InvokeAI/invokeai/frontend/install/model_install.py
2023-06-08 09:23:11 -04:00

981 lines
37 KiB
Python

#!/usr/bin/env python
# Copyright (c) 2022 Lincoln D. Stein (https://github.com/lstein)
# Before running stable-diffusion on an internet-isolated machine,
# run this script from one with internet connectivity. The
# two machines must share a common .cache directory.
"""
This is the npyscreen frontend to the model installation application.
The work is actually done in backend code in model_install_backend.py.
"""
import argparse
import curses
import os
import sys
import textwrap
import traceback
from argparse import Namespace
from multiprocessing import Process
from multiprocessing.connection import Connection, Pipe
from pathlib import Path
from shutil import get_terminal_size
from typing import List
import logging
import npyscreen
import torch
from npyscreen import widget
from omegaconf import OmegaConf
from invokeai.backend.util.logging import InvokeAILogger
from invokeai.backend.install.model_install_backend import (
Dataset_path,
default_config_file,
default_dataset,
install_requested_models,
recommended_datasets,
ModelInstallList,
UserSelections,
)
from invokeai.backend import ModelManager
from invokeai.backend.util import choose_precision, choose_torch_device
from invokeai.backend.util.logging import InvokeAILogger
from invokeai.frontend.install.widgets import (
CenteredTitleText,
MultiSelectColumns,
SingleSelectColumns,
TextBox,
BufferBox,
FileBox,
set_min_terminal_size,
select_stable_diffusion_config_file,
CyclingForm,
MIN_COLS,
MIN_LINES,
)
from invokeai.app.services.config import InvokeAIAppConfig
config = InvokeAIAppConfig.get_config()
# build a table mapping all non-printable characters to None
# for stripping control characters
# from https://stackoverflow.com/questions/92438/stripping-non-printable-characters-from-a-string-in-python
NOPRINT_TRANS_TABLE = {
i: None for i in range(0, sys.maxunicode + 1) if not chr(i).isprintable()
}
def make_printable(s:str)->str:
'''Replace non-printable characters in a string'''
return s.translate(NOPRINT_TRANS_TABLE)
class addModelsForm(CyclingForm, npyscreen.FormMultiPage):
# for responsive resizing - disabled
# FIX_MINIMUM_SIZE_WHEN_CREATED = False
# for persistence
current_tab = 0
def __init__(self, parentApp, name, multipage=False, *args, **keywords):
self.multipage = multipage
self.subprocess = None
super().__init__(parentApp=parentApp, name=name, *args, **keywords)
def create(self):
self.keypress_timeout = 10
self.counter = 0
self.subprocess_connection = None
if not config.model_conf_path.exists():
with open(config.model_conf_path,'w') as file:
print('# InvokeAI model configuration file',file=file)
model_manager = ModelManager(config.model_conf_path)
self.starter_models = OmegaConf.load(Dataset_path)['diffusers']
self.installed_diffusers_models = self.list_additional_diffusers_models(
model_manager,
self.starter_models,
)
self.installed_cn_models = model_manager.list_controlnet_models()
self.installed_lora_models = model_manager.list_lora_models()
self.installed_ti_models = model_manager.list_ti_models()
try:
self.existing_models = OmegaConf.load(default_config_file())
except:
self.existing_models = dict()
self.starter_model_list = list(self.starter_models.keys())
self.installed_models = dict()
window_width, window_height = get_terminal_size()
self.nextrely -= 1
self.add_widget_intelligent(
npyscreen.FixedText,
value="Use ctrl-N and ctrl-P to move to the <N>ext and <P>revious fields,",
editable=False,
color="CAUTION",
)
self.add_widget_intelligent(
npyscreen.FixedText,
value="Use cursor arrows to make a selection, and space to toggle checkboxes.",
editable=False,
color="CAUTION",
)
self.nextrely += 1
self.tabs = self.add_widget_intelligent(
SingleSelectColumns,
values=[
'STARTER MODELS',
'MORE MODELS',
'CONTROLNETS',
'LORA/LYCORIS',
'TEXTUAL INVERSION',
],
value=[self.current_tab],
columns = 5,
max_height = 2,
relx=8,
scroll_exit = True,
)
self.tabs.on_changed = self._toggle_tables
top_of_table = self.nextrely
self.starter_diffusers_models = self.add_starter_diffusers()
