**Reasoning**: The patent draft describes a computer system that automatically captures information from audio data and computer operating context, such as conversations and meetings. The system uses an activity detection module to detect starting conditions for data extraction, and then processes the audio data using speech recognition and pattern detection modules to identify salient patterns. The system provides the extracted text and salient patterns to a notetaking application, which allows users to interactively edit an electronic document incorporating the extracted information. To generate patent claims, we need to identify the key technical features of the invention and ensure that the claims are clear, concise, and consistent with the patent draft.
**Claims**:
1. A computer-implemented method for automatically capturing information from audio data and computer operating context, comprising: detecting starting conditions for data extraction using an activity detection module; processing the audio data using speech recognition and pattern detection modules to identify salient patterns; and providing the extracted text and salient patterns to a notetaking application, wherein the speech recognition module identifies keywords and phrases from the audio data, and the pattern detection module identifies relationships between the extracted information and the computer operating context.
2. The method of claim 1, wherein the activity detection module uses machine learning algorithms to detect starting conditions for data extraction based on the computer operating context, including the type of audio data, the type of computer operating context, and the type of notetaking application.
3. A computer system for automatically capturing information from audio data and computer operating context, comprising: an activity detection module for detecting starting conditions for data extraction; a speech recognition module for processing the audio data; a pattern detection module for identifying salient patterns; and a notetaking application for providing the extracted text and salient patterns to the user, wherein the system uses natural language processing to identify keywords and phrases from the audio data.
4. The system of claim 3, wherein the activity detection module detects starting conditions based on machine learning algorithms and the computer operating context, and the speech recognition module uses deep learning techniques to process the audio data.
5. A method for automatically capturing information from audio data and computer operating context, comprising: detecting starting conditions for data extraction; processing the audio data using speech recognition and pattern detection modules; and providing the extracted text and salient patterns to a notetaking application, wherein the system uses a combination of natural language processing and machine learning algorithms to identify keywords, phrases, and relationships between the extracted information and the computer operating context.
6. The method of claim 5, wherein the activity detection module uses a machine learning model to detect starting conditions for data extraction based on the type of audio data, the type of computer operating context, and the type of notetaking application.
7. A computer-implemented system for automatically capturing information from audio data and computer operating context, comprising: an activity detection module for detecting starting conditions; a speech recognition module for processing the audio data; a pattern detection module for identifying salient patterns; and a notetaking application for providing the extracted text and salient patterns to the user, wherein the system uses natural language processing and machine learning algorithms to identify keywords and phrases from the audio data.
8. The system of claim 7, wherein the activity detection module detects starting conditions based on the computer operating context, and the speech recognition module uses deep learning techniques to process the audio data and identify relationships between the extracted information and the computer operating context.
9. A method for automatically capturing information from audio data and computer operating context, comprising: detecting starting conditions for data extraction; processing the audio data using speech recognition and pattern detection modules; and providing the extracted text and salient patterns to a notetaking application, wherein the system uses a combination of natural language processing and machine learning algorithms to identify keywords, phrases, and relationships between the extracted information and the computer operating context.
10. The method of claim 9, wherein the activity detection module uses machine learning algorithms to detect starting conditions for data extraction based on the type of audio data, the type of computer operating context, and the type of notetaking application.
11. A computer system for automatically capturing information from audio data and computer operating context, comprising: an activity detection module for detecting starting conditions; a speech recognition module for processing the audio data; a pattern detection module for identifying salient patterns; and a notetaking application for providing the extracted text and salient patterns to the user, wherein the system uses natural language processing and machine learning algorithms to identify keywords and phrases from the audio data.
12. The system of claim 11, wherein the activity detection module detects starting conditions based on the computer operating context, and the speech recognition module uses deep learning techniques to process the audio data and identify relationships between the extracted information and the computer operating context.
