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Add documentation for adding E2E tests
This commit adds a file explaining the structure of an E2E test, as well as useful things to keep in mind when adding new tests.
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# Adding an E2E Test | ||
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## Overview | ||
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Adding support for a Torch operator in Torch-MLIR should always be accompanied | ||
by at least one end-to-end test to make sure the implementation of the op | ||
matches the behavior of PyTorch. The tests live in the | ||
`torch-mlir/python/torch_mlir_e2e_test/test_suite/` directory. When adding a new | ||
test, choose a file that best matches the op you're testing, and if there is no | ||
file that best matches add a new file for your op. | ||
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## An E2E Test Deconstructed | ||
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In order to understand how to create an end-to-end test for your op, let's break | ||
down an existing test to see what the different parts mean: | ||
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```python | ||
class IndexTensorModule3dInput(torch.nn.Module): | ||
def __init__(self): | ||
super().__init__() | ||
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@export | ||
@annotate_args([ | ||
None, | ||
([-1, -1, -1], torch.float32, True), | ||
([-1, -1], torch.int64, True), | ||
]) | ||
def forward(self, x, index): | ||
return torch.ops.aten.index(x, (index,)) | ||
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@register_test_case(module_factory=lambda: IndexTensorModule3dInput()) | ||
def IndexTensorModule3dInput_basic(module, tu: TestUtils): | ||
module.forward(tu.rand(5, 4, 3), tu.randint(2, 3, high=3)) | ||
``` | ||
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### Class Name | ||
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```python | ||
class IndexTensorModule3dInput(torch.nn.Module): | ||
``` | ||
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The class name should always contain the name of the op that is being | ||
tested. This makes it easy to search for tests for a particular op. Often times | ||
an op will require multiple tests to make sure different paths in the | ||
compilation work as expected. In such cases, it is customary to add extra | ||
information to the class name about what is being tested. In this example, the | ||
op is being tested with a rank-3 tensor as an input. | ||
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### `__init__` Method | ||
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```python | ||
def __init__(self): | ||
super().__init__() | ||
``` | ||
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In most tests, the `__init__` method simply calls the `__init__` method of the | ||
`torch.nn.Module` class. However, sometimes this method can be used to | ||
initialize parameters needed in the `forward` method. An example of such a case | ||
is in the [E2E test for Resnet18](https://github.com/llvm/torch-mlir/blob/ba17a4d6c09b4bbb4ef21b1d8d4a93cb056be109/python/torch_mlir_e2e_test/test_suite/vision_models.py#L17-L22). | ||
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### `@export` and `@annotate_args` Decorators | ||
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```python | ||
@export | ||
@annotate_args([ | ||
None, | ||
([-1, -1, -1], torch.float32, True), | ||
([-1, -1], torch.int64, True), | ||
]) | ||
``` | ||
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The [`@export` decorator](https://github.com/llvm/torch-mlir/blob/ba17a4d6c09b4bbb4ef21b1d8d4a93cb056be109/python/torch_mlir_e2e_test/torchscript/annotations.py#L30) | ||
lets the importer know which methods in the class will be public after the | ||
`torch.nn.Module` gets imported into the `torch` dialect. All E2E tests should | ||
have this decorator on the `forward` method. | ||
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The [`@annotate_args` decorator](https://github.com/llvm/torch-mlir/blob/ba17a4d6c09b4bbb4ef21b1d8d4a93cb056be109/python/torch_mlir_e2e_test/torchscript/annotations.py#L53) | ||
is used to give the importer information about the arguments of the method being | ||
decorated, which can then be propagated further into the IR of the body of the | ||
method. The list of annotations **must** have one annotation for each argument | ||
including the `self` argument. The `self` argument always gets the annotation of | ||
`None`, while the other inputs get an annotation with three fields in the | ||
following order: | ||
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1. Shape of input tensor. Use `-1` for dynamic dimensions | ||
2. Dtype of the input tensor | ||
3. Boolean representing whether the input tensor [has value semantics](https://github.com/llvm/torch-mlir/blob/ba17a4d6c09b4bbb4ef21b1d8d4a93cb056be109/python/torch_mlir/dialects/torch/importer/jit_ir/csrc/class_annotator.h#L54-L67). This | ||
