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                      Parallelizing SquashFS Data Packing
                      ***********************************

 0) Overview
 ***********

 On a high level, data blocks are processed as follows:

 The "block processor" has a simple begin/append/end interface for submitting
 file data. Internally it chops the file data up into fixed size blocks that
 are each [optionally] compressed and hashed. If the "end" function is called
 and there is still left over data, a fragment is created.

 Fragments are only hashed. If another fragment exists with the same size and
 hash, it is discarded and the existing fragment is referenced. Fragments are
 collected in a fragment block that, once it overflows, is processed like a
 normal block.

 The final compressed & hashed data blocks & fragment blocks are passed on to
 the "block writer".

 The block writer simply writes blocks to the output file. Flags are used to
 communicate what the first and last block of a file are. Entire files are
 deduplicated by trying to find a sequence of identical size/hash pairs in
 the already written blocks.


 0.1) Implementation

 The implementation of the block processor is in lib/sqfs/block_processor. The
 file common.c contains the frontend for file data submission and common
 functions for processing a single block, handling a completed block and
 handling a completed fragment.

 A reference serial implementation is provided in the file serial.c


 1) Thread Pool Based Block Processor
 ************************************

 1.1) Goals and Challanges

 In addition to the goal of boosting performance, the thread pool based block
 processor must meet the following requirements:

  - Output MUST be deterministic and reproducible. I.e. feeding byte-for-byte
    the same input MUST ALWAYS produce byte-for-byte the same output.
  - Blocks the belong to a single file MUST be written in the order that
    they were submitted.
  - Output MUST be byte-for-byte equivalent to the serial reference
    implementation. Changing the serial reference implementation to
    achieve this is OK.
  - I/O cannot be done in worker threads. The underlying back-end must be
    assumed to not be thread safe and may get very confused by suddenly running
    in a different thread, even if only one thread at a time uses it.


 1.2) The Current Approach

 The current implementation is in winpthread.c (based on pthread or Windows
 native threads, depending on whats available).

 It keeps track of blocks in 3 different FIFO queues:
  - A "work queue" that freshly submitted blocks go to. Worker threads take
    blocks from this queue for processing.
  - A "done queue" that worker threads submit blocks to, once completed.
  - An "I/O queue" that contains blocks ready to be written to disk.


 When the main thread submits a block, it gives it an incremental "processing"
 sequence number and appends it to the "work queue". Thread pool workers take
 the first best block of the queue, process it and add it to the "done" queue,
 sorted by its processing sequence number.

 The main thread dequeues blocks from the done queue sorted by their processing
 sequence number, using a second counter to make sure blocks are dequeued in
 the exact same order as they were added to the work queue.

 Regular data blocks from the "done queue" are given an incremental I/O
 sequence number and added to the "I/O queue", sorted by this number.

 Fragments are deduplicated and consolidated into a fragment block. If this
 block overflows, it is appended to the "work queue" the exact same way as
 regular blocks, but it is **already given an I/O sequence number**.

 If a block dequeued from the "done queue" turns out to be a fragment block, it
 is added to the "I/O queue", sorted by its I/O sequence number **that it
 already has**, i.e. no new sequence number is allocated.

 The I/O queue is dequeued in the same fashion as the "done queue", using a
 second counter to enforce ordering.


 The actual implementation interleaves enqueueing and dequeueing in the block
 submission function. It dequeues blocks if the queues reach a pre-set maximum
 backlog. In that case, it tries to dequeue from the I/O queue first and if
 that fails, tries to dequeue from the "done queue". If that also fails, it
 uses signal/await to be woken up by a worker thread once it adds a block to
 the "done queue". Fragment post-processing and re-queueing of blocks is done
 inside the critical region, but the actual I/O is done outside (for obvious
 reasons).


 Profiling on small filesystems using perf shows that the outlined approach
 seems to perform quite well for CPU bound compressors like XZ, but doesn't
 add a lot for I/O bound compressors like zstd.

 If you have a better idea how to do this, please let me know.


 2) Benchmarks
 *************

 2.1) How was the Benchmark Performed?

 An optimized build of squashfs-tools-ng was compiled and installed to a tmpfs:

  $ mkdir /dev/shm/temp
  $ ln -s /dev/shm/temp out
  $ ./autogen.sh
  $ ./configure CFLAGS="-O3 -Ofast -march=native -mtune=native" \
                LDFLAGS="-O3 -Ofast" --prefix=$(pwd)/out
  $ make -j install
  $ cd out

 A SquashFS image to be tested was unpacked in this directory:

  $ ./bin/sqfs2tar <IMAGE> > test.tar

 And then repacked as follows:

  $ time ./bin/tar2sqfs -j <NUM_CPU> -c <COMPRESSOR> -f test.sqfs < test.tar


 Out of 4 runs, the worst wall-clock time ("real") was used for comparison.


 For the serial reference version, configure was re-run with the option
 --without-pthread, the tools re-compiled and re-installed.


