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    Home»Development»Machine Learning»How to Build an Asynchronous AI Agent Network Using Gemini for Research, Analysis, and Validation Tasks

    How to Build an Asynchronous AI Agent Network Using Gemini for Research, Analysis, and Validation Tasks

    June 8, 2025

    In this tutorial, we introduce the Gemini Agent Network Protocol, a powerful and flexible framework designed to enable intelligent collaboration among specialized AI agents. Leveraging Google’s Gemini models, the protocol facilitates dynamic communication between agents, each equipped with distinct roles: Analyzer, Researcher, Synthesizer, and Validator. Users will learn to set up and configure an asynchronous agent network, enabling automated task distribution, collaborative problem-solving, and enriched dialogue management. Ideal for scenarios such as in-depth research, complex data analysis, and information validation, this framework empowers users to harness collective AI intelligence efficiently.

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    import asyncio
    import json
    import random
    from dataclasses import dataclass, asdict
    from typing import Dict, List, Optional, Any
    from enum import Enum
    import google.generativeai as genai

    We leverage asyncio for concurrent execution, dataclasses for structured message management, and Google’s Generative AI (google.generativeai) to facilitate interactions among multiple AI-driven agents. It includes utilities for dynamic message handling and structured agent roles, enhancing scalability and flexibility in collaborative AI tasks.

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    API_KEY = None
    
    
    try:
        import google.colab
        IN_COLAB = True
    except ImportError:
        IN_COLAB = False

    We initialize the API_KEY and detect whether the code is running in a Colab environment. If the google.colab module is successfully imported, the IN_COLAB flag is set to True; otherwise, it defaults to False, allowing the script to adjust behavior accordingly.

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    class AgentType(Enum):
        ANALYZER = "analyzer"
        RESEARCHER = "researcher"
        SYNTHESIZER = "synthesizer"
        VALIDATOR = "validator"
    
    
    @dataclass
    class Message:
        sender: str
        receiver: str
        content: str
        msg_type: str
        metadata: Dict = None

    Check out the Notebook

    We define the core structures for agent interaction. The AgentType enum categorizes agents into four distinct roles, Analyzer, Researcher, Synthesizer, and Validator, each with a specific function in the collaborative network. The Message dataclass represents the format for inter-agent communication, encapsulating sender and receiver IDs, message content, type, and optional metadata.

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    class GeminiAgent:
        def __init__(self, agent_id: str, agent_type: AgentType, network: 'AgentNetwork'):
            self.id = agent_id
            self.type = agent_type
            self.network = network
            self.model = genai.GenerativeModel('gemini-2.0-flash')
            self.inbox = asyncio.Queue()
            self.context_memory = []
           
            self.system_prompts = {
                AgentType.ANALYZER: "You are a data analyzer. Break down complex problems into components and identify key patterns.",
                AgentType.RESEARCHER: "You are a researcher. Gather information and provide detailed context on topics.",
                AgentType.SYNTHESIZER: "You are a synthesizer. Combine information from multiple sources into coherent insights.",
                AgentType.VALIDATOR: "You are a validator. Check accuracy and consistency of information and conclusions."
            }
       
        async def process_message(self, message: Message):
            """Process incoming message and generate response"""
            if not API_KEY:
                return "❌ API key not configured. Please set API_KEY variable."
               
            prompt = f"""
            {self.system_prompts[self.type]}
           
            Context from previous interactions: {json.dumps(self.context_memory[-3:], indent=2)}
           
