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NAME

       llvm-mca - LLVM Machine Code Analyzer

SYNOPSIS

       llvm-mca [options] [input]

DESCRIPTION

       llvm-mca  is a performance analysis tool that uses information available in LLVM (e.g. scheduling models)
       to statically measure the performance of machine code in a specific CPU.

       Performance is measured in terms of throughput as  well  as  processor  resource  consumption.  The  tool
       currently works for processors with a backend for which there is a scheduling model available in LLVM.

       The main goal of this tool is not just to predict the performance of the code when run on the target, but
       also help with diagnosing potential performance issues.

       Given an assembly code sequence, llvm-mca estimates the Instructions Per Cycle (IPC), as well as hardware
       resource pressure. The analysis and reporting style were inspired by the IACA tool from Intel.

       For  example,  you  can  compile code with clang, output assembly, and pipe it directly into llvm-mca for
       analysis:

          $ clang foo.c -O2 --target=x86_64 -S -o - | llvm-mca -mcpu=btver2

       Or for Intel syntax:

          $ clang foo.c -O2 --target=x86_64 -masm=intel -S -o - | llvm-mca -mcpu=btver2

       (llvm-mca detects Intel syntax by the presence of an .intel_syntax directive  at  the  beginning  of  the
       input.  By default its output syntax matches that of its input.)

       Scheduling  models  are  not  just  used  to  compute  instruction  latencies and throughput, but also to
       understand what processor resources are available and how to simulate them.

       By design, the quality of the analysis conducted by llvm-mca is inevitably affected by the quality of the
       scheduling models in LLVM.

       If you see that the performance report is not accurate for a processor, please file  a  bug  against  the
       appropriate backend.

OPTIONS

       If  input  is  “-”  or  omitted,  llvm-mca  reads  from  standard input. Otherwise, it will read from the
       specified filename.

       If the -o option is omitted, then llvm-mca will send its output to standard output if the input  is  from
       standard input.  If the -o option specifies “-”, then the output will also be sent to standard output.

       -help  Print a summary of command line options.

       -o <filename>
              Use <filename> as the output filename. See the summary above for more details.

       -mtriple=<target triple>
              Specify a target triple string.

       -march=<arch>
              Specify the architecture for which to analyze the code. It defaults to the host default target.

       -mcpu=<cpuname>
              Specify  the  processor  for  which to analyze the code.  By default, the cpu name is autodetected
              from the host.

       -output-asm-variant=<variant id>
              Specify the output assembly variant for the report generated by the tool.  On x86, possible values
              are [0, 1]. A value of 0 (vic. 1) for this flag enables the AT&T (vic. Intel) assembly format  for
              the code printed out by the tool in the analysis report.

       -print-imm-hex
              Prefer hex format for numeric literals in the output assembly printed as part of the report.

       -dispatch=<width>
              Specify  a  different  dispatch  width  for  the  processor.  The dispatch width defaults to field
              ‘IssueWidth’ in the processor scheduling model.  If width is zero, then the default dispatch width
              is used.

       -register-file-size=<size>
              Specify the size of the register  file.  When  specified,  this  flag  limits  how  many  physical
              registers  are  available  for  register  renaming  purposes.  A value of zero for this flag means
              “unlimited number of physical registers”.

       -iterations=<number of iterations>
              Specify the number of iterations to run. If this flag is set to 0, then the tool sets  the  number
              of iterations to a default value (i.e. 100).

       -noalias=<bool>
              If set, the tool assumes that loads and stores don’t alias. This is the default behavior.

       -lqueue=<load queue size>
              Specify  the  size of the load queue in the load/store unit emulated by the tool.  By default, the
              tool assumes an unbound number of entries in the load queue.  A value of zero  for  this  flag  is
              ignored, and the default load queue size is used instead.

       -squeue=<store queue size>
              Specify  the  size of the store queue in the load/store unit emulated by the tool. By default, the
              tool assumes an unbound number of entries in the store queue. A value of zero  for  this  flag  is
              ignored, and the default store queue size is used instead.

       -timeline
              Enable the timeline view.

       -timeline-max-iterations=<iterations>
              Limit the number of iterations to print in the timeline view. By default, the timeline view prints
              information for up to 10 iterations.

       -timeline-max-cycles=<cycles>
              Limit  the number of cycles in the timeline view, or use 0 for no limit. By default, the number of
              cycles is set to 80.

       -resource-pressure
              Enable the resource pressure view. This is enabled by default.

       -register-file-stats
              Enable register file usage statistics.

       -dispatch-stats
              Enable extra dispatch statistics. This view collects and analyzes instruction dispatch events,  as
              well as static/dynamic dispatch stall events. This view is disabled by default.

       -scheduler-stats
              Enable  extra scheduler statistics. This view collects and analyzes instruction issue events. This
              view is disabled by default.

       -retire-stats
              Enable extra retire control unit statistics. This view is disabled by default.

       -instruction-info
              Enable the instruction info view. This is enabled by default.

       -show-encoding
              Enable the printing of instruction encodings within the instruction info view.

       -show-barriers
              Enable the printing of LoadBarrier and StoreBarrier flags within the instruction info view.

       -all-stats
              Print all hardware statistics. This enables extra statistics related to the  dispatch  logic,  the
              hardware schedulers, the register file(s), and the retire control unit. This option is disabled by
              default.

       -all-views
              Enable all the view.

       -instruction-tables
              Prints  resource pressure information based on the static information available from the processor
              model. This differs from the resource pressure view because it doesn’t require that  the  code  is
              simulated.  It  instead prints the theoretical uniform distribution of resource pressure for every
              instruction in sequence.

       -bottleneck-analysis
              Print information about bottlenecks that affect the throughput. This analysis  can  be  expensive,
              and  it  is  disabled  by  default.  Bottlenecks  are  highlighted in the summary view. Bottleneck
              analysis is currently not supported for processors with an in-order backend.

