528 lines
21 KiB
Python
528 lines
21 KiB
Python
import json
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import numpy as np
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import polars as pl
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import pytest
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import shapely
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from pyproj import Transformer
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from pipeline.transform.crime_spatial import transform_crime_spatial
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from pipeline.transform.postcode_boundaries.loader import load_postcode_polygons
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_TO_WGS84 = Transformer.from_crs("EPSG:27700", "EPSG:4326", always_xy=True)
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_CSV_HEADER = (
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"Crime ID,Month,Reported by,Falls within,Longitude,Latitude,Location,"
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"LSOA code,LSOA name,Crime type,Last outcome category,Context"
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)
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def _bng_to_wgs84(x: float, y: float) -> tuple[float, float]:
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lon, lat = _TO_WGS84.transform(x, y)
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return lon, lat
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def _square_feature(postcode: str, x0: float, y0: float, x1: float, y1: float) -> dict:
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ring = [(x0, y0), (x1, y0), (x1, y1), (x0, y1), (x0, y0)]
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coords = [list(_bng_to_wgs84(x, y)) for x, y in ring]
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return {
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"type": "Feature",
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"properties": {"postcodes": postcode, "mapit_code": postcode.replace(" ", "")},
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"geometry": {"type": "Polygon", "coordinates": [coords]},
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}
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def _write_boundaries(units_dir, features_by_district: dict[str, list[dict]]) -> None:
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units_dir.mkdir(parents=True)
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for district, features in features_by_district.items():
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collection = {"type": "FeatureCollection", "features": features}
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(units_dir / f"{district}.geojson").write_text(json.dumps(collection))
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def _crime_row(month: str, x, y, crime_type: str) -> str:
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if x is None or y is None:
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lon, lat = "", ""
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else:
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lon, lat = _bng_to_wgs84(x, y)
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return f",{month},F,F,{lon},{lat},On or near X,E01000001,L,{crime_type},U,"
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def _write_month(
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crime_dir, month: str, rows: list[str], force: str = "test-force"
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) -> None:
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"""Write one force's monthly CSV; an empty ``rows`` list still creates the
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file, which counts as published coverage for that (force, month)."""
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month_dir = crime_dir / month
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month_dir.mkdir(parents=True, exist_ok=True)
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body = "\n".join([_CSV_HEADER, *rows]) + "\n"
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(month_dir / f"{month}-{force}-street.csv").write_text(body)
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def _run(tmp_path, crime, units, **kwargs):
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output = tmp_path / "crime_by_postcode.parquet"
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by_year = tmp_path / "crime_by_postcode_by_year.parquet"
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transform_crime_spatial(crime, units, output, by_year, buffer_m=50.0, **kwargs)
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return pl.read_parquet(output), pl.read_parquet(by_year)
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def test_buffer_overlap_counts_for_each_postcode(tmp_path):
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units = tmp_path / "units"
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# A and B sit 70m apart; their +50m buffers overlap in x in [1030, 1060].
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_write_boundaries(
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units,
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{
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"AB1": [
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_square_feature("AB1 1AA", 1000, 1000, 1010, 1010),
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_square_feature("AB1 1AB", 1080, 1000, 1090, 1010),
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_square_feature("AB1 1AC", 5000, 5000, 5010, 5010),
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]
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},
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)
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crime = tmp_path / "crime"
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_write_month(
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crime,
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"2024-01",
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[
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# In the overlap: 35m east of A, 35m west of B -> counts for both.
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_crime_row("2024-01", 1045, 1005, "Burglary"),
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# 49m east of C's edge -> inside C's buffer.
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_crime_row("2024-01", 5059, 5005, "Robbery"),
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# 51m east of C's edge -> outside every buffer.
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_crime_row("2024-01", 5061, 5005, "Robbery"),
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# No coordinate -> dropped entirely.
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_crime_row("2024-01", None, None, "Anti-social behaviour"),
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],
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)
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avg_df, _ = _run(tmp_path, crime, units)
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rows = {r["postcode"]: r for r in avg_df.to_dicts()}
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# Single covered month -> pooled rate x12.
