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https://api.github.com/repos/huggingface/datasets/issues/7686
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https://github.com/huggingface/datasets/issues/7686
3,237,201,090
I_kwDODunzps7A88TC
7,686
load_dataset does not check .no_exist files in the hub cache
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2025-07-16T20:04:00Z
2025-07-16T20:04:00Z
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### Describe the bug I'm not entirely sure if this should be submitted as a bug in the `datasets` library or the `huggingface_hub` library, given it could be fixed at different levels of the stack. The fundamental issue is that the `load_datasets` api doesn't use the `.no_exist` files in the hub cache unlike other wrapper APIs that do. This is because the `utils.file_utils.cached_path` used directly calls `hf_hub_download` instead of using `file_download.try_to_load_from_cache` from `huggingface_hub` (see `transformers` library `utils.hub.cached_files` for one alternate example). This results in unnecessary metadata HTTP requests occurring for files that don't exist on every call. It won't generate the .no_exist cache files, nor will it use them. ### Steps to reproduce the bug Run the following snippet as one example (setting cache dirs to clean paths for clarity) `env HF_HOME=~/local_hf_hub python repro.py` ``` from datasets import load_dataset import huggingface_hub # monkeypatch to print out metadata requests being made original_get_hf_file_metadata = huggingface_hub.file_download.get_hf_file_metadata def get_hf_file_metadata_wrapper(*args, **kwargs): print("File metadata request made (get_hf_file_metadata):", args, kwargs) return original_get_hf_file_metadata(*args, **kwargs) # Apply the patch huggingface_hub.file_download.get_hf_file_metadata = get_hf_file_metadata_wrapper dataset = load_dataset( "Salesforce/wikitext", "wikitext-2-v1", split="test", trust_remote_code=True, cache_dir="~/local_datasets", revision="b08601e04326c79dfdd32d625aee71d232d685c3", ) ``` This may be called over and over again, and you will see the same calls for files that don't exist: ``` File metadata request made (get_hf_file_metadata): () {'url': 'https://huggingface.co/datasets/Salesforce/wikitext/resolve/b08601e04326c79dfdd32d625aee71d232d685c3/wikitext.py', 'proxies': None, 'timeout': 10, 'headers': {'user-agent': 'datasets/3.6.0; hf_hub/0.33.2; python/3.12.11; torch/2.7.0; huggingface_hub/0.33.2; pyarrow/20.0.0; jax/0.5.3'}, 'token': None} File metadata request made (get_hf_file_metadata): () {'url': 'https://huggingface.co/datasets/Salesforce/wikitext/resolve/b08601e04326c79dfdd32d625aee71d232d685c3/.huggingface.yaml', 'proxies': None, 'timeout': 10, 'headers': {'user-agent': 'datasets/3.6.0; hf_hub/0.33.2; python/3.12.11; torch/2.7.0; huggingface_hub/0.33.2; pyarrow/20.0.0; jax/0.5.3'}, 'token': None} File metadata request made (get_hf_file_metadata): () {'url': 'https://huggingface.co/datasets/Salesforce/wikitext/resolve/b08601e04326c79dfdd32d625aee71d232d685c3/dataset_infos.json', 'proxies': None, 'timeout': 10, 'headers': {'user-agent': 'datasets/3.6.0; hf_hub/0.33.2; python/3.12.11; torch/2.7.0; huggingface_hub/0.33.2; pyarrow/20.0.0; jax/0.5.3'}, 'token': None} ``` And you can see that the .no_exist folder is never created ``` $ ls ~/local_hf_hub/hub/datasets--Salesforce--wikitext/ blobs refs snapshots ``` ### Expected behavior The expected behavior is for the print "File metadata request made" to stop after the first call, and for .no_exist directory & files to be populated under ~/local_hf_hub/hub/datasets--Salesforce--wikitext/ ### Environment info - `datasets` version: 3.6.0 - Platform: Linux-6.5.13-65-650-4141-22041-coreweave-amd64-85c45edc-x86_64-with-glibc2.35 - Python version: 3.12.11 - `huggingface_hub` version: 0.33.2 - PyArrow version: 20.0.0 - Pandas version: 2.3.1 - `fsspec` version: 2024.9.0
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7,685
Inconsistent range request behavior for parquet REST api
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[ "This is a weird bug, is it a range that is supposed to be satisfiable ? I mean, is it on the boundraries ?\n\nLet me know if you'r e still having the issue, in case it was just a transient bug", "@lhoestq yes the ranges are supposed to be satisfiable, and _sometimes_ they are. \n\nThe head requests show that it ...
2025-07-16T18:39:44Z
2025-08-11T08:16:54Z
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### Describe the bug First off, I do apologize if this is not the correct repo for submitting this issue. Please direct me to another one if it's more appropriate elsewhere. The datasets rest api is inconsistently giving `416 Range Not Satisfiable` when using a range request to get portions of the parquet files. More often than not, I am seeing 416, but other times for an identical request, it gives me the data along with `206 Partial Content` as expected. ### Steps to reproduce the bug repeating this request multiple times will return either 416 or 206. ```sh $ curl -v -L -H "Range: bytes=217875070-218006142" -o output.parquet "https://huggingface.co/api/datasets/HuggingFaceTB/smoltalk2/parquet/Mid/Llama_Nemotron_Post_Training_Dataset_reasoning_r1/0.parquet" ``` Note: this is not limited to just the above file, I tried with many different datasets and am able to consistently reproduce issue across multiple datasets. when the 416 is returned, I get the following headers ``` < HTTP/2 416 < content-type: text/html < content-length: 49 < server: CloudFront < date: Wed, 16 Jul 2025 14:58:43 GMT < expires: Wed, 16 Jul 2025 14:58:43 GMT < content-range: bytes */177 < x-cache: Error from cloudfront < via: 1.1 873527676a354c5998cad133525df9c0.cloudfront.net (CloudFront) < ``` this suggests to me that there is likely a CDN/caching/routing issue happening and the request is not getting routed properly. Full verbose output via curl. <details> ❯ curl -v -L -H "Range: bytes=217875070-218006142" -o output.parquet "https://huggingface.co/api/datasets/HuggingFaceTB/smoltalk2/parquet/Mid/Llama_Nemotron_Post_Training_Dataset_reasoning_r1/0.parquet" % Total % Received % Xferd Average Speed Time Time Time Current Dload Upload Total Spent Left Speed 0 0 0 0 0 0 0 0 --:--:-- --:--:-- --:--:-- 0* Host huggingface.co:443 was resolved. * IPv6: (none) * IPv4: 18.160.102.96, 18.160.102.110, 18.160.102.4, 18.160.102.86 * Trying 18.160.102.96:443... * Connected to huggingface.co (18.160.102.96) port 443 * ALPN: curl offers h2,http/1.1 * (304) (OUT), TLS handshake, Client hello (1): } [319 bytes data] * CAfile: /etc/ssl/cert.pem * CApath: none * (304) (IN), TLS handshake, Server hello (2): { [122 bytes data] * (304) (IN), TLS handshake, Unknown (8): { [19 bytes data] * (304) (IN), TLS handshake, Certificate (11): { [3821 bytes data] * (304) (IN), TLS handshake, CERT verify (15): { [264 bytes data] * (304) (IN), TLS handshake, Finished (20): { [36 bytes data] * (304) (OUT), TLS handshake, Finished (20): } [36 bytes data] * SSL connection using TLSv1.3 / AEAD-AES128-GCM-SHA256 / [blank] / UNDEF * ALPN: server accepted h2 * Server certificate: * subject: CN=huggingface.co * start date: Apr 13 00:00:00 2025 GMT * expire date: May 12 23:59:59 2026 GMT * subjectAltName: host "huggingface.co" matched cert's "huggingface.co" * issuer: C=US; O=Amazon; CN=Amazon RSA 2048 M02 * SSL certificate verify ok. * using HTTP/2 * [HTTP/2] [1] OPENED stream for https://huggingface.co/api/datasets/HuggingFaceTB/smoltalk2/parquet/Mid/Llama_Nemotron_Post_Training_Dataset_reasoning_r1/0.parquet * [HTTP/2] [1] [:method: GET] * [HTTP/2] [1] [:scheme: https] * [HTTP/2] [1] [:authority: huggingface.co] * [HTTP/2] [1] [:path: /api/datasets/HuggingFaceTB/smoltalk2/parquet/Mid/Llama_Nemotron_Post_Training_Dataset_reasoning_r1/0.parquet] * [HTTP/2] [1] [user-agent: curl/8.7.1] * [HTTP/2] [1] [accept: */*] * [HTTP/2] [1] [range: bytes=217875070-218006142] > GET /api/datasets/HuggingFaceTB/smoltalk2/parquet/Mid/Llama_Nemotron_Post_Training_Dataset_reasoning_r1/0.parquet HTTP/2 > Host: huggingface.co > User-Agent: curl/8.7.1 > Accept: */* > Range: bytes=217875070-218006142 > * Request completely sent off < HTTP/2 416 < content-type: text/html < content-length: 49 < server: CloudFront < date: Wed, 16 Jul 2025 14:58:41 GMT < expires: Wed, 16 Jul 2025 14:58:41 GMT < content-range: bytes */177 < x-cache: Error from cloudfront < via: 1.1 e2f1bed2f82641d6d5439eac20a790ba.cloudfront.net (CloudFront) < x-amz-cf-pop: MSP50-P1 < x-amz-cf-id: Mo8hn-EZLJqE_hoBday8DdhmVXhV3v9-Wg-EEHI6gX_fNlkanVIUBA== < { [49 bytes data] 100 49 100 49 0 0 2215 0 --:--:-- --:--:-- --:--:-- 2227 * Connection #0 to host huggingface.co left intact (.venv) Daft main*​* ≡❯ curl -v -L -H "Range: bytes=217875070-218006142" -o output.parquet "https://huggingface.co/api/datasets/HuggingFaceTB/smoltalk2/parquet/Mid/Llama_Nemotron_Post_Training_Dataset_reasoning_r1/0.parquet" % Total % Received % Xferd Average Speed Time Time Time Current Dload Upload Total Spent Left Speed 0 0 0 0 0 0 0 0 --:--:-- --:--:-- --:--:-- 0* Host huggingface.co:443 was resolved. * IPv6: (none) * IPv4: 18.160.102.96, 18.160.102.110, 18.160.102.4, 18.160.102.86 * Trying 18.160.102.96:443... * Connected to huggingface.co (18.160.102.96) port 443 * ALPN: curl offers h2,http/1.1 * (304) (OUT), TLS handshake, Client hello (1): } [319 bytes data] * CAfile: /etc/ssl/cert.pem * CApath: none * (304) (IN), TLS handshake, Server hello (2): { [122 bytes data] * (304) (IN), TLS handshake, Unknown (8): { [19 bytes data] * (304) (IN), TLS handshake, Certificate (11): { [3821 bytes data] * (304) (IN), TLS handshake, CERT verify (15): { [264 bytes data] * (304) (IN), TLS handshake, Finished (20): { [36 bytes data] * (304) (OUT), TLS handshake, Finished (20): } [36 bytes data] * SSL connection using TLSv1.3 / AEAD-AES128-GCM-SHA256 / [blank] / UNDEF * ALPN: server accepted h2 * Server certificate: * subject: CN=huggingface.co * start date: Apr 13 00:00:00 2025 GMT * expire date: May 12 23:59:59 2026 GMT * subjectAltName: host "huggingface.co" matched cert's "huggingface.co" * issuer: C=US; O=Amazon; CN=Amazon RSA 2048 M02 * SSL certificate verify ok. * using HTTP/2 * [HTTP/2] [1] OPENED stream for https://huggingface.co/api/datasets/HuggingFaceTB/smoltalk2/parquet/Mid/Llama_Nemotron_Post_Training_Dataset_reasoning_r1/0.parquet * [HTTP/2] [1] [:method: GET] * [HTTP/2] [1] [:scheme: https] * [HTTP/2] [1] [:authority: huggingface.co] * [HTTP/2] [1] [:path: /api/datasets/HuggingFaceTB/smoltalk2/parquet/Mid/Llama_Nemotron_Post_Training_Dataset_reasoning_r1/0.parquet] * [HTTP/2] [1] [user-agent: curl/8.7.1] * [HTTP/2] [1] [accept: */*] * [HTTP/2] [1] [range: bytes=217875070-218006142] > GET /api/datasets/HuggingFaceTB/smoltalk2/parquet/Mid/Llama_Nemotron_Post_Training_Dataset_reasoning_r1/0.parquet HTTP/2 > Host: huggingface.co > User-Agent: curl/8.7.1 > Accept: */* > Range: bytes=217875070-218006142 > * Request completely sent off < HTTP/2 416 < content-type: text/html < content-length: 49 < server: CloudFront < date: Wed, 16 Jul 2025 14:58:42 GMT < expires: Wed, 16 Jul 2025 14:58:42 GMT < content-range: bytes */177 < x-cache: Error from cloudfront < via: 1.1 bb352451e1eacf85f8786ee3ecd07eca.cloudfront.net (CloudFront) < x-amz-cf-pop: MSP50-P1 < x-amz-cf-id: 9xy-CX9KvlS8Ye4eFr8jXMDobZHFkvdyvkLJGmK_qiwZQywCCwfq7Q== < { [49 bytes data] 100 49 100 49 0 0 2381 0 --:--:-- --:--:-- --:--:-- 2450 * Connection #0 to host huggingface.co left intact (.venv) Daft main*​* ≡❯ curl -v -L -H "Range: bytes=217875070-218006142" -o output.parquet "https://huggingface.co/api/datasets/HuggingFaceTB/smoltalk2/parquet/Mid/Llama_Nemotron_Post_Training_Dataset_reasoning_r1/0.parquet" % Total % Received % Xferd Average Speed Time Time Time Current Dload Upload Total Spent Left Speed 0 0 0 0 0 0 0 0 --:--:-- --:--:-- --:--:-- 0* Host huggingface.co:443 was resolved. * IPv6: (none) * IPv4: 18.160.102.96, 18.160.102.110, 18.160.102.4, 18.160.102.86 * Trying 18.160.102.96:443... * Connected to huggingface.co (18.160.102.96) port 443 * ALPN: curl offers h2,http/1.1 * (304) (OUT), TLS handshake, Client hello (1): } [319 bytes data] * CAfile: /etc/ssl/cert.pem * CApath: none * (304) (IN), TLS handshake, Server hello (2): { [122 bytes data] * (304) (IN), TLS handshake, Unknown (8): { [19 bytes data] * (304) (IN), TLS handshake, Certificate (11): { [3821 bytes data] * (304) (IN), TLS handshake, CERT verify (15): { [264 bytes data] * (304) (IN), TLS handshake, Finished (20): { [36 bytes data] * (304) (OUT), TLS handshake, Finished (20): } [36 bytes data] * SSL connection using TLSv1.3 / AEAD-AES128-GCM-SHA256 / [blank] / UNDEF * ALPN: server accepted h2 * Server certificate: * subject: CN=huggingface.co * start date: Apr 13 00:00:00 2025 GMT * expire date: May 12 23:59:59 2026 GMT * subjectAltName: host "huggingface.co" matched cert's "huggingface.co" * issuer: C=US; O=Amazon; CN=Amazon RSA 2048 M02 * SSL certificate verify ok. * using HTTP/2 * [HTTP/2] [1] OPENED stream for https://huggingface.co/api/datasets/HuggingFaceTB/smoltalk2/parquet/Mid/Llama_Nemotron_Post_Training_Dataset_reasoning_r1/0.parquet * [HTTP/2] [1] [:method: GET] * [HTTP/2] [1] [:scheme: https] * [HTTP/2] [1] [:authority: huggingface.co] * [HTTP/2] [1] [:path: /api/datasets/HuggingFaceTB/smoltalk2/parquet/Mid/Llama_Nemotron_Post_Training_Dataset_reasoning_r1/0.parquet] * [HTTP/2] [1] [user-agent: curl/8.7.1] * [HTTP/2] [1] [accept: */*] * [HTTP/2] [1] [range: bytes=217875070-218006142] > GET /api/datasets/HuggingFaceTB/smoltalk2/parquet/Mid/Llama_Nemotron_Post_Training_Dataset_reasoning_r1/0.parquet HTTP/2 > Host: huggingface.co > User-Agent: curl/8.7.1 > Accept: */* > Range: bytes=217875070-218006142 > * Request completely sent off < HTTP/2 416 < content-type: text/html < content-length: 49 < server: CloudFront < date: Wed, 16 Jul 2025 14:58:43 GMT < expires: Wed, 16 Jul 2025 14:58:43 GMT < content-range: bytes */177 < x-cache: Error from cloudfront < via: 1.1 873527676a354c5998cad133525df9c0.cloudfront.net (CloudFront) < x-amz-cf-pop: MSP50-P1 < x-amz-cf-id: wtBgwY4u4YJ2pD1ovM8UV770UiJoqWfs7i7VzschDyoLv5g7swGGmw== < { [49 bytes data] 100 49 100 49 0 0 2273 0 --:--:-- --:--:-- --:--:-- 2333 * Connection #0 to host huggingface.co left intact (.venv) Daft main*​* ≡❯ curl -v -L -H "Range: bytes=217875070-218006142" -o output.parquet "https://huggingface.co/api/datasets/HuggingFaceTB/smoltalk2/parquet/Mid/Llama_Nemotron_Post_Training_Dataset_reasoning_r1/0.parquet" % Total % Received % Xferd Average Speed Time Time Time Current Dload Upload Total Spent Left Speed 0 0 0 0 0 0 0 0 --:--:-- --:--:-- --:--:-- 0* Host huggingface.co:443 was resolved. * IPv6: (none) * IPv4: 18.160.102.96, 18.160.102.110, 18.160.102.4, 18.160.102.86 * Trying 18.160.102.96:443... * Connected to huggingface.co (18.160.102.96) port 443 * ALPN: curl offers h2,http/1.1 * (304) (OUT), TLS handshake, Client hello (1): } [319 bytes data] * CAfile: /etc/ssl/cert.pem * CApath: none * (304) (IN), TLS handshake, Server hello (2): { [122 bytes data] * (304) (IN), TLS handshake, Unknown (8): { [19 bytes data] * (304) (IN), TLS handshake, Certificate (11): { [3821 bytes data] * (304) (IN), TLS handshake, CERT verify (15): { [264 bytes data] * (304) (IN), TLS handshake, Finished (20): { [36 bytes data] * (304) (OUT), TLS handshake, Finished (20): } [36 bytes data] * SSL connection using TLSv1.3 / AEAD-AES128-GCM-SHA256 / [blank] / UNDEF * ALPN: server accepted h2 * Server certificate: * subject: CN=huggingface.co * start date: Apr 13 00:00:00 2025 GMT * expire date: May 12 23:59:59 2026 GMT * subjectAltName: host "huggingface.co" matched cert's "huggingface.co" * issuer: C=US; O=Amazon; CN=Amazon RSA 2048 M02 * SSL certificate verify ok. * using HTTP/2 * [HTTP/2] [1] OPENED stream for https://huggingface.co/api/datasets/HuggingFaceTB/smoltalk2/parquet/Mid/Llama_Nemotron_Post_Training_Dataset_reasoning_r1/0.parquet * [HTTP/2] [1] [:method: GET] * [HTTP/2] [1] [:scheme: https] * [HTTP/2] [1] [:authority: huggingface.co] * [HTTP/2] [1] [:path: /api/datasets/HuggingFaceTB/smoltalk2/parquet/Mid/Llama_Nemotron_Post_Training_Dataset_reasoning_r1/0.parquet] * [HTTP/2] [1] [user-agent: curl/8.7.1] * [HTTP/2] [1] [accept: */*] * [HTTP/2] [1] [range: bytes=217875070-218006142] > GET /api/datasets/HuggingFaceTB/smoltalk2/parquet/Mid/Llama_Nemotron_Post_Training_Dataset_reasoning_r1/0.parquet HTTP/2 > Host: huggingface.co > User-Agent: curl/8.7.1 > Accept: */* > Range: bytes=217875070-218006142 > * Request completely sent off < HTTP/2 302 < content-type: text/plain; charset=utf-8 < content-length: 177 < location: https://huggingface.co/datasets/HuggingFaceTB/smoltalk2/resolve/refs%2Fconvert%2Fparquet/Mid/Llama_Nemotron_Post_Training_Dataset_reasoning_r1/0000.parquet < date: Wed, 16 Jul 2025 14:58:44 GMT < x-powered-by: huggingface-moon < cross-origin-opener-policy: same-origin < referrer-policy: strict-origin-when-cross-origin < x-request-id: Root=1-6877be24-476860f03849cb1a1570c9d8 < access-control-allow-origin: https://huggingface.co < access-control-expose-headers: X-Repo-Commit,X-Request-Id,X-Error-Code,X-Error-Message,X-Total-Count,ETag,Link,Accept-Ranges,Content-Range,X-Linked-Size,X-Linked-ETag,X-Xet-Hash < set-cookie: token=; Path=/; Expires=Thu, 01 Jan 1970 00:00:00 GMT; Secure; SameSite=None < set-cookie: token=; Domain=huggingface.co; Path=/; Expires=Thu, 01 Jan 1970 00:00:00 GMT; Secure; SameSite=Lax < x-cache: Miss from cloudfront < via: 1.1 dd5af138aa8a11d8a70d5ef690ad1a2a.cloudfront.net (CloudFront) < x-amz-cf-pop: MSP50-P1 < x-amz-cf-id: xuSi0X5RpH1OZqQOM8gGQLQLU8eOM6Gbkk-bgIX_qBnTTaa1VNkExA== < * Ignoring the response-body 100 177 100 177 0 0 2021 0 --:--:-- --:--:-- --:--:-- 2034 * Connection #0 to host huggingface.co left intact * Issue another request to this URL: 'https://huggingface.co/datasets/HuggingFaceTB/smoltalk2/resolve/refs%2Fconvert%2Fparquet/Mid/Llama_Nemotron_Post_Training_Dataset_reasoning_r1/0000.parquet' * Found bundle for host: 0x600002d54570 [can multiplex] * Re-using existing connection with host huggingface.co * [HTTP/2] [3] OPENED stream for https://huggingface.co/datasets/HuggingFaceTB/smoltalk2/resolve/refs%2Fconvert%2Fparquet/Mid/Llama_Nemotron_Post_Training_Dataset_reasoning_r1/0000.parquet * [HTTP/2] [3] [:method: GET] * [HTTP/2] [3] [:scheme: https] * [HTTP/2] [3] [:authority: huggingface.co] * [HTTP/2] [3] [:path: /datasets/HuggingFaceTB/smoltalk2/resolve/refs%2Fconvert%2Fparquet/Mid/Llama_Nemotron_Post_Training_Dataset_reasoning_r1/0000.parquet] * [HTTP/2] [3] [user-agent: curl/8.7.1] * [HTTP/2] [3] [accept: */*] * [HTTP/2] [3] [range: bytes=217875070-218006142] > GET /datasets/HuggingFaceTB/smoltalk2/resolve/refs%2Fconvert%2Fparquet/Mid/Llama_Nemotron_Post_Training_Dataset_reasoning_r1/0000.parquet HTTP/2 > Host: huggingface.co > User-Agent: curl/8.7.1 > Accept: */* > Range: bytes=217875070-218006142 > * Request completely sent off < HTTP/2 302 < content-type: text/plain; charset=utf-8 < content-length: 1317 < location: https://cas-bridge.xethub.hf.co/xet-bridge-us/686fc33898943c873b45c9a0/cf8a3a5665cf8b2ff667fb5236a1e5cb13c7582955f9533c88e1387997ef3af9?X-Amz-Algorithm=AWS4-HMAC-SHA256&X-Amz-Content-Sha256=UNSIGNED-PAYLOAD&X-Amz-Credential=cas%2F20250716%2Fus-east-1%2Fs3%2Faws4_request&X-Amz-Date=20250716T145416Z&X-Amz-Expires=3600&X-Amz-Signature=21a15b50740d73fd8ce82d5105733ca067d2e612ada22570e09e93ebcc7f8842&X-Amz-SignedHeaders=host&X-Xet-Cas-Uid=public&response-content-disposition=inline%3B+filename*%3DUTF-8%27%270000.parquet%3B+filename%3D%220000.parquet%22%3B&x-id=GetObject&Expires=1752681256&Policy=eyJTdGF0ZW1lbnQiOlt7IkNvbmRpdGlvbiI6eyJEYXRlTGVzc1RoYW4iOnsiQVdTOkVwb2NoVGltZSI6MTc1MjY4MTI1Nn19LCJSZXNvdXJjZSI6Imh0dHBzOi8vY2FzLWJyaWRnZS54ZXRodWIuaGYuY28veGV0LWJyaWRnZS11cy82ODZmYzMzODk4OTQzYzg3M2I0NWM5YTAvY2Y4YTNhNTY2NWNmOGIyZmY2NjdmYjUyMzZhMWU1Y2IxM2M3NTgyOTU1Zjk1MzNjODhlMTM4Nzk5N2VmM2FmOSoifV19&Signature=Tl3xorJ-7yaWvG6Y1AhhRlV2Wko9QpoK1tdPOfNZaRbHo%7EdaAkJRJfcLAYD5YzozfHWBZMLlJsaMPJ1MAne21nr5%7E737sE6yLfBwHdP3ZFZhgrLsN%7EvkIWK2GYX543qTg-pVsf3it92w1oWyoyYNQ9srxLfEIuG2AKV2Nu3Ejl7S%7EaAq4Gv4jNemvRTLBFGgYPdUeuavudl4OD4RGkSGTnpzh-P-OBk5WvgpdZZnbb1cRAP73tFHsPDX4%7ETfQIor109G%7E0TB3Jq0wopO9WV0sMQyQs9peZc6bxONiTxb9aHM4yNvWNbVGtlPuC6YS4c9T1e9%7EehdgU4sDOI%7EhpaCvg__&Key-Pair-Id=K2L8F4GPSG1IFC < date: Wed, 16 Jul 2025 14:58:44 GMT < x-powered-by: huggingface-moon < cross-origin-opener-policy: same-origin < referrer-policy: strict-origin-when-cross-origin < x-request-id: Root=1-6877be24-4f628b292dc8a7a5339c41d3 < access-control-allow-origin: https://huggingface.co < vary: Origin, Accept < access-control-expose-headers: X-Repo-Commit,X-Request-Id,X-Error-Code,X-Error-Message,X-Total-Count,ETag,Link,Accept-Ranges,Content-Range,X-Linked-Size,X-Linked-ETag,X-Xet-Hash < set-cookie: token=; Path=/; Expires=Thu, 01 Jan 1970 00:00:00 GMT; Secure; SameSite=None < set-cookie: token=; Domain=huggingface.co; Path=/; Expires=Thu, 01 Jan 1970 00:00:00 GMT; Secure; SameSite=Lax < x-repo-commit: 712df366ffbc959d9f4279bf2da579230b7ca5d8 < accept-ranges: bytes < x-linked-size: 218006142 < x-linked-etag: "01736bf26d0046ddec4ab8900fba3f0dc6500b038314b44d0edb73a7c88dec07" < x-xet-hash: cf8a3a5665cf8b2ff667fb5236a1e5cb13c7582955f9533c88e1387997ef3af9 < link: <https://huggingface.co/api/datasets/HuggingFaceTB/smoltalk2/xet-read-token/712df366ffbc959d9f4279bf2da579230b7ca5d8>; rel="xet-auth", <https://cas-server.xethub.hf.co/reconstruction/cf8a3a5665cf8b2ff667fb5236a1e5cb13c7582955f9533c88e1387997ef3af9>; rel="xet-reconstruction-info" < x-cache: Miss from cloudfront < via: 1.1 dd5af138aa8a11d8a70d5ef690ad1a2a.cloudfront.net (CloudFront) < x-amz-cf-pop: MSP50-P1 < x-amz-cf-id: 0qXw2sJGrWCLVt7c-Vtn09uE3nu6CrJw9RmAKvNr_flG75muclvlIg== < * Ignoring the response-body 100 1317 100 1317 0 0 9268 0 --:--:-- --:--:-- --:--:-- 9268 * Connection #0 to host huggingface.co left intact * Issue another request to this URL: 'https://cas-bridge.xethub.hf.co/xet-bridge-us/686fc33898943c873b45c9a0/cf8a3a5665cf8b2ff667fb5236a1e5cb13c7582955f9533c88e1387997ef3af9?X-Amz-Algorithm=AWS4-HMAC-SHA256&X-Amz-Content-Sha256=UNSIGNED-PAYLOAD&X-Amz-Credential=cas%2F20250716%2Fus-east-1%2Fs3%2Faws4_request&X-Amz-Date=20250716T145416Z&X-Amz-Expires=3600&X-Amz-Signature=21a15b50740d73fd8ce82d5105733ca067d2e612ada22570e09e93ebcc7f8842&X-Amz-SignedHeaders=host&X-Xet-Cas-Uid=public&response-content-disposition=inline%3B+filename*%3DUTF-8%27%270000.parquet%3B+filename%3D%220000.parquet%22%3B&x-id=GetObject&Expires=1752681256&Policy=eyJTdGF0ZW1lbnQiOlt7IkNvbmRpdGlvbiI6eyJEYXRlTGVzc1RoYW4iOnsiQVdTOkVwb2NoVGltZSI6MTc1MjY4MTI1Nn19LCJSZXNvdXJjZSI6Imh0dHBzOi8vY2FzLWJyaWRnZS54ZXRodWIuaGYuY28veGV0LWJyaWRnZS11cy82ODZmYzMzODk4OTQzYzg3M2I0NWM5YTAvY2Y4YTNhNTY2NWNmOGIyZmY2NjdmYjUyMzZhMWU1Y2IxM2M3NTgyOTU1Zjk1MzNjODhlMTM4Nzk5N2VmM2FmOSoifV19&Signature=Tl3xorJ-7yaWvG6Y1AhhRlV2Wko9QpoK1tdPOfNZaRbHo%7EdaAkJRJfcLAYD5YzozfHWBZMLlJsaMPJ1MAne21nr5%7E737sE6yLfBwHdP3ZFZhgrLsN%7EvkIWK2GYX543qTg-pVsf3it92w1oWyoyYNQ9srxLfEIuG2AKV2Nu3Ejl7S%7EaAq4Gv4jNemvRTLBFGgYPdUeuavudl4OD4RGkSGTnpzh-P-OBk5WvgpdZZnbb1cRAP73tFHsPDX4%7ETfQIor109G%7E0TB3Jq0wopO9WV0sMQyQs9peZc6bxONiTxb9aHM4yNvWNbVGtlPuC6YS4c9T1e9%7EehdgU4sDOI%7EhpaCvg__&Key-Pair-Id=K2L8F4GPSG1IFC' * Host cas-bridge.xethub.hf.co:443 was resolved. * IPv6: (none) * IPv4: 18.160.181.55, 18.160.181.54, 18.160.181.52, 18.160.181.88 * Trying 18.160.181.55:443... * Connected to cas-bridge.xethub.hf.co (18.160.181.55) port 443 * ALPN: curl offers h2,http/1.1 * (304) (OUT), TLS handshake, Client hello (1): } [328 bytes data] * (304) (IN), TLS handshake, Server hello (2): { [122 bytes data] * (304) (IN), TLS handshake, Unknown (8): { [19 bytes data] * (304) (IN), TLS handshake, Certificate (11): { [3818 bytes data] * (304) (IN), TLS handshake, CERT verify (15): { [264 bytes data] * (304) (IN), TLS handshake, Finished (20): { [36 bytes data] * (304) (OUT), TLS handshake, Finished (20): } [36 bytes data] * SSL connection using TLSv1.3 / AEAD-AES128-GCM-SHA256 / [blank] / UNDEF * ALPN: server accepted h2 * Server certificate: * subject: CN=cas-bridge.xethub.hf.co * start date: Jun 4 00:00:00 2025 GMT * expire date: Jul 3 23:59:59 2026 GMT * subjectAltName: host "cas-bridge.xethub.hf.co" matched cert's "cas-bridge.xethub.hf.co" * issuer: C=US; O=Amazon; CN=Amazon RSA 2048 M04 * SSL certificate verify ok. * using HTTP/2 * [HTTP/2] [1] OPENED stream for https://cas-bridge.xethub.hf.co/xet-bridge-us/686fc33898943c873b45c9a0/cf8a3a5665cf8b2ff667fb5236a1e5cb13c7582955f9533c88e1387997ef3af9?X-Amz-Algorithm=AWS4-HMAC-SHA256&X-Amz-Content-Sha256=UNSIGNED-PAYLOAD&X-Amz-Credential=cas%2F20250716%2Fus-east-1%2Fs3%2Faws4_request&X-Amz-Date=20250716T145416Z&X-Amz-Expires=3600&X-Amz-Signature=21a15b50740d73fd8ce82d5105733ca067d2e612ada22570e09e93ebcc7f8842&X-Amz-SignedHeaders=host&X-Xet-Cas-Uid=public&response-content-disposition=inline%3B+filename*%3DUTF-8%27%270000.parquet%3B+filename%3D%220000.parquet%22%3B&x-id=GetObject&Expires=1752681256&Policy=eyJTdGF0ZW1lbnQiOlt7IkNvbmRpdGlvbiI6eyJEYXRlTGVzc1RoYW4iOnsiQVdTOkVwb2NoVGltZSI6MTc1MjY4MTI1Nn19LCJSZXNvdXJjZSI6Imh0dHBzOi8vY2FzLWJyaWRnZS54ZXRodWIuaGYuY28veGV0LWJyaWRnZS11cy82ODZmYzMzODk4OTQzYzg3M2I0NWM5YTAvY2Y4YTNhNTY2NWNmOGIyZmY2NjdmYjUyMzZhMWU1Y2IxM2M3NTgyOTU1Zjk1MzNjODhlMTM4Nzk5N2VmM2FmOSoifV19&Signature=Tl3xorJ-7yaWvG6Y1AhhRlV2Wko9QpoK1tdPOfNZaRbHo%7EdaAkJRJfcLAYD5YzozfHWBZMLlJsaMPJ1MAne21nr5%7E737sE6yLfBwHdP3ZFZhgrLsN%7EvkIWK2GYX543qTg-pVsf3it92w1oWyoyYNQ9srxLfEIuG2AKV2Nu3Ejl7S%7EaAq4Gv4jNemvRTLBFGgYPdUeuavudl4OD4RGkSGTnpzh-P-OBk5WvgpdZZnbb1cRAP73tFHsPDX4%7ETfQIor109G%7E0TB3Jq0wopO9WV0sMQyQs9peZc6bxONiTxb9aHM4yNvWNbVGtlPuC6YS4c9T1e9%7EehdgU4sDOI%7EhpaCvg__&Key-Pair-Id=K2L8F4GPSG1IFC * [HTTP/2] [1] [:method: GET] * [HTTP/2] [1] [:scheme: https] * [HTTP/2] [1] [:authority: cas-bridge.xethub.hf.co] * [HTTP/2] [1] [:path: /xet-bridge-us/686fc33898943c873b45c9a0/cf8a3a5665cf8b2ff667fb5236a1e5cb13c7582955f9533c88e1387997ef3af9?X-Amz-Algorithm=AWS4-HMAC-SHA256&X-Amz-Content-Sha256=UNSIGNED-PAYLOAD&X-Amz-Credential=cas%2F20250716%2Fus-east-1%2Fs3%2Faws4_request&X-Amz-Date=20250716T145416Z&X-Amz-Expires=3600&X-Amz-Signature=21a15b50740d73fd8ce82d5105733ca067d2e612ada22570e09e93ebcc7f8842&X-Amz-SignedHeaders=host&X-Xet-Cas-Uid=public&response-content-disposition=inline%3B+filename*%3DUTF-8%27%270000.parquet%3B+filename%3D%220000.parquet%22%3B&x-id=GetObject&Expires=1752681256&Policy=eyJTdGF0ZW1lbnQiOlt7IkNvbmRpdGlvbiI6eyJEYXRlTGVzc1RoYW4iOnsiQVdTOkVwb2NoVGltZSI6MTc1MjY4MTI1Nn19LCJSZXNvdXJjZSI6Imh0dHBzOi8vY2FzLWJyaWRnZS54ZXRodWIuaGYuY28veGV0LWJyaWRnZS11cy82ODZmYzMzODk4OTQzYzg3M2I0NWM5YTAvY2Y4YTNhNTY2NWNmOGIyZmY2NjdmYjUyMzZhMWU1Y2IxM2M3NTgyOTU1Zjk1MzNjODhlMTM4Nzk5N2VmM2FmOSoifV19&Signature=Tl3xorJ-7yaWvG6Y1AhhRlV2Wko9QpoK1tdPOfNZaRbHo%7EdaAkJRJfcLAYD5YzozfHWBZMLlJsaMPJ1MAne21nr5%7E737sE6yLfBwHdP3ZFZhgrLsN%7EvkIWK2GYX543qTg-pVsf3it92w1oWyoyYNQ9srxLfEIuG2AKV2Nu3Ejl7S%7EaAq4Gv4jNemvRTLBFGgYPdUeuavudl4OD4RGkSGTnpzh-P-OBk5WvgpdZZnbb1cRAP73tFHsPDX4%7ETfQIor109G%7E0TB3Jq0wopO9WV0sMQyQs9peZc6bxONiTxb9aHM4yNvWNbVGtlPuC6YS4c9T1e9%7EehdgU4sDOI%7EhpaCvg__&Key-Pair-Id=K2L8F4GPSG1IFC] * [HTTP/2] [1] [user-agent: curl/8.7.1] * [HTTP/2] [1] [accept: */*] * [HTTP/2] [1] [range: bytes=217875070-218006142] > GET /xet-bridge-us/686fc33898943c873b45c9a0/cf8a3a5665cf8b2ff667fb5236a1e5cb13c7582955f9533c88e1387997ef3af9?X-Amz-Algorithm=AWS4-HMAC-SHA256&X-Amz-Content-Sha256=UNSIGNED-PAYLOAD&X-Amz-Credential=cas%2F20250716%2Fus-east-1%2Fs3%2Faws4_request&X-Amz-Date=20250716T145416Z&X-Amz-Expires=3600&X-Amz-Signature=21a15b50740d73fd8ce82d5105733ca067d2e612ada22570e09e93ebcc7f8842&X-Amz-SignedHeaders=host&X-Xet-Cas-Uid=public&response-content-disposition=inline%3B+filename*%3DUTF-8%27%270000.parquet%3B+filename%3D%220000.parquet%22%3B&x-id=GetObject&Expires=1752681256&Policy=eyJTdGF0ZW1lbnQiOlt7IkNvbmRpdGlvbiI6eyJEYXRlTGVzc1RoYW4iOnsiQVdTOkVwb2NoVGltZSI6MTc1MjY4MTI1Nn19LCJSZXNvdXJjZSI6Imh0dHBzOi8vY2FzLWJyaWRnZS54ZXRodWIuaGYuY28veGV0LWJyaWRnZS11cy82ODZmYzMzODk4OTQzYzg3M2I0NWM5YTAvY2Y4YTNhNTY2NWNmOGIyZmY2NjdmYjUyMzZhMWU1Y2IxM2M3NTgyOTU1Zjk1MzNjODhlMTM4Nzk5N2VmM2FmOSoifV19&Signature=Tl3xorJ-7yaWvG6Y1AhhRlV2Wko9QpoK1tdPOfNZaRbHo%7EdaAkJRJfcLAYD5YzozfHWBZMLlJsaMPJ1MAne21nr5%7E737sE6yLfBwHdP3ZFZhgrLsN%7EvkIWK2GYX543qTg-pVsf3it92w1oWyoyYNQ9srxLfEIuG2AKV2Nu3Ejl7S%7EaAq4Gv4jNemvRTLBFGgYPdUeuavudl4OD4RGkSGTnpzh-P-OBk5WvgpdZZnbb1cRAP73tFHsPDX4%7ETfQIor109G%7E0TB3Jq0wopO9WV0sMQyQs9peZc6bxONiTxb9aHM4yNvWNbVGtlPuC6YS4c9T1e9%7EehdgU4sDOI%7EhpaCvg__&Key-Pair-Id=K2L8F4GPSG1IFC HTTP/2 > Host: cas-bridge.xethub.hf.co > User-Agent: curl/8.7.1 > Accept: */* > Range: bytes=217875070-218006142 > * Request completely sent off < HTTP/2 206 < content-length: 131072 < date: Mon, 14 Jul 2025 08:40:28 GMT < x-request-id: 01K041FDPVA03RR2PRXDZSN30G < content-disposition: inline; 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7,682
Fail to cast Audio feature for numpy arrays in datasets 4.0.0
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[ "thanks for reporting, I opened a PR and I'll make a patch release soon ", "> thanks for reporting, I opened a PR and I'll make a patch release soon\n\nThank you very much @lhoestq!" ]
2025-07-14T18:41:02Z
2025-07-15T12:10:39Z
2025-07-15T10:24:08Z
NONE
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### Describe the bug Casting features with Audio for numpy arrays - done here with `ds.map(gen_sine, features=features)` fails in version 4.0.0 but not in version 3.6.0 ### Steps to reproduce the bug The following `uv script` should be able to reproduce the bug in version 4.0.0 and pass in version 3.6.0 on a macOS Sequoia 15.5 ```python # /// script # requires-python = ">=3.13" # dependencies = [ # "datasets[audio]==4.0.0", # "librosa>=0.11.0", # ] # /// # NAME # create_audio_dataset.py - create an audio dataset of sine waves # # SYNOPSIS # uv run create_audio_dataset.py # # DESCRIPTION # Create an audio dataset using the Hugging Face [datasets] library. # Illustrates how to create synthetic audio datasets using the [map] # datasets function. # # The strategy is to first create a dataset with the input to the # generation function, then execute the map function that generates # the result, and finally cast the final features. # # BUG # Casting features with Audio for numpy arrays - # done here with `ds.map(gen_sine, features=features)` fails # in version 4.0.0 but not in version 3.6.0 # # This happens both in cases where --extra audio is provided and where is not. # When audio is not provided i've installed the latest compatible version # of soundfile. # # The error when soundfile is installed but the audio --extra is not # indicates that the array values do not have the `.T` property, # whilst also indicating that the value is a list instead of a numpy array. # # Last lines of error report when for datasets + soundfile case # ... # # File "/Users/luasantilli/.cache/uv/archive-v0/tc_5IhQe7Zpw8ZXgQWpnl/lib/python3.13/site-packages/datasets/features/audio.py", line 239, in cast_storage # storage = pa.array([Audio().encode_example(x) if x is not None else None for x in storage.to_pylist()]) # ~~~~~~~~~~~~~~~~~~~~~~^^^ # File "/Users/luasantilli/.cache/uv/archive-v0/tc_5IhQe7Zpw8ZXgQWpnl/lib/python3.13/site-packages/datasets/features/audio.py", line 122, in encode_example # sf.write(buffer, value["array"].T, value["sampling_rate"], format="wav") # ^^^^^^^^^^^^^^^^ # AttributeError: 'list' object has no attribute 'T' # ... # # For the case of datasets[audio] without explicit adding soundfile I get an FFmpeg # error. # # Last lines of error report: # # ... # RuntimeError: Could not load libtorchcodec. Likely causes: # 1. FFmpeg is not properly installed in your environment. We support # versions 4, 5, 6 and 7. # 2. The PyTorch version (2.7.1) is not compatible with # this version of TorchCodec. Refer to the version compatibility # table: # https://github.com/pytorch/torchcodec?tab=readme-ov-file#installing-torchcodec. # 3. Another runtime dependency; see exceptions below. # The following exceptions were raised as we tried to load libtorchcodec: # # [start of libtorchcodec loading traceback] # FFmpeg version 7: dlopen(/Users/luasantilli/.cache/uv/archive-v0/RK3IAlGfiICwDkHm2guLC/lib/python3.13/site-packages/torchcodec/libtorchcodec_decoder7.dylib, 0x0006): Library not loaded: @rpath/libavutil.59.dylib # Referenced from: <6DB21246-F28A-31A6-910A-D8F3355D1064> /Users/luasantilli/.cache/uv/archive-v0/RK3IAlGfiICwDkHm2guLC/lib/python3.13/site-packages/torchcodec/libtorchcodec_decoder7.dylib # Reason: no LC_RPATH's found # FFmpeg version 6: dlopen(/Users/luasantilli/.cache/uv/archive-v0/RK3IAlGfiICwDkHm2guLC/lib/python3.13/site-packages/torchcodec/libtorchcodec_decoder6.dylib, 0x0006): Library not loaded: @rpath/libavutil.58.dylib # Referenced from: <BD3B44FC-E14B-3ABF-800F-BB54B6CCA3B1> /Users/luasantilli/.cache/uv/archive-v0/RK3IAlGfiICwDkHm2guLC/lib/python3.13/site-packages/torchcodec/libtorchcodec_decoder6.dylib # Reason: no LC_RPATH's found # FFmpeg version 5: dlopen(/Users/luasantilli/.cache/uv/archive-v0/RK3IAlGfiICwDkHm2guLC/lib/python3.13/site-packages/torchcodec/libtorchcodec_decoder5.dylib, 0x0006): Library not loaded: @rpath/libavutil.57.dylib # Referenced from: <F06EBF8A-238C-3A96-BFBB-B34E0BBDABF0> /Users/luasantilli/.cache/uv/archive-v0/RK3IAlGfiICwDkHm2guLC/lib/python3.13/site-packages/torchcodec/libtorchcodec_decoder5.dylib # Reason: no LC_RPATH's found # FFmpeg version 4: dlopen(/Users/luasantilli/.cache/uv/archive-v0/RK3IAlGfiICwDkHm2guLC/lib/python3.13/site-packages/torchcodec/libtorchcodec_decoder4.dylib, 0x0006): Library not loaded: @rpath/libavutil.56.dylib # Referenced from: <6E59F017-C703-3AF6-A271-6277DD5F8170> /Users/luasantilli/.cache/uv/archive-v0/RK3IAlGfiICwDkHm2guLC/lib/python3.13/site-packages/torchcodec/libtorchcodec_decoder4.dylib # Reason: no LC_RPATH's found # ... # # This is strange because the the same error does not happen when using version 3.6.0 with datasets[audio]. # # The same error appears in python3.12 ## Imports import numpy as np from datasets import Dataset, Features, Audio, Value ## Parameters NUM_WAVES = 128 SAMPLE_RATE = 16_000 DURATION = 1.0 ## Input dataset arguments freqs = np.linspace(100, 2000, NUM_WAVES).tolist() ds = Dataset.from_dict({"frequency": freqs}) ## Features for the final dataset features = Features( {"frequency": Value("float32"), "audio": Audio(sampling_rate=SAMPLE_RATE)} ) ## Generate audio sine waves and cast features def gen_sine(example): t = np.linspace(0, DURATION, int(SAMPLE_RATE * DURATION), endpoint=False) wav = np.sin(2 * np.pi * example["frequency"] * t) return { "frequency": example["frequency"], "audio": {"array": wav, "sampling_rate": SAMPLE_RATE}, } ds = ds.map(gen_sine, features=features) print(ds) print(ds.features) ``` ### Expected behavior I expect the result of version `4.0.0` to be the same of that in version `3.6.0`. Switching the value of the script above to `3.6.0` I get the following, expected, result: ``` $ uv run bug_report.py Map: 100%|███████████████████████████████████████████████████████| 128/128 [00:00<00:00, 204.58 examples/s] Dataset({ features: ['frequency', 'audio'], num_rows: 128 }) {'frequency': Value(dtype='float32', id=None), 'audio': Audio(sampling_rate=16000, mono=True, decode=True, id=None)} ``` ### Environment info - `datasets` version: 4.0.0 - Platform: macOS-15.5-arm64-arm-64bit-Mach-O - Python version: 3.13.1 - `huggingface_hub` version: 0.33.4 - PyArrow version: 20.0.0 - Pandas version: 2.3.1 - `fsspec` version: 2025.3.0
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I_kwDODunzps7AWdUg
7,681
Probabilistic High Memory Usage and Freeze on Python 3.10
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2025-07-14T01:57:16Z
2025-07-14T01:57:16Z
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### Describe the bug A probabilistic issue encountered when processing datasets containing PIL.Image columns using the huggingface/datasets library on Python 3.10. The process occasionally experiences a sudden and significant memory spike, reaching 100% utilization, leading to a complete freeze. During this freeze, the process becomes unresponsive, cannot be forcefully terminated, and does not throw any exceptions. I have attempted to mitigate this issue by setting `datasets.config.IN_MEMORY_MAX_SIZE`, but it had no effect. In fact, based on the document of `load_dataset`, I suspect that setting `IN_MEMORY_MAX_SIZE` might even have a counterproductive effect. This bug is not consistently reproducible, but its occurrence rate significantly decreases or disappears entirely when upgrading Python to version 3.11 or higher. Therefore, this issue also serves to share a potential solution for others who might encounter similar problems. ### Steps to reproduce the bug Due to the probabilistic nature of this bug, consistent reproduction cannot be guaranteed for every run. However, in my environment, processing large datasets like timm/imagenet-1k-wds(whether reading, casting, or mapping operations) almost certainly triggers the issue at some point. The probability of the issue occurring drastically increases when num_proc is set to a value greater than 1 during operations. When the issue occurs, my system logs repeatedly show the following warnings: ``` WARN: very high memory utilization: 57.74GiB / 57.74GiB (100 %) WARN: container is unhealthy: triggered memory limits (OOM) WARN: container is unhealthy: triggered memory limits (OOM) WARN: container is unhealthy: triggered memory limits (OOM) ``` ### Expected behavior The dataset should be read and processed normally without memory exhaustion or freezing. If an unrecoverable error occurs, an appropriate exception should be raised. I have found that upgrading Python to version 3.11 or above completely resolves this issue. On Python 3.11, when memory usage approaches 100%, it suddenly drops before slowly increasing again. I suspect this behavior is due to an expected memory management action, possibly involving writing to disk cache, which prevents the complete freeze observed in Python 3.10. ### Environment info - `datasets` version: 4.0.0 - Platform: Linux-5.15.0-71-generic-x86_64-with-glibc2.35 - Python version: 3.10.12 - `huggingface_hub` version: 0.33.4 - PyArrow version: 20.0.0 - Pandas version: 2.3.1 - `fsspec` version: 2025.3.0
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I_kwDODunzps7ANulX
7,680
Question about iterable dataset and streaming
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[ "> If we have already loaded the dataset, why doing to_iterable_dataset? Does it go through the dataset faster than map-style dataset?\n\nyes, it makes a faster DataLoader for example (otherwise DataLoader uses `__getitem__` which is slower than iterating)\n\n> load_dataset(streaming=True) is useful for huge datase...
