Hypothesis management skill for tracking business hypotheses through testing and validation
Manages business hypotheses through systematic testing and validation processes.
npx claudepluginhub a5c-ai/babysitterThis skill is limited to using the following tools:
The Hypothesis Tracker skill provides systematic capabilities for formulating, testing, and validating business hypotheses. It supports the scientific approach to business decisions by managing hypotheses through their lifecycle from formulation to resolution.
# Create hypothesis
hypothesis = {
"id": "HYP-2024-001",
"title": "Price Elasticity Hypothesis",
"statement": "A 10% price reduction will increase unit sales by more than 15%, resulting in higher total revenue",
"context": {
"business_question": "Should we reduce prices to grow market share?",
"decision_at_stake": "Q2 pricing strategy",
"stakeholders": ["VP Sales", "CFO", "Product Manager"]
},
"structure": {
"independent_variable": "Price",
"dependent_variable": "Unit sales, Total revenue",
"mechanism": "Price elasticity of demand > 1.5",
"conditions": "In current market conditions, for existing product line"
},
"created_by": "Product Manager",
"created_date": "2024-01-15",
"status": "Testing",
"priority": "High"
}
# Define what would disprove the hypothesis
falsification_criteria = {
"hypothesis_id": "HYP-2024-001",
"criteria": [
{
"type": "primary",
"criterion": "Unit sales increase < 15% following 10% price reduction",
"measurement": "Compare 30-day sales before/after price change",
"threshold": 0.15
},
{
"type": "secondary",
"criterion": "Total revenue decreases despite volume increase",
"measurement": "Revenue comparison pre/post",
"threshold": 0
},
{
"type": "validity_check",
"criterion": "No confounding events (competitor action, seasonality)",
"measurement": "Market monitoring, historical comparison"
}
],
"minimum_evidence": "Primary criterion must be tested with n>1000 transactions"
}
# Define test approach
test_design = {
"hypothesis_id": "HYP-2024-001",
"test_type": "A/B Test",
"design": {
"control_group": "Existing price ($100)",
"treatment_group": "Reduced price ($90)",
"sample_size": {"control": 5000, "treatment": 5000},
"duration": "30 days",
"randomization": "Customer ID hash",
"primary_metric": "Units sold",
"secondary_metrics": ["Revenue", "Margin", "Customer acquisition"]
},
"statistical_plan": {
"significance_level": 0.05,
"power": 0.80,
"minimum_detectable_effect": 0.12,
"analysis_method": "Two-sample t-test"
},
"timeline": {
"start_date": "2024-02-01",
"end_date": "2024-03-02",
"analysis_date": "2024-03-05"
}
}
# Record evidence
evidence = {
"hypothesis_id": "HYP-2024-001",
"evidence_items": [
{
"id": "EV-001",
"date": "2024-03-05",
"type": "experiment_result",
"source": "A/B Test Analysis",
"finding": "Treatment group showed 18.2% increase in unit sales",
"confidence_interval": [0.142, 0.222],
"p_value": 0.001,
"supports_hypothesis": True,
"strength": "strong"
},
{
"id": "EV-002",
"date": "2024-03-05",
"type": "experiment_result",
"source": "A/B Test Analysis",
"finding": "Total revenue increased 6.4% despite 10% price cut",
"confidence_interval": [0.031, 0.097],
"p_value": 0.02,
"supports_hypothesis": True,
"strength": "moderate"
},
{
"id": "EV-003",
"date": "2024-02-20",
"type": "market_observation",
"source": "Competitive Intelligence",
"finding": "No competitor pricing changes during test period",
"supports_hypothesis": True,
"strength": "supporting_context"
}
]
}
# Resolve hypothesis
resolution = {
"hypothesis_id": "HYP-2024-001",
"resolution_date": "2024-03-10",
"outcome": "Validated",
"confidence": 0.95,
"summary": "Hypothesis supported by A/B test results. 18.2% volume increase exceeded 15% threshold, revenue increased 6.4%.",
"decision_recommendation": "Proceed with price reduction for full product line",
"caveats": [
"Results based on 30-day period, long-term effects unknown",
"Test conducted in stable market, may not hold in competitive response"
],
"learnings": [
"Price elasticity approximately 1.8 for this product category",
"Customer acquisition improved 12%, suggesting value perception impact"
],
"follow_up_hypotheses": [
"HYP-2024-002: Price reduction effect sustained over 6 months",
"HYP-2024-003: Similar elasticity exists in adjacent product lines"
]
}
{
"operation": "create|update|evidence|resolve|report",
"hypothesis": {
"title": "string",
"statement": "string",
"context": "object",
"structure": "object"
},
"falsification_criteria": ["object"],
"test_design": "object",
"evidence": ["object"],
"resolution": "object"
}
{
"hypothesis": {
"id": "string",
"status": "string",
"confidence": "number"
},
"evidence_summary": {
"supporting": "number",
"contradicting": "number",
"neutral": "number"
},
"dashboard": {
"active_hypotheses": "number",
"pending_tests": "number",
"validated_this_quarter": "number",
"invalidated_this_quarter": "number"
},
"learnings": ["string"]
}
| Status | Description |
|---|---|
| Draft | Being formulated |
| Ready | Falsification criteria defined |
| Testing | Active test in progress |
| Analyzing | Test complete, analyzing results |
| Validated | Evidence supports hypothesis |
| Invalidated | Evidence contradicts hypothesis |
| Inconclusive | Insufficient evidence either way |
| Archived | No longer relevant |
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