Patents by Inventor Paul David Power
Paul David Power 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).
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Publication number: 20250144470Abstract: A method of generating a player prediction is disclosed herein. A computing system retrieves data from a data store. The computing system generates a predictive model using an artificial neural network. The artificial neural network generates one or more personalized embeddings that include player-specific information based on historical performance. The computing system selects, from the data, one or more features related to each shot attempt captured in the data. The artificial neural network learns an outcome of each shot attempt based at least on the one or more personalized embeddings and the one or more features related to each shot attempt.Type: ApplicationFiled: January 8, 2025Publication date: May 8, 2025Applicant: STATS LLCInventors: Paul David Power, Aditya Cherukumudi, Sujoy Ganguly, Xinyu Wei, Long Sha, Jennifer Hobbs, Hector Ruiz, Patrick Joseph Lucey
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Publication number: 20240412514Abstract: A computing system retrieves ball-by-ball data for a plurality of sporting events. The computing system generates a trained neural network based on ball-by-ball data supplemented with ball-by-ball data with ball-by-ball match context features and personalized embeddings based on a batsman and a bowler for each delivery. The computing system receives a target batsman and a target bowler for a pitch to be delivered in a target event. The computing system identifies target ball-by-ball data for a window of pitches preceding the to be delivered pitch. The computing system retrieves historical ball-by-ball data for each of the target batsman and the target bowler. The computing system generates personalized embeddings for both the target batsman and the target bowler based on the historical ball-by-ball data. The computing system predicts a shot type for the pitch to be delivered based on the target ball-by-ball data and the personalized embeddings.Type: ApplicationFiled: August 22, 2024Publication date: December 12, 2024Applicant: Stats LLCInventors: William Thomas Gurpinar-Morgan, Daniel Richard DINSDALE, Joe Dominic Gallagher, Aditya Cherukumudi, Paul David Power, Patrick Joseph Lucey
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Patent number: 12100210Abstract: A computing system retrieves ball-by-ball data for a plurality of sporting events. The computing system generates a trained neural network based on ball-by-ball data supplemented with ball-by-ball data with ball-by-ball match context features and personalized embeddings based on a batsman and a bowler for each delivery. The computing system receives a target batsman and a target bowler for a pitch to be delivered in a target event. The computing system identifies target ball-by-ball data for a window of pitches preceding the to be delivered pitch. The computing system retrieves historical ball-by-ball data for each of the target batsman and the target bowler. The computing system generates personalized embeddings for both the target batsman and the target bowler based on the historical ball-by-ball data. The computing system predicts a shot type for the pitch to be delivered based on the target ball-by-ball data and the personalized embeddings.Type: GrantFiled: July 31, 2023Date of Patent: September 24, 2024Assignee: Stats LLCInventors: William Thomas Gurpinar-Morgan, Daniel Richard Dinsdale, Joe Dominic Gallagher, Aditya Cherukumudi, Paul David Power, Patrick Joseph Lucey
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Publication number: 20230377337Abstract: A computing system retrieves ball-by-ball data for a plurality of sporting events. The computing system generates a trained neural network based on ball-by-ball data supplemented with ball-by-ball data with ball-by-ball match context features and personalized embeddings based on a batsman and a bowler for each delivery. The computing system receives a target batsman and a target bowler for a pitch to be delivered in a target event. The computing system identifies target ball-by-ball data for a window of pitches preceding the to be delivered pitch. The computing system retrieves historical ball-by-ball data for each of the target batsman and the target bowler. The computing system generates personalized embeddings for both the target batsman and the target bowler based on the historical ball-by-ball data. The computing system predicts a shot type for the pitch to be delivered based on the target ball-by-ball data and the personalized embeddings.Type: ApplicationFiled: July 31, 2023Publication date: November 23, 2023Applicant: STATS LLCInventors: William Thomas Gurpinar-Morgan, Daniel Richard Dinsdale, Joe Dominic Gallagher, Aditya Cherukumudi, Paul David Power, Patrick Joseph Lucey
