pipeline-forecasting
정보
파이프라인 예측 스킬은 계획 수립을 위한 신뢰 구간과 시나리오 모델링이 포함된 데이터 기반 매출 예측을 생성합니다. 이 스킬은 가중치 기반 파이프라인 분석과 역사적 전환율을 적용하여 파이프라인 검토, 이사회 예측, 할당량 계획에 활용됩니다. 개발자는 Clari의 Revenue Operations나 Forrester의 B2B Revenue Waterfall과 같은 방법론을 기반으로 예측을 구축하는 데 이 스킬을 활용할 수 있습니다.
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Claude Code
추천npx skills add guia-matthieu/clawfu-skills -a claude-code/plugin add https://github.com/guia-matthieu/clawfu-skillsgit clone https://github.com/guia-matthieu/clawfu-skills.git ~/.claude/skills/pipeline-forecastingClaude Code에서 이 명령을 복사하여 붙여넣어 스킬을 설치하세요
문서
Pipeline Forecasting
Build accurate, data-driven revenue forecasts using historical conversion rates, deal velocity, and confidence-weighted projections.
When to Use This Skill
- Weekly/monthly pipeline reviews with leadership
- Board meeting revenue projections
- Quota setting and territory planning
- Identifying gaps between forecast and target
- Scenario planning for best/worst/likely outcomes
Methodology Foundation
Based on Clari's Revenue Operations methodology and Forrester's B2B Revenue Waterfall, combining:
- Weighted pipeline (probability × value)
- Historical stage conversion rates
- Deal velocity analysis
- Commit vs. upside categorization
What Claude Does vs What You Decide
| Claude Does | You Decide |
|---|---|
| Calculates weighted pipeline by stage | Which deals to include/exclude |
| Applies historical conversion rates | Override factors for specific deals |
| Generates confidence intervals | Final commit number to leadership |
| Identifies forecast risks | Actions to close gaps |
| Models best/worst/likely scenarios | Which scenario to plan against |
What This Skill Does
- Ingests pipeline data - Current opportunities with stage, value, close date
- Applies conversion math - Historical win rates by stage, segment, rep
- Calculates weighted forecast - Probability-adjusted revenue projection
- Generates scenarios - Best case, commit, worst case with confidence bands
- Identifies risks - Deals pushing, pipeline gaps, coverage ratios
How to Use
I need a pipeline forecast for Q1. Here's our current pipeline:
[Paste pipeline data: Deal name, Stage, Value, Close Date, Rep]
Historical context:
- Average win rate: 25%
- Stage 3→Close rate: 45%
- Stage 4→Close rate: 70%
- Average sales cycle: 45 days
Target: $2.5M for Q1
Instructions
Step 1: Pipeline Categorization
Segment deals into:
- Commit - High confidence (Stage 4+, verbal commit)
- Best Case - Medium confidence (Stage 3, engaged)
- Upside - Low confidence (Stage 1-2, early)
Step 2: Weighted Calculation
Weighted Value = Deal Value × Stage Probability × Rep Factor
Stage Probabilities (adjust to your data):
- Stage 1 (Discovery): 10%
- Stage 2 (Qualification): 20%
- Stage 3 (Proposal): 40%
- Stage 4 (Negotiation): 70%
- Stage 5 (Verbal): 90%
Step 3: Coverage Analysis
Pipeline Coverage = Total Pipeline ÷ Target
- Healthy: 3-4x coverage
- At Risk: 2-3x coverage
- Critical: <2x coverage
Step 4: Scenario Modeling
- Worst Case: Commit only (90%+ probability deals)
- Likely Case: Commit + 50% of Best Case
- Best Case: Commit + Best Case + 25% of Upside
Step 5: Risk Identification
Flag deals with:
- Close date in past (needs update)
- No activity in 14+ days (stalled)
- Pushing from previous quarter (slip risk)
- Missing key fields (data quality)
Examples
Example 1: Quarterly Forecast
Input:
Pipeline for Q1:
- Acme Corp: Stage 4, $150K, Jan 30, Rep: Sarah
- Beta Inc: Stage 3, $80K, Feb 15, Rep: Mike
- Gamma Ltd: Stage 2, $200K, Mar 1, Rep: Sarah
- Delta Co: Stage 4, $120K, Feb 28, Rep: Lisa
- Echo Systems: Stage 1, $500K, Mar 15, Rep: Mike
Target: $400K
Output:
## Q1 Pipeline Forecast
### Weighted Pipeline
| Deal | Stage | Value | Probability | Weighted |
