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import tempfile
from unittest import TestCase
import numpy as np
import pandas as pd
import pytest
from datasets import load_from_disk
from datasets.arrow_dataset import Dataset
from datasets.dataset_dict import DatasetDict, IterableDatasetDict
from datasets.features import ClassLabel, Features, Sequence, Value
from datasets.iterable_dataset import IterableDataset
from datasets.splits import NamedSplit
from .utils import assert_arrow_memory_doesnt_increase, assert_arrow_memory_increases, require_tf, require_torch
class DatasetDictTest(TestCase):
def _create_dummy_dataset(self, multiple_columns=False):
if multiple_columns:
data = {"col_1": [3, 2, 1, 0], "col_2": ["a", "b", "c", "d"]}
dset = Dataset.from_dict(data)
else:
dset = Dataset.from_dict(
{"filename": ["my_name-train" + "_" + f"{x:03d}" for x in np.arange(30).tolist()]}
)
return dset
def _create_dummy_dataset_dict(self, multiple_columns=False) -> DatasetDict:
return DatasetDict(
{
"train": self._create_dummy_dataset(multiple_columns=multiple_columns),
"test": self._create_dummy_dataset(multiple_columns=multiple_columns),
}
)
def _create_dummy_iterable_dataset(self, multiple_columns=False) -> IterableDataset:
def gen():
if multiple_columns:
data = {"col_1": [3, 2, 1, 0], "col_2": ["a", "b", "c", "d"]}
for v1, v2 in zip(data["col_1"], data["col_2"]):
yield {"col_1": v1, "col_2": v2}
else:
for x in range(30):
yield {"filename": "my_name-train" + "_" + f"{x:03d}"}
return IterableDataset.from_generator(gen)
def _create_dummy_iterable_dataset_dict(self, multiple_columns=False) -> IterableDatasetDict:
return IterableDatasetDict(
{
"train": self._create_dummy_iterable_dataset(multiple_columns=multiple_columns),
"test": self._create_dummy_iterable_dataset(multiple_columns=multiple_columns),
}
)
def test_flatten(self):
dset_split = Dataset.from_dict(
{"a": [{"b": {"c": ["text"]}}] * 10, "foo": [1] * 10},
features=Features({"a": {"b": Sequence({"c": Value("string")})}, "foo": Value("int64")}),
)
dset = DatasetDict({"train": dset_split, "test": dset_split})
dset = dset.flatten()
self.assertDictEqual(dset.column_names, {"train": ["a.b.c", "foo"], "test": ["a.b.c", "foo"]})
self.assertListEqual(sorted(dset["train"].features.keys()), ["a.b.c", "foo"])
self.assertDictEqual(
dset["train"].features, Features({"a.b.c": Sequence(Value("string")), "foo": Value("int64")})
)
del dset
def test_set_format_numpy(self):
dset = self._create_dummy_dataset_dict(multiple_columns=True)
dset.set_format(type="numpy", columns=["col_1"])
for dset_split in dset.values():
self.assertEqual(len(dset_split[0]), 1)
self.assertIsInstance(dset_split[0]["col_1"], np.int64)
self.assertEqual(dset_split[0]["col_1"].item(), 3)
dset.reset_format()
with dset.formatted_as(type="numpy", columns=["col_1"]):
for dset_split in dset.values():
self.assertEqual(len(dset_split[0]), 1)
self.assertIsInstance(dset_split[0]["col_1"], np.int64)
self.assertEqual(dset_split[0]["col_1"].item(), 3)
for dset_split in dset.values():
self.assertEqual(dset_split.format["type"], None)
self.assertEqual(dset_split.format["format_kwargs"], {})
self.assertEqual(dset_split.format["columns"], dset_split.column_names)
self.assertEqual(dset_split.format["output_all_columns"], False)
dset.set_format(type="numpy", columns=["col_1"], output_all_columns=True)
for dset_split in dset.values():
self.assertEqual(len(dset_split[0]), 2)
self.assertIsInstance(dset_split[0]["col_2"], str)
self.assertEqual(dset_split[0]["col_2"], "a")
dset.set_format(type="numpy", columns=["col_1", "col_2"])
for dset_split in dset.values():
self.assertEqual(len(dset_split[0]), 2)
self.assertIsInstance(dset_split[0]["col_2"], np.str_)
self.assertEqual(dset_split[0]["col_2"].item(), "a")
del dset
@require_torch
def test_set_format_torch(self):
import torch
dset = self._create_dummy_dataset_dict(multiple_columns=True)
dset.set_format(type="torch", columns=["col_1"])
