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import json
import time
import argparse
from functools import partial
import tqdm
import numpy as np
import scipy
import pandas as pd
import torch
from torch.utils.data import DataLoader, Subset
import cupy as cp
import pyscf
import pyscf.df
from gto import GTOBasis, element_to_atomic_number, GTOProductBasisHelper, build_irreps_from_mol, pyscf_to_standard_perm_D
from dataset import SCFBenchDataset
from nequip_model import nequip_simple_builder
def move_data_to_device(data, device):
def move(x):
if isinstance(x, torch.Tensor):
return x.to(device)
elif isinstance(x, dict):
return {k: move(v) for k, v in x.items()}
else:
return x
return move(data)
def run_scf_and_count_steps(mol, xc, dm0=None, verbose=False, with_df=False, with_df_basis='def2-svp-jkfit'):
t_start = time.time()
mf = mol.RKS(xc=xc)
if with_df:
mf = mf.density_fit(auxbasis=with_df_basis)
mf = mf.to_gpu()
if verbose:
mf.verbose = 4
else:
mf.verbose = 0
mf.scf(dm0=dm0)
steps = mf.cycles if mf.converged else -1
e_tot = mf.e_tot
return e_tot, steps, time.time() - t_start
def transfer_fock(mol, transfer_mol, fock):
S_cross = pyscf.gto.mole.intor_cross('int1e_ovlp', mol, transfer_mol)
S1 = mol.intor('int1e_ovlp')
C = scipy.linalg.solve(S1, S_cross)
transfer_fock = C.T.dot(fock).dot(C)
return transfer_fock
def dm_from_fock(mol, overlap, fock):
# from QHNet
overlap = torch.tensor(overlap)
fock = torch.tensor(fock)
eigvals, eigvecs = torch.linalg.eigh(overlap)
eps = 1e-8 * torch.ones_like(eigvals)
eigvals = torch.where(eigvals > 1e-8, eigvals, eps)
frac_overlap = eigvecs / torch.sqrt(eigvals).unsqueeze(-2)
Fs = torch.mm(torch.mm(frac_overlap.transpose(-1, -2), fock), frac_overlap)
orbital_energies, orbital_coefficients = torch.linalg.eigh(Fs)
orbital_coefficients = torch.mm(frac_overlap, orbital_coefficients)
num_orb = mol.nelectron // 2
orbital_coefficients = orbital_coefficients.squeeze()
dm0 = orbital_coefficients[:, :num_orb].matmul(orbital_coefficients[:, :num_orb].T) * 2
dm0 = dm0.cpu().numpy()
return dm0
def dm_from_auxdensity(mol, auxmol, xc, aux_vec, normalize_nelec, transfer_mol=None):
import numpy
import cupy
from pyscf import lib
import gpu4pyscf.scf.jk
from gpu4pyscf.df.int3c2e_bdiv import Int3c2eOpt
from gpu4pyscf.lib.cupy_helper import contract
from gpu4pyscf.dft.numint import NumInt, add_sparse, _tau_dot, _scale_ao, _GDFTOpt
from gpu4pyscf.dft import Grids
from gpu4pyscf.lib.cupy_helper import transpose_sum
def nr_rks(xctype, mol, xc_code, auxmol, aux_vec):
# xctype = ni._xc_type(xc_code)
if xctype == 'LDA':
ao_deriv = 0
else:
ao_deriv = 1
comp = (ao_deriv+1)*(ao_deriv+2)*(ao_deriv+3)//6
grids = Grids(mol).build()
ngrids = grids.weights.size
rho = cupy.zeros((comp, ngrids))
aux_ni = NumInt().build(auxmol, grids)
naux = aux_ni.gdftopt._sorted_mol.nao
_sorted_aux_vec = aux_ni.gdftopt.sort_orbitals(aux_vec, axis=[0])
p0 = p1 = 0
for aux_ao_on_grids, idx, weight, _ in aux_ni.block_loop(aux_ni.gdftopt._sorted_mol, grids, naux, ao_deriv):
p0, p1 = p1, p1 + weight.size
rho[:,p0:p1] = (contract('xig,i->xg', aux_ao_on_grids, _sorted_aux_vec[idx]))
del aux_ao_on_grids, _sorted_aux_vec
