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mirror of https://github.com/RPCS3/llvm-mirror.git synced 2024-10-21 03:53:04 +02:00
llvm-mirror/include/llvm/Analysis/BlockFrequencyInfoImpl.h
Sean Silva 217476e284 CodeExtractor : Add ability to preserve profile data.
Added ability to estimate the entry count of the extracted function and
the branch probabilities of the exit branches.

Patch by River Riddle!

Differential Revision: https://reviews.llvm.org/D22744

llvm-svn: 277411
2016-08-02 02:15:45 +00:00

1357 lines
49 KiB
C++

//==- BlockFrequencyInfoImpl.h - Block Frequency Implementation -*- C++ -*-===//
//
// The LLVM Compiler Infrastructure
//
// This file is distributed under the University of Illinois Open Source
// License. See LICENSE.TXT for details.
//
//===----------------------------------------------------------------------===//
//
// Shared implementation of BlockFrequency for IR and Machine Instructions.
// See the documentation below for BlockFrequencyInfoImpl for details.
//
//===----------------------------------------------------------------------===//
#ifndef LLVM_ANALYSIS_BLOCKFREQUENCYINFOIMPL_H
#define LLVM_ANALYSIS_BLOCKFREQUENCYINFOIMPL_H
#include "llvm/ADT/DenseMap.h"
#include "llvm/ADT/GraphTraits.h"
#include "llvm/ADT/Optional.h"
#include "llvm/ADT/PostOrderIterator.h"
#include "llvm/ADT/iterator_range.h"
#include "llvm/IR/BasicBlock.h"
#include "llvm/Support/BlockFrequency.h"
#include "llvm/Support/BranchProbability.h"
#include "llvm/Support/DOTGraphTraits.h"
#include "llvm/Support/Debug.h"
#include "llvm/Support/Format.h"
#include "llvm/Support/ScaledNumber.h"
#include "llvm/Support/raw_ostream.h"
#include <deque>
#include <list>
#include <string>
#include <vector>
#define DEBUG_TYPE "block-freq"
namespace llvm {
class BasicBlock;
class BranchProbabilityInfo;
class Function;
class Loop;
class LoopInfo;
class MachineBasicBlock;
class MachineBranchProbabilityInfo;
class MachineFunction;
class MachineLoop;
class MachineLoopInfo;
namespace bfi_detail {
struct IrreducibleGraph;
// This is part of a workaround for a GCC 4.7 crash on lambdas.
template <class BT> struct BlockEdgesAdder;
/// \brief Mass of a block.
///
/// This class implements a sort of fixed-point fraction always between 0.0 and
/// 1.0. getMass() == UINT64_MAX indicates a value of 1.0.
///
/// Masses can be added and subtracted. Simple saturation arithmetic is used,
/// so arithmetic operations never overflow or underflow.
///
/// Masses can be multiplied. Multiplication treats full mass as 1.0 and uses
/// an inexpensive floating-point algorithm that's off-by-one (almost, but not
/// quite, maximum precision).
///
/// Masses can be scaled by \a BranchProbability at maximum precision.
class BlockMass {
uint64_t Mass;
public:
BlockMass() : Mass(0) {}
explicit BlockMass(uint64_t Mass) : Mass(Mass) {}
static BlockMass getEmpty() { return BlockMass(); }
static BlockMass getFull() { return BlockMass(UINT64_MAX); }
uint64_t getMass() const { return Mass; }
bool isFull() const { return Mass == UINT64_MAX; }
bool isEmpty() const { return !Mass; }
bool operator!() const { return isEmpty(); }
/// \brief Add another mass.
///
/// Adds another mass, saturating at \a isFull() rather than overflowing.
BlockMass &operator+=(BlockMass X) {
uint64_t Sum = Mass + X.Mass;
Mass = Sum < Mass ? UINT64_MAX : Sum;
return *this;
}
/// \brief Subtract another mass.
///
/// Subtracts another mass, saturating at \a isEmpty() rather than
/// undeflowing.
BlockMass &operator-=(BlockMass X) {
uint64_t Diff = Mass - X.Mass;
Mass = Diff > Mass ? 0 : Diff;
return *this;
}
BlockMass &operator*=(BranchProbability P) {
Mass = P.scale(Mass);
return *this;
}
bool operator==(BlockMass X) const { return Mass == X.Mass; }
bool operator!=(BlockMass X) const { return Mass != X.Mass; }
bool operator<=(BlockMass X) const { return Mass <= X.Mass; }
bool operator>=(BlockMass X) const { return Mass >= X.Mass; }
bool operator<(BlockMass X) const { return Mass < X.Mass; }
bool operator>(BlockMass X) const { return Mass > X.Mass; }
/// \brief Convert to scaled number.
///
/// Convert to \a ScaledNumber. \a isFull() gives 1.0, while \a isEmpty()
/// gives slightly above 0.0.
ScaledNumber<uint64_t> toScaled() const;
void dump() const;
raw_ostream &print(raw_ostream &OS) const;
};
inline BlockMass operator+(BlockMass L, BlockMass R) {
return BlockMass(L) += R;
}
inline BlockMass operator-(BlockMass L, BlockMass R) {
return BlockMass(L) -= R;
}
inline BlockMass operator*(BlockMass L, BranchProbability R) {
return BlockMass(L) *= R;
}
inline BlockMass operator*(BranchProbability L, BlockMass R) {
return BlockMass(R) *= L;
}
inline raw_ostream &operator<<(raw_ostream &OS, BlockMass X) {
return X.print(OS);
}
} // end namespace bfi_detail
template <> struct isPodLike<bfi_detail::BlockMass> {
static const bool value = true;
};
/// \brief Base class for BlockFrequencyInfoImpl
///
/// BlockFrequencyInfoImplBase has supporting data structures and some
/// algorithms for BlockFrequencyInfoImplBase. Only algorithms that depend on
/// the block type (or that call such algorithms) are skipped here.
///
/// Nevertheless, the majority of the overall algorithm documention lives with
/// BlockFrequencyInfoImpl. See there for details.
class BlockFrequencyInfoImplBase {
public:
typedef ScaledNumber<uint64_t> Scaled64;
typedef bfi_detail::BlockMass BlockMass;
/// \brief Representative of a block.
///
/// This is a simple wrapper around an index into the reverse-post-order
/// traversal of the blocks.
