# Autopilot Email Classifier A scikit-learn TF-IDF + Logistic Regression model that predicts whether an email is **purchase-related** (`purchase`) or not (`non-purchase`). ## Quick Usage ```bash # 1️⃣ Clone this repository git clone https://huggingface.co/Settlemate/autopilot-email-classifier cd autopilot-email-classifier # 2️⃣ Install dependencies pip install -r requirements.txt # 3️⃣ Load the model and classify ``` ```python import joblib # Load Model bundle = joblib.load("classifier.pkl") pipeline = bundle["pipeline"] threshold = bundle["threshold"] # Function to classify email def classify_email(subject: str, body: str) -> str: text = f"{subject} {body}" proba = pipeline.predict_proba([text])[0, 1] return "purchase" if proba >= threshold else "non-purchase" # Example usage if __name__ == "__main__": subj = "Solo founder, $80M exit, 6 months: The Base44 bootstrapped startup success story | Maor Shlomo" body = """Base44's founder on bootstrapping to profitability, using AI to write 90% of his code, why he turned down VC money, and signing an acquisition deal as missiles were flying""" print(classify_email(subj, body)) ```