            Message from {message.sender}: {message.content}
           
            Provide a focused response (max 100 words) that adds value to the network discussion.
            """
           
            try:
                response = await asyncio.to_thread(
                    self.model.generate_content, prompt
                )
                return response.text.strip()
            except Exception as e:
                return f"Error processing: {str(e)}"
       
        async def send_message(self, receiver_id: str, content: str, msg_type: str = "task"):
            """Send message to another agent"""
            message = Message(self.id, receiver_id, content, msg_type)
            await self.network.route_message(message)
       
        async def broadcast(self, content: str, exclude_self: bool = True):
            """Broadcast message to all agents in network"""
            for agent_id in self.network.agents:
                if exclude_self and agent_id == self.id:
                    continue
                await self.send_message(agent_id, content, "broadcast")
       
        async def run(self):
            """Main agent loop"""
            while True:
                try:
                    message = await asyncio.wait_for(self.inbox.get(), timeout=1.0)
                   
                    response = await self.process_message(message)
                   
                    self.context_memory.append({
                        "from": message.sender,
                        "content": message.content,
                        "my_response": response
                    })
                   
                    if len(self.context_memory) > 10:
                        self.context_memory = self.context_memory[-10:]
                   
                    print(f"🤖 {self.id} ({self.type.value}): {response}")
                   
                    if random.random() < 0.3:  
                        other_agents = [aid for aid in self.network.agents.keys() if aid != self.id]
                        if other_agents:
                            target = random.choice(other_agents)
                            await self.send_message(target, f"Building on that: {response[:50]}...")
                   
                except asyncio.TimeoutError:
                    continue
                except Exception as e:
                    print(f"❌ Error in {self.id}: {e}")

    Check out the Notebook

    The GeminiAgent class defines the behavior and capabilities of each agent in the network. Upon initialization, it assigns a unique ID, role type, and a reference to the agent network and loads the Gemini 2.0 Flash model. It uses role-specific system prompts to generate intelligent responses based on incoming messages, which are processed asynchronously through a queue. Each agent maintains a context memory to retain recent interactions and can either respond directly, send targeted messages, or broadcast insights to others. The run() method continuously processes messages, promotes collaboration by occasionally initiating responses to other agents, and manages message handling in a non-blocking loop.

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    class AgentNetwork:
        def __init__(self):
            self.agents: Dict[str, GeminiAgent] = {}
            self.message_log = []
            self.running = False
       
        def add_agent(self, agent_type: AgentType, agent_id: Optional[str] = None):
            """Add new agent to network"""
            if not agent_id:
                agent_id = f"{agent_type.value}_{len(self.agents)+1}"
           
            agent = GeminiAgent(agent_id, agent_type, self)
            self.agents[agent_id] = agent
            print(f"✅ Added {agent_id} to network")
            return agent_id
       
        async def route_message(self, message: Message):
            """Route message to target agent"""
            self.message_log.append(asdict(message))
           
            if message.receiver in self.agents:
                await self.agents[message.receiver].inbox.put(message)
            else:
                print(f"⚠  Agent {message.receiver} not found")
       
        async def initiate_task(self, task: str):
            """Start a collaborative task"""
            print(f"🚀 Starting task: {task}")
           
            analyzer_agents = [aid for aid, agent in self.agents.items()
                              if agent.type == AgentType.ANALYZER]
           
            if analyzer_agents:
                initial_message = Message("system", analyzer_agents[0], task, "task")
                await self.route_message(initial_message)
       
        async def run_network(self, duration: int = 30):
            """Run the agent network for specified duration"""
            self.running = True
            print(f"🌐 Starting agent network for {duration} seconds...")
           
            agent_tasks = [agent.run() for agent in self.agents.values()]
           
            try:
                await asyncio.wait_for(asyncio.gather(*agent_tasks), timeout=duration)
            except asyncio.TimeoutError:
                print("⏰ Network session completed")
            finally:
                self.running = False

    Check out the Notebook

    The AgentNetwork class manages the coordination and communication between all agents in the system. It allows dynamic addition of agents with unique IDs and specified roles, maintains a log of all exchanged messages, and facilitates message routing to the correct recipient. The network can initiate a collaborative task by sending the starting message to an Analyzer agent, and runs the full asynchronous event loop for a specified duration, enabling agents to operate concurrently and interactively within a shared environment.

