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  1. syntheticSuccess/n5/arf/arf-n5-20260325_075442/_arf_generate.py +6 -0
  2. syntheticSuccess/n5/arf/arf-n5-20260325_075442/_arf_train.py +19 -0
  3. syntheticSuccess/n5/arf/arf-n5-20260325_075442/arf-n5-1000-20260325_091357.csv +3 -0
  4. syntheticSuccess/n5/arf/arf-n5-20260325_075442/gen_20260325_091357.log +3 -0
  5. syntheticSuccess/n5/arf/arf-n5-20260325_075442/gen_20260330_070118.log +3 -0
  6. syntheticSuccess/n5/arf/arf-n5-20260325_075442/input_snapshot.json +3 -0
  7. syntheticSuccess/n5/arf/arf-n5-20260325_075442/public_gate/normalized_schema_snapshot.json +3 -0
  8. syntheticSuccess/n5/arf/arf-n5-20260325_075442/public_gate/public_gate_report.json +3 -0
  9. syntheticSuccess/n5/arf/arf-n5-20260325_075442/public_gate/staged_input_manifest.json +3 -0
  10. syntheticSuccess/n5/arf/arf-n5-20260325_075442/runtime_result.json +3 -0
  11. syntheticSuccess/n5/arf/arf-n5-20260325_075442/staged/arf/adapter_report.json +3 -0
  12. syntheticSuccess/n5/arf/arf-n5-20260325_075442/staged/arf/adapter_transforms_applied.json +3 -0
  13. syntheticSuccess/n5/arf/arf-n5-20260325_075442/staged/arf/model_input_manifest.json +3 -0
  14. syntheticSuccess/n5/arf/arf-n5-20260325_075442/staged/public/staged_features.json +3 -0
  15. syntheticSuccess/n5/arf/arf-n5-20260325_075442/staged/public/test.csv +3 -0
  16. syntheticSuccess/n5/arf/arf-n5-20260325_075442/staged/public/val.csv +3 -0
  17. syntheticSuccess/n5/arf/arf-n5-20260325_075442/train_20260325_075450.log +3 -0
  18. syntheticSuccess/n5/bayesnet/bayesnet-n5-20260321_080631/_bayesnet_generate.py +43 -0
  19. syntheticSuccess/n5/bayesnet/bayesnet-n5-20260321_080631/_bayesnet_train.py +62 -0
  20. syntheticSuccess/n5/bayesnet/bayesnet-n5-20260321_080631/public_gate/normalized_schema_snapshot.json +3 -0
  21. syntheticSuccess/n5/bayesnet/bayesnet-n5-20260321_080631/public_gate/public_gate_report.json +3 -0
  22. syntheticSuccess/n5/bayesnet/bayesnet-n5-20260321_080631/public_gate/staged_input_manifest.json +3 -0
  23. syntheticSuccess/n5/bayesnet/bayesnet-n5-20260321_080631/staged/bayesnet/adapter_report.json +3 -0
  24. syntheticSuccess/n5/bayesnet/bayesnet-n5-20260321_080631/staged/bayesnet/adapter_transforms_applied.json +3 -0
  25. syntheticSuccess/n5/bayesnet/bayesnet-n5-20260321_080631/staged/bayesnet/model_input_manifest.json +3 -0
  26. syntheticSuccess/n5/bayesnet/bayesnet-n5-20260321_080631/staged/public/staged_features.json +3 -0
  27. syntheticSuccess/n5/bayesnet/bayesnet-n5-20260321_080631/staged/public/test.csv +3 -0
  28. syntheticSuccess/n5/bayesnet/bayesnet-n5-20260321_080631/staged/public/train.csv +3 -0
  29. syntheticSuccess/n5/bayesnet/bayesnet-n5-20260321_080631/staged/public/val.csv +3 -0
  30. syntheticSuccess/n5/bayesnet/bayesnet-n5-20260321_080631/train_20260321_080639.log +3 -0
  31. syntheticSuccess/n5/ctgan/ctgan-n5-20260328_053353/gen_20260328_154811.log +0 -0
