Old Migration Guides - MLlib
The migration guide for the current Spark version is kept on the MLlib Guide main page.
From 1.5 to 1.6
There are no breaking API changes in the spark.mllib or spark.ml packages, but there are
deprecations and changes of behavior.
Deprecations:
- SPARK-11358:
In
spark.mllib.clustering.KMeans, therunsparameter has been deprecated. - SPARK-10592:
In
spark.ml.classification.LogisticRegressionModelandspark.ml.regression.LinearRegressionModel, theweightsfield has been deprecated in favor of the new namecoefficients. This helps disambiguate from instance (row) “weights” given to algorithms.
Changes of behavior:
- SPARK-7770:
spark.mllib.tree.GradientBoostedTrees:validationTolhas changed semantics in 1.6. Previously, it was a threshold for absolute change in error. Now, it resembles the behavior ofGradientDescent’sconvergenceTol: For large errors, it uses relative error (relative to the previous error); for small errors (< 0.01), it uses absolute error. - SPARK-11069:
spark.ml.feature.RegexTokenizer: Previously, it did not convert strings to lowercase before tokenizing. Now, it converts to lowercase by default, with an option not to. This matches the behavior of the simplerTokenizertransformer.
From 1.4 to 1.5
In the spark.mllib package, there are no breaking API changes but several behavior changes:
- SPARK-9005:
RegressionMetrics.explainedVariancereturns the average regression sum of squares. - SPARK-8600:
NaiveBayesModel.labelsbecome sorted. - SPARK-3382:
GradientDescenthas a default convergence tolerance1e-3, and hence iterations might end earlier than 1.4.
In the spark.ml package, there exists one breaking API change and one behavior change:
- SPARK-9268: Java’s varargs support is removed
from
Params.setDefaultdue to a Scala compiler bug. - SPARK-10097:
Evaluator.isLargerBetteris added to indicate metric ordering. Metrics like RMSE no longer flip signs as in 1.4.
From 1.3 to 1.4
In the spark.mllib package, there were several breaking changes, but all in DeveloperApi or Experimental APIs:
- Gradient-Boosted Trees
- (Breaking change) The signature of the
Loss.gradientmethod was changed. This is only an issues for users who wrote their own losses for GBTs. - (Breaking change) The
applyandcopymethods for the case classBoostingStrategyhave been changed because of a modification to the case class fields. This could be an issue for users who useBoostingStrategyto set GBT parameters.
- (Breaking change) The signature of the
- (Breaking change) The return value of
LDA.runhas changed. It now returns an abstract classLDAModelinstead of the concrete classDistributedLDAModel. The object of typeLDAModelcan still be cast to the appropriate concrete type, which depends on the optimization algorithm.
In the spark.ml package, several major API changes occurred, including:
Paramand other APIs for specifying parametersuidunique IDs for Pipeline components- Reorganization of certain classes
Since the spark.ml API was an alpha component in Spark 1.3, we do not list all changes here.
However, since 1.4 spark.ml is no longer an alpha component, we will provide details on any API
changes for future releases.
From 1.2 to 1.3
In the spark.mllib package, there were several breaking changes. The first change (in ALS) is the only one in a component not marked as Alpha or Experimental.
- (Breaking change) In
ALS, the extraneous methodsolveLeastSquareshas been removed. TheDeveloperApimethodanalyzeBlockswas also removed. - (Breaking change)
StandardScalerModelremains an Alpha component. In it, thevariancemethod has been replaced with thestdmethod. To compute the column variance values returned by the originalvariancemethod, simply square the standard deviation values returned bystd. - (Breaking change)
StreamingLinearRegressionWithSGDremains an Experimental component. In it, there were two changes:- The constructor taking arguments was removed in favor of a builder pattern using the default constructor plus parameter setter methods.
- Variable
modelis no longer public.