       -json  Print the requested views in valid JSON format. The instructions and the processor  resources  are
              printed  as  members  of  special  top  level JSON objects.  The individual views refer to them by
              index. However, not all views are currently supported. For example, the report from the bottleneck
              analysis is not printed out in JSON. All the default views are currently supported.

       -disable-cb
              Force usage of the generic CustomBehaviour and InstrPostProcess  classes  rather  than  using  the
              target  specific  implementation.  The generic classes never detect any custom hazards or make any
              post processing modifications to instructions.

       -disable-im
              Force usage of the generic InstrumentManager rather than using the target specific implementation.
              The generic class creates Instruments that provide no  extra  information,  and  InstrumentManager
              never overrides the default schedule class for a given instruction.

EXIT STATUS

       llvm-mca  returns  0  on  success. Otherwise, an error message is printed to standard error, and the tool
       returns 1.

USING MARKERS TO ANALYZE SPECIFIC CODE BLOCKS

       llvm-mca allows for the optional usage of special code comments to mark regions of the assembly  code  to
       be analyzed.  A comment starting with substring LLVM-MCA-BEGIN marks the beginning of an analysis region.
       A comment starting with substring LLVM-MCA-END marks the end of a region.  For example:

          # LLVM-MCA-BEGIN
            ...
          # LLVM-MCA-END

       If  no  user-defined  region  is  specified,  then llvm-mca assumes a default region which contains every
       instruction in the input file.  Every region is analyzed in isolation, and the final  performance  report
       is the union of all the reports generated for every analysis region.

       Analysis regions can have names. For example:

          # LLVM-MCA-BEGIN A simple example
            add %eax, %eax
          # LLVM-MCA-END

       The  code  from  the example above defines a region named “A simple example” with a single instruction in
       it. Note how the region name doesn’t have to be repeated in the LLVM-MCA-END directive. In the absence of
       overlapping regions, an anonymous LLVM-MCA-END directive always ends the currently  active  user  defined
       region.

       Example of nesting regions:

          # LLVM-MCA-BEGIN foo
            add %eax, %edx
          # LLVM-MCA-BEGIN bar
            sub %eax, %edx
          # LLVM-MCA-END bar
          # LLVM-MCA-END foo

       Example of overlapping regions:

          # LLVM-MCA-BEGIN foo
            add %eax, %edx
          # LLVM-MCA-BEGIN bar
            sub %eax, %edx
          # LLVM-MCA-END foo
            add %eax, %edx
          # LLVM-MCA-END bar

       Note that multiple anonymous regions cannot overlap. Also, overlapping regions cannot have the same name.

       There  is  no  support  for  marking regions from high-level source code, like C or C++. As a workaround,
       inline assembly directives may be used:

          int foo(int a, int b) {
            __asm volatile("# LLVM-MCA-BEGIN foo":::"memory");
            a += 42;
            __asm volatile("# LLVM-MCA-END":::"memory");
            a *= b;
            return a;
          }

       However, this interferes with optimizations like loop vectorization and may have an impact  on  the  code
       generated.  This  is  because  the  __asm statements are seen as real code having important side effects,
       which limits how the code around them can be transformed. If users want to make use of inline assembly to
       emit markers, then the recommendation is to always verify that the output assembly is equivalent  to  the
       assembly  generated  in  the absence of markers.  The Clang options to emit optimization reports can also
       help in detecting missed optimizations.

INSTRUMENT REGIONS

       An InstrumentRegion describes a region of assembly code guarded by special LLVM-MCA comment directives.

          # LLVM-MCA-<INSTRUMENT_TYPE> <data>
            ...  ## asm

       where INSTRUMENT_TYPE is a type defined by the target and expects to use data.

       A comment starting with substring LLVM-MCA-<INSTRUMENT_TYPE> brings data into scope for llvm-mca  to  use
       in its analysis for all following instructions.

       If  a  comment  with  the  same INSTRUMENT_TYPE is found later in the instruction list, then the original
       InstrumentRegion will be automatically ended, and a new InstrumentRegion will begin.

       If there are comments containing the different INSTRUMENT_TYPE, then both data sets remain available.  In
       contrast with an AnalysisRegion, an InstrumentRegion does not need a comment to end the region.

       Comments that are prefixed with LLVM-MCA- but do not correspond to a valid INSTRUMENT_TYPE for the target
       cause an error, except for BEGIN and END, since those correspond to AnalysisRegions. Comments that do not
       start with LLVM-MCA- are ignored by :program llvm-mca.

       An  instruction  (a  MCInst)  is  added  to  an  InstrumentRegion  R  only  if  its  location is in range
       [R.RangeStart, R.RangeEnd].

       On RISCV targets, vector instructions have different  behaviour  depending  on  the  LMUL.  Code  can  be
       instrumented with a comment that takes the following form:

          # LLVM-MCA-RISCV-LMUL <M1|M2|M4|M8|MF2|MF4|MF8>

       The  RISCV  InstrumentManager  will  override  the  schedule  class  for  vector  instructions to use the
       scheduling behaviour of its pseudo-instruction which is LMUL dependent. It makes  sense  to  place  RISCV
       instrument comments directly after vset{i}vl{i} instructions, although they can be placed anywhere in the
       program.

