import openai import gradio as gr import os #OpenAi call def gpt3(texts): openai.api_key = os.environ["Secret"] response = openai.Completion.create( engine="text-davinci-002", prompt= texts, temperature=0, max_tokens=750, top_p=1, frequency_penalty=0.0, presence_penalty=0.0, stop = (";", "/*", "") ) x = response.choices[0].text return x # Function to elicit sql response from model def greet(prompt): food= (f'''Here we will share a best guess for the predominant ingredients in the following food /*Food: {prompt}*/ \n —-Here is a list of the ingredients in the food item:\n''') ingred = gpt3(food) total = (f'''Expert one sentence summary and rating (on a scale of 1/10, with 10 having no impact) of the food and ingredients comparative climate impact, from rationalist climate perspective /*Food, ingredients: {prompt},{ingred}*/ \n —-Impact Summary and Climate Score:\n''') score = gpt3(total) return score #Code to set up Gradio UI iface = gr.Interface(greet, inputs = ["text"], outputs = ["text"],title="Food Impact Analysis", description="Get a climate analysis back from any food!") iface.launch()