4d9db750be
- pyproject.toml: ruff target-version py311 → py313 (auto-fix 42 lint warnings via UP rules); aggiunto consider_namespace_packages = true che risolve la collisione conftest tra servizi e permette di lanciare pytest sull'intera suite cross-servizio. - mcp_common.audit: nuovo helper audit_write_op() con logger dedicato mcp.audit. Wirato su tutti i write endpoint di deribit, bybit, alpaca e hyperliquid (place_order, place_combo_order, cancel_*, set_*, close_*, transfer_*, switch_*, amend_*) con principal + target + payload non-sensibile + result summarizzato. - mcp_common.app_factory: ExchangeAppSpec + run_exchange_main() centralizza il boilerplate dei __main__.py (configure_root_logging, fail_fast_if_missing, summarize, load creds, resolve_environment, load token store, uvicorn). I 4 __main__.py exchange ridotti da ~60 LOC ognuno a ~25 LOC dichiarativi. mcp_common.env_validation promosso da mcp_deribit (mantenuto re-export shim per back-compat test_env_validation). - 8 test nuovi (4 audit + 4 app_factory). Suite full: 450/450 verdi. Co-Authored-By: Claude Opus 4.7 (1M context) <noreply@anthropic.com>
145 lines
4.9 KiB
Python
145 lines
4.9 KiB
Python
"""Test puri per mcp_common.options (logiche option-flow indipendenti
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dall'exchange).
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"""
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from __future__ import annotations
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import pytest
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from mcp_common.options import (
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atm_vs_wings_vol,
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dealer_gamma_profile,
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oi_weighted_skew,
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smile_asymmetry,
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vanna_charm_aggregate,
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)
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# ---------- oi_weighted_skew ----------
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def test_oi_weighted_skew_balanced():
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"""OI distribuito 50/50 calls/puts → skew vicino a 0."""
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legs = [
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{"iv": 0.5, "delta": 0.5, "oi": 100, "option_type": "call"},
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{"iv": 0.5, "delta": -0.5, "oi": 100, "option_type": "put"},
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]
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out = oi_weighted_skew(legs)
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assert abs(out["skew"]) < 0.01
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def test_oi_weighted_skew_put_heavy():
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"""Put heavy → IV media puts > IV media calls → skew positivo (put > call)."""
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legs = [
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{"iv": 0.4, "delta": 0.5, "oi": 50, "option_type": "call"},
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{"iv": 0.7, "delta": -0.5, "oi": 500, "option_type": "put"},
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]
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out = oi_weighted_skew(legs)
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assert out["skew"] > 0
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assert out["call_iv_weighted"] > 0
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assert out["put_iv_weighted"] > out["call_iv_weighted"]
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def test_oi_weighted_skew_empty():
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out = oi_weighted_skew([])
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assert out == {"skew": None, "call_iv_weighted": None, "put_iv_weighted": None, "total_oi": 0}
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# ---------- smile_asymmetry ----------
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def test_smile_asymmetry_symmetric():
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"""Smile simmetrico ATM → asymmetry ≈ 0."""
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legs = [
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{"strike": 80, "iv": 0.55, "option_type": "put"},
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{"strike": 90, "iv": 0.50, "option_type": "put"},
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{"strike": 100, "iv": 0.45, "option_type": "call"},
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{"strike": 110, "iv": 0.50, "option_type": "call"},
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{"strike": 120, "iv": 0.55, "option_type": "call"},
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]
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out = smile_asymmetry(legs, spot=100.0)
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assert out["atm_iv"] is not None
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assert abs(out["asymmetry"]) < 0.05
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def test_smile_asymmetry_put_skew():
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"""OTM puts (low strike) IV >> OTM calls (high strike) IV → asymmetry > 0."""
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legs = [
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{"strike": 80, "iv": 0.80, "option_type": "put"},
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{"strike": 100, "iv": 0.50, "option_type": "call"},
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{"strike": 120, "iv": 0.45, "option_type": "call"},
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]
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out = smile_asymmetry(legs, spot=100.0)
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assert out["asymmetry"] > 0.1
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def test_smile_asymmetry_no_atm():
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legs = [{"strike": 200, "iv": 0.5, "option_type": "call"}]
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out = smile_asymmetry(legs, spot=100.0)
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assert out["atm_iv"] is None
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# ---------- atm_vs_wings_vol ----------
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def test_atm_vs_wings_vol_basic():
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legs = [
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{"strike": 90, "iv": 0.55, "delta": -0.25, "option_type": "put"},
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{"strike": 100, "iv": 0.45, "delta": 0.5, "option_type": "call"},
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{"strike": 110, "iv": 0.50, "delta": 0.25, "option_type": "call"},
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]
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out = atm_vs_wings_vol(legs, spot=100.0)
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assert out["atm_iv"] == pytest.approx(0.45, rel=1e-3)
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assert out["wing_25d_call_iv"] == pytest.approx(0.50, rel=1e-3)
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assert out["wing_25d_put_iv"] == pytest.approx(0.55, rel=1e-3)
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# ATM<wings → richness positiva
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assert out["wing_richness"] > 0
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def test_atm_vs_wings_vol_no_data():
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out = atm_vs_wings_vol([], spot=100.0)
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assert out["atm_iv"] is None
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# ---------- dealer_gamma_profile ----------
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def test_dealer_gamma_profile_assumes_dealer_short_calls():
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"""Convention: dealer SHORT calls (sells calls to retail), LONG puts.
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Calls oi → negative dealer gamma, puts oi → positive dealer gamma.
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"""
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legs = [
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{"strike": 100, "gamma": 0.01, "oi": 1000, "option_type": "call"},
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{"strike": 100, "gamma": 0.01, "oi": 500, "option_type": "put"},
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]
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out = dealer_gamma_profile(legs, spot=100.0)
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# call gamma greater than put gamma at same strike → net dealer short gamma
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assert len(out["by_strike"]) == 1
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row = out["by_strike"][0]
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assert row["call_dealer_gamma"] < 0
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assert row["put_dealer_gamma"] > 0
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assert row["net_dealer_gamma"] < 0 # calls dominate
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assert out["total_net_dealer_gamma"] < 0
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def test_dealer_gamma_profile_empty():
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out = dealer_gamma_profile([], spot=100.0)
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assert out["by_strike"] == []
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assert out["total_net_dealer_gamma"] == 0.0
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# ---------- vanna_charm_aggregate ----------
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def test_vanna_charm_aggregate_basic():
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legs = [
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{"strike": 100, "vanna": 0.05, "charm": -0.001, "oi": 1000, "option_type": "call"},
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{"strike": 100, "vanna": -0.05, "charm": 0.001, "oi": 500, "option_type": "put"},
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]
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out = vanna_charm_aggregate(legs, spot=100.0)
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assert out["total_vanna"] != 0 # some net exposure
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assert "total_charm" in out
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assert out["legs_analyzed"] == 2
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def test_vanna_charm_aggregate_skip_missing_greeks():
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legs = [
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{"strike": 100, "vanna": None, "charm": -0.001, "oi": 1000, "option_type": "call"},
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{"strike": 100, "vanna": 0.05, "charm": None, "oi": 500, "option_type": "put"},
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]
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out = vanna_charm_aggregate(legs, spot=100.0)
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# entrambe le legs hanno almeno una greca None → skippate
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assert out["legs_analyzed"] == 0
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