for dset_split in dset.values():
self.assertEqual(len(dset_split[0]), 1)
self.assertIsInstance(dset_split[0]["col_1"], torch.Tensor)
self.assertListEqual(list(dset_split[0]["col_1"].shape), [])
self.assertEqual(dset_split[0]["col_1"].item(), 3)
dset.set_format(type="torch", columns=["col_1"], output_all_columns=True)
for dset_split in dset.values():
self.assertEqual(len(dset_split[0]), 2)
self.assertIsInstance(dset_split[0]["col_2"], str)
self.assertEqual(dset_split[0]["col_2"], "a")
dset.set_format(type="torch")
for dset_split in dset.values():
self.assertEqual(len(dset_split[0]), 2)
self.assertIsInstance(dset_split[0]["col_1"], torch.Tensor)
self.assertListEqual(list(dset_split[0]["col_1"].shape), [])
self.assertEqual(dset_split[0]["col_1"].item(), 3)
self.assertIsInstance(dset_split[0]["col_2"], str)
self.assertEqual(dset_split[0]["col_2"], "a")
del dset
@require_tf
def test_set_format_tf(self):
import tensorflow as tf
dset = self._create_dummy_dataset_dict(multiple_columns=True)
dset.set_format(type="tensorflow", columns=["col_1"])
for dset_split in dset.values():
self.assertEqual(len(dset_split[0]), 1)
self.assertIsInstance(dset_split[0]["col_1"], tf.Tensor)
self.assertListEqual(list(dset_split[0]["col_1"].shape), [])
self.assertEqual(dset_split[0]["col_1"].numpy().item(), 3)
dset.set_format(type="tensorflow", columns=["col_1"], output_all_columns=True)
for dset_split in dset.values():
self.assertEqual(len(dset_split[0]), 2)
self.assertIsInstance(dset_split[0]["col_2"], str)
self.assertEqual(dset_split[0]["col_2"], "a")
dset.set_format(type="tensorflow", columns=["col_1", "col_2"])
for dset_split in dset.values():
self.assertEqual(len(dset_split[0]), 2)
self.assertEqual(dset_split[0]["col_2"].numpy().decode("utf-8"), "a")
del dset
def test_set_format_pandas(self):
dset = self._create_dummy_dataset_dict(multiple_columns=True)
dset.set_format(type="pandas", columns=["col_1"])
for dset_split in dset.values():
self.assertEqual(len(dset_split[0].columns), 1)
self.assertIsInstance(dset_split[0], pd.DataFrame)
self.assertListEqual(list(dset_split[0].shape), [1, 1])
self.assertEqual(dset_split[0]["col_1"].item(), 3)
dset.set_format(type="pandas", columns=["col_1", "col_2"])
for dset_split in dset.values():
self.assertEqual(len(dset_split[0].columns), 2)
self.assertEqual(dset_split[0]["col_2"].item(), "a")
del dset
def test_set_transform(self):
def transform(batch):
return {k: [str(i).upper() for i in v] for k, v in batch.items()}
dset = self._create_dummy_dataset_dict(multiple_columns=True)
dset.set_transform(transform=transform, columns=["col_1"])
for dset_split in dset.values():
self.assertEqual(dset_split.format["type"], "custom")
self.assertEqual(len(dset_split[0].keys()), 1)
self.assertEqual(dset_split[0]["col_1"], "3")
self.assertEqual(dset_split[:2]["col_1"], ["3", "2"])
self.assertEqual(dset_split["col_1"][:2], ["3", "2"])
prev_format = dset[list(dset.keys())[0]].format
for dset_split in dset.values():
dset_split.set_format(**dset_split.format)
self.assertEqual(prev_format, dset_split.format)
dset.set_transform(transform=transform, columns=["col_1", "col_2"])
for dset_split in dset.values():
self.assertEqual(len(dset_split[0].keys()), 2)
self.assertEqual(dset_split[0]["col_2"], "A")
del dset
def test_with_format(self):
dset = self._create_dummy_dataset_dict(multiple_columns=True)
dset2 = dset.with_format("numpy", columns=["col_1"])
dset.set_format("numpy", columns=["col_1"])
for dset_split, dset_split2 in zip(dset.values(), dset2.values()):
self.assertDictEqual(dset_split.format, dset_split2.format)
del dset, dset2
def test_with_transform(self):
def transform(batch):
return {k: [str(i).upper() for i in v] for k, v in batch.items()}
dset = self._create_dummy_dataset_dict(multiple_columns=True)
dset2 = dset.with_transform(transform, columns=["col_1"])
dset.set_transform(transform, columns=["col_1"])
