4

Given a pandas Dataframe which contains some data, what is the best to store this data to Firebase?

Should I convert the Dataframe to a local file (e.g. .csv, .txt) and then upload it on Firebase Storage, or is it also possible to directly store the pandas Dataframe without conversion? Or are there better best practices?

Update 01/03 - So far I've come with this solution, which requires writing a csv file locally, then reading it in and uploading it and then deleting the local file. I doubt however that this is the most efficient method, thus I would like to know if it can be done better and quicker?

import os
import firebase_admin
from firebase_admin import db, storage

cred   = firebase_admin.credentials.Certificate(cert_json)
app    = firebase_admin.initialize_app(cred, config)
bucket = storage.bucket(app=app)

def upload_df(df, data_id):
    """
    Upload a Dataframe as a csv to Firebase Storage
    :return: storage_ref
    """

    # Storage location + extension
    storage_ref = data_id + ".csv"

    # Store locally
    df.to_csv(data_id)

    # Upload to Firebase Storage
    blob    = bucket.blob(storage_ref)
    with open(data_id,'rb') as local_file:
        blob.upload_from_file(local_file)

    # Delete locally
    os.remove(data_id)

    return storage_ref
  • Do you want to query it or just store the file? If you want to perform queries on the data then you need to obey the Firebase database data types. – b-fg Dec 21 '18 at 14:47
  • No query just to retrieve the data again as a dataframe – JohnAndrews Dec 21 '18 at 15:04
  • Have tried using this pypi.org/project/python-firebase. I think you have to write a custom script. – Umer Jan 2 '19 at 10:29
  • I don't think firebase is appropriate for a tabular data structure but the best way I can think of is to use to_json method of the DataFrame with orient='records' and save each row as a document. If it's a small table you can also use orient='table' which stores meta data (data types etc.) as well. – ayhan Jan 2 '19 at 15:45
1

if you just want to reduce code length and the steps of creating and deleting files, you can use upload_from_string:

import firebase_admin
from firebase_admin import db, storage

cred   = firebase_admin.credentials.Certificate(cert_json)
app    = firebase_admin.initialize_app(cred, config)
bucket = storage.bucket(app=app)

def upload_df(df, data_id):
    """
    Upload a Dataframe as a csv to Firebase Storage
    :return: storage_ref
    """
    storage_ref = data_id + '.csv'
    blob = bucket.blob(storage_ref)
    blob.upload_from_string(df.to_csv())

    return storage_ref

https://googleapis.github.io/google-cloud-python/latest/storage/blobs.html#google.cloud.storage.blob.Blob.upload_from_string

4
+25

With python-firebase and to_dict:

postdata = my_df.to_dict()

# Assumes any auth/headers you need are already taken care of.
result = firebase.post('/my_endpoint', postdata, {'print': 'pretty'})
print(result)
# Snapshot info

You can get the data back using the snapshot info and endpoint, and reestablish the df with from_dict(). You could adapt this solution to SQL and JSON solutions, which pandas also has support for.

Alternatively and depending on where you script executes from, you might consider treating firebase as a db and using the dbapi from firebase_admin (check this out.)

As for whether it's according to best practice, it's difficult to say without knowing anything about your use case.

  • You assume its better to store it to Firebase instead of Firebase Storage? – JohnAndrews Jan 2 '19 at 15:38
  • You mean firebase db vs firebase storage? Again that's more specific to your use case – Charles Landau Jan 2 '19 at 15:40
  • My question relates to Firebase Storage not the DB as in your answer. – JohnAndrews Jan 3 '19 at 8:55
  • 2
    My answer was for firebase storage AND suggested a firebase DB alternative – Charles Landau Jan 3 '19 at 16:41

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