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https://github.com/huggingface/datasets/issues/5834
Is uint8 supported?
[ "Hi ! The numpy formatting detaults to int64 and float32 - but you can use uint8 using\r\n```python\r\nds = ds.with_format(\"numpy\", dtype=np.uint8)\r\n```", "Related to https://github.com/huggingface/datasets/issues/5517.", "Thank you!\r\nBy setting `ds.with_format(\"numpy\", dtype=np.uint8)`, the dataset ret...
### Describe the bug I expect the dataset to store the data in the `uint8` data type, but it's returning `int64` instead. While I've found that `datasets` doesn't yet support float16 (https://github.com/huggingface/datasets/issues/4981), I'm wondering if this is the case for other data types as well. Is there a way to store vector data as `uint8` and then upload it to the hub? ### Steps to reproduce the bug ```python from datasets import Features, Dataset, Sequence, Value import numpy as np dataset = Dataset.from_dict( {"vector": [np.array([0, 1, 2], dtype=np.uint8)]}, features=Features({"vector": Sequence(Value("uint8"))}) ).with_format("numpy") print(dataset[0]["vector"].dtype) ``` ### Expected behavior Expected: `uint8` Actual: `int64` ### Environment info - `datasets` version: 2.12.0 - Platform: macOS-12.1-x86_64-i386-64bit - Python version: 3.8.12 - Huggingface_hub version: 0.12.1 - PyArrow version: 11.0.0 - Pandas version: 1.5.3
5,834
https://github.com/huggingface/datasets/issues/5833
Unable to push dataset - `create_pr` problem
[ "Thanks for reporting, @agombert.\r\n\r\nIn this case, I think the root issue is authentication: before pushing to Hub, you should authenticate. See our docs: https://huggingface.co/docs/datasets/upload_dataset#upload-with-python\r\n> 2. To upload a dataset on the Hub in Python, you need to log in to your Hugging F...
### Describe the bug I can't upload to the hub the dataset I manually created locally (Image dataset). I have a problem when using the method `.push_to_hub` which asks for a `create_pr` attribute which is not compatible. ### Steps to reproduce the bug here what I have: ```python dataset.push_to_hub("agomberto/FrenchCensus-handwritten-texts") ``` Output: ```python Pushing split train to the Hub. Pushing dataset shards to the dataset hub: 0%| | 0/2 [00:00<?, ?it/s] Creating parquet from Arrow format: 0%| | 0/3 [00:00<?, ?ba/s] Creating parquet from Arrow format: 100%|█████████████████████████████████████████████████████████████████████████████████████████████████████████████████████████████████████| 3/3 [00:00<00:00, 12.70ba/s] Pushing dataset shards to the dataset hub: 0%| | 0/2 [00:01<?, ?it/s] --------------------------------------------------------------------------- HTTPError Traceback (most recent call last) File ~/miniconda3/envs/hwocr/lib/python3.8/site-packages/huggingface_hub/utils/_errors.py:259, in hf_raise_for_status(response, endpoint_name) 258 try: --> 259 response.raise_for_status() 260 except HTTPError as e: File ~/miniconda3/envs/hwocr/lib/python3.8/site-packages/requests/models.py:1021, in Response.raise_for_status(self) 1020 if http_error_msg: -> 1021 raise HTTPError(http_error_msg, response=self) HTTPError: 403 Client Error: Forbidden for url: https://huggingface.co/api/datasets/agomberto/FrenchCensus-handwritten-texts/commit/main The above exception was the direct cause of the following exception: HfHubHTTPError Traceback (most recent call last) Cell In[7], line 1 ----> 1 dataset.push_to_hub("agomberto/FrenchCensus-handwritten-texts") File ~/miniconda3/envs/hwocr/lib/python3.8/site-packages/datasets/dataset_dict.py:1583, in DatasetDict.push_to_hub(self, repo_id, private, token, branch, max_shard_size, num_shards, embed_external_files) 1581 logger.warning(f"Pushing split {split} to the Hub.") 1582 # The split=key needs to be removed before merging -> 1583 repo_id, split, uploaded_size, dataset_nbytes, _, _ = self[split]._push_parquet_shards_to_hub( 1584 repo_id, 1585 split=split, 1586 private=private, 1587 token=token, 1588 branch=branch, 1589 max_shard_size=max_shard_size, 1590 num_shards=num_shards.get(split), 1591 embed_external_files=embed_external_files, 1592 ) 1593 total_uploaded_size += uploaded_size 1594 total_dataset_nbytes += dataset_nbytes File ~/miniconda3/envs/hwocr/lib/python3.8/site-packages/datasets/arrow_dataset.py:5275, in Dataset._push_parquet_shards_to_hub(self, repo_id, split, private, token, branch, max_shard_size, num_shards, embed_external_files) 5273 shard.to_parquet(buffer) 5274 uploaded_size += buffer.tell() -> 5275 _retry( 5276 api.upload_file, 5277 func_kwargs={ 5278 "path_or_fileobj": buffer.getvalue(), 5279 "path_in_repo": shard_path_in_repo, 5280 "repo_id": repo_id, 5281 "token": token, 5282 "repo_type": "dataset", 5283 "revision": branch, 5284 }, 5285 exceptions=HTTPError, 5286 status_codes=[504], 5287 base_wait_time=2.0, 5288 max_retries=5, 5289 max_wait_time=20.0, 5290 ) 5291 shards_path_in_repo.append(shard_path_in_repo) 5293 # Cleanup to remove unused files File ~/miniconda3/envs/hwocr/lib/python3.8/site-packages/datasets/utils/file_utils.py:285, in _retry(func, func_args, func_kwargs, exceptions, status_codes, max_retries, base_wait_time, max_wait_time) 283 except exceptions as err: 284 if retry >= max_retries or (status_codes and err.response.status_code not in status_codes): --> 285 raise err 286 else: 287 sleep_time = min(max_wait_time, base_wait_time * 2**retry) # Exponential backoff File ~/miniconda3/envs/hwocr/lib/python3.8/site-packages/datasets/utils/file_utils.py:282, in _retry(func, func_args, func_kwargs, exceptions, status_codes, max_retries, base_wait_time, max_wait_time) 280 while True: 281 try: --> 282 return func(*func_args, **func_kwargs) 283 except exceptions as err: 284 if retry >= max_retries or (status_codes and err.response.status_code not in status_codes): File ~/miniconda3/envs/hwocr/lib/python3.8/site-packages/huggingface_hub/utils/_validators.py:120, in validate_hf_hub_args.<locals>._inner_fn(*args, **kwargs) 117 if check_use_auth_token: 118 kwargs = smoothly_deprecate_use_auth_token(fn_name=fn.__name__, has_token=has_token, kwargs=kwargs) --> 120 return fn(*args, **kwargs) File ~/miniconda3/envs/hwocr/lib/python3.8/site-packages/huggingface_hub/hf_api.py:2998, in HfApi.upload_file(self, path_or_fileobj, path_in_repo, repo_id, token, repo_type, revision, commit_message, commit_description, create_pr, parent_commit) 2990 commit_message = ( 2991 commit_message if commit_message is not None else f"Upload {path_in_repo} with huggingface_hub" 2992 ) 2993 operation = CommitOperationAdd( 2994 path_or_fileobj=path_or_fileobj, 2995 path_in_repo=path_in_repo, 2996 ) -> 2998 commit_info = self.create_commit( 2999 repo_id=repo_id, 3000 repo_type=repo_type, 3001 operations=[operation], 3002 commit_message=commit_message, 3003 commit_description=commit_description, 3004 token=token, 3005 revision=revision, 3006 create_pr=create_pr, 3007 parent_commit=parent_commit, 3008 ) 3010 if commit_info.pr_url is not None: 3011 revision = quote(_parse_revision_from_pr_url(commit_info.pr_url), safe="") File ~/miniconda3/envs/hwocr/lib/python3.8/site-packages/huggingface_hub/utils/_validators.py:120, in validate_hf_hub_args.<locals>._inner_fn(*args, **kwargs) 117 if check_use_auth_token: 118 kwargs = smoothly_deprecate_use_auth_token(fn_name=fn.__name__, has_token=has_token, kwargs=kwargs) --> 120 return fn(*args, **kwargs) File ~/miniconda3/envs/hwocr/lib/python3.8/site-packages/huggingface_hub/hf_api.py:2548, in HfApi.create_commit(self, repo_id, operations, commit_message, commit_description, token, repo_type, revision, create_pr, num_threads, parent_commit) 2546 try: 2547 commit_resp = get_session().post(url=commit_url, headers=headers, data=data, params=params) -> 2548 hf_raise_for_status(commit_resp, endpoint_name="commit") 2549 except RepositoryNotFoundError as e: 2550 e.append_to_message(_CREATE_COMMIT_NO_REPO_ERROR_MESSAGE) File ~/miniconda3/envs/hwocr/lib/python3.8/site-packages/huggingface_hub/utils/_errors.py:301, in hf_raise_for_status(response, endpoint_name) 297 raise BadRequestError(message, response=response) from e 299 # Convert `HTTPError` into a `HfHubHTTPError` to display request information 300 # as well (request id and/or server error message) --> 301 raise HfHubHTTPError(str(e), response=response) from e HfHubHTTPError: 403 Client Error: Forbidden for url: https://huggingface.co/api/datasets/agomberto/FrenchCensus-handwritten-texts/commit/main (Request ID: Root=1-645a66bf-255ad91602a6404e6cb70fba) Forbidden: pass `create_pr=1` as a query parameter to create a Pull Request ``` And then when I do ```python dataset.push_to_hub("agomberto/FrenchCensus-handwritten-texts", create_pr=1) ``` I get ```python --------------------------------------------------------------------------- TypeError Traceback (most recent call last) Cell In[8], line 1 ----> 1 dataset.push_to_hub("agomberto/FrenchCensus-handwritten-texts", create_pr=1) TypeError: push_to_hub() got an unexpected keyword argument 'create_pr' ``` ### Expected behavior I would like to have the dataset updloaded [here](https://huggingface.co/datasets/agomberto/FrenchCensus-handwritten-texts). ### Environment info ```bash - `datasets` version: 2.12.0 - Platform: macOS-13.3.1-arm64-arm-64bit - Python version: 3.8.16 - Huggingface_hub version: 0.14.1 - PyArrow version: 12.0.0 - Pandas version: 1.5.3 ```
5,833
https://github.com/huggingface/datasets/issues/5832
404 Client Error: Not Found for url: https://huggingface.co/api/models/bert-large-cased
[ "moved to https://github.com/huggingface/transformers/issues/23233" ]
### Describe the bug Running [Bert-Large-Cased](https://huggingface.co/bert-large-cased) model causes `HTTPError`, with the following traceback- ``` HTTPError Traceback (most recent call last) <ipython-input-6-5c580443a1ad> in <module> ----> 1 tokenizer = BertTokenizer.from_pretrained('bert-large-cased') ~/miniconda3/envs/cmd-chall/lib/python3.7/site-packages/transformers/tokenization_utils_base.py in from_pretrained(cls, pretrained_model_name_or_path, *init_inputs, **kwargs) 1646 # At this point pretrained_model_name_or_path is either a directory or a model identifier name 1647 fast_tokenizer_file = get_fast_tokenizer_file( -> 1648 pretrained_model_name_or_path, revision=revision, use_auth_token=use_auth_token 1649 ) 1650 additional_files_names = { ~/miniconda3/envs/cmd-chall/lib/python3.7/site-packages/transformers/tokenization_utils_base.py in get_fast_tokenizer_file(path_or_repo, revision, use_auth_token) 3406 """ 3407 # Inspect all files from the repo/folder. -> 3408 all_files = get_list_of_files(path_or_repo, revision=revision, use_auth_token=use_auth_token) 3409 tokenizer_files_map = {} 3410 for file_name in all_files: ~/miniconda3/envs/cmd-chall/lib/python3.7/site-packages/transformers/file_utils.py in get_list_of_files(path_or_repo, revision, use_auth_token) 1685 token = None 1686 model_info = HfApi(endpoint=HUGGINGFACE_CO_RESOLVE_ENDPOINT).model_info( -> 1687 path_or_repo, revision=revision, token=token 1688 ) 1689 return [f.rfilename for f in model_info.siblings] ~/miniconda3/envs/cmd-chall/lib/python3.7/site-packages/huggingface_hub/hf_api.py in model_info(self, repo_id, revision, token) 246 ) 247 r = requests.get(path, headers=headers) --> 248 r.raise_for_status() 249 d = r.json() 250 return ModelInfo(**d) ~/miniconda3/envs/cmd-chall/lib/python3.7/site-packages/requests/models.py in raise_for_status(self) 951 952 if http_error_msg: --> 953 raise HTTPError(http_error_msg, response=self) 954 955 def close(self): HTTPError: 404 Client Error: Not Found for url: https://huggingface.co/api/models/bert-large-cased ``` I have also tried running in offline mode, as [discussed here](https://huggingface.co/docs/transformers/installation#offline-mode) ``` HF_DATASETS_OFFLINE=1 TRANSFORMERS_OFFLINE=1 ``` ### Steps to reproduce the bug 1. `from transformers import BertTokenizer, BertModel` 2. `tokenizer = BertTokenizer.from_pretrained('bert-large-cased')` ### Expected behavior Run without the HTTP error. ### Environment info | # Name | Version | Build | Channel | | |--------------------|------------|-----------------------------|---------|---| | _libgcc_mutex | 0.1 | main | | | | _openmp_mutex | 4.5 | 1_gnu | | | | _pytorch_select | 0.1 | cpu_0 | | | | appdirs | 1.4.4 | pypi_0 | pypi | | | backcall | 0.2.0 | pypi_0 | pypi | | | blas | 1.0 | mkl | | | | bzip2 | 1.0.8 | h7b6447c_0 | | | | ca-certificates | 2021.7.5 | h06a4308_1 | | | | certifi | 2021.5.30 | py37h06a4308_0 | | | | cffi | 1.14.6 | py37h400218f_0 | | | | charset-normalizer | 2.0.3 | pypi_0 | pypi | | | click | 8.0.1 | pypi_0 | pypi | | | colorama | 0.4.4 | pypi_0 | pypi | | | cudatoolkit | 11.1.74 | h6bb024c_0 | nvidia | | | cycler | 0.11.0 | pypi_0 | pypi | | | decorator | 5.0.9 | pypi_0 | pypi | | | docker-pycreds | 0.4.0 | pypi_0 | pypi | | | docopt | 0.6.2 | pypi_0 | pypi | | | dominate | 2.6.0 | pypi_0 | pypi | | | ffmpeg | 4.3 | hf484d3e_0 | pytorch | | | filelock | 3.0.12 | pypi_0 | pypi | | | fonttools | 4.38.0 | pypi_0 | pypi | | | freetype | 2.10.4 | h5ab3b9f_0 | | | | gitdb | 4.0.7 | pypi_0 | pypi | | | gitpython | 3.1.18 | pypi_0 | pypi | | | gmp | 6.2.1 | h2531618_2 | | | | gnutls | 3.6.15 | he1e5248_0 | | | | huggingface-hub | 0.0.12 | pypi_0 | pypi | | | humanize | 3.10.0 | pypi_0 | pypi | | | idna | 3.2 | pypi_0 | pypi | | | importlib-metadata | 4.6.1 | pypi_0 | pypi | | | intel-openmp | 2019.4 | 243 | | | | ipdb | 0.13.9 | pypi_0 | pypi | | | ipython | 7.25.0 | pypi_0 | pypi | | | ipython-genutils | 0.2.0 | pypi_0 | pypi | | | jedi | 0.18.0 | pypi_0 | pypi | | | joblib | 1.0.1 | pypi_0 | pypi | | | jpeg | 9b | h024ee3a_2 | | | | jsonpickle | 1.5.2 | pypi_0 | pypi | | | kiwisolver | 1.4.4 | pypi_0 | pypi | | | lame | 3.100 | h7b6447c_0 | | | | lcms2 | 2.12 | h3be6417_0 | | | | ld_impl_linux-64 | 2.35.1 | h7274673_9 | | | | libffi | 3.3 | he6710b0_2 | | | | libgcc-ng | 9.3.0 | h5101ec6_17 | | | | libgomp | 9.3.0 | h5101ec6_17 | | | | libiconv | 1.15 | h63c8f33_5 | | | | libidn2 | 2.3.2 | h7f8727e_0 | | | | libmklml | 2019.0.5 | 0 | | | | libpng | 1.6.37 | hbc83047_0 | | | | libstdcxx-ng | 9.3.0 | hd4cf53a_17 | | | | libtasn1 | 4.16.0 | h27cfd23_0 | | | | libtiff | 4.2.0 | h85742a9_0 | | | | libunistring | 0.9.10 | h27cfd23_0 | | | | libuv | 1.40.0 | h7b6447c_0 | | | | libwebp-base | 1.2.0 | h27cfd23_0 | | | | lz4-c | 1.9.3 | h2531618_0 | | | | matplotlib | 3.5.3 | pypi_0 | pypi | | | matplotlib-inline | 0.1.2 | pypi_0 | pypi | | | mergedeep | 1.3.4 | pypi_0 | pypi | | | mkl | 2020.2 | 256 | | | | mkl-service | 2.3.0 | py37he8ac12f_0 | | | | mkl_fft | 1.3.0 | py37h54f3939_0 | | | | mkl_random | 1.1.1 | py37h0573a6f_0 | | | | msgpack | 1.0.2 | pypi_0 | pypi | | | munch | 2.5.0 | pypi_0 | pypi | | | ncurses | 6.2 | he6710b0_1 | | | | nettle | 3.7.3 | hbbd107a_1 | | | | ninja | 1.10.2 | hff7bd54_1 | | | | nltk | 3.8.1 | pypi_0 | pypi | | | numpy | 1.19.2 | py37h54aff64_0 | | | | numpy-base | 1.19.2 | py37hfa32c7d_0 | | | | olefile | 0.46 | py37_0 | | | | openh264 | 2.1.0 | hd408876_0 | | | | openjpeg | 2.3.0 | h05c96fa_1 | | | | openssl | 1.1.1k | h27cfd23_0 | | | | packaging | 21.0 | pypi_0 | pypi | | | pandas | 1.3.1 | pypi_0 | pypi | | | parso | 0.8.2 | pypi_0 | pypi | | | pathtools | 0.1.2 | pypi_0 | pypi | | | pexpect | 4.8.0 | pypi_0 | pypi | | | pickleshare | 0.7.5 | pypi_0 | pypi | | | pillow | 8.3.1 | py37h2c7a002_0 | | | | pip | 21.1.3 | py37h06a4308_0 | | | | prompt-toolkit | 3.0.19 | pypi_0 | pypi | | | protobuf | 4.21.12 | pypi_0 | pypi | | | psutil | 5.8.0 | pypi_0 | pypi | | | ptyprocess | 0.7.0 | pypi_0 | pypi | | | py-cpuinfo | 8.0.0 | pypi_0 | pypi | | | pycparser | 2.20 | py_2 | | | | pygments | 2.9.0 | pypi_0 | pypi | | | pyparsing | 2.4.7 | pypi_0 | pypi | | | python | 3.7.10 | h12debd9_4 | | | | python-dateutil | 2.8.2 | pypi_0 | pypi | | | pytorch | 1.9.0 | py3.7_cuda11.1_cudnn8.0.5_0 | pytorch | | | pytz | 2021.1 | pypi_0 | pypi | | | pyyaml | 5.4.1 | pypi_0 | pypi | | | readline | 8.1 | h27cfd23_0 | | | | regex | 2022.10.31 | pypi_0 | pypi | | | requests | 2.26.0 | pypi_0 | pypi | | | sacred | 0.8.2 | pypi_0 | pypi | | | sacremoses | 0.0.45 | pypi_0 | pypi | | | scikit-learn | 0.24.2 | pypi_0 | pypi | | | scipy | 1.7.0 | pypi_0 | pypi | | | sentry-sdk | 1.15.0 | pypi_0 | pypi | | | setproctitle | 1.3.2 | pypi_0 | pypi | | | setuptools | 52.0.0 | py37h06a4308_0 | | | | six | 1.16.0 | pyhd3eb1b0_0 | | | | smmap | 4.0.0 | pypi_0 | pypi | | | sqlite | 3.36.0 | hc218d9a_0 | | | | threadpoolctl | 2.2.0 | pypi_0 | pypi | | | tk | 8.6.10 | hbc83047_0 | | | | tokenizers | 0.10.3 | pypi_0 | pypi | | | toml | 0.10.2 | pypi_0 | pypi | | | torchaudio | 0.9.0 | py37 | pytorch | | | torchvision | 0.10.0 | py37_cu111 | pytorch | | | tqdm | 4.61.2 | pypi_0 | pypi | | | traitlets | 5.0.5 | pypi_0 | pypi | | | transformers | 4.9.1 | pypi_0 | pypi | | | typing-extensions | 3.10.0.0 | hd3eb1b0_0 | | | | typing_extensions | 3.10.0.0 | pyh06a4308_0 | | | | urllib3 | 1.26.14 | pypi_0 | pypi | | | wandb | 0.13.10 | pypi_0 | pypi | | | wcwidth | 0.2.5 | pypi_0 | pypi | | | wheel | 0.36.2 | pyhd3eb1b0_0 | | | | wrapt | 1.12.1 | pypi_0 | pypi | | | xz | 5.2.5 | h7b6447c_0 | | | | zipp | 3.5.0 | pypi_0 | pypi | | | zlib | 1.2.11 | h7b6447c_3 | | | | zstd | 1.4.9 | haebb681_0 | | |
5,832
https://github.com/huggingface/datasets/issues/5831
[Bug]504 Server Error when loading dataset which was already cached
[ "I am experiencing the same problem with the following environment:\r\n\r\n* `datasets` version: 2.11.0\r\n* Platform: `Linux 5.19.0-41-generic x86_64 GNU/Linux`\r\n* Python version: `3.8.5`\r\n* Huggingface_hub version: 0.13.3\r\n* PyArrow version: `11.0.0`\r\n* Pandas version: `1.5.3`\r\n\r\nTrying to get some di...
### Describe the bug I have already cached the dataset using: ``` dataset = load_dataset("databricks/databricks-dolly-15k", cache_dir="/mnt/data/llm/datasets/databricks-dolly-15k") ``` After that, I tried to load it again using the same machine, I got this error: ``` Traceback (most recent call last): File "/mnt/home/llm/pythia/train.py", line 16, in <module> dataset = load_dataset("databricks/databricks-dolly-15k", File "/mnt/data/conda/envs/pythia_ft/lib/python3.9/site-packages/datasets/load.py", line 1773, in load_dataset builder_instance = load_dataset_builder( File "/mnt/data/conda/envs/pythia_ft/lib/python3.9/site-packages/datasets/load.py", line 1502, in load_dataset_builder dataset_module = dataset_module_factory( File "/mnt/data/conda/envs/pythia_ft/lib/python3.9/site-packages/datasets/load.py", line 1219, in dataset_module_factory raise e1 from None File "/mnt/data/conda/envs/pythia_ft/lib/python3.9/site-packages/datasets/load.py", line 1186, in dataset_module_factory raise e File "/mnt/data/conda/envs/pythia_ft/lib/python3.9/site-packages/datasets/load.py", line 1160, in dataset_module_factory dataset_info = hf_api.dataset_info( File "/mnt/data/conda/envs/pythia_ft/lib/python3.9/site-packages/huggingface_hub/utils/_validators.py", line 120, in _inner_fn return fn(*args, **kwargs) File "/mnt/data/conda/envs/pythia_ft/lib/python3.9/site-packages/huggingface_hub/hf_api.py", line 1667, in dataset_info hf_raise_for_status(r) File "/mnt/data/conda/envs/pythia_ft/lib/python3.9/site-packages/huggingface_hub/utils/_errors.py", line 301, in hf_raise_for_status raise HfHubHTTPError(str(e), response=response) from e huggingface_hub.utils._errors.HfHubHTTPError: 504 Server Error: Gateway Time-out for url: https://huggingface.co/api/datasets/databricks/databricks-dolly-15k ``` ### Steps to reproduce the bug 1. cache the databrick-dolly-15k dataset using load_dataset, setting a cache_dir 2. use load_dataset again, setting the same cache_dir ### Expected behavior Dataset loaded succuessfully. ### Environment info - `datasets` version: 2.12.0 - Platform: Linux-4.18.0-372.16.1.el8_6.x86_64-x86_64-with-glibc2.27 - Python version: 3.9.16 - Huggingface_hub version: 0.14.1 - PyArrow version: 11.0.0 - Pandas version: 1.5.3
5,831
https://github.com/huggingface/datasets/issues/5829
(mach-o file, but is an incompatible architecture (have 'arm64', need 'x86_64'))
[ "Can you paste the error stack trace?", "That is weird. I can't reproduce it again after reboot.\r\n```python\r\nIn [2]: import platform\r\n\r\nIn [3]: platform.platform()\r\nOut[3]: 'macOS-13.2-arm64-arm-64bit'\r\n\r\nIn [4]: from datasets import load_dataset\r\n ...:\r\n ...: jazzy = load_dataset(\"nomic-ai...
### Describe the bug M2 MBP can't run ```python from datasets import load_dataset jazzy = load_dataset("nomic-ai/gpt4all-j-prompt-generations", revision='v1.2-jazzy') ``` ### Steps to reproduce the bug 1. Use M2 MBP 2. Python 3.10.10 from pyenv 3. Run ``` from datasets import load_dataset jazzy = load_dataset("nomic-ai/gpt4all-j-prompt-generations", revision='v1.2-jazzy') ``` ### Expected behavior Be able to run normally ### Environment info ``` from datasets import load_dataset jazzy = load_dataset("nomic-ai/gpt4all-j-prompt-generations", revision='v1.2-jazzy') ``` OSX: 13.2 CPU: M2
5,829
https://github.com/huggingface/datasets/issues/5828
Stream data concatenation issue
[ "Hi! \r\n\r\nYou can call `map` as follows to avoid the error:\r\n```python\r\naugmented_dataset_cln = dataset_cln['train'].map(augment_dataset, features=dataset_cln['train'].features)\r\n```", "Thanks it is solved", "Hi! \r\nI have run into the same problem with you. Could you please let me know how you solve ...
### Describe the bug I am not able to concatenate the augmentation of the stream data. I am using the latest version of dataset. ValueError: The features can't be aligned because the key audio of features {'audio_id': Value(dtype='string', id=None), 'audio': {'array': Sequence(feature=Value(dtype='float32', id=None), length=-1, id=None), 'path': Value(dtype='null', id=None), 'sampling_rate': Value(dtype='int64', id=None)}, 'transcript': Value(dtype='string', id=None)} has unexpected type - {'array': Sequence(feature=Value(dtype='float32', id=None), length=-1, id=None), 'path': Value(dtype='null', id=None), 'sampling_rate': Value(dtype='int64', id=None)} (expected either Audio(sampling_rate=16000, mono=True, decode=True, id=None) or Value("null"). ### Steps to reproduce the bug dataset = load_dataset("tobiolatunji/afrispeech-200", "all", streaming=True).shuffle(seed=42) dataset_cln = dataset.remove_columns(['speaker_id', 'path', 'age_group', 'gender', 'accent', 'domain', 'country', 'duration']) dataset_cln = dataset_cln.cast_column("audio", Audio(sampling_rate=16000)) from audiomentations import AddGaussianNoise,Compose,Gain,OneOf,PitchShift,PolarityInversion,TimeStretch augmentation = Compose([ AddGaussianNoise(min_amplitude=0.005, max_amplitude=0.015, p=0.2) ]) def augment_dataset(batch): audio = batch["audio"] audio["array"] = augmentation(audio["array"], sample_rate=audio["sampling_rate"]) return batch augmented_dataset_cln = dataset_cln['train'].map(augment_dataset) dataset_cln['train'] = interleave_datasets([dataset_cln['train'], augmented_dataset_cln]) dataset_cln['train'] = dataset_cln['train'].shuffle(seed=42) ### Expected behavior I should be able to merge as sampling rate is same. ### Environment info import datasets import transformers import accelerate print(datasets.__version__) print(transformers.__version__) print(torch.__version__) print(evaluate.__version__) print(accelerate.__version__) 2.12.0 4.28.1 2.0.0 0.4.0 0.18.0
5,828
https://github.com/huggingface/datasets/issues/5827
load json dataset interrupt when dtype cast problem occured
[ "Indeed the JSON dataset builder raises an error when it encounters an unexpected type.\r\n\r\nThere's an old PR open to add away to ignore such elements though, if it can help: https://github.com/huggingface/datasets/pull/2838" ]
### Describe the bug i have a json like this: [ {"id": 1, "name": 1}, {"id": 2, "name": "Nan"}, {"id": 3, "name": 3}, .... ] ,which have several problematic rows data like row 2, then i load it with datasets.load_dataset('json', data_files=['xx.json'], split='train'), it will report like this: Generating train split: 0 examples [00:00, ? examples/s]Failed to read file 'C:\Users\gawinjunwu\Downloads\test\data\a.json' with error <class 'pyarrow.lib.ArrowInvalid'>: Could not convert '2' with type str: tried to convert to int64 Traceback (most recent call last): File "D:\Python3.9\lib\site-packages\datasets\builder.py", line 1858, in _prepare_split_single for _, table in generator: File "D:\Python3.9\lib\site-packages\datasets\packaged_modules\json\json.py", line 146, in _generate_tables raise ValueError(f"Not able to read records in the JSON file at {file}.") from None ValueError: Not able to read records in the JSON file at C:\Users\gawinjunwu\Downloads\test\data\a.json. The above exception was the direct cause of the following exception: Traceback (most recent call last): File "c:\Users\gawinjunwu\Downloads\test\scripts\a.py", line 4, in <module> ds = load_dataset('json', data_dir='data', split='train') File "D:\Python3.9\lib\site-packages\datasets\load.py", line 1797, in load_dataset builder_instance.download_and_prepare( File "D:\Python3.9\lib\site-packages\datasets\builder.py", line 890, in download_and_prepare self._download_and_prepare( File "D:\Python3.9\lib\site-packages\datasets\builder.py", line 985, in _download_and_prepare self._prepare_split(split_generator, **prepare_split_kwargs) File "D:\Python3.9\lib\site-packages\datasets\builder.py", line 1746, in _prepare_split for job_id, done, content in self._prepare_split_single( File "D:\Python3.9\lib\site-packages\datasets\builder.py", line 1891, in _prepare_split_single raise DatasetGenerationError("An error occurred while generating the dataset") from e datasets.builder.DatasetGenerationError: An error occurred while generating the dataset. Could datasets skip those problematic data row? ### Steps to reproduce the bug prepare a json file like this: [ {"id": 1, "name": 1}, {"id": 2, "name": "Nan"}, {"id": 3, "name": 3} ] then use datasets.load_dataset('json', dir_files=['xxx.json']) to load the json file ### Expected behavior skip the problematic data row and load row1 and row3 ### Environment info python3.9
5,827
https://github.com/huggingface/datasets/issues/5825
FileNotFound even though exists
[ "Hi! \r\n\r\nThis would only work if `bigscience/xP3` was a no-code dataset, but it isn't (it has a Python builder script).\r\n\r\nBut this should work: \r\n```python\r\nload_dataset(\"json\", data_files=\"https://huggingface.co/datasets/bigscience/xP3/resolve/main/ur/xp3_facebook_flores_spa_Latn-urd_Arab_devtest_a...
