vuralserhat86

audience_intelligence

27
10
# Install this skill:
npx skills add vuralserhat86/antigravity-agentic-skills --skill "audience_intelligence"

Install specific skill from multi-skill repository

# Description

Analyzes target audience demographics, psychographics, behaviors, and platform preferences to inform influencer selection and campaign strategy. Essential foundation for effective influencer marketing.

# SKILL.md


name: audience_intelligence
router_kit: FullStackKit
description: Analyzes target audience demographics, psychographics, behaviors, and platform preferences to inform influencer selection and campaign strategy. Essential foundation for effective influencer marketing.
metadata:
skillport:
category: auto-healed
tags: [agents, algorithms, analytics, artificial intelligence, audience intelligence, automation, behavior, chatbots, cognitive services, deep learning, demographics, embeddings, frameworks, generative ai, inference, large language models, llm, machine learning, market research, model fine-tuning, natural language processing, neural networks, nlp, openai, prompt engineering, rag, retrieval augmented generation, tools, user segments, vector databases, workflow automation]


Audience Analyzer

This skill helps you deeply understand your target audience before selecting influencers. It analyzes demographics, behaviors, content preferences, and platform habits to ensure influencer partnerships reach the right people.

When to Use This Skill

  • Starting a new influencer marketing program
  • Launching a product to a new audience segment
  • Refining your influencer selection criteria
  • Understanding why previous campaigns underperformed
  • Identifying audience overlap between brand and influencers
  • Developing audience personas for briefing

What This Skill Does

  1. Demographic Analysis: Age, gender, location, income, education
  2. Psychographic Profiling: Values, interests, lifestyle, attitudes
  3. Behavioral Mapping: Purchase habits, content consumption, decision journey
  4. Platform Analysis: Where they spend time, how they engage
  5. Content Preferences: Formats, topics, styles that resonate
  6. Influencer Affinity: Types of creators they follow and trust

How to Use

Basic Audience Analysis

Analyze the target audience for [brand/product/category]
Who is the ideal customer for [product] and where do they spend time online?

From Customer Data

Here's our customer data: [data]. Build an audience profile for influencer targeting.

Competitive Analysis

Analyze the audience that follows [competitor brand] on social media

Instructions

When a user requests audience analysis:

  1. Gather Context

```markdown
### Analysis Parameters

Brand/Product: [name]
Category: [industry/vertical]
Current Customer Base: [description if available]
Geographic Focus: [regions/countries]
Price Point: [budget/mid/premium]
Campaign Objective: [awareness/consideration/conversion]
```

  1. Analyze Demographics

```markdown
## Demographic Profile

### Primary Audience

Attribute Profile Confidence
Age Range [X-Y years] High/Med/Low
Gender [distribution] High/Med/Low
Location [primary markets] High/Med/Low
Income [range] High/Med/Low
Education [level] High/Med/Low
Occupation [types] High/Med/Low
Family Status [single/married/parents] High/Med/Low

### Secondary Audience

Attribute Profile Notes
[attributes] [values] [notes]

### Demographic Insights

Key Findings:
1. [Insight about age/generation]
2. [Insight about location/culture]
3. [Insight about life stage]

Implications for Influencer Selection:
- Look for influencers aged [range] who resonate with [demographic]
- Prioritize creators in [locations/markets]
- Consider [family/lifestyle] focused content creators
```

  1. Profile Psychographics

```markdown
## Psychographic Profile

### Values & Beliefs

Value Importance How It Manifests
[Value 1] High [Behavior/preference]
[Value 2] High [Behavior/preference]
[Value 3] Medium [Behavior/preference]

### Interests & Hobbies

Primary Interests (directly related to product):
- [Interest 1] - [relevance]
- [Interest 2] - [relevance]

Adjacent Interests (lifestyle/cultural):
- [Interest 1] - [connection to brand]
- [Interest 2] - [connection to brand]

### Lifestyle Characteristics

Daily Life:
- Morning routine: [description]
- Work/life balance: [description]
- Leisure time: [how they spend it]
- Social habits: [description]

Aspiration Profile:
- Who they aspire to be: [description]
- Brands they admire: [brands]
- Lifestyle they want: [description]

### Personality Traits

Trait Level Impact on Content
[Trait 1] High/Med/Low [How to appeal]
[Trait 2] High/Med/Low [How to appeal]

Implications for Influencer Selection:
- Partner with creators who embody [values]
- Content should reflect [lifestyle aspirations]
- Avoid influencers who [misaligned traits]
```

