Includes core prod + GREEN/BLUE subsystems: - prod/ (BLUE harness, configs, scripts, docs) - nautilus_dolphin/ (GREEN Nautilus-native impl + dvae/ preserved) - adaptive_exit/ (AEM engine + models/bucket_assignments.pkl) - Observability/ (EsoF advisor, TUI, dashboards) - external_factors/ (EsoF producer) - mc_forewarning_qlabs_fork/ (MC regime/envelope) Excludes runtime caches, logs, backups, and reproducible artifacts per .gitignore.
19 KiB
Executable File
AGENT TASK: Fix nautilus_event_trader.py — Wire NDAlphaEngine to Live Hazelcast Feed
File to rewrite: /mnt/dolphinng5_predict/prod/nautilus_event_trader.py
Python env: /home/dolphin/siloqy_env/bin/python3 (always use this, never bare python3)
Working dir: /mnt/dolphinng5_predict/prod/
1. Background — What This System Is
DOLPHIN is a SHORT-only systematic crypto trading system running on Binance perpetual
futures. The signal source is a Windows C++ eigenvalue scanner (NG5) that runs every 5
seconds, computing multi-window correlation eigenvalue decompositions across 50 crypto
assets. Those scans are written as Apache Arrow IPC files to a Windows SMB share, then
bridged to Hazelcast by scan_bridge_service.py running on Linux.
The live trading daemon (nautilus_event_trader.py) listens to Hazelcast for new scans
and must route them through the REAL NDAlphaEngine trading core to decide whether to
enter/exit positions. The current file is a stub — it uses a placeholder signal
field that doesn't exist in the scan data, allows LONG direction (the system is
SHORT-only), and never touches NDAlphaEngine.
2. Data Schema You Will Receive
Every scan in DOLPHIN_FEATURES["latest_eigen_scan"] is a JSON dict with these fields
(confirmed from live Arrow scans, schema_version=5.0.0):
{
# Eigenvalue / velocity fields
"scan_number": int, # monotonically increasing (resets on NG5 restart)
"timestamp_iso": str, # "2026-03-25T14:27:25.143712" (Windows local time)
"timestamp_ns": int, # nanoseconds epoch
"schema_version": str, # "5.0.0"
"w50_lambda_max": float, # dominant eigenvalue, 50-bar window
"w50_velocity": float, # dλ/dt, 50-bar window ← v50_vel arg to step_bar
"w50_rotation": float,
"w50_instability": float,
"w150_lambda_max": float,
"w150_velocity": float,
"w150_rotation": float,
"w150_instability": float,
"w300_lambda_max": float,
"w300_velocity": float,
"w300_rotation": float,
"w300_instability": float,
"w750_lambda_max": float,
"w750_velocity": float, # ← v750_vel arg to step_bar
"w750_rotation": float,
"w750_instability": float,
"vel_div": float, # = w50_velocity - w750_velocity
# THIS IS THE PRIMARY ENTRY GATE
# Entry threshold: < -0.02
# Extreme threshold: < -0.05
"regime_signal": int, # -1 (short bias), 0 (neutral), +1 (long bias)
"instability_composite": float,
# Asset data (JSON strings in Arrow, already parsed to Python by scan_bridge)
"assets": list, # list of 50 asset names e.g. ["BTCUSDT", ...]
"asset_prices": list, # list of 50 current prices (same order as assets)
"asset_loadings": list, # eigenvector loadings per asset
"data_quality_score": float, # 1.0 = all good
"missing_asset_count": int, # 0 = all assets present
# Added by scan_bridge
"bridge_ts": str, # UTC ISO timestamp when bridged
"file_mtime": float, # file modification time
}
Critical: The field scan.get('signal', 0) used in the current stub does NOT
exist in real scan data. The real signal is scan['vel_div'].
