar, Kevin Shen, Seyednaser Nourashrafeddin, Sebastien Ouellet
  • Publication number: 20210109969
    Abstract: Machine learning segmentation methods and systems that perform segmentation quickly, efficiently, cheaply, and optionally provides an interactive feature that allows a user to alter the segmentation until a desired result is obtained. The automated machine learning segmentation tool receives all potentially important attributes and provides segmentation of items. It also receives information about important features of the data and finds how best to differentiate between groups using cluster-based machine learning algorithms. In addition, visualization of the segmentation explains to a user how the segmentation was obtained.
    Type: Application
    Filed: April 14, 2020
    Publication date: April 15, 2021
    Inventors: Marcio Oliveira Almeida, Seyednaser Nourashrafeddin, Jean-François Dubeau, Ivy Blackmore, Zhen Lin
  • Publication number: 20210089989
    Abstract: A method and system for a machine learning cluster analysis of historical lead time data, which is augmented by one or more features. The data can also he divided into groups, based on time-density of the data, with clustering performed on each group. Furthermore, clustering can also be projected onto two dimensions. In addition, the historical lead time data is separated into a plurality of tolerance zones based on tolerance criteria. The clusters are separated in accordance with a tolerance zone of each group; and further separated according to one or more lead time identifiers to provide one or more separated clusters.
    Type: Application
    Filed: October 1, 2020
    Publication date: March 25, 2021
    Inventors: Marcio Oliveira Almeida, Zhen Lin, Behrouz Haji Soleimani, Seyednaser Nourashrafeddin, Chantal Bisson-Krol
  • Publication number: 20210090021
    Abstract: A dynamic supply chain planning system for analysis of historical lead time data that uses machine learning algorithms to forecast future lead times based on historical lead time data, weather data and financial data related to locations and dates within the supply chain.
    Type: Application
    Filed: October 1, 2020
    Publication date: March 25, 2021
    Inventors: Phillip Williams, Zhen Lin, Behrouz Haji Soleimani, Seyednaser Nourashrafeddin, Chantal Bisson-Krol, Marcio Oliveira Almeida
  • Patent number: 10846651
    Abstract: A dynamic supply chain planning system for analysis of historical lead time data that uses machine learning algorithms to forecast future lead times based on historical lead time data, weather data and financial data related to locations and dates within the supply chain.
    Type: Grant
    Filed: December 18, 2018
    Date of Patent: November 24, 2020
    Assignee: Kinaxis Inc.
    Inventors: Phillip Williams, Marcio Oliveira Almeida, Zhen Lin, Behrouz Haji Soleimani, Seyednaser Nourashrafeddin, Chantal Bisson-Krol
  • Patent number: 10832196
    Abstract: A dynamic supply chain planning system for analysis of historical lead time data that uses machine learning algorithms to forecast future lead times based on historical lead time data, and to divide historical lead time data into clusters based on seasonality and linearity. The machine learning results are further processed to adjust future planned lead times and to identify sources in the supply chain that contribute to large deviations between historical planned lead times and actual lead times.
    Type: Grant
    Filed: September 28, 2018
    Date of Patent: November 10, 2020
    Assignee: Kinaxis Inc.
    Inventors: Marcio Oliveira Almeida, Zhen Lin, Behrouz Haji Soleimani, Seyednaser Nourashrafeddin, Chantal Bisson-Krol