- better readability in dark mode since color change - better looking changelog - fix images which where not loading - also center most of the images - fix some syntax errors like - headlines ending with a colon - codeblocks with wrong fences - codeblocks without shell - update conda prompts from ldm to invokeai - ....
3.6 KiB
title | hide | |
---|---|---|
F.A.Q. |
|
:material-frequently-asked-questions: F.A.Q.
Frequently-Asked-Questions
Here are a few common installation problems and their solutions. Often these are caused by incomplete installations or crashes during the install process.
QUESTION
During conda env create
, conda hangs indefinitely.
If it is because of the last PIP step (usually stuck in the Git Clone step, you can check the detailed log by this method):
export PIP_LOG="/tmp/pip_log.txt"
touch ${PIP_LOG}
tail -f ${PIP_LOG} &
conda env create -f environment-mac.yaml --debug --verbose
killall tail
rm ${PIP_LOG}
SOLUTION
Conda sometimes gets stuck at the last PIP step, in which several git repositories are cloned and built.
Enter the stable-diffusion directory and completely remove the src
directory and all its contents. The safest way to do this is to enter
the stable-diffusion directory and give the command git clean -f
. If
this still doesn't fix the problem, try "conda clean -all" and then
restart at the conda env create
step.
To further understand the problem to checking the install lot using this method:
export PIP_LOG="/tmp/pip_log.txt"
touch ${PIP_LOG}
tail -f ${PIP_LOG} &
conda env create -f environment-mac.yaml --debug --verbose
killall tail
rm ${PIP_LOG}
QUESTION
invoke.py
crashes with the complaint that it can't find ldm.simplet2i.py
. Or it complains that
function is being passed incorrect parameters.
SOLUTION
Reinstall the stable diffusion modules. Enter the stable-diffusion
directory and give the command
pip install -e .
QUESTION
invoke.py
dies, complaining of various missing modules, none of which starts with ldm
.
SOLUTION
From within the InvokeAI
directory, run conda env update
This is also frequently the solution to
complaints about an unknown function in a module.
QUESTION
There's a feature or bugfix in the Stable Diffusion GitHub that you want to try out.
SOLUTION
Main Branch
If the fix/feature is on the main
branch, enter the stable-diffusion directory and do a
git pull
.
Usually this will be sufficient, but if you start to see errors about
missing or incorrect modules, use the command pip install -e .
and/or conda env update
(These commands won't break anything.)
pip install -e .
and/or conda env update -f environment.yaml
(These commands won't break anything.)
Sub Branch
If the feature/fix is on a branch (e.g. "foo-bugfix"), the recipe is similar, but do a
git pull <name of branch>
.
Not Committed
If the feature/fix is in a pull request that has not yet been made part of the main branch or a feature/bugfix branch, then from the page for the desired pull request, look for the line at the top that reads "xxxx wants to merge xx commits into lstein:main from YYYYYY". Copy the URL in YYYY. It should have the format
https://github.com/<name of contributor>/stable-diffusion/tree/<name of branch>
Then go to the directory above stable-diffusion and rename the directory to "stable-diffusion.lstein", "stable-diffusion.old", or anything else. You can then git clone the branch that contains the pull request:
git clone https://github.com/<name of contributor>/stable-diffusion/tree/<name of branch>
You will need to go through the install procedure again, but it should be fast because all the dependencies are already loaded.
QUESTION
Image generation crashed with CUDA out of memory error after successful sampling.
SOLUTION
Try to run script with option --free_gpu_mem
This will free memory before image decoding step.