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1341 lines
62 KiB
C++
1341 lines
62 KiB
C++
// Copyright (c) The Bitcoin Core developers
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// Distributed under the MIT software license, see the accompanying
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// file COPYING or http://www.opensource.org/licenses/mit-license.php.
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#ifndef BITCOIN_CLUSTER_LINEARIZE_H
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#define BITCOIN_CLUSTER_LINEARIZE_H
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#include <algorithm>
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#include <numeric>
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#include <optional>
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#include <stdint.h>
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#include <vector>
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#include <utility>
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#include <random.h>
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#include <span.h>
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#include <util/feefrac.h>
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#include <util/vecdeque.h>
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namespace cluster_linearize {
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/** Data type to represent transaction indices in clusters. */
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using ClusterIndex = uint32_t;
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/** Data structure that holds a transaction graph's preprocessed data (fee, size, ancestors,
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* descendants). */
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template<typename SetType>
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class DepGraph
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{
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/** Information about a single transaction. */
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struct Entry
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{
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/** Fee and size of transaction itself. */
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FeeFrac feerate;
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/** All ancestors of the transaction (including itself). */
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SetType ancestors;
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/** All descendants of the transaction (including itself). */
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SetType descendants;
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/** Equality operator (primarily for for testing purposes). */
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friend bool operator==(const Entry&, const Entry&) noexcept = default;
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/** Construct an empty entry. */
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Entry() noexcept = default;
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/** Construct an entry with a given feerate, ancestor set, descendant set. */
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Entry(const FeeFrac& f, const SetType& a, const SetType& d) noexcept : feerate(f), ancestors(a), descendants(d) {}
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};
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/** Data for each transaction. */
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std::vector<Entry> entries;
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/** Which positions are used. */
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SetType m_used;
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public:
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/** Equality operator (primarily for testing purposes). */
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friend bool operator==(const DepGraph& a, const DepGraph& b) noexcept
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{
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if (a.m_used != b.m_used) return false;
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// Only compare the used positions within the entries vector.
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for (auto idx : a.m_used) {
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if (a.entries[idx] != b.entries[idx]) return false;
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}
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return true;
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}
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// Default constructors.
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DepGraph() noexcept = default;
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DepGraph(const DepGraph&) noexcept = default;
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DepGraph(DepGraph&&) noexcept = default;
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DepGraph& operator=(const DepGraph&) noexcept = default;
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DepGraph& operator=(DepGraph&&) noexcept = default;
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/** Construct a DepGraph object given another DepGraph and a mapping from old to new.
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*
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* @param depgraph The original DepGraph that is being remapped.
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*
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* @param mapping A Span such that mapping[i] gives the position in the new DepGraph
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* for position i in the old depgraph. Its size must be equal to
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* depgraph.PositionRange(). The value of mapping[i] is ignored if
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* position i is a hole in depgraph (i.e., if !depgraph.Positions()[i]).
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*
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* @param pos_range The PositionRange() for the new DepGraph. It must equal the largest
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* value in mapping for any used position in depgraph plus 1, or 0 if
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* depgraph.TxCount() == 0.
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*
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* Complexity: O(N^2) where N=depgraph.TxCount().
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*/
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DepGraph(const DepGraph<SetType>& depgraph, Span<const ClusterIndex> mapping, ClusterIndex pos_range) noexcept : entries(pos_range)
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{
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Assume(mapping.size() == depgraph.PositionRange());
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Assume((pos_range == 0) == (depgraph.TxCount() == 0));
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for (ClusterIndex i : depgraph.Positions()) {
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auto new_idx = mapping[i];
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Assume(new_idx < pos_range);
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// Add transaction.
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entries[new_idx].ancestors = SetType::Singleton(new_idx);
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entries[new_idx].descendants = SetType::Singleton(new_idx);
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m_used.Set(new_idx);
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// Fill in fee and size.
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entries[new_idx].feerate = depgraph.entries[i].feerate;
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}
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for (ClusterIndex i : depgraph.Positions()) {
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// Fill in dependencies by mapping direct parents.
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SetType parents;
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for (auto j : depgraph.GetReducedParents(i)) parents.Set(mapping[j]);
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AddDependencies(parents, mapping[i]);
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}
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// Verify that the provided pos_range was correct (no unused positions at the end).
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Assume(m_used.None() ? (pos_range == 0) : (pos_range == m_used.Last() + 1));
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}
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/** Get the set of transactions positions in use. Complexity: O(1). */
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const SetType& Positions() const noexcept { return m_used; }
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/** Get the range of positions in this DepGraph. All entries in Positions() are in [0, PositionRange() - 1]. */
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ClusterIndex PositionRange() const noexcept { return entries.size(); }
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/** Get the number of transactions in the graph. Complexity: O(1). */
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auto TxCount() const noexcept { return m_used.Count(); }
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/** Get the feerate of a given transaction i. Complexity: O(1). */
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const FeeFrac& FeeRate(ClusterIndex i) const noexcept { return entries[i].feerate; }
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/** Get the mutable feerate of a given transaction i. Complexity: O(1). */
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FeeFrac& FeeRate(ClusterIndex i) noexcept { return entries[i].feerate; }
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/** Get the ancestors of a given transaction i. Complexity: O(1). */
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const SetType& Ancestors(ClusterIndex i) const noexcept { return entries[i].ancestors; }
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/** Get the descendants of a given transaction i. Complexity: O(1). */
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const SetType& Descendants(ClusterIndex i) const noexcept { return entries[i].descendants; }
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/** Add a new unconnected transaction to this transaction graph (in the first available
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* position), and return its ClusterIndex.
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*
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* Complexity: O(1) (amortized, due to resizing of backing vector).
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*/
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ClusterIndex AddTransaction(const FeeFrac& feefrac) noexcept
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{
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static constexpr auto ALL_POSITIONS = SetType::Fill(SetType::Size());
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auto available = ALL_POSITIONS - m_used;
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Assume(available.Any());
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ClusterIndex new_idx = available.First();
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if (new_idx == entries.size()) {
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entries.emplace_back(feefrac, SetType::Singleton(new_idx), SetType::Singleton(new_idx));
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} else {
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entries[new_idx] = Entry(feefrac, SetType::Singleton(new_idx), SetType::Singleton(new_idx));
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}
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m_used.Set(new_idx);
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return new_idx;
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}
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/** Remove the specified positions from this DepGraph.
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*
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* The specified positions will no longer be part of Positions(), and dependencies with them are
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* removed. Note that due to DepGraph only tracking ancestors/descendants (and not direct
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* dependencies), if a parent is removed while a grandparent remains, the grandparent will
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* remain an ancestor.
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*
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* Complexity: O(N) where N=TxCount().
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*/
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void RemoveTransactions(const SetType& del) noexcept
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{
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m_used -= del;
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// Remove now-unused trailing entries.
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while (!entries.empty() && !m_used[entries.size() - 1]) {
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entries.pop_back();
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}
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// Remove the deleted transactions from ancestors/descendants of other transactions. Note
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// that the deleted positions will retain old feerate and dependency information. This does
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// not matter as they will be overwritten by AddTransaction if they get used again.
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for (auto& entry : entries) {
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entry.ancestors &= m_used;
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entry.descendants &= m_used;
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}
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}
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/** Modify this transaction graph, adding multiple parents to a specified child.
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*
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* Complexity: O(N) where N=TxCount().
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*/
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void AddDependencies(const SetType& parents, ClusterIndex child) noexcept
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{
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Assume(m_used[child]);
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Assume(parents.IsSubsetOf(m_used));
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// Compute the ancestors of parents that are not already ancestors of child.
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SetType par_anc;
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for (auto par : parents - Ancestors(child)) {
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par_anc |= Ancestors(par);
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}
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par_anc -= Ancestors(child);
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// Bail out if there are no such ancestors.
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if (par_anc.None()) return;
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// To each such ancestor, add as descendants the descendants of the child.
