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from collections import OrderedDict
import numpy as np
import pytest
import tiledb
from .common import (
DiskTestCase,
assert_array_equal,
assert_dict_arrays_equal,
)
SUPPORTED_INTEGER_DTYPES = (
np.uint8,
np.uint16,
np.uint32,
np.uint64,
np.int8,
np.int16,
np.int32,
np.int64,
)
SUPPORTED_DATETIME64_RESOLUTION = ("Y", "M", "W", "D", "h", "m", "s", "ms", "us", "ns")
@pytest.mark.parametrize("sparse", (True, False))
class TestReadSubarray1D(DiskTestCase):
data1 = np.random.rand(101)
data2 = np.random.randint(-1000, 1000, (101,), dtype=np.int16)
label_data = np.linspace(-1.0, 1.0, 101)
@pytest.fixture
def array_uri(self, sparse):
"""Create TileDB array, write data, and return the URI."""
suffix = "1d_label_sparse" if sparse else "1d_label_dense"
uri = self.path(f"read_subarray_{suffix}")
dim1 = tiledb.Dim(name="d1", domain=(0, 100), tile=101, dtype=np.int32)
schema = tiledb.ArraySchema(
domain=tiledb.Domain(dim1),
attrs=[
tiledb.Attr(name="a1", dtype=np.float64),
tiledb.Attr(name="a2", dtype=np.int16),
],
dim_labels={
0: {
"l1": dim1.create_label_schema("increasing", np.float64),
"l2": dim1.create_label_schema("decreasing", np.float64),
}
},
sparse=sparse,
)
tiledb.Array.create(uri, schema)
data_buffers = {
"a1": self.data1,
"a2": self.data2,
"l1": self.label_data,
"l2": np.flip(self.label_data),
}
with tiledb.open(uri, "w") as array:
if sparse:
array[np.arange(101, dtype=np.int32)] = data_buffers
else:
array[...] = data_buffers
return uri
def test_read_full_array(self, array_uri):
with tiledb.open(array_uri, "r") as array:
sparse = array.schema.sparse
subarray = tiledb.Subarray(array)
subarray.add_dim_range(0, (0, 100))
result = array.read_subarray(subarray)
expected = OrderedDict()
if sparse:
expected["d1"] = np.arange(101, dtype=np.int32)
expected["a1"] = self.data1
expected["a2"] = self.data2
assert_dict_arrays_equal(result, expected, not sparse)
def test_read_partial(self, array_uri):
with tiledb.open(array_uri, "r") as array:
sparse = array.schema.sparse
subarray = tiledb.Subarray(array)
subarray.add_dim_range(0, (10, 20))
result = array.read_subarray(subarray)
expected = OrderedDict()
if sparse:
expected["d1"] = np.arange(10, 21, dtype=np.int32)
expected["a1"] = self.data1[10:21]
expected["a2"] = self.data2[10:21]
assert_dict_arrays_equal(result, expected, not sparse)
def test_read_multiple_ranges(self, array_uri):
with tiledb.open(array_uri, "r") as array:
sparse = array.schema.sparse
subarray = tiledb.Subarray(array)
subarray.add_dim_range(0, (3, 3))
subarray.add_dim_range(0, (1, 2))
subarray.add_dim_range(0, (5, 10))
result = array.read_subarray(subarray)
expected = OrderedDict()
d1_expected = np.array([3, 1, 2, 5, 6, 7, 8, 9, 10], dtype=np.int32)
if sparse:
expected["d1"] = d1_expected
expected["a1"] = self.data1[d1_expected]
expected["a2"] = self.data2[d1_expected]
assert_dict_arrays_equal(result, expected, not sparse)
def test_read_single_attr(self, array_uri):
with tiledb.open(array_uri, attr="a1", mode="r") as array:
sparse = array.schema.sparse
subarray = tiledb.Subarray(array)
subarray.add_dim_range(0, (10, 20))
result = array.read_subarray(subarray)
expected = OrderedDict()
if sparse:
expected["d1"] = np.arange(10, 21, dtype=np.int32)
expected["a1"] = self.data1[10:21]
assert_dict_arrays_equal(result, expected, not sparse)
def test_read_full_array_by_increasing_label(self, array_uri):
with tiledb.open(array_uri, "r") as array:
sparse = array.schema.sparse
subarray = tiledb.Subarray(array)
subarray.add_label_range("l1", (-1.0, 1.0))
result = array.read_subarray(subarray)
expected = OrderedDict()
if sparse:
expected["d1"] = np.arange(101, dtype=np.int32)
expected["a1"] = self.data1
expected["a2"] = self.data2
assert_dict_arrays_equal(result, expected, not sparse)
