pipeline-analytics
Generate interactive analytics dashboards from CRM data. Use when asked to "show pipeline stats", "create a report", "analyze leads", "show conversion rates", "build a dashboard", "visualize outreach data", "funnel analysis", or any data visualization request from DuckDB workspace data.
Packaged view
This page reorganizes the original catalog entry around fit, installability, and workflow context first. The original raw source lives below.
Install command
npx @skill-hub/cli install openclaw-skills-ironclaw-pipeline-analytics
Repository
Skill path: skills/aspenas/ironclaw-pipeline-analytics
Generate interactive analytics dashboards from CRM data. Use when asked to "show pipeline stats", "create a report", "analyze leads", "show conversion rates", "build a dashboard", "visualize outreach data", "funnel analysis", or any data visualization request from DuckDB workspace data.
Open repositoryBest for
Primary workflow: Analyze Data & AI.
Technical facets: Full Stack, Data / AI.
Target audience: everyone.
License: Unknown.
Original source
Catalog source: SkillHub Club.
Repository owner: openclaw.
This is still a mirrored public skill entry. Review the repository before installing into production workflows.
What it helps with
- Install pipeline-analytics into Claude Code, Codex CLI, Gemini CLI, or OpenCode workflows
- Review https://github.com/openclaw/skills before adding pipeline-analytics to shared team environments
- Use pipeline-analytics for development workflows
Works across
Favorites: 0.
Sub-skills: 0.
Aggregator: No.
Original source / Raw SKILL.md
---
name: pipeline-analytics
description: Generate interactive analytics dashboards from CRM data. Use when asked to "show pipeline stats", "create a report", "analyze leads", "show conversion rates", "build a dashboard", "visualize outreach data", "funnel analysis", or any data visualization request from DuckDB workspace data.
metadata: { "openclaw": { "emoji": "π" } }
---
# Pipeline Analytics β NL β SQL β Interactive Charts
Transform natural language questions into DuckDB queries and render results as interactive Recharts dashboards inline in chat.
## Workflow
```
User asks question in plain English
β Translate to DuckDB SQL against workspace pivot views (v_*)
β Execute query
β Format results as report-json
β Render as interactive Recharts components
```
## DuckDB Query Patterns
### Discovery β What objects exist?
```sql
-- List all objects and their entry counts
SELECT o.name, o.display_name, COUNT(e.id) as entries
FROM objects o
LEFT JOIN entries e ON e.object_id = o.id
GROUP BY o.name, o.display_name
ORDER BY entries DESC;
-- List fields for an object
SELECT f.name, f.field_type, f.display_name
FROM fields f
JOIN objects o ON f.object_id = o.id
WHERE o.name = 'leads'
ORDER BY f.position;
-- Available pivot views
SELECT table_name FROM information_schema.tables
WHERE table_name LIKE 'v_%';
```
### Common Analytics Queries
#### Pipeline Funnel
```sql
SELECT "Status", COUNT(*) as count
FROM v_leads
GROUP BY "Status"
ORDER BY CASE "Status"
WHEN 'New' THEN 1
WHEN 'Contacted' THEN 2
WHEN 'Qualified' THEN 3
WHEN 'Demo Scheduled' THEN 4
WHEN 'Proposal' THEN 5
WHEN 'Closed Won' THEN 6
WHEN 'Closed Lost' THEN 7
ELSE 99
END;
```
#### Outreach Activity Over Time
```sql
SELECT DATE_TRUNC('week', "Last Outreach"::DATE) as week,
"Outreach Channel",
COUNT(*) as messages_sent
FROM v_leads
WHERE "Last Outreach" IS NOT NULL
GROUP BY week, "Outreach Channel"
ORDER BY week;
```
#### Conversion Rates by Source
```sql
SELECT "Source",
COUNT(*) as total,
COUNT(*) FILTER (WHERE "Status" = 'Qualified') as qualified,
COUNT(*) FILTER (WHERE "Status" IN ('Closed Won', 'Converted')) as converted,
ROUND(100.0 * COUNT(*) FILTER (WHERE "Status" = 'Qualified') / COUNT(*), 1) as qual_rate,
ROUND(100.0 * COUNT(*) FILTER (WHERE "Status" IN ('Closed Won', 'Converted')) / COUNT(*), 1) as conv_rate
FROM v_leads
GROUP BY "Source"
ORDER BY total DESC;
```
#### Reply Rate Analysis
```sql
SELECT "Outreach Channel",
COUNT(*) as sent,
COUNT(*) FILTER (WHERE "Reply Received" = true) as replied,
ROUND(100.0 * COUNT(*) FILTER (WHERE "Reply Received" = true) / COUNT(*), 1) as reply_rate
FROM v_leads
WHERE "Outreach Status" IS NOT NULL
GROUP BY "Outreach Channel";
```
#### Time-to-Convert
```sql
SELECT "Source",
AVG(DATEDIFF('day', created_at, "Converted At"::DATE)) as avg_days_to_convert,