2025-07-12T04:48:30Z
2025-08-01T13:01:48Z
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In the doc, I found the following example: https://github.com/huggingface/datasets/blob/611f5a592359ebac6f858f515c776aa7d99838b2/docs/source/stream.mdx?plain=1#L65-L78 I am confused, 1. If we have already loaded the dataset, why doing `to_iterable_dataset`? Does it go through the dataset faster than map-style dataset? 2. `load_dataset(streaming=True)` is useful for huge dataset, but the speed is slow. How to make it comparable to `to_iterable_dataset` without loading the whole dataset into RAM?
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metric glue breaks with 4.0.0
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[ "I released `evaluate` 0.4.5 yesterday to fix the issue - sorry for the inconvenience:\n\n```\npip install -U evaluate\n```", "Thanks so much, @lhoestq!" ]
2025-07-10T21:39:50Z
2025-07-11T17:42:01Z
2025-07-11T17:42:01Z
CONTRIBUTOR
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### Describe the bug worked fine with 3.6.0, and with 4.0.0 `eval_metric = metric.compute()` in HF Accelerate breaks. The code that fails is: https://huggingface.co/spaces/evaluate-metric/glue/blob/v0.4.0/glue.py#L84 ``` def simple_accuracy(preds, labels): print(preds, labels) print(f"{preds==labels}") return float((preds == labels).mean()) ``` data: ``` Column([1, 0, 0, 1, 1]) Column([1, 0, 0, 1, 0]) False ``` ``` [rank0]: return float((preds == labels).mean()) [rank0]: ^^^^^^^^^^^^^^^^^^^^^^ [rank0]: AttributeError: 'bool' object has no attribute 'mean' ``` Some behavior has changed in this new major release of `datasets` and requires updating HF accelerate and perhaps the glue metric code, all belong to HF. ### Environment info datasets=4.0.0
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7,678
To support decoding audio data, please install 'torchcodec'.
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[ "Hi ! yes you should `!pip install -U datasets[audio]` to have the required dependencies.\n\n`datasets` 4.0 now relies on `torchcodec` for audio decoding. The `torchcodec` AudioDecoder enables streaming from HF and also allows to decode ranges of audio", "Same issues on Colab.\n\n> !pip install -U datasets[audio]...
2025-07-10T09:43:13Z
2025-07-22T03:46:52Z
2025-07-11T05:05:42Z
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In the latest version of datasets==4.0.0, i cannot print the audio data on the Colab notebook. But it works on the 3.6.0 version. !pip install -q -U datasets huggingface_hub fsspec from datasets import load_dataset downloaded_dataset = load_dataset("ymoslem/MediaSpeech", "tr", split="train") print(downloaded_dataset["audio"][0]) --------------------------------------------------------------------------- ImportError Traceback (most recent call last) [/tmp/ipython-input-4-90623240.py](https://localhost:8080/#) in <cell line: 0>() ----> 1 downloaded_dataset["audio"][0] 10 frames [/usr/local/lib/python3.11/dist-packages/datasets/features/audio.py](https://localhost:8080/#) in decode_example(self, value, token_per_repo_id) 170 from ._torchcodec import AudioDecoder 171 else: --> 172 raise ImportError("To support decoding audio data, please install 'torchcodec'.") 173 174 if not self.decode: ImportError: To support decoding audio data, please install 'torchcodec'. ### Environment info - `datasets` version: 4.0.0 - Platform: Linux-6.1.123+-x86_64-with-glibc2.35 - Python version: 3.11.13 - `huggingface_hub` version: 0.33.2 - PyArrow version: 18.1.0 - Pandas version: 2.2.2 - `fsspec` version: 2025.3.0
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Toxicity fails with datasets 4.0.0
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[ "Hi ! You can fix this by upgrading `evaluate`:\n\n```\npip install -U evaluate\n```", "Thanks, verified evaluate 0.4.5 works!" ]
2025-07-10T06:15:22Z
2025-07-11T04:40:59Z
2025-07-11T04:40:59Z
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### Describe the bug With the latest 4.0.0 release, huggingface toxicity evaluation module fails with error: `ValueError: text input must be of type `str` (single example), `List[str]` (batch or single pretokenized example) or `List[List[str]]` (batch of pretokenized examples).` ### Steps to reproduce the bug Repro: ``` >>> toxicity.compute(predictions=["This is a response"]) Traceback (most recent call last): File "<stdin>", line 1, in <module> File "/Users/serena.ruan/miniconda3/envs/mlflow-310/lib/python3.10/site-packages/evaluate/module.py", line 467, in compute output = self._compute(**inputs, **compute_kwargs) File "/Users/serena.ruan/.cache/huggingface/modules/evaluate_modules/metrics/evaluate-measurement--toxicity/2390290fa0bf6d78480143547c6b08f3d4f8805b249df8c7a8e80d0ce8e3778b/toxicity.py", line 135, in _compute scores = toxicity(predictions, self.toxic_classifier, toxic_label) File "/Users/serena.ruan/.cache/huggingface/modules/evaluate_modules/metrics/evaluate-measurement--toxicity/2390290fa0bf6d78480143547c6b08f3d4f8805b249df8c7a8e80d0ce8e3778b/toxicity.py", line 103, in toxicity for pred_toxic in toxic_classifier(preds): File "/Users/serena.ruan/miniconda3/envs/mlflow-310/lib/python3.10/site-packages/transformers/pipelines/text_classification.py", line 159, in __call__ result = super().__call__(*inputs, **kwargs) File "/Users/serena.ruan/miniconda3/envs/mlflow-310/lib/python3.10/site-packages/transformers/pipelines/base.py", line 1431, in __call__ return self.run_single(inputs, preprocess_params, forward_params, postprocess_params) File "/Users/serena.ruan/miniconda3/envs/mlflow-310/lib/python3.10/site-packages/transformers/pipelines/base.py", line 1437, in run_single model_inputs = self.preprocess(inputs, **preprocess_params) File "/Users/serena.ruan/miniconda3/envs/mlflow-310/lib/python3.10/site-packages/transformers/pipelines/text_classification.py", line 183, in preprocess return self.tokenizer(inputs, return_tensors=return_tensors, **tokenizer_kwargs) File "/Users/serena.ruan/miniconda3/envs/mlflow-310/lib/python3.10/site-packages/transformers/tokenization_utils_base.py", line 2867, in __call__ encodings = self._call_one(text=text, text_pair=text_pair, **all_kwargs) File "/Users/serena.ruan/miniconda3/envs/mlflow-310/lib/python3.10/site-packages/transformers/tokenization_utils_base.py", line 2927, in _call_one raise ValueError( ValueError: text input must be of type `str` (single example), `List[str]` (batch or single pretokenized example) or `List[List[str]]` (batch of pretokenized examples). ``` ### Expected behavior This works before 4.0.0 release ### Environment info - `datasets` version: 4.0.0 - Platform: macOS-15.5-arm64-arm-64bit - Python version: 3.10.16 - `huggingface_hub` version: 0.33.0 - PyArrow version: 19.0.1 - Pandas version: 2.2.3 - `fsspec` version: 2024.12.0
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7,676
Many things broken since the new 4.0.0 release
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[ "Happy to take a look, do you have a list of impacted datasets ?", "Thanks @lhoestq , related to lm-eval, at least `winogrande`, `mmlu` and `hellaswag`, based on my tests yesterday. But many others like <a href=\"https://huggingface.co/datasets/lukaemon/bbh\">bbh</a>, most probably others too. ", "Hi @mobicham ...
2025-07-09T18:59:50Z
2025-09-18T16:33:34Z
null
NONE
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### Describe the bug The new changes in 4.0.0 are breaking many datasets, including those from lm-evaluation-harness. I am trying to revert back to older versions, like 3.6.0 to make the eval work but I keep getting: ``` Python File /venv/main/lib/python3.12/site-packages/datasets/features/features.py:1474, in generate_from_dict(obj) 1471 class_type = _FEATURE_TYPES.get(_type, None) or globals().get(_type, None) 1473 if class_type is None: -> 1474 raise ValueError(f"Feature type '{_type}' not found. Available feature types: {list(_FEATURE_TYPES.keys())}") 1476 if class_type == LargeList: 1477 feature = obj.pop("feature") ValueError: Feature type 'List' not found. Available feature types: ['Value', 'ClassLabel', 'Translation', 'TranslationVariableLanguages', 'LargeList', 'Sequence', 'Array2D', 'Array3D', 'Array4D', 'Array5D', 'Audio', 'Image', 'Video', 'Pdf'] ``` ### Steps to reproduce the bug ``` Python import lm_eval model_eval = lm_eval.models.huggingface.HFLM(pretrained=model, tokenizer=tokenizer) lm_eval.evaluator.simple_evaluate(model_eval, tasks=["winogrande"], num_fewshot=5, batch_size=1) ``` ### Expected behavior Older `datasets` versions should work just fine as before ### Environment info - `datasets` version: 3.6.0 - Platform: Linux-6.8.0-60-generic-x86_64-with-glibc2.39 - Python version: 3.12.11 - `huggingface_hub` version: 0.33.1 - PyArrow version: 20.0.0 - Pandas version: 2.3.1 - `fsspec` version: 2025.3.0
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3,216,699,094
I_kwDODunzps6_uu7W
7,675
common_voice_11_0.py failure in dataset library
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[ "Hi ! This dataset is not in a supported format and `datasets` 4 doesn't support datasets that based on python scripts which are often source of errors. Feel free to ask the dataset authors to convert the dataset to a supported format at https://huggingface.co/datasets/mozilla-foundation/common_voice_11_0/discussio...
2025-07-09T17:47:59Z
2025-07-22T09:35:42Z
null
NONE
null
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### Describe the bug I tried to download dataset but have got this error: from datasets import load_dataset load_dataset("mozilla-foundation/common_voice_11_0", "en", split="test", streaming=True) --------------------------------------------------------------------------- RuntimeError Traceback (most recent call last) Cell In[8], line 4 1 from datasets import load_dataset ----> 4 load_dataset("mozilla-foundation/common_voice_11_0", "en", split="test", streaming=True) File c:\Users\ege_g\AppData\Local\Programs\Python\Python312\Lib\site-packages\datasets\load.py:1392, in load_dataset(path, name, data_dir, data_files, split, cache_dir, features, download_config, download_mode, verification_mode, keep_in_memory, save_infos, revision, token, streaming, num_proc, storage_options, **config_kwargs) 1387 verification_mode = VerificationMode( 1388 (verification_mode or VerificationMode.BASIC_CHECKS) if not save_infos else VerificationMode.ALL_CHECKS 1389 ) 1391 # Create a dataset builder -> 1392 builder_instance = load_dataset_builder( 1393 path=path, 1394 name=name, 1395 data_dir=data_dir, 1396 data_files=data_files, 1397 cache_dir=cache_dir, 1398 features=features, 1399 download_config=download_config, 1400 download_mode=download_mode, 1401 revision=revision, 1402 token=token, 1403 storage_options=storage_options, 1404 **config_kwargs, 1405 ) 1407 # Return iterable dataset in case of streaming 1408 if streaming: File c:\Users\ege_g\AppData\Local\Programs\Python\Python312\Lib\site-packages\datasets\load.py:1132, in load_dataset_builder(path, name, data_dir, data_files, cache_dir, features, download_config, download_mode, revision, token, storage_options, **config_kwargs) 1130 if features is not None: 1131 features = _fix_for_backward_compatible_features(features) -> 1132 dataset_module = dataset_module_factory( 1133 path, 1134 revision=revision, 1135 download_config=download_config, 1136 download_mode=download_mode, 1137 data_dir=data_dir, 1138 data_files=data_files, 1139 cache_dir=cache_dir, 1140 ) 1141 # Get dataset builder class 1142 builder_kwargs = dataset_module.builder_kwargs File c:\Users\ege_g\AppData\Local\Programs\Python\Python312\Lib\site-packages\datasets\load.py:1031, in dataset_module_factory(path, revision, download_config, download_mode, data_dir, data_files, cache_dir, **download_kwargs) 1026 if isinstance(e1, FileNotFoundError): 1027 raise FileNotFoundError( 1028 f"Couldn't find any data file at {relative_to_absolute_path(path)}. " 1029 f"Couldn't find '{path}' on the Hugging Face Hub either: {type(e1).__name__}: {e1}" 1030 ) from None -> 1031 raise e1 from None 1032 else: 1033 raise FileNotFoundError(f"Couldn't find any data file at {relative_to_absolute_path(path)}.") File c:\Users\ege_g\AppData\Local\Programs\Python\Python312\Lib\site-packages\datasets\load.py:989, in dataset_module_factory(path, revision, download_config, download_mode, data_dir, data_files, cache_dir, **download_kwargs) 981 try: 982 api.hf_hub_download( 983 repo_id=path, 984 filename=filename, (...) 987 proxies=download_config.proxies, 988 ) --> 989 raise RuntimeError(f"Dataset scripts are no longer supported, but found {filename}") 990 except EntryNotFoundError: 991 # Use the infos from the parquet export except in some cases: 992 if data_dir or data_files or (revision and revision != "main"): RuntimeError: Dataset scripts are no longer supported, but found common_voice_11_0.py ### Steps to reproduce the bug from datasets import load_dataset load_dataset("mozilla-foundation/common_voice_11_0", "en", split="test", streaming=True) ### Expected behavior its supposed to download this dataset. ### Environment info Python 3.12 , Windows 11
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7,671
Mapping function not working if the first example is returned as None
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[ "Hi, map() always expect an output.\n\nIf you wish to filter examples, you should use filter(), in your case it could be something like this:\n\n```python\nds = ds.map(my_processing_function).filter(ignore_long_prompts)\n```", "Realized this! Thanks a lot, I will close this issue then." ]
2025-07-08T17:07:47Z
2025-07-09T12:30:32Z
2025-07-09T12:30:32Z
NONE
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### Describe the bug https://github.com/huggingface/datasets/blob/8a19de052e3d79f79cea26821454bbcf0e9dcd68/src/datasets/arrow_dataset.py#L3652C29-L3652C37 Here we can see the writer is initialized on `i==0`. However, there can be cases where in the user mapping function, the first example is filtered out (length constraints, etc). In this case, the writer would be a `None` type and the code will report `NoneType has no write function`. A simple fix is available, simply change line 3652 from `if i == 0:` to `if writer is None:` ### Steps to reproduce the bug Prepare a dataset have this function ``` import datasets def make_map_fn(split, max_prompt_tokens=3): def process_fn(example, idx): question = example['question'] reasoning_steps = example['reasoning_steps'] label = example['label'] answer_format = "" for i in range(len(reasoning_steps)): system_message = "Dummy" all_steps_formatted = [] content = f"""Dummy""" prompt = [ {"role": "system", "content": system_message}, {"role": "user", "content": content}, ] tokenized = tokenizer.apply_chat_template(prompt, return_tensors="pt", truncation=False) if tokenized.shape[1] > max_prompt_tokens: return None # skip overly long examples data = { "dummy": "dummy" } return data return process_fn ... # load your dataset ... train = train.map(function=make_map_fn('train'), with_indices=True) ``` ### Expected behavior The dataset mapping shall behave even when the first example is filtered out. ### Environment info I am using `datasets==3.6.0` but I have observed this issue in the github repo too: https://github.com/huggingface/datasets/blob/8a19de052e3d79f79cea26821454bbcf0e9dcd68/src/datasets/arrow_dataset.py#L3652C29-L3652C37
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7,669
How can I add my custom data to huggingface datasets
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[ "Hey @xiagod \n\nThe easiest way to add your custom data to Hugging Face Datasets is to use the built-in load_dataset function with your local files. Some examples include:\n\nCSV files:\nfrom datasets import load_dataset\ndataset = load_dataset(\"csv\", data_files=\"my_file.csv\")\n\nJSON or JSONL files:\nfrom dat...
2025-07-04T19:19:54Z
2025-07-05T18:19:37Z
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I want to add my custom dataset in huggingface dataset. Please guide me how to achieve that.
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Broken EXIF crash the whole program
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[ "There are other discussions about error handling for images decoding here : https://github.com/huggingface/datasets/issues/7632 https://github.com/huggingface/datasets/issues/7612\n\nand a PR here: https://github.com/huggingface/datasets/pull/7638 (would love your input on the proposed solution !)" ]
2025-07-03T11:24:15Z
2025-07-03T12:27:16Z
null
NONE
null
null
null
null
### Describe the bug When parsing this image in the ImageNet1K dataset, the `datasets` crashs whole training process just because unable to parse an invalid EXIF tag. ![Image](https://github.com/user-attachments/assets/3c840203-ac8c-41a0-9cf7-45f64488037d) ### Steps to reproduce the bug Use the `datasets.Image.decode_example` method to decode the aforementioned image could reproduce the bug. The decoding function will throw an unhandled exception at the `image.getexif()` method call due to invalid utf-8 stream in EXIF tags. ``` File lib/python3.12/site-packages/datasets/features/image.py:188, in Image.decode_example(self, value, token_per_repo_id) 186 image = PIL.Image.open(BytesIO(bytes_)) 187 image.load() # to avoid "Too many open files" errors --> 188 if image.getexif().get(PIL.Image.ExifTags.Base.Orientation) is not None: 189 image = PIL.ImageOps.exif_transpose(image) 190 if self.mode and self.mode != image.mode: File lib/python3.12/site-packages/PIL/Image.py:1542, in Image.getexif(self) 1540 xmp_tags = self.info.get("XML:com.adobe.xmp") 1541 if not xmp_tags and (xmp_tags := self.info.get("xmp")): -> 1542 xmp_tags = xmp_tags.decode("utf-8") 1543 if xmp_tags: 1544 match = re.search(r'tiff:Orientation(="|>)([0-9])', xmp_tags) UnicodeDecodeError: 'utf-8' codec can't decode byte 0xa8 in position 4312: invalid start byte ``` ### Expected behavior The invalid EXIF tag should simply be ignored or issue a warning message, instead of crash the whole program at once. ### Environment info - `datasets` version: 3.6.0 - Platform: Linux-6.5.0-18-generic-x86_64-with-glibc2.35 - Python version: 3.12.11 - `huggingface_hub` version: 0.33.0 - PyArrow version: 20.0.0 - Pandas version: 2.3.0 - `fsspec` version: 2025.3.0
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Function load_dataset() misinterprets string field content as part of dataset schema when dealing with `.jsonl` files
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[ "Somehow I created the issue twice🙈 This one is an exact duplicate of #7664." ]
2025-07-01T17:14:53Z
2025-07-01T17:17:48Z
2025-07-01T17:17:48Z
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### Describe the bug When loading a `.jsonl` file using `load_dataset("json", data_files="data.jsonl", split="train")`, the function misinterprets the content of a string field as if it were part of the dataset schema. In my case there is a field `body:` with a string value ``` "### Describe the bug (...) ,action: string, datetime: timestamp[s], author: string, (...) Pandas version: 1.3.4" ``` As a result, I got an exception ``` "TypeError: Couldn't cast array of type timestamp[s] to null". ``` Full stack-trace in the attached file below. I also attach a minimized dataset (data.json, a single entry) that reproduces the error. **Observations**(on the minimal example): - if I remove _all fields before_ `body`, a different error appears, - if I remove _all fields after_ `body`, yet another error appears, - if `body` is _the only field_, the error disappears. So this might be one complex bug or several edge cases interacting. I haven’t dug deeper. Also changing the file extension to `.json` or `.txt` avoids the problem. This suggests **a possible workaround** for the general case: convert `.jsonl` to `.json`. Though I haven’t verified correctness of that workaround yet. Anyway my understanding is that `load_dataset` with first argument set to "json" should properly handle `.jsonl` files. Correct me if I'm wrong. [stack_trace.txt](https://github.com/user-attachments/files/21004153/stack_trace.txt) [data.json](https://github.com/user-attachments/files/21004164/data.json) P.S. I discovered this while going through the HuggingFace tutorial. Specifically [this part](https://huggingface.co/learn/llm-course/chapter5/5?fw=pt).I will try to inform the tutorial team about this issue, as it can be a showstopper for young 🤗 adepts. ### Steps to reproduce the bug 1. Download attached [data.json](https://github.com/user-attachments/files/21004164/data.json) file. 2. Run the following code which should work correctly: ``` from datasets import load_dataset load_dataset("json", data_files="data.json", split="train") ``` 3. Change extension of the `data` file to `.jsonl` and run: ``` from datasets import load_dataset load_dataset("json", data_files="data.jsonl", split="train") ``` This will trigger an error like the one in the attached [stack_trace.txt](https://github.com/user-attachments/files/21004153/stack_trace.txt). One can also try removing fields before the `body` field and after it. These actions give different errors. ### Expected behavior Parsing data in `.jsonl` format should yield the same result as parsing the same data in `.json` format. In any case, the content of a string field should never be interpreted as part of the dataset schema. ### Environment info datasets version: _3.6.0_ pyarrow version: _20.0.0_ Python version: _3.11.9_ platform version: _macOS-15.5-arm64-arm-64bit_
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Function load_dataset() misinterprets string field content as part of dataset schema when dealing with `.jsonl` files
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[ "Hey @zdzichukowalski, I was not able to reproduce this on python 3.11.9 and datasets 3.6.0. The contents of \"body\" are correctly parsed as a string and no other fields like timestamps are created. Could you try reproducing this in a fresh environment, or posting the complete code where you encountered that stack...
2025-07-01T17:14:32Z
2025-07-09T13:14:11Z
null
NONE
null
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null
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### Describe the bug When loading a `.jsonl` file using `load_dataset("json", data_files="data.jsonl", split="train")`, the function misinterprets the content of a string field as if it were part of the dataset schema. In my case there is a field `body:` with a string value ``` "### Describe the bug (...) ,action: string, datetime: timestamp[s], author: string, (...) Pandas version: 1.3.4" ``` As a result, I got an exception ``` "TypeError: Couldn't cast array of type timestamp[s] to null". ``` Full stack-trace in the attached file below. I also attach a minimized dataset (data.json, a single entry) that reproduces the error. **Observations**(on the minimal example): - if I remove _all fields before_ `body`, a different error appears, - if I remove _all fields after_ `body`, yet another error appears, - if `body` is _the only field_, the error disappears. So this might be one complex bug or several edge cases interacting. I haven’t dug deeper. Also changing the file extension to `.json` or `.txt` avoids the problem. This suggests **a possible workaround** for the general case: convert `.jsonl` to `.json`. Though I haven’t verified correctness of that workaround yet. Anyway my understanding is that `load_dataset` with first argument set to "json" should properly handle `.jsonl` files. Correct me if I'm wrong. [stack_trace.txt](https://github.com/user-attachments/files/21004153/stack_trace.txt) [data.json](https://github.com/user-attachments/files/21004164/data.json) P.S. I discovered this while going through the HuggingFace tutorial. Specifically [this part](https://huggingface.co/learn/llm-course/chapter5/5?fw=pt). I will try to inform the tutorial team about this issue, as it can be a showstopper for young 🤗 adepts. ### Steps to reproduce the bug 1. Download attached [data.json](https://github.com/user-attachments/files/21004164/data.json) file. 2. Run the following code which should work correctly: ``` from datasets import load_dataset load_dataset("json", data_files="data.json", split="train") ``` 3. Change extension of the `data` file to `.jsonl` and run: ``` from datasets import load_dataset load_dataset("json", data_files="data.jsonl", split="train") ``` This will trigger an error like the one in the attached [stack_trace.txt](https://github.com/user-attachments/files/21004153/stack_trace.txt). One can also try removing fields before the `body` field and after it. These actions give different errors. ### Expected behavior Parsing data in `.jsonl` format should yield the same result as parsing the same data in `.json` format. In any case, the content of a string field should never be interpreted as part of the dataset schema. ### Environment info datasets version: _3.6.0_ pyarrow version: _20.0.0_ Python version: _3.11.9_ platform version: _macOS-15.5-arm64-arm-64bit_
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Applying map after transform with multiprocessing will cause OOM
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[ "Hi ! `add_column` loads the full column data in memory:\n\nhttps://github.com/huggingface/datasets/blob/bfa497b1666f4c58bd231c440d8b92f9859f3a58/src/datasets/arrow_dataset.py#L6021-L6021\n\na workaround to add the new column is to include the new data in the map() function instead, which only loads one batch at a ...
2025-07-01T05:45:57Z
2025-07-10T06:17:40Z
null
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### Describe the bug I have a 30TB dataset. When I perform add_column and cast_column operations on it and then execute a multiprocessing map, it results in an OOM (Out of Memory) error. However, if I skip the add_column and cast_column steps and directly run the map, there is no OOM. After debugging step by step, I found that the OOM is caused at this point, and I suspect it’s because the add_column and cast_column operations are not cached, which causes the entire dataset to be loaded in each subprocess, leading to the OOM. The critical line of code is: https://github.com/huggingface/datasets/blob/e71b0b19d79c7531f9b9bea7c09916b5f6157f42/src/datasets/utils/py_utils.py#L607 Note num_process=1 would not cause OOM. I'm confused. ### Steps to reproduce the bug For reproduce, you can load dataset and set cache_dir (for caching): amphion/Emilia-Dataset which is a veru large datasets that RAM can not fits. And apply the map with multiprocessing after a transform operation (e.g. add_column, cast_column). As long as num_process>1, it must cause OOM. ### Expected behavior It should not cause OOM. ### Environment info - `datasets` version: 3.6.0 - Platform: Linux-5.10.134-16.101.al8.x86_64-x86_64-with-glibc2.35 - Python version: 3.10.12 - `huggingface_hub` version: 0.33.1 - PyArrow version: 20.0.0 - Pandas version: 2.3.0 - `fsspec` version: 2024.6.1
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AttributeError: type object 'tqdm' has no attribute '_lock'
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[ "Deleting a class (**not instance**) attribute might be invalid in this case, which is `tqdm` doing in `ensure_lock`.\n\n```python\nfrom tqdm import tqdm as old_tqdm\n\nclass tqdm1(old_tqdm):\n def __delattr__(self, attr):\n try:\n super().__delattr__(attr)\n except AttributeError:\n ...
2025-06-30T15:57:16Z
2025-07-03T15:14:27Z
null
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### Describe the bug `AttributeError: type object 'tqdm' has no attribute '_lock'` It occurs when I'm trying to load datasets in thread pool. Issue https://github.com/huggingface/datasets/issues/6066 and PR https://github.com/huggingface/datasets/pull/6067 https://github.com/huggingface/datasets/pull/6068 tried to fix this. ### Steps to reproduce the bug Will have to try several times to reproduce the error because it is concerned with threads. 1. save some datasets for test ```pythonfrom datasets import Dataset, DatasetDict import os os.makedirs("test_dataset_shards", exist_ok=True) for i in range(10): data = Dataset.from_dict({"text": [f"example {j}" for j in range(1000000)]}) data = DatasetDict({'train': data}) data.save_to_disk(f"test_dataset_shards/shard_{i}") ``` 2. load them in a thread pool ```python from datasets import load_from_disk from tqdm import tqdm from concurrent.futures import ThreadPoolExecutor, as_completed import glob datas = glob.glob('test_dataset_shards/shard_*') with ThreadPoolExecutor(max_workers=10) as pool: futures = [pool.submit(load_from_disk, it) for it in datas] datas = [] for future in tqdm(as_completed(futures), total=len(futures)): datas.append(future.result()) ``` ### Expected behavior no exception raised ### Environment info datasets==2.19.0 python==3.10
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`load_dataset` defaults to json file format for datasets with 1 shard
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### Describe the bug I currently have multiple datasets (train+validation) saved as 50MB shards. For one dataset the validation pair is small enough to fit into a single shard and this apparently causes problems when loading the dataset. I created the datasets using a DatasetDict, saved them as 50MB arrow files for streaming and then load each dataset. I have no problem loading any of the other datasets with more than 1 arrow file/shard. The error indicates the training set got loaded in arrow format (correct) and the validation set in json (incorrect). This seems to be because some of the metadata files are considered as dataset files. ``` Error loading /nfs/dataset_pt-uk: Couldn't infer the same data file format for all splits. Got {NamedSplit('train'): ('arrow', {}), NamedSplit('validation'): ('json', {})} ``` ![Image](https://github.com/user-attachments/assets/f6e7596a-dd53-46a9-9a23-4e9cac2ac049) Concretely, there is a mismatch between the metadata created by the `DatasetDict.save_to_file` and the builder for `datasets.load_dataset`: https://github.com/huggingface/datasets/blob/e71b0b19d79c7531f9b9bea7c09916b5f6157f42/src/datasets/data_files.py#L107 The `folder_based_builder` lists all files and with 1 arrow file the json files (that are actually metadata) are in the majority. https://github.com/huggingface/datasets/blob/e71b0b19d79c7531f9b9bea7c09916b5f6157f42/src/datasets/packaged_modules/folder_based_builder/folder_based_builder.py#L58 ### Steps to reproduce the bug Create a dataset with metadata and 1 arrow file in validation and multiple arrow files in the training set, following the above description. In my case, I saved the files via: ```python dataset = DatasetDict({ 'train': train_dataset, 'validation': val_dataset }) dataset.save_to_disk(output_path, max_shard_size="50MB") ``` ### Expected behavior The dataset would get loaded. ### Environment info - `datasets` version: 3.6.0 - Platform: Linux-6.14.0-22-generic-x86_64-with-glibc2.41 - Python version: 3.12.7 - `huggingface_hub` version: 0.31.1 - PyArrow version: 18.1.0 - Pandas version: 2.2.3 - `fsspec` version: 2024.6.1
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I_kwDODunzps69evdF
7,647
loading mozilla-foundation--common_voice_11_0 fails
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[ "@claude Could you please address this issue", "kinda related: https://github.com/huggingface/datasets/issues/7675" ]
2025-06-26T12:23:48Z
2025-07-10T14:49:30Z
null
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### Describe the bug Hello everyone, i am trying to load `mozilla-foundation--common_voice_11_0` and it fails. Reproducer ``` import datasets datasets.load_dataset("mozilla-foundation/common_voice_11_0", "en", split="test", streaming=True, trust_remote_code=True) ``` and it fails with ``` File ~/opt/envs/.../lib/python3.10/site-packages/datasets/utils/file_utils.py:827, in _add_retries_to_file_obj_read_method.<locals>.read_with_retries(*args, **kwargs) 825 for retry in range(1, max_retries + 1): 826 try: --> 827 out = read(*args, **kwargs) 828 break 829 except ( 830 _AiohttpClientError, 831 asyncio.TimeoutError, 832 requests.exceptions.ConnectionError, 833 requests.exceptions.Timeout, 834 ) as err: File /usr/lib/python3.10/codecs.py:322, in BufferedIncrementalDecoder.decode(self, input, final) 319 def decode(self, input, final=False): 320 # decode input (taking the buffer into account) 321 data = self.buffer + input --> 322 (result, consumed) = self._buffer_decode(data, self.errors, final) 323 # keep undecoded input until the next call 324 self.buffer = data[consumed:] UnicodeDecodeError: 'utf-8' codec can't decode byte 0x8b in position 1: invalid start byte ``` When i remove streaming then everything is good but i need `streaming=True` ### Steps to reproduce the bug ``` import datasets datasets.load_dataset("mozilla-foundation/common_voice_11_0", "en", split="test", streaming=True, trust_remote_code=True) ``` ### Expected behavior Expected that it will download dataset ### Environment info datasets==3.6.0 python3.10 on all platforms linux/win/mac
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7,637
Introduce subset_name as an alias of config_name
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[ "I second this! When you come from the Hub, the intuitive question is \"how do I set the subset name\", and it's not easily answered from the docs: `subset_name` would answer this directly.", "I've submitted PR [#7657](https://github.com/huggingface/datasets/pull/7657) to introduce subset_name as a user-facing al...
2025-06-24T12:49:01Z
2025-07-01T16:08:33Z
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### Feature request Add support for `subset_name` as an alias for `config_name` in the datasets library and related tools (such as loading scripts, documentation, and metadata). ### Motivation The Hugging Face Hub dataset viewer displays a column named **"Subset"**, which refers to what is currently technically called config_name in the datasets library. This inconsistency has caused confusion for many users, especially those unfamiliar with the internal terminology. I have repeatedly received questions from users trying to understand what "config" means, and why it doesn’t match what they see as "subset" on the Hub. Renaming everything to `subset_name` might be too disruptive, but introducing subset_name as a clear alias for config_name could significantly improve user experience without breaking backward compatibility. This change would: - Align terminology across the Hub UI and datasets codebase - Reduce user confusion, especially for newcomers - Make documentation and examples more intuitive
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"open" in globals()["__builtins__"], an error occurs: "TypeError: argument of type 'module' is not iterable"
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[ "@kuanyan9527 Your query is indeed valid. Following could be its reasoning:\n\nQuoting from https://stackoverflow.com/a/11181607:\n\"By default, when in the `__main__` module,` __builtins__` is the built-in module `__builtin__` (note: no 's'); when in any other module, `__builtins__` is an alias for the dictionary ...
2025-06-24T08:09:39Z
2025-07-10T04:13:16Z
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When I run the following code, an error occurs: "TypeError: argument of type 'module' is not iterable" ```python print("open" in globals()["__builtins__"]) ``` Traceback (most recent call last): File "./main.py", line 2, in <module> print("open" in globals()["__builtins__"]) ^^^^^^^^^^^^^^^^^^^^^^ TypeError: argument of type 'module' is not iterable But this code runs fine in datasets, I don't understand why [src/datasets/utils/patching.py#L96](https://github.com/huggingface/datasets/blob/3.6.0/src/datasets/utils/patching.py#L96)
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Proposal: Small Tamil Discourse Coherence Dataset.
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2025-06-23T14:24:40Z
2025-06-23T14:24:40Z
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I’m a beginner from NIT Srinagar proposing a dataset of 50 Tamil text pairs for discourse coherence (coherent/incoherent labels) to support NLP research in low-resource languages. - Size: 50 samples - Format: CSV with columns (text1, text2, label) - Use case: Training NLP models for coherence I’ll use GitHub’s web editor and Google Colab. Please confirm if this fits.
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Graceful Error Handling for cast_column("image", Image(decode=True)) in Hugging Face Datasets
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[ "Hi! This is now handled in PR #7638", "Thank you for implementing the suggestion it would be great help in our use case. " ]
2025-06-23T13:49:24Z
2025-07-08T06:52:53Z
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### Feature request Currently, when using dataset.cast_column("image", Image(decode=True)), the pipeline throws an error and halts if any image in the dataset is invalid or corrupted (e.g., truncated files, incorrect formats, unreachable URLs). This behavior disrupts large-scale processing where a few faulty samples are common. reference : https://discuss.huggingface.co/t/handle-errors-when-loading-images-404-corrupted-etc/50318/5 https://discuss.huggingface.co/t/handling-non-existing-url-in-image-dataset-while-cast-column/69185 Proposed Feature Introduce a mechanism (e.g., a continue_on_error=True flag or global error handling mode) in Image(decode=True) that: Skips invalid images and sets them as None, or Logs the error but allows the rest of the dataset to be processed without interruption. Example Usage from datasets import load_dataset, Image dataset = load_dataset("my_dataset") dataset = dataset.cast_column("image", Image(decode=True, continue_on_error=True)) Benefits Ensures robust large-scale image dataset processing. Improves developer productivity by avoiding custom retry/error-handling code. Aligns with best practices in dataset preprocessing pipelines that tolerate minor data corruption. Potential Implementation Options Internally wrap the decoding in a try/except block. Return None or a placeholder on failure. Optionally allow custom error callbacks or logging. ### Motivation Robustness: Large-scale image datasets often contain a small fraction of corrupt files or unreachable URLs. Halting on the first error forces users to write custom workarounds or preprocess externally. Simplicity: A built-in flag removes boilerplate try/except logic around every decode step. Performance: Skipping invalid samples inline is more efficient than a two-pass approach (filter then decode). ### Your contribution 1. API Change Extend datasets.features.Image(decode=True) to accept continue_on_error: bool = False. 2. Behavior If continue_on_error=False (default), maintain current behavior: any decode error raises an exception. If continue_on_error=True, wrap decode logic in try/except: On success: store the decoded image. On failure: log a warning (e.g., via logging.warning) and set the field to None (or a sentinel value). 3. Optional Enhancements Allow a callback hook: Image(decode=True, continue_on_error=True, on_error=lambda idx, url, exc: ...) Emit metrics or counts of skipped images.
