Patent classifications
G06F17/40
Usage prediction method and storage medium
A usage prediction method executed by a computer, the usage prediction method includes classifying a plurality of records corresponding to a plurality of times included in first time-series data indicating a history of usages of a resource into a plurality of groups respectively corresponding to attributes of the plurality of times; generating second time-series data for each attribute by combining the records belonging to the group corresponding to the same attribute for the plurality of classified groups in order of the times; generating, for each attribute, an expression for calculating a predicted value to be used for calculating a predicted value of the usage based on the generated second time-series data; and calculating the predicted value of the usage based on the expression for calculating the predicted value for each attribute.
Usage prediction method and storage medium
A usage prediction method executed by a computer, the usage prediction method includes classifying a plurality of records corresponding to a plurality of times included in first time-series data indicating a history of usages of a resource into a plurality of groups respectively corresponding to attributes of the plurality of times; generating second time-series data for each attribute by combining the records belonging to the group corresponding to the same attribute for the plurality of classified groups in order of the times; generating, for each attribute, an expression for calculating a predicted value to be used for calculating a predicted value of the usage based on the generated second time-series data; and calculating the predicted value of the usage based on the expression for calculating the predicted value for each attribute.
Architecture for monitoring at least one aircraft and associated monitoring method
An architecture for monitoring at least one aircraft. The architecture comprises an avionics system configured to generate avionics data during use of the aircraft; a mobile electronic device including an analysis unit configured to convert at least one maintenance operation into operational data; and an alerter configured to display at least one item of monitoring information; and a cloud computing infrastructure. The analysis unit and the alerter are configured to implement a local operating mode and an operating mode connected to the cloud computing infrastructure.
Architecture for monitoring at least one aircraft and associated monitoring method
An architecture for monitoring at least one aircraft. The architecture comprises an avionics system configured to generate avionics data during use of the aircraft; a mobile electronic device including an analysis unit configured to convert at least one maintenance operation into operational data; and an alerter configured to display at least one item of monitoring information; and a cloud computing infrastructure. The analysis unit and the alerter are configured to implement a local operating mode and an operating mode connected to the cloud computing infrastructure.
DATA LAKE AND SELF-DRIVEN SYSTEM FOR OPERATING ENTERPRISE AND SUPPLY CHAIN APPLICATIONS
The present invention provides self-driven Artificial Intelligence based system and method for operating one or more applications including enterprise application and supply chain management applications. The system includes centralized data lake for storing data received from plurality of distinct sources, a control tower configured for sensing change in attribute of the received data and determining impact of the change on plurality of functions of EA and SCM applications.
DATA LAKE AND SELF-DRIVEN SYSTEM FOR OPERATING ENTERPRISE AND SUPPLY CHAIN APPLICATIONS
The present invention provides self-driven Artificial Intelligence based system and method for operating one or more applications including enterprise application and supply chain management applications. The system includes centralized data lake for storing data received from plurality of distinct sources, a control tower configured for sensing change in attribute of the received data and determining impact of the change on plurality of functions of EA and SCM applications.
Intelligent software agent to facilitate software development and operations
Some embodiments may facilitate software development and operations for an enterprise. A communication input port may receive information associated with a software continuous integration/deployment pipeline of the enterprise. An intelligent software agent platform, coupled to the communication input port, may listen for a trigger indication from the software continuous integration/deployment pipeline. Responsive to the trigger indication, the intelligent software agent platform may apply system configuration information and rule layer information to extract software log data and apply a machine learning model to the extracted software log data to generate a pipeline health check analysis report. The pipeline health check analysis report may include, for example, an automatically generated prediction associated with future operation of the software continuous integration/deployment pipeline. The intelligent software agent platform may then facilitate transmission of the pipeline health check analysis report via a communication output port and a distributed communication network.
Methods and systems for reducing volumes of log messages sent to a data center
Computer-implemented methods and systems described herein are directed to reducing volumes of log messages sent from edge systems to a data center. The computer-implemented methods performed at each edge system includes collecting a stream of log messages generated by one or more event sources of the edge system. Representative log messages of the stream of log messages are determined. The edge systems may discard non-representative log messages from data storage devices at the edge system. The representative log messages are sent from each of the edge systems to the data center where the representative log messages are received and stored in data storage devices of the data center, thereby reducing the volumes of log messages sent from the edge systems to the data center.
Methods and systems for reducing volumes of log messages sent to a data center
Computer-implemented methods and systems described herein are directed to reducing volumes of log messages sent from edge systems to a data center. The computer-implemented methods performed at each edge system includes collecting a stream of log messages generated by one or more event sources of the edge system. Representative log messages of the stream of log messages are determined. The edge systems may discard non-representative log messages from data storage devices at the edge system. The representative log messages are sent from each of the edge systems to the data center where the representative log messages are received and stored in data storage devices of the data center, thereby reducing the volumes of log messages sent from the edge systems to the data center.
Storage device and storage system for storing sensor data in an autonomous vehicle
A storage device includes a first memory device, a second memory device and a storage controller. The first memory device buffers a plurality of unit time interval data. The plurality of unit time interval data are received in each of a plurality of monitoring time intervals. The second memory device stores at least one of the plurality of unit time interval data. The storage controller controls an amount of data flushed from the first memory device to the second memory device based on one of first and second flush commands. The storage controller compares a shock measurement value representing a magnitude of an external shock with a shock reference value. When the shock measurement value is less than or equal to the shock reference value, the storage controller provides the first flush command to the first memory device to flush first unit time interval data.