bottom_of_table = self.nextrely
self.nextrely = top_of_table
self.diffusers_models = self.add_diffusers_widgets(
predefined_models=self.installed_diffusers_models,
model_type='Diffusers',
window_width=window_width,
)
bottom_of_table = max(bottom_of_table,self.nextrely)
self.nextrely = top_of_table
self.controlnet_models = self.add_model_widgets(
predefined_models=self.installed_cn_models,
model_type='ControlNet',
window_width=window_width,
)
bottom_of_table = max(bottom_of_table,self.nextrely)
self.nextrely = top_of_table
self.lora_models = self.add_model_widgets(
predefined_models=self.installed_lora_models,
model_type="LoRA/LyCORIS",
window_width=window_width,
)
bottom_of_table = max(bottom_of_table,self.nextrely)
self.nextrely = top_of_table
self.ti_models = self.add_model_widgets(
predefined_models=self.installed_ti_models,
model_type="Textual Inversion Embeddings",
window_width=window_width,
)
bottom_of_table = max(bottom_of_table,self.nextrely)
self.nextrely = bottom_of_table+1
self.monitor = self.add_widget_intelligent(
BufferBox,
name='Log Messages',
editable=False,
max_height = 16,
)
self.nextrely += 1
done_label = "APPLY CHANGES"
back_label = "BACK"
if self.multipage:
self.back_button = self.add_widget_intelligent(
npyscreen.ButtonPress,
name=back_label,
rely=-3,
when_pressed_function=self.on_back,
)
self.ok_button = self.add_widget_intelligent(
npyscreen.ButtonPress,
name=done_label,
relx=(window_width - len(done_label)) // 2,
rely=-3,
when_pressed_function=self.on_execute
)
label = "APPLY CHANGES & EXIT"
self.done = self.add_widget_intelligent(
npyscreen.ButtonPress,
name=label,
rely=-3,
relx=window_width-len(label)-15,
when_pressed_function=self.on_done,
)
# This restores the selected page on return from an installation
for i in range(1,self.current_tab+1):
self.tabs.h_cursor_line_down(1)
self._toggle_tables([self.current_tab])
############# diffusers tab ##########
def add_starter_diffusers(self)->dict[str, npyscreen.widget]:
'''Add widgets responsible for selecting diffusers models'''
widgets = dict()
starter_model_labels = self._get_starter_model_labels()
recommended_models = [
x
for x in self.starter_model_list
if self.starter_models[x].get("recommended", False)
]
self.installed_models = sorted(
[x for x in list(self.starter_models.keys()) if x in self.existing_models]
)
widgets.update(
label1 = self.add_widget_intelligent(
CenteredTitleText,
name="Select from a starter set of Stable Diffusion models from HuggingFace.",
editable=False,
labelColor="CAUTION",
)
)
self.nextrely -= 1
# if user has already installed some initial models, then don't patronize them
# by showing more recommendations
show_recommended = not self.existing_models
widgets.update(
models_selected = self.add_widget_intelligent(
MultiSelectColumns,
columns=1,
name="Install Starter Models",
values=starter_model_labels,
value=[
self.starter_model_list.index(x)
for x in self.starter_model_list
if (show_recommended and x in recommended_models)\
or (x in self.existing_models)
],
max_height=len(starter_model_labels) + 1,
relx=4,
scroll_exit=True,
)
)
widgets.update(
purge_deleted = self.add_widget_intelligent(
npyscreen.Checkbox,
name="Purge unchecked diffusers models from disk",
value=False,
scroll_exit=True,
relx=4,
)
)
widgets['purge_deleted'].when_value_edited = lambda: self.sync_purge_buttons(widgets['purge_deleted'])
self.nextrely += 1
return widgets
############# Add a set of model install widgets ########
def add_model_widgets(self,
predefined_models: dict[str,bool],
model_type: str,
window_width: int=120,
install_prompt: str=None,
add_purge_deleted: bool=False,
)->dict[str,npyscreen.widget]:
'''Generic code to create model selection widgets'''
widgets = dict()
model_list = sorted(predefined_models.keys())
if len(model_list) > 0:
max_width = max([len(x) for x in model_list])
columns = window_width // (max_width+8) # 8 characters for "[x] " and padding
columns = min(len(model_list),columns) or 1
prompt = install_prompt or f"Select the desired {model_type} models to install. Unchecked models will be purged from disk."
