import os, sys, subprocess work_dir = "/work/output-SpecializedModels/c19/tabsyn/tabsyn-c19-20260426_203054" dataname = "tabsyn_c19" tabsyn_root = "/workspace/tabsyn" assert os.path.exists(tabsyn_root), f"TabSyn source not mounted: {tabsyn_root}" old = os.environ.get("PYTHONPATH", "") os.environ["PYTHONPATH"] = tabsyn_root + (os.pathsep + old if old else "") sys.path.insert(0, tabsyn_root) os.chdir(tabsyn_root) # Symlink data dir into TabSyn data/ data_link = os.path.join(tabsyn_root, "data", dataname) data_src = os.path.join(work_dir, "data", dataname) os.makedirs(os.path.join(tabsyn_root, "data"), exist_ok=True) if os.path.exists(data_link): os.remove(data_link) os.symlink(data_src, data_link) env = os.environ.copy() env.setdefault("TABSYN_RESUME", "1") env.setdefault("TABSYN_VAE_BATCH_SIZE", "1024") _te = 1000 if _te is not None: env["TABSYN_VAE_EPOCHS"] = str(_te) env["TABSYN_DIFFUSION_MAX_EPOCHS"] = str(max(_te + 1, 2)) # Data preprocessing is done on the host side (_prepare_data_dir) # which creates .npy files, train/test CSVs, and info.json # Step 1: Train VAE (produces latent embeddings) print(f"[TabSyn] Step 1/2: Training VAE in {tabsyn_root}, dataname={dataname}") ret = subprocess.run( [sys.executable, "main.py", "--dataname", dataname, "--mode", "train", "--method", "vae", "--gpu", "0"], cwd=tabsyn_root, env=env ) if ret.returncode != 0: print("[TabSyn] VAE training failed") sys.exit(ret.returncode) # Step 2: Train diffusion model on latent space print(f"[TabSyn] Step 2/2: Training diffusion model") ret = subprocess.run( [sys.executable, "main.py", "--dataname", dataname, "--mode", "train", "--method", "tabsyn", "--gpu", "0"], cwd=tabsyn_root, env=env ) if ret.returncode != 0: print("[TabSyn] Diffusion training failed") sys.exit(ret.returncode) print("[TabSyn] Training complete (VAE + Diffusion)")