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add reweight es naqs. not completed yet
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when sampling, it use self.es, and when get ws, it use self.psi
self.psi is updated by outside, but self.es need to be optimize too, which is
not implemented yet.
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hzhangxyz committed Sep 6, 2024
1 parent 63bc691 commit 7688fd4
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57 changes: 54 additions & 3 deletions tetragono/tetragono/sampling_neural_state/observer.py
Original file line number Diff line number Diff line change
Expand Up @@ -18,9 +18,39 @@

import numpy as np
import torch
from ..utility import allreduce_buffer, allreduce_number, show, showln
from ..utility import allreduce_buffer, allreduce_number, show, showln, mpi_comm
from .state import Configuration, index_tensor_element

opt = None


def torch_tensor_allgather(tensor):
from mpi4py import MPI
# Get the device of the input tensor
device = tensor.device

# Convert torch tensor to numpy array
np_array = tensor.cpu().detach().numpy()

# Initialize MPI
comm = mpi_comm
rank = comm.Get_rank()
size = comm.Get_size()

counts = comm.allgather(np_array.size)
first = comm.allgather(np_array.shape[0])
total_length = sum(first)
# Create a buffer to hold all gathered numpy arrays
gathered_np_arrays = np.empty((total_length, *np_array.shape[1:]), dtype=np_array.dtype)

# Perform allgather
comm.Allgatherv(np_array, [gathered_np_arrays, counts])

# Convert gathered numpy arrays back to torch tensor
gathered_tensor = torch.from_numpy(gathered_np_arrays).to(device)

return gathered_tensor


class Observer():
"""
Expand Down Expand Up @@ -66,8 +96,7 @@ def __enter__(self):
if self._enable_gradient:
self._Delta = None
self._EDelta = None
if self._enable_natural:
self._Deltas = []
self._Deltas = [] # 临时使用这个list做别的用处

def __exit__(self, exc_type, exc_val, exc_tb):
"""
Expand Down Expand Up @@ -114,6 +143,25 @@ def __exit__(self, exc_type, exc_val, exc_tb):
allreduce_buffer(self._Delta)
allreduce_buffer(self._EDelta)

cs = torch.stack([c for c, e in self._Deltas])
es = torch.tensor([e for c, e in self._Deltas], dtype=torch.complex128, device=cs.device)
cs = torch_tensor_allgather(cs)
es = torch.view_as_complex(torch_tensor_allgather(torch.view_as_real(es)))
es = es - es.mean() # 总之这个是用来采样的东西,以后可能会添加别的比如Delta也乘进去
with torch.enable_grad():
global opt
if opt is None:
opt = torch.optim.Adam(self.owner.network.es.parameters(), 1e-2)
for _ in range(100):
hes = self.owner.network.es(cs)
error = hes / hes.norm() - es / es.norm()
error = (error.abs()**2).mean()
show(error.item())
opt.zero_grad()
error.backward()
opt.step()
showln("es error", error.item())

def __init__(
self,
owner,
Expand Down Expand Up @@ -395,6 +443,9 @@ def __call__(self, configurations, amplitudes, weights, multiplicities):
name].imag * reweight
if name == "energy" and self._enable_gradient:
Es = whole_result[batch_index][name]
# train self.es
# collect and optimize self.es
self._Deltas.append((configurations[batch_index], Es))
if self.owner.Tensor.is_real:
Es = Es.real

Expand Down
18 changes: 15 additions & 3 deletions tetragono/tetragono/sampling_neural_state/state.py
Original file line number Diff line number Diff line change
Expand Up @@ -348,16 +348,28 @@ def holes(self, value):
if self.Tensor.is_complex:
with torch_grad(True):
value.real.backward(retain_graph=True)
real = torch.cat([param.grad.reshape([-1]) for param in self.network.parameters() if param.requires_grad])
real = torch.cat([
param.grad.reshape([-1])
for param in self.network.parameters()
if param.requires_grad and param.grad is not None
])
self.network.zero_grad()
with torch_grad(True):
value.imag.backward()
imag = torch.cat([param.grad.reshape([-1]) for param in self.network.parameters() if param.requires_grad])
imag = torch.cat([
param.grad.reshape([-1])
for param in self.network.parameters()
if param.requires_grad and param.grad is not None
])
self.network.zero_grad()
result = (real + 1j * imag)
else:
value.backward()
result = torch.cat([param.grad.reshape([-1]) for param in self.network.parameters() if param.requires_grad])
result = torch.cat([
param.grad.reshape([-1])
for param in self.network.parameters()
if param.requires_grad and param.grad is not None
])
self.network.zero_grad()
result = result / value
return result.detach_()
Expand Down
246 changes: 246 additions & 0 deletions tetraku/tetraku/networks/naqs/reweight.py
Original file line number Diff line number Diff line change
@@ -0,0 +1,246 @@
#!/usr/bin/env python
# -*- coding: utf-8 -*-
# Copyright (C) 2024 Hao Zhang<[email protected]>
#
# This program is free software: you can redistribute it and/or modify
# it under the terms of the GNU General Public License as published by
# the Free Software Foundation, either version 3 of the License, or
# any later version.
#
# This program is distributed in the hope that it will be useful,
# but WITHOUT ANY WARRANTY; without even the implied warranty of
# MERCHANTABILITY or FITNESS FOR A PARTICULAR PURPOSE. See the
# GNU General Public License for more details.
#
# You should have received a copy of the GNU General Public License
# along with this program. If not, see <https://www.gnu.org/licenses/>.
#

