lindong28 commented on a change in pull request #70: URL: https://github.com/apache/flink-ml/pull/70#discussion_r833316743
########## File path: flink-ml-lib/src/main/java/org/apache/flink/ml/clustering/kmeans/OnlineKMeans.java ########## @@ -0,0 +1,562 @@ +/* + * Licensed to the Apache Software Foundation (ASF) under one + * or more contributor license agreements. See the NOTICE file + * distributed with this work for additional information + * regarding copyright ownership. The ASF licenses this file + * to you 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. + */ + +package org.apache.flink.ml.clustering.kmeans; + +import org.apache.flink.api.common.functions.AggregateFunction; +import org.apache.flink.api.common.functions.FlatMapFunction; +import org.apache.flink.api.common.functions.MapFunction; +import org.apache.flink.api.common.state.ListState; +import org.apache.flink.api.common.state.ListStateDescriptor; +import org.apache.flink.api.common.typeinfo.BasicTypeInfo; +import org.apache.flink.api.common.typeinfo.TypeInformation; +import org.apache.flink.api.java.tuple.Tuple2; +import org.apache.flink.api.java.typeutils.ObjectArrayTypeInfo; +import org.apache.flink.api.java.typeutils.TupleTypeInfo; +import org.apache.flink.iteration.DataStreamList; +import org.apache.flink.iteration.IterationBody; +import org.apache.flink.iteration.IterationBodyResult; +import org.apache.flink.iteration.Iterations; +import org.apache.flink.iteration.operator.OperatorStateUtils; +import org.apache.flink.ml.api.Estimator; +import org.apache.flink.ml.common.distance.DistanceMeasure; +import org.apache.flink.ml.linalg.BLAS; +import org.apache.flink.ml.linalg.DenseVector; +import org.apache.flink.ml.linalg.Vectors; +import org.apache.flink.ml.linalg.typeinfo.DenseVectorTypeInfo; +import org.apache.flink.ml.param.Param; +import org.apache.flink.ml.util.ParamUtils; +import org.apache.flink.ml.util.ReadWriteUtils; +import org.apache.flink.runtime.state.StateInitializationContext; +import org.apache.flink.streaming.api.datastream.DataStream; +import org.apache.flink.streaming.api.environment.StreamExecutionEnvironment; +import org.apache.flink.streaming.api.operators.AbstractStreamOperator; +import org.apache.flink.streaming.api.operators.TwoInputStreamOperator; +import org.apache.flink.streaming.runtime.streamrecord.StreamRecord; +import org.apache.flink.table.api.Table; +import org.apache.flink.table.api.bridge.java.StreamTableEnvironment; +import org.apache.flink.table.api.bridge.java.internal.StreamTableEnvironmentImpl; +import org.apache.flink.table.api.internal.TableImpl; +import org.apache.flink.types.Row; +import org.apache.flink.util.Collector; +import org.apache.flink.util.Preconditions; + +import org.apache.commons.collections.IteratorUtils; +import org.apache.commons.lang3.ArrayUtils; + +import java.io.IOException; +import java.nio.file.Files; +import java.nio.file.Path; +import java.nio.file.Paths; +import java.util.ArrayList; +import java.util.Arrays; +import java.util.Collections; +import java.util.HashMap; +import java.util.List; +import java.util.Map; +import java.util.Objects; +import java.util.Random; + +/** + * OnlineKMeans extends the function of {@link KMeans}, supporting to train a K-Means model + * continuously according to an unbounded stream of train data. + * + * <p>OnlineKMeans makes updates with the "mini-batch" KMeans rule, generalized to incorporate + * forgetfulness (i.e. decay). After the centroids estimated on the current batch are acquired, + * OnlineKMeans computes the new centroids from the weighted average between the original and the + * estimated centroids. The weight of the estimated centroids is the number of points assigned to + * them. The weight of the original centroids is also the number of points, but additionally + * multiplying with the decay factor. + * + * <p>The decay factor scales the contribution of the clusters as estimated thus far. If decay + * factor is 1, all batches are weighted equally. If decay factor is 0, new centroids are determined + * entirely by recent data. Lower values correspond to more forgetting. + */ +public class OnlineKMeans + implements Estimator<OnlineKMeans, OnlineKMeansModel>, OnlineKMeansParams<OnlineKMeans> { + private final Map<Param<?>, Object> paramMap = new HashMap<>(); + private Table initModelDataTable; + + public OnlineKMeans() { + ParamUtils.initializeMapWithDefaultValues(paramMap, this); + } + + public OnlineKMeans(Table initModelDataTable) { + this.initModelDataTable = initModelDataTable; + ParamUtils.initializeMapWithDefaultValues(paramMap, this); + setInitMode("direct"); + } + + @Override + public OnlineKMeansModel fit(Table... inputs) { + Preconditions.checkArgument(inputs.length == 1); + + StreamTableEnvironment tEnv = + (StreamTableEnvironment) ((TableImpl) inputs[0]).getTableEnvironment(); + StreamExecutionEnvironment env = ((StreamTableEnvironmentImpl) tEnv).execEnv(); + + DataStream<DenseVector> points = + tEnv.toDataStream(inputs[0]).map(new FeaturesExtractor(getFeaturesCol())); + + DataStream<KMeansModelData> initModelDataStream; + if (getInitMode().equals("random")) { + Preconditions.checkState(initModelDataTable == null); + initModelDataStream = createRandomCentroids(env, getDim(), getK(), getSeed()); + } else { + initModelDataStream = KMeansModelData.getModelDataStream(initModelDataTable); + } + DataStream<Tuple2<KMeansModelData, DenseVector>> initModelDataWithWeightsStream = + initModelDataStream.map(new InitWeightAssigner(getInitWeights())); + initModelDataWithWeightsStream.getTransformation().setParallelism(1); + + IterationBody body = + new OnlineKMeansIterationBody( + DistanceMeasure.getInstance(getDistanceMeasure()), + getDecayFactor(), + getGlobalBatchSize(), + getK(), + getDim()); + + DataStream<KMeansModelData> finalModelDataStream = + Iterations.iterateUnboundedStreams( + DataStreamList.of(initModelDataWithWeightsStream), + DataStreamList.of(points), + body) + .get(0); + + Table finalModelDataTable = tEnv.fromDataStream(finalModelDataStream); + OnlineKMeansModel model = new OnlineKMeansModel().setModelData(finalModelDataTable); + ReadWriteUtils.updateExistingParams(model, paramMap); + return model; + } + + private static class InitWeightAssigner + implements MapFunction<KMeansModelData, Tuple2<KMeansModelData, DenseVector>> { + private final double[] initWeights; + + private InitWeightAssigner(Double[] initWeights) { + this.initWeights = ArrayUtils.toPrimitive(initWeights); + } + + @Override + public Tuple2<KMeansModelData, DenseVector> map(KMeansModelData modelData) + throws Exception { + return Tuple2.of(modelData, Vectors.dense(initWeights)); + } + } + + @Override + public void save(String path) throws IOException { + if (initModelDataTable != null) { + ReadWriteUtils.saveModelData( + KMeansModelData.getModelDataStream(initModelDataTable), + path, + new KMeansModelData.ModelDataEncoder()); + } + + ReadWriteUtils.saveMetadata(this, path); + } + + public static OnlineKMeans load(StreamExecutionEnvironment env, String path) + throws IOException { + OnlineKMeans kMeans = ReadWriteUtils.loadStageParam(path); + + Path initModelDataPath = Paths.get(path, "data"); + if (Files.exists(initModelDataPath)) { + StreamTableEnvironment tEnv = StreamTableEnvironment.create(env); + + DataStream<KMeansModelData> initModelDataStream = + ReadWriteUtils.loadModelData(env, path, new KMeansModelData.ModelDataDecoder()); + + kMeans.initModelDataTable = tEnv.fromDataStream(initModelDataStream); + kMeans.setInitMode("direct"); + } + + return kMeans; + } + + @Override + public Map<Param<?>, Object> getParamMap() { + return paramMap; + } + + private static class OnlineKMeansIterationBody implements IterationBody { + private final DistanceMeasure distanceMeasure; + private final double decayFactor; + private final int batchSize; + private final int k; + private final int dim; + + public OnlineKMeansIterationBody( + DistanceMeasure distanceMeasure, + double decayFactor, + int batchSize, + int k, + int dim) { + this.distanceMeasure = distanceMeasure; + this.decayFactor = decayFactor; + this.batchSize = batchSize; + this.k = k; + this.dim = dim; + } + + @Override + public IterationBodyResult process( + DataStreamList variableStreams, DataStreamList dataStreams) { + DataStream<Tuple2<KMeansModelData, DenseVector>> modelDataWithWeights = + variableStreams.get(0); + DataStream<DenseVector> points = dataStreams.get(0); + + int parallelism = points.getParallelism(); + + DataStream<Tuple2<KMeansModelData, DenseVector>> newModelDataWithWeights = + points.countWindowAll(batchSize) + .aggregate(new MiniBatchCreator()) + .flatMap(new MiniBatchDistributor(parallelism)) + .rebalance() + .connect(modelDataWithWeights.broadcast()) + .transform( + "ModelDataPartialUpdater", + new TupleTypeInfo<>( + TypeInformation.of(KMeansModelData.class), + DenseVectorTypeInfo.INSTANCE), + new ModelDataPartialUpdater(distanceMeasure, k)) + .setParallelism(parallelism) + .connect(modelDataWithWeights.broadcast()) + .transform( + "ModelDataGlobalUpdater", + new TupleTypeInfo<>( + TypeInformation.of(KMeansModelData.class), + DenseVectorTypeInfo.INSTANCE), + new ModelDataGlobalUpdater(k, dim, parallelism, decayFactor)) Review comment: After thinking about this more, I think we can actually change the algorithm used in `ModelDataLocalUpdater` and `ModelDataGlobalUpdater ` in such a way that `ModelDataGlobalUpdater` only needs to read from `ModelDataLocalUpdater`'s output and still calculate the right result. We might need to change the type of output emitted by `ModelDataLocalUpdater` . There is the idea. Currently `ModelDataGlobalUpdater` calculates the weight for the first centroid as `weight_from_last_iteration + sum_of_weights_from_local_updater`. We can change `ModelDataLocalUpdater` to emit `weight_from_last_iteration / parallelism + weights_from_local_batch`. Then `ModelDataGlobalUpdater` can derive the weight for the first centroid as `sum_of_outputs_from_local_updater`, which only depends on the output from `ModelDataLocalUpdater`. This approach introduces more complexity in the operator. But it could make the Flink job simpler and more performant. -- This is an automated message from the Apache Git Service. To respond to the message, please log on to GitHub and use the URL above to go to the specific comment. To unsubscribe, e-mail: [email protected] For queries about this service, please contact Infrastructure at: [email protected]
