Commit Graph

10 Commits

Author SHA1 Message Date
Wolfgang Pieb e02920fe55 [llvm-mca][NFC] Refactor handling of views that examine individual instructions,
including printing them.

Reviewers: andreadb, lebedev.ri

Differential Review: https://reviews.llvm.org/D86390

Introduces a new base class "InstructionView" that such views derive from.
Other views still use the "View" base class.
2020-08-25 12:12:37 -07:00
Fangrui Song aa708763d3 [MC] Add parameter `Address` to MCInstPrinter::printInst
printInst prints a branch/call instruction as `b offset` (there are many
variants on various targets) instead of `b address`.

It is a convention to use address instead of offset in most external
symbolizers/disassemblers. This difference makes `llvm-objdump -d`
output unsatisfactory.

Add `uint64_t Address` to printInst(), so that it can pass the argument to
printInstruction(). `raw_ostream &OS` is moved to the last to be
consistent with other print* methods.

The next step is to pass `Address` to printInstruction() (generated by
tablegen from the instruction set description). We can gradually migrate
targets to print addresses instead of offsets.

In any case, downstream projects which don't know `Address` can pass 0 as
the argument.

Reviewed By: jhenderson

Differential Revision: https://reviews.llvm.org/D72172
2020-01-06 20:42:22 -08:00
Andrea Di Biagio e0900f285b [MCA] Improved cost computation for loop carried dependencies in the bottleneck analysis.
This patch introduces a cut-off threshold for dependency edge frequences with
the goal of simplifying the critical sequence computation.  This patch also
removes the cost normalization for loop carried dependencies.  We didn't really
need to artificially amplify the cost of loop-carried dependencies since it is
already computed as the integral over time of the delay (in cycle).

In the absence of backend stalls there is no need for computing a critical
sequence. With this patch we early exit from the critical sequence computation
if no bottleneck was reported during the simulation.

llvm-svn: 372337
2019-09-19 16:05:11 +00:00
Andrea Di Biagio aa9b6468bd [MCA][Bottleneck Analysis] Teach how to compute a critical sequence of instructions based on the simulation.
This patch teaches the bottleneck analysis how to identify and print the most
expensive sequence of instructions according to the simulation. Fixes PR37494.

The goal is to help users identify the sequence of instruction which is most
critical for performance.

A dependency graph is internally used by the bottleneck analysis to describe
data dependencies and processor resource interferences between instructions.

There is one node in the graph for every instruction in the input assembly
sequence. The number of nodes in the graph is independent from the number of
iterations simulated by the tool. It means that a single node of the graph
represents all the possible instances of a same instruction contributed by the
simulated iterations.

Edges are dynamically "discovered" by the bottleneck analysis by observing
instruction state transitions and "backend pressure increase" events generated
by the Execute stage. Information from the events is used to identify critical
dependencies, and materialize edges in the graph. A dependency edge is uniquely
identified by a pair of node identifiers plus an instance of struct
DependencyEdge::Dependency (which provides more details about the actual
dependency kind).

The bottleneck analysis internally ranks dependency edges based on their impact
on the runtime (see field DependencyEdge::Dependency::Cost). To this end, each
edge of the graph has an associated cost. By default, the cost of an edge is a
function of its latency (in cycles). In practice, the cost of an edge is also a
function of the number of cycles where the dependency has been seen as
'contributing to backend pressure increases'. The idea is that the higher the
cost of an edge, the higher is the impact of the dependency on performance. To
put it in another way, the cost of an edge is a measure of criticality for
performance.

Note how a same edge may be found in multiple iteration of the simulated loop.
The logic that adds new edges to the graph checks if an equivalent dependency
already exists (duplicate edges are not allowed). If an equivalent dependency
edge is found, field DependencyEdge::Frequency of that edge is incremented by
one, and the new cost is cumulatively added to the existing edge cost.

At the end of simulation, costs are propagated to nodes through the edges of the
graph. The goal is to identify a critical sequence from a node of the root-set
(composed by node of the graph with no predecessors) to a 'sink node' with no
successors.  Note that the graph is intentionally kept acyclic to minimize the
complexity of the critical sequence computation algorithm (complexity is
currently linear in the number of nodes in the graph).

The critical path is finally computed as a sequence of dependency edges. For
edges describing processor resource interferences, the view also prints a
so-called "interference probability" value (by dividing field
DependencyEdge::Frequency by the total number of iterations).

Examples of critical sequence computations can be found in tests added/modified
by this patch.

On output streams that support colored output, instructions from the critical
sequence are rendered with a different color.

Strictly speaking the analysis conducted by the bottleneck analysis view is not
a critical path analysis. The cost of an edge doesn't only depend on the
dependency latency. More importantly, the cost of a same edge may be computed
differently by different iterations.

The number of dependencies is discovered dynamically based on the events
generated by the simulator. However, their number is not fixed. This is
especially true for edges that model processor resource interferences; an
interference may not occur in every iteration. For that reason, it makes sense
to also print out a "probability of interference".

By construction, the accuracy of this analysis (as always) is strongly dependent
on the simulation (and therefore the quality of the information available in the
scheduling model).

That being said, the critical sequence effectively identifies a performance
criticality. Instructions from that sequence are expected to have a very big
impact on performance. So, users can take advantage of this information to focus
their attention on specific interactions between instructions.
In my experience, it works quite well in practice, and produces useful
output (in a reasonable amount time).

Differential Revision: https://reviews.llvm.org/D63543

llvm-svn: 364045
2019-06-21 13:32:54 +00:00
Andrea Di Biagio 3b2f5df12c [MCA] Slightly refactor the bottleneck analysis view. NFCI
This patch slightly refactors data structures internally used by the bottleneck
analysis to track data and resource dependencies.
This patch also updates methods used to print out information about dependency
edges when in debug mode.
This is the last of a sequence of commits done in preparation for an upcoming
patch that fixes PR37494. No functional change intended.

llvm-svn: 363677
2019-06-18 12:59:46 +00:00
Andrea Di Biagio 49d8699ecc [MCA] Fix -Wunused-private-field warning after r362933. NFC
This should unbreak the buildbots.

llvm-svn: 362935
2019-06-10 13:33:54 +00:00
Andrea Di Biagio 47db08dbb1 [MCA] Further refactor the bottleneck analysis view. NFCI.
llvm-svn: 362933
2019-06-10 12:50:08 +00:00
Andrea Di Biagio 065bd45da9 [MCA] Remove unused fields from BottleneckAnalysis. NFC
This should appease the buildbots.

llvm-svn: 362251
2019-05-31 18:01:42 +00:00
Andrea Di Biagio 312f3a2bbf [MCA] Refactor class BottleneckAnalysis. NFCI
The resource pressure distribution computation is now delegated by class
BottleneckAnalysis to an instance of class PressureTracker.
Class PressureTracker is also responsible for:
 - tracking users of processor resource units.
 - tracking the number of delay cycles caused by increases in backpressure.

BottleneckAnalysis internally initializes a dependency graph. Each nodes
represents an instruction in the input code sequence.  Edges of the dependency
graph are critical register/memory/resource dependencies.  Dependencies are only
added to the graph if they are seen as critical by backend pressure events.

The DependencyGraph is currently unused. It is possible to print the dependency
 graph (see method DependencyGraph::dump()) for debugging purposes.
The long term goal is to use the information stored by the dependency graph in
order to do critical path computation.

llvm-svn: 362246
2019-05-31 17:18:34 +00:00
Andrea Di Biagio 57cef58672 [MCA] Moved the bottleneck analysis to its own file. NFCI
llvm-svn: 358554
2019-04-17 06:02:05 +00:00