### Describe the bug I'm trying to download https://huggingface.co/datasets/bigscience/xP3/resolve/main/ur/xp3_facebook_flores_spa_Latn-urd_Arab_devtest_ab-spa_Latn-urd_Arab.jsonl which works fine in my webbrowser, but somehow not with datasets. Am I doing sth wrong? ``` Downloading builder script: 100% 2.82k/2.82k [00:00<00:00, 64.2kB/s] Downloading readme: 100% 12.6k/12.6k [00:00<00:00, 585kB/s] --------------------------------------------------------------------------- FileNotFoundError Traceback (most recent call last) [<ipython-input-2-4b45446a91d5>](https://localhost:8080/#) in <cell line: 4>() 2 lang = "ur" 3 fname = "xp3_facebook_flores_spa_Latn-urd_Arab_devtest_ab-spa_Latn-urd_Arab.jsonl" ----> 4 dataset = load_dataset("bigscience/xP3", data_files=f"{lang}/{fname}") 6 frames [/usr/local/lib/python3.10/dist-packages/datasets/data_files.py](https://localhost:8080/#) in _resolve_single_pattern_locally(base_path, pattern, allowed_extensions) 291 if allowed_extensions is not None: 292 error_msg += f" with any supported extension {list(allowed_extensions)}" --> 293 raise FileNotFoundError(error_msg) 294 return sorted(out) 295 FileNotFoundError: Unable to find 'https://huggingface.co/datasets/bigscience/xP3/resolve/main/ur/xp3_facebook_flores_spa_Latn-urd_Arab_devtest_ab-spa_Latn-urd_Arab.jsonl' at /content/https:/huggingface.co/datasets/bigscience/xP3/resolve/main ``` ### Steps to reproduce the bug ``` !pip install -q datasets from datasets import load_dataset lang = "ur" fname = "xp3_facebook_flores_spa_Latn-urd_Arab_devtest_ab-spa_Latn-urd_Arab.jsonl" dataset = load_dataset("bigscience/xP3", data_files=f"{lang}/{fname}") ``` ### Expected behavior Correctly downloads ### Environment info latest versions
5,825
https://github.com/huggingface/datasets/issues/5823
[2.12.0] DatasetDict.save_to_disk not saving to S3
[ "Hi ! Can you try adding the `s3://` prefix ?\r\n```python\r\nf\"s3://{s3_bucket}/{s3_dir}/{dataset_name}\"\r\n```", "Ugh, yeah that was it. Thank you!", "Hi @thejamesmarq, by any chance, did you use multiprocessing `num_proc > 1` when saving your dataset on the s3 bucket ? I'm struggling making it work in a mu...
### Describe the bug When trying to save a `DatasetDict` to a private S3 bucket using `save_to_disk`, the artifacts are instead saved locally, and not in the S3 bucket. I have tried using the deprecated `fs` as well as the `storage_options` arguments and I get the same results. ### Steps to reproduce the bug 1. Create a DatsetDict `dataset` 2. Create a S3FileSystem object `s3 = datasets.filesystems.S3FileSystem(key=aws_access_key_id, secret=aws_secret_access_key)` 3. Save using `dataset_dict.save_to_disk(f"{s3_bucket}/{s3_dir}/{dataset_name}", storage_options=s3.storage_options)` or `dataset_dict.save_to_disk(f"{s3_bucket}/{s3_dir}/{dataset_name}", fs=s3)` 4. Check the corresponding S3 bucket and verify nothing has been uploaded 5. Check the path at f"{s3_bucket}/{s3_dir}/{dataset_name}" and verify that files have been saved there ### Expected behavior Artifacts are uploaded at the f"{s3_bucket}/{s3_dir}/{dataset_name}" S3 location. ### Environment info - `datasets` version: 2.12.0 - Platform: macOS-13.3.1-x86_64-i386-64bit - Python version: 3.11.2 - Huggingface_hub version: 0.14.1 - PyArrow version: 12.0.0 - Pandas version: 2.0.1
5,823
https://github.com/huggingface/datasets/issues/5822
Audio Dataset with_format torch problem
[ "Hi ! Can you try with a more recent version of `datasets` ?", "Ok, yes it worked with the most recent version. Thanks" ]
### Describe the bug Common Voice v10 Delta (German) Dataset from here https://commonvoice.mozilla.org/de/datasets ``` audio_dataset = \ (Dataset .from_dict({"audio": ('/tmp/cv-corpus-10.0-delta-2022-07-04/de/clips/' + df.path).to_list()}) .cast_column("audio", Audio(sampling_rate=16_000)) .with_format('numpy')) audio_dataset[0]["audio"] ``` works, but ``` audio_dataset = \ (Dataset .from_dict({"audio": ('/tmp/cv-corpus-10.0-delta-2022-07-04/de/clips/' + df.path).to_list()}) .cast_column("audio", Audio(sampling_rate=16_000)) .with_format('torch')) audio_dataset[0]["audio"] ``` does not instead I get ``` --------------------------------------------------------------------------- AttributeError Traceback (most recent call last) Cell In[54], line 1 ----> 1 audio_dataset[0]["audio"] File /anaconda/envs/azureml_py38/lib/python3.8/site-packages/datasets/arrow_dataset.py:2154, in Dataset.__getitem__(self, key) 2152 def __getitem__(self, key): # noqa: F811 2153 """Can be used to index columns (by string names) or rows (by integer index or iterable of indices or bools).""" -> 2154 return self._getitem( 2155 key, 2156 ) File /anaconda/envs/azureml_py38/lib/python3.8/site-packages/datasets/arrow_dataset.py:2139, in Dataset._getitem(self, key, decoded, **kwargs) 2137 formatter = get_formatter(format_type, features=self.features, decoded=decoded, **format_kwargs) 2138 pa_subtable = query_table(self._data, key, indices=self._indices if self._indices is not None else None) -> 2139 formatted_output = format_table( 2140 pa_subtable, key, formatter=formatter, format_columns=format_columns, output_all_columns=output_all_columns 2141 ) 2142 return formatted_output File /anaconda/envs/azureml_py38/lib/python3.8/site-packages/datasets/formatting/formatting.py:532, in format_table(table, key, formatter, format_columns, output_all_columns) 530 python_formatter = PythonFormatter(features=None) 531 if format_columns is None: --> 532 return formatter(pa_table, query_type=query_type) 533 elif query_type == "column": 534 if key in format_columns: File /anaconda/envs/azureml_py38/lib/python3.8/site-packages/datasets/formatting/formatting.py:281, in Formatter.__call__(self, pa_table, query_type) 279 def __call__(self, pa_table: pa.Table, query_type: str) -> Union[RowFormat, ColumnFormat, BatchFormat]: 280 if query_type == "row": --> 281 return self.format_row(pa_table) 282 elif query_type == "column": 283 return self.format_column(pa_table) File /anaconda/envs/azureml_py38/lib/python3.8/site-packages/datasets/formatting/torch_formatter.py:58, in TorchFormatter.format_row(self, pa_table) 56 def format_row(self, pa_table: pa.Table) -> dict: 57 row = self.numpy_arrow_extractor().extract_row(pa_table) ---> 58 return self.recursive_tensorize(row) File /anaconda/envs/azureml_py38/lib/python3.8/site-packages/datasets/formatting/torch_formatter.py:54, in TorchFormatter.recursive_tensorize(self, data_struct) 53 def recursive_tensorize(self, data_struct: dict): ---> 54 return map_nested(self._recursive_tensorize, data_struct, map_list=False) File /anaconda/envs/azureml_py38/lib/python3.8/site-packages/datasets/utils/py_utils.py:356, in map_nested(function, data_struct, dict_only, map_list, map_tuple, map_numpy, num_proc, types, disable_tqdm, desc) 354 num_proc = 1 355 if num_proc <= 1 or len(iterable) <= num_proc: --> 356 mapped = [ 357 _single_map_nested((function, obj, types, None, True, None)) 358 for obj in logging.tqdm(iterable, disable=disable_tqdm, desc=desc) 359 ] 360 else: 361 split_kwds = [] # We organize the splits ourselve (contiguous splits) File /anaconda/envs/azureml_py38/lib/python3.8/site-packages/datasets/utils/py_utils.py:357, in <listcomp>(.0) 354 num_proc = 1 355 if num_proc <= 1 or len(iterable) <= num_proc: 356 mapped = [ --> 357 _single_map_nested((function, obj, types, None, True, None)) 358 for obj in logging.tqdm(iterable, disable=disable_tqdm, desc=desc) 359 ] 360 else: 361 split_kwds = [] # We organize the splits ourselve (contiguous splits) File /anaconda/envs/azureml_py38/lib/python3.8/site-packages/datasets/utils/py_utils.py:309, in _single_map_nested(args) 306 pbar = logging.tqdm(pbar_iterable, disable=disable_tqdm, position=rank, unit="obj", desc=pbar_desc) 308 if isinstance(data_struct, dict): --> 309 return {k: _single_map_nested((function, v, types, None, True, None)) for k, v in pbar} 310 else: 311 mapped = [_single_map_nested((function, v, types, None, True, None)) for v in pbar] File /anaconda/envs/azureml_py38/lib/python3.8/site-packages/datasets/utils/py_utils.py:309, in <dictcomp>(.0) 306 pbar = logging.tqdm(pbar_iterable, disable=disable_tqdm, position=rank, unit="obj", desc=pbar_desc) 308 if isinstance(data_struct, dict): --> 309 return {k: _single_map_nested((function, v, types, None, True, None)) for k, v in pbar} 310 else: 311 mapped = [_single_map_nested((function, v, types, None, True, None)) for v in pbar] File /anaconda/envs/azureml_py38/lib/python3.8/site-packages/datasets/utils/py_utils.py:293, in _single_map_nested(args) 291 # Singleton first to spare some computation 292 if not isinstance(data_struct, dict) and not isinstance(data_struct, types): --> 293 return function(data_struct) 295 # Reduce logging to keep things readable in multiprocessing with tqdm 296 if rank is not None and logging.get_verbosity() < logging.WARNING: File /anaconda/envs/azureml_py38/lib/python3.8/site-packages/datasets/formatting/torch_formatter.py:51, in TorchFormatter._recursive_tensorize(self, data_struct) 49 if data_struct.dtype == np.object: # pytorch tensors cannot be instantied from an array of objects 50 return [self.recursive_tensorize(substruct) for substruct in data_struct] ---> 51 return self._tensorize(data_struct) File /anaconda/envs/azureml_py38/lib/python3.8/site-packages/datasets/formatting/torch_formatter.py:38, in TorchFormatter._tensorize(self, value) 35 import torch 37 default_dtype = {} ---> 38 if np.issubdtype(value.dtype, np.integer): 39 default_dtype = {"dtype": torch.int64} 40 elif np.issubdtype(value.dtype, np.floating): AttributeError: 'NoneType' object has no attribute 'dtype' ``` ### Steps to reproduce the bug 1. Download some audio dataset in this case I used Common Voice v10 Delta (German) Dataset from here https://commonvoice.mozilla.org/de/datasets 2. Try the Code from above ### Expected behavior It should work for torch ### Environment info pytorch: 2.0.0 datasets: 2.3.2 numpy: 1.21.6 Python: 3.8 Linux
5,822
https://github.com/huggingface/datasets/issues/5820
Incomplete docstring for `BuilderConfig`
[ "Thanks for reporting! You are more than welcome to improve `BuilderConfig`'s docstring.\r\n\r\nThis class serves an identical purpose as `tensorflow_datasets`'s `BuilderConfig`, and its docstring is [here](https://github.com/tensorflow/datasets/blob/a95e38b5bb018312c3d3720619c2a8ef83ebf57f/tensorflow_datasets/core...
Hi guys ! I stumbled upon this docstring while working on a project. Some of the attributes have missing descriptions. https://github.com/huggingface/datasets/blob/bc5fef5b6d91f009e4101684adcb374df2c170f6/src/datasets/builder.py#L104-L117
5,820
https://github.com/huggingface/datasets/issues/5819
Cannot pickle error in Dataset.from_generator()
[ "Hi! It should work if you put `model = torch.compile(model)` inside the `generate_data` function. If a referenced object is outside, it needs to be pickable, and that's not the case for the compiled models (or functions). ", "> Hi! It should work if you put `model = torch.compile(model)` inside the `generate_da...
### Describe the bug I'm trying to use Dataset.from_generator() to generate a large dataset. ### Steps to reproduce the bug Code to reproduce: ``` from transformers import T5Tokenizer, T5ForConditionalGeneration, GenerationConfig import torch from tqdm import tqdm from datasets import load_dataset tokenizer = T5Tokenizer.from_pretrained("google/flan-t5-small") model = T5ForConditionalGeneration.from_pretrained("google/flan-t5-small", device_map="auto") model = torch.compile(model) def generate_data(data_loader): model.eval() for batch in tqdm(data_loader): input_ids = tokenizer(batch['instruction'], return_tensors='pt', padding=True, truncation=True).input_ids.to("cuda:0") with torch.no_grad(): outputs = model.generate(input_ids, generation_config=generation_config) decoder_hidden_states = outputs.decoder_hidden_states for i, h in zip(batch['instruction'], decoder_hidden_states): yield {"instruction": i, "decoder_hidden_states": h} generation_config = GenerationConfig( temperature=1, max_new_tokens=1024, do_sample=False, num_return_sequences=1, return_dict_in_generate=True, output_scores=True, output_hidden_states=True, ) from datasets import Dataset, load_dataset from torch.utils.data import DataLoader dataset = load_dataset("HuggingFaceH4/databricks_dolly_15k") train_loader = DataLoader(dataset['train'], batch_size=2, shuffle=True) dataset = Dataset.from_generator(generator=generate_data, gen_kwargs={"data_loader": train_loader}) dataset.save_to_disk("data/flant5_small_generation") ``` ### Expected behavior The dataset should be generated and saved. But the following error occurred: ``` Traceback (most recent call last): File "/remote-home/xhwang/alpaca-lora/data_collection_t5.py", line 46, in <module> dataset = Dataset.from_generator(generator=generate_data, gen_kwargs={"data_loader": train_loader}) File "/remote-home/xhwang/anaconda3/envs/alpaca-lora/lib/python3.10/site-packages/datasets/arrow_dataset.py", line 1035, in from_generator return GeneratorDatasetInputStream( File "/remote-home/xhwang/anaconda3/envs/alpaca-lora/lib/python3.10/site-packages/datasets/io/generator.py", line 28, in __init__ self.builder = Generator( File "/remote-home/xhwang/anaconda3/envs/alpaca-lora/lib/python3.10/site-packages/datasets/builder.py", line 336, in __init__ self.config, self.config_id = self._create_builder_config( File "/remote-home/xhwang/anaconda3/envs/alpaca-lora/lib/python3.10/site-packages/datasets/builder.py", line 505, in _create_builder_config config_id = builder_config.create_config_id( File "/remote-home/xhwang/anaconda3/envs/alpaca-lora/lib/python3.10/site-packages/datasets/builder.py", line 179, in create_config_id suffix = Hasher.hash(config_kwargs_to_add_to_suffix) File "/remote-home/xhwang/anaconda3/envs/alpaca-lora/lib/python3.10/site-packages/datasets/fingerprint.py", line 236, in hash return cls.hash_default(value) File "/remote-home/xhwang/anaconda3/envs/alpaca-lora/lib/python3.10/site-packages/datasets/fingerprint.py", line 229, in hash_default return cls.hash_bytes(dumps(value)) File "/remote-home/xhwang/anaconda3/envs/alpaca-lora/lib/python3.10/site-packages/datasets/utils/py_utils.py", line 726, in dumps dump(obj, file) File "/remote-home/xhwang/anaconda3/envs/alpaca-lora/lib/python3.10/site-packages/datasets/utils/py_utils.py", line 701, in dump Pickler(file, recurse=True).dump(obj) File "/remote-home/xhwang/anaconda3/envs/alpaca-lora/lib/python3.10/site-packages/dill/_dill.py", line 394, in dump StockPickler.dump(self, obj) File "/remote-home/xhwang/anaconda3/envs/alpaca-lora/lib/python3.10/pickle.py", line 487, in dump self.save(obj) File "/remote-home/xhwang/anaconda3/envs/alpaca-lora/lib/python3.10/site-packages/datasets/utils/py_utils.py", line 691, in save dill.Pickler.save(self, obj, save_persistent_id=save_persistent_id) File "/remote-home/xhwang/anaconda3/envs/alpaca-lora/lib/python3.10/site-packages/dill/_dill.py", line 388, in save StockPickler.save(self, obj, save_persistent_id) File "/remote-home/xhwang/anaconda3/envs/alpaca-lora/lib/python3.10/pickle.py", line 560, in save f(self, obj) # Call unbound method with explicit self File "/remote-home/xhwang/anaconda3/envs/alpaca-lora/lib/python3.10/site-packages/dill/_dill.py", line 1186, in save_module_dict StockPickler.save_dict(pickler, obj) File "/remote-home/xhwang/anaconda3/envs/alpaca-lora/lib/python3.10/pickle.py", line 972, in save_dict self._batch_setitems(obj.items()) File "/remote-home/xhwang/anaconda3/envs/alpaca-lora/lib/python3.10/pickle.py", line 998, in _batch_setitems save(v) File "/remote-home/xhwang/anaconda3/envs/alpaca-lora/lib/python3.10/site-packages/datasets/utils/py_utils.py", line 691, in save dill.Pickler.save(self, obj, save_persistent_id=save_persistent_id) File "/remote-home/xhwang/anaconda3/envs/alpaca-lora/lib/python3.10/site-packages/dill/_dill.py", line 388, in save StockPickler.save(self, obj, save_persistent_id) File "/remote-home/xhwang/anaconda3/envs/alpaca-lora/lib/python3.10/pickle.py", line 560, in save f(self, obj) # Call unbound method with explicit self File "/remote-home/xhwang/anaconda3/envs/alpaca-lora/lib/python3.10/site-packages/datasets/utils/py_utils.py", line 1311, in save_function dill._dill._save_with_postproc( File "/remote-home/xhwang/anaconda3/envs/alpaca-lora/lib/python3.10/site-packages/dill/_dill.py", line 1084, in _save_with_postproc pickler._batch_setitems(iter(source.items())) File "/remote-home/xhwang/anaconda3/envs/alpaca-lora/lib/python3.10/pickle.py", line 998, in _batch_setitems save(v) File "/remote-home/xhwang/anaconda3/envs/alpaca-lora/lib/python3.10/site-packages/datasets/utils/py_utils.py", line 691, in save dill.Pickler.save(self, obj, save_persistent_id=save_persistent_id) File "/remote-home/xhwang/anaconda3/envs/alpaca-lora/lib/python3.10/site-packages/dill/_dill.py", line 388, in save StockPickler.save(self, obj, save_persistent_id) File "/remote-home/xhwang/anaconda3/envs/alpaca-lora/lib/python3.10/pickle.py", line 603, in save self.save_reduce(obj=obj, *rv) File "/remote-home/xhwang/anaconda3/envs/alpaca-lora/lib/python3.10/pickle.py", line 717, in save_reduce save(state) File "/remote-home/xhwang/anaconda3/envs/alpaca-lora/lib/python3.10/site-packages/datasets/utils/py_utils.py", line 691, in save dill.Pickler.save(self, obj, save_persistent_id=save_persistent_id) File "/remote-home/xhwang/anaconda3/envs/alpaca-lora/lib/python3.10/site-packages/dill/_dill.py", line 388, in save StockPickler.save(self, obj, save_persistent_id) File "/remote-home/xhwang/anaconda3/envs/alpaca-lora/lib/python3.10/pickle.py", line 560, in save f(self, obj) # Call unbound method with explicit self File "/remote-home/xhwang/anaconda3/envs/alpaca-lora/lib/python3.10/site-packages/dill/_dill.py", line 1186, in save_module_dict StockPickler.save_dict(pickler, obj) File "/remote-home/xhwang/anaconda3/envs/alpaca-lora/lib/python3.10/pickle.py", line 972, in save_dict self._batch_setitems(obj.items()) File "/remote-home/xhwang/anaconda3/envs/alpaca-lora/lib/python3.10/pickle.py", line 998, in _batch_setitems save(v) File "/remote-home/xhwang/anaconda3/envs/alpaca-lora/lib/python3.10/site-packages/datasets/utils/py_utils.py", line 691, in save dill.Pickler.save(self, obj, save_persistent_id=save_persistent_id) File "/remote-home/xhwang/anaconda3/envs/alpaca-lora/lib/python3.10/site-packages/dill/_dill.py", line 388, in save StockPickler.save(self, obj, save_persistent_id) File "/remote-home/xhwang/anaconda3/envs/alpaca-lora/lib/python3.10/pickle.py", line 603, in save self.save_reduce(obj=obj, *rv) File "/remote-home/xhwang/anaconda3/envs/alpaca-lora/lib/python3.10/pickle.py", line 717, in save_reduce save(state) File "/remote-home/xhwang/anaconda3/envs/alpaca-lora/lib/python3.10/site-packages/datasets/utils/py_utils.py", line 691, in save dill.Pickler.save(self, obj, save_persistent_id=save_persistent_id) File "/remote-home/xhwang/anaconda3/envs/alpaca-lora/lib/python3.10/site-packages/dill/_dill.py", line 388, in save StockPickler.save(self, obj, save_persistent_id) File "/remote-home/xhwang/anaconda3/envs/alpaca-lora/lib/python3.10/pickle.py", line 560, in save f(self, obj) # Call unbound method with explicit self File "/remote-home/xhwang/anaconda3/envs/alpaca-lora/lib/python3.10/site-packages/dill/_dill.py", line 1186, in save_module_dict StockPickler.save_dict(pickler, obj) File "/remote-home/xhwang/anaconda3/envs/alpaca-lora/lib/python3.10/pickle.py", line 972, in save_dict self._batch_setitems(obj.items()) File "/remote-home/xhwang/anaconda3/envs/alpaca-lora/lib/python3.10/pickle.py", line 998, in _batch_setitems save(v) File "/remote-home/xhwang/anaconda3/envs/alpaca-lora/lib/python3.10/site-packages/datasets/utils/py_utils.py", line 691, in save dill.Pickler.save(self, obj, save_persistent_id=save_persistent_id) File "/remote-home/xhwang/anaconda3/envs/alpaca-lora/lib/python3.10/site-packages/dill/_dill.py", line 388, in save StockPickler.save(self, obj, save_persistent_id) File "/remote-home/xhwang/anaconda3/envs/alpaca-lora/lib/python3.10/pickle.py", line 560, in save f(self, obj) # Call unbound method with explicit self File "/remote-home/xhwang/anaconda3/envs/alpaca-lora/lib/python3.10/site-packages/datasets/utils/py_utils.py", line 1311, in save_function dill._dill._save_with_postproc( File "/remote-home/xhwang/anaconda3/envs/alpaca-lora/lib/python3.10/site-packages/dill/_dill.py", line 1070, in _save_with_postproc pickler.save_reduce(*reduction, obj=obj) File "/remote-home/xhwang/anaconda3/envs/alpaca-lora/lib/python3.10/pickle.py", line 717, in save_reduce save(state) File "/remote-home/xhwang/anaconda3/envs/alpaca-lora/lib/python3.10/site-packages/datasets/utils/py_utils.py", line 691, in save dill.Pickler.save(self, obj, save_persistent_id=save_persistent_id) File "/remote-home/xhwang/anaconda3/envs/alpaca-lora/lib/python3.10/site-packages/dill/_dill.py", line 388, in save StockPickler.save(self, obj, save_persistent_id) File "/remote-home/xhwang/anaconda3/envs/alpaca-lora/lib/python3.10/pickle.py", line 560, in save f(self, obj) # Call unbound method with explicit self File "/remote-home/xhwang/anaconda3/envs/alpaca-lora/lib/python3.10/pickle.py", line 887, in save_tuple save(element) File "/remote-home/xhwang/anaconda3/envs/alpaca-lora/lib/python3.10/site-packages/datasets/utils/py_utils.py", line 691, in save dill.Pickler.save(self, obj, save_persistent_id=save_persistent_id) File "/remote-home/xhwang/anaconda3/envs/alpaca-lora/lib/python3.10/site-packages/dill/_dill.py", line 388, in save StockPickler.save(self, obj, save_persistent_id) File "/remote-home/xhwang/anaconda3/envs/alpaca-lora/lib/python3.10/pickle.py", line 560, in save f(self, obj) # Call unbound method with explicit self File "/remote-home/xhwang/anaconda3/envs/alpaca-lora/lib/python3.10/site-packages/dill/_dill.py", line 1186, in save_module_dict StockPickler.save_dict(pickler, obj) File "/remote-home/xhwang/anaconda3/envs/alpaca-lora/lib/python3.10/pickle.py", line 972, in save_dict self._batch_setitems(obj.items()) File "/remote-home/xhwang/anaconda3/envs/alpaca-lora/lib/python3.10/pickle.py", line 998, in _batch_setitems save(v) File "/remote-home/xhwang/anaconda3/envs/alpaca-lora/lib/python3.10/site-packages/datasets/utils/py_utils.py", line 691, in save dill.Pickler.save(self, obj, save_persistent_id=save_persistent_id) File "/remote-home/xhwang/anaconda3/envs/alpaca-lora/lib/python3.10/site-packages/dill/_dill.py", line 388, in save StockPickler.save(self, obj, save_persistent_id) File "/remote-home/xhwang/anaconda3/envs/alpaca-lora/lib/python3.10/pickle.py", line 560, in save f(self, obj) # Call unbound method with explicit self File "/remote-home/xhwang/anaconda3/envs/alpaca-lora/lib/python3.10/site-packages/datasets/utils/py_utils.py", line 1311, in save_function dill._dill._save_with_postproc( File "/remote-home/xhwang/anaconda3/envs/alpaca-lora/lib/python3.10/site-packages/dill/_dill.py", line 1070, in _save_with_postproc pickler.save_reduce(*reduction, obj=obj) File "/remote-home/xhwang/anaconda3/envs/alpaca-lora/lib/python3.10/pickle.py", line 717, in save_reduce save(state) File "/remote-home/xhwang/anaconda3/envs/alpaca-lora/lib/python3.10/site-packages/datasets/utils/py_utils.py", line 691, in save dill.Pickler.save(self, obj, save_persistent_id=save_persistent_id) File "/remote-home/xhwang/anaconda3/envs/alpaca-lora/lib/python3.10/site-packages/dill/_dill.py", line 388, in save StockPickler.save(self, obj, save_persistent_id) File "/remote-home/xhwang/anaconda3/envs/alpaca-lora/lib/python3.10/pickle.py", line 560, in save f(self, obj) # Call unbound method with explicit self File "/remote-home/xhwang/anaconda3/envs/alpaca-lora/lib/python3.10/pickle.py", line 887, in save_tuple save(element) File "/remote-home/xhwang/anaconda3/envs/alpaca-lora/lib/python3.10/site-packages/datasets/utils/py_utils.py", line 691, in save dill.Pickler.save(self, obj, save_persistent_id=save_persistent_id) File "/remote-home/xhwang/anaconda3/envs/alpaca-lora/lib/python3.10/site-packages/dill/_dill.py", line 388, in save StockPickler.save(self, obj, save_persistent_id) File "/remote-home/xhwang/anaconda3/envs/alpaca-lora/lib/python3.10/pickle.py", line 560, in save f(self, obj) # Call unbound method with explicit self File "/remote-home/xhwang/anaconda3/envs/alpaca-lora/lib/python3.10/site-packages/dill/_dill.py", line 1186, in save_module_dict StockPickler.save_dict(pickler, obj) File "/remote-home/xhwang/anaconda3/envs/alpaca-lora/lib/python3.10/pickle.py", line 972, in save_dict self._batch_setitems(obj.items()) File "/remote-home/xhwang/anaconda3/envs/alpaca-lora/lib/python3.10/pickle.py", line 1003, in _batch_setitems save(v) File "/remote-home/xhwang/anaconda3/envs/alpaca-lora/lib/python3.10/site-packages/datasets/utils/py_utils.py", line 691, in save dill.Pickler.save(self, obj, save_persistent_id=save_persistent_id) File "/remote-home/xhwang/anaconda3/envs/alpaca-lora/lib/python3.10/site-packages/dill/_dill.py", line 388, in save StockPickler.save(self, obj, save_persistent_id) File "/remote-home/xhwang/anaconda3/envs/alpaca-lora/lib/python3.10/pickle.py", line 560, in save f(self, obj) # Call unbound method with explicit self File "/remote-home/xhwang/anaconda3/envs/alpaca-lora/lib/python3.10/site-packages/datasets/utils/py_utils.py", line 1311, in save_function dill._dill._save_with_postproc( File "/remote-home/xhwang/anaconda3/envs/alpaca-lora/lib/python3.10/site-packages/dill/_dill.py", line 1084, in _save_with_postproc pickler._batch_setitems(iter(source.items())) File "/remote-home/xhwang/anaconda3/envs/alpaca-lora/lib/python3.10/pickle.py", line 998, in _batch_setitems save(v) File "/remote-home/xhwang/anaconda3/envs/alpaca-lora/lib/python3.10/site-packages/datasets/utils/py_utils.py", line 691, in save dill.Pickler.save(self, obj, save_persistent_id=save_persistent_id) File "/remote-home/xhwang/anaconda3/envs/alpaca-lora/lib/python3.10/site-packages/dill/_dill.py", line 388, in save StockPickler.save(self, obj, save_persistent_id) File "/remote-home/xhwang/anaconda3/envs/alpaca-lora/lib/python3.10/pickle.py", line 578, in save rv = reduce(self.proto) TypeError: cannot pickle 'ConfigModuleInstance' object ``` ### Environment info - `datasets` version: 2.11.0 - Platform: Linux-4.15.0-156-generic-x86_64-with-glibc2.31 - Python version: 3.10.10 - Huggingface_hub version: 0.13.2 - PyArrow version: 11.0.0 - Pandas version: 1.5.3
5,819
https://github.com/huggingface/datasets/issues/5818
Ability to update a dataset
[ "This [reply](https://discuss.huggingface.co/t/how-do-i-add-things-rows-to-an-already-saved-dataset/27423) from @mariosasko on the forums may be useful :)", "In this case, I think we can avoid the `PermissionError` by unpacking the underlying `ConcatenationTable` and saving only the newly added data blocks (in ne...
### Feature request The ability to load a dataset, add or change something, and save it back to disk. Maybe it's possible, but I can't work out how to do it, e.g. this fails: ```py import datasets dataset = datasets.load_from_disk("data/test1") dataset = dataset.add_item({"text": "A new item"}) dataset.save_to_disk("data/test1") ``` With the error: ``` PermissionError: Tried to overwrite /mnt/c/Users/david/py/learning/mini_projects/data_sorting_and_filtering/data/test1 but a dataset can't overwrite itself. ``` ### Motivation My use case is that I want to process a dataset in a particular way but it doesn't fit in memory if I do it in one go. So I want to perform a loop and at each step in the loop, process one shard and append it to an ever-growing dataset. The code in the loop will load a dataset, add some rows, then save it again. Maybe I'm just thinking about things incorrectly and there's a better approach. FWIW I can't use `dataset.map()` to do the task because that doesn't work with `num_proc` when adding rows, so is confined to a single process which is too slow. The only other way I can think of is to create a new file each time, but surely that's not how people do this sort of thing. ### Your contribution na
5,818
https://github.com/huggingface/datasets/issues/5817
Setting `num_proc` errors when `.map` returns additional items.
