Importing H2O MOJOs from H2O-3¶
When training algorithm using Sparkling Water API, Sparkling Water always produces H2OMOJOModel
. It is also possible
to import existing MOJO models into the Sparkling Water ecosystem from H2O-3. Such MOJO models then have the same scoring
capabilities as MOJO models trained via Sparkling Water API.
Note: Sparkling Water is backward compatible with MOJO versions produced by different H2O-3 versions.
One advantage of scoring the MOJO artifacts is that H2OContext
does not have to be created if we only want to
run predictions on MOJOs using Spark. It is important to mention that the format of prediction on MOJOs from
Driverless AI differs from predictions on H2O-3 MOJOs. The format of H2O-3 predictions is explained bellow.
Starting a Scoring Environment¶
First, we need to start a scoring environment for the desired language. There are two variants. We can use Sparkling Water prepared scripts which put required dependencies on the Spark classpath or we can use Spark directly and add the dependencies manually.
Scala
./bin/spark-shell --jars jars/sparkling-water-assembly-scoring_2.11-3.32.1.4-1-2.4-all.jar
If there is a need to train H2O-3/SW models at the same time when we score with existing MOJO models, use
jars/sparkling-water-assembly_2.11-3.32.1.4-1-2.4-all.jar
instead.
./bin/sparkling-shell
Python
./bin/pyspark --py-files py/h2o_pysparkling_scoring_2.4-3.32.1.4-1-2.4.zip
If there is a need to train H2O-3/SW models at the same time when we score with existing MOJO models, use
py/h2o_pysparkling_2.4-3.32.1.4-1-2.4.zip
instead.
./bin/pysparkling
At this point, we have a Spark interactive terminal where we can carry out predictions. If we don’t require an interactive environment,
we can deploy our scoring logic with ./bin/spark-submit
. The parameters will be the same as in the example above.
Loading and Usage of H2O-3 MOJO Model¶
H2O MOJOs can be imported to Sparkling Water from all data sources supported by Apache Spark such as a local file, S3 or HDFS and the semantics of the import is the same as in the Spark API.
When creating a MOJO specified by a relative path and HDFS is enabled, the method attempts to load the MOJO from the HDFS home directory of the current user. In case we are not running on a HDFS-enabled system, we create the mojo from a current working directory.
Scala
import ai.h2o.sparkling.ml.models._
val model = H2OMOJOModel.createFromMojo("prostate_mojo.zip")
Python
from pysparkling.ml import *
model = H2OMOJOModel.createFromMojo("prostate_mojo.zip")
R
library(rsparkling)
sc <- spark_connect(master = "local")
model <- H2OMOJOModel.createFromMojo("prostate_mojo.zip")
An absolute local path can also be used. To create a MOJO model from a locally available MOJO, call:
Scala
import ai.h2o.sparkling.ml.models._
val model = H2OMOJOModel.createFromMojo("/Users/peter/prostate_mojo.zip")
Python
from pysparkling.ml import *
model = H2OMOJOModel.createFromMojo("/Users/peter/prostate_mojo.zip")
R
library(rsparkling)
sc <- spark_connect(master = "local")
model <- H2OMOJOModel.createFromMojo("/Users/peter/prostate_mojo.zip")
Absolute paths on Hadoop can also be used. To create a MOJO model from a MOJO stored on HDFS, call:
Scala
import ai.h2o.sparkling.ml.models._
val model = H2OMOJOModel.createFromMojo("/user/peter/prostate_mojo.zip")
Python
from pysparkling.ml import *
model = H2OMOJOModel.createFromMojo("/user/peter/prostate_mojo.zip")
R
library(rsparkling)
sc <- spark_connect(master = "local")
model <- H2OMOJOModel.createFromMojo("/user/peter/prostate_mojo.zip")
The call loads the mojo file from the following location hdfs://{server}:{port}/user/peter/prostate_mojo.zip
, where {server}
and {port}
is automatically filled in by Spark.
We can also manually specify the type of data source we need to use, in that case, we need to provide the schema:
Scala
import ai.h2o.sparkling.ml.models._
// HDFS
val modelHDFS = H2OMOJOModel.createFromMojo("hdfs:///user/peter/prostate_mojo.zip")
// Local file
val modelLocal = H2OMOJOModel.createFromMojo("file:///Users/peter/prostate_mojo.zip")
Python
from pysparkling.ml import *
# HDFS
modelHDFS = H2OMOJOModel.createFromMojo("hdfs:///user/peter/prostate_mojo.zip")
# Local file
modelLocal = H2OMOJOModel.createFromMojo("file:///Users/peter/prostate_mojo.zip")
R
library(rsparkling)
sc <- spark_connect(master = "local")
# HDFS
modelHDFS <- H2OMOJOModel.createFromMojo("hdfs:///user/peter/prostate_mojo.zip")
# Local file
modelLocal <- H2OMOJOModel.createFromMojo("file:///Users/peter/prostate_mojo.zip")
The loaded model is an immutable instance, so it’s not possible to change the configuration of the model during its existence.
On the other hand, the model can be configured during its creation via H2OMOJOSettings
:
Scala
import ai.h2o.sparkling.ml.models._
val settings = H2OMOJOSettings(convertUnknownCategoricalLevelsToNa = true, convertInvalidNumbersToNa = true)
val model = H2OMOJOModel.createFromMojo("prostate_mojo.zip", settings)
Python
from pysparkling.ml import *
settings = H2OMOJOSettings(convertUnknownCategoricalLevelsToNa = True, convertInvalidNumbersToNa = True)
model = H2OMOJOModel.createFromMojo("prostate_mojo.zip", settings)
R
library(rsparkling)
sc <- spark_connect(master = "local")
settings <- H2OMOJOSettings(convertUnknownCategoricalLevelsToNa = TRUE, convertInvalidNumbersToNa = TRUE)
model <- H2OMOJOModel.createFromMojo("prostate_mojo.zip", settings)
To score the dataset using the loaded mojo, call:
Scala
model.transform(dataset)
Python
model.transform(dataset)
R
model$transform(dataset)
In Scala, the createFromMojo
method returns a mojo model instance cast as a base class H2OMOJOModel
. This class holds
only properties common for all mojo models across different Sparkling Water algorithms.