def test_read_partial_by_increasing_label(self, array_uri):
with tiledb.open(array_uri, "r") as array:
sparse = array.schema.sparse
subarray = tiledb.Subarray(array)
subarray.add_label_range("l1", (0.0, 1.0))
result = array.read_subarray(subarray)
expected = OrderedDict()
if sparse:
expected["d1"] = np.arange(50, 101, dtype=np.int32)
expected["a1"] = self.data1[50:]
expected["a2"] = self.data2[50:]
assert_dict_arrays_equal(result, expected, not sparse)
def test_read_partial_by_decreasing_label(self, array_uri):
with tiledb.open(array_uri, "r") as array:
sparse = array.schema.sparse
subarray = tiledb.Subarray(array)
subarray.add_label_range("l2", (0.0, 1.0))
result = array.read_subarray(subarray)
expected = OrderedDict()
if sparse:
expected["d1"] = np.arange(51, dtype=np.int32)
expected["a1"] = self.data1[:51]
expected["a2"] = self.data2[:51]
assert_dict_arrays_equal(result, expected, not sparse)
def test_read_by_label_no_data(self, array_uri):
with tiledb.open(array_uri, "r") as array:
subarray = tiledb.Subarray(array)
subarray.add_label_range("l1", (0.01, 0.012))
with pytest.raises(tiledb.TileDBError):
array.read_subarray(subarray)
@pytest.mark.parametrize("dim_res", SUPPORTED_DATETIME64_RESOLUTION)
@pytest.mark.parametrize("sparse", (True, False))
class TestReadSubarrayDenseDatetime1D(DiskTestCase):
data = np.random.rand(100)
@pytest.fixture
def array_uri(self, dim_res, sparse):
"""Create TileDB array, write data, and return the URI."""
suffix = f"datetime_{dim_res}_sparse" if sparse else f"datetime_{dim_res}_dense"
uri = self.path(f"read_subarray_1d_datetime_{suffix}")
start_time = np.datetime64("2000-01-01", dim_res)
domain = (start_time, start_time + np.timedelta64(99, dim_res))
schema = tiledb.ArraySchema(
tiledb.Domain(
tiledb.Dim(
name="d1",
domain=domain,
tile=100,
dtype=np.dtype(f"M8[{dim_res}]"),
)
),
[tiledb.Attr(name="a1", dtype=np.float64)],
sparse=sparse,
)
tiledb.Array.create(uri, schema)
with tiledb.open(uri, "w") as array:
if sparse:
array[
np.arange(
domain[0],
domain[1] + np.timedelta64(1, dim_res),
np.timedelta64(1, dim_res),
)
] = self.data
else:
array[...] = self.data
return uri
def test_read_full_array(self, array_uri, dim_res):
with tiledb.open(array_uri, "r") as array:
sparse = array.schema.sparse
subarray = tiledb.Subarray(array)
start_time = np.datetime64("2000-01-01", dim_res)
domain = (start_time, start_time + np.timedelta64(99, dim_res))
subarray.add_dim_range(0, domain)
result = array.read_subarray(subarray)
expected = OrderedDict()
if sparse:
expected["d1"] = np.arange(
start_time,
start_time + np.timedelta64(100, dim_res),
np.timedelta64(1, dim_res),
)
expected["a1"] = self.data
assert_dict_arrays_equal(result, expected, not sparse)
def test_read_partial(self, array_uri, dim_res):
with tiledb.open(array_uri, "r") as array:
sparse = array.schema.sparse
subarray = tiledb.Subarray(array)
start_time = np.datetime64("2000-01-01", dim_res)
dim_range = (
start_time + np.timedelta64(10, dim_res),
start_time + np.timedelta64(20, dim_res),
)
subarray.add_dim_range(0, dim_range)
result = array.read_subarray(subarray)
assert_array_equal(result["a1"], self.data[10:21])
expected = OrderedDict()
if sparse:
expected["d1"] = np.arange(
start_time + np.timedelta64(10, dim_res),
start_time + np.timedelta64(21, dim_res),
np.timedelta64(1, dim_res),
)
expected["a1"] = self.data[10:21]
assert_dict_arrays_equal(result, expected, not sparse)
@pytest.mark.parametrize("sparse", (True, False))
class TestReadSubarray2D(DiskTestCase):
data_a1 = np.random.rand(16).reshape(4, 4)
data_a2 = np.random.randint(-1000, 1000, (4, 4), dtype=np.int16)
data_l1 = np.arange(-2, 2)
data_l2 = np.arange(1, -3, -1)
@pytest.fixture
def array_uri(self, sparse):
"""Create TileDB array, write data, and return the URI."""
