You can not select more than 25 topics Topics must start with a letter or number, can include dashes ('-') and can be up to 35 characters long.

783 lines
28 KiB

import os
import tempfile
import traceback
import asyncio
from collections import defaultdict
import aiohttp
import discord
import aiofiles
from functools import partial
from typing import List, Optional
from pathlib import Path
from datetime import date
from discord.ext import pages
from langchain import OpenAI
from gpt_index.readers import YoutubeTranscriptReader
from gpt_index.readers.schema.base import Document
from gpt_index import (
GPTSimpleVectorIndex,
SimpleDirectoryReader,
QuestionAnswerPrompt,
BeautifulSoupWebReader,
GPTListIndex,
QueryMode,
GPTTreeIndex,
GoogleDocsReader,
MockLLMPredictor,
LLMPredictor,
QueryConfig,
PromptHelper,
IndexStructType,
OpenAIEmbedding,
)
from gpt_index.readers.web import DEFAULT_WEBSITE_EXTRACTOR
from gpt_index.composability import ComposableGraph
from services.environment_service import EnvService, app_root_path
SHORT_TO_LONG_CACHE = {}
def get_and_query(
user_id, index_storage, query, response_mode, nodes, llm_predictor, embed_model
):
index: [GPTSimpleVectorIndex, ComposableGraph] = index_storage[
user_id
].get_index_or_throw()
if isinstance(index, GPTTreeIndex):
response = index.query(
query,
verbose=True,
child_branch_factor=2,
llm_predictor=llm_predictor,
embed_model=embed_model,
)
else:
response = index.query(
query,
response_mode=response_mode,
verbose=True,
llm_predictor=llm_predictor,
embed_model=embed_model,
similarity_top_k=nodes,
)
return response
class IndexData:
def __init__(self):
self.queryable_index = None
self.individual_indexes = []
# A safety check for the future
def get_index_or_throw(self):
if not self.queryable():
raise Exception(
"An index access was attempted before an index was created. This is a programmer error, please report this to the maintainers."
)
return self.queryable_index
def queryable(self):
return self.queryable_index is not None
def has_indexes(self, user_id):
try:
return len(os.listdir(f"{app_root_path()}/indexes/{user_id}")) > 0
except Exception:
return False
def add_index(self, index, user_id, file_name):
self.individual_indexes.append(index)
self.queryable_index = index
# Create a folder called "indexes/{USER_ID}" if it doesn't exist already
Path(f"{app_root_path()}/indexes/{user_id}").mkdir(parents=True, exist_ok=True)
# Save the index to file under the user id
index.save_to_disk(
app_root_path()
/ "indexes"
/ f"{str(user_id)}"
/ f"{file_name}_{date.today().month}_{date.today().day}.json"
)
def reset_indexes(self, user_id):
self.individual_indexes = []
self.queryable_index = None
# Delete the user indexes
try:
# First, clear all the files inside it
for file in os.listdir(f"{app_root_path()}/indexes/{user_id}"):
os.remove(f"{app_root_path()}/indexes/{user_id}/{file}")
except Exception:
traceback.print_exc()
class Index_handler:
def __init__(self, bot, usage_service):
self.bot = bot
self.openai_key = os.getenv("OPENAI_TOKEN")
self.index_storage = defaultdict(IndexData)
self.loop = asyncio.get_running_loop()
self.usage_service = usage_service
self.qaprompt = QuestionAnswerPrompt(
"Context information is below. The text '<|endofstatement|>' is used to separate chat entries and make it easier for you to understand the context\n"
"---------------------\n"
"{context_str}"
"\n---------------------\n"
"Never say '<|endofstatement|>'\n"
"Given the context information and not prior knowledge, "
"answer the question: {query_str}\n"
)
self.EMBED_CUTOFF = 2000
async def paginate_embed(self, response_text):
"""Given a response text make embed pages and return a list of the pages. Codex makes it a codeblock in the embed"""
response_text = [
response_text[i : i + self.EMBED_CUTOFF]
for i in range(0, len(response_text), self.EMBED_CUTOFF)
]
pages = []
first = False
# Send each chunk as a message
for count, chunk in enumerate(response_text, start=1):
if not first:
page = discord.Embed(
title=f"Index Query Results",
description=chunk,
)
first = True
else:
page = discord.Embed(
title=f"Page {count}",
description=chunk,
)
pages.append(page)
return pages
# TODO We need to do predictions below for token usage.
def index_file(self, file_path, embed_model) -> GPTSimpleVectorIndex:
document = SimpleDirectoryReader(file_path).load_data()
index = GPTSimpleVectorIndex(document, embed_model=embed_model)
return index
async def index_web_pdf(self, url, embed_model) -> GPTSimpleVectorIndex:
print("Indexing a WEB PDF")
async with aiohttp.ClientSession() as session:
async with session.get(url) as response:
if response.status == 200:
data = await response.read()
f = tempfile.NamedTemporaryFile(delete=False)
f.write(data)
f.close()
else:
return "An error occurred while downloading the PDF."