MEDIAN(DATEDIFF('day', created_at, "Converted At"::DATE)) as median_days
FROM v_leads
WHERE "Status" = 'Converted' AND "Converted At" IS NOT NULL
GROUP BY "Source";
```
## Report-JSON Format
Generate Recharts-compatible report cards:
```json
{
"type": "report",
"title": "Pipeline Analytics β February 2026",
"generated_at": "2026-02-17T14:30:00Z",
"panels": [
{
"title": "Pipeline Funnel",
"type": "funnel",
"data": [
{"name": "New Leads", "value": 200},
{"name": "Contacted", "value": 145},
{"name": "Qualified", "value": 67},
{"name": "Demo Scheduled", "value": 31},
{"name": "Closed Won", "value": 13}
]
},
{
"title": "Outreach Activity",
"type": "area",
"xKey": "week",
"series": [
{"key": "linkedin", "name": "LinkedIn", "color": "#0A66C2"},
{"key": "email", "name": "Email", "color": "#EA4335"}
],
"data": [
{"week": "Feb 3", "linkedin": 25, "email": 40},
{"week": "Feb 10", "linkedin": 30, "email": 35}
]
},
{
"title": "Lead Source Breakdown",
"type": "donut",
"data": [
{"name": "LinkedIn Scrape", "value": 95, "color": "#0A66C2"},
{"name": "YC Directory", "value": 45, "color": "#FF6600"},
{"name": "Referral", "value": 30, "color": "#10B981"},
{"name": "Inbound", "value": 20, "color": "#8B5CF6"}
]
},
{
"title": "Reply Rates by Channel",
"type": "bar",
"xKey": "channel",
"series": [{"key": "rate", "name": "Reply Rate %", "color": "#3B82F6"}],
"data": [
{"channel": "LinkedIn", "rate": 32},
{"channel": "Email", "rate": 18},
{"channel": "Multi-Channel", "rate": 41}
]
}
]
}
```
## Chart Types Available
| Type | Use Case | Recharts Component |
|------|----------|-------------------|
| `bar` | Comparisons, categories | BarChart |
| `line` | Trends over time | LineChart |
| `area` | Volume over time | AreaChart |
| `pie` | Distribution (single level) | PieChart |
| `donut` | Distribution (with center metric) | PieChart (innerRadius) |
| `funnel` | Stage progression | FunnelChart |
| `scatter` | Correlation (2 variables) | ScatterChart |
| `radar` | Multi-dimension comparison | RadarChart |
## Pre-Built Report Templates
### 1. Pipeline Overview
- Funnel: Lead β Contacted β Qualified β Demo β Closed
- Donut: Lead source breakdown
- Number cards: Total leads, conversion rate, avg deal size
### 2. Outreach Performance
- Area: Messages sent over time (by channel)
- Bar: Reply rates by channel
- Line: Conversion trend week-over-week
- Number cards: Total sent, reply rate, meetings booked
### 3. Rep Performance (if multi-user)
- Bar: Leads contacted per rep
- Bar: Reply rate per rep
- Bar: Conversions per rep
- Scatter: Activity volume vs. conversion rate
### 4. Cohort Analysis
- Heatmap-style: Conversion rate by signup week Γ time elapsed
- Line: Retention/engagement curves by cohort
## Natural Language Mapping
| User Says | SQL Pattern | Chart Type |
|-----------|-------------|------------|
| "show me pipeline" | GROUP BY Status | funnel |
| "outreach stats" | COUNT by channel + status | bar + area |
| "how are we converting" | conversion rates | funnel + line |
| "compare sources" | GROUP BY Source | bar |
| "weekly trend" | DATE_TRUNC + GROUP BY | line / area |
| "who replied" | FILTER Reply Received | table |
| "best performing" | ORDER BY conversion DESC | bar |
| "lead breakdown" | GROUP BY any dimension | pie / donut |
## Saving Reports
Reports can be saved as `.report.json` files in the workspace:
```
~/.openclaw/workspace/reports/
pipeline-overview.report.json
weekly-outreach.report.json
monthly-review.report.json
```
These render as live dashboards in the Ironclaw web UI when opened.
## Cron Integration
Auto-generate weekly/monthly reports:
```json
{
"name": "Weekly Pipeline Report",
"schedule": { "kind": "cron", "expr": "0 9 * * MON", "tz": "America/Denver" },
"payload": {
"kind": "agentTurn",
"message": "Generate weekly pipeline analytics report. Query DuckDB for this week's data. Create report-json with: funnel, outreach activity (area), reply rates (bar), source breakdown (donut). Save to workspace/reports/ and announce summary."
}
}
```
---
## Skill Companion Files
> Additional files collected from the skill directory layout.
### _meta.json
```json
{
"owner": "aspenas",
"slug": "ironclaw-pipeline-analytics",
"displayName": "Ironclaw Pipeline Analytics",
"latest": {
"version": "1.0.0",
"publishedAt": 1771340113568,
"commit": "https://github.com/openclaw/skills/commit/3515796eff034bf7ea2d6f80e16626fba2f60bc0"
},
"history": []
}
```