for dset_split, dset_split2 in zip(dset.values(), dset2.values()):
self.assertDictEqual(dset_split.format, dset_split2.format)
del dset, dset2
def test_cast(self):
dset = self._create_dummy_dataset_dict(multiple_columns=True)
features = dset["train"].features
features["col_1"] = Value("float64")
dset = dset.cast(features)
for dset_split in dset.values():
self.assertEqual(dset_split.num_columns, 2)
self.assertEqual(dset_split.features["col_1"], Value("float64"))
self.assertIsInstance(dset_split[0]["col_1"], float)
del dset
def test_remove_columns(self):
dset = self._create_dummy_dataset_dict(multiple_columns=True)
dset = dset.remove_columns(column_names="col_1")
for dset_split in dset.values():
self.assertEqual(dset_split.num_columns, 1)
self.assertListEqual(list(dset_split.column_names), ["col_2"])
dset = self._create_dummy_dataset_dict(multiple_columns=True)
dset = dset.remove_columns(column_names=["col_1", "col_2"])
for dset_split in dset.values():
self.assertEqual(dset_split.num_columns, 0)
dset = self._create_dummy_dataset_dict(multiple_columns=True)
for dset_split in dset.values():
dset_split._format_columns = ["col_1", "col_2"]
dset = dset.remove_columns(column_names=["col_1"])
for dset_split in dset.values():
self.assertListEqual(dset_split._format_columns, ["col_2"])
self.assertEqual(dset_split.num_columns, 1)
self.assertListEqual(list(dset_split.column_names), ["col_2"])
del dset
def test_rename_column(self):
dset = self._create_dummy_dataset_dict(multiple_columns=True)
dset = dset.rename_column(original_column_name="col_1", new_column_name="new_name")
for dset_split in dset.values():
self.assertEqual(dset_split.num_columns, 2)
self.assertListEqual(list(dset_split.column_names), ["new_name", "col_2"])
del dset
def test_select_columns(self):
dset = self._create_dummy_dataset_dict(multiple_columns=True)
dset = dset.select_columns(column_names=[])
for dset_split in dset.values():
self.assertEqual(dset_split.num_columns, 0)
dset = self._create_dummy_dataset_dict(multiple_columns=True)
dset = dset.select_columns(column_names="col_1")
for dset_split in dset.values():
self.assertEqual(dset_split.num_columns, 1)
self.assertListEqual(list(dset_split.column_names), ["col_1"])
dset = self._create_dummy_dataset_dict(multiple_columns=True)
dset = dset.select_columns(column_names=["col_1", "col_2"])
for dset_split in dset.values():
self.assertEqual(dset_split.num_columns, 2)
dset = self._create_dummy_dataset_dict(multiple_columns=True)
for dset_split in dset.values():
dset_split._format_columns = ["col_1", "col_2"]
dset = dset.select_columns(column_names=["col_1"])
for dset_split in dset.values():
self.assertEqual(dset_split.num_columns, 1)
self.assertListEqual(list(dset_split.column_names), ["col_1"])
self.assertListEqual(dset_split._format_columns, ["col_1"])
def test_map(self):
with tempfile.TemporaryDirectory() as tmp_dir:
dsets = self._create_dummy_dataset_dict()
mapped_dsets_1: DatasetDict = dsets.map(lambda ex: {"foo": ["bar"] * len(ex["filename"])}, batched=True)
self.assertListEqual(list(dsets.keys()), list(mapped_dsets_1.keys()))
self.assertListEqual(mapped_dsets_1["train"].column_names, ["filename", "foo"])
cache_file_names = {
"train": os.path.join(tmp_dir, "train.arrow"),
"test": os.path.join(tmp_dir, "test.arrow"),
}
mapped_dsets_2: DatasetDict = mapped_dsets_1.map(
lambda ex: {"bar": ["foo"] * len(ex["filename"])}, batched=True, cache_file_names=cache_file_names
)
self.assertListEqual(list(dsets.keys()), list(mapped_dsets_2.keys()))
self.assertListEqual(sorted(mapped_dsets_2["train"].column_names), sorted(["filename", "foo", "bar"]))
del dsets, mapped_dsets_1, mapped_dsets_2
def test_iterable_map(self):
dsets = self._create_dummy_iterable_dataset_dict()
fn_kwargs = {"n": 3}
mapped_dsets: IterableDatasetDict = dsets.map(
lambda x, n: {"foo": [n] * len(x["filename"])},
batched=True,
fn_kwargs=fn_kwargs,
)
mapped_example = next(iter(mapped_dsets["train"]))