[ "Hi ! Unfortunately I couldn't reproduce on my side locally and with datasets 2.11 and python 3.10.11 on colab.\r\nWhat version of `multiprocess` are you using ?", "I've got `multiprocess` version `0.70.14`.\r\n\r\nI've done some more testing and the error only occurs in PyCharm's Python Console. It seems to be [...
### Describe the bug I'm using a map function that returns more rows than are passed in. If I try to use `num_proc` I get: ``` File "/home/davidg/.virtualenvs/learning/lib/python3.10/site-packages/datasets/arrow_dataset.py", line 563, in wrapper out: Union["Dataset", "DatasetDict"] = func(self, *args, **kwargs) File "/home/davidg/.virtualenvs/learning/lib/python3.10/site-packages/datasets/arrow_dataset.py", line 528, in wrapper out: Union["Dataset", "DatasetDict"] = func(self, *args, **kwargs) File "/home/davidg/.virtualenvs/learning/lib/python3.10/site-packages/datasets/arrow_dataset.py", line 3097, in map for rank, done, content in iflatmap_unordered( File "/home/davidg/.virtualenvs/learning/lib/python3.10/site-packages/datasets/utils/py_utils.py", line 1372, in iflatmap_unordered yield queue.get(timeout=0.05) File "<string>", line 2, in get File "/home/davidg/.virtualenvs/learning/lib/python3.10/site-packages/multiprocess/managers.py", line 818, in _callmethod kind, result = conn.recv() File "/home/davidg/.virtualenvs/learning/lib/python3.10/site-packages/multiprocess/connection.py", line 258, in recv buf = self._recv_bytes() File "/home/davidg/.virtualenvs/learning/lib/python3.10/site-packages/multiprocess/connection.py", line 422, in _recv_bytes buf = self._recv(4) File "/home/davidg/.virtualenvs/learning/lib/python3.10/site-packages/multiprocess/connection.py", line 391, in _recv raise EOFError EOFError ``` ### Steps to reproduce the bug This is copied from the [Datasets docs](https://huggingface.co/docs/datasets/v2.12.0/en/process#batch-processing), with `num_proc` added, and will error. ```py import datasets dataset = ... # any old dataset def chunk_examples(examples): chunks = [] for sentence in examples["text"]: chunks += [sentence[i : i + 50] for i in range(0, len(sentence), 50)] return {"chunks": chunks} chunked_dataset = dataset.map( chunk_examples, batched=True, remove_columns=dataset.column_names, num_proc=2, # Remove and it works ) ``` ### Expected behavior Should work fine. On a related note, multi-processing also fails if there is a Meta class anywhere in scope (and there are plenty in the standard library). This is the fault of `dill` and is a long standing issue. Have you considered using Loky for multiprocessing? I've found that the built-in `datasets` multi-processing breaks more than it works so have written my own function using `loky`, for reference: ```py import datasets import loky def fast_loop(dataset: datasets.Dataset, func, num_proc=None): if num_proc is None: import os num_proc = len(os.sched_getaffinity(0)) shards = [ dataset.shard(num_shards=num_proc, index=i, contiguous=True) for i in range(num_proc) ] executor = loky.get_reusable_executor(max_workers=num_proc) results = executor.map(func, shards) return datasets.combine.concatenate_datasets(list(results)) ``` ### Environment info - `datasets` version: 2.11.0 - Platform: Linux-5.15.90.1-microsoft-standard-WSL2-x86_64-with-glibc2.31 - Python version: 3.10.8 - Huggingface_hub version: 0.12.1 - PyArrow version: 11.0.0 - Pandas version: 2.0.1
5,817
https://github.com/huggingface/datasets/issues/5815
Easy way to create a Kaggle dataset from a Huggingface dataset?
[ "Hi @hrbigelow , I'm no expert for such a question so I'll ping @lhoestq from the `datasets` library (also this issue could be moved there if someone with permission can do it :) )", "Hi ! Many datasets are made of several files, and how they are parsed often requires a python script. Because of that, datasets li...
I'm not sure whether this is more appropriately addressed with HuggingFace or Kaggle. I would like to somehow directly create a Kaggle dataset from a HuggingFace Dataset. While Kaggle does provide the option to create a dataset from a URI, that URI must point to a single file. For example: ![image](https://user-images.githubusercontent.com/5355286/235792394-7c559d07-4aff-45b7-ad2b-9c5280c88415.png) Is there some mechanism from huggingface to represent a dataset (such as that from `load_dataset('wmt14', 'de-en', split='train')` as a single file? Or, some other way to get that into a Kaggle dataset so that I can use the huggingface `datasets` module to process and consume it inside of a Kaggle notebook? Thanks in advance!
5,815
https://github.com/huggingface/datasets/issues/5812
Cannot shuffle interleaved IterableDataset with "all_exhausted" stopping strategy
[]
### Describe the bug Shuffling interleaved `IterableDataset` with "all_exhausted" strategy yields non-exhaustive sampling. ### Steps to reproduce the bug ```py from datasets import IterableDataset, interleave_datasets def gen(bias, length): for i in range(length): yield dict(a=bias+i) seed = 42 probabilities = [0.2, 0.6, 0.2] d1 = IterableDataset.from_generator(lambda: gen(0, 3)) d2 = IterableDataset.from_generator(lambda: gen(10, 4)) d3 = IterableDataset.from_generator(lambda: gen(20, 3)) ds = interleave_datasets([d1, d2, d3], probabilities=probabilities, seed=seed, stopping_strategy='all_exhausted') ds = ds.shuffle(buffer_size=1000) for x in ds: print(x) ``` This code produces ``` {'a': 0} {'a': 22} {'a': 20} {'a': 21} {'a': 10} {'a': 1} ``` ### Expected behavior It should produce a longer list of examples to exhaust all the datasets. If you comment out the shuffle line, it will exhaust all the datasets properly. Here is the output if you comment out shuffling: ``` {'a': 10} {'a': 11} {'a': 20} {'a': 12} {'a': 0} {'a': 21} {'a': 13} {'a': 10} {'a': 1} {'a': 11} {'a': 12} {'a': 22} {'a': 13} {'a': 20} {'a': 10} {'a': 11} {'a': 12} {'a': 2} ``` ### Environment info - `datasets` version: 2.12.0 - Platform: Linux-5.10.147+-x86_64-with-glibc2.31 - Python version: 3.10.11 - Huggingface_hub version: 0.14.1 - PyArrow version: 9.0.0 - Pandas version: 1.5.3 This was run on Google Colab.
5,812
https://github.com/huggingface/datasets/issues/5811
load_dataset: TypeError: 'NoneType' object is not callable, on local dataset filename changes
[ "This error means a `DatasetBuilder` subclass that generates the dataset could not be found inside the script, so make sure `dushowxa-characters/dushowxa-characters.py `is a valid dataset script (assuming `path_or_dataset` is `dushowxa-characters`)\r\n\r\nAlso, we should improve the error to make it more obvious wh...
### Describe the bug I've adapted Databrick's [train_dolly.py](/databrickslabs/dolly/blob/master/train_dolly.py) to train using a local dataset, which has been working. Upon changing the filenames of the `.json` & `.py` files in my local dataset directory, `dataset = load_dataset(path_or_dataset)["train"]` throws the error: ```python 2023-04-30 09:10:52 INFO [training.trainer] Loading dataset from dushowxa-characters Traceback (most recent call last): File "/data/dushowxa-dolly/train_dushowxa.py", line 26, in <module> load_training_dataset() File "/data/dushowxa-dolly/training/trainer.py", line 89, in load_training_dataset dataset = load_dataset(path_or_dataset)["train"] File "/data/dushowxa-dolly/.venv/lib/python3.10/site-packages/datasets/load.py", line 1773, in load_dataset builder_instance = load_dataset_builder( File "/data/dushowxa-dolly/.venv/lib/python3.10/site-packages/datasets/load.py", line 1528, in load_dataset_builder builder_instance: DatasetBuilder = builder_cls( TypeError: 'NoneType' object is not callable ``` The local dataset filenames were of the form `dushowxa-characters/expanse-dushowxa-characters.json` and are now of the form `dushowxa-characters/dushowxa-characters.json` (the word `expanse-` was removed from the filenames). Is this perhaps a dataset caching issue? I have attempted to manually clear caches, but to no effect: ```sh rm -rfv ~/.cache/huggingface/datasets/* rm -rfv ~/.cache/huggingface/modules/* ``` ### Steps to reproduce the bug Run `python3 train_dushowxa.py` (adapted from Databrick's [train_dolly.py](/databrickslabs/dolly/blob/master/train_dolly.py)). ### Expected behavior Training succeeds as before local dataset filenames were changed. ### Environment info Ubuntu 22.04, Python 3.10.6, venv ```python accelerate>=0.16.0,<1 click>=8.0.4,<9 datasets>=2.10.0,<3 deepspeed>=0.9.0,<1 transformers[torch]>=4.28.1,<5 langchain>=0.0.139 ```
5,811
https://github.com/huggingface/datasets/issues/5809
wiki_dpr details for Open Domain Question Answering tasks
[ "Hi ! I don't remember exactly how it was done, but maybe you have to embed `f\"{title}<sep>{text}\"` ?\r\n\r\nUsing a HF tokenizer it corresponds to doing\r\n```python\r\ntokenized = tokenizer(titles, texts)\r\n```" ]
Hey guys! Thanks for creating the wiki_dpr dataset! I am currently trying to combine wiki_dpr and my own datasets. but I don't know how to make the embedding value the same way as wiki_dpr. As an experiment, I embeds the text of id="7" of wiki_dpr, but this result was very different from wiki_dpr.
5,809
https://github.com/huggingface/datasets/issues/5806
Return the name of the currently loaded file in the load_dataset function.
[ "Implementing this makes sense (e.g., `tensorflow_datasets`' imagefolder returns image filenames). Also, in Datasets 3.0, we plan only to store the bytes of an image/audio, not its path, so this feature would be useful when the path info is still needed.", "Hey @mariosasko, Can I work on this issue, this one seem...
### Feature request Add an optional parameter return_file_name in the load_dataset function. When it is set to True, the function will include the name of the file corresponding to the current line as a feature in the returned output. ### Motivation When training large language models, machine problems may interrupt the training process. In such cases, it is common to load a previously saved checkpoint to resume training. I would like to be able to obtain the names of the previously trained data shards, so that I can skip these parts of the data during continued training to avoid overfitting and redundant training time. ### Your contribution I currently use a dataset in jsonl format, so I am primarily interested in the json format. I suggest adding the file name to the returned table here https://github.com/huggingface/datasets/blob/main/src/datasets/packaged_modules/json/json.py#L92.
5,806
https://github.com/huggingface/datasets/issues/5805
Improve `Create a dataset` tutorial
[ "I can work on this. The link to the tutorial seems to be broken though @polinaeterna. ", "@isunitha98selvan would be great, thank you! which link are you talking about? I think it should work: https://huggingface.co/docs/datasets/create_dataset", "Hey I don't mind working on this issue. From my understanding, ...
Our [tutorial on how to create a dataset](https://huggingface.co/docs/datasets/create_dataset) is a bit misleading. 1. In **Folder-based builders** section it says that we have two folder-based builders as standard builders, but we also have similar builders (that can be created from directory with data of required format) for `csv`, `json/jsonl`, `parquet` and `txt` files. We have info about these loaders in separate [guide for loading](https://huggingface.co/docs/datasets/loading#local-and-remote-files) but it's worth briefly mentioning them in the beginning tutorial because they are more common and for consistency. Would be helpful to add the link to the full guide. 2. **From local files** section lists methods for creating a dataset from in-memory data which are also described in [loading guide](https://huggingface.co/docs/datasets/loading#inmemory-data). Maybe we should actually rethink and restructure this tutorial somehow.
5,805
https://github.com/huggingface/datasets/issues/5799
Files downloaded to cache do not respect umask
[]
As reported by @stas00, files downloaded to the cache do not respect umask: ```bash $ ls -l /path/to/cache/datasets/downloads/ -rw------- 1 uername username 150M Apr 25 16:41 5e646c1d600f065adaeb134e536f6f2f296a6d804bd1f0e1fdcd20ee28c185c6 ``` Related to: - #2065
5,799
https://github.com/huggingface/datasets/issues/5798
Support parallelized downloading and processing in load_dataset with Spark
[ "Hi ! We're using process pools for parallelism right now. I was wondering if there's a package that implements the same API as a process pool but runs with Spark under the hood ? That or something similar would be cool because users could use whatever distributed framework they want this way.\r\n\r\nFeel free to p...
### Feature request When calling `load_dataset` for datasets that have multiple files, support using Spark to distribute the downloading and processing job to worker nodes when `cache_dir` is a cloud file system shared among nodes. ```python load_dataset(..., use_spark=True) ``` ### Motivation Further speed up `dl_manager.download` and `_prepare_split` by distributing the workloads to worker nodes. ### Your contribution I can submit a PR to support this.
5,798
https://github.com/huggingface/datasets/issues/5797
load_dataset is case sentitive?
[ "Hi @haonan-li , thank you for the report! It seems to be a bug on the [`huggingface_hub`](https://github.com/huggingface/huggingface_hub) site, there is even no such dataset as `mbzuai/bactrian-x` on the Hub. I opened and [issue](https://github.com/huggingface/huggingface_hub/issues/1453) there.", "I think `loa...
### Describe the bug load_dataset() function is case sensitive? ### Steps to reproduce the bug The following two code, get totally different behavior. 1. load_dataset('mbzuai/bactrian-x','en') 2. load_dataset('MBZUAI/Bactrian-X','en') ### Expected behavior Compare 1 and 2. 1 will download all 52 subsets, shell output: ```Downloading and preparing dataset json/MBZUAI--bactrian-X to xxx``` 2 will only download single subset, shell output ```Downloading and preparing dataset bactrian-x/en to xxx``` ### Environment info Python 3.10.11 datasets Version: 2.11.0
5,797
https://github.com/huggingface/datasets/issues/5794
CI ZeroDivisionError
[ "Hello!\r\nThis issue seems to have been fixed in https://github.com/huggingface/transformers/pull/24049 \r\nI was looking for my first issue to work on when I noticed this; not sure if there is a specific protocol for suggesting to close an issue.", "Thanks for informing, @zeppdev. I am closing this issue.\r\n\r...
Sometimes when running our CI on Windows, we get a ZeroDivisionError: ``` FAILED tests/test_metric_common.py::LocalMetricTest::test_load_metric_frugalscore - ZeroDivisionError: float division by zero ``` See for example: - https://github.com/huggingface/datasets/actions/runs/4809358266/jobs/8560513110 - https://github.com/huggingface/datasets/actions/runs/4798359836/jobs/8536573688 ``` _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ split = 'test', start_time = 1682516718.8236516, num_samples = 2, num_steps = 1 def speed_metrics(split, start_time, num_samples=None, num_steps=None): """ Measure and return speed performance metrics. This function requires a time snapshot `start_time` before the operation to be measured starts and this function should be run immediately after the operation to be measured has completed. Args: - split: name to prefix metric (like train, eval, test...) - start_time: operation start time - num_samples: number of samples processed """ runtime = time.time() - start_time result = {f"{split}_runtime": round(runtime, 4)} if num_samples is not None: > samples_per_second = num_samples / runtime E ZeroDivisionError: float division by zero C:\hostedtoolcache\windows\Python\3.7.9\x64\lib\site-packages\transformers\trainer_utils.py:354: ZeroDivisionError ```
5,794
https://github.com/huggingface/datasets/issues/5793
IterableDataset.with_format("torch") not working
[ "Hi ! Thanks for reporting, I'm working on it ;)" ]
### Describe the bug After calling the with_format("torch") method on an IterableDataset instance, the data format is unchanged. ### Steps to reproduce the bug ```python from datasets import IterableDataset def gen(): for i in range(4): yield {"a": [i] * 4} dataset = IterableDataset.from_generator(gen).with_format("torch") next(iter(dataset)) ``` ### Expected behavior `{"a": torch.tensor([0, 0, 0, 0])}` is expected, but `{"a": [0, 0, 0, 0]}` is observed. ### Environment info ```bash platform==ubuntu 22.04.01 python==3.10.9 datasets==2.11.0 ```
5,793
https://github.com/huggingface/datasets/issues/5791
TIFF/TIF support
[ "The issue with multichannel TIFF images has already been reported in Pillow (https://github.com/python-pillow/Pillow/issues/1888). We can't do much about it on our side.\r\n\r\nStill, to avoid the error, you can bypass the default Pillow decoding and define a custom one as follows:\r\n```python\r\nimport tifffile ...
### Feature request I currently have a dataset (with tiff and json files) where I have to do this: `wget path_to_data/images.zip && unzip images.zip` `wget path_to_data/annotations.zip && unzip annotations.zip` Would it make sense a contribution that supports these type of files? ### Motivation instead of using `load_dataset` have to use wget as these files are not supported for annotations with JSON and images with TIFF files. Additionally to this, the PIL formatting from datasets does not read correctly the image channels with TIFF format, besides multichannel adaptation might be necessary as well (as my data e.g has more than 3 channels) ### Your contribution 1. Support TIFF images over multi channel format 2. Support JSON annotations
5,791
https://github.com/huggingface/datasets/issues/5789
Support streaming datasets that use jsonlines
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Extend support for streaming datasets that use `jsonlines.open`. Currently, if `jsonlines` is installed, `datasets` raises a `FileNotFoundError`: ``` FileNotFoundError: [Errno 2] No such file or directory: 'https://...' ``` See: - https://huggingface.co/datasets/masakhane/afriqa/discussions/1
5,789
https://github.com/huggingface/datasets/issues/5786
Multiprocessing in a `filter` or `map` function with a Pytorch model
[ "Hi ! PyTorch may hang when calling `load_state_dict()` in a subprocess. To fix that, set the multiprocessing start method to \"spawn\". Since `datasets` uses `multiprocess`, you should do:\r\n\r\n```python\r\n# Required to avoid issues with pytorch (otherwise hangs during load_state_dict in multiprocessing)\r\nimp...
### Describe the bug I am trying to use a Pytorch model loaded on CPUs with multiple processes with a `.map` or a `.filter` method. Usually, when dealing with models that are non-pickable, creating a class such that the `map` function is the method `__call__`, and adding `reduce` helps to solve the problem. However, here, the command hangs without throwing an error. ### Steps to reproduce the bug ``` from datasets import Dataset import torch from torch import nn from torchvision import models ​ ​ class FilterFunction: #__slots__ = ("path_model", "model") # Doesn't change anything uncommented def __init__(self, path_model): self.path_model = path_model model = models.resnet50() model.fc = nn.Sequential( nn.Linear(2048, 512), nn.ReLU(), nn.Dropout(0.2), nn.Linear(512, 10), nn.LogSoftmax(dim=1) ) model.load_state_dict(torch.load(path_model, map_location=torch.device("cpu"))) model.eval() self.model = model def __call__(self, batch): return [True] * len(batch["id"]) # Comment this to have an error def __reduce__(self): return (self.__class__, (self.path_model,)) ​ ​ dataset = Dataset.from_dict({"id": [0, 1, 2, 4]}) ​ # Download (100 MB) at https://github.com/emiliantolo/pytorch_nsfw_model/raw/master/ResNet50_nsfw_model.pth path_model = "/fsx/hugo/nsfw_image/ResNet50_nsfw_model.pth" ​ filter_function = FilterFunction(path_model=path_model) ​ # Works filtered_dataset = dataset.filter(filter_function, num_proc=1, batched=True, batch_size=2) # Doesn't work filtered_dataset = dataset.filter(filter_function, num_proc=2, batched=True, batch_size=2) ``` ### Expected behavior The command `filtered_dataset = dataset.filter(filter_function, num_proc=2, batched=True, batch_size=2)` should work and not hang. ### Environment info Datasets: 2.11.0 Pyarrow: 11.0.0 Ubuntu
5,786
https://github.com/huggingface/datasets/issues/5785
Unsupported data files raise TypeError: 'NoneType' object is not iterable
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Currently, we raise a TypeError for unsupported data files: ``` TypeError: 'NoneType' object is not iterable ``` See: - https://github.com/huggingface/datasets-server/issues/1073 We should give a more informative error message.
5,785
https://github.com/huggingface/datasets/issues/5783
Offset overflow while doing regex on a text column
[ "Hi! This looks like an Arrow bug, but it can be avoided by reducing the `writer_batch_size`.\r\n\r\n(`ds = ds.map(get_text_caption, writer_batch_size=100)` in Colab runs without issues)\r\n", "@mariosasko I ran into this problem with load_dataset. What should I do", "@AisingioroHao0 You can also pass the `wri...
### Describe the bug `ArrowInvalid: offset overflow while concatenating arrays` Same error as [here](https://github.com/huggingface/datasets/issues/615) ### Steps to reproduce the bug Steps to reproduce: (dataset is a few GB big so try in colab maybe) ``` import datasets import re ds = datasets.load_dataset('nishanthc/dnd_map_dataset_v0.1', split = 'train') def get_text_caption(example): regex_pattern = r'\s\d+x\d+|,\sLQ|,\sgrid|\.\w+$' example['text_caption'] = re.sub(regex_pattern, '', example['picture_text']) return example ds = ds.map(get_text_caption) ``` I am trying to apply a regex to remove certain patterns from a text column. Not sure why this error is showing up. ### Expected behavior Dataset should have a new column with processed text ### Environment info Datasets version - 2.11.0
5,783
https://github.com/huggingface/datasets/issues/5782
Support for various audio-loading backends instead of always relying on SoundFile
[ "Hi! \r\n\r\nYou can use `set_transform`/`with_transform` to define a custom decoding for audio formats not supported by `soundfile`:\r\n```python\r\naudio_dataset_amr = Dataset.from_dict({\"audio\": [\"audio_samples/audio.amr\"]})\r\n\r\ndef decode_audio(batch):\r\n batch[\"audio\"] = [read_ffmpeg(audio_path) f...
### Feature request Introduce an option to select from a variety of audio-loading backends rather than solely relying on the SoundFile library. For instance, if the ffmpeg library is installed, it can serve as a fallback loading option. ### Motivation - The SoundFile library, used in [features/audio.py](https://github.com/huggingface/datasets/blob/649d5a3315f9e7666713b6affe318ee00c7163a0/src/datasets/features/audio.py#L185), supports only a [limited number of audio formats](https://pysoundfile.readthedocs.io/en/latest/index.html?highlight=supported#soundfile.available_formats). - However, current methods for creating audio datasets permit the inclusion of audio files in formats not supported by SoundFile. - As a result, developers may potentially create a dataset they cannot read back. In my most recent project, I dealt with phone call recordings in `.amr` or `.gsm` formats and was genuinely surprised when I couldn't read the dataset I had just packaged a minute prior. Nonetheless, I can still accurately read these files using the librosa library, which employs the audioread library that internally leverages ffmpeg to read such files. Example: ```python audio_dataset_amr = Dataset.from_dict({"audio": ["audio_samples/audio.amr"]}).cast_column("audio", Audio()) audio_dataset_amr.save_to_disk("audio_dataset_amr") audio_dataset_amr = Dataset.load_from_disk("audio_dataset_amr") print(audio_dataset_amr[0]) ``` Results in: ``` Traceback (most recent call last): ... raise LibsndfileError(err, prefix="Error opening {0!r}: ".format(self.name)) soundfile.LibsndfileError: Error opening <_io.BytesIO object at 0x7f316323e4d0>: Format not recognised. ``` While I acknowledge that support for these rare file types may not be a priority, I believe it's quite unfortunate that it's possible to create an unreadable dataset in this manner. ### Your contribution I've created a [simple demo repository](https://github.com/BoringDonut/hf-datasets-ffmpeg-audio) that highlights the mentioned issue. It demonstrates how to create an .amr dataset that results in an error when attempting to read it just a few lines later. Additionally, I've made a [fork with a rudimentary solution](https://github.com/BoringDonut/datasets/blob/fea73a8fbbc8876467c7e6422c9360546c6372d8/src/datasets/features/audio.py#L189) that utilizes ffmpeg to load files not supported by SoundFile. Here you may see github actions fails to read `.amr` dataset using the version of the current dataset, but will work with the patched version: - https://github.com/BoringDonut/hf-datasets-ffmpeg-audio/actions/runs/4773780420/jobs/8487063785 - https://github.com/BoringDonut/hf-datasets-ffmpeg-audio/actions/runs/4773780420/jobs/8487063829 As evident from the GitHub action above, this solution resolves the previously mentioned problem. I'd be happy to create a proper pull request, provide runtime benchmarks and tests if you could offer some guidance on the following: - Where should I incorporate the ffmpeg (or other backends) code? For example, should I create a new file or simply add a function within the Audio class? - Is it feasible to pass the audio-loading function as an argument within the current architecture? This would be useful if I know in advance that I'll be reading files not supported by SoundFile. A few more notes: - In theory, it's possible to load audio using librosa/audioread since librosa is already expected to be installed. However, librosa [will soon discontinue audioread support](https://github.com/librosa/librosa/blob/aacb4c134002903ae56bbd4b4a330519a5abacc0/librosa/core/audio.py#L227). Moreover, using audioread on its own seems inconvenient because it requires a file [path as input](https://github.com/beetbox/audioread/blob/ff9535df934c48038af7be9617fdebb12078cc07/audioread/__init__.py#L108) and cannot work with bytes already loaded into memory or an open file descriptor (as mentioned in [librosa docs](https://librosa.org/doc/main/generated/librosa.load.html#librosa.load), only SoundFile backend supports an open file descriptor as an input).
5,782
https://github.com/huggingface/datasets/issues/5781
Error using `load_datasets`
[ "It looks like an issue with your installation of scipy, can you try reinstalling it ?", "Sorry for the late reply, but that worked @lhoestq . Thanks for the assist." ]
### Describe the bug I tried to load a dataset using the `datasets` library in a conda jupyter notebook and got the below error. ``` ImportError: dlopen(/Users/gilbertyoung/miniforge3/envs/review_sense/lib/python3.8/site-packages/scipy/sparse/linalg/_isolve/_iterative.cpython-38-darwin.so, 0x0002): Library not loaded: @rpath/liblapack.3.dylib Referenced from: <65B094A2-59D7-31AC-A966-4DB9E11D2A15> /Users/gilbertyoung/miniforge3/envs/review_sense/lib/python3.8/site-packages/scipy/sparse/linalg/_isolve/_iterative.cpython-38-darwin.so Reason: tried: '/Users/gilbertyoung/miniforge3/envs/review_sense/lib/python3.8/site-packages/scipy/sparse/linalg/_isolve/liblapack.3.dylib' (no such file), '/Users/gilbertyoung/miniforge3/envs/review_sense/lib/python3.8/site-packages/scipy/sparse/linalg/_isolve/../../../../../../liblapack.3.dylib' (no such file), '/Users/gilbertyoung/miniforge3/envs/review_sense/lib/python3.8/site-packages/scipy/sparse/linalg/_isolve/liblapack.3.dylib' (no such file), '/Users/gilbertyoung/miniforge3/envs/review_sense/lib/python3.8/site-packages/scipy/sparse/linalg/_isolve/../../../../../../liblapack.3.dylib' (no such file), '/Users/gilbertyoung/miniforge3/envs/review_sense/bin/../lib/liblapack.3.dylib' (no such file), '/Users/gilbertyoung/miniforge3/envs/review_sense/bin/../lib/liblapack.3.dylib' (no such file), '/usr/local/lib/liblapack.3.dylib' (no such file), '/usr/lib/liblapack.3.dylib' (no such file, not in dyld cache) ``` ### Steps to reproduce the bug Run the `load_datasets` function ### Expected behavior I expected the dataset to be loaded into my notebook. ### Environment info name: review_sense channels: - apple - conda-forge dependencies: - python=3.8 - pip>=19.0 - jupyter - tensorflow-deps #- scikit-learn #- scipy - pandas - pandas-datareader - matplotlib - pillow - tqdm - requests - h5py - pyyaml - flask - boto3 - ipykernel - seaborn - pip: - tensorflow-macos==2.9 - tensorflow-metal==0.5.0 - bayesian-optimization - gym - kaggle - huggingface_hub - datasets - numpy - huggingface
5,781
https://github.com/huggingface/datasets/issues/5780
TypeError: 'NoneType' object does not support item assignment
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command: ``` def load_datasets(formats, data_dir=datadir, data_files=datafile): dataset = load_dataset(formats, data_dir=datadir, data_files=datafile, split=split, streaming=True, **kwargs) return dataset raw_datasets = DatasetDict() raw_datasets["train"] = load_datasets(“csv”, args.datadir, "train.csv", split=train_split) raw_datasets["test"] = load_datasets(“csv”, args.datadir, "dev.csv", split=test_split) raw_datasets = raw_datasets.cast_column("audio", Audio(sampling_rate=16000)) ``` error: ``` main() File "peft_adalora_whisper_large_training.py", line 502, in main raw_datasets = raw_datasets.cast_column("audio", Audio(sampling_rate=16000)) File "/home/ybZhang/miniconda3/envs/whister/lib/python3.8/site-packages/datasets/dataset_dict.py", line 2015, in cast_column info.features[column] = feature TypeError: 'NoneType' object does not support item assignment ```
5,780
https://github.com/huggingface/datasets/issues/5778
Schrödinger's dataset_dict
[ "Hi ! Passing `data_files=\"path/test.json\"` is equivalent to `data_files={\"train\": [\"path/test.json\"]}`, that's why you end up with a train split. If you don't pass `data_files=`, then split names are inferred from the data files names" ]
### Describe the bug If you use load_dataset('json', data_files="path/test.json"), it will return DatasetDict({train:...}). And if you use load_dataset("path"), it will return DatasetDict({test:...}). Why can't the output behavior be unified? ### Steps to reproduce the bug as description above. ### Expected behavior consistent predictable output. ### Environment info '2.11.0'
5,778
https://github.com/huggingface/datasets/issues/5777
datasets.load_dataset("code_search_net", "python") : NotADirectoryError: [Errno 20] Not a directory
[ "Note:\r\nI listed the datasets and grepped around to find what appears to be an alternative source for this:\r\n\r\nraw_datasets = load_dataset(\"espejelomar/code_search_net_python_10000_examples\", \"python\")", "Thanks for reporting, @jason-brian-anderson.\r\n\r\nYes, this is a known issue: the [CodeSearchNet]...
