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- // Part of the Carbon Language project, under the Apache License v2.0 with LLVM
- // Exceptions. See /LICENSE for license information.
- // SPDX-License-Identifier: Apache-2.0 WITH LLVM-exception
- #include <benchmark/benchmark.h>
- #include <algorithm>
- #include "absl/random/random.h"
- #include "common/check.h"
- #include "llvm/ADT/Sequence.h"
- #include "llvm/ADT/StringExtras.h"
- #include "toolchain/diagnostics/diagnostic_emitter.h"
- #include "toolchain/diagnostics/null_diagnostics.h"
- #include "toolchain/lex/token_kind.h"
- #include "toolchain/lex/tokenized_buffer.h"
- namespace Carbon::Lex {
- namespace {
- // A large value for measurement stability without making benchmarking too slow.
- // Needs to be a multiple of 100 so we can easily divide it up into percentages,
- // and 1% itself needs to not be too tiny. This makes 100,000 a great balance.
- constexpr int NumTokens = 100'000;
- auto IdentifierStartChars() -> llvm::ArrayRef<char> {
- static llvm::SmallVector<char> chars = [] {
- llvm::SmallVector<char> chars;
- chars.push_back('_');
- for (char c : llvm::seq_inclusive('A', 'Z')) {
- chars.push_back(c);
- }
- for (char c : llvm::seq_inclusive('a', 'z')) {
- chars.push_back(c);
- }
- return chars;
- }();
- return chars;
- }
- auto IdentifierChars() -> llvm::ArrayRef<char> {
- static llvm::SmallVector<char> chars = [] {
- llvm::ArrayRef<char> start_chars = IdentifierStartChars();
- llvm::SmallVector<char> chars(start_chars.begin(), start_chars.end());
- for (char c : llvm::seq_inclusive('0', '9')) {
- chars.push_back(c);
- }
- return chars;
- }();
- return chars;
- }
- // Generates a random identifier string of the specified length using the
- // provided RNG BitGen.
- auto GenerateRandomIdentifier(absl::BitGen& gen, int length) -> std::string {
- llvm::ArrayRef<char> start_chars = IdentifierStartChars();
- llvm::ArrayRef<char> chars = IdentifierChars();
- std::string id_result;
- llvm::raw_string_ostream os(id_result);
- llvm::StringRef id;
- do {
- // Erase any prior attempts to find an identifier.
- id_result.clear();
- os << start_chars[absl::Uniform<int>(gen, 0, start_chars.size())];
- for (int j : llvm::seq(0, length)) {
- static_cast<void>(j);
- os << chars[absl::Uniform<int>(gen, 0, chars.size())];
- }
- // Check if we ended up forming an integer type literal or a keyword, and
- // try again.
- id = llvm::StringRef(id_result);
- } while (
- llvm::any_of(TokenKind::KeywordTokens,
- [id](auto token) { return id == token.fixed_spelling(); }) ||
- ((id.consume_front("i") || id.consume_front("u") ||
- id.consume_front("f")) &&
- llvm::all_of(id, [](const char c) { return llvm::isDigit(c); })));
- return id_result;
- }
- // Get a static pool of random identifiers with the desired distribution.
- template <int MinLength = 1, int MaxLength = 64, bool Uniform = false>
- auto GetRandomIdentifiers() -> const std::array<std::string, NumTokens>& {
- static_assert(MinLength <= MaxLength);
- static_assert(
- Uniform || MaxLength <= 64,
- "Cannot produce a meaningful non-uniform distribution of lengths longer "
- "than 64 as those are exceedingly rare in our observed data sets.");
- static const std::array<std::string, NumTokens> id_storage = [] {
- std::array<int, 64> id_length_counts;
- // For non-uniform distribution, we simulate a distribution roughly based on
- // the observed histogram of identifier lengths, but smoothed a bit and
- // reduced to small counts so that we cycle through all the lengths
- // reasonably quickly. We want sampling of even 10% of NumTokens from this
- // in a round-robin form to not be skewed overly much. This still inherently
- // compresses the long tail as we'd rather have coverage even though it
- // distorts the distribution a bit.
