LZHAM - Lossless Data Compression Codec
Copyright (c) 2009-2015 Richard Geldreich, Jr. - email@example.com - MIT License
Note: This is the unstable/experimental LZHAM repo, currently at v1.1. The stable repo (v1.0) is here: https://github.com/richgel999/lzham_codec
LZHAM is a lossless data compression codec written in C/C++ (specifically C++03), with a compression ratio similar to LZMA but with 1.5x-8x faster decompression speed. It officially supports Linux x86/x64, Windows x86/x64, OSX, and iOS, with Android support on the way.
Some slightly out of date API documentation is here (I'll be migrating this to github): https://code.google.com/p/lzham/wiki/API_Docs
LZHAM is a lossless (LZ based) data compression codec optimized for particularly fast decompression at very high compression ratios with a zlib compatible API. It's been developed over a period of 3 years and alpha versions have already shipped in many products. (The alpha is here: https://code.google.com/p/lzham/) LZHAM's decompressor is slower than zlib's, but generally much faster than LZMA's, with a compression ratio that is typically within a few percent of LZMA's and sometimes better.
LZHAM's compressor is intended for offline use, but it is tested alongside the decompressor on mobile devices and is usable on the faster settings.
LZHAM's decompressor currently has a higher cost to initialize than LZMA, so the threshold where LZHAM is typically faster vs. LZMA decompression is between 1000-13,000 of *compressed* output bytes, depending on the platform. It is not a good small block compressor: it likes large (10KB-15KB minimum) blocks.
LZHAM has simple support for patch files (delta compression), but this is a side benefit of its design, not its primary use case. Internally it supports LZ matches up to ~64KB and very large dictionaries (up to .5 GB).
LZHAM may be valuable to you if you compress data offline and distribute it to many customers, care about read/download times, and decompression speed/low CPU+power use are important to you.
I've been profiling LZHAM vs. LZMA and publishing the results on my blog: http://richg42.blogspot.com
LZHAM has been integrated into the 7zip archiver (command line and GUI) as a custom codec plugin: http://richg42.blogspot.com/2015/11/lzham-custom-codec-plugin-for-7-zip.html
10GB Benchmark Results
LZHAM (-mx=8): 3,577,047,629 Archive Test Time: 70.652 secs LZHAM (-mx=9): 3,573,782,721 Archive Test Time: 71.292 secs LZMA (-mx=9): 3,560,052,414 Archive Test Time: 223.050 secs 7z .ZIP : 4,681,291,655 Archive Test Time: 73.304 secs (unzip v6 x64 test time: 61.074 secs)
Most Common Question: So how does it compare to other libs like LZ4?
There is no single compression algorithm that perfectly suites all use cases and practical constraints. LZ4 and LZHAM are tools which lie at completely opposite ends of the spectrum:
LZ4: A symmetrical codec with very fast compression and decompression but very low ratios. Its compression ratio is typically less than even zlib's (which uses a 21+ year old algorithm). LZ4 does a good job of trading off a large amount of compression ratio for very fast overall throughput. Usage example: Reading LZMA/LZHAM/etc. compressed data from the network and decompressing it, then caching this data locally on disk using LZ4 to reduce disk usage and decrease future loading times.
LZHAM: A very asymmetrical codec with slow compression speed, but with a very competitive (LZMA-like) compression ratio and reasonably fast decompression speeds (slower than zlib, but faster than LZMA). LZHAM trades off a lot of compression throughput for very high ratios and higher decompression throughput relative to other codecs in its ratio class (which is LZMA, which runs circles around LZ4's ratio). Usage example: Compress your product's data once on a build server, distribute it to end users over a slow media like the internet, then decompress it on the end user's device.
How Much Memory Does It Need?
For decompression it's easy to compute:
- Buffered mode: decomp_mem = dict_size + ~34KB for work tables
- Unbuffered mode: decomp_mem = ~34KB
I'll be honest here, the compressor is currently an angry beast when it comes to memory. The amount needed depends mostly on the compression level and dict. size. It's approximately (max_probes=128 at level -m4): comp_mem = min(512 * 1024, dict_size / 8) * max_probes * 6 + dict_size * 9 + 22020096
Compression mem usage examples from Windows lzhamtest_x64 (note the equation is pretty off for small dictionary sizes):
- 32KB: 11MB
- 128KB: 21MB
- 512KB: 63MB
- 1MB: 118MB
- 8MB: 478MB
- 64MB: 982MB
- 128MB: 1558MB
- 256MB: 2710MB
- 512MB: 5014MB
Compressed Bitstream Compatibility
v1.0's bitstream format is now locked in place, so any future v1.x releases will be backwards/forward compatible with compressed files written with v1.0. The only thing that could change this are critical bugfixes.