  32. syntheticSuccess/n5/ctgan/ctgan-n5-20260328_053353/gen_20260330_070044.log +0 -0
  33. syntheticSuccess/n5/realtabformer/rtf-n5-20260330_185605/rtf_checkpoints/checkpoint-52900/model.safetensors +3 -0
  34. syntheticSuccess/n5/realtabformer/rtf-n5-20260330_185605/rtf_checkpoints/checkpoint-53000/model.safetensors +3 -0
  35. syntheticSuccess/n5/tabddpm/tabddpm-n5-20260321_155818/_tabddpm_sample.py +66 -0
  36. syntheticSuccess/n5/tabddpm/tabddpm-n5-20260321_155818/_tabddpm_train.py +32 -0
  37. syntheticSuccess/n5/tabpfgen/tabpfgen-n5-20260422_200800/_tabpfgen_generate.py +87 -0
  38. syntheticSuccess/n5/tvae/tvae-n5-20260328_053122/_tvae_generate.py +5 -0
  39. syntheticSuccess/n5/tvae/tvae-n5-20260328_053122/_tvae_train.py +16 -0
  40. syntheticSuccess/n5/tvae/tvae-n5-20260328_053122/gen_20260328_144139.log +3 -0
  41. syntheticSuccess/n5/tvae/tvae-n5-20260328_053122/gen_20260330_070106.log +3 -0
  42. syntheticSuccess/n5/tvae/tvae-n5-20260328_053122/input_snapshot.json +3 -0
  43. syntheticSuccess/n5/tvae/tvae-n5-20260328_053122/models_300epochs/train_20260328_053134.log +3 -0
  44. syntheticSuccess/n5/tvae/tvae-n5-20260328_053122/public_gate/normalized_schema_snapshot.json +3 -0
  45. syntheticSuccess/n5/tvae/tvae-n5-20260328_053122/public_gate/public_gate_report.json +3 -0
  46. syntheticSuccess/n5/tvae/tvae-n5-20260328_053122/public_gate/staged_input_manifest.json +3 -0
  47. syntheticSuccess/n5/tvae/tvae-n5-20260328_053122/runtime_result.json +3 -0
  48. syntheticSuccess/n5/tvae/tvae-n5-20260328_053122/staged/tvae/adapter_transforms_applied.json +3 -0
  49. syntheticSuccess/n5/tvae/tvae-n5-20260328_053122/tvae-n5-1000-20260328_144139.csv +3 -0
  50. syntheticSuccess/n5/tvae/tvae-n5-20260328_053122/tvae_metadata.json +3 -0
syntheticSuccess/n5/arf/arf-n5-20260325_075442/_arf_generate.py ADDED
@@ -0,0 +1,6 @@
 
 
 
 
 
 
 
1
+ import pickle
2
+ with open("/work/output-SpecializedModels/n5/arf/arf-n5-20260325_075442/arf_model.pkl", "rb") as f:
3
+ model = pickle.load(f)
4
+ syn = model.forge(n=17010)
5
+ syn.to_csv("/work/output-SpecializedModels/n5/arf/arf-n5-20260325_075442/arf-n5-17010-20260330_070118.csv", index=False)
6
+ print(f"[ARF] Generated 17010 rows -> /work/output-SpecializedModels/n5/arf/arf-n5-20260325_075442/arf-n5-17010-20260330_070118.csv")
syntheticSuccess/n5/arf/arf-n5-20260325_075442/_arf_train.py ADDED
@@ -0,0 +1,19 @@
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
1
+ import pickle
2
+ import pandas as pd
3
+ from arfpy import arf
4
+
5
+ df = pd.read_csv("/work/output-SpecializedModels/n5/arf/arf-n5-20260325_075442/staged/public/train.csv")
6
+ df = df.dropna(axis=1, how="all")
7
+ print(f"[ARF] Training on {len(df)} rows, {len(df.columns)} cols")
8
+
9
+ model = arf.arf(x=df)
10
+ if hasattr(model, "fit"):
11
+ model.fit()
12
+ elif hasattr(model, "forde"):
13
+ model.forde()
14
+ else:
15
+ raise RuntimeError("arfpy API: no fit() / forde()")
16
+
17
