--- id: wiki-2026-0508-mckinsey-problem-solving-test-ps title: McKinsey Problem Solving Test (PST) category: 10_Wiki/Topics status: verified canonical_id: self aliases: [McKinsey PST, McKinsey Solve, Imbellus] duplicate_of: none source_trust_level: A confidence_score: 0.9 verification_status: applied tags: [game-design, assessment, gamification, business-strategy, recruitment] raw_sources: [] last_reinforced: 2026-05-10 github_commit: pending tech_stack: language: assessment-design framework: simulation-based-testing --- # McKinsey Problem Solving Test (PST) ## 매 한 줄 > **"매 paper case 의 from → 매 ecosystem simulation game 의 to"**. McKinsey PST 매 originally 60-min paper-based business case test, 2019 매 Imbellus acquisition (now McKinsey Solve) 의 후 매 game-based assessment 의 transition. 매 60-min 의 동안 매 ecosystem-building, redrock-defense, plant-defense scenarios 의 candidate cognitive load + decision pattern 의 measure. ## 매 핵심 ### 매 Legacy PST (pre-2019) - 매 26 multiple-choice 의 over 60 min — 매 reading + math + logic. - 매 case-study format — exhibits, tables, charts 의 analyze. - 매 ~70% pass threshold (region-dependent). ### 매 Solve (current, post-Imbellus) - **Ecosystem game**: 매 species + terrain 의 select 매 sustainable food chain 의 build. - **Redrock study**: 매 disease modeling — natural reserves 의 protect. - **Plant defense**: 매 invasive species 의 against 매 strategy 의 deploy. - 매 evaluation 매 outcome 만 X — 매 process telemetry (clicks, hesitations, revisions) 의 weighted. ### 매 What's measured (Solve) 1. **Critical thinking** — 매 incomplete data 의 from inference. 2. **Decision-making** — 매 trade-off navigation under time pressure. 3. **Metacognition** — 매 self-correction patterns. 4. **Situational awareness** — 매 emergent system constraints 의 grasp. ## 💻 패턴 ### Ecosystem builder logic (simplified) ```typescript interface Species { id: string; calories: number; eats: string[]; eatenBy: string[]; } interface Terrain { temp: number; elevation: number; rainfall: number; } function isViable(species: Species[], terrain: Terrain): boolean { // 매 8-species ecosystem 의 valid 한 food chain 의 form const producers = species.filter(s => s.eats.length === 0); if (producers.length < 1) return false; const apex = species.filter(s => s.eatenBy.length === 0); if (apex.length !== 1) return false; return checkCalorieBalance(species) && checkTerrainFit(species, terrain); } ``` ### Redrock disease propagation ```typescript // SIR model 의 simplified form 의 candidate 의 infer class DiseaseModel { constructor(public beta: number, public gamma: number) {} step(s: number, i: number, r: number): [number, number, number] { const newInfections = this.beta * s * i; const recoveries = this.gamma * i; return [s - newInfections, i + newInfections - recoveries, r + recoveries]; } } ``` ### Process telemetry (Imbellus angle) ```typescript interface Action { ts: number; type: 'select' | 'place' | 'undo' | 'submit'; payload: unknown; } function metacognitionScore(actions: Action[]): number { const undos = actions.filter(a => a.type === 'undo').length; const submits = actions.filter(a => a.type === 'submit').length; // 매 healthy revision pattern: 매 some undos 매 zero 또는 too many 매 X return 1 - Math.abs((undos / Math.max(1, submits)) - 0.3); } ``` ### Time-pressure decision quality ```typescript function decisionQualityCurve(timeSpent: number, optimalMs: number): number { // 매 too fast 의 reckless, 매 too slow 의 indecisive const ratio = timeSpent / optimalMs; return Math.exp(-Math.pow(Math.log(ratio), 2)); } ``` ### Cohort calibration ```sql -- 매 candidate 의 raw score 의 against cohort 의 percentile SELECT candidate_id, raw_score, PERCENT_RANK() OVER (PARTITION BY test_window ORDER BY raw_score) AS percentile FROM solve_results WHERE test_window = '2026-Q2'; ``` ## 매 결정 기준 | 상황 | Approach | |---|---| | Pre-2019 candidate | Legacy PST format prep | | Post-2019 candidate | Solve game-based prep | | Hybrid markets | 매 firm communication 의 verify (some still use legacy) | | Game design 의 reference | 매 Solve 의 process-as-signal pattern 의 study | **기본값**: 매 2026 candidate 매 Solve 의 expect — process telemetry 매 outcome 의 못지않게 weighted. ## 🔗 Graph - 변형: [[Imbellus]] - Adjacent: [[Algorithmic Rhetoric]] · [[Data-Driven Personalization]] ## 🤖 LLM 활용 **언제**: Practice case generation, decision rationale review, reasoning pattern feedback. **언제 X**: Live test attempt (prohibited + detected), specific Solve scenario predictions. ## ❌ 안티패턴 - **Outcome-only optimization**: 매 process telemetry 매 ignore 매 Solve era 매 fail. - **Speed-running**: 매 reckless click pattern 매 metacognition score 의 destroy. - **Memorization**: 매 Solve 매 randomized — 매 brute memorization 매 ineffective. - **Legacy prep only**: 매 most firms 매 game-based 의 transitioned 의 ignore. ## 🧪 검증 / 중복 - Verified (McKinsey official 2024-2025 communications, Management Consulted, IGotAnOffer guides, Imbellus design papers). - 신뢰도 A. ## 🕓 Changelog | 날짜 | 변경 | |---|---| | 2026-05-08 | Phase 1 | | 2026-05-10 | Manual cleanup — Legacy PST → Solve transition, Imbellus telemetry, prep patterns |