analytics-product
Analytics de produto — PostHog, Mixpanel, eventos, funnels, cohorts, retencao, north star metric, OKRs e dashboards de produto.
Best use case
analytics-product is best used when you need a repeatable AI agent workflow instead of a one-off prompt. It is especially useful for teams working in multi. Analytics de produto — PostHog, Mixpanel, eventos, funnels, cohorts, retencao, north star metric, OKRs e dashboards de produto.
Analytics de produto — PostHog, Mixpanel, eventos, funnels, cohorts, retencao, north star metric, OKRs e dashboards de produto.
Users should expect a more consistent workflow output, faster repeated execution, and less time spent rewriting prompts from scratch.
Practical example
Example input
Use the "analytics-product" skill to help with this workflow task. Context: Analytics de produto — PostHog, Mixpanel, eventos, funnels, cohorts, retencao, north star metric, OKRs e dashboards de produto.
Example output
A structured workflow result with clearer steps, more consistent formatting, and an output that is easier to reuse in the next run.
When to use this skill
- Use this skill when you want a reusable workflow rather than writing the same prompt again and again.
When not to use this skill
- Do not use this when you only need a one-off answer and do not need a reusable workflow.
- Do not use it if you cannot install or maintain the related files, repository context, or supporting tools.
Installation
Claude Code / Cursor / Codex
Manual Installation
- Download SKILL.md from GitHub
- Place it in
.claude/skills/analytics-product/SKILL.mdinside your project - Restart your AI agent — it will auto-discover the skill
How analytics-product Compares
| Feature / Agent | analytics-product | Standard Approach |
|---|---|---|
| Platform Support | Not specified | Limited / Varies |
| Context Awareness | High | Baseline |
| Installation Complexity | Unknown | N/A |
Frequently Asked Questions
What does this skill do?
Analytics de produto — PostHog, Mixpanel, eventos, funnels, cohorts, retencao, north star metric, OKRs e dashboards de produto.
Where can I find the source code?
You can find the source code on GitHub using the link provided at the top of the page.
Related Guides
AI Agents for Marketing
Discover AI agents for marketing workflows, from SEO and content production to campaign research, outreach, and analytics.
AI Agent for Product Research
Browse AI agent skills for product research, competitive analysis, customer discovery, and structured product decision support.
AI Agents for Startups
Explore AI agent skills for startup validation, product research, growth experiments, documentation, and fast execution with small teams.
SKILL.md Source
# ANALYTICS-PRODUCT — Decida com Dados
## Overview
Analytics de produto — PostHog, Mixpanel, eventos, funnels, cohorts, retencao, north star metric, OKRs e dashboards de produto. Ativar para: configurar tracking de eventos, criar funil de conversao, analise de cohort, retencao, DAU/MAU, feature flags, A/B testing, north star metric, OKRs, dashboard de produto.
## When to Use This Skill
- When you need specialized assistance with this domain
## Do Not Use This Skill When
- The task is unrelated to analytics product
- A simpler, more specific tool can handle the request
- The user needs general-purpose assistance without domain expertise
## How It Works
```
[objeto]_[verbo_passado]
Correto: user_signed_up, conversation_started, upgrade_completed
Errado: signup, click, conversion
```
## Analytics-Product — Decida Com Dados
> "In God we trust. All others must bring data." — W. Edwards Deming
---
## Eventos Essenciais Da Auri
```python
AURI_EVENTS = {
# Aquisicao
"user_signed_up": {"props": ["source", "medium", "campaign"]},
"onboarding_started": {"props": ["step_count"]},
"onboarding_completed": {"props": ["time_to_complete", "steps_skipped"]},
# Ativacao
"first_conversation": {"props": ["intent", "response_time"]},
"aha_moment_reached": {"props": ["trigger", "session_number"]},
"feature_discovered": {"props": ["feature_name", "discovery_method"]},