suffix = "2d_sparse" if sparse else "2d_dense"
uri = self.path(f"read_subarray_{suffix}")
dim1 = tiledb.Dim(name="d1", domain=(0, 3), tile=4, dtype=np.int32)
dim2 = tiledb.Dim(name="d2", domain=(0, 3), tile=4, dtype=np.int32)
schema = tiledb.ArraySchema(
domain=tiledb.Domain(dim1, dim2),
attrs=[
tiledb.Attr(name="a1", dtype=np.float64),
tiledb.Attr(name="a2", dtype=np.int16),
],
dim_labels={
0: {"l1": dim1.create_label_schema("increasing", np.int32)},
1: {"l2": dim1.create_label_schema("decreasing", np.int32)},
},
sparse=sparse,
)
tiledb.Array.create(uri, schema)
if sparse:
_schema = tiledb.ArraySchema.load(uri)
with tiledb.open(_schema.dim_label("l1").uri, mode="w") as label1:
label1[:] = self.data_l1
with tiledb.open(_schema.dim_label("l2").uri, mode="w") as label2:
label2[:] = self.data_l2
data_d1, data_d2 = np.meshgrid(np.arange(4), np.arange(4), indexing="ij")
with tiledb.open(uri, "w") as array:
array[data_d1.flatten(), data_d2.flatten()] = {
"a1": self.data_a1,
"a2": self.data_a2,
}
else:
with tiledb.open(uri, "w") as array:
array[...] = {
"a1": self.data_a1,
"a2": self.data_a2,
"l1": self.data_l1,
"l2": self.data_l2,
}
return uri
def test_read_full_array(self, array_uri):
with tiledb.open(array_uri) as array:
sparse = array.schema.sparse
subarray = tiledb.Subarray(array)
subarray.add_dim_range(0, (0, 3))
subarray.add_dim_range(1, (0, 3))
result = array.read_subarray(subarray)
if sparse:
# Construct the expected result
data_d1, data_d2 = np.meshgrid(
np.arange(4, dtype=np.int32),
np.arange(4, dtype=np.int32),
indexing="ij",
)
expected = {
"d1": data_d1.flatten(),
"d2": data_d2.flatten(),
"a1": self.data_a1.flatten(),
"a2": self.data_a2.flatten(),
}
else:
expected = {"a1": self.data_a1, "a2": self.data_a2}
assert_dict_arrays_equal(result, expected, not sparse)
def test_read_mixed_ranges(self, array_uri):
with tiledb.open(array_uri) as array:
sparse = array.schema.sparse
subarray = tiledb.Subarray(array)
subarray.add_dim_range(0, (0, 1))
result = array.read_subarray(subarray)
if sparse:
data_d1, data_d2 = np.meshgrid(
np.arange(2, dtype=np.int32),
np.arange(4, dtype=np.int32),
indexing="ij",
)
expected = {
"d1": data_d1.flatten(),
"d2": data_d2.flatten(),
"a1": self.data_a1[0:2, :].flatten(),
"a2": self.data_a2[0:2, :].flatten(),
}
else:
expected = {"a1": self.data_a1[0:2, :], "a2": self.data_a2[0:2, :]}
assert_dict_arrays_equal(result, expected, not sparse)
@pytest.mark.parametrize("sparse", (True, False))
class TestReadSubarrayNegativeDomain2D(DiskTestCase):
data_a1 = np.random.rand(121).reshape(11, 11)
data_a2 = np.random.randint(-1000, 1000, (11, 11), dtype=np.int16)
@pytest.fixture
def array_uri(self, sparse):
"""Create TileDB array, write data, and return the URI."""
