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Use convenience helpers in WithColor to print errors and notes. Differential revision: https://reviews.llvm.org/D45666 llvm-svn: 330267 |
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BackendPrinter.cpp | ||
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CMakeLists.txt | ||
CodeRegion.cpp | ||
CodeRegion.h | ||
Dispatch.cpp | ||
Dispatch.h | ||
DispatchStatistics.cpp | ||
DispatchStatistics.h | ||
HWEventListener.cpp | ||
HWEventListener.h | ||
InstrBuilder.cpp | ||
InstrBuilder.h | ||
Instruction.cpp | ||
Instruction.h | ||
InstructionInfoView.cpp | ||
InstructionInfoView.h | ||
InstructionTables.cpp | ||
InstructionTables.h | ||
llvm-mca.cpp | ||
LLVMBuild.txt | ||
LSUnit.cpp | ||
LSUnit.h | ||
README.txt | ||
RegisterFileStatistics.cpp | ||
RegisterFileStatistics.h | ||
ResourcePressureView.cpp | ||
ResourcePressureView.h | ||
RetireControlUnitStatistics.cpp | ||
RetireControlUnitStatistics.h | ||
Scheduler.cpp | ||
Scheduler.h | ||
SchedulerStatistics.cpp | ||
SchedulerStatistics.h | ||
SourceMgr.h | ||
SummaryView.cpp | ||
SummaryView.h | ||
Support.cpp | ||
Support.h | ||
TimelineView.cpp | ||
TimelineView.h | ||
View.cpp | ||
View.h |
llvm-mca - LLVM Machine Code Analyzer ------------------------------------- llvm-mca is a performance analysis tool that uses information which is already 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 an out-of-order 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 IPC (instructions Per cycle), as well as hardware resources pressure. The analysis and reporting style were inspired by the IACA tool from Intel. The presence of long data dependency chains, as well as poor usage of hardware resources may lead to bottlenecks in the back-end. The tool is able to generate a detailed report which should help with identifying and analyzing sources of bottlenecks. Scheduling models are mostly used to compute instruction latencies, to obtain read-advance information, and understand how processor resources are used by instructions. By design, the quality of the performance analysis conducted by the tool is inevitably affected by the quality of the target scheduling models. However, scheduling models intentionally do not describe all processors details, since the goal is just to enable the scheduling of machine instructions during compilation. That means, there are processor details which are not important for the purpose of scheduling instructions (and therefore not described by the scheduling model), but are very important for this tool. A few examples of details that are missing in scheduling models are: - Actual dispatch width (it often differs from the issue width). - Number of read/write ports in the register file(s). - Length of the load/store queue in the LSUnit. It is also very difficult to find a "good" abstract model to describe the behavior of out-of-order processors. So, we have to keep in mind that all of these aspects are going to affect the quality of the static analysis performed by the tool. An extensive list of known limitations is reported in one of the last sections of this document. There is also a section related to design problems which must be addressed (hopefully with the help of the community). At the moment, the tool has been mostly tested for x86 targets, but there are still several limitations, some of which could be overcome by integrating extra information into the scheduling models. How the tool works ------------------ The tool takes assembly code as input. 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 'Backend' module to generate a performance report. The Backend module internally emulates the execution of the machine code sequence in a loop of iterations (which by default is 100). At the end of this process, the backend collects a number of statistics which are then printed out in the form of a report. Here is an example of 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: /////////////////// Iterations: 300 Instructions: 900 Total Cycles: 610 Dispatch Width: 2 IPC: 1.48 Resources: [0] - JALU0 [1] - JALU1 [2] - JDiv [3] - JFPM [4] - JFPU0 [5] - JFPU1 [6] - JLAGU [7] - JSAGU [8] - JSTC [9] - JVIMUL Resource pressure per iteration: [0] [1] [2] [3] [4] [5] [6] [7] [8] [9] - - - - 2.00 1.00 - - - - Resource pressure by instruction: [0] [1] [2] [3] [4] [5] [6] [7] [8] [9] Instructions: - - - - - 1.00 - - - - vmulps %xmm0, %xmm1, %xmm2 - - - - 1.00 - - - - - vhaddps %xmm2, %xmm2, %xmm3 - - - - 1.00 - - - - - vhaddps %xmm3, %xmm3, %xmm4 Instruction Info: [1]: #uOps [2]: Latency [3]: RThroughput [4]: MayLoad [5]: MayStore [6]: HasSideEffects [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 /////////////////// According to this report, the dot-product kernel has been executed 300 times, for a total of 900 instructions dynamically executed. The report is structured in three main sections. A first section collects a few performance numbers; the goal of this section is to give a very quick overview of the performance throughput. In this example, the two important perforamce indicators are a) the predicted total number of cycles, and b) the IPC. IPC is probably the most important throughput indicator. A big delta between the Dispatch Width and the computed IPC is an indicator of potential performance issues. The second section is the so-called "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 dot-product, instruction 'vmulps' always executes on resource unit [5] (JFPU1 - floating point pipeline #1), consuming an average of 1 resource cycle per iteration. Note that on Jaguar, vector FP multiply can only be issued to pipeline JFPU1, while horizontal FP adds can only be issued to pipeline JFPU0. The third (and last) section of the report shows the latency and reciprocal throughput of every instruction in the sequence. That section also reports extra information related to the number of micro opcodes, and opcode properties (i.e. 