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11 Commits

Author SHA1 Message Date
Hyunsu Cho
738786680b Release 1.2.0 2020-08-22 18:25:18 -07:00
Philip Hyunsu Cho
04232c01b2 [CI] Fix broken tests (#6048) 2020-08-22 11:43:38 -07:00
Jiaming Yuan
0353a78ab7 Fix scikit learn cls doc. (#6041) 2020-08-20 19:25:12 -07:00
Hyunsu Cho
0089a0e6bf Fix another typo 2020-08-12 19:29:08 +00:00
Philip Hyunsu Cho
03a68a1714 Fix typo 2020-08-12 01:34:33 -07:00
Hyunsu Cho
a0da8a7e0a Make RC2 2020-08-12 00:50:51 -07:00
Hyunsu Cho
eee4eff49b [CI] Build GPU-enabled JAR artifact and deploy to xgboost-maven-repo 2020-08-12 00:50:47 -07:00
Jiaming Yuan
936a854baa Back port fixes to 1.2 (#6002)
* Fix sklearn doc. (#5980)

* Enforce tree order in JSON. (#5974)

* Make JSON model IO more future proof by using tree id in model loading.

* Fix dask predict shape infer. (#5989)

* [Breaking] Fix .predict() method and add .predict_proba() in xgboost.dask.DaskXGBClassifier (#5986)
2020-08-11 20:22:31 +08:00
Hyunsu Cho
7856da5827 [CI] Use mgpu machine to run gpu hist unit tests 2020-08-02 02:33:05 -07:00
Hyunsu Cho
50a0def6c3 Make RC1 2020-08-02 08:56:20 +00:00
Hyunsu Cho
9116a0ec10 Fix a unit test on CLI, to handle RC versions 2020-08-02 08:56:15 +00:00
16 changed files with 151 additions and 59 deletions

11
Jenkinsfile vendored
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@@ -92,7 +92,7 @@ pipeline {
'test-python-gpu-cuda10.2': { TestPythonGPU(host_cuda_version: '10.2') },
'test-python-gpu-cuda11.0-cross': { TestPythonGPU(artifact_cuda_version: '10.0', host_cuda_version: '11.0') },
'test-python-gpu-cuda11.0': { TestPythonGPU(artifact_cuda_version: '11.0', host_cuda_version: '11.0') },
'test-python-mgpu-cuda10.2': { TestPythonGPU(artifact_cuda_version: '10.2', host_cuda_version: '10.2', multi_gpu: true) },
'test-python-mgpu-cuda10.2': { TestPythonGPU(artifact_cuda_version: '10.0', host_cuda_version: '10.2', multi_gpu: true) },
'test-cpp-gpu-cuda10.2': { TestCppGPU(artifact_cuda_version: '10.2', host_cuda_version: '10.2') },
'test-cpp-gpu-cuda11.0': { TestCppGPU(artifact_cuda_version: '11.0', host_cuda_version: '11.0') },
'test-jvm-jdk8-cuda10.0': { CrossTestJVMwithJDKGPU(artifact_cuda_version: '10.0', host_cuda_version: '10.0') },
@@ -285,7 +285,7 @@ def BuildCUDA(args) {
}
def BuildJVMPackagesWithCUDA(args) {
node('linux && gpu') {
node('linux && mgpu') {
unstash name: 'srcs'
echo "Build XGBoost4J-Spark with Spark ${args.spark_version}, CUDA ${args.cuda_version}"
def container_type = "jvm_gpu_build"
@@ -472,10 +472,11 @@ def DeployJVMPackages(args) {
unstash name: 'srcs'
if (env.BRANCH_NAME == 'master' || env.BRANCH_NAME.startsWith('release')) {
echo 'Deploying to xgboost-maven-repo S3 repo...'
def container_type = "jvm"
def docker_binary = "docker"
sh """
${dockerRun} ${container_type} ${docker_binary} tests/ci_build/deploy_jvm_packages.sh ${args.spark_version}
${dockerRun} jvm docker tests/ci_build/deploy_jvm_packages.sh ${args.spark_version} 0
"""
sh """
${dockerRun} jvm_gpu_build docker --build-arg CUDA_VERSION=10.0 tests/ci_build/deploy_jvm_packages.sh ${args.spark_version} 1
"""
}
deleteDir()