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assert rows["AB1 1AA"]["Burglary (avg/yr)"] == 12.0
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assert rows["AB1 1AB"]["Burglary (avg/yr)"] == 12.0
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assert rows["AB1 1AA"]["Robbery (avg/yr)"] == 0.0
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# Only the 49m robbery counts for C; the 51m one and the blank row do not.
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assert rows["AB1 1AC"]["Robbery (avg/yr)"] == 12.0
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assert rows["AB1 1AC"]["Burglary (avg/yr)"] == 0.0
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# Anti-social behaviour had no coordinate -> nobody gets it.
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assert all(r["Anti-social behaviour (avg/yr)"] == 0.0 for r in rows.values())
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def test_by_year_annualises_and_rolls_up(tmp_path):
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units = tmp_path / "units"
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_write_boundaries(
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units, {"AB1": [_square_feature("AB1 1AA", 1000, 1000, 1010, 1010)]}
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)
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crime = tmp_path / "crime"
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# Point at the centre of AB1 1AA, well inside its buffer.
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_write_month(
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crime,
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"2023-01",
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[
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_crime_row("2023-01", 1005, 1005, "Burglary"),
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_crime_row("2023-01", 1005, 1005, "Robbery"),
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],
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)
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_write_month(crime, "2024-01", [_crime_row("2024-01", 1005, 1005, "Burglary")])
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_write_month(
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crime,
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"2024-02",
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[
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_crime_row("2024-02", 1005, 1005, "Burglary"),
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_crime_row("2024-02", 1005, 1005, "Anti-social behaviour"),
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],
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)
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_, by_year_df = _run(tmp_path, crime, units, min_bar_months=1)
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assert by_year_df.height == 1
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cols = set(by_year_df.columns)
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assert {"Burglary (by year)", "Serious crime (by year)", "Minor crime (by year)"} <= cols
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row = by_year_df.row(0, named=True)
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burglary = sorted(row["Burglary (by year)"], key=lambda r: r["year"])
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# 2023: 1 burglary in 1 covered month -> 12/yr; 2024: 2 in 2 months -> 12/yr.
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assert burglary == [
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{"year": 2023, "count": 12.0},
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{"year": 2024, "count": 12.0},
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]
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serious = {p["year"]: p["count"] for p in row["Serious crime (by year)"]}
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# 2023 serious = Burglary(12) + Robbery(12) = 24; 2024 = Burglary(12).
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assert serious[2023] == 24.0
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assert serious[2024] == 12.0
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# Coverage calendar: both years published, with their month counts.
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coverage = {c["year"]: c["months"] for c in row["covered_years"]}
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assert coverage == {2023: 1, 2024: 2}
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def test_area_normalisation_divides_out_buffered_catchment(tmp_path):
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# Three postcodes of increasing footprint, each with exactly one incident in
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# its buffer. Normalisation rescales by median_catchment / buffered_area, so
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# the smallest scores highest and the median-sized one is unchanged -- i.e.
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# the metric is a density. Dividing by the *buffered* catchment (not the raw
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# polygon) means the fixed buffer-ring floor keeps the spread gentle, so the
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# tiniest postcode is not blown up out of proportion.
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units = tmp_path / "units"
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_write_boundaries(
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units,
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{
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"AB1": [
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_square_feature("AB1 1AA", 1000, 1000, 1010, 1010), # 10x10
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_square_feature("AB1 1AB", 3000, 3000, 3010, 3020), # 10x20 (median)
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_square_feature("AB1 1AC", 5000, 5000, 5020, 5020), # 20x20
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]
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},
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)
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crime = tmp_path / "crime"
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_write_month(
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crime,
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"2024-01",
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[
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_crime_row("2024-01", 1005, 1005, "Burglary"),
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_crime_row("2024-01", 3005, 3010, "Burglary"),
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_crime_row("2024-01", 5010, 5010, "Burglary"),
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],
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)
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avg_df, by_year_df = _run(tmp_path, crime, units, min_bar_months=1)
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# Re-derive the expected values from the same buffered catchment areas: each
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# postcode is 12/yr before normalisation, then x (median_buf / buffered_area).
