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#########################################################################################
# Title: German AI-Interface with advanced RAG
# Author: Andreas Fischer
# Date: January 31st, 2023
# Last update: May 27th, 2024
##########################################################################################
#https://github.com/abetlen/llama-cpp-python/issues/306
#sudo apt install libclblast-dev
#CMAKE_ARGS="-DLLAMA_CLBLAST=on" FORCE_CMAKE=1 pip install llama-cpp-python --force-reinstall --upgrade --no-cache-dir -v
# Prepare resources
#-------------------
import torch
import gc
torch.cuda.empty_cache()
gc.collect()
import os
from datetime import datetime
global filename
filename=f"./{datetime.now().strftime('%Y%m%d')}_history.json" # where to store the history as json-file
if(os.path.exists(filename)==True): os.remove(filename)
# Chroma-DB
#-----------
import os
import chromadb
dbPath = "/home/af/Schreibtisch/Code/gradio/Chroma/db"
onPrem = True if(os.path.exists(dbPath)) else False
if(onPrem==False): dbPath="/home/user/app/db"
#onPrem=True # uncomment to override automatic detection
print(dbPath)
#client = chromadb.Client()
path=dbPath
client = chromadb.PersistentClient(path=path)
print(client.heartbeat())
print(client.get_version())
print(client.list_collections())
from chromadb.utils import embedding_functions
default_ef = embedding_functions.DefaultEmbeddingFunction()
#sentence_transformer_ef = embedding_functions.SentenceTransformerEmbeddingFunction(model_name="T-Systems-onsite/cross-en-de-roberta-sentence-transformer")
#instructor_ef = embedding_functions.InstructorEmbeddingFunction(model_name="hkunlp/instructor-large", device="cuda")
embeddingModel = embedding_functions.SentenceTransformerEmbeddingFunction(model_name="T-Systems-onsite/cross-en-de-roberta-sentence-transformer", device="cuda" if(onPrem) else "cpu")
print(str(client.list_collections()))
global collection
dbName="myDB"
if("name="+dbName in str(client.list_collections())): client.delete_collection(name=dbName)
if("name="+dbName in str(client.list_collections())):
print(dbName+" found!")
collection = client.get_collection(name=dbName, embedding_function=embeddingModel )
else:
print(dbName+" created!")
collection = client.create_collection(
dbName,
embedding_function=embeddingModel,
metadata={"hnsw:space": "cosine"})
# txts0: Intentions
#------------------
txts0=[
"Ich suche ein KI-Programm mit bestimmten Fähigkeiten.", # 1a
#"Ich suche kein KI-Programm mit bestimmten Fähigkeiten.", # !1a
"Ich habe ein KI-Programm und habe Fragen zur Benutzung.", # !1a (besser, um 1a und 1b abzugrenzen)
"Ich habe ein KI-Programm und habe Fragen zur Benutzung.", # 1b
#"Ich habe kein KI-Programm und habe keine Fragen zur Benutzung.", # !1b
"Ich habe eine allgemeine Frage ohne KI-Bezug." # !1b (greift besser bei Alltagsfragen)
]
# txts1a: RAG-Infos for first intention:
#---------------------------------------
txts1a=[
"Text generating AI model mistralai/Mixtral-8x7B-Instruct-v0.1: Suitable for text generation, e.g., social media content, marketing copy, blog posts, short stories, etc.",
"Image generating AI model stabilityai/sdxl-turbo: Suitable for image generation, e.g., illustrations, graphics, AI art, etc.",
"Audio transcribing AI model openai/whisper-large-v3: Suitable for audio-transcription in different languages",
"Speech synthesizing AI model coqui/XTTS-v2: Suitable for generating audio from text and for voice-cloning",
"Code generating AI model deepseek-ai/deepseek-coder-6.7b-instruct: Suitable for programming in Python, JavaScript, PHP, Bash and many other programming languages.",
"Translation AI model Helsinki-NLP/opus-mt: Suitable for translating text, e.g., from English to German or vice versa",
"Search result-integrating AI model phind/phind-v9-model: Suitable for researching current topics and for obtaining precise and up-to-date answers to questions based on web search results"
]
# txts1b: RAG-Infos for second intention
#----------------------------------------
txts1b=[
"Für Fragen zur Umsetzung von KI-Verfahren ist das KI-basierte Assistenzsystem nicht geeignet. Möglicherweise empfiehlt sich ein KI-Modell mit Internetzugriff, wie beispielsweise phind.com, oder das Kontaktieren eines Experten wie Dr. Andreas Fischer (andreasfischer1985@web.de)."