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[bug] resume from ckpt skips samples if .map is applied
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[ "Thanks for reporting this — it looks like a separate but related bug to #7538, which involved sample loss when resuming an `IterableDataset` wrapped in `FormattedExamplesIterable`. That was resolved in #7553 by re-batching the iterable to track offset correctly.\n\nIn this case, the issue seems to arise specifical...
2025-06-21T01:50:03Z
2025-06-29T07:51:32Z
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### Describe the bug resume from ckpt skips samples if .map is applied Maybe related: https://github.com/huggingface/datasets/issues/7538 ### Steps to reproduce the bug ```python from datasets import Dataset from datasets.distributed import split_dataset_by_node # Create dataset with map transformation def create_dataset(): ds = Dataset.from_dict({"id": list(range(100))}) ds = ds.to_iterable_dataset(num_shards=4) ds = ds.map(lambda x: x) #comment it out to get desired behavior ds = split_dataset_by_node(ds, rank=0, world_size=2) return ds ds = create_dataset() # Iterate and save checkpoint after 10 samples it = iter(ds) for idx, sample in enumerate(it): if idx == 9: # Checkpoint after 10 samples checkpoint = ds.state_dict() print(f"Checkpoint saved at sample: {sample['id']}") break # Continue with original iterator original_next_samples = [] for idx, sample in enumerate(it): original_next_samples.append(sample["id"]) if idx >= 4: break # Resume from checkpoint ds_new = create_dataset() ds_new.load_state_dict(checkpoint) # Get samples from resumed iterator it_new = iter(ds_new) resumed_next_samples = [] for idx, sample in enumerate(it_new): resumed_next_samples.append(sample["id"]) if idx >= 4: break print(f"\nExpected next samples: {original_next_samples}") print(f"Actual next samples: {resumed_next_samples}") print( f"\n❌ BUG: {resumed_next_samples[0] - original_next_samples[0]} samples were skipped!" ) ``` With map ``` Checkpoint saved at sample: 9 Expected next samples: [10, 11, 12, 13, 14] Actual next samples: [50, 51, 52, 53, 54] ❌ BUG: 40 samples were skipped! ``` ### Expected behavior without map ``` Expected next samples: [10, 11, 12, 13, 14] Actual next samples: [10, 11, 12, 13, 14] ❌ BUG: 0 samples were skipped! ``` ### Environment info datasets == 3.6.0
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Creating a HF Dataset from lakeFS with S3 storage takes too much time!
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[ "### > Update\n\nThe bottleneck, from what I understand, was making one network request per file\n\nFor 30k images, this meant 30k separate GET requests to the MinIO server through the S3 API, and that was killing the performance\n\nUsing webDataset to transform the large number of files to few .tar files and passi...
2025-06-19T14:28:41Z
2025-06-23T12:39:10Z
2025-06-23T12:39:10Z
NONE
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Hi, I’m new to HF dataset and I tried to create datasets based on data versioned in **lakeFS** _(**MinIO** S3 bucket as storage backend)_ Here I’m using ±30000 PIL image from MNIST data however it is taking around 12min to execute, which is a lot! From what I understand, it is loading the images into cache then building the dataset. – Please find bellow the execution screenshot – Is there a way to optimize this or am I doing something wrong? Thanks! ![Image](https://github.com/user-attachments/assets/c79257c8-f023-42a9-9e6f-0898b3ea93fe)
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#Dataset Make "image" column appear first in dataset preview UI
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[ "Hi ! It should follow the same order as the order of the keys in the metadata file", "Hi! Thank you for your answer. \n\nAs you said it, I I forced every key in every JSON to have an order using `collections. OrderedDict` in Python. Now, it works!\n\nTY" ]
2025-06-18T09:25:19Z
2025-06-20T07:46:43Z
2025-06-20T07:46:43Z
NONE
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Hi! #Dataset I’m currently uploading a dataset that includes an `"image"` column (PNG files), along with some metadata columns. The dataset is loaded from a .jsonl file. My goal is to have the "image" column appear as the first column in the dataset card preview UI on the :hugs: Hub. However, at the moment, the `"image"` column is not the first—in fact, it appears last, which is not ideal for the presentation I’d like to achieve. I have a couple of questions: Is there a way to force the dataset card to display the `"image"` column first? Is there currently any way to control or influence the column order in the dataset preview UI? Does the order of keys in the .jsonl file or the features argument affect the display order? Thanks again for your time and help! :blush:
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`from_list` fails while `from_generator` works for large datasets
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[ "@lhoestq any thoughts on this? ", "Thanks for the report! This behavior is expected due to how `from_list()` and `from_generator()` differ internally.\n\n- `from_list()` builds the entire dataset in memory at once, which can easily exceed limits (especially with variable-length arrays or millions of rows). The A...
2025-06-17T10:58:55Z
2025-06-29T16:34:44Z
null
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### Describe the bug I am constructing a large time series dataset and observed that first constructing a list of entries and then using `Dataset.from_list` led to a crash as the number of items became large. However, this is not a problem when using `Dataset.from_generator`. ### Steps to reproduce the bug #### Snippet A (crashes) ```py from tqdm.auto import tqdm import numpy as np import datasets def data_generator(): for i in tqdm(range(10_000_000)): length = np.random.randint(2048) series = np.random.rand(length) yield {"target": series, "item_id": str(i), "start": np.datetime64("2000", "ms")} data_list = list(data_generator()) ds = datasets.Dataset.from_list(data_list) ``` The last line crashes with ``` ArrowInvalid: Value 2147483761 too large to fit in C integer type ``` #### Snippet B (works) ```py from tqdm.auto import tqdm import numpy as np import datasets def data_generator(): for i in tqdm(range(10_000_000)): length = np.random.randint(2048) series = np.random.rand(length) yield {"target": series, "item_id": str(i), "start": np.datetime64("2000", "ms")} ds = datasets.Dataset.from_generator(data_generator) ``` ### Expected behavior I expected both the approaches to work or to fail similarly. ### Environment info ``` - `datasets` version: 3.6.0 - Platform: Linux-6.8.0-1029-aws-x86_64-with-glibc2.35 - Python version: 3.11.11 - `huggingface_hub` version: 0.32.2 - PyArrow version: 19.0.1 - Pandas version: 2.2.3 - `fsspec` version: 2025.3.0 ```
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Unwanted column padding in nested lists of dicts
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[ "Answer from @lhoestq:\n\n> No\n> This is because Arrow and Parquet a columnar format: they require a fixed type for each column. So if you have nested dicts, each item should have the same subfields\n\nThe way around I found is the handle it after sampling with this function:\n\n```python\ndef remove_padding(examp...
2025-06-15T22:06:17Z
2025-06-16T13:43:31Z
2025-06-16T13:43:31Z
MEMBER
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```python from datasets import Dataset dataset = Dataset.from_dict({ "messages": [ [ {"a": "...",}, {"b": "...",}, ], ] }) print(dataset[0]) ``` What I get: ``` {'messages': [{'a': '...', 'b': None}, {'a': None, 'b': '...'}]} ``` What I want: ``` {'messages': [{'a': '...'}, {'b': '...'}]} ``` Is there an easy way to automatically remove these auto-filled null/none values? If not, I probably need a recursive none exclusion function, don't I? Datasets 3.6.0
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Provide an option of robust dataset iterator with error handling
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[ "Hi ! Maybe we can add a parameter to the Image() type to make it to return `None` instead of raising an error in case of corruption ? Would that help ?", "Hi! 👋🏼 I just opened PR [#7638](https://github.com/huggingface/datasets/pull/7638) to address this issue.\n\n### 🔧 What it does:\nIt adds an `ignore_decode...
2025-06-13T00:40:48Z
2025-06-24T16:52:30Z
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### Feature request Adding an option to skip corrupted data samples. Currently the datasets behavior is throwing errors if the data sample if corrupted and let user aware and handle the data corruption. When I tried to try-catch the error at user level, the iterator will raise StopIteration when I called next() again. The way I try to do error handling is: (This doesn't work, unfortunately) ``` # Load the dataset with streaming enabled dataset = load_dataset( "pixparse/cc12m-wds", split="train", streaming=True ) # Get an iterator from the dataset iterator = iter(dataset) while True: try: # Try to get the next example example = next(iterator) # Try to access and process the image image = example["jpg"] pil_image = Image.fromarray(np.array(image)) pil_image.verify() # Verify it's a valid image file except StopIteration: # Code path 1 print("\nStopIteration was raised! Reach the end of dataset") raise StopIteration except Exception as e: # Code path 2 errors += 1 print("Error! Skip this sample") cotinue else: successful += 1 ``` This is because the `IterableDataset` already throws an error (reaches Code path 2). And if I continue call next(), it will hit Code path 1. This is because the inner iterator of `IterableDataset`([code](https://github.com/huggingface/datasets/blob/89bd1f971402acb62805ef110bc1059c38b1c8c6/src/datasets/iterable_dataset.py#L2242)) as been stopped, so calling next() on it will raise StopIteration. So I can not skip the corrupted data sample in this way. Would also love to hear any suggestions about creating a robust dataloader. Thanks for your help in advance! ### Motivation ## Public dataset corruption might be common A lot of users would use public dataset, and the public dataset might contains some corrupted data, especially for dataset with image / video etc. I totally understand it's dataset owner and user's responsibility to ensure the data integrity / run data cleaning or preprocessing, but it would be easier for developers who would use the dataset ## Use cases For example, a robust dataloader would be easy for users who want to try quick tests on different dataset, and chose one dataset which fits their needs. So user could use IterableDataloader with `stream=True` to use the dataset easily without downloading and removing corrupted data samples from the dataset. ### Your contribution The error handling might not trivial and might need more careful design.
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7,611
Code example for dataset.add_column() does not reflect correct way to use function
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[ "Hi @shaily99 \n\nThanks for pointing this out — you're absolutely right!\n\nThe current example in the docstring for add_column() implies in-place modification, which is misleading since add_column() actually returns a new dataset.", "#self-assign\n" ]
2025-06-12T19:42:29Z
2025-07-17T13:14:18Z
2025-07-17T13:14:18Z
NONE
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https://github.com/huggingface/datasets/blame/38d4d0e11e22fdbc4acf373d2421d25abeb43439/src/datasets/arrow_dataset.py#L5925C10-L5925C10 The example seems to suggest that dataset.add_column() can add column inplace, however, this is wrong -- it cannot. It returns a new dataset with the column added to it.
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7,610
i cant confirm email
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[ "Will you please clarify the issue by some screenshots or more in-depth explanation?", "![Image](https://github.com/user-attachments/assets/ebe58239-72ef-43f6-a849-35736878fbf3)\nThis is clarify answer. I have not received a letter.\n\n**The graphic at the top shows how I don't get any letter. Can you show in a c...
2025-06-12T18:58:49Z
2025-06-27T14:36:47Z
null
NONE
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### Describe the bug This is dificult, I cant confirm email because I'm not get any email! I cant post forum because I cant confirm email! I can send help desk because... no exist on web page. paragraph 44 ### Steps to reproduce the bug rthjrtrt ### Expected behavior ewtgfwetgf ### Environment info sdgfswdegfwe
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7,607
Video and audio decoding with torchcodec
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[ "Good idea ! let me know if you have any question or if I can help", "@lhoestq Almost finished, but I'm having trouble understanding this test case.\nThis is how it looks originally. The `map` function is called, and then `with_format` is called. According to the test case example[\"video\"] is supposed to be a V...
2025-06-11T07:02:30Z
2025-06-19T18:25:49Z
2025-06-19T18:25:49Z
CONTRIBUTOR
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### Feature request Pytorch is migrating video processing to torchcodec and it's pretty cool. It would be nice to migrate both the audio and video features to use torchcodec instead of torchaudio/video. ### Motivation My use case is I'm working on a multimodal AV model, and what's nice about torchcodec is I can extract the audio tensors directly from MP4 files. Also, I can easily resample video data to whatever fps I like on the fly. I haven't found an easy/efficient way to do this with torchvision. ### Your contribution I’m modifying the Video dataclass to use torchcodec in place of the current backend, starting from a stable commit for a project I’m working on. If it ends up working well, I’m happy to open a PR on main.
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`push_to_hub` is not concurrency safe (dataset schema corruption)
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[ "@lhoestq can you please take a look? I've submitted a PR that fixes this issue. Thanks.", "Thanks for the ping ! As I said in https://github.com/huggingface/datasets/pull/7605 there is maybe a more general approach using retries :)", "Dropping this due to inactivity; we've implemented push_to_hub outside of HF...
2025-06-07T17:28:56Z
2025-07-31T10:00:50Z
2025-07-31T10:00:50Z
NONE
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### Describe the bug Concurrent processes modifying and pushing a dataset can overwrite each others' dataset card, leaving the dataset unusable. Consider this scenario: - we have an Arrow dataset - there are `N` configs of the dataset - there are `N` independent processes operating on each of the individual configs (e.g. adding a column, `new_col`) - each process calls `push_to_hub` on their particular config when they're done processing - all calls to `push_to_hub` succeed - the `README.md` now has some configs with `new_col` added and some with `new_col` missing Any attempt to load a config (using `load_dataset`) where `new_col` is missing will fail because of a schema mismatch between `README.md` and the Arrow files. Fixing the dataset requires updating `README.md` by hand with the correct schema for the affected config. In effect, `push_to_hub` is doing a `git push --force` (I found this behavior quite surprising). We have hit this issue every time we run processing jobs over our datasets and have to fix corrupted schemas by hand. Reading through the code, it seems that specifying a [`parent_commit`](https://github.com/huggingface/huggingface_hub/blob/v0.32.4/src/huggingface_hub/hf_api.py#L4587) hash around here https://github.com/huggingface/datasets/blob/main/src/datasets/arrow_dataset.py#L5794 would get us to a normal, non-forced git push, and avoid schema corruption. I'm not familiar enough with the code to know how to determine the commit hash from which the in-memory dataset card was loaded. ### Steps to reproduce the bug See above. ### Expected behavior Concurrent edits to disjoint configs of a dataset should never corrupt the dataset schema. ### Environment info - `datasets` version: 2.20.0 - Platform: Linux-5.15.0-118-generic-x86_64-with-glibc2.35 - Python version: 3.10.14 - `huggingface_hub` version: 0.30.2 - PyArrow version: 19.0.1 - Pandas version: 2.2.2 - `fsspec` version: 2023.9.0
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I_kwDODunzps66TS2X
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My already working dataset (when uploaded few months ago) now is ignoring metadata.jsonl
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[ "Maybe its been a recent update, but i can manage to load the metadata.jsonl separately from the images with:\n\n```\nmetadata = load_dataset(\"PRAIG/SMB\", split=\"train\", data_files=[\"*.jsonl\"])\nimages = load_dataset(\"PRAIG/SMB\", split=\"train\")\n```\nDo you know it this is an expected behaviour? This make...
2025-06-06T18:59:00Z
2025-06-16T15:18:00Z
2025-06-16T15:18:00Z
NONE
null
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### Describe the bug Hi everyone, I uploaded my dataset https://huggingface.co/datasets/PRAIG/SMB a few months ago while I was waiting for a conference acceptance response. Without modifying anything in the dataset repository now the Dataset viewer is not rendering the metadata.jsonl annotations, neither it is being downloaded when using load_dataset. Can you please help? Thank you in advance. ### Steps to reproduce the bug from datasets import load_dataset ds = load_dataset("PRAIG/SMB") ds = ds["train"] ### Expected behavior It is expected to have all the metadata available in the jsonl file. Fields like: "score_id", "original_width", "original_height", "regions"... among others. ### Environment info datasets==3.6.0, python 3.13.3 (but he problem is already in the huggingface dataset page)
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Download datasets from a private hub in 2025
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[ "Hi ! First, and in the general case, Hugging Face does offer to host private datasets, and with a subscription you can even choose the region in which the repositories are hosted (US, EU)\n\nThen if you happen to have a private deployment, you can set the HF_ENDPOINT environment variable (same as in https://github...
2025-06-06T07:55:19Z
2025-06-13T13:46:00Z
2025-06-13T13:46:00Z
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### Feature request In the context of a private hub deployment, customers would like to use load_dataset() to load datasets from their hub, not from the public hub. This doesn't seem to be configurable at the moment and it would be nice to add this feature. The obvious workaround is to clone the repo first and then load it from local storage, but this adds an extra step. It'd be great to have the same experience regardless of where the hub is hosted. This issue was raised before here: https://github.com/huggingface/datasets/issues/3679 @juliensimon ### Motivation none ### Your contribution none
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I_kwDODunzps66A5-K
7,594
Add option to ignore keys/columns when loading a dataset from jsonl(or any other data format)
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[ "Good point, I'd be in favor of having the `columns` argument in `JsonConfig` (and the others) to align with `ParquetConfig` to let users choose which columns to load and ignore the rest", "Is it possible to ignore columns when using parquet? ", "Yes, you can pass `columns=...` to load_dataset to select which c...
2025-06-05T11:12:45Z
2025-06-28T09:03:00Z
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### Feature request Hi, I would like the option to ignore keys/columns when loading a dataset from files (e.g. jsonl). ### Motivation I am working on a dataset which is built on jsonl. It seems the dataset is unclean and a column has different types in each row. I can't clean this or remove the column (It is not my data and it is too big for me to clean and save on my own hardware). I would like the option to just ignore this column when using `load_dataset`, since i don't need it. I tried to look if this is already possible but couldn't find a solution. if there is I would love some help. If it is not currently possible, I would love this feature ### Your contribution I don't think I can help this time, unfortunately.
null
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I_kwDODunzps651hpE
7,591
Add num_proc parameter to push_to_hub
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[ "Hi @SwayStar123 \n\nI'd be interested in taking this up. I plan to add a `num_proc` parameter to `push_to_hub()` and use parallel uploads for shards using `concurrent.futures`. Will explore whether `ThreadPoolExecutor` or `ProcessPoolExecutor` is more suitable based on current implementation. Let me know if that s...
2025-06-04T13:19:15Z
2025-09-04T10:43:33Z
2025-09-04T10:43:33Z
NONE
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### Feature request A number of processes parameter to the dataset.push_to_hub method ### Motivation Shards are currently uploaded serially which makes it slow for many shards, uploading can be done in parallel and much faster
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`Sequence(Features(...))` causes PyArrow cast error in `load_dataset` despite correct schema.
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[ "Hi @lhoestq \n\nCould you help confirm whether this qualifies as a bug?\n\nIt looks like the issue stems from how `Sequence(Features(...))` is interpreted as a plain struct during schema inference, which leads to a mismatch when casting with PyArrow (especially with nested structs inside lists). From the descripti...
2025-05-29T22:53:36Z
2025-07-19T22:45:08Z
2025-07-19T22:45:08Z
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### Description When loading a dataset with a field declared as a list of structs using `Sequence(Features(...))`, `load_dataset` incorrectly infers the field as a plain `struct<...>` instead of a `list<struct<...>>`. This leads to the following error: ``` ArrowNotImplementedError: Unsupported cast from list<item: struct<id: string, data: string>> to struct using function cast_struct ``` This occurs even when the `features` schema is explicitly provided and the dataset format supports nested structures natively (e.g., JSON, JSONL). --- ### Minimal Reproduction [Colab Link.](https://colab.research.google.com/drive/1FZPQy6TP3jVd4B3mYKyfQaWNuOAvljUq?usp=sharing) #### Dataset ```python data = [ { "list": [ {"id": "example1", "data": "text"}, ] }, ] ``` #### Schema ```python from datasets import Features, Sequence, Value item = Features({ "id": Value("string"), "data": Value("string"), }) features = Features({ "list": Sequence(item), }) ``` --- ### Tested File Formats The same schema was tested across different formats: | Format | Method | Result | | --------- | --------------------------- | ------------------- | | JSONL | `load_dataset("json", ...)` | Arrow cast error | | JSON | `load_dataset("json", ...)` | Arrow cast error | | In-memory | `Dataset.from_list(...)` | Works as expected | The issue seems not to be in the schema or the data, but in how `load_dataset()` handles the `Sequence(Features(...))` pattern when parsing from files (specifically JSON and JSONL). --- ### Expected Behavior If `features` is explicitly defined as: ```python Features({"list": Sequence(Features({...}))}) ``` Then the data should load correctly across all backends — including from JSON and JSONL — without any Arrow casting errors. This works correctly when loading from memory via `Dataset.from_list`. --- ### Environment * `datasets`: 3.6.0 * `pyarrow`: 20.0.0 * Python: 3.12.10 * OS: Ubuntu 24.04.2 LTS * Notebook: \[Colab test notebook available] ---
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ValueError: Invalid pattern: '**' can only be an entire path component [Colab]
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[ "Could you please run the following code snippet in your environment and share the exact output? This will help check for any compatibility issues within the env itself. \n\n```\nimport datasets\nimport huggingface_hub\nimport fsspec\n\nprint(\"datasets version:\", datasets.__version__)\nprint(\"huggingface_hub ver...
2025-05-27T13:46:05Z
2025-05-30T13:22:52Z
2025-05-30T01:26:30Z
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### Describe the bug I have a dataset on HF [here](https://huggingface.co/datasets/kambale/luganda-english-parallel-corpus) that i've previously used to train a translation model [here](https://huggingface.co/kambale/pearl-11m-translate). now i changed a few hyperparameters to increase number of tokens for the model, increase Transformer layers, and all however, when i try to load the dataset, this error keeps coming up.. i have tried everything.. i have re-written the code a hundred times, and this keep coming up ### Steps to reproduce the bug Imports: ```bash !pip install datasets huggingface_hub fsspec ``` Python code: ```python from datasets import load_dataset HF_DATASET_NAME = "kambale/luganda-english-parallel-corpus" # Load the dataset try: if not HF_DATASET_NAME or HF_DATASET_NAME == "YOUR_HF_DATASET_NAME": raise ValueError( "Please provide a valid Hugging Face dataset name." ) dataset = load_dataset(HF_DATASET_NAME) # Omitted code as the error happens on the line above except ValueError as ve: print(f"Configuration Error: {ve}") raise except Exception as e: print(f"An error occurred while loading the dataset '{HF_DATASET_NAME}': {e}") raise e ``` now, i have tried going through this [issue](https://github.com/huggingface/datasets/issues/6737) and nothing helps ### Expected behavior loading the dataset successfully and perform splits (train, test, validation) ### Environment info from the imports, i do not install specific versions of these libraries, so the latest or available version is installed * `datasets` version: latest * `Platform`: Google Colab * `Hardware`: NVIDIA A100 GPU * `Python` version: latest * `huggingface_hub` version: latest * `fsspec` version: latest
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help is appreciated
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[ "how is this related to this repository ?" ]
2025-05-26T14:00:42Z
2025-05-26T18:21:57Z
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### Feature request https://github.com/rajasekarnp1/neural-audio-upscaler/tree/main ### Motivation ai model develpment and audio ### Your contribution ai model develpment and audio
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7,584
Add LMDB format support
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[ "Hi ! Can you explain what's your use case ? Is it about converting LMDB to Dataset objects (i.e. converting to Arrow) ?" ]
2025-05-26T07:10:13Z
2025-05-26T18:23:37Z
null
NONE
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### Feature request Add LMDB format support for large memory-mapping files ### Motivation Add LMDB format support for large memory-mapping files ### Your contribution I'm trying to add it
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3,088,987,757
I_kwDODunzps64HjZt
7,583
load_dataset type stubs reject List[str] for split parameter, but runtime supports it
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2025-05-25T02:33:18Z
2025-05-26T18:29:58Z
2025-05-26T18:29:58Z
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### Describe the bug The [load_dataset](https://huggingface.co/docs/datasets/v3.6.0/en/package_reference/loading_methods#datasets.load_dataset) method accepts a `List[str]` as the split parameter at runtime, however, the current type stubs restrict the split parameter to `Union[str, Split, None]`. This causes type checkers like Pylance to raise `reportArgumentType` errors when passing a list of strings, even though it works as intended at runtime. ### Steps to reproduce the bug 1. Use load_dataset with multiple splits e.g.: ``` from datasets import load_dataset ds_train, ds_val, ds_test = load_dataset( "Silly-Machine/TuPyE-Dataset", "binary", split=["train[:75%]", "train[75%:]", "test"] ) ``` 2. Observe that code executes correctly at runtime and Pylance raises `Argument of type "List[str]" cannot be assigned to parameter "split" of type "str | Split | None"` ### Expected behavior The type stubs for [load_dataset](https://huggingface.co/docs/datasets/v3.6.0/en/package_reference/loading_methods#datasets.load_dataset) should accept `Union[str, Split, List[str], None]` or more specific overloads for the split parameter to correctly represent runtime behavior. ### Environment info - `datasets` version: 3.6.0 - Platform: Linux-5.15.167.4-microsoft-standard-WSL2-x86_64-with-glibc2.39 - Python version: 3.12.7 - `huggingface_hub` version: 0.32.0 - PyArrow version: 20.0.0 - Pandas version: 2.2.3 - `fsspec` version: 2025.3.0
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3,082,993,027
I_kwDODunzps63wr2D
7,580
Requesting a specific split (eg: test) still downloads all (train, test, val) data when streaming=False.
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[ "Hi ! There was a PR open to improve this: https://github.com/huggingface/datasets/pull/6832 \nbut it hasn't been continued so far.\n\nIt would be a cool improvement though !" ]
2025-05-22T11:08:16Z
2025-05-26T18:40:31Z
null
NONE
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### Describe the bug When using load_dataset() from the datasets library (in load.py), specifying a particular split (e.g., split="train") still results in downloading data for all splits when streaming=False. This happens during the builder_instance.download_and_prepare() call. This behavior leads to unnecessary bandwidth usage and longer download times, especially for large datasets, even if the user only intends to use a single split. ### Steps to reproduce the bug dataset_name = "skbose/indian-english-nptel-v0" dataset = load_dataset(dataset_name, token=hf_token, split="test") ### Expected behavior Optimize the download logic so that only the required split is downloaded when streaming=False when a specific split is provided. ### Environment info Dataset: skbose/indian-english-nptel-v0 Platform: M1 Apple Silicon Python verison: 3.12.9 datasets>=3.5.0
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3,080,833,740
I_kwDODunzps63ocrM
7,577
arrow_schema is not compatible with list
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[ "Thanks for reporting, I'll look into it", "Actually it looks like you just forgot parenthesis:\n\n```diff\n- f = datasets.Features({'x': list[datasets.Value(dtype='int32')]})\n+ f = datasets.Features({'x': list([datasets.Value(dtype='int32')])})\n```\n\nor simply using the `[ ]` syntax:\n\n```python\nf = dataset...
2025-05-21T16:37:01Z
2025-05-26T18:49:51Z
2025-05-26T18:32:55Z
NONE
null
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### Describe the bug ``` import datasets f = datasets.Features({'x': list[datasets.Value(dtype='int32')]}) f.arrow_schema Traceback (most recent call last): File "datasets/features/features.py", line 1826, in arrow_schema return pa.schema(self.type).with_metadata({"huggingface": json.dumps(hf_metadata)}) ^^^^^^^^^ File "datasets/features/features.py", line 1815, in type return get_nested_type(self) ^^^^^^^^^^^^^^^^^^^^^ File "datasets/features/features.py", line 1252, in get_nested_type return pa.struct( ^^^^^^^^^^ File "pyarrow/types.pxi", line 5406, in pyarrow.lib.struct File "pyarrow/types.pxi", line 3890, in pyarrow.lib.field File "pyarrow/types.pxi", line 5918, in pyarrow.lib.ensure_type TypeError: DataType expected, got <class 'list'> ``` The following works ``` f = datasets.Features({'x': datasets.LargeList(datasets.Value(dtype='int32'))}) ``` ### Expected behavior according to https://github.com/huggingface/datasets/blob/458f45a22c3cc9aea5f442f6f519333dcfeae9b9/src/datasets/features/features.py#L1765 python list should be a valid type specification for features ### Environment info - `datasets` version: 3.5.1 - Platform: macOS-15.5-arm64-arm-64bit - Python version: 3.12.9 - `huggingface_hub` version: 0.30.2 - PyArrow version: 19.0.1 - Pandas version: 2.2.3 - `fsspec` version: 2024.12.0
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3,079,641,072
I_kwDODunzps63j5fw
7,574
Missing multilingual directions in IWSLT2017 dataset's processing script
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[ "I have opened 2 PRs on the Hub: `https://huggingface.co/datasets/IWSLT/iwslt2017/discussions/7` and `https://huggingface.co/datasets/IWSLT/iwslt2017/discussions/8` to resolve this issue", "cool ! I pinged the owners of the dataset on HF to merge your PRs :)" ]
2025-05-21T09:53:17Z
2025-05-26T18:36:38Z
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### Describe the bug Hi, Upon using `iwslt2017.py` in `IWSLT/iwslt2017` on the Hub for loading the datasets, I am unable to obtain the datasets for the language pairs `de-it`, `de-ro`, `de-nl`, `it-de`, `nl-de`, and `ro-de` using it. These 6 pairs do not show up when using `get_dataset_config_names()` to obtain the list of all the configs present in `IWSLT/iwslt2017`. This should not be the case since as mentioned in their original paper (please see https://aclanthology.org/2017.iwslt-1.1.pdf), the authors specify that "_this year we proposed the multilingual translation between any pair of languages from {Dutch, English, German, Italian, Romanian}..._" and because these datasets are indeed present in `data/2017-01-trnmted/texts/DeEnItNlRo/DeEnItNlRo/DeEnItNlRo-DeEnItNlRo.zip`. Best Regards, Anand ### Steps to reproduce the bug Check the output of `get_dataset_config_names("IWSLT/iwslt2017", trust_remote_code=True)`: only 24 language pairs are present and the following 6 config names are absent: `iwslt2017-de-it`, `iwslt2017-de-ro`, `iwslt2017-de-nl`, `iwslt2017-it-de`, `iwslt2017-nl-de`, and `iwslt2017-ro-de`. ### Expected behavior The aforementioned 6 language pairs should also be present and hence, all these 6 language pairs' IWSLT2017 datasets must also be available for further use. I would suggest removing `de` from the `BI_LANGUAGES` list and moving it over to the `MULTI_LANGUAGES` list instead in `iwslt2017.py` to account for all the 6 missing language pairs (the same `de-en` dataset is present in both `data/2017-01-trnmted/texts/DeEnItNlRo/DeEnItNlRo/DeEnItNlRo-DeEnItNlRo.zip` and `data/2017-01-trnted/texts/de/en/de-en.zip` but the `de-ro`, `de-nl`, `it-de`, `nl-de`, and `ro-de` datasets are only present in `data/2017-01-trnmted/texts/DeEnItNlRo/DeEnItNlRo/DeEnItNlRo-DeEnItNlRo.zip`: so, its unclear why the following comment: _`# XXX: Artificially removed DE from here, as it also exists within bilingual data`_ has been added as `L71` in `iwslt2017.py`). The `README.md` file in `IWSLT/iwslt2017`must then be re-created using `datasets-cli test path/to/iwslt2017.py --save_info --all_configs` to pass all split size verification checks for the 6 new language pairs which were previously non-existent. ### Environment info - `datasets` version: 3.5.0 - Platform: Linux-6.8.0-56-generic-x86_64-with-glibc2.39 - Python version: 3.12.3 - `huggingface_hub` version: 0.30.1 - PyArrow version: 19.0.1 - Pandas version: 2.2.3 - `fsspec` version: 2024.12.0
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7,573
No Samsum dataset
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[ "According to the following https://huggingface.co/posts/seawolf2357/424129432408590, as of now the dataset seems to be inaccessible.\n\n@IgorKasianenko, would https://huggingface.co/datasets/knkarthick/samsum suffice for your purpose?\n", "Thanks @SP1029 for the update!\nThat will work for now, using it as repla...
2025-05-20T09:54:35Z
2025-07-21T18:34:34Z
2025-06-18T12:52:23Z
NONE
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### Describe the bug https://huggingface.co/datasets/Samsung/samsum dataset not found error 404 Originated from https://github.com/meta-llama/llama-cookbook/issues/948 ### Steps to reproduce the bug go to website https://huggingface.co/datasets/Samsung/samsum see the error also downloading it with python throws ``` Couldn't find 'Samsung/samsum' on the Hugging Face Hub either: FileNotFoundError: Samsung/samsum@f00baf5a7d4abfec6820415493bcb52c587788e6/samsum.py (repository not found) ``` ### Expected behavior Dataset exists ### Environment info ``` - `datasets` version: 3.2.0 - Platform: macOS-15.4.1-arm64-arm-64bit - Python version: 3.12.2 - `huggingface_hub` version: 0.26.5 - PyArrow version: 16.1.0 - Pandas version: 2.2.3 - `fsspec` version: 2024.9.0 ```
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Dataset lib seems to broke after fssec lib update
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[ "Hi, can you try updating `datasets` ? Colab still installs `datasets` 2.x by default, instead of 3.x\n\nIt would be cool to also report this to google colab, they have a GitHub repo for this IIRC", "@lhoestq I have updated it to `datasets==3.6.0` and now there's an entirely different issue on colab while locally...
2025-05-15T11:45:06Z
2025-06-13T00:44:27Z
2025-06-13T00:44:27Z
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### Describe the bug I am facing an issue since today where HF's dataset is acting weird and in some instances failure to recognise a valid dataset entirely, I think it is happening due to recent change in `fsspec` lib as using this command fixed it for me in one-time: `!pip install -U datasets huggingface_hub fsspec` ### Steps to reproduce the bug from datasets import load_dataset def download_hf(): dataset_name = input("Enter the dataset name: ") subset_name = input("Enter subset name: ") ds = load_dataset(dataset_name, name=subset_name) for split in ds: ds[split].to_pandas().to_csv(f"{subset_name}.csv", index=False) download_hf() ### Expected behavior ``` Downloading readme: 100%  1.55k/1.55k [00:00<00:00, 121kB/s] Downloading data files: 100%  1/1 [00:00<00:00,  2.06it/s] Downloading data: 0%| | 0.00/54.2k [00:00<?, ?B/s] Downloading data: 100%|██████████| 54.2k/54.2k [00:00<00:00, 121kB/s] Extracting data files: 100%  1/1 [00:00<00:00, 35.17it/s] Generating test split:   140/0 [00:00<00:00, 2628.62 examples/s] --------------------------------------------------------------------------- NotImplementedError Traceback (most recent call last) [<ipython-input-2-12ab305b0e77>](https://localhost:8080/#) in <cell line: 0>() 8 ds[split].to_pandas().to_csv(f"{subset_name}.csv", index=False) 9 ---> 10 download_hf() 2 frames [/usr/local/lib/python3.11/dist-packages/datasets/builder.py](https://localhost:8080/#) in as_dataset(self, split, run_post_process, verification_mode, ignore_verifications, in_memory) 1171 is_local = not is_remote_filesystem(self._fs) 1172 if not is_local: -> 1173 raise NotImplementedError(f"Loading a dataset cached in a {type(self._fs).__name__} is not supported.") 1174 if not os.path.exists(self._output_dir): 1175 raise FileNotFoundError( NotImplementedError: Loading a dataset cached in a LocalFileSystem is not supported. ``` OR ``` Traceback (most recent call last): File "e:\Fuck\download-data\mcq_dataset.py", line 10, in <module> download_hf() File "e:\Fuck\download-data\mcq_dataset.py", line 6, in download_hf ds = load_dataset(dataset_name, name=subset_name) File "C:\Users\DELL\AppData\Local\Programs\Python\Python310\lib\site-packages\datasets\load.py", line 2606, in load_dataset builder_instance = load_dataset_builder( File "C:\Users\DELL\AppData\Local\Programs\Python\Python310\lib\site-packages\datasets\load.py", line 2277, in load_dataset_builder dataset_module = dataset_module_factory( File "C:\Users\DELL\AppData\Local\Programs\Python\Python310\lib\site-packages\datasets\load.py", line 1917, in dataset_module_factory raise e1 from None File "C:\Users\DELL\AppData\Local\Programs\Python\Python310\lib\site-packages\datasets\load.py", line 1867, in dataset_module_factory raise DatasetNotFoundError(f"Dataset '{path}' doesn't exist on the Hub or cannot be accessed.") from e datasets.exceptions.DatasetNotFoundError: Dataset 'dataset repo_id' doesn't exist on the Hub or cannot be accessed. ``` ### Environment info colab and 3.10 local system
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Dataset creation is broken if nesting a dict inside a dict inside a list
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[ "Hi ! That's because Séquence is a type that comes from tensorflow datasets and inverts lists and focus when doing Séquence(dict).\n\nInstead you should use a list. In your case\n```python\nfeatures = Features({\n \"a\": [{\"b\": {\"c\": Value(\"string\")}}]\n})\n```", "Hi,\n\nThanks for the swift reply! Could...
2025-05-13T21:06:45Z
2025-05-20T19:25:15Z
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### Describe the bug Hey, I noticed that the creation of datasets with `Dataset.from_generator` is broken if dicts and lists are nested in a certain way and a schema is being passed. See below for details. Best, Tim ### Steps to reproduce the bug Runing this code: ```python from datasets import Dataset, Features, Sequence, Value def generator(): yield { "a": [{"b": {"c": 0}}], } features = Features( { "a": Sequence( feature={ "b": { "c": Value("int32"), }, }, length=1, ) } ) dataset = Dataset.from_generator(generator, features=features) ``` leads to ``` Generating train split: 1 examples [00:00, 540.85 examples/s] Traceback (most recent call last): File "/home/user/miniconda3/envs/test/lib/python3.11/site-packages/datasets/builder.py", line 1635, in _prepare_split_single num_examples, num_bytes = writer.finalize() ^^^^^^^^^^^^^^^^^ File "/home/user/miniconda3/envs/test/lib/python3.11/site-packages/datasets/arrow_writer.py", line 657, in finalize self.write_examples_on_file() File "/home/user/miniconda3/envs/test/lib/python3.11/site-packages/datasets/arrow_writer.py", line 510, in write_examples_on_file self.write_batch(batch_examples=batch_examples) File "/home/user/miniconda3/envs/test/lib/python3.11/site-packages/datasets/arrow_writer.py", line 629, in write_batch pa_table = pa.Table.from_arrays(arrays, schema=schema) ^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^ File "pyarrow/table.pxi", line 4851, in pyarrow.lib.Table.from_arrays File "pyarrow/table.pxi", line 1608, in pyarrow.lib._sanitize_arrays File "pyarrow/array.pxi", line 399, in pyarrow.lib.asarray File "pyarrow/array.pxi", line 1004, in pyarrow.lib.Array.cast File "/home/user/miniconda3/envs/test/lib/python3.11/site-packages/pyarrow/compute.py", line 405, in cast return call_function("cast", [arr], options, memory_pool) ^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^ File "pyarrow/_compute.pyx", line 598, in pyarrow._compute.call_function File "pyarrow/_compute.pyx", line 393, in pyarrow._compute.Function.call File "pyarrow/error.pxi", line 155, in pyarrow.lib.pyarrow_internal_check_status File "pyarrow/error.pxi", line 92, in pyarrow.lib.check_status pyarrow.lib.ArrowNotImplementedError: Unsupported cast from fixed_size_list<item: struct<c: int32>>[1] to struct using function cast_struct The above exception was the direct cause of the following exception: Traceback (most recent call last): File "/home/user/test/tools/hf_test2.py", line 23, in <module> dataset = Dataset.from_generator(generator, features=features) ^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^ File "/home/user/miniconda3/envs/test/lib/python3.11/site-packages/datasets/arrow_dataset.py", line 1114, in from_generator ).read() ^^^^^^ File "/home/user/miniconda3/envs/test/lib/python3.11/site-packages/datasets/io/generator.py", line 49, in read self.builder.download_and_prepare( File "/home/user/miniconda3/envs/test/lib/python3.11/site-packages/datasets/builder.py", line 925, in download_and_prepare self._download_and_prepare( File "/home/user/miniconda3/envs/test/lib/python3.11/site-packages/datasets/builder.py", line 1649, in _download_and_prepare super()._download_and_prepare( File "/home/user/miniconda3/envs/test/lib/python3.11/site-packages/datasets/builder.py", line 1001, in _download_and_prepare self._prepare_split(split_generator, **prepare_split_kwargs) File "/home/user/miniconda3/envs/test/lib/python3.11/site-packages/datasets/builder.py", line 1487, in _prepare_split for job_id, done, content in self._prepare_split_single( File "/home/user/miniconda3/envs/test/lib/python3.11/site-packages/datasets/builder.py", line 1644, in _prepare_split_single raise DatasetGenerationError("An error occurred while generating the dataset") from e datasets.exceptions.DatasetGenerationError: An error occurred while generating the dataset Process finished with exit code 1 ``` ### Expected behavior I expected this code not to lead to an error. I have done some digging and figured out that the problem seems to be the `get_nested_type` function in `features.py`, which, for whatever reason, flips Sequences and dicts whenever it encounters a dict inside of a sequence. This seems to be necessary, as disabling that flip leads to another error. However, by keeping that flip enabled for the highest level and disabling it for all subsequent levels, I was able to work around this problem. Specifically, by patching `get_nested_type` as follows, it works on the given example (emphasis on the `level` parameter I added): ```python def get_nested_type(schema: FeatureType, level=0) -> pa.DataType: """ get_nested_type() converts a datasets.FeatureType into a pyarrow.DataType, and acts as the inverse of generate_from_arrow_type(). It performs double-duty as the implementation of Features.type and handles the conversion of datasets.Feature->pa.struct """ # Nested structures: we allow dict, list/tuples, sequences if isinstance(schema, Features): return pa.struct( {key: get_nested_type(schema[key], level = level + 1) for key in schema} ) # Features is subclass of dict, and dict order is deterministic since Python 3.6 elif isinstance(schema, dict): return pa.struct( {key: get_nested_type(schema[key], level = level + 1) for key in schema} ) # however don't sort on struct types since the order matters elif isinstance(schema, (list, tuple)): if len(schema) != 1: raise ValueError("When defining list feature, you should just provide one example of the inner type") value_type = get_nested_type(schema[0], level = level + 1) return pa.list_(value_type) elif isinstance(schema, LargeList): value_type = get_nested_type(schema.feature, level = level + 1) return pa.large_list(value_type) elif isinstance(schema, Sequence): value_type = get_nested_type(schema.feature, level = level + 1) # We allow to reverse list of dict => dict of list for compatibility with tfds if isinstance(schema.feature, dict) and level == 1: data_type = pa.struct({f.name: pa.list_(f.type, schema.length) for f in value_type}) else: data_type = pa.list_(value_type, schema.length) return data_type # Other objects are callable which returns their data type (ClassLabel, Array2D, Translation, Arrow datatype creation methods) return schema() ``` I have honestly no idea what I am doing here, so this might produce other issues for different inputs. ### Environment info - `datasets` version: 3.6.0 - Platform: Linux-6.8.0-59-generic-x86_64-with-glibc2.35 - Python version: 3.11.11 - `huggingface_hub` version: 0.30.2 - PyArrow version: 19.0.1 - Pandas version: 2.2.3 - `fsspec` version: 2024.12.0 Also tested it with 3.5.0, same result.
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`IterableDatasetDict.map()` call removes `column_names` (in fact info.features)
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[ "Hi ! IterableDataset doesn't know what's the output of the function you pass to map(), so it's not possible to know in advance the features of the output dataset.\n\nThere is a workaround though: either do `ds = ds.map(..., features=features)`, or you can do `ds = ds._resolve_features()` which iterates on the firs...
