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Diagnostic: load trained checkpoint, run forward on a few batches,
print expression vs latent prediction MSE and velocity distributions.
Uses synthetic latent features (same distribution as normalized scGPT features)
to avoid loading the 44GB cache file.
Usage (login node, CPU):
cd /home/hp250092/ku50001222/qian/aivc/lfj/transfer/code/CCFM
python scripts/diagnose_trained_model.py
"""
import sys
import os
_PROJECT_ROOT = os.path.dirname(os.path.dirname(os.path.abspath(__file__)))
sys.path.insert(0, _PROJECT_ROOT)
import _bootstrap_scdfm # noqa: F401
import torch
import numpy as np
from torch.utils.data import DataLoader
from src.data.data import get_data_classes
from src._scdfm_imports import AffineProbPath, CondOTScheduler, process_vocab
from src.utils import GeneVocab
from src.model.model import CascadedFlowModel
_REPO_ROOT = os.path.dirname(_PROJECT_ROOT)
def describe(name, t):
t_flat = t.float().flatten()
print(f" {name:35s} | mean={t_flat.mean():.4f} std={t_flat.std():.4f} "
f"min={t_flat.min():.4f} max={t_flat.max():.4f} median={t_flat.median():.4f}")
def main():
device = torch.device("cpu")
data_name = "norman"
n_top_genes = 5000
infer_top_gene = 1000
batch_size = 48
scgpt_dim = 512
ckpt_path = os.path.join(
_PROJECT_ROOT,
"result/ccfm-norman-f1-topk30-negTrue-d128-lr5e-05-lw1.0-lp0.4-ema0.9999-ln-wu2000-rk4-online",
"iteration_100000/checkpoint.pt",
)
# --- Load data ---
Data, PerturbationDataset, TrainSampler, TestDataset = get_data_classes()
scdfm_data_path = os.path.join(_REPO_ROOT, "scDFM", "data")
data_manager = Data(scdfm_data_path)
data_manager.load_data(data_name)
if "gene_name" in data_manager.adata.var.columns and data_manager.adata.var_names[0].startswith("ENSG"):
data_manager.adata.var_names = data_manager.adata.var["gene_name"].values
data_manager.adata.var_names_make_unique()
data_manager.process_data(
n_top_genes=n_top_genes, split_method="additive",
fold=1, use_negative_edge=True, k=30,
)
train_sampler, _, _ = data_manager.load_flow_data(batch_size=batch_size)
train_dataset = PerturbationDataset(train_sampler, batch_size)
dataloader = DataLoader(train_dataset, batch_size=1, shuffle=False, num_workers=0)
# --- Vocab ---
orig_cwd = os.getcwd()
os.chdir(os.path.join(_REPO_ROOT, "scDFM"))
_fc = type("_FakeConfig", (), {
"perturbation_function": "crisper",
"data_name": data_name,
"n_top_genes": n_top_genes,
})()
vocab = process_vocab(data_manager, _fc)
os.chdir(orig_cwd)
gene_ids = vocab.encode(list(data_manager.adata.var_names))
gene_ids = torch.tensor(gene_ids, dtype=torch.long, device=device)
# --- Build mask path ---
mask_path = os.path.join(
data_manager.data_path, data_manager.data_name,
"mask_fold_1topk_30additive_negative_edge.pt",
)
# --- Load model ---
model = CascadedFlowModel(
ntoken=len(vocab), d_model=128, nhead=8, d_hid=512, nlayers=4,
fusion_method="differential_perceiver",
perturbation_function="crisper",
mask_path=mask_path,
scgpt_dim=scgpt_dim, bottleneck_dim=128, dh_depth=2,
)
ckpt = torch.load(ckpt_path, map_location="cpu")
model.load_state_dict(ckpt["model_state_dict"])
model.eval()
print(f"Loaded checkpoint: {ckpt_path}")
print(f" iteration: {ckpt.get('iteration', '?')}")
