Patents by Inventor Jeremi Sudol
Jeremi Sudol 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: 20250046083Abstract: An object recognition ingestion system is presented. The object ingestion system captures image data of objects, possibly in an uncontrolled setting. The image data is analyzed to determine if one or more a priori know canonical shape objects match the object represented in the image data. The canonical shape object also includes one or more reference PoVs indicating perspectives from which to analyze objects having the corresponding shape. An object ingestion engine combines the canonical shape object along with the image data to create a model of the object. The engine generates a desirable set of model PoVs from the reference PoVs, and then generates recognition descriptors from each of the model PoVs. The descriptors, image data, model PoVs, or other contextually relevant information are combined into key frame bundles having sufficient information to allow other computing devices to recognize the object at a later time.Type: ApplicationFiled: October 18, 2024Publication date: February 6, 2025Applicant: Nant Holdings IP, LLCInventors: Kamil Wnuk, David McKinnon, Jeremi Sudol, Bing Song, Matheen Siddiqui
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Patent number: 12148213Abstract: An object recognition ingestion system is presented. The object ingestion system captures image data of objects, possibly in an uncontrolled setting. The image data is analyzed to determine if one or more a priori know canonical shape objects match the object represented in the image data. The canonical shape object also includes one or more reference PoVs indicating perspectives from which to analyze objects having the corresponding shape. An object ingestion engine combines the canonical shape object along with the image data to create a model of the object. The engine generates a desirable set of model PoVs from the reference PoVs, and then generates recognition descriptors from each of the model PoVs. The descriptors, image data, model PoVs, or other contextually relevant information are combined into key frame bundles having sufficient information to allow other computing devices to recognize the object at a later time.Type: GrantFiled: August 3, 2023Date of Patent: November 19, 2024Assignee: NANT HOLDINGS IP, LLCInventors: Kamil Wnuk, David McKinnon, Jeremi Sudol, Bing Song, Matheen Siddiqui
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Publication number: 20240303488Abstract: A system and method of designing a T-cell receptor (TCR) assay includes the use of processor-based predictive modeling of an HLA binding classifier, T-cell response, sequencing T-cells, and TCR classifier/regression. Particularly, embodiments include feeding a representation of various peptides into a trained HLA binding classifier model configured to determine average binding predictions of overlapping peptides at each position of the viral or cancer protein. Based upon the average binding predictions, one or more peptide pools can be selected and fed into the T-cell response model, along with representative blood samples associated with a patient/patient population. Further, a sequenced resultant T-cell response can be used to detect T-cell response patterns. These detected patterns can be used to train the TCR classifier/regression model to predict or estimate a patient state.Type: ApplicationFiled: March 11, 2024Publication date: September 12, 2024Applicant: ImmunityBio, Inc.Inventors: Kamil Wnuk, Jeremi Sudol
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Patent number: 12008719Abstract: Apparatus, methods and systems of providing AR content are disclosed. Embodiments of the inventive subject matter can obtain an initial map of an area, derive views of interest, obtain AR content objects associated with the views of interest, establish experience clusters and generate a tile map tessellated based on the experience clusters. A user device could be configured to obtain and instantiate at least some of the AR content objects based on at least one of a location and a recognition.Type: GrantFiled: January 28, 2022Date of Patent: June 11, 2024Assignee: Nant Holdings IP, LLCInventors: David McKinnon, Kamil Wnuk, Jeremi Sudol, Matheen Siddiqui, John Wiacek, Bing Song, Nicholas J. Witchey
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Publication number: 20240037857Abstract: Apparatus, methods and systems of providing AR content are disclosed. Embodiments of the inventive subject matter can obtain an initial map of an area, derive views of interest, obtain AR content objects associated with the views of interest, establish experience clusters and generate a tile map tessellated based on the experience clusters. A user device could be configured to obtain and instantiate at least some of the AR content objects based on at least one of a location and a recognition.Type: ApplicationFiled: October 11, 2023Publication date: February 1, 2024Applicant: Nant Holdings IP, LLCInventors: David McKinnon, Kamil Wnuk, Jeremi Sudol, Matheen Siddiqui, John Wiacek, Bing Song, Nicholas J. Witchey