///
/// Unlike a block pointer, its order has meaning (location in the
/// topological sort) and it's class is the same regardless of block type.
struct BlockNode {
typedef uint32_t IndexType;
IndexType Index;
bool operator==(const BlockNode &X) const { return Index == X.Index; }
bool operator!=(const BlockNode &X) const { return Index != X.Index; }
bool operator<=(const BlockNode &X) const { return Index <= X.Index; }
bool operator>=(const BlockNode &X) const { return Index >= X.Index; }
bool operator<(const BlockNode &X) const { return Index < X.Index; }
bool operator>(const BlockNode &X) const { return Index > X.Index; }
BlockNode() : Index(UINT32_MAX) {}
BlockNode(IndexType Index) : Index(Index) {}
bool isValid() const { return Index <= getMaxIndex(); }
static size_t getMaxIndex() { return UINT32_MAX - 1; }
};
/// \brief Stats about a block itself.
struct FrequencyData {
Scaled64 Scaled;
uint64_t Integer;
};
/// \brief Data about a loop.
///
/// Contains the data necessary to represent a loop as a pseudo-node once it's
/// packaged.
struct LoopData {
typedef SmallVector<std::pair<BlockNode, BlockMass>, 4> ExitMap;
typedef SmallVector<BlockNode, 4> NodeList;
typedef SmallVector<BlockMass, 1> HeaderMassList;
LoopData *Parent; ///< The parent loop.
bool IsPackaged; ///< Whether this has been packaged.
uint32_t NumHeaders; ///< Number of headers.
ExitMap Exits; ///< Successor edges (and weights).
NodeList Nodes; ///< Header and the members of the loop.
HeaderMassList BackedgeMass; ///< Mass returned to each loop header.
BlockMass Mass;
Scaled64 Scale;
LoopData(LoopData *Parent, const BlockNode &Header)
: Parent(Parent), IsPackaged(false), NumHeaders(1), Nodes(1, Header),
BackedgeMass(1) {}
template <class It1, class It2>
LoopData(LoopData *Parent, It1 FirstHeader, It1 LastHeader, It2 FirstOther,
It2 LastOther)
: Parent(Parent), IsPackaged(false), Nodes(FirstHeader, LastHeader) {
NumHeaders = Nodes.size();
Nodes.insert(Nodes.end(), FirstOther, LastOther);
BackedgeMass.resize(NumHeaders);
}
bool isHeader(const BlockNode &Node) const {
if (isIrreducible())
return std::binary_search(Nodes.begin(), Nodes.begin() + NumHeaders,
Node);
return Node == Nodes[0];
}
BlockNode getHeader() const { return Nodes[0]; }
bool isIrreducible() const { return NumHeaders > 1; }
HeaderMassList::difference_type getHeaderIndex(const BlockNode &B) {
assert(isHeader(B) && "this is only valid on loop header blocks");
if (isIrreducible())
return std::lower_bound(Nodes.begin(), Nodes.begin() + NumHeaders, B) -
Nodes.begin();
return 0;
}
NodeList::const_iterator members_begin() const {
return Nodes.begin() + NumHeaders;
}
NodeList::const_iterator members_end() const { return Nodes.end(); }
iterator_range<NodeList::const_iterator> members() const {
return make_range(members_begin(), members_end());
}
};
/// \brief Index of loop information.
struct WorkingData {
BlockNode Node; ///< This node.
LoopData *Loop; ///< The loop this block is inside.
BlockMass Mass; ///< Mass distribution from the entry block.
WorkingData(const BlockNode &Node) : Node(Node), Loop(nullptr) {}
bool isLoopHeader() const { return Loop && Loop->isHeader(Node); }
bool isDoubleLoopHeader() const {
return isLoopHeader() && Loop->Parent && Loop->Parent->isIrreducible() &&
Loop->Parent->isHeader(Node);
}
LoopData *getContainingLoop() const {
if (!isLoopHeader())
return Loop;
if (!isDoubleLoopHeader())
return Loop->Parent;
return Loop->Parent->Parent;
}
/// \brief Resolve a node to its representative.
///
/// Get the node currently representing Node, which could be a containing
/// loop.
///
/// This function should only be called when distributing mass. As long as
/// there are no irreducible edges to Node, then it will have complexity
/// O(1) in this context.
///
/// In general, the complexity is O(L), where L is the number of loop
/// headers Node has been packaged into. Since this method is called in
/// the context of distributing mass, L will be the number of loop headers
/// an early exit edge jumps out of.
BlockNode getResolvedNode() const {
auto L = getPackagedLoop();
return L ? L->getHeader() : Node;
}
LoopData *getPackagedLoop() const {
if (!Loop || !Loop->IsPackaged)
return nullptr;
auto L = Loop;
while (L->Parent && L->Parent->IsPackaged)
L = L->Parent;
return L;
}
/// \brief Get the appropriate mass for a node.
///
/// Get appropriate mass for Node. If Node is a loop-header (whose loop
/// has been packaged), returns the mass of its pseudo-node. If it's a
/// node inside a packaged loop, it returns the loop's mass.
BlockMass &getMass() {
if (!isAPackage())
return Mass;
if (!isADoublePackage())
return Loop->Mass;
return Loop->Parent->Mass;
}
/// \brief Has ContainingLoop been packaged up?
bool isPackaged() const { return getResolvedNode() != Node; }
/// \brief Has Loop been packaged up?
bool isAPackage() const { return isLoopHeader() && Loop->IsPackaged; }
/// \brief Has Loop been packaged up twice?
bool isADoublePackage() const {
return isDoubleLoopHeader() && Loop->Parent->IsPackaged;
}
};
/// \brief Unscaled probability weight.
///
/// Probability weight for an edge in the graph (including the
/// successor/target node).
///
/// All edges in the original function are 32-bit. However, exit edges from
/// loop packages are taken from 64-bit exit masses, so we need 64-bits of
/// space in general.
///
/// In addition to the raw weight amount, Weight stores the type of the edge
/// in the current context (i.e., the context of the loop being processed).
/// Is this a local edge within the loop, an exit from the loop, or a
/// backedge to the loop header?
struct Weight {
enum DistType { Local, Exit, Backedge };
DistType Type;
BlockNode TargetNode;
uint64_t Amount;
Weight() : Type(Local), Amount(0) {}
Weight(DistType Type, BlockNode TargetNode, uint64_t Amount)
: Type(Type), TargetNode(TargetNode), Amount(Amount) {}
};
/// \brief Distribution of unscaled probability weight.
///
/// Distribution of unscaled probability weight to a set of successors.
///
/// This class collates the successor edge weights for later processing.
