G06F16/28

COMPUTING ENVIRONMENT SCALING

A system uses a machine learning model to identify anomalies and modify parameters of a computing environment. The system modifies parameters of a computing environment based on the presence and absence of anomalies in the computing system while avoiding modifying parameters as a result of brief spikes in computing environment attributes. The system uses a machine learning model to generate predictions of anomalies for data points of computing environment attributes. The system compiles sets of predictions into batches. The system determines whether each batch includes enough anomalous-labeled data points to be considered an anomalous batch. The system compiles the batches into sets. The system determines whether the sets of batches include enough anomalous batches to be considered an anomalous set of batches. The system modifies the parameters of the computing environment based on determining whether or not the sets of batches are anomalous.

SYSTEMS AND METHODS FOR MATCHING ELECTRONIC ACTIVITIES WITH RECORD OBJECTS BASED ON ENTITY RELATIONSHIPS

The present disclosure relates to systems and methods for matching electronic activities with record objects based on entity relationships. The method can include accessing a plurality of electronic activities, identifying an electronic activity, identifying a first participant associated with a first entity and a second participant associated with a second entity, determining whether a record object identifier is included in the electronic activity, identifying a first record object of the system of record that includes an instance of the record object identifier, and storing an association between the electronic activity and the first record object. The method can include determining a second record object corresponding to the second entity, identifying, using a matching policy, a third record object linked to the second record object and identifying a third entity, and storing, by the one or more processors, an association between the electronic activity and the third record object.

SYSTEMS AND METHODS FOR MATCHING ELECTRONIC ACTIVITIES WITH RECORD OBJECTS BASED ON ENTITY RELATIONSHIPS

The present disclosure relates to systems and methods for matching electronic activities with record objects based on entity relationships. The method can include accessing a plurality of electronic activities, identifying an electronic activity, identifying a first participant associated with a first entity and a second participant associated with a second entity, determining whether a record object identifier is included in the electronic activity, identifying a first record object of the system of record that includes an instance of the record object identifier, and storing an association between the electronic activity and the first record object. The method can include determining a second record object corresponding to the second entity, identifying, using a matching policy, a third record object linked to the second record object and identifying a third entity, and storing, by the one or more processors, an association between the electronic activity and the third record object.

AGGREGATION IN DYNAMIC AND DISTRIBUTED COMPUTING SYSTEMS

Aggregation in a computing system can include receiving, at a service node of the computing system, a first query specifying aggregation and translating the first query into a second query having a first canonical format and specifying the aggregation. The method can include forwarding the second query to a first subset of a plurality of endpoint nodes and translating, at each endpoint node of the first subset, the second query into a third query having a format executable by a data source connected to the endpoint node. The third query can specify a level of the aggregation to be performed by the data source determined based upon a processing capability of the data source. The endpoint nodes can initiate execution of the third query by the data sources and provide an aggregated result including a result from the data source(s) to the service node.

RECORD MATCHING MODEL USING DEEP LEARNING FOR IMPROVED SCALABILITY AND ADAPTABILITY
20230046079 · 2023-02-16 ·

Systems and methods are described for linking records from different databases. A search may be performed for each record of a received record set for similar records based on having similar field values. Recommended records of the record set may be assigned with the identified similar records to sub-groups. Pairs of records may be formed for each record of the sub-group, and comparative and identifying features may be extracted from each field of the pairs of records. Then, a trained model may be applied to the differences to determine a similarity score. Cluster identifiers may be applied to records within each sub-group having similarity scores greater than a predetermined threshold. In response to a query for a requested record, all records having the same cluster identifier may be output on a graphical interface, allowing users to observe linked records for a person in the different databases.

Knowledge Management System and Method
20230050548 · 2023-02-16 ·

A knowledge management system and method. The knowledge management system and method can have multi-industry applications with special suitability for program-based initiatives, research projects, healthcare sector programs, educational system programs, workforce development initiatives, and social service outcomes.

INFORMATION PROCESSING APPARATUS, INFORMATION PROCESSING METHOD, AND INFORMATION PROCESSING PROGRAM

An information processing apparatus (1) includes a learning unit (32), a calculation unit (33), and a presentation unit (34). The learning unit (32) learns the first model based on predetermined new data acquired from a terminal device (100) possessed by the user and the second model based on joined data obtained by joining shared data stored in advance in the storage unit (4) as additional data with the new data. The calculation unit (33) calculates the improvement degree indicating the degree of improvement in the output precision of the second model to the output of the first model. The presentation unit (34) generates predetermined presentation information based on the improvement degree calculated by the calculation unit (33).

RELATIONSHIP ANALYSIS USING VECTOR REPRESENTATIONS OF DATABASE TABLES
20230051059 · 2023-02-16 · ·

A computer-implemented method includes representing a plurality of database tables as respective vectors in a multi-dimensional vector space, receiving an indication that a first database table represented by a first vector and a second database table represented by a second vector are related to each other, moving the respective vectors representing the plurality of database tables in the multi-dimensional vector space in response to the indication, and grouping the plurality of database tables into one or more table clusters based on positions of the respective vectors representing the plurality of database tables in the multi-dimensional vector space.

SYSTEM AND METHOD FOR DATA PROCESS
20230052603 · 2023-02-16 ·

A system for data process comprises an operating platform for storing and reading a data unit. A data processing module signally connected to the operating platform. The data unit is structured or unstructured. The data processing module labeling and processing the data unit, and generating a visualization diagram. The system for data process includes a graphical user interface, which can achieve one of the purposes of this present disclosure of improving the data visualization of structured data and unstructured data.

SUMMARIZING CONVERSATIONS IN A MESSAGING APPLICATION WITH INTERNAL SOCIAL NETWORK DISCOVERY

An embodiment includes parsing conversation data to extract a message dataset and a user dataset. The embodiment classifies the message dataset into a category using machine learning processing and identifies the category as a top category based at least in part on an amount of the conversation data associated with the category. The embodiment generates impact data associated with the user dataset based on actions in the conversation data by the user. The embodiment generates role data associated with the user by applying a rule to the conversation data for the user. The embodiment generates key index data associated with the message dataset by identifying interactions with a message represented by the message dataset. The embodiment generates output data arranged according to a specified data format that is compatible with a user interface.