2022-12-21 11:27:31 -05:00
import re
2023-01-05 23:33:21 -05:00
import time
import glob
2023-01-06 17:56:44 -05:00
from sys import exit
2022-12-21 11:27:31 -05:00
import torch
2023-01-06 17:56:44 -05:00
import argparse
2023-01-15 13:23:41 -05:00
import json
2023-01-07 14:33:43 -05:00
from pathlib import Path
2022-12-21 11:27:31 -05:00
import gradio as gr
import transformers
2023-01-06 21:14:08 -05:00
from html_generator import *
2023-01-15 21:15:30 -05:00
from transformers import AutoTokenizer , AutoModelForCausalLM
2023-01-14 22:39:51 -05:00
import warnings
2022-12-21 11:27:31 -05:00
2023-01-06 21:14:08 -05:00
2023-01-15 13:23:41 -05:00
transformers . logging . set_verbosity_error ( )
2023-01-06 17:56:44 -05:00
parser = argparse . ArgumentParser ( )
2023-01-06 18:22:26 -05:00
parser . add_argument ( ' --model ' , type = str , help = ' Name of the model to load by default. ' )
parser . add_argument ( ' --notebook ' , action = ' store_true ' , help = ' Launch the webui in notebook mode, where the output is written to the same text box as the input. ' )
2023-01-07 20:52:46 -05:00
parser . add_argument ( ' --chat ' , action = ' store_true ' , help = ' Launch the webui in chat mode. ' )
2023-01-15 13:45:25 -05:00
parser . add_argument ( ' --cai-chat ' , action = ' store_true ' , help = ' Launch the webui in chat mode with a style similar to Character.AI \' s. If the file profile.png or profile.jpg exists in the same folder as server.py, this image will be used as the bot \' s profile picture. ' )
2023-01-09 08:58:46 -05:00
parser . add_argument ( ' --cpu ' , action = ' store_true ' , help = ' Use the CPU to generate text. ' )
2023-01-10 21:16:33 -05:00
parser . add_argument ( ' --auto-devices ' , action = ' store_true ' , help = ' Automatically split the model across the available GPU(s) and CPU. ' )
parser . add_argument ( ' --load-in-8bit ' , action = ' store_true ' , help = ' Load the model with 8-bit precision. ' )
2023-01-15 23:52:28 -05:00
parser . add_argument ( ' --max-gpu-memory ' , type = int , help = ' Maximum memory in GiB to allocate to the GPU while loading the model. This is useful if you get out of memory errors while trying to generate text. Must be an integer number. ' )
2023-01-10 23:10:11 -05:00
parser . add_argument ( ' --no-listen ' , action = ' store_true ' , help = ' Make the webui unreachable from your local network. ' )
2023-01-15 13:30:39 -05:00
parser . add_argument ( ' --settings-file ' , type = str , help = ' Load default interface settings from this json file. See settings-template.json for an example. ' )
2023-01-06 17:56:44 -05:00
args = parser . parse_args ( )
2023-01-14 22:39:51 -05:00
2023-01-06 00:06:59 -05:00
loaded_preset = None
2023-01-07 14:33:43 -05:00
available_models = sorted ( set ( map ( lambda x : str ( x . name ) . replace ( ' .pt ' , ' ' ) , list ( Path ( ' models/ ' ) . glob ( ' * ' ) ) + list ( Path ( ' torch-dumps/ ' ) . glob ( ' * ' ) ) ) ) )
2023-01-06 21:14:08 -05:00
available_models = [ item for item in available_models if not item . endswith ( ' .txt ' ) ]
2023-01-10 23:17:20 -05:00
available_models = sorted ( available_models , key = str . lower )
2023-01-07 14:33:43 -05:00
available_presets = sorted ( set ( map ( lambda x : str ( x . name ) . split ( ' . ' ) [ 0 ] , list ( Path ( ' presets ' ) . glob ( ' *.txt ' ) ) ) ) )
