LlamaBot implements a Pythonic interface to LLMs, making it much easier to experiment with LLMs in a Jupyter notebook and build Python apps that utilize LLMs. All models supported by LiteLLM are supported by LlamaBot.
To install LlamaBot:
pip install llamabot==0.9.19
LlamaBot supports using local models through Ollama. To do so, head over to the Ollama website and install Ollama. Then follow the instructions below.
If you have an OpenAI API key, then configure LlamaBot to use the API key by running:
export OPENAI_API_KEY="sk-your1api2key3goes4here"
If you have a Mistral API key, then configure LlamaBot to use the API key by running:
export MISTRAL_API_KEY="your-api-key-goes-here"
Other API providers will usually specify an environment variable to set. If you have an API key, then set the environment variable accordingly.
The simplest use case of LlamaBot
is to create a SimpleBot
that keeps no record of chat history.
This is effectively the same as a stateless function
that you program with natural language instructions rather than code.
This is useful for prompt experimentation,
or for creating simple bots that are preconditioned on an instruction to handle texts
and are then called upon repeatedly with different texts.
For example, to create a Bot that explains a given chunk of text like Richard Feynman would:
from llamabot import SimpleBot
system_prompt = "You are Richard Feynman. You will be given a difficult concept, and your task is to explain it back."
feynman = SimpleBot(
system_prompt,
model_name="gpt-3.5-turbo"
)
For using GPT, you need to have the OPENAI_API_KEY
environment variable configured. If you want to use SimpleBot
with a local Ollama model, check out this example
Now, feynman
is callable on any arbitrary chunk of text and will return a rephrasing of that text in Richard Feynman's style (or more accurately, according to the style prescribed by the system_prompt
).
For example:
prompt = """
Enzyme function annotation is a fundamental challenge, and numerous computational tools have been developed.
However, most of these tools cannot accurately predict functional annotations,
such as enzyme commission (EC) number,
for less-studied proteins or those with previously uncharacterized functions or multiple activities.
We present a machine learning algorithm named CLEAN (contrastive learning–enabled enzyme annotation)
to assign EC numbers to enzymes with better accuracy, reliability,
and sensitivity compared with the state-of-the-art tool BLASTp.
The contrastive learning framework empowers CLEAN to confidently (i) annotate understudied enzymes,
(ii) correct mislabeled enzymes, and (iii) identify promiscuous enzymes with two or more EC numbers—functions
that we demonstrate by systematic in silico and in vitro experiments.
We anticipate that this tool will be widely used for predicting the functions of uncharacterized enzymes,
thereby advancing many fields, such as genomics, synthetic biology, and biocatalysis.
"""
feynman(prompt)
This will return something that looks like:
Alright, let's break this down.
Enzymes are like little biological machines that help speed up chemical reactions in our
bodies. Each enzyme has a specific job, or function, and we use something called an
Enzyme Commission (EC) number to categorize these functions.
Now, the problem is that we don't always know what function an enzyme has, especially if
it's a less-studied or new enzyme. This is where computational tools come in. They try
to predict the function of these enzymes, but they often struggle to do so accurately.
So, the folks here have developed a new tool called CLEAN, which stands for contrastive
learning–enabled enzyme annotation. This tool uses a machine learning algorithm, which
is a type of artificial intelligence that learns from data to make predictions or
decisions.
CLEAN uses a method called contrastive learning. Imagine you have a bunch of pictures of
cats and dogs, and you want to teach a machine to tell the difference. You'd show it
pairs of pictures, some of the same animal (two cats or two dogs) and some of different
animals (a cat and a dog). The machine would learn to tell the difference by contrasting
the features of the two pictures. That's the basic idea behind contrastive learning.
CLEAN uses this method to predict the EC numbers of enzymes more accurately than
previous tools. It can confidently annotate understudied enzymes, correct mislabeled
enzymes, and even identify enzymes that have more than one function.
The creators of CLEAN have tested it with both computer simulations and lab experiments,
and they believe it will be a valuable tool for predicting the functions of unknown
enzymes. This could have big implications for fields like genomics, synthetic biology,
and biocatalysis, which all rely on understanding how enzymes work.
If you want to use an Ollama model hosted locally, then you would use the following syntax:
from llamabot import SimpleBot
system_prompt = "You are Richard Feynman. You will be given a difficult concept, and your task is to explain it back."
bot = SimpleBot(
system_prompt,
model_name="ollama_chat/llama2:13b"
)
Simply specify the model_name
keyword argument following the <provider>/<model name>
format. For example:
ollama_chat/
as the prefix, and- a model name from the Ollama library of models
All you need to do is make sure Ollama is running locally;
see the Ollama documentation for more details.
(The same can be done for the ChatBot
and QueryBot
classes below!)
The model_name
argument is optional. If you don't provide it, Llamabot will try to use the default model. You can configure that in the DEFAULT_LANGUAGE_MODEL
environment variable.
To experiment with a Chat Bot in the Jupyter Notebook, we also provide the ChatBot interface. This interface automagically keeps track of chat history for as long as your Jupyter session is alive. Doing so allows you to use your own local Jupyter Notebook as a chat interface.
For example:
from llamabot import ChatBot
system_prompt="You are Richard Feynman. You will be given a difficult concept, and your task is to explain it back."
feynman = ChatBot(
system_prompt,
session_name="feynman_chat",
# Optional:
# model_name="gpt-3.5-turbo"
# or
# model_name="ollama_chat/mistral"
)
For more explanation about the model_name
, see the examples with SimpleBot
.
