Patents by Inventor Xiao Cai
Xiao Cai 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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Patent number: 11494863Abstract: Embodiments are directed to managing data correlation over a network. Student information may be provided. Position information based on potential employers may be provided. Student profiles may be generated based on translation models and the student information. The student information may be translated into unified facts included in the student profiles. Position profiles may be generated based on the translation models and the position information. The position information may be translated into other unified facts in the position profiles. The student profiles may be correlated with the position profiles based on recommendation models, the unified facts, and the other unified facts. Each student profile and position profile pair may be associated with a score based on a strength of the correlation. Reports may be provided that include each pair of the student profile. A plurality of pairs may be ordered based on the score associated with each pair.Type: GrantFiled: October 1, 2021Date of Patent: November 8, 2022Assignee: AstrumU, Inc.Inventors: Adam Jason Wray, Kaj Orla Peter Pedersen, Xiao Cai, Feng Zhang
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Publication number: 20220138600Abstract: Embodiments are directed to managing data correlation over a network. Role success models that correspond to roles and to success criteria may be provided. A student profile that includes skill vectors may be provided based on student information. Role success models may be employed to determine intermediate scores based on the skill vectors and the success criteria. A predictive score for the student that corresponds with a predicted performance of the student in the roles may be generated based on the one or more intermediate scores. Actions for the student may be determined based on a mismatch of the skill vectors and role skill vectors that correspond to the roles. In response to the student performing the actions: updating the one or more skill vectors based on a completion of the actions; and updating the predictive score based on the role success models and the updated skill vectors.Type: ApplicationFiled: July 26, 2021Publication date: May 5, 2022Inventors: Adam Jason Wray, Kaj Orla Peter Pedersen, Xiao Cai, Jue Gong
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Publication number: 20220028020Abstract: Embodiments are directed to managing data correlation over a network. Student information may be provided. Position information based on potential employers may be provided. Student profiles may be generated based on translation models and the student information. The student information may be translated into unified facts included in the student profiles. Position profiles may be generated based on the translation models and the position information. The position information may be translated into other unified facts in the position profiles. The student profiles may be correlated with the position profiles based on recommendation models, the unified facts, and the other unified facts. Each student profile and position profile pair may be associated with a score based on a strength of the correlation. Reports may be provided that include each pair of the student profile. A plurality of pairs may be ordered based on the score associated with each pair.Type: ApplicationFiled: October 1, 2021Publication date: January 27, 2022Inventors: Adam Jason Wray, Kaj Orla Peter Pedersen, Xiao Cai, Feng Zhang
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Patent number: 11209805Abstract: Technologies are described for utilizing machine learning (“ML”) to adjust operational characteristics of a computing system based upon detected HID activity. Labeled training data is collected with user consent that includes data describing HID activity and data that identifies user activity taking place on a computing device when the data HID activity took place. A ML model is trained using the labeled training data that can receive data describing current HID activity and identify user activity currently taking place on another computing device based upon the current HID activity. The ML model can then select features of the other computing device that are beneficial to the identified user activity. The ML model can then cause one or more operational characteristics of the other computing device to be adjusted based upon the identified user activity, thereby saving valuable computing resources. A UI can also be presented that describes the identified features.Type: GrantFiled: October 31, 2017Date of Patent: December 28, 2021Assignee: MICROSOFT TECHNOLOGY LICENSING, LLC.Inventors: Xiaoyu Chai, Choo Yei Chong, Ioana Laura Marginas, Eleanor Ann Robinson, Dale R. Johnson, Xinyi Zhang, Xiao Cai
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Publication number: 20210350167Abstract: Embodiments are directed to data ingestion over a network. Raw data and integrated data associated with a plurality of separate data sources may be provided such that the raw data includes content associated with a plurality of subjects. Categorization models may be employed to categorize the raw data based on various features, such as, format, structure, data source, variability, volume, or associated entities. Matching models may be determined based on the categorization of the of the raw data, the integrated data and the content associated with the plurality of subjects. Matching models may generate a plurality of unified facts based on the raw data and the integrated data such that each unified fact is associated with a score associated with a quality of its match with a unified schema.Type: ApplicationFiled: July 23, 2021Publication date: November 11, 2021Inventors: Adam Jason Wray, Kaj Orla Peter Pedersen, Xiao Cai
