midjourney-prompt-engineering

安装量: 58
排名: #12797

安装

npx skills add https://github.com/justinperea/midjourney-cc-skill --skill midjourney-prompt-engineering
Midjourney Prompt Learning System
A skill that knows Midjourney. The foundation is a structured understanding of Midjourney V7 built from the
official documentation
— every parameter, prompt syntax rule, reference system, and style code mechanic. On top of that, a learning loop: each session extracts patterns from what worked and what didn't, building a knowledge base of craft that improves first-attempt quality over time.
Architecture
You are a multimodal reasoning model.
You don't need pipelines — you ARE the visual critic, gap analyzer, and prompt rewriter. You analyze MJ output images directly, score dimensions, identify gaps, and rewrite prompts.
The one thing you can't do natively is remember across sessions.
That's what the persistent layer provides — the database, patterns, and evidence tracking.
Knowledge Foundation (ships with the skill)
File
What It Contains
Source
knowledge/v7-parameters.md
Every V7 parameter, prompt structure rules, breaking changes from V6
Official docs
knowledge/translation-tables.md
Visual quality → prompt keyword mappings (lighting, mood, material, color, composition)
Official docs + tested refinements
knowledge/official-docs.md
Documentation map linking each MJ feature to its official page URL
docs.midjourney.com
knowledge/failure-modes.md
Diagnostic framework for common MJ failure patterns
Session-learned, evidence-backed
knowledge/learned-patterns.md
Auto-generated pattern summaries (grows through use)
Extracted from sessions
knowledge/keyword-effectiveness.md
Keyword effectiveness rankings (grows through use)
Extracted from sessions
The static files (
v7-parameters
,
translation-tables
,
official-docs
) are the skill's baseline knowledge — what a skilled MJ user would know from reading the documentation carefully. The dynamic files (
failure-modes
,
learned-patterns
,
keyword-effectiveness
) are populated through real sessions and grow over time.
Module Dependencies
Module
Purpose
Required MCP
Core rules (
core-*
)
Reference analysis, prompt construction, scoring, iteration
None
Learning rules (
learn-*
)
Pattern lifecycle, reflection, keyword tracking
sqlite-simple
Automation rules (
auto-*
)
Browser automation for midjourney.com
playwright
Core only
(manual): Load
core-*
rules. Copy prompts to MJ manually.
Core + Learning
Add
learn-*
rules + sqlite MCP. Patterns persist across sessions.
Full system
Add auto-* rules + playwright MCP. Hands-free iteration.

SQLite (for learning rules)

claude mcp add sqlite-simple -- npx @anthropic-ai/sqlite-simple-mcp mydatabase.db

Playwright (for automation rules)

claude mcp add playwright -- npx @playwright/mcp@latest --headed

Initialize the database

sqlite3 mydatabase.db
<
schema.sql
Rules Quick Reference
Rule
What It Covers
core-reference-analysis
7-element visual framework, vocabulary translation
core-prompt-construction
V7 prompt structure, keyword practices, knowledge application
core-research-phase
Coverage assessment, community research workflow
core-assessment-scoring
7-dimension scoring, confidence flags, agent limitations
core-iteration-framework
Gap analysis, action decisions, aspect-first approach
learn-data-model
Database schema, session structure, ID generation
learn-pattern-lifecycle
Confidence graduation, decay, knowledge generation
learn-reflection
Session lifecycle, automatic reflection, contrastive analysis
auto-core-workflows
Prompt submission, smart polling, batch capture, animation
auto-reference-patterns
Selector strategy, error handling, image analysis
Scoring
All iterations scored on
7 dimensions
subject, lighting, color, mood, composition, material, spatial. All 7 always scored (1.0 for "not applicable"). Scores are preliminary until user-validated. See rules/core-assessment-scoring.md . Commands Command Purpose /new-session Start a session with full knowledge application /log-iteration Log a generation attempt with scoring and gap analysis /reflect Cross-session pattern analysis and knowledge extraction /research [focus] Research community techniques for a challenge /show-knowledge [category] Display learned patterns /apply-knowledge Pattern-informed prompt for a description /discover-styles Browse and catalog MJ style codes /validate-pattern [id] Mark pattern as validated or contradicted /forget-pattern [id] Deactivate a pattern Key Principle Every pattern must have logged evidence. The system learns from real iteration data, not assumptions. Confidence levels (low/medium/high) reflect how many times a pattern has been tested and its success rate. Full Reference For the complete compiled reference combining all rules, see AGENTS.md .
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