- (Breaking change)
DecisionTreeremains an Experimental component. In it and its associated classes, there were several changes:- In
DecisionTree, the deprecated class methodtrainhas been removed. (The object/statictrainmethods remain.) - In
Strategy, thecheckpointDirparameter has been removed. Checkpointing is still supported, but the checkpoint directory must be set before calling tree and tree ensemble training.
- In
PythonMLlibAPI(the interface between Scala/Java and Python for MLlib) was a public API but is now private, declaredprivate[python]. This was never meant for external use.- In linear regression (including Lasso and ridge regression), the squared loss is now divided by 2. So in order to produce the same result as in 1.2, the regularization parameter needs to be divided by 2 and the step size needs to be multiplied by 2.
In the spark.ml package, the main API changes are from Spark SQL. We list the most important changes here:
- The old SchemaRDD has been replaced with DataFrame with a somewhat modified API. All algorithms in
spark.mlwhich used to use SchemaRDD now use DataFrame. - In Spark 1.2, we used implicit conversions from
RDDs ofLabeledPointintoSchemaRDDs by callingimport sqlContext._wheresqlContextwas an instance ofSQLContext. These implicits have been moved, so we now callimport sqlContext.implicits._. - Java APIs for SQL have also changed accordingly. Please see the examples above and the Spark SQL Programming Guide for details.
Other changes were in LogisticRegression:
- The
scoreColoutput column (with default value “score”) was renamed to beprobabilityCol(with default value “probability”). The type was originallyDouble(for the probability of class 1.0), but it is nowVector(for the probability of each class, to support multiclass classification in the future). - In Spark 1.2,
LogisticRegressionModeldid not include an intercept. In Spark 1.3, it includes an intercept; however, it will always be 0.0 since it uses the default settings for spark.mllib.LogisticRegressionWithLBFGS. The option to use an intercept will be added in the future.
From 1.1 to 1.2
The only API changes in MLlib v1.2 are in
DecisionTree,
which continues to be an experimental API in MLlib 1.2:
-
(Breaking change) The Scala API for classification takes a named argument specifying the number of classes. In MLlib v1.1, this argument was called
numClassesin Python andnumClassesForClassificationin Scala. In MLlib v1.2, the names are both set tonumClasses. ThisnumClassesparameter is specified either viaStrategyor viaDecisionTreestatictrainClassifierandtrainRegressormethods. -
(Breaking change) The API for
Nodehas changed. This should generally not affect user code, unless the user manually constructs decision trees (instead of using thetrainClassifierortrainRegressormethods). The treeNodenow includes more information, including the probability of the predicted label (for classification). -
Printing methods’ output has changed. The
toString(Scala/Java) and__repr__(Python) methods used to print the full model; they now print a summary. For the full model, usetoDebugString.
Examples in the Spark distribution and examples in the Decision Trees Guide have been updated accordingly.
From 1.0 to 1.1
The only API changes in MLlib v1.1 are in
DecisionTree,
which continues to be an experimental API in MLlib 1.1:
-
(Breaking change) The meaning of tree depth has been changed by 1 in order to match the implementations of trees in scikit-learn and in rpart. In MLlib v1.0, a depth-1 tree had 1 leaf node, and a depth-2 tree had 1 root node and 2 leaf nodes. In MLlib v1.1, a depth-0 tree has 1 leaf node, and a depth-1 tree has 1 root node and 2 leaf nodes. This depth is specified by the
maxDepthparameter inStrategyor viaDecisionTreestatictrainClassifierandtrainRegressormethods. -
(Non-breaking change) We recommend using the newly added
trainClassifierandtrainRegressormethods to build aDecisionTree, rather than using the old parameter classStrategy. These new training methods explicitly separate classification and regression, and they replace specialized parameter types with simpleStringtypes.
Examples of the new, recommended trainClassifier and trainRegressor are given in the
Decision Trees Guide.
From 0.9 to 1.0
In MLlib v1.0, we support both dense and sparse input in a unified way, which introduces a few breaking changes. If your data is sparse, please store it in a sparse format instead of dense to take advantage of sparsity in both storage and computation. Details are described below.