2025-05-13T15:45:42Z
2025-06-30T09:33:47Z
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When calling `IterableDatasetDict.map()`, each split’s `IterableDataset.map()` is invoked without a `features` argument. While omitting the argument isn’t itself incorrect, the implementation then sets `info.features = features`, which destroys the original `features` content. Since `IterableDataset.column_names` relies on `info.features`, it ends up broken (`None`). **Reproduction** 1. Define an IterableDatasetDict with a non-None features schema. 2. my_iterable_dataset_dict contains "text" column. 3. Call: ```Python new_dict = my_iterable_dataset_dict.map( function=my_fn, with_indices=False, batched=True, batch_size=16, ) ``` 4. Observe ```Python new_dict["train"].info.features # {'text': Value(dtype='string', id=None)} new_dict["train"].column_names # ['text'] ``` 5. Call: ```Python new_dict = my_iterable_dataset_dict.map( function=my_fn, with_indices=False, batched=True, batch_size=16, remove_columns=["foo"] ) ``` 6. Observe: ```Python new_dict["train"].info.features # → None new_dict["train"].column_names # → None ``` 5. Internally, in dataset_dict.py this loop omits features ([code](https://github.com/huggingface/datasets/blob/b9efdc64c3bfb8f21f8a4a22b21bddd31ecd5a31/src/datasets/dataset_dict.py#L2047C5-L2056C14)): ```Python for split, dataset in self.items(): dataset_dict[split] = dataset.map( function=function, with_indices=with_indices, input_columns=input_columns, batched=batched, batch_size=batch_size, drop_last_batch=drop_last_batch, remove_columns=remove_columns, fn_kwargs=fn_kwargs, # features omitted → defaults to None ) ``` 7. Then inside IterableDataset.map() ([code](https://github.com/huggingface/datasets/blob/b9efdc64c3bfb8f21f8a4a22b21bddd31ecd5a31/src/datasets/iterable_dataset.py#L2619C1-L2622C37)) correct `info.features` is replaced by features which is None: ```Python info = self.info.copy() info.features = features # features is None here return IterableDataset(..., info=info, ...) ``` **Suggestion** It looks like this replacement was added intentionally but maybe should be done only if `features` is `not None`. **Workarround:** `SFTTrainer` calls `dataset.map()` several times and then fails on `NoneType` when iterating `dataset.column_names`. I decided to write this patch - works form me. ```python def patch_iterable_dataset_map(): _orig_map = IterableDataset.map def _patched_map(self, *args, **kwargs): if "features" not in kwargs or kwargs["features"] is None: kwargs["features"] = self.info.features return _orig_map(self, *args, **kwargs) IterableDataset.map = _patched_map ```
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interleave_datasets seed with multiple workers
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[ "Hi ! It's already the case IIRC: the effective seed looks like `seed + worker_id`. Do you have a reproducible example ?", "here is an example with shuffle\n\n```\nimport itertools\nimport datasets\nimport multiprocessing\nimport torch.utils.data\n\n\ndef gen(shard):\n worker_info = torch.utils.data.get_worker_i...
2025-05-12T22:38:27Z
2025-06-29T06:53:59Z
null
NONE
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### Describe the bug Using interleave_datasets with multiple dataloader workers and a seed set causes the same dataset sampling order across all workers. Should the seed be modulated with the worker id? ### Steps to reproduce the bug See above ### Expected behavior See above ### Environment info - `datasets` version: 3.5.1 - Platform: macOS-15.4.1-arm64-arm-64bit - Python version: 3.12.9 - `huggingface_hub` version: 0.30.2 - PyArrow version: 19.0.1 - Pandas version: 2.2.3 - `fsspec` version: 2024.12.0
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terminate called without an active exception; Aborted (core dumped)
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[ "@alexey-milovidov I followed the code snippet, but am able to successfully execute without any error. Could you please verify if the error persists or there is any additional details.", "@alexey-milovidov else if the problem does not exist please feel free to close this issue.", "```\nmilovidov@milovidov-pc:~/...
2025-05-11T23:05:54Z
2025-06-23T17:56:02Z
null
NONE
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### Describe the bug I use it as in the tutorial here: https://huggingface.co/docs/datasets/stream, and it ends up with abort. ### Steps to reproduce the bug 1. `pip install datasets` 2. ``` $ cat main.py #!/usr/bin/env python3 from datasets import load_dataset dataset = load_dataset('HuggingFaceFW/fineweb', split='train', streaming=True) print(next(iter(dataset))) ``` 3. `chmod +x main.py` ``` $ ./main.py README.md: 100%|████████████████████████████████████████████████████████████████████████████████████████████████████████████████████████████████████████████████████████████████████████████████████████████████████████████████████████████████████████████████████████| 43.1k/43.1k [00:00<00:00, 7.04MB/s] Resolving data files: 100%|██████████████████████████████████████████████████████████████████████████████████████████████████████████████████████████████████████████████████████████████████████████████████████████████████████████████████████████████████████████| 25868/25868 [00:05<00:00, 4859.26it/s] Resolving data files: 100%|█████████████████████████████████████████████████████████████████████████████████████████████████████████████████████████████████████████████████████████████████████████████████████████████████████████████████████████████████████████| 25868/25868 [00:00<00:00, 54773.56it/s] {'text': "How AP reported in all formats from tornado-stricken regionsMarch 8, 2012\nWhen the first serious bout of tornadoes of 2012 blew through middle America in the middle of the night, they touched down in places hours from any AP bureau. Our closest video journalist was Chicago-based Robert Ray, who dropped his plans to travel to Georgia for Super Tuesday, booked several flights to the cities closest to the strikes and headed for the airport. He’d decide once there which flight to take.\nHe never got on board a plane. Instead, he ended up driving toward Harrisburg, Ill., where initial reports suggested a town was destroyed. That decision turned out to be a lucky break for the AP. Twice.\nRay was among the first journalists to arrive and he confirmed those reports -- in all formats. He shot powerful video, put victims on the phone with AP Radio and played back sound to an editor who transcribed the interviews and put the material on text wires. He then walked around the devastation with the Central Regional Desk on the line, talking to victims with the phone held so close that editors could transcribe his interviews in real time.\nRay also made a dramatic image of a young girl who found a man’s prosthetic leg in the rubble, propped it up next to her destroyed home and spray-painted an impromptu sign: “Found leg. Seriously.”\nThe following day, he was back on the road and headed for Georgia and a Super Tuesday date with Newt Gingrich’s campaign. The drive would take him through a stretch of the South that forecasters expected would suffer another wave of tornadoes.\nTo prevent running into THAT storm, Ray used his iPhone to monitor Doppler radar, zooming in on extreme cells and using Google maps to direct himself to safe routes. And then the journalist took over again.\n“When weather like that occurs, a reporter must seize the opportunity to get the news out and allow people to see, hear and read the power of nature so that they can take proper shelter,” Ray says.\nSo Ray now started to use his phone to follow the storms. He attached a small GoPro camera to his steering wheel in case a tornado dropped down in front of the car somewhere, and took video of heavy rain and hail with his iPhone. Soon, he spotted a tornado and the chase was on. He followed an unmarked emergency vehicle to Cleveland, Tenn., where he was first on the scene of the storm's aftermath.\nAgain, the tornadoes had struck in locations that were hours from the nearest AP bureau. Damage and debris, as well as a wickedly violent storm that made travel dangerous, slowed our efforts to get to the news. That wasn’t a problem in Tennessee, where our customers were well served by an all-formats report that included this text story.\n“CLEVELAND, Tenn. (AP) _ Fierce wind, hail and rain lashed Tennessee for the second time in three days, and at least 15 people were hospitalized Friday in the Chattanooga area.”\nThe byline? Robert Ray.\nFor being adept with technology, chasing after news as it literally dropped from the sky and setting a standard for all-formats reporting that put the AP ahead on the most competitive news story of the day, Ray wins this week’s $300 Best of the States prize.\n© 2013 The Associated Press. All rights reserved. Terms and conditions apply. See AP.org for details.", 'id': '<urn:uuid:d66bc6fe-8477-4adf-b430-f6a558ccc8ff>', 'dump': 'CC-MAIN-2013-20', 'url': 'http://%20jwashington@ap.org/Content/Press-Release/2012/How-AP-reported-in-all-formats-from-tornado-stricken-regions', 'date': '2013-05-18T05:48:54Z', 'file_path': 's3://commoncrawl/crawl-data/CC-MAIN-2013-20/segments/1368696381249/warc/CC-MAIN-20130516092621-00000-ip-10-60-113-184.ec2.internal.warc.gz', 'language': 'en', 'language_score': 0.9721424579620361, 'token_count': 717} terminate called without an active exception Aborted (core dumped) ``` ### Expected behavior I'm not a proficient Python user, so it might be my own error, but even in that case, the error message should be better. ### Environment info `Successfully installed datasets-3.6.0 dill-0.3.8 hf-xet-1.1.0 huggingface-hub-0.31.1 multiprocess-0.70.16 requests-2.32.3 xxhash-3.5.0` ``` $ cat /etc/lsb-release DISTRIB_ID=Ubuntu DISTRIB_RELEASE=22.04 DISTRIB_CODENAME=jammy DISTRIB_DESCRIPTION="Ubuntu 22.04.4 LTS" ```
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NotImplementedError: <class 'datasets.iterable_dataset.RepeatExamplesIterable'> doesn't implement num_shards yet
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2025-05-07T15:05:42Z
2025-06-05T12:41:30Z
2025-06-05T12:41:30Z
NONE
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### Describe the bug When using `.repeat()` on an `IterableDataset`, this error gets thrown. There is [this thread](https://discuss.huggingface.co/t/making-an-infinite-iterabledataset/146192/5) that seems to imply the fix is trivial, but I don't know anything about this codebase, so I'm opening this issue rather than attempting to open a PR. ### Steps to reproduce the bug 1. Create an `IterableDataset`. 2. Call `.repeat(None)` on it. 3. Wrap it in a pytorch `DataLoader` 4. Iterate over it. ### Expected behavior This should work normally. ### Environment info datasets: 3.5.0
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datasets downloads and generates all splits, even though a single split is requested (for dataset with loading script)
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[ "Hi ! there has been some effort on allowing to download only a subset of splits in https://github.com/huggingface/datasets/pull/6832 but no one has been continuing this work so far. This would be a welcomed contribution though\n\nAlso note that loading script are often unoptimized, and we recommend using datasets ...
2025-05-06T14:43:38Z
2025-05-07T14:53:45Z
2025-05-07T14:53:44Z
NONE
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### Describe the bug `datasets` downloads and generates all splits, even though a single split is requested. [This](https://huggingface.co/datasets/jordiae/exebench) is the dataset in question. It uses a loading script. I am not 100% sure that this is a bug, because maybe with loading scripts `datasets` must actually process all the splits? But I thought loading scripts were designed to avoid this. ### Steps to reproduce the bug See [this notebook](https://colab.research.google.com/drive/14kcXp_hgcdj-kIzK0bCG6taE-CLZPVvq?usp=sharing) Or: ```python from datasets import load_dataset dataset = load_dataset('jordiae/exebench', split='test_synth', trust_remote_code=True) ``` ### Expected behavior I expected only the `test_synth` split to be downloaded and processed. ### Environment info - `datasets` version: 3.5.1 - Platform: Linux-6.1.123+-x86_64-with-glibc2.35 - Python version: 3.11.12 - `huggingface_hub` version: 0.30.2 - PyArrow version: 18.1.0 - Pandas version: 2.2.2 - `fsspec` version: 2025.3.0
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Issue with offline mode and partial dataset cached
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[ "It seems the problem comes from builder.py / create_config_id()\n\nOn the first call, when the cache is empty we have\n```\nconfig_kwargs = {'data_files': {'train': ['hf://datasets/uonlp/CulturaX@6a8734bc69fefcbb7735f4f9250f43e4cd7a442e/fr/fr_part_00038.parquet']}}\n```\nleading to config_id beeing 'default-2935e8...
2025-05-04T16:49:37Z
2025-05-13T03:18:43Z
null
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### Describe the bug Hi, a issue related to #4760 here when loading a single file from a dataset, unable to access it in offline mode afterwards ### Steps to reproduce the bug ```python import os # os.environ["HF_HUB_OFFLINE"] = "1" os.environ["HF_TOKEN"] = "xxxxxxxxxxxxxx" import datasets dataset_name = "uonlp/CulturaX" data_files = "fr/fr_part_00038.parquet" ds = datasets.load_dataset(dataset_name, split='train', data_files=data_files) print(f"Dataset loaded : {ds}") ``` Once the file has been cached, I rerun with the HF_HUB_OFFLINE activated an get this error : ``` ValueError: Couldn't find cache for uonlp/CulturaX for config 'default-1e725f978350254e' Available configs in the cache: ['default-2935e8cdcc21c613'] ``` ### Expected behavior Should be able to access the previously cached files ### Environment info - `datasets` version: 3.2.0 - Platform: Linux-5.4.0-215-generic-x86_64-with-glibc2.31 - Python version: 3.12.0 - `huggingface_hub` version: 0.27.0 - PyArrow version: 19.0.0 - Pandas version: 2.2.2 - `fsspec` version: 2024.3.1
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TypeError: Couldn't cast array of type string to null on webdataset format dataset
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[ "seems to get fixed by explicitly adding `dataset_infos.json` like this\n\n```json\n{\n \"default\": {\n \"description\": \"Image dataset with tags and ratings\",\n \"citation\": \"\",\n \"homepage\": \"\",\n \"license\": \"\",\n \"features\": {\n \"image\": {\n \"dtype\": \"image\",\n ...
2025-05-02T15:18:07Z
2025-05-02T15:37:05Z
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### Describe the bug ```python from datasets import load_dataset dataset = load_dataset("animetimm/danbooru-wdtagger-v4-w640-ws-30k") ``` got ``` File "/home/ubuntu/miniconda3/lib/python3.10/site-packages/datasets/arrow_writer.py", line 626, in write_batch arrays.append(pa.array(typed_sequence)) File "pyarrow/array.pxi", line 255, in pyarrow.lib.array File "pyarrow/array.pxi", line 117, in pyarrow.lib._handle_arrow_array_protocol File "/home/ubuntu/miniconda3/lib/python3.10/site-packages/datasets/arrow_writer.py", line 258, in __arrow_array__ out = cast_array_to_feature( File "/home/ubuntu/miniconda3/lib/python3.10/site-packages/datasets/table.py", line 1798, in wrapper return func(array, *args, **kwargs) File "/home/ubuntu/miniconda3/lib/python3.10/site-packages/datasets/table.py", line 2006, in cast_array_to_feature arrays = [ File "/home/ubuntu/miniconda3/lib/python3.10/site-packages/datasets/table.py", line 2007, in <listcomp> _c(array.field(name) if name in array_fields else null_array, subfeature) File "/home/ubuntu/miniconda3/lib/python3.10/site-packages/datasets/table.py", line 1798, in wrapper return func(array, *args, **kwargs) File "/home/ubuntu/miniconda3/lib/python3.10/site-packages/datasets/table.py", line 2066, in cast_array_to_feature casted_array_values = _c(array.values, feature.feature) File "/home/ubuntu/miniconda3/lib/python3.10/site-packages/datasets/table.py", line 1798, in wrapper return func(array, *args, **kwargs) File "/home/ubuntu/miniconda3/lib/python3.10/site-packages/datasets/table.py", line 2103, in cast_array_to_feature return array_cast( File "/home/ubuntu/miniconda3/lib/python3.10/site-packages/datasets/table.py", line 1798, in wrapper return func(array, *args, **kwargs) File "/home/ubuntu/miniconda3/lib/python3.10/site-packages/datasets/table.py", line 1949, in array_cast raise TypeError(f"Couldn't cast array of type {_short_str(array.type)} to {_short_str(pa_type)}") TypeError: Couldn't cast array of type string to null The above exception was the direct cause of the following exception: Traceback (most recent call last): File "<stdin>", line 1, in <module> File "/home/ubuntu/miniconda3/lib/python3.10/site-packages/datasets/load.py", line 2084, in load_dataset builder_instance.download_and_prepare( File "/home/ubuntu/miniconda3/lib/python3.10/site-packages/datasets/builder.py", line 925, in download_and_prepare self._download_and_prepare( File "/home/ubuntu/miniconda3/lib/python3.10/site-packages/datasets/builder.py", line 1649, in _download_and_prepare super()._download_and_prepare( File "/home/ubuntu/miniconda3/lib/python3.10/site-packages/datasets/builder.py", line 1001, in _download_and_prepare self._prepare_split(split_generator, **prepare_split_kwargs) File "/home/ubuntu/miniconda3/lib/python3.10/site-packages/datasets/builder.py", line 1487, in _prepare_split for job_id, done, content in self._prepare_split_single( File "/home/ubuntu/miniconda3/lib/python3.10/site-packages/datasets/builder.py", line 1644, in _prepare_split_single raise DatasetGenerationError("An error occurred while generating the dataset") from e datasets.exceptions.DatasetGenerationError: An error occurred while generating the dataset ``` `datasets==3.5.1` whats wrong its inner json structure is like ```yaml features: - name: "image" dtype: "image" - name: "json.id" dtype: "string" - name: "json.width" dtype: "int32" - name: "json.height" dtype: "int32" - name: "json.rating" sequence: dtype: "string" - name: "json.general_tags" sequence: dtype: "string" - name: "json.character_tags" sequence: dtype: "string" ``` i'm 100% sure all the jsons satisfies the abovementioned format. ### Steps to reproduce the bug ```python from datasets import load_dataset dataset = load_dataset("animetimm/danbooru-wdtagger-v4-w640-ws-30k") ``` ### Expected behavior load the dataset successfully, with the abovementioned json format and webp images ### Environment info Copy-and-paste the text below in your GitHub issue. - `datasets` version: 3.5.1 - Platform: Linux-6.8.0-52-generic-x86_64-with-glibc2.35 - Python version: 3.10.16 - `huggingface_hub` version: 0.30.2 - PyArrow version: 20.0.0 - Pandas version: 2.2.3 - `fsspec` version: 2025.3.0
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Python 3.13t (free threads) Compat
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[ "Update: `datasets` use `aiohttp` for data streaming and from what I understand data streaming is useful for large datasets that do not fit in memory and/or multi-modal datasets like image/audio where you only what the actual binary bits to fed in as needed. \n\nHowever, there are also many cases where aiohttp will...
2025-05-02T09:20:09Z
2025-05-12T15:11:32Z
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### Describe the bug Cannot install `datasets` under `python 3.13t` due to dependency on `aiohttp` and aiohttp cannot be built for free-threading python. The `free threading` support issue in `aiothttp` is active since August 2024! Ouch. https://github.com/aio-libs/aiohttp/issues/8796#issue-2475941784 `pip install dataset` ```bash (vm313t) root@gpu-base:~/GPTQModel# pip install datasets WARNING: Retrying (Retry(total=4, connect=None, read=None, redirect=None, status=None)) after connection broken by 'ReadTimeoutError("HTTPSConnectionPool(host='pypi.org', port=443): Read timed out. (read timeout=15)")': /simple/datasets/ Collecting datasets Using cached datasets-3.5.1-py3-none-any.whl.metadata (19 kB) Requirement already satisfied: filelock in /root/vm313t/lib/python3.13t/site-packages (from datasets) (3.18.0) Requirement already satisfied: numpy>=1.17 in /root/vm313t/lib/python3.13t/site-packages (from datasets) (2.2.5) Collecting pyarrow>=15.0.0 (from datasets) Using cached pyarrow-20.0.0-cp313-cp313t-manylinux_2_28_x86_64.whl.metadata (3.3 kB) Collecting dill<0.3.9,>=0.3.0 (from datasets) Using cached dill-0.3.8-py3-none-any.whl.metadata (10 kB) Collecting pandas (from datasets) Using cached pandas-2.2.3-cp313-cp313t-manylinux_2_17_x86_64.manylinux2014_x86_64.whl.metadata (89 kB) Requirement already satisfied: requests>=2.32.2 in /root/vm313t/lib/python3.13t/site-packages (from datasets) (2.32.3) Requirement already satisfied: tqdm>=4.66.3 in /root/vm313t/lib/python3.13t/site-packages (from datasets) (4.67.1) Collecting xxhash (from datasets) Using cached xxhash-3.5.0-cp313-cp313t-linux_x86_64.whl Collecting multiprocess<0.70.17 (from datasets) Using cached multiprocess-0.70.16-py312-none-any.whl.metadata (7.2 kB) Collecting fsspec<=2025.3.0,>=2023.1.0 (from fsspec[http]<=2025.3.0,>=2023.1.0->datasets) Using cached fsspec-2025.3.0-py3-none-any.whl.metadata (11 kB) Collecting aiohttp (from datasets) Using cached aiohttp-3.11.18.tar.gz (7.7 MB) Installing build dependencies ... done Getting requirements to build wheel ... done Preparing metadata (pyproject.toml) ... done Requirement already satisfied: huggingface-hub>=0.24.0 in /root/vm313t/lib/python3.13t/site-packages (from datasets) (0.30.2) Requirement already satisfied: packaging in /root/vm313t/lib/python3.13t/site-packages (from datasets) (25.0) Requirement already satisfied: pyyaml>=5.1 in /root/vm313t/lib/python3.13t/site-packages (from datasets) (6.0.2) Collecting aiohappyeyeballs>=2.3.0 (from aiohttp->datasets) Using cached aiohappyeyeballs-2.6.1-py3-none-any.whl.metadata (5.9 kB) Collecting aiosignal>=1.1.2 (from aiohttp->datasets) Using cached aiosignal-1.3.2-py2.py3-none-any.whl.metadata (3.8 kB) Collecting attrs>=17.3.0 (from aiohttp->datasets) Using cached attrs-25.3.0-py3-none-any.whl.metadata (10 kB) Collecting frozenlist>=1.1.1 (from aiohttp->datasets) Using cached frozenlist-1.6.0-cp313-cp313t-manylinux_2_5_x86_64.manylinux1_x86_64.manylinux_2_17_x86_64.manylinux2014_x86_64.whl.metadata (16 kB) Collecting multidict<7.0,>=4.5 (from aiohttp->datasets) Using cached multidict-6.4.3-cp313-cp313t-manylinux_2_17_x86_64.manylinux2014_x86_64.whl.metadata (5.3 kB) Collecting propcache>=0.2.0 (from aiohttp->datasets) Using cached propcache-0.3.1-cp313-cp313t-manylinux_2_17_x86_64.manylinux2014_x86_64.whl.metadata (10 kB) Collecting yarl<2.0,>=1.17.0 (from aiohttp->datasets) Using cached yarl-1.20.0-cp313-cp313t-manylinux_2_17_x86_64.manylinux2014_x86_64.whl.metadata (72 kB) Requirement already satisfied: idna>=2.0 in /root/vm313t/lib/python3.13t/site-packages (from yarl<2.0,>=1.17.0->aiohttp->datasets) (3.10) Requirement already satisfied: typing-extensions>=3.7.4.3 in /root/vm313t/lib/python3.13t/site-packages (from huggingface-hub>=0.24.0->datasets) (4.13.2) Requirement already satisfied: charset-normalizer<4,>=2 in /root/vm313t/lib/python3.13t/site-packages (from requests>=2.32.2->datasets) (3.4.1) Requirement already satisfied: urllib3<3,>=1.21.1 in /root/vm313t/lib/python3.13t/site-packages (from requests>=2.32.2->datasets) (2.4.0) Requirement already satisfied: certifi>=2017.4.17 in /root/vm313t/lib/python3.13t/site-packages (from requests>=2.32.2->datasets) (2025.4.26) Collecting python-dateutil>=2.8.2 (from pandas->datasets) Using cached python_dateutil-2.9.0.post0-py2.py3-none-any.whl.metadata (8.4 kB) Collecting pytz>=2020.1 (from pandas->datasets) Using cached pytz-2025.2-py2.py3-none-any.whl.metadata (22 kB) Collecting tzdata>=2022.7 (from pandas->datasets) Using cached tzdata-2025.2-py2.py3-none-any.whl.metadata (1.4 kB) Collecting six>=1.5 (from python-dateutil>=2.8.2->pandas->datasets) Using cached six-1.17.0-py2.py3-none-any.whl.metadata (1.7 kB) Using cached datasets-3.5.1-py3-none-any.whl (491 kB) Using cached dill-0.3.8-py3-none-any.whl (116 kB) Using cached fsspec-2025.3.0-py3-none-any.whl (193 kB) Using cached multiprocess-0.70.16-py312-none-any.whl (146 kB) Using cached multidict-6.4.3-cp313-cp313t-manylinux_2_17_x86_64.manylinux2014_x86_64.whl (220 kB) Using cached yarl-1.20.0-cp313-cp313t-manylinux_2_17_x86_64.manylinux2014_x86_64.whl (404 kB) Using cached aiohappyeyeballs-2.6.1-py3-none-any.whl (15 kB) Using cached aiosignal-1.3.2-py2.py3-none-any.whl (7.6 kB) Using cached attrs-25.3.0-py3-none-any.whl (63 kB) Using cached frozenlist-1.6.0-cp313-cp313t-manylinux_2_5_x86_64.manylinux1_x86_64.manylinux_2_17_x86_64.manylinux2014_x86_64.whl (385 kB) Using cached propcache-0.3.1-cp313-cp313t-manylinux_2_17_x86_64.manylinux2014_x86_64.whl (282 kB) Using cached pyarrow-20.0.0-cp313-cp313t-manylinux_2_28_x86_64.whl (42.2 MB) Using cached pandas-2.2.3-cp313-cp313t-manylinux_2_17_x86_64.manylinux2014_x86_64.whl (11.9 MB) Using cached python_dateutil-2.9.0.post0-py2.py3-none-any.whl (229 kB) Using cached pytz-2025.2-py2.py3-none-any.whl (509 kB) Using cached six-1.17.0-py2.py3-none-any.whl (11 kB) Using cached tzdata-2025.2-py2.py3-none-any.whl (347 kB) Building wheels for collected packages: aiohttp Building wheel for aiohttp (pyproject.toml) ... error error: subprocess-exited-with-error × Building wheel for aiohttp (pyproject.toml) did not run successfully. │ exit code: 1 ╰─> [156 lines of output] ********************* * Accelerated build * ********************* /tmp/pip-build-env-wjqi8_7w/overlay/lib/python3.13t/site-packages/setuptools/dist.py:759: SetuptoolsDeprecationWarning: License classifiers are deprecated. !! ******************************************************************************** Please consider removing the following classifiers in favor of a SPDX license expression: License :: OSI Approved :: Apache Software License See https://packaging.python.org/en/latest/guides/writing-pyproject-toml/#license for details. ******************************************************************************** !! self._finalize_license_expression() running bdist_wheel running build running build_py creating build/lib.linux-x86_64-cpython-313t/aiohttp copying aiohttp/typedefs.py -> build/lib.linux-x86_64-cpython-313t/aiohttp copying aiohttp/http_parser.py -> build/lib.linux-x86_64-cpython-313t/aiohttp copying aiohttp/client_reqrep.py -> build/lib.linux-x86_64-cpython-313t/aiohttp copying aiohttp/client_ws.py -> build/lib.linux-x86_64-cpython-313t/aiohttp copying aiohttp/web_app.py -> build/lib.linux-x86_64-cpython-313t/aiohttp copying aiohttp/http_websocket.py -> build/lib.linux-x86_64-cpython-313t/aiohttp copying aiohttp/resolver.py -> build/lib.linux-x86_64-cpython-313t/aiohttp copying aiohttp/tracing.py -> build/lib.linux-x86_64-cpython-313t/aiohttp copying aiohttp/http_writer.py -> build/lib.linux-x86_64-cpython-313t/aiohttp copying aiohttp/http_exceptions.py -> build/lib.linux-x86_64-cpython-313t/aiohttp copying aiohttp/log.py -> build/lib.linux-x86_64-cpython-313t/aiohttp copying aiohttp/__init__.py -> build/lib.linux-x86_64-cpython-313t/aiohttp copying aiohttp/web_runner.py -> build/lib.linux-x86_64-cpython-313t/aiohttp copying aiohttp/worker.py -> build/lib.linux-x86_64-cpython-313t/aiohttp copying aiohttp/connector.py -> build/lib.linux-x86_64-cpython-313t/aiohttp copying aiohttp/client_exceptions.py -> build/lib.linux-x86_64-cpython-313t/aiohttp copying aiohttp/web_middlewares.py -> build/lib.linux-x86_64-cpython-313t/aiohttp copying aiohttp/web.py -> build/lib.linux-x86_64-cpython-313t/aiohttp copying aiohttp/tcp_helpers.py -> build/lib.linux-x86_64-cpython-313t/aiohttp copying aiohttp/web_response.py -> build/lib.linux-x86_64-cpython-313t/aiohttp copying aiohttp/web_server.py -> build/lib.linux-x86_64-cpython-313t/aiohttp copying aiohttp/web_request.py -> build/lib.linux-x86_64-cpython-313t/aiohttp copying aiohttp/web_urldispatcher.py -> build/lib.linux-x86_64-cpython-313t/aiohttp copying aiohttp/web_exceptions.py -> build/lib.linux-x86_64-cpython-313t/aiohttp copying aiohttp/formdata.py -> build/lib.linux-x86_64-cpython-313t/aiohttp copying aiohttp/streams.py -> build/lib.linux-x86_64-cpython-313t/aiohttp copying aiohttp/multipart.py -> build/lib.linux-x86_64-cpython-313t/aiohttp copying aiohttp/web_routedef.py -> build/lib.linux-x86_64-cpython-313t/aiohttp copying aiohttp/web_ws.py -> build/lib.linux-x86_64-cpython-313t/aiohttp copying aiohttp/payload.py -> build/lib.linux-x86_64-cpython-313t/aiohttp copying aiohttp/client_proto.py -> build/lib.linux-x86_64-cpython-313t/aiohttp copying aiohttp/web_log.py -> build/lib.linux-x86_64-cpython-313t/aiohttp copying aiohttp/base_protocol.py -> build/lib.linux-x86_64-cpython-313t/aiohttp copying aiohttp/payload_streamer.py -> build/lib.linux-x86_64-cpython-313t/aiohttp copying aiohttp/http.py -> build/lib.linux-x86_64-cpython-313t/aiohttp copying aiohttp/web_fileresponse.py -> build/lib.linux-x86_64-cpython-313t/aiohttp copying aiohttp/test_utils.py -> build/lib.linux-x86_64-cpython-313t/aiohttp copying aiohttp/client.py -> build/lib.linux-x86_64-cpython-313t/aiohttp copying aiohttp/cookiejar.py -> build/lib.linux-x86_64-cpython-313t/aiohttp copying aiohttp/compression_utils.py -> build/lib.linux-x86_64-cpython-313t/aiohttp copying aiohttp/hdrs.py -> build/lib.linux-x86_64-cpython-313t/aiohttp copying aiohttp/helpers.py -> build/lib.linux-x86_64-cpython-313t/aiohttp copying aiohttp/pytest_plugin.py -> build/lib.linux-x86_64-cpython-313t/aiohttp copying aiohttp/web_protocol.py -> build/lib.linux-x86_64-cpython-313t/aiohttp copying aiohttp/abc.py -> build/lib.linux-x86_64-cpython-313t/aiohttp creating build/lib.linux-x86_64-cpython-313t/aiohttp/_websocket copying aiohttp/_websocket/__init__.py -> build/lib.linux-x86_64-cpython-313t/aiohttp/_websocket copying aiohttp/_websocket/writer.py -> build/lib.linux-x86_64-cpython-313t/aiohttp/_websocket copying aiohttp/_websocket/models.py -> build/lib.linux-x86_64-cpython-313t/aiohttp/_websocket copying aiohttp/_websocket/reader.py -> build/lib.linux-x86_64-cpython-313t/aiohttp/_websocket copying aiohttp/_websocket/reader_c.py -> build/lib.linux-x86_64-cpython-313t/aiohttp/_websocket copying aiohttp/_websocket/helpers.py -> build/lib.linux-x86_64-cpython-313t/aiohttp/_websocket copying aiohttp/_websocket/reader_py.py -> build/lib.linux-x86_64-cpython-313t/aiohttp/_websocket running egg_info writing aiohttp.egg-info/PKG-INFO writing dependency_links to aiohttp.egg-info/dependency_links.txt writing requirements to aiohttp.egg-info/requires.txt writing top-level names to aiohttp.egg-info/top_level.txt reading manifest file 'aiohttp.egg-info/SOURCES.txt' reading manifest template 'MANIFEST.in' warning: no files found matching 'aiohttp' anywhere in distribution warning: no files found matching '*.pyi' anywhere in distribution warning: no previously-included files matching '*.pyc' found anywhere in distribution warning: no previously-included files matching '*.pyd' found anywhere in distribution warning: no previously-included files matching '*.so' found anywhere in distribution warning: no previously-included files matching '*.lib' found anywhere in distribution warning: no previously-included files matching '*.dll' found anywhere in distribution warning: no previously-included files matching '*.a' found anywhere in distribution warning: no previously-included files matching '*.obj' found anywhere in distribution warning: no previously-included files found matching 'aiohttp/*.html' no previously-included directories found matching 'docs/_build' adding license file 'LICENSE.txt' writing manifest file 'aiohttp.egg-info/SOURCES.txt' copying aiohttp/_cparser.pxd -> build/lib.linux-x86_64-cpython-313t/aiohttp copying aiohttp/_find_header.pxd -> build/lib.linux-x86_64-cpython-313t/aiohttp copying aiohttp/_headers.pxi -> build/lib.linux-x86_64-cpython-313t/aiohttp copying aiohttp/_http_parser.pyx -> build/lib.linux-x86_64-cpython-313t/aiohttp copying aiohttp/_http_writer.pyx -> build/lib.linux-x86_64-cpython-313t/aiohttp copying aiohttp/py.typed -> build/lib.linux-x86_64-cpython-313t/aiohttp creating build/lib.linux-x86_64-cpython-313t/aiohttp/.hash copying aiohttp/.hash/_cparser.pxd.hash -> build/lib.linux-x86_64-cpython-313t/aiohttp/.hash copying aiohttp/.hash/_find_header.pxd.hash -> build/lib.linux-x86_64-cpython-313t/aiohttp/.hash copying aiohttp/.hash/_http_parser.pyx.hash -> build/lib.linux-x86_64-cpython-313t/aiohttp/.hash copying aiohttp/.hash/_http_writer.pyx.hash -> build/lib.linux-x86_64-cpython-313t/aiohttp/.hash copying aiohttp/.hash/hdrs.py.hash -> build/lib.linux-x86_64-cpython-313t/aiohttp/.hash copying aiohttp/_websocket/mask.pxd -> build/lib.linux-x86_64-cpython-313t/aiohttp/_websocket copying aiohttp/_websocket/mask.pyx -> build/lib.linux-x86_64-cpython-313t/aiohttp/_websocket copying aiohttp/_websocket/reader_c.pxd -> build/lib.linux-x86_64-cpython-313t/aiohttp/_websocket creating build/lib.linux-x86_64-cpython-313t/aiohttp/_websocket/.hash copying aiohttp/_websocket/.hash/mask.pxd.hash -> build/lib.linux-x86_64-cpython-313t/aiohttp/_websocket/.hash copying aiohttp/_websocket/.hash/mask.pyx.hash -> build/lib.linux-x86_64-cpython-313t/aiohttp/_websocket/.hash copying aiohttp/_websocket/.hash/reader_c.pxd.hash -> build/lib.linux-x86_64-cpython-313t/aiohttp/_websocket/.hash running build_ext building 'aiohttp._websocket.mask' extension creating build/temp.linux-x86_64-cpython-313t/aiohttp/_websocket x86_64-linux-gnu-gcc -fno-strict-overflow -Wsign-compare -DNDEBUG -g -O2 -Wall -g -fno-omit-frame-pointer -mno-omit-leaf-frame-pointer -fstack-protector-strong -fstack-clash-protection -Wformat -Werror=format-security -fcf-protection -fPIC -I/root/vm313t/include -I/usr/include/python3.13t -c aiohttp/_websocket/mask.c -o build/temp.linux-x86_64-cpython-313t/aiohttp/_websocket/mask.o aiohttp/_websocket/mask.c:1864:80: error: unknown type name ‘__pyx_vectorcallfunc’; did you mean ‘vectorcallfunc’? 1864 | static CYTHON_INLINE PyObject *__Pyx_PyVectorcall_FastCallDict(PyObject *func, __pyx_vectorcallfunc vc, PyObject *const *args, size_t nargs, PyObject *kw); | ^~~~~~~~~~~~~~~~~~~~ | vectorcallfunc aiohttp/_websocket/mask.c: In function ‘__pyx_f_7aiohttp_10_websocket_4mask__websocket_mask_cython’: aiohttp/_websocket/mask.c:2905:3: warning: ‘Py_OptimizeFlag’ is deprecated [-Wdeprecated-declarations] 2905 | if (unlikely(__pyx_assertions_enabled())) { | ^~ In file included from /usr/include/python3.13t/Python.h:76, from aiohttp/_websocket/mask.c:16: /usr/include/python3.13t/cpython/pydebug.h:13:37: note: declared here 13 | Py_DEPRECATED(3.12) PyAPI_DATA(int) Py_OptimizeFlag; | ^~~~~~~~~~~~~~~ aiohttp/_websocket/mask.c: At top level: aiohttp/_websocket/mask.c:4846:69: error: unknown type name ‘__pyx_vectorcallfunc’; did you mean ‘vectorcallfunc’? 4846 | static PyObject *__Pyx_PyVectorcall_FastCallDict_kw(PyObject *func, __pyx_vectorcallfunc vc, PyObject *const *args, size_t nargs, PyObject *kw) | ^~~~~~~~~~~~~~~~~~~~ | vectorcallfunc aiohttp/_websocket/mask.c:4891:80: error: unknown type name ‘__pyx_vectorcallfunc’; did you mean ‘vectorcallfunc’? 4891 | static CYTHON_INLINE PyObject *__Pyx_PyVectorcall_FastCallDict(PyObject *func, __pyx_vectorcallfunc vc, PyObject *const *args, size_t nargs, PyObject *kw) | ^~~~~~~~~~~~~~~~~~~~ | vectorcallfunc aiohttp/_websocket/mask.c: In function ‘__Pyx_CyFunction_CallAsMethod’: aiohttp/_websocket/mask.c:5580:6: error: unknown type name ‘__pyx_vectorcallfunc’; did you mean ‘vectorcallfunc’? 5580 | __pyx_vectorcallfunc vc = __Pyx_CyFunction_func_vectorcall(cyfunc); | ^~~~~~~~~~~~~~~~~~~~ | vectorcallfunc aiohttp/_websocket/mask.c:1954:45: warning: initialization of ‘int’ from ‘vectorcallfunc’ {aka ‘struct _object * (*)(struct _object *, struct _object * const*, long unsigned int, struct _object *)’} makes integer from pointer without a cast [-Wint-conversion] 1954 | #define __Pyx_CyFunction_func_vectorcall(f) (((PyCFunctionObject*)f)->vectorcall) | ^ aiohttp/_websocket/mask.c:5580:32: note: in expansion of macro ‘__Pyx_CyFunction_func_vectorcall’ 5580 | __pyx_vectorcallfunc vc = __Pyx_CyFunction_func_vectorcall(cyfunc); | ^~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~ aiohttp/_websocket/mask.c:5583:16: warning: implicit declaration of function ‘__Pyx_PyVectorcall_FastCallDict’ [-Wimplicit-function-declaration] 5583 | return __Pyx_PyVectorcall_FastCallDict(func, vc, &PyTuple_GET_ITEM(args, 0), (size_t)PyTuple_GET_SIZE(args), kw); | ^~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~ aiohttp/_websocket/mask.c:5583:16: warning: returning ‘int’ from a function with return type ‘PyObject *’ {aka ‘struct _object *’} makes pointer from integer without a cast [-Wint-conversion] 5583 | return __Pyx_PyVectorcall_FastCallDict(func, vc, &PyTuple_GET_ITEM(args, 0), (size_t)PyTuple_GET_SIZE(args), kw); | ^~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~ error: command '/usr/bin/x86_64-linux-gnu-gcc' failed with exit code 1 [end of output] note: This error originates from a subprocess, and is likely not a problem with pip. ERROR: Failed building wheel for aiohttp Failed to build aiohttp ERROR: Failed to build installable wheels for some pyproject.toml based projects (aiohttp) ``` ### Steps to reproduce the bug See above ### Expected behavior Install ### Environment info Ubuntu 24.04
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3,034,018,298
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7,546
Large memory use when loading large datasets to a ZFS pool
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[ "Hi ! datasets are memory mapped from disk, so they don't fill out your RAM. Not sure what's the source of your memory issue.\n\nWhat kind of system are you using ? and what kind of disk ?", "Well, the fact of the matter is that my RAM is getting filled out by running the given example, as shown in [this video](h...
2025-05-01T14:43:47Z
2025-05-13T13:30:09Z
2025-05-13T13:29:53Z
NONE
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### Describe the bug When I load large parquet based datasets from the hub like `MLCommons/peoples_speech` using `load_dataset`, all my memory (500GB) is used and isn't released after loading, meaning that the process is terminated by the kernel if I try to load an additional dataset. This makes it impossible to train models using multiple large datasets. ### Steps to reproduce the bug `uv run --with datasets==3.5.1 python` ```python from datasets import load_dataset load_dataset('MLCommons/peoples_speech', 'clean') load_dataset('mozilla-foundation/common_voice_17_0', 'en') ``` ### Expected behavior I would expect that a lot less than 500GB of RAM would be required to load the dataset, or at least that the RAM usage would be cleared as soon as the dataset is loaded (and thus reside as a memory mapped file) such that other datasets can be loaded. ### Environment info I am currently using the latest datasets==3.5.1 but I have had the same problem with multiple other versions.
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7,545
Networked Pull Through Cache
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2025-04-30T15:16:33Z
2025-04-30T15:16:33Z
null
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### Feature request Introduce a HF_DATASET_CACHE_NETWORK_LOCATION configuration (e.g. an environment variable) together with a companion network cache service. Enable a three-tier cache lookup for datasets: 1. Local on-disk cache 2. Configurable network cache proxy 3. Official Hugging Face Hub ### Motivation - Distributed training & ephemeral jobs: In high-performance or containerized clusters, relying solely on a local disk cache either becomes a streaming bottleneck or incurs a heavy cold-start penalty as each job must re-download datasets. - Traffic & cost reduction: A pull-through network cache lets multiple consumers share a common cache layer, reducing duplicate downloads from the Hub and lowering egress costs. - Better streaming adoption: By offloading repeat dataset pulls to a locally managed cache proxy, streaming workloads can achieve higher throughput and more predictable latency. - Proven pattern: Similar proxy-cache solutions (e.g. Harbor’s Proxy Cache for Docker images) have demonstrated reliability and performance at scale: https://goharbor.io/docs/2.1.0/administration/configure-proxy-cache/ ### Your contribution I’m happy to draft the initial PR for adding HF_DATASET_CACHE_NETWORK_LOCATION support in datasets and sketch out a minimal cache-service prototype. I have limited bandwidth so I would be looking for collaborators if anyone else is interested.
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The memory-disk mapping failure issue of the map function(resolved, but there are some suggestions.)