///
/// \a DidOverflow indicates whether \a Total did overflow while adding to
/// the distribution. It should never overflow twice.
struct Distribution {
typedef SmallVector<Weight, 4> WeightList;
WeightList Weights; ///< Individual successor weights.
uint64_t Total; ///< Sum of all weights.
bool DidOverflow; ///< Whether \a Total did overflow.
Distribution() : Total(0), DidOverflow(false) {}
void addLocal(const BlockNode &Node, uint64_t Amount) {
add(Node, Amount, Weight::Local);
}
void addExit(const BlockNode &Node, uint64_t Amount) {
add(Node, Amount, Weight::Exit);
}
void addBackedge(const BlockNode &Node, uint64_t Amount) {
add(Node, Amount, Weight::Backedge);
}
/// \brief Normalize the distribution.
///
/// Combines multiple edges to the same \a Weight::TargetNode and scales
/// down so that \a Total fits into 32-bits.
///
/// This is linear in the size of \a Weights. For the vast majority of
/// cases, adjacent edge weights are combined by sorting WeightList and
/// combining adjacent weights. However, for very large edge lists an
/// auxiliary hash table is used.
void normalize();
private:
void add(const BlockNode &Node, uint64_t Amount, Weight::DistType Type);
};
/// \brief Data about each block. This is used downstream.
std::vector<FrequencyData> Freqs;
/// \brief Loop data: see initializeLoops().
std::vector<WorkingData> Working;
/// \brief Indexed information about loops.
std::list<LoopData> Loops;
/// \brief Add all edges out of a packaged loop to the distribution.
///
/// Adds all edges from LocalLoopHead to Dist. Calls addToDist() to add each
/// successor edge.
///
/// \return \c true unless there's an irreducible backedge.
bool addLoopSuccessorsToDist(const LoopData *OuterLoop, LoopData &Loop,
Distribution &Dist);
/// \brief Add an edge to the distribution.
///
/// Adds an edge to Succ to Dist. If \c LoopHead.isValid(), then whether the
/// edge is local/exit/backedge is in the context of LoopHead. Otherwise,
/// every edge should be a local edge (since all the loops are packaged up).
///
/// \return \c true unless aborted due to an irreducible backedge.
bool addToDist(Distribution &Dist, const LoopData *OuterLoop,
const BlockNode &Pred, const BlockNode &Succ, uint64_t Weight);
LoopData &getLoopPackage(const BlockNode &Head) {
assert(Head.Index < Working.size());
assert(Working[Head.Index].isLoopHeader());
return *Working[Head.Index].Loop;
}
/// \brief Analyze irreducible SCCs.
///
/// Separate irreducible SCCs from \c G, which is an explict graph of \c
/// OuterLoop (or the top-level function, if \c OuterLoop is \c nullptr).
/// Insert them into \a Loops before \c Insert.
///
/// \return the \c LoopData nodes representing the irreducible SCCs.
iterator_range<std::list<LoopData>::iterator>
analyzeIrreducible(const bfi_detail::IrreducibleGraph &G, LoopData *OuterLoop,
std::list<LoopData>::iterator Insert);
/// \brief Update a loop after packaging irreducible SCCs inside of it.
///
/// Update \c OuterLoop. Before finding irreducible control flow, it was
/// partway through \a computeMassInLoop(), so \a LoopData::Exits and \a
/// LoopData::BackedgeMass need to be reset. Also, nodes that were packaged
/// up need to be removed from \a OuterLoop::Nodes.
void updateLoopWithIrreducible(LoopData &OuterLoop);
/// \brief Distribute mass according to a distribution.
///
/// Distributes the mass in Source according to Dist. If LoopHead.isValid(),
/// backedges and exits are stored in its entry in Loops.
///
/// Mass is distributed in parallel from two copies of the source mass.
void distributeMass(const BlockNode &Source, LoopData *OuterLoop,
Distribution &Dist);
/// \brief Compute the loop scale for a loop.
void computeLoopScale(LoopData &Loop);
/// Adjust the mass of all headers in an irreducible loop.
///
/// Initially, irreducible loops are assumed to distribute their mass
/// equally among its headers. This can lead to wrong frequency estimates
/// since some headers may be executed more frequently than others.
///
/// This adjusts header mass distribution so it matches the weights of
/// the backedges going into each of the loop headers.
void adjustLoopHeaderMass(LoopData &Loop);
/// \brief Package up a loop.
void packageLoop(LoopData &Loop);
/// \brief Unwrap loops.
void unwrapLoops();
/// \brief Finalize frequency metrics.
///
/// Calculates final frequencies and cleans up no-longer-needed data
/// structures.
void finalizeMetrics();
/// \brief Clear all memory.
void clear();
virtual std::string getBlockName(const BlockNode &Node) const;
std::string getLoopName(const LoopData &Loop) const;
virtual raw_ostream &print(raw_ostream &OS) const { return OS; }
void dump() const { print(dbgs()); }
Scaled64 getFloatingBlockFreq(const BlockNode &Node) const;
BlockFrequency getBlockFreq(const BlockNode &Node) const;
Optional<uint64_t> getBlockProfileCount(const Function &F,
const BlockNode &Node) const;
Optional<uint64_t> getProfileCountFromFreq(const Function &F,
uint64_t Freq) const;
void setBlockFreq(const BlockNode &Node, uint64_t Freq);
raw_ostream &printBlockFreq(raw_ostream &OS, const BlockNode &Node) const;
raw_ostream &printBlockFreq(raw_ostream &OS,
const BlockFrequency &Freq) const;
uint64_t getEntryFreq() const {
assert(!Freqs.empty());
return Freqs[0].Integer;
}
/// \brief Virtual destructor.
///
/// Need a virtual destructor to mask the compiler warning about
/// getBlockName().
virtual ~BlockFrequencyInfoImplBase() {}
};
namespace bfi_detail {
template <class BlockT> struct TypeMap {};
template <> struct TypeMap<BasicBlock> {
typedef BasicBlock BlockT;
typedef Function FunctionT;
typedef BranchProbabilityInfo BranchProbabilityInfoT;
typedef Loop LoopT;
typedef LoopInfo LoopInfoT;
};
template <> struct TypeMap<MachineBasicBlock> {
typedef MachineBasicBlock BlockT;
typedef MachineFunction FunctionT;
typedef MachineBranchProbabilityInfo BranchProbabilityInfoT;
typedef MachineLoop LoopT;
typedef MachineLoopInfo LoopInfoT;
};
/// \brief Get the name of a MachineBasicBlock.
