AI multi-agent executive team for entrepreneurs with Gemini, Perplexity and WhatsApp
This workflow is an AI-powered multi-agent system built for startup founders and small business owners who want to automate decision-making, accountability, research, and communication, all through WhatsApp.
The “virtual executive team,” is designed to help small teams to work smarter. This workflow sends you market analysis, market and sales tips, It can also monitor what your competitors are doing using perplexity (Research agent) and help you stay a head, or make better decisions. And when you feeling stuck with your start-up accountability director is creative enough to break the barrier
🎯 Core Features 🧑💼 1. President (Super Agent)
Acts as the main controller that coordinates all sub-agents. Routes messages, assigns tasks, and ensures workflow synchronization between the AI Directors.
📊 2. Sales & Marketing Director
Uses SerpAPI to search for market opportunities, leads, and trends.
Suggests marketing campaigns, keywords, or outreach ideas.
Can analyze current engagement metrics to adjust content strategy.
🕵️♀️ 3. Business Research Director
Powered by Perplexity AI for competitive and market analysis.
Monitors competitor moves, social media engagement, and product changes.
Provides concise insights to help the founder adapt and stay ahead.
⏰ 4. Accountability Director
Keeps the founder and executive team on track.
Sends motivational nudges, task reminders, and progress reports.
Promotes consistency and discipline — key traits for early-stage success.
🗓️ 5. Executive Secretary
Handles scheduling, email drafting, and reminders.
Connects with Google Calendar, Gmail, and Sheets through OAuth.
Automates follow-ups, meeting summaries, and notifications directly via WhatsApp.
💬 WhatsApp as the Main Interface
Interact naturally with your AI team through WhatsApp Business API.
All responses, updates, and summaries are delivered to your chat.
Ideal for founders who want to manage operations on the go.
⚙️ How It Works
Trigger: The workflow starts from a WhatsApp Trigger node (via Meta Developer Account).
Routing: The President agent analyzes the incoming message and determines which Director should handle it.
Processing:
Marketing or sales queries go to the Sales & Marketing Director.
Research questions are handled by the Business Research Director.
Accountability tasks are assigned to the Accountability Director.
Scheduling or communication requests are managed by the Secretary.
Collaboration: Each sub-agent returns results to the President, who summarizes and sends the reply back via WhatsApp.
Memory: Context is maintained between sessions, ensuring personalized and coherent communication.
🧩 Integrations Required
Gemini API – for general intelligence and task reasoning
Supabase- for RAG and postgres persistent memory
Perplexity API – for business and competitor analysis
SerpAPI – for market research and opportunity scouting
Google OAuth – to connect Sheets, Calendar, and Gmail
WhatsApp Business API – for message triggers and responses
🚀 Benefits
Acts like a team of tireless employees available 24/7.
Saves time by automating research, reminders, and communication.
Enhances accountability and strategy consistency for founders.
Keeps operations centralized in a simple WhatsApp interface.
🧰 Setup Steps
Create API credentials for:
WhatsApp (via Meta Developer Account)
Gemini, Perplexity, and SerpAPI
Google OAuth (Sheets, Calendar, Gmail)
Create a supabase account at supabase
Add the credentials in the corresponding n8n nodes.
Customize the system prompts for each Director based on your startup’s needs.
Activate and start interacting with your virtual executive team on WhatsApp.
Use Case
You are a small organisation or start-up that can not afford hiring; marketing department, research department and secretar office, then this workflow is for you
💡 Need Customization?
Want to tailor it for your startup or integrate with CRM tools like Notion or HubSpot? You can easily extend the workflow or contact the creator for personalized support.
Consider adjusting the system prompt to suite your business
# AI Multi-Agent Executive Team for Entrepreneurs with Gemini, Perplexity, and WhatsApp
This n8n workflow creates a sophisticated AI multi-agent executive team designed to assist entrepreneurs. It leverages various AI models and tools to provide comprehensive support, accessible directly through WhatsApp. The workflow is capable of performing internet searches, accessing knowledge bases, and engaging in conversational AI to deliver insights and assistance.
## What it does
This workflow orchestrates an AI executive team through the following steps:
1. **Listens for WhatsApp Messages**: The workflow is triggered by incoming messages to a configured WhatsApp Business Cloud account.
2. **Initializes AI Agent**: An AI Agent is activated to process the incoming message. This agent acts as the orchestrator for the executive team.
3. **Configures AI Agent with Tools**: The AI Agent is equipped with several tools to enhance its capabilities:
* **Google Gemini Chat Model**: Provides advanced conversational AI capabilities for understanding requests and generating responses.
* **OpenRouter Chat Model**: Offers an alternative or supplementary chat model for diverse AI interactions.
* **SerpApi (Google Search)**: Enables the AI agent to perform real-time internet searches to gather information.
* **Wikipedia**: Allows the AI agent to access and retrieve information from Wikipedia for factual queries.
* **Supabase Vector Store**: Utilizes a Supabase instance as a vector store for efficient storage and retrieval of embedded data, likely for context or long-term memory.
* **Default Data Loader**: Processes and loads various data types into the Supabase Vector Store.
* **Postgres Chat Memory**: Maintains conversational context and history for the AI agent, allowing for more coherent and continuous interactions.
4. **Processes User Request**: The AI Agent uses its configured tools and language models to analyze the WhatsApp message, perform necessary actions (like searching the internet or Wikipedia), and formulate a comprehensive response.
5. **Responds via WhatsApp**: The generated response from the AI Agent is sent back to the user via WhatsApp Business Cloud.
## Prerequisites/Requirements
To use this workflow, you will need:
* **n8n Instance**: A running n8n instance.
* **WhatsApp Business Cloud Account**: Configured with n8n credentials to send and receive messages.
* **Google Gemini API Key**: For the Google Gemini Chat Model.
* **OpenRouter API Key**: For the OpenRouter Chat Model.
* **SerpApi API Key**: For enabling Google Search capabilities.
* **Supabase Account**: With a configured database to act as a vector store.
* **PostgreSQL Database**: For the Postgres Chat Memory.
* **Cohere API Key**: For the Embeddings Cohere node, likely used for generating embeddings for the Supabase Vector Store.
## Setup/Usage
1. **Import the Workflow**: Download the provided JSON and import it into your n8n instance.
2. **Configure Credentials**:
* Set up your **WhatsApp Business Cloud** credential.
* Configure your **Google Gemini** credential with your API Key.
* Configure your **OpenRouter** credential with your API Key.
* Set up your **SerpApi** credential with your API Key.
* Configure your **Supabase** credential with your project URL and API Key.
* Set up your **PostgreSQL** credential with your database connection details.
* Configure your **Cohere** credential with your API Key.
3. **Activate the Workflow**: Once all credentials are set, activate the workflow.
4. **Interact via WhatsApp**: Send messages to your configured WhatsApp Business Cloud number to interact with your AI executive team.
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