• This repository has been archived on 04/Aug/2023
  • Stars
    star
    577
  • Rank 74,634 (Top 2 %)
  • Language
    Shell
  • License
    Apache License 2.0
  • Created over 5 years ago
  • Updated 9 months ago

Reviews

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

Repository Details

RAPIDS Sample Notebooks

Archived

This repository is no longer maintained. You can get notebooks in our docker images: https://hub.docker.com/r/rapidsai/notebooks

Or check individual repos for their notebooks.

RAPIDS Notebooks

Intro

These notebooks provide examples of how to use RAPIDS. These notebooks are designed to be self-contained with the runtime version of the RAPIDS Docker Container and RAPIDS Nightly Docker Containers and can run on air-gapped systems. You can quickly get this container using the install guide from the RAPIDS.ai Getting Started page

Usage

This repository serves as a convenience for our developers and users as a colocation of all RAPIDS notebooks.

To get the latest notebook repo updates, run ./update.sh or use the following command:

git submodule update --init --remote --no-single-branch --depth 1

More Repositories

1

cudf

cuDF - GPU DataFrame Library
C++
7,248
star
2

cuml

cuML - RAPIDS Machine Learning Library
C++
3,864
star
3

cugraph

cuGraph - RAPIDS Graph Analytics Library
Cuda
1,559
star
4

cusignal

cuSignal - RAPIDS Signal Processing Library
Python
703
star
5

raft

RAFT contains fundamental widely-used algorithms and primitives for machine learning and information retrieval. The algorithms are CUDA-accelerated and form building blocks for more easily writing high performance applications.
Cuda
586
star
6

jupyterlab-nvdashboard

A JupyterLab extension for displaying dashboards of GPU usage.
TypeScript
548
star
7

cuspatial

CUDA-accelerated GIS and spatiotemporal algorithms
Jupyter Notebook
543
star
8

rmm

RAPIDS Memory Manager
C++
420
star
9

deeplearning

Jupyter Notebook
336
star
10

cucim

cuCIM - RAPIDS GPU-accelerated image processing library
Jupyter Notebook
302
star
11

dask-cuda

Utilities for Dask and CUDA interactions
Python
266
star
12

cuxfilter

GPU accelerated cross filtering with cuDF.
Python
261
star
13

node

GPU-accelerated data science and visualization in node
TypeScript
170
star
14

clx

A collection of RAPIDS examples for security analysts, data scientists, and engineers to quickly get started applying RAPIDS and GPU acceleration to real-world cybersecurity use cases.
Jupyter Notebook
167
star
15

libgdf

[ARCHIVED] C GPU DataFrame Library
Cuda
138
star
16

dask-cudf

[ARCHIVED] Dask support for distributed GDF object --> Moved to cudf
Python
136
star
17

cloud-ml-examples

A collection of Machine Learning examples to get started with deploying RAPIDS in the Cloud
Jupyter Notebook
134
star
18

ucx-py

Python bindings for UCX
Python
112
star
19

gpu-bdb

RAPIDS GPU-BDB
Python
103
star
20

kvikio

KvikIO - High Performance File IO
Python
100
star
21

plotly-dash-rapids-census-demo

Jupyter Notebook
92
star
22

gputreeshap

C++
83
star
23

frigate

Frigate is a tool for automatically generating documentation for your Helm charts
Python
76
star
24

wholegraph

WholeGraph - large scale Graph Neural Networks
Cuda
75
star
25

spark-examples

[ARCHIVED] Moved to github.com/NVIDIA/spark-xgboost-examples
Jupyter Notebook
70
star
26

docker

Dockerfile templates for creating RAPIDS Docker Images
Shell
62
star
27

cuvs

cuVS - a library for vector search and clustering on the GPU
Jupyter Notebook
57
star
28

custrings

[ARCHIVED] GPU String Manipulation --> Moved to cudf
Cuda
46
star
29

docs

RAPIDS Documentation Site
HTML
34
star
30

cudf-alpha

[ARCHIVED] cuDF [alpha] - RAPIDS Merge of GoAi into cuDF
34
star
31

rapids-examples

Jupyter Notebook
31
star
32

nvgraph

C++
26
star
33

rapids-cmake

CMake
24
star
34

cuhornet

Cuda
24
star
35

cuDataShader

Jupyter Notebook
22
star
36

gpuci-build-environment

Common build environment used by gpuCI for building RAPIDS
Dockerfile
19
star
37

distributed-join

C++
19
star
38

dask-cuml

[ARCHIVED] Dask support for multi-GPU machine learning algorithms --> Moved to cuml
Python
16
star
39

integration

RAPIDS - combined conda package & integration tests for all of RAPIDS libraries
Shell
15
star
40

devcontainers

Shell
15
star
41

xgboost-conda

Conda recipes for xgboost
Jupyter Notebook
12
star
42

ucxx

C++
11
star
43

benchmark

Python
10
star
44

dependency-file-generator

Python
10
star
45

helm-chart

Shell
9
star
46

deployment

RAPIDS Deployment Documentation
Jupyter Notebook
9
star
47

miniforge-cuda

Dockerfile
9
star
48

asvdb

Python
8
star
49

ci-imgs

Dockerfile
7
star
50

dask-cugraph

Python
7
star
51

rapids.ai

rapids.ai web site
HTML
7
star
52

ptxcompiler

Python
6
star
53

GaaS

Python
5
star
54

rvc

Go
4
star
55

scikit-learn-nv

Python
4
star
56

ops-bot

A Probot application used by the Ops team for automation.
TypeScript
4
star
57

workflows

Shell
4
star
58

rapids-triton

C++
4
star
59

dask-build-environment

Build environments for various dask related projects on gpuCI
Dockerfile
3
star
60

roc

GitHub utilities for the RAPIDS Ops team
Go
3
star
61

multi-gpu-tools

Shell
3
star
62

detect-weak-linking

Python
3
star
63

dask-cuda-benchmarks

Python
2
star
64

rapids_triton_pca_example

C++
2
star
65

shared-workflows

Reusable GitHub Actions workflows for RAPIDS CI
Shell
2
star
66

dgl-cugraph-build-environment

Dockerfile
2
star
67

cugunrock

Cuda
2
star
68

projects

Jupyter Notebook
2
star
69

gpuci-mgmt

Mangement scripts for gpuCI
Shell
1
star
70

ansible-roles

1
star
71

code-share

C++
1
star
72

build-metrics-reporter

Python
1
star
73

cibuildwheel-imgs

Dockerfile
1
star
74

gpuci-tools

User tools for use within the gpuCI environment
Shell
1
star
75

pynvjitlink

Python
1
star
76

rapids-dask-dependency

Shell
1
star
77

sphinx-theme

This repository contains a Sphinx theme used for RAPIDS documentation
CSS
1
star