diff options
author | Patrick Simianer <p@simianer.de> | 2013-01-21 12:29:43 +0100 |
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committer | Patrick Simianer <p@simianer.de> | 2013-01-21 12:29:43 +0100 |
commit | 50f22047eb1b7f2d60e85cdcf0fcd86342e50523 (patch) | |
tree | 730dabaf2fa57b1e4536d40f036b46795d37f289 /klm/lm/builder/pipeline.cc | |
parent | 8b399cb09513cd79ed4182be9f75882c1e1b336a (diff) | |
parent | 608886384da40aedfabd629c882b8ea9b3f6348e (diff) |
Merge remote-tracking branch 'upstream/master'
Diffstat (limited to 'klm/lm/builder/pipeline.cc')
-rw-r--r-- | klm/lm/builder/pipeline.cc | 320 |
1 files changed, 320 insertions, 0 deletions
diff --git a/klm/lm/builder/pipeline.cc b/klm/lm/builder/pipeline.cc new file mode 100644 index 00000000..14a1f721 --- /dev/null +++ b/klm/lm/builder/pipeline.cc @@ -0,0 +1,320 @@ +#include "lm/builder/pipeline.hh" + +#include "lm/builder/adjust_counts.hh" +#include "lm/builder/corpus_count.hh" +#include "lm/builder/initial_probabilities.hh" +#include "lm/builder/interpolate.hh" +#include "lm/builder/print.hh" +#include "lm/builder/sort.hh" + +#include "lm/sizes.hh" + +#include "util/exception.hh" +#include "util/file.hh" +#include "util/stream/io.hh" + +#include <algorithm> +#include <iostream> +#include <vector> + +namespace lm { namespace builder { + +namespace { +void PrintStatistics(const std::vector<uint64_t> &counts, const std::vector<Discount> &discounts) { + std::cerr << "Statistics:\n"; + for (size_t i = 0; i < counts.size(); ++i) { + std::cerr << (i + 1) << ' ' << counts[i]; + for (size_t d = 1; d <= 3; ++d) + std::cerr << " D" << d << (d == 3 ? "+=" : "=") << discounts[i].amount[d]; + std::cerr << '\n'; + } +} + +class Master { + public: + explicit Master(const PipelineConfig &config) + : config_(config), chains_(config.order), files_(config.order) { + config_.minimum_block = std::max(NGram::TotalSize(config_.order), config_.minimum_block); + } + + const PipelineConfig &Config() const { return config_; } + + Chains &MutableChains() { return chains_; } + + template <class T> Master &operator>>(const T &worker) { + chains_ >> worker; + return *this; + } + + // This takes the (partially) sorted ngrams and sets up for adjusted counts. + void InitForAdjust(util::stream::Sort<SuffixOrder, AddCombiner> &ngrams, WordIndex types) { + const std::size_t each_order_min = config_.minimum_block * config_.block_count; + // We know how many unigrams there are. Don't allocate more than needed to them. + const std::size_t min_chains = (config_.order - 1) * each_order_min + + std::min(types * NGram::TotalSize(1), each_order_min); + // Do merge sort with calculated laziness. + const std::size_t merge_using = ngrams.Merge(std::min(config_.TotalMemory() - min_chains, ngrams.DefaultLazy())); + + std::vector<uint64_t> count_bounds(1, types); + CreateChains(config_.TotalMemory() - merge_using, count_bounds); + ngrams.Output(chains_.back(), merge_using); + + // Setup unigram file. + files_.push_back(util::MakeTemp(config_.TempPrefix())); + } + + // For initial probabilities, but this is generic. + void SortAndReadTwice(const std::vector<uint64_t> &counts, Sorts<ContextOrder> &sorts, Chains &second, util::stream::ChainConfig second_config) { + // Do merge first before allocating chain memory. + for (std::size_t i = 1; i < config_.order; ++i) { + sorts[i - 1].Merge(0); + } + // There's no lazy merge, so just divide memory amongst the chains. + CreateChains(config_.TotalMemory(), counts); + chains_.back().ActivateProgress(); + chains_[0] >> files_[0].Source(); + second_config.entry_size = NGram::TotalSize(1); + second.push_back(second_config); + second.back() >> files_[0].Source(); + for (std::size_t i = 1; i < config_.order; ++i) { + util::scoped_fd fd(sorts[i - 1].StealCompleted()); + chains_[i].SetProgressTarget(util::SizeOrThrow(fd.get())); + chains_[i] >> util::stream::PRead(util::DupOrThrow(fd.get()), true); + second_config.entry_size = NGram::TotalSize(i + 1); + second.push_back(second_config); + second.back() >> util::stream::PRead(fd.release(), true); + } + } + + // There is no sort after this, so go for broke on lazy merging. + template <class Compare> void MaximumLazyInput(const std::vector<uint64_t> &counts, Sorts<Compare> &sorts) { + // Determine the minimum we can use for all the chains. + std::size_t min_chains = 0; + for (std::size_t i = 0; i < config_.order; ++i) { + min_chains += std::min(counts[i] * NGram::TotalSize(i + 1), static_cast<uint64_t>(config_.minimum_block)); + } + std::size_t for_merge = min_chains > config_.TotalMemory() ? 0 : (config_.TotalMemory() - min_chains); + std::vector<std::size_t> laziness; + // Prioritize longer n-grams. + for (util::stream::Sort<SuffixOrder> *i = sorts.end() - 1; i >= sorts.begin(); --i) { + laziness.push_back(i->Merge(for_merge)); + assert(for_merge >= laziness.back()); + for_merge -= laziness.back(); + } + std::reverse(laziness.begin(), laziness.end()); + + CreateChains(for_merge + min_chains, counts); + chains_.back().ActivateProgress(); + chains_[0] >> files_[0].Source(); + for (std::size_t i = 1; i < config_.order; ++i) { + sorts[i - 1].Output(chains_[i], laziness[i - 1]); + } + } + + void BufferFinal(const std::vector<uint64_t> &counts) { + chains_[0] >> files_[0].Sink(); + for (std::size_t i = 1; i < config_.order; ++i) { + files_.push_back(util::MakeTemp(config_.TempPrefix())); + chains_[i] >> files_[i].Sink(); + } + chains_.Wait(true); + // Use less memory. Because we can. + CreateChains(std::min(config_.sort.buffer_size * config_.order, config_.TotalMemory()), counts); + for (std::size_t i = 0; i < config_.order; ++i) { + chains_[i] >> files_[i].Source(); + } + } + + template <class Compare> void SetupSorts(Sorts<Compare> &sorts) { + sorts.Init(config_.order - 1); + // Unigrams don't get sorted because their order is always the same. + chains_[0] >> files_[0].Sink(); + for (std::size_t i = 1; i < config_.order; ++i) { + sorts.push_back(chains_[i], config_.sort, Compare(i + 1)); + } + chains_.Wait(true); + } + + private: + // Create chains, allocating memory to them. Totally heuristic. Count + // bounds are upper bounds on the counts or not present. + void CreateChains(std::size_t remaining_mem, const std::vector<uint64_t> &count_bounds) { + std::vector<std::size_t> assignments; + assignments.reserve(config_.order); + // Start by assigning maximum memory usage (to be refined later). + for (std::size_t i = 0; i < count_bounds.size(); ++i) { + assignments.push_back(static_cast<std::size_t>(std::min( + static_cast<uint64_t>(remaining_mem), + count_bounds[i] * static_cast<uint64_t>(NGram::TotalSize(i + 1))))); + } + assignments.resize(config_.order, remaining_mem); + + // Now we know how much memory everybody wants. How much will they get? + // Proportional to this. + std::vector<float> portions; + // Indices of orders that have yet to be assigned. + std::vector<std::size_t> unassigned; + for (std::size_t i = 0; i < config_.order; ++i) { + portions.push_back(static_cast<float>((i+1) * NGram::TotalSize(i+1))); + unassigned.push_back(i); + } + /*If somebody doesn't eat their full dinner, give it to the rest of the + * family. Then