// 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.monitoring.dashboard.v1; import "google/protobuf/duration.proto"; import "google/type/interval.proto"; option csharp_namespace = "Google.Cloud.Monitoring.Dashboard.V1"; option go_package = "cloud.google.com/go/monitoring/dashboard/apiv1/dashboardpb;dashboardpb"; option java_multiple_files = true; option java_outer_classname = "CommonProto"; option java_package = "com.google.monitoring.dashboard.v1"; option php_namespace = "Google\\Cloud\\Monitoring\\Dashboard\\V1"; option ruby_package = "Google::Cloud::Monitoring::Dashboard::V1"; // Describes how to combine multiple time series to provide a different view of // the data. Aggregation of time series is done in two steps. First, each time // series in the set is _aligned_ to the same time interval boundaries, then the // set of time series is optionally _reduced_ in number. // // Alignment consists of applying the `per_series_aligner` operation // to each time series after its data has been divided into regular // `alignment_period` time intervals. This process takes _all_ of the data // points in an alignment period, applies a mathematical transformation such as // averaging, minimum, maximum, delta, etc., and converts them into a single // data point per period. // // Reduction is when the aligned and transformed time series can optionally be // combined, reducing the number of time series through similar mathematical // transformations. Reduction involves applying a `cross_series_reducer` to // all the time series, optionally sorting the time series into subsets with // `group_by_fields`, and applying the reducer to each subset. // // The raw time series data can contain a huge amount of information from // multiple sources. Alignment and reduction transforms this mass of data into // a more manageable and representative collection of data, for example "the // 95% latency across the average of all tasks in a cluster". This // representative data can be more easily graphed and comprehended, and the // individual time series data is still available for later drilldown. For more // details, see [Filtering and // aggregation](https://cloud.google.com/monitoring/api/v3/aggregation). message Aggregation { // The `Aligner` specifies the operation that will be applied to the data // points in each alignment period in a time series. Except for // `ALIGN_NONE`, which specifies that no operation be applied, each alignment // operation replaces the set of data values in each alignment period with // a single value: the result of applying the operation to the data values. // An aligned time series has a single data value at the end of each // `alignment_period`. // // An alignment operation can change the data type of the values, too. For // example, if you apply a counting operation to boolean values, the data // `value_type` in the original time series is `BOOLEAN`, but the `value_type` // in the aligned result is `INT64`. enum Aligner { // No alignment. Raw data is returned. Not valid if cross-series reduction // is requested. The `value_type` of the result is the same as the // `value_type` of the input. ALIGN_NONE = 0; // Align and convert to // [DELTA][google.api.MetricDescriptor.MetricKind.DELTA]. // The output is `delta = y1 - y0`. // // This alignment is valid for // [CUMULATIVE][google.api.MetricDescriptor.MetricKind.CUMULATIVE] and // `DELTA` metrics. If the selected alignment period results in periods // with no data, then the aligned value for such a period is created by // interpolation. The `value_type` of the aligned result is the same as // the `value_type` of the input. ALIGN_DELTA = 1; // Align and convert to a rate. The result is computed as // `rate = (y1 - y0)/(t1 - t0)`, or "delta over time". // Think of this aligner as providing the slope of the line that passes // through the value at the start and at the end of the `alignment_period`. // // This aligner is valid for `CUMULATIVE` // and `DELTA` metrics with numeric values. If the selected alignment // period results in periods with no data, then the aligned value for // such a period is created by interpolation. The output is a `GAUGE` // metric with `value_type` `DOUBLE`. // // If, by "rate", you mean "percentage change", see the // `ALIGN_PERCENT_CHANGE` aligner instead. ALIGN_RATE = 2; // Align by interpolating between adjacent points around the alignment // period boundary. This aligner is valid for `GAUGE` metrics with // numeric values. The `value_type` of the aligned result is the same as the // `value_type` of the input. ALIGN_INTERPOLATE = 3; // Align by moving the most recent data point before the end of the // alignment period to the boundary at the end of the alignment // period. This aligner is valid for `GAUGE` metrics. The `value_type` of // the aligned result is the same as the `value_type` of the input. ALIGN_NEXT_OLDER = 4; // Align the time series by returning the minimum value in