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-rw-r--r--docs/report/introduction/methodology.rst1
-rw-r--r--docs/report/introduction/methodology_plrsearch.rst357
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diff --git a/docs/report/introduction/methodology.rst b/docs/report/introduction/methodology.rst
index da8f859d8d..4faca6824c 100644
--- a/docs/report/introduction/methodology.rst
+++ b/docs/report/introduction/methodology.rst
@@ -23,3 +23,4 @@ Test Methodology
methodology_ipsec_on_intel_qat
methodology_trex_traffic_generator
methodology_http_tcp_with_wrk_tool
+ methodology_plrsearch
diff --git a/docs/report/introduction/methodology_plrsearch.rst b/docs/report/introduction/methodology_plrsearch.rst
new file mode 100644
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+++ b/docs/report/introduction/methodology_plrsearch.rst
@@ -0,0 +1,357 @@
+.. _plrsearch_algorithm:
+
+PLRsearch
+^^^^^^^^^
+
+Abstract algorithm
+~~~~~~~~~~~~~~~~~~
+
+.. TODO: Refer to packet forwarding terminology, such as "offered load" and
+ "loss ratio".
+
+Eventually, a better description of the abstract search algorithm
+will appear at this IETF standard: `plrsearch draft`_.
+
+Motivation
+----------
+
+Network providers are interested in throughput a device can sustain.
+
+`RFC 2544`_ assumes loss ratio is given by a deterministic function of
+offered load. But NFV software devices are not deterministic (enough).
+This leads for deterministic algorithms (such as MLRsearch with single
+trial) to return results, which when repeated show relatively high
+standard deviation, thus making it harder to tell what "the throughput"
+actually is.
+
+We need another algorithm, which takes this indeterminism into account.
+
+Model
+-----
+
+Each algorithm searches for an answer to a precisely formulated
+question. When the question involves indeterministic systems, it has to
+specify probabilities (or prior distributions) which are tied to a
+specific probabilistic model. Different models will have different
+number (and meaning) of parameters. Complicated (but more realistic)
+models have many parameters, and the math involved can be very
+convoluted. It is better to start with simpler probabilistic model, and
+only change it when the output of the simpler algorithm is not stable or
+useful enough.
+
+This document is focused on algorithms related to packet loss count
+only. No latency (or other information) is taken into account. For
+simplicity, only one type of measurement is considered: dynamically
+computed offered load, constant within trial measurement of
+predetermined trial duration.
+
+The main idea of the search apgorithm is to iterate trial measurements,
+using `Bayesian inference`_ to compute both the current estimate
+of "the throughput" and the next offered load to measure at.
+The computations are done in parallel with the trial measurements.
+
+The following algorithm makes an assumption that packet traffic
+generator detects duplicate packets on receive detection, and reports
+this as an error.
+
+Poisson distribution
+--------------------
+
+For given offered load, number of packets lost during trial measurement
+is assumed to come from `Poisson distribution`_,
+each trial is assumed to be independent, and the (unknown) Poisson parameter
+(average number of packets lost per second) is assumed to be
+constant across trials.
+
+When comparing different offered loads, the average loss per second is
+assumed to increase, but the (deterministic) function from offered load
+into average loss rate is otherwise unknown. This is called "loss function".
+
+Given a target loss ratio (configurable), there is an unknown offered load
+when the average is exactly that. We call that the "critical load".
+If critical load seems higher than maximum offerable load, we should use
+the maximum offerable load to make search output more conservative.
+
+Side note: `Binomial distribution`_ is a better fit compared to Poisson
+distribution (acknowledging that the number of packets lost cannot be
+higher than the number of packets offered), but the difference tends to
+be relevant in loads far above the critical region, so using Poisson
+distribution helps the algorithm focus on critical region better.
+
+Of course, there are great many increasing functions (as candidates
+for loss function). The offered load has to be chosen for each trial,
+and the computed posterior distribution of critical load
+changes with each trial result.
+
+To make the space of possible functions more tractable, some other
+simplifying assumptions are needed. As the algorithm will be examining
+(also) loads close to the critical load, linear approximation to the
+loss function in the critical region is important.
+But as the search algorithm needs to evaluate the function also far
+away from the critical region, the approximate function has to be
+well-behaved for every positive offered load, specifically it cannot predict
+non-positive packet loss rate.
+
+Within this document, "fitting function" is the name for such a well-behaved
+function, which approximates the unknown loss function in the critical region.
+
+Results from trials far from the critical region are likely to affect
+the critical rate estimate negatively, as the fitting function does not
+need to be a good approximation there. Discarding some results,
+or "suppressing" their impact with ad-hoc methods (other than
+using Poisson distribution instead of binomial) is not used, as such
+methods tend to make the overall search unstable. We rely on most of
+measurements being done (eventually) within the critical region, and
+overweighting far-off measurements (eventually) for well-behaved fitting
+functions.
