rocksdb/util/ribbon_impl.h
Hui Xiao 74544d582f Account Bloom/Ribbon filter construction memory in global memory limit (#9073)
Summary:
Note: This PR is the 4th part of a bigger PR stack (https://github.com/facebook/rocksdb/pull/9073) and will rebase/merge only after the first three PRs (https://github.com/facebook/rocksdb/pull/9070, https://github.com/facebook/rocksdb/pull/9071, https://github.com/facebook/rocksdb/pull/9130) merge.

**Context:**
Similar to https://github.com/facebook/rocksdb/pull/8428, this PR is to track memory usage during (new) Bloom Filter (i.e,FastLocalBloom) and Ribbon Filter (i.e, Ribbon128) construction, moving toward the goal of [single global memory limit using block cache capacity](https://github.com/facebook/rocksdb/wiki/Projects-Being-Developed#improving-memory-efficiency). It also constrains the size of the banding portion of Ribbon Filter during construction by falling back to Bloom Filter if that banding is, at some point, larger than the available space in the cache under `LRUCacheOptions::strict_capacity_limit=true`.

The option to turn on this feature is `BlockBasedTableOptions::reserve_table_builder_memory = true` which by default is set to `false`. We [decided](https://github.com/facebook/rocksdb/pull/9073#discussion_r741548409) not to have separate option for separate memory user in table building therefore their memory accounting are all bundled under one general option.

**Summary:**
- Reserved/released cache for creation/destruction of three main memory users with the passed-in `FilterBuildingContext::cache_res_mgr` during filter construction:
   - hash entries (i.e`hash_entries`.size(), we bucket-charge hash entries during insertion for performance),
   - banding (Ribbon Filter only, `bytes_coeff_rows` +`bytes_result_rows` + `bytes_backtrack`),
   - final filter (i.e, `mutable_buf`'s size).
      - Implementation details: in order to use `CacheReservationManager::CacheReservationHandle` to account final filter's memory, we have to store the `CacheReservationManager` object and `CacheReservationHandle` for final filter in `XXPH3BitsFilterBuilder` as well as  explicitly delete the filter bits builder when done with the final filter in block based table.
- Added option fo run `filter_bench` with this memory reservation feature

Pull Request resolved: https://github.com/facebook/rocksdb/pull/9073

Test Plan:
- Added new tests in `db_bloom_filter_test` to verify filter construction peak cache reservation under combination of  `BlockBasedTable::Rep::FilterType` (e.g, `kFullFilter`, `kPartitionedFilter`), `BloomFilterPolicy::Mode`(e.g, `kFastLocalBloom`, `kStandard128Ribbon`, `kDeprecatedBlock`) and `BlockBasedTableOptions::reserve_table_builder_memory`
  - To address the concern for slow test: tests with memory reservation under `kFullFilter` + `kStandard128Ribbon` and `kPartitionedFilter` take around **3000 - 6000 ms** and others take around **1500 - 2000 ms**, in total adding **20000 - 25000 ms** to the test suit running locally
- Added new test in `bloom_test` to verify Ribbon Filter fallback on large banding in FullFilter
- Added test in `filter_bench` to verify that this feature does not significantly slow down Bloom/Ribbon Filter construction speed. Local result averaged over **20** run as below:
   - FastLocalBloom
      - baseline `./filter_bench -impl=2 -quick -runs 20 | grep 'Build avg'`:
         - **Build avg ns/key: 29.56295** (DEBUG_LEVEL=1), **29.98153** (DEBUG_LEVEL=0)
      - new feature (expected to be similar as above)`./filter_bench -impl=2 -quick -runs 20 -reserve_table_builder_memory=true | grep 'Build avg'`:
         - **Build avg ns/key: 30.99046** (DEBUG_LEVEL=1), **30.48867** (DEBUG_LEVEL=0)
      - new feature of RibbonFilter with fallback  (expected to be similar as above) `./filter_bench -impl=2 -quick -runs 20 -reserve_table_builder_memory=true -strict_capacity_limit=true | grep 'Build avg'` :
         - **Build avg ns/key: 31.146975** (DEBUG_LEVEL=1), **30.08165** (DEBUG_LEVEL=0)

    - Ribbon128
       - baseline `./filter_bench -impl=3 -quick -runs 20 | grep 'Build avg'`:
           - **Build avg ns/key: 129.17585** (DEBUG_LEVEL=1), **130.5225** (DEBUG_LEVEL=0)
       - new feature  (expected to be similar as above) `./filter_bench -impl=3 -quick -runs 20 -reserve_table_builder_memory=true | grep 'Build avg' `:
           - **Build avg ns/key: 131.61645** (DEBUG_LEVEL=1), **132.98075** (DEBUG_LEVEL=0)
       - new feature of RibbonFilter with fallback (expected to be a lot faster than above due to fallback) `./filter_bench -impl=3 -quick -runs 20 -reserve_table_builder_memory=true -strict_capacity_limit=true | grep 'Build avg'` :
          - **Build avg ns/key: 52.032965** (DEBUG_LEVEL=1), **52.597825** (DEBUG_LEVEL=0)
          - And the warning message of `"Cache reservation for Ribbon filter banding failed due to cache full"` is indeed logged to console.

Reviewed By: pdillinger

Differential Revision: D31991348

Pulled By: hx235

fbshipit-source-id: 9336b2c60f44d530063da518ceaf56dac5f9df8e
2021-11-18 09:42:20 -08:00

1138 lines
46 KiB
C++

// Copyright (c) Facebook, Inc. and its affiliates. All Rights Reserved.
// This source code is licensed under both the GPLv2 (found in the
// COPYING file in the root directory) and Apache 2.0 License
// (found in the LICENSE.Apache file in the root directory).
#pragma once
#include <cmath>
#include "port/port.h" // for PREFETCH
#include "util/fastrange.h"
#include "util/ribbon_alg.h"
namespace ROCKSDB_NAMESPACE {
namespace ribbon {
// RIBBON PHSF & RIBBON Filter (Rapid Incremental Boolean Banding ON-the-fly)
//
// ribbon_impl.h: templated (parameterized) standard implementations
//
// Ribbon is a Perfect Hash Static Function construction useful as a compact
// static Bloom filter alternative. See ribbon_alg.h for core algorithms
// and core design details.
