HomeHarvest/homeharvest/__init__.py

112 lines
3.1 KiB
Python

from .core.scrapers.redfin import RedfinScraper
from .core.scrapers.realtor import RealtorScraper
from .core.scrapers.zillow import ZillowScraper
from .core.scrapers.models import ListingType, Property, SiteName
from .core.scrapers import ScraperInput
from .exceptions import InvalidSite, InvalidListingType
from typing import Union
import pandas as pd
_scrapers = {
"redfin": RedfinScraper,
"realtor.com": RealtorScraper,
"zillow": ZillowScraper,
}
def validate_input(site_name: str, listing_type: str) -> None:
if site_name.lower() not in _scrapers:
raise InvalidSite(f"Provided site, '{site_name}', does not exist.")
if listing_type.upper() not in ListingType.__members__:
raise InvalidListingType(
f"Provided listing type, '{listing_type}', does not exist."
)
def get_ordered_properties(result: Property) -> list[str]:
return [
"property_url",
"site_name",
"listing_type",
"property_type",
"status_text",
"currency",
"price",
"apt_min_price",
"tax_assessed_value",
"square_feet",
"price_per_sqft",
"beds",
"baths",
"lot_area_value",
"lot_area_unit",
"street_address",
"unit",
"city",
"state",
"zip_code",
"country",
"posted_time",
"bldg_min_beds",
"bldg_min_baths",
"bldg_min_area",
"bldg_unit_count",
"bldg_name",
"stories",
"year_built",
"agent_name",
"mls_id",
"description",
"img_src",
"latitude",
"longitude",
]
def process_result(result: Property) -> pd.DataFrame:
prop_data = result.__dict__
prop_data["site_name"] = prop_data["site_name"].value
prop_data["listing_type"] = prop_data["listing_type"].value.lower()
prop_data["property_type"] = prop_data["property_type"].value.lower()
if "address" in prop_data:
address_data = prop_data["address"]
prop_data["street_address"] = address_data.street_address
prop_data["unit"] = address_data.unit
prop_data["city"] = address_data.city
prop_data["state"] = address_data.state
prop_data["zip_code"] = address_data.zip_code
prop_data["country"] = address_data.country
del prop_data["address"]
properties_df = pd.DataFrame([prop_data])
properties_df = properties_df[get_ordered_properties(result)]
return properties_df
def scrape_property(
location: str,
site_name: str,
listing_type: str = "for_sale", #: for_sale, for_rent, sold
) -> list[Property]:
validate_input(site_name, listing_type)
scraper_input = ScraperInput(
location=location,
listing_type=ListingType[listing_type.upper()],
site_name=SiteName[site_name.upper()],
)
site = _scrapers[site_name.lower()](scraper_input)
results = site.search()
properties_dfs = [process_result(result) for result in results]
if not properties_dfs:
return pd.DataFrame()
return pd.concat(properties_dfs, ignore_index=True)