The helper developed thus far produces a sequence of
weight factors per level, which could then be multiplied
with an actual delay base time to produce a concrete schedule.
These calculations, while simple, are difficult to understand;
recommended to use the values tabulated in this test together
with a `graphviz` rendering of the node graph (🠲 `printTopologyDOT()`)
The intention is to establish a theoretical limit for the expense,
given some degree of concurrency. In reality, the expense should always
be greater, since the time is not just split by the number of cores;
rather we need to chain up existing jobs of various weight on the available
cores (which is a special case of the box packing problem).
With this formula, an ideal weight factor can be determined for each level,
and then summing up the sequence of levels gives us a guess for a sensible
timing for the overall scheduler
...so IterExplorer got yet another processing layer,
which uses the grouping mechanics developed yesterday,
but is freely configurable through λ-Functions.
At actual usage sit in TestChainLoad, now only the actual
aggregation computation must be supplied, and follow-up computations
can now be chained up easily as further transformation layers.
Yesterday I've written a simple loop-based implementation of
a grouping aggregation to count the node weights per level.
Unfortunately it turns out we'll use several flavours of this
and we'd have to chain up postprocessing -- thus from a usage perspective
it would be better to have the same functionality packaged as interator pipeline.
This turns out to be surprisingly tricky and there is no suitable library
function available, which means I'll have to write one myself.
This changeset is the first step into this direction: reformulate
the simple for-loop into a demand-driven grouping iterator
...the idea is to use the sum of node weights per level
to create a schedule, which more closely reflects the distribution
of actual computation time. Hopefully such a schedule can then be
squeezed or stretched by a time factor to find out a ''breaking point'',
at which the Scheduler is no longer able to keep up.
In-depth investigation and reasoning highlighted another problem,
which could lead to memory corruption in rare cases; in the end
I found a solution by caching the ''address'' of the current Epoch
and re-validating this address on each Epoch-overflow.
After some difficulties getting any reliable measurement for a Release-build,
it turned out that this solution even ''improves performance by 22%''
Remark-1: the static blockFlow::Config prevents simple measurements by
just recompiling one translation unit; it is necessary to build the
relevant parts of Vault-layer with optimisation to get reliable numbers
Remark-2: performing a full non-DEBUG build highlighted two missing
header-inclusions to allow for the necessary template specialisations.
...discovered by during investigation of latest Scheduler failures.
The root of the problems is that block overflow can potentially trigger
expansion of the allocation pool. Under some circumstances, this on-the fly
allocation requires a rotation of index slots, thereby invalidating
existing iterators.
While such behaviour is not uncommon with storage data structures (see std::vector),
in this case it turns out problematic because due to performance considerations,
a usage pattern emerged which exploits re-using existing storage »Slots« with known
deadline. This optimisation seems to have significant leverage on the
planning jobs, which happen to allocated and arrange a whole strike of
Activities with similar deadlines.
One of these problem situations can easily be fixed, since it is triggered
through the iterator itself, using a delegate function to request a storage expansion,
at which point the iterator is able to re-link and fix its internal index.
This solution also has no tangible performance implications in optimised code.
Unfortunately there remains one obscure corner case where such an pool expansion
could also have invalidated other iterators, which are then used later to
attach dependency relations; even a partial fix for that problem seems
to cause considerable performance cost of about -14% in optimised code.
- now there can not be any direct dispatch anymore when entering events
- thus there is no decision logic at entrance anymore
- rather the work-function implementation moved down into Layer-2
- so add a unit-test like coverage there (integration in SchedulerService_test)
This amounts to a rather massive refactoring, prompted by the enduring problems
observed when pressing the scheduler. All the various glitches and (fixed) crashes
are related to the way how planning-jobs enter the schedule items,
which is also closely tied to the difficulties getting the locking
for planning-jobs correct.
The solution pursued hereby is to reorder the main avenues into the
scheduler implementation. There is now a streamlined main entrance,
which **always** enqueues only, allowing to omit most checks and
coordination. On the other hand, the complete coordination and dispatch
of the work capacity is now shifted down into the SchedulerCommutator,
thereby linking all coordination and access control close together
into a single implementation facility.
If this works out as intended
- several repeated checks on the Grooming-Token could be omitted (performance)
- the planning-job would no longer be able to loose / drop the Token,
thereby running enforcedly single-threaded (as was the original intention)
- since all planning effectively originates from planning-jobs, this
would allow to omit many safety barriers and complexities at the
scheduler entrance avenue, since now all entries just go into the queue.
