Skip to main content

PiperRider CLI

Project description

PipeRider

Code review of data in dbt

ci-tests release pipy python downloads license InfuseAI Discord Invite

Docs | Roadmap | Discord | Blog

Code review for data in dbt

PipeRider automatically compares your data to highlight the difference in impacted downstream dbt models so you can merge your Pull Requests with confidence.

How it works:

  1. Easy to connect your datasource -> PipeRider leverages the connection profiles in your dbt project to connect to the data warehouse
  2. Generate profiling statistics of your models to get a high-level overview of your data
  3. Compare local changes with the main branch in a HTML report
  4. Post a quick summary of the data changes to your PR, so others can be confident too

Core concepts

  • Easy to install: Leveraging dbt's configuration settings, PipeRider can be installed within 2 minutes
  • Fast comparison: by collecting profiling statistics (e.g. uniqueness, averages, quantiles, histogram) and metric queries, comparing downstream data impact takes little time, speeding up your team's review time
  • Valuable insights: various profiling statistics displayed in the HTML report give fast insights into your data

Quickstart

1. Install PipeRider

Navigate to your dbt folder, and install pipeirder.

pip install piperider

PipeRider supports the following data connectors

connectors install
snowflake pip install 'piperider[snowflake]'
postgres pip install 'piperider[postgres]'
bigquery pip install 'piperider[bigquery]'
redshift pip install 'piperider[redshift]'
parquet pip install 'piperider[parquet]'
csv pip install 'piperider[csv]'
duckdb pip install 'piperider[duckdb]'

2. Initialize PipeRider

Go to your dbt project, and initalize PipeRider.

piperider init

3. Run PipeRider

Collect profiling statistics by using

piperider run

4. Run PipeRider in another branch

Go to another branch to compare your local changes, by running

dbt build
piperider run --open

4. Compare your changes

You then can compare the branch of your new Pull Request against the main branch and explore the impact of your changes by opening the generated HTML comparison report

piperider compare-reports --last

6. Add a markdown summary

You can add a Markdown summary of the data changes to your Pull Request, so that you're reviewer can merge with confidence.

Markdown summaries and reports are stored in .piperider/comparisons/<timestamp>

Features

  • Use PipeRider for exploratory data analysis by doing piperider run to view the profiling statistics of a single data source, even in an environment that doesn't use dbt
  • Leverage dbt-defined metrics to have a quick overview of the impact on your most important metrics
  • Include PipeRider into your CI process via PipeRider Cloud or self-hosted to be confident of every PRs that is submitted
  • Benefit from dbt's features such as Slim CI, custom schema, custom database, node selection, dbt test result

PipeRider Cloud (beta)

PipeRider Cloud offers a hosted version for HTML reports, including features such as alerts and historical trend watching. Get early beta access by signing up on our website: https://piperider.io

Example Report Demo

See Generated Single-Run Report

See Comparison Report

Development

See setup dev environment and the contributing guildlines to get started.

We love chatting with our users! Let us know if you have any questions, feedback, or need help trying out PipeRider! :heart:

Project details


Release history Release notifications | RSS feed

Download files

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

Source Distribution

piperider-nightly-0.19.0.20230206.tar.gz (3.6 MB view details)

Uploaded Source

Built Distribution

File details

Details for the file piperider-nightly-0.19.0.20230206.tar.gz.

File metadata

File hashes

Hashes for piperider-nightly-0.19.0.20230206.tar.gz
Algorithm Hash digest
SHA256 8f42ec468ff0b78dacf76af9d0dfcf4b1da6d01f22ebd0ea3c631491716d5a05
MD5 c05c12eb2fc377b4cb950f393f177e31
BLAKE2b-256 f418248b2fc4573e0bfc8e693271afd01089ac8e12c7426f8cb017155e3038d1

See more details on using hashes here.

File details

Details for the file piperider_nightly-0.19.0.20230206-py3-none-any.whl.

File metadata

File hashes

Hashes for piperider_nightly-0.19.0.20230206-py3-none-any.whl
Algorithm Hash digest
SHA256 e363cb91569c86e1e229fd93355b229beac74fe8f0b91e5d9a90024d9a2a5698
MD5 4492f2bc89518881792bde3f61ab8916
BLAKE2b-256 d1c89f767e76925b62000aaf9558f641767532d2a93641ee90bb078b1bb82730

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