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postcodes, polygons = load_postcode_polygons(units)
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buf_area = {
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pc: float(shapely.area(shapely.buffer(poly, 50.0, quad_segs=8)))
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for pc, poly in zip(postcodes, polygons)
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}
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median_buf = float(np.median(list(buf_area.values())))
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expected = {pc: 12.0 * median_buf / buf_area[pc] for pc in buf_area}
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rows = {r["postcode"]: r for r in avg_df.to_dicts()}
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for pc, exp in expected.items():
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assert rows[pc]["Burglary (avg/yr)"] == pytest.approx(exp, abs=0.1)
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# Median catchment unchanged; ordering is by inverse buffered area, but the
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# buffer-ring floor keeps the spread far below the ~4x raw-area ratio.
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assert rows["AB1 1AB"]["Burglary (avg/yr)"] == pytest.approx(12.0, abs=0.05)
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small = rows["AB1 1AA"]["Burglary (avg/yr)"]
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big = rows["AB1 1AC"]["Burglary (avg/yr)"]
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assert small > 12.0 > big
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assert small / big < 1.5
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# by-year series carries the same normalisation.
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small_row = by_year_df.filter(pl.col("postcode") == "AB1 1AA").row(0, named=True)
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assert small_row["Burglary (by year)"] == [
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{"year": 2024, "count": pytest.approx(expected["AB1 1AA"], abs=0.1)}
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]
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def test_avg_yr_is_pooled_rate_over_covered_months(tmp_path):
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# Uneven month coverage across years: 2023 has 1 month (2 incidents),
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# 2024 has 2 months (2 incidents). The headline is the POOLED annualised
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# rate over all covered months: 4 incidents / 3 months * 12 = 16/yr -- not
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# the old mean-of-bars (24+12)/2 = 18, which over-weighted thin years.
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units = tmp_path / "units"
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_write_boundaries(
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units, {"AB1": [_square_feature("AB1 1AA", 1000, 1000, 1010, 1010)]}
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)
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crime = tmp_path / "crime"
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_write_month(
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crime,
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"2023-01",
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[
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_crime_row("2023-01", 1005, 1005, "Burglary"),
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_crime_row("2023-01", 1005, 1005, "Burglary"),
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],
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)
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_write_month(crime, "2024-01", [_crime_row("2024-01", 1005, 1005, "Burglary")])
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_write_month(crime, "2024-02", [_crime_row("2024-02", 1005, 1005, "Burglary")])
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avg_df, by_year_df = _run(tmp_path, crime, units, min_bar_months=1)
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avg = avg_df.row(0, named=True)
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assert avg["Burglary (avg/yr)"] == pytest.approx(16.0, abs=0.05)
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# Bars remain per-year annualised: 2023 -> 24/yr (x12), 2024 -> 12/yr (x6).
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row = by_year_df.row(0, named=True)
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bars = {p["year"]: p["count"] for p in row["Burglary (by year)"]}
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assert bars == {2023: pytest.approx(24.0, abs=0.05), 2024: pytest.approx(12.0, abs=0.05)}
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def test_sporadic_type_is_not_inflated_by_years_present(tmp_path):
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# A single robbery in a 24-covered-month window must read as ~0.5/yr (the
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# long-run pooled rate), NOT 12/yr (the old years-with-incidents mean that
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# inflated sporadic categories by up to ~15x).
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units = tmp_path / "units"
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_write_boundaries(
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units, {"AB1": [_square_feature("AB1 1AA", 1000, 1000, 1010, 1010)]}
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)
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crime = tmp_path / "crime"
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for year in (2023, 2024):
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for month in range(1, 13):
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rows = []
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if (year, month) == (2023, 6):
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rows = [_crime_row(f"{year}-{month:02d}", 1005, 1005, "Robbery")]
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_write_month(crime, f"{year}-{month:02d}", rows)
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avg_df, by_year_df = _run(tmp_path, crime, units)
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avg = avg_df.row(0, named=True)
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# 1 incident over 24 covered months -> 0.5/yr.
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assert avg["Robbery (avg/yr)"] == pytest.approx(0.5, abs=0.05)
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# The by-year bar still shows the 2023 incident annualised over 12 covered
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# months (1/yr); 2024 is covered with zero robberies -> no bar, but the
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# year IS in the coverage list so consumers may render it as a true zero.