### Describe the bug While checking out the [tokenizer tutorial](https://huggingface.co/course/chapter6/2?fw=pt), i noticed getting an error while initially downloading the python dataset used in the examples. The [collab with the error is here](https://colab.research.google.com/github/huggingface/notebooks/blob/master/course/en/chapter6/section2.ipynb#scrollTo=hGb69Yo3eV8S) ``` from datasets import load_dataset import os os.environ["HF_DATASETS_CACHE"] = "/workspace" # This can take a few minutes to load, so grab a coffee or tea while you wait! raw_datasets = load_dataset("code_search_net", "python") ``` yeilds: ``` ile /opt/conda/lib/python3.10/site-packages/datasets/download/streaming_download_manager.py:524, in xlistdir(path, use_auth_token) 522 main_hop, *rest_hops = _as_str(path).split("::") 523 if is_local_path(main_hop): --> 524 return os.listdir(path) 525 else: 526 # globbing inside a zip in a private repo requires authentication 527 if not rest_hops and (main_hop.startswith("http://") or main_hop.startswith("https://")): NotADirectoryError: [Errno 20] Not a directory: '/workspace/downloads/25ceeb4c25ab737d688bd56ea92bfbb1f199fe572470456cf2d675479f342ac7/python/final/jsonl/train' ``` I was able to reproduce this erro both in the collab and on my own pytorch/pytorch container pulled from the dockerhub official pytorch image, so i think it may be a server side thing. ### Steps to reproduce the bug Steps to reproduce the issue: 1. run `raw_datasets = load_dataset("code_search_net", "python")` ### Expected behavior expect the code to not exception during dataset pull. ### Environment info i tried both the default HF_DATASETS_CACHE on Collab, and on my local container. i then pointed to the HF_DATASETS_CACHE to a large capacity local storage and the problem was consisten across all 3 scenarios.
5,777
https://github.com/huggingface/datasets/issues/5776
Use Pandas' `read_json` in the JSON builder
[]
Instead of PyArrow's `read_json`, we should use `pd.read_json` in the JSON builder for consistency with the CSV and SQL builders (e.g., to address https://github.com/huggingface/datasets/issues/5725). In Pandas2.0, to get the same performance, we can set the `engine` to "pyarrow". The issue is that Colab still doesn't install Pandas 2.0 by default, so I think it's best to wait for this to be resolved on their side to avoid downgrading decoding performance in scenarios when Pandas 2.0 is not installed.
5,776
https://github.com/huggingface/datasets/issues/5775
ArrowDataset.save_to_disk lost some logic of remote
[ "We just fixed this on `main` and will do a new release soon :)" ]
### Describe the bug https://github.com/huggingface/datasets/blob/e7ce0ac60c7efc10886471932854903a7c19f172/src/datasets/arrow_dataset.py#L1371 Here is the bug point, when I want to save from a `DatasetDict` class and the items of the instance is like `[('train', Dataset({features: ..., num_rows: ...}))]` , there is no guarantee that there exists a directory name `train` under `dataset_dict_path`. ### Steps to reproduce the bug 1. Mock a DatasetDict with items like what I said. 2. using save_to_disk with storage_options, u can use local sftp. code may like below ```python from datasets import load_dataset dataset = load_dataset(...) dataset.save_to_disk('sftp:///tmp', storage_options={'host': 'localhost', 'username': 'admin'}) ``` I suppose u can reproduce the bug by these steps. ### Expected behavior Should create the folder if it does not exists, just like we do locally. ### Environment info - `datasets` version: 2.11.0 - Platform: Linux-6.2.10-arch1-1-x86_64-with-glibc2.35 - Python version: 3.10.9 - Huggingface_hub version: 0.13.2 - PyArrow version: 11.0.0 - Pandas version: 1.5.3
5,775
https://github.com/huggingface/datasets/issues/5773
train_dataset does not implement __len__
[ "Thanks for reporting, @v-yunbin.\r\n\r\nCould you please give more details, the steps to reproduce the bug, the complete error back trace and the environment information (`datasets-cli env`)?", "this is a detail error info from transformers:\r\n```\r\nTraceback (most recent call last):\r\n File \"finetune.py\",...
when train using data precessored by the datasets, I get follow warning and it leads to that I can not set epoch numbers: `ValueError: The train_dataset does not implement __len__, max_steps has to be specified. The number of steps needs to be known in advance for the learning rate scheduler.`
5,773
https://github.com/huggingface/datasets/issues/5771
Support cloud storage for loading datasets
[ "A duplicate of https://github.com/huggingface/datasets/issues/5281" ]
### Feature request It seems that the the current implementation supports cloud storage only for `load_from_disk`. It would be nice if a similar functionality existed in `load_dataset`. ### Motivation Motivation is pretty clear -- let users work with datasets located in the cloud. ### Your contribution I can help implementing this.
5,771
https://github.com/huggingface/datasets/issues/5769
Tiktoken tokenizers are not pickable
[ "Thanks for reporting, @markovalexander.\r\n\r\nUnfortunately, I'm not able to reproduce the issue: the `tiktoken` tokenizer can be used within `Dataset.map`, both in my local machine and in a Colab notebook: https://colab.research.google.com/drive/1DhJroZgk0sNFJ2Mrz-jYgrmh9jblXaCG?usp=sharing\r\n\r\nAre you sure y...
### Describe the bug Since tiktoken tokenizer is not pickable, it is not possible to use it inside `dataset.map()` with multiprocessing enabled. However, you [made](https://github.com/huggingface/datasets/issues/5536) tiktoken's tokenizers pickable in `datasets==2.10.0` for caching. For some reason, this logic does not work in dataset processing and raises `TypeError: cannot pickle 'builtins.CoreBPE' object` ### Steps to reproduce the bug ``` from datasets import load_dataset import tiktoken dataset = load_dataset("stas/openwebtext-10k") enc = tiktoken.get_encoding("gpt2") tokenized = dataset.map( process, remove_columns=['text'], desc="tokenizing the OWT splits", num_proc=2, ) def process(example): ids = enc.encode(example['text']) ids.append(enc.eot_token) out = {'ids': ids, 'len': len(ids)} return out ``` ### Expected behavior starts processing dataset ### Environment info - `datasets` version: 2.11.0 - Platform: Linux-5.15.0-1021-oracle-x86_64-with-glibc2.29 - Python version: 3.8.10 - Huggingface_hub version: 0.13.4 - PyArrow version: 9.0.0 - Pandas version: 2.0.0
5,769
https://github.com/huggingface/datasets/issues/5768
load_dataset("squad") doesn't work in 2.7.1 and 2.10.1
[ "Thanks for reporting, @yaseen157.\r\n\r\nCould you please give the complete error stack trace?", "I am not able to reproduce your issue: the dataset loads perfectly on my local machine and on a Colab notebook: https://colab.research.google.com/drive/1Fbdoa1JdNz8DOdX6gmIsOK1nCT8Abj4O?usp=sharing\r\n```python\r\nI...
### Describe the bug There is an issue that seems to be unique to the "squad" dataset, in which it cannot be loaded using standard methods. This issue is most quickly reproduced from the command line, using the HF examples to verify a dataset is loaded properly. This is not a problem with "squad_v2" dataset for example. ### Steps to reproduce the bug cmd line > $ python -c "from datasets import load_dataset; print(load_dataset('squad', split='train')[0])" OR Python IDE > from datasets import load_dataset > load_dataset("squad") ### Expected behavior I expected to either see the output described here from running the very same command in command line ([https://huggingface.co/docs/datasets/installation]), or any output that does not raise Python's TypeError. There is some funky behaviour in the dataset builder portion of the codebase that means it is trying to import the squad dataset with an incorrect path, or the squad dataset couldn't be downloaded. I'm not really sure what the problem is beyond that. Messing around with caching I did manage to get it to load the dataset once, and then couldn't repeat this. ### Environment info datasets=2.7.1 **or** 2.10.1, python=3.10.8, Linux 3.10.0-1160.36.2.el7.x86_64 **or** Windows 10-64
5,768
https://github.com/huggingface/datasets/issues/5767
How to use Distill-BERT with different datasets?
[ "Closing this one in favor of the same issue opened in the `transformers` repo." ]
### Describe the bug - `transformers` version: 4.11.3 - Platform: Linux-5.4.0-58-generic-x86_64-with-glibc2.29 - Python version: 3.8.10 - PyTorch version (GPU?): 1.12.0+cu102 (True) - Tensorflow version (GPU?): 2.10.0 (True) - Flax version (CPU?/GPU?/TPU?): not installed (NA) - Jax version: not installed - JaxLib version: not installed - Using GPU in script?: <fill in> - Using distributed or parallel set-up in script?: <fill in> ### Steps to reproduce the bug I recently read [this](https://huggingface.co/docs/transformers/quicktour#train-with-tensorflow:~:text=The%20most%20important%20thing%20to%20remember%20is%20you%20need%20to%20instantiate%20a%20tokenizer%20with%20the%20same%20model%20name%20to%20ensure%20you%E2%80%99re%20using%20the%20same%20tokenization%20rules%20a%20model%20was%20pretrained%20with.) and was wondering how to use distill-BERT (which is pre-trained with imdb dataset) with a different dataset (for eg. [this](https://huggingface.co/datasets/yhavinga/imdb_dutch) dataset)? ### Expected behavior Distill-BERT should work with different datasets. ### Environment info - `datasets` version: 1.12.1 - Platform: Linux-5.4.0-58-generic-x86_64-with-glibc2.29 - Python version: 3.8.10 - PyArrow version: 11.0.0
5,767
https://github.com/huggingface/datasets/issues/5766
Support custom feature types
[ "Hi ! Interesting :) What kind of new types would you like to use ?\r\n\r\nNote that you can already implement your own decoding by using `set_transform` that can decode data on-the-fly when rows are accessed", "An interesting proposal indeed. \r\n\r\nPandas and Polars have the \"extension API\", so doing somethi...
### Feature request I think it would be nice to allow registering custom feature types with the 🤗 Datasets library. For example, allow to do something along the following lines: ``` from datasets.features import register_feature_type # this would be a new function @register_feature_type class CustomFeatureType: def encode_example(self, value): """User-provided logic to encode an example of this feature.""" pass def decode_example(self, value, token_per_repo_id=None): """User-provided logic to decode an example of this feature.""" pass ``` ### Motivation Users of 🤗 Datasets, such as myself, may want to use the library to load datasets with unsupported feature types (i.e., beyond `ClassLabel`, `Image`, or `Audio`). This would be useful for prototyping new feature types and for feature types that aren't used widely enough to warrant inclusion in 🤗 Datasets. At the moment, this is only possible by monkey-patching 🤗 Datasets, which obfuscates the code and is prone to breaking with library updates. It also requires the user to write some custom code which could be easily avoided. ### Your contribution I would be happy to contribute this feature. My proposed solution would involve changing the following call to `globals()` to an explicit feature type registry, which a user-facing `register_feature_type` decorator could update. https://github.com/huggingface/datasets/blob/fd893098627230cc734f6009ad04cf885c979ac4/src/datasets/features/features.py#L1329 I would also provide an abstract base class for custom feature types which users could inherit. This would have at least an `encode_example` method and a `decode_example` method, similar to `Image` or `Audio`. The existing `encode_nested_example` and `decode_nested_example` functions would also need to be updated to correctly call the corresponding functions for the new type.
5,766
https://github.com/huggingface/datasets/issues/5765
ValueError: You should supply an encoding or a list of encodings to this method that includes input_ids, but you provided ['text']
[ "You need to remove the `text` and `text_en` columns before passing the dataset to the `DataLoader` to avoid this error:\r\n```python\r\ntokenized_datasets = tokenized_datasets.remove_columns([\"text\", \"text_en\"])\r\n```\r\n", "Thanks @mariosasko. Now I am getting this error:\r\n\r\n```\r\nTraceback (most rece...
### Describe the bug Following is my code that I am trying to run, but facing an error (have attached the whole error below): My code: ``` from collections import OrderedDict import warnings import flwr as fl import torch import numpy as np import random from torch.utils.data import DataLoader from datasets import load_dataset, load_metric from transformers import AutoTokenizer, DataCollatorWithPadding from transformers import AutoModelForSequenceClassification from transformers import AdamW #from transformers import tokenized_datasets warnings.filterwarnings("ignore", category=UserWarning) # DEVICE = torch.device("cuda:0" if torch.cuda.is_available() else "cpu") DEVICE = "cpu" CHECKPOINT = "distilbert-base-uncased" # transformer model checkpoint def load_data(): """Load IMDB data (training and eval)""" raw_datasets = load_dataset("yhavinga/imdb_dutch") raw_datasets = raw_datasets.shuffle(seed=42) # remove unnecessary data split del raw_datasets["unsupervised"] tokenizer = AutoTokenizer.from_pretrained(CHECKPOINT) def tokenize_function(examples): return tokenizer(examples["text"], truncation=True) # random 100 samples population = random.sample(range(len(raw_datasets["train"])), 100) tokenized_datasets = raw_datasets.map(tokenize_function, batched=True) tokenized_datasets["train"] = tokenized_datasets["train"].select(population) tokenized_datasets["test"] = tokenized_datasets["test"].select(population) # tokenized_datasets = tokenized_datasets.remove_columns("text") # tokenized_datasets = tokenized_datasets.rename_column("label", "labels") tokenized_datasets = tokenized_datasets.remove_columns("attention_mask") tokenized_datasets = tokenized_datasets.remove_columns("input_ids") tokenized_datasets = tokenized_datasets.remove_columns("label") tokenized_datasets = tokenized_datasets.remove_columns("text_en") # tokenized_datasets = tokenized_datasets.remove_columns(raw_datasets["train"].column_names) data_collator = DataCollatorWithPadding(tokenizer=tokenizer) trainloader = DataLoader( tokenized_datasets["train"], shuffle=True, batch_size=32, collate_fn=data_collator, ) testloader = DataLoader( tokenized_datasets["test"], batch_size=32, collate_fn=data_collator ) return trainloader, testloader def train(net, trainloader, epochs): optimizer = AdamW(net.parameters(), lr=5e-4) net.train() for _ in range(epochs): for batch in trainloader: batch = {k: v.to(DEVICE) for k, v in batch.items()} outputs = net(**batch) loss = outputs.loss loss.backward() optimizer.step() optimizer.zero_grad() def test(net, testloader): metric = load_metric("accuracy") loss = 0 net.eval() for batch in testloader: batch = {k: v.to(DEVICE) for k, v in batch.items()} with torch.no_grad(): outputs = net(**batch) logits = outputs.logits loss += outputs.loss.item() predictions = torch.argmax(logits, dim=-1) metric.add_batch(predictions=predictions, references=batch["labels"]) loss /= len(testloader.dataset) accuracy = metric.compute()["accuracy"] return loss, accuracy def main(): net = AutoModelForSequenceClassification.from_pretrained( CHECKPOINT, num_labels=2 ).to(DEVICE) trainloader, testloader = load_data() # Flower client class IMDBClient(fl.client.NumPyClient): def get_parameters(self, config): return [val.cpu().numpy() for _, val in net.state_dict().items()] def set_parameters(self, parameters): params_dict = zip(net.state_dict().keys(), parameters) state_dict = OrderedDict({k: torch.Tensor(v) for k, v in params_dict}) net.load_state_dict(state_dict, strict=True) def fit(self, parameters, config): self.set_parameters(parameters) print("Training Started...") train(net, trainloader, epochs=1) print("Training Finished.") return self.get_parameters(config={}), len(trainloader), {} def evaluate(self, parameters, config): self.set_parameters(parameters) loss, accuracy = test(net, testloader) return float(loss), len(testloader), {"accuracy": float(accuracy)} # Start client fl.client.start_numpy_client(server_address="localhost:8080", client=IMDBClient()) if __name__ == "__main__": main() ``` Error: ``` Traceback (most recent call last): File "client_2.py", line 136, in <module> main() File "client_2.py", line 132, in main fl.client.start_numpy_client(server_address="localhost:8080", client=IMDBClient()) File "/home/saurav/.local/lib/python3.8/site-packages/flwr/client/app.py", line 208, in start_numpy_client start_client( File "/home/saurav/.local/lib/python3.8/site-packages/flwr/client/app.py", line 142, in start_client client_message, sleep_duration, keep_going = handle( File "/home/saurav/.local/lib/python3.8/site-packages/flwr/client/grpc_client/message_handler.py", line 68, in handle return _fit(client, server_msg.fit_ins), 0, True File "/home/saurav/.local/lib/python3.8/site-packages/flwr/client/grpc_client/message_handler.py", line 157, in _fit fit_res = client.fit(fit_ins) File "/home/saurav/.local/lib/python3.8/site-packages/flwr/client/app.py", line 252, in _fit results = self.numpy_client.fit(parameters, ins.config) # type: ignore File "client_2.py", line 122, in fit train(net, trainloader, epochs=1) File "client_2.py", line 76, in train for batch in trainloader: File "/home/saurav/.local/lib/python3.8/site-packages/torch/utils/data/dataloader.py", line 652, in __next__ data = self._next_data() File "/home/saurav/.local/lib/python3.8/site-packages/torch/utils/data/dataloader.py", line 692, in _next_data data = self._dataset_fetcher.fetch(index) # may raise StopIteration File "/home/saurav/.local/lib/python3.8/site-packages/torch/utils/data/_utils/fetch.py", line 52, in fetch return self.collate_fn(data) File "/home/saurav/.local/lib/python3.8/site-packages/transformers/data/data_collator.py", line 221, in __call__ batch = self.tokenizer.pad( File "/home/saurav/.local/lib/python3.8/site-packages/transformers/tokenization_utils_base.py", line 2713, in pad raise ValueError( ValueError: You should supply an encoding or a list of encodings to this method that includes input_ids, but you provided ['text'] ``` ### Steps to reproduce the bug Run the above code. ### Expected behavior Don't know, doing it for the first time. ### Environment info - `datasets` version: 1.12.1 - Platform: Linux-5.4.0-58-generic-x86_64-with-glibc2.29 - Python version: 3.8.10 - PyArrow version: 11.0.0
5,765
https://github.com/huggingface/datasets/issues/5764
ConnectionError: Couldn't reach https://www.dropbox.com/s/zts98j4vkqtsns6/aclImdb_v2.tar?dl=1
[ "Thanks for reporting, @sauravtii.\r\n\r\nUnfortunately, I'm not able to reproduce the issue:\r\n```python\r\nIn [1]: from datasets import load_dataset\r\n\r\nIn [2]: ds = load_dataset(\"josianem/imdb\")\r\n\r\nIn [2]: ds\r\nOut[2]: \r\nDatasetDict({\r\n train: Dataset({\r\n features: ['text', 'label'],\r...
### Describe the bug I want to use this (https://huggingface.co/datasets/josianem/imdb) dataset therefore I am trying to load it using the following code: ``` dataset = load_dataset("josianem/imdb") ``` The dataset is not getting loaded and gives the error message as the following: ``` Traceback (most recent call last): File "sample.py", line 3, in <module> dataset = load_dataset("josianem/imdb") File "/home/saurav/.local/lib/python3.8/site-packages/datasets/load.py", line 1112, in load_dataset builder_instance.download_and_prepare( File "/home/saurav/.local/lib/python3.8/site-packages/datasets/builder.py", line 636, in download_and_prepare self._download_and_prepare( File "/home/saurav/.local/lib/python3.8/site-packages/datasets/builder.py", line 704, in _download_and_prepare split_generators = self._split_generators(dl_manager, **split_generators_kwargs) File "/home/saurav/.cache/huggingface/modules/datasets_modules/datasets/imdb/cc6ab4acab2799be15d5d217c24548b856156dafdc850165fdc4f2031f27ff2f/imdb.py", line 79, in _split_generators archive = dl_manager.download(_DOWNLOAD_URL) File "/home/saurav/.local/lib/python3.8/site-packages/datasets/utils/download_manager.py", line 196, in download downloaded_path_or_paths = map_nested( File "/home/saurav/.local/lib/python3.8/site-packages/datasets/utils/py_utils.py", line 197, in map_nested return function(data_struct) File "/home/saurav/.local/lib/python3.8/site-packages/datasets/utils/download_manager.py", line 217, in _download return cached_path(url_or_filename, download_config=download_config) File "/home/saurav/.local/lib/python3.8/site-packages/datasets/utils/file_utils.py", line 289, in cached_path output_path = get_from_cache( File "/home/saurav/.local/lib/python3.8/site-packages/datasets/utils/file_utils.py", line 606, in get_from_cache raise ConnectionError("Couldn't reach {}".format(url)) ConnectionError: Couldn't reach https://www.dropbox.com/s/zts98j4vkqtsns6/aclImdb_v2.tar?dl=1 ``` ### Steps to reproduce the bug You can reproduce the error by using the following code: ``` from datasets import load_dataset, load_metric dataset = load_dataset("josianem/imdb") ``` ### Expected behavior The dataset should get loaded (I am using this dataset for the first time so not much aware of the exact behavior). ### Environment info - `datasets` version: 1.12.1 - Platform: Linux-5.4.0-58-generic-x86_64-with-glibc2.29 - Python version: 3.8.10 - PyArrow version: 11.0.0
5,764
https://github.com/huggingface/datasets/issues/5762
Not able to load the pile
[ "Thanks for reporting, @surya-narayanan.\r\n\r\nI see you already started a discussion about this on the Community tab of the corresponding dataset: https://huggingface.co/datasets/EleutherAI/the_pile/discussions/10\r\nLet's continue the discussion there!" ]
### Describe the bug Got this error when I am trying to load the pile dataset ``` TypeError: Couldn't cast array of type struct<file: string, id: string> to {'id': Value(dtype='string', id=None)} ``` ### Steps to reproduce the bug Please visit the following sample notebook https://colab.research.google.com/drive/1JHcjawcHL6QHhi5VcqYd07W2QCEj2nWK#scrollTo=ulJP3eJCI-tB ### Expected behavior The pile should work ### Environment info - `datasets` version: 2.11.0 - Platform: Linux-5.10.147+-x86_64-with-glibc2.31 - Python version: 3.9.16 - Huggingface_hub version: 0.13.4 - PyArrow version: 9.0.0 - Pandas version: 1.5.3
5,762
https://github.com/huggingface/datasets/issues/5761
One or several metadata.jsonl were found, but not in the same directory or in a parent directory
[ "Also, when generated from a zip archive, the dataset contains only a few images. In my case, 20 versus 2000+ contained in the archive. The generation from folders works as expected.", "Thanks for reporting, @blghtr.\r\n\r\nYou should include the `metadata.jsonl` in your ZIP archives, at the root level directory....
### Describe the bug An attempt to generate a dataset from a zip archive using imagefolder and metadata.jsonl does not lead to the expected result. Tried all possible locations of the json file: the file in the archive is ignored (generated dataset contains only images), the file next to the archive like [here](https://huggingface.co/docs/datasets/image_dataset#imagefolder) leads to an error: ``` --------------------------------------------------------------------------- ValueError Traceback (most recent call last) File ~\PycharmProjects\testproj\venv\lib\site-packages\datasets\builder.py:1610, in GeneratorBasedBuilder._prepare_split_single(self, gen_kwargs, fpath, file_format, max_shard_size, split_info, check_duplicate_keys, job_id) 1609 _time = time.time() -> 1610 for key, record in generator: 1611 if max_shard_size is not None and writer._num_bytes > max_shard_size: File ~\PycharmProjects\testproj\venv\lib\site-packages\datasets\packaged_modules\folder_based_builder\folder_based_builder.py:370, in FolderBasedBuilder._generate_examples(self, files, metadata_files, split_name, add_metadata, add_labels) 369 else: --> 370 raise ValueError( 371 f"One or several metadata.{metadata_ext} were found, but not in the same directory or in a parent directory of {downloaded_dir_file}." 372 ) 373 if metadata_dir is not None and downloaded_metadata_file is not None: ValueError: One or several metadata.jsonl were found, but not in the same directory or in a parent directory of C:\Users\User\.cache\huggingface\datasets\downloads\extracted\f7fb7de25fb28ae63089974524f2d271a39d83888bc456d04aa3b3d45f33e6a6\ff0745a0-a741-4d9e-b228-a93b851adf61.png. The above exception was the direct cause of the following exception: DatasetGenerationError Traceback (most recent call last) Cell In[3], line 1 ----> 1 dataset = load_dataset("imagefolder", data_dir=r'C:\Users\User\data') File ~\PycharmProjects\testproj\venv\lib\site-packages\datasets\load.py:1791, in load_dataset(path, name, data_dir, data_files, split, cache_dir, features, download_config, download_mode, verification_mode, ignore_verifications, keep_in_memory, save_infos, revision, use_auth_token, task, streaming, num_proc, storage_options, **config_kwargs) 1788 try_from_hf_gcs = path not in _PACKAGED_DATASETS_MODULES 1790 # Download and prepare data -> 1791 builder_instance.download_and_prepare( 1792 download_config=download_config, 1793 download_mode=download_mode, 1794 verification_mode=verification_mode, 1795 try_from_hf_gcs=try_from_hf_gcs, 1796 num_proc=num_proc, 1797 storage_options=storage_options, 1798 ) 1800 # Build dataset for splits 1801 keep_in_memory = ( 1802 keep_in_memory if keep_in_memory is not None else is_small_dataset(builder_instance.info.dataset_size) 1803 ) File ~\PycharmProjects\testproj\venv\lib\site-packages\datasets\builder.py:891, in DatasetBuilder.download_and_prepare(self, output_dir, download_config, download_mode, verification_mode, ignore_verifications, try_from_hf_gcs, dl_manager, base_path, use_auth_token, file_format, max_shard_size, num_proc, storage_options, **download_and_prepare_kwargs) 889 if num_proc is not None: 890 prepare_split_kwargs["num_proc"] = num_proc --> 891 self._download_and_prepare( 892 dl_manager=dl_manager, 893 verification_mode=verification_mode, 894 **prepare_split_kwargs, 895 **download_and_prepare_kwargs, 896 ) 897 # Sync info 898 self.info.dataset_size = sum(split.num_bytes for split in self.info.splits.values()) File ~\PycharmProjects\testproj\venv\lib\site-packages\datasets\builder.py:1651, in GeneratorBasedBuilder._download_and_prepare(self, dl_manager, verification_mode, **prepare_splits_kwargs) 1650 def _download_and_prepare(self, dl_manager, verification_mode, **prepare_splits_kwargs): -> 1651 super()._download_and_prepare( 1652 dl_manager, 1653 verification_mode, 1654 check_duplicate_keys=verification_mode == VerificationMode.BASIC_CHECKS 1655 or verification_mode == VerificationMode.ALL_CHECKS, 1656 **prepare_splits_kwargs, 1657 ) File ~\PycharmProjects\testproj\venv\lib\site-packages\datasets\builder.py:986, in DatasetBuilder._download_and_prepare(self, dl_manager, verification_mode, **prepare_split_kwargs) 982 split_dict.add(split_generator.split_info) 984 try: 985 # Prepare split will record examples associated to the split --> 986 self._prepare_split(split_generator, **prepare_split_kwargs) 987 except OSError as e: 988 raise OSError( 989 "Cannot find data file. " 990 + (self.manual_download_instructions or "") 991 + "\nOriginal error:\n" 992 + str(e) 993 ) from None File ~\PycharmProjects\testproj\venv\lib\site-packages\datasets\builder.py:1490, in GeneratorBasedBuilder._prepare_split(self, split_generator, check_duplicate_keys, file_format, num_proc, max_shard_size) 1488 gen_kwargs = split_generator.gen_kwargs 1489 job_id = 0 -> 1490 for job_id, done, content in self._prepare_split_single( 1491 gen_kwargs=gen_kwargs, job_id=job_id, **_prepare_split_args 1492 ): 1493 if done: 1494 result = content File ~\PycharmProjects\testproj\venv\lib\site-packages\datasets\builder.py:1646, in GeneratorBasedBuilder._prepare_split_single(self, gen_kwargs, fpath, file_format, max_shard_size, split_info, check_duplicate_keys, job_id) 1644 if isinstance(e, SchemaInferenceError) and e.__context__ is not None: 1645 e = e.__context__ -> 1646 raise DatasetGenerationError("An error occurred while generating the dataset") from e 1648 yield job_id, True, (total_num_examples, total_num_bytes, writer._features, num_shards, shard_lengths) DatasetGenerationError: An error occurred while generating the dataset ``` ### Steps to reproduce the bug 1. Organize directory structure like in the docs: folder/metadata.jsonl folder/train.zip 2. Run load_dataset("imagefolder", data_dir='folder/metadata.jsonl', split='train') ### Expected behavior Dataset generated with all additional features from metadata.jsonl ### Environment info - `datasets` version: 2.11.0 - Platform: Windows-10-10.0.22621-SP0 - Python version: 3.9.0 - Huggingface_hub version: 0.13.4 - PyArrow version: 11.0.0 - Pandas version: 1.5.3
5,761
https://github.com/huggingface/datasets/issues/5760
Multi-image loading in Imagefolder dataset
[ "Supporting this could be useful (I remember a use-case for this on the Hub). Do you agree @polinaeterna? \r\n\r\nImplementing this should be possible if we iterate over metadata files and build image/audio file paths instead of iterating over image/audio files and looking for the corresponding entries in metadata ...
### Feature request Extend the `imagefolder` dataloading script to support loading multiple images per dataset entry. This only really makes sense if a metadata file is present. Currently you can use the following format (example `metadata.jsonl`: ``` {'file_name': 'path_to_image.png', 'metadata': ...} ... ``` which will return a batch with key `image` and any other metadata. I would propose extending `file_name` to also accept a list of files, which would return a batch with key `images` and any other metadata. ### Motivation This is useful for example in segmentation tasks in computer vision models, or in text-to-image models that also accept conditioning signals such as another image, feature map, or similar. Currently if I want to do this, I would need to write a custom dataset, rather than just use `imagefolder`. ### Your contribution Would be open to doing a PR, but also happy for someone else to take it as I am not familiar with the datasets library.
5,760
https://github.com/huggingface/datasets/issues/5759
Can I load in list of list of dict format?
[ "Thanks for reporting, @LZY-the-boys.\r\n\r\nCould you please give more details about what is your intended dataset structure? What are the names of the columns and the value of each row?\r\n\r\nCurrently, the JSON-Lines format is supported:\r\n- Each line correspond to one row of the dataset\r\n- Each line is comp...
