• Stars
    star
    1,233
  • Rank 38,074 (Top 0.8 %)
  • Language
    Go
  • License
    MIT License
  • Created almost 7 years ago
  • Updated about 2 months ago

Reviews

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

Repository Details

AIStore: scalable storage for AI applications

AIStore is a lightweight object storage system with the capability to linearly scale out with each added storage node and a special focus on petascale deep learning.

License Go Report Card

AIStore (AIS for short) is a built from scratch, lightweight storage stack tailored for AI apps. It's an elastic cluster that can grow and shrink at runtime and can be ad-hoc deployed, with or without Kubernetes, anywhere from a single Linux machine to a bare-metal cluster of any size.

AIS consistently shows balanced I/O distribution and linear scalability across arbitrary numbers of clustered nodes. The ability to scale linearly with each added disk was, and remains, one of the main incentives. Much of the initial design was also driven by the ideas to offload custom dataset transformations (often referred to as ETL). And finally, since AIS is a software system that aggregates Linux machines to provide storage for user data, there's the requirement number one: reliability and data protection.

Features

  • Deploys anywhere. AIS clusters are immediately deployable on any commodity hardware, on any Linux machine(s).
  • Highly available control and data planes, end-to-end data protection, self-healing, n-way mirroring, erasure coding, and arbitrary number of extremely lightweight access points.
  • REST API. Comprehensive native HTTP-based API, as well as compliant Amazon S3 API to run unmodified S3 clients and apps.
  • Unified namespace across multiple remote backends including Amazon S3, Google Cloud, and Microsoft Azure.
  • Network of clusters. Any AIS cluster can attach any other AIS cluster, thus gaining immediate visibility and fast access to the respective hosted datasets.
  • Turn-key cache. Can be used as a standalone highly-available protected storage and/or LRU-based fast cache. Eviction watermarks, as well as numerous other management policies, are per-bucket configurable.
  • ETL offload. The capability to run I/O intensive custom data transformations close to data - offline (dataset to dataset) and inline (on-the-fly).
  • File datasets. AIS can be immediately populated from any file-based data source (local or remote, ad-hoc/on-demand or via asynchronus batch).
  • Small file datasets. To serialize small files and facilitate batch processing, AIS supports TAR, TAR.GZ (or TGZ), ZIP, and TAR.LZ4 formatted objects (often called shards). Resharding (for optimal sorting and sizing), listing contained files (samples), appending to existing shards, and generating new ones from existing objects and/or client-side files - is also fully supported.
  • Kubernetes. Provides for easy Kubernetes deployment via a separate GitHub repo and AIS/K8s Operator.
  • Command line management. Integrated powerful CLI for easy management and monitoring.
  • Access control. For security and fine-grained access control, AIS includes OAuth 2.0 compliant Authentication Server (AuthN). A single AuthN instance executes CLI requests over HTTPS and can serve multiple clusters.
  • Distributed shuffle extension for massively parallel resharding of very large datasets.
  • Batch jobs. APIs and CLI to start, stop, and monitor documented batch operations, such as prefetch, download, copy or transform datasets, and many more.

AIS runs natively on Kubernetes and features open format - thus, the freedom to copy or move your data from AIS at any time using the familiar Linux tar(1), scp(1), rsync(1) and similar.

For developers and data scientists, there's also:

For the original AIStore white paper and design philosophy, for introduction to large-scale deep learning and the most recently added features, please see AIStore Overview (where you can also find six alternative ways to work with existing datasets). Videos and animated presentations can be found at videos.

Finally, getting started with AIS takes only a few minutes.


Deployment options

AIS deployment options, as well as intended (development vs. production vs. first-time) usages, are all summarized here.

Since prerequisites boil down to, essentially, having Linux with a disk the deployment options range from all-in-one container to a petascale bare-metal cluster of any size, and from a single VM to multiple racks of high-end servers. But practical use cases require, of course, further consideration and may include:

Option Objective
Local playground AIS developers and development, Linux or Mac OS
Minimal production-ready deployment This option utilizes preinstalled docker image and is targeting first-time users or researchers (who could immediately start training their models on smaller datasets)
Easy automated GCP/GKE deployment Developers, first-time users, AI researchers
Large-scale production deployment Requires Kubernetes and is provided via a separate repository: ais-k8s

Further, there's the capability referred to as global namespace: given HTTP(S) connectivity, AIS clusters can be easily interconnected to "see" each other's datasets. Hence, the idea to start "small" to gradually and incrementally build high-performance shared capacity.

