UX expertise plugin covering research, information architecture, interaction design, accessibility, usability testing, content design, and service design. Backed by 15 reference source repos from real design systems and accessibility tools.
Audit accessibility or implement ARIA patterns.
Design or evaluate information architecture.
Design interaction patterns or user flows.
End-of-session learning. Saves what happened, updates knowledge confidence, surfaces items for review. Run this when your work session is complete.
Create service blueprints or journey maps.
Conduct WCAG 2.2 evaluations, recommend ARIA patterns, identify keyboard navigation gaps, specify focus management, evaluate color contrast, review DOM order, and generate audit reports. Trigger phrases: "check accessibility", "WCAG", "ARIA", "screen reader", "keyboard navigation", "focus management", "color contrast", "audit accessibility", "a11y", "inclusive design", "Section 508".
Design navigation structures, taxonomies, labeling systems, and content organization. Plan card sorting and tree testing studies. Evaluate findability and search UX. Trigger phrases: "design navigation", "information architecture", "taxonomy", "card sorting", "tree testing", "content structure", "labeling system", "findability", "IA", "sitemap".
Design user flows, interaction patterns, micro-interactions, form designs, state machines, and keyboard interaction models. Covers flow design, state management, progressive disclosure, and component behavior specification. Trigger phrases: "design a user flow", "interaction pattern", "micro-interaction", "form design", "state machine", "how should this work", "keyboard interaction".
Create service blueprints, journey maps, experience maps, empathy maps, and opportunity solution trees. Map touchpoints, identify fail and wait points, structure JTBD interviews, and design cross-channel experiences. Trigger phrases: "service blueprint", "journey map", "experience map", "touchpoint mapping", "service design", "empathy map", "jobs to be done", "JTBD", "opportunity solution tree", "cross-channel UX".
Create usability test scripts, facilitator guides, screener questionnaires, heuristic evaluations, cognitive walkthroughs, SUS questionnaires, and usability reports. Covers task analysis, think-aloud protocols, and severity rating. Trigger phrases: "usability test", "test script", "facilitator guide", "screener questionnaire", "heuristic evaluation", "cognitive walkthrough", "SUS questionnaire", "usability report", "task analysis".
Uses power tools
Uses Bash, Write, or Edit tools
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Most Claude Code plugins give you a set of slash commands and some domain knowledge. These plugins do something different: they learn.
Each plugin in this repo is a domain-specialized engineering intelligence that accumulates knowledge across sessions, grounds itself in real library source code (not training data), and coordinates with a companion chat skill on Claude.ai. The plugin implements. The chat skill plans. Over time, the plugin gets better at its job because it tracks what works, what doesn't, and what it's still uncertain about.
This is the two-surface architecture: one surface for thinking, one for building.
A typical plugin contains four layers:
Specialist agents and slash commands. Each plugin ships with 3 to 7 agents that handle specific subtasks. UI-Design-Pro has a design critic, a component builder, an accessibility auditor, an animation engineer, and a visual architect. Django-Engine-Pro has agents for model design, ORM optimization, migration planning, and MCP server exposure. Agents compose in defined sequences: you always run the stack detector before the component builder, always run the design critic after.
Source-code references. Plugins include install.sh scripts that shallow-clone real library repos into a local refs/ directory. When UI-Design-Pro needs to know how Radix handles focus restoration, it greps the actual Radix source, not its training data. When D3-Pro needs to verify a scale constructor's API, it reads the Observable source directly. This matters because training data goes stale. Source code doesn't.
Skills and decision frameworks. Static knowledge: inheritance decision tables, ORM anti-pattern catalogs, polymorphic rendering rules, animation physics constants. These encode the expert judgment that doesn't change between sessions.
An epistemic knowledge layer. This is the part that learns. Each plugin maintains a knowledge/ directory containing typed claims in JSONL, confidence scores, session logs, and (for some plugins) SBERT embeddings. Claims start as drafts. After review, they become active. Active claims carry Bayesian confidence that updates based on session outcomes: when a suggestion informed by a claim gets accepted, confidence rises; when it gets rejected, confidence drops. Over time, each plugin develops its own body of verified, weighted knowledge about its domain.
