Github user danielblazevski commented on a diff in the pull request: https://github.com/apache/flink/pull/1220#discussion_r47166211 --- Diff: flink-staging/flink-ml/src/main/scala/org/apache/flink/ml/nn/QuadTree.scala --- @@ -0,0 +1,340 @@ +/* + * 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.nn.util + +import org.apache.flink.ml.math.{Breeze, Vector} +import Breeze._ + +import org.apache.flink.ml.metrics.distances.{SquaredEuclideanDistanceMetric, +EuclideanDistanceMetric, DistanceMetric} + +import scala.collection.mutable.ListBuffer +import scala.collection.mutable.PriorityQueue + +/** + * n-dimensional QuadTree data structure; partitions + * spatial data for faster queries (e.g. KNN query) + * The skeleton of the data structure was initially + * based off of the 2D Quadtree found here: + * http://www.cs.trinity.edu/~mlewis/CSCI1321-F11/Code/src/util/Quadtree.scala + * + * Many additional methods were added to the class both for + * efficient KNN queries and generalizing to n-dim. + * + * @param minVec vector of the corner of the bounding box with smallest coordinates + * @param maxVec vector of the corner of the bounding box with smallest coordinates + * @param distMetric metric, must be Euclidean or squareEuclidean + * @param maxPerBox threshold for number of points in each box before slitting a box + */ +class QuadTree(minVec: Vector, maxVec: Vector, distMetric: DistanceMetric, maxPerBox: Int){ + + class Node(center: Vector, width: Vector, var children: Seq[Node]) { + + val nodeElements = new ListBuffer[Vector] + + /** for testing purposes only; used in QuadTreeSuite.scala + * + * @return center and width of the box + */ + def getCenterWidth(): (Vector, Vector) = { + (center, width) + } + + def contains(queryPoint: Vector): Boolean = { + overlap(queryPoint, 0.0) + } + + /** Tests if queryPoint is within a radius of the node + * + * @param queryPoint + * @param radius + * @return + */ + def overlap(queryPoint: Vector, radius: Double): Boolean = { + var count = 0 + for (i <- 0 to queryPoint.size - 1) { + if (queryPoint(i) - radius < center(i) + width(i) / 2 && + queryPoint(i) + radius > center(i) - width(i) / 2) { + count += 1 + } + } + + if (count == queryPoint.size) { + true + } else { + false + } + } + + /** Tests if queryPoint is near a node + * + * @param queryPoint + * @param radius + * @return + */ + def isNear(queryPoint: Vector, radius: Double): Boolean = { + if (minDist(queryPoint) < radius) { + true + } else { + false + } + } + + /** + * used in error handling when computing minDist to make sure + * distMetric is Euclidean or SquaredEuclidean + * @param message + */ + case class metricException(message: String) extends Exception(message) + + /** + * minDist is defined so that every point in the box + * has distance to queryPoint greater than minDist + * (minDist adopted from "Nearest Neighbors Queries" by N. Roussopoulos et al.) + * + * @param queryPoint + * @return + */ + + def minDist(queryPoint: Vector): Double = { + var minDist = 0.0 + for (i <- 0 to queryPoint.size - 1) { + if (queryPoint(i) < center(i) - width(i) / 2) { + minDist += math.pow(queryPoint(i) - center(i) + width(i) / 2, 2) + } else if (queryPoint(i) > center(i) + width(i) / 2) { + minDist += math.pow(queryPoint(i) - center(i) - width(i) / 2, 2) + } + } + + if (distMetric.isInstanceOf[SquaredEuclideanDistanceMetric]) { + minDist + } else if (distMetric.isInstanceOf[EuclideanDistanceMetric]) { + math.sqrt(minDist) + } else{ + throw metricException(s" Error: metric must be Euclidean or SquaredEuclidean!") + } + } + + /** + * Finds which child queryPoint lies in. node.children is a Seq[Node], and + * whichChild finds the appropriate index of that Seq. + * @param queryPoint + * @return + */ + def whichChild(queryPoint: Vector): Int = { + var count = 0 + for (i <- 0 to queryPoint.size - 1) { + if (queryPoint(i) > center(i)) { + count += Math.pow(2, queryPoint.size -1 - i).toInt + } + } + count + } + + def makeChildren() { + val centerClone = center.copy + val cPart = partitionBox(centerClone, width) + val mappedWidth = 0.5*width.asBreeze + children = cPart.map(p => new Node(p, mappedWidth.fromBreeze, null)) + + } + + /** + * Recursive function that partitions a n-dim box by taking the (n-1) dimensional + * plane through the center of the box keeping the n-th coordinate fixed, + * then shifting it in the n-th direction up and down + * and recursively applying partitionBox to the two shifted (n-1) dimensional planes. + * + * @param center the center of the box + * @param width a vector of lengths of each dimension of the box + * @return + */ + def partitionBox(center: Vector, width: Vector): Seq[Vector] = { + + def partitionHelper(box: Seq[Vector], dim: Int): Seq[Vector] = { + if (dim >= width.size) { + box + } else { + val newBox = box.flatMap { + vector => + val (up, down) = (vector.copy, vector) + up.update(dim, up(dim) - width(dim) / 4) + down.update(dim, down(dim) + width(dim) / 4) + + Seq(up,down) + } + partitionHelper(newBox, dim + 1) + } + } + partitionHelper(Seq(center), 0) + } + } + + + val root = new Node( ((minVec.asBreeze + maxVec.asBreeze)*0.5).fromBreeze, + (maxVec.asBreeze - minVec.asBreeze).fromBreeze, null) + + /** + * Simple printing of tree for testing/debugging + */ + def printTree(): Unit = { + printTreeRecur(root) + } + + def printTreeRecur(node: Node){ + if(node.children != null) { + for (c <- node.children){ + printTreeRecur(c) + } + }else{ + println("printing tree: n.nodeElements " + node.nodeElements) + } + } + + /** + * Recursively adds an object to the tree + * @param queryPoint + */ + def insert(queryPoint: Vector){ + insertRecur(queryPoint,root) + } + + private def insertRecur(queryPoint: Vector,node: Node) { + if (node.children == null) { + if (node.nodeElements.length < maxPerBox ) { + node.nodeElements += queryPoint + } else{ + node.makeChildren() + for (o <- node.nodeElements){ + insertRecur(o, node.children(node.whichChild(o))) + } + node.nodeElements.clear() + insertRecur(queryPoint, node.children(node.whichChild(queryPoint))) + } + } else{ --- End diff -- done
--- If your project is set up for it, you can reply to this email and have your reply appear on GitHub as well. If your project does not have this feature enabled and wishes so, or if the feature is enabled but not working, please contact infrastructure at infrastruct...@apache.org or file a JIRA ticket with INFRA. ---