Patents by Inventor Rami Al-Rfou?

Rami Al-Rfou? 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: 11899733
    Abstract: A solution arranged to build or train a machine learning model (ML model) that can be uploaded to a server arranged to deploy the ML model to communicating devices. The ML model builder can build the ML model and a ML production pipeline. The ML production pipeline can train the ML model, convert the ML model to a web browser compatible format, and upload the converted ML model to the server. The ML model can receive as input a sequence of prior activities on one communicating device in the communicating devices, analyze the sequence of prior activities on the communicating device, predict a next activity on the communicating device based on the analysis of the sequence of prior activities, preemptively search a computer network based on the predicted next activity to find a computer asset, and preload the found computer asset to a storage in the communicating device.
    Type: Grant
    Filed: January 14, 2020
    Date of Patent: February 13, 2024
    Assignee: GOOGLE LLC
    Inventors: Michael Shalai, Joseph Catalano, Bo Lin, Dustin Zelle, Rami Al-Rfou
  • Publication number: 20240020546
    Abstract: Systems and methods for prompt tuning can utilize previously-learned prompts for the initialization of tuning for prompts on different tasks that may differ from the task associated with the previously-learned prompt. The prompt being utilized for initialization can be a generic prompt and/or may be a prompt selected based on a determined similarity between two or more task embeddings.
    Type: Application
    Filed: July 13, 2022
    Publication date: January 18, 2024
    Inventors: Tu Thanh Vu, Daniel Matthew Cer, Noah Constant, Brian David Lester, Rami Al-Rfou
  • Publication number: 20230406360
    Abstract: Methods, systems, and apparatus for generating trajectory predictions for one or more target agents. In one aspect, a system comprises one or more computers configured to obtain scene context data characterizing a scene in an environment at a current time point, where the scene includes multiple agents that include a target agent and one or more context agents, and the scene context data includes respective context data for each of multiple different modalities of context data. The one or more computers then generate an encoded representation of the scene in the environment that includes one or more embeddings and process the encoded representation of the scene context data using a decoder neural network to generate a trajectory prediction output for the target agent that predicts a future trajectory of the target after the current time point.
    Type: Application
    Filed: June 15, 2023
    Publication date: December 21, 2023
    Inventors: Rami Al-Rfou, Nigamaa Nayakanti, Kratarth Goel, Aurick Qikun Zhou, Benjamin Sapp, Khaled Refaat
  • Patent number: 11809993
    Abstract: The present disclosure provides computing systems and methods directed to algorithms and the underlying machine learning (ML) models for evaluating similarity between graphs using graph structures and/or attributes. The systems and methods disclosed may provide advantages or improvements for comparing graphs without additional context or input from a person (e.g., the methods are unsupervised). In particular, the systems and methods of the present disclosure can operate to generate respective embeddings for one or more target graphs, where the embedding for each target graph is indicative of a respective similarity of such target graph to each of a set of source graphs, and where a pair of embeddings for a pair of target graphs can be used to assess a similarity between the pair of target graphs.
    Type: Grant
    Filed: April 16, 2020
    Date of Patent: November 7, 2023
    Assignee: GOOGLE LLC
    Inventors: Rami Al-Rfou, Dustin Zelle, Bryan Perozzi
  • Publication number: 20230325725
    Abstract: Systems and methods for natural language processing can leverage trained prompts to condition a large pre-trained machine-learned model to generate an output for a specific task. For example, a subset of parameters may be trained for the particular task to then be input with a set of input data into the pre-trained machine-learned model to generate the task-specific output. During the training of the prompt, the parameters of the pre-trained machine-learned model can be frozen, which can reduce the computational resources used during training while still leveraging the previously learned data from the pre-trained machine-learned model.
    Type: Application
    Filed: April 12, 2022
    Publication date: October 12, 2023
    Inventors: Brian David Lester, Rami Al-Rfou, Noah Constant
  • Publication number: 20230050882
    Abstract: A solution arranged to build or train a machine learning model and to upload the machine learning model to a server arranged to deploy the machine learning model to a plurality of communicating devices. The solution can include a machine learning model builder arranged to build the machine learning model and a machine learning production pipeline. The machine learning production pipeline can be arranged to train the machine learning model, convert the machine learning model to a web browser compatible format, and upload the converted machine learning model to the server.
    Type: Application
    Filed: January 14, 2020
    Publication date: February 16, 2023
    Inventors: Mikhail Shalai, Joseph Catalano, Bo Lin, Dustin Zelle, Rami Al-Rfou
  • Patent number: 11455512
    Abstract: Methods, systems, and apparatus, including computer programs encoded on a computer storage medium, for a graph processing system. In one aspect, the graph processing system obtains data identifying a first node and a second node from a graph of nodes and edges. The system processes numeric embeddings of the first node and the second node using a manifold neural network to generate respective manifold coordinates of the first node and the second node. The system applies a learned edge function to the manifold coordinates of the first node and the manifold coordinates of the second node to generate an edge score that represents a likelihood that an entity represented by the first node and an entity represented by the second node have a particular relationship.
    Type: Grant
    Filed: April 5, 2018
    Date of Patent: September 27, 2022
    Assignee: Google LLC
    Inventors: Rami Al-rfou′, Sami Ahmad Abu-El-Haija, Bryan Thomas Perozzi
  • Patent number: 11373086
    Abstract: Systems, methods, and computer readable media related to determining one or more responses to provide that are responsive to an electronic communication that is generated through interaction with a client computing device. For example, determining one or more responses to provide for presentation to a user as suggestions for inclusion in a reply to an electronic communication sent to the user. Some implementations are related to training and/or using separate input and response neural network models for determining responses for electronic communications. The input neural network model and the response neural network model can be separate, but trained and/or used cooperatively.
