Datasets:
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Error code: DatasetGenerationCastError
Exception: DatasetGenerationCastError
Message: An error occurred while generating the dataset
All the data files must have the same columns, but at some point there are 6 new columns ({'format', 'weightsManifest', 'generatedBy', 'convertedBy', 'signature', 'modelTopology'}) and 389 missing columns ({'German Hunting Terrier', 'Croatian Shepherd', 'Cairn Terrier', 'Taiwan', 'Boston Terrier', 'Greek Harehound', 'Scottish Deerhound', 'East Siberian Laika', 'Polish Hound Dog', 'African Wild Dog', 'Rottweiler', 'Russo-European Laika', 'Japanese Terrier', 'Blue Gascony Basset', 'Bergamasco Shepherd', 'Peruvian Hairless Dog', 'Prague Ratter Dog', 'Nederlandse Kooikerhondje', 'Black And Tan Coonhound Dog', 'Giant Schnauzer', 'Segugio Maremmano', 'Bedlington Terrier', 'Dogue De Bordeaux', 'Eurasian', 'Pumi Dog', 'Maltese', 'Landseer (European Continental Type)', 'Dingo', 'Dhole', 'Kelpie', 'Curly-Coated Retriever', 'Irish Red Setter', 'Rafeiro Of Alentejo', 'Swedish Vallhund', 'Italian Short-Haired Segugio', 'Gordon Setter', 'Mioritic Shepherd', 'Sealyham Terrier', 'Castro Laboreiro', 'Cardigan', 'Estonian Hound', 'Tibetan Mastiff', 'Drentsche Partridge', 'Austrian Pinscher', 'Barbet', 'French White And Orange Hound', 'Boxer', 'Transylvanian Hound', 'Catalan Sheepdog', 'Corgi', 'Spanish Hound', 'German Spitz', 'Picardy Spaniel', 'African Hunting Dog', 'English Cocker Spaniel', 'Irish Spaniel', 'Chihuahua', 'Karst Shepherd', 'Mudi', 'Blenheim Spaniel', 'Hygen Hound', 'Bearded Collie', 'Portuguese Water Dog', 'Beagle', 'Chesapeake Bay Retriever', 'Entlebucher Mountian Dog', 'Gascon Saintongeois', 'Keeshond', 'Samoyed', 'Havanese', 'English Foxhound', 'Central Asian Shepherd Dog', 'Pudelpointer', 'Labrador Retriever', 'Portuguese Sheepdog', 'Labradoodle', 'Dutch Shepherd Dog', 'Engl
...
'Shiba Inu', 'Puli', 'Spanish Mastiff', 'Irish Red And White Setter', 'Mexican Hairless', 'Barak Hound', 'Czechoslovakian Wolfdog', 'Ibizan Hound', 'White Swiss Shepherd', 'French White & Black Hound', 'Slovakian Hound', 'Poodle', 'Kangal Shepherd', 'Irish Glen Of Imaal Terrier', 'Komondor', 'American Hairless', 'Italian Rough-Haired Segugio', 'Rough Collie', 'Toy Poodle', 'German Roughhaired Pointer', 'Grand Basset Griffon Vendéen', 'Irish Wolfhound', 'Pug', 'Karelian Bear', 'Rastreador Brasileiro', 'Thai Ridgeback', 'Malinois', 'Nova Scotia Duck Tolling Retriever', 'Pembroke Welsh Corgi', 'American Foxhound', 'Coton De Tulear', 'Thai Bangkaew', 'Small Blue Gascony', 'Hokkaido', 'Lancashire Heeler', 'Komondor Dog', 'German Hound', 'Dalmatian', 'Bolognese', 'French Spaniel', 'Neapolitan Mastiff', 'Affenpinscher', 'West Highland White Terrier', 'Wirehaired Slovakian Pointer', 'Portuguese Warren Hound-Portuguese Podengo Dog', 'Japanese Chin', 'Brazilian Terrier', 'Finnish Spitz', 'Smålandsstövare', 'Pit Bull', 'Majorca Shepherd', 'Deerhound', 'Broholmer', 'Jämthund', 'Posavatz Hound', 'Bohemian Wire-Haired Pointing Griffon', 'Old Danish Pointer', 'Brazilian Tracker', 'Serbian Tricolour Hound', 'Majorca Mastiff', 'Kerry Blue Terrier', 'German Shorthaired Pointer', 'Chinese Crested Dog', 'Medium-Sized Anglo-French Hound', 'Elk Hound', 'Wire Fox Terrier', 'Poitevin', 'Šarplaninac', 'Sussex Spaniel', 'Wirehaired Pointing Griffon', 'Little Lion', 'Briquet Griffon Vendeen Dog'}).
