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parser.py
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parser.py
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# -*- coding: utf-8 -*-
import json
import os
import sys
import unicodecsv as csv
import xlrd
import zipfile
import cleaner
import fetch
import officetable
output_headers = ["county", "ward", "office", "district", "total votes",
"party", "candidate", "votes"]
first_header = {'ELECTION': 0, 'OFFICE TYPE': 3, 'COUNTY': 10,
'ELECTION DATE': 0}
"""Given first header, number of missing columns
{colA_header: num_missing}
(for year 2000 to 2010 single sheet spreadsheets)
"""
warnings = {
'pdf_skipped': False, # print warning when skipping a PDF input file
}
def collect_columns(row, start_col):
"""Collect data from row starting at start_col, until empty or bad cell"""
data = []
for value in row[start_col:]:
if value in ('', 'dem'):
break
data.append(value)
return data
def split_candidate_party(candidates):
"""Split list of "<candidate> <party>" into separate lists"""
parties = []
for i, candidate in enumerate(candidates):
if candidate == 'Scattering':
parties.append('')
continue
for party in cleaner.party_recode:
head, __, __ = candidate.rpartition(party)
if head: # party found in candidate field
parties.append(party)
candidates[i] = head
break # next candidate
else: # no break
raise ValueError(
'Party not found in candidate "{}"'.format(candidate))
return candidates, parties
def process_xls_2000_to_2010(sheet):
"""Return list of records from spreadsheet in 2000-2010 formats"""
results = []
for rowx in range(sheet.nrows): # index to rows
row = sheet.row_values(rowx)
colA = str(row[0]).strip()
if colA in first_header:
# first row of block, collect candidate names
col_offset = first_header[colA] # number of missing columns
if col_offset > 0:
print "Note: section at row {} is missing {} columns".format(
rowx + 1, col_offset)
candidate_col = 17 - col_offset # first column of candidate data
candidates = collect_columns(row, candidate_col)
if colA == 'ELECTION DATE': # single header, extract parties
candidates, parties = split_candidate_party(candidates)
continue
elif colA in ('DATE', 'KEYWORD', 'NAME'):
# second row of block, collect party names
parties = collect_columns(row, candidate_col)
parties.extend([''] * (len(candidates) - len(parties)))
continue
elif colA in ('', 'SQL>') or colA.endswith('rows selected.'):
continue # not a data row
# not header nor blank: assume this is a data row
office_col = 4 - col_offset
if office_col >= 0:
office = row[office_col]
head, _, district = office.partition(', District ')
if district: # separator was found
office = head
district = district.split()[-1] # parse 'No. 1'
office_table.add_office(office)
else:
# Office column is missing from data
# This occurs for district 14 data in
# Libertarian_2008_FallElection_StateSenator_WardbyWard.xls
# (Not seen in any other file so far)
# Use previous office name
district = '14' # kludge to handle this special case
county = row[10 - col_offset]
ward_info = [row[col - col_offset] for col in (11, 13, 16)]
ward = '{} of {} {}'.format(*ward_info)
votes = collect_columns(row, candidate_col)
if isinstance(votes[0], basestring) and not votes[0].isdigit():
print ' row {}, col {}, data:"{}"'.format(
rowx, candidate_col, votes[0])
raise ValueError('Non-digit chars in votes field')
# assume votes are strings of digits, or ints or floats
votes = map(int, votes)
total_votes = sum(votes)
for i, candidate in enumerate(candidates):
results.append([county, ward, office, district, total_votes,
parties[i], candidate, votes[i]])
return results
def process_xls_2012_DA_primary(sheet): # election id 411
"""Return list of records from 2012-08-14 District Attorney spreadsheet"""
fieldnames = ['ContestName', 'CountyName', 'CandidateName',
'ReportingUnitText', 'VoteCount']
col_headers = sheet.row_values(rowx=0) # first row
try:
# Find indexes of desired fields in spreadsheet
fieldindexes = [col_headers.index(fieldname)
for fieldname in fieldnames]
except ValueError:
print fieldname, 'not found in spreadsheet column headers:'
print col_headers
raise
results = []
candidate_votes = []
previous_race_place = ()
candidates = []
for rowx in range(1, sheet.nrows): # index to rows
row = sheet.row_values(rowx)
office, county, candidate, ward, votes = [
row[col] for col in fieldindexes]
# split office and party, reorder office
parts = office.split(' - ')
assert len(parts) == 3
da, da_county, party = parts
assert da == 'District Attorney'
da_county = da_county.rstrip(' ')
assert da_county.endswith(' County')
office = da_county + ' ' + da # ____ County District Attorney
assert party in cleaner.party_recode.values()
office_table.add_office(office)
district = ''
race_place = county, ward, office, district, party
if previous_race_place and (race_place != previous_race_place):
results.extend(collect_results(
candidates, candidate_votes, previous_race_place))
candidates = []
candidate_votes = []
candidates.append(candidate)
candidate_votes.append(votes)
previous_race_place = race_place
results.extend(collect_results(candidates, candidate_votes, race_place))
return results
def collect_results(candidates, votes, race_place):
results = []
county, ward, office, district, party = race_place
total_votes = sum(votes)
for i, candidate in enumerate(candidates):
results.append([county, ward, office, district, total_votes, party,
candidate, votes[i]])
return results
def get_offices(sheet):
"""Extract office names from title sheet.
