0

I am having trouble figuring out how to parse values from an API response as a list to a dataframe.

The 'games' API response is a list but it looks very similar to JSON. In other examples, I was able to create a dict. This list has multiple levels and is not as easy to create a dict. I am learning as I go and would appreciate any help.

Reference: https://github.com/CFBD/cfbd-python/blob/master/docs/GamesApi.md#get_team_game_stats

Python

from __future__ import print_function
import time
import cfbd
from cfbd.rest import ApiException
from pprint import pprint
import pandas as pd
from pandas.io.json import json_normalize
import json
import numpy as np
from datetime import datetime

# Configure API key authorization: ApiKeyAuth
configuration = cfbd.Configuration()
configuration.api_key['Authorization'] = 'xxxxxx'
configuration.api_key_prefix['Authorization'] = 'Bearer'
api_instance = cfbd.BettingApi(cfbd.ApiClient(configuration))

now = datetime.now()
start_year = 2020
end_year = now.year

for x,y in zip(range(start_year, end_year), range(1, 18)):
    year = x # int | Year filter
    week = y # int | Week filter (optional)

    try:
        api_instance = cfbd.GamesApi(cfbd.ApiClient(configuration))
        games = api_instance.get_team_game_stats(year=year, week=week)
        #game_stats_df = pd.DataFrame.from_records([dict(id = g.id, conference = g.conference, homeAway = g.homeAway) for g in games])

    except ApiException as e:
        print("Exception when calling BettingApi->get_calendar: %s\n" % e)

API Response

 {'id': 401238035,
 'teams': [{'conference': None,
            'homeAway': 'away',
            'points': 35,
            'school': 'Central Arkansas',
            'stats': [{'category': 'tacklesForLoss', 'stat': '8'},
                      {'category': 'defensiveTDs', 'stat': '1'},
                      {'category': 'tackles', 'stat': '61'},
                      {'category': 'sacks', 'stat': '0'},
                      {'category': 'qbHurries', 'stat': '1'},
                      {'category': 'passesDeflected', 'stat': '0'},
                      {'category': 'fumblesRecovered', 'stat': '2'},
                      {'category': 'rushingTDs', 'stat': '1'},
                      {'category': 'puntReturnYards', 'stat': '2'},
                      {'category': 'puntReturnTDs', 'stat': '0'},
                      {'category': 'puntReturns', 'stat': '2'},
                      {'category': 'passingTDs', 'stat': '3'},
                      {'category': 'kickReturnYards', 'stat': '116'},
                      {'category': 'kickReturnTDs', 'stat': '0'},
                      {'category': 'kickReturns', 'stat': '4'},
                      {'category': 'kickingPoints', 'stat': '5'},
                      {'category': 'interceptionYards', 'stat': '34'},
                      {'category': 'interceptionTDs', 'stat': '0'},
                      {'category': 'passesIntercepted', 'stat': '1'},
                      {'category': 'interceptions', 'stat': '1'},
                      {'category': 'fumblesLost', 'stat': '2'},
                      {'category': 'turnovers', 'stat': '3'},
                      {'category': 'totalPenaltiesYards', 'stat': '0-0'},
                      {'category': 'yardsPerRushAttempt', 'stat': '4.8'},
                      {'category': 'rushingAttempts', 'stat': '21'},
                      {'category': 'rushingYards', 'stat': '100'},
                      {'category': 'yardsPerPass', 'stat': '4.2'},
                      {'category': 'completionAttempts', 'stat': '25-46'},
                      {'category': 'netPassingYards', 'stat': '193'},
                      {'category': 'totalYards', 'stat': '293'},
                      {'category': 'fourthDownEff', 'stat': '0-0'},
                      {'category': 'thirdDownEff', 'stat': '0-0'},
                      {'category': 'firstDowns', 'stat': '0'}]},
           {'conference': 'Conference USA',
            'homeAway': 'home',
            'points': 45,
            'school': 'UAB',
            'stats': [{'category': 'tacklesForLoss', 'stat': '5'},
                      {'category': 'defensiveTDs', 'stat': '0'},
                      {'category': 'tackles', 'stat': '39'},
                      {'category': 'sacks', 'stat': '2'},
                      {'category': 'qbHurries', 'stat': '5'},
                      {'category': 'passesDeflected', 'stat': '5'},
                      {'category': 'fumblesRecovered', 'stat': '2'},
                      {'category': 'rushingTDs', 'stat': '3'},
                      {'category': 'puntReturnYards', 'stat': '-2'},
                      {'category': 'puntReturnTDs', 'stat': '0'},
                      {'category': 'puntReturns', 'stat': '1'},
                      {'category': 'passingTDs', 'stat': '3'},
                      {'category': 'kickReturnYards', 'stat': '49'},
                      {'category': 'kickReturnTDs', 'stat': '0'},
                      {'category': 'kickReturns', 'stat': '3'},
                      {'category': 'kickingPoints', 'stat': '9'},
                      {'category': 'interceptionYards', 'stat': '19'},
                      {'category': 'interceptionTDs', 'stat': '0'},
                      {'category': 'passesIntercepted', 'stat': '1'},
                      {'category': 'interceptions', 'stat': '1'},
                      {'category': 'fumblesLost', 'stat': '2'},
                      {'category': 'turnovers', 'stat': '3'},
                      {'category': 'totalPenaltiesYards', 'stat': '0-0'},
                      {'category': 'yardsPerRushAttempt', 'stat': '4.8'},
                      {'category': 'rushingAttempts', 'stat': '49'},
                      {'category': 'rushingYards', 'stat': '233'},
                      {'category': 'yardsPerPass', 'stat': '6.6'},
                      {'category': 'completionAttempts', 'stat': '24-34'},
                      {'category': 'netPassingYards', 'stat': '226'},
                      {'category': 'totalYards', 'stat': '459'},
                      {'category': 'fourthDownEff', 'stat': '0-0'},
                      {'category': 'thirdDownEff', 'stat': '0-0'},
                      {'category': 'firstDowns', 'stat': '0'}]}]}]

