test_dask.py 41.1 KB
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# coding: utf-8
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"""Tests for lightgbm.dask module"""

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import inspect
import pickle
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import socket
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from itertools import groupby
from os import getenv
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from platform import machine
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from sys import platform
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import pytest
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import lightgbm as lgb

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if not platform.startswith('linux'):
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    pytest.skip('lightgbm.dask is currently supported in Linux environments', allow_module_level=True)
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if not lgb.compat.DASK_INSTALLED:
    pytest.skip('Dask is not installed', allow_module_level=True)
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import cloudpickle
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import dask.array as da
import dask.dataframe as dd
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import joblib
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import numpy as np
import pandas as pd
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import sklearn.utils.estimator_checks as sklearn_checks
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from dask.array.utils import assert_eq
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from dask.distributed import Client, LocalCluster, default_client, wait
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from distributed.utils_test import client, cluster_fixture, gen_cluster, loop
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from scipy.sparse import csr_matrix
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from scipy.stats import spearmanr
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from sklearn.datasets import make_blobs, make_regression

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from .utils import make_ranking

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# time, in seconds, to wait for the Dask client to close. Used to avoid teardown errors
# see https://distributed.dask.org/en/latest/api.html#distributed.Client.close
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CLIENT_CLOSE_TIMEOUT = 120
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tasks = ['classification', 'regression', 'ranking']
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data_output = ['array', 'scipy_csr_matrix', 'dataframe', 'dataframe-with-categorical']
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data_centers = [[[-4, -4], [4, 4]], [[-4, -4], [4, 4], [-4, 4]]]
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group_sizes = [5, 5, 5, 10, 10, 10, 20, 20, 20, 50, 50]
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pytestmark = [
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    pytest.mark.skipif(getenv('TASK', '') == 'mpi', reason='Fails to run with MPI interface'),
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    pytest.mark.skipif(getenv('TASK', '') == 'gpu', reason='Fails to run with GPU interface'),
    pytest.mark.skipif(machine() != 'x86_64', reason='Fails to run with non-x86_64 architecture')
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]


@pytest.fixture()
def listen_port():
    listen_port.port += 10
    return listen_port.port


listen_port.port = 13000


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def _create_ranking_data(n_samples=100, output='array', chunk_size=50, **kwargs):
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    X, y, g = make_ranking(n_samples=n_samples, random_state=42, **kwargs)
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    rnd = np.random.RandomState(42)
    w = rnd.rand(X.shape[0]) * 0.01
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    g_rle = np.array([len(list(grp)) for _, grp in groupby(g)])
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    if output.startswith('dataframe'):
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        # add target, weight, and group to DataFrame so that partitions abide by group boundaries.
        X_df = pd.DataFrame(X, columns=[f'feature_{i}' for i in range(X.shape[1])])
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        if output == 'dataframe-with-categorical':
            for i in range(5):
                col_name = "cat_col" + str(i)
                cat_values = rnd.choice(['a', 'b'], X.shape[0])
                cat_series = pd.Series(
                    cat_values,
                    dtype='category'
                )
                X_df[col_name] = cat_series
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        X = X_df.copy()
        X_df = X_df.assign(y=y, g=g, w=w)

        # set_index ensures partitions are based on group id.
        # See https://stackoverflow.com/questions/49532824/dask-dataframe-split-partitions-based-on-a-column-or-function.
        X_df.set_index('g', inplace=True)
        dX = dd.from_pandas(X_df, chunksize=chunk_size)

        # separate target, weight from features.
        dy = dX['y']
        dw = dX['w']
        dX = dX.drop(columns=['y', 'w'])
        dg = dX.index.to_series()

        # encode group identifiers into run-length encoding, the format LightGBMRanker is expecting
        # so that within each partition, sum(g) = n_samples.
        dg = dg.map_partitions(lambda p: p.groupby('g', sort=False).apply(lambda z: z.shape[0]))
    elif output == 'array':
        # ranking arrays: one chunk per group. Each chunk must include all columns.
        p = X.shape[1]
        dX, dy, dw, dg = [], [], [], []
        for g_idx, rhs in enumerate(np.cumsum(g_rle)):
            lhs = rhs - g_rle[g_idx]
            dX.append(da.from_array(X[lhs:rhs, :], chunks=(rhs - lhs, p)))
            dy.append(da.from_array(y[lhs:rhs]))
            dw.append(da.from_array(w[lhs:rhs]))
            dg.append(da.from_array(np.array([g_rle[g_idx]])))

        dX = da.concatenate(dX, axis=0)
        dy = da.concatenate(dy, axis=0)
        dw = da.concatenate(dw, axis=0)
        dg = da.concatenate(dg, axis=0)
    else:
        raise ValueError('Ranking data creation only supported for Dask arrays and dataframes')

    return X, y, w, g_rle, dX, dy, dw, dg


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def _create_data(objective, n_samples=100, centers=2, output='array', chunk_size=50):
    if objective == 'classification':
        X, y = make_blobs(n_samples=n_samples, centers=centers, random_state=42)
    elif objective == 'regression':
        X, y = make_regression(n_samples=n_samples, random_state=42)
    else:
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        raise ValueError("Unknown objective '%s'" % objective)
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    rnd = np.random.RandomState(42)
    weights = rnd.random(X.shape[0]) * 0.01