///
/// Get the name of a MachineBasicBlock. It's templated so that including from
/// CodeGen is unnecessary (that would be a layering issue).
///
/// This is used mainly for debug output. The name is similar to
/// MachineBasicBlock::getFullName(), but skips the name of the function.
template <class BlockT> std::string getBlockName(const BlockT *BB) {
assert(BB && "Unexpected nullptr");
auto MachineName = "BB" + Twine(BB->getNumber());
if (BB->getBasicBlock())
return (MachineName + "[" + BB->getName() + "]").str();
return MachineName.str();
}
/// \brief Get the name of a BasicBlock.
template <> inline std::string getBlockName(const BasicBlock *BB) {
assert(BB && "Unexpected nullptr");
return BB->getName().str();
}
/// \brief Graph of irreducible control flow.
///
/// This graph is used for determining the SCCs in a loop (or top-level
/// function) that has irreducible control flow.
///
/// During the block frequency algorithm, the local graphs are defined in a
/// light-weight way, deferring to the \a BasicBlock or \a MachineBasicBlock
/// graphs for most edges, but getting others from \a LoopData::ExitMap. The
/// latter only has successor information.
///
/// \a IrreducibleGraph makes this graph explicit. It's in a form that can use
/// \a GraphTraits (so that \a analyzeIrreducible() can use \a scc_iterator),
/// and it explicitly lists predecessors and successors. The initialization
/// that relies on \c MachineBasicBlock is defined in the header.
struct IrreducibleGraph {
typedef BlockFrequencyInfoImplBase BFIBase;
BFIBase &BFI;
typedef BFIBase::BlockNode BlockNode;
struct IrrNode {
BlockNode Node;
unsigned NumIn;
std::deque<const IrrNode *> Edges;
IrrNode(const BlockNode &Node) : Node(Node), NumIn(0) {}
typedef std::deque<const IrrNode *>::const_iterator iterator;
iterator pred_begin() const { return Edges.begin(); }
iterator succ_begin() const { return Edges.begin() + NumIn; }
iterator pred_end() const { return succ_begin(); }
iterator succ_end() const { return Edges.end(); }
};
BlockNode Start;
const IrrNode *StartIrr;
std::vector<IrrNode> Nodes;
SmallDenseMap<uint32_t, IrrNode *, 4> Lookup;
/// \brief Construct an explicit graph containing irreducible control flow.
///
/// Construct an explicit graph of the control flow in \c OuterLoop (or the
/// top-level function, if \c OuterLoop is \c nullptr). Uses \c
/// addBlockEdges to add block successors that have not been packaged into
/// loops.
///
/// \a BlockFrequencyInfoImpl::computeIrreducibleMass() is the only expected
/// user of this.
template <class BlockEdgesAdder>
IrreducibleGraph(BFIBase &BFI, const BFIBase::LoopData *OuterLoop,
BlockEdgesAdder addBlockEdges)
: BFI(BFI), StartIrr(nullptr) {
initialize(OuterLoop, addBlockEdges);
}
template <class BlockEdgesAdder>
void initialize(const BFIBase::LoopData *OuterLoop,
BlockEdgesAdder addBlockEdges);
void addNodesInLoop(const BFIBase::LoopData &OuterLoop);
void addNodesInFunction();
void addNode(const BlockNode &Node) {
Nodes.emplace_back(Node);
BFI.Working[Node.Index].getMass() = BlockMass::getEmpty();
}
void indexNodes();
template <class BlockEdgesAdder>
void addEdges(const BlockNode &Node, const BFIBase::LoopData *OuterLoop,
BlockEdgesAdder addBlockEdges);
void addEdge(IrrNode &Irr, const BlockNode &Succ,
const BFIBase::LoopData *OuterLoop);
};
template <class BlockEdgesAdder>
void IrreducibleGraph::initialize(const BFIBase::LoopData *OuterLoop,
BlockEdgesAdder addBlockEdges) {
if (OuterLoop) {
addNodesInLoop(*OuterLoop);
for (auto N : OuterLoop->Nodes)
addEdges(N, OuterLoop, addBlockEdges);
} else {
addNodesInFunction();
for (uint32_t Index = 0; Index < BFI.Working.size(); ++Index)
addEdges(Index, OuterLoop, addBlockEdges);
}
StartIrr = Lookup[Start.Index];
}
template <class BlockEdgesAdder>
void IrreducibleGraph::addEdges(const BlockNode &Node,
const BFIBase::LoopData *OuterLoop,
BlockEdgesAdder addBlockEdges) {
auto L = Lookup.find(Node.Index);
if (L == Lookup.end())
return;
IrrNode &Irr = *L->second;
const auto &Working = BFI.Working[Node.Index];
if (Working.isAPackage())
for (const auto &I : Working.Loop->Exits)
addEdge(Irr, I.first, OuterLoop);
else
addBlockEdges(*this, Irr, OuterLoop);
}
}
/// \brief Shared implementation for block frequency analysis.
///
/// This is a shared implementation of BlockFrequencyInfo and
/// MachineBlockFrequencyInfo, and calculates the relative frequencies of
/// blocks.
///
/// LoopInfo defines a loop as a "non-trivial" SCC dominated by a single block,
/// which is called the header. A given loop, L, can have sub-loops, which are
/// loops within the subgraph of L that exclude its header. (A "trivial" SCC
/// consists of a single block that does not have a self-edge.)
///
/// In addition to loops, this algorithm has limited support for irreducible
/// SCCs, which are SCCs with multiple entry blocks. Irreducible SCCs are
/// discovered on they fly, and modelled as loops with multiple headers.
///
/// The headers of irreducible sub-SCCs consist of its entry blocks and all
/// nodes that are targets of a backedge within it (excluding backedges within
/// true sub-loops). Block frequency calculations act as if a block is
/// inserted that intercepts all the edges to the headers. All backedges and
/// entries point to this block. Its successors are the headers, which split
/// the frequency evenly.
///
/// This algorithm leverages BlockMass and ScaledNumber to maintain precision,
/// separates mass distribution from loop scaling, and dithers to eliminate
/// probability mass loss.
///
/// The implementation is split between BlockFrequencyInfoImpl, which knows the
/// type of graph being modelled (BasicBlock vs. MachineBasicBlock), and
/// BlockFrequencyInfoImplBase, which doesn't. The base class uses \a
/// BlockNode, a wrapper around a uint32_t. BlockNode is numbered from 0 in
/// reverse-post order. This gives two advantages: it's easy to compare the
/// relative ordering of two nodes, and maps keyed on BlockT can be represented
/// by vectors.