+ with open("/work/output-SpecializedModels/n5/arf/arf-n5-20260325_075442/arf_model.pkl", "wb") as f:
18
+ pickle.dump(model, f)
19
+ print(f"[ARF] Model saved -> /work/output-SpecializedModels/n5/arf/arf-n5-20260325_075442/arf_model.pkl")
syntheticSuccess/n5/arf/arf-n5-20260325_075442/arf-n5-1000-20260325_091357.csv ADDED
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syntheticSuccess/n5/arf/arf-n5-20260325_075442/gen_20260330_070118.log ADDED
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syntheticSuccess/n5/arf/arf-n5-20260325_075442/input_snapshot.json ADDED
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syntheticSuccess/n5/arf/arf-n5-20260325_075442/public_gate/normalized_schema_snapshot.json ADDED
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syntheticSuccess/n5/arf/arf-n5-20260325_075442/public_gate/public_gate_report.json ADDED
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syntheticSuccess/n5/arf/arf-n5-20260325_075442/public_gate/staged_input_manifest.json ADDED
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syntheticSuccess/n5/arf/arf-n5-20260325_075442/runtime_result.json ADDED
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syntheticSuccess/n5/arf/arf-n5-20260325_075442/staged/arf/adapter_report.json ADDED
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syntheticSuccess/n5/arf/arf-n5-20260325_075442/staged/arf/adapter_transforms_applied.json ADDED
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syntheticSuccess/n5/arf/arf-n5-20260325_075442/staged/arf/model_input_manifest.json ADDED
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syntheticSuccess/n5/arf/arf-n5-20260325_075442/staged/public/staged_features.json ADDED
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syntheticSuccess/n5/arf/arf-n5-20260325_075442/staged/public/test.csv ADDED
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syntheticSuccess/n5/arf/arf-n5-20260325_075442/staged/public/val.csv ADDED
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+ version https://git-lfs.github.com/spec/v1
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+ oid sha256:6c0a9b6eb141b64fcd162a8de3c3c11047c60f0d92a250663ea03cfc688bce3a
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syntheticSuccess/n5/arf/arf-n5-20260325_075442/train_20260325_075450.log ADDED
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+ version https://git-lfs.github.com/spec/v1
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syntheticSuccess/n5/bayesnet/bayesnet-n5-20260321_080631/_bayesnet_generate.py ADDED
@@ -0,0 +1,43 @@
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
1
+ import subprocess, sys, os
2
+
3
+ pip_libs = "/pip_libs"
4
+ sys.path.insert(0, pip_libs)
5
+ os.environ["PYTHONPATH"] = pip_libs + os.pathsep + os.environ.get("PYTHONPATH", "")
6
+
7
+ def _ensure_deps():
8
+ try:
9
+ import synthcity
10
+ except ModuleNotFoundError:
11
+ print("[BayesNet] synthcity not found - installing to cache...")
