DVC Data Version Control Architecture Overview | #mlops #dvc #machinelearning

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DVC Data Version Control Architecture Overview | #mlops #dvc #machinelearning

DVC (Data Version Control) for machine learning is an open-source tool that is used to manage and track changes in the data used during the machine learning development process.

It provides a system for version controlling data sets in a similar way to how software developers version control code. With DVC, it is possible to version control data sets, track data lineage, and collaborate with team members. It helps in maintaining a record of data used for training, testing, and evaluating models, which is crucial for reproducing results and sharing findings with others.

Additionally, it integrates with popular technologies used in machine learning such as Git and cloud storage services.

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#dataversioncontroldvc #machinelearning #mlops
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Good Explanation Ashutosh Sir...Keep doing this good work.❤

Sandesh.Deshmukh
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Do you need to use "dvc add" if you are using a dvc.yaml file and dvc.lock file to specify a pipeline?

MeaningFromData
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nice video, sir do we need to learn kubernetes first to learn kubeflow, i have heard kubeflow work on the basics of kubernetes ??

sanketsaurabh
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