%global _empty_manifest_terminate_build 0 Name: python-torchtyping Version: 0.1.4 Release: 1 Summary: Runtime type annotations for the shape, dtype etc. of PyTorch Tensors. License: Apache-2.0 URL: https://github.com/patrick-kidger/torchtyping Source0: https://mirrors.nju.edu.cn/pypi/web/packages/4f/f3/5524f68150ff7cbb57186b8659244a2d44e037bb4ab0802d7d9b58468f96/torchtyping-0.1.4.tar.gz BuildArch: noarch Requires: python3-torch Requires: python3-typeguard %description ## Installation ```bash pip install torchtyping ``` Requires Python 3.7+ and PyTorch 1.7.0+. ## Usage `torchtyping` allows for type annotating: - **shape**: size, number of dimensions; - **dtype** (float, integer, etc.); - **layout** (dense, sparse); - **names** of dimensions as per [named tensors](https://pytorch.org/docs/stable/named_tensor.html); - **arbitrary number of batch dimensions** with `...`; - **...plus anything else you like**, as `torchtyping` is highly extensible. If [`typeguard`](https://github.com/agronholm/typeguard) is (optionally) installed then **at runtime the types can be checked** to ensure that the tensors really are of the advertised shape, dtype, etc. ```python # EXAMPLE from torch import rand from torchtyping import TensorType, patch_typeguard from typeguard import typechecked patch_typeguard() # use before @typechecked @typechecked def func(x: TensorType["batch"], y: TensorType["batch"]) -> TensorType["batch"]: return x + y func(rand(3), rand(3)) # works func(rand(3), rand(1)) # TypeError: Dimension 'batch' of inconsistent size. Got both 1 and 3. ``` `typeguard` also has an import hook that can be used to automatically test an entire module, without needing to manually add `@typeguard.typechecked` decorators. If you're not using `typeguard` then `torchtyping.patch_typeguard()` can be omitted altogether, and `torchtyping` just used for documentation purposes. If you're not already using `typeguard` for your regular Python programming, then strongly consider using it. It's a great way to squash bugs. Both `typeguard` and `torchtyping` also integrate with `pytest`, so if you're concerned about any performance penalty then they can be enabled during tests only. ## API ```python torchtyping.TensorType[shape, dtype, layout, details] ``` The core of the library. Each of `shape`, `dtype`, `layout`, `details` are optional. - The `shape` argument can be any of: - An `int`: the dimension must be of exactly this size. If it is `-1` then any size is allowed. - A `str`: the size of the dimension passed at runtime will be bound to this name, and all tensors checked that the sizes are consistent. - A `...`: An arbitrary number of dimensions of any sizes. - A `str: int` pair (technically it's a slice), combining both `str` and `int` behaviour. (Just a `str` on its own is equivalent to `str: -1`.) - A `str: str` pair, in which case the size of the dimension passed at runtime will be bound to _both_ names, and all dimensions with either name must have the same size. (Some people like to use this as a way to associate multiple names with a dimension, for extra documentation purposes.) - A `str: ...` pair, in which case the multiple dimensions corresponding to `...` will be bound to the name specified by `str`, and again checked for consistency between arguments. - `None`, which when used in conjunction with `is_named` below, indicates a dimension that must _not_ have a name in the sense of [named tensors](https://pytorch.org/docs/stable/named_tensor.html). - A `None: int` pair, combining both `None` and `int` behaviour. (Just a `None` on its own is equivalent to `None: -1`.) - A `None: str` pair, combining both `None` and `str` behaviour. (That is, it must not have a named dimension, but must be of a size consistent with other uses of the string.) - A `typing.Any`: Any size is allowed for this dimension (equivalent to `-1`). - Any tuple of the above. For example.