Skip to content

Type annotations for specifying, validating, and serializing arrays with arbitrary backends in Pydantic (and beyond)

License

Notifications You must be signed in to change notification settings

p2p-ld/numpydantic

Folders and files

NameName
Last commit message
Last commit date

Latest commit

 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 

Repository files navigation

numpydantic

PyPI - Version Documentation Status Coverage Status Code style: black

A python package for specifying, validating, and serializing arrays with arbitrary backends in pydantic.

Problem:

  1. Pydantic is great for modeling data.
  2. Arrays are one of a few elemental types in computing,

but ...

  1. Typical type annotations would only work for a single array library implementation
  2. They wouldn’t allow you to specify array shapes and dtypes, and
  3. If you try and specify an array in pydantic, this happens:
>>> from pydantic import BaseModel
>>> import numpy as np

>>> class MyModel(BaseModel):
>>>     array: np.ndarray
pydantic.errors.PydanticSchemaGenerationError: 
Unable to generate pydantic-core schema for <class 'numpy.ndarray'>. 
Set `arbitrary_types_allowed=True` in the model_config to ignore this error 
or implement `__get_pydantic_core_schema__` on your type to fully support it.

Solution

Numpydantic allows you to do this:

from pydantic import BaseModel
from numpydantic import NDArray, Shape

class MyModel(BaseModel):
    array: NDArray[Shape["3 x, 4 y, * z"], int]

And use it with your favorite array library:

import numpy as np
import dask.array as da
import zarr

# numpy
model = MyModel(array=np.zeros((3, 4, 5), dtype=int))
# dask
model = MyModel(array=da.zeros((3, 4, 5), dtype=int))
# hdf5 datasets
model = MyModel(array=('data.h5', '/nested/dataset'))
# zarr arrays
model = MyModel(array=zarr.zeros((3,4,5), dtype=int))
model = MyModel(array='data.zarr')
model = MyModel(array=('data.zarr', '/nested/dataset'))
# video files
model = MyModel(array="data.mp4")

numpydantic supports pydantic but none of its behavior is dependent on it! Use the NDArray type annotation like a regular type outside of pydantic -- eg. to validate an array anywhere, use isinstance:

array_type = NDArray[Shape["1, 2, 3"], int]
isinstance(np.zeros((1,2,3), dtype=int), array_type)
# True
isinstance(zarr.zeros((1,2,3), dtype=int), array_type)
# True
isinstance(np.zeros((4,5,6), dtype=int), array_type)
# False
isinstance(np.zeros((1,2,3), dtype=float), array_type)
# False

Or use it as a convenient callable shorthand for validating and working with array types that usually don't have an array-like API.

>>> rgb_video_type = NDArray[Shape["* t, 1920 x, 1080 y, 3 rgb"], np.uint8]
>>> video = rgb_video_type('data.mp4')
>>> video.shape
(10, 1920, 1080, 3)
>>> video[0, 0:3, 0:3, 0]
array([[0, 0, 0],
       [0, 0, 0],
       [0, 0, 0]], dtype=uint8)

Features:

  • Types - Annotations (based on npytyping) for specifying arrays in pydantic models
  • Validation - Shape, dtype, and other array validations
  • Interfaces - Works with numpy, dask, hdf5, video, zarr, and a simple extension system to make it work with whatever else you want!
  • Serialization - Dump an array as a JSON-compatible array-of-arrays with enough metadata to be able to recreate the model in the native format
  • Schema Generation - Correct JSON Schema for arrays, complete with shape and dtype constraints, to make your models interoperable
  • Fast - The validation codepath is careful to take quick exits and not perform unnecessary work, and interfaces use whatever tools available to validate against array metadata and lazy load to avoid expensive i/o operations. Our goal is to make numpydantic a tool you don't ever need to think about.

Coming soon:

  • Metadata - This package was built to be used with linkml arrays, so we will be extending it to include arbitrary metadata included in the type annotation object in the JSON schema representation.
  • Extensible Specification - for v1, we are implementing the existing nptyping syntax, but for v2 we will be updating that to an extensible specification syntax to allow interfaces to validate additional constraints like chunk sizes, as well as make array specifications more introspectable and friendly to runtime usage.
  • Advanced dtype handling - handling dtypes that only exist in some array backends, allowing minimum and maximum precision ranges, and so on as type maps provided by interface classes :)
  • (see todo)

Installation

numpydantic tries to keep dependencies minimal, so by default it only comes with dependencies to use the numpy interface. Add the extra relevant to your favorite array library to be able to use it!

pip install numpydantic
# dask
pip install 'numpydantic[dask]'
# hdf5
pip install 'numpydantic[hdf5]'
# video
pip install 'numpydantic[video]'
# zarr
pip install 'numpydantic[zarr]'
# all array formats
pip intsall 'numpydantic[array]'

Usage

Tip

The README is just a sample! See the full documentation at https://numpydantic.readthedocs.io

Specify an array using nptyping syntax and use it with your favorite array library :)

Use the NDArray class like you would any other python type, combine it with Union, make it Optional, etc.

