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TabPFN for R

Installation

devtools::install_github("robintibor/R-tabpfn")
library(tabpfn)
install_tabpfn()

Usage

# Load library, set access token, create classifier
library(tabpfn)
access_token = "YOUR_ACCESS_TOKEN"
set_tabpfn_access_token(access_token)

classifier <- TabPFNClassifier$new()

# Prepare your data (here random example data)
X <- data.frame(feature1 = rnorm(100), feature2 = rnorm(100))
num_classes <- 3
y <- sample(0:(num_classes-1), 100, replace = TRUE)

X_train = X[1:80,]
y_train = y[1:80]
X_test = X[81:length(X),]
y_test = y[81:length(y)]

# Fit the model
classifier$fit(X_train, y_train)

# Make predictions
predictions <- classifier$predict(X_test)

# Print results
print(predictions)

You may also use a regressor like this:

regressor <- TabPFNRegressor$new()

# Fit the model
regressor$fit(X_train, y_train)

# Make predictions
predictions <- regressor$predict(X_test)

⚠️ Alpha Release Note

This is an alpha release. We appreciate your understanding and feedback as we continue to improve the package.

This is a cloud-based service using our TabPFN client (https://github.com/automl/tabpfn-client). Your data will be sent to our servers for processing.

  • Do NOT upload any Personally Identifiable Information (PII)
  • Do NOT upload any sensitive or confidential data
  • Do NOT upload any data you don't have permission to share
  • Consider anonymizing or pseudonymizing your data before upload
  • Review your organization's data sharing policies before use