mirror of
https://github.com/p2p-ld/numpydantic.git
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509 lines
13 KiB
Markdown
509 lines
13 KiB
Markdown
# numpydantic
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A python package for specifying, validating, and serializing arrays with arbitrary backends in pydantic.
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**Problem:**
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1) Pydantic is great for modeling data.
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2) Arrays are one of a few elemental types in computing,
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but ...
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3) Typical type annotations would only work for a single array library implementation
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4) They wouldn't allow you to specify array shapes and dtypes, and
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5) If you try and specify an array in pydantic, this happens:
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```python
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>>> from pydantic import BaseModel
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>>> import numpy as np
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>>> class MyModel(BaseModel):
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>>> array: np.ndarray
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pydantic.errors.PydanticSchemaGenerationError:
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Unable to generate pydantic-core schema for <class 'numpy.ndarray'>.
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Set `arbitrary_types_allowed=True` in the model_config to ignore this error
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or implement `__get_pydantic_core_schema__` on your type to fully support it.
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```
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**Solution:**
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Numpydantic allows you to do this:
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```python
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from pydantic import BaseModel
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from numpydantic import NDArray, Shape
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class MyModel(BaseModel):
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array: NDArray[Shape["3 x, 4 y, * z"], int]
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```
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And use it with your favorite array library:
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```python
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import numpy as np
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import dask.array as da
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import zarr
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# numpy
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model = MyModel(array=np.zeros((3, 4, 5), dtype=int))
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# dask
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model = MyModel(array=da.zeros((3, 4, 5), dtype=int))
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# hdf5 datasets
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model = MyModel(array=('data.h5', '/nested/dataset'))
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# zarr arrays
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model = MyModel(array=zarr.zeros((3,4,5), dtype=int))
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model = MyModel(array='data.zarr')
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model = MyModel(array=('data.zarr', '/nested/dataset'))
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# video files
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model = MyModel(array="data.mp4")
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```
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And use the `NDArray` type annotation like a regular type outside
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of pydantic -- eg. to validate an array anywhere, use `isinstance`:
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```python
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array_type = NDArray[Shape["1, 2, 3"], int]
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isinstance(np.zeros((1,2,3), dtype=int), array_type)
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# True
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isinstance(zarr.zeros((1,2,3), dtype=int), array_type)
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# True
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isinstance(np.zeros((4,5,6), dtype=int), array_type)
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# False
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isinstance(np.zeros((1,2,3), dtype=float), array_type)
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# False
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```
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```{note}
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`NDArray` can't do validation with static type checkers yet, see
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{ref}`design_challenges` and {ref}`type_checkers`
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```
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## Features:
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- **Types** - Annotations (based on [npytyping](https://github.com/ramonhagenaars/nptyping))
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for specifying arrays in pydantic models
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- **Validation** - Shape, dtype, and other array validations
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- **Interfaces** - Works with {mod}`~.interface.numpy`, {mod}`~.interface.dask`, {mod}`~.interface.hdf5`,
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{mod}`~.interface.video`, and {mod}`~.interface.zarr`,
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and a simple extension system to make it work with whatever else you want! Provides
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a uniform and transparent interface so you can both use common indexing operations
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and also access any special features of a given array library.
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- [**Serialization**](./serialization.md) - Dump an array as a JSON-compatible array-of-arrays with enough metadata to be able to
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recreate the model in the native format. Full roundtripping is supported :)
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- **Schema Generation** - Correct JSON Schema for arrays, complete with shape and dtype constraints, to
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make your models interoperable
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Coming soon:
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- **Metadata** - This package was built to be used with [linkml arrays](https://linkml.io/linkml/schemas/arrays.html),
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so we will be extending it to include arbitrary metadata included in the type annotation object in the JSON schema representation.
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- **Extensible Specification** - for v1, we are implementing the existing nptyping syntax, but
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for v2 we will be updating that to an extensible specification syntax to allow interfaces to validate additional
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constraints like chunk sizes, as well as make array specifications more introspectable and friendly to runtime usage.
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- **Advanced dtype handling** - handling dtypes that only exist in some array backends, allowing
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minimum and maximum precision ranges, and so on as type maps provided by interface classes :)
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- **More Elaborate Arrays** - structured dtypes, recarrays, xarray-style labeled arrays...
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- (see [todo](./todo.md))
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## Installation
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numpydantic tries to keep dependencies minimal, so by default it only comes with
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dependencies to use the numpy interface. Add the extra relevant to your favorite
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array library to be able to use it!
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```shell
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pip install numpydantic
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# dask
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pip install 'numpydantic[dask]'
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# hdf5
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pip install 'numpydantic[hdf5]'
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# video
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pip install 'numpydantic[video]'
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# zarr
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pip install 'numpydantic[zarr]'
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# all array formats
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pip intsall 'numpydantic[array]'
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```
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## Usage
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Specify an array using [nptyping syntax](https://github.com/ramonhagenaars/nptyping/blob/master/USERDOCS.md)
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and use it with your favorite array library :)
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Use the {class}`~numpydantic.NDArray` class like you would any other python type,
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combine it with {class}`typing.Union`, make it {class}`~typing.Optional`, etc.