If a Scala user wants to get a property specific for a given MOJO model type, he/she must utilize casting or
call the createFromMojo
method on the specific MOJO model type.
import ai.h2o.sparkling.ml.models._
val specificModel = H2OGBMMOJOModel.createFromMojo("prostate_mojo.zip")
println(s"Ntrees: ${specificModel.getNTrees()}")
The list of specific MOJO models:
H2OXGBoostMOJOModel
H2OGBMMOJOModel
H2ODRFMOJOModel
H2OGLMMOJOModel
H2OGAMMOJOModel
H2ODeepLearningMOJOModel
H2OKMeansMOJOModel
H2OIsolationForestMOJOModel
H2OCoxPHMOJOModel
Exporting the loaded MOJO model using Sparkling Water¶
To export the MOJO model, call model.write.save(path)
. In case of Hadoop enabled system, the command by default
uses HDFS.
Importing the previously exported MOJO model from Sparkling Water¶
To import the MOJO model, call H2OMOJOModel.read.load(path)
. In case of Hadoop enabled system, the command by default
uses HDFS.
Accessing additional prediction details¶
After computing predictions, the prediction
column contains in case of classification problem the predicted label
and in case regression problem the predicted number. If we need to access more details for each prediction, see the content
of a detailed prediction column. By default, the column is named named detailed_prediction
. It could contain, for example,
predicted probabilities for each predicted label in case of classification problem, Shapley values, and other information.
Customizing the MOJO Settings¶
We can configure the output and format of predictions via the H2OMOJOSettings. The available options are
predictionCol
- Specifies the name of the generated prediction column. The default value is prediction.detailedPredictionCol
- Specifies the name of the generated detailed prediction column. The detailed prediction column, if enabled, contains additional details, such as probabilities, Shapley values etc. The default value is detailed_prediction.convertUnknownCategoricalLevelsToNa
- Enables or disables conversion of unseen categoricals to NAs. By default, it is disabled.convertInvalidNumbersToNa
- Enables or disables conversion of invalid numbers to NAs. By default, it is disabled.withContributions
- Enables or disables computing Shapley values. Shapley values are generated as a sub-column for the detailed prediction column.withLeafNodeAssignments
- When enabled, a user can obtain the leaf node assignments after the model training has finished. By default, it is disabled.withStageResults
- When enabled, a user can obtain the stage results for tree-based models. By default, it is disabled and also it’s not supported by XGBoost although it’s a tree-based algorithm.
Methods available on MOJO Model¶
Obtaining Domain Values¶
To obtain domain values of the trained model, we can run getDomainValues()
on the model. This call
returns a mapping from a column name to its domain in a form of an array.
Obtaining Model Category¶
The method getModelCategory
can be used to get the model category (such as binomial
, multinomial
etc).
Obtaining Feature Types¶
The method getFeatureTypes
returns a map/dictionary from a feature name to a corresponding feature type
[enum
(categorical), numeric
, string
, etc.]. These pieces helps to understand how individual columns of
the training dataset were treated during the model training.
Obtaining Feature Importances¶
The method getFeatureImportances
returns a data frame describing importance of each feature. The importance is expressed
by several numbers (Relative Importance, Scaled Importance and Percentage). H2O-3 documentation
describes how the numbers are calculated.
Obtaining Scoring History¶
The method getScoringHistory
returns a data frame describing how the model evolved during the training process according to
a certain training and validation metrics.
Obtaining Metrics¶
There are several methods to obtain metrics from the MOJO model. All return a map from the metric name to its double value.
getTrainingMetrics
- obtain training metricsgetValidationMetrics
- obtain validation metricsgetCrossValidationMetrics
- obtain cross validation metrics
We also have method getCurrentMetrics
which gets one of the metrics above based on the following algorithm:
If cross-validation was used, ie, setNfolds
was called and the value was higher than zero, this method returns cross-validation
metrics. If cross-validation was not used, but the validation frame was used, the method returns validation metrics. The validation
frame is used if setSplitRatio
was called with the value lower than one. If neither cross-validation nor validation frame
was used, this method returns the training metrics.
Obtaining Leaf Node Assignments¶
To obtain the leaf node assignments, please first make sure to set withLeafNodeAssignments
to true on your MOJO settings object. The leaf node assignments are now stored
in the ${detailedPredictionCol}.leafNodeAssignments
column on the dataset obtained from the prediction.
Please replace ${detailedPredictionCol}
with the actual value of your detailed prediction col. By default,
it is detailed_prediction
.
Obtaining Stage Probabilities¶
To obtain the stage results, please first make sure to set withStageResults
to true on your MOJO settings object.
The stage results for regression and anomaly detection problems are stored in the ${detailedPredictionCol}.stageResults
on the dataset obtained from the prediction. The stage results for classification (binomial, multinomial) problems
are stored under ${detailedPredictionCol}.stageProbabilities
Please replace ${detailedPredictionCol}
with the actual value of your detailed prediction col. By default, it is detailed_prediction
.
The stage results are an array of values, where a value at the position t is the prediction/probability combined from contributions of trees T1, T2, …, Tt. For t equal to a number of model trees, the value is the same as the final prediction/probability. The stage results (probabilities) for the classification problem are represented by a list of columns, where one column contains stage probabilities for a given prediction class.