Add cross-stripe intel sample verify job
[fio.git] / tools / hist / fio-histo-log-pctiles.py
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1#!/usr/bin/env python
2
3# module to parse fio histogram log files, not using pandas
4# runs in python v2 or v3
5# to get help with the CLI: $ python fio-histo-log-pctiles.py -h
6# this can be run standalone as a script but is callable
7# assumes all threads run for same time duration
8# assumes all threads are doing the same thing for the entire run
9
10# percentiles:
11# 0 - min latency
12# 50 - median
13# 100 - max latency
14
15# TO-DO:
16# separate read and write stats for randrw mixed workload
17# report average latency if needed
18# prove that it works (partially done with unit tests)
19
20# to run unit tests, set UNITTEST environment variable to anything
21# if you do this, don't pass normal CLI parameters to it
22# otherwise it runs the CLI
23
18c1783a 24import sys, os, math, copy, time
d8296fdd 25from copy import deepcopy
c670cb44 26import argparse
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27
28unittest2_imported = True
29try:
30 import unittest2
31except ImportError:
32 unittest2_imported = False
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33
34msec_per_sec = 1000
35nsec_per_usec = 1000
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36direction_read = 0
37direction_write = 1
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38
39class FioHistoLogExc(Exception):
40 pass
41
c670cb44 42# if there is an error, print message, and exit with error status
d8296fdd 43
c670cb44 44def myabort(msg):
d8296fdd 45 print('ERROR: ' + msg)
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46 sys.exit(1)
47
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48# convert histogram log file into a list of
49# (time_ms, direction, bsz, buckets) tuples where
50# - time_ms is the time in msec at which the log record was written
51# - direction is 0 (read) or 1 (write)
52# - bsz is block size (not used)
53# - buckets is a CSV list of counters that make up the histogram
54# caller decides if the expected number of counters are present
55
56
57def exception_suffix( record_num, pathname ):
58 return 'in histogram record %d file %s' % (record_num+1, pathname)
59
60# log file parser raises FioHistoLogExc exceptions
61# it returns histogram buckets in whatever unit fio uses
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62# inputs:
63# logfn: pathname to histogram log file
64# buckets_per_interval - how many histogram buckets to expect
65# log_hist_msec - if not None, expected time interval between histogram records
66
67def parse_hist_file(logfn, buckets_per_interval, log_hist_msec):
68 previous_ts_ms_read = -1
69 previous_ts_ms_write = -1
70
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71 with open(logfn, 'r') as f:
72 records = [ l.strip() for l in f.readlines() ]
73 intervals = []
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74 last_time_ms = -1
75 last_direction = -1
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76 for k, r in enumerate(records):
77 if r == '':
78 continue
79 tokens = r.split(',')
80 try:
81 int_tokens = [ int(t) for t in tokens ]
82 except ValueError as e:
83 raise FioHistoLogExc('non-integer value %s' % exception_suffix(k+1, logfn))
84
85 neg_ints = list(filter( lambda tk : tk < 0, int_tokens ))
86 if len(neg_ints) > 0:
87 raise FioHistoLogExc('negative integer value %s' % exception_suffix(k+1, logfn))
88
89 if len(int_tokens) < 3:
90 raise FioHistoLogExc('too few numbers %s' % exception_suffix(k+1, logfn))
91
d8296fdd 92 direction = int_tokens[1]
18c1783a 93 if direction != direction_read and direction != direction_write:
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94 raise FioHistoLogExc('invalid I/O direction %s' % exception_suffix(k+1, logfn))
95
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96 time_ms = int_tokens[0]
97 if direction == direction_read:
98 if time_ms < previous_ts_ms_read:
99 raise FioHistoLogExc('read timestamp in column 1 decreased %s' % exception_suffix(k+1, logfn))
100 previous_ts_ms_read = time_ms
101 elif direction == direction_write:
102 if time_ms < previous_ts_ms_write:
103 raise FioHistoLogExc('write timestamp in column 1 decreased %s' % exception_suffix(k+1, logfn))
104 previous_ts_ms_write = time_ms
105
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106 bsz = int_tokens[2]
107 if bsz > (1 << 24):
108 raise FioHistoLogExc('block size too large %s' % exception_suffix(k+1, logfn))
109
110 buckets = int_tokens[3:]
111 if len(buckets) != buckets_per_interval:
112 raise FioHistoLogExc('%d buckets per interval but %d expected in %s' %
