json_str = '[
"name": "t1",
"props": [
    "abc": 10012,
    "def": "OBJECT"
    "abc": 999123,
    "def": "SUBJECT"
"id": 1,
"title": "king"
"name": "t2",
"props": [
    "abc": 789456,
    "def": "PRODUCT"
"id": 2,
"title": "queen"

Using above JSON, I want to create one dataframe that expands the props list and concats to main json columns.

In the end end I want to end up with these columns in df:


With rows:




When I try this:

jdata = json.loads(json_str)
pd.concat([pd.DataFrame(jdata), pd.DataFrame(list(jdata['props']))], axis=1).drop('props', 1)

I get this error:

list indices must be integers or slices, not str

Also tried this:

pd.concat([pd.DataFrame(jdata), pd.DataFrame([pd.json_normalize(jdata, "props", errors="ignore", record_prefix="")])], axis=1).drop('props', 1)

throws this error:

Must pass 2-d input. shape={values.shape}

Also tried this:

result = pd.json_normalize(jdata, 'props', errors="ignore", record_prefix="props.")
result2 = pd.json_normalize(jdata, errors="ignore", record_prefix="tmpl.")
df = pd.concat([result, result2], axis=1).drop('props', 1)

No error thrown here, but the concat doesn't line up the two df's. The rows are out of sync.

Thanks for any help.

  • is it a string or json data? – sammywemmy Apr 21 at 1:02
  • 1
    it's json data after json.loads(json_str) – A.G. Apr 21 at 1:03

I think that pd.json_normalize is probably the way to go, with a couple minor tweaks: first explode the props column to get one row per value in the array, and then use apply(pd.Series) to turn the dictionaries into their own columns:

# I think you already did this, but start by turning the str into proper json
>>> jdata = json.loads(json_str)
>>> result = pd.json_normalize(jdata).explode("props")   
>>> result[["abc", "def"]] = result.props.apply(pd.Series) 
>>> df = result[["id", "title", "name", "abc", "def"]]

>>> df

   id  title name     abc      def
0   1   king   t1   10012   OBJECT
0   1   king   t1  999123  SUBJECT
1   2  queen   t2  789456  PRODUCT

Edit: As per your comment, you can change things around a bit to make it work without having to explicitly refer to the columns, except for props:

>>> jdata = json.loads(json_str)
>>> result = pd.json_normalize(jdata).explode("props")   
>>> result2 = result.pop("props").apply(pd.Series)
>>> df = pd.concat([result, result2], axis=1)

  name  id  title     abc      def
0   t1   1   king   10012   OBJECT
0   t1   1   king  999123  SUBJECT
1   t2   2  queen  789456  PRODUCT
  • Thanks for your reply, much appreciated! This is good, but is there a way to do this without referring to attribute names, except may the "props" attribute? – A.G. Apr 21 at 1:15
  • @A.G. I tried to do that in an edit, is that along the lines of what you were thinking? – sacuL Apr 21 at 1:20

You could use json_normalize to simplify the extraction; for each record_path there will be an associated meta:

json_normalize(data = jdata, 
               record_path = 'props', 
               meta = ['name', 'id', 'title']
      abc      def name id  title
0   10012   OBJECT   t1  1   king
1  999123  SUBJECT   t1  1   king
2  789456  PRODUCT   t2  2  queen
  • 1
    Much better than my (now deleted) answer! +1 – sacuL Apr 21 at 1:23
  • I like you deleted answer and it works perfectly!! The thing with this one is again it refers to property names. If I could upvote deleted answers, I would :) – A.G. Apr 21 at 1:25
  • yes, @sacuL, I think you should undelete it, since that is what the OP prefers – sammywemmy Apr 21 at 3:43

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