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learn_physics.py
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learn_physics.py
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#!/usr/bin/env python3
import argparse
import os
import math
import matplotlib.pyplot as plt
import torch
import torch.nn as nn
from torchdiffeq import odeint, odeint_event
from bouncing_ball import BouncingBallExample
class HamiltonianDynamics(nn.Module):
def __init__(self):
super().__init__()
self.dvel = nn.Linear(1, 1)
self.scale = nn.Parameter(torch.tensor(10.0))
def forward(self, t, state):
pos, vel, *rest = state
dpos = vel
dvel = torch.tanh(self.dvel(torch.zeros_like(vel))) * self.scale
return (dpos, dvel, *[torch.zeros_like(r) for r in rest])
class EventFn(nn.Module):
def __init__(self):
super().__init__()
self.radius = nn.Parameter(torch.rand(1))
def parameters(self):
return [self.radius]
def forward(self, t, state):
# IMPORTANT: event computation must use variables from the state.
pos, _, radius = state
return pos - radius.reshape_as(pos) ** 2
class InstantaneousStateChange(nn.Module):
def __init__(self):
super().__init__()
self.net = nn.Linear(1, 1)
def forward(self, t, state):
pos, vel, *rest = state
vel = -torch.sigmoid(self.net(torch.ones_like(vel))) * vel
return (pos, vel, *rest)
class NeuralPhysics(nn.Module):
def __init__(self):
super().__init__()
self.initial_pos = nn.Parameter(torch.tensor([10.0]))
self.initial_vel = nn.Parameter(torch.tensor([0.0]))
self.dynamics_fn = HamiltonianDynamics()
self.event_fn = EventFn()
self.inst_update = InstantaneousStateChange()
def simulate(self, times):
t0 = torch.tensor([0.0]).to(times)
# Add a terminal time to the event function.
def event_fn(t, state):
if t > times[-1] + 1e-7:
return torch.zeros_like(t)
event_fval = self.event_fn(t, state)
return event_fval
# IMPORTANT: for gradients of odeint_event to be computed, parameters of the event function
# must appear in the state in the current implementation.
state = (self.initial_pos, self.initial_vel, *self.event_fn.parameters())
event_times = []
trajectory = [state[0][None]]
n_events = 0
max_events = 20
while t0 < times[-1] and n_events < max_events:
last = n_events == max_events - 1
if not last:
event_t, solution = odeint_event(
self.dynamics_fn,
state,
t0,
event_fn=event_fn,
atol=1e-8,
rtol=1e-8,
method="dopri5",
)
else:
event_t = times[-1]
interval_ts = times[times > t0]
interval_ts = interval_ts[interval_ts <= event_t]
interval_ts = torch.cat([t0.reshape(-1), interval_ts.reshape(-1)])
solution_ = odeint(
self.dynamics_fn, state, interval_ts, atol=1e-8, rtol=1e-8
)
traj_ = solution_[0][1:] # [0] for position; [1:] to remove intial state.
trajectory.append(traj_)
if event_t < times[-1]:
state = tuple(s[-1] for s in solution)
# update velocity instantaneously.
state = self.inst_update(event_t, state)