WIP: tests pass compiler, but must be adapted / reworked
...whenever the planning falls behind schedule, it can happen that
the planner-worker immediately dispatches its own jobs; while the calculation
is broken anyway in this situation, especially this call scheme leads to
dropping the Grooming-Token prior to the calculation dispatched directly.
Since the dependency relation can only be established after creating
both predecessor and successor schedules, the corresponding allocation
of the NOTIFY-Activity is not protected against concurrent access,
which probably leads to the assertion failure due to corruption of
the allocator's internal data structures...
- fix mistake in schdule time for planning chunks (must use start, not end of chunk)
- allow to configure the heuristics for pre-roll (time reserved for planning a node)
...observing multiple failures, which seem to be interconnected
- the test-setup with the planning chunk pre-roll is insufficient
- basically it is not possible to perform further concurrent planning,
without getting behind the actual schedule; at least in the setup
with DUMP print statements (which slowdown everything)
- muliple chained re-entrant calls into the planning function can result
- the **ASSERTION in the Allocator** was triggered again
- the log+stacktrace indicate that there **is still a Gap**
in the logic to protect the allocations via Grooming-Token
...causing the system to freeze due to excess memory allocation.
Fortunately it turned out this was not an error in the Scheduler core
or memory manager, but rather a sloppiness in the test scaffolding.
However, this incident highlights that the memory manager lacks some
sanity checks to prevent outright nonsensical allocation requests.
Moreover it became clear again that the allocation happens ''already before''
entering the Scheduler — and thus the existing sanity check comes too late.
Now I've used the same reasoning also for additional checks in the allocator,
limiting the Epoch increment to 3000 and the total memory allocation to 8GiB
Talking of Gibitbytes...
indeed we could use a shorthand notation for that purpose...
The scheduler implementation uses a randomised redistribution of
work capacity, taking into account the current ''scale'' of next pending event.
While this works surprisingly well overall, sometimes, in very tight and dense scheules
the workers seem to be spread somewhat too arbitrarily. Thus, if the scheduler
is working through a zone with several events as close as 1ms, often it takes
up to 3ms for another worker to show up.
With this change, the scattering range in the ''near zone'' (50µs ... 5ms)
is made dynamic, and now flexibly depends on current head time.
The closer the next event, the more tightly focussed will be the
capacity redistribution, if capacity becomes available just some 100µs
ahead of next demand, it is no longer „sent away“, but rather relocated
by roughly the same distance behind the next event.
while my basic assessment is still that contention will not play a significant
role given the expected real world usage scenario — when testing with
tighter schedule and rather short jobs (500µs), some phases of massive contention
can be observed, leading to significant slow-down of the test.
The major problem seems to be that extended phases of contention will
effectively cause several workers to remain in an active spinning-loop for
multiple microseconds, while also permanently reading the atomic lock.
Thus an adaptive scheme is introduced: after some repeated contention events,
workers now throttle down by themselves, with polling delays increased
with exponential stepping up to 2ms. This turns out to be surprisingly
effective and completely removes any observed delays in the test setup.
...turns out to be a secondary problem (but must be fixed non the less).
Since the planning-job no longer drops the token now, the workers
have to wait; since they are waiting actively and contending on the token,
a significant slowdown can happen.
Sometimes the planning job gets behind its own scheduler and thus
enters dispatch, in which case it drops the GoomingToken, causing
an Assertion failure on return.
The **actual problem** however is the slowdown due to active spinning
Turns out that we need to implemented fine grained and explicit handling logic
to ensure that Activity planning only ever happens protected by the Grooming-Token.
This is in accordance to the original design, which dictates that all management tasks
must be done in »management mode«, which can only be entered by a single thread at a time.
The underlying assumption is that the effort for management work is dwarfed in comparison
to any media calculation work.
However, in
5c6354882d
...I discovered an insidious border condition, an in an attempt to fix it,
I broke that fundamental assumpton. The problem arises from the fact that we
do want to expose a *public API* of the Scheduler. Even while this is only used
to ''seed'' a calculation stream, because any further planning- and management work
will be performed by the workers themselves (this is a design decision, we do not
employ a "scheduler thread")
Anyway, since the Scheduler API ''is'' public, ''someone from the outside'' could
invoke those functions, and — unaware of any Scheduler internals — will
automatically acquire the Grooming-Token, yet never release it,
leading to deadlock.