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const auto& chl_des = entries[child].descendants;
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for (auto anc_of_par : par_anc) {
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entries[anc_of_par].descendants |= chl_des;
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}
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// To each descendant of the child, add those ancestors.
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for (auto dec_of_chl : Descendants(child)) {
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entries[dec_of_chl].ancestors |= par_anc;
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}
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}
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/** Compute the (reduced) set of parents of node i in this graph.
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*
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* This returns the minimal subset of the parents of i whose ancestors together equal all of
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* i's ancestors (unless i is part of a cycle of dependencies). Note that DepGraph does not
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* store the set of parents; this information is inferred from the ancestor sets.
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*
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* Complexity: O(N) where N=Ancestors(i).Count() (which is bounded by TxCount()).
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*/
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SetType GetReducedParents(ClusterIndex i) const noexcept
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{
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SetType parents = Ancestors(i);
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parents.Reset(i);
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for (auto parent : parents) {
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if (parents[parent]) {
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parents -= Ancestors(parent);
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parents.Set(parent);
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}
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}
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return parents;
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}
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/** Compute the (reduced) set of children of node i in this graph.
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*
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* This returns the minimal subset of the children of i whose descendants together equal all of
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* i's descendants (unless i is part of a cycle of dependencies). Note that DepGraph does not
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* store the set of children; this information is inferred from the descendant sets.
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*
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* Complexity: O(N) where N=Descendants(i).Count() (which is bounded by TxCount()).
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*/
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SetType GetReducedChildren(ClusterIndex i) const noexcept
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{
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SetType children = Descendants(i);
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children.Reset(i);
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for (auto child : children) {
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if (children[child]) {
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children -= Descendants(child);
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children.Set(child);
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}
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}
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return children;
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}
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/** Compute the aggregate feerate of a set of nodes in this graph.
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*
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* Complexity: O(N) where N=elems.Count().
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**/
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FeeFrac FeeRate(const SetType& elems) const noexcept
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{
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FeeFrac ret;
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for (auto pos : elems) ret += entries[pos].feerate;
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return ret;
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}
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/** Find some connected component within the subset "todo" of this graph.
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*
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* Specifically, this finds the connected component which contains the first transaction of
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* todo (if any).
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*
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* Two transactions are considered connected if they are both in `todo`, and one is an ancestor
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* of the other in the entire graph (so not just within `todo`), or transitively there is a
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* path of transactions connecting them. This does mean that if `todo` contains a transaction
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* and a grandparent, but misses the parent, they will still be part of the same component.
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*
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* Complexity: O(ret.Count()).
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*/
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SetType FindConnectedComponent(const SetType& todo) const noexcept
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{
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if (todo.None()) return todo;
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auto to_add = SetType::Singleton(todo.First());
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SetType ret;
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do {
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SetType old = ret;
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for (auto add : to_add) {
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ret |= Descendants(add);
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ret |= Ancestors(add);
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}
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ret &= todo;
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to_add = ret - old;
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} while (to_add.Any());
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return ret;
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}
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/** Determine if a subset is connected.
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*
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* Complexity: O(subset.Count()).
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*/
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bool IsConnected(const SetType& subset) const noexcept
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{
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return FindConnectedComponent(subset) == subset;
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}
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/** Determine if this entire graph is connected.
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*
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* Complexity: O(TxCount()).
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*/
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bool IsConnected() const noexcept { return IsConnected(m_used); }
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/** Append the entries of select to list in a topologically valid order.
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*
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* Complexity: O(select.Count() * log(select.Count())).
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*/
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void AppendTopo(std::vector<ClusterIndex>& list, const SetType& select) const noexcept
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{
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ClusterIndex old_len = list.size();
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for (auto i : select) list.push_back(i);
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std::sort(list.begin() + old_len, list.end(), [&](ClusterIndex a, ClusterIndex b) noexcept {
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const auto a_anc_count = entries[a].ancestors.Count();
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const auto b_anc_count = entries[b].ancestors.Count();
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if (a_anc_count != b_anc_count) return a_anc_count < b_anc_count;
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return a < b;
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});
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}
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};
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/** A set of transactions together with their aggregate feerate. */
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template<typename SetType>
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struct SetInfo
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{
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/** The transactions in the set. */
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SetType transactions;
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/** Their combined fee and size. */
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FeeFrac feerate;
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/** Construct a SetInfo for the empty set. */
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SetInfo() noexcept = default;
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/** Construct a SetInfo for a specified set and feerate. */
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SetInfo(const SetType& txn, const FeeFrac& fr) noexcept : transactions(txn), feerate(fr) {}
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/** Construct a SetInfo for a given transaction in a depgraph. */
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explicit SetInfo(const DepGraph<SetType>& depgraph, ClusterIndex pos) noexcept :
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transactions(SetType::Singleton(pos)), feerate(depgraph.FeeRate(pos)) {}
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/** Construct a SetInfo for a set of transactions in a depgraph. */
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explicit SetInfo(const DepGraph<SetType>& depgraph, const SetType& txn) noexcept :
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transactions(txn), feerate(depgraph.FeeRate(txn)) {}
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/** Add a transaction to this SetInfo (which must not yet be in it). */
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void Set(const DepGraph<SetType>& depgraph, ClusterIndex pos) noexcept
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{
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Assume(!transactions[pos]);
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transactions.Set(pos);
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feerate += depgraph.FeeRate(pos);
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}
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/** Add the transactions of other to this SetInfo (no overlap allowed). */
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SetInfo& operator|=(const SetInfo& other) noexcept
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{
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Assume(!transactions.Overlaps(other.transactions));
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transactions |= other.transactions;
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feerate += other.feerate;
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return *this;
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}
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/** Construct a new SetInfo equal to this, with more transactions added (which may overlap
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* with the existing transactions in the SetInfo). */
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[[nodiscard]] SetInfo Add(const DepGraph<SetType>& depgraph, const SetType& txn) const noexcept
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{
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return {transactions | txn, feerate + depgraph.FeeRate(txn - transactions)};
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}
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/** Swap two SetInfo objects. */
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friend void swap(SetInfo& a, SetInfo& b) noexcept
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{
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swap(a.transactions, b.transactions);
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swap(a.feerate, b.feerate);
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}
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/** Permit equality testing. */
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friend bool operator==(const SetInfo&, const SetInfo&) noexcept = default;
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};
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/** Compute the feerates of the chunks of linearization. */
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template<typename SetType>
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std::vector<FeeFrac> ChunkLinearization(const DepGraph<SetType>& depgraph, Span<const ClusterIndex> linearization) noexcept
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{
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std::vector<FeeFrac> ret;
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for (ClusterIndex i : linearization) {
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/** The new chunk to be added, initially a singleton. */
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auto new_chunk = depgraph.FeeRate(i);
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// As long as the new chunk has a higher feerate than the last chunk so far, absorb it.
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while (!ret.empty() && new_chunk >> ret.back()) {
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new_chunk += ret.back();
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ret.pop_back();
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}
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// Actually move that new chunk into the chunking.
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ret.push_back(std::move(new_chunk));
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}
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return ret;
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}
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/** Data structure encapsulating the chunking of a linearization, permitting removal of subsets. */
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template<typename SetType>
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class LinearizationChunking
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{
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/** The depgraph this linearization is for. */
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const DepGraph<SetType>& m_depgraph;
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/** The linearization we started from, possibly with removed prefix stripped. */
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Span<const ClusterIndex> m_linearization;
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/** Chunk sets and their feerates, of what remains of the linearization. */
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std::vector<SetInfo<SetType>> m_chunks;
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/** How large a prefix of m_chunks corresponds to removed transactions. */
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ClusterIndex m_chunks_skip{0};
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/** Which transactions remain in the linearization. */
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SetType m_todo;
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/** Fill the m_chunks variable, and remove the done prefix of m_linearization. */
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void BuildChunks() noexcept
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{
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// Caller must clear m_chunks.
