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422 lines
16 KiB
Python
422 lines
16 KiB
Python
import json
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import os
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import shutil
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import tempfile
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import unittest
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import ray
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from ray.rllib import _register_all
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from ray import tune
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from ray.tune.logger import NoopLogger
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from ray.tune.trainable import TrainableUtil
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from ray.tune.function_runner import wrap_function, FuncCheckpointUtil
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from ray.tune.result import TRAINING_ITERATION
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def creator_generator(logdir):
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def logger_creator(config):
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return NoopLogger(config, logdir)
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return logger_creator
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class FuncCheckpointUtilTest(unittest.TestCase):
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def setUp(self):
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self.logdir = tempfile.mkdtemp()
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def tearDown(self):
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shutil.rmtree(self.logdir)
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def testEmptyCheckpoint(self):
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checkpoint_dir = FuncCheckpointUtil.mk_null_checkpoint_dir(self.logdir)
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assert FuncCheckpointUtil.is_null_checkpoint(checkpoint_dir)
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def testTempCheckpointDir(self):
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checkpoint_dir = FuncCheckpointUtil.mk_temp_checkpoint_dir(self.logdir)
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assert FuncCheckpointUtil.is_temp_checkpoint_dir(checkpoint_dir)
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def testConvertTempToPermanent(self):
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checkpoint_dir = FuncCheckpointUtil.mk_temp_checkpoint_dir(self.logdir)
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new_checkpoint_dir = FuncCheckpointUtil.create_perm_checkpoint(
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checkpoint_dir, self.logdir, step=4)
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assert new_checkpoint_dir == TrainableUtil.find_checkpoint_dir(
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new_checkpoint_dir)
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assert os.path.exists(new_checkpoint_dir)
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assert not FuncCheckpointUtil.is_temp_checkpoint_dir(
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new_checkpoint_dir)
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tmp_checkpoint_dir = FuncCheckpointUtil.mk_temp_checkpoint_dir(
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self.logdir)
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assert tmp_checkpoint_dir != new_checkpoint_dir
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class FunctionCheckpointingTest(unittest.TestCase):
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def setUp(self):
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self.logdir = tempfile.mkdtemp()
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self.logger_creator = creator_generator(self.logdir)
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def tearDown(self):
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shutil.rmtree(self.logdir)
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def testCheckpointReuse(self):
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"""Test that repeated save/restore never reuses same checkpoint dir."""
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def train(config, checkpoint_dir=None):
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if checkpoint_dir:
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count = sum("checkpoint-" in path
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for path in os.listdir(checkpoint_dir))
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assert count == 1, os.listdir(checkpoint_dir)
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for step in range(20):
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with tune.checkpoint_dir(step=step) as checkpoint_dir:
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path = os.path.join(checkpoint_dir,
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"checkpoint-{}".format(step))
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open(path, "a").close()
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tune.report(test=step)
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wrapped = wrap_function(train)
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checkpoint = None
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for i in range(5):
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new_trainable = wrapped(logger_creator=self.logger_creator)
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if checkpoint:
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new_trainable.restore(checkpoint)
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for i in range(2):
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result = new_trainable.train()
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checkpoint = new_trainable.save()
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new_trainable.stop()
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assert result[TRAINING_ITERATION] == 10
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def testCheckpointReuseObject(self):
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"""Test that repeated save/restore never reuses same checkpoint dir."""
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def train(config, checkpoint_dir=None):
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if checkpoint_dir:
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count = sum("checkpoint-" in path
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for path in os.listdir(checkpoint_dir))
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assert count == 1, os.listdir(checkpoint_dir)
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for step in range(20):
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with tune.checkpoint_dir(step=step) as checkpoint_dir:
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path = os.path.join(checkpoint_dir,
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"checkpoint-{}".format(step))
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open(path, "a").close()
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tune.report(test=step)
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wrapped = wrap_function(train)
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checkpoint = None
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for i in range(5):
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new_trainable = wrapped(logger_creator=self.logger_creator)
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if checkpoint:
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new_trainable.restore_from_object(checkpoint)
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for i in range(2):
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result = new_trainable.train()
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checkpoint = new_trainable.save_to_object()
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new_trainable.stop()
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self.assertTrue(result[TRAINING_ITERATION] == 10)
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def testCheckpointReuseObjectWithoutTraining(self):
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"""Test that repeated save/restore never reuses same checkpoint dir."""
