355 lines
13 KiB
Python
355 lines
13 KiB
Python
"""Tests for velocity-score service (#34 D2).
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Mock-based — не требуют живой БД.
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Источник данных — objective_corpus_room_month (мигрировано с domrf_kn_sale_graph).
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Mock shape совместим: sales query возвращает aliases (obj_id, total_sqm,
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months_with_data, period_start, period_end, has_mapping) через LEFT JOIN
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all_competitors + mapped (OBJ-2: ALL competitors included, unmapped has_mapping=False).
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Третий вызов execute — bucket_rows (obj_id, room_bucket, units_sold, sqm_sold).
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"""
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from __future__ import annotations
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import datetime
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from unittest.mock import MagicMock, patch
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import pytest
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from app.services.site_finder.velocity import (
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_EKB_MEDIAN_FALLBACK_SQM_PER_MONTH,
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VelocityResult,
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compute_velocity,
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)
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# Тестовый WKT — небольшой квадрат в центре ЕКБ.
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_PARCEL_WKT = "POINT(60.605 56.838)"
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# ── Вспомогательные фабрики mock-строк ────────────────────────────────────────
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def _comp_row(obj_id: int, distance_m: float = 500.0) -> MagicMock:
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r = MagicMock()
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r.__getitem__ = lambda self, k: {
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"obj_id": obj_id,
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"comm_name": f"ЖК-{obj_id}",
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"dev_name": "TestDev",
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"obj_class": "комфорт",
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"district_name": "Ленинский",
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"distance_m": distance_m,
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}[k]
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return r
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def _sales_row(
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obj_id: int,
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total_sqm: float,
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months: int,
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start: str = "2024-11-01",
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end: str = "2025-04-01",
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has_mapping: bool = True,
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) -> MagicMock:
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r = MagicMock()
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start_d = datetime.date.fromisoformat(start)
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end_d = datetime.date.fromisoformat(end)
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r.__getitem__ = lambda self, k: {
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"obj_id": obj_id,
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"total_sqm": total_sqm,
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"months_with_data": months,
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"period_start": start_d,
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"period_end": end_d,
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# OBJ-2: LEFT JOIN all_competitors — все конкуренты включены,
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# has_mapping=True если есть маппинг в objective_complex_mapping.
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"has_mapping": has_mapping,
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}[k]
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return r
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def _bucket_row(obj_id: int, room_bucket: str, units_sold: int, sqm_sold: float) -> MagicMock:
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r = MagicMock()
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r.__getitem__ = lambda self, k: {
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"obj_id": obj_id,
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"room_bucket": room_bucket,
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"units_sold": units_sold,
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"sqm_sold": sqm_sold,
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}[k]
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return r
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def _make_db(
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comp_rows: list,
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sales_rows: list,
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bucket_rows: list | None = None,
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) -> MagicMock:
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"""Сконструировать mock Session с тремя последовательными вызовами execute.
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Порядок: comp_rows → sales_rows → bucket_rows.
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bucket_rows=None → пустой список (bucket query gracefully degraded).
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"""
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db = MagicMock()
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execute_results = []
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for rows in [comp_rows, sales_rows, bucket_rows if bucket_rows is not None else []]:
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result = MagicMock()
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result.mappings.return_value.all.return_value = rows
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execute_results.append(result)
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db.execute.side_effect = execute_results
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return db
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# ── Тесты ─────────────────────────────────────────────────────────────────────
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def test_no_competitors_returns_none():
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"""Нет ЖК в радиусе → None."""
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db = _make_db(comp_rows=[], sales_rows=[])
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result = compute_velocity(db, parcel_geom_wkt=_PARCEL_WKT)
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assert result is None
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def test_no_sales_data_returns_none():
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"""ЖК есть, но нет данных objective_corpus_room_month → None."""
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comp_rows = [_comp_row(1), _comp_row(2)]
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db = _make_db(comp_rows=comp_rows, sales_rows=[])
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result = compute_velocity(db, parcel_geom_wkt=_PARCEL_WKT)
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assert result is None
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def test_healthy_sales_returns_result():
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"""12 конкурентов с нормальными продажами → score в (0,1), confidence='high'."""
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n = 12
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comp_rows = [_comp_row(i, distance_m=300.0 + i * 100) for i in range(1, n + 1)]
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# Каждый ЖК продаёт 4500 м² за 6 мес → 750 м²/мес. Суммарно: 4500*12 = 54000 за 6 мес.
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sales_rows = [_sales_row(i, total_sqm=4500.0, months=6) for i in range(1, n + 1)]
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db = _make_db(comp_rows=comp_rows, sales_rows=sales_rows)
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with patch(
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"app.services.site_finder.velocity._get_ekb_median",
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return_value=_EKB_MEDIAN_FALLBACK_SQM_PER_MONTH,
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):
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result = compute_velocity(db, parcel_geom_wkt=_PARCEL_WKT)
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assert result is not None
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assert result.competitors_count == n
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assert 0.0 < result.velocity_score <= 1.0
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assert result.confidence == "high"
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assert result.months_observed == 6
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def test_few_competitors_low_confidence():
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"""2 конкурента → confidence='low'."""