For example, to specify a very special type of image that can either be

  • a 2D float array where the axes can be any size, or
  • a 3D uint8 array where the third axis must be size 3
  • a 1080p video
from typing import Union
from pydantic import BaseModel
import numpy as np

from numpydantic import NDArray, Shape

class Image(BaseModel):
    array: Union[
        NDArray[Shape["* x, * y"], float],
        NDArray[Shape["* x, * y, 3 rgb"], np.uint8],
        NDArray[Shape["* t, 1080 y, 1920 x, 3 rgb"], np.uint8]
    ]

And then use that as a transparent interface to your favorite array library!

Interfaces

Numpy

The Coca-Cola of array libraries

import numpy as np
# works
frame_gray = Image(array=np.ones((1280, 720), dtype=float))
frame_rgb  = Image(array=np.ones((1280, 720, 3), dtype=np.uint8))

# fails
wrong_n_dimensions = Image(array=np.ones((1280,), dtype=float))
wrong_shape = Image(array=np.ones((1280,720,10), dtype=np.uint8))

# shapes and types are checked together, so this also fails
wrong_shape_dtype_combo = Image(array=np.ones((1280, 720, 3), dtype=float))

Dask

High performance chunked arrays! The backend for many new array libraries!

Works exactly the same as numpy arrays

import dask.array as da

# validate a humongous image without having to load it into memory
video_array = da.zeros(shape=(1e10,1e20,3), dtype=np.uint8)
dask_video = Image(array=video_array)

HDF5

Array work increasingly can't fit on memory, but dealing with arrays on disk can become a pain in concurrent applications. Numpydantic allows you to specify the location of an array within an hdf5 file on disk and use it just like any other array!

eg. Make an array on disk...

from pathlib import Path
import h5py
from numpydantic.interface.hdf5 import H5ArrayPath

h5f_file = Path('my_file.h5')
array_path = "/nested/array"

# make an HDF5 array
h5f = h5py.File(h5f_file, "w")
array = np.random.randint(0, 255, (1920,1080,3), np.uint8)
h5f.create_dataset(array_path, data=array)
h5f.close()

Then use it in your model! numpydantic will only open the file as long as it's needed

>>> h5f_image = Image(array=H5ArrayPath(file=h5f_file, path=array_path))
>>> h5f_image.array[0:5,0:5,0]
array([[0, 0, 0, 0, 0],
       [0, 0, 0, 0, 0],
       [0, 0, 0, 0, 0],
       [0, 0, 0, 0, 0],
       [0, 0, 0, 0, 0]], dtype=uint8)
>>> h5f_image.array[0:2,0:2,0] = 1
>>> h5f_image.array[0:5,0:5,0]
array([[1, 1, 0, 0, 0],
       [1, 1, 0, 0, 0],
       [0, 0, 0, 0, 0],
       [0, 0, 0, 0, 0],
       [0, 0, 0, 0, 0]], dtype=uint8)

Numpydantic tries to be a smart but transparent proxy, exposing the methods and attributes of the source type even when we aren't directly using them, like when dealing with on-disk HDF5 arrays.

If you want, you can take full control and directly interact with the underlying :class:h5py.Dataset object and leave the file open between calls:

>>> dataset = h5f_image.array.open()
>>> # do some stuff that requires the dataset to be held open
>>> h5f_image.array.close()

Video

Videos are just arrays with fancy encoding! Numpydantic can validate shape and dtype as well as lazy load chunks of frames with arraylike syntax!

Say we have some video data.mp4 ...

video = Image(array='data.mp4')
# get a single frame
video.array[5]
# or a range of frames!
video.array[5:10]
# or whatever slicing you want to do!
video.array[5:50:5, 0:10, 50:70]

As elsewhere, a proxy class is a transparent pass-through interface to the underlying opencv class, so we can get the rest of the video properties ...

import cv2

# get the total frames from opencv
video.array.get(cv2.CAP_PROP_FRAME_COUNT)
# the proxy class also provides a convenience property
video.array.n_frames

Zarr

Zarr works similarly!

Use it with any of Zarr's backends: Nested, Zipfile, S3, it's all the same!

