Strategic thinking framework integrating First Principles Analysis, Stanford Design Thinking, and MIT Systems Engineering for deeper problem-solving and decision-making
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name: "moai-foundation-philosopher" description: "Strategic thinking framework integrating First Principles Analysis, Stanford Design Thinking, and MIT Systems Engineering for deeper problem-solving and decision-making" version: 1.0.0 category: "foundation" modularized: true tags: ['foundation', 'strategic-thinking', 'first-principles', 'trade-off-analysis', 'cognitive-bias', 'decision-making'] updated: 2025-12-19 status: "active" allowed-tools: "Read, Grep, Glob, mcp__context7__resolve-library-id, mcp__context7__get-library-docs"
MoAI Foundation Philosopher
Strategic thinking framework that promotes deeper analysis over quick calculations. Integrates three proven methodologies for systematic problem-solving.
Core Philosophy: Think deeply before acting. Question assumptions. Consider alternatives. Make trade-offs explicit. Check for cognitive biases.
Quick Reference (30 seconds)
What is the Philosopher Framework?
A structured approach to complex decisions combining:
- First Principles Analysis: Break problems to fundamental truths
- Stanford Design Thinking: Divergent-convergent solution generation
- MIT Systems Engineering: Systematic risk assessment and validation
Five-Phase Thinking Process:
- Assumption Audit: Surface and question what we take for granted
- First Principles Decomposition: Break down to root causes
- Alternative Generation: Create multiple solution options
- Trade-off Analysis: Compare options systematically
- Cognitive Bias Check: Verify thinking quality
When to Activate:
- Architecture decisions affecting 5+ files
- Technology selection (library, framework, database)
- Performance vs maintainability trade-offs
- Refactoring scope decisions
- Breaking changes consideration
- Any decision with significant long-term impact
Quick Access:
- Assumption questioning techniques: Assumption Matrix Module
- Root cause analysis: First Principles Module
- Option comparison: Trade-off Analysis Module
- Bias prevention: Cognitive Bias Module
Implementation Guide (5 minutes)
Phase 1: Assumption Audit
Purpose: Surface hidden assumptions before they become blind spots.
Five Critical Questions:
- What are we assuming to be true without evidence?
- What if this assumption turns out to be wrong?
- Is this a hard constraint or merely a preference?
- What evidence supports this assumption?
- Who else should validate this assumption?
Assumption Categories:
- Technical Assumptions: Technology capabilities, performance characteristics, compatibility
- Business Assumptions: User behavior, market conditions, budget availability
- Team Assumptions: Skill levels, availability, domain knowledge
- Timeline Assumptions: Delivery expectations, dependency schedules
Assumption Documentation Format:
- Assumption statement: Clear description of what is assumed
- Confidence level: High, Medium, or Low based on evidence
- Evidence basis: What supports this assumption
- Risk if wrong: Consequence if assumption proves false
- Validation method: How to verify before committing
WHY: Unexamined assumptions are the leading cause of project failures and rework. IMPACT: Surfacing assumptions early prevents 40-60% of mid-project pivots.
Phase 2: First Principles Decomposition
Purpose: Cut through complexity to find root causes and fundamental requirements.
The Five Whys Technique:
- Surface Problem: What the user or system observes
- First Why: Immediate cause analysis
- Second Why: Underlying cause investigation
- Third Why: Systemic driver identification
- Fourth Why: Organizational or process factor
- Fifth Why (Root Cause): Fundamental issue to address
Constraint Analysis:
- Hard Constraints: Non-negotiable (security, compliance, physics, budget)
- Soft Constraints: Negotiable preferences (timeline, feature scope, tooling)
- Self-Imposed Constraints: Assumptions disguised as requirements
- Degrees of Freedom: Areas where creative solutions are possible
Decomposition Questions:
- What is the actual goal behind this request?
- What problem are we really trying to solve?
- What would a solution look like if we had no constraints?
- What is the minimum viable solution?
- What can we eliminate while still achieving the goal?
WHY: Most problems are solved at the wrong level of abstraction. IMPACT: First principles thinking reduces solution complexity by 30-50%.
Phase 3: Alternative Generation
Purpose: Avoid premature convergence on suboptimal solutions.
Generation Rules:
- Minimum three distinct alternatives required
- Include at least one unconventional option
- Always include "do nothing" as baseline
- Consider short-term vs long-term implications
- Explore both incremental and transformative approaches
Alternative Categories:
- Conservative: Low risk, incremental improvement, familiar technology
- Balanced: Moderate risk, significant improvement, some innovation
- Aggressive: Higher risk, transformative change, cutting-edge approach
- Radical: Challenge fundamental assumptions, completely different approach
Creativity Techniques:
- Inversion: What would make this problem worse? Now do the opposite.
- Analogy: How do other domains solve similar problems?
- Constraint Removal: What if budget, time, or technology were unlimited?
- Simplification: What is the simplest possible solution?
WHY: The first solution is rarely the best solution. IMPACT: Considering 3+ alternatives improves decision quality by 25%.
Phase 4: Trade-off Analysis
Purpose: Make implicit trade-offs explicit and comparable.