//
// TODO: more details on trade-offs and practical issues.
//
// APIs for configuring Ribbon are in ribbon_config.h
// Ribbon implementations in this file take these parameters, which must be
// provided in a class/struct type with members expressed in this concept:
// concept TypesAndSettings {
// // See RibbonTypes and *Hasher in ribbon_alg.h, except here we have
// // the added constraint that Hash be equivalent to either uint32_t or
// // uint64_t.
// typename Hash;
// typename CoeffRow;
// typename ResultRow;
// typename Index;
// typename Key;
// static constexpr bool kFirstCoeffAlwaysOne;
//
// // An unsigned integer type for identifying a hash seed, typically
// // uint32_t or uint64_t. Importantly, this is the amount of data
// // stored in memory for identifying a raw seed. See StandardHasher.
// typename Seed;
//
// // When true, the PHSF implements a static filter, expecting just
// // keys as inputs for construction. When false, implements a general
// // PHSF and expects std::pair<Key, ResultRow> as inputs for
// // construction.
// static constexpr bool kIsFilter;
//
// // When true, enables a special "homogeneous" filter implementation that
// // is slightly faster to construct, and never fails to construct though
// // FP rate can quickly explode in cases where corresponding
// // non-homogeneous filter would fail (or nearly fail?) to construct.
// // For smaller filters, you can configure with ConstructionFailureChance
// // smaller than desired FP rate to largely counteract this effect.
// // TODO: configuring Homogeneous Ribbon for arbitrarily large filters
// // based on data from OptimizeHomogAtScale
// static constexpr bool kHomogeneous;
//
// // When true, adds a tiny bit more hashing logic on queries and
// // construction to improve utilization at the beginning and end of
// // the structure. Recommended when CoeffRow is only 64 bits (or
// // less), so typical num_starts < 10k. Although this is compatible
// // with kHomogeneous, the competing space vs. time priorities might
// // not be useful.
// static constexpr bool kUseSmash;
//
// // When true, allows number of "starts" to be zero, for best support
// // of the "no keys to add" case by always returning false for filter
// // queries. (This is distinct from the "keys added but no space for
// // any data" case, in which a filter always returns true.) The cost
// // supporting this is a conditional branch (probably predictable) in
// // queries.
// static constexpr bool kAllowZeroStarts;
//
// // A seedable stock hash function on Keys. All bits of Hash must
// // be reasonably high quality. XXH functions recommended, but
// // Murmur, City, Farm, etc. also work.
// static Hash HashFn(const Key &, Seed raw_seed);
// };
// A bit of a hack to automatically construct the type for
// AddInput based on a constexpr bool.
template <typename Key, typename ResultRow, bool IsFilter>
struct AddInputSelector {
// For general PHSF, not filter
using T = std::pair<Key, ResultRow>;
};
template <typename Key, typename ResultRow>
struct AddInputSelector<Key, ResultRow, true /*IsFilter*/> {
// For Filter
using T = Key;
};
// To avoid writing 'typename' everywhere that we use types like 'Index'
#define IMPORT_RIBBON_TYPES_AND_SETTINGS(TypesAndSettings) \
using CoeffRow = typename TypesAndSettings::CoeffRow; \
using ResultRow = typename TypesAndSettings::ResultRow; \
using Index = typename TypesAndSettings::Index; \
using Hash = typename TypesAndSettings::Hash; \
using Key = typename TypesAndSettings::Key; \
using Seed = typename TypesAndSettings::Seed; \
\
/* Some more additions */ \
using QueryInput = Key; \
using AddInput = typename ROCKSDB_NAMESPACE::ribbon::AddInputSelector< \
Key, ResultRow, TypesAndSettings::kIsFilter>::T; \
static constexpr auto kCoeffBits = \
static_cast<Index>(sizeof(CoeffRow) * 8U); \
\
/* Export to algorithm */ \
static constexpr bool kFirstCoeffAlwaysOne = \
TypesAndSettings::kFirstCoeffAlwaysOne; \
\
static_assert(sizeof(CoeffRow) + sizeof(ResultRow) + sizeof(Index) + \
sizeof(Hash) + sizeof(Key) + sizeof(Seed) + \
sizeof(QueryInput) + sizeof(AddInput) + kCoeffBits + \
kFirstCoeffAlwaysOne > \
0, \
"avoid unused warnings, semicolon expected after macro call")
#ifdef _MSC_VER
#pragma warning(push)
#pragma warning(disable : 4309) // cast truncating constant
#pragma warning(disable : 4307) // arithmetic constant overflow
#endif
// StandardHasher: A standard implementation of concepts RibbonTypes,
// PhsfQueryHasher, FilterQueryHasher, and BandingHasher from ribbon_alg.h.
//
// This implementation should be suitable for most all practical purposes
// as it "behaves" across a wide range of settings, with little room left
// for improvement. The key functionality in this hasher is generating
// CoeffRows, starts, and (for filters) ResultRows, which could be ~150
// bits of data or more, from a modest hash of 64 or even just 32 bits, with
// enough uniformity and bitwise independence to be close to "the best you
// can do" with available hash information in terms of FP rate and
// compactness. (64 bits recommended and sufficient for PHSF practical
// purposes.)
//
// Another feature of this hasher is a minimal "premixing" of seeds before
// they are provided to TypesAndSettings::HashFn in case that function does
// not provide sufficiently independent hashes when iterating merely
// sequentially on seeds. (This for example works around a problem with the
// preview version 0.7.2 of XXH3 used in RocksDB, a.k.a. XXPH3 or Hash64, and
// MurmurHash1 used in RocksDB, a.k.a. Hash.) We say this pre-mixing step
// translates "ordinal seeds," which we iterate sequentially to find a
// solution, into "raw seeds," with many more bits changing for each
// iteration. The translation is an easily reversible lightweight mixing,
// not suitable for hashing on its own. An advantage of this approach is that
// StandardHasher can store just the raw seed (e.g. 64 bits) for fast query
// times, while from the application perspective, we can limit to a small
// number of ordinal keys (e.g. 64 in 6 bits) for saving in metadata.
//
// The default constructor initializes the seed to ordinal seed zero, which
// is equal to raw seed zero.
