When the querychat UI first appears, you will usually want it to
greet the user with some basic instructions. By default, these
instructions are auto-generated every time a user arrives. In a
production setting with multiple users/visitors, this approach has some
downsides: it’s slower, uses more API tokens, and produces different
results each time. Instead, you should create a greeting file and pass
it when creating your QueryChat object:
You can provide suggestions to the user by using the
<span class="suggestion"> </span> tag:
* **Filter and sort the data:**
* <span class="suggestion">Show only Adelie penguins</span>
* <span class="suggestion">Filter to penguins with body mass over 4000g</span>
* <span class="suggestion">Sort by flipper length from longest to shortest</span>
* **Answer questions about the data:**
* <span class="suggestion">What is the average bill length by species?</span>
* <span class="suggestion">How many penguins are in each island?</span>
* <span class="suggestion">Which species has the largest average body mass?</span>These suggestions appear in the greeting and automatically populate the chat text box when clicked.
If you need help coming up with a greeting, you can use the
$generate_greeting() method:
library(querychat)
# Create QueryChat object with your dataset
qc <- querychat(penguins)
# Generate a greeting (this calls the LLM)
greeting_text <- qc$generate_greeting(echo = "text")
#> Hello! I'm here to help you explore and analyze the penguins dataset.
#> Here are some example prompts you can try:
#> ...
# Save it for reuse
writeLines(greeting_text, "penguins_greeting.md")This approach generates a greeting once and saves it for reuse, avoiding the latency and cost of generating it for every user.