Spaces:
Running
Running
File size: 11,376 Bytes
e57e9d1 6500e72 e57e9d1 6500e72 e57e9d1 52f45ce 0b39593 52f45ce 0b39593 e57e9d1 916d006 e57e9d1 0b39593 e57e9d1 916d006 0b39593 e57e9d1 0b39593 e57e9d1 916d006 e57e9d1 916d006 52f45ce 916d006 74702a5 e57e9d1 4c2d2a0 828ef50 e57e9d1 916d006 e57e9d1 916d006 74702a5 916d006 52f45ce 74702a5 916d006 e57e9d1 4c2d2a0 e57e9d1 c06ed8a e57e9d1 | 1 2 3 4 5 6 7 8 9 10 11 12 13 14 15 16 17 18 19 20 21 22 23 24 25 26 27 28 29 30 31 32 33 34 35 36 37 38 39 40 41 42 43 44 45 46 47 48 49 50 51 52 53 54 55 56 57 58 59 60 61 62 63 64 65 66 67 68 69 70 71 72 73 74 75 76 77 78 79 80 81 82 83 84 85 86 87 88 89 90 91 92 93 94 95 96 97 98 99 100 101 102 103 104 105 106 107 108 109 110 111 112 113 114 115 116 117 118 119 120 121 122 123 124 125 126 127 128 129 130 131 132 133 134 135 136 137 138 139 140 141 142 143 144 145 146 147 148 149 150 151 152 153 154 155 156 157 158 159 160 161 162 163 164 165 166 167 168 169 170 171 172 173 174 175 176 177 178 179 180 181 182 183 184 185 186 187 188 189 190 191 192 193 194 195 196 197 198 199 200 201 202 203 204 205 206 207 208 209 210 211 212 213 214 215 216 217 218 219 220 221 222 223 224 225 226 227 228 229 230 231 232 233 234 235 236 237 238 239 240 241 242 243 244 245 246 247 248 249 250 251 252 253 254 255 256 257 258 259 260 261 262 263 264 265 266 267 268 269 270 271 272 273 274 275 276 277 278 279 280 281 282 283 284 285 286 287 288 289 290 291 292 293 294 295 296 297 298 299 300 301 302 303 304 | """
Optuna-based Hyperparameter Optimization for TFT-ASRO.
Searches across model architecture, training, and ASRO loss parameters
using Tree-structured Parzen Estimator (TPE) with early pruning.
Usage:
python -m deep_learning.training.hyperopt --n-trials 50
"""
from __future__ import annotations
import argparse
import json
import logging
import warnings
from dataclasses import replace
from pathlib import Path
from typing import Optional
import numpy as np
warnings.filterwarnings(
"ignore",
message="X does not have valid feature names",
category=UserWarning,
module="sklearn",
)
from deep_learning.config import (
ASROConfig,
TFTASROConfig,
TFTModelConfig,
TrainingConfig,
get_tft_config,
)
logger = logging.getLogger(__name__)
def create_trial_config(trial, base_cfg: TFTASROConfig) -> TFTASROConfig:
"""Map an Optuna trial to a TFT-ASRO configuration."""
model_cfg = TFTModelConfig(
max_encoder_length=trial.suggest_int("max_encoder_length", 30, 90, step=10),
max_prediction_length=base_cfg.model.max_prediction_length,
# Floor at 32: hidden=16 with dropout>0.3 leaves ~8 active neurons,
# compressing output distribution and preventing amplitude learning.
hidden_size=trial.suggest_int("hidden_size", 32, 64, step=16),
attention_head_size=trial.suggest_int("attention_head_size", 1, 4),
# Cap at 0.35: dropout=0.5 with small hidden_size collapses the output
# range β the model physically cannot produce large predictions.
dropout=trial.suggest_float("dropout", 0.1, 0.35, step=0.05),
hidden_continuous_size=trial.suggest_int("hidden_continuous_size", 8, 32, step=8),
quantiles=base_cfg.model.quantiles,
# Range [1e-4, 1e-3]: LR < 1e-4 produces near-zero pred_std (VR=0.14);
# LR > 1e-3 causes 1-epoch divergence. This band is the stable zone.
learning_rate=trial.suggest_float("learning_rate", 1e-4, 1e-3, log=True),
reduce_on_plateau_patience=4,
gradient_clip_val=trial.suggest_float("gradient_clip_val", 0.5, 2.0, step=0.5),
)