### Feature request my jsonl dataset has following format: ``` [{'input':xxx, 'output':xxx},{'input:xxx,'output':xxx},...] [{'input':xxx, 'output':xxx},{'input:xxx,'output':xxx},...] ``` I try to use `datasets.load_dataset('json', data_files=path)` or `datasets.Dataset.from_json`, it raises ``` File "site-packages/datasets/arrow_dataset.py", line 1078, in from_json ).read() File "site-packages/datasets/io/json.py", line 59, in read self.builder.download_and_prepare( File "site-packages/datasets/builder.py", line 872, in download_and_prepare self._download_and_prepare( File "site-packages/datasets/builder.py", line 967, in _download_and_prepare self._prepare_split(split_generator, **prepare_split_kwargs) File "site-packages/datasets/builder.py", line 1749, in _prepare_split for job_id, done, content in self._prepare_split_single( File "site-packages/datasets/builder.py", line 1892, in _prepare_split_single raise DatasetGenerationError("An error occurred while generating the dataset") from e datasets.builder.DatasetGenerationError: An error occurred while generating the dataset ``` ### Motivation I wanna use features like `Datasets.map` or `Datasets.shuffle`, so i need the dataset in memory to be `arrow_dataset.Datasets` format ### Your contribution PR
5,759
https://github.com/huggingface/datasets/issues/5757
Tilde (~) is not supported
[]
### Describe the bug It seems that `~` is not recognized correctly in local paths. Whenever I try to use it I get an exception ### Steps to reproduce the bug ```python load_dataset("imagefolder", data_dir="~/data/my_dataset") ``` Will generate the following error: ``` EmptyDatasetError: The directory at /path/to/cwd/~/data/datasets/clementine_tagged_per_cam doesn't contain any data files ``` ### Expected behavior Load the dataset. ### Environment info datasets==2.11.0
5,757
https://github.com/huggingface/datasets/issues/5756
Calling shuffle on a IterableDataset with streaming=True, gives "ValueError: cannot reshape array"
[ "Hi! I've merged a PR on the Hub with a fix: https://huggingface.co/datasets/fashion_mnist/discussions/3", "Thanks, this appears to have fixed the issue.\r\n\r\nI've created a PR for the same change in the mnist dataset: https://huggingface.co/datasets/mnist/discussions/3/files" ]
### Describe the bug When calling shuffle on a IterableDataset with streaming=True, I get the following error: ``` Traceback (most recent call last): File "<stdin>", line 1, in <module> File "/home/administrator/Documents/Projects/huggingface/jax-diffusers-sprint-consistency-models/virtualenv/lib/python3.10/site-packages/datasets/iterable_dataset.py", line 937, in __iter__ for key, example in ex_iterable: File "/home/administrator/Documents/Projects/huggingface/jax-diffusers-sprint-consistency-models/virtualenv/lib/python3.10/site-packages/datasets/iterable_dataset.py", line 627, in __iter__ for x in self.ex_iterable: File "/home/administrator/Documents/Projects/huggingface/jax-diffusers-sprint-consistency-models/virtualenv/lib/python3.10/site-packages/datasets/iterable_dataset.py", line 138, in __iter__ yield from self.generate_examples_fn(**kwargs_with_shuffled_shards) File "/home/administrator/.cache/huggingface/modules/datasets_modules/datasets/mnist/fda16c03c4ecfb13f165ba7e29cf38129ce035011519968cdaf74894ce91c9d4/mnist.py", line 111, in _generate_examples images = np.frombuffer(f.read(), dtype=np.uint8).reshape(size, 28, 28) ValueError: cannot reshape array of size 59992 into shape (60000,28,28) ``` Tested with the fashion_mnist and mnist datasets ### Steps to reproduce the bug Code to reproduce ```python from datasets import load_dataset SHUFFLE_SEED = 42 SHUFFLE_BUFFER_SIZE = 10_000 dataset = load_dataset('fashion_mnist', streaming=True).shuffle(seed=SHUFFLE_SEED, buffer_size=SHUFFLE_BUFFER_SIZE) next(iter(dataset['train'])) ``` ### Expected behavior A random item from the dataset and no error ### Environment info - `datasets` version: 2.11.0 - Platform: Linux-5.15.0-69-generic-x86_64-with-glibc2.35 - Python version: 3.10.6 - Huggingface_hub version: 0.13.4 - PyArrow version: 11.0.0 - Pandas version: 2.0.0
5,756
https://github.com/huggingface/datasets/issues/5755
ImportError: cannot import name 'DeprecatedEnum' from 'datasets.utils.deprecation_utils'
[ "update the version. fix" ]
### Describe the bug The module moved to new place? ### Steps to reproduce the bug in the import step, ```python from datasets.utils.deprecation_utils import DeprecatedEnum ``` error: ``` ImportError: cannot import name 'DeprecatedEnum' from 'datasets.utils.deprecation_utils' ``` ### Expected behavior import successfully ### Environment info python==3.9.16 datasets==1.18.3
5,755
https://github.com/huggingface/datasets/issues/5753
[IterableDatasets] Add column followed by interleave datasets gives bogus outputs
[ "Problem with the code snippet! Using global vars and functions was not a good idea with iterable datasets!\r\n\r\nIf we update to:\r\n```python\r\nfrom datasets import load_dataset\r\n\r\noriginal_dataset = load_dataset(\"librispeech_asr\", \"clean\", split=\"validation\", streaming=True)\r\n\r\n# now add a new co...
### Describe the bug If we add a new column to our iterable dataset using the hack described in #5752, when we then interleave datasets the new column is pinned to one value. ### Steps to reproduce the bug What we're going to do here is: 1. Load an iterable dataset in streaming mode (`original_dataset`) 2. Add a new column to this dataset using the hack in #5752 (`modified_dataset_1`) 3. Create another new dataset by adding a column with the same key but different values (`modified_dataset_2`) 4. Interleave our new datasets (`modified_dataset_1` + `modified_dataset_2`) 5. Check the value of our newly added column (`new_column`) ```python from datasets import load_dataset # load an iterable dataset original_dataset = load_dataset("librispeech_asr", "clean", split="validation", streaming=True) # now add a new column to our streaming dataset using our hack from 5752 name = "new_column" column = [f"new dataset 1, row {i}" for i in range(50)] new_features = original_dataset.features.copy() new_features[name] = new_features["file"] # I know that "file" has the right column type to match our new feature def add_column_fn(example, idx): if name in example: raise ValueError(f"Error when adding {name}: column {name} is already in the dataset.") return {name: column[idx]} modified_dataset_1 = original_dataset.map(add_column_fn, with_indices=True, features=new_features) # now create a second modified dataset using the same trick column = [f"new dataset 2, row {i}" for i in range(50)] def add_column_fn(example, idx): if name in example: raise ValueError(f"Error when adding {name}: column {name} is already in the dataset.") return {name: column[idx]} modified_dataset_2 = original_dataset.map(add_column_fn, with_indices=True, features=new_features) # interleave these datasets interleaved_dataset = interleave_datasets([modified_dataset_1, modified_dataset_2]) # now check what the value of the added column is for i, sample in enumerate(interleaved_dataset): print(sample["new_column"]) if i == 10: break ``` **Print Output:** ``` new dataset 2, row 0 new dataset 2, row 0 new dataset 2, row 1 new dataset 2, row 1 new dataset 2, row 2 new dataset 2, row 2 new dataset 2, row 3 new dataset 2, row 3 new dataset 2, row 4 new dataset 2, row 4 new dataset 2, row 5 ``` We see that we only get outputs from our second dataset. ### Expected behavior We should interleave between dataset 1 and 2 and increase in row value: ``` new dataset 1, row 0 new dataset 2, row 0 new dataset 1, row 1 new dataset 2, row 1 new dataset 1, row 2 new dataset 2, row 2 ... ``` ### Environment info - datasets version: 2.10.2.dev0 - Platform: Linux-4.19.0-23-cloud-amd64-x86_64-with-glibc2.28 - Python version: 3.9.16 - Huggingface_hub version: 0.13.3 - PyArrow version: 10.0.1 - Pandas version: 1.5.2
5,753
https://github.com/huggingface/datasets/issues/5752
Streaming dataset looses `.feature` method after `.add_column`
[ "I believe the issue resides in this line:\r\nhttps://github.com/huggingface/datasets/blob/7c3a9b057c476c40d157bd7a5d57f49066239df0/src/datasets/iterable_dataset.py#L1415\r\n\r\nIf we pass the **new** features of the dataset to the `.map` method we can return the features after adding a column, e.g.:\r\n```python\r...
### Describe the bug After appending a new column to a streaming dataset using `.add_column`, we can no longer access the list of dataset features using the `.feature` method. ### Steps to reproduce the bug ```python from datasets import load_dataset original_dataset = load_dataset("librispeech_asr", "clean", split="validation", streaming=True) print(original_dataset.features.keys()) # now add a new column to our streaming dataset modified_dataset = original_dataset.add_column("new_column", ["some random text" for _ in range(50)]) print(modified_dataset.features.keys()) ``` **Print Output:** ``` dict_keys(['file', 'audio', 'text', 'speaker_id', 'chapter_id', 'id']) --------------------------------------------------------------------------- AttributeError Traceback (most recent call last) Cell In[1], line 8 6 # now add a new column to our streaming dataset 7 modified_dataset = original_dataset.add_column("new_column", ["some random text" for _ in range(50)]) ----> 8 print(modified_dataset.features.keys()) AttributeError: 'NoneType' object has no attribute 'keys' ``` We see that we get the features for the original dataset, but not the modified one with the added column. ### Expected behavior Features should be persevered after adding a new column, i.e. calling: ```python print(modified_dataset.features.keys()) ``` Should return: ``` dict_keys(['file', 'audio', 'text', 'speaker_id', 'chapter_id', 'id', 'new_column']) ``` ### Environment info - `datasets` version: 2.10.2.dev0 - Platform: Linux-4.19.0-23-cloud-amd64-x86_64-with-glibc2.28 - Python version: 3.9.16 - Huggingface_hub version: 0.13.3 - PyArrow version: 10.0.1 - Pandas version: 1.5.2
5,752
https://github.com/huggingface/datasets/issues/5750
Fail to create datasets from a generator when using Google Big Query
[ "`from_generator` expects a generator function, not a generator object, so this should work:\r\n```python\r\nfrom datasets import Dataset\r\nfrom google.cloud import bigquery\r\n\r\nclient = bigquery.Client()\r\n\r\ndef gen()\r\n # Perform a query.\r\n QUERY = (\r\n 'SELECT name FROM `bigquery-public-d...
### Describe the bug Creating a dataset from a generator using `Dataset.from_generator()` fails if the generator is the [Google Big Query Python client](https://cloud.google.com/python/docs/reference/bigquery/latest). The problem is that the Big Query client is not pickable. And the function `create_config_id` tries to get a hash of the generator by pickling it. So the following error is generated: ``` _pickle.PicklingError: Pickling client objects is explicitly not supported. Clients have non-trivial state that is local and unpickleable. ``` ### Steps to reproduce the bug 1. Install the big query client and datasets `pip install google-cloud-bigquery datasets` 2. Run the following code: ```py from datasets import Dataset from google.cloud import bigquery client = bigquery.Client() # Perform a query. QUERY = ( 'SELECT name FROM `bigquery-public-data.usa_names.usa_1910_2013` ' 'WHERE state = "TX" ' 'LIMIT 100') query_job = client.query(QUERY) # API request rows = query_job.result() # Waits for query to finish ds = Dataset.from_generator(rows) for r in ds: print(r) ``` ### Expected behavior Two options: 1. Ignore the pickle errors when computing the hash 2. Provide a scape hutch so that we can avoid calculating the hash for the generator. For example, allowing to provide a hash from the user. ### Environment info python 3.9 google-cloud-bigquery 3.9.0 datasets 2.11.0
5,750
https://github.com/huggingface/datasets/issues/5749
AttributeError: 'Version' object has no attribute 'match'
[ "I got the same error, and the official website for visual genome is down. Did you solve this problem? ", "I am in the same situation now :( ", "Thanks for reporting, @gulnaz-zh.\r\n\r\nI am investigating it.", "The host server is down: https://visualgenome.org/\r\n\r\nWe are contacting the dataset authors.",...
### Describe the bug When I run from datasets import load_dataset data = load_dataset("visual_genome", 'region_descriptions_v1.2.0') AttributeError: 'Version' object has no attribute 'match' ### Steps to reproduce the bug from datasets import load_dataset data = load_dataset("visual_genome", 'region_descriptions_v1.2.0') ### Expected behavior This is error trace: Downloading and preparing dataset visual_genome/region_descriptions_v1.2.0 to C:/Users/Acer/.cache/huggingface/datasets/visual_genome/region_descriptions_v1.2.0/1.2.0/136fe5b83f6691884566c5530313288171e053a3b33bfe3ea2e4c8b39abaf7f3... --------------------------------------------------------------------------- AttributeError Traceback (most recent call last) Cell In[6], line 1 ----> 1 data = load_dataset("visual_genome", 'region_descriptions_v1.2.0') File ~\.conda\envs\aai\Lib\site-packages\datasets\load.py:1791, in load_dataset(path, name, data_dir, data_files, split, cache_dir, features, download_config, download_mode, verification_mode, ignore_verifications, keep_in_memory, save_infos, revision, use_auth_token, task, streaming, num_proc, storage_options, **config_kwargs) 1788 try_from_hf_gcs = path not in _PACKAGED_DATASETS_MODULES 1790 # Download and prepare data -> 1791 builder_instance.download_and_prepare( 1792 download_config=download_config, 1793 download_mode=download_mode, 1794 verification_mode=verification_mode, 1795 try_from_hf_gcs=try_from_hf_gcs, 1796 num_proc=num_proc, 1797 storage_options=storage_options, 1798 ) 1800 # Build dataset for splits 1801 keep_in_memory = ( 1802 keep_in_memory if keep_in_memory is not None else is_small_dataset(builder_instance.info.dataset_size) 1803 ) File ~\.conda\envs\aai\Lib\site-packages\datasets\builder.py:891, in DatasetBuilder.download_and_prepare(self, output_dir, download_config, download_mode, verification_mode, ignore_verifications, try_from_hf_gcs, dl_manager, base_path, use_auth_token, file_format, max_shard_size, num_proc, storage_options, **download_and_prepare_kwargs) 889 if num_proc is not None: 890 prepare_split_kwargs["num_proc"] = num_proc --> 891 self._download_and_prepare( 892 dl_manager=dl_manager, 893 verification_mode=verification_mode, 894 **prepare_split_kwargs, 895 **download_and_prepare_kwargs, 896 ) 897 # Sync info 898 self.info.dataset_size = sum(split.num_bytes for split in self.info.splits.values()) File ~\.conda\envs\aai\Lib\site-packages\datasets\builder.py:1651, in GeneratorBasedBuilder._download_and_prepare(self, dl_manager, verification_mode, **prepare_splits_kwargs) 1650 def _download_and_prepare(self, dl_manager, verification_mode, **prepare_splits_kwargs): -> 1651 super()._download_and_prepare( 1652 dl_manager, 1653 verification_mode, 1654 check_duplicate_keys=verification_mode == VerificationMode.BASIC_CHECKS 1655 or verification_mode == VerificationMode.ALL_CHECKS, 1656 **prepare_splits_kwargs, 1657 ) File ~\.conda\envs\aai\Lib\site-packages\datasets\builder.py:964, in DatasetBuilder._download_and_prepare(self, dl_manager, verification_mode, **prepare_split_kwargs) 962 split_dict = SplitDict(dataset_name=self.name) 963 split_generators_kwargs = self._make_split_generators_kwargs(prepare_split_kwargs) --> 964 split_generators = self._split_generators(dl_manager, **split_generators_kwargs) 966 # Checksums verification 967 if verification_mode == VerificationMode.ALL_CHECKS and dl_manager.record_checksums: File ~\.cache\huggingface\modules\datasets_modules\datasets\visual_genome\136fe5b83f6691884566c5530313288171e053a3b33bfe3ea2e4c8b39abaf7f3\visual_genome.py:377, in VisualGenome._split_generators(self, dl_manager) 375 def _split_generators(self, dl_manager): 376 # Download image meta datas. --> 377 image_metadatas_dir = dl_manager.download_and_extract(self.config.image_metadata_url) 378 image_metadatas_file = os.path.join( 379 image_metadatas_dir, _get_decompressed_filename_from_url(self.config.image_metadata_url) 380 ) 382 # Download annotations File ~\.cache\huggingface\modules\datasets_modules\datasets\visual_genome\136fe5b83f6691884566c5530313288171e053a3b33bfe3ea2e4c8b39abaf7f3\visual_genome.py:328, in VisualGenomeConfig.image_metadata_url(self) 326 @property 327 def image_metadata_url(self): --> 328 if not self.version.match(_LATEST_VERSIONS["image_metadata"]): 329 logger.warning( 330 f"Latest image metadata version is {_LATEST_VERSIONS['image_metadata']}. Trying to generate a dataset of version: {self.version}. Please double check that image data are unchanged between the two versions." 331 ) 332 return f"{_BASE_ANNOTATION_URL}/image_data.json.zip" ### Environment info datasets 2.11.0 python 3.11.3
5,749
https://github.com/huggingface/datasets/issues/5744
[BUG] With Pandas 2.0.0, `load_dataset` raises `TypeError: read_csv() got an unexpected keyword argument 'mangle_dupe_cols'`
[ "Thanks for reporting, @keyboardAnt.\r\n\r\nWe haven't noticed any crash in our CI tests. Could you please indicate specifically the `load_dataset` command that crashes in your side, so that we can reproduce it?", "This has been fixed in `datasets` 2.11", "I am still getting this bug with the latest pandas and ...
The `load_dataset` function with Pandas `1.5.3` has no issue (just a FutureWarning) but crashes with Pandas `2.0.0`. For your convenience, I opened a draft Pull Request to fix it quickly: https://github.com/huggingface/datasets/pull/5745 --- * The FutureWarning mentioned above: ``` FutureWarning: the 'mangle_dupe_cols' keyword is deprecated and will be removed in a future version. Please take steps to stop the use of 'mangle_dupe_cols' ```
5,744
https://github.com/huggingface/datasets/issues/5743
dataclass.py in virtual environment is overriding the stdlib module "dataclasses"
[ "We no longer depend on `dataclasses` (for almost a year), so I don't think our package is the problematic one. \r\n\r\nI think it makes more sense to raise this issue in the `dataclasses` repo: https://github.com/ericvsmith/dataclasses." ]
### Describe the bug "e:\Krish_naik\FSDSRegression\venv\Lib\dataclasses.py" is overriding the stdlib module "dataclasses" ### Steps to reproduce the bug module issue ### Expected behavior overriding the stdlib module "dataclasses" ### Environment info VS code
5,743
https://github.com/huggingface/datasets/issues/5739
weird result during dataset split when data path starts with `/data`
[ "Same problem.", "hi! \r\nI think you can run python from `/data/train/raw/` directory and load dataset as `load_dataset(\"code_contests\")` to mitigate this issue as a workaround. \r\n@ericxsun Do you want to open a PR to fix the regex? As you already found the solution :) ", "> hi! I think you can run python ...
### Describe the bug The regex defined here https://github.com/huggingface/datasets/blob/f2607935c4e45c70c44fcb698db0363ca7ba83d4/src/datasets/utils/py_utils.py#L158 will cause a weird result during dataset split when data path starts with `/data` ### Steps to reproduce the bug 1. clone dataset into local path ``` cd /data/train/raw/ git lfs clone https://huggingface.co/datasets/deepmind/code_contests.git ls /data/train/raw/code_contests # README.md data dataset_infos.json ls /data/train/raw/code_contests/data # test-00000-of-00001-9c49eeff30aacaa8.parquet # train-[0-9]+-of-[0-9]+-xx.parquet # valid-00000-of-00001-5e672c5751f060d3.parquet ``` 2. loading data from local ``` from datasets import load_dataset dataset = load_dataset('/data/train/raw/code_contests') FileNotFoundError: Unable to resolve any data file that matches '['data/train/raw/code_contests/data/train-[0-9][0-9][0-9][0-9][0-9]-of-[0-9][0-9][0-9][0-9][0-9]*.*']' at /data/train/raw/code_contests with any supported extension ``` weird path `data/train/raw/code_contests/data/train-[0-9][0-9][0-9][0-9][0-9]-of-[0-9][0-9][0-9][0-9][0-9]*.*` While dive deep into `LocalDatasetModuleFactoryWithoutScript` defined in [load.py](https://github.com/huggingface/datasets/blob/f2607935c4e45c70c44fcb698db0363ca7ba83d4/src/datasets/load.py#L627) and _get_data_files_patterns https://github.com/huggingface/datasets/blob/f2607935c4e45c70c44fcb698db0363ca7ba83d4/src/datasets/data_files.py#L228. I found the weird behavior caused by `string_to_dict` 3. check `string_to_dict` ``` p = '/data/train/raw/code_contests/data/test-00000-of-00001-9c49eeff30aacaa8.parquet' split_pattern = 'data/{split}-[0-9][0-9][0-9][0-9][0-9]-of-[0-9][0-9][0-9][0-9][0-9]*.*' string_to_dict(p, split_pattern) # {'split': 'train/raw/code_contests/data/test'} p = '/data2/train/raw/code_contests/data/test-00000-of-00001-9c49eeff30aacaa8.parquet' string_to_dict(p, split_pattern) {'split': 'test'} ``` go deep into string_to_dict https://github.com/huggingface/datasets/blob/f2607935c4e45c70c44fcb698db0363ca7ba83d4/src/datasets/utils/py_utils.py#L158. 4. test the regex: <img width="680" alt="image" src="https://user-images.githubusercontent.com/1772912/231351129-75179f01-fb9f-4f12-8fa9-0dfcc3d5f3bd.png"> <img width="679" alt="image" src="https://user-images.githubusercontent.com/1772912/231351025-009f3d83-2cf3-4e15-9ed4-6b9663dcb2ee.png"> ### Expected behavior statement in `steps to reproduce the bug` 3. check `string_to_dict` ``` p = '/data/train/raw/code_contests/data/test-00000-of-00001-9c49eeff30aacaa8.parquet' split_pattern = 'data/{split}-[0-9][0-9][0-9][0-9][0-9]-of-[0-9][0-9][0-9][0-9][0-9]*.*' string_to_dict(p, split_pattern) # {'split': 'train/raw/code_contests/data/test'} p = '/data2/train/raw/code_contests/data/test-00000-of-00001-9c49eeff30aacaa8.parquet' string_to_dict(p, split_pattern) {'split': 'test'} ``` ### Environment info - linux(debian) - python 3.7 - datasets 2.8.0
5,739
https://github.com/huggingface/datasets/issues/5738
load_dataset("text","dataset.txt") loads the wrong dataset!
[ "You need to provide a text file as `data_files`, not as a configuration:\r\n\r\n```python\r\nmy_dataset = load_dataset(\"text\", data_files=\"TextFile.txt\")\r\n```\r\n\r\nOtherwise, since `data_files` is `None`, it picks up Colab's sample datasets from the `content` dir." ]
### Describe the bug I am trying to load my own custom text dataset using the load_dataset function. My dataset is a bunch of ordered text, think along the lines of shakespeare plays. However, after I load the dataset and I inspect it, the dataset is a table with a bunch of latitude and longitude values! What in the world?? ### Steps to reproduce the bug my_dataset = load_dataset("text","TextFile.txt") my_dataset ### Expected behavior I expected the dataset to contain the actual data from the text document that I used. ### Environment info Google Colab
5,738
https://github.com/huggingface/datasets/issues/5737
ClassLabel Error
[ "Hi, you can use the `cast_column` function to change the feature type from a `Value(int64)` to `ClassLabel`:\r\n\r\n```py\r\ndataset = dataset.cast_column(\"label\", ClassLabel(names=[\"label_1\", \"label_2\", \"label_3\"]))\r\nprint(dataset.features)\r\n{'text': Value(dtype='string', id=None),\r\n 'label': ClassL...
### Describe the bug I still getting the error "call() takes 1 positional argument but 2 were given" even after ensuring that the value being passed to the label object is a single value and that the ClassLabel object has been created with the correct number of label classes ### Steps to reproduce the bug from datasets import ClassLabel, Dataset 1. Create the ClassLabel object with 3 label values and their corresponding names label_test = ClassLabel(num_classes=3, names=["label_1", "label_2", "label_3"]) 2. Define a dictionary with text and label fields data = { 'text': ['text_1', 'text_2', 'text_3'], 'label': [1, 2, 3], } 3. Create a Hugging Face dataset from the dictionary dataset = Dataset.from_dict(data) print(dataset.features) 4. Map the label values to their corresponding label names using the label object dataset = dataset.map(lambda example: {'text': example['text'], 'label': label_test(example['label'])}) 5. Print the resulting dataset print(dataset) ### Expected behavior I hope my label type is class label instead int. ### Environment info python 3.9 google colab
5,737
https://github.com/huggingface/datasets/issues/5736
FORCE_REDOWNLOAD raises "Directory not empty" exception on second run
[ "Hi ! I couldn't reproduce your issue :/\r\n\r\nIt seems that `shutil.rmtree` failed. It is supposed to work even if the directory is not empty, but you still end up with `OSError: [Errno 39] Directory not empty:`. Can you make sure another process is not using this directory at the same time ?", "I have the same...
### Describe the bug Running `load_dataset(..., download_mode=datasets.DownloadMode.FORCE_REDOWNLOAD)` twice raises a `Directory not empty` exception on the second run. ### Steps to reproduce the bug I cannot test this on datasets v2.11.0 due to #5711, but this happens in v2.10.1. 1. Set up a script `my_dataset.py` to generate and load an offline dataset. 2. Load it with ```python ds = datasets.load_dataset(path=/path/to/my_dataset.py, name='toy', data_dir=/path/to/my_dataset.py, cache_dir=cache_dir, download_mode=datasets.DownloadMode.FORCE_REDOWNLOAD, ) ``` It loads fine ``` Dataset my_dataset downloaded and prepared to /path/to/cache/toy-..e05e/1.0.0/...5b4c. Subsequent calls will reuse this data. ``` 3. Try to load it again with the same snippet and the splits are generated, but at the end of the loading process it raises the error ``` 2023-04-11 12:10:19,965: DEBUG: open file: /path/to/cache/toy-..e05e/1.0.0/...5b4c.incomplete/dataset_info.json Traceback (most recent call last): File "<string>", line 2, in <module> File "/path/to/conda/environment/lib/python3.10/site-packages/datasets/load.py", line 1782, in load_dataset builder_instance.download_and_prepare( File "/path/to/conda/environment/lib/python3.10/site-packages/datasets/builder.py", line 852, in download_and_prepare with incomplete_dir(self._output_dir) as tmp_output_dir: File "/path/to/conda/environment/lib/python3.10/contextlib.py", line 142, in __exit__ next(self.gen) File "/path/to/conda/environment/lib/python3.10/site-packages/datasets/builder.py", line 826, in incomplete_dir shutil.rmtree(dirname) File "/path/to/conda/environment/lib/python3.10/shutil.py", line 730, in rmtree onerror(os.rmdir, path, sys.exc_info()) File "/path/to/conda/environment/lib/python3.10/shutil.py", line 728, in rmtree os.rmdir(path) OSError: [Errno 39] Directory not empty: '/path/to/cache/toy-..e05e/1.0.0/...5b4c' ``` ### Expected behavior Regenerate the dataset from scratch and reload it. ### Environment info - `datasets` version: 2.10.1 - Platform: Linux-4.18.0-483.el8.x86_64-x86_64-with-glibc2.28 - Python version: 3.10.8 - PyArrow version: 11.0.0 - Pandas version: 1.5.2
5,736
https://github.com/huggingface/datasets/issues/5734
Remove temporary pin of fsspec
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Once root cause is found and fixed, remove the temporary pin introduced by: - #5731
5,734
https://github.com/huggingface/datasets/issues/5732
Enwik8 should support the standard split
[ "#self-assign", "The Enwik8 pipeline is not present in this codebase, and is hosted elsewhere. I have opened a PR [there](https://huggingface.co/datasets/enwik8/discussions/4) instead. " ]
### Feature request The HuggingFace Datasets library currently supports two BuilderConfigs for Enwik8. One config yields individual lines as examples, while the other config yields the entire dataset as a single example. Both support only a monolithic split: it is all grouped as "train". The HuggingFace Datasets library should include a BuilderConfig for Enwik8 with train, validation, and test sets derived from the first 90 million bytes, next 5 million bytes, and last 5 million bytes, respectively. This Enwik8 split is standard practice in LM papers, as elaborated and motivated below. ### Motivation Enwik8 is commonly split into 90M, 5M, 5M consecutive bytes. This is done in the Transformer-XL [codebase](https://github.com/kimiyoung/transformer-xl/blob/44781ed21dbaec88b280f74d9ae2877f52b492a5/getdata.sh#L34), and is additionally mentioned in the Sparse Transformers [paper](https://arxiv.org/abs/1904.10509) and the Compressive Transformers [paper](https://arxiv.org/abs/1911.05507). This split is pretty much universal among language modeling papers. One may obtain the splits by manual wrangling, using the data yielded by the ```enwik8-raw``` BuilderConfig. However, this undermines the seamless functionality of the library: one must slice the single raw example, extract it into three tensors, and wrap each in a separate dataset. This becomes even more of a nuisance if using the current Enwik8 HuggingFace dataset as a TfdsDataSource with [SeqIO](https://github.com/google/seqio), where a pipeline of preprocessors is typically included in a SeqIO Task definition, to be applied immediately after loading the data with TFDS. ### Your contribution Supporting this functionality in HuggingFace Datasets will only require an additional BuilderConfig for Enwik8 and a few additional lines of code. I will submit a PR.