self.assertListEqual(sorted(mapped_example.keys()), sorted(["filename", "foo"]))
self.assertLessEqual(mapped_example["foo"], 3)
del dsets, mapped_dsets
def test_filter(self):
with tempfile.TemporaryDirectory() as tmp_dir:
dsets = self._create_dummy_dataset_dict()
filtered_dsets_1: DatasetDict = dsets.filter(lambda ex: int(ex["filename"].split("_")[-1]) < 10)
self.assertListEqual(list(dsets.keys()), list(filtered_dsets_1.keys()))
self.assertEqual(len(filtered_dsets_1["train"]), 10)
cache_file_names = {
"train": os.path.join(tmp_dir, "train.arrow"),
"test": os.path.join(tmp_dir, "test.arrow"),
}
filtered_dsets_2: DatasetDict = filtered_dsets_1.filter(
lambda ex: int(ex["filename"].split("_")[-1]) < 5, cache_file_names=cache_file_names
)
self.assertListEqual(list(dsets.keys()), list(filtered_dsets_2.keys()))
self.assertEqual(len(filtered_dsets_2["train"]), 5)
filtered_dsets_3: DatasetDict = dsets.filter(
lambda examples: [int(ex.split("_")[-1]) < 10 for ex in examples["filename"]], batched=True
)
self.assertListEqual(list(dsets.keys()), list(filtered_dsets_3.keys()))
self.assertEqual(len(filtered_dsets_3["train"]), 10)
del dsets, filtered_dsets_1, filtered_dsets_2, filtered_dsets_3
def test_iterable_filter(self):
dsets = self._create_dummy_iterable_dataset_dict()
example = next(iter(dsets["train"]))
fn_kwargs = {"n": 3}
filtered_dsets: IterableDatasetDict = dsets.filter(
lambda ex, n: n < int(ex["filename"].split("_")[-1]), fn_kwargs=fn_kwargs
)
filtered_example = next(iter(filtered_dsets["train"]))
self.assertListEqual(list(example.keys()), list(filtered_example.keys()))
self.assertEqual(int(filtered_example["filename"].split("_")[-1]), 4) # id starts from 3
del dsets, filtered_dsets
def test_sort(self):
with tempfile.TemporaryDirectory() as tmp_dir:
dsets = self._create_dummy_dataset_dict()
sorted_dsets_1: DatasetDict = dsets.sort("filename")
self.assertListEqual(list(dsets.keys()), list(sorted_dsets_1.keys()))
self.assertListEqual(
[f.split("_")[-1] for f in sorted_dsets_1["train"]["filename"]],
sorted(f"{x:03d}" for x in range(30)),
)
indices_cache_file_names = {
"train": os.path.join(tmp_dir, "train.arrow"),
"test": os.path.join(tmp_dir, "test.arrow"),
}
sorted_dsets_2: DatasetDict = sorted_dsets_1.sort(
"filename", indices_cache_file_names=indices_cache_file_names, reverse=True
)
self.assertListEqual(list(dsets.keys()), list(sorted_dsets_2.keys()))
self.assertListEqual(
[f.split("_")[-1] for f in sorted_dsets_2["train"]["filename"]],
sorted((f"{x:03d}" for x in range(30)), reverse=True),
)
del dsets, sorted_dsets_1, sorted_dsets_2
def test_shuffle(self):
with tempfile.TemporaryDirectory() as tmp_dir:
dsets = self._create_dummy_dataset_dict()
indices_cache_file_names = {
"train": os.path.join(tmp_dir, "train.arrow"),
"test": os.path.join(tmp_dir, "test.arrow"),
}
seeds = {
"train": 1234,
"test": 1234,
}
dsets_shuffled = dsets.shuffle(
seeds=seeds, indices_cache_file_names=indices_cache_file_names, load_from_cache_file=False
)
self.assertListEqual(dsets_shuffled["train"]["filename"], dsets_shuffled["test"]["filename"])
self.assertEqual(len(dsets_shuffled["train"]), 30)
self.assertEqual(dsets_shuffled["train"][0]["filename"], "my_name-train_028")
self.assertEqual(dsets_shuffled["train"][2]["filename"], "my_name-train_010")
self.assertDictEqual(dsets["train"].features, Features({"filename": Value("string")}))
self.assertDictEqual(dsets_shuffled["train"].features, Features({"filename": Value("string")}))
# Reproducibility
indices_cache_file_names_2 = {
"train": os.path.join(tmp_dir, "train_2.arrow"),
"test": os.path.join(tmp_dir, "test_2.arrow"),
}
dsets_shuffled_2 = dsets.shuffle(
seeds=seeds, indices_cache_file_names=indices_cache_file_names_2, load_from_cache_file=False
)
self.assertListEqual(dsets_shuffled["train"]["filename"], dsets_shuffled_2["train"]["filename"])
seeds = {
"train": 1234,
"test": 1,
}
indices_cache_file_names_3 = {
