namespace WhiteRabbit { using System; using System.Collections.Generic; using System.Linq; using System.Numerics; using System.Threading.Tasks; internal sealed class StringsProcessor { private const byte SPACE = 32; // Ensure that permutations are precomputed prior to main run, so that processing times will be correct static StringsProcessor() { PrecomputedPermutationsGenerator.HamiltonianPermutations(1, 0); } public StringsProcessor(byte[] sourceString, int maxWordsCount, IEnumerable words) { var filteredSource = sourceString.Where(ch => ch != SPACE).ToArray(); this.NumberOfCharacters = filteredSource.Length; this.VectorsConverter = new VectorsConverter(filteredSource); var allWordsAndVectors = words .Where(word => word != null && word.Length > 0) .Select(word => new { word, vector = this.VectorsConverter.GetVector(word) }) .Where(tuple => tuple.vector != null) .Select(tuple => tuple.word) .Distinct(new ByteArrayEqualityComparer()) .Select(word => word) .ToArray(); // Dictionary of vectors to array of words represented by this vector var vectorsToWords = allWordsAndVectors .Select((word, index) => new { word, index, vector = this.VectorsConverter.GetVector(word).Value }) .GroupBy(tuple => tuple.vector) .Select(group => new { vector = group.Key, words = group.Select(tuple => tuple.index).ToArray() }) .ToList(); this.WordsDictionary = vectorsToWords.Select(tuple => tuple.words).ToArray(); this.AllWords = allWordsAndVectors.Select(word => new Word(word)).ToArray(); this.VectorsProcessor = new VectorsProcessor( this.VectorsConverter.GetVector(filteredSource).Value, maxWordsCount, vectorsToWords.Select(tuple => tuple.vector).ToArray()); } private VectorsConverter VectorsConverter { get; } private Word[] AllWords { get; } /// /// WordsDictionary[vectorIndex] = [word1index, word2index, ...] /// private int[][] WordsDictionary { get; } private VectorsProcessor VectorsProcessor { get; } private int NumberOfCharacters { get; } public void CheckPhrases(uint[] expectedHashesVector, Action action) { // task of finding anagrams could be reduced to the task of finding sequences of dictionary vectors with the target sum var sums = this.VectorsProcessor.GenerateSequences(); // converting sequences of vectors to the sequences of words... Parallel.ForEach(sums, new ParallelOptions { MaxDegreeOfParallelism = Constants.NumberOfThreads }, sum => ProcessSum(sum, expectedHashesVector, action)); } public long GetPhrasesCount() { var sums = this.VectorsProcessor.GenerateSequences(); return (from sum in sums let filter = ComputeFilter(sum) let wordsVariantsNumber = this.ConvertVectorsToWordsNumber(sum) let permutationsNumber = PrecomputedPermutationsGenerator.GetPermutationsNumber(sum.Length, filter) let total = wordsVariantsNumber * permutationsNumber select total) .Sum(); } private static uint ComputeFilter(int[] vectors) { uint result = 0; for (var i = 1; i < vectors.Length; i++) { if (vectors[i] == vectors[i - 1]) { result |= (uint)1 << (i - 1); } } return result; } private int[][] ConvertVectorsToWordIndexes(int[] vectors) { var length = vectors.Length; var words = new int[length][]; for (var i = 0; i < length; i++) { words[i] = this.WordsDictionary[vectors[i]]; } return words; } private long ConvertVectorsToWordsNumber(int[] vectors) { long result = 1; for (var i = 0; i < vectors.Length; i++) { result *= this.WordsDictionary[vectors[i]].Length; } return result; } private void ProcessSum(int[] sum, uint[] expectedHashesVector, Action action) { var initialPhraseSet = new PhraseSet(); initialPhraseSet.Init(); initialPhraseSet.FillLength(this.NumberOfCharacters, sum.Length); var phraseSet = new PhraseSet(); phraseSet.Init(); var permutationsFilter = ComputeFilter(sum); var wordsVariants = this.ConvertVectorsToWordIndexes(sum); foreach (var wordsArray in Flattener.Flatten(wordsVariants)) { phraseSet.ProcessPermutations( initialPhraseSet, this.AllWords, wordsArray, PrecomputedPermutationsGenerator.HamiltonianPermutations(wordsArray.Length, permutationsFilter), expectedHashesVector, action); } } } }