ai-brain/main.py

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import asyncio
import random
import os
import subprocess
import datetime
import sys
import requests
import subprocess
from fastapi import FastAPI
from typing import Union
app = FastAPI()
subprocess.run(["ollama", "serve"]) #make sure that our ollama server is started
from langchain.callbacks.manager import CallbackManager
from langchain.callbacks.streaming_stdout import StreamingStdOutCallbackHandler
from langchain_community.llms import Ollama
# replace model with the downloaded model you want to use
llm = Ollama(
model="sparksammy/samai",
callback_manager=CallbackManager([StreamingStdOutCallbackHandler()]),
)
completeContext = ""
# Define URLs for requirements.txt and main.py
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REQS_URL = 'https://raw.githubusercontent.com/The-AI-Brain/ai-brain/main/requirements.txt'
MAIN_URL = 'https://raw.githubusercontent.com/The-AI-Brain/ai-brain/main/main.py'
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# Define paths for local requirements.txt and main.py files
REQS_PATH = 'requirements.txt'
MAIN_PATH = 'main.py'
List = {}
# Check for updates
def check_updates():
# Download remote requirements.txt file
remote_reqs = requests.get(REQS_URL).text
# Compare local and remote requirements.txt files
with open(REQS_PATH, 'r') as f:
local_reqs = f.read()
if local_reqs != remote_reqs:
# Install updated requirements
subprocess.run(['pip', 'install', '-r', REQS_PATH])
# Download updated main.py file
remote_main = requests.get(MAIN_URL).text
# Write updated main.py file
with open(MAIN_PATH, 'w') as f:
f.write(remote_main)
# Restart the script
os.execv(sys.argv[0], sys.argv)
emotions = [
"happy", "sad", "angry", "surprised", "disgusted", "fearful",
"excited", "nostalgic", "hopeful", "anxious", "relaxed", "curious",
"confused", "amused", "bored", "ecstatic", "exhausted", "grateful",
"guilty", "embarrassed", "envious", "proud", "ashamed", "content",
"depressed", "fascinated", "frustrated", "inspired", "irritated",
"jealous", "lonely", "melancholic", "optimistic", "overwhelmed",
"peaceful", "playful", "reflective", "remorseful", "restless",
"satisfied", "sympathetic", "tense", "terrified", "triumphant",
"uncomfortable", "vulnerable", "wistful", "yearning", "zealous"
]
# Array of human actions
actions = [
"walked the dog",
"cooked dinner",
"read a book",
"went swimming",
"played soccer",
"listened to music",
"watched a movie",
"painted a picture",
"wrote a story",
"rode a bike",
"danced in the rain",
"visited a museum",
"went on a road trip",
"went to a concert",
"built a sandcastle",
"went to the beach",
"played video games",
"climbed a mountain",
"played with a pet",
"went for a run",
"did yoga",
"went camping",
"visited a new city",
"went to a party",
"took a nap",
"had a picnic",
"played a musical instrument",
"tried a new food",
"went on a hike",
"took a bath",
"visited a friend",
"went to a theme park",
"went to a zoo",
"went to a sporting event",
"went to a play",
"went to a comedy show",
"went to a ballet",
"went to a musical",
"went to a poetry reading",
"went to a book club meeting",
"went to a cooking class",
"went to a painting class",
"went to a wine tasting",
"went to a beer festival",
"went to a farmers' market",
"went to a flea market",
"went shopping",
"went to a garage sale",
"went to a thrift store",
"volunteered at a charity",
"went to a political rally",
"went to a religious service",
"attended a wedding",
"attended a funeral",
"graduated from school",
"started a new job",
"retired from a job",
"got married",
"got divorced",
"had a baby",
"raised a child",
"adopted a pet",
"moved to a new city",
"bought a house",
"rented an apartment",
"remodeled a home",
"gardened",
"landscaped a yard",
"went on a cruise",
"went on a safari",
"went on a skiing trip",
"went on a snowboarding trip",
"went on a fishing trip",
"went on a hunting trip",
"went on a scuba diving trip",
"went on a surfing trip",
"went on a kayaking trip",
"went on a canoeing trip",
"went on a rafting trip",
"went on a hot air balloon ride",
"went on a helicopter ride",
"went on a plane ride",
"went on a train ride",
"went on a road trip",
"went skydiving",
"went bungee jumping",
"went zip lining",
"went rock climbing",
"went to a spa",
"got a massage",
"got a facial",
"got a manicure",
"got a pedicure",
"went to a chiropractor",
"went to a physical therapist",
"went to a dentist",
"went to a doctor",
"got surgery",
"recovered from an illness",
"overcame an addiction",
"learned a new skill",
"learned a new language",
"took a class",
"ate",
"played the piano",
"went for a walk"
]
# Array of places for the actions
places = [
"in the park",
"at home",
"in the library",
"on the beach",
"in the movie theater",
"at the doctor's office",
"at school",
"at the spa",
"at the airport",
"at the gym",
"in a cafe",
"in a museum",
"in a grocery store",
"in a restaurant",
"at a concert",
"at a stadium",
"in a hospital",
"in a church",
"in a mosque",
"in a temple",
"in a theater",
"in a nightclub",
"in a casino",
"at a zoo",
"at a theme park",
"at a water park",
"in a shopping mall",
"in a department store",
"at a gas station",
"in a parking lot",
"in a hotel",
"in a motel",
"in a hostel",
"in a campground",
"in a forest",
"on a mountain",
"in a desert",
"in a valley",
"by a river",
"by a lake",
"at sea",
"in the ocean",
"in a cave",
"at a train station",
"at a bus station",
"at a subway station",
"at a ferry terminal",
"at a harbor",
"in a space station",
"in a laboratory"
]
# Asynchronous function to print actions
def createContext():
action = random.choice(actions)
place = random.choice(places)
completeContext = f"you just did \"{action}\" and did it \"{place}\""
return complete
@app.get("/context")
async def get_emote():
return await createContext()
@app.get("/chatin/{chatText}")
async def get_chatin(chatText: str):
return await main(chatText)
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# Main function to run the program
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# Main function to run the program
def main(chatin):
chatin = "Guest:" + chatin
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# Print ollama response and what it said
print(f"You: {chatin}")
print(f"AI:")
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# Get response from ollama
message = llm(f"(Additional context for reply: {completeContext}), reply to this: {chatin}")
return f"You: {chatin}\n${name}: ${message}"
# Run the cli function
def cli():
while True:
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check_updates()
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toChat = input("brain@localhost:~$ ")
main(f"{toChat}")
cli()