each alignment // period. This aligner is valid for `GAUGE` and `DELTA` metrics with // numeric values. The `value_type` of the aligned result is the same as // the `value_type` of the input. ALIGN_MIN = 10; // Align the time series by returning the maximum value in each alignment // period. This aligner is valid for `GAUGE` and `DELTA` metrics with // numeric values. The `value_type` of the aligned result is the same as // the `value_type` of the input. ALIGN_MAX = 11; // Align the time series by returning the mean value in each alignment // period. This aligner is valid for `GAUGE` and `DELTA` metrics with // numeric values. The `value_type` of the aligned result is `DOUBLE`. ALIGN_MEAN = 12; // Align the time series by returning the number of values in each alignment // period. This aligner is valid for `GAUGE` and `DELTA` metrics with // numeric or Boolean values. The `value_type` of the aligned result is // `INT64`. ALIGN_COUNT = 13; // Align the time series by returning the sum of the values in each // alignment period. This aligner is valid for `GAUGE` and `DELTA` // metrics with numeric and distribution values. The `value_type` of the // aligned result is the same as the `value_type` of the input. ALIGN_SUM = 14; // Align the time series by returning the standard deviation of the values // in each alignment period. This aligner is valid for `GAUGE` and // `DELTA` metrics with numeric values. The `value_type` of the output is // `DOUBLE`. ALIGN_STDDEV = 15; // Align the time series by returning the number of `True` values in // each alignment period. This aligner is valid for `GAUGE` metrics with // Boolean values. The `value_type` of the output is `INT64`. ALIGN_COUNT_TRUE = 16; // Align the time series by returning the number of `False` values in // each alignment period. This aligner is valid for `GAUGE` metrics with // Boolean values. The `value_type` of the output is `INT64`. ALIGN_COUNT_FALSE = 24; // Align the time series by returning the ratio of the number of `True` // values to the total number of values in each alignment period. This // aligner is valid for `GAUGE` metrics with Boolean values. The output // value is in the range [0.0, 1.0] and has `value_type` `DOUBLE`. ALIGN_FRACTION_TRUE = 17; // Align the time series by using [percentile // aggregation](https://en.wikipedia.org/wiki/Percentile). The resulting // data point in each alignment period is the 99th percentile of all data // points in the period. This aligner is valid for `GAUGE` and `DELTA` // metrics with distribution values. The output is a `GAUGE` metric with // `value_type` `DOUBLE`. ALIGN_PERCENTILE_99 = 18; // Align the time series by using [percentile // aggregation](https://en.wikipedia.org/wiki/Percentile). The resulting // data point in each alignment period is the 95th percentile of all data // points in the period. This aligner is valid for `GAUGE` and `DELTA` // metrics with distribution values. The output is a `GAUGE` metric with // `value_type` `DOUBLE`. ALIGN_PERCENTILE_95 = 19; // Align the time series by using [percentile // aggregation](https://en.wikipedia.org/wiki/Percentile). The resulting // data point in each alignment period is the 50th percentile of all data // points in the period. This aligner is valid for `GAUGE` and `DELTA` // metrics with distribution values. The output is a `GAUGE` metric with // `value_type` `DOUBLE`. ALIGN_PERCENTILE_50 = 20; // Align the time series by using [percentile // aggregation](https://en.wikipedia.org/wiki/Percentile). The resulting // data point in each alignment period is the 5th percentile of all data // points in the period. This aligner is valid for `GAUGE` and `DELTA` // metrics with distribution values. The output is a `GAUGE` metric with // `value_type` `DOUBLE`. ALIGN_PERCENTILE_05 = 21; // Align and convert to a percentage change. This aligner is valid for // `GAUGE` and `DELTA` metrics with numeric values. This alignment returns // `((current - previous)/previous) * 100`, where the value of `previous` is // determined based on the `alignment_period`. // // If the values of `current` and `previous` are both 0, then the returned // value is 0. If only `previous` is 0, the returned value is infinity. // // A 10-minute moving mean is computed at each point of the alignment period // prior to the above calculation to smooth the metric and prevent false // positives from very short-lived spikes. The moving mean is only // applicable for data whose values are `>= 0`. Any values `< 0` are // treated as a missing datapoint, and are ignored. While `DELTA` // metrics are accepted by this alignment, special care should be taken that // the values for the metric will always be positive. The output is a // `GAUGE` metric with `value_type` `DOUBLE`. ALIGN_PERCENT_CHANGE = 23; } // A Reducer operation describes how to aggregate data points from multiple // time series into a single time series, where the value of each data point // in