Deep Thinker
Advanced cognitive thinking MCP server with DAG-based thought graph, multiple reasoning strategies, metacognition, and self-evaluation.
deep-thinker
Advanced cognitive thinking MCP server with DAG-based thought graph, multiple reasoning strategies, metacognition, and self-evaluation.
A significant evolution beyond sequential-thinking MCP, providing structured deep reasoning with graph-based thought management.
Quick Start
npx deep-thinker
{
"mcpServers": {
"deep-thinker": {
"command": "npx",
"args": ["-y", "deep-thinker"]
}
}
}
Examples
| Example | Strategy | Use Case |
|---|---|---|
| Architecture Decision | Dialectic + Parallel | Monolith vs microservices |
| Debugging Incident | Abductive | Production 500 errors |
| Feature Prioritization | Parallel + Dialectic | Q3 roadmap planning |
| Scientific Hypothesis | Analogical + Abductive | LNP delivery for CRISPR |
| Breaking Dead Ends | Metacognitive switch | Serverless cost analysis |
Features
- DAG-Based Thought Graph — Thoughts form a directed acyclic graph with branching, merging, and cross-edges (not just a linear chain)
- 5 Reasoning Strategies — Sequential, Dialectic (thesis→antithesis→synthesis), Parallel, Analogical, Abductive (inference to best explanation)
- Confidence Scoring — Multi-factor confidence evaluation with support/contradiction analysis, depth penalties, and knowledge integration boosts
- Self-Critique — Automatic critique generation with severity levels and confidence adjustments
- Metacognitive Engine — Detects stuck states, stagnation, declining confidence; suggests strategy switches and corrective actions
- Knowledge Integration — Attach external knowledge to thoughts, detect gaps, validate consistency across sources
- Thought Pruning — Dead-end detection, redundancy removal, deep unproductive branch elimination, path optimization
- High-IQ Reasoning Enhancements — 8 new tools for advanced cognition: visualization, devil's advocate, cross-disciplinary synthesis, temporal projection, ethical evaluation, emotional intelligence analysis, decision explanation, social impact analysis
- Emotional Intelligence — Analyze emotional tone, empathy, persuasion effectiveness, stakeholder emotions
- Ethical Frameworks — Evaluate through deontological, consequentialist, virtue ethics, rights-based perspectives
- Cross-Domain Synthesis — Combine insights from biology, economics, physics, psychology, computer science, art
- Temporal Reasoning — Project thoughts into future/past scenarios with optimistic, pessimistic, realistic, disruptive scenarios
- Social Impact Modeling — Analyze stakeholder emotions, group cohesion, persuasion effectiveness, ethical alignment
- Uncertainty Quantification — Confidence intervals, probability distributions, sensitivity analysis for robust decisions
- Multi-Language Support — Thoughts in English, Turkish, German, French, Spanish, Japanese, Chinese, Russian
- Meta-Cognitive Layers — Recursive reasoning across 5 levels of meta-cognition
Installation
Global
npm install -g deep-thinker
npx (no install)
npx deep-thinker
MCP Configuration
Claude Desktop
Add to your claude_desktop_config.json:
{
"mcpServers": {
"deep-thinker": {
"command": "npx",
"args": ["-y", "deep-thinker"]
}
}
}
Or if installed globally:
{
"mcpServers": {
"deep-thinker": {
"command": "deep-thinker"
}
}
}
Other MCP Clients
The server communicates over stdio. Point your MCP client to the deep-thinker command or node path/to/dist/index.js.
Tools
think
Add a thought to the cognitive graph using a reasoning strategy.
Parameters:
| Parameter | Type | Required | Description |
|---|---|---|---|
content | string | Yes | The thought content |
type | string | No | Thought type: hypothesis, analysis, evidence, conclusion, question, assumption, insight, critique, synthesis, observation |
strategy | string | No | Strategy: sequential, dialectic, parallel, analogical, abductive |
confidence | number | No | Initial confidence 0-1 (default: 0.5) |
parentId | string | No | Parent node ID (default: last leaf) |
branch | string | No | Branch name for parallel exploration |
tags | string[] | No | Tags for categorization |
edgeTo | object | No | Explicit edge: { targetId, type } |
dialectic | object | No | Dialectic mode: { thesis, antithesis?, synthesis? } |
parallel | array | No | Parallel mode: [{ content, type, confidence }] |
analogical | object | No | Analogical mode: { sourceDomain, mapping, projectedConclusion } |
abductive | object | No | Abductive mode: { observation, explanations[], bestExplanation? } |
knowledge | object | No | Attach knowledge: { source, content, relevance } |
Strategy details:
- Sequential — Linear chain: each thought derives from the previous
- Dialectic — Thesis → Antithesis → Synthesis pattern to resolve contradictions
- Parallel — Explore multiple independent branches simultaneously
- Analogical — Map patterns from a known domain to the current problem
- Abductive — Generate hypotheses and infer the best explanation
Edge types: derives_from, contradicts, supports, refines, challenges, synthesizes, parallels, abstracts, instantiates
evaluate
Evaluate the thinking process with confidence scoring, critique, and graph health analysis.
