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Kaggle Hub Client Library

Installation

Install the kagglehub package with pip:

pip install kagglehub

Usage

Authenticate

Authenticating is only needed to access public resources requiring user consent or private resources.

First, you will need a Kaggle account. You can sign up here.

After login, you can download your Kaggle API credentials at https://www.kaggle.com/settings by clicking on the "Create New Token" button under the "API" section.

You have 3 different options to authenticate.

Option 1: Calling kagglehub.login()

This will prompt you to enter your username and token:

import kagglehub

kagglehub.login()

Option 2: Read credentials from environment variables

You can also choose to export your Kaggle username and token to the environment:

export KAGGLE_USERNAME=datadinosaur
export KAGGLE_KEY=xxxxxxxxxxxxxx

Option 3: Read credentials from kaggle.json

Store your kaggle.json credentials file at ~/.kaggle/kaggle.json.

Alternatively, you can set the KAGGLE_CONFIG_DIR environment variable to change this location to $KAGGLE_CONFIG_DIR/kaggle.json.

Note for Windows users: The default directory is %HOMEPATH%/kaggle.json.

Option 4: Read credentials from Google Colab secrets

Store your username and key token as Colab secrets KAGGLE_USERNAME and KAGGLE_KEY.

Instructions on adding secrets in both Colab and Colab Enterprise can be found in this article.

Download Model

The following examples download the answer-equivalence-bem variation of this Kaggle model: https://www.kaggle.com/models/google/bert/tensorFlow2/answer-equivalence-bem

import kagglehub

# Download the latest version.
kagglehub.model_download('google/bert/tensorFlow2/answer-equivalence-bem')

# Download a specific version.
kagglehub.model_download('google/bert/tensorFlow2/answer-equivalence-bem/1')

# Download a single file.
kagglehub.model_download('google/bert/tensorFlow2/answer-equivalence-bem', path='variables/variables.index')

# Download a model or file, even if previously downloaded to cache.
kagglehub.model_download('google/bert/tensorFlow2/answer-equivalence-bem', force_download=True)

Upload Model

Uploads a new variation (or a new variation's version if it already exists).

import kagglehub

# For example, to upload a new variation to this model:
# - https://www.kaggle.com/models/google/bert/tensorFlow2/answer-equivalence-bem
# 
# You would use the following handle: `google/bert/tensorFlow2/answer-equivalence-bem`
handle = '<KAGGLE_USERNAME>/<MODEL>/<FRAMEWORK>/<VARIATION>'
local_model_dir = 'path/to/local/model/dir'

kagglehub.model_upload(handle, local_model_dir)

# You can also specify some version notes (optional)
kagglehub.model_upload(handle, local_model_dir, version_notes='improved accuracy')

# You can also specify a license (optional)
kagglehub.model_upload(handle, local_model_dir, license_name='Apache 2.0')

# You can also specify a list of patterns for files/dirs to ignore.
# These patterns are combined with `kagglehub.models.DEFAULT_IGNORE_PATTERNS` 
# to determine which files and directories to exclude. 
# To ignore entire directories, include a trailing slash (/) in the pattern.
kagglehub.model_upload(handle, local_model_dir, ignore_patterns=["original/", "*.tmp"])

Load Dataset

Loads a file from a Kaggle Dataset into a python object based on the selected KaggleDatasetAdapter:

NOTE: To use these adapters, you must install the optional dependencies (or already have them available in your environment)

  • KaggleDatasetAdapter.PANDASpip install kagglehub[pandas-datasets]
  • KaggleDatasetAdapter.HUGGING_FACEpip install kagglehub[hf-datasets]

KaggleDatasetAdapter.PANDAS

This adapter supports the following file types, which map to a corresponding pandas.read_* method:

File Extension pandas Method
.csv, .tsv1 pandas.read_csv
.json, .jsonl2 pandas.read_json
.xml pandas.read_xml
.parquet pandas.read_parquet
.feather pandas.read_feather
.sqlite, .sqlite3, .db, .db3, .s3db, .dl33 pandas.read_sql_query
.xls, .xlsx, .xlsm, .xlsb, .odf, .ods, .odt4 pandas.read_excel

load_dataset also supports pandas_kwargs which will be passed as keyword arguments to the pandas.read_* method. Some examples include:

import kagglehub
from kagglehub import KaggleDatasetAdapter

# Load a DataFrame with a specific version of a CSV
df = kagglehub.load_dataset(
    KaggleDatasetAdapter.PANDAS,
    "unsdsn/world-happiness/versions/1",
    "2016.csv",
)

