问题:高效地将 Pandas 数据帧写入 Google BigQuery

我正在尝试使用pandas.DataFrame.to_gbq()函数在此处记录将pandas.DataFrame上传到 Google Big Query。问题是to_gbq()需要 2.3 分钟,而直接上传到 Google Cloud Storage 需要不到一分钟。我打算上传一堆数据帧(~32),每个数据帧的大小都差不多,所以我想知道什么是更快的选择。

这是我正在使用的脚本:

dataframe.to_gbq('my_dataset.my_table', 
                 'my_project_id',
                 chunksize=None, # I have tried with several chunk sizes, it runs faster when it's one big chunk (at least for me)
                 if_exists='append',
                 verbose=False
                 )

dataframe.to_csv(str(month) + '_file.csv') # the file size its 37.3 MB, this takes almost 2 seconds 
# manually upload the file into GCS GUI
print(dataframe.shape)
(363364, 21)

我的问题是,什么更快?

1.使用pandas.DataFrame.to_gbq()函数上传Dataframe

  1. Dataframe保存为 CSV,然后使用Python API将其作为文件上传到 BigQuery

  2. Dataframe保存为 CSV,然后使用将文件上传到 Google Cloud Storage 这个过程然后从 BigQuery 中读取它

更新:

备选方案 1 似乎比备选方案 2 快,(使用pd.DataFrame.to_csv()load_data_from_file()``17.9 secs more in average with 3 loops):

def load_data_from_file(dataset_id, table_id, source_file_name):
    bigquery_client = bigquery.Client()
    dataset_ref = bigquery_client.dataset(dataset_id)
    table_ref = dataset_ref.table(table_id)
    
    with open(source_file_name, 'rb') as source_file:
        # This example uses CSV, but you can use other formats.
        # See https://cloud.google.com/bigquery/loading-data
        job_config = bigquery.LoadJobConfig()
        job_config.source_format = 'text/csv'
        job_config.autodetect=True
        job = bigquery_client.load_table_from_file(
            source_file, table_ref, job_config=job_config)

    job.result()  # Waits for job to complete

    print('Loaded {} rows into {}:{}.'.format(
        job.output_rows, dataset_id, table_id))

解答

我使用以下代码对Datalab中的备选方案 1 和 3 进行了比较:

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

# Dataframe to write
my_data = [{1,2,3}]
for i in range(0,100000):
    my_data.append({1,2,3})
not_so_simple_dataframe = pd.DataFrame(data=my_data,columns=['a','b','c'])

#Alternative 1
start = time.time()
not_so_simple_dataframe.to_gbq('TestDataSet.TestTable', 
                 Context.default().project_id,
                 chunksize=10000, 
                 if_exists='append',
                 verbose=False
                 )
end = time.time()
print("time alternative 1 " + str(end - start))

#Alternative 3
start = time.time()
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 or overwrite the existing table if it exists
table_schema = bq.Schema.from_dataframe(not_so_simple_dataframe)

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

# Write the DataFrame to a BigQuery table
table.insert_data(not_so_simple_dataframe)
end = time.time()
print("time alternative 3 " + str(end - start))

以下是 n u003d {10000,100000,1000000} 的结果:

n       alternative_1  alternative_3
10000   30.72s         8.14s
100000  162.43s        70.64s
1000000 1473.57s       688.59s

从结果来看,方案 3 比方案 1 快。

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