`TensorType["batch": ..., "length": 10, "channels", -1]`. If you just want to specify the number of dimensions then use for example `TensorType[-1, -1, -1]` for a three-dimensional tensor. - The `dtype` argument can be any of: - `torch.float32`, `torch.float64` etc. - `int`, `bool`, `float`, which are converted to their corresponding PyTorch types. `float` is specifically interpreted as `torch.get_default_dtype()`, which is usually `float32`. - The `layout` argument can be either `torch.strided` or `torch.sparse_coo`, for dense and sparse tensors respectively. - The `details` argument offers a way to pass an arbitrary number of additional flags that customise and extend `torchtyping`. Two flags are built-in by default. `torchtyping.is_named` causes the [names of tensor dimensions](https://pytorch.org/docs/stable/named_tensor.html) to be checked, and `torchtyping.is_float` can be used to check that arbitrary floating point types are passed in. (Rather than just a specific one as with e.g. `TensorType[torch.float32]`.) For discussion on how to customise `torchtyping` with your own `details`, see the [further documentation](https://github.com/patrick-kidger/torchtyping/blob/master/FURTHER-DOCUMENTATION.md#custom-extensions). - Check multiple things at once by just putting them all together inside a single `[]`. For example `TensorType["batch": ..., "length", "channels", float, is_named]`. ```python torchtyping.patch_typeguard() ``` `torchtyping` integrates with `typeguard` to perform runtime type checking. `torchtyping.patch_typeguard()` should be called at the global level, and will patch `typeguard` to check `TensorType`s. This function is safe to run multiple times. (It does nothing after the first run). - If using `@typeguard.typechecked`, then `torchtyping.patch_typeguard()` should be called any time before using `@typeguard.typechecked`. For example you could call it at the start of each file using `torchtyping`. - If using `typeguard.importhook.install_import_hook`, then `torchtyping.patch_typeguard()` should be called any time before defining the functions you want checked. For example you could call `torchtyping.patch_typeguard()` just once, at the same time as the `typeguard` import hook. (The order of the hook and the patch doesn't matter.) - If you're not using `typeguard` then `torchtyping.patch_typeguard()` can be omitted altogether, and `torchtyping` just used for documentation purposes. ```bash pytest --torchtyping-patch-typeguard ``` `torchtyping` offers a `pytest` plugin to automatically run `torchtyping.patch_typeguard()` before your tests. `pytest` will automatically discover the plugin, you just need to pass the `--torchtyping-patch-typeguard` flag to enable it. Packages can then be passed to `typeguard` as normal, either by using `@typeguard.typechecked`, `typeguard`'s import hook, or the `pytest` flag `--typeguard-packages="your_package_here"`. ## Further documentation See the [further documentation](https://github.com/patrick-kidger/torchtyping/blob/master/FURTHER-DOCUMENTATION.md) for: - FAQ; - Including `flake8` and `mypy` compatibility; - How to write custom extensions to `torchtyping`; - Resources and links to other libraries and materials on this topic; - More examples. %package -n python3-torchtyping Summary: Runtime type annotations for the shape, dtype etc. of PyTorch Tensors. Provides: python-torchtyping BuildRequires: python3-devel BuildRequires: python3-setuptools BuildRequires: python3-pip %description -n python3-torchtyping ## Installation ```bash pip install torchtyping ``` Requires Python 3.7+ and PyTorch 1.7.0+. ## Usage `torchtyping` allows for type annotating: - **shape**: size, number of dimensions; - **dtype** (float, integer, etc.); - **layout** (dense, sparse); - **names** of dimensions as per [named tensors](https://pytorch.org/docs/stable/named_tensor.html); - **arbitrary number of batch dimensions** with `...`; - **...plus anything else you like**, as `torchtyping` is highly extensible. If [`typeguard`](https://github.com/agronholm/typeguard) is (optionally) installed then **at runtime the types can be checked** to ensure that the tensors really are of the advertised shape, dtype, etc. ```python # EXAMPLE from torch import rand from torchtyping import TensorType, patch_typeguard from typeguard import typechecked patch_typeguard() # use before @typechecked @typechecked def func(x: TensorType["batch"], y: TensorType["batch"]) -> TensorType["batch"]: return x + y func(rand(3), rand(3)) # works func(rand(3), rand(1)) # TypeError: Dimension 'batch' of inconsistent size. Got both 1 and 3. ``` `typeguard` also has an import hook that can be used to automatically test an entire module, without needing to manually add `@typeguard.typechecked` decorators. If you're not using `typeguard` then `torchtyping.patch_typeguard()` can be omitted altogether, and `torchtyping` just used for