Java Evaluator API for Predictive Model Markup Language (PMML).
- Features
- Prerequisites
- Installation
- API
- Basic usage
- Advanced usage
- Example applications
- Documentation
- Support
- License
- Additional information
JPMML-Evaluator is de facto the reference implementation of the PMML specification versions 3.0, 3.1, 3.2, 4.0, 4.1, 4.2 and 4.3 for the Java/JVM platform:
- Pre-processing of input fields according to the DataDictionary and MiningSchema elements:
- Complete data type system.
- Complete operational type system.
- Treatment of outlier, missing and/or invalid values.
- Model evaluation:
- Post-processing of target fields according to the Targets element:
- Rescaling and/or casting regression results.
- Replacing a missing regression result with the default value.
- Replacing a missing classification result with the map of prior probabilities.
- Calculation of auxiliary output fields according to the Output element:
- Over 20 different result feature types.
- Model verification according to the ModelVerification element.
- Vendor extensions:
- Memory and security sandboxing.
- Java-backed model, expression and predicate types - integrate any 3rd party Java library into PMML data flow.
- MathML prediction reports.
For more information please see the features.md file.
JPMML-Evaluator is interoperable with most popular statistics and data mining software:
- R and Rattle:
- JPMML-R library.
r2pmml
package.pmml
andpmmlTransformations
packages.
- Python and Scikit-Learn:
- JPMML-SkLearn library.
sklearn2pmml
package.
- Apache Spark:
- JPMML-SparkML library.
pyspark2pmml
andsparklyr2pmml
packages.mllib.pmml.PMMLExportable
interface.
- H2O.ai:
- JPMML-H2O library.
- XGBoost:
- JPMML-XGBoost library.
- LightGBM:
- JPMML-LightGBM library.
- TensorFlow:
- JPMML-TensorFlow library.
- KNIME
- RapidMiner
- SAS
- SPSS
JPMML-Evaluator is fast and memory efficient. It can deliver one million scorings per second already on a desktop computer.
- Java Platform, Standard Edition 8 or newer.
JPMML-Evaluator library JAR files (together with accompanying Java source and Javadocs JAR files) are released via Maven Central Repository.
The current version is 1.4.13 (8 September, 2019).
<dependency>
<groupId>org.jpmml</groupId>
<artifactId>pmml-evaluator</artifactId>
<version>1.4.13</version>
</dependency>
<dependency>
<groupId>org.jpmml</groupId>
<artifactId>pmml-evaluator-extension</artifactId>
<version>1.4.13</version>
</dependency>
Core types:
- Interface
org.jpmml.evaluator.EvaluatorBuilder
- Class
org.jpmml.evaluator.ModelEvaluatorBuilder
- Builds aModelEvaluator
instance based on anorg.dmg.pmml.PMML
instance- Class
org.jpmml.evaluator.LoadingModelEvaluatorBuilder
- Builds aModelEvaluator
instance from a PMML byte stream or a PMML file
- Class
- Class
- Interface
org.jpmml.evaluator.Evaluator
- Abstract class
org.jpmml.evaluator.ModelEvaluator
- Implements model evaluator functionality based on anorg.dmg.pmml.Model
instance- Classes
org.jpmml.evaluator.<Model>Evaluator
(GeneralRegressionModelEvaluator
,MiningModelEvaluator
,NeuralNetworkEvaluator
,RegressionEvaluator
,TreeModelEvaluator
,SupportVectorMachineEvaluator
etc.)
