--- title: Storing Task Data Offline --- If your computer is offline, or you do not want a Task's data and logs stored in the ClearML Server, use the **Offline Mode** option. In this mode, all the data and logs that the Task captures from the code are stored in a local folder, which can be later uploaded to the [ClearML Server](../deploying_clearml/clearml_server.md). ## Setting Task to Offline Mode Before initializing a Task, use the [Task.set_offline](../references/sdk/task.md#taskset_offline) class method and set the `offline_mode` argument to `True`. ```python from clearml import Task # Use the set_offline class method before initializing a Task Task.set_offline(offline_mode=True) # Initialize a Task task = Task.init(project_name="examples", task_name="my_task") # Rest of code is executed. All data is logged locally and not onto the server ``` The method returns the Task ID and a path to the session folder: ```console ClearML Task: created new task id=offline-372657bb04444c25a31bc6af86552cc9 ... ... ClearML Task: Offline session stored in /home/user/.clearml/cache/offline/b786845decb14eecadf2be24affc7418.zip ``` All the information captured by the Task is saved locally. Once the task script finishes execution, it's zipped. The session's zip folder's location is `~/.clearml/cache/offline/.zip`. ## Uploading Session Data Upload the session's execution data that the Task captured offline to the ClearML Server using one of the following: * `clearml-task` CLI ```bash clearml-task --import-offline-session "/home/user/.clearml/cache/offline/b786845decb14eecadf2be24affc7418.zip" ``` Pass the path to the zip folder containing the session with the `--import-offline-session` parameter. * [Task.import_offline_session](../references/sdk/task.md#taskimport_offline_session) method. ```python from clearml import Task Task.import_offline_session( session_folder_zip="/home/user/.clearml/cache/offline/b786845decb14eecadf2be24affc7418.zip" ) ``` In the `session_folder_zip` argument, insert the path to the zip folder containing the session. You can also use the offline task to update the execution of an existing previously executed task by providing the previously executed task’s ID. To avoid overwriting metrics, you can specify the initial iteration offset with `iteration_offset`. ```python Task.import_offline_session( session_folder_zip="path/to/session/.clearml/cache/offline/b786845decb14eecadf2be24affc7418.zip", previous_task_id="12345679", iteration_offset=1500 ) ``` Both options will upload the Task's full execution details and outputs and return a link to the Task's results page on the ClearML Server: ```console ClearML: Importing offline session from /home/user/.clearml/cache/offline/b786845decb14eecadf2be24affc7418.zip ClearML results page: https://app.clear.ml/projects/4043a1657f374e9298649c6ba72ad233/experiments/bb8b0f6fa0f94536a0d27fb55f02d3a5/output/log ``` The session details can be viewed in the ClearML WebApp, in the "my_task" experiment of the "examples" project, as specified when initializing the Task.