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#!/bin/sh
[ -n "${BASH_VERSION:-}" ] || exec bash "$0" "$@"
set -euo pipefail

# Minimal cached-R3M semantic LAT/LDP grid.
#
# Defaults match the current experiment convention:
#   LAT batch_size=256
#   LDP batch_size=128
#   num_workers=8
#   semantic objective=soft_topk

SCRIPT_DIR="$(cd "$(dirname "${BASH_SOURCE[0]}")" && pwd)"
REPO_ROOT="$(cd "${SCRIPT_DIR}/.." && pwd)"

if [[ -z "${PYTHON_BIN:-}" ]]; then
  if [[ -x "${REPO_ROOT}/.venv/bin/python" ]]; then
    PYTHON_BIN="${REPO_ROOT}/.venv/bin/python"
  elif command -v python >/dev/null 2>&1; then
    PYTHON_BIN="$(command -v python)"
  else
    PYTHON_BIN="$(command -v python3)"
  fi
fi

DATASET_ROOT="${DATASET_ROOT:-/home/bagel/bridge_processed_partial/bridge_processed}"
CACHED_R3M_FEATURES_DIR="${CACHED_R3M_FEATURES_DIR:-/home/bagel/bridge_processed_partial/r3m_resnet34_features_bs128}"
OUTPUT_ROOT="${OUTPUT_ROOT:-${REPO_ROOT}/rold_semantic_ablation_runs}"
DEVICE="${DEVICE:-cuda}"
NUM_WORKERS="${NUM_WORKERS:-8}"
SEED="${SEED:-0}"

LAT_BATCH_SIZE="${LAT_BATCH_SIZE:-256}"
LAT_EPOCHS="${LAT_EPOCHS:-80}"
LAT_LR="${LAT_LR:-2e-4}"
LATENT_DIM="${LATENT_DIM:-32}"
LAT_KL_WEIGHT="${LAT_KL_WEIGHT:-1e-3}"
LAT_SEMANTIC_WEIGHT="${LAT_SEMANTIC_WEIGHT:-0.05}"
LAT_SEMANTIC_TOPK="${LAT_SEMANTIC_TOPK:-8}"
LAT_SEMANTIC_TARGET_TEMPERATURE="${LAT_SEMANTIC_TARGET_TEMPERATURE:-0.07}"
MULTIDELTA_INDICES="${MULTIDELTA_INDICES:-4,8,12,16}"

LDP_BATCH_SIZE="${LDP_BATCH_SIZE:-128}"
LDP_EPOCHS="${LDP_EPOCHS:-80}"
LDP_LR="${LDP_LR:-2e-4}"
LDP_FLOW_STEPS="${LDP_FLOW_STEPS:-50}"

EVAL_BATCH_SIZE="${EVAL_BATCH_SIZE:-64}"
EVAL_MAX_WINDOWS="${EVAL_MAX_WINDOWS:-2048}"
EVAL_TOP_K="${EVAL_TOP_K:-5 10}"

RUN_ROLD_LAT="${RUN_ROLD_LAT:-0}"
RUN_ENDPOINT_LAT="${RUN_ENDPOINT_LAT:-0}"
RUN_MULTIDELTA_LAT="${RUN_MULTIDELTA_LAT:-0}"
RUN_ALIGNMENT_EVAL="${RUN_ALIGNMENT_EVAL:-0}"
RUN_ROLD_LDP="${RUN_ROLD_LDP:-0}"
RUN_ENDPOINT_LDP="${RUN_ENDPOINT_LDP:-0}"
RUN_MULTIDELTA_LDP="${RUN_MULTIDELTA_LDP:-0}"

ROLD_LAT_DIR="${ROLD_LAT_DIR:-${OUTPUT_ROOT}/lat_r3m_rold_baseline_cached}"
ENDPOINT_LAT_DIR="${ENDPOINT_LAT_DIR:-${OUTPUT_ROOT}/lat_r3m_softk_w0.05}"
MULTIDELTA_LAT_DIR="${MULTIDELTA_LAT_DIR:-${OUTPUT_ROOT}/lat_r3m_softk_multidelta_w0.05}"