5,732
https://github.com/huggingface/datasets/issues/5730
CI is broken: ValueError: Name (mock) already in the registry and clobber is False
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CI is broken for `test_py310`. See: https://github.com/huggingface/datasets/actions/runs/4665326892/jobs/8258580948 ``` =========================== short test summary info ============================ ERROR tests/test_builder.py::test_builder_with_filesystem_download_and_prepare - ValueError: Name (mock) already in the registry and clobber is False ERROR tests/test_builder.py::test_builder_with_filesystem_download_and_prepare_reload - ValueError: Name (mock) already in the registry and clobber is False ERROR tests/test_dataset_dict.py::test_dummy_datasetdict_serialize_fs - ValueError: Name (mock) already in the registry and clobber is False ERROR tests/test_file_utils.py::test_get_from_cache_fsspec - ValueError: Name (mock) already in the registry and clobber is False ERROR tests/test_filesystem.py::test_is_remote_filesystem - ValueError: Name (mock) already in the registry and clobber is False ERROR tests/test_streaming_download_manager.py::test_xexists[tmp_path/file.txt-True] - ValueError: Name (mock) already in the registry and clobber is False ERROR tests/test_streaming_download_manager.py::test_xexists[tmp_path/file_that_doesnt_exist.txt-False] - ValueError: Name (mock) already in the registry and clobber is False ERROR tests/test_streaming_download_manager.py::test_xexists[mock://top_level/second_level/date=2019-10-01/a.parquet-True] - ValueError: Name (mock) already in the registry and clobber is False ERROR tests/test_streaming_download_manager.py::test_xexists[mock://top_level/second_level/date=2019-10-01/file_that_doesnt_exist.parquet-False] - ValueError: Name (mock) already in the registry and clobber is False ERROR tests/test_streaming_download_manager.py::test_xlistdir[tmp_path-expected_paths0] - ValueError: Name (mock) already in the registry and clobber is False ERROR tests/test_streaming_download_manager.py::test_xlistdir[mock://-expected_paths1] - ValueError: Name (mock) already in the registry and clobber is False ERROR tests/test_streaming_download_manager.py::test_xlistdir[mock://top_level-expected_paths2] - ValueError: Name (mock) already in the registry and clobber is False ERROR tests/test_streaming_download_manager.py::test_xlistdir[mock://top_level/second_level/date=2019-10-01-expected_paths3] - ValueError: Name (mock) already in the registry and clobber is False ERROR tests/test_streaming_download_manager.py::test_xisdir[tmp_path-True] - ValueError: Name (mock) already in the registry and clobber is False ERROR tests/test_streaming_download_manager.py::test_xisdir[tmp_path/file.txt-False] - ValueError: Name (mock) already in the registry and clobber is False ERROR tests/test_streaming_download_manager.py::test_xisdir[mock://-True] - ValueError: Name (mock) already in the registry and clobber is False ERROR tests/test_streaming_download_manager.py::test_xisdir[mock://top_level-True] - ValueError: Name (mock) already in the registry and clobber is False ERROR tests/test_streaming_download_manager.py::test_xisdir[mock://dir_that_doesnt_exist-False] - ValueError: Name (mock) already in the registry and clobber is False ERROR tests/test_streaming_download_manager.py::test_xisfile[tmp_path/file.txt-True] - ValueError: Name (mock) already in the registry and clobber is False ERROR tests/test_streaming_download_manager.py::test_xisfile[tmp_path/file_that_doesnt_exist.txt-False] - ValueError: Name (mock) already in the registry and clobber is False ERROR tests/test_streaming_download_manager.py::test_xisfile[mock://-False] - ValueError: Name (mock) already in the registry and clobber is False ERROR tests/test_streaming_download_manager.py::test_xisfile[mock://top_level/second_level/date=2019-10-01/a.parquet-True] - ValueError: Name (mock) already in the registry and clobber is False ERROR tests/test_streaming_download_manager.py::test_xgetsize[tmp_path/file.txt-100] - ValueError: Name (mock) already in the registry and clobber is False ERROR tests/test_streaming_download_manager.py::test_xgetsize[mock://-0] - ValueError: Name (mock) already in the registry and clobber is False ERROR tests/test_streaming_download_manager.py::test_xgetsize[mock://top_level/second_level/date=2019-10-01/a.parquet-100] - ValueError: Name (mock) already in the registry and clobber is False ERROR tests/test_streaming_download_manager.py::test_xglob[tmp_path/*.txt-expected_paths0] - ValueError: Name (mock) already in the registry and clobber is False ERROR tests/test_streaming_download_manager.py::test_xglob[mock://*-expected_paths1] - ValueError: Name (mock) already in the registry and clobber is False ERROR tests/test_streaming_download_manager.py::test_xglob[mock://top_*-expected_paths2] - ValueError: Name (mock) already in the registry and clobber is False ERROR tests/test_streaming_download_manager.py::test_xglob[mock://top_level/second_level/date=2019-10-0[1-4]-expected_paths3] - ValueError: Name (mock) already in the registry and clobber is False ERROR tests/test_streaming_download_manager.py::test_xglob[mock://top_level/second_level/date=2019-10-0[1-4]/*-expected_paths4] - ValueError: Name (mock) already in the registry and clobber is False ERROR tests/test_streaming_download_manager.py::test_xwalk[tmp_path-expected_outputs0] - ValueError: Name (mock) already in the registry and clobber is False ERROR tests/test_streaming_download_manager.py::test_xwalk[mock://top_level/second_level-expected_outputs1] - ValueError: Name (mock) already in the registry and clobber is False ERROR tests/test_streaming_download_manager.py::TestxPath::test_xpath_exists[tmp_path/file.txt-True] - ValueError: Name (mock) already in the registry and clobber is False ERROR tests/test_streaming_download_manager.py::TestxPath::test_xpath_exists[tmp_path/file_that_doesnt_exist.txt-False] - ValueError: Name (mock) already in the registry and clobber is False ERROR tests/test_streaming_download_manager.py::TestxPath::test_xpath_exists[mock://top_level/second_level/date=2019-10-01/a.parquet-True] - ValueError: Name (mock) already in the registry and clobber is False ERROR tests/test_streaming_download_manager.py::TestxPath::test_xpath_exists[mock://top_level/second_level/date=2019-10-01/file_that_doesnt_exist.parquet-False] - ValueError: Name (mock) already in the registry and clobber is False ERROR tests/test_streaming_download_manager.py::TestxPath::test_xpath_glob[tmp_path-*.txt-expected_paths0] - ValueError: Name (mock) already in the registry and clobber is False ERROR tests/test_streaming_download_manager.py::TestxPath::test_xpath_glob[mock://-*-expected_paths1] - ValueError: Name (mock) already in the registry and clobber is False ERROR tests/test_streaming_download_manager.py::TestxPath::test_xpath_glob[mock://-top_*-expected_paths2] - ValueError: Name (mock) already in the registry and clobber is False ERROR tests/test_streaming_download_manager.py::TestxPath::test_xpath_glob[mock://top_level/second_level-date=2019-10-0[1-4]-expected_paths3] - ValueError: Name (mock) already in the registry and clobber is False ERROR tests/test_streaming_download_manager.py::TestxPath::test_xpath_glob[mock://top_level/second_level-date=2019-10-0[1-4]/*-expected_paths4] - ValueError: Name (mock) already in the registry and clobber is False ERROR tests/test_streaming_download_manager.py::TestxPath::test_xpath_rglob[tmp_path-*.txt-expected_paths0] - ValueError: Name (mock) already in the registry and clobber is False ERROR tests/test_streaming_download_manager.py::TestxPath::test_xpath_rglob[mock://-date=2019-10-0[1-4]-expected_paths1] - ValueError: Name (mock) already in the registry and clobber is False ERROR tests/test_streaming_download_manager.py::TestxPath::test_xpath_rglob[mock://top_level-date=2019-10-0[1-4]-expected_paths2] - ValueError: Name (mock) already in the registry and clobber is False ERROR tests/test_streaming_download_manager.py::TestxPath::test_xpath_rglob[mock://-date=2019-10-0[1-4]/*-expected_paths3] - ValueError: Name (mock) already in the registry and clobber is False ERROR tests/test_streaming_download_manager.py::TestxPath::test_xpath_rglob[mock://top_level-date=2019-10-0[1-4]/*-expected_paths4] - ValueError: Name (mock) already in the registry and clobber is False ===== 2105 passed, 18 skipped, 38 warnings, 46 errors in 236.22s (0:03:56) ===== ```
5,730
https://github.com/huggingface/datasets/issues/5728
The order of data split names is nondeterministic
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After this CI error: https://github.com/huggingface/datasets/actions/runs/4639528358/jobs/8210492953?pr=5718 ``` FAILED tests/test_data_files.py::test_get_data_files_patterns[data_file_per_split4] - AssertionError: assert ['random', 'train'] == ['train', 'random'] At index 0 diff: 'random' != 'train' Full diff: - ['train', 'random'] + ['random', 'train'] ``` I have checked locally and found out that the data split order is nondeterministic. This is caused by the use of `set` for sharded splits.
5,728
https://github.com/huggingface/datasets/issues/5727
load_dataset fails with FileNotFound error on Windows
[ "Hi! Can you please paste the entire error stack trace, not only the last few lines?", "`----> 1 dataset = datasets.load_dataset(\"glue\", \"ax\")\r\n\r\nFile ~\\anaconda3\\envs\\huggingface\\Lib\\site-packages\\datasets\\load.py:1767, in load_dataset(path, name, data_dir, data_files, split, cache_dir, features, ...
### Describe the bug Although I can import and run the datasets library in a Colab environment, I cannot successfully load any data on my own machine (Windows 10) despite following the install steps: (1) create conda environment (2) activate environment (3) install with: ``conda` install -c huggingface -c conda-forge datasets` Then ``` from datasets import load_dataset # this or any other example from the website fails with the FileNotFoundError glue = load_dataset("glue", "ax") ``` **Below I have pasted the error omitting the full path**: ``` raise FileNotFoundError( FileNotFoundError: Couldn't find a dataset script at C:\Users\...\glue\glue.py or any data file in the same directory. Couldn't find 'glue' on the Hugging Face Hub either: FileNotFoundError: [WinError 3] The system cannot find the path specified: 'C:\\Users\\...\\.cache\\huggingface' ``` ### Steps to reproduce the bug On Windows 10 1) create a minimal conda environment (with just Python) (2) activate environment (3) install datasets with: ``conda` install -c huggingface -c conda-forge datasets` (4) import load_dataset and follow example usage from any dataset card. ### Expected behavior The expected behavior is to load the file into the Python session running on my machine without error. ### Environment info ``` # Name Version Build Channel aiohttp 3.8.4 py311ha68e1ae_0 conda-forge aiosignal 1.3.1 pyhd8ed1ab_0 conda-forge arrow-cpp 11.0.0 h57928b3_13_cpu conda-forge async-timeout 4.0.2 pyhd8ed1ab_0 conda-forge attrs 22.2.0 pyh71513ae_0 conda-forge aws-c-auth 0.6.26 h1262f0c_1 conda-forge aws-c-cal 0.5.21 h7cda486_2 conda-forge aws-c-common 0.8.14 hcfcfb64_0 conda-forge aws-c-compression 0.2.16 h8a79959_5 conda-forge aws-c-event-stream 0.2.20 h5f78564_4 conda-forge aws-c-http 0.7.6 h2545be9_0 conda-forge aws-c-io 0.13.19 h0d2781e_3 conda-forge aws-c-mqtt 0.8.6 hd211e0c_12 conda-forge aws-c-s3 0.2.7 h8113e7b_1 conda-forge aws-c-sdkutils 0.1.8 h8a79959_0 conda-forge aws-checksums 0.1.14 h8a79959_5 conda-forge aws-crt-cpp 0.19.8 he6d3b81_12 conda-forge aws-sdk-cpp 1.10.57 h64004b3_8 conda-forge brotlipy 0.7.0 py311ha68e1ae_1005 conda-forge bzip2 1.0.8 h8ffe710_4 conda-forge c-ares 1.19.0 h2bbff1b_0 ca-certificates 2023.01.10 haa95532_0 certifi 2022.12.7 pyhd8ed1ab_0 conda-forge cffi 1.15.1 py311h7d9ee11_3 conda-forge charset-normalizer 2.1.1 pyhd8ed1ab_0 conda-forge colorama 0.4.6 pyhd8ed1ab_0 conda-forge cryptography 40.0.1 py311h28e9c30_0 conda-forge dataclasses 0.8 pyhc8e2a94_3 conda-forge datasets 2.11.0 py_0 huggingface dill 0.3.6 pyhd8ed1ab_1 conda-forge filelock 3.11.0 pyhd8ed1ab_0 conda-forge frozenlist 1.3.3 py311ha68e1ae_0 conda-forge fsspec 2023.4.0 pyh1a96a4e_0 conda-forge gflags 2.2.2 ha925a31_1004 conda-forge glog 0.6.0 h4797de2_0 conda-forge huggingface_hub 0.13.4 py_0 huggingface idna 3.4 pyhd8ed1ab_0 conda-forge importlib-metadata 6.3.0 pyha770c72_0 conda-forge importlib_metadata 6.3.0 hd8ed1ab_0 conda-forge intel-openmp 2023.0.0 h57928b3_25922 conda-forge krb5 1.20.1 heb0366b_0 conda-forge libabseil 20230125.0 cxx17_h63175ca_1 conda-forge libarrow 11.0.0 h04c43f8_13_cpu conda-forge libblas 3.9.0 16_win64_mkl conda-forge libbrotlicommon 1.0.9 hcfcfb64_8 conda-forge libbrotlidec 1.0.9 hcfcfb64_8 conda-forge libbrotlienc 1.0.9 hcfcfb64_8 conda-forge libcblas 3.9.0 16_win64_mkl conda-forge libcrc32c 1.1.2 h0e60522_0 conda-forge libcurl 7.88.1 h68f0423_1 conda-forge libexpat 2.5.0 h63175ca_1 conda-forge libffi 3.4.2 h8ffe710_5 conda-forge libgoogle-cloud 2.8.0 hf2ff781_1 conda-forge libgrpc 1.52.1 h32da247_1 conda-forge libhwloc 2.9.0 h51c2c0f_0 conda-forge libiconv 1.17 h8ffe710_0 conda-forge liblapack 3.9.0 16_win64_mkl conda-forge libprotobuf 3.21.12 h12be248_0 conda-forge libsqlite 3.40.0 hcfcfb64_0 conda-forge libssh2 1.10.0 h9a1e1f7_3 conda-forge libthrift 0.18.1 h9ce19ad_0 conda-forge libutf8proc 2.8.0 h82a8f57_0 conda-forge libxml2 2.10.3 hc3477c8_6 conda-forge libzlib 1.2.13 hcfcfb64_4 conda-forge lz4-c 1.9.4 hcfcfb64_0 conda-forge mkl 2022.1.0 h6a75c08_874 conda-forge multidict 6.0.4 py311ha68e1ae_0 conda-forge multiprocess 0.70.14 py311ha68e1ae_3 conda-forge numpy 1.24.2 py311h0b4df5a_0 conda-forge openssl 3.1.0 hcfcfb64_0 conda-forge orc 1.8.3 hada7b9e_0 conda-forge packaging 23.0 pyhd8ed1ab_0 conda-forge pandas 2.0.0 py311hf63dbb6_0 conda-forge parquet-cpp 1.5.1 2 conda-forge pip 23.0.1 pyhd8ed1ab_0 conda-forge pthreads-win32 2.9.1 hfa6e2cd_3 conda-forge pyarrow 11.0.0 py311h6a6099b_13_cpu conda-forge pycparser 2.21 pyhd8ed1ab_0 conda-forge pyopenssl 23.1.1 pyhd8ed1ab_0 conda-forge pysocks 1.7.1 pyh0701188_6 conda-forge python 3.11.3 h2628c8c_0_cpython conda-forge python-dateutil 2.8.2 pyhd8ed1ab_0 conda-forge python-tzdata 2023.3 pyhd8ed1ab_0 conda-forge python-xxhash 3.2.0 py311ha68e1ae_0 conda-forge python_abi 3.11 3_cp311 conda-forge pytz 2023.3 pyhd8ed1ab_0 conda-forge pyyaml 6.0 py311ha68e1ae_5 conda-forge re2 2023.02.02 h63175ca_0 conda-forge requests 2.28.2 pyhd8ed1ab_1 conda-forge setuptools 67.6.1 pyhd8ed1ab_0 conda-forge six 1.16.0 pyh6c4a22f_0 conda-forge snappy 1.1.10 hfb803bf_0 conda-forge tbb 2021.8.0 h91493d7_0 conda-forge tk 8.6.12 h8ffe710_0 conda-forge tqdm 4.65.0 pyhd8ed1ab_1 conda-forge typing-extensions 4.5.0 hd8ed1ab_0 conda-forge typing_extensions 4.5.0 pyha770c72_0 conda-forge tzdata 2023c h71feb2d_0 conda-forge ucrt 10.0.22621.0 h57928b3_0 conda-forge urllib3 1.26.15 pyhd8ed1ab_0 conda-forge vc 14.3 hb6edc58_10 conda-forge vs2015_runtime 14.34.31931 h4c5c07a_10 conda-forge wheel 0.40.0 pyhd8ed1ab_0 conda-forge win_inet_pton 1.1.0 pyhd8ed1ab_6 conda-forge xxhash 0.8.1 hcfcfb64_0 conda-forge xz 5.2.10 h8cc25b3_1 yaml 0.2.5 h8ffe710_2 conda-forge yarl 1.8.2 py311ha68e1ae_0 conda-forge zipp 3.15.0 pyhd8ed1ab_0 conda-forge zlib 1.2.13 hcfcfb64_4 conda-forge zstd 1.5.4 hd43e919_0 ```
5,727
https://github.com/huggingface/datasets/issues/5726
Fallback JSON Dataset loading does not load all values when features specified manually
[ "Thanks for reporting, @myluki2000.\r\n\r\nI am working on a fix." ]
### Describe the bug The fallback JSON dataset loader located here: https://github.com/huggingface/datasets/blob/1c4ec00511868bd881e84a6f7e0333648d833b8e/src/datasets/packaged_modules/json/json.py#L130-L153 does not load the values of features correctly when features are specified manually and not all features have a value in the first entry of the dataset. I'm pretty sure this is not supposed to be expected bahavior? To fix this you'd have to change this line: https://github.com/huggingface/datasets/blob/1c4ec00511868bd881e84a6f7e0333648d833b8e/src/datasets/packaged_modules/json/json.py#L140 To pass a schema to pyarrow which has the same structure as the features argument passed to the load_dataset() method. ### Steps to reproduce the bug Consider a dataset JSON like this: ``` [ { "instruction": "Do stuff", "output": "Answer stuff" }, { "instruction": "Do stuff2", "input": "Additional Input2", "output": "Answer stuff2" } ] ``` Using this code to load the dataset: ``` from datasets import load_dataset, Features, Value features = { "instruction": Value("string"), "input": Value("string"), "output": Value("string") } features = Features(features) ds = load_dataset("json", data_files="./ds.json", features=features) for row in ds["train"]: print(row) ``` we get a dataset that looks like this: | **Instruction** | **Input** | **Output** | |-----------------|--------------------|-----------------| | "Do stuff" | None | "Answer Stuff" | | "Do stuff2" | None | "Answer Stuff2" | ### Expected behavior The input column should contain values other than None for dataset entries that have the "input" attribute set: | **Instruction** | **Input** | **Output** | |-----------------|--------------------|-----------------| | "Do stuff" | None | "Answer Stuff" | | "Do stuff2" | "Additional Input2" | "Answer Stuff2" | ### Environment info Python 3.10.10 Datasets 2.11.0 Windows 10
5,726
https://github.com/huggingface/datasets/issues/5725
How to limit the number of examples in dataset, for testing?
[ "Hi! You can use the `nrows` parameter for this:\r\n```python\r\ndata = load_dataset(\"json\", data_files=data_path, nrows=10)\r\n```", "@mariosasko I get:\r\n\r\n`TypeError: __init__() got an unexpected keyword argument 'nrows'`", "I misread the format in which the dataset is stored - the `nrows` parameter wo...
### Describe the bug I am using this command: `data = load_dataset("json", data_files=data_path)` However, I want to add a parameter, to limit the number of loaded examples to be 10, for development purposes, but can't find this simple parameter. ### Steps to reproduce the bug In the description. ### Expected behavior To be able to limit the number of examples ### Environment info Nothing special
5,725
https://github.com/huggingface/datasets/issues/5724
Error after shuffling streaming IterableDatasets with downloaded dataset
[ "Moving `\"en\"` to the end of the path instead of passing it as a config name should fix the error:\r\n```python\r\nimport datasets\r\ndataset = datasets.load_dataset('/path/to/your/data/dir/en', streaming=True, split='train')\r\ndataset = dataset.shuffle(buffer_size=10_000, seed=42)\r\nnext(iter(dataset))\r\n```\...
### Describe the bug I downloaded the C4 dataset, and used streaming IterableDatasets to read it. Everything went normal until I used `dataset = dataset.shuffle(seed=42, buffer_size=10_000)` to shuffle the dataset. Shuffled dataset will throw the following error when it is used by `next(iter(dataset))`: ``` File "/data/miniconda3/lib/python3.9/site-packages/datasets/iterable_dataset.py", line 937, in __iter__ for key, example in ex_iterable: File "/data/miniconda3/lib/python3.9/site-packages/datasets/iterable_dataset.py", line 627, in __iter__ for x in self.ex_iterable: File "/data/miniconda3/lib/python3.9/site-packages/datasets/iterable_dataset.py", line 138, in __iter__ yield from self.generate_examples_fn(**kwargs_with_shuffled_shards) File "/data/miniconda3/lib/python3.9/site-packages/datasets/iterable_dataset.py", line 763, in wrapper for key, table in generate_tables_fn(**kwargs): File "/data/miniconda3/lib/python3.9/site-packages/datasets/packaged_modules/json/json.py", line 101, in _generate_tables batch = f.read(self.config.chunksize) File "/data/miniconda3/lib/python3.9/site-packages/datasets/download/streaming_download_manager.py", line 372, in read_with_retries out = read(*args, **kwargs) File "/data/miniconda3/lib/python3.9/gzip.py", line 300, in read return self._buffer.read(size) File "/data/miniconda3/lib/python3.9/_compression.py", line 68, in readinto data = self.read(len(byte_view)) File "/data/miniconda3/lib/python3.9/gzip.py", line 487, in read if not self._read_gzip_header(): File "/data/miniconda3/lib/python3.9/gzip.py", line 435, in _read_gzip_header raise BadGzipFile('Not a gzipped file (%r)' % magic) gzip.BadGzipFile: Not a gzipped file (b've') ``` I found that there is no problem to use the dataset in this way without shuffling. Also, use `dataset = datasets.load_dataset('c4', 'en', split='train', streaming=True)`, which will download the dataset on-the-fly instead of loading from the local file, will also not have problems even after shuffle. ### Steps to reproduce the bug 1. Download C4 dataset from https://huggingface.co/datasets/allenai/c4 2. ``` import datasets dataset = datasets.load_dataset('/path/to/your/data/dir', 'en', streaming=True, split='train') dataset = dataset.shuffle(buffer_size=10_000, seed=42) next(iter(dataset)) ``` ### Expected behavior `next(iter(dataset))` should give me a sample from the dataset ### Environment info - `datasets` version: 2.11.0 - Platform: Linux-5.4.32-1-tlinux4-0001-x86_64-with-glibc2.28 - Python version: 3.9.16 - Huggingface_hub version: 0.13.1 - PyArrow version: 11.0.0 - Pandas version: 1.5.3
5,724
https://github.com/huggingface/datasets/issues/5722
Distributed Training Error on Customized Dataset
[ "Hmm the error doesn't seem related to data loading.\r\n\r\nRegarding `split_dataset_by_node`: it's generally used to split an iterable dataset (e.g. when streaming) in pytorch DDP. It's not needed if you use a regular dataset since the pytorch DataLoader already assigns a subset of the dataset indices to each node...
Hi guys, recently I tried to use `datasets` to train a dual encoder. I finish my own datasets according to the nice [tutorial](https://huggingface.co/docs/datasets/v2.11.0/en/dataset_script) Here are my code: ```python class RetrivalDataset(datasets.GeneratorBasedBuilder): """CrossEncoder dataset.""" BUILDER_CONFIGS = [RetrivalConfig(name="DuReader")] # DEFAULT_CONFIG_NAME = "DuReader" def _info(self): return datasets.DatasetInfo( features=datasets.Features( { "id": datasets.Value("string"), "question": datasets.Value("string"), "documents": Sequence(datasets.Value("string")), } ), supervised_keys=None, ) def _split_generators(self, dl_manager): """Returns SplitGenerators.""" train_file = self.config.data_dir + self.config.train_file valid_file = self.config.data_dir + self.config.valid_file logger.info(f"Training on {self.config.train_file}") logger.info(f"Evaluating on {self.config.valid_file}") return [ datasets.SplitGenerator( name=datasets.Split.TRAIN, gen_kwargs={"file_path": train_file} ), datasets.SplitGenerator( name=datasets.Split.VALIDATION, gen_kwargs={"file_path": valid_file} ), ] def _generate_examples(self, file_path): with jsonlines.open(file_path, "r") as f: for record in f: label = record["label"] question = record["question"] # dual encoder all_documents = record["all_documents"] positive_paragraph = all_documents.pop(label) all_documents = [positive_paragraph] + all_documents u_id = "{}_#_{}".format( md5_hash(question + "".join(all_documents)), "".join(random.sample(string.ascii_letters + string.digits, 7)), ) item = { "question": question, "documents": all_documents, "id": u_id, } yield u_id, item ``` It works well on single GPU, but got errors as follows when used DDP: ```python Detected mismatch between collectives on ranks. Rank 1 is running collective: CollectiveFingerPrint(OpType=BARRIER), but Rank 0 is running collective: CollectiveFingerPrint(OpType=ALLGATHER_COALESCED) ``` Here are my train script on a two A100 mechine: ```bash export TORCH_DISTRIBUTED_DEBUG=DETAIL export TORCH_SHOW_CPP_STACKTRACES=1 export NCCL_DEBUG=INFO export NCCL_DEBUG_SUBSYS=INIT,COLL,ENV nohup torchrun --nproc_per_node 2 train.py experiments/de-big.json >logs/de-big.log 2>&1& ``` I am not sure if this error below related to my dataset code when use DDP. And I notice the PR(#5369 ), but I don't know when and where should I used the function(`split_dataset_by_node`) . @lhoestq hope you could help me?
5,722
https://github.com/huggingface/datasets/issues/5721
Calling datasets.load_dataset("text" ...) results in a wrong split.
[]
### Describe the bug When creating a text dataset, the training split should have the bulk of the examples by default. Currently, testing does. ### Steps to reproduce the bug I have a folder with 18K text files in it. Each text file essentially consists in a document or article scraped from online. Calling the following codeL ``` folder_path = "/home/cyril/Downloads/llama_dataset" data = datasets.load_dataset("text", data_dir=folder_path) data.save_to_disk("/home/cyril/Downloads/data.hf") data = datasets.load_from_disk("/home/cyril/Downloads/data.hf") print(data) ``` Results in the following split: ``` DatasetDict({ train: Dataset({ features: ['text'], num_rows: 2114 }) test: Dataset({ features: ['text'], num_rows: 200882 }) validation: Dataset({ features: ['text'], num_rows: 152 }) }) ``` It seems to me like the train/test/validation splits are in the wrong order since test split >>>> train_split ### Expected behavior Train split should have the bulk of the training examples. ### Environment info datasets 2.11.0, python 3.10.6
5,721
https://github.com/huggingface/datasets/issues/5720
Streaming IterableDatasets do not work with torch DataLoaders
[ "Edit: This behavior is true even without `.take/.set`", "I'm experiencing the same problem that @jlehrer1. I was able to reproduce it with a very small example:\r\n\r\n```py\r\nfrom datasets import Dataset, load_dataset, load_dataset_builder\r\nfrom torch.utils.data import DataLoader\r\n\r\n\r\ndef my_gen():\r\n...
### Describe the bug When using streaming datasets set up with train/val split using `.skip()` and `.take()`, the following error occurs when iterating over a torch dataloader: ``` File "/Users/julian/miniconda3/envs/sims/lib/python3.9/site-packages/torch/utils/data/dataloader.py", line 363, in __iter__ self._iterator = self._get_iterator() File "/Users/julian/miniconda3/envs/sims/lib/python3.9/site-packages/torch/utils/data/dataloader.py", line 314, in _get_iterator return _MultiProcessingDataLoaderIter(self) File "/Users/julian/miniconda3/envs/sims/lib/python3.9/site-packages/torch/utils/data/dataloader.py", line 927, in __init__ w.start() File "/Users/julian/miniconda3/envs/sims/lib/python3.9/multiprocessing/process.py", line 121, in start self._popen = self._Popen(self) File "/Users/julian/miniconda3/envs/sims/lib/python3.9/multiprocessing/context.py", line 224, in _Popen return _default_context.get_context().Process._Popen(process_obj) File "/Users/julian/miniconda3/envs/sims/lib/python3.9/multiprocessing/context.py", line 284, in _Popen return Popen(process_obj) File "/Users/julian/miniconda3/envs/sims/lib/python3.9/multiprocessing/popen_spawn_posix.py", line 32, in __init__ super().__init__(process_obj) File "/Users/julian/miniconda3/envs/sims/lib/python3.9/multiprocessing/popen_fork.py", line 19, in __init__ self._launch(process_obj) File "/Users/julian/miniconda3/envs/sims/lib/python3.9/multiprocessing/popen_spawn_posix.py", line 47, in _launch reduction.dump(process_obj, fp) File "/Users/julian/miniconda3/envs/sims/lib/python3.9/multiprocessing/reduction.py", line 60, in dump ForkingPickler(file, protocol).dump(obj) AttributeError: Can't pickle local object '_generate_examples_from_tables_wrapper.<locals>.wrapper' ``` To reproduce, run the code ``` from datasets import load_dataset data = load_dataset(args.dataset_name, split="train", streaming=True) train_len = 5000 val_len = 100 train, val = data.take(train_len), data.skip(train_len).take(val_len) traindata = IterableClipDataset(data, context_length=args.max_len, tokenizer=tokenizer, image_key="url", text_key="text") traindata = DataLoader(traindata, batch_size=args.batch_size, num_workers=args.num_workers, persistent_workers=True) ``` Where the class IterableClipDataset is a simple wrapper to cast the dataset to a torch iterabledataset, defined via ``` from torch.utils.data import Dataset, IterableDataset from torchvision.transforms import Compose, Resize, ToTensor from transformers import AutoTokenizer import requests from PIL import Image class IterableClipDataset(IterableDataset): def __init__(self, dataset, context_length: int, image_transform=None, tokenizer=None, image_key="image", text_key="text"): self.dataset = dataset self.context_length = context_length self.image_transform = Compose([Resize((224, 224)), ToTensor()]) if image_transform is None else image_transform self.tokenizer = AutoTokenizer.from_pretrained("bert-base-uncased") if tokenizer is None else tokenizer self.image_key = image_key self.text_key = text_key def read_image(self, url: str): try: # Try to read the image image = Image.open(requests.get(url, stream=True).raw) except: image = Image.new("RGB", (224, 224), (0, 0, 0)) return image def process_sample(self, image, text): if isinstance(image, str): image = self.read_image(image) if self.image_transform is not None: image = self.image_transform(image) text = self.tokenizer.encode( text, add_special_tokens=True, max_length=self.context_length, truncation=True, padding="max_length" ) text = torch.tensor(text, dtype=torch.long) return image, text def __iter__(self): for sample in self.dataset: image, text = sample[self.image_key], sample[self.text_key] yield self.process_sample(image, text) ``` ### Steps to reproduce the bug Steps to reproduce 1. Install `datasets`, `torch`, and `PIL` (if you want to reproduce exactly) 2. Run the code above ### Expected behavior Batched data is produced from the dataloader ### Environment info ``` datasets == 2.9.0 python == 3.9.12 torch == 1.11.0 ```
5,720
https://github.com/huggingface/datasets/issues/5719
Array2D feature creates a list of list instead of a numpy array
[ "Hi! \r\n\r\nYou need to set the format to `np` before indexing the dataset to get NumPy arrays:\r\n```python\r\nfeatures = Features(dict(seq=Array2D((2,2), 'float32'))) \r\nds = Dataset.from_dict(dict(seq=[np.random.rand(2,2)]), features=features)\r\nds.set_format(\"np\")\r\na = ds[0]['seq']\r\n```\r\n\r\n> I th...
### Describe the bug I'm not sure if this is expected behavior or not. When I create a 2D array using `Array2D`, the data has list type instead of numpy array. I think it should not be the expected behavior especially when I feed a numpy array as input to the data creation function. Why is it converting my array into a list? Also if I change the first dimension of the `Array2D` shape to None, it's returning array correctly. ### Steps to reproduce the bug Run this code: ```py from datasets import Dataset, Features, Array2D import numpy as np # you have to change the first dimension of the shape to None to make it return an array features = Features(dict(seq=Array2D((2,2), 'float32'))) ds = Dataset.from_dict(dict(seq=[np.random.rand(2,2)]), features=features) a = ds[0]['seq'] print(a) print(type(a)) ``` The following will be printed in stdout: ``` [[0.8127174377441406, 0.3760348856449127], [0.7510159611701965, 0.4322739541530609]] <class 'list'> ``` ### Expected behavior Each indexed item should be a list or numpy array. Currently, `Array((2,2))` yields a list but `Array((None,2))` yields an array. ### Environment info - `datasets` version: 2.11.0 - Platform: Windows-10-10.0.19045-SP0 - Python version: 3.9.13 - Huggingface_hub version: 0.13.4 - PyArrow version: 11.0.0 - Pandas version: 1.4.4
5,719
https://github.com/huggingface/datasets/issues/5717
Errror when saving to disk a dataset of images
[ "Looks like as long as the number of shards makes a batch lower than 1000 images it works. In my training set I have 40K images. If I use `num_shards=40` (batch of 1000 images) I get the error, but if I update it to `num_shards=50` (batch of 800 images) it works.\r\n\r\nI will be happy to share my dataset privately...
