Python Prediction API ===================== PaddlePaddle offers a set of clean prediction interfaces for python with the help of SWIG. The main steps of predict values in python are: * Parse training configurations * Construct GradientMachine * Prepare data * Predict Here is a sample python script that shows the typical prediction process for the MNIST classification problem. .. literalinclude:: ./predict_sample.py :language: python :linenos: The module that does the most of the job is py_paddle.swig_paddle, it's generated by SWIG and has complete documents, for more details you can use python's :code:`help()` function. Let's walk through the above python script: * At the beginning, initialize PaddlePaddle with command line arguments(line 90). * Parse the configuration file that is used in training(line 93). * Create a neural network at line 95 according the parsed configuration, then load the trained parameters from model at line 97. * A utility class for data transformation is created at line 98. - Note: As swig_paddle can only accept C++ matrices, we offer a utility class DataProviderWraaperConverter that can accept the same input data with PyDataProviderWrapper, for more information please refer to document of `PyDataProvider2 <../data_provider/pydataprovider2.html>`_. * Do the prediction and output the result at line 100, forwardTest is another utility class that directly takes the activations of the output layer. Here is a typical output: .. code-block:: text [{'id': None, 'value': array([[ 5.53018653e-09, 1.12194102e-05, 1.96644767e-09, 1.43630644e-02, 1.51111044e-13, 9.85625684e-01, 2.08823112e-10, 2.32777140e-08, 2.00186201e-09, 1.15501715e-08], [ 9.99982715e-01, 1.27787406e-10, 1.72296313e-05, 1.49316648e-09, 1.36540484e-11, 6.93137714e-10, 2.70634608e-08, 3.48565123e-08, 5.25639710e-09, 4.48684503e-08]], dtype=float32)}] :code:`value` is the output of the output layer, each row represents result of the corresponding row in the input data, each element represents activation of the corresponding neuron in the output layer.