Refactor bucket structure: baf-fraud/ prefix under lake bucket

All functions now default to bucket_name = "lake" with "baf-fraud/"
prepended to all layer prefixes, matching the contemporary lakehouse
naming convention (one bucket per environment, project as prefix).

Migration: copy baf-fraud/ data to lake/baf-fraud/ on analyticsvm,
update BAF_BUCKET env var from "baf-fraud" to "lake".

Co-Authored-By: Claude Sonnet 4.6 <noreply@anthropic.com>
This commit is contained in:
2026-02-22 05:36:25 -05:00
parent dac01da6cb
commit df978d042f
11 changed files with 63 additions and 63 deletions

View File

@@ -13,7 +13,7 @@
#'
#' @param from_prefix Character. Prefix/key under the bucket containing CSVs (e.g. \code{"01_raw"}).
#' @param to_prefix Character. Prefix/key under the bucket to write Parquet dataset (e.g. \code{"02_intermediate"}).
#' @param bucket_name Character. Bucket name. Default \code{"baf-fraud"}.
#' @param bucket_name Character. Bucket name. Default \code{"lake"}.
#'
#' @return A character string giving the destination dataset prefix (typically \code{to_prefix}).
#'
@@ -30,12 +30,12 @@
#' BAF_KEY = "YOUR_ACCESS_KEY",
#' BAF_SECRET = "YOUR_SECRET_KEY"
#' )
#' convert_to_parquet(from_prefix = "01_raw", to_prefix = "02_intermediate", bucket_name = "baf-fraud")
#' convert_to_parquet(from_prefix = "01_raw", to_prefix = "02_intermediate", bucket_name = "lake")
#' }
convert_to_parquet <- function(
from_prefix,
to_prefix,
bucket_name = "baf-fraud"
bucket_name = "lake"
) {
endpoint <- Sys.getenv("BAF_ENDPOINT")
access_key <- Sys.getenv("BAF_KEY")
@@ -141,7 +141,7 @@ connect_baf <- function(prefix, bucket_name = Sys.getenv("BAF_BUCKET"), use_duck
#'
#' @param in_prefix Character. Input dataset prefix inside bucket (e.g. "02_intermediate/variant=Base").
#' @param out_prefix Character. Output dataset prefix inside bucket (e.g. "03_primary/variant=Base").
#' @param bucket_name Character. Bucket name. Default "baf-fraud".
#' @param bucket_name Character. Bucket name. Default "lake".
#' @param partitioning Character vector of columns to partition by. Default "month". Set NULL to disable.
#' @param existing_data_behavior One of "overwrite", "error", "delete_matching". Default "overwrite".
#' @param verbose Logical. Emit progress messages. Default TRUE.
@@ -153,8 +153,8 @@ connect_baf <- function(prefix, bucket_name = Sys.getenv("BAF_BUCKET"), use_duck
#' @importFrom arrow s3_bucket write_dataset
clean_baf_base <- function(
in_prefix,
out_prefix = "03_primary/variant=Base",
bucket_name = "baf-fraud",
out_prefix = "baf-fraud/03_primary/variant=Base",
bucket_name = "lake",
partitioning = "month",
existing_data_behavior = c("overwrite", "error", "delete_matching"),
verbose = TRUE
@@ -264,7 +264,7 @@ clean_baf_base <- function(
#' stored in MinIO/S3, accessed via \code{connect_baf()}.
#'
#' @param dataset_prefix Character. Prefix inside the bucket, e.g. "03_primary/variant=Base".
#' @param bucket_name Character. Bucket name. Default "baf-fraud".
#' @param bucket_name Character. Bucket name. Default "lake".
#' @param palette Character. colorspace qualitative palette name. Default "Dark 3".
#' @param title Character. Plot title. Default "".
#'
@@ -278,7 +278,7 @@ clean_baf_base <- function(
#' @importFrom colorspace qualitative_hcl
plot_fraud_by_month <- function(
dataset_prefix,
bucket_name = "baf-fraud",
bucket_name = "lake",
palette = "Dark 3",
title = ""
) {
@@ -452,7 +452,7 @@ render_slides <- function(qmd = "index.qmd", assets, output_dir = "reports/slide
#' @param tasks A tibble containing recipe_name, data_folder, and scale_pos_weight.
#' @param windows A tibble containing window_id, train_months, and test_month.
#' @param feature_prefix Character. The upstream dependency prefix (used to force DAG execution).
#' @param bucket_name Character. Bucket name. Default "baf-fraud".
#' @param bucket_name Character. Bucket name. Default "lake".
#' @param inputs_prefix Character. The folder containing the sampled data. Default "05_model_input".
#'
#' @return A tibble with the summarized tournament results.
@@ -467,8 +467,8 @@ run_imbalance_tournament <- function(
tasks,
windows,
feature_prefix,
bucket_name = "baf-fraud",
inputs_prefix = "05_model_input"
bucket_name = "lake",
inputs_prefix = "baf-fraud/05_model_input"
