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CENG 450 Computer Systems & Architecture Lecture 3 Amirali Baniasadi [email protected] Performance  Purchasing perspective  given a collection of machines, which has the best performance ? least cost ? best performance / cost ?  Design perspective  faced with design options, which has the best performance improvement ? least cost ? best performance / cost ?  Both require  basis for comparison  metric for evaluation  Our goal is to understand cost & performance implications of architectural choices Two notions of “performance” Plane DC to Paris Speed Passengers Throughput Boeing 747 6.5 hours 610 mph 470 286,700 BAD/Sud Concorde 3 hours 1350 mph 132 178,200 Which has higher performance? ° Time to do the task (Execution Time) – execution time, response time, latency ° Tasks per day, hour, week, sec, ns. .. – throughput, bandwidth Response time and throughput often are in opposition Example • Time of Concorde vs. Boeing 747? • Concord is 1350 mph / 610 mph = 2.2 times faster = 6.5 hours / 3 hours • Throughput of Concorde vs. Boeing 747 ? • Concord is 178,200 pmph / 286,700 pmph = 0.62 “times faster” • Boeing is 286,700 pmph / 178,200 pmph = 1.6 “times faster” • Boeing is 1.6 times (“60%”)faster in terms of throughput • Concord is 2.2 times (“120%”) faster in terms of flying time We will focus primarily on execution time for a single job Definitions  Performance is in units of things-per-second  bigger is better  If we are primarily concerned with response time  performance(x) = 1 execution_time(x) " X is n times faster than Y" means Performance(X) n = ---------------------Performance(Y) Performance measurement  How about collection of programs?  Example: Three machines: A, B and C. Two Programs: P1 and P2. A B C P1 1 10 20 P2 1000 100 20 Arithmetic mean:  Weight i * Time i W(1) 500.5 55 20 W(2) 91.9 18 20 W(3) 2 10 20 W(1) W(2) W(3) .5 .9 .99 .5 .1 .01 Performance measurement  Other option: Geometric Means (Self study pages 37-39 text book) Metrics of performance Answers per month Operations per second Application Programming Language Compiler ISA (millions) of Instructions per second – MIPS (millions) of (F.P.) operations per second – MFLOP/s Datapath Control Megabytes per second Function Units Transistors Wires Pins Cycles per second (clock rate) Relating Processor Metrics  CPU execution time = CPU clock cycles X clock cycle time  or CPU execution time = CPU clock cycles ÷ clock rate  CPU clock cycles= Instructions X avg. clock cycles per instr.  or CPI = CPU clock cycles÷ Instructions  CPI tells us something about the Instruction Set Architecture, the Implementation of that architecture, and the program measured Aspects of CPU Performance CPU time = Seconds Program instr. count Program Compiler Instr. Set Arch. Organization Technology = Instructions x Cycles Program Instruction CPI clock rate x Seconds Cycle Aspects of CPU Performance CPU time = Seconds Program instr count = Instructions x Cycles Program Instruction CPI clock rate Program X Compiler X (x) Instr. Set. X X Organization Technology x Seconds X X X Cycle Organizational Trade-offs Application Programming Language Compiler ISA Datapath Control Instruction Mix CPI Function Units Transistors Wires Pins Cycle Time CPI “Average cycles per instruction” CPI = (CPU Time * Clock Rate) / Instruction Count = Clock Cycles / Instruction Count n CPU time = ClockCycleTime * SUM i =1 CPI i * Ii "instruction frequency" n CPI = SUM CPI i * i =1 F i where Fi Invest Resources where time is Spent! = Ii Instruction Count Example (RISC processor) Base Machine (Reg / Reg) Op Freq Cycles CPI(i) ALU 50% 1 .5 Load 20% 5 1.0 Store 10% 3 .3 Branch 20% 2 .4 2.2 % Time 23% 45% 14% 18% Typical Mix How much faster would the machine be if a better data cache reduced the average load time to 2 cycles? How does this compare with using branch prediction to shave a cycle off the branch time? What if two ALU instructions could be executed at once? Example (RISC processor) Base Machine (Reg / Reg) Op Freq Cycles CPI(i) ALU 50% 1 .5 Load 20% 5 1.0 Store 10% 3 .3 Branch 20% 2 .4 2.2 % Time 23% 45% 14% 18% Typical Mix How much faster would the machine