This happened while the json dataset builder was generating data using
hf://datasets/benni-ben/dog-breeds/Pretrained/TensorFlow.js /model.json (at revision 8be9c0024e2cce0db921d06eaf6daed6a0831ce1), [/tmp/hf-datasets-cache/medium/datasets/13314881385311-config-parquet-and-info-benni-ben-dog-breeds-55f19e3e/hub/datasets--benni-ben--dog-breeds/snapshots/8be9c0024e2cce0db921d06eaf6daed6a0831ce1/Pretrained/CoreML/classes.json (origin=hf://datasets/benni-ben/dog-breeds@8be9c0024e2cce0db921d06eaf6daed6a0831ce1/Pretrained/CoreML/classes.json), /tmp/hf-datasets-cache/medium/datasets/13314881385311-config-parquet-and-info-benni-ben-dog-breeds-55f19e3e/hub/datasets--benni-ben--dog-breeds/snapshots/8be9c0024e2cce0db921d06eaf6daed6a0831ce1/Pretrained/Keras/classes.json (origin=hf://datasets/benni-ben/dog-breeds@8be9c0024e2cce0db921d06eaf6daed6a0831ce1/Pretrained/Keras/classes.json), /tmp/hf-datasets-cache/medium/datasets/13314881385311-config-parquet-and-info-benni-ben-dog-breeds-55f19e3e/hub/datasets--benni-ben--dog-breeds/snapshots/8be9c0024e2cce0db921d06eaf6daed6a0831ce1/Pretrained/ONNX/classes.json (origin=hf://datasets/benni-ben/dog-breeds@8be9c0024e2cce0db921d06eaf6daed6a0831ce1/Pretrained/ONNX/classes.json), /tmp/hf-datasets-cache/medium/datasets/13314881385311-config-parquet-and-info-benni-ben-dog-breeds-55f19e3e/hub/datasets--benni-ben--dog-breeds/snapshots/8be9c0024e2cce0db921d06eaf6daed6a0831ce1/Pretrained/Python App/classes.json (origin=hf://datasets/benni-ben/dog-breeds@8be9c0024e2cce0db921d06eaf6daed6a0831ce1/Pretrained/Python App/classes.json), /tmp/hf-datasets-cache/medium/datasets/13314881385311-config-parquet-and-info-benni-ben-dog-breeds-55f19e3e/hub/datasets--benni-ben--dog-breeds/snapshots/8be9c0024e2cce0db921d06eaf6daed6a0831ce1/Pretrained/TensorFlow Lite/classes.json (origin=hf://datasets/benni-ben/dog-breeds@8be9c0024e2cce0db921d06eaf6daed6a0831ce1/Pretrained/TensorFlow Lite/classes.json), /tmp/hf-datasets-cache/medium/datasets/13314881385311-config-parquet-and-info-benni-ben-dog-breeds-55f19e3e/hub/datasets--benni-ben--dog-breeds/snapshots/8be9c0024e2cce0db921d06eaf6daed6a0831ce1/Pretrained/TensorFlow.js /classes.json (origin=hf://datasets/benni-ben/dog-breeds@8be9c0024e2cce0db921d06eaf6daed6a0831ce1/Pretrained/TensorFlow.js /classes.json), /tmp/hf-datasets-cache/medium/datasets/13314881385311-config-parquet-and-info-benni-ben-dog-breeds-55f19e3e/hub/datasets--benni-ben--dog-breeds/snapshots/8be9c0024e2cce0db921d06eaf6daed6a0831ce1/Pretrained/TensorFlow.js /model.json (origin=hf://datasets/benni-ben/dog-breeds@8be9c0024e2cce0db921d06eaf6daed6a0831ce1/Pretrained/TensorFlow.js /model.json), /tmp/hf-datasets-cache/medium/datasets/13314881385311-config-parquet-and-info-benni-ben-dog-breeds-55f19e3e/hub/datasets--benni-ben--dog-breeds/snapshots/8be9c0024e2cce0db921d06eaf6daed6a0831ce1/Pretrained/TensorFlow/classes.json (origin=hf://datasets/benni-ben/dog-breeds@8be9c0024e2cce0db921d06eaf6daed6a0831ce1/Pretrained/TensorFlow/classes.json)]
Please either edit the data files to have matching columns, or separate them into different configurations (see docs at https://hf.co/docs/hub/datasets-manual-configuration#multiple-configurations)
Traceback: Traceback (most recent call last):
File "/usr/local/lib/python3.12/site-packages/datasets/builder.py", line 1887, in _prepare_split_single
writer.write_table(table)
File "/usr/local/lib/python3.12/site-packages/datasets/arrow_writer.py", line 675, in write_table
pa_table = table_cast(pa_table, self._schema)
^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^
File "/usr/local/lib/python3.12/site-packages/datasets/table.py", line 2272, in table_cast
return cast_table_to_schema(table, schema)
^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^
File "/usr/local/lib/python3.12/site-packages/datasets/table.py", line 2218, in cast_table_to_schema
raise CastError(
datasets.table.CastError: Couldn't cast
format: string
generatedBy: string
convertedBy: string
signature: struct<inputs: struct<input: struct<name: string, dtype: string, tensorShape: struct<dim: list<item: (... 150 chars omitted)
child 0, inputs: struct<input: struct<name: string, dtype: string, tensorShape: struct<dim: list<item: struct<size: s (... 10 chars omitted)
child 0, input: struct<name: string, dtype: string, tensorShape: struct<dim: list<item: struct<size: string>>>>
child 0, name: string
child 1, dtype: string
child 2, tensorShape: struct<dim: list<item: struct<size: string>>>
child 0, dim: list<item: struct<size: string>>
child 0, item: struct<size: string>
child 0, size: string
child 1, outputs: struct<output_0: struct<name: string, dtype: string, tensorShape: struct<dim: list<item: struct<size (... 13 chars omitted)
child 0, output_0: struct<name: string, dtype: string, tensorShape: struct<dim: list<item: struct<size: string>>>>
child 0, name: string
child 1, dtype: string
child 2, tensorShape: struct<dim: list<item: struct<size: string>>>
child 0, dim: list<item: struct<size: string>>
child 0, item: struct<size: string>
child 0, size: string
modelTopology: struct<node: list<item: struct<name: string, op: string, attr: struct<dtype: struct<type: string>, v (... 1111 chars omitted)
child 0, node: list<item: struct<nam
...