    if output == 'array':
        dX = da.from_array(X, (chunk_size, X.shape[1]))
        dy = da.from_array(y, chunk_size)
        dw = da.from_array(weights, chunk_size)
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    elif output.startswith('dataframe'):
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        X_df = pd.DataFrame(X, columns=['feature_%d' % i for i in range(X.shape[1])])
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        if output == 'dataframe-with-categorical':
            num_cat_cols = 5
            for i in range(num_cat_cols):
                col_name = "cat_col" + str(i)
                cat_values = rnd.choice(['a', 'b'], X.shape[0])
                cat_series = pd.Series(
                    cat_values,
                    dtype='category'
                )
                X_df[col_name] = cat_series
                X = np.hstack((X, cat_series.cat.codes.values.reshape(-1, 1)))

            # for the small data sizes used in tests, it's hard to get LGBMRegressor to choose
            # categorical features for splits. So for regression tests with categorical features,
            # _create_data() returns a DataFrame with ONLY categorical features
            if objective == 'regression':
                cat_cols = [col for col in X_df.columns if col.startswith('cat_col')]
                X_df = X_df[cat_cols]
                X = X[:, -num_cat_cols:]
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        y_df = pd.Series(y, name='target')
        dX = dd.from_pandas(X_df, chunksize=chunk_size)
        dy = dd.from_pandas(y_df, chunksize=chunk_size)
        dw = dd.from_array(weights, chunksize=chunk_size)
    elif output == 'scipy_csr_matrix':
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        dX = da.from_array(X, chunks=(chunk_size, X.shape[1])).map_blocks(csr_matrix)
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        dy = da.from_array(y, chunks=chunk_size)
        dw = da.from_array(weights, chunk_size)
    else:
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        raise ValueError("Unknown output type '%s'" % output)
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    return X, y, weights, dX, dy, dw


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def _r2_score(dy_true, dy_pred):
    numerator = ((dy_true - dy_pred) ** 2).sum(axis=0, dtype=np.float64)
    denominator = ((dy_true - dy_pred.mean(axis=0)) ** 2).sum(axis=0, dtype=np.float64)
    return (1 - numerator / denominator).compute()


def _accuracy_score(dy_true, dy_pred):
    return da.average(dy_true == dy_pred).compute()


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def _pickle(obj, filepath, serializer):
    if serializer == 'pickle':
        with open(filepath, 'wb') as f:
            pickle.dump(obj, f)
    elif serializer == 'joblib':
        joblib.dump(obj, filepath)
    elif serializer == 'cloudpickle':
        with open(filepath, 'wb') as f:
            cloudpickle.dump(obj, f)
    else:
        raise ValueError(f'Unrecognized serializer type: {serializer}')


def _unpickle(filepath, serializer):
    if serializer == 'pickle':
        with open(filepath, 'rb') as f:
            return pickle.load(f)
    elif serializer == 'joblib':
        return joblib.load(filepath)
    elif serializer == 'cloudpickle':
        with open(filepath, 'rb') as f:
            return cloudpickle.load(f)
    else:
        raise ValueError(f'Unrecognized serializer type: {serializer}')


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@pytest.mark.parametrize('output', data_output)
@pytest.mark.parametrize('centers', data_centers)
def test_classifier(output, centers, client, listen_port):
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    X, y, w, dX, dy, dw = _create_data(
        objective='classification',
        output=output,
        centers=centers
    )
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    params = {
        "n_estimators": 10,
        "num_leaves": 10
    }
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    dask_classifier = lgb.DaskLGBMClassifier(
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        client=client,
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        time_out=5,
        local_listen_port=listen_port,
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        **params
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    )
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    dask_classifier = dask_classifier.fit(dX, dy, sample_weight=dw)
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    p1 = dask_classifier.predict(dX)
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    p1_proba = dask_classifier.predict_proba(dX).compute()
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    p1_pred_leaf = dask_classifier.predict(dX, pred_leaf=True)
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    p1_local = dask_classifier.to_local().predict(X)
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    s1 = _accuracy_score(dy, p1)
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    p1 = p1.compute()

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    local_classifier = lgb.LGBMClassifier(**params)
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    local_classifier.fit(X, y, sample_weight=w)
    p2 = local_classifier.predict(X)
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    p2_proba = local_classifier.predict_proba(X)
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    s2 = local_classifier.score(X, y)

    assert_eq(s1, s2)
    assert_eq(p1, p2)
    assert_eq(y, p1)
    assert_eq(y, p2)
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    assert_eq(p1_proba, p2_proba, atol=0.3)
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    assert_eq(p1_local, p2)
    assert_eq(y, p1_local)
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    # pref_leaf values should have the right shape
    # and values that look like valid tree nodes
    pred_leaf_vals = p1_pred_leaf.compute()
    assert pred_leaf_vals.shape == (
        X.shape[0],
        dask_classifier.booster_.num_trees()
    )
    assert np.max(pred_leaf_vals) <= params['num_leaves']
    assert np.min(pred_leaf_vals) >= 0
    assert len(np.unique(pred_leaf_vals)) <= params['num_leaves']