113 (len(buckets), buckets_per_interval, exception_suffix(k+1, logfn)))
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114
115 # hack to filter out records with the same timestamp
116 # we should not have to do this if fio logs histogram records correctly
117
118 if time_ms == last_time_ms and direction == last_direction:
119 continue
120 last_time_ms = time_ms
121 last_direction = direction
122
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123 intervals.append((time_ms, direction, bsz, buckets))
124 if len(intervals) == 0:
125 raise FioHistoLogExc('no records in %s' % logfn)
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126 (first_timestamp, _, _, _) = intervals[0]
127 if first_timestamp < 1000000:
128 start_time = 0 # assume log_unix_epoch = 0
129 elif log_hist_msec != None:
130 start_time = first_timestamp - log_hist_msec
131 elif len(intervals) > 1:
132 (second_timestamp, _, _, _) = intervals[1]
133 start_time = first_timestamp - (second_timestamp - first_timestamp)
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134 else:
135 raise FioHistoLogExc('no way to estimate test start time')
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136 (end_timestamp, _, _, _) = intervals[-1]
137
138 return (intervals, start_time, end_timestamp)
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139
140
141# compute time range for each bucket index in histogram record
142# see comments in https://github.com/axboe/fio/blob/master/stat.h
143# for description of bucket groups and buckets
144# fio v3 bucket ranges are in nanosec (since response times are measured in nanosec)
145# but we convert fio v3 nanosecs to floating-point microseconds
146
147def time_ranges(groups, counters_per_group, fio_version=3):
148 bucket_width = 1
149 bucket_base = 0
150 bucket_intervals = []
151 for g in range(0, groups):
152 for b in range(0, counters_per_group):
153 rmin = float(bucket_base)
154 rmax = rmin + bucket_width
155 if fio_version == 3:
156 rmin /= nsec_per_usec
157 rmax /= nsec_per_usec
158 bucket_intervals.append( [rmin, rmax] )
159 bucket_base += bucket_width
160 if g != 0:
161 bucket_width *= 2
162 return bucket_intervals
163
164
165# compute number of time quantum intervals in the test
166
18c1783a 167def get_time_intervals(time_quantum, min_timestamp_ms, max_timestamp_ms):
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168 # round down to nearest second
169 max_timestamp = max_timestamp_ms // msec_per_sec
18c1783a 170 min_timestamp = min_timestamp_ms // msec_per_sec
d8296fdd 171 # round up to nearest whole multiple of time_quantum
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172 time_interval_count = ((max_timestamp - min_timestamp) + time_quantum) // time_quantum
173 end_time = min_timestamp + (time_interval_count * time_quantum)
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174 return (end_time, time_interval_count)
175
176# align raw histogram log data to time quantum so
177# we can then combine histograms from different threads with addition
178# for randrw workload we count both reads and writes in same output bucket
179# but we separate reads and writes for purposes of calculating
180# end time for histogram record.
181# this requires us to weight a raw histogram bucket by the
182# fraction of time quantum that the bucket overlaps the current
183# time quantum interval
184# for example, if we have a bucket with 515 samples for time interval
185# [ 1010, 2014 ] msec since start of test, and time quantum is 1 sec, then
186# for time quantum interval [ 1000, 2000 ] msec, the overlap is
187# (2000 - 1010) / (2000 - 1000) = 0.99
188# so the contribution of this bucket to this time quantum is
189# 515 x 0.99 = 509.85
190
18c1783a 191def align_histo_log(raw_histogram_log, time_quantum, bucket_count, min_timestamp_ms, max_timestamp_ms):
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192
193 # slice up test time int intervals of time_quantum seconds
194
18c1783a 195 (end_time, time_interval_count) = get_time_intervals(time_quantum, min_timestamp_ms, max_timestamp_ms)
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196 time_qtm_ms = time_quantum * msec_per_sec
197 end_time_ms = end_time * msec_per_sec
198 aligned_intervals = []
199 for j in range(0, time_interval_count):
200 aligned_intervals.append((
18c1783a 201 min_timestamp_ms + (j * time_qtm_ms),
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202 [ 0.0 for j in range(0, bucket_count) ] ))
203
204 log_record_count = len(raw_histogram_log)
205 for k, record in enumerate(raw_histogram_log):
206
207 # find next record with same direction to get end-time