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Publication number: 20230377340Abstract: An object recognition ingestion system is presented. The object ingestion system captures image data of objects, possibly in an uncontrolled setting. The image data is analyzed to determine if one or more a priori know canonical shape objects match the object represented in the image data. The canonical shape object also includes one or more reference PoVs indicating perspectives from which to analyze objects having the corresponding shape. An object ingestion engine combines the canonical shape object along with the image data to create a model of the object. The engine generates a desirable set of model PoVs from the reference PoVs, and then generates recognition descriptors from each of the model PoVs. The descriptors, image data, model PoVs, or other contextually relevant information are combined into key frame bundles having sufficient information to allow other computing devices to recognize the object at a later time.Type: ApplicationFiled: August 3, 2023Publication date: November 23, 2023Applicant: Nant Holdings IP, LLCInventors: Kamil Wnuk, David McKinnon, Jeremi Sudol, Bing Song, Matheen Siddiqui
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Publication number: 20230326544Abstract: A method of preparing a vaccine includes providing an immune epitope database; providing a neural network; receiving data corresponding to at least one protein into the neural network; receiving data corresponding to one or more candidate peptides corresponding to potential cleavage products of the at least one protein, or determining, using the neural network, data corresponding to one or more candidate peptides corresponding to potential cleavage products of the at least one protein; calculating, using the neural network, a probability of cleavage of the protein to result in each of the one or more candidate peptides; and outputting a signal corresponding to the calculated probability. An architecture having two channel output, i.e., output of a C-terminal cleavage and an N-terminal cleavage, is described. Related devices, apparatuses, systems, techniques, articles and non-transitory computer-readable storage medium are also described.Type: ApplicationFiled: August 25, 2021Publication date: October 12, 2023Inventors: Jeremi SUDOL, Kamil A. WNUK, Andrew NGUYEN, John Zachary SANBORN
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Patent number: 11748990Abstract: An object recognition ingestion system is presented. The object ingestion system captures image data of objects, possibly in an uncontrolled setting. The image data is analyzed to determine if one or more a priori know canonical shape objects match the object represented in the image data. The canonical shape object also includes one or more reference PoVs indicating perspectives from which to analyze objects having the corresponding shape. An object ingestion engine combines the canonical shape object along with the image data to create a model of the object. The engine generates a desirable set of model PoVs from the reference PoVs, and then generates recognition descriptors from each of the model PoVs. The descriptors, image data, model PoVs, or other contextually relevant information are combined into key frame bundles having sufficient information to allow other computing devices to recognize the object at a later time.Type: GrantFiled: June 1, 2022Date of Patent: September 5, 2023Assignee: Nant Holdings IP, LLCInventors: Kamil Wnuk, David McKinnon, Jeremi Sudol, Bing Song, Matheen Siddiqui
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Publication number: 20230274796Abstract: Techniques are provided for predicting MHC-peptide binding affinity. A plurality of training peptide sequences is obtained, and a neural network model is trained to predict MHC-peptide binding affinity using the training peptide sequences. An encoder of the neural network model comprising an RNN is configured to process an input training peptide sequence to generate a fixed-dimension encoding output by applying a final hidden state of the RNN at intermediate state outputs of the RNN to generate attention weighted outputs, and linearly combining the attention weighted outputs. A fully connected layer following the encoder is configured to process the fixed-dimension encoding output to generate an MHC-peptide binding affinity prediction output. A computing device is configured to use the trained neural network to predict MHC-peptide binding affinity for a test peptide sequence.Type: ApplicationFiled: January 12, 2023Publication date: August 31, 2023Applicant: NantOmics, LLCInventors: Jeremi Sudol, Kamil Wnuk
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Patent number: 11557375Abstract: Techniques are provided for predicting MHC-peptide binding affinity. A plurality of training peptide sequences is obtained, and a neural network model is trained to predict MHC-peptide binding affinity using the training peptide sequences. An encoder of the neural network model comprising an RNN is configured to process an input training peptide sequence to generate a fixed-dimension encoding output by applying a final hidden state of the RNN at intermediate state outputs of the RNN to generate attention weighted outputs, and linearly combining the attention weighted outputs. A fully connected layer following the encoder is configured to process the fixed-dimension encoding output to generate an MHC-peptide binding affinity prediction output. A computing device is configured to use the trained neural network to predict MHC-peptide binding affinity for a test peptide sequence.Type: GrantFiled: August 14, 2019Date of Patent: January 17, 2023Assignee: NantOmics, LLCInventors: Jeremi Sudol, Kamil Wnuk
