|  | { | 
|  | "cells": [ | 
|  | { | 
|  | "cell_type": "markdown", | 
|  | "id": "903e2f76", | 
|  | "metadata": {}, | 
|  | "source": [ | 
|  | "# Whirlwind Tour\n", | 
|  | "\n", | 
|  | "<a href=\"https://colab.research.google.com/github/pytorch/pytorch/blob/master/functorch/notebooks/whirlwind_tour.ipynb\">\n", | 
|  | "  <img style=\"width: auto\" src=\"https://colab.research.google.com/assets/colab-badge.svg\" alt=\"Open In Colab\"/>\n", | 
|  | "</a>\n", | 
|  | "\n", | 
|  | "## What is functorch?\n", | 
|  | "\n", | 
|  | "functorch is a library for [JAX](https://github.com/google/jax)-like composable function transforms in PyTorch.\n", | 
|  | "- A \"function transform\" is a higher-order function that accepts a numerical function and returns a new function that computes a different quantity.\n", | 
|  | "- functorch has auto-differentiation transforms (`grad(f)` returns a function that computes the gradient of `f`), a vectorization/batching transform (`vmap(f)` returns a function that computes `f` over batches of inputs), and others.\n", | 
|  | "- These function transforms can compose with each other arbitrarily. For example, composing `vmap(grad(f))` computes a quantity called per-sample-gradients that stock PyTorch cannot efficiently compute today.\n", | 
|  | "\n", | 
|  | "Furthermore, we also provide an experimental compilation transform in the `functorch.compile` namespace. Our compilation transform, named AOT (ahead-of-time) Autograd, returns to you an [FX graph](https://pytorch.org/docs/stable/fx.html) (that optionally contains a backward pass), of which compilation via various backends is one path you can take.\n", | 
|  | "\n", | 
|  | "\n", | 
|  | "## Why composable function transforms?\n", | 
|  | "There are a number of use cases that are tricky to do in PyTorch today:\n", | 
|  | "- computing per-sample-gradients (or other per-sample quantities)\n", | 
|  | "- running ensembles of models on a single machine\n", | 
|  | "- efficiently batching together tasks in the inner-loop of MAML\n", | 
|  | "- efficiently computing Jacobians and Hessians\n", | 
|  | "- efficiently computing batched Jacobians and Hessians\n", | 
|  | "\n", | 
|  | "Composing `vmap`, `grad`, `vjp`, and `jvp` transforms allows us to express the above without designing a separate subsystem for each.\n", | 
|  | "\n", | 
|  | "## What are the transforms?\n", | 
|  | "\n", | 
|  | "### grad (gradient computation)\n", | 
|  | "\n", | 
|  | "`grad(func)` is our gradient computation transform. It returns a new function that computes the gradients of `func`. It assumes `func` returns a single-element Tensor and by default it computes the gradients of the output of `func` w.r.t. to the first input." | 
|  | ] | 
|  | }, | 
|  | { | 
|  | "cell_type": "code", | 
|  | "execution_count": null, | 
|  | "id": "f920b923", | 
|  | "metadata": {}, | 
|  | "outputs": [], | 
|  | "source": [ | 
|  | "import torch\n", | 
|  | "from functorch import grad\n", | 
|  | "x = torch.randn([])\n", | 
|  | "cos_x = grad(lambda x: torch.sin(x))(x)\n", | 
|  | "assert torch.allclose(cos_x, x.cos())\n", | 
|  | "\n", | 
|  | "# Second-order gradients\n", | 
|  | "neg_sin_x = grad(grad(lambda x: torch.sin(x)))(x)\n", | 
|  | "assert torch.allclose(neg_sin_x, -x.sin())" | 
|  | ] | 
|  | }, | 
|  | { | 
|  | "cell_type": "markdown", | 
|  | "id": "ef3b2d85", | 
|  | "metadata": {}, | 
|  | "source": [ | 
|  | "### vmap (auto-vectorization)\n", | 
|  | "\n", | 
|  | "Note: vmap imposes restrictions on the code that it can be used on. For more details, please read its docstring.\n", | 
|  | "\n", | 
|  | "`vmap(func)(*inputs)` is a transform that adds a dimension to all Tensor operations in `func`. `vmap(func)` returns a new function that maps `func` over some dimension (default: 0) of each Tensor in inputs.\n", | 
|  | "\n", | 
