| 123456789101112131415161718192021222324252627282930313233343536373839404142434445464748495051525354555657585960616263646566676869707172737475767778798081828384858687888990919293949596979899100101102103104105106107108109110111112113114115116117118119120121122123124125126127128129130131132133134135136137138139140141142143144145146147148149150151152153154155156157158159160161162163164165166167168169170171172173174175176177178179180181182183184185186187188189190191192193194195196197198199200201202203204205206207208209210211212213 | // Copyright 2024 Google LLC//// 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.syntax = "proto3";package google.api;import "google/protobuf/any.proto";import "google/protobuf/timestamp.proto";option go_package = "google.golang.org/genproto/googleapis/api/distribution;distribution";option java_multiple_files = true;option java_outer_classname = "DistributionProto";option java_package = "com.google.api";option objc_class_prefix = "GAPI";// `Distribution` contains summary statistics for a population of values. It// optionally contains a histogram representing the distribution of those values// across a set of buckets.//// The summary statistics are the count, mean, sum of the squared deviation from// the mean, the minimum, and the maximum of the set of population of values.// The histogram is based on a sequence of buckets and gives a count of values// that fall into each bucket. The boundaries of the buckets are given either// explicitly or by formulas for buckets of fixed or exponentially increasing// widths.//// Although it is not forbidden, it is generally a bad idea to include// non-finite values (infinities or NaNs) in the population of values, as this// will render the `mean` and `sum_of_squared_deviation` fields meaningless.message Distribution {  // The range of the population values.  message Range {    // The minimum of the population values.    double min = 1;    // The maximum of the population values.    double max = 2;  }  // `BucketOptions` describes the bucket boundaries used to create a histogram  // for the distribution. The buckets can be in a linear sequence, an  // exponential sequence, or each bucket can be specified explicitly.  // `BucketOptions` does not include the number of values in each bucket.  //  // A bucket has an inclusive lower bound and exclusive upper bound for the  // values that are counted for that bucket. The upper bound of a bucket must  // be strictly greater than the lower bound. The sequence of N buckets for a  // distribution consists of an underflow bucket (number 0), zero or more  // finite buckets (number 1 through N - 2) and an overflow bucket (number N -  // 1). The buckets are contiguous: the lower bound of bucket i (i > 0) is the  // same as the upper bound of bucket i - 1. The buckets span the whole range  // of finite values: lower bound of the underflow bucket is -infinity and the  // upper bound of the overflow bucket is +infinity. The finite buckets are  // so-called because both bounds are finite.  message BucketOptions {    // Specifies a linear sequence of buckets that all have the same width    // (except overflow and underflow). Each bucket represents a constant    // absolute uncertainty on the specific value in the bucket.    //    // There are `num_finite_buckets + 2` (= N) buckets. Bucket `i` has the    // following boundaries:    //    //    Upper bound (0 <= i < N-1):     offset + (width * i).    //    //    Lower bound (1 <= i < N):       offset + (width * (i - 1)).    message Linear {      // Must be greater than 0.      int32 num_finite_buckets = 1;      // Must be greater than 0.      double width = 2;      // Lower bound of the first bucket.      double offset = 3;    }    // Specifies an exponential sequence of buckets that have a width that is    // proportional to the value of the lower bound. Each bucket represents a    // constant relative uncertainty on a specific value in the bucket.    //    // There are `num_finite_buckets + 2` (= N) buckets. Bucket `i` has the    // following boundaries:    //    //    Upper bound (0 <= i < N-1):     scale * (growth_factor ^ i).    //    //    Lower bound (1 <= i < N):       scale * (growth_factor ^ (i - 1)).    message Exponential {      // Must be greater than 0.      int32 num_finite_buckets = 1;      // Must be greater than 1.      double growth_factor = 2;      // Must be greater than 0.      double scale = 3;    }    // Specifies a set of buckets with arbitrary widths.    //    // There are `size(bounds) + 1` (= N) buckets. Bucket `i` has the following    // boundaries:    //    //    Upper bound (0 <= i < N-1):     bounds[i]    //    Lower bound (1 <= i < N);       bounds[i - 1]    //    // The `bounds` field must contain at least one element. If `bounds` has    // only one element, then there are no finite buckets, and that single    // element is the common boundary of the overflow and underflow buckets.    message Explicit {      // The values must be monotonically increasing.      repeated double bounds = 1;    }    // Exactly one of these three fields must be set.    oneof options {      // The linear bucket.      Linear linear_buckets = 1;      // The exponential buckets.      Exponential exponential_buckets = 2;      // The explicit buckets.      Explicit explicit_buckets = 3;    }  }  // Exemplars are example points that may be used to annotate aggregated  // distribution values. They are metadata that gives information about a  // particular value added to a Distribution bucket, such as a trace ID that  // was active when a value was added. They may contain further information,  // such as a example values and timestamps, origin, etc.  message Exemplar {    // Value of the exemplar point. This value determines to which bucket the    // exemplar belongs.    double value = 1;    // The observation (sampling) time of the above value.    google.protobuf.Timestamp timestamp = 2;    // Contextual information about the example value. Examples are:    //    //   Trace: type.googleapis.com/google.monitoring.v3.SpanContext    //    //   Literal string: type.googleapis.com/google.protobuf.StringValue    //    //   Labels dropped during aggregation:    //     type.googleapis.com/google.monitoring.v3.DroppedLabels    //    // There may be only a single attachment of any given message type in a    // single exemplar, and this is enforced by the system.    repeated google.protobuf.Any attachments = 3;  }  // The number of values in the population. Must be non-negative. This value  // must equal the sum of the values in `bucket_counts` if a histogram is  // provided.  int64 count = 1;  // The arithmetic mean of the values in the population. If `count` is zero  // then this field must be zero.  double mean = 2;  // The sum of squared deviations from the mean of the values in the  // population. For values x_i this is:  //  //     Sum[i=1..n]((x_i - mean)^2)  //  // Knuth, "The Art of Computer Programming", Vol. 2, page 232, 3rd edition  // describes Welford's method for accumulating this sum in one pass.  //  // If `count` is zero then this field must be zero.  double sum_of_squared_deviation = 3;  // If specified, contains the range of the population values. The field  // must not be present if the `count` is zero.  Range range = 4;  // Defines the histogram bucket boundaries. If the distribution does not  // contain a histogram, then omit this field.  BucketOptions bucket_options = 6;  // The number of values in each bucket of the histogram, as described in  // `bucket_options`. If the distribution does not have a histogram, then omit  // this field. If there is a histogram, then the sum of the values in  // `bucket_counts` must equal the value in the `count` field of the  // distribution.  //  // If present, `bucket_counts` should contain N values, where N is the number  // of buckets specified in `bucket_options`. If you supply fewer than N  // values, the remaining values are assumed to be 0.  //  // The order of the values in `bucket_counts` follows the bucket numbering  // schemes described for the three bucket types. The first value must be the  // count for the underflow bucket (number 0). The next N-2 values are the  // counts for the finite buckets (number 1 through N-2). The N'th value in  // `bucket_counts` is the count for the overflow bucket (number N-1).  repeated int64 bucket_counts = 7;  // Must be in increasing order of `value` field.  repeated Exemplar exemplars = 10;}
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