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The dataset generation failed because of a cast error
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:

  • TensorFlow
  • TensorFlow Lite
  • TensorFlow.js
  • ONNX
  • Keras
  • Python App
  • CoreML
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