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#!/usr/bin/env bash
set -eo pipefail
FLOSS_DIR="/home/yurenh2/rrm/research/flossing"
CONDA_SH="/home/yurenh2/miniconda3/etc/profile.d/conda.sh"
HRM_ROOT="/home/yurenh2/rrm/hrm/checkpoints/Sudoku-extreme-1k-aug-1000 ACT-torch/HierarchicalReasoningModel_ACTV1 righteous-python"
TRM_ROOT="/home/yurenh2/rrm/trm/checkpoints/Sudoku-extreme-1k-aug-1000-ACT-torch/pretrain_mlp_t_sudoku_singleGPU"
wait_for_pid() {
local pid="$1"
if [[ "${pid}" == "0" ]]; then
return 0
fi
while kill -0 "${pid}" 2>/dev/null; do
sleep 60
done
}
activate_env() {
source "${CONDA_SH}"
conda activate rrm
cd "${FLOSS_DIR}"
}
run_hrm_queue() {
wait_for_pid "${1:-0}"
activate_env
CUDA_VISIBLE_DEVICES=0 python step7_interfloss.py \
--model hrm \
--ckpt-root "${HRM_ROOT}" \
--ckpt-name step_26040 \
--train-steps 10000 \
--batch-size 8 \
--train-lr 1e-5 \
--floss-lr 1e-4 \
--floss-steps 500 \
--interfloss-at 0,500 \
--floss-mode engelken_l2 \
--lambda-star 0 \
--k-lyap 8 \
--lyap-act-steps 4 \
--lyap-start-act 12 \
--kl-beta 10 \
--kl-replay-size 64 \
--kl-batch-size 4 \
--kl-temperature 1 \
--seed 42 \
--eval-every 1000 \
--eval-n 512 \
--eval-batch-size 32 \
--floss-log-every 10 \
--out step7_E_hrm_late_engelken_interfloss_kl10_start12_26040_k8_10k.json \
> step7_E_hrm_late_engelken_interfloss_kl10_start12_26040_k8_10k.log 2>&1
CUDA_VISIBLE_DEVICES=0 python step7_interfloss.py \
--model hrm \
--ckpt-root "${HRM_ROOT}" \
--ckpt-name step_26040 \
--train-steps 10000 \
--batch-size 8 \
--train-lr 1e-5 \
--floss-lr 1e-4 \
--floss-steps 500 \
--interfloss-at 0,500 \
--floss-mode volume_cf \
--lambda-star -0.15 \
--k-lyap 8 \
--lyap-act-steps 4 \
--kl-beta 10 \
--kl-replay-size 64 \
--kl-batch-size 4 \
--kl-temperature 1 \
--seed 42 \
--eval-every 1000 \
--eval-n 512 \
--eval-batch-size 32 \
--floss-log-every 10 \
--out step7_G_hrm_volume_envelope_interfloss_kl10_lstar_neg015_26040_k8_10k.json \
> step7_G_hrm_volume_envelope_interfloss_kl10_lstar_neg015_26040_k8_10k.log 2>&1
CUDA_VISIBLE_DEVICES=0 python step8_basin_consistency.py \
--model hrm \
--ckpt-root "${HRM_ROOT}" \
--ckpt-name step_26040 \
--train-steps 10000 \
--batch-size 8 \
--lr 1e-5 \
--consistency-beta 1 \
--consistency-every 1 \
--perturb-after 8 \
--noise-std 0.02 \
--kl-temperature 1 \
--seed 42 \
--eval-every 1000 \
--eval-n 512 \
--eval-batch-size 32 \
--out step8_A_hrm_basin_consistency_beta1_noise002_after8_26040_10k.json \
> step8_A_hrm_basin_consistency_beta1_noise002_after8_26040_10k.log 2>&1
}
run_trm_queue() {
wait_for_pid "${1:-0}"
activate_env
CUDA_VISIBLE_DEVICES=2 python step7_interfloss.py \
--model trm \
--ckpt-root "${TRM_ROOT}" \
--ckpt-name step_26041 \
--train-steps 10000 \
--batch-size 4 \
--train-lr 1e-5 \
--floss-lr 1e-4 \
--floss-steps 500 \
--interfloss-at 0,500 \
--floss-mode engelken_l2 \
--lambda-star 0 \
--k-lyap 4 \
--lyap-act-steps 4 \
--lyap-start-act 12 \
--kl-beta 10 \
--kl-replay-size 64 \
--kl-batch-size 4 \
--kl-temperature 1 \
--seed 42 \
--eval-every 1000 \
--eval-n 512 \
--eval-batch-size 32 \
--floss-log-every 10 \
--out step7_F_trm_late_engelken_interfloss_kl10_start12_26041_k4_batch4_10k.json \
> step7_F_trm_late_engelken_interfloss_kl10_start12_26041_k4_batch4_10k.log 2>&1
CUDA_VISIBLE_DEVICES=2 python step7_interfloss.py \
--model trm \
--ckpt-root "${TRM_ROOT}" \
--ckpt-name step_26041 \
--train-steps 10000 \
--batch-size 4 \
--train-lr 1e-5 \
--floss-lr 1e-4 \
--floss-steps 500 \
--interfloss-at 0,500 \
--floss-mode volume_cf \
--lambda-star 0.02 \
--k-lyap 4 \
--lyap-act-steps 4 \
--kl-beta 10 \
--kl-replay-size 64 \
--kl-batch-size 4 \
--kl-temperature 1 \
--seed 42 \
--eval-every 1000 \
--eval-n 512 \
--eval-batch-size 32 \
--floss-log-every 10 \
--out step7_H_trm_volume_envelope_interfloss_kl10_lstar002_26041_k4_batch4_10k.json \
> step7_H_trm_volume_envelope_interfloss_kl10_lstar002_26041_k4_batch4_10k.log 2>&1
CUDA_VISIBLE_DEVICES=2 python step8_basin_consistency.py \
--model trm \
--ckpt-root "${TRM_ROOT}" \
--ckpt-name step_26041 \
--train-steps 10000 \
--batch-size 4 \
--lr 1e-5 \
--consistency-beta 1 \
--consistency-every 1 \
--perturb-after 8 \
--noise-std 0.02 \
--kl-temperature 1 \
--seed 42 \
--eval-every 1000 \
--eval-n 512 \
--eval-batch-size 32 \
--out step8_B_trm_basin_consistency_beta1_noise002_after8_26041_batch4_10k.json \
> step8_B_trm_basin_consistency_beta1_noise002_after8_26041_batch4_10k.log 2>&1
}
cmd="${1:?usage: launch_dynamics_variants_queue.sh MODE [wait_pid]}"
wait_pid="${2:-0}"
case "${cmd}" in
hrm) run_hrm_queue "${wait_pid}" ;;
trm) run_trm_queue "${wait_pid}" ;;
*) echo "unknown command: ${cmd}" >&2; exit 2 ;;
esac
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