323 lines
12 KiB
Python
323 lines
12 KiB
Python
import argparse
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import multiprocessing as mp
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import os
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from pathlib import Path
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import numpy as np
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import shapely
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from shapely.geometry import MultiPolygon, Polygon
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from tqdm import tqdm
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from .fragments_cache import (
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fragments_cache_is_fresh,
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load_fragments,
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save_fragments,
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)
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from .inspire import (
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build_inspire_index,
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cache_inspire,
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inspire_cache_exists,
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load_inspire,
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)
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from .memory import release_memory
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from .oa_boundaries import load_oa_boundaries
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from .output import merge_fragments, write_district_geojson
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from .process_oa import process_oa
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from .uprn import extract_uprn_arrays, get_oa_uprns_arrays, load_uprns
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Fragment = tuple[str, Polygon | MultiPolygon]
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def _oa_fragments(
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oa_code, oa_geoms, east, north, postcodes_arr, offsets, index
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) -> tuple[list[Fragment], bool]:
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"""Process one OA into ``(postcode, geometry)`` fragments.
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Returns ``(fragments, is_single)``; ``is_single`` flags the single-postcode
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fast path. Shared by the sequential and parallel drivers so both produce
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identical output. Any failure is re-raised tagged with the OA code so a single
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bad OA is attributable instead of an anonymous worker abort hours in.
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"""
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try:
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oa_geom = oa_geoms[oa_code]
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points, postcodes = get_oa_uprns_arrays(
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east, north, postcodes_arr, offsets, oa_code
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)
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if len(set(postcodes)) == 1:
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return [(postcodes[0], oa_geom)], True
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candidates = index.candidates(oa_geom.bounds)
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return process_oa(oa_geom, points, postcodes, candidates), False
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except Exception as exc:
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raise RuntimeError(f"Failed processing OA {oa_code}: {exc!r}") from exc
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# Worker-shared state. Populated in the parent before the pool forks; children
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# inherit it copy-on-write (the numpy/Arrow buffers + coords mmap stay shared,
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# never duplicated per worker). Read-only in workers.
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_WORKER_STATE: dict = {}
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def _process_oa_chunk(oa_codes: list[str]):
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"""Worker: turn a chunk of OA codes into WKB-encoded fragments.
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Geometries are returned as WKB (compact and lossless) rather than pickled
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Shapely objects, to keep the IPC payload small.
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"""
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state = _WORKER_STATE
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frags: list[Fragment] = []
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single = 0
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for oa_code in oa_codes:
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oa_frags, is_single = _oa_fragments(
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oa_code,
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state["oa_geoms"],
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state["east"],
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state["north"],
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state["postcodes"],
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state["offsets"],
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state["index"],
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)
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frags.extend(oa_frags)
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single += is_single
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if frags:
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pcs = [pc for pc, _ in frags]
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wkb = shapely.to_wkb(np.array([g for _, g in frags], dtype=object))
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else:
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pcs, wkb = [], np.empty(0, dtype=object)
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return pcs, wkb, single, len(oa_codes)
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def _resolve_workers(requested: int) -> int:
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"""Worker count: the explicit value if >0, otherwise all available CPUs."""
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if requested and requested > 0:
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return requested
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try:
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return max(1, len(os.sched_getaffinity(0)))
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except AttributeError:
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return max(1, os.cpu_count() or 1)
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def _process_oas(
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oa_codes, oa_geoms, east, north, postcodes_arr, offsets, index, workers
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) -> tuple[list[Fragment], int]:
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"""Drive Phase 3 over every OA, fanning out across `workers` processes.
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OAs are independent, so the loop parallelises cleanly. ``fork`` lets workers
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share the big read-only inputs (INSPIRE arrays + coords mmap, UPRN arrays, OA
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geometries) copy-on-write instead of duplicating ~2GB each. Fragment order
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does not affect the result (``merge_fragments`` unions per postcode), so
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chunks are collected as they finish. Returns ``(fragments, single_count)``.