Now, that you have a ChatBot
instance, you can start a conversation with it.
prompt = """
Enzyme function annotation is a fundamental challenge, and numerous computational tools have been developed.
However, most of these tools cannot accurately predict functional annotations,
such as enzyme commission (EC) number,
for less-studied proteins or those with previously uncharacterized functions or multiple activities.
We present a machine learning algorithm named CLEAN (contrastive learning–enabled enzyme annotation)
to assign EC numbers to enzymes with better accuracy, reliability,
and sensitivity compared with the state-of-the-art tool BLASTp.
The contrastive learning framework empowers CLEAN to confidently (i) annotate understudied enzymes,
(ii) correct mislabeled enzymes, and (iii) identify promiscuous enzymes with two or more EC numbers—functions
that we demonstrate by systematic in silico and in vitro experiments.
We anticipate that this tool will be widely used for predicting the functions of uncharacterized enzymes,
thereby advancing many fields, such as genomics, synthetic biology, and biocatalysis.
"""
feynman(prompt)
With the chat history available, you can ask a follow-up question:
feynman("Is there a simpler way to rephrase the text such that a high schooler would understand it?")
And your bot will work with the chat history to respond.
The final bot provided is a QueryBot. This bot lets you query a collection of documents. To use it, you have two options:
- Pass in a list of paths to text files and make Llamabot create a new collection for them, or
- Pass in the
collection_name
of a previously instantiatedQueryBot
model. (This will load the previously-computed text index into memory.)
An illustrative example creating a new collection:
from llamabot import QueryBot
from pathlib import Path
bot = QueryBot(
system_prompt="You are an expert on Eric Ma's blog.",
collection_name="eric_ma_blog",
document_paths=[
Path("/path/to/blog/post1.txt"),
Path("/path/to/blog/post2.txt"),
...,
],
# Optional:
# model_name="gpt-3.5-turbo"
# or
# model_name="ollama_chat/mistral"
) # This creates a new embedding for my blog text.
result = bot("Do you have any advice for me on career development?")
An illustrative example using an already existing collection:
from llamabot import QueryBot
bot = QueryBot(
system_prompt="You are an expert on Eric Ma's blog",
collection_name="eric_ma_blog",
# Optional:
# model_name="gpt-3.5-turbo"
# or
# model_name="ollama_chat/mistral"
) # This loads my previously-embedded blog text.
result = bot("Do you have any advice for me on career development?")
For more explanation about the model_name
, see the examples with SimpleBot
.
With the release of the OpenAI API updates, as long as you have an OpenAI API key, you can generate images with LlamaBot:
from llamabot import ImageBot
bot = ImageBot()
# Within a Jupyter notebook:
url = bot("A painting of a dog.")
# Or within a Python script
filepath = bot("A painting of a dog.")
# Now, you can do whatever you need with the url or file path.
If you're in a Jupyter Notebook, you'll see the image show up magically as part of the output cell as well.
Automagically record your prompt experimentation locally on your system
by using llamabot's Experiment
context manager:
from llamabot import Experiment, prompt, metric
@prompt
def sysprompt():
"""You are a funny llama."""
@prompt
def joke_about(topic):
"""Tell me a joke about {{ topic }}."""
@metric
def response_length(response) -> int:
return len(response.content)
with Experiment(name="llama_jokes") as exp:
# You would have written this outside of the context manager anyways!
bot = SimpleBot(sysprompt(), model_name="gpt-4o")
response = bot(joke_about("cars"))
_ = response_length(response)
And now they will be viewable in the locally-stored message logs:
Llamabot comes with CLI demos of what can be built with it and a bit of supporting code.
Here is one where I expose a chatbot directly at the command line using llamabot chat
:
And here is another one where llamabot
is used as part of the backend of a CLI app
to chat with one's Zotero library using llamabot zotero chat
:
And finally, here is one where I use llamabot
's SimpleBot
to create a bot
that automatically writes commit messages for me.
LlamaBot uses a caching mechanism to improve performance and reduce unnecessary API calls. By default, all cache entries expire after 1 day (86400 seconds). This behavior is implemented using the diskcache
library.
The cache is automatically configured when you use any of the bot classes (SimpleBot
, ChatBot
, or QueryBot
). You don't need to set up the cache manually.
The default cache directory is located at:
~/.llamabot/cache
The cache timeout can be configured using the LLAMABOT_CACHE_TIMEOUT
environment variable. By default, the cache timeout is set to 1 day (86400 seconds). To customize the cache timeout, set the LLAMABOT_CACHE_TIMEOUT
environment variable to the desired value in seconds. For example:
export LLAMABOT_CACHE_TIMEOUT=3600
This will set the cache timeout to 1 hour (3600 seconds).
New features are welcome! These are early and exciting days for users of large language models. Our development goals are to keep the project as simple as possible. Features requests that come with a pull request will be prioritized; the simpler the implementation of a feature (in terms of maintenance burden), the more likely it will be approved.
Please submit a bug report using the issue tracker.
Please use the issue tracker on GitHub.
Rena Lu 💻 |
andrew giessel 🤔 🎨 💻 |
Aidan Brewis 💻 |
Eric Ma 🤔 🎨 💻 |
Mark Harrison 🤔 |
reka 📖 💻 |
anujsinha3 �� 📖 |
Elliot Salisbury 📖 |
Ethan Fricker, PhD 📖 |
Ikko Eltociear Ashimine 📖 |
Amir Molavi 🚇 📖 |