somebody else might not eat their full dinner etc. Ends + * when everybody unassigned is hungry. + */ + float sum; + bool found_more; + std::vector<std::size_t> block_count(config_.order); + do { + sum = 0.0; + for (std::size_t i = 0; i < unassigned.size(); ++i) { + sum += portions[unassigned[i]]; + } + found_more = false; + // If the proportional assignment is more than needed, give it just what it needs. + for (std::vector<std::size_t>::iterator i = unassigned.begin(); i != unassigned.end();) { + if (assignments[*i] <= remaining_mem * (portions[*i] / sum)) { + remaining_mem -= assignments[*i]; + block_count[*i] = 1; + i = unassigned.erase(i); + found_more = true; + } else { + ++i; + } + } + } while (found_more); + for (std::vector<std::size_t>::iterator i = unassigned.begin(); i != unassigned.end(); ++i) { + assignments[*i] = remaining_mem * (portions[*i] / sum); + block_count[*i] = config_.block_count; + } + chains_.clear(); + std::cerr << "Chain sizes:"; + for (std::size_t i = 0; i < config_.order; ++i) { + std::cerr << ' ' << (i+1) << ":" << assignments[i]; + chains_.push_back(util::stream::ChainConfig(NGram::TotalSize(i + 1), block_count[i], assignments[i])); + } + std::cerr << std::endl; + } + + PipelineConfig config_; + + Chains chains_; + // Often only unigrams, but sometimes all orders. + FixedArray<util::stream::FileBuffer> files_; +}; + +void CountText(int text_file /* input */, int vocab_file /* output */, Master &master, uint64_t &token_count, std::string &text_file_name) { + const PipelineConfig &config = master.Config(); + std::cerr << "=== 1/5 Counting and sorting n-grams ===" << std::endl; + + UTIL_THROW_IF(config.TotalMemory() < config.assume_vocab_hash_size, util::Exception, "Vocab hash size estimate " << config.assume_vocab_hash_size << " exceeds total memory " << config.TotalMemory()); + std::size_t memory_for_chain = + // This much memory to work with after vocab hash table. + static_cast<float>(config.TotalMemory() - config.assume_vocab_hash_size) / + // Solve for block size including the dedupe multiplier for one block. + (static_cast<float>(config.block_count) + CorpusCount::DedupeMultiplier(config.order)) * + // Chain likes memory expressed in terms of total memory. + static_cast<float>(config.block_count); + util::stream::Chain chain(util::stream::ChainConfig(NGram::TotalSize(config.order), config.block_count, memory_for_chain)); + + WordIndex type_count; + util::FilePiece text(text_file, NULL, &std::cerr); + text_file_name = text.FileName(); + CorpusCount counter(text, vocab_file, token_count, type_count, chain.BlockSize() / chain.EntrySize()); + chain >> boost::ref(counter); + + util::stream::Sort<SuffixOrder, AddCombiner> sorter(chain, config.sort, SuffixOrder(config.order), AddCombiner()); + chain.Wait(true); + std::cerr << "=== 2/5 Calculating and sorting adjusted counts ===" << std::endl; + master.InitForAdjust(sorter, type_count); +} + +void InitialProbabilities(const std::vector<uint64_t> &counts, const std::vector<Discount> &discounts, Master &master, Sorts<SuffixOrder> &primary, FixedArray<util::stream::FileBuffer> &gammas) { + const PipelineConfig &config = master.Config(); + Chains second(config.order); + + { + Sorts<ContextOrder> sorts; + master.SetupSorts(sorts); + PrintStatistics(counts, discounts); + lm::ngram::ShowSizes(counts); + std::cerr << "=== 3/5 Calculating and sorting initial probabilities ===" << std::endl; + master.SortAndReadTwice(counts, sorts, second, config.initial_probs.adder_in); + } + + Chains