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author | Valentin Rothberg <rothberg@redhat.com> | 2019-02-21 11:54:04 +0100 |
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committer | Valentin Rothberg <rothberg@redhat.com> | 2019-02-21 11:54:04 +0100 |
commit | c069d117594d72159157aa48d0693d8571be45c5 (patch) | |
tree | 19b8af7cb8eb967154f162bde56bb6b599aad4cf /vendor/github.com/VividCortex | |
parent | 4934bf23272f185fa9f08d0ba890c5a0eb4ed14d (diff) | |
download | podman-c069d117594d72159157aa48d0693d8571be45c5.tar.gz podman-c069d117594d72159157aa48d0693d8571be45c5.tar.bz2 podman-c069d117594d72159157aa48d0693d8571be45c5.zip |
vendor containers/image v1.4
This requires some additional changes to the dependencies since the
progress-bar library has been changed to github.com/vbauerster/mpb.
Please refer to the following link for the release notes:
https://github.com/containers/image/releases/tag/v1.4
Signed-off-by: Valentin Rothberg <rothberg@redhat.com>
Diffstat (limited to 'vendor/github.com/VividCortex')
-rw-r--r-- | vendor/github.com/VividCortex/ewma/LICENSE | 21 | ||||
-rw-r--r-- | vendor/github.com/VividCortex/ewma/README.md | 140 | ||||
-rw-r--r-- | vendor/github.com/VividCortex/ewma/ewma.go | 126 |
3 files changed, 287 insertions, 0 deletions
diff --git a/vendor/github.com/VividCortex/ewma/LICENSE b/vendor/github.com/VividCortex/ewma/LICENSE new file mode 100644 index 000000000..a78d643ed --- /dev/null +++ b/vendor/github.com/VividCortex/ewma/LICENSE @@ -0,0 +1,21 @@ +The MIT License + +Copyright (c) 2013 VividCortex + +Permission is hereby granted, free of charge, to any person obtaining a copy +of this software and associated documentation files (the "Software"), to deal +in the Software without restriction, including without limitation the rights +to use, copy, modify, merge, publish, distribute, sublicense, and/or sell +copies of the Software, and to permit persons to whom the Software is +furnished to do so, subject to the following conditions: + +The above copyright notice and this permission notice shall be included in +all copies or substantial portions of the Software. + +THE SOFTWARE IS PROVIDED "AS IS", WITHOUT WARRANTY OF ANY KIND, EXPRESS OR +IMPLIED, INCLUDING BUT NOT LIMITED TO THE WARRANTIES OF MERCHANTABILITY, +FITNESS FOR A PARTICULAR PURPOSE AND NONINFRINGEMENT. IN NO EVENT SHALL THE +AUTHORS OR COPYRIGHT HOLDERS BE LIABLE FOR ANY CLAIM, DAMAGES OR OTHER +LIABILITY, WHETHER IN AN ACTION OF CONTRACT, TORT OR OTHERWISE, ARISING FROM, +OUT OF OR IN CONNECTION WITH THE SOFTWARE OR THE USE OR OTHER DEALINGS IN +THE SOFTWARE. diff --git a/vendor/github.com/VividCortex/ewma/README.md b/vendor/github.com/VividCortex/ewma/README.md new file mode 100644 index 000000000..7aab61b87 --- /dev/null +++ b/vendor/github.com/VividCortex/ewma/README.md @@ -0,0 +1,140 @@ +# EWMA [![GoDoc](https://godoc.org/github.com/VividCortex/ewma?status.svg)](https://godoc.org/github.com/VividCortex/ewma) ![Build Status](https://circleci.com/gh/VividCortex/moving_average.png?circle-token=1459fa37f9ca0e50cef05d1963146d96d47ea523) + +This repo provides Exponentially Weighted Moving Average algorithms, or EWMAs for short, [based on our +Quantifying Abnormal Behavior talk](https://vividcortex.com/blog/2013/07/23/a-fast-go-library-for-exponential-moving-averages/). + +### Exponentially Weighted Moving Average + +An exponentially weighted moving average is a way to continuously compute a type of +average for a series of numbers, as the numbers arrive. After a value in the series is +added to the average, its weight in the average decreases exponentially over time. This +biases the average towards more recent data. EWMAs are useful for several reasons, chiefly +their inexpensive computational and memory cost, as well as the fact that they represent +the recent central tendency of the series of values. + +The EWMA algorithm requires a decay factor, alpha. The larger the alpha, the more the average +is biased towards recent history. The alpha must be between 0 and 1, and is typically +a fairly small number, such as 0.04. We will discuss the choice of alpha later. + +The algorithm works thus, in pseudocode: + +1. Multiply the next number in the series by alpha. +2. Multiply the current value of the average by 1 minus alpha. +3. Add the result of steps 1 and 2, and store it as the new current value of the average. +4. Repeat for each number in the series. + +There are special-case behaviors for how to initialize the current value, and these vary +between implementations. One approach is to start with the first value in the series; +another is to average the first 10 or so values in the series using an arithmetic average, +and then begin the incremental updating of the