Spaces:
Sleeping
Sleeping
import gradio as gr | |
#import urllib.request | |
#import requests | |
#import bs4 | |
#import lxml | |
import os | |
#import subprocess | |
from huggingface_hub import InferenceClient,HfApi | |
import random | |
import json | |
import datetime | |
#from query import tasks | |
from agent import ( | |
PREFIX, | |
COMPRESS_DATA_PROMPT, | |
COMPRESS_DATA_PROMPT_SMALL, | |
LOG_PROMPT, | |
LOG_RESPONSE, | |
) | |
api=HfApi() | |
client = InferenceClient( | |
"mistralai/Mixtral-8x7B-Instruct-v0.1" | |
) | |
def read_txt(txt_path): | |
text="" | |
with open(txt_path,"r") as f: | |
text = f.read() | |
f.close() | |
print (text) | |
return text | |
def read_pdf(pdf_path): | |
from pypdf import PdfReader | |
text="" | |
reader = PdfReader(f'{pdf_path}') | |
number_of_pages = len(reader.pages) | |
for i in range(number_of_pages): | |
page = reader.pages[i] | |
text = f'{text}\n{page.extract_text()}' | |
print (text) | |
return text | |
VERBOSE = True | |
MAX_HISTORY = 100 | |
MAX_DATA = 25000 | |
def format_prompt(message, history): | |
prompt = "<s>" | |
for user_prompt, bot_response in history: | |
prompt += f"[INST] {user_prompt} [/INST]" | |
prompt += f" {bot_response}</s> " | |
prompt += f"[INST] {message} [/INST]" | |
return prompt | |
def run_gpt( | |
prompt_template, | |
stop_tokens, | |
max_tokens, | |
seed, | |
**prompt_kwargs, | |
): | |
print(seed) | |
timestamp=datetime.datetime.now() | |
generate_kwargs = dict( | |
temperature=0.9, | |
max_new_tokens=max_tokens, | |
top_p=0.95, | |
repetition_penalty=1.0, | |
do_sample=True, | |
seed=seed, | |
) | |
content = PREFIX.format( | |
timestamp=timestamp, | |
purpose="Compile the provided data and complete the users task" | |
) + prompt_template.format(**prompt_kwargs) | |
if VERBOSE: | |
print(LOG_PROMPT.format(content)) | |
#formatted_prompt = format_prompt(f"{system_prompt}, {prompt}", history) | |
#formatted_prompt = format_prompt(f'{content}', history) | |
stream = client.text_generation(content, **generate_kwargs, stream=True, details=True, return_full_text=False) | |
resp = "" | |
for response in stream: | |
resp += response.token.text | |
#yield resp | |
if VERBOSE: | |
print(LOG_RESPONSE.format(resp)) | |
return resp | |
def compress_data(c, instruct, history): | |
seed=random.randint(1,1000000000) | |
print (c) | |
#tot=len(purpose) | |
#print(tot) | |
divr=int(c)/MAX_DATA | |
divi=int(divr)+1 if divr != int(divr) else int(divr) | |
chunk = int(int(c)/divr) | |
print(f'chunk:: {chunk}') | |
print(f'divr:: {divr}') | |
print (f'divi:: {divi}') | |
out = [] | |
#out="" | |
s=0 | |
e=chunk | |
print(f'e:: {e}') | |
new_history="" | |
#task = f'Compile this data to fulfill the task: {task}, and complete the purpose: {purpose}\n' | |
for z in range(divi): | |
print(f's:e :: {s}:{e}') | |
hist = history[s:e] | |
resp = run_gpt( | |
COMPRESS_DATA_PROMPT_SMALL, | |
stop_tokens=["observation:", "task:", "action:", "thought:"], | |
max_tokens=4096, | |
seed=seed, | |
direction=instruct, | |
knowledge=new_history, | |
history=hist, | |
) | |
new_history = resp | |
print (resp) | |
out+=resp | |
e=e+chunk | |
s=s+chunk | |
resp = run_gpt( | |
COMPRESS_DATA_PROMPT, | |
stop_tokens=["observation:", "task:", "action:", "thought:"], | |
max_tokens=8192, | |
seed=seed, | |
direction=instruct, | |
knowledge=new_history, | |
history="All data has been recieved.", | |
) | |
print ("final" + resp) | |
#history = "observation: {}\n".format(resp) | |
return resp | |
def summarize(inp,history,data=None,files=None): | |
if inp == "": | |
inp = "Summarize this data" | |
history = [(inp,"Working on it...")] | |
yield "",history | |
if files: | |
try: | |
for i, file in enumerate(files): | |
print (file) | |
if file.endswith(".pdf"): | |
zz=read_pdf(file) | |
print (zz) | |
data=f'{data}\nFile Name ({file}):\n{zz}' | |
elif file.endswith(".txt"): | |
zz=read_txt(file) | |
print (zz) | |
data=f'{data}\nFile Name ({file}):\n{zz}' | |
except Exception as e: | |
data = "Error" | |
print (e) | |
if data != "Error" and data != "": | |
print(inp) | |
out = str(data) | |
rl = len(out) | |
print(f'rl:: {rl}') | |
c=1 | |
for i in str(out): | |
if i == " " or i=="," or i=="\n": | |
c +=1 | |
print (f'c:: {c}') | |
rawp = compress_data(c,inp,out) | |
else: | |
rawp = "Provide a valid data source" | |
#print (rawp) | |
#print (f'out:: {out}') | |
#history += "observation: the search results are:\n {}\n".format(out) | |
#task = "complete?" | |
history.clear() | |
history.append((inp,rawp)) | |
yield "", history | |
################################# | |
def clear_fn(): | |
return "",[(None,None)] | |
with gr.Blocks() as app: | |
gr.HTML("""<center><h1>Mixtral 8x7B TLDR Summarizer</h1><h3>Summarize Data of unlimited length</h3>""") | |
chatbot = gr.Chatbot() | |
with gr.Row(): | |
with gr.Column(scale=3): | |
prompt=gr.Textbox(label = "Instructions (optional)") | |
with gr.Column(scale=1): | |
button=gr.Button() | |
#models_dd=gr.Dropdown(choices=[m for m in return_list],interactive=True) | |
with gr.Row(): | |
stop_button=gr.Button("Stop") | |
clear_btn = gr.Button("Clear") | |
with gr.Row(): | |
data=gr.Textbox(label="Input Data (paste text)", lines=6) | |
file=gr.Files(label="Input File(s) (.pdf .txt)") | |
#text=gr.JSON() | |
#inp_query.change(search_models,inp_query,models_dd) | |
clear_btn.click(clear_fn,None,[prompt,chatbot]) | |
go=button.click(summarize,[prompt,chatbot,data,file],[prompt,chatbot],concurrency_limit=1) | |
stop_button.click(None,None,None,cancels=[go]) | |
app.launch(server_port=7860,show_api=False) |