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    # be sure LightGBM actually used at least one categorical column,
    # and that it was correctly treated as a categorical feature
    if output == 'dataframe-with-categorical':
        cat_cols = [
            col for col in dX.columns
            if dX.dtypes[col].name == 'category'
        ]
        tree_df = dask_classifier.booster_.trees_to_dataframe()
        node_uses_cat_col = tree_df['split_feature'].isin(cat_cols)
        assert node_uses_cat_col.sum() > 0
        assert tree_df.loc[node_uses_cat_col, "decision_type"].unique()[0] == '=='

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    client.close(timeout=CLIENT_CLOSE_TIMEOUT)
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@pytest.mark.parametrize('output', data_output)
@pytest.mark.parametrize('centers', data_centers)
def test_classifier_pred_contrib(output, centers, client, listen_port):
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    X, y, w, dX, dy, dw = _create_data(
        objective='classification',
        output=output,
        centers=centers
    )
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    params = {
        "n_estimators": 10,
        "num_leaves": 10
    }
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    dask_classifier = lgb.DaskLGBMClassifier(
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        client=client,
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        time_out=5,
        local_listen_port=listen_port,
        tree_learner='data',
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        **params
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    )
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    dask_classifier = dask_classifier.fit(dX, dy, sample_weight=dw)
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    preds_with_contrib = dask_classifier.predict(dX, pred_contrib=True).compute()

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    local_classifier = lgb.LGBMClassifier(**params)
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    local_classifier.fit(X, y, sample_weight=w)
    local_preds_with_contrib = local_classifier.predict(X, pred_contrib=True)

    if output == 'scipy_csr_matrix':
        preds_with_contrib = np.array(preds_with_contrib.todense())

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    # be sure LightGBM actually used at least one categorical column,
    # and that it was correctly treated as a categorical feature
    if output == 'dataframe-with-categorical':
        cat_cols = [
            col for col in dX.columns
            if dX.dtypes[col].name == 'category'
        ]
        tree_df = dask_classifier.booster_.trees_to_dataframe()
        node_uses_cat_col = tree_df['split_feature'].isin(cat_cols)
        assert node_uses_cat_col.sum() > 0
        assert tree_df.loc[node_uses_cat_col, "decision_type"].unique()[0] == '=='

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    # shape depends on whether it is binary or multiclass classification
    num_features = dask_classifier.n_features_
    num_classes = dask_classifier.n_classes_
    if num_classes == 2:
        expected_num_cols = num_features + 1
    else:
        expected_num_cols = (num_features + 1) * num_classes

    # * shape depends on whether it is binary or multiclass classification
    # * matrix for binary classification is of the form [feature_contrib, base_value],
    #   for multi-class it's [feat_contrib_class1, base_value_class1, feat_contrib_class2, base_value_class2, etc.]
    # * contrib outputs for distributed training are different than from local training, so we can just test
    #   that the output has the right shape and base values are in the right position
    assert preds_with_contrib.shape[1] == expected_num_cols
    assert preds_with_contrib.shape == local_preds_with_contrib.shape

    if num_classes == 2:
        assert len(np.unique(preds_with_contrib[:, num_features]) == 1)
    else:
        for i in range(num_classes):
            base_value_col = num_features * (i + 1) + i
            assert len(np.unique(preds_with_contrib[:, base_value_col]) == 1)

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    client.close(timeout=CLIENT_CLOSE_TIMEOUT)

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def test_training_does_not_fail_on_port_conflicts(client):
    _, _, _, dX, dy, dw = _create_data('classification', output='array')

    with socket.socket(socket.AF_INET, socket.SOCK_STREAM) as s:
        s.bind(('127.0.0.1', 12400))

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        dask_classifier = lgb.DaskLGBMClassifier(
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            client=client,
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            time_out=5,
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            local_listen_port=12400,
            n_estimators=5,
            num_leaves=5
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        )
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        for _ in range(5):
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            dask_classifier.fit(
                X=dX,
                y=dy,
                sample_weight=dw,
            )
            assert dask_classifier.booster_

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    client.close(timeout=CLIENT_CLOSE_TIMEOUT)
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@pytest.mark.parametrize('output', data_output)
def test_regressor(output, client, listen_port):
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    X, y, w, dX, dy, dw = _create_data(
        objective='regression',
        output=output
    )
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    params = {
        "random_state": 42,
        "num_leaves": 10
    }
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    dask_regressor = lgb.DaskLGBMRegressor(
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        client=client,
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        time_out=5,
        local_listen_port=listen_port,
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        tree='data',
        **params
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    )
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    dask_regressor = dask_regressor.fit(dX, dy, sample_weight=dw)
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    p1 = dask_regressor.predict(dX)
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    p1_pred_leaf = dask_regressor.predict(dX, pred_leaf=True)

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    if not output.startswith('dataframe'):
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        s1 = _r2_score(dy, p1)
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    p1 = p1.compute()
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    p1_local = dask_regressor.to_local().predict(X)
    s1_local = dask_regressor.to_local().score(X, y)
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    local_regressor = lgb.LGBMRegressor(**params)
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    local_regressor.fit(X, y, sample_weight=w)
    s2 = local_regressor.score(X, y)
    p2 = local_regressor.predict(X)

