6

I'm trying to query information from salesforce using the simple_salesforce package in python.

The problem is that it's nesting fields that are a part of a parent-child relationship into an ordered dict within an ordered dict

I want.. from the Opportunity object, to find the id, and the accountid associated with that record.

The SOQL query may look like..

query = "select id, account.id from opportunity where closedate = last_n_days:5"

in SOQL (salesforce object query language), a dot denotes a parent child relationship in the database. So I'm trying to get the id from the opportunity object, and then the related id from the account object on that record.

for some reason the Id comes in fine, but the account.id is nested in an ordered dict within an ordered dict:

q = sf.query_all(query)

this pulls back an ordered dictionary..

OrderedDict([('totalSize', 455),
             ('done', True),
             ('records',
              [OrderedDict([('attributes',
                             OrderedDict([('type', 'Opportunity'),
                                          ('url',

I would pull the records piece of the ordereddict to create a df

df = pd.DataFrame(q['records'])

This gives me 3 columns, an ordered dict called 'attributes', Id and another ordered dict called 'Account'. I'm looking for a way to extract the ('BillingCountry', 'United States') piece out of the nested ordered dict 'Account'

[OrderedDict([('attributes',
               OrderedDict([('type', 'Opportunity'),
                            ('url',
                             '/services/data/v34.0/sobjects/Opportunity/0061B003451RhZgiHHF')])),
              ('Id', '0061B003451RhZgiHHF'),
              ('Account',
               OrderedDict([('attributes',
                             OrderedDict([('type', 'Account'),
                                          ('url',
                                           '/services/data/v34.0/sobjects/Account/001304300MviPPF3Z')])),
                            ('BillingCountry', 'United States')]))])

Edit: clarifying what I'm looking for.

I want to end with a dataframe with a column for each of the queried fields.

When I put the 'records' piece into a DataFrame using df = pd.DataFrame(sf.query_all(query)['records']) it gives me:

attributes  Id  Account
OrderedDict([('type', 'Opportunity'), ('url', '/services/data/v34.0/sobjects/Opportunity/0061B003451RhZgiHHF')])    0061B003451RhZgiHHF OrderedDict([('attributes', OrderedDict([('type', 'Account'), ('url', '/services/data/v34.0/sobjects/Account/0013000000MvkRQQAZ')])), ('BillingCountry', 'United States')])
OrderedDict([('type', 'Opportunity'), ('url', '/services/data/v34.0/sobjects/Opportunity/0061B00001Pa52QQAR')]) 0061B00001Pa52QQAR  OrderedDict([('attributes', OrderedDict([('type', 'Account'), ('url', '/services/data/v34.0/sobjects/Account/0011300001vQPxqAAG')])), ('BillingCountry', 'United States')])
OrderedDict([('type', 'Opportunity'), ('url', '/services/data/v34.0/sobjects/Opportunity/0061B00001TRu5mQAD')]) 0061B00001TRu5mQAD  OrderedDict([('attributes', OrderedDict([('type', 'Account'), ('url', '/services/data/v34.0/sobjects/Account/0011300001rfRTrAAE')])), ('BillingCountry', 'United States')])

after I remove the 'attributes' column I want the output to be

Id BillingCountry
0061B003451RhZgiHHF 'United States'
0061B00001Pa52QQAR 'United States'
0061B00001TRu5mQAD 'United States'
7
  • @StephenRauch I updated my Q to provide some clarity
    – Matt W.
    Dec 17 '17 at 23:00
  • Why are you putting this into a Dataframe? What is this providing you? What form are the records from sf.query_all(query)? Dec 17 '17 at 23:22
  • its effectively a sql query from a database. But for some reason the query function within the package returns an ordered dict. I can turn the records from the ordered dict into a dataframe, but in this case, one of the lists which become Series when I convert it, is actually another ordered dict.
    – Matt W.
    Dec 17 '17 at 23:24
  • Yes but. Why are you going into the dataframe? These seems an extra step, that does not provide any value, only confusion. Dec 17 '17 at 23:26
  • what form would you keep it in?
    – Matt W.
    Dec 17 '17 at 23:26
10

Pandas is an amazing tool for tabular data. But while it can contain Python objects, that is not its sweet spot. I suggest you extract your data from the query prior to inserting them into a pandas.Dataframe:

Extract records:

To extract the desired fields as a list of dictionaries is as easy as:

records = [dict(id=rec['Id'], country=rec['Account']['BillingCountry'])
           for rec in data['records']]

Insert records into a dataframe:

With a list of dicts, a dataframe is as easy as:

df = pd.DataFrame(records)

Test Code:

import pandas as pd
from collections import OrderedDict

data = OrderedDict([
    ('totalSize', 455),
    ('done', True),
    ('records', [
        OrderedDict([
            ('attributes', OrderedDict([('type', 'Opportunity'), ('url', '/services/data/v34.0/sobjects/Opportunity/0061B003451RhZgiHHF')])),
            ('Id', '0061B003451RhZgiHHF'),
            ('Account', OrderedDict([('attributes', OrderedDict([('type', 'Account'), ('url', '/services/data/v34.0/sobjects/Account/0013000000MvkRQQAZ')])),
                                     ('BillingCountry', 'United States')])),
        ]),
        OrderedDict([
            ('attributes', OrderedDict([('type', 'Opportunity'), ('url', '/services/data/v34.0/sobjects/Opportunity/0061B00001Pa52QQAR')])),
            ('Id', '0061B00001Pa52QQAR'),
            ('Account', OrderedDict([('attributes', OrderedDict([('type', 'Account'), ('url', '/services/data/v34.0/sobjects/Account/0011300001vQPxqAAG')])),
                                     ('BillingCountry', 'United States')])),
        ]),
        OrderedDict([
            ('attributes', OrderedDict([('type', 'Opportunity'), ('url', '/services/data/v34.0/sobjects/Opportunity/0061B00001TRu5mQAD')])),
            ('Id', '0061B00001TRu5mQAD'),
            ('Account', OrderedDict([('attributes', OrderedDict([('type', 'Account'), ('url', '/services/data/v34.0/sobjects/Account/0011300001rfRTrAAE')])),
                                     ('BillingCountry', 'United States')])),
        ]),
    ])
])

records = [dict(id=rec['Id'], country=rec['Account']['BillingCountry'])
           for rec in data['records']]
for r in records:
    print(r)

print(pd.DataFrame(records))

Test Results:

{'country': 'United States', 'id': '0061B003451RhZgiHHF'}
{'country': 'United States', 'id': '0061B00001Pa52QQAR'}
{'country': 'United States', 'id': '0061B00001TRu5mQAD'}

         country                   id
0  United States  0061B003451RhZgiHHF
1  United States   0061B00001Pa52QQAR
2  United States   0061B00001TRu5mQAD
1
  • 1
    perfect answer. Well explained, I learned a lot, and it solved my issue. Thanks very much @Stephen Rauch
    – Matt W.
    Dec 18 '17 at 1:06
2

Pandas can read ordered dicts.

import pandas as pd
from simple_salesforce import Salesforce

sf = Salesforce(username='your_username',   
                password='your_password',
                security_token='your_token')

query = "select id, account.id from opportunity where closedate = last_n_days:5"
df = pd.DataFrame(sf.query_all(query)['records']).drop(columns='attributes')
1
  • 1
    it can, but this doesn't solve the issue where account.id comes in as an ordered dict as well, not as a field. the account table is a sub table that is related to the opportunity table. The dictionary in Stephen's answer is how to solve for that. But thanks!
    – Matt W.
    Jul 19 '18 at 13:39

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.