chattr
is a package that enables interaction with Large Language Models (LLMs),
such as GitHub Copilot Chat, and OpenAI’s GPT 3.5 and 4. The main vehicle is a
Shiny app that runs inside the RStudio IDE. Here is an example of what it looks
like running inside the Viewer pane:
Even though this article highlights chattr
’s integration with the RStudio IDE,
it is worth mentioning that it works outside RStudio, for example the terminal.
Getting started
To get started, install the package from CRAN, and then call the Shiny app
using the chattr_app()
function:
# Install from CRAN
install.packages("chattr")
# Run the app
::chattr_app()
chattr
#> ── chattr - Available models
#> Select the number of the model you would like to use:
#>
#> 1: GitHub - Copilot Chat - (copilot)
#>
#> 2: OpenAI - Chat Completions - gpt-3.5-turbo (gpt35)
#>
#> 3: OpenAI - Chat Completions - gpt-4 (gpt4)
#>
#> 4: LlamaGPT - ~/ggml-gpt4all-j-v1.3-groovy.bin (llamagpt)
#>
#>
#> Selection:
>
After you select the model you wish to interact with, the app will open. The
following screenshot provides an overview of the different buttons and
keyboard shortcuts you can use with the app:
You can start writing your requests in the main text box at the top left of the
app. Then submit your question by either clicking on the ‘Submit’ button, or
by pressing Shift+Enter.
chattr
parses the output of the LLM, and displays the code inside chunks. It
also places three buttons at the top of each chunk. One to copy the code to the
clipboard, the other to copy it directly to your active script in RStudio, and
one to copy the code to a new script. To close the app, press the ‘Escape’ key.
Pressing the ‘Settings’ button will open the defaults that the chat session
is using. These can be changed as you see fit. The ‘Prompt’ text box is
the additional text being sent to the LLM as part of your question.
Personalized setup
chattr
will try and identify which models you have setup,
and will include only those in the selection menu. For Copilot and OpenAI,
chattr
confirms that there is an available authentication token in order to
display them in the menu. For example, if you have only have
OpenAI setup, then the prompt will look something like this:
::chattr_app()
chattr#> ── chattr - Available models
#> Select the number of the model you would like to use:
#>
#> 2: OpenAI - Chat Completions - gpt-3.5-turbo (gpt35)
#>
#> 3: OpenAI - Chat Completions - gpt-4 (gpt4)
#>
#> Selection:
>
If you wish to avoid the menu, use the chattr_use()
function. Here is an example
of setting GPT 4 as the default:
library(chattr)
chattr_use("gpt4")
chattr_app()
You can also select a model by setting the CHATTR_USE
environment
variable.
Advanced customization
It is possible to customize many aspects of your interaction with the LLM. To do
this, use the chattr_defaults()
function. This function displays and sets the
additional prompt sent to the LLM, the model to be used, determines if the
history of the chat is to be sent to the LLM, and model specific arguments.
For example, you may wish to change the maximum number of tokens used per response,
for OpenAI you can use this:
# Default for max_tokens is 1,000
library(chattr)
chattr_use("gpt4")
chattr_defaults(model_arguments = list("max_tokens" = 100))
#>
#> ── chattr ──────────────────────────────────────────────────────────────────────
#>
#> ── Defaults for: Default ──
#>
#> ── Prompt:
#> • {{readLines(system.file('prompt/base.txt', package = 'chattr'))}}
#>
#> ── Model
#> • Provider: OpenAI - Chat Completions
#> • Path/URL: https://api.openai.com/v1/chat/completions
#> • Model: gpt-4
#> • Label: GPT 4 (OpenAI)
#>
#> ── Model Arguments:
#> • max_tokens: 100
#> • temperature: 0.01
#> • stream: TRUE
#>
#> ── Context:
#> Max Data Files: 0
#> Max Data Frames: 0
#> ✔ Chat History
#> ✖ Document contents
If you wish to persist your changes to the defaults, use the chattr_defaults_save()
function. This will create a yaml file, named ‘chattr.yml’ by default. If found,
chattr
will use this file to load all of the defaults, including the selected
model.