documentation purposes. If you're not already using `typeguard` for your regular Python programming, then strongly consider using it. It's a great way to squash bugs. Both `typeguard` and `torchtyping` also integrate with `pytest`, so if you're concerned about any performance penalty then they can be enabled during tests only. ## API ```python torchtyping.TensorType[shape, dtype, layout, details] ``` The core of the library. Each of `shape`, `dtype`, `layout`, `details` are optional. - The `shape` argument can be any of: - An `int`: the dimension must be of exactly this size. If it is `-1` then any size is allowed. - A `str`: the size of the dimension passed at runtime will be bound to this name, and all tensors checked that the sizes are consistent. - A `...`: An arbitrary number of dimensions of any sizes. - A `str: int` pair (technically it's a slice), combining both `str` and `int` behaviour. (Just a `str` on its own is equivalent to `str: -1`.) - A `str: str` pair, in which case the size of the dimension passed at runtime will be bound to _both_ names, and all dimensions with either name must have the same size. (Some people like to use this as a way to associate multiple names with a dimension, for extra documentation purposes.) - A `str: ...` pair, in which case the multiple dimensions corresponding to `...` will be bound to the name specified by `str`, and again checked for consistency between arguments. - `None`, which when used in conjunction with `is_named` below, indicates a dimension that must _not_ have a name in the sense of [named tensors](https://pytorch.org/docs/stable/named_tensor.html). - A `None: int` pair, combining both `None` and `int` behaviour. (Just a `None` on its own is equivalent to `None: -1`.) - A `None: str` pair, combining both `None` and `str` behaviour. (That is, it must not have a named dimension, but must be of a size consistent with other uses of the string.) - A `typing.Any`: Any size is allowed for this dimension (equivalent to `-1`). - Any tuple of the above. For example.`TensorType["batch": ..., "length": 10, "channels", -1]`. If you just want to specify the number of dimensions then use for example `TensorType[-1, -1, -1]` for a three-dimensional tensor. - The `dtype` argument can be any of: - `torch.float32`, `torch.float64` etc. - `int`, `bool`, `float`, which are converted to their corresponding PyTorch types. `float` is specifically interpreted as `torch.get_default_dtype()`, which is usually `float32`. - The `layout` argument can be either `torch.strided` or `torch.sparse_coo`, for dense and sparse tensors respectively. - The `details` argument offers a way to pass an arbitrary number of additional flags that customise and extend `torchtyping`. Two flags are built-in by default. `torchtyping.is_named` causes the [names of tensor dimensions](https://pytorch.org/docs/stable/named_tensor.html) to be checked, and `torchtyping.is_float` can be used to check that arbitrary floating point types are passed in. (Rather than just a specific one as with e.g. `TensorType[torch.float32]`.) For discussion on how to customise `torchtyping` with your own `details`, see the [further documentation](https://github.com/patrick-kidger/torchtyping/blob/master/FURTHER-DOCUMENTATION.md#custom-extensions). - Check multiple things at once by just putting them all together inside a single `[]`. For example `TensorType["batch": ..., "length", "channels", float, is_named]`. ```python torchtyping.patch_typeguard() ``` `torchtyping` integrates with `typeguard` to perform runtime type checking. `torchtyping.patch_typeguard()` should be called at the global level, and will patch `typeguard` to check `TensorType`s. This function is safe to run multiple times. (It does nothing after the first run). - If using `@typeguard.typechecked`, then `torchtyping.patch_typeguard()` should be called any time before using `@typeguard.typechecked`. For example you could call it at the start of each file using `torchtyping`. - If using `typeguard.importhook.install_import_hook`, then `torchtyping.patch_typeguard()` should be called any time before defining the functions you want checked. For example you could call `torchtyping.patch_typeguard()` just once, at the same time as the `typeguard` import hook. (The order of the hook and the patch doesn't matter.) - If you're not using `typeguard` then `torchtyping.patch_typeguard()` can be