iMessage
This notebook shows how to use the iMessage chat loader. This class helps convert iMessage conversations to LangChain chat messages.
On MacOS, iMessage stores conversations in a sqlite database at
~/Library/Messages/chat.db
(at least for macOS Ventura 13.4). The
IMessageChatLoader
loads from this database file.
- Create the
IMessageChatLoader
with the file path pointed tochat.db
database you’d like to process. - Call
loader.load()
(orloader.lazy_load()
) to perform the conversion. Optionally usemerge_chat_runs
to combine message from the same sender in sequence, and/ormap_ai_messages
to convert messages from the specified sender to the “AIMessage” class.
1. Access Chat DB​
It’s likely that your terminal is denied access to ~/Library/Messages
.
To use this class, you can copy the DB to an accessible directory (e.g.,
Documents) and load from there. Alternatively (and not recommended), you
can grant full disk access for your terminal emulator in System Settings
> Security and Privacy > Full Disk Access.
We have created an example database you can use at this linked drive file.
# This uses some example data
import requests
def download_drive_file(url: str, output_path: str = "chat.db") -> None:
file_id = url.split("/")[-2]
download_url = f"https://drive.google.com/uc?export=download&id={file_id}"
response = requests.get(download_url)
if response.status_code != 200:
print("Failed to download the file.")
return
with open(output_path, "wb") as file:
file.write(response.content)
print(f"File {output_path} downloaded.")
url = (
"https://drive.google.com/file/d/1NebNKqTA2NXApCmeH6mu0unJD2tANZzo/view?usp=sharing"
)
# Download file to chat.db
download_drive_file(url)
File chat.db downloaded.
2. Create the Chat Loader​
Provide the loader with the file path to the zip directory. You can optionally specify the user id that maps to an ai message as well an configure whether to merge message runs.
from langchain.chat_loaders.imessage import IMessageChatLoader
loader = IMessageChatLoader(
path="./chat.db",
)
3. Load messages​
The load()
(or lazy_load
) methods return a list of “ChatSessions”
that currently just contain a list of messages per loaded conversation.
All messages are mapped to “HumanMessage” objects to start.
You can optionally choose to merge message “runs” (consecutive messages from the same sender) and select a sender to represent the “AI”. The fine-tuned LLM will learn to generate these AI messages.
from typing import List
from langchain.chat_loaders.base import ChatSession
from langchain.chat_loaders.utils import (
map_ai_messages,
merge_chat_runs,
)
raw_messages = loader.lazy_load()
# Merge consecutive messages from the same sender into a single message
merged_messages = merge_chat_runs(raw_messages)
# Convert messages from "Tortoise" to AI messages. Do you have a guess who these conversations are between?
chat_sessions: List[ChatSession] = list(
map_ai_messages(merged_messages, sender="Tortoise")
)
# Now all of the Tortoise's messages will take the AI message class
# which maps to the 'assistant' role in OpenAI's training format
chat_sessions[0]["messages"][:3]
[AIMessage(content="Slow and steady, that's my motto.", additional_kwargs={'message_time': 1693182723, 'sender': 'Tortoise'}, example=False),
HumanMessage(content='Speed is key!', additional_kwargs={'message_time': 1693182753, 'sender': 'Hare'}, example=False),
AIMessage(content='A balanced approach is more reliable.', additional_kwargs={'message_time': 1693182783, 'sender': 'Tortoise'}, example=False)]
3. Prepare for fine-tuning​
Now it’s time to convert our chat messages to OpenAI dictionaries. We
can use the convert_messages_for_finetuning
utility to do so.
from langchain.adapters.openai import convert_messages_for_finetuning
training_data = convert_messages_for_finetuning(chat_sessions)
print(f"Prepared {len(training_data)} dialogues for training")
Prepared 10 dialogues for training
4. Fine-tune the model​
It’s time to fine-tune the model. Make sure you have openai
installed
and have set your OPENAI_API_KEY
appropriately
# %pip install -U openai --quiet
import json
import time
from io import BytesIO
import openai
# We will write the jsonl file in memory
my_file = BytesIO()
for m in training_data:
my_file.write((json.dumps({"messages": m}) + "\n").encode("utf-8"))
my_file.seek(0)
training_file = openai.files.create(file=my_file, purpose="fine-tune")
# OpenAI audits each training file for compliance reasons.
# This make take a few minutes
status = openai.files.retrieve(training_file.id).status
start_time = time.time()
while status != "processed":
print(f"Status=[{status}]... {time.time() - start_time:.2f}s", end="\r", flush=True)
time.sleep(5)
status = openai.files.retrieve(training_file.id).status
print(f"File {training_file.id} ready after {time.time() - start_time:.2f} seconds.")
File file-zHIgf4r8LltZG3RFpkGd4Sjf ready after 10.19 seconds.
With the file ready, it’s time to kick off a training job.
job = openai.fine_tuning.jobs.create(
training_file=training_file.id,
model="gpt-3.5-turbo",
)
Grab a cup of tea while your model is being prepared. This may take some time!
status = openai.fine_tuning.jobs.retrieve(job.id).status
start_time = time.time()
while status != "succeeded":
print(f"Status=[{status}]... {time.time() - start_time:.2f}s", end="\r", flush=True)
time.sleep(5)
job = openai.fine_tuning.jobs.retrieve(job.id)
status = job.status
Status=[running]... 524.95s
print(job.fine_tuned_model)
ft:gpt-3.5-turbo-0613:personal::7sKoRdlz
5. Use in LangChain​
You can use the resulting model ID directly the ChatOpenAI
model
class.
from langchain.chat_models import ChatOpenAI
model = ChatOpenAI(
model=job.fine_tuned_model,
temperature=1,
)
from langchain.prompts import ChatPromptTemplate
from langchain_core.output_parsers import StrOutputParser
prompt = ChatPromptTemplate.from_messages(
[
("system", "You are speaking to hare."),
("human", "{input}"),
]
)
chain = prompt | model | StrOutputParser()
for tok in chain.stream({"input": "What's the golden thread?"}):
print(tok, end="", flush=True)
A symbol of interconnectedness.