Deploying machine learning data pipelines and algorithms should not be a time-consuming or difficult task. MLeap allows data scientists and engineers to deploy machine learning pipelines from Spark and Scikit-learn to a portable format and execution engine.
Documentation is available at https://combust.github.io/mleap-docs/.
Read Serializing a Spark ML Pipeline and Scoring with MLeap to gain a full sense of what is possible.
Using the MLeap execution engine and serialization format, we provide a performant, portable and easy-to-integrate production library for machine learning data pipelines and algorithms.
For portability, we build our software on the JVM and only use serialization formats that are widely-adopted.
We also provide a high level of integration with existing technologies.
Our goals for this project are:
- Allow Researchers/Data Scientists and Engineers to continue to build data pipelines and train algorithms with Spark and Scikit-Learn
- Extend Spark/Scikit/TensorFlow by providing ML Pipelines serialization/deserialization to/from a common framework (Bundle.ML)
- Use MLeap Runtime to execute your pipeline and algorithm without dependenices on Spark or Scikit (numpy, pandas, etc)
- Core execution engine implemented in Scala
- Spark, PySpark and Scikit-Learn support
- Export a model with Scikit-learn or Spark and execute it using the MLeap Runtime (without dependencies on the Spark Context, or sklearn/numpy/pandas/etc)
- Choose from 2 portable serialization formats (JSON, Protobuf)
- Implement your own custom data types and transformers for use with MLeap data frames and transformer pipelines
- Extensive test coverage with full parity tests for Spark and MLeap pipelines
- Optional Spark transformer extension to extend Spark's default transformer offerings
Other versions besides those listed below may also work (especially more recent Java versions for the JRE), but these are the configurations which are tested by mleap.
MLeap Version | Spark Version | Scala Version | Java Version | Python Version | XGBoost Version | Tensorflow Version |
---|---|---|---|---|---|---|
0.23.3 | 3.4.0 | 2.12.18 | 11 | 3.7, 3.8 | 1.7.6 | 2.10.1 |
0.23.2 | 3.4.0 | 2.12.18 | 11 | 3.7, 3.8 | 1.7.6 | 2.10.1 |
0.23.1 | 3.4.0 | 2.12.18 | 11 | 3.7, 3.8 | 1.7.6 | 2.10.1 |
0.23.0 | 3.4.0 | 2.12.13 | 11 | 3.7, 3.8 | 1.7.3 | 2.10.1 |
0.22.0 | 3.3.0 | 2.12.13 | 11 | 3.7, 3.8 | 1.6.1 | 2.7.0 |
0.21.1 | 3.2.0 | 2.12.13 | 11 | 3.7 | 1.6.1 | 2.7.0 |
0.21.0 | 3.2.0 | 2.12.13 | 11 | 3.6, 3.7 | 1.6.1 | 2.7.0 |
0.20.0 | 3.2.0 | 2.12.13 | 8 | 3.6, 3.7 | 1.5.2 | 2.7.0 |
0.19.0 | 3.0.2 | 2.12.13 | 8 | 3.6, 3.7 | 1.3.1 | 2.4.1 |
0.18.1 | 3.0.2 | 2.12.13 | 8 | 3.6, 3.7 | 1.0.0 | 2.4.1 |
0.18.0 | 3.0.2 | 2.12.13 | 8 | 3.6, 3.7 | 1.0.0 | 2.4.1 |
0.17.0 | 2.4.5 | 2.11.12, 2.12.10 | 8 | 3.6, 3.7 | 1.0.0 | 1.11.0 |
libraryDependencies += "ml.combust.mleap" %% "mleap-runtime" % "0.23.3"
<dependency>
<groupId>ml.combust.mleap</groupId>
<artifactId>mleap-runtime_2.12</artifactId>
<version>0.23.3</version>
</dependency>
libraryDependencies += "ml.combust.mleap" %% "mleap-spark" % "0.23.3"
<dependency>
<groupId>ml.combust.mleap</groupId>
<artifactId>mleap-spark_2.12</artifactId>
<version>0.23.3</version>
</dependency>
Install MLeap from PyPI
$ pip install mleap
For more complete examples, see our other Git repository: MLeap Demos
The first step is to create our pipeline in Spark. For our example we will manually build a simple Spark ML pipeline.
import ml.combust.bundle.BundleFile
import ml.combust.mleap.spark.SparkSupport._
import org.apache.spark.ml.Pipeline
import org.apache.spark.ml.bundle.SparkBundleContext
import org.apache.spark.ml.feature.{Binarizer, StringIndexer}
import org.apache.spark.sql._
import org.apache.spark.sql.functions._
import scala.util.Using
val datasetName = "./examples/spark-demo.csv"
val dataframe: DataFrame = spark.sqlContext.read.format("csv")
.option("header", true)
.load(datasetName)
.withColumn("test_double", col("test_double").cast("double"))
// User out-of-the-box Spark transformers like you normally would
val stringIndexer = new StringIndexer().
setInputCol("test_string").
setOutputCol("test_index")
val binarizer = new Binarizer().
setThreshold(0.5).
setInputCol("test_double").
setOutputCol("test_bin")
val pipelineEstimator = new Pipeline()
.setStages(Array(stringIndexer, binarizer))
val pipeline = pipelineEstimator.fit(dataframe)
// then serialize pipeline
val sbc = SparkBundleContext().withDataset(pipeline.transform(dataframe))
Using(BundleFile("jar:file:/tmp/simple-spark-pipeline.zip")) { bf =>
pipeline.writeBundle.save(bf)(sbc).get
}
The dataset used for training can be found here
Spark pipelines are not meant to be run outside of Spark. They require a DataFrame and therefore a SparkContext to run. These are expensive data structures and libraries to include in a project. With MLeap, there is no dependency on Spark to execute a pipeline. MLeap dependencies are lightweight and we use fast data structures to execute your ML pipelines.