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@@ -1 +1 @@
@xgboost_VERSION_MAJOR@.@xgboost_VERSION_MINOR@.@xgboost_VERSION_PATCH@-SNAPSHOT
@xgboost_VERSION_MAJOR@.@xgboost_VERSION_MINOR@.@xgboost_VERSION_PATCH@

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@@ -6,7 +6,7 @@
<groupId>ml.dmlc</groupId>
<artifactId>xgboost-jvm_2.12</artifactId>
<version>1.2.0-SNAPSHOT</version>
<version>1.2.0</version>
<packaging>pom</packaging>
<name>XGBoost JVM Package</name>
<description>JVM Package for XGBoost</description>

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@@ -6,10 +6,10 @@
<parent>
<groupId>ml.dmlc</groupId>
<artifactId>xgboost-jvm_2.12</artifactId>
<version>1.2.0-SNAPSHOT</version>
<version>1.2.0</version>
</parent>
<artifactId>xgboost4j-example_2.12</artifactId>
<version>1.2.0-SNAPSHOT</version>
<version>1.2.0</version>
<packaging>jar</packaging>
<build>
<plugins>
@@ -26,7 +26,7 @@
<dependency>
<groupId>ml.dmlc</groupId>
<artifactId>xgboost4j-spark_${scala.binary.version}</artifactId>
<version>1.2.0-SNAPSHOT</version>
<version>1.2.0</version>
</dependency>
<dependency>
<groupId>org.apache.spark</groupId>
@@ -37,7 +37,7 @@
<dependency>
<groupId>ml.dmlc</groupId>
<artifactId>xgboost4j-flink_${scala.binary.version}</artifactId>
<version>1.2.0-SNAPSHOT</version>
<version>1.2.0</version>
</dependency>
<dependency>
<groupId>org.apache.commons</groupId>

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@@ -6,10 +6,10 @@
<parent>
<groupId>ml.dmlc</groupId>
<artifactId>xgboost-jvm_2.12</artifactId>
<version>1.2.0-SNAPSHOT</version>
<version>1.2.0</version>
</parent>
<artifactId>xgboost4j-flink_2.12</artifactId>
<version>1.2.0-SNAPSHOT</version>
<version>1.2.0</version>
<build>
<plugins>
<plugin>
@@ -26,7 +26,7 @@
<dependency>
<groupId>ml.dmlc</groupId>
<artifactId>xgboost4j_${scala.binary.version}</artifactId>
<version>1.2.0-SNAPSHOT</version>
<version>1.2.0</version>
</dependency>
<dependency>
<groupId>org.apache.commons</groupId>

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@@ -6,7 +6,7 @@
<parent>
<groupId>ml.dmlc</groupId>
<artifactId>xgboost-jvm_2.12</artifactId>
<version>1.2.0-SNAPSHOT</version>
<version>1.2.0</version>
</parent>
<artifactId>xgboost4j-spark_2.12</artifactId>
<build>
@@ -24,7 +24,7 @@
<dependency>
<groupId>ml.dmlc</groupId>
<artifactId>xgboost4j_${scala.binary.version}</artifactId>
<version>1.2.0-SNAPSHOT</version>
<version>1.2.0</version>
</dependency>
<dependency>
<groupId>org.apache.spark</groupId>