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For example, to specify a very special type of image that can either be
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- a 2D float array where the axes can be any size, or
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- a 3D uint8 array where the third axis must be size 3
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- a 1080p video
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```python
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from typing import Union
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from pydantic import BaseModel
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import numpy as np
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from numpydantic import NDArray, Shape
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class Image(BaseModel):
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array: Union[
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NDArray[Shape["* x, * y"], float],
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NDArray[Shape["* x, * y, 3 rgb"], np.uint8],
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NDArray[Shape["* t, 1080 y, 1920 x, 3 rgb"], np.uint8]
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]
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```
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And then use that as a transparent interface to your favorite array library!
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### Interfaces
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#### Numpy
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The Coca-Cola of array libraries
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```python
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import numpy as np
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# works
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frame_gray = Image(array=np.ones((1280, 720), dtype=float))
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frame_rgb = Image(array=np.ones((1280, 720, 3), dtype=np.uint8))
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# fails
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wrong_n_dimensions = Image(array=np.ones((1280,), dtype=float))
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wrong_shape = Image(array=np.ones((1280,720,10), dtype=np.uint8))
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# shapes and types are checked together, so this also fails
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wrong_shape_dtype_combo = Image(array=np.ones((1280, 720, 3), dtype=float))
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```
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#### Dask
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High performance chunked arrays! The backend for many new array libraries!
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Works exactly the same as numpy arrays
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```python
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import dask.array as da
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# validate a humongous image without having to load it into memory
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video_array = da.zeros(shape=(1e10,1e20,3), dtype=np.uint8)
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dask_video = Image(array=video_array)
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```
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#### HDF5
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Array work increasingly can't fit on memory, but dealing with arrays on disk
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can become a pain in concurrent applications. Numpydantic allows you to
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specify the location of an array within an hdf5 file on disk and use it just like
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any other array!
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eg. Make an array on disk...
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```python
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from pathlib import Path
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import h5py
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from numpydantic.interface.hdf5 import H5ArrayPath
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h5f_file = Path('my_file.h5')
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array_path = "/nested/array"
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# make an HDF5 array
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h5f = h5py.File(h5f_file, "w")
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array = np.random.randint(0, 255, (1920,1080,3), np.uint8)
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h5f.create_dataset(array_path, data=array)
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h5f.close()
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```
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Then use it in your model! numpydantic will only open the file as long as it's needed
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```python
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>>> h5f_image = Image(array=H5ArrayPath(file=h5f_file, path=array_path))
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>>> h5f_image.array[0:5,0:5,0]
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array([[0, 0, 0, 0, 0],
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[0, 0, 0, 0, 0],
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[0, 0, 0, 0, 0],
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[0, 0, 0, 0, 0],
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[0, 0, 0, 0, 0]], dtype=uint8)
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>>> h5f_image.array[0:2,0:2,0] = 1
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>>> h5f_image.array[0:5,0:5,0]
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array([[1, 1, 0, 0, 0],
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[1, 1, 0, 0, 0],
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[0, 0, 0, 0, 0],
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[0, 0, 0, 0, 0],
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[0, 0, 0, 0, 0]], dtype=uint8)
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```
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Numpydantic tries to be a smart but transparent proxy, exposing the methods and attributes
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of the source type even when we aren't directly using them, like when dealing with on-disk HDF5 arrays.
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If you want, you can take full control and directly interact with the underlying :class:`h5py.Dataset`
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object and leave the file open between calls:
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```python
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>>> dataset = h5f_image.array.open()
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>>> # do some stuff that requires the datset to be held open
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>>> h5f_image.array.close()
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```
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#### Video
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Videos are just arrays with fancy encoding! Numpydantic can validate shape and dtype
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as well as lazy load chunks of frames with arraylike syntax!
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Say we have some video `data.mp4` ...
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```python
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video = Image(array='data.mp4')
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# get a single frame
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video.array[5]
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# or a range of frames!
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video.array[5:10]
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# or whatever slicing you want to do!
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video.array[5:50:5, 0:10, 50:70]
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```
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As elsewhere, a proxy class is a transparent pass-through interface to the underlying
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opencv class, so we can get the rest of the video properties ...
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```python
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import cv2
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# get the total frames from opencv
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video.array.get(cv2.CAP_PROP_FRAME_COUNT)
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# the proxy class also provides a convenience property
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video.array.n_frames
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```
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#### Zarr
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Zarr works similarly!
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Use it with any of Zarr's backends: Nested, Zipfile, S3, it's all the same!
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Eg. create a nested zarr array on disk and use it...
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```python
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import zarr
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from numpydantic.interface.zarr import ZarrArrayPath
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array_file = 'data/array.zarr'
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nested_path = 'data/sets/here'
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root = zarr.open(array_file, mode='w')
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nested_array = root.zeros(
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nested_path,
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shape=(1000, 1080, 1920, 3),
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dtype=np.uint8
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)
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# validates just fine!
