Skip to main content

PiperRider CLI

Project description

ci-tests codecov release pipy python downloads license InfuseAI Discord Invite

Docs | Discord | Blog

[!IMPORTANT] PipeRider has been superseded by Recce. We recommend that users requiring pre-merge data validation checks migrate to Recce. PipeRider will not longer be updated on a regular basis. You are still welcome to open a PR with bug fixes or feature requests. For questions and help regarding this update, please contact product@piperider.io or leave a message in the Recce Discord.

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:

  • Easy to connect your datasource -> PipeRider leverages the connection profiles in your dbt project to connect to the data warehouse
  • Generate profiling statistics of your models to get a high-level overview of your data
  • Compare target branch changes with the main branch in a HTML report
  • 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

    pip install piperider[<connector>]
    

    You can find all supported data source connectors here.

  2. Add PipeRider tag on your model: Go to your dbt project, and add the PipeRider tag on the model you want to profile.

    --models/staging/stg_customers.sql
    {{ config(
       tags=["piperider"]
    ) }}
    
    select ...
    

    and show the models would be run by piperider

     dbt list -s tag:piperider --resource-type model
    
  3. Run PipeRider

    piperider run
    

To see the full quick start guide, please refer to PipeRider documentation

Features

  • Model profiling: PipeRider can profile your dbt models and obtain information such as basic data composition, quantiles, histograms, text length, top categories, and more.
  • Metric queries: PipeRider can integrate with dbt metrics and present the time-series data of metrics in the report.
  • HTML report: PipeRider generates a static HTML report each time it runs, which can be viewed locally or shared.
  • Report comparison: You can compare two previously generated reports or use a single command to compare the differences between the current branch and the main branch. The latter is designed specifically for code review scenarios. In our pull requests on GitHub, we not only want to know which files have been changed, but also the impact of these changes on the data. PipeRider can easily generate comparison reports with a single command to provide this information.
  • CI integration: The key to CI is automation, and in the code review process, automating this workflow is even more meaningful. PipeRider can easily integrate into your CI process. When new commits are pushed to your PR branch, reports can be automatically generated to provide reviewers with more confidence in the changes made when reviewing.

Example Report Demo

We use the example project git-repo-analytics to demonstrate how to use piperider+dbt+duckdb to analyze dbt-core repository. Here is the generated result (daily update)

Run Report

Comparison Report

Comparison Summary in a PR

PipeRider Cloud (beta)

PipeRider Cloud allows you to upload reports and share them with your team members. For information on pricing plans, please refer to the pricing page.

PipeRider Compare Action

PipeRider provides the PipeRider Compare Action to quickly integrate into your Github Actions workflow. It has the following features:

  • Automatically generates a report comparing the PR branch to the main branch
  • Uploads the report to GitHub artifacts or PipeRider cloud
  • Adds a comment to the pull request with a comparison summary and a link to the report.

You can refer to example workflow yaml and the example pull request.

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-0.42.0.20241024.tar.gz (4.1 MB view details)

Uploaded Source

Built Distribution

File details

Details for the file piperider_nightly-0.42.0.20241024.tar.gz.

File metadata

File hashes

Hashes for piperider_nightly-0.42.0.20241024.tar.gz
Algorithm Hash digest
SHA256 608b9b5eba6bc0657ea81c8c308df14c7a674a7393daee12ab3a34114bbbd47e
MD5 568dab460a3c732d38376e94a1e095f4
BLAKE2b-256 a4619e3a2c8f402e6edc88147bdc5f75686461544880aac405ed4c3ae5b8e5bf

See more details on using hashes here.

File details

Details for the file piperider_nightly-0.42.0.20241024-py3-none-any.whl.

File metadata

File hashes

Hashes for piperider_nightly-0.42.0.20241024-py3-none-any.whl
Algorithm Hash digest
SHA256 d4ea548c6a63de5d3733165027bac9d43bc7cb02500da0c4b5417d7e5b11ceb9
MD5 3efb70f62130801b5352429bab0af860
BLAKE2b-256 1d67fb2375e83ef80043f738af869aa3df52d6a8f73aa2a1497905552132ec80

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