---
title: SDK
---

:::important
This page covers `clearml-data`, ClearML's file-based data management solution.
See [Hyper-Datasets](../hyperdatasets/overview.md) for ClearML's advanced queryable dataset management solution.
:::

Datasets can be created, modified, and managed with ClearML Data's python interface. The following page provides an overview
for using the most basic methods of the `Dataset` class. See the [Dataset reference page](../references/sdk/dataset.md) 
for a complete list of available methods.

Import the `Dataset` class, and let's get started!

```python
from clearml import Dataset
```

## Creating Datasets 

ClearML Data supports multiple ways to create datasets programmatically, which provides for a variety of use-cases:
* [`Dataset.create()`](#datasetcreate) - Create a new dataset. Parent datasets can be specified, from which the new dataset 
  will inherit its data
* [`Dataset.squash()`](#datasetsquash)  - Generate a new dataset from by squashing together a set of related datasets

### Dataset.create()

Use the [`Dataset.create`](../references/sdk/dataset.md#datasetcreate) class method to create a dataset.

Creating datasets programmatically is especially helpful when preprocessing the data so that the 
preprocessing code and the resulting dataset are saved in a single task (see `use_current_task` parameter in [`Dataset.create`](../references/sdk/dataset.md#datasetcreate)).  

```python
# Preprocessing code here
dataset = Dataset.create(
  dataset_name='dataset name',
  dataset_project='dataset project', 
  parent_datasets=[PARENT_DS_ID_1, PARENT_DS_ID_2]
)
```

:::tip Locating Dataset ID
To locate a dataset's ID, go to the dataset task's info panel in the [WebApp](../webapp/webapp_overview.md). In the top of the panel, 
to the right of the dataset task name, click `ID` and the dataset ID appears
:::

The created dataset inherits the content of the `parent_datasets`. When multiple dataset parents are listed, 
they are merged in order of specification. Each parent overrides any overlapping files from a previous parent dataset.

### Dataset.squash()

To improve deep dataset DAG storage and speed, dataset squashing was introduced. The [`Dataset.squash`](../references/sdk/dataset.md#datasetsquash) 
class method generates a new dataset by squashing a set of dataset versions, and merging down all changes introduced in 
their lineage DAG, creating a new, flat, independent version.

The datasets being squashed into a single dataset can be specified by their IDs or by project & name pairs. 

```python
# option 1 - list dataset IDs
squashed_dataset_1 = Dataset.squash(
  dataset_name='squashed dataset\'s name',
  dataset_ids=[DS1_ID, DS2_ID, DS3_ID]
)

# option 2 - list project and dataset pairs 
squashed_dataset_2 = Dataset.squash(
  dataset_name='squashed dataset 2',
  dataset_project_name_pairs=[('dataset1 project', 'dataset1 name'), 
                              ('dataset2 project', 'dataset2 name')]
)
```

In addition, the target storage location for the squashed dataset can be specified using the `output_url` parameter of the 
[`Dataset.squash`](../references/sdk/dataset.md#datasetsquash) method.

## Accessing Datasets
Once a dataset has been created and uploaded to a server, the dataset can be accessed programmatically from anywhere. 

Use the [`Dataset.get`](../references/sdk/dataset.md#datasetget) class method to access a specific Dataset object, either 
with the dataset's ID or with its project and name. If only a project name or tag is provided, the method returns the 
most recent dataset in the specified project, or the most recent dataset with the specified tag.

Once a specific dataset object has been obtained, get a local copy of the dataset using one of the following options:
* [`Dataset.get_local_copy()`](../references/sdk/dataset.md#get_local_copy) - get a read-only local copy of an entire dataset. 
  This method returns a path to the dataset in local cache (downloading the dataset if it is not already in cache).
* [`Dataset.get_mutable_local_copy()`](../references/sdk/dataset.md#get_mutable_local_copy) - get a writable local copy 
of an entire dataset. This method downloads the dataset to a specific folder (non-cached), specified with the `target_folder` parameter. If 
the specified folder already has contents, specify whether to overwrite its contents with the dataset contents, using the `overwrite` parameter.

## Modifying Datasets

Once a dataset has been created, its contents can be modified and replaced. When your data is changed, you can 
add updated files or remove unnecessary files. 

### add_files()

To add files or folders into the current dataset, use the [`Dataset.add_files`](../references/sdk/dataset.md#add_files) 
method. If a file is already in a dataset, but it has been modified, it can be added again, and ClearML will 
upload the file diff.

```python
dataset = Dataset.create()
dataset.add_files(path="path/to/folder_or_file")
```

There is an option to add a set of files based on wildcard matching of a single string or a list of strings, using the 
`wildcard` parameter. Specify whether to match the wildcard files recursively using the `recursive` parameter.

For example:

```python
dataset.add_files(
  path="path/to/folder",
  wildcard="~/data/*.jpg",
  recursive=True
)
```
 
### remove_files()
To remove files from a current dataset, use the [`Dataset.remove_files`](../references/sdk/dataset.md#remove_files) method.
Input the path to the folder or file to be removed in the `dataset_path` parameter. The path is relative to the dataset. 

There is also an option to input a wildcard into `dataset_path` in order to remove a set of files matching the wildcard. 
Set the `recursive` parameter to `True` in order to match all wildcard files recursively

For example:

```python
dataset.remove_files(dataset_path="*.csv", recursive=True)
```

## Uploading Files

To upload the dataset files to network storage, use the [`Dataset.upload`](../references/sdk/dataset.md#upload) method. 
Use the `output_url` parameter to specify storage target, such as S3 / GS / Azure (e.g. `s3://bucket/data`, `gs://bucket/data`, `azure://bucket/data` , `/mnt/share/data`). 
By default, the dataset uploads to ClearML's file server. 

Dataset files must be uploaded before a dataset is [finalized](#finalizing-a-dataset). 


## Finalizing a Dataset

Use the [`Dataset.finalize`](../references/sdk/dataset.md#finalize) method to close the current dataset. This marks the 
dataset task as *Completed*, at which point, the dataset can no longer be modified. 

Before closing a dataset, its files must first be [uploaded](#uploading-files).


## Syncing Local Storage

Use the [`Dataset.sync_folder`](../references/sdk/dataset.md#sync_folder) method in order to update a dataset according
to a specific folder's content changes. Specify the folder to sync with the `local_path` parameter (the method assumes all files within the folder and recursive). 

This method is useful in the case where there's a single point of truth, either a local or network folder, that gets updated periodically. 
The folder changes will be reflected in a new dataset version. This method saves time since you don't have to manually 
update (add / remove) files in a dataset.