File size: 7,155 Bytes
1a18f22 | 1 2 3 4 5 6 7 8 9 10 11 12 13 14 15 16 17 18 19 20 21 22 23 24 25 26 27 28 29 30 31 32 33 34 35 36 37 38 39 40 41 42 43 44 45 46 47 48 49 50 51 52 53 54 55 56 57 58 59 60 61 62 63 64 65 66 67 68 69 70 71 72 73 74 75 76 77 78 79 80 81 82 83 84 85 86 87 88 89 90 91 92 93 94 95 96 97 98 99 100 101 102 103 104 105 106 107 108 109 110 111 112 113 114 115 116 117 118 119 120 121 122 123 124 125 126 127 128 129 130 131 132 133 134 135 136 137 138 139 140 141 142 143 144 145 146 147 148 149 150 151 152 153 154 155 156 157 158 159 160 161 162 163 164 165 166 167 168 | """P1 master orchestrator: DAG scheduler over GPU0-5 for the backbone bake-off.
Phases: A) 8 generators (4 backbones x 2 datasets, amortized, 50k steps)
B) 16 sampling jobs (per gen x N in {50,100}, mask_aug n_per_mask=4)
C) 60 downstream seg runs (real + 4 backbones) x 2 ds x 2 N x 3 seeds
Single GPU per job (no DDP needed: 84 independent jobs). Retry-once on failure.
Resumable (skips done outputs). Rolling aggregate -> logs/p1master/p1_results.json."""
import os, sys, time, json, subprocess, statistics as st
ROOT = "/home/wzhang/LSC/Code/NPJ"
DR = "/home/wzhang/LSC/Dataset/Segmentation/processed_unified"
PY = "/opt/anaconda3/envs/seggen/bin/python"
GPUS = [0, 1, 2, 3, 4, 5]
os.chdir(ROOT)
LOGD = os.path.join(ROOT, "logs", "p1master")
os.makedirs(LOGD, exist_ok=True)
def log(m):
line = f"[{time.strftime('%F %T')}] {m}"
with open(os.path.join(LOGD, "status.md"), "a") as f:
f.write(line + "\n")
print(line, flush=True)
DSETS = {"isic": ("medsegdb_isic2018", "holdout", 2582),
"kvasir": ("kvasir_seg", "official", 800)}
BKS = ["jit", "pixelgen", "deco", "pixeldit"]
NS = [50, 100]
SEEDS = [0, 1, 2]
jobs = {}
def add(jid, cmd, deps=(), done_path=None, done_min=1):
jobs[jid] = {"cmd": cmd, "deps": list(deps), "done_path": done_path,
"done_min": done_min, "state": "pending", "tries": 0, "gpu": None}
# Phase A: generators
for bk in BKS:
for dk, (ds, proto, tot) in DSETS.items():
out = f"pretrained/pixdiff/p1_{bk}_{dk}.pt"
cmd = (f"{PY} -m framework.synth.pixdiff.train --data_root {DR} --dataset {ds} "
f"--protocol {proto} --backbone {bk} --img_size 256 --batch_size 16 "
f"--epochs 100000 --max_steps 50000 --lr 1e-4 --amp bf16 "
f"--train_fraction 1.0 --fraction_seed 0 --out_ckpt {out} --log_interval 500")
add(f"gen_{bk}_{dk}", cmd, done_path=os.path.join(ROOT, out))
# Phase B: sampling
for bk in BKS:
for dk, (ds, proto, tot) in DSETS.items():
ck = f"pretrained/pixdiff/p1_{bk}_{dk}.pt"
for N in NS:
f = N / tot
sd = f"{DR}/{ds}/{proto}/synth_p1_{bk}_{dk}_f{N}"
cmd = (f"{PY} -m framework.synth.pixdiff.sample --ckpt {ck} --data_root {DR} "
f"--dataset {ds} --protocol {proto} --train_fraction {f} --fraction_seed 0 "
f"--n_per_mask 4 --mask_aug --num_steps 50 --out_dir {sd}")
add(f"samp_{bk}_{dk}_N{N}", cmd, deps=[f"gen_{bk}_{dk}"],
done_path=os.path.join(sd, "images"), done_min=N * 4)
# Phase C: downstream
def mpath(exp, ds, proto, S):
return os.path.join(ROOT, f"results/{exp}/{ds}_{proto}/unet/seed{S}/metrics.json")
def seg_cmd(ds, proto, f, exp, S, synth=None):
base = (f"{PY} framework/train.py --data_root {DR} --dataset {ds} --protocol {proto} "
f"--arch unet --encoder resnet50 --aug standard --epochs 400 "