# --- Flow path ---
flow_path = AffineProbPath(scheduler=CondOTScheduler())
inverse_dict = {v: str(k) for k, v in data_manager.perturbation_dict.items()}
# --- Run batches ---
n_batches = 5
all_mse_expr = []
all_mse_latent = []
print(f"\n{'='*90}")
print(f"Running {n_batches} batches with trained model")
print(f"Note: using synthetic latent (N(0,1.1)) to match normalized scGPT distribution")
print(f"{'='*90}")
for i, batch_data in enumerate(dataloader):
if i >= n_batches:
break
source = batch_data["src_cell_data"].squeeze(0)
target = batch_data["tgt_cell_data"].squeeze(0)
# Perturbation ID
perturbation_id = batch_data["condition_id"].squeeze(0).to(device)
perturbation_name = [
inverse_dict[int(p_id)] for p_id in perturbation_id[0].cpu().numpy()
]
perturbation_id = torch.tensor(
vocab.encode(perturbation_name), dtype=torch.long, device=device
)
perturbation_id = perturbation_id.repeat(source.shape[0], 1)
# Gene subset
input_gene_ids = torch.randperm(source.shape[-1])[:infer_top_gene]
source_sub = source[:, input_gene_ids]
target_sub = target[:, input_gene_ids]
gene_input = gene_ids[input_gene_ids].unsqueeze(0).expand(source.shape[0], -1)
B = source_sub.shape[0]
# Synthetic latent target (matches normalized scGPT: ~N(0, 1.1))
z_target = torch.randn(B, infer_top_gene, scgpt_dim) * 1.1
# Sample time steps (logit-normal)
t = torch.sigmoid(torch.randn(B))
# Expression flow path
noise_expr = torch.randn_like(source_sub)
path_expr = flow_path.sample(t=t, x_0=noise_expr, x_1=target_sub)
# Latent flow path
noise_latent = torch.randn_like(z_target)
z_target_flat = z_target.reshape(B, -1)
noise_latent_flat = noise_latent.reshape(B, -1)
path_latent_flat = flow_path.sample(t=t, x_0=noise_latent_flat, x_1=z_target_flat)
z_t = path_latent_flat.x_t.reshape(B, infer_top_gene, scgpt_dim)
dx_t_latent = path_latent_flat.dx_t.reshape(B, infer_top_gene, scgpt_dim)
# Model forward
with torch.no_grad():
pred_v_expr, pred_v_latent = model(
gene_input, source_sub, path_expr.x_t, z_t,
t, t, perturbation_id,
)
# Compute errors
err_expr = (pred_v_expr - path_expr.dx_t) ** 2
err_latent = (pred_v_latent - dx_t_latent) ** 2
mse_expr = err_expr.mean().item()
mse_latent = err_latent.mean().item()
all_mse_expr.append(mse_expr)
all_mse_latent.append(mse_latent)
print(f"\n--- Batch {i} ---")
print(f"[Velocity Targets]")
describe("dx_t_expr (ground truth)", path_expr.dx_t)
describe("dx_t_latent (ground truth)", dx_t_latent)
print(f"[Model Predictions]")
describe("pred_v_expr", pred_v_expr)
describe("pred_v_latent", pred_v_latent)
print(f"[Prediction Error]")
describe("error_expr (pred - gt)^2", err_expr)
describe("error_latent (pred - gt)^2", err_latent)
print(f"[MSE Summary]")
print(f" MSE_expr = {mse_expr:.4f}")
print(f" MSE_latent = {mse_latent:.4f}")
print(f" ratio expr/latent = {mse_expr / max(mse_latent, 1e-8):.2f}x")
# --- Overall summary ---
avg_expr = np.mean(all_mse_expr)
avg_latent = np.mean(all_mse_latent)
print(f"\n{'='*90}")
print(f"OVERALL AVERAGE ({n_batches} batches):")
print(f" avg MSE_expr = {avg_expr:.4f}")
print(f" avg MSE_latent = {avg_latent:.4f}")
print(f" ratio expr/latent = {avg_expr / max(avg_latent, 1e-8):.2f}x")
print(f"{'='*90}")
if __name__ == "__main__":
main()
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