• Stars
    star
    331
  • Rank 127,323 (Top 3 %)
  • Language
    Jupyter Notebook
  • License
    Apache License 2.0
  • Created over 1 year ago
  • Updated 6 months ago

Reviews

There are no reviews yet. Be the first to send feedback to the community and the maintainers!

Repository Details

Puck is a high-performance ANN search engine

Description

This project is a library for approximate nearest neighbor(ANN) search named Puck. In Industrial deployment scenarios, limited memory, expensive computer resources and increasing database size are as important as the recall-vs-latency tradeof for all search applications. Along with the rapid development of retrieval business service, it has the big demand for the highly recall-vs-latency and precious but finite resource, the borning of Puck is precisely for meeting this kind of need.

It contains two algorithms, Puck and Tinker. This project is written in C++ with wrappers for python3.
Puck is an efficient approache for large-scale dataset, which has the best performance of multiple 1B-datasets in NeurIPS'21 competition track. Since then, performance of Puck has increased by 70%. Puck includes a two-layered architectural design for inverted indices and a multi-level quantization on the dataset. If the memory is going to be a bottleneck, Puck could resolve your problems.
Tinker is an efficient approache for smaller dataset(like 10M, 100M), which has better performance than Nmslib in big-ann-benchmarks. The relationships among similarity points are well thought out, Tinker need more memory to save these. Thinker cost more memory then Puck, but has better performace than Puck. If you want a better searching performance and need not concerned about memory used, Tinker is a better choiese.

Introduction

This project supports cosine similarity, L2(Euclidean) and IP(Inner Product, conditioned). When two vectors are normalized, L2 distance is equal to 2 - 2 * cos. IP2COS is a transform method that convert IP distance to cos distance. The distance value in search result is always L2.

Puck use a compressed vectors(after PQ) instead of the original vectors, the memory cost just over to 1/4 of the original vectors by default. With the increase of datasize, Puck's advantage is more obvious.
Tinker need save relationships of similarity points, the memory cost is more than the original vectors (less than Nmslib) by default. More performance details in benchmarks. Please see this readme for more details.

Linux install

1.The prerequisite is mkl, python and cmake.

MKL: MKL must be installed to compile puck, download the MKL installation package corresponding to the operating system from the official website, and configure the corresponding installation path after the installation is complete. source the MKL component environment script, eg. source ${INSTALL_PATH}/mkl/latest/env/vars.sh. This will maintain many sets of environment variables, like MKLROOT.

https://www.intel.com/content/www/us/en/developer/tools/oneapi/onemkl-download.html

python: Version higher than 3.6.0.

cmake: Version higher than 3.21.

2.Clone this project.

git clone https://github.com/baidu/puck.git
cd puck

3.Use cmake to build this project.

3.1 Build this project
cmake -DCMAKE_BUILD_TYPE=Release 
    -DMKLROOT=${MKLROOT} \
    -DBLA_VENDOR=Intel10_64lp_seq \
    -DBLA_STATIC=ON  \
    -B build .

cd build && make && make install
3.2 Build with GTEST

Use conditional compilation variable named WITH_TESTING.

cmake -DCMAKE_BUILD_TYPE=Release 
    -DMKLROOT=${MKLROOT} \
    -DBLA_VENDOR=Intel10_64lp_seq \
    -DBLA_STATIC=ON  \
    -DWITH_TESTING=ON \
    -B build .

cd build && make && make install
3.3 Build with Python

Refer to the Dockerfile

python3 setup.py install 

Output files are saved in build/output subdirectory by default.

How to use

Output files include demos of train, build and search tools.
Train and build tools are in build/output/build_tools subdirectory.
Search demo tools are in build/output/bin subdirectory.

1.format vector dataset for train and build

The vectors are stored in raw little endian. Each vector takes 4+d*4 bytes for .fvecs format, where d is the dimensionality of the vector.

2.train & build

The default train configuration file is "build/output/build_tools/conf/puck_train.conf". The length of each feature vector must be set in train configuration file (feature_dim).

cd output/build_tools
cp YOUR_FEATURE_FILE puck_index/all_data.feat.bin
sh script/puck_train_control.sh -t -b

index files are saved in puck_index subdirectory by default.

3.search

During searching, the default value of index files path is './puck_index'.
The format of query file, refer to demo
Search parameters can be modified using a configuration file, refer to demo

cd output/
ln -s build_tools/puck_index .
./bin/search_client YOUR_QUERY_FEATURE_FILE RECALL_FILE_NAME --flagfile=conf/puck.conf

recall results are stored in file RECALL_FILE_NAME.

More Details

more details for puck

Benchmark

Please see this readme for details.

this ann-benchmark is forked from https://github.com/harsha-simhadri/big-ann-benchmarks of 2021.