So we need a dedicated solution, which is hereby implemented as a
scoped guard: in the standard case, the caller is a management-job and
thus already holds the token (and nothing must be done). But in the
rare case of an »outsider«, this guard now ''transparently'' acquires
the token (possibly with a blocking wait) and ''drops it when leaving scope''
In the course of the last refactorings, a slight change in processing
order was introduced, which turned out to improve parallelisation considerably.
- Some further implementation logic can be relegated into the ActivationEvent
- the handling of start times now also incldues a check for sake of symmetry
- document the semantics change: λ-post no longer dispatches directly
The last round of refactorings yielded significant improvements
- parallelisation now works as expected
- processing progresses closer to the schedule
- run time was reduced
The processing load for this test is tuned in a way to overload the
scheduler massively at the end -- the result must be correct non the less.
There was one notable glitch with an assertion failure from the memory manager.
Hopefully I can reproduce this by pressing and overloading the Scheduler more...
The rework from yesterday turned out to be effective ... unfortunately
a bit to much: since now late follow-up notifications take precedence,
a single worker tends to process the complete chain depth-first, because
the first chain will be followed and processed, even before the worker
was able to post the tasks for the other branches. Thus this single
worker is the only one to get a chance to proceed.
After some consideration, I am now leaning towards a fundamental change,
instead of just fixing some unfavourable behaviour pattern: while the
language semantics remains the same, the scheduler should no longer
directly dispatch into the next chain **from λ-post**. That is, whenever
a POST / NOTIFY is issued from the Activity-chain, the scheduler goes
through prioritisation.
This has further ramifications: we do not need a self-inhibition mechanism
any more (since now NOTIFY picks up the schedule time of the target).
With these changes, processing seems to proceed more smoothly,
albeit still with lots of contention on the Grooming token,
at least in the example structure tested here.
While the recent refactoring...
206c67cc
...was a step into the right direction, it pushed too hard,
overlooking the requirement to protect the scheduler contents
and thus all of the Activity-chains against concurrent modification.
Moreover, the recent solution still seems not quite orthogonal.
Thus the handling of notifications was thoroughly reworked:
- the explicit "double-dispatch" was removed, since actual usage
of the language indicates that we only need notifications to
Gate (and Hook), but not to any other conceivable Activity.
- thus it seems unnecessary to turn "notification" into some kind
of secondary work mode. Rather, it is folded as special case
into the regular dispatch.
This leads to new processing rules:
- a POST goes into λ-post (obviously... that's its meaning)
- a NOTIFY now passes its *target* into λ-post
- λ-post invokes ''dispatch''
- and **dispatching a Gate now implies to notify the Gate**
This greatly simplifies the »state machine« in the Activity-Language,
but also incurs some limitations (which seems adequate, since it is
now clear that we do not ''schedule'' or ''dispatch'' arbitrary
Activities — rather we'll do this only with POST and NOTIFY,
and all further processing happens by passing activation
along the chain, without involving the Scheduler)
use a feature of the Activity-Language prepared for this purpose:
self-Inhibition of the Chain. This prevents a prerequisite-NOTIFY
to trigger a complete chain of available tasks, before these tasks
have actually reached their nominal scheduling time.
This has the effect to align the computations much more strictly
with the defined schedule
The main (test) thread is kept in a blocking wait until the
planned schedule is completed. If however the schedule overruns,
the wake-up job could just be triggered prematurely.
This can easily be prevented by adding a dependency from the last
computation job to the wake-up job. If the computation somehow
flounders, the SAFETY_TIMEOUT (5s) will eventually raise
an exception to let the test fail cleanly (shutting down
the Scheduler automatically)
...it seems impossible to solve this conundrum other than by
opening a path to override a contextual deadline setting from
within the core Activity-Language logic.
This will be used in two cases
- when processing a explicitly coded POST (using deadline from the POST)
- after successfully opening a Gate by NOTIFY (using deadline from Gate)
All other cases can now supply Time::NEVER, thereby indicating that
the processing layer shall use contextual information (intersection
of the time intervals)
...this is an interesting test failure, which highlights inconsistencies
with handling of deadlines when processing follow-up from NOTIFY-triggers
There was also some fuzziness related to the ''meaning'' of λ-post,
leading to at least one superfluous POST invocation for each propagation;
fixing this does not solve the problem yet removes unnecessary overhead
and lock-contention
...playing around with the graph for the Scheduler integration test
...single threaded run time seemed to behave irregular
...but in fact it is very close to what can be expected
based on an ''averaged node weight''
Fortunately its very simple to add that into the existing node statistics
Basically this is all done and settled already: this is the `usageExample()`
from `TestChainLoadTest`. However, the focus is slightly different here:
We want a demonstration that the Scheduler can work flawlessly through
a massive load. Thus the plan is to use much more challenging parameters,
and then lean back and watch what happens....
