Close Menu
    DevStackTipsDevStackTips
    • Home
    • News & Updates
      1. Tech & Work
      2. View All

      BrowserStack launches Figma plugin for detecting accessibility issues in design phase

      July 22, 2025

      Parasoft brings agentic AI to service virtualization in latest release

      July 22, 2025

      Node.js vs. Python for Backend: 7 Reasons C-Level Leaders Choose Node.js Talent

      July 21, 2025

      Handling JavaScript Event Listeners With Parameters

      July 21, 2025

      I finally gave NotebookLM my full attention – and it really is a total game changer

      July 22, 2025

      Google Chrome for iOS now lets you switch between personal and work accounts

      July 22, 2025

      How the Trump administration changed AI: A timeline

      July 22, 2025

      Download your photos before AT&T shuts down its cloud storage service permanently

      July 22, 2025
    • Development
      1. Algorithms & Data Structures
      2. Artificial Intelligence
      3. Back-End Development
      4. Databases
      5. Front-End Development
      6. Libraries & Frameworks
      7. Machine Learning
      8. Security
      9. Software Engineering
      10. Tools & IDEs
      11. Web Design
      12. Web Development
      13. Web Security
      14. Programming Languages
        • PHP
        • JavaScript
      Featured

      Laravel Live Denmark

      July 22, 2025
      Recent

      Laravel Live Denmark

      July 22, 2025

      The July 2025 Laravel Worldwide Meetup is Today

      July 22, 2025

      Livewire Security Vulnerability

      July 22, 2025
    • Operating Systems
      1. Windows
      2. Linux
      3. macOS
      Featured

      Galaxy Z Fold 7 review: Six years later — Samsung finally cracks the foldable code

      July 22, 2025
      Recent

      Galaxy Z Fold 7 review: Six years later — Samsung finally cracks the foldable code

      July 22, 2025

      Halo and Half-Life combine in wild new mod, bringing two of my favorite games together in one — here’s how to play, and how it works

      July 22, 2025

      Surprise! The iconic Roblox ‘oof’ sound is back — the beloved meme makes “a comeback so good it hurts” after three years of licensing issues

      July 22, 2025
    • Learning Resources
      • Books
      • Cheatsheets
      • Tutorials & Guides
    Home»Development»Machine Learning»A Step-by-Step Coding Guide to Building an Iterative AI Workflow Agent Using LangGraph and Gemini

    A Step-by-Step Coding Guide to Building an Iterative AI Workflow Agent Using LangGraph and Gemini

    June 5, 2025

    In this tutorial, we demonstrate how to build a multi-step, intelligent query-handling agent using LangGraph and Gemini 1.5 Flash. The core idea is to structure AI reasoning as a stateful workflow, where an incoming query is passed through a series of purposeful nodes: routing, analysis, research, response generation, and validation. Each node operates as a functional block with a well-defined role, making the agent not just reactive but analytically aware. Using LangGraph’s StateGraph, we orchestrate these nodes to create a looping system that can re-analyze and improve its output until the response is validated as complete or a max iteration threshold is reached.

    Copy CodeCopiedUse a different Browser
    !pip install langgraph langchain-google-genai python-dotenv

    First, the command !pip install langgraph langchain-google-genai python-dotenv installs three Python packages essential for building intelligent agent workflows. langgraph enables graph-based orchestration of AI agents, langchain-google-genai provides integration with Google’s Gemini models, and python-dotenv allows secure loading of environment variables from .env files.

    Copy CodeCopiedUse a different Browser
    import os
    from typing import Dict, Any, List
    from dataclasses import dataclass
    from langgraph.graph import Graph, StateGraph, END
    from langchain_google_genai import ChatGoogleGenerativeAI
    from langchain.schema import HumanMessage, SystemMessage
    import json
    
    
    os.environ["GOOGLE_API_KEY"] = "Use Your API Key Here"

    We import essential modules and libraries for building agent workflows, including ChatGoogleGenerativeAI for interacting with Gemini models and StateGraph for managing conversational state. The line os.environ[“GOOGLE_API_KEY”] = “Use Your API Key Here” assigns the API key to an environment variable, allowing the Gemini model to authenticate and generate responses.

    Copy CodeCopiedUse a different Browser
    @dataclass
    class AgentState:
        """State shared across all nodes in the graph"""
        query: str = ""
        context: str = ""
        analysis: str = ""
        response: str = ""
        next_action: str = ""
        iteration: int = 0
        max_iterations: int = 3

    Check out the Notebook here

    This AgentState dataclass defines the shared state that persists across different nodes in a LangGraph workflow. It tracks key fields, including the user’s query, retrieved context, any analysis performed, the generated response, and the recommended next action. It also includes an iteration counter and a max_iterations limit to control how many times the workflow can loop, enabling iterative reasoning or decision-making by the agent.

