Weekly Kpi Report
by alongor666
Generate McKinsey-style board presentation PPTs from weekly auto insurance data. Automatically calculates 16+ KPIs, creates executive-level slides with actionable insights, and supports week-over-week comparisons. Use when user uploads insurance cost data (Excel/CSV) and requests board report, weekly presentation, executive briefing, or mentions keywords like 董事会汇报, 周报PPT, 经营分析演示, McKinsey-style reports.
Skill Details
Repository Files
15 files in this skill directory
name: weekly-kpi-report description: Generate McKinsey-style board presentation PPTs from weekly auto insurance data. Automatically calculates 16+ KPIs, creates executive-level slides with actionable insights, and supports week-over-week comparisons. Use when user uploads insurance cost data (Excel/CSV) and requests board report, weekly presentation, executive briefing, or mentions keywords like 董事会汇报, 周报PPT, 经营分析演示, McKinsey-style reports.
Weekly KPI Report Generator (McKinsey Style)
Purpose
Transform weekly auto insurance policy cost data into executive-ready board presentation slides using McKinsey consulting design principles. Generate data-driven insights with conclusion-first structure, professional visualization, and actionable recommendations.
Quick Start
Three-Step Generation Process
- Upload Data: Provide weekly insurance cost data file (Excel/CSV)
- Automatic Processing: Skill validates data, calculates KPIs, and generates insights
- Download PPT: Receive McKinsey-style board presentation ready for executive meeting
Basic Usage Example
User: "Generate board report from this week's insurance data"
Assistant (using this skill):
1. Validates uploaded file and extracts week number
2. Calculates 16+ KPIs (cost rates, premium progress, loss ratios)
3. Generates 12-13 slide deck with:
- Executive summary with key insights
- Institutional and customer segment analysis
- Problem-oriented headlines with actionable recommendations
4. Returns: "{Organization}_Week{N}_McKinsey_Report.pptx"
Minimal Requirements
- Input: Excel/CSV file with insurance policy cost data
- Week Number: Extracted from filename or user-provided
- Configuration (optional): Custom thresholds in
references/config.json - Output: Professional PPT with charts, insights, and recommendations
When to Use This Skill
Trigger this skill when:
- User uploads auto insurance weekly cost data (Excel/CSV format) and requests board presentation
- User mentions keywords: "董事会汇报", "周报PPT", "经营分析演示", "board report", "executive briefing"
- User asks to generate presentation slides from insurance data
- User requests McKinsey-style or consulting-style reports
Core Workflow
Step 1: Data Validation
Execute the data validator to ensure data quality:
python scripts/data_validator.py <uploaded_file_path>
The validator checks:
- Required field completeness (policy numbers, premium amounts, cost rates)
- Data type correctness (numeric fields, date formats)
- Week number extraction from filename (e.g., "第45周" → Week 45)
- Record count and date range calculation
Step 2: KPI Calculation
Calculate board-level KPIs (not raw data dumps):
python scripts/kpi_calculator.py <file_path> <week_number>
Four KPI Categories:
-
Business Scale
- Weekly premium revenue and growth rate
- Policy count and average premium per policy
- Business type distribution (truck/passenger/private)
-
Profitability
- Combined ratio (loss ratio + expense ratio)
- Variable cost rate distribution and outliers
- Profitability comparison by customer segment
-
Business Structure
- New energy vehicle (NEV) penetration rate and trend
- Renewal rate vs. new policy ratio
- Contribution by distribution channel
-
Risk Management
- Claims frequency and high-risk business proportion
- Average claim amount changes
- Risk exposure in high-risk segments (e.g., highway freight)
Step 3: Generate McKinsey-Style PPT
Create presentation slides with consulting-grade design:
python scripts/board_ppt_generator.py <week_number> <kpi_data_json>
Slide Structure (7 slides):
- Cover - Title, date range, presenter
- Executive Summary - Core metrics with top 3 highlights/risks
- Premium Analysis - Revenue trends, business mix, YoY comparison
- Profitability Analysis - Combined ratio breakdown, cost rate by segment
- NEV Business Focus - NEV penetration, loss ratio comparison vs. traditional vehicles
- Risk Management - Claims frequency heatmap, high-risk business list
- Action Items - Auto-generated recommendations based on data patterns
Refer to references/mckinsey-style-guide.md for detailed design principles.