//
template <class TypesAndSettings>
class StandardHasher {
public:
IMPORT_RIBBON_TYPES_AND_SETTINGS(TypesAndSettings);
inline Hash GetHash(const Key& key) const {
return TypesAndSettings::HashFn(key, raw_seed_);
};
// For when AddInput == pair<Key, ResultRow> (kIsFilter == false)
inline Hash GetHash(const std::pair<Key, ResultRow>& bi) const {
return GetHash(bi.first);
};
inline Index GetStart(Hash h, Index num_starts) const {
// This is "critical path" code because it's required before memory
// lookup.
//
// FastRange gives us a fast and effective mapping from h to the
// appropriate range. This depends most, sometimes exclusively, on
// upper bits of h.
//
if (TypesAndSettings::kUseSmash) {
// Extra logic to "smash" entries at beginning and end, for
// better utilization. For example, without smash and with
// kFirstCoeffAlwaysOne, there's about a 30% chance that the
// first slot in the banding will be unused, and worse without
// kFirstCoeffAlwaysOne. The ending slots are even less utilized
// without smash.
//
// But since this only affects roughly kCoeffBits of the slots,
// it's usually small enough to be ignorable (less computation in
// this function) when number of slots is roughly 10k or larger.
//
// The best values for these smash weights might depend on how
// densely you're packing entries, and also kCoeffBits, but this
// seems to work well for roughly 95% success probability.
//
constexpr Index kFrontSmash = kCoeffBits / 4;
constexpr Index kBackSmash = kCoeffBits / 4;
Index start = FastRangeGeneric(h, num_starts + kFrontSmash + kBackSmash);
start = std::max(start, kFrontSmash);
start -= kFrontSmash;
start = std::min(start, num_starts - 1);
return start;
} else {
// For query speed, we allow small number of initial and final
// entries to be under-utilized.
// NOTE: This call statically enforces that Hash is equivalent to
// either uint32_t or uint64_t.
return FastRangeGeneric(h, num_starts);
}
}
inline CoeffRow GetCoeffRow(Hash h) const {
// This is not so much "critical path" code because it can be done in
// parallel (instruction level) with memory lookup.
//
// When we might have many entries squeezed into a single start,
// we need reasonably good remixing for CoeffRow.
if (TypesAndSettings::kUseSmash) {
// Reasonably good, reasonably fast, reasonably general.
// Probably not 1:1 but probably close enough.
Unsigned128 a = Multiply64to128(h, kAltCoeffFactor1);
Unsigned128 b = Multiply64to128(h, kAltCoeffFactor2);
auto cr = static_cast<CoeffRow>(b ^ (a << 64) ^ (a >> 64));
// Now ensure the value is non-zero
if (kFirstCoeffAlwaysOne) {
cr |= 1;
} else {
// Still have to ensure some bit is non-zero
cr |= (cr == 0) ? 1 : 0;
}
return cr;
}
// If not kUseSmash, we ensure we're not squeezing many entries into a
// single start, in part by ensuring num_starts > num_slots / 2. Thus,
// here we do not need good remixing for CoeffRow, but just enough that
// (a) every bit is reasonably independent from Start.
// (b) every Hash-length bit subsequence of the CoeffRow has full or
// nearly full entropy from h.
// (c) if nontrivial bit subsequences within are correlated, it needs to
// be more complicated than exact copy or bitwise not (at least without
// kFirstCoeffAlwaysOne), or else there seems to be a kind of
// correlated clustering effect.
// (d) the CoeffRow is not zero, so that no one input on its own can
// doom construction success. (Preferably a mix of 1's and 0's if
// satisfying above.)
// First, establish sufficient bitwise independence from Start, with
// multiplication by a large random prime.
// Note that we cast to Hash because if we use product bits beyond
// original input size, that's going to correlate with Start (FastRange)
// even with a (likely) different multiplier here.
Hash a = h * kCoeffAndResultFactor;
static_assert(
sizeof(Hash) == sizeof(uint64_t) || sizeof(Hash) == sizeof(uint32_t),
"Supported sizes");
// If that's big enough, we're done. If not, we have to expand it,
// maybe up to 4x size.
uint64_t b;
if (sizeof(Hash) < sizeof(uint64_t)) {
// Almost-trivial hash expansion (OK - see above), favoring roughly
// equal number of 1's and 0's in result
b = (uint64_t{a} << 32) ^ (a ^ kCoeffXor32);
} else {
b = a;
}
static_assert(sizeof(CoeffRow) <= sizeof(Unsigned128), "Supported sizes");
Unsigned128 c;
if (sizeof(uint64_t) < sizeof(CoeffRow)) {
// Almost-trivial hash expansion (OK - see above), favoring roughly
// equal number of 1's and 0's in result
c = (Unsigned128{b} << 64) ^ (b ^ kCoeffXor64);
} else {
c = b;
}
auto cr = static_cast<CoeffRow>(c);
// Now ensure the value is non-zero
if (kFirstCoeffAlwaysOne) {
cr |= 1;
} else if (sizeof(CoeffRow) == sizeof(Hash)) {
// Still have to ensure some bit is non-zero
cr |= (cr == 0) ? 1 : 0;
} else {
// (We did trivial expansion with constant xor, which ensures some
// bits are non-zero.)
}
return cr;
}
inline ResultRow GetResultRowMask() const {
// TODO: will be used with InterleavedSolutionStorage?
// For now, all bits set (note: might be a small type so might need to
// narrow after promotion)
return static_cast<ResultRow>(~ResultRow{0});
}
inline ResultRow GetResultRowFromHash(Hash h) const {
if (TypesAndSettings::kIsFilter && !TypesAndSettings::kHomogeneous) {
// This is not so much "critical path" code because it can be done in
// parallel (instruction level) with memory lookup.
//
// ResultRow bits only needs to be independent from CoeffRow bits if
// many entries might have the same start location, where "many" is
// comparable to number of hash bits or kCoeffBits. If !kUseSmash
// and num_starts > kCoeffBits, it is safe and efficient to draw from
// the same bits computed for CoeffRow, which are reasonably
// independent from Start. (Inlining and common subexpression
// elimination with GetCoeffRow should make this
// a single shared multiplication in generated code when !kUseSmash.)