...which turns out to be due to the DUMP-Statements,
which seem to create quite some contention on their own.
Test cases with very tight schedule will slip away then;
without print statement everything is GREEN now
this bug was there since the first draft, yet was covered
by another bug with the start-up logic.
And this latter one was fixed recently...
fa8622805
As a result, even when the COMPUTATION_CAPACITY is set to 0
still a single worker boots up (which should not be the case)
Solution: we do not need to "safeguard" against rounding errors,
since this is an internal implementation function, it is assumed
that the caller knows about its limitations...
* added benchmark over synchronous execution as point of reference
* verified running times and execution pattern
* Scheduler **behaves as expected** for this example
- Generally speaking, the calibration uses current baseline settings;
- There are now two different load generation methods, thus both must be calibrated
- Performance contains some socked and non-linear effects, thus calibration
should be done close to the work point, which can be achieved by incremental
calibration until the error is < 5%
Interestingly, longer time-base values run slightly faster than predicted,
which is consistent with the expectation (socket cost). And using a larger
memory block increases time values, which is also plausible, since
cache effects will be diminishing
..initial gauging is a tricky subject,
since existing computer's performance spans a wide scale
Allowing
- pre calibration -98% .. +190%
- single run ±20%
- benchmark ±5%
...which can be deliberately attached (or not attached) to the
individual node invocation functor, allowing to study the effect
of actual load vs. zero-load and worker contention
Some test-runs performed excitingly smooth,
but in one case the processing was was drastically delayed,
due to heavy contention. The relevance of this incident is not clear yet,
since this test run uses a rather atypical load with very short actual work jobs.
Anyway, the dump-logs are documented with this commit.
Within Chain-Load, the infrastructure to add this crucial feature
is minimal: each node gets a `weight` parameter, which is assigned
using another RandomDraw-Rule (by default `weight==0`).
The actual computation load will be developed as a separate component
and tied in from the node calculation job functor.
...during development of the Chain-Load, it became clear that we'll often
need a collection of small trees rather than one huge graph. Thus a rule
for pruning nodes and finishing graphs was added. This has the consequence
that there might now be several exit nodes scattered all over the graph;
we still want one single global hash value to verify computations,
thus those exit hashes must now be picked up from the nodes and
combined into a single value.
All existing hash values hard coded into tests must be updated
...with this change, processing is ''ahead of schedule'' from the beginning,
which has the nice side effect that the problematic contention situation
with these very short computation jobs can not arise, and most of the schedule
is processed by a single worker.
Processing pattern is now pretty much as expected
This is a trick to get much better scheduling and timing guesses.
Instead of targeting a specific level, rather a fixed number of nodes
is processed in each chunk, yet still always processing complete levels.
The final level number to expect can be retrieved from the chain-load graph.
With this refactoring, we can now schedule a wake-up job precisely
after the expected completion of the last level
Scheduling a wake-up job behind the end of the planned schedule did the trick.
Sometimes there is ''strong contention'' immediately after full provision of the WorkForce,
but this seems to be as expected, since the »Jobs« currently used have no
actually relevant run time on their own. It is even more surprising that
the Capacity-control logic is able to cope with this situation in a matter
of just some milliseconds, bringing the average Lag at ~ 300µs
Invent a special JobFunctor...
- can be created / bound from a λ
- self-manages its storage on the heap
- can be invoked once, then discards itself
Intention is to pass such one-time actions to the Scheduler
to cause some ad-hoc transitions tied to curren circumstances;
a notable example will be the callback after load-test completion.
In the first draft version, a blocked Gate was handled by
»polling« the Gate regularly by scheduling a re-invocation
repeatedly into the future (by a stepping defined through
ExecutionCtx::getWaitDelay()).