3. NDAlphaEngine — How to Use It
3a. Engine Construction (do this ONCE at startup, not per scan)
import sys
sys.path.insert(0, '/mnt/dolphinng5_predict')
sys.path.insert(0, '/mnt/dolphinng5_predict/nautilus_dolphin')
from nautilus_dolphin.nautilus.proxy_boost_engine import create_d_liq_engine
from nautilus_dolphin.nautilus.adaptive_circuit_breaker import AdaptiveCircuitBreaker
from nautilus_dolphin.nautilus.ob_features import OBFeatureEngine
from nautilus_dolphin.nautilus.ob_provider import MockOBProvider
# Champion engine config — FROZEN, do not change these values
ENGINE_KWARGS = dict(
initial_capital=25000.0, # starting paper capital
vel_div_threshold=-0.02, # entry gate
vel_div_extreme=-0.05, # extreme regime
min_leverage=0.5, max_leverage=5.0, leverage_convexity=3.0,
fraction=0.20, fixed_tp_pct=0.0095, stop_pct=1.0, max_hold_bars=120,
use_direction_confirm=True, dc_lookback_bars=7, dc_min_magnitude_bps=0.75,
dc_skip_contradicts=True, dc_leverage_boost=1.0, dc_leverage_reduce=0.5,
use_asset_selection=True, min_irp_alignment=0.45,
use_sp_fees=True, use_sp_slippage=True,
sp_maker_entry_rate=0.62, sp_maker_exit_rate=0.50,
use_ob_edge=True, ob_edge_bps=5.0, ob_confirm_rate=0.40,
lookback=100, use_alpha_layers=True, use_dynamic_leverage=True, seed=42,
)
eng = create_d_liq_engine(**ENGINE_KWARGS)
# eng is a LiquidationGuardEngine (subclass of NDAlphaEngine)
# eng.base_max_leverage = 8.0, eng.abs_max_leverage = 9.0 (D_LIQ gold spec)
3b. OBF Setup (mock for prototype — real OBF can be wired later)
# Mock OB provider with gold-spec asset biases
ASSETS_50 = [] # populate from first scan's scan['assets'] list
mock_ob = MockOBProvider(
imbalance_bias=-0.09, depth_scale=1.0, assets=ASSETS_50,
imbalance_biases={
'BTCUSDT': -0.086, 'ETHUSDT': -0.092,
'BNBUSDT': +0.05, 'SOLUSDT': +0.05,
},
)
ob_eng = OBFeatureEngine(mock_ob)
ob_eng.preload_date('mock', ASSETS_50)
eng.set_ob_engine(ob_eng)
3c. ACBv6 Setup (optional but important for dynamic leverage)
# ACB uses the eigenvalues dir on SMB
EIGEN_DIR = '/mnt/dolphinng6_data/eigenvalues'
from pathlib import Path
date_strings = sorted([d.name for d in Path(EIGEN_DIR).iterdir() if d.is_dir()])
acb = AdaptiveCircuitBreaker()
try:
acb.preload_w750(date_strings)
eng.set_acb(acb)
logger.info("ACBv6 loaded")
except Exception as e:
logger.warning(f"ACB preload failed: {e} — running without")
3d. MC Forewarner Setup
MC_MODELS_DIR = '/mnt/dolphinng5_predict/nautilus_dolphin/mc_results/models'
MC_BASE_CFG = {
'trial_id': 0, 'vel_div_threshold': -0.020, 'vel_div_extreme': -0.050,
'use_direction_confirm': True, 'dc_lookback_bars': 7,
'dc_min_magnitude_bps': 0.75, 'dc_skip_contradicts': True,
'dc_leverage_boost': 1.00, 'dc_leverage_reduce': 0.50,
'vd_trend_lookback': 10, 'min_leverage': 0.50, 'max_leverage': 5.00,
'leverage_convexity': 3.00, 'fraction': 0.20, 'use_alpha_layers': True,
'use_dynamic_leverage': True, 'fixed_tp_pct': 0.0095, 'stop_pct': 1.00,
'max_hold_bars': 120, 'use_sp_fees': True, 'use_sp_slippage': True,
'sp_maker_entry_rate': 0.62, 'sp_maker_exit_rate': 0.50,
'use_ob_edge': True, 'ob_edge_bps': 5.00, 'ob_confirm_rate': 0.40,
'ob_imbalance_bias': -0.09, 'ob_depth_scale': 1.00,
'use_asset_selection': True, 'min_irp_alignment': 0.45, 'lookback': 100,
'acb_beta_high': 0.80, 'acb_beta_low': 0.20, 'acb_w750_threshold_pct': 60,
}
from pathlib import Path
if Path(MC_MODELS_DIR).exists():
from mc.mc_ml import DolphinForewarner
forewarner = DolphinForewarner(models_dir=MC_MODELS_DIR)
eng.set_mc_forewarner(forewarner, MC_BASE_CFG)
3e. begin_day() — Must be called at start of each trading day
The engine must be initialised for the current date before any step_bar() calls.