]
#meta=[{"type":"0", "type2":"0","source":"AF"}]*len(txts0)+[{"type":"1a","type2":"0","source":"AF"}]*len(txts1a)+[{"type":"1b","type2":"0","source":"AF"}]*len(txts1b)
meta = []
for _ in range(len(txts0)):
meta.append({"type":"0", "type2":"0","source":"AF"})
for _ in range(len(txts1a)):
meta.append({"type":"1a","type2":"0","source":"AF"})
for _ in range(len(txts1b)):
meta.append({"type":"1b","type2":"0","source":"AF"})
#Change type2 for txt0-entries
#-----------------------------
meta[0]["type2"]="1a" # RAG mit txts1a
meta[1]["type2"]="!1a" # else
meta[2]["type2"]="1b" # RAG mit txts1b
meta[3]["type2"]="!1b" # else
txts=txts0+txts1a+txts1b
collection.add(
documents=txts,
ids=[str(i) for i in list(range(len(txts)))],
metadatas=meta
)
# Add entry to episodic memory
x=collection.get(include=[])["ids"]
if(True): #len(x)==0):
message="Ich bin der User."
response="Hallo User, wie kann ich dienen?"
x=collection.get(include=[])["ids"]
collection.add(
documents=[message,response],
metadatas=[
{"source": "ICH", "dialog": f"ICH: {message}\nDU: {response}", "type":"episode"},
{"source": "DU", "dialog": f"ICH: {message}\nDU: {response}", "type":"episode"}
],
ids=[str(len(x)+1),str(len(x)+2)]
)
RAGResults=collection.query(
query_texts=[message],
n_results=1,
#where={"source": "USER"}
)
RAGResults["metadatas"][0][0]["dialog"]
x=collection.get(include=[])["ids"]
x
collection.get() # Inspect db-entries
print("Database ready!")
print(collection.count())
rag0=collection.query(
query_texts=[message],
n_results=4,
where={"type": "0"}
)
x=rag0["metadatas"][0][0]["type2"]
x=[x["type2"] for x in rag0["metadatas"][0]]
x.index("1c") if "1c" in x else len(x)+1
# Model
#-------
#onPrem=False
if(onPrem==False):
modelPath="mistralai/Mixtral-8x7B-Instruct-v0.1"
from huggingface_hub import InferenceClient
import gradio as gr
client = InferenceClient(
modelPath
#"mistralai/Mixtral-8x7B-Instruct-v0.1"
#"mistralai/Mistral-7B-Instruct-v0.1"
)
else:
import os
import requests
import subprocess
#modelPath="/home/af/gguf/models/Discolm_german_7b_v1.Q4_0.gguf"
modelPath="/home/af/gguf/models/Mixtral-8x7b-instruct-v0.1.Q4_0.gguf"
if(os.path.exists(modelPath)==False):
#url="https://huggingface.co/TheBloke/DiscoLM_German_7b_v1-GGUF/resolve/main/discolm_german_7b_v1.Q4_0.gguf?download=true"
url="https://huggingface.co/TheBloke/Mixtral-8x7B-Instruct-v0.1-GGUF/resolve/main/mixtral-8x7b-instruct-v0.1.Q4_0.gguf?download=true"
response = requests.get(url)
with open("./Mixtral-8x7b-instruct.gguf", mode="wb") as file:
file.write(response.content)
print("Model downloaded")
modelPath="./Mixtral-8x7b-instruct.gguf"
print(modelPath)
n="20"
if("Mixtral-8x7b-instruct" in modelPath): n="0" # mixtral seems to cause problems here...
command = ["python3", "-m", "llama_cpp.server", "--model", modelPath, "--host", "0.0.0.0", "--port", "2600", "--n_threads", "8", "--n_gpu_layers", n]
subprocess.Popen(command)
print("Server ready!")