Yet the further development of the Activity-Language indicates
that the ''Notification mechanism'' is sufficient to handle all
foreseeable aspects of dependency management. Consequently this
''Gate poling is no longer necessary,'' since on Notification
the Gate is automatically checked and the activation impulse
is immediately passed on; thus the re-scheduled check would
never get an opportunity actually to trigger the Gate; such
an active polling would only be necessary if the count down
latch in the Gate is changed by "external forces".
Moreover, the first Scheduler integration tests with TestChainLoad
indicate that the rescheduled polling can create a considerable
additional load when longer dependency chains miss one early
prerequisite, and this additional load (albeit processed
comparatively fast by the Scheduler) will be shifted along
needlessly for quite some time, until all of the activities
from the failed chain have passed their deadline. And what
is even more concerning, these useless checks have a tendency
to miss-focus the capacity management, as it seems there is
much work to do in a near horizon, which in fact may not be
the case altogether.
Thus the Gate implementation is now *changed to just SKIP*
when blocked. This helped to drastically improve the behaviour
of the Scheduler immediately after start-up -- further observation
indicated another adjustment: the first Tick-duty-cycle is now
shortened, because (after the additional "noise" from gate-rescheduling
was removed), the newly scaled-up work capacity has the tendency
to focus in the time horizon directly behind the first jobs added
to the timeline, which typically is now the first »Tick«.
ð¡ this leads to a recommendation, to arrange the first job-planning
chunk in such a way that the first actual work jobs appear in the area
between 5ms and 10ms after triggering the Scheduler start-up.Scheduler¡
Introducing a fixed pre-delay on each new Calc-Streem seemed like an obvious remedy,
yet on closer investigation it turned out that the start-up logic as such was contradictory,
which was only uncovered by some rather special schedule patterns.
After fixing the logic deficiencies, Scheduler starts up as intended
and the probabilistic capacity-control seems to work as designed.
Thus no need to introduce an artificial delay at begin, even while
this implies that typically the first round of job-planning will be
performed synchronous, in the invoking thread (which may be surprising,
but is completely within the limits of the architecture; we do not
employ specifically configured threads and planning should be done
in short chunks, thus the first chunk can well be done by the caller)
The first complete integration test with Chain-Load
highlighted some difficulties with the overall load regulation:
- it works well in the standard case (but is possibly to eager to scale up)
- the scale-up sometimes needs several cycles to get "off the ground"
- when the first job is dispatched immediately instead of going
through the queue, the scheduler fails to boot up
... so this (finally) is the missing cornerstone
... traverse the calculation graph and generate render jobs
... provide a chunk-wise pre-planning of the next batch
... use a future to block the (test) thread until completed
- test setup without actual scheduler
- wire the callbacks such to verify
+ all nodes are touched
+ levels are processed to completion
+ the planning chunk stops at the expected level
+ all node dependencies are properly reported through the callbacks
- decided to abstract the scheduler invocations as λ
- so this functor contains the bare loop logic
Investigation regarding hash-framework:
It turns out that boost::hash uses a different hash_combine,
than what we have extracted/duplicated in lib/hash-value.hpp
(either this was a mistake, or boost::hash did use this weaker
function at that time and supplied a dedicated 64bit implementation later)
Anyway, should use boost::hash for the time being
maybe also fix the duplicated impl in lib/hash-value.hpp
- use a ''special encoding'' to marshal the specific coordinates for this test setup
- use a fixed Frame-Grid to represent the ''time level''
- invoke hash calculation through a specialised JobFunctor subclass
The number of nodes was just defined as template argument
to get a cheap implementation through std::array...
But actually this number of nodes is ''not a characteristics of the type;''
we'd end up with a distinct JobFunctor type for each different test size,
which is plain nonsensical. Usage analysis reveals, now that the implementation
is ''basically complete,'' that all of the topology generation and statistic
calculation code does not integrate deeply with the node storage, but
rather just iterates over all nodes and uses the ''first'' and ''last'' node.
This can actually be achieved very easy with a heap-allocated plain array,
relying on the magic of lib::IterExplorer for all iteration and transformation.
- use a dedicated context "dropped off" the TestChainLoad instance
- encode the node-idx into the InvocationInstanceID
- build an invocation- and a planning-job-functor
- let planning progress over an lib::UninitialisedStorage array
- plant the ActivityTerm instances into that array as Scheduling progresses
Introduced as remedy for a long standing sloppiness:
Using a `char[]` together with `reinterpret_cast` in storage management helpers
bears danger of placing objects with wrong alignment; moreover, there are increasing
risks that modern code optimisers miss the ''backdoor access'' and might apply too
aggressive rewritings.