Hash a = h * kCoeffAndResultFactor;
// The bits here that are *most* independent of Start are the highest
// order bits (as in Knuth multiplicative hash). To make those the
// most preferred for use in the result row, we do a bswap here.
auto rr = static_cast<ResultRow>(EndianSwapValue(a));
return rr & GetResultRowMask();
} else {
// Must be zero
return 0;
}
}
// For when AddInput == Key (kIsFilter == true)
inline ResultRow GetResultRowFromInput(const Key&) const {
// Must be zero
return 0;
}
// For when AddInput == pair<Key, ResultRow> (kIsFilter == false)
inline ResultRow GetResultRowFromInput(
const std::pair<Key, ResultRow>& bi) const {
// Simple extraction
return bi.second;
}
// Seed tracking APIs - see class comment
void SetRawSeed(Seed seed) { raw_seed_ = seed; }
Seed GetRawSeed() { return raw_seed_; }
void SetOrdinalSeed(Seed count) {
// A simple, reversible mixing of any size (whole bytes) up to 64 bits.
// This allows casting the raw seed to any smaller size we use for
// ordinal seeds without risk of duplicate raw seeds for unique ordinal
// seeds.
// Seed type might be smaller than numerical promotion size, but Hash
// should be at least that size, so we use Hash as intermediate type.
static_assert(sizeof(Seed) <= sizeof(Hash),
"Hash must be at least size of Seed");
// Multiply by a large random prime (one-to-one for any prefix of bits)
Hash tmp = count * kToRawSeedFactor;
// Within-byte one-to-one mixing
static_assert((kSeedMixMask & (kSeedMixMask >> kSeedMixShift)) == 0,
"Illegal mask+shift");
tmp ^= (tmp & kSeedMixMask) >> kSeedMixShift;
raw_seed_ = static_cast<Seed>(tmp);
// dynamic verification
assert(GetOrdinalSeed() == count);
}
Seed GetOrdinalSeed() {
Hash tmp = raw_seed_;
// Within-byte one-to-one mixing (its own inverse)
tmp ^= (tmp & kSeedMixMask) >> kSeedMixShift;
// Multiply by 64-bit multiplicative inverse
static_assert(kToRawSeedFactor * kFromRawSeedFactor == Hash{1},
"Must be inverses");
return static_cast<Seed>(tmp * kFromRawSeedFactor);
}
protected:
// For expanding hash:
// large random prime
static constexpr Hash kCoeffAndResultFactor =
static_cast<Hash>(0xc28f82822b650bedULL);
static constexpr uint64_t kAltCoeffFactor1 = 0x876f170be4f1fcb9U;
static constexpr uint64_t kAltCoeffFactor2 = 0xf0433a4aecda4c5fU;
// random-ish data
static constexpr uint32_t kCoeffXor32 = 0xa6293635U;
static constexpr uint64_t kCoeffXor64 = 0xc367844a6e52731dU;
// For pre-mixing seeds
static constexpr Hash kSeedMixMask = static_cast<Hash>(0xf0f0f0f0f0f0f0f0ULL);
static constexpr unsigned kSeedMixShift = 4U;
static constexpr Hash kToRawSeedFactor =
static_cast<Hash>(0xc78219a23eeadd03ULL);
static constexpr Hash kFromRawSeedFactor =
static_cast<Hash>(0xfe1a137d14b475abULL);
// See class description
Seed raw_seed_ = 0;
};
// StandardRehasher (and StandardRehasherAdapter): A variant of
// StandardHasher that uses the same type for keys as for hashes.
// This is primarily intended for building a Ribbon filter
// from existing hashes without going back to original inputs in
// order to apply a different seed. This hasher seeds a 1-to-1 mixing
// transformation to apply a seed to an existing hash. (Untested for
// hash-sized keys that are not already uniformly distributed.) This
// transformation builds on the seed pre-mixing done in StandardHasher.
//
// Testing suggests essentially no degradation of solution success rate
// vs. going back to original inputs when changing hash seeds. For example:
// Average re-seeds for solution with r=128, 1.02x overhead, and ~100k keys
// is about 1.10 for both StandardHasher and StandardRehasher.
//
// StandardRehasher is not really recommended for general PHSFs (not
// filters) because a collision in the original hash could prevent
// construction despite re-seeding the Rehasher. (Such collisions
// do not interfere with filter construction.)
//
// concept RehasherTypesAndSettings: like TypesAndSettings but
// does not require Key or HashFn.
template <class RehasherTypesAndSettings>
class StandardRehasherAdapter : public RehasherTypesAndSettings {
public:
using Hash = typename RehasherTypesAndSettings::Hash;
using Key = Hash;
using Seed = typename RehasherTypesAndSettings::Seed;
static Hash HashFn(const Hash& input, Seed raw_seed) {
// Note: raw_seed is already lightly pre-mixed, and this multiplication
// by a large prime is sufficient mixing (low-to-high bits) on top of
// that for good FastRange results, which depends primarily on highest
// bits. (The hashed CoeffRow and ResultRow are less sensitive to
// mixing than Start.)
// Also note: did consider adding ^ (input >> some) before the
// multiplication, but doesn't appear to be necessary.
return (input ^ raw_seed) * kRehashFactor;
}
private:
static constexpr Hash kRehashFactor =
static_cast<Hash>(0x6193d459236a3a0dULL);
};
// See comment on StandardRehasherAdapter
template <class RehasherTypesAndSettings>
using StandardRehasher =
StandardHasher<StandardRehasherAdapter<RehasherTypesAndSettings>>;
#ifdef _MSC_VER
#pragma warning(pop)
#endif
// Especially with smaller hashes (e.g. 32 bit), there can be noticeable
// false positives due to collisions in the Hash returned by GetHash.
// This function returns the expected FP rate due to those collisions,
// which can be added to the expected FP rate from the underlying data
// structure. (Note: technically, a + b is only a good approximation of
// 1-(1-a)(1-b) == a + b - a*b, if a and b are much closer to 0 than to 1.)