+
+Speaking about new trials, each next trial will be done at offered load
+equal to the current average of the critical load.
+Alternative methods for selecting offered load might be used,
+in an attempt to speed up convergence, but such methods tend to be
+scpecific for a particular system under tests.
+
+Fitting function coefficients distribution
+------------------------------------------
+
+To accomodate systems with different behaviours, the fitting function is
+expected to have few numeric parameters affecting its shape (mainly
+affecting the linear approximation in the critical region).
+
+The general search algorithm can use whatever increasing fitting
+function, some specific functions can described later.
+
+It is up to implementer to chose a fitting function and prior
+distribution of its parameters. The rest of this document assumes each
+parameter is independently and uniformly distributed over a common
+interval. Implementers are to add non-linear transformations into their
+fitting functions if their prior is different.
+
+Exit condition for the search is either critical load stdev
+becoming small enough, or overal search time becoming long enough.
+
+The algorithm should report both avg and stdev for critical load. If the
+reported averages follow a trend (without reaching equilibrium), avg and
+stdev should refer to the equilibrium estimates based on the trend, not
+to immediate posterior values.
+
+Integration
+-----------
+
+The posterior distributions for fitting function parameters will not be
+integrable in general.
+
+The search algorithm utilises the fact that trial measurement takes some
+time, so this time can be used for numeric integration (using suitable
+method, such as Monte Carlo) to achieve sufficient precision.
+
+Optimizations
+-------------
+
+After enough trials, the posterior distribution will be concentrated in
+a narrow area of parameter space. The integration method should take
+advantage of that.
+
+Even in the concentrated area, the likelihood can be quite small, so the
+integration algorithm should track the logarithm of the likelihood, and
+also avoid underflow errors by other means.
+
+FD.io CSIT Implementation Specifics
+~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~
+
+The search receives min_rate and max_rate values, to avoid measurements
+at offered loads not supporeted by the traffic generator.
+
+The implemented tests cases use bidirectional traffic.
+The algorithm stores each rate as bidirectional rate (internally,
+the algorithm is agnostic to flows and directions,
+it only cares about overall counts of packets sent and packets lost),
+but debug output from traffic generator lists unidirectional values.
+
+Measurement delay
+-----------------
+
+In a sample implemenation in FD.io CSIT project, there is roughly 0.5
+second delay between trials due to restrictons imposed by packet traffic
+generator in use (T-Rex).
+
+As measurements results come in, posterior distribution computation takes
+more time (per sample), although there is a considerable constant part
+(mostly for inverting the fitting functions).
+
+Also, the integrator needs a fair amount of samples to reach the region
+the posterior distribution is concentrated at.
+
+And of course, speed of the integrator depends on computing power
+of the CPU the algorithm is able to use.
+
+All those timing related effects are addressed by arithmetically increasing
+trial durations with configurable coefficients
+(currently 10.2 seconds for the first trial,
+each subsequent trial being 0.2 second longer).
+
+Rounding errors and underflows
+------------------------------
+
+In order to avoid them, the current implementation tracks natural logarithm
+(instead of the original quantity) for any quantity which is never negative.
+Logarithm of zero is minus infinity (not supported by Python),
+so special value "None" is used instead.
+Specific functions for frequent operations
+(such as "logarithm of sum of exponentials")
+are defined to handle None correctly.
+
+Fitting functions
+-----------------
+
+Current implementation uses two fitting functions.
+In general, their estimates for critical rate differ,
+which adds a simple source of systematic error,
+on top of randomness error reported by integrator.
+Otherwise the reported stdev of critical rate estimate
+is unrealistically low.
+
+Both functions are not only increasing, but convex
+(meaning the rate of increase is also increasing).
+
+As `primitive function`_ to any positive function is an increasing function,
+and primitive function to any increasing function is convex function;
+both fitting functions were constructed as double primitive function
+to a positive function (even though the intermediate increasing function
+is easier to describe).
+
+As not any function is integrable, some more realistic functions
+(especially with respect to behavior at very small offered loads)
+are not easily available.
+
+Both fitting functions have a "central point" and a "spread",
+varied by simply shifting and scaling (in x-axis, the offered load direction)
+the function to be doubly integrated.
+Scaling in y-axis (the loss rate direction) is fixed by the requirement of
+transfer rate staying nearly constant in very high offered loads.
+
+In both fitting functions (as they are a double primitive function
+to a symmetric function), the "central point" turns out
+to be equal to the aforementioned limiting transfer rate,
+so the fitting function parameter is named "mrr",
+the same quantity our Maximum Receive Rate tests are designed to measure.
+
+Both fitting functions return logarithm of loss rate,
+to avoid rounding errors and underflows.
+Parameters and offered load are not given as logarithms,
+as they are not expected to be extreme,
+and the formulas are simpler that way.