With C++17, there is a standard conformant way to express such a usage scheme.
* `lib::UninitialisedStorage` can now be used in a situation (e.g. as in `ExtentFamily`)
where a complete block of storage is allocated once and then subsequently used
to plant objects one by one
* moreover, I went over the code base and adapted the most relevant usages of
''placement-new into buffer'' to also include the `std::launder()` marker
Since Chain-Load shall be used for performance testing of the scheduler,
we need a catalogue of realistic load patterns. This extended effort
started with some parameter configurations and developed various graph
shapes with different degree of connectivity and concurrency, ranging
from a stable sequence of very short chains to large and excessively
interconnected dependency networks.
Through introduction of a ''pruning rule'', it is possible
to create exit nodes in the middle of the graph. With increased
intensity of pruning, it is possible to ''choke off'' the generation
and terminate the graph; in such a case a new seed node is injected
automatically. By combination with seed rules, an equilibrium of
graph start and graph termination can be achieved.
Following this path, it should be possible to produce a pattern,
which is random but overall stable and well suited to simulate
a realistic processing load.
However, finding proper parameters turns out quite hard in practice,
since the behaviour is essentially contingent and most combinations
either lead to uninteresting trivial small graph chunks, or to
large, interconnected and exponentially expanding networks
... seeding happens at random points in the middle of the chain
... when combined with reduction, the resulting processing pattern
resembles the real processing pattern of media calcualtions
... special rule to generate a fixed expansion on each seed
... consecutive reductions join everything back into one chain
... can counterbalance expansions and reductions
...as it turns out, the solution embraced first was the cleanest way
to handle dynamic configuration of parameters; just it did not work
at that time, due to the reference binding problem in the Lambdas.
Meanwhile, the latter has been resolved by relying on the LazyInit
mechanism. Thus it is now possible to abandon the manipulation by
side effect and rather require the dynamic rule to return a
''pristine instance''.
With these adjustments, it is now possible to install a rule
which expands only for some kinds of nodes; this is used here
to crate a starting point for a **reduction rule** to kick in.
- present the weight centres relative to overall level count
- detect sub-graphs and add statistics per subgraph
- include an evaluation for ''all nodes''
- include number of levels and subgraphs
- iterate over all nodes and classify them
- group per level
- book in per level statistics into the Indicator records
- close global averages
...just coded, not yet tested...
The graph will be used to generate a computational load
for testing the Scheduler; thus we need to compute some
statistical indicators to characterise this load.
As starting point sum counts and averages will be aggregated,
accounting for particular characterisation of nodes per level.
It seams indicated to verify the generated connectivity
and the hash calculation and recalculation explicitly
at least for one example topology; choosing a topology
comprised of several sub-graphs, to also verify the
propagation of seed values to further start-nodes.
In order to avoid addressing nodes directly by index number,
those sub-graphs can be processed by ''grouping of nodes'';
all parts are congruent because topology is determined by
the node hashes and thus a regular pattern can be exploited.
To allow for easy processing of groups, I have developed a
simplistic grouping device within the IterExplorer framework.
- with the new pruning option, start-Nodes can now be anywhere
- introduce predicates to detect start-Nodes and exit-Nodes
- ensure each new seed node gets the global seed on graph construction
- provide functionality to re-propagate a seed and clear hashes
- provide functionality to recalculate the hashes over the graph
up to now, random values were completely determined by the
Node's hash, leading to completely symmetrical topology.
This is fine, but sometimes additional randomness is desirable,
while still keeping everything deterministic; the obvious solution
is to make the results optionally dependent on the invocation order,
which is simply to achieve with an additional state field. After some
tinkering, I decided to use the most simplistic solution, which is
just a multiplication with the state.
this is only a minor rearrangement in the Algorithm,
but allows to re-boot computation should node connectivity
go to zero. With current capabilities, this could not happen,
but I'm considering to add a »pruning« parameter to create the
possibility to generate multiple shorter chains instead of one
complete chain -- which more closely emulates reality for
Scheduler load patterns.
...so this was yet another digression, caused by the desire
somehow to salvage this problematic component design. Using a
DSL token fluently, while internally maintaining a complex and
totally open function based configuration is a bit of a stretch.
For context: I've engaged into writing a `LazyInit` helper component,
to resolve the inner contradiction between DSL use of `RandomDraw`
(implying value semantics) and the design of a processing pipeline,
which quite naturally leads to binding by reference into the enclosing
implementation.