import torch


class FakeLinear(torch.nn.Module):

def __init__(self, dim_in, dim_out):
super().__init__()
self.bias = torch.nn.Parameter(torch.zeros([dim_out]))

def forward(self, x):
shape = x.shape[:-1]
prod = torch.tensor(shape).prod()
return self.bias.view([1, -1]).expand([prod, -1]).view([*shape, -1])


def Linear(dim_in, dim_out):
if dim_in == 0:
return FakeLinear(dim_in, dim_out)
else:
return torch.nn.Linear(dim_in, dim_out)


class MLP(torch.nn.Module):

def __init__(self, dim_input, dim_output, hidden_size):
super().__init__()
self.dim_input = dim_input
self.dim_output = dim_output
self.hidden_size = hidden_size
self.depth = len(hidden_size)

self.model = torch.nn.Sequential(*(Linear(
dim_input if i == 0 else hidden_size[i - 1],
dim_output if i == self.depth else hidden_size[i],
) if j == 0 else torch.nn.SiLU() for i in range(self.depth + 1) for j in range(2) if i != self.depth or j != 1))

def forward(self, x):
return self.model(x)


class WaveFunction(torch.nn.Module):

def __init__(
self,
*,
L1,
L2,
orbit_num,
physical_dim,
is_complex,
spin_up,
spin_down,
hidden_size,
ordering,
):
super().__init__()
self.L1 = L1
self.L2 = L2
self.orbit_num = orbit_num
self.sites = L1 * L2 * orbit_num // 2
assert physical_dim == 2
assert is_complex == True
self.spin_up = spin_up
self.spin_down = spin_down
self.hidden_size = tuple(hidden_size)

self.amplitude = torch.nn.ModuleList([MLP(i * 2, 4, self.hidden_size) for i in range(self.sites)])
self.phase = torch.nn.ModuleList([MLP(i * 2, 4, self.hidden_size) for i in range(self.sites)])

if isinstance(ordering, int) and ordering == +1:
ordering = list(range(self.sites))
if isinstance(ordering, int) and ordering == -1:
ordering = list(reversed(range(self.sites)))
self.register_buffer('ordering', torch.tensor(ordering, dtype=torch.int64), persistent=True)
ordering_bak = torch.zeros(self.sites, dtype=torch.int64)
ordering_bak.scatter_(0, self.ordering, torch.arange(self.sites))
self.register_buffer('ordering_bak', ordering_bak, persistent=True)

def mask(self, x):
# x : batch * i * 2
i = x.size(1)
# number : batch * 2
number = x.sum(dim=1)

up_electron = number[:, 0]
down_electron = number[:, 1]
up_hole = i - up_electron
down_hole = i - down_electron

add_up_electron = up_electron < self.spin_up
add_down_electron = down_electron < self.spin_down
add_up_hole = up_hole < self.sites - self.spin_up
add_down_hole = down_hole < self.sites - self.spin_down

add_up = torch.stack([add_up_hole, add_up_electron], dim=-1).unsqueeze(-1)
add_down = torch.stack([add_down_hole, add_down_electron], dim=-1).unsqueeze(-2)
add = torch.logical_and(add_up, add_down)
return add

def normalize_amplitude(self, x):
param = -(2 * x).exp().sum(dim=[1, 2]).log() / 2
x = x + param.unsqueeze(-1).unsqueeze(-1)
return x

def forward(self, x):
device = next(self.parameters()).device
dtype = next(self.parameters()).dtype

batch_size = x.size(0)
x = x.reshape([batch_size, self.sites, 2])
x = torch.index_select(x, 1, self.ordering_bak)

xf = x.to(dtype=dtype)
arange = torch.arange(batch_size, device=device)
total_amplitude = 0
total_phase = 0
for i in range(self.sites):
amplitude = self.amplitude[i](xf[:, :i].reshape([batch_size, 2 * i])).reshape([batch_size, 2, 2])
phase = self.phase[i](xf[:, :i].reshape([batch_size, 2 * i])).reshape([batch_size, 2, 2])
amplitude = amplitude + torch.where(self.mask(x[:, :i]), 0, -torch.inf)
amplitude = self.normalize_amplitude(amplitude)
amplitude = amplitude[arange, x[:, i, 0], x[:, i, 1]]
phase = phase[arange, x[:, i, 0], x[:, i, 1]]
total_amplitude = total_amplitude + amplitude
total_phase = total_phase + phase
return (total_amplitude + 1j * total_phase).exp()

