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StarPilot/tinygrad_repo/test/null/test_process_replay.py
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firestar5683 d97100bd14 tiny my BUTT
2026-06-23 12:01:44 -05:00

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Python

import unittest
from tinygrad import Tensor, Device, Context
from tinygrad.codegen import do_to_program
from tinygrad.codegen.opt import Opt, OptOps
from test.external.process_replay.process_replay import replay_to_program
from test.helpers import replace_opts
N = 16
class TestProcessReplay(unittest.TestCase):
@classmethod
def setUpClass(cls):
cls.ast = (Tensor.empty(N, N) @ Tensor.empty(N, N)).schedule_linear().src[-1].src[0]
cls.renderer = Device[Device.DEFAULT].renderer
def test_replay_no_opts(self):
# opts=None means use default heuristic path
p = do_to_program(self.ast, self.renderer)
good, compare, _ = replay_to_program(p, self.ast, self.renderer)
self.assertEqual(good, compare)
def test_replay_empty_opts(self):
# opts=[] means explicitly apply zero opts (unoptimized)
ast = replace_opts(self.ast, [])
p = do_to_program(ast, self.renderer)
good, compare, _ = replay_to_program(p, ast, self.renderer)
self.assertEqual(good, compare)
def test_replay_with_opt(self):
# opts=[Opt(...)] means apply a specific opt
opts = [Opt(OptOps.UPCAST, 0, 4)]
ast = replace_opts(self.ast, opts)
p = do_to_program(ast, self.renderer)
good, compare, _ = replay_to_program(p, ast, self.renderer)
self.assertEqual(good, compare)
def test_beam(self):
with Context(BEAM=1):
ast = (Tensor.empty(N, N) @ Tensor.empty(N, N)).schedule_linear().src[-1].src[0]
p = do_to_program(ast, self.renderer)
good, compare, _ = replay_to_program(p, ast, self.renderer)
self.assertEqual(good, compare)
if __name__ == '__main__':
unittest.main(verbosity=2)