Parameters:
| Parameter | Type | Required | Description |
|---|---|---|---|
nodeId | string | No | Specific node to evaluate (default: entire graph) |
critique | boolean | No | Generate self-critique (default: true) |
findGaps | boolean | No | Find knowledge gaps (default: false) |
validateKnowledge | boolean | No | Validate knowledge consistency (default: false) |
metacog
Metacognitive operations — monitor and control the thinking process.
Parameters:
| Parameter | Type | Required | Description |
|---|---|---|---|
action | string | Yes | report = full state, switch = change strategy, auto_update = let system analyze |
strategy | string | No | New strategy (for switch action) |
reason | string | No | Reason for switching (for switch action) |
The metacognitive engine automatically:
- Detects stagnation (confidence not improving)
- Detects declining confidence trends
- Detects excessive contradictions
- Suggests strategy switches, pruning, backtracking, or concluding
graph
Query and visualize the thought graph.
Parameters:
| Parameter | Type | Required | Description |
|---|---|---|---|
action | string | Yes | visualize, stats, path, node, branches, best_path, leaves |
nodeId | string | No | Node ID (for path, node actions) |
targetId | string | No | Target ID (for path action) |
prune
Prune and optimize the thought graph.
Parameters:
| Parameter | Type | Required | Description |
|---|---|---|---|
action | string | Yes | analyze (report only), prune (execute), optimize_path, prune_node |
nodeId | string | No | Node to prune (for prune_node) |
reason | string | No | Reason (for prune_node) |
reset
Reset the thought graph and start a fresh session.
Parameters:
| Parameter | Type | Required | Description |
|---|---|---|---|
problem | string | No | New problem statement |
Enhanced Tools (High-IQ Reasoning)
visualize_thought_graph
Generate visual representation of the thought graph as SVG or ASCII.
Parameters:
| Parameter | Type | Required | Description |
|---|---|---|---|
format | string | No | svg, ascii, or tree (default: ascii) |
highlightPath | string | No | Path between two node IDs (format: fromId-toId) |
showConfidence | boolean | No | Show confidence scores (default: true) |
simulate_devils_advocate
Generate counterarguments and opposing viewpoints for a given thought.
Parameters:
| Parameter | Type | Required | Description |
|---|---|---|---|
nodeId | string | Yes | Target node ID to challenge |
depth | number | No | Levels of counterarguments (1-5, default: 2) |
intensity | string | No | mild, moderate, or aggressive (default: moderate) |
cross_disciplinary_synthesis
Combine insights from multiple domains to generate novel perspectives.
Parameters:
| Parameter | Type | Required | Description |
|---|---|---|---|
sourceDomains | string[] | Yes | Domains to draw analogies from (e.g., ["biology", "economics", "art"]) |
targetProblem | string | Yes | Problem to apply cross-domain insights to |
maxAnalogies | number | No | Max analogies to generate (1-10, default: 3) |
temporal_projection
Project thoughts into future or past scenarios.
Parameters:
| Parameter | Type | Required | Description |
|---|---|---|---|
nodeId | string | Yes | Root node ID to project from |
years | number | Yes | Years forward (positive) or backward (negative) |
scenario | string | No | optimistic, pessimistic, realistic, disruptive (default: realistic) |
ethical_framework_evaluation
Evaluate a thought or decision through multiple ethical frameworks.
Parameters:
| Parameter | Type | Required | Description |
|---|---|---|---|
nodeId | string | Yes | Node ID to evaluate ethically |
frameworks | string[] | No | Which frameworks: deontological, consequentialist, virtue, rights_based (default: all) |
emotional_intelligence_analysis
Analyze emotional tone, stakeholder emotions, and social dynamics.
Parameters:
| Parameter | Type | Required | Description |
|---|---|---|---|
text | string | Yes | Text to analyze for emotional content |
context | string | No | Context (e.g., team meeting, customer feedback, crisis situation) |
perspectiveTaking | number | No | Level of perspective-taking 0-1 (default: 0.7) |
explain_decision
Generate human-understandable explanation of a decision path.