///
/// This algorithm is O(V+E), unless there is irreducible control flow, in
/// which case it's O(V*E) in the worst case.
///
/// These are the main stages:
///
/// 0. Reverse post-order traversal (\a initializeRPOT()).
///
/// Run a single post-order traversal and save it (in reverse) in RPOT.
/// All other stages make use of this ordering. Save a lookup from BlockT
/// to BlockNode (the index into RPOT) in Nodes.
///
/// 1. Loop initialization (\a initializeLoops()).
///
/// Translate LoopInfo/MachineLoopInfo into a form suitable for the rest of
/// the algorithm. In particular, store the immediate members of each loop
/// in reverse post-order.
///
/// 2. Calculate mass and scale in loops (\a computeMassInLoops()).
///
/// For each loop (bottom-up), distribute mass through the DAG resulting
/// from ignoring backedges and treating sub-loops as a single pseudo-node.
/// Track the backedge mass distributed to the loop header, and use it to
/// calculate the loop scale (number of loop iterations). Immediate
/// members that represent sub-loops will already have been visited and
/// packaged into a pseudo-node.
///
/// Distributing mass in a loop is a reverse-post-order traversal through
/// the loop. Start by assigning full mass to the Loop header. For each
/// node in the loop:
///
/// - Fetch and categorize the weight distribution for its successors.
/// If this is a packaged-subloop, the weight distribution is stored
/// in \a LoopData::Exits. Otherwise, fetch it from
/// BranchProbabilityInfo.
///
/// - Each successor is categorized as \a Weight::Local, a local edge
/// within the current loop, \a Weight::Backedge, a backedge to the
/// loop header, or \a Weight::Exit, any successor outside the loop.
/// The weight, the successor, and its category are stored in \a
/// Distribution. There can be multiple edges to each successor.
///
/// - If there's a backedge to a non-header, there's an irreducible SCC.
/// The usual flow is temporarily aborted. \a
/// computeIrreducibleMass() finds the irreducible SCCs within the
/// loop, packages them up, and restarts the flow.
///
/// - Normalize the distribution: scale weights down so that their sum
/// is 32-bits, and coalesce multiple edges to the same node.
///
/// - Distribute the mass accordingly, dithering to minimize mass loss,
/// as described in \a distributeMass().
///
/// In the case of irreducible loops, instead of a single loop header,
/// there will be several. The computation of backedge masses is similar
/// but instead of having a single backedge mass, there will be one
/// backedge per loop header. In these cases, each backedge will carry
/// a mass proportional to the edge weights along the corresponding
/// path.
///
/// At the end of propagation, the full mass assigned to the loop will be
/// distributed among the loop headers proportionally according to the
/// mass flowing through their backedges.
///
/// Finally, calculate the loop scale from the accumulated backedge mass.
///
/// 3. Distribute mass in the function (\a computeMassInFunction()).
///
/// Finally, distribute mass through the DAG resulting from packaging all
/// loops in the function. This uses the same algorithm as distributing
/// mass in a loop, except that there are no exit or backedge edges.
///
/// 4. Unpackage loops (\a unwrapLoops()).
///
/// Initialize each block's frequency to a floating point representation of
/// its mass.
///
/// Visit loops top-down, scaling the frequencies of its immediate members
/// by the loop's pseudo-node's frequency.
///
/// 5. Convert frequencies to a 64-bit range (\a finalizeMetrics()).
///
/// Using the min and max frequencies as a guide, translate floating point
/// frequencies to an appropriate range in uint64_t.
///
/// It has some known flaws.
///
/// - The model of irreducible control flow is a rough approximation.
///
/// Modelling irreducible control flow exactly involves setting up and
/// solving a group of infinite geometric series. Such precision is
/// unlikely to be worthwhile, since most of our algorithms give up on
/// irreducible control flow anyway.
///
/// Nevertheless, we might find that we need to get closer. Here's a sort
/// of TODO list for the model with diminishing returns, to be completed as
/// necessary.
///
/// - The headers for the \a LoopData representing an irreducible SCC
/// include non-entry blocks. When these extra blocks exist, they
/// indicate a self-contained irreducible sub-SCC. We could treat them
/// as sub-loops, rather than arbitrarily shoving the problematic
/// blocks into the headers of the main irreducible SCC.
///
/// - Entry frequencies are assumed to be evenly split between the
/// headers of a given irreducible SCC, which is the only option if we
/// need to compute mass in the SCC before its parent loop. Instead,
/// we could partially compute mass in the parent loop, and stop when
/// we get to the SCC. Here, we have the correct ratio of entry
/// masses, which we can use to adjust their relative frequencies.
/// Compute mass in the SCC, and then continue propagation in the
/// parent.
///
/// - We can propagate mass iteratively through the SCC, for some fixed
/// number of iterations. Each iteration starts by assigning the entry
/// blocks their backedge mass from the prior iteration. The final
/// mass for each block (and each exit, and the total backedge mass
/// used for computing loop scale) is the sum of all iterations.
/// (Running this until fixed point would "solve" the geometric
/// series by simulation.)
template <class BT> class BlockFrequencyInfoImpl : BlockFrequencyInfoImplBase {
typedef typename bfi_detail::TypeMap<BT>::BlockT BlockT;
typedef typename bfi_detail::TypeMap<BT>::FunctionT FunctionT;
typedef typename bfi_detail::TypeMap<BT>::BranchProbabilityInfoT
BranchProbabilityInfoT;
typedef typename bfi_detail::TypeMap<BT>::LoopT LoopT;
typedef typename bfi_detail::TypeMap<BT>::LoopInfoT LoopInfoT;
// This is part of a workaround for a GCC 4.7 crash on lambdas.
friend struct bfi_detail::BlockEdgesAdder<BT>;
typedef GraphTraits<const BlockT *> Successor;
typedef GraphTraits<Inverse<const BlockT *>> Predecessor;
const BranchProbabilityInfoT *BPI;
const LoopInfoT *LI;
const FunctionT *F;
// All blocks in reverse postorder.
std::vector<const BlockT *> RPOT;
DenseMap<const BlockT *, BlockNode> Nodes;
typedef typename std::vector<const BlockT *>::const_iterator rpot_iterator;
rpot_iterator rpot_begin() const { return RPOT.begin(); }
rpot_iterator rpot_end() const { return RPOT.end(); }
size_t getIndex(const rpot_iterator &I) const { return I - rpot_begin(); }
BlockNode getNode(const rpot_iterator &I) const {
return BlockNode(getIndex(I));
}
BlockNode getNode(const BlockT *BB) const { return Nodes.lookup(BB); }
const BlockT *getBlock(const BlockNode &Node) const {
assert(Node.Index < RPOT.size());
return RPOT[Node.Index];
}
/// \brief Run (and save) a post-order traversal.