12
+ subprocess.run(
13
+ [sys.executable, "-m", "pip", "install",
14
+ "--target", pip_libs, "synthcity==0.2.12", "numpy<2", "-q"],
15
+ check=True
16
+ )
17
+ import shutil, glob
18
+ for pat in ["torch", "torch-*", "torchvision", "torchvision-*",
19
+ "torchvision.libs", "torchgen", "nvidia*", "triton*"]:
20
+ for p in glob.glob(os.path.join(pip_libs, pat)):
21
+ if os.path.isdir(p): shutil.rmtree(p)
22
+ else: os.remove(p)
23
+ if pip_libs not in sys.path:
24
+ sys.path.insert(0, pip_libs)
25
+
26
+ _ensure_deps()
27
+
28
+ import pickle, json as _json
29
+ with open("/work/output-SpecializedModels/n5/bayesnet/bayesnet-n5-20260321_080631/bayesnet_model.pkl", "rb") as f:
30
+ plugin = pickle.load(f)
31
+ syn = plugin.generate(count=17010).dataframe()
32
+
33
+ # Restore zero-variance columns that were dropped during training
34
+ const_path = "/work/output-SpecializedModels/n5/bayesnet/bayesnet-n5-20260321_080631/bayesnet_model.pkl".replace("bayesnet_model.pkl", "const_cols.json")
35
+ if os.path.exists(const_path):
36
+ with open(const_path) as _f:
37
+ const_cols = _json.load(_f)
38
+ for col, val in const_cols.items():
39
+ syn[col] = val
40
+ print(f"[BayesNet] Restored constant column '{col}' = {val}")
41
+
42
+ syn.to_csv("/work/output-SpecializedModels/n5/bayesnet/bayesnet-n5-20260321_080631/bayesnet-n5-17010-20260330_070118.csv", index=False)
43
+ print(f"[BayesNet] Generated 17010 rows -> /work/output-SpecializedModels/n5/bayesnet/bayesnet-n5-20260321_080631/bayesnet-n5-17010-20260330_070118.csv")
syntheticSuccess/n5/bayesnet/bayesnet-n5-20260321_080631/_bayesnet_train.py ADDED
@@ -0,0 +1,62 @@
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
1
+ import subprocess, sys, os
2
+
3
+ pip_libs = "/pip_libs"
4
+ sys.path.insert(0, pip_libs)
5
+ os.environ["PYTHONPATH"] = pip_libs + os.pathsep + os.environ.get("PYTHONPATH", "")
6
+
7
+ def _ensure_deps():
8
+ try:
9
+ import synthcity
10
+ except ModuleNotFoundError:
11
+ print("[BayesNet] synthcity not found - installing to cache (first run, may take minutes)...")
12
+ # Install synthcity with numpy<2 to avoid conflicts
13
+ subprocess.run(
14
+ [sys.executable, "-m", "pip", "install",
15
+ "--target", pip_libs, "synthcity==0.2.12", "numpy<2", "-q"],
16
+ check=True
17
+ )
18
+ # Remove torch/torchvision from pip_libs to avoid shadowing system versions
19
+ import shutil, glob
20
+ for pat in ["torch", "torch-*", "torchvision", "torchvision-*",
21
+ "torchvision.libs", "torchgen", "nvidia*", "triton*"]:
22
+ for p in glob.glob(os.path.join(pip_libs, pat)):
23
+ if os.path.isdir(p): shutil.rmtree(p)
24
+ else: os.remove(p)
25
+ if pip_libs not in sys.path:
26
+ sys.path.insert(0, pip_libs)
27
+
28
+ _ensure_deps()
29
+
30
+ from synthcity.plugins import Plugins
31
+ import pickle
32
+ import pandas as pd
33
+ from synthcity.plugins.core.dataloader import GenericDataLoader
34
+
35
+ df = pd.read_csv("/work/output-SpecializedModels/n5/bayesnet/bayesnet-n5-20260321_080631/staged/public/train.csv")
36
+ df = df.dropna(axis=1, how="all")
37
+
38
+ # Drop zero-variance columns (only 1 unique value) to avoid
39
+ # synthcity encoder KeyError during generation
40
+ import json as _json
41
+ const_cols = {}
42
+ for col in list(df.columns):
43
+ nuniq = df[col].nunique()
44
+ if nuniq <= 1:
45