widgets.update(
label1 = self.add_widget_intelligent(
CenteredTitleText,
name=prompt,
editable=False,
labelColor="CAUTION",
)
)
widgets.update(
models_selected = self.add_widget_intelligent(
MultiSelectColumns,
columns=columns,
name=f"Install {model_type} Models",
values=model_list,
value=[
model_list.index(x)
for x in model_list
if predefined_models[x]
],
max_height=len(model_list)//columns + 1,
relx=4,
scroll_exit=True,
)
)
if add_purge_deleted:
self.nextrely += 1
widgets.update(
purge_deleted = self.add_widget_intelligent(
npyscreen.Checkbox,
name="Purge unchecked diffusers models from disk",
value=False,
scroll_exit=True,
relx=4,
)
)
widgets['purge_deleted'].when_value_edited = lambda: self.sync_purge_buttons(widgets['purge_deleted'])
self.nextrely += 1
widgets.update(
download_ids = self.add_widget_intelligent(
TextBox,
name = "Additional URLs, or HuggingFace repo_ids to install (Space separated. Use shift-control-V to paste):",
max_height=4,
scroll_exit=True,
editable=True,
)
)
return widgets
### Tab for arbitrary diffusers widgets ###
def add_diffusers_widgets(self,
predefined_models: dict[str,bool],
model_type: str='Diffusers',
window_width: int=120,
)->dict[str,npyscreen.widget]:
'''Similar to add_model_widgets() but adds some additional widgets at the bottom
to support the autoload directory'''
widgets = self.add_model_widgets(
predefined_models,
'Diffusers',
window_width,
install_prompt="Additional diffusers models already installed.",
add_purge_deleted=True
)
label = "Directory to scan for models to automatically import (<tab> autocompletes):"
self.nextrely += 1
widgets.update(
autoload_directory = self.add_widget_intelligent(
FileBox,
max_height=3,
name=label,
value=str(config.autoconvert_dir) if config.autoconvert_dir else None,
select_dir=True,
must_exist=True,
use_two_lines=False,
labelColor="DANGER",
begin_entry_at=len(label)+1,
scroll_exit=True,
)
)
widgets.update(
autoscan_on_startup = self.add_widget_intelligent(
npyscreen.Checkbox,
name="Scan and import from this directory each time InvokeAI starts",
value=config.autoconvert_dir is not None,
relx=4,
scroll_exit=True,
)
)
return widgets
def sync_purge_buttons(self,checkbox):
value = checkbox.value
self.starter_diffusers_models['purge_deleted'].value = value
self.diffusers_models['purge_deleted'].value = value
def resize(self):
super().resize()
if (s := self.starter_diffusers_models.get("models_selected")):
s.values = self._get_starter_model_labels()
def _toggle_tables(self, value=None):
selected_tab = value[0]
widgets = [
self.starter_diffusers_models,
self.diffusers_models,
self.controlnet_models,
self.lora_models,
self.ti_models,
]
for group in widgets:
for k,v in group.items():
v.hidden = True
v.editable = False
for k,v in widgets[selected_tab].items():
v.hidden = False
if not isinstance(v,(npyscreen.FixedText, npyscreen.TitleFixedText, CenteredTitleText)):
v.editable = True
self.__class__.current_tab = selected_tab # for persistence
self.display()
def _get_starter_model_labels(self) -> List[str]:
window_width, window_height = get_terminal_size()
label_width = 25
checkbox_width = 4
spacing_width = 2
description_width = window_width - label_width - checkbox_width - spacing_width
im = self.starter_models
names = self.starter_model_list
descriptions = [
im[x].description[0 : description_width - 3] + "..."