### Describe the bug Hello! I have an issue when I try to save on disk my dataset of images. The error I get is: ``` Traceback (most recent call last): File "<stdin>", line 1, in <module> File "/home/jplu/miniconda3/envs/image-xp/lib/python3.10/site-packages/datasets/arrow_dataset.py", line 1442, in save_to_disk for job_id, done, content in Dataset._save_to_disk_single(**kwargs): File "/home/jplu/miniconda3/envs/image-xp/lib/python3.10/site-packages/datasets/arrow_dataset.py", line 1473, in _save_to_disk_single writer.write_table(pa_table) File "/home/jplu/miniconda3/envs/image-xp/lib/python3.10/site-packages/datasets/arrow_writer.py", line 570, in write_table pa_table = embed_table_storage(pa_table) File "/home/jplu/miniconda3/envs/image-xp/lib/python3.10/site-packages/datasets/table.py", line 2268, in embed_table_storage arrays = [ File "/home/jplu/miniconda3/envs/image-xp/lib/python3.10/site-packages/datasets/table.py", line 2269, in <listcomp> embed_array_storage(table[name], feature) if require_storage_embed(feature) else table[name] File "/home/jplu/miniconda3/envs/image-xp/lib/python3.10/site-packages/datasets/table.py", line 1817, in wrapper return pa.chunked_array([func(chunk, *args, **kwargs) for chunk in array.chunks]) File "/home/jplu/miniconda3/envs/image-xp/lib/python3.10/site-packages/datasets/table.py", line 1817, in <listcomp> return pa.chunked_array([func(chunk, *args, **kwargs) for chunk in array.chunks]) File "/home/jplu/miniconda3/envs/image-xp/lib/python3.10/site-packages/datasets/table.py", line 2142, in embed_array_storage return feature.embed_storage(array) File "/home/jplu/miniconda3/envs/image-xp/lib/python3.10/site-packages/datasets/features/image.py", line 269, in embed_storage storage = pa.StructArray.from_arrays([bytes_array, path_array], ["bytes", "path"], mask=bytes_array.is_null()) File "pyarrow/array.pxi", line 2766, in pyarrow.lib.StructArray.from_arrays File "pyarrow/array.pxi", line 2961, in pyarrow.lib.c_mask_inverted_from_obj TypeError: Mask must be a pyarrow.Array of type boolean ``` My dataset is around 50K images, is this error might be due to a bad image? Thanks for the help. ### Steps to reproduce the bug ```python from datasets import load_dataset dataset = load_dataset("imagefolder", data_dir="/path/to/dataset") dataset["train"].save_to_disk("./myds", num_shards=40) ``` ### Expected behavior Having my dataset properly saved to disk. ### Environment info - `datasets` version: 2.11.0 - Platform: Linux-5.15.90.1-microsoft-standard-WSL2-x86_64-with-glibc2.35 - Python version: 3.10.10 - Huggingface_hub version: 0.13.3 - PyArrow version: 11.0.0 - Pandas version: 2.0.0
5,717
https://github.com/huggingface/datasets/issues/5716
Handle empty audio
[ "Hi! Can you share one of the problematic audio files with us?\r\n\r\nI tried to reproduce the error with the following code: \r\n```python\r\nimport soundfile as sf\r\nimport numpy as np\r\nfrom datasets import Audio\r\n\r\nsf.write(\"empty.wav\", np.array([]), 16000)\r\nAudio(sampling_rate=24000).decode_example(...
Some audio paths exist, but they are empty, and an error will be reported when reading the audio path.How to use the filter function to avoid the empty audio path? when a audio is empty, when do resample , it will break: `array, sampling_rate = sf.read(f) array = librosa.resample(array, orig_sr=sampling_rate, target_sr=self.sampling_rate)`
5,716
https://github.com/huggingface/datasets/issues/5715
Return Numpy Array (fixed length) Mode, in __get_item__, Instead of List
[ "Hi! \r\n\r\nYou can use [`.set_format(\"np\")`](https://huggingface.co/docs/datasets/process#format) to get NumPy arrays (or Pytorch tensors with `.set_format(\"torch\")`) in `__getitem__`.\r\n\r\nAlso, have you been able to reproduce the linked PyTorch issue with a HF dataset?\r\n " ]
### Feature request There are old known issues, but they can be easily forgettable problems in multiprocessing with pytorch-dataloader: Too high usage of RAM or shared-memory in pytorch when we set num workers > 1 and returning type of dataset or dataloader is "List" or "Dict". https://github.com/pytorch/pytorch/issues/13246 With huggingface datasets, unfortunately, the default return type is the list, so the problem is raised too often if we do not set anything for the issue. However, this issue can be released when the returning output is fixed in length. Therefore, I request the mode, returning outputs with fixed length (e.g. numpy array) rather than list. The design would be good when we load datasets as ```python load_dataset(..., with_return_as_fixed_tensor=True) ``` ### Motivation The general solution for this issue is already in the comments: https://github.com/pytorch/pytorch/issues/13246#issuecomment-905703662 : Numpy or Pandas seems not to have problems, while both have the string type. (I'm not sure that the sequence of huggingface datasets can solve this problem as well) ### Your contribution I'll read it ! thanks
5,715
https://github.com/huggingface/datasets/issues/5713
ArrowNotImplementedError when loading dataset from the hub
[ "Hi Julien ! This sounds related to https://github.com/huggingface/datasets/issues/5695 - TL;DR: you need to have shards smaller than 2GB to avoid this issue\r\n\r\nThe number of rows per shard is computed using an estimated size of the full dataset, which can sometimes lead to shards bigger than `max_shard_size`. ...
### Describe the bug Hello, I have created a dataset by using the image loader. Once the dataset is created I try to download it and I get the error: ``` Traceback (most recent call last): File "/home/jplu/miniconda3/envs/image-xp/lib/python3.10/site-packages/datasets/builder.py", line 1860, in _prepare_split_single for _, table in generator: File "/home/jplu/miniconda3/envs/image-xp/lib/python3.10/site-packages/datasets/packaged_modules/parquet/parquet.py", line 69, in _generate_tables for batch_idx, record_batch in enumerate( File "pyarrow/_parquet.pyx", line 1323, in iter_batches File "pyarrow/error.pxi", line 121, in pyarrow.lib.check_status pyarrow.lib.ArrowNotImplementedError: Nested data conversions not implemented for chunked array outputs The above exception was the direct cause of the following exception: Traceback (most recent call last): File "<stdin>", line 1, in <module> File "/home/jplu/miniconda3/envs/image-xp/lib/python3.10/site-packages/datasets/load.py", line 1791, in load_dataset builder_instance.download_and_prepare( File "/home/jplu/miniconda3/envs/image-xp/lib/python3.10/site-packages/datasets/builder.py", line 891, in download_and_prepare self._download_and_prepare( File "/home/jplu/miniconda3/envs/image-xp/lib/python3.10/site-packages/datasets/builder.py", line 986, in _download_and_prepare self._prepare_split(split_generator, **prepare_split_kwargs) File "/home/jplu/miniconda3/envs/image-xp/lib/python3.10/site-packages/datasets/builder.py", line 1748, in _prepare_split for job_id, done, content in self._prepare_split_single( File "/home/jplu/miniconda3/envs/image-xp/lib/python3.10/site-packages/datasets/builder.py", line 1893, in _prepare_split_single raise DatasetGenerationError("An error occurred while generating the dataset") from e datasets.builder.DatasetGenerationError: An error occurred while generating the dataset ``` ### Steps to reproduce the bug Create the dataset and push it to the hub: ```python from datasets import load_dataset dataset = load_dataset("imagefolder", data_dir="/path/to/dataset") dataset.push_to_hub("org/dataset-name", private=True, max_shard_size="1GB") ``` Then use it: ```python from datasets import load_dataset dataset = load_dataset("org/dataset-name") ``` ### Expected behavior To properly download and use the pushed dataset. Something else to note is that I specified to have shards of 1GB max, but at the end, for the train set, it is an almost 7GB single file that is pushed. ### Environment info - `datasets` version: 2.11.0 - Platform: Linux-5.15.90.1-microsoft-standard-WSL2-x86_64-with-glibc2.35 - Python version: 3.10.10 - Huggingface_hub version: 0.13.3 - PyArrow version: 11.0.0 - Pandas version: 2.0.0
5,713
https://github.com/huggingface/datasets/issues/5712
load_dataset in v2.11.0 raises "ValueError: seek of closed file" in np.load()
[ "Closing since this is a duplicate of #5711", "> Closing since this is a duplicate of #5711\r\n\r\nSorry @mariosasko , my internet went down went submitting the issue, and somehow it ended up creating a duplicate" ]
### Describe the bug Hi, I have some `dataset_load()` code of a custom offline dataset that works with datasets v2.10.1. ```python ds = datasets.load_dataset(path=dataset_dir, name=configuration, data_dir=dataset_dir, cache_dir=cache_dir, aux_dir=aux_dir, # download_mode=datasets.DownloadMode.FORCE_REDOWNLOAD, num_proc=18) ``` When upgrading datasets to 2.11.0, it fails with error ``` Traceback (most recent call last): File "<string>", line 2, in <module> File "/home/ramon.casero/opt/miniconda3/envs/myenv/lib/python3.10/site-packages/datasets/load.py", line 1791, in load_dataset builder_instance.download_and_prepare( File "/home/ramon.casero/opt/miniconda3/envs/myenv/lib/python3.10/site-packages/datasets/builder.py", line 891, in download_and_prepare self._download_and_prepare( File "/home/ramon.casero/opt/miniconda3/envs/myenv/lib/python3.10/site-packages/datasets/builder.py", line 1651, in _download_and_prepare super()._download_and_prepare( File "/home/ramon.casero/opt/miniconda3/envs/myenv/lib/python3.10/site-packages/datasets/builder.py", line 964, in _download_and_prepare split_generators = self._split_generators(dl_manager, **split_generators_kwargs) File "/home/ramon.casero/.cache/huggingface/modules/datasets_modules/datasets/71f67f69e6e00e139903a121f96b71f39b65a6b6aaeb0862e6a5da3a3f565b4c/mydataset.py", line 682, in _split_generators self.some_function() File "/home/ramon.casero/.cache/huggingface/modules/datasets_modules/datasets/71f67f69e6e00e139903a121f96b71f39b65a6b6aaeb0862e6a5da3a3f565b4c/mydataset.py", line 1314, in some_function() x_df = pd.DataFrame({'cell_type_descriptor': fp['x'].tolist()}) File "/home/ramon.casero/opt/miniconda3/envs/myenv/lib/python3.10/site-packages/numpy/lib/npyio.py", line 248, in __getitem__ bytes = self.zip.open(key) File "/home/ramon.casero/opt/miniconda3/envs/myenv/lib/python3.10/zipfile.py", line 1530, in open fheader = zef_file.read(sizeFileHeader) File "/home/ramon.casero/opt/miniconda3/envs/myenv/lib/python3.10/zipfile.py", line 744, in read self._file.seek(self._pos) ValueError: seek of closed file ``` ### Steps to reproduce the bug Sorry, I cannot share the data or code because they are not mine to share, but the point of failure is a call in `some_function()` ```python with np.load(filename) as fp: x_df = pd.DataFrame({'feature': fp['x'].tolist()}) ``` I'll try to generate a short snippet that reproduces the error. ### Expected behavior I would expect that `load_dataset` works on the custom datasets generation script for v2.11.0 the same way it works for 2.10.1, without making `np.load()` give a `ValueError: seek of closed file` error. ### Environment info - `datasets` version: 2.11.0 - Platform: Linux-4.18.0-483.el8.x86_64-x86_64-with-glibc2.28 - Python version: 3.10.8 - Huggingface_hub version: 0.12.0 - PyArrow version: 11.0.0 - Pandas version: 1.5.2 - numpy: 1.24.2 - This is an offline dataset that uses `datasets.config.HF_DATASETS_OFFLINE = True` in the generation script.
5,712
https://github.com/huggingface/datasets/issues/5711
load_dataset in v2.11.0 raises "ValueError: seek of closed file" in np.load()
[ "It seems like https://github.com/huggingface/datasets/pull/5626 has introduced this error. \r\n\r\ncc @albertvillanova \r\n\r\nI think replacing:\r\nhttps://github.com/huggingface/datasets/blob/0803a006db1c395ac715662cc6079651f77c11ea/src/datasets/download/streaming_download_manager.py#L777-L778\r\nwith:\r\n```pyt...
### Describe the bug Hi, I have some `dataset_load()` code of a custom offline dataset that works with datasets v2.10.1. ```python ds = datasets.load_dataset(path=dataset_dir, name=configuration, data_dir=dataset_dir, cache_dir=cache_dir, aux_dir=aux_dir, # download_mode=datasets.DownloadMode.FORCE_REDOWNLOAD, num_proc=18) ``` When upgrading datasets to 2.11.0, it fails with error ``` Traceback (most recent call last): File "<string>", line 2, in <module> File "/home/ramon.casero/opt/miniconda3/envs/myenv/lib/python3.10/site-packages/datasets/load.py", line 1791, in load_dataset builder_instance.download_and_prepare( File "/home/ramon.casero/opt/miniconda3/envs/myenv/lib/python3.10/site-packages/datasets/builder.py", line 891, in download_and_prepare self._download_and_prepare( File "/home/ramon.casero/opt/miniconda3/envs/myenv/lib/python3.10/site-packages/datasets/builder.py", line 1651, in _download_and_prepare super()._download_and_prepare( File "/home/ramon.casero/opt/miniconda3/envs/myenv/lib/python3.10/site-packages/datasets/builder.py", line 964, in _download_and_prepare split_generators = self._split_generators(dl_manager, **split_generators_kwargs) File "/home/ramon.casero/.cache/huggingface/modules/datasets_modules/datasets/71f67f69e6e00e139903a121f96b71f39b65a6b6aaeb0862e6a5da3a3f565b4c/mydataset.py", line 682, in _split_generators self.some_function() File "/home/ramon.casero/.cache/huggingface/modules/datasets_modules/datasets/71f67f69e6e00e139903a121f96b71f39b65a6b6aaeb0862e6a5da3a3f565b4c/mydataset.py", line 1314, in some_function() x_df = pd.DataFrame({'cell_type_descriptor': fp['x'].tolist()}) File "/home/ramon.casero/opt/miniconda3/envs/myenv/lib/python3.10/site-packages/numpy/lib/npyio.py", line 248, in __getitem__ bytes = self.zip.open(key) File "/home/ramon.casero/opt/miniconda3/envs/myenv/lib/python3.10/zipfile.py", line 1530, in open fheader = zef_file.read(sizeFileHeader) File "/home/ramon.casero/opt/miniconda3/envs/myenv/lib/python3.10/zipfile.py", line 744, in read self._file.seek(self._pos) ValueError: seek of closed file ``` ### Steps to reproduce the bug Sorry, I cannot share the data or code because they are not mine to share, but the point of failure is a call in `some_function()` ```python with np.load(embedding_filename) as fp: x_df = pd.DataFrame({'feature': fp['x'].tolist()}) ``` I'll try to generate a short snippet that reproduces the error. ### Expected behavior I would expect that `load_dataset` works on the custom datasets generation script for v2.11.0 the same way it works for 2.10.1, without making `np.load()` give a `ValueError: seek of closed file` error. ### Environment info - `datasets` version: 2.11.0 - Platform: Linux-4.18.0-483.el8.x86_64-x86_64-with-glibc2.28 - Python version: 3.10.8 - Huggingface_hub version: 0.12.0 - PyArrow version: 11.0.0 - Pandas version: 1.5.2 - numpy: 1.24.2 - This is an offline dataset that uses `datasets.config.HF_DATASETS_OFFLINE = True` in the generation script.
5,711
https://github.com/huggingface/datasets/issues/5710
OSError: Memory mapping file failed: Cannot allocate memory
[ "Hi! This error means that PyArrow's internal [`mmap`](https://man7.org/linux/man-pages/man2/mmap.2.html) call failed to allocate memory, which can be tricky to debug. Since this error is more related to PyArrow than us, I think it's best to report this issue in their [repo](https://github.com/apache/arrow) (they a...
### Describe the bug Hello, I have a series of datasets each of 5 GB, 600 datasets in total. So together this makes 3TB. When I trying to load all the 600 datasets into memory, I get the above error message. Is this normal because I'm hitting the max size of memory mapping of the OS? Thank you ```terminal 0_21/cache-e9c42499f65b1881.arrow load_hf_datasets_from_disk: 82%|████████████████████████████████████████████████████████████████████████████████████████████████████▍ | 494/600 [07:26<01:35, 1.11it/s] Traceback (most recent call last): File "example_load_genkalm_dataset.py", line 35, in <module> multi_ds.post_process(max_node_num=args.max_node_num,max_seq_length=args.max_seq_length,delay=args.delay) File "/home/geng/GenKaLM/src/dataloader/dataset.py", line 142, in post_process genkalm_dataset = GenKaLM_Dataset.from_hf_dataset(path_or_name=ds_path, max_seq_length=self.max_seq_length, File "/home/geng/GenKaLM/src/dataloader/dataset.py", line 47, in from_hf_dataset hf_ds = load_from_disk(path_or_name) File "/home/geng/.conda/envs/genkalm/lib/python3.8/site-packages/datasets/load.py", line 1848, in load_from_disk return Dataset.load_from_disk(dataset_path, keep_in_memory=keep_in_memory, storage_options=storage_options) File "/home/geng/.conda/envs/genkalm/lib/python3.8/site-packages/datasets/arrow_dataset.py", line 1549, in load_from_disk arrow_table = concat_tables( File "/home/geng/.conda/envs/genkalm/lib/python3.8/site-packages/datasets/table.py", line 1805, in concat_tables tables = list(tables) File "/home/geng/.conda/envs/genkalm/lib/python3.8/site-packages/datasets/arrow_dataset.py", line 1550, in <genexpr> table_cls.from_file(Path(dataset_path, data_file["filename"]).as_posix()) File "/home/geng/.conda/envs/genkalm/lib/python3.8/site-packages/datasets/table.py", line 1065, in from_file table = _memory_mapped_arrow_table_from_file(filename) File "/home/geng/.conda/envs/genkalm/lib/python3.8/site-packages/datasets/table.py", line 50, in _memory_mapped_arrow_table_from_file memory_mapped_stream = pa.memory_map(filename) File "pyarrow/io.pxi", line 950, in pyarrow.lib.memory_map File "pyarrow/io.pxi", line 911, in pyarrow.lib.MemoryMappedFile._open File "pyarrow/error.pxi", line 144, in pyarrow.lib.pyarrow_internal_check_status File "pyarrow/error.pxi", line 115, in pyarrow.lib.check_status OSError: Memory mapping file failed: Cannot allocate memory ``` ### Steps to reproduce the bug Sorry I can not provide a reproducible code as the data is stored on my server and it's too large to share. ### Expected behavior I expect the 3TB of data can be fully mapped to memory ### Environment info - `datasets` version: 2.9.0 - Platform: Linux-4.15.0-204-generic-x86_64-with-debian-buster-sid - Python version: 3.7.6 - PyArrow version: 11.0.0 - Pandas version: 1.0.1
5,710
https://github.com/huggingface/datasets/issues/5709
Manually dataset info made not taken into account
[ "hi @jplu ! Did I understand you correctly that you create the dataset, push it to the Hub with `.push_to_hub` and you see a `dataset_infos.json` file there, then you edit this file, load the dataset with `load_dataset` and you don't see any changes in `.info` attribute of a dataset object? \r\n\r\nThis is actually...
### Describe the bug Hello, I'm manually building an image dataset with the `from_dict` approach. I also build the features with the `cast_features` methods. Once the dataset is created I push it on the hub, and a default `dataset_infos.json` file seems to have been automatically added to the repo in same time. Hence I update it manually with all the missing info, but when I download the dataset the info are never updated. Former `dataset_infos.json` file: ``` {"default": { "description": "", "citation": "", "homepage": "", "license": "", "features": { "image": { "_type": "Image" }, "labels": { "names": [ "Fake", "Real" ], "_type": "ClassLabel" } }, "splits": { "validation": { "name": "validation", "num_bytes": 901010094.0, "num_examples": 3200, "dataset_name": null }, "train": { "name": "train", "num_bytes": 901010094.0, "num_examples": 3200, "dataset_name": null } }, "download_size": 1802008414, "dataset_size": 1802020188.0, "size_in_bytes": 3604028602.0 }} ``` After I update it manually it looks like: ``` { "bstrai--deepfake-detection":{ "description":"", "citation":"", "homepage":"", "license":"", "features":{ "image":{ "decode":true, "id":null, "_type":"Image" }, "labels":{ "num_classes":2, "names":[ "Fake", "Real" ], "id":null, "_type":"ClassLabel" } }, "supervised_keys":{ "input":"image", "output":"labels" }, "task_templates":[ { "task":"image-classification", "image_column":"image", "label_column":"labels" } ], "config_name":null, "splits":{ "validation":{ "name":"validation", "num_bytes":36627822, "num_examples":123, "dataset_name":"deepfake-detection" }, "train":{ "name":"train", "num_bytes":901023694, "num_examples":3200, "dataset_name":"deepfake-detection" } }, "download_checksums":null, "download_size":937562209, "dataset_size":937651516, "size_in_bytes":1875213725 } } ``` Anything I should do to have the new infos in the `dataset_infos.json` to be taken into account? Or it is not possible yet? Thanks! ### Steps to reproduce the bug - ### Expected behavior - ### Environment info - `datasets` version: 2.11.0 - Platform: Linux-5.15.90.1-microsoft-standard-WSL2-x86_64-with-glibc2.35 - Python version: 3.10.10 - Huggingface_hub version: 0.13.3 - PyArrow version: 11.0.0 - Pandas version: 2.0.0
5,709
https://github.com/huggingface/datasets/issues/5708
Dataset sizes are in MiB instead of MB in dataset cards
[ "Example of bulk edit: https://huggingface.co/datasets/aeslc/discussions/5", "looks great! \r\n\r\nDo you encode the fact that you've already converted a dataset? (to not convert it twice) or do you base yourself on the info contained in `dataset_info`", "I am only looping trough the dataset cards, assuming tha...
As @severo reported in an internal discussion (https://github.com/huggingface/moon-landing/issues/5929): Now we show the dataset size: - from the dataset card (in the side column) - from the datasets-server (in the viewer) But, even if the size is the same, we see a mismatch because the viewer shows MB, while the info from the README generally shows MiB (even if it's written MB -> https://huggingface.co/datasets/blimp/blob/main/README.md?code=true#L1932) <img width="664" alt="Capture d’écran 2023-04-04 à 10 16 01" src="https://user-images.githubusercontent.com/1676121/229730887-0bd8fa6e-9462-46c6-bd4e-4d2c5784cabb.png"> TODO: Values to be fixed in: `Size of downloaded dataset files:`, `Size of the generated dataset:` and `Total amount of disk used:` - [x] Bulk edit on the Hub to fix this in all canonical datasets - [x] Bulk PR on the Hub to fix ancient canonical datasets that were moved to organizations
5,708
https://github.com/huggingface/datasets/issues/5706
Support categorical data types for Parquet
[ "Hi ! We could definitely a type that holds the categories and uses a DictionaryType storage. There's a ClassLabel type that is similar with a 'names' parameter (similar to a id2label in deep learning frameworks) that uses an integer array as storage.\r\n\r\nIt can be added in `features.py`. Here are some pointers:...
### Feature request Huggingface datasets does not seem to support categorical / dictionary data types for Parquet as of now. There seems to be a `TODO` in the code for this feature but no implementation yet. Below you can find sample code to reproduce the error that is currently thrown when attempting to read a Parquet file with categorical columns: ```python import pandas as pd import pyarrow.parquet as pq from datasets import load_dataset # Create categorical sample DataFrame df = pd.DataFrame({'type': ['foo', 'bar']}).astype('category') df.to_parquet('data.parquet') # Read back as pyarrow table table = pq.read_table('data.parquet') print(table.schema) # type: dictionary<values=string, indices=int32, ordered=0> # Load with huggingface datasets load_dataset('parquet', data_files='data.parquet') ``` Error: ``` Traceback (most recent call last): File ".venv/lib/python3.10/site-packages/datasets/builder.py", line 1875, in _prepare_split_single writer.write_table(table) File ".venv/lib/python3.10/site-packages/datasets/arrow_writer.py", line 566, in write_table self._build_writer(inferred_schema=pa_table.schema) File ".venv/lib/python3.10/site-packages/datasets/arrow_writer.py", line 379, in _build_writer inferred_features = Features.from_arrow_schema(inferred_schema) File ".venv/lib/python3.10/site-packages/datasets/features/features.py", line 1622, in from_arrow_schema obj = {field.name: generate_from_arrow_type(field.type) for field in pa_schema} File ".venv/lib/python3.10/site-packages/datasets/features/features.py", line 1622, in <dictcomp> obj = {field.name: generate_from_arrow_type(field.type) for field in pa_schema} File ".venv/lib/python3.10/site-packages/datasets/features/features.py", line 1361, in generate_from_arrow_type raise NotImplementedError # TODO(thom) this will need access to the dictionary as well (for labels). I.e. to the py_table NotImplementedError ``` ### Motivation Categorical data types, as offered by Pandas and implemented with the `DictionaryType` dtype in `pyarrow` can significantly reduce dataset size and are a handy way to turn textual features into numerical representations and back. Lack of support in Huggingface datasets greatly reduces compatibility with a common Pandas / Parquet feature. ### Your contribution I could provide a PR. However, it would be nice to have an initial complexity estimate from one of the core developers first.
5,706
https://github.com/huggingface/datasets/issues/5705
Getting next item from IterableDataset took forever.
[ "Hi! It can take some time to iterate over Parquet files as big as yours, convert the samples to Python, and find the first one that matches a filter predicate before yielding it...", "Thanks @mariosasko, I figured it was the filter operation. I'm closing this issue because it is not a bug, it is the expected beh...
### Describe the bug I have a large dataset, about 500GB. The format of the dataset is parquet. I then load the dataset and try to get the first item ```python def get_one_item(): dataset = load_dataset("path/to/datafiles", split="train", cache_dir=".", streaming=True) dataset = dataset.filter(lambda example: example['text'].startswith('Ar')) print(next(iter(dataset))) ``` However, this function never finish. I waited ~10mins, the function was still running so I killed the process. I'm now using `line_profiler` to profile how long it would take to return one item. I'll be patient and wait for as long as it needs. I suspect the filter operation is the reason why it took so long. Can I get some possible reasons behind this? ### Steps to reproduce the bug Unfortunately without my data files, there is no way to reproduce this bug. ### Expected behavior With `IteralbeDataset`, I expect the first item to be returned instantly. ### Environment info - datasets version: 2.11.0 - python: 3.7.12
5,705
https://github.com/huggingface/datasets/issues/5702
Is it possible or how to define a `datasets.Sequence` that could potentially be either a dict, a str, or None?
[ "Hi ! `datasets` uses Apache Arrow as backend to store the data, and it requires each column to have a fixed type. Therefore a column can't have a mix of dicts/lists/strings.\r\n\r\nThough it's possible to have one (nullable) field for each type:\r\n```python\r\nfeatures = Features({\r\n \"text_alone\": Value(\"...
### Feature request Hello! Apologies if my question sounds naive: I was wondering if it’s possible, or how one would go about defining a 'datasets.Sequence' element in datasets.Features that could potentially be either a dict, a str, or None? Specifically, I’d like to define a feature for a list that contains 18 elements, each of which has been pre-defined as either a `dict or None` or `str or None` - as demonstrated in the slightly misaligned data provided below: ```json [ [ {"text":"老妇人","idxes":[0,1,2]},null,{"text":"跪","idxes":[3]},null,null,null,null,{"text":"在那坑里","idxes":[4,5,6,7]},null,null,null,null,null,null,null,null,null,null], [ {"text":"那些水","idxes":[13,14,15]},null,{"text":"舀","idxes":[11]},null,null,null,null,null,{"text":"在那坑里","idxes":[4,5,6,7]},null,{"text":"出","idxes":[12]},null,null,null,null,null,null,null], [ {"text":"水","idxes":[38]}, null, {"text":"舀","idxes":[40]}, "假", // note this is just a standalone string null,null,null,{"text":"坑里","idxes":[35,36]},null,null,null,null,null,null,null,null,null,null]] ``` ### Motivation I'm currently working with a dataset of the following structure and I couldn't find a solution in the [documentation](https://huggingface.co/docs/datasets/v2.11.0/en/package_reference/main_classes#datasets.Features). ```json {"qid":"3-train-1058","context":"桑桑害怕了。从玉米地里走到田埂上,他遥望着他家那幢草房子里的灯光,知道母亲没有让他回家的意思,很伤感,有点想哭。但没哭,转身朝阿恕家走去。","corefs":[[{"text":"桑桑","idxes":[0,1]},{"text":"他","idxes":[17]}]],"non_corefs":[],"outputs":[[{"text":"他","idxes":[17]},null,{"text":"走","idxes":[11]},null,null,null,null,null,{"text":"从玉米地里","idxes":[6,7,8,9,10]},{"text":"到田埂上","idxes":[12,13,14,15]},null,null,null,null,null,null,null,null],[{"text":"他","idxes":[17]},null,{"text":"走","idxes":[66]},null,null,null,null,null,null,null,{"text":"转身朝阿恕家去","idxes":[60,61,62,63,64,65,67]},null,null,null,null,null,null,null],[{"text":"灯光","idxes":[30,31]},null,null,null,null,null,null,{"text":"草房子里","idxes":[25,26,27,28]},null,null,null,null,null,null,null,null,null,null],[{"text":"他","idxes":[17]},{"text":"他家那幢草房子","idxes":[21,22,23,24,25,26,27]},null,null,null,null,null,null,null,null,null,null,null,null,null,null,null,"远"],[{"text":"他","idxes":[17]},{"text":"阿恕家","idxes":[63,64,65]},null,null,null,null,null,null,null,null,null,null,null,null,null,null,null,"变近"]]} ``` ### Your contribution I'm going to provide the dataset at https://huggingface.co/datasets/2030NLP/SpaCE2022 .