|------|-------|-------|-------------|----------|
| Acme Corp | 4 | $150K | 70% | $105K |
| Delta Co | 4 | $120K | 70% | $84K |
| Beta Inc | 3 | $80K | 40% | $32K |
| Gamma Ltd | 2 | $200K | 20% | $40K |
| Echo Systems | 1 | $500K | 10% | $50K |
| **Total** | | **$1.05M** | | **$311K** |
### Scenario Analysis
- **Worst Case (Commit)**: $189K (Acme + Delta at 70%)
- **Likely Case**: $245K (Commit + 50% Best Case)
- **Best Case**: $361K (All weighted)
### Coverage Ratio
- Pipeline: $1.05M
- Target: $400K
- Coverage: 2.6x ⚠️ (At Risk - need 3x+)
### Risks Identified
1. ⚠️ Echo Systems ($500K) is Stage 1 with Mar close - unlikely
2. ⚠️ Gap of $155K between Likely ($245K) and Target ($400K)
### Recommendations
1. Pressure test Acme and Delta for verbal commits
2. Accelerate Beta Inc to Stage 4 this week
3. Add $200K+ new pipeline to reach 3x coverage
Example 2: Monthly Roll-Up
Input:
January pipeline by rep:
Sarah: $450K weighted, $280K commit
Mike: $320K weighted, $150K commit
Lisa: $280K weighted, $200K commit
Team target: $500K
Output:
## January Team Forecast
| Rep | Weighted | Commit | % to Target |
|-----|----------|--------|-------------|
| Sarah | $450K | $280K | 56% |
| Mike | $320K | $150K | 30% |
| Lisa | $280K | $200K | 40% |
| **Team** | **$1.05M** | **$630K** | **126%** |
### Forecast Summary
- **Team Commit**: $630K (126% of $500K target) ✅
- **Confidence**: HIGH - commit exceeds target
### Risk Watch
- Mike at 30% commit coverage - needs deal acceleration
- Sarah carrying most weight - concentration risk
Skill Boundaries
What This Skill Does Well
- Mathematical pipeline calculations
- Scenario modeling with clear assumptions
- Identifying data quality issues
- Coverage ratio analysis
What This Skill Cannot Do
- Predict which specific deals will close (human judgment)
- Account for market changes or competitive moves
- Replace rep-level deal knowledge
- Guarantee forecast accuracy
When to Escalate to Human
- Deals with unusual circumstances (M&A, champion left)
- Market disruptions affecting close rates
- Strategic accounts requiring executive judgment
- Final commit numbers for board/investors
Iteration Guide
Follow-up Prompts
- "What if we lose the top 2 deals? Show me that scenario."
- "Apply a 20% haircut to all Stage 2 deals and recalculate."
- "Which deals have the highest impact on our forecast?"
- "Show me the gap between forecast and target by month."
Refinement Cycle
- Generate initial forecast → Review with reps
- Update deal probabilities based on rep input
- Re-run forecast with adjusted assumptions
- Lock commit number, track weekly variance
Checklists & Templates
Weekly Forecast Review Checklist
- All deals have current close dates
- Stage progression updated this week
- Commit deals have next steps scheduled
- Risks flagged and mitigation assigned
- Coverage ratio calculated
Forecast Template
## [Period] Revenue Forecast
**Generated:** [Date]
**Pipeline Cutoff:** [Date]
### Summary
- Target: $X
- Commit: $X (X% of target)
- Best Case: $X
- Coverage: Xx
### By Segment
[Table]
### Risks & Mitigations
[List]
### Actions This Week
[List]
References
- Clari Revenue Operations Playbook
- Forrester B2B Revenue Waterfall Model
- MEDDICC Deal Qualification Framework
- Gartner Sales Forecasting Best Practices
Related Skills
deal-risk-scoring- Assess individual deal healthlead-scoring- Qualify top-of-funnelaccount-health- Customer retention signals
Skill Metadata
- Domain: RevOps
- Complexity: Intermediate
- Mode: centaur
- Time to Value: 15-30 minutes per forecast
- Prerequisites: Pipeline data export, historical win rates
GitHub 저장소
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