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docs: refactor the dataloader examples table in glossary.rst #343

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merged 1 commit into from Apr 5, 2021

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@YiweiLi4 YiweiLi4 commented Apr 5, 2021

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Dataloaders Description
================================ =============================================================================
`LISA Traffic Light Dataloader`_ | This example is the dataloader of `LISA Traffic Light Dataset`_,
| which is a continuous dataset.
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Add the label type of LISA Traffic Light dataset.

@@ -52,31 +52,39 @@ and the return value should be the loaded :class:`~tensorbay.dataset.dataset.Dat
..
or :class:`~tensorbay.dataset.dataset.FusionDataset` instance.

Here are some examples of dataloaders with different label types(:numref:`Table. %s <dataloaders_table>`).
Here are some dataloader examples of a continuous dataset and datasets with different label types(:numref:`Table. %s <dataloaders_table>`).
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Is examples of datasets with different label types and continuity. better?

@YiweiLi4 YiweiLi4 merged commit ac0301f into Graviti-AI:main Apr 5, 2021
@YiweiLi4 YiweiLi4 deleted the T14203_dataloader_tables branch April 5, 2021 09:48
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