-
公开(公告)号:US20230393962A1
公开(公告)日:2023-12-07
申请号:US18204784
申请日:2023-06-01
Applicant: Apple Inc.
Inventor: Sonia Mannan , Anshul Dawra , John T. Crowson , Akshay Salpekar , Phillip J. Azar , Anthony R. Newnam
CPC classification number: G06F11/3476 , G06F11/324
Abstract: Embodiments of the present disclosure present devices, methods, and computer readable medium related to identifying, generating, and presenting diagnostic data corresponding to devices from which the diagnostic data was obtained. In some embodiments, the diagnostic data may include log file data associated with a common error, operational metrics, or the like. Commonality may be identified based on call path signatures. Call path signatures may be generated for log files and compared to one another to determine matches. Matched log files may be grouped or otherwise associated with a common error (e.g., a hanging error). A user interface is provided to view the diagnostic data associated with a common error. The disclosed techniques provide an intelligent method for visualizing performance changes and/or identifying errors in applications.
-
2.
公开(公告)号:US20240427681A1
公开(公告)日:2024-12-26
申请号:US18404714
申请日:2024-01-04
Applicant: Apple Inc.
Inventor: Akhil Bhutani , Anshul Dawra , Shreyas Binnamangala Prabhu , Phillip J. Azar , Ashish Patro , Alex W. Fu
IPC: G06F11/30 , G06F16/2458 , G06F16/28
Abstract: In an example method, a system receives diagnostic data from a plurality of electronic devices, the diagnostic data representing resource usage by applications on the plurality of electronic devices, application names associated with the applications, application version identifiers associated with the applications, and call-stacks associated with the resource usage by the applications. The system categorizes the resource usage based on the application names, the application version identifiers, and the call-stacks, including determining signatures based on the call-stacks, and categorizing the resource usage based on the signatures, the application names, and the application version identifiers. Further, the system generates a data set representing the categorization of the resource usage.
-
公开(公告)号:US20220229758A1
公开(公告)日:2022-07-21
申请号:US17713169
申请日:2022-04-04
Applicant: APPLE INC.
Inventor: Amit K. Vyas , Abhinav Pathak , Anthony R. Newnam , Phillip J. Azar , Ashish Patro , Prajakta S. Karandikar , Daniel J. Etter , Conor J. O'Reilly , Andreas C. Bergen , Nehal Bhandari , Jeffrey S. Lale , Andrew P. Sakai , Terrence R. Long , Soren C. Spies
IPC: G06F11/34 , G06F9/54 , G06F16/906 , G06F16/904 , G06F17/18 , G06K9/62 , G06F11/36
Abstract: Embodiments of the present disclosure present devices, methods, and computer readable medium for techniques for measuring operational performance metrics, and presenting these metrics through an application programming interface (API) for developers to access for optimizing their applications. Exemplary metrics can include central processing unit or graphics processing unit time, foreground/background time, networking bytes (per application), location activity, display average picture luminance, cellular networking condition, peak memory, number of logical writes, launch and resume time, frame rates, and hang time. Regional markers can also be used to measure specific metrics for in application tasks. The techniques provide multiple user interfaces to help developers recognize the important metrics to optimize the performance of their applications. The data can be normalized over various different devices having different battery size, screen size, and processing requirements. The user interfaces can provide an intelligent method for visualizing performance changes for significant changes in application versions.
-
公开(公告)号:US11036610B2
公开(公告)日:2021-06-15
申请号:US16671093
申请日:2019-10-31
Applicant: Apple Inc.
Inventor: Amit K. Vyas , Abhinav Pathak , Anthony R. Newnam , Phillip J. Azar , Ashish Patro , Prajakta S. Karandikar , Daniel J. Etter , Conor J. O'Reilly , Andreas C. Bergen , Nehal Bhandari , Jeffrey S. Lale , Andrew P. Sakai , Terrence R. Long , Soren C. Spies
IPC: G06F11/34 , G06F9/54 , G06F16/906 , G06F16/904 , G06F17/18 , G06K9/62 , G06F11/36
Abstract: Embodiments of the present disclosure present devices, methods, and computer readable medium for techniques for measuring operational performance metrics, and presenting these metrics through an application programming interface (API) for developers to access for optimizing their applications. Exemplary metrics can include central processing unit or graphics processing unit time, foreground/background time, networking bytes (per application), location activity, display average picture luminance, cellular networking condition, peak memory, number of logical writes, launch and resume time, frame rates, and hang time. Regional markers can also be used to measure specific metrics for in application tasks. The techniques provide multiple user interfaces to help developers recognize the important metrics to optimize the performance of their applications. The data can be normalized over various different devices having different battery size, screen size, and processing requirements. The user interfaces can provide an intelligent method for visualizing performance changes for significant changes in application versions.
-
公开(公告)号:US20200379878A1
公开(公告)日:2020-12-03
申请号:US16671093
申请日:2019-10-31
Applicant: Apple Inc.
Inventor: Amit K. Vyas , Abhinav Pathak , Anthony R. Newnam , Phillip J. Azar , Ashish Patro , Prajakta S. Karandikar , Daniel J. Etter , Conor J. O'Reilly , Andreas C. Bergen , Nehal Bhandari , Jeffrey S. Lale , Andrew P. Sakai , Terrence R. Long , Soren C. Spies
IPC: G06F11/36
Abstract: Embodiments of the present disclosure present devices, methods, and computer readable medium for techniques for measuring operational performance metrics, and presenting these metrics through an application programming interface (API) for developers to access for optimizing their applications. Exemplary metrics can include central processing unit or graphics processing unit time, foreground/background time, networking bytes (per application), location activity, display average picture luminance, cellular networking condition, peak memory, number of logical writes, launch and resume time, frame rates, and hang time. Regional markers can also be used to measure specific metrics for in application tasks. The techniques provide multiple user interfaces to help developers recognize the important metrics to optimize the performance of their applications. The data can be normalized over various different devices having different battery size, screen size, and processing requirements. The user interfaces can provide an intelligent method for visualizing performance changes for significant changes in application versions.
-
-
-
-