- //
- // The distribution here comes from a script that analyzes source code run
- // over a few directories of LLVM. The script renders a visual ascii-art
- // histogram along with the data for each bucket, and that output is
- // included in comments above each bucket size below to help visualize the
- // rough shape we're aiming for.
- //
- // 1 characters [3976] ███████████████████████████████▊
- id_length_counts[0] = 40;
- // 2 characters [3724] █████████████████████████████▊
- id_length_counts[1] = 40;
- // 3 characters [4173] █████████████████████████████████▍
- id_length_counts[2] = 40;
- // 4 characters [5000] ████████████████████████████████████████
- id_length_counts[3] = 50;
- // 5 characters [1568] ████████████▌
- id_length_counts[4] = 20;
- // 6 characters [2226] █████████████████▊
- id_length_counts[5] = 20;
- // 7 characters [2380] ███████████████████
- id_length_counts[6] = 20;
- // 8 characters [1786] ██████████████▎
- id_length_counts[7] = 18;
- // 9 characters [1397] ███████████▏
- id_length_counts[8] = 12;
- // 10 characters [ 739] █████▉
- id_length_counts[9] = 12;
- // 11 characters [ 779] ██████▎
- id_length_counts[10] = 12;
- // 12 characters [1344] ██████████▊
- id_length_counts[11] = 12;
- // 13 characters [ 498] ████
- id_length_counts[12] = 5;
- // 14 characters [ 284] ██▎
- id_length_counts[13] = 3;
- // 15 characters [ 172] █▍
- // 16 characters [ 278] ██▎
- // 17 characters [ 191] █▌
- // 18 characters [ 207] █▋
- for (int i : llvm::seq(14, 18)) {
- id_length_counts[i] = 2;
- }
- // 19 - 63 characters are all <100 but non-zero, and we map them to 1 for
- // coverage despite slightly over weighting the tail.
- for (int i : llvm::seq(18, 64)) {
- id_length_counts[i] = 1;
- }
- // Used to track the different count buckets when in a non-uniform
- // distribution.
- int length_bucket_index = 0;
- int length_count = 0;
- std::array<std::string, NumTokens> ids;
- absl::BitGen gen;
- for (auto [i, id] : llvm::enumerate(ids)) {
- if (Uniform) {
- // Rather than using randomness, for a uniform distribution rotate
- // lengths in round-robin to get a deterministic and exact size on every
- // run. We will then shuffle them at the end to produce a random
- // ordering.
- int length = MinLength + i % (1 + MaxLength - MinLength);
- id = GenerateRandomIdentifier(gen, length);
- continue;
- }
- // For non-uniform distribution, walk through each each length bucket
- // until our count matches the desired distribution, and then move to the
- // next.
- id = GenerateRandomIdentifier(gen, length_bucket_index + 1);
- if (length_count < id_length_counts[length_bucket_index]) {
- ++length_count;
- } else {
- length_bucket_index =
- (length_bucket_index + 1) % id_length_counts.size();
- length_count = 0;
- }
- }
- return ids;
- }();
- return id_storage;
- }
- // Compute a random sequence of just identifiers.
- template <int MinLength = 1, int MaxLength = 64, bool Uniform = false>
- auto RandomIdentifierSeq() -> std::string {
- // Get a static pool of identifiers with the desired distribution.
- const std::array<std::string, NumTokens>& ids =
- GetRandomIdentifiers<MinLength, MaxLength, Uniform>();
- // Shuffle tokens so we get exactly one of each identifier but in a random
- // order.
- std::array<llvm::StringRef, NumTokens> tokens;
- for (int i : llvm::seq(NumTokens)) {
- tokens[i] = ids[i];
- }
- std::shuffle(tokens.begin(), tokens.end(), absl::BitGen());
- return llvm::join(tokens, " ");
- }
- auto GetSymbolTokenTable() -> llvm::ArrayRef<TokenKind> {
- // Build our own table of symbols so we can use repetitions to skew the
- // distribution.