208 # have to avoid going past end of array
209 # for fio randrw workload,
210 # we have read and write records on same time interval
211 # sometimes read and write records are in opposite order
212 # assertion checks that next read/write record
213 # can be separated by at most 2 other records
214
215 (time_msec, direction, sz, interval_buckets) = record
216 if k+1 < log_record_count:
217 (time_msec_end, direction2, _, _) = raw_histogram_log[k+1]
218 if direction2 != direction:
219 if k+2 < log_record_count:
220 (time_msec_end, direction2, _, _) = raw_histogram_log[k+2]
221 if direction2 != direction:
222 if k+3 < log_record_count:
223 (time_msec_end, direction2, _, _) = raw_histogram_log[k+3]
224 assert direction2 == direction
225 else:
226 time_msec_end = end_time_ms
227 else:
228 time_msec_end = end_time_ms
229 else:
230 time_msec_end = end_time_ms
231
232 # calculate first quantum that overlaps this histogram record
233
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234 offset_from_min_ts = time_msec - min_timestamp_ms
235 qtm_start_ms = min_timestamp_ms + (offset_from_min_ts // time_qtm_ms) * time_qtm_ms
236 qtm_end_ms = min_timestamp_ms + ((offset_from_min_ts + time_qtm_ms) // time_qtm_ms) * time_qtm_ms
237 qtm_index = offset_from_min_ts // time_qtm_ms
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238
239 # for each quantum that overlaps this histogram record's time interval
240
241 while qtm_start_ms < time_msec_end: # while quantum overlaps record
242
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243 # some histogram logs may be longer than others
244
245 if len(aligned_intervals) <= qtm_index:
246 break
247
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248 # calculate fraction of time that this quantum
249 # overlaps histogram record's time interval
250
251 overlap_start = max(qtm_start_ms, time_msec)
252 overlap_end = min(qtm_end_ms, time_msec_end)
253 weight = float(overlap_end - overlap_start)
254 weight /= (time_msec_end - time_msec)
255 (_,aligned_histogram) = aligned_intervals[qtm_index]
256 for bx, b in enumerate(interval_buckets):
257 weighted_bucket = weight * b
258 aligned_histogram[bx] += weighted_bucket
259
260 # advance to the next time quantum
261
262 qtm_start_ms += time_qtm_ms
263 qtm_end_ms += time_qtm_ms
264 qtm_index += 1
265
266 return aligned_intervals
267
268# add histogram in "source" to histogram in "target"
269# it is assumed that the 2 histograms are precisely time-aligned
270
271def add_to_histo_from( target, source ):
272 for b in range(0, len(source)):
273 target[b] += source[b]
274
275# compute percentiles
276# inputs:
277# buckets: histogram bucket array
278# wanted: list of floating-pt percentiles to calculate
279# time_ranges: [tmin,tmax) time interval for each bucket
280# returns None if no I/O reported.
281# otherwise we would be dividing by zero
282# think of buckets as probability distribution function
283# and this loop is integrating to get cumulative distribution function
284
285def get_pctiles(buckets, wanted, time_ranges):
286
287 # get total of IO requests done
288 total_ios = 0
289 for io_count in buckets:
290 total_ios += io_count
291
292 # don't return percentiles if no I/O was done during interval
293 if total_ios == 0.0:
294 return None
295
296 pctile_count = len(wanted)
297
298 # results returned as dictionary keyed by percentile
299 pctile_result = {}
300
301 # index of next percentile in list
302 pctile_index = 0
303
304 # next percentile
305 next_pctile = wanted[pctile_index]
306
307 # no one is interested in percentiles bigger than this but not 100.0
308 # this prevents floating-point error from preventing loop exit
309 almost_100 = 99.9999
310
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311 # pct is the percentile corresponding to
312 # all I/O requests up through bucket b
313 pct = 0.0
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314 total_so_far = 0
315 for b, io_count in enumerate(buckets):
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316 if io_count == 0:
317 continue
d8296fdd 318 total_so_far += io_count
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319 # last_pct_lt is the percentile corresponding to
320 # all I/O requests up to, but not including, bucket b
321 last_pct = pct
322 pct = 100.0 * float(total_so_far) / total_ios
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323 # a single bucket could satisfy multiple pctiles
324 # so this must be a while loop
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325 # for 100-percentile (max latency) case, no bucket exceeds it
326 # so we must stop there.
