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
    - S0ID00057
    wikipedia: Larry Craig
    house_history: 11530
    first: Larry
    middle: E.
    last: Craig
    birthday: '1945-07-20'
    gender: M
    religion: Methodist
  - 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])

I get the following error:

KeyError                                  Traceback (most recent call last)
<ipython-input-48-057d25de7e11> in <module>()
     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

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))



  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

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': ...


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
    return result_data

fn = 'aaa.yaml'

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



   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


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)



           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

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