knowledge-assets

therealchrisrock's avatarfrom therealchrisrock

This skill should be used when the user asks about "knowledge assets", "capturing knowledge", "organizational memory", "experiential knowledge", "conceptual knowledge", "systemic knowledge", "routine knowledge", "preserving insights", "knowledge artifacts", or needs guidance on what types of knowledge artifacts to create and maintain in AI-human collaboration.

0stars🔀0forks📁View on GitHub🕐Updated Jan 8, 2026

When & Why to Use This Skill

This Claude skill facilitates the identification, categorization, and cultivation of organizational knowledge assets. By leveraging the SECI model (Socialization, Externalization, Combination, Internalization), it helps teams capture tacit 'tribal knowledge,' articulate conceptual designs, and build systemic documentation to ensure long-term organizational memory and efficient AI-human collaboration.

Use Cases

  • Capturing Tribal Knowledge: Guiding the extraction of experiential insights and 'how-to' intuition from senior team members to prevent knowledge loss during turnover.
  • Documentation Structuring: Transforming informal project notes, design rationales, and meeting discussions into structured conceptual and systemic assets for better reuse.
  • Knowledge Portfolio Audit: Analyzing an organization's current resource balance to identify over-reliance on individuals (experiential) or excessive, unread documentation (systemic).
  • AI-Human Knowledge Integration: Establishing frameworks for using AI to synthesize shared context, generate practice exercises for routine skill development, and maintain up-to-date wikis.
nameKnowledge Assets
descriptionThis skill should be used when the user asks about "knowledge assets", "capturing knowledge", "organizational memory", "experiential knowledge", "conceptual knowledge", "systemic knowledge", "routine knowledge", "preserving insights", "knowledge artifacts", or needs guidance on what types of knowledge artifacts to create and maintain in AI-human collaboration.
version0.1.0

Knowledge Assets: Types and Cultivation

Knowledge assets are organizational resources that can be used repeatedly to create value. Understanding knowledge asset types helps determine what artifacts to create and how to maintain them.

Core Concept

Knowledge assets are the inputs, outputs, and moderators of the knowledge creation process. Unlike physical assets, knowledge assets:

  • Grow with use: Using knowledge often creates more knowledge
  • Require maintenance: Knowledge can become outdated
  • Are context-dependent: Value depends on application context
  • Enable creation: Assets from one cycle enable the next

Four Types of Knowledge Assets

Knowledge assets map to the SECI phases that create them:

Asset Type Created By Nature Example
Experiential Socialization Tacit, shared Team intuitions, culture
Conceptual Externalization Explicit, articulated Designs, specifications
Systemic Combination Explicit, systematized Databases, documentation
Routine Internalization Tacit, embedded Skills, operational know-how

Experiential Knowledge Assets

What they are: Shared tacit knowledge built through common experiences.

Characteristics:

  • Difficult to capture explicitly
  • Built over time through interaction
  • Lost when people leave (unless transferred)
  • Foundation for other asset types

Examples:

  • Team culture and norms
  • Shared mental models
  • Trust and relationships
  • Intuitions about the product/domain
  • "How we do things here"

How to cultivate:

  1. Create opportunities for shared experience
  2. Maintain team stability when possible
  3. Enable storytelling and narrative sharing
  4. Build mentorship relationships
  5. Document the undocumentable through stories

AI-Human cultivation:

  • Accumulate context across conversations
  • Build shared understanding through iteration
  • Reference prior interactions and learnings
  • Preserve project context in memory

Conceptual Knowledge Assets

What they are: Explicit knowledge articulated from tacit understanding.

Characteristics:

  • Captured in language, diagrams, models
  • Can be shared and debated
  • May need tacit context to fully understand
  • Foundation for systematization

Examples:

  • Product specifications
  • Architecture documents
  • Design rationale
  • Brand guidelines
  • Process descriptions

How to cultivate:

  1. Create structured articulation sessions
  2. Use metaphors and analogies
  3. Iterate on documentation
  4. Include rationale, not just decisions
  5. Link to experiential context

AI-Human cultivation:

  • Use AI to structure informal thoughts
  • Generate multiple framings of concepts
  • Preserve reasoning behind decisions
  • Create visual representations

Systemic Knowledge Assets

What they are: Systematized explicit knowledge combined and organized for reuse.