Each plugin here has a counterpart: a chat skill that runs on Claude.ai (or Claude Desktop). The division of labor is deliberate.
The chat skill handles planning, reasoning, and decision-making. When you're deciding between DRF and Ninja for an API, or choosing an inheritance strategy for a model hierarchy, or evaluating whether a component needs polymorphic rendering, the chat skill walks you through the tradeoffs and produces a structured handoff document.
The Claude Code plugin handles implementation and learning. It takes the handoff document, builds the thing, greps real source code when it needs to verify an API, logs what it tried, and updates its knowledge base with what it learned.
The chat skill never sees knowledge/claims.jsonl. The plugin never produces planning documents. Each surface does what it's good at.
| Chat Skill (Claude.ai) | Claude Code Plugin |
|---|---|
| Decision frameworks | Slash commands and agents |
| Tradeoff analysis | Source-code grepping |
| Structured handoff docs | Implementation and testing |
| Domain reasoning | Session logging and learning |
| Static (expert knowledge) | Dynamic (knowledge that evolves) |
Every plugin with a knowledge/ directory runs the same protocol:
Session start: Read manifest.json for current state. Load active claims sorted by confidence. Check tensions.jsonl for unresolved conflicts in the task's domain. Surface tensions before making decisions, not after.
During work: Track which claims informed each suggestion. Note when the user accepts, modifies, or rejects a recommendation.
Session end: Write observations to session_log/. Flag contradictions as tension signals. Note recurring patterns the knowledge base doesn't yet cover.
The knowledge types are borrowed from Theseus (a separate epistemic engine project):
Current knowledge stats across the fleet:
| Plugin | Total Claims | Active | Avg Confidence |
|---|---|---|---|
| UI-Design-Pro | 140 | 135 | 0.667 |
| Django-Engine-Pro | 111 | 29 | 0.75 |
npx claudepluginhub travis-gilbert/claude-marketplace --plugin ux-proMobile app development specialist: PWA retrofitting, React Native architecture, offline-first sync, mobile API design, touch optimization, and mobile visualization adaptation.
Makes Claude Code extraordinarily good at transforming websites into applications: converting page-based Next.js sites into app-like experiences with persistent layouts, command palettes, and background sync; wrapping them in Tauri desktop shells with native OS integration; and producing architecture handoffs for native Swift/AppKit macOS apps.
Makes Claude Code genuinely good at designing knowledge-graph answer experiences with cosmos.gl on top of DuckDB-WASM, Mosaic, and vgplot. Owns the SceneDirective adapter, the three-picker ControlDock (Position, Weight, Edges), and the recipe library that turns novel ideas into usable images.
Git and deployment automation with verification at every step. Staged file review, conventional commits, pre-commit checks, push with CI/CD detection, and post-deploy health verification.
Makes Claude Code extraordinarily good at building D3 visualizations that are mathematically accurate, physically believable, and aesthetically grounded in the Mike Bostock / Observable canon.
Tools to maintain and improve CLAUDE.md files - audit quality, capture session learnings, and keep project memory current.
Comprehensive feature development workflow with specialized agents for codebase exploration, architecture design, and quality review
Harness-native ECC operator layer - 67 agents, 271 skills, 92 legacy command shims, reusable hooks, rules, selective install profiles, and production-ready workflows for Claude Code, Codex, OpenCode, Cursor, and related agent harnesses
v9.44.1 — Patch release for Gemini environment/version detection and qwen auth gating. Run /octo:setup.
Superpowers Plus core skills library for Claude Code: planning, execution routing, TDD, debugging, and collaboration workflows
A growing collection of Claude-compatible academic workflow bundles. Covers scientific figures, manuscript writing and polishing, reviewer assessment, citation retrieval, data availability, paper reading, literature search, response letters, paper-to-PPTX conversion, and evidence-grounded Chinese invention patent drafting. Rules are organized as reusable skill folders with explicit workflows and quality checks.