'MayLoad', 'MayStore' and 'UnmodeledSideEffects'). 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 ------------- A detailed report of each instruction's state transitions over time can be enabled using the command line flag '-timeline'. This prints an extra section in the report which contains the so-called "timeline view". Below is the timeline view for the dot-product example from the previous section. /////////////// 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 /////////////// The timeline view is very interesting because it shows how instructions changed in state during execution. It also gives an idea of how the tool "sees" instructions executed on the target. The timeline view is structured in two tables. The first table shows how instructions change in 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 actual instruction index (i.e. where it appears in the code sequence). Excluding the first and last column, the remaining columns are in cycles. Cycles are numbered sequentially starting from 0. The following characters are used to describe the state of an instruction: 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. Based on the timeline view from the example, we know that: - 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. the vmulps from iteration #1) doesn't have to wait in the scheduler's queue for the operands to become available. By the time the 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 unti cycle 10). In the dot-product example, all instructions are in a RAW (Read After Write) dependency chain. Register %xmm2 written by the 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 affect 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 temporary 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. Note that the tool 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. So the difference between the two counters is a good indicator of how big of an impact data dependencies had on the execution of 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 bigger (i.e. more than 1-3cy) especially when compared with other low latency instructions. Extra statistics to further diagnose performance issues. -------------------------------------------------------- Flag '-verbose' 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 verbose output generated by the tool for the dot-product example discussed in the previous sections. /////////////////// Iterations: 300 Instructions: 900 Total Cycles: 610 Dispatch Width: 2 IPC: 1.48 Dynamic Dispatch Stall Cycles: RAT - Register unavailable: 0 RCU - Retire tokens unavailable: 0 SCHEDQ - Scheduler full: 272 LQ - Load queue full: 0 SQ - Store queue full: 0 GROUP - Static restrictions on the dispatch group: 0 Register Alias Table: Total number of mappings created: 900 Max number of mappings used: 35 Dispatch Logic - number of cycles where we saw N instructions dispatched: [# dispatched], [# cycles] 0, 24 (3.9%) 1, 272 (44.6%) 2, 314 (51.5%) Schedulers - number of cycles where we saw N instructions issued: [# issued], [# cycles] 0, 7 (1.1%) 1, 306 (50.2%) 2, 297 (48.7%) 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%) Scheduler's queue usage: JALU01, 0/20 JFPU01, 18/18 JLSAGU, 0/12 /////////////////// Based on the verbose report, the backend was only able to dispatch two instructions 51.5% of the time. The dispatch group was limited to one instruction 44.6% of the cycles, which corresponds to 272 cycles. If we look at section "Dynamic Dispatch Stall Cycles", we can see how counter SCHEDQ reports 272 cycles. Counter SCHEDQ is incremented every time the dispatch logic is unable to dispatch a full group of two instructions because the scheduler's queue is full. Section "Scheduler's queue usage" shows how the maximum number of buffer entries (i.e. scheduler's queue entries) used at runtime for resource JFPU01 reached its maximum. Note that AMD Jaguar implements three schedulers: * JALU01 - A scheduler for ALU instructions * JLSAGU - A scheduler for address generation * JFPU01 - A scheduler floating point operations. 