1 Answer 1

0

I was trying to help another person with this yesterday. The solution might be to use json_normalize importad like this: from pandas import json_normalize

I was able to clean up the API response a bit with https://jsonformatter.curiousconcept.com. Which also says it's RFC 8259 data (don't know anything about this, but maybe it helps):

data = {
   "id":401238035,
   "teams":[
      {
         "conference":"None",
         "homeAway":"away",
         "points":35,
         "school":"Central Arkansas",
         "stats":[
            {
               "category":"tacklesForLoss",
               "stat":"8"
            },
            {
               "category":"defensiveTDs",
               "stat":"1"
            },
            {
               "category":"tackles",
               "stat":"61"
            },
            {
               "category":"sacks",
               "stat":"0"
            },
            {
               "category":"qbHurries",
               "stat":"1"
            },
            {
               "category":"passesDeflected",
               "stat":"0"
            },
            {
               "category":"fumblesRecovered",
               "stat":"2"
            },
            {
               "category":"rushingTDs",
               "stat":"1"
            },
            {
               "category":"puntReturnYards",
               "stat":"2"
            },
            {
               "category":"puntReturnTDs",
               "stat":"0"
            },
            {
               "category":"puntReturns",
               "stat":"2"
            },
            {
               "category":"passingTDs",
               "stat":"3"
            },
            {
               "category":"kickReturnYards",
               "stat":"116"
            },
            {
               "category":"kickReturnTDs",
               "stat":"0"
            },
            {
               "category":"kickReturns",
               "stat":"4"
            },
            {
               "category":"kickingPoints",
               "stat":"5"
            },
            {
               "category":"interceptionYards",
               "stat":"34"
            },
            {
               "category":"interceptionTDs",
               "stat":"0"
            },
            {
               "category":"passesIntercepted",
               "stat":"1"
            },
            {
               "category":"interceptions",
               "stat":"1"
            },
            {
               "category":"fumblesLost",
               "stat":"2"
            },
            {
               "category":"turnovers",
               "stat":"3"
            },
            {
               "category":"totalPenaltiesYards",
               "stat":"0-0"
            },
            {
               "category":"yardsPerRushAttempt",
               "stat":"4.8"
            },
            {
               "category":"rushingAttempts",
               "stat":"21"
            },
            {
               "category":"rushingYards",
               "stat":"100"
            },
            {
               "category":"yardsPerPass",
               "stat":"4.2"
            },
            {
               "category":"completionAttempts",
               "stat":"25-46"
            },
            {
               "category":"netPassingYards",
               "stat":"193"
            },
            {
               "category":"totalYards",
               "stat":"293"
            },
            {
               "category":"fourthDownEff",
               "stat":"0-0"
            },
            {
               "category":"thirdDownEff",
               "stat":"0-0"
            },
            {
               "category":"firstDowns",
               "stat":"0"
            }
         ]
      },
      {
         "conference":"Conference USA",
         "homeAway":"home",
         "points":45,
         "school":"UAB",
         "stats":[
            {
               "category":"tacklesForLoss",
               "stat":"5"
            },
            {
               "category":"defensiveTDs",
               "stat":"0"
            },
            {
               "category":"tackles",
               "stat":"39"
            },
            {
               "category":"sacks",
               "stat":"2"
            },
            {
