manim-composer

Trigger when: (1) User wants to create an educational/explainer video, (2) User has a vague concept they want visualized, (3) User mentions "3b1b style" or "explain like 3Blue1Brown", (4) User wants to plan a Manim video or animation sequence, (5) User asks to "compose" or "plan" a math/science visualization. Transforms vague video ideas into detailed scene-by-scene plans (scenes.md). Conducts research, asks clarifying questions about audience/scope/focus, and outputs comprehensive scene specifications ready for implementation with ManimCE or ManimGL. Use this BEFORE writing any Manim code. This skill plans the video; use manimce-best-practices or manimgl-best-practices for implementation.

7 stars

Best use case

manim-composer is best used when you need a repeatable AI agent workflow instead of a one-off prompt.

Trigger when: (1) User wants to create an educational/explainer video, (2) User has a vague concept they want visualized, (3) User mentions "3b1b style" or "explain like 3Blue1Brown", (4) User wants to plan a Manim video or animation sequence, (5) User asks to "compose" or "plan" a math/science visualization. Transforms vague video ideas into detailed scene-by-scene plans (scenes.md). Conducts research, asks clarifying questions about audience/scope/focus, and outputs comprehensive scene specifications ready for implementation with ManimCE or ManimGL. Use this BEFORE writing any Manim code. This skill plans the video; use manimce-best-practices or manimgl-best-practices for implementation.

Teams using manim-composer should expect a more consistent output, faster repeated execution, less prompt rewriting.

When to use this skill

  • You want a reusable workflow that can be run more than once with consistent structure.

When not to use this skill

  • You only need a quick one-off answer and do not need a reusable workflow.
  • You cannot install or maintain the underlying files, dependencies, or repository context.

Installation

Claude Code / Cursor / Codex

$curl -o ~/.claude/skills/manim-composer/SKILL.md --create-dirs "https://raw.githubusercontent.com/Demerzels-lab/elsamultiskillagent/main/public/skills/inclinedadarsh/manim-composer/SKILL.md"

Manual Installation

  1. Download SKILL.md from GitHub
  2. Place it in .claude/skills/manim-composer/SKILL.md inside your project
  3. Restart your AI agent — it will auto-discover the skill

How manim-composer Compares

Feature / Agentmanim-composerStandard Approach
Platform SupportNot specifiedLimited / Varies
Context Awareness High Baseline
Installation ComplexityUnknownN/A

Frequently Asked Questions

What does this skill do?

Trigger when: (1) User wants to create an educational/explainer video, (2) User has a vague concept they want visualized, (3) User mentions "3b1b style" or "explain like 3Blue1Brown", (4) User wants to plan a Manim video or animation sequence, (5) User asks to "compose" or "plan" a math/science visualization. Transforms vague video ideas into detailed scene-by-scene plans (scenes.md). Conducts research, asks clarifying questions about audience/scope/focus, and outputs comprehensive scene specifications ready for implementation with ManimCE or ManimGL. Use this BEFORE writing any Manim code. This skill plans the video; use manimce-best-practices or manimgl-best-practices for implementation.

Where can I find the source code?

You can find the source code on GitHub using the link provided at the top of the page.

SKILL.md Source

## Workflow

### Phase 1: Understand the Concept

1. **Research the topic** deeply before asking questions
   - Use web search to understand the core concepts
   - Identify the key insights that make this topic interesting
   - Find the "aha moment" - what makes this click for learners
   - Note common misconceptions to address

2. **Identify the narrative hook**
   - What question does this video answer?
   - Why should the viewer care?
   - What's the surprising or counterintuitive element?

### Phase 2: Clarify with User

Ask targeted questions (not all at once - adapt based on responses):

**Audience & Scope**
- What math/science background should I assume? (e.g., "knows calculus" or "high school algebra")
- Target video length? (short: 5-10min, medium: 15-20min, long: 30min+)
- Should this be self-contained or part of a series?

**Focus & Depth**
- Any specific aspects to emphasize or skip?
- Proof-heavy or intuition-focused?
- Real-world applications to include?

**Style Preferences**
- Color scheme preferences?
- Narration style? (casual, formal, playful)
- Any specific visual metaphors you have in mind?

### Phase 3: Create scenes.md

Output a comprehensive `scenes.md` file with this structure:

```markdown
# [Video Title]

## Overview
- **Topic**: [Core concept]
- **Hook**: [Opening question/mystery]
- **Target Audience**: [Prerequisites]
- **Estimated Length**: [X minutes]
- **Key Insight**: [The "aha moment"]

## Narrative Arc
[2-3 sentences describing the journey from confusion to understanding]

---

## Scene 1: [Scene Name]
**Duration**: ~X seconds
**Purpose**: [What this scene accomplishes]

### Visual Elements
- [List of mobjects needed]
- [Animations to use]
- [Camera movements]

### Content
[Detailed description of what happens, what's shown, what's explained]

### Narration Notes
[Key points to convey, tone, pacing notes]

### Technical Notes
- [Specific Manim classes/methods to use]
- [Any tricky implementations to note]

---

## Scene 2: [Scene Name]
...

---

## Transitions & Flow
[Notes on how scenes connect, recurring visual motifs]

## Color Palette
- Primary: [color] - used for [purpose]
- Secondary: [color] - used for [purpose]
- Accent: [color] - used for [purpose]
- Background: [color]

## Mathematical Content
[List of equations, formulas, or mathematical objects that need to be rendered]

## Implementation Order
[Suggested order for implementing scenes, noting dependencies]
```

## 3b1b Style Principles

Apply these principles when composing scenes:

### Visual Storytelling
- **Show, don't just tell** - Every concept needs a visual representation
- **Progressive revelation** - Build complexity gradually, don't show everything at once
- **Visual continuity** - Transform objects rather than replacing them when possible

### Pacing & Rhythm
- **Pause for insight** - Give viewers time to absorb key moments
- **Vary the pace** - Mix quick sequences with slower explanations
- **End scenes with resolution** - Each scene should feel complete

### Mathematical Beauty
- **Emphasize elegance** - Highlight when math is surprisingly simple or beautiful
- **Connect representations** - Show the same concept multiple ways (algebraic, geometric, intuitive)
- **Embrace abstraction gradually** - Start concrete, then generalize

### Engagement Techniques
- **Pose questions** - Make viewers curious before revealing answers
- **Acknowledge difficulty** - "This might seem confusing at first..."
- **Celebrate insight** - Make the "aha moment" feel earned

## References

- [references/narrative-patterns.md](references/narrative-patterns.md) - Common 3b1b narrative structures
- [references/visual-techniques.md](references/visual-techniques.md) - Effective visualization patterns
- [references/scene-examples.md](references/scene-examples.md) - Example scenes.md excerpts

## Templates

- [templates/scenes-template.md](templates/scenes-template.md) - Blank scenes.md template

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