ROLD_LDP_DIR="${ROLD_LDP_DIR:-${OUTPUT_ROOT}/ldp_rold_baseline_cached}"
ENDPOINT_LDP_DIR="${ENDPOINT_LDP_DIR:-${OUTPUT_ROOT}/ldp_monolithic_delta_w0.05}"
MULTIDELTA_LDP_DIR="${MULTIDELTA_LDP_DIR:-${OUTPUT_ROOT}/ldp_monolithic_multidelta_w0.05}"
ALIGNMENT_EVAL_DIR="${ALIGNMENT_EVAL_DIR:-${OUTPUT_ROOT}/alignment_eval_cached}"

log() { echo "[semantic-hypothesis-cached] $*"; }

mkdir -p "${OUTPUT_ROOT}"

common_lat_flags=(
  --dataset_root "${DATASET_ROOT}"
  --train_split train
  --val_split val
  --device "${DEVICE}"
  --num_workers "${NUM_WORKERS}"
  --seed "${SEED}"
  --epochs "${LAT_EPOCHS}"
  --batch_size "${LAT_BATCH_SIZE}"
  --learning_rate "${LAT_LR}"
  --latent_dim "${LATENT_DIM}"
  --kl_loss_weight "${LAT_KL_WEIGHT}"
  --obs_encoder_source r3m
  --r3m_model_id resnet34
  --cached_r3m_features_dir "${CACHED_R3M_FEATURES_DIR}"
  --resume_auto
)

if [[ "${RUN_ROLD_LAT}" == "1" ]]; then
  log "training cached RoLD LAT -> ${ROLD_LAT_DIR}"
  mkdir -p "${ROLD_LAT_DIR}"
  "${PYTHON_BIN}" -u -m ddm_actions.cli.train_lat_autoencoder \
    --output_dir "${ROLD_LAT_DIR}" \
    "${common_lat_flags[@]}"
fi

if [[ "${RUN_ENDPOINT_LAT}" == "1" ]]; then
  log "training cached endpoint soft-topk LAT -> ${ENDPOINT_LAT_DIR}"
  mkdir -p "${ENDPOINT_LAT_DIR}"
  "${PYTHON_BIN}" -u -m ddm_actions.cli.train_lat_autoencoder \
    --output_dir "${ENDPOINT_LAT_DIR}" \
    "${common_lat_flags[@]}" \
    --use_semantic_alignment \
    --semantic_alignment_loss_type soft_topk \
    --semantic_loss_weight "${LAT_SEMANTIC_WEIGHT}" \
    --semantic_soft_topk "${LAT_SEMANTIC_TOPK}" \
    --semantic_target_temperature "${LAT_SEMANTIC_TARGET_TEMPERATURE}" \
    --semantic_target_type future_delta_feature
fi

if [[ "${RUN_MULTIDELTA_LAT}" == "1" ]]; then
  log "training cached multi-delta soft-topk LAT -> ${MULTIDELTA_LAT_DIR}"
  mkdir -p "${MULTIDELTA_LAT_DIR}"
  "${PYTHON_BIN}" -u -m ddm_actions.cli.train_lat_autoencoder \
    --output_dir "${MULTIDELTA_LAT_DIR}" \
    "${common_lat_flags[@]}" \
    --use_semantic_alignment \
    --semantic_alignment_loss_type soft_topk \
    --semantic_loss_weight "${LAT_SEMANTIC_WEIGHT}" \
    --semantic_soft_topk "${LAT_SEMANTIC_TOPK}" \
    --semantic_target_temperature "${LAT_SEMANTIC_TARGET_TEMPERATURE}" \
    --semantic_target_type multi_delta_feature \
    --semantic_multidelta_indices "${MULTIDELTA_INDICES}"
fi

if [[ "${RUN_ALIGNMENT_EVAL}" == "1" ]]; then
  log "running LAT alignment diagnostics -> ${ALIGNMENT_EVAL_DIR}"
  mkdir -p "${ALIGNMENT_EVAL_DIR}"
  read -r -a top_k_values <<< "${EVAL_TOP_K}"