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2025-04-29T03:04:59Z
2025-04-30T02:22:17Z
2025-04-30T02:22:17Z
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### Describe the bug ## bug When the map function processes a large dataset, it temporarily stores the data in a cache file on the disk. After the data is stored, the memory occupied by it is released. Therefore, when using the map function to process a large-scale dataset, only a dataset space of the size of `writer_batch_size` will be occupied in memory. However, I found that the map function does not actually reduce memory usage when I used it. At first, I thought there was a bug in the program, causing a memory leak—meaning the memory was not released after the data was stored in the cache. But later, I used a Linux command to check for recently modified files during program execution and found that no new files were created or modified. This indicates that the program did not store the dataset in the disk cache. ## bug solved After modifying the parameters of the map function multiple times, I discovered the `cache_file_name` parameter. By changing it, the cache file can be stored in the specified directory. After making this change, I noticed that the cache file appeared. Initially, I found this quite incredible, but then I wondered if the cache file might have failed to be stored in a certain folder. This could be related to the fact that I don't have root privileges. So, I delved into the source code of the map function to find out where the cache file would be stored by default. Eventually, I found the function `def _get_cache_file_path(self, fingerprint):`, which automatically generates the storage path for the cache file. The output was as follows: `/tmp/hf_datasets-j5qco9ug/cache-f2830487643b9cc2.arrow`. My hypothesis was confirmed: the lack of root privileges indeed prevented the cache file from being stored, which in turn prevented the release of memory. Therefore, changing the storage location to a folder where I have write access resolved the issue. ### Steps to reproduce the bug my code `train_data = train_data.map(process_fun, remove_columns=['image_name', 'question_type', 'concern', 'question', 'candidate_answers', 'answer'])` ### Expected behavior Although my bug has been resolved, it still took me nearly a week to search for relevant information and debug the program. However, if a warning or error message about insufficient cache file write permissions could be provided during program execution, I might have been able to identify the cause more quickly. Therefore, I hope this aspect can be improved. I am documenting this bug here so that friends who encounter similar issues can solve their problems in a timely manner. ### Environment info python: 3.10.15 datasets: 3.5.0
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`IterableDataset` drops samples when resuming from a checkpoint
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[ "Thanks for reporting ! I fixed the issue using RebatchedArrowExamplesIterable before the formatted iterable" ]
2025-04-27T19:34:49Z
2025-05-06T14:04:05Z
2025-05-06T14:03:42Z
COLLABORATOR
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When resuming from a checkpoint, `IterableDataset` will drop samples if `num_shards % world_size == 0` and the underlying example supports `iter_arrow` and needs to be formatted. In that case, the `FormattedExamplesIterable` fetches a batch of samples from the child iterable's `iter_arrow` and yields them one by one (after formatting). However, the child increments the `shard_example_idx` counter (in its `iter_arrow`) before returning the batch for the whole batch size, which leads to a portion of samples being skipped if the iteration (of the parent iterable) is stopped mid-batch. Perhaps one way to avoid this would be by signalling the child iterable which samples (within the chunk) are processed by the parent and which are not, so that it can adjust the `shard_example_idx` counter accordingly. This would also mean the chunk needs to be sliced when resuming, but this is straightforward to implement. The following is a minimal reproducer of the bug: ```python from datasets import Dataset from datasets.distributed import split_dataset_by_node ds = Dataset.from_dict({"n": list(range(24))}) ds = ds.to_iterable_dataset(num_shards=4) world_size = 4 rank = 0 ds_rank = split_dataset_by_node(ds, rank, world_size) it = iter(ds_rank) examples = [] for idx, example in enumerate(it): examples.append(example) if idx == 2: state_dict = ds_rank.state_dict() break ds_rank.load_state_dict(state_dict) it_resumed = iter(ds_rank) examples_resumed = examples[:] for example in it: examples.append(example) for example in it_resumed: examples_resumed.append(example) print("ORIGINAL ITER EXAMPLES:", examples) print("RESUMED ITER EXAMPLES:", examples_resumed) ```
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`datasets.map(..., num_proc=4)` multi-processing fails
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[ "related: https://github.com/huggingface/datasets/issues/7510\n\nwe need to do more tests to see if latest `dill` is deterministic" ]
2025-04-25T01:53:47Z
2025-05-06T13:12:08Z
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The following code fails in python 3.11+ ```python tokenized_datasets = datasets.map(tokenize_function, batched=True, num_proc=4, remove_columns=["text"]) ``` Error log: ```bash Traceback (most recent call last): File "/usr/local/lib/python3.12/dist-packages/multiprocess/process.py", line 315, in _bootstrap self.run() File "/usr/local/lib/python3.12/dist-packages/multiprocess/process.py", line 108, in run self._target(*self._args, **self._kwargs) File "/usr/local/lib/python3.12/dist-packages/multiprocess/pool.py", line 114, in worker task = get() ^^^^^ File "/usr/local/lib/python3.12/dist-packages/multiprocess/queues.py", line 371, in get return _ForkingPickler.loads(res) ^^^^^^^^^^^^^^^^^^^^^^^^^^ File "/usr/local/lib/python3.12/dist-packages/dill/_dill.py", line 327, in loads return load(file, ignore, **kwds) ^^^^^^^^^^^^^^^^^^^^^^^^^^ File "/usr/local/lib/python3.12/dist-packages/dill/_dill.py", line 313, in load return Unpickler(file, ignore=ignore, **kwds).load() ^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^ File "/usr/local/lib/python3.12/dist-packages/dill/_dill.py", line 525, in load obj = StockUnpickler.load(self) ^^^^^^^^^^^^^^^^^^^^^^^^^ File "/usr/local/lib/python3.12/dist-packages/dill/_dill.py", line 659, in _create_code if len(args) == 16: return CodeType(*args) ^^^^^^^^^^^^^^^ TypeError: code() argument 13 must be str, not int ``` After upgrading dill to the latest 0.4.0 with "pip install --upgrade dill", it can pass. So it seems that there is a compatibility issue between dill 0.3.4 and python 3.11+, because python 3.10 works fine. Is the dill deterministic issue mentioned in https://github.com/huggingface/datasets/blob/main/setup.py#L117) still valid? Any plan to unpin?
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[Errno 13] Permission denied: on `.incomplete` file
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[ "It must be an issue with umask being used by multiple threads indeed. Maybe we can try to make a thread safe function to apply the umask (using filelock for example)", "> It must be an issue with umask being used by multiple threads indeed. Maybe we can try to make a thread safe function to apply the umask (usin...
2025-04-24T20:52:45Z
2025-05-06T13:05:01Z
2025-05-06T13:05:01Z
CONTRIBUTOR
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### Describe the bug When downloading a dataset, we frequently hit the below Permission Denied error. This looks to happen (at least) across datasets in HF, S3, and GCS. It looks like the `temp_file` being passed [here](https://github.com/huggingface/datasets/blob/main/src/datasets/utils/file_utils.py#L412) can sometimes be created with `000` permissions leading to the permission denied error (the user running the code is still the owner of the file). Deleting that particular file and re-running the code with 0 changes will usually succeed. Is there some race condition happening with the [umask](https://github.com/huggingface/datasets/blob/main/src/datasets/utils/file_utils.py#L416), which is process global, and the [file creation](https://github.com/huggingface/datasets/blob/main/src/datasets/utils/file_utils.py#L404)? ``` _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ .venv/lib/python3.12/site-packages/datasets/load.py:2084: in load_dataset builder_instance.download_and_prepare( .venv/lib/python3.12/site-packages/datasets/builder.py:925: in download_and_prepare self._download_and_prepare( .venv/lib/python3.12/site-packages/datasets/builder.py:1649: in _download_and_prepare super()._download_and_prepare( .venv/lib/python3.12/site-packages/datasets/builder.py:979: in _download_and_prepare split_generators = self._split_generators(dl_manager, **split_generators_kwargs) .venv/lib/python3.12/site-packages/datasets/packaged_modules/folder_based_builder/folder_based_builder.py:120: in _split_generators downloaded_files = dl_manager.download(files) .venv/lib/python3.12/site-packages/datasets/download/download_manager.py:159: in download downloaded_path_or_paths = map_nested( .venv/lib/python3.12/site-packages/datasets/utils/py_utils.py:514: in map_nested _single_map_nested((function, obj, batched, batch_size, types, None, True, None)) .venv/lib/python3.12/site-packages/datasets/utils/py_utils.py:382: in _single_map_nested return [mapped_item for batch in iter_batched(data_struct, batch_size) for mapped_item in function(batch)] .venv/lib/python3.12/site-packages/datasets/download/download_manager.py:206: in _download_batched return thread_map( .venv/lib/python3.12/site-packages/tqdm/contrib/concurrent.py:69: in thread_map return _executor_map(ThreadPoolExecutor, fn, *iterables, **tqdm_kwargs) .venv/lib/python3.12/site-packages/tqdm/contrib/concurrent.py:51: in _executor_map return list(tqdm_class(ex.map(fn, *iterables, chunksize=chunksize), **kwargs)) .venv/lib/python3.12/site-packages/tqdm/std.py:1181: in __iter__ for obj in iterable: ../../../_tool/Python/3.12.10/x64/lib/python3.12/concurrent/futures/_base.py:619: in result_iterator yield _result_or_cancel(fs.pop()) ../../../_tool/Python/3.12.10/x64/lib/python3.12/concurrent/futures/_base.py:317: in _result_or_cancel return fut.result(timeout) ../../../_tool/Python/3.12.10/x64/lib/python3.12/concurrent/futures/_base.py:449: in result return self.__get_result() ../../../_tool/Python/3.12.10/x64/lib/python3.12/concurrent/futures/_base.py:401: in __get_result raise self._exception ../../../_tool/Python/3.12.10/x64/lib/python3.12/concurrent/futures/thread.py:59: in run result = self.fn(*self.args, **self.kwargs) .venv/lib/python3.12/site-packages/datasets/download/download_manager.py:229: in _download_single out = cached_path(url_or_filename, download_config=download_config) .venv/lib/python3.12/site-packages/datasets/utils/file_utils.py:206: in cached_path output_path = get_from_cache( .venv/lib/python3.12/site-packages/datasets/utils/file_utils.py:412: in get_from_cache fsspec_get(url, temp_file, storage_options=storage_options, desc=download_desc, disable_tqdm=disable_tqdm) .venv/lib/python3.12/site-packages/datasets/utils/file_utils.py:331: in fsspec_get fs.get_file(path, temp_file.name, callback=callback) .venv/lib/python3.12/site-packages/fsspec/asyn.py:118: in wrapper return sync(self.loop, func, *args, **kwargs) .venv/lib/python3.12/site-packages/fsspec/asyn.py:103: in sync raise return_result .venv/lib/python3.12/site-packages/fsspec/asyn.py:56: in _runner result[0] = await coro _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ self = <s3fs.core.S3FileSystem object at 0x7f27c18b2e70> rpath = '<my-bucket>/<my-prefix>/img_1.jpg' lpath = '/home/runner/_work/_temp/hf_cache/downloads/6c97983efa4e24e534557724655df8247a0bd04326cdfc4a95b638c11e78222d.incomplete' callback = <datasets.utils.file_utils.TqdmCallback object at 0x7f27c00cdbe0> version_id = None, kwargs = {} _open_file = <function S3FileSystem._get_file.<locals>._open_file at 0x7f27628d1120> body = <StreamingBody at 0x7f276344fa80 for ClientResponse at 0x7f27c015fce0> content_length = 521923, failed_reads = 0, bytes_read = 0 async def _get_file( self, rpath, lpath, callback=_DEFAULT_CALLBACK, version_id=None, **kwargs ): if os.path.isdir(lpath): return bucket, key, vers = self.split_path(rpath) async def _open_file(range: int): kw = self.req_kw.copy() if range: kw["Range"] = f"bytes={range}-" resp = await self._call_s3( "get_object", Bucket=bucket, Key=key, **version_id_kw(version_id or vers), **kw, ) return resp["Body"], resp.get("ContentLength", None) body, content_length = await _open_file(range=0) callback.set_size(content_length) failed_reads = 0 bytes_read = 0 try: > with open(lpath, "wb") as f0: E PermissionError: [Errno 13] Permission denied: '/home/runner/_work/_temp/hf_cache/downloads/6c97983efa4e24e534557724655df8247a0bd04326cdfc4a95b638c11e78222d.incomplete' .venv/lib/python3.12/site-packages/s3fs/core.py:1355: PermissionError ``` ### Steps to reproduce the bug I believe this is a race condition and cannot reliably re-produce it, but it happens fairly frequently in our GitHub Actions tests and can also be re-produced (with lesser frequency) on cloud VMs. ### Expected behavior The dataset loads properly with no permission denied error. ### Environment info - `datasets` version: 3.5.0 - Platform: Linux-5.10.0-34-cloud-amd64-x86_64-with-glibc2.31 - Python version: 3.12.10 - `huggingface_hub` version: 0.30.2 - PyArrow version: 19.0.1 - Pandas version: 2.2.3 - `fsspec` version: 2024.12.0
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TensorFlow RaggedTensor Support (batch-level)
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[ "Keras doesn't support other inputs other than tf.data.Dataset objects ? it's a bit painful to have to support and maintain this kind of integration\n\nIs there a way to use a `datasets.Dataset` with outputs formatted as tensors / ragged tensors instead ? like in https://huggingface.co/docs/datasets/use_with_tensor...
2025-04-24T13:14:52Z
2025-06-30T17:03:39Z
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### Feature request Hi, Currently datasets does not support RaggedTensor output on batch-level. When building a Object Detection Dataset (with TensorFlow) I need to enable RaggedTensors as that's how BBoxes & classes are expected from the Keras Model POV. Currently there's a error thrown saying that "Nested Data is not supported". It'd be very helpful if this was fixed! :) ### Motivation Enabling Object Detection pipelines for TensorFlow. ### Your contribution With guidance I'd happily help making the PR. The current implementation with DataCollator and later enforcing `np.array` is the problematic part (at the end of `np_get_batch` in `tf_utils.py`). As `numpy` don't support "Raggednes"
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Deepspeed reward training hangs at end of training with Dataset.from_list
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[ "Hi ! How big is the dataset ? if you load it using `from_list`, the dataset lives in memory and has to be copied to every gpu process, which can be slow.\n\nIt's fasted if you load it from JSON files from disk, because in that case the dataset in converted to Arrow and loaded from disk using memory mapping. Memory...
2025-04-21T17:29:20Z
2025-06-29T06:20:45Z
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There seems to be a weird interaction between Deepspeed, the Dataset.from_list method and trl's RewardTrainer. On a multi-GPU setup (10 A100s), training always hangs at the very end of training until it times out. The training itself works fine until the end of training and running the same script with Deepspeed on a single GPU works without hangig. The issue persisted across a wide range of Deepspeed configs and training arguments. The issue went away when storing the exact same dataset as a JSON and using `dataset = load_dataset("json", ...)`. Here is my training script: ```python import pickle import os import random import warnings import torch from datasets import load_dataset, Dataset from transformers import AutoModelForSequenceClassification, AutoTokenizer from trl import RewardConfig, RewardTrainer, ModelConfig ####################################### Reward model ################################################# # Explicitly set arguments model_name_or_path = "Qwen/Qwen2.5-1.5B" output_dir = "Qwen2-0.5B-Reward-LoRA" per_device_train_batch_size = 2 num_train_epochs = 5 gradient_checkpointing = True learning_rate = 1.0e-4 logging_steps = 25 eval_strategy = "steps" eval_steps = 50 max_length = 2048 torch_dtype = "auto" trust_remote_code = False model_args = ModelConfig( model_name_or_path=model_name_or_path, model_revision=None, trust_remote_code=trust_remote_code, torch_dtype=torch_dtype, lora_task_type="SEQ_CLS", # Make sure task type is seq_cls ) training_args = RewardConfig( output_dir=output_dir, per_device_train_batch_size=per_device_train_batch_size, num_train_epochs=num_train_epochs, gradient_checkpointing=gradient_checkpointing, learning_rate=learning_rate, logging_steps=logging_steps, eval_strategy=eval_strategy, eval_steps=eval_steps, max_length=max_length, gradient_checkpointing_kwargs=dict(use_reentrant=False), center_rewards_coefficient = 0.01, fp16=False, bf16=True, save_strategy="no", dataloader_num_workers=0, # deepspeed="./configs/deepspeed_config.json", ) ################ # Model & Tokenizer ################ model_kwargs = dict( revision=model_args.model_revision, use_cache=False if training_args.gradient_checkpointing else True, torch_dtype=model_args.torch_dtype, ) tokenizer = AutoTokenizer.from_pretrained( model_args.model_name_or_path, use_fast=True ) model = AutoModelForSequenceClassification.from_pretrained( model_args.model_name_or_path, num_labels=1, trust_remote_code=model_args.trust_remote_code, **model_kwargs ) # Align padding tokens between tokenizer and model model.config.pad_token_id = tokenizer.pad_token_id # If post-training a base model, use ChatML as the default template if tokenizer.chat_template is None: model, tokenizer = setup_chat_format(model, tokenizer) if model_args.use_peft and model_args.lora_task_type != "SEQ_CLS": warnings.warn( "You are using a `task_type` that is different than `SEQ_CLS` for PEFT. This will lead to silent bugs" " Make sure to pass --lora_task_type SEQ_CLS when using this script with PEFT.", UserWarning, ) ############## # Load dataset ############## with open('./prefs.pkl', 'rb') as fh: loaded_data = pickle.load(fh) random.shuffle(loaded_data) dataset = [] for a_wins, a, b in loaded_data: if a_wins == 0: a, b = b, a dataset.append({'chosen': a, 'rejected': b}) dataset = Dataset.from_list(dataset) # Split the dataset into training and evaluation sets train_eval_split = dataset.train_test_split(test_size=0.15, shuffle=True, seed=42) # Access the training and evaluation datasets train_dataset = train_eval_split['train'] eval_dataset = train_eval_split['test'] ########## # Training ########## trainer = RewardTrainer( model=model, processing_class=tokenizer, args=training_args, train_dataset=train_dataset, eval_dataset=eval_dataset, ) trainer.train() ``` Replacing `dataset = Dataset.from_list(dataset)` with ```python with open('./prefs.json', 'w') as fh: json.dump(dataset, fh) dataset = load_dataset("json", data_files="./prefs.json", split='train') ``` resolves the issue.
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I_kwDODunzps6zQhVT
7,530
How to solve "Spaces stuck in Building" problems
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[ "I'm facing the same issue—Space stuck in \"Building\" even after restart and Factory rebuild. Any fix?\n", "> I'm facing the same issue—Space stuck in \"Building\" even after restart and Factory rebuild. Any fix?\n\nAlso see https://github.com/huggingface/huggingface_hub/issues/3019", "I'm facing the same issu...
2025-04-21T03:08:38Z
2025-04-22T07:49:52Z
2025-04-22T07:49:52Z
NONE
null
null
null
null
### Describe the bug Public spaces may stuck in Building after restarting, error log as follows: build error Unexpected job error ERROR: failed to push spaces-registry.huggingface.tech/spaces/*:cpu-*-*: unexpected status from HEAD request to https://spaces-registry.huggingface.tech/v2/spaces/*/manifests/cpu-*-*: 401 Unauthorized ### Steps to reproduce the bug Restart space / Factory rebuild cannot avoid it ### Expected behavior Fix this problem ### Environment info no requirements.txt can still happen python gradio spaces
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audio folder builder cannot detect custom split name
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2025-04-20T16:53:21Z
2025-04-20T16:53:21Z
null
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### Describe the bug when using audio folder builder (`load_dataset("audiofolder", data_dir="/path/to/folder")`), it cannot detect custom split name other than train/validation/test ### Steps to reproduce the bug i have the following folder structure ``` my_dataset/ ├── train/ │ ├── lorem.wav │ ├── … │ └── metadata.csv ├── test/ │ ├── ipsum.wav │ ├── … │ └── metadata.csv ├── validation/ │ ├── dolor.wav │ ├── … │ └── metadata.csv └── custom/ ├── sit.wav ├── … └── metadata.csv ``` using `ds = load_dataset("audiofolder", data_dir="/path/to/my_dataset")` ### Expected behavior i got `ds` with only 3 splits train/validation/test, whenever i rename train/validation/test folder it also disappear if i re-create `ds` ### Environment info - `datasets` version: 3.5.0 - Platform: Windows-11-10.0.26100-SP0 - Python version: 3.12.8 - `huggingface_hub` version: 0.30.2 - PyArrow version: 18.1.0 - Pandas version: 2.2.3 - `fsspec` version: 2024.9.0
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Data Studio Error: Convert JSONL incorrectly
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[ "Hi ! Your JSONL file is incompatible with Arrow / Parquet. Indeed in Arrow / Parquet every dict should have the same keys, while in your dataset the bboxes have varying keys.\n\nThis causes the Data Studio to treat the bboxes as if each row was missing the keys from other rows.\n\nFeel free to take a look at the d...
2025-04-19T13:21:44Z
2025-05-06T13:18:38Z
null
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null
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### Describe the bug Hi there, I uploaded a dataset here https://huggingface.co/datasets/V-STaR-Bench/V-STaR, but I found that Data Studio incorrectly convert the "bboxes" value for the whole dataset. Therefore, anyone who downloaded the dataset via the API would get the wrong "bboxes" value in the data file. Could you help me address the issue? Many thanks, ### Steps to reproduce the bug The JSONL file of [V_STaR_test_release.jsonl](https://huggingface.co/datasets/V-STaR-Bench/V-STaR/blob/main/V_STaR_test_release.jsonl) has the correct values of every "bboxes" for each sample. But in the Data Studio, we can see that the values of "bboxes" have changed, and load the dataset via API will also get the wrong values. ### Expected behavior Fix the bug to correctly download my dataset. ### Environment info - `datasets` version: 2.16.1 - Platform: Linux-5.14.0-427.22.1.el9_4.x86_64-x86_64-with-glibc2.34 - Python version: 3.10.16 - `huggingface_hub` version: 0.29.3 - PyArrow version: 19.0.0 - Pandas version: 2.2.3 - `fsspec` version: 2023.10.0
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Auto-merge option for `convert-to-parquet`
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[ "Alternatively, there could be an option to switch from submitting PRs to just committing changes directly to `main`.", "Why not, I'd be in favor of `--merge-pull-request` to call `HfApi().merge_pull_request()` at the end of the conversion :) feel free to open a PR if you'd like", "#self-assign", "Closing sin...
2025-04-18T16:03:22Z
2025-07-18T19:09:03Z
2025-07-18T19:09:03Z
CONTRIBUTOR
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### Feature request Add a command-line option, e.g. `--auto-merge-pull-request` that enables automatic merging of the commits created by the `convert-to-parquet` tool. ### Motivation Large datasets may result in dozens of PRs due to the splitting mechanism. Each of these has to be manually accepted via the website. ### Your contribution Happy to look into submitting a PR if this is of interest to maintainers.
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Faster downloads/uploads with Xet storage
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2025-04-18T14:46:42Z
2025-05-12T12:09:09Z
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MEMBER
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![Image](https://github.com/user-attachments/assets/6e247f4a-d436-4428-a682-fe18ebdc73a9) ## Xet is out ! Over the past few weeks, Hugging Face’s [Xet Team](https://huggingface.co/xet-team) took a major step forward by [migrating the first Model and Dataset repositories off LFS and to Xet storage](https://huggingface.co/posts/jsulz/911431940353906). See more information on the HF blog: https://huggingface.co/blog/xet-on-the-hub You can already enable Xet on Hugging Face account to benefit from faster downloads and uploads :) We finalized an official integration with the `huggingface_hub` library that means you get the benefits of Xet without any significant changes to your current workflow. ## Previous versions of `datasets` For older versions of `datasets` you might see this warning in `push_to_hub()`: ``` Uploading files as bytes or binary IO objects is not supported by Xet Storage. ``` This means the `huggingface_hub` + Xet integration isn't enabled for your version of `datasets`. You can fix this by updating to `datasets>=3.6.0` and `huggingface_hub>=0.31.0` ``` pip install -U datasets huggingface_hub ``` ## The future Stay tuned for more Xet optimizations, especially on [Xet-optimized Parquet](https://huggingface.co/blog/improve_parquet_dedupe)
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7,520
Update items in the dataset without `map`
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[ "Hello!\n\nHave you looked at `Dataset.shard`? [Docs](https://huggingface.co/docs/datasets/en/process#shard)\n\nUsing this method you could break your dataset in N shards. Apply `map` on each shard and concatenate them back." ]
2025-04-15T19:39:01Z
2025-04-19T18:47:46Z
null
NONE
null
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### Feature request I would like to be able to update items in my dataset without affecting all rows. At least if there was a range option, I would be able to process those items, save the dataset, and then continue. If I am supposed to split the dataset first, that is not clear, since the docs suggest that any of those functions returns a new object, so I don't think I can do that. ### Motivation I am applying an extremely time-consuming function to each item in my `Dataset`. Unfortunately, datasets only supports updating values via `map`, so if my computer dies in the middle of this long-running process, I lose all progress. This is far from ideal. I would like to use `datasets` throughout this processing, but this limitation is now forcing me to write my own dataset format just to do this intermediary operation. It would be less intuitive but I suppose I could split and then concatenate the dataset before saving? But this feels very inefficient. ### Your contribution I can test the feature.
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I_kwDODunzps6ylX8B
7,518
num_proc parallelization works only for first ~10s.
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[ "Hi, can you check if the processes are still alive ? It's a bit weird because `datasets` does check if processes crash and return an error in that case", "Thank you for reverting quickly. I digged a bit, and realized my disk's IOPS is also limited - which is causing this. will check further and report if it's an...
2025-04-15T11:44:03Z
2025-04-15T13:12:13Z
null
NONE
null
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### Describe the bug When I try to load an already downloaded dataset with num_proc=64, the speed is very high for the first 10-20 seconds acheiving 30-40K samples / s, and 100% utilization for all cores but it soon drops to <= 1000 with almost 0% utilization for most cores. ### Steps to reproduce the bug ``` // download dataset with cli !huggingface-cli download --repo-type dataset timm/imagenet-1k-wds --max-workers 32 from datasets import load_dataset ds = load_dataset("timm/imagenet-1k-wds", num_proc=64) ``` ### Expected behavior 100% core utilization throughout. ### Environment info Azure A100-80GB, 16 cores VM ![Image](https://github.com/user-attachments/assets/69d00fe3-d720-4474-9439-21e046d85034)
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2,996,106,077
I_kwDODunzps6ylPNd
7,517
Image Feature in Datasets Library Fails to Handle bytearray Objects from Spark DataFrames
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[ "Hi ! The `Image()` type accepts either\n- a `bytes` object containing the image bytes\n- a `str` object containing the image path\n- a `PIL.Image` object\n\nbut it doesn't support `bytearray`, maybe you can convert to `bytes` beforehand ?", "Hi @lhoestq, \nconverting to bytes is certainly possible and would work...
2025-04-15T11:29:17Z
2025-05-07T14:17:30Z
2025-05-07T14:17:30Z
CONTRIBUTOR
null
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### Describe the bug When using `IterableDataset.from_spark()` with a Spark DataFrame containing image data, the `Image` feature class fails to properly process this data type, causing an `AttributeError: 'bytearray' object has no attribute 'get'` ### Steps to reproduce the bug 1. Create a Spark DataFrame with a column containing image data as bytearray objects 2. Define a Feature schema with an Image feature 3. Create an IterableDataset using `IterableDataset.from_spark()` 4. Attempt to iterate through the dataset ``` from pyspark.sql import SparkSession from datasets import Dataset, IterableDataset, Features, Image, Value # initialize spark spark = SparkSession.builder.appName("MinimalRepro").getOrCreate() # create spark dataframe data = [(0, open("image.png", "rb").read())] df = spark.createDataFrame(data, "idx: int, image: binary") # convert to dataset features = Features({"idx": Value("int64"), "image": Image()}) ds = Dataset.from_spark(df, features=features) ds_iter = IterableDataset.from_spark(df, features=features) # iterate print(next(iter(ds))) print(next(iter(ds_iter))) ``` ### Expected behavior The features should work on `IterableDataset` the same way they work on `Dataset` ### Environment info - `datasets` version: 3.5.0 - Platform: macOS-15.3.2-arm64-arm-64bit - Python version: 3.12.7 - `huggingface_hub` version: 0.30.2 - PyArrow version: 18.1.0 - Pandas version: 2.2.3 - `fsspec` version: 2024.12.0
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I_kwDODunzps6yj_q7
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unsloth/DeepSeek-R1-Distill-Qwen-32B server error
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2025-04-15T09:26:53Z
2025-04-15T09:57:26Z
2025-04-15T09:57:26Z
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### Describe the bug hfhubhttperror: 500 server error: internal server error for url: https://huggingface.co/api/models/unsloth/deepseek-r1-distill-qwen-32b-bnb-4bit/commits/main (request id: root=1-67fe23fa-3a2150eb444c2a823c388579;de3aed68-c397-4da5-94d4-6565efd3b919) internal error - we're working hard to fix this as soon as possible! ### Steps to reproduce the bug unsloth/DeepSeek-R1-Distill-Qwen-32B server error ### Expected behavior Network repair ### Environment info The web side is also unavailable
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7,515
`concatenate_datasets` does not preserve Pytorch format for IterableDataset
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[ "Hi ! Oh indeed it would be cool to return the same format in that case. Would you like to submit a PR ? The function that does the concatenation is here:\n\nhttps://github.com/huggingface/datasets/blob/90e5bf8a8599b625d6103ee5ac83b98269991141/src/datasets/iterable_dataset.py#L3375-L3380", "Thank you for the poin...
2025-04-15T04:36:34Z
2025-05-19T15:07:38Z
2025-05-19T15:07:38Z
CONTRIBUTOR
null
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### Describe the bug When concatenating datasets with `concatenate_datasets`, I would expect the resulting combined dataset to be in the same format as the inputs (assuming it's consistent). This is indeed the behavior when combining `Dataset`, but not when combining `IterableDataset`. Specifically, when applying `concatenate_datasets` to a list of `IterableDataset` in Pytorch format (i.e. using `.with_format(Pytorch)`), the output `IterableDataset` is not in Pytorch format. ### Steps to reproduce the bug ``` import datasets ds = datasets.Dataset.from_dict({"a": [1,2,3]}) iterable_ds = ds.to_iterable_dataset() datasets.concatenate_datasets([ds.with_format("torch")]) # <- this preserves Pytorch format datasets.concatenate_datasets([iterable_ds.with_format("torch")]) # <- this does NOT preserves Pytorch format ``` ### Expected behavior Pytorch format should be preserved when combining IterableDataset in Pytorch format. ### Environment info datasets==3.5.0, Python 3.11.11, torch==2.2.2
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7,513
MemoryError while creating dataset from generator
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[ "Upd: created a PR that can probably solve the problem: #7514", "Hi ! We need to take the generator into account for the cache. The generator is hashed to make the dataset fingerprint used by the cache. This way you can reload the Dataset from the cache without regenerating in subsequent `from_generator` calls.\n...