- static auto symbol_token_table_storage = [] {
- llvm::SmallVector<TokenKind> table;
- #define CARBON_SYMBOL_TOKEN(TokenName, Spelling) \
- table.push_back(TokenKind::TokenName);
- #define CARBON_OPENING_GROUP_SYMBOL_TOKEN(TokenName, Spelling, ClosingName)
- #define CARBON_CLOSING_GROUP_SYMBOL_TOKEN(TokenName, Spelling, OpeningName)
- #include "toolchain/lex/token_kind.def"
- table.insert(table.end(), 32, TokenKind::Semi);
- table.insert(table.end(), 16, TokenKind::Comma);
- table.insert(table.end(), 12, TokenKind::Period);
- table.insert(table.end(), 8, TokenKind::Colon);
- table.insert(table.end(), 8, TokenKind::Equal);
- table.insert(table.end(), 4, TokenKind::Amp);
- table.insert(table.end(), 4, TokenKind::ColonExclaim);
- table.insert(table.end(), 4, TokenKind::EqualEqual);
- table.insert(table.end(), 4, TokenKind::ExclaimEqual);
- table.insert(table.end(), 4, TokenKind::MinusGreater);
- table.insert(table.end(), 4, TokenKind::Star);
- return table;
- }();
- return symbol_token_table_storage;
- }
- // Compute a random sequence of mixed symbols, keywords, and identifiers, with
- // percentages of each according to the parameters.
- auto RandomMixedSeq(int symbol_percent, int keyword_percent) -> std::string {
- CARBON_CHECK(0 <= symbol_percent && symbol_percent <= 100)
- << "Must be a percent: [0, 100].";
- CARBON_CHECK(0 <= keyword_percent && keyword_percent <= 100)
- << "Must be a percent: [0, 100].";
- CARBON_CHECK((symbol_percent + keyword_percent) <= 100)
- << "Cannot have >100%.";
- static_assert((NumTokens % 100) == 0,
- "The number of tokens must be divisible by 100 so that we can "
- "easily scale integer percentages up to it.");
- // Get static pools of symbols, keywords, and identifiers.
- llvm::ArrayRef<TokenKind> symbols = GetSymbolTokenTable();
- llvm::ArrayRef<TokenKind> keywords = TokenKind::KeywordTokens;
- const std::array<std::string, NumTokens>& ids = GetRandomIdentifiers();
- // Build a list of StringRefs from the different types with the desired
- // distribution, then shuffle that list.
- std::array<llvm::StringRef, NumTokens> tokens;
- int num_symbols = (NumTokens / 100) * symbol_percent;
- int num_keywords = (NumTokens / 100) * keyword_percent;
- int num_identifiers = NumTokens - num_symbols - num_keywords;
- CARBON_CHECK(num_identifiers == 0 || num_identifiers > 500)
- << "We require at least 500 identifiers as we need to collect a "
- "reasonable number of samples to end up with a reasonable "
- "distribution of lengths.";
- for (int i : llvm::seq(num_symbols)) {
- tokens[i] = symbols[i % symbols.size()].fixed_spelling();
- }
- for (int i : llvm::seq(num_keywords)) {
- tokens[num_symbols + i] = keywords[i % keywords.size()].fixed_spelling();
- }
- for (int i : llvm::seq(num_identifiers)) {
- // We always have enough identifiers, so no need to mod here.