grids = Grids(mol).build()
ni = NumInt().build(mol, grids)
if xctype == 'MGGA':
rho = cupy.vstack([rho, (rho[1:4]**2).sum(axis=0)/rho[0]/8])
weights = cupy.asarray(grids.weights)
nelec = rho[0].dot(weights)
exc, vxc = ni.eval_xc_eff(xc_code, rho, deriv=1, xctype=xctype)[:2]
vxc = cupy.asarray(vxc, order='C')
exc = cupy.asarray(exc, order='C')
excsum = float(cupy.dot(rho[0]*weights, exc[:,0]))
wv = vxc
wv *= weights
if xctype == 'GGA':
wv[0] *= .5
if xctype == 'MGGA':
wv[[0,4]] *= .5
opt = ni.gdftopt
_sorted_mol = opt._sorted_mol
nao = _sorted_mol.nao
buf = None
vtmp_buf = cupy.empty(nao*nao)
vmat = cupy.zeros((nao, nao))
p0 = p1 = 0
for ao_mask, idx, weight, _ in ni.block_loop(
_sorted_mol, grids, nao, ao_deriv, max_memory=None):
p0, p1 = p1, p1 + weight.size
nao_sub = len(idx)
vtmp = cupy.ndarray((nao_sub, nao_sub), memptr=vtmp_buf.data)
if xctype == 'LDA':
aow = _scale_ao(ao_mask, wv[0,p0:p1], out=buf)
add_sparse(vmat, ao_mask.dot(aow.T, out=vtmp), idx)
elif xctype == 'GGA':
aow = _scale_ao(ao_mask, wv[:,p0:p1], out=buf)
add_sparse(vmat, ao_mask[0].dot(aow.T, out=vtmp), idx)
elif xctype == 'MGGA':
vtmp = _tau_dot(ao_mask, ao_mask, wv[4,p0:p1], buf=buf, out=vtmp)
aow = _scale_ao(ao_mask, wv[:4,p0:p1], out=buf)
vtmp = contract('ig,jg->ij', ao_mask[0], aow, beta=1., out=vtmp)
add_sparse(vmat, vtmp, idx)
vmat = opt.unsort_orbitals(vmat, axis=[0,1])
if xctype != 'LDA':
transpose_sum(vmat)
return nelec, excsum, vmat
def get_j(mol, auxmol, aux_vec):
int3c2e_opt = Int3c2eOpt(mol, auxmol).build()
aux_vec_sorted = cupy.asarray(int3c2e_opt.aux_coeff).dot(cupy.asarray(aux_vec))
p1 = 0
J_compressed = 0
for eri3c in int3c2e_opt.int3c2e_bdiv_generator(batch_size=1200):
p0, p1 = p1, p1 + eri3c.shape[1]
J_compressed += eri3c.dot(aux_vec_sorted[p0:p1])
nao = int3c2e_opt.sorted_mol.nao
J = cupy.zeros((nao, nao))
ao_pair_mapping = int3c2e_opt.create_ao_pair_mapping()
rows, cols = divmod(cupy.asarray(ao_pair_mapping), nao)
J[rows, cols] = J[cols, rows] = J_compressed
c = cupy.asarray(int3c2e_opt.coeff)
return c.T.dot(J).dot(c)
def get_jk(mol, dm, auxmol, aux_vec):
vj = get_j(mol, auxmol, aux_vec)
_, vk = gpu4pyscf.scf.jk.get_jk(mol, dm, 1, with_j=False)
return vj, vk
def get_veff(ks, auxmol, aux_vec, dm, mol=None, hermi=1):
time_stats = {}
if mol is None: mol = ks.mol
ni = ks._numint
if hermi == 2: # because rho = 0
n, exc, vxc = 0, 0, 0
else:
# no memory check
# max_memory = ks.max_memory - lib.current_memory()[0]
t_start = time.time()
n, exc, vxc = nr_rks(ni._xc_type(ks.xc), mol, ks.xc, auxmol, aux_vec)
time_stats['grid_eval_time'] = time.time() - t_start
if ks.do_nlc():
raise NotImplementedError
if not ni.libxc.is_hybrid_xc(ks.xc):
t_start = time.time()
vj = get_j(mol, auxmol, aux_vec)
time_stats['get_j_time'] = time.time() - t_start
vxc += vj
else:
omega, alpha, hyb = ni.rsh_and_hybrid_coeff(ks.xc, spin=mol.spin)
if omega == 0:
vj, vk = get_jk(mol, dm, auxmol, aux_vec)
vk *= hyb
else:
raise NotImplementedError
vxc += vj - vk * .5
return vxc, time_stats
def int1e1c_analytical(mol):
"""
Calculate integral values
.. math:: \int_{-\infty}^{\infty} phi(r) dr
"""
integral_val = []
for idx, aug_mom in enumerate(mol._bas[:, 1]):