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row = by_year_df.row(0, named=True)
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bars = {p["year"]: p["count"] for p in row["Robbery (by year)"]}
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assert bars == {2023: pytest.approx(1.0, abs=0.05)}
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coverage = {c["year"]: c["months"] for c in row["covered_years"]}
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assert coverage == {2023: 12, 2024: 12}
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def test_force_gap_years_are_excluded_not_zeroed(tmp_path):
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# Two postcodes policed by different forces. force-a publishes 2023+2024;
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# force-b publishes only 2023 (a 2024 gap, like Greater Manchester). The
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# b-postcode's headline must pool over force-b's 12 covered months only,
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# and its by-year series must NOT contain a 2024 bar or coverage entry.
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units = tmp_path / "units"
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_write_boundaries(
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units,
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{
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"AB1": [_square_feature("AB1 1AA", 1000, 1000, 1010, 1010)],
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"CD1": [_square_feature("CD1 1AA", 9000, 9000, 9010, 9010)],
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},
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)
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crime = tmp_path / "crime"
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for month in range(1, 13):
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ym23 = f"2023-{month:02d}"
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ym24 = f"2024-{month:02d}"
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# force-a covers AB1 in both years; one burglary per month in 2024.
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_write_month(crime, ym23, [], force="force-a")
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_write_month(
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crime, ym24, [_crime_row(ym24, 1005, 1005, "Burglary")], force="force-a"
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)
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# force-b covers CD1 in 2023 only: one burglary per month.
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_write_month(
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crime, ym23, [_crime_row(ym23, 9005, 9005, "Burglary")], force="force-b"
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)
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avg_df, by_year_df = _run(tmp_path, crime, units)
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rows = {r["postcode"]: r for r in avg_df.to_dicts()}
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# force-a postcode: 12 burglaries over 24 covered months -> 6/yr.
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assert rows["AB1 1AA"]["Burglary (avg/yr)"] == pytest.approx(6.0, abs=0.05)
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# force-b postcode: 12 burglaries over 12 covered months -> 12/yr. Under
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# the old global calendar this would have been diluted to 6/yr by the
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# uncovered 2024.
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assert rows["CD1 1AA"]["Burglary (avg/yr)"] == pytest.approx(12.0, abs=0.05)
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by_rows = {r["postcode"]: r for r in by_year_df.to_dicts()}
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b_coverage = {c["year"]: c["months"] for c in by_rows["CD1 1AA"]["covered_years"]}
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assert b_coverage == {2023: 12}
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b_bars = {p["year"]: p["count"] for p in by_rows["CD1 1AA"]["Burglary (by year)"]}
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assert set(b_bars) == {2023}
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a_coverage = {c["year"]: c["months"] for c in by_rows["AB1 1AA"]["covered_years"]}
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assert a_coverage == {2023: 12, 2024: 12}
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def test_residue_incidents_in_uncovered_years_are_excluded(tmp_path):
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# force-b stops publishing after 2023, but a force-a file contains a 2024
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# incident that falls inside the b-postcode's buffer (cross-border residue,
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# the Greater Manchester pattern). That incident must not produce a 2024
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# bar for the b-postcode, nor leak into its pooled headline.
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units = tmp_path / "units"
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_write_boundaries(
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units,
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{
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"AB1": [_square_feature("AB1 1AA", 1000, 1000, 1010, 1010)],
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"CD1": [_square_feature("CD1 1AA", 9000, 9000, 9010, 9010)],
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},
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)
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crime = tmp_path / "crime"
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for month in range(1, 13):
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ym23 = f"2023-{month:02d}"
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ym24 = f"2024-{month:02d}"
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_write_month(crime, ym23, [], force="force-a")
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# b's own 2023 incidents establish force-b as its home force.
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_write_month(
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crime,
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ym23,
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[_crime_row(ym23, 9005, 9005, "Burglary")] if month <= 6 else [],
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force="force-b",
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)
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# 2024: only force-a publishes; one of its incidents lands in CD1 1AA.