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"""
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all_fragments: list[Fragment] = []
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single_count = 0
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if workers <= 1 or "fork" not in mp.get_all_start_methods():
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for oa_code in tqdm(
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oa_codes, desc="Processing OAs", unit="OA", smoothing=0.01, miniters=100
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):
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oa_frags, is_single = _oa_fragments(
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oa_code, oa_geoms, east, north, postcodes_arr, offsets, index
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)
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all_fragments.extend(oa_frags)
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single_count += is_single
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return all_fragments, single_count
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_WORKER_STATE.update(
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oa_geoms=oa_geoms,
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east=east,
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north=north,
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postcodes=postcodes_arr,
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offsets=offsets,
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index=index,
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)
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# Many small contiguous chunks → dynamic load balancing across workers (rural
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# OAs cost far more than urban ones) while preserving mmap read locality.
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chunk_size = max(1, len(oa_codes) // (workers * 16))
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chunks = [oa_codes[i : i + chunk_size] for i in range(0, len(oa_codes), chunk_size)]
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print(f" Parallel: {workers} workers, {len(chunks)} chunks of ~{chunk_size} OAs")
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ctx = mp.get_context("fork")
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try:
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with ctx.Pool(processes=workers) as pool:
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with tqdm(
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total=len(oa_codes), desc="Processing OAs", unit="OA", smoothing=0.01
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) as bar:
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for pcs, wkb, single, n_oas in pool.imap_unordered(
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_process_oa_chunk, chunks
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):
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if len(wkb):
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all_fragments.extend(zip(pcs, shapely.from_wkb(wkb)))
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single_count += single
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bar.update(n_oas)
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finally:
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# Drop references so Phase 4 doesn't keep the big inputs alive.
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_WORKER_STATE.clear()
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return all_fragments, single_count
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def build_fragments(args: argparse.Namespace) -> list[Fragment]:
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"""Run Phases 1-3: load data, parse INSPIRE, process every OA into fragments.
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Returns the full ``(postcode, geometry)`` fragment list. The large
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intermediate structures (OA/UPRN/INSPIRE arrays) are locals here, so they are
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freed as soon as this function returns -- before the fragments are cached or
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merged.
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"""
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# Phase 1: Load all data
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print("=" * 60)
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print("Phase 1: Loading data")
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print("=" * 60)
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oa_geoms = load_oa_boundaries(args.oa_boundaries)
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uprn_df, uprn_offsets = load_uprns(args.uprn, args.arcgis)
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# Convert UPRNs to fork-shareable numpy/Arrow arrays so parallel workers never
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# call polars (avoids the fork-after-threads hazard of its rayon pool).
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uprn_east, uprn_north, uprn_postcodes = extract_uprn_arrays(uprn_df)
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# Phase 2: Parse/load INSPIRE
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print()
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print("=" * 60)
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print("Phase 2: INSPIRE data")
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print("=" * 60)
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inspire_cache_dir = args.output / "inspire_cache"
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if not inspire_cache_exists(inspire_cache_dir):
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cache_inspire(args.inspire, inspire_cache_dir)
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inspire_bboxes, inspire_offsets, inspire_coords = load_inspire(inspire_cache_dir)
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inspire_index = build_inspire_index(inspire_bboxes, inspire_offsets, inspire_coords)
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# Phase 3: Process OAs
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print()
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print("=" * 60)
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print("Phase 3: Processing OAs")
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print("=" * 60)
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# Build work list — precompute which OAs are single vs multi-postcode
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oa_codes_with_data = sorted(set(oa_geoms.keys()) & set(uprn_offsets.keys()))
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skipped_no_uprn = len(oa_geoms) - len(oa_codes_with_data)
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skipped_no_boundary = len(uprn_offsets) - len(oa_codes_with_data)
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if args.limit > 0:
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oa_codes_with_data = oa_codes_with_data[: args.limit]
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print(f" OAs with UPRNs + boundaries: {len(oa_codes_with_data)}")
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print(f" Skipped (no UPRNs): {skipped_no_uprn}")
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print(f" Skipped (no boundary): {skipped_no_boundary}")
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# --limit is a debug mode → force deterministic single-process.