if len(im[x].description) > description_width
else im[x].description
for x in names
]
return [
f"%-{label_width}s %s" % (names[x], descriptions[x])
for x in range(0, len(names))
]
def _get_columns(self) -> int:
window_width, window_height = get_terminal_size()
cols = (
4
if window_width > 240
else 3
if window_width > 160
else 2
if window_width > 80
else 1
)
return min(cols, len(self.installed_models))
def on_execute(self):
self.monitor.entry_widget.buffer(['Processing...'],scroll_end=True)
self.marshall_arguments()
app = self.parentApp
self.ok_button.hidden = True
self.display()
# for communication with the subprocess
parent_conn, child_conn = Pipe()
p = Process(
target = process_and_execute,
kwargs=dict(
opt = app.program_opts,
selections = app.user_selections,
conn_out = child_conn,
)
)
p.start()
child_conn.close()
self.subprocess_connection = parent_conn
self.subprocess = p
app.user_selections = UserSelections()
# process_and_execute(app.opt, app.user_selections)
def on_back(self):
self.parentApp.switchFormPrevious()
self.editing = False
def on_cancel(self):
self.parentApp.setNextForm(None)
self.parentApp.user_cancelled = True
self.editing = False
def on_done(self):
self.marshall_arguments()
self.parentApp.setNextForm(None)
self.parentApp.user_cancelled = False
self.editing = False
########## This routine monitors the child process that is performing model installation and removal #####
def while_waiting(self):
'''Called during idle periods. Main task is to update the Log Messages box with messages
from the child process that does the actual installation/removal'''
c = self.subprocess_connection
if not c:
return
monitor_widget = self.monitor.entry_widget
while c.poll():
try:
data = c.recv_bytes().decode('utf-8')
data.strip('\n')
# processing child is requesting user input to select the
# right configuration file
if data.startswith('*need v2 config'):
_,model_path,*_ = data.split(":",2)
self._return_v2_config(model_path)
# processing child is done
elif data=='*done*':
self._close_subprocess_and_regenerate_form()
break
# update the log message box
else:
data=make_printable(data)
data=data.replace('[A','')
monitor_widget.buffer(
textwrap.wrap(data,
width=monitor_widget.width,
subsequent_indent=' ',
),
scroll_end=True
)
self.display()
except (EOFError,OSError):
self.subprocess_connection = None
def _return_v2_config(self,model_path: str):
c = self.subprocess_connection
model_name = Path(model_path).name
message = select_stable_diffusion_config_file(model_name=model_name)
c.send_bytes(message.encode('utf-8'))
def _close_subprocess_and_regenerate_form(self):
app = self.parentApp
self.subprocess_connection.close()
self.subprocess_connection = None
self.monitor.entry_widget.buffer(['** Action Complete **'])
self.display()
# rebuild the form, saving and restoring some of the fields that need to be preserved.
saved_messages = self.monitor.entry_widget.values
autoload_dir = self.diffusers_models['autoload_directory'].value
autoscan = self.diffusers_models['autoscan_on_startup'].value
app.main_form = app.addForm(
"MAIN", addModelsForm, name="Install Stable Diffusion Models", multipage=self.multipage,
)
app.switchForm("MAIN")
app.main_form.monitor.entry_widget.values = saved_messages
app.main_form.monitor.entry_widget.buffer([''],scroll_end=True)
app.main_form.diffusers_models['autoload_directory'].value = autoload_dir
app.main_form.diffusers_models['autoscan_on_startup'].value = autoscan
###############################################################
def list_additional_diffusers_models(self,
manager: ModelManager,
starters:dict
)->dict[str,bool]:
'''Return a dict of all the currently installed models that are not on the starter list'''
model_info = manager.list_models()
additional_models = {
x:True for x in model_info \
if model_info[x]['format']=='diffusers' \
and x not in starters
}
return additional_models
def marshall_arguments(self):
"""
Assemble arguments and store as attributes of the application:
.starter_models: dict of model names to install from INITIAL_CONFIGURE.yaml
True => Install
False => Remove
.scan_directory: Path to a directory of models to scan and import
.autoscan_on_startup: True if invokeai should scan and import at startup time
.import_model_paths: list of URLs, repo_ids and file paths to import
"""
