"""Forest covertype dataset.

A classic dataset for classification benchmarks, featuring categorical and
real-valued features.

The dataset page is available from UCI Machine Learning Repository

    https://archive.ics.uci.edu/ml/datasets/Covertype

Courtesy of Jock A. Blackard and Colorado State University.
"""

# Authors: The scikit-learn developers
# SPDX-License-Identifier: BSD-3-Clause

import logging
import os
from gzip import GzipFile
from numbers import Integral, Real
from os.path import exists, join
from tempfile import TemporaryDirectory

import joblib
import numpy as np

from ..utils import Bunch, check_random_state
from ..utils._param_validation import Interval, validate_params
from . import get_data_home
from ._base import (
    RemoteFileMetadata,
    _convert_data_dataframe,
    _fetch_remote,
    _pkl_filepath,
    load_descr,
)

# The original data can be found in:
# https://archive.ics.uci.edu/ml/machine-learning-databases/covtype/covtype.data.gz
ARCHIVE = RemoteFileMetadata(
    filename="covtype.data.gz",
    url="https://ndownloader.figshare.com/files/5976039",
    checksum="614360d0257557dd1792834a85a1cdebfadc3c4f30b011d56afee7ffb5b15771",
)

logger = logging.getLogger(__name__)

# Column names reference:
# https://archive.ics.uci.edu/ml/machine-learning-databases/covtype/covtype.info
FEATURE_NAMES = [
    "Elevation",
    "Aspect",
    "Slope",
    "Horizontal_Distance_To_Hydrology",
    "Vertical_Distance_To_Hydrology",
    "Horizontal_Distance_To_Roadways",
    "Hillshade_9am",
    "Hillshade_Noon",
    "Hillshade_3pm",
    "Horizontal_Distance_To_Fire_Points",
]
FEATURE_NAMES += [f"Wilderness_Area_{i}" for i in range(4)]
FEATURE_NAMES += [f"Soil_Type_{i}" for i in range(40)]
TARGET_NAMES = ["Cover_Type"]


@validate_params(
    {
        "data_home": [str, os.PathLike, None],
        "download_if_missing": ["boolean"],
        "random_state": ["random_state"],
        "shuffle": ["boolean"],
        "return_X_y": ["boolean"],
        "as_frame": ["boolean"],
        "n_retries": [Interval(Integral, 1, None, closed="left")],
        "delay": [Interval(Real, 0.0, None, closed="neither")],
    },
    prefer_skip_nested_validation=True,
)
def fetch_covtype(
    *,
    data_home=None,
    download_if_missing=True,
    random_state=None,
    shuffle=False,
    return_X_y=False,
    as_frame=False,
    n_retries=3,
    delay=1.0,
):
    """Load the covertype dataset (classification).

    Download it if necessary.

    =================   ============
    Classes                        7
    Samples total             581012
    Dimensionality                54
    Features                     int
    =================   ============

    Read more in the :ref:`User Guide <covtype_dataset>`.

    Parameters
    ----------
    data_home : str or path-like, default=None
        Specify another download and cache folder for the datasets. By default
        all scikit-learn data is stored in '~/scikit_learn_data' subfolders.

    download_if_missing : bool, default=True
        If False, raise an OSError if the data is not locally available
        instead of trying to download the data from the source site.

    random_state : int, RandomState instance or None, default=None
        Determines random number generation for dataset shuffling. Pass an int
        for reproducible output across multiple function calls.
        See :term:`Glossary <random_state>`.

    shuffle : bool, default=False
        Whether to shuffle dataset.

    return_X_y : bool, default=False
        If True, returns ``(data.data, data.target)`` instead of a Bunch
        object.

        .. versionadded:: 0.20

    as_frame : bool, default=False
        If True, the data is a pandas DataFrame including columns with
        appropriate dtypes (numeric). The target is a pandas DataFrame or
        Series depending on the number of target columns. If `return_X_y` is
        True, then (`data`, `target`) will be pandas DataFrames or Series as
        described below.