# advance the position a little bit to avoid re-triggering the event fn.
pos, *rest = state
pos = pos + 1e-7 * self.dynamics_fn(event_t, state)[0]
state = pos, *rest
event_times.append(event_t)
t0 = event_t
n_events += 1
# print(event_t.item(), state[0].item(), state[1].item(), self.event_fn.mod(pos).item())
trajectory = torch.cat(trajectory, dim=0).reshape(-1)
return trajectory, event_times
class Sine(nn.Module):
def forward(self, x):
return torch.sin(x)
class NeuralODE(nn.Module):
def __init__(self, aug_dim=2):
super().__init__()
self.initial_pos = nn.Parameter(torch.tensor([10.0]))
self.initial_aug = nn.Parameter(torch.zeros(aug_dim))
self.odefunc = mlp(
input_dim=1 + aug_dim,
hidden_dim=64,
output_dim=1 + aug_dim,
hidden_depth=2,
act=Sine,
)
def init(m):
if isinstance(m, nn.Linear):
std = 1.0 / math.sqrt(m.weight.size(1))
m.weight.data.uniform_(-2.0 * std, 2.0 * std)
m.bias.data.zero_()
self.odefunc.apply(init)
def forward(self, t, state):
return self.odefunc(state)
def simulate(self, times):
x0 = torch.cat([self.initial_pos, self.initial_aug]).reshape(-1)
solution = odeint(self, x0, times, atol=1e-8, rtol=1e-8, method="dopri5")
trajectory = solution[:, 0]
return trajectory, []
def mlp(input_dim, hidden_dim, output_dim, hidden_depth, output_mod=None, act=nn.ReLU):
if hidden_depth == 0:
mods = [nn.Linear(input_dim, output_dim)]
else:
mods = [nn.Linear(input_dim, hidden_dim), act()]
for i in range(hidden_depth - 1):
mods += [nn.Linear(hidden_dim, hidden_dim), act()]
mods.append(nn.Linear(hidden_dim, output_dim))
if output_mod is not None:
mods.append(output_mod)
trunk = nn.Sequential(*mods)
return trunk
def cosine_decay(learning_rate, global_step, decay_steps, alpha=0.0):
global_step = min(global_step, decay_steps)
cosine_decay = 0.5 * (1 + math.cos(math.pi * global_step / decay_steps))
decayed = (1 - alpha) * cosine_decay + alpha
return learning_rate * decayed
def learning_rate_schedule(
global_step, warmup_steps, base_learning_rate, lr_scaling, train_steps
):
warmup_steps = int(round(warmup_steps))
scaled_lr = base_learning_rate * lr_scaling
if warmup_steps:
learning_rate = global_step / warmup_steps * scaled_lr
else:
learning_rate = scaled_lr
if global_step < warmup_steps:
learning_rate = learning_rate
else:
learning_rate = cosine_decay(
scaled_lr, global_step - warmup_steps, train_steps - warmup_steps
)
return learning_rate
def set_learning_rate(optimizer, lr):
for group in optimizer.param_groups:
group["lr"] = lr
if __name__ == "__main__":
parser = argparse.ArgumentParser()
parser.add_argument("--base_lr", type=float, default=0.1)
parser.add_argument("--num_iterations", type=int, default=1000)
parser.add_argument("--no_events", action="store_true")
parser.add_argument("--save", type=str, default="figs")
args = parser.parse_args()
torch.manual_seed(0)
torch.set_default_dtype(torch.float64)
with torch.no_grad():
system = BouncingBallExample()
obs_times, gt_trajectory, _, _ = system.simulate(nbounces=4)
obs_times = obs_times[:300]
gt_trajectory = gt_trajectory[:300]
if args.no_events:
model = NeuralODE()
else:
model = NeuralPhysics()
optimizer = torch.optim.Adam(model.parameters(), lr=args.base_lr)
decay = 1.0
model.train()
for itr in range(args.num_iterations):
optimizer.zero_grad()
trajectory, event_times = model.simulate(obs_times)
weights = decay**obs_times
loss = (
((trajectory - gt_trajectory) / (gt_trajectory + 1e-3))
.abs()
.mul(weights)
.mean()
)
loss.backward()
lr = learning_rate_schedule(itr, 0, args.base_lr, 1.0, args.num_iterations)
set_learning_rate(optimizer, lr)
optimizer.step()
if itr % 10 == 0:
print(itr, loss.item(), len(event_times))
if itr % 10 == 0:
plt.figure()
plt.plot(
obs_times.detach().cpu().numpy(),
gt_trajectory.detach().cpu().numpy(),
label="Target",
)
plt.plot(
obs_times.detach().cpu().numpy(),
trajectory.detach().cpu().numpy(),
label="Learned",
)
plt.tight_layout()
os.makedirs(args.save, exist_ok=True)
plt.savefig(f"{args.save}/{itr:05d}.png")
plt.close()
if (itr + 1) % 100 == 0:
torch.save(
{
"state_dict": model.state_dict(),
},
f"{args.save}/model.pt",
)
del trajectory, loss