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 according to section "Scheduler's queue usage". A full scheduler's 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. In this example, we can conclude that the IPC is mostly limited by data dependencies, and not by resource pressure. LLVM-MCA instruction flow ------------------------- This section describes the instruction flow through the out-of-order backend, as well as the functional units involved in the process. An instruction goes through a default sequence of stages: - 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 tool only models the out-of-order portion of a processor. Therefore, the instruction fetch and decode stages are not modeled. Performance bottlenecks in the frontend are not diagnosed by this tool. The tool assumes that instructions have all been decoded and placed in a queue. Also, the tool doesn't know anything about branch prediction. The long term plan is to make the process customizable, so that processors can define their own. This is a future work. 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 hardware schedulers. The dispatch logic is implemented by class DispatchUnit in file Dispatch.h. The size of a dispatch group depends on the availability of hardware resources, and it cannot exceed the value of field 'DispatchWidth' in class DispatchUnit. Note that field DispatchWidth defaults to the value of field 'IssueWidth' from the scheduling model. Users can override the DispatchWidth value with flag "-dispatch=<N>" (where 'N' is an unsigned quantity). An instruction can be dispatched if: - The size of the dispatch group is smaller than DispatchWidth - There are enough entries in the reorder buffer - There are enough temporary registers to do register renaming - Schedulers are not full. Since r329067, scheduling models can now optionally specify which register files are available on the processor. Class DispatchUnit(see Dispatch.h) would use that information to initialize register file descriptors. By default, if the model doesn't describe register files, the tool (optimistically) assumes a single register file with an unbounded number of temporary registers. Users can limit the number of temporary registers that are globally available for register renaming using flag `-register-file-size=<N>`, where N is the number of temporaries. A value of zero for N means 'unbounded'. Knowing how many temporaries are available for register renaming, the tool can predict dispatch stalls caused by the lack of temporaries. The number of reorder buffer entries consumed by an instruction depends on the number of micro-opcodes it specifies in the target scheduling model (see field 'NumMicroOpcodes' of tablegen class ProcWriteResources and its derived classes; TargetSchedule.td). The reorder buffer is implemented by class RetireControlUnit (see Dispatch.h). Its goal is to track the progress of instructions that are "in-flight", and retire instructions in program order. The number of entries in the reorder buffer defaults to the value of field 'MicroOpBufferSize' from the target scheduling model. Instructions that are dispatched to the schedulers consume scheduler buffer entries. The tool queries the scheduling model to figure out the set of buffered resources consumed by an instruction. Buffered resources are treated like "scheduler" resources, and the field 'BufferSize' (from the processor resource tablegen definition) defines the size of the scheduler's queue. Zero latency instructions (for example NOP instructions) don't consume scheduler resources. However, those instructions still reserve a number of slots in the reorder buffer. Instruction Issue ----------------- As mentioned in the previous section, each scheduler resource implements a queue of instructions. An instruction has to wait in the scheduler's queue 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) to a pipeline for execution. Instruction latencies can be computed by the tool with the help of the scheduling model; latency values are defined by the scheduling model through ProcWriteResources objects. Class Scheduler (see file Scheduler.h) knows how to emulate multiple processor schedulers. A Scheduler is responsible for tracking data dependencies, and dynamically select which processor resources are consumed/used by instructions. Internally, the Scheduler class delegates the management of processor resource units and resource groups to the ResourceManager class. ResourceManager is also responsible for selecting resource units that are effectively consumed by instructions. For example, if an instruction consumes 1cy of a resource group, the ResourceManager object selects one of the available units from the group; by default, it uses a round-robin selector to guarantee that resource usage is uniformly distributed between all units of a group. Internally, class Scheduler implements three instruction queues: - WaitQueue: a queue of instructions whose operands are not ready yet. - ReadyQueue: a queue of instructions ready to execute. - IssuedQueue: a queue of instructions executing. Depending on the operands availability, instructions that are dispatched to the Scheduler are either placed into the WaitQueue or into the ReadyQueue. Every cycle, class Scheduler checks if instructions can be moved from the WaitQueue to the ReadyQueue, and if instructions from the ReadyQueue can be issued to the underlying pipelines. The algorithm prioritizes older instructions over younger instructions. Objects of class ResourceState (see Scheduler.h) describe processor resources. There is an instance of class ResourceState for each single processor resource specified by the scheduling model. A ResourceState object for a processor resource with multiple units dynamically tracks the availability of every single unit. For example, the ResourceState of a resource group tracks the availability of every resource in that group. Internally, ResourceState implements a round-robin selector to dynamically pick the next unit to use from the group. Write-Back and Retire Stage --------------------------- Issued instructions are moved from the ReadyQueue to the IssuedQueue. 