       Example of program with no call to vset{i}vl{i}:

          # LLVM-MCA-RISCV-LMUL M2
          vadd.vv v2, v2, v2

       Example of program with call to vset{i}vl{i}:

          vsetvli zero, a0, e8, m1, tu, mu
          # LLVM-MCA-RISCV-LMUL M1
          vadd.vv v2, v2, v2

       Example of program with multiple calls to vset{i}vl{i}:

          vsetvli zero, a0, e8, m1, tu, mu
          # LLVM-MCA-RISCV-LMUL M1
          vadd.vv v2, v2, v2
          vsetvli zero, a0, e8, m8, tu, mu
          # LLVM-MCA-RISCV-LMUL M8
          vadd.vv v2, v2, v2

       Example of program with call to vsetvl:

          vsetvl rd, rs1, rs2
          # LLVM-MCA-RISCV-LMUL M1
          vadd.vv v12, v12, v12
          vsetvl rd, rs1, rs2
          # LLVM-MCA-RISCV-LMUL M4
          vadd.vv v12, v12, v12

HOW LLVM-MCA WORKS

       llvm-mca  takes  assembly  code  as input. The assembly code is parsed into a sequence of MCInst with the
       help of the existing LLVM target assembly parsers. The parsed sequence of MCInst is then  analyzed  by  a
       Pipeline module to generate a performance report.

       The Pipeline module simulates the execution of the machine code sequence in a loop of iterations (default
       is  100). During this process, the pipeline collects a number of execution related statistics. At the end
       of this process, the pipeline generates and prints a report from the collected statistics.

       Here is an example of a performance report generated by the tool for a dot-product of  two  packed  float
       vectors of four elements. The analysis is conducted for target x86, cpu btver2.  The following result can
       be     produced     via     the     following     command     using     the     example     located    at
       test/tools/llvm-mca/X86/BtVer2/dot-product.s:

          $ llvm-mca -mtriple=x86_64-unknown-unknown -mcpu=btver2 -iterations=300 dot-product.s

          Iterations:        300
          Instructions:      900
          Total Cycles:      610
          Total uOps:        900

          Dispatch Width:    2
          uOps Per Cycle:    1.48
          IPC:               1.48
          Block RThroughput: 2.0

          Instruction Info:
          [1]: #uOps
          [2]: Latency
          [3]: RThroughput
          [4]: MayLoad
          [5]: MayStore
          [6]: HasSideEffects (U)

          [1]    [2]    [3]    [4]    [5]    [6]    Instructions:
           1      2     1.00                        vmulps      %xmm0, %xmm1, %xmm2
           1      3     1.00                        vhaddps     %xmm2, %xmm2, %xmm3
           1      3     1.00                        vhaddps     %xmm3, %xmm3, %xmm4

          Resources:
          [0]   - JALU0
          [1]   - JALU1
          [2]   - JDiv
          [3]   - JFPA
          [4]   - JFPM
          [5]   - JFPU0
          [6]   - JFPU1
          [7]   - JLAGU
          [8]   - JMul
          [9]   - JSAGU
          [10]  - JSTC
          [11]  - JVALU0
          [12]  - JVALU1
          [13]  - JVIMUL

          Resource pressure per iteration:
          [0]    [1]    [2]    [3]    [4]    [5]    [6]    [7]    [8]    [9]    [10]   [11]   [12]   [13]
           -      -      -     2.00   1.00   2.00   1.00    -      -      -      -      -      -      -

          Resource pressure by instruction:
          [0]    [1]    [2]    [3]    [4]    [5]    [6]    [7]    [8]    [9]    [10]   [11]   [12]   [13]   Instructions:
           -      -      -      -     1.00    -     1.00    -      -      -      -      -      -      -     vmulps      %xmm0, %xmm1, %xmm2
           -      -      -     1.00    -     1.00    -      -      -      -      -      -      -      -     vhaddps     %xmm2, %xmm2, %xmm3
           -      -      -     1.00    -     1.00    -      -      -      -      -      -      -      -     vhaddps     %xmm3, %xmm3, %xmm4

       According to this report, the dot-product kernel has  been  executed  300  times,  for  a  total  of  900
       simulated instructions. The total number of simulated micro opcodes (uOps) is also 900.

       The  report  is structured in three main sections.  The first section collects a few performance numbers;
       the goal of this section is to give a very  quick  overview  of  the  performance  throughput.  Important
       performance indicators are IPC, uOps Per Cycle, and  Block RThroughput (Block Reciprocal Throughput).

       Field  DispatchWidth  is  the  maximum  number  of  micro opcodes that are dispatched to the out-of-order
       backend every simulated cycle. For processors with an in-order  backend,  DispatchWidth  is  the  maximum
       number of micro opcodes issued to the backend every simulated cycle.

       IPC is computed dividing the total number of simulated instructions by the total number of cycles.

       Field  Block  RThroughput  is  the  reciprocal of the block throughput. Block throughput is a theoretical
       quantity computed as the maximum number of blocks (i.e. iterations) that can be  executed  per  simulated
       clock  cycle  in  the absence of loop carried dependencies. Block throughput is superiorly limited by the
       dispatch rate, and the availability of hardware resources.

       In the absence of loop-carried data dependencies, the observed IPC tends to a theoretical  maximum  which
       can be computed by dividing the number of instructions of a single iteration by the Block RThroughput.

       Field  ‘uOps  Per  Cycle’  is  computed dividing the total number of simulated micro opcodes by the total
       number of cycles. A delta between Dispatch Width and this field is an indicator of a  performance  issue.
       In  the  absence  of  loop-carried  data  dependencies,  the  observed  ‘uOps Per Cycle’ should tend to a
       theoretical maximum throughput which can be computed by dividing the number of uOps of a single iteration
       by the Block RThroughput.

       Field uOps Per Cycle is bounded from above by the dispatch width. That  is  because  the  dispatch  width
       limits  the  maximum size of a dispatch group. Both IPC and ‘uOps Per Cycle’ are limited by the amount of
       hardware parallelism. The availability of hardware resources affects the resource pressure  distribution,
       and  it  limits the number of instructions that can be executed in parallel every cycle.  A delta between
       Dispatch Width and the theoretical maximum uOps per Cycle (computed by dividing the number of uOps  of  a
       single iteration by the Block RThroughput) is an indicator of a performance bottleneck caused by the lack
       of hardware resources.  In general, the lower the Block RThroughput, the better.

