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examples/meter-detection/README.md
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examples/meter-detection/README.md
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# YOLO26 Electric Meter Detection Example
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This example trains a YOLO26 object detection model on the Roboflow Universe electric meter dataset using the existing `qc-cli` SageMaker training flow.
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The workflow is intentionally command driven. Run each step yourself so you can inspect the dataset, update `config.yaml`, and decide when to submit the SageMaker job.
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Dataset:
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```text
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https://universe.roboflow.com/kemals-workspace-kbc8l/electric-meter-detection-o4tfi/dataset/1
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```
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## Prerequisites
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- Install or sync the project dependencies: `uv sync`
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- The virtual environment is activated.
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- AWS credentials configured for the profile in `config.yaml`
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- Infrastructure already deployed with `qc-cli infra setup`
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## 1. Download The Dataset
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Register or sign in to Roboflow, then open the dataset page:
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```text
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https://universe.roboflow.com/kemals-workspace-kbc8l/electric-meter-detection-o4tfi/dataset/1
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```
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Download the dataset in YOLOv26 format from the Roboflow UI, then extract the downloaded archive into:
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```text
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examples/meter-detection/data/electric-meter-detection
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```
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The `data.yaml` file should be directly under that folder:
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```text
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examples/meter-detection/data/electric-meter-detection/data.yaml
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```
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Do not move `data.yaml` into the `train/` split folder.
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After extracting, confirm the dataset has a YOLO data file and image splits:
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```bash
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find examples/meter-detection/data/electric-meter-detection -maxdepth 2 -type d | sort
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find examples/meter-detection/data/electric-meter-detection -name data.yaml -print
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```
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Open `examples/meter-detection/data/electric-meter-detection/data.yaml` and make sure the split paths are relative to that folder:
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```yaml
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path: .
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train: train/images
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val: valid/images
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test: test/images
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```
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If your downloaded dataset does not include a `test/` folder, remove the `test:` line.
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The expected layout is similar to:
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```text
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examples/meter-detection/data/electric-meter-detection/
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data.yaml
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train/
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valid/
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test/
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```
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## 2. Configure SageMaker Training
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Update `config.yaml` so the training section points at this example's source directory:
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```yaml
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sagemaker:
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training:
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image_uri: 763104351884.dkr.ecr.us-east-1.amazonaws.com/pytorch-training:2.6-cpu-py312-ubuntu22.04-sagemaker-v1
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instance_type: ml.g4dn.xlarge
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instance_count: 1
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source_dir: examples/meter-detection/source
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entry_point: train.py
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hyperparameters:
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model: yolo26n.pt
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epochs: 25
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imgsz: 640
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batch: 16
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workers: 2
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```
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Use `yolo26n.pt` for a lightweight first YOLO26 run. If those weights are unavailable in the installed Ultralytics package, use `yolo11n.pt` as the established fallback:
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```yaml
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model: yolo11n.pt
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```
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The `source/requirements.txt` file is installed by the SageMaker PyTorch container before running `train.py`.
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For a CPU smoke test, use a CPU instance and reduce the workload:
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```yaml
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sagemaker:
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training:
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image_uri: 763104351884.dkr.ecr.us-east-1.amazonaws.com/pytorch-training:2.6-cpu-py312-ubuntu22.04-sagemaker-v1
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instance_type: ml.m4.xlarge
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instance_count: 1
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source_dir: examples/meter-detection/source
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entry_point: train.py
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hyperparameters:
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model: yolo26n.pt
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epochs: 1
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imgsz: 320
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batch: 4
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workers: 2
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```
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## 3. Check Infrastructure
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Confirm the CLI can see the configured SageMaker role and S3 bucket:
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```bash
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qc-cli infra status --config config.yaml
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```
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## 4. Upload The Dataset
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Upload the downloaded Roboflow dataset to the `s3.data_prefix` configured in `config.yaml`:
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```bash
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qc-cli upload examples/meter-detection/data/electric-meter-detection
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```
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Directory uploads preserve paths relative to the uploaded directory, so SageMaker receives the dataset root with `data.yaml` plus the split directories.
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In SageMaker, this uploaded dataset root is mounted at `/opt/ml/input/data/train`. That `train` path is the SageMaker channel name, not the YOLO `train/` split folder.
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## 5. Start Training
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Submit the SageMaker training job:
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```bash
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qc-cli train start
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```
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The command prints the submitted SageMaker job name. Check progress with:
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```bash
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qc-cli train status
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```
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Or pass the job name explicitly:
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```bash
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qc-cli train status qc-cli-YYYYMMDD-HHMMSS
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```
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## 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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This example writes:
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```text
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best.pt
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model.onnx
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metrics.json
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```
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The archive is stored under the configured `s3.model_prefix`.
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## Training Hyperparameters
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Values under `sagemaker.training.hyperparameters` are passed to `source/train.py` as command-line arguments.
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| Name | Type | Default | Description |
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|---|---:|---:|---|
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| `model` | string | `yolo26n.pt` | Ultralytics model weights or model YAML. |
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| `epochs` | int | `25` | Number of training epochs. |
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| `imgsz` | int | `640` | Square training image size. |
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| `batch` | int | `16` | Images per training batch. |
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| `workers` | int | `2` | DataLoader worker count. |
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| `patience` | int | `20` | Early stopping patience. |
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| `device` | string | auto | Optional Ultralytics device value such as `0` or `cpu`. |
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| `data-yaml` | string | auto | Optional path to `data.yaml`; normally discovered from the uploaded dataset root. |
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| `dataset-dir` | string | `SM_CHANNEL_TRAIN` | Uploaded dataset root mounted by SageMaker. |
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Do not set `dataset-dir` or `model-dir` in normal SageMaker runs. SageMaker sets those automatically through `SM_CHANNEL_TRAIN` and `SM_MODEL_DIR`.
