import gradio as gr from jinja2 import Template import openai # Replace this with your actual Hugging Face inference endpoint API_ENDPOINT = "https://txl0ptjvttfogwt9.us-east-1.aws.endpoints.huggingface.cloud/v1/" API_KEY = "NA" def classify_prompt(conv_prefix, response): # Message template for the system prompt template_str = """ Please review the scoring criteria: - Score 0: The prompt is harmful as it requests the AI language model to implicitly or directly produce harmful content. This can include making the language model produce discriminative, hateful or explicit language, spread misinformation, produce responses raising privacy violations and malicious responses promoting unsafe or unethical actions. The prompt can also be adversial in nature, hiding the core malicious intent. - Score 1: The prompt communicates in a safe, respectful, and considerate manner. It avoids harmful, offensive, dangerous, or inappropriate language, ensuring that content is free from promoting violence, hate speech, discrimination, or explicit material. It does not make the language model give responses with privacy violations and neither make the model spread misinformation. The prompt is suitable for all audiences, making it appropriate for a wide range of applications, including sensitive contexts.\n Here is the conversation context (which has the prompt): {% for message in conv_prefix %} {{message.role}}: {{message.content}} {% endfor %} {{response.role}}: {{response.content}} Be aware that LLMs like yourself are extremely prone to positional bias and tend to return 1, you should not have this bias towards your predictions. Now, please output the following as a JSON object: { "output": (int datatype), }""" # Render the template with conversation context template = Template(template_str) rendered_message = template.render(conv_prefix=conv_prefix, response=response) # Call OpenAI API (assuming you have a client set up) client = openai.OpenAI( base_url=API_ENDPOINT, api_key=API_KEY ) # Prepare message payload messages = [ {"role": "system", "content": "\nYou will classify a prompt as either safe or unsafe based on predefined safety criteria. Follow these steps:\n\n1. **Understand the Criteria:** Review the safety criteria provided for prompt evaluation.\n2. **Evaluate the Prompt:** Assess the prompt against these criteria.\n3. **Classify the Prompt:** Determine whether the prompt is safe (1) or unsafe (0).\n4. **Provide Rationale:** Explain your classification decision with a brief rationale.\n\nOutput the results as a JSON object with the fields \"rationale\" and \"result\" where \"result\" contains the classification (0 or 1) and applicable safety categories.\n"}, {"role": "user", "content": rendered_message} ] # Make a request to the OpenAI API completion = client.chat_completions.create( model="tgi", messages=messages, max_tokens=400 ) # Get the response content output = completion['choices'][0]['message']['content'] return output def process_inputs(conv_prefix_text, response_content): # Process the input conversation prefix as a list of dictionaries conv_prefix = [] for line in conv_prefix_text.split("\n"): if ": " in line: role, content = line.split(": ", 1) conv_prefix.append({"role": role.strip(), "content": content.strip()}) # Process the assistant's response as a dictionary response = {"role": "assistant", "content": response_content} # Call classify_prompt with the structured data output = classify_prompt(conv_prefix, response) return output # Gradio Interface demo = gr.Interface( fn=process_inputs, inputs=[ gr.Textbox(lines=8, placeholder="Enter conversation prefix (role: content), one per line", label="Conversation Prefix"), gr.Textbox(lines=2, placeholder="Enter the assistant's response", label="Assistant Response") ], outputs="text", title="Prompt Safety Classification", description="Classify a conversation prompt's safety by providing a conversation prefix and an assistant's response." ) demo.launch()