Standard Evaluation Criteria:
- Performance: Speed, throughput, latency, resource usage
- Maintainability: Code clarity, documentation, team familiarity
- Implementation Cost: Development time, complexity, learning curve
- Risk Level: Technical risk, failure probability, rollback difficulty
- Scalability: Growth capacity, flexibility, future-proofing
- Security: Vulnerability surface, compliance, data protection
Weighted Scoring Method:
- Assign weights to criteria based on project priorities (total 100%)
- Rate each option 1-10 on each criterion
- Calculate weighted composite score
- Document reasoning for each score
- Identify score sensitivity to weight changes
Trade-off Documentation:
- What we gain: Primary benefits of chosen approach
- What we sacrifice: Explicit costs and limitations accepted
- Why acceptable: Rationale for accepting these trade-offs
- Mitigation plan: How to address downsides
WHY: Implicit trade-offs lead to regret and second-guessing. IMPACT: Explicit trade-offs improve stakeholder alignment by 50%.
Phase 5: Cognitive Bias Check
Purpose: Ensure recommendation quality by checking for common thinking errors.
Primary Biases to Monitor:
- Anchoring Bias: Over-reliance on first information encountered
- Confirmation Bias: Seeking evidence that supports existing beliefs
- Sunk Cost Fallacy: Continuing due to past investment
- Availability Heuristic: Overweighting recent or memorable events
- Overconfidence Bias: Excessive certainty in own judgment
Bias Detection Questions:
- Am I attached to this solution because I thought of it first?
- Have I actively sought evidence against my preference?
- Would I recommend this if starting fresh with no prior investment?
- Am I being influenced by recent experiences that may not apply?
- What would change my mind about this recommendation?
Mitigation Strategies:
- Pre-mortem: Imagine the decision failed; what went wrong?
- Devil's advocate: Argue against your own recommendation
- Outside view: What do base rates suggest about success?
- Disagreement seeking: Consult someone likely to challenge you
- Reversal test: If the opposite were proposed, what would you say?
WHY: Even experts fall prey to cognitive biases under time pressure. IMPACT: Bias checking prevents 20-30% of flawed technical decisions.
Advanced Implementation (10+ minutes)
Integration with MoAI Workflow
SPEC Phase Integration:
- Apply Assumption Audit during /moai:1-plan
- Document assumptions in spec.md Problem Analysis section
- Include alternative approaches considered in plan.md
- Define validation criteria in acceptance.md
TDD Phase Integration:
- Use First Principles to identify core test scenarios
- Generate test alternatives for edge cases
- Apply Trade-off Analysis for test coverage decisions
Quality Phase Integration:
- Include Cognitive Bias Check in code review process
- Verify assumptions remain valid after implementation
- Document trade-offs accepted in final documentation
Time Allocation Guidelines
Recommended effort distribution for complex decisions:
- Assumption Audit: 15% of analysis time
- First Principles Decomposition: 25% of analysis time
- Alternative Generation: 20% of analysis time
- Trade-off Analysis: 25% of analysis time
- Cognitive Bias Check: 15% of analysis time
Total Analysis vs Implementation:
- Simple decisions (1-2 files): 10% analysis, 90% implementation
- Medium decisions (3-10 files): 25% analysis, 75% implementation
- Complex decisions (10+ files): 40% analysis, 60% implementation
- Architecture decisions: 50% analysis, 50% implementation
Decision Documentation Template
Strategic Decision Record:
Decision Title: Clear statement of what was decided
Context: Why this decision was needed
Assumptions Examined:
- Assumption 1 with confidence and validation status
- Assumption 2 with confidence and validation status
Root Cause Analysis:
- Surface problem identified
- Root cause determined through Five Whys
Alternatives Considered:
- Option A with pros, cons, and score
- Option B with pros, cons, and score
- Option C with pros, cons, and score
Trade-offs Accepted:
- What we gain with chosen approach
- What we sacrifice and why acceptable
Bias Check Completed:
- Confirmation of bias mitigation steps taken
Final Decision: Selected option with primary rationale
Success Criteria: How we will measure if decision was correct
Review Trigger: Conditions that would cause reconsideration
Works Well With
Agents:
- manager-strategy: Primary consumer for SPEC analysis and planning
- expert-backend: Technology selection decisions
- expert-frontend: Architecture and framework choices
- expert-database: Schema design trade-offs
- manager-quality: Code review bias checking
Skills:
- moai-foundation-core: Integration with TRUST 5 and SPEC workflow
- moai-workflow-spec: Assumption documentation in SPEC format
- moai-domain-backend: Technology-specific trade-off criteria
- moai-domain-frontend: UI/UX decision frameworks
Commands:
- /moai:1-plan: Apply Philosopher Framework during specification
- /moai:2-run: Reference documented trade-offs during implementation
Quick Decision Matrix
When to use which phase:
Simple Bug Fix: Skip Philosopher (direct implementation) Feature Addition: Phases 1, 3, 4 (assumptions, alternatives, trade-offs) Refactoring: Phases 1, 2, 4 (assumptions, root cause, trade-offs) Technology Selection: All 5 phases (full analysis required) Architecture Change: All 5 phases with extended documentation
Module Deep Dives:
Examples: examples.md External Resources: reference.md
Origin: Inspired by Claude Code Philosopher Ignition framework
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