327 while ((next_pctile == 100.0 and pct >= almost_100) or
328 (next_pctile < 100.0 and pct > next_pctile)):
329 # interpolate between min and max time for bucket time interval
330 # we keep the time_ranges access inside this loop,
331 # even though it could be above the loop,
332 # because in many cases we will not be even entering
333 # the loop so we optimize out these accesses
d8296fdd 334 range_max_time = time_ranges[b][1]
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335 range_min_time = time_ranges[b][0]
336 offset_frac = (next_pctile - last_pct)/(pct - last_pct)
337 interpolation = range_min_time + (offset_frac*(range_max_time - range_min_time))
338 pctile_result[next_pctile] = interpolation
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339 pctile_index += 1
340 if pctile_index == pctile_count:
341 break
342 next_pctile = wanted[pctile_index]
343 if pctile_index == pctile_count:
344 break
345 assert pctile_index == pctile_count
346 return pctile_result
347
348
c670cb44 349# this is really the main program
d8296fdd 350
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351def compute_percentiles_from_logs():
352 parser = argparse.ArgumentParser()
353 parser.add_argument("--fio-version", dest="fio_version",
354 default="3", choices=[2,3], type=int,
355 help="fio version (default=3)")
356 parser.add_argument("--bucket-groups", dest="bucket_groups", default="29", type=int,
357 help="fio histogram bucket groups (default=29)")
358 parser.add_argument("--bucket-bits", dest="bucket_bits",
359 default="6", type=int,
360 help="fio histogram buckets-per-group bits (default=6 means 64 buckets/group)")
361 parser.add_argument("--percentiles", dest="pctiles_wanted",
4b34a0eb 362 default=[ 0., 50., 95., 99., 100.], type=float, nargs='+',
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363 help="fio histogram buckets-per-group bits (default=6 means 64 buckets/group)")
364 parser.add_argument("--time-quantum", dest="time_quantum",
365 default="1", type=int,
366 help="time quantum in seconds (default=1)")
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367 parser.add_argument("--log-hist-msec", dest="log_hist_msec",
368 type=int, default=None,
369 help="log_hist_msec value in fio job file")
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370 parser.add_argument("--output-unit", dest="output_unit",
371 default="usec", type=str,
372 help="Latency percentile output unit: msec|usec|nsec (default usec)")
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373 parser.add_argument("file_list", nargs='+',
374 help='list of files, preceded by " -- " if necessary')
c670cb44 375 args = parser.parse_args()
c670cb44 376
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377 # default changes based on fio version
378 if args.fio_version == 2:
379 args.bucket_groups = 19
d8296fdd 380
c670cb44 381 # print parameters
d8296fdd 382
4b34a0eb 383 print('fio version = %d' % args.fio_version)
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384 print('bucket groups = %d' % args.bucket_groups)
385 print('bucket bits = %d' % args.bucket_bits)
386 print('time quantum = %d sec' % args.time_quantum)
387 print('percentiles = %s' % ','.join([ str(p) for p in args.pctiles_wanted ]))
388 buckets_per_group = 1 << args.bucket_bits
d8296fdd 389 print('buckets per group = %d' % buckets_per_group)
c670cb44 390 buckets_per_interval = buckets_per_group * args.bucket_groups
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391 print('buckets per interval = %d ' % buckets_per_interval)
392 bucket_index_range = range(0, buckets_per_interval)
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393 if args.log_hist_msec != None:
394 print('log_hist_msec = %d' % args.log_hist_msec)
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395 if args.time_quantum == 0:
396 print('ERROR: time-quantum must be a positive number of seconds')
397 print('output unit = ' + args.output_unit)
398 if args.output_unit == 'msec':
18c1783a 399 time_divisor = float(msec_per_sec)
c670cb44 400 elif args.output_unit == 'usec':