2025-04-15T01:02:02Z
2025-04-23T19:37:08Z
null
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null
### Describe the bug # TL:DR `Dataset.from_generator` function passes all of its arguments to `BuilderConfig.create_config_id`, including `generator` function itself. `BuilderConfig.create_config_id` function tries to hash all the args, which can take a large amount of time or even cause MemoryError if the dataset processed in a generator function is large enough. Maybe we should pop `generator` from `config_kwargs_to_add_to_suffix` before hashing to avoid it. # Full description I have a pretty large spatial imagery dataset that is generated from two xbatcher.BatchGenerators via custom `dataset_generator` function that looks like this if simplified: ``` def dataset_generator(): for index in samples: data_dict = { "key": index, "x": x_batches[index].data, "y": y_batches[index].data, } yield data_dict ``` Then I use `datasets.Dataset.from_generator` to generate the dataset itself. ``` # Create dataset ds = datasets.Dataset.from_generator( dataset_generator, features=feat, cache_dir=(output / ".cache"), ) ``` It works nicely with pretty small data, but if the dataset is huge and barely fits in memory, it crashes with memory error: <details> <summary>Full stack trace</summary> ``` File [C:\ProgramData\miniforge3\envs\geo\Lib\site-packages\remote_sensing_processor\segmentation\semantic\tiles.py:248](file:///C:/ProgramData/miniforge3/envs/geo/Lib/site-packages/remote_sensing_processor/segmentation/semantic/tiles.py#line=247), in generate_tiles(x, y, output, tile_size, shuffle, split, x_dtype, y_dtype, x_nodata, y_nodata) 245 yield data_dict 247 # Create dataset --> 248 ds = datasets.Dataset.from_generator( 249 dataset_generator, 250 features=feat, 251 cache_dir=(output / ".cache"), 252 ) 254 # Save dataset 255 ds.save_to_disk(output / name) File [C:\ProgramData\miniforge3\envs\geo\Lib\site-packages\datasets\arrow_dataset.py:1105](file:///C:/ProgramData/miniforge3/envs/geo/Lib/site-packages/datasets/arrow_dataset.py#line=1104), in Dataset.from_generator(generator, features, cache_dir, keep_in_memory, gen_kwargs, num_proc, split, **kwargs) 1052 """Create a Dataset from a generator. 1053 1054 Args: (...) 1101 ``` 1102 """ 1103 from .io.generator import GeneratorDatasetInputStream -> 1105 return GeneratorDatasetInputStream( 1106 generator=generator, 1107 features=features, 1108 cache_dir=cache_dir, 1109 keep_in_memory=keep_in_memory, 1110 gen_kwargs=gen_kwargs, 1111 num_proc=num_proc, 1112 split=split, 1113 **kwargs, 1114 ).read() File [C:\ProgramData\miniforge3\envs\geo\Lib\site-packages\datasets\io\generator.py:29](file:///C:/ProgramData/miniforge3/envs/geo/Lib/site-packages/datasets/io/generator.py#line=28), in GeneratorDatasetInputStream.__init__(self, generator, features, cache_dir, keep_in_memory, streaming, gen_kwargs, num_proc, split, **kwargs) 9 def __init__( 10 self, 11 generator: Callable, (...) 19 **kwargs, 20 ): 21 super().__init__( 22 features=features, 23 cache_dir=cache_dir, (...) 27 **kwargs, 28 ) ---> 29 self.builder = Generator( 30 cache_dir=cache_dir, 31 features=features, 32 generator=generator, 33 gen_kwargs=gen_kwargs, 34 split=split, 35 **kwargs, 36 ) File [C:\ProgramData\miniforge3\envs\geo\Lib\site-packages\datasets\builder.py:343](file:///C:/ProgramData/miniforge3/envs/geo/Lib/site-packages/datasets/builder.py#line=342), in DatasetBuilder.__init__(self, cache_dir, dataset_name, config_name, hash, base_path, info, features, token, repo_id, data_files, data_dir, storage_options, writer_batch_size, **config_kwargs) 341 config_kwargs["data_dir"] = data_dir 342 self.config_kwargs = config_kwargs --> 343 self.config, self.config_id = self._create_builder_config( 344 config_name=config_name, 345 custom_features=features, 346 **config_kwargs, 347 ) 349 # prepare info: DatasetInfo are a standardized dataclass across all datasets 350 # Prefill datasetinfo 351 if info is None: 352 # TODO FOR PACKAGED MODULES IT IMPORTS DATA FROM src/packaged_modules which doesn't make sense File [C:\ProgramData\miniforge3\envs\geo\Lib\site-packages\datasets\builder.py:604](file:///C:/ProgramData/miniforge3/envs/geo/Lib/site-packages/datasets/builder.py#line=603), in DatasetBuilder._create_builder_config(self, config_name, custom_features, **config_kwargs) 598 builder_config._resolve_data_files( 599 base_path=self.base_path, 600 download_config=DownloadConfig(token=self.token, storage_options=self.storage_options), 601 ) 603 # compute the config id that is going to be used for caching --> 604 config_id = builder_config.create_config_id( 605 config_kwargs, 606 custom_features=custom_features, 607 ) 608 is_custom = (config_id not in self.builder_configs) and config_id != "default" 609 if is_custom: File [C:\ProgramData\miniforge3\envs\geo\Lib\site-packages\datasets\builder.py:187](file:///C:/ProgramData/miniforge3/envs/geo/Lib/site-packages/datasets/builder.py#line=186), in BuilderConfig.create_config_id(self, config_kwargs, custom_features) 185 suffix = Hasher.hash(config_kwargs_to_add_to_suffix) 186 else: --> 187 suffix = Hasher.hash(config_kwargs_to_add_to_suffix) 189 if custom_features is not None: 190 m = Hasher() File [C:\ProgramData\miniforge3\envs\geo\Lib\site-packages\datasets\fingerprint.py:188](file:///C:/ProgramData/miniforge3/envs/geo/Lib/site-packages/datasets/fingerprint.py#line=187), in Hasher.hash(cls, value) 186 @classmethod 187 def hash(cls, value: Any) -> str: --> 188 return cls.hash_bytes(dumps(value)) File [C:\ProgramData\miniforge3\envs\geo\Lib\site-packages\datasets\utils\_dill.py:109](file:///C:/ProgramData/miniforge3/envs/geo/Lib/site-packages/datasets/utils/_dill.py#line=108), in dumps(obj) 107 """Pickle an object to a string.""" 108 file = BytesIO() --> 109 dump(obj, file) 110 return file.getvalue() File [C:\ProgramData\miniforge3\envs\geo\Lib\site-packages\datasets\utils\_dill.py:103](file:///C:/ProgramData/miniforge3/envs/geo/Lib/site-packages/datasets/utils/_dill.py#line=102), in dump(obj, file) 101 def dump(obj, file): 102 """Pickle an object to a file.""" --> 103 Pickler(file, recurse=True).dump(obj) File [C:\ProgramData\miniforge3\envs\geo\Lib\site-packages\dill\_dill.py:420](file:///C:/ProgramData/miniforge3/envs/geo/Lib/site-packages/dill/_dill.py#line=419), in Pickler.dump(self, obj) 418 def dump(self, obj): #NOTE: if settings change, need to update attributes 419 logger.trace_setup(self) --> 420 StockPickler.dump(self, obj) File [C:\ProgramData\miniforge3\envs\geo\Lib\pickle.py:484](file:///C:/ProgramData/miniforge3/envs/geo/Lib/pickle.py#line=483), in _Pickler.dump(self, obj) 482 if self.proto >= 4: 483 self.framer.start_framing() --> 484 self.save(obj) 485 self.write(STOP) 486 self.framer.end_framing() File [C:\ProgramData\miniforge3\envs\geo\Lib\site-packages\datasets\utils\_dill.py:70](file:///C:/ProgramData/miniforge3/envs/geo/Lib/site-packages/datasets/utils/_dill.py#line=69), in Pickler.save(self, obj, save_persistent_id) 68 if obj_type is FunctionType: 69 obj = getattr(obj, "_torchdynamo_orig_callable", obj) ---> 70 dill.Pickler.save(self, obj, save_persistent_id=save_persistent_id) File [C:\ProgramData\miniforge3\envs\geo\Lib\site-packages\dill\_dill.py:414](file:///C:/ProgramData/miniforge3/envs/geo/Lib/site-packages/dill/_dill.py#line=413), in Pickler.save(self, obj, save_persistent_id) 412 msg = "Can't pickle %s: attribute lookup builtins.generator failed" % GeneratorType 413 raise PicklingError(msg) --> 414 StockPickler.save(self, obj, save_persistent_id) File [C:\ProgramData\miniforge3\envs\geo\Lib\pickle.py:558](file:///C:/ProgramData/miniforge3/envs/geo/Lib/pickle.py#line=557), in _Pickler.save(self, obj, save_persistent_id) 556 f = self.dispatch.get(t) 557 if f is not None: --> 558 f(self, obj) # Call unbound method with explicit self 559 return 561 # Check private dispatch table if any, or else 562 # copyreg.dispatch_table File [C:\ProgramData\miniforge3\envs\geo\Lib\site-packages\dill\_dill.py:1217](file:///C:/ProgramData/miniforge3/envs/geo/Lib/site-packages/dill/_dill.py#line=1216), in save_module_dict(pickler, obj) 1214 if is_dill(pickler, child=False) and pickler._session: 1215 # we only care about session the first pass thru 1216 pickler._first_pass = False -> 1217 StockPickler.save_dict(pickler, obj) 1218 logger.trace(pickler, "# D2") 1219 return File [C:\ProgramData\miniforge3\envs\geo\Lib\pickle.py:990](file:///C:/ProgramData/miniforge3/envs/geo/Lib/pickle.py#line=989), in _Pickler.save_dict(self, obj) 987 self.write(MARK + DICT) 989 self.memoize(obj) --> 990 self._batch_setitems(obj.items()) File [C:\ProgramData\miniforge3\envs\geo\Lib\site-packages\datasets\utils\_dill.py:83](file:///C:/ProgramData/miniforge3/envs/geo/Lib/site-packages/datasets/utils/_dill.py#line=82), in Pickler._batch_setitems(self, items) 80 from datasets.fingerprint import Hasher 82 items = sorted(items, key=lambda x: Hasher.hash(x[0])) ---> 83 dill.Pickler._batch_setitems(self, items) File [C:\ProgramData\miniforge3\envs\geo\Lib\pickle.py:1014](file:///C:/ProgramData/miniforge3/envs/geo/Lib/pickle.py#line=1013), in _Pickler._batch_setitems(self, items) 1012 for k, v in tmp: 1013 save(k) -> 1014 save(v) 1015 write(SETITEMS) 1016 elif n: File [C:\ProgramData\miniforge3\envs\geo\Lib\site-packages\datasets\utils\_dill.py:70](file:///C:/ProgramData/miniforge3/envs/geo/Lib/site-packages/datasets/utils/_dill.py#line=69), in Pickler.save(self, obj, save_persistent_id) 68 if obj_type is FunctionType: 69 obj = getattr(obj, "_torchdynamo_orig_callable", obj) ---> 70 dill.Pickler.save(self, obj, save_persistent_id=save_persistent_id) File [C:\ProgramData\miniforge3\envs\geo\Lib\site-packages\dill\_dill.py:414](file:///C:/ProgramData/miniforge3/envs/geo/Lib/site-packages/dill/_dill.py#line=413), in Pickler.save(self, obj, save_persistent_id) 412 msg = "Can't pickle %s: attribute lookup builtins.generator failed" % GeneratorType 413 raise PicklingError(msg) --> 414 StockPickler.save(self, obj, save_persistent_id) File [C:\ProgramData\miniforge3\envs\geo\Lib\pickle.py:558](file:///C:/ProgramData/miniforge3/envs/geo/Lib/pickle.py#line=557), in _Pickler.save(self, obj, save_persistent_id) 556 f = self.dispatch.get(t) 557 if f is not None: --> 558 f(self, obj) # Call unbound method with explicit self 559 return 561 # Check private dispatch table if any, or else 562 # copyreg.dispatch_table File [C:\ProgramData\miniforge3\envs\geo\Lib\site-packages\dill\_dill.py:1985](file:///C:/ProgramData/miniforge3/envs/geo/Lib/site-packages/dill/_dill.py#line=1984), in save_function(pickler, obj) 1982 if state_dict: 1983 state = state, state_dict -> 1985 _save_with_postproc(pickler, (_create_function, ( 1986 obj.__code__, globs, obj.__name__, obj.__defaults__, 1987 closure 1988 ), state), obj=obj, postproc_list=postproc_list) 1990 # Lift closure cell update to earliest function (#458) 1991 if _postproc: File [C:\ProgramData\miniforge3\envs\geo\Lib\site-packages\dill\_dill.py:1117](file:///C:/ProgramData/miniforge3/envs/geo/Lib/site-packages/dill/_dill.py#line=1116), in _save_with_postproc(pickler, reduction, is_pickler_dill, obj, postproc_list) 1115 continue 1116 else: -> 1117 pickler.save_reduce(*reduction) 1118 # pop None created by calling preprocessing step off stack 1119 pickler.write(POP) File [C:\ProgramData\miniforge3\envs\geo\Lib\pickle.py:690](file:///C:/ProgramData/miniforge3/envs/geo/Lib/pickle.py#line=689), in _Pickler.save_reduce(self, func, args, state, listitems, dictitems, state_setter, obj) 688 else: 689 save(func) --> 690 save(args) 691 write(REDUCE) 693 if obj is not None: 694 # If the object is already in the memo, this means it is 695 # recursive. In this case, throw away everything we put on the 696 # stack, and fetch the object back from the memo. File [C:\ProgramData\miniforge3\envs\geo\Lib\site-packages\datasets\utils\_dill.py:70](file:///C:/ProgramData/miniforge3/envs/geo/Lib/site-packages/datasets/utils/_dill.py#line=69), in Pickler.save(self, obj, save_persistent_id) 68 if obj_type is FunctionType: 69 obj = getattr(obj, "_torchdynamo_orig_callable", obj) ---> 70 dill.Pickler.save(self, obj, save_persistent_id=save_persistent_id) File [C:\ProgramData\miniforge3\envs\geo\Lib\site-packages\dill\_dill.py:414](file:///C:/ProgramData/miniforge3/envs/geo/Lib/site-packages/dill/_dill.py#line=413), in Pickler.save(self, obj, save_persistent_id) 412 msg = "Can't pickle %s: attribute lookup builtins.generator failed" % GeneratorType 413 raise PicklingError(msg) --> 414 StockPickler.save(self, obj, save_persistent_id) File [C:\ProgramData\miniforge3\envs\geo\Lib\pickle.py:558](file:///C:/ProgramData/miniforge3/envs/geo/Lib/pickle.py#line=557), in _Pickler.save(self, obj, save_persistent_id) 556 f = self.dispatch.get(t) 557 if f is not None: --> 558 f(self, obj) # Call unbound method with explicit self 559 return 561 # Check private dispatch table if any, or else 562 # copyreg.dispatch_table File [C:\ProgramData\miniforge3\envs\geo\Lib\pickle.py:905](file:///C:/ProgramData/miniforge3/envs/geo/Lib/pickle.py#line=904), in _Pickler.save_tuple(self, obj) 903 if n <= 3 and self.proto >= 2: 904 for element in obj: --> 905 save(element) 906 # Subtle. Same as in the big comment below. 907 if id(obj) in memo: File [C:\ProgramData\miniforge3\envs\geo\Lib\site-packages\datasets\utils\_dill.py:70](file:///C:/ProgramData/miniforge3/envs/geo/Lib/site-packages/datasets/utils/_dill.py#line=69), in Pickler.save(self, obj, save_persistent_id) 68 if obj_type is FunctionType: 69 obj = getattr(obj, "_torchdynamo_orig_callable", obj) ---> 70 dill.Pickler.save(self, obj, save_persistent_id=save_persistent_id) File [C:\ProgramData\miniforge3\envs\geo\Lib\site-packages\dill\_dill.py:414](file:///C:/ProgramData/miniforge3/envs/geo/Lib/site-packages/dill/_dill.py#line=413), in Pickler.save(self, obj, save_persistent_id) 412 msg = "Can't pickle %s: attribute lookup builtins.generator failed" % GeneratorType 413 raise PicklingError(msg) --> 414 StockPickler.save(self, obj, save_persistent_id) File [C:\ProgramData\miniforge3\envs\geo\Lib\pickle.py:601](file:///C:/ProgramData/miniforge3/envs/geo/Lib/pickle.py#line=600), in _Pickler.save(self, obj, save_persistent_id) 597 raise PicklingError("Tuple returned by %s must have " 598 "two to six elements" % reduce) 600 # Save the reduce() output and finally memoize the object --> 601 self.save_reduce(obj=obj, *rv) File [C:\ProgramData\miniforge3\envs\geo\Lib\pickle.py:715](file:///C:/ProgramData/miniforge3/envs/geo/Lib/pickle.py#line=714), in _Pickler.save_reduce(self, func, args, state, listitems, dictitems, state_setter, obj) 713 if state is not None: 714 if state_setter is None: --> 715 save(state) 716 write(BUILD) 717 else: 718 # If a state_setter is specified, call it instead of load_build 719 # to update obj's with its previous state. 720 # First, push state_setter and its tuple of expected arguments 721 # (obj, state) onto the stack. File [C:\ProgramData\miniforge3\envs\geo\Lib\site-packages\datasets\utils\_dill.py:70](file:///C:/ProgramData/miniforge3/envs/geo/Lib/site-packages/datasets/utils/_dill.py#line=69), in Pickler.save(self, obj, save_persistent_id) 68 if obj_type is FunctionType: 69 obj = getattr(obj, "_torchdynamo_orig_callable", obj) ---> 70 dill.Pickler.save(self, obj, save_persistent_id=save_persistent_id) File [C:\ProgramData\miniforge3\envs\geo\Lib\site-packages\dill\_dill.py:414](file:///C:/ProgramData/miniforge3/envs/geo/Lib/site-packages/dill/_dill.py#line=413), in Pickler.save(self, obj, save_persistent_id) 412 msg = "Can't pickle %s: attribute lookup builtins.generator failed" % GeneratorType 413 raise PicklingError(msg) --> 414 StockPickler.save(self, obj, save_persistent_id) File [C:\ProgramData\miniforge3\envs\geo\Lib\pickle.py:558](file:///C:/ProgramData/miniforge3/envs/geo/Lib/pickle.py#line=557), in _Pickler.save(self, obj, save_persistent_id) 556 f = self.dispatch.get(t) 557 if f is not None: --> 558 f(self, obj) # Call unbound method with explicit self 559 return 561 # Check private dispatch table if any, or else 562 # copyreg.dispatch_table File [C:\ProgramData\miniforge3\envs\geo\Lib\site-packages\dill\_dill.py:1217](file:///C:/ProgramData/miniforge3/envs/geo/Lib/site-packages/dill/_dill.py#line=1216), in save_module_dict(pickler, obj) 1214 if is_dill(pickler, child=False) and pickler._session: 1215 # we only care about session the first pass thru 1216 pickler._first_pass = False -> 1217 StockPickler.save_dict(pickler, obj) 1218 logger.trace(pickler, "# D2") 1219 return File [C:\ProgramData\miniforge3\envs\geo\Lib\pickle.py:990](file:///C:/ProgramData/miniforge3/envs/geo/Lib/pickle.py#line=989), in _Pickler.save_dict(self, obj) 987 self.write(MARK + DICT) 989 self.memoize(obj) --> 990 self._batch_setitems(obj.items()) File [C:\ProgramData\miniforge3\envs\geo\Lib\site-packages\datasets\utils\_dill.py:83](file:///C:/ProgramData/miniforge3/envs/geo/Lib/site-packages/datasets/utils/_dill.py#line=82), in Pickler._batch_setitems(self, items) 80 from datasets.fingerprint import Hasher 82 items = sorted(items, key=lambda x: Hasher.hash(x[0])) ---> 83 dill.Pickler._batch_setitems(self, items) File [C:\ProgramData\miniforge3\envs\geo\Lib\pickle.py:1014](file:///C:/ProgramData/miniforge3/envs/geo/Lib/pickle.py#line=1013), in _Pickler._batch_setitems(self, items) 1012 for k, v in tmp: 1013 save(k) -> 1014 save(v) 1015 write(SETITEMS) 1016 elif n: [... skipping similar frames: Pickler.save at line 70 (1 times), Pickler.save at line 414 (1 times)] File [C:\ProgramData\miniforge3\envs\geo\Lib\pickle.py:601](file:///C:/ProgramData/miniforge3/envs/geo/Lib/pickle.py#line=600), in _Pickler.save(self, obj, save_persistent_id) 597 raise PicklingError("Tuple returned by %s must have " 598 "two to six elements" % reduce) 600 # Save the reduce() output and finally memoize the object --> 601 self.save_reduce(obj=obj, *rv) File [C:\ProgramData\miniforge3\envs\geo\Lib\pickle.py:715](file:///C:/ProgramData/miniforge3/envs/geo/Lib/pickle.py#line=714), in _Pickler.save_reduce(self, func, args, state, listitems, dictitems, state_setter, obj) 713 if state is not None: 714 if state_setter is None: --> 715 save(state) 716 write(BUILD) 717 else: 718 # If a state_setter is specified, call it instead of load_build 719 # to update obj's with its previous state. 720 # First, push state_setter and its tuple of expected arguments 721 # (obj, state) onto the stack. File [C:\ProgramData\miniforge3\envs\geo\Lib\site-packages\datasets\utils\_dill.py:70](file:///C:/ProgramData/miniforge3/envs/geo/Lib/site-packages/datasets/utils/_dill.py#line=69), in Pickler.save(self, obj, save_persistent_id) 68 if obj_type is FunctionType: 69 obj = getattr(obj, "_torchdynamo_orig_callable", obj) ---> 70 dill.Pickler.save(self, obj, save_persistent_id=save_persistent_id) File [C:\ProgramData\miniforge3\envs\geo\Lib\site-packages\dill\_dill.py:414](file:///C:/ProgramData/miniforge3/envs/geo/Lib/site-packages/dill/_dill.py#line=413), in Pickler.save(self, obj, save_persistent_id) 412 msg = "Can't pickle %s: attribute lookup builtins.generator failed" % GeneratorType 413 raise PicklingError(msg) --> 414 StockPickler.save(self, obj, save_persistent_id) File [C:\ProgramData\miniforge3\envs\geo\Lib\pickle.py:558](file:///C:/ProgramData/miniforge3/envs/geo/Lib/pickle.py#line=557), in _Pickler.save(self, obj, save_persistent_id) 556 f = self.dispatch.get(t) 557 if f is not None: --> 558 f(self, obj) # Call unbound method with explicit self 559 return 561 # Check private dispatch table if any, or else 562 # copyreg.dispatch_table File [C:\ProgramData\miniforge3\envs\geo\Lib\pickle.py:905](file:///C:/ProgramData/miniforge3/envs/geo/Lib/pickle.py#line=904), in _Pickler.save_tuple(self, obj) 903 if n <= 3 and self.proto >= 2: 904 for element in obj: --> 905 save(element) 906 # Subtle. Same as in the big comment below. 907 if id(obj) in memo: File [C:\ProgramData\miniforge3\envs\geo\Lib\site-packages\datasets\utils\_dill.py:70](file:///C:/ProgramData/miniforge3/envs/geo/Lib/site-packages/datasets/utils/_dill.py#line=69), in Pickler.save(self, obj, save_persistent_id) 68 if obj_type is FunctionType: 69 obj = getattr(obj, "_torchdynamo_orig_callable", obj) ---> 70 dill.Pickler.save(self, obj, save_persistent_id=save_persistent_id) File [C:\ProgramData\miniforge3\envs\geo\Lib\site-packages\dill\_dill.py:414](file:///C:/ProgramData/miniforge3/envs/geo/Lib/site-packages/dill/_dill.py#line=413), in Pickler.save(self, obj, save_persistent_id) 412 msg = "Can't pickle %s: attribute lookup builtins.generator failed" % GeneratorType 413 raise PicklingError(msg) --> 414 StockPickler.save(self, obj, save_persistent_id) File [C:\ProgramData\miniforge3\envs\geo\Lib\pickle.py:558](file:///C:/ProgramData/miniforge3/envs/geo/Lib/pickle.py#line=557), in _Pickler.save(self, obj, save_persistent_id) 556 f = self.dispatch.get(t) 557 if f is not None: --> 558 f(self, obj) # Call unbound method with explicit self 559 return 561 # Check private dispatch table if any, or else 562 # copyreg.dispatch_table File [C:\ProgramData\miniforge3\envs\geo\Lib\site-packages\dill\_dill.py:1217](file:///C:/ProgramData/miniforge3/envs/geo/Lib/site-packages/dill/_dill.py#line=1216), in save_module_dict(pickler, obj) 1214 if is_dill(pickler, child=False) and pickler._session: 1215 # we only care about session the first pass thru 1216 pickler._first_pass = False -> 1217 StockPickler.save_dict(pickler, obj) 1218 logger.trace(pickler, "# D2") 1219 return File [C:\ProgramData\miniforge3\envs\geo\Lib\pickle.py:990](file:///C:/ProgramData/miniforge3/envs/geo/Lib/pickle.py#line=989), in _Pickler.save_dict(self, obj) 987 self.write(MARK + DICT) 989 self.memoize(obj) --> 990 self._batch_setitems(obj.items()) File [C:\ProgramData\miniforge3\envs\geo\Lib\site-packages\datasets\utils\_dill.py:83](file:///C:/ProgramData/miniforge3/envs/geo/Lib/site-packages/datasets/utils/_dill.py#line=82), in Pickler._batch_setitems(self, items) 80 from datasets.fingerprint import Hasher 82 items = sorted(items, key=lambda x: Hasher.hash(x[0])) ---> 83 dill.Pickler._batch_setitems(self, items) File [C:\ProgramData\miniforge3\envs\geo\Lib\pickle.py:1014](file:///C:/ProgramData/miniforge3/envs/geo/Lib/pickle.py#line=1013), in _Pickler._batch_setitems(self, items) 1012 for k, v in tmp: 1013 save(k) -> 1014 save(v) 1015 write(SETITEMS) 1016 elif n: File [C:\ProgramData\miniforge3\envs\geo\Lib\site-packages\datasets\utils\_dill.py:70](file:///C:/ProgramData/miniforge3/envs/geo/Lib/site-packages/datasets/utils/_dill.py#line=69), in Pickler.save(self, obj, save_persistent_id) 68 if obj_type is FunctionType: 69 obj = getattr(obj, "_torchdynamo_orig_callable", obj) ---> 70 dill.Pickler.save(self, obj, save_persistent_id=save_persistent_id) File [C:\ProgramData\miniforge3\envs\geo\Lib\site-packages\dill\_dill.py:414](file:///C:/ProgramData/miniforge3/envs/geo/Lib/site-packages/dill/_dill.py#line=413), in Pickler.save(self, obj, save_persistent_id) 412 msg = "Can't pickle %s: attribute lookup builtins.generator failed" % GeneratorType 413 raise PicklingError(msg) --> 414 StockPickler.save(self, obj, save_persistent_id) File [C:\ProgramData\miniforge3\envs\geo\Lib\pickle.py:601](file:///C:/ProgramData/miniforge3/envs/geo/Lib/pickle.py#line=600), in _Pickler.save(self, obj, save_persistent_id) 597 raise PicklingError("Tuple returned by %s must have " 598 "two to six elements" % reduce) 600 # Save the reduce() output and finally memoize the object --> 601 self.save_reduce(obj=obj, *rv) File [C:\ProgramData\miniforge3\envs\geo\Lib\pickle.py:715](file:///C:/ProgramData/miniforge3/envs/geo/Lib/pickle.py#line=714), in _Pickler.save_reduce(self, func, args, state, listitems, dictitems, state_setter, obj) 713 if state is not None: 714 if state_setter is None: --> 715 save(state) 716 write(BUILD) 717 else: 718 # If a state_setter is specified, call it instead of load_build 719 # to update obj's with its previous state. 720 # First, push state_setter and its tuple of expected arguments 721 # (obj, state) onto the stack. File [C:\ProgramData\miniforge3\envs\geo\Lib\site-packages\datasets\utils\_dill.py:70](file:///C:/ProgramData/miniforge3/envs/geo/Lib/site-packages/datasets/utils/_dill.py#line=69), in Pickler.save(self, obj, save_persistent_id) 68 if obj_type is FunctionType: 69 obj = getattr(obj, "_torchdynamo_orig_callable", obj) ---> 70 dill.Pickler.save(self, obj, save_persistent_id=save_persistent_id) File [C:\ProgramData\miniforge3\envs\geo\Lib\site-packages\dill\_dill.py:414](file:///C:/ProgramData/miniforge3/envs/geo/Lib/site-packages/dill/_dill.py#line=413), in Pickler.save(self, obj, save_persistent_id) 412 msg = "Can't pickle %s: attribute lookup builtins.generator failed" % GeneratorType 413 raise PicklingError(msg) --> 414 StockPickler.save(self, obj, save_persistent_id) File [C:\ProgramData\miniforge3\envs\geo\Lib\pickle.py:558](file:///C:/ProgramData/miniforge3/envs/geo/Lib/pickle.py#line=557), in _Pickler.save(self, obj, save_persistent_id) 556 f = self.dispatch.get(t) 557 if f is not None: --> 558 f(self, obj) # Call unbound method with explicit self 559 return 561 # Check private dispatch table if any, or else 562 # copyreg.dispatch_table File [C:\ProgramData\miniforge3\envs\geo\Lib\pickle.py:905](file:///C:/ProgramData/miniforge3/envs/geo/Lib/pickle.py#line=904), in _Pickler.save_tuple(self, obj) 903 if n <= 3 and self.proto >= 2: 904 for element in obj: --> 905 save(element) 906 # Subtle. Same as in the big comment below. 907 if id(obj) in memo: File [C:\ProgramData\miniforge3\envs\geo\Lib\site-packages\datasets\utils\_dill.py:70](file:///C:/ProgramData/miniforge3/envs/geo/Lib/site-packages/datasets/utils/_dill.py#line=69), in Pickler.save(self, obj, save_persistent_id) 68 if obj_type is FunctionType: 69 obj = getattr(obj, "_torchdynamo_orig_callable", obj) ---> 70 dill.Pickler.save(self, obj, save_persistent_id=save_persistent_id) File [C:\ProgramData\miniforge3\envs\geo\Lib\site-packages\dill\_dill.py:414](file:///C:/ProgramData/miniforge3/envs/geo/Lib/site-packages/dill/_dill.py#line=413), in Pickler.save(self, obj, save_persistent_id) 412 msg = "Can't pickle %s: attribute lookup builtins.generator failed" % GeneratorType 413 raise PicklingError(msg) --> 414 StockPickler.save(self, obj, save_persistent_id) File [C:\ProgramData\miniforge3\envs\geo\Lib\pickle.py:558](file:///C:/ProgramData/miniforge3/envs/geo/Lib/pickle.py#line=557), in _Pickler.save(self, obj, save_persistent_id) 556 f = self.dispatch.get(t) 557 if f is not None: --> 558 f(self, obj) # Call unbound method with explicit self 559 return 561 # Check private dispatch table if any, or else 562 # copyreg.dispatch_table File [C:\ProgramData\miniforge3\envs\geo\Lib\site-packages\dill\_dill.py:1217](file:///C:/ProgramData/miniforge3/envs/geo/Lib/site-packages/dill/_dill.py#line=1216), in save_module_dict(pickler, obj) 1214 if is_dill(pickler, child=False) and pickler._session: 1215 # we only care about session the first pass thru 1216 pickler._first_pass = False -> 1217 StockPickler.save_dict(pickler, obj) 1218 logger.trace(pickler, "# D2") 1219 return File [C:\ProgramData\miniforge3\envs\geo\Lib\pickle.py:990](file:///C:/ProgramData/miniforge3/envs/geo/Lib/pickle.py#line=989), in _Pickler.save_dict(self, obj) 987 self.write(MARK + DICT) 989 self.memoize(obj) --> 990 self._batch_setitems(obj.items()) File [C:\ProgramData\miniforge3\envs\geo\Lib\site-packages\datasets\utils\_dill.py:83](file:///C:/ProgramData/miniforge3/envs/geo/Lib/site-packages/datasets/utils/_dill.py#line=82), in Pickler._batch_setitems(self, items) 80 from datasets.fingerprint import Hasher 82 items = sorted(items, key=lambda x: Hasher.hash(x[0])) ---> 83 dill.Pickler._batch_setitems(self, items) File [C:\ProgramData\miniforge3\envs\geo\Lib\pickle.py:1014](file:///C:/ProgramData/miniforge3/envs/geo/Lib/pickle.py#line=1013), in _Pickler._batch_setitems(self, items) 1012 for k, v in tmp: 1013 save(k) -> 1014 save(v) 1015 write(SETITEMS) 1016 elif n: File [C:\ProgramData\miniforge3\envs\geo\Lib\site-packages\datasets\utils\_dill.py:70](file:///C:/ProgramData/miniforge3/envs/geo/Lib/site-packages/datasets/utils/_dill.py#line=69), in Pickler.save(self, obj, save_persistent_id) 68 if obj_type is FunctionType: 69 obj = getattr(obj, "_torchdynamo_orig_callable", obj) ---> 70 dill.Pickler.save(self, obj, save_persistent_id=save_persistent_id) File [C:\ProgramData\miniforge3\envs\geo\Lib\site-packages\dill\_dill.py:414](file:///C:/ProgramData/miniforge3/envs/geo/Lib/site-packages/dill/_dill.py#line=413), in Pickler.save(self, obj, save_persistent_id) 412 msg = "Can't pickle %s: attribute lookup builtins.generator failed" % GeneratorType 413 raise PicklingError(msg) --> 414 StockPickler.save(self, obj, save_persistent_id) File [C:\ProgramData\miniforge3\envs\geo\Lib\pickle.py:601](file:///C:/ProgramData/miniforge3/envs/geo/Lib/pickle.py#line=600), in _Pickler.save(self, obj, save_persistent_id) 597 raise PicklingError("Tuple returned by %s must have " 598 "two to six elements" % reduce) 600 # Save the reduce() output and finally memoize the object --> 601 self.save_reduce(obj=obj, *rv) File [C:\ProgramData\miniforge3\envs\geo\Lib\pickle.py:690](file:///C:/ProgramData/miniforge3/envs/geo/Lib/pickle.py#line=689), in _Pickler.save_reduce(self, func, args, state, listitems, dictitems, state_setter, obj) 688 else: 689 save(func) --> 690 save(args) 691 write(REDUCE) 693 if obj is not None: 694 # If the object is already in the memo, this means it is 695 # recursive. In this case, throw away everything we put on the 696 # stack, and fetch the object back from the memo. File [C:\ProgramData\miniforge3\envs\geo\Lib\site-packages\datasets\utils\_dill.py:70](file:///C:/ProgramData/miniforge3/envs/geo/Lib/site-packages/datasets/utils/_dill.py#line=69), in Pickler.save(self, obj, save_persistent_id) 68 if obj_type is FunctionType: 69 obj = getattr(obj, "_torchdynamo_orig_callable", obj) ---> 70 dill.Pickler.save(self, obj, save_persistent_id=save_persistent_id) File [C:\ProgramData\miniforge3\envs\geo\Lib\site-packages\dill\_dill.py:414](file:///C:/ProgramData/miniforge3/envs/geo/Lib/site-packages/dill/_dill.py#line=413), in Pickler.save(self, obj, save_persistent_id) 412 msg = "Can't pickle %s: attribute lookup builtins.generator failed" % GeneratorType 413 raise PicklingError(msg) --> 414 StockPickler.save(self, obj, save_persistent_id) File [C:\ProgramData\miniforge3\envs\geo\Lib\pickle.py:558](file:///C:/ProgramData/miniforge3/envs/geo/Lib/pickle.py#line=557), in _Pickler.save(self, obj, save_persistent_id) 556 f = self.dispatch.get(t) 557 if f is not None: --> 558 f(self, obj) # Call unbound method with explicit self 559 return 561 # Check private dispatch table if any, or else 562 # copyreg.dispatch_table File [C:\ProgramData\miniforge3\envs\geo\Lib\pickle.py:920](file:///C:/ProgramData/miniforge3/envs/geo/Lib/pickle.py#line=919), in _Pickler.save_tuple(self, obj) 918 write(MARK) 919 for element in obj: --> 920 save(element) 922 if id(obj) in memo: 923 # Subtle. d was not in memo when we entered save_tuple(), so 924 # the process of saving the tuple's elements must have saved (...) 928 # could have been done in the "for element" loop instead, but 929 # recursive tuples are a rare thing. 930 get = self.get(memo[id(obj)][0]) File [C:\ProgramData\miniforge3\envs\geo\Lib\site-packages\datasets\utils\_dill.py:70](file:///C:/ProgramData/miniforge3/envs/geo/Lib/site-packages/datasets/utils/_dill.py#line=69), in Pickler.save(self, obj, save_persistent_id) 68 if obj_type is FunctionType: 69 obj = getattr(obj, "_torchdynamo_orig_callable", obj) ---> 70 dill.Pickler.save(self, obj, save_persistent_id=save_persistent_id) File [C:\ProgramData\miniforge3\envs\geo\Lib\site-packages\dill\_dill.py:414](file:///C:/ProgramData/miniforge3/envs/geo/Lib/site-packages/dill/_dill.py#line=413), in Pickler.save(self, obj, save_persistent_id) 412 msg = "Can't pickle %s: attribute lookup builtins.generator failed" % GeneratorType 413 raise PicklingError(msg) --> 414 StockPickler.save(self, obj, save_persistent_id) File [C:\ProgramData\miniforge3\envs\geo\Lib\pickle.py:601](file:///C:/ProgramData/miniforge3/envs/geo/Lib/pickle.py#line=600), in _Pickler.save(self, obj, save_persistent_id) 597 raise PicklingError("Tuple returned by %s must have " 598 "two to six elements" % reduce) 600 # Save the reduce() output and finally memoize the object --> 601 self.save_reduce(obj=obj, *rv) File [C:\ProgramData\miniforge3\envs\geo\Lib\pickle.py:715](file:///C:/ProgramData/miniforge3/envs/geo/Lib/pickle.py#line=714), in _Pickler.save_reduce(self, func, args, state, listitems, dictitems, state_setter, obj) 713 if state is not None: 714 if state_setter is None: --> 715 save(state) 716 write(BUILD) 717 else: 718 # If a state_setter is specified, call it instead of load_build 719 # to update obj's with its previous state. 720 # First, push state_setter and its tuple of expected arguments 721 # (obj, state) onto the stack. File [C:\ProgramData\miniforge3\envs\geo\Lib\site-packages\datasets\utils\_dill.py:70](file:///C:/ProgramData/miniforge3/envs/geo/Lib/site-packages/datasets/utils/_dill.py#line=69), in Pickler.save(self, obj, save_persistent_id) 68 if obj_type is FunctionType: 69 obj = getattr(obj, "_torchdynamo_orig_callable", obj) ---> 70 dill.Pickler.save(self, obj, save_persistent_id=save_persistent_id) File [C:\ProgramData\miniforge3\envs\geo\Lib\site-packages\dill\_dill.py:414](file:///C:/ProgramData/miniforge3/envs/geo/Lib/site-packages/dill/_dill.py#line=413), in Pickler.save(self, obj, save_persistent_id) 412 msg = "Can't pickle %s: attribute lookup builtins.generator failed" % GeneratorType 413 raise PicklingError(msg) --> 414 StockPickler.save(self, obj, save_persistent_id) File [C:\ProgramData\miniforge3\envs\geo\Lib\pickle.py:558](file:///C:/ProgramData/miniforge3/envs/geo/Lib/pickle.py#line=557), in _Pickler.save(self, obj, save_persistent_id) 556 f = self.dispatch.get(t) 557 if f is not None: --> 558 f(self, obj) # Call unbound method with explicit self 559 return 561 # Check private dispatch table if any, or else 562 # copyreg.dispatch_table File [C:\ProgramData\miniforge3\envs\geo\Lib\site-packages\dill\_dill.py:1217](file:///C:/ProgramData/miniforge3/envs/geo/Lib/site-packages/dill/_dill.py#line=1216), in save_module_dict(pickler, obj) 1214 if is_dill(pickler, child=False) and pickler._session: 1215 # we only care about session the first pass thru 1216 pickler._first_pass = False -> 1217 StockPickler.save_dict(pickler, obj) 1218 logger.trace(pickler, "# D2") 1219 return File [C:\ProgramData\miniforge3\envs\geo\Lib\pickle.py:990](file:///C:/ProgramData/miniforge3/envs/geo/Lib/pickle.py#line=989), in _Pickler.save_dict(self, obj) 987 self.write(MARK + DICT) 989 self.memoize(obj) --> 990 self._batch_setitems(obj.items()) File [C:\ProgramData\miniforge3\envs\geo\Lib\site-packages\datasets\utils\_dill.py:83](file:///C:/ProgramData/miniforge3/envs/geo/Lib/site-packages/datasets/utils/_dill.py#line=82), in Pickler._batch_setitems(self, items) 80 from datasets.fingerprint import Hasher 82 items = sorted(items, key=lambda x: Hasher.hash(x[0])) ---> 83 dill.Pickler._batch_setitems(self, items) File [C:\ProgramData\miniforge3\envs\geo\Lib\pickle.py:1014](file:///C:/ProgramData/miniforge3/envs/geo/Lib/pickle.py#line=1013), in _Pickler._batch_setitems(self, items) 1012 for k, v in tmp: 1013 save(k) -> 1014 save(v) 1015 write(SETITEMS) 1016 elif n: File [C:\ProgramData\miniforge3\envs\geo\Lib\site-packages\datasets\utils\_dill.py:70](file:///C:/ProgramData/miniforge3/envs/geo/Lib/site-packages/datasets/utils/_dill.py#line=69), in Pickler.save(self, obj, save_persistent_id) 68 if obj_type is FunctionType: 69 obj = getattr(obj, "_torchdynamo_orig_callable", obj) ---> 70 dill.Pickler.save(self, obj, save_persistent_id=save_persistent_id) File [C:\ProgramData\miniforge3\envs\geo\Lib\site-packages\dill\_dill.py:414](file:///C:/ProgramData/miniforge3/envs/geo/Lib/site-packages/dill/_dill.py#line=413), in Pickler.save(self, obj, save_persistent_id) 412 msg = "Can't pickle %s: attribute lookup builtins.generator failed" % GeneratorType 413 raise PicklingError(msg) --> 414 StockPickler.save(self, obj, save_persistent_id) File [C:\ProgramData\miniforge3\envs\geo\Lib\pickle.py:558](file:///C:/ProgramData/miniforge3/envs/geo/Lib/pickle.py#line=557), in _Pickler.save(self, obj, save_persistent_id) 556 f = self.dispatch.get(t) 557 if f is not None: --> 558 f(self, obj) # Call unbound method with explicit self 559 return 561 # Check private dispatch table if any, or else 562 # copyreg.dispatch_table File [C:\ProgramData\miniforge3\envs\geo\Lib\site-packages\dill\_dill.py:1217](file:///C:/ProgramData/miniforge3/envs/geo/Lib/site-packages/dill/_dill.py#line=1216), in save_module_dict(pickler, obj) 1214 if is_dill(pickler, child=False) and pickler._session: 1215 # we only care about session the first pass thru 1216 pickler._first_pass = False -> 1217 StockPickler.save_dict(pickler, obj) 1218 logger.trace(pickler, "# D2") 1219 return File [C:\ProgramData\miniforge3\envs\geo\Lib\pickle.py:990](file:///C:/ProgramData/miniforge3/envs/geo/Lib/pickle.py#line=989), in _Pickler.save_dict(self, obj) 987 self.write(MARK + DICT) 989 self.memoize(obj) --> 990 self._batch_setitems(obj.items()) File [C:\ProgramData\miniforge3\envs\geo\Lib\site-packages\datasets\utils\_dill.py:83](file:///C:/ProgramData/miniforge3/envs/geo/Lib/site-packages/datasets/utils/_dill.py#line=82), in Pickler._batch_setitems(self, items) 80 from datasets.fingerprint import Hasher 82 items = sorted(items, key=lambda x: Hasher.hash(x[0])) ---> 83 dill.Pickler._batch_setitems(self, items) File [C:\ProgramData\miniforge3\envs\geo\Lib\pickle.py:1019](file:///C:/ProgramData/miniforge3/envs/geo/Lib/pickle.py#line=1018), in _Pickler._batch_setitems(self, items) 1017 k, v = tmp[0] 1018 save(k) -> 1019 save(v) 1020 write(SETITEM) 1021 # else tmp is empty, and we're done File [C:\ProgramData\miniforge3\envs\geo\Lib\site-packages\datasets\utils\_dill.py:70](file:///C:/ProgramData/miniforge3/envs/geo/Lib/site-packages/datasets/utils/_dill.py#line=69), in Pickler.save(self, obj, save_persistent_id) 68 if obj_type is FunctionType: 69 obj = getattr(obj, "_torchdynamo_orig_callable", obj) ---> 70 dill.Pickler.save(self, obj, save_persistent_id=save_persistent_id) File [C:\ProgramData\miniforge3\envs\geo\Lib\site-packages\dill\_dill.py:414](file:///C:/ProgramData/miniforge3/envs/geo/Lib/site-packages/dill/_dill.py#line=413), in Pickler.save(self, obj, save_persistent_id) 412 msg = "Can't pickle %s: attribute lookup builtins.generator failed" % GeneratorType 413 raise PicklingError(msg) --> 414 StockPickler.save(self, obj, save_persistent_id) File [C:\ProgramData\miniforge3\envs\geo\Lib\pickle.py:601](file:///C:/ProgramData/miniforge3/envs/geo/Lib/pickle.py#line=600), in _Pickler.save(self, obj, save_persistent_id) 597 raise PicklingError("Tuple returned by %s must have " 598 "two to six elements" % reduce) 600 # Save the reduce() output and finally memoize the object --> 601 self.save_reduce(obj=obj, *rv) File [C:\ProgramData\miniforge3\envs\geo\Lib\pickle.py:715](file:///C:/ProgramData/miniforge3/envs/geo/Lib/pickle.py#line=714), in _Pickler.save_reduce(self, func, args, state, listitems, dictitems, state_setter, obj) 713 if state is not None: 714 if state_setter is None: --> 715 save(state) 716 write(BUILD) 717 else: 718 # If a state_setter is specified, call it instead of load_build 719 # to update obj's with its previous state. 720 # First, push state_setter and its tuple of expected arguments 721 # (obj, state) onto the stack. File [C:\ProgramData\miniforge3\envs\geo\Lib\site-packages\datasets\utils\_dill.py:70](file:///C:/ProgramData/miniforge3/envs/geo/Lib/site-packages/datasets/utils/_dill.py#line=69), in Pickler.save(self, obj, save_persistent_id) 68 if obj_type is FunctionType: 69 obj = getattr(obj, "_torchdynamo_orig_callable", obj) ---> 70 dill.Pickler.save(self, obj, save_persistent_id=save_persistent_id) File [C:\ProgramData\miniforge3\envs\geo\Lib\site-packages\dill\_dill.py:414](file:///C:/ProgramData/miniforge3/envs/geo/Lib/site-packages/dill/_dill.py#line=413), in Pickler.save(self, obj, save_persistent_id) 412 msg = "Can't pickle %s: attribute lookup builtins.generator failed" % GeneratorType 413 raise PicklingError(msg) --> 414 StockPickler.save(self, obj, save_persistent_id) File [C:\ProgramData\miniforge3\envs\geo\Lib\pickle.py:558](file:///C:/ProgramData/miniforge3/envs/geo/Lib/pickle.py#line=557), in _Pickler.save(self, obj, save_persistent_id) 556 f = self.dispatch.get(t) 557 if f is not None: --> 558 f(self, obj) # Call unbound method with explicit self 559 return 561 # Check private dispatch table if any, or else 562 # copyreg.dispatch_table File [C:\ProgramData\miniforge3\envs\geo\Lib\site-packages\dill\_dill.py:1217](file:///C:/ProgramData/miniforge3/envs/geo/Lib/site-packages/dill/_dill.py#line=1216), in save_module_dict(pickler, obj) 1214 if is_dill(pickler, child=False) and pickler._session: 1215 # we only care about session the first pass thru 1216 pickler._first_pass = False -> 1217 StockPickler.save_dict(pickler, obj) 1218 logger.trace(pickler, "# D2") 1219 return File [C:\ProgramData\miniforge3\envs\geo\Lib\pickle.py:990](file:///C:/ProgramData/miniforge3/envs/geo/Lib/pickle.py#line=989), in _Pickler.save_dict(self, obj) 987 self.write(MARK + DICT) 989 self.memoize(obj) --> 990 self._batch_setitems(obj.items()) File [C:\ProgramData\miniforge3\envs\geo\Lib\site-packages\datasets\utils\_dill.py:83](file:///C:/ProgramData/miniforge3/envs/geo/Lib/site-packages/datasets/utils/_dill.py#line=82), in Pickler._batch_setitems(self, items) 80 from datasets.fingerprint import Hasher 82 items = sorted(items, key=lambda x: Hasher.hash(x[0])) ---> 83 dill.Pickler._batch_setitems(self, items) File [C:\ProgramData\miniforge3\envs\geo\Lib\pickle.py:1014](file:///C:/ProgramData/miniforge3/envs/geo/Lib/pickle.py#line=1013), in _Pickler._batch_setitems(self, items) 1012 for k, v in tmp: 1013 save(k) -> 1014 save(v) 1015 write(SETITEMS) 1016 elif n: [... skipping similar frames: Pickler.save at line 70 (1 times), Pickler.save at line 414 (1 times)] File [C:\ProgramData\miniforge3\envs\geo\Lib\pickle.py:558](file:///C:/ProgramData/miniforge3/envs/geo/Lib/pickle.py#line=557), in _Pickler.save(self, obj, save_persistent_id) 556 f = self.dispatch.get(t) 557 if f is not None: --> 558 f(self, obj) # Call unbound method with explicit self 559 return 561 # Check private dispatch table if any, or else 562 # copyreg.dispatch_table File [C:\ProgramData\miniforge3\envs\geo\Lib\site-packages\dill\_dill.py:1217](file:///C:/ProgramData/miniforge3/envs/geo/Lib/site-packages/dill/_dill.py#line=1216), in save_module_dict(pickler, obj) 1214 if is_dill(pickler, child=False) and pickler._session: 1215 # we only care about session the first pass thru 1216 pickler._first_pass = False -> 1217 StockPickler.save_dict(pickler, obj) 1218 logger.trace(pickler, "# D2") 1219 return File [C:\ProgramData\miniforge3\envs\geo\Lib\pickle.py:990](file:///C:/ProgramData/miniforge3/envs/geo/Lib/pickle.py#line=989), in _Pickler.save_dict(self, obj) 987 self.write(MARK + DICT) 989 self.memoize(obj) --> 990 self._batch_setitems(obj.items()) File [C:\ProgramData\miniforge3\envs\geo\Lib\site-packages\datasets\utils\_dill.py:83](file:///C:/ProgramData/miniforge3/envs/geo/Lib/site-packages/datasets/utils/_dill.py#line=82), in Pickler._batch_setitems(self, items) 80 from datasets.fingerprint import Hasher 82 items = sorted(items, key=lambda x: Hasher.hash(x[0])) ---> 83 dill.Pickler._batch_setitems(self, items) File [C:\ProgramData\miniforge3\envs\geo\Lib\pickle.py:1014](file:///C:/ProgramData/miniforge3/envs/geo/Lib/pickle.py#line=1013), in _Pickler._batch_setitems(self, items) 1012 for k, v in tmp: 1013 save(k) -> 1014 save(v) 1015 write(SETITEMS) 1016 elif n: [... skipping similar frames: Pickler.save at line 70 (1 times), Pickler.save at line 414 (1 times)] File [C:\ProgramData\miniforge3\envs\geo\Lib\pickle.py:601](file:///C:/ProgramData/miniforge3/envs/geo/Lib/pickle.py#line=600), in _Pickler.save(self, obj, save_persistent_id) 597 raise PicklingError("Tuple returned by %s must have " 598 "two to six elements" % reduce) 600 # Save the reduce() output and finally memoize the object --> 601 self.save_reduce(obj=obj, *rv) File [C:\ProgramData\miniforge3\envs\geo\Lib\pickle.py:715](file:///C:/ProgramData/miniforge3/envs/geo/Lib/pickle.py#line=714), in _Pickler.save_reduce(self, func, args, state, listitems, dictitems, state_setter, obj) 713 if state is not None: 714 if state_setter is None: --> 715 save(state) 716 write(BUILD) 717 else: 718 # If a state_setter is specified, call it instead of load_build 719 # to update obj's with its previous state. 720 # First, push state_setter and its tuple of expected arguments 721 # (obj, state) onto the stack. File [C:\ProgramData\miniforge3\envs\geo\Lib\site-packages\datasets\utils\_dill.py:70](file:///C:/ProgramData/miniforge3/envs/geo/Lib/site-packages/datasets/utils/_dill.py#line=69), in Pickler.save(self, obj, save_persistent_id) 68 if obj_type is FunctionType: 69 obj = getattr(obj, "_torchdynamo_orig_callable", obj) ---> 70 dill.Pickler.save(self, obj, save_persistent_id=save_persistent_id) File [C:\ProgramData\miniforge3\envs\geo\Lib\site-packages\dill\_dill.py:414](file:///C:/ProgramData/miniforge3/envs/geo/Lib/site-packages/dill/_dill.py#line=413), in Pickler.save(self, obj, save_persistent_id) 412 msg = "Can't pickle %s: attribute lookup builtins.generator failed" % GeneratorType 413 raise PicklingError(msg) --> 414 StockPickler.save(self, obj, save_persistent_id) File [C:\ProgramData\miniforge3\envs\geo\Lib\pickle.py:558](file:///C:/ProgramData/miniforge3/envs/geo/Lib/pickle.py#line=557), in _Pickler.save(self, obj, save_persistent_id) 556 f = self.dispatch.get(t) 557 if f is not None: --> 558 f(self, obj) # Call unbound method with explicit self 559 return 561 # Check private dispatch table if any, or else 562 # copyreg.dispatch_table File [C:\ProgramData\miniforge3\envs\geo\Lib\pickle.py:920](file:///C:/ProgramData/miniforge3/envs/geo/Lib/pickle.py#line=919), in _Pickler.save_tuple(self, obj) 918 write(MARK) 919 for element in obj: --> 920 save(element) 922 if id(obj) in memo: 923 # Subtle. d was not in memo when we entered save_tuple(), so 924 # the process of saving the tuple's elements must have saved (...) 928 # could have been done in the "for element" loop instead, but 929 # recursive tuples are a rare thing. 930 get = self.get(memo[id(obj)][0]) File [C:\ProgramData\miniforge3\envs\geo\Lib\site-packages\datasets\utils\_dill.py:70](file:///C:/ProgramData/miniforge3/envs/geo/Lib/site-packages/datasets/utils/_dill.py#line=69), in Pickler.save(self, obj, save_persistent_id) 68 if obj_type is FunctionType: 69 obj = getattr(obj, "_torchdynamo_orig_callable", obj) ---> 70 dill.Pickler.save(self, obj, save_persistent_id=save_persistent_id) File [C:\ProgramData\miniforge3\envs\geo\Lib\site-packages\dill\_dill.py:414](file:///C:/ProgramData/miniforge3/envs/geo/Lib/site-packages/dill/_dill.py#line=413), in Pickler.save(self, obj, save_persistent_id) 412 msg = "Can't pickle %s: attribute lookup builtins.generator failed" % GeneratorType 413 raise PicklingError(msg) --> 414 StockPickler.save(self, obj, save_persistent_id) File [C:\ProgramData\miniforge3\envs\geo\Lib\pickle.py:558](file:///C:/ProgramData/miniforge3/envs/geo/Lib/pickle.py#line=557), in _Pickler.save(self, obj, save_persistent_id) 556 f = self.dispatch.get(t) 557 if f is not None: --> 558 f(self, obj) # Call unbound method with explicit self 559 return 561 # Check private dispatch table if any, or else 562 # copyreg.dispatch_table File [C:\ProgramData\miniforge3\envs\geo\Lib\pickle.py:809](file:///C:/ProgramData/miniforge3/envs/geo/Lib/pickle.py#line=808), in _Pickler.save_bytes(self, obj) 806 self.save_reduce(codecs.encode, 807 (str(obj, 'latin1'), 'latin1'), obj=obj) 808 return --> 809 self._save_bytes_no_memo(obj) 810 self.memoize(obj) File [C:\ProgramData\miniforge3\envs\geo\Lib\pickle.py:797](file:///C:/ProgramData/miniforge3/envs/geo/Lib/pickle.py#line=796), in _Pickler._save_bytes_no_memo(self, obj) 795 self._write_large_bytes(BINBYTES8 + pack("<Q", n), obj) 796 elif n >= self.framer._FRAME_SIZE_TARGET: --> 797 self._write_large_bytes(BINBYTES + pack("<I", n), obj) 798 else: 799 self.write(BINBYTES + pack("<I", n) + obj) File [C:\ProgramData\miniforge3\envs\geo\Lib\pickle.py:254](file:///C:/ProgramData/miniforge3/envs/geo/Lib/pickle.py#line=253), in _Framer.write_large_bytes(self, header, payload) 247 # Perform direct write of the header and payload of the large binary 248 # object. Be careful not to concatenate the header and the payload 249 # prior to calling 'write' as we do not want to allocate a large 250 # temporary bytes object. 251 # We intentionally do not insert a protocol 4 frame opcode to make 252 # it possible to optimize file.read calls in the loader. 253 write(header) --> 254 write(payload) MemoryError: ``` </details> Memory error is an expected type of error in such case, but when I started digging down, I found out that it occurs in a kinda unexpected place - in `create_config_id` function. It tries to hash `config_kwargs_to_add_to_suffix`, including generator function itself. I modified the `BuilderConfig.create_config_id` code like this to check which values are hashed and how much time it takes to hash them and ran it on a toy dataset: ``` print(config_kwargs_to_add_to_suffix) start_time = time.time() if all(isinstance(v, (str, bool, int, float)) for v in config_kwargs_to_add_to_suffix.values()): suffix = ",".join( str(k) + "=" + urllib.parse.quote_plus(str(v)) for k, v in config_kwargs_to_add_to_suffix.items() ) if len(suffix) > 32: # hash if too long suffix = Hasher.hash(config_kwargs_to_add_to_suffix) else: suffix = Hasher.hash(config_kwargs_to_add_to_suffix) end_time = time.time() print(f"Execution time: {end_time - start_time:.4f} seconds") print(suffix) ``` In my case the content of `config_kwargs_to_add_to_suffix` was like this: ``` {'features': {'key': Value(dtype='int64', id=None), 'x': Array3D(shape=(44, 128, 128), dtype='float32', id=None), 'y_class': Array2D(shape=(128, 128), dtype='int32', id=None)}, 'gen_kwargs': None, 'generator': <function generate_tiles.<locals>.dataset_generator at 0x00000139D10D7920>, 'split': NamedSplit('train')} ``` Also I noticed that hashing took a significant amount of time - 43.1482 seconds, while the overall function execution (with data loading, batching and saving dataset) took 2min 45s. The output of `create_config_id` is just a dataset id, so, it is inappropirately large amount of time. But when I added `config_kwargs_to_add_to_suffix.pop("generator", None)`, the hashing took only 0.0060 seconds. Maybe we shouldn't hash the generator function, as it can be really computationally and memory expensive. ### Steps to reproduce the bug This is a simplified example of a workflow I used to generate dataset. But I think that you can use almost any workflow to reproduce that bug. ``` import pystac import pystac_client import planetary_computer import numpy as np import xarray as xr import rioxarray as rxr import dask import xbatcher import datasets # Loading a dataset, in our case - single Landsat image catalog = pystac_client.Client.open( "https://planetarycomputer.microsoft.com/api/stac/v1", modifier=planetary_computer.sign_inplace, ) brazil = [-60.2, -3.31] time_of_interest = "2021-06-01/2021-08-31" search = catalog.search(collections=["landsat-c2-l2"], intersects={"type": "Point", "coordinates": brazil}, datetime=time_of_interest) items = search.item_collection() item = min(items, key=lambda item: pystac.extensions.eo.EOExtension.ext(item).cloud_cover) # Getting x data bands = [] for band in ["red", "green", "blue", "nir08", "coastal", "swir16", "swir22", "lwir11"]: with rxr.open_rasterio(item.assets[band].href, chunks=True, lock=True) as raster: raster = raster.to_dataset('band') #print(raster) raster = raster.rename({1: band}) bands.append(raster) x = xr.merge(bands).squeeze().to_array("band").persist() # Getting y data with rxr.open_rasterio(item.assets['qa_pixel'].href, chunks=True, lock=True) as raster: y = raster.squeeze().persist() # Setting up batches generators x_batches = xbatcher.BatchGenerator(ds=x, input_dims={"x": 256, "y": 256}) y_batches = xbatcher.BatchGenerator(ds=y, input_dims={"x": 256, "y": 256}) # Filtering samples that contain only nodata samples = list(range(len(x_batches))) samples_filtered = [] for i in samples: if not np.array_equal(np.unique(x_batches[i]), np.array([0.])) and not np.array_equal(np.unique(y_batches[i]), np.array([0])): samples_filtered.append(i) samples = samples_filtered np.random.shuffle(samples) # Setting up features feat = { "key": datasets.Value(dtype="int64"), "x": datasets.Array3D(dtype="float32", shape=(4, 256, 256)), "y": datasets.Array2D(dtype="int32", shape=(256, 256)) } feat = datasets.Features(feat) # Setting up a generator def dataset_generator(): for index in samples: data_dict = { "key": index, "x": x_batches[index].data, "y": y_batches[index].data, } yield data_dict # Create dataset ds = datasets.Dataset.from_generator( dataset_generator, features=feat, cache_dir="temp/cache", ) ``` Please, try adding `config_kwargs_to_add_to_suffix.pop("generator", None)` to `BuilderConfig.create_config_id` and then measuring how much time it takes to run ``` if all(isinstance(v, (str, bool, int, float)) for v in config_kwargs_to_add_to_suffix.values()): suffix = ",".join( str(k) + "=" + urllib.parse.quote_plus(str(v)) for k, v in config_kwargs_to_add_to_suffix.items() ) if len(suffix) > 32: # hash if too long suffix = Hasher.hash(config_kwargs_to_add_to_suffix) else: suffix = Hasher.hash(config_kwargs_to_add_to_suffix) ``` code block with and without `config_kwargs_to_add_to_suffix.pop("generator", None)` In my case the difference was 3.3828 seconds without popping generator function and 0.0010 seconds with popping. ### Expected behavior Much faster hashing and no MemoryErrors ### Environment info - `datasets` version: 3.5.0 - Platform: Windows-11-10.0.26100-SP0 - Python version: 3.12.9 - `huggingface_hub` version: 0.30.1 - PyArrow version: 17.0.0 - Pandas version: 2.2.2 - `fsspec` version: 2024.12.0
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7,512
.map() fails if function uses pyvista
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[ "I found a similar (?) issue in https://github.com/huggingface/datasets/issues/6435, where someone had issues with forks and CUDA. According to https://huggingface.co/docs/datasets/main/en/process#multiprocessing we should do \n\n```\nfrom multiprocess import set_start_method\nset_start_method(\"spawn\")\n```\n\nto...