// The number of entries added can be a double here in case it's an
// average.
template <class Hasher, typename Numerical>
double ExpectedCollisionFpRate(const Hasher& hasher, Numerical added) {
// Standardize on the 'double' specialization
return ExpectedCollisionFpRate(hasher, 1.0 * added);
}
template <class Hasher>
double ExpectedCollisionFpRate(const Hasher& /*hasher*/, double added) {
// Technically, there could be overlap among the added, but ignoring that
// is typically close enough.
return added / std::pow(256.0, sizeof(typename Hasher::Hash));
}
// StandardBanding: a canonical implementation of BandingStorage and
// BacktrackStorage, with convenience API for banding (solving with on-the-fly
// Gaussian elimination) with and without backtracking.
template <class TypesAndSettings>
class StandardBanding : public StandardHasher<TypesAndSettings> {
public:
IMPORT_RIBBON_TYPES_AND_SETTINGS(TypesAndSettings);
StandardBanding(Index num_slots = 0, Index backtrack_size = 0) {
Reset(num_slots, backtrack_size);
}
void Reset(Index num_slots, Index backtrack_size = 0) {
if (num_slots == 0) {
// Unusual (TypesAndSettings::kAllowZeroStarts) or "uninitialized"
num_starts_ = 0;
} else {
// Normal
assert(num_slots >= kCoeffBits);
if (num_slots > num_slots_allocated_) {
coeff_rows_.reset(new CoeffRow[num_slots]());
if (!TypesAndSettings::kHomogeneous) {
// Note: don't strictly have to zero-init result_rows,
// except possible information leakage, etc ;)
result_rows_.reset(new ResultRow[num_slots]());
}
num_slots_allocated_ = num_slots;
} else {
for (Index i = 0; i < num_slots; ++i) {
coeff_rows_[i] = 0;
if (!TypesAndSettings::kHomogeneous) {
// Note: don't strictly have to zero-init result_rows,
// except possible information leakage, etc ;)
result_rows_[i] = 0;
}
}
}
num_starts_ = num_slots - kCoeffBits + 1;
}
EnsureBacktrackSize(backtrack_size);
}
void EnsureBacktrackSize(Index backtrack_size) {
if (backtrack_size > backtrack_size_) {
backtrack_.reset(new Index[backtrack_size]);
backtrack_size_ = backtrack_size;
}
}
// ********************************************************************
// From concept BandingStorage
inline bool UsePrefetch() const {
// A rough guesstimate of when prefetching during construction pays off.
// TODO: verify/validate
return num_starts_ > 1500;
}
inline void Prefetch(Index i) const {
PREFETCH(&coeff_rows_[i], 1 /* rw */, 1 /* locality */);
if (!TypesAndSettings::kHomogeneous) {
PREFETCH(&result_rows_[i], 1 /* rw */, 1 /* locality */);
}
}
inline void LoadRow(Index i, CoeffRow* cr, ResultRow* rr,
bool for_back_subst) const {
*cr = coeff_rows_[i];
if (TypesAndSettings::kHomogeneous) {
if (for_back_subst && *cr == 0) {
// Cheap pseudorandom data to fill unconstrained solution rows
*rr = static_cast<ResultRow>(i * 0x9E3779B185EBCA87ULL);
} else {
*rr = 0;
}
} else {
*rr = result_rows_[i];
}
}
inline void StoreRow(Index i, CoeffRow cr, ResultRow rr) {
coeff_rows_[i] = cr;
if (TypesAndSettings::kHomogeneous) {
assert(rr == 0);
} else {
result_rows_[i] = rr;
}
}
inline Index GetNumStarts() const { return num_starts_; }
// from concept BacktrackStorage, for when backtracking is used
inline bool UseBacktrack() const { return true; }
inline void BacktrackPut(Index i, Index to_save) { backtrack_[i] = to_save; }
inline Index BacktrackGet(Index i) const { return backtrack_[i]; }
// ********************************************************************
// Some useful API, still somewhat low level. Here an input is
// a Key for filters, or std::pair<Key, ResultRow> for general PHSF.
// Adds a range of inputs to the banding, returning true if successful.
// False means none or some may have been successfully added, so it's
// best to Reset this banding before any further use.
//
// Adding can fail even before all the "slots" are completely "full".
//
template <typename InputIterator>
bool AddRange(InputIterator begin, InputIterator end) {
assert(num_starts_ > 0 || TypesAndSettings::kAllowZeroStarts);
if (TypesAndSettings::kAllowZeroStarts && num_starts_ == 0) {
// Unusual. Can't add any in this case.
return begin == end;
}
// Normal
return BandingAddRange(this, *this, begin, end);
}
// Adds a range of inputs to the banding, returning true if successful,
// or if unsuccessful, rolls back to state before this call and returns
// false. Caller guarantees that the number of inputs in this batch
// does not exceed `backtrack_size` provided to Reset.
//
// Adding can fail even before all the "slots" are completely "full".
//
template <typename InputIterator>
bool AddRangeOrRollBack(InputIterator begin, InputIterator end) {
assert(num_starts_ > 0 || TypesAndSettings::kAllowZeroStarts);
if (TypesAndSettings::kAllowZeroStarts && num_starts_ == 0) {
// Unusual. Can't add any in this case.
return begin == end;
}
// else Normal
return BandingAddRange(this, this, *this, begin, end);
}
// Adds a single input to the banding, returning true if successful.
// If unsuccessful, returns false and banding state is unchanged.
//
// Adding can fail even before all the "slots" are completely "full".
//
bool Add(const AddInput& input) {
// Pointer can act as iterator
return AddRange(&input, &input + 1);
}
// Return the number of "occupied" rows (with non-zero coefficients stored).
Index GetOccupiedCount() const {
Index count = 0;
if (num_starts_ > 0) {
const Index num_slots = num_starts_ + kCoeffBits - 1;
for (Index i = 0; i < num_slots; ++i) {
if (coeff_rows_[i] != 0) {
++count;
}
}
}
return count;
}
// Returns whether a row is "occupied" in the banding (non-zero
// coefficients stored). (Only recommended for debug/test)
bool IsOccupied(Index i) { return coeff_rows_[i] != 0; }
// ********************************************************************
// High-level API
// Iteratively (a) resets the structure for `num_slots`, (b) attempts
// to add the range of inputs, and (c) if unsuccessful, chooses next
// hash seed, until either successful or unsuccessful with all the
// allowed seeds. Returns true if successful. In that case, use
// GetOrdinalSeed() or GetRawSeed() to get the successful seed.
//
// The allowed sequence of hash seeds is determined by
// `starting_ordinal_seed,` the first ordinal seed to be attempted
// (see StandardHasher), and `ordinal_seed_mask,` a bit mask (power of
// two minus one) for the range of ordinal seeds to consider. The
// max number of seeds considered will be ordinal_seed_mask + 1.