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401 time_divisor = 1.0
402
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403 # construct template for each histogram bucket array with buckets all zeroes
404 # we just copy this for each new histogram
405
406 zeroed_buckets = [ 0.0 for r in bucket_index_range ]
407
18c1783a 408 # calculate response time interval associated with each histogram bucket
d8296fdd 409
18c1783a 410 bucket_times = time_ranges(args.bucket_groups, buckets_per_group, fio_version=args.fio_version)
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411
412 # parse the histogram logs
413 # assumption: each bucket has a monotonically increasing time
414 # assumption: time ranges do not overlap for a single thread's records
415 # (exception: if randrw workload, then there is a read and a write
416 # record for the same time interval)
417
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418 test_start_time = 0
419 test_end_time = 1.0e18
d8296fdd 420 hist_files = {}
c670cb44 421 for fn in args.file_list:
d8296fdd 422 try:
18c1783a 423 (hist_files[fn], log_start_time, log_end_time) = parse_hist_file(fn, buckets_per_interval, args.log_hist_msec)
d8296fdd 424 except FioHistoLogExc as e:
c670cb44 425 myabort(str(e))
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426 # we consider the test started when all threads have started logging
427 test_start_time = max(test_start_time, log_start_time)
428 # we consider the test over when one of the logs has ended
429 test_end_time = min(test_end_time, log_end_time)
430
431 if test_start_time >= test_end_time:
432 raise FioHistoLogExc('no time interval when all threads logs overlapped')
433 if test_start_time > 0:
434 print('all threads running as of unix epoch time %d = %s' % (
435 test_start_time/float(msec_per_sec),
436 time.ctime(test_start_time/1000.0)))
437
438 (end_time, time_interval_count) = get_time_intervals(args.time_quantum, test_start_time, test_end_time)
c670cb44 439 all_threads_histograms = [ ((j*args.time_quantum*msec_per_sec), deepcopy(zeroed_buckets))
18c1783a 440 for j in range(0, time_interval_count) ]
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441
442 for logfn in hist_files.keys():
443 aligned_per_thread = align_histo_log(hist_files[logfn],
c670cb44 444 args.time_quantum,
d8296fdd 445 buckets_per_interval,
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446 test_start_time,
447 test_end_time)
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448 for t in range(0, time_interval_count):
449 (_, all_threads_histo_t) = all_threads_histograms[t]
450 (_, log_histo_t) = aligned_per_thread[t]
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451 add_to_histo_from( all_threads_histo_t, log_histo_t )
452
c670cb44 453 # calculate percentiles across aggregate histogram for all threads
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454 # print CSV header just like fiologparser_hist does
455
456 header = 'msec-since-start, '
457 for p in args.pctiles_wanted:
458 header += '%3.1f, ' % p
459 print('time (millisec), percentiles in increasing order with values in ' + args.output_unit)
460 print(header)
c670cb44 461
d8296fdd 462 for (t_msec, all_threads_histo_t) in all_threads_histograms:
18c1783a 463 record = '%8d, ' % t_msec
c670cb44 464 pct = get_pctiles(all_threads_histo_t, args.pctiles_wanted, bucket_times)
d8296fdd 465 if not pct:
c670cb44 466 for w in args.pctiles_wanted:
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467 record += ', '
468 else:
469 pct_keys = [ k for k in pct.keys() ]
470 pct_values = [ str(pct[wanted]/time_divisor) for wanted in sorted(pct_keys) ]
471 record += ', '.join(pct_values)
472 print(record)
473
474
475
476#end of MAIN PROGRAM
477
478
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479##### below are unit tests ##############
480
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481if unittest2_imported:
482 import tempfile, shutil
483 from os.path import join
484 should_not_get_here = False
d8296fdd 485
088a092e 486 class Test(unittest2.TestCase):
