import gradio as gr import torch from transformers import RobertaForSequenceClassification, RobertaTokenizer import numpy as np # Load model and tokenizer with trust_remote_code in case it's needed model_name = "SamanthaStorm/abuse-pattern-detector-v2" model = RobertaForSequenceClassification.from_pretrained(model_name, trust_remote_code=True) tokenizer = RobertaTokenizer.from_pretrained(model_name, trust_remote_code=True) # Define labels (17 total) LABELS = [ "gaslighting", "mockery", "dismissiveness", "control", "guilt_tripping", "apology_baiting", "blame_shifting", "projection", "contradictory_statements", "manipulation", "deflection", "insults", "obscure_formal", "recovery_phase", "suicidal_threat", "physical_threat", "extreme_control" ] # Custom thresholds for each label (make sure these match your original settings) THRESHOLDS = { "gaslighting": 0.25, "mockery": 0.15, "dismissiveness": 0.30, # original value, not 0.30 "control": 0.43, "guilt_tripping": 0.19, "apology_baiting": 0.45, "blame_shifting": 0.23, "projection": 0.50, "contradictory_statements": 0.25, "manipulation": 0.25, "deflection": 0.30, "insults": 0.34, "obscure_formal": 0.25, "recovery_phase": 0.25, "suicidal_threat": 0.45, "physical_threat": 0.31, "extreme_control": 0.36, "non_abusive": 0.40 } # Define label groups using slicing (first 14: abuse patterns, last 3: danger cues) PATTERN_LABELS = LABELS[:14] DANGER_LABELS = LABELS[14:17] def calculate_abuse_level(scores, thresholds): triggered_scores = [score for label, score in zip(LABELS, scores) if score > thresholds[label]] if not triggered_scores: return 0.0 return round(np.mean(triggered_scores) * 100, 2) def interpret_abuse_level(score): if score > 80: return "Extreme / High Risk" elif score > 60: return "Severe / Harmful Pattern Present" elif score > 40: return "Likely Abuse" elif score > 20: return "Mild Concern" else: return "Very Low / Likely Safe" def analyze_messages(input_text): input_text = input_text.strip() if not input_text: return "Please enter a message for analysis.", None # Tokenize input and generate model predictions inputs = tokenizer(input_text, return_tensors="pt", truncation=True, padding=True) with torch.no_grad(): outputs = model(**inputs) scores = torch.sigmoid(outputs.logits.squeeze(0)).numpy() # Count the number of triggered abuse pattern and danger flags based on thresholds pattern_count = sum(score > THRESHOLDS[label] for label, score in zip(PATTERN_LABELS, scores[:14])) danger_flag_count = sum(score > THRESHOLDS[label] for label, score in zip(DANGER_LABELS, scores[14:17])) # Build formatted raw score display score_lines = [ f"{label:25}: {score:.3f}" for label, score in zip(PATTERN_LABELS + DANGER_LABELS, scores) ] raw_score_output = "\n".join(score_lines) # Calculate overall abuse level and interpret it abuse_level = calculate_abuse_level(scores, THRESHOLDS) abuse_description = interpret_abuse_level(abuse_level) # Resource logic based on the number of danger cues if danger_flag_count >= 2: resources = "Immediate assistance recommended. Please seek professional help or contact emergency services." else: resources = "For more information on abuse patterns, consider reaching out to support groups or professional counselors." # Get top 2 highest scoring abuse patterns (excluding 'non_abusive') scored_patterns = [(label, score) for label, score in zip(PATTERN_LABELS, scores[:14])] top_patterns = sorted(scored_patterns, key=lambda x: x[1], reverse=True)[:2] top_patterns_str = "\n".join([f"• {label.replace('_', ' ').title()}" for label, _ in top_patterns]) # Format final result result = ( f"Abuse Risk Score: {abuse_level}% – {abuse_description}\n" "This message contains signs of emotionally harmful communication that may indicate abusive patterns.\n\n" f"Most Likely Patterns:\n{top_patterns_str}\n\n" f"⚠️ Critical Danger Flags Detected: {danger_flag_count} of 3\n" "The Danger Assessment is a validated tool that helps identify serious risk in intimate partner violence. " "It flags communication patterns associated with increased risk of severe harm. " "For more info, consider reaching out to support groups or professionals.\n\n" f"Resources: {resources}" ) ) # Return both a text summary and a JSON-like dict of scores per label return result # Updated Gradio Interface using new component syntax iface = gr.Interface( fn=analyze_messages, inputs=gr.Textbox(lines=10, placeholder="Enter message here..."), outputs=[ gr.Textbox(label="Analysis Result"), ], title="Abuse Pattern Detector" ) if __name__ == "__main__": iface.launch()