Patents by Inventor Ofri Kleinfeld
Ofri Kleinfeld has filed for patents to protect the following inventions. This listing includes patent applications that are pending as well as patents that have already been granted by the United States Patent and Trademark Office (USPTO).
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Patent number: 12072884Abstract: A monitoring system is configured to distinguish between two types of alert rules— namely, invariant alert rules and variant alert rules—and to apply a different method of alert rule evaluation to each, wherein each alert rule evaluation method deals with the issue of latent data ingestion in a different way. By tailoring the alert rule evaluation method to the type of alert rule being evaluated, the system can apply an optimized approach for each type of alert rule in terms of achieving a trade-off between alert latency, alert accuracy, and cost of goods sold. In an embodiment, the system utilizes a machine learning model to classify a query associated with an alert rule as either increasing or non-increasing. Then, based on the query classification and a condition associated with the alert rule, the system determines if the alert rule is invariant or variant.Type: GrantFiled: April 12, 2023Date of Patent: August 27, 2024Assignee: MICROSOFT TECHNOLOGY LICENSING, LLCInventors: Yaniv Lavi, Rachel Lemberg, Anton Vasserman, Yair Yizhak Ripshtos, Dor Bank, Ofri Kleinfeld, Raphael Fettaya, Linoy Liat Barel
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Patent number: 11996976Abstract: Methods for one click monitors in impact time detection for noise reduction in at-scale monitoring are performed by systems and devices. The methods automatically configure time window sizes and numbers of consecutive time windows for optimally detecting system alerts in at-scale systems and per dimension combinations, including updating settings over time to adapt to changing system behaviors. The past behavior of system performance metrics are analyzed to match configuration options and determine a best fitting or optimal combination of a highest detection accuracy in lowest time to detect for alerting. Optimal monitoring configurations are determined for each of up to hundreds of thousands of the metric dimensions across the system, and an end user is enabled to apply the determined, optimal configurations for system monitoring with a single selection.Type: GrantFiled: July 19, 2022Date of Patent: May 28, 2024Assignee: MICROSOFT TECHNOLOGY LICENSING, LLCInventors: Yaniv Lavi, Rachel Lemberg, Linoy Liat Barel, Dor Bank, Raphael Fettaya, Ofri Kleinfeld
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Publication number: 20230359625Abstract: A monitoring system is configured to distinguish between two types of alert rules— namely, invariant alert rules and variant alert rules—and to apply a different method of alert rule evaluation to each, wherein each alert rule evaluation method deals with the issue of latent data ingestion in a different way. By tailoring the alert rule evaluation method to the type of alert rule being evaluated, the system can apply an optimized approach for each type of alert rule in terms of achieving a trade-off between alert latency, alert accuracy, and cost of goods sold. In an embodiment, the system utilizes a machine learning model to classify a query associated with an alert rule as either increasing or non-increasing. Then, based on the query classification and a condition associated with the alert rule, the system determines if the alert rule is invariant or variant.Type: ApplicationFiled: April 12, 2023Publication date: November 9, 2023Inventors: Yaniv LAVI, Rachel LEMBERG, Anton VASSERMAN, Yair Yizhak RIPSHTOS, Dor BANK, Ofri KLEINFELD, Raphael FETTAYA, Linoy Liat BAREL
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Patent number: 11704185Abstract: Methods, systems, apparatuses, and computer-readable storage mediums are described for machine learning-based techniques for reducing the visual complexity of a dependency graph that is representative of an application or service. For example, the dependency graph is generated that comprises a plurality of nodes and edges. Each node represents a compute resource (e.g., a microservice) of the application or service. Each edge represents a dependency between nodes coupled thereto. A machine learning-based classification model analyzes each of the nodes to determine a likelihood that each of the nodes is a problematic compute resource. For instance, the classification model may output a score indicative of the likelihood that a particular compute resource is problematic. The nodes and/or edges having a score that exceed a predetermined threshold are provided focus via the dependency graph.Type: GrantFiled: September 14, 2020Date of Patent: July 18, 2023Assignee: MICROSOFT TECHNOLOGY LICENSING, LLCInventors: Yaniv Lavi, Rachel Lemberg, Raphael Fettaya, Dor Bank, Ofri Kleinfeld, Linoy Liat Barel
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Patent number: 11640401Abstract: A monitoring system is configured to distinguish between two types of alert rules—namely, invariant alert rules and variant alert rules—and to apply a different method of alert rule evaluation to each, wherein each alert rule evaluation method deals with the issue of latent data ingestion in a different way. By tailoring the alert rule evaluation method to the type of alert rule being evaluated, the system can apply an optimized approach for each type of alert rule in terms of achieving a trade-off between alert latency, alert accuracy, and cost of goods sold. In an embodiment, the system utilizes a machine learning model to classify a query associated with an alert rule as either increasing or non-increasing. Then, based on the query classification and a condition associated with the alert rule, the system determines if the alert rule is invariant or variant.Type: GrantFiled: August 10, 2020Date of Patent: May 2, 2023Assignee: MICROSOFT TECHNOLOGY LICENSING, LLCInventors: Yaniv Lavi, Rachel Lemberg, Anton Vasserman, Yair Yizhak Ripshtos, Dor Bank, Ofri Kleinfeld, Raphael Fettaya, Linoy Liat Barel
