Decluttered setup

This commit is contained in:
bkerbl 2023-07-04 10:59:45 +02:00
parent 5c3e784424
commit 6887a84ac2
3 changed files with 20 additions and 35 deletions

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@ -60,30 +60,24 @@ The optimizer uses PyTorch and CUDA extensions in a Python environment to produc
- CUDA-ready GPU with Compute Capability 7.0+
- 24 GB VRAM to train the largest scenes in our test suite
### Software Requirements
- C++ Compiler (Visual Studio 2019 for Windows)
- CUDA 11 Developer SDK
- Conda (recommended for easy setup)
### Setup
Our provided install method is based on Conda package and environment management. We suggest 3 options, depending on your available disk space.
#### Option 1 (Plenty of space on system drive)
To produce our exact evaluation environment on a freshly set up machine should be straightforward once Conda is installed (at the expense of considerable disk space):
Our provided install method is based on Conda package and environment management:
```shell
conda env create --file environment_full.yml # This will take some time
conda env create --file environment.yml # This will take less time
conda activate gaussian_splatting
```
#### Option 2 (Little space on system drive)
If you already have a recent C++ compiler and a version of the CUDA **development** kit 11 installed, you can opt to use the lighter-weight environment install instead.
```shell
conda env create --file environment_light.yml # This will take less time
conda activate gaussian_splatting
```
#### Option 3 (Even less space on system drive)
Note that even with the light version, downloading packages and creating a new environment with Conda can require a significant amount of disk space. By default, Conda will use the main system hard drive. You can avoid this by specifying a different package download location and an environment on a different drive:
Note that downloading packages and creating a new environment with Conda can require a significant amount of disk space. By default, Conda will use the main system hard drive. You can avoid this by specifying a different package download location and an environment on a different drive:
```shell
conda config --add pkgs_dirs <Drive>/<pkg_path>
conda env create --file environment_light.yml --prefix <Drive>/<env_path>/gaussian_splatting
conda env create --file environment.yml --prefix <Drive>/<env_path>/gaussian_splatting
conda activate <Drive>/<env_path>/gaussian_splatting
```
@ -126,9 +120,14 @@ The Network Viewer can be used to observe the training process and watch the mod
- OpenGL 4.5-ready GPU
- 8 GB VRAM
### Software Requirements
- C++ Compiler (Visual Studio 2019 for Windows)
- CUDA 11 Developer SDK
- CMake (recent version)
### Setup
If you cloned with submodules (e.g., using ```--recursive```), the source code for the viewers is found in ```SIBR_viewers_(windows|linux)``` (choose whichever fits your OS). The network viewer runs within the SIBR framework for Image-based Rendering applications. For setup, you will need the CUDA 11 **development** kit, a C++ compiler (use Visual Studio **2019** on Windows) and **CMake**, then follow the steps corresponding to your operating system.
If you cloned with submodules (e.g., using ```--recursive```), the source code for the viewers is found in ```SIBR_viewers_(windows|linux)``` (choose whichever fits your OS). The network viewer runs within the SIBR framework for Image-based Rendering applications.
#### Windows
On Windows, CMake should take care of your dependencies
@ -173,6 +172,11 @@ The Real-Time Viewer can be used to render trained models with real-time frame r
- OpenGL 4.5-ready GPU
- 8 GB VRAM
### Software Requirements
- C++ Compiler (Visual Studio 2019 for Windows)
- CUDA 11 Developer SDK
- CMake (recent version)
### Setup
The setup is the same as for the remote viewer.

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@ -1,19 +0,0 @@
name: gaussian_splatting
channels:
- pytorch
- conda-forge
- defaults
dependencies:
- cudatoolkit=11.6
- cudatoolkit-dev=11.6
- cxx-compiler=1.3.0
- plyfile=0.8.1
- python=3.7.13
- pip=22.3.1
- pytorch=1.12.1
- torchaudio=0.12.1
- torchvision=0.13.1
- tqdm
- pip:
- submodules/diff-gaussian-rasterization
- submodules/simple-knn