               "category":"qbHurries",
               "stat":"5"
            },
            {
               "category":"passesDeflected",
               "stat":"5"
            },
            {
               "category":"fumblesRecovered",
               "stat":"2"
            },
            {
               "category":"rushingTDs",
               "stat":"3"
            },
            {
               "category":"puntReturnYards",
               "stat":"-2"
            },
            {
               "category":"puntReturnTDs",
               "stat":"0"
            },
            {
               "category":"puntReturns",
               "stat":"1"
            },
            {
               "category":"passingTDs",
               "stat":"3"
            },
            {
               "category":"kickReturnYards",
               "stat":"49"
            },
            {
               "category":"kickReturnTDs",
               "stat":"0"
            },
            {
               "category":"kickReturns",
               "stat":"3"
            },
            {
               "category":"kickingPoints",
               "stat":"9"
            },
            {
               "category":"interceptionYards",
               "stat":"19"
            },
            {
               "category":"interceptionTDs",
               "stat":"0"
            },
            {
               "category":"passesIntercepted",
               "stat":"1"
            },
            {
               "category":"interceptions",
               "stat":"1"
            },
            {
               "category":"fumblesLost",
               "stat":"2"
            },
            {
               "category":"turnovers",
               "stat":"3"
            },
            {
               "category":"totalPenaltiesYards",
               "stat":"0-0"
            },
            {
               "category":"yardsPerRushAttempt",
               "stat":"4.8"
            },
            {
               "category":"rushingAttempts",
               "stat":"49"
            },
            {
               "category":"rushingYards",
               "stat":"233"
            },
            {
               "category":"yardsPerPass",
               "stat":"6.6"
            },
            {
               "category":"completionAttempts",
               "stat":"24-34"
            },
            {
               "category":"netPassingYards",
               "stat":"226"
            },
            {
               "category":"totalYards",
               "stat":"459"
            },
            {
               "category":"fourthDownEff",
               "stat":"0-0"
            },
            {
               "category":"thirdDownEff",
               "stat":"0-0"
            },
            {
               "category":"firstDowns",
               "stat":"0"
            }
         ]
      }
   ]
}

Maybe this helps:

import json
import pandas as pd
from pandas import json_normalize

new_data = data['teams'][0]

dict_data = dict(new_data)

result = json_normalize(new_data, ['stats'], record_prefix='_', errors='ignore')

result 

Output:

_category _stat
0 tacklesForLoss 8
1 defensiveTDs 1
2 tackles 61
3 sacks 0
4 qbHurries 1
5 passesDeflected 0
6 fumblesRecovered 2
7 rushingTDs 1
8 puntReturnYards 2
9 puntReturnTDs 0
10 puntReturns 2
11 passingTDs 3
12 kickReturnYards 116
13 kickReturnTDs 0
14 kickReturns 4
15 kickingPoints 5
16 interceptionYards 34
17 interceptionTDs 0
18 passesIntercepted 1
19 interceptions 1
20 fumblesLost 2
21 turnovers 3
22 totalPenaltiesYards 0-0
23 yardsPerRushAttempt 4.8
24 rushingAttempts 21
25 rushingYards 100
26 yardsPerPass 4.2
27 completionAttempts 25-46
28 netPassingYards 193
29 totalYards 293
30 fourthDownEff 0-0
31 thirdDownEff 0-0
32 firstDowns 0
1
  • I think my main confusion is that the data is returned as type list. games = api_instance.get_team_game_stats(year=year, week=week) type(games) <class 'list'> I tried your suggested and received the following error: Traceback (most recent call last): File "test4.py", line 34, in <module> new_data = games['teams'][0] TypeError: list indices must be integers or slices, not st I have worked with JSON in similar scripts and never experienced this issue.
    – Tim R
    Aug 8, 2021 at 23:04

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.