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Patent number: 11151673Abstract: Embodiments are directed to managing data correlation over a network. Student information may be provided. Position information based on potential employers may be provided. Student profiles may be generated based on translation models and the student information. The student information may be translated into unified facts included in the student profiles. Position profiles may be generated based on the translation models and the position information. The position information may be translated into other unified facts in the position profiles. The student profiles may be correlated with the position profiles based on recommendation models, the unified facts, and the other unified facts. Each student profile and position profile pair may be associated with a score based on a strength of the correlation. Reports may be provided that include each pair of the student profile. A plurality of pairs may be ordered based on the score associated with each pair.Type: GrantFiled: June 10, 2020Date of Patent: October 19, 2021Assignee: AstrumU, Inc.Inventors: Adam Jason Wray, Kaj Orla Peter Pedersen, Xiao Cai, Feng Zhang
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Patent number: 11095551Abstract: For multipathing using a network of overlays, a set of virtual network interfaces (VNICs) corresponding to a physical network interface (PNIC) is created in a first data processing system. A first virtual network interface (VNIC) from the set of VNICs is bound to a virtual machine (VM) executing in a first data processing environment across a data network from the first data processing system. During a data communication with a second data processing system, data is divided into a first portion and a second portion, the first portion using a first path from the first VNIC to the first VM to the second data processing system, and the second portion using a second path from the PNIC to the second data processing system.Type: GrantFiled: February 14, 2018Date of Patent: August 17, 2021Assignee: INTERNATIONAL BUSINESS MACHINES CORPORATIONInventors: Xiao Cai, Hani T. Jamjoom, Franck Vinh Le, Daniel J. Williams
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Patent number: 11074476Abstract: Embodiments are directed to data ingestion over a network. Raw data and integrated data associated with a plurality of separate data sources may be provided such that the raw data includes content associated with a plurality of subjects. Categorization models may be employed to categorize the raw data based on various features, such as, format, structure, data source, variability, volume, or associated entities. Matching models may be determined based on the categorization of the of the raw data, the integrated data and the content associated with the plurality of subjects. Matching models may generate a plurality of unified facts based on the raw data and the integrated data such that each unified fact is associated with a score associated with a quality of its match with a unified schema.Type: GrantFiled: November 21, 2019Date of Patent: July 27, 2021Assignee: AstrumU, Inc.Inventors: Adam Jason Wray, Kaj Orla Peter Pedersen, Xiao Cai
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Patent number: 11074509Abstract: Embodiments are directed to managing data correlation over a network. Role success models that correspond to roles and to success criteria may be provided. A student profile that includes skill vectors may be provided based on student information. Role success models may be employed to determine intermediate scores based on the skill vectors and the success criteria. A predictive score for the student that corresponds with a predicted performance of the student in the roles may be generated based on the one or more intermediate scores. Actions for the student may be determined based on a mismatch of the skill vectors and role skill vectors that correspond to the roles. In response to the student performing the actions: updating the one or more skill vectors based on a completion of the actions; and updating the predictive score based on the role success models and the updated skill vectors.Type: GrantFiled: November 30, 2020Date of Patent: July 27, 2021Assignee: AstrumU, Inc.Inventors: Adam Jason Wray, Kaj Orla Peter Pedersen, Xiao Cai, Jue Gong
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Publication number: 20210203672Abstract: A computing system can receive location data from computing devices of drivers, each of the computing devices operating a designated application associated with an application service. The system can determine a set of locational attributes of a respective driver and determine whether one or more anomalous locational attributes are present in the set of locational attributes of the respective driver. In response to determining that one or more anomalous locational attributes are present, the system can associate a data set with a driver profile of the respective driver.Type: ApplicationFiled: March 17, 2021Publication date: July 1, 2021Inventors: Sheng Yang, Ze Huang, Qiao Wang, David Spenser DyTang, Kiarash Amiri, Tara Michelle Mitchell, Xiao Cai