gamma_chains(config.order); + InitialProbabilities(config.initial_probs, discounts, master.MutableChains(), second, gamma_chains); + // Don't care about gamma for 0. + gamma_chains[0] >> util::stream::kRecycle; + gammas.Init(config.order - 1); + for (std::size_t i = 1; i < config.order; ++i) { + gammas.push_back(util::MakeTemp(config.TempPrefix())); + gamma_chains[i] >> gammas[i - 1].Sink(); + } + // Has to be done here due to gamma_chains scope. + master.SetupSorts(primary); +} + +void InterpolateProbabilities(const std::vector<uint64_t> &counts, Master &master, Sorts<SuffixOrder> &primary, FixedArray<util::stream::FileBuffer> &gammas) { + std::cerr << "=== 4/5 Calculating and writing order-interpolated probabilities ===" << std::endl; + const PipelineConfig &config = master.Config(); + master.MaximumLazyInput(counts, primary); + + Chains gamma_chains(config.order - 1); + util::stream::ChainConfig read_backoffs(config.read_backoffs); + read_backoffs.entry_size = sizeof(float); + for (std::size_t i = 0; i < config.order - 1; ++i) { + gamma_chains.push_back(read_backoffs); + gamma_chains.back() >> gammas[i].Source(); + } + master >> Interpolate(counts[0], ChainPositions(gamma_chains)); + gamma_chains >> util::stream::kRecycle; + master.BufferFinal(counts); +} + +} // namespace + +void Pipeline(PipelineConfig config, int text_file, int out_arpa) { + // Some fail-fast sanity checks. + if (config.sort.buffer_size * 4 > config.TotalMemory()) { + config.sort.buffer_size = config.TotalMemory() / 4; + std::cerr << "Warning: changing sort block size to " << config.sort.buffer_size << " bytes due to low total memory." << std::endl; + } + if (config.minimum_block < NGram::TotalSize(config.order)) { + config.minimum_block = NGram::TotalSize(config.order); + std::cerr << "Warning: raising minimum block to " << config.minimum_block << " to fit an ngram in every block." << std::endl; + } + UTIL_THROW_IF(config.sort.buffer_size < config.minimum_block, util::Exception, "Sort block size " << config.sort.buffer_size << " is below the minimum block size " << config.minimum_block << "."); + UTIL_THROW_IF(config.TotalMemory() < config.minimum_block * config.order * config.block_count, util::Exception, + "Not enough memory to fit " << (config.order * config.block_count) << " blocks with minimum size " << config.minimum_block << ". Increase memory to " << (config.minimum_block * config.order * config.block_count) << " bytes or decrease the minimum block size."); + + UTIL_TIMER("(%w s) Total wall time elapsed\n"); + Master master(config); + + util::scoped_fd vocab_file(config.vocab_file.empty() ? + util::MakeTemp(config.TempPrefix()) : + util::CreateOrThrow(config.vocab_file.c_str())); + uint64_t token_count; + std::string text_file_name; + CountText(text_file, vocab_file.get(), master, token_count, text_file_name); + + std::vector<uint64_t> counts; + std::vector<Discount> discounts; + master >> AdjustCounts(counts, discounts); + + { + FixedArray<util::stream::FileBuffer> gammas; + Sorts<SuffixOrder> primary; + InitialProbabilities(counts, discounts, master, primary, gammas); + InterpolateProbabilities(counts, master, primary, gammas); + } + + std::cerr << "=== 5/5 Writing ARPA model ===" << std::endl; + VocabReconstitute vocab(vocab_file.get()); + UTIL_THROW_IF(vocab.Size() != counts[0], util::Exception, "Vocab words don't match up. Is there a null byte in the input?"); + HeaderInfo header_info(text_file_name, token_count); + master >> PrintARPA(vocab, counts, (config.verbose_header ? &header_info : NULL), out_arpa) >> util::stream::kRecycle; + master.MutableChains().Wait(true); +} + +}} // namespaces |