truct<i: string>
child 0, i: string
child 22, begin_mask: struct<i: string>
child 0, i: string
child 23, axis: struct<i: string>
child 0, i: string
child 24, N: struct<i: string>
child 0, i: string
child 25, Tshape: struct<type: string>
child 0, type: string
child 26, transpose_b: struct<b: bool>
child 0, b: bool
child 27, transpose_a: struct<b: bool>
child 0, b: bool
child 3, input: list<item: string>
child 0, item: string
child 4, device: string
child 1, library: struct<>
child 2, versions: struct<producer: int64>
child 0, producer: int64
weightsManifest: list<item: struct<paths: list<item: string>, weights: list<item: struct<name: string, shape: list<it (... 29 chars omitted)
child 0, item: struct<paths: list<item: string>, weights: list<item: struct<name: string, shape: list<item: int64>, (... 17 chars omitted)
child 0, paths: list<item: string>
child 0, item: string
child 1, weights: list<item: struct<name: string, shape: list<item: int64>, dtype: string>>
child 0, item: struct<name: string, shape: list<item: int64>, dtype: string>
child 0, name: string
child 1, shape: list<item: int64>
child 0, item: int64
child 2, dtype: string
to
{'Bohemian Wire-Haired Pointing Griffon': Value('int64'), 'Eskimo Dog': Value('int64'), 'Drentsche Partridge': Value('int64'), 'Thai Ridgeback': Value('int64'), 'Berger Picard': Value('int64'), 'Bluetick Coonhound': Value('int64'), 'Skye Terrier': Value('int64'), 'Russian Toy': Value('int64'), 'Greyhound': Value('int64'), 'Small Swiss Hound': Value('int64'), 'Large Munsterlander': Value('int64'), 'Corgi': Value('int64'), 'Mudi': Value('int64'), 'Miniature Bull Terrier': Value('int64'), 'Alpine Dachsbracke Dog': Value('int64'), 'Bichon Frisé': Value('int64'), 'Miniature Pinscher': Value('int64'), 'Great Gascony Blue': Value('int64'), 'Griffon Bleu de Gascogne': Value('int64'), 'Bullmastiff': Value('int64'), 'Boston Terrier': Value('int64'), 'East Siberian Laika': Value('int64'), 'Irish Setter': Value('int64'), 'Blue Gascony Basset': Value('int64'), 'Shar Pei': Value('int64'), 'Irish Terrier': Value('int64'), 'Podenco Canario': Value('int64'), 'Whippet': Value('int64'), 'Bouvier Des Ardennes': Value('int64'), 'Scotch Terrier': Value('int64'), 'Rottweiler': Value('int64'), 'Pyrenean Sheepdog - Smooth Faced': Value('int64'), 'Schapendoes': Value('int64'), 'Saint Germain Pointer': Value('int64'), 'Wirehaired Vizsla': Value('int64'), 'Tibetan Mastiff': Value('int64'), 'Mioritic Shepherd': Value('int64'), 'French Hound': Value('int64'), 'Portuguese Warren Hound-Portuguese Podengo Dog': Value('int64'), 'American Foxhound': Value('int64'), 'Hamiltonstövare': Value('int64'), 'Kelpie'
...
