Skip to content

cal-itp/data-analyses

Folders and files

NameName
Last commit message
Last commit date
Mar 12, 2025
Oct 5, 2023
Sep 19, 2023
Apr 17, 2025
Sep 29, 2023
Jan 2, 2025
Nov 30, 2021
Aug 21, 2024
Feb 13, 2025
Nov 5, 2024
Mar 28, 2025
Sep 29, 2023
Sep 29, 2023
Apr 7, 2025
Oct 10, 2023
Feb 10, 2025
Apr 10, 2023
Sep 29, 2023
Mar 19, 2025
Sep 29, 2023
Sep 29, 2023
Apr 11, 2025
Oct 6, 2021
Apr 22, 2025
Jul 7, 2022
Mar 1, 2024
Nov 26, 2024
Jan 15, 2025
Apr 25, 2025
Aug 7, 2024
Jul 20, 2021
Feb 13, 2025
Feb 25, 2025
Sep 29, 2023
Mar 4, 2022
Sep 29, 2023
Jun 20, 2022
Dec 9, 2022
Sep 22, 2022
Apr 18, 2025
Sep 29, 2023
Apr 22, 2025
Dec 20, 2022
Jun 1, 2023
Apr 17, 2025
Mar 26, 2024
Oct 5, 2023
Feb 13, 2025
Jul 8, 2024
Mar 26, 2025
Sep 29, 2023
Apr 22, 2025
Apr 22, 2025
Feb 15, 2024
Nov 13, 2024
Nov 25, 2024
Nov 29, 2023
Feb 19, 2025
Feb 13, 2025
Sep 29, 2023
Sep 27, 2024
Oct 4, 2023
Sep 25, 2024
Mar 27, 2025
Sep 29, 2023
Feb 19, 2025
Jan 22, 2024
Sep 17, 2024
Nov 23, 2024
Sep 12, 2024
Apr 11, 2025
Jun 7, 2022
Nov 8, 2021
May 26, 2021

Repository files navigation

data-analyses

Place for sharing quick reports, and works in progress

This repository is for quick sharing of works in progress and simple analyses. For collaborative short-term tasks, create a new folder and work off a separate branch. For longer-term projects, consider making a new repository!

Using this Repo

  • Use this link to get started in JupyterHub, set up SSH, and start commiting to the repo!

Quick Links - Get Started in Data Analysis

Data Analytics Documentation - Welcome

https://docs.calitp.org/data-infra/analytics_welcome/overview.html

Data Analytics Documentation - Introduction to Analytics Tools

https://docs.calitp.org/data-infra/analytics_tools/overview.html

Publishing Reports

The sites folder contains the YAML files that drive sites deployed to https://analysis.calitp.org/; the existing sites can be used as examples/templates for deploying additional sites. Also, the Data Services Documentation has a specific chapter dedicated to various ways to publish data.

Caveats (when using the portfolio site)

Jupyter Book/Sphinx do not play nicely with Markdown headers written out in display() calls. Therefore, portfolio.py uses a custom Papermill engine to template Markdown cells directly, following Python formatted-string syntax. For example, your Markdown cell could contain # {district_name} and it will be templated by the underlying engine.

About

Place for sharing quick reports, and works in progress

Resources

Stars

Watchers

Forks

Contributors 24