Skip to main content

自分用・非汎用

Project description

domx

自分用・非汎用

インストール

uv add domx

patchright_page を使うとき:Google ChromeをPCにインストールしておく。
camoufox_page を使うとき:uv run camoufox fetch

実装機能

domx

  • WrappedPage
  • WrappedElement
  • WrappedElementGroup
  • ElementScan
  • WrappedFrame
  • WrappedShadowRoot
  • WrappedParser
  • WrappedNode
  • WrappedNodeGroup
  • NodeScan

domx.utils

  • parse_html(path: Path) -> LexborHTMLParser | None
  • meta_html(meta: Mapping[str, object | None]) -> str
  • from_here(file: str) -> Callable[[str], Path]
  • append_csv(path: Path, row: dict) -> None
  • write_csv(path: Path, rows: list[dict]) -> None
  • write_parquet(path: Path, rows: list[dict]) -> None
  • hash_name(key: str) -> str
  • write_text(path: Path, data: str) -> bool
  • write_bytes(path: Path, data: bytes) -> bool
  • save_log(path: Path, level: str = 'WARNING') -> None
  • process_map[T, R](worker: Callable[[T], R], items: Iterable[T], workers: int | None = None, *, chunksize: int | None = None) -> list[R | None]
  • glob_paths(dir_path: Path, pattern: str = '*.html') -> list[str]
  • counter(start: int = 1) -> Iterator[int]

domx.batch

  • Batch[T]
  • Batch.attach_patchright_page(*, browser_recreate_every: int | None = None, context_recreate_every: int | None = None, page_recreate_every: int | None = None, browser_kwargs: dict | None = None, context_kwargs: dict | None = None) -> Iterator[Iterator[tuple[T, PatchrightPage]]]
  • Batch.attach_camoufox_page(*, browser_recreate_every: int | None = None, context_recreate_every: int | None = None, page_recreate_every: int | None = None, browser_kwargs: dict | None = None, context_kwargs: dict | None = None) -> Iterator[Iterator[tuple[T, PlaywrightPage]]]
  • batch(items: list[T]) -> Batch[T]

使用例

crawl.py

from urllib.parse import urlencode

from domx import wrap_page
from domx.batch import batch
from domx.utils import save_log, from_here, counter, write_csv

here = from_here(__file__)
save_log(here('log/crawling.log'))

prefecture_urls = ['https://home.katitas.jp/buyers_search/area/nagano']
n = len(prefecture_urls)
urls = []
with batch(prefecture_urls).attach_patchright_page(
    browser_recreate_every=300,
    context_recreate_every=100,
    browser_kwargs={'channel': 'chrome', 'headless': False},
    context_kwargs={'viewport': {'width': 1920, 'height': 1080}},
) as batch_pages:
    for i, (prefecture_url, page) in enumerate(batch_pages):
        p = wrap_page(page)
        print(f'prefecture_url {i}/{n - 1}')
        for page_num in counter():
            if not p.goto(f'{prefecture_url}?{urlencode({"page": page_num})}'):
                break
            if not (bukken_elems := p.ii('ul li div a[href^="https://home.katitas.jp"]:has(p)')):
                break
            urls.extend(bukken_elems.urls)
write_csv(here('csv/urls.csv'), [{'url': url} for url in urls])

scrape.py

from datetime import datetime, timezone
import time

from domx import wrap_page
from domx.batch import batch
from domx.utils import (
    save_log,
    append_csv,
    from_here,
    meta_html,
    hash_name,
    write_text,
    write_bytes,
)
import pandas as pd

here = from_here(__file__)
save_log(here('log/scraping.log'))

bukken_urls = pd.read_csv(here('csv/urls.csv'))['url'].tolist()
n = len(bukken_urls)
with batch(bukken_urls).attach_patchright_page(
    browser_recreate_every=300,
    context_recreate_every=100,
    browser_kwargs={'channel': 'chrome', 'headless': False},
    context_kwargs={'viewport': {'width': 1920, 'height': 1080}},
) as batch_pages:
    for url_index, (request_url, page) in enumerate(batch_pages):
        p = wrap_page(page)
        print(f'url_index {url_index}/{n - 1}')
        if not p.goto(request_url):
            append_csv(here('csv/failed.csv'), {
                'url_index': url_index,
                'request_url': request_url,
                'reason': 'goto',
            })
            continue
        html = meta_html({
            'domx:url_index': url_index,
            'domx:saved_at': datetime.now(timezone.utc),
            'domx:request_url': request_url,
            'domx:final_url': page.url,
        }) + page.content()
        if not write_text(here('html') / f'{hash_name(page.url)}.html', html):
            append_csv(here('csv/failed.csv'), {
                'url_index': url_index,
                'request_url': request_url,
                'reason': 'write_text',
            })

