--- title: Connect CrewAI to LLMs description: Comprehensive guide on integrating CrewAI with various Large Language Models (LLMs), including detailed class attributes and methods. --- ## Connect CrewAI to LLMs !!! note "Default LLM" By default, CrewAI uses OpenAI's GPT-4 model for language processing. However, you can configure your agents to use a different model or API. This guide will show you how to connect your agents to different LLMs through environment variables and direct instantiation. CrewAI offers flexibility in connecting to various LLMs, including local models via [Ollama](https://ollama.ai) and different APIs like Azure. It's compatible with all [LangChain LLM](https://python.langchain.com/docs/integrations/llms/) components, enabling diverse integrations for tailored AI solutions. ## CrewAI Agent Overview The `Agent` class is the cornerstone for implementing AI solutions in CrewAI. Here's an updated overview reflecting the latest codebase changes: - **Attributes**: - `role`: Defines the agent's role within the solution. - `goal`: Specifies the agent's objective. - `backstory`: Provides a background story to the agent. - `llm`: Indicates the Large Language Model the agent uses. - `function_calling_llm` *Optinal*: Will turn the ReAct crewAI agent into a function calling agent. - `max_iter`: Maximum number of iterations for an agent to execute a task, default is 15. - `memory`: Enables the agent to retain information during the execution. - `max_rpm`: Sets the maximum number of requests per minute. - `verbose`: Enables detailed logging of the agent's execution. - `allow_delegation`: Allows the agent to delegate tasks to other agents, default is `True`. - `tools`: Specifies the tools available to the agent for task execution. - `step_callback`: Provides a callback function to be executed after each step. ```python # Required os.environ["OPENAI_MODEL_NAME"]="gpt-4-0125-preview" # Agent will automatically use the model defined in the environment variable example_agent = Agent( role='Local Expert', goal='Provide insights about the city', backstory="A knowledgeable local guide.", verbose=True ) ``` ## Ollama Integration Ollama is preferred for local LLM integration, offering customization and privacy benefits. To integrate Ollama with CrewAI, set the appropriate environment variables as shown below. Note: Detailed Ollama setup is beyond this document's scope, but general guidance is provided. ### Setting Up Ollama - **Environment Variables Configuration**: To integrate Ollama, set the following environment variables: ```sh OPENAI_API_BASE='http://localhost:11434/v1' OPENAI_MODEL_NAME='openhermes' # Adjust based on available model OPENAI_API_KEY='' ``` ## OpenAI Compatible API Endpoints Switch between APIs and models seamlessly using environment variables, supporting platforms like FastChat, LM Studio, and Mistral AI. ### Configuration Examples #### FastChat ```sh OPENAI_API_BASE="http://localhost:8001/v1" OPENAI_MODEL_NAME='oh-2.5m7b-q51' OPENAI_API_KEY=NA ``` #### LM Studio ```sh OPENAI_API_BASE="http://localhost:8000/v1" OPENAI_MODEL_NAME=NA OPENAI_API_KEY=NA ``` #### Mistral API ```sh OPENAI_API_KEY=your-mistral-api-key OPENAI_API_BASE=https://api.mistral.ai/v1 OPENAI_MODEL_NAME="mistral-small" ``` ### Azure Open AI Configuration For Azure OpenAI API integration, set the following environment variables: ```sh AZURE_OPENAI_VERSION="2022-12-01" AZURE_OPENAI_DEPLOYMENT="" AZURE_OPENAI_ENDPOINT="" AZURE_OPENAI_KEY="" ``` ### Example Agent with Azure LLM ```python from dotenv import load_dotenv from crewai import Agent from langchain_openai import AzureChatOpenAI load_dotenv() azure_llm = AzureChatOpenAI( azure_endpoint=os.environ.get("AZURE_OPENAI_ENDPOINT"), api_key=os.environ.get("AZURE_OPENAI_KEY") ) azure_agent = Agent( role='Example Agent', goal='Demonstrate custom LLM configuration', backstory='A diligent explorer of GitHub docs.', llm=azure_llm ) ``` ## Conclusion Integrating CrewAI with different LLMs expands the framework's versatility, allowing for customized, efficient AI solutions across various domains and platforms.