Parameters:
| Parameter | Type | Required | Description |
|---|---|---|---|
nodeId | string | Yes | Decision/conclusion node ID to explain |
detailLevel | string | No | simple, detailed, technical (default: detailed) |
includeCounterfactuals | boolean | No | Show what-if scenarios (default: true) |
social_impact_analysis
Analyze social impact, stakeholder emotions, group cohesion, and persuasion effectiveness.
Parameters:
| Parameter | Type | Required | Description |
|---|---|---|---|
nodeId | string | Yes | Node ID to analyze for social impact |
stakeholders | string[] | No | Stakeholder groups (default: ["customers", "employees", "investors", "community"]) |
Usage Examples
Sequential Reasoning
think: "Should we use microservices?" → type: question, confidence: 0.9
think: "Monolith has deployment bottlenecks" → type: analysis, confidence: 0.7
think: "Team lacks DevOps capacity for microservices" → type: evidence, confidence: 0.8
evaluate: → overall confidence 0.73
metacog: auto_update → strategy: sequential, progress: normal
Dialectic Reasoning
think: {
strategy: "dialectic",
dialectic: {
thesis: "Microservices improve scalability",
antithesis: "But add operational complexity",
synthesis: "Use modular monolith as middle ground"
},
confidence: 0.75
}
Parallel Exploration
think: {
strategy: "parallel",
parallel: [
{ content: "Team expertise in Docker/K8s", type: "evidence", confidence: 0.8 },
{ content: "Limited DevOps capacity", type: "evidence", confidence: 0.6 },
{ content: "Budget allows hiring", type: "evidence", confidence: 0.4 }
]
}
Abductive Reasoning
think: {
strategy: "abductive",
abductive: {
observation: "The grass is wet",
explanations: [
{ content: "It rained", plausibility: 0.8 },
{ content: "Sprinklers were on", plausibility: 0.6 }
],
bestExplanation: "It rained"
},
confidence: 0.8
}
Metacognitive Guidance
metacog: { action: "auto_update" }
→ ⚠ Stuck: confidence has not improved for 3 steps
→ 💡 Action: [switch_strategy] Try parallel exploration
→ Suggested Strategy: parallel
metacog: { action: "switch", strategy: "parallel", reason: "Break through impasse" }
→ Strategy switched: sequential → parallel
Pruning
prune: { action: "analyze" }
→ Dead Ends: 2
[thought_7] confidence=0.15: Bad idea...
[thought_9] confidence=0.10: Another dead end...
→ Redundant Branch Groups: 1
Keep [thought_5], prune [thought_6]: Redundant analysis...
→ Total prunable: 3 node(s)
prune: { action: "prune" }
→ Pruned 3 node(s) in 3 operations
Architecture
src/
├── index.ts MCP server & tool handlers
└── core/
├── types.ts Type definitions & constants
├── node.ts ThoughtNode CRUD operations
├── graph.ts DAG-based thought graph
├── strategies.ts 5 reasoning strategy implementations
├── scorer.ts Confidence scoring & self-critique
├── metacog.ts Metacognitive engine
├── knowledge.ts Knowledge integration & validation
└── pruner.ts Dead-end/redundancy detection & pruning
Comparison with sequential-thinking
| Feature | sequential-thinking | deep-thinker |
|---|---|---|
| Thought structure | Linear chain | DAG (branch/merge/cross-edges) |
| Strategies | Sequential only | 5 strategies (sequential, dialectic, parallel, analogical, abductive) |
| Confidence | Basic thought number | Multi-factor scoring with trend analysis |
| Self-critique | None | Automatic with severity levels |
| Metacognition | None | Stuck detection, strategy suggestions, auto-switching |
| Knowledge | None | External references, gap detection, consistency validation |
| Pruning | None | Dead-end, redundancy, path optimization |
| Graph queries | Linear review | Visualization, best path, branch analysis, statistics |
Development
git clone https://github.com/hubinoretros/deep-thinker.git
cd deep-thinker
npm install
npm run build
npm start
Testing
npm run build
node dist/test.js
118 tests covering all modules: Node, Graph, Strategies, Scorer, Metacog, Knowledge, Pruner, Integration, Edge Cases.
Documentation
- Architecture Deep Dive — how the DAG, scoring, metacog, and pruning work internally
- Strategy Selection Guide — when to use each strategy and how to combine them
Contributing
See CONTRIBUTING.md for guidelines. PRs welcome — especially new reasoning strategies and MCP tool ideas.
License
MIT
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