Return list of names and index of first sheet to process.
"""
# Determine file format by checking a few cells
# (0-origin row and col numbers)
row1_AB = sheet.row_values(rowx=1, start_colx=0, end_colx=2)
value_2A = sheet.cell_value(rowx=2, colx=0) if sheet.nrows > 2 else ''
if ''.join(row1_AB) == '':
sheet_index = 0 # start parsing data with sheet 0
# First two cols in row 1 are blank,
# is this 2011-04-05 Supreme Court election (id 421)?
office = 'JUSTICE OF THE SUPREME COURT'
if value_2A == office:
offices = [office]
else:
office = 'PRESIDENT OF THE UNITED STATES'
if (sheet.nrows > 8
and sheet.cell_value(4, 0) == '2016 General Election'
and sheet.cell_value(7, 0) == office):
offices = [office]
else:
raise Exception('Unrecognized spreadsheet format')
else:
if value_2A == 'Canvass Detail': # probably 2010-09-14, id 425
row = 3 # offices start in row 3 (0-origin)
column = 0
else: # normal title sheet, offices in column A or B
row = 1
column = 1 if sheet.cell_value(rowx=1, colx=0) == '' else 0
offices = sheet.col_values(colx=column, start_rowx=row)
sheet_index = 1 # data starts on sheet 1
return offices, sheet_index
def process(filename, election):
try:
xlsfile = xlrd.open_workbook(filename)
except IOError as exc:
print 'Failed to open input file {}'.format(filename)
print exc
print
return []
sheet0 = xlsfile.sheet_by_index(0)
sheet0_cell0A = sheet0.cell_value(rowx=0, colx=0) # 1st row, 1st column
sheet1_cell0A = None
if xlsfile.nsheets > 1:
sheet1 = xlsfile.sheet_by_index(1)
if sheet1.nrows > 0:
sheet1_cell0A = sheet1.cell_value(rowx=0, colx=0)
results = []
# Check for unusual file formats
if sheet1_cell0A == 'ElectionName':
results.append(process_xls_2012_DA_primary(sheet1))
# for an older-style header, process single sheet file
elif sheet0_cell0A in first_header:
results.append(process_xls_2000_to_2010(sheet0))
else:
offices, sheet_index = get_offices(sheet0)
for office in offices:
sheet = xlsfile.sheet_by_index(sheet_index)
results.append(parse_sheet(sheet, office, sheet_index, election))
sheet_index += 1
return results
def make_filepath(election):
# See http://docs.openelections.net/archive-standardization/
start_date = election['start_date'].replace("-","")
state = 'wi'
party = ''
special = 'special' if election['special'] else ''
race_type = election['race_type']
reporting_level = 'ward'
names = [start_date, state, party, special, race_type, reporting_level]
names = filter(bool, names) # remove empty names
filename = '__'.join(names) + '.csv'
print 'Processing ' + filename
year = start_date[:4]
if not os.path.isdir(year):
os.mkdir(year)
filepath = os.path.join(year, filename)
return filepath
def get_election_result(election, no_output=False):
filepath = make_filepath(election)
if not no_output:
outfile = open(filepath, 'w')
wr = csv.writer(outfile)
wr.writerow(output_headers)
office_table.new_election()
direct_links = election['direct_links']
row = None
for direct_link in direct_links:
infilename = os.path.basename(direct_link)
cached_filename = os.path.join('local_data_cache', 'data', infilename)
results = process_file(cached_filename, election)
for result in results:
for row in result:
row = cleaner.clean_particular(election, row)
row = cleaner.clean_row(row)
if "Office Totals:" not in row and not no_output:
wr.writerow(row)
if row is None and not no_output: # no rows written, delete file
outfile.close()
os.remove(filepath)
print 'No data parsed, output file removed'
office_table.tabulate_offices(election)
