Skip to main content

Singer target for Snowflake, built with the Meltano SDK for Singer Targets.

Project description

target-snowflake

Target for Snowflake.

Built with the Meltano Singer SDK.

Capabilities

  • about
  • stream-maps
  • schema-flattening
  • target-schema

Settings

Setting Required Default Description
user True None The login name for your Snowflake user.
password False None The password for your Snowflake user.
private_key_path False None Path to file containing private key.
private_key_passphrase False None Passphrase to decrypt private key if encrypted.
account True None Your account identifier. See Account Identifiers.
database True None The initial database for the Snowflake session.
schema False None The initial schema for the Snowflake session.
warehouse False None The initial warehouse for the session.
role False None The initial role for the session.
add_record_metadata False 1 Whether to add metadata columns.
clean_up_batch_files False 1 Whether to remove batch files after processing.
default_target_schema False None The default target database schema name to use for all streams.
hard_delete False 0 Hard delete records.
load_method False TargetLoadMethods.APPEND_ONLY The method to use when loading data into the destination. append-only will always write all input records whether that records already exists or not. upsert will update existing records and insert new records. overwrite will delete all existing records and insert all input records.
batch_size_rows False None Maximum number of rows in each batch.
validate_records False 1 Whether to validate the schema of the incoming streams.
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.
faker_config False None Config for the Faker instance variable fake used within map expressions. Only applicable if the plugin specifies faker as an addtional dependency (through the singer-sdk faker extra or directly).
faker_config.seed False None Value to seed the Faker generator for deterministic output: https://faker.readthedocs.io/en/master/#seeding-the-generator
faker_config.locale False None One or more LCID locale strings to produce localized output for: https://faker.readthedocs.io/en/master/#localization
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.
use_browser_authentication False False If authentication should be done using SSO (via external browser). See See SSO browser authentication.

A full list of supported settings and capabilities is available by running: target-snowflake --about

Initializing a Snowflake Account

This target has an interactive feature that will help you get a Snowflake account initialized with everything needed to get started loading data.

  • User
  • Role
  • Warehouse
  • Database
  • Proper grants

The CLI will ask you to provide information about the new user/role/etc. you want to create but it will also need SYSADMIN credentials to execute the queries. You should prepare the following inputs:

  • Account
  • User that has SYSADMIN and SECURITYADMIN access. These comes default with the user that created the Snowflake account.
  • The password for your SYSADMIN user.

Run the following command to get started with the interactive CLI. Note - the CLI will print the SQL queries it is planning to run and confirm with you before it makes any changes.

poetry run target-snowflake --initialize

# Alternatively using Meltano CLI
meltano invoke target-snowflake --initialize

The CLI also has a "dry run" mode that will print the queries without executing them.

Check out the demo of this on YouTube.

Configure using environment variables

This Singer target 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.

Usage

You can easily run target-snowflake by itself or in a pipeline using Meltano.

Executing the Target Directly

target-snowflake --version
target-snowflake --help
# Test using the "Carbon Intensity" sample:
tap-carbon-intensity | target-snowflake --config /path/to/target-snowflake-config.json

Developer Resources

Initialize your Development Environment

pipx install poetry
poetry install

Create and Run Tests

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

poetry run pytest

You can also test the target-snowflake CLI interface directly using poetry run:

poetry run target-snowflake --help

Testing with Meltano

Note: This target 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.

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

# Install meltano
pipx install meltano
# Initialize meltano within this directory
cd target-snowflake
meltano install

Now you can test and orchestrate using Meltano:

# Test invocation:
meltano invoke target-snowflake --version
# OR run a test `elt` pipeline with the Carbon Intensity sample tap:
meltano run tap-carbon-intensity target-snowflake

SDK Dev Guide

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

Project details


Download files

Download the file for your platform. If you're not sure which to choose, learn more about installing packages.

Source Distribution

meltanolabs_target_snowflake-0.10.0rc1.tar.gz (17.6 kB view details)

Uploaded Source

Built Distribution

File details

Details for the file meltanolabs_target_snowflake-0.10.0rc1.tar.gz.

File metadata

File hashes

Hashes for meltanolabs_target_snowflake-0.10.0rc1.tar.gz
Algorithm Hash digest
SHA256 0c0f9aa5b96ebbc8f7d4af7adc78d8ce29d82cce994f09889c40ffc828689f46
MD5 b39fa9d49a26515fba7e36e8f5a5fa6f
BLAKE2b-256 a6261f9d126406f3717f7654217717bf2df6895897d5a2ff4ccf498bb3d0c179

See more details on using hashes here.

File details

Details for the file meltanolabs_target_snowflake-0.10.0rc1-py3-none-any.whl.

File metadata

File hashes

Hashes for meltanolabs_target_snowflake-0.10.0rc1-py3-none-any.whl
Algorithm Hash digest
SHA256 068ec62cbea4cccf577d9bd0ff137580c8e94b9fd042606d4576554b4f32d72a
MD5 3064c1e4edb39ec7181d94bcfcf46b6a
BLAKE2b-256 2076fcb16845a8cbff8f55c052b8d35bc72b1fd93bf2ee3e589c27b85f278567

See more details on using hashes here.

Supported by

AWS AWS Cloud computing and Security Sponsor Datadog Datadog Monitoring Fastly Fastly CDN Google Google Download Analytics Microsoft Microsoft PSF Sponsor Pingdom Pingdom Monitoring Sentry Sentry Error logging StatusPage StatusPage Status page