    # Scores should be the same
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    if not output.startswith('dataframe'):
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        assert_eq(s1, s2, atol=.01)
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        assert_eq(s1, s1_local, atol=.003)
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    # Predictions should be roughly the same.
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    assert_eq(p1, p1_local)
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    # pref_leaf values should have the right shape
    # and values that look like valid tree nodes
    pred_leaf_vals = p1_pred_leaf.compute()
    assert pred_leaf_vals.shape == (
        X.shape[0],
        dask_regressor.booster_.num_trees()
    )
    assert np.max(pred_leaf_vals) <= params['num_leaves']
    assert np.min(pred_leaf_vals) >= 0
    assert len(np.unique(pred_leaf_vals)) <= params['num_leaves']

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    # The checks below are skipped
    # for the categorical data case because it's difficult to get
    # a good fit from just categoricals for a regression problem
    # with small data
    if output != 'dataframe-with-categorical':
        assert_eq(y, p1, rtol=1., atol=100.)
        assert_eq(y, p2, rtol=1., atol=50.)

    # be sure LightGBM actually used at least one categorical column,
    # and that it was correctly treated as a categorical feature
    if output == 'dataframe-with-categorical':
        cat_cols = [
            col for col in dX.columns
            if dX.dtypes[col].name == 'category'
        ]
        tree_df = dask_regressor.booster_.trees_to_dataframe()
        node_uses_cat_col = tree_df['split_feature'].isin(cat_cols)
        assert node_uses_cat_col.sum() > 0
        assert tree_df.loc[node_uses_cat_col, "decision_type"].unique()[0] == '=='

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    client.close(timeout=CLIENT_CLOSE_TIMEOUT)
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@pytest.mark.parametrize('output', data_output)
def test_regressor_pred_contrib(output, client, listen_port):
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    X, y, w, dX, dy, dw = _create_data(
        objective='regression',
        output=output
    )
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    params = {
        "n_estimators": 10,
        "num_leaves": 10
    }
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    dask_regressor = lgb.DaskLGBMRegressor(
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        client=client,
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        time_out=5,
        local_listen_port=listen_port,
        tree_learner='data',
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        **params
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    )
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    dask_regressor = dask_regressor.fit(dX, dy, sample_weight=dw)
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    preds_with_contrib = dask_regressor.predict(dX, pred_contrib=True).compute()

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    local_regressor = lgb.LGBMRegressor(**params)
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    local_regressor.fit(X, y, sample_weight=w)
    local_preds_with_contrib = local_regressor.predict(X, pred_contrib=True)

    if output == "scipy_csr_matrix":
        preds_with_contrib = np.array(preds_with_contrib.todense())

    # contrib outputs for distributed training are different than from local training, so we can just test
    # that the output has the right shape and base values are in the right position
    num_features = dX.shape[1]
    assert preds_with_contrib.shape[1] == num_features + 1
    assert preds_with_contrib.shape == local_preds_with_contrib.shape

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    # be sure LightGBM actually used at least one categorical column,
    # and that it was correctly treated as a categorical feature
    if output == 'dataframe-with-categorical':
        cat_cols = [
            col for col in dX.columns
            if dX.dtypes[col].name == 'category'
        ]
        tree_df = dask_regressor.booster_.trees_to_dataframe()
        node_uses_cat_col = tree_df['split_feature'].isin(cat_cols)
        assert node_uses_cat_col.sum() > 0
        assert tree_df.loc[node_uses_cat_col, "decision_type"].unique()[0] == '=='

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    client.close(timeout=CLIENT_CLOSE_TIMEOUT)

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@pytest.mark.parametrize('output', data_output)
@pytest.mark.parametrize('alpha', [.1, .5, .9])
def test_regressor_quantile(output, client, listen_port, alpha):
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    X, y, w, dX, dy, dw = _create_data(
        objective='regression',
        output=output
    )
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    params = {
        "objective": "quantile",
        "alpha": alpha,
        "random_state": 42,
        "n_estimators": 10,
        "num_leaves": 10
    }
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    dask_regressor = lgb.DaskLGBMRegressor(
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        client=client,
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        local_listen_port=listen_port,
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        tree_learner_type='data_parallel',
        **params
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    )
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    dask_regressor = dask_regressor.fit(dX, dy, sample_weight=dw)
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    p1 = dask_regressor.predict(dX).compute()
    q1 = np.count_nonzero(y < p1) / y.shape[0]

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    local_regressor = lgb.LGBMRegressor(**params)
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    local_regressor.fit(X, y, sample_weight=w)
    p2 = local_regressor.predict(X)
    q2 = np.count_nonzero(y < p2) / y.shape[0]

    # Quantiles should be right
    np.testing.assert_allclose(q1, alpha, atol=0.2)
    np.testing.assert_allclose(q2, alpha, atol=0.2)