    Copy CodeCopiedUse a different Browser
    @dataclass
    class AgentState:
        """State shared across all nodes in the graph"""
        query: str = ""
        context: str = ""
        analysis: str = ""
        response: str = ""
        next_action: str = ""
        iteration: int = 0
        max_iterations: int = 3
    This AgentState dataclass defines the shared state that persists across different nodes in a LangGraph workflow. It tracks key fields, including the user's query, retrieved context, any analysis performed, the generated response, and the recommended next action. It also includes an iteration counter and a max_iterations limit to control how many times the workflow can loop, enabling iterative reasoning or decision-making by the agent.
    
    class GraphAIAgent:
        def __init__(self, api_key: str = None):
            if api_key:
                os.environ["GOOGLE_API_KEY"] = api_key
           
            self.llm = ChatGoogleGenerativeAI(
                model="gemini-1.5-flash",
                temperature=0.7,
                convert_system_message_to_human=True
            )
           
            self.analyzer = ChatGoogleGenerativeAI(
                model="gemini-1.5-flash",
                temperature=0.3,
                convert_system_message_to_human=True
            )
           
            self.graph = self._build_graph()
       
        def _build_graph(self) -> StateGraph:
            """Build the LangGraph workflow"""
            workflow = StateGraph(AgentState)
           
            workflow.add_node("router", self._router_node)
            workflow.add_node("analyzer", self._analyzer_node)
            workflow.add_node("researcher", self._researcher_node)
            workflow.add_node("responder", self._responder_node)
            workflow.add_node("validator", self._validator_node)
           
            workflow.set_entry_point("router")
            workflow.add_edge("router", "analyzer")
            workflow.add_conditional_edges(
                "analyzer",
                self._decide_next_step,
                {
                    "research": "researcher",
                    "respond": "responder"
                }
            )
            workflow.add_edge("researcher", "responder")
            workflow.add_edge("responder", "validator")
            workflow.add_conditional_edges(
                "validator",
                self._should_continue,
                {
                    "continue": "analyzer",
                    "end": END
                }
            )
           
            return workflow.compile()
       
        def _router_node(self, state: AgentState) -> Dict[str, Any]:
            """Route and categorize the incoming query"""
            system_msg = """You are a query router. Analyze the user's query and provide context.
            Determine if this is a factual question, creative request, problem-solving task, or analysis."""
           
            messages = [
                SystemMessage(content=system_msg),
                HumanMessage(content=f"Query: {state.query}")
            ]
           
            response = self.llm.invoke(messages)
           
            return {
                "context": response.content,
                "iteration": state.iteration + 1
            }
       
        def _analyzer_node(self, state: AgentState) -> Dict[str, Any]:
            """Analyze the query and determine the approach"""
            system_msg = """Analyze the query and context. Determine if additional research is needed
            or if you can provide a direct response. Be thorough in your analysis."""
           
            messages = [
                SystemMessage(content=system_msg),
                HumanMessage(content=f"""
                Query: {state.query}
                Context: {state.context}
                Previous Analysis: {state.analysis}
                """)
            ]
           
            response = self.analyzer.invoke(messages)
            analysis = response.content
           
            if "research" in analysis.lower() or "more information" in analysis.lower():
                next_action = "research"
            else:
                next_action = "respond"
           
            return {
                "analysis": analysis,
                "next_action": next_action
            }
       
        def _researcher_node(self, state: AgentState) -> Dict[str, Any]:
            """Conduct additional research or information gathering"""
            system_msg = """You are a research assistant. Based on the analysis, gather relevant
            information and insights to help answer the query comprehensively."""
           
            messages = [
                SystemMessage(content=system_msg),
                HumanMessage(content=f"""
                Query: {state.query}
                Analysis: {state.analysis}
                Research focus: Provide detailed information relevant to the query.
                """)
            ]
           
            response = self.llm.invoke(messages)
           
            updated_context = f"{state.context}nnResearch: {response.content}"
           
            return {"context": updated_context}
       
        def _responder_node(self, state: AgentState) -> Dict[str, Any]:
            """Generate the final response"""
            system_msg = """You are a helpful AI assistant. Provide a comprehensive, accurate,
            and well-structured response based on the analysis and context provided."""
           
            messages = [
                SystemMessage(content=system_msg),
                HumanMessage(content=f"""
                Query: {state.query}
                Context: {state.context}
                Analysis: {state.analysis}
               
                Provide a complete and helpful response.
                """)
            ]
           
            response = self.llm.invoke(messages)
           
            return {"response": response.content}
       
        def _validator_node(self, state: AgentState) -> Dict[str, Any]:
            """Validate the response quality and completeness"""
            system_msg = """Evaluate if the response adequately answers the query.
            Return 'COMPLETE' if satisfactory, or 'NEEDS_IMPROVEMENT' if more work is needed."""
           
            messages = [
                SystemMessage(content=system_msg),
                HumanMessage(content=f"""
                Original Query: {state.query}
                Response: {state.response}
               