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comp_rows = [_comp_row(1), _comp_row(2)]
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sales_rows = [_sales_row(1, total_sqm=3000.0, months=2)]
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db = _make_db(comp_rows=comp_rows, sales_rows=sales_rows)
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with patch(
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"app.services.site_finder.velocity._get_ekb_median",
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return_value=_EKB_MEDIAN_FALLBACK_SQM_PER_MONTH,
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):
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result = compute_velocity(db, parcel_geom_wkt=_PARCEL_WKT)
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assert result is not None
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assert result.confidence == "low"
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def test_medium_confidence():
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"""7 конкурентов, 4 месяца → confidence='medium'."""
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n = 7
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comp_rows = [_comp_row(i) for i in range(1, n + 1)]
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sales_rows = [_sales_row(i, total_sqm=4000.0, months=4) for i in range(1, n + 1)]
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db = _make_db(comp_rows=comp_rows, sales_rows=sales_rows)
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with patch(
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"app.services.site_finder.velocity._get_ekb_median",
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return_value=_EKB_MEDIAN_FALLBACK_SQM_PER_MONTH,
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):
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result = compute_velocity(db, parcel_geom_wkt=_PARCEL_WKT)
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assert result is not None
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assert result.confidence == "medium"
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def test_ekb_median_fallback_used_when_none():
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"""Если _get_ekb_median вернул None — используется fallback-константа."""
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comp_rows = [_comp_row(1)]
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sales_rows = [_sales_row(1, total_sqm=9000.0, months=6)]
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db = _make_db(comp_rows=comp_rows, sales_rows=sales_rows)
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with patch("app.services.site_finder.velocity._get_ekb_median", return_value=None):
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result = compute_velocity(db, parcel_geom_wkt=_PARCEL_WKT)
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assert result is not None
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assert result.ekb_median_sqm == _EKB_MEDIAN_FALLBACK_SQM_PER_MONTH
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def test_score_capped_at_1():
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"""Огромный объём → score не превышает 1.0."""
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comp_rows = [_comp_row(1)]
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# 1 000 000 м² за месяц — абсурдно много
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sales_rows = [_sales_row(1, total_sqm=6_000_000.0, months=6)]
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db = _make_db(comp_rows=comp_rows, sales_rows=sales_rows)
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with patch(
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"app.services.site_finder.velocity._get_ekb_median",
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return_value=_EKB_MEDIAN_FALLBACK_SQM_PER_MONTH,
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):
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result = compute_velocity(db, parcel_geom_wkt=_PARCEL_WKT)
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assert result is not None
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assert result.velocity_score == pytest.approx(1.0)
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def test_score_zero_when_no_sales_sqm():
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"""total_sqm=0 → VelocityResult с velocity_data_available=False, score=0.
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OBJ-2: функция больше не возвращает None при нулевых продажах —
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возвращает «пустое» состояние (velocity_data_available=False, source='none').
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Rosreestr-fallback пропускается т.к. cad_quarter не передан.
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"""
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comp_rows = [_comp_row(1)]
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# total_sqm=0 — нет продаж → velocity_data_available=False
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sales_rows = [_sales_row(1, total_sqm=0.0, months=5)]
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db = _make_db(comp_rows=comp_rows, sales_rows=sales_rows)
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with patch(
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"app.services.site_finder.velocity._get_ekb_median",
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return_value=_EKB_MEDIAN_FALLBACK_SQM_PER_MONTH,
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):
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result = compute_velocity(db, parcel_geom_wkt=_PARCEL_WKT)
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assert result is not None
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assert result.velocity_data_available is False
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assert result.velocity_score == pytest.approx(0.0)
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assert result.velocity_source == "none"
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def test_as_dict_structure():
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"""as_dict() содержит все ожидаемые ключи, включая by_room_bucket."""
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vr = VelocityResult(
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competitors_count=5,
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monthly_velocity_sqm=3000.0,
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ekb_median_sqm=4500.0,
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velocity_score=0.333,
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confidence="medium",
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months_observed=4,
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period_start="2024-11",
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period_end="2025-02",
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sample_competitors=[],
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by_room_bucket={"1": {"units": 10, "sqm": 450.0, "complexes_count": 2}},
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velocity_data_available=True,
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velocity_source="objective",
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)
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d = vr.as_dict()
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assert "competitors_count" in d
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assert "velocity_score" in d
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assert "confidence" in d
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assert "period" in d
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assert d["period"]["start"] == "2024-11"
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assert d["period"]["end"] == "2025-02"
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assert d["velocity_score"] == pytest.approx(0.333, abs=1e-3)
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assert "by_room_bucket" in d
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assert d["by_room_bucket"]["1"]["units"] == 10
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# OBJ-2: новые поля velocity_data_available и velocity_source
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assert d["velocity_data_available"] is True
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assert d["velocity_source"] == "objective"
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def test_sample_competitors_top5():
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"""sample_competitors содержит не более 5 элементов, отсортированных по убыванию."""
