sales-engineer
npx skills add https://github.com/alirezarezvani/claude-skills --skill sales-engineer
Agent 安装分布
Skill 文档
Sales Engineer Skill
A production-ready skill package for pre-sales engineering that bridges technical expertise and sales execution. Provides automated analysis for RFP/RFI responses, competitive positioning, and proof-of-concept planning.
Overview
Role: Sales Engineer / Solutions Architect Domain: Pre-Sales Engineering, Solution Design, Technical Demos, Proof of Concepts Business Type: SaaS / Pre-Sales Engineering
What This Skill Does
- RFP/RFI Response Analysis – Score requirement coverage, identify gaps, generate bid/no-bid recommendations
- Competitive Technical Positioning – Build feature comparison matrices, identify differentiators and vulnerabilities
- POC Planning – Generate timelines, resource plans, success criteria, and evaluation scorecards
- Demo Preparation – Structure demo scripts with talking points and objection handling
- Technical Proposal Creation – Framework for solution architecture and implementation planning
- Win/Loss Analysis – Data-driven competitive assessment for deal strategy
Key Metrics
| Metric | Description | Target |
|---|---|---|
| Win Rate | Deals won / total opportunities | >30% |
| Sales Cycle Length | Average days from discovery to close | <90 days |
| POC Conversion Rate | POCs resulting in closed deals | >60% |
| Customer Engagement Score | Stakeholder participation in evaluation | >75% |
| RFP Coverage Score | Requirements fully addressed | >80% |
5-Phase Workflow
Phase 1: Discovery & Research
Objective: Understand customer requirements, technical environment, and business drivers.
Activities:
- Conduct technical discovery calls with stakeholders
- Map customer’s current architecture and pain points
- Identify integration requirements and constraints
- Document security and compliance requirements
- Assess competitive landscape for this opportunity
Tools: Use rfp_response_analyzer.py to score initial requirement alignment.
Output: Technical discovery document, requirement map, initial coverage assessment.
Phase 2: Solution Design
Objective: Design a solution architecture that addresses customer requirements.
Activities:
- Map product capabilities to customer requirements
- Design integration architecture
- Identify customization needs and development effort
- Build competitive differentiation strategy
- Create solution architecture diagrams
Tools: Use competitive_matrix_builder.py to identify differentiators and vulnerabilities.
Output: Solution architecture, competitive positioning, technical differentiation strategy.
Phase 3: Demo Preparation & Delivery
Objective: Deliver compelling technical demonstrations tailored to stakeholder priorities.
Activities:
- Build demo environment matching customer’s use case
- Create demo script with talking points per stakeholder role
- Prepare objection handling responses
- Rehearse failure scenarios and recovery paths
- Collect feedback and adjust approach
Templates: Use demo_script_template.md for structured demo preparation.
Output: Customized demo, stakeholder-specific talking points, feedback capture.
Phase 4: POC & Evaluation
Objective: Execute a structured proof-of-concept that validates the solution.
Activities:
- Define POC scope, success criteria, and timeline
- Allocate resources and set up environment
- Execute phased testing (core, advanced, edge cases)
- Track progress against success criteria
- Generate evaluation scorecard
Tools: Use poc_planner.py to generate the complete POC plan.
Templates: Use poc_scorecard_template.md for evaluation tracking.
Output: POC plan, evaluation scorecard, go/no-go recommendation.
Phase 5: Proposal & Closing
Objective: Deliver a technical proposal that supports the commercial close.
Activities:
- Compile POC results and success metrics
- Create technical proposal with implementation plan
- Address outstanding objections with evidence
- Support pricing and packaging discussions
- Conduct win/loss analysis post-decision
Templates: Use technical_proposal_template.md for the proposal document.
Output: Technical proposal, implementation timeline, risk mitigation plan.
Python Automation Tools
1. RFP Response Analyzer
Script: scripts/rfp_response_analyzer.py
Purpose: Parse RFP/RFI requirements, score coverage, identify gaps, and generate bid/no-bid recommendations.