if aug_mom == 0:
exponents = mol.bas_exp(idx)
norm = (2 * exponents / numpy.pi)**0.75
coeffs = mol.bas_ctr_coeff(idx)[:, 0]
integral_val.append(
(coeffs * norm * (numpy.pi / exponents)**1.5).sum())
else:
integral_val += [0] * (2*aug_mom+1)
integral_val = numpy.array(integral_val)
return integral_val
extra_stats = {}
if normalize_nelec:
aux_1c1e = cp.array(int1e1c_analytical(auxmol))
aux_vec_nelec = aux_vec @ aux_1c1e
aux_vec *= mol.nelectron / aux_vec_nelec
extra_stats['aux_vec_nelec'] = aux_vec_nelec.get().item()
mf = mol.RKS(xc=xc).to_gpu()
dm_guess = 0
if mf._numint.libxc.is_hybrid_xc(mf.xc):
dm_guess = mf.get_init_guess()
fock, veff_time_stats = get_veff(mf, auxmol, aux_vec, dm_guess)
fock = fock + mf.get_hcore()
extra_stats.update(veff_time_stats)
if transfer_mol is not None:
fock = cupy.array(transfer_fock(mol, transfer_mol, fock.get()))
mol = transfer_mol
t_start = time.time()
s1e = mol.intor('int1e_ovlp')
mo_energy, mo_coeff = gpu4pyscf.lib.cupy_helper.eigh(cupy.array(fock), cupy.array(s1e))
extra_stats['eigh_time'] = time.time() - t_start
nocc = mol.nelectron // 2
mocc = mo_coeff[:,:nocc]
dm0 = mocc.dot(mocc.conj().T) * 2
dm0_numpy = dm0.get()
return dm0_numpy, extra_stats
def build_mol_from_data(type_names, aobasis_name, data):
nuclei = [element_to_atomic_number[type_names[z]] for z in data['z'].cpu().numpy()]
coords = data['pos'].cpu().numpy()
mol = pyscf.M(atom=list(zip(nuclei, coords)), basis=aobasis_name)
return mol
def pred_auxdensity_postprocess(mol, outputs, auxbasis_name, auxbasis, xc, use_denfit_ovlp, normalize_nelec, transfer_mol=None):
t0 = time.time()
preds = outputs['output:auxdensity']
if auxbasis_name.startswith('etb:'):
beta = float(auxbasis_name.split(':')[-1])
etb_basis = pyscf.df.aug_etb(mol, beta)
auxmol = pyscf.df.make_auxmol(mol, auxbasis=etb_basis)
else:
auxmol = pyscf.df.make_auxmol(mol, auxbasis=auxbasis_name)
atom_count_by_elements = {k: 0 for k in preds.keys()}
atom_vecs = []
for iatm in range(mol.natm):
symbol = mol.atom_pure_symbol(iatm)
atom_vecs.append(preds[symbol][atom_count_by_elements[symbol]])
atom_count_by_elements[symbol] += 1
aux_vec = torch.cat(atom_vecs)
mol_irreps = build_irreps_from_mol(auxmol)
aux_vec = pyscf_to_standard_perm_D(mol_irreps).T.to(aux_vec) @ aux_vec
aux_vec = aux_vec.cpu().numpy()
if use_denfit_ovlp:
aux_vec = np.linalg.solve(auxmol.intor('int1e_ovlp'), aux_vec)
t1 = time.time()
# dm = dm_from_auxdensity(mol, auxmol, xc, aux_vec, normalize_nelec, transfer_mol)
dm, time_stats = dm_from_auxdensity(mol, auxmol, xc, cp.array(aux_vec), normalize_nelec, transfer_mol)
time_stats['model_to_auxvec_time'] = t1 - t0
return dm, time_stats
def pred_fock_postprocess(mol, outputs, ao_prod_basis, normalize_nelec, transfer_mol=None):
fock = ao_prod_basis.assemble_matrix_from_padded_blocks(mol.atom_charges(), outputs['output:fock_diag_blocks'].cpu().numpy(), outputs['output:fock_tril_blocks'].cpu().numpy())
fock = ao_prod_basis.transform_from_std_to_pyscf(mol.atom_charges(), fock)
if transfer_mol is None:
overlap = mol.intor('int1e_ovlp').astype(np.float32)
dm = dm_from_fock(mol, overlap, fock)
else:
overlap = transfer_mol.intor('int1e_ovlp')
