Docker Desktop WSL 2 backend
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Windows Subsystem for Linux (WSL) 2 introduces a significant architectural change as it is a full Linux kernel built by Microsoft, allowing Linux distributions to run without having to manage Virtual Machines. With Docker Desktop running on WSL 2, users can leverage Linux workspaces and avoid having to maintain both Linux and Windows build scripts. In addition, WSL 2 provides improvements to file system sharing, boot time, and allows access to some cool new features for Docker Desktop users.
Docker Desktop uses the dynamic memory allocation feature in WSL 2 to greatly improve the resource consumption. This means, Docker Desktop only uses the required amount of CPU and memory resources it needs, while enabling CPU and memory-intensive tasks such as building a container to run much faster.
Additionally, with WSL 2, the time required to start a Docker daemon after a cold start is significantly faster. It takes less than 10 seconds to start the Docker daemon when compared to almost a minute in the previous version of Docker Desktop.
Before you install the Docker Desktop WSL 2 backend, you must complete the following steps:
- Install Windows 10, version 1903 or higher or Windows 11.
- Enable WSL 2 feature on Windows. For detailed instructions, refer to the Microsoft documentation.
- Download and install the Linux kernel update package.
Download Docker Desktop for Windows.
Ensure you have completed the steps described in the Prerequisites section before installing the Docker Desktop release.
- Follow the usual installation instructions to install Docker Desktop. If you are running a supported system, Docker Desktop prompts you to enable WSL 2 during installation. Read the information displayed on the screen and enable WSL 2 to continue.
- Start Docker Desktop from the Windows Start menu.
From the Docker menu, select Settings > General.
Select the Use WSL 2 based engine check box.
If you have installed Docker Desktop on a system that supports WSL 2, this option will be enabled by default.
- Click Apply & Restart.
That’s it! Now
docker commands will work from Windows using the new WSL 2 engine.
Enabling Docker support in WSL 2 distros
WSL 2 adds support for “Linux distros” to Windows, where each distro behaves like a VM except they all run on top of a single shared Linux kernel.
Docker Desktop does not require any particular Linux distros to be installed. The
docker CLI and UI all work fine from Windows without any additional Linux distros. However for the best developer experience, we recommend installing at least one additional distro and enabling Docker support by:
Ensure the distribution runs in WSL 2 mode. WSL can run distributions in both v1 or v2 mode.
To check the WSL mode, run:
wsl.exe -l -v
To upgrade your existing Linux distro to v2, run:
wsl.exe --set-version (distro name) 2
To set v2 as the default version for future installations, run:
wsl.exe --set-default-version 2
When Docker Desktop starts, go to Settings > Resources > WSL Integration.
The Docker-WSL integration will be enabled on your default WSL distribution. To change your default WSL distro, run
wsl --set-default <distro name>.
For example, to set Ubuntu as your default WSL distro, run
wsl --set-default ubuntu.
Optionally, select any additional distributions you would like to enable the Docker-WSL integration on.
The Docker-WSL integration components running in your distro depend on glibc. This can cause issues when running musl-based distros such as Alpine Linux. Alpine users can use the alpine-pkg-glibc package to deploy glibc alongside musl to run the integration.
Click Apply & Restart.
Docker Desktop installs 2 special-purpose internal Linux distros
docker-desktop-data. The first (
docker-desktop) is used to run the Docker engine (
dockerd) while the second (
docker-desktop-data) stores containers and images. Neither can be used for general development.
To get the best out of the file system performance when bind-mounting files, we recommend storing source code and other data that is bind-mounted into Linux containers (i.e., with
docker run -v <host-path>:<container-path>) in the Linux file system, rather than the Windows file system. You can also refer to the recommendation from Microsoft.
- Linux containers only receive file change events (“inotify events”) if the original files are stored in the Linux filesystem. For example, some web development workflows rely on inotify events for automatic reloading when files have changed.
