pre-0.0.3 #46
@ -1,5 +1,5 @@
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buildscript {
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extra["kotlinVersion"] = "1.3.20-eap-52"
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extra["kotlinVersion"] = "1.3.20-eap-100"
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extra["ioVersion"] = "0.1.2"
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extra["coroutinesVersion"] = "1.1.0"
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@ -93,7 +93,11 @@ private class LUPDecomposition<T : Comparable<T>, R : Ring<T>>(
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/**
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* Implementation based on Apache common-maths LU-decomposition
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*/
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class LUPDecompositionBuilder<T : Comparable<T>, F : Field<T>>(val context: F, val bufferFactory: MutableBufferFactory<T> = ::boxing, val singularityCheck: (T) -> Boolean) {
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class LUPDecompositionBuilder<T : Comparable<T>, F : Field<T>>(
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val context: F,
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val bufferFactory: MutableBufferFactory<T> = ::boxing,
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val singularityCheck: (T) -> Boolean
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) {
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/**
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* In-place transformation for [MutableNDStructure], using given transformation for each element
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@ -105,23 +109,16 @@ class LUPDecompositionBuilder<T : Comparable<T>, F : Field<T>>(val context: F, v
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private fun abs(value: T) = if (value > context.zero) value else with(context) { -value }
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fun decompose(matrix: Matrix<T>): LUPDecompositionFeature<T> {
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// Use existing decomposition if it is provided by matrix
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matrix.features.find { it is LUPDecompositionFeature<*> }?.let {
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@Suppress("UNCHECKED_CAST")
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return it as LUPDecompositionFeature<T>
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}
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if (matrix.rowNum != matrix.colNum) {
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error("LU decomposition supports only square matrices")
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}
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val m = matrix.colNum
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val pivot = IntArray(matrix.rowNum)
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//TODO replace by custom optimized 2d structure
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val lu: MutableNDStructure<T> = mutableNdStructure(
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intArrayOf(matrix.rowNum, matrix.colNum),
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bufferFactory
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) { index: IntArray -> matrix[index[0], index[1]] }
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val lu = Mutable2DStructure.create(matrix.rowNum, matrix.colNum, bufferFactory) { i, j ->
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matrix[i, j]
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}
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with(context) {
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@ -188,57 +185,56 @@ class LUPDecompositionBuilder<T : Comparable<T>, F : Field<T>>(val context: F, v
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}
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class LUSolver<T : Comparable<T>, F : Field<T>>(val singularityCheck: (T) -> Boolean) : LinearSolver<T, F> {
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class LUSolver<T : Comparable<T>, F : Field<T>>(
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override val context: MatrixContext<T, F>,
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val bufferFactory: MutableBufferFactory<T> = ::boxing,
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val singularityCheck: (T) -> Boolean
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) : LinearSolver<T, F> {
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override fun solve(a: Matrix<T>, b: Matrix<T>): Matrix<T> {
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val decomposition = LUPDecompositionBuilder(ring, singularityCheck).decompose(a)
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if (b.rowNum != a.colNum) {
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error("Matrix dimension mismatch expected ${a.rowNum}, but got ${b.colNum}")
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}
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// Use existing decomposition if it is provided by matrix
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@Suppress("UNCHECKED_CAST")
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val decomposition = a.features.find { it is LUPDecompositionFeature<*> }?.let {
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it as LUPDecompositionFeature<T>
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} ?: LUPDecompositionBuilder(context.elementContext, bufferFactory, singularityCheck).decompose(a)
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// val bp = Array(a.rowNum) { Array<T>(b.colNum){ring.zero} }
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// for (row in 0 until a.rowNum) {
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// val bpRow = bp[row]
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// val pRow = decomposition.pivot[row]
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// for (col in 0 until b.colNum) {
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// bpRow[col] = b[pRow, col]
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// }
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// }
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with(decomposition) {
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with(context.elementContext) {
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// Apply permutations to b
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val bp = produce(a.rowNum, a.colNum) { i, j -> b[decomposition.pivot[i], j] }
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val bp = Mutable2DStructure.create(a.rowNum, a.colNum, bufferFactory) { i, j ->
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b[pivot[i], j]
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}
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// Solve LY = b
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for (col in 0 until a.rowNum) {
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val bpCol = bp[col]
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for (i in col + 1 until a.rowNum) {
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val bpI = bp[i]
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val luICol = decomposition.lu[i, col]
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for (j in 0 until b.colNum) {
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bpI[j] -= bpCol[j] * luICol
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bp[i, j] -= bp[col, j] * l[i, col]
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}
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}
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}
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// Solve UX = Y
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for (col in a.rowNum - 1 downTo 0) {
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val bpCol = bp[col]
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val luDiag = decomposition.lu[col, col]
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for (j in 0 until b.colNum) {
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bpCol[j] /= luDiag
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}
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for (i in 0 until col) {
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val bpI = bp[i]
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val luICol = decomposition.lu[i, col]
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for (j in 0 until b.colNum) {
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bpI[j] -= bpCol[j] * luICol
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bp[i, j] -= bp[col, j] / u[col, col] * u[i, col]
