Back to Skills

create-2d-composition

pjt222
Updated 2 days ago
6 views
17
2
17
View on GitHub
Metaautomationdesigndata

About

This skill generates 2D graphics programmatically by creating SVGs, applying layout algorithms, and compositing images. It's designed for automating diagrams, custom charts, scientific figures, and batch-producing visual assets. Use it when you need reproducible, scriptable graphics beyond standard charting libraries.

Quick Install

Claude Code

Recommended
Primary
npx skills add pjt222/agent-almanac -a claude-code
Plugin CommandAlternative
/plugin add https://github.com/pjt222/agent-almanac
Git CloneAlternative
git clone https://github.com/pjt222/agent-almanac.git ~/.claude/skills/create-2d-composition

Copy and paste this command in Claude Code to install this skill

Documentation

Create 2D Composition

2D graphics via SVG + layout + compositing + batch → charts, diagrams, infographics.

Use When

  • Diagrams/flowcharts/infographics programmatic
  • Repro scientific figures
  • Auto badges/icons/assets
  • Composite imgs / data viz
  • Custom chart types (not in libs)
  • Batch gen w/ param variations
  • SVG templates web/print

In

InTypeDescExample
Layout specConfigDims, margins, grid800x600px canvas, 20px margins
Visual elementsData/AssetsShapes, text, imgs, ptsRect coords, labels, icons
Style paramsCSS/AttrsColors, fonts, stroke, opacityfill="#3366cc", stroke-width="2"
Data sourcesFiles/ArraysValues → vizCSV, JSON config
Out formatStringSVG/PNG/PDFoutput.svg, 300 DPI PNG

Do

1. Python Env Setup

# Core libraries
pip install svgwrite pillow cairosvg

# Optional: advanced features
pip install drawsvg reportlab pycairo

# For data-driven graphics
pip install matplotlib numpy pandas

Got: Libs installed If err: Check Python 3.7+, use venv

2. Basic SVG

import svgwrite
from svgwrite import cm, mm

def create_basic_svg(output_path):
    """Create a simple SVG graphic."""
    # Initialize drawing (use mm for precise dimensions)
    dwg = svgwrite.Drawing(output_path, size=('180mm', '120mm'), profile='full')

    # Add background rectangle
    dwg.add(dwg.rect(
        insert=(0, 0),
        size=('100%', '100%'),
        fill='white'
    ))

    # Add shapes
    dwg.add(dwg.circle(
        center=(90*mm, 60*mm),
        r=30*mm,
        fill='lightblue',
        stroke='navy',
        stroke_width=2
    ))

    dwg.add(dwg.rect(
        insert=(30*mm, 30*mm),
        size=(60*mm, 40*mm),
        fill='lightgreen',
        stroke='darkgreen',
        stroke_width=2,
        rx=5,  # Rounded corners
        ry=5
    ))

    # Add text
    dwg.add(dwg.text(
        'Example Graphic',
        insert=(90*mm, 20*mm),
        text_anchor='middle',
        font_size='18pt',
        font_family='Arial',
        fill='black'
    ))

    dwg.save()
    print(f"Saved: {output_path}")

Got: SVG w/ shapes + text If err: Check svgwrite ver, out dir writable

3. Diagram Layout

def create_flowchart(steps, output_path):
    """Generate a flowchart from list of steps."""
    dwg = svgwrite.Drawing(output_path, size=('800px', '600px'))

    # Layout parameters
    box_width = 120
    box_height = 60
    spacing_y = 100
    start_x = 340
    start_y = 50

    for i, step in enumerate(steps):
        y_pos = start_y + i * spacing_y

        # Draw box
        box = dwg.add(dwg.g(id=f'step_{i}'))

        box.add(dwg.rect(
            insert=(start_x, y_pos),
            size=(box_width, box_height),
            fill='lightblue',
            stroke='navy',
            stroke_width=2,
            rx=5,
            ry=5
        ))

        # Add text (wrapped if needed)
        text_lines = wrap_text(step, max_width=16)
        text_y = y_pos + box_height/2 - (len(text_lines)-1) * 7

        for j, line in enumerate(text_lines):
            box.add(dwg.text(
                line,
                insert=(start_x + box_width/2, text_y + j*14),
                text_anchor='middle',
                font_size='12pt',
                font_family='Arial',
                fill='black'
            ))