// For filters we suggest `starting_ordinal_seed` be chosen randomly
// or round-robin, to minimize false positive correlations between keys.
//
// If unsuccessful, how best to continue is going to be application
// specific. It should be possible to choose parameters such that
// failure is extremely unlikely, using max_seed around 32 to 64.
// (TODO: APIs to help choose parameters) One option for fallback in
// constructing a filter is to construct a Bloom filter instead.
// Increasing num_slots is an option, but should not be used often
// unless construction maximum latency is a concern (rather than
// average running time of construction). Instead, choose parameters
// appropriately and trust that seeds are independent. (Also,
// increasing num_slots without changing hash seed would have a
// significant correlation in success, rather than independence.)
template <typename InputIterator>
bool ResetAndFindSeedToSolve(Index num_slots, InputIterator begin,
InputIterator end,
Seed starting_ordinal_seed = 0U,
Seed ordinal_seed_mask = 63U) {
// power of 2 minus 1
assert((ordinal_seed_mask & (ordinal_seed_mask + 1)) == 0);
// starting seed is within mask
assert((starting_ordinal_seed & ordinal_seed_mask) ==
starting_ordinal_seed);
starting_ordinal_seed &= ordinal_seed_mask; // if not debug
Seed cur_ordinal_seed = starting_ordinal_seed;
do {
StandardHasher<TypesAndSettings>::SetOrdinalSeed(cur_ordinal_seed);
Reset(num_slots);
bool success = AddRange(begin, end);
if (success) {
return true;
}
cur_ordinal_seed = (cur_ordinal_seed + 1) & ordinal_seed_mask;
} while (cur_ordinal_seed != starting_ordinal_seed);
// Reached limit by circling around
return false;
}
static std::size_t EstimateMemoryUsage(uint32_t num_slots) {
std::size_t bytes_coeff_rows = num_slots * sizeof(CoeffRow);
std::size_t bytes_result_rows = num_slots * sizeof(ResultRow);
std::size_t bytes_backtrack = 0;
std::size_t bytes_banding =
bytes_coeff_rows + bytes_result_rows + bytes_backtrack;
return bytes_banding;
}
protected:
// TODO: explore combining in a struct
std::unique_ptr<CoeffRow[]> coeff_rows_;
std::unique_ptr<ResultRow[]> result_rows_;
// We generally store "starts" instead of slots for speed of GetStart(),
// as in StandardHasher.
Index num_starts_ = 0;
Index num_slots_allocated_ = 0;
std::unique_ptr<Index[]> backtrack_;
Index backtrack_size_ = 0;
};
// Implements concept SimpleSolutionStorage, mostly for demonstration
// purposes. This is "in memory" only because it does not handle byte
// ordering issues for serialization.
template <class TypesAndSettings>
class InMemSimpleSolution {
public:
IMPORT_RIBBON_TYPES_AND_SETTINGS(TypesAndSettings);
void PrepareForNumStarts(Index num_starts) {
if (TypesAndSettings::kAllowZeroStarts && num_starts == 0) {
// Unusual
num_starts_ = 0;
} else {
// Normal
const Index num_slots = num_starts + kCoeffBits - 1;
assert(num_slots >= kCoeffBits);
if (num_slots > num_slots_allocated_) {
// Do not need to init the memory
solution_rows_.reset(new ResultRow[num_slots]);
num_slots_allocated_ = num_slots;
}
num_starts_ = num_starts;
}
}
Index GetNumStarts() const { return num_starts_; }
ResultRow Load(Index slot_num) const { return solution_rows_[slot_num]; }
void Store(Index slot_num, ResultRow solution_row) {
solution_rows_[slot_num] = solution_row;
}
// ********************************************************************
// High-level API
template <typename BandingStorage>
void BackSubstFrom(const BandingStorage& bs) {
if (TypesAndSettings::kAllowZeroStarts && bs.GetNumStarts() == 0) {
// Unusual
PrepareForNumStarts(0);
} else {
// Normal
SimpleBackSubst(this, bs);
}
}
template <typename PhsfQueryHasher>
ResultRow PhsfQuery(const Key& input, const PhsfQueryHasher& hasher) const {
// assert(!TypesAndSettings::kIsFilter); Can be useful in testing
if (TypesAndSettings::kAllowZeroStarts && num_starts_ == 0) {
// Unusual
return 0;
} else {
// Normal
return SimplePhsfQuery(input, hasher, *this);
}
}
template <typename FilterQueryHasher>
bool FilterQuery(const Key& input, const FilterQueryHasher& hasher) const {
assert(TypesAndSettings::kIsFilter);
if (TypesAndSettings::kAllowZeroStarts && num_starts_ == 0) {
// Unusual. Zero starts presumes no keys added -> always false
return false;
} else {
// Normal, or upper_num_columns_ == 0 means "no space for data" and
// thus will always return true.
return SimpleFilterQuery(input, hasher, *this);
}
}
double ExpectedFpRate() const {
assert(TypesAndSettings::kIsFilter);
if (TypesAndSettings::kAllowZeroStarts && num_starts_ == 0) {
// Unusual, but we don't have FPs if we always return false.
return 0.0;
}
// else Normal
// Each result (solution) bit (column) cuts FP rate in half
return std::pow(0.5, 8U * sizeof(ResultRow));
}
// ********************************************************************
// Static high-level API
// Round up to a number of slots supported by this structure. Note that
// this needs to be must be taken into account for the banding if this
// solution layout/storage is to be used.
static Index RoundUpNumSlots(Index num_slots) {
// Must be at least kCoeffBits for at least one start
// Or if not smash, even more because hashing not equipped
// for stacking up so many entries on a single start location
auto min_slots = kCoeffBits * (TypesAndSettings::kUseSmash ? 1 : 2);
return std::max(num_slots, static_cast<Index>(min_slots));
}
protected:
// We generally store "starts" instead of slots for speed of GetStart(),
// as in StandardHasher.