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}
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}
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}
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return produce(a.rowNum, a.colNum) { i, j -> bp[i][j] }
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return context.produce(a.rowNum, a.colNum) { i, j -> bp[i, j] }
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}
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}
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}
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companion object {
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val real = LUSolver(MatrixContext.real, MutableBuffer.Companion::auto) { it < 1e-11 }
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}
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}
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@ -4,26 +4,20 @@ import scientifik.kmath.operations.Field
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import scientifik.kmath.operations.Norm
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import scientifik.kmath.operations.RealField
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import scientifik.kmath.operations.Ring
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import scientifik.kmath.structures.VirtualBuffer
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import scientifik.kmath.structures.asSequence
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/**
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* A group of methods to resolve equation A dot X = B, where A and B are matrices or vectors
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*/
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interface LinearSolver<T : Any, R : Ring<T>> : MatrixContext<T, R> {
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/**
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* Convert matrix to vector if it is possible
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*/
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fun Matrix<T>.toVector(): Point<T> =
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if (this.colNum == 1) {
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point(rowNum){ get(it, 0) }
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} else error("Can't convert matrix with more than one column to vector")
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interface LinearSolver<T : Any, R : Ring<T>> {
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val context: MatrixContext<T,R>
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fun Point<T>.toMatrix(): Matrix<T> = produce(size, 1) { i, _ -> get(i) }
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fun solve(a: Matrix<T>, b: Matrix<T>): Matrix<T>
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fun solve(a: Matrix<T>, b: Point<T>): Point<T> = solve(a, b.toMatrix()).toVector()
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fun inverse(a: Matrix<T>): Matrix<T> = solve(a, one(a.rowNum, a.colNum))
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fun inverse(a: Matrix<T>): Matrix<T> = solve(a, context.one(a.rowNum, a.colNum))
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}
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/**
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@ -41,3 +35,15 @@ object VectorL2Norm : Norm<Point<out Number>, Double> {
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typealias RealVector = Vector<Double, RealField>
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typealias RealMatrix = Matrix<Double>
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/**
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* Convert matrix to vector if it is possible
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*/
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fun <T: Any> Matrix<T>.toVector(): Point<T> =
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if (this.colNum == 1) {
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VirtualBuffer(rowNum){ get(it, 0) }
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} else error("Can't convert matrix with more than one column to vector")
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fun <T: Any> Point<T>.toMatrix(): Matrix<T> = VirtualMatrix(size, 1) { i, _ -> get(i) }
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@ -11,7 +11,7 @@ interface MatrixContext<T : Any, R : Ring<T>> {
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/**
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* The ring context for matrix elements
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*/
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val ring: R
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val elementContext: R
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/**
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* Produce a matrix with this context and given dimensions
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@ -25,7 +25,7 @@ interface MatrixContext<T : Any, R : Ring<T>> {
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fun scale(a: Matrix<T>, k: Number): Matrix<T> {
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//TODO create a special wrapper class for scaled matrices
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return produce(a.rowNum, a.colNum) { i, j -> ring.run { a[i, j] * k } }
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return produce(a.rowNum, a.colNum) { i, j -> elementContext.run { a[i, j] * k } }
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}
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infix fun Matrix<T>.dot(other: Matrix<T>): Matrix<T> {
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@ -34,7 +34,7 @@ interface MatrixContext<T : Any, R : Ring<T>> {
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return produce(rowNum, other.colNum) { i, j ->
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val row = rows[i]
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val column = other.columns[j]
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with(ring) {
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with(elementContext) {
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row.asSequence().zip(column.asSequence(), ::multiply).sum()
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}
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}
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@ -45,27 +45,27 @@ interface MatrixContext<T : Any, R : Ring<T>> {
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if (this.colNum != vector.size) error("Matrix dot vector operation dimension mismatch: ($rowNum, $colNum) x (${vector.size})")
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return point(rowNum) { i ->
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val row = rows[i]
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with(ring) {
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with(elementContext) {
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row.asSequence().zip(vector.asSequence(), ::multiply).sum()
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}
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}
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}
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operator fun Matrix<T>.unaryMinus() =
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produce(rowNum, colNum) { i, j -> ring.run { -get(i, j) } }
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produce(rowNum, colNum) { i, j -> elementContext.run { -get(i, j) } }
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operator fun Matrix<T>.plus(b: Matrix<T>): Matrix<T> {
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if (rowNum != b.rowNum || colNum != b.colNum) error("Matrix operation dimension mismatch. [$rowNum,$colNum] + [${b.rowNum},${b.colNum}]")
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return produce(rowNum, colNum) { i, j -> ring.run { get(i, j) + b[i, j] } }
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return produce(rowNum, colNum) { i, j -> elementContext.run { get(i, j) + b[i, j] } }
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}
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operator fun Matrix<T>.minus(b: Matrix<T>): Matrix<T> {
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if (rowNum != b.rowNum || colNum != b.colNum) error("Matrix operation dimension mismatch. [$rowNum,$colNum] - [${b.rowNum},${b.colNum}]")
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return produce(rowNum, colNum) { i, j -> ring.run { get(i, j) + b[i, j] } }
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return produce(rowNum, colNum) { i, j -> elementContext.run { get(i, j) + b[i, j] } }