"train": os.path.join(tmp_dir, "train_3.arrow"),
"test": os.path.join(tmp_dir, "test_3.arrow"),
}
dsets_shuffled_3 = dsets.shuffle(
seeds=seeds, indices_cache_file_names=indices_cache_file_names_3, load_from_cache_file=False
)
self.assertNotEqual(dsets_shuffled_3["train"]["filename"], dsets_shuffled_3["test"]["filename"])
# other input types
dsets_shuffled_int = dsets.shuffle(42)
dsets_shuffled_alias = dsets.shuffle(seed=42)
dsets_shuffled_none = dsets.shuffle()
self.assertEqual(len(dsets_shuffled_int["train"]), 30)
self.assertEqual(len(dsets_shuffled_alias["train"]), 30)
self.assertEqual(len(dsets_shuffled_none["train"]), 30)
del dsets, dsets_shuffled, dsets_shuffled_2, dsets_shuffled_3
del dsets_shuffled_int, dsets_shuffled_alias, dsets_shuffled_none
def test_flatten_indices(self):
with tempfile.TemporaryDirectory() as tmp_dir:
dsets = self._create_dummy_dataset_dict()
indices_cache_file_names = {
"train": os.path.join(tmp_dir, "train.arrow"),
"test": os.path.join(tmp_dir, "test.arrow"),
}
dsets_shuffled = dsets.shuffle(
seed=42, indices_cache_file_names=indices_cache_file_names, load_from_cache_file=False
)
self.assertIsNotNone(dsets_shuffled["train"]._indices)
self.assertIsNotNone(dsets_shuffled["test"]._indices)
dsets_flat = dsets_shuffled.flatten_indices()
self.assertIsNone(dsets_flat["train"]._indices)
self.assertIsNone(dsets_flat["test"]._indices)
del dsets, dsets_shuffled, dsets_flat
def test_check_values_type(self):
dsets = self._create_dummy_dataset_dict()
dsets["bad_split"] = None
self.assertRaises(TypeError, dsets.map, lambda x: x)
self.assertRaises(TypeError, dsets.filter, lambda x: True)
self.assertRaises(TypeError, dsets.shuffle)
self.assertRaises(TypeError, dsets.sort, "filename")
del dsets
def test_serialization(self):
with tempfile.TemporaryDirectory() as tmp_dir:
dsets = self._create_dummy_dataset_dict()
dsets.save_to_disk(tmp_dir)
reloaded_dsets = DatasetDict.load_from_disk(tmp_dir)
self.assertListEqual(sorted(reloaded_dsets), ["test", "train"])
self.assertEqual(len(reloaded_dsets["train"]), 30)
self.assertListEqual(reloaded_dsets["train"].column_names, ["filename"])
self.assertEqual(len(reloaded_dsets["test"]), 30)
self.assertListEqual(reloaded_dsets["test"].column_names, ["filename"])
del reloaded_dsets
del dsets["test"]
dsets.save_to_disk(tmp_dir)
reloaded_dsets = DatasetDict.load_from_disk(tmp_dir)
self.assertListEqual(sorted(reloaded_dsets), ["train"])
self.assertEqual(len(reloaded_dsets["train"]), 30)
self.assertListEqual(reloaded_dsets["train"].column_names, ["filename"])
del dsets, reloaded_dsets
dsets = self._create_dummy_dataset_dict()
dsets.save_to_disk(tmp_dir, num_shards={"train": 3, "test": 2})
reloaded_dsets = DatasetDict.load_from_disk(tmp_dir)
self.assertListEqual(sorted(reloaded_dsets), ["test", "train"])
self.assertEqual(len(reloaded_dsets["train"]), 30)
self.assertListEqual(reloaded_dsets["train"].column_names, ["filename"])
self.assertEqual(len(reloaded_dsets["train"].cache_files), 3)
self.assertEqual(len(reloaded_dsets["test"]), 30)
self.assertListEqual(reloaded_dsets["test"].column_names, ["filename"])
self.assertEqual(len(reloaded_dsets["test"].cache_files), 2)
del reloaded_dsets
dsets = self._create_dummy_dataset_dict()
dsets.save_to_disk(tmp_dir, num_proc=2)
reloaded_dsets = DatasetDict.load_from_disk(tmp_dir)
self.assertListEqual(sorted(reloaded_dsets), ["test", "train"])
self.assertEqual(len(reloaded_dsets["train"]), 30)
self.assertListEqual(reloaded_dsets["train"].column_names, ["filename"])
self.assertEqual(len(reloaded_dsets["train"].cache_files), 2)
self.assertEqual(len(reloaded_dsets["test"]), 30)
self.assertListEqual(reloaded_dsets["test"].column_names, ["filename"])
self.assertEqual(len(reloaded_dsets["test"].cache_files), 2)
del reloaded_dsets
def test_load_from_disk(self):
with tempfile.TemporaryDirectory() as tmp_dir:
dsets = self._create_dummy_dataset_dict()
dsets.save_to_disk(tmp_dir)