2025-04-14T19:43:02Z
2025-04-14T20:01:53Z
null
NONE
null
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### Describe the bug Using PyVista inside a .map() produces a crash with `objc[78796]: +[NSResponder initialize] may have been in progress in another thread when fork() was called. We cannot safely call it or ignore it in the fork() child process. Crashing instead. Set a breakpoint on objc_initializeAfterForkError to debug.` ### Steps to reproduce the bug Run ```python import numpy as np import pyvista as pv import datasets data = [{"coords": np.random.rand(5, 3)} for _ in range(3)] def render_point(example): plotter = pv.Plotter(off_screen=True) cloud = pv.PolyData(example["coords"]) plotter.add_mesh(cloud) img = plotter.screenshot(return_img=True) return {"image": img} # breaks if num_proc>1 ds = datasets.Dataset.from_list(data).map(render_point, num_proc=2) ``` ### Expected behavior It should work. Just like when I use a process pool to make it work. ```python import numpy as np import pyvista as pv import multiprocessing data = [{"coords": np.random.rand(5, 3)} for _ in range(3)] def render_point(example): plotter = pv.Plotter(off_screen=True) cloud = pv.PolyData(example["coords"]) plotter.add_mesh(cloud) img = plotter.screenshot(return_img=True) return {"image": img} if __name__ == "__main__": with multiprocessing.Pool(processes=2) as pool: results = pool.map(render_point, data) print(results[0]["image"].shape) ``` ### Environment info - `datasets` version: 3.3.2 - Platform: macOS-15.3.2-arm64-arm-64bit - Python version: 3.11.10 - `huggingface_hub` version: 0.28.1 - PyArrow version: 18.1.0 - Pandas version: 2.2.3 - `fsspec` version: 2024.10.0 And then I suppose pyvista info is good to have. ```python import pyvista as pv print(pv.Report()) ``` gives -------------------------------------------------------------------------------- Date: Mon Apr 14 21:42:08 2025 CEST OS : Darwin (macOS 15.3.2) CPU(s) : 10 Machine : arm64 Architecture : 64bit RAM : 32.0 GiB Environment : IPython File system : apfs GPU Vendor : Apple GPU Renderer : Apple M1 Max GPU Version : 4.1 Metal - 89.3 MathText Support : True Python 3.11.10 (main, Oct 7 2024, 23:25:27) [Clang 18.1.8 ] pyvista : 0.44.2 vtk : 9.4.0 numpy : 2.2.2 matplotlib : 3.10.0 scooby : 0.10.0 pooch : 1.8.2 pillow : 11.1.0 imageio : 2.36.1 PyQt5 : 5.15.11 IPython : 8.30.0 scipy : 1.14.1 tqdm : 4.67.1 jupyterlab : 4.3.5 nest_asyncio : 1.6.0 --------------------------------------------------------------------------------
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7,510
Incompatibile dill version (0.3.9) in datasets 2.18.0 - 3.5.0
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[ "Hi ! We can bump `dill` to 0.3.9 if we make sure it's deterministic and doesn't break the caching mechanism in `datasets`.\n\nWould you be interested in opening a PR ? Then we can run the CI to see if it works", "Hi!. Yeah I can do it. Should I make any changes besides dill versions?", "There are probably some...
2025-04-14T07:22:44Z
2025-09-15T08:37:49Z
2025-09-15T08:37:49Z
NONE
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### Describe the bug Datasets 2.18.0 - 3.5.0 has a dependency on dill < 0.3.9. This causes errors with dill >= 0.3.9. Could you please take a look into it and make it compatible? ### Steps to reproduce the bug 1. Install setuptools >= 2.18.0 2. Install dill >=0.3.9 3. Run pip check 4. Output: ERROR: pip's dependency resolver does not currently take into account all the packages that are installed. This behaviour is the source of the following dependency conflicts. datasets 2.18.0 requires dill<0.3.9,>=0.3.0, but you have dill 0.3.9 which is incompatible. ### Expected behavior Pip install both libraries without any errors ### Environment info Datasets version: 2.18 - 3.5 Python: 3.11
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7,509
Dataset uses excessive memory when loading files
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[ "small update: I converted the jsons to parquet and it now works well with 32 proc and the same node. \nI still think this needs to be understood, since json is a very popular and easy-to-use format. ", "Hi ! The JSON loader loads full files in memory, unless they are JSON Lines. In this case it iterates on the J...
2025-04-13T21:09:49Z
2025-04-28T15:18:55Z
null
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### Describe the bug Hi I am having an issue when loading a dataset. I have about 200 json files each about 1GB (total about 215GB). each row has a few features which are a list of ints. I am trying to load the dataset using `load_dataset`. The dataset is about 1.5M samples I use `num_proc=32` and a node with 378GB of memory. About a third of the way there I get an OOM. I also saw an old bug with a similar issue, which says to set `writer_batch_size`. I tried to lower it to 10, but it still crashed. I also tried to lower the `num_proc` to 16 and even 8, but still the same issue. ### Steps to reproduce the bug `dataset = load_dataset("json", data_dir=data_config.train_path, num_proc=data_config.num_proc, writer_batch_size=50)["train"]` ### Expected behavior Loading a dataset with more than 100GB to spare should not cause an OOM error. maybe i am missing something but I would love some help. ### Environment info - `datasets` version: 3.5.0 - Platform: Linux-6.6.20-aufs-1-x86_64-with-glibc2.36 - Python version: 3.11.2 - `huggingface_hub` version: 0.29.1 - PyArrow version: 19.0.1 - Pandas version: 2.2.3 - `fsspec` version: 2024.9.0
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2,986,612,934
I_kwDODunzps6yBBjG
7,508
Iterating over Image feature columns is extremely slow
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[ "Hi ! Could it be because the `Image()` type in dataset does `image = Image.open(image_path)` and also `image.load()` which actually loads the image data in memory ? This is needed to avoid too many open files issues, see https://github.com/huggingface/datasets/issues/3985", "Yes, that seems to be it. For my pur...
2025-04-10T19:00:54Z
2025-04-15T17:57:08Z
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We are trying to load datasets where the image column stores `PIL.PngImagePlugin.PngImageFile` images. However, iterating over these datasets is extremely slow. What I have found: 1. It is the presence of the image column that causes the slowdown. Removing the column from the dataset results in blazingly fast (as expected) times 2. It is ~2x faster to iterate when the column contains a single image as opposed to a list of images i.e., the feature is a Sequence of Image objects. We often need multiple images per sample, so we need to work with a list of images 3. It is ~17x faster to store paths to PNG files and load them using `PIL.Image.open`, as opposed to iterating over a `Dataset` with an Image column, and ~30x faster compared to `Sequence` of `Image`s. See a simple script below with an openly available dataset. It would be great to understand the standard practices for storing and loading multimodal datasets (image + text). https://huggingface.co/docs/datasets/en/image_load seems a bit underdeveloped? (e.g., `dataset.decode` only works with `IterableDataset`, but it's not clear from the doc) Thanks! ```python from datasets import load_dataset, load_from_disk from PIL import Image from pathlib import Path ds = load_dataset("getomni-ai/ocr-benchmark") for idx, sample in enumerate(ds["test"]): image = sample["image"] image.save(f"/tmp/ds_files/images/image_{idx}.png") ds.save_to_disk("/tmp/ds_columns") # Remove the 'image' column ds["test"] = ds["test"].remove_columns(["image"]) # Create image paths for each sample image_paths = [f"images/image_{idx}.png" for idx in range(len(ds["test"]))] # Add the 'image_path' column to the dataset ds["test"] = ds["test"].add_column("image_path", image_paths) # Save the updated dataset ds.save_to_disk("/tmp/ds_files") files_path = Path("/tmp/ds_files") column_path = Path("/tmp/ds_columns") # load and benchmark ds_file = load_from_disk(files_path) ds_column = load_from_disk(column_path) import time images_files = [] start = time.time() for idx in range(len(ds_file["test"])): image_path = files_path / ds_file["test"][idx]["image_path"] image = Image.open(image_path) images_files.append(image) end = time.time() print(f"Time taken to load images from files: {end - start} seconds") # Time taken to load images from files: 1.2364635467529297 seconds images_column = [] start = time.time() for idx in range(len(ds_column["test"])): images_column.append(ds_column["test"][idx]["image"]) end = time.time() print(f"Time taken to load images from columns: {end - start} seconds") # Time taken to load images from columns: 20.49347186088562 seconds ```
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7,507
Front-end statistical data quantity deviation
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[ "Hi ! the format of this dataset is not supported by the Dataset Viewer. It looks like this dataset was saved using `save_to_disk()` which is meant for local storage / easy reload without compression, not for sharing online." ]
2025-04-10T02:51:38Z
2025-04-15T12:54:51Z
null
NONE
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### Describe the bug While browsing the dataset at https://huggingface.co/datasets/NeuML/wikipedia-20250123, I noticed that a dataset with nearly 7M entries was estimated to be only 4M in size—almost half the actual amount. According to the post-download loading and the dataset_info (https://huggingface.co/datasets/NeuML/wikipedia-20250123/blob/main/train/dataset_info.json), the true data volume is indeed close to 7M. This significant discrepancy could mislead users when sorting datasets by row count. Why not directly retrieve this information from dataset_info? Not sure if this is the right place to report this bug, but leaving it here for the team's awareness.
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HfHubHTTPError: 429 Client Error: Too Many Requests for URL when trying to access Fineweb-10BT on 4A100 GPUs using SLURM
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[ "Hi ! make sure to be logged in with your HF account (e.g. using `huggingface-cli login` or passing `token=` to `load_dataset()`), otherwise you'll get rate limited at one point", "Hey @calvintanama! Just building on what @lhoestq mentioned above — I ran into similar issues in multi-GPU SLURM setups and here’s wh...
2025-04-09T06:32:04Z
2025-06-29T06:04:59Z
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### Describe the bug I am trying to run some finetunings on 4 A100 GPUs using SLURM using axolotl training framework which in turn uses Huggingface's Trainer and Accelerate on [Fineweb-10BT](https://huggingface.co/datasets/HuggingFaceFW/fineweb), but I end up running into 429 Client Error: Too Many Requests for URL error when I call next(dataloader_iter). Funny is, that I can run some test fine tuning (for just 200 training steps) in 1 A100 GPU using SLURM. Is there any rate limiter set for querying dataset? I could run the fine tuning with the same settings (4 A100 GPUs in SLURM) last month. ### Steps to reproduce the bug You would need a server installed with SLURM 1. Create conda environment 1.1 conda create -n example_env -c conda-forge gxx=11 python=3.10 1.2 conda activate example_env 1.3 pip install torch==2.5.1 torchvision==0.20.1 torchaudio==2.5.1 --index-url https://download.pytorch.org/whl/cu124 1.4 conda install nvidia/label/cuda-12.4.0::cuda-toolkit 1.5 Download flash_attn-2.7.4.post1+cu12torch2.5cxx11abiFALSE-cp310-cp310-linux_x86_64.whl 1.6 pip3 install packaging 1.7 pip3 install ninja 1.8 pip3 install mlflow 1.9 Clone https://github.com/calvintanama/axolotl.git 1.10 `cd` to `axolotl` 1.11 pip3 install -e '.[deepspeed]' 2. Run the training 2.1. Create a folder called `config_run` in axolotl directory 2.2. Copy `config/phi3_pruned_extra_pretrain_22_29_bottleneck_residual_8_a100_4.yaml` to `config_run` 2.3. Change yaml file in the `config_run` accordingly 2.4. Change directory and conda environment name in `jobs/train_phi3_22_29_bottleneck_residual_8_a100_4_temp.sh` 2.5. `jobs/train_phi3_22_29_bottleneck_residual_8_a100_4_temp.sh` ### Expected behavior This should not cause any error, but gotten ``` File "/home/hk-project-test-p0023745/cd7437/miniconda3/envs/llmpruning_train_temp/lib/python3.10/site-packages/accelerate/data_loader.py", line 552, in __iter__ [rank3]: current_batch = next(dataloader_iter) [rank3]: File "/home/hk-project-test-p0023745/cd7437/miniconda3/envs/llmpruning_train_temp/lib/python3.10/site-packages/torch/utils/data/dataloader.py", line 701, in __next__ [rank3]: data = self._next_data() [rank3]: File "/home/hk-project-test-p0023745/cd7437/miniconda3/envs/llmpruning_train_temp/lib/python3.10/site-packages/torch/utils/data/dataloader.py", line 757, in _next_data [rank3]: data = self._dataset_fetcher.fetch(index) # may raise StopIteration [rank3]: File "/home/hk-project-test-p0023745/cd7437/miniconda3/envs/llmpruning_train_temp/lib/python3.10/site-packages/torch/utils/data/_utils/fetch.py", line 33, in fetch [rank3]: data.append(next(self.dataset_iter)) [rank3]: File "/home/hk-project-test-p0023745/cd7437/miniconda3/envs/llmpruning_train_temp/lib/python3.10/site-packages/accelerate/data_loader.py", line 338, in __iter__ [rank3]: for element in self.dataset: [rank3]: File "/home/hk-project-test-p0023745/cd7437/miniconda3/envs/llmpruning_train_temp/lib/python3.10/site-packages/datasets/iterable_dataset.py", line 2266, in __iter__ [rank3]: for key, example in ex_iterable: [rank3]: File "/home/hk-project-test-p0023745/cd7437/miniconda3/envs/llmpruning_train_temp/lib/python3.10/site-packages/datasets/iterable_dataset.py", line 1866, in __iter__ [rank3]: for key, example in self.ex_iterable: [rank3]: File "/home/hk-project-test-p0023745/cd7437/miniconda3/envs/llmpruning_train_temp/lib/python3.10/site-packages/datasets/iterable_dataset.py", line 1084, in __iter__ [rank3]: yield from self._iter() [rank3]: File "/home/hk-project-test-p0023745/cd7437/miniconda3/envs/llmpruning_train_temp/lib/python3.10/site-packages/datasets/iterable_dataset.py", line 1263, in _iter [rank3]: for key, transformed_example in outputs: [rank3]: File "/home/hk-project-test-p0023745/cd7437/miniconda3/envs/llmpruning_train_temp/lib/python3.10/site-packages/datasets/iterable_dataset.py", line 1258, in <genexpr> [rank3]: outputs = ( [rank3]: File "/home/hk-project-test-p0023745/cd7437/miniconda3/envs/llmpruning_train_temp/lib/python3.10/site-packages/datasets/iterable_dataset.py", line 1244, in iter_outputs [rank3]: for i, key_example in inputs_iterator: [rank3]: File "/home/hk-project-test-p0023745/cd7437/miniconda3/envs/llmpruning_train_temp/lib/python3.10/site-packages/datasets/iterable_dataset.py", line 1106, in iter_batched_inputs [rank3]: for key, example in iterator: [rank3]: File "/home/hk-project-test-p0023745/cd7437/miniconda3/envs/llmpruning_train_temp/lib/python3.10/site-packages/datasets/iterable_dataset.py", line 1866, in __iter__ [rank3]: for key, example in self.ex_iterable: [rank3]: File "/home/hk-project-test-p0023745/cd7437/miniconda3/envs/llmpruning_train_temp/lib/python3.10/site-packages/datasets/iterable_dataset.py", line 1535, in __iter__ [rank3]: for x in self.ex_iterable: [rank3]: File "/home/hk-project-test-p0023745/cd7437/miniconda3/envs/llmpruning_train_temp/lib/python3.10/site-packages/datasets/iterable_dataset.py", line 374, in __iter__ [rank3]: for key, pa_table in self.generate_tables_fn(**gen_kwags): [rank3]: File "/home/hk-project-test-p0023745/cd7437/miniconda3/envs/llmpruning_train_temp/lib/python3.10/site-packages/datasets/packaged_modules/parquet/parquet.py", line 90, in _generate_tables [rank3]: if parquet_fragment.row_groups: [rank3]: File "pyarrow/_dataset_parquet.pyx", line 386, in pyarrow._dataset_parquet.ParquetFileFragment.row_groups.__get__ [rank3]: File "pyarrow/_dataset_parquet.pyx", line 393, in pyarrow._dataset_parquet.ParquetFileFragment.metadata.__get__ [rank3]: File "pyarrow/_dataset_parquet.pyx", line 382, in pyarrow._dataset_parquet.ParquetFileFragment.ensure_complete_metadata [rank3]: File "pyarrow/error.pxi", line 89, in pyarrow.lib.check_status [rank3]: File "/home/hk-project-test-p0023745/cd7437/miniconda3/envs/llmpruning_train_temp/lib/python3.10/site-packages/datasets/utils/file_utils.py", line 827, in read_with_retries [rank3]: out = read(*args, **kwargs) [rank3]: File "/home/hk-project-test-p0023745/cd7437/miniconda3/envs/llmpruning_train_temp/lib/python3.10/site-packages/huggingface_hub/hf_file_system.py", line 1013, in read [rank3]: return super().read(length) [rank3]: File "/home/hk-project-test-p0023745/cd7437/miniconda3/envs/llmpruning_train_temp/lib/python3.10/site-packages/fsspec/spec.py", line 1941, in read [rank3]: out = self.cache._fetch(self.loc, self.loc + length) [rank3]: File "/home/hk-project-test-p0023745/cd7437/miniconda3/envs/llmpruning_train_temp/lib/python3.10/site-packages/fsspec/caching.py", line 234, in _fetch [rank3]: self.cache = self.fetcher(start, end) # new block replaces old [rank3]: File "/home/hk-project-test-p0023745/cd7437/miniconda3/envs/llmpruning_train_temp/lib/python3.10/site-packages/huggingface_hub/hf_file_system.py", line 976, in _fetch_range [rank3]: hf_raise_for_status(r) [rank3]: File "/home/hk-project-test-p0023745/cd7437/miniconda3/envs/llmpruning_train_temp/lib/python3.10/site-packages/huggingface_hub/utils/_http.py", line 482, in hf_raise_for_status [rank3]: raise _format(HfHubHTTPError, str(e), response) from e [rank3]: huggingface_hub.errors.HfHubHTTPError: 429 Client Error: Too Many Requests for url: https://huggingface.co/datasets/HuggingFaceFW/fineweb/resolve/0f039043b23fe1d4eed300b504aa4b4a68f1c7ba/sample/10BT/006_00000.parquet ``` ### Environment info - datasets 3.5.0 - torch 2.5.1 - transformers 4.46.2
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HfHubHTTPError: 403 Forbidden: None. Cannot access content at: https://hf.co/api/s3proxy
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2025-04-08T14:08:40Z
2025-04-08T14:08:40Z
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I have already logged in Huggingface using CLI with my valid token. Now trying to download the datasets using following code: from transformers import WhisperProcessor, WhisperForConditionalGeneration, WhisperTokenizer, Trainer, TrainingArguments, DataCollatorForSeq2Seq from datasets import load_dataset, DatasetDict, Audio def load_and_preprocess_dataset(): dataset = load_dataset("mozilla-foundation/common_voice_17_0", "bn") dataset = dataset.remove_columns(["accent", "age", "client_id", "down_votes", "gender", "locale", "segment", "up_votes"]) dataset = dataset.cast_column("audio", Audio(sampling_rate=16000)) dataset = dataset["train"].train_test_split(test_size=0.1) dataset = DatasetDict({ "train": dataset["train"], "test": dataset["test"] }) return dataset load_and_preprocess_dataset() I am getting following error: Downloading data: 100%  25/25 [00:01<00:00, 25.31files/s] --------------------------------------------------------------------------- HTTPError Traceback (most recent call last) File ~/github/bangla-asr/.venv/lib/python3.11/site-packages/huggingface_hub/utils/_http.py:409, in hf_raise_for_status(response, endpoint_name) 408 try: --> 409 response.raise_for_status() 410 except HTTPError as e: File ~/github/bangla-asr/.venv/lib/python3.11/site-packages/requests/models.py:1024, in Response.raise_for_status(self) 1023 if http_error_msg: -> 1024 raise HTTPError(http_error_msg, response=self) HTTPError: 403 Client Error: BlockSIEL for url: https://hf.co/api/s3proxy?GET=https%3A%2F%2Fhf-hub-lfs-us-east-1.s3.us-east-1.amazonaws.com%2Frepos%2Fa3%2F86%2Fa386bf65687d8a6928c1ea57c383aa3faade32f5171150e25af3fc1cfc273db8%2F67f1ac9cabd539bfbff3acbc549b60647833a250dc638866f22bf1b64e68806d%3FX-Amz-Algorithm%3DAWS4-HMAC-SHA256%26X-Amz-Content-Sha256%3DUNSIGNED-PAYLOAD%26X-Amz-Credential%3DAKIA2JU7TKAQLC2QXPN7%252F20250408%252Fus-east-1%252Fs3%252Faws4_request%26X-Amz-Date%3D20250408T134345Z%26X-Amz-Expires%3D3600%26X-Amz-Signature%3D621e731d4fd6d08afbf568379797746ab8e2b853b6728ff5e1122fef6e56880b%26X-Amz-SignedHeaders%3Dhost%26response-content-disposition%3Dinline%253B%2520filename%252A%253DUTF-8%2527%2527bn_validated_1.tar%253B%2520filename%253D%2522bn_validated_1.tar%2522%253B%26response-content-type%3Dapplication%252Fx-tar%26x-id%3DGetObject&HEAD=https%3A%2F%2Fhf-hub-lfs-us-east-1.s3.us-east-1.amazonaws.com%2Frepos%2Fa3%2F86%2Fa386bf65687d8a6928c1ea57c383aa3faade32f5171150e25af3fc1cfc273db8%2F67f1ac9cabd539bfbff3acbc549b60647833a250dc638866f22bf1b64e68806d%3FX-Amz-Algorithm%3DAWS4-HMAC-SHA256%26X-Amz-Content-Sha256%3DUNSIGNED-PAYLOAD%26X-Amz-Credential%3DAKIA2JU7TKAQLC2QXPN7%252F20250408%252Fus-east-1%252Fs3%252Faws4_request%26X-Amz-Date%3D20250408T134345Z%26X-Amz-Expires%3D3600%26X-Amz-Signature%3D15254fb79d30b0dc36b94a28138e675e0e00bb475b8a3ae774418500b095a661%26X-Amz-SignedHeaders%3Dhost&sign=eyJhbGciOiJIUzI1NiJ9.eyJyZWRpcmVjdF9kb21haW4iOiJoZi1odWItbGZzLXVzLWVhc3QtMS5zMy51cy1lYXN0LTEuYW1hem9uYXdzLmNvbSIsImlhdCI6MTc0NDExOTgyNSwiZXhwIjoxNzQ0MjA2MjI1LCJpc3MiOiJodHRwczovL2h1Z2dpbmdmYWNlLmNvIn0.5sJzudFDU3SmOdOLlwmQCOfQFf2r7y9590HoX8WBkRk The above exception was the direct cause of the following exception: HfHubHTTPError Traceback (most recent call last) Cell In[16], line 15 9 dataset = DatasetDict({ 10 "train": dataset["train"], 11 "test": dataset["test"] 12 }) 13 return dataset ---> 15 load_and_preprocess_dataset() 17 # def setup_model(): 18 # processor = WhisperProcessor.from_pretrained("openai/whisper-base") ... 475 range_header = response.request.headers.get("Range") HfHubHTTPError: 403 Forbidden: None. Cannot access content at: https://hf.co/api/s3proxy?GET=https%3A%2F%2Fhf-hub-lfs-us-east-1.s3.us-east-1.amazonaws.com%2Frepos%2Fa3%2F86%2Fa386bf6568724a6928c1ea57c383aa3faade32f5171150e25af3fc1cfc273db8%2F67f1ac9cabd539bfbff3acbc549b60647833a250dc638786f22bf1b64e68806d%3FX-Amz-Algorithm%3DAWS4-HMAC-SHA256%26X-Amz-Content-Sha256%3DUNSIGNED-PAYLOAD%26X-Amz-Credential%3DAKIA2JU7TKAQLC2QXPN7%252F20250408%252Fus-east-1%252Fs3%252Faws4_request%26X-Amz-Date%3D20250408T134345Z%26X-Amz-Expires%3D3600%26X-Amz-Signature%3D621e731d4fd6d08afbf568379797746ab394b853b6728ff5e1122fef6e56880b%26X-Amz-SignedHeaders%3Dhost%26response-content-disposition%3Dinline%253B%2520filename%252A%253DUTF-8%2527%2527bn_validated_1.tar%253B%2520filename%253D%2522bn_validated_1.tar%2522%253B%26response-content-type%3Dapplication%252Fx-tar%26x-id%3DGetObject&HEAD=https%3A%2F%2Fhf-hub-lfs-us-east-1.s3.us-east-1.amazonaws.com%2Frepos%2Fa3%2F86%2Fa386bf65687ab76928c1ea57c383aa3faade32f5171150e25af3fc1cfc273db8%2F67f1ac9cabd539bfbff3acbc549b60647833a250d2338866f222f1b64e68806d%3FX-Amz-Algorithm%3DAWS4-HMAC-SHA256%26X-Amz-Content-Sha256%3DUNSIGNED-PAYLOAD%26X-Amz-Credential%3DAKIA2JU7TKAQLC2QXPN7%252F20250408%252Fus-east-1%252Fs3%252Faws4_request%26X-Amz-Date%3D20250408T134345Z%26X-Amz-Expires%3D3600%26X-Amz-Signature%3D15254fb79d30b0dc36b94a28138e675e0e00bb475b8a3ae774418500b095a661%26X-Amz-SignedHeaders%3Dhost&sign=eyJhbGciOiJIUzI1NiJ9.eyJyZWRpcmVjds9kb21haW4iOiJoZi1odWItbGZzLXVzLWVhc3QtMS5zMy51cy1lYXN0LTEuYW1hem9uYXdzLmNvbSIsImlhdCI6MTc0NDExOT2yNSwiZXhwIjoxNzQ0MjA2MjI1LCJpc3MiOiJodHRwczovL2h1Z2dpbmdmYWNlLmNvIn0.5sJzudFDU3SmOdOLlwmQdOfQFf2r7y9590HoX8WBkRk. Make sure your token has the correct permissions. **What's wrong with the code?** Please note that the error is happening only when I am running from my office network due to probably proxy. Which URL, I need to take a proxy exception?
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BuilderConfig ParquetConfig(...) doesn't have a 'use_auth_token' key.
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[ "I encountered the same error, have you resolved it?", "Hi ! `use_auth_token` has been deprecated and removed some time ago. You should use `token` instead in `load_dataset()`", "Hi @lhoestq, I'd like to take this up.\n\nAs discussed in #7504, the issue arises when `use_auth_token` is passed to `load_dataset`, ...
2025-04-08T10:55:03Z
2025-06-28T09:18:09Z
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### Describe the bug Trying to run the following fine-tuning script (based on this page [here](https://github.com/huggingface/instruction-tuned-sd)): ``` ! accelerate launch /content/instruction-tuned-sd/finetune_instruct_pix2pix.py \ --pretrained_model_name_or_path=${MODEL_ID} \ --dataset_name=${DATASET_NAME} \ --use_ema \ --enable_xformers_memory_efficient_attention \ --resolution=512 --random_flip \ --train_batch_size=2 --gradient_accumulation_steps=4 --gradient_checkpointing \ --max_train_steps=500 \ --checkpointing_steps=25 --checkpoints_total_limit=1 \ --learning_rate=5e-05 --max_grad_norm=1 --lr_warmup_steps=20 \ --conditioning_dropout_prob=0.1 \ --mixed_precision=fp16 \ --seed=42 \ --output_dir=${OUTPUT_DIR} \ --original_image_column=before \ --edit_prompt=prompt \ --edited_image=after ``` but I keep getting the following error: ``` Traceback (most recent call last): File "/content/instruction-tuned-sd/finetune_instruct_pix2pix.py", line 1137, in <module> main() File "/content/instruction-tuned-sd/finetune_instruct_pix2pix.py", line 652, in main dataset = load_dataset( ^^^^^^^^^^^^^ File "/usr/local/lib/python3.11/dist-packages/datasets/load.py", line 2129, in load_dataset builder_instance = load_dataset_builder( ^^^^^^^^^^^^^^^^^^^^^ File "/usr/local/lib/python3.11/dist-packages/datasets/load.py", line 1886, in load_dataset_builder builder_instance: DatasetBuilder = builder_cls( ^^^^^^^^^^^^ File "/usr/local/lib/python3.11/dist-packages/datasets/builder.py", line 342, in __init__ self.config, self.config_id = self._create_builder_config( ^^^^^^^^^^^^^^^^^^^^^^^^^^^^ File "/usr/local/lib/python3.11/dist-packages/datasets/builder.py", line 590, in _create_builder_config raise ValueError(f"BuilderConfig {builder_config} doesn't have a '{key}' key.") ValueError: BuilderConfig ParquetConfig(name='default', version=0.0.0, data_dir=None, data_files={'train': ['data/train-*']}, description=None, batch_size=None, columns=None, features=None, filters=None) doesn't have a 'use_auth_token' key. Traceback (most recent call last): File "/usr/local/bin/accelerate", line 10, in <module> sys.exit(main()) ^^^^^^ ``` Any ideas? `datasets` version should be `3.2.0`. ### Steps to reproduce the bug Just running the script above. ### Expected behavior No errors ### Environment info Python 3.11.11 datasets==3.2.0
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7,503
Inconsistency between load_dataset and load_from_disk functionality
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[ "Hi ! you can find more info here: https://github.com/huggingface/datasets/issues/5044#issuecomment-1263714347\n\n> What's the recommended approach for this use case? Should I manually process my gsm8k-new dataset to make it compatible with load_dataset? Is there a standard way to convert between these formats?\n\n...
2025-04-08T03:46:22Z
2025-06-28T08:51:16Z
null
NONE
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## Issue Description I've encountered confusion when using `load_dataset` and `load_from_disk` in the datasets library. Specifically, when working offline with the gsm8k dataset, I can load it using a local path: ```python import datasets ds = datasets.load_dataset('/root/xxx/datasets/gsm8k', 'main') ``` output: ```text DatasetDict({ train: Dataset({ features: ['question', 'answer'], num_rows: 7473 }) test: Dataset({ features: ['question', 'answer'], num_rows: 1319 }) }) ``` This works as expected. However, after processing the dataset (converting answer format from #### to \boxed{}) ```python import datasets ds = datasets.load_dataset('/root/xxx/datasets/gsm8k', 'main') ds_train = ds['train'] ds_test = ds['test'] import re def convert(sample): solution = sample['answer'] solution = re.sub(r'####\s*(\S+)', r'\\boxed{\1}', solution) sample = { 'problem': sample['question'], 'solution': solution } return sample ds_train = ds_train.map(convert, remove_columns=['question', 'answer']) ds_test = ds_test.map(convert,remove_columns=['question', 'answer']) ``` I saved it using save_to_disk: ```python from datasets.dataset_dict import DatasetDict data_dict = DatasetDict({ 'train': ds_train, 'test': ds_test }) data_dict.save_to_disk('/root/xxx/datasets/gsm8k-new') ``` But now I can only load it using load_from_disk: ```python new_ds = load_from_disk('/root/xxx/datasets/gsm8k-new') ``` output: ```text DatasetDict({ train: Dataset({ features: ['problem', 'solution'], num_rows: 7473 }) test: Dataset({ features: ['problem', 'solution'], num_rows: 1319 }) }) ``` Attempting to use load_dataset produces unexpected results: ```python new_ds = load_dataset('/root/xxx/datasets/gsm8k-new') ``` output: ```text DatasetDict({ train: Dataset({ features: ['_data_files', '_fingerprint', '_format_columns', '_format_kwargs', '_format_type', '_output_all_columns', '_split'], num_rows: 1 }) test: Dataset({ features: ['_data_files', '_fingerprint', '_format_columns', '_format_kwargs', '_format_type', '_output_all_columns', '_split'], num_rows: 1 }) }) ``` Questions 1. Why is it designed such that after using `save_to_disk`, the dataset cannot be loaded with `load_dataset`? For small projects with limited code, it might be relatively easy to change all instances of `load_dataset` to `load_from_disk`. However, for complex frameworks like TRL or lighteval, diving into the framework code to change `load_dataset` to `load_from_disk` is extremely tedious and error-prone. Additionally, `load_from_disk` cannot load datasets directly downloaded from the hub, which means that if you need to modify a dataset, you have to choose between using `load_from_disk` or `load_dataset`. This creates an unnecessary dichotomy in the API and complicates workflow when working with modified datasets. 2. What's the recommended approach for this use case? Should I manually process my gsm8k-new dataset to make it compatible with load_dataset? Is there a standard way to convert between these formats? thanks~
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7,502
`load_dataset` of size 40GB creates a cache of >720GB
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[ "Hi ! Parquet is a compressed format. When you load a dataset, it uncompresses the Parquet data into Arrow data on your disk. That's why you can indeed end up with 720GB of uncompressed data on disk. The uncompression is needed to enable performant dataset objects (especially for random access).\n\nTo save some sto...
2025-04-07T16:52:34Z
2025-04-15T15:22:12Z
2025-04-15T15:22:11Z
NONE
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Hi there, I am trying to load a dataset from the Hugging Face Hub and split it into train and validation splits. Somehow, when I try to do it with `load_dataset`, it exhausts my disk quota. So, I tried manually downloading the parquet files from the hub and loading them as follows: ```python ds = DatasetDict( { "train": load_dataset( "parquet", data_dir=f"{local_dir}/{tok}", cache_dir=cache_dir, num_proc=min(12, os.cpu_count()), # type: ignore split=ReadInstruction("train", from_=0, to=NUM_TRAIN, unit="abs"), # type: ignore ), "validation": load_dataset( "parquet", data_dir=f"{local_dir}/{tok}", cache_dir=cache_dir, num_proc=min(12, os.cpu_count()), # type: ignore split=ReadInstruction("train", from_=NUM_TRAIN, unit="abs"), # type: ignore ) } ) ``` which still strangely creates 720GB of cache. In addition, if I remove the raw parquet file folder (`f"{local_dir}/{tok}"` in this example), I am not able to load anything. So, I am left wondering what this cache is doing. Am I missing something? Is there a solution to this problem? Thanks a lot in advance for your help! A related issue: https://github.com/huggingface/transformers/issues/10204#issue-809007443. --- Python: 3.11.11 datasets: 3.5.0
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Nested Feature raises ArrowNotImplementedError: Unsupported cast using function cast_struct
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[ "Solved by the default `load_dataset(features)` parameters. Do not use `Sequence` for the `list` in `list[any]` json schema, just simply use `[]`. For example, `\"b\": Sequence({...})` fails but `\"b\": [{...}]` works fine." ]
2025-04-07T12:35:39Z
2025-04-07T12:43:04Z
2025-04-07T12:43:03Z
NONE
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### Describe the bug `datasets.Features` seems to be unable to handle json file that contains fields of `list[dict]`. ### Steps to reproduce the bug ```json // test.json {"a": 1, "b": [{"c": 2, "d": 3}, {"c": 4, "d": 5}]} {"a": 5, "b": [{"c": 7, "d": 8}, {"c": 9, "d": 10}]} ``` ```python import json from datasets import Dataset, Features, Value, Sequence, load_dataset annotation_feature = Features({ "a": Value("int32"), "b": Sequence({ "c": Value("int32"), "d": Value("int32"), }), }) annotation_dataset = load_dataset( "json", data_files="test.json", features=annotation_feature ) ``` ``` ArrowNotImplementedError: Unsupported cast from list<item: struct<c: int32, d: int32>> to struct using function cast_struct The above exception was the direct cause of the following exception: DatasetGenerationError Traceback (most recent call last) Cell In[46], line 11 2 from datasets import Dataset, Features, Value, Sequence, load_dataset 4 annotation_feature = Features({ 5 "a": Value("int32"), 6 "b": Sequence({ (...) 9 }), 10 }) ---> 11 annotation_dataset = load_dataset( 12 "json", 13 data_files="test.json", 14 features=annotation_feature 15 ) ``` ### Expected behavior A `datasets.Datasets` instance should be initialized. ### Environment info - `datasets` version: 3.5.0 - Platform: Linux-6.11.0-21-generic-x86_64-with-glibc2.39 - Python version: 3.11.11 - `huggingface_hub` version: 0.30.1 - PyArrow version: 19.0.1 - Pandas version: 2.2.3 - `fsspec` version: 2024.12.0
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Make `with_format` correctly indicate that a `Dataset` is compatible with PyTorch's `Dataset` class
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[ "Does the torch `DataLoader` really require the dataset to be a subclass of `torch.utils.data.Dataset` ? Or is there a simpler type we could use ?\n\nPS: also note that a dataset without `with_format()` can also be used in a torch `DataLoader` . Calling `with_format(\"torch\")` simply makes the output of the datase...