- Classes
- Abstract class
- Abstract class
org.jpmml.evaluator.ModelField
- Abstract class
org.jpmml.evaluator.InputField
- Describes a model input field - Abstract class
org.jpmml.evaluator.ResultField
- Class
org.jpmml.evaluator.TargetField
- Describes a primary model result field - Class
org.jpmml.evaluator.OutputField
- Describes a secondary model result field
- Class
- Abstract class
- Abstract class
org.jpmml.evaluator.FieldValue
- Class
org.jpmml.evaluator.CollectionValue
- Abstract class
org.jpmml.evaluator.ScalarValue
- Class
org.jpmml.evaluator.ContinuousValue
- Abstract class
org.jpmml.evaluator.DiscreteValue
- Class
org.jpmml.evaluator.CategoricalValue
- Class
org.jpmml.evaluator.OrdinalValue
- Class
- Class
- Class
- Utility class
org.jpmml.evaluator.EvaluatorUtil
- Utility class
org.jpmml.evaluator.FieldValueUtil
Core methods:
EvaluatorBuilder
#build()
Evaluator
#verify()
#getInputFields()
#getTargetFields()
#getOutputFields()
#evaluate(Map<FieldName, ?>)
InputField
#prepare(Object)
Target value types:
- Interface
org.jpmml.evaluator.Computable
- Abstract class
org.jpmml.evaluator.AbstractComputable
- Class
org.jpmml.evaluator.Classification
- Class
org.jpmml.evaluator.Regression
- Class
org.jpmml.evaluator.Vote
- Class
- Abstract class
- Interface
org.jpmml.evaluator.ResultFeature
- Marker interface
org.jpmml.evaluator.HasCategoricalResult
- Marker interface
org.jpmml.evaluator.HasAffinity
- Marker interface
org.jpmml.evaluator.HasConfidence
- Marker interface
org.jpmml.evaluator.HasProbability
- Marker interface
- Marker interface
org.jpmml.evaluator.HasDecisionPath
- Marker interface
org.jpmml.evaluator.HasEntityId
- Marker interface
org.jpmml.evaluator.HasPrediction
- Marker interface
- Abstract class
org.jpmml.evaluator.Report
- Utility class
org.jpmml.evaluator.ReportUtil
Target value methods:
Computable
#getResult()
HasProbability
#getProbability(String)
#getProbabilityReport(String)
HasPrediction
#getPrediction()
#getPredictionReport()
Exception types:
- Abstract class
org.jpmml.evaluator.PMMLException
- Abstract class
org.jpmml.evaluator.InvalidMarkupException
- Abstract class
org.jpmml.evaluator.UnsupportedMarkupException
- Abstract class
org.jpmml.evaluator.EvaluationException
- Abstract class
// Building a model evaluator from a PMML file
Evaluator evaluator = new LoadingModelEvaluatorBuilder()
.setLocatable(false)
.setVisitors(new DefaultVisitorBattery())
//.setOutputFilter(OutputFilters.KEEP_FINAL_RESULTS)
.load(new File("model.pmml"))
.build();
// Perforing the self-check
evaluator.verify();
// Printing input (x1, x2, .., xn) fields
List<? extends InputField> inputFields = evaluator.getInputFields();
System.out.println("Input fields: " + inputFields);
// Printing primary result (y) field(s)
List<? extends TargetField> targetFields = evaluator.getTargetFields();
System.out.println("Target field(s): " + targetFields);
// Printing secondary result (eg. probability(y), decision(y)) fields
List<? extends OutputField> outputFields = evaluator.getOutputFields();
System.out.println("Output fields: " + outputFields);
// Iterating through columnar data (eg. a CSV file, an SQL result set)
while(true){
// Reading a record from the data source
Map<String, ?> inputRecord = readRecord();
if(inputRecord == null){
break;
}
Map<FieldName, FieldValue> arguments = new LinkedHashMap<>();
// Mapping the record field-by-field from data source schema to PMML schema
for(InputField inputField : inputFields){
FieldName inputName = inputField.getName();
Object rawValue = inputRecord.get(inputName.getValue());
// Transforming an arbitrary user-supplied value to a known-good PMML value
FieldValue inputValue = inputField.prepare(rawValue);
arguments.put(inputName, inputValue);
}
// Evaluating the model with known-good arguments
Map<FieldName, ?> results = evaluator.evaluate(arguments);
// Decoupling results from the JPMML-Evaluator runtime environment
Map<String, ?> resultRecord = EvaluatorUtil.decodeAll(results);
// Writing a record to the data sink
writeRecord(resultRecord);
}
// Making the model evaluator eligible for garbage collection
evaluator = null;
JPMML-Evaluator depends on the JPMML-Model library for PMML class model.
Loading a PMML schema version 3.X or 4.X document into an org.dmg.pmml.PMML
instance:
org.dmg.pmml.PMML pmml;
try(InputStream is = ...){
pmml = org.jpmml.model.PMMLUtil.unmarshal(is);
}
The newly loaded PMML
instance should tailored by applying appropriate org.dmg.pmml.Visitor
implementation classes to it:
org.jpmml.model.visitors.LocatorTransformer
. Transforms SAX Locator information to Java serializable representation. Recommended for development and testing environments.org.jpmml.model.visitors.LocatorNullifier
. Removes SAX Locator information. Recommended for production environments.org.jpmml.model.visitors.<Type>Interner
. Replaces all occurrences of the same PMML attribute value with the singleton attribute value.org.jpmml.evaluator.visitors.<Element>Optimizer
. Pre-parses a PMML element.org.jpmml.evaluator.visitors.<Element>Interner
. Replaces all occurrences of the same PMML element with the singleton element.
