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test_array_stacked_tf.py
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from typing import Optional, Union
import pytest
from docarray import BaseDoc, DocList
from docarray.array import DocVec
from docarray.typing import (
AnyEmbedding,
AnyTensor,
AudioTensor,
ImageTensor,
NdArray,
VideoTensor,
)
from docarray.utils._internal.misc import is_tf_available
tf_available = is_tf_available()
if tf_available:
import tensorflow as tf
import tensorflow._api.v2.experimental.numpy as tnp
from docarray.typing import TensorFlowTensor
@pytest.fixture()
def batch():
class Image(BaseDoc):
tensor: TensorFlowTensor[3, 224, 224]
import tensorflow as tf
batch = DocList[Image]([Image(tensor=tf.zeros((3, 224, 224))) for _ in range(10)])
return batch.to_doc_vec()
@pytest.fixture()
def nested_batch():
class Image(BaseDoc):
tensor: TensorFlowTensor[3, 224, 224]
class MMdoc(BaseDoc):
img: DocList[Image]
import tensorflow as tf
batch = DocVec[MMdoc](
[
MMdoc(
img=DocList[Image](
[Image(tensor=tf.zeros((3, 224, 224))) for _ in range(10)]
)
)
for _ in range(10)
]
)
return batch
@pytest.mark.tensorflow
def test_len(batch):
assert len(batch) == 10
@pytest.mark.tensorflow
def test_getitem(batch):
for i in range(len(batch)):
item = batch[i]
assert isinstance(item.tensor, TensorFlowTensor)
assert tnp.allclose(item.tensor.tensor, tf.zeros((3, 224, 224)))
@pytest.mark.tensorflow
def test_get_slice(batch):
sliced = batch[0:2]
assert isinstance(sliced, DocVec)
assert len(sliced) == 2
@pytest.mark.tensorflow
def test_iterator(batch):
for doc in batch:
assert tnp.allclose(doc.tensor.tensor, tf.zeros((3, 224, 224)))
@pytest.mark.tensorflow
def test_set_after_stacking():
class Image(BaseDoc):
tensor: TensorFlowTensor[3, 224, 224]
batch = DocVec[Image]([Image(tensor=tf.zeros((3, 224, 224))) for _ in range(10)])
batch.tensor = tf.ones((10, 3, 224, 224))
assert tnp.allclose(batch.tensor.tensor, tf.ones((10, 3, 224, 224)))
for i, doc in enumerate(batch):
assert tnp.allclose(doc.tensor.tensor, batch.tensor.tensor[i])
@pytest.mark.tensorflow
def test_stack_optional(batch):
assert tnp.allclose(
batch._storage.tensor_columns['tensor'].tensor, tf.zeros((10, 3, 224, 224))
)
assert tnp.allclose(batch.tensor.tensor, tf.zeros((10, 3, 224, 224)))
@pytest.mark.tensorflow
def test_stack_mod_nested_document():
class Image(BaseDoc):
tensor: TensorFlowTensor[3, 224, 224]
class MMdoc(BaseDoc):
img: Image
batch = DocList[MMdoc](
[MMdoc(img=Image(tensor=tf.zeros((3, 224, 224)))) for _ in range(10)]
).to_doc_vec()
assert tnp.allclose(
batch._storage.doc_columns['img']._storage.tensor_columns['tensor'].tensor,
tf.zeros((10, 3, 224, 224)),
)
assert tnp.allclose(batch.img.tensor.tensor, tf.zeros((10, 3, 224, 224)))
@pytest.mark.tensorflow
def test_stack_nested_DocArray(nested_batch):
for i in range(len(nested_batch)):
assert tnp.allclose(
nested_batch[i].img._storage.tensor_columns['tensor'].tensor,
tf.zeros((10, 3, 224, 224)),
)
assert tnp.allclose(
nested_batch[i].img.tensor.tensor, tf.zeros((10, 3, 224, 224))
)
@pytest.mark.tensorflow
def test_convert_to_da(batch):
da = batch.to_doc_list()
for doc in da:
assert tnp.allclose(doc.tensor.tensor, tf.zeros((3, 224, 224)))
@pytest.mark.tensorflow
def test_unstack_nested_document():
class Image(BaseDoc):
tensor: TensorFlowTensor[3, 224, 224]
class MMdoc(BaseDoc):
img: Image
batch = DocVec[MMdoc](
[MMdoc(img=Image(tensor=tf.zeros((3, 224, 224)))) for _ in range(10)]
)