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Publication number: 20230330485Abstract: A method of generating a player prediction is disclosed herein. A computing system retrieves data from a data store. The computing system generates a predictive model using an artificial neural network. The artificial neural network generates one or more personalized embeddings that include player-specific information based on historical performance. The computing system selects, from the data, one or more features related to each shot attempt captured in the data. The artificial neural network learns an outcome of each shot attempt based at least on the one or more personalized embeddings and the one or more features related to each shot attempt.Type: ApplicationFiled: June 16, 2023Publication date: October 19, 2023Applicant: STATS LLCInventors: Paul David Power, Aditya Cherukumudi, Sujoy Ganguly, Xinyu Wei, Long Sha, Jennifer Hobbs, Hector Ruiz, Patrick Joseph Lucey
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Patent number: 11715303Abstract: A computing system retrieves ball-by-ball data for a plurality of sporting events. The computing system generates a trained neural network based on ball-by-ball data supplemented with ball-by-ball data with ball-by-ball match context features and personalized embeddings based on a batsman and a bowler for each delivery. The computing system receives a target batsman and a target bowler for a pitch to be delivered in a target event. The computing system identifies target ball-by-ball data for a window of pitches preceding the to be delivered pitch. The computing system retrieves historical ball-by-ball data for each of the target batsman and the target bowler. The computing system generates personalized embeddings for both the target batsman and the target bowler based on the historical ball-by-ball data. The computing system predicts a shot type for the pitch to be delivered based on the target ball-by-ball data and the personalized embeddings.Type: GrantFiled: February 4, 2021Date of Patent: August 1, 2023Assignee: STATS LLCInventors: William Thomas Gurpinar-Morgan, Daniel Richard Dinsdale, Joe Dominic Gallagher, Aditya Cherukumudi, Paul David Power, Patrick Joseph Lucey
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Patent number: 11679299Abstract: A method of generating a player prediction is disclosed herein. A computing system retrieves data from a data store. The computing system generates a predictive model using an artificial neural network. The artificial neural network generates one or more personalized embeddings that include player-specific information based on historical performance. The computing system selects, from the data, one or more features related to each shot attempt captured in the data. The artificial neural network learns an outcome of each shot attempt based at least on the one or more personalized embeddings and the one or more features related to each shot attempt.Type: GrantFiled: February 28, 2020Date of Patent: June 20, 2023Assignee: STATS LLCInventors: Paul David Power, Aditya Cherukumudi, Sujoy Ganguly, Xinyu Wei, Long Sha, Jennifer Hobbs, Hector Ruiz, Patrick Joseph Lucey
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Publication number: 20230031622Abstract: A computing system receives a plurality of game files corresponding to a plurality of games across a plurality of seasons. The computing system generates a prediction model configured to generate a possession value for an event. The computing system receives a target event, in real-time or near real-time, from a tracking system monitoring a target game. The computing system generates target features for the target event based on target event data associated with the target event. The computing system generates, via the prediction model, a target possession value for the target event based on the target event data and the target features. The target possession value represents a likelihood that a team with possession will score within a following x-seconds after the target event.Type: ApplicationFiled: July 14, 2022Publication date: February 2, 2023Applicant: STATS LLCInventors: Michael Stöckl, Patrick Joseph Lucey, Daniel Dinsdale, Thomas Seidl, Paul David Power, Nils Sebastiaan Mackaij, Joe Dominic Gallagher
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Publication number: 20220374475Abstract: A computing system receives a request to project a performance of a first player from a current team on a destination team. The computing system generates, based on the request, player-position features corresponding to the first player. The computing system generates team features corresponding to the first player. The computing system generates rating features for the first player. The computing system generates, via a prediction model, a player box score prediction based on the player-position features, the team features, and the rating features. The player box score prediction includes a plurality of per game metrics of the first player on the destination team.Type: ApplicationFiled: May 18, 2022Publication date: November 24, 2022Applicant: STATS LLCInventors: Daniel Richard Dinsdale, Joe Dominic Gallagher, Paul David Power
