Agent skill
Simplification Cascades
Find one insight that eliminates multiple components - "if this is true, we don't need X, Y, or Z"
Install this agent skill to your Project
npx add-skill https://github.com/lifangda/claude-plugins/tree/main/cli-tool/skills-library/problem-solving/simplification-cascades
SKILL.md
Simplification Cascades
Overview
Sometimes one insight eliminates 10 things. Look for the unifying principle that makes multiple components unnecessary.
Core principle: "Everything is a special case of..." collapses complexity dramatically.
Quick Reference
| Symptom | Likely Cascade |
|---|---|
| Same thing implemented 5+ ways | Abstract the common pattern |
| Growing special case list | Find the general case |
| Complex rules with exceptions | Find the rule that has no exceptions |
| Excessive config options | Find defaults that work for 95% |
The Pattern
Look for:
- Multiple implementations of similar concepts
- Special case handling everywhere
- "We need to handle A, B, C, D differently..."
- Complex rules with many exceptions
Ask: "What if they're all the same thing underneath?"
Examples
Cascade 1: Stream Abstraction
Before: Separate handlers for batch/real-time/file/network data Insight: "All inputs are streams - just different sources" After: One stream processor, multiple stream sources Eliminated: 4 separate implementations
Cascade 2: Resource Governance
Before: Session tracking, rate limiting, file validation, connection pooling (all separate) Insight: "All are per-entity resource limits" After: One ResourceGovernor with 4 resource types Eliminated: 4 custom enforcement systems
Cascade 3: Immutability
Before: Defensive copying, locking, cache invalidation, temporal coupling Insight: "Treat everything as immutable data + transformations" After: Functional programming patterns Eliminated: Entire classes of synchronization problems
Process
- List the variations - What's implemented multiple ways?
- Find the essence - What's the same underneath?
- Extract abstraction - What's the domain-independent pattern?
- Test it - Do all cases fit cleanly?
- Measure cascade - How many things become unnecessary?
Red Flags You're Missing a Cascade
- "We just need to add one more case..." (repeating forever)
- "These are all similar but different" (maybe they're the same?)
- Refactoring feels like whack-a-mole (fix one, break another)
- Growing configuration file
- "Don't touch that, it's complicated" (complexity hiding pattern)
Remember
- Simplification cascades = 10x wins, not 10% improvements
- One powerful abstraction > ten clever hacks
- The pattern is usually already there, just needs recognition
- Measure in "how many things can we delete?"
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