In live mode, call this once per UTC calendar day:
today = datetime.now(timezone.utc).strftime('%Y-%m-%d')
eng.begin_day(today, posture='APEX')
# posture can come from DOLPHIN_SAFETY HZ map key 'posture'
3f. step_bar() — Called on every scan
This is the heart of the rewrite. For each incoming scan:
result = eng.step_bar(
bar_idx=bar_counter, # increment by 1 per scan
vel_div=scan['vel_div'], # PRIMARY SIGNAL — float
prices=prices_dict, # dict: {"BTCUSDT": 84000.0, "ETHUSDT": 2100.0, ...}
vol_regime_ok=vol_ok, # bool — see §4 for how to compute
v50_vel=scan['w50_velocity'], # float
v750_vel=scan['w750_velocity'] # float
)
# result['entry'] is not None → a new trade was opened
# result['exit'] is not None → an open trade was closed
Building prices_dict from scan:
prices_dict = dict(zip(scan['assets'], scan['asset_prices']))
# e.g. {"BTCUSDT": 84230.5, "ETHUSDT": 2143.2, ...}
4. vol_regime_ok — How to Compute in Live Mode
In backtesting, vol_ok is computed from a rolling 50-bar std of BTC returns vs a
static threshold calibrated from the first 2 parquet files (vol_p60 ≈ 0.00026414).
In live mode, maintain a rolling buffer of BTC prices and compute it per scan:
from collections import deque
import numpy as np
BTC_VOL_WINDOW = 50
VOL_P60_THRESHOLD = 0.00026414 # gold calibration constant — do not change
btc_prices = deque(maxlen=BTC_VOL_WINDOW + 2)
def compute_vol_ok(scan: dict) -> bool:
"""Return True if current BTC vol regime exceeds gold threshold."""
prices = dict(zip(scan.get('assets', []), scan.get('asset_prices', [])))
btc_price = prices.get('BTCUSDT')
if btc_price is None:
return True # fail open (don't gate on missing data)
btc_prices.append(btc_price)
if len(btc_prices) < BTC_VOL_WINDOW:
return True # not enough history yet — fail open
arr = np.array(btc_prices)
dvol = float(np.std(np.diff(arr) / arr[:-1]))
return dvol > VOL_P60_THRESHOLD
5. Day Rollover Handling
The engine must call begin_day() exactly once per UTC day. Track the current date and
call it when the date changes:
current_day = None
def maybe_rollover_day(eng, posture='APEX'):
global current_day
today = datetime.now(timezone.utc).strftime('%Y-%m-%d')
if today != current_day:
eng.begin_day(today, posture=posture)
current_day = today
logger.info(f"begin_day({today}) called")
6. Hazelcast Keys Reference
All keys are in the DOLPHIN_FEATURES map unless noted.
| Key | Map | Content |
|---|---|---|
latest_eigen_scan |
DOLPHIN_FEATURES |
Latest scan dict (see §2) |
exf_latest |
DOLPHIN_FEATURES |
External factors: funding rates, OI, etc. |
obf_latest |
DOLPHIN_FEATURES |
OBF consolidated features (may be empty if OBF daemon down) |
posture |
DOLPHIN_SAFETY |
String: APEX / CAUTION / TURTLE / HIBERNATE |
latest_trade |
DOLPHIN_PNL_BLUE |
Last trade record written by trader |
Important: The Hazelcast entry listener callback does NOT safely give you
event.client — this is unreliable. Instead, create ONE persistent hz_client at
startup and reuse it throughout. Pass the map reference into the callback via closure
or class attribute.