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_write_month(
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crime,
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ym24,
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[_crime_row(ym24, 9005, 9005, "Burglary")] if month == 1 else [],
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force="force-a",
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)
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avg_df, by_year_df = _run(tmp_path, crime, units)
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b_row = avg_df.filter(pl.col("postcode") == "CD1 1AA").row(0, named=True)
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# Pooled over force-b's 12 covered months (2023): 6 incidents -> 6/yr.
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# The residue 2024 incident is excluded (force-b published 0 months in 2024).
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assert b_row["Burglary (avg/yr)"] == pytest.approx(6.0, abs=0.05)
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b_by = by_year_df.filter(pl.col("postcode") == "CD1 1AA").row(0, named=True)
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bars = {p["year"]: p["count"] for p in b_by["Burglary (by year)"]}
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assert set(bars) == {2023}
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coverage = {c["year"]: c["months"] for c in b_by["covered_years"]}
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assert coverage == {2023: 12}
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def test_partial_years_below_min_bar_months_get_no_bar(tmp_path):
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# 2023 fully covered; 2024 has only 2 published months. With the default
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# 6-month minimum, 2024 must produce neither a bar (annualising x6 charts
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# noise) nor a coverage entry -- but its incidents and months still count
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# toward the pooled headline.
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units = tmp_path / "units"
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_write_boundaries(
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units, {"AB1": [_square_feature("AB1 1AA", 1000, 1000, 1010, 1010)]}
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)
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crime = tmp_path / "crime"
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for month in range(1, 13):
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ym = f"2023-{month:02d}"
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_write_month(crime, ym, [_crime_row(ym, 1005, 1005, "Burglary")])
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for month in (1, 2):
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ym = f"2024-{month:02d}"
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_write_month(crime, ym, [_crime_row(ym, 1005, 1005, "Burglary")])
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avg_df, by_year_df = _run(tmp_path, crime, units)
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# Pooled: 14 incidents over 14 covered months -> 12/yr.
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assert avg_df.row(0, named=True)["Burglary (avg/yr)"] == pytest.approx(
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12.0, abs=0.05
|
|
)
|
|
row = by_year_df.row(0, named=True)
|
|
bars = {p["year"]: p["count"] for p in row["Burglary (by year)"]}
|
|
assert set(bars) == {2023}
|
|
coverage = {c["year"]: c["months"] for c in row["covered_years"]}
|
|
assert coverage == {2023: 12}
|
|
|
|
|
|
def test_by_year_output_is_dense_with_coverage(tmp_path):
|
|
# A postcode with zero incidents still gets a by-year row carrying its
|
|
# coverage calendar, so "covered and crime-free" is distinguishable from
|
|
# "no data" downstream.
|
|
units = tmp_path / "units"
|
|
_write_boundaries(
|
|
units,
|
|
{
|
|
"AB1": [
|
|
_square_feature("AB1 1AA", 1000, 1000, 1010, 1010),
|
|
_square_feature("AB1 1AB", 5000, 5000, 5010, 5010),
|
|
]
|
|
},
|
|
)
|
|
|
|
crime = tmp_path / "crime"
|
|
_write_month(crime, "2024-01", [_crime_row("2024-01", 1005, 1005, "Burglary")])
|
|
|
|
avg_df, by_year_df = _run(tmp_path, crime, units, min_bar_months=1)
|
|
assert by_year_df.height == 2
|
|
|
|
quiet = by_year_df.filter(pl.col("postcode") == "AB1 1AB").row(0, named=True)
|
|
assert quiet["Burglary (by year)"] is None
|
|
assert [c["year"] for c in quiet["covered_years"]] == [2024]
|
|
# And the headline for the quiet postcode is a genuine 0, not null.
|
|
quiet_avg = avg_df.filter(pl.col("postcode") == "AB1 1AB").row(0, named=True)
|
|
assert quiet_avg["Burglary (avg/yr)"] == 0.0
|
|
|
|
|
|
def test_serious_rollup_avg_yr_equals_sum_of_components(tmp_path):
