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#!/usr/bin/env bash
# Hyperparameter sweep for dev3 (MotionCache) and dev4 (MotionDetailCache).
set -euo pipefail
GPU_ID="${CUDA_VISIBLE_DEVICES:-1}"
SWEEP_FRAMES="${SWEEP_FRAMES:-120}"
PROMPT="${PROMPT:-a woman dancing.}"
BASELINE="/home/dyvm6xra/dyvm6xrauser11/workspace/cz/FlowCache/FlowCache4MAGI-1/outputs/a_woman_dancing_2026-05-19_09-49-14/output_2026-05-19_09-49-14.mp4"
FLOWCACHE_ROOT="/home/dyvm6xra/dyvm6xrauser11/workspace/cz/FlowCache/FlowCache4MAGI-1-dev3-motion"
DETAIL_ROOT="/home/dyvm6xra/dyvm6xrauser11/workspace/cz/FlowCache/FlowCache4MAGI-1-dev4-detail"
SWEEP_ROOT="${SWEEP_ROOT:-$FLOWCACHE_ROOT/outputs/hparam_sweep_$(date +%Y%m%d_%H%M%S)}"
REPORT_DIR="$SWEEP_ROOT/report"
mkdir -p "$REPORT_DIR"
export MASTER_ADDR=localhost
export CUDA_VISIBLE_DEVICES="$GPU_ID"
export PYTHONPATH="${FLOWCACHE_ROOT}:${DETAIL_ROOT}:${PYTHONPATH:-}"
export PAD_HQ=1
export PAD_DURATION=1
export PYTORCH_CUDA_ALLOC_CONF=expandable_segments:True
export OFFLOAD_T5_CACHE=true
export OFFLOAD_VAE_CACHE=true
if [ -z "${CONDA_DEFAULT_ENV:-}" ] || [ "${CONDA_DEFAULT_ENV}" != "magi" ]; then
# shellcheck disable=SC1091
source "${HOME}/miniforge3/etc/profile.d/conda.sh" 2>/dev/null || source "${HOME}/anaconda3/etc/profile.d/conda.sh"
conda activate magi
fi
ensure_numpy_compat() {
if ! python3 - <<'PY'
import numpy as np
major = int(np.__version__.split(".")[0])
raise SystemExit(0 if major < 2 else 1)
PY
then
echo "Fixing numpy for transformers (found incompatible version)..."
pip install -q "numpy>=1.24,<2.0"
fi
}
ensure_numpy_compat
make_runtime_config() {
local dst="$1" frames="$2"
python3 - "$dst" "$frames" <<'PY'
import json, sys
dst, frames = sys.argv[1], int(sys.argv[2])
src = "/home/dyvm6xra/dyvm6xrauser11/workspace/cz/FlowCache/FlowCache4MAGI-1-dev3-motion/config/single_run/flowcache_t2v.json"
with open(src) as f:
cfg = json.load(f)
cfg["runtime_config"]["num_frames"] = frames
with open(dst, "w") as f:
json.dump(cfg, f, indent=4)
PY
}
RUNTIME_CFG="$SWEEP_ROOT/runtime_${SWEEP_FRAMES}f.json"
make_runtime_config "$RUNTIME_CFG" "$SWEEP_FRAMES"
echo "Sweep output: $SWEEP_ROOT (num_frames=$SWEEP_FRAMES, GPU=$GPU_ID, host=$(hostname))"
RESULTS_CSV="$REPORT_DIR/results.csv"
echo "variant,version,tau,alpha,detail_alpha,detail_window,combine_mode,detail_lambda,psnr_db,ssim,black_ratio,reuse_rate_pct,wall_sec,peak_gb,video_path,log_path" > "$RESULTS_CSV"
run_one() {
local version="$1" run_id="$2" yaml_path="$3" root_dir="$4"
local exp_dir="$SWEEP_ROOT/${version}_${run_id}"
mkdir -p "$exp_dir"
local out="$exp_dir/output.mp4"
local log="$exp_dir/infer.log"
local metric="$exp_dir/metrics.json"
local t0 t1 elapsed
export MASTER_PORT=$((6000 + RANDOM % 500))
if [ "$root_dir" = "$DETAIL_ROOT" ]; then
export PYTHONPATH="${DETAIL_ROOT}:${FLOWCACHE_ROOT}:${PYTHONPATH:-}"
else
export PYTHONPATH="${FLOWCACHE_ROOT}:${DETAIL_ROOT}:${PYTHONPATH:-}"
fi
echo ""
echo "========== [$version] $run_id =========="
t0=$(date +%s)
set +e
(
cd "$root_dir"
python3 inference/pipeline/motioncache.py \
--config_file "$RUNTIME_CFG" \
--mode t2v \
--prompt "$PROMPT" \
--output_path "$out" \
--additional_config "$yaml_path" \
--motioncache_metric_stats_path "$metric" \