Note LZHAM v1.x bitstreams are NOT backwards compatible with any of the previous alpha versions on Google Code.
LZHAM currently officially supports x86/x64 Linux, iOS, OSX, FreeBSD, and Windows x86/x64. At one time the codec compiled and ran fine on Xbox 360 (PPC, big endian). Android support is coming next. It should be easy to retarget by modifying the macros in lzham_core.h.
LZHAM has optional support for multithreaded compression. It supports gcc built-ins or MSVC intrinsics for atomic ops. For threading, it supports OSX specific Pthreads, generic Pthreads, or Windows API's.
For compilers, I've tested with gcc, clang, and MSVC 2008, 2010, and 2013. In previous alphas I also compiled with TDM-GCC x64.
LZHAM supports streaming or memory to memory compression/decompression. See include/lzham.h. LZHAM can be linked statically or dynamically, just study the headers and the lzhamtest project. On Linux/OSX, it's only been tested with static linking so far.
LZHAM also supports a usable subset of the zlib API with extensions, either include/zlib.h or #define LZHAM_DEFINE_ZLIB_API and use include/lzham.h.
- Always try to use the smallest dictionary size that makes sense for the file or block you are compressing, i.e. don't use a 128MB dictionary for a 15KB file. The codec doesn't automatically choose for you because in streaming scenarios it has no idea how large the file or block will be.
- The larger the dictionary, the more RAM is required during compression and decompression. I would avoid using more than 8-16MB dictionaries on iOS.
- For faster decompression, prefer "unbuffered" decompression mode vs. buffered decompression (avoids a dictionary alloc and extra memcpy()'s), and disable adler-32 checking. Also, use the built-in LZHAM API's, not the zlib-style API's for fastest decompression.
- Experiment with the "m_table_update_rate" compression/decompression parameter. This setting trades off a small amount of ratio for faster decompression. Note the m_table_update_rate decompression parameter MUST match the setting used during compression (same for the dictionary size). It's up to you to store this info somehow.
- Avoid using LZHAM on small compressed blocks, where small is 1KB-10KB compressed bytes depending on the platform. LZHAM's decompressor is only faster than LZMA's beyond the small block threshold. Optimizing LZHAM's decompressor to reduce its startup time relative to LZMA is a high priority.
- For best compression (I've seen up to ~4% better), enable the compressor's "extreme" parser, which is much slower but finds cheaper paths through a much denser parse graph. Note the extreme parser can greatly slow down on files containing large amounts of repeated data/strings, but it is guaranteed to finish.
- The compressor's m_level parameter can make a big impact on compression speed. Level 0 (LZHAM_COMP_LEVEL_FASTEST) uses a much simpler greedy parser, and the other levels use near-optimal parsing with different heuristic settings.
- Check out the compressor/decompressor reinit() API's, which are useful if you'll be compressing or decompressing many times. Using the reinit() API's is a lot cheaper than fully initializing/deinitializing the entire codec every time.
- LZHAM's compressor is no speed demon. It's usually slower than LZMA's, sometimes by a wide (~2x slower or so) margin. In "extreme" parsing mode, it can be many times slower. This codec was designed with offline compression in mind.
- One significant difference between LZMA and LZHAM is how uncompressible files are handled. LZMA usually expands uncompressible files, and its decompressor can bog down and run extremely slowly on uncompressible data. LZHAM internally detects when each 512KB block is uncompressible and stores these blocks as uncompressed bytes instead. LZHAM's literal decoding is significantly faster than LZMA's, so the more plain literals in the output stream, the faster LZHAM's decompressor runs vs. LZMA's.
- General advice (applies to LZMA and other codecs too): If you are compressing large amounts of serialized game assets, sort the serialized data by asset type and compress the whole thing as a single large "solid" block of data. Don't compress each individual asset, this will kill your ratio and have a higher decompression startup cost. If you need random access, consider compressing the assets lumped together into groups of a few hundred kilobytes (or whatever) each.