# Retencao
"conversation_started": {"props": ["intent", "user_tier", "device"]},
"conversation_completed":{"props": ["messages_count", "duration", "rating"]},
"session_started": {"props": ["days_since_last", "platform"]},
# Receita
"upgrade_viewed": {"props": ["trigger", "current_tier"]},
"upgrade_started": {"props": ["target_tier", "trigger"]},
"upgrade_completed": {"props": ["tier", "plan", "revenue"]},
"subscription_canceled": {"props": ["reason", "tier", "tenure_days"]},
"payment_failed": {"props": ["attempt_count", "error_code"]},
}
```
## Implementacao Posthog (Python)
```python
from posthog import Posthog
import os
posthog = Posthog(
project_api_key=os.environ["POSTHOG_API_KEY"],
host=os.environ.get("POSTHOG_HOST", "https://app.posthog.com")
)
def track(user_id: str, event: str, properties: dict = None):
posthog.capture(
distinct_id=user_id,
event=event,
properties=properties or {}
)
def identify(user_id: str, traits: dict):
posthog.identify(
distinct_id=user_id,
properties=traits
)
## Uso:
track("user_123", "conversation_started", {
"intent": "business_advice",
"device": "alexa",
"user_tier": "pro"
})
```
---
## Funil De Ativacao Auri
```
Visita landing page (100%)
| [meta: 40%]
Clicou "Experimentar" (40%)
| [meta: 70%]
Completou cadastro (28%)
| [meta: 60%]
Fez primeira conversa (17%) <- AHA MOMENT
| [meta: 50%]
Voltou no dia seguinte (8.5%)
| [meta: 40%]
Usou 3+ dias na semana (3.4%)
| [meta: 20%]
Converteu para Pro (0.7%)
```
## Otimizando O Funil
```
Para cada drop-off > benchmark:
1. Identificar: onde exatamente o usuario sai?
2. Entender: por que? (session recordings, surveys)
3. Hipotese: qual mudanca poderia melhorar?
4. Testar: A/B test com amostra estatisticamente significante
5. Medir: 2 semanas minimo, p-value < 0.05
6. Aprender: mesmo se falhar, entende-se o usuario melhor
```
---
## Analise De Cohort (Retencao Semanal)
```python
def calculate_cohort_retention(events_df):
"""
events_df: DataFrame com colunas [user_id, event_date, event_name]
Retorna: matriz de retencao [cohort_week x week_number]
"""
import pandas as pd
first_session = events_df[events_df.event_name == "session_started"] \
.groupby("user_id")["event_date"].min() \
.dt.to_period("W")
sessions = events_df[events_df.event_name == "session_started"].copy()
sessions["cohort"] = sessions["user_id"].map(first_session)
sessions["weeks_since"] = (
sessions["event_date"].dt.to_period("W") - sessions["cohort"]
).apply(lambda x: x.n)
cohort_data = sessions.groupby(["cohort", "weeks_since"])["user_id"].nunique()
cohort_sizes = cohort_data.unstack().iloc[:, 0]
retention = cohort_data.unstack().divide(cohort_sizes, axis=0) * 100
return retention
```
## Benchmarks De Retencao (Assistentes De Voz)
| Semana | Pessimo | Ok | Bom | Excelente |
|--------|---------|-----|-----|-----------|
| W1 | <20% | 20-35% | 35-50% | >50% |
| W4 | <10% | 10-20% | 20-30% | >30% |
| W8 | <5% | 5-12% | 12-20% | >20% |
---
## Definindo A North Star Da Auri
```
Framework:
1. O que cria valor real para o usuario? -> Conversas que geram insight/acao
2. O que prediz crescimento de longo prazo? -> Usuarios com 3+ conv/semana
3. Como medir? -> "Weekly Active Conversationalists" (WAC)
North Star: WAC (Weekly Active Conversationalists)
Definicao: Usuarios com >= 3 conversas na semana que duraram >= 2 minutos
Meta Ano 1: 10.000 WAC
Meta Ano 2: 100.000 WAC
```
## Dashboard North Star
```python
def calculate_north_star(db):
wac = db.query("""
SELECT COUNT(DISTINCT user_id) as wac
FROM conversations
WHERE
created_at >= NOW() - INTERVAL '7 days'
AND duration_seconds >= 120
GROUP BY user_id
HAVING COUNT(*) >= 3
""").scalar()
return {
"wac": wac,
"wow_growth": calculate_wow_growth(db, "wac"),
"target": 10000,
"progress": f"{wac/10000*100:.1f}%"
}
```
---
## Feature Flags Com Posthog
```python
def is_feature_enabled(user_id: str, feature: str) -> bool:
return posthog.feature_enabled(feature, user_id)
if is_feature_enabled(user_id, "new-onboarding-v2"):
show_new_onboarding()
else:
show_old_onboarding()
```
## Calculadora De Significancia Estatistica
```python
from scipy import stats
import numpy as np
def ab_test_significance(
