Skip to content

Latest commit

 

History

History
30 lines (24 loc) · 1.13 KB

File metadata and controls

30 lines (24 loc) · 1.13 KB

Upload model predictions

Uploading as pre-labels

Once you've trained an initial machine learning model on your labeled data, you can upload the model predictions as pre-labels to further speed up your labeling workflow.

To add a label to a sample programmatically, use the client.add_label() function in the Python SDK. Note that the format of the attributes field depends on the label type.

sample_uuid = "602a3eec-a61c-4a77-9fcc-3037ce5e9123"
labelset = "ground-truth"
attributes = {
    "format_version": "0.1",
    "annotations": [
        {
          "id": 1,
          "category_id": 1,
          "type": "bbox",
          "points": [
            [12.34, 56.78],
            [90.12, 34.56]
          ]
        }
    ]
}

client.add_label(sample_uuid, labelset, attributes)

The sample will now have a label status of prelabeled, and will appear in the label queue along with any unlabeled samples. Instead of having to label the sample from scratch, the labelers can now focus on verifying and correcting the pre-label though.