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/*
*
* Licensed to the Apache Software Foundation (ASF) under one
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* 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.hadoop.hbase.util;
import java.util.Arrays;
import java.util.Deque;
import java.util.LinkedList;
import org.apache.hadoop.hbase.classification.InterfaceAudience;
/**
* Computes the optimal (minimal cost) assignment of jobs to workers (or other
* analogous) concepts given a cost matrix of each pair of job and worker, using
* the algorithm by James Munkres in "Algorithms for the Assignment and
* Transportation Problems", with additional optimizations as described by Jin
* Kue Wong in "A New Implementation of an Algorithm for the Optimal Assignment
* Problem: An Improved Version of Munkres' Algorithm". The algorithm runs in
* O(n^3) time and need O(n^2) auxiliary space where n is the number of jobs or
* workers, whichever is greater.
*/
@InterfaceAudience.Private
public class MunkresAssignment {
// The original algorithm by Munkres uses the terms STAR and PRIME to denote
// different states of zero values in the cost matrix. These values are
// represented as byte constants instead of enums to save space in the mask
// matrix by a factor of 4n^2 where n is the size of the problem.
private static final byte NONE = 0;
private static final byte STAR = 1;
private static final byte PRIME = 2;
// The algorithm requires that the number of column is at least as great as
// the number of rows. If that is not the case, then the cost matrix should
// be transposed before computation, and the solution matrix transposed before
// returning to the caller.
private final boolean transposed;
// The number of rows of internal matrices.
private final int rows;
// The number of columns of internal matrices.
private final int cols;
// The cost matrix, the cost of assigning each row index to column index.
private float[][] cost;
// Mask of zero cost assignment states.
private byte[][] mask;
// Covering some rows of the cost matrix.
private boolean[] rowsCovered;
// Covering some columns of the cost matrix.
private boolean[] colsCovered;
// The alternating path between starred zeroes and primed zeroes
private Deque> path;
// The solution, marking which rows should be assigned to which columns. The
// positions of elements in this array correspond to the rows of the cost
// matrix, and the value of each element correspond to the columns of the cost
// matrix, i.e. assignments[i] = j indicates that row i should be assigned to
// column j.
private int[] assignments;
// Improvements described by Jin Kue Wong cache the least value in each row,
// as well as the column index of the least value in each row, and the pending
// adjustments to each row and each column.
private float[] leastInRow;
private int[] leastInRowIndex;
private float[] rowAdjust;
private float[] colAdjust;
/**
* Construct a new problem instance with the specified cost matrix. The cost
* matrix must be rectangular, though not necessarily square. If one dimension
* is greater than the other, some elements in the greater dimension will not
* be assigned. The input cost matrix will not be modified.
* @param costMatrix
*/
public MunkresAssignment(float[][] costMatrix) {
// The algorithm assumes that the number of columns is at least as great as
// the number of rows. If this is not the case of the input matrix, then
// all internal structures must be transposed relative to the input.
this.transposed = costMatrix.length > costMatrix[0].length;
if (this.transposed) {
this.rows = costMatrix[0].length;
this.cols = costMatrix.length;
} else {
this.rows = costMatrix.length;
this.cols = costMatrix[0].length;
}
cost = new float[rows][cols];
mask = new byte[rows][cols];
rowsCovered = new boolean[rows];
colsCovered = new boolean[cols];
path = new LinkedList>();
leastInRow = new float[rows];
leastInRowIndex = new int[rows];
rowAdjust = new float[rows];
colAdjust = new float[cols];
assignments = null;
// Copy cost matrix.
if (transposed) {
for (int r = 0; r < rows; r++) {
for (int c = 0; c < cols; c++) {
cost[r][c] = costMatrix[c][r];
}
}
} else {
for (int r = 0; r < rows; r++) {
System.arraycopy(costMatrix[r], 0, cost[r], 0, cols);
}
}
// Costs must be finite otherwise the matrix can get into a bad state where
// no progress can be made. If your use case depends on a distinction
// between costs of MAX_VALUE and POSITIVE_INFINITY, you're doing it wrong.
for (int r = 0; r < rows; r++) {
for (int c = 0; c < cols; c++) {
if (cost[r][c] == Float.POSITIVE_INFINITY) {
cost[r][c] = Float.MAX_VALUE;
}
}
}
}
/**
* Get the optimal assignments. The returned array will have the same number
* of elements as the number of elements as the number of rows in the input
* cost matrix. Each element will indicate which column should be assigned to
* that row or -1 if no column should be assigned, i.e. if result[i] = j then
* row i should be assigned to column j. Subsequent invocations of this method
* will simply return the same object without additional computation.