be if: A) Loads took “0” cycles? B) Stores took “0” cycles? C) ALU ops took “0” cycles? D)Branches took “0” cycles? MAKE THE COMMON CASE FAST Amdahl's Law Speedup due to enhancement E: ExTime w/o E Speedup(E) = -------------------ExTime w/ E Performance w/ E = --------------------Performance w/o E Suppose that enhancement E accelerates a fraction F of the task by a factor S and the remainder of the task is unaffected then, ExTime(with E) = ((1-F) + F/S) X ExTime(without E) Speedup(with E) = ExTime(without E) ÷ ((1-F) + F/S) X ExTime(without E) Speedup(with E) =1/ ((1-F) + F/S) Amdahl's Law-example A new CPU makes Web serving 10 times faster. The old CPU spent 40% of the time on computation and 60% on waiting for I/O. What is the overall enhancement? Fraction enhanced= 0.4 Speedup enhanced = 10 Speedup overall = 1 0.6 +0.4/10 = 1.56 Example from Quiz 1-2004  a)A program consists of 80% initialization code and of 20% code being the main iteration loop, which is run 1000 times. The total runtime of the program is 100 seconds. Calculate the fraction of the total run time needed for the initialization and the iteration. Which part would you optimize? B) The program should have a total run time of 60 seconds. How can this be achieved? (15 points) Marketing Metrics = Instruction Count / Time * 10^6 MIPS = Clock Rate / CPI * 10^6 •machines with different instruction sets ? •programs with different instruction mixes ? • dynamic frequency of instructions • uncorrelated with performance GFLOPS = FP Operations / Time * 10^9 •machine dependent •often not where time is spent playstation: 6.4 GFLOPS Why Do Benchmarks?  How we evaluate differences  Different systems  Changes to a single system  Provide a target  Benchmarks should represent large class of important programs  Improving benchmark performance should help many programs  For better or worse, benchmarks shape a field  Good ones accelerate progress  good target for development  Bad benchmarks hurt progress  help real programs v. sell machines/papers?  Inventions that help real programs don’t help benchmark Basis of Evaluation Cons • representative Actual Target Workload • portable • widely used • improvements useful in reality • easy to run, early in design cycle • identify peak capability and potential bottlenecks • very specific • non-portable • difficult to run, or measure • hard to identify cause •less representative Full Application Benchmarks Small “Kernel” Benchmarks Microbenchmarks • easy to “fool” • “peak” may be a long way from application performance Successful Benchmark: SPEC  1987 RISC industry mired in “bench marketing”: (“That is 8 MIPS machine, but they claim 10 MIPS!”)  EE Times + 5 companies band together to perform Systems Performance Evaluation Committee (SPEC) in 1988: Sun, MIPS, HP, Apollo, DEC  Create standard list of programs, inputs, reporting: some real programs, includes OS calls, some I/O SPEC first round  First round 1989; 10 programs, single number to summarize performance  One program: 99% of time in single line of code  New front-end compiler could improve dramatically 800 700 500 400 300 200 100 Benchmark tomcatv fpppp matrix300 eqntott li nasa7 doduc spice epresso 0 gcc SPEC Perf 600 SPEC95  Eighteen application benchmarks (with inputs) reflecting a technical computing workload  Eight integer go, m88ksim, gcc, compress, li, ijpeg, perl, vortex  Ten floating-point intensive tomcatv, swim, su2cor, hydro2d, mgrid, applu, turb3d, apsi, fppp, wave5  Must run with standard compiler flags eliminate special undocumented incantations that may not even generate working code for real programs Summary CPU time = Seconds Program = Instructions x Cycles Program Instruction x Seconds Cycle  Time is the measure of computer performance!  Good products created when have:  Good benchmarks  Good ways to summarize performance  If not good benchmarks and summary, then choice between improving product for real programs vs. improving product to get more sales=> sales almost always wins  Remember Amdahl’s Law: Speedup is limited by unimproved part of program Readings & More… Reminder: READ: TEXTBOOK: Chapter 1 pages 1 to 47 Moore paper (posted on course web site).