#!/usr/bin/env bash # Train the LightGBM lambdarank re-ranker on cached HLLM embeddings. # # Architecture: group-by-user lambdarank over FAISS top-100 candidates with # ~21 handcrafted features. set -euo pipefail WORKSPACE="${PLAYBOOK_WORKSPACE:-$HOME}" SCRIPT_DIR="$(cd "$(dirname "$0")" && pwd)" REPO_DIR="$(cd "$SCRIPT_DIR/.." && pwd)" PROCESSED_DIR="${PLAYBOOK_PROCESSED_DIR:-$WORKSPACE/data/processed}" OUTPUT_DIR="${PLAYBOOK_RERANKER_DIR:-$WORKSPACE/models/reranker_lightgbm}" exec uv run --project "$REPO_DIR" python "$SCRIPT_DIR/train_reranker_lightgbm.py" \ --processed-dir "$PROCESSED_DIR" \ --output-dir "$OUTPUT_DIR" \ "$@"