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Assume(m_chunks.empty());
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// Chop off the initial part of m_linearization that is already done.
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while (!m_linearization.empty() && !m_todo[m_linearization.front()]) {
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m_linearization = m_linearization.subspan(1);
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}
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// Iterate over the remaining entries in m_linearization. This is effectively the same
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// algorithm as ChunkLinearization, but supports skipping parts of the linearization and
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// keeps track of the sets themselves instead of just their feerates.
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for (auto idx : m_linearization) {
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if (!m_todo[idx]) continue;
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// Start with an initial chunk containing just element idx.
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SetInfo add(m_depgraph, idx);
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// Absorb existing final chunks into add while they have lower feerate.
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while (!m_chunks.empty() && add.feerate >> m_chunks.back().feerate) {
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add |= m_chunks.back();
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m_chunks.pop_back();
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}
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// Remember new chunk.
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m_chunks.push_back(std::move(add));
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}
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}
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public:
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/** Initialize a LinearizationSubset object for a given length of linearization. */
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explicit LinearizationChunking(const DepGraph<SetType>& depgraph LIFETIMEBOUND, Span<const ClusterIndex> lin LIFETIMEBOUND) noexcept :
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m_depgraph(depgraph), m_linearization(lin)
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{
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// Mark everything in lin as todo still.
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for (auto i : m_linearization) m_todo.Set(i);
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// Compute the initial chunking.
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m_chunks.reserve(depgraph.TxCount());
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BuildChunks();
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}
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/** Determine how many chunks remain in the linearization. */
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ClusterIndex NumChunksLeft() const noexcept { return m_chunks.size() - m_chunks_skip; }
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/** Access a chunk. Chunk 0 is the highest-feerate prefix of what remains. */
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const SetInfo<SetType>& GetChunk(ClusterIndex n) const noexcept
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{
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Assume(n + m_chunks_skip < m_chunks.size());
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return m_chunks[n + m_chunks_skip];
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}
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/** Remove some subset of transactions from the linearization. */
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void MarkDone(SetType subset) noexcept
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{
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Assume(subset.Any());
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Assume(subset.IsSubsetOf(m_todo));
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m_todo -= subset;
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if (GetChunk(0).transactions == subset) {
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// If the newly done transactions exactly match the first chunk of the remainder of
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// the linearization, we do not need to rechunk; just remember to skip one
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// additional chunk.
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++m_chunks_skip;
|
|
// With subset marked done, some prefix of m_linearization will be done now. How long
|
|
// that prefix is depends on how many done elements were interspersed with subset,
|
|
// but at least as many transactions as there are in subset.
|
|
m_linearization = m_linearization.subspan(subset.Count());
|
|
} else {
|
|
// Otherwise rechunk what remains of m_linearization.
|
|
m_chunks.clear();
|
|
m_chunks_skip = 0;
|
|
BuildChunks();
|
|
}
|
|
}
|
|
|
|
/** Find the shortest intersection between subset and the prefixes of remaining chunks
|
|
* of the linearization that has a feerate not below subset's.
|
|
*
|
|
* This is a crucial operation in guaranteeing improvements to linearizations. If subset has
|
|
* a feerate not below GetChunk(0)'s, then moving IntersectPrefixes(subset) to the front of
|
|
* (what remains of) the linearization is guaranteed not to make it worse at any point.
|
|
*
|
|
* See https://delvingbitcoin.org/t/introduction-to-cluster-linearization/1032 for background.
|
|
*/
|
|
SetInfo<SetType> IntersectPrefixes(const SetInfo<SetType>& subset) const noexcept
|
|
{
|
|
Assume(subset.transactions.IsSubsetOf(m_todo));
|
|
SetInfo<SetType> accumulator;
|
|
// Iterate over all chunks of the remaining linearization.
|
|
for (ClusterIndex i = 0; i < NumChunksLeft(); ++i) {
|
|
// Find what (if any) intersection the chunk has with subset.
|
|
const SetType to_add = GetChunk(i).transactions & subset.transactions;
|
|
if (to_add.Any()) {
|
|
// If adding that to accumulator makes us hit all of subset, we are done as no
|
|
// shorter intersection with higher/equal feerate exists.
|
|
accumulator.transactions |= to_add;
|
|
if (accumulator.transactions == subset.transactions) break;
|
|
// Otherwise update the accumulator feerate.
|
|
accumulator.feerate += m_depgraph.FeeRate(to_add);
|
|
// If that does result in something better, or something with the same feerate but
|
|
// smaller, return that. Even if a longer, higher-feerate intersection exists, it
|
|
// does not hurt to return the shorter one (the remainder of the longer intersection
|
|
// will generally be found in the next call to Intersect, but even if not, it is not
|
|
// required for the improvement guarantee this function makes).
|
|
if (!(accumulator.feerate << subset.feerate)) return accumulator;
|
|
}
|
|
}
|
|
return subset;
|
|
}
|
|
};
|
|
|
|
/** Class encapsulating the state needed to find the best remaining ancestor set.
|
|
*
|
|
* It is initialized for an entire DepGraph, and parts of the graph can be dropped by calling
|
|
* MarkDone.
|
|
*
|
|
* As long as any part of the graph remains, FindCandidateSet() can be called which will return a
|
|
* SetInfo with the highest-feerate ancestor set that remains (an ancestor set is a single
|
|
* transaction together with all its remaining ancestors).
|
|
*/
|
|
template<typename SetType>
|
|
class AncestorCandidateFinder
|
|
{
|
|
/** Internal dependency graph. */
|
|
const DepGraph<SetType>& m_depgraph;
|
|
/** Which transaction are left to include. */
|
|
SetType m_todo;
|
|
/** Precomputed ancestor-set feerates (only kept up-to-date for indices in m_todo). */
|
|
std::vector<FeeFrac> m_ancestor_set_feerates;
|
|
|
|
public:
|
|
/** Construct an AncestorCandidateFinder for a given cluster.
|
|
*
|
|
* Complexity: O(N^2) where N=depgraph.TxCount().
|
|
*/
|
|
AncestorCandidateFinder(const DepGraph<SetType>& depgraph LIFETIMEBOUND) noexcept :
|
|
m_depgraph(depgraph),
|
|
m_todo{depgraph.Positions()},
|
|
m_ancestor_set_feerates(depgraph.PositionRange())
|
|
{
|
|
// Precompute ancestor-set feerates.
|
|
for (ClusterIndex i : m_depgraph.Positions()) {
|
|
/** The remaining ancestors for transaction i. */
|
|
SetType anc_to_add = m_depgraph.Ancestors(i);
|
|
FeeFrac anc_feerate;
|
|
// Reuse accumulated feerate from first ancestor, if usable.
|
|
Assume(anc_to_add.Any());
|
|
ClusterIndex first = anc_to_add.First();
|
|
if (first < i) {
|
|
anc_feerate = m_ancestor_set_feerates[first];
|
|
Assume(!anc_feerate.IsEmpty());
|
|
anc_to_add -= m_depgraph.Ancestors(first);
|
|
}
|
|
// Add in other ancestors (which necessarily include i itself).
|
|
Assume(anc_to_add[i]);
|
|
anc_feerate += m_depgraph.FeeRate(anc_to_add);
|
|
// Store the result.
|
|
m_ancestor_set_feerates[i] = anc_feerate;
|
|
}
|
|
}
|
|
|
|
/** Remove a set of transactions from the set of to-be-linearized ones.
|
|
*
|
|
* The same transaction may not be MarkDone()'d twice.
|
|
*
|
|
* Complexity: O(N*M) where N=depgraph.TxCount(), M=select.Count().