For detailed discussion on supported deployments, please refer to Getting Started.

For performance tuning and preparing AIS nodes for bare-metal deployment, see performance.

Installing from release binaries

Generally, AIStore (cluster) requires at least some sort of deployment procedure. There are standalone binaries, though, that can be built from source or, alternatively, installed directly from GitHub:

$ ./deploy/scripts/install_from_binaries.sh --help

The script installs aisloader and CLI from the most recent, or the previous, GitHub release. For CLI, it'll also enable auto-completions (which is strongly recommended).

PyTorch integration

AIS is one of the PyTorch Iterable Datapipes.

Specifically, TorchData library provides:

to list and, respectively, load data from AIStore.

Further references and usage examples - in our technical blog at https://aiatscale.org/blog:

Since AIS natively supports a number of remote backends, you can also use (PyTorch + AIS) to iterate over Amazon S3 and Google Cloud buckets, and more.

Reuse

This repo includes SGL and Slab allocator intended to optimize memory usage, Streams and Stream Bundles to multiplex messages over long-lived HTTP connections, and a few other sub-packages providing rather generic functionality.

With a little effort, they all could be extracted and used outside.

Guides and References

License

MIT

Author

Alex Aizman (NVIDIA)

More Repositories

1

nvidia-docker

Build and run Docker containers leveraging NVIDIA GPUs
16,896
star
2

open-gpu-kernel-modules

NVIDIA Linux open GPU kernel module source
C
14,997
star
3

DeepLearningExamples

State-of-the-Art Deep Learning scripts organized by models - easy to train and deploy with reproducible accuracy and performance on enterprise-grade infrastructure.
Jupyter Notebook
13,339
star
4

NeMo

A scalable generative AI framework built for researchers and developers working on Large Language Models, Multimodal, and Speech AI (Automatic Speech Recognition and Text-to-Speech)
Python
12,016
star
5

FastPhotoStyle

Style transfer, deep learning, feature transform
Python
11,020
star
6

TensorRT

NVIDIA® TensorRT™ is an SDK for high-performance deep learning inference on NVIDIA GPUs. This repository contains the open source components of TensorRT.
C++
10,618
star
7

Megatron-LM

Ongoing research training transformer models at scale
Python
10,332
star
8

TensorRT-LLM

TensorRT-LLM provides users with an easy-to-use Python API to define Large Language Models (LLMs) and build TensorRT engines that contain state-of-the-art optimizations to perform inference efficiently on NVIDIA GPUs. TensorRT-LLM also contains components to create Python and C++ runtimes that execute those TensorRT engines.
C++
8,542
star
9

vid2vid

Pytorch implementation of our method for high-resolution (e.g. 2048x1024) photorealistic video-to-video translation.
Python
8,482
star
10

apex

A PyTorch Extension: Tools for easy mixed precision and distributed training in Pytorch
Python
8,239
star
11

pix2pixHD

Synthesizing and manipulating 2048x1024 images with conditional GANs
Python
6,488
star
12

cuda-samples

Samples for CUDA Developers which demonstrates features in CUDA Toolkit
C
6,119
star
13

cutlass

CUDA Templates for Linear Algebra Subroutines
C++
5,519
star
14

FasterTransformer

Transformer related optimization, including BERT, GPT
C++
5,313
star
15

DALI

A GPU-accelerated library containing highly optimized building blocks and an execution engine for data processing to accelerate deep learning training and inference applications.
C++
5,048
star
16

thrust

[ARCHIVED] The C++ parallel algorithms library. See https://github.com/NVIDIA/cccl
C++
4,914
star
17

tacotron2

Tacotron 2 - PyTorch implementation with faster-than-realtime inference
Jupyter Notebook
4,562
star
18

warp

A Python framework for high performance GPU simulation and graphics
Python
4,206
star
19

DIGITS

Deep Learning GPU Training System
HTML
4,105
star
20

NeMo-Guardrails

NeMo Guardrails is an open-source toolkit for easily adding programmable guardrails to LLM-based conversational systems.
Python
4,064
star
21

nccl

Optimized primitives for collective multi-GPU communication
C++
3,187
star
22

flownet2-pytorch

Pytorch implementation of FlowNet 2.0: Evolution of Optical Flow Estimation with Deep Networks
Python
2,938
star
23

