0

I've been trying to convert a json response from an api to a full panadas dataframe. I tried json normalize to achieve it unfortunately i was able to split it only to one level.

response = {
    "data": 
    {
        "result": [
            {
                "agent_info": {
                        "agent_id": "q321", 
                        "instances": [
                            {
                                "last_run_end": "2023-01-19T15:15:55.491Z", 
                                "mode": "Advanced", 
                                "is_enabled": "True", 
                                "run_duration": "00:00:00:031", 
                                "name": "john", 
                                "status": "Running", 
                                "node_id": "wq"
                            }, 
                            {
                                "last_run_end": "2023-01-19T15:15:55.491Z", 
                                "mode": "Advanced", 
                                "is_enabled": "True", 
                                "run_duration": "00:00:00:031", 
                                "name": "chris", 
                                "status": "Running", 
                                "node_id": "wq"
                            }
                        ]
                    }
                }, 
                {
                "agent_info": {
                        "agent_id": "q123", 
                        "instances": [
                            {
                                "last_run_end": "2023-01-19T15:15:55.491Z", 
                                "mode": "Advanced", 
                                "is_enabled": "True", 
                                "run_duration": "00:00:00:031", 
                                "name": "john", 
                                "status": "Running", 
                                "node_id": "wq"
                            }
                        ]
                    }
                }
            ]
        },
    "status": 200, 
    "servedBy": "ABC"
}
df=pd.json_normalize(response,["data",["result",]],["status","servedBy"])
df

Result

agent_info.agent_id                               agent_info.instances  \
0                q321  [{'last_run_end': '2023-01-19T15:15:55.491Z', ...   
1                q123  [{'last_run_end': '2023-01-19T15:15:55.491Z', ...   

  status servedBy  
0    200      ABC  
1    200      ABC  

what i would like is that every key value to be a seperate column.. Any help or pointers ?

0

2 Answers 2

2

You can first explode 'agent_info.instances' then create a dataframe from the exploded values that you will concat to the other columns:

df = pd.json_normalize(response,["data",["result",]],["status","servedBy"]).explode('agent_info.instances').reset_index(drop=True)
nested_val = pd.DataFrame(df['agent_info.instances'].values.tolist())
print(pd.concat([df.drop('agent_info.instances', axis=1), nested_val], axis=1))

output:

  agent_info.agent_id status servedBy              last_run_end      mode is_enabled  run_duration   name   status node_id
0                q321    200      ABC  2023-01-19T15:15:55.491Z  Advanced       True  00:00:00:031   john  Running      wq
1                q321    200      ABC  2023-01-19T15:15:55.491Z  Advanced       True  00:00:00:031  chris  Running      wq
2                q123    200      ABC  2023-01-19T15:15:55.491Z  Advanced       True  00:00:00:031   john  Running      wq
Sign up to request clarification or add additional context in comments.

Comments

2

Does this work for you?

df=pd.json_normalize(
    data = response,
    record_path = ["data","result","agent_info","instances"],
    meta = ["status","servedBy",["data","result","agent_info","agent_id"]],
    record_prefix = "agent.instance.",
)
print(df.T)

Output (transposed to fit better on the screen)

enter image description here

Comments

Your Answer

By clicking “Post Your Answer”, you agree to our terms of service and acknowledge you have read our privacy policy.

Start asking to get answers

Find the answer to your question by asking.

Ask question

Explore related questions

See similar questions with these tags.