def process_file(cached_filename, election):
if cached_filename.lower().endswith('.pdf'):
if warnings['pdf_skipped']:
print '**** Skipping PDF file: ' + cached_filename
return []
elif cached_filename.lower().endswith('.zip'):
archive = zipfile.ZipFile(cached_filename, 'r')
archive.extractall('tmp/')
archive.close()
results = []
# sort os.listdir() output because order differs on Linux vs MacOS
for filename in sorted(os.listdir('tmp/')):
local_file = 'tmp/' + filename
results = results + process_file(local_file, election)
os.remove(local_file)
return results
else: # Excel file
print 'Opening ' + cached_filename
return process(cached_filename, election)
CAND_COL = 3 # column holding first candidate
TOTAL_VOTES_HEADER = 'Total Votes Cast'
def extract_candidates(sheet, sheet_index):
""" Extract candidate names and parties from sheet.
Returns: candidates, parties, start_row
"""
# Search rows for Total Votes header, in column before candidates
for rowx in range(3, 12):
value = sheet.cell_value(rowx, CAND_COL - 1)
if value.strip() == TOTAL_VOTES_HEADER:
break
else: # loop not exited with break
raise Exception('"{}" header not found'.format(TOTAL_VOTES_HEADER))
# Total Votes header in rowx, candidates in this row or next
# Candidate row will have "SCATTERING" in it
row = sheet.row_values(rowx, start_colx=CAND_COL)
if "SCATTERING" in row:
candidates = row
parties = sheet.row_values(rowx - 1, start_colx=CAND_COL)
else:
parties = row
rowx += 1
candidates = sheet.row_values(rowx, start_colx=CAND_COL)
if "SCATTERING" in candidates:
# Fill in party if missing for "Scattering" candidate in primaries
### Check if election['race_type'] == 'primary'?
scattering_index = candidates.index("SCATTERING")
if parties[scattering_index] == '':
office_title = sheet.cell_value(rowx - 3, 0)
party = office_title.rpartition(' - ')[-1].strip().title()
party = cleaner.party_recode.get(party)
# assume a primary election if office ends in a party name
if party:
parties[scattering_index] = party
else:
print '##### Warning: SCATTERING missing in sheet {} "{}"'.format(
sheet_index, sheet.name)
start_row = rowx + 1 # first data row
return candidates, parties, start_row
def parse_office(office_string):
""" Parse office string, returning (office, district, party)
Office string comes in many formats:
LIEUTENANT GOVERNOR
US SENATOR - AMERICANS ELECT
PRESIDENT OF THE UNITED STATES - REPUBLICAN PARTY
ASSEMBLY - DISTRICT 99
STATE SENATE - DISTRICT 1 - REPUBLICAN
STATE SENATE DISTRICT 1 - REPUBLICAN
REPRESENTATIVE TO THE ASSEMBLY, DISTRICT 99 - REPUBLICAN
REPRESENTATIVE TO THE ASSEMBLY, DISTRICT 99 WISCONSIN GREEN
District Attorney - Fond Du Lac County
EAU CLAIRE COUNTY CIRCUIT COURT JUDGE, BRANCH 1
RECALL STATE SENATE-29
RECALL STATE SENATE-21 - DEMOCRATIC
STATE SENATOR DISTRICT 1-Democratic
"""
office = office_string.upper()
office = office.replace(u'\u2015','-') # change HORIZONTAL BAR to hyphen
office = office.replace(u'\u2013', '-') # change EN DASH to hyphen
if ' DISTRICT ' in office and ' DISTRICT ATTORNEY' not in office:
head, sep, tail = office.partition(' DISTRICT ')
office = head.strip(',- ')
district, sep, party = tail.partition(' ')
district, _, pty = district.partition('-') # handle "1-<party>"
party = pty + sep + party
party = party.strip('- ')
else:
district = ''
party = ''
# Handle D.A. followed by county, or remove party
head, sep, tail = office.partition(' -')
tail = tail.strip()
if tail:
if tail.endswith(' COUNTY'): # id 409, 2012-11-06 D.A.