def binomial(self, count, possibility):
possibility = torch.clamp(possibility, min=0, max=1)
possibility = torch.where(count == 0, 0, possibility)
dist = torch.distributions.binomial.Binomial(count, possibility)
result = dist.sample()
result = result.to(dtype=torch.int64)
# Numerical error since result was cast to float.
return torch.clamp(result, min=torch.zeros_like(count), max=count)

def generate(self, batch_size, alpha=1):
# https://arxiv.org/pdf/2109.12606
device = next(self.parameters()).device
dtype = next(self.parameters()).dtype
assert alpha == 1

x = torch.empty([1, 0, 2], device=device, dtype=torch.int64)
multiplicity = torch.tensor([batch_size], dtype=torch.int64, device=device)
amplitude_phase = torch.tensor([0], dtype=dtype.to_complex(), device=device)
for i in range(self.sites):
local_batch_size = x.size(0)

xf = x.to(dtype=dtype)
amplitude = self.amplitude[i](xf.reshape([local_batch_size, 2 * i])).reshape([local_batch_size, 2, 2])
phase = self.phase[i](xf.reshape([local_batch_size, 2 * i])).reshape([local_batch_size, 2, 2])
amplitude = amplitude + torch.where(self.mask(x), 0, -torch.inf)
amplitude = self.normalize_amplitude(amplitude)
delta_amplitude_phase = (amplitude + 1j * phase).reshape([local_batch_size, 4])
probability = (2 * amplitude).exp().reshape([local_batch_size, 4])
probability = probability / probability.sum(dim=-1).unsqueeze(-1)

sample0123 = multiplicity
prob23 = probability[:, 2] + probability[:, 3]
prob01 = probability[:, 0] + probability[:, 1]
sample23 = self.binomial(sample0123, prob23)
sample3 = self.binomial(sample23, probability[:, 3] / prob23)
sample2 = sample23 - sample3
sample01 = sample0123 - sample23
sample1 = self.binomial(sample01, probability[:, 1] / prob01)
sample0 = sample01 - sample1

x0 = torch.cat([x, torch.tensor([[0, 0]], device=device).expand(local_batch_size, -1, -1)], dim=1)
x1 = torch.cat([x, torch.tensor([[0, 1]], device=device).expand(local_batch_size, -1, -1)], dim=1)
x2 = torch.cat([x, torch.tensor([[1, 0]], device=device).expand(local_batch_size, -1, -1)], dim=1)
x3 = torch.cat([x, torch.tensor([[1, 1]], device=device).expand(local_batch_size, -1, -1)], dim=1)

new_x = torch.cat([x0, x1, x2, x3])
new_multiplicity = torch.cat([sample0, sample1, sample2, sample3])
new_amplitude_phase = (amplitude_phase.unsqueeze(0) + delta_amplitude_phase.permute(1, 0)).reshape([-1])

selected = new_multiplicity != 0
x = new_x[selected]
multiplicity = new_multiplicity[selected]
amplitude_phase = new_amplitude_phase[selected]

real_amplitude = amplitude_phase.exp()
real_probability = (real_amplitude.conj() * real_amplitude).real
x = torch.index_select(x, 1, self.ordering)
return x.reshape([x.size(0), self.L1, self.L2, self.orbit_num]), real_amplitude, torch.ones_like(real_probability), torch.ones_like(multiplicity)


class ReweightWaveFunction(torch.nn.Module):

def __init__(
self,
*args,
**kwargs,
):
super().__init__()
self.psi = WaveFunction(*args, **kwargs)
self._es = WaveFunction(*args, **kwargs).cuda(),
self.es.load_state_dict(self.psi.state_dict())
self.es.cuda()

@property
def es(self):
return self._es[0]

def forward(self, x):
return self.psi(x)

def generate(self, batch_size, alpha=1):
configurations, _, weights, multiplicities = self.es.generate(batch_size, alpha)
amplitudes = self(configurations)
return configurations, amplitudes, weights, multiplicities


def network(state, spin_up, spin_down, hidden_size, ordering=+1):
max_orbit_index = max(orbit for [l1, l2, orbit], edge in state.physics_edges)
max_physical_dim = max(edge.dimension for [l1, l2, orbit], edge in state.physics_edges)
network = ReweightWaveFunction(
L1=state.L1,
L2=state.L2,
orbit_num=max_orbit_index + 1,
physical_dim=max_physical_dim,
is_complex=state.Tensor.is_complex,
spin_up=spin_up,
spin_down=spin_down,
hidden_size=hidden_size,
ordering=ordering,
).double()
return network

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