Add equinox tutorial code
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cnn_tutorial.py
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182
cnn_tutorial.py
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#!/usr/bin/env python3
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"""
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This is the CNN tutorial from https://docs.kidger.site/equinox/examples/mnist/,
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just using it to learn equinox
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"""
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import equinox as eqx
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import jax.numpy as jnp
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import jax
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import optax
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import time
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import torch
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import torchvision
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from jaxtyping import Array, Float, Int, PyTree
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class CNN(eqx.Module):
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layers: list
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def __init__(self, key):
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keys = jax.random.split(key, 4)
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keys = list(keys)
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self.layers = [
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eqx.nn.Conv2d(1, 3, kernel_size=4, key=keys[0]),
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eqx.nn.MaxPool2d(kernel_size=2),
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jax.nn.relu,
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jnp.ravel,
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eqx.nn.Linear(1728, 512, key=keys[1]),
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jax.nn.sigmoid,
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eqx.nn.Linear(512, 64, key=keys[2]),
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jax.nn.relu,
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eqx.nn.Linear(64, 10, key=keys[3]),
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jax.nn.log_softmax,
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]
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def __call__(self, x: Float[Array, "1 28 28"]) -> Float[Array, "10"]:
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for layer in self.layers:
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x = layer(x)
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return x
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def cross_entropy(
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y: Int[Array, " batch"], pred_y: Int[Array, " batch"]
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) -> Float[Array, ""]:
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pred_y = jnp.take_along_axis(pred_y, jnp.expand_dims(y, 1), axis=1)
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return -jnp.mean(pred_y)
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@eqx.filter_jit
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def loss(
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model: CNN, x: Float[Array, "batch 1 28 28"], y: Int[Array, " batch"]
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) -> Float[Array, ""]:
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pred_y = jax.vmap(model)(x)
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return cross_entropy(y, pred_y)
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@eqx.filter_jit
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def compute_accuracy(
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model: CNN, x: Float[Array, "batch 1 28 28"], y: Int[Array, " batch"]
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) -> Float[Array, ""]:
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pred_y = jax.vmap(model)(x)
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pred_y = jnp.argmax(pred_y, axis=1)
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return jnp.mean(y == pred_y)
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def evaluate(model: CNN, testloader: torch.utils.data.DataLoader):
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avg_loss = 0
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avg_acc = 0
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for x, y in testloader:
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x = jnp.array(x.numpy())
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y = jnp.array(y.numpy())
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avg_loss += loss(model, x, y)
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avg_acc += compute_accuracy(model, x, y)
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return avg_loss / len(testloader), avg_acc / len(testloader)
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def train(
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model: CNN,
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trainloader: torch.utils.data.DataLoader,
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testloader: torch.utils.data.DataLoader,
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optim: optax.GradientTransformation,
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steps: int,
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print_every: int,
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) -> CNN:
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@eqx.filter_jit
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def make_step(
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model: CNN,
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opt_state: PyTree,
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x: Float[Array, "batch 1 28 28"],
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y: Int[Array, "batch"],
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):
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loss_value, grads = eqx.filter_value_and_grad(loss)(model, x, y)
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updates, opt_state = optim.update(
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grads, opt_state, eqx.filter(model, eqx.is_array)
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)
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model = eqx.apply_updates(model, updates)
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return model, opt_state, loss_value
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def infinite_data(loader: torch.utils.data.DataLoader):
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while True:
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yield from loader # Yields from loader until exhausted
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opt_state = optim.init(eqx.filter(model, eqx.is_array))
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for step, (x, y) in zip(range(steps), infinite_data(trainloader)):
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x = jnp.array(x.numpy())
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y = jnp.array(y.numpy())
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model, opt_state, train_loss = make_step(model, opt_state, x, y)
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if (step % print_every) == 0 or step == steps - 1:
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avg_loss, avg_acc = evaluate(model, testloader)
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jax.debug.print("==== step {} ====", step)
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jax.debug.print("train loss = {}", train_loss)
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jax.debug.print("test loss = {}", avg_loss)
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jax.debug.print("text accuracy = {}", avg_acc)
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return model
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# ╔─────────────────────────────────────────────────────────────────────────────╗
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# │ Mαiη scriρτ |
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# ╚─────────────────────────────────────────────────────────────────────────────╝
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jax.config.update("jax_platform_name", "gpu") # Sets preferred device
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# Checking to make sure gpu is being used
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from jax.extend import backend
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print(backend.get_backend().platform)
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print(f"JAX devices: {jax.devices()}")
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print(f"Default device: {jax.default_backend()}")
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# Hyperparameters
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BATCH_SIZE = 1024
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LEARNING_RATE = 1e-4
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STEPS = 1200
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PRINT_EVERY = 300
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SEED = 5678
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key = jax.random.PRNGKey(SEED)
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key, subkey = jax.random.split(key, 2)
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# Data preprocessing
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normalize_data = torchvision.transforms.Compose(
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[
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torchvision.transforms.ToTensor(),
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torchvision.transforms.Normalize((0.5,), (0.5,)),
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]
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)
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train_dataset = torchvision.datasets.MNIST(
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"MNIST",
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train=True,
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download=True,
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transform=normalize_data,
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)
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test_dataset = torchvision.datasets.MNIST(
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"MNIST",
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train=False,
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download=True,
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transform=normalize_data,
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)
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trainloader = torch.utils.data.DataLoader(
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train_dataset, batch_size=BATCH_SIZE, shuffle=True
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)
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testloader = torch.utils.data.DataLoader(
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test_dataset, batch_size=BATCH_SIZE, shuffle=True
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)
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model = CNN(subkey)
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optim = optax.adamw(LEARNING_RATE)
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start = time.time()
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model = train(model, trainloader, testloader, optim, STEPS, PRINT_EVERY)
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cease = time.time()
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print(f"Took {cease-start}s")
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