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. On the event of "instruction executed", the retire control unit flags the instruction as "ready to retire". Instruction are retired in program order; an "instruction retired" event is sent to the register file which frees the temporary registers allocated for the instruction at register renaming stage. Load/Store Unit and Memory Consistency Model -------------------------------------------- The tool attempts to emulate out-of-order execution of memory operations. Class LSUnit (see file LSUnit.h) emulates a load/store unit implementing queues for speculative execution of loads and stores. Each load (or store) consumes an entry in the load (or store) queue. The number of slots in the load/store queues is unknown by the tool, since there is no mention of it in the scheduling model. In practice, users can specify flag `-lqueue=N` (vic. `-squeue=N`) to limit the number of entries in the queue to be equal to exactly N (an unsigned value). If N is zero, then the tool assumes an unbounded queue (this is the default). 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 is no intervening store in between the two loads. 2) An younger store is not allowed to pass an older store. 3) A younger store is not allowed to pass an older load. 4) A younger load is allowed to pass an older store provided that the load does not alias with the store. By default, this class conservatively (i.e. pessimistically) assumes that loads always may-alias store operations. Essentially, this LSUnit doesn't perform any sort of alias analysis to rule out cases where loads and stores don't overlap with each other. The downside of this approach however is that younger loads are never allowed to pass older stores. To make it possible for a younger load to pass an older store, users can use the command line flag -noalias. Under 'noalias', a younger load is always allowed to pass an older store. Note that, in the case of write-combining memory, rule 2. could be relaxed a bit to allow reordering of non-aliasing store operations. That being said, at the moment, there is no way to further relax the memory model (flag -noalias is the only option). Essentially, there is no option to specify a different memory type (for example: write-back, write-combining, write-through; etc.) and consequently to weaken or strengthen the memory model. Other limitations are: * LSUnit doesn't know when store-to-load forwarding may occur. * LSUnit doesn't know anything about the cache hierarchy and memory types. * LSUnit doesn't know how to identify serializing operations and memory fences. No assumption is made on the store buffer size. As mentioned before, LSUnit conservatively assumes a may-alias relation between loads and stores, and it doesn't attempt to identify cases where store-to-load forwarding would occur in practice. LSUnit doesn't attempt to predict whether 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). Class MCInstrDesc in LLVM doesn't know about serializing operations, nor memory-barrier like instructions. LSUnit conservatively assumes that an instruction which has both 'MayLoad' and 'UnmodeledSideEffects' behaves like a "soft" load-barrier. That means, it serializes loads without forcing a flush of the load queue. Similarly, instructions flagged with both 'MayStore' and 'UnmodeledSideEffects' are treated like store barriers. A full memory barrier is a 'MayLoad' and 'MayStore' instruction with 'UnmodeledSideEffects'. This is inaccurate, but it is the best that we can do at the moment with the current information available in LLVM. 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 the older loads/stores have been executed. In conclusion the full set of rules is: 1. A store may not pass a previous store. 2. A load may not pass a previous store unless flag 'NoAlias' is set. 3. A load may pass a previous load. 4. A store may not pass a previous load (regardless of flag 'NoAlias'). 5. A load has to wait until an older load barrier is fully executed. 