+ const_cols[col] = df[col].iloc[0] if len(df) > 0 else None
46
+ df = df.drop(columns=[col])
47
+ print(f"[BayesNet] Dropped zero-variance column '{col}' (value={const_cols[col]})")
48
+
49
+ # Save constant columns info so generate can restore them
50
+ const_path = "/work/output-SpecializedModels/n5/bayesnet/bayesnet-n5-20260321_080631/bayesnet_model.pkl".replace("bayesnet_model.pkl", "const_cols.json")
51
+ with open(const_path, "w") as _f:
52
+ _json.dump({k: str(v) for k, v in const_cols.items()}, _f)
53
+
54
+ print(f"[BayesNet] Training on {len(df)} rows, {len(df.columns)} cols")
55
+
56
+ loader = GenericDataLoader(df)
57
+ plugin = Plugins().get("bayesian_network")
58
+ plugin.fit(loader)
59
+
60
+ with open("/work/output-SpecializedModels/n5/bayesnet/bayesnet-n5-20260321_080631/bayesnet_model.pkl", "wb") as f:
61
+ pickle.dump(plugin, f)
62
+ print(f"[BayesNet] Model saved -> /work/output-SpecializedModels/n5/bayesnet/bayesnet-n5-20260321_080631/bayesnet_model.pkl")
syntheticSuccess/n5/bayesnet/bayesnet-n5-20260321_080631/public_gate/normalized_schema_snapshot.json ADDED
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syntheticSuccess/n5/bayesnet/bayesnet-n5-20260321_080631/staged/bayesnet/adapter_transforms_applied.json ADDED
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syntheticSuccess/n5/bayesnet/bayesnet-n5-20260321_080631/staged/public/train.csv ADDED
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syntheticSuccess/n5/bayesnet/bayesnet-n5-20260321_080631/staged/public/val.csv ADDED
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syntheticSuccess/n5/bayesnet/bayesnet-n5-20260321_080631/train_20260321_080639.log ADDED
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syntheticSuccess/n5/ctgan/ctgan-n5-20260328_053353/gen_20260328_154811.log ADDED
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syntheticSuccess/n5/ctgan/ctgan-n5-20260328_053353/gen_20260330_070044.log ADDED
File without changes
syntheticSuccess/n5/realtabformer/rtf-n5-20260330_185605/rtf_checkpoints/checkpoint-52900/model.safetensors ADDED
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+ version https://git-lfs.github.com/spec/v1
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syntheticSuccess/n5/realtabformer/rtf-n5-20260330_185605/rtf_checkpoints/checkpoint-53000/model.safetensors ADDED
@@ -0,0 +1,3 @@
 
 
 
 
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+ version https://git-lfs.github.com/spec/v1
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+ oid sha256:bc4ba5f87f852c890139592a4143a7dcc258218906c3df98704906089ed8b260
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+ size 187783624
syntheticSuccess/n5/tabddpm/tabddpm-n5-20260321_155818/_tabddpm_sample.py ADDED
@@ -0,0 +1,66 @@
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
1
+ import os, sys, subprocess, json
2
+ import numpy as np
3
+ import pandas as pd
4
+
5
+ tabddpm_root = "/workspace/tabddpm/code"
6
+ assert os.path.isdir(tabddpm_root), f"TabDDPM source not mounted: {tabddpm_root}"
7
+ env = os.environ.copy()
8
+ env["PYTHONPATH"] = tabddpm_root + (os.pathsep + env.get("PYTHONPATH", ""))
9
+
10
+ # Reuse the compat wrapper (patches collections.Sequence for skorch)
11
+ wrapper = os.path.join(tabddpm_root, "_compat_run.py")
12
+ if not os.path.exists(wrapper):
13
