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Managing Runs

Run Output

Any graphical or console output as well as file artifacts created by a training run (e.g. saved models or saved model weights) can be viewed from the Output tab of the run view:

You can use the copy_run_files() function to export file artifacts from runs into another directory. For example:

copy_run_files("runs/2017-09-24T10-54-00Z", to = "saved-model")

You can also use the copy_run() function to export a run directory in it’s entirety. For example, this code exports the specified run to a “best-run” directory:

copy_run("runs/2017-09-24T10-54-00Z", to = "best-run")

Note that copy_run() will accept any number of runs. For example, this code exports all run directories with an evaluation accuracy greater than 0.98 to a “best-runs” directory:

copy_run(ls_runs(eval_acc >= 0.98), to = "best-runs")

Cleaning Runs

You can use the clean_runs() function to archive a set of runs you no longer need the data from. For example, this code archives all runs with an eval accuracy less than 0.98:

clean_runs(ls_runs(eval_acc < 0.98))

If you don’t specify a set of runs to clean then all runs will be archived:

clean_runs() # archives all runs in the "runs" directory

Note that you’ll always get a confirmation prompt before the runs are actually archived.

Purging Runs

When runs are archived they are moved to the “archive” subdirectory of the “runs” directory. If you want to permanently remove runs from the archive you call the purge_runs() function:

purge_runs()

These binaries (installable software) and packages are in development.
They may not be fully stable and should be used with caution. We make no claims about them.