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    async def demo_agent_network():
        """Demonstrate the Gemini Agent Network Protocol"""
       
        network = AgentNetwork()
       
        network.add_agent(AgentType.ANALYZER, "deep_analyzer")
        network.add_agent(AgentType.RESEARCHER, "info_gatherer")
        network.add_agent(AgentType.SYNTHESIZER, "insight_maker")
        network.add_agent(AgentType.VALIDATOR, "fact_checker")
       
        task = "Analyze the potential impact of quantum computing on cybersecurity"
       
        network_task = asyncio.create_task(network.run_network(20))
        await asyncio.sleep(1)  
        await network.initiate_task(task)
        await network_task
       
        print(f"n📊 Network completed with {len(network.message_log)} messages exchanged")
        agent_participation = {aid: sum(1 for msg in network.message_log if msg['sender'] == aid)
                              for aid in network.agents}
        print("Agent participation:", agent_participation)
    
    
    def setup_api_key():
        """Interactive API key setup"""
        global API_KEY
       
        if IN_COLAB:
            from google.colab import userdata
            try:
                API_KEY = userdata.get('GEMINI_API_KEY')
                genai.configure(api_key=API_KEY)
                print("✅ API key loaded from Colab secrets")
                return True
            except:
                print("💡 To use Colab secrets: Add 'GEMINI_API_KEY' in the secrets panel")
       
        print("🔑 Please enter your Gemini API key:")
        print("   Get it from: https://makersuite.google.com/app/apikey")
       
        try:
            if IN_COLAB:
                from google.colab import userdata
                API_KEY = input("Paste your API key here: ").strip()
            else:
                import getpass
                API_KEY = getpass.getpass("Paste your API key here: ").strip()
           
            if API_KEY and len(API_KEY) > 10:
                genai.configure(api_key=API_KEY)
                print("✅ API key configured successfully!")
                return True
            else:
                print("❌ Invalid API key")
                return False
        except KeyboardInterrupt:
            print("n❌ Setup cancelled")
            return False

    Check out the Notebook

    The demo_agent_network() function orchestrates the entire agent workflow: it initializes an agent network, adds four role-specific agents, launches a cybersecurity task, and runs the network asynchronously for a fixed duration while tracking message exchanges and agent participation. Meanwhile, setup_api_key() provides an interactive mechanism to securely configure the Gemini API key, with tailored logic for both Colab and non-Colab environments, ensuring the AI agents can communicate with the Gemini model backend before the demo begins.

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    if __name__ == "__main__":
        print("🧠 Gemini Agent Network Protocol")
        print("=" * 40)
       
        if not setup_api_key():
            print("❌ Cannot run without valid API key")
            exit()
       
        print("n🚀 Starting demo...")
       
        if IN_COLAB:
            import nest_asyncio
            nest_asyncio.apply()
            loop = asyncio.get_event_loop()
            loop.run_until_complete(demo_agent_network())
        else:
            asyncio.run(demo_agent_network())
    

    Finally, the above code serves as the entry point for executing the Gemini Agent Network Protocol. It begins by prompting the user to set up the Gemini API key, exiting if not provided. Upon successful configuration, the demo is launched. If running in Google Colab, it applies nest_asyncio to handle Colab’s event loop restrictions; otherwise, it uses Python’s native asyncio.run() to execute the asynchronous demo of agent collaboration.

    In conclusion, by completing this tutorial, users gain practical knowledge of implementing an AI-powered collaborative network using Gemini agents. The hands-on experience provided here demonstrates how autonomous agents can effectively break down complex problems, collaboratively generate insights, and ensure the accuracy of information through validation.


    Check out the Notebook. All credit for this research goes to the researchers of this project. Also, feel free to follow us on Twitter and don’t forget to join our 99k+ ML SubReddit and Subscribe to our Newsletter.

    The post How to Build an Asynchronous AI Agent Network Using Gemini for Research, Analysis, and Validation Tasks appeared first on MarkTechPost.

    Source: Read More 

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