| // Copyright 2017 The Go Authors. All rights reserved. | |
| // Use of this source code is governed by a BSD-style | |
| // license that can be found in the LICENSE file. | |
| package trace | |
| import ( | |
| "cmp" | |
| "math" | |
| "slices" | |
| ) | |
| // mud is an updatable mutator utilization distribution. | |
| // | |
| // This is a continuous distribution of duration over mutator | |
| // utilization. For example, the integral from mutator utilization a | |
| // to b is the total duration during which the mutator utilization was | |
| // in the range [a, b]. | |
| // | |
| // This distribution is *not* normalized (it is not a probability | |
| // distribution). This makes it easier to work with as it's being | |
| // updated. | |
| // | |
| // It is represented as the sum of scaled uniform distribution | |
| // functions and Dirac delta functions (which are treated as | |
| // degenerate uniform distributions). | |
| type mud struct { | |
| sorted, unsorted []edge | |
| // trackMass is the inverse cumulative sum to track as the | |
| // distribution is updated. | |
| trackMass float64 | |
| // trackBucket is the bucket in which trackMass falls. If the | |
| // total mass of the distribution is < trackMass, this is | |
| // len(hist). | |
| trackBucket int | |
| // trackSum is the cumulative sum of hist[:trackBucket]. Once | |
| // trackSum >= trackMass, trackBucket must be recomputed. | |
| trackSum float64 | |
| // hist is a hierarchical histogram of distribution mass. | |
| hist [mudDegree]float64 | |
| } | |
| const ( | |
| // mudDegree is the number of buckets in the MUD summary | |
| // histogram. | |
| mudDegree = 1024 | |
| ) | |
| type edge struct { | |
| // At x, the function increases by y. | |
| x, delta float64 | |
| // Additionally at x is a Dirac delta function with area dirac. | |
| dirac float64 | |
| } | |
| // add adds a uniform function over [l, r] scaled so the total weight | |
| // of the uniform is area. If l==r, this adds a Dirac delta function. | |
| func (d *mud) add(l, r, area float64) { | |
| if area == 0 { | |
| return | |
| } | |
| if r < l { | |
| l, r = r, l | |
| } | |
| // Add the edges. | |
| if l == r { | |
| d.unsorted = append(d.unsorted, edge{l, 0, area}) | |
| } else { | |
| delta := area / (r - l) | |
| d.unsorted = append(d.unsorted, edge{l, delta, 0}, edge{r, -delta, 0}) | |
| } | |
| // Update the histogram. | |
| h := &d.hist | |
| lbFloat, lf := math.Modf(l * mudDegree) | |
| lb := int(lbFloat) | |
| if lb >= mudDegree { | |
| lb, lf = mudDegree-1, 1 | |
| } | |
| if l == r { | |
| h[lb] += area | |
| } else { | |
| rbFloat, rf := math.Modf(r * mudDegree) | |
| rb := int(rbFloat) | |
| if rb >= mudDegree { | |
| rb, rf = mudDegree-1, 1 | |
| } | |
| if lb == rb { | |
| h[lb] += area | |
| } else { | |
| perBucket := area / (r - l) / mudDegree | |
| h[lb] += perBucket * (1 - lf) | |
| h[rb] += perBucket * rf | |
| for i := lb + 1; i < rb; i++ { | |
| h[i] += perBucket | |
| } | |
| } | |
| } | |
| // Update mass tracking. | |
| if thresh := float64(d.trackBucket) / mudDegree; l < thresh { | |
| if r < thresh { | |
| d.trackSum += area | |
| } else { | |
| d.trackSum += area * (thresh - l) / (r - l) | |
| } | |
| if d.trackSum >= d.trackMass { | |
| // The tracked mass now falls in a different | |
| // bucket. Recompute the inverse cumulative sum. | |
| d.setTrackMass(d.trackMass) | |
