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Get started with Python
Step 0: Orient yourself to DominoStep 1: Create a projectStep 2: Configure your projectStep 3: Start a workspaceStep 4: Get your files and dataStep 5: Develop your modelStep 6: Clean up WorkspacesStep 7: Deploy your model
Get started with R
Step 0: Orient yourself to Domino (R Tutorial)Step 1: Create a projectStep 2: Configure your projectStep 3: Start a workspaceStep 4: Get your files and dataStep 5: Develop your modelStep 6: Clean up WorkspacesStep 7: Deploy your model
Get Started with MATLAB
Step 1: Orient yourself to DominoStep 2: Create a Domino ProjectStep 3: Configure Your Domino ProjectStep 4: Start a MATLAB WorkspaceStep 5: Fetch and Save Your DataStep 6: Develop Your ModelStep 7: Clean Up Your Workspace
Step 8: Deploy Your Model
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Step 9: Working with Domino Datasets
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Get started with R
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Step 4: Get your files and data

Step 4: Get your files and data

There are two strategies to working with data in Domino:

  • You can copy your data into Domino

    If you are working with data that is on your local machine or in a shared server, you might want to upload your data into Domino.

  • You can query your data from Domino

    If you have a large dataset stored in a database or data service, you might just have to query the database or the API for the data service.

In this tutorial, we will use the terminal in Rstudio to copy data into the project.

  1. If you have not done so, complete Step 3 to start a Rstudio workspace.

    Your starting file path is /mnt. By default, this is considered the root of your Domino project. If you add or modify files in /mnt, you can save them back to your project when you stop or sync the workspace.

  2. Use the Tools > Terminal > New Terminal menu to open a Rstudio terminal.

    New terminal in Rstudio

  3. In the new terminal, run the following command to fetch some data from the BMRS:

    curl -o data.csv "https://www.bmreports.com/bmrs/?q=ajax/filter_csv_download/FUELHH/csv/FromDate%3D2019-09-15%26ToDate%3D2019-10-02/&filename=GenerationbyFuelType_20191002_1657"

    Rstudio terminal after wget

  4. Sync All Changes to save the new file data.csv to Domino.

    Full Sync button r

    This saves any changes that were made in your workspace session back to your project.

  5. Stop your workspace.

  6. Click the Domino logo to return to your project. In the navigation pane, go to the Files section of Domino. Notice that the raw data has been saved in the latest revision.

    Files after full sync

See the documentation for other methods to copy data into Domino and query data from Domino.

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