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)
bucket.exists()  

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():
    sample_bucket.create()

# 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():
    dataset.create()

# 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
table.insert(simple_dataframe)

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
gcs.Bucket('bucket-name').item('to/data.csv').write_to(simple_dataframe.to_csv(),'text/csv')

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():
    dataset.create()

# 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
table.insert(dataFrame_name)

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!

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