Eg. create a nested zarr array on disk and use it...

import zarr
from numpydantic.interface.zarr import ZarrArrayPath

array_file = 'data/array.zarr'
nested_path = 'data/sets/here'

root = zarr.open(array_file, mode='w')
nested_array = root.zeros(
    nested_path, 
    shape=(1000, 1080, 1920, 3), 
    dtype=np.uint8
)

# validates just fine!
zarr_video = Image(array=ZarrArrayPath(array_file, nested_path))
# or just pass a tuple, the interface can discover it's a zarr array
zarr_video = Image(array=(array_file, nested_path))

JSON Schema

Numpydantic generates JSON Schema for all its array specifications, so for the above model, we get a schema for each of the possible array types that properly handles the shape and dtype constraints and includes the origin numpy type as a dtype annotation.

Image.model_json_schema()
{
  "properties": {
    "array": {
      "anyOf": [
        {
          "items": {"items": {"type": "number"}, "type": "array"},
          "type": "array"
        },
        {
          "dtype": "numpy.uint8",
          "items": {
            "items": {
              "items": {
                "maximum": 255,
                "minimum": 0,
                "type": "integer"
              },
              "maxItems": 3,
              "minItems": 3,
              "type": "array"
            },
            "type": "array"
          },
          "type": "array"
        },
        {
          "dtype": "numpy.uint8",
          "items": {
            "items": {
              "items": {
                "items": {
                  "maximum": 255,
                  "minimum": 0,
                  "type": "integer"
                },
                "maxItems": 3,
                "minItems": 3,
                "type": "array"
              },
              "maxItems": 1920,
              "minItems": 1920,
              "type": "array"
            },
            "maxItems": 1080,
            "minItems": 1080,
            "type": "array"
          },
          "type": "array"
        }
      ],
      "title": "Array"
    }
  },
  "required": ["array"],
  "title": "Image",
  "type": "object"
}

numpydantic can even handle shapes with unbounded numbers of dimensions by using recursive JSON schema!!!

So the any-shaped array (using nptyping's ellipsis notation):

class AnyShape(BaseModel):
    array: NDArray[Shape["*, ..."], np.uint8]

is rendered to JSON-Schema like this:

{
  "$defs": {
    "any-shape-array-9b5d89838a990d79": {
      "anyOf": [
        {
          "items": {
            "$ref": "#/$defs/any-shape-array-9b5d89838a990d79"
          },
          "type": "array"
        },
        {"maximum": 255, "minimum": 0, "type": "integer"}
      ]
    }
  },
  "properties": {
    "array": {
      "dtype": "numpy.uint8",
      "items": {"$ref": "#/$defs/any-shape-array-9b5d89838a990d79"},
      "title": "Array",
      "type": "array"
    }
  },
  "required": ["array"],
  "title": "AnyShape",
  "type": "object"
}

where the key "any-shape-array-9b5d89838a990d79" uses a (blake2b) hash of the inner dtype specification so that having multiple any-shaped arrays in a single model schema are deduplicated without conflicts.

Dumping

One of the main reasons to use chunked array libraries like zarr is to avoid needing to load the entire array into memory. When dumping data to JSON, numpydantic tries to mirror this behavior, by default only dumping the metadata that is necessary to identify the array.

For example, with zarr:

array = zarr.array([[1,2,3],[4,5,6],[7,8,9]], dtype=float)
instance = Image(array=array)
dumped = instance.model_dump_json()
{
  "array":
  {
    "Chunk shape": "(3, 3)",
    "Chunks initialized": "1/1",
    "Compressor": "Blosc(cname='lz4', clevel=5, shuffle=SHUFFLE, blocksize=0)",
    "Data type": "float64",
    "No. bytes": "72",
    "No. bytes stored": "421",
    "Order": "C",
    "Read-only": "False",
    "Shape": "(3, 3)",
    "Storage ratio": "0.2",
    "Store type": "zarr.storage.KVStore",
    "Type": "zarr.core.Array",
    "hexdigest": "c51604eace325fe42bbebf39146c0956bd2ed13c"
  }
}

To print the whole array, we use pydantic's serialization contexts:

dumped = instance.model_dump_json(context={'zarr_dump_array': True})
{
  "array":
  {
    "same thing,": "except also...",
    "array": [[1.0, 2.0, 3.0], [4.0, 5.0, 6.0], [7.0, 8.0, 9.0]],
    "hexdigest": "c51604eace325fe42bbebf39146c0956bd2ed13c"
  }
}

Vendored Dependencies

We have vendored dependencies in the src/numpydantic/vendor package, and reproduced their licenses in the licenses directory.

  • nptyping - numpydantic.vendor.nptyping - /licenses/nptyping.txt