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workers = 1 if args.limit > 0 else _resolve_workers(args.workers)
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all_fragments, single_count = _process_oas(
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oa_codes_with_data,
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oa_geoms,
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uprn_east,
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uprn_north,
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uprn_postcodes,
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uprn_offsets,
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inspire_index,
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workers,
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)
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multi_count = len(oa_codes_with_data) - single_count
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print(f"\n Single-postcode OAs (fast path): {single_count}")
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print(f" Multi-postcode OAs (INSPIRE+Voronoi): {multi_count}")
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print(f" Total fragments: {len(all_fragments)}")
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return all_fragments
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def main() -> None:
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parser = argparse.ArgumentParser(
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description="Generate postcode boundary polygons from OA + INSPIRE + UPRN data"
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)
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parser.add_argument("--uprn", type=Path, required=True, help="UPRN lookup parquet")
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parser.add_argument(
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"--arcgis",
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type=Path,
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default=None,
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help="Optional ArcGIS postcode parquet used to remap terminated postcodes",
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)
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parser.add_argument(
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"--oa-boundaries", type=Path, required=True, help="OA boundaries GeoPackage"
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)
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parser.add_argument(
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"--inspire", type=Path, required=True, help="INSPIRE ZIP directory"
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)
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parser.add_argument("--output", type=Path, required=True, help="Output directory")
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parser.add_argument(
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"--limit", type=int, default=0, help="Process only first N OAs (0=all)"
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)
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parser.add_argument(
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"--workers",
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type=int,
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default=0,
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help="Parallel worker processes for OA processing (0=all CPUs, 1=sequential)",
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)
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parser.add_argument(
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"--greenspace",
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type=Path,
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default=None,
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help="Greenspace/water parquet for boundary trimming (optional)",
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)
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args = parser.parse_args()
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fragments_cache = args.output / "fragments_cache.parquet"
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# Phase 3 depends only on these inputs; greenspace is applied later (Phase 4),
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# so a greenspace change must not invalidate the fragment cache.
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fragment_inputs = [args.uprn, args.arcgis, args.oa_boundaries, args.inspire]
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# --limit yields a partial fragment set; never read or write the shared cache.
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use_cache = args.limit == 0
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if use_cache and fragments_cache_is_fresh(fragments_cache, fragment_inputs):
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print("=" * 60)
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print("Phase 3 cache hit — loading fragments (skipping Phases 1-3)")
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print("=" * 60)
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all_fragments = load_fragments(fragments_cache)
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print(
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f" Loaded {len(all_fragments):,} cached fragments from {fragments_cache}"
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)
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else:
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all_fragments = build_fragments(args)
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if use_cache:
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# Persist the expensive Phase-3 output before the cheap-but-fragile
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# merge/write so any failure there resumes in seconds, not ~10 hours.
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save_fragments(fragments_cache, all_fragments)
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print(f" Cached {len(all_fragments):,} fragments to {fragments_cache}")
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# Free Phase-1-3 intermediates (build_fragments' locals) back to the OS.
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release_memory()
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# Phase 4: Merge and write
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print()
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print("=" * 60)
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print("Phase 4: Merging fragments and writing GeoJSON")
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print("=" * 60)
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greenspace_tree = None
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greenspace_geoms = None
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if args.greenspace and args.greenspace.exists():
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from .greenspace import load_greenspace
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print(f" Loading greenspace/water from {args.greenspace}...")
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greenspace_tree, greenspace_geoms = load_greenspace(args.greenspace)
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print(f" Loaded {len(greenspace_geoms)} greenspace/water polygons")
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merged = merge_fragments(
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all_fragments,
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greenspace_tree=greenspace_tree,
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greenspace_geoms=greenspace_geoms,
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)
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print(f" Merged into {len(merged)} unique postcodes")
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file_count = write_district_geojson(merged, args.output)
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print(f"\n Wrote {file_count} district GeoJSON files to {args.output / 'units'}")
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# The cache exists only to survive a crash between Phase 3 and a clean write.
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# Now that the output is complete, drop it so a later input change can never
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# be served from a stale cache.
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if use_cache:
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fragments_cache.unlink(missing_ok=True)
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print("Done!")
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if __name__ == "__main__":
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main()
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