Machine Learning Performance and Workload Management
US-2021004712-A1 · Jan 7, 2021 · US
US12124924B2 · US · B2
| Field | Value |
|---|---|
| Publication number | US-12124924-B2 |
| Application number | US-202016950228-A |
| Country | US |
| Kind code | B2 |
| Filing date | Nov 17, 2020 |
| Priority date | Nov 17, 2020 |
| Publication date | Oct 22, 2024 |
| Grant date | Oct 22, 2024 |
A practical reading order for non-experts. Skip the full description unless you need deep technical detail.
What the patent document calls the invention.
A short plain-language summary of the technical disclosure.
Who owns or filed the patent and who is credited as inventor.
Filing, priority, publication, and grant dates set the timeline.
The legal scope of protection — read this for what is actually claimed.
Technology tags used to group this patent with similar filings.
Prior art links and similar publications in this corpus.
Official abstract text for this publication.
Systems and methods are provided that integrate a machine-learning model, and more specifically, utilizing a platform as a service (PaaS) cloud to predict probability of success for an operator in an environment. An embodiment comprises a system having: a processor that executes computer executable components stored in memory, trained machine-learning model that predicts probability of success for deployment of an operator in an environment with a namespace of a platform as a service (PaaS) cloud, and a deployment component that receives a first operator and a first namespace and employs the trained machine-learning model to predict success of deployment of the first operator in a first environment.
Opening claim text (preview).
What is claimed is: 1. A system, comprising: a memory that stores computer executable components; and a processor that executes the computer executable components stored in the memory, wherein the computer executable components comprise; a training component that trains, using training data comprising historical operators, historical environments, historical namespaces associated with historical environments, historical configurations associated with the historical namespaces, historical outcomes indicative of whether respective combinations of historical operators and features of the historical configurations were successful, a machine-learning model to: convert respective descriptions of the historical operators into historical description vectors, convert respective program code of the historical operators into historical code vectors, convert the features of the historical configurations into historical feature vectors, generate combination vectors based on the historical description vectors, the historical code vectors, the historical feature vectors, and the historical outcomes, and predict, based on the combination vectors, probabilities of success for deployments of operators that perform automated functions related to system management in environments with namespaces in platforms as a service cloud, wherein the namespaces have respective configurations associated with isolated entities in the environments; and a deployment component that: receives a first operator and a first namespace of a first environment of a first platform as a service cloud, and employs the machine-learning model to predict a probability of success of deployment of the first operator in the first namespace of the first environment. 2. The system of claim 1 , wherein the first namespace has a first configuration that applies to the first namespace. 3. The system of claim 1 , wherein the deployment component, in response to the probability of success exceeding a defined threshold, deploys the first operator in the first namespace of the first environment. 4. The system of claim 1 , wherein the deployment component, in response to the probability of success not exceeding a defined threshold, generates a notification regarding a predicted failure of the first operator in the first namespace of the first environment. 5. The system of claim 1 , wherein the machine-learning model employs similarity learning to predict the probability of success of deployment of the first operator in the first namespace of the first environment. 6. The system of claim 5 , wherein the similarity learning is utilized to provide instructions regarding troubleshooting deployment of the first operator deployment in the first namespace of the first environment. 7. The system of claim 5 , wherein the similarity learning is used to generate a flag regarding security issues associated with deployment of the first operator deployment in the first namespace of the first environment. 8. A computer-implemented method, comprising: training, by a system operatively coupled to a processor, using training data comprising historical operators, historical environments, historical namespaces associated with historical environments, historical configurations associated with the historical namespaces, historical outcomes indicative of whether respective combinations of historical operators and features of the historical configurations were successful, a machine-learning model to; convert respective descriptions of the historical operators into historical description vectors, convert respective program code of the historical operators into historical code vectors, convert the features of the historical configurations into historical feature vectors, generate combination vectors based on the historical description vectors, the historical code vectors, the historical feature vectors, and the historical outcomes, and predict probabilities of success for deployments of operators that perform automated functions related to system management in environments with namespaces in platforms as a service cloud, wherein the namespaces have respective configurations associated with isolated entities in the environments; receiving, by the system, a first operator and a first namespace of a first environment of a first platform as a service cloud; and predicting, by the system, using the machine-learning model, a probability of success of deployment of the first operator in the first namespace of the first environment. 9. The computer-implemented method of claim 8 , wherein the first namespace has a first configuration that applies to the first namespace. 10. The computer-implemented method of claim 8 , further comprising, in response to the probability of success exceeding a defined threshold, deploying, by the system, the first operator in the first namespace of the first environment. 11. The computer-implemented method of claim 8 , further comprising, in response to the probability of success not exceeding a defined threshold, generating, by the system, a notification regarding a predicted failure of the first operator in the first namespace of the first environment. 12. The computer-implemented method of claim 8 , further comprising employing, by the system, similarity learning to predict the probability of success of deployment of the first operator in the first namespace of the first environment. 13. The computer-implemented method of claim 12 , further comprising utilizing the similarity learning to provide instructions regarding troubleshooting deployment of the first operator deployment in the first namespace of the first environment. 14. The computer-implemented method of claim 12 , further comprising utilizing the similarity learning to generate a flag regarding security issues associated with deployment of the first operator deployment in the first namespace of the first environment. 15. A computer program product comprising a computer readable storage medium having program instructions embodied therewith, the program instructions executable by a processor to cause the processor to: train, using training data comprising historical operators, historical environments, historical namespaces associated with historical environments, historical configurations associated with the historical namespaces, historical outcomes indicative of whether respective combinations of historical operators and features of the historical configurations were successful, a machine-learning model to: convert respective descriptions of the historical operators into historical description vectors, convert respective program code of the historical operators into historical code vectors, convert the features of the historical configurations into historical feature vectors, generate combination vectors based on the historical description vectors, the historical code vectors, the historical feature vectors, and the historical outcomes, and predict probabilities of success for deployments of operators that perform automated functions related to system management in environments with namespaces in platforms as a service cloud, wherein the namespaces have respective configurations associated with isolated entities in the environments; receive a first operator and a first namespace of a first environment of a first platform as a service cloud; predict, using the machine-learning model, a probability of success of deployment of the first operator in the first namespace of the first environment. 16. The computer program product of claim 15 , wherein the first namespace has a
Installation · CPC title
Network service management, e.g. ensuring proper service fulfilment according to agreements · CPC title
Probabilistic graphical models, e.g. probabilistic networks · CPC title
Software deployment · CPC title
Neural networks · CPC title
Related publications grouped by family.
Answers are generated from the same data shown on this page.