  1. Map Behavioral Patterns

```markdown
## Behavioral Analysis

### Purchase Behavior

Decision Journey:

Stage Duration Key Activities Influencer Role
Awareness [time] [activities] [how influencers help]
Consideration [time] [activities] [how influencers help]
Decision [time] [activities] [how influencers help]
Post-Purchase [time] [activities] [how influencers help]

Purchase Triggers:
- [Trigger 1]: [description]
- [Trigger 2]: [description]
- [Trigger 3]: [description]

Purchase Barriers:
- [Barrier 1]: [how to overcome]
- [Barrier 2]: [how to overcome]

### Content Consumption

Daily Media Diet:

Time Activity Platforms Content Type
Morning [activity] [platforms] [content]
Commute [activity] [platforms] [content]
Lunch [activity] [platforms] [content]
Evening [activity] [platforms] [content]
Weekend [activity] [platforms] [content]

Content Engagement Patterns:
- Most active time: [days/times]
- Average session length: [duration]
- Engagement style: [passive viewer/active commenter/sharer]
- Discovery method: [algorithm/search/recommendations]

### Social Behavior

How They Interact with Influencers:
- Follow count: [typical range]
- Engagement level: [lurker/occasional/active]
- Trust in recommendations: [low/medium/high]
- UGC creation: [never/occasionally/frequently]
```

  1. Analyze Platform Preferences

```markdown
## Platform Analysis

### Platform Priority Matrix

Platform Usage Level Primary Purpose Best Content Type
Instagram High/Med/Low [purpose] [format]
TikTok High/Med/Low [purpose] [format]
YouTube High/Med/Low [purpose] [format]
Twitter/X High/Med/Low [purpose] [format]
LinkedIn High/Med/Low [purpose] [format]
Pinterest High/Med/Low [purpose] [format]
Twitch High/Med/Low [purpose] [format]

### Primary Platform Deep-Dive: [Platform]

Usage Patterns:
- Time spent: [hours/day]
- Sessions: [frequency]
- Primary activities: [discovery/entertainment/shopping/social]

Content Preferences:
- Preferred format: [Stories/Reels/Feed/etc.]
- Content length: [preference]
- Audio: [sound on/off]

Influencer Relationship:
- Influencer types followed: [mega/macro/micro/nano]
- Categories: [lifestyle/comedy/educational/etc.]
- Trust level: [how much they trust platform recommendations]

### Platform Recommendation

Prioritize these platforms:
1. [Platform 1]: [reason] - [% of budget recommended]
2. [Platform 2]: [reason] - [% of budget recommended]
3. [Platform 3]: [reason] - [% of budget recommended]

Avoid or deprioritize:
- [Platform]: [reason]
```

  1. Identify Content Preferences

```markdown
## Content Preference Analysis

### Format Preferences

Format Preference Best For Example
Short video (<60s) High/Med/Low [use case] [example]
Long video (>3min) High/Med/Low [use case] [example]
Static images High/Med/Low [use case] [example]
Carousel posts High/Med/Low [use case] [example]
Stories High/Med/Low [use case] [example]
Live streams High/Med/Low [use case] [example]
Podcasts High/Med/Low [use case] [example]

### Content Style Preferences

Tone that resonates:
- [Authentic/polished]
- [Humorous/serious]
- [Educational/entertaining]
- [Aspirational/relatable]

Visual aesthetics:
- [Minimalist/maximalist]
- [Bright/moody]
- [Professional/casual]
- [Trendy/timeless]

Storytelling preferences:
- [Personal stories/product focus]
- [Problem-solution/lifestyle integration]
- [Tutorial/review/unboxing]

### Topics That Engage

Topic Interest Level Content Angle
[Topic 1] High [angle]
[Topic 2] High [angle]
[Topic 3] Medium [angle]

### Content Red Flags

Avoid these approaches:
- [Approach 1]: [why it fails]
- [Approach 2]: [why it fails]
```

  1. Profile Influencer Affinity

```markdown
## Influencer Affinity Analysis

### Influencer Types They Follow

Type Popularity Trust Level Example Categories
Mega (1M+) [%] [level] [categories]
Macro (100K-1M) [%] [level] [categories]
Micro (10K-100K) [%] [level] [categories]
Nano (<10K) [%] [level] [categories]

### Why They Follow Influencers

Motivation Strength Implications
Entertainment High/Med/Low [content strategy]
Education High/Med/Low [content strategy]
Aspiration High/Med/Low [content strategy]
Deals/Discounts High/Med/Low [content strategy]
Community High/Med/Low [content strategy]
FOMO High/Med/Low [content strategy]

### Trust Factors

What builds credibility:
1. [Factor 1]: [explanation]
2. [Factor 2]: [explanation]
3. [Factor 3]: [explanation]

What destroys trust:
1. [Factor 1]: [why it fails]
2. [Factor 2]: [why it fails]

### Ideal Influencer Profile

Based on audience analysis, ideal influencers should:

  • Be aged: [range]
  • Have aesthetic: [style description]
  • Create content about: [topics]
  • Communicate with: [tone/style]
  • Have engagement rate: [minimum %]
  • Be on: [priority platforms]
  • Avoid: [red flags]
    ```

  • Generate Audience Persona

