How to install learn
npx skills add https://github.com/giuseppe-trisciuoglio/developer-kit --skill learnFull instructions (SKILL.md)
Source of truth, from giuseppe-trisciuoglio/developer-kit.
name: learn description: Provides autonomous project pattern learning by analyzing the codebase to discover development conventions, architectural patterns, and coding standards, then generates project rule files in .claude/rules/. Use when user asks to "learn from project", "extract project rules", "analyze codebase conventions", "discover project patterns", or wants to auto-generate Claude Code rules for the current project. allowed-tools: Read, Write, Edit, Bash, Glob, Grep, Task, AskUserQuestion
Learn
Autonomously analyzes a project's codebase to discover development patterns, conventions, and architectural decisions, then generates project rule files in .claude/rules/ for Claude Code to follow.
Overview
This skill acts as the Orchestrator in a two-agent architecture. It coordinates the overall workflow: gathering project context, delegating deep analysis to the learn-analyst sub-agent, filtering and ranking results, presenting findings to the user, and persisting approved rules to .claude/rules/.
The separation of concerns ensures the analyst operates with a focused forensic prompt while the orchestrator manages user interaction and file persistence.
When to Use
Use this skill when:
- User asks to "learn from this project" or "understand project conventions"
- User wants to auto-generate
.claude/rules/files from the existing codebase - User asks to "extract project rules" or "discover patterns"
- User wants Claude Code to learn the project's coding standards
- After joining a new project and wanting to codify existing conventions
- Before starting a large feature to ensure Claude follows project patterns
Trigger phrases: "learn from project", "extract rules", "analyze conventions", "discover patterns", "generate project rules", "learn codebase", "auto-generate rules"
Instructions
Phase 1: Project Context Assessment
Before delegating to the analyst, gather high-level project context:
-
Verify project root: Confirm the current working directory is a project root (has
package.json,pom.xml,pyproject.toml,go.mod,.git/, or similar markers) -
Check existing rules: Scan for pre-existing rule files to understand what is already documented:
# Check for existing rules
ls -la .claude/rules/ 2>/dev/null || echo "No .claude/rules/ directory found"
cat CLAUDE.md 2>/dev/null || echo "No CLAUDE.md found"
cat AGENTS.md 2>/dev/null || echo "No AGENTS.md found"
ls -la .cursorrules 2>/dev/null || echo "No .cursorrules found"
- Assess project size: Get a quick overview of the project scope:
# Quick project overview
find . -maxdepth 1 -type f -name "*.json" -o -name "*.toml" -o -name "*.xml" -o -name "*.gradle*" -o -name "Makefile" -o -name "*.yaml" -o -name "*.yml" | head -20
find . -type f -name "*.ts" -o -name "*.js" -o -name "*.java" -o -name "*.py" -o -name "*.go" -o -name "*.php" | wc -l
- Inform the user: Briefly tell the user what you found and that you are about to start analysis:
- "I found a [TypeScript/NestJS] project with [N] source files and [M] existing rules. Starting deep analysis..."
Phase 2: Delegate to Analyst Sub-Agent
Invoke the learn-analyst sub-agent to perform the deep codebase analysis.
Use the Task tool to delegate analysis to the learn-analyst agent:
- Agent:
learn-analyst - Prompt: "Analyze the codebase in the current working directory. Follow your full process: discovery, pattern extraction, classification, and prioritization. Return your findings as a JSON report."
- Mode: Run synchronously to receive the JSON report directly
The analyst will return a structured JSON report with classified findings.
Phase 3: Review and Filter Results
Process the analyst's report:
- Parse the JSON report returned by the analyst
- Validate findings: Ensure each finding has:
- A clear title
- Evidence from at least 2 files
- Impact score ≥ 4 (discard low-impact findings)
- Well-formed markdown content
- Deduplicate against existing rules: Compare each finding title and content against existing
.claude/rules/files. Skip findings that duplicate existing rules. - Select top 3: From the remaining findings, select the top 3 by impact score. If fewer than 3 remain after filtering, present whatever is left.
- If zero findings remain: Inform the user that the project is already well-documented or no significant undocumented patterns were found.