|
|
# Burglary only in 2014, Robbery only in 2024 (one incident each, 2 covered
|
|
# months total). Components pool over the same covered window (each
|
|
# 1 x 12 / 2 = 6/yr) and the rollup equals their sum.
|
|
units = tmp_path / "units"
|
|
_write_boundaries(
|
|
units, {"AB1": [_square_feature("AB1 1AA", 1000, 1000, 1010, 1010)]}
|
|
)
|
|
|
|
crime = tmp_path / "crime"
|
|
_write_month(crime, "2014-01", [_crime_row("2014-01", 1005, 1005, "Burglary")])
|
|
_write_month(crime, "2024-01", [_crime_row("2024-01", 1005, 1005, "Robbery")])
|
|
|
|
avg_df, by_year_df = _run(tmp_path, crime, units, min_bar_months=1)
|
|
|
|
avg = avg_df.row(0, named=True)
|
|
assert avg["Burglary (avg/yr)"] == pytest.approx(6.0, abs=0.05)
|
|
assert avg["Robbery (avg/yr)"] == pytest.approx(6.0, abs=0.05)
|
|
# Rollup == sum of its component (avg/yr) columns.
|
|
assert avg["Serious crime (avg/yr)"] == pytest.approx(12.0, abs=0.05)
|
|
assert avg["Serious crime (avg/yr)"] == pytest.approx(
|
|
avg["Burglary (avg/yr)"] + avg["Robbery (avg/yr)"], abs=0.05
|
|
)
|
|
|
|
# The by-year rollup series remains the per-year sum of the component bars.
|
|
serious_bars = {
|
|
p["year"]: p["count"]
|
|
for p in by_year_df.row(0, named=True)["Serious crime (by year)"]
|
|
}
|
|
assert serious_bars == {
|
|
2014: pytest.approx(12.0, abs=0.05),
|
|
2024: pytest.approx(12.0, abs=0.05),
|
|
}
|
|
|
|
|
|
def test_unknown_crime_type_is_dropped_with_warning(tmp_path, capsys):
|
|
units = tmp_path / "units"
|
|
_write_boundaries(
|
|
units, {"AB1": [_square_feature("AB1 1AA", 1000, 1000, 1010, 1010)]}
|
|
)
|
|
|
|
crime = tmp_path / "crime"
|
|
_write_month(
|
|
crime,
|
|
"2024-01",
|
|
[
|
|
_crime_row("2024-01", 1005, 1005, "Burglary"),
|
|
_crime_row("2024-01", 1005, 1005, "Cyber fraud"),
|
|
],
|
|
)
|
|
|
|
avg_df, _ = _run(tmp_path, crime, units)
|
|
columns = avg_df.columns
|
|
# The unknown type is dropped (no column for it) but a warning is emitted.
|
|
assert "Cyber fraud (avg/yr)" not in columns
|
|
assert "Burglary (avg/yr)" in columns
|
|
err = capsys.readouterr().err
|
|
assert "Cyber fraud" in err
|
|
assert "WARNING" in err
|
|
|
|
|
|
def test_legacy_crime_types_are_mapped(tmp_path):
|
|
"""Pre-2014 crime-type names are aliased to current equivalents in the
|
|
spatial transform instead of being dropped as unknown types."""
|
|
units = tmp_path / "units"
|
|
_write_boundaries(
|
|
units, {"AB1": [_square_feature("AB1 1AA", 1000, 1000, 1010, 1010)]}
|
|
)
|
|
|
|
crime = tmp_path / "crime"
|
|
_write_month(
|
|
crime,
|
|
"2013-01",
|
|
[
|
|
_crime_row("2013-01", 1005, 1005, "Violent crime"),
|
|
_crime_row("2013-01", 1005, 1005, "Public disorder and weapons"),
|
|
],
|
|
)
|
|
|
|
avg_df, by_year_df = _run(tmp_path, crime, units, min_bar_months=1)
|
|
row = avg_df.to_dicts()[0]
|
|
# Single postcode -> area-norm factor 1.0; single covered month -> x12.
|
|
assert row["Violence and sexual offences (avg/yr)"] == 12.0
|
|
assert row["Public order (avg/yr)"] == 12.0
|
|
|
|
by_year_row = by_year_df.row(0, named=True)
|
|
assert by_year_row["Violence and sexual offences (by year)"] == [
|
|
{"year": 2013, "count": 12.0}
|
|
]
|
|
assert by_year_row["Public order (by year)"] == [{"year": 2013, "count": 12.0}]
|