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This is v1.0 of PyECLib.  This library provides a simple Python interface for
implementing erasure codes and is known to work with Python v2.6, 2.7 and 3.x.

To obtain the best possible performance, the library utilizes liberasurecode,
which is a C based erasure code library.  Please let us know if you have any
other issues building or installing (email: kmgreen2@gmail.com or
tusharsg@gmail.com).

This library makes use of Jesasure for Reed-Solomon as implemented by the
liberasurecode library and provides its' own flat XOR-based erasure code
encoder and decoder.  Currently, it implements a specific class of HD
Combination Codes (see "Flat XOR-based erasure codes in storage systems:
Constructions, efficient recovery, and tradeoffs" in IEEE MSST 2010).  These
codes are well-suited to archival use-cases, have a simple construction and
require a minimum number of participating disks during single-disk
reconstruction (think XOR-based LRC code).

Examples of using this library are provided in "tools" directory:

  Command-line encoder::
  
      tools/pyeclib_encode.py

  Command-line decoder::
  
      tools/pyeclib_decode.py

  Utility to determine what is needed to reconstruct missing fragments::
  
      tools/pyeclib_fragments_needed.py


PyEClib initialization::

  ec_driver = ECDriver(k=<num_encoded_data_fragments>,
                       m=<num_encoded_parity_fragments>,
                       ec_type=<ec_scheme>))

Supported ``ec_type`` values:

  * ``jerasure_rs_vand`` => Vandermonde Reed-Solomon encoding, based on Jerasure [1]
  * ``jerasure_rs_cauchy`` => Cauchy Reed-Solomon encoding (Jerasure variant), based on Jerasure [2]
  * ``flat_xor_hd_3``, ``flat_xor_hd_4`` => Flat-XOR based HD combination codes, liberasurecode [3]
  * ``isa_l_rs_vand`` => Intel Storage Acceleration Library (ISA-L) - SIMD accelerated Erasure Coding backends [4]
  * ``shss`` => NTT Lab Japan's Erasure Coding Library

A configuration utility is provided to help compare available EC schemes in 
terms of performance and redundancy:: tools/pyeclib_conf_tool.py


The Python API supports the following functions:

- EC Encode

  Encode N bytes of a data object into k (data) + m (parity) fragments::

    def encode(self, data_bytes)

    input:   data_bytes - input data object (bytes)
    returns: list of fragments (bytes)


- EC Decode

  Decode between k and k+m fragments into original object::

    def decode(self, fragment_payloads)

    input:   list of fragment_payloads (bytes)
    returns: decoded object (bytes)


*Note*: ``bytes`` is a synonym to ``str`` in Python 2.6, 2.7.
In Python 3.x, ``bytes`` and ``str`` types are non-interchangeable and care
needs to be taken when handling input to and output from the ``encode()`` and
``decode()`` routines.


- EC Reconstruct

  Reconstruct "missing_fragment_indexes" using "available_fragment_payloads"::

    def reconstruct(self, available_fragment_payloads, missing_fragment_indexes)

    

- Minimum parity fragments needed for durability gurantees::
    
    def min_parity_fragments_needed(self)


 
- Fragments needed for EC Reconstruct

  Return the indexes of fragments needed to reconstruct "missing_fragment_indexes"::

    def fragments_needed(self, missing_fragment_indexes)



- Get EC Metadata

  Return an opaque buffer known by the underlying library::

    def get_metadata(self, fragment)



- Verify EC Stripe Consistency

  Use opaque buffers from get_metadata() to verify a the consistency of a stripe::

    def verify_stripe_metadata(self, fragment_metadata_list)



- Get EC Segment Info

  Return a dict with the keys - segment_size, last_segment_size, fragment_size, last_fragment_size and num_segments::

    def get_segment_info(self, data_len, segment_size)



- Get EC Segment Info given a data length and segment size::

    def get_segment_info_byterange(self, ranges, data_len, segment_size)

  Assume a range request is given for an object with segment size 3K and
  a 1 MB file:

  Ranges = (0, 1), (1, 12), (10, 1000), (0, segment_size-1),
                 (1, segment_size+1), (segment_size-1, 2*segment_size)

  This will return a map keyed on the ranges, where there is a recipe
  given for each range:

  {
     (0, 1): {0: (0, 1)},
     (10, 1000): {0: (10, 1000)},
     (1, 12): {0: (1, 12)},
     (0, 3071): {0: (0, 3071)},
     (3071, 6144): {0: (3071, 3071), 1: (0, 3071), 2: (0, 0)},
     (1, 3073): {0: (1, 3071), 1: (0,0)}
  }


Quick Start

  Install pre-requisites:
  
    * Python 2.6, 2.7 or 3.x (including development packages), argparse, setuptools
    * liberasurecode v1.0.4 or greater [3]
    * Erasure code backend libraries, gf-complete and Jerasure [1],[2], ISA-L [4] etc

  Install PyECLib::

    $ sudo python setup.py install

  Run test suite included::

    $ ./.unittests

  If all of this works, then you should be good to go.  If not, send us an email!

  If the test suite fails because it cannot find any of the shared libraries,
  then you probably need to add /usr/local/lib to the path searched when loading
  libraries.  The best way to do this (on Linux) is to add '/usr/local/lib' to::

    /etc/ld.so.conf 

  and then make sure to run::

    $ sudo ldconfig


References

 [1] Jerasure, C library that supports erasure coding in storage applications, http://jerasure.org

 [2] Greenan, Kevin M et al, "Flat XOR-based erasure codes in storage systems", http://www.kaymgee.com/Kevin_Greenan/Publications_files/greenan-msst10.pdf

 [3] liberasurecode, C API abstraction layer for erasure coding backends, https://bitbucket.org/tsg-/liberasurecode

 [4] Intel(R) Storage Acceleration Library (Open Source Version), https://01.org/intel%C2%AE-storage-acceleration-library-open-source-version

 [5] Kota Tsuyuzaki <tsuyuzaki.kota@lab.ntt.co.jp>, Ryuta Kon <kon.ryuta@po.ntts.co.jp>, "NTT SHSS Erasure Coding backend"

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