) {
endpoint <- Sys.getenv("BAF_ENDPOINT")
key <- Sys.getenv("BAF_KEY")
@@ -865,7 +865,7 @@ plot_num_cor <- function(eda_data, title = "") {
#'
#' @param in_prefix Character. Input dataset prefix (e.g., "03_primary/variant=Base").
#' @param out_prefix Character. Output dataset prefix (e.g., "04_feature/variant=Base").
#' @param bucket_name Character. The S3/MinIO bucket name. Default "baf-fraud".
#' @param bucket_name Character. The S3/MinIO bucket name. Default "lake".
#' @param partitioning Character vector. Columns to partition by. Default "month".
#' @param existing_data_behavior Character. Behavior when data exists. Default "delete_matching".
#' @param verbose Logical. Whether to print progress messages. Default TRUE.
@@ -876,9 +876,9 @@ plot_num_cor <- function(eda_data, title = "") {
#' @importFrom arrow s3_bucket open_dataset write_dataset
#' @importFrom dplyr mutate
engineer_features <- function(
in_prefix = "03_primary/variant=Base",
out_prefix = "04_feature/variant=Base",
bucket_name = "baf-fraud",
in_prefix = "baf-fraud/03_primary/variant=Base",
out_prefix = "baf-fraud/04_feature/variant=Base",
bucket_name = "lake",
partitioning = "month",
existing_data_behavior = "delete_matching",
verbose = TRUE
@@ -936,7 +936,7 @@ engineer_features <- function(
#'
#' @param feature_prefix Character. Input prefix (e.g., "04_feature/variant=Base").
#' @param out_prefix Character. Output prefix base (e.g., "05_model_input").
#' @param bucket_name Character. Bucket name. Default "baf-fraud".
#' @param bucket_name Character. Bucket name. Default "lake".
#'
#' @return Character. The output prefix (for targets dependency tracking).
#' @export
@@ -948,9 +948,9 @@ engineer_features <- function(
#' @importFrom lubridate %m+%
#' @importFrom glue glue
generate_model_inputs <- function(
feature_prefix = "04_feature/variant=Base",
out_prefix = "05_model_input",
bucket_name = "baf-fraud"
feature_prefix = "baf-fraud/04_feature/variant=Base",
out_prefix = "baf-fraud/05_model_input",
bucket_name = "lake"
) {
endpoint <- Sys.getenv("BAF_ENDPOINT")
key <- Sys.getenv("BAF_KEY")
@@ -1043,12 +1043,12 @@ generate_model_inputs <- function(
#'
#' @param params A named list of LightGBM hyperparameters with elements:
#' \code{trees}, \code{tree_depth}, \code{learn_rate}, \code{loss_reduction}, \code{min_n}.
#' @param bucket_name Character. Bucket name. Default "baf-fraud".
#' @param bucket_name Character. Bucket name. Default "lake".
#' @param inputs_prefix Character. Model input prefix. Default "05_model_input".
#'
#' @return A tibble with columns \code{truth}, \code{prob}, and \code{pred_class}.
#' @export
evaluate_final_model <- function(params, bucket_name = "baf-fraud", inputs_prefix = "05_model_input") {
evaluate_final_model <- function(params, bucket_name = "lake", inputs_prefix = "baf-fraud/05_model_input") {
b <- arrow::s3_bucket(bucket_name,
endpoint_override = Sys.getenv("BAF_ENDPOINT"),
scheme = "http", access_key = Sys.getenv("BAF_KEY"),
@@ -1176,7 +1176,7 @@ train_production_model <- function(data, recipe, best_params, model_filename = "
# 6. Open an Arrow output stream and push the binary data to MinIO
bucket_name <- Sys.getenv("BAF_BUCKET")
s3_path <- file.path(bucket_name, "06_models", model_filename)
s3_path <- file.path(bucket_name, "baf-fraud/06_models", model_filename)
out_stream <- s3$OpenOutputStream(s3_path)
file_size <- file.info(local_path)$size
@@ -1223,7 +1223,7 @@ build_baf_recipe <- function(data) {
#' @param imbalance_windows A tibble with columns \code{window_id},
#' \code{train_months}, and \code{test_month}, as produced by the
#' \code{imbalance_windows} target.
#' @param bucket_name Character. MinIO bucket name. Default \code{"baf-fraud"}.
#' @param bucket_name Character. MinIO bucket name. Default \code{"lake"}.
#' @param inputs_prefix Character. Prefix for the model input layer.
#' Default \code{"05_model_input"}.
#' @param grid_size Integer. Number of space-filling candidates. Default \code{30}.
@@ -1245,8 +1245,8 @@ build_baf_recipe <- function(data) {
#' @importFrom yardstick metric_set pr_auc
tune_lgbm <- function(
imbalance_windows,
bucket_name = "baf-fraud",
inputs_prefix = "05_model_input",
bucket_name = "lake",
inputs_prefix = "baf-fraud/05_model_input",
grid_size = 30L,
seed = 42L
) {