6. A store has to wait until an older store barrier is fully executed. Known limitations ----------------- Previous sections described cases where the tool is missing information to give an accurate report. For example, the first sections of this document explained how the lack of knowledge about the processor negatively affects the performance analysis. The lack of knowledge is often a consequence of how scheduling models are defined; as mentioned before, scheduling models intentionally don't describe processors in fine details. That being said, the LLVM machine model can be extended to expose more details, as long as they are opt-in for targets. The accuracy of the performance analysis is also affected by assumptions made by the processor model used by the tool. Most recent Intel and AMD processors implement dedicated LoopBuffer/OpCache in the hardware frontend to speedup the throughput in the presence of tight loops. The presence of these buffers complicates the decoding logic, and requires knowledge on the branch predictor too. Class 'SchedMachineModel' in tablegen provides a field named 'LoopMicroOpBufferSize' which is used to describe loop buffers. However, the purpose of that field is to enable loop unrolling of tight loops; essentially, it affects the cost model used by pass loop-unroll. At the current state, the tool only describes the out-of-order portion of a processor, and consequently doesn't try to predict the frontend throughput. That being said, this tool could be definitely extended in future to also account for the hardware frontend when doing performance analysis. This would inevitably require extra (extensive) processor knowledge related to all the available decoding paths in the hardware frontend, as well as branch prediction. Currently, the tool assumes a zero-latency "perfect" fetch&decode stage; the full sequence of decoded instructions is immediately visible to the dispatch logic from the start. The tool doesn't know about simultaneous mutithreading. According to the tool, processor resources are not statically/dynamically partitioned. Processor resources are fully available to the hardware thread executing the microbenchmark. The execution model implemented by this tool assumes that instructions are firstly dispatched in groups to hardware schedulers, and then issued to pipelines for execution. The model assumes dynamic scheduling of instructions. Instructions are placed in a queue and potentially executed out-of-order (based on the operand availability). The dispatch stage is definitely distinct from the issue stage. This will change in future; as mentioned in the first section, the end goal is to let processors customize the process. This model doesn't correctly describe processors where the dispatch/issue is a single stage. This is what happens for example in VLIW processors, where instructions are packaged and statically scheduled at compile time; it is up to the compiler to predict the latency of instructions and package issue groups accordingly. For such targets, there is no dynamic scheduling done by the hardware. Existing classes (DispatchUnit, Scheduler, etc.) could be extended/adapted to support processors with a single dispatch/issue stage. The execution flow would require some changes in the way how existing components (i.e. DispatchUnit, Scheduler, etc.) interact. This can be a future development. The following sections describes other known limitations. The goal is not to provide an extensive list of limitations; we want to report what we believe are the most important limitations, and suggest possible methods to overcome them. Load/Store barrier instructions and serializing operations ---------------------------------------------------------- Section "Load/Store Unit and Memory Consistency Model" already mentioned how LLVM doesn't know about serializing operations and memory barriers. Most of it boils down to the fact that class MCInstrDesc (intentionally) doesn't expose those properties. Instead, both serializing operations and memory barriers "have side-effects" according to MCInstrDesc. That is because, at least for scheduling purposes, knowing that an instruction has unmodeled side effects is often enough to treat the instruction like a compiler scheduling barrier. A performance analysis tool could use the extra knowledge on barriers and serializing operations to generate a more accurate performance report. One way to improve this is by reserving a couple of bits in field 'Flags' from class MCInstrDesc: one bit for barrier operations, and another bit to mark instructions as serializing operations. Lack of support for instruction itineraries ------------------------------------------- The current version of the tool doesn't know how to process instruction itineraries. This is probably one of the most important limitations, since it affects a few out-of-order processors in LLVM. As mentioned in section 'Instruction Issue', class Scheduler delegates to an instance of class ResourceManager the handling of processor resources. ResourceManager is where most of the scheduling logic is implemented. Adding support for instruction itineraries requires that we teach ResourceManager how to handle functional units and instruction stages. This development can be a future extension, and it would probably require a few changes to the ResourceManager interface. Instructions that affect control flow are not correctly modeled --------------------------------------------------------------- Examples of instructions that affect the control flow are: return, indirect branches, calls, etc. The tool doesn't try to predict/evaluate branch targets. In particular, the tool doesn't model any sort of branch prediction, nor does it attempt to track changes to the program counter. The tool always assumes that the input assembly sequence is the body of a microbenchmark (a simple loop executed for a number of iterations). The "next" instruction in sequence is