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    # be sure LightGBM actually used at least one categorical column,
    # and that it was correctly treated as a categorical feature
    if output == 'dataframe-with-categorical':
        cat_cols = [
            col for col in dX.columns
            if dX.dtypes[col].name == 'category'
        ]
        tree_df = dask_regressor.booster_.trees_to_dataframe()
        node_uses_cat_col = tree_df['split_feature'].isin(cat_cols)
        assert node_uses_cat_col.sum() > 0
        assert tree_df.loc[node_uses_cat_col, "decision_type"].unique()[0] == '=='

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    client.close(timeout=CLIENT_CLOSE_TIMEOUT)
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@pytest.mark.parametrize('output', ['array', 'dataframe', 'dataframe-with-categorical'])
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@pytest.mark.parametrize('group', [None, group_sizes])
def test_ranker(output, client, listen_port, group):

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    if output == 'dataframe-with-categorical':
        X, y, w, g, dX, dy, dw, dg = _create_ranking_data(
            output=output,
            group=group,
            n_features=1,
            n_informative=1
        )
    else:
        X, y, w, g, dX, dy, dw, dg = _create_ranking_data(
            output=output,
            group=group,
        )
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    # rebalance small dask.Array dataset for better performance.
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    if output == 'array':
        dX = dX.persist()
        dy = dy.persist()
        dw = dw.persist()
        dg = dg.persist()
        _ = wait([dX, dy, dw, dg])
        client.rebalance()

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    # serial learner. See https://github.com/microsoft/LightGBM/issues/3292#issuecomment-671288210.
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    params = {
        "random_state": 42,
        "n_estimators": 50,
        "num_leaves": 20,
        "min_child_samples": 1
    }
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    dask_ranker = lgb.DaskLGBMRanker(
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        time_out=5,
        local_listen_port=listen_port,
        tree_learner_type='data_parallel',
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        **params
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    )
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    dask_ranker = dask_ranker.fit(dX, dy, sample_weight=dw, group=dg)
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    rnkvec_dask = dask_ranker.predict(dX)
    rnkvec_dask = rnkvec_dask.compute()
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    p1_pred_leaf = dask_ranker.predict(dX, pred_leaf=True)
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    rnkvec_dask_local = dask_ranker.to_local().predict(X)
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    local_ranker.fit(X, y, sample_weight=w, group=g)
    rnkvec_local = local_ranker.predict(X)

    # distributed ranker should be able to rank decently well and should
    # have high rank correlation with scores from serial ranker.
    dcor = spearmanr(rnkvec_dask, y).correlation
    assert dcor > 0.6
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    assert spearmanr(rnkvec_dask, rnkvec_local).correlation > 0.8
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    assert_eq(rnkvec_dask, rnkvec_dask_local)
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    # pref_leaf values should have the right shape
    # and values that look like valid tree nodes
    pred_leaf_vals = p1_pred_leaf.compute()
    assert pred_leaf_vals.shape == (
        X.shape[0],
        dask_ranker.booster_.num_trees()
    )
    assert np.max(pred_leaf_vals) <= params['num_leaves']
    assert np.min(pred_leaf_vals) >= 0
    assert len(np.unique(pred_leaf_vals)) <= params['num_leaves']

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    # be sure LightGBM actually used at least one categorical column,
    # and that it was correctly treated as a categorical feature
    if output == 'dataframe-with-categorical':
        cat_cols = [
            col for col in dX.columns
            if dX.dtypes[col].name == 'category'
        ]
        tree_df = dask_ranker.booster_.trees_to_dataframe()
        node_uses_cat_col = tree_df['split_feature'].isin(cat_cols)
        assert node_uses_cat_col.sum() > 0
        assert tree_df.loc[node_uses_cat_col, "decision_type"].unique()[0] == '=='

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    client.close(timeout=CLIENT_CLOSE_TIMEOUT)
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@pytest.mark.parametrize('task', tasks)
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def test_training_works_if_client_not_provided_or_set_after_construction(task, listen_port, client):
    if task == 'ranking':
        _, _, _, _, dX, dy, _, dg = _create_ranking_data(
            output='array',
            group=None
        )
        model_factory = lgb.DaskLGBMRanker
    else:
        _, _, _, dX, dy, _ = _create_data(
            objective=task,
            output='array',
        )
        dg = None
        if task == 'classification':
            model_factory = lgb.DaskLGBMClassifier
        elif task == 'regression':
            model_factory = lgb.DaskLGBMRegressor

    params = {
        "time_out": 5,
        "local_listen_port": listen_port,
        "n_estimators": 1,
        "num_leaves": 2
    }

    # should be able to use the class without specifying a client
    dask_model = model_factory(**params)
    assert dask_model.client is None
    with pytest.raises(lgb.compat.LGBMNotFittedError, match='Cannot access property client_ before calling fit'):
        dask_model.client_

    dask_model.fit(dX, dy, group=dg)
    assert dask_model.fitted_
    assert dask_model.client is None
    assert dask_model.client_ == client

    preds = dask_model.predict(dX)
    assert isinstance(preds, da.Array)
    assert dask_model.fitted_
    assert dask_model.client is None
    assert dask_model.client_ == client

    local_model = dask_model.to_local()
    with pytest.raises(AttributeError):
        local_model.client
        local_model.client_