  ckpts=()
  names=()
  if [[ -f "${ROLD_LAT_DIR}/best_recon.pt" ]]; then
    ckpts+=("${ROLD_LAT_DIR}/best_recon.pt")
    names+=(rold_cached)
  fi
  if [[ -f "${ENDPOINT_LAT_DIR}/best_recon.pt" ]]; then
    ckpts+=("${ENDPOINT_LAT_DIR}/best_recon.pt")
    names+=(endpoint_softtopk)
  fi
  if [[ -f "${MULTIDELTA_LAT_DIR}/best_recon.pt" ]]; then
    ckpts+=("${MULTIDELTA_LAT_DIR}/best_recon.pt")
    names+=(multidelta_softtopk)
  fi
  if [[ "${#ckpts[@]}" -lt 2 ]]; then
    echo "Need at least two LAT checkpoints for alignment eval." >&2
    exit 1
  fi

  "${PYTHON_BIN}" -u -m ddm_actions.cli.eval_latent_semantic_alignment \
    --dataset_root "${DATASET_ROOT}" \
    --output_dir "${ALIGNMENT_EVAL_DIR}" \
    --autoencoder_ckpt "${ckpts[@]}" \
    --run_name "${names[@]}" \
    --split val \
    --device "${DEVICE}" \
    --batch_size "${EVAL_BATCH_SIZE}" \
    --num_workers "${NUM_WORKERS}" \
    --max_windows "${EVAL_MAX_WINDOWS}" \
    --top_k "${top_k_values[@]}" \
    --cached_r3m_features_dir "${CACHED_R3M_FEATURES_DIR}"
fi

common_ldp_flags=(
  --dataset_root "${DATASET_ROOT}"
  --train_split train
  --val_split val
  --test_split test
  --device "${DEVICE}"
  --num_workers "${NUM_WORKERS}"
  --epochs "${LDP_EPOCHS}"
  --batch_size "${LDP_BATCH_SIZE}"
  --learning_rate "${LDP_LR}"
  --hidden_dim 256
  --flow_steps "${LDP_FLOW_STEPS}"
  --seed "${SEED}"
  --decoded_action_loss_weight 0.0
  --cached_r3m_features_dir "${CACHED_R3M_FEATURES_DIR}"
  --resume_auto
)

if [[ "${RUN_ROLD_LDP}" == "1" ]]; then
  log "training cached RoLD LDP -> ${ROLD_LDP_DIR}"
  mkdir -p "${ROLD_LDP_DIR}"
  "${PYTHON_BIN}" -u -m ddm_actions.cli.train_latent_policy \
    --output_dir "${ROLD_LDP_DIR}" \
    --autoencoder_ckpt "${ROLD_LAT_DIR}/best_recon.pt" \
    "${common_ldp_flags[@]}"
fi

if [[ "${RUN_ENDPOINT_LDP}" == "1" ]]; then
  log "training endpoint soft-topk LDP -> ${ENDPOINT_LDP_DIR}"
  mkdir -p "${ENDPOINT_LDP_DIR}"
  "${PYTHON_BIN}" -u -m ddm_actions.cli.train_latent_policy \
    --output_dir "${ENDPOINT_LDP_DIR}" \
    --autoencoder_ckpt "${ENDPOINT_LAT_DIR}/best_recon.pt" \
    "${common_ldp_flags[@]}"
fi

if [[ "${RUN_MULTIDELTA_LDP}" == "1" ]]; then
  log "training multi-delta soft-topk LDP -> ${MULTIDELTA_LDP_DIR}"
  mkdir -p "${MULTIDELTA_LDP_DIR}"
  "${PYTHON_BIN}" -u -m ddm_actions.cli.train_latent_policy \
    --output_dir "${MULTIDELTA_LDP_DIR}" \
    --autoencoder_ckpt "${MULTIDELTA_LAT_DIR}/best_recon.pt" \
    "${common_ldp_flags[@]}"
fi

log "done"