|
|
*/
|
|
void MarkDone(SetType select) noexcept
|
|
{
|
|
Assume(select.Any());
|
|
Assume(select.IsSubsetOf(m_todo));
|
|
m_todo -= select;
|
|
for (auto i : select) {
|
|
auto feerate = m_depgraph.FeeRate(i);
|
|
for (auto j : m_depgraph.Descendants(i) & m_todo) {
|
|
m_ancestor_set_feerates[j] -= feerate;
|
|
}
|
|
}
|
|
}
|
|
|
|
/** Check whether any unlinearized transactions remain. */
|
|
bool AllDone() const noexcept
|
|
{
|
|
return m_todo.None();
|
|
}
|
|
|
|
/** Count the number of remaining unlinearized transactions. */
|
|
ClusterIndex NumRemaining() const noexcept
|
|
{
|
|
return m_todo.Count();
|
|
}
|
|
|
|
/** Find the best (highest-feerate, smallest among those in case of a tie) ancestor set
|
|
* among the remaining transactions. Requires !AllDone().
|
|
*
|
|
* Complexity: O(N) where N=depgraph.TxCount();
|
|
*/
|
|
SetInfo<SetType> FindCandidateSet() const noexcept
|
|
{
|
|
Assume(!AllDone());
|
|
std::optional<ClusterIndex> best;
|
|
for (auto i : m_todo) {
|
|
if (best.has_value()) {
|
|
Assume(!m_ancestor_set_feerates[i].IsEmpty());
|
|
if (!(m_ancestor_set_feerates[i] > m_ancestor_set_feerates[*best])) continue;
|
|
}
|
|
best = i;
|
|
}
|
|
Assume(best.has_value());
|
|
return {m_depgraph.Ancestors(*best) & m_todo, m_ancestor_set_feerates[*best]};
|
|
}
|
|
};
|
|
|
|
/** Class encapsulating the state needed to perform search for good candidate sets.
|
|
*
|
|
* It is initialized for an entire DepGraph, and parts of the graph can be dropped by calling
|
|
* MarkDone().
|
|
*
|
|
* As long as any part of the graph remains, FindCandidateSet() can be called to perform a search
|
|
* over the set of topologically-valid subsets of that remainder, with a limit on how many
|
|
* combinations are tried.
|
|
*/
|
|
template<typename SetType>
|
|
class SearchCandidateFinder
|
|
{
|
|
/** Internal RNG. */
|
|
InsecureRandomContext m_rng;
|
|
/** m_sorted_to_original[i] is the original position that sorted transaction position i had. */
|
|
std::vector<ClusterIndex> m_sorted_to_original;
|
|
/** m_original_to_sorted[i] is the sorted position original transaction position i has. */
|
|
std::vector<ClusterIndex> m_original_to_sorted;
|
|
/** Internal dependency graph for the cluster (with transactions in decreasing individual
|
|
* feerate order). */
|
|
DepGraph<SetType> m_sorted_depgraph;
|
|
/** Which transactions are left to do (indices in m_sorted_depgraph's order). */
|
|
SetType m_todo;
|
|
|
|
/** Given a set of transactions with sorted indices, get their original indices. */
|
|
SetType SortedToOriginal(const SetType& arg) const noexcept
|
|
{
|
|
SetType ret;
|
|
for (auto pos : arg) ret.Set(m_sorted_to_original[pos]);
|
|
return ret;
|
|
}
|
|
|
|
/** Given a set of transactions with original indices, get their sorted indices. */
|
|
SetType OriginalToSorted(const SetType& arg) const noexcept
|
|
{
|
|
SetType ret;
|
|
for (auto pos : arg) ret.Set(m_original_to_sorted[pos]);
|
|
return ret;
|
|
}
|
|
|
|
public:
|
|
/** Construct a candidate finder for a graph.
|
|
*
|
|
* @param[in] depgraph Dependency graph for the to-be-linearized cluster.
|
|
* @param[in] rng_seed A random seed to control the search order.
|
|
*
|
|
* Complexity: O(N^2) where N=depgraph.Count().
|
|
*/
|
|
SearchCandidateFinder(const DepGraph<SetType>& depgraph, uint64_t rng_seed) noexcept :
|
|
m_rng(rng_seed),
|
|
m_sorted_to_original(depgraph.TxCount()),
|
|
m_original_to_sorted(depgraph.PositionRange())
|
|
{
|
|
// Determine reordering mapping, by sorting by decreasing feerate. Unused positions are
|
|
// not included, as they will never be looked up anyway.
|
|
ClusterIndex sorted_pos{0};
|
|
for (auto i : depgraph.Positions()) {
|
|
m_sorted_to_original[sorted_pos++] = i;
|
|
}
|
|
std::sort(m_sorted_to_original.begin(), m_sorted_to_original.end(), [&](auto a, auto b) {
|
|
auto feerate_cmp = depgraph.FeeRate(a) <=> depgraph.FeeRate(b);
|
|
if (feerate_cmp == 0) return a < b;
|
|
return feerate_cmp > 0;
|
|
});
|
|
// Compute reverse mapping.
|
|
for (ClusterIndex i = 0; i < m_sorted_to_original.size(); ++i) {
|
|
m_original_to_sorted[m_sorted_to_original[i]] = i;
|
|
}
|
|
// Compute reordered dependency graph.
|
|
m_sorted_depgraph = DepGraph(depgraph, m_original_to_sorted, m_sorted_to_original.size());
|
|
m_todo = m_sorted_depgraph.Positions();
|
|
}
|
|
|
|
/** Check whether any unlinearized transactions remain. */
|
|
bool AllDone() const noexcept
|
|
{
|
|
return m_todo.None();
|
|
}
|
|
|
|
/** Find a high-feerate topologically-valid subset of what remains of the cluster.
|
|
* Requires !AllDone().
|
|
*
|
|
* @param[in] max_iterations The maximum number of optimization steps that will be performed.
|
|
* @param[in] best A set/feerate pair with an already-known good candidate. This may
|
|
* be empty.
|
|
* @return A pair of:
|
|
* - The best (highest feerate, smallest size as tiebreaker)
|
|
* topologically valid subset (and its feerate) that was
|
|
* encountered during search. It will be at least as good as the
|
|
* best passed in (if not empty).
|
|
* - The number of optimization steps that were performed. This will
|
|
* be <= max_iterations. If strictly < max_iterations, the
|
|
* returned subset is optimal.
|
|
*
|
|
* Complexity: possibly O(N * min(max_iterations, sqrt(2^N))) where N=depgraph.TxCount().
|
|
*/
|
|
std::pair<SetInfo<SetType>, uint64_t> FindCandidateSet(uint64_t max_iterations, SetInfo<SetType> best) noexcept
|
|
{
|
|
Assume(!AllDone());
|
|
|
|
// Convert the provided best to internal sorted indices.
|
|
best.transactions = OriginalToSorted(best.transactions);
|
|
|
|
/** Type for work queue items. */
|
|
struct WorkItem
|
|
{
|
|
/** Set of transactions definitely included (and its feerate). This must be a subset
|
|
* of m_todo, and be topologically valid (includes all in-m_todo ancestors of
|
|
* itself). */
|
|
SetInfo<SetType> inc;
|
|
/** Set of undecided transactions. This must be a subset of m_todo, and have no overlap
|
|
* with inc. The set (inc | und) must be topologically valid. */
|
|
SetType und;
|
|
/** (Only when inc is not empty) The best feerate of any superset of inc that is also a
|
|
* subset of (inc | und), without requiring it to be topologically valid. It forms a
|
|
* conservative upper bound on how good a set this work item can give rise to.