2023-01-05 23:33:21 -05:00
2023-01-15 13:23:41 -05:00
settings = {
' max_new_tokens ' : 200 ,
' max_new_tokens_min ' : 1 ,
' max_new_tokens_max ' : 2000 ,
' preset ' : ' NovelAI-Sphinx Moth ' ,
' name1 ' : ' Person 1 ' ,
' name2 ' : ' Person 2 ' ,
' name1_pygmalion ' : ' You ' ,
' name2_pygmalion ' : ' Kawaii ' ,
' context ' : ' This is a conversation between two people. ' ,
' context_pygmalion ' : ' This is a conversation between two people. \n <START> ' ,
' prompt ' : ' Common sense questions and answers \n \n Question: \n Factual answer: ' ,
' prompt_gpt4chan ' : ' ----- \n --- 865467536 \n Input text \n --- 865467537 \n ' ,
' stop_at_newline ' : True ,
}
if args . settings_file is not None and Path ( args . settings_file ) . exists ( ) :
with open ( Path ( args . settings_file ) , ' r ' ) as f :
new_settings = json . load ( f )
for i in new_settings :
if i in settings :
settings [ i ] = new_settings [ i ]
2023-01-14 22:39:51 -05:00
2022-12-21 11:27:31 -05:00
def load_model ( model_name ) :
2023-01-05 23:41:52 -05:00
print ( f " Loading { model_name } ... " )
2022-12-21 11:27:31 -05:00
t0 = time . time ( )
2023-01-05 23:41:52 -05:00
2023-01-10 21:16:33 -05:00
# Default settings
2023-01-15 20:33:35 -05:00
if not ( args . cpu or args . auto_devices or args . load_in_8bit or args . max_gpu_memory is not None ) :
2023-01-10 21:16:33 -05:00
if Path ( f " torch-dumps/ { model_name } .pt " ) . exists ( ) :
print ( " Loading in .pt format... " )
model = torch . load ( Path ( f " torch-dumps/ { model_name } .pt " ) )
elif model_name . lower ( ) . startswith ( ( ' gpt-neo ' , ' opt- ' , ' galactica ' ) ) and any ( size in model_name . lower ( ) for size in ( ' 13b ' , ' 20b ' , ' 30b ' ) ) :
model = AutoModelForCausalLM . from_pretrained ( Path ( f " models/ { model_name } " ) , device_map = ' auto ' , load_in_8bit = True )
else :
model = AutoModelForCausalLM . from_pretrained ( Path ( f " models/ { model_name } " ) , low_cpu_mem_usage = True , torch_dtype = torch . float16 ) . cuda ( )
# Custom
2023-01-06 00:54:33 -05:00
else :
2023-01-10 21:16:33 -05:00
settings = [ " low_cpu_mem_usage=True " ]
2023-01-10 21:39:50 -05:00
command = " AutoModelForCausalLM.from_pretrained "
2023-01-10 21:16:33 -05:00
2023-01-09 14:28:04 -05:00
if args . cpu :
2023-01-10 21:16:33 -05:00
settings . append ( " torch_dtype=torch.float32 " )
2023-01-09 14:28:04 -05:00
else :
2023-01-15 21:01:51 -05:00
settings . append ( " device_map= ' auto ' " )
2023-01-15 20:33:35 -05:00
if args . max_gpu_memory is not None :
settings . append ( f " max_memory= {{ 0: ' { args . max_gpu_memory } GiB ' , ' cpu ' : ' 99GiB ' }} " )
2023-01-15 21:01:51 -05:00
if args . load_in_8bit :
2023-01-10 21:16:33 -05:00
settings . append ( " load_in_8bit=True " )
else :
settings . append ( " torch_dtype=torch.float16 " )
2023-01-15 20:33:35 -05:00
settings = ' , ' . join ( list ( set ( settings ) ) )
2023-01-15 21:01:51 -05:00
command = f " { command } (Path(f ' models/ { model_name } ' ), { settings } ) "
2023-01-10 21:16:33 -05:00
model = eval ( command )
2022-12-21 11:27:31 -05:00
2023-01-06 00:54:33 -05:00
# Loading the tokenizer
2023-01-10 23:10:11 -05:00
if model_name . lower ( ) . startswith ( ( ' gpt4chan ' , ' gpt-4chan ' , ' 4chan ' ) ) and Path ( f " models/gpt-j-6B/ " ) . exists ( ) :
