⚠ WARNING: Prototype with unstable API. 🚧
This is a half-baked prototype that "helps" you extract structured data from text using LLMs 🧩.
Specify the schema of what should be extracted and provide some examples.
Kor will generate a prompt, send it to the specified LLM and parse out the output.
You might even get results back.
See documentation.
- Integrated with langchain framework.
- The code below uses Kor style schema, but you can also use pydantic.
from langchain.chat_models import ChatOpenAI
from kor import create_extraction_chain, Object, Text, Number
llm = ChatOpenAI(
model_name="gpt-3.5-turbo",
temperature=0,
max_tokens=2000,
frequency_penalty=0,
presence_penalty=0,
top_p=1.0,
)
schema = Object(
id="player",
description=(
"User is controling a music player to select songs, pause or start them or play"
" music by a particular artist."
),
attributes=[
Text(
id="song",
description="User wants to play this song",
examples=[],
many=True,
),
Text(
id="album",
description="User wants to play this album",
examples=[],
many=True,
),
Text(
id="artist",
description="Music by the given artist",
examples=[("Songs by paul simon", "paul simon")],
many=True,
),
Text(
id="action",
description="Action to take one of: `play`, `stop`, `next`, `previous`.",
examples=[
("Please stop the music", "stop"),
("play something", "play"),
("play a song", "play"),
("next song", "next"),
],
),
],
many=False,
)
chain = create_extraction_chain(llm, schema, encoder_or_encoder_class='json')
chain.predict_and_parse(text="play songs by paul simon and led zeppelin and the doors")['data']
{'player': {'artist': ['paul simon', 'led zeppelin', 'the doors']}}
Kor
is tested against python 3.8, 3.9, 3.10, 3.11.
pip install kor
Ideas of some things that could be done with Kor.
- Extract data from text that matches an extraction schema.
- Power an AI assistant with skills by precisely understanding a user request.
- Provide natural language access to an existing API.
Prototype! So the API is not expected to be stable!
- Making mistakes! Plenty of them!
- Slow! It uses large prompts with examples, and works best with the larger slower LLMs.
- Crashing for long enough pieces of text! Context length window could become limiting when working with large forms or long text inputs.
The expectation is that as LLMs improve some of these issues will be mitigated.
No limitations whatsoever. Do take a look at the section directly above as well as at the section about compatibility.
- Adding validators
- Built-in components to quickly assemble schema with examples
- Add routing layer to select appropriate extraction schema for a use case when many schema exist
Fast to type and sufficiently unique.
If you have any ideas or feature requests, please open an issue and share!
See CONTRIBUTING.md for more information.
Probabilistically speaking this package is unlikely to work for your use case.
So here are some great alternatives: