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ALS Computing icon library for Python, Dash, and Jupyter

Project description

ALS Computing Icons

ALS Computing Icons is a collection of SVG icons exported from Figma, automatically optimized and published to both npm and PyPI on every push to main.

  • npm: @als-computing/icons
  • PyPI: als-computing-icons

Every icon is processed with SVGO and has black fills replaced with currentColor so you can tint them from CSS.


Table of Contents

  1. How the pipeline works
  2. Adding or updating icons
  3. One-time setup (do this once when forking / first deploying)
  4. Using the npm package
  5. Using the PyPI package
  6. Local development
  7. Folder structure
  8. Troubleshooting
  9. License

How the pipeline works

You export SVGs from Figma (IconBridge plugin)  ──OR──  drop SVGs into assets/
        │
        ▼
  git push to main
        │
        ▼
  GitHub Actions
        │
        ├─ npm run optimize   → optimized-assets/  (SVGO + currentColor)
        ├─ npm run build      → dist/              (JS/TS package)
        ├─ npm run build:python → python/als_computing_icons/__init__.py
        │
        ├─ If anything in dist/ changed:
        │     ├─ Bump patch version in package.json
        │     ├─ git commit + tag + push  (uses AUTO_MERGE_PAT)
        │     ├─ Publish to npm  (@als-computing/icons)
        │     ├─ Create GitHub Release
        │     └─ Publish to PyPI (als-computing-icons)
        │
        └─ Done — both packages now have the new icons

The version number is always kept in sync: whatever patch version npm bumps to, the Python package gets the exact same version.


Adding or updating icons

Option A — Figma export (recommended)

Use the IconBridge – Automated Icon Handoff from Figma to GitHub plugin to push icons directly from Figma into the assets/ folder of this repo.

Before you start: Your icons must be Figma components (they appear with a purple outline in the layers panel). To convert an icon to a component, right-click it and select Create component.

  1. In Figma, select all the icon components you want to export (Cmd/Ctrl + click).
  2. Open the IconBridge plugin (right-click → Plugins → IconBridge, or use the bottom toolbar).
  3. In the Export Icon tab your selected icons should appear. If not, click Sync.
  4. Scroll down and click Export to GitHub.
  5. The plugin commits the SVGs to assets/ and GitHub Actions takes over automatically.

You can watch the pipeline run under the Actions tab of the repository.

Option B — Manual SVG drop

  1. Copy your .svg files into the assets/ folder.
  2. Commit and push to main.
  3. The GitHub Actions workflow runs automatically. No manual steps needed.

Tip: File names become Python/JS variable names. Spaces and special characters are replaced with underscores. For example, linear stage.svg becomes linear_stage.


One-time setup

Do these steps once when you first set up this repo (or fork it). After that, every push is fully automatic.


1. Create an npm Automation token

You need this so GitHub Actions can publish to npm without triggering a one-time password (OTP) prompt. A regular "Publish" token will fail with EOTP in CI — Automation tokens are specifically designed to skip OTP.

  1. Log in at npmjs.com.
  2. Click your profile picture (top-right) → Access Tokens.
  3. Click Generate New Token → choose Granular Access Token.
    • Token name: e.g. github-actions-publish
    • Expiration: set to your preference (365 days is common)
    • Bypass two-factor authentication (2FA):check this box — this is what allows CI to publish without an OTP prompt
    • Packages and scopes: select Read and write
    • Organizations: grant access to als-computing with Read and write
  4. Click Generate Token and copy it immediately — you won't see it again.

2. Create a PyPI API token

First-time publishing requires an account-scoped token because the project doesn't exist yet on PyPI. After the first successful publish you can optionally narrow it to just the als-computing-icons project.

  1. Log in at pypi.org.
  2. Click your username (top-right) → Account settings.
  3. Scroll to API tokens → click Add API token.
    • Token name: e.g. github-actions
    • Scope: Entire account (for the first publish; change to project-scoped after)
  4. Click Create token and copy it immediately — it starts with pypi-.

3. Create a GitHub personal access token (AUTO_MERGE_PAT)

The workflow commits the bumped version and built files back to the repo. This requires a personal access token (PAT) stored as AUTO_MERGE_PAT.

  1. On GitHub, click your profile → Settings → scroll to the bottom → Developer settings.
  2. Go to Personal access tokensTokens (classic).
  3. Click Generate new token (classic).
    • Note: e.g. auto-merge-als
    • Expiration: set to your preference
    • Scopes: check repo (all sub-scopes) and workflow
  4. Click Generate token and copy it immediately.

