59 lines
1.6 KiB
Python
59 lines
1.6 KiB
Python
import torch
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from khaosz.config import *
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from khaosz.trainer import *
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def test_callback_integration(base_test_env, random_dataset):
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"""Test that all callbacks are properly integrated"""
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schedule_config = CosineScheduleConfig(
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warmup_steps=10,
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total_steps=20
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)
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optimizer_fn = lambda model: torch.optim.AdamW(model.parameters())
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scheduler_fn = lambda optim: SchedulerFactory.load(optim, schedule_config)
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train_config = TrainConfig(
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model=base_test_env["model"],
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strategy='seq',
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dataset=random_dataset,
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optimizer_fn=optimizer_fn,
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scheduler_fn=scheduler_fn,
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checkpoint_dir=base_test_env["test_dir"],
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n_epoch=1,
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batch_size=2,
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checkpoint_interval=3,
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accumulation_steps=1,
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max_grad_norm=1.0,
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random_seed=42,
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device_type=base_test_env["device"]
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)
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# Create custom callbacks to track calls
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callback_calls = []
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class TrackingCallback(TrainCallback):
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def on_train_begin(self, context):
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callback_calls.append('on_train_begin')
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def on_batch_end(self, context):
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callback_calls.append('on_batch_end')
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def on_epoch_end(self, context):
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callback_calls.append('on_epoch_end')
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trainer = Trainer(
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train_config,
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callbacks=[TrackingCallback()]
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)
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trainer.train()
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# Verify callbacks were called
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assert 'on_train_begin' in callback_calls
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assert 'on_batch_end' in callback_calls
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assert 'on_epoch_end' in callback_calls |