2>&1 | tee "$log"
)
local rc=${PIPESTATUS[0]}
set -e
t1=$(date +%s)
elapsed=$((t1 - t0))
if [ ! -f "$out" ] || [ "$rc" -ne 0 ]; then
echo "FAILED: $run_id (rc=$rc, no video)"
return 1
fi
eval_out=$(python3 "$FLOWCACHE_ROOT/tools/eval_run.py" \
--baseline "$BASELINE" \
--generated "$out" \
--log "$log" \
--metric "$metric" 2>/dev/null || true)
PSNR="NA"; SSIM="NA"; BLACK="NA"; REUSE="NA"; PEAK="NA"
while IFS='=' read -r k v; do
case "$k" in PSNR) PSNR="$v" ;; SSIM) SSIM="$v" ;; BLACK) BLACK="$v" ;; REUSE) REUSE="$v" ;; PEAK) PEAK="$v" ;; esac
done <<< "$eval_out"
echo "$run_id,$version,$TAU,$ALPHA,$DETAIL_ALPHA,$DETAIL_WINDOW,$COMBINE,$DETAIL_LAM,$PSNR,$SSIM,$BLACK,$REUSE,$elapsed,$PEAK,$out,$log" >> "$RESULTS_CSV"
echo " PSNR=${PSNR}dB reuse=${REUSE}% time=${elapsed}s"
}
write_yaml() {
local path="$1"
shift
python3 - "$path" "$@" <<'PY'
import sys, yaml
path = sys.argv[1]
params = {}
for kv in sys.argv[2:]:
k, v = kv.split("=", 1)
if v.lower() in ("true", "false"):
params[k] = v.lower() == "true"
elif v.replace(".", "", 1).isdigit():
params[k] = float(v) if "." in v else int(v)
else:
params[k] = v
base = {
"warmup_steps": 5,
"phase1_steps": 9,
"alpha": 0.5,
"discard_nearly_clean_chunk": True,
"compress_kv_cache": True,
"total_cache_chunk_nums": 5,
"compress_strategy": "token",
"mix_lambda": 0.07,
"query_granularity": "frame",
"score_weighting_method": "no_weight",
"power": 3,
"log": False,
"print_peak_memory": True,
}
base.update(params)
with open(path, "w") as f:
yaml.dump(base, f, default_flow_style=False)
PY
}
# ---------- Phase 1: dev3 tau sweep ----------
BEST_DEV3_TAU="0.015"
for tau in 0.010 0.012 0.015 0.018 0.020 0.025 0.030; do
y="$SWEEP_ROOT/dev3_tau${tau}.yaml"
write_yaml "$y" "rel_l1_thresh=$tau"
export TAU="$tau" ALPHA="0.5" DETAIL_ALPHA="" DETAIL_WINDOW="" COMBINE="" DETAIL_LAM=""
run_one "dev3" "tau${tau}" "$y" "$FLOWCACHE_ROOT" || true
done
BEST_DEV3_TAU=$(python3 - "$RESULTS_CSV" <<'PY'
import csv, sys
rows = [r for r in csv.DictReader(open(sys.argv[1])) if r["version"] == "dev3" and r["psnr_db"] not in ("NA", "")]
if not rows:
print("0.015")
else:
def score(r):
psnr = float(r["psnr_db"]) if r["psnr_db"] != "inf" else 100.0
reuse = float(r["reuse_rate_pct"] or 0)
return psnr + 0.02 * reuse
print(max(rows, key=score)["tau"])
PY
)
echo "Best dev3 tau from sweep: $BEST_DEV3_TAU"
# ---------- Phase 2: dev4 detail sweep ----------
for spec in \
"max|3|0.5|0.5" \
"max|5|0.5|0.5" \
"max|3|0.4|0.5" \
"max|3|0.6|0.5" \
"blend|3|0.5|0.3" \
"blend|3|0.5|0.5" \
"blend|3|0.5|0.7" \
"product|3|0.5|0.5" \
"product|5|0.5|0.5"; do
IFS='|' read -r mode win da lam <<< "$spec"
rid="tau${BEST_DEV3_TAU}_${mode}_w${win}_da${da}_lam${lam}"
y="$SWEEP_ROOT/dev4_${rid}.yaml"
write_yaml "$y" \
"rel_l1_thresh=$BEST_DEV3_TAU" \
"detail_alpha=$da" \
"detail_window_size=$win" \
"weight_combine_mode=$mode" \
"detail_lambda=$lam"
export TAU="$BEST_DEV3_TAU" ALPHA="0.5" DETAIL_ALPHA="$da" DETAIL_WINDOW="$win" COMBINE="$mode" DETAIL_LAM="$lam"
run_one "dev4" "$rid" "$y" "$DETAIL_ROOT" || true
done
# ---------- Phase 3: 240-frame validation ----------
RUNTIME_CFG="$SWEEP_ROOT/runtime_240f.json"
make_runtime_config "$RUNTIME_CFG" 240
echo "Full validation at 240 frames..."