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@@ -6,10 +6,10 @@
<parent>
<groupId>ml.dmlc</groupId>
<artifactId>xgboost-jvm_2.12</artifactId>
<version>1.2.0-SNAPSHOT</version>
<version>1.2.0</version>
</parent>
<artifactId>xgboost4j_2.12</artifactId>
<version>1.2.0-SNAPSHOT</version>
<version>1.2.0</version>
<packaging>jar</packaging>
<dependencies>

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@@ -1 +1 @@
1.2.0-SNAPSHOT
1.2.0

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@@ -738,7 +738,8 @@ async def _predict_async(client: Client, model, data, *args,
predt = booster.predict(data=local_x,
validate_features=local_x.num_row() != 0,
*args)
ret = (delayed(predt), order)
columns = 1 if len(predt.shape) == 1 else predt.shape[1]
ret = ((delayed(predt), columns), order)
predictions.append(ret)
return predictions
@@ -775,8 +776,10 @@ async def _predict_async(client: Client, model, data, *args,
# See https://docs.dask.org/en/latest/array-creation.html
arrays = []
for i, shape in enumerate(shapes):
arrays.append(da.from_delayed(results[i], shape=(shape[0], ),
dtype=numpy.float32))
arrays.append(da.from_delayed(
results[i][0], shape=(shape[0],)
if results[i][1] == 1 else (shape[0], results[i][1]),
dtype=numpy.float32))
predictions = await da.concatenate(arrays, axis=0)
return predictions
@@ -978,6 +981,7 @@ class DaskScikitLearnBase(XGBModel):
def client(self, clt):
self._client = clt
@xgboost_model_doc("""Implementation of the Scikit-Learn API for XGBoost.""",
['estimators', 'model'])
class DaskXGBRegressor(DaskScikitLearnBase, XGBRegressorBase):
@@ -1032,9 +1036,6 @@ class DaskXGBRegressor(DaskScikitLearnBase, XGBRegressorBase):
['estimators', 'model']
)
class DaskXGBClassifier(DaskScikitLearnBase, XGBClassifierBase):
# pylint: disable=missing-docstring
_client = None
async def _fit_async(self, X, y,
sample_weights=None,
eval_set=None,
@@ -1078,13 +1079,34 @@ class DaskXGBClassifier(DaskScikitLearnBase, XGBClassifierBase):
return self.client.sync(self._fit_async, X, y, sample_weights,
eval_set, sample_weight_eval_set, verbose)
async def _predict_async(self, data):
async def _predict_proba_async(self, data):
_assert_dask_support()
test_dmatrix = await DaskDMatrix(client=self.client, data=data,
missing=self.missing)
pred_probs = await predict(client=self.client,
model=self.get_booster(), data=test_dmatrix)
return pred_probs
def predict_proba(self, data): # pylint: disable=arguments-differ,missing-docstring
_assert_dask_support()
return self.client.sync(self._predict_proba_async, data)
async def _predict_async(self, data):
_assert_dask_support()
test_dmatrix = await DaskDMatrix(client=self.client, data=data,
missing=self.missing)
pred_probs = await predict(client=self.client,
model=self.get_booster(), data=test_dmatrix)
if self.n_classes_ == 2:
preds = (pred_probs > 0.5).astype(int)
else:
preds = da.argmax(pred_probs, axis=1)
return preds
def predict(self, data): # pylint: disable=arguments-differ
_assert_dask_support()
return self.client.sync(self._predict_async, data)

