cannabis_licenses / algorithms /get_licenses_il.py
keeganskeate's picture
pr/kls-1 (#3)
1352c88
raw
history blame
No virus
6.67 kB
"""
Cannabis Licenses | Get Illinois Licenses
Copyright (c) 2022 Cannlytics
Authors:
Keegan Skeate <https://github.com/keeganskeate>
Candace O'Sullivan-Sutherland <https://github.com/candy-o>
Created: 9/29/2022
Updated: 10/3/2022
License: <https://github.com/cannlytics/cannlytics/blob/main/LICENSE>
Description:
Collect Illinois cannabis license data.
Data Source:
- Illinois Department of Financial and Professional Regulation
Licensed Adult Use Cannabis Dispensaries
URL: <https://www.idfpr.com/LicenseLookup/AdultUseDispensaries.pdf>
"""
# Standard imports.
from datetime import datetime
import os
from typing import Optional
# External imports.
from dotenv import dotenv_values
from cannlytics.data.gis import geocode_addresses
import pandas as pd
import pdfplumber
import requests
# Specify where your data lives.
DATA_DIR = '../data/il'
ENV_FILE = '../.env'
# Specify state-specific constants.
STATE = 'IL'
ILLINOIS = {
'licensing_authority_id': 'IDFPR',
'licensing_authority': 'Illinois Department of Financial and Professional Regulation',
'retailers': {
'url': 'https://www.idfpr.com/LicenseLookup/AdultUseDispensaries.pdf',
'columns': [
'business_legal_name',
'business_dba_name',
'address',
'medical',
'issue_date',
'license_number',
],
},
}
def get_licenses_il(
data_dir: Optional[str] = None,
env_file: Optional[str] = '.env',
**kwargs,
):
"""Get Illinois cannabis license data."""
# Create necessary directories.
pdf_dir = f'{data_dir}/pdfs'
if not os.path.exists(data_dir): os.makedirs(data_dir)
if not os.path.exists(pdf_dir): os.makedirs(pdf_dir)
# Download the retailers PDF.
retailers_url = ILLINOIS['retailers']['url']
filename = f'{pdf_dir}/illinois_retailers.pdf'
response = requests.get(retailers_url)
with open(filename, 'wb') as f:
f.write(response.content)
# Read the retailers PDF.
pdf = pdfplumber.open(filename)
# Get the table data, excluding the headers and removing empty cells.
table_data = []
for i, page in enumerate(pdf.pages):
table = page.extract_table()
if i == 0:
table = table[4:]
table = [c for row in table
if (c := [elem for elem in row if elem is not None])]
table_data += table
# Standardize the data.
licensee_columns = ILLINOIS['retailers']['columns']
retailers = pd.DataFrame(table_data, columns=licensee_columns)
retailers = retailers.assign(
licensing_authority_id=ILLINOIS['licensing_authority_id'],
licensing_authority=ILLINOIS['licensing_authority'],
license_designation='Adult-Use',
premise_state=STATE,
license_status='Active',
license_status_date=None,
license_type='Commercial - Retailer',
license_term=None,
expiration_date=None,
business_legal_name=retailers['business_dba_name'],
business_owner_name=None,
business_structure=None,
business_email=None,
activity=None,
parcel_number=None,
id=retailers['license_number'],
business_image_url=None,
business_website=None,
)
# Apply `medical` to `license_designation`
retailers.loc[retailers['medical'] == 'Yes', 'license_designation'] = 'Adult-Use and Medicinal'
retailers.drop(columns=['medical'], inplace=True)
# Clean the organization names.
retailers['business_legal_name'] = retailers['business_legal_name'].str.replace('\n', '', regex=False)
retailers['business_dba_name'] = retailers['business_dba_name'].str.replace('*', '', regex=False)
# Separate address into 'street', 'city', 'state', 'zip_code', 'phone_number'.
streets, cities, states, zip_codes, phone_numbers = [], [], [], [], []
for index, row in retailers.iterrows():
parts = row.address.split(' \n')
streets.append(parts[0])
phone_numbers.append(parts[-1])
locales = parts[1]
city_locales = locales.split(', ')
state_locales = city_locales[-1].split(' ')
cities.append(city_locales[0])
states.append(state_locales[0])
zip_codes.append(state_locales[-1])
retailers['premise_street_address'] = pd.Series(streets)
retailers['premise_city'] = pd.Series(cities)
retailers['premise_state'] = pd.Series(states)
retailers['premise_zip_code'] = pd.Series(zip_codes)
retailers['business_phone'] = pd.Series(phone_numbers)
# Convert the issue date to ISO format.
retailers['issue_date'] = retailers['issue_date'].apply(
lambda x: pd.to_datetime(x).isoformat()
)
# Get the refreshed date.
date = pdf.metadata['ModDate'].replace('D:', '')
date = date[:4] + '-' + date[4:6] + '-' + date[6:8] + 'T' + date[8:10] + \
':' + date[10:12] + ':' + date[12:].replace("'", ':').rstrip(':')
retailers['data_refreshed_date'] = date
# Geocode licenses to get `premise_latitude` and `premise_longitude`.
config = dotenv_values(env_file)
google_maps_api_key = config['GOOGLE_MAPS_API_KEY']
retailers['address'] = retailers['address'].str.replace('*', '', regex=False)
retailers = geocode_addresses(
retailers,
api_key=google_maps_api_key,
address_field='address',
)
drop_cols = ['state', 'state_name', 'address', 'formatted_address']
retailers.drop(columns=drop_cols, inplace=True)
gis_cols = {
'county': 'premise_county',
'latitude': 'premise_latitude',
'longitude': 'premise_longitude'
}
retailers.rename(columns=gis_cols, inplace=True)
# Save and return the data.
if data_dir is not None:
timestamp = datetime.now().isoformat()[:19].replace(':', '-')
retailers.to_csv(f'{data_dir}/retailers-{STATE.lower()}-{timestamp}.csv', index=False)
return retailers
# === Test ===
if __name__ == '__main__':
# Support command line usage.
import argparse
try:
arg_parser = argparse.ArgumentParser()
arg_parser.add_argument('--d', dest='data_dir', type=str)
arg_parser.add_argument('--data_dir', dest='data_dir', type=str)
arg_parser.add_argument('--env', dest='env_file', type=str)
args = arg_parser.parse_args()
except SystemExit:
args = {'d': DATA_DIR, 'env_file': ENV_FILE}
# Get licenses, saving them to the specified directory.
data_dir = args.get('d', args.get('data_dir'))
env_file = args.get('env_file')
data = get_licenses_il(data_dir, env_file=env_file)