Characteristics:

  • Organized in databases, repositories
  • Searchable and accessible
  • Technology-dependent
  • Require maintenance

Examples:

  • Knowledge bases and wikis
  • API documentation
  • Code repositories
  • Template libraries
  • Runbooks and playbooks

How to cultivate:

  1. Establish clear taxonomies
  2. Create consistent templates
  3. Enable search and discovery
  4. Assign ownership and maintenance
  5. Regular review and pruning

AI-Human cultivation:

  • AI-powered synthesis and summary
  • Automated cross-referencing
  • Pattern detection across documents
  • Gap identification in coverage

Routine Knowledge Assets

What they are: Tacit know-how embedded in individuals and processes.

Characteristics:

  • Embodied in practice
  • Difficult to transfer
  • Enables efficient execution
  • Built through repetition

Examples:

  • Operational expertise
  • Debugging skills
  • Customer interaction abilities
  • Pattern recognition capabilities
  • "Muscle memory" for tasks

How to cultivate:

  1. Create practice opportunities
  2. Provide graduated challenges
  3. Enable learning from mistakes
  4. Support reflection on practice
  5. Connect learning to real application

AI-Human cultivation:

  • AI-generated practice exercises
  • Feedback on practice attempts
  • Progressive difficulty adjustment
  • Pattern recognition assistance

Asset Lifecycle

Creation

Each asset type is created through its corresponding SECI phase:

Experiential ← Socialization (shared experiences)
Conceptual   ← Externalization (articulation)
Systemic     ← Combination (organization)
Routine      ← Internalization (practice)

Maintenance

Assets require different maintenance approaches:

Asset Type Maintenance Need Approach
Experiential Keep team connected Regular interaction, culture activities
Conceptual Keep current and accurate Review cycles, update triggers
Systemic Keep organized and accessible Curation, pruning, search optimization
Routine Keep skills sharp Practice, refresher training

Deprecation

Knowledge assets become less valuable when:

  • Experiential: Team members leave, culture shifts
  • Conceptual: Concepts become outdated, better models emerge
  • Systemic: Documentation becomes stale, tools change
  • Routine: Skills become irrelevant, better methods emerge

Deprecation signals:

  • Low usage rates
  • Frequent contradictions with reality
  • Questions from newcomers that docs should answer
  • Workarounds becoming common

Asset Portfolio Balance

Organizations need all four types in balance:

Over-indexed on Experiential:

  • Knowledge is in people's heads
  • Vulnerable to turnover
  • Hard to scale
  • "Tribal knowledge" problem

Over-indexed on Conceptual:

  • Lots of designs, few implementations
  • Analysis paralysis
  • Documentation without action

Over-indexed on Systemic:

  • Beautiful documentation nobody reads
  • Information overload
  • Maintenance burden

Over-indexed on Routine:

  • Skilled people, no documentation
  • Knowledge walks out the door
  • Hard to onboard new people

Healthy balance:

Experiential → Conceptual → Systemic → Routine
     ↑                                    │
     └────────────────────────────────────┘

Creating Assets in AI Collaboration

Which Asset for Which Task?

Task Primary Asset AI Role
New feature exploration Experiential Build shared context
Specification writing Conceptual Structure and articulate
Documentation building Systemic Synthesize and organize
Skill development Routine Generate practice, give feedback

Asset Creation Patterns

Pattern 1: Experience → Documentation

1. Collaborative exploration (Experiential)
2. Articulate insights (Conceptual)
3. Integrate into knowledge base (Systemic)

Pattern 2: Documentation → Capability

1. Read existing docs (Systemic)
2. Practice with AI support (Routine)
3. Apply in real context

Pattern 3: Capture Before Loss

1. Identify tacit knowledge at risk
2. Conduct articulation sessions (Experiential → Conceptual)
3. Systematize for longevity (Conceptual → Systemic)

Asset Quality Indicators

Experiential Assets

  • Team members share common vocabulary
  • Implicit knowledge is consistent across team
  • Stories and examples flow easily
  • Trust enables knowledge sharing

Conceptual Assets

  • Concepts are clearly defined
  • Rationale accompanies decisions
  • Multiple framings available
  • Links to experiential context

Systemic Assets

  • Easy to find what you need
  • Documentation is current
  • Templates are used consistently
  • Cross-references are valid

Routine Assets

  • Skills are demonstrated consistently
  • Application is efficient
  • Adaptations are appropriate
  • Teaching can occur

Additional Resources

Reference Files

For detailed cultivation strategies:

  • references/asset-cultivation.md - Comprehensive strategies for growing each asset type
knowledge-assets – AI Agent Skills | Claude Skills