#import llama_cpp
#llama_cpp.llama_backend_init(numa=False)
#params=llama_cpp.llama_context_default_params()
#params.n_ctx
# Gradio-GUI
#------------
import re
def extend_prompt(message="", history=None, system=None, RAGAddon=None, system2=None, zeichenlimit=None,historylimit=4, removeHTML=True):
startOfString=""
if zeichenlimit is None: zeichenlimit=1000000000 # :-)
template0=" [INST]{system}\n [/INST] </s>"
template1=" [INST] {message} [/INST]"
template2=" {response}</s>"
if("command-r" in modelPath): #https://huggingface.co/CohereForAI/c4ai-command-r-v01
## <BOS_TOKEN><|START_OF_TURN_TOKEN|><|USER_TOKEN|>Hello, how are you?<|END_OF_TURN_TOKEN|><|START_OF_TURN_TOKEN|><|CHATBOT_TOKEN|>
template0="<BOS_TOKEN><|START_OF_TURN_TOKEN|><|SYSTEM_TOKEN|> {system}<|END_OF_TURN_TOKEN|>"
template1="<|START_OF_TURN_TOKEN|><|USER_TOKEN|>{message}<|END_OF_TURN_TOKEN|><|START_OF_TURN_TOKEN|><|CHATBOT_TOKEN|>"
template2="{response}<|END_OF_TURN_TOKEN|>"
if("Gemma-" in modelPath): # https://huggingface.co/mistralai/Mixtral-8x7B-Instruct-v0.1
template0="<start_of_turn>user{system}</end_of_turn>"
template1="<start_of_turn>user{message}</end_of_turn><start_of_turn>model"
template2="{response}</end_of_turn>"
if("Mixtral-8x22B-Instruct" in modelPath): # AutoTokenizer: <s>[INST] U1[/INST] A1</s>[INST] U2[/INST] A2</s>
startOfString="<s>"
template0="[INST]{system}\n [/INST] </s>"
template1="[INST] {message}[/INST]"
template2=" {response}</s>"
if("Mixtral-8x7b-instruct" in modelPath): # https://huggingface.co/mistralai/Mixtral-8x7B-Instruct-v0.1
startOfString="<s>" # AutoTokenzizer: <s> [INST] U1 [/INST]A1</s> [INST] U2 [/INST]A2</s>
template0=" [INST]{system}\n [/INST] </s>"
template1=" [INST] {message} [/INST]"
template2=" {response}</s>"
if("Mistral-7B-Instruct" in modelPath): #https://huggingface.co/mistralai/Mistral-7B-Instruct-v0.2
startOfString="<s>"
template0="[INST]{system}\n [/INST]</s>"
template1="[INST] {message} [/INST]"
template2=" {response}</s>"
if("Openchat-3.5" in modelPath): #https://huggingface.co/TheBloke/openchat-3.5-0106-GGUF
template0="GPT4 Correct User: {system}<|end_of_turn|>GPT4 Correct Assistant: Okay.<|end_of_turn|>"
template1="GPT4 Correct User: {message}<|end_of_turn|>GPT4 Correct Assistant: "
template2="{response}<|end_of_turn|>"
if(("Discolm_german_7b" in modelPath) or ("SauerkrautLM-7b-HerO" in modelPath)): #https://huggingface.co/VAGOsolutions/SauerkrautLM-7b-HerO
template0="<|im_start|>system\n{system}<|im_end|>\n"
template1="<|im_start|>user\n{message}<|im_end|>\n<|im_start|>assistant\n"
template2="{response}<|im_end|>\n"
if("Llama-3-SauerkrautLM-8b-Instruct" in modelPath): #https://huggingface.co/VAGOsolutions/SauerkrautLM-7b-HerO
template0="<|begin_of_text|><|start_header_id|>system<|end_header_id|>\n\n{system}<|eot_id|>"
template1="<|start_header_id|>user<|end_header_id|>\n\n{message}<|eot_id|><|start_header_id|>assistant<|end_header_id|>\n\n"
template2="{response}<|eot_id|>\n"
if("WizardLM-13B-V1.2" in modelPath): #https://huggingface.co/WizardLM/WizardLM-13B-V1.2
template0="{system} " #<s>
template1="USER: {message} ASSISTANT: "
template2="{response}</s>"
if("Phi-2" in modelPath): #https://huggingface.co/TheBloke/phi-2-GGUF
template0="Instruct: {system}\nOutput: Okay.\n"
template1="Instruct: {message}\nOutput:"
template2="{response}\n"
prompt = ""
if RAGAddon is not None:
system += RAGAddon
if system is not None:
prompt += template0.format(system=system) #"<s>"
if history is not None:
for user_message, bot_response in history[-historylimit:]:
if user_message is None: user_message = ""
if bot_response is None: bot_response = ""
bot_response = re.sub("\n\n<details(| open)>.*?</details>","", bot_response, flags=re.DOTALL) # remove RAG-compontents
if removeHTML==True: bot_response = re.sub("<(.*?)>","\n", bot_response) # remove HTML-components in general (may cause bugs with markdown-rendering)
if user_message is not None: prompt += template1.format(message=user_message[:zeichenlimit])
if bot_response is not None: prompt += template2.format(response=bot_response[:zeichenlimit])
if message is not None: prompt += template1.format(message=message[:zeichenlimit])
if system2 is not None:
prompt += system2
return startOfString+prompt
import gradio as gr
import requests
import json
from datetime import datetime
import os
import re
def response(message, history):
settings="Memory Off"
removeHTML=True
# Preprocessing to revent simple forms of prompt injection:
#----------------------------------------------------------
message=message.replace("[INST]","")
message=message.replace("[/INST]","")
message=re.sub("<[|](im_start|im_end|end_of_turn)[|]>", '', message)
# Load Memory if memory is turned on
#-------------------------------------
if (settings=="Memory On"):
if((len(history)==0)&(os.path.isfile(filename))): history=json.load(open(filename,'r',encoding="utf-8")) # retrieve history (if available)
system="Du bist ein deutschsprachiges wortkarges KI-basiertes Assistenzsystem. Antworte kurz, in deutsche Sprache und verzichte auf HTML und Code jeder Art."
#RAG-layer 0: Intention-RAG
#---------------------------
typeResults=collection.query(
query_texts=[message],
n_results=4,
where={"type": "0"}
)
myType=typeResults["metadatas"][0][0]["type2"] # einfachste Variante
x=[x["type2"] for x in typeResults["metadatas"][0]] # liste die type2-Einträge auf
myType="1a" if ((x.index("1a") if "1a" in x else len(x)+1) < (x.index("!1a") if "!1a" in x else len(x)+1)) else "else" # setze 1a wenn es besser passt als !1a
if ((x.index("1b") if "1b" in x else len(x)+1) < (x.index("1a") if "1a" in x else len(x)+1)): # prüfe 1b wenn 1b besser passt als 1a
if ((x.index("1b") if "1b" in x else len(x)+1) < (x.index("!1b") if "!1b" in x else len(x)+1)): myType="1b" # setze 1b wenn besser als !1b (sonst lass 1a/else)
print("Message:"+message+"\n\nIntention-Type: "+myType+"\n\n"+str(typeResults))
#RAG-layer 1: Respond with CustomDB-RAG (1a, 1b) or Memory-RAG
#--------------------------------------------------------------
rag=None
historylimit=4
combination=None
## RAG 1a: Respond with CustomDB-RAG
#-----------------------------------
if(myType=="1a"):
RAGResults=collection.query(
query_texts=[message],
n_results=2,
where={"type": myType}
#where_document={"$contains":"search_string"}
)
dists=["<br><small>(relevance: "+str(round((1-d)*100)/100)+";" for d in RAGResults['distances'][0]]
sources=["source: "+s["source"]+")</small>" for s in RAGResults['metadatas'][0]]
texts=RAGResults['documents'][0]
combination = zip(texts,dists,sources)
combination = [' '.join(triplets) for triplets in combination]
#print(combination)
rag="\n\n"
rag += "Mit Blick auf die aktuelle Äußerung des Users empfiehlst du AUSSCHLIEßLICH folgende KI-Verfahren aus unserer Datenbank:\n"
rag += str(texts)
rag += "\n\nIm Folgenden siehst du den jüngsten Dialog-Verlauf:"
else:
## RAG 1a: Respond with CustomDB-RAG
#-----------------------------------
if(myType=="1b"):
RAGResults=collection.query(
query_texts=[message],
n_results=2,
where={"type": myType}
