update
This commit is contained in:
11
README.md
11
README.md
@@ -238,9 +238,9 @@ Current behavior:
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6. The MLflow alias `experiment-latest` points at the most recently registered experiment version.
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7. AI Hub upload commands create deployable derived artifacts from a trained-source experiment or local ONNX model.
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Training scripts can include a `training_metrics.json` file in the SageMaker model directory. The explicit metrics
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upload command logs its ordered metrics to the associated MLflow run using each epoch as the MLflow step and stores
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the JSON as a run artifact:
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Training scripts can include a `training_metrics.json` file in the SageMaker model directory. When present, the
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explicit metrics upload command logs its ordered metrics to the associated MLflow run using each epoch as the MLflow
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step and stores the JSON as a run artifact:
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```json
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{
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@@ -253,8 +253,9 @@ the JSON as a run artifact:
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```
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Metric names must be non-empty strings, values must be finite numbers, and steps must be non-negative, unique, and
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strictly increasing. A missing or malformed metrics artifact fails the upload command without affecting the trained
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model or model registration.
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strictly increasing. If the file is missing, the command uploads the final metrics reported by SageMaker and continues
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model registration without per-epoch history. A malformed metrics artifact still fails the upload command without
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affecting the trained model or model registration.
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Future release aliases such as `v1` or `production` can point at a selected deployable artifact.
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@@ -80,7 +80,13 @@ def upload_metrics(
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CONSOLE.print(f"[red]MLflow metric upload failed: {e}[/red]")
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raise typer.Exit(1)
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if result.metrics_history_uploaded:
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CONSOLE.print(f"[green]✓[/green] Uploaded training metrics for [cyan]{job_name}[/cyan].")
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else:
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CONSOLE.print(
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f"[yellow]No training_metrics.json was found in the SageMaker model artifact for "
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f"[cyan]{job_name}[/cyan]. Uploaded SageMaker final metrics only.[/yellow]"
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)
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CONSOLE.print(f"MLflow run: [cyan]{result.run_id}[/cyan]")
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if result.registered_model_version:
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CONSOLE.print(
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@@ -93,10 +93,16 @@ def _wait_and_upload_metrics(
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config_path=config_path,
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cfg=cfg,
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)
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if result.metrics_history_uploaded:
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CONSOLE.print(
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f"[green]✓[/green] Uploaded training metrics to MLflow run "
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f"[cyan]{result.run_id}[/cyan]."
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)
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else:
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CONSOLE.print(
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"[yellow]No training_metrics.json was found in the SageMaker model artifact. "
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"Uploaded SageMaker final metrics only.[/yellow]"
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)
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if result.registered_model_version:
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CONSOLE.print(
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f"MLflow model version: [cyan]{result.registered_model_version}[/cyan] "
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@@ -40,7 +40,7 @@ class Tracker(Protocol):
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training_job_status: Any,
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region: str,
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profile: str,
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) -> None: ...
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) -> bool: ...
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@dataclass(frozen=True)
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@@ -69,7 +69,7 @@ class NoopTracker:
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training_job_status: Any,
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region: str,
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profile: str,
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) -> None:
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) -> bool:
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raise RuntimeError("MLflow is disabled.")
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@@ -208,7 +208,7 @@ class MlflowTracker:
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training_job_status: Any,
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region: str,
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profile: str,
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) -> None:
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) -> bool:
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if not training_job_status.model_artifacts:
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raise ValueError(f"Training job '{training_job_status.name}' has no model artifacts.")
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@@ -216,12 +216,14 @@ class MlflowTracker:
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with mlflow.start_run(run_id=run_id):
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self._log_params(self.tracking_backend.training_status_params(training_job_status))
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self._log_final_metrics(training_job_status.raw)
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self._log_training_metrics(
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history_uploaded = self._log_training_metrics(
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training_job_status.model_artifacts,
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region=region,
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profile=profile,
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)
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mlflow.set_tag("qc_cli.command", "mlflow upload-metrics")
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mlflow.set_tag("qc_cli.metrics_history_uploaded", str(history_uploaded).lower())
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return history_uploaded
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def _log_params(self, params: dict[str, Any]) -> None:
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cleaned = {key: str(value) for key, value in params.items() if value is not None}
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@@ -238,7 +240,7 @@ class MlflowTracker:
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if metrics:
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mlflow.log_metrics(metrics)
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def _log_training_metrics(self, model_artifacts: str, *, region: str, profile: str) -> None:
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def _log_training_metrics(self, model_artifacts: str, *, region: str, profile: str) -> bool:
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with tempfile.TemporaryDirectory(prefix="qc-cli-metrics-") as temp_dir:
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archive_path = s3.download_file(
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region,
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@@ -248,7 +250,7 @@ class MlflowTracker:
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)
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metrics_data = read_training_metrics_from_tar(archive_path)
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if metrics_data is None:
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raise ValueError(f"No {METRICS_ARTIFACT_NAME} found in the SageMaker model artifact.")
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return False
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metrics = parse_training_metrics(metrics_data)
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for metric_step in metrics.steps:
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if metric_step.metrics:
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@@ -256,6 +258,7 @@ class MlflowTracker:
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if metrics.summary:
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mlflow.log_metrics(metrics.summary)
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mlflow.log_dict(metrics.raw, METRICS_ARTIFACT_NAME)
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return True
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def _ensure_registered_model(self, client: MlflowClient, name: str) -> None:
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try:
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@@ -10,6 +10,7 @@ from src.tracking.mlflow import MlflowTracker
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class MetricsUploadResult:
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run_id: str
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registered_model_version: str | None = None
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metrics_history_uploaded: bool = True
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def upload_training_metrics(
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@@ -32,6 +33,7 @@ def upload_training_metrics(
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if job_state.get("registered_model_version")
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else None
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),
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metrics_history_uploaded=bool(job_state.get("mlflow_metrics_history_uploaded", True)),
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)
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status = sm_ops.get_training_job_status(cfg.aws.boto3_session, job_name)
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@@ -43,7 +45,7 @@ def upload_training_metrics(
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tracker = MlflowTracker.from_config(cfg)
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run_id = str(job_state.get("mlflow_run_id") or tracker.ensure_training_run(job_name))
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st.update_training_job(job_name, mlflow_run_id=run_id)
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tracker.upload_training_metrics(
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metrics_history_uploaded = tracker.upload_training_metrics(
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run_id=run_id,
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training_job_status=status,
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region=cfg.aws.region,
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@@ -58,6 +60,7 @@ def upload_training_metrics(
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)
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updates = {
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"mlflow_metrics_uploaded": True,
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"mlflow_metrics_history_uploaded": metrics_history_uploaded,
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"mlflow_finalized_status": status.status,
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}
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if finalized.registered_model_version:
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@@ -68,4 +71,5 @@ def upload_training_metrics(
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return MetricsUploadResult(
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run_id=run_id,
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registered_model_version=finalized.registered_model_version,
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metrics_history_uploaded=metrics_history_uploaded,
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)
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