| } | |
| } | |
| } | |
| // setTrackMass sets the mass to track the inverse cumulative sum for. | |
| // | |
| // Specifically, mass is a cumulative duration, and the mutator | |
| // utilization bounds for this duration can be queried using | |
| // approxInvCumulativeSum. | |
| func (d *mud) setTrackMass(mass float64) { | |
| d.trackMass = mass | |
| // Find the bucket currently containing trackMass by computing | |
| // the cumulative sum. | |
| sum := 0.0 | |
| for i, val := range d.hist[:] { | |
| newSum := sum + val | |
| if newSum > mass { | |
| // mass falls in bucket i. | |
| d.trackBucket = i | |
| d.trackSum = sum | |
| return | |
| } | |
| sum = newSum | |
| } | |
| d.trackBucket = len(d.hist) | |
| d.trackSum = sum | |
| } | |
| // approxInvCumulativeSum is like invCumulativeSum, but specifically | |
| // operates on the tracked mass and returns an upper and lower bound | |
| // approximation of the inverse cumulative sum. | |
| // | |
| // The true inverse cumulative sum will be in the range [lower, upper). | |
| func (d *mud) approxInvCumulativeSum() (float64, float64, bool) { | |
| if d.trackBucket == len(d.hist) { | |
| return math.NaN(), math.NaN(), false | |
| } | |
| return float64(d.trackBucket) / mudDegree, float64(d.trackBucket+1) / mudDegree, true | |
| } | |
| // invCumulativeSum returns x such that the integral of d from -∞ to x | |
| // is y. If the total weight of d is less than y, it returns the | |
| // maximum of the distribution and false. | |
| // | |
| // Specifically, y is a cumulative duration, and invCumulativeSum | |
| // returns the mutator utilization x such that at least y time has | |
| // been spent with mutator utilization <= x. | |
| func (d *mud) invCumulativeSum(y float64) (float64, bool) { | |
| if len(d.sorted) == 0 && len(d.unsorted) == 0 { | |
| return math.NaN(), false | |
| } | |
| // Sort edges. | |
| edges := d.unsorted | |
| slices.SortFunc(edges, func(a, b edge) int { | |
| return cmp.Compare(a.x, b.x) | |
| }) | |
| // Merge with sorted edges. | |
| d.unsorted = nil | |
| if d.sorted == nil { | |
| d.sorted = edges | |
| } else { | |
| oldSorted := d.sorted | |
| newSorted := make([]edge, len(oldSorted)+len(edges)) | |
| i, j := 0, 0 | |
| for o := range newSorted { | |
| if i >= len(oldSorted) { | |
| copy(newSorted[o:], edges[j:]) | |
| break | |
| } else if j >= len(edges) { | |
| copy(newSorted[o:], oldSorted[i:]) | |
| break | |
| } else if oldSorted[i].x < edges[j].x { | |
| newSorted[o] = oldSorted[i] | |
| i++ | |
| } else { | |
| newSorted[o] = edges[j] | |
| j++ | |
| } | |
| } | |
| d.sorted = newSorted | |
| } | |
| // Traverse edges in order computing a cumulative sum. | |
| csum, rate, prevX := 0.0, 0.0, 0.0 | |
| for _, e := range d.sorted { | |
| newCsum := csum + (e.x-prevX)*rate | |
| if newCsum >= y { | |
| // y was exceeded between the previous edge | |
| // and this one. | |
| if rate == 0 { | |
| // Anywhere between prevX and | |
| // e.x will do. We return e.x | |
| // because that takes care of | |
| // the y==0 case naturally. | |
| return e.x, true | |
| } | |
| return (y-csum)/rate + prevX, true | |
| } | |
| newCsum += e.dirac | |
| if newCsum >= y { | |
| // y was exceeded by the Dirac delta at e.x. | |
| return e.x, true | |
| } | |
| csum, prevX = newCsum, e.x | |
| rate += e.delta | |
| } | |
| return prevX, false | |
| } | |