DATA STORAGE SCHEME SWITCHING IN A DISTRIBUTED DATA STORAGE SYSTEM

    公开(公告)号:US20210240372A1

    公开(公告)日:2021-08-05

    申请号:US16839605

    申请日:2020-04-03

    Applicant: Dropbox, Inc.

    Abstract: Systems and methods for dynamic and automatic data storage scheme switching in a distributed data storage system. A machine learning-based policy for computing probable future content item access patterns based on historical content item access patterns is employed to dynamically and automatically switch the storage of content items (e.g., files, digital data, photos, text, audio, video, streaming content, cloud documents, etc.) between different data storage schemes. The different data storage schemes may have different data storage cost and different data access cost characteristics. For example, the different data storage schemes may encompass different types of data storage devices, different data compression schemes, and/or different data redundancy schemes.

    Data storage scheme switching in a distributed data storage system

    公开(公告)号:US11422721B2

    公开(公告)日:2022-08-23

    申请号:US16839605

    申请日:2020-04-03

    Applicant: Dropbox, Inc.

    Abstract: Systems and methods for dynamic and automatic data storage scheme switching in a distributed data storage system. A machine learning-based policy for computing probable future content item access patterns based on historical content item access patterns is employed to dynamically and automatically switch the storage of content items (e.g., files, digital data, photos, text, audio, video, streaming content, cloud documents, etc.) between different data storage schemes. The different data storage schemes may have different data storage cost and different data access cost characteristics. For example, the different data storage schemes may encompass different types of data storage devices, different data compression schemes, and/or different data redundancy schemes.

    Lossless compression of a content item using a neural network trained on content item cohorts

    公开(公告)号:US10177783B1

    公开(公告)日:2019-01-08

    申请号:US15947768

    申请日:2018-04-06

    Applicant: Dropbox, Inc.

    Abstract: Lossless compression of a content item using a neural network trained on content item cohorts. A computing system includes a neural network that is used to train a plurality of symbol prediction models. Each symbol prediction model is trained based on a corresponding cohort of content items. A particular symbol prediction model of the models trained is selected based on an intrinsic characteristic of a particular content item to be losslessly compressed such as, for example, the type or file extension of the content item. The content item is then losslessly compressed based on a set of symbol predictions fed to an arithmetic coder that are generated using the particular symbol prediction model selected.

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