How to run this benchmark is the same with it. We add support of faiss(IVF,IVF-Flat,HNSW) , nmslib(HNSW),Puck and Tinker of T1 track. And We update algos.yaml of these method using recommended parameters of 4 datasets(bigann-10M, bigann-100M, deep-10M, deep-100M)

Discussion

Join our QQ group if you are interested in this project.

QQ Group

More Repositories

1

amis

前端低代码框架,通过 JSON 配置就能生成各种页面。
TypeScript
17,235
star
2

uid-generator

UniqueID generator
Java
5,429
star
3

san

A fast, portable, flexible JavaScript component framework
JavaScript
4,708
star
4

lac

百度NLP:分词,词性标注,命名实体识别,词重要性
C++
3,864
star
5

braft

An industrial-grade C++ implementation of RAFT consensus algorithm based on brpc, widely used inside Baidu to build highly-available distributed systems.
C++
3,499
star
6

dperf

dperf is a DPDK based 100Gbps network performance and load testing software.
C
3,273
star
7

bfs

The Baidu File System.
C++
2,853
star
8

openrasp

🔥Open source RASP solution
C++
2,774
star
9

Familia

A Toolkit for Industrial Topic Modeling
C++
2,638
star
10

AnyQ

FAQ-based Question Answering System
C++
2,584
star
11

sofa-pbrpc

A light-weight RPC implement of google protobuf RPC framework.
C++
2,130
star
12

Senta

Baidu's open-source Sentiment Analysis System.
Python
1,889
star
13

tera

An Internet-Scale Database.
C++
1,887
star
14

bfe-book

In-depth Understanding of BFE《深入理解BFE》(Book for BFE, a CNCF open source project. both in English and in Chinese)
1,212
star
15

BaikalDB

BaikalDB, A Distributed HTAP Database.
C++
1,169
star
16

bigflow

Baidu Bigflow is an interface that allows for writing distributed computing programs and provides lots of simple, flexible, powerful APIs. Using Bigflow, you can easily handle data of any scale. Bigflow processes 4P+ data inside Baidu and runs about 10k jobs every day.
C++
1,142
star
17

DuReader

Baseline Systems of DuReader Dataset
Python
1,133
star
18

DDParser

百度开源的依存句法分析系统
Python
973
star
19

starlight

Java implementation for Baidu RPC, multi-protocol & high performance RPC.
Java
961
star
20

CUP

CUP, common useful python-lib. (Currently, Most popular python lib in baidu). Python 开发底层库, 涵盖util、service(threadpool/generator/executor/cache等等)、logging、monitoring、增强型配置 等等库支持
Python
938
star
21

ICE-BA

C++
700
star
22

NoahV

An efficient front-end application framework based on vue.js
JavaScript
639
star
23

EasyFaaS

EasyFaaS是一个依赖轻、适配性强、资源占用少、无状态且高性能的函数计算服务引擎
Go
620
star
24

Curve

An Integrated Experimental Platform for time series data anomaly detection.
JavaScript
530
star
25

Jprotobuf-rpc-socket

Protobuf RPC是一种基于TCP协议的二进制RPC通信协议的Java实现
Java
516
star
26

bifromq

A MQTT broker implementation adopting serverless architecture
Java
514
star
27

fast_rgf

Multi-core implementation of Regularized Greedy Forest
C++
466
star
28

babylon

High-Performance C++ Fundamental Library
C++
457
star
29

Dialogue

Python
444
star
30

Elasticsearch

Baidu Elasticsearch
Java
432
star
31

brcc

BRCC(better remote config center)是一个分布式配置中心,用于统一管理应用服务的配置信息,避免各类资源散落在各个项目中,简化资源配置的维护成本。作为一种轻量级的解决方案,部署简单,同时支持多环境、多版本、多角色的资源管理,可以在不改变应用源码的情况下无缝切换和实时生效配置信息。
Java
390
star
32

Cafe

A powerful test framework for Android
Java
370
star
33

mix-img

A fast mix image javascript tool libary
JavaScript
332
star
34

unit-dmkit

C++
327
star
35

galaxy

Galaxy is a cluster management system.
C++
326
star
36

information-extraction

Python
325
star
37

knowledge-driven-dialogue

baseline system of knowledge driven dialogue competition
Python
270
star
38

CarbonGraph

A Swift dependency injection / lookup framework for iOS
Swift
254
star
39

unit-uskit

unit-uskit
C++
251
star
40

BIPlatform

JavaScript
219
star
41

dlock

An effective and reliable Distributed Lock
Java
216
star
42

ins

iNexus, coordinate large scale services
C++
214
star
43

boteye

C++
212
star
44

titan-dex

Java
201
star
45

m-git

MGit 是一款基于 Git 的多仓库管理工具,可以安全的、高效的管理多个 Git 仓库; 适合于在多个仓库中进行关联开发的项目,实现批量的版本管理功能,提高 Git 操作的效率,避免逐个执行 Git 命令带来的误操作风险。
Ruby
166
star
46