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def train(config, checkpoint_dir=None):
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if checkpoint_dir:
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count = sum("checkpoint-" in path
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for path in os.listdir(checkpoint_dir))
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assert count == 1, os.listdir(checkpoint_dir)
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for step in range(20):
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with tune.checkpoint_dir(step=step) as checkpoint_dir:
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path = os.path.join(checkpoint_dir,
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"checkpoint-{}".format(step))
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open(path, "a").close()
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tune.report(test=step)
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wrapped = wrap_function(train)
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new_trainable = wrapped(logger_creator=self.logger_creator)
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for i in range(2):
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result = new_trainable.train()
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checkpoint = new_trainable.save_to_object()
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new_trainable.stop()
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new_trainable2 = wrapped(logger_creator=self.logger_creator)
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new_trainable2.restore_from_object(checkpoint)
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new_trainable2.stop()
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new_trainable2 = wrapped(logger_creator=self.logger_creator)
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new_trainable2.restore_from_object(checkpoint)
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result = new_trainable2.train()
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new_trainable2.stop()
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self.assertTrue(result[TRAINING_ITERATION] == 3)
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def testReuseNullCheckpoint(self):
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def train(config, checkpoint_dir=None):
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assert not checkpoint_dir
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for step in range(10):
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tune.report(test=step)
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# Create checkpoint
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wrapped = wrap_function(train)
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checkpoint = None
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new_trainable = wrapped(logger_creator=self.logger_creator)
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new_trainable.train()
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checkpoint = new_trainable.save()
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new_trainable.stop()
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# Use the checkpoint a couple of times
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for i in range(3):
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new_trainable = wrapped(logger_creator=self.logger_creator)
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new_trainable.restore(checkpoint)
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new_trainable.stop()
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# Make sure the result is still good
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new_trainable = wrapped(logger_creator=self.logger_creator)
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new_trainable.restore(checkpoint)
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result = new_trainable.train()
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checkpoint = new_trainable.save()
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new_trainable.stop()
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self.assertTrue(result[TRAINING_ITERATION] == 1)
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def testMultipleNullCheckpoints(self):
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def train(config, checkpoint_dir=None):
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assert not checkpoint_dir
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for step in range(10):
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tune.report(test=step)
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wrapped = wrap_function(train)
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checkpoint = None
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for i in range(5):
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new_trainable = wrapped(logger_creator=self.logger_creator)
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if checkpoint:
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new_trainable.restore(checkpoint)
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result = new_trainable.train()
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checkpoint = new_trainable.save()
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new_trainable.stop()
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self.assertTrue(result[TRAINING_ITERATION] == 1)
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def testMultipleNullMemoryCheckpoints(self):
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def train(config, checkpoint_dir=None):
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assert not checkpoint_dir
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for step in range(10):
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tune.report(test=step)
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wrapped = wrap_function(train)
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checkpoint = None
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for i in range(5):
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new_trainable = wrapped(logger_creator=self.logger_creator)
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if checkpoint:
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new_trainable.restore_from_object(checkpoint)
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result = new_trainable.train()
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checkpoint = new_trainable.save_to_object()
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new_trainable.stop()
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assert result[TRAINING_ITERATION] == 1
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def testFunctionNoCheckpointing(self):
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def train(config, checkpoint_dir=None):
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if checkpoint_dir:
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assert os.path.exists(checkpoint_dir)
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for step in range(10):
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tune.report(test=step)
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wrapped = wrap_function(train)
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new_trainable = wrapped(logger_creator=self.logger_creator)
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result = new_trainable.train()
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checkpoint = new_trainable.save()
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new_trainable.stop()
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new_trainable2 = wrapped(logger_creator=self.logger_creator)
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new_trainable2.restore(checkpoint)
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result = new_trainable2.train()
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self.assertEquals(result[TRAINING_ITERATION], 1)
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checkpoint = new_trainable2.save()
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new_trainable2.stop()
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def testFunctionRecurringSave(self):
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"""This tests that save and restore are commutative."""
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def train(config, checkpoint_dir=None):
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if checkpoint_dir:
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assert os.path.exists(checkpoint_dir)
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for step in range(10):
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if step % 3 == 0:
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with tune.checkpoint_dir(step=step) as checkpoint_dir:
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path = os.path.join(checkpoint_dir, "checkpoint")
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with open(path, "w") as f:
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f.write(json.dumps({"step": step}))
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tune.report(test=step)
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wrapped = wrap_function(train)
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new_trainable = wrapped(logger_creator=self.logger_creator)
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new_trainable.train()
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checkpoint_obj = new_trainable.save_to_object()
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new_trainable.restore_from_object(checkpoint_obj)
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checkpoint = new_trainable.save()
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new_trainable.stop()
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new_trainable2 = wrapped(logger_creator=self.logger_creator)
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new_trainable2.restore(checkpoint)
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new_trainable2.train()
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new_trainable2.stop()
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def testFunctionImmediateSave(self):
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"""This tests that save and restore are commutative."""