 2.2) What Image was Tested?

 A Debian image extracted from the Debian 10.2 LiveDVD for AMD64 with XFCE
 was used.

 The input size and resulting output sizes turned out to be as follows:

  - As uncompressed tarball:           ~6.5GiB (7,008,118,272)
  - As LZ4 compressed SquashFS image:  ~3.1GiB (3,381,751,808)
  - As LZO compressed SquashFS image:  ~2.5GiB (2,732,015,616)
  - As zstd compressed SquashFS image: ~2.1GiB (2,295,017,472)
  - As gzip compressed SquashFS image: ~2.3GiB (2,471,276,544)
  - As lzma compressed SquashFS image: ~2.0GiB (2,102,169,600)
  - As XZ compressed SquashFS image:   ~2.0GiB (2,098,466,816)


 The Debian image is expected to contain realistic input data for a Linux
 file system and also provide enough data for an interesting benchmark.


 2.3) What Test System was used?

  AMD Ryzen 7 3700X
  32GiB DDR4 RAM
  Fedora 31


 2.4) Results

 The raw timing results are as follows:

 Jobs    XZ          lzma        gzip        LZO         LZ4      zstd
 serial  17m39.613s  16m10.710s   9m56.606s  13m22.337s  12.159s  9m33.600s
      1  17m38.050s  15m49.753s   9m46.948s  13m06.705s  11.908s  9m23.445s
      2   9m26.712s   8m24.706s   5m08.152s   6m53.872s   7.395s  5m 1.734s
      3   6m29.733s   5m47.422s   3m33.235s   4m44.407s   6.069s  3m30.708s
      4   5m02.993s   4m30.361s   2m43.447s   3m39.825s   5.864s  2m44.418s
      5   4m07.959s   3m40.860s   2m13.454s   2m59.395s   5.749s  2m16.745s
      6   3m30.514s   3m07.816s   1m53.641s   2m32.461s   5.926s  1m57.607s
      7   3m04.009s   2m43.765s   1m39.742s   2m12.536s   6.281s  1m43.734s
      8   2m45.050s   2m26.996s   1m28.776s   1m58.253s   6.395s  1m34.500s
      9   2m34.993s   2m18.868s   1m21.668s   1m50.461s   6.890s  1m29.820s
     10   2m27.399s   2m11.214s   1m15.461s   1m44.060s   7.225s  1m26.176s
     11   2m20.068s   2m04.592s   1m10.286s   1m37.749s   7.557s  1m22.566s
     12   2m13.131s   1m58.710s   1m05.957s   1m32.596s   8.127s  1m18.883s
     13   2m07.472s   1m53.481s   1m02.041s   1m27.982s   8.704s  1m16.218s
     14   2m02.365s   1m48.773s   1m00.337s   1m24.444s   9.494s  1m14.175s
     15   1m58.298s   1m45.079s     58.348s   1m21.445s  10.192s  1m12.134s
     16   1m55.940s   1m42.176s     56.615s   1m19.030s  10.964s  1m11.049s

 The file "benchmark.ods" contains those values, values derived from this and
 charts depicting the results.


 2.5) Discussion

 Most obviously, the results indicate that LZ4, unlike the other compressors,
 is clearly I/O bound and not CPU bound and doesn't benefit from parallelization
 beyond 2-4 worker threads and even that benefit is marginal with efficiency
 plummetting immediately.


 The other compressors are clearly CPU bound. Speedup increases linearly until
 about 8 cores, but with a slope < 1, as evident by efficiency linearly
 decreasing and reaching 80% for 8 cores.

 A reason for this sub-linear scaling may be the choke point introduced by the
 creation of fragment blocks, that *requires* a synchronization. To test this
 theory, a second benchmark should be performed with fragment block generation
 completely disabled. This requires a new flag to be added to tar2sqfs (and
 also gensquashfs).


 Using more than 8 jobs causes a much slower increase in speedup and efficency
 declines even faster. This is probably due to the fact that the test system
 only has 8 physical cores and beyond that, SMT has to be used.


 It should also be noted that the thread pool compressor with only a single
 thread turns out to be *slightly* faster than the serial reference
 implementation. A possible explanation for this might be that the fragment
 blocks are actually assembled in the main thread, in parallel to the worker
 that can still continue with other data blocks. Because of this decoupling
 there is in fact some degree of parallelism, even if only one worker thread
 is used.


 As a side effect, this benchmark also produces some insights into the
 compression ratio and throughput of the supported compressors. Indicating that
 for the Debian live image, XZ clearly provides the highest data density, while
 LZ4 is clearly the fastest compressor available.

 The throughput of the zstd compressor is comparable to gzip, while the
 resulting compression ratio is closer to LZMA.

 Repeating the benchmark without tail-end-packing and with fragments completely
 disabled would also show the effectiveness of tail-end-packing and fragment
 packing as a side effect.