import random def generate_recommendation(stage, emails, meetings): if stage == "Negotiation": return "Follow up with final pricing discussion." elif stage == "Proposal/Price Quote": return "Schedule one more meeting to present value." elif meetings == 0: return "Schedule a meeting to initiate engagement." elif emails < 2: return "Send follow-up email to re-engage." else: return "Continue monitoring engagement signals." def predict(data, model, tokenizer, summarizer): score = random.randint(50, 95) confidence = round(random.uniform(0.65, 0.95), 2) if score >= 75: risk = "Low" elif score >= 55: risk = "Medium" else: risk = "High" recommendation = generate_recommendation( data["stage"], data["emails_last_7_days"], data["meetings_last_30_days"] ) return { "score": score, "confidence": confidence, "risk": risk, "recommendation": recommendation }