2023-01-07 14:33:43 -05:00
tokenizer = AutoTokenizer . from_pretrained ( Path ( " models/gpt-j-6B/ " ) )
2022-12-21 11:27:31 -05:00
else :
2023-01-07 14:33:43 -05:00
tokenizer = AutoTokenizer . from_pretrained ( Path ( f " models/ { model_name } / " ) )
2022-12-21 11:27:31 -05:00
2023-01-06 00:06:59 -05:00
print ( f " Loaded the model in { ( time . time ( ) - t0 ) : .2f } seconds. " )
2022-12-21 11:27:31 -05:00
return model , tokenizer
2023-01-06 00:26:33 -05:00
# Removes empty replies from gpt4chan outputs
2022-12-21 11:27:31 -05:00
def fix_gpt4chan ( s ) :
for i in range ( 10 ) :
s = re . sub ( " --- [0-9]* \n >>[0-9]* \n --- " , " --- " , s )
s = re . sub ( " --- [0-9]* \n * \n --- " , " --- " , s )
s = re . sub ( " --- [0-9]* \n \n \n --- " , " --- " , s )
return s
2023-01-10 23:10:11 -05:00
# Fix the LaTeX equations in GALACTICA
2023-01-06 23:56:21 -05:00
def fix_galactica ( s ) :
s = s . replace ( r ' \ [ ' , r ' $ ' )
s = s . replace ( r ' \ ] ' , r ' $ ' )
2023-01-07 10:13:09 -05:00
s = s . replace ( r ' \ ( ' , r ' $ ' )
s = s . replace ( r ' \ ) ' , r ' $ ' )
s = s . replace ( r ' $$ ' , r ' $ ' )
2023-01-06 23:56:21 -05:00
return s
2023-01-13 12:28:53 -05:00
def generate_reply ( question , tokens , inference_settings , selected_model , eos_token = None ) :
2023-01-06 00:06:59 -05:00
global model , tokenizer , model_name , loaded_preset , preset
2022-12-21 11:27:31 -05:00
if selected_model != model_name :
model_name = selected_model
model = None
2023-01-08 12:37:43 -05:00
tokenizer = None
2023-01-09 08:58:46 -05:00
if not args . cpu :
torch . cuda . empty_cache ( )
2022-12-21 11:27:31 -05:00
model , tokenizer = load_model ( model_name )
2023-01-06 00:06:59 -05:00
if inference_settings != loaded_preset :
2023-01-07 14:33:43 -05:00
with open ( Path ( f ' presets/ { inference_settings } .txt ' ) , ' r ' ) as infile :
2023-01-05 23:33:21 -05:00
preset = infile . read ( )
2023-01-06 00:06:59 -05:00
loaded_preset = inference_settings
2022-12-21 11:27:31 -05:00
2023-01-09 08:58:46 -05:00
if not args . cpu :
torch . cuda . empty_cache ( )
input_ids = tokenizer . encode ( str ( question ) , return_tensors = ' pt ' ) . cuda ( )
cuda = " .cuda() "
else :
input_ids = tokenizer . encode ( str ( question ) , return_tensors = ' pt ' )
cuda = " "
2022-12-21 11:27:31 -05:00
2023-01-08 21:00:38 -05:00
if eos_token is None :
2023-01-09 08:58:46 -05:00
output = eval ( f " model.generate(input_ids, { preset } ) { cuda } " )
2023-01-08 21:00:38 -05:00
else :
2023-01-09 10:56:54 -05:00
n = tokenizer . encode ( eos_token , return_tensors = ' pt ' ) [ 0 ] [ - 1 ]
2023-01-09 08:58:46 -05:00
output = eval ( f " model.generate(input_ids, eos_token_id= { n } , { preset } ) { cuda } " )
2023-01-06 21:14:08 -05:00
2023-01-09 08:58:46 -05:00
reply = tokenizer . decode ( output [ 0 ] , skip_special_tokens = True )
2023-01-10 23:10:11 -05:00
reply = reply . replace ( r ' <|endoftext|> ' , ' ' )
2023-01-06 18:22:26 -05:00
if model_name . lower ( ) . startswith ( ' galactica ' ) :
2023-01-06 23:56:21 -05:00
reply = fix_galactica ( reply )
2023-01-15 14:43:31 -05:00
return reply , reply , generate_basic_html ( reply )
2023-01-06 21:14:08 -05:00
elif model_name . lower ( ) . startswith ( ' gpt4chan ' ) :