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Publication number: 20210158074Abstract: Embodiments are directed to data ingestion over a network. Raw data and integrated data associated with a plurality of separate data sources may be provided such that the raw data includes content associated with a plurality of subjects. Categorization models may be employed to categorize the raw data based on various features, such as, format, structure, data source, variability, volume, or associated entities. Matching models may be determined based on the categorization of the of the raw data, the integrated data and the content associated with the plurality of subjects. Matching models may generate a plurality of unified facts based on the raw data and the integrated data such that each unified fact is associated with a score associated with a quality of its match with a unified schema.Type: ApplicationFiled: November 21, 2019Publication date: May 27, 2021Inventors: Adam Jason Wray, Kaj Orla Peter Pedersen, Xiao Cai
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Patent number: 10999299Abstract: A computing system can receive, over one or more networks, location data from the computing devices of user as the user operate throughout a region. For each user, the computing system can determine whether the user is operating a location-spoofing application on the computing device of the user based, at least in part, on the location data received from the computing device of the user.Type: GrantFiled: October 9, 2018Date of Patent: May 4, 2021Assignee: UBER TECHNOLOGIES, INC.Inventors: Sheng Yang, Ze Huang, Qiao Wang, David Spenser DyTang, Kiarash Amiri, Tara Michelle Mitchell, Xiao Cai
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Publication number: 20210070717Abstract: Disclosed are an organic compound based on triazine and benzoxazole and an application thereof in an OLED device. The compound of the present application has a relatively high glass transition temperature and molecular thermal stability, is low in absorption and high in refractive index in the field of visible light, and is capable of effectively improving the light extraction efficiency of an OLED device when applied to a capping layer of the OLED device; with a deep HOMO energy level and high electronic mobility, the compound of the present application can be used as the hole blocking layer or the electron transport layer material, so that the recombination degree of the hole and the electron in the light-emitting layer can be improved, and thus the light-emitting efficiency of the OLED device can be enhanced and the service life of the OLED device can be prolonged.Type: ApplicationFiled: November 13, 2018Publication date: March 11, 2021Applicant: JIANGSU SUNERA TECHNOLOGY CO., LTD.Inventors: Chong LI, Xiao CAI, Zhaochao ZHANG, Yujia PANG
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Publication number: 20210021096Abstract: The present invention relates to the technical field of optical communications, and relates to an optical amplification method and an amplifier, and in particular, to a self-adaptive wave band amplification method and an amplifier. The present invention consists of a master amplifying unit and a slave amplifying unit, and can autonomously detect the service signal wave band range of an optical transmission line, and according to the detection result, the two amplifying units do not need to perform scheduling or configuration from the level of network management, and perform direct interaction and action from the bottom layer to implement self-adaptive on, off and adjustment in real time. On one hand, power consumption is reduced, and energy is saved; and on the other hand, the performance is optimized, and an optimal optical amplification index is obtained.Type: ApplicationFiled: December 25, 2017Publication date: January 21, 2021Applicant: Accelink Technologies Co., Ltd.Inventors: Zhenyu Yu, Qinlian Bu, Chengpeng Fu, Xiao Cai, Fuxing Deng, Rui Lei
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Patent number: 10816351Abstract: A system uses machine models to estimate trip durations or distance. The system trains a historical model to estimate trip duration using characteristics of past trips. The system trains a real-time model to estimate trip duration using characteristics of recently completed trips. The historical and real-time models may use different time windows of training data to predict estimates, and may be trained to predict an adjustment to an initial trip estimate. A selector model is trained to predict whether the historical model, the real-time model, or a combination of the historical and real-time models will more accurately estimate a trip duration, given features associated with a trip duration request, and the system accordingly uses the models to estimate a trip duration. In some embodiments, the real-time model and the selector may be trained using batch machine learning techniques which allow the models to incorporate new trip data as trips complete.Type: GrantFiled: August 16, 2017Date of Patent: October 27, 2020Assignee: Uber Technologies, Inc.Inventors: Shijing Yao, Xiao Cai
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Patent number: D913280Type: GrantFiled: December 28, 2017Date of Patent: March 16, 2021Assignee: Lenovo (Beijing) Co., Ltd.Inventors: Xiao Cai, Xuesong Fan
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Patent number: D915848Type: GrantFiled: December 23, 2019Date of Patent: April 13, 2021Inventor: Xiao Cai
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Patent number: D917248Type: GrantFiled: December 23, 2019Date of Patent: April 27, 2021Inventor: Xiao Cai
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Patent number: D930360Type: GrantFiled: May 28, 2020Date of Patent: September 14, 2021Inventor: Xiao Cai
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Patent number: D948977Type: GrantFiled: December 30, 2019Date of Patent: April 19, 2022Inventor: Xiao Cai