en un clic
ai-chat
Use when implementing conversational AI chat interfaces.
Installer avec Codex ou Claude Copiez ce prompt, collez-le dans Codex, Claude ou un autre assistant, puis laissez-le vérifier la page du skill et l'installer pour vous.
Menu
Use when implementing conversational AI chat interfaces.
Installer avec Codex ou Claude Copiez ce prompt, collez-le dans Codex, Claude ou un autre assistant, puis laissez-le vérifier la page du skill et l'installer pour vous.
Basé sur la classification professionnelle SOC
Use when implementing help users understand their current location.
Use when implementing expand and collapse content sections.
Use when implementing user account configuration and preferences.
Use when implementing social activity and updates stream.
Use when implementing handling AI-specific errors.
Use when implementing loading states for AI operations.
| name | ai-chat |
| description | Use when implementing conversational AI chat interfaces. |
| metadata | {"id":"ai-chat","category":"ai-intelligence","pattern":"AI Chat Interface","source":"uxpatterns.dev","url":"https://uxpatterns.dev/patterns/ai-intelligence/ai-chat","sourcePath":"apps/web/content/patterns/ai-intelligence/ai-chat.mdx"} |
Conversational AI chat interfaces
A AI Chat Interface pattern helps teams create a reliable way to combine prompt entry, streaming output, history, and follow-up actions inside a conversational workflow. It is most useful when teams need assistant sidebars and copilots. Compared with adjacent patterns, this pattern should reduce friction without hiding the state, rules, or recovery paths people need to keep moving.
references/pattern.md, then choose the smallest viable variation.aria-describedby or structural headings when useful.The Problem: Users cannot tell whether the model is waiting, streaming, retrying, or done.
How to Fix It? Expose clear request lifecycle states and keep them visible near the content they affect.
The Problem: AI failures include safety blocks, context limits, model availability, and partial output, not just a failed request.
How to Fix It? Differentiate failure modes and give recovery actions that match each one.
The Problem: The experience feels unpredictable when responses get slower, shorter, or more expensive without explanation.
How to Fix It? Design token, latency, and provider constraints into the interface from the beginning.
For full implementation detail, examples, and testing notes, see references/pattern.md.
Pattern page: https://uxpatterns.dev/patterns/ai-intelligence/ai-chat