* @return an array with the optimal assignments
*/
public int[] solve() {
// If this assignment problem has already been solved, return the known
// solution
if (assignments != null) {
return assignments;
}
preliminaries();
// Find the optimal assignments.
while (!testIsDone()) {
while (!stepOne()) {
stepThree();
}
stepTwo();
}
// Extract the assignments from the mask matrix.
if (transposed) {
assignments = new int[cols];
outer:
for (int c = 0; c < cols; c++) {
for (int r = 0; r < rows; r++) {
if (mask[r][c] == STAR) {
assignments[c] = r;
continue outer;
}
}
// There is no assignment for this row of the input/output.
assignments[c] = -1;
}
} else {
assignments = new int[rows];
outer:
for (int r = 0; r < rows; r++) {
for (int c = 0; c < cols; c++) {
if (mask[r][c] == STAR) {
assignments[r] = c;
continue outer;
}
}
}
}
// Once the solution has been computed, there is no need to keep any of the
// other internal structures. Clear all unnecessary internal references so
// the garbage collector may reclaim that memory.
cost = null;
mask = null;
rowsCovered = null;
colsCovered = null;
path = null;
leastInRow = null;
leastInRowIndex = null;
rowAdjust = null;
colAdjust = null;
return assignments;
}
/**
* Corresponds to the "preliminaries" step of the original algorithm.
* Guarantees that the matrix is an equivalent non-negative matrix with at
* least one zero in each row.
*/
private void preliminaries() {
for (int r = 0; r < rows; r++) {
// Find the minimum cost of each row.
float min = Float.POSITIVE_INFINITY;
for (int c = 0; c < cols; c++) {
min = Math.min(min, cost[r][c]);
}
// Subtract that minimum cost from each element in the row.
for (int c = 0; c < cols; c++) {
cost[r][c] -= min;
// If the element is now zero and there are no zeroes in the same row
// or column which are already starred, then star this one. There
// must be at least one zero because of subtracting the min cost.
if (cost[r][c] == 0 && !rowsCovered[r] && !colsCovered[c]) {
mask[r][c] = STAR;
// Cover this row and column so that no other zeroes in them can be
// starred.
rowsCovered[r] = true;
colsCovered[c] = true;
}
}
}
// Clear the covered rows and columns.
Arrays.fill(rowsCovered, false);
Arrays.fill(colsCovered, false);
}
/**
* Test whether the algorithm is done, i.e. we have the optimal assignment.
* This occurs when there is exactly one starred zero in each row.
* @return true if the algorithm is done
*/
private boolean testIsDone() {
// Cover all columns containing a starred zero. There can be at most one
// starred zero per column. Therefore, a covered column has an optimal
// assignment.
for (int r = 0; r < rows; r++) {
for (int c = 0; c < cols; c++) {
if (mask[r][c] == STAR) {
colsCovered[c] = true;
}
}
}
// Count the total number of covered columns.
int coveredCols = 0;
for (int c = 0; c < cols; c++) {
coveredCols += colsCovered[c] ? 1 : 0;
}
// Apply an row and column adjustments that are pending.
for (int r = 0; r < rows; r++) {
for (int c = 0; c < cols; c++) {
cost[r][c] += rowAdjust[r];
cost[r][c] += colAdjust[c];
}
}
// Clear the pending row and column adjustments.
Arrays.fill(rowAdjust, 0);
Arrays.fill(colAdjust, 0);
// The covers on columns and rows may have been reset, recompute the least
// value for each row.
for (int r = 0; r < rows; r++) {
leastInRow[r] = Float.POSITIVE_INFINITY;
for (int c = 0; c < cols; c++) {
if (!rowsCovered[r] && !colsCovered[c] && cost[r][c] < leastInRow[r]) {
leastInRow[r] = cost[r][c];
leastInRowIndex[r] = c;
}
}
}
// If all columns are covered, then we are done. Since there may be more
// columns than rows, we are also done if the number of covered columns is
// at least as great as the number of rows.
return (coveredCols == cols || coveredCols >= rows);
}
/**
* Corresponds to step 1 of the original algorithm.
* @return false if all zeroes are covered
*/
private boolean stepOne() {
while (true) {
Pair zero = findUncoveredZero();
if (zero == null) {
// No uncovered zeroes, need to manipulate the cost matrix in step
// three.
return false;
} else {
// Prime the uncovered zero and find a starred zero in the same row.
mask[zero.getFirst()][zero.getSecond()] = PRIME;
Pair star = starInRow(zero.getFirst());
if (star != null) {
// Cover the row with both the newly primed zero and the starred zero.
// Since this is the only place where zeroes are primed, and we cover
// it here, and rows are only uncovered when primes are erased, then
// there can be at most one primed uncovered zero.
rowsCovered[star.getFirst()] = true;
colsCovered[star.getSecond()] = false;
updateMin(star.getFirst(), star.getSecond());
} else {
// Will go to step two after, where a path will be constructed,
// starting from the uncovered primed zero (there is only one). Since
// we have already found it, save it as the first node in the path.
path.clear();
path.offerLast(new Pair(zero.getFirst(),
zero.getSecond()));
return true;
}
}
}
}
/**
* Corresponds to step 2 of the original algorithm.
