| |
| """DeepH-E3 Hamiltonian training for diamond — with live monitoring. |
| |
| Uses our own 1_data_prepare data. Training runs continuously (no |
| chunking) to keep LR-scheduler state intact. Every CHECK_INTERVAL |
| epochs the val_loss is compared to reference milestones; if it lags |
| more than STALL_RATIO× the reference, training is stopped for |
| investigation. |
| |
| Usage: |
| python train_ham.py [params.json] # train on our data |
| python train_ham.py [params.json] --ref-graph # diagnostic: use reference graph PKL |
| |
| Reference milestones (from diamond-qe reference training): |
| Epoch 300: val_loss = 1.76e-05 LR = 2.00e-03 |
| Epoch 600: val_loss = 8.40e-06 LR = 2.00e-03 |
| Epoch 900: val_loss = 3.92e-06 LR = 1.00e-03 (first LR drop) |
| Epoch 1200: val_loss = 2.63e-06 LR = 2.50e-04 |
| Epoch 1500: val_loss = 2.40e-06 LR = 1.25e-04 |
| Epoch 1800: val_loss = 2.03e-06 LR = 3.13e-05 |
| Epoch 2017: val_loss = 1.98e-06 LR = 1.56e-05 (best model) |
| """ |
| import glob |
| import json |
| import os |
| import re |
| import subprocess |
| import sys |
| import time |
|
|
| SCRIPT_DIR = os.path.dirname(os.path.abspath(__file__)) |
| DATA_DIR = os.path.abspath( |
| os.path.join(SCRIPT_DIR, '..', '..', '1_data_prepare', 'data')) |
| PARAMS_DEFAULT = os.path.abspath( |
| os.path.join(SCRIPT_DIR, '..', '..', '1_data_prepare', 'params.json')) |
|
|
| DATASET_DIR = os.path.join(SCRIPT_DIR, 'dataset') |
| GRAPH_DIR = os.path.join(SCRIPT_DIR, '..', 'graph') |
| GRAPH_PKL = os.path.join(GRAPH_DIR, |
| 'HGraph-diamond_qe_e3-rFromDFT-edge=Aij.pkl') |
| REF_GRAPH_PKL = ( |
| '/home/apolyukhin/scripts/ml/diamond-qe/deeph-e3/graph/' |
| 'HGraph-diamond_qe_e3-rFromDFT-edge=Aij.pkl' |
| ) |
| RESULTS_DIR = os.path.join(SCRIPT_DIR, 'results') |
| INI_PATH = os.path.join(SCRIPT_DIR, 'train.ini') |
| LAUNCHER = os.path.join(SCRIPT_DIR, '_launcher.py') |
| TRAIN_LOG = os.path.join(SCRIPT_DIR, 'train.log') |
|
|
| |
| REF_MILESTONES = { |
| 300: 1.76e-5, |
| 600: 8.40e-6, |
| 900: 3.92e-6, |
| 1200: 2.63e-6, |
| 1500: 2.40e-6, |
| 1800: 2.03e-6, |
| } |
|
|
| CHECK_INTERVAL = 300 |
| STALL_RATIO = 5.0 |
| POLL_SECONDS = 30 |
|
|
|
|
| def load_params(path=None): |
| with open(path or PARAMS_DEFAULT) as f: |
| return json.load(f) |
|
|
|
|
| def build_dataset_links(): |
| """Create dataset/ with numbered dirs, each symlinking files from aohamiltonian/.""" |
| os.makedirs(DATASET_DIR, exist_ok=True) |
| disp_dirs = sorted(glob.glob(os.path.join(DATA_DIR, 'disp-*'))) |
| n = 0 |
| for disp_dir in disp_dirs: |
| ao_dir = os.path.abspath( |
| os.path.join(disp_dir, 'reconstruction', 'aohamiltonian')) |
| if not os.path.exists(os.path.join(ao_dir, 'hamiltonians.h5')): |
| print(f' WARNING: no hamiltonians.h5 in {ao_dir}, skipping') |
| continue |
| dest = os.path.join(DATASET_DIR, f'{n:02d}') |
| os.makedirs(dest, exist_ok=True) |
| for fname in os.listdir(ao_dir): |
| link = os.path.join(dest, fname) |
| if not os.path.exists(link): |
| os.symlink(os.path.join(ao_dir, fname), link) |
| n += 1 |
| print(f' {n} dataset dirs ready in {DATASET_DIR}') |
| return n |
|
|
|
|
| def write_train_ini(params, use_ref_graph=False, num_epoch=None, results_dir=None): |
| """Write train.ini with reference hyperparameters and our own data.""" |
| t = params.get('hamiltonian', {}) |
| save_dir = results_dir or RESULTS_DIR |
|
|
| if use_ref_graph: |
| graph_dir_val = REF_GRAPH_PKL |
| processed_data_val = '' |
| save_graph_val = '' |
| print(f' Using REFERENCE graph PKL: {graph_dir_val}') |
| elif os.path.exists(GRAPH_PKL): |
| graph_dir_val = os.path.abspath(GRAPH_PKL) |
| processed_data_val = '' |
| save_graph_val = '' |
| print(f' Using cached graph: {graph_dir_val}') |
| else: |
| graph_dir_val = '' |