+ with open(wrapper, "w") as f:
14
+ f.write(
15
+ "import collections, collections.abc\n"
16
+ "for _a in ('Sequence','MutableSequence','MutableMapping','Mapping',"
17
+ "'MutableSet','Set','Callable','Iterable','Iterator'):\n"
18
+ " if not hasattr(collections, _a): setattr(collections, _a, getattr(collections.abc, _a, None))\n"
19
+ "import sys, runpy\n"
20
+ "sys.argv = sys.argv[1:]\n"
21
+ "runpy.run_path(sys.argv[0], run_name='__main__')\n"
22
+ )
23
+
24
+ print(f"[TabDDPM] Sampling 17010 rows")
25
+ ret = subprocess.run(
26
+ [sys.executable, wrapper, "scripts/pipeline.py",
27
+ "--config", "/work/output-SpecializedModels/n5/tabddpm/tabddpm-n5-20260321_155818/config_sample_20260425_074446.toml",
28
+ "--sample"],
29
+ cwd=tabddpm_root,
30
+ env=env
31
+ )
32
+ if ret.returncode != 0:
33
+ sys.exit(ret.returncode)
34
+
35
+ # 将 .npy 输出转为 CSV(npy 在 TabDDPM 的 parent_dir,即 npy_dir)
36
+ info_path = "/work/output-SpecializedModels/n5/tabddpm/tabddpm-n5-20260321_155818/data/info.json"
37
+ with open(info_path) as f:
38
+ info = json.load(f)
39
+
40
+ output_dir = "/work/output-SpecializedModels/n5/tabddpm/tabddpm-n5-20260321_155818/output"
41
+ col_names = info.get("column_names", [])
42
+
43
+ parts = []
44
+ x_num_path = os.path.join(output_dir, "X_num_train.npy")
45
+ x_cat_path = os.path.join(output_dir, "X_cat_train.npy")
46
+ y_path = os.path.join(output_dir, "y_train.npy")
47
+
48
+ if os.path.exists(x_num_path):
49
+ parts.append(np.load(x_num_path, allow_pickle=True))
50
+ if os.path.exists(x_cat_path):
51
+ parts.append(np.load(x_cat_path, allow_pickle=True).astype(float))
52
+ if os.path.exists(y_path):
53
+ y = np.load(y_path, allow_pickle=True)
54
+ parts.append(y.reshape(-1, 1) if y.ndim == 1 else y)
55
+
56
+ if parts:
57
+ combined = np.concatenate(parts, axis=1)
58
+ if col_names and len(col_names) == combined.shape[1]:
59
+ df = pd.DataFrame(combined, columns=col_names)
60
+ else:
61
+ df = pd.DataFrame(combined)
62
+ df.to_csv("/work/output-SpecializedModels/n5/tabddpm/tabddpm-n5-20260321_155818/tabddpm-n5-17010-20260425_074446.csv", index=False)
63
+ print(f"[TabDDPM] Saved {len(df)} rows -> /work/output-SpecializedModels/n5/tabddpm/tabddpm-n5-20260321_155818/tabddpm-n5-17010-20260425_074446.csv")
64
+ else:
65
+ print("[TabDDPM] WARNING: No output .npy files found")
66
+ sys.exit(1)
syntheticSuccess/n5/tabddpm/tabddpm-n5-20260321_155818/_tabddpm_train.py ADDED
@@ -0,0 +1,32 @@
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
1
+ import os, sys, subprocess
2
+
3
+ tabddpm_root = "/workspace/tabddpm/code"
4
+ assert os.path.isdir(tabddpm_root), f"TabDDPM source not mounted: {tabddpm_root}"
5
+ env = os.environ.copy()
6
+ env["PYTHONPATH"] = tabddpm_root + (os.pathsep + env.get("PYTHONPATH", ""))
7
+
8
+ # Write a wrapper that patches collections.Sequence (removed in Python 3.10+)
9
+ # before running pipeline.py - needed because skorch uses old API
10
+ wrapper = os.path.join(tabddpm_root, "_compat_run.py")
11
+ with open(wrapper, "w") as f:
12
+ f.write(
13
+ "import collections, collections.abc\n"
14
+ "for _a in ('Sequence','MutableSequence','MutableMapping','Mapping',"
15
+ "'MutableSet','Set','Callable','Iterable','Iterator'):\n"
16
+ " if not hasattr(collections, _a): setattr(collections, _a, getattr(collections.abc, _a, None))\n"
17