        page.screenshot(path=here(f'media/{url_index}-full-page.png'), full_page=True)

        elem_iframe = p.i('iframe[src^="https://home.katitas.jp"]')
        elem_iframe.scroll_into_view()
        time.sleep(3)
        elem_iframe.screenshot(here(f'media/{url_index}-gmap.png'), isolate=True)

        img_li_scan = p.ii('p.text-left').scan.m(r'画像をクリックすると拡大画像がご覧に').n('ul').ii('li').scan
        img_li = img_li_scan.m(r'外観') or img_li_scan.m(r'^(?!.*間取).*')
        img_url = img_li.i('a').url
        if (body := p.bytes_at(img_url)):
            write_bytes(here(f'media/{url_index}-img-desc.jpg'), body)

        main_img_url = p.i('img.w-full.object-contain').src
        if (body := p.bytes_at(main_img_url)):
            write_bytes(here(f'media/{url_index}-img-main.jpg'), body)

scrape_pairs.py(架空の2段パイプライン例)

import pandas as pd

from domx import wrap_page
from domx.batch import batch
from domx.utils import from_here

here = from_here(__file__)
items = pd.read_csv(here('csv/urls.csv'))['url'].tolist()

collected_urls = []

with batch(items).attach_patchright_page(
    browser_recreate_every=1000,
    context_recreate_every=200,
    browser_kwargs={'channel': 'chrome', 'headless': False},
    context_kwargs={'viewport': {'width': 1920, 'height': 1080}},
) as batch_pages:
    for request_url, page in batch_pages:
        p = wrap_page(page)
        if not p.goto(request_url):
            continue
        # collect urls...
        collected_urls.extend(p.ii('a[href]').urls)

with batch(collected_urls).attach_camoufox_page(
    browser_recreate_every=500,
    context_recreate_every=100,
    browser_kwargs={'headless': False, 'humanize': True},
    context_kwargs={'viewport': {'width': 1920, 'height': 1080}},
) as batch_pages:
    for request_url, page in batch_pages:
        p = wrap_page(page)
        if not p.goto(request_url):
            continue
        # scrape...

extract.py

from pathlib import Path

from domx import wrap_parser
from domx.utils import from_here, glob_paths, parse_html, process_map, write_parquet

def main():
    here = from_here(__file__)
    html_paths = glob_paths(here('html'), '*.html')
    results = [r for r in process_map(extract, html_paths) if r]
    write_parquet(here('parquet/extract.parquet'), results)

def extract(file_path: str) -> dict | None:
    if not (parser := parse_html(Path(file_path))):
        return None
    p = wrap_parser(parser)
    dt_scan = p.ii('dt').scan
    dd_text = lambda pattern: dt_scan.m(pattern).n('dd').text
    return {
        'url_index': p.i('meta[name="domx:url_index"]').attr('content'),
        'saved_at': p.i('meta[name="domx:saved_at"]').attr('content'),
        'request_url': p.i('meta[name="domx:request_url"]').attr('content'),
        'final_url': p.i('meta[name="domx:final_url"]').attr('content'),
        'ファイル名': Path(file_path).name,

        '取り扱い店舗': p.ii('p').scan.m(r'取り扱い店舗').n('p').text,
        
        '価格': dd_text(r'価格'),
        '月々の支払い': dd_text(r'月々の支払い'),
        '間取': dd_text(r'間取'),
        '土地面積': dd_text(r'土地面積'),
        '建物面積': dd_text(r'建物面積'),
        
