Systems and methods for orchestrating microservice containers interconnected via a service mesh in a multi-cloud environment based on a reinforcement learning policy

    公开(公告)号:US11635995B2

    公开(公告)日:2023-04-25

    申请号:US16513510

    申请日:2019-07-16

    Abstract: A multi-cloud service mesh orchestration platform can receive a request to deploy an application as a service mesh application. The platform can tag the application with governance information (e.g., TCO, SLA, provisioning, deployment, and operational criteria). The platform can partition the application into its constituent components, and tag each component with individual governance information. For first time steps, the platform can select and perform a first set of actions for deploying each component to obtain individual rewards, state transitions, and expected returns. The platform can determine a reinforcement learning policy for each component that maximizes a total reward for the application based on the individual rewards, state transitions, and expected returns of each first set of actions selected and performed for each component. For second time steps, the platform can select and perform a second set of actions for each component based on the reinforcement learning policy for the component.

    MULTI-CLOUD SERVICE MESH ORCHESTRATION PLATFORM

    公开(公告)号:US20210019194A1

    公开(公告)日:2021-01-21

    申请号:US16513510

    申请日:2019-07-16

    Abstract: A multi-cloud service mesh orchestration platform can receive a request to deploy an application as a service mesh application. The platform can tag the application with governance information (e.g., TCO, SLA, provisioning, deployment, and operational criteria). The platform can partition the application into its constituent components, and tag each component with individual governance information. For first time steps, the platform can select and perform a first set of actions for deploying each component to obtain individual rewards, state transitions, and expected returns. The platform can determine a reinforcement learning policy for each component that maximizes a total reward for the application based on the individual rewards, state transitions, and expected returns of each first set of actions selected and performed for each component. For second time steps, the platform can select and perform a second set of actions for each component based on the reinforcement learning policy for the component.

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    发明申请

    公开(公告)号:US20180203604A1

    公开(公告)日:2018-07-19

    申请号:US15410613

    申请日:2017-01-19

    CPC classification number: H04L67/2819 H04L67/1097 H04L67/2823

    Abstract: In one embodiment, an accelerator node transfers a first fragment of the data in a first format received from a data generating machine to a storage node. The accelerator node reads the first fragment in the first format from the storage node after the transferring is complete. The accelerator node transforms the accelerator node the first fragment in the first format to a second format. The accelerator node writes the first fragment in the second format by the accelerator node to the storage node.

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