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MSCCL-tools

This repo contains the developer tool stack of the Microsoft Collective Communication Library (MSCCL), a platform for programmable communication on GPUs. Algorithms created with MSCCL can:

  • Implement either MPI-style collectives like Allreduce, or any application specific communication pattern.
  • Target specific hardware and interconnect topologies, unlocking their full potential.
  • Optimize for the data sizes in your application, making the best tradeoff between latency and bandwidth utilization.

MSCCL-tools also contains pre-made algorithms targeting various Azure multi-GPU VM types. See the Available Algorithms section to find out what is currently available.

MSCCL has two ways of creating new algorithms:

  1. MSCCLang, a high-level DSL that talks about communication in an intuitive chunk-oriented form. See the MSCCLang section for how to get started.
  2. Synthesis, which automatically solves optimal algorithms for a given hardware topology. Making synthesis general enough for common use cases is an on-going research project See the synthesis readme for an introduction.

Usage

The MSCCL Python package ships with a registry of synthesis strategies and hand optimized algorithms. These can be loaded into the runtime through the msccl.init function, which must be called before the application creates its NCCL communicator. For PyTorch this means before torch.distributed is initialized.

The following snippet requests msccl.init to provide an Alltoall algorithm in a configuration of 2 Azure NDv2 machines:

import msccl
msccl.init('ndv2', 2, (msccl.Collective.alltoall, ('1MB')))

This will find an algorithm provider that can create an Alltoall algorithm that is expected to be good with 1MB of data. That will call a synthesis routine that writes the algorithm to disk. msccl.init will then pass a configuration file pointing to this algorithm to the runtime through environment variables. If the SKU is unknown, 'auto' can be passed in instead.

See the examples for more on msccl.init usage.

Available Algorithms

MSCCL's built-in algorithms are registered for combinations of hardware configuration and size of input data where we have benchmarked them to provide speedup over NCCL. To list the algorithms currently in MSCCL's built-in registry, run msccl plans list on the command line. This will print out the following table (on 4/22/2022):

Machine Collective # machines From To Protocol Priority Plan name
ndv2 alltoall >=2 1 MB infinity Simple 0 call synthesize_ndv2_relay_alltoall
ndv4 allreduce 1 256 KB 20 MB LL128 0 run ndv4_ring_allreduce
ndv4 alltoall 8,16,32,64 1 MB 32 MB LL128 0 run ndv4_alltoall_hierarchical
ndv4 alltoall 8,16,32 32 MB infinity Simple 0 run ndv4_alltoall_hierarchical
ndv4 alltoall 64 32 MB infinity Simple 0 run ndv4_alltoall_three_step

Each line lists an algorithm registration and the conditions under which it is triggered. For example, the ndv4_alltoall_hierarchical algorithm will be used with NCCL's lower latency LL128 protocol when:

  • the user has called Alltoall,
  • there are 8, 16, 32 or 64 Azure NDv4 machines, and
  • the data size is from 1 MB to 32 MB.

The repository parasailteam/msccl-presynth repository offers additional algorithms that have been pre-synthesized for fixed configurations. To enable them install the package and import it before the call to msccl.init.

MSCCLang

MSCCLang is a high-level language for specifying collective communication algorithms in an intuitive chunk-oriented form. The language is available as a Python-integrated DSL.

The language is still under development and lacks comprehensive documentation. For now, please refer to the pre-print of our upcoming paper and the examples in examples/mscclang.

Synthesis

MSCCL started out as a synthesizer for collective algorithms, and general synthesis of collective algorithms is an on-going research project. See this readme for using MSCCL as a synthesizer.

Installation

Python Package Installation

To install either clone this repo and run "pip install ." or run:

pip install git+https://github.com/microsoft/msccl-tools.git

Installing the MSCCL Python package also installs the msccl command line tool. To enable Bash completion for the msccl tool:

echo 'eval "$(register-python-argcomplete msccl)"' >> ~/.bashrc

Runtime Installation

Algorithms are executed by the Microsoft Collective Communication Library (MSCCL), which is API compatible with NCCL. See https://github.com/microsoft/msccl for instructions.

To use MSCCL with PyTorch, the built in NCCL submodule has to be replaced with MSCCL's version. Additionally, to expose the new native Alltoall support that MSCCL adds, PyTorch's torch.distributed package can optionally be patched. The following commands perform these steps and install PyTorch with MSCCL:

git clone https://github.com/pytorch/pytorch.git
cd pytorch    
git checkout tags/v1.9.0 -b v1.9.0_msccl
perl -p -i -e  's/url = https:\/\/github\.com\/NVIDIA\/nccl/url = https:\/\/github\.com\/microsoft\/msccl/g' .gitmodules
git submodule sync third_party/nccl
git submodule update --init --recursive
git submodule update --init --recursive --remote third_party/nccl
git apply third_party/nccl/nccl/patches/nccl.cpp.patch
python setup.py install

Note on Azure NDv2

Azure NDv2 does not expose the true PCIe topology of the machines to the VM and worse, does not assign PCIe devices consistently to the virtual paths in the VM. As MSCCL is generating topology-aware algorithms, this device ordering must be fixed. The msccl_ndv2_launcher.sh script can be used to fix this problem. The script solves the automorphisms from the local VM's NVLink topology to the reference topology and selects one of the 4 automorphisms based on measured placement of the Infiniband card such that GPU 0 is close to the NIC. A tool called inspector-topo needs to be available for the latter step.

Contributing

This project welcomes contributions and suggestions. Most contributions require you to agree to a Contributor License Agreement (CLA) declaring that you have the right to, and actually do, grant us the rights to use your contribution. For details, visit https://cla.opensource.microsoft.com.

When you submit a pull request, a CLA bot will automatically determine whether you need to provide a CLA and decorate the PR appropriately (e.g., status check, comment). Simply follow the instructions provided by the bot. You will only need to do this once across all repos using our CLA.

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.

Trademarks

This project may contain trademarks or logos for projects, products, or services. Authorized use of Microsoft trademarks or logos is subject to and must follow Microsoft's Trademark & Brand Guidelines. Use of Microsoft trademarks or logos in modified versions of this project must not cause confusion or imply Microsoft sponsorship. Any use of third-party trademarks or logos are subject to those third-party's policies.

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