document = SimpleDirectoryReader(input_files=[f.name]).load_data()
index = GPTSimpleVectorIndex(document, embed_model=embed_model)
return index
def index_gdoc(self, doc_id, embed_model) -> GPTSimpleVectorIndex:
document = GoogleDocsReader().load_data(doc_id)
index = GPTSimpleVectorIndex(document, embed_model=embed_model)
return index
def index_youtube_transcript(self, link, embed_model):
documents = YoutubeTranscriptReader().load_data(ytlinks=[link])
index = GPTSimpleVectorIndex(
documents,
embed_model=embed_model,
)
return index
def index_load_file(self, file_path) -> [GPTSimpleVectorIndex, ComposableGraph]:
if "composed_deep" in str(file_path):
index = GPTTreeIndex.load_from_disk(file_path)
else:
index = GPTSimpleVectorIndex.load_from_disk(file_path)
return index
def index_discord(self, document, embed_model) -> GPTSimpleVectorIndex:
index = GPTSimpleVectorIndex(
document,
embed_model=embed_model,
)
return index
def index_webpage(self, url, embed_model) -> GPTSimpleVectorIndex:
documents = BeautifulSoupWebReader(
website_extractor=DEFAULT_WEBSITE_EXTRACTOR
).load_data(urls=[url])
index = GPTSimpleVectorIndex(documents, embed_model=embed_model)
return index
def reset_indexes(self, user_id):
self.index_storage[user_id].reset_indexes(user_id)
async def set_file_index(
self, ctx: discord.ApplicationContext, file: discord.Attachment, user_api_key
):
if not user_api_key:
os.environ["OPENAI_API_KEY"] = self.openai_key
else:
os.environ["OPENAI_API_KEY"] = user_api_key
try:
print(file.content_type)
if file.content_type.startswith("text/plain"):
suffix = ".txt"
elif file.content_type.startswith("application/pdf"):
suffix = ".pdf"
# Allow for images too
elif file.content_type.startswith("image/png"):
suffix = ".png"
elif file.content_type.startswith("image/"):
suffix = ".jpg"
elif "csv" in file.content_type:
suffix = ".csv"
elif "vnd." in file.content_type:
suffix = ".pptx"
# Catch all audio files and suffix with "mp3"
elif file.content_type.startswith("audio/"):
suffix = ".mp3"
# Catch video files
elif file.content_type.startswith("video/"):
pass # No suffix change
else:
await ctx.respond(
"Only accepts text, pdf, images, spreadheets, powerpoint, and audio/video files."
)
return
async with aiofiles.tempfile.TemporaryDirectory() as temp_path:
async with aiofiles.tempfile.NamedTemporaryFile(
suffix=suffix, dir=temp_path, delete=False
) as temp_file:
await file.save(temp_file.name)
embedding_model = OpenAIEmbedding()
index = await self.loop.run_in_executor(
None, partial(self.index_file, temp_path, embedding_model)
)
await self.usage_service.update_usage(
embedding_model.last_token_usage, embeddings=True
)
file_name = file.filename
self.index_storage[ctx.user.id].add_index(index, ctx.user.id, file_name)
await ctx.respond("Index added to your indexes.")