    Type: Grant
    Filed: March 31, 2017
    Date of Patent: June 28, 2022
    Assignee: GOOGLE LLC
    Inventors: Brian Strope, Yun-hsuan Sung, Matthew Henderson, Rami Al-Rfou′, Raymond Kurzweil
  • Publication number: 20220036197
    Abstract: Systems, methods, and computer readable media related to information retrieval. Some implementations are related to training and/or using a relevance model for information retrieval. The relevance model includes an input neural network model and a subsequent content neural network model. The input neural network model and the subsequent content neural network model can be separate, but trained and/or used cooperatively. The input neural network model and the subsequent content neural network model can be “separate” in that separate inputs are applied to the neural network models, and each of the neural network models is used to generate its own feature vector based on its applied input. A comparison of the feature vectors generated based on the separate network models can then be performed, where the comparison indicates relevance of the input applied to the input neural network model to the separate input applied to the subsequent content neural network model.
    Type: Application
    Filed: October 15, 2021
    Publication date: February 3, 2022
    Inventors: Brian Strope, Yun-hsuan Sung, Matthew Henderson, Rami Al-Rfou', Raymond Kurzweil
  • Patent number: 11188824
    Abstract: Systems, methods, and computer readable media related to information retrieval. Some implementations are related to training and/or using a relevance model for information retrieval. The relevance model includes an input neural network model and a subsequent content neural network model. The input neural network model and the subsequent content neural network model can be separate, but trained and/or used cooperatively. The input neural network model and the subsequent content neural network model can be “separate” in that separate inputs are applied to the neural network models, and each of the neural network models is used to generate its own feature vector based on its applied input. A comparison of the feature vectors generated based on the separate network models can then be performed, where the comparison indicates relevance of the input applied to the input neural network model to the separate input applied to the subsequent content neural network model.
    Type: Grant
    Filed: March 31, 2017
    Date of Patent: November 30, 2021
    Assignee: GOOGLE LLC
    Inventors: Brian Strope, Yun-hsuan Sung, Matthew Henderson, Rami Al-Rfou', Raymond Kurzweil
  • Publication number: 20200334495
    Abstract: The present disclosure provides computing systems and methods directed to algorithms and the underlying machine learning (ML) models for evaluating similarity between graphs using graph structures and/or attributes. The systems and methods disclosed may provide advantages or improvements for comparing graphs without additional context or input from a person (e.g., the methods are unsupervised). In particular, the systems and methods of the present disclosure can operate to generate respective embeddings for one or more target graphs, where the embedding for each target graph is indicative of a respective similarity of such target graph to each of a set of source graphs, and where a pair of embeddings for a pair of target graphs can be used to assess a similarity between the pair of target graphs.
    Type: Application
    Filed: April 16, 2020
    Publication date: October 22, 2020
    Inventors: Rami Al-Rfou, Dustin Zelle, Bryan Perozzi
  • Publication number: 20180240013
    Abstract: Systems, methods, and computer readable media related to information retrieval. Some implementations are related to training and/or using a relevance model for information retrieval. The relevance model includes an input neural network model and a subsequent content neural network model. The input neural network model and the subsequent content neural network model can be separate, but trained and/or used cooperatively. The input neural network model and the subsequent content neural network model can be “separate” in that separate inputs are applied to the neural network models, and each of the neural network models is used to generate its own feature vector based on its applied input. A comparison of the feature vectors generated based on the separate network models can then be performed, where the comparison indicates relevance of the input applied to the input neural network model to the separate input applied to the subsequent content neural network model.
    Type: Application
    Filed: March 31, 2017
    Publication date: August 23, 2018
    Inventors: Brian Strope, Yun-hsuan Sung, Matthew Henderson, Rami Al-Rfou', Raymond Kurzweil
  • Publication number: 20180240014
    Abstract: Systems, methods, and computer readable media related to determining one or more responses to provide that are responsive to an electronic communication that is generated through interaction with a client computing device. For example, determining one or more responses to provide for presentation to a user as suggestions for inclusion in a reply to an electronic communication sent to the user. Some implementations are related to training and/or using separate input and response neural network models for determining responses for electronic communications. The input neural network model and the response neural network model can be separate, but trained and/or used cooperatively.
    Type: Application
    Filed: March 31, 2017
    Publication date: August 23, 2018
    Inventors: Brian Strope, Yun-hsuan Sung, Matthew Henderson, Rami Al-Rfou', Raymond Kurzweil
  • Patent number: 9514098
    Abstract: Methods and apparatus related to determining coreference resolution using distributed word representations. Distributed word representations, indicative of syntactic and semantic features, may be identified for one or more noun phrases. For each of the one or more noun phrases, a referring feature representation and an antecedent feature representation may be determined, where the referring feature representation includes the distributed word representation, and the antecedent feature representation includes the distributed word representation augmented by one or more antecedent features. In some implementations the referring feature representation may be augmented by one or more referring features. Coreference embeddings of the referring and antecedent feature representations of the one or more noun phrases may be learned. Distance measures between two noun phrases may be determined based on the coreference embeddings.
    Type: Grant
    Filed: December 26, 2013
    Date of Patent: December 6, 2016
    Assignee: Google Inc.
    Inventors: Amarnag Subramanya, Jingyi Liu, Fernando Carlos das Neves Pereira, Kai Chen, Jay Ponte, Rami Al-Rfou′