OpenAI provides a number of chat-based models, mostly under the ChatGPT brand. Note that a ChatGPT Plus membership does not grant access to the API. You will need to sign up for a developer account (and pay for it) at the developer platform.
For authentication, we recommend saving your
API key to
the OPENAI_API_KEY
environment variable in your .Renviron
file.
You can easily edit this file by calling usethis::edit_r_environ()
.
Arguments
- system_prompt
A system prompt to set the behavior of the assistant.
- turns
A list of Turns to start the chat with (i.e., continuing a previous conversation). If not provided, the conversation begins from scratch.
- base_url
The base URL to the endpoint; the default uses OpenAI.
- api_key
The API key to use for authentication. You generally should not supply this directly, but instead set the
OPENAI_API_KEY
environment variable.- model
The model to use for the chat. The default,
NULL
, will pick a reasonable default, and tell you about. We strongly recommend explicitly choosing a model for all but the most casual use.- seed
Optional integer seed that ChatGPT uses to try and make output more reproducible.
- api_args
Named list of arbitrary extra arguments appended to the body of every chat API call.
- echo
One of the following options:
none
: don't emit any output (default when running in a function).text
: echo text output as it streams in (default when running at the console).all
: echo all input and output.
Note this only affects the
chat()
method.
Value
A Chat object.
See also
Other chatbots:
chat_bedrock()
,
chat_claude()
,
chat_cortex_analyst()
,
chat_databricks()
,
chat_deepseek()
,
chat_gemini()
,
chat_github()
,
chat_groq()
,
chat_ollama()
,
chat_openrouter()
,
chat_perplexity()
Examples
chat <- chat_openai()
#> Using model = "gpt-4o".
chat$chat("
What is the difference between a tibble and a data frame?
Answer with a bulleted list
")
#> - **Simplicity and Structure:**
#> - *Data Frame:* A traditional data structure in R, which is
#> essentially a list of vectors of equal length. Each vector can have
#> its own data type.
#> - *Tibble:* A modern reimagining of data frames that comes from the
#> `tibble` package, part of the tidyverse. It offers an improved and
#> more user-friendly version of data frames.
#>
#> - **Printing Behavior:**
#> - *Data Frame:* By default, it prints all rows and columns, which
#> can be overwhelming for large datasets.
#> - *Tibble:* Prints a preview of the data with the first ten rows and
#> as many columns that fit on the screen, making it more manageable and
#> readable for large datasets.
#>
#> - **Column Name Handling:**
#> - *Data Frame:* Allows non-syntactic names, but accessing such names
#> can be cumbersome (e.g., using backticks).
#> - *Tibble:* More strict with column names; they can be
#> non-syntactic, but they emphasize consistency in name handling.
#>
#> - **Data Type Preservation:**
#> - *Data Frame:* Can perform some automatic type conversions that
#> might not be desired by the user.
#> - *Tibble:* Does not change data input types and preserves them as
#> is, reducing unexpected conversions.
#>
#> - **Subsetting:**
#> - *Data Frame:* Can sometimes return a vector instead of a data
#> frame when subsetting with a single column.
#> - *Tibble:* Always returns a tibble when subsetting, even with a
#> single column, maintaining consistency in the data structure.
#>
#> - **Package Integration:**
#> - *Data Frame:* Basic data type supported in base R.
#> - *Tibble:* Part of the tidyverse, allowing seamless integration and
#> manipulation with other tidyverse packages, which is beneficial for
#> workflows centered around tidy data principles.
#>
#> - **Development Origin:**
#> - *Data Frame:* Native to base R since its early versions.
#> - *Tibble:* Developed to mimic and improve upon data frames,
#> providing a more tidyverse-aligned approach.
chat$chat("Tell me three funny jokes about statistcians")
#> Sure, here are three light-hearted jokes about statisticians:
#>
#> 1. **Sampling at the Beach:**
#> - Why do statisticians love going to the beach?
#> - Because they’re always excited to find a good sample!
#>
#> 2. **Life of the Party:**
#> - How can you spot an extroverted statistician at a party?
#> - They’re the one looking at your shoes instead of their own!
#>
#> 3. **Dating Dilemma:**
#> - Why did the statistician break up with the data analyst?
#> - Because they found them to be a mean lover, even though they were
#> significant!
#>
#> I hope these gave you a chuckle!