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246 lines
11 KiB
Python
246 lines
11 KiB
Python
# Created By: Virgil Dupras
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# Created On: 2007/02/25
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# Copyright 2015 Hardcoded Software (http://www.hardcoded.net)
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#
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# This software is licensed under the "GPLv3" License as described in the "LICENSE" file,
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# which should be included with this package. The terms are also available at
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# http://www.gnu.org/licenses/gpl-3.0.html
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import logging
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import multiprocessing
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from itertools import combinations
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from hscommon.util import extract, iterconsume
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from hscommon.trans import tr
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from hscommon.jobprogress import job
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from core.engine import Match
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from core.pe.block import avgdiff, DifferentBlockCountError, NoBlocksError
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from core.pe.cache_sqlite import SqliteCache
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# OPTIMIZATION NOTES:
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# The bottleneck of the matching phase is CPU, which is why we use multiprocessing. However, another
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# bottleneck that shows up when a lot of pictures are involved is Disk IO's because blocks
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# constantly have to be read from disks by subprocesses. This problem is especially big on CPUs
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# with a lot of cores. Therefore, we must minimize Disk IOs. The best way to achieve that is to
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# separate the files to scan in "chunks" and it's by chunk that blocks are read in memory and
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# compared to each other. Each file in a chunk has to be compared to each other, of course, but also
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# to files in other chunks. So chunkifying doesn't save us any actual comparison, but the advantage
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# is that instead of reading blocks from disk number_of_files**2 times, we read it
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# number_of_files*number_of_chunks times.
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# Determining the right chunk size is tricky, because if it's too big, too many blocks will be in
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# memory at the same time and we might end up with memory trashing, which is awfully slow. So,
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# because our *real* bottleneck is CPU, the chunk size must simply be enough so that the CPU isn't
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# starved by Disk IOs.
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MIN_ITERATIONS = 3
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BLOCK_COUNT_PER_SIDE = 15
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DEFAULT_CHUNK_SIZE = 1000
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MIN_CHUNK_SIZE = 100
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# Enough so that we're sure that the main thread will not wait after a result.get() call
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# cpucount+1 should be enough to be sure that the spawned process will not wait after the results
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# collection made by the main process.
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try:
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RESULTS_QUEUE_LIMIT = multiprocessing.cpu_count() + 1
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except Exception:
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# I had an IOError on app launch once. It seems to be a freak occurrence. In any case, we want
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# the app to launch, so let's just put an arbitrary value.
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logging.warning("Had problems to determine cpu count on launch.")
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RESULTS_QUEUE_LIMIT = 8
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def get_cache(cache_path, readonly=False):
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return SqliteCache(cache_path, readonly=readonly)
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def prepare_pictures(pictures, cache_path, with_dimensions, j=job.nulljob):
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# The MemoryError handlers in there use logging without first caring about whether or not
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# there is enough memory left to carry on the operation because it is assumed that the
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# MemoryError happens when trying to read an image file, which is freed from memory by the
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# time that MemoryError is raised.
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cache = get_cache(cache_path)
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cache.purge_outdated()
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prepared = [] # only pictures for which there was no error getting blocks
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try:
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for picture in j.iter_with_progress(pictures, tr("Analyzed %d/%d pictures")):
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if not picture.path:
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# XXX Find the root cause of this. I've received reports of crashes where we had
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# "Analyzing picture at " (without a path) in the debug log. It was an iPhoto scan.
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# For now, I'm simply working around the crash by ignoring those, but it would be
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# interesting to know exactly why this happens. I'm suspecting a malformed
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# entry in iPhoto library.
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logging.warning("We have a picture with a null path here")
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continue
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picture.unicode_path = str(picture.path)
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logging.debug("Analyzing picture at %s", picture.unicode_path)
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if with_dimensions:
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picture.dimensions # pre-read dimensions
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try:
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if picture.unicode_path not in cache:
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blocks = picture.get_blocks(BLOCK_COUNT_PER_SIDE)
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cache[picture.unicode_path] = blocks
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prepared.append(picture)
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except (OSError, ValueError) as e:
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logging.warning(str(e))
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except MemoryError:
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logging.warning(
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"Ran out of memory while reading %s of size %d",
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picture.unicode_path,
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picture.size,
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)
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if picture.size < 10 * 1024 * 1024: # We're really running out of memory
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raise
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except MemoryError:
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logging.warning("Ran out of memory while preparing pictures")
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cache.close()
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return prepared
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def get_chunks(pictures):
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min_chunk_count = multiprocessing.cpu_count() * 2 # have enough chunks to feed all subprocesses
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chunk_count = len(pictures) // DEFAULT_CHUNK_SIZE
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chunk_count = max(min_chunk_count, chunk_count)
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chunk_size = (len(pictures) // chunk_count) + 1
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chunk_size = max(MIN_CHUNK_SIZE, chunk_size)
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logging.info(
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"Creating %d chunks with a chunk size of %d for %d pictures",
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chunk_count,
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chunk_size,
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len(pictures),
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)
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chunks = [pictures[i : i + chunk_size] for i in range(0, len(pictures), chunk_size)]
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return chunks
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def get_match(first, second, percentage):
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if percentage < 0:
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percentage = 0
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return Match(first, second, percentage)
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def async_compare(ref_ids, other_ids, dbname, threshold, picinfo):
