Hello and thanks for your time and consideration. I am developing a Jupyter Notebook in the Google Cloud Platform / Datalab. I have created a Pandas DataFrame and would like to write this DataFrame to both Google Cloud Storage(GCS) and/or BigQuery. I have a bucket in GCS and have, via the following code, created the following objects:

import gcp
import gcp.storage as storage
project = gcp.Context.default().project_id    
bucket_name = 'steve-temp'           
bucket_path  = bucket_name   
bucket = storage.Bucket(bucket_path)

I have tried various approaches based on Google Datalab documentation but continue to fail. Thanks

up vote 8 down vote accepted

Try the following working example:

from datalab.context import Context
import google.datalab.storage as storage
import google.datalab.bigquery as bq
import pandas as pd

# Dataframe to write
simple_dataframe = pd.DataFrame(data=[{1,2,3},{4,5,6}],columns=['a','b','c'])

sample_bucket_name = Context.default().project_id + '-datalab-example'
sample_bucket_path = 'gs://' + sample_bucket_name
sample_bucket_object = sample_bucket_path + '/Hello.txt'
bigquery_dataset_name = 'TestDataSet'
bigquery_table_name = 'TestTable'

# Define storage bucket
sample_bucket = storage.Bucket(sample_bucket_name)

# Create storage bucket if it does not exist
if not sample_bucket.exists():

# Define BigQuery dataset and table
dataset = bq.Dataset(bigquery_dataset_name)
table = bq.Table(bigquery_dataset_name + '.' + bigquery_table_name)

# Create BigQuery dataset
if not dataset.exists():

# Create or overwrite the existing table if it exists
table_schema = bq.Schema.from_data(simple_dataframe)
table.create(schema = table_schema, overwrite = True)

# Write the DataFrame to GCS (Google Cloud Storage)
%storage write --variable simple_dataframe --object $sample_bucket_object

# Write the DataFrame to a BigQuery table

I used this example, and the _table.py file from the datalab github site as a reference. You can find other datalab source code files at this link.

  • Just a note: I believe you need to execute the %%storage commands in a separate cell from the Python code? – dartdog Mar 31 '16 at 16:13
  • It depends on whether you want to execute a line magic or cell magic command. For cell magic it is %%storage, for line magic it is %storage. It's ok to use line magic commands in the same cell as other code. Cell magic commands must be in a separate cell from other code – Anthonios Partheniou Mar 31 '16 at 16:43
  • Thanks for the clarification – dartdog Mar 31 '16 at 17:24
  • Thanks very much Anthonios... I was able to successfully create all of the objects (e.g., the table and the schema are in my Project/Dataset in BQ). However, no rows were actually written to the table and no error messages were generated. – EcoWarrior Mar 31 '16 at 19:45
  • A populated table was generated in the Jupyter Notebook after table.Insert_data(out) and this line was at the bottom of that table: (rows: 0, edw-p19090000:ClickADS2.ADS_Logit1) – EcoWarrior Mar 31 '16 at 19:52

Using the Google Cloud Datalab documentation

import datalab.storage as gcs

Writing a Pandas DataFrame to BigQuery

Update on @Anthonios Partheniou's answer.
The code is a bit different now - as of Nov. 29 2017

To define a BigQuery dataset

Pass a tuple containing project_id and dataset_id to bq.Dataset.

# define a BigQuery dataset    
bigquery_dataset_name = ('project_id', 'dataset_id')
dataset = bq.Dataset(name = bigquery_dataset_name)

To define a BigQuery table

Pass a tuple containing project_id, dataset_id and the table name to bq.Table.

# define a BigQuery table    
bigquery_table_name = ('project_id', 'dataset_id', 'table_name')
table = bq.Table(bigquery_table_name)

Create the dataset/ table and write to table in BQ

# Create BigQuery dataset
if not dataset.exists():

# Create or overwrite the existing table if it exists
table_schema = bq.Schema.from_data(dataFrame_name)
table.create(schema = table_schema, overwrite = True)

# Write the DataFrame to a BigQuery table

I have a little bit simpler solution for the task using Dask. You can convert your DataFrame to Dask DataFrame, which can be written to csv on Cloud Storage

import dask.dataframe as dd
import pandas
df # your Pandas DataFrame
ddf = dd.from_pandas(df,npartitions=1, sort=True)
dd.to_csv('gs://YOUR_BUCKET/ddf-*.csv', index=False, sep=',', header=False,  
                               storage_options={'token': gcs.session.credentials})  

I think you need to load it into a plain bytes variable and use a %%storage write --variable $sample_bucketpath(see the doc) in a separate cell... I'm still figuring it out... But That is roughly the inverse of what I needed to do to read a CSV file in, I don't know if it makes a difference on write but I had to use BytesIO to read the buffer created by the %% storage read command... Hope it helps, let me know!

Your Answer

By clicking "Post Your Answer", you acknowledge that you have read our updated terms of service, privacy policy and cookie policy, and that your continued use of the website is subject to these policies.

Not the answer you're looking for? Browse other questions tagged or ask your own question.