- Performance is much higher when files are bind-mounted from the Linux
filesystem, rather than remoted from the Windows host. Therefore avoid
docker run -v /mnt/c/users:/users(where
/mnt/cis mounted from Windows).
- Instead, from a Linux shell use a command like
docker run -v ~/my-project:/sources <my-image>where
~is expanded by the Linux shell to
- If you have concerns about the size of the docker-desktop-data VHDX, or need to change it, take a look at the WSL tooling built into Windows.
- If you have concerns about CPU or memory usage, you can configure limits on the memory, CPU, Swap size allocated to the WSL 2 utility VM.
- To avoid any potential conflicts with using WSL 2 on Docker Desktop, you must uninstall any previous versions of Docker Engine and CLI installed directly through Linux distributions before installing Docker Desktop.
Develop with Docker and WSL 2
The following section describes how to start developing your applications using Docker and WSL 2. We recommend that you have your code in your default Linux distribution for the best development experience using Docker and WSL 2. After you have enabled WSL 2 on Docker Desktop, you can start working with your code inside the Linux distro and ideally with your IDE still in Windows. This workflow can be pretty straightforward if you are using VSCode.
- Open VSCode and install the Remote - WSL extension. This extension allows you to work with a remote server in the Linux distro and your IDE client still on Windows.
Now, you can start working in VSCode remotely. To do this, open your terminal and type:
This opens a new VSCode connected remotely to your default Linux distro which you can check in the bottom corner of the screen.
Alternatively, you can type the name of your default Linux distro in your Start menu, open it, and then run
- When you are in VSCode, you can use the terminal in VSCode to pull your code and start working natively from your Windows machine.
Starting with Docker Desktop 3.1.0, Docker Desktop supports WSL 2 GPU Paravirtualization (GPU-PV) on NVIDIA GPUs. To enable WSL 2 GPU Paravirtualization, you need:
- A machine with an NVIDIA GPU
- The latest Windows Insider version from the Dev Preview ring
- Beta drivers from NVIDIA supporting WSL 2 GPU Paravirtualization
- Update WSL 2 Linux kernel to the latest version using
wsl --updatefrom an elevated command prompt
- Make sure the WSL 2 backend is enabled in Docker Desktop
To validate that everything works as expected, run the following command to run a short benchmark on your GPU:
$ docker run --rm -it --gpus=all nvcr.io/nvidia/k8s/cuda-sample:nbody nbody -gpu -benchmark Run "nbody -benchmark [-numbodies=<numBodies>]" to measure performance. -fullscreen (run n-body simulation in fullscreen mode) -fp64 (use double precision floating point values for simulation) -hostmem (stores simulation data in host memory) -benchmark (run benchmark to measure performance) -numbodies=<N> (number of bodies (>= 1) to run in simulation) -device=<d> (where d=0,1,2.... for the CUDA device to use) -numdevices=<i> (where i=(number of CUDA devices > 0) to use for simulation) -compare (compares simulation results running once on the default GPU and once on the CPU) -cpu (run n-body simulation on the CPU) -tipsy=<file.bin> (load a tipsy model file for simulation) > NOTE: The CUDA Samples are not meant for performance measurements. Results may vary when GPU Boost is enabled. > Windowed mode > Simulation data stored in video memory > Single precision floating point simulation > 1 Devices used for simulation MapSMtoCores for SM 7.5 is undefined. Default to use 64 Cores/SM GPU Device 0: "GeForce RTX 2060 with Max-Q Design" with compute capability 7.5 > Compute 7.5 CUDA device: [GeForce RTX 2060 with Max-Q Design] 30720 bodies, total time for 10 iterations: 69.280 ms = 136.219 billion interactions per second = 2724.379 single-precision GFLOP/s at 20 flops per interaction
Your feedback is very important to us. Please let us know your feedback by creating an issue in the Docker Desktop for Windows GitHub repository and adding the WSL 2 label.WSL, WSL 2 Tech Preview, Windows Subsystem for Linux, WSL 2 backend Docker