running single cell analysis on Nvidia GPUs
Project description
rapids-singlecell
Background
This repository offers some tools to make analyses of single cell datasets faster by running them on the GPU. The functions are analogous versions of functions that can be found within scanpy from the Theis lab or functions from rapids-single-cell-examples created by the Nvidia RAPIDS team. Most functions are kept close to the original code to ensure compatibility. My aim with this repository was to use the speedup that GPU computing offers and combine it with the ease of use from scanpy.
Installation
Conda
The easiest way to install rapids-singlecell is to use one of the yaml file provided in the conda folder. These yaml files install everything needed to run the example notbooks and get you started.
conda env create -f conda/rsc_rapids_23.04.yml
# or
mamba env create -f conda/rsc_rapids_23.02.yml
PyPI
As of version 0.4.0 rapids-singlecell is now on PyPI.
pip install rapids-singlecell
The default installer doesn't cover RAPIDS nor cupy. Information on how to install RAPIDS & cupy can be found here.
If you want to use RAPIDS new PyPI packages, the whole library with all dependencies can be install with:
pip install 'rapids-singlecell[rapids]' --extra-index-url=https://pypi.nvidia.com
Please note that the RAPIDS PyPI packages are still considered experimental. It is important to ensure that the CUDA environment is set up correctly so that RAPIDS and Cupy can locate the necessary libraries.
To view a full guide how to set up a fully functioned single cell GPU accelerated conda environment visit GPU_SingleCell_Setup
Documentation
Please have a look through the documentation
Citation
If you use this code, please cite:
Please also consider citing: rapids-single-cell-examples and scanpy
In addition to that please cite the methods' original research articles in the scanpy documentation
If you use the accelerated decoupler functions please cite decoupler
Notebooks
To show the capability of these functions, I created two example notebooks evaluating the same workflow running on the CPU and GPU. These notebooks should run in the environment, that is described in Requirements. First, run the data_downloader
notebook to create the AnnData object for the analysis. If you run both demo_cpu
and demo_gpu
you should see a big speedup when running the analyses on the GPU.
Benchmarks
Here are some benchmarks. I ran the notebook on the CPU with as many cores as were available where possible.
Step | CPU (Ryzen 5950x, 32 Cores, 64GB RAM) | GPU (RTX 3090) | CPU (AMD Eypc Rome, 30 Cores, 500GB RAM) | GPU (Quadro RTX 6000) | GPU (A100 80GB) |
---|---|---|---|---|---|
whole Notebook | 728 s | 43 s | 917 s | 67 s | 57 s |
Preprocessing | 75 s | 21 s | 40 s | 34 s | 30 s |
Clustering and Visulatization | 423 s | 18 s | 524 s | 27 s | 21 s |
Normalize_total | 252 ms | > 1ms | 425 ms | 1 ms | 1 ms |
Highly Variable Genes | 3.2 s | 2.6 s | 4.1 s | 2.7 s | 3.7 s |
Regress_out | 63 s | 2 s | 24 s | 2 s | 2 s |
Scale | 1.3 s | 299 ms | 2 s | 2 s | 359 ms |
PCA | 26 s | 1.8 s | 23 s | 3.6 s | 2.6 s |
Neighbors | 10 s | 5 s | 16.8 s | 8.1 s | 6 s |
UMAP | 30 s | 659 ms | 66 s | 1 s | 783 ms |
Louvain | 16 s | 121 ms | 20 s | 214 ms | 201 ms |
Leiden | 11 s | 102 ms | 20 s | 175 ms | 152 ms |
TSNE | 240 s | 1.4 s | 319 s | 1.8 s | 1.4 s |
Logistic_Regression | 74 s | 4 s | 45 s | 5 s | 3.4 s |
Diffusion Map | 715 ms | 259 ms | 747 ms | 431 ms | 826 ms |
Force Atlas 2 | 207 s | 236 ms | 300 s | 298 ms | 353 ms |
I also observed that the first GPU run in a new enviroment is slower than the runs after that (with a restarted kernel) (RTX 6000).
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