# Basic flow with builtin llm tool A basic standard flow that calls Azure OpenAI with builtin llm tool. Tools used in this flow: - `prompt` tool - built-in `llm` tool Connections used in this flow: - `azure_open_ai` connection ## Prerequisites Install promptflow sdk and other dependencies: ```bash pip install -r requirements.txt ``` ## Setup connection Prepare your Azure OpenAI resource follow this [instruction](https://learn.microsoft.com/en-us/azure/cognitive-services/openai/how-to/create-resource?pivots=web-portal) and get your `api_key` if you don't have one. Note in this example, we are using [chat api](https://learn.microsoft.com/en-us/azure/ai-services/openai/how-to/chatgpt?pivots=programming-language-chat-completions), please use `gpt-35-turbo` or `gpt-4` model deployment. Ensure you have created `open_ai_connection` connection before. ```bash pf connection show -n open_ai_connection ``` Create connection if you haven't done that. Ensure you have put your azure OpenAI endpoint key in [azure_openai.yml](../../../connections/azure_openai.yml) file. ```bash # Override keys with --set to avoid yaml file changes pf connection create -f ../../../connections/azure_openai.yml --name open_ai_connection --set api_key= api_base= ``` ## Run flow ### Run with single line input ```bash # test with default input value in flow.dag.yaml pf flow test --flow . # test with inputs pf flow test --flow . --inputs text="Python Hello World!" ``` ### run with multiple lines data - create run ```bash pf run create --flow . --data ./data.jsonl --column-mapping text='${data.text}' --stream ``` You can also skip providing `column-mapping` if provided data has same column name as the flow. Reference [here](https://aka.ms/pf/column-mapping) for default behavior when `column-mapping` not provided in CLI. - list and show run meta ```bash # list created run pf run list # get a sample run name name=$(pf run list -r 10 | jq '.[] | select(.name | contains("basic_with_builtin_llm")) | .name'| head -n 1 | tr -d '"') # show specific run detail pf run show --name $name # show output pf run show-details --name $name # visualize run in browser pf run visualize --name $name ```