head = head.strip()
assert head == 'DISTRICT ATTORNEY'
office = tail + ' ' + head # ____ County District Attorney
else:
office = head
party = tail
# Handle district after '-'
head, sep, tail = office.partition('-')
tail = tail.strip()
if tail.isdigit():
office = head
district = tail
office = office.strip()
party = party.replace(' PARTY', '')
party = party.strip('0123456789-') # remove years appended to office
office_table.add_office(office)
return office, district, party
def parse_sheet(sheet, office, sheet_index, election):
"""Return list of records for (string) office, extracted from spreadsheet.
This is used to parse Fall 2010 and later elections.
"""
office_was = office
office, district, party = parse_office(office)
if party and election['race_type'] == 'general':
print '##### Warning: skipping sheet "{}"'.format(sheet.name),
print 'in general election'
print ' Party in office name indicates primary:', office_was
return []
candidates, parties, start_row = extract_candidates(sheet, sheet_index)
offset = 0
if sheet_index == 0 and '' in candidates:
# probably this is 2011-04-05 Supreme Court election (id 421)
i = candidates.index('') + 1 # next after blank
if len(candidates) > i and candidates[i] == TOTAL_VOTES_HEADER:
# this is the second total votes header, for recounts
offset = i + 1 # column offset to get recount data
candidates = candidates[offset:]
parties = parties[offset:]
cand_col = CAND_COL + offset # 1st candidate is in this column
county = ''
output = []
for rowx in range(start_row, sheet.nrows):
row = sheet.row_values(rowx)
if "Totals" in row[0] or "Totals" in row[1]:
continue
col0 = row[0].strip()
if col0 != '':
county = col0
ward = row[1].strip()
total_votes = row[2 + offset]
candidate_votes = row[cand_col:]
for index, candidate in enumerate(candidates):
if candidate: # column not empty
party = parties[index]
output.append([county, ward, office, district, total_votes,
party, candidate, candidate_votes[index]])
return output
def get_all_results(ids, no_output=False):
"""Process results for election ids given;
if none given, process all ids in metadata.
"""
metadata = fetch.read_cached_metadata()
for election in metadata['objects']:
if ids and election.get('id') not in ids:
continue # filter by ids list if not empty
print 'id {id}'.format(**election)
get_election_result(election, no_output)
def get_result_for_json(filename):
with open(filename) as jsonfile:
election = json.load(jsonfile)
get_election_result(election)
# API url: for debugging, metadata is now read from cached file
# http://openelections.net/api/v1/election/?format=json&limit=0&state__postal=WI
"""
Elections with no files available:
448, 664, 674, 689
Election results available only in PDF files:
437 (2006-09-12) PDF and excel in zip files, some offices only PDF
444 (2004-11-02) has xls files for President and Senate,
only PDFs for House, State Senate, State Assembly, District Attorney
443, 445, 446, 447,
685, 1756
Single sheet spreadsheets, 2002-2010 format, two-line repeated headings:
426-442, 1577, 1578 ...
Single sheet spreadsheets, 2002-2010 format, single-line heading:
1845 (2000-11-07), 2 of 6 xls files have this format
2011-04-05 general election (id 421) Supreme Court xls has a
single sheet with no title sheet
WARD_BY_WARD_FOR_SPRING_2011_ELECTION_AND_RECOUNT.xls
xls files with offices in second column of title sheet:
1573, 1574, 1576, 1658, 1659, 1660, 1661
"""
if __name__ == '__main__':
usage_msg = """Usage: {} [-n] <list of ids>]
Parse input files and process results for listed ids.
Omit ids to process all ids for state.
Use option -n for no results output.
Uses elections metadata from file "{}".
""".format(sys.argv[0], fetch.metadata_filepath)
args = sys.argv[1:]
no_output = (args[:1] == ['-n'])
if no_output:
args = args[1:]
if not all(map(str.isdigit, args)):
print usage_msg
print 'Args must be positive integers (election ids)'
else:
office_table = officetable.OfficeTable()
ids = map(int, args)
get_all_results(ids, no_output=no_output)
office_table.print_summary()