Installation
- Mac
- Windows
- Linux
- Docker
Pre-requisites
Ensure that your MacOS version is 13 or higher to run Jan.
Stable Releases
To download stable releases, go to Jan.ai > select Download for Mac.
The download should be available as a .dmg
.
Nightly Releases
We provide the Nightly Release so that you can test new features and see what might be coming in a future stable release. Please be aware that there might be bugs!
You can download it from Jan's Discord in the #nightly-builds
channel.
Experimental Model
To enable the experimental mode, go to Settings > Advanced Settings and toggle the Experimental Mode
If you are stuck in a broken build, go to the Broken Build section of Common Errors.
Pre-requisites
Ensure that your system meets the following requirements:
- Windows 10 or higher is required to run Jan.
To enable GPU support, you will need:
- NVIDIA GPU with CUDA Toolkit 11.7 or higher
- NVIDIA driver 470.63.01 or higher
Stable Releases
To download stable releases, go to Jan.ai > select Download for Windows.
The download should be available as a .exe
file.
Nightly Releases
We provide the Nightly Release so that you can test new features and see what might be coming in a future stable release. Please be aware that there might be bugs!
You can download it from Jan's Discord in the #nightly-builds
channel.
Experimental Model
To enable the experimental mode, go to Settings > Advanced Settings and toggle the Experimental Mode
Default Installation Directory
By default, Jan is installed in the following directory:
# Default installation directory
C:\Users\{username}\AppData\Local\Programs\Jan
If you are stuck in a broken build, go to the Broken Build section of Common Errors.
Pre-requisites
Ensure that your system meets the following requirements:
- glibc 2.27 or higher (check with
ldd --version
) - gcc 11, g++ 11, cpp 11, or higher, refer to this link for more information.
To enable GPU support, you will need:
- NVIDIA GPU with CUDA Toolkit 11.7 or higher
- NVIDIA driver 470.63.01 or higher
Stable Releases
To download stable releases, go to Jan.ai > select Download for Linux.
The download should be available as a .AppImage
file or a .deb
file.
Nightly Releases
We provide the Nightly Release so that you can test new features and see what might be coming in a future stable release. Please be aware that there might be bugs!
You can download it from Jan's Discord in the #nightly-builds
channel.
Experimental Model
To enable the experimental mode, go to Settings > Advanced Settings and toggle the Experimental Mode
- Linux
- Debian / Ubuntu
- Others
To install Jan, you should use your package manager's install or dpkg
.
To install Jan, run the following command:
# Install Jan using dpkg
sudo dpkg -i jan-linux-amd64-{version}.deb
# Install Jan using apt-get
sudo apt-get install ./jan-linux-amd64-{version}.deb
# where jan-linux-amd64-{version}.deb is path to the Jan package
To install Jan, run the following commands:
# Install Jan using AppImage
chmod +x jan-linux-x86_64-{version}.AppImage
./jan-linux-x86_64-{version}.AppImage
# where jan-linux-x86_64-{version}.AppImage is path to the Jan package
If you are stuck in a broken build, go to the Broken Build section of Common Errors.
Pre-requisites
Ensure that your system meets the following requirements:
- Linux or WSL2 Docker
- Latest Docker Engine and Docker Compose
To enable GPU support, you will need:
nvidia-driver
nvidia-docker2
Run Jan in Docker
You can run Jan in Docker with two methods:
- Run Jan in CPU mode
- Run Jan in GPU mode
- CPU
- GPU
To run Jan in Docker CPU mode, by using the following code:
# cpu mode with default file system
docker compose --profile cpu-fs up -d
# cpu mode with S3 file system
docker compose --profile cpu-s3fs up -d
To run Jan in Docker CPU mode, follow the steps below:
- Check CUDA compatibility with your NVIDIA driver by running nvidia-smi and check the CUDA version in the output as shown below:
nvidia-smi
# Output
+---------------------------------------------------------------------------------------+
| NVIDIA-SMI 531.18 Driver Version: 531.18 CUDA Version: 12.1 |
|-----------------------------------------+----------------------+----------------------+
| GPU Name TCC/WDDM | Bus-Id Disp.A | Volatile Uncorr. ECC |
| Fan Temp Perf Pwr:Usage/Cap| Memory-Usage | GPU-Util Compute M. |
| | | MIG M. |
|=========================================+======================+======================|
| 0 NVIDIA GeForce RTX 4070 Ti WDDM | 00000000:01:00.0 On | N/A |
| 0% 44C P8 16W / 285W| 1481MiB / 12282MiB | 2% Default |
| | | N/A |
+-----------------------------------------+----------------------+----------------------+
| 1 NVIDIA GeForce GTX 1660 Ti WDDM | 00000000:02:00.0 Off | N/A |
| 0% 49C P8 14W / 120W| 0MiB / 6144MiB | 0% Default |
| | | N/A |
+-----------------------------------------+----------------------+----------------------+
| 2 NVIDIA GeForce GTX 1660 Ti WDDM | 00000000:05:00.0 Off | N/A |
| 29% 38C P8 11W / 120W| 0MiB / 6144MiB | 0% Default |
| | | N/A |
+-----------------------------------------+----------------------+----------------------+
+---------------------------------------------------------------------------------------+
| Processes: |
| GPU GI CI PID Type Process name GPU Memory |
| ID ID Usage |
|=======================================================================================|
- Visit NVIDIA NGC Catalog and find the smallest minor version of image tag that matches your CUDA version (e.g., 12.1 -> 12.1.0)
- Update the
Dockerfile.gpu
line number 5 with the latest minor version of the image tag from step 2 (e.g. changeFROM nvidia/cuda:12.2.0-runtime-ubuntu22.04 AS base
toFROM nvidia/cuda:12.1.0-runtime-ubuntu22.04 AS base
) - Run Jan in GPU mode by using the following command:
# GPU mode with default file system
docker compose --profile gpu-fs up -d
# GPU mode with S3 file system
docker compose --profile gpu-s3fs up -d
Docker Compose Profile and Environment
The available Docker Compose profile and the environment variables listed below:
Docker Compose Profile
Profile | Description |
---|---|
cpu-fs | Run Jan in CPU mode with default file system |
cpu-s3fs | Run Jan in CPU mode with S3 file system |
gpu-fs | Run Jan in GPU mode with default file system |
gpu-s3fs | Run Jan in GPU mode with S3 file system |
Environment Variables
Environment Variable | Description |
---|---|
S3_BUCKET_NAME | S3 bucket name - leave blank for default file system |
AWS_ACCESS_KEY_ID | AWS access key ID - leave blank for default file system |
AWS_SECRET_ACCESS_KEY | AWS secret access key - leave blank for default file system |
AWS_ENDPOINT | AWS endpoint URL - leave blank for default file system |
AWS_REGION | AWS region - leave blank for default file system |
API_BASE_URL | Jan Server URL, please modify it as your public ip address or domain name default http://localhost:1377 |
If you are stuck in a broken build, go to the Broken Build section of Common Errors.