///
/// Saves a reverse post-order traversal of all the nodes in \a F.
void initializeRPOT();
/// \brief Initialize loop data.
///
/// Build up \a Loops using \a LoopInfo. \a LoopInfo gives us a mapping from
/// each block to the deepest loop it's in, but we need the inverse. For each
/// loop, we store in reverse post-order its "immediate" members, defined as
/// the header, the headers of immediate sub-loops, and all other blocks in
/// the loop that are not in sub-loops.
void initializeLoops();
/// \brief Propagate to a block's successors.
///
/// In the context of distributing mass through \c OuterLoop, divide the mass
/// currently assigned to \c Node between its successors.
///
/// \return \c true unless there's an irreducible backedge.
bool propagateMassToSuccessors(LoopData *OuterLoop, const BlockNode &Node);
/// \brief Compute mass in a particular loop.
///
/// Assign mass to \c Loop's header, and then for each block in \c Loop in
/// reverse post-order, distribute mass to its successors. Only visits nodes
/// that have not been packaged into sub-loops.
///
/// \pre \a computeMassInLoop() has been called for each subloop of \c Loop.
/// \return \c true unless there's an irreducible backedge.
bool computeMassInLoop(LoopData &Loop);
/// \brief Try to compute mass in the top-level function.
///
/// Assign mass to the entry block, and then for each block in reverse
/// post-order, distribute mass to its successors. Skips nodes that have
/// been packaged into loops.
///
/// \pre \a computeMassInLoops() has been called.
/// \return \c true unless there's an irreducible backedge.
bool tryToComputeMassInFunction();
/// \brief Compute mass in (and package up) irreducible SCCs.
///
/// Find the irreducible SCCs in \c OuterLoop, add them to \a Loops (in front
/// of \c Insert), and call \a computeMassInLoop() on each of them.
///
/// If \c OuterLoop is \c nullptr, it refers to the top-level function.
///
/// \pre \a computeMassInLoop() has been called for each subloop of \c
/// OuterLoop.
/// \pre \c Insert points at the last loop successfully processed by \a
/// computeMassInLoop().
/// \pre \c OuterLoop has irreducible SCCs.
void computeIrreducibleMass(LoopData *OuterLoop,
std::list<LoopData>::iterator Insert);
/// \brief Compute mass in all loops.
///
/// For each loop bottom-up, call \a computeMassInLoop().
///
/// \a computeMassInLoop() aborts (and returns \c false) on loops that
/// contain a irreducible sub-SCCs. Use \a computeIrreducibleMass() and then
/// re-enter \a computeMassInLoop().
///
/// \post \a computeMassInLoop() has returned \c true for every loop.
void computeMassInLoops();
/// \brief Compute mass in the top-level function.
///
/// Uses \a tryToComputeMassInFunction() and \a computeIrreducibleMass() to
/// compute mass in the top-level function.
///
/// \post \a tryToComputeMassInFunction() has returned \c true.
void computeMassInFunction();
std::string getBlockName(const BlockNode &Node) const override {
return bfi_detail::getBlockName(getBlock(Node));
}
public:
const FunctionT *getFunction() const { return F; }
void calculate(const FunctionT &F, const BranchProbabilityInfoT &BPI,
const LoopInfoT &LI);
BlockFrequencyInfoImpl() : BPI(nullptr), LI(nullptr), F(nullptr) {}
using BlockFrequencyInfoImplBase::getEntryFreq;
BlockFrequency getBlockFreq(const BlockT *BB) const {
return BlockFrequencyInfoImplBase::getBlockFreq(getNode(BB));
}
Optional<uint64_t> getBlockProfileCount(const Function &F,
const BlockT *BB) const {
return BlockFrequencyInfoImplBase::getBlockProfileCount(F, getNode(BB));
}
Optional<uint64_t> getProfileCountFromFreq(const Function &F,
uint64_t Freq) const {
return BlockFrequencyInfoImplBase::getProfileCountFromFreq(F, Freq);
}
void setBlockFreq(const BlockT *BB, uint64_t Freq);
Scaled64 getFloatingBlockFreq(const BlockT *BB) const {
return BlockFrequencyInfoImplBase::getFloatingBlockFreq(getNode(BB));
}
const BranchProbabilityInfoT &getBPI() const { return *BPI; }
/// \brief Print the frequencies for the current function.
///
/// Prints the frequencies for the blocks in the current function.
///
/// Blocks are printed in the natural iteration order of the function, rather
/// than reverse post-order. This provides two advantages: writing -analyze
/// tests is easier (since blocks come out in source order), and even
/// unreachable blocks are printed.
///
/// \a BlockFrequencyInfoImplBase::print() only knows reverse post-order, so
/// we need to override it here.
raw_ostream &print(raw_ostream &OS) const override;
using BlockFrequencyInfoImplBase::dump;
using BlockFrequencyInfoImplBase::printBlockFreq;
raw_ostream &printBlockFreq(raw_ostream &OS, const BlockT *BB) const {
return BlockFrequencyInfoImplBase::printBlockFreq(OS, getNode(BB));
}
};
template <class BT>
void BlockFrequencyInfoImpl<BT>::calculate(const FunctionT &F,
const BranchProbabilityInfoT &BPI,
const LoopInfoT &LI) {
// Save the parameters.
this->BPI = &BPI;
this->LI = &LI;
this->F = &F;
// Clean up left-over data structures.
BlockFrequencyInfoImplBase::clear();
RPOT.clear();
Nodes.clear();
// Initialize.
DEBUG(dbgs() << "\nblock-frequency: " << F.getName() << "\n================="
<< std::string(F.getName().size(), '=') << "\n");
initializeRPOT();
initializeLoops();
// Visit loops in post-order to find the local mass distribution, and then do
// the full function.
computeMassInLoops();
computeMassInFunction();
unwrapLoops();
finalizeMetrics();
}
template <class BT>
void BlockFrequencyInfoImpl<BT>::setBlockFreq(const BlockT *BB, uint64_t Freq) {
if (Nodes.count(BB))
BlockFrequencyInfoImplBase::setBlockFreq(getNode(BB), Freq);
else {
// If BB is a newly added block after BFI is done, we need to create a new
// BlockNode for it assigned with a new index. The index can be determined
// by the size of Freqs.