transfer_fock = transfer_fock(mol, transfer_mol, fock)
dm = dm_from_fock(transfer_mol, overlap, transfer_fock)
if normalize_nelec:
dm *= mol.nelectron / (dm * overlap).sum()
return dm, {}
def pred_dm_postprocess(mol, outputs, ao_prod_basis, normalize_nelec, transfer_mol=None):
dm = ao_prod_basis.assemble_matrix_from_padded_blocks(mol.atom_charges(), outputs['output:dm_diag_blocks'].cpu().numpy(), outputs['output:dm_tril_blocks'].cpu().numpy())
dm = ao_prod_basis.transform_from_std_to_pyscf(mol.atom_charges(), dm)
if normalize_nelec:
overlap = mol.intor('int1e_ovlp').astype(np.float32)
dm *= mol.nelectron / (dm * overlap).sum()
if transfer_mol is not None:
raise NotImplementedError
return dm, {}
def main():
parser = argparse.ArgumentParser()
parser.add_argument('--ckpt', type=str, help='Path to the checkpoint file')
parser.add_argument('--gt-mode', action='store_true', help='Use ground truth as initial guess.')
parser.add_argument('--data-root', default='./dataset/ood-test', type=str, help='Path to the data root directory')
parser.add_argument('--model-type', default='auxdensity', type=str, choices=['auxdensity', 'dm', 'fock'], help='Prediction type of the model')
parser.add_argument('--xc', default='PBE', type=str, help='XC functional')
parser.add_argument('--transfer-basis', default=None, type=str, help='Basis set to which the model prediction is transferred to.')
parser.add_argument('--with-df', action='store_true', help='Use density fitting for SCF.')
parser.add_argument('--with-df-basis', default='def2-svp-jkfit', help='The basis set for density fitting in SCF.')
parser.add_argument('--output', required=True, type=str, help='Path to the output CSV file')
parser.add_argument('--num-shards', type=int, default=1, help='Number of shards')
parser.add_argument('--shard-index', default=0, type=int, help='Shard index')
parser.add_argument('--scf-verbose', action='store_true', help='Print SCF verbose information')
parser.add_argument('--split', default='no', type=str, choices=['train', 'val', 'test', 'no'], help='Split of the dataset')
parser.add_argument('--normalize-nelec', action='store_true', help='Normalize the model prediction by number of electrons.')
args = parser.parse_args()
if args.ckpt is not None:
# if a ckpt is provided, use the data config in the ckpt
ckpt = torch.load(args.ckpt, map_location='cpu', weights_only=True)
config = ckpt['config']
data_config = config['data']
if not args.gt_mode:
model = nequip_simple_builder(**config['model'])
model.load_state_dict(ckpt['state_dict'])
model = model.eval().cuda()
else:
assert args.gt_mode, 'Checkpoint path is required in non-gt mode.'
gt_mode_part = 'auxdensity.denfit' if args.model_type == 'auxdensity' else args.model_type
data_config = {
'r_max': 5.0,
'type_names': ['H', 'C', 'N', 'O', 'F', 'P', 'S'],
'remove_self_loops': True,
'parts_to_load': ['base', gt_mode_part],
'aobasis': 'def2-svp',
'auxbasis': 'def2-universal-jfit',
'use_denfit_ovlp': False,
}
dataset = SCFBenchDataset(data_root=args.data_root, **data_config)
if args.split != 'no':
print(f'Assuming the dataset is SCFbench-main and using indices from scfbench_main_split.npz for split {args.split}...')
