Skip to content

mbrummerstedt/user_agent_parser_gcp

Folders and files

NameName
Last commit message
Last commit date

Latest commit

 

History

5 Commits
 
 
 
 
 
 

Repository files navigation

Parse new user_agents in BigQuery

The purpose of the function:

Segment collects the user-agent for client-side events, which contains information about the device that visits the site. This string holds little information to humans in its raw form. We, therefore, need to parse the raw user-agents to extract understandable information from them.

Python has a good library for this, which is why we use a python cloud-function for the job

Steps in Function:

  1. Check if the destination dataset exist. If not create it.
  2. Check if the destination table exist. If it exist we load only new user agents that has not been parsed before. Else we load all user_agents
  3. Split large number of user agents into batches for eaier debugging.
  4. Use the user-agent parser library to parse each new user-agent
  5. Enforce the correct data types for each column
  6. Load results into the user_agent_lookup table in the marketing project

How to setup

  1. Have a table with user_agents and a timestamp column in BigQuery
  2. Create a Google Cloud Storage Bucket that can be used for staging files
  3. Create a pub/sub topic
  4. Create a Cloud Schedueler that sends messages to your pub/sub topic
  5. Create a Google Cloud Function with the code that get's triggered by your pub/sub topic.

Add the following runtime variables to your cloud function:

  • project_id: The id of of your GCP project
  • data_location: The location of your BigQuery data (e.g. EU or US)
  • source_schema_name: The name of your dataset where the user_agent data is stored
  • source_table_name: The table name where the user_agent data is stored
  • source_partition_by_field: The partition by field of the source table. If it is not partitioned just pass a timestamp column.
  • source_timestamp_field: The timestamp column name of the primary timestamp of your source table.
  • source_user_agent_field_name: The user_agent column name of your source table.
  • destination_schema_name: The name of your destination dataset.
  • destination_table_name: The name of your destination table where the results will be loaded into
  • gcs_bucket_name: The name of your Google Cloud Storage bucket
  • local_folder_path: The folder path where the script can write a temporary CSV file to. This should be /tmp/ for Cloud functions

About

This code can run in a Google Cloud Function and parse user_agents located in BigQuery

Resources

Stars

Watchers

Forks

Releases

No releases published

Packages

No packages published

Languages