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A singer tap for extracting Gmail emails, built with the Meltano Singer SDK

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tap-gmail

Gmail tap class.

Built with the Meltano SDK for Singer Taps and Targets.

Capabilities

  • catalog
  • state
  • discover
  • about
  • stream-maps
  • schema-flattening

Settings

Setting Required Default Description
oauth_credentials.client_id False None Your google client_id
oauth_credentials.client_secret False None Your google client_secret
oauth_credentials.refresh_token False None Your google refresh token
user_id False me The user's email address. The special value me can be used to indicate the authenticated user. More info here
messages.include_spam_trash False 0 Include messages from SPAM and TRASH in the results.
stream_maps False None Config object for stream maps capability. For more information check out Stream Maps.
stream_map_config False None User-defined config values to be used within map expressions.
flattening_enabled False None 'True' to enable schema flattening and automatically expand nested properties.
flattening_max_depth False None The max depth to flatten schemas.

A full list of supported settings and capabilities is available by running: tap-gmail --about

Installation

  • Developer TODO: Update the below as needed to correctly describe the install procedure. For instance, if you do not have a PyPi repo, or if you want users to directly install from your git repo, you can modify this step as appropriate.
poetry install
poetry run tap-gmail

Configuration

Configure using environment variables

This Singer tap will automatically import any environment variables within the working directory's .env if the --config=ENV is provided, such that config values will be considered if a matching environment variable is set either in the terminal context or in the .env file.

Source Authentication and Authorization

Look at the ./generate_refresh_token.py file to generate a refresh token

Usage

You can easily run tap-gmail by itself or in a pipeline using Meltano.

Executing the Tap Directly

tap-gmail --version
tap-gmail --help
tap-gmail --config CONFIG --discover > ./catalog.json

Developer Resources

  • Developer TODO: As a first step, scan the entire project for the text "TODO:" and complete any recommended steps, deleting the "TODO" references once completed.

Initialize your Development Environment

pipx install poetry
poetry install

Create and Run Tests

Create tests within the tap_gmail/tests subfolder and then run:

poetry run pytest

You can also test the tap-gmail CLI interface directly using poetry run:

poetry run tap-gmail --help

Testing with Meltano

Note: This tap will work in any Singer environment and does not require Meltano. Examples here are for convenience and to streamline end-to-end orchestration scenarios.

Your project comes with a custom meltano.yml project file already created. Open the meltano.yml and follow any "TODO" items listed in the file.

Next, install Meltano (if you haven't already) and any needed plugins:

# Install meltano
pipx install meltano
# Initialize meltano within this directory
cd tap-gmail
meltano install

Now you can test and orchestrate using Meltano:

# Test invocation:
meltano invoke tap-gmail --version
# OR run a test `elt` pipeline:
meltano elt tap-gmail target-jsonl

SDK Dev Guide

See the dev guide for more instructions on how to use the SDK to develop your own taps and targets.

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A singer tap for extracting Gmail emails, built with the Meltano Singer SDK

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