Step 4 (Optional): Week-over-Week Comparison
When user provides data for two consecutive weeks:
python scripts/optional_modules/week_comparator.py <week1_kpis.json> <week2_kpis.json>
Generates additional comparison slide showing WoW changes in key metrics.
Design Principles
McKinsey Three Pillars:
-
Conclusion-First Titles - Every slide title answers "So what?"
- ❌ Wrong: "Profitability Analysis"
- ✅ Right: "Profitability remains healthy with 83.9% combined ratio below industry benchmark"
-
Minimalist Layout - Less is more
- Large white space (0.8" margins)
- Single red accent line at top
- No excessive decorations or logo stacking
-
Left-Aligned Structure - Professional business style
- Title left-aligned (24pt, conclusion statement)
- Left column: bullet points
- Right column: supporting charts
- Bottom: italic recommendations (12pt)
Color Scheme: Uses client-specific colors extracted from corporate reports:
- Primary: Deep Red (#a02724) - 60% usage for core messages
- Alert: Bright Red (#c00000) - warnings and risks
- Text: Black (#000000) - titles and important text
- Background: White (#FFFFFF) - clean backdrop
Configure colors in assets/mckinsey_config.json.
Configuration
Alert Thresholds
Customize business rules in config.json:
{
"预警阈值": {
"综合成本率_上限": 95, // Alert if combined ratio > 95%
"新能源车赔付率差距": 10 // Alert if NEV loss ratio > traditional + 10pp
}
}
Display Parameters
{
"报表参数": {
"显示TOP业务类型数": 5, // Show top 5 business types
"显示TOP机构数": 5 // Show top 5 distribution channels
}
}
Refer to references/config-guide.md for full configuration options.
Usage Examples
Example 1: Basic Usage
User: 我上传了第45周的车险数据,帮我生成董事会汇报PPT
Execution:
1. Identify file: "车险保单变动成本清单__第45周_.xlsx"
2. Run data_validator.py
3. Run kpi_calculator.py with config.json thresholds
4. Run board_ppt_generator.py using assets/mckinsey_board_template.pptx
5. Output: "华安车险周报_第45周_麦肯锡版.pptx"
6. Return download link with brief data summary
Error Handling
- Missing week number in filename → Prompt user to confirm week number
- Missing required fields → List missing columns and ask whether to proceed
- All cost rates abnormal (>100%) → Warning that data may be incorrect
- Invalid JSON config → Use default values and notify user
Technical Stack
- Data processing: pandas, numpy
- Visualization: matplotlib (Chinese font handling), seaborn
- PPT generation: python-pptx
- Template: assets/mckinsey_board_template.pptx
- Field Mapping: field_mapping.json (支持中英文字段自动适配)
- Supported Data Formats:
- Excel files (.xlsx, .xls) with Chinese field names
- CSV files (.csv) with English field names (e.g., from transformed data)
Output Location
Generated PPT files saved to: /mnt/user-data/outputs/
Filename format: 华安车险周报_第{week_number}周_麦肯锡版.pptx
Version Information
- Version: v2.0.0 (Field Mapping Support)
- Last Updated: 2025-12-08
- Maintainer: Alongor
- Data Source: Hua'an Insurance Sichuan Branch weekly auto insurance reports
- Supported Formats: Excel (.xlsx, .xls), CSV (.csv)
- Supported Field Names: Chinese (跟单保费, 业务类型分类) and English (signed_premium_yuan, business_type_category)
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