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torch.export-friendly data-dependent assertions in misc.py, solvers.py #269

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6 changes: 4 additions & 2 deletions torchdiffeq/_impl/misc.py
Original file line number Diff line number Diff line change
Expand Up @@ -104,7 +104,8 @@ def _assert_one_dimensional(name, t):


def _assert_increasing(name, t):
assert (t[1:] > t[:-1]).all(), '{} must be strictly increasing or decreasing'.format(name)
cond = (t[1:] > t[:-1]).all().item()
torch._check(cond, f"{name} must be strictly increasing or decreasing")


def _assert_floating(name, t):
Expand Down Expand Up @@ -380,7 +381,8 @@ def _check_timelike(name, timelike, can_grad):
if not can_grad:
assert not timelike.requires_grad, "{} cannot require gradient".format(name)
diff = timelike[1:] > timelike[:-1]
assert diff.all() or (~diff).all(), '{} must be strictly increasing or decreasing'.format(name)
cond = torch.logical_or(diff.all(), (~diff).all()).item()
torch._check(cond, f"{name} must be strictly increasing or decreasing")


def _flip_option(options, option_name):
Expand Down
3 changes: 2 additions & 1 deletion torchdiffeq/_impl/solvers.py
Original file line number Diff line number Diff line change
Expand Up @@ -101,7 +101,8 @@ def _step_func(self, func, t0, dt, t1, y0):

def integrate(self, t):
time_grid = self.grid_constructor(self.func, self.y0, t)
assert time_grid[0] == t[0] and time_grid[-1] == t[-1]
torch._check((time_grid[0] == t[0]).item())
torch._check((time_grid[-1] == t[-1]).item())

solution = torch.empty(len(t), *self.y0.shape, dtype=self.y0.dtype, device=self.y0.device)
solution[0] = self.y0
Expand Down