Walker Coonhound': Value('int64'), 'Boxer': Value('int64'), 'Lancashire Heeler': Value('int64'), 'Estrela Mountain': Value('int64'), 'Griffon Bruxellois': Value('int64'), 'Saint Miguel Cattle Dog': Value('int64'), 'English Toy Terrier': Value('int64'), 'Cardigan': Value('int64'), 'Chinese Crested Dog': Value('int64'), 'Dogo Argentino': Value('int64'), 'Hovawart': Value('int64'), 'Azawakh': Value('int64'), 'Swedish Lapphund': Value('int64'), 'English Setter': Value('int64'), 'Shetland Sheepdog': Value('int64'), 'Pyrenean Mastiff': Value('int64'), 'Schiller Hound': Value('int64'), 'Canadian Eskimo Dog': Value('int64'), 'Cesky Terrier': Value('int64'), 'Wire Fox Terrier': Value('int64'), 'Bloodhound': Value('int64'), 'English Springer Spaniel': Value('int64'), 'Bull Terrier(Target Dog)': Value('int64'), 'Kerry Blue Terrier': Value('int64'), 'Burgos Pointer': Value('int64'), 'Eurasian': Value('int64'), 'Mastiff': Value('int64'), 'Norwich Terrier': Value('int64'), 'Artois Hound': Value('int64'), 'Basset Fauve De Bretagne': Value('int64'), 'French Tricolour Hound': Value('int64'), 'Swiss Hound': Value('int64'), 'Yakutian Laika': Value('int64'), 'Redbone': Value('int64'), 'Ibizan Hound': Value('int64'), 'Wheaten Terrier': Value('int64'), 'Australian Terrier': Value('int64'), 'Valencian Terrier': Value('int64'), 'Romagna Water Dog': Value('int64'), 'Welsh Corgi (Pembroke)': Value('int64'), 'Nova Scotia Duck Tolling Retriever': Value('int64'), 'American Water Spaniel': Value('int64')}
because column names don't match
During handling of the above exception, another exception occurred:
Traceback (most recent call last):
File "/src/services/worker/src/worker/job_runners/config/parquet_and_info.py", line 1347, in compute_config_parquet_and_info_response
parquet_operations = convert_to_parquet(builder)
^^^^^^^^^^^^^^^^^^^^^^^^^^^
File "/src/services/worker/src/worker/job_runners/config/parquet_and_info.py", line 980, in convert_to_parquet
builder.download_and_prepare(
File "/usr/local/lib/python3.12/site-packages/datasets/builder.py", line 884, in download_and_prepare
self._download_and_prepare(
File "/usr/local/lib/python3.12/site-packages/datasets/builder.py", line 947, in _download_and_prepare
self._prepare_split(split_generator, **prepare_split_kwargs)
File "/usr/local/lib/python3.12/site-packages/datasets/builder.py", line 1736, in _prepare_split
for job_id, done, content in self._prepare_split_single(
^^^^^^^^^^^^^^^^^^^^^^^^^^^
File "/usr/local/lib/python3.12/site-packages/datasets/builder.py", line 1889, in _prepare_split_single
raise DatasetGenerationCastError.from_cast_error(
datasets.exceptions.DatasetGenerationCastError: An error occurred while generating the dataset
All the data files must have the same columns, but at some point there are 6 new columns ({'format', 'weightsManifest', 'generatedBy', 'convertedBy', 'signature', 'modelTopology'}) and 389 missing columns ({'German Hunting Terrier', 'Croatian Shepherd', 'Cairn Terrier', 'Taiwan', 'Boston Terrier', 'Greek Harehound', 'Scottish Deerhound', 'East Siberian Laika', 'Polish Hound Dog', 'African Wild Dog', 'Rottweiler', 'Russo-European Laika', 'Japanese Terrier', 'Blue Gascony Basset', 'Bergamasco Shepherd', 'Peruvian Hairless Dog', 'Prague Ratter Dog', 'Nederlandse Kooikerhondje', 'Black And Tan Coonhound Dog', 'Giant Schnauzer', 'Segugio Maremmano', 'Bedlington Terrier', 'Dogue De Bordeaux', 'Eurasian', 'Pumi Dog', 'Maltese', 'Landseer (European Continental Type)', 'Dingo', 'Dhole', 'Kelpie', 'Curly-Coated Retriever', 'Irish Red Setter', 'Rafeiro Of Alentejo', 'Swedish Vallhund', 'Italian Short-Haired Segugio', 'Gordon Setter', 'Mioritic Shepherd', 'Sealyham Terrier', 'Castro Laboreiro', 'Cardigan', 'Estonian Hound', 'Tibetan Mastiff', 'Drentsche Partridge', 'Austrian Pinscher', 'Barbet', 'French White And Orange Hound', 'Boxer', 'Transylvanian Hound', 'Catalan Sheepdog', 'Corgi', 'Spanish Hound', 'German Spitz', 'Picardy Spaniel', 'African Hunting Dog', 'English Cocker Spaniel', 'Irish Spaniel', 'Chihuahua', 'Karst Shepherd', 'Mudi', 'Blenheim Spaniel', 'Hygen Hound', 'Bearded Collie', 'Portuguese Water Dog', 'Beagle', 'Chesapeake Bay Retriever', 'Entlebucher Mountian Dog', 'Gascon Saintongeois', 'Keeshond', 'Samoyed', 'Havanese', 'English Foxhound', 'Central Asian Shepherd Dog', 'Pudelpointer', 'Labrador Retriever', 'Portuguese Sheepdog', 'Labradoodle', 'Dutch Shepherd Dog', 'Engl
...