Phase 4: Present to User
Present the filtered findings to the user in a clear, structured format:
I analyzed your codebase and found N patterns worth documenting as project rules:
1. **[RULE]** <Title> (Impact: X/10)
<One-line explanation>
2. **[RULE]** <Title> (Impact: X/10)
<One-line explanation>
3. **[RULE]** <Title> (Impact: X/10)
<One-line explanation>
Then ask the user for confirmation using AskUserQuestion:
- Present choices: "Save all N rules", "Let me choose which ones to save", "Cancel — don't save anything"
- If the user wants to select individually, present each rule one by one with "Save / Skip" options
- Never save automatically — always require explicit user approval
Phase 5: Persist Approved Rules
For each approved rule:
- Ensure directory exists:
mkdir -p .claude/rules
-
Generate the file name: Use the finding's
titlefield converted to kebab-case:- Example:
"API Response Envelope Convention"→api-response-envelope-convention.md - Avoid generic names like
rule-1.mdorlearned-pattern.md
- Example:
-
Check for conflicts: Before writing, check if a file with the same name already exists:
- If it exists, present a diff to the user and ask whether to replace, merge, or skip
-
Write the rule file: Create the file in
.claude/rules/with the analyst's pre-formatted content -
Confirm to user: After saving, list all created files:
✅ Rules saved successfully:
.claude/rules/api-response-envelope-convention.md
.claude/rules/feature-based-module-organization.md
.claude/rules/test-factory-pattern.md
These rules will be automatically applied by Claude Code in future sessions.
Best Practices
- Run early in a project: Use this skill when joining a new project to quickly codify conventions
- Review before saving: Always verify the generated rules make sense for your project
- Iterate: Run the skill periodically as the project evolves — new patterns may emerge
- Edit after saving: Generated rules are starting points; refine them to match your exact preferences
- Commit rules to git:
.claude/rules/files are project-specific and should be version-controlled so the whole team benefits
Constraints and Warnings
Critical Constraints
- Never save without confirmation: Always ask the user before writing any files
- Project-local only: Only write to
.claude/rules/in the current project directory, never to global paths - Read-only analysis: The analyst sub-agent must not modify any project files
- Evidence-based: Every rule must be backed by concrete evidence from the codebase
- No hallucination: Do not invent patterns that are not actually present in the codebase
- Respect existing rules: Do not overwrite existing rules without explicit user approval
- Keep rules focused: Each rule file should address one specific convention or pattern
Limitations
- Large monorepos: Analysis may take longer on very large codebases. The analyst scans representative samples, not every file.
- Polyglot projects: In multi-language projects, rules are generated per-language. Ensure the rule title indicates the language scope.
- Existing rules conflict: If the project already has comprehensive
.claude/rules/, the skill may find few or no new patterns. This is expected. - Dynamic patterns: Some patterns only emerge at runtime (e.g., middleware ordering). This skill focuses on static codebase analysis.
Examples
Example 1: Learning from a NestJS project
User request: "Learn from this project"
Phase 1 — Context assessment:
Found: TypeScript/NestJS project with 142 source files
Existing rules: 0 files in .claude/rules/
Starting deep analysis...
Phase 4 — Presentation:
I analyzed your codebase and found 3 patterns worth documenting as project rules:
1. **[RULE]** Feature-Based Module Organization (Impact: 9/10)
All modules follow src/modules/<feature>/ with controller, service, dto, entity subdirectories.
2. **[RULE]** DTO Validation Convention (Impact: 8/10)
All DTOs use class-validator decorators and follow Create/Update naming pattern.
3. **[RULE]** Error Response Envelope (Impact: 7/10)
All API errors return { statusCode, message, error } consistent envelope format.
Save all 3 rules? [Save all / Let me choose / Cancel]
Phase 5 — Persistence:
✅ Rules saved successfully:
.claude/rules/feature-based-module-organization.md
.claude/rules/dto-validation-convention.md
.claude/rules/error-response-envelope.md
These rules will be automatically applied by Claude Code in future sessions.
Example 2: Project with existing rules
User request: "Discover project patterns"
Phase 1 — Context assessment:
Found: Java/Spring Boot project with 87 source files
Existing rules: 4 files in .claude/rules/
Starting deep analysis...
Phase 3 — After filtering:
The analyst found 6 patterns, but 4 overlap with your existing rules.
After deduplication, 2 new patterns remain:
1. **[RULE]** Repository Method Naming (Impact: 7/10)
All custom repository methods use findBy/existsBy/countBy prefix convention.
2. **[RULE]** Integration Test Database Strategy (Impact: 6/10)
Integration tests use @Testcontainers with PostgreSQL and @Sql for fixtures.
Save these 2 rules? [Save all / Let me choose / Cancel]
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