CallForge – AI-Powered Product Insights Processor from Sales Calls
Automate product feedback extraction from AI-analyzed sales calls and store structured insights in Notion for data-driven product decisions.
🎯 Who is This For?
This workflow is designed for:
✅ Product managers tracking customer feedback and feature requests.
✅ Engineering teams identifying usability issues and AI/ML-related mentions.
✅ Customer success teams monitoring product pain points from real sales conversations.
It streamlines product intelligence gathering, ensuring customer insights are structured, categorized, and easily accessible in Notion for better decision-making.
🔍 What Problem Does This Workflow Solve?
Product teams often struggle to capture, categorize, and act on valuable feedback from sales calls.
With CallForge, you can:
✔ Automatically extract and categorize product feedback from AI-analyzed sales calls.
✔ Track AI/ML-related mentions to gauge customer demand for AI-driven features.
✔ Identify feature requests and pain points for product development prioritization.
✔ Store structured feedback in Notion, reducing manual tracking and increasing visibility across teams.
This workflow eliminates manual feedback tracking, allowing product teams to focus on innovation and customer needs.
📌 Key Features & Workflow Steps
🎙️ AI-Powered Product Feedback Processing
This workflow processes AI-generated sales call insights and organizes them in Notion databases:
Triggers when AI sales call data is received.
Detects product-related feedback (feature requests, bug reports, usability issues).
Extracts key product insights, categorizing feedback based on customer needs.
Identifies AI/ML-related mentions, tracking customer interest in AI-driven solutions.
Aggregates feedback and categorizes it by sentiment (positive, neutral, negative).
Logs insights in Notion, making them accessible for product planning discussions.
📊 Notion Database Integration
Product Feedback → Logs feature requests, usability issues, and bug reports.
AI Use Cases → Tracks AI-related discussions and customer interest in machine learning solutions.
🛠 How to Set Up This Workflow
1. Prepare Your AI Call Analysis Data
Ensure AI-generated sales call insights are available.
Compatible with Gong, Fireflies.ai, Otter.ai, and other AI transcription tools.
2. Connect Your Notion Database
Set up Notion databases for:
🔹 Product Feedback (logs feature requests and bug reports).
🔹 AI Use Cases (tracks AI/ML mentions and customer demand).
3. Configure n8n API Integrations
Connect your Notion API key in n8n under “Notion API Credentials.”
Set up webhook triggers to receive AI-generated sales insights.
Test the workflow using a sample AI sales call analysis.
🔧 How to Customize This Workflow
💡 Modify Notion Data Structure – Adjust fields to align with your product team’s workflow.
💡 Refine AI Data Processing Rules – Customize how feature requests and pain points are categorized.
💡 Integrate with Slack or Email – Notify teams when recurring product issues emerge.
💡 Expand with Project Management Tools – Sync insights with Jira, Trello, or Asana to create product tickets automatically.
⚙️ Key Nodes Used in This Workflow
🔹 If Nodes – Detect if product feedback, AI mentions, or feature requests exist in AI data.
🔹 Notion Nodes – Create and update structured feedback entries in Notion.
🔹 Split Out & Aggregate Nodes – Process multiple insights and consolidate AI-generated data.
🔹 Wait Nodes – Ensure smooth sequencing of API calls and database updates.
🚀 Why Use This Workflow?
✔ Eliminates manual sales call review for product teams.
✔ Provides structured, AI-driven insights for feature planning and prioritization.
✔ Tracks AI/ML mentions to assess demand for AI-powered solutions.
✔ Improves product development strategies by leveraging real customer insights.
✔ Scalable for teams using n8n Cloud or self-hosted deployments.
This workflow empowers product teams by transforming sales call data into actionable intelligence, optimizing feature planning, bug tracking, and AI/ML strategy. 🚀