average. Each method has pros and cons. + +It may help to look at it pictorially. Suppose the series has five numbers, and we choose +alpha to be 0.50 for simplicity. Here's the series, with numbers in the neighborhood of 300. + +![Data Series](https://user-images.githubusercontent.com/279875/28242350-463289a2-6977-11e7-88ca-fd778ccef1f0.png) + +Now let's take the moving average of those numbers. First we set the average to the value +of the first number. + +![EWMA Step 1](https://user-images.githubusercontent.com/279875/28242353-464c96bc-6977-11e7-9981-dc4e0789c7ba.png) + +Next we multiply the next number by alpha, multiply the current value by 1-alpha, and add +them to generate a new value. + +![EWMA Step 2](https://user-images.githubusercontent.com/279875/28242351-464abefa-6977-11e7-95d0-43900f29bef2.png) + +This continues until we are done. + +![EWMA Step N](https://user-images.githubusercontent.com/279875/28242352-464c58f0-6977-11e7-8cd0-e01e4efaac7f.png) + +Notice how each of the values in the series decays by half each time a new value +is added, and the top of the bars in the lower portion of the image represents the +size of the moving average. It is a smoothed, or low-pass, average of the original +series. + +For further reading, see [Exponentially weighted moving average](http://en.wikipedia.org/wiki/Moving_average#Exponential_moving_average) on wikipedia. + +### Choosing Alpha + +Consider a fixed-size sliding-window moving average (not an exponentially weighted moving average) +that averages over the previous N samples. What is the average age of each sample? It is N/2. + +Now suppose that you wish to construct a EWMA whose samples have the same average age. The formula +to compute the alpha required for this is: alpha = 2/(N+1). Proof is in the book +"Production and Operations Analysis" by Steven Nahmias. + +So, for example, if you have a time-series with samples once per second, and you want to get the +moving average over the previous minute, you should use an alpha of .032786885. This, by the way, +is the constant alpha used for this repository's SimpleEWMA. + +### Implementations + +This repository contains two implementations of the EWMA algorithm, with different properties. + +The implementations all conform to the MovingAverage interface, and the constructor returns +that type. + +Current implementations assume an implicit time interval of 1.0 between every sample added. +That is, the passage of time is treated as though it's the same as the arrival of samples. +If you need time-based decay when samples are not arriving precisely at set intervals, then +this package will not support your needs at present. + +#### SimpleEWMA + +A SimpleEWMA is designed for low CPU and memory consumption. It **will** have different behavior than the VariableEWMA +for multiple reasons. It has no warm-up period and it uses a constant +decay. These properties let it use less memory. It will also behave +differently when it's equal to zero, which is assumed to mean +uninitialized, so if a value is likely to actually become zero over time, +then any non-zero value will cause a sharp jump instead of a small change. + +#### VariableEWMA + +Unlike SimpleEWMA, this supports a custom age which must be stored, and thus uses more memory. +It also has a "warmup" time when you start adding values to it. It will report a value of 0.0 +until you have added the required number of samples to it. It uses some memory to store the +number of samples added to it. As a result it uses a little over twice the memory of SimpleEWMA. + +## Usage + +### API Documentation + +View the GoDoc generated documentation [here](http://godoc.org/github.com/VividCortex/ewma). + +```go +package main +import "github.com/VividCortex/ewma" + +func main() { + samples := [100]float64{ + 4599, 5711, 4746, 4621, 5037, 4218, 4925, 4281, 5207, 5203, 5594, 5149, + } + + e := ewma.NewMovingAverage() //=> Returns a SimpleEWMA if called without params + a := ewma.NewMovingAverage(5) //=> returns a VariableEWMA with a decay of 2 / (5 + 1) + + for _, f := range samples { + e.Add(f) + a.Add(f) + } + + e.Value() //=> 13.577404704631077 + a.Value() //=> 1.5806140565521463e-12 +} +``` + +## Contributing + +We only accept pull requests for minor fixes or improvements. This includes: + +* Small bug fixes +* Typos +* Documentation or comments + +Please open issues to discuss new features. Pull requests for new features will be rejected, +so we recommend forking the repository and making changes in your fork for your use case. + +## License + +This repository is Copyright (c) 2013 VividCortex, Inc. All rights reserved. +It is licensed under the MIT license. Please see the LICENSE file for applicable license terms. diff --git