Patents by Inventor Tushar Deepak Chandra

Tushar Deepak Chandra 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: 20240037096
    Abstract: Systems and techniques are disclosed for generating entries for a searchable index based on rules generated by one or more machine-learned models. The index entries can include one or more tokens correlated with an outcome and an outcome probability. A subset of tokens can be identified based on the characteristics of an event. The index may be searched for outcomes and their respective probabilities that correspond to tokens that are similar to or match the subset of tokens based on the event.
    Type: Application
    Filed: October 6, 2023
    Publication date: February 1, 2024
    Inventors: Jeremiah Harmsen, Tushar Deepak Chandra, Marcus Fontoura
  • Patent number: 11782915
    Abstract: Systems and techniques are disclosed for generating entries for a searchable index based on rules generated by one or more machine-learned models. The index entries can include one or more tokens correlated with an outcome and an outcome probability. A subset of tokens can be identified based on the characteristics of an event. The index may be searched for outcomes and their respective probabilities that correspond to tokens that are similar to or match the subset of tokens based on the event.
    Type: Grant
    Filed: November 30, 2020
    Date of Patent: October 10, 2023
    Assignee: Google LLC
    Inventors: Jeremiah Harmsen, Tushar Deepak Chandra, Marcus Fontoura
  • Patent number: 11663520
    Abstract: Methods, systems, and apparatus, including computer programs encoded on computer storage media, for training machine learning systems. One of the methods includes receiving a plurality of training examples; and training a machine learning system on each of the plurality of training examples to determine trained values for weights of a machine learning model, wherein training the machine learning system comprises: assigning an initial value for a regularization penalty for a particular weight for a particular feature; and adjusting the initial value for the regularization penalty for the particular weight for the particular feature during the training of the machine learning system.
    Type: Grant
    Filed: August 26, 2019
    Date of Patent: May 30, 2023
    Assignee: Google LLC
    Inventors: Yoram Singer, Tal Shaked, Tushar Deepak Chandra, Tze Way Eugene Ie
  • Publication number: 20210149890
    Abstract: Systems and techniques are disclosed for generating entries for a searchable index based on rules generated by one or more machine-learned models. The index entries can include one or more tokens correlated with an outcome and an outcome probability. A subset of tokens can be identified based on the characteristics of an event. The index may be searched for outcomes and their respective probabilities that correspond to tokens that are similar to or match the subset of tokens based on the event.
    Type: Application
    Filed: November 30, 2020
    Publication date: May 20, 2021
    Inventors: Jeremiah Harmsen, Tushar Deepak Chandra, Marcus Fontoura
  • Patent number: 10853360
    Abstract: Systems and techniques are disclosed for generating entries for a searchable index based on rules generated by one or more machine-learned models. The index entries can include one or more tokens correlated with an outcome and an outcome probability. A subset of tokens can be identified based on the characteristics of an event. The index may be searched for outcomes and their respective probabilities that correspond to tokens that are similar to or match the subset of tokens based on the event.
    Type: Grant
    Filed: March 27, 2019
    Date of Patent: December 1, 2020
    Assignee: Google LLC
    Inventors: Jeremiah Harmsen, Tushar Deepak Chandra, Marcus Fontoura
  • Publication number: 20200372359
    Abstract: A system includes one or more computers and one or more storage devices storing instructions that when executed by the one or more computers cause the computers to implement a combined machine learning model for processing an input including multiple features to generate a predicted output for the machine learning input. The combined model includes: a deep machine learning model configured to process the features to generate a deep model output; a wide machine learning model configured to process the features to generate a wide model output; and a combining layer configured to process the deep model output generated by the deep machine learning model and the wide model output generated by the wide machine learning model to generate the predicted output, in which the deep model and the wide model have been trained jointly on training data to generate the deep model output and the wide model output.
    Type: Application
    Filed: August 12, 2020
    Publication date: November 26, 2020
    Inventors: Tal Shaked, Rohan Anil, Hrishikesh Balkrishna Aradhye, Mustafa Ispir, Glen Anderson, Wei Chai, Mehmet Levent Koc, Jeremiah Joseph Harmsen, Xiaobing Liu, Gregory Sean Corrado, Tushar Deepak Chandra, Heng-Tze Cheng
  • Patent number: 10762422
    Abstract: A system includes one or more computers and one or more storage devices storing instructions that when executed by the one or more computers cause the computers to implement a combined machine learning model for processing an input including multiple features to generate a predicted output for the machine learning input. The combined model includes: a deep machine learning model configured to process the features to generate a deep model output; a wide machine learning model configured to process the features to generate a wide model output; and a combining layer configured to process the deep model output generated by the deep machine learning model and the wide model output generated by the wide machine learning model to generate the predicted output, in which the deep model and the wide model have been trained jointly on training data to generate the deep model output and the wide model output.