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@@ -77,7 +77,7 @@ __model_doc = '''
gamma : float
Minimum loss reduction required to make a further partition on a leaf
node of the tree.
min_child_weight : int
min_child_weight : float
Minimum sum of instance weight(hessian) needed in a child.
max_delta_step : int
Maximum delta step we allow each tree's weight estimation to be.
@@ -750,7 +750,10 @@ class XGBModel(XGBModelBase):
@xgboost_model_doc(
"Implementation of the scikit-learn API for XGBoost classification.",
['model', 'objective'])
['model', 'objective'], extra_parameters='''
n_estimators : int
Number of boosting rounds.
''')
class XGBClassifier(XGBModel, XGBClassifierBase):
# pylint: disable=missing-docstring,invalid-name,too-many-instance-attributes
def __init__(self, objective="binary:logistic", **kwargs):
@@ -1033,7 +1036,10 @@ class XGBRegressor(XGBModel, XGBRegressorBase):
@xgboost_model_doc(
"scikit-learn API for XGBoost random forest regression.",
['model', 'objective'])
['model', 'objective'], extra_parameters='''
n_estimators : int
Number of trees in random forest to fit.
''')
class XGBRFRegressor(XGBRegressor):
# pylint: disable=missing-docstring
def __init__(self, learning_rate=1, subsample=0.8, colsample_bynode=0.8,

View File

@@ -1,6 +1,8 @@
/*!
* Copyright 2019 by Contributors
* Copyright 2019-2020 by Contributors
*/
#include <utility>
#include "xgboost/json.h"
#include "xgboost/logging.h"
#include "gbtree_model.h"
@@ -41,15 +43,14 @@ void GBTreeModel::SaveModel(Json* p_out) const {
auto& out = *p_out;
CHECK_EQ(param.num_trees, static_cast<int>(trees.size()));
out["gbtree_model_param"] = ToJson(param);
std::vector<Json> trees_json;
size_t t = 0;
for (auto const& tree : trees) {
std::vector<Json> trees_json(trees.size());
for (size_t t = 0; t < trees.size(); ++t) {
auto const& tree = trees[t];
Json tree_json{Object()};
tree->SaveModel(&tree_json);
// The field is not used in XGBoost, but might be useful for external project.
tree_json["id"] = Integer(t);
trees_json.emplace_back(tree_json);
t++;
tree_json["id"] = Integer(static_cast<Integer::Int>(t));
trees_json[t] = std::move(tree_json);
}
std::vector<Json> tree_info_json(tree_info.size());
@@ -70,9 +71,10 @@ void GBTreeModel::LoadModel(Json const& in) {
auto const& trees_json = get<Array const>(in["trees"]);
trees.resize(trees_json.size());
for (size_t t = 0; t < trees.size(); ++t) {
trees[t].reset( new RegTree() );
trees[t]->LoadModel(trees_json[t]);
for (size_t t = 0; t < trees_json.size(); ++t) { // NOLINT
auto tree_id = get<Integer>(trees_json[t]["id"]);
trees.at(tree_id).reset(new RegTree());
trees.at(tree_id)->LoadModel(trees_json[t]);
}
tree_info.resize(param.num_trees);

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@@ -17,8 +17,8 @@ ENV PATH=/opt/python/bin:$PATH
# Create new Conda environment with cuDF, Dask, and cuPy
RUN \
conda create -n gpu_test -c rapidsai -c nvidia -c conda-forge -c defaults \
python=3.7 cudf=0.14 cudatoolkit=$CUDA_VERSION dask dask-cuda dask-cudf cupy \
conda create -n gpu_test -c rapidsai-nightly -c rapidsai -c nvidia -c conda-forge -c defaults \
python=3.7 cudf=0.15* cudatoolkit=$CUDA_VERSION dask dask-cuda dask-cudf cupy \
numpy pytest scipy scikit-learn pandas matplotlib wheel python-kubernetes urllib3 graphviz hypothesis
ENV GOSU_VERSION 1.10