       In  this  example,  uOps  per  iteration/Block  RThroughput  is  1.50.  Since  there  are no loop-carried
       dependencies, the observed uOps Per Cycle is expected to approach 1.50  when  the  number  of  iterations
       tends  to  infinity.  The  delta  between  the  Dispatch  Width  (2.00),  and the theoretical maximum uOp
       throughput (1.50) is an indicator of a performance bottleneck caused by the lack of  hardware  resources,
       and the Resource pressure view can help to identify the problematic resource usage.

       The  second  section  of  the  report  is  the instruction info view. It shows the latency and reciprocal
       throughput of every instruction in the sequence. It also reports extra information related to the  number
       of micro opcodes, and opcode properties (i.e., ‘MayLoad’, ‘MayStore’, and ‘HasSideEffects’).

       Field  RThroughput is the reciprocal of the instruction throughput. Throughput is computed as the maximum
       number of instructions of a same type that can be executed per clock cycle  in  the  absence  of  operand
       dependencies.   In   this   example,   the  reciprocal  throughput  of  a  vector  float  multiply  is  1
       cycles/instruction.  That is because the FP multiplier JFPM is only available from pipeline JFPU1.

       Instruction encodings are displayed  within  the  instruction  info  view  when  flag  -show-encoding  is
       specified.

       Below is an example of -show-encoding output for the dot-product kernel:

          Instruction Info:
          [1]: #uOps
          [2]: Latency
          [3]: RThroughput
          [4]: MayLoad
          [5]: MayStore
          [6]: HasSideEffects (U)
          [7]: Encoding Size

          [1]    [2]    [3]    [4]    [5]    [6]    [7]    Encodings:                    Instructions:
           1      2     1.00                         4     c5 f0 59 d0                   vmulps %xmm0, %xmm1, %xmm2
           1      4     1.00                         4     c5 eb 7c da                   vhaddps        %xmm2, %xmm2, %xmm3
           1      4     1.00                         4     c5 e3 7c e3                   vhaddps        %xmm3, %xmm3, %xmm4

       The  Encoding Size column shows the size in bytes of instructions.  The Encodings column shows the actual
       instruction encodings (byte sequences in hex).

       The third section is the Resource pressure view.  This view reports the average number of resource cycles
       consumed every iteration by instructions for every processor  resource  unit  available  on  the  target.
       Information  is  structured in two tables. The first table reports the number of resource cycles spent on
       average every iteration. The second table correlates the resource cycles to the  machine  instruction  in
       the sequence. For example, every iteration of the instruction vmulps always executes on resource unit [6]
       (JFPU1  - floating point pipeline #1), consuming an average of 1 resource cycle per iteration.  Note that
       on AMD Jaguar, vector floating-point multiply can only be issued  to  pipeline  JFPU1,  while  horizontal
       floating-point additions can only be issued to pipeline JFPU0.

       The  resource  pressure view helps with identifying bottlenecks caused by high usage of specific hardware
       resources.  Situations with resource pressure mainly concentrated on a few resources should, in  general,
       be avoided.  Ideally, pressure should be uniformly distributed between multiple resources.

   Timeline View
       The  timeline  view  produces  a  detailed  report  of  each  instruction’s  state transitions through an
       instruction pipeline.  This view is enabled by  the  command  line  option  -timeline.   As  instructions
       transition  through  the  various  stages  of the pipeline, their states are depicted in the view report.
       These states are represented by the following characters:

       • D : Instruction dispatched.

       • e : Instruction executing.

       • E : Instruction executed.

       • R : Instruction retired.

       • = : Instruction already dispatched, waiting to be executed.

       • - : Instruction executed, waiting to be retired.

       Below   is   the   timeline   view   for   a   subset   of   the   dot-product   example    located    in
       test/tools/llvm-mca/X86/BtVer2/dot-product.s and processed by llvm-mca using the following command:

          $ llvm-mca -mtriple=x86_64-unknown-unknown -mcpu=btver2 -iterations=3 -timeline dot-product.s

          Timeline view:
                              012345
          Index     0123456789

          [0,0]     DeeER.    .    .   vmulps   %xmm0, %xmm1, %xmm2
          [0,1]     D==eeeER  .    .   vhaddps  %xmm2, %xmm2, %xmm3
          [0,2]     .D====eeeER    .   vhaddps  %xmm3, %xmm3, %xmm4
          [1,0]     .DeeE-----R    .   vmulps   %xmm0, %xmm1, %xmm2
          [1,1]     . D=eeeE---R   .   vhaddps  %xmm2, %xmm2, %xmm3
          [1,2]     . D====eeeER   .   vhaddps  %xmm3, %xmm3, %xmm4
          [2,0]     .  DeeE-----R  .   vmulps   %xmm0, %xmm1, %xmm2
          [2,1]     .  D====eeeER  .   vhaddps  %xmm2, %xmm2, %xmm3
          [2,2]     .   D======eeeER   vhaddps  %xmm3, %xmm3, %xmm4

          Average Wait times (based on the timeline view):
          [0]: Executions
          [1]: Average time spent waiting in a scheduler's queue
          [2]: Average time spent waiting in a scheduler's queue while ready
          [3]: Average time elapsed from WB until retire stage

                [0]    [1]    [2]    [3]
          0.     3     1.0    1.0    3.3       vmulps   %xmm0, %xmm1, %xmm2
          1.     3     3.3    0.7    1.0       vhaddps  %xmm2, %xmm2, %xmm3
          2.     3     5.7    0.0    0.0       vhaddps  %xmm3, %xmm3, %xmm4
                 3     3.3    0.5    1.4       <total>

       The  timeline  view  is interesting because it shows instruction state changes during execution.  It also
       gives an idea of how the tool processes instructions  executed  on  the  target,  and  how  their  timing
       information might be calculated.

