I have a running MlFlow server on GCS VM instance. I have created a bucket to log the artifacts. This is the command I'm running to start the server and for specifying bucket path-
mlflow server --default-artifact-root gs://gcs_bucket/artifacts --host x.x.x.x
But facing this error:
TypeError: stat: path should be string, bytes, os.PathLike or integer, not ElasticNet
Note- The mlflow server is running fine with the specified host alone. The problem is in the way when I'm specifying the storage bucket path. I have given permission of storage api by using these commands:
gcloud auth application-default login gcloud auth login
Also, on printing the artifact URI, this is what I'm getting:
So in the above path from where this is coming
0/122481bf990xxxxxxxxxxxxxxxxxxxxx/artifacts and why it's not getting auto-created at
And this error I'm getting on VM:
ARNING:root:Malformed experiment 'mlruns'. Detailed error Yaml file './mlruns/mlruns/meta.yaml' does not exist. Traceback (most recent call last): File "/usr/local/lib/python3.6/dist-packages/mlflow/store/tracking/file_store.py", line 197, in list_experiments experiment = self._get_experiment(exp_id, view_type) File "/usr/local/lib/python3.6/dist-packages/mlflow/store/tracking/file_store.py", line 256, in _get_experiment meta = read_yaml(experiment_dir, FileStore.META_DATA_FILE_NAME) File "/usr/local/lib/python3.6/dist-packages/mlflow/utils/file_utils.py", line 160, in read_yaml raise MissingConfigException("Yaml file '%s' does not exist." % file_path) mlflow.exceptions.MissingConfigException: Yaml file './mlruns/mlruns/meta.yaml' does not exist.
Can I get a solution to this and what I'm missing?