ChatRTX

A developer reference project for creating Retrieval Augmented Generation (RAG) chatbots on Windows using TensorRT-LLM
TypeScript
2,635
star
24

k8s-device-plugin

NVIDIA device plugin for Kubernetes
Go
2,481
star
25

libcudacxx

[ARCHIVED] The C++ Standard Library for your entire system. See https://github.com/NVIDIA/cccl
C++
2,294
star
26

GenerativeAIExamples

Generative AI reference workflows optimized for accelerated infrastructure and microservice architecture.
Python
2,192
star
27

nvidia-container-toolkit

Build and run containers leveraging NVIDIA GPUs
Go
2,171
star
28

waveglow

A Flow-based Generative Network for Speech Synthesis
Python
2,133
star
29

MinkowskiEngine

Minkowski Engine is an auto-diff neural network library for high-dimensional sparse tensors
Python
2,007
star
30

TransformerEngine

A library for accelerating Transformer models on NVIDIA GPUs, including using 8-bit floating point (FP8) precision on Hopper and Ada GPUs, to provide better performance with lower memory utilization in both training and inference.
Python
1,917
star
31

Stable-Diffusion-WebUI-TensorRT

TensorRT Extension for Stable Diffusion Web UI
Python
1,886
star
32

semantic-segmentation

Nvidia Semantic Segmentation monorepo
Python
1,763
star
33

gpu-operator

NVIDIA GPU Operator creates/configures/manages GPUs atop Kubernetes
Go
1,735
star
34

cub

[ARCHIVED] Cooperative primitives for CUDA C++. See https://github.com/NVIDIA/cccl
Cuda
1,679
star
35

DeepRecommender

Deep learning for recommender systems
Python
1,662
star
36

stdexec

`std::execution`, the proposed C++ framework for asynchronous and parallel programming.
C++
1,554
star
37

OpenSeq2Seq

Toolkit for efficient experimentation with Speech Recognition, Text2Speech and NLP
Python
1,511
star
38

CUDALibrarySamples

CUDA Library Samples
Cuda
1,468
star
39

VideoProcessingFramework

Set of Python bindings to C++ libraries which provides full HW acceleration for video decoding, encoding and GPU-accelerated color space and pixel format conversions
C++
1,303
star
40

deepops

Tools for building GPU clusters
Shell
1,252
star
41

open-gpu-doc

Documentation of NVIDIA chip/hardware interfaces
C
1,243
star
42

Q2RTX

NVIDIA’s implementation of RTX ray-tracing in Quake II
C
1,217
star
43

trt-samples-for-hackathon-cn

Simple samples for TensorRT programming
Python
1,211
star
44

cccl

CUDA Core Compute Libraries
C++
1,200
star
45

MatX

An efficient C++17 GPU numerical computing library with Python-like syntax
C++
1,187
star
46

partialconv

A New Padding Scheme: Partial Convolution based Padding
Python
1,145
star
47

sentiment-discovery

Unsupervised Language Modeling at scale for robust sentiment classification
Python
1,055
star
48

nvidia-container-runtime

NVIDIA container runtime
Makefile
1,035
star
49

modulus

Open-source deep-learning framework for building, training, and fine-tuning deep learning models using state-of-the-art Physics-ML methods
Python
991
star
50

gpu-monitoring-tools

Tools for monitoring NVIDIA GPUs on Linux
C
974
star
51

jetson-gpio

A Python library that enables the use of Jetson's GPIOs
Python
898
star
52

dcgm-exporter

NVIDIA GPU metrics exporter for Prometheus leveraging DCGM
Go
886
star
53

retinanet-examples

Fast and accurate object detection with end-to-end GPU optimization
Python
885
star
54

flowtron

Flowtron is an auto-regressive flow-based generative network for text to speech synthesis with control over speech variation and style transfer
Jupyter Notebook
867
star
55

nccl-tests

NCCL Tests
Cuda
864
star
56

cuda-python

CUDA Python Low-level Bindings
Python
859
star
57

mellotron

Mellotron: a multispeaker voice synthesis model based on Tacotron 2 GST that can make a voice emote and sing without emotive or singing training data
Jupyter Notebook
852
star
58

gdrcopy

A fast GPU memory copy library based on NVIDIA GPUDirect RDMA technology
C++
832
star
59

libnvidia-container

NVIDIA container runtime library
C
818
star
60

BigVGAN

Official PyTorch implementation of BigVGAN (ICLR 2023)
Python
806
star
61

spark-rapids

Spark RAPIDS plugin - accelerate Apache Spark with GPUs
Scala
800
star
62

nv-wavenet

Reference implementation of real-time autoregressive wavenet inference
Cuda
728
star
63