except Exception:
await ctx.respond("Failed to set index")
traceback.print_exc()
async def set_link_index(
self, ctx: discord.ApplicationContext, link: str, user_api_key
):
if not user_api_key:
os.environ["OPENAI_API_KEY"] = self.openai_key
else:
os.environ["OPENAI_API_KEY"] = user_api_key
# TODO Link validation
try:
embedding_model = OpenAIEmbedding()
# Pre-emptively connect and get the content-type of the response
try:
async with aiohttp.ClientSession() as session:
async with session.get(link, timeout=2) as response:
print(response.status)
if response.status == 200:
content_type = response.headers.get("content-type")
else:
await ctx.respond("Failed to get link", ephemeral=True)
return
except Exception:
traceback.print_exc()
await ctx.respond("Failed to get link", ephemeral=True)
return
# Check if the link contains youtube in it
if "youtube" in link:
index = await self.loop.run_in_executor(
None, partial(self.index_youtube_transcript, link, embedding_model)
)
elif "pdf" in content_type:
index = await self.index_web_pdf(link, embedding_model)
else:
index = await self.loop.run_in_executor(
None, partial(self.index_webpage, link, embedding_model)
)
await self.usage_service.update_usage(
embedding_model.last_token_usage, embeddings=True
)
# Make the url look nice, remove https, useless stuff, random characters
file_name = (
link.replace("https://", "")
.replace("http://", "")
.replace("www.", "")
.replace("/", "_")
.replace("?", "_")
.replace("&", "_")
.replace("=", "_")
.replace("-", "_")
.replace(".", "_")
)
self.index_storage[ctx.user.id].add_index(index, ctx.user.id, file_name)
except Exception:
await ctx.respond("Failed to set index")
traceback.print_exc()
await ctx.respond("Index set")
async def set_discord_index(
self,
ctx: discord.ApplicationContext,
channel: discord.TextChannel,
user_api_key,
):
if not user_api_key:
os.environ["OPENAI_API_KEY"] = self.openai_key
else:
os.environ["OPENAI_API_KEY"] = user_api_key
try:
document = await self.load_data(
channel_ids=[channel.id], limit=1000, oldest_first=False
)
embedding_model = OpenAIEmbedding()
index = await self.loop.run_in_executor(
None, partial(self.index_discord, document, embedding_model)
)
await self.usage_service.update_usage(
embedding_model.last_token_usage, embeddings=True
)
self.index_storage[ctx.user.id].add_index(index, ctx.user.id, channel.name)
await ctx.respond("Index set")
except Exception:
await ctx.respond("Failed to set index")
traceback.print_exc()
async def load_index(
self, ctx: discord.ApplicationContext, index, server, user_api_key
):
if not user_api_key:
os.environ["OPENAI_API_KEY"] = self.openai_key
else:
os.environ["OPENAI_API_KEY"] = user_api_key
try:
if server:
index_file = EnvService.find_shared_file(
f"indexes/{ctx.guild.id}/{index}"
)
else:
index_file = EnvService.find_shared_file(
f"indexes/{ctx.user.id}/{index}"
)
index = await self.loop.run_in_executor(
None, partial(self.index_load_file, index_file)
)
self.index_storage[ctx.user.id].queryable_index = index
await ctx.respond("Loaded index")
except Exception as e:
await ctx.respond(e)
async def compose_indexes(self, user_id, indexes, name, deep_compose):
# Load all the indexes first
index_objects = []
for _index in indexes:
index_file = EnvService.find_shared_file(f"indexes/{user_id}/{_index}")
index = await self.loop.run_in_executor(
None, partial(self.index_load_file, index_file)
)
index_objects.append(index)
# For each index object, add its documents to a GPTTreeIndex
if deep_compose:
documents = []
for _index in index_objects:
[
documents.append(_index.docstore.get_document(doc_id))
for doc_id in [docmeta for docmeta in _index.docstore.docs.keys()]
if isinstance(_index.docstore.get_document(doc_id), Document)
]
llm_predictor = LLMPredictor(
llm=OpenAI(model_name="text-davinci-003", max_tokens=-1)
)
embedding_model = OpenAIEmbedding()
tree_index = await self.loop.run_in_executor(
None,
partial(
GPTTreeIndex,
documents=documents,
llm_predictor=llm_predictor,
embed_model=embedding_model,
),
)
await self.usage_service.update_usage(llm_predictor.last_token_usage)
await self.usage_service.update_usage(
embedding_model.last_token_usage, embeddings=True
)
# Now we have a list of tree indexes, we can compose them
if not name:
name = (
f"composed_deep_index_{date.today().month}_{date.today().day}.json"
)
# Save the composed index
tree_index.save_to_disk(f"indexes/{user_id}/{name}.json")
self.index_storage[user_id].queryable_index = tree_index
else:
documents = []
for _index in index_objects:
[
documents.append(_index.docstore.get_document(doc_id))