        # Draw arrow to next step
        if i < len(steps) - 1:
            arrow_start_y = y_pos + box_height
            arrow_end_y = y_pos + spacing_y

            dwg.add(dwg.line(
                start=(start_x + box_width/2, arrow_start_y),
                end=(start_x + box_width/2, arrow_end_y),
                stroke='black',
                stroke_width=2,
                marker_end=dwg.marker(
                    id='arrow',
                    viewBox='0 0 10 10',
                    refX=5,
                    refY=5,
                    markerWidth=6,
                    markerHeight=6,
                    orient='auto'
                )
            ))

    dwg.save()

def wrap_text(text, max_width=20):
    """Simple text wrapping."""
    words = text.split()
    lines = []
    current_line = []

    for word in words:
        test_line = ' '.join(current_line + [word])
        if len(test_line) <= max_width:
            current_line.append(word)
        else:
            if current_line:
                lines.append(' '.join(current_line))
            current_line = [word]

    if current_line:
        lines.append(' '.join(current_line))

    return lines

Got: Flowchart w/ boxes + arrows If err: Adjust layout calc, verify arrow markers

4. Composite Raster

from PIL import Image, ImageDraw, ImageFont, ImageFilter
import os

def composite_images(image_paths, output_path, layout='grid'):
    """Composite multiple images into single output."""
    # Load images
    images = [Image.open(path) for path in image_paths]

    if layout == 'grid':
        # Calculate grid dimensions
        n = len(images)
        cols = int(n ** 0.5)
        rows = (n + cols - 1) // cols

        # Get max dimensions
        max_width = max(img.width for img in images)
        max_height = max(img.height for img in images)

        # Create composite canvas
        canvas_width = cols * max_width
        canvas_height = rows * max_height
        composite = Image.new('RGB', (canvas_width, canvas_height), 'white')

        # Paste images
        for i, img in enumerate(images):
            row = i // cols
            col = i % cols
            x = col * max_width
            y = row * max_height
            composite.paste(img, (x, y))

    elif layout == 'horizontal':
        # Horizontal concatenation
        total_width = sum(img.width for img in images)
        max_height = max(img.height for img in images)
        composite = Image.new('RGB', (total_width, max_height), 'white')

        x_offset = 0
        for img in images:
            composite.paste(img, (x_offset, 0))
            x_offset += img.width

    elif layout == 'vertical':
        # Vertical concatenation
        max_width = max(img.width for img in images)
        total_height = sum(img.height for img in images)
        composite = Image.new('RGB', (max_width, total_height), 'white')

        y_offset = 0
        for img in images:
            composite.paste(img, (0, y_offset))
            y_offset += img.height

    composite.save(output_path)
    print(f"Saved composite: {output_path}")

def add_annotations(image_path, annotations, output_path):
    """Add text annotations to image."""
    img = Image.open(image_path)
    draw = ImageDraw.Draw(img)

    # Load font
    try:
        font = ImageFont.truetype("Arial.ttf", 24)
    except:
        font = ImageFont.load_default()

    for annotation in annotations:
        text = annotation['text']
        position = annotation['position']
        color = annotation.get('color', 'black')

        # Add text shadow for readability
        shadow_offset = 2
        draw.text(
            (position[0] + shadow_offset, position[1] + shadow_offset),
            text,
            font=font,
            fill='white'
        )
        draw.text(position, text, font=font, fill=color)

    img.save(output_path)

Got: Composite img w/ layout If err: Check inputs exist, img modes compat

5. Data-Driven Graphics

import numpy as np

def create_bar_chart_svg(data, labels, output_path):
    """Generate SVG bar chart from data."""
    dwg = svgwrite.Drawing(output_path, size=('600px', '400px'))

    # Chart area
    margin = 50
    chart_width = 500
    chart_height = 300
    bar_spacing = 10

    # Calculate bar dimensions
    n_bars = len(data)
    bar_width = (chart_width - (n_bars - 1) * bar_spacing) / n_bars

    # Scale data to fit chart
    max_value = max(data)
    scale = chart_height / max_value

    # Draw axes
    dwg.add(dwg.line(
        start=(margin, margin),
        end=(margin, margin + chart_height),
        stroke='black',
        stroke_width=2
    ))
    dwg.add(dwg.line(
        start=(margin, margin + chart_height),
        end=(margin + chart_width, margin + chart_height),
        stroke='black',
        stroke_width=2
    ))

    # Draw bars
    for i, (value, label) in enumerate(zip(data, labels)):
        x = margin + i * (bar_width + bar_spacing)
        bar_height = value * scale
        y = margin + chart_height - bar_height

        # Bar
        dwg.add(dwg.rect(
            insert=(x, y),
            size=(bar_width, bar_height),
            fill='steelblue',
            stroke='navy',
            stroke_width=1
        ))

        # Value label
        dwg.add(dwg.text(
            f'{value:.1f}',
            insert=(x + bar_width/2, y - 5),
            text_anchor='middle',
            font_size='10pt',
            fill='black'
        ))

