I’m trying to convert a flat structured CSV into a nested JSON structure. The CSV is generated from SQL which creates multiple rows for each primary id. The CSV is structured as follows:

PrimaryId,FirstName,LastName,City,CarName,DogName
100,John,Smith,NewYork,Toyota,Spike
100,John,Smith,NewYork,BMW,Spike
100,John,Smith,NewYork,Toyota,Rusty
100,John,Smith,NewYork,BMW,Rusty
101,Ben,Swan,Sydney,Volkswagen,Buddy
101,Ben,Swan,Sydney,Ford,Buddy
101,Ben,Swan,Sydney,Audi,Buddy
101,Ben,Swan,Sydney,Volkswagen,Max
101,Ben,Swan,Sydney,Ford,Max
101,Ben,Swan,Sydney,Audi,Max
102,Julia,Brown,London,Mini,Lucy

The desired JSON output is:

{
    "data": [
        {
            "City": "NewYork", 
            "FirstName": "John", 
            "PrimaryId": 100, 
            "LastName": "Smith", 
            "CarName": [
                "Toyota", 
                "BMW"
            ], 
            "DogName": [
                "Spike", 
                "Rusty"
            ]
        }, 
        {
            "City": "Sydney", 
            "FirstName": "Ben", 
            "PrimaryId": 101, 
            "LastName": "Swan", 
            "CarName": [
                "Volkswagen", 
                "Ford", 
                "Audi"
            ], 
            "DogName": [
                "Buddy", 
                "Max"
            ]
        }, 
        {
            "City": "London", 
            "FirstName": "Julia", 
            "PrimaryId": 102, 
            "LastName": "Brown", 
            "CarName": [
                "Mini"
            ], 
            "DogName": [
                "Lucy"
            ]
        }
    ]
}

Both this post and this one have helped but I'm yet to create the correct structure.

closed as off-topic by Antti Haapala, idjaw, martineau, Reimeus, Andras Deak Mar 28 '16 at 13:58

This question appears to be off-topic. The users who voted to close gave this specific reason:

  • "Questions seeking debugging help ("why isn't this code working?") must include the desired behavior, a specific problem or error and the shortest code necessary to reproduce it in the question itself. Questions without a clear problem statement are not useful to other readers. See: How to create a Minimal, Complete, and Verifiable example." – Antti Haapala, idjaw, martineau, Reimeus, Andras Deak
If this question can be reworded to fit the rules in the help center, please edit the question.

  • 5
    Please post your code here, i.e. what have you tried. Also your csv seems to have extra spaces, and your json definitely isn't json either. – Antti Haapala Mar 13 '16 at 11:27
up vote 1 down vote accepted

Your data, converted to valid csv is saved in data.csv:

PrimaryId,FirstName,LastName,City,CarName,DogName
100,John,Smith,NewYork,Toyota,Spike
100,John,Smith,NewYork,BMW,Spike
100,John,Smith,NewYork,Toyota,Rusty
100,John,Smith,NewYork,BMW,Rusty
101,Ben,Swan,Sydney,Volkswagen,Buddy
101,Ben,Swan,Sydney,Ford,Buddy
101,Ben,Swan,Sydney,Audi,Buddy
101,Ben,Swan,Sydney,Volkswagen,Max
101,Ben,Swan,Sydney,Ford,Max
101,Ben,Swan,Sydney,Audi,Max
102,Julia,Brown,London,Mini,Lucy

Using pandas to do the heavy lifting, and assuming this valid csv file, this is one way of doing what you want:

import json
import pandas as pd

df = pd.read_csv('data.csv')

def get_nested_rec(key, grp):
    rec = {}
    rec['PrimaryId'] = key[0]
    rec['FirstName'] = key[1]
    rec['LastName'] = key[2]
    rec['City'] = key[3]

    for field in ['CarName','DogName']:
        rec[field] = list(grp[field].unique())

    return rec

records = []
for key, grp in df.groupby(['PrimaryId','FirstName','LastName','City']):
    rec = get_nested_rec(key, grp)
    records.append(rec)

records = dict(data = records)

print(json.dumps(records, indent=4))

And the result:

{
    "data": [
        {
            "City": "NewYork", 
            "FirstName": "John", 
            "PrimaryId": 100, 
            "LastName": "Smith", 
            "CarName": [
                "Toyota", 
                "BMW"
            ], 
            "DogName": [
                "Spike", 
                "Rusty"
            ]
        }, 
        {
            "City": "Sydney", 
            "FirstName": "Ben", 
            "PrimaryId": 101, 
            "LastName": "Swan", 
            "CarName": [
                "Volkswagen", 
                "Ford", 
                "Audi"
            ], 
            "DogName": [
                "Buddy", 
                "Max"
            ]
        }, 
        {
            "City": "London", 
            "FirstName": "Julia", 
            "PrimaryId": 102, 
            "LastName": "Brown", 
            "CarName": [
                "Mini"
            ], 
            "DogName": [
                "Lucy"
            ]
        }
    ]
}

Here's the general way of doing so with csv.DictReader.

Start by loading the data:

import csv
import itertools
with open('stuff.csv', 'rb') as csvfile:
    all_ = list(csv.DictReader(csvfile))

Now, you can use itertools.groupby to group and process each group. For example

d = []
for k, g in itertools.groupby(
        all_, 
        key=lambda r: (r['PrimaryId'], r[' LastName'])):
    d.append({
        'PrimaryId': k[0],
        'LastName': k[1],
        'CarName': [e[' CarName'] for e in g]
        })

Will group by primary id and last name, and make a list of cars.

Once you have something like this, you can just use json.dumps().

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