    # should be able to set client after construction
    dask_model = model_factory(**params)
    dask_model.set_params(client=client)
    assert dask_model.client == client

    with pytest.raises(lgb.compat.LGBMNotFittedError, match='Cannot access property client_ before calling fit'):
        dask_model.client_

    dask_model.fit(dX, dy, group=dg)
    assert dask_model.fitted_
    assert dask_model.client == client
    assert dask_model.client_ == client

    preds = dask_model.predict(dX)
    assert isinstance(preds, da.Array)
    assert dask_model.fitted_
    assert dask_model.client == client
    assert dask_model.client_ == client

    local_model = dask_model.to_local()
    with pytest.raises(AttributeError):
        local_model.client
        local_model.client_

    client.close(timeout=CLIENT_CLOSE_TIMEOUT)


@pytest.mark.parametrize('serializer', ['pickle', 'joblib', 'cloudpickle'])
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@pytest.mark.parametrize('task', tasks)
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@pytest.mark.parametrize('set_client', [True, False])
def test_model_and_local_version_are_picklable_whether_or_not_client_set_explicitly(serializer, task, set_client, listen_port, tmp_path):

    with LocalCluster(n_workers=2, threads_per_worker=1) as cluster1:
        with Client(cluster1) as client1:

            # data on cluster1
            if task == 'ranking':
                X_1, _, _, _, dX_1, dy_1, _, dg_1 = _create_ranking_data(
                    output='array',
                    group=None
                )
            else:
                X_1, _, _, dX_1, dy_1, _ = _create_data(
                    objective=task,
                    output='array',
                )
                dg_1 = None

            with LocalCluster(n_workers=2, threads_per_worker=1) as cluster2:
                with Client(cluster2) as client2:

                    # create identical data on cluster2
                    if task == 'ranking':
                        X_2, _, _, _, dX_2, dy_2, _, dg_2 = _create_ranking_data(
                            output='array',
                            group=None
                        )
                    else:
                        X_2, _, _, dX_2, dy_2, _ = _create_data(
                            objective=task,
                            output='array',
                        )
                        dg_2 = None

                    if task == 'ranking':
                        model_factory = lgb.DaskLGBMRanker
                    elif task == 'classification':
                        model_factory = lgb.DaskLGBMClassifier
                    elif task == 'regression':
                        model_factory = lgb.DaskLGBMRegressor

                    params = {
                        "time_out": 5,
                        "local_listen_port": listen_port,
                        "n_estimators": 1,
                        "num_leaves": 2
                    }

                    # at this point, the result of default_client() is client2 since it was the most recently
                    # created. So setting client to client1 here to test that you can select a non-default client
                    assert default_client() == client2
                    if set_client:
                        params.update({"client": client1})

                    # unfitted model should survive pickling round trip, and pickling
                    # shouldn't have side effects on the model object
                    dask_model = model_factory(**params)
                    local_model = dask_model.to_local()
                    if set_client:
                        assert dask_model.client == client1
                    else:
                        assert dask_model.client is None

                    with pytest.raises(lgb.compat.LGBMNotFittedError, match='Cannot access property client_ before calling fit'):
                        dask_model.client_

                    assert "client" not in local_model.get_params()
                    assert getattr(local_model, "client", None) is None

                    tmp_file = str(tmp_path / "model-1.pkl")
                    _pickle(
                        obj=dask_model,
                        filepath=tmp_file,
                        serializer=serializer
                    )
                    model_from_disk = _unpickle(
                        filepath=tmp_file,
                        serializer=serializer
                    )

                    local_tmp_file = str(tmp_path / "local-model-1.pkl")
                    _pickle(
                        obj=local_model,
                        filepath=local_tmp_file,
                        serializer=serializer
                    )
                    local_model_from_disk = _unpickle(
                        filepath=local_tmp_file,
                        serializer=serializer
                    )

                    assert model_from_disk.client is None

                    if set_client:
                        assert dask_model.client == client1
                    else:
                        assert dask_model.client is None

                    with pytest.raises(lgb.compat.LGBMNotFittedError, match='Cannot access property client_ before calling fit'):
                        dask_model.client_

                    # client will always be None after unpickling
                    if set_client:
                        from_disk_params = model_from_disk.get_params()
                        from_disk_params.pop("client", None)
                        dask_params = dask_model.get_params()
                        dask_params.pop("client", None)
                        assert from_disk_params == dask_params
                    else:
                        assert model_from_disk.get_params() == dask_model.get_params()
                    assert local_model_from_disk.get_params() == local_model.get_params()