       The  timeline  view  is structured in two tables.  The first table shows instructions changing state over
       time (measured in cycles); the second table (named Average Wait times) reports useful timing  statistics,
       which should help diagnose performance bottlenecks caused by long data dependencies and sub-optimal usage
       of hardware resources.

       An  instruction in the timeline view is identified by a pair of indices, where the first index identifies
       an iteration, and the second index is  the  instruction  index  (i.e.,  where  it  appears  in  the  code
       sequence).   Since  this  example  was generated using 3 iterations: -iterations=3, the iteration indices
       range from 0-2 inclusively.

       Excluding the first and  last  column,  the  remaining  columns  are  in  cycles.   Cycles  are  numbered
       sequentially starting from 0.

       From the example output above, we know the following:

       • Instruction [1,0] was dispatched at cycle 1.

       • Instruction [1,0] started executing at cycle 2.

       • Instruction [1,0] reached the write back stage at cycle 4.

       • Instruction [1,0] was retired at cycle 10.

       Instruction [1,0] (i.e., vmulps from iteration #1) does not have to wait in the scheduler’s queue for the
       operands  to  become  available.  By  the  time vmulps is dispatched, operands are already available, and
       pipeline JFPU1 is ready to serve another instruction.  So the instruction can be  immediately  issued  on
       the  JFPU1  pipeline.  That  is  demonstrated  by  the  fact  that  the instruction only spent 1cy in the
       scheduler’s queue.

       There is a gap of 5 cycles  between  the  write-back  stage  and  the  retire  event.   That  is  because
       instructions  must  retire in program order, so [1,0] has to wait for [0,2] to be retired first (i.e., it
       has to wait until cycle 10).

       In the example, all instructions are in a RAW  (Read  After  Write)  dependency  chain.   Register  %xmm2
       written  by  vmulps  is  immediately  used  by the first vhaddps, and register %xmm3 written by the first
       vhaddps is used by the second vhaddps.  Long data dependencies negatively  impact  the  ILP  (Instruction
       Level Parallelism).

       In  the  dot-product  example,  there  are  anti-dependencies  introduced  by instructions from different
       iterations.  However, those dependencies can be removed at  register  renaming  stage  (at  the  cost  of
       allocating register aliases, and therefore consuming physical registers).

       Table  Average  Wait  times  helps  diagnose  performance  issues that are caused by the presence of long
       latency instructions and potentially long data dependencies which may limit the ILP. Last  row,  <total>,
       shows  a  global average over all instructions measured. Note that llvm-mca, by default, assumes at least
       1cy between the dispatch event and the issue event.

       When the performance is limited by data dependencies and/or long  latency  instructions,  the  number  of
       cycles spent while in the ready state is expected to be very small when compared with the total number of
       cycles  spent  in  the scheduler’s queue.  The difference between the two counters is a good indicator of
       how large of an impact data dependencies had on the execution of the instructions.  When  performance  is
       mostly  limited by the lack of hardware resources, the delta between the two counters is small.  However,
       the number of cycles spent in the queue tends to be larger  (i.e.,  more  than  1-3cy),  especially  when
       compared to other low latency instructions.

   Bottleneck Analysis
       The -bottleneck-analysis command line option enables the analysis of performance bottlenecks.

       This analysis is potentially expensive. It attempts to correlate increases in backend pressure (caused by
       pipeline resource pressure and data dependencies) to dynamic dispatch stalls.

       Below  is  an  example  of  -bottleneck-analysis  output  generated by llvm-mca for 500 iterations of the
       dot-product example on btver2.

          Cycles with backend pressure increase [ 48.07% ]
          Throughput Bottlenecks:
            Resource Pressure       [ 47.77% ]
            - JFPA  [ 47.77% ]
            - JFPU0  [ 47.77% ]
            Data Dependencies:      [ 0.30% ]
            - Register Dependencies [ 0.30% ]
            - Memory Dependencies   [ 0.00% ]

          Critical sequence based on the simulation:

                        Instruction                         Dependency Information
           +----< 2.    vhaddps %xmm3, %xmm3, %xmm4
           |
           |    < loop carried >
           |
           |      0.    vmulps  %xmm0, %xmm1, %xmm2
           +----> 1.    vhaddps %xmm2, %xmm2, %xmm3         ## RESOURCE interference:  JFPA [ probability: 74% ]
           +----> 2.    vhaddps %xmm3, %xmm3, %xmm4         ## REGISTER dependency:  %xmm3
           |
           |    < loop carried >
           |
           +----> 1.    vhaddps %xmm2, %xmm2, %xmm3         ## RESOURCE interference:  JFPA [ probability: 74% ]

       According to the analysis, throughput is limited by resource pressure and not by data dependencies.   The
       analysis  observed  increases  in  backend  pressure during 48.07% of the simulated run. Almost all those
       pressure increase events were caused by contention on processor resources JFPA/JFPU0.

       The critical sequence is the most expensive sequence of instructions according to the simulation.  It  is
       annotated  to  provide  extra information about critical register dependencies and resource interferences
       between instructions.

       Instructions  from  the  critical  sequence  are  expected  to  significantly  impact   performance.   By
       construction,  the  accuracy  of this analysis is strongly dependent on the simulation and (as always) by
       the quality of the processor model in llvm.

       Bottleneck analysis is currently not supported for processors with an in-order backend.

   Extra Statistics to Further Diagnose Performance Issues
       The -all-stats command line option enables extra statistics and performance  counters  for  the  dispatch
       logic, the reorder buffer, the retire control unit, and the register file.

       Below  is  an  example  of -all-stats output generated by  llvm-mca for 300 iterations of the dot-product
       example discussed in the previous sections.