13. A method for automatically capturing information from audio data and computer operating context, comprising: detecting starting conditions for data extraction; processing the audio data using speech recognition and pattern detection modules; and providing the extracted text and salient patterns to a notetaking application, wherein the system uses a combination of natural language processing and machine learning algorithms to identify keywords, phrases, and relationships between the extracted information and the computer operating context.
14. The method of claim 13, wherein the activity detection module uses machine learning algorithms to detect starting conditions for data extraction based on the type of audio data, the type of computer operating context, and the type of notetaking application.
15. A computer-implemented system for automatically capturing information from audio data and computer operating context, comprising: an activity detection module for detecting starting conditions; a speech recognition module for processing the audio data; a pattern detection module for identifying salient patterns; and a notetaking application for providing the extracted text and salient patterns to the user, wherein the system uses natural language processing and machine learning algorithms to identify keywords and phrases from the audio data.
Claim 1. A computer-implemented method for automatically capturing information from audio data and computer operating context, comprising: detecting starting conditions for data extraction using an activity detection module; processing the audio data using speech recognition and pattern detection modules to identify salient patterns; and providing the extracted text and salient patterns to a notetaking application.
Claim 2. The method of claim 1, wherein the activity detection module uses machine learning algorithms to detect starting conditions for data extraction based on the computer operating context.
Claim 3. A computer system for automatically capturing information from audio data and computer operating context, comprising: an activity detection module for detecting starting conditions; a speech recognition module for processing the audio data; a pattern detection module for identifying salient patterns; and a notetaking application for providing the extracted text and salient patterns to the user.
Claim 4. The system of claim 3, wherein the activity detection module detects starting conditions based on the computer operating context, and the speech recognition module uses deep learning techniques to process the audio data and identify relationships between the extracted information and the computer operating context.
Claim 5. A method for automatically capturing information from audio data and computer operating context, comprising: detecting starting conditions for data extraction; processing the audio data using speech recognition and pattern detection modules; and providing the extracted text and salient patterns to a notetaking application, wherein the system uses a combination of natural language processing and machine learning algorithms to identify keywords, phrases, and relationships between the extracted information and the computer operating context.
Claim 6. The method of claim 5, wherein the activity detection module uses machine learning algorithms to detect starting conditions for data extraction based on the type of audio data, the type of computer operating context, and the type of notetaking application.
Claim 7. A computer-implemented system for automatically capturing information from audio data and computer operating context, comprising: an activity detection module for detecting starting conditions; a speech recognition module for processing the audio data; a pattern detection module for identifying salient patterns; and a notetaking application for providing the extracted text and salient patterns to the user, wherein the system uses natural language processing and machine learning algorithms to identify keywords and phrases from the audio data.
Claim 8. The system of claim 7, wherein the activity detection module detects starting conditions based on the computer operating context, and the speech recognition module uses deep learning techniques to process the audio data and identify relationships between the extracted information and the computer operating context.
Claim 9. A method for automatically capturing information from audio data and computer operating context, comprising: detecting starting conditions for data extraction; processing the audio data using speech recognition and pattern detection modules; and providing the extracted text and salient patterns to a notetaking application, wherein the system uses a combination of natural language processing and machine learning algorithms to identify keywords, phrases, and relationships between the extracted information and the computer operating context.
Claim 10. The method of claim 9, wherein the activity detection module uses machine learning algorithms to detect starting conditions for data extraction based on the type of audio data, the type of computer operating context, and the type of notetaking application.
Claim 11. A computer system for automatically capturing information from audio data and computer operating context, comprising: an activity detection module for detecting starting conditions; a speech recognition module for processing the audio data; a pattern detection module for identifying salient patterns; and a notetaking application for providing the extracted text and salient patterns to the user, wherein the system uses natural language processing and machine learning algorithms to identify keywords and phrases from the audio data.
Claim 12. The system of claim 11, wherein the activity detection module detects starting conditions based on the computer operating context, and the speech recognition module uses deep learning techniques to process the audio data and identify relationships between the extracted information and the computer operating context.