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n = 8
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comp_rows = [_comp_row(i) for i in range(1, n + 1)]
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sales_rows = [_sales_row(i, total_sqm=float(i * 1000), months=5) for i in range(1, n + 1)]
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db = _make_db(comp_rows=comp_rows, sales_rows=sales_rows)
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with patch(
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"app.services.site_finder.velocity._get_ekb_median",
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return_value=_EKB_MEDIAN_FALLBACK_SQM_PER_MONTH,
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):
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result = compute_velocity(db, parcel_geom_wkt=_PARCEL_WKT)
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assert result is not None
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assert len(result.sample_competitors) <= 5
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sqms = [c["total_sqm_period"] for c in result.sample_competitors]
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assert sqms == sorted(sqms, reverse=True)
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def test_by_room_bucket_aggregation():
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"""by_room_bucket агрегирует units/sqm поверх всех конкурентов корректно."""
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comp_rows = [_comp_row(1), _comp_row(2)]
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sales_rows = [
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_sales_row(1, total_sqm=3000.0, months=3),
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_sales_row(2, total_sqm=2000.0, months=3),
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]
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bucket_rows = [
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_bucket_row(1, "студия", units_sold=38, sqm_sold=1520.0),
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_bucket_row(1, "1", units_sold=22, sqm_sold=990.0),
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_bucket_row(2, "студия", units_sold=18, sqm_sold=720.0),
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_bucket_row(2, "1", units_sold=13, sqm_sold=585.0),
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]
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db = _make_db(comp_rows=comp_rows, sales_rows=sales_rows, bucket_rows=bucket_rows)
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with patch(
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"app.services.site_finder.velocity._get_ekb_median",
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return_value=_EKB_MEDIAN_FALLBACK_SQM_PER_MONTH,
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):
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result = compute_velocity(db, parcel_geom_wkt=_PARCEL_WKT)
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assert result is not None
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assert "студия" in result.by_room_bucket
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assert "1" in result.by_room_bucket
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# студия: 38+18=56 units, complexes from obj 1 and 2
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assert result.by_room_bucket["студия"]["units"] == 56
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assert result.by_room_bucket["студия"]["complexes_count"] == 2
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# 1-к: 22+13=35 units
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assert result.by_room_bucket["1"]["units"] == 35
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# sqm rounded
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assert result.by_room_bucket["студия"]["sqm"] == pytest.approx(2240.0)
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def test_by_room_bucket_empty_when_no_bucket_data():
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"""Если bucket query вернул пустой список — by_room_bucket пустой dict."""
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comp_rows = [_comp_row(1)]
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sales_rows = [_sales_row(1, total_sqm=5000.0, months=5)]
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db = _make_db(comp_rows=comp_rows, sales_rows=sales_rows, bucket_rows=[])
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with patch(
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"app.services.site_finder.velocity._get_ekb_median",
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return_value=_EKB_MEDIAN_FALLBACK_SQM_PER_MONTH,
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):
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result = compute_velocity(db, parcel_geom_wkt=_PARCEL_WKT)
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assert result is not None
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assert result.by_room_bucket == {}
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def test_sample_competitors_include_by_room_bucket():
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"""sample_competitors каждого элемента содержит by_room_bucket."""
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comp_rows = [_comp_row(1), _comp_row(2)]
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sales_rows = [
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_sales_row(1, total_sqm=6000.0, months=4),
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_sales_row(2, total_sqm=4000.0, months=4),
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]
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bucket_rows = [
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_bucket_row(1, "2", units_sold=30, sqm_sold=1800.0),
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_bucket_row(2, "2", units_sold=20, sqm_sold=1200.0),
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]
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db = _make_db(comp_rows=comp_rows, sales_rows=sales_rows, bucket_rows=bucket_rows)
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with patch(
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"app.services.site_finder.velocity._get_ekb_median",
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return_value=_EKB_MEDIAN_FALLBACK_SQM_PER_MONTH,
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):
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result = compute_velocity(db, parcel_geom_wkt=_PARCEL_WKT)
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assert result is not None
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for comp in result.sample_competitors:
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assert "by_room_bucket" in comp
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# obj_id=1 had bucket data
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top = result.sample_competitors[0]
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assert top["obj_id"] == 1
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assert top["by_room_bucket"].get("2") == 30
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