Sylvain Jeaugey 88d44d777f 2.19.4-1
Split transport connect phase into multiple steps to avoid port
exhaustion when connecting alltoall at large scale. Defaults to 128
peers per round.
Fix memory leaks on CUDA graph capture.
Fix alltoallv crash on self-sendrecv.
Make topology detection more deterministic when PCI speeds are not
available (fix issue #1020).
Properly close shared memory in NVLS resources.
Revert proxy detach after 5 seconds.
Add option to print progress during transport connect.
Add option to set NCCL_DEBUG to INFO on first WARN.
2023-11-13 10:36:12 -08:00
2023-09-26 05:50:33 -07:00
2023-09-26 05:50:33 -07:00
2023-11-13 10:36:12 -08:00
2021-07-08 14:30:14 -07:00
2023-11-13 10:36:12 -08:00
2018-09-25 14:12:01 -07:00
2021-02-09 15:36:48 -08:00
2019-04-05 13:05:45 -07:00
2021-02-09 15:36:48 -08:00

NCCL

Optimized primitives for inter-GPU communication.

Introduction

NCCL (pronounced "Nickel") is a stand-alone library of standard communication routines for GPUs, implementing all-reduce, all-gather, reduce, broadcast, reduce-scatter, as well as any send/receive based communication pattern. It has been optimized to achieve high bandwidth on platforms using PCIe, NVLink, NVswitch, as well as networking using InfiniBand Verbs or TCP/IP sockets. NCCL supports an arbitrary number of GPUs installed in a single node or across multiple nodes, and can be used in either single- or multi-process (e.g., MPI) applications.

For more information on NCCL usage, please refer to the NCCL documentation.

Build

Note: the official and tested builds of NCCL can be downloaded from: https://developer.nvidia.com/nccl. You can skip the following build steps if you choose to use the official builds.

To build the library :

$ cd nccl
$ make -j src.build

If CUDA is not installed in the default /usr/local/cuda path, you can define the CUDA path with :

$ make src.build CUDA_HOME=<path to cuda install>

NCCL will be compiled and installed in build/ unless BUILDDIR is set.

By default, NCCL is compiled for all supported architectures. To accelerate the compilation and reduce the binary size, consider redefining NVCC_GENCODE (defined in makefiles/common.mk) to only include the architecture of the target platform :

$ make -j src.build NVCC_GENCODE="-gencode=arch=compute_70,code=sm_70"

Install

To install NCCL on the system, create a package then install it as root.

Debian/Ubuntu :

$ # Install tools to create debian packages
$ sudo apt install build-essential devscripts debhelper fakeroot
$ # Build NCCL deb package
$ make pkg.debian.build
$ ls build/pkg/deb/

RedHat/CentOS :

$ # Install tools to create rpm packages
$ sudo yum install rpm-build rpmdevtools
$ # Build NCCL rpm package
$ make pkg.redhat.build
$ ls build/pkg/rpm/

OS-agnostic tarball :

$ make pkg.txz.build
$ ls build/pkg/txz/

Tests

Tests for NCCL are maintained separately at https://github.com/nvidia/nccl-tests.

$ git clone https://github.com/NVIDIA/nccl-tests.git
$ cd nccl-tests
$ make
$ ./build/all_reduce_perf -b 8 -e 256M -f 2 -g <ngpus>

All source code and accompanying documentation is copyright (c) 2015-2020, NVIDIA CORPORATION. All rights reserved.

Description
No description provided
Readme 4.6 MiB
Languages
C++ 70.9%
C 24.8%
Cuda 2%
Python 1.4%
Makefile 0.9%