In most cases, this change (to lazy on-demand initialisation) should be
transparent for the complete implementation code in `RandomDraw` -- with
one notable exception: when configuring an elaborate pipeline, especially
with dynamic changes of the probability profile during the simulation run,
then then obviously there is the desire to use the existing processing
pipeline from the reconfiguration function (in fact it would be quite
hard to explain why and where this should be avoided). `LazyInit` breaks
this usage scenario, since -- at the time the reconfiguration runs --
now the object is not initialised at all, but holds a »Trojan« functor,
which will trigger initialisation eventually.
After some headaches and grievances (why am I engaging into such an
elaborate solution for such an accidental and marginal topic...),
unfortunately it occurred to me that even this problem can be fixed,
with yet some further "minimal" adjustments to the scheme: the LazyInit
mechanism ''just needs to ensure'' that the init-functor ''sees the
same environment as in eager init'' -- that is, it must clear out the
»Trojan« first, and it ''could apply any previous pending init function''
fist. That is, with just a minimal change, we possibly build a chain
of init functors now, and apply them in given order, so each one
sees the state the previous one created -- as if this was just
direct eager object manipulation...
...this is a more realistic demo example, which mimics
some of the patterns present in RandomDraw. The test also
uses lambdas linking to the actual storage location, so that
the invocation would crash on a copy; LazyInit was invented
to safeguard against this, while still allowing leeway
during the initialisation phase in a DSL.
...oh my.
This is getting messy. I am way into danger territory now....
I've made a nifty cool design with automatically adapted functors;
yet at the end of the day, this does not bode well with a DSL usage,
where objects appear to be simple values from a users point of view.
- Helper function to find out of two objects are located
"close to each other" -- which can be used as heuristics
to distinguish heap vs. stack storage
- further investigation shows that libstdc++ applies the
small-object optimisation for functor up to »two slots«
in size -- but only if the copy-ctor is trivial. Thus
a lambda capturing a shared_ptr by value will *always*
be maintained in heap storage (and LazyInit must be
redesigned accordingly)...
- the verify_inlineStorage() unit test will now trigger
if some implementation does not apply small-object optimisation
under these minimal assumptions
...which is crucial for the solution pursued at the moment;
std::function is known to apply a small-object optimisation,
yet unfortunately there are no guarantees by the C++ standard
(it is only mandated that std::function handles a bare function
pointer without overhead)
Other people have investigated that behaviour already,
indicating that at least one additional »slot« of data
can be handled with embedded storage in all known implementations
(while libstdc++ seemingly imposes the strongest limitations)
https://stackoverflow.com/a/77202545/444796
This experiment in the unit-test shows that for my setup
(libstdc++ and GCC-8) only a lambda capturing a single pointer
is handled entirely embedded into the std::function; already
a lambda capturing a shared-ptr leads to overflow into heap
the RandomDraw rules developed last days are meant to be used
with user-provided λ-adapters; employing these in a context
of a DSL runs danger of producing dangling references.
Attempting to resolve this fundamental problem through
late-initialisation, and then locking the component into
a fixed memory location prior to actual usage. Driven by
the goal of a self-contained component, some advanced
trickery is required -- which again indicates better
to write a library component with adequate test coverage.
RandomDraw as a library component was extracted and (grossly) augmented
to cut down the complexity exposed to the user of TestChainLoad.
To control the generated topology, random-selected parameters
must be configured, defining a probability profile; while
this can be achieved with simple math, getting it correct
turned out surprisingly difficult.
...now using the reworked partial-application helper...
...bind to *this and then recursively re-invoke the adaptation process
...need also to copy-capture the previously existing mapping-function
first test seems to work now
Investigation in test setup reveals that the intended solution
for dynamic configuration of the RandomDraw can not possibly work.
The reason is: the processing function binds back into the object instance.
This implies that RandomDraw must be *non-copyable*.
So we have to go full circle.
We need a way to pass the current instance to the configuration function.
And the most obvious and clear way would be to pass it as function argument.
Which however requires to *partially apply* this function.
So -- again -- we have to resort to one of the functor utilities
written several years ago; and while doing so, we must modernise
these tools further, to support perfect forwarding and binding
of reference arguments.
- strive at complete branch coverage for the mapping function
- decide that the neutral value can deliberately lie outside
the value range, in which case the probability setting
controls the number of _value_ result incidents vs
neutral value result incidents.
