# import mlflow # import numpy as np # import json # # logged_model = '/mlruns/14/80fe21a0804844088147d15a3cebb3e5/artifacts/lego-model' # # # Load model as a PyFuncModel. # loaded_model = mlflow.pyfunc.load_model(logged_model) # # with open(f'{loaded_model}/input_example.json') as f: # input_example_data = json.load(f) # # # Predictions # print(f'input: {input_example_data}') # print(f'predictions: {loaded_model.predict(input_example_data)}') import mlflow import numpy as np import json registry_path = '/mlruns/14/80fe21a0804844088147d15a3cebb3e5/artifacts/lego-model' model = mlflow.pyfunc.load_model(registry_path) with open(f'{registry_path}/input_example.json') as f: input_example_data = json.load(f) input_example = np.array(input_example_data['inputs']) print(f'Input: {input_example}') print(f'Prediction: {model.predict(input_example)}')