+
+Both fitting functions have several mathematically equivalent formulas,
+each can lead to an overflow or underflow in different places.
+Overflows can be eliminated by using different exact formulas
+for different argument ranges.
+Underflows can be avoided by using approximate formulas
+in affected argument ranges, such ranges have their own formulas to compute.
+At the end, both fitting function implementations
+contain multiple "if" branches, discontinuities are a possibility
+at range boundaries.
+
+Offered load for next trial measurement is the average of critical rate estimate.
+During each measurement, two estimates are computed,
+even though only one (in alternating order) is used for next offered load.
+
+Stretch function
+________________
+
+The original function (before applying logarithm) is primitive function
+to `logistic function`_.
+The name "stretch" is used for related function
+in context of neural networks with sigmoid activation function.
+
+Erf function
+____________
+
+The original function is double primitive function to `Gaussian function`_.
+The name "erf" comes from error function, the first primitive to Gaussian.
+
+Prior distributions
+-------------------
+
+The numeric integrator expects all the parameters to be distributed
+(independently and) uniformly on an interval (-1, 1).
+
+As both "mrr" and "spread" parameters are positive and not not dimensionless,
+a transformation is needed. Dimentionality is inherited from max_rate value.
+
+The "mrr" parameter follows a `Lomax distribution`_
+with alpha equal to one, but shifted so that mrr is always greater than 1
+packet per second.
+
+The "stretch" parameter is generated simply as the "mrr" value
+raised to a random power between zero and one;
+thus it follows a `reciprocal distribution`_.
+
+Integrator
+----------
+
+After few measurements, the posterior distribution of fitting function
+arguments gets quite concentrated into a small area.
+The integrator is using `Monte Carlo`_ with `importance sampling`_
+where the biased distribution is `bivariate Gaussian`_ distribution,
+with deliberately larger variance.
+If the generated sample falls outside (-1, 1) interval,
+another sample is generated.
+
+The center and the variance for the biased distribution has three sources.
+First is a prior information. After enough samples are generated,
+the biased distribution is constructed from a mixture of two sources.
+Top 12 most weight samples, and all samples (the mix ratio is computed
+from the relative weights of the two populations).
+When integration (run along a particular measurement) is finished,
+the mixture bias distribution is used as the prior information
+for the next integration.
+
+This combination showed the best behavior, as the integrator usually follows
+two phases. First phase (where the top 12 samples are dominating)
+is mainly important for locating the new area the posterior distribution
+is concentrated at. The second phase (dominated by whole sample population)
+is actually relevant for the critical rate estimation.
+
+Caveats
+-------
+
+Current implementation does not constrict the critical rate
+(as computed for every sample) to the min_rate, max_rate interval.
+
+Earlier implementations were targeting loss rate (as opposed to loss ratio).
+The chosen fitting functions do not even allow arbitrarily low loss ratios,
+especially if the "spread" value is high enough (relative to "mrr" value).
+Internal loss rate target is computed from given loss ratio
+using the current trial offered load, which increases search instability
+if measurements with surprisingly high loss count appear.
+
+As high loss count measurements add many bits of information,
+they need a large amount of small loss count measurements to balance them,
+making the algorithm converge quite slowly.
+
+Some systems evidently do not follow the assumption of repeated measurements
+having the same average loss rate (when offered load is the same).
+The idea of estimating the trend is not implemented at all,
+as the observed trends have varied characteristics.
+
+Probably, using a more realistic fitting functions
+will give better estimates than trend analysis.
+
+.. TODO: Add a 1901 result section when results are available.
+
+.. TODO: Add a graph of time evolution when 1901 run is available.
+
+.. _plrsearch draft: https://tools.ietf.org/html/draft-vpolak-bmwg-plrsearch-00
+.. _RFC 2544: https://tools.ietf.org/html/rfc2544
+.. _Bayesian inference: https://en.wikipedia.org/wiki/Bayesian_statistics
+.. _Poisson distribution: https://en.wikipedia.org/wiki/Poisson_distribution
+.. _Binomial distribution: https://en.wikipedia.org/wiki/Binomial_distribution
+.. _primitive function: https://en.wikipedia.org/wiki/Antiderivative
+.. _logistic function: https://en.wikipedia.org/wiki/Logistic_function
+.. _Gaussian function: https://en.wikipedia.org/wiki/Gaussian_function
+.. _Lomax distribution: https://en.wikipedia.org/wiki/Lomax_distribution
+.. _reciprocal distribution: https://en.wikipedia.org/wiki/Reciprocal_distribution
+.. _Monte Carlo: https://en.wikipedia.org/wiki/Monte_Carlo_integration
+.. _importance sampling: https://en.wikipedia.org/wiki/Importance_sampling
+.. _bivariate Gaussian: https://en.wikipedia.org/wiki/Multivariate_normal_distribution