import pickle import numpy as np ## token_value = "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" #Loading the pre-trained model and the tokenizer #model_name = 'moro23/used-phones-price-prediction' def predict_single(customer, dv, model): X = dv.transform([customer]) y_pred = model.predict(X) return y_pred[0] with open('price-prediction-model.bin', 'rb') as f_in: dv, model = pickle.load(f_in) used_phone_sample = { } prediction = predict_single(used_phone_sample, dv, model) print(f'prediction: {round(prediction,2)}')