                    # fitted model should survive pickling round trip, and pickling
                    # shouldn't have side effects on the model object
                    if set_client:
                        dask_model.fit(dX_1, dy_1, group=dg_1)
                    else:
                        dask_model.fit(dX_2, dy_2, group=dg_2)
                    local_model = dask_model.to_local()

                    assert "client" not in local_model.get_params()
                    with pytest.raises(AttributeError):
                        local_model.client
                        local_model.client_

                    tmp_file2 = str(tmp_path / "model-2.pkl")
                    _pickle(
                        obj=dask_model,
                        filepath=tmp_file2,
                        serializer=serializer
                    )
                    fitted_model_from_disk = _unpickle(
                        filepath=tmp_file2,
                        serializer=serializer
                    )

                    local_tmp_file2 = str(tmp_path / "local-model-2.pkl")
                    _pickle(
                        obj=local_model,
                        filepath=local_tmp_file2,
                        serializer=serializer
                    )
                    local_fitted_model_from_disk = _unpickle(
                        filepath=local_tmp_file2,
                        serializer=serializer
                    )

                    if set_client:
                        assert dask_model.client == client1
                        assert dask_model.client_ == client1
                    else:
                        assert dask_model.client is None
                        assert dask_model.client_ == default_client()
                        assert dask_model.client_ == client2

                    assert isinstance(fitted_model_from_disk, model_factory)
                    assert fitted_model_from_disk.client is None
                    assert fitted_model_from_disk.client_ == default_client()
                    assert fitted_model_from_disk.client_ == client2

                    # client will always be None after unpickling
                    if set_client:
                        from_disk_params = fitted_model_from_disk.get_params()
                        from_disk_params.pop("client", None)
                        dask_params = dask_model.get_params()
                        dask_params.pop("client", None)
                        assert from_disk_params == dask_params
                    else:
                        assert fitted_model_from_disk.get_params() == dask_model.get_params()
                    assert local_fitted_model_from_disk.get_params() == local_model.get_params()

                    if set_client:
                        preds_orig = dask_model.predict(dX_1).compute()
                        preds_loaded_model = fitted_model_from_disk.predict(dX_1).compute()
                        preds_orig_local = local_model.predict(X_1)
                        preds_loaded_model_local = local_fitted_model_from_disk.predict(X_1)
                    else:
                        preds_orig = dask_model.predict(dX_2).compute()
                        preds_loaded_model = fitted_model_from_disk.predict(dX_2).compute()
                        preds_orig_local = local_model.predict(X_2)
                        preds_loaded_model_local = local_fitted_model_from_disk.predict(X_2)

                    assert_eq(preds_orig, preds_loaded_model)
                    assert_eq(preds_orig_local, preds_loaded_model_local)


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def test_find_open_port_works(listen_port):
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    worker_ip = '127.0.0.1'
    with socket.socket(socket.AF_INET, socket.SOCK_STREAM) as s:
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            ports_to_skip=set()
        )
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        assert listen_port < new_port < listen_port + 1000
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    with socket.socket(socket.AF_INET, socket.SOCK_STREAM) as s_1:
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        s_1.bind((worker_ip, listen_port))
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            )
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def test_warns_and_continues_on_unrecognized_tree_learner(client):
    X = da.random.random((1e3, 10))
    y = da.random.random((1e3, 1))
    dask_regressor = lgb.DaskLGBMRegressor(
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        time_out=5,
        local_listen_port=1234,
        tree_learner='some-nonsense-value',
        n_estimators=1,
        num_leaves=2
    )
    with pytest.warns(UserWarning, match='Parameter tree_learner set to some-nonsense-value'):
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    assert dask_regressor.fitted_

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def test_warns_but_makes_no_changes_for_feature_or_voting_tree_learner(client):
    X = da.random.random((1e3, 10))
    y = da.random.random((1e3, 1))
    for tree_learner in ['feature_parallel', 'voting']:
        dask_regressor = lgb.DaskLGBMRegressor(
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            time_out=5,
            local_listen_port=1234,
            tree_learner=tree_learner,
            n_estimators=1,
            num_leaves=2
        )
        with pytest.warns(UserWarning, match='Support for tree_learner %s in lightgbm' % tree_learner):
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        assert dask_regressor.fitted_
        assert dask_regressor.get_params()['tree_learner'] == tree_learner

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    client.close(timeout=CLIENT_CLOSE_TIMEOUT)

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@gen_cluster(client=True, timeout=None)
def test_errors(c, s, a, b):
    def f(part):
        raise Exception('foo')

    df = dd.demo.make_timeseries()
    df = df.map_partitions(f, meta=df._meta)
    with pytest.raises(Exception) as info:
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            data=df,
            label=df.x,
            params={},
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        )
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        assert 'foo' in str(info.value)
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@pytest.mark.parametrize('task', tasks)
@pytest.mark.parametrize('output', data_output)
def test_training_succeeds_even_if_some_workers_do_not_have_any_data(client, task, output):
    if task == 'ranking' and output == 'scipy_csr_matrix':
        pytest.skip('LGBMRanker is not currently tested on sparse matrices')

    def collection_to_single_partition(collection):
        """Merge the parts of a Dask collection into a single partition."""
        if collection is None:
            return
        if isinstance(collection, da.Array):
            return collection.rechunk(*collection.shape)
        return collection.repartition(npartitions=1)

    if task == 'ranking':
        X, y, w, g, dX, dy, dw, dg = _create_ranking_data(
            output=output,
            group=None
        )
        dask_model_factory = lgb.DaskLGBMRanker
        local_model_factory = lgb.LGBMRanker
    else:
        X, y, w, dX, dy, dw = _create_data(
            objective=task,
            output=output
        )
        g = None
        dg = None
        if task == 'classification':
            dask_model_factory = lgb.DaskLGBMClassifier
            local_model_factory = lgb.LGBMClassifier
        elif task == 'regression':
            dask_model_factory = lgb.DaskLGBMRegressor
            local_model_factory = lgb.LGBMRegressor