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@@ -3,22 +3,32 @@
set -e
set -x
if [ $# -ne 1 ]; then
echo "Usage: $0 [spark version]"
if [ $# -ne 2 ]; then
echo "Usage: $0 [spark version] [build_gpu? 0 or 1]"
exit 1
fi
spark_version=$1
build_gpu=$2
# Initialize local Maven repository
./tests/ci_build/initialize_maven.sh
rm -rf build/
cd jvm-packages
rm -rf $(find . -name target)
rm -rf ../build/
# Re-build package without Mock Rabit
# Deploy to S3 bucket xgboost-maven-repo
mvn --no-transfer-progress package deploy -P release-to-s3 -Dspark.version=${spark_version} -DskipTests
if [[ "$build_gpu" == "0" ]]
then
# Build CPU artifact
mvn --no-transfer-progress package deploy -P release-to-s3 -Dspark.version=${spark_version} -DskipTests
else
# Build GPU artifact
sed -i -e 's/<artifactId>xgboost\(.*\)_\(.*\)<\/artifactId>/<artifactId>xgboost\1-gpu_\2<\/artifactId>/' $(find . -name pom.xml)
mvn --no-transfer-progress package deploy -Duse.cuda=ON -P release-to-s3 -Dspark.version=${spark_version} -DskipTests
fi
set +x
set +e

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@@ -148,7 +148,16 @@ TEST(Learner, JsonModelIO) {
Json out { Object() };
learner->SaveModel(&out);
learner->LoadModel(out);
dmlc::TemporaryDirectory tmpdir;
std::ofstream fout (tmpdir.path + "/model.json");
fout << out;
fout.close();
auto loaded_str = common::LoadSequentialFile(tmpdir.path + "/model.json");
Json loaded = Json::Load(StringView{loaded_str.c_str(), loaded_str.size()});
learner->LoadModel(loaded);
learner->Configure();
Json new_in { Object() };

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@@ -121,6 +121,8 @@ eval[test] = {data_path}
v = xgboost.__version__
if v.find('SNAPSHOT') != -1:
assert msg.split(':')[1].strip() == v.split('-')[0]
elif v.find('rc') != -1:
assert msg.split(':')[1].strip() == v.split('rc')[0]
else:
assert msg.split(':')[1].strip() == v

