Multiple Issue Processors: Superscalar and VLIW

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Presentation transcript:

Multiple Issue Processors: Superscalar and VLIW Other handouts To handout next time

Multiple-Issue Processor Styles Dynamic multiple-issue processors (superscalar) Decisions on which instructions to execute simultaneously (in the range of 2 to 8 in 2005) are being made dynamically (at run time by the hardware) E.g., IBM Power 2, Pentium 4, MIPS R10K, HP PA 8500 IBM F D E WB M

Multiple-Issue Processor Styles Static multiple-issue processors (VLIW) Decisions on which instructions to execute simultaneously are being made statically (at compile time by the compiler) E.g., Intel Itanium and Itanium 2 for the IA-64 ISA – EPIC (Explicit Parallel Instruction Computer) 128 bit “bundles” containing 3 instructions each 41 bits + 5 bit template field (specifies which FU each instr needs) Five functional units (IntALU, MMedia, DMem, FPALU, Branch) Extensive support for speculation and predication F D E WB

Multi-Issue Datapath Responsibilities Must handle, with a combination of hardware and software Data dependencies – data hazards True data dependencies (read after write) Use data forwarding hardware Use compiler scheduling Storage dependence (name dependence) Use register renaming to solve both Antidependencies (write after read) Output dependencies (write after write) Procedural dependencies – control hazards Use aggressive branch prediction (speculation) Use predication Resource conflicts – structural hazards Use resource duplication or resource pipelining to reduce (or eliminate) resource conflicts Use arbitration for result and commit buses and register file read and write ports Pipelining is much less expensive than duplicaing

VLIW Processors VLIW for multi-issue processors first appeared in the Multiflow and Cydrome (in the early 1980’s) Current commercial VLIW processors Intel i860 RISC (dual mode: scalar and VLIW) Intel I-64 (EPIC: Itanium and Itanium 2) Transmeta Crusoe Lucent/Motorola StarCore ADI TigerSHARC Infineon (Siemens) Carmel

Static Multiple Issue Machines (VLIW) Static multiple-issue processors (VLIW) use the compiler to decide which instructions to issue and execute simultaneously Issue packet – the set of instructions that are bundled together and issued in one clock cycle – think of it as one large instruction with multiple operations The mix of instructions in the packet (bundle) is usually restricted – a single “instruction” with several predefined fields The compiler does static branch prediction and code scheduling to reduce (control) or eliminate (data) hazards VLIW’s have Multiple functional units (like SS processors) Multi-ported register files (again like SS processors) Wide program bus

Load or Store (I format) An Example: A VLIW MIPS Consider a 2-issue MIPS with a 2 instr bundle 64 bits ALU Op (R format) or Branch (I format) Load or Store (I format) Instructions are always fetched, decoded, and issued in pairs If one instr of the pair can not be used, it is replaced with a noop Need 4 read ports and 2 write ports and a separate memory address adder

A MIPS VLIW (2-issue) Datapath Add Add 4 ALU Instruction Memory Register File PC Data Memory Write Addr Add Write Data Sign Extend Assume forwarding hardware as necessary. What is the top mux input to the ALU doing? Sign Extend

Code Scheduling Example Consider the following loop code lp: lw $t0,0($s1) # $t0=array element addu $t0,$t0,$s2 # add scalar in $s2 sw $t0,0($s1) # store result addi $s1,$s1,-4 # decrement pointer bne $s1,$0,lp # branch if $s1 != 0 Must “schedule” the instructions to avoid pipeline stalls Instructions in one bundle must be independent Must separate load use instructions from their loads by one cycle Notice that the first two instructions have a load use dependency, the next two and last two have data dependencies Assume branches are perfectly predicted by the hardware

The Scheduled Code (Not Unrolled) ALU or branch Data transfer CC lp: lw $t0,0($s1) 1 addi $s1,$s1,-4 2 addu $t0,$t0,$s2 3 bne $s1,$0,lp sw $t0,4($s1) 4 Four clock cycles to execute 5 instructions for a CPI of 0.8 (versus the best case of 0.5) IPC of 1.25 (versus the best case of 2.0) noops don’t count towards performance !!

