# Display SWISH server statistics
This page examines the performance and health of the SWISH server. Most of the statistics are gathered by `lib/swish_debug`, which is by default loaded into http://cplint.lamping.unife.it but must be explicitly loaded into your own SWISH server. Part of the statistics are based on reading the Linux =|/proc|= file system and thus only function on Linux.
The first step is easy, showing the overall statistics of the server.
statistics.
## Historical performance statistics
The charts below render historical performance characteristics of the server. Please open the
program below for a description of chart/3.
:- use_rendering(c3).
%% chart(+Period, +Keys, -Chart) is det.
%
% Compute a Chart for the given period combining graphs for the given Keys.
% Defined values for Period are:
% - `minute`: the last 60 1 second measurements
% - `hour`: the last 60 1 minute averages
% - `day`: the last 24 1 hour averages
% - `week`: the last 7 1 day averages
% - `year`: the last 52 1 week averages
% Defines keys are:
% - `cpu`: Total process CPU time in seconds
% - `d_cpu`: Differential CPU time (% CPU)
% - `pengines`: Total number of living Pengines
% - `d_pengines_created`: Pengines create rate (per second)
% - `rss`: Resident set size in bytes
% - `stack`: Total amount of memory allocated for Prolog stacks in bytes
% - `heap`: `rss - stack`. This is a rough estimate of the memory used
% for the program, which should stay bounded if the server is free of
% leaks. Note that it can still grow significantly and can be temporarily
% high if user applications use the dynamic database.
% - `rss_mb`, `stack_mb`, `heap_mb` are the above divided by 1024^2.
chart(PeriodS, Keys, Chart) :-
atom_string(Period, PeriodS),
swish_stats(Period, Dicts0),
maplist(add_heap_mb, Dicts0, Dicts1),
maplist(rss_mb, Dicts1, Dicts2),
maplist(free_mb, Dicts2, Dicts3),
maplist(stack_mb, Dicts3, Dicts4),
maplist(fix_date, Dicts4, Dicts),
dicts_slice([time|Keys], Dicts, LastFirstRows),
reverse(LastFirstRows, Rows),
period_format(Period, DateFormat),
Chart = c3{data:_{x:time, xFormat:null, rows:Rows},
axis:_{x:_{type: timeseries,
tick: _{format: DateFormat,
rotate: 90,
multiline: false}}}}.
period_format(minute, '%M:%S').
period_format(hour, '%H:%M').
period_format(day, '%m-%d %H:%M').
period_format(week, '%Y-%m-%d %H:00').
period_format(year, '%Y-%m-%d').
add_heap_mb(Stat0, Stat) :-
Heap is Stat0.get(heap) / (1024^2), !,
put_dict(heap_mb, Stat0, Heap, Stat).
add_heap_mb(Stat0, Stat) :-
Heap is ( Stat0.get(rss) -
Stat0.get(stack) -
Stat0.get(fordblks)
) / (1024^2), !,
put_dict(heap_mb, Stat0, Heap, Stat).
add_heap_mb(Stat0, Stat) :-
Heap is ( Stat0.get(rss) -
Stat0.get(stack)
) / (1024^2), !,
put_dict(heap_mb, Stat0, Heap, Stat).
add_heap_mb(Stat, Stat).
rss_mb(Stat0, Stat) :-
Gb is Stat0.get(rss)/(1024**2), !,
put_dict(rss_mb, Stat0, Gb, Stat).
rss_mb(Stat, Stat).
free_mb(Stat0, Stat) :-
Gb is Stat0.get(fordblks)/(1024**2), !,
put_dict(free_mb, Stat0, Gb, Stat).
free_mb(Stat, Stat).
stack_mb(Stat0, Stat) :-
Gb is Stat0.get(stack)/(1024**2), !,
put_dict(stack_mb, Stat0, Gb, Stat).
stack_mb(Stat, Stat).
fix_date(Stat0, Stat) :-
Time is Stat0.time * 1000,
put_dict(time, Stat0, Time, Stat).
The number of Pegines denotes the number of actively executing queries.
These queries may be sleeping while waiting for input, a debugger command
or the user asking for more answers. Note that the number of Pengines is
sampled and short-lived Pengines does not appear in this chart.
Threads are used as HTTP workers, pengines and some administrative tasks.
Visitors is the number of open websockets, which reflects the number of browser
windows watching this page.
rss is the total (resident) memory usage as reported by Linux. stack is the memory
occupied by all Prolog stacks. heap is an approximation of the memory used for the
Prolog program space, computed as rss - stack - free. This is incorrect for two reasons.
It ignores the C-stacks and the not-yet-committed memory of the Prolog stacks
is not part of rss. free is memory that is freed but not yet reused as reported
by GNU malinfo()
as fordblks. Note that fordblks is a 32-bit value. The implementation heuristically
guesses how many times the value wrapped around and corrects for this.
## Health statistics
The statistics below assesses the number of *Pengines* (actively executing queries from users) and the *highlight states*, the number of server-side mirrors we have from client's source code used to compute the semantically enriched tokens. If such states are not explicitly invalidated by the client, they are removed after having not been accessed for one hour. The *stale modules* count refers to temporary modules that are not associated to a Pengine, nor to a highlight state and probably indicate a leak.
The two queries below extract information about stale modules and threads that have died. These are used to help debugging related leaks.