| // Copyright 2017 Google Inc. All Rights Reserved. |
| // |
| // Licensed under the Apache License, Version 2.0 (the "License"); |
| // you may not use this file except in compliance with the License. |
| // You may obtain a copy of the License at |
| // |
| // https://www.apache.org/licenses/LICENSE-2.0 |
| // |
| // Unless required by applicable law or agreed to in writing, software |
| // distributed under the License is distributed on an "AS IS" BASIS, |
| // WITHOUT WARRANTIES OR CONDITIONS OF ANY KIND, either express or implied. |
| // See the License for the specific language governing permissions and |
| // limitations under the License. |
| |
| #ifndef ABSL_RANDOM_INTERNAL_NANOBENCHMARK_H_ |
| #define ABSL_RANDOM_INTERNAL_NANOBENCHMARK_H_ |
| |
| // Benchmarks functions of a single integer argument with realistic branch |
| // prediction hit rates. Uses a robust estimator to summarize the measurements. |
| // The precision is about 0.2%. |
| // |
| // Examples: see nanobenchmark_test.cc. |
| // |
| // Background: Microbenchmarks such as http://github.com/google/benchmark |
| // can measure elapsed times on the order of a microsecond. Shorter functions |
| // are typically measured by repeating them thousands of times and dividing |
| // the total elapsed time by this count. Unfortunately, repetition (especially |
| // with the same input parameter!) influences the runtime. In time-critical |
| // code, it is reasonable to expect warm instruction/data caches and TLBs, |
| // but a perfect record of which branches will be taken is unrealistic. |
| // Unless the application also repeatedly invokes the measured function with |
| // the same parameter, the benchmark is measuring something very different - |
| // a best-case result, almost as if the parameter were made a compile-time |
| // constant. This may lead to erroneous conclusions about branch-heavy |
| // algorithms outperforming branch-free alternatives. |
| // |
| // Our approach differs in three ways. Adding fences to the timer functions |
| // reduces variability due to instruction reordering, improving the timer |
| // resolution to about 40 CPU cycles. However, shorter functions must still |
| // be invoked repeatedly. For more realistic branch prediction performance, |
| // we vary the input parameter according to a user-specified distribution. |
| // Thus, instead of VaryInputs(Measure(Repeat(func))), we change the |
| // loop nesting to Measure(Repeat(VaryInputs(func))). We also estimate the |
| // central tendency of the measurement samples with the "half sample mode", |
| // which is more robust to outliers and skewed data than the mean or median. |
| |
| // NOTE: for compatibility with multiple translation units compiled with |
| // distinct flags, avoid #including headers that define functions. |
| |
| #include <stddef.h> |
| #include <stdint.h> |
| |
| #include "absl/base/config.h" |
| |
| namespace absl { |
| ABSL_NAMESPACE_BEGIN |
| namespace random_internal_nanobenchmark { |
| |
| // Input influencing the function being measured (e.g. number of bytes to copy). |
| using FuncInput = size_t; |
| |
| // "Proof of work" returned by Func to ensure the compiler does not elide it. |
| using FuncOutput = uint64_t; |
| |
| // Function to measure: either 1) a captureless lambda or function with two |
| // arguments or 2) a lambda with capture, in which case the first argument |
| // is reserved for use by MeasureClosure. |
| using Func = FuncOutput (*)(const void*, FuncInput); |
| |
| // Internal parameters that determine precision/resolution/measuring time. |
| struct Params { |
| // For measuring timer overhead/resolution. Used in a nested loop => |
| // quadratic time, acceptable because we know timer overhead is "low". |
| // constexpr because this is used to define array bounds. |
| static constexpr size_t kTimerSamples = 256; |
| |
| // Best-case precision, expressed as a divisor of the timer resolution. |
| // Larger => more calls to Func and higher precision. |
| size_t precision_divisor = 1024; |