Import the MLeap library in your PySpark job
import mleap.pyspark
from mleap.pyspark.spark_support import SimpleSparkSerializer
See PySpark Integration of python/README.md for more.
import pandas as pd
from mleap.sklearn.pipeline import Pipeline
from mleap.sklearn.preprocessing.data import FeatureExtractor, LabelEncoder, ReshapeArrayToN1
from sklearn.preprocessing import OneHotEncoder
data = pd.DataFrame(['a', 'b', 'c'], columns=['col_a'])
categorical_features = ['col_a']
feature_extractor_tf = FeatureExtractor(input_scalars=categorical_features,
output_vector='imputed_features',
output_vector_items=categorical_features)
# Label Encoder for x1 Label
label_encoder_tf = LabelEncoder(input_features=feature_extractor_tf.output_vector_items,
output_features='{}_label_le'.format(categorical_features[0]))
# Reshape the output of the LabelEncoder to N-by-1 array
reshape_le_tf = ReshapeArrayToN1()
# Vector Assembler for x1 One Hot Encoder
one_hot_encoder_tf = OneHotEncoder(sparse=False)
one_hot_encoder_tf.mlinit(prior_tf = label_encoder_tf,
output_features = '{}_label_one_hot_encoded'.format(categorical_features[0]))
one_hot_encoder_pipeline_x0 = Pipeline([
(feature_extractor_tf.name, feature_extractor_tf),
(label_encoder_tf.name, label_encoder_tf),
(reshape_le_tf.name, reshape_le_tf),
(one_hot_encoder_tf.name, one_hot_encoder_tf)
])
one_hot_encoder_pipeline_x0.mlinit()
one_hot_encoder_pipeline_x0.fit_transform(data)
one_hot_encoder_pipeline_x0.serialize_to_bundle('/tmp', 'mleap-scikit-test-pipeline', init=True)
# array([[ 1., 0., 0.],
# [ 0., 1., 0.],
# [ 0., 0., 1.]])
Because we export Spark and Scikit-learn pipelines to a standard format, we can use either our Spark-trained pipeline or our Scikit-learn pipeline from the previous steps to demonstrate usage of MLeap in this section. The choice is yours!
import ml.combust.bundle.BundleFile
import ml.combust.mleap.runtime.MleapSupport._
import scala.util.Using
// load the Spark pipeline we saved in the previous section
val bundle = Using(BundleFile("jar:file:/tmp/simple-spark-pipeline.zip"))) { bundleFile =>
bundleFile.loadMleapBundle().get
}).opt.get
// create a simple LeapFrame to transform
import ml.combust.mleap.runtime.frame.{DefaultLeapFrame, Row}
import ml.combust.mleap.core.types._
// MLeap makes extensive use of monadic types like Try
val schema = StructType(StructField("test_string", ScalarType.String),
StructField("test_double", ScalarType.Double)).get
val data = Seq(Row("hello", 0.6), Row("MLeap", 0.2))
val frame = DefaultLeapFrame(schema, data)
// transform the dataframe using our pipeline
val mleapPipeline = bundle.root
val frame2 = mleapPipeline.transform(frame).get
val data2 = frame2.dataset
// get data from the transformed rows and make some assertions
assert(data2(0).getDouble(2) == 1.0) // string indexer output
assert(data2(0).getDouble(3) == 1.0) // binarizer output
// the second row
assert(data2(1).getDouble(2) == 2.0)
assert(data2(1).getDouble(3) == 0.0)
For more documentation, please see our documentation, where you can learn to:
- Implement custom transformers that will work with Spark, MLeap and Scikit-learn
- Implement custom data types to transform with Spark and MLeap pipelines
- Transform with blazing fast speeds using optimized row-based transformers
- Serialize MLeap data frames to various formats like avro, json, and a custom binary format
- Implement new serialization formats for MLeap data frames
- Work through several demonstration pipelines which use real-world data to create predictive pipelines
- Supported Spark transformers
- Supported Scikit-learn transformers
- Custom transformers provided by MLeap
- Write documentation.
- Write a tutorial/walkthrough for an interesting ML problem
- Contribute an Estimator/Transformer from Spark
- Use MLeap at your company and tell us what you think
- Make a feature request or report a bug in github
- Make a pull request for an existing feature request or bug report
- Join the discussion of how to get MLeap into Spark as a dependency. Talk with us on Gitter (see link at top of README.md)
Please ensure you have sbt 1.9.3, java 11, scala 2.12.18
- Initialize the git submodules
git submodule update --init --recursive
- Run
sbt compile
Thank you to Swoop for supporting the XGboost integration.
- Jason Sleight (jsleight)
- Talal Riaz (talalryz)
- Weichen Xu (WeichenXu123)
- Hollin Wilkins ([email protected])
- Mikhail Semeniuk ([email protected])
- Anca Sarb ([email protected])
- Ryan Vogan ([email protected])
See LICENSE and NOTICE file in this repository.
Copyright 20 Combust, Inc.
Licensed under the Apache License, Version 2.0 (the "License"); you may not use this file except in compliance with the License. You may obtain a copy of the License at
http://www.apache.org/licenses/LICENSE-2.0
Unless required by applicable law or agreed to in writing, software distributed under the License is distributed on an "AS IS" BASIS, WITHOUT WARRANTIES OR CONDITIONS OF ANY KIND, either express or implied. See the License for the specific language governing permissions and limitations under the License.