always the next instruction to dispatch. Call instructions default to an arbitrary high latency of 100cy. A warning is generated if the tool encounters a call instruction in the sequence. Return instructions are not evaluated, and therefore control flow is not affected. However, the tool still queries the processor scheduling model to obtain latency information for instructions that affect the control flow. Known limitations on X86 processors ----------------------------------- 1) Partial register updates versus full register updates. On x86-64, a 32-bit GPR write fully updates the super-register. Example: add %edi %eax ## eax += edi Here, register %eax aliases the lower half of 64-bit register %rax. On x86-64, register %rax is fully updated by the 'add' (the upper half of %rax is zeroed). Essentially, it "kills" any previous definition of (the upper half of) register %rax. On the other hand, 8/16 bit register writes only perform a so-called "partial register update". Example: add %di, %ax ## ax += di Here, register %eax is only partially updated. To be more specific, the lower half of %eax is set, and the upper half is left unchanged. There is also no change in the upper 48 bits of register %rax. To get accurate performance analysis, the tool has to know which instructions perform a partial register update, and which instructions fully update the destination's super-register. One way to expose this information is (again) via tablegen. For example, we could add a flag in the tablegen instruction class to tag instructions that perform partial register updates. Something like this: 'bit hasPartialRegisterUpdate = 1'. However, this would force a `let hasPartialRegisterUpdate = 0` on several instruction definitions. Another approach is to have a MCSubtargetInfo hook similar to this: virtual bool updatesSuperRegisters(unsigned short opcode) { return false; } Targets will be able to override this method if needed. Again, this is just an idea. But the plan is to have this fixed as a future development. 2) Macro Op fusion. The tool doesn't know about macro-op fusion. On modern x86 processors, a 'cmp/test' followed by a 'jmp' is fused into a single macro operation. The advantage is that the fused pair only consumes a single slot in the dispatch group. As a future development, the tool should be extended to address macro-fusion. Ideally, we could have LLVM generate a table enumerating all the opcode pairs that can be fused together. That table could be exposed to the tool via the MCSubtargetInfo interface. This is just an idea; there may be better ways to implement this. 3) Intel processors: mixing legacy SSE with AVX instructions. On modern Intel processors with AVX, mixing legacy SSE code with AVX code negatively impacts the performance. The tool is not aware of this issue, and the performance penalty is not accounted when doing the analysis. This is something that we would like to improve in future. 4) Zero-latency register moves and Zero-idioms. Most modern AMD/Intel processors know how to optimize out register-register moves and zero idioms at register renaming stage. The tool doesn't know about these patterns, and this may negatively impact the performance analysis. Known design problems --------------------- This section describes two design issues that are currently affecting the tool. The long term plan is to "fix" these issues. Both limitations would be easily fixed if we teach the tool how to directly manipulate MachineInstr objects (instead of MCInst objects). 1) Variant instructions not correctly modeled. The tool doesn't know how to analyze instructions with a "variant" scheduling class descriptor. A variant scheduling class needs to be resolved dynamically. The "actual" scheduling class often depends on the subtarget, as well as properties of the specific MachineInstr object. Unfortunately, the tool manipulates MCInst, and it doesn't know anything about MachineInstr. As a consequence, the tool cannot use the existing machine subtarget hooks that are normally used to resolve the variant scheduling class. This is a major design issue which mostly affects ARM/AArch64 targets. It mostly boils down to the fact that the existing scheduling framework was meant to work for MachineInstr. When the tool encounters a "variant" instruction, it assumes a generic 1cy latency. However, the tool would not be able to tell which processor resources are effectively consumed by the variant instruction. 