Rubik

An Android platform component management tool chain, based on Kotlin language.
Kotlin
154
star
47

common

Common library
C++
132
star
48

go-lib

Go
126
star
49

titan-hotfix

Java
125
star
50

wx2

小程序互转工具
JavaScript
124
star
51

iot-sdk-c

device sdk for baidu IoT Core service, in c. Including MQTT client
C
118
star
52

Youtube-8M

PaddlePaddle models for Youtube-8M Video Understanding Challenge
Python
114
star
53

ar-sdk

DuMix AR SDK for Developer
GLSL
107
star
54

broc

Python
101
star
55

ITEST

Web service interface test framework
97
star
56

ote-stack

OTE-Stack is an edge computing platform for 5G and AI
Go
96
star
57

GPT

Java
87
star
58

redis

Baidu Ksarch Redis - a production solution of redis cluster
87
star
59

san-devtools

Browser developer tools extension for debugging San.
TypeScript
82
star
60

terminator

Service Virtualization
Java
76
star
61

QCompute

QCompute is a Python-based quantum software development kit (SDK). It provides a full-stack programming experience for advanced users via hybrid quantum programming language features and a high-performance simulator.
Python
76
star
62

spring-cloud-baidu

70
star
63

shuttle

A fast computing framework based on Galaxy
C++
64
star
64

iot-edge-sdk-for-iot-parser

C
64
star
65

baidu-iot-samples

C
61
star
66

san-store

Application States Management for San
JavaScript
59
star
67

ARK

Development framework of intelligent operation
Python
57
star
68

san-update

Object immutable update utility for san solution
JavaScript
56
star
69

logcover

轻量级异常日志测试覆盖率度量工具
Python
56
star
70

palo

A fast MPP database for all modern analytics on big data. Powered by Apache Doris(Incubating)
50
star
71

speech-samples

百度语音示例
Java
48
star
72

ntripcaster

C
43
star
73

san-router

Official Router for San
JavaScript
38
star
74

Quanlse

Jupyter Notebook
38
star
75

san-ssr

San SSR framework and utils
TypeScript
37
star
76

dm-kit-php

PHP
36
star
77

boteye_sensor

C
35
star
78

ipipe-agent

Java
33
star
79

OASP

OASP (Online App Status Protocol)
Java
32
star
80

san-composition

JavaScript
30
star
81

duedge-recipes

DuEdge百度边缘网络计算样例代码
JavaScript
27
star
82

paddle-on-k8s-operator

Kubernetes operator for managing the lifecycle of PaddlePaddle job.
Go
24
star
83

baiducloud-sdk-go

Go SDK for Baidu Cloud
Go
24
star
84

san-website

JavaScript
21
star
85

baiduads-sdk

Baidu Ads API SDK
Python
19
star
86

du1906_esp

DUHOME AIOT platform based on du1906 and esp32
C
18
star
87

highflip

HIGHFLIP: An easy way to bridge different federal learning platforms
18
star
88

smartapp-openapi-java

百度智能小程序服务端 OpenAPI SDK for java,是基于小程序服务端 OpenAPI 封装的一套让开发者方便使用的 SDK, 它可以帮开发者减少理解和使用 OpenAPI 的成本, 减少开发者直接调用服务端接口不当而引起的错误, 避免在开发中走弯路。
Java
16
star
89

san-factory

JavaScript
15
star
90

ttm

C
14
star
91

cluster-api-provider-baiducloud

Kubernetes cluster-api for Baidu Cloud
Go
13
star
92

minions

Baidu 100G Chasiss Switch hardware spec
11
star
93

signet

签章系统
JavaScript
10
star
94

sgxray

SGXRay: a bounded verifier for Intel SGX enclaves
C
10
star
95

grafana-tsdb-datasource

JavaScript
9
star
96

iotcore-sdk-java

Java SDK for baidu IoT Core service
Java
9
star
97

bce-fpga-dev-kit

VHDL
8
star
98

iot

for all code about Internet of Things
8
star
99

smartapp-openapi-go

百度智能小程序服务端 OpenAPI SDK for go,是基于小程序服务端 OpenAPI 封装的一套让开发者方便使用的 SDK, 它可以帮开发者减少理解和使用 OpenAPI 的成本, 减少开发者直接调用服务端接口不当而引起的错误, 避免在开发中走弯路。
Go
8
star
100

duedge-cli

DuEdge Command Line
Python
6
star