| |
| // Ratio between full and subset input distribution sizes. Cannot be less |
| // than 2; larger values increase measurement time but more faithfully |
| // model the given input distribution. |
| size_t subset_ratio = 2; |
| |
| // Together with the estimated Func duration, determines how many times to |
| // call Func before checking the sample variability. Larger values increase |
| // measurement time, memory/cache use and precision. |
| double seconds_per_eval = 4E-3; |
| |
| // The minimum number of samples before estimating the central tendency. |
| size_t min_samples_per_eval = 7; |
| |
| // The mode is better than median for estimating the central tendency of |
| // skewed/fat-tailed distributions, but it requires sufficient samples |
| // relative to the width of half-ranges. |
| size_t min_mode_samples = 64; |
| |
| // Maximum permissible variability (= median absolute deviation / center). |
| double target_rel_mad = 0.002; |
| |
| // Abort after this many evals without reaching target_rel_mad. This |
| // prevents infinite loops. |
| size_t max_evals = 9; |
| |
| // Retry the measure loop up to this many times. |
| size_t max_measure_retries = 2; |
| |
| // Whether to print additional statistics to stdout. |
| bool verbose = true; |
| }; |
| |
| // Measurement result for each unique input. |
| struct Result { |
| FuncInput input; |
| |
| // Robust estimate (mode or median) of duration. |
| float ticks; |
| |
| // Measure of variability (median absolute deviation relative to "ticks"). |
| float variability; |
| }; |
| |
| // Ensures the thread is running on the specified cpu, and no others. |
| // Reduces noise due to desynchronized socket RDTSC and context switches. |
| // If "cpu" is negative, pin to the currently running core. |
| void PinThreadToCPU(const int cpu = -1); |
| |
| // Returns tick rate, useful for converting measurements to seconds. Invariant |
| // means the tick counter frequency is independent of CPU throttling or sleep. |
| // This call may be expensive, callers should cache the result. |
| double InvariantTicksPerSecond(); |
| |
| // Precisely measures the number of ticks elapsed when calling "func" with the |
| // given inputs, shuffled to ensure realistic branch prediction hit rates. |
| // |
| // "func" returns a 'proof of work' to ensure its computations are not elided. |
| // "arg" is passed to Func, or reserved for internal use by MeasureClosure. |
| // "inputs" is an array of "num_inputs" (not necessarily unique) arguments to |
| // "func". The values should be chosen to maximize coverage of "func". This |
| // represents a distribution, so a value's frequency should reflect its |
| // probability in the real application. Order does not matter; for example, a |
| // uniform distribution over [0, 4) could be represented as {3,0,2,1}. |
| // Returns how many Result were written to "results": one per unique input, or |
| // zero if the measurement failed (an error message goes to stderr). |
| size_t Measure(const Func func, const void* arg, const FuncInput* inputs, |
| const size_t num_inputs, Result* results, |
| const Params& p = Params()); |
| |
| // Calls operator() of the given closure (lambda function). |
| template <class Closure> |
| static FuncOutput CallClosure(const void* f, const FuncInput input) { |
| return (*reinterpret_cast<const Closure*>(f))(input); |
| } |
| |
| // Same as Measure, except "closure" is typically a lambda function of |
| // FuncInput -> FuncOutput with a capture list. |
| template <class Closure> |
| static inline size_t MeasureClosure(const Closure& closure, |
| const FuncInput* inputs, |
| const size_t num_inputs, Result* results, |
| const Params& p = Params()) { |
| return Measure(reinterpret_cast<Func>(&CallClosure<Closure>), |
| reinterpret_cast<const void*>(&closure), inputs, num_inputs, |
| results, p); |
| } |
| |
| } // namespace random_internal_nanobenchmark |
| ABSL_NAMESPACE_END |
| } // namespace absl |
| |
| #endif // ABSL_RANDOM_INTERNAL_NANOBENCHMARK_H_ |