BlockNode NewNode(Freqs.size());
Nodes[BB] = NewNode;
Freqs.emplace_back();
BlockFrequencyInfoImplBase::setBlockFreq(NewNode, Freq);
}
}
template <class BT> void BlockFrequencyInfoImpl<BT>::initializeRPOT() {
const BlockT *Entry = &F->front();
RPOT.reserve(F->size());
std::copy(po_begin(Entry), po_end(Entry), std::back_inserter(RPOT));
std::reverse(RPOT.begin(), RPOT.end());
assert(RPOT.size() - 1 <= BlockNode::getMaxIndex() &&
"More nodes in function than Block Frequency Info supports");
DEBUG(dbgs() << "reverse-post-order-traversal\n");
for (rpot_iterator I = rpot_begin(), E = rpot_end(); I != E; ++I) {
BlockNode Node = getNode(I);
DEBUG(dbgs() << " - " << getIndex(I) << ": " << getBlockName(Node) << "\n");
Nodes[*I] = Node;
}
Working.reserve(RPOT.size());
for (size_t Index = 0; Index < RPOT.size(); ++Index)
Working.emplace_back(Index);
Freqs.resize(RPOT.size());
}
template <class BT> void BlockFrequencyInfoImpl<BT>::initializeLoops() {
DEBUG(dbgs() << "loop-detection\n");
if (LI->empty())
return;
// Visit loops top down and assign them an index.
std::deque<std::pair<const LoopT *, LoopData *>> Q;
for (const LoopT *L : *LI)
Q.emplace_back(L, nullptr);
while (!Q.empty()) {
const LoopT *Loop = Q.front().first;
LoopData *Parent = Q.front().second;
Q.pop_front();
BlockNode Header = getNode(Loop->getHeader());
assert(Header.isValid());
Loops.emplace_back(Parent, Header);
Working[Header.Index].Loop = &Loops.back();
DEBUG(dbgs() << " - loop = " << getBlockName(Header) << "\n");
for (const LoopT *L : *Loop)
Q.emplace_back(L, &Loops.back());
}
// Visit nodes in reverse post-order and add them to their deepest containing
// loop.
for (size_t Index = 0; Index < RPOT.size(); ++Index) {
// Loop headers have already been mostly mapped.
if (Working[Index].isLoopHeader()) {
LoopData *ContainingLoop = Working[Index].getContainingLoop();
if (ContainingLoop)
ContainingLoop->Nodes.push_back(Index);
continue;
}
const LoopT *Loop = LI->getLoopFor(RPOT[Index]);
if (!Loop)
continue;
// Add this node to its containing loop's member list.
BlockNode Header = getNode(Loop->getHeader());
assert(Header.isValid());
const auto &HeaderData = Working[Header.Index];
assert(HeaderData.isLoopHeader());
Working[Index].Loop = HeaderData.Loop;
HeaderData.Loop->Nodes.push_back(Index);
DEBUG(dbgs() << " - loop = " << getBlockName(Header)
<< ": member = " << getBlockName(Index) << "\n");
}
}
template <class BT> void BlockFrequencyInfoImpl<BT>::computeMassInLoops() {
// Visit loops with the deepest first, and the top-level loops last.
for (auto L = Loops.rbegin(), E = Loops.rend(); L != E; ++L) {
if (computeMassInLoop(*L))
continue;
auto Next = std::next(L);
computeIrreducibleMass(&*L, L.base());
L = std::prev(Next);
if (computeMassInLoop(*L))
continue;
llvm_unreachable("unhandled irreducible control flow");
}
}
template <class BT>
bool BlockFrequencyInfoImpl<BT>::computeMassInLoop(LoopData &Loop) {
// Compute mass in loop.
DEBUG(dbgs() << "compute-mass-in-loop: " << getLoopName(Loop) << "\n");
if (Loop.isIrreducible()) {
BlockMass Remaining = BlockMass::getFull();
for (uint32_t H = 0; H < Loop.NumHeaders; ++H) {
auto &Mass = Working[Loop.Nodes[H].Index].getMass();
Mass = Remaining * BranchProbability(1, Loop.NumHeaders - H);
Remaining -= Mass;
}
for (const BlockNode &M : Loop.Nodes)
if (!propagateMassToSuccessors(&Loop, M))
llvm_unreachable("unhandled irreducible control flow");
adjustLoopHeaderMass(Loop);
} else {
Working[Loop.getHeader().Index].getMass() = BlockMass::getFull();
if (!propagateMassToSuccessors(&Loop, Loop.getHeader()))
llvm_unreachable("irreducible control flow to loop header!?");
for (const BlockNode &M : Loop.members())
if (!propagateMassToSuccessors(&Loop, M))
// Irreducible backedge.
return false;
}
computeLoopScale(Loop);
packageLoop(Loop);
return true;
}
template <class BT>
bool BlockFrequencyInfoImpl<BT>::tryToComputeMassInFunction() {
// Compute mass in function.
DEBUG(dbgs() << "compute-mass-in-function\n");
assert(!Working.empty() && "no blocks in function");
assert(!Working[0].isLoopHeader() && "entry block is a loop header");
Working[0].getMass() = BlockMass::getFull();
for (rpot_iterator I = rpot_begin(), IE = rpot_end(); I != IE; ++I) {
// Check for nodes that have been packaged.
BlockNode Node = getNode(I);
if (Working[Node.Index].isPackaged())
continue;
if (!propagateMassToSuccessors(nullptr, Node))
return false;
}
return true;
}
template <class BT> void BlockFrequencyInfoImpl<BT>::computeMassInFunction() {
if (tryToComputeMassInFunction())
return;
computeIrreducibleMass(nullptr, Loops.begin());
if (tryToComputeMassInFunction())
return;
llvm_unreachable("unhandled irreducible control flow");
}
/// \note This should be a lambda, but that crashes GCC 4.7.
namespace bfi_detail {
template <class BT> struct BlockEdgesAdder {
typedef BT BlockT;
typedef BlockFrequencyInfoImplBase::LoopData LoopData;
typedef GraphTraits<const BlockT *> Successor;
const BlockFrequencyInfoImpl<BT> &BFI;
explicit BlockEdgesAdder(const BlockFrequencyInfoImpl<BT> &BFI)
: BFI(BFI) {}
void operator()(IrreducibleGraph &G, IrreducibleGraph::IrrNode &Irr,
const LoopData *OuterLoop) {
const BlockT *BB = BFI.RPOT[Irr.Node.Index];
for (auto I = Successor::child_begin(BB), E = Successor::child_end(BB);
I != E; ++I)
G.addEdge(Irr, BFI.getNode(*I), OuterLoop);
}
};
}
template <class BT>
void BlockFrequencyInfoImpl<BT>::computeIrreducibleMass(
LoopData *OuterLoop, std::list<LoopData>::iterator Insert) {
DEBUG(dbgs() << "analyze-irreducible-in-";
if (OuterLoop) dbgs() << "loop: " << getLoopName(*OuterLoop) << "\n";
else dbgs() << "function\n");
using namespace bfi_detail;
// Ideally, addBlockEdges() would be declared here as a lambda, but that
// crashes GCC 4.7.