|
|
* Transactions whose feerate is below best's are ignored when determining this value,
|
|
* which means it may technically be an underestimate, but if so, this work item
|
|
* cannot result in something that beats best anyway. */
|
|
FeeFrac pot_feerate;
|
|
|
|
/** Construct a new work item. */
|
|
WorkItem(SetInfo<SetType>&& i, SetType&& u, FeeFrac&& p_f) noexcept :
|
|
inc(std::move(i)), und(std::move(u)), pot_feerate(std::move(p_f))
|
|
{
|
|
Assume(pot_feerate.IsEmpty() == inc.feerate.IsEmpty());
|
|
}
|
|
|
|
/** Swap two WorkItems. */
|
|
void Swap(WorkItem& other) noexcept
|
|
{
|
|
swap(inc, other.inc);
|
|
swap(und, other.und);
|
|
swap(pot_feerate, other.pot_feerate);
|
|
}
|
|
};
|
|
|
|
/** The queue of work items. */
|
|
VecDeque<WorkItem> queue;
|
|
queue.reserve(std::max<size_t>(256, 2 * m_todo.Count()));
|
|
|
|
// Create initial entries per connected component of m_todo. While clusters themselves are
|
|
// generally connected, this is not necessarily true after some parts have already been
|
|
// removed from m_todo. Without this, effort can be wasted on searching "inc" sets that
|
|
// span multiple components.
|
|
auto to_cover = m_todo;
|
|
do {
|
|
auto component = m_sorted_depgraph.FindConnectedComponent(to_cover);
|
|
to_cover -= component;
|
|
// If best is not provided, set it to the first component, so that during the work
|
|
// processing loop below, and during the add_fn/split_fn calls, we do not need to deal
|
|
// with the best=empty case.
|
|
if (best.feerate.IsEmpty()) best = SetInfo(m_sorted_depgraph, component);
|
|
queue.emplace_back(/*inc=*/SetInfo<SetType>{},
|
|
/*und=*/std::move(component),
|
|
/*pot_feerate=*/FeeFrac{});
|
|
} while (to_cover.Any());
|
|
|
|
/** Local copy of the iteration limit. */
|
|
uint64_t iterations_left = max_iterations;
|
|
|
|
/** The set of transactions in m_todo which have feerate > best's. */
|
|
SetType imp = m_todo;
|
|
while (imp.Any()) {
|
|
ClusterIndex check = imp.Last();
|
|
if (m_sorted_depgraph.FeeRate(check) >> best.feerate) break;
|
|
imp.Reset(check);
|
|
}
|
|
|
|
/** Internal function to add an item to the queue of elements to explore if there are any
|
|
* transactions left to split on, possibly improving it before doing so, and to update
|
|
* best/imp.
|
|
*
|
|
* - inc: the "inc" value for the new work item (must be topological).
|
|
* - und: the "und" value for the new work item ((inc | und) must be topological).
|
|
*/
|
|
auto add_fn = [&](SetInfo<SetType> inc, SetType und) noexcept {
|
|
/** SetInfo object with the set whose feerate will become the new work item's
|
|
* pot_feerate. It starts off equal to inc. */
|
|
auto pot = inc;
|
|
if (!inc.feerate.IsEmpty()) {
|
|
// Add entries to pot. We iterate over all undecided transactions whose feerate is
|
|
// higher than best. While undecided transactions of lower feerate may improve pot,
|
|
// the resulting pot feerate cannot possibly exceed best's (and this item will be
|
|
// skipped in split_fn anyway).
|
|
for (auto pos : imp & und) {
|
|
// Determine if adding transaction pos to pot (ignoring topology) would improve
|
|
// it. If not, we're done updating pot. This relies on the fact that
|
|
// m_sorted_depgraph, and thus the transactions iterated over, are in decreasing
|
|
// individual feerate order.
|
|
if (!(m_sorted_depgraph.FeeRate(pos) >> pot.feerate)) break;
|
|
pot.Set(m_sorted_depgraph, pos);
|
|
}
|
|
|
|
// The "jump ahead" optimization: whenever pot has a topologically-valid subset,
|
|
// that subset can be added to inc. Any subset of (pot - inc) has the property that
|
|
// its feerate exceeds that of any set compatible with this work item (superset of
|
|
// inc, subset of (inc | und)). Thus, if T is a topological subset of pot, and B is
|
|
// the best topologically-valid set compatible with this work item, and (T - B) is
|
|
// non-empty, then (T | B) is better than B and also topological. This is in
|
|
// contradiction with the assumption that B is best. Thus, (T - B) must be empty,
|
|
// or T must be a subset of B.
|
|
//
|
|
// See https://delvingbitcoin.org/t/how-to-linearize-your-cluster/303 section 2.4.
|
|
const auto init_inc = inc.transactions;
|
|
for (auto pos : pot.transactions - inc.transactions) {
|
|
// If the transaction's ancestors are a subset of pot, we can add it together
|
|
// with its ancestors to inc. Just update the transactions here; the feerate
|
|
// update happens below.
|
|
auto anc_todo = m_sorted_depgraph.Ancestors(pos) & m_todo;
|
|
if (anc_todo.IsSubsetOf(pot.transactions)) inc.transactions |= anc_todo;
|
|
}
|
|
// Finally update und and inc's feerate to account for the added transactions.
|
|
und -= inc.transactions;
|
|
inc.feerate += m_sorted_depgraph.FeeRate(inc.transactions - init_inc);
|
|
|
|
// If inc's feerate is better than best's, remember it as our new best.
|
|
if (inc.feerate > best.feerate) {
|
|
best = inc;
|
|
// See if we can remove any entries from imp now.
|
|
while (imp.Any()) {
|
|
ClusterIndex check = imp.Last();
|
|
if (m_sorted_depgraph.FeeRate(check) >> best.feerate) break;
|
|
imp.Reset(check);
|
|
}
|
|
}
|
|
|
|
// If no potential transactions exist beyond the already included ones, no
|
|
// improvement is possible anymore.
|
|
if (pot.feerate.size == inc.feerate.size) return;
|
|
// At this point und must be non-empty. If it were empty then pot would equal inc.
|
|
Assume(und.Any());
|
|
} else {
|
|
Assume(inc.transactions.None());
|
|
// If inc is empty, we just make sure there are undecided transactions left to
|
|
// split on.
|
|
if (und.None()) return;
|
|
}
|
|
|
|
// Actually construct a new work item on the queue. Due to the switch to DFS when queue
|
|
// space runs out (see below), we know that no reallocation of the queue should ever
|
|
// occur.
|
|
Assume(queue.size() < queue.capacity());
|
|
queue.emplace_back(/*inc=*/std::move(inc),
|
|
/*und=*/std::move(und),
|
|
/*pot_feerate=*/std::move(pot.feerate));
|
|
};
|
|
|
|
/** Internal process function. It takes an existing work item, and splits it in two: one
|
|
* with a particular transaction (and its ancestors) included, and one with that
|
|
* transaction (and its descendants) excluded. */
|
|
auto split_fn = [&](WorkItem&& elem) noexcept {
|
|
// Any queue element must have undecided transactions left, otherwise there is nothing
|
|
// to explore anymore.
|
|
Assume(elem.und.Any());
|
|
// The included and undecided set are all subsets of m_todo.
|
|
Assume(elem.inc.transactions.IsSubsetOf(m_todo) && elem.und.IsSubsetOf(m_todo));
|
|
// Included transactions cannot be undecided.
|
|
Assume(!elem.inc.transactions.Overlaps(elem.und));
|
|
// If pot is empty, then so is inc.
|
|
Assume(elem.inc.feerate.IsEmpty() == elem.pot_feerate.IsEmpty());
|
|
|
|
const ClusterIndex first = elem.und.First();
|
|
if (!elem.inc.feerate.IsEmpty()) {
|
|
// If no undecided transactions remain with feerate higher than best, this entry
|
|
// cannot be improved beyond best.
|
|
if (!elem.und.Overlaps(imp)) return;
|
|
// We can ignore any queue item whose potential feerate isn't better than the best
|
|
// seen so far.
|
|
if (elem.pot_feerate <= best.feerate) return;
|
|
} else {
|
|
// In case inc is empty use a simpler alternative check.