                Is this response complete and satisfactory?
                """)
            ]
           
            response = self.analyzer.invoke(messages)
            validation = response.content
           
            return {"context": f"{state.context}nnValidation: {validation}"}
       
        def _decide_next_step(self, state: AgentState) -> str:
            """Decide whether to research or respond directly"""
            return state.next_action
       
        def _should_continue(self, state: AgentState) -> str:
            """Decide whether to continue iterating or end"""
            if state.iteration >= state.max_iterations:
                return "end"
            if "COMPLETE" in state.context:
                return "end"
            if "NEEDS_IMPROVEMENT" in state.context:
                return "continue"
            return "end"
       
        def run(self, query: str) -> str:
            """Run the agent with a query"""
            initial_state = AgentState(query=query)
            result = self.graph.invoke(initial_state)
            return result["response"]

    Check out the Notebook here

    The GraphAIAgent class defines a LangGraph-based AI workflow using Gemini models to iteratively analyze, research, respond, and validate answers to user queries. It utilizes modular nodes, such as router, analyzer, researcher, responder, and validator, to reason through complex tasks, refining responses through controlled iterations.

    Copy CodeCopiedUse a different Browser
    def main():
        agent = GraphAIAgent("Use Your API Key Here")
       
        test_queries = [
            "Explain quantum computing and its applications",
            "What are the best practices for machine learning model deployment?",
            "Create a story about a robot learning to paint"
        ]
       
        print("🤖 Graph AI Agent with LangGraph and Gemini")
        print("=" * 50)
       
        for i, query in enumerate(test_queries, 1):
            print(f"n📝 Query {i}: {query}")
            print("-" * 30)
           
            try:
                response = agent.run(query)
                print(f"🎯 Response: {response}")
            except Exception as e:
                print(f"❌ Error: {str(e)}")
           
            print("n" + "="*50)
    
    
    if __name__ == "__main__":
        main()
    

    Finally, the main() function initializes the GraphAIAgent with a Gemini API key and runs it on a set of test queries covering technical, strategic, and creative tasks. It prints each query and the AI-generated response, showcasing how the LangGraph-driven agent processes diverse types of input using Gemini’s reasoning and generation capabilities.

    In conclusion, by combining LangGraph’s structured state machine with the power of Gemini’s conversational intelligence, this agent represents a new paradigm in AI workflow engineering, one that mirrors human reasoning cycles of inquiry, analysis, and validation. The tutorial provides a modular and extensible template for developing advanced AI agents that can autonomously handle various tasks, ranging from answering complex queries to generating creative content.


    Check out the Notebook here. All credit for this research goes to the researchers of this project.

    🆕 Did you know? Marktechpost is the fastest-growing AI media platform—trusted by over 1 million monthly readers. Book a strategy call to discuss your campaign goals. Also, feel free to follow us on Twitter and don’t forget to join our 95k+ ML SubReddit and Subscribe to our Newsletter.

    The post A Step-by-Step Coding Guide to Building an Iterative AI Workflow Agent Using LangGraph and Gemini appeared first on MarkTechPost.

    Source: Read More 

    Facebook Twitter Reddit Email Copy Link
    Previous ArticleCisco Warns of Credential Vuln on AWS, Azure, Oracle Cloud
    Next Article From Clicking to Reasoning: WebChoreArena Benchmark Challenges Agents with Memory-Heavy and Multi-Page Tasks

    Related Posts

    Machine Learning

    How to Evaluate Jailbreak Methods: A Case Study with the StrongREJECT Benchmark

    July 22, 2025
    Machine Learning

    Building a Smart Python-to-R Code Converter with Gemini AI-Powered Validation and Feedback

    July 22, 2025
    Leave A Reply Cancel Reply

    For security, use of Google's reCAPTCHA service is required which is subject to the Google Privacy Policy and Terms of Use.

    Continue Reading

    CVE-2025-48144 – Sidngr Import Export For WooCommerce CSRF Stored XSS

    Common Vulnerabilities and Exposures (CVEs)

    CVE-2025-49223 – Billboard.js Prototype Pollution Vulnerability

    Common Vulnerabilities and Exposures (CVEs)

    Cisco Warns of Critical ISE Flaw Allowing Unauthenticated Attackers to Execute Root Code

    Security

    CVE-2025-4158 – PCMan FTP Server Buffer Overflow Vulnerability

    Common Vulnerabilities and Exposures (CVEs)

    Highlights

    Distribution Release: Commodore OS Vision 3.0

    April 22, 2025

    The DistroWatch news feed is brought to you by TUXEDO COMPUTERS. Commodore OS Vision is a 64-bit Linux distribution which maintains a retro C64 style and ships with many games pre-installed. The project’s latest release, version 3.0, includes over 200 games. “Commodore OS Vision 3.0 is the largest, games oriented, Linux distribution ever produced, featuring 200+ free linux compatible….

    New Reports Uncover Jailbreaks, Unsafe Code, and Data Theft Risks in Leading AI Systems

    April 29, 2025

    Europol Dismantles $540 Million Cryptocurrency Fraud Network, Arrests Five Suspects

    June 30, 2025

    Urgent CISA Alert: Ransomware Actors Exploiting SimpleHelp RMM Flaw (CVE-2024-57727)

    June 13, 2025
    © DevStackTips 2025. All rights reserved.
    • Contact
    • Privacy Policy

    Type above and press Enter to search. Press Esc to cancel.