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3
examples/meter-detection/source/requirements.txt
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examples/meter-detection/source/requirements.txt
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ultralytics>=8.3.0
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pyyaml>=6.0.3
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onnx>=1.16.0
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124
examples/meter-detection/source/train.py
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examples/meter-detection/source/train.py
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#!/usr/bin/env python3
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"""SageMaker entry point for YOLO electric meter detection training."""
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from __future__ import annotations
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import argparse
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import json
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import os
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import shutil
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from pathlib import Path
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from typing import Any
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import yaml
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from ultralytics import YOLO # type: ignore[reportMissingImports]
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def parse_args() -> argparse.Namespace:
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parser = argparse.ArgumentParser()
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parser.add_argument("--model", default="yolo26n.pt")
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parser.add_argument("--epochs", type=int, default=25)
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parser.add_argument("--imgsz", type=int, default=640)
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parser.add_argument("--batch", type=int, default=16)
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parser.add_argument("--workers", type=int, default=2)
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parser.add_argument("--patience", type=int, default=20)
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parser.add_argument("--device", default=None)
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parser.add_argument("--data-yaml", default=None)
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parser.add_argument("--dataset-dir", default=os.environ.get("SM_CHANNEL_TRAIN", "/opt/ml/input/data/train"))
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parser.add_argument("--train-dir", dest="dataset_dir", help=argparse.SUPPRESS)
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parser.add_argument("--model-dir", default=os.environ.get("SM_MODEL_DIR", "/opt/ml/model"))
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return parser.parse_args()
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def find_data_yaml(dataset_dir: Path, explicit_path: str | None) -> Path:
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if explicit_path:
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data_yaml = Path(explicit_path)
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if data_yaml.is_file():
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return data_yaml
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raise FileNotFoundError(f"Configured data.yaml does not exist: {data_yaml}")
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matches = sorted(dataset_dir.rglob("data.yaml"))
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if not matches:
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raise FileNotFoundError(f"Could not find data.yaml under {dataset_dir}")
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if len(matches) > 1:
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print(f"Found multiple data.yaml files; using {matches[0]}")
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return matches[0]
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def prepare_data_yaml(data_yaml: Path) -> Path:
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"""Write a SageMaker-local data file rooted at the uploaded dataset."""
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dataset_root = data_yaml.parent
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data = yaml.safe_load(data_yaml.read_text(encoding="utf-8"))
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if not isinstance(data, dict):
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raise ValueError(f"Expected a mapping in {data_yaml}")
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normalized = dict(data)
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normalized["path"] = str(dataset_root)
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if "val" not in normalized and "valid" in normalized:
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normalized["val"] = normalized.pop("valid")
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prepared_path = dataset_root / "data.sagemaker.yaml"
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prepared_path.write_text(yaml.safe_dump(normalized, sort_keys=False), encoding="utf-8")
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print(f"Prepared dataset config: {prepared_path}")
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return prepared_path
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def copy_if_exists(source: Path, destination: Path) -> None:
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if source.exists():
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shutil.copy2(source, destination)
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print(f"Saved {destination}")
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def main() -> None:
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args = parse_args()
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dataset_dir = Path(args.dataset_dir)
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model_dir = Path(args.model_dir)
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model_dir.mkdir(parents=True, exist_ok=True)
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data_yaml = prepare_data_yaml(find_data_yaml(dataset_dir, args.data_yaml))
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model = YOLO(args.model)
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train_kwargs: dict[str, Any] = {
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"data": str(data_yaml),
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"epochs": args.epochs,
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"imgsz": args.imgsz,
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"batch": args.batch,
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"workers": args.workers,
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"patience": args.patience,
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"project": str(model_dir / "runs"),
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"name": "train",
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"exist_ok": True,
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}
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if args.device:
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train_kwargs["device"] = args.device
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results = model.train(**train_kwargs)
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save_dir = Path(results.save_dir)
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best_pt = save_dir / "weights" / "best.pt"
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last_pt = save_dir / "weights" / "last.pt"
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trained_weights = best_pt if best_pt.exists() else last_pt
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if not trained_weights.exists():
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raise FileNotFoundError(f"Could not find trained weights in {save_dir / 'weights'}")
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copy_if_exists(trained_weights, model_dir / "best.pt")
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trained_model = YOLO(str(trained_weights))
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onnx_path = Path(trained_model.export(format="onnx", imgsz=args.imgsz))
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copy_if_exists(onnx_path, model_dir / "model.onnx")
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metrics = {
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"model": args.model,
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"epochs": args.epochs,
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"imgsz": args.imgsz,
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"batch": args.batch,
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"workers": args.workers,
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"patience": args.patience,
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"data_yaml": str(data_yaml),
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"weights": str(trained_weights),
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"onnx": str(onnx_path),
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}
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(model_dir / "metrics.json").write_text(json.dumps(metrics, indent=2), encoding="utf-8")
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print(f"Saved model artifacts to {model_dir}")
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if __name__ == "__main__":
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main()
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