5,702
https://github.com/huggingface/datasets/issues/5699
Issue when wanting to split in memory a cached dataset
[ "Hi ! Good catch, this is wrong indeed and thanks for opening a PR :)", "Facing the same issue. Kindly fix this bug." ]
### Describe the bug **In the 'train_test_split' method of the Dataset class** (defined datasets/arrow_dataset.py), **if 'self.cache_files' is not empty**, then, **regarding the input parameters 'train_indices_cache_file_name' and 'test_indices_cache_file_name', if they are None**, we modify them to make them not None, to see if we can just provide back / work from cached data. But if we can't provide cached data, we move on with the call to the method, except those two values are not None anymore, which will conflict with the use of the 'keep_in_memory' parameter down the line. Indeed, at some point we end up calling the 'select' method, **and if 'keep_in_memory' is True**, since the value of this method's parameter 'indices_cache_file_name' is now not None anymore, **an exception is raised, whose message is "Please use either 'keep_in_memory' or 'indices_cache_file_name' but not both.".** Because of that, it's impossible to perform a train / test split of a cached dataset while requesting that the result not be cached. Which is inconvenient when one is just performing experiments, with no intention of caching the result. Aside from this being inconvenient, **the code which lead up to that situation seems simply wrong** to me: the input variable should not be modified so as to change the user's intention just to perform a test, if that test can fail and respecting the user's intention is necessary to proceed in that case. To fix this, I suggest to use other variables / other variable names, in order to host the value(s) needed to perform the test, so as not to change the originally input values needed by the rest of the method's code. Also, **I don't see why an exception should be raised when the 'select' method is called with both 'keep_in_memory'=True and 'indices_cache_file_name'!=None**: should the use of 'keep_in_memory' not prevail anyway, specifying that the user does not want to perform caching, and so making irrelevant the value of 'indices_cache_file_name'? This is indeed what happens when we look further in the code, in the '\_select_with_indices_mapping' method: when 'keep_in_memory' is True, then the value of indices_cache_file_name does not matter, the data will be written to a stream buffer anyway. Hence I suggest to remove the raising of exception in those circumstances. Notably, to remove the raising of it in the 'select', '\_select_with_indices_mapping', 'shuffle' and 'map' methods. ### Steps to reproduce the bug ```python import datasets def generate_examples(): for i in range(10): yield {"id": i} dataset_ = datasets.Dataset.from_generator( generate_examples, keep_in_memory=False, ) dataset_.train_test_split( test_size=3, shuffle=False, keep_in_memory=True, train_indices_cache_file_name=None, test_indices_cache_file_name=None, ) ``` ### Expected behavior The result of the above code should be a DatasetDict instance. Instead, we get the following exception stack: ```python --------------------------------------------------------------------------- ValueError Traceback (most recent call last) Cell In[3], line 1 ----> 1 dataset_.train_test_split( 2 test_size=3, 3 shuffle=False, 4 keep_in_memory=True, 5 train_indices_cache_file_name=None, 6 test_indices_cache_file_name=None, 7 ) File ~/Work/Developments/datasets/src/datasets/arrow_dataset.py:528, in transmit_format.<locals>.wrapper(*args, **kwargs) 521 self_format = { 522 "type": self._format_type, 523 "format_kwargs": self._format_kwargs, 524 "columns": self._format_columns, 525 "output_all_columns": self._output_all_columns, 526 } 527 # apply actual function --> 528 out: Union["Dataset", "DatasetDict"] = func(self, *args, **kwargs) 529 datasets: List["Dataset"] = list(out.values()) if isinstance(out, dict) else [out] 530 # re-apply format to the output File ~/Work/Developments/datasets/src/datasets/fingerprint.py:511, in fingerprint_transform.<locals>._fingerprint.<locals>.wrapper(*args, **kwargs) 507 validate_fingerprint(kwargs[fingerprint_name]) 509 # Call actual function --> 511 out = func(dataset, *args, **kwargs) 513 # Update fingerprint of in-place transforms + update in-place history of transforms 515 if inplace: # update after calling func so that the fingerprint doesn't change if the function fails File ~/Work/Developments/datasets/src/datasets/arrow_dataset.py:4428, in Dataset.train_test_split(self, test_size, train_size, shuffle, stratify_by_column, seed, generator, keep_in_memory, load_from_cache_file, train_indices_cache_file_name, test_indices_cache_file_name, writer_batch_size, train_new_fingerprint, test_new_fingerprint) 4425 test_indices = permutation[:n_test] 4426 train_indices = permutation[n_test : (n_test + n_train)] -> 4428 train_split = self.select( 4429 indices=train_indices, 4430 keep_in_memory=keep_in_memory, 4431 indices_cache_file_name=train_indices_cache_file_name, 4432 writer_batch_size=writer_batch_size, 4433 new_fingerprint=train_new_fingerprint, 4434 ) 4435 test_split = self.select( 4436 indices=test_indices, 4437 keep_in_memory=keep_in_memory, (...) 4440 new_fingerprint=test_new_fingerprint, 4441 ) 4443 return DatasetDict({"train": train_split, "test": test_split}) File ~/Work/Developments/datasets/src/datasets/arrow_dataset.py:528, in transmit_format.<locals>.wrapper(*args, **kwargs) 521 self_format = { 522 "type": self._format_type, 523 "format_kwargs": self._format_kwargs, 524 "columns": self._format_columns, 525 "output_all_columns": self._output_all_columns, 526 } 527 # apply actual function --> 528 out: Union["Dataset", "DatasetDict"] = func(self, *args, **kwargs) 529 datasets: List["Dataset"] = list(out.values()) if isinstance(out, dict) else [out] 530 # re-apply format to the output File ~/Work/Developments/datasets/src/datasets/fingerprint.py:511, in fingerprint_transform.<locals>._fingerprint.<locals>.wrapper(*args, **kwargs) 507 validate_fingerprint(kwargs[fingerprint_name]) 509 # Call actual function --> 511 out = func(dataset, *args, **kwargs) 513 # Update fingerprint of in-place transforms + update in-place history of transforms 515 if inplace: # update after calling func so that the fingerprint doesn't change if the function fails File ~/Work/Developments/datasets/src/datasets/arrow_dataset.py:3679, in Dataset.select(self, indices, keep_in_memory, indices_cache_file_name, writer_batch_size, new_fingerprint) 3645 """Create a new dataset with rows selected following the list/array of indices. 3646 3647 Args: (...) 3676 ``` 3677 """ 3678 if keep_in_memory and indices_cache_file_name is not None: -> 3679 raise ValueError("Please use either `keep_in_memory` or `indices_cache_file_name` but not both.") 3681 if len(self.list_indexes()) > 0: 3682 raise DatasetTransformationNotAllowedError( 3683 "Using `.select` on a dataset with attached indexes is not allowed. You can first run `.drop_index() to remove your index and then re-add it." 3684 ) ValueError: Please use either `keep_in_memory` or `indices_cache_file_name` but not both. ``` ### Environment info - `datasets` version: 2.11.1.dev0 - Platform: Linux-5.4.236-1-MANJARO-x86_64-with-glibc2.2.5 - Python version: 3.8.12 - Huggingface_hub version: 0.13.3 - PyArrow version: 11.0.0 - Pandas version: 2.0.0 *** *** EDIT: Now with a pull request to fix this [here](https://github.com/huggingface/datasets/pull/5700)
5,699
https://github.com/huggingface/datasets/issues/5698
Add Qdrant as another search index
[ "@mariosasko I'd appreciate your feedback on this. " ]
### Feature request I'd suggest adding Qdrant (https://qdrant.tech) as another search index available, so users can directly build an index from a dataset. Currently, FAISS and ElasticSearch are only supported: https://huggingface.co/docs/datasets/faiss_es ### Motivation ElasticSearch is a keyword-based search system, while FAISS is a vector search library. Vector database, such as Qdrant, is a different tool based on similarity (like FAISS) but is not limited to a single machine. It makes the vector database well-suited for bigger datasets and collaboration if several people want to access a particular dataset. ### Your contribution I can provide a PR implementing that functionality on my own.
5,698
https://github.com/huggingface/datasets/issues/5696
Shuffle a sharded iterable dataset without seed can lead to duplicate data
[]
As reported in https://github.com/huggingface/datasets/issues/5360 If `seed=None` in `.shuffle()`, shuffled datasets don't use the same shuffling seed across nodes. Because of that, the lists of shards is not shuffled the same way across nodes, and therefore some shards may be assigned to multiple nodes instead of exactly one. This can happen only when you have a number of shards that is a factor of the number of nodes. The current workaround is to always set a `seed` in `.shuffle()`
5,696
https://github.com/huggingface/datasets/issues/5695
Loading big dataset raises pyarrow.lib.ArrowNotImplementedError
[ "Hi ! It looks like an issue with PyArrow: https://issues.apache.org/jira/browse/ARROW-5030\r\n\r\nIt appears it can happen when you have parquet files with row groups larger than 2GB.\r\nI can see that your parquet files are around 10GB. It is usually advised to keep a value around the default value 500MB to avoid...
### Describe the bug Calling `datasets.load_dataset` to load the (publicly available) dataset `theodor1289/wit` fails with `pyarrow.lib.ArrowNotImplementedError`. ### Steps to reproduce the bug Steps to reproduce this behavior: 1. `!pip install datasets` 2. `!huggingface-cli login` 3. This step will throw the error (it might take a while as the dataset has ~170GB): ```python from datasets import load_dataset dataset = load_dataset("theodor1289/wit", "train", use_auth_token=True) ``` Stack trace: ``` (torch-multimodal) bash-4.2$ python test.py Downloading and preparing dataset None/None to /cluster/work/cotterell/tamariucai/HuggingfaceDatasets/theodor1289___parquet/theodor1289--wit-7a3e984414a86a0f/0.0.0/2a3b91fbd88a2c90d1dbbb32b460cf621d31bd5b05b934492fdef7d8d6f236ec... Downloading data files: 100%|██████████████████████████████████████████████████████████████████████████████████████████████████████████████████████████████████████████████████████████████████████████| 2/2 [00:00<00:00, 491.68it/s] Extracting data files: 100%|████████████████████████████████████████████████████████████████████████████████████████████████████████████████████████████████████████████████████████████████████████████| 2/2 [00:00<00:00, 16.93it/s] Traceback (most recent call last): File "/cluster/home/tamariucai/.local/lib/python3.10/site-packages/datasets/builder.py", line 1860, in _prepare_split_single for _, table in generator: File "/cluster/home/tamariucai/.local/lib/python3.10/site-packages/datasets/packaged_modules/parquet/parquet.py", line 69, in _generate_tables for batch_idx, record_batch in enumerate( File "pyarrow/_parquet.pyx", line 1323, in iter_batches File "pyarrow/error.pxi", line 121, in pyarrow.lib.check_status pyarrow.lib.ArrowNotImplementedError: Nested data conversions not implemented for chunked array outputs The above exception was the direct cause of the following exception: Traceback (most recent call last): File "/cluster/work/cotterell/tamariucai/multimodal-mirror/examples/test.py", line 2, in <module> dataset = load_dataset("theodor1289/wit", "train", use_auth_token=True) File "/cluster/home/tamariucai/.local/lib/python3.10/site-packages/datasets/load.py", line 1791, in load_dataset builder_instance.download_and_prepare( File "/cluster/home/tamariucai/.local/lib/python3.10/site-packages/datasets/builder.py", line 891, in download_and_prepare self._download_and_prepare( File "/cluster/home/tamariucai/.local/lib/python3.10/site-packages/datasets/builder.py", line 986, in _download_and_prepare self._prepare_split(split_generator, **prepare_split_kwargs) File "/cluster/home/tamariucai/.local/lib/python3.10/site-packages/datasets/builder.py", line 1748, in _prepare_split for job_id, done, content in self._prepare_split_single( File "/cluster/home/tamariucai/.local/lib/python3.10/site-packages/datasets/builder.py", line 1893, in _prepare_split_single raise DatasetGenerationError("An error occurred while generating the dataset") from e datasets.builder.DatasetGenerationError: An error occurred while generating the dataset ``` ### Expected behavior The dataset is loaded in variable `dataset`. ### Environment info - `datasets` version: 2.11.0 - Platform: Linux-3.10.0-1160.80.1.el7.x86_64-x86_64-with-glibc2.17 - Python version: 3.10.4 - Huggingface_hub version: 0.13.3 - PyArrow version: 11.0.0 - Pandas version: 1.5.3
5,695
https://github.com/huggingface/datasets/issues/5694
Dataset configuration
[ "Originally we also though about adding it to the YAML part of the README.md:\r\n\r\n```yaml\r\nbuilder_config:\r\n data_dir: data\r\n data_files:\r\n - split: train\r\n pattern: \"train-[0-9][0-9][0-9][0-9]-of-[0-9][0-9][0-9][0-9][0-9]*.*\"\r\n```\r\n\r\nHaving it in the README.md could make it easier to mod...
Following discussions from https://github.com/huggingface/datasets/pull/5331 We could have something like `config.json` to define the configuration of a dataset. ```json { "data_dir": "data" "data_files": { "train": "train-[0-9][0-9][0-9][0-9]-of-[0-9][0-9][0-9][0-9][0-9]*.*" } } ``` we could also support a list for several configs with a 'config_name' field. The alternative was to use YAML in the README.md. I think it could also support a `dataset_type` field to specify which dataset builder class to use, and the other parameters would be the builder's parameters. Some parameters exist for all builders like `data_files` and `data_dir`, but some parameters are builder specific like `sep` for csv. This format would be used in `push_to_hub` to be able to push multiple configs. cc @huggingface/datasets EDIT: actually we're going for the YAML approach in README.md
5,694
https://github.com/huggingface/datasets/issues/5692
pyarrow.lib.ArrowInvalid: Unable to merge: Field <field> has incompatible types
[ "Hi! The link pointing to the code that generated the dataset is broken. Can you please fix it to make debugging easier?", "> Hi! The link pointing to the code that generated the dataset is broken. Can you please fix it to make debugging easier?\r\n\r\nSorry about that, it's fixed now.\r\n", "@cyanic-selkie cou...
### Describe the bug When loading the dataset [wikianc-en](https://huggingface.co/datasets/cyanic-selkie/wikianc-en) which I created using [this](https://github.com/cyanic-selkie/wikianc) code, I get the following error: ``` Traceback (most recent call last): File "/home/sven/code/rector/answer-detection/train.py", line 106, in <module> (dataset, weights) = get_dataset(args.dataset, tokenizer, labels, args.padding) File "/home/sven/code/rector/answer-detection/dataset.py", line 106, in get_dataset dataset = load_dataset("cyanic-selkie/wikianc-en") File "/home/sven/.cache/pypoetry/virtualenvs/rector-Z2mdKRnn-py3.10/lib/python3.10/site-packages/datasets/load.py", line 1794, in load_dataset ds = builder_instance.as_dataset(split=split, verification_mode=verification_mode, in_memory=keep_in_memory) File "/home/sven/.cache/pypoetry/virtualenvs/rector-Z2mdKRnn-py3.10/lib/python3.10/site-packages/datasets/builder.py", line 1106, in as_dataset datasets = map_nested( File "/home/sven/.cache/pypoetry/virtualenvs/rector-Z2mdKRnn-py3.10/lib/python3.10/site-packages/datasets/utils/py_utils.py", line 443, in map_nested mapped = [ File "/home/sven/.cache/pypoetry/virtualenvs/rector-Z2mdKRnn-py3.10/lib/python3.10/site-packages/datasets/utils/py_utils.py", line 444, in <listcomp> _single_map_nested((function, obj, types, None, True, None)) File "/home/sven/.cache/pypoetry/virtualenvs/rector-Z2mdKRnn-py3.10/lib/python3.10/site-packages/datasets/utils/py_utils.py", line 346, in _single_map_nested return function(data_struct) File "/home/sven/.cache/pypoetry/virtualenvs/rector-Z2mdKRnn-py3.10/lib/python3.10/site-packages/datasets/builder.py", line 1136, in _build_single_dataset ds = self._as_dataset( File "/home/sven/.cache/pypoetry/virtualenvs/rector-Z2mdKRnn-py3.10/lib/python3.10/site-packages/datasets/builder.py", line 1207, in _as_dataset dataset_kwargs = ArrowReader(cache_dir, self.info).read( File "/home/sven/.cache/pypoetry/virtualenvs/rector-Z2mdKRnn-py3.10/lib/python3.10/site-packages/datasets/arrow_reader.py", line 239, in read return self.read_files(files=files, original_instructions=instructions, in_memory=in_memory) File "/home/sven/.cache/pypoetry/virtualenvs/rector-Z2mdKRnn-py3.10/lib/python3.10/site-packages/datasets/arrow_reader.py", line 260, in read_files pa_table = self._read_files(files, in_memory=in_memory) File "/home/sven/.cache/pypoetry/virtualenvs/rector-Z2mdKRnn-py3.10/lib/python3.10/site-packages/datasets/arrow_reader.py", line 203, in _read_files pa_table = concat_tables(pa_tables) if len(pa_tables) != 1 else pa_tables[0] File "/home/sven/.cache/pypoetry/virtualenvs/rector-Z2mdKRnn-py3.10/lib/python3.10/site-packages/datasets/table.py", line 1808, in concat_tables return ConcatenationTable.from_tables(tables, axis=axis) File "/home/sven/.cache/pypoetry/virtualenvs/rector-Z2mdKRnn-py3.10/lib/python3.10/site-packages/datasets/table.py", line 1514, in from_tables return cls.from_blocks(blocks) File "/home/sven/.cache/pypoetry/virtualenvs/rector-Z2mdKRnn-py3.10/lib/python3.10/site-packages/datasets/table.py", line 1427, in from_blocks table = cls._concat_blocks(blocks, axis=0) File "/home/sven/.cache/pypoetry/virtualenvs/rector-Z2mdKRnn-py3.10/lib/python3.10/site-packages/datasets/table.py", line 1373, in _concat_blocks return pa.concat_tables(pa_tables, promote=True) File "pyarrow/table.pxi", line 5224, in pyarrow.lib.concat_tables File "pyarrow/error.pxi", line 144, in pyarrow.lib.pyarrow_internal_check_status File "pyarrow/error.pxi", line 100, in pyarrow.lib.check_status pyarrow.lib.ArrowInvalid: Unable to merge: Field paragraph_anchors has incompatible types: list<: struct<start: uint32 not null, end: uint32 not null, qid: uint32, pageid: uint32, title: string not null> not null> vs list<item: struct<start: uint32, end: uint32, qid: uint32, pageid: uint32, title: string>> ``` This only happens when I load the `train` split, indicating that the size of the dataset is the deciding factor. ### Steps to reproduce the bug ```python from datasets import load_dataset dataset = load_dataset("cyanic-selkie/wikianc-en", split="train") ``` ### Expected behavior The dataset should load normally without any errors. ### Environment info - `datasets` version: 2.10.1 - Platform: Linux-6.2.8-arch1-1-x86_64-with-glibc2.37 - Python version: 3.10.10 - PyArrow version: 11.0.0 - Pandas version: 1.5.3
5,692
https://github.com/huggingface/datasets/issues/5690
raise AttributeError(f"No {package_name} attribute {name}") AttributeError: No huggingface_hub attribute hf_api
[ "Hi @wccccp, thanks for reporting. \r\nThat's weird since `huggingface_hub` _has_ a module called `hf_api` and you are using a recent version of it. \r\n\r\nWhich version of `datasets` are you using? And is it a bug that you experienced only recently? (cc @lhoestq can it be somehow related to the recent release of ...
### Describe the bug rta.sh Traceback (most recent call last): File "run.py", line 7, in <module> import datasets File "/home/appuser/miniconda3/envs/pt2/lib/python3.8/site-packages/datasets/__init__.py", line 37, in <module> from .builder import ArrowBasedBuilder, BeamBasedBuilder, BuilderConfig, DatasetBuilder, GeneratorBasedBuilder File "/home/appuser/miniconda3/envs/pt2/lib/python3.8/site-packages/datasets/builder.py", line 44, in <module> from .data_files import DataFilesDict, _sanitize_patterns File "/home/appuser/miniconda3/envs/pt2/lib/python3.8/site-packages/datasets/data_files.py", line 120, in <module> dataset_info: huggingface_hub.hf_api.DatasetInfo, File "/home/appuser/miniconda3/envs/pt2/lib/python3.8/site-packages/huggingface_hub/__init__.py", line 290, in __getattr__ raise AttributeError(f"No {package_name} attribute {name}") AttributeError: No huggingface_hub attribute hf_api ### Reproduction _No response_ ### Logs ```shell Traceback (most recent call last): File "run.py", line 7, in <module> import datasets File "/home/appuser/miniconda3/envs/pt2/lib/python3.8/site-packages/datasets/__init__.py", line 37, in <module> from .builder import ArrowBasedBuilder, BeamBasedBuilder, BuilderConfig, DatasetBuilder, GeneratorBasedBuilder File "/home/appuser/miniconda3/envs/pt2/lib/python3.8/site-packages/datasets/builder.py", line 44, in <module> from .data_files import DataFilesDict, _sanitize_patterns File "/home/appuser/miniconda3/envs/pt2/lib/python3.8/site-packages/datasets/data_files.py", line 120, in <module> dataset_info: huggingface_hub.hf_api.DatasetInfo, File "/home/appuser/miniconda3/envs/pt2/lib/python3.8/site-packages/huggingface_hub/__init__.py", line 290, in __getattr__ raise AttributeError(f"No {package_name} attribute {name}") AttributeError: No huggingface_hub attribute hf_api ``` ### System info ```shell - huggingface_hub version: 0.13.2 - Platform: Linux-5.4.0-144-generic-x86_64-with-glibc2.10 - Python version: 3.8.5 - Running in iPython ?: No - Running in notebook ?: No - Running in Google Colab ?: No - Token path ?: /home/appuser/.cache/huggingface/token - Has saved token ?: False - Configured git credential helpers: - FastAI: N/A - Tensorflow: N/A - Torch: 1.7.1 - Jinja2: N/A - Graphviz: N/A - Pydot: N/A - Pillow: 9.3.0 - hf_transfer: N/A - ENDPOINT: https://huggingface.co - HUGGINGFACE_HUB_CACHE: /home/appuser/.cache/huggingface/hub - HUGGINGFACE_ASSETS_CACHE: /home/appuser/.cache/huggingface/assets - HF_TOKEN_PATH: /home/appuser/.cache/huggingface/token - HF_HUB_OFFLINE: False - HF_HUB_DISABLE_TELEMETRY: False - HF_HUB_DISABLE_PROGRESS_BARS: None - HF_HUB_DISABLE_SYMLINKS_WARNING: False - HF_HUB_DISABLE_IMPLICIT_TOKEN: False ```
5,690
https://github.com/huggingface/datasets/issues/5688
Wikipedia download_and_prepare for GCS
[ "Hi @adrianfagerland, thanks for reporting.\r\n\r\nPlease note that \"wikipedia\" is a special dataset, with an Apache Beam builder: https://beam.apache.org/\r\nYou can find more info about Beam datasets in our docs: https://huggingface.co/docs/datasets/beam\r\n\r\nIt was implemented to be run in parallel processin...
### Describe the bug I am unable to download the wikipedia dataset onto GCS. When I run the script provided the memory firstly gets eaten up, then it crashes. I tried running this on a VM with 128GB RAM and all I got was a two empty files: _data_builder.lock_, _data.incomplete/beam-temp-wikipedia-train-1ab2039acf3611ed87a9893475de0093_ I have troubleshot this for two straight days now, but I am just unable to get the dataset into storage. ### Steps to reproduce the bug Run this and insert a path: ``` import datasets builder = datasets.load_dataset_builder( "wikipedia", language="en", date="20230320", beam_runner="DirectRunner") builder.download_and_prepare({path}, file_format="parquet") ``` This is where the problem of it eating RAM occurs. I have also tried several versions of this, based on the docs: ``` import gcsfs import datasets storage_options = {"project": "tdt4310", "token": "cloud"} fs = gcsfs.GCSFileSystem(**storage_options) output_dir = "gcs://wikipediadata/" builder = datasets.load_dataset_builder( "wikipedia", date="20230320", language="en", beam_runner="DirectRunner") builder.download_and_prepare( output_dir, storage_options=storage_options, file_format="parquet") ``` The error message that is received here is: > ValueError: Unable to get filesystem from specified path, please use the correct path or ensure the required dependency is installed, e.g., pip install apache-beam[gcp]. Path specified: gcs://wikipediadata/wikipedia-train [while running 'train/Save to parquet/Write/WriteImpl/InitializeWrite'] I have ran `pip install apache-beam[gcp]` ### Expected behavior The wikipedia data loaded into GCS Everything worked when testing with a smaller demo dataset found somewhere in the docs ### Environment info Newest published version of datasets. Python 3.9. Also tested with Python 3.7. 128GB RAM Google Cloud VM instance.
5,688
https://github.com/huggingface/datasets/issues/5687
Document to compress data files before uploading
[ "Great idea!\r\n\r\nShould we also take this opportunity to include some audio/image file formats? Currently, it still reads very text heavy. Something like:\r\n\r\n> We support many text, audio, and image data extensions such as `.zip`, `.rar`, `.mp3`, and `.jpg` among many others. For data extensions like `.csv`,...
In our docs to [Share a dataset to the Hub](https://huggingface.co/docs/datasets/upload_dataset), we tell users to upload directly their data files, like CSV, JSON, JSON-Lines, text,... However, these extensions are not tracked by Git LFS by default, as they are not in the `.giattributes` file. Therefore, if they are too large, Git will fail to commit/upload them. I think for those file extensions (.csv, .json, .jsonl, .txt), we should better recommend to **compress** their data files (using ZIP for example) before uploading them to the Hub. - Compressed files are tracked by Git LFS in our default `.gitattributes` file What do you think? CC: @stevhliu See related issue: - https://huggingface.co/datasets/tcor0005/langchain-docs-400-chunksize/discussions/1
5,687
https://github.com/huggingface/datasets/issues/5685
Broken Image render on the hub website
[ "Hi! \r\n\r\nYou can fix the viewer by adding the `dataset_info` YAML field deleted in https://huggingface.co/datasets/Francesco/cell-towers/commit/b95b59ddd91ebe9c12920f0efe0ed415cd0d4298 back to the metadata section of the card. \r\n\r\nTo avoid this issue in the feature, you can use `huggingface_hub`'s [RepoCard...
### Describe the bug Hi :wave: Not sure if this is the right place to ask, but I am trying to load a huge amount of datasets on the hub (:partying_face: ) but I am facing a little issue with the `image` type ![image](https://user-images.githubusercontent.com/15908060/228587875-427a37f1-3a31-4e17-8bbe-0f759003910d.png) See this [dataset](https://huggingface.co/datasets/Francesco/cell-towers), basically for some reason the first image has numerical bytes inside, not sure if that is okay, but the image render feature **doesn't work** So the dataset is stored in the following way ```python builder.download_and_prepare(output_dir=str(output_dir)) ds = builder.as_dataset(split="train") # [NOTE] no idea how to push it from the builder folder ds.push_to_hub(repo_id=repo_id) builder.as_dataset(split="validation").push_to_hub(repo_id=repo_id) ds = builder.as_dataset(split="test") ds.push_to_hub(repo_id=repo_id) ``` The build is this class ```python class COCOLikeDatasetBuilder(datasets.GeneratorBasedBuilder): VERSION = datasets.Version("1.0.0") def _info(self): features = datasets.Features( { "image_id": datasets.Value("int64"), "image": datasets.Image(), "width": datasets.Value("int32"), "height": datasets.Value("int32"), "objects": datasets.Sequence( { "id": datasets.Value("int64"), "area": datasets.Value("int64"), "bbox": datasets.Sequence( datasets.Value("float32"), length=4 ), "category": datasets.ClassLabel(names=categories), } ), } ) return datasets.DatasetInfo( description=description, features=features, homepage=homepage, license=license, citation=citation, ) def _split_generators(self, dl_manager): archive = dl_manager.download(url) return [ datasets.SplitGenerator( name=datasets.Split.TRAIN, gen_kwargs={ "annotation_file_path": "train/_annotations.coco.json", "files": dl_manager.iter_archive(archive), }, ), datasets.SplitGenerator( name=datasets.Split.VALIDATION, gen_kwargs={ "annotation_file_path": "test/_annotations.coco.json", "files": dl_manager.iter_archive(archive), }, ), datasets.SplitGenerator( name=datasets.Split.TEST, gen_kwargs={ "annotation_file_path": "valid/_annotations.coco.json", "files": dl_manager.iter_archive(archive), }, ), ] def _generate_examples(self, annotation_file_path, files): def process_annot(annot, category_id_to_category): return { "id": annot["id"], "area": annot["area"], "bbox": annot["bbox"], "category": category_id_to_category[annot["category_id"]], } image_id_to_image = {} idx = 0 # This loop relies on the ordering of the files in the archive: # Annotation files come first, then the images. for path, f in files: file_name = os.path.basename(path) if annotation_file_path in path: annotations = json.load(f) category_id_to_category = { category["id"]: category["name"] for category in annotations["categories"] } print(category_id_to_category) image_id_to_annotations = collections.defaultdict(list) for annot in annotations["annotations"]: image_id_to_annotations[annot["image_id"]].append(annot) image_id_to_image = { annot["file_name"]: annot for annot in annotations["images"] } elif file_name in image_id_to_image: image = image_id_to_image[file_name] objects = [ process_annot(annot, category_id_to_category) for annot in image_id_to_annotations[image["id"]] ] print(file_name) yield idx, { "image_id": image["id"], "image": {"path": path, "bytes": f.read()}, "width": image["width"], "height": image["height"], "objects": objects, } idx += 1 ``` Basically, I want to add to the hub every dataset I come across on coco format Thanks Fra ### Steps to reproduce the bug In this case, you can just navigate on the [dataset](https://huggingface.co/datasets/Francesco/cell-towers) ### Expected behavior I was expecting the image rendering feature to work ### Environment info Not a lot to share, I am using `datasets` from a fresh venv
5,685
https://github.com/huggingface/datasets/issues/5682
ValueError when passing ignore_verifications
[]
When passing `ignore_verifications=True` to `load_dataset`, we get a ValueError: ``` ValueError: 'none' is not a valid VerificationMode ```
5,682
https://github.com/huggingface/datasets/issues/5681
Add information about patterns search order to the doc about structuring repo
[ "Good idea, I think I've seen this a couple of times before too on the forums. I can work on this :)", "Closed in #5693 " ]
Following [this](https://github.com/huggingface/datasets/issues/5650) issue I think we should add a note about the order of patterns that is used to find splits, see [my comment](https://github.com/huggingface/datasets/issues/5650#issuecomment-1488412527). Also we should reference this page in pages about packaged loaders. I have a déjà vu that it had already been discussed as some point but I don't remember....
5,681
https://github.com/huggingface/datasets/issues/5679
Allow load_dataset to take a working dir for intermediate data
[ "Hi ! AFAIK a dataset must be present on a local disk to be able to efficiently memory map the datasets Arrow files. What makes you think that it is possible to load from a cloud storage and have good performance ?\r\n\r\nAnyway it's already possible to download_and_prepare a dataset as Arrow files in a cloud stora...
### Feature request As a user, I can set a working dir for intermediate data creation. The processed files will be moved to the cache dir, like ``` load_dataset(…, working_dir=”/temp/dir”, cache_dir=”/cloud_dir”). ``` ### Motivation This will help the use case for using datasets with cloud storage as cache. It will help boost the performance. ### Your contribution I can provide a PR to fix this if the proposal seems reasonable.
5,679
https://github.com/huggingface/datasets/issues/5678
Add support to create a Dataset from spark dataframe
[ "if i read spark Dataframe , got an error on multi-node Spark cluster.\r\nDid the Api (Dataset.from_spark) support Spark cluster, read dataframe and save_to_disk?\r\n\r\nError: \r\n_pickle.PicklingError: Could not serialize object: RuntimeError: It appears that you are attempting to reference SparkContext from a b...
### Feature request Add a new API `Dataset.from_spark` to create a Dataset from Spark DataFrame. ### Motivation Spark is a distributed computing framework that can handle large datasets. By supporting loading Spark DataFrames directly into Hugging Face Datasets, we enable take the advantages of spark to processing the data in parallel. By providing a seamless integration between these two frameworks, we make it easier for data scientists and developers to work with both Spark and Hugging Face in the same workflow. ### Your contribution We can discuss about the ideas and I can help preparing a PR for this feature.
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