🔑 OpenAI can be accessed through the OpenAI API directly or via the Azure version of OpenAI's API.
💻 To get started with Azure OpenAI in LangChain, go to portal.azure.com and create a subscription. Then, create a new deployment in Azure OpenAI.
🚀 By following these steps, you can effectively use LangChain with OpenAI in Azure to access the power of OpenAI's API.
🔑 To get started with Azure OpenAI in LangChain, you need to create a resource group and set up security networks.
🛠️ Once the deployment is complete, you can find the new resource in Azure OpenAI and obtain the endpoint.
📝 Using the endpoint, you can access the Azure OpenAI in LangChain through the notebook.
📝 The video demonstrates how to set up the Azure OpenAI API base and version.
🔑 The process involves obtaining the OpenAI API key and setting it in the code.
🌐 The video highlights the main differences between the default OpenAI version and the Azure version.
📝 In Azure OpenAI, you need to create a deployment for each model you want to use.
🔧 To create a deployment, choose a model and specify a unique deployment name.
⌨️ Update the deployment name in the code to connect to the desired deployment.
🔧 Deployment of the chat model requires some waiting time for it to work.
💬 The chat model uses a combination of human messages and AI messages to create a chat log.
❓ The model can't answer questions about certain topics, like cheese, because it doesn't understand them.
📚 The chat model relies on previous messages to understand the context of the query.
💡 An example of an interpretation of the meaning of life is found within the philosophy of existentialism.
🚫 The chat model is unable to answer simple questions like the color of cheese.
🔑 The video explains the use of Azure's OpenAI offering instead of the typical Open AI API endpoints.
📱 The speaker demonstrates that everything is functioning properly with the Azure OpenAI integration.
💡 The video concludes by expressing gratitude and anticipation for future content.