    Type: Grant
    Filed: December 29, 2016
    Date of Patent: September 1, 2020
    Assignee: Google LLC
    Inventors: Tal Shaked, Rohan Anil, Hrishikesh Balkrishna Aradhye, Mustafa Ispir, Glen Anderson, Wei Chai, Mehmet Levent Koc, Jeremiah Harmsen, Xiaobing Liu, Gregory Sean Corrado, Tushar Deepak Chandra, Heng-Tze Cheng
  • Patent number: 10713585
    Abstract: Systems and techniques are provided for template exploration in a large-scale machine learning system. A method may include obtaining multiple base templates, each base template comprising multiple features. A template performance score may be obtained for each base template and a first base template may be selected from among the multiple base templates based on the template performance score of the first base template. Multiple cross-templates may be constructed by generating a cross-template of the selected first base template and each of the multiple base templates. Performance of a machine learning model may be tested based on each cross-template to generate a cross-template performance score for each of the cross-templates. A first cross-template may be selected from among the multiple cross-templates based on the cross-template performance score of the cross-template. Accordingly, the first cross-template may be added to the machine learning model.
    Type: Grant
    Filed: December 16, 2013
    Date of Patent: July 14, 2020
    Assignee: Google LLC
    Inventors: Tal Shaked, Tushar Deepak Chandra, James Vincent McFadden, Yoram Singer, Tze Way Eugene Ie
  • Publication number: 20200151614
    Abstract: Systems and techniques are provided for template exploration in a large-scale machine learning system. A method may include obtaining multiple base templates, each base template comprising multiple features. A template performance score may be obtained for each base template and a first base template may be selected from among the multiple base templates based on the template performance score of the first base template. Multiple cross-templates may be constructed by generating a cross-template of the selected first base template and each of the multiple base templates. Performance of a machine learning model may be tested based on each cross-template to generate a cross-template performance score for each of the cross-templates. A first cross-template may be selected from among the multiple cross-templates based on the cross-template performance score of the cross-template. Accordingly, the first cross-template may be added to the machine learning model.
    Type: Application
    Filed: December 16, 2013
    Publication date: May 14, 2020
    Applicant: Google Inc.
    Inventors: Tal Shaked, Tushar Deepak Chandra, James Vincent McFadden, Yoram Singer, Tze Way Eugene Ie
  • Patent number: 10509772
    Abstract: The present disclosure provides systems and techniques for efficient locking of datasets in a database when updates to a dataset may be delayed. A method may include accumulating a plurality of updates to a first set of one or more values associated with one or more features. The first set of one or more values may be stored within a first database column. Next, it may be determined that a first database column update aggregation rule is satisfied. A lock assigned to at least a portion of at least a first database column may be acquired. Accordingly, one or more values in the first set within the first database column may be updated based on the plurality of updates. In an implementation, the first set of one or more values may be associated with the first lock.
    Type: Grant
    Filed: December 28, 2016
    Date of Patent: December 17, 2019
    Assignee: Google LLC
    Inventors: Tushar Deepak Chandra, Tal Shaked, Yoram Singer, Tze Way Eugene le, Joshua Redstone
  • Patent number: 10438129
    Abstract: Methods, systems, and apparatus, including computer programs encoded on computer storage media, for training machine learning systems. One of the methods includes receiving a plurality of training examples; and training a machine learning system on each of the plurality of training examples to determine trained values for weights of a machine learning model, wherein training the machine learning system comprises: assigning an initial value for a regularization penalty for a particular weight for a particular feature; and adjusting the initial value for the regularization penalty for the particular weight for the particular feature during the training of the machine learning system.
    Type: Grant
    Filed: December 30, 2014
    Date of Patent: October 8, 2019
    Assignee: Google LLC
    Inventors: Yoram Singer, Tal Shaked, Tushar Deepak Chandra, Tze Way Eugene Ie
  • Publication number: 20190220460
    Abstract: Systems and techniques are disclosed for generating entries for a searchable index based on rules generated by one or more machine-learned models. The index entries can include one or more tokens correlated with an outcome and an outcome probability. A subset of tokens can be identified based on the characteristics of an event. The index may be searched for outcomes and their respective probabilities that correspond to tokens that are similar to or match the subset of tokens based on the event.
    Type: Application
    Filed: March 27, 2019
    Publication date: July 18, 2019
    Inventors: Jeremiah Harmsen, Tushar Deepak Chandra, Marcus Fontoura
  • Patent number: 10255319
    Abstract: Systems and techniques are disclosed for generating entries for a searchable index based on rules generated by one or more machine-learned models. The index entries can include one or more tokens correlated with an outcome and an outcome probability. A subset of tokens can be identified based on the characteristics of an event. The index may be searched for outcomes and their respective probabilities that correspond to tokens that are similar to or match the subset of tokens based on the event.
    Type: Grant
    Filed: May 2, 2014
    Date of Patent: April 9, 2019
    Assignee: Google LLC
    Inventors: Jeremiah Harmsen, Tushar Deepak Chandra, Marcus Fontoura
  • Patent number: 10102482
    Abstract: Methods, systems, and apparatus, including computer programs encoded on a computer storage medium, for training a factorization model to learning features of model inputs of a trained model such that the factorization model is predictive of outcome for which the machine learned model is trained.