|
|
if (m_sorted_depgraph.FeeRate(first) <= best.feerate) return;
|
|
}
|
|
|
|
// Decide which transaction to split on. Splitting is how new work items are added, and
|
|
// how progress is made. One split transaction is chosen among the queue item's
|
|
// undecided ones, and:
|
|
// - A work item is (potentially) added with that transaction plus its remaining
|
|
// descendants excluded (removed from the und set).
|
|
// - A work item is (potentially) added with that transaction plus its remaining
|
|
// ancestors included (added to the inc set).
|
|
//
|
|
// To decide what to split on, consider the undecided ancestors of the highest
|
|
// individual feerate undecided transaction. Pick the one which reduces the search space
|
|
// most. Let I(t) be the size of the undecided set after including t, and E(t) the size
|
|
// of the undecided set after excluding t. Then choose the split transaction t such
|
|
// that 2^I(t) + 2^E(t) is minimal, tie-breaking by highest individual feerate for t.
|
|
ClusterIndex split = 0;
|
|
const auto select = elem.und & m_sorted_depgraph.Ancestors(first);
|
|
Assume(select.Any());
|
|
std::optional<std::pair<ClusterIndex, ClusterIndex>> split_counts;
|
|
for (auto t : select) {
|
|
// Call max = max(I(t), E(t)) and min = min(I(t), E(t)). Let counts = {max,min}.
|
|
// Sorting by the tuple counts is equivalent to sorting by 2^I(t) + 2^E(t). This
|
|
// expression is equal to 2^max + 2^min = 2^max * (1 + 1/2^(max - min)). The second
|
|
// factor (1 + 1/2^(max - min)) there is in (1,2]. Thus increasing max will always
|
|
// increase it, even when min decreases. Because of this, we can first sort by max.
|
|
std::pair<ClusterIndex, ClusterIndex> counts{
|
|
(elem.und - m_sorted_depgraph.Ancestors(t)).Count(),
|
|
(elem.und - m_sorted_depgraph.Descendants(t)).Count()};
|
|
if (counts.first < counts.second) std::swap(counts.first, counts.second);
|
|
// Remember the t with the lowest counts.
|
|
if (!split_counts.has_value() || counts < *split_counts) {
|
|
split = t;
|
|
split_counts = counts;
|
|
}
|
|
}
|
|
// Since there was at least one transaction in select, we must always find one.
|
|
Assume(split_counts.has_value());
|
|
|
|
// Add a work item corresponding to exclusion of the split transaction.
|
|
const auto& desc = m_sorted_depgraph.Descendants(split);
|
|
add_fn(/*inc=*/elem.inc,
|
|
/*und=*/elem.und - desc);
|
|
|
|
// Add a work item corresponding to inclusion of the split transaction.
|
|
const auto anc = m_sorted_depgraph.Ancestors(split) & m_todo;
|
|
add_fn(/*inc=*/elem.inc.Add(m_sorted_depgraph, anc),
|
|
/*und=*/elem.und - anc);
|
|
|
|
// Account for the performed split.
|
|
--iterations_left;
|
|
};
|
|
|
|
// Work processing loop.
|
|
//
|
|
// New work items are always added at the back of the queue, but items to process use a
|
|
// hybrid approach where they can be taken from the front or the back.
|
|
//
|
|
// Depth-first search (DFS) corresponds to always taking from the back of the queue. This
|
|
// is very memory-efficient (linear in the number of transactions). Breadth-first search
|
|
// (BFS) corresponds to always taking from the front, which potentially uses more memory
|
|
// (up to exponential in the transaction count), but seems to work better in practice.
|
|
//
|
|
// The approach here combines the two: use BFS (plus random swapping) until the queue grows
|
|
// too large, at which point we temporarily switch to DFS until the size shrinks again.
|
|
while (!queue.empty()) {
|
|
// Randomly swap the first two items to randomize the search order.
|
|
if (queue.size() > 1 && m_rng.randbool()) {
|
|
queue[0].Swap(queue[1]);
|
|
}
|
|
|
|
// Processing the first queue item, and then using DFS for everything it gives rise to,
|
|
// may increase the queue size by the number of undecided elements in there, minus 1
|
|
// for the first queue item being removed. Thus, only when that pushes the queue over
|
|
// its capacity can we not process from the front (BFS), and should we use DFS.
|
|
while (queue.size() - 1 + queue.front().und.Count() > queue.capacity()) {
|
|
if (!iterations_left) break;
|
|
auto elem = queue.back();
|
|
queue.pop_back();
|
|
split_fn(std::move(elem));
|
|
}
|
|
|
|
// Process one entry from the front of the queue (BFS exploration)
|
|
if (!iterations_left) break;
|
|
auto elem = queue.front();
|
|
queue.pop_front();
|
|
split_fn(std::move(elem));
|
|
}
|
|
|
|
// Return the found best set (converted to the original transaction indices), and the
|
|
// number of iterations performed.
|
|
best.transactions = SortedToOriginal(best.transactions);
|
|
return {std::move(best), max_iterations - iterations_left};
|
|
}
|
|
|
|
/** Remove a subset of transactions from the cluster being linearized.
|
|
*
|
|
* Complexity: O(N) where N=done.Count().
|
|
*/
|
|
void MarkDone(const SetType& done) noexcept
|
|
{
|
|
const auto done_sorted = OriginalToSorted(done);
|
|
Assume(done_sorted.Any());
|
|
Assume(done_sorted.IsSubsetOf(m_todo));
|
|
m_todo -= done_sorted;
|
|
}
|
|
};
|
|
|
|
/** Find or improve a linearization for a cluster.
|
|
*
|
|
* @param[in] depgraph Dependency graph of the cluster to be linearized.
|
|
* @param[in] max_iterations Upper bound on the number of optimization steps that will be done.
|
|
* @param[in] rng_seed A random number seed to control search order. This prevents peers
|
|
* from predicting exactly which clusters would be hard for us to
|
|
* linearize.
|
|
* @param[in] old_linearization An existing linearization for the cluster (which must be
|
|
* topologically valid), or empty.
|
|
* @return A pair of:
|
|
* - The resulting linearization. It is guaranteed to be at least as
|
|
* good (in the feerate diagram sense) as old_linearization.
|
|
* - A boolean indicating whether the result is guaranteed to be
|
|
* optimal.
|
|
*
|
|
* Complexity: possibly O(N * min(max_iterations + N, sqrt(2^N))) where N=depgraph.TxCount().
|
|
*/
|
|
template<typename SetType>
|
|
std::pair<std::vector<ClusterIndex>, bool> Linearize(const DepGraph<SetType>& depgraph, uint64_t max_iterations, uint64_t rng_seed, Span<const ClusterIndex> old_linearization = {}) noexcept
|
|
{
|
|
Assume(old_linearization.empty() || old_linearization.size() == depgraph.TxCount());
|
|
if (depgraph.TxCount() == 0) return {{}, true};
|
|
|
|
uint64_t iterations_left = max_iterations;
|
|
std::vector<ClusterIndex> linearization;
|
|
|
|
AncestorCandidateFinder anc_finder(depgraph);
|
|
std::optional<SearchCandidateFinder<SetType>> src_finder;
|
|
linearization.reserve(depgraph.TxCount());
|
|
bool optimal = true;
|
|
|
|
// Treat the initialization of SearchCandidateFinder as taking N^2/64 (rounded up) iterations
|
|
// (largely due to the cost of constructing the internal sorted-by-feerate DepGraph inside
|
|
// SearchCandidateFinder), a rough approximation based on benchmark. If we don't have that
|
|
// many, don't start it.
|
|
uint64_t start_iterations = (uint64_t{depgraph.TxCount()} * depgraph.TxCount() + 63) / 64;
|
|
if (iterations_left > start_iterations) {
|
|
iterations_left -= start_iterations;
|
|
src_finder.emplace(depgraph, rng_seed);
|
|
}
|
|
|
|
/** Chunking of what remains of the old linearization. */
|
|
LinearizationChunking old_chunking(depgraph, old_linearization);
|
|
|
|
while (true) {
|
|
// Find the highest-feerate prefix of the remainder of old_linearization.
