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| import random
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| import numpy as np
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| import pytest
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| import torch
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| from lerobot.utils.random_utils import (
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| deserialize_numpy_rng_state,
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| deserialize_python_rng_state,
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| deserialize_rng_state,
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| deserialize_torch_rng_state,
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| get_rng_state,
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| seeded_context,
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| serialize_numpy_rng_state,
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| serialize_python_rng_state,
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| serialize_rng_state,
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| serialize_torch_rng_state,
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| set_rng_state,
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| set_seed,
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| )
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| @pytest.fixture
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| def fixed_seed():
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| """Fixture to set a consistent initial seed for each test."""
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| set_seed(12345)
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| yield
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| def test_serialize_deserialize_python_rng(fixed_seed):
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| _ = random.random()
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| st = serialize_python_rng_state()
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| val2 = random.random()
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| deserialize_python_rng_state(st)
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| val3 = random.random()
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| assert val2 == val3
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| def test_serialize_deserialize_numpy_rng(fixed_seed):
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| _ = np.random.rand()
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| st = serialize_numpy_rng_state()
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| val2 = np.random.rand()
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| deserialize_numpy_rng_state(st)
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| val3 = np.random.rand()
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| assert val2 == val3
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| def test_serialize_deserialize_torch_rng(fixed_seed):
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| _ = torch.rand(1).item()
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| st = serialize_torch_rng_state()
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| val2 = torch.rand(1).item()
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| deserialize_torch_rng_state(st)
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| val3 = torch.rand(1).item()
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| assert val2 == val3
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| def test_serialize_deserialize_rng(fixed_seed):
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| _ = random.random()
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| _ = np.random.rand()
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| _ = torch.rand(1).item()
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| st = serialize_rng_state()
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| val_py2 = random.random()
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| val_np2 = np.random.rand()
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| val_th2 = torch.rand(1).item()
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| deserialize_rng_state(st)
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| assert random.random() == val_py2
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| assert np.random.rand() == val_np2
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| assert torch.rand(1).item() == val_th2
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| def test_get_set_rng_state(fixed_seed):
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| st = get_rng_state()
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| val1 = (random.random(), np.random.rand(), torch.rand(1).item())
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| random.random()
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| np.random.rand()
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| torch.rand(1)
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| set_rng_state(st)
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| val2 = (random.random(), np.random.rand(), torch.rand(1).item())
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| assert val1 == val2
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| def test_set_seed():
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| set_seed(1337)
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| val1 = (random.random(), np.random.rand(), torch.rand(1).item())
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| set_seed(1337)
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| val2 = (random.random(), np.random.rand(), torch.rand(1).item())
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| assert val1 == val2
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| def test_seeded_context(fixed_seed):
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| val1 = (random.random(), np.random.rand(), torch.rand(1).item())
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| with seeded_context(1337):
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| seeded_val1 = (random.random(), np.random.rand(), torch.rand(1).item())
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| val2 = (random.random(), np.random.rand(), torch.rand(1).item())
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| with seeded_context(1337):
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| seeded_val2 = (random.random(), np.random.rand(), torch.rand(1).item())
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| assert seeded_val1 == seeded_val2
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| assert all(a != b for a, b in zip(val1, seeded_val1, strict=True))
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| assert all(a != b for a, b in zip(val2, seeded_val2, strict=True))
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