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}
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operator fun Matrix<T>.times(number: Number): Matrix<T> =
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produce(rowNum, colNum) { i, j -> ring.run { get(i, j) * number } }
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produce(rowNum, colNum) { i, j -> elementContext.run { get(i, j) * number } }
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operator fun Number.times(m: Matrix<T>): Matrix<T> = m * this
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@ -157,7 +157,7 @@ fun <T : Any, R : Ring<T>> MatrixContext<T, R>.one(rows: Int, columns: Int): Mat
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override val rowNum: Int get() = rows
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override val colNum: Int get() = columns
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override val features: Set<MatrixFeature> get() = setOf(DiagonalFeature, UnitFeature)
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override fun get(i: Int, j: Int): T = if (i == j) ring.one else ring.zero
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override fun get(i: Int, j: Int): T = if (i == j) elementContext.one else elementContext.zero
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}
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}
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@ -169,7 +169,7 @@ fun <T : Any, R : Ring<T>> MatrixContext<T, R>.zero(rows: Int, columns: Int): Ma
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override val rowNum: Int get() = rows
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override val colNum: Int get() = columns
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override val features: Set<MatrixFeature> get() = setOf(ZeroFeature)
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override fun get(i: Int, j: Int): T = ring.zero
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override fun get(i: Int, j: Int): T = elementContext.zero
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}
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}
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@ -0,0 +1,40 @@
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package scientifik.kmath.linear
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import scientifik.kmath.structures.MutableBuffer
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import scientifik.kmath.structures.MutableBufferFactory
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import scientifik.kmath.structures.MutableNDStructure
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class Mutable2DStructure<T>(val rowNum: Int, val colNum: Int, val buffer: MutableBuffer<T>) : MutableNDStructure<T> {
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override val shape: IntArray
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get() = intArrayOf(rowNum, colNum)
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operator fun get(i: Int, j: Int): T = buffer[i * colNum + j]
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override fun get(index: IntArray): T = get(index[0], index[1])
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override fun elements(): Sequence<Pair<IntArray, T>> = sequence {
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for (i in 0 until rowNum) {
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for (j in 0 until colNum) {
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yield(intArrayOf(i, j) to get(i, j))
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}
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}
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}
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operator fun set(i: Int, j: Int, value: T) {
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buffer[i * colNum + j] = value
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}
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override fun set(index: IntArray, value: T) = set(index[0], index[1], value)
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companion object {
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fun <T> create(
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rowNum: Int,
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colNum: Int,
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bufferFactory: MutableBufferFactory<T>,
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init: (i: Int, j: Int) -> T
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): Mutable2DStructure<T> {
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val buffer = bufferFactory(rowNum * colNum) { offset -> init(offset / colNum, offset % colNum) }
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return Mutable2DStructure(rowNum, colNum, buffer)
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}
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}
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}
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@ -10,7 +10,7 @@ import scientifik.kmath.structures.ndStructure
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* Basic implementation of Matrix space based on [NDStructure]
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*/
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class StructureMatrixContext<T : Any, R : Ring<T>>(
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override val ring: R,
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override val elementContext: R,
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private val bufferFactory: BufferFactory<T>
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) : MatrixContext<T, R> {
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@ -124,8 +124,6 @@ inline class MutableListBuffer<T>(private val list: MutableList<T>) : MutableBuf
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override fun copy(): MutableBuffer<T> = MutableListBuffer(ArrayList(list))
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}
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fun <T> MutableList<T>.asBuffer() = MutableListBuffer(this)
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class ArrayBuffer<T>(private val array: Array<T>) : MutableBuffer<T> {
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//Can't inline because array is invariant
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override val size: Int
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@ -22,9 +22,8 @@ class MatrixTest {
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@Test
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fun testTranspose() {
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val matrix = MatrixContext.real(3, 3).one
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val matrix = MatrixContext.real.one(3, 3)
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val transposed = matrix.transpose()
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assertEquals(matrix.context, transposed.context)
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assertEquals((matrix as StructureMatrix).structure, (transposed as StructureMatrix).structure)
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assertEquals(matrix, transposed)
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}
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@ -37,7 +36,7 @@ class MatrixTest {
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val matrix1 = vector1.toMatrix()
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val matrix2 = vector2.toMatrix().transpose()
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val product = matrix1 dot matrix2
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val product = MatrixContext.real.run { matrix1 dot matrix2 }
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assertEquals(5.0, product[1, 0])
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@ -6,8 +6,8 @@ import kotlin.test.assertEquals
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class RealLUSolverTest {
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@Test
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fun testInvertOne() {
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val matrix = MatrixContext.real(2, 2).one
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val inverted = RealLUSolver.inverse(matrix)
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val matrix = MatrixContext.real.one(2, 2)
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val inverted = LUSolver.real.inverse(matrix)
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assertEquals(matrix, inverted)
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}
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Loading…
Reference in New Issue
Block a user