#where_document={"$contains":"search_string"}
)
dists=["<br><small>(relevance: "+str(round((1-d)*100)/100)+";" for d in RAGResults['distances'][0]]
sources=["source: "+s["source"]+")</small>" for s in RAGResults['metadatas'][0]]
texts=RAGResults['documents'][0]
combination = zip(texts,dists,sources)
combination = [' '.join(triplets) for triplets in combination]
#print(combination)
rag="\n\n"
rag += "Beziehe dich in deiner Fortsetzung des Dialogs AUSSCHLIEßLICH auf die folgenden Informationen und gebe keine weiteren Informationen heraus:\n"
rag += str(texts)
rag += "\n\nIm Folgenden siehst du den jüngsten Dialog-Verlauf:"
## Else: Respond with Memory-RAG
#--------------------------------
else:
x=collection.get(include=[])["ids"]
if(len(x)>(historylimit*2)): # turn on RAG when the database contains entries that are not shown within historylimit
RAGResults=collection.query(
query_texts=[message],
n_results=1,
where={"type": "episode"}
)
texts=RAGResults["metadatas"][0][0]["dialog"] #str()
#print("Message: "+message+"\n\nBest Match: "+texts)
rag="\n\n"
rag += "Mit Blick auf die aktuelle Äußerung des Users erinnerst du dich insb. an folgende Episode aus eurem Dialog:\n"
rag += str(texts)
rag += "\n\nIm Folgenden siehst du den jüngsten Dialog-Verlauf:"
# Request Response from LLM:
system2=None # system2 can be used as fictive first words of the AI, which are not displayed or stored
#print("RAG: "+rag)
#print("System: "+system+"\n\nMessage: "+message)
prompt=extend_prompt(
message, # current message of the user
history, # complete history
system, # system prompt
rag, # RAG-component added to the system prompt
system2, # fictive first words of the AI (neither displayed nor stored)
historylimit=historylimit,# number of past messages to consider for response to current message
removeHTML=removeHTML # remove HTML-components from History (to prevent bugs with Markdown)
)
#print("\n\nMESSAGE:"+str(message))
#print("\n\nHISTORY:"+str(history))
#print("\n\nSYSTEM:"+str(system))
#print("\n\nRAG:"+str(rag))
#print("\n\nSYSTEM2:"+str(system2))
print("\n\n*** Prompt:\n"+prompt+"\n***\n\n")
## Request response from model
#------------------------------
print("AI running on prem!" if(onPrem) else "AI running HFHub!")
if(onPrem==False):
temperature=float(0.9)
max_new_tokens=500
top_p=0.95
repetition_penalty=1.0
if temperature < 1e-2: temperature = 1e-2
top_p = float(top_p)
generate_kwargs = dict(
temperature=temperature,
max_new_tokens=max_new_tokens,
top_p=top_p,
repetition_penalty=repetition_penalty,
do_sample=True,
seed=42,
)
stream = client.text_generation(prompt, **generate_kwargs, stream=True, details=True, return_full_text=False)
response = ""
#print("User: "+message+"\nAI: ")
for text in stream:
part=text.token.text
#print(part, end="", flush=True)
response += part
if removeHTML==True: response = re.sub("<(.*?)>","\n", response) # remove HTML-components in general (may cause bugs with markdown-rendering)
yield response
if((myType=="1a")): #add RAG-results to chat-output if appropriate
response=response+"\n\n<details><summary><strong>Sources</strong></summary><br><ul>"+ "".join(["<li>" + s + "</li>" for s in combination])+"</ul></details>"
yield response
history.append((message, response)) # add current dialog to history
# Store current state in DB if memory is turned on
if (settings=="Memory On"):
x=collection.get(include=[])["ids"] # add current dialog to db
collection.add(
documents=[message,response],
metadatas=[
{ "source": "ICH", "dialog": f"ICH: {message.strip()}\n DU: {response.strip()}", "type":"episode"},
