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公开(公告)号:US20210001180A1
公开(公告)日:2021-01-07
申请号:US17026011
申请日:2020-09-18
Applicant: Apple Inc.
Inventor: Ying Wang , Robert Pitchford , Stephen Holter
Abstract: A classification model is generated based on historical exercise information. User exercise information is classified into an exercise category using the classification model. Recommendations based on the exercise category is identified. A customized exercise recommendation is determined from the identified recommendations based on a comparison of the user exercise information and expected progress data. This customized recommendation is provided to a user device for consumption.
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公开(公告)号:US10814170B2
公开(公告)日:2020-10-27
申请号:US15625849
申请日:2017-06-16
Applicant: Apple Inc.
Inventor: Ying Wang , Robert Pitchford , Stephen Holter
Abstract: Embodiments herein provide systems, methods, and computer-readable medium for providing customized exercise-related recommendations. Utilizing machine learning algorithms, a classification model may be trained with fitness-related information (e.g., exercise information, user profile information, and/or vital sign information) of a group of users. The classification model may be configured to output a classification for input data (e.g., fitness-related information of a particular user). A recommendation corresponding to a classification may be identified and provided to a particular user. User compliance with provided recommendations and subsequent user progress may be tracked to determine when recommendations were effective at bringing about a desired result (e.g., progressing the user toward a goal). Additionally, the system may determine when classifications have been inaccurately determined and/or when expected progress data has not provided a realistic path by which a user may progress toward a goal. Thus, classification, recommendation, and progress path accuracy/effectiveness may increasingly improve over time.
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公开(公告)号:US20180361203A1
公开(公告)日:2018-12-20
申请号:US15625849
申请日:2017-06-16
Applicant: Apple Inc.
Inventor: Ying Wang , Robert Pitchford , Stephen Holter
Abstract: Embodiments herein provide systems, methods, and computer-readable medium for providing customized exercise-related recommendations. Utilizing machine learning algorithms, a classification model may be trained with fitness-related information (e.g., exercise information, user profile information, and/or vital sign information) of a group of users. The classification model may be configured to output a classification for input data (e.g., fitness-related information of a particular user). A recommendation corresponding to a classification may be identified and provided to a particular user. User compliance with provided recommendations and subsequent user progress may be tracked to determine when recommendations were effective at bringing about a desired result (e.g., progressing the user toward a goal). Additionally, the system may determine when classifications have been inaccurately determined and/or when expected progress data has not provided a realistic path by which a user may progress toward a goal. Thus, classification, recommendation, and progress path accuracy/effectiveness may increasingly improve over time.
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公开(公告)号:US20250128123A1
公开(公告)日:2025-04-24
申请号:US18917830
申请日:2024-10-16
Applicant: Apple Inc.
Inventor: Ying Wang , Robert Pitchford , Stephen Holter
Abstract: A classification model is generated based on historical exercise information. User exercise information is classified into an exercise category using the classification model. Recommendations based on the exercise category is identified. A customized exercise recommendation is determined from the identified recommendations based on a comparison of the user exercise information and expected progress data. This customized recommendation is provided to a user device for consumption.
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公开(公告)号:US12151140B2
公开(公告)日:2024-11-26
申请号:US17026011
申请日:2020-09-18
Applicant: Apple Inc.
Inventor: Ying Wang , Robert Pitchford , Stephen Holter
Abstract: A classification model is generated based on historical exercise information. User exercise information is classified into an exercise category using the classification model. Recommendations based on the exercise category is identified. A customized exercise recommendation is determined from the identified recommendations based on a comparison of the user exercise information and expected progress data. This customized recommendation is provided to a user device for consumption.
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