4. Add all tokens to GitHub Secrets

  1. Go to your GitHub repository → SettingsSecrets and variablesActions.
  2. Click New repository secret and add each one:
Secret name Value
NPM_TOKEN The npm Automation token from step 1
PYPI_TOKEN The PyPI API token from step 2
AUTO_MERGE_PAT The GitHub classic PAT from step 3

Secret names must match exactly — the workflow references them by these names.

Important: Make sure GitHub Actions is enabled for the repository before adding secrets (repo SettingsActionsGeneral).


5. Allow Actions to write to the repo

The workflow bumps the version, commits dist/ and package.json, and pushes a git tag. GitHub blocks this by default.

  1. In your repo, go to SettingsActionsGeneral.
  2. Scroll to Workflow permissions.
  3. Select Read and write permissions.
  4. Click Save.

6. Configure the IconBridge Figma plugin

This step connects the Figma plugin to your repository so icons can be exported directly from Figma.

  1. In Figma, install the IconBridge – Automated Icon Handoff from Figma to GitHub plugin.
  2. Open the plugin and go to the GitHub Settings tab.
  3. Fill in the fields:
    • GitHub Token: paste the AUTO_MERGE_PAT classic PAT you created in step 3
    • Repository: als-computing/publish-npm-icons
    • Path (optional): assets
  4. Click Save Settings.

Using the npm package

npm install @als-computing/icons
// ESM
import { motor, cluster } from '@als-computing/icons';

// CommonJS
const { motor } = require('@als-computing/icons');

// Render in React
<span dangerouslySetInnerHTML={{ __html: motor }} style={{ color: 'red' }} />

Using the PyPI package

pip install als-computing-icons
from als_computing_icons import motor, cluster

# Each variable is the raw SVG string
print(motor)  # <svg xmlns="http://www.w3.org/2000/svg" ...>...</svg>

Rendering in a Jupyter notebook:

from IPython.display import HTML
from als_computing_icons import motor

HTML(f'<span style="color: steelblue; font-size: 48px">{motor}</span>')

Rendering in a Dash / Panel app:

import dash_dangerously_set_inner_html as ddsih
from als_computing_icons import motor

ddsih.DangerouslySetInnerHTML(motor)

Local development

# Install JS dependencies
npm install

# Optimize SVGs (assets/ → optimized-assets/)
npm run optimize

# Build the JS/TS package (optimized-assets/ → dist/)
npm run build

# Build the Python package (optimized-assets/ → python/als_computing_icons/__init__.py)
npm run build:python

# Build and package the Python wheel locally
cd python && python3 -m build

Folder structure

assets/                   ← DROP YOUR SVGs HERE (or export via IconBridge)
optimized-assets/         ← auto-generated by `npm run optimize`
dist/                     ← auto-generated JS/TS package output
python/
  pyproject.toml          ← Python package config (hatchling)
  als_computing_icons/
    __init__.py           ← auto-generated, one variable per icon
    py.typed              ← PEP 561 type marker
scripts/
  optimize-svg.js         ← SVGO pass; replaces black → currentColor
  build.js                ← generates dist/ (JS/TS)
  build_python.js         ← generates python/als_computing_icons/__init__.py
  sync-assets.js          ← optional Figma sync helper
.github/workflows/
  build-and-publish.yml   ← the main CI pipeline
package.json

Troubleshooting

Error Cause Fix
npm error code EOTP npm token does not bypass 2FA Re-create the npm token and check the Bypass two-factor authentication box
403 Forbidden on PyPI Token is project-scoped but project doesn't exist yet Use an Entire account scoped token for the first publish
HttpError: Resource not accessible by integration Actions don't have write permission Enable Read and write permissions in repo Settings → Actions → General
optimized-assets/ missing or empty SVGs weren't committed to assets/ Add .svg files to assets/ and push, or re-export via IconBridge
Python variable name clash Two SVG files sanitise to the same identifier Rename one of the source files to make names unique
Icons don't appear in IconBridge "Export Icon" tab Icon is not a Figma component Right-click the icon → Create component, then click Sync in the plugin
IconBridge export fails GitHub token missing or incorrect repo path Check the GitHub Settings tab in IconBridge — verify token, repo, and path

License

MIT © ALS Computing

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