# we're using a global here rather than storing the result in the parentapp
# due to some bug in npyscreen that is causing attributes to be lost
selections = self.parentApp.user_selections
# Starter models to install/remove
starter_models = dict(
map(
lambda x: (self.starter_model_list[x], True),
self.starter_diffusers_models['models_selected'].value,
)
)
selections.purge_deleted_models = self.starter_diffusers_models['purge_deleted'].value or \
self.diffusers_models['purge_deleted'].value
selections.install_models = [x for x in starter_models if x not in self.existing_models]
selections.remove_models = [x for x in self.starter_model_list if x in self.existing_models and x not in starter_models]
# "More" models
selections.import_model_paths = self.diffusers_models['download_ids'].value.split()
if diffusers_selected := self.diffusers_models.get('models_selected'):
selections.remove_models.extend([x
for x in diffusers_selected.values
if self.installed_diffusers_models[x]
and diffusers_selected.values.index(x) not in diffusers_selected.value
]
)
# TODO: REFACTOR THIS REPETITIVE CODE
if cn_models_selected := self.controlnet_models.get('models_selected'):
selections.install_cn_models = [cn_models_selected.values[x]
for x in cn_models_selected.value
if not self.installed_cn_models[cn_models_selected.values[x]]
]
selections.remove_cn_models = [x
for x in cn_models_selected.values
if self.installed_cn_models[x]
and cn_models_selected.values.index(x) not in cn_models_selected.value
]
if (additional_cns := self.controlnet_models['download_ids'].value.split()):
valid_cns = [x for x in additional_cns if '/' in x]
selections.install_cn_models.extend(valid_cns)
# same thing, for LoRAs
if loras_selected := self.lora_models.get('models_selected'):
selections.install_lora_models = [loras_selected.values[x]
for x in loras_selected.value
if not self.installed_lora_models[loras_selected.values[x]]
]
selections.remove_lora_models = [x
for x in loras_selected.values
if self.installed_lora_models[x]
and loras_selected.values.index(x) not in loras_selected.value
]
if (additional_loras := self.lora_models['download_ids'].value.split()):
selections.install_lora_models.extend(additional_loras)
# same thing, for TIs
# TODO: refactor
if tis_selected := self.ti_models.get('models_selected'):
selections.install_ti_models = [tis_selected.values[x]
for x in tis_selected.value
if not self.installed_ti_models[tis_selected.values[x]]
]
selections.remove_ti_models = [x
for x in tis_selected.values
if self.installed_ti_models[x]
and tis_selected.values.index(x) not in tis_selected.value
]
if (additional_tis := self.ti_models['download_ids'].value.split()):
selections.install_ti_models.extend(additional_tis)
# load directory and whether to scan on startup
selections.scan_directory = self.diffusers_models['autoload_directory'].value
selections.autoscan_on_startup = self.diffusers_models['autoscan_on_startup'].value
class AddModelApplication(npyscreen.NPSAppManaged):
def __init__(self,opt):
super().__init__()
self.program_opts = opt
self.user_cancelled = False
self.user_selections = UserSelections()
def onStart(self):
npyscreen.setTheme(npyscreen.Themes.DefaultTheme)
self.main_form = self.addForm(
"MAIN", addModelsForm, name="Install Stable Diffusion Models", cycle_widgets=True,
)
class StderrToMessage():
def __init__(self, connection: Connection):
self.connection = connection
def write(self, data:str):
self.connection.send_bytes(data.encode('utf-8'))
def flush(self):
pass
# --------------------------------------------------------
def ask_user_for_config_file(model_path: Path,
tui_conn: Connection=None
)->Path:
if tui_conn:
logger.debug('Waiting for user response...')
return _ask_user_for_cf_tui(model_path, tui_conn)
else:
return _ask_user_for_cf_cmdline(model_path)
def _ask_user_for_cf_cmdline(model_path):
choices = [
config.legacy_conf_path / x
for x in ['v2-inference.yaml','v2-inference-v.yaml']
]
choices.extend([None])
print(
f"""
Please select the type of the V2 checkpoint named {model_path.name}:
[1] A Stable Diffusion v2.x base model (512 pixels; there should be no 'parameterization:' line in its yaml file)
[2] A Stable Diffusion v2.x v-predictive model (768 pixels; look for a 'parameterization: "v"' line in its yaml file)
[3] Skip this model and come back later.