    Type: Grant
    Filed: August 7, 2015
    Date of Patent: October 16, 2018
    Assignee: Google LLC
    Inventors: Heng-Tze Cheng, Jeremiah Harmsen, Alexandre Tachard Passos, David Edgar Lluncor, Shahar Jamshy, Tal Shaked, Tushar Deepak Chandra
  • Patent number: 10062035
    Abstract: The present disclosure provides methods and systems for using variable length representations of machine learning statistics. A method may include storing an n-bit representation of a first statistic at a first n-bit storage cell. A first update to the first statistic may be received, and it may be determined that the first update causes a first loss of precision of the first statistic as stored in the first n-bit storage cell. Accordingly, an m-bit representation of the first statistic may be stored at a first m-bit storage cell based on the determination. The first m-bit storage cell may be associated with the first n-bit storage cell. As a result, upon receiving an instruction to use the first statistic in a calculation, a combination of the n-bit representation and the m-bit representation may be used to perform the calculation.
    Type: Grant
    Filed: December 12, 2013
    Date of Patent: August 28, 2018
    Assignee: Google LLC
    Inventors: Tal Shaked, Tushar Deepak Chandra, Yoram Singer, Tze Way Eugene Ie, Joshua Redstone
  • Patent number: 9805312
    Abstract: Methods and systems for replacing feature values of features in training data with integer values selected based on a ranking of the feature values. The methods and systems are suitable for preprocessing large-scale machine learning training data.
    Type: Grant
    Filed: December 13, 2013
    Date of Patent: October 31, 2017
    Assignee: Google Inc.
    Inventors: Tal Shaked, Tushar Deepak Chandra, Yoram Singer, Tze Way Eugene Ie, Joshua Redstone
  • Publication number: 20170300814
    Abstract: A system includes one or more computers and one or more storage devices storing instructions that when executed by the one or more computers cause the computers to implement a combined machine learning model for processing an input including multiple features to generate a predicted output for the machine learning input. The combined model includes: a deep machine learning model configured to process the features to generate a deep model output; a wide machine learning model configured to process the features to generate a wide model output; and a combining layer configured to process the deep model output generated by the deep machine learning model and the wide model output generated by the wide machine learning model to generate the predicted output, in which the deep model and the wide model have been trained jointly on training data to generate the deep model output and the wide model output.
    Type: Application
    Filed: December 29, 2016
    Publication date: October 19, 2017
    Inventors: Tal Shaked, Rohan Anil, Hrishikesh Balkrishna Aradhye, Mustafa Ispir, Glen Anderson, Wei Chai, Mehmet Levent Koc, Jeremiah Harmsen, Xiaobing Liu, Gregory Sean Corrado, Tushar Deepak Chandra, Heng-Tze Cheng
  • Patent number: 9760595
    Abstract: Parallel processing of data may include a set of map processes and a set of reduce processes. Each map process may include at least one map thread. Map threads may access distinct input data blocks assigned to the map process, and may apply an application specific map operation to the input data blocks to produce key-value pairs. Each map process may include a multiblock combiner configured to apply a combining operation to values associated with common keys in the key-value pairs to produce combined values, and to output intermediate data including pairs of keys and combined values. Each reduce process may be configured to access the intermediate data output by the multiblock combiners. For each key, an application specific reduce operation may be applied to the combined values associated with the key to produce output data.
    Type: Grant
    Filed: December 28, 2016
    Date of Patent: September 12, 2017
    Assignee: Google Inc.
    Inventors: Kenneth J. Goldman, Tushar Deepak Chandra, Tal Shaked, Yonggang Zhao
  • Patent number: 9569481
    Abstract: The present disclosure provides systems and techniques for efficient locking of datasets in a database when updates to a dataset may be delayed. A method may include accumulating a plurality of updates to a first set of one or more values associated with one or more features. The first set of one or more values may be stored within a first database column. Next, it may be determined that a first database column update aggregation rule is satisfied. A lock assigned to at least a portion of at least a first database column may be acquired. Accordingly, one or more values in the first set within the first database column may be updated based on the plurality of updates. In an implementation, the first set of one or more values may be associated with the first lock.
    Type: Grant
    Filed: December 10, 2013
    Date of Patent: February 14, 2017
    Assignee: Google Inc.
    Inventors: Tushar Deepak Chandra, Tal Shaked, Yoram Singer, Tze Way Eugene Ie, Joshua Redstone
  • Publication number: 20170039483
    Abstract: Methods, systems, and apparatus, including computer programs encoded on a computer storage medium, for training a factorization model to learning features of model inputs of a trained model such that the factorization model is predictive of outcome for which the machine learned model is trained.
    Type: Application
    Filed: August 7, 2015
    Publication date: February 9, 2017
    Inventors: Heng-Tze Cheng, Jeremiah Harmsen, Alexandre Tachard Passos, David Edgar Lluncor, Shahar Jamshy, Tal Shaked, Tushar Deepak Chandra