    dX = collection_to_single_partition(dX)
    dy = collection_to_single_partition(dy)
    dw = collection_to_single_partition(dw)
    dg = collection_to_single_partition(dg)

    n_workers = len(client.scheduler_info()['workers'])
    assert n_workers > 1
    assert dX.npartitions == 1

    params = {
        'time_out': 5,
        'random_state': 42,
        'num_leaves': 10
    }

    dask_model = dask_model_factory(tree='data', client=client, **params)
    dask_model.fit(dX, dy, group=dg, sample_weight=dw)
    dask_preds = dask_model.predict(dX).compute()

    local_model = local_model_factory(**params)
    if task == 'ranking':
        local_model.fit(X, y, group=g, sample_weight=w)
    else:
        local_model.fit(X, y, sample_weight=w)
    local_preds = local_model.predict(X)

    assert assert_eq(dask_preds, local_preds)

    client.close(timeout=CLIENT_CLOSE_TIMEOUT)


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@pytest.mark.parametrize(
    "classes",
    [
        (lgb.DaskLGBMClassifier, lgb.LGBMClassifier),
        (lgb.DaskLGBMRegressor, lgb.LGBMRegressor),
        (lgb.DaskLGBMRanker, lgb.LGBMRanker)
    ]
)
def test_dask_classes_and_sklearn_equivalents_have_identical_constructors_except_client_arg(classes):
    dask_spec = inspect.getfullargspec(classes[0])
    sklearn_spec = inspect.getfullargspec(classes[1])
    assert dask_spec.varargs == sklearn_spec.varargs
    assert dask_spec.varkw == sklearn_spec.varkw
    assert dask_spec.kwonlyargs == sklearn_spec.kwonlyargs
    assert dask_spec.kwonlydefaults == sklearn_spec.kwonlydefaults

    # "client" should be the only different, and the final argument
    assert dask_spec.args[:-1] == sklearn_spec.args
    assert dask_spec.defaults[:-1] == sklearn_spec.defaults
    assert dask_spec.args[-1] == 'client'
    assert dask_spec.defaults[-1] is None
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@pytest.mark.parametrize(
    "methods",
    [
        (lgb.DaskLGBMClassifier.fit, lgb.LGBMClassifier.fit),
        (lgb.DaskLGBMClassifier.predict, lgb.LGBMClassifier.predict),
        (lgb.DaskLGBMClassifier.predict_proba, lgb.LGBMClassifier.predict_proba),
        (lgb.DaskLGBMRegressor.fit, lgb.LGBMRegressor.fit),
        (lgb.DaskLGBMRegressor.predict, lgb.LGBMRegressor.predict),
        (lgb.DaskLGBMRanker.fit, lgb.LGBMRanker.fit),
        (lgb.DaskLGBMRanker.predict, lgb.LGBMRanker.predict)
    ]
)
def test_dask_methods_and_sklearn_equivalents_have_similar_signatures(methods):
    dask_spec = inspect.getfullargspec(methods[0])
    sklearn_spec = inspect.getfullargspec(methods[1])
    dask_params = inspect.signature(methods[0]).parameters
    sklearn_params = inspect.signature(methods[1]).parameters
    assert dask_spec.args == sklearn_spec.args[:len(dask_spec.args)]
    assert dask_spec.varargs == sklearn_spec.varargs
    if sklearn_spec.varkw:
        assert dask_spec.varkw == sklearn_spec.varkw[:len(dask_spec.varkw)]
    assert dask_spec.kwonlyargs == sklearn_spec.kwonlyargs
    assert dask_spec.kwonlydefaults == sklearn_spec.kwonlydefaults
    for param in dask_spec.args:
        error_msg = f"param '{param}' has different default values in the methods"
        assert dask_params[param].default == sklearn_params[param].default, error_msg
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def sklearn_checks_to_run():
    check_names = [
        "check_estimator_get_tags_default_keys",
        "check_get_params_invariance",
        "check_set_params"
    ]
    for check_name in check_names:
        check_func = getattr(sklearn_checks, check_name, None)
        if check_func:
            yield check_func


def _tested_estimators():
    for Estimator in [lgb.DaskLGBMClassifier, lgb.DaskLGBMRegressor]:
        yield Estimator()


@pytest.mark.parametrize("estimator", _tested_estimators())
@pytest.mark.parametrize("check", sklearn_checks_to_run())
def test_sklearn_integration(estimator, check, client):
    estimator.set_params(local_listen_port=18000, time_out=5)
    name = type(estimator).__name__
    check(name, estimator)
    client.close(timeout=CLIENT_CLOSE_TIMEOUT)


# this test is separate because it takes a not-yet-constructed estimator
@pytest.mark.parametrize("estimator", list(_tested_estimators()))
def test_parameters_default_constructible(estimator):
    name, Estimator = estimator.__class__.__name__, estimator.__class__
    sklearn_checks.check_parameters_default_constructible(name, Estimator)