omitted altogether, and `torchtyping` just used for documentation purposes. ```bash pytest --torchtyping-patch-typeguard ``` `torchtyping` offers a `pytest` plugin to automatically run `torchtyping.patch_typeguard()` before your tests. `pytest` will automatically discover the plugin, you just need to pass the `--torchtyping-patch-typeguard` flag to enable it. Packages can then be passed to `typeguard` as normal, either by using `@typeguard.typechecked`, `typeguard`'s import hook, or the `pytest` flag `--typeguard-packages="your_package_here"`. ## Further documentation See the [further documentation](https://github.com/patrick-kidger/torchtyping/blob/master/FURTHER-DOCUMENTATION.md) for: - FAQ; - Including `flake8` and `mypy` compatibility; - How to write custom extensions to `torchtyping`; - Resources and links to other libraries and materials on this topic; - More examples. %package help Summary: Development documents and examples for torchtyping Provides: python3-torchtyping-doc %description help ## Installation ```bash pip install torchtyping ``` Requires Python 3.7+ and PyTorch 1.7.0+. ## Usage `torchtyping` allows for type annotating: - **shape**: size, number of dimensions; - **dtype** (float, integer, etc.); - **layout** (dense, sparse); - **names** of dimensions as per [named tensors](https://pytorch.org/docs/stable/named_tensor.html); - **arbitrary number of batch dimensions** with `...`; - **...plus anything else you like**, as `torchtyping` is highly extensible. If [`typeguard`](https://github.com/agronholm/typeguard) is (optionally) installed then **at runtime the types can be checked** to ensure that the tensors really are of the advertised shape, dtype, etc. ```python # EXAMPLE from torch import rand from torchtyping import TensorType, patch_typeguard from typeguard import typechecked patch_typeguard() # use before @typechecked @typechecked def func(x: TensorType["batch"], y: TensorType["batch"]) -> TensorType["batch"]: return x + y func(rand(3), rand(3)) # works func(rand(3), rand(1)) # TypeError: Dimension 'batch' of inconsistent size. Got both 1 and 3. ``` `typeguard` also has an import hook that can be used to automatically test an entire module, without needing to manually add `@typeguard.typechecked` decorators. If you're not using `typeguard` then `torchtyping.patch_typeguard()` can be omitted altogether, and `torchtyping` just used for documentation purposes. If you're not already using `typeguard` for your regular Python programming, then strongly consider using it. It's a great way to squash bugs. Both `typeguard` and `torchtyping` also integrate with `pytest`, so if you're concerned about any performance penalty then they can be enabled during tests only. ## API ```python torchtyping.TensorType[shape, dtype, layout, details] ``` The core of the library. Each of `shape`, `dtype`, `layout`, `details` are optional. - The `shape` argument can be any of: - An `int`: the dimension must be of exactly this size. If it is `-1` then any size is allowed. - A `str`: the size of the dimension passed at runtime will be bound to this name, and all tensors checked that the sizes are consistent. - A `...`: An arbitrary number of dimensions of any sizes. - A `str: int` pair (technically it's a slice), combining both `str` and `int` behaviour. (Just a `str` on its own is equivalent to `str: -1`.) - A `str: str` pair, in which case the size of the dimension passed at runtime will be bound to _both_ names, and all dimensions with either name must have the same size. (Some people like to use this as a way to associate multiple names with a dimension, for extra documentation purposes.) - A `str: ...` pair, in which case the multiple dimensions corresponding to `...` will be bound to the name specified by `str`, and again checked for consistency between arguments. - `None`, which when used in conjunction with `is_named` below, indicates a dimension that must _not_ have a name in the sense of [named tensors](https://pytorch.org/docs/stable/named_tensor.html). - A `None: int` pair, combining both `None` and `int` behaviour. (Just a `None` on its own is equivalent to `None: -1`.) - A `None: str` pair, combining both `None` and `str` behaviour. (That is, it must not have a named dimension, but must be of a size consistent with other uses of the string.) - A `typing.Any`: Any size is allowed for this dimension (equivalent to `-1`). - Any tuple of the above. For example.