"""
)
choice = None
ok = False
while not ok:
try:
choice = input('select> ').strip()
choice = choices[int(choice)-1]
ok = True
except (ValueError, IndexError):
print(f'{choice} is not a valid choice')
except EOFError:
return
return choice
def _ask_user_for_cf_tui(model_path: Path, tui_conn: Connection)->Path:
try:
tui_conn.send_bytes(f'*need v2 config for:{model_path}'.encode('utf-8'))
# note that we don't do any status checking here
response = tui_conn.recv_bytes().decode('utf-8')
if response is None:
return None
elif response == 'epsilon':
return config.legacy_conf_path / 'v2-inference.yaml'
elif response == 'v':
return config.legacy_conf_path / 'v2-inference-v.yaml'
elif response == 'abort':
logger.info('Conversion aborted')
return None
else:
return Path(response)
except:
return None
# --------------------------------------------------------
def process_and_execute(opt: Namespace,
selections: UserSelections,
conn_out: Connection=None,
):
# set up so that stderr is sent to conn_out
if conn_out:
translator = StderrToMessage(conn_out)
sys.stderr = translator
sys.stdout = translator
logger = InvokeAILogger.getLogger()
logger.handlers.clear()
logger.addHandler(logging.StreamHandler(translator))
models_to_install = selections.install_models
models_to_remove = selections.remove_models
directory_to_scan = selections.scan_directory
scan_at_startup = selections.autoscan_on_startup
potential_models_to_install = selections.import_model_paths
install_requested_models(
diffusers = ModelInstallList(models_to_install, models_to_remove),
controlnet = ModelInstallList(selections.install_cn_models, selections.remove_cn_models),
lora = ModelInstallList(selections.install_lora_models, selections.remove_lora_models),
ti = ModelInstallList(selections.install_ti_models, selections.remove_ti_models),
scan_directory=Path(directory_to_scan) if directory_to_scan else None,
external_models=potential_models_to_install,
scan_at_startup=scan_at_startup,
precision="float32"
if opt.full_precision
else choose_precision(torch.device(choose_torch_device())),
purge_deleted=selections.purge_deleted_models,
config_file_path=Path(opt.config_file) if opt.config_file else config.model_conf_path,
model_config_file_callback = lambda x: ask_user_for_config_file(x,conn_out)
)
if conn_out:
conn_out.send_bytes('*done*'.encode('utf-8'))
conn_out.close()
def do_listings(opt)->bool:
"""List installed models of various sorts, and return
True if any were requested."""
model_manager = ModelManager(config.model_conf_path)
if opt.list_models == 'diffusers':
print("Diffuser models:")
model_manager.print_models()
elif opt.list_models == 'controlnets':
print("Installed Controlnet Models:")
cnm = model_manager.list_controlnet_models()
print(textwrap.indent("\n".join([x for x in cnm if cnm[x]]),prefix=' '))
elif opt.list_models == 'loras':
print("Installed LoRA/LyCORIS Models:")
cnm = model_manager.list_lora_models()
print(textwrap.indent("\n".join([x for x in cnm if cnm[x]]),prefix=' '))
elif opt.list_models == 'tis':
print("Installed Textual Inversion Embeddings:")
cnm = model_manager.list_ti_models()
print(textwrap.indent("\n".join([x for x in cnm if cnm[x]]),prefix=' '))
else:
return False
return True
# --------------------------------------------------------
def select_and_download_models(opt: Namespace):
precision = (
"float32"
if opt.full_precision
else choose_precision(torch.device(choose_torch_device()))
)
if do_listings(opt):
pass
# this processes command line additions/removals
elif opt.diffusers or opt.controlnets or opt.textual_inversions or opt.loras:
action = 'remove_models' if opt.delete else 'install_models'
diffusers_args = {'diffusers':ModelInstallList(remove_models=opt.diffusers or [])} \
if opt.delete \
else {'external_models':opt.diffusers or []}
install_requested_models(
**diffusers_args,
controlnet=ModelInstallList(**{action:opt.controlnets or []}),
ti=ModelInstallList(**{action:opt.textual_inversions or []}),
