Patent classifications
G06F40/106
GROUP CONTROL AND MANAGEMENT AMONG ELECTRONIC DEVICES
In a method of group control and management among electronic devices, wherein the electronic devices is in communication with a control device, a projectable space instance is provided for the control device to create a workspace, wherein a control and management tool and a plurality of unified tools for driving respective electronic devices are selectively added to the projectable space instance. The projectable space instance is then parsed with a projector by the control device to automatically generate a projected workspace corresponding to the workspace to be created via the projectable space instance. The control and management tool realizes at least one status information of at least a first one of the electronic devices by way of the unified tools, and controls at least a second one of the electronic devices to execute at least one task corresponding to the at least one status information.
METHOD AND SYSTEM FOR AUTOMATIC FORMATTING OF PRESENTATION SLIDES
Various embodiments provided herein relate to a method and system for automatic formatting of presentation slides. In at least one embodiment, the method comprises receiving an input slide, the input slide comprising one or more objects having a first slide layout configuration; determining metadata associated with the input slide, the determined metadata corresponding to property features of the one or more objects; analyzing the metadata to classify the one or more objects; identifying one or more slide layout functional objectives; based on the one or more slide layout functional objectives, applying one or more transformations to the detected objects, wherein each transformation comprises adjusting the metadata corresponding to the one or more detected objects to generate one or more adjusted objects; and generating a modified slide, the modified slide comprising one or more adjusted objects having a second slide layout configuration.
METHOD AND SYSTEM FOR AUTOMATIC FORMATTING OF PRESENTATION SLIDES
Various embodiments provided herein relate to a method and system for automatic formatting of presentation slides. In at least one embodiment, the method comprises receiving an input slide, the input slide comprising one or more objects having a first slide layout configuration; determining metadata associated with the input slide, the determined metadata corresponding to property features of the one or more objects; analyzing the metadata to classify the one or more objects; identifying one or more slide layout functional objectives; based on the one or more slide layout functional objectives, applying one or more transformations to the detected objects, wherein each transformation comprises adjusting the metadata corresponding to the one or more detected objects to generate one or more adjusted objects; and generating a modified slide, the modified slide comprising one or more adjusted objects having a second slide layout configuration.
INFORMATION PROCESSING APPARATUS, INFORMATION PROCESSING METHOD, AND MEDIUM
An information processing apparatus comprises a storage to store a plurality of templates including a region in which data can be placed. The apparatus specifies data to be placed in the plurality of templates; and outputs an image in which the data is placed in a template, from among the plurality of templates, and which is based on data to be placed in the region and including text inputted by a user.
INFORMATION PROCESSING APPARATUS, INFORMATION PROCESSING METHOD, AND MEDIUM
An information processing apparatus comprises a storage to store a plurality of templates including a region in which data can be placed. The apparatus specifies data to be placed in the plurality of templates; and outputs an image in which the data is placed in a template, from among the plurality of templates, and which is based on data to be placed in the region and including text inputted by a user.
Combinatorial inflight analysis of multipart data
A method of enhanced data orchestration (EDO). The method comprises receiving a first message by a mediation application executing on a computer system and analyzing the first message by the mediation application based at least in part on invoking a machine learning (ML) model by the mediation application. The analyzing determines that a feature of the first message is a probable first component of an item of personally identifiable information (PII). The method further comprises receiving a second message by the mediation application, determining by the mediation application that a feature of the second message when combined with the feature of the first message constitutes an item of PII, and treating the first message and the second message in accordance with predefined PII handling protocols by the mediation application.
Combinatorial inflight analysis of multipart data
A method of enhanced data orchestration (EDO). The method comprises receiving a first message by a mediation application executing on a computer system and analyzing the first message by the mediation application based at least in part on invoking a machine learning (ML) model by the mediation application. The analyzing determines that a feature of the first message is a probable first component of an item of personally identifiable information (PII). The method further comprises receiving a second message by the mediation application, determining by the mediation application that a feature of the second message when combined with the feature of the first message constitutes an item of PII, and treating the first message and the second message in accordance with predefined PII handling protocols by the mediation application.
Table detection in spreadsheet
The subject matter described herein relates to table detection in a spreadsheet. According to implementations of the subject matter described herein, there is proposed a solution for determining a table in a spreadsheet. In the solution, respective multiple attributes of multiple cells comprised in the spreadsheet may be extracted. Respective features of the multiple cells may be determined based on the extracted multiple attributes. The multiple cells may be divided into at least one candidate area based on the features. At least one candidate table in the spreadsheet may be determined based on the at least one candidate area. By means of the solution, respective features of the multiple cells comprised in the spreadsheet may be determined based on the respective attributes of the multiple cells, and further, a candidate region where a table might exist may be determined based on the respective features of the multiple cells.
Table detection in spreadsheet
The subject matter described herein relates to table detection in a spreadsheet. According to implementations of the subject matter described herein, there is proposed a solution for determining a table in a spreadsheet. In the solution, respective multiple attributes of multiple cells comprised in the spreadsheet may be extracted. Respective features of the multiple cells may be determined based on the extracted multiple attributes. The multiple cells may be divided into at least one candidate area based on the features. At least one candidate table in the spreadsheet may be determined based on the at least one candidate area. By means of the solution, respective features of the multiple cells comprised in the spreadsheet may be determined based on the respective attributes of the multiple cells, and further, a candidate region where a table might exist may be determined based on the respective features of the multiple cells.
Analyzing documents using machine learning
A document analysis device that includes a memory operable to store a machine learning model configured to receive a sentence as an input and to output a classification identifier that is associated with a sentence type for the received sentence. The device further includes an artificial intelligence (AI) processing engine configured to receive a document comprising text, to sentences within the document, and to classify the sentences using the machine learning model. The AI processing engine is further configured to identify tagging rules for the document and to annotate one or more sentences from the document with a sentence type that matches a sentence type that is identified by the tagging rules for the document.