+ "import sys, runpy\n"
18
+ "sys.argv = sys.argv[1:]\n"
19
+ "runpy.run_path(sys.argv[0], run_name='__main__')\n"
20
+ )
21
+
22
+ print(f"[TabDDPM] Training, config=/work/output-SpecializedModels/n5/tabddpm/tabddpm-n5-20260321_155818/config.toml")
23
+ ret = subprocess.run(
24
+ [sys.executable, wrapper, "scripts/pipeline.py",
25
+ "--config", "/work/output-SpecializedModels/n5/tabddpm/tabddpm-n5-20260321_155818/config.toml",
26
+ "--train"],
27
+ cwd=tabddpm_root,
28
+ env=env
29
+ )
30
+ if ret.returncode != 0:
31
+ sys.exit(ret.returncode)
32
+ print("[TabDDPM] Training complete")
syntheticSuccess/n5/tabpfgen/tabpfgen-n5-20260422_200800/_tabpfgen_generate.py ADDED
@@ -0,0 +1,87 @@
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
1
+ import numpy as np
2
+ import pandas as pd
3
+ import json
4
+ from tabpfgen import TabPFGen
5
+
6
+ df = pd.read_csv("/work/output-SpecializedModels/n5/tabpfgen/tabpfgen-n5-20260422_200800/staged/public/train.csv")
7
+ target_col = "wtd_entropy_Valence"
8
+
9
+ feature_cols = [c for c in df.columns if c != target_col]
10
+
11
+ # --- Label-encode categorical / object columns ---
12
+ cat_encodings = {} # col -> list of unique values (index = code)
13
+ for col in feature_cols:
14
+ if df[col].dtype == object or str(df[col].dtype) == 'category':
15
+ cats = sorted(df[col].dropna().unique().tolist(), key=str)
16
+ cat_map = {v: i for i, v in enumerate(cats)}
17
+ df[col] = df[col].map(cat_map).astype(float)
18
+ cat_encodings[col] = cats
19
+ print(f"[TabPFGen] Label-encoded '{col}' ({len(cats)} categories)")
20
+
21
+ # Encode target if categorical
22
+ target_cats = None
23
+ if df[target_col].dtype == object or str(df[target_col].dtype) == 'category':
24
+ cats = sorted(df[target_col].dropna().unique().tolist(), key=str)
25
+ t_map = {v: i for i, v in enumerate(cats)}
26
+ df[target_col] = df[target_col].map(t_map).astype(float)
27
+ target_cats = cats
28
+ print(f"[TabPFGen] Label-encoded target '{target_col}' ({len(cats)} categories)")
29
+
30
+ X = df[feature_cols].values.astype(np.float32)
31
+ y = df[target_col].values
32
+ target_n = int(17010)
33
+
34
+ # Handle NaN
35
+ for i in range(X.shape[1]):
36
+ col_vals = X[:, i]
37
+ mask = np.isnan(col_vals)
38
+ if mask.any():
39
+ mean_val = np.nanmean(col_vals)
40
+ X[mask, i] = mean_val if not np.isnan(mean_val) else 0.0
41
+
42
+ gen = TabPFGen(
43
+ n_sgld_steps=1000,
44
+ sgld_step_size=0.01,
45
+ sgld_noise_scale=0.01,
46
+ device="auto",
47
+ )
48
+
49
+ print(f"[TabPFGen] Generating {target_n} rows via generate_regression")
50
+ X_syn, y_syn = gen.generate_regression(X, y, n_samples=target_n)
51
+
52
+ syn_df = pd.DataFrame(X_syn, columns=feature_cols)
53
+ syn_df[target_col] = y_syn
54
+
55
+ # --- Inverse label-encoding for categorical columns ---
56
+ for col, cats in cat_encodings.items():
57
+ # Round to nearest integer index, clamp to valid range
58
+ codes = np.round(syn_df[col].values).astype(int)
59
+ codes = np.clip(codes, 0, len(cats) - 1)
60
+ syn_df[col] = [cats[c] for c in codes]
61
+
62
+ if target_cats is not None:
63
+ codes = np.round(syn_df[target_col].values).astype(int)
64
+ codes = np.clip(codes, 0, len(target_cats) - 1)
65
+ syn_df[target_col] = [target_cats[c] for c in codes]
66
+
67
+ # Ensure output row count is strictly aligned with target_n.