'Shiba Inu', 'Puli', 'Spanish Mastiff', 'Irish Red And White Setter', 'Mexican Hairless', 'Barak Hound', 'Czechoslovakian Wolfdog', 'Ibizan Hound', 'White Swiss Shepherd', 'French White & Black Hound', 'Slovakian Hound', 'Poodle', 'Kangal Shepherd', 'Irish Glen Of Imaal Terrier', 'Komondor', 'American Hairless', 'Italian Rough-Haired Segugio', 'Rough Collie', 'Toy Poodle', 'German Roughhaired Pointer', 'Grand Basset Griffon Vendéen', 'Irish Wolfhound', 'Pug', 'Karelian Bear', 'Rastreador Brasileiro', 'Thai Ridgeback', 'Malinois', 'Nova Scotia Duck Tolling Retriever', 'Pembroke Welsh Corgi', 'American Foxhound', 'Coton De Tulear', 'Thai Bangkaew', 'Small Blue Gascony', 'Hokkaido', 'Lancashire Heeler', 'Komondor Dog', 'German Hound', 'Dalmatian', 'Bolognese', 'French Spaniel', 'Neapolitan Mastiff', 'Affenpinscher', 'West Highland White Terrier', 'Wirehaired Slovakian Pointer', 'Portuguese Warren Hound-Portuguese Podengo Dog', 'Japanese Chin', 'Brazilian Terrier', 'Finnish Spitz', 'Smålandsstövare', 'Pit Bull', 'Majorca Shepherd', 'Deerhound', 'Broholmer', 'Jämthund', 'Posavatz Hound', 'Bohemian Wire-Haired Pointing Griffon', 'Old Danish Pointer', 'Brazilian Tracker', 'Serbian Tricolour Hound', 'Majorca Mastiff', 'Kerry Blue Terrier', 'German Shorthaired Pointer', 'Chinese Crested Dog', 'Medium-Sized Anglo-French Hound', 'Elk Hound', 'Wire Fox Terrier', 'Poitevin', 'Šarplaninac', 'Sussex Spaniel', 'Wirehaired Pointing Griffon', 'Little Lion', 'Briquet Griffon Vendeen Dog'}).
This happened while the json dataset builder was generating data using
hf://datasets/benni-ben/dog-breeds/Pretrained/TensorFlow.js /model.json (at revision 8be9c0024e2cce0db921d06eaf6daed6a0831ce1), [/tmp/hf-datasets-cache/medium/datasets/13314881385311-config-parquet-and-info-benni-ben-dog-breeds-55f19e3e/hub/datasets--benni-ben--dog-breeds/snapshots/8be9c0024e2cce0db921d06eaf6daed6a0831ce1/Pretrained/CoreML/classes.json (origin=hf://datasets/benni-ben/dog-breeds@8be9c0024e2cce0db921d06eaf6daed6a0831ce1/Pretrained/CoreML/classes.json), /tmp/hf-datasets-cache/medium/datasets/13314881385311-config-parquet-and-info-benni-ben-dog-breeds-55f19e3e/hub/datasets--benni-ben--dog-breeds/snapshots/8be9c0024e2cce0db921d06eaf6daed6a0831ce1/Pretrained/Keras/classes.json (origin=hf://datasets/benni-ben/dog-breeds@8be9c0024e2cce0db921d06eaf6daed6a0831ce1/Pretrained/Keras/classes.json), /tmp/hf-datasets-cache/medium/datasets/13314881385311-config-parquet-and-info-benni-ben-dog-breeds-55f19e3e/hub/datasets--benni-ben--dog-breeds/snapshots/8be9c0024e2cce0db921d06eaf6daed6a0831ce1/Pretrained/ONNX/classes.json (origin=hf://datasets/benni-ben/dog-breeds@8be9c0024e2cce0db921d06eaf6daed6a0831ce1/Pretrained/ONNX/classes.json), /tmp/hf-datasets-cache/medium/datasets/13314881385311-config-parquet-and-info-benni-ben-dog-breeds-55f19e3e/hub/datasets--benni-ben--dog-breeds/snapshots/8be9c0024e2cce0db921d06eaf6daed6a0831ce1/Pretrained/Python App/classes.json (origin=hf://datasets/benni-ben/dog-breeds@8be9c0024e2cce0db921d06eaf6daed6a0831ce1/Pretrained/Python App/classes.json), /tmp/hf-datasets-cache/medium/datasets/13314881385311-config-parquet-and-info-benni-ben-dog-breeds-55f19e3e/hub/datasets--benni-ben--dog-breeds/snapshots/8be9c0024e2cce0db921d06eaf6daed6a0831ce1/Pretrained/TensorFlow Lite/classes.json (origin=hf://datasets/benni-ben/dog-breeds@8be9c0024e2cce0db921d06eaf6daed6a0831ce1/Pretrained/TensorFlow Lite/classes.json), /tmp/hf-datasets-cache/medium/datasets/13314881385311-config-parquet-and-info-benni-ben-dog-breeds-55f19e3e/hub/datasets--benni-ben--dog-breeds/snapshots/8be9c0024e2cce0db921d06eaf6daed6a0831ce1/Pretrained/TensorFlow.js /classes.json (origin=hf://datasets/benni-ben/dog-breeds@8be9c0024e2cce0db921d06eaf6daed6a0831ce1/Pretrained/TensorFlow.js /classes.json), /tmp/hf-datasets-cache/medium/datasets/13314881385311-config-parquet-and-info-benni-ben-dog-breeds-55f19e3e/hub/datasets--benni-ben--dog-breeds/snapshots/8be9c0024e2cce0db921d06eaf6daed6a0831ce1/Pretrained/TensorFlow.js /model.json (origin=hf://datasets/benni-ben/dog-breeds@8be9c0024e2cce0db921d06eaf6daed6a0831ce1/Pretrained/TensorFlow.js /model.json), /tmp/hf-datasets-cache/medium/datasets/13314881385311-config-parquet-and-info-benni-ben-dog-breeds-55f19e3e/hub/datasets--benni-ben--dog-breeds/snapshots/8be9c0024e2cce0db921d06eaf6daed6a0831ce1/Pretrained/TensorFlow/classes.json (origin=hf://datasets/benni-ben/dog-breeds@8be9c0024e2cce0db921d06eaf6daed6a0831ce1/Pretrained/TensorFlow/classes.json)]
