seci-grai-knowledge-creation
This skill should be used when the user asks about "SECI model", "knowledge creation cycle", "tacit vs explicit knowledge", "knowledge conversion", "GRAI framework", "human-AI knowledge collaboration", "socialization externalization combination internalization", "knowledge spiral", "what phase of knowledge creation", or needs to understand which phase of knowledge work a task involves. Provides the theoretical foundation for knowledge management across all contexts.
When & Why to Use This Skill
The SECI-GRAI Knowledge Creation skill provides a comprehensive framework for managing the lifecycle of knowledge within teams and human-AI collaborative environments. By leveraging the SECI model (Socialization, Externalization, Combination, Internalization) and the GRAI extension, it helps users transform tacit expertise into explicit documentation, synthesize complex information, and accelerate organizational learning through structured knowledge spirals.
Use Cases
- Expert Knowledge Capture: Converting personal experience and 'know-how' into structured documentation, specifications, and SOPs to prevent organizational knowledge loss.
- Information Synthesis: Merging multiple fragmented documents, reports, and data sources into a cohesive, systematized knowledge base or wiki.
- AI-Assisted Training: Designing personalized learning paths and practice exercises that help users internalize explicit information into practical, tacit skills.
- Collaborative Discovery: Facilitating shared mental modeling and joint problem-solving sessions between humans and AI agents to explore new domains or project requirements.
- Process Optimization: Identifying the current phase of a knowledge-intensive task to apply the most effective AI-human interaction patterns for maximum productivity.
| name | SECI-GRAI Knowledge Creation |
|---|---|
| description | This skill should be used when the user asks about "SECI model", "knowledge creation cycle", "tacit vs explicit knowledge", "knowledge conversion", "GRAI framework", "human-AI knowledge collaboration", "socialization externalization combination internalization", "knowledge spiral", "what phase of knowledge creation", or needs to understand which phase of knowledge work a task involves. Provides the theoretical foundation for knowledge management across all contexts. |
| version | 0.1.0 |
SECI-GRAI Knowledge Creation Framework
This skill provides the theoretical foundation for understanding knowledge creation cycles, particularly in human-AI collaboration contexts. It integrates Nonaka and Takeuchi's SECI model with the modern GRAI (Generative, Receptive AI) extension.
Core Concept: Knowledge Types
All knowledge exists on a spectrum between two forms:
| Type | Nature | Example | Transfer Method |
|---|---|---|---|
| Tacit | Personal, experiential, hard to articulate | "Knowing how to ride a bike" | Observation, practice, shared experience |
| Explicit | Codified, documented, easily shared | "Instructions for assembling furniture" | Documents, databases, specifications |
The creation of new organizational knowledge occurs through continuous conversion between these types.
The SECI Model: Four Conversion Modes
Knowledge creation follows a spiral through four modes:
1. Socialization (Tacit → Tacit)
What it is: Sharing tacit knowledge through shared experiences, observation, imitation, and practice.
Indicators present phase is Socialization:
- Learning by watching someone work
- Pair programming or shadowing
- Informal knowledge transfer ("let me show you how")
- Building shared mental models through collaboration
- Apprenticeship-style learning
Key activities:
- Joint problem-solving sessions
- Collaborative exploration of a domain
- Sharing war stories and experiences
- Building rapport and shared understanding
AI-Human pattern (GRAI):
- Human→AI: Iterative prompting with rich contextual information
- AI→Human: Explaining topics, demonstrating approaches, walking through reasoning
2. Externalization (Tacit → Explicit)
What it is: Articulating tacit knowledge into explicit concepts—the most critical and difficult conversion.
Indicators present phase is Externalization:
- Documenting how something works
- Writing specifications from understanding
- Creating diagrams, models, or frameworks
- Explaining "why" decisions were made
- Converting intuition into guidelines
Key activities:
- Writing documentation from experience
- Creating product specifications
- Defining processes and workflows
- Building conceptual models
- Articulating design rationale
AI-Human pattern (GRAI):
- Human→AI: Adding materials via memory/context to refine understanding
- AI→Human: Converting unstructured knowledge into structured formats
3. Combination (Explicit → Explicit)
What it is: Combining, categorizing, and systematizing explicit knowledge into new forms.
Indicators present phase is Combination:
- Synthesizing multiple documents
- Building knowledge bases or wikis
- Creating summaries from various sources
- Restructuring existing documentation
- Cross-referencing and linking concepts
Key activities:
- Merging multiple specifications
- Creating comprehensive guides from fragments
- Building taxonomies and categorizations
- Generating reports and dashboards
- Systematizing best practices
AI-Human pattern (GRAI):
- Human→AI: Using AI creatively to combine unlikely patterns
- AI→Human: Generating summaries, meeting protocols, synthesis documents
4. Internalization (Explicit → Tacit)
What it is: Embodying explicit knowledge through learning-by-doing until it becomes tacit.