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487 tempdir = None
488
489 # a little less typing please
490 def A(self, boolean_val):
491 self.assertTrue(boolean_val)
492
493 # initialize unit test environment
494
495 @classmethod
496 def setUpClass(cls):
497 d = tempfile.mkdtemp()
498 Test.tempdir = d
499
500 # remove anything left by unit test environment
501 # unless user sets UNITTEST_LEAVE_FILES environment variable
502
503 @classmethod
504 def tearDownClass(cls):
505 if not os.getenv("UNITTEST_LEAVE_FILES"):
506 shutil.rmtree(cls.tempdir)
507
508 def setUp(self):
509 self.fn = join(Test.tempdir, self.id())
510
511 def test_a_add_histos(self):
512 a = [ 1.0, 2.0 ]
513 b = [ 1.5, 2.5 ]
514 add_to_histo_from( a, b )
515 self.A(a == [2.5, 4.5])
516 self.A(b == [1.5, 2.5])
517
518 def test_b1_parse_log(self):
519 with open(self.fn, 'w') as f:
520 f.write('1234, 0, 4096, 1, 2, 3, 4\n')
521 f.write('5678,1,16384,5,6,7,8 \n')
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522 (raw_histo_log, min_timestamp, max_timestamp) = parse_hist_file(self.fn, 4, None) # 4 buckets per interval
523 # if not log_unix_epoch=1, then min_timestamp will always be set to zero
524 self.A(len(raw_histo_log) == 2 and min_timestamp == 0 and max_timestamp == 5678)
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525 (time_ms, direction, bsz, histo) = raw_histo_log[0]
526 self.A(time_ms == 1234 and direction == 0 and bsz == 4096 and histo == [ 1, 2, 3, 4 ])
527 (time_ms, direction, bsz, histo) = raw_histo_log[1]
528 self.A(time_ms == 5678 and direction == 1 and bsz == 16384 and histo == [ 5, 6, 7, 8 ])
529
530 def test_b2_parse_empty_log(self):
531 with open(self.fn, 'w') as f:
532 pass
533 try:
18c1783a 534 (raw_histo_log, _, _) = parse_hist_file(self.fn, 4, None)
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535 self.A(should_not_get_here)
536 except FioHistoLogExc as e:
537 self.A(str(e).startswith('no records'))
538
539 def test_b3_parse_empty_records(self):
540 with open(self.fn, 'w') as f:
541 f.write('\n')
542 f.write('1234, 0, 4096, 1, 2, 3, 4\n')
543 f.write('5678,1,16384,5,6,7,8 \n')
544 f.write('\n')
18c1783a 545 (raw_histo_log, _, max_timestamp_ms) = parse_hist_file(self.fn, 4, None)
d8296fdd
BE
546 self.A(len(raw_histo_log) == 2 and max_timestamp_ms == 5678)
547 (time_ms, direction, bsz, histo) = raw_histo_log[0]
548 self.A(time_ms == 1234 and direction == 0 and bsz == 4096 and histo == [ 1, 2, 3, 4 ])
549 (time_ms, direction, bsz, histo) = raw_histo_log[1]
550 self.A(time_ms == 5678 and direction == 1 and bsz == 16384 and histo == [ 5, 6, 7, 8 ])
551
552 def test_b4_parse_non_int(self):
553 with open(self.fn, 'w') as f:
554 f.write('12, 0, 4096, 1a, 2, 3, 4\n')
555 try:
18c1783a 556 (raw_histo_log, _, _) = parse_hist_file(self.fn, 4, None)
d8296fdd
BE
557 self.A(False)
558 except FioHistoLogExc as e:
559 self.A(str(e).startswith('non-integer'))
560
561 def test_b5_parse_neg_int(self):
562 with open(self.fn, 'w') as f:
563 f.write('-12, 0, 4096, 1, 2, 3, 4\n')
564 try:
18c1783a 565 (raw_histo_log, _, _) = parse_hist_file(self.fn, 4, None)
d8296fdd
BE
566 self.A(False)
567 except FioHistoLogExc as e:
568 self.A(str(e).startswith('negative integer'))
569
570 def test_b6_parse_too_few_int(self):
571 with open(self.fn, 'w') as f:
572 f.write('0, 0\n')
573 try:
18c1783a 574 (raw_histo_log, _, _) = parse_hist_file(self.fn, 4, None)
d8296fdd
BE
575 self.A(False)
576 except FioHistoLogExc as e:
577 self.A(str(e).startswith('too few numbers'))
578
579 def test_b7_parse_invalid_direction(self):
580 with open(self.fn, 'w') as f:
581 f.write('100, 2, 4096, 1, 2, 3, 4\n')
582 try:
18c1783a 583 (raw_histo_log, _, _) = parse_hist_file(self.fn, 4, None)
d8296fdd
BE
584 self.A(False)
585 except FioHistoLogExc as e:
586 self.A(str(e).startswith('invalid I/O direction'))
587
588 def test_b8_parse_bsz_too_big(self):
589 with open(self.fn+'_good', 'w') as f:
590 f.write('100, 1, %d, 1, 2, 3, 4\n' % (1<<24))
18c1783a 591 (raw_histo_log, _, _) = parse_hist_file(self.fn+'_good', 4, None)
d8296fdd
BE