BlockEdgesAdder<BT> addBlockEdges(*this);
IrreducibleGraph G(*this, OuterLoop, addBlockEdges);
for (auto &L : analyzeIrreducible(G, OuterLoop, Insert))
computeMassInLoop(L);
if (!OuterLoop)
return;
updateLoopWithIrreducible(*OuterLoop);
}
// A helper function that converts a branch probability into weight.
inline uint32_t getWeightFromBranchProb(const BranchProbability Prob) {
return Prob.getNumerator();
}
template <class BT>
bool
BlockFrequencyInfoImpl<BT>::propagateMassToSuccessors(LoopData *OuterLoop,
const BlockNode &Node) {
DEBUG(dbgs() << " - node: " << getBlockName(Node) << "\n");
// Calculate probability for successors.
Distribution Dist;
if (auto *Loop = Working[Node.Index].getPackagedLoop()) {
assert(Loop != OuterLoop && "Cannot propagate mass in a packaged loop");
if (!addLoopSuccessorsToDist(OuterLoop, *Loop, Dist))
// Irreducible backedge.
return false;
} else {
const BlockT *BB = getBlock(Node);
for (auto SI = Successor::child_begin(BB), SE = Successor::child_end(BB);
SI != SE; ++SI)
if (!addToDist(Dist, OuterLoop, Node, getNode(*SI),
getWeightFromBranchProb(BPI->getEdgeProbability(BB, SI))))
// Irreducible backedge.
return false;
}
// Distribute mass to successors, saving exit and backedge data in the
// loop header.
distributeMass(Node, OuterLoop, Dist);
return true;
}
template <class BT>
raw_ostream &BlockFrequencyInfoImpl<BT>::print(raw_ostream &OS) const {
if (!F)
return OS;
OS << "block-frequency-info: " << F->getName() << "\n";
for (const BlockT &BB : *F) {
OS << " - " << bfi_detail::getBlockName(&BB) << ": float = ";
getFloatingBlockFreq(&BB).print(OS, 5)
<< ", int = " << getBlockFreq(&BB).getFrequency() << "\n";
}
// Add an extra newline for readability.
OS << "\n";
return OS;
}
// Graph trait base class for block frequency information graph
// viewer.
enum GVDAGType { GVDT_None, GVDT_Fraction, GVDT_Integer, GVDT_Count };
template <class BlockFrequencyInfoT, class BranchProbabilityInfoT>
struct BFIDOTGraphTraitsBase : public DefaultDOTGraphTraits {
explicit BFIDOTGraphTraitsBase(bool isSimple = false)
: DefaultDOTGraphTraits(isSimple) {}
typedef GraphTraits<BlockFrequencyInfoT *> GTraits;
typedef typename GTraits::NodeType NodeType;
typedef typename GTraits::ChildIteratorType EdgeIter;
typedef typename GTraits::nodes_iterator NodeIter;
uint64_t MaxFrequency = 0;
static std::string getGraphName(const BlockFrequencyInfoT *G) {
return G->getFunction()->getName();
}
std::string getNodeAttributes(const NodeType *Node,
const BlockFrequencyInfoT *Graph,
unsigned HotPercentThreshold = 0) {
std::string Result;
if (!HotPercentThreshold)
return Result;
// Compute MaxFrequency on the fly:
if (!MaxFrequency) {
for (NodeIter I = GTraits::nodes_begin(Graph),
E = GTraits::nodes_end(Graph);
I != E; ++I) {
NodeType &N = *I;
MaxFrequency =
std::max(MaxFrequency, Graph->getBlockFreq(&N).getFrequency());
}
}
BlockFrequency Freq = Graph->getBlockFreq(Node);
BlockFrequency HotFreq =
(BlockFrequency(MaxFrequency) *
BranchProbability::getBranchProbability(HotPercentThreshold, 100));
if (Freq < HotFreq)
return Result;
raw_string_ostream OS(Result);
OS << "color=\"red\"";
OS.flush();
return Result;
}
std::string getNodeLabel(const NodeType *Node,
const BlockFrequencyInfoT *Graph, GVDAGType GType) {
std::string Result;
raw_string_ostream OS(Result);
OS << Node->getName().str() << " : ";
switch (GType) {
case GVDT_Fraction:
Graph->printBlockFreq(OS, Node);
break;
case GVDT_Integer:
OS << Graph->getBlockFreq(Node).getFrequency();
break;
case GVDT_Count: {
auto Count = Graph->getBlockProfileCount(Node);
if (Count)
OS << Count.getValue();
else
OS << "Unknown";
break;
}
case GVDT_None:
llvm_unreachable("If we are not supposed to render a graph we should "
"never reach this point.");
}
return Result;
}
std::string getEdgeAttributes(const NodeType *Node, EdgeIter EI,
const BlockFrequencyInfoT *BFI,
const BranchProbabilityInfoT *BPI,
unsigned HotPercentThreshold = 0) {
std::string Str;
if (!BPI)
return Str;
BranchProbability BP = BPI->getEdgeProbability(Node, EI);
uint32_t N = BP.getNumerator();
uint32_t D = BP.getDenominator();
double Percent = 100.0 * N / D;
raw_string_ostream OS(Str);
OS << format("label=\"%.1f%%\"", Percent);
if (HotPercentThreshold) {
BlockFrequency EFreq = BFI->getBlockFreq(Node) * BP;
BlockFrequency HotFreq = BlockFrequency(MaxFrequency) *
BranchProbability(HotPercentThreshold, 100);
if (EFreq >= HotFreq) {
OS << ",color=\"red\"";
}
}
OS.flush();
return Str;
}
};
} // end namespace llvm
#undef DEBUG_TYPE
#endif