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zarr_video = Image(array=ZarrArrayPath(array_file, nested_path))
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# or just pass a tuple, the interface can discover it's a zarr array
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zarr_video = Image(array=(array_file, nested_path))
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```
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### JSON Schema
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Numpydantic generates JSON Schema for all its array specifications, so for the above
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model, we get a schema for each of the possible array types that properly handles
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the shape and dtype constraints and includes the origin numpy type as a `dtype` annotation.
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```python
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Image.model_json_schema()
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```
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```json
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{
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"properties": {
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"array": {
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"anyOf": [
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{
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"items": {"items": {"type": "number"}, "type": "array"},
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"type": "array"
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},
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{
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"dtype": "numpy.uint8",
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"items": {
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"items": {
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"items": {
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"maximum": 255,
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"minimum": 0,
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"type": "integer"
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},
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"maxItems": 3,
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"minItems": 3,
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"type": "array"
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},
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"type": "array"
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},
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"type": "array"
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},
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{
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"dtype": "numpy.uint8",
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"items": {
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"items": {
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"items": {
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"items": {
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"maximum": 255,
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"minimum": 0,
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"type": "integer"
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},
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"maxItems": 3,
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"minItems": 3,
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"type": "array"
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},
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"maxItems": 1920,
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"minItems": 1920,
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"type": "array"
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},
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"maxItems": 1080,
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"minItems": 1080,
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"type": "array"
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},
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"type": "array"
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}
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],
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"title": "Array"
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}
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},
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"required": ["array"],
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"title": "Image",
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"type": "object"
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}
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```
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numpydantic can even handle shapes with unbounded numbers of dimensions by using
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recursive JSON schema!!!
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So the any-shaped array (using nptyping's ellipsis notation):
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```python
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class AnyShape(BaseModel):
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array: NDArray[Shape["*, ..."], np.uint8]
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```
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is rendered to JSON-Schema like this:
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```json
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{
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"$defs": {
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"any-shape-array-9b5d89838a990d79": {
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"anyOf": [
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{
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"items": {
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"$ref": "#/$defs/any-shape-array-9b5d89838a990d79"
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},
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"type": "array"
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},
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{"maximum": 255, "minimum": 0, "type": "integer"}
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]
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}
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},
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"properties": {
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"array": {
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"dtype": "numpy.uint8",
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"items": {"$ref": "#/$defs/any-shape-array-9b5d89838a990d79"},
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"title": "Array",
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"type": "array"
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}
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},
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"required": ["array"],
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"title": "AnyShape",
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"type": "object"
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}
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```
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where the key `"any-shape-array-9b5d89838a990d79"` uses a (blake2b) hash of the
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inner dtype specification so that having multiple any-shaped arrays in a single
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model schema are deduplicated without conflicts.
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### Dumping
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One of the main reasons to use chunked array libraries like zarr is to avoid
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needing to load the entire array into memory. When dumping data to JSON, numpydantic
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tries to mirror this behavior, by default only dumping the metadata that is
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necessary to identify the array.
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For example, with zarr:
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```python
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array = zarr.array([[1,2,3],[4,5,6],[7,8,9]], dtype=float)
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instance = Image(array=array)
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dumped = instance.model_dump_json()
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```
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```json
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{
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"array":
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{
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"Chunk shape": "(3, 3)",
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"Chunks initialized": "1/1",
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"Compressor": "Blosc(cname='lz4', clevel=5, shuffle=SHUFFLE, blocksize=0)",
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"Data type": "float64",
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"No. bytes": "72",
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"No. bytes stored": "421",
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"Order": "C",
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"Read-only": "False",
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"Shape": "(3, 3)",
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"Storage ratio": "0.2",
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"Store type": "zarr.storage.KVStore",
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"Type": "zarr.core.Array",
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"hexdigest": "c51604eace325fe42bbebf39146c0956bd2ed13c"
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}
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}
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```
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To print the whole array, we use pydantic's serialization contexts:
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```python
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dumped = instance.model_dump_json(context={'zarr_dump_array': True})
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```
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```json
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{
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"array":
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{
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"same thing,": "except also...",
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"array": [[1.0, 2.0, 3.0], [4.0, 5.0, 6.0], [7.0, 8.0, 9.0]],
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"hexdigest": "c51604eace325fe42bbebf39146c0956bd2ed13c"
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}
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}
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```
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```{toctree}
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:maxdepth: 2
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:caption: Contents
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:hidden: true
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design
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syntax
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serialization
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interfaces
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todo
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changelog
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```
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```{toctree}
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:maxdepth: 2
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:caption: API
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:hidden: true
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api/index
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api/interface/index
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api/dtype
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api/ndarray
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api/maps
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api/meta
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api/schema
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api/shape
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api/types
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```
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```{toctree}
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:maxdepth: 2
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:caption: Meta
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:hidden: true
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development
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```
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## See Also
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- [`jaxtyping`](https://docs.kidger.site/jaxtyping/)
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