- tokens[num_symbols + num_keywords + i] = ids[i];
- }
- std::shuffle(tokens.begin(), tokens.end(), absl::BitGen());
- return llvm::join(tokens, " ");
- }
- class LexerBenchHelper {
- public:
- explicit LexerBenchHelper(llvm::StringRef text)
- : source_(MakeSourceBuffer(text)) {}
- auto Lex() -> TokenizedBuffer {
- DiagnosticConsumer& consumer = NullDiagnosticConsumer();
- return TokenizedBuffer::Lex(source_, consumer);
- }
- auto DiagnoseErrors() -> std::string {
- std::string result;
- llvm::raw_string_ostream out(result);
- StreamDiagnosticConsumer consumer(out);
- auto buffer = TokenizedBuffer::Lex(source_, consumer);
- consumer.Flush();
- CARBON_CHECK(buffer.has_errors())
- << "Asked to diagnose errors but none found!";
- return result;
- }
- private:
- auto MakeSourceBuffer(llvm::StringRef text) -> SourceBuffer {
- CARBON_CHECK(fs_.addFile(filename_, /*ModificationTime=*/0,
- llvm::MemoryBuffer::getMemBuffer(text)));
- return std::move(*SourceBuffer::CreateFromFile(
- fs_, filename_, ConsoleDiagnosticConsumer()));
- }
- llvm::vfs::InMemoryFileSystem fs_;
- std::string filename_ = "test.carbon";
- SourceBuffer source_;
- };
- void BM_ValidKeywords(benchmark::State& state) {
- absl::BitGen gen;
- std::array<llvm::StringRef, NumTokens> tokens;
- for (int i : llvm::seq(NumTokens)) {
- tokens[i] = TokenKind::KeywordTokens[i % TokenKind::KeywordTokens.size()]
- .fixed_spelling();
- }
- std::shuffle(tokens.begin(), tokens.end(), gen);
- std::string source = llvm::join(tokens, " ");
- LexerBenchHelper helper(source);
- for (auto _ : state) {
- TokenizedBuffer buffer = helper.Lex();
- CARBON_CHECK(!buffer.has_errors());
- }
- state.SetBytesProcessed(state.iterations() * source.size());
- state.counters["tokens_per_second"] = benchmark::Counter(
- NumTokens, benchmark::Counter::kIsIterationInvariantRate);
- }
- BENCHMARK(BM_ValidKeywords);
- template <int MinLength, int MaxLength, bool Uniform>
- void BM_ValidIdentifiers(benchmark::State& state) {
- std::string source = RandomIdentifierSeq<MinLength, MaxLength, Uniform>();
- LexerBenchHelper helper(source);
- for (auto _ : state) {
- TokenizedBuffer buffer = helper.Lex();
- CARBON_CHECK(!buffer.has_errors()) << helper.DiagnoseErrors();
- }
- state.SetBytesProcessed(state.iterations() * source.size());
- state.counters["tokens_per_second"] = benchmark::Counter(
- NumTokens, benchmark::Counter::kIsIterationInvariantRate);
- }
- // Benchmark the non-uniform distribution we observe in C++ code.
- BENCHMARK(BM_ValidIdentifiers<1, 64, /*Uniform=*/false>);
- // Also benchmark a few uniform distribution ranges of identifier widths to
- // cover different patterns that emerge with small, medium, and longer
- // identifiers.
- BENCHMARK(BM_ValidIdentifiers<1, 1, /*Uniform=*/true>);
- BENCHMARK(BM_ValidIdentifiers<3, 5, /*Uniform=*/true>);
- BENCHMARK(BM_ValidIdentifiers<3, 16, /*Uniform=*/true>);
- BENCHMARK(BM_ValidIdentifiers<12, 64, /*Uniform=*/true>);
- void BM_ValidMix(benchmark::State& state) {
- int symbol_percent = state.range(0);
- int keyword_percent = state.range(1);
- std::string source = RandomMixedSeq(symbol_percent, keyword_percent);
- LexerBenchHelper helper(source);
- for (auto _ : state) {
- TokenizedBuffer buffer = helper.Lex();
- // Ensure that lexing actually occurs for benchmarking and that it doesn't
- // hit errors that would skew the benchmark results.
- CARBON_CHECK(!buffer.has_errors()) << helper.DiagnoseErrors();
- }
- state.SetBytesProcessed(state.iterations() * source.size());
- state.counters["tokens_per_second"] = benchmark::Counter(
- NumTokens, benchmark::Counter::kIsIterationInvariantRate);
- }
- // The distributions between symbols, keywords, and identifiers here are
- // guesses. Eventually, we should collect more data to help tune these, but
- // hopefully the performance isn't too sensitive and we can just cover a wide
- // range here.
- BENCHMARK(BM_ValidMix)
- ->Args({10, 40})
- ->Args({25, 30})
- ->Args({50, 20})
- ->Args({75, 10});
- } // namespace
- } // namespace Carbon::Lex
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