2

I have large pandas dataframe (17 000 rows) with a filepath in each row associated with a specific json file. For each row I want to read the json file content and extract the content into a new dataframe.

The dataframe looks something like this:

                                                       
0      /home/user/processed/config1.json
1      /home/user/processed/config2.json
2      /home/user/processed/config3.json
3      /home/user/processed/config4.json
4      /home/user/processed/config5.json
...                                                  ...
16995  /home/user/processed/config16995.json
16996  /home/user/processed/config16996.json
16997  /home/user/processed/config16997.json
16998  /home/user/processed/config16998.json
16999  /home/user/processed/config16999.json

What is the most efficient way to do this?

I believe a simple for-loop might be best suited here?

import json
json_content = []

for row in df:
  with open(row) as file:
    json_content.append(json.load(file))

result = pd.DataFrame(json_content)

2 Answers 2

2

Generally, I'd try with iterrows() function (as a first hit to improve efficiency). Implementation could possibly look like that:

import json
import pandas as pd


json_content = []

for row in df.iterrows():
    with open(row) as file:
        json_content.append(json.load(file))

result = pd.Series(json_content)
2

Possible solution is the following:

# pip install pandas

import pandas as pd

#convert column with paths to list, where: : - all rows, 0 - first column
paths = df.iloc[:, 0].tolist()

all_dfs = []
for path in paths:
    df = pd.read_json(path, encoding='utf-8')
    all_dfs.append(df)

Each df in all_dfs can be accessed individually or in loop by index like all_dfs[0], all_dfs[1] and etc.

If you wish you can merge all_dfs into the single dataframe.

dfs = df.concat(all_dfs, axis=1)

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.