          Dynamic Dispatch Stall Cycles:
          RAT     - Register unavailable:                      0
          RCU     - Retire tokens unavailable:                 0
          SCHEDQ  - Scheduler full:                            272  (44.6%)
          LQ      - Load queue full:                           0
          SQ      - Store queue full:                          0
          GROUP   - Static restrictions on the dispatch group: 0

          Dispatch Logic - number of cycles where we saw N micro opcodes dispatched:
          [# dispatched], [# cycles]
           0,              24  (3.9%)
           1,              272  (44.6%)
           2,              314  (51.5%)

          Schedulers - number of cycles where we saw N micro opcodes issued:
          [# issued], [# cycles]
           0,          7  (1.1%)
           1,          306  (50.2%)
           2,          297  (48.7%)

          Scheduler's queue usage:
          [1] Resource name.
          [2] Average number of used buffer entries.
          [3] Maximum number of used buffer entries.
          [4] Total number of buffer entries.

           [1]            [2]        [3]        [4]
          JALU01           0          0          20
          JFPU01           17         18         18
          JLSAGU           0          0          12

          Retire Control Unit - number of cycles where we saw N instructions retired:
          [# retired], [# cycles]
           0,           109  (17.9%)
           1,           102  (16.7%)
           2,           399  (65.4%)

          Total ROB Entries:                64
          Max Used ROB Entries:             35  ( 54.7% )
          Average Used ROB Entries per cy:  32  ( 50.0% )

          Register File statistics:
          Total number of mappings created:    900
          Max number of mappings used:         35

          *  Register File #1 -- JFpuPRF:
             Number of physical registers:     72
             Total number of mappings created: 900
             Max number of mappings used:      35

          *  Register File #2 -- JIntegerPRF:
             Number of physical registers:     64
             Total number of mappings created: 0
             Max number of mappings used:      0

       If we look at the Dynamic Dispatch Stall Cycles table, we see the counter for SCHEDQ reports 272  cycles.
       This  counter is incremented every time the dispatch logic is unable to dispatch a full group because the
       scheduler’s queue is full.

       Looking at the Dispatch Logic table, we see that the pipeline was only able to dispatch two micro opcodes
       51.5% of the time.  The dispatch group was limited to  one  micro  opcode  44.6%  of  the  cycles,  which
       corresponds  to  272  cycles.   The  dispatch statistics are displayed by either using the command option
       -all-stats or -dispatch-stats.

       The next table, Schedulers, presents a histogram displaying a count, representing  the  number  of  micro
       opcodes  issued  on some number of cycles. In this case, of the 610 simulated cycles, single opcodes were
       issued 306 times (50.2%) and there were 7 cycles where no opcodes were issued.

       The Scheduler’s queue usage table shows that the average and maximum  number  of  buffer  entries  (i.e.,
       scheduler  queue entries) used at runtime.  Resource JFPU01 reached its maximum (18 of 18 queue entries).
       Note that AMD Jaguar implements three schedulers:

       • JALU01 - A scheduler for ALU instructions.

       • JFPU01 - A scheduler floating point operations.

       • JLSAGU - A scheduler for address generation.

       The dot-product is a kernel of three floating point instructions  (a  vector  multiply  followed  by  two
       horizontal adds).  That explains why only the floating point scheduler appears to be used.

       A  full  scheduler queue is either caused by data dependency chains or by a sub-optimal usage of hardware
       resources.  Sometimes, resource pressure can  be  mitigated  by  rewriting  the  kernel  using  different
       instructions  that  consume  different  scheduler  resources.   Schedulers  with  a  small queue are less
       resilient to bottlenecks caused by the presence of long data dependencies.  The scheduler statistics  are
       displayed by using the command option -all-stats or -scheduler-stats.

       The  next table, Retire Control Unit, presents a histogram displaying a count, representing the number of
       instructions retired on some number  of  cycles.   In  this  case,  of  the  610  simulated  cycles,  two
       instructions  were  retired  during  the  same cycle 399 times (65.4%) and there were 109 cycles where no
       instructions were retired.  The retire statistics are displayed by using the command option -all-stats or
       -retire-stats.

       The last table presented is Register File statistics.  Each physical register  file  (PRF)  used  by  the
       pipeline  is  presented  in this table.  In the case of AMD Jaguar, there are two register files, one for
       floating-point registers (JFpuPRF) and one for integer registers (JIntegerPRF).  The table shows that  of
       the 900 instructions processed, there were 900 mappings created.  Since this dot-product example utilized
       only  floating  point  registers, the JFPuPRF was responsible for creating the 900 mappings.  However, we
       see that the pipeline only used a maximum of 35 of 72 available register slots at any given time. We  can
       conclude  that  the  floating  point PRF was the only register file used for the example, and that it was
       never resource constrained.  The register file statistics are  displayed  by  using  the  command  option
       -all-stats or -register-file-stats.

       In this example, we can conclude that the IPC is mostly limited by data dependencies, and not by resource
       pressure.

   Instruction Flow
       This  section  describes  the  instruction  flow through the default pipeline of llvm-mca, as well as the
       functional units involved in the process.

       The default pipeline implements the following sequence of stages used to process instructions.

       • Dispatch (Instruction is dispatched to the schedulers).

       • Issue (Instruction is issued to the processor pipelines).

       • Write Back (Instruction is executed, and results are written back).

       • Retire (Instruction is retired; writes are architecturally committed).

       The in-order pipeline implements the following sequence of stages: * InOrderIssue (Instruction is  issued
       to the processor pipelines).  * Retire (Instruction is retired; writes are architecturally committed).

       llvm-mca  assumes  that  instructions have all been decoded and placed into a queue before the simulation
       start. Therefore, the instruction fetch and decode stages are not modeled. Performance bottlenecks in the
       frontend are not diagnosed. Also, llvm-mca does not model branch prediction.