2023-01-06 23:56:21 -05:00
reply = fix_gpt4chan ( reply )
2023-01-10 23:10:11 -05:00
return reply , ' Only applicable for galactica models. ' , generate_4chan_html ( reply )
2023-01-06 18:22:26 -05:00
else :
2023-01-15 14:43:31 -05:00
return reply , ' Only applicable for galactica models. ' , generate_basic_html ( reply )
2022-12-21 11:27:31 -05:00
2023-01-06 17:56:44 -05:00
# Choosing the default model
if args . model is not None :
model_name = args . model
else :
2023-01-06 20:05:37 -05:00
if len ( available_models ) == 0 :
2023-01-06 17:56:44 -05:00
print ( " No models are available! Please download at least one. " )
exit ( 0 )
elif len ( available_models ) == 1 :
i = 0
else :
print ( " The following models are available: \n " )
for i , model in enumerate ( available_models ) :
print ( f " { i + 1 } . { model } " )
print ( f " \n Which one do you want to load? 1- { len ( available_models ) } \n " )
i = int ( input ( ) ) - 1
2023-01-09 10:56:54 -05:00
print ( )
2023-01-06 17:56:44 -05:00
model_name = available_models [ i ]
2022-12-21 11:27:31 -05:00
model , tokenizer = load_model ( model_name )
2023-01-06 17:56:44 -05:00
2023-01-08 18:10:31 -05:00
# UI settings
2023-01-07 17:11:21 -05:00
if model_name . lower ( ) . startswith ( ' gpt4chan ' ) :
2023-01-15 13:23:41 -05:00
default_text = settings [ ' prompt_gpt4chan ' ]
2022-12-21 11:27:31 -05:00
else :
2023-01-15 13:23:41 -05:00
default_text = settings [ ' prompt ' ]
2023-01-07 17:11:21 -05:00
2023-01-15 13:23:41 -05:00
description = f " \n \n # Text generation lab \n Generate text using Large Language Models. \n "
2023-01-15 16:16:46 -05:00
css = " .my-4 { margin-top: 0} .py-6 { padding-top: 2.5rem} "
2023-01-06 18:22:26 -05:00
2023-01-08 18:10:31 -05:00
if args . notebook :
with gr . Blocks ( css = css , analytics_enabled = False ) as interface :
gr . Markdown ( description )
2023-01-06 20:05:37 -05:00
with gr . Tab ( ' Raw ' ) :
textbox = gr . Textbox ( value = default_text , lines = 23 )
with gr . Tab ( ' Markdown ' ) :
markdown = gr . Markdown ( )
2023-01-06 21:14:08 -05:00
with gr . Tab ( ' HTML ' ) :
html = gr . HTML ( )
2023-01-06 18:22:26 -05:00
btn = gr . Button ( " Generate " )
2023-01-06 20:05:37 -05:00
2023-01-15 13:23:41 -05:00
length_slider = gr . Slider ( minimum = settings [ ' max_new_tokens_min ' ] , maximum = settings [ ' max_new_tokens_max ' ] , step = 1 , label = ' max_new_tokens ' , value = settings [ ' max_new_tokens ' ] )
2023-01-06 20:05:37 -05:00
with gr . Row ( ) :
with gr . Column ( ) :
model_menu = gr . Dropdown ( choices = available_models , value = model_name , label = ' Model ' )
2023-01-13 12:28:53 -05:00
with gr . Column ( ) :
2023-01-15 13:23:41 -05:00
preset_menu = gr . Dropdown ( choices = available_presets , value = settings [ ' preset ' ] , label = ' Settings preset ' )
2023-01-06 18:22:26 -05:00
2023-01-13 12:00:43 -05:00
btn . click ( generate_reply , [ textbox , length_slider , preset_menu , model_menu ] , [ textbox , markdown , html ] , show_progress = True , api_name = " textgen " )
textbox . submit ( generate_reply , [ textbox , length_slider , preset_menu , model_menu ] , [ textbox , markdown , html ] , show_progress = True )
2023-01-15 10:20:04 -05:00
elif args . chat or args . cai_chat :
2023-01-07 20:52:46 -05:00
history = [ ]