        '所在地': dd_text(r'所在地'),
        '交通': dd_text(r'交通'),
        '接道状況': dd_text(r'接道状況'),
        '私道面積': dd_text(r'私道面積'),
        'セットバック': dd_text(r'セットバック'),
        '建物構造': dd_text(r'建物構造'),
        '国土法提出': dd_text(r'国土法提出'),
        '駐車場': dd_text(r'駐車場'),
        '車庫区分': dd_text(r'車庫区分'),
        '都市計画': dd_text(r'都市計画'),
        '物件種別': dd_text(r'物件種別'),
        '建ぺい率 /容積率': dd_text(r'建ぺい率.*容積率'),
        '土地権利': dd_text(r'土地権利'),
        '地目': dd_text(r'地目'),
        '築年月': dd_text(r'築年月'),
        '取引態様': dd_text(r'取引態様'),
        '引渡日(入居予定日)': dd_text(r'引渡日.*入居予定日'),
        '用途地域': dd_text(r'用途地域'),
        '現況': dd_text(r'現況'),
        '設備・条件': dd_text(r'設備.*条件'),
        '備考': dd_text(r'備考'),
        '最寄りの学校': dd_text(r'最寄.*の学校'),
        '物件番号': dd_text(r'物件番号'),
        '情報更新日': dd_text(r'情報更新日'),
        '次回更新予定日': dd_text(r'次回更新予定日'),
        
        'スタッフからのコメント': p.ii('div').scan.m(r'スタッフからのコメント').n('div').text,
        '物件の魅力': p.ii('p').scan.m(r'物件の魅力').n('p').text,
        
        'img_desc': '\n'.join(p.ii('p.text-left').scan.m(r'画像をクリックすると拡大画像がご覧に').n('ul').ii('li').texts)
    }

if __name__ == '__main__':
    main()

clean.ipynb

import re

import pandas as pd
df_shikutyoson = pd.read_csv('./shikutyoson.csv')
cities = df_shikutyoson["市区町村"].dropna().sort_values(key=lambda x: x.str.len(), ascending=False)
shikutyoson_pattern = "|".join(cities.map(lambda x: re.escape(x)))
df_raw = pd.read_parquet('parquet/extract.parquet')
df_raw = df_raw.apply(lambda x: x.fillna('').str.normalize('NFKC').str.strip())
df = df_raw.sort_values('saved_at')[['url_index', 'saved_at', 'request_url', 'final_url']].copy()

df['事例種別'] = df_raw['物件種別'].str.contains(r'中古|土地').map({True: '中古売出'})
df['総額'] = (
    df_raw['価格']
    .str.extract(r'([,\d]+)\s*万円', expand=False)
    .replace(',', '', regex=True)
    .pipe(lambda s: pd.to_numeric(s, errors='coerce') * 10000)
)
df['土地面積'] = df_raw['土地面積'].str.extract(r'([\d\.]+)')
df['建物面積'] = df_raw['建物面積'].str.extract(r'([\d\.]+)')
df['建物種別'] = df_raw['物件種別'].map({'中古戸建': '戸建て', '中古マンション': 'マンション', '土地': '土地'})
df[['所在都道府県', '所在市', '所在字', '所在番地']] = df_raw['所在地'].str.extract(fr'^(京都府|.+?[都道府県])({shikutyoson_pattern})(\D*)(.*)')

s1 = (
    df_raw['築年月']
    .replace({r'元年': r'1年'}, regex=True)
    .str.extract(r'(\d+)年', expand=False)
    .pipe(lambda s: pd.to_numeric(s, errors='coerce'))
)
s2 = df_raw['築年月'].str[:2].map({'令和': 2018, '平成': 1988, '昭和': 1925, '大正': 1911, '明治': 1867})
df['建築年'] = s1 + s2

df['構造体'] = df_raw['建物構造'].str.extract(r'^(\S+)')
df['階層'] = df_raw['建物構造'].str.extract(r'(\d+)階')
df['リノベ内容'] = df_raw['備考'].str.extract(r'(?s)^(20\d{2}/.*?)\n\D')
df['間取'] = df_raw['間取']
df['成約年月'] = df_raw['現況'].map({'空': '販売中', '古家付': '販売中'})
df['私道負担'] = df_raw['私道面積']
df['接道'] = df_raw['接道状況']

s1 = df_raw['最寄りの学校'].str.extract(r'([^/\s【】・、(]+?小学校)', expand=False) 
s2 = df_raw['物件の魅力'].str.extract(r'([^/\s【】・、(]+?小学校)', expand=False)
s3 = df_raw['備考'].str.extract(r'([^/\s【】・、(]+?小学校)', expand=False)
s4 = df_raw['img_desc'].str.extract(r'([^/\s【】・、(]+?小学校)', expand=False) 
df['小学校'] = s1.fillna(s2).fillna(s3).fillna(s4)