Indicators present phase is Internalization:
- Learning from documentation
- Practicing new skills
- Applying guidelines in real situations
- Building muscle memory and intuition
- "Making it your own"
Key activities:
- Hands-on practice with documented procedures
- Simulations and exercises
- Applying patterns to new contexts
- Building intuition through repetition
- Developing personal heuristics
AI-Human pattern (GRAI):
- Human→AI: AI observing patterns to suggest timely support
- AI→Human: Supporting human understanding, creating practice exercises
The Knowledge Spiral
Knowledge creation is not linear but spiral—each cycle builds on the previous:
Socialization ──────► Externalization
▲ │
│ ▼
│ KNOWLEDGE │
│ SPIRAL │
│ │
Internalization ◄────── Combination
│ ▲
└──────────────────────┘
(next cycle)
Spiral dynamics:
- Each cycle expands the knowledge base
- Individual knowledge becomes team knowledge becomes organizational knowledge
- The spiral moves through different social levels (individual → group → organization)
GRAI: The AI Extension
The GRAI framework (Generative, Receptive AI) extends SECI for human-AI collaboration by recognizing AI as an active participant in knowledge creation.
Eight Interaction Fields
GRAI doubles the SECI phases by adding direction (human↔machine):
| Phase | Human → Machine | Machine → Human |
|---|---|---|
| Socialization | Iterative prompting with context | Explaining, demonstrating, walking through |
| Externalization | Providing materials to refine AI context | Structuring unstructured information |
| Combination | Creative pattern mixing with AI | Generating summaries, protocols, syntheses |
| Internalization | AI observing patterns for support | Creating exercises, supporting understanding |
Human-Centered Design
GRAI maintains human agency through two configurations:
- Human-in-the-loop: Human makes decisions, AI augments capability
- Machine-in-the-loop: AI handles routine work, human provides oversight
The framework preserves human decision-making authority while leveraging AI for knowledge work amplification.
Phase Identification Quick Reference
To identify the current phase, ask:
| Question | If Yes → Phase |
|---|---|
| Am I learning by watching/doing with others? | Socialization |
| Am I trying to articulate something I understand but haven't documented? | Externalization |
| Am I combining or restructuring existing documented knowledge? | Combination |
| Am I learning from documentation to build new skills? | Internalization |
Applying SECI-GRAI
For Documentation Work
| Task | Primary Phase | AI Role |
|---|---|---|
| Writing specs from understanding | Externalization | Structure tacit insights |
| Synthesizing multiple docs | Combination | Merge and systematize |
| Reviewing to learn patterns | Internalization | Create practice scenarios |
| Collaborative exploration | Socialization | Explain and demonstrate |
For Product Development
| Stage | Phase | Knowledge Activity |
|---|---|---|
| Discovery | Socialization | Shared exploration with stakeholders |
| Requirements | Externalization | Documenting needs and constraints |
| Design | Combination | Synthesizing patterns and solutions |
| Implementation | Internalization | Applying documented designs |
Phase Transition Triggers
Moving between phases often requires deliberate action:
| From → To | Trigger |
|---|---|
| S → E | "Let me write this down" |
| E → C | "Let me combine these sources" |
| C → I | "Let me practice this" |
| I → S | "Let me share what I learned" |
Common Pitfalls
Skipping Externalization: Trying to combine knowledge that hasn't been articulated yet results in shallow synthesis.
Premature Combination: Combining sources before deeply understanding them produces surface-level results.
Neglecting Socialization: Pure documentation without shared experience lacks the tacit context that makes knowledge actionable.
Incomplete Internalization: Reading without practice leaves knowledge as information, not capability.
Additional Resources
Reference Files
For detailed theory and advanced applications, consult:
references/seci-deep-dive.md- Complete Nonaka & Takeuchi theory with academic foundationsreferences/grai-framework.md- Full GRAI framework details and interaction patternsreferences/phase-transitions.md- Techniques for facilitating movement between phases
Example Files
Working examples in examples/:
phase-identification-examples.md- Real-world scenarios with phase analysis
Integration with Other Skills
This skill provides the theoretical foundation. Related skills in knowledge-manager:
- ba-contexts - Enabling contexts for each SECI phase
- knowledge-assets - Types of knowledge artifacts to create
- extension-interface - Patterns for tool-specific implementations
Tool-specific plugins (e.g., km-notion, km-obsidian) extend these foundations with platform-specific patterns.