592 with open(self.fn+'_bad', 'w') as f:
593 f.write('100, 1, 20000000, 1, 2, 3, 4\n')
594 try:
18c1783a 595 (raw_histo_log, _, _) = parse_hist_file(self.fn+'_bad', 4, None)
d8296fdd
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596 self.A(False)
597 except FioHistoLogExc as e:
598 self.A(str(e).startswith('block size too large'))
599
600 def test_b9_parse_wrong_bucket_count(self):
601 with open(self.fn, 'w') as f:
602 f.write('100, 1, %d, 1, 2, 3, 4, 5\n' % (1<<24))
603 try:
18c1783a 604 (raw_histo_log, _, _) = parse_hist_file(self.fn, 4, None)
d8296fdd
BE
605 self.A(False)
606 except FioHistoLogExc as e:
607 self.A(str(e).__contains__('buckets per interval'))
608
609 def test_c1_time_ranges(self):
610 ranges = time_ranges(3, 2) # fio_version defaults to 3
611 expected_ranges = [ # fio_version 3 is in nanoseconds
612 [0.000, 0.001], [0.001, 0.002], # first group
613 [0.002, 0.003], [0.003, 0.004], # second group same width
614 [0.004, 0.006], [0.006, 0.008]] # subsequent groups double width
615 self.A(ranges == expected_ranges)
616 ranges = time_ranges(3, 2, fio_version=3)
617 self.A(ranges == expected_ranges)
618 ranges = time_ranges(3, 2, fio_version=2)
619 expected_ranges_v2 = [ [ 1000.0 * min_or_max for min_or_max in time_range ]
620 for time_range in expected_ranges ]
621 self.A(ranges == expected_ranges_v2)
622 # see fio V3 stat.h for why 29 groups and 2^6 buckets/group
623 normal_ranges_v3 = time_ranges(29, 64)
624 # for v3, bucket time intervals are measured in nanoseconds
625 self.A(len(normal_ranges_v3) == 29 * 64 and normal_ranges_v3[-1][1] == 64*(1<<(29-1))/1000.0)
626 normal_ranges_v2 = time_ranges(19, 64, fio_version=2)
627 # for v2, bucket time intervals are measured in microseconds so we have fewer buckets
628 self.A(len(normal_ranges_v2) == 19 * 64 and normal_ranges_v2[-1][1] == 64*(1<<(19-1)))
629
630 def test_d1_align_histo_log_1_quantum(self):
631 with open(self.fn, 'w') as f:
632 f.write('100, 1, 4096, 1, 2, 3, 4')
18c1783a
BE
633 (raw_histo_log, min_timestamp_ms, max_timestamp_ms) = parse_hist_file(self.fn, 4, None)
634 self.A(min_timestamp_ms == 0 and max_timestamp_ms == 100)
635 aligned_log = align_histo_log(raw_histo_log, 5, 4, min_timestamp_ms, max_timestamp_ms)
636 self.A(len(aligned_log) == 1)
637 (time_ms0, h) = aligned_log[0]
638 self.A(time_ms0 == 0 and h == [1., 2., 3., 4.])
639
640 # handle case with log_unix_epoch=1 timestamps, 1-second time quantum
641 # here both records will be separated into 2 aligned intervals
642
643 def test_d1a_align_2rec_histo_log_epoch_1_quantum_1sec(self):
644 with open(self.fn, 'w') as f:
645 f.write('1536504002123, 1, 4096, 1, 2, 3, 4\n')
646 f.write('1536504003123, 1, 4096, 4, 3, 2, 1\n')
647 (raw_histo_log, min_timestamp_ms, max_timestamp_ms) = parse_hist_file(self.fn, 4, None)
648 self.A(min_timestamp_ms == 1536504001123 and max_timestamp_ms == 1536504003123)
649 aligned_log = align_histo_log(raw_histo_log, 1, 4, min_timestamp_ms, max_timestamp_ms)
650 self.A(len(aligned_log) == 3)
651 (time_ms0, h) = aligned_log[0]
652 self.A(time_ms0 == 1536504001123 and h == [0., 0., 0., 0.])
653 (time_ms1, h) = aligned_log[1]
654 self.A(time_ms1 == 1536504002123 and h == [1., 2., 3., 4.])
655 (time_ms2, h) = aligned_log[2]
656 self.A(time_ms2 == 1536504003123 and h == [4., 3., 2., 1.])
657
658 # handle case with log_unix_epoch=1 timestamps, 5-second time quantum
659 # here both records will be merged into a single aligned time interval
660
661 def test_d1b_align_2rec_histo_log_epoch_1_quantum_5sec(self):
662 with open(self.fn, 'w') as f:
663 f.write('1536504002123, 1, 4096, 1, 2, 3, 4\n')
664 f.write('1536504003123, 1, 4096, 4, 3, 2, 1\n')
665 (raw_histo_log, min_timestamp_ms, max_timestamp_ms) = parse_hist_file(self.fn, 4, None)
666 self.A(min_timestamp_ms == 1536504001123 and max_timestamp_ms == 1536504003123)
667 aligned_log = align_histo_log(raw_histo_log, 5, 4, min_timestamp_ms, max_timestamp_ms)
d8296fdd
BE
668 self.A(len(aligned_log) == 1)
669 (time_ms0, h) = aligned_log[0]
18c1783a 670 self.A(time_ms0 == 1536504001123 and h == [5., 5., 5., 5.])