To facilitate their discovery and use, visitor classes have been grouped into visitor battery classes:
org.jpmml.model.visitors.AttributeInternerBattery
org.jpmml.model.visitors.AttributeOptimizerBattery
org.jpmml.model.visitors.ListFinalizerBattery
org.jpmml.evaluator.visitors.ElementInternerBattery
org.jpmml.evaluator.visitors.ElementOptimizerBattery
Creating and applying a custom visitor battery to reduce the memory consumption of a PMML
instance in production environment:
org.jpmml.model.VisitorBattery visitorBattery = new org.jpmml.model.VisitorBattery();
// Getting rid of SAX Locator information
visitorBattery.add(LocatorNullifier.class);
// Pre-parsing PMML elements
visitorBattery.addAll(new AttributeOptimizerBattery());
visitorBattery.addAll(new ElementOptimizerBattery());
// Getting rid of duplicate PMML attribute values and PMML elements
visitorBattery.addAll(new AttributeInternerBattery());
visitorBattery.addAll(new ElementInternerBattery());
// Freezing the final representation of PMML elements
visitorBattery.addAll(new ListFinalizerBattery());
visitorBattery.applyTo(pmml);
The PMML standard defines large number of model types.
The evaluation logic for each model type is encapsulated into a corresponding ModelEvaluator
subclass.
Even though ModelEvaluator
subclasses can be instantiated directly, the recommended approach is to follow the Builder design pattern as implemented by the ModelEvaluatorBuilder
builder class.
Creating and configuring a ModelEvaluatorBuilder
instance:
ModelEvaluatorBuilder modelEvaluatorBuilder = new ModelEvaluatorBuilder(pmml);
// Activate the generation of MathML prediction reports
//.setValueFactoryFactory(org.jpmml.evaluator.ReportingValueFactoryFactory.newInstance());
By default, the model evaluator builder selects the first scorable model from the PMML
instance, and builds a corresponding ModelEvaluator
instance.
However, in order to promote loose coupling, it is advisable to cast the result to a much simplified Evaluator
instance.
Building an Evaluator
instance:
Evaluator evaluator = (Evaluator)modelEvaluatorBuilder.build();
Model evaluator instances are fairly lightweight, which makes them cheap to create and destroy.
Nevertheless, long-running applications should maintain a one-to-one mapping between PMML
and Evaluator
instances for better performance.
Model evaluator classes follow functional programming principles and are completely thread safe.
The model evaluator can be queried for the list of input (ie. independent), target (ie. primary dependent) and output (ie. secondary dependent) field definitions, which provide information about field name, data type, operational type, value domain etc.
Querying and analyzing input fields:
List<? extends InputField> inputFields = evaluator.getInputFields();
for(InputField inputField : inputFields){
org.dmg.pmml.DataField pmmlDataField = (org.dmg.pmml.DataField)inputField.getField();
org.dmg.pmml.MiningField pmmlMiningField = inputField.getMiningField();
org.dmg.pmml.DataType dataType = inputField.getDataType();
org.dmg.pmml.OpType opType = inputField.getOpType();
switch(opType){
case CONTINUOUS:
com.google.common.collect.RangeSet<Double> validInputRanges = inputField.getContinuousDomain();
break;
case CATEGORICAL:
case ORDINAL:
List<?> validInputValues = inputField.getDiscreteDomain();
break;
default:
break;
}
}
Querying and analyzing target fields:
List<? extends TargetField> targetFields = evaluator.getTargetFields();
for(TargetField targetField : targetFields){
org.dmg.pmml.DataField pmmlDataField = targetField.getField();
org.dmg.pmml.MiningField pmmlMiningField = targetField.getMiningField(); // Could be null
org.dmg.pmml.Target pmmlTarget = targetField.getTarget(); // Could be null
org.dmg.pmml.DataType dataType = targetField.getDataType();
org.dmg.pmml.OpType opType = targetField.getOpType();
switch(opType){
case CONTINUOUS:
break;
case CATEGORICAL:
case ORDINAL:
List<String> categories = targetField.getCategories();
for(String category : categories){
Object validTargetValue = TypeUtil.parse(dataType, category);
}
break;
default:
break;
}
}
Querying and analyzing output fields:
List<? extends OutputField> outputFields = evaluator.getOutputFields();
for(OutputField outputField : outputFields){
org.dmg.pmml.OutputField pmmlOutputField = outputField.getOutputField();
org.dmg.pmml.DataType dataType = outputField.getDataType(); // Could be null
org.dmg.pmml.OpType opType = outputField.getOpType(); // Could be null
boolean finalResult = outputField.isFinalResult();
if(!finalResult){
continue;
}
}
A model may contain verification data, which is a small but representative set of data records (inputs plus expected outputs) for ensuring that the model evaluator is behaving correctly in this deployment configuration (JPMML-Evaluator version, Java/JVM version and vendor etc. variables). The model evaluator should be verified once, before putting it into actual use.