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@@ -5,6 +5,7 @@ import sys
import numpy as np
import json
import asyncio
from sklearn.datasets import make_classification
if sys.platform.startswith("win"):
pytest.skip("Skipping dask tests on Windows", allow_module_level=True)
@@ -36,7 +37,7 @@ def generate_array():
def test_from_dask_dataframe():
with LocalCluster(n_workers=5) as cluster:
with LocalCluster(n_workers=kWorkers) as cluster:
with Client(cluster) as client:
X, y = generate_array()
@@ -74,7 +75,7 @@ def test_from_dask_dataframe():
def test_from_dask_array():
with LocalCluster(n_workers=5, threads_per_worker=5) as cluster:
with LocalCluster(n_workers=kWorkers, threads_per_worker=5) as cluster:
with Client(cluster) as client:
X, y = generate_array()
dtrain = DaskDMatrix(client, X, y)
@@ -104,8 +105,28 @@ def test_from_dask_array():
assert np.all(single_node_predt == from_arr.compute())
def test_dask_predict_shape_infer():
with LocalCluster(n_workers=kWorkers) as cluster:
with Client(cluster) as client:
X, y = make_classification(n_samples=1000, n_informative=5,
n_classes=3)
X_ = dd.from_array(X, chunksize=100)
y_ = dd.from_array(y, chunksize=100)
dtrain = xgb.dask.DaskDMatrix(client, data=X_, label=y_)
model = xgb.dask.train(
client,
{"objective": "multi:softprob", "num_class": 3},
dtrain=dtrain
)
preds = xgb.dask.predict(client, model, dtrain)
assert preds.shape[0] == preds.compute().shape[0]
assert preds.shape[1] == preds.compute().shape[1]
def test_dask_missing_value_reg():
with LocalCluster(n_workers=5) as cluster:
with LocalCluster(n_workers=kWorkers) as cluster:
with Client(cluster) as client:
X_0 = np.ones((20 // 2, kCols))
X_1 = np.zeros((20 // 2, kCols))
@@ -144,19 +165,19 @@ def test_dask_missing_value_cls():
missing=0.0)
cls.client = client
cls.fit(X, y, eval_set=[(X, y)])
dd_predt = cls.predict(X).compute()
dd_pred_proba = cls.predict_proba(X).compute()
np_X = X.compute()
np_predt = cls.get_booster().predict(
np_pred_proba = cls.get_booster().predict(
xgb.DMatrix(np_X, missing=0.0))
np.testing.assert_allclose(np_predt, dd_predt)
np.testing.assert_allclose(np_pred_proba, dd_pred_proba)
cls = xgb.dask.DaskXGBClassifier()
assert hasattr(cls, 'missing')
def test_dask_regressor():
with LocalCluster(n_workers=5) as cluster:
with LocalCluster(n_workers=kWorkers) as cluster:
with Client(cluster) as client:
X, y = generate_array()
regressor = xgb.dask.DaskXGBRegressor(verbosity=1, n_estimators=2)
@@ -178,7 +199,7 @@ def test_dask_regressor():
def test_dask_classifier():
with LocalCluster(n_workers=5) as cluster:
with LocalCluster(n_workers=kWorkers) as cluster:
with Client(cluster) as client:
X, y = generate_array()
y = (y * 10).astype(np.int32)
@@ -201,7 +222,18 @@ def test_dask_classifier():
assert len(list(history['validation_0'])) == 1
assert len(history['validation_0']['merror']) == 2
# Test .predict_proba()
probas = classifier.predict_proba(X)
assert classifier.n_classes_ == 10
assert probas.ndim == 2
assert probas.shape[0] == kRows
assert probas.shape[1] == 10
cls_booster = classifier.get_booster()
single_node_proba = cls_booster.inplace_predict(X.compute())
np.testing.assert_allclose(single_node_proba,
probas.compute())
# Test with dataframe.
X_d = dd.from_dask_array(X)
@@ -218,7 +250,7 @@ def test_dask_classifier():
@pytest.mark.skipif(**tm.no_sklearn())
def test_sklearn_grid_search():
from sklearn.model_selection import GridSearchCV
with LocalCluster(n_workers=4) as cluster:
with LocalCluster(n_workers=kWorkers) as cluster:
with Client(cluster) as client:
X, y = generate_array()
reg = xgb.dask.DaskXGBRegressor(learning_rate=0.1,
@@ -292,7 +324,9 @@ def run_empty_dmatrix_cls(client, parameters):
evals=[(dtrain, 'validation')],
num_boost_round=2)
predictions = xgb.dask.predict(client=client, model=out,
data=dtrain).compute()
data=dtrain)
assert predictions.shape[1] == n_classes
predictions = predictions.compute()
_check_outputs(out, predictions)
# train has more rows than evals
@@ -315,7 +349,7 @@ def run_empty_dmatrix_cls(client, parameters):
# environment and Exact doesn't support it.
def test_empty_dmatrix_hist():
with LocalCluster(n_workers=5) as cluster:
with LocalCluster(n_workers=kWorkers) as cluster:
with Client(cluster) as client:
parameters = {'tree_method': 'hist'}
run_empty_dmatrix_reg(client, parameters)
@@ -323,7 +357,7 @@ def test_empty_dmatrix_hist():
def test_empty_dmatrix_approx():
with LocalCluster(n_workers=5) as cluster:
with LocalCluster(n_workers=kWorkers) as cluster:
with Client(cluster) as client:
parameters = {'tree_method': 'approx'}
run_empty_dmatrix_reg(client, parameters)
@@ -397,7 +431,13 @@ async def run_dask_classifier_asyncio(scheduler_address):
assert len(list(history['validation_0'])) == 1
assert len(history['validation_0']['merror']) == 2
# Test .predict_proba()
probas = await classifier.predict_proba(X)
assert classifier.n_classes_ == 10
assert probas.ndim == 2
assert probas.shape[0] == kRows
assert probas.shape[1] == 10
# Test with dataframe.
X_d = dd.from_dask_array(X)