| processed_data_val = DATASET_DIR |
| save_graph_val = os.path.abspath(GRAPH_DIR) |
| print(f' Graph not found — will build from {DATASET_DIR}') |
|
|
| ini = f"""; DeepH-E3 training config — generated by train_ham.py |
| |
| [basic] |
| device = {t.get('device', 'cuda')} |
| dtype = float |
| save_dir = {save_dir} |
| additional_folder_name = diamond_e3 |
| simplified_output = False |
| seed = 42 |
| checkpoint_dir = |
| use_new_hypp = True |
| |
| [data] |
| graph_dir = {graph_dir_val} |
| DFT_data_dir = |
| processed_data_dir = {processed_data_val} |
| save_graph_dir = {save_graph_val} |
| target_data = hamiltonian |
| dataset_name = diamond_qe_e3 |
| get_overlap = False |
| |
| [train] |
| num_epoch = {num_epoch or t.get('num_epoch', 3000)} |
| batch_size = 1 |
| extra_validation = [] |
| extra_val_test_only = True |
| |
| train_size = {t.get('train_size', 30)} |
| val_size = {t.get('val_size', 10)} |
| test_size = 10 |
| |
| min_lr = 1e-5 |
| |
| [hyperparameters] |
| learning_rate = {t.get('learning_rate', 0.002)} |
| Adam_betas = (0.9, 0.999) |
| scheduler_type = 1 |
| scheduler_params = (factor=0.5, cooldown=40, patience=120, threshold=0.05) |
| revert_decay_patience = 20 |
| revert_decay_rate = 0.8 |
| |
| [target] |
| target = hamiltonian |
| target_blocks_type = all |
| target_blocks = |
| selected_element_pairs = |
| convert_net_out = False |
| |
| [network] |
| cutoff_radius = {t.get('cutoff_radius', 7.4)} |
| only_ij = False |
| spherical_harmonics_lmax = {t.get('lmax', 4)} |
| spherical_basis_irreps = |
| irreps_embed = {t.get('irreps_embed', '64x0e')} |
| irreps_mid = {t.get('irreps_mid', '64x0e+32x1o+16x2e+8x3o+8x4e')} |
| num_blocks = {t.get('num_blocks', 3)} |
| ignore_parity = False |
| |
| irreps_embed_node = |
| irreps_edge_init = |
| irreps_mid_node = |
| irreps_post_node = |
| irreps_out_node = |
| irreps_mid_edge = |
| irreps_post_edge = |
| out_irreps = |
| """ |
| with open(INI_PATH, 'w') as f: |
| f.write(ini) |
| print(f' Written {INI_PATH}') |
|
|
|
|
| def write_launcher(params): |
| t = params.get('hamiltonian', {}) |
| deeph_e3_dir = t.get('deeph_e3_dir', '/home/apolyukhin/Development/DeepH-E3') |
| with open(LAUNCHER, 'w') as f: |
| f.write(f"""import sys, torch |
| torch.serialization.add_safe_globals([slice]) |
| try: |
| from torch_geometric.data.data import DataEdgeAttr, DataTensorAttr |
| from torch_geometric.data.storage import GlobalStorage |
| torch.serialization.add_safe_globals([DataEdgeAttr, DataTensorAttr, GlobalStorage]) |
| except ImportError: |
| pass |
| sys.path.insert(0, '{deeph_e3_dir}') |
| from deephe3 import DeepHE3Kernel |
| kernel = DeepHE3Kernel() |
| kernel.train('{INI_PATH}') |
| """) |
|
|
|
|
| def parse_train_log(log_path): |
| """Return {epoch: val_loss} from training log.""" |
| result = {} |
| try: |
| with open(log_path) as f: |
| for line in f: |
| m = re.search(r'Epoch #(\d+)\s+\|.*Val loss:\s+([\d.e+\-]+)', line) |
| if m: |
| result[int(m.group(1))] = float(m.group(2)) |
| except (FileNotFoundError, OSError): |
| pass |
| return result |
|
|
|
|
| def monitor_loop(proc, log_path=None): |
| """Poll log every POLL_SECONDS; report at CHECK_INTERVAL boundaries. |
| |
| Returns True if stall was detected (proc already terminated), else False. |
| """ |
| log_path = log_path or TRAIN_LOG |
| last_reported = 0 |
|
|
| while proc.poll() is None: |
| time.sleep(POLL_SECONDS) |
| history = parse_train_log(log_path) |
| if not history: |
| continue |
|
|
| latest = max(history) |
| boundary = (latest // CHECK_INTERVAL) * CHECK_INTERVAL |
| if boundary > last_reported and boundary > 0: |
| last_reported = boundary |
| |
| window = {ep: v for ep, v in history.items() if ep <= boundary + 20} |
| if not window: |
| continue |
| val = min(window.values()) |