s1 = df_raw['最寄りの学校'].str.extract(r'([^/\s【】・、(]+?中学校)', expand=False) 
s2 = df_raw['物件の魅力'].str.extract(r'([^/\s【】・、(]+?中学校)', expand=False)
s3 = df_raw['備考'].str.extract(r'([^/\s【】・、(]+?中学校)', expand=False)
s4 = df_raw['img_desc'].str.extract(r'([^/\s【】・、(]+?中学校)', expand=False) 
df['中学校'] = s1.fillna(s2).fillna(s3).fillna(s4)

df['周辺環境'] = df_raw['備考'].map(lambda x: '\n'.join(l for l in x.splitlines() if re.search(r'(?:\d分|\dm)$', l)))
df['都市計画'] = df_raw['都市計画']
df['用途地域'] = df_raw['用途地域']
df[['建ぺい率', '容積率']] = df_raw['建ぺい率 /容積率'].str.extract(r'(\d+%)\D*(\d+%)')
df['水道'] = df_raw['設備・条件'].str.extract(r'(公営水道|上水道)')
df['下水'] = df_raw['設備・条件'].str.extract(r'(本下水|個別浄化槽|汲取|下水道)')
df['ガス'] = df_raw['設備・条件'].str.extract(r'(個別LPG|集中LPG|都市ガス|プロパンガス|オール電化)')
df['契約態様'] = df_raw['取引態様']
df['問合せ先'] = df_raw['取り扱い店舗']
df['駐車場'] = df_raw['駐車場']
df['交通'] = df_raw['交通']
df['物件の特徴'] = df_raw['物件の魅力']
df['仕様'] = df_raw['設備・条件']

df['土地権利'] = df_raw['土地権利']
df['地目'] = df_raw['地目']
df['引渡日(入居予定日)'] = df_raw['引渡日(入居予定日)']
df['物件番号'] = df_raw['物件番号']
df['情報更新日'] = df_raw['情報更新日']
df.to_clipboard(index=False)

Project details


Download files

Download the file for your platform. If you're not sure which to choose, learn more about installing packages.

Source Distribution

domx-0.1.15.tar.gz (19.7 kB view details)

Uploaded Source

Built Distribution

If you're not sure about the file name format, learn more about wheel file names.

domx-0.1.15-py3-none-any.whl (15.1 kB view details)

Uploaded Python 3

File details

Details for the file domx-0.1.15.tar.gz.

File metadata

  • Download URL: domx-0.1.15.tar.gz
  • Upload date:
  • Size: 19.7 kB
  • Tags: Source
  • Uploaded using Trusted Publishing? No
  • Uploaded via: python-requests/2.34.2

File hashes

Hashes for domx-0.1.15.tar.gz
Algorithm Hash digest
SHA256 319e581dfeb3f9f911d14c2a8ac00019c4419e2d46704c6ebc59d2473200012a
MD5 967932d50bf56059cc6c224f5382f500
BLAKE2b-256 be7f40d116b15b99f7d9046112ed3270c3d1d3026fd5a7de2ce74838a3ecf094

See more details on using hashes here.

File details

Details for the file domx-0.1.15-py3-none-any.whl.

File metadata

  • Download URL: domx-0.1.15-py3-none-any.whl
  • Upload date:
  • Size: 15.1 kB
  • Tags: Python 3
  • Uploaded using Trusted Publishing? No
  • Uploaded via: python-requests/2.34.2

File hashes

Hashes for domx-0.1.15-py3-none-any.whl
Algorithm Hash digest
SHA256 101211b10236f94c5d53264ff69cde7cc138d0b4eb490592d0ea91153d245274
MD5 998f56a4359cfa01314820cd6ddf516d
BLAKE2b-256 9b51588500600033a75897fc81275da007be14ec8dcddcdc32405380594210bd

See more details on using hashes here.

Supported by

AWS Cloud computing and Security Sponsor Datadog Monitoring Depot Continuous Integration Fastly CDN Google Download Analytics Pingdom Monitoring Sentry Error logging StatusPage Status page