# Load a DataFrame with specific columns from a parquet file
df = kagglehub.load_dataset(
    KaggleDatasetAdapter.PANDAS,
    "robikscube/textocr-text-extraction-from-images-dataset",
    "annot.parquet",
    pandas_kwargs={"columns": ["image_id", "bbox", "points", "area"]}
)

# Load a dictionary of DataFrames from an Excel file where the keys are sheet names 
# and the values are DataFrames for each sheet's data. NOTE: As written, this requires 
# installing the default openpyxl engine.
df_dict = kagglehub.load_dataset(
    KaggleDatasetAdapter.PANDAS,
    "theworldbank/education-statistics",
    "edstats-excel-zip-72-mb-/EdStatsEXCEL.xlsx",
    pandas_kwargs={"sheet_name": None},
)

# Load a DataFrame using an XML file (with the natively available etree parser)
df = load_dataset(
    KaggleDatasetAdapter.PANDAS,
    "parulpandey/covid19-clinical-trials-dataset",
    "COVID-19 CLinical trials studies/COVID-19 CLinical trials studies/NCT00571389.xml",
    pandas_kwargs={"parser": "etree"},
)

# Load a DataFrame by executing a SQL query against a SQLite DB
df = kagglehub.load_dataset(
    KaggleDatasetAdapter.PANDAS,
    "wyattowalsh/basketball",
    "nba.sqlite",
    sql_query="SELECT person_id, player_name FROM draft_history",
)

KaggleDatasetAdapter.HUGGING_FACE

The Hugging Face Dataset provided by this adapater is built exclusively using Dataset.from_pandas. As a result, all of the file type and pandas_kwargs support is the same as KaggleDatasetAdapter.PANDAS. Some important things to note about this:

  1. Because Dataset.from_pandas cannot accept a collection of DataFrames, any attempts to load a file with pandas_kwargs that produce a collection of DataFrames will result in a raised exception
  2. hf_kwargs may be provided, which will be passed as keyword arguments to Dataset.from_pandas
  3. Because the use of pandas is transparent when pandas_kwargs are not needed, we default to False for preserve_index—this can be overridden using hf_kwargs

Some examples include:

import kagglehub
from kagglehub import KaggleDatasetAdapter

# Load a Dataset with a specific version of a CSV, then remove a column
dataset = kagglehub.load_dataset(
    KaggleDatasetAdapter.HUGGING_FACE,
    "unsdsn/world-happiness/versions/1",
    "2016.csv",
)
dataset = dataset.remove_columns('Region')

# Load a Dataset with specific columns from a parquet file, then split into test/train splits
dataset = kagglehub.load_dataset(
    KaggleDatasetAdapter.HUGGING_FACE,
    "robikscube/textocr-text-extraction-from-images-dataset",
    "annot.parquet",
    pandas_kwargs={"columns": ["image_id", "bbox", "points", "area"]}
)
dataset_with_splits = dataset.train_test_split(test_size=0.8, train_size=0.2)

# Load a Dataset by executing a SQL query against a SQLite DB, then rename a column
dataset = kagglehub.load_dataset(
    KaggleDatasetAdapter.HUGGING_FACE,
    "wyattowalsh/basketball",
    "nba.sqlite",
    sql_query="SELECT person_id, player_name FROM draft_history",
)
dataset = dataset.rename_column('season', 'year')

Download Dataset

The following examples download the Spotify Recommendation Kaggle dataset: https://www.kaggle.com/datasets/bricevergnou/spotify-recommendation

import kagglehub

# Download the latest version.
kagglehub.dataset_download('bricevergnou/spotify-recommendation')

# Download a specific version.
kagglehub.dataset_download('bricevergnou/spotify-recommendation/versions/1')

# Download a single file
kagglehub.dataset_download('bricevergnou/spotify-recommendation', path='data.csv')

# Download a dataset or file, even if previously downloaded to cache.
kagglehub.dataset_download('bricevergnou/spotify-recommendation', force_download=True)

Upload Dataset

Uploads a new dataset (or a new version if it already exists).

import kagglehub

# For example, to upload a new dataset (or version) at:
# - https://www.kaggle.com/datasets/bricevergnou/spotify-recommendation
# 
# You would use the following handle: `bricevergnou/spotify-recommendation`
handle = '<KAGGLE_USERNAME>/<DATASET>
local_dataset_dir = 'path/to/local/dataset/dir'

