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README

X-Mem: A Cross-Platform and Extensible Memory Characterization Tool for the Cloud v2.4.2

X-Mem is a flexible open-source research tool for characterizing memory hierarchy throughput, latency, power, and more. The tool was developed jointly by Microsoft and the UCLA NanoCAD Lab. This project was started by Mark Gottscho (Email: [email protected]) as a Summer 2014 PhD intern at Microsoft Research. X-Mem is released freely and open-source under the MIT License. The project is under active development.

PROJECT REVISION DATE: April 29, 2016 README UPDATED: July 20, 2016


RESEARCH PAPER & ATTRIBUTION

We have a research tool paper describing the motivation, design, and implementation of X-Mem, as well as three experimental case studies using tools to deliver insights useful to both cloud providers and subscribers. If you use our tool and publish or otherwise publicly report results, we ask that you please cite the following paper as well as provide a link to our tool homepage (https://nanocad-lab.github.io/X-Mem).

Download the pre-print of our paper here: http://nanocad.ee.ucla.edu/pub/Main/Publications/C91_paper.pdf. Published paper on IEEE Xplore: http://ieeexplore.ieee.org/xpl/articleDetails.jsp?arnumber=7482101

Citation:

Mark Gottscho, Sriram Govindan, Bikash Sharma, Mohammed Shoaib, and Puneet Gupta. X-Mem: A Cross-Platform and Extensible Memory Characterization Tool for the Cloud. In Proceedings of the IEEE International Symposium on Performance Analysis of Systems and Software (ISPASS), pp. 263-273. Uppsala, Sweden. April 17-19, 2016. DOI: http://dx.doi.org/10.1109/ISPASS.2016.7482101

BiBTeX:

@inproceedings{GottschoISPASS2016, author = {Gottscho, Mark and Govindan, Sriram and Sharma, Bikash and Shoaib, Mohammed and Gupta, Puneet}, booktitle = {Proceedings of the IEEE International Symposium on Performance Analysis of Systems and Software (ISPASS)}, title = {{X-Mem: A Cross-Platform and Extensible Memory Characterization Tool for the Cloud}}, month = {April}, year = {2016}, doi = {10.1109/ISPASS.2016.7482101}, pages = {263--273} }


VERSION CONTROL AND OBTAINING SOURCE CODE

This project is under version control using git. Its master repository is hosted at https://github.com/Microsoft/X-Mem.git. There is also another mirrored fork at https://github.com/nanocad-lab/X-Mem.git.


OBTAINING PRE-BUILT BINARIES

If you don't want to build X-Mem from source, you can get regular releases of pre-built binaries for Windows and GNU/Linux from the project homepage, located at https://nanocad-lab.github.io/X-Mem.


LICENSE

The MIT License (MIT)

Copyright (c) 2014 Microsoft

Permission is hereby granted, free of charge, to any person obtaining a copy of this software and associated documentation files (the "Software"), to deal in the Software without restriction, including without limitation the rights to use, copy, modify, merge, publish, distribute, sublicense, and/or sell copies of the Software, and to permit persons to whom the Software is furnished to do so, subject to the following conditions:

The above copyright notice and this permission notice shall be included in all copies or substantial portions of the Software.

THE SOFTWARE IS PROVIDED "AS IS", WITHOUT WARRANTY OF ANY KIND, EXPRESS OR IMPLIED, INCLUDING BUT NOT LIMITED TO THE WARRANTIES OF MERCHANTABILITY, FITNESS FOR A PARTICULAR PURPOSE AND NONINFRINGEMENT. IN NO EVENT SHALL THE AUTHORS OR COPYRIGHT HOLDERS BE LIABLE FOR ANY CLAIM, DAMAGES OR OTHER LIABILITY, WHETHER IN AN ACTION OF CONTRACT, TORT OR OTHERWISE, ARISING FROM, OUT OF OR IN CONNECTION WITH THE SOFTWARE OR THE USE OR OTHER DEALINGS IN THE SOFTWARE.


DESIGN PHILOSOPHY

Previous memory benchmarking tools such as STREAM/STREAM2, lmbench3, and mlc all had various shortcomings that made them inadequate for emerging needs in the cloud. In particular, cloud systems present four key challenges that we addressed with X-Mem. Please refer to our ISPASS'16 paper above for more information.