DLSS

NVIDIA DLSS is a new and improved deep learning neural network that boosts frame rates and generates beautiful, sharp images for your games
C
727
star
64

tensorflow

An Open Source Machine Learning Framework for Everyone
C++
719
star
65

gvdb-voxels

Sparse volume compute and rendering on NVIDIA GPUs
C
674
star
66

MAXINE-AR-SDK

NVIDIA AR SDK - API headers and sample applications
C
671
star
67

nvvl

A library that uses hardware acceleration to load sequences of video frames to facilitate machine learning training
C++
665
star
68

runx

Deep Learning Experiment Management
Python
633
star
69

NVFlare

NVIDIA Federated Learning Application Runtime Environment
Python
630
star
70

NeMo-Aligner

Scalable toolkit for efficient model alignment
Python
564
star
71

nvcomp

Repository for nvCOMP docs and examples. nvCOMP is a library for fast lossless compression/decompression on the GPU that can be downloaded from https://developer.nvidia.com/nvcomp.
C++
545
star
72

multi-gpu-programming-models

Examples demonstrating available options to program multiple GPUs in a single node or a cluster
Cuda
535
star
73

Dataset_Synthesizer

NVIDIA Deep learning Dataset Synthesizer (NDDS)
C++
530
star
74

TensorRT-Model-Optimizer

TensorRT Model Optimizer is a unified library of state-of-the-art model optimization techniques such as quantization, pruning, distillation, etc. It compresses deep learning models for downstream deployment frameworks like TensorRT-LLM or TensorRT to optimize inference speed on NVIDIA GPUs.
Python
513
star
75

jitify

A single-header C++ library for simplifying the use of CUDA Runtime Compilation (NVRTC).
C++
512
star
76

nvbench

CUDA Kernel Benchmarking Library
Cuda
501
star
77

libglvnd

The GL Vendor-Neutral Dispatch library
C
501
star
78

NeMo-Curator

Scalable data pre processing and curation toolkit for LLMs
Jupyter Notebook
500
star
79

cuda-quantum

C++ and Python support for the CUDA Quantum programming model for heterogeneous quantum-classical workflows
C++
496
star
80

AMGX

Distributed multigrid linear solver library on GPU
Cuda
474
star
81

cuCollections

C++
470
star
82

enroot

A simple yet powerful tool to turn traditional container/OS images into unprivileged sandboxes.
Shell
459
star
83

NeMo-Framework-Launcher

Provides end-to-end model development pipelines for LLMs and Multimodal models that can be launched on-prem or cloud-native.
Python
459
star
84

hpc-container-maker

HPC Container Maker
Python
442
star
85

MDL-SDK

NVIDIA Material Definition Language SDK
C++
438
star
86

PyProf

A GPU performance profiling tool for PyTorch models
Python
437
star
87

framework-reproducibility

Providing reproducibility in deep learning frameworks
Python
424
star
88

gpu-rest-engine

A REST API for Caffe using Docker and Go
C++
421
star
89

DCGM

NVIDIA Data Center GPU Manager (DCGM) is a project for gathering telemetry and measuring the health of NVIDIA GPUs
C++
394
star
90

NvPipe

NVIDIA-accelerated zero latency video compression library for interactive remoting applications
Cuda
390
star
91

torch-harmonics

Differentiable signal processing on the sphere for PyTorch
Jupyter Notebook
386
star
92

cuQuantum

Home for cuQuantum Python & NVIDIA cuQuantum SDK C++ samples
Jupyter Notebook
344
star
93

data-science-stack

NVIDIA Data Science stack tools
Shell
317
star
94

ai-assisted-annotation-client

Client side integration example source code and libraries for AI-Assisted Annotation SDK
C++
308
star
95

video-sdk-samples

Samples demonstrating how to use various APIs of NVIDIA Video Codec SDK
C++
301
star
96

egl-wayland

The EGLStream-based Wayland external platform
C
299
star
97

nvidia-settings

NVIDIA driver control panel
C
292
star
98

NVTX

The NVIDIA® Tools Extension SDK (NVTX) is a C-based Application Programming Interface (API) for annotating events, code ranges, and resources in your applications.
C
290
star
99

go-nvml

Go Bindings for the NVIDIA Management Library (NVML)
C
288
star
100

gpu-feature-discovery

GPU plugin to the node feature discovery for Kubernetes
Go
286
star