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Publication number: 20220343253Abstract: A computing system receives a pre-game lineup against a target opponent. The pre-game lineup includes a representation of each player starting a game against the target opponent. The computing system retrieves a first set of historical data for each player in the pre-game lineup and team-specific information. The computing system retrieves a second set of historical data for each player of the target opponent and target opponent-specific information. The computing system predicts an outcome for the game based on the first set of historical data and the second set of historical data. The computing system projects a future effect of the pre-game lineup on at least one season of play by simulating team and player performance. The computing system generates a graphical output reflecting the predicted outcome of the game and the simulation of team and player performance over the at least one season of play.Type: ApplicationFiled: April 27, 2022Publication date: October 27, 2022Applicant: STATS LLCInventors: Patrick Joseph Lucey, Christian Marko, Hector Ruiz, Paul David Power
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Publication number: 20220253679Abstract: A computing system retrieves tracking data from a data store. The computing system converts the tracking data into a plurality of graph-based representations. The prediction engine learns to model defensive behavior based on the plurality of graph-based representations. The computing system generates a trained prediction engine based on the learnings. The computing system receives target tracking data for a target event. The target tracking data includes a plurality of target frames. The computing system converts the target tracking data to a plurality of target graph-based representations. The computing system models, via the trained graph neural network, defensive behavior of a team in the target event based on plurality of graph-based representations.Type: ApplicationFiled: February 4, 2022Publication date: August 11, 2022Applicant: STATS LLCInventors: Paul David Power, Thomas Seidl, Michael Stöckl, Daniel Edison Marley
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Publication number: 20210256265Abstract: A computing system retrieves ball-by-ball data for a plurality of sporting events. The computing system generates a trained neural network based on ball-by-ball data supplemented with ball-by-ball data with ball-by-ball match context features and personalized embeddings based on a batsman and a bowler for each delivery. The computing system receives a target batsman and a target bowler for a pitch to be delivered in a target event. The computing system identifies target ball-by-ball data for a window of pitches preceding the to be delivered pitch. The computing system retrieves historical ball-by-ball data for each of the target batsman and the target bowler. The computing system generates personalized embeddings for both the target batsman and the target bowler based on the historical ball-by-ball data. The computing system predicts a shot type for the pitch to be delivered based on the target ball-by-ball data and the personalized embeddings.Type: ApplicationFiled: February 4, 2021Publication date: August 19, 2021Applicant: STATS LLCInventors: William Thomas Gurpinar-Morgan, Daniel Richard Dinsdale, Joe Dominic Gallagher, Aditya Cherukumudi, Paul David Power, Patrick Joseph Lucey
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Publication number: 20210241145Abstract: A system and method for generating a role summary associated with one or more players are disclosed herein. A computing system retrieves event information for a plurality of teams for a plurality of events. The computing system generates a spatial output that describes each player. The computing system identifies a playing style associated with each team. The computing system identifies a subset of paths a player or team takes between two zones. The computing system identifies each player's involvement in a team's process. The computing system generates a score corresponding to a value of a player's involvement in a given play based on the event information. The computing system generates a score associated with each player's passing ability based on the event information. The computing system determines a shot style of each player based on the event information. The computing system identifies a role associated with each player.Type: ApplicationFiled: February 4, 2021Publication date: August 5, 2021Applicant: STATS LLCInventors: Paul David Power, William Thomas Gurpinar-Morgan, Daniel Richard Dinsdale, Joe Dominic Gallagher, Nils Sebastiaan Mackaij
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Publication number: 20200276474Abstract: A method of generating a player prediction is disclosed herein. A computing system retrieves data from a data store. The computing system generates a predictive model using an artificial neural network. The artificial neural network generates one or more personalized embeddings that include player-specific information based on historical performance. The computing system selects, from the data, one or more features related to each shot attempt captured in the data. The artificial neural network learns an outcome of each shot attempt based at least on the one or more personalized embeddings and the one or more features related to each shot attempt.Type: ApplicationFiled: February 28, 2020Publication date: September 3, 2020Applicant: STATS LLCInventors: Paul David Power, Aditya Cherukumudi, Sujoy Ganguly, Xinyu Wei, Long Sha, Jennifer Hobbs, Hector Ruiz, Patrick Joseph Lucey