Bot LLM functionality is now working

This commit is contained in:
cameron 2024-05-10 08:42:37 -04:00
parent ac9cd831a5
commit ccf35b3e8d
3 changed files with 89 additions and 9 deletions

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@ -26,6 +26,7 @@ class DankBot(discord.ext.commands.Bot):
async def main():
intents = discord.Intents.default()
intents.message_content = True
intents.members = True
logging.basicConfig(level=logging.INFO)
with open(".token") as token_file:

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@ -1,10 +1,11 @@
# Plugin for bot LLM chat
from discord.ext import commands
import discord
import io
import aiohttp
import yaml
import random
import os
import llm
plugin_folder=os.path.dirname(os.path.realpath(__file__))
prompts_folder=os.path.join(plugin_folder, 'prompts')
@ -12,30 +13,107 @@ default_prompt="default.txt"
config_filename=os.path.join(plugin_folder, 'settings.yaml')
llm_data = {}
async def prompt_llm(prompt):
print("Prompting LLM")
print(f"PROMPT DATA\n{prompt}")
async with aiohttp.ClientSession(llm_data["api_base"]) as session:
async with session.post("/completion", json={"prompt": prompt, "n_predict": 250}) as resp:
print(f"LLM response status {resp.status}")
response_json=await resp.json()
content=response_json["content"]
return content
def get_message_contents(msg):
message_text = f"{msg.author.name}: {msg.clean_content}"
print(f"Message contents -- {message_text}")
return message_text
async def get_chat_history(ctx, limit=20):
messages = [message async for message in ctx.channel.history(limit=limit)]
plain_messages = list(map(lambda m: f"{m.author.name}: {m.content}", messages))
plain_messages = list(map(get_message_contents, messages))
plain_messages.reverse()
return plain_messages
@commands.command(name='llm')
async def llm_response(ctx):
await ctx.channel.typing()
prompt_file = os.path.join(prompts_folder, default_prompt)
with open(prompt_file, 'r') as prompt_file:
prompt = prompt_file.read()
history_arr = await get_chat_history(ctx)
history_str = '\n'.join(history_arr)
full_prompt = prompt.replace("<CONVHISTORY>", history_str)
response = llm_data["model"].prompt(full_prompt)
print(response)
response = await prompt_llm(full_prompt)
await send_chat_responses(ctx, response)
async def send_chat_responses(ctx, response_text):
print("Processing chat response")
fullResponseLog = "dank-bot:" + response_text # first response won't include the user
responseLines = fullResponseLog.splitlines()
output_strs = []
for line in responseLines:
if line.startswith("dank-bot:"):
truncStr = line.replace("dank-bot:","")
output_strs.append(truncStr)
elif line.find(":") > 0 and line.find(":") < 20:
break
else:
output_strs.append(line.strip())
for outs in output_strs:
final_output_str = await fixup_mentions(ctx, outs)
await ctx.channel.send(final_output_str)
async def fixup_mentions(ctx, text):
newtext = text
if (isinstance(ctx.channel,discord.DMChannel)):
newtext = newtext.replace(f"@{ctx.author.name}", ctx.author.mention)
elif (isinstance(ctx.channel,discord.GroupChannel)):
for user in ctx.channel.recipients:
newtext = newtext.replace(f"@{user.name}", user.mention)
elif (isinstance(ctx.channel,discord.Thread)):
for user in await ctx.channel.fetch_members():
member_info = await ctx.channel.guild.fetch_member(user.id)
newtext = newtext.replace(f"@{member_info.name}", member_info.mention)
else:
for user in ctx.channel.members:
newtext = newtext.replace(f"@{user.name}", user.mention)
if ctx.guild != None:
for role in ctx.guild.roles:
newtext = newtext.replace(f"@{role.name}", role.mention)
return newtext
async def handle_message(ctx):
print("Dank-bot received message")
print(f"Dank-bot ID is {llm_data['bot'].user.id}")
bot_id = llm_data['bot'].user.id
# First case, bot DMed
if (isinstance(ctx.channel,discord.DMChannel) and ctx.author.id != bot_id):
print("Dank-bot DMed, responding")
await llm_response(ctx)
return
# Second case, bot mentioned
bot_mentions=list(filter(lambda x: x.id == bot_id, ctx.mentions))
if (len(bot_mentions) > 0):
print("Dank-bot mentioned, responding")
await llm_response(ctx)
return
# Other case, random response
random_roll = random.random()
print(f"Dank-bot rolled {random_roll}")
if (random_roll < llm_data['response_probability']):
print(f"{random_roll} < {llm_data['response_probability']}, responding")
await llm_response(ctx)
return
async def setup(bot):
with open(config_filename, 'r') as conf_file:
yaml_config = yaml.safe_load(conf_file)
model = llm.get_model("gpt-3.5-turbo-instruct")
model.key = yaml_config["api_key"]
model.api_base = yaml_config["api_base"]
model.completion = True
llm_data["model"] = model
llm_data["api_base"] = yaml_config["api_base"]
llm_data["response_probability"] = yaml_config["response_probability"]
bot.add_command(llm_response)
bot.add_listener(handle_message, "on_message")
llm_data["bot"] = bot
print("LLM interface initialized")

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@ -1,2 +1,3 @@
api_base: "http://192.168.1.204:5000"
api_key: "empty"
response_probability: 0.05