DEV3_COUNT=$(python3 - "$RESULTS_CSV" <<'PY'
import csv, sys
print(sum(1 for r in csv.DictReader(open(sys.argv[1])) if r["version"] == "dev3" and r["psnr_db"] not in ("NA", "")))
PY
)
DEV4_COUNT=$(python3 - "$RESULTS_CSV" <<'PY'
import csv, sys
print(sum(1 for r in csv.DictReader(open(sys.argv[1])) if r["version"] == "dev4" and r["psnr_db"] not in ("NA", "")))
PY
)
if [ "$DEV3_COUNT" -gt 0 ]; then
BEST_DEV3_ID=$(python3 - "$RESULTS_CSV" <<'PY'
import csv, sys
rows = [r for r in csv.DictReader(open(sys.argv[1])) if r["version"] == "dev3" and r["psnr_db"] not in ("NA", "")]
def score(r):
psnr = float(r["psnr_db"]) if r["psnr_db"] != "inf" else 100.0
return psnr + 0.02 * float(r["reuse_rate_pct"] or 0)
print(max(rows, key=score)["variant"])
PY
)
y3="$SWEEP_ROOT/dev3_${BEST_DEV3_ID}_full.yaml"
write_yaml "$y3" "rel_l1_thresh=${BEST_DEV3_TAU}"
export TAU="$BEST_DEV3_TAU" ALPHA="0.5" DETAIL_ALPHA="" DETAIL_WINDOW="" COMBINE="" DETAIL_LAM=""
run_one "dev3_full" "${BEST_DEV3_ID}_240f" "$y3" "$FLOWCACHE_ROOT" || true
fi
if [ "$DEV4_COUNT" -gt 0 ]; then
read -r y4 da dw cm dl BEST_DEV4_ID <<< "$(python3 - "$RESULTS_CSV" "$SWEEP_ROOT" "$BEST_DEV3_TAU" <<'PY'
import csv, sys, yaml, os
csv_path, sweep_root, tau = sys.argv[1:4]
rows = [r for r in csv.DictReader(open(csv_path)) if r["version"] == "dev4" and r["psnr_db"] not in ("NA", "")]
def score(r):
psnr = float(r["psnr_db"]) if r["psnr_db"] != "inf" else 100.0
return psnr + 0.02 * float(r["reuse_rate_pct"] or 0)
row = max(rows, key=score)
y = {
"rel_l1_thresh": float(tau),
"warmup_steps": 5, "phase1_steps": 9, "alpha": 0.5,
"detail_alpha": float(row["detail_alpha"]),
"detail_window_size": int(float(row["detail_window"])),
"weight_combine_mode": row["combine_mode"],
"detail_lambda": float(row["detail_lambda"]),
"discard_nearly_clean_chunk": True,
"compress_kv_cache": True, "total_cache_chunk_nums": 5,
"compress_strategy": "token", "mix_lambda": 0.07,
"query_granularity": "frame", "score_weighting_method": "no_weight",
"power": 3, "log": False, "print_peak_memory": True,
}
path = os.path.join(sweep_root, f"dev4_{row['variant']}_full.yaml")
with open(path, "w") as f:
yaml.dump(y, f, default_flow_style=False)
print(path, row["detail_alpha"], row["detail_window"], row["combine_mode"], row["detail_lambda"], row["variant"])
PY
)"
export TAU="$BEST_DEV3_TAU" ALPHA="0.5" DETAIL_ALPHA="$da" DETAIL_WINDOW="$dw" COMBINE="$cm" DETAIL_LAM="$dl"
run_one "dev4_full" "${BEST_DEV4_ID}_240f" "$y4" "$DETAIL_ROOT" || true
fi
python3 "$FLOWCACHE_ROOT/tools/generate_comparison_report.py" \
--results "$RESULTS_CSV" \
--baseline "$BASELINE" \
--output "$REPORT_DIR/comparison_report.md" \
--sweep_dir "$SWEEP_ROOT"
echo ""
echo "Sweep complete."
echo " CSV: $RESULTS_CSV"
echo " Report: $REPORT_DIR/comparison_report.md"