#!/usr/bin/env bash # Phase-1 queue (experiment_framework.md): E5 horizon sweeps, E2 run-level replication, # E6 matched-objective step9 pairs. Waits for a free GPU (12h fallback), runs sequentially. set -o pipefail cd /home/yurenh2/rrm/research/flossing source /home/yurenh2/miniconda3/etc/profile.d/conda.sh conda activate rrm OUTDIR=analysis_2x2/phase1 mkdir -p "$OUTDIR" STATUS="$OUTDIR/queue_status.log" TRM_OFF="/home/yurenh2/rrm/trm/checkpoints/Sudoku-extreme-1k-aug-1000-ACT-torch/pretrain_mlp_t_sudoku_official_gbs768_repro" TRM_SGL="/home/yurenh2/rrm/trm/checkpoints/Sudoku-extreme-1k-aug-1000-ACT-torch/pretrain_mlp_t_sudoku_singleGPU" HRM_ROOT="/home/yurenh2/rrm/hrm/checkpoints/Sudoku-extreme-1k-aug-1000 ACT-torch/HierarchicalReasoningModel_ACTV1 righteous-python" S9=/home/yurenh2/rrm/research/flossing log() { echo "[$(date '+%Y-%m-%d %H:%M:%S')] $*" >> "$STATUS"; } free_gpu() { nvidia-smi --query-gpu=index,utilization.gpu,memory.used --format=csv,noheader,nounits \ | awk -F', ' '$2<30 && $3<8000 {print $1; exit}' } log "phase-1 queue started (E5 horizon sweeps, E2 step9_E replication, E6 step9 pairs)" DEADLINE=$(( $(date +%s) + 12*3600 )) GPU="" while true; do g1="$(free_gpu)" if [[ -n "$g1" ]]; then sleep 60; g2="$(free_gpu)" if [[ "$g2" == "$g1" ]]; then GPU="$g1"; break; fi fi if (( $(date +%s) > DEADLINE )); then GPU="$(nvidia-smi --query-gpu=index,memory.used --format=csv,noheader,nounits | sort -t, -k2 -n | head -1 | cut -d, -f1)" log "12h fallback: taking GPU $GPU" break fi sleep 300 done log "claimed GPU $GPU" export CUDA_VISIBLE_DEVICES="$GPU" run_job() { # name horizon script args... local name="$1" hor="$2"; shift 2 if [[ -f "$OUTDIR/${name}.npz" ]]; then log "skip $name"; return 0; fi log "start $name" if DIAG_HORIZON="$hor" python "$@" --out "$OUTDIR/${name}.npz" > "$OUTDIR/${name}.log" 2>&1; then log "done $name" else log "FAILED $name" fi } # --- E5: TRM horizon sweep (h=4 already exists in retest/) --- for H in 2 6 8 10 12; do run_job "trm_official58590_h${H}_n2048" "$H" diagnose_trm_joint_horizon.py \ --ckpt-root "$TRM_OFF" --ckpt-name step_58590 --n-samples 2048 --batch-size 16 \ --k-lyap 8 --t-ons 1 --seed 0 done # --- E5: HRM horizon sweep --- for H in 2 6 8 10 12; do run_job "hrm26040_h${H}_n2048" "$H" diagnose_hrm_joint_horizon.py \ --ckpt-root "$HRM_ROOT" --ckpt-name step_26040 --n-samples 2048 --batch-size 32 \ --k-lyap 8 --t-ons 1 --seed 0 done # --- E2: HRM second training run (step9_E fixed-unroll baseline), full window --- run_job "step9E_hrm_best_full_n2048" 16 diagnose_hrm_joint.py \ --ckpt-root "$HRM_ROOT" --ckpt-name "$S9/step9_E_hrm_baseline_parallel_fixed_26040_50k_ckpts/best.pt" \ --n-samples 2048 --batch-size 32 --k-lyap 8 --t-ons 1 --seed 0 run_job "step9E_hrm_final_full_n2048" 16 diagnose_hrm_joint.py \ --ckpt-root "$HRM_ROOT" --ckpt-name "$S9/step9_E_hrm_baseline_parallel_fixed_26040_50k_ckpts/final.pt" \ --n-samples 2048 --batch-size 32 --k-lyap 8 --t-ons 1 --seed 0 # --- E6: matched-objective pairs (n=512): HRM E vs F, TRM G vs H --- for CK in step_12500 step_25000 best final; do run_job "step9E_hrm_${CK}_n512" 16 diagnose_hrm_joint.py \ --ckpt-root "$HRM_ROOT" --ckpt-name "$S9/step9_E_hrm_baseline_parallel_fixed_26040_50k_ckpts/${CK}.pt" \ --n-samples 512 --batch-size 32 --k-lyap 8 --t-ons 1 --seed 0 run_job "step9F_hrm_${CK}_n512" 16 diagnose_hrm_joint.py \ --ckpt-root "$HRM_ROOT" --ckpt-name "$S9/step9_F_hrm_multi4_loguniform_ramp_26040_50k_ckpts/${CK}.pt" \ --n-samples 512 --batch-size 32 --k-lyap 8 --t-ons 1 --seed 0 run_job "step9G_trm_${CK}_n512" 16 diagnose_trm_joint.py \ --ckpt-root "$TRM_SGL" --ckpt-name "$S9/step9_G_trm_baseline_parallel_fixed_26041_batch4_50k_ckpts/${CK}.pt" \ --n-samples 512 --batch-size 16 --k-lyap 8 --t-ons 1 --seed 0 run_job "step9H_trm_${CK}_n512" 16 diagnose_trm_joint.py \ --ckpt-root "$TRM_SGL" --ckpt-name "$S9/step9_H_trm_multi4_loguniform_ramp_26041_batch4_50k_ckpts/${CK}.pt" \ --n-samples 512 --batch-size 16 --k-lyap 8 --t-ons 1 --seed 0 done log "phase-1 queue finished"