the resulting series is a function of all the already aligned values in // the input time series. enum Reducer { // No cross-time series reduction. The output of the `Aligner` is // returned. REDUCE_NONE = 0; // Reduce by computing the mean value across time series for each // alignment period. This reducer is valid for // [DELTA][google.api.MetricDescriptor.MetricKind.DELTA] and // [GAUGE][google.api.MetricDescriptor.MetricKind.GAUGE] metrics with // numeric or distribution values. The `value_type` of the output is // [DOUBLE][google.api.MetricDescriptor.ValueType.DOUBLE]. REDUCE_MEAN = 1; // Reduce by computing the minimum value across time series for each // alignment period. This reducer is valid for `DELTA` and `GAUGE` metrics // with numeric values. The `value_type` of the output is the same as the // `value_type` of the input. REDUCE_MIN = 2; // Reduce by computing the maximum value across time series for each // alignment period. This reducer is valid for `DELTA` and `GAUGE` metrics // with numeric values. The `value_type` of the output is the same as the // `value_type` of the input. REDUCE_MAX = 3; // Reduce by computing the sum across time series for each // alignment period. This reducer is valid for `DELTA` and `GAUGE` metrics // with numeric and distribution values. The `value_type` of the output is // the same as the `value_type` of the input. REDUCE_SUM = 4; // Reduce by computing the standard deviation across time series // for each alignment period. This reducer is valid for `DELTA` and // `GAUGE` metrics with numeric or distribution values. The `value_type` // of the output is `DOUBLE`. REDUCE_STDDEV = 5; // Reduce by computing the number of data points across time series // for each alignment period. This reducer is valid for `DELTA` and // `GAUGE` metrics of numeric, Boolean, distribution, and string // `value_type`. The `value_type` of the output is `INT64`. REDUCE_COUNT = 6; // Reduce by computing the number of `True`-valued data points across time // series for each alignment period. This reducer is valid for `DELTA` and // `GAUGE` metrics of Boolean `value_type`. The `value_type` of the output // is `INT64`. REDUCE_COUNT_TRUE = 7; // Reduce by computing the number of `False`-valued data points across time // series for each alignment period. This reducer is valid for `DELTA` and // `GAUGE` metrics of Boolean `value_type`. The `value_type` of the output // is `INT64`. REDUCE_COUNT_FALSE = 15; // Reduce by computing the ratio of the number of `True`-valued data points // to the total number of data points for each alignment period. This // reducer is valid for `DELTA` and `GAUGE` metrics of Boolean `value_type`. // The output value is in the range [0.0, 1.0] and has `value_type` // `DOUBLE`. REDUCE_FRACTION_TRUE = 8; // Reduce by computing the [99th // percentile](https://en.wikipedia.org/wiki/Percentile) of data points // across time series for each alignment period. This reducer is valid for // `GAUGE` and `DELTA` metrics of numeric and distribution type. The value // of the output is `DOUBLE`. REDUCE_PERCENTILE_99 = 9; // Reduce by computing the [95th // percentile](https://en.wikipedia.org/wiki/Percentile) of data points // across time series for each alignment period. This reducer is valid for // `GAUGE` and `DELTA` metrics of numeric and distribution type. The value // of the output is `DOUBLE`. REDUCE_PERCENTILE_95 = 10; // Reduce by computing the [50th // percentile](https://en.wikipedia.org/wiki/Percentile) of data points // across time series for each alignment period. This reducer is valid for // `GAUGE` and `DELTA` metrics of numeric and distribution type. The value // of the output is `DOUBLE`. REDUCE_PERCENTILE_50 = 11; // Reduce by computing the [5th // percentile](https://en.wikipedia.org/wiki/Percentile) of data points // across time series for each alignment period. This reducer is valid for // `GAUGE` and `DELTA` metrics of numeric and distribution type. The value // of the output is `DOUBLE`. REDUCE_PERCENTILE_05 = 12; } // The `alignment_period` specifies a time interval, in seconds, that is used // to divide the data in all the // [time series][google.monitoring.v3.TimeSeries] into consistent blocks of // time. This will be done before the per-series aligner can be applied to // the data. // // The value must be at least 60 seconds. If a per-series aligner other than // `ALIGN_NONE` is specified, this field is required or an error is returned. // If no per-series aligner is specified, or the aligner `ALIGN_NONE` is // specified, then this field is ignored. // // The maximum value of the `alignment_period` is 2 years, or 104 weeks. google.protobuf.Duration alignment_period = 1; // An `Aligner` describes how to bring the data points in a single // time series into temporal alignment. Except for `ALIGN_NONE`, all // alignments cause all the data points in an `alignment_period` to be // mathematically grouped together, resulting