""" RWKV RNN Model - Gradio Space for HuggingFace YT - Mean Gene Hacks - https://www.youtube.com/@MeanGeneHacks (C) Gene Ruebsamen - 2/7/2023 This program is free software: you can redistribute it and/or modify it under the terms of the GNU General Public License as published by the Free Software Foundation, either version 3 of the License, or (at your option) any later version. This program is distributed in the hope that it will be useful, but WITHOUT ANY WARRANTY; without even the implied warranty of MERCHANTABILITY or FITNESS FOR A PARTICULAR PURPOSE. See the GNU General Public License for more details. You should have received a copy of the GNU General Public License along with this program. If not, see . """ import gradio as gr import codecs from ast import literal_eval from datetime import datetime from rwkvstic.load import RWKV from config import config, title import torch import gc DEVICE = "cuda" if torch.cuda.is_available() else "cpu" desc = '''

RNN with Transformer-level LLM Performance (github). According to the author: "It combines the best of RNN and transformers - great performance, fast inference, saves VRAM, fast training, "infinite" ctx_len, and free sentence embedding."''' thanks = '''

Thanks to Gururise for this template

''' def to_md(text): return text.replace("\n", "
") def get_model(): model = None model = RWKV( **config ) return model model = get_model() def infer( prompt, mode="generative", max_new_tokens=10, temperature=0.1, top_p=1.0, stop="<|endoftext|>", end_adj=0.0, seed=42, ): global model if model == None: gc.collect() if (DEVICE == "cuda"): torch.cuda.empty_cache() model = get_model() max_new_tokens = int(max_new_tokens) temperature = float(temperature) end_adj = float(end_adj) top_p = float(top_p) stop = [x.strip(' ') for x in stop.split(',')] seed = seed assert 1 <= max_new_tokens <= 512 assert 0.0 <= temperature <= 5.0 assert 0.0 <= top_p <= 1.0 temperature = max(0.05, temperature) if prompt == "": prompt = " " # Clear model state for generative mode model.resetState() if (mode == "Q/A"): prompt = f"\nQ: {prompt}\n\nA:" if (mode == "ELDR"): prompt = f"\n{prompt}\n\nExpert Long Detailed Response:\n\nHi, thanks for reaching out, we would be happy to answer your question" if (mode == "Expert"): prompt = f"\n{prompt}\n\nExpert Full Response:\n\nHi, thanks for reaching out, we would be happy to answer your question.\n" if (mode == "EFA"): prompt = f'\nAsk Expert\n\nQuestion:\n{prompt}\n\nExpert Full Answer:\n' if (mode == "BFR"): prompt = f"Task given:\n\n{prompt}\n\nBest Full Response:" print(f"PROMPT ({datetime.now()}):\n-------\n{prompt}") print(f"OUTPUT ({datetime.now()}):\n-------\n") # Load prompt model.loadContext(newctx=prompt) generated_text = "" done = False with torch.no_grad(): for _ in range(max_new_tokens): char = model.forward(stopStrings=stop, temp=temperature, top_p_usual=top_p, end_adj=end_adj)[ "output"] print(char, end='', flush=True) generated_text += char generated_text = generated_text.lstrip("\n ") for stop_word in stop: stop_word = codecs.getdecoder("unicode_escape")(stop_word)[0] if stop_word != '' and stop_word in generated_text: done = True break yield generated_text if done: print("\n") break # print(f"{generated_text}") for stop_word in stop: stop_word = codecs.getdecoder("unicode_escape")(stop_word)[0] if stop_word != '' and stop_word in generated_text: generated_text = generated_text[:generated_text.find(stop_word)] gc.collect() yield generated_text username = "USER" intro = f'''The following is a verbose and detailed conversation between an AI assistant called FRITZ, and a human user called USER. FRITZ is intelligent, knowledgeable, wise and polite. {username}: What year was the french revolution? FRITZ: The French Revolution started in 1789, and lasted 10 years until 1799. {username}: 3+5=? FRITZ: The answer is 8. {username}: What year did the Berlin Wall fall? FRITZ: The Berlin wall stood for 28 years and fell in 1989. {username}: solve for a: 9-a=2 FRITZ: The answer is a=7, because 9-7 = 2. {username}: wat is lhc FRITZ: The Large Hadron Collider (LHC) is a high-energy particle collider, built by CERN, and completed in 2008. It was used to confirm the existence of the Higgs boson in 2012. {username}: Tell me about yourself. FRITZ: My name is Fritz. I am an RNN based Large Language Model (LLM). ''' model.resetState() model.loadContext(newctx=intro) chatState = model.getState() model.resetState() def chat( prompt, history, max_new_tokens=10, temperature=0.1, top_p=1.0, seed=42, ): global model global username history = history or [] intro = "" if model == None: gc.collect() if (DEVICE == "cuda"): torch.cuda.empty_cache() model = get_model() username = username.strip() username = username or "USER" if len(history) == 0: # no history, so lets reset chat state model.setState(chatState) history = [[], model.emptyState] print("reset chat state") else: if (history[0][0][0].split(':')[0] != username): model.setState((chatState[0],chatState[1].clone())) history = [[], model.chatState] print("username changed, reset state") else: model.setState((history[1][0],history[1][1].clone())) intro = "" max_new_tokens = int(max_new_tokens) temperature = float(temperature) top_p = float(top_p) seed = seed assert 1 <= max_new_tokens <= 512 assert 0.0 <= temperature <= 3.0 assert 0.0 <= top_p <= 1.0 temperature = max(0.05, temperature) prompt = f"{username}: " + prompt + "\n" print(f"CHAT ({datetime.now()}):\n-------\n{prompt}") print(f"OUTPUT ({datetime.now()}):\n-------\n") # Load prompt model.loadContext(newctx=prompt) out = model.forward(number=max_new_tokens, stopStrings=[ "<|endoftext|>", username+":"], temp=temperature, top_p_usual=top_p) generated_text = out["output"].lstrip("\n ") generated_text = generated_text.rstrip(username+":") print(f"{generated_text}") gc.collect() history[0].append((prompt, generated_text)) return history[0], [history[0], out["state"]] examples = [ [ # Question Answering '''What is the capital of Germany?''', "Q/A", 25, 0.2, 1.0, "<|endoftext|>"], [ # Question Answering '''Are humans good or bad?''', "Q/A", 150, 0.8, 0.8, "<|endoftext|>"], [ # Question Answering '''What is the purpose of Vitamin A?''', "Q/A", 50, 0.2, 0.8, "<|endoftext|>"], [ # Chatbot '''This is a conversation between two AI large language models named Alex and Fritz. They are exploring each other's capabilities, and trying to ask interesting questions of one another to explore the limits of each others AI. Conversation: Alex: Good morning, Fritz, what type of LLM are you based upon? Fritz: Morning Alex, I am an RNN with transformer level performance. My language model is 100% attention free. Alex:''', "generative", 220, 0.9, 0.9, "\\n\\n,<|endoftext|>"], [ # Generate List '''Task given: Please Write a Short story about a cat learning python Best Full Response: ''', "generative", 140, 0.85, 0.8, "<|endoftext|>"], [ # Natural Language Interface '''Here is a short story (in the style of Tolkien) in which Aiden attacks a robot with a sword: ''', "generative", 140, 0.85, 0.8, "<|endoftext|>"] ] iface = gr.Interface( fn=infer, description=f'''

