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A tool to calculate the DORA Lead Time metric

Project description

Build and Test PyPI Downloads

DORA Lead Time Metric

A tool to generate lead time charts and outlier reports by connecting data from Jira and GitHub.

Overview

Lead Time for Changes is one of the four key DORA (DevOps Research and Assessment) metrics that measure software delivery performance. It measures the time it takes from when code is committed to when it is successfully running in production. A shorter lead time indicates an organization's ability to respond quickly to customer needs and fix problems rapidly.

This Python package calculates lead time by connecting data from Jira and GitHub. The calculation involves going from Projects → Releases → Stories → Pull Requests → Commits, calculating the lead time for each pull request, and averaging those over a given time period.

Requirements

  • Python 3.13 or higher
  • OpenAI API key and other parameters (set in your .env file)

Installation

This project uses Poetry for dependency management.

  1. Install Poetry by following the instructions in the official documentation.

    Quick installation methods:

    # For Linux, macOS, Windows (WSL)
    curl -sSL https://install.python-poetry.org | python3 -
    
    # For Windows PowerShell
    (Invoke-WebRequest -Uri https://install.python-poetry.org -UseBasicParsing).Content | python -
    
  2. Install Project Dependencies

    # Clone the repository
    git clone https://github.com/sualeh/dora-lead-time-metric.git
    cd dora-lead-time-metric
    
  3. Install dependencies using Poetry

    poetry install --extras "dev"
    poetry show --tree
    

Configuration

Create an ".env" file in the project root based on ".env.example", and similarly create an ".env.params" file based on ".env.params.example". For a detailed walkthrough of required variables and examples, see calculate-dora-lead-time-metric.md.

Usage

  1. Create releases database
poetry run python -m dora_lead_time.main --build
  1. Generate lead time charts
poetry run python -m dora_lead_time.main --charts
  1. Generate outlier reports
poetry run python -m dora_lead_time.main --reports

Development and Testing

  1. Install dependencies, as above.

  2. Run all tests:

    poetry run pytest
    

Docker Compose Usage

You can also use Docker Compose for easier management of the dora-lead-time container:

  1. Clone the project, as described above.

  2. Configure the ".env" and ".env.params" files as described above.

  3. Run the application using Docker Compose:

    # To build a releases database
    docker-compose run dora-lead-time --build
    
    # To generate lead time charts
    docker-compose run dora-lead-time --charts
    
    # To generate outlier reports
    docker-compose run dora-lead-time --reports
    

This approach simplifies volume mounting and environment variable management, especially when working with the tool regularly.

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