for doc_id in [docmeta for docmeta in _index.docstore.docs.keys()]
if isinstance(_index.docstore.get_document(doc_id), Document)
]
embedding_model = OpenAIEmbedding()
simple_index = await self.loop.run_in_executor(
None,
partial(
GPTSimpleVectorIndex,
documents=documents,
embed_model=embedding_model,
),
)
await self.usage_service.update_usage(
embedding_model.last_token_usage, embeddings=True
)
if not name:
name = f"composed_index_{date.today().month}_{date.today().day}.json"
# Save the composed index
simple_index.save_to_disk(f"indexes/{user_id}/{name}.json")
self.index_storage[user_id].queryable_index = simple_index
async def backup_discord(self, ctx: discord.ApplicationContext, user_api_key):
if not user_api_key:
os.environ["OPENAI_API_KEY"] = self.openai_key
else:
os.environ["OPENAI_API_KEY"] = user_api_key
try:
channel_ids: List[int] = []
for c in ctx.guild.text_channels:
channel_ids.append(c.id)
document = await self.load_data(
channel_ids=channel_ids, limit=3000, oldest_first=False
)
embedding_model = OpenAIEmbedding()
index = await self.loop.run_in_executor(
None, partial(self.index_discord, document, embedding_model)
)
await self.usage_service.update_usage(
embedding_model.last_token_usage, embeddings=True
)
Path(app_root_path() / "indexes" / str(ctx.guild.id)).mkdir(
parents=True, exist_ok=True
)
index.save_to_disk(
app_root_path()
/ "indexes"
/ str(ctx.guild.id)
/ f"{ctx.guild.name.replace(' ', '-')}_{date.today().month}_{date.today().day}.json"
)
await ctx.respond("Backup saved")
except Exception:
await ctx.respond("Failed to save backup")
traceback.print_exc()
async def query(
self,
ctx: discord.ApplicationContext,
query: str,
response_mode,
nodes,
user_api_key,
):
if not user_api_key:
os.environ["OPENAI_API_KEY"] = self.openai_key
else:
os.environ["OPENAI_API_KEY"] = user_api_key
try:
llm_predictor = LLMPredictor(llm=OpenAI(model_name="text-davinci-003"))
embedding_model = OpenAIEmbedding()
embedding_model.last_token_usage = 0
response = await self.loop.run_in_executor(
None,
partial(
get_and_query,
ctx.user.id,
self.index_storage,
query,
response_mode,
nodes,
llm_predictor,
embedding_model,
),
)
print("The last token usage was ", llm_predictor.last_token_usage)
await self.usage_service.update_usage(llm_predictor.last_token_usage)
await self.usage_service.update_usage(
embedding_model.last_token_usage, embeddings=True
)
query_response_message = f"**Query:**\n\n`{query.strip()}`\n\n**Query response:**\n\n{response.response.strip()}"
query_response_message = query_response_message.replace(
"<|endofstatement|>", ""
)
embed_pages = await self.paginate_embed(query_response_message)
paginator = pages.Paginator(
pages=embed_pages,
timeout=None,
author_check=False,
)
await paginator.respond(ctx.interaction)
except Exception:
traceback.print_exc()
await ctx.respond(
"Failed to send query. You may not have an index set, load an index with /index load",
delete_after=10,
)
# Extracted functions from DiscordReader
async def read_channel(
self, channel_id: int, limit: Optional[int], oldest_first: bool
) -> str:
"""Async read channel."""
messages: List[discord.Message] = []
try:
channel = self.bot.get_channel(channel_id)
print(f"Added {channel.name} from {channel.guild.name}")
# only work for text channels for now
if not isinstance(channel, discord.TextChannel):
raise ValueError(
f"Channel {channel_id} is not a text channel. "
"Only text channels are supported for now."
)
# thread_dict maps thread_id to thread
thread_dict = {}
for thread in channel.threads:
thread_dict[thread.id] = thread
async for msg in channel.history(limit=limit, oldest_first=oldest_first):
if msg.author.bot:
pass
else:
messages.append(msg)
if msg.id in thread_dict:
thread = thread_dict[msg.id]
async for thread_msg in thread.history(
limit=limit, oldest_first=oldest_first
):
messages.append(thread_msg)
except Exception as e:
print("Encountered error: " + str(e))
channel = self.bot.get_channel(channel_id)
msg_txt_list = [
f"user:{m.author.display_name}, content:{m.content}" for m in messages
]
return ("<|endofstatement|>\n\n".join(msg_txt_list), channel.name)
async def load_data(
self,
channel_ids: List[int],
limit: Optional[int] = None,
oldest_first: bool = True,
) -> List[Document]:
"""Load data from the input directory.
Args:
channel_ids (List[int]): List of channel ids to read.
limit (Optional[int]): Maximum number of messages to read.
oldest_first (bool): Whether to read oldest messages first.
Defaults to `True`.
Returns:
List[Document]: List of documents.
