Logictree
FreeNot checkedEnables hierarchical problem analysis using logic trees with MECE validation, hypothesis generation, and feasibility assessment for structured decision-making.
About
Enables hierarchical problem analysis using logic trees with MECE validation, hypothesis generation, and feasibility assessment for structured decision-making.
README
An advanced MCP server implementation for hierarchical problem analysis using logic trees with sophisticated analytical capabilities. This server enables structured thinking through visual tree representations that break down complex problems into manageable, interconnected components while providing MECE validation, hypothesis generation, and feasibility assessment.
Features
Core Capabilities
- Hierarchical problem decomposition with rich metadata support
- MECE validation (Mutually Exclusive, Collectively Exhaustive) with overlap detection
- Hypothesis generation and reasoning support for evidence-based analysis
- Feasibility assessment with actionability scoring for solutions
- Gap analysis to identify missing causes, effects, or solutions
- Confidence and priority tracking with evidence-based reasoning
Tree Operations
- Multiple node types (problem, cause, effect, solution, decision, option)
- Advanced node creation with confidence, priority, feasibility, evidence, and assumptions
- Tree operations (add, remove, move, update nodes)
- Visual tree representation with colored nodes and metadata display
- Comprehensive tree analysis with recommendations
AI Guidance Features
- Smart workflow guidance with next-step recommendations
- Quick analysis optimized for AI consumption
- Current status assessment with contextual suggestions
- Automatic recommendation generation based on tree state
Analysis Features
- Root cause analysis with hypothesis testing
- Decision tree support with feasibility scoring
- MECE validation and gap analysis
- Logic validation and consistency checking
- Action planning with concrete step identification
Tool
logictree
Facilitates hierarchical problem analysis through structured logic trees.
🚀 AI Guidance Operations (START HERE):
get_status: Get current tree status with AI guidance and next stepsnext_steps: Get detailed workflow recommendations with specific actionsquick_analysis: Get focused analysis results optimized for AI consumption
📝 Basic Operations:
add_node: Create a new node with optional metadata (confidence, priority, feasibility, evidence, assumptions, tags)remove_node: Delete a node and all its childrenmove_node: Change a node's parent to restructure the treeupdate_node: Modify existing node content or metadatavisualize_tree: Display the complete tree structure with metadata
🔍 Advanced Analysis Operations:
analyze_tree: Get comprehensive tree analysis with MECE validation and recommendationsgenerate_hypotheses: Generate testable hypotheses for a specific nodesuggest_actions: Get prioritized recommendations for improvement
Node Types:
problem: The main issue or question to be addressedcause: Contributing factors or root causeseffect: Consequences or outcomessolution: Proposed fixes or answersdecision: Choice points or decision branchesoption: Available alternatives or choices
Parameters:
operation(required): The action to performnodeId: Target node identifier (for node-specific operations)content: Text content for new nodes (required for add_node)nodeType: Node category (required for add_node)parentId: Parent node for new nodes (optional for root)newParentId: New parent when moving nodes
Enhanced Metadata Parameters (within metadata object):
metadata.confidence: Confidence level (0-1) in the node's validitymetadata.priority: Priority level (1-5) for solutions and actionsmetadata.feasibility: Feasibility score (1-5) for solution implementationmetadata.evidence: Array of supporting evidence or data sourcesmetadata.assumptions: Array of underlying assumptionsmetadata.tags: Array of categorization tags for organization
Usage Examples
AI-Guided Workflow (Recommended)
// 1. Start with status check (ALWAYS begin with this)
{"operation": "get_status"}
// Response includes: current state, AI guidance, suggested next operations
// 2. If tree is empty, AI will guide you to create root problem
{"operation": "add_node", "content": "Low website conversion rate", "nodeType": "problem"}
// 3. Check progress and get next steps
{"operation": "quick_analysis"}
// Response: focused insights, key findings, next actions, AI guidance
// 4. Get specific next step recommendations
{"operation": "next_steps"}
// Response: exact parameters to use, workflow guidance, reasoning
Basic Problem Analysis
// 1. Create root problem
{"operation": "add_node", "content": "Low website conversion rate", "nodeType": "problem"}
// 2. Add potential causes with metadata
{"operation": "add_node", "content": "Slow page load times", "nodeType": "cause", "parentId": "node_1", "metadata": {"confidence": 0.8, "evidence": ["Google Analytics shows 5s average load time", "User feedback mentions slow performance"]}}