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# The list of ids in ref_ids have to be compared to the list of ids in other_ids. other_ids
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# can be None. In this case, ref_ids has to be compared with itself
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# picinfo is a dictionary {pic_id: (dimensions, is_ref)}
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cache = get_cache(dbname, readonly=True)
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limit = 100 - threshold
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ref_pairs = list(cache.get_multiple(ref_ids))
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if other_ids is not None:
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other_pairs = list(cache.get_multiple(other_ids))
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comparisons_to_do = [(r, o) for r in ref_pairs for o in other_pairs]
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else:
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comparisons_to_do = list(combinations(ref_pairs, 2))
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results = []
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for (ref_id, ref_blocks), (other_id, other_blocks) in comparisons_to_do:
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ref_dimensions, ref_is_ref = picinfo[ref_id]
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other_dimensions, other_is_ref = picinfo[other_id]
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if ref_is_ref and other_is_ref:
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continue
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if ref_dimensions != other_dimensions:
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continue
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try:
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diff = avgdiff(ref_blocks, other_blocks, limit, MIN_ITERATIONS)
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percentage = 100 - diff
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except (DifferentBlockCountError, NoBlocksError):
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percentage = 0
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if percentage >= threshold:
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results.append((ref_id, other_id, percentage))
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cache.close()
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return results
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def getmatches(pictures, cache_path, threshold, match_scaled=False, j=job.nulljob):
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def get_picinfo(p):
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if match_scaled:
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return (None, p.is_ref)
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else:
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return (p.dimensions, p.is_ref)
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def collect_results(collect_all=False):
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# collect results and wait until the queue is small enough to accomodate a new results.
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nonlocal async_results, matches, comparison_count, comparisons_to_do
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limit = 0 if collect_all else RESULTS_QUEUE_LIMIT
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while len(async_results) > limit:
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ready, working = extract(lambda r: r.ready(), async_results)
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for result in ready:
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matches += result.get()
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async_results.remove(result)
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comparison_count += 1
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# About the NOQA below: I think there's a bug in pyflakes. To investigate...
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progress_msg = tr("Performed %d/%d chunk matches") % (
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comparison_count,
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len(comparisons_to_do),
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) # NOQA
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j.set_progress(comparison_count, progress_msg)
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j = j.start_subjob([3, 7])
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pictures = prepare_pictures(pictures, cache_path, with_dimensions=not match_scaled, j=j)
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j = j.start_subjob([9, 1], tr("Preparing for matching"))
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cache = get_cache(cache_path)
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id2picture = {}
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for picture in pictures:
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try:
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picture.cache_id = cache.get_id(picture.unicode_path)
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id2picture[picture.cache_id] = picture
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except ValueError:
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pass
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cache.close()
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pictures = [p for p in pictures if hasattr(p, "cache_id")]
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pool = multiprocessing.Pool()
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async_results = []
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matches = []
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chunks = get_chunks(pictures)
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# We add a None element at the end of the chunk list because each chunk has to be compared
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# with itself. Thus, each chunk will show up as a ref_chunk having other_chunk set to None once.
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comparisons_to_do = list(combinations(chunks + [None], 2))
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comparison_count = 0
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j.start_job(len(comparisons_to_do))
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try:
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for ref_chunk, other_chunk in comparisons_to_do:
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picinfo = {p.cache_id: get_picinfo(p) for p in ref_chunk}
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ref_ids = [p.cache_id for p in ref_chunk]
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if other_chunk is not None:
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other_ids = [p.cache_id for p in other_chunk]
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picinfo.update({p.cache_id: get_picinfo(p) for p in other_chunk})
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else:
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other_ids = None
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args = (ref_ids, other_ids, cache_path, threshold, picinfo)
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async_results.append(pool.apply_async(async_compare, args))
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collect_results()
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collect_results(collect_all=True)
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except MemoryError:
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# Rare, but possible, even in 64bit situations (ref #264). What do we do now? We free us
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# some wiggle room, log about the incident, and stop matching right here. We then process
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# the matches we have. The rest of the process doesn't allocate much and we should be
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# alright.
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del (
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comparisons_to_do,
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chunks,
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pictures,
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) # some wiggle room for the next statements
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logging.warning("Ran out of memory when scanning! We had %d matches.", len(matches))
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del matches[-len(matches) // 3 :] # some wiggle room to ensure we don't run out of memory again.
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pool.close()
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result = []
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myiter = j.iter_with_progress(
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iterconsume(matches, reverse=False),
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tr("Verified %d/%d matches"),
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every=10,
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count=len(matches),
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)
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for ref_id, other_id, percentage in myiter:
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ref = id2picture[ref_id]
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other = id2picture[other_id]
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if percentage == 100 and ref.digest != other.digest:
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percentage = 99
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if percentage >= threshold:
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ref.dimensions # pre-read dimensions for display in results
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other.dimensions
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result.append(get_match(ref, other, percentage))
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pool.join()
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return result
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multiprocessing.freeze_support()
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