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Publication number: 20220403413Abstract: Systems and methods are presented that allow for determination and prediction of payload toxicity in therapeutic viruses. Disclosed herein are methods of determining payload toxicity of an expressed polypeptide in a cell, comprising: generating or procuring a plurality of expression vectors, each containing a different recombinant nucleic acid sequence that encodes a corresponding recombinant polypeptide; expressing the recombinant nucleic acid sequence in a plurality of host cells while culturing the host cells; sequencing the plurality of expression vectors after culturing the host cells; and correlating at least portions of the recombinant nucleic acid sequence with a toxicity measure.Type: ApplicationFiled: July 24, 2020Publication date: December 22, 2022Applicants: Nantomics, LLC, NantBio, Inc.Inventors: Kamil Wnuk, Lise Geissert, Jeremi Sudol, Charles Vaske, Stephen Charles Benz, Connie Tsai, Kayvan Niazi, Christopher W. Szeto
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Publication number: 20220292804Abstract: An object recognition ingestion system is presented. The object ingestion system captures image data of objects, possibly in an uncontrolled setting. The image data is analyzed to determine if one or more a priori know canonical shape objects match the object represented in the image data. The canonical shape object also includes one or more reference PoVs indicating perspectives from which to analyze objects having the corresponding shape. An object ingestion engine combines the canonical shape object along with the image data to create a model of the object. The engine generates a desirable set of model PoVs from the reference PoVs, and then generates recognition descriptors from each of the model PoVs. The descriptors, image data, model PoVs, or other contextually relevant information are combined into key frame bundles having sufficient information to allow other computing devices to recognize the object at a later time.Type: ApplicationFiled: June 1, 2022Publication date: September 15, 2022Applicant: Nant Holdings IP, LLCInventors: Kamil Wnuk, David McKinnon, Jeremi Sudol, Bing Song, Matheen Siddiqui
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Patent number: 11392636Abstract: Apparatus, methods and systems of providing AR content are disclosed. Embodiments of the inventive subject matter can obtain an initial map of an area, derive views of interest, obtain AR content objects associated with the views of interest, establish experience clusters and generate a tile map tessellated based on the experience clusters. A user device could be configured to obtain and instantiate at least some of the AR content objects based on at least one of a location and a recognition.Type: GrantFiled: April 30, 2020Date of Patent: July 19, 2022Assignee: NANT HOLDINGS IP, LLCInventors: David McKinnon, Kamil Wnuk, Jeremi Sudol, Matheen Siddiqui, John Wiacek, Bing Song, Nicholas J. Witchey
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Patent number: 11380080Abstract: An object recognition ingestion system is presented. The object ingestion system captures image data of objects, possibly in an uncontrolled setting. The image data is analyzed to determine if one or more a priori know canonical shape objects match the object represented in the image data. The canonical shape object also includes one or more reference PoVs indicating perspectives from which to analyze objects having the corresponding shape. An object ingestion engine combines the canonical shape object along with the image data to create a model of the object. The engine generates a desirable set of model PoVs from the reference PoVs, and then generates recognition descriptors from each of the model PoVs. The descriptors, image data, model PoVs, or other contextually relevant information are combined into key frame bundles having sufficient information to allow other computing devices to recognize the object at a later time.Type: GrantFiled: September 30, 2020Date of Patent: July 5, 2022Assignee: NANT HOLDINGS IP, LLCInventors: Kamil Wnuk, David McKinnon, Jeremi Sudol, Bing Song, Matheen Siddiqui
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Publication number: 20220156314Abstract: Apparatus, methods and systems of providing AR content are disclosed. Embodiments of the inventive subject matter can obtain an initial map of an area, derive views of interest, obtain AR content objects associated with the views of interest, establish experience clusters and generate a tile map tessellated based on the experience clusters. A user device could be configured to obtain and instantiate at least some of the AR content objects based on at least one of a location and a recognition.Type: ApplicationFiled: January 28, 2022Publication date: May 19, 2022Applicant: Nant Holding IP, LLCInventors: David McKinnon, Kamil Wnuk, Jeremi Sudol, Matheen Siddiqui, John Wiacek, Bing Song, Nicholas J. Witchey