asro_cfg = ASROConfig(
# Floor at 0.25: three Optuna runs consistently selected 0.30-0.35.
# Lower values let the model collapse to near-zero pred_std.
lambda_vol=trial.suggest_float("lambda_vol", 0.25, 0.45, step=0.05),
# lambda_quantile is the explicit w_quantile weight (w_sharpe = 1 - w_q)
lambda_quantile=trial.suggest_float("lambda_quantile", 0.2, 0.6, step=0.05),
risk_free_rate=0.0,
)
training_cfg = TrainingConfig(
max_epochs=50,
early_stopping_patience=8,
# Include 16 which gives 19 batches/epoch (vs 4 at batch_size=64)
# β more gradient steps per epoch β more stable convergence.
batch_size=trial.suggest_categorical("batch_size", [16, 32, 64]),
val_ratio=base_cfg.training.val_ratio,
test_ratio=base_cfg.training.test_ratio,
lookback_days=base_cfg.training.lookback_days,
seed=base_cfg.training.seed,
num_workers=base_cfg.training.num_workers,
optuna_n_trials=base_cfg.training.optuna_n_trials,
checkpoint_dir=str(Path(base_cfg.training.checkpoint_dir) / f"trial_{trial.number}"),
best_model_path=str(Path(base_cfg.training.checkpoint_dir) / f"trial_{trial.number}" / "best.ckpt"),
)
return TFTASROConfig(
embedding=base_cfg.embedding,
sentiment=base_cfg.sentiment,
lme=base_cfg.lme,
model=model_cfg,
asro=asro_cfg,
training=training_cfg,
feature_store=base_cfg.feature_store,
)
def _objective(trial, base_cfg: TFTASROConfig, master_data: tuple) -> float:
"""
Single Optuna trial: train a TFT variant and return a composite score.
Composite objective (lower is better):
score = val_loss + variance_penalty
Two-sided variance penalty keeps predictions in a healthy amplitude zone:
VR < 0.5 β strong penalty (2.0Γ) β flat predictions are useless
0.5β1.5 β no penalty β wide healthy zone, not a narrow band
VR > 1.5 β gentle penalty (0.5Γ) β overconfident but still has signal
"""
try:
import lightning.pytorch as pl
from lightning.pytorch.callbacks import EarlyStopping
except ImportError:
import pytorch_lightning as pl # type: ignore[no-redef]
from pytorch_lightning.callbacks import EarlyStopping # type: ignore[no-redef]
try:
from optuna_integration.pytorch_lightning import PyTorchLightningPruningCallback
except ImportError:
from optuna.integration import PyTorchLightningPruningCallback # type: ignore[no-redef]
import numpy as np
import torch
from deep_learning.data.dataset import build_datasets, create_dataloaders
from deep_learning.models.tft_copper import create_tft_model
trial_cfg = create_trial_config(trial, base_cfg)
master_df, tv_unknown, tv_known, target_cols = master_data
try:
training_ds, validation_ds, test_ds = build_datasets(
master_df, tv_unknown, tv_known, target_cols, trial_cfg,
)
train_dl, val_dl, _ = create_dataloaders(training_ds, validation_ds, cfg=trial_cfg)
model = create_tft_model(training_ds, trial_cfg, use_asro=True)
except Exception as exc:
logger.warning("Trial %d setup failed: %s", trial.number, exc)
return float("inf")
callbacks = [
EarlyStopping(monitor="val_loss", patience=trial_cfg.training.early_stopping_patience, mode="min"),
PyTorchLightningPruningCallback(trial, monitor="val_loss"),
]
ckpt_dir = Path(trial_cfg.training.checkpoint_dir)
ckpt_dir.mkdir(parents=True, exist_ok=True)
trainer = pl.Trainer(
max_epochs=trial_cfg.training.max_epochs,
accelerator="auto",
gradient_clip_val=trial_cfg.model.gradient_clip_val,
callbacks=callbacks,
enable_progress_bar=False,
enable_model_summary=False,
log_every_n_steps=20,
)
try:
trainer.fit(model, train_dataloaders=train_dl, val_dataloaders=val_dl)
except Exception as exc:
logger.warning("Trial %d training failed: %s", trial.number, exc)
return float("inf")
val_loss = trainer.callback_metrics.get("val_loss")
if val_loss is None:
return float("inf")
# --- Variance-ratio penalty on validation set ---
# Prevents Optuna from selecting configs that produce near-zero pred_std
# (which games Sharpe by being "flat but directionally correct").
variance_penalty = 0.0
try:
pred_tensor = model.predict(val_dl, mode="quantiles")
if hasattr(pred_tensor, "cpu"):
pred_np = pred_tensor.cpu().numpy()
else:
pred_np = np.array(pred_tensor)
median_idx = len(trial_cfg.model.quantiles) // 2
y_pred = pred_np[:, 0, median_idx] if pred_np.ndim == 3 else pred_np.flatten()
y_actual_parts = []
for batch in val_dl:
y_actual_parts.append(batch[1][0] if isinstance(batch[1], (list, tuple)) else batch[1])
y_actual = torch.cat(y_actual_parts).cpu().numpy().flatten()
n = min(len(y_actual), len(y_pred))
pred_std = float(y_pred[:n].std())
actual_std = float(y_actual[:n].std())
vr = pred_std / actual_std if actual_std > 1e-9 else 0.0
# Two-sided penalty with a wide healthy zone [0.5, 1.5]:
# VR < 0.5 β strong penalty (flat predictions, the original problem)
# 0.5β1.5 β no penalty (3Γ wide zone, not a narrow band)
# VR > 1.5 β gentle penalty (overconfident, predictions louder than market)
#
# Asymmetric: too-flat is worse than too-loud (flat predictions are
# useless; loud predictions at least carry directional signal).
if vr < 0.5:
variance_penalty = 2.0 * (1.0 - vr / 0.5)
elif vr > 1.5:
variance_penalty = 0.5 * (vr - 1.5)
trial.set_user_attr("variance_ratio", round(vr, 4))
trial.set_user_attr("pred_std", round(pred_std, 6))
except Exception as exc:
logger.debug("Trial %d variance check failed: %s", trial.number, exc)
score = float(val_loss) + variance_penalty
logger.info(
"Trial %d: val_loss=%.4f vr_penalty=%.4f β score=%.4f",
trial.number, float(val_loss), variance_penalty, score,
)
return score
def run_hyperopt(
base_cfg: Optional[TFTASROConfig] = None,
n_trials: int = 50,
study_name: str = "tft_asro_optuna",
storage: Optional[str] = None,
) -> dict:
"""
Launch Optuna hyperparameter search.
Returns:
Dict with best params, best value, and study summary.
"""
import optuna
try:
import lightning.pytorch as pl
except ImportError:
import pytorch_lightning as pl # type: ignore[no-redef]
from app.db import SessionLocal, init_db
from deep_learning.data.feature_store import build_tft_dataframe
if base_cfg is None:
base_cfg = get_tft_config()
init_db()
pl.seed_everything(base_cfg.training.seed)
logger.info("Building feature store for hyperopt ...")
with SessionLocal() as session:
master_data = build_tft_dataframe(session, base_cfg)
study = optuna.create_study(
study_name=study_name,
direction="minimize",
storage=storage,
load_if_exists=True,
pruner=optuna.pruners.MedianPruner(n_startup_trials=5, n_warmup_steps=5),
)
study.optimize(
lambda trial: _objective(trial, base_cfg, master_data),
n_trials=n_trials,
show_progress_bar=True,
)
best = study.best_trial
logger.info("Optuna best trial #%d: val_loss=%.6f", best.number, best.value)
logger.info("Best params: %s", best.params)
# Save alongside best_tft_asro.ckpt (tft/ root) so upload_tft_artifacts picks it up.
results_path = Path(base_cfg.training.best_model_path).parent / "optuna_results.json"
results_path.parent.mkdir(parents=True, exist_ok=True)
results_path.write_text(json.dumps({
"best_trial": best.number,
"best_value": best.value,
"best_params": best.params,
"n_trials": len(study.trials),
}, indent=2))
return {
"best_trial": best.number,
"best_value": best.value,
"best_params": best.params,
"n_trials": len(study.trials),
}
# ---------------------------------------------------------------------------
# CLI
# ---------------------------------------------------------------------------
if __name__ == "__main__":
logging.basicConfig(level=logging.INFO, format="%(asctime)s %(levelname)s %(message)s")
parser = argparse.ArgumentParser(description="TFT-ASRO hyperparameter optimisation")
parser.add_argument("--n-trials", type=int, default=50)
parser.add_argument("--study-name", default="tft_asro_optuna")
args = parser.parse_args()
result = run_hyperopt(n_trials=args.n_trials, study_name=args.study_name)
print("\n" + "=" * 60)
print("HYPEROPT COMPLETE")
print("=" * 60)
print(f"Best trial: #{result['best_trial']}")
print(f"Best val_loss: {result['best_value']:.6f}")
for k, v in result["best_params"].items():
print(f" {k}: {v}")
|