|  | "vmap is useful for hiding batch dimensions: one can write a function func that runs on examples and then lift it to a function that can take batches of examples with `vmap(func)`, leading to a simpler modeling experience:" | 
|  | ] | 
|  | }, | 
|  | { | 
|  | "cell_type": "code", | 
|  | "execution_count": null, | 
|  | "id": "6ebac649", | 
|  | "metadata": {}, | 
|  | "outputs": [], | 
|  | "source": [ | 
|  | "import torch\n", | 
|  | "from functorch import vmap\n", | 
|  | "batch_size, feature_size = 3, 5\n", | 
|  | "weights = torch.randn(feature_size, requires_grad=True)\n", | 
|  | "\n", | 
|  | "def model(feature_vec):\n", | 
|  | "    # Very simple linear model with activation\n", | 
|  | "    assert feature_vec.dim() == 1\n", | 
|  | "    return feature_vec.dot(weights).relu()\n", | 
|  | "\n", | 
|  | "examples = torch.randn(batch_size, feature_size)\n", | 
|  | "result = vmap(model)(examples)" | 
|  | ] | 
|  | }, | 
|  | { | 
|  | "cell_type": "markdown", | 
|  | "id": "5161e6d2", | 
|  | "metadata": {}, | 
|  | "source": [ | 
|  | "When composed with `grad`, `vmap` can be used to compute per-sample-gradients:" | 
|  | ] | 
|  | }, | 
|  | { | 
|  | "cell_type": "code", | 
|  | "execution_count": null, | 
|  | "id": "ffb2fcb1", | 
|  | "metadata": {}, | 
|  | "outputs": [], | 
|  | "source": [ | 
|  | "from functorch import vmap\n", | 
|  | "batch_size, feature_size = 3, 5\n", | 
|  | "\n", | 
|  | "def model(weights,feature_vec):\n", | 
|  | "    # Very simple linear model with activation\n", | 
|  | "    assert feature_vec.dim() == 1\n", | 
|  | "    return feature_vec.dot(weights).relu()\n", | 
|  | "\n", | 
|  | "def compute_loss(weights, example, target):\n", | 
|  | "    y = model(weights, example)\n", | 
|  | "    return ((y - target) ** 2).mean()  # MSELoss\n", | 
|  | "\n", | 
|  | "weights = torch.randn(feature_size, requires_grad=True)\n", | 
|  | "examples = torch.randn(batch_size, feature_size)\n", | 
|  | "targets = torch.randn(batch_size)\n", | 
|  | "inputs = (weights,examples, targets)\n", | 
|  | "grad_weight_per_example = vmap(grad(compute_loss), in_dims=(None, 0, 0))(*inputs)" | 
|  | ] | 
|  | }, | 
|  | { | 
|  | "cell_type": "markdown", | 
|  | "id": "11d711af", | 
|  | "metadata": {}, | 
|  | "source": [ | 
|  | "### vjp (vector-Jacobian product)\n", | 
|  | "\n", | 
|  | "The `vjp` transform applies `func` to `inputs` and returns a new function that computes the vector-Jacobian product (vjp) given some `cotangents` Tensors." | 
|  | ] | 
|  | }, | 
|  | { | 
|  | "cell_type": "code", | 
|  | "execution_count": null, | 
|  | "id": "ad48f9d4", | 
|  | "metadata": {}, | 
|  | "outputs": [], | 
|  | "source": [ | 
|  | "from functorch import vjp\n", | 
|  | "\n", | 
|  | "inputs = torch.randn(3)\n", | 
|  | "func = torch.sin\n", | 
|  | "cotangents = (torch.randn(3),)\n", | 
|  | "\n", | 
|  | "outputs, vjp_fn = vjp(func, inputs); vjps = vjp_fn(*cotangents)" | 
|  | ] | 
|  | }, | 
|  | { | 
|  | "cell_type": "markdown", | 
|  | "id": "e0221270", | 
|  | "metadata": {}, | 
|  | "source": [ | 
|  | "### jvp (Jacobian-vector product)\n", | 
|  | "\n", | 
|  | "The `jvp` transforms computes Jacobian-vector-products and is also known as \"forward-mode AD\". It is not a higher-order function unlike most other transforms, but it returns the outputs of `func(inputs)` as well as the jvps." | 
|  | ] | 
|  | }, | 
|  | { | 
|  | "cell_type": "code", | 
|  | "execution_count": null, | 
|  | "id": "f3772f43", | 
|  | "metadata": {}, | 
|  | "outputs": [], | 
|  | "source": [ | 
|  | "from functorch import jvp\n", | 
|  | "x = torch.randn(5)\n", | 
|  | "y = torch.randn(5)\n", | 
|  | "f = lambda x, y: (x * y)\n", | 
|  | "_, output = jvp(f, (x, y), (torch.ones(5), torch.ones(5)))\n", | 
|  | "assert torch.allclose(output, x + y)" | 
|  | ] | 
|  | }, | 
|  | { | 
|  | "cell_type": "markdown", | 
|  | "id": "7b00953b", | 
|  | "metadata": {}, | 
|  | "source": [ | 
|  | "### jacrev, jacfwd, and hessian\n", | 
|  | "\n", | 
|  | "The `jacrev` transform returns a new function that takes in `x` and returns the Jacobian of the function\n", | 
