// // // Copyright 2015 gRPC authors. // // 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 // // http://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 GRPC_SRC_CORE_LIB_GPRPP_TIME_AVERAGED_STATS_H #define GRPC_SRC_CORE_LIB_GPRPP_TIME_AVERAGED_STATS_H namespace grpc_core { // This tracks a time-decaying weighted average. It works by collecting // batches of samples and then mixing their average into a time-decaying // weighted mean. It is designed for batch operations where we do many adds // before updating the average. class TimeAveragedStats { public: TimeAveragedStats(double init_avg, double regress_weight, double persistence_factor); // Add a sample to the current batch. void AddSample(double value); // Complete a batch and compute the new estimate of the average sample // value. double UpdateAverage(); double aggregate_weighted_avg() const { return aggregate_weighted_avg_; } double aggregate_total_weight() const { return aggregate_total_weight_; } private: // The initial average value. This is the reported average until the first // grpc_time_averaged_stats_update_average call. If a positive regress_weight // is used, we also regress towards this value on each update. const double init_avg_; // The sample weight of "init_avg" that is mixed in with each call to // grpc_time_averaged_stats_update_average. If the calls to // grpc_time_averaged_stats_add_sample stop, this will cause the average to // regress back to the mean. This should be non-negative. Set it to 0 to // disable the bias. A value of 1 has the effect of adding in 1 bonus sample // with value init_avg to each sample period. const double regress_weight_; // This determines the rate of decay of the time-averaging from one period // to the next by scaling the aggregate_total_weight of samples from prior // periods when combining with the latest period. It should be in the range // [0,1]. A higher value adapts more slowly. With a value of 0.5, if the // batches each have k samples, the samples_in_avg_ will grow to 2 k, so the // weighting of the time average will eventually be 1/3 new batch and 2/3 // old average. const double persistence_factor_; // The total value of samples since the last UpdateAverage(). double batch_total_value_ = 0; // The number of samples since the last UpdateAverage(). double batch_num_samples_ = 0; // The time-decayed sum of batch_num_samples_ over previous batches. This is // the "weight" of the old aggregate_weighted_avg_ when updating the // average. double aggregate_total_weight_ = 0; // A time-decayed average of the (batch_total_value_ / batch_num_samples_), // computed by decaying the samples_in_avg_ weight in the weighted average. double aggregate_weighted_avg_ = init_avg_; }; } // namespace grpc_core #endif // GRPC_SRC_CORE_LIB_GPRPP_TIME_AVERAGED_STATS_H