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@@ -156,11 +156,17 @@ qc-cli train status qc-cli-YYYYMMDD-HHMMSS
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To submit the job, wait for completion, and automatically import metrics and register the model, run:
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```bash
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qc-cli train start --wait
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qc-cli train start --upload-metrics
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```
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The default polling interval is 30 seconds. It can be changed with `--poll-interval <seconds>`.
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The metrics can be also submitted using:
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```bash
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qc-cli mlflow upload-metrics
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```
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## SageMaker Outputs
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When the job completes, SageMaker packages the files written under `/opt/ml/model` into `model.tar.gz`.
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@@ -176,7 +182,9 @@ training_metrics.json
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The archive is stored under the configured `s3.model_prefix`.
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During MLflow finalization, `training_metrics.json` provides per-epoch training and validation losses, precision, recall, mAP@0.50, mAP@0.50:0.95, and learning rates. For object detection, mAP and precision/recall are more meaningful than classification accuracy when assessing model quality.
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The `mlflow upload-metrics` command imports `training_metrics.json`, which provides per-epoch training and validation
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losses, precision, recall, mAP@0.50, mAP@0.50:0.95, and learning rates. For object detection, mAP and precision/recall
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are more meaningful than classification accuracy when assessing model quality.
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## 6. Configure Qualcomm AI Hub
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