| .. _mlp: |
|
|
| Multi-Layer Perceptron |
| |
|
|
| In this example we'll learn to use ``mlx.nn`` by implementing a simple |
| multi-layer perceptron to classify MNIST. |
|
|
| As a first step import the MLX packages we need: |
|
|
| .. code-block:: python |
|
|
| import mlx.core as mx |
| import mlx.nn as nn |
| import mlx.optimizers as optim |
|
|
| import numpy as np |
|
|
|
|
| The model is defined as the ``MLP`` class which inherits from |
| :class:`mlx.nn.Module`. We follow the standard idiom to make a new module: |
|
|
| 1. Define an ``__init__`` where the parameters and/or submodules are setup. See |
| the :ref:`Module class docs<module_class>` for more information on how |
| :class:`mlx.nn.Module` registers parameters. |
| 2. Define a ``__call__`` where the computation is implemented. |
|
|
| .. code-block:: python |
| |
| class MLP(nn.Module): |
| def __init__( |
| self, num_layers: int, input_dim: int, hidden_dim: int, output_dim: int |
| ): |
| super().__init__() |
| layer_sizes = [input_dim] + [hidden_dim] * num_layers + [output_dim] |
| self.layers = [ |
| nn.Linear(idim, odim) |
| for idim, odim in zip(layer_sizes[:-1], layer_sizes[1:]) |
| ] |
| |
| def __call__(self, x): |
| for l in self.layers[:-1]: |
| x = mx.maximum(l(x), 0.0) |
| return self.layers[-1](x) |
| |
| |
| We define the loss function which takes the mean of the per-example cross |
| entropy loss. The ``mlx.nn.losses`` sub-package has implementations of some |
| commonly used loss functions. |
| |
| .. code-block:: python |
| |
| def loss_fn(model, X, y): |
| return mx.mean(nn.losses.cross_entropy(model(X), y)) |
| |
| We also need a function to compute the accuracy of the model on the validation |
| set: |
| |
| .. code-block:: python |
| |
| def eval_fn(model, X, y): |
| return mx.mean(mx.argmax(model(X), axis=1) == y) |
| |
| Next, setup the problem parameters and load the data. To load the data, you need our |
| `mnist data loader |
| <https://github.com/ml-explore/mlx-examples/blob/main/mnist/mnist.py>`_, which |
| we will import as ``mnist``. |
| |
| .. code-block:: python |
| |
| num_layers = 2 |
| hidden_dim = 32 |
| num_classes = 10 |
| batch_size = 256 |
| num_epochs = 10 |
| learning_rate = 1e-1 |
| |
| # Load the data |
| import mnist |
| train_images, train_labels, test_images, test_labels = map( |
| mx.array, mnist.mnist() |
| ) |
| |
| Since we're using SGD, we need an iterator which shuffles and constructs |
| minibatches of examples in the training set: |
| |
| .. code-block:: python |
| |
| def batch_iterate(batch_size, X, y): |
| perm = mx.array(np.random.permutation(y.size)) |
| for s in range(0, y.size, batch_size): |
| ids = perm[s : s + batch_size] |
| yield X[ids], y[ids] |
| |
| |
| Finally, we put it all together by instantiating the model, the |
| :class:`mlx.optimizers.SGD` optimizer, and running the training loop: |
| |
| .. code-block:: python |
| |
| # Load the model |
| model = MLP(num_layers, train_images.shape[-1], hidden_dim, num_classes) |
| mx.eval(model.parameters()) |
| |
| # Get a function which gives the loss and gradient of the |
| # loss with respect to the model's trainable parameters |
| loss_and_grad_fn = nn.value_and_grad(model, loss_fn) |
| |
| # Instantiate the optimizer |
| optimizer = optim.SGD(learning_rate=learning_rate) |
| |
| for e in range(num_epochs): |
| for X, y in batch_iterate(batch_size, train_images, train_labels): |
| loss, grads = loss_and_grad_fn(model, X, y) |
| |
| # Update the optimizer state and model parameters |
| # in a single call |
| optimizer.update(model, grads) |
| |
| # Force a graph evaluation |
| mx.eval(model.parameters(), optimizer.state) |
| |
| accuracy = eval_fn(model, test_images, test_labels) |
| print(f"Epoch {e}: Test accuracy {accuracy.item():.3f}") |
| |
| |
| .. note:: |
| The :func:`mlx.nn.value_and_grad` function is a convenience function to get |
| the gradient of a loss with respect to the trainable parameters of a model. |
| This should not be confused with :func:`mlx.core.value_and_grad`. |
| |
| The model should train to a decent accuracy (about 95%) after just a few passes |
| over the training set. The `full example <https://github.com/ml-explore/mlx-examples/tree/main/mnist>`_ |
| is available in the MLX GitHub repo. |
| |