Index num_starts_ = 0;
Index num_slots_allocated_ = 0;
std::unique_ptr<ResultRow[]> solution_rows_;
};
// Implements concept InterleavedSolutionStorage always using little-endian
// byte order, so easy for serialization/deserialization. This implementation
// fully supports fractional bits per key, where any number of segments
// (number of bytes multiple of sizeof(CoeffRow)) can be used with any number
// of slots that is a multiple of kCoeffBits.
//
// The structure is passed an externally allocated/de-allocated byte buffer
// that is optionally pre-populated (from storage) for answering queries,
// or can be populated by BackSubstFrom.
//
template <class TypesAndSettings>
class SerializableInterleavedSolution {
public:
IMPORT_RIBBON_TYPES_AND_SETTINGS(TypesAndSettings);
// Does not take ownership of `data` but uses it (up to `data_len` bytes)
// throughout lifetime
SerializableInterleavedSolution(char* data, size_t data_len)
: data_(data), data_len_(data_len) {}
void PrepareForNumStarts(Index num_starts) {
assert(num_starts == 0 || (num_starts % kCoeffBits == 1));
num_starts_ = num_starts;
InternalConfigure();
}
Index GetNumStarts() const { return num_starts_; }
Index GetNumBlocks() const {
const Index num_slots = num_starts_ + kCoeffBits - 1;
return num_slots / kCoeffBits;
}
Index GetUpperNumColumns() const { return upper_num_columns_; }
Index GetUpperStartBlock() const { return upper_start_block_; }
Index GetNumSegments() const {
return static_cast<Index>(data_len_ / sizeof(CoeffRow));
}
CoeffRow LoadSegment(Index segment_num) const {
assert(data_ != nullptr); // suppress clang analyzer report
return DecodeFixedGeneric<CoeffRow>(data_ + segment_num * sizeof(CoeffRow));
}
void StoreSegment(Index segment_num, CoeffRow val) {
assert(data_ != nullptr); // suppress clang analyzer report
EncodeFixedGeneric(data_ + segment_num * sizeof(CoeffRow), val);
}
void PrefetchSegmentRange(Index begin_segment_num,
Index end_segment_num) const {
if (end_segment_num == begin_segment_num) {
// Nothing to do
return;
}
char* cur = data_ + begin_segment_num * sizeof(CoeffRow);
char* last = data_ + (end_segment_num - 1) * sizeof(CoeffRow);
while (cur < last) {
PREFETCH(cur, 0 /* rw */, 1 /* locality */);
cur += CACHE_LINE_SIZE;
}
PREFETCH(last, 0 /* rw */, 1 /* locality */);
}
// ********************************************************************
// High-level API
void ConfigureForNumBlocks(Index num_blocks) {
if (num_blocks == 0) {
PrepareForNumStarts(0);
} else {
PrepareForNumStarts(num_blocks * kCoeffBits - kCoeffBits + 1);
}
}
void ConfigureForNumSlots(Index num_slots) {
assert(num_slots % kCoeffBits == 0);
ConfigureForNumBlocks(num_slots / kCoeffBits);
}
template <typename BandingStorage>
void BackSubstFrom(const BandingStorage& bs) {
if (TypesAndSettings::kAllowZeroStarts && bs.GetNumStarts() == 0) {
// Unusual
PrepareForNumStarts(0);
} else {
// Normal
InterleavedBackSubst(this, bs);
}
}
template <typename PhsfQueryHasher>
ResultRow PhsfQuery(const Key& input, const PhsfQueryHasher& hasher) const {
// assert(!TypesAndSettings::kIsFilter); Can be useful in testing
if (TypesAndSettings::kAllowZeroStarts && num_starts_ == 0) {
// Unusual
return 0;
} else {
// Normal
// NOTE: not using a struct to encourage compiler optimization
Hash hash;
Index segment_num;
Index num_columns;
Index start_bit;
InterleavedPrepareQuery(input, hasher, *this, &hash, &segment_num,
&num_columns, &start_bit);
return InterleavedPhsfQuery(hash, segment_num, num_columns, start_bit,
hasher, *this);
}
}
template <typename FilterQueryHasher>
bool FilterQuery(const Key& input, const FilterQueryHasher& hasher) const {
assert(TypesAndSettings::kIsFilter);
if (TypesAndSettings::kAllowZeroStarts && num_starts_ == 0) {
// Unusual. Zero starts presumes no keys added -> always false
return false;
} else {
// Normal, or upper_num_columns_ == 0 means "no space for data" and
// thus will always return true.
// NOTE: not using a struct to encourage compiler optimization
Hash hash;
Index segment_num;
Index num_columns;
Index start_bit;
InterleavedPrepareQuery(input, hasher, *this, &hash, &segment_num,
&num_columns, &start_bit);
return InterleavedFilterQuery(hash, segment_num, num_columns, start_bit,
hasher, *this);
}
}
double ExpectedFpRate() const {
assert(TypesAndSettings::kIsFilter);
if (TypesAndSettings::kAllowZeroStarts && num_starts_ == 0) {
// Unusual. Zero starts presumes no keys added -> always false
return 0.0;
}
// else Normal
// Note: Ignoring smash setting; still close enough in that case
double lower_portion =
(upper_start_block_ * 1.0 * kCoeffBits) / num_starts_;
// Each result (solution) bit (column) cuts FP rate in half. Weight that
// for upper and lower number of bits (columns).
return lower_portion * std::pow(0.5, upper_num_columns_ - 1) +
(1.0 - lower_portion) * std::pow(0.5, upper_num_columns_);
}
// ********************************************************************
// Static high-level API
// Round up to a number of slots supported by this structure. Note that
// this needs to be must be taken into account for the banding if this
// solution layout/storage is to be used.
static Index RoundUpNumSlots(Index num_slots) {
// Must be multiple of kCoeffBits
Index corrected = (num_slots + kCoeffBits - 1) / kCoeffBits * kCoeffBits;
// Do not use num_starts==1 unless kUseSmash, because the hashing
// might not be equipped for stacking up so many entries on a
// single start location.
if (!TypesAndSettings::kUseSmash && corrected == kCoeffBits) {
corrected += kCoeffBits;
}
return corrected;
}
// Round down to a number of slots supported by this structure. Note that
// this needs to be must be taken into account for the banding if this
// solution layout/storage is to be used.
static Index RoundDownNumSlots(Index num_slots) {
// Must be multiple of kCoeffBits
Index corrected = num_slots / kCoeffBits * kCoeffBits;
// Do not use num_starts==1 unless kUseSmash, because the hashing
// might not be equipped for stacking up so many entries on a
// single start location.