Loop Unrolling Loop unrolling – multiple copies of the loop body are made and instructions from different iterations are scheduled together as a way to increase ILP Apply loop unrolling (4 times for our example) and then schedule the resulting code Eliminate unnecessary loop overhead instructions Schedule so as to avoid load use hazards During unrolling the compiler applies register renaming to eliminate all data dependencies that are not true dependencies

Unrolled Code Example lp: lw $t0,0($s1) # $t0=array element addu $t0,$t0,$s2 # add scalar in $s2 addu $t1,$t1,$s2 # add scalar in $s2 addu $t2,$t2,$s2 # add scalar in $s2 addu $t3,$t3,$s2 # add scalar in $s2 sw $t0,0($s1) # store result sw $t1,-4($s1) # store result sw $t2,-8($s1) # store result sw $t3,-12($s1) # store result addi $s1,$s1,-16 # decrement pointer bne $s1,$0,lp # branch if $s1 != 0

The Scheduled Code (Unrolled) ALU or branch Data transfer CC lp: addi $s1,$s1,-16 lw $t0,0($s1) 1 lw $t1,12($s1) 2 addu $t0,$t0,$s2 lw $t2,8($s1) 3 addu $t1,$t1,$s2 lw $t3,4($s1) 4 addu $t2,$t2,$s2 sw $t0,16($s1) 5 addu $t3,$t3,$s2 sw $t1,12($s1) 6 sw $t2,8($s1) 7 bne $s1,$0,lp sw $t3,4($s1) 8 Eight clock cycles to execute 14 instructions for a CPI of 0.57 (versus the best case of 0.5) IPC of 1.8 (versus the best case of 2.0)

Speculation Speculation is used to allow execution of future instr’s that (may) depend on the speculated instruction Speculate on the outcome of a conditional branch (branch prediction) Speculate that a store (for which we don’t yet know the address) that precedes a load does not refer to the same address, allowing the load to be scheduled before the store (load speculation) Must have (hardware and/or software) mechanisms for Checking to see if the guess was correct Recovering from the effects of the instructions that were executed speculatively if the guess was incorrect In a VLIW processor the compiler can insert additional instr’s that check the accuracy of the speculation and can provide a fix-up routine to use when the speculation was incorrect Ignore and/or buffer exceptions created by speculatively executed instructions until it is clear that they should really occur

Predication Predication can be used to eliminate branches by making the execution of an instruction dependent on a “predicate”, e.g., if (p) {statement 1} else {statement 2} would normally compile using two branches. With predication it would compile as (p) statement 1 (~p) statement 2 The use of (condition) indicates that the instruction is committed only if condition is true Predication can be used to speculate as well as to eliminate branches One conditional branch to the else portion of the code and one after code block 1 to skip the else code block

Compiler Support for VLIW Processors The compiler packs groups of independent instructions into the bundle Done by code re-ordering (trace scheduling) The compiler uses loop unrolling to expose more ILP The compiler uses register renaming to solve name dependencies and ensures no load use hazards occur While superscalars use dynamic prediction, VLIW’s primarily depend on the compiler for branch prediction Loop unrolling reduces the number of conditional branches Predication eliminates if-the-else branch structures by replacing them with predicated instructions The compiler predicts memory bank references to help minimize memory bank conflicts

VLIW Advantages & Disadvantages (vs SS) Simpler hardware (potentially less power hungry) Potentially more scalable Allow more instr’s per VLIW bundle and add more FUs Disadvantages Programmer/compiler complexity and longer compilation times Deep pipelines and long latencies can be confusing (making peak performance elusive) Lock step operation, i.e., on hazard all future issues stall until hazard is resolved (hence need for predication) Object (binary) code incompatibility Needs lots of program memory bandwidth Code bloat Noops are a waste of program memory space Loop unrolling to expose more ILP uses more program memory space Also need bigger RegFile since renaming uses programmer visible registers (not an RUU as with SS)

CISC vs RISC vs SS vs VLIW Superscalar VLIW Instr size variable size fixed size fixed size (but large) Instr format variable format fixed format Registers few, some special many GP GP and rename (RUU) many, many GP Memory reference embedded in many instr’s load/store Key Issues decode complexity data forwarding, hazards hardware dependency resolution (compiler) code scheduling Instruction flow Pipelining helps instruction bandwidth, not instruction latency Loop unrolling and software pipelining to help with data hazards Dynamic branch prediction + early branch target address calculation for speculative execution IF ID EX M WB IF ID EX M WB IF ID EX M WB IF ID EX M WB EX M WB IF ID EX M WB IF ID EX M WB IF ID EX M WB IF ID EX M WB IF ID EX M WB EX M WB