content-agent

CleanExpo's avatarfrom CleanExpo

Generates personalized marketing content for Unite-Hub. Creates followup emails, proposals, and case studies based on contact data and interaction history. Uses Claude AI for high-quality, contextual content generation.

1stars🔀0forks📁View on GitHub🕐Updated Dec 4, 2025

When & Why to Use This Skill

This Claude skill automates the generation of highly personalized marketing content by leveraging contact data and interaction history. It solves the challenge of manual, repetitive outreach by creating contextually relevant follow-up emails, tailored proposals, and industry-specific case studies, significantly increasing engagement rates and streamlining the sales funnel through AI-driven personalization.

Use Cases

  • Automated Lead Nurturing: Automatically generate personalized follow-up emails for leads who haven't interacted in over 7 days, using their specific history to maintain interest.
  • High-Conversion Sales Proposals: Create data-backed proposals for high-intent prospects that address specific pain points, budget constraints, and expected ROI.
  • Targeted Industry Social Proof: Identify and draft case study references that match a prospect's industry and business size to build immediate credibility.
  • CRM Workflow Efficiency: Streamline the content creation process by automatically populating CRM systems with AI-generated drafts ready for human review and approval.
namecontent-agent
descriptionGenerates personalized marketing content for Unite-Hub. Creates followup emails, proposals, and case studies based on contact data and interaction history. Uses Claude AI for high-quality, contextual content generation.

Content Generation Agent Skill

Overview

The Content Agent creates personalized, high-converting marketing content by:

  1. Reading contact profiles and interaction history
  2. Analyzing engagement patterns and sentiment
  3. Generating contextually relevant content using Claude
  4. Storing drafts for human review/approval
  5. Tracking performance metrics

Content Types

1. Followup Email

When to generate:

  • Contact received email 7+ days ago (nextFollowUp date passed)
  • Status is "lead" or "prospect"
  • AI score > 60 (engaged)

Context to include:

  • Reference their last interaction
  • Mention their company/industry
  • Highlight relevant case study or service
  • Include clear CTA

Example prompt:

Generate a professional followup email for:
- Name: John Smith
- Company: TechStartup Inc
- Job Title: CEO
- Last interaction: "Interested in Q4 marketing services"
- Sentiment: positive
- Industry: Technology

The email should:
1. Reference their interest in partnership
2. Mention 1 specific success story relevant to tech startups
3. Propose a 15-minute strategy call
4. Be warm but professional
5. Keep under 150 words

2. Proposal Email

When to generate:

  • Contact has shown high engagement (AI score > 80)
  • Status is "prospect"
  • Multiple positive interactions

Context to include:

  • Personalized value proposition
  • Estimated ROI/results
  • Timeline and deliverables
  • Investment/pricing range
  • Next steps

Example prompt:

Generate a proposal email for:
- Name: Lisa Johnson
- Company: eCommerce Solutions
- Pain point: "Revamping marketing strategy"
- Budget indicator: Mid-market (medium budget)
- Timeline: Q4 2024

The proposal should:
1. Address their specific pain point
2. Outline 3-4 key deliverables
3. Mention expected metrics (e.g., "35% revenue increase")
4. Suggest 60-day engagement
5. Request a call to discuss

3. Case Study Reference

When to generate:

  • Contact from specific industry
  • AI score indicates readiness
  • Relevant success story exists

Context to include:

  • Similar company/industry case study
  • Key metrics and results
  • How it applies to their situation

How the Agent Works

Step 1: Identify Target Contacts

Query contacts where:

status = "prospect" OR "lead"
aiScore > 60
nextFollowUp <= NOW

Step 2: For Each Contact

A. Load Contact History

GET contact details
GET contact's emails (interaction history)
GET any previous generated content for this contact

B. Build Context Object

{
  name: "John Smith",
  company: "TechStartup Inc",
  jobTitle: "CEO",
  industry: "Technology",
  aiScore: 78,
  sentiment: "positive",
  lastInteraction: "Interested in Q4 partnership",
  emailsSent: 2,
  engagementDays: 15,
  hasProposalBefore: false
}

C. Determine Content Type

Logic:

IF aiScore > 80 AND !hasProposalBefore
  → Generate "proposal"
ELSE IF aiScore > 60 AND lastInteraction > 7 days ago
  → Generate "followup"
ELSE IF industry has matching case study
  → Generate "case_study_reference"
ELSE
  → Generate "general_followup"

D. Build Claude Prompt

Template:

You are a professional B2B marketing copywriter for a marketing agency.

Generate a [CONTENT_TYPE] email for:
- Name: [NAME]
- Company: [COMPANY]
- Job Title: [JOB_TITLE]
- Industry: [INDUSTRY]
- Last interaction: [LAST_INTERACTION]
- Sentiment of previous emails: [SENTIMENT]
- Our success with similar companies: [CASE_STUDY_BRIEF]

Requirements:
1. Personalized to their specific situation
2. Reference their industry/company when possible
3. Include specific, measurable outcomes (if proposal)
4. Professional but warm tone
5. Clear call-to-action
6. [TYPE_SPECIFIC_REQUIREMENTS]

Keep under [WORD_LIMIT] words.

Generate the email body only (no "Subject:" or greeting).

E. Call Claude API

POST https://api.anthropic.com/v1/messages

{
  "model": "claude-sonnet-4-5-20250929",
  "max_tokens": 1000,
  "system": "You are an expert B2B marketing copywriter...",
  "messages": [
    {
      "role": "user",
      "content": "[BUILT_PROMPT]"
    }
  ]
}

F. Parse Response

Extract text from response:

response.content[0].text

G. Store as Draft

Call Convex mutation:

POST convex mutation content.store({
  orgId: "...",
  workspaceId: "...",
  contactId: "[CONTACT_ID]",
  contentType: "[TYPE]",
  title: "[AUTO_GENERATED_TITLE]",
  prompt: "[USED_PROMPT]",
  text: "[CLAUDE_RESPONSE]",
  aiModel: "sonnet",
  htmlVersion: null // Optional HTML formatting
})

H. Log Audit Event

POST convex mutation system.logAudit({
  orgId: "...",
  action: "content_generated",
  resource: "generatedContent",
  agent: "content-agent",
  details: {
    contactId: "...",
    contentType: "[TYPE]",
    aiScore: 78,
    tokensUsed: 234
  },
  status: "success"
})

Step 3: Summary Report

Output:

✅ Content Generation Complete

Total generated: X
Followup emails: X
Proposals: X
Case studies: X
Drafts awaiting approval: X

By AI score:
- High priority (>80): X contacts
- Medium priority (60-80): X contacts

Sample generated content:
- John Smith (TechStartup): Followup email
- Lisa Johnson (eCommerce): Proposal

Next steps:
1. Review drafts in dashboard
2. Approve/edit content
3. Schedule for sending
4. Track performance metrics

Error Handling

If Claude API call fails:

Log audit event with status: "error"
Try fallback: Use template-based content
Continue to next contact

If contact data incomplete:

Skip contact with warning
Log as skipped in audit trail

Performance Tracking

After content is approved and sent:

Track:
- Opens (if integration available)
- Clicks
- Replies
- Conversions

Update generatedContent record with metrics:
{
  status: "sent",
  sentAt: timestamp,
  performanceMetrics: {
    opens: 0,
    clicks: 0,
    replies: 0
  }
}