- introduce a third path to define this case clearly
- implement the range setting Builder-API functions
- absorb boundrary and illegal cases
For sake of simplicity, since this whole exercise is a byproduct,
the mapping calculations are done in doubles. To get even distribution
of values and a good randomisation, it is thus necessary to break
down the size_t hash value in a first step (size_t can be 64bit
and random numbers would be subject to rounding errors otherwise)
The choice of this quantiser is tricky; it must be a power of two
to guarantee even distribution, and if chosen to close to the grid
of the result values, with lower probabilities we'd fail to cover
some of the possible result values. If chosen to large, then
of course we'd run danger of producing correlated numbers on
consecutive picks.
Attempting to use 4 bits of headroom above the log-2 of the
required value range. For example, 10-step values would use
a quantiser of 128, which looks like a good compromise.
The following tests will show how good this choice holds up.
The first step was to allow setting a minimum value,
which in theory could also be negative (at no point is the
code actually limited to unsigned values; this is rather
the default in practice).
But reconsidering this extensions, then you'd also want
the "neutral value" to be handled properly. Within context,
this means that the *probability* controls when values other
than the neutral value are produced; especially with p = 1.0
the neutral value shall not be produced at all
...since the Policy class now defines the function signature,
we can no longer assume that "input" is size_t. Rather, all
invocations must rely on the generic adaptaion scheme.
Getting this correct turns out rather tricky again;
best to rely on a generic function-composition.
Indeed I programmed such a helper several years ago,
with the caveat that at that time we used C++03 and
could not perfect-forward arguments. Today this problem
can be solved much more succinct using generic Lambdas.
to define this as a generic library component,
any reference to the actual data source moust be extracted
from the body of the implementation and supplied later
at usage site. In the actual case at hand the source
for randomness would be the node hash, and that is
absolutely an internal implementation detail.
The idea is to use some source of randomness to pick a
limited parameter value with controllable probability.
While the core of the implementation is nothing more
than some simple numeric adjustments, these turn out
to be rather intricate and obscure; the desire to
package these technicalities into a component
however necessitates to make invocations
at usage site self explanatory.
This might seem totally overblown -- but already the development
of this prototype showed me time and again, that it is warranted.
Because it is damn hard to get the probabilities and the mappings
to fixed output values correct.
After in-depth analysis, I decided completely to abandon the
initially chosen approach with the Cap helper, where the user
just specifies an upper and lower bound. While this seems
compellingly simple at start, it directly lures into writing
hard-to-understand code tied to the implementation logic.
With the changed approach, most code should get along rather with
auto myRule = Draw().probabilty(0.6).maxVal(4);
...which is obviously a thousand times more legible than
any kind of tricky modulus expressions with shifted bounds.
While the Cap-Helper introduced yesterday was already a step in the
right direction, I had considerable difficulties picking the correct
parameters for the upper/lower bounds and the divisor for random generation
so as to match an intended probability profile. Since this tool shall be
used for load testing, an easier to handle notation will both help
with focusing on the main tasks and later to document the test cases.
Thus engaging (again) into the DSL building game...
...start with putting the topology generator to work
- turns out it is still challenging to write the ctrl-rules
- and one example tree looked odd in the visualisation
- which (on investigation) indicated unsound behaviour
...this is basically harmless, but involves an integer wrap-around
in a variable not used under this conditions (toReduce), but also
a rather accidental and no very logical round-up of the topology.
With this fix, the code branch here is no longer overloaded with two
distinct concerns, which I consider an improvement
by default, a linear chain without any forking is generated,
and the result hash is computed by hash-chaining from the seed.
Verify proper connections and validate computed hash
..as can be expected, had do chase down some quite hairy problems,
especially since consumption of the fixed amount of nodes is not
directly linked to the ''beat'' of the main loop and thus boundary
conditions and exhausted storage can happen basically anywhere.
Used a simple expansion rule and got a nod graph,
which looks coherent in DOT visualisation.
writing a control-value rule for topology generation typically
involves some modulus and then arthmetic operations to map
only part of the value range to the expected output range.
These calculations are generic, noisy and error-prone.
Thus introduce a helper type, which allows the client just
to mark up the target range of the provided value to map and
transform to the actually expected result range, including some
slight margin to absorb rounding errors. Moreover, all calculations
done in double, to avoid the perils of unsigned-wrap-around.