After a lot of further tinkering, seemingly arriving at a
somewhat satisfactory solution for the layout and arrangement of
test definitions and especially the table for measurement series.
While the complete setup remains fragile indeed, and complexity is more
hidden than reduced — the pragmatic compromise established yesterday
at least allows to reduce the amount of boilerplate in the test or
measurement setup to make the actual specifics stand out clearly.
----
As an aside, the usage of the `DataFile` type imported from Yoshimi-test
recently was re-shaped more towards a generic handling of tabular data with
CSV storage option; thus renaming the type now into `DataTable`.
Persistent storage is now just one option, while another usage pattern
compounds observation data into table rows, which are then directly
rendered into a CSV string, e.g. for visualisation as Gnuplot graph.
- `forElse` belongs to the metaprogramming utils
- have a CSVLine, which is a string with custom appending mechanism
- this in turn allows CSVData to accept arbitrary sized tuples,
by rendering them into CSVLine
MatchSeq was imported recently from the Yoshimi-testsuite,
as supporting helper for the CSV table component.
Actually this is just a thin wrapper on top of std::regex_iterator,
which in turn has properties and behaviour very similar to Lumiera's
»Forward Iterator« concept (in fact, it was a source of inspiration to
generalise such a pattern).
So this is an obvious round out and cleanup, as it requires just some
minor additions and adjustments to allow processing a sequence of matches
through a for-loop or some elaborate pipelining setup.
showDecimal -> decimal10 (maximal precision to survive round-trip through decimal representation=
showComplete -> max_decimal10 (enough decimal places to capture each possible distinct floating-point value)
Use these new functions to rewrite the format4csv() helper
Relying on random numbers for verification and measurements is known to be problematic.
At some point we are bound to control the seed values -- and in the actual
application usage we want to record sequence seeding in the event log.
Some initial thoughts regarding this intricate topic.
* a low-ceremony drop-in replacement for rand() is required
* we want the ability to pick-up and control each and every usage eventually
* however, some usages explicitly require true randomness
* the ability to use separate streams of random-number generation is desirable
- reformat in Lumieara-GNU style
- use the Lumiera exceptions
- use Lumiera format-string frontend
- use lib/util
NOTE: I am the original author of the code introduced here,
and thus I can re-license it under GPL 2+
[http://yoshimi.sourceforge.net/ Yoshimi] is a software sound synthesizer,
derived from `ZynAddSubFx` and developed by an OpenSource community.
The Repository [https://github.com/Ichthyostega/yoshimi-test/ Yoshimi-test]
is used by the Yoshimi developers to maintain a suite of automated
acceptance tests for the Yoshimi application.
This task involves watching execution times to detect long-term performance trends,
which in turn requires to maintain time-series data in CSV files and to perfrom some
simple statistic calculations, including linear regression. Requiring any external
statistics package as dependency was not deemed adequate for such a simple task,
and thus a set of self-contained helper functions was created as a byproduct.
This task attaches an excerpt of the Yoshimi-test history with those helpers.