Performing the self-check:
evaluator.verify();
During scoring, the application code should iterate over data records (eg. rows of a table), and apply the following encode-evaluate-decode sequence of operations to each one of them.
The processing of the first data record will be significantly slower than the processing of all subsequent data records, because the model evaluator needs to lookup, validate and pre-parse model content. If the model contains verification data, then this warm-up cost is borne during the self-check.
Preparing the argument map:
Map<String, ?> inputDataRecord = ...;
Map<FieldName, FieldValue> arguments = new LinkedHashMap<>();
List<? extends InputField> inputFields = evaluator.getInputFields();
for(InputField inputField : inputFields){
FieldName inputName = inputField.getName();
Object rawValue = inputDataRecord.get(inputName.getValue());
// Transforming an arbitrary user-supplied value to a known-good PMML value
// The user-supplied value is passed through: 1) outlier treatment, 2) missing value treatment, 3) invalid value treatment and 4) type conversion
FieldValue inputValue = inputField.prepare(rawValue);
arguments.put(inputName, inputValue);
}
Performing the evaluation:
Map<FieldName, ?> results = evaluator.evaluate(arguments);
Extracting primary results from the result map:
List<? extends TargetField> targetFields = evaluator.getTargetFields();
for(TargetField targetField : targetFields){
FieldName targetName = targetField.getName();
Object targetValue = results.get(targetName);
}
The target value is either a Java primitive value (as a wrapper object) or a complex value as a Computable
instance.
A complex target value may expose additional information about the prediction by implementing appropriate ResultFeature
subinterfaces:
// Test for "entityId" result feature
if(targetValue instanceof HasEntityId){
HasEntityId hasEntityId = (HasEntityId)targetValue;
HasEntityRegistry<?> hasEntityRegistry = (HasEntityRegistry<?>)evaluator;
BiMap<String, ? extends Entity> entities = hasEntityRegistry.getEntityRegistry();
Entity winner = entities.get(hasEntityId.getEntityId());
}
// Test for "probability" result feature
if(targetValue instanceof HasProbability){
HasProbability hasProbability = (HasProbability)targetValue;
Set<String> categories = hasProbability.getCategories();
for(String category : categories){
Double categoryProbability = hasProbability.getProbability(category);
}
}
A complex target value may hold a reference to the model evaluator that created it. It is adisable to decode it to a Java primitive value (ie. decoupling from the JPMML-Evaluator runtime environment) as soon as all the additional information has been retrieved:
if(targetValue instanceof Computable){
Computable computable = (Computable)targetValue;
targetValue = computable.getResult();
}
Extracting secondary results from the result map:
List<? extends OutputField> outputFields = evaluator.getOutputFields();
for(OutputField outputField : outputFields){
FieldName outputName = outputField.getName();
Object outputValue = results.get(outputName);
}
The output value is always a Java primitive value (as a wrapper object).
Module pmml-evaluator-example
exemplifies the use of the JPMML-Evaluator library.
This module can be built using Apache Maven:
mvn clean install
The resulting uber-JAR file target/pmml-evaluator-example-executable-1.5-SNAPSHOT.jar
contains the following command-line applications:
org.jpmml.evaluator.EvaluationExample
(source).org.jpmml.evaluator.RecordCountingExample
(source).org.jpmml.evaluator.TestingExample
(source).
Evaluating model model.pmml
with data records from input.csv
. The predictions are stored to output.csv
:
java -cp target/pmml-evaluator-example-executable-1.5-SNAPSHOT.jar org.jpmml.evaluator.EvaluationExample --model model.pmml --input input.csv --output output.csv
Evaluating model model.pmml
with data records from input.csv
. The predictions are verified against data records from expected-output.csv
:
java -cp target/pmml-evaluator-example-executable-1.5-SNAPSHOT.jar org.jpmml.evaluator.TestingExample --model model.pmml --input input.csv --expected-output expected-output.csv
Enhancing model model.pmml
with verification data records from input_expected-output.csv
:
java -cp target/pmml-evaluator-example-executable-1.5-SNAPSHOT.jar org.jpmml.evaluator.EnhancementExample --model model.pmml --verification input_expected_output.csv
Getting help:
java -cp target/pmml-evaluator-example-executable-1.5-SNAPSHOT.jar <application class name> --help
Limited public support is available via the JPMML mailing list.
JPMML-Evaluator is dual-licensed under the GNU Affero General Public License (AGPL) version 3.0, and a commercial license.
JPMML-Evaluator is developed and maintained by Openscoring Ltd, Estonia.
Interested in using JPMML software in your application? Please contact [email protected]