Please either edit the data files to have matching columns, or separate them into different configurations (see docs at https://hf.co/docs/hub/datasets-manual-configuration#multiple-configurations)Need help to make the dataset viewer work? Make sure to review how to configure the dataset viewer, and open a discussion for direct support.
Bohemian Wire-Haired Pointing Griffon int64 | Eskimo Dog int64 | Drentsche Partridge int64 | Thai Ridgeback int64 | Berger Picard int64 | Bluetick Coonhound int64 | Skye Terrier int64 | Russian Toy int64 | Greyhound int64 | Small Swiss Hound int64 | Large Munsterlander int64 | Corgi int64 | Mudi int64 | Miniature Bull Terrier int64 | Alpine Dachsbracke Dog int64 | Bichon Frisé int64 | Miniature Pinscher int64 | Great Gascony Blue int64 | Griffon Bleu de Gascogne int64 | Bullmastiff int64 | Boston Terrier int64 | East Siberian Laika int64 | Irish Setter int64 | Blue Gascony Basset int64 | Shar Pei int64 | Irish Terrier int64 | Podenco Canario int64 | Whippet int64 | Bouvier Des Ardennes int64 | Scotch Terrier int64 | Rottweiler int64 | Pyrenean Sheepdog - Smooth Faced int64 | Schapendoes int64 | Saint Germain Pointer int64 | Wirehaired Vizsla int64 | Tibetan Mastiff int64 | Mioritic Shepherd int64 | French Hound int64 | Portuguese Warren Hound-Portuguese Podengo Dog int64 | American Foxhound int64 | Hamiltonstövare int64 | Kelpie int64 | German Roughhaired Pointer int64 | Ariegeois int64 | Spanish Greyhound int64 | Norfolk Terrier int64 | Elk Hound int64 | Toy Poodle int64 | Schipperke int64 | Leonberg int64 | German Pinscher int64 | Neapolitan Mastiff int64 | Schnauzer int64 | Smooth Collie int64 | Picardy Spaniel int64 | Pomeranian int64 | Rough Collie int64 | Dalmatian int64 | French White And Orange Hound int64 | Italian Greyhound int64 | Bernese Mountain Dog int64 | Estonian Hound int64 | Afghan Hound int64 | Field Spaniel int64 | Belgian Shepherd int64 | Czechoslovakian Wolfdog int64 | King Charles Spaniel int64 | Polish Hunting int64 | Greek Harehound int64 | Irish Glen Of Imaal Terrier int64 | Staffordshire Bull Terrier int64 | Presa Canario int64 | Toy Terrier int64 | Sloughi int64 | Broholmer int64 | Dachshund int64 | Pit Bull int64 | Spanish Hound int64 | Dandie Dinmont Terrier int64 | Hokkaido int64 | Japanese Spitz int64 | Sealyham Terrier int64 | Lapponian Herder Dog int64 | English Springer int64 | Continental Bulldog int64 | Old English Sheepdog int64 | Scottish Deerhound int64 | French White & Black Hound int64 | Karelian Bear int64 | Cimarrón Uruguayo int64 | Basenji int64 | French Bulldog int64 | Coyote int64 | Poitevin int64 | Shih Tzu int64 | Blue Picardy Spaniel int64 | Komondor int64 | Istrian Wire-Haired Hound int64 | Pekingese int64 | Small Blue Gascony int64 | Tosa int64 | Briquet Griffon Vendeen Dog int64 | German Longhaired Pointer int64 | Tatra Shepherd int64 | Basset Hound int64 | Clumber Spaniel int64 | French Pointing - Pyrenean Type int64 | Great Dane int64 | Irish Soft Coated Wheaten Terrier int64 | Kishu int64 | Tornjak int64 | Thai Bangkaew int64 | Old Danish Pointer int64 | Bedlington Terrier int64 | Transylvanian Hound int64 | Border Terrier int64 | Auvergne Pointer int64 | Dhole int64 | Griffon Nivernais int64 | Miniature American Shepherd int64 | Portuguese Sheepdog int64 | Austrian Pinscher int64 | Dutch Smoushond int64 | Lhasa int64 | Pharaoh Hound int64 | Hanover Hound int64 | Wetterhoun int64 | Labrador int64 | Central Asian Shepherd Dog int64 | Landseer (European Continental Type) int64 | Šarplaninac int64 | Italian Short-Haired Segugio int64 | Chihuahua int64 | Grand Anglo-Français Tricolore int64 | Irish Water Spaniel int64 | Tibetan Terrier int64 | Scottish Terrier int64 | Shiba Inu int64 | Brazilian Tracker int64 | Jack Russell Terrier int64 | Newfoundland int64 | Lakeland Terrier Dog int64 | Austrian Black and Tan Hound int64 | Kangal Shepherd int64 | Appenzell Cattle Dog int64 | Harrier int64 | Rafeiro Of Alentejo int64 | Stabyhoun int64 | Castro Laboreiro int64 | Halden Hound int64 | Polish Lowland Sheepdog int64 | Pug int64 | Barak Hound int64 | Polish Hound Dog int64 | German Shorthaired Pointer int64 | Norwegian Lundehund int64 | Havanese int64 | Lakeland Terrier int64 | Pont-Audemer Spaniel int64 | Medium-Sized Anglo-French Hound int64 | Entlebucher Mountian Dog int64 | Russo-European Laika int64 | English Cocker Spaniel int64 | Malamute int64 | Lhasa Apso int64 | Brabancon Griffon int64 | African Hunting Dog int64 | Caucasian Shepherd Dog int64 | Beagle int64 | Taiwan int64 | Tyrolean Hound int64 | Croatian Shepherd int64 | Canaan int64 | Pyrenean Mountain Dog int64 | Maremma And The Abruzzes Sheepdog int64 | Cocker Spaniel int64 | Italian Sighthound int64 | Barbet int64 | Grand Griffon Vendéen int64 | Cockapoo int64 | Little Lion int64 | Japanese Terrier int64 | Italian Spinone int64 | German Spaniel int64 | Vizsla int64 | Wire-Haired Pointing Griffon Korthals int64 | Prague Ratter Dog int64 | Welsh Springer Spaniel int64 | Sussex Spaniel int64 | South Russian Shepherd Dog int64 | Dogue De Bordeaux int64 | Irish Wolfhound int64 | Pudelpointer int64 | Bohemian Shepherd int64 | Hygen Hound int64 | Silky Terrier int64 | Smålandsstövare int64 | American Spaniel int64 | Serbian Tricolour Hound int64 | Maltese int64 | Bergamasco Shepherd int64 | Italian Rough-Haired Segugio int64 | Dobermann int64 | African Wild Dog int64 | Affenpinscher int64 | Labrador Retriever int64 | Slovakian Chuvach int64 | Parson Russell Terrier int64 | Porcelaine int64 | Norman Artesien Basset int64 | Ibizan Podenco int64 | Irish Red And White Setter int64 | Weimaraner int64 | Manchester Terrier int64 | Brittany Spaniel int64 | Papillon int64 | Jämthund int64 | Grand Basset Griffon Vendéen int64 | Black Russian Terrier int64 | Ariege Pointer int64 | Deerhound int64 | Petit Basset Griffon Vendeen int64 | Montenegrin Mountain Hound int64 | Coarse-Haired Styrian Hound int64 | English Pointer int64 | Brazilian Terrier int64 | Danish-Swedish Farmdog int64 | Catalan Sheepdog int64 | Portuguese Pointer int64 | Cirneco Dell'Etna int64 | Curly-Coated Retriever int64 | Kai int64 | German Shepherd int64 | American Staffordshire Terrier int64 | Italian Pointing int64 | Tibetan Spaniel int64 | Bucovina Shepherd int64 | Karst Shepherd int64 | German Spitz int64 | Saarloos Wolfdog int64 | Norrbottenspitz int64 | Istrian Short-Haired Hound int64 | Samoyed int64 | Labradoodle int64 | Coton De Tulear int64 | Transmontano Mastiff int64 | Smooth Fox Terrier int64 | Alaskan Malamute int64 | Flat Coated Retriever Dog int64 | Groenendael int64 | Wirehaired Slovakian Pointer int64 | Border Collie int64 | Finnish Hound int64 | Bearded Collie int64 | Saluki int64 | French Spaniel int64 | Nederlandse Kooikerhondje int64 | Spanish Water Dog int64 | Black And Tan Coonhound Dog int64 | Fawn Brittany Griffon int64 | Chow Chow int64 | Italian Cane Corso int64 | Westphalian Dachsbracke int64 | Entlebuch Cattle int64 | Swedish Vallhund int64 | Australian Shepherd int64 | Magyar Agár int64 | Italian Volpino int64 | Irish Red Setter int64 | Saint Bernard int64 | German Hunting Terrier int64 | Bouvier Des Flandres int64 | English Foxhound int64 | Leonberger int64 | Japanese Spaniel