FEATURES

This tool is provided as open source with the hope of being useful to the broader research and development community. Here is a non-exhaustive list of X-Mem's features.

Flexibility: Easy reconfiguration for different combinations of tests.

  • Working sets in increments of 4KB, allowing cache up to main memory-level benchmarking.
  • NUMA support.
  • Multi-threading support.
  • Large page support.

Extensibility: Modularity via C++11 object-oriented principles.

  • Supports rapid addition of new benchmark kernel routines.
  • Example: stream triad algorithm, impact of false sharing, etc. are possible with minor changes.

Cross-platform: Currently implemented for two OSes and architecture families.

  • GNU/Linux: Intel x86 (32-bit), x86-64, and x86-64 with AVX extensions, ARM (32-bit), ARM (32-bit) with NEON, ARMv8 (64-bit), Xeon Phi (Intel mic, Knights Corner). Tested specifically with Ubuntu 12.04, 14.04, and CentOS 7.
  • Windows: Intel x86 (32-bit), x86-64, and x86-64 with AVX extensions. Tested specifically with Windows 8.1 and Server 2012 R2.
  • ARM on Windows can compile using VC++, but cannot link due to a lack of library support for desktop/command-line ARM apps. This may be resolved in the future.
  • Designed to allow straightforward porting to other operating systems and ISAs.

Memory throughput:

  • Accurate measurement of sustained memory throughput to all levels of cache and memory.
  • Regular access patterns: forward & reverse sequential as well as strides of 2, 4, 8, and 16 words.
  • Random access patterns.
  • Read and write.
  • 32, 64, 128, 256, 512-bit width memory instructions where applicable on each architecture.

Memory latency:

  • Accurate measurement of round-trip memory latency to all levels of cache and memory.
  • Loaded and unloaded latency via use of multithreaded load generation.

Memory power:

  • Support custom power instrumentation through a simple interface that end-users can implement.
  • Can collect DRAM power via custom driver exposed in Windows performance counter API.

Documentation:

  • Extensive Doxygen source code comments, PDF manual, HTML.

INCLUDED EXTENSIONS (under src/include/ext and src/ext directories):

  • Loaded latency benchmark variant with load delays inserted as nop instructions between memory instructions.
    • This is done for 32, 64, 128, 256, 512-bit load chunk sizes where applicable using the forward sequential read pattern.
  • Other extensions may be released in the future. If you have a development request, or would like to mainstream your own extension, let us know!

Feel free to contact us for any other feature requests.


RUNTIME PREREQUISITES

There are a few runtime prerequisites in order for the software to run correctly. Note that these requirements are for the pre-compiled binaries that are available on the project homepage at https://nanocad-lab.github.io/X-Mem. If you compile X-Mem yourself, then the runtime requirements may vary.

HARDWARE:

  • Intel x86, x86-64, x86-64+AVX, or MIC (Xeon Phi/Knights Corner) CPU. AMD CPUs that are compatible with Intel Architecture ISAs should also work fine.
  • ARM Cortex-A series processors with VFP and NEON extensions. Specifically tested on ARM Cortex A9 (32-bit) which is ARMv7. 64-bit builds for ARMv8-A should also work but have not been tested. GNU/Linux builds only. ARM on Windows can compile using VC++, but cannot link due to a lack of library support for desktop/command-line ARM apps. This may be resolved in the future. If you can get this working, let us know!

WINDOWS:

  • Microsoft Windows 8.1 64-bit or later, Server 2012 R2 or later.
  • Microsoft Visual C++ 2015 Redistributables (32-bit) -- for x86 (32-bit) builds.
  • Microsoft Visual C++ 2015 Redistributables (64-bit) -- for x86-64 and x86-64 with AVX builds
  • You MAY need Administrator privileges, in order to:
    • Use large pages, if the --large_pages option is selected (see USAGE, below)
    • The first time you use --large_pages on a given Windows machine, you may need to ensure that your Windows user account has the necessary rights to allow lockable memory pages. To do this on Windows 8, run gpedit.msc --> Local Computer Policy --> Computer Configuration --> Windows Settings --> Security Settings --> Local Policies --> User Rights Assignment --> Add your username to "Lock pages in memory". Then log out and then log back in.
    • Use the PowerReader interface, depending on end-user implementation
    • Elevate thread priority and pin threads to logical CPUs for improved performance and benchmarking consistency