`TensorType["batch": ..., "length": 10, "channels", -1]`. If you just want to specify the number of dimensions then use for example `TensorType[-1, -1, -1]` for a three-dimensional tensor. - The `dtype` argument can be any of: - `torch.float32`, `torch.float64` etc. - `int`, `bool`, `float`, which are converted to their corresponding PyTorch types. `float` is specifically interpreted as `torch.get_default_dtype()`, which is usually `float32`. - The `layout` argument can be either `torch.strided` or `torch.sparse_coo`, for dense and sparse tensors respectively. - The `details` argument offers a way to pass an arbitrary number of additional flags that customise and extend `torchtyping`. Two flags are built-in by default. `torchtyping.is_named` causes the [names of tensor dimensions](https://pytorch.org/docs/stable/named_tensor.html) to be checked, and `torchtyping.is_float` can be used to check that arbitrary floating point types are passed in. (Rather than just a specific one as with e.g. `TensorType[torch.float32]`.) For discussion on how to customise `torchtyping` with your own `details`, see the [further documentation](https://github.com/patrick-kidger/torchtyping/blob/master/FURTHER-DOCUMENTATION.md#custom-extensions). - Check multiple things at once by just putting them all together inside a single `[]`. For example `TensorType["batch": ..., "length", "channels", float, is_named]`. ```python torchtyping.patch_typeguard() ``` `torchtyping` integrates with `typeguard` to perform runtime type checking. `torchtyping.patch_typeguard()` should be called at the global level, and will patch `typeguard` to check `TensorType`s. This function is safe to run multiple times. (It does nothing after the first run). - If using `@typeguard.typechecked`, then `torchtyping.patch_typeguard()` should be called any time before using `@typeguard.typechecked`. For example you could call it at the start of each file using `torchtyping`. - If using `typeguard.importhook.install_import_hook`, then `torchtyping.patch_typeguard()` should be called any time before defining the functions you want checked. For example you could call `torchtyping.patch_typeguard()` just once, at the same time as the `typeguard` import hook. (The order of the hook and the patch doesn't matter.) - If you're not using `typeguard` then `torchtyping.patch_typeguard()` can be omitted altogether, and `torchtyping` just used for documentation purposes. ```bash pytest --torchtyping-patch-typeguard ``` `torchtyping` offers a `pytest` plugin to automatically run `torchtyping.patch_typeguard()` before your tests. `pytest` will automatically discover the plugin, you just need to pass the `--torchtyping-patch-typeguard` flag to enable it. Packages can then be passed to `typeguard` as normal, either by using `@typeguard.typechecked`, `typeguard`'s import hook, or the `pytest` flag `--typeguard-packages="your_package_here"`. ## Further documentation See the [further documentation](https://github.com/patrick-kidger/torchtyping/blob/master/FURTHER-DOCUMENTATION.md) for: - FAQ; - Including `flake8` and `mypy` compatibility; - How to write custom extensions to `torchtyping`; - Resources and links to other libraries and materials on this topic; - More examples. %prep %autosetup -n torchtyping-0.1.4 %build %py3_build %install %py3_install install -d -m755 %{buildroot}/%{_pkgdocdir} if [ -d doc ]; then cp -arf doc %{buildroot}/%{_pkgdocdir}; fi if [ -d docs ]; then cp -arf docs %{buildroot}/%{_pkgdocdir}; fi if [ -d example ]; then cp -arf example %{buildroot}/%{_pkgdocdir}; fi if [ -d examples ]; then cp -arf examples %{buildroot}/%{_pkgdocdir}; fi pushd %{buildroot} if [ -d usr/lib ]; then find usr/lib -type f -printf "/%h/%f\n" >> filelist.lst fi if [ -d usr/lib64 ]; then find usr/lib64 -type f -printf "/%h/%f\n" >> filelist.lst fi if [ -d usr/bin ]; then find usr/bin -type f -printf "/%h/%f\n" >> filelist.lst fi if [ -d usr/sbin ]; then find usr/sbin -type f -printf "/%h/%f\n" >> filelist.lst fi touch doclist.lst if [ -d usr/share/man ]; then find usr/share/man -type f -printf "/%h/%f.gz\n" >> doclist.lst fi popd mv %{buildroot}/filelist.lst . mv %{buildroot}/doclist.lst . %files -n python3-torchtyping -f filelist.lst %dir %{python3_sitelib}/* %files help -f doclist.lst %{_docdir}/* %changelog * Mon May 29 2023 Python_Bot - 0.1.4-1 - Package Spec generated