Patent classifications
G06F11/34
INITIALIZE OPTIMIZED PARAMETER IN DATA PROCESSING SYSTEM
An approach is provided in which the approach loads a machine learning model and a set of test case statistical data into a user system. The set of test case statistical data is based on a set of test cases corresponding to the machine learning model and includes a plurality of input parameter sets and a corresponding set of output quality measurements. The approach compares user data on the user system against the set of test case statistical data and identifies one of the plurality of input parameter sets to optimize the machine learning model based on the set of output quality measurements. The approach generates an optimized machine learning model using the machine learning model and the identified input parameter set at the user system.
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.
SYSTEM AND METHOD FOR MULTI-TASK LIFELONG LEARNING ON PERSONAL DEVICE WITH IMPROVED USER EXPERIENCE
This disclosure relates to recommendations made to users based on learned behavior patterns. User behavior data is collected and grouped according labels. The grouped user behavior data is labeled and used to train a machine learning model based on features and tasks associated with the classification. User behavior is then predicted by applying the trained machine learning model to the collected user behavior data, and a task is recommended to the user.
EVENT ANALYSIS SUPPORT APPARATUS, EVENT ANALYSIS SUPPORT METHOD, AND COMPUTER-READABLE RECORDING MEDIUM
An event analysis support apparatus 1 includes: a belonging degree output unit 2 configured to output a belonging degree indicating a degree to which event information pertaining to an event occurring in a system belongs to each of a plurality of event types set in advance, a feature candidate information output unit 3 configured to output feature candidate information for each of the event types, using event information of an event that has newly occurred and feature information expressing a feature among events already generated for each of the event types; and a feature information output unit 4 configured to output new feature information for each of the event types using the feature information, the feature candidate information, and the belonging degree.
EVENT ANALYSIS SUPPORT APPARATUS, EVENT ANALYSIS SUPPORT METHOD, AND COMPUTER-READABLE RECORDING MEDIUM
An event analysis support apparatus 1 includes: a belonging degree output unit 2 configured to output a belonging degree indicating a degree to which event information pertaining to an event occurring in a system belongs to each of a plurality of event types set in advance, a feature candidate information output unit 3 configured to output feature candidate information for each of the event types, using event information of an event that has newly occurred and feature information expressing a feature among events already generated for each of the event types; and a feature information output unit 4 configured to output new feature information for each of the event types using the feature information, the feature candidate information, and the belonging degree.
RELATIONSHIP ANALYSIS USING VECTOR REPRESENTATIONS OF DATABASE TABLES
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.
MOVEMENT DATA FOR FAILURE IDENTIFICATION
Configurations for data center component monitoring are disclosed. In at least one embodiment, movement of a server component is determined based on sensor data and the movement is used to diagnose a root cause for a server component failure.
METHOD AND SYSTEM FOR FUZZING WINDOWS KERNEL BY UTILIZING TYPE INFORMATION OBTAINED THROUGH BINARY STATIC ANALYSIS
Disclosed is a window kernel fuzzing technique utilizing type information obtained through binary static analysis. The method of fuzzing a kernel of a computer operating system performed by a fuzzing system may include the steps of: automatically inferring type information of a system call using a library file provided by the computer operating system; and performing system call fuzzing on the basis of the type information of the system call obtained through the inference.
RUNTIME ENTROPY-BASED SOFTWARE OPERATORS
A system may include a historical managed software system data store that contains electronic records associated with controllers and deployed workloads (each electronic record may include time series data representing performance metrics). An entropy calculation system, coupled to the historical managed software system data store, may calculate at least one historical entropy value based on information in the historical managed software system data store. A detection engine, coupled to a monitored system currently executing a deployed workload in the cloud computing environment, may collect time series data representing current performance metrics associated with the monitored system. The detection engine may then calculate a current monitored entropy value (based on the collected time series data representing current performance metrics) and (iii) compare the current monitored entropy value with a threshold value (based on the historical entropy value). Based on the comparison, a corrective action for the monitored system may be triggered.
WORKLOAD PERFORMANCE PREDICTION AND REAL-TIME COMPUTE RESOURCE RECOMMENDATION FOR A WORKLOAD USING PLATFORM STATE SAMPLING
Embodiments described herein are generally directed to improving predictions regarding workload performance to facilitate dynamic auto device selection. In an example, based on telemetry samples collected from a computer system in real-time and indicative of a state of the computer system, one or more workload performance prediction models are built or updated for a heterogeneous set of computer resources of the computer system with reference to one or more optimization goals. At a time of execution of a workload, a particular computer resource of the heterogeneous set of computer resources on which to dispatch the workload is dynamically determined by: (i) generating multiple predicted performance scores each corresponding to one of the computer resources based on the state of the computer system and the one or more workload performance prediction models; and (ii) selecting the particular computer resource based on the predicted performance scores.