6

I'm working in ipython; I have a Yaml file and a list of [thomas] ids corresponding to my Yaml file (thomas: -third row down on the file). Below is just a small snippet of the file. The complete file can be found here (https://github.com/108michael/congress-legislators/blob/master/legislators-historical.yaml)

   - id:
    bioguide: C000858
    thomas: '00246'
    lis: S215
    govtrack: 300029
    opensecrets: N00002091
    votesmart: 53288
    icpsr: 14809
    fec:
    - S0ID00057
    wikipedia: Larry Craig
    house_history: 11530
  name:
    first: Larry
    middle: E.
    last: Craig
  bio:
    birthday: '1945-07-20'
    gender: M
    religion: Methodist
  terms:
  - type: rep
    start: '1981-01-05'
    end: '1983-01-03'
    state: ID
    district: 1
    party: Republican
  - type: rep
    start: '1983-01-03'
    end: '1985-01-03'
    state: ID
    district: 1
    party: Republican

I want to parse the file and for every id in my list that corresponds to an Id in [thomas:] I want to retrieve the following: [fec]: (there could be more than one of these, I need all of them) [name:] [first:] [middle:] [last:]; [bio:] [birthday:]; [terms:] (it is likely that there is more than one term, I need for all terms) [type:] [start:] [state:] [party:]. Finally, there may also be instances where the fec data is not available.

1) How should I store the data? I am still relatively new to Python (my first programing language) and am not sure how to store the data. Intuitively, I would say dictionary; however what is paramount is ease of access and data retrieval. Previously, I have stored similarly nested data as csv. This method seems a little bit bulky. It seems that it would be ideal if I could just make a list (from the thomas ids that I have) of dictionaries (the data I am retrieving).

2) I'm not sure how to set up the for/while statements so that I only retrieve data corresponding to my list of thomas ids.

I started with writing what I expect would be the code for writing the info to CSV:

import pandas as pd
import yaml
import glob
import CSV
df = pd.concat((pd.read_csv(f, names=['date','bill_id','sponsor_id']) for f in glob.glob('/home/jayaramdas/anaconda3/df/s11?_s_b')))

outputfile = open('sponsor_details', 'W', newline='')
outputwriter = csv.writer(outputfile)

df = df.drop_duplicates('sponsor_id')
sponsor_list = df['sponsor_id'].tolist()

with open('legislators-historical.yaml', 'r') as f:
    data = yaml.load(f)

    for sponsor in sponsor_list:
        where sponsor == data[0]['thomas']:
            x = data[0]['thomas']
            a = data[0]['name']['first']
            b = data[0]['name']['middle']
            c = data[0]['name']['last']
            d = data[0]['bio']['gender']
            e = data[0]['bio']['religion']

            for fec in data[0]['id']:
                c = fec.get('fec')    

                for terms in data[0]['id']:
                    t = terms.get('type')  
                    s = terms.get('start')  
                    state = terms.get('state')
                    p = terms.get('party')

    outputwriter.writerow([x, a, b, c, d, e, c, t, s, state, p])
    outputfile.flush()

I get the following error:

---------------------------------------------------------------------------
KeyError                                  Traceback (most recent call last)
<ipython-input-48-057d25de7e11> in <module>()
     15 
     16     for sponsor in sponsor_list:
---> 17         if sponsor == data[0]['thomas']:
     18             x = data[0]['thomas']
     19             a = data[0]['name']['first']

KeyError: 'thomas'
  • Maybe help change for sponsor in sponsor_list as f: to for sponsor in sponsor_list: – jezrael Mar 13 '16 at 8:35
  • I just tried your suggestion and the question. I still receive the following error: File "<ipython-input-39-2535ffac2b4d>", line 17 where sponsor == data[0][thomas]: ^ SyntaxError: invalid syntax – Michael Perdue Mar 13 '16 at 8:36
  • Yes, it seems bad too. But I work never with yaml. Maybe one way is convert yaml to json, then use pd.read_json for creating DataFrame. – jezrael Mar 13 '16 at 8:43
  • Ok! I'll look into that. – Michael Perdue Mar 13 '16 at 8:44
  • 1
    You need to add the line "import csv" to fix the NameError. – snakecharmerb Mar 13 '16 at 9:11
8

I think you may try to parse YAML and load it to data frame, normalizing it:

import pandas as pd
import yaml

with open('legislators-historical.yaml', 'r') as f:
    df = pd.io.json.json_normalize(yaml.load(f))

print(df.head())