"""
results: List[Document] = []
for channel_id in channel_ids:
if not isinstance(channel_id, int):
raise ValueError(
f"Channel id {channel_id} must be an integer, "
f"not {type(channel_id)}."
)
(channel_content, channel_name) = await self.read_channel(
channel_id, limit=limit, oldest_first=oldest_first
)
results.append(
Document(channel_content, extra_info={"channel_name": channel_name})
)
return results
async def compose(self, ctx: discord.ApplicationContext, name, user_api_key):
# Send the ComposeModal
if not user_api_key:
os.environ["OPENAI_API_KEY"] = self.openai_key
else:
os.environ["OPENAI_API_KEY"] = user_api_key
if not self.index_storage[ctx.user.id].has_indexes(ctx.user.id):
await ctx.respond("You must load at least one indexes before composing")
return
await ctx.respond(
"Select the index(es) to compose. You can compose multiple indexes together, you can also Deep Compose a single index.",
view=ComposeModal(self, ctx.user.id, name),
ephemeral=True,
)
class ComposeModal(discord.ui.View):
def __init__(self, index_cog, user_id, name=None, deep=None) -> None:
super().__init__()
# Get the argument named "user_key_db" and save it as USER_KEY_DB
self.index_cog = index_cog
self.user_id = user_id
self.deep = deep
# Get all the indexes for the user
self.indexes = [
file
for file in os.listdir(
EnvService.find_shared_file(f"indexes/{str(user_id)}/")
)
]
# Map everything into the short to long cache
for index in self.indexes:
SHORT_TO_LONG_CACHE[index[:99]] = index
# A text entry field for the name of the composed index
self.name = name
# A discord UI select menu with all the indexes. Limited to 25 entries. For the label field in the SelectOption,
# cut it off at 100 characters to prevent the message from being too long
self.index_select = discord.ui.Select(
placeholder="Select index(es) to compose",
options=[
discord.SelectOption(label=str(index)[:99], value=index[:99])
for index in self.indexes
][0:25],
max_values=len(self.indexes) if len(self.indexes) < 25 else 25,
min_values=1,
)
# Add the select menu to the modal
self.add_item(self.index_select)
# If we have more than 25 entries, add more Select fields as neccessary
self.extra_index_selects = []
if len(self.indexes) > 25:
for i in range(25, len(self.indexes), 25):
self.extra_index_selects.append(
discord.ui.Select(
placeholder="Select index(es) to compose",
options=[
discord.SelectOption(label=index[:99], value=index[:99])
for index in self.indexes
][i : i + 25],
max_values=len(self.indexes[i : i + 25]),
min_values=1,
)
)
self.add_item(self.extra_index_selects[-1])
# Add an input field for "Deep", a "yes" or "no" option, default no
self.deep_select = discord.ui.Select(
placeholder="Deep Compose",
options=[
discord.SelectOption(label="Yes", value="yes"),
discord.SelectOption(label="No", value="no"),
],
max_values=1,
min_values=1,
)
self.add_item(self.deep_select)
# Add a button to the modal called "Compose"
self.add_item(
discord.ui.Button(
label="Compose", style=discord.ButtonStyle.green, custom_id="compose"
)
)
# The callback for the button
async def interaction_check(self, interaction: discord.Interaction) -> bool:
# Check that the interaction was for custom_id "compose"
if interaction.data["custom_id"] == "compose":
# Check that the user selected at least one index
# The total list of indexes is the union of the values of all the select menus
indexes = self.index_select.values + [
select.values[0] for select in self.extra_index_selects
]
# Remap them from the SHORT_TO_LONG_CACHE
indexes = [SHORT_TO_LONG_CACHE[index] for index in indexes]
if len(indexes) < 1:
await interaction.response.send_message(
"You must select at least 1 index", ephemeral=True
)
else:
composing_message = await interaction.response.send_message(
"Composing indexes, this may take a long time, you will be DMed when it's ready!",
ephemeral=True,
delete_after=120,
)
# Compose the indexes
await self.index_cog.compose_indexes(
self.user_id,
indexes,
self.name,
False
if not self.deep_select.values or self.deep_select.values[0] == "no"
else True,
)
await interaction.followup.send(
"Composed indexes", ephemeral=True, delete_after=180
)
# Try to direct message the user that their composed index is ready
try:
await self.index_cog.bot.get_user(self.user_id).send(
f"Your composed index is ready! You can load it with /index load now in the server."
)
except discord.Forbidden:
pass
try:
await composing_message.delete()
except:
pass
else:
await interaction.response.defer(ephemeral=True)