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    Home Catalog Tyres Austone SP308

    Austone SP308

    Austone
    • Origins: Китай
    • Passenger tyres Austone
    • Truck tyres Austone
    1 review
    • Austone SP308 Enlarge
      Austone SP308
    • Austone SP308 Enlarge
      Austone SP308
    • Austone SP308
    • Austone SP308
    от 9 230 ₽
    Manufacturer
    Austone (Китай)
    Vehicle type
    Jeeps and SUVs
    Seasonality
    Summer
    On sale since
    2023 г.
    Tire class
    E

    Description Austone SP308

    The Austone SP308 summer tire is a tire for SUVs and pickups in the All Terrain category. It is distinguished by reliable handling and stable traction on any road surface, acoustic comfort, wear resistance, and smooth running.

    The tread pattern largely determines the versatility of this model. It is a combination of individual blocks. In the central part, paired elements are used, arranged longitudinally, forming three wide ribs. This increases the directional stability and accuracy of handling at high speed, reducing wear, fuel consumption, and noise. On the edges, there are massive blocks with elongated wavy edges. A significant part of them "enters" the sidewalls, forming numerous edges and protrusions there. Such elements improve traction properties on unpaved surfaces. At the same time, it is impossible not to note the trapezoidal profile of the shoulder zones. It improves the accuracy of handling and prevents uneven wear.

    Key features of Austone SP308

    - special compound with increased resistance to wear, cracks, and punctures;
    - numerous lamellas improve traction and braking properties on wet asphalt;
    - a large number of blocks with elongated multidirectional walls and wide grooves provide efficiency on most types of unpaved surfaces

    Show all description
    • Sizes available
    • Not available
    • Reviews 1

    In stock and to order

    DiameterModelSizeSeasonAvailabilityPrice
    R17Austone SP308 265/65 R17 112T265/65 R17 112T -21%9 230 ₽

    Not available

    DiameterModelSizeSeason
    R16Austone SP308 245/75 R16C 120/116S245/75 R16C 120/116S
    not available
    R17Austone SP308 245/65 R17 111T245/65 R17 111T
    not available
    R18Austone SP308 265/65 R18 114T 265/65 R18 114T
    not available

    Reviews 1

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    Recommended 100%
    4 из 5
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    • Владимир about tyre Austone SP308

      The product was purchased at Mosautoshina
      Rate
      4

      **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 note-taking 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 system for automatically capturing information from audio data and computer operating context, comprising: an activity detection module to detect starting conditions for data extraction; a speech recognition module to process the audio data and identify salient patterns; and a note-taking application to interactively edit an electronic document incorporating the extracted information.
      2. The system 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.
      3. The system of claim 1, wherein the speech recognition module uses natural language processing to identify salient patterns in the extracted text.
      4. A 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; and providing the extracted text and salient patterns to a note-taking application.
      5. The method of claim 4, wherein the activity detection module detects starting conditions for data extraction based on the computer operating context, including the user's location, time, and application usage patterns.
      6. A computer-implemented method for capturing information from audio data and computer operating context, comprising: detecting starting conditions for data extraction; processing the audio data to identify salient patterns; and providing the extracted text and salient patterns to a note-taking application for interactive editing.
      7. The method of claim 6, wherein the speech recognition module uses deep learning algorithms to process the audio data and identify salient patterns.
      8. A system for automatically capturing information from audio data and computer operating context, comprising: an activity detection module; a speech recognition module; and a note-taking application, wherein the system provides the extracted text and salient patterns to the note-taking application.
      9. The system of claim 8, wherein the activity detection module uses machine learning algorithms to detect starting conditions for data extraction based on the computer operating context.
      10. 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 note-taking application for interactive editing.
      11. The method of claim 10, wherein the speech recognition module uses natural language processing to identify salient patterns in the extracted text.
      12. A computer system for automatically capturing information from audio data and computer operating context, comprising: an activity detection module to detect starting conditions for data extraction; a speech recognition module to process the audio data and identify salient patterns; and a note-taking application to interactively edit an electronic document incorporating the extracted information.
      13. The system of claim 12, wherein the activity detection module detects starting conditions for data extraction based on the computer operating context, including the user's location, time, and application usage patterns.
      14. A 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; and providing the extracted text and salient patterns to a note-taking application for interactive editing.
      15. The method of claim 14, wherein the speech recognition module uses deep learning algorithms to process the audio data and identify salient patterns.

      **Claims**:
      1. A computer system for automatically capturing information from audio data and computer operating context, comprising: an activity detection module to detect starting conditions for data extraction; a speech recognition module to process the audio data and identify salient patterns; and a note-taking application to interactively edit an electronic document incorporating the extracted information.
      2. The system 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.
      3. The system of claim 1, wherein the speech recognition module uses natural language processing to identify salient patterns in the extracted text.
      4. A 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; and providing the extracted text and salient patterns to a note-taking application for interactive editing.
      5. The method of claim 4, wherein the activity detection module detects starting conditions for data extraction based on the computer operating context, including the user's location, time, and application usage patterns.
      6. The method of claim 4, wherein the speech recognition module uses deep learning algorithms to process the audio data and identify salient patterns.
      7. A computer-implemented method for capturing information from audio data and computer operating context, comprising: detecting starting conditions for data extraction; processing the audio data to identify salient patterns; and providing the extracted text and salient patterns to a note-taking application for interactive editing.
      8. The method of claim 7, wherein the speech recognition module uses natural language processing to identify salient patterns in the extracted text.
      9. A system for automatically capturing information from audio data and computer operating context, comprising: an activity detection module; a speech recognition module; and a note-taking application, wherein the system provides the extracted text and salient patterns to the note-taking application.
      10. The system of claim 9, wherein the activity detection module uses machine learning algorithms to detect starting conditions for data extraction based on the computer operating context.

      Vehicle:
      Great Wall Poer
      Size:
      265/65 R18 114T
      Buy again?:
      Most likely
      City:
      Moscow
      Control on a dry road
      Steering in the wet
      Drive comfort
      Course stability
      Quiet in motion
      Braking efficiency
      Resistant to aquaplaning
      Velocity characteristics
      Wearability
      Quality of production
      Price justifiability
      26 july 2024
    Tire specifications
    Dry road
    Wet road
    Comfort
    Course stability
    Silent
    Braking
    Aquaplaning
    Speed
    Wearability
    Quality
    Price/performance
    4 / 5
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