Output:

  bio.birthday bio.gender bio.religion id.bioguide       id.fec  id.govtrack  \
0   1943-12-02          M   Protestant     A000109  [S6CO00168]       300003
1   1745-04-02          M          NaN     B000226          NaN       401222
2   1742-03-21          M          NaN     B000546          NaN       401521
3   1743-06-16          M          NaN     B001086          NaN       402032
4   1730-07-22          M          NaN     C000187          NaN       402334

   id.house_history  id.icpsr id.lis id.opensecrets id.thomas  id.votesmart  \
0              8410     29108   S250      N00009082     00011         26783
1               NaN       507    NaN            NaN       NaN           NaN
2              9479       786    NaN            NaN       NaN           NaN
3             10177      1260    NaN            NaN       NaN           NaN
4             10687      1538    NaN            NaN       NaN           NaN

     id.wikipedia  name.first name.last name.middle  \
0    Wayne Allard       Wayne    Allard          A.
1             NaN     Richard   Bassett         NaN
2             NaN  Theodorick     Bland         NaN
3   Aedanus Burke     Aedanus     Burke         NaN
4  Daniel Carroll      Daniel   Carroll         NaN

                                               terms
0  [{'party': 'Republican', 'type': 'rep', 'state...
1  [{'party': 'Anti-Administration', 'type': 'sen...
2  [{'end': '1791-03-03', 'district': 9, 'type': ...
3  [{'end': '1791-03-03', 'district': 2, 'type': ...
4  [{'end': '1791-03-03', 'district': 6, 'type': ...

UPDATE:

the following version will filter your input data so only records containing "thomas" and "fec" will be processed:

#import ujson
#import pprint as pp
import yaml
import pandas as pd
from pandas.io.json import json_normalize

def read_yaml(fn):
    with open(fn, 'r') as fi:
        return yaml.load(fi)

def filter_data(data):
    result_data = []
    for x in data:
        if 'id' not in x:   continue
        if 'fec' not in x['id']:    continue
        if 'thomas' not in x['id']: continue
        result_data.append(x)
    return result_data


fn = 'aaa.yaml'


df = json_normalize(filter_data(read_yaml(fn)), 'terms', [['id', 'fec'], ['id', 'thomas']])
print(df.head())

df.to_csv('out.csv')

Output:

   class  district         end       party       start state type  \
0    NaN         4  1993-01-03  Republican  1991-01-03    CO  rep
1    NaN         4  1995-01-03  Republican  1993-01-05    CO  rep
2    NaN         4  1997-01-03  Republican  1995-01-04    CO  rep
3      2       NaN  2003-01-03  Republican  1997-01-07    CO  sen
4      2       NaN  2009-01-03  Republican  2003-01-07    CO  sen

                        url id.thomas     id.fec
0                       NaN     00011  S6CO00168
1                       NaN     00011  S6CO00168
2                       NaN     00011  S6CO00168
3                       NaN     00011  S6CO00168
4  http://allard.senate.gov     00011  S6CO00168

PS as you see this will duplicate your rows (see: id.thomas and id.fec) so that it can be shown as a data frame

UPDATE2

You may also want to convert lists in 'id.fec' into columns, but i would do it in additional data frame:

df_fec = df['id.fec'].apply(pd.Series)

print(df_fec.head())

Output:

           0          1
0  S8AR00112  H2AR01022
1  S8AR00112  H2AR01022
2  S8AR00112  H2AR01022
3  S8AR00112  H2AR01022
4  S6CO00168        NaN
  • Thanks Max. I tried your code (I'm using Ipython) and got the following error ImportError: No module named 'ujson' – Michael Perdue Mar 13 '16 at 9:11
  • you can either install it pip install ujson or use json instead – MaxU Mar 13 '16 at 9:12
  • 1
    i have the same issue - it looks like a bug in 'json_normalize' (i'm not sure yet). I'll try to find a workaround – MaxU Mar 13 '16 at 9:27
  • 1
    @MichaelPerdue, which columns do you want to process from the YAML file? Do you need 'terms'? – MaxU Mar 13 '16 at 9:53
  • 1
    @MichaelPerdue, i've updated my answer please check it. PS you don't need json/ujson.dump() in this case - that was my mistake. – MaxU Mar 13 '16 at 12:06

Your Answer

By clicking “Post Your Answer”, you agree to our terms of service, privacy policy and cookie policy

Not the answer you're looking for? Browse other questions tagged or ask your own question.