suffix = "_sparse" if sparse else "_dense"
uri = self.path(f"read_subarray_{suffix}")
dim1 = tiledb.Dim(name="d1", domain=(-5, 5), tile=4, dtype=np.int32)
dim2 = tiledb.Dim(name="d2", domain=(-5, 5), tile=4, dtype=np.int32)
schema = tiledb.ArraySchema(
domain=tiledb.Domain(dim1, dim2),
attrs=[
tiledb.Attr(name="a1", dtype=np.float64),
tiledb.Attr(name="a2", dtype=np.int16),
],
sparse=sparse,
)
tiledb.Array.create(uri, schema)
if sparse:
data_d1, data_d2 = np.meshgrid(
np.arange(-5, 6), np.arange(-5, 6), indexing="ij"
)
with tiledb.open(uri, "w") as array:
array[data_d1.flatten(), data_d2.flatten()] = {
"a1": self.data_a1,
"a2": self.data_a2,
}
else:
with tiledb.open(uri, "w") as array:
array[...] = {"a1": self.data_a1, "a2": self.data_a2}
return uri
def test_read_full_array(self, array_uri):
with tiledb.open(array_uri) as array:
sparse = array.schema.sparse
subarray = tiledb.Subarray(array)
subarray.add_dim_range(0, (-5, 5))
subarray.add_dim_range(1, (-5, 5))
result = array.read_subarray(subarray)
if sparse:
# Construct the expected result
data_d1, data_d2 = np.meshgrid(
np.arange(-5, 6, dtype=np.int32),
np.arange(-5, 6, dtype=np.int32),
indexing="ij",
)
expected = {
"d1": data_d1.flatten(),
"d2": data_d2.flatten(),
"a1": self.data_a1.flatten(),
"a2": self.data_a2.flatten(),
}
else:
expected = {"a1": self.data_a1, "a2": self.data_a2}
assert_dict_arrays_equal(result, expected, not sparse)
def test_read_mixed_ranges(self, array_uri):
with tiledb.open(array_uri) as array:
sparse = array.schema.sparse
subarray = tiledb.Subarray(array)
subarray.add_dim_range(1, (-1, 2))
result = array.read_subarray(subarray)
if sparse:
data_d1, data_d2 = np.meshgrid(
np.arange(-5, 6, dtype=np.int32),
np.arange(-1, 3, dtype=np.int32),
indexing="ij",
)
expected = {
"d1": data_d1.flatten(),
"d2": data_d2.flatten(),
"a1": self.data_a1[:, 4:8].flatten(),
"a2": self.data_a2[:, 4:8].flatten(),
}
else:
expected = {"a1": self.data_a1[:, 4:8], "a2": self.data_a2[:, 4:8]}
assert_dict_arrays_equal(result, expected, not sparse)
class TestReadSubarraySparseArray1D(DiskTestCase):
data_dim1 = np.linspace(-1.0, 1.0, 5)
data_attr1 = np.arange(5, dtype=np.uint32)
@pytest.fixture
def array_uri(self):
uri = self.path("test_read_subarray_array_1d")
schema = tiledb.ArraySchema(
domain=tiledb.Domain(
tiledb.Dim(name="d1", domain=(-1.0, 1.0), tile=2.0, dtype=np.float64)
),
attrs=[tiledb.Attr(name="a1", dtype=np.uint32)],
sparse=True,
)
tiledb.Array.create(uri, schema)
with tiledb.open(uri, "w") as array:
array[self.data_dim1] = self.data_attr1
return uri
def test_read_full_array(self, array_uri):
with tiledb.open(array_uri, "r") as array:
subarray = tiledb.Subarray(array)
subarray.add_dim_range(0, (-1.0, 1.0))
result = array.read_subarray(subarray)
expected = OrderedDict([("d1", self.data_dim1), ("a1", self.data_attr1)])
assert_dict_arrays_equal(result, expected, False)
def test_empty_result(self, array_uri):
with tiledb.open(array_uri, "r") as array:
subarray = tiledb.Subarray(array)
subarray.add_dim_range(0, (-0.9, -0.89))
result = array.read_subarray(subarray)
expected = OrderedDict(
[
("d1", np.array([], dtype=np.float64)),
("a1", np.array([], dtype=np.uint32)),
]
)
assert_dict_arrays_equal(result, expected, True)