assert isinstance(batch.img._storage.tensor_columns['tensor'], TensorFlowTensor)
da = batch.to_doc_list()
for doc in da:
assert tnp.allclose(doc.img.tensor.tensor, tf.zeros((3, 224, 224)))
@pytest.mark.tensorflow
def test_unstack_nested_DocArray(nested_batch):
batch = nested_batch.to_doc_list()
for i in range(len(batch)):
assert isinstance(batch[i].img, DocList)
for doc in batch[i].img:
assert tnp.allclose(doc.tensor.tensor, tf.zeros((3, 224, 224)))
@pytest.mark.tensorflow
def test_stack_call():
class Image(BaseDoc):
tensor: TensorFlowTensor[3, 224, 224]
da = DocList[Image]([Image(tensor=tf.zeros((3, 224, 224))) for _ in range(10)])
da = da.to_doc_vec()
assert len(da) == 10
assert da.tensor.tensor.shape == (10, 3, 224, 224)
@pytest.mark.tensorflow
def test_stack_union():
class Image(BaseDoc):
tensor: Union[TensorFlowTensor[3, 224, 224], NdArray[3, 224, 224]]
DocVec[Image](
[Image(tensor=tf.zeros((3, 224, 224))) for _ in range(10)],
tensor_type=TensorFlowTensor,
)
# union fields aren't actually doc_vec
# just checking that there is no error
@pytest.mark.tensorflow
def test_setitem_tensor(batch):
batch[3].tensor.tensor = tf.zeros((3, 224, 224))
@pytest.mark.skip('not working yet')
@pytest.mark.tensorflow
def test_setitem_tensor_direct(batch):
batch[3].tensor = tf.zeros((3, 224, 224))
@pytest.mark.parametrize(
'cls_tensor', [ImageTensor, AudioTensor, VideoTensor, AnyEmbedding, AnyTensor]
)
@pytest.mark.tensorflow
def test_generic_tensors_with_tf(cls_tensor):
tensor = tf.zeros((3, 224, 224))
class Image(BaseDoc):
tensor: cls_tensor
da = DocVec[Image](
[Image(tensor=tensor) for _ in range(10)],
tensor_type=TensorFlowTensor,
)
for i in range(len(da)):
assert tnp.allclose(da[i].tensor.tensor, tensor)
assert 'tensor' in da._storage.tensor_columns.keys()
assert isinstance(da._storage.tensor_columns['tensor'], TensorFlowTensor)
@pytest.mark.parametrize(
'cls_tensor', [ImageTensor, AudioTensor, VideoTensor, AnyEmbedding, AnyTensor]
)
@pytest.mark.tensorflow
def test_generic_tensors_with_optional(cls_tensor):
tensor = tf.zeros((3, 224, 224))
class Image(BaseDoc):
tensor: Optional[cls_tensor]
class TopDoc(BaseDoc):
img: Image
da = DocVec[TopDoc](
[TopDoc(img=Image(tensor=tensor)) for _ in range(10)],
tensor_type=TensorFlowTensor,
)
for i in range(len(da)):
assert tnp.allclose(da.img[i].tensor.tensor, tensor)
assert 'tensor' in da.img._storage.tensor_columns.keys()
assert isinstance(da.img._storage.tensor_columns['tensor'], TensorFlowTensor)
assert isinstance(da.img._storage.tensor_columns['tensor'].tensor, tf.Tensor)
@pytest.mark.tensorflow
def test_get_from_slice_stacked():
class Doc(BaseDoc):
text: str
tensor: TensorFlowTensor
da = DocVec[Doc](
[Doc(text=f'hello{i}', tensor=tf.zeros((3, 224, 224))) for i in range(10)]
)
da_sliced = da[0:10:2]
assert isinstance(da_sliced, DocVec)
tensors = da_sliced.tensor.tensor
assert tensors.shape == (5, 3, 224, 224)
@pytest.mark.tensorflow
def test_stack_none():
class MyDoc(BaseDoc):
tensor: Optional[AnyTensor] = None
da = DocVec[MyDoc](
[MyDoc(tensor=None) for _ in range(10)], tensor_type=TensorFlowTensor
)
assert 'tensor' in da._storage.tensor_columns.keys()
@pytest.mark.tensorflow
def test_keep_dtype_tf():
class MyDoc(BaseDoc):
tensor: TensorFlowTensor
da = DocList[MyDoc](
[MyDoc(tensor=tf.zeros([2, 4], dtype=tf.int32)) for _ in range(3)]
)
assert da[0].tensor.tensor.dtype == tf.int32
da = da.to_doc_vec()
assert da[0].tensor.tensor.dtype == tf.int32
assert da.tensor.tensor.dtype == tf.int32