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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
 ************************************

 The main challenge of parallelizing the block processor lies in the fact the
 output HAS TO BE byte-for-byte equivalent to the serial reference
 implementation.

 This means:
  - File blocks have to be written in the exact same order as they
    are submitted.
  - If storing a fragment overflows the fragment block, the resulting
    fragment block has to be written next, no file data.


 The current implementation in winpthread.c (based on pthread or Windows
 native threads, depending on whats available) uses the following approach:

  - Each submitted data block or fragment gets an incremental sequence number
    and is appended to a FIFO queue.
  - Multiple threads consume blocks from the queue and use the function
    from common.c to process the dequeued blocks.
  - Completed blocks are inserted into a "done" queue, sorted by their
    sequence number.
  - The main thread that submits blocks also dequeues the completed ones,
    in order of their sequence number.
      - Data blocks are given an "i/o sequence number" and inserted into
        an I/O queue in order by this number.
      - For fragments, it and calls the respective function from common.c
        to deduplicate and append to the current fragment block.
      - If the current fragment block overflows, it is given the next free
        **I/O sequence number** and inserted into the **processing queue**.
      - Completed fragment blocks are inserted into the I/O queue with
        regard to the I/O sequence number they already have
  - The main thread also dequeues I/O blocks ordered by their I/O sequence
    number, and passes them to the respective common.c function that eventually
    forwards it to the block writer.

 To make sure the queue doesn't fill all RAM, submitted blocks are counted. The
 counter is also incremented when submitting to the I/O queue. The counter is
 decremented when dequeueing completed blocks or blocks from the I/O queue.

 The block submission function tries to add blocks only if the counter is below
 a pre-set threshold. If it is above, it first tries to dequeue I/O block, and
 if there are no I/O blocks, dequeue and handle "done" blocks. If the "done"
 queue is also empty, it uses signal/await to wait for the worker threads to
 complete some blocks to process. The main thread in turn uses signal/await to
 tell the worker threads it has submitted block (they wait if the work queue is
 empty).

 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. Actual measurements still
 need to be done.

 If you have a more insights or a better idea, please let me know.


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

 TODO: benchmarks with the following images:
        - Debian live iso (2G)
	- Arch Linux live iso (~550M)
	- Raspberry Pi 3 QT demo image (~390M)

       sqfs2tar $IMAGE | tar2sqfs -j $NUM_CPU -f out.sqfs

       Values to measure:
        - Total wall clock time of tar2sqfs.
	- Througput (bytes read / time, bytes written / time).

       Try the above for different compressors and stuff everything into
       a huge spread sheet. Then, determine the following and plot some
       nice graphs:

        - Absolute speedup (normalized to serial implementation).
	- Absolute efficiency (= speedup / $NUM_CPU)
        - Relative speedup (normalized to thread pool with -j 1).
	- Relative efficiency


 Available test hardware:
  - 8(16) core AMD Ryzen 7 3700X, 32GiB DDR4 RAM.
  - Various 4 core Intel Xeon servers. Precise Specs not known yet.
  - TODO: Check if my credentials on LCC2 still work. The cluster nodes AFAIK
    have dual socket Xeons. Not sure if 8 cores per CPU or 8 in total?

 For some compressors and work load, tar2sqfs may be I/O bound rather than CPU
 bound. The different machines have different storage which may impact the
 result. Should this be taken into account for comparison or eliminated by
 using a ramdisk or fiddling with the queue backlog?