   Instruction Dispatch
       During the dispatch stage, instructions are picked in program order  from  a  queue  of  already  decoded
       instructions, and dispatched in groups to the simulated hardware schedulers.

       The  size  of  a  dispatch  group  depends  on the availability of the simulated hardware resources.  The
       processor dispatch width defaults to the value of the IssueWidth in LLVM’s scheduling model.

       An instruction can be dispatched if:

       • The size of the dispatch group is smaller than processor’s dispatch width.

       • There are enough entries in the reorder buffer.

       • There are enough physical registers to do register renaming.

       • The schedulers are not full.

       Scheduling models can optionally specify which register files are available on  the  processor.  llvm-mca
       uses  that  information  to initialize register file descriptors.  Users can limit the number of physical
       registers  that  are  globally  available  for  register   renaming   by   using   the   command   option
       -register-file-size.   A value of zero for this option means unbounded. By knowing how many registers are
       available for renaming, the tool can predict dispatch stalls caused by the lack of physical registers.

       The number of reorder buffer entries consumed by an instruction depends on the  number  of  micro-opcodes
       specified  for  that  instruction  by the target scheduling model.  The reorder buffer is responsible for
       tracking the progress of instructions that are “in-flight”, and retiring  them  in  program  order.   The
       number of entries in the reorder buffer defaults to the value specified by field MicroOpBufferSize in the
       target scheduling model.

       Instructions that are dispatched to the schedulers consume scheduler buffer entries. llvm-mca queries the
       scheduling  model  to  determine  the  set  of  buffered  resources consumed by an instruction.  Buffered
       resources are treated like scheduler resources.

   Instruction Issue
       Each processor scheduler implements a buffer  of  instructions.   An  instruction  has  to  wait  in  the
       scheduler’s  buffer  until  input  register  operands  become  available.   Only  at that point, does the
       instruction becomes eligible for execution and may be issued (potentially  out-of-order)  for  execution.
       Instruction latencies are computed by llvm-mca with the help of the scheduling model.

       llvm-mca’s scheduler is designed to simulate multiple processor schedulers.  The scheduler is responsible
       for  tracking  data  dependencies,  and  dynamically  selecting which processor resources are consumed by
       instructions.  It delegates the management of processor resource units and resource groups to a  resource
       manager.   The  resource  manager  is  responsible  for  selecting  resource  units  that are consumed by
       instructions.  For example, if an instruction consumes 1cy of a  resource  group,  the  resource  manager
       selects  one  of  the available units from the group; by default, the resource manager uses a round-robin
       selector to guarantee that resource usage is uniformly distributed between all units of a group.

       llvm-mca’s scheduler internally groups instructions into three sets:

       • WaitSet: a set of instructions whose operands are not ready.

       • ReadySet: a set of instructions ready to execute.

       • IssuedSet: a set of instructions executing.

       Depending on the operands availability, instructions that are dispatched  to  the  scheduler  are  either
       placed into the WaitSet or into the ReadySet.

       Every  cycle,  the scheduler checks if instructions can be moved from the WaitSet to the ReadySet, and if
       instructions from the ReadySet can be issued to the underlying pipelines. The algorithm prioritizes older
       instructions over younger instructions.

   Write-Back and Retire Stage
       Issued instructions are moved from the ReadySet to the IssuedSet.  There, instructions  wait  until  they
       reach  the  write-back stage.  At that point, they get removed from the queue and the retire control unit
       is notified.

       When instructions are executed, the retire control unit flags the instruction as “ready to retire.”

       Instructions are retired in program order.  The register file is notified of the retirement  so  that  it
       can  free  the  physical  registers  that were allocated for the instruction during the register renaming
       stage.

   Load/Store Unit and Memory Consistency Model
       To simulate an out-of-order execution of memory operations, llvm-mca utilizes a simulated load/store unit
       (LSUnit) to simulate the speculative execution of loads and stores.

       Each load (or store) consumes an entry in the load (or store) queue. Users can specify flags -lqueue  and
       -squeue  to  limit  the  number  of  entries  in  the  load and store queues respectively. The queues are
       unbounded by default.

       The LSUnit implements a relaxed consistency model for memory loads and stores.  The rules are:

       1. A younger load is allowed to pass an older load only if there are no intervening  stores  or  barriers
          between the two loads.

       2. A younger load is allowed to pass an older store provided that the load does not alias with the store.

       3. A younger store is not allowed to pass an older store.

       4. A younger store is not allowed to pass an older load.

       By  default,  the LSUnit optimistically assumes that loads do not alias (-noalias=true) store operations.
       Under this assumption, younger loads are always allowed to pass older stores.   Essentially,  the  LSUnit
       does not attempt to run any alias analysis to predict when loads and stores do not alias with each other.

       Note  that,  in  the  case  of  write-combining  memory,  rule  3 could be relaxed to allow reordering of
       non-aliasing store operations.  That being said, at the moment, there is no  way  to  further  relax  the
       memory  model  (-noalias  is  the  only  option).  Essentially, there is no option to specify a different
       memory type (e.g., write-back, write-combining, write-through;  etc.)  and  consequently  to  weaken,  or
       strengthen, the memory model.

       Other limitations are:

       • The LSUnit does not know when store-to-load forwarding may occur.

       • The LSUnit does not know anything about cache hierarchy and memory types.

       • The LSUnit does not know how to identify serializing operations and memory fences.

       The  LSUnit does not attempt to predict if a load or store hits or misses the L1 cache.  It only knows if
       an instruction “MayLoad” and/or “MayStore.”  For loads, the scheduling  model  provides  an  “optimistic”
       load-to-use latency (which usually matches the load-to-use latency for when there is a hit in the L1D).

       llvm-mca  does  not  (on  its own) know about serializing operations or memory-barrier like instructions.
       The LSUnit used to conservatively use an instruction’s “MayLoad”, “MayStore”, and unmodeled side  effects
       flags  to  determine whether an instruction should be treated as a memory-barrier. This was inaccurate in
       general and was changed so that now each instruction has  an  IsAStoreBarrier  and  IsALoadBarrier  flag.
       These  flags  are mca specific and default to false for every instruction. If any instruction should have
       either of these flags set, it should be done within the target’s InstrPostProcess class.  For an example,
       look        at        the        X86InstrPostProcess::postProcessInstruction        method         within
       llvm/lib/Target/X86/MCA/X86CustomBehaviour.cpp.