del dsets
dsets = load_from_disk(tmp_dir)
self.assertListEqual(sorted(dsets), ["test", "train"])
self.assertEqual(len(dsets["train"]), 30)
self.assertListEqual(dsets["train"].column_names, ["filename"])
self.assertEqual(len(dsets["test"]), 30)
self.assertListEqual(dsets["test"].column_names, ["filename"])
del dsets
def test_align_labels_with_mapping(self):
train_features = Features(
{
"input_text": Value("string"),
"input_labels": ClassLabel(num_classes=3, names=["entailment", "neutral", "contradiction"]),
}
)
test_features = Features(
{
"input_text": Value("string"),
"input_labels": ClassLabel(num_classes=3, names=["entailment", "contradiction", "neutral"]),
}
)
train_data = {"input_text": ["a", "a", "b", "b", "c", "c"], "input_labels": [0, 0, 1, 1, 2, 2]}
test_data = {"input_text": ["a", "a", "c", "c", "b", "b"], "input_labels": [0, 0, 1, 1, 2, 2]}
label2id = {"CONTRADICTION": 0, "ENTAILMENT": 2, "NEUTRAL": 1}
id2label = {v: k for k, v in label2id.items()}
train_expected_labels = [2, 2, 1, 1, 0, 0]
test_expected_labels = [2, 2, 0, 0, 1, 1]
train_expected_label_names = [id2label[idx] for idx in train_expected_labels]
test_expected_label_names = [id2label[idx] for idx in test_expected_labels]
dsets = DatasetDict(
{
"train": Dataset.from_dict(train_data, features=train_features),
"test": Dataset.from_dict(test_data, features=test_features),
}
)
dsets = dsets.align_labels_with_mapping(label2id, "input_labels")
self.assertListEqual(train_expected_labels, dsets["train"]["input_labels"])
self.assertListEqual(test_expected_labels, dsets["test"]["input_labels"])
train_aligned_label_names = [
dsets["train"].features["input_labels"].int2str(idx) for idx in dsets["train"]["input_labels"]
]
test_aligned_label_names = [
dsets["test"].features["input_labels"].int2str(idx) for idx in dsets["test"]["input_labels"]
]
self.assertListEqual(train_expected_label_names, train_aligned_label_names)
self.assertListEqual(test_expected_label_names, test_aligned_label_names)
def test_dummy_datasetdict_serialize_fs(mockfs):
dataset_dict = DatasetDict(
{
"train": Dataset.from_dict({"a": range(30)}),
"test": Dataset.from_dict({"a": range(10)}),
}
)
dataset_path = "mock://my_dataset"
dataset_dict.save_to_disk(dataset_path, storage_options=mockfs.storage_options)
assert mockfs.isdir(dataset_path)
assert mockfs.glob(dataset_path + "/*")
reloaded = dataset_dict.load_from_disk(dataset_path, storage_options=mockfs.storage_options)
assert list(reloaded) == list(dataset_dict)
for k in dataset_dict:
assert reloaded[k].features == dataset_dict[k].features
assert reloaded[k].to_dict() == dataset_dict[k].to_dict()
def _check_csv_datasetdict(dataset_dict, expected_features, splits=("train",)):
assert isinstance(dataset_dict, DatasetDict)
for split in splits:
dataset = dataset_dict[split]
assert dataset.num_rows == 4
assert dataset.num_columns == 3
assert dataset.column_names == ["col_1", "col_2", "col_3"]
for feature, expected_dtype in expected_features.items():
assert dataset.features[feature].dtype == expected_dtype
@pytest.mark.parametrize("keep_in_memory", [False, True])
def test_datasetdict_from_csv_keep_in_memory(keep_in_memory, csv_path, tmp_path):
cache_dir = tmp_path / "cache"
expected_features = {"col_1": "int64", "col_2": "int64", "col_3": "float64"}
with assert_arrow_memory_increases() if keep_in_memory else assert_arrow_memory_doesnt_increase():
dataset = DatasetDict.from_csv({"train": csv_path}, cache_dir=cache_dir, keep_in_memory=keep_in_memory)
_check_csv_datasetdict(dataset, expected_features)
@pytest.mark.parametrize(
"features",
[
None,
{"col_1": "string", "col_2": "int64", "col_3": "float64"},
{"col_1": "string", "col_2": "string", "col_3": "string"},
{"col_1": "int32", "col_2": "int32", "col_3": "int32"},
{"col_1": "float32", "col_2": "float32", "col_3": "float32"},
],
)
def test_datasetdict_from_csv_features(features, csv_path, tmp_path):