{"operation": "add_node", "content": "Confusing navigation", "nodeType": "cause", "parentId": "node_1", "metadata": {"confidence": 0.6, "evidence": ["Heatmap data shows scattered clicks"]}}
{"operation": "add_node", "content": "Weak call-to-action", "nodeType": "cause", "parentId": "node_1", "metadata": {"confidence": 0.7}}
// 3. Add solutions with priority and feasibility
{"operation": "add_node", "content": "Optimize images and compress CSS/JS files by 30%", "nodeType": "solution", "parentId": "node_2", "metadata": {"priority": 5, "feasibility": 4, "assumptions": ["Development team has 2 weeks availability"]}}
{"operation": "add_node", "content": "Redesign main navigation menu with user testing", "nodeType": "solution", "parentId": "node_3", "metadata": {"priority": 3, "feasibility": 2}}
// 4. Get comprehensive analysis
{"operation": "analyze_tree"}
// 5. Generate hypotheses for testing
{"operation": "generate_hypotheses", "nodeId": "node_1"}
// 6. Get action recommendations
{"operation": "suggest_actions"}
Advanced Analysis Workflow
// 1. Create decision point with assumptions
{"operation": "add_node", "content": "Choose marketing channel for Q1 campaign", "nodeType": "decision", "metadata": {"assumptions": ["Budget limit of $50k", "Target audience is 25-45 professionals"]}}
// 2. Add options with feasibility scores
{"operation": "add_node", "content": "Social media advertising (LinkedIn/Facebook)", "nodeType": "option", "parentId": "node_1", "metadata": {"feasibility": 5, "priority": 4, "evidence": ["Previous campaign achieved 3.2% CTR"]}}
{"operation": "add_node", "content": "Email marketing to existing database", "nodeType": "option", "parentId": "node_1", "metadata": {"feasibility": 4, "priority": 3, "evidence": ["Database of 15k subscribers"]}}
{"operation": "add_node", "content": "Content marketing blog series", "nodeType": "option", "parentId": "node_1", "metadata": {"feasibility": 2, "priority": 2}}
// 3. Get action recommendations
{"operation": "suggest_actions"}
// 4. Comprehensive analysis
{"operation": "analyze_tree"}
// 5. Visualize the complete tree
{"operation": "visualize_tree"}
Configuration
Usage with Claude Desktop
Add this to your claude_desktop_config.json:
docker
{
"mcpServers": {
"logictree": {
"command": "docker",
"args": [
"run",
"--rm",
"-i",
"mostlyfine/mcp-logictree"
]
}
}
}
To disable logging of tree visualizations set env var: DISABLE_TREE_LOGGING to true.
Usage with VS Code
For Docker installation:
{
"mcp": {
"servers": {
"logic-tree": {
"command": "docker",
"args": [
"run",
"--rm",
"-i",
"mostlyfine/mcp-logictree"
]
}
}
}
}
Building
Local Development
npm install
npm run build
Docker
docker build -t mostlyfine/mcp-logictree .
Use Cases
Business Analysis
- Root Cause Analysis: Break down problems with MECE validation and evidence tracking
- Decision Making: Structure choices with feasibility assessment and priority ranking
- Strategic Planning: Create hierarchical project breakdowns with actionability scoring
- Risk Assessment: Identify gaps and validate assumptions in risk analysis
Problem Solving
- Technical Troubleshooting: Systematically analyze issues with hypothesis generation
- Process Improvement: Map current state problems and evaluate solution feasibility
- Quality Analysis: Structure quality issues with evidence-based cause identification
- Systems Thinking: Map complex relationships with confidence scoring
Research and Analysis
- Hypothesis Testing: Generate testable hypotheses for research questions
- Gap Analysis: Identify missing elements in research or analysis
- Evidence Organization: Structure findings with confidence levels and supporting data
- Recommendation Development: Create actionable recommendations with priority scoring
Project Management
- Issue Resolution: Structure project problems with feasibility-assessed solutions
- Stakeholder Analysis: Map stakeholder concerns with evidence and priority levels
- Risk Management: Analyze project risks with comprehensive cause-effect mapping
- Decision Documentation: Create evidence-based decision trees with clear rationale
License
This MCP server is licensed under the MIT License. This means you are free to use, modify, and distribute the software, subject to the terms and conditions of the MIT License. For more details, please see the LICENSE file in the project repository.
Installing Logictree
This server has no published package — it is built from source. Open the repository and follow its README.
▸ github.com/mostlyfine/mcp-logictreeFAQ
Is Logictree MCP free?
Yes, Logictree MCP is free — one-click install via Unyly at no cost.
Does Logictree need an API key?
No, Logictree runs without API keys or environment variables.
Is Logictree hosted or self-hosted?
A hosted option is available: Unyly runs the server in the cloud, no local setup required.
How do I install Logictree in Claude Desktop, Claude Code or Cursor?
Open Logictree on unyly.org, pick your client tab (Claude Desktop, Claude Code, Cursor) and press Install — the config is generated automatically, no JSON editing.
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