2) MCInst and MCInstrDesc. Performance analysis tools require data dependency information to correctly predict the runtime performance of the code. This tool must always be able to obtain the set of implicit/explicit register defs/uses for every instruction of the input assembly sequence. In the first section of this document, it was mentioned how the tool takes as input an assembly sequence. That sequence is parsed into a MCInst sequence with the help of assembly parsers available from the targets. A MCInst is a very low-level instruction representation. The tool can inspect the MCOperand sequence of an MCInst to identify register operands. However, there is no way to tell register operands that are definitions from register operands that are uses. In LLVM, class MCInstrDesc is used to fully describe target instructions and their operands. The opcode of a machine instruction (a MachineInstr object) can be used to query the instruction set through method `MCInstrInfo::get' to obtain the associated MCInstrDesc object. However class MCInstrDesc describes properties and operands of MachineInstr objects. Essentially, MCInstrDesc is not meant to be used to describe MCInst objects. To be more specific, MCInstrDesc objects are automatically generated via tablegen from the instruction set description in the target .td files. For example, field `MCInstrDesc::NumDefs' is always equal to the cardinality of the `(outs)` set from the tablegen instruction definition. By construction, register definitions always appear at the beginning of the MachineOperands list in MachineInstr. Basically, the (outs) are the first operands of a MachineInstr, and the (ins) will come after in the machine operand list. Knowing the number of register definitions is enough to identify all the register operands that are definitions. In a normal compilation process, MCInst objects are generated from MachineInstr objects through a lowering step. By default the lowering logic simply iterates over the machine operands of a MachineInstr, and converts/expands them into equivalent MCOperand objects. The default lowering strategy has the advantage of preserving all of the above mentioned assumptions on the machine operand sequence. That means, register definitions would still be at the beginning of the MCOperand sequence, and register uses would come after. Targets may still define custom lowering routines for specific opcodes. Some of these routines may lower operands in a way that potentially breaks (some of) the assumptions on the machine operand sequence which were valid for MachineInstr. Luckily, this is not the most common form of lowering done by the targets, and the vast majority of the MachineInstr are lowered based on the default strategy which preserves the original machine operand sequence. This is especially true for x86, where the custom lowering logic always preserves the original (i.e. from the MachineInstr) operand sequence. This tool currently works under the strong (and potentially incorrect) assumption that register def/uses in a MCInst can always be identified by querying the machine instruction descriptor for the opcode. This assumption made it possible to develop this tool and get good numbers at least for the processors available in the x86 backend. That being said, the analysis is still potentially incorrect for other targets. So we plan (with the help of the community) to find a proper mechanism to map when possible MCOperand indices back to MachineOperand indices of the equivalent MachineInstr. This would be equivalent to describing changes made by the lowering step which affected the operand sequence. For example, we could have an index for every register MCOperand (or -1, if the operand didn't exist in the original MachineInstr). The mapping could look like this <0,1,3,2>. Here, MCOperand #2 was obtained from the lowering of MachineOperand #3. etc. This information could be automatically generated via tablegen for all the instructions whose custom lowering step breaks assumptions made by the tool on the register operand sequence (In general, these instructions should be the minority of a target's instruction set). Unfortunately, we don't have that information now. As a consequence, we assume that the number of explicit register definitions is the same number specified in MCInstrDesc. We also assume that register definitions always come first in the operand sequence. In conclusion: these are for now the strong assumptions made by the tool: * The number of explicit and implicit register definitions in a MCInst matches the number of explicit and implicit definitions specified by the MCInstrDesc object. * Register uses always come after register definitions. * If an opcode specifies an optional definition, then the optional definition is always the last register operand in the sequence. Note that some of the information accessible from the MCInstrDesc is always valid for MCInst. For example: implicit register defs, implicit register uses and 'MayLoad/MayStore/HasUnmodeledSideEffects' opcode properties still apply to MCInst. The tool knows about this, and uses that information during its analysis. Future work ----------- * Address limitations (described in section "Known limitations"). * Let processors specify the selection strategy for processor resource groups and resources with multiple units. The tool currently uses a round-robin selector to pick the next resource to use. * Address limitations specifically described in section "Known limitations on X86 processors". * Address design issues identified in section "Known design problems". * Define a standard interface for "Views". This would let users customize the performance report generated by the tool. When interfaces are mature/stable: * Move the logic into a library. This will enable a number of other interesting use cases. Work is currently tracked on https://bugs.llvm.org. llvm-mca bugs are tagged with prefix [llvm-mca]. You can easily find the full list of open bugs if you search for that tag.