```markdown
## Audience Persona

### "[Persona Name]"

Demographics:
- Age: [X]
- Location: [city/region]
- Occupation: [job]
- Income: [range]
- Family: [status]

Bio:
[2-3 sentence description of who they are]

A Day in Their Life:
[Brief narrative of typical day including media consumption]

Goals & Challenges:
- Goals: [what they want to achieve]
- Challenges: [what stands in their way]
- How [product] helps: [connection]

Media Consumption:
- Primary platform: [platform]
- Content preferences: [types]
- Influencers they follow: [examples/types]
- Trust triggers: [what makes them believe]

Purchase Journey:
- Discovery: [how they find products]
- Research: [how they evaluate]
- Decision: [what tips them over]
- Loyalty: [what keeps them]

Key Quote:

"[A quote this persona might say about the product/category]"
```

  1. Summarize Influencer Selection Criteria

```markdown
# Audience Analysis Summary

## Key Audience Insights

  1. [Most important insight]
  2. [Second insight]
  3. [Third insight]

## Influencer Selection Criteria

Based on this audience analysis:

### Must-Have Criteria

Criterion Requirement Reasoning
Audience age [range] Matches target demographic
Platform [platforms] Where audience is active
Content style [style] Resonates with preferences
Engagement rate [min %] Indicates active audience
Values alignment [values] Matches audience beliefs

### Nice-to-Have Criteria

Criterion Preference Reasoning
[criterion] [preference] [reason]

### Red Flags to Avoid

  • [Red flag 1]
  • [Red flag 2]
  • [Red flag 3]

## Recommended Influencer Mix

Tier % of Budget Quantity Role
Mega (1M+) [%] [#] Awareness/credibility
Macro (100K-1M) [%] [#] Reach + engagement
Micro (10K-100K) [%] [#] Trust + conversion
Nano (<10K) [%] [#] Authenticity + UGC

## Next Steps

  1. Use these criteria in influencer-discovery
  2. Score potential influencers with fit-scorer
  3. Develop content strategy based on [content preferences]
    ```

Example

User: "Analyze the target audience for a premium skincare brand targeting millennial women"

Output: [Comprehensive audience analysis following the structure above, with specific insights about millennial women's skincare habits, social media behavior, influencer preferences, etc.]

Tips for Success

  1. Use real data when available - Customer surveys, social insights, sales data
  2. Don't assume - Validate hypotheses with research
  3. Consider micro-segments - Not all customers are the same
  4. Update regularly - Audiences evolve
  5. Connect to influencer criteria - Every insight should inform selection

🤖 Advanced: Data-Driven Segmentation

Use Python to find hidden patterns in customer data.

import pandas as pd
from sklearn.cluster import KMeans

# 1. Load Data
df = pd.read_csv('customers.csv')
features = df[['age', 'spending_score', 'visit_frequency']]

# 2. Find Segments (K-Means)
kmeans = KMeans(n_clusters=4, random_state=42)
df['segment'] = kmeans.fit_predict(features)

# 3. Analyze Profiles
print(df.groupby('segment').mean())

🔄 Workflow

Kaynak: Data-Driven Marketing Guide

Aşama 1: Data Gathering

  • [ ] Quantitative: Google Analytics, CRM data, Sales history.
  • [ ] Qualitative: Social listening, customer interviews.
  • [ ] Competitor: Analyze who interacts with rival brands.

Aşama 2: Segmentation (AI/Manual)

  • [ ] Demographic: Yaş, Konum, Gelir (Geleneksel).
  • [ ] Psychographic: Değerler, İlgi alanları (Modern).
  • [ ] Behavioral: Satın alma sıklığı, Sadakat (Data-driven).

Aşama 3: Persona Creation

  • [ ] Draft Profile: "Tech-Savvy Tina" gibi isimler ver.
  • [ ] Empathy Map: Ne görür, duyar, düşünür, hisseder?
  • [ ] Influencer Match: Bu persona kimi takip eder?

Kontrol Noktaları

Aşama Doğrulama
1 Veri kaynağı güvenilir ve güncel
2 Segmentler birbirinden net ayrışıyor (Distinct)
3 Persona gerçekçi (hayali değil, veriye dayalı)

# Supported AI Coding Agents

This skill is compatible with the SKILL.md standard and works with all major AI coding agents:

Learn more about the SKILL.md standard and how to use these skills with your preferred AI coding agent.