AI Loading UX
Design patterns for showing users what's happening while waiting for AI output.
Decision Framework
First, identify which pattern category applies:
| User is waiting for... | Pattern Category | Key Goal | |------------------------|------------------|----------| | AI reasoning/thinking | Reasoning Display | Build trust through transparency | | Multi-step task completion | Progress Steps | Show advancement toward goal | | Content generation/streaming | Streaming States | Reduce perceived wait time | | Background processing | Status Indicators | Confirm work is happening |
Core Principles
1. The Elevator Mirror Effect
Users waiting for AI feel time pass slower. Give them something to watch/read—animated indicators reduce perceived wait time even when actual time is unchanged.
2. Progressive Disclosure
- Show condensed indicator by default ("Thinking...")
- Make details available but not forced
- Let curious users expand; don't burden everyone
3. More Transparency ≠ Better UX
Balance visibility with cognitive load. Users want answers, not reasoning—but they want to trust the answer came from good reasoning.
4. Signal Completion Clearly
Users must know when processing ends. Ambiguous end states frustrate users.
Pattern Quick Reference
Reasoning Display (Chain-of-Thought)
When AI is "thinking" through a problem. See references/reasoning-patterns.md.
Best approach (Claude-style):
- Hidden by default, expandable on demand
- Structured bullets when expanded
- Time counter or progress indicator
- Clear "done" state
Anti-patterns:
- Wall of streaming text (overwhelming)
- Scrolling too fast to read
- No expand option (feels opaque)
- No clear end state
Progress Steps
When AI completes sequential tasks. See references/progress-patterns.md.
Best approach:
- Show current step + total steps
- Mark completed steps visually
- Show what's actively happening
- Allow step-level details on expand
Streaming States
When content generates token-by-token. See references/streaming-patterns.md.
Best approach:
- Typing cursor or text animation
- Smooth token appearance (not jarring)
- Skeleton for expected content shape
- "Stop generating" escape hatch
Status Indicators
When background work happens. See references/status-patterns.md.
Best approach:
- Subtle but visible animation
- Brief description of current action
- Don't block user from other actions
- Notify on completion
Implementation Checklist
When implementing any AI loading state:
- [ ] Identify pattern category from decision framework above
- [ ] Choose visibility level: always visible, expandable, or minimal
- [ ] Add motion: animation reduces perceived wait (but keep it subtle)
- [ ] Show progress: time elapsed, steps completed, or content streamed
- [ ] Signal completion: clear visual/state change when done
- [ ] Provide escape: stop/cancel for long operations
- [ ] Handle errors: don't leave user in permanent loading state
- [ ] Test on slow connections: ensure graceful degradation
Product Comparisons (Reference)
| Product | Approach | Strength | Weakness | |---------|----------|----------|----------| | Claude | Hidden reasoning, expandable, structured bullets | Low cognitive load | Can feel opaque | | ChatGPT | Brief labels, auto-collapse | Unobtrusive | Less transparent | | DeepSeek | Full streaming reasoning | Maximum transparency | Overwhelming | | Gemini | User-scrolled, numbered steps | Clear structure | Unclear completion |
Usage
Read the relevant reference file for your pattern category:
- references/reasoning-patterns.md - Chain-of-thought, thinking indicators
- references/progress-patterns.md - Step sequences, task completion
- references/streaming-patterns.md - Token streaming, content generation
- references/status-patterns.md - Background processing, polling states