2025-04-06T09:56:09Z
2025-04-15T12:57:39Z
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### Feature request Currently `datasets` does not correctly indicate to the Python type-checker (e.g. `pyright` / `Pylance`) that the output of `with_format` is compatible with PyTorch's `Dataloader` since it does not indicate that the HuggingFace `Dataset` is compatible with the PyTorch `Dataset` class. It would be great if we could get the typing to work nicely. ### Motivation To avoid casting types in our Python code. ### Your contribution I would be happy to contribute a PR if this is something that may be accepted and could work with the current approach. This doesn't have to be for just PyTorch, but I imagine that the same thing would be useful for `tensorflow` and such, but we only have a need for PyTorch at this stage.
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7,498
Extreme memory bandwidth.
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2025-04-03T11:09:08Z
2025-04-03T11:11:22Z
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### Describe the bug When I use hf datasets on 4 GPU with 40 workers I get some extreme memory bandwidth of constant ~3GB/s. However, if I wrap the dataset in `IterableDataset`, this issue is gone and the data also loads way faster (4x faster training on 1 worker). It seems like the workers don't share memory and basically duplicate the data 4x40. ### Steps to reproduce the bug Trainer arguments: ``` dataloader_pin_memory=True, dataloader_num_workers=40, dataloader_prefetch_factor=2, dataloader_persistent_workers=True, ``` Call trainer: ``` trainer = Trainer( model=model, args=train_args, train_dataset=load_from_disk('..').with_fromat('torch'), ) ``` The dataset has 600GB and consists of 1225 files. ### Expected behavior The optimal bandwidth should be 100MB/s to keep up with GPU. ### Environment info Linux Python 3.11 datasets==3.2.0
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2,968,553,693
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7,497
How to convert videos to images?
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[ "Hi ! there is some documentation here on how to read video frames: https://huggingface.co/docs/datasets/video_load" ]
2025-04-03T07:08:39Z
2025-04-15T12:35:15Z
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### Feature request Does someone know how to return the images from videos? ### Motivation I am trying to use openpi(https://github.com/Physical-Intelligence/openpi) to finetune my Lerobot dataset(V2.0 and V2.1). I find that although the codedaset is v2.0, they are different. It seems like Lerobot V2.0 has two version, one is data include images infos and another one is separate to data and videos. Does someone know how to return the images from videos?
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7,496
Json builder: Allow features to override problematic Arrow types
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[ "Hi ! It would be cool indeed, currently the JSON data are generally loaded here: \n\nhttps://github.com/huggingface/datasets/blob/90e5bf8a8599b625d6103ee5ac83b98269991141/src/datasets/packaged_modules/json/json.py#L137-L140\n\nMaybe we can pass a Arrow `schema` to avoid errors ?" ]
2025-04-02T19:27:16Z
2025-04-15T13:06:09Z
null
NONE
null
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### Feature request In the JSON builder, use explicitly requested feature types before or while converting to Arrow. ### Motivation Working with JSON datasets is really hard because of Arrow. At the very least, it seems like it should be possible to work-around these problems by explicitly setting problematic columns's types. But it seems like this is not possible because the features are only used *after* converting to arrow. Here's a simple example where the Arrow error could potentially be avoided by converting the column to a string: https://colab.research.google.com/drive/16QHRdbUwKSrpwVfGwu8V8AHr8v2dv0dt?usp=sharing ### Your contribution Maybe with some guidance. I'm not very familiar with arrow or pandas.
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7,495
Columns in the dataset obtained though load_dataset do not correspond to the one in the dataset viewer since 3.4.0
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[ "Hi, the dataset viewer shows all the possible columns and their types, but `load_dataset()` iterates through all the columns that you defined. It seems that you only have one column (‘audio’) defined in your dataset because when I ran `print(ds.column_names)`, the only name I got was “audio”. You need to clearly d...
2025-04-02T17:01:11Z
2025-07-02T23:24:57Z
2025-07-02T23:24:57Z
CONTRIBUTOR
null
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### Describe the bug I have noticed that on my dataset named [BrunoHays/Accueil_UBS](https://huggingface.co/datasets/BrunoHays/Accueil_UBS), since the version 3.4.0, every column except audio is missing when I load the dataset. Interestingly, the dataset viewer still shows the correct columns ### Steps to reproduce the bug ```python from datasets import load_dataset ds = load_dataset("BrunoHays/Accueil_UBS", streaming=True) print(next(iter(ds["test"])).keys()) ``` With datasets >= 3.4.0: -> dict_keys(['audio']) With datasets == 3.3.2: -> dict_keys(['audio', 'id', 'speaker', 'sentence', 'raw_sentence', 'start_timestamp', 'end_timestamp', 'overlap']) ### Expected behavior All the columns should be present ### Environment info - `datasets` version: 3.3.2 - Platform: macOS-14.6.1-x86_64-i386-64bit - Python version: 3.10.15 - `huggingface_hub` version: 0.30.1 - PyArrow version: 16.1.0 - Pandas version: 1.5.3 - `fsspec` version: 2023.10.0
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7,494
Broken links in pdf loading documentation
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[ "thanks for reporting ! I fixed the links, the docs will be updated in the next release" ]
2025-04-02T06:45:22Z
2025-04-15T13:36:25Z
2025-04-15T13:36:04Z
NONE
null
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### Describe the bug Hi, just a couple of small issues I ran into while reading the docs for [loading pdf data](https://huggingface.co/docs/datasets/main/en/document_load): 1. The link for the [`Create a pdf dataset`](https://huggingface.co/docs/datasets/main/en/document_load#pdffolder) points to https://huggingface.co/docs/datasets/main/en/pdf_dataset instead of https://huggingface.co/docs/datasets/main/en/document_dataset and hence gives a 404 error. 2. At the top of the page, it's mentioned that to work with pdf datasets we need to have the `pdfplumber` package installed but the link to its installation guide points to `pytorch/vision` [installation instructions](https://github.com/pytorch/vision#installation) instead of `pdfplumber`'s [guide](https://github.com/jsvine/pdfplumber#installation) I love the work on enabling pdf dataset support and these small tweaks would help everyone navigate the docs better. Thanks! ### Steps to reproduce the bug The issue is on the [Load Document Data](https://huggingface.co/docs/datasets/main/en/document_load) page of the datasets docs. ### Expected behavior 1. For solving the first issue, I went through the [source .mdx code](https://github.com/huggingface/datasets/blob/main/docs/source/document_load.mdx?plain=1#L188) of the datasets docs and found that the link is pointing to `./pdf_dataset` instead of `./document_dataset` 2. For the second issue, I went through the [source .mdx code](https://github.com/huggingface/datasets/blob/main/docs/source/document_load.mdx?plain=1#L13) of the datasets docs and found that the link is `pytorch/vision` [installation instructions](https://github.com/pytorch/vision#installation) instead of `pdfplumber`'s [guide](https://github.com/jsvine/pdfplumber#installation) Just replacing these two links should fix the bugs ### Environment info datasets v3.5.0 (main at the time of writing)
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7,493
push_to_hub does not upload videos
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[ "Hi ! the `Video` type is still experimental, and in particular `push_to_hub` doesn't upload videos at the moment (only the paths).\n\nThere is an open question to either upload the videos inside the Parquet files, or rather have them as separate files (which is great to enable remote seeking/streaming)", "im hav...
2025-04-01T17:00:20Z
2025-09-02T10:32:36Z
null
NONE
null
null
null
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### Describe the bug Hello, I would like to upload a video dataset (some .mp4 files and some segments within them), i.e. rows correspond to subsequences from videos. Videos might be referenced by several rows. I created a dataset locally and it references the videos and the video readers can read them correctly. I use push_to_hub() to upload the dataset to the hub. Expectation: A user uses `load_dataset` and can load the videos. However, the videos seem to be just referenced via paths on the computer and not uploaded to the hub. Therefore a target user cannot load the videos in the dataset. ### Steps to reproduce the bug 1. create a video dataset with paths e.g. { ["videos"]: [path1, path2, ...]} 2. dataset.push_to_hub 3. on a different computer (or same pc if relative paths are used in a different folder): ``` dataset = load_dataset("siplab/egosim", split="train") video = dataset[0]["video_head"] ``` 3. will fail ### Expected behavior Expectation: A user uses `load_dataset` and can load the videos. ### Environment info datasets 3.1.0 Python 3.8.18
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7,486
`shared_datadir` fixture is missing
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[ "OK I was missing the `pytest-datadir` package. Sorry for the noise!" ]
2025-03-27T18:17:12Z
2025-03-27T19:49:11Z
2025-03-27T19:49:10Z
NONE
null
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### Describe the bug Running the tests for the latest release fails due to missing `shared_datadir` fixture. ### Steps to reproduce the bug Running `pytest` while building a package for Arch Linux leads to these errors: ``` ==================================== ERRORS ==================================== _________ ERROR at setup of test_pdf_feature_encode_example[<lambda>1] _________ [gw44] linux -- Python 3.13.2 /build/python-datasets/src/datasets-3.5.0/test-env/bin/python file /build/python-datasets/src/datasets-3.5.0/tests/features/test_pdf.py, line 8 @require_pdfplumber @pytest.mark.parametrize( "build_example", [ lambda pdf_path: pdf_path, lambda pdf_path: open(pdf_path, "rb").read(), lambda pdf_path: {"path": pdf_path}, lambda pdf_path: {"path": pdf_path, "bytes": None}, lambda pdf_path: {"path": pdf_path, "bytes": open(pdf_path, "rb").read()}, lambda pdf_path: {"path": None, "bytes": open(pdf_path, "rb").read()}, lambda pdf_path: {"bytes": open(pdf_path, "rb").read()}, ], ) def test_pdf_feature_encode_example(shared_datadir, build_example): E fixture 'shared_datadir' not found > available fixtures: _hf_gated_dataset_repo_txt_data, arrow_file, arrow_path, audio_file, bz2_csv_path, bz2_file, cache, capfd, capfdbinary, caplog, capsys, capsysbinary, ci_hfh_hf_hub_url, ci_hub_config, cleanup_repo, csv2_path, csv_path, data_dir_with_hidden_files, dataset, dataset_dict, disable_implicit_token, disable_tqdm_output, doctest_namespace, geoparquet_path, gz_file, hf_api, hf_gated_dataset_repo_txt_data, hf_private_dataset_repo_txt_data, hf_private_dataset_repo_txt_data_, hf_private_dataset_repo_zipped_img_data, hf_private_dataset_repo_zipped_img_data_, hf_private_dataset_repo_zipped_txt_data, hf_private_dataset_repo_zipped_txt_data_, hf_token, image_file, json_dict_of_lists_path, json_list_of_dicts_path, jsonl2_path, jsonl_312_path, jsonl_gz_path, jsonl_path, jsonl_str_path, lz4_file, mock_fsspec, mockfs, monkeypatch, parquet_path, pytestconfig, record_property, record_testsuite_property, record_xml_attribute, recwarn, set_ci_hub_access_token, set_sqlalchemy_silence_uber_warning, set_test_cache_config, set_update_download_counts_to_false, seven_zip_file, sqlite_path, tar_file, tar_jsonl_path, tar_nested_jsonl_path, temporary_repo, tensor_file, testrun_uid, text2_path, text_dir, text_dir_with_unsupported_extension, text_file, text_file_content, text_gz_path, text_path, text_path_with_unicode_new_lines, tmp_path, tmp_path_factory, tmpdir, tmpdir_factory, tmpfs, worker_id, xml_file, xz_file, zero_time_out_for_remote_code, zip_csv_path, zip_csv_with_dir_path, zip_file, zip_image_path, zip_jsonl_path, zip_jsonl_with_dir_path, zip_nested_jsonl_path, zip_text_path, zip_text_with_dir_path, zip_unsupported_ext_path, zip_uppercase_csv_path, zstd_file > use 'pytest --fixtures [testpath]' for help on them. /build/python-datasets/src/datasets-3.5.0/tests/features/test_pdf.py:8 _________ ERROR at setup of test_pdf_feature_encode_example[<lambda>2] _________ [gw44] linux -- Python 3.13.2 /build/python-datasets/src/datasets-3.5.0/test-env/bin/python file /build/python-datasets/src/datasets-3.5.0/tests/features/test_pdf.py, line 8 @require_pdfplumber @pytest.mark.parametrize( "build_example", [ lambda pdf_path: pdf_path, lambda pdf_path: open(pdf_path, "rb").read(), lambda pdf_path: {"path": pdf_path}, lambda pdf_path: {"path": pdf_path, "bytes": None}, lambda pdf_path: {"path": pdf_path, "bytes": open(pdf_path, "rb").read()}, lambda pdf_path: {"path": None, "bytes": open(pdf_path, "rb").read()}, lambda pdf_path: {"bytes": open(pdf_path, "rb").read()}, ], ) def test_pdf_feature_encode_example(shared_datadir, build_example): E fixture 'shared_datadir' not found > available fixtures: _hf_gated_dataset_repo_txt_data, arrow_file, arrow_path, audio_file, bz2_csv_path, bz2_file, cache, capfd, capfdbinary, caplog, capsys, capsysbinary, ci_hfh_hf_hub_url, ci_hub_config, cleanup_repo, csv2_path, csv_path, data_dir_with_hidden_files, dataset, dataset_dict, disable_implicit_token, disable_tqdm_output, doctest_namespace, geoparquet_path, gz_file, hf_api, hf_gated_dataset_repo_txt_data, hf_private_dataset_repo_txt_data, hf_private_dataset_repo_txt_data_, hf_private_dataset_repo_zipped_img_data, hf_private_dataset_repo_zipped_img_data_, hf_private_dataset_repo_zipped_txt_data, hf_private_dataset_repo_zipped_txt_data_, hf_token, image_file, json_dict_of_lists_path, json_list_of_dicts_path, jsonl2_path, jsonl_312_path, jsonl_gz_path, jsonl_path, jsonl_str_path, lz4_file, mock_fsspec, mockfs, monkeypatch, parquet_path, pytestconfig, record_property, record_testsuite_property, record_xml_attribute, recwarn, set_ci_hub_access_token, set_sqlalchemy_silence_uber_warning, set_test_cache_config, set_update_download_counts_to_false, seven_zip_file, sqlite_path, tar_file, tar_jsonl_path, tar_nested_jsonl_path, temporary_repo, tensor_file, testrun_uid, text2_path, text_dir, text_dir_with_unsupported_extension, text_file, text_file_content, text_gz_path, text_path, text_path_with_unicode_new_lines, tmp_path, tmp_path_factory, tmpdir, tmpdir_factory, tmpfs, worker_id, xml_file, xz_file, zero_time_out_for_remote_code, zip_csv_path, zip_csv_with_dir_path, zip_file, zip_image_path, zip_jsonl_path, zip_jsonl_with_dir_path, zip_nested_jsonl_path, zip_text_path, zip_text_with_dir_path, zip_unsupported_ext_path, zip_uppercase_csv_path, zstd_file > use 'pytest --fixtures [testpath]' for help on them. /build/python-datasets/src/datasets-3.5.0/tests/features/test_pdf.py:8 _________ ERROR at setup of test_pdf_feature_encode_example[<lambda>3] _________ [gw44] linux -- Python 3.13.2 /build/python-datasets/src/datasets-3.5.0/test-env/bin/python file /build/python-datasets/src/datasets-3.5.0/tests/features/test_pdf.py, line 8 @require_pdfplumber @pytest.mark.parametrize( "build_example", [ lambda pdf_path: pdf_path, lambda pdf_path: open(pdf_path, "rb").read(), lambda pdf_path: {"path": pdf_path}, lambda pdf_path: {"path": pdf_path, "bytes": None}, lambda pdf_path: {"path": pdf_path, "bytes": open(pdf_path, "rb").read()}, lambda pdf_path: {"path": None, "bytes": open(pdf_path, "rb").read()}, lambda pdf_path: {"bytes": open(pdf_path, "rb").read()}, ], ) def test_pdf_feature_encode_example(shared_datadir, build_example): E fixture 'shared_datadir' not found > available fixtures: _hf_gated_dataset_repo_txt_data, arrow_file, arrow_path, audio_file, bz2_csv_path, bz2_file, cache, capfd, capfdbinary, caplog, capsys, capsysbinary, ci_hfh_hf_hub_url, ci_hub_config, cleanup_repo, csv2_path, csv_path, data_dir_with_hidden_files, dataset, dataset_dict, disable_implicit_token, disable_tqdm_output, doctest_namespace, geoparquet_path, gz_file, hf_api, hf_gated_dataset_repo_txt_data, hf_private_dataset_repo_txt_data, hf_private_dataset_repo_txt_data_, hf_private_dataset_repo_zipped_img_data, hf_private_dataset_repo_zipped_img_data_, hf_private_dataset_repo_zipped_txt_data, hf_private_dataset_repo_zipped_txt_data_, hf_token, image_file, json_dict_of_lists_path, json_list_of_dicts_path, jsonl2_path, jsonl_312_path, jsonl_gz_path, jsonl_path, jsonl_str_path, lz4_file, mock_fsspec, mockfs, monkeypatch, parquet_path, pytestconfig, record_property, record_testsuite_property, record_xml_attribute, recwarn, set_ci_hub_access_token, set_sqlalchemy_silence_uber_warning, set_test_cache_config, set_update_download_counts_to_false, seven_zip_file, sqlite_path, tar_file, tar_jsonl_path, tar_nested_jsonl_path, temporary_repo, tensor_file, testrun_uid, text2_path, text_dir, text_dir_with_unsupported_extension, text_file, text_file_content, text_gz_path, text_path, text_path_with_unicode_new_lines, tmp_path, tmp_path_factory, tmpdir, tmpdir_factory, tmpfs, worker_id, xml_file, xz_file, zero_time_out_for_remote_code, zip_csv_path, zip_csv_with_dir_path, zip_file, zip_image_path, zip_jsonl_path, zip_jsonl_with_dir_path, zip_nested_jsonl_path, zip_text_path, zip_text_with_dir_path, zip_unsupported_ext_path, zip_uppercase_csv_path, zstd_file > use 'pytest --fixtures [testpath]' for help on them. /build/python-datasets/src/datasets-3.5.0/tests/features/test_pdf.py:8 _________ ERROR at setup of test_pdf_feature_encode_example[<lambda>4] _________ [gw44] linux -- Python 3.13.2 /build/python-datasets/src/datasets-3.5.0/test-env/bin/python file /build/python-datasets/src/datasets-3.5.0/tests/features/test_pdf.py, line 8 @require_pdfplumber @pytest.mark.parametrize( "build_example", [ lambda pdf_path: pdf_path, lambda pdf_path: open(pdf_path, "rb").read(), lambda pdf_path: {"path": pdf_path}, lambda pdf_path: {"path": pdf_path, "bytes": None}, lambda pdf_path: {"path": pdf_path, "bytes": open(pdf_path, "rb").read()}, lambda pdf_path: {"path": None, "bytes": open(pdf_path, "rb").read()}, lambda pdf_path: {"bytes": open(pdf_path, "rb").read()}, ], ) def test_pdf_feature_encode_example(shared_datadir, build_example): E fixture 'shared_datadir' not found > available fixtures: _hf_gated_dataset_repo_txt_data, arrow_file, arrow_path, audio_file, bz2_csv_path, bz2_file, cache, capfd, capfdbinary, caplog, capsys, capsysbinary, ci_hfh_hf_hub_url, ci_hub_config, cleanup_repo, csv2_path, csv_path, data_dir_with_hidden_files, dataset, dataset_dict, disable_implicit_token, disable_tqdm_output, doctest_namespace, geoparquet_path, gz_file, hf_api, hf_gated_dataset_repo_txt_data, hf_private_dataset_repo_txt_data, hf_private_dataset_repo_txt_data_, hf_private_dataset_repo_zipped_img_data, hf_private_dataset_repo_zipped_img_data_, hf_private_dataset_repo_zipped_txt_data, hf_private_dataset_repo_zipped_txt_data_, hf_token, image_file, json_dict_of_lists_path, json_list_of_dicts_path, jsonl2_path, jsonl_312_path, jsonl_gz_path, jsonl_path, jsonl_str_path, lz4_file, mock_fsspec, mockfs, monkeypatch, parquet_path, pytestconfig, record_property, record_testsuite_property, record_xml_attribute, recwarn, set_ci_hub_access_token, set_sqlalchemy_silence_uber_warning, set_test_cache_config, set_update_download_counts_to_false, seven_zip_file, sqlite_path, tar_file, tar_jsonl_path, tar_nested_jsonl_path, temporary_repo, tensor_file, testrun_uid, text2_path, text_dir, text_dir_with_unsupported_extension, text_file, text_file_content, text_gz_path, text_path, text_path_with_unicode_new_lines, tmp_path, tmp_path_factory, tmpdir, tmpdir_factory, tmpfs, worker_id, xml_file, xz_file, zero_time_out_for_remote_code, zip_csv_path, zip_csv_with_dir_path, zip_file, zip_image_path, zip_jsonl_path, zip_jsonl_with_dir_path, zip_nested_jsonl_path, zip_text_path, zip_text_with_dir_path, zip_unsupported_ext_path, zip_uppercase_csv_path, zstd_file > use 'pytest --fixtures [testpath]' for help on them. /build/python-datasets/src/datasets-3.5.0/tests/features/test_pdf.py:8 _________ ERROR at setup of test_pdf_feature_encode_example[<lambda>5] _________ [gw44] linux -- Python 3.13.2 /build/python-datasets/src/datasets-3.5.0/test-env/bin/python file /build/python-datasets/src/datasets-3.5.0/tests/features/test_pdf.py, line 8 @require_pdfplumber @pytest.mark.parametrize( "build_example", [ lambda pdf_path: pdf_path, lambda pdf_path: open(pdf_path, "rb").read(), lambda pdf_path: {"path": pdf_path}, lambda pdf_path: {"path": pdf_path, "bytes": None}, lambda pdf_path: {"path": pdf_path, "bytes": open(pdf_path, "rb").read()}, lambda pdf_path: {"path": None, "bytes": open(pdf_path, "rb").read()}, lambda pdf_path: {"bytes": open(pdf_path, "rb").read()}, ], ) def test_pdf_feature_encode_example(shared_datadir, build_example): E fixture 'shared_datadir' not found > available fixtures: _hf_gated_dataset_repo_txt_data, arrow_file, arrow_path, audio_file, bz2_csv_path, bz2_file, cache, capfd, capfdbinary, caplog, capsys, capsysbinary, ci_hfh_hf_hub_url, ci_hub_config, cleanup_repo, csv2_path, csv_path, data_dir_with_hidden_files, dataset, dataset_dict, disable_implicit_token, disable_tqdm_output, doctest_namespace, geoparquet_path, gz_file, hf_api, hf_gated_dataset_repo_txt_data, hf_private_dataset_repo_txt_data, hf_private_dataset_repo_txt_data_, hf_private_dataset_repo_zipped_img_data, hf_private_dataset_repo_zipped_img_data_, hf_private_dataset_repo_zipped_txt_data, hf_private_dataset_repo_zipped_txt_data_, hf_token, image_file, json_dict_of_lists_path, json_list_of_dicts_path, jsonl2_path, jsonl_312_path, jsonl_gz_path, jsonl_path, jsonl_str_path, lz4_file, mock_fsspec, mockfs, monkeypatch, parquet_path, pytestconfig, record_property, record_testsuite_property, record_xml_attribute, recwarn, set_ci_hub_access_token, set_sqlalchemy_silence_uber_warning, set_test_cache_config, set_update_download_counts_to_false, seven_zip_file, sqlite_path, tar_file, tar_jsonl_path, tar_nested_jsonl_path, temporary_repo, tensor_file, testrun_uid, text2_path, text_dir, text_dir_with_unsupported_extension, text_file, text_file_content, text_gz_path, text_path, text_path_with_unicode_new_lines, tmp_path, tmp_path_factory, tmpdir, tmpdir_factory, tmpfs, worker_id, xml_file, xz_file, zero_time_out_for_remote_code, zip_csv_path, zip_csv_with_dir_path, zip_file, zip_image_path, zip_jsonl_path, zip_jsonl_with_dir_path, zip_nested_jsonl_path, zip_text_path, zip_text_with_dir_path, zip_unsupported_ext_path, zip_uppercase_csv_path, zstd_file > use 'pytest --fixtures [testpath]' for help on them. /build/python-datasets/src/datasets-3.5.0/tests/features/test_pdf.py:8 _________ ERROR at setup of test_pdf_feature_encode_example[<lambda>6] _________ [gw44] linux -- Python 3.13.2 /build/python-datasets/src/datasets-3.5.0/test-env/bin/python file /build/python-datasets/src/datasets-3.5.0/tests/features/test_pdf.py, line 8 @require_pdfplumber @pytest.mark.parametrize( "build_example", [ lambda pdf_path: pdf_path, lambda pdf_path: open(pdf_path, "rb").read(), lambda pdf_path: {"path": pdf_path}, lambda pdf_path: {"path": pdf_path, "bytes": None}, lambda pdf_path: {"path": pdf_path, "bytes": open(pdf_path, "rb").read()}, lambda pdf_path: {"path": None, "bytes": open(pdf_path, "rb").read()}, lambda pdf_path: {"bytes": open(pdf_path, "rb").read()}, ], ) def test_pdf_feature_encode_example(shared_datadir, build_example): E fixture 'shared_datadir' not found > available fixtures: _hf_gated_dataset_repo_txt_data, arrow_file, arrow_path, audio_file, bz2_csv_path, bz2_file, cache, capfd, capfdbinary, caplog, capsys, capsysbinary, ci_hfh_hf_hub_url, ci_hub_config, cleanup_repo, csv2_path, csv_path, data_dir_with_hidden_files, dataset, dataset_dict, disable_implicit_token, disable_tqdm_output, doctest_namespace, geoparquet_path, gz_file, hf_api, hf_gated_dataset_repo_txt_data, hf_private_dataset_repo_txt_data, hf_private_dataset_repo_txt_data_, hf_private_dataset_repo_zipped_img_data, hf_private_dataset_repo_zipped_img_data_, hf_private_dataset_repo_zipped_txt_data, hf_private_dataset_repo_zipped_txt_data_, hf_token, image_file, json_dict_of_lists_path, json_list_of_dicts_path, jsonl2_path, jsonl_312_path, jsonl_gz_path, jsonl_path, jsonl_str_path, lz4_file, mock_fsspec, mockfs, monkeypatch, parquet_path, pytestconfig, record_property, record_testsuite_property, record_xml_attribute, recwarn, set_ci_hub_access_token, set_sqlalchemy_silence_uber_warning, set_test_cache_config, set_update_download_counts_to_false, seven_zip_file, sqlite_path, tar_file, tar_jsonl_path, tar_nested_jsonl_path, temporary_repo, tensor_file, testrun_uid, text2_path, text_dir, text_dir_with_unsupported_extension, text_file, text_file_content, text_gz_path, text_path, text_path_with_unicode_new_lines, tmp_path, tmp_path_factory, tmpdir, tmpdir_factory, tmpfs, worker_id, xml_file, xz_file, zero_time_out_for_remote_code, zip_csv_path, zip_csv_with_dir_path, zip_file, zip_image_path, zip_jsonl_path, zip_jsonl_with_dir_path, zip_nested_jsonl_path, zip_text_path, zip_text_with_dir_path, zip_unsupported_ext_path, zip_uppercase_csv_path, zstd_file > use 'pytest --fixtures [testpath]' for help on them. /build/python-datasets/src/datasets-3.5.0/tests/features/test_pdf.py:8 _______________ ERROR at setup of test_dataset_with_pdf_feature ________________ [gw44] linux -- Python 3.13.2 /build/python-datasets/src/datasets-3.5.0/test-env/bin/python file /build/python-datasets/src/datasets-3.5.0/tests/features/test_pdf.py, line 34 @require_pdfplumber def test_dataset_with_pdf_feature(shared_datadir): E fixture 'shared_datadir' not found > available fixtures: _hf_gated_dataset_repo_txt_data, arrow_file, arrow_path, audio_file, bz2_csv_path, bz2_file, cache, capfd, capfdbinary, caplog, capsys, capsysbinary, ci_hfh_hf_hub_url, ci_hub_config, cleanup_repo, csv2_path, csv_path, data_dir_with_hidden_files, dataset, dataset_dict, disable_implicit_token, disable_tqdm_output, doctest_namespace, geoparquet_path, gz_file, hf_api, hf_gated_dataset_repo_txt_data, hf_private_dataset_repo_txt_data, hf_private_dataset_repo_txt_data_, hf_private_dataset_repo_zipped_img_data, hf_private_dataset_repo_zipped_img_data_, hf_private_dataset_repo_zipped_txt_data, hf_private_dataset_repo_zipped_txt_data_, hf_token, image_file, json_dict_of_lists_path, json_list_of_dicts_path, jsonl2_path, jsonl_312_path, jsonl_gz_path, jsonl_path, jsonl_str_path, lz4_file, mock_fsspec, mockfs, monkeypatch, parquet_path, pytestconfig, record_property, record_testsuite_property, record_xml_attribute, recwarn, set_ci_hub_access_token, set_sqlalchemy_silence_uber_warning, set_test_cache_config, set_update_download_counts_to_false, seven_zip_file, sqlite_path, tar_file, tar_jsonl_path, tar_nested_jsonl_path, temporary_repo, tensor_file, testrun_uid, text2_path, text_dir, text_dir_with_unsupported_extension, text_file, text_file_content, text_gz_path, text_path, text_path_with_unicode_new_lines, tmp_path, tmp_path_factory, tmpdir, tmpdir_factory, tmpfs, worker_id, xml_file, xz_file, zero_time_out_for_remote_code, zip_csv_path, zip_csv_with_dir_path, zip_file, zip_image_path, zip_jsonl_path, zip_jsonl_with_dir_path, zip_nested_jsonl_path, zip_text_path, zip_text_with_dir_path, zip_unsupported_ext_path, zip_uppercase_csv_path, zstd_file > use 'pytest --fixtures [testpath]' for help on them. /build/python-datasets/src/datasets-3.5.0/tests/features/test_pdf.py:34 _________ ERROR at setup of test_pdf_feature_encode_example[<lambda>0] _________ [gw46] linux -- Python 3.13.2 /build/python-datasets/src/datasets-3.5.0/test-env/bin/python file /build/python-datasets/src/datasets-3.5.0/tests/features/test_pdf.py, line 8 @require_pdfplumber @pytest.mark.parametrize( "build_example", [ lambda pdf_path: pdf_path, lambda pdf_path: open(pdf_path, "rb").read(), lambda pdf_path: {"path": pdf_path}, lambda pdf_path: {"path": pdf_path, "bytes": None}, lambda pdf_path: {"path": pdf_path, "bytes": open(pdf_path, "rb").read()}, lambda pdf_path: {"path": None, "bytes": open(pdf_path, "rb").read()}, lambda pdf_path: {"bytes": open(pdf_path, "rb").read()}, ], ) def test_pdf_feature_encode_example(shared_datadir, build_example): E fixture 'shared_datadir' not found > available fixtures: _hf_gated_dataset_repo_txt_data, arrow_file, arrow_path, audio_file, bz2_csv_path, bz2_file, cache, capfd, capfdbinary, caplog, capsys, capsysbinary, ci_hfh_hf_hub_url, ci_hub_config, cleanup_repo, csv2_path, csv_path, data_dir_with_hidden_files, dataset, dataset_dict, disable_implicit_token, disable_tqdm_output, doctest_namespace, geoparquet_path, gz_file, hf_api, hf_gated_dataset_repo_txt_data, hf_private_dataset_repo_txt_data, hf_private_dataset_repo_txt_data_, hf_private_dataset_repo_zipped_img_data, hf_private_dataset_repo_zipped_img_data_, hf_private_dataset_repo_zipped_txt_data, hf_private_dataset_repo_zipped_txt_data_, hf_token, image_file, json_dict_of_lists_path, json_list_of_dicts_path, jsonl2_path, jsonl_312_path, jsonl_gz_path, jsonl_path, jsonl_str_path, lz4_file, mock_fsspec, mockfs, monkeypatch, parquet_path, pytestconfig, record_property, record_testsuite_property, record_xml_attribute, recwarn, set_ci_hub_access_token, set_sqlalchemy_silence_uber_warning, set_test_cache_config, set_update_download_counts_to_false, seven_zip_file, sqlite_path, tar_file, tar_jsonl_path, tar_nested_jsonl_path, temporary_repo, tensor_file, testrun_uid, text2_path, text_dir, text_dir_with_unsupported_extension, text_file, text_file_content, text_gz_path, text_path, text_path_with_unicode_new_lines, tmp_path, tmp_path_factory, tmpdir, tmpdir_factory, tmpfs, worker_id, xml_file, xz_file, zero_time_out_for_remote_code, zip_csv_path, zip_csv_with_dir_path, zip_file, zip_image_path, zip_jsonl_path, zip_jsonl_with_dir_path, zip_nested_jsonl_path, zip_text_path, zip_text_with_dir_path, zip_unsupported_ext_path, zip_uppercase_csv_path, zstd_file > use 'pytest --fixtures [testpath]' for help on them. /build/python-datasets/src/datasets-3.5.0/tests/features/test_pdf.py:8 ``` ### Expected behavior All fixtures used in tests should be available. ### Environment info Arch Linux build system, building the [python-datasets](https://gitlab.archlinux.org/archlinux/packaging/packages/python-datasets) package. There are actually [many deselected tests](https://gitlab.archlinux.org/archlinux/packaging/packages/python-datasets/-/blob/6f97957f0c326cc7b3da6b7f12326305bcaef374/PKGBUILD#L66-148) which were failing on previous releases, but these errors popped up in 3.5.0.
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https://api.github.com/repos/huggingface/datasets/issues/7481
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2,950,692,971
I_kwDODunzps6v4ABr
7,481
deal with python `10_000` legal number in slice syntax
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[ "should be an easy fix, I opened a PR" ]
2025-03-26T20:10:54Z
2025-03-28T16:20:44Z
2025-03-28T16:20:44Z
NONE
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### Feature request ``` In [6]: ds = datasets.load_dataset("HuggingFaceH4/ultrachat_200k", split="train_sft[:1000]") In [7]: ds = datasets.load_dataset("HuggingFaceH4/ultrachat_200k", split="train_sft[:1_000]") [dozens of frames skipped] File /usr/local/lib/python3.10/dist-packages/datasets/arrow_reader.py:444, in _str_to_read_instruction(spec) 442 res = _SUB_SPEC_RE.match(spec) 443 if not res: --> 444 raise ValueError(f"Unrecognized instruction format: {spec}") ValueError: Unrecognized instruction format: train_sft[:1_000] ``` It took me a while to understand what the problem was. But apparently `pyarrow` doesn't allow python numbers that may include `_` as in `1_000`. The `_` aids readability since `10_000_000` vs `10000000` is obviously easier to grasp of what the actual number is. Feature request: ideally `datasets` being a python module will do the right thing and convert python numbers into whatever pyarrow supports - in this case stripping `_`s. Second best it'd err and tell the user that using numbers with `_` in split slices is not acceptible, so that the user won't have to deal with a huge pyarrow assert they know nothing about. Thank you!
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7,480
HF_DATASETS_CACHE ignored?
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[ "FWIW, it does eventually write to /tmp/roller/datasets when generating the final version.", "Hey, I’d love to work on this issue but I am a beginner, can I work it with you?", "Hi @lhoestq,\nI'd like to look into this issue but I'm still learning. Could you share any quick pointers on the HF_DATASETS_CACHE beh...
2025-03-26T17:19:34Z
2025-04-28T10:16:16Z
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### Describe the bug I'm struggling to get things to respect HF_DATASETS_CACHE. Rationale: I'm on a system that uses NFS for homedir, so downloading to NFS is expensive, slow, and wastes valuable quota compared to local disk. Instead, it seems to rely mostly on HF_HUB_CACHE. Current version: 3.2.1dev. In the process of testing 3.4.0 ### Steps to reproduce the bug [Currently writing using datasets 3.2.1dev. Will follow up with 3.4.0 results] dump.py: ```python from datasets import load_dataset dataset = load_dataset("HuggingFaceFW/fineweb", name="sample-100BT", split="train") ``` Repro steps ```bash # ensure no cache $ mv ~/.cache/huggingface ~/.cache/huggingface.bak $ export HF_DATASETS_CACHE=/tmp/roller/datasets $ rm -rf ${HF_DATASETS_CACHE} $ env | grep HF | grep -v TOKEN HF_DATASETS_CACHE=/tmp/roller/datasets $ python dump.py # (omitted for brevity) # (while downloading) $ du -hcs ~/.cache/huggingface/hub 18G hub 18G total # (after downloading) $ du -hcs ~/.cache/huggingface/hub ``` It's a shame because datasets supports s3 (which I could really use right now) but hub does not. ### Expected behavior * ~/.cache/huggingface/hub stays empty * /tmp/roller/datasets becomes full of stuff ### Environment info [Currently writing using datasets 3.2.1dev. Will follow up with 3.4.0 results]
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7,479
Features.from_arrow_schema is destructive
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2025-03-26T16:46:43Z
2025-03-26T16:46:58Z
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CONTRIBUTOR
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### Describe the bug I came across this, perhaps niche, bug where `Features` does not/cannot account for pyarrow's `nullable=False` option in Fields. Interestingly, I found that in regular "flat" fields this does not necessarily lead to conflicts, but when a non-nullable field is in a struct, an incompatibility arises. It's not easy to explain in words, so the minimal example below should help I hope. Note that I suggest a solution in the comments in the code, simply allowing `Dataset.to_parquet` to allow for a `schema` argument which, when provided, will override the default ds.features.arrow_schema. ### Steps to reproduce the bug ```python import os from datasets import Dataset, Features import pyarrow as pa import pyarrow.parquet as pq # HF datasets is destructive when you call Features.from_arrow_schema(schema) on a schema # because it will not account for nullable and non-nullable fields in structs (it will always allow nullable) # Reloading the same dataset with the original schema will raise an error because the schema is not the same anymore non_nullable_schema = pa.schema( [ pa.field("text", pa.string(), nullable=False), pa.field("meta", pa.struct( [ pa.field("date", pa.list_(pa.string()), nullable=False), ], ), ), ] ) print("ORIGINAL SCHEMA") print(non_nullable_schema) print() feats = Features.from_arrow_schema(non_nullable_schema) print("FEATUR-IZED SCHEMA (nullable-restrictions are gone)") print(feats.arrow_schema) print() ds = Dataset.from_dict( { "text": ["a", "b", "c"], "meta": [{"date": ["2021-01-01"]}, {"date": ["2021-01-02"]}, {"date": ["2021-01-03"]}], }, features=feats, ) fname = "tmp.parquet" # This is not possible: TypeError: pyarrow.parquet.core.ParquetWriter() got multiple values for keyword argument 'schema' # Though I believe this would be the easiest fix: allow schema to be passed to to_parquet and overwrite the schema in the dataset # ds.to_parquet(fname, schema=non_nullable_schema) ds.to_parquet(fname) try: _ = pq.read_table(fname, schema=non_nullable_schema) finally: os.unlink(fname) ``` ### Expected behavior - Non-destructive behavior when converting an arrow schema to Features; or - the ability to override the default arrow schema with a custom one ### Environment info - `datasets` version: 3.2.0 - Platform: Linux-5.14.0-427.20.1.el9_4.x86_64-x86_64-with-glibc2.34 - Python version: 3.11.10 - `huggingface_hub` version: 0.27.1 - PyArrow version: 18.1.0 - Pandas version: 2.2.3 - `fsspec` version: 2024.9.0
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7,477
What is the canonical way to compress a Dataset?
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[ "I saw this post by @lhoestq: https://discuss.huggingface.co/t/increased-arrow-table-size-by-factor-of-2/26561/4 suggesting that there is at least some internal code for writing sharded parquet datasets non-concurrently. This appears to be that code: https://github.com/huggingface/datasets/blob/94ccd1b4fada8a92cea...
2025-03-25T16:47:51Z
2025-04-03T09:13:11Z
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Given that Arrow is the preferred backend for a Dataset, what is a user supposed to do if they want concurrent reads, concurrent writes AND on-disk compression for a larger dataset? Parquet would be the obvious answer except that there is no native support for writing sharded, parquet datasets concurrently [[1](https://github.com/huggingface/datasets/issues/7047)]. Am I missing something? And if so, why is this not the standard/default way that `Dataset`'s work as they do in Xarray, Ray Data, Composer, etc.?
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7,475
IterableDataset's state_dict shard_example_idx is always equal to the number of samples in a shard
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[ "Hey, I’d love to work on this issue but I am a beginner, can I work it with you?", "Hello. I'm sorry but I don't have much time to get in the details for now.\nHave you managed to reproduce the issue with the code provided ?\nIf you want to work on it, you can self-assign and ask @lhoestq for directions", "Hi ...
2025-03-25T13:58:07Z
2025-05-06T14:22:19Z
2025-05-06T14:05:07Z
CONTRIBUTOR
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### Describe the bug I've noticed a strange behaviour with Iterable state_dict: the value of shard_example_idx is always equal to the amount of samples in a shard. ### Steps to reproduce the bug I am reusing the example from the doc ```python from datasets import Dataset ds = Dataset.from_dict({"a": range(6)}).to_iterable_dataset(num_shards=1) state_dict = None # Iterate through the dataset and print examples for idx, example in enumerate(ds): print(example) if idx == 2: state_dict = ds.state_dict() print("checkpoint") break print(state_dict) ``` Returns: ``` {'a': 0} {'a': 1} checkpoint {'examples_iterable': {'shard_idx': 0, 'shard_example_idx': 6, 'type': 'ArrowExamplesIterable'}, 'epoch': 0} ``` ### Expected behavior shard_example_idx should be 2 instead of 6 If we run with num_shards=2, then shard_example_idx is 3 instead of 2 and so on. ### Environment info - `datasets` version: 3.4.1 - Platform: macOS-14.6.1-arm64-arm-64bit - Python version: 3.12.9 - `huggingface_hub` version: 0.29.3 - PyArrow version: 19.0.1 - Pandas version: 2.2.3 - `fsspec` version: 2024.12.0
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Webdataset data format problem
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[ "I was able to work around it" ]
2025-03-21T17:23:52Z
2025-03-21T19:19:58Z
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### Describe the bug Please see https://huggingface.co/datasets/ejschwartz/idioms/discussions/1 Error code: FileFormatMismatchBetweenSplitsError All three splits, train, test, and validation, use webdataset. But only the train split has more than one file. How can I force the other two splits to also be interpreted as being the webdataset format? (I don't think there is currently a way, but happy to be told that I am wrong.) ### Steps to reproduce the bug ``` import datasets datasets.load_dataset("ejschwartz/idioms") ### Expected behavior The dataset loads. Alternatively, there is a YAML syntax for manually specifying the format. ### Environment info - `datasets` version: 3.2.0 - Platform: Linux-6.8.0-52-generic-x86_64-with-glibc2.35 - Python version: 3.10.12 - `huggingface_hub` version: 0.28.1 - PyArrow version: 19.0.0 - Pandas version: 2.2.3 - `fsspec` version: 2024.9.0
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