2023-01-14 22:39:51 -05:00
# This gets the new line characters right.
def chat_response_cleaner ( text ) :
2023-01-14 21:50:34 -05:00
text = text . replace ( ' \n ' , ' \n \n ' )
text = re . sub ( r " \ n { 3,} " , " \n \n " , text )
text = text . strip ( )
2023-01-14 22:39:51 -05:00
return text
def chatbot_wrapper ( text , tokens , inference_settings , selected_model , name1 , name2 , context , check ) :
text = chat_response_cleaner ( text )
2023-01-14 21:50:34 -05:00
2023-01-07 20:52:46 -05:00
question = context + ' \n \n '
for i in range ( len ( history ) ) :
2023-01-15 17:41:25 -05:00
if args . cai_chat :
question + = f " { name1 } : { history [ i ] [ 0 ] . strip ( ) } \n "
question + = f " { name2 } : { history [ i ] [ 1 ] . strip ( ) } \n "
else :
question + = f " { name1 } : { history [ i ] [ 0 ] [ 3 : - 5 ] . strip ( ) } \n "
question + = f " { name2 } : { history [ i ] [ 1 ] [ 3 : - 5 ] . strip ( ) } \n "
2023-01-14 21:50:34 -05:00
question + = f " { name1 } : { text } \n "
2023-01-07 20:52:46 -05:00
question + = f " { name2 } : "
2023-01-13 13:02:17 -05:00
if check :
reply = generate_reply ( question , tokens , inference_settings , selected_model , eos_token = ' \n ' ) [ 0 ]
reply = reply [ len ( question ) : ] . split ( ' \n ' ) [ 0 ] . strip ( )
else :
reply = generate_reply ( question , tokens , inference_settings , selected_model ) [ 0 ]
2023-01-14 21:26:14 -05:00
reply = reply [ len ( question ) : ]
2023-01-13 13:02:17 -05:00
idx = reply . find ( f " \n { name1 } : " )
if idx != - 1 :
reply = reply [ : idx ]
2023-01-15 10:20:04 -05:00
reply = chat_response_cleaner ( reply )
2023-01-13 13:02:17 -05:00
2023-01-07 20:52:46 -05:00
history . append ( ( text , reply ) )
return history
2023-01-15 10:20:04 -05:00
def cai_chatbot_wrapper ( text , tokens , inference_settings , selected_model , name1 , name2 , context , check ) :
history = chatbot_wrapper ( text , tokens , inference_settings , selected_model , name1 , name2 , context , check )
return generate_chat_html ( history , name1 , name2 )
def remove_last_message ( name1 , name2 ) :
2023-01-15 01:19:09 -05:00
history . pop ( )
2023-01-15 10:20:04 -05:00
if args . cai_chat :
return generate_chat_html ( history , name1 , name2 )
else :
return history
2023-01-15 01:19:09 -05:00
2023-01-07 20:52:46 -05:00
def clear ( ) :
global history
history = [ ]
2023-01-15 10:20:04 -05:00
def clear_html ( ) :
return generate_chat_html ( [ ] , " " , " " )
2023-01-13 08:12:47 -05:00
if ' pygmalion ' in model_name . lower ( ) :
2023-01-15 13:23:41 -05:00
context_str = settings [ ' context_pygmalion ' ]
name1_str = settings [ ' name1_pygmalion ' ]
name2_str = settings [ ' name2_pygmalion ' ]
2023-01-13 08:12:47 -05:00
else :
2023-01-15 13:23:41 -05:00
context_str = settings [ ' context ' ]
name1_str = settings [ ' name1 ' ]
name2_str = settings [ ' name2 ' ]
2023-01-13 08:12:47 -05:00
2023-01-15 16:16:46 -05:00
with gr . Blocks ( css = css + " .h- \ [40vh \ ] { height: 66.67vh} .gradio-container { max-width: 800px; margin-left: auto; margin-right: auto} " , analytics_enabled = False ) as interface :
if args . cai_chat :
display1 = gr . HTML ( value = generate_chat_html ( [ ] , " " , " " ) )
else :
display1 = gr . Chatbot ( )
textbox = gr . Textbox ( lines = 2 , label = ' Input ' )
btn = gr . Button ( " Generate " )
2023-01-09 15:23:43 -05:00
with gr . Row ( ) :
2023-01-07 20:52:46 -05:00
with gr . Column ( ) :
2023-01-15 16:16:46 -05:00
btn3 = gr . Button ( " Remove last message " )
with gr . Column ( ) :
btn2 = gr . Button ( " Clear history " )
2023-01-13 13:02:17 -05:00
2023-01-15 16:16:46 -05:00
length_slider = gr . Slider ( minimum = settings [ ' max_new_tokens_min ' ] , maximum = settings [ ' max_new_tokens_max ' ] , step = 1 , label = ' max_new_tokens ' , value = settings [ ' max_new_tokens ' ] )
with gr . Row ( ) :
2023-01-07 20:52:46 -05:00
with gr . Column ( ) :
2023-01-15 16:16:46 -05:00
model_menu = gr . Dropdown ( choices = available_models , value = model_name , label = ' Model ' )
with gr . Column ( ) :