|  | "with respect to `x` using reverse-mode AD." | 
|  | ] | 
|  | }, | 
|  | { | 
|  | "cell_type": "code", | 
|  | "execution_count": null, | 
|  | "id": "20f53be2", | 
|  | "metadata": {}, | 
|  | "outputs": [], | 
|  | "source": [ | 
|  | "from functorch import jacrev\n", | 
|  | "x = torch.randn(5)\n", | 
|  | "jacobian = jacrev(torch.sin)(x)\n", | 
|  | "expected = torch.diag(torch.cos(x))\n", | 
|  | "assert torch.allclose(jacobian, expected)" | 
|  | ] | 
|  | }, | 
|  | { | 
|  | "cell_type": "markdown", | 
|  | "id": "b9007c88", | 
|  | "metadata": {}, | 
|  | "source": [ | 
|  | "Use `jacrev` to compute the jacobian. This can be composed with `vmap` to produce batched jacobians:" | 
|  | ] | 
|  | }, | 
|  | { | 
|  | "cell_type": "code", | 
|  | "execution_count": null, | 
|  | "id": "97d6c382", | 
|  | "metadata": {}, | 
|  | "outputs": [], | 
|  | "source": [ | 
|  | "x = torch.randn(64, 5)\n", | 
|  | "jacobian = vmap(jacrev(torch.sin))(x)\n", | 
|  | "assert jacobian.shape == (64, 5, 5)" | 
|  | ] | 
|  | }, | 
|  | { | 
|  | "cell_type": "markdown", | 
|  | "id": "cda642ec", | 
|  | "metadata": {}, | 
|  | "source": [ | 
|  | "`jacfwd` is a drop-in replacement for `jacrev` that computes Jacobians using forward-mode AD:" | 
|  | ] | 
|  | }, | 
|  | { | 
|  | "cell_type": "code", | 
|  | "execution_count": null, | 
|  | "id": "a8c1dedb", | 
|  | "metadata": {}, | 
|  | "outputs": [], | 
|  | "source": [ | 
|  | "from functorch import jacfwd\n", | 
|  | "x = torch.randn(5)\n", | 
|  | "jacobian = jacfwd(torch.sin)(x)\n", | 
|  | "expected = torch.diag(torch.cos(x))\n", | 
|  | "assert torch.allclose(jacobian, expected)" | 
|  | ] | 
|  | }, | 
|  | { | 
|  | "cell_type": "markdown", | 
|  | "id": "39f85b50", | 
|  | "metadata": {}, | 
|  | "source": [ | 
|  | "Composing `jacrev` with itself or `jacfwd` can produce hessians:" | 
|  | ] | 
|  | }, | 
|  | { | 
|  | "cell_type": "code", | 
|  | "execution_count": null, | 
|  | "id": "1e511139", | 
|  | "metadata": {}, | 
|  | "outputs": [], | 
|  | "source": [ | 
|  | "def f(x):\n", | 
|  | "  return x.sin().sum()\n", | 
|  | "\n", | 
|  | "x = torch.randn(5)\n", | 
|  | "hessian0 = jacrev(jacrev(f))(x)\n", | 
|  | "hessian1 = jacfwd(jacrev(f))(x)" | 
|  | ] | 
|  | }, | 
|  | { | 
|  | "cell_type": "markdown", | 
|  | "id": "18efdc65", | 
|  | "metadata": {}, | 
|  | "source": [ | 
|  | "The `hessian` is a convenience function that combines `jacfwd` and `jacrev`:" | 
|  | ] | 
|  | }, | 
|  | { | 
|  | "cell_type": "code", | 
|  | "execution_count": null, | 
|  | "id": "fd1765df", | 
|  | "metadata": {}, | 
|  | "outputs": [], | 
|  | "source": [ | 
|  | "from functorch import hessian\n", | 
|  | "\n", | 
|  | "def f(x):\n", | 
|  | "  return x.sin().sum()\n", | 
|  | "\n", | 
|  | "x = torch.randn(5)\n", | 
|  | "hess = hessian(f)(x)" | 
|  | ] | 
|  | }, | 
|  | { | 
|  | "cell_type": "markdown", | 
|  | "id": "b597d7ad", | 
|  | "metadata": {}, | 
|  | "source": [ | 
|  | "## Conclusion\n", | 
|  | "\n", | 
|  | "Check out our other tutorials (in the left bar) for more detailed explanations of how to apply functorch transforms for various use cases. `functorch` is very much a work in progress and we'd love to hear how you're using it -- we encourage you to start a conversation at our [issues tracker](https://github.com/pytorch/functorch) to discuss your use case." | 
|  | ] | 
|  | } | 
|  | ], | 
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|  | "kernelspec": { | 
|  | "display_name": "Python 3 (ipykernel)", | 
|  | "language": "python", | 
|  | "name": "python3" | 
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|  | "codemirror_mode": { | 
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|  | "file_extension": ".py", | 
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|  | "nbconvert_exporter": "python", | 
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