7. What the Rewritten File Must Do
Replace the entire compute_signal() and execute_trade() functions. The new
architecture is:
Startup:
1. Create NDAlphaEngine (create_d_liq_engine)
2. Wire OBF (MockOBProvider)
3. Wire ACBv6 (preload from eigenvalues dir)
4. Wire MC Forewarner
5. call begin_day() for today
6. Connect Hz client (single persistent connection)
7. Register entry listener on DOLPHIN_FEATURES['latest_eigen_scan']
Per scan (on_scan_update callback):
1. Deserialise scan JSON
2. Deduplicate by scan_number (skip if <= last_scan_number)
3. Call maybe_rollover_day() — handles midnight seamlessly
4. Build prices_dict from scan['assets'] + scan['asset_prices']
5. compute vol_ok via rolling BTC vol buffer
6. Read posture from Hz DOLPHIN_SAFETY (cached, refresh every ~60s)
7. Call eng.step_bar(bar_idx, vel_div, prices_dict, vol_ok, v50_vel, v750_vel)
8. Inspect result:
- result['entry'] is not None → log trade entry to DOLPHIN_PNL_BLUE
- result['exit'] is not None → log trade exit + PnL to DOLPHIN_PNL_BLUE
9. Push engine state snapshot to Hz:
DOLPHIN_STATE_BLUE['engine_snapshot'] = {
capital, open_positions, last_scan, vel_div, vol_ok, posture, ...
}
10. Log summary line to stdout + TRADE_LOG
Shutdown (SIGTERM / SIGINT):
- Call eng.end_day() to get daily summary
- Push final state to Hz
- Disconnect Hz client cleanly
8. Critical Invariants — Do NOT Violate
-
SHORT-ONLY system.
eng.regime_directionis always-1. Never passdirection=1tobegin_day(). Never allow LONG trades. -
No
set_esoteric_hazard_multiplier()call. This is the gold path — calling it would reducebase_max_leveragefrom 8.0 to 6.0 (incorrect). Leave it uncalled. -
Never call
eng.process_day(). That function is for batch backtesting (reads a full parquet). In live mode, usebegin_day()+step_bar()per scan. -
bar_idxmust be a simple incrementing integer (0, 1, 2, ...) reset to 0 at eachbegin_day()call, or kept global across days — either works. Do NOT use scan_number as bar_idx (scan_number resets on NG5 restart). -
Thread safety: The Hz listener fires in a background thread. The engine is NOT thread-safe. Use a
threading.Lock()around alleng.step_bar()calls. -
Keep the Hz client persistent. Creating a new
HazelcastClientper scan is slow and leaks connections. One client at startup, reused throughout.
9. File Structure for the Rewrite
nautilus_event_trader.py
├── Imports + sys.path setup
├── Constants (HZ keys, paths, ENGINE_KWARGS, MC_BASE_CFG, VOL_P60_THRESHOLD)
├── class DolphinLiveTrader:
│ ├── __init__(self) → creates engine, wires OBF/ACB/MC, inits state
│ ├── _build_engine(self) → create_d_liq_engine + wire sub-systems
│ ├── _connect_hz(self) → single persistent HazelcastClient
│ ├── _read_posture(self) → cached read from DOLPHIN_SAFETY
│ ├── _rollover_day(self) → call eng.begin_day() when date changes
│ ├── _compute_vol_ok(self, scan) → rolling BTC vol vs VOL_P60_THRESHOLD
│ ├── on_scan(self, event) → main callback (deduplicate, step_bar, log)
│ ├── _log_trade(self, result) → push to DOLPHIN_PNL_BLUE
│ ├── _push_state(self) → push engine snapshot to DOLPHIN_STATE_BLUE
│ └── run(self) → register Hz listener, keep-alive loop
└── main() → instantiate DolphinLiveTrader, call run()
10. Testing Instructions
Test A — Dry-run against live Hz data (no trades)
# First, check live data is flowing:
/home/dolphin/siloqy_env/bin/python3 - << 'EOF'
import hazelcast, json
hz = hazelcast.HazelcastClient(cluster_name="dolphin", cluster_members=["127.0.0.1:5701"])
m = hz.get_map("DOLPHIN_FEATURES").blocking()
s = json.loads(m.get("latest_eigen_scan"))
print(f"scan_number={s['scan_number']} vel_div={s['vel_div']:.4f} assets={len(s['assets'])}")
hz.shutdown()
EOF
# Run the trader in dry-run mode (add DRY_RUN=True flag to skip Hz writes):
DRY_RUN=true /home/dolphin/siloqy_env/bin/python3 /mnt/dolphinng5_predict/prod/nautilus_event_trader.py
Expected output per scan:
[2026-03-25T14:32:00+00:00] Scan #52 vel_div=-0.0205 vol_ok=True posture=APEX
[2026-03-25T14:32:00+00:00] step_bar → entry=None exit=None capital=$25000.00
When vel_div drops below -0.02 and vol_ok=True:
[2026-03-25T14:32:10+00:00] Scan #55 vel_div=-0.0312 vol_ok=True posture=APEX
[2026-03-25T14:32:10+00:00] step_bar → ENTRY SHORT BTCUSDT @ 84230.5 leverage=3.2x
Test B — Verify engine state after 10 scans
/home/dolphin/siloqy_env/bin/python3 - << 'EOF'
import hazelcast, json
hz = hazelcast.HazelcastClient(cluster_name="dolphin", cluster_members=["127.0.0.1:5701"])
snap = hz.get_map("DOLPHIN_STATE_BLUE").blocking().get("engine_snapshot")
if snap:
s = json.loads(snap)
print(f"capital={s.get('capital')} open_pos={s.get('open_positions')} scans={s.get('scan_count')}")
else:
print("No snapshot yet")
hz.shutdown()
EOF
Test C — Verify SHORT-only invariant
After running for a few minutes, check the trade log:
grep "direction" /tmp/nautilus_event_trader.log | grep -v SHORT
# Should return ZERO lines. Any LONG trade is a bug.
Test D — Simulate NG5 restart (scan_number reset)
NG5 restarts produce a spike vel_div = -18.92 followed by scan_number resetting to a low value. The deduplication logic must handle this:
# The dedup check must use mtime (file_mtime) NOT scan_number alone,
# because scan_number resets. Use the bridge_ts or file_mtime as the
# true monotonic ordering. Refer to scan_bridge_service.py's handler.last_mtime
# for the same pattern.
After a restart, the first scan's vel_div will be a large negative spike (-18.92 seen in historical data). The engine should see this as a potential entry signal — this is acceptable behaviour for a prototype. A production fix would add a restart-detection filter, but that is OUT OF SCOPE for this prototype.
Test E — systemd service restart
systemctl restart dolphin-nautilus-trader
sleep 5
systemctl status dolphin-nautilus-trader
journalctl -u dolphin-nautilus-trader --no-pager -n 20
The service unit is at /etc/systemd/system/dolphin-nautilus-trader.service.
After rewriting the file, restart the service to pick up the change.
11. Out of Scope for This Prototype
- Real Nautilus order submission (BTCUSD FX instrument mock is acceptable)
- Live Binance fills or execution feedback
- OBF live streaming (MockOBProvider is fine)
- ExtF integration (ignore
exf_latestfor now — the engine works without it) - Position sizing beyond what NDAlphaEngine does internally
The goal of this prototype is: real vel_div → real NDAlphaEngine → real trade decisions logged to Hazelcast. The path from signal to engine must be correct.
12. Key File Locations
| File | Purpose |
|---|---|
/mnt/dolphinng5_predict/prod/nautilus_event_trader.py |
File to rewrite |
/mnt/dolphinng5_predict/nautilus_dolphin/nautilus_dolphin/nautilus/esf_alpha_orchestrator.py |
NDAlphaEngine source (step_bar line 241, begin_day line 793) |
/mnt/dolphinng5_predict/nautilus_dolphin/nautilus_dolphin/nautilus/proxy_boost_engine.py |
create_d_liq_engine factory (line 443) |
/mnt/dolphinng5_predict/nautilus_dolphin/nautilus_dolphin/nautilus/adaptive_circuit_breaker.py |
ACBv6 (preload_w750 line 336) |
/mnt/dolphinng5_predict/nautilus_dolphin/nautilus_dolphin/nautilus/ob_features.py |
OBFeatureEngine |
/mnt/dolphinng5_predict/nautilus_dolphin/nautilus_dolphin/nautilus/ob_provider.py |
MockOBProvider |
/mnt/dolphinng5_predict/nautilus_dolphin/mc/mc_ml.py |
DolphinForewarner |
/mnt/dolphinng5_predict/prod/vbt_nautilus_56day_backtest.py |
Reference implementation — same engine wiring pattern |
/mnt/dolphinng6_data/arrow_scans/ |
Live Arrow scan files from NG5 (SMB mount) |
/mnt/dolphinng6_data/eigenvalues/ |
Historical eigenvalue data for ACB preload |
/etc/systemd/system/dolphin-nautilus-trader.service |
systemd unit — restart after changes |