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189 lines
4.1 KiB
C++
189 lines
4.1 KiB
C++
#pragma once
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#include <Core/Types.h>
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#include <Common/HashTable/HashMap.h>
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#include <Common/Arena.h>
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#include <ext/bit_cast.h>
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#include <common/StringRef.h>
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namespace DB
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{
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class MarkovModel
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{
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private:
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using NGramHash = UInt32;
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struct HistogramElement
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{
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UInt8 byte;
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UInt32 count;
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};
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struct Histogram
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{
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UInt32 total = 0;
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std::vector<HistogramElement> data;
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void add(UInt8 byte)
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{
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++total;
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for (auto & elem : data)
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{
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if (elem.byte == byte)
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{
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++elem.count;
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return;
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}
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}
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data.emplace_back(HistogramElement{.byte = byte, .count = 1});
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}
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UInt8 sample(UInt32 random) const
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{
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random %= total;
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UInt32 sum = 0;
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for (const auto & elem : data)
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{
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sum += elem.count;
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if (sum > random)
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return elem.byte;
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}
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__builtin_unreachable();
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}
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};
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using Table = HashMap<NGramHash, Histogram, TrivialHash>;
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Table table;
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size_t n;
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NGramHash hashContext(const char * pos, const char * data, size_t size) const
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{
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if (pos >= data + n)
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return CRC32Hash()(StringRef(pos - n, n));
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else
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return CRC32Hash()(StringRef(data, pos - data));
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}
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public:
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explicit MarkovModel(size_t n_) : n(n_) {}
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MarkovModel() {}
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void consume(const char * data, size_t size)
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{
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const char * pos = data;
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const char * end = data + size;
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while (pos < end)
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{
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table[hashContext(pos, data, size)].add(*pos);
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++pos;
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}
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/// Mark end of string as zero byte.
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table[hashContext(pos, data, size)].add(0);
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}
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template <typename Random>
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size_t generate(char * data, size_t size, Random && random) const
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{
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char * pos = data;
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char * end = data + size;
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while (pos < end)
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{
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auto it = table.find(hashContext(pos, data, size));
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if (table.end() == it)
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return pos - data;
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*pos = it->getMapped().sample(random());
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/// Zero byte marks end of string.
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if (0 == *pos)
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return pos - data;
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++pos;
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}
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return size;
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}
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/// Allows to add random noise to frequencies.
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template <typename Transform>
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void modifyCounts(Transform && transform)
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{
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for (auto & elem : table)
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{
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UInt32 new_total = 0;
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for (auto & frequency : elem.getMapped().data)
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{
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frequency.count = transform(frequency.count);
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new_total += frequency.count;
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}
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elem.getMapped().total = new_total;
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}
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}
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void write(WriteBuffer & out) const
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{
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writeBinary(UInt8(n), out);
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writeVarUInt(table.size(), out);
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for (const auto & elem : table)
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{
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writeBinary(elem.getKey(), out);
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writeBinary(UInt8(elem.getMapped().data.size()), out);
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for (const auto & frequency : elem.getMapped().data)
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{
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writeBinary(frequency.byte, out);
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writeVarUInt(frequency.count, out);
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}
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}
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}
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void read(ReadBuffer & in)
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{
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table.clear();
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UInt8 read_n = 0;
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readBinary(read_n, in);
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n = read_n;
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size_t read_size = 0;
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readVarUInt(read_size, in);
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for (size_t i = 0; i < read_size; ++i)
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{
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NGramHash key = 0;
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UInt8 historgam_size = 0;
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readBinary(key, in);
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readBinary(historgam_size, in);
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Histogram & histogram = table[key];
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histogram.data.resize(historgam_size);
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for (size_t j = 0; j < historgam_size; ++j)
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{
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readBinary(histogram.data[j].byte, in);
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readVarUInt(histogram.data[j].count, in);
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histogram.total += histogram.data[j].count;
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}
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}
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}
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};
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}
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