f"--train_fraction {f} --fraction_seed 0 --exp_name {exp} --amp bf16 --seed {S}")
if synth:
base += f" --synth_train_dir {synth}"
test = (f"{PY} framework/test.py --data_root {DR} --dataset {ds} --protocol {proto} "
f"--arch unet --encoder resnet50 --aug standard --exp_name {exp} --seed {S}")
return base + " && " + test
for dk, (ds, proto, tot) in DSETS.items():
for N in NS:
f = N / tot
for S in SEEDS:
exp = f"p1_real_{dk}_N{N}"
add(f"seg_real_{dk}_N{N}_s{S}", seg_cmd(ds, proto, f, exp, S),
done_path=mpath(exp, ds, proto, S))
for bk in BKS:
sd = f"{DR}/{ds}/{proto}/synth_p1_{bk}_{dk}_f{N}"
for S in SEEDS:
exp = f"p1_{bk}_{dk}_N{N}"
add(f"seg_{bk}_{dk}_N{N}_s{S}", seg_cmd(ds, proto, f, exp, S, synth=sd),
deps=[f"samp_{bk}_{dk}_N{N}"], done_path=mpath(exp, ds, proto, S))
def is_done(j):
p = j["done_path"]
if not p or not os.path.exists(p):
return False
if os.path.isdir(p):
try:
return len(os.listdir(p)) >= j["done_min"]
except OSError:
return False
return True
def aggregate():
res = {}
for dk, (ds, proto, tot) in DSETS.items():
for N in NS:
for arm in ["real"] + BKS:
exp = f"p1_{arm}_{dk}_N{N}"
ious, dices = [], []
for S in SEEDS:
mp = mpath(exp, ds, proto, S)
if os.path.exists(mp):
try:
m = json.load(open(mp))["metrics"]
ious.append(m["iou_mean"]); dices.append(m["dice_mean"])
except Exception:
pass
if ious:
res[f"{dk}_N{N}_{arm}"] = {
"iou_mean": sum(ious) / len(ious), "dice_mean": sum(dices) / len(dices),
"n_seeds": len(ious), "iou_seeds": ious, "dice_seeds": dices}
json.dump(res, open(os.path.join(LOGD, "p1_results.json"), "w"), indent=2)
for jid, j in jobs.items():
if is_done(j):
j["state"] = "done"
def deps_done(j):
return all(jobs[d]["state"] == "done" for d in j["deps"])
running = {}
free = set(GPUS)
MAXTRIES = 2
log(f"START {len(jobs)} jobs on GPUs {GPUS} ({sum(1 for j in jobs.values() if j['state']=='done')} pre-done)")
last_summary = 0
while True:
if all(j["state"] in ("done", "failed") for j in jobs.values()):
break
for jid, j in jobs.items():
if not free:
break
if j["state"] == "pending" and deps_done(j):
if is_done(j):
j["state"] = "done"; continue
g = free.pop()
env = dict(os.environ, CUDA_DEVICE_ORDER="PCI_BUS_ID",
CUDA_VISIBLE_DEVICES=str(g), TORCHDYNAMO_DISABLE="1",
PYTHONPATH=".", OMP_NUM_THREADS="4")
lf = open(os.path.join(LOGD, jid + ".log"), "a")
p = subprocess.Popen(j["cmd"], shell=True, env=env, stdout=lf,
stderr=subprocess.STDOUT, cwd=ROOT)
running[g] = (jid, p, lf); j["state"] = "running"; j["gpu"] = g; j["tries"] += 1
log(f"LAUNCH {jid} GPU{g} try{j['tries']}")
for g, (jid, p, lf) in list(running.items()):
rc = p.poll()
if rc is None:
continue
lf.close(); del running[g]; free.add(g)
j = jobs[jid]
if is_done(j):
j["state"] = "done"; log(f"DONE {jid} rc={rc}")
elif j["tries"] < MAXTRIES:
j["state"] = "pending"; log(f"RETRY {jid} rc={rc}")
else:
j["state"] = "failed"; log(f"FAILED {jid} rc={rc}")
if time.time() - last_summary > 300:
cnt = {s: sum(1 for j in jobs.values() if j["state"] == s)
for s in ("done", "running", "pending", "failed")}
log(f"SUMMARY {cnt} | running={sorted(j['gpu'] for j in jobs.values() if j['state']=='running')}")
aggregate(); last_summary = time.time()
time.sleep(10)
aggregate()
log("ALL DONE")
print("P1_MASTER_DONE", flush=True)
|