        .. versionadded:: 0.24

    n_retries : int, default=3
        Number of retries when HTTP errors are encountered.

        .. versionadded:: 1.5

    delay : float, default=1.0
        Number of seconds between retries.

        .. versionadded:: 1.5

    Returns
    -------
    dataset : :class:`~sklearn.utils.Bunch`
        Dictionary-like object, with the following attributes.

        data : ndarray of shape (581012, 54)
            Each row corresponds to the 54 features in the dataset.
        target : ndarray of shape (581012,)
            Each value corresponds to one of
            the 7 forest covertypes with values
            ranging between 1 to 7.
        frame : dataframe of shape (581012, 55)
            Only present when `as_frame=True`. Contains `data` and `target`.
        DESCR : str
            Description of the forest covertype dataset.
        feature_names : list
            The names of the dataset columns.
        target_names: list
            The names of the target columns.

    (data, target) : tuple if ``return_X_y`` is True
        A tuple of two ndarray. The first containing a 2D array of
        shape (n_samples, n_features) with each row representing one
        sample and each column representing the features. The second
        ndarray of shape (n_samples,) containing the target samples.

        .. versionadded:: 0.20

    Examples
    --------
    >>> from sklearn.datasets import fetch_covtype
    >>> cov_type = fetch_covtype()
    >>> cov_type.data.shape
    (581012, 54)
    >>> cov_type.target.shape
    (581012,)
    >>> # Let's check the 4 first feature names
    >>> cov_type.feature_names[:4]
    ['Elevation', 'Aspect', 'Slope', 'Horizontal_Distance_To_Hydrology']
    """
    data_home = get_data_home(data_home=data_home)
    covtype_dir = join(data_home, "covertype")
    samples_path = _pkl_filepath(covtype_dir, "samples")
    targets_path = _pkl_filepath(covtype_dir, "targets")
    available = exists(samples_path) and exists(targets_path)

    if download_if_missing and not available:
        os.makedirs(covtype_dir, exist_ok=True)

        # Creating temp_dir as a direct subdirectory of the target directory
        # guarantees that both reside on the same filesystem, so that we can use
        # os.rename to atomically move the data files to their target location.
        with TemporaryDirectory(dir=covtype_dir) as temp_dir:
            logger.info(f"Downloading {ARCHIVE.url}")
            archive_path = _fetch_remote(
                ARCHIVE, dirname=temp_dir, n_retries=n_retries, delay=delay
            )
            Xy = np.genfromtxt(GzipFile(filename=archive_path), delimiter=",")

            X = Xy[:, :-1]
            y = Xy[:, -1].astype(np.int32, copy=False)

            samples_tmp_path = _pkl_filepath(temp_dir, "samples")
            joblib.dump(X, samples_tmp_path, compress=9)
            os.rename(samples_tmp_path, samples_path)

            targets_tmp_path = _pkl_filepath(temp_dir, "targets")
            joblib.dump(y, targets_tmp_path, compress=9)
            os.rename(targets_tmp_path, targets_path)

    elif not available and not download_if_missing:
        raise OSError("Data not found and `download_if_missing` is False")
    try:
        X, y
    except NameError:
        X = joblib.load(samples_path)
        y = joblib.load(targets_path)

    if shuffle:
        ind = np.arange(X.shape[0])
        rng = check_random_state(random_state)
        rng.shuffle(ind)
        X = X[ind]
        y = y[ind]

    fdescr = load_descr("covtype.rst")

    frame = None
    if as_frame:
        frame, X, y = _convert_data_dataframe(
            caller_name="fetch_covtype",
            data=X,
            target=y,
            feature_names=FEATURE_NAMES,
            target_names=TARGET_NAMES,
        )
    if return_X_y:
        return X, y

    return Bunch(
        data=X,
        target=y,
        frame=frame,
        target_names=TARGET_NAMES,
        feature_names=FEATURE_NAMES,
        DESCR=fdescr,
    )