d8296fdd
BE
671
672 # we need this to compare 2 lists of floating point numbers for equality
673 # because of floating-point imprecision
674
675 def compare_2_floats(self, x, y):
676 if x == 0.0 or y == 0.0:
677 return (x+y) < 0.0000001
678 else:
679 return (math.fabs(x-y)/x) < 0.00001
680
681 def is_close(self, buckets, buckets_expected):
682 if len(buckets) != len(buckets_expected):
683 return False
684 compare_buckets = lambda k: self.compare_2_floats(buckets[k], buckets_expected[k])
685 indices_close = list(filter(compare_buckets, range(0, len(buckets))))
686 return len(indices_close) == len(buckets)
687
688 def test_d2_align_histo_log_2_quantum(self):
689 with open(self.fn, 'w') as f:
690 f.write('2000, 1, 4096, 1, 2, 3, 4\n')
691 f.write('7000, 1, 4096, 1, 2, 3, 4\n')
18c1783a
BE
692 (raw_histo_log, min_timestamp_ms, max_timestamp_ms) = parse_hist_file(self.fn, 4, None)
693 self.A(min_timestamp_ms == 0 and max_timestamp_ms == 7000)
d8296fdd
BE
694 (_, _, _, raw_buckets1) = raw_histo_log[0]
695 (_, _, _, raw_buckets2) = raw_histo_log[1]
18c1783a 696 aligned_log = align_histo_log(raw_histo_log, 5, 4, min_timestamp_ms, max_timestamp_ms)
d8296fdd
BE
697 self.A(len(aligned_log) == 2)
698 (time_ms1, h1) = aligned_log[0]
699 (time_ms2, h2) = aligned_log[1]
700 # because first record is from time interval [2000, 7000]
701 # we weight it according
702 expect1 = [float(b) * 0.6 for b in raw_buckets1]
703 expect2 = [float(b) * 0.4 for b in raw_buckets1]
704 for e in range(0, len(expect2)):
705 expect2[e] += raw_buckets2[e]
706 self.A(time_ms1 == 0 and self.is_close(h1, expect1))
707 self.A(time_ms2 == 5000 and self.is_close(h2, expect2))
708
0456267b
BE
709 # what to expect if histogram buckets are all equal
710 def test_e1_get_pctiles_flat_histo(self):
d8296fdd
BE
711 with open(self.fn, 'w') as f:
712 buckets = [ 100 for j in range(0, 128) ]
713 f.write('9000, 1, 4096, %s\n' % ', '.join([str(b) for b in buckets]))
18c1783a
BE
714 (raw_histo_log, min_timestamp_ms, max_timestamp_ms) = parse_hist_file(self.fn, 128, None)
715 self.A(min_timestamp_ms == 0 and max_timestamp_ms == 9000)
716 aligned_log = align_histo_log(raw_histo_log, 5, 128, min_timestamp_ms, max_timestamp_ms)
d8296fdd
BE
717 time_intervals = time_ranges(4, 32)
718 # since buckets are all equal, then median is halfway through time_intervals
719 # and max latency interval is at end of time_intervals
720 self.A(time_intervals[64][1] == 0.066 and time_intervals[127][1] == 0.256)
721 pctiles_wanted = [ 0, 50, 100 ]
722 pct_vs_time = []
723 for (time_ms, histo) in aligned_log:
724 pct_vs_time.append(get_pctiles(histo, pctiles_wanted, time_intervals))
725 self.A(pct_vs_time[0] == None) # no I/O in this time interval
0456267b 726 expected_pctiles = { 0:0.000, 50:0.064, 100:0.256 }
d8296fdd
BE
727 self.A(pct_vs_time[1] == expected_pctiles)
728
0456267b
BE
729 # what to expect if just the highest histogram bucket is used
730 def test_e2_get_pctiles_highest_pct(self):
731 fio_v3_bucket_count = 29 * 64
732 with open(self.fn, 'w') as f:
733 # make a empty fio v3 histogram
734 buckets = [ 0 for j in range(0, fio_v3_bucket_count) ]
735 # add one I/O request to last bucket
736 buckets[-1] = 1
737 f.write('9000, 1, 4096, %s\n' % ', '.join([str(b) for b in buckets]))
18c1783a
BE
738 (raw_histo_log, min_timestamp_ms, max_timestamp_ms) = parse_hist_file(self.fn, fio_v3_bucket_count, None)
739 self.A(min_timestamp_ms == 0 and max_timestamp_ms == 9000)
740 aligned_log = align_histo_log(raw_histo_log, 5, fio_v3_bucket_count, min_timestamp_ms, max_timestamp_ms)
0456267b
BE
741 (time_ms, histo) = aligned_log[1]
742 time_intervals = time_ranges(29, 64)
743 expected_pctiles = { 100.0:(64*(1<<28))/1000.0 }
744 pct = get_pctiles( histo, [ 100.0 ], time_intervals )
745 self.A(pct == expected_pctiles)
746
d8296fdd
BE
747# we are using this module as a standalone program
748
749if __name__ == '__main__':
750 if os.getenv('UNITTEST'):
088a092e
BE
751 if unittest2_imported:
752 sys.exit(unittest2.main())
753 else:
754 raise Exception('you must install unittest2 module to run unit test')
d8296fdd
BE
755 else:
756 compute_percentiles_from_logs()
757