{ "source": "DU", "dialog": f"ICH: {message.strip()}\n DU: {response.strip()}", "type":"episode"}
],
ids=[str(len(x)+1),str(len(x)+2)]
)
json.dump(history,open(filename,'w',encoding="utf-8"),ensure_ascii=False)
if(onPrem==True):
# url="https://afischer1985-wizardlm-13b-v1-2-q4-0-gguf.hf.space/v1/completions"
url="http://0.0.0.0:2600/v1/completions"
body={"prompt":prompt,"max_tokens":None, "echo":"False","stream":"True"} # e.g. Mixtral-Instruct
if("Discolm_german_7b" in modelPath): body.update({"stop": ["<|im_end|>"]}) # fix stop-token of DiscoLM
if("Gemma-" in modelPath): body.update({"stop": ["<|im_end|>","</end_of_turn>"]}) # fix stop-token of Gemma
response="" #+"("+myType+")\n"
buffer=""
#print("URL: "+url)
#print("User: "+message+"\nAI: ")
for text in requests.post(url, json=body, stream=True): #-H 'accept: application/json' -H 'Content-Type: application/json'
if buffer is None: buffer=""
buffer=str("".join(buffer))
# print("*** Raw String: "+str(text)+"\n***\n")
text=text.decode('utf-8')
if((text.startswith(": ping -")==False) & (len(text.strip("\n\r"))>0)): buffer=buffer+str(text)
# print("\n*** Buffer: "+str(buffer)+"\n***\n")
buffer=buffer.split('"finish_reason": null}]}')
if(len(buffer)==1):
buffer="".join(buffer)
pass
if(len(buffer)==2):
part=buffer[0]+'"finish_reason": null}]}'
if(part.lstrip('\n\r').startswith("data: ")): part=part.lstrip('\n\r').replace("data: ", "")
try:
part = str(json.loads(part)["choices"][0]["text"])
#print(part, end="", flush=True)
response=response+part
buffer="" # reset buffer
except Exception as e:
print("Exception:"+str(e))
pass
if removeHTML==True: response = re.sub("<(.*?)>","\n", response) # remove HTML-components in general (may cause bugs with markdown-rendering)
yield response
if((myType=="1a")): #add RAG-results to chat-output if appropriate
response=response+"\n\n<details><summary><strong>Sources</strong></summary><br><ul>"+ "".join(["<li>" + s + "</li>" for s in combination])+"</ul></details>"
yield response
# Store current state in DB if memory is turned on
if (settings=="Memory On"):
x=collection.get(include=[])["ids"] # add current dialog to db
collection.add(
documents=[message,response],
metadatas=[
{ "source": "ICH", "dialog": f"ICH: {message.strip()}\n DU: {response.strip()}", "type":"episode"},
{ "source": "DU", "dialog": f"ICH: {message.strip()}\n DU: {response.strip()}", "type":"episode"}
],
ids=[str(len(x)+1),str(len(x)+2)]
)
json.dump(history,open(filename,'w',encoding="utf-8"),ensure_ascii=False)
gr.ChatInterface(
response,
chatbot=gr.Chatbot(value=[[None,"Herzlich willkommen! Ich bin ein KI-basiertes Assistenzsystem, das für jede Anfrage die am besten geeigneten KI-Tools empfiehlt.\nAktuell bin ich wenig mehr als eine Tech-Demo und kenne nur 7 KI-Modelle - also sei bitte nicht zu streng mit mir.<ul><li>Wenn du ein KI-Modell suchst, antworte ich auf Basis der Liste</li><li>Wenn du Fragen zur Benutzung eines KI-Modells hast, verweise ich an andere Stellen</li><li>Wenn du andre Fragen hast, antworte ich frei und berücksichtige dabei Relevantes aus dem gesamten bisherigen Dialog.</li></ul>\nWas ist dein Anliegen?"]],render_markdown=True),
title="German AI-Interface with advanced RAG (on prem)" if onPrem else "German AI-Interface with advanced RAG (HFHub)",
#additional_inputs=[gr.Dropdown(["Memory On","Memory Off"],value="Memory Off",label="Memory")]
).queue().launch(share=True) #False, server_name="0.0.0.0", server_port=7864)
print("Interface up and running!")