A more extensive description of this feature is available in the chattr
website
under
Modify prompt enhancements
Beyond the app
In addition to the Shiny app, chattr
offers a couple of other ways to interact
with the LLM:
- Use the
chattr()
function - Highlight a question in your script, and use it as your prompt
> chattr("how do I remove the legend from a ggplot?")
#> You can remove the legend from a ggplot by adding
#> `theme(legend.position = "none")` to your ggplot code.
A more detailed article is available in chattr
website
here.
RStudio Add-ins
chattr
comes with two RStudio add-ins:
You can bind these add-in calls to keyboard shortcuts, making it easy to open the app without having to write
the command every time. To learn how to do that, see the Keyboard Shortcut section in the
chattr
official website.
Works with local LLMs
Open-source, trained models, that are able to run in your laptop are widely
available today. Instead of integrating with each model individually, chattr
works with LlamaGPTJ-chat. This is a lightweight application that communicates
with a variety of local models. At this time, LlamaGPTJ-chat integrates with the
following families of models:
- GPT-J (ggml and gpt4all models)
- LLaMA (ggml Vicuna models from Meta)
- Mosaic Pretrained Transformers (MPT)
LlamaGPTJ-chat works right off the terminal. chattr
integrates with the
application by starting an ‘hidden’ terminal session. There it initializes the
selected model, and makes it available to start chatting with it.
To get started, you need to install LlamaGPTJ-chat, and download a compatible
model. More detailed instructions are found
here.
chattr
looks for the location of the LlamaGPTJ-chat, and the installed model
in a specific folder location in your machine. If your installation paths do
not match the locations expected by chattr
, then the LlamaGPT will not show
up in the menu. But that is OK, you can still access it with chattr_use()
:
library(chattr)
chattr_use(
"llamagpt",
path = "[path to compiled program]",
model = "[path to model]"
)#>
#> ── chattr
#> • Provider: LlamaGPT
#> • Path/URL: [path to compiled program]
#> • Model: [path to model]
#> • Label: GPT4ALL 1.3 (LlamaGPT)
Extending chattr
chattr
aims to make it easy for new LLM APIs to be added. chattr
has two components, the user-interface (Shiny app and
chattr()
function), and the included back-ends (GPT, Copilot, LLamaGPT).
New back-ends do not need to be added directly in chattr
.
If you are a package
developer and would like to take advantage of the chattr
UI, all you need to do is define ch_submit()
method in your package.
The two output requirements for ch_submit()
are:
-
As the final return value, send the full response from the model you are
integrating intochattr
. -
If streaming (
stream
isTRUE
), output the current output as it is occurring.
Generally through acat()
function call.
Here is a simple toy example that shows how to create a custom method for
chattr
:
library(chattr)
<- function(defaults,
ch_submit.ch_my_llm prompt = NULL,
stream = NULL,
prompt_build = TRUE,
preview = FALSE,
...) {# Use `prompt_build` to prepend the prompt
if(prompt_build) prompt <- paste0("Use the tidyverse\n", prompt)
# If `preview` is true, return the resulting prompt back
if(preview) return(prompt)
<- paste0("You said this: \n", prompt)
llm_response if(stream) {
cat(">> Streaming:\n")
for(i in seq_len(nchar(llm_response))) {
# If `stream` is true, make sure to `cat()` the current output
cat(substr(llm_response, i, i))
Sys.sleep(0.1)
}
}# Make sure to return the entire output from the LLM at the end
llm_response
}
chattr_defaults("console", provider = "my llm")
#>
chattr("hello")
#> >> Streaming:
#> You said this:
#> Use the tidyverse
#> hello
chattr("I can use it right from RStudio", prompt_build = FALSE)
#> >> Streaming:
#> You said this:
#> I can use it right from RStudio
For more detail, please visit the function’s reference page, link
here.
Feedback welcome
After trying it out, feel free to submit your thoughts or issues in the
chattr
’s GitHub repository.