|
|
SetInfo<SetType> best_prefix;
|
|
if (old_chunking.NumChunksLeft()) best_prefix = old_chunking.GetChunk(0);
|
|
|
|
// Then initialize best to be either the best remaining ancestor set, or the first chunk.
|
|
auto best = anc_finder.FindCandidateSet();
|
|
if (!best_prefix.feerate.IsEmpty() && best_prefix.feerate >= best.feerate) best = best_prefix;
|
|
|
|
uint64_t iterations_done_now = 0;
|
|
uint64_t max_iterations_now = 0;
|
|
if (src_finder) {
|
|
// Treat the invocation of SearchCandidateFinder::FindCandidateSet() as costing N/4
|
|
// up-front (rounded up) iterations (largely due to the cost of connected-component
|
|
// splitting), a rough approximation based on benchmarks.
|
|
uint64_t base_iterations = (anc_finder.NumRemaining() + 3) / 4;
|
|
if (iterations_left > base_iterations) {
|
|
// Invoke bounded search to update best, with up to half of our remaining
|
|
// iterations as limit.
|
|
iterations_left -= base_iterations;
|
|
max_iterations_now = (iterations_left + 1) / 2;
|
|
std::tie(best, iterations_done_now) = src_finder->FindCandidateSet(max_iterations_now, best);
|
|
iterations_left -= iterations_done_now;
|
|
}
|
|
}
|
|
|
|
if (iterations_done_now == max_iterations_now) {
|
|
optimal = false;
|
|
// If the search result is not (guaranteed to be) optimal, run intersections to make
|
|
// sure we don't pick something that makes us unable to reach further diagram points
|
|
// of the old linearization.
|
|
if (old_chunking.NumChunksLeft() > 0) {
|
|
best = old_chunking.IntersectPrefixes(best);
|
|
}
|
|
}
|
|
|
|
// Add to output in topological order.
|
|
depgraph.AppendTopo(linearization, best.transactions);
|
|
|
|
// Update state to reflect best is no longer to be linearized.
|
|
anc_finder.MarkDone(best.transactions);
|
|
if (anc_finder.AllDone()) break;
|
|
if (src_finder) src_finder->MarkDone(best.transactions);
|
|
if (old_chunking.NumChunksLeft() > 0) {
|
|
old_chunking.MarkDone(best.transactions);
|
|
}
|
|
}
|
|
|
|
return {std::move(linearization), optimal};
|
|
}
|
|
|
|
/** Improve a given linearization.
|
|
*
|
|
* @param[in] depgraph Dependency graph of the cluster being linearized.
|
|
* @param[in,out] linearization On input, an existing linearization for depgraph. On output, a
|
|
* potentially better linearization for the same graph.
|
|
*
|
|
* Postlinearization guarantees:
|
|
* - The resulting chunks are connected.
|
|
* - If the input has a tree shape (either all transactions have at most one child, or all
|
|
* transactions have at most one parent), the result is optimal.
|
|
* - Given a linearization L1 and a leaf transaction T in it. Let L2 be L1 with T moved to the end,
|
|
* optionally with its fee increased. Let L3 be the postlinearization of L2. L3 will be at least
|
|
* as good as L1. This means that replacing transactions with same-size higher-fee transactions
|
|
* will not worsen linearizations through a "drop conflicts, append new transactions,
|
|
* postlinearize" process.
|
|
*/
|
|
template<typename SetType>
|
|
void PostLinearize(const DepGraph<SetType>& depgraph, Span<ClusterIndex> linearization)
|
|
{
|
|
// This algorithm performs a number of passes (currently 2); the even ones operate from back to
|
|
// front, the odd ones from front to back. Each results in an equal-or-better linearization
|
|
// than the one started from.
|
|
// - One pass in either direction guarantees that the resulting chunks are connected.
|
|
// - Each direction corresponds to one shape of tree being linearized optimally (forward passes
|
|
// guarantee this for graphs where each transaction has at most one child; backward passes
|
|
// guarantee this for graphs where each transaction has at most one parent).
|
|
// - Starting with a backward pass guarantees the moved-tree property.
|
|
//
|
|
// During an odd (forward) pass, the high-level operation is:
|
|
// - Start with an empty list of groups L=[].
|
|
// - For every transaction i in the old linearization, from front to back:
|
|
// - Append a new group C=[i], containing just i, to the back of L.
|
|
// - While L has at least one group before C, and the group immediately before C has feerate
|
|
// lower than C:
|
|
// - If C depends on P:
|
|
// - Merge P into C, making C the concatenation of P+C, continuing with the combined C.
|
|
// - Otherwise:
|
|
// - Swap P with C, continuing with the now-moved C.
|
|
// - The output linearization is the concatenation of the groups in L.
|
|
//
|
|
// During even (backward) passes, i iterates from the back to the front of the existing
|
|
// linearization, and new groups are prepended instead of appended to the list L. To enable
|
|
// more code reuse, both passes append groups, but during even passes the meanings of
|
|
// parent/child, and of high/low feerate are reversed, and the final concatenation is reversed
|
|
// on output.
|
|
//
|
|
// In the implementation below, the groups are represented by singly-linked lists (pointing
|
|
// from the back to the front), which are themselves organized in a singly-linked circular
|
|
// list (each group pointing to its predecessor, with a special sentinel group at the front
|
|
// that points back to the last group).
|
|
//
|
|
// Information about transaction t is stored in entries[t + 1], while the sentinel is in
|
|
// entries[0].
|
|
|
|
/** Index of the sentinel in the entries array below. */
|
|
static constexpr ClusterIndex SENTINEL{0};
|
|
/** Indicator that a group has no previous transaction. */
|
|
static constexpr ClusterIndex NO_PREV_TX{0};
|
|
|
|
|
|
/** Data structure per transaction entry. */
|
|
struct TxEntry
|
|
{
|
|
/** The index of the previous transaction in this group; NO_PREV_TX if this is the first
|
|
* entry of a group. */
|
|
ClusterIndex prev_tx;
|
|
|
|
// The fields below are only used for transactions that are the last one in a group
|
|
// (referred to as tail transactions below).
|
|
|
|
/** Index of the first transaction in this group, possibly itself. */
|
|
ClusterIndex first_tx;
|
|
/** Index of the last transaction in the previous group. The first group (the sentinel)
|
|
* points back to the last group here, making it a singly-linked circular list. */
|
|
ClusterIndex prev_group;
|
|
/** All transactions in the group. Empty for the sentinel. */
|
|
SetType group;
|
|
/** All dependencies of the group (descendants in even passes; ancestors in odd ones). */
|
|
SetType deps;
|
|
/** The combined fee/size of transactions in the group. Fee is negated in even passes. */
|
|
FeeFrac feerate;
|
|
};
|
|
|
|
// As an example, consider the state corresponding to the linearization [1,0,3,2], with
|
|
// groups [1,0,3] and [2], in an odd pass. The linked lists would be:
|
|
//
|
|
// +-----+
|
|
// 0<-P-- | 0 S | ---\ Legend:
|
|
// +-----+ |
|
|
// ^ | - digit in box: entries index
|
|
// /--------------F---------+ G | (note: one more than tx value)
|
|
// v \ | | - S: sentinel group
|
|
// +-----+ +-----+ +-----+ | (empty feerate)
|
|
// 0<-P-- | 2 | <--P-- | 1 | <--P-- | 4 T | | - T: tail transaction, contains
|
|
// +-----+ +-----+ +-----+ | fields beyond prev_tv.