# Create a new dataset
kagglehub.dataset_upload(handle, local_dataset_dir)

# You can then create a new version of this existing dataset and include version notes (optional).
kagglehub.dataset_upload(handle, local_dataset_dir, version_notes='improved data')

# You can also specify a list of patterns for files/dirs to ignore.
# These patterns are combined with `kagglehub.datasets.DEFAULT_IGNORE_PATTERNS` 
# to determine which files and directories to exclude. 
# To ignore entire directories, include a trailing slash (/) in the pattern.
kagglehub.dataset_upload(handle, local_dataset_dir, ignore_patterns=["original/", "*.tmp"])

Download Competition

The following examples download the Digit Recognizer Kaggle competition: https://www.kaggle.com/competitions/digit-recognizer

import kagglehub

# Download the latest version.
kagglehub.competition_download('digit-recognizer')

# Download a single file
kagglehub.competition_download('digit-recognizer', path='train.csv')

# Download a competition or file, even if previously downloaded to cache. 
kagglehub.competition_download('digit-recognizer', force_download=True)

Development

Prequisites

We use hatch to manage this project.

Follow these instructions to install it.

Tests

# Run all tests for current Python version.
hatch test

# Run all tests for all Python versions.
hatch test --all

# Run all tests for a specific Python version.
hatch test -py 3.11

# Run a single test file
hatch test tests/test_<SOME_FILE>.py

Integration Tests

To run integration tests on your local machine, you need to set up your Kaggle API credentials. You can do this in one of these two ways described in the earlier sections of this document. Refer to the sections:

After setting up your credentials by any of these methods, you can run the integration tests as follows:

# Run all tests
hatch test integration_tests

Run kagglehub from source

Option 1: Execute a one-liner of code from the command line

# Download a model & print the path
hatch run python -c "import kagglehub; print('path: ', kagglehub.model_download('google/bert/tensorFlow2/answer-equivalence-bem'))"

Option 2: Run a saved script from the /tools/scripts directory

# This runs the same code as the one-liner above, but reads it from a 
# checked in script located at tool/scripts/download_model.py
hatch run python tools/scripts/download_model.py

Option 3: Run a temporary script from the root of the repo

Any script created at the root of the repo is gitignore'd, so they're just temporary scripts for testing in development. Placing temporary scripts at the root makes the run command easier to use during local development.

# Test out some new changes
hatch run python test_new_feature.py

Lint / Format

# Lint check
hatch run lint:style
hatch run lint:typing
hatch run lint:all     # for both

# Format
hatch run lint:fmt

Coverage report

hatch test --cover

Build

hatch build

Running hatch commands inside Docker

This is useful to run in a consistent environment and easily switch between Python versions.

The following shows how to run hatch run lint:all but this also works for any other hatch commands:

# Use default Python version
./docker-hatch run lint:all

# Use specific Python version (Must be a valid tag from: https://hub.docker.com/_/python)
./docker-hatch -v 3.9 run lint:all

# Run test in docker with specific Python version
./docker-hatch -v 3.9 test

# Run python from specific environment (e.g. one with optional dependencies installed)
./docker-hatch run extra-deps-env:python -c "print('hello world')"

# Run commands with other root-level hatch options (everything after -- gets passed to hatch)
./docker-hatch -v 3.9 -- -v env create debug-env-with-verbose-logging

VS Code setup

Prerequisites

Install the recommended extensions.

Instructions

Configure hatch to create virtual env in project folder.

hatch config set dirs.env.virtual .env

After, create all the python environments needed by running hatch tests --all.

Finally, configure vscode to use one of the selected environments: cmd + shift + p -> python: Select Interpreter -> Pick one of the folders in ./.env

Support

The kagglehub library has configured automatic logging for console. For file based logging, setting the KAGGLE_LOGGING_ENABLED=1 environment variable will output logs to a directory. The default log destination is resolved via the os.path.expanduser

The table below contains possible locations:

os log path
osx /user/$USERNAME/.kaggle/logs/kagglehub.log
linux ~/.kaggle/logs/kagglehub.log
windows C:\Users\%USERNAME%\.kaggle\logs\kagglehub.log

If needed, the root log directory can be overriden using the following environment variable: KAGGLE_LOGGING_ROOT_DIR

Please include the log to help troubleshoot issues.

Footnotes

  1. For TSV files, \t is automatically supplied for the sep parameter, but may be overridden with pandas_kwargs

  2. For JSONL files, True is supplied for the lines parameter

  3. For SQLite files, a sql_query must be provided to generate the DataFrame(s)

  4. The specific file extension will dictate which optional engine dependency needs to be installed to read the file