- LZHAM is a raw codec. It doesn't include any sort of preprocessing: EXE rel to abs jump transformation, audio predictors, etc. That's up to you to do, before compression.
Codec Test App
lzhamtest_x86/x64 is a simple command line test program that uses the LZHAM codec to compress/decompress single files. lzhamtest is not intended as a file archiver or end user tool, it's just a simple testbed.
-- Usage examples:
Compress single file "source_filename" to "compressed_filename": lzhamtest_x64 c source_filename compressed_filename
Decompress single file "compressed_filename" to "decompressed_filename": lzhamtest_x64 d compressed_filename decompressed_filename
Compress single file "source_filename" to "compressed_filename", then verify the compressed file decompresses properly to the source file: lzhamtest_x64 -v c source_filename compressed_filename
Recursively compress all files under specified directory and verify that each file decompresses properly: lzhamtest_x64 -v a c:\source_path
- Set dictionary size used during compressed to 1MB (2^20): lzhamtest_x64 -d20 c source_filename compressed_filename
Valid dictionary sizes are [15,26] for x86, and [15,29] for x64. (See LZHAM_MIN_DICT_SIZE_LOG2, etc. defines in include/lzham.h.) The x86 version defaults to 64MB (26), and the x64 version defaults to 256MB (28). I wouldn't recommend setting the dictionary size to 512MB unless your machine has more than 4GB of physical memory.
Set compression level to fastest: lzhamtest_x64 -m0 c source_filename compressed_filename
Set compression level to uber (the default): lzhamtest_x64 -m4 c source_filename compressed_filename
For best possible compression, use -d29 to enable the largest dictionary size (512MB) and the -x option which enables more rigorous (but ~4X slower!) parsing: lzhamtest_x64 -d29 -x -m4 c source_filename compressed_filename
See lzhamtest_x86/x64.exe's help text for more command line parameters.
- Linux: Use "cmake ." then "make". The cmake script only supports Linux at the moment. (Sorry, working on build systems is a drag.)
- OSX/iOS: Use the included XCode project. (NOTE: I haven't merged this over yet. It's coming!)
- Windows: Use the included VS 2010 project
IMPORTANT: With clang or gcc compile LZHAM with "No strict aliasing" ENABLED: -fno-strict-aliasing
I DO NOT test or develop the codec with strict aliasing:
It might work fine, I don't know yet. This is usually not a problem with MSVC, which defaults to strict aliasing being off.
LZHAM supports compiling as plain vanilla ANSI C/C++. To see how the codec configures itself check out lzham_core.h and search for "LZHAM_ANSI_CPLUSPLUS". All platform specific stuff (unaligned loads, threading, atomic ops, etc.) should be disabled when this macro is defined. Note, the compressor doesn't use threads or atomic operations when built this way so it's going to be pretty slow. (The compressor was built from the ground up to be threaded.)
LZHAM's decompressor is like a drag racer that needs time to get up to speed. LZHAM is not intended or optimized to be used on "small" blocks of data (less than ~10,000 bytes of *compressed* data on desktops, or around 1,000-5,000 on iOS). If your usage case involves calling the codec over and over with tiny blocks then LZMA, LZ4, Deflate, etc. are probably better choices.
The decompressor still takes too long to init vs. LZMA. On iOS the cost is not that bad, but on desktop the cost is high. I have reduced the startup cost vs. the alpha but there's still work to do.
The compressor is slower than I would like, and doesn't scale as well as it could. I added a reinit() method to make it initialize faster, but it's not a speed demon. My focus has been on ratio and decompression speed.
I use tabs=3 spaces, but I think some actual tabs got in the code. I need to run the sources through ClangFormat or whatever.
Thanks to everyone at the http://encode.ru forums. I read these forums as a lurker before working on LZHAM, and I studied every LZ related post I could get my hands on. Especially anything related to LZ optimal parsing, which still seems like a black art. LZHAM was my way of learning how to implement optimal parsing (and you can see this if you study the progress I made in the early alphas on Google Code).
Also, thanks to Igor Pavlov, the original creator of LZMA and 7zip, for advancing the start of the art in LZ compression.