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CLI Reference

mlflow

mlflow

Use this command to to monitor the lifecycle of the machine learning models from training progress to artifact deployment.

For more information about the Machine Learning Anomaly Detection feature, see the FortiAnalyzer Administration Guide.

Syntax

diagnose mlflow config

diagnose mlflow infer-result <artifact_name>

diagnose mlflow list-artifacts <arg0>

diagnose mlflow show-assets <artifact_name>

diagnose mlflow show-details <artifact_name>

diagnose mlflow test-result <artifact_name>

diagnose mlflow training-status

Variable

Description

config

Show per-model config and artifact stats (count, deployed, last trained).

infer-result <artifact_name>

Display latest inference results for an artifact.

Enter the name of the artifact (for example, 2025123110000050100).

list-artifacts <arg0>

List all trained artifacts.

Optional filters: status=<val>, model_type=<val>, artifact_name=<val>. For example: status=deployedmodel_type=login-anomalyartifact_name=<name>

show-assets <artifact_name>

List assets trained and excluded for the artifact.

Enter the name of the artifact (for example, 2025123110000050100).

show-details <artifact_name>

Show detailed information about a specific artifact.

Enter the name of the artifact (for example, 2025123110000050100).

test-result <artifact_name>

Display latest test results for an artifact.

Enter the name of the artifact (for example, 2025123110000050100).

training-status

Show current training progress for models in training.

mlflow

mlflow

Use this command to to monitor the lifecycle of the machine learning models from training progress to artifact deployment.

For more information about the Machine Learning Anomaly Detection feature, see the FortiAnalyzer Administration Guide.

Syntax

diagnose mlflow config

diagnose mlflow infer-result <artifact_name>

diagnose mlflow list-artifacts <arg0>

diagnose mlflow show-assets <artifact_name>

diagnose mlflow show-details <artifact_name>

diagnose mlflow test-result <artifact_name>

diagnose mlflow training-status

Variable

Description

config

Show per-model config and artifact stats (count, deployed, last trained).

infer-result <artifact_name>

Display latest inference results for an artifact.

Enter the name of the artifact (for example, 2025123110000050100).

list-artifacts <arg0>

List all trained artifacts.

Optional filters: status=<val>, model_type=<val>, artifact_name=<val>. For example: status=deployedmodel_type=login-anomalyartifact_name=<name>

show-assets <artifact_name>

List assets trained and excluded for the artifact.

Enter the name of the artifact (for example, 2025123110000050100).

show-details <artifact_name>

Show detailed information about a specific artifact.

Enter the name of the artifact (for example, 2025123110000050100).

test-result <artifact_name>

Display latest test results for an artifact.

Enter the name of the artifact (for example, 2025123110000050100).

training-status

Show current training progress for models in training.