lora=ModelInstallList(**{action:opt.loras or []}),
precision=precision,
purge_deleted=True,
model_config_file_callback=lambda x: ask_user_for_config_file(x),
)
elif opt.default_only:
install_requested_models(
diffusers=ModelInstallList(install_models=default_dataset()),
precision=precision,
)
elif opt.yes_to_all:
install_requested_models(
diffusers=ModelInstallList(install_models=recommended_datasets()),
precision=precision,
)
# this is where the TUI is called
else:
# needed because the torch library is loaded, even though we don't use it
torch.multiprocessing.set_start_method("spawn")
# the third argument is needed in the Windows 11 environment in
# order to launch and resize a console window running this program
set_min_terminal_size(MIN_COLS, MIN_LINES,'invokeai-model-install')
installApp = AddModelApplication(opt)
try:
installApp.run()
except KeyboardInterrupt as e:
if hasattr(installApp,'main_form'):
if installApp.main_form.subprocess \
and installApp.main_form.subprocess.is_alive():
logger.info('Terminating subprocesses')
installApp.main_form.subprocess.terminate()
installApp.main_form.subprocess = None
raise e
process_and_execute(opt, installApp.user_selections)
# -------------------------------------
def main():
parser = argparse.ArgumentParser(description="InvokeAI model downloader")
parser.add_argument(
"--diffusers",
nargs="*",
help="List of URLs or repo_ids of diffusers to install/delete",
)
parser.add_argument(
"--loras",
nargs="*",
help="List of URLs or repo_ids of LoRA/LyCORIS models to install/delete",
)
parser.add_argument(
"--controlnets",
nargs="*",
help="List of URLs or repo_ids of controlnet models to install/delete",
)
parser.add_argument(
"--textual-inversions",
nargs="*",
help="List of URLs or repo_ids of textual inversion embeddings to install/delete",
)
parser.add_argument(
"--delete",
action="store_true",
help="Delete models listed on command line rather than installing them",
)
parser.add_argument(
"--full-precision",
dest="full_precision",
action=argparse.BooleanOptionalAction,
type=bool,
default=False,
help="use 32-bit weights instead of faster 16-bit weights",
)
parser.add_argument(
"--yes",
"-y",
dest="yes_to_all",
action="store_true",
help='answer "yes" to all prompts',
)
parser.add_argument(
"--default_only",
action="store_true",
help="only install the default model",
)
parser.add_argument(
"--list-models",
choices=["diffusers","loras","controlnets","tis"],
help="list installed models",
)
parser.add_argument(
"--config_file",
"-c",
dest="config_file",
type=str,
default=None,
help="path to configuration file to create",
)
parser.add_argument(
"--root_dir",
dest="root",
type=str,
default=None,
help="path to root of install directory",
)
opt = parser.parse_args()
invoke_args = []
if opt.root:
invoke_args.extend(['--root',opt.root])
if opt.full_precision:
invoke_args.extend(['--precision','float32'])
config.parse_args(invoke_args)
logger = InvokeAILogger().getLogger(config=config)
if not (config.root_dir / config.conf_path.parent).exists():
logger.info(
"Your InvokeAI root directory is not set up. Calling invokeai-configure."
)
from invokeai.frontend.install import invokeai_configure
invokeai_configure()
sys.exit(0)
try:
select_and_download_models(opt)
except AssertionError as e:
logger.error(e)
sys.exit(-1)
except KeyboardInterrupt:
curses.nocbreak()
curses.echo()
curses.endwin()
logger.info("Goodbye! Come back soon.")
except widget.NotEnoughSpaceForWidget as e:
if str(e).startswith("Height of 1 allocated"):
logger.error(
"Insufficient vertical space for the interface. Please make your window taller and try again"
)
elif str(e).startswith("addwstr"):
logger.error(
"Insufficient horizontal space for the interface. Please make your window wider and try again."
)
except Exception as e:
print(f'An exception has occurred: {str(e)} Details:')
print(traceback.format_exc(), file=sys.stderr)
input('Press any key to continue...')
# -------------------------------------
if __name__ == "__main__":
main()