Hice algunas funciones que me ayudan a descargar todos los currículos de las elecciones por precintos. Los nombres de los archivos descargados tienen el siguiente aspecto:
Hzwpukgh_2008Parliamentary-Majoritarian
Hzwpukgh_2008Parliamentary-PartyList
Hzwpukgh_2008Presidential
...
Truc_2008Presidential
Me da, para una elección dada y un precinto dado, lo siguiente :
"Election"," Map Level"," Precinct ID"," Precinct Name","Overall Results","#1 - Mikheil Saakashvili","#2 - Levan Gachechiladze","#3 - Shalva Natelashvili","#4 - Arkadi (Badri) Patarkatsishvili","#5 - Davit Gamkrelidze","#6 - Giorgi (Gia) Maisashvili","#7 - Irina Sarishvili-Chanturia","Total Voter Turnout (#)","Total Voter Turnout (%)","Average votes per minute (08:00-12:00)","Average votes per minute (12:00-17:00)","Average votes per minute (17:00-20:00)"
"2008 Presidential","Precinct","1","39-1","Mikheil Saakashvili","74.48","18.45","1.74","5.92","3.71","0.58","0.12","862","58.24","1.19","1.45","1.05"
"2008 Presidential","Precinct","10","39-10","Mikheil Saakashvili","61.62","24.75","3.03","5.56","5.05","0","0","198","75","0.25","0.34","0.2"
Me gustaría reunir el currículum vítae de diferentes años de un precinto dado, digamos Hzwpukgh
, a un currículum vítae que se parezca a este :
2010 Presidential 2017 Presidential ...
Tprolps Zhhrhzocpsp 67.68 NaN
Levan Gachechiladze 20.96 NaN
...
Npvynp Thynclshzocpsp NaN 64.15
Davit Bakradze NaN 13.86
...
Pero, primer paso, estoy buscando fusionar los csvs en uno. Así que cómo fusionar archivos con los mismos nombres antes del guión bajo?
Parecería que..:
"Election"," Map Level"," Precinct ID"," Precinct Name","Overall Results","#1 - Mikheil Saakashvili","#2 - Levan Gachechiladze","#3 - Shalva Natelashvili","#4 - Arkadi (Badri) Patarkatsishvili","#5 - Davit Gamkrelidze","#6 - Giorgi (Gia) Maisashvili","#7 - Irina Sarishvili-Chanturia","Total Voter Turnout (#)","Total Voter Turnout (%)","Average votes per minute (08:00-12:00)","Average votes per minute (12:00-17:00)","Average votes per minute (17:00-20:00)"
"2008 Presidential","Precinct","1","39-1","Mikheil Saakashvili","74.48","18.45","1.74","5.92","3.71","0.58","0.12","862","58.24","1.19","1.45","1.05"
"2008 Presidential","Precinct","10","39-10","Mikheil Saakashvili","61.62","24.75","3.03","5.56","5.05","0","0","198","75","0.25","0.34","0.2"
...
"2008 Parliamentary-Majoritarian","Precinct","1","39-1","Mikheil Saakashvili","74.48","18.45","1.74","5.92","3.71","0.58","0.12","862","58.24","1.19","1.45","1.05"
"2008 Parliamentary-Majoritarian","Precinct","10","39-10","Mikheil Saakashvili","61.62","24.75","3.03","5.56","5.05","0","0","198","75","0.25","0.34","0.2"
Entonces podría crear el dataframe mostrado arriba. Si tienes otros métodos, me encantaría escucharlos:)
El mio intento
Intente el siguiente :
import glob
import random
import os
import pandas
def find_filesets(path="."):
csv_files = {}
for name in glob.glob("{}/*_*.csv".format(path)):
# there's almost certainly a better way to do this
key = os.path.splitext(os.path.basename(name))[0].split('-')[0]
csv_files.setdefault(key, []).append(name)
for key,filelist in csv_files.items():
print(key, filelist)
# do something with filelist
create_merged_csv(key, filelist)
def create_merged_csv(key, filelist):
with open('{}-aggregate.csv'.format(key), 'w+b') as outfile:
for filename in filelist:
df = pandas.read_csv(filename, header=None)
df.to_csv(outfile, index=False, header=None)
find_filesets('./Results')
Pero me devuelve :
---------------------------------------------------------------------------
TypeError Traceback (most recent call last)
<ipython-input-64-3b33d1e84680> in <module>
4 import pandas
5
----> 6 find_filesets('./Results')
<ipython-input-63-5f53b2750f85> in find_filesets(path)
9 print(key, filelist)
10 # do something with filelist
---> 11 create_merged_csv(key, filelist)
12
13 def create_merged_csv(key, filelist):
<ipython-input-63-5f53b2750f85> in create_merged_csv(key, filelist)
15 for filename in filelist:
16 df = pandas.read_csv(filename, header=None)
---> 17 df.to_csv(outfile, index=False, header=None)
C:\ProgramData\Anaconda3\lib\site-packages\pandas\core\generic.py in to_csv(self, path_or_buf, sep, na_rep, float_format, columns, header, index, index_label, mode, encoding, compression, quoting, quotechar, line_terminator, chunksize, tupleize_cols, date_format, doublequote, escapechar, decimal)
3018 doublequote=doublequote,
3019 escapechar=escapechar, decimal=decimal)
-> 3020 formatter.save()
3021
3022 if path_or_buf is None:
C:\ProgramData\Anaconda3\lib\site-packages\pandas\io\formats\csvs.py in save(self)
170 self.writer = UnicodeWriter(f, **writer_kwargs)
171
--> 172 self._save()
173
174 finally:
C:\ProgramData\Anaconda3\lib\site-packages\pandas\io\formats\csvs.py in _save(self)
286 break
287
--> 288 self._save_chunk(start_i, end_i)
289
290 def _save_chunk(self, start_i, end_i):
C:\ProgramData\Anaconda3\lib\site-packages\pandas\io\formats\csvs.py in _save_chunk(self, start_i, end_i)
313
314 libwriters.write_csv_rows(self.data, ix, self.nlevels,
--> 315 self.cols, self.writer)
pandas/_libs/writers.pyx in pandas._libs.writers.write_csv_rows()
TypeError: a bytes-like object is required, not 'str'