        # X-axis label
        dwg.add(dwg.text(
            label,
            insert=(x + bar_width/2, margin + chart_height + 20),
            text_anchor='middle',
            font_size='10pt',
            fill='black'
        ))

    dwg.save()

Got: SVG bar chart scaled If err: Handle edge cases (empty, neg), add validate

6. Batch Gen

def batch_generate_badges(users, template_path, output_dir):
    """Generate badge for each user."""
    os.makedirs(output_dir, exist_ok=True)

    for user in users:
        output_path = os.path.join(output_dir, f"{user['id']}_badge.svg")

        dwg = svgwrite.Drawing(output_path, size=('300px', '100px'))

        # Background
        dwg.add(dwg.rect(
            insert=(0, 0),
            size=('100%', '100%'),
            fill='#3366cc',
            rx=10,
            ry=10
        ))

        # User name
        dwg.add(dwg.text(
            user['name'],
            insert=(150, 40),
            text_anchor='middle',
            font_size='20pt',
            font_weight='bold',
            fill='white'
        ))

        # User role
        dwg.add(dwg.text(
            user['role'],
            insert=(150, 70),
            text_anchor='middle',
            font_size='14pt',
            fill='lightblue'
        ))

        dwg.save()
        print(f"Generated badge: {output_path}")

Got: Per-item graphic gen If err: Check data struct, defaults for missing

7. SVG → Raster

import cairosvg

def svg_to_png(svg_path, png_path, dpi=300):
    """Convert SVG to PNG with specified DPI."""
    # Calculate pixel dimensions from DPI
    # Assuming A4 size as example
    width_inches = 8.27
    height_inches = 11.69

    width_px = int(width_inches * dpi)
    height_px = int(height_inches * dpi)

    cairosvg.svg2png(
        url=svg_path,
        write_to=png_path,
        output_width=width_px,
        output_height=height_px
    )
    print(f"Converted to PNG: {png_path}")

def svg_to_pdf(svg_path, pdf_path):
    """Convert SVG to PDF."""
    cairosvg.svg2pdf(url=svg_path, write_to=pdf_path)
    print(f"Converted to PDF: {pdf_path}")

Got: Raster out @ res If err: Install cairo sys lib, check SVG valid

Check

  • Graphics render in target apps
  • Text readable + positioned
  • Colors match (hex)
  • Dims fit use case
  • SVG validates (if req)
  • Raster DPI correct
  • Layout adapts to data
  • Batch completes no err
  • Out files organized
  • Err handling in code

Traps

  1. Unit confusion: SVG units (px, mm, cm) vs screen px vs print DPI
  2. Text overflow: Text exceeds shape → wrap
  3. Font avail: Sys fonts differ → embed / web-safe
  4. Coord calc: Off-by-one in grids
  5. Color fmt: SVG hex (#rrggbb), not tuples
  6. SVG valid: XML struct, close tags
  7. File paths: Special chars, spaces
  8. Memory: Large batch → chunk
  9. Aspect ratio: Preserve on resize
  10. Transparency: PNG alpha, JPEG not

GitHub Repository

pjt222/agent-almanac
Path: i18n/caveman-ultra/skills/create-2d-composition
0
agentsagentskillsai-assisted-developmentclaude-codeskillsteams

Related Skills

content-collections

Meta

This skill provides a production-tested setup for Content Collections, a TypeScript-first tool that transforms Markdown/MDX files into type-safe data collections with Zod validation. Use it when building blogs, documentation sites, or content-heavy Vite + React applications to ensure type safety and automatic content validation. It covers everything from Vite plugin configuration and MDX compilation to deployment optimization and schema validation.

View skill

polymarket

Meta

This skill enables developers to build applications with the Polymarket prediction markets platform, including API integration for trading and market data. It also provides real-time data streaming via WebSocket to monitor live trades and market activity. Use it for implementing trading strategies or creating tools that process live market updates.

View skill

creating-opencode-plugins

Meta

This skill helps developers create OpenCode plugins that hook into 25+ event types like commands, files, and LSP operations. It provides the plugin structure, event API specifications, and implementation patterns for JavaScript/TypeScript modules. Use it when you need to intercept, monitor, or extend the OpenCode AI assistant's lifecycle with custom event-driven logic.

View skill

sglang

Meta

SGLang is a high-performance LLM serving framework that specializes in fast, structured generation for JSON, regex, and agentic workflows using its RadixAttention prefix caching. It delivers significantly faster inference, especially for tasks with repeated prefixes, making it ideal for complex, structured outputs and multi-turn conversations. Choose SGLang over alternatives like vLLM when you need constrained decoding or are building applications with extensive prefix sharing.

View skill