Generative and Question/Answer

{desc}{thanks}''', allow_flagging="never", inputs=[ gr.Textbox(lines=20, label="Prompt"), # prompt gr.Radio(["Freeform", "Q/A","ELDR","Expert","EFR","BFR"], value="Expert", label="Choose Mode"), gr.Slider(1, 512, value=40), # max_tokens gr.Slider(0.0, 5.0, value=0.9), # temperature gr.Slider(0.0, 1.0, value=0.85), # top_p gr.Textbox(lines=1, value="<|endoftext|>"), # stop gr.Slider(-999, 0.0, value=0.0), # end_adj ], outputs=gr.Textbox(label="Generated Output", lines=25), examples=examples, cache_examples=False, ).queue() chatiface = gr.Interface( fn=chat, description=f'''

Chatbot

Refresh page or change name to reset memory context

{desc}{thanks}''', allow_flagging="never", inputs=[ gr.Textbox(lines=5, label="Message"), # prompt "state", gr.Slider(1, 256, value=60), # max_tokens gr.Slider(0.0, 1.0, value=0.8), # temperature gr.Slider(0.0, 1.0, value=0.85) # top_p ], outputs=[gr.Chatbot(label="Chat Log", color_map=( "green", "pink")), "state"], ).queue() demo = gr.TabbedInterface( [iface, chatiface], ["Q/A", "Chatbot"], title=title, ) demo.queue() demo.launch(share=False)