*/
private void stepTwo() {
// Construct a path of alternating starred zeroes and primed zeroes, where
// each starred zero is in the same column as the previous primed zero, and
// each primed zero is in the same row as the previous starred zero. The
// path will always end in a primed zero.
while (true) {
Pair star = starInCol(path.getLast().getSecond());
if (star != null) {
path.offerLast(star);
} else {
break;
}
Pair prime = primeInRow(path.getLast().getFirst());
path.offerLast(prime);
}
// Augment path - unmask all starred zeroes and star all primed zeroes. All
// nodes in the path will be either starred or primed zeroes. The set of
// starred zeroes is independent and now one larger than before.
for (Pair p : path) {
if (mask[p.getFirst()][p.getSecond()] == STAR) {
mask[p.getFirst()][p.getSecond()] = NONE;
} else {
mask[p.getFirst()][p.getSecond()] = STAR;
}
}
// Clear all covers from rows and columns.
Arrays.fill(rowsCovered, false);
Arrays.fill(colsCovered, false);
// Remove the prime mask from all primed zeroes.
for (int r = 0; r < rows; r++) {
for (int c = 0; c < cols; c++) {
if (mask[r][c] == PRIME) {
mask[r][c] = NONE;
}
}
}
}
/**
* Corresponds to step 3 of the original algorithm.
*/
private void stepThree() {
// Find the minimum uncovered cost.
float min = leastInRow[0];
for (int r = 1; r < rows; r++) {
if (leastInRow[r] < min) {
min = leastInRow[r];
}
}
// Add the minimum cost to each of the costs in a covered row, or subtract
// the minimum cost from each of the costs in an uncovered column. As an
// optimization, do not actually modify the cost matrix yet, but track the
// adjustments that need to be made to each row and column.
for (int r = 0; r < rows; r++) {
if (rowsCovered[r]) {
rowAdjust[r] += min;
}
}
for (int c = 0; c < cols; c++) {
if (!colsCovered[c]) {
colAdjust[c] -= min;
}
}
// Since the cost matrix is not being updated yet, the minimum uncovered
// cost per row must be updated.
for (int r = 0; r < rows; r++) {
if (!colsCovered[leastInRowIndex[r]]) {
// The least value in this row was in an uncovered column, meaning that
// it would have had the minimum value subtracted from it, and therefore
// will still be the minimum value in that row.
leastInRow[r] -= min;
} else {
// The least value in this row was in a covered column and would not
// have had the minimum value subtracted from it, so the minimum value
// could be some in another column.
for (int c = 0; c < cols; c++) {
if (cost[r][c] + colAdjust[c] + rowAdjust[r] < leastInRow[r]) {
leastInRow[r] = cost[r][c] + colAdjust[c] + rowAdjust[r];
leastInRowIndex[r] = c;
}
}
}
}
}
/**
* Find a zero cost assignment which is not covered. If there are no zero cost
* assignments which are uncovered, then null will be returned.
* @return pair of row and column indices of an uncovered zero or null
*/
private Pair findUncoveredZero() {
for (int r = 0; r < rows; r++) {
if (leastInRow[r] == 0) {
return new Pair(r, leastInRowIndex[r]);
}
}
return null;
}
/**
* A specified row has become covered, and a specified column has become
* uncovered. The least value per row may need to be updated.
* @param row the index of the row which was just covered
* @param col the index of the column which was just uncovered
*/
private void updateMin(int row, int col) {
// If the row is covered we want to ignore it as far as least values go.
leastInRow[row] = Float.POSITIVE_INFINITY;
for (int r = 0; r < rows; r++) {
// Since the column has only just been uncovered, it could not have any
// pending adjustments. Only covered rows can have pending adjustments
// and covered costs do not count toward row minimums. Therefore, we do
// not need to consider rowAdjust[r] or colAdjust[col].
if (!rowsCovered[r] && cost[r][col] < leastInRow[r]) {
leastInRow[r] = cost[r][col];
leastInRowIndex[r] = col;
}
}
}
/**
* Find a starred zero in a specified row. If there are no starred zeroes in
* the specified row, then null will be returned.
* @param r the index of the row to be searched
* @return pair of row and column indices of starred zero or null
*/
private Pair starInRow(int r) {
for (int c = 0; c < cols; c++) {
if (mask[r][c] == STAR) {
return new Pair(r, c);
}
}
return null;
}
/**
* Find a starred zero in the specified column. If there are no starred zeroes
* in the specified row, then null will be returned.
* @param c the index of the column to be searched
* @return pair of row and column indices of starred zero or null
*/
private Pair starInCol(int c) {
for (int r = 0; r < rows; r++) {
if (mask[r][c] == STAR) {
return new Pair(r, c);
}
}
return null;
}
/**
* Find a primed zero in the specified row. If there are no primed zeroes in
* the specified row, then null will be returned.
* @param r the index of the row to be searched
* @return pair of row and column indices of primed zero or null
*/
private Pair primeInRow(int r) {
for (int c = 0; c < cols; c++) {
if (mask[r][c] == PRIME) {
return new Pair(r, c);
}
}
return null;
}
}