Claim 13. A method for automatically capturing information from audio data and computer operating context, comprising: detecting starting conditions for data extraction; processing the audio data using speech recognition and pattern detection modules; and providing the extracted text and salient patterns to a notetaking application, wherein the system uses a combination of natural language processing and machine learning algorithms to identify keywords, phrases, and relationships between the extracted information and the computer operating context.
Claim 14. The method of claim 13, wherein the activity detection module uses machine learning algorithms to detect starting conditions for data extraction based on the type of audio data, the type of computer operating context, and the type of notetaking application.
Claim 15. A computer-implemented system for automatically capturing information from audio data and computer operating context, comprising: an activity detection module for detecting starting conditions; a speech recognition module for processing the audio data; a pattern detection module for identifying salient patterns; and a notetaking application for providing the extracted text and salient patterns to the user, wherein the system uses natural language processing and machine learning algorithms to identify keywords and phrases from the audio data.
Claim 16. The system of claim 15, wherein the activity detection module detects starting conditions based on the computer operating context, and the speech recognition module uses deep learning techniques to process the audio data and identify relationships between the extracted information and the computer operating context.
Claim 17. A method for automatically capturing information from audio data and computer operating context, comprising: detecting starting conditions for data extraction; processing the audio data using speech recognition and pattern detection modules; and providing the extracted text and salient patterns to a notetaking application, wherein the system uses a combination of natural language processing and machine learning algorithms to identify keywords, phrases, and relationships between the extracted information and the computer operating context.
Claim 18. The method of claim 17, wherein the activity detection module uses machine learning algorithms to detect starting conditions for data extraction based on the type of audio data, the type of computer operating context, and the type of notetaking application.
Claim 19. A computer system for automatically capturing information from audio data and computer operating context, comprising: an activity detection module for detecting starting conditions; a speech recognition module for processing the audio data; a pattern detection module for identifying salient patterns; and a notetaking application for providing the extracted text and salient patterns to the user, wherein the system uses natural language processing and machine learning algorithms to identify keywords and phrases from the audio data.
Claim 20. The system of claim 19, wherein the activity detection module detects starting conditions based on the computer operating context, and the speech recognition module uses deep learning techniques to process the audio data and identify relationships between the extracted information and the computer operating context.
Claim 1. A computer-implemented method for automatically capturing information from audio data and computer operating context, comprising: detecting starting conditions for data extraction using an activity detection module; processing the audio data using speech recognition and pattern detection modules to identify salient patterns; and providing the extracted text and salient patterns to a notetaking application.
Claim 2. The method of claim 1, wherein the activity detection module uses machine learning algorithms to detect starting conditions for data extraction based on the computer operating context.
Claim 3. A computer system for automatically capturing information from audio data and computer operating context, comprising: an activity detection module for detecting starting conditions; a speech recognition module for processing the audio data; a pattern detection module for identifying salient patterns; and a notetaking application for providing the extracted text and salient patterns to the user.
Claim 4. The system of claim 3, wherein the activity detection module detects starting conditions based on the computer operating context, and the speech recognition module uses deep learning techniques to process the audio data and identify relationships between the extracted information and the computer operating context.
Claim 5. A method for automatically capturing information from audio data and computer operating context, comprising: detecting starting conditions for data extraction; processing the audio data using speech recognition and pattern detection modules; and providing the extracted text and salient patterns to a notetaking application, wherein the system uses a combination of natural language processing and machine learning algorithms to identify keywords, phrases, and relationships between the extracted information and the computer operating context.
Claim 6. The method of claim 5, wherein the activity detection module uses machine learning algorithms to detect starting conditions for data extraction based on the type of audio data, the type of computer operating context, and the type of notetaking application.
