Patent classifications
G06F40/205
Techniques for web framework detection
Techniques are disclosed for analyzing documents to detect web components and the web frameworks in the documents. In at least one embodiment, a network analysis system is provided to passively detect web frameworks of documents. The network analysis system can render a document using a document object model to identify objects in the document that are defined as web components. A hash function may be applied to each of the objects to generate a hash signature for the object. Files defining web frameworks can be downloaded from a repository system. Each file may corresponding to a web component. A hash function is applied content in each file to generate a hash signature. The hash signatures of each file may be compared to the hash signatures of the objects in the document to identify a web component for each object. A web framework can be identified based on the web components.
Content generation framework
Techniques for performing outputting additional content associated with but nonresponsive to an input command are described. A system receives input data from a device. The system determines an intent representing the input data and receives first output data responsive to the input data. The system determines, based on context data, that additional content associated with the first output data but nonresponsive to the input data should be output. The system receives second output data associated with but nonresponsive to the input data thereafter. The system then presents first content corresponding to the first output data and second content corresponding to the second output data.
Automatically refining application of a hierarchical coding system to optimize conversation system dialog-based responses to a user
A service identifies a level of specificity of one or more identified entities in a user input comprising a query, within one of multiple levels of a hierarchy of a hierarchical coding system. Responsive to determining that additional levels of specificity beyond the identified level of specificity are recommended to return a minimum answer set to the query, the service returns one or more answers requesting one or more additional inputs refining the query based on one or more values identified in a next level. Responsive to determining that no additional levels of specificity beyond the identified level of specificity are recommended to return the minimum answer set to the query, the service returns an answer set comprising a selection of information for the current level of specificity from an ingested corpus of knowledge mapped to the hierarchical coding system.
Automatically refining application of a hierarchical coding system to optimize conversation system dialog-based responses to a user
A service identifies a level of specificity of one or more identified entities in a user input comprising a query, within one of multiple levels of a hierarchy of a hierarchical coding system. Responsive to determining that additional levels of specificity beyond the identified level of specificity are recommended to return a minimum answer set to the query, the service returns one or more answers requesting one or more additional inputs refining the query based on one or more values identified in a next level. Responsive to determining that no additional levels of specificity beyond the identified level of specificity are recommended to return the minimum answer set to the query, the service returns an answer set comprising a selection of information for the current level of specificity from an ingested corpus of knowledge mapped to the hierarchical coding system.
Configuring an API to provide customized access constraints
A computing system includes a processing device and a memory device configured to store an Application Programming Interface (API) and computer software. The computer software has a plurality of software components configured to enable the processing device to utilize internal data for performing a plurality of functions. The API is configured to define interactions between the software components and is further configured to define access constraints with respect to the computing system. The access constraints are configured to restrict access by an end user associated with the computing system with respect to the internal data and software components. Also, the computer software is configured to adjust the access constraints of the API.
Configuring an API to provide customized access constraints
A computing system includes a processing device and a memory device configured to store an Application Programming Interface (API) and computer software. The computer software has a plurality of software components configured to enable the processing device to utilize internal data for performing a plurality of functions. The API is configured to define interactions between the software components and is further configured to define access constraints with respect to the computing system. The access constraints are configured to restrict access by an end user associated with the computing system with respect to the internal data and software components. Also, the computer software is configured to adjust the access constraints of the API.
Conversational database analysis
Systems and methods for conversational user experiences and conversational database analysis disclosed herein improve the efficiency and accessibility of low-latency database analytics. The method may include obtaining data expressing a usage intent with respect to the low-latency database analysis system, wherein the data expressing the usage intent includes a current request string expressed in a natural language, a current context associated with the current request string, and a previously generated context associated with a previously generated resolved-request, identifying, from the current request string, a conversational phrase corresponding to a conversational phrase pattern from a defined set of conversational phrase patterns, generating a resolved-request based on the identified conversational phrase, including the resolved-request in the current context, obtaining results data responsive to the resolved-request from a distributed in-memory database, generating a response including the results data and the current context, and outputting the response.
Methods and systems for pushing audiovisual playlist based on text-attentional convolutional neural network
In some embodiments, methods and systems for pushing audiovisual playlists based on a text-attentional convolutional neural network include a local voice interactive terminal, a dialog system server and a playlist recommendation engine, where the dialog system server and the playlist recommendation engine are respectively connected to the local voice interactive terminal. In some embodiments, the local voice interactive terminal includes a microphone array, a host computer connected to the microphone array, and a voice synthesis chip board connected to the microphone array. In some embodiments, the playlist recommendation engine obtains rating data based on a rating predictor constructed by the neural network; the host computer parses the data into recommended playlist information; and the voice terminal synthesizes the results and pushes them to a user in the form of voice.
Methods and systems for pushing audiovisual playlist based on text-attentional convolutional neural network
In some embodiments, methods and systems for pushing audiovisual playlists based on a text-attentional convolutional neural network include a local voice interactive terminal, a dialog system server and a playlist recommendation engine, where the dialog system server and the playlist recommendation engine are respectively connected to the local voice interactive terminal. In some embodiments, the local voice interactive terminal includes a microphone array, a host computer connected to the microphone array, and a voice synthesis chip board connected to the microphone array. In some embodiments, the playlist recommendation engine obtains rating data based on a rating predictor constructed by the neural network; the host computer parses the data into recommended playlist information; and the voice terminal synthesizes the results and pushes them to a user in the form of voice.
Contact creation and utilization
Non-limiting examples of the present disclosure describe creation and management of a contact associated with a document. A contact for a document in a first application may be created. The contact may be used to add content, from a second application, to the document. The contact may be stored. Contact data for the contact may be transmitted to one or more processing devices. An exemplary created contact may be used to transfer content from one or more applications to a document of another application. Other examples are also described.