# Getting cuGraph Packages
Start by reading the [RAPIDS Instalation guide](https://docs.rapids.ai/install)
and checkout the [RAPIDS install selector](https://rapids.ai/start.html) for a pick list of install options.
There are 4 ways to get cuGraph packages:
1. [Quick start with Docker Repo](#docker)
2. [Conda Installation](#conda)
3. [Pip Installation](#pip)
4. [Build from Source](./source_build.md)
## Docker
The RAPIDS Docker containers contain all RAPIDS packages, including all from cuGraph, as well as all required supporting packages. To download a container, please see the [Docker Repository](https://hub.docker.com/r/rapidsai/rapidsai/), choosing a tag based on the NVIDIA CUDA version you’re running. This provides a ready to run Docker container with example notebooks and data, showcasing how you can utilize all of the RAPIDS libraries: cuDF, cuML, and cuGraph.
## Conda
It is easy to install cuGraph using conda. You can get a minimal conda installation with [Miniconda](https://conda.io/miniconda.html) or get the full installation with [Anaconda](https://www.anaconda.com/download).
cuGraph Conda packages
* cugraph - this will also import:
* pylibcugraph
* libcugraph
* cugraph-service-client
* cugraph-service-server
* cugraph-dgl
* cugraph-pyg
Replace the package name in the example below to the one you want to install.
Install and update cuGraph using the conda command:
```bash
conda install -c rapidsai -c conda-forge -c nvidia cugraph cudatoolkit=11.8
```
Note: This conda installation only applies to Linux and Python versions 3.8/3.10.
## PIP
cuGraph, and all of RAPIDS, is available via pip.
```
pip install cugraph-cu11 --extra-index-url=https://pypi.ngc.nvidia.com
```
pip packages for other packages are being worked and should be available in early 2023