preset_menu = gr . Dropdown ( choices = available_presets , value = settings [ ' preset ' ] , label = ' Settings preset ' )
name1 = gr . Textbox ( value = name1_str , lines = 1 , label = ' Your name ' )
name2 = gr . Textbox ( value = name2_str , lines = 1 , label = ' Bot \' s name ' )
context = gr . Textbox ( value = context_str , lines = 2 , label = ' Context ' )
with gr . Row ( ) :
check = gr . Checkbox ( value = settings [ ' stop_at_newline ' ] , label = ' Stop generating at new line character? ' )
2023-01-15 10:20:04 -05:00
if args . cai_chat :
btn . click ( cai_chatbot_wrapper , [ textbox , length_slider , preset_menu , model_menu , name1 , name2 , context , check ] , display1 , show_progress = True , api_name = " textgen " )
textbox . submit ( cai_chatbot_wrapper , [ textbox , length_slider , preset_menu , model_menu , name1 , name2 , context , check ] , display1 , show_progress = True )
btn2 . click ( clear_html , [ ] , display1 , show_progress = False )
else :
btn . click ( chatbot_wrapper , [ textbox , length_slider , preset_menu , model_menu , name1 , name2 , context , check ] , display1 , show_progress = True , api_name = " textgen " )
textbox . submit ( chatbot_wrapper , [ textbox , length_slider , preset_menu , model_menu , name1 , name2 , context , check ] , display1 , show_progress = True )
btn2 . click ( lambda x : " " , display1 , display1 )
2023-01-07 20:52:46 -05:00
btn2 . click ( clear )
2023-01-15 10:20:04 -05:00
btn3 . click ( remove_last_message , [ name1 , name2 ] , display1 , show_progress = False )
2023-01-07 23:10:02 -05:00
btn . click ( lambda x : " " , textbox , textbox , show_progress = False )
2023-01-07 23:33:45 -05:00
textbox . submit ( lambda x : " " , textbox , textbox , show_progress = False )
2023-01-06 18:22:26 -05:00
else :
2023-01-10 23:33:57 -05:00
2023-01-13 12:28:53 -05:00
def continue_wrapper ( question , tokens , inference_settings , selected_model ) :
a , b , c = generate_reply ( question , tokens , inference_settings , selected_model )
2023-01-10 23:33:57 -05:00
return a , a , b , c
2023-01-08 18:10:31 -05:00
with gr . Blocks ( css = css , analytics_enabled = False ) as interface :
gr . Markdown ( description )
2023-01-06 20:05:37 -05:00
with gr . Row ( ) :
with gr . Column ( ) :
textbox = gr . Textbox ( value = default_text , lines = 15 , label = ' Input ' )
2023-01-15 13:23:41 -05:00
length_slider = gr . Slider ( minimum = settings [ ' max_new_tokens_min ' ] , maximum = settings [ ' max_new_tokens_max ' ] , step = 1 , label = ' max_new_tokens ' , value = settings [ ' max_new_tokens ' ] )
preset_menu = gr . Dropdown ( choices = available_presets , value = settings [ ' preset ' ] , label = ' Settings preset ' )
2023-01-06 20:05:37 -05:00
model_menu = gr . Dropdown ( choices = available_models , value = model_name , label = ' Model ' )
btn = gr . Button ( " Generate " )
2023-01-10 23:33:57 -05:00
cont = gr . Button ( " Continue " )
2023-01-06 20:05:37 -05:00
with gr . Column ( ) :
with gr . Tab ( ' Raw ' ) :
2023-01-10 23:36:11 -05:00
output_textbox = gr . Textbox ( lines = 15 , label = ' Output ' )
2023-01-06 20:05:37 -05:00
with gr . Tab ( ' Markdown ' ) :
markdown = gr . Markdown ( )
2023-01-06 21:14:08 -05:00
with gr . Tab ( ' HTML ' ) :
html = gr . HTML ( )
2023-01-06 20:05:37 -05:00
2023-01-13 12:00:43 -05:00
btn . click ( generate_reply , [ textbox , length_slider , preset_menu , model_menu ] , [ output_textbox , markdown , html ] , show_progress = True , api_name = " textgen " )
cont . click ( continue_wrapper , [ output_textbox , length_slider , preset_menu , model_menu ] , [ output_textbox , textbox , markdown , html ] , show_progress = True )
textbox . submit ( generate_reply , [ textbox , length_slider , preset_menu , model_menu ] , [ output_textbox , markdown , html ] , show_progress = True )
2022-12-21 11:27:31 -05:00
2023-01-10 23:10:11 -05:00
if args . no_listen :
2023-01-09 17:05:36 -05:00
interface . launch ( share = False )
2023-01-10 23:10:11 -05:00
else :
interface . launch ( share = False , server_name = " 0.0.0.0 " )