Claim 7. A computer-implemented system for automatically capturing information from audio data and computer operating context, comprising: an activity detection module for detecting starting conditions; a speech recognition module for processing the audio data; a pattern detection module for identifying salient patterns; and a notetaking application for providing the extracted text and salient patterns to the user, wherein the system uses natural language processing and machine learning algorithms to identify keywords and phrases from the audio data.
Claim 8. The system of claim 7, wherein the activity detection module detects starting conditions based on the computer operating context, and the speech recognition module uses deep learning techniques to process the audio data and identify relationships between the extracted information and the computer operating context.
Claim 9. A method for automatically capturing information from audio data and computer operating context, comprising: detecting starting conditions for data extraction; processing the audio data using speech recognition and pattern detection modules; and providing the extracted text and salient patterns to a notetaking application, wherein the system uses a combination of natural language processing and machine learning algorithms to identify keywords, phrases, and relationships between the extracted information and the computer operating context.
Claim 10. The method of claim 9, wherein the activity detection module uses machine learning algorithms to detect starting conditions for data extraction based on the type of audio data, the type of computer operating context, and the type of notetaking application.
Claim 11. A computer system for automatically capturing information from audio data and computer operating context, comprising: an activity detection module for detecting starting conditions; a speech recognition module for processing the audio data; a pattern detection module for identifying salient patterns; and a notetaking application for providing the extracted text and salient patterns to the user, wherein the system uses natural language processing and machine learning algorithms to identify keywords and phrases from the audio data.
Claim 12. The system of claim 11, wherein the activity detection module detects starting conditions based on the computer operating context, and the speech recognition module uses deep learning techniques to process the audio data and identify relationships between the extracted information and the computer operating context.
Claim 13. A method for automatically capturing information from audio data and computer operating context, comprising: detecting starting conditions for data extraction; processing the audio data using speech recognition and pattern detection modules; and providing the extracted text and salient patterns to a notetaking application, wherein the system uses a combination of natural language processing and machine learning algorithms to identify keywords, phrases, and relationships between the extracted information and the computer operating context.
Claim 14. The method of claim 13, wherein the activity detection module uses machine learning algorithms to detect starting conditions for data extraction based on the type of audio data, the type of computer operating context, and the type of notetaking application.
Claim 15. A computer-implemented system for automatically capturing information from audio data and computer operating context, comprising: an activity detection module for detecting starting conditions; a speech recognition module for processing the audio data; a pattern detection module for identifying salient patterns; and a notetaking application for providing the extracted text and salient patterns to the user, wherein the system uses natural language processing and machine learning algorithms to identify keywords and phrases from the audio data.
Claim 16. The system of claim 15, wherein the activity detection module detects starting conditions based on the computer operating context, and the speech recognition module uses deep learning techniques to process the audio data and identify relationships between the extracted information and the computer operating context.
Claim 17. A method for automatically capturing information from audio data and computer operating context, comprising: detecting starting conditions for data extraction; processing the audio data using speech recognition and pattern detection modules; and providing the extracted text and salient patterns to a notetaking application, wherein the system uses a combination of natural language processing and machine learning algorithms to identify keywords, phrases, and relationships between the extracted information and the computer operating context.
Claim 18. The method of claim 17, wherein the activity detection module uses machine learning algorithms to detect starting conditions for data extraction based on the type of audio data, the type of computer operating context, and the type of notetaking application.
Claim 19. A computer system for automatically capturing information from audio data and computer operating context, comprising: an activity detection module for detecting starting conditions; a speech recognition module for processing the audio data; a pattern detection module for identifying salient patterns; and a notetaking application for providing the extracted text and salient patterns to the user, wherein the system uses natural language processing and machine learning algorithms to identify keywords and phrases from the audio data.
Claim 20. The system of claim 19, wherein the activity detection module detects starting conditions based on the computer operating context, and the speech recognition module uses deep learning techniques to process the audio data and identify relationships between the extracted information and the computer operating context.