int64 | Mexican Hairless int64 | Australian Cattle Dog int64 | Akita int64 | Bolognese int64 | Spanish Mastiff int64 | Braque du Bourbonnais int64 | Appenzeller int64 | Miniature Poodle int64 | Borzoi int64 | Polish Greyhound int64 | Aidi int64 | Greater Swiss Mountain Dog int64 | Dingo int64 | American Hairless int64 | Beauceron int64 | Gascon Saintongeois int64 | Cavalier King Charles Spaniel int64 | Icelandic Sheepdog int64 | Majorca Shepherd int64 | Yorkshire Terrier int64 | Irish Spaniel int64 | Husky int64 | Rastreador Brasileiro int64 | Posavatz Hound int64 | Drever int64 | Segugio Maremmano int64 | Poodle int64 | Otterhound int64 | Keeshond int64 | White Swiss Shepherd int64 | Puli int64 | Kleiner Münsterländer int64 | Chesapeake Bay Retriever int64 | Welsh Corgi (Cardigan) int64 | Serbian Hound int64 | Australian Kelpie int64 | Shikoku int64 | Rhodesian Ridgeback int64 | Welsh Terrier int64 | Finnish Lapponian int64 | Portuguese Water Dog int64 | Wirehaired Pointing Griffon int64 | Komondor Dog int64 | Cairn Terrier int64 | Blenheim Spaniel int64 | Pumi Dog int64 | Kintamani-Bali int64 | Korea Jindo Dog int64 | Peruvian Hairless Dog int64 | Stumpy Tail Cattle Dog int64 | Bavarian Mountain Scent Hound int64 | Japanese Chin int64 | Kromfohrländer Dog int64 | Briard int64 | Pembroke Welsh Corgi int64 | Majorca Mastiff int64 | Kuvasz int64 | West Siberian Laika int64 | Finnish Spitz int64 | Malinois int64 | Gordon Setter int64 | Norwegian Buhund int64 | Fila Brasileiro int64 | Giant Schnauzer int64 | West Highland White Terrier int64 | Carpathian Shepherd int64 | Dutch Shepherd Dog int64 | Slovakian Hound int64 | Long-Haired Pyrenean Sheepdog int64 | Golden Retriever int64 | Great Anglo-French Hound int64 | German Hound int64 | Treeing Walker Coonhound int64 | Boxer int64 | Lancashire Heeler int64 | Estrela Mountain int64 | Griffon Bruxellois int64 | Saint Miguel Cattle Dog int64 | English Toy Terrier int64 | Cardigan int64 | Chinese Crested Dog int64 | Dogo Argentino int64 | Hovawart int64 | Azawakh int64 | Swedish Lapphund int64 | English Setter int64 | Shetland Sheepdog int64 | Pyrenean Mastiff int64 | Schiller Hound int64 | Canadian Eskimo Dog int64 | Cesky Terrier int64 | Wire Fox Terrier int64 | Bloodhound int64 | English Springer Spaniel int64 | Bull Terrier(Target Dog) int64 | Kerry Blue Terrier int64 | Burgos Pointer int64 | Eurasian int64 | Mastiff int64 | Norwich Terrier int64 | Artois Hound int64 | Basset Fauve De Bretagne int64 | French Tricolour Hound int64 | Swiss Hound int64 | Yakutian Laika int64 | Redbone int64 | Ibizan Hound int64 | Wheaten Terrier int64 | Australian Terrier int64 | Valencian Terrier int64 | Romagna Water Dog int64 | Welsh Corgi (Pembroke) int64 | Nova Scotia Duck Tolling Retriever int64 | American Water Spaniel int64 |
|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|
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Dog Dataset
This is a dataset filled with 35,000+ images of dogs, seperated by breeds. There are 390 breeds in this dataset, each with more than 10 images per folder. Images are in jpeg and png. In total, this dataset is 3.19GB.
The data in this dataset was compiled from various smaller datasets, which were then combined, filtered, and corrected(since some breeds have aliases).
Uses
- Dog breed detection
- Animal classification
- Dog info
Pre-trained Models
This repo also contains some pre-trained models, which were trained through Liner, a ML platform for training AIs quickly. While these models are not reccomended(because of their 63% accuracy), you can still use them, however, they will likely give false predictions very frequently. These models were trained with the base model "EfficientNet". The pretrained models are made for the following libraries/apps:
TensorFlowTensorFlow LiteTensorFlow.jsONNXKerasPython AppCoreML
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