blueprint-research
11
总安装量
10
周安装量
#28797
全站排名
安装命令
npx skills add https://github.com/majesticlabs-dev/majestic-marketplace --skill blueprint-research
Agent 安装分布
opencode
10
claude-code
10
gemini-cli
9
github-copilot
9
codex
9
cursor
9
Skill 文档
Blueprint Research
Handles the research phase of the blueprint workflow: Toolbox resolution, lessons discovery, local/external research decision, and spec review.
Input
feature_description: string
tech_stack: string | string[] # From config-reader
discovery_result:
user_familiarity: high | medium | low # Do they know the codebase?
user_intent: speed | thoroughness # What matters more?
topic_risk: high | medium | low # Security, payments, external APIs?
uncertainty_level: high | medium | low # Is the approach clear?
1. Resolve Toolbox + Discover Lessons
Read config (parallel):
/majestic:config tech_stack generic
/majestic:config lessons_path .agents/lessons/
Spawn agents (parallel):
Task(majestic-engineer:workflow:toolbox-resolver):
prompt: "Stage: blueprint | Tech Stack: {tech_stack}"
Task(majestic-engineer:workflow:lessons-discoverer):
prompt: "workflow_phase: planning | tech_stack: {tech_stack} | task: {feature_description}"
Store outputs:
research_hooksâ for Step 4 (external research)coding_stylesâ for Step 5 (skill injection)lessons_contextâ for architect agent
Non-blocking errors:
- No toolbox found â Continue with core agents
- Lessons directory missing â Continue
- Discovery returns 0 lessons â Log, continue
- Discovery fails â Log warning, continue
2. Local Research (Always Runs)
Fast, local research to understand codebase patterns before deciding on external research.
Task(majestic-engineer:research:git-researcher, prompt="{feature}")
Task(majestic-engineer:research:repo-analyst, prompt="{feature}")
Store: local_findings – patterns, conventions, similar implementations
3. Research Decision
Based on discovery signals + local findings, decide if external research adds value.
Decision matrix:
| Condition | External Research |
|---|---|
topic_risk: high (security, payments, external APIs) |
Always – cost of missing something too high |
local_findings has strong patterns + user_familiarity: high |
Skip – codebase is authoritative |
uncertainty_level: high OR user_familiarity: low |
Research – external perspective valuable |
user_intent: speed + adequate local patterns |
Skip – optimize for velocity |
| Default (no strong signal) | Research – err on side of thoroughness |
research_decision = evaluate(discovery_result, local_findings)
â SKIP_EXTERNAL | RUN_EXTERNAL
If research_decision == SKIP_EXTERNAL:
Announce: "Codebase has solid patterns for this. Proceeding without external research."
Else:
Announce: "Running external research for {reason}."
4. External Research (Conditional)
Only runs if research_decision == RUN_EXTERNAL
Task(majestic-engineer:research:docs-researcher, prompt="{feature}")
Task(majestic-engineer:research:best-practices-researcher, prompt="{feature}")
Stack-specific agents (from toolbox):
For each hook in research_hooks:
If hook.triggers.any_substring matches feature_description:
Task(subagent_type=hook.agent, prompt="{feature} | Context: {hook.context}")
Cap: Maximum 4 external agents to avoid noise.
Wait: Collect all results before proceeding.
5. Spec Review + Skill Injection
Run in parallel:
Task(majestic-engineer:plan:spec-reviewer):
prompt: "Feature: {feature} | Research: {combined_research}"
For each skill in coding_styles:
Skill(skill: skill)
Outputs:
spec_findingsâ gaps, edge cases, questionsskill_contentâ loaded coding style content
Output
research_result:
toolbox:
research_hooks: array
coding_styles: array
lessons_context: string | null
research_decision: SKIP_EXTERNAL | RUN_EXTERNAL
research_decision_reason: string
research_findings:
local:
git: string
repo: string
external: # null if research_decision == SKIP_EXTERNAL
docs: string | null
best_practices: string | null
stack_specific: array | null
spec_findings:
gaps: array
edge_cases: array
questions: array
skill_content: string
ready_for_architecture: boolean