68
+ if len(syn_df) > target_n:
69
+ print(f"[TabPFGen] Trimming rows: {len(syn_df)} -> {target_n}")
70
+ syn_df = syn_df.iloc[:target_n].copy()
71
+ elif len(syn_df) < target_n:
72
+ deficit = target_n - len(syn_df)
73
+ print(f"[TabPFGen] Padding rows: {len(syn_df)} -> {target_n} (deficit={deficit})")
74
+ if len(syn_df) > 0:
75
+ extra = syn_df.sample(n=deficit, replace=True, random_state=42)
76
+ syn_df = pd.concat([syn_df.reset_index(drop=True), extra.reset_index(drop=True)], ignore_index=True)
77
+ else:
78
+ # Defensive fallback: if generator returns empty, bootstrap from training rows.
79
+ syn_df = df[feature_cols + [target_col]].sample(
80
+ n=target_n, replace=True, random_state=42
81
+ ).reset_index(drop=True)
82
+
83
+ syn_df = syn_df[list(df.columns)]
84
+ if len(syn_df) != target_n:
85
+ raise RuntimeError(f"[TabPFGen] Row alignment failed: got {len(syn_df)}, expected {target_n}")
86
+ syn_df.to_csv("/work/output-SpecializedModels/n5/tabpfgen/tabpfgen-n5-20260422_200800/tabpfgen-n5-17010-20260422_200811.csv", index=False)
87
+ print(f"[TabPFGen] Saved {len(syn_df)} rows -> /work/output-SpecializedModels/n5/tabpfgen/tabpfgen-n5-20260422_200800/tabpfgen-n5-17010-20260422_200811.csv")
syntheticSuccess/n5/tvae/tvae-n5-20260328_053122/_tvae_generate.py ADDED
@@ -0,0 +1,5 @@
 
 
 
 
 
 
1
+ from ctgan.synthesizers.tvae import TVAE
2
+ model = TVAE.load("/work/output-SpecializedModels/n5/tvae/tvae-n5-20260328_053122/models_300epochs/tvae_300epochs.pt")
3
+ samples = model.sample(17010)
4
+ samples.to_csv("/work/output-SpecializedModels/n5/tvae/tvae-n5-20260328_053122/tvae-n5-17010-20260330_070106.csv", index=False)
5
+ print(f"[TVAE] Generated 17010 rows -> /work/output-SpecializedModels/n5/tvae/tvae-n5-20260328_053122/tvae-n5-17010-20260330_070106.csv")
syntheticSuccess/n5/tvae/tvae-n5-20260328_053122/_tvae_train.py ADDED
@@ -0,0 +1,16 @@
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
1
+ import json, sys
2
+ import pandas as pd
3
+ from ctgan.data import read_csv
4
+ from ctgan.synthesizers.tvae import TVAE
5
+
6
+ csv_path = "/work/output-SpecializedModels/n5/tvae/tvae-n5-20260328_053122/staged/public/train.csv"
7
+ meta_path = "/work/output-SpecializedModels/n5/tvae/tvae-n5-20260328_053122/tvae_metadata.json"
8
+ save_path = "/work/output-SpecializedModels/n5/tvae/tvae-n5-20260328_053122/models_300epochs/tvae_300epochs.pt"
9
+ epochs = 300
10
+
11
+ data, discrete_columns = read_csv(csv_path, meta_path, header=True, discrete=None)
12
+ print(f"[TVAE] Training on {len(data)} rows, {len(data.columns)} cols, epochs={epochs}")
13
+ model = TVAE(epochs=epochs, batch_size=500)
14
+ model.fit(data, discrete_columns)
15
+ model.save(save_path)
16
+ print(f"[TVAE] Model saved -> {save_path}")
syntheticSuccess/n5/tvae/tvae-n5-20260328_053122/gen_20260328_144139.log ADDED
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+ size 126
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syntheticSuccess/n5/tvae/tvae-n5-20260328_053122/input_snapshot.json ADDED
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syntheticSuccess/n5/tvae/tvae-n5-20260328_053122/models_300epochs/train_20260328_053134.log ADDED
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