GNU/LINUX:

  • GNU utilities with support for C++11. Tested with gcc 4.8.2 on Ubuntu 14.04 LTS for x86 (32-bit), x86-64, x86-64+AVX, and MIC on Intel Sandy Bridge, Ivy Bridge, Haswell, and Knights Corner families.
  • libhugetlbfs. You can obtain it at https://github.com/libhugetlbfs/libhugetlbfs. On Ubuntu systems, you can install using "sudo apt-get install libhugetlbfs0". If you don't have this or cannot install it, this should be fine but you will not be able to use large pages. Note that this package requires Linux kernel 2.6.16 or later. This should not be an issue on most modern Linux systems.
  • Potentially, administrator privileges, if you plan to use the --large_pages option.
    • During runtime, if the --large_pages option is selected, you may need to first manually ensure that large pages are available from the OS. This can be done by running "hugeadm --pool-list". It is recommended to set minimum pool to 1GB (in order to measure DRAM effectively). If needed, this can be done by running "hugeadm --pool-pages-min 2MB:512". Alternatively, run the linux_setup_runtime_hugetlbfs.sh script that is provided with X-Mem.

INSTALLATION

The only file that is needed to run on Windows is the respective executable xmem-win-.exe on Windows, and xmem-linux- on GNU/Linux. It has no other dependencies aside from the pre-installed system prerequisites listed above.


USAGE

To get help using the tool, simply run it with the "-h" or "--help" option. It includes a list of all available options and provides usage examples.


BUILDING FROM SOURCE

After you have set the desired compile-time options, build the source. On Windows, running build-win.bat should suffice. On GNU/Linux, run build-linux.sh. Each takes a single argument specifying the target architecture.

If you customize your build, make sure you use the "Release" mode for your OS/compiler. Do not include debug capabilities as it can dramatically affect performance of the benchmarks, leading to pessimistic results.


BUILD PREREQUISITES

There are a few software build prerequisites, depending on your platform.

WINDOWS:

  • Any version of Visual Studio 2013 64-bit (version 12.0) on Windows 8.1 or 2015 (version 14.0) on Windows 10. Note that if you build using VS 2013, then to run the binary on another machine it will need the Visual C++ 2013 Redistributables installed. Likewise for VS 2015.
  • Python 2.7. You can obtain it at http://www.python.org.
  • SCons build system. You can obtain it at http://www.scons.org. Build tested with SCons 2.3.4.

GNU/LINUX:

  • bash shell. Other shells will probably work but are untested.
  • gcc with support for the C++11 standard. Tested with gcc version 4.8.2 on Ubuntu 14.04 LTS for x86 (32-bit), x86-64, x86-64 with AVX builds. To compile for Intel Xeon Phi/MIC/Knights Corner, we recommend the use of Intel's compiler (icc) instead of gcc.
  • gcc cross-compiler for ARM targets (assumed build on x86-64 Ubuntu host).
  • Python 2.7. You can obtain it at http://www.python.org. On Ubuntu systems, you can install using "sudo apt-get install python2.7". You may need some other Python 2.7 packages as well.
  • SCons build system. You can obtain it at http://www.scons.org. On Ubuntu systems, you can install using "sudo apt-get install scons". Build tested with SCons 2.3.4.
  • Kernel support for large (huge) pages. This support can be verified on your Linux installation by running "grep hugetlbfs /proc/filesystems". If you do not have huge page support in your kernel, you can build a kernel with the appropriate options switched on: "CONFIG_HUGETLB_PAGE" and "CONFIG_HUGETLBFS".
  • libhugetlbfs. This is used for allocating large (huge) pages if the --large_pages runtime option is selected. You can obtain it at https://github.com/libhugetlbfs/libhugetlbfs. On Ubuntu systems, you can install using "sudo apt-get install libhugetlbfs-dev".

DOCUMENTATION BUILD PREREQUISITES

The following tools are only needed for automatically regenerating source code documentation with HTML and PDF.