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Publication number: 20230008573Abstract: Methods for one click monitors in impact time detection for noise reduction in at-scale monitoring are performed by systems and devices. The methods automatically configure time window sizes and numbers of consecutive time windows for optimally detecting system alerts in at-scale systems and per dimension combinations, including updating settings over time to adapt to changing system behaviors. The past behavior of system performance metrics are analyzed to match configuration options and determine a best fitting or optimal combination of a highest detection accuracy in lowest time to detect for alerting. Optimal monitoring configurations are determined for each of up to hundreds of thousands of the metric dimensions across the system, and an end user is enabled to apply the determined, optimal configurations for system monitoring with a single selection.Type: ApplicationFiled: July 19, 2022Publication date: January 12, 2023Inventors: Yaniv LAVI, Rachel LEMBERG, Linoy Liat BAREL, Dor BANK, Raphael FETTAYA, Ofri KLEINFELD
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Patent number: 11424979Abstract: Methods for one click monitors in impact time detection for noise reduction in at-scale monitoring are performed by systems and devices. The methods automatically configure time window sizes and numbers of consecutive time windows for optimally detecting system alerts in at-scale systems and per dimension combinations, including updating settings over time to adapt to changing system behaviors. The past behavior of system performance metrics are analyzed to match configuration options and determine a best fitting or optimal combination of a highest detection accuracy in lowest time to detect for alerting. Optimal monitoring configurations are determined for each of up to hundreds of thousands of the metric dimensions across the system, and an end user is enabled to apply the determined, optimal configurations for system monitoring with a single selection.Type: GrantFiled: November 27, 2020Date of Patent: August 23, 2022Assignee: Microsoft Technology Licensing, LLCInventors: Yaniv Lavi, Rachel Lemberg, Linoy Liat Barel, Dor Bank, Raphael Fettaya, Ofri Kleinfeld
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Publication number: 20220173961Abstract: Methods for one click monitors in impact time detection for noise reduction in at-scale monitoring are performed by systems and devices. The methods automatically configure time window sizes and numbers of consecutive time windows for optimally detecting system alerts in at-scale systems and per dimension combinations, including updating settings over time to adapt to changing system behaviors. The past behavior of system performance metrics are analyzed to match configuration options and determine a best fitting or optimal combination of a highest detection accuracy in lowest time to detect for alerting. Optimal monitoring configurations are determined for each of up to hundreds of thousands of the metric dimensions across the system, and an end user is enabled to apply the determined, optimal configurations for system monitoring with a single selection.Type: ApplicationFiled: November 27, 2020Publication date: June 2, 2022Inventors: Yaniv LAVI, Rachel LEMBERG, Linoy Liat BAREL, Dor BANK, Raphael FETTAYA, Ofri KLEINFELD
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Publication number: 20220019495Abstract: Methods, systems, apparatuses, and computer-readable storage mediums are described for machine learning-based techniques for reducing the visual complexity of a dependency graph that is representative of an application or service. For example, the dependency graph is generated that comprises a plurality of nodes and edges. Each node represents a compute resource (e.g., a microservice) of the application or service. Each edge represents a dependency between nodes coupled thereto. A machine learning-based classification model analyzes each of the nodes to determine a likelihood that each of the nodes is a problematic compute resource. For instance, the classification model may output a score indicative of the likelihood that a particular compute resource is problematic. The nodes and/or edges having a score that exceed a predetermined threshold are provided focus via the dependency graph.Type: ApplicationFiled: September 14, 2020Publication date: January 20, 2022Inventors: Yaniv Lavi, Rachel Lemberg, Raphael Fettaya, Dor Bank, Ofri Kleinfeld, Linoy Liat Barel
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Publication number: 20210374130Abstract: A monitoring system is configured to distinguish between two types of alert rules—namely, invariant alert rules and variant alert rules—and to apply a different method of alert rule evaluation to each, wherein each alert rule evaluation method deals with the issue of latent data ingestion in a different way. By tailoring the alert rule evaluation method to the type of alert rule being evaluated, the system can apply an optimized approach for each type of alert rule in terms of achieving a trade-off between alert latency, alert accuracy, and cost of goods sold. In an embodiment, the system utilizes a machine learning model to classify a query associated with an alert rule as either increasing or non-increasing. Then, based on the query classification and a condition associated with the alert rule, the system determines if the alert rule is invariant or variant.Type: ApplicationFiled: August 10, 2020Publication date: December 2, 2021Inventors: Yaniv Lavi, Rachel Lemberg, Anton Vasserman, Yair Yizhak Ripshtos, Dor Bank, Ofri Kleinfeld, Raphael Fettaya, Linoy Liat Barel