if (!TypesAndSettings::kUseSmash && corrected == kCoeffBits) {
corrected = 0;
}
return corrected;
}
// Compute the number of bytes for a given number of slots and desired
// FP rate. Since desired FP rate might not be exactly achievable,
// rounding_bias32==0 means to always round toward lower FP rate
// than desired (more bytes); rounding_bias32==max uint32_t means always
// round toward higher FP rate than desired (fewer bytes); other values
// act as a proportional threshold or bias between the two.
static size_t GetBytesForFpRate(Index num_slots, double desired_fp_rate,
uint32_t rounding_bias32) {
return InternalGetBytesForFpRate(num_slots, desired_fp_rate,
1.0 / desired_fp_rate, rounding_bias32);
}
// The same, but specifying desired accuracy as 1.0 / FP rate, or
// one_in_fp_rate. E.g. desired_one_in_fp_rate=100 means 1% FP rate.
static size_t GetBytesForOneInFpRate(Index num_slots,
double desired_one_in_fp_rate,
uint32_t rounding_bias32) {
return InternalGetBytesForFpRate(num_slots, 1.0 / desired_one_in_fp_rate,
desired_one_in_fp_rate, rounding_bias32);
}
protected:
static size_t InternalGetBytesForFpRate(Index num_slots,
double desired_fp_rate,
double desired_one_in_fp_rate,
uint32_t rounding_bias32) {
assert(TypesAndSettings::kIsFilter);
if (TypesAndSettings::kAllowZeroStarts) {
if (num_slots == 0) {
// Unusual. Zero starts presumes no keys added -> always false (no FPs)
return 0U;
}
} else {
assert(num_slots > 0);
}
// Must be rounded up already.
assert(RoundUpNumSlots(num_slots) == num_slots);
if (desired_one_in_fp_rate > 1.0 && desired_fp_rate < 1.0) {
// Typical: less than 100% FP rate
if (desired_one_in_fp_rate <= static_cast<ResultRow>(-1)) {
// Typical: Less than maximum result row entropy
ResultRow rounded = static_cast<ResultRow>(desired_one_in_fp_rate);
int lower_columns = FloorLog2(rounded);
double lower_columns_fp_rate = std::pow(2.0, -lower_columns);
double upper_columns_fp_rate = std::pow(2.0, -(lower_columns + 1));
// Floating point don't let me down!
assert(lower_columns_fp_rate >= desired_fp_rate);
assert(upper_columns_fp_rate <= desired_fp_rate);
double lower_portion = (desired_fp_rate - upper_columns_fp_rate) /
(lower_columns_fp_rate - upper_columns_fp_rate);
// Floating point don't let me down!
assert(lower_portion >= 0.0);
assert(lower_portion <= 1.0);
double rounding_bias = (rounding_bias32 + 0.5) / double{0x100000000};
assert(rounding_bias > 0.0);
assert(rounding_bias < 1.0);
// Note: Ignoring smash setting; still close enough in that case
Index num_starts = num_slots - kCoeffBits + 1;
// Lower upper_start_block means lower FP rate (higher accuracy)
Index upper_start_block = static_cast<Index>(
(lower_portion * num_starts + rounding_bias) / kCoeffBits);
Index num_blocks = num_slots / kCoeffBits;
assert(upper_start_block < num_blocks);
// Start by assuming all blocks use lower number of columns
Index num_segments = num_blocks * static_cast<Index>(lower_columns);
// Correct by 1 each for blocks using upper number of columns
num_segments += (num_blocks - upper_start_block);
// Total bytes
return num_segments * sizeof(CoeffRow);
} else {
// one_in_fp_rate too big, thus requested FP rate is smaller than
// supported. Use max number of columns for minimum supported FP rate.
return num_slots * sizeof(ResultRow);
}
} else {
// Effectively asking for 100% FP rate, or NaN etc.
if (TypesAndSettings::kAllowZeroStarts) {
// Zero segments
return 0U;
} else {
// One segment (minimum size, maximizing FP rate)
return sizeof(CoeffRow);
}
}
}
void InternalConfigure() {
const Index num_blocks = GetNumBlocks();
Index num_segments = GetNumSegments();
if (num_blocks == 0) {
// Exceptional
upper_num_columns_ = 0;
upper_start_block_ = 0;
} else {
// Normal
upper_num_columns_ =
(num_segments + /*round up*/ num_blocks - 1) / num_blocks;
upper_start_block_ = upper_num_columns_ * num_blocks - num_segments;
// Unless that's more columns than supported by ResultRow data type
if (upper_num_columns_ > 8U * sizeof(ResultRow)) {
// Use maximum columns (there will be space unused)
upper_num_columns_ = static_cast<Index>(8U * sizeof(ResultRow));
upper_start_block_ = 0;
num_segments = num_blocks * upper_num_columns_;
}
}
// Update data_len_ for correct rounding and/or unused space
// NOTE: unused space stays gone if we PrepareForNumStarts again.
// We are prioritizing minimizing the number of fields over making
// the "unusued space" feature work well.
data_len_ = num_segments * sizeof(CoeffRow);
}
char* const data_;
size_t data_len_;
Index num_starts_ = 0;
Index upper_num_columns_ = 0;
Index upper_start_block_ = 0;
};
} // namespace ribbon
} // namespace ROCKSDB_NAMESPACE
// For convenience working with templates
#define IMPORT_RIBBON_IMPL_TYPES(TypesAndSettings) \
using Hasher = ROCKSDB_NAMESPACE::ribbon::StandardHasher<TypesAndSettings>; \
using Banding = \
ROCKSDB_NAMESPACE::ribbon::StandardBanding<TypesAndSettings>; \
using SimpleSoln = \
ROCKSDB_NAMESPACE::ribbon::InMemSimpleSolution<TypesAndSettings>; \
using InterleavedSoln = \
ROCKSDB_NAMESPACE::ribbon::SerializableInterleavedSolution< \
TypesAndSettings>; \
static_assert(sizeof(Hasher) + sizeof(Banding) + sizeof(SimpleSoln) + \
sizeof(InterleavedSoln) > \
0, \
"avoid unused warnings, semicolon expected after macro call")