a/vendor/github.com/VividCortex/ewma/ewma.go b/vendor/github.com/VividCortex/ewma/ewma.go new file mode 100644 index 000000000..44d5d53e3 --- /dev/null +++ b/vendor/github.com/VividCortex/ewma/ewma.go @@ -0,0 +1,126 @@ +// Package ewma implements exponentially weighted moving averages. +package ewma + +// Copyright (c) 2013 VividCortex, Inc. All rights reserved. +// Please see the LICENSE file for applicable license terms. + +const ( + // By default, we average over a one-minute period, which means the average + // age of the metrics in the period is 30 seconds. + AVG_METRIC_AGE float64 = 30.0 + + // The formula for computing the decay factor from the average age comes + // from "Production and Operations Analysis" by Steven Nahmias. + DECAY float64 = 2 / (float64(AVG_METRIC_AGE) + 1) + + // For best results, the moving average should not be initialized to the + // samples it sees immediately. The book "Production and Operations + // Analysis" by Steven Nahmias suggests initializing the moving average to + // the mean of the first 10 samples. Until the VariableEwma has seen this + // many samples, it is not "ready" to be queried for the value of the + // moving average. This adds some memory cost. + WARMUP_SAMPLES uint8 = 10 +) + +// MovingAverage is the interface that computes a moving average over a time- +// series stream of numbers. The average may be over a window or exponentially +// decaying. +type MovingAverage interface { + Add(float64) + Value() float64 + Set(float64) +} + +// NewMovingAverage constructs a MovingAverage that computes an average with the +// desired characteristics in the moving window or exponential decay. If no +// age is given, it constructs a default exponentially weighted implementation +// that consumes minimal memory. The age is related to the decay factor alpha +// by the formula given for the DECAY constant. It signifies the average age +// of the samples as time goes to infinity. +func NewMovingAverage(age ...float64) MovingAverage { + if len(age) == 0 || age[0] == AVG_METRIC_AGE { + return new(SimpleEWMA) + } + return &VariableEWMA{ + decay: 2 / (age[0] + 1), + } +} + +// A SimpleEWMA represents the exponentially weighted moving average of a +// series of numbers. It WILL have different behavior than the VariableEWMA +// for multiple reasons. It has no warm-up period and it uses a constant +// decay. These properties let it use less memory. It will also behave +// differently when it's equal to zero, which is assumed to mean +// uninitialized, so if a value is likely to actually become zero over time, +// then any non-zero value will cause a sharp jump instead of a small change. +// However, note that this takes a long time, and the value may just +// decays to a stable value that's close to zero, but which won't be mistaken +// for uninitialized. See http://play.golang.org/p/litxBDr_RC for example. +type SimpleEWMA struct { + // The current value of the average. After adding with Add(), this is + // updated to reflect the average of all values seen thus far. + value float64 +} + +// Add adds a value to the series and updates the moving average. +func (e *SimpleEWMA) Add(value float64) { + if e.value == 0 { // this is a proxy for "uninitialized" + e.value = value + } else { + e.value = (value * DECAY) + (e.value * (1 - DECAY)) + } +} + +// Value returns the current value of the moving average. +func (e *SimpleEWMA) Value() float64 { + return e.value +} + +// Set sets the EWMA's value. +func (e *SimpleEWMA) Set(value float64) { + e.value = value +} + +// VariableEWMA represents the exponentially weighted moving average of a series of +// numbers. Unlike SimpleEWMA, it supports a custom age, and thus uses more memory. +type VariableEWMA struct { + // The multiplier factor by which the previous samples decay. + decay float64 + // The current value of the average. + value float64 + // The number of samples added to this instance. + count uint8 +} + +// Add adds a value to the series and updates the moving average. +func (e *VariableEWMA) Add(value float64) { + switch { + case e.count < WARMUP_SAMPLES: + e.count++ + e.value += value + case e.count == WARMUP_SAMPLES: + e.count++ + e.value = e.value / float64(WARMUP_SAMPLES) + e.value = (value * e.decay) + (e.value * (1 - e.decay)) + default: + e.value = (value * e.decay) + (e.value * (1 - e.decay)) + } +} + +// Value returns the current value of the average, or 0.0 if the series hasn't +// warmed up yet. +func (e *VariableEWMA) Value() float64 { + if e.count <= WARMUP_SAMPLES { + return 0.0 + } + + return e.value +} + +// Set sets the EWMA's value. +func (e *VariableEWMA) Set(value float64) { + e.value = value + if e.count <= WARMUP_SAMPLES { + e.count = WARMUP_SAMPLES + 1 + } +} |