cache_dir = tmp_path / "cache"
# CSV file loses col_1 string dtype information: default now is "int64" instead of "string"
default_expected_features = {"col_1": "int64", "col_2": "int64", "col_3": "float64"}
expected_features = features.copy() if features else default_expected_features
features = (
Features({feature: Value(dtype) for feature, dtype in features.items()}) if features is not None else None
)
dataset = DatasetDict.from_csv({"train": csv_path}, features=features, cache_dir=cache_dir)
_check_csv_datasetdict(dataset, expected_features)
@pytest.mark.parametrize("split", [None, NamedSplit("train"), "train", "test"])
def test_datasetdict_from_csv_split(split, csv_path, tmp_path):
if split:
path = {split: csv_path}
else:
split = "train"
path = {"train": csv_path, "test": csv_path}
cache_dir = tmp_path / "cache"
expected_features = {"col_1": "int64", "col_2": "int64", "col_3": "float64"}
dataset = DatasetDict.from_csv(path, cache_dir=cache_dir)
_check_csv_datasetdict(dataset, expected_features, splits=list(path.keys()))
assert all(dataset[split].split == split for split in path.keys())
def _check_json_datasetdict(dataset_dict, expected_features, splits=("train",)):
assert isinstance(dataset_dict, DatasetDict)
for split in splits:
dataset = dataset_dict[split]
assert dataset.num_rows == 4
assert dataset.num_columns == 3
assert dataset.column_names == ["col_1", "col_2", "col_3"]
for feature, expected_dtype in expected_features.items():
assert dataset.features[feature].dtype == expected_dtype
@pytest.mark.parametrize("keep_in_memory", [False, True])
def test_datasetdict_from_json_keep_in_memory(keep_in_memory, jsonl_path, tmp_path):
cache_dir = tmp_path / "cache"
expected_features = {"col_1": "string", "col_2": "int64", "col_3": "float64"}
with assert_arrow_memory_increases() if keep_in_memory else assert_arrow_memory_doesnt_increase():
dataset = DatasetDict.from_json({"train": jsonl_path}, cache_dir=cache_dir, keep_in_memory=keep_in_memory)
_check_json_datasetdict(dataset, expected_features)
@pytest.mark.parametrize(
"features",
[
None,
{"col_1": "string", "col_2": "int64", "col_3": "float64"},
{"col_1": "string", "col_2": "string", "col_3": "string"},
{"col_1": "int32", "col_2": "int32", "col_3": "int32"},
{"col_1": "float32", "col_2": "float32", "col_3": "float32"},
],
)
def test_datasetdict_from_json_features(features, jsonl_path, tmp_path):
cache_dir = tmp_path / "cache"
default_expected_features = {"col_1": "string", "col_2": "int64", "col_3": "float64"}
expected_features = features.copy() if features else default_expected_features
features = (
Features({feature: Value(dtype) for feature, dtype in features.items()}) if features is not None else None
)
dataset = DatasetDict.from_json({"train": jsonl_path}, features=features, cache_dir=cache_dir)
_check_json_datasetdict(dataset, expected_features)
@pytest.mark.parametrize("split", [None, NamedSplit("train"), "train", "test"])
def test_datasetdict_from_json_splits(split, jsonl_path, tmp_path):
if split:
path = {split: jsonl_path}
else:
split = "train"
path = {"train": jsonl_path, "test": jsonl_path}
cache_dir = tmp_path / "cache"
expected_features = {"col_1": "string", "col_2": "int64", "col_3": "float64"}
dataset = DatasetDict.from_json(path, cache_dir=cache_dir)
_check_json_datasetdict(dataset, expected_features, splits=list(path.keys()))
assert all(dataset[split].split == split for split in path.keys())
def _check_parquet_datasetdict(dataset_dict, expected_features, splits=("train",)):
assert isinstance(dataset_dict, DatasetDict)
for split in splits:
dataset = dataset_dict[split]
assert dataset.num_rows == 4
assert dataset.num_columns == 3
assert dataset.column_names == ["col_1", "col_2", "col_3"]
for feature, expected_dtype in expected_features.items():
assert dataset.features[feature].dtype == expected_dtype
@pytest.mark.parametrize("keep_in_memory", [False, True])