| ref = REF_MILESTONES.get(boundary) |
| if ref: |
| ratio = val / ref |
| flag = 'OK' if ratio < STALL_RATIO else 'STALLED' |
| print(f' [epoch ~{boundary:4d}] val={val:.3e} ' |
| f'ref={ref:.3e} ratio={ratio:.1f}x [{flag}]', |
| flush=True) |
| if ratio > STALL_RATIO: |
| print(f'\nStall detected ({ratio:.1f}x above reference). ' |
| f'Terminating training.') |
| proc.terminate() |
| return True |
| else: |
| print(f' [epoch ~{boundary:4d}] val={val:.3e}', flush=True) |
|
|
| return False |
|
|
|
|
| def main(): |
| use_ref_graph = '--ref-graph' in sys.argv |
| params_path = next((a for a in sys.argv[1:] if not a.startswith('--')), None) |
| params = load_params(params_path) |
|
|
| t = params.get('hamiltonian', {}) |
| conda_env = t.get('conda_env', 'deeph') |
| conda_base = params['paths']['conda_base'] |
|
|
| |
| if use_ref_graph: |
| results_dir = os.path.join(SCRIPT_DIR, 'results_ref') |
| train_log = os.path.join(SCRIPT_DIR, 'train_ref.log') |
| num_epoch = 500 |
| if not os.path.exists(REF_GRAPH_PKL): |
| print(f'ERROR: Reference graph not found:\n {REF_GRAPH_PKL}') |
| sys.exit(1) |
| print('=== DIAGNOSTIC: using reference graph PKL (500 epochs) ===') |
| else: |
| results_dir = RESULTS_DIR |
| train_log = TRAIN_LOG |
| num_epoch = None |
|
|
| os.makedirs(results_dir, exist_ok=True) |
| os.makedirs(os.path.abspath(GRAPH_DIR), exist_ok=True) |
|
|
| |
| if not use_ref_graph and not os.path.exists(GRAPH_PKL): |
| print('Step 1: Building dataset symlinks...') |
| n = build_dataset_links() |
| if n == 0: |
| print('ERROR: No aohamiltonian data found. Run reconstruct.py first.') |
| sys.exit(1) |
| else: |
| print('Step 1: Skipped (graph PKL available).') |
|
|
| print('Step 2: Writing train.ini...') |
| write_train_ini(params, use_ref_graph=use_ref_graph, |
| num_epoch=num_epoch, results_dir=results_dir) |
| write_launcher(params) |
|
|
| print('\nReference milestones:') |
| for ep, vl in sorted(REF_MILESTONES.items()): |
| print(f' Epoch {ep:5d}: val_loss = {vl:.2e}') |
| print(f'\nStall threshold : {STALL_RATIO}× reference') |
| print(f'Training log : {train_log}') |
| print(f'Conda env : {conda_env}') |
| print(f'\nStep 3: Launching training...\n', flush=True) |
|
|
| activate = (f'source {conda_base}/etc/profile.d/conda.sh' |
| f' && conda activate {conda_env}') |
|
|
| with open(train_log, 'w') as log_f: |
| proc = subprocess.Popen( |
| ['bash', '-c', f'{activate} && python {LAUNCHER}'], |
| stdout=log_f, |
| stderr=subprocess.STDOUT, |
| ) |
|
|
| try: |
| stalled = monitor_loop(proc, train_log) |
| except KeyboardInterrupt: |
| print('\nInterrupted — stopping training.') |
| proc.terminate() |
| stalled = False |
|
|
| rc = proc.wait() |
|
|
| |
| history = parse_train_log(train_log) |
| if history: |
| best_ep = min(history, key=history.get) |
| best_val = history[best_ep] |
| last_ep = max(history) |
| last_val = history[last_ep] |
| print(f'\nTraining finished (exit code {rc}).') |
| print(f' Last epoch {last_ep:5d}: val_loss = {last_val:.3e}') |
| print(f' Best epoch {best_ep:5d}: val_loss = {best_val:.3e}') |
| print(f' Reference best (epoch 2017): 1.98e-06') |
| print(f' Ratio to reference best: {best_val / 1.98e-6:.2f}×') |
| else: |
| print(f'\nTraining finished (exit code {rc}). No log data parsed.') |
|
|
| if stalled: |
| print('\nInvestigation hints:') |
| print(' - Check train.log for LR at stall point.') |
| print(' - If val_loss is flat, verify data matches reference:') |
| print(' diff sizes: ls -lh 1_data_prepare/data/disp-01/' |
| 'reconstruction/aohamiltonian/hamiltonians.h5') |
| print(' vs reference: /home/apolyukhin/scripts/ml/diamond-qe/' |
| 'disp-01/reconstruction/aohamiltonian/hamiltonians.h5') |
|
|
|
|
| if __name__ == '__main__': |
| main() |
|
|