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Maintainer: Cohere ConvAI Team
Project maintained until at least (YYYY-MM-DD): 2023-03-01
Build conversational AI on top of Cohere's large language models
conversant
conversant
with pipconversant
is a work-in-progress framework for building customizable dialogue agents (aka chatbots) that can answer questions and converse with users with a variety of different chatbot personas. conversant
aims
to be modular, flexible and extensible so you can create any kind of chatbots you want!
We provide several custom personas for you, including ? a client support agent, ⌚️ a watch sales agent, ?? a math teacher, and ? a fantasy wizard. Create your own persona with just a description and some example conversations!
Read more about how conversant
is part of the Cohere Sandbox on our launch blog post.
Try conversant
on our Streamlit demo here! ?
conversant
is available on PyPI, and is tested on Python 3.8+ and Cohere 2.8.0+.
pip install conversant
Want to see it in action first? You can use conversant
on a Streamlit app without installing anything here! ?
Cohere uses Streamlit to create its demo applications. If you’re new to Streamlit, you can install it here and read more about running Streamlit commands here.
If you would like to modify this Streamlit demo locally, we strongly recommend forking this repository rather than installing it as a library from PyPI.
If you'd like to spin up your own instance of the Streamlit demo, you will first need a COHERE_API_KEY
.
You can generate one by visiting dashboard.cohere.ai.
If you plan to run the Streamlit app locally, you can add the key to .streamlit/secrets.toml
:
COHERE_API_KEY = "YOUR_API_KEY_HERE"
When running locally, Streamlit will read the secrets.toml
file and silently inject these values into the environment variables. Alternatively, you may directly set the API key as an environment variable by running the following command from the command line:
export COHERE_API_KEY = "YOUR_API_KEY_HERE"
Start the Streamlit app from the command line with the following command:
streamlit run conversant/demo/streamlit_example.py
If instead you would like to create a hosted Streamlit app, add your Cohere API key to Streamlit via Secrets Management. Add the following line as a Secret:
COHERE_API_KEY = "YOUR_API_KEY_HERE"
Once you have your own instance of the Streamlit app, you can begin experimenting with creating custom personas! Check out the config.json
for each persona in conversant/personas
directory. You'll need to create a subfolder within this directory that corresponds to your new persona and add a config.json
file.
As a note, we strongly recommend forking the sandbox-conversant-lib
repository rather than installing it as a library from PyPI. When you create a new persona, use the personas
directory in the cloned repository. The directory structure should look like this:
conversant/personas
├── fortune-teller
│ └── config.json
└── your-persona-name # new
└── config.json
The config file should contain the following:
chatbot_config
:
max_context_examples
: The length of the chat history for the chatbot to use in reply.avatar
: Optional emoji shortcode or URL to image as the chatbot's avatar. Defaults to ?.client_config
: Parameters for co.generate()
chat_prompt_config
:
preamble
: Description of the persona.example_separator
: A string that separates each example conversation.headers
: A name for the bot
and the user
.examples
: A few conversation examples (few-shot), or empty (zero-shot).conversant
will take care of the rest! As an example, check out fortune-teller/config.json
. When you launch the Streamlit app, the new persona will appear in the drop down menu.
If you would like to run the app with a subset of custom personas, it's possible to create a new directory that contains only the desired ones. This is analogous to the conversant/personas
directory, and needs to have the same structure:
custom-personas
├── your-first-persona
│ └── config.json
└── your-second-persona
└── config.json
After creating this directory, you'll need to tell the app where to look for it. In the demo Streamlit app (streamlit_example.py
), one of the
first lines reads CUSTOM_PERSONA_DIRECTORY = None
. Change this to specify the desired
persona directory, e.g. CUSTOM_PERSONA_DIRECTORY = "/Users/yourname/custom-personas"
.
If this is unchanged, the app will default to using the directory that contains the
conversant
demo personas.
If you do not see the new persona in the drop down menu, you may need to specify a custom persona directory. Follow the instructions above to tell the app where to look for the personas.
You can also edit a persona on the Streamlit app!
With conversant
, you can create a chatbot powered by Cohere's large language models with just the following code snippet.
import cohere
import conversant
co = cohere.Client("YOUR_API_KEY_HERE")
bot = conversant.PromptChatbot.from_persona("fantasy-wizard", client=co)
print(bot.reply("Hello!"))
>>> "Well met, fair traveller. What bringest thou to mine village?"
You can also define your own persona by passing in your own ChatPrompt
.
from conversant.prompts import ChatPrompt
shakespeare_config = {
"preamble": "Below is a conversation between Shakespeare and a Literature Student.",
"example_separator": "n" ,
"headers": {
"user": "Literature Student",
"bot": "William Shakespeare",
},
"examples": [
[
{
"user": "Who are you?",
"bot": "Mine own nameth is Shakespeare, and I speaketh in riddles.",
},
]
],
}
shakespeare_bot = conversant.PromptChatbot(
client=co, prompt=ChatPrompt.from_dict(shakespeare_config)
)
print(shakespeare_bot.reply("Hello!"))
>>> "Greeteth, and welcome. I am Shakespeare, the great poet, dramatist, and playwright."
conversant
uses prompt completion to define a chatbot persona with a description and a few examples. The prompt is sent as input to Cohere's co.generate()
endpoint for an autoregressive language model to generate text in a few-shot manner from the examples and the current dialogue context.
Each user message and chatbot response is appended to a chat history so that future responses are conditioned on the dialogue context at that point in time.
In the future, we plan to add functionality for a chatbot to be factually grounded using text that is retrieved from a local document cache.
For more information, refer to this section in CONTRIBUTORS.md
.
Full documentation can be found here.
If you have any questions or comments, please file an issue or reach out to us on Discord.
If you would like to contribute to this project, please read CONTRIBUTORS.md
in this repository, and sign the Contributor License Agreement before submitting
any pull requests. A link to sign the Cohere CLA will be generated the first time
you make a pull request to a Cohere repository.
In addition to guidelines around submitting code to this repository, CONTRIBUTORS.md
contains a walkthrough to help developers get started, as well as schematics that explain how conversant
works under the hood. ?
conversant
has an MIT License.