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DOLPHIN/nautilus_dolphin/dvae/convnext_sensor.py

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"""
convnext_sensor.py Inference wrapper for the trained ConvNeXt-1D β-TCVAE.
Usage
-----
sensor = ConvNextSensor(model_path)
z_mu, z_post_std = sensor.encode_window(df_1m, end_row)
# z_mu: (32,) float64 — latent mean for the 32-bar window ending at end_row
# z_post_std: float — mean posterior std (OOD indicator, >1 = wide/uncertain)
Key z-dim assignments (from convnext_query.py, ep=17 checkpoint):
z[10] r=+0.973 proxy_B (instability_50 - v750_velocity)
z[30] r=-0.968 proxy_B (anti-correlated)
z[24] r=+0.942 proxy_B
...10+ dims encoding proxy_B trajectory at >0.86
Architecture: ConvNeXtVAE C_in=11 T_in=32 z_dim=32 base_ch=32 n_blocks=3
Input channels:
ch0-3 v50/v150/v300/v750 lambda_max_velocity
ch4 vel_div
ch5 instability_50
ch6 instability_150
ch7 proxy_B (= instability_50 - v750_lambda_max_velocity)
ch8 dvol_btc (ExF, broadcast constant)
ch9 fng (ExF, broadcast constant)
ch10 funding_btc (ExF, broadcast constant)
"""
import os
import sys
import json
import numpy as np
_DVAE_DIR = os.path.dirname(os.path.abspath(__file__))
if _DVAE_DIR not in sys.path:
sys.path.insert(0, _DVAE_DIR)
from convnext_dvae import ConvNeXtVAE
FEATURE_COLS = [
'v50_lambda_max_velocity',
'v150_lambda_max_velocity',
'v300_lambda_max_velocity',
'v750_lambda_max_velocity',
'vel_div',
'instability_50',
'instability_150',
]
EXF_COLS = ['dvol_btc', 'fng', 'funding_btc']
T_WIN = 32
N_CH = 11 # 7 FEATURE + proxy_B + 3 ExF
# z-dim index of the primary proxy_B encoding (r=+0.973)
PROXY_B_DIM = 10
class ConvNextSensor:
"""
Stateless inference wrapper. Thread-safe (model weights are read-only numpy).
"""
def __init__(self, model_path: str):
with open(model_path) as f:
meta = json.load(f)
arch = meta.get('architecture', {})
self.model = ConvNeXtVAE(
C_in = arch.get('C_in', N_CH),
T_in = arch.get('T_in', T_WIN),
z_dim = arch.get('z_dim', 32),
base_ch = arch.get('base_ch', 32),
n_blocks = arch.get('n_blocks', 3),
seed = 42,
)
self.model.load(model_path)
self.norm_mean = np.array(meta['norm_mean'], dtype=np.float64) if 'norm_mean' in meta else None
self.norm_std = np.array(meta['norm_std'], dtype=np.float64) if 'norm_std' in meta else None
self.epoch = meta.get('epoch', '?')
self.val_loss = meta.get('val_loss', float('nan'))
self.z_dim = arch.get('z_dim', 32)
# ── low-level: encode a (1, N_CH, T_WIN) array ──────────────────────────
def encode_raw(self, arr: np.ndarray):
"""
arr: (N_CH, T_WIN) float64, already in raw (un-normalised) units.
Returns z_mu (z_dim,), z_post_std float.
"""
x = arr[np.newaxis].astype(np.float64) # (1, C, T)
if self.norm_mean is not None:
x = (x - self.norm_mean[None, :, None]) / self.norm_std[None, :, None]
np.clip(x, -6.0, 6.0, out=x)
z_mu, z_logvar = self.model.encode(x) # (1, D)
z_post_std = float(np.exp(0.5 * z_logvar).mean())
return z_mu[0], z_post_std
# ── high-level: encode from a 1m DataFrame row ──────────────────────────
def encode_window(self, df_1m, end_row: int,
exf_dvol: float = 0., exf_fng: float = 0.,
exf_funding: float = 0.):
"""
Build a (N_CH, T_WIN) window ending at end_row (inclusive) from df_1m.
Missing columns are treated as zero.
Parameters
----------
df_1m : DataFrame with FEATURE_COLS as columns
end_row : integer row index (loc-style), window = [end_row-T_WIN+1 : end_row+1]
exf_* : ExF scalars broadcast across the window (set to 0 if unavailable)
Returns
-------
z_mu : (z_dim,) float64
z_post_std : float (>1 suggests OOD regime)
"""
start = max(0, end_row - T_WIN + 1)
rows = df_1m.iloc[start : end_row + 1]
T_actual = len(rows)
arr = np.zeros((T_WIN, N_CH - 3), dtype=np.float64) # (T_WIN, 8)
for i, col in enumerate(FEATURE_COLS):
if col in rows.columns:
vals = rows[col].values.astype(np.float64)
arr[T_WIN - T_actual:, i] = vals
# proxy_B = instability_50 - v750_lambda_max_velocity (ch7)
arr[:, 7] = arr[:, 5] - arr[:, 3]
# ExF channels broadcast as scalar across T_WIN
exf = np.array([exf_dvol, exf_fng, exf_funding], dtype=np.float64)
full = np.concatenate([arr, np.tile(exf, (T_WIN, 1))], axis=1) # (T_WIN, 11)
return self.encode_raw(full.T) # (N_CH, T_WIN)
# ── convenience scalar: primary proxy_B z-dim ────────────────────────────
def z_proxy_b(self, df_1m, end_row: int, **exf_kwargs) -> float:
"""Return scalar z[PROXY_B_DIM] for the window ending at end_row."""
z_mu, _ = self.encode_window(df_1m, end_row, **exf_kwargs)
return float(z_mu[PROXY_B_DIM])