|
|
// ^ | - P: prev_tx reference
|
|
// G G - F: first_tx reference
|
|
// | | - G: prev_group reference
|
|
// +-----+ |
|
|
// 0<-P-- | 3 T | <--/
|
|
// +-----+
|
|
// ^ |
|
|
// \-F-/
|
|
//
|
|
// During an even pass, the diagram above would correspond to linearization [2,3,0,1], with
|
|
// groups [2] and [3,0,1].
|
|
|
|
std::vector<TxEntry> entries(depgraph.PositionRange() + 1);
|
|
|
|
// Perform two passes over the linearization.
|
|
for (int pass = 0; pass < 2; ++pass) {
|
|
int rev = !(pass & 1);
|
|
// Construct a sentinel group, identifying the start of the list.
|
|
entries[SENTINEL].prev_group = SENTINEL;
|
|
Assume(entries[SENTINEL].feerate.IsEmpty());
|
|
|
|
// Iterate over all elements in the existing linearization.
|
|
for (ClusterIndex i = 0; i < linearization.size(); ++i) {
|
|
// Even passes are from back to front; odd passes from front to back.
|
|
ClusterIndex idx = linearization[rev ? linearization.size() - 1 - i : i];
|
|
// Construct a new group containing just idx. In even passes, the meaning of
|
|
// parent/child and high/low feerate are swapped.
|
|
ClusterIndex cur_group = idx + 1;
|
|
entries[cur_group].group = SetType::Singleton(idx);
|
|
entries[cur_group].deps = rev ? depgraph.Descendants(idx): depgraph.Ancestors(idx);
|
|
entries[cur_group].feerate = depgraph.FeeRate(idx);
|
|
if (rev) entries[cur_group].feerate.fee = -entries[cur_group].feerate.fee;
|
|
entries[cur_group].prev_tx = NO_PREV_TX; // No previous transaction in group.
|
|
entries[cur_group].first_tx = cur_group; // Transaction itself is first of group.
|
|
// Insert the new group at the back of the groups linked list.
|
|
entries[cur_group].prev_group = entries[SENTINEL].prev_group;
|
|
entries[SENTINEL].prev_group = cur_group;
|
|
|
|
// Start merge/swap cycle.
|
|
ClusterIndex next_group = SENTINEL; // We inserted at the end, so next group is sentinel.
|
|
ClusterIndex prev_group = entries[cur_group].prev_group;
|
|
// Continue as long as the current group has higher feerate than the previous one.
|
|
while (entries[cur_group].feerate >> entries[prev_group].feerate) {
|
|
// prev_group/cur_group/next_group refer to (the last transactions of) 3
|
|
// consecutive entries in groups list.
|
|
Assume(cur_group == entries[next_group].prev_group);
|
|
Assume(prev_group == entries[cur_group].prev_group);
|
|
// The sentinel has empty feerate, which is neither higher or lower than other
|
|
// feerates. Thus, the while loop we are in here guarantees that cur_group and
|
|
// prev_group are not the sentinel.
|
|
Assume(cur_group != SENTINEL);
|
|
Assume(prev_group != SENTINEL);
|
|
if (entries[cur_group].deps.Overlaps(entries[prev_group].group)) {
|
|
// There is a dependency between cur_group and prev_group; merge prev_group
|
|
// into cur_group. The group/deps/feerate fields of prev_group remain unchanged
|
|
// but become unused.
|
|
entries[cur_group].group |= entries[prev_group].group;
|
|
entries[cur_group].deps |= entries[prev_group].deps;
|
|
entries[cur_group].feerate += entries[prev_group].feerate;
|
|
// Make the first of the current group point to the tail of the previous group.
|
|
entries[entries[cur_group].first_tx].prev_tx = prev_group;
|
|
// The first of the previous group becomes the first of the newly-merged group.
|
|
entries[cur_group].first_tx = entries[prev_group].first_tx;
|
|
// The previous group becomes whatever group was before the former one.
|
|
prev_group = entries[prev_group].prev_group;
|
|
entries[cur_group].prev_group = prev_group;
|
|
} else {
|
|
// There is no dependency between cur_group and prev_group; swap them.
|
|
ClusterIndex preprev_group = entries[prev_group].prev_group;
|
|
// If PP, P, C, N were the old preprev, prev, cur, next groups, then the new
|
|
// layout becomes [PP, C, P, N]. Update prev_groups to reflect that order.
|
|
entries[next_group].prev_group = prev_group;
|
|
entries[prev_group].prev_group = cur_group;
|
|
entries[cur_group].prev_group = preprev_group;
|
|
// The current group remains the same, but the groups before/after it have
|
|
// changed.
|
|
next_group = prev_group;
|
|
prev_group = preprev_group;
|
|
}
|
|
}
|
|
}
|
|
|
|
// Convert the entries back to linearization (overwriting the existing one).
|
|
ClusterIndex cur_group = entries[0].prev_group;
|
|
ClusterIndex done = 0;
|
|
while (cur_group != SENTINEL) {
|
|
ClusterIndex cur_tx = cur_group;
|
|
// Traverse the transactions of cur_group (from back to front), and write them in the
|
|
// same order during odd passes, and reversed (front to back) in even passes.
|
|
if (rev) {
|
|
do {
|
|
*(linearization.begin() + (done++)) = cur_tx - 1;
|
|
cur_tx = entries[cur_tx].prev_tx;
|
|
} while (cur_tx != NO_PREV_TX);
|
|
} else {
|
|
do {
|
|
*(linearization.end() - (++done)) = cur_tx - 1;
|
|
cur_tx = entries[cur_tx].prev_tx;
|
|
} while (cur_tx != NO_PREV_TX);
|
|
}
|
|
cur_group = entries[cur_group].prev_group;
|
|
}
|
|
Assume(done == linearization.size());
|
|
}
|
|
}
|
|
|
|
/** Merge two linearizations for the same cluster into one that is as good as both.
|
|
*
|
|
* Complexity: O(N^2) where N=depgraph.TxCount(); O(N) if both inputs are identical.
|
|
*/
|
|
template<typename SetType>
|
|
std::vector<ClusterIndex> MergeLinearizations(const DepGraph<SetType>& depgraph, Span<const ClusterIndex> lin1, Span<const ClusterIndex> lin2)
|
|
{
|
|
Assume(lin1.size() == depgraph.TxCount());
|
|
Assume(lin2.size() == depgraph.TxCount());
|
|
|
|
/** Chunkings of what remains of both input linearizations. */
|
|
LinearizationChunking chunking1(depgraph, lin1), chunking2(depgraph, lin2);
|
|
/** Output linearization. */
|
|
std::vector<ClusterIndex> ret;
|
|
if (depgraph.TxCount() == 0) return ret;
|
|
ret.reserve(depgraph.TxCount());
|
|
|
|
while (true) {
|
|
// As long as we are not done, both linearizations must have chunks left.
|
|
Assume(chunking1.NumChunksLeft() > 0);
|
|
Assume(chunking2.NumChunksLeft() > 0);
|
|
// Find the set to output by taking the best remaining chunk, and then intersecting it with
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// prefixes of remaining chunks of the other linearization.
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SetInfo<SetType> best;
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const auto& lin1_firstchunk = chunking1.GetChunk(0);
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const auto& lin2_firstchunk = chunking2.GetChunk(0);
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if (lin2_firstchunk.feerate >> lin1_firstchunk.feerate) {
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best = chunking1.IntersectPrefixes(lin2_firstchunk);
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} else {
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best = chunking2.IntersectPrefixes(lin1_firstchunk);
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}
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// Append the result to the output and mark it as done.
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depgraph.AppendTopo(ret, best.transactions);
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chunking1.MarkDone(best.transactions);
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if (chunking1.NumChunksLeft() == 0) break;
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chunking2.MarkDone(best.transactions);
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}
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Assume(ret.size() == depgraph.TxCount());
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return ret;
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}
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} // namespace cluster_linearize
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#endif // BITCOIN_CLUSTER_LINEARIZE_H
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