in a single data point for // each `alignment_period` with end timestamp at the end of the period. // // Not all alignment operations may be applied to all time series. The valid // choices depend on the `metric_kind` and `value_type` of the original time // series. Alignment can change the `metric_kind` or the `value_type` of // the time series. // // Time series data must be aligned in order to perform cross-time // series reduction. If `cross_series_reducer` is specified, then // `per_series_aligner` must be specified and not equal to `ALIGN_NONE` // and `alignment_period` must be specified; otherwise, an error is // returned. Aligner per_series_aligner = 2; // The reduction operation to be used to combine time series into a single // time series, where the value of each data point in the resulting series is // a function of all the already aligned values in the input time series. // // Not all reducer operations can be applied to all time series. The valid // choices depend on the `metric_kind` and the `value_type` of the original // time series. Reduction can yield a time series with a different // `metric_kind` or `value_type` than the input time series. // // Time series data must first be aligned (see `per_series_aligner`) in order // to perform cross-time series reduction. If `cross_series_reducer` is // specified, then `per_series_aligner` must be specified, and must not be // `ALIGN_NONE`. An `alignment_period` must also be specified; otherwise, an // error is returned. Reducer cross_series_reducer = 4; // The set of fields to preserve when `cross_series_reducer` is // specified. The `group_by_fields` determine how the time series are // partitioned into subsets prior to applying the aggregation // operation. Each subset contains time series that have the same // value for each of the grouping fields. Each individual time // series is a member of exactly one subset. The // `cross_series_reducer` is applied to each subset of time series. // It is not possible to reduce across different resource types, so // this field implicitly contains `resource.type`. Fields not // specified in `group_by_fields` are aggregated away. If // `group_by_fields` is not specified and all the time series have // the same resource type, then the time series are aggregated into // a single output time series. If `cross_series_reducer` is not // defined, this field is ignored. repeated string group_by_fields = 5; } // Describes a ranking-based time series filter. Each input time series is // ranked with an aligner. The filter will allow up to `num_time_series` time // series to pass through it, selecting them based on the relative ranking. // // For example, if `ranking_method` is `METHOD_MEAN`,`direction` is `BOTTOM`, // and `num_time_series` is 3, then the 3 times series with the lowest mean // values will pass through the filter. message PickTimeSeriesFilter { // The value reducers that can be applied to a `PickTimeSeriesFilter`. enum Method { // Not allowed. You must specify a different `Method` if you specify a // `PickTimeSeriesFilter`. METHOD_UNSPECIFIED = 0; // Select the mean of all values. METHOD_MEAN = 1; // Select the maximum value. METHOD_MAX = 2; // Select the minimum value. METHOD_MIN = 3; // Compute the sum of all values. METHOD_SUM = 4; // Select the most recent value. METHOD_LATEST = 5; } // Describes the ranking directions. enum Direction { // Not allowed. You must specify a different `Direction` if you specify a // `PickTimeSeriesFilter`. DIRECTION_UNSPECIFIED = 0; // Pass the highest `num_time_series` ranking inputs. TOP = 1; // Pass the lowest `num_time_series` ranking inputs. BOTTOM = 2; } // `ranking_method` is applied to each time series independently to produce // the value which will be used to compare the time series to other time // series. Method ranking_method = 1; // How many time series to allow to pass through the filter. int32 num_time_series = 2; // How to use the ranking to select time series that pass through the filter. Direction direction = 3; // Select the top N streams/time series within this time interval google.type.Interval interval = 4; } // A filter that ranks streams based on their statistical relation to other // streams in a request. // Note: This field is deprecated and completely ignored by the API. message StatisticalTimeSeriesFilter { // The filter methods that can be applied to a stream. enum Method { // Not allowed in well-formed requests. METHOD_UNSPECIFIED = 0; // Compute the outlier score of each stream. METHOD_CLUSTER_OUTLIER = 1; } // `rankingMethod` is applied to a set of time series, and then the produced // value for each individual time series is used to compare a given time // series to others. // These are methods that cannot be applied stream-by-stream, but rather // require the full context of a request to evaluate time series. Method ranking_method = 1; // How many time series to output. int32 num_time_series = 2; }