control_conversions: int,
control_visitors: int,
variant_conversions: int,
variant_visitors: int,
confidence: float = 0.95
) -> dict:
control_rate = control_conversions / control_visitors
variant_rate = variant_conversions / variant_visitors
lift = (variant_rate - control_rate) / control_rate * 100
_, p_value = stats.chi2_contingency([
[control_conversions, control_visitors - control_conversions],
[variant_conversions, variant_visitors - variant_conversions]
])[:2]
significant = p_value < (1 - confidence)
return {
"control_rate": f"{control_rate*100:.2f}%",
"variant_rate": f"{variant_rate*100:.2f}%",
"lift": f"{lift:+.1f}%",
"p_value": round(p_value, 4),
"significant": significant,
"recommendation": "Deploy variant" if significant and lift > 0 else "Keep control"
}
```
---
## 6. Comandos
| Comando | Acao |
|---------|------|
| `/event-taxonomy` | Define taxonomia de eventos |
| `/funnel-analysis` | Analisa funil de conversao |
| `/cohort-retention` | Calcula retencao por cohort |
| `/north-star` | Define ou revisa North Star Metric |
| `/ab-test` | Calcula significancia de A/B test |
| `/dashboard-setup` | Cria dashboard de produto |
| `/okr-template` | Template de OKRs para produto |
## Best Practices
- Provide clear, specific context about your project and requirements
- Review all suggestions before applying them to production code
- Combine with other complementary skills for comprehensive analysis
## Common Pitfalls
- Using this skill for tasks outside its domain expertise
- Applying recommendations without understanding your specific context
- Not providing enough project context for accurate analysis
## Related Skills
- `growth-engine` - Complementary skill for enhanced analysis
- `monetization` - Complementary skill for enhanced analysis
- `product-design` - Complementary skill for enhanced analysis
- `product-inventor` - Complementary skill for enhanced analysisRelated Skills
production-scheduling
Codified expertise for production scheduling, job sequencing, line balancing, changeover optimisation, and bottleneck resolution in discrete and batch manufacturing.
production-code-audit
Autonomously deep-scan entire codebase line-by-line, understand architecture and patterns, then systematically transform it to production-grade, corporate-level professional quality with optimizations
product-marketing-context
Create or update a reusable product marketing context document with positioning, audience, ICP, use cases, and messaging. Use at the start of a project to avoid repeating core marketing context across tasks.
product-manager
Senior PM agent with 6 knowledge domains, 30+ frameworks, 12 templates, and 32 SaaS metrics with formulas. Pure Markdown, zero scripts.
product-manager-toolkit
Essential tools and frameworks for modern product management, from discovery to delivery.
google-analytics-automation
Automate Google Analytics tasks via Rube MCP (Composio): run reports, list accounts/properties, funnels, pivots, key events. Always search tools first for current schemas.
apify-content-analytics
Track engagement metrics, measure campaign ROI, and analyze content performance across Instagram, Facebook, YouTube, and TikTok.
analytics-tracking
Design, audit, and improve analytics tracking systems that produce reliable, decision-ready data.
ai-wrapper-product
Expert in building products that wrap AI APIs (OpenAI, Anthropic, etc. ) into focused tools people will pay for. Not just "ChatGPT but different" - products that solve specific problems with AI.
ai-product
Every product will be AI-powered. The question is whether you'll build it right or ship a demo that falls apart in production.
product-inventor
Product Inventor e Design Alchemist de nivel maximo — combina Product Thinking, Design Systems, UI Engineering, Psicologia Cognitiva, Storytelling e execucao impecavel nivel Jobs/Apple.
product-design
Design de produto nivel Apple — sistemas visuais, UX flows, acessibilidade, linguagem visual proprietaria, design tokens, prototipagem e handoff. Cobre Figma, design systems, tipografia, cor, espacamento, motion design e principios de design cognitivo.