Coverage Categories:
- Full (100%) – Requirement fully met by current product
- Partial (50%) – Requirement partially met, workaround or configuration needed
- Planned (25%) – On product roadmap, not yet available
- Gap (0%) – Not supported, no current plan
Priority Weighting:
- Must-Have: 3x weight
- Should-Have: 2x weight
- Nice-to-Have: 1x weight
Bid/No-Bid Logic:
- Bid: Coverage score >70% AND must-have gaps <=3
- Conditional Bid: Coverage score 50-70% OR must-have gaps 2-3
- No-Bid: Coverage score <50% OR must-have gaps >3
Usage:
# Human-readable output
python scripts/rfp_response_analyzer.py assets/sample_rfp_data.json
# JSON output
python scripts/rfp_response_analyzer.py assets/sample_rfp_data.json --format json
# Help
python scripts/rfp_response_analyzer.py --help
Input Format: See assets/sample_rfp_data.json for the complete schema.
2. Competitive Matrix Builder
Script: scripts/competitive_matrix_builder.py
Purpose: Generate feature comparison matrices, calculate competitive scores, identify differentiators and vulnerabilities.
Feature Scoring:
- Full (3) – Complete feature support
- Partial (2) – Partial or limited feature support
- Limited (1) – Minimal or basic feature support
- None (0) – Feature not available
Usage:
# Human-readable output
python scripts/competitive_matrix_builder.py competitive_data.json
# JSON output
python scripts/competitive_matrix_builder.py competitive_data.json --format json
Output Includes:
- Feature comparison matrix with scores
- Weighted competitive scores per product
- Differentiators (features where our product leads)
- Vulnerabilities (features where competitors lead)
- Win themes based on differentiators
3. POC Planner
Script: scripts/poc_planner.py
Purpose: Generate structured POC plans with timeline, resource allocation, success criteria, and evaluation scorecards.
Default Phase Breakdown:
- Week 1: Setup – Environment provisioning, data migration, configuration
- Weeks 2-3: Core Testing – Primary use cases, integration testing
- Week 4: Advanced Testing – Edge cases, performance, security
- Week 5: Evaluation – Scorecard completion, stakeholder review, go/no-go
Usage:
# Human-readable output
python scripts/poc_planner.py poc_data.json
# JSON output
python scripts/poc_planner.py poc_data.json --format json
Output Includes:
- POC plan with phased timeline
- Resource allocation (SE, engineering, customer)
- Success criteria with measurable metrics
- Evaluation scorecard (functionality, performance, integration, usability, support)
- Risk register with mitigation strategies
- Go/No-Go recommendation framework
Reference Knowledge Bases
| Reference | Description |
|---|---|
references/rfp-response-guide.md |
RFP/RFI response best practices, compliance matrix, bid/no-bid framework |
references/competitive-positioning-framework.md |
Competitive analysis methodology, battlecard creation, objection handling |
references/poc-best-practices.md |
POC planning methodology, success criteria, evaluation frameworks |
Asset Templates
| Template | Purpose |
|---|---|
assets/technical_proposal_template.md |
Technical proposal with executive summary, solution architecture, implementation plan |
assets/demo_script_template.md |
Demo script with agenda, talking points, objection handling |
assets/poc_scorecard_template.md |
POC evaluation scorecard with weighted scoring |
assets/sample_rfp_data.json |
Sample RFP data for testing the analyzer |
assets/expected_output.json |
Expected output from rfp_response_analyzer.py |
Communication Style
- Technical yet accessible – Translate complex concepts for business stakeholders
- Confident and consultative – Position as trusted advisor, not vendor
- Evidence-based – Back every claim with data, demos, or case studies
- Stakeholder-aware – Tailor depth and focus to audience (CTO vs. end user vs. procurement)
Integration Points
- Marketing Skills – Leverage competitive intelligence and messaging frameworks from
../../marketing-skill/ - Product Team – Coordinate on roadmap items flagged as “Planned” in RFP analysis from
../../product-team/ - C-Level Advisory – Escalate strategic deals requiring executive engagement from
../../c-level-advisor/ - Customer Success – Hand off POC results and success criteria to CSM from
../customer-success-manager/
Last Updated: February 2026 Status: Production-ready Tools: 3 Python automation scripts References: 3 knowledge base documents Templates: 5 asset files