def test_datasetdict_from_parquet_keep_in_memory(keep_in_memory, parquet_path, tmp_path):
cache_dir = tmp_path / "cache"
expected_features = {"col_1": "string", "col_2": "int64", "col_3": "float64"}
with assert_arrow_memory_increases() if keep_in_memory else assert_arrow_memory_doesnt_increase():
dataset = DatasetDict.from_parquet({"train": parquet_path}, cache_dir=cache_dir, keep_in_memory=keep_in_memory)
_check_parquet_datasetdict(dataset, expected_features)
@pytest.mark.parametrize(
"features",
[
None,
{"col_1": "string", "col_2": "int64", "col_3": "float64"},
{"col_1": "string", "col_2": "string", "col_3": "string"},
{"col_1": "int32", "col_2": "int32", "col_3": "int32"},
{"col_1": "float32", "col_2": "float32", "col_3": "float32"},
],
)
def test_datasetdict_from_parquet_features(features, parquet_path, tmp_path):
cache_dir = tmp_path / "cache"
default_expected_features = {"col_1": "string", "col_2": "int64", "col_3": "float64"}
expected_features = features.copy() if features else default_expected_features
features = (
Features({feature: Value(dtype) for feature, dtype in features.items()}) if features is not None else None
)
dataset = DatasetDict.from_parquet({"train": parquet_path}, features=features, cache_dir=cache_dir)
_check_parquet_datasetdict(dataset, expected_features)
@pytest.mark.parametrize("split", [None, NamedSplit("train"), "train", "test"])
def test_datasetdict_from_parquet_split(split, parquet_path, tmp_path):
if split:
path = {split: parquet_path}
else:
split = "train"
path = {"train": parquet_path, "test": parquet_path}
cache_dir = tmp_path / "cache"
expected_features = {"col_1": "string", "col_2": "int64", "col_3": "float64"}
dataset = DatasetDict.from_parquet(path, cache_dir=cache_dir)
_check_parquet_datasetdict(dataset, expected_features, splits=list(path.keys()))
assert all(dataset[split].split == split for split in path.keys())
def _check_text_datasetdict(dataset_dict, expected_features, splits=("train",)):
assert isinstance(dataset_dict, DatasetDict)
for split in splits:
dataset = dataset_dict[split]
assert dataset.num_rows == 4
assert dataset.num_columns == 1
assert dataset.column_names == ["text"]
for feature, expected_dtype in expected_features.items():
assert dataset.features[feature].dtype == expected_dtype
@pytest.mark.parametrize("keep_in_memory", [False, True])
def test_datasetdict_from_text_keep_in_memory(keep_in_memory, text_path, tmp_path):
cache_dir = tmp_path / "cache"
expected_features = {"text": "string"}
with assert_arrow_memory_increases() if keep_in_memory else assert_arrow_memory_doesnt_increase():
dataset = DatasetDict.from_text({"train": text_path}, cache_dir=cache_dir, keep_in_memory=keep_in_memory)
_check_text_datasetdict(dataset, expected_features)
@pytest.mark.parametrize(
"features",
[
None,
{"text": "string"},
{"text": "int32"},
{"text": "float32"},
],
)
def test_datasetdict_from_text_features(features, text_path, tmp_path):
cache_dir = tmp_path / "cache"
default_expected_features = {"text": "string"}
expected_features = features.copy() if features else default_expected_features
features = (
Features({feature: Value(dtype) for feature, dtype in features.items()}) if features is not None else None
)
dataset = DatasetDict.from_text({"train": text_path}, features=features, cache_dir=cache_dir)
_check_text_datasetdict(dataset, expected_features)
@pytest.mark.parametrize("split", [None, NamedSplit("train"), "train", "test"])
def test_datasetdict_from_text_split(split, text_path, tmp_path):
if split:
path = {split: text_path}
else:
split = "train"
path = {"train": text_path, "test": text_path}
cache_dir = tmp_path / "cache"
expected_features = {"text": "string"}
dataset = DatasetDict.from_text(path, cache_dir=cache_dir)
_check_text_datasetdict(dataset, expected_features, splits=list(path.keys()))
assert all(dataset[split].split == split for split in path.keys())
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