will always be true for E2E tests, since the [Torch-MLIR backend contract](architecture.md#the-backend-contract) requires all tensors in the | ||
IR to eventually have value semantics. | ||
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From the structure of the annotations for the arguments other than the `self` | ||
argument it is clear that only tensor arguments are supported. This means that | ||
if an op requires an input other than a tensor, you need to do one of the | ||
following: | ||
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- Create the value in the method body | ||
- Create the value as a class parameter in the `__init__` method | ||
- In the case of certain values such as `int`s and `float`s, you can pass a | ||
zero-rank tensor as an input and use `int(input)` or `float(input)`in the | ||
method body to turn the tensor into a scalar `int` or `float`, respectively. | ||
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### `forward` Method | ||
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```python | ||
def forward(self, x, index): | ||
return torch.ops.aten.index(x, (index,)) | ||
``` | ||
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The forward method should be a simple test of your op. In other words, it will | ||
almost always take the form of simply returning the result of calling your | ||
op. The call to your op should **always** be made using | ||
`torch.ops.aten.{op_name}` to make it very clear which ATen op is being | ||
tested. Some ATen ops have different variants under the same base name, such as | ||
`aten.mean`, which has also a variant `aten.mean.dim`. At the Python level, such | ||
ops are accessed by just their base name, and the right variant is chosen based | ||
on the inputs given. For example, to test `aten.mean.dim` the test should use | ||
`torch.ops.aten.mean(..., dim=...)`. | ||
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### `@register_test_case` Decorator | ||
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```python | ||
@register_test_case(module_factory=lambda: IndexTensorModule3dInput()) | ||
``` | ||
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The `@register_test_case` decorator is used to register the test case | ||
function. The `module_factory` argument should be a function that when called | ||
produces an instance of the test class. This function will be used to create the | ||
first argument passed to the test case function. | ||
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### Test Case Function | ||
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```python | ||
def IndexTensorModule3dInput_basic(module, tu: TestUtils): | ||
module.forward(tu.rand(5, 4, 3), tu.randint(2, 3, high=3)) | ||
``` | ||
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The convention adopted for the name of the test case function is to have the | ||
same name as the test class postfixed by `_basic`. The test function always | ||
takes an instance of the test class as the first argument and a | ||
[`TestUtils`](https://github.com/llvm/torch-mlir/blob/8e880a2d009b67d45fb07434ab62ec2066a11185/python/torch_mlir_e2e_test/torchscript/framework.py#L167) | ||
object as the second argument. The `TestUtils` has some methods, such as | ||
[`tu.rand`](https://github.com/llvm/torch-mlir/blob/8e880a2d009b67d45fb07434ab62ec2066a11185/python/torch_mlir_e2e_test/torchscript/framework.py#L182) | ||
and | ||
[`tu.randint`](https://github.com/llvm/torch-mlir/blob/8e880a2d009b67d45fb07434ab62ec2066a11185/python/torch_mlir_e2e_test/torchscript/framework.py#L185), | ||
that allow the creation of random tensors in a way that makes sure the compiled | ||
module and the golden trace recieve the same tensors as input. Therefore, all | ||
random inputs should be generated through the `TestUtils` object. | ||
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## Things to Consider When Creating New Tests | ||
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- Do you need negative numbers? If so, | ||
[`tu.rand`](https://github.com/llvm/torch-mlir/blob/8e880a2d009b67d45fb07434ab62ec2066a11185/python/torch_mlir_e2e_test/torchscript/framework.py#L182) | ||
and | ||
[`tu.randint`](https://github.com/llvm/torch-mlir/blob/8e880a2d009b67d45fb07434ab62ec2066a11185/python/torch_mlir_e2e_test/torchscript/framework.py#L185) | ||
both allow you to specify a lower and upper bound for random number generation | ||
- Make sure the annotation of the forward method matches the input types and | ||
shapes | ||
- If an op takes optional flag arguments, there should be a test for each flag | ||
that is supported | ||
- If there are tricky edge cases that your op needs to handle, have a test for | ||
each edge case | ||
- Always follow the style and conventions of the file you're adding a test | ||
in. An attempt has been made to keep all E2E test files with consistent style, | ||
but file specific variations do exist | ||
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