Graph-structured Indices for Scalable, Fast, Fresh and Filtered Approximate Nearest Neighbor Search
Перейти к файлу
Dax Pryce e6afdbb8dd
Memory map load vectors_from_file if requested (#592)
* This commit adds some basic memmap support to the `diskannpy.vectors_from_file` utility function. You can now return memory mapped np.array conformant view vs. requiring it beloaded fully into memory.

* Rough stab at some 'how to use the python library' in the workflow markdown event
2024-10-24 11:53:19 -07:00
.github
AnyBuildLogs
apps
gperftools@fe85bbdf4c
include
python Memory map load vectors_from_file if requested (#592) 2024-10-24 11:53:19 -07:00
rust
scripts
src
tests
windows
workflows Memory map load vectors_from_file if requested (#592) 2024-10-24 11:53:19 -07:00
.clang-format
.gitattributes
.gitignore
.gitmodules
CMakeLists.txt
CMakeSettings.json
CODE_OF_CONDUCT.md
CONTRIBUTING.md
Dockerfile
DockerfileDev
LICENSE
MANIFEST.in
NOTICE.txt
README.md
SECURITY.md
clang-format.cmake
pyproject.toml Memory map load vectors_from_file if requested (#592) 2024-10-24 11:53:19 -07:00
setup.py
unit_tester.sh

README.md

DiskANN

DiskANN Main PyPI version Downloads shield License: MIT

DiskANN Paper DiskANN Paper DiskANN Paper

DiskANN is a suite of scalable, accurate and cost-effective approximate nearest neighbor search algorithms for large-scale vector search that support real-time changes and simple filters. This code is based on ideas from the DiskANN, Fresh-DiskANN and the Filtered-DiskANN papers with further improvements. This code forked off from code for NSG algorithm.

This project has adopted the Microsoft Open Source Code of Conduct. For more information see the Code of Conduct FAQ or contact opencode@microsoft.com with any additional questions or comments.

See guidelines for contributing to this project.

Linux build:

Install the following packages through apt-get

sudo apt install make cmake g++ libaio-dev libgoogle-perftools-dev clang-format libboost-all-dev

Install Intel MKL

Ubuntu 20.04 or newer

sudo apt install libmkl-full-dev

Earlier versions of Ubuntu

Install Intel MKL either by downloading the oneAPI MKL installer or using apt (we tested with build 2019.4-070 and 2022.1.2.146).

# OneAPI MKL Installer
wget https://registrationcenter-download.intel.com/akdlm/irc_nas/18487/l_BaseKit_p_2022.1.2.146.sh
sudo sh l_BaseKit_p_2022.1.2.146.sh -a --components intel.oneapi.lin.mkl.devel --action install --eula accept -s

Build

mkdir build && cd build && cmake -DCMAKE_BUILD_TYPE=Release .. && make -j 

Windows build:

The Windows version has been tested with Enterprise editions of Visual Studio 2022, 2019 and 2017. It should work with the Community and Professional editions as well without any changes.

Prerequisites:

  • CMake 3.15+ (available in VisualStudio 2019+ or from https://cmake.org)
  • NuGet.exe (install from https://www.nuget.org/downloads)
    • The build script will use NuGet to get MKL, OpenMP and Boost packages.
  • DiskANN git repository checked out together with submodules. To check out submodules after git clone:
git submodule init
git submodule update
  • Environment variables:
    • [optional] If you would like to override the Boost library listed in windows/packages.config.in, set BOOST_ROOT to your Boost folder.

Build steps:

  • Open the "x64 Native Tools Command Prompt for VS 2019" (or corresponding version) and change to DiskANN folder
  • Create a "build" directory inside it
  • Change to the "build" directory and run
cmake ..

OR for Visual Studio 2017 and earlier:

<full-path-to-installed-cmake>\cmake ..

This will create a diskann.sln solution. Now you can:

  • Open it from VisualStudio and build either Release or Debug configuration.
  • <full-path-to-installed-cmake>\cmake --build build
  • Use MSBuild:
msbuild.exe diskann.sln /m /nologo /t:Build /p:Configuration="Release" /property:Platform="x64"
  • This will also build gperftools submodule for libtcmalloc_minimal dependency.
  • Generated binaries are stored in the x64/Release or x64/Debug directories.

Usage:

Please see the following pages on using the compiled code:

Please cite this software in your work as:

@misc{diskann-github,
   author = {Simhadri, Harsha Vardhan and Krishnaswamy, Ravishankar and Srinivasa, Gopal and Subramanya, Suhas Jayaram and Antonijevic, Andrija and Pryce, Dax and Kaczynski, David and Williams, Shane and Gollapudi, Siddarth and Sivashankar, Varun and Karia, Neel and Singh, Aditi and Jaiswal, Shikhar and Mahapatro, Neelam and Adams, Philip and Tower, Bryan and Patel, Yash}},
   title = {{DiskANN: Graph-structured Indices for Scalable, Fast, Fresh and Filtered Approximate Nearest Neighbor Search}},
   url = {https://github.com/Microsoft/DiskANN},
   version = {0.6.1},
   year = {2023}
}