-
Notifications
You must be signed in to change notification settings - Fork 1.2k
FAQ
Error response from daemon: dockerfile parse error line 33: unknown instruction: GIT
ERROR: Service 'model' failed to build : Build failed
Update docker to the latest version, and make sure you are using docker compose
instead of docker-compose
. #16
Just update docker-compose.yaml
to refresh the models (i.e. PRELOAD=true
). #72
lstein:
<<: *base_service
profiles: ["lstein"]
build: ./services/lstein/
environment:
- PRELOAD=true
- CLI_ARGS=
use --precision full --no-half
. #9
CondaError: Downloaded bytes did not match Content-Length
or CondaEnvException: Pip failed, ERROR: THESE PACKAGES DO NOT MATCH THE HASHES FROM THE REQUIREMENTS FILE
This means your internet connection is unstable so the download failed, just try again.
Install NVIDIA Container Toolkit #81 and restart the docker service
Build fails at The Shell command, /bin/bash
not found in WSL.
Edit the corresponding docker file, and change the SHELL from /bin/bash
to //bin/bash
#21, note: this is a hack and something in your wsl is messed up.
You can try forcing plain text auth creds storage by removing line with "credStore" from ~/.docker/config.json (in WSL). #56
- Make sure:
- Windows 10 release >= 2021H2 (required for WSL to see the GPU)
- WSL2 (check with
wsl -l -v
) - Latest Docker Desktop
- You might need to create a
.wslconfig
and increase memory, if you have 16GB RAM, set the limit to something around 12GB, #34 #64 - You might also need to force wsl to allow file permissions
You have to use one of AWS's GPU-enabled VMs and their Deep Learning OS images. These have the right divers, the toolkit and all the rest already installed and optimized. #70