       A  load/store barrier consumes one entry of the load/store queue.  A load/store barrier enforces ordering
       of loads/stores.  A younger load cannot pass a load barrier.  Also, a younger store cannot pass  a  store
       barrier.   A  younger  load  has to wait for the memory/load barrier to execute.  A load/store barrier is
       “executed” when it becomes the oldest entry in the load/store queue(s). That also means, by construction,
       all of the older loads/stores have been executed.

       In conclusion, the full set of load/store consistency rules are:

       1. A store may not pass a previous store.

       2. A store may not pass a previous load (regardless of -noalias).

       3. A store has to wait until an older store barrier is fully executed.

       4. A load may pass a previous load.

       5. A load may not pass a previous store unless -noalias is set.

       6. A load has to wait until an older load barrier is fully executed.

   In-order Issue and Execute
       In-order processors are modelled as a single InOrderIssueStage stage. It bypasses Dispatch, Scheduler and
       Load/Store unit. Instructions are issued as soon as their operand registers are  available  and  resource
       requirements  are  met.  Multiple  instructions  can be issued in one cycle according to the value of the
       IssueWidth parameter in LLVM’s scheduling model.

       Once issued, an instruction is moved to IssuedInst set until it is ready to retire. llvm-mca ensures that
       writes are  committed  in-order.  However,  an  instruction  is  allowed  to  commit  writes  and  retire
       out-of-order if RetireOOO property is true for at least one of its writes.

   Custom Behaviour
       Due  to  certain instructions not being expressed perfectly within their scheduling model, llvm-mca isn’t
       always able to simulate them perfectly. Modifying the scheduling  model  isn’t  always  a  viable  option
       though (maybe because the instruction is modeled incorrectly on purpose or the instruction’s behaviour is
       quite  complex).  The  CustomBehaviour  class  can  be  used in these cases to enforce proper instruction
       modeling (often by customizing data dependencies and detecting  hazards  that  llvm-mca  has  no  way  of
       knowing about).

       llvm-mca  comes  with one generic and multiple target specific CustomBehaviour classes. The generic class
       will be used if the -disable-cb flag is used or if a target specific CustomBehaviour class doesn’t  exist
       for that target. (The generic class does nothing.) Currently, the CustomBehaviour class is only a part of
       the in-order pipeline, but there are plans to add it to the out-of-order pipeline in the future.

       CustomBehaviour’s main method is checkCustomHazard() which uses the current instruction and a list of all
       instructions  still  executing  within  the  pipeline  to  determine if the current instruction should be
       dispatched.  As output, the method returns an integer representing the number of cycles that the  current
       instruction  must  stall for (this can be an underestimate if you don’t know the exact number and a value
       of 0 represents no stall).

       If you’d like to add a CustomBehaviour class for a target that doesn’t already  have  one,  refer  to  an
       existing  implementation  to see how to set it up. The classes are implemented within the target specific
       backend (for example /llvm/lib/Target/AMDGPU/MCA/) so that they can access backend symbols.

   Instrument Manager
       On certain architectures, scheduling information for certain instructions  do  not  contain  all  of  the
       information  required  to  identify  the  most precise schedule class. For example, data that can have an
       impact on scheduling can be stored in CSR registers.

       One example of this is on RISCV, where values in registers such as vtype and  vl  change  the  scheduling
       behaviour  of  vector  instructions. Since MCA does not keep track of the values in registers, instrument
       comments can be used to specify these values.

       InstrumentManager’s main function is getSchedClassID() which has access to the  MCInst  and  all  of  the
       instruments  that  are  active  for  that  MCInst.  This function can use the instruments to override the
       schedule class of the MCInst.

       On RISCV, instrument comments containing LMUL information are used by getSchedClassID() to map  a  vector
       instruction  and  the  active  LMUL to the scheduling class of the pseudo-instruction that describes that
       base instruction and the active LMUL.

   Custom Views
       llvm-mca comes with several Views such as the Timeline View and Summary View. These Views are generic and
       can work with most (if not all) targets. If you wish to add a new  View  to  llvm-mca  and  it  does  not
       require  any backend functionality that is not already exposed through MC layer classes (MCSubtargetInfo,
       MCInstrInfo, etc.), please add it to the /tools/llvm-mca/View/ directory. However, if your  new  View  is
       target  specific  AND  requires  unexposed  backend  symbols  or  functionality, you can define it in the
       /lib/Target/<TargetName>/MCA/ directory.

       To enable this target specific View, you will have to use this target’s CustomBehaviour class to override
       the CustomBehaviour::getViews() methods.  There are 3 variations of these methods based on where you want
       your View to appear in the output: getStartViews(),  getPostInstrInfoViews(),  and  getEndViews().  These
       methods  returns  a  vector  of  Views  so  you will want to return a vector containing all of the target
       specific Views for the target in question.

       Because these target specific (and  backend  dependent)  Views  require  the  CustomBehaviour::getViews()
       variants, these Views will not be enabled if the -disable-cb flag is used.

       Enabling  these  custom  Views does not affect the non-custom (generic) Views.  Continue to use the usual
       command line arguments to enable / disable those Views.

AUTHOR

       Maintained by the LLVM Team (https://llvm.org/).

COPYRIGHT

       2003-2024, LLVM Project

15                                                 2024-04-14                                        LLVM-MCA(1)