test_ml_platform.py 3.7 KB

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  1. import unittest
  2. import pandas as pd
  3. from defect_analysis.ml.datasets import build_supervised_dataset
  4. from defect_analysis.ml.features import build_feature_frame
  5. from defect_analysis.ml.image_models import ImageModelUnavailable, ImageModelWrapper
  6. from defect_analysis.ml.model_registry import detect_optional_model_backends
  7. from defect_analysis.ml.predict import predict_key_factors
  8. from defect_analysis.ml.tabular_models import train_tabular_model
  9. from defect_analysis.schemas import normalize_defect_schema
  10. class MLPlatformTest(unittest.TestCase):
  11. def setUp(self):
  12. rows = []
  13. for i in range(40):
  14. hot = i < 24
  15. rows.append(
  16. {
  17. "defect_id": f"D{i}",
  18. "panel_id": f"P{i}",
  19. "batch_id": "B1",
  20. "equipment_id": "LAM-A01" if hot else "LAM-B01",
  21. "seat_id": "R1C1" if hot else "R2C2",
  22. "inspection_station": "AOI-1",
  23. "timestamp": pd.Timestamp("2026-04-01 08:00:00"),
  24. "defect_type": "气泡" if hot else "划痕",
  25. "severity": "严重" if i % 5 == 0 else "轻微",
  26. "x_mm": 10.0 + i,
  27. "y_mm": 20.0,
  28. "panel_width_mm": 155.0,
  29. "panel_height_mm": 340.0,
  30. "hour": 8,
  31. "shift": "白班",
  32. "day": "2026-04-01",
  33. "lam_fixture_id": "FIX-HOT" if hot else "FIX-OK",
  34. "material_lot_oca": "OCA-HOT" if hot else "OCA-OK",
  35. }
  36. )
  37. self.df = normalize_defect_schema(pd.DataFrame(rows))
  38. def test_build_feature_frame_creates_numeric_matrix(self):
  39. features = build_feature_frame(self.df)
  40. self.assertEqual(len(self.df), len(features))
  41. self.assertTrue(all(dtype.kind in "biufc" for dtype in features.dtypes))
  42. self.assertTrue(any(col.startswith("equipment_id=") for col in features.columns))
  43. def test_build_supervised_dataset_targets_defect_type(self):
  44. X, y = build_supervised_dataset(self.df, target_defect_type="气泡")
  45. self.assertEqual(len(self.df), len(X))
  46. self.assertEqual(24, int(y.sum()))
  47. def test_train_random_forest_and_logistic_regression(self):
  48. X, y = build_supervised_dataset(self.df, target_defect_type="气泡")
  49. rf = train_tabular_model("random_forest", X, y)
  50. lr = train_tabular_model("logistic_regression", X, y)
  51. self.assertIn("model", rf)
  52. self.assertIn("metrics", rf)
  53. self.assertIn("model", lr)
  54. self.assertGreaterEqual(rf["metrics"]["train_accuracy"], 0.5)
  55. def test_train_isolation_forest_outputs_anomaly_scores(self):
  56. X = build_feature_frame(self.df)
  57. result = train_tabular_model("isolation_forest", X)
  58. self.assertIn("anomaly_scores", result)
  59. self.assertEqual(len(self.df), len(result["anomaly_scores"]))
  60. def test_predict_key_factors_returns_model_scores(self):
  61. predictions = predict_key_factors(self.df, target_defect_type="气泡")
  62. self.assertFalse(predictions.empty)
  63. self.assertIn("ml_probability", predictions.columns)
  64. self.assertIn("model_name", predictions.columns)
  65. def test_optional_backends_are_reported_without_import_failure(self):
  66. backends = detect_optional_model_backends()
  67. self.assertIn("xgboost", backends)
  68. self.assertIn("lightgbm", backends)
  69. def test_image_model_wrapper_is_explicitly_unavailable_without_backend(self):
  70. wrapper = ImageModelWrapper()
  71. with self.assertRaises(ImageModelUnavailable):
  72. wrapper.predict([])
  73. if __name__ == "__main__":
  74. unittest.main()