## ----include = FALSE---------------------------------------------------------- knitr::opts_chunk$set( collapse = TRUE, comment = "#>", warning = FALSE, message = FALSE ) ## ----setup-------------------------------------------------------------------- library(CGMissingDataR) ## ----launch-app, eval = FALSE------------------------------------------------- # run_app() ## ----launch-app-development, eval = FALSE------------------------------------- # devtools::load_all() # run_app() ## ----python-requirements, eval = FALSE---------------------------------------- # install.packages("reticulate") # # reticulate::py_require(c( # "numpy", # "pandas", # "scikit-learn", # "statsmodels", # "xgboost" # )) # # # Optional, only needed for models = "lightgbm" # reticulate::py_install("lightgbm", pip = TRUE) ## ----app-equivalent-call, eval = FALSE---------------------------------------- # out <- run_missing_glucose_imputation( # data = uploaded_data, # target_col = selected_target_col, # feature_cols = selected_feature_cols, # id_col = selected_id_col, # time_col = selected_time_col, # imputer_backend = selected_backend, # models = selected_method, # use_arima_if_missing_leq = selected_threshold, # xgb_nrounds = selected_xgb_rounds, # rf_n_estimators = selected_rf_trees, # knn_k = selected_knn_neighbors, # lgb_nrounds = selected_lightgbm_rounds, # n_threads = selected_threads, # seed = selected_seed, # export = FALSE # ) ## ----preview-logic, eval = FALSE---------------------------------------------- # imputed_rows <- out[is.na(out[[target_col]]), , drop = FALSE] # head(imputed_rows, 15)