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Patent number: 11188786Abstract: A sensor data processing system and method is described. Contemplated systems and methods derive a first recognition trait of an object from a first data set that represents the object in a first environmental state. A second recognition trait of the object is then derived from a second data set that represents the object in a second environmental state. The sensor data processing systems and methods then identifies a mapping of elements of the first and second recognition traits in a new representation space. The mapping of elements satisfies a variance criterion for corresponding elements, which allows the mapping to be used for object recognition. The sensor data processing systems and methods described herein provide new object recognition techniques that are computationally efficient and can be performed in real-time by the mobile phone technology that is currently available.Type: GrantFiled: August 12, 2019Date of Patent: November 30, 2021Assignee: Nant Holdings IP, LLCInventors: Kamil Wnuk, Jeremi Sudol, Bing Song, Matheen Siddiqui, David McKinnon
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Publication number: 20210202043Abstract: Techniques are provided for predicting MHC-peptide binding affinity. A plurality of training peptide sequences is obtained, and a neural network model is trained to predict MHC-peptide binding affinity using the training peptide sequences. An encoder of the neural network model comprising an RNN is configured to process an input training peptide sequence to generate a fixed-dimension encoding output by applying a final hidden state of the RNN at intermediate state outputs of the RNN to generate attention weighted outputs, and linearly combining the attention weighted outputs. A fully connected layer following the encoder is configured to process the fixed-dimension encoding output to generate an MHC-peptide binding affinity prediction output. A computing device is configured to use the trained neural network to predict MHC-peptide binding affinity for a test peptide sequence.Type: ApplicationFiled: August 14, 2019Publication date: July 1, 2021Applicant: NantOmics, LLCInventors: Jeremi Sudol, Kamil Wnuk
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Publication number: 20210027084Abstract: An object recognition ingestion system is presented. The object ingestion system captures image data of objects, possibly in an uncontrolled setting. The image data is analyzed to determine if one or more a priori know canonical shape objects match the object represented in the image data. The canonical shape object also includes one or more reference PoVs indicating perspectives from which to analyze objects having the corresponding shape. An object ingestion engine combines the canonical shape object along with the image data to create a model of the object. The engine generates a desirable set of model PoVs from the reference PoVs, and then generates recognition descriptors from each of the model PoVs. The descriptors, image data, model PoVs, or other contextually relevant information are combined into key frame bundles having sufficient information to allow other computing devices to recognize the object at a later time.Type: ApplicationFiled: September 30, 2020Publication date: January 28, 2021Applicant: Nant Holdings IP, LLCInventors: Kamil Wnuk, David McKinnon, Jeremi Sudol, Bing Song, Matheen Siddiqui
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Patent number: 10832075Abstract: An object recognition ingestion system is presented. The object ingestion system captures image data of objects, possibly in an uncontrolled setting. The image data is analyzed to determine if one or more a priori know canonical shape objects match the object represented in the image data. The canonical shape object also includes one or more reference PoVs indicating perspectives from which to analyze objects having the corresponding shape. An object ingestion engine combines the canonical shape object along with the image data to create a model of the object. The engine generates a desirable set of model PoVs from the reference PoVs, and then generates recognition descriptors from each of the model PoVs. The descriptors, image data, model PoVs, or other contextually relevant information are combined into key frame bundles having sufficient information to allow other computing devices to recognize the object at a later time.Type: GrantFiled: September 6, 2018Date of Patent: November 10, 2020Assignee: Nant Holdings IP, LLCInventors: Kamil Wnuk, David McKinnon, Jeremi Sudol, Bing Song, Matheen Siddiqui
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Patent number: 10748056Abstract: Techniques are provided for predicting DNA accessibility. DNase-seq data files and RNA-seq data files for a plurality of cell types are paired by assigning DNase-seq data files to RNA-seq data files that are at least within a same biotype. A neural network is configured to be trained using batches of the paired data files, where configuring the neural network comprises configuring convolutional layers to process a first input comprising DNA sequence data from a paired data file to generate a convolved output, and fully connected layers following the convolutional layers to concatenate the convolved output with a second input comprising gene expression levels derived from RNA-seq data from the paired data file and process the concatenation to generate a DNA accessibility prediction output. The trained neural network is used to predict DNA accessibility in a genomic sample input comprising RNA-seq data and whole genome sequencing for a new cell type.Type: GrantFiled: September 3, 2019Date of Patent: August 18, 2020Assignees: NantOmics, LLC, Nant Holdings IP, LLCInventors: Kamil Wnuk, Jeremi Sudol, Shahrooz Rabizadeh, Patrick Soon-Shiong, Christopher Szeto, Charles Vaske