WINDOWS:

GNU/LINUX:

  • doxygen tool. You can obtain it at http://www.stack.nl/~dimitri/doxygen. On Ubuntu systems, you can install with "sudo apt-get install doxygen".
  • LaTeX distribution. On Ubuntu systems, LaTeX distributed with doxygen should actually be sufficient. You can install with "sudo apt-get install doxygen-latex".
  • make. This should be included on any GNU/Linux system.

SOURCE CODE DOCUMENTATION

The tool comes with built-in Doxygen comments in the source code, which can be used to generate both HTML and LaTeX --> PDF documentation. Documentation is maintained under the doc/ subdirectory. To build documentation after modifying the source, run build-docs-win.bat on Windows, or build-docs-linux.sh on GNU/Linux systems. Note that Doxygen and a LaTeX distribution must be installed on the system.


BUILDING AND RUNNING IN CONTAINERS USING DOCKER

We have two Docker repositories to make it much easier to get started using X-Mem on any flavor of Linux.

If you wish to simply run pre-built X-Mem binaries, but cannot or don't want to install the pre-requisite libraries, you can use images from the following Docker repository:

https://hub.docker.com/r/mgottscho/x-mem

Once you have pulled the image, run as follows:

docker run -t x-mem:VERSION_NUMBER_HERE STANDARD_X-MEM_OPTIONS HERE

This image assumes you have an Intel x86-64 system with support for the AVX instruction set extensions. If you don't have AVX, it may crash if it executes an illegal instruction.

If you want to quickly get to modifying X-Mem and build your own custom binaries with minimal hassle, you can use images from the following Docker repository:

https://hub.docker.com/r/mgottscho/x-mem-build-env

Once you have pulled the image, run as follows:

docker run -i -t x-mem-build-env:VERSION_NUMBER_HERE

You will enter the container in the /X-Mem directory interactively using the bash shell. Everything in the X-Mem source tree will be inside the container, ready to compile and run. Of course, if you modify any files inside the container they will not necessarily stick or be visible outside without using volumes, etc. See Docker documentation for more information.

Perhaps the best way to quickly modify, build, and run X-Mem would be the following series of steps:

  1. Clone the X-Mem git repository to your Linux machine that has Docker installed:

git clone github.com/Microsoft/X-Mem /PATH/TO/LOCAL/WORKING/DIRECTORY/X-Mem

  1. Change into X-Mem directory:

cd X-Mem

  1. Make your required source changes by directly editing files in the source tree.

  2. If you have the required dependencies (described in this README), then you can build binaries using the build-linux.sh script. If you don't, but you do have Docker installed, build a Docker image for the X-Mem build environment:

docker build -t x-mem-build-env:VERSION_NUMBER_HERE .

  1. Run the Docker image to enter the container:

docker run -i -t x-mem-build-env:VERSION_NUMBER_HERE

  1. Once inside the container, you will be running bash at at the /X-Mem directory. Now build from within the container:

./build-linux.sh YOUR_TARGET_ARCHITECTURE NUMBER_OF_THREADS

  1. If the build is successful, run your new X-Mem binary, still inside the container (or export it to your host through a volume):

bin/xmem-linux-YOUR_TARGET_ARCHITECTURE --help

That's it!


CONTACT, FEEDBACK, AND BUG REPORTS

For questions, comments, criticism, bug reports, and other feedback for this software, please contact Mark Gottscho via email at [email protected] or via web at http://seas.ucla.edu/~gottscho.


ACKNOWLEDGMENT

Mark Gottscho would like to thank Dr. Mohammed Shoaib of Microsoft Research and Dr. Sriram Govindan of Microsoft for their mentorship in the creation of this software. Further thanks to Dr. Bikash Sharma, Mark Santaniello, Mike Andrewartha, and Laura Caulfield of Microsoft for their contributions, feedback, and assistance. Thank you as well to Dr. Jie Liu of Microsoft Research, Dr. Badriddine Khessib and Dr. Kushagra Vaid of Microsoft, and Prof. Puneet Gupta of UCLA for giving Mark the opportunity to create this work. Finally, Mark would like to thank Dr. Fedor Pikus of Mentor Graphics for teaching him some useful programming techniques.


MICROSOFT CODE OF CONDUCT

This project has adopted the Microsoft Open Source Code of Conduct. For more information see the Code of Conduct FAQ or contact [email protected] with any additional questions or comments.

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