split_file = np.load('./scfbench_main_split.npz')
dataset_indices = split_file[args.split].tolist()
else:
dataset_indices = list(range(len(dataset)))
dataset_subset_indices = [j for i, j in enumerate(dataset_indices) if i % args.num_shards == args.shard_index]
dataloader = DataLoader(
Subset(dataset, dataset_subset_indices),
batch_size=1,
shuffle=False,
num_workers=2,
collate_fn=dataset.collater,
)
aobasis_name, auxbasis_name = data_config['aobasis'], data_config['auxbasis']
aobasis = GTOBasis.from_basis_name(aobasis_name, elements=data_config['type_names'])
auxbasis = GTOBasis.from_basis_name(auxbasis_name, elements=data_config['type_names'])
ao_prod_basis = GTOProductBasisHelper(aobasis)
use_denfit_ovlp = data_config.get('use_denfit_ovlp', False)
records = []
for data in tqdm.tqdm(dataloader):
data = move_data_to_device(data, 'cuda')
mol = build_mol_from_data(data_config['type_names'], aobasis_name, data)
transfer_mol = build_mol_from_data(data_config['type_names'], args.transfer_basis, data) if args.transfer_basis else None
if not args.gt_mode:
model_time = 1000.0
while model_time > 1:
t0 = time.time()
with torch.no_grad():
outputs = model(data)
t1 = time.time()
model_time = t1 - t0
else:
if args.model_type == 'auxdensity':
outputs = {'output:auxdensity': data['auxdensity']}
elif args.model_type == 'fock':
outputs = {'output:fock_diag_blocks': data['fock_diag_blocks'], 'output:fock_tril_blocks': data['fock_tril_blocks']}
elif args.model_type == 'dm':
outputs = {'output:dm_diag_blocks': data['dm_diag_blocks'], 'output:dm_tril_blocks': data['dm_tril_blocks']}
model_time = 0.0
t2 = time.time()
if args.model_type == 'auxdensity':
dm, extra_stats = pred_auxdensity_postprocess(mol, outputs, auxbasis_name, auxbasis, args.xc, use_denfit_ovlp, args.normalize_nelec, transfer_mol=transfer_mol)
elif args.model_type == 'fock':
dm, extra_stats = pred_fock_postprocess(mol, outputs, ao_prod_basis, args.normalize_nelec, transfer_mol=transfer_mol)
elif args.model_type == 'dm':
dm, extra_stats = pred_dm_postprocess(mol, outputs, ao_prod_basis, args.normalize_nelec, transfer_mol=transfer_mol)
t3 = time.time()
eval_scf = partial(run_scf_and_count_steps, xc=args.xc, verbose=args.scf_verbose, with_df=args.with_df, with_df_basis=args.with_df_basis)
if transfer_mol is not None:
original_energy, original_steps, original_time = eval_scf(transfer_mol, dm0=None)
accelerated_energy, accelerated_steps, accelerated_time = eval_scf(transfer_mol, dm0=cp.array(dm.astype(np.float64))) # the type conversion is important here
else:
original_energy, original_steps, original_time = eval_scf(mol, dm0=None)
accelerated_energy, accelerated_steps, accelerated_time = eval_scf(mol, dm0=cp.array(dm.astype(np.float64))) # the type conversion is important here
record = {
'natom': mol.natm,
'nelec': mol.nelectron,
'original_steps': original_steps,
'accelerated_steps': accelerated_steps,
'original_time': original_time,
'accelerated_time': accelerated_time,
'original_energy': original_energy,
'accelerated_energy': accelerated_energy,
'model_time': model_time,
'conversion_time': t3 - t2,
}
record.update(extra_stats)
print(record)
records.append(record)
del data, mol, dm, outputs
if len(records) % 10 == 0:
df = pd.DataFrame.from_records(records)
df.to_csv(args.output, index=False)
df = pd.DataFrame.from_records(records)
df.to_csv(args.output, index=False)
if __name__ == '__main__':
main()
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