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def train(config, checkpoint_dir=None):
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if checkpoint_dir:
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assert os.path.exists(checkpoint_dir)
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for step in range(10):
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with tune.checkpoint_dir(step=step) as checkpoint_dir:
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print(checkpoint_dir)
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path = os.path.join(checkpoint_dir,
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"checkpoint-{}".format(step))
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open(path, "w").close()
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tune.report(test=step)
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wrapped = wrap_function(train)
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new_trainable = wrapped(logger_creator=self.logger_creator)
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new_trainable.train()
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new_trainable.train()
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checkpoint_obj = new_trainable.save_to_object()
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new_trainable.stop()
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new_trainable2 = wrapped(logger_creator=self.logger_creator)
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new_trainable2.restore_from_object(checkpoint_obj)
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checkpoint_obj = new_trainable2.save_to_object()
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new_trainable2.train()
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result = new_trainable2.train()
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assert sum("tmp" in path for path in os.listdir(self.logdir)) == 1
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new_trainable2.stop()
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assert sum("tmp" in path for path in os.listdir(self.logdir)) == 0
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assert result[TRAINING_ITERATION] == 4
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class FunctionApiTest(unittest.TestCase):
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def setUp(self):
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ray.init(num_cpus=4, num_gpus=0, object_store_memory=150 * 1024 * 1024)
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def tearDown(self):
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ray.shutdown()
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_register_all() # re-register the evicted objects
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def testCheckpointError(self):
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def train(config, checkpoint_dir=False):
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pass
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with self.assertRaises(ValueError):
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tune.run(train, checkpoint_freq=1)
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with self.assertRaises(ValueError):
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tune.run(train, checkpoint_at_end=True)
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def testCheckpointFunctionAtEnd(self):
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def train(config, checkpoint_dir=False):
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for i in range(10):
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tune.report(test=i)
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with tune.checkpoint_dir(step=10) as checkpoint_dir:
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checkpoint_path = os.path.join(checkpoint_dir, "ckpt.log")
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with open(checkpoint_path, "w") as f:
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f.write("hello")
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[trial] = tune.run(train).trials
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assert os.path.exists(os.path.join(trial.checkpoint.value, "ckpt.log"))
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def testCheckpointFunctionAtEndContext(self):
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def train(config, checkpoint_dir=False):
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for i in range(10):
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tune.report(test=i)
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with tune.checkpoint_dir(step=10) as checkpoint_dir:
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checkpoint_path = os.path.join(checkpoint_dir, "ckpt.log")
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with open(checkpoint_path, "w") as f:
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f.write("hello")
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[trial] = tune.run(train).trials
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assert os.path.exists(os.path.join(trial.checkpoint.value, "ckpt.log"))
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def testVariousCheckpointFunctionAtEnd(self):
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def train(config, checkpoint_dir=False):
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for i in range(10):
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with tune.checkpoint_dir(step=i) as checkpoint_dir:
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checkpoint_path = os.path.join(checkpoint_dir, "ckpt.log")
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with open(checkpoint_path, "w") as f:
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f.write("hello")
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tune.report(test=i)
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with tune.checkpoint_dir(step=i) as checkpoint_dir:
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checkpoint_path = os.path.join(checkpoint_dir, "ckpt.log2")
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with open(checkpoint_path, "w") as f:
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f.write("goodbye")
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[trial] = tune.run(train, keep_checkpoints_num=3).trials
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assert os.path.exists(
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os.path.join(trial.checkpoint.value, "ckpt.log2"))
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def testReuseCheckpoint(self):
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def train(config, checkpoint_dir=None):
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itr = 0
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if checkpoint_dir:
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with open(os.path.join(checkpoint_dir, "ckpt.log"), "r") as f:
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itr = int(f.read()) + 1
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for i in range(itr, config["max_iter"]):
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with tune.checkpoint_dir(step=i) as checkpoint_dir:
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checkpoint_path = os.path.join(checkpoint_dir, "ckpt.log")
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with open(checkpoint_path, "w") as f:
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f.write(str(i))
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tune.report(test=i, training_iteration=i)
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[trial] = tune.run(
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train,
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config={
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"max_iter": 5
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},
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).trials
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last_ckpt = trial.checkpoint.value
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assert os.path.exists(os.path.join(trial.checkpoint.value, "ckpt.log"))
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analysis = tune.run(train, config={"max_iter": 10}, restore=last_ckpt)
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trial_dfs = list(analysis.trial_dataframes.values())
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assert len(trial_dfs[0]["training_iteration"]) == 5
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def testRetry(self):
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def train(config, checkpoint_dir=None):
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restored = bool(checkpoint_dir)
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itr = 0
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if checkpoint_dir:
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with open(os.path.join(checkpoint_dir, "ckpt.log"), "r") as f:
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itr = int(f.read()) + 1
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for i in range(itr, 10):
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if i == 5 and not restored:
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raise Exception("try to fail me")
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with tune.checkpoint_dir(step=i) as checkpoint_dir:
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checkpoint_path = os.path.join(checkpoint_dir, "ckpt.log")
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with open(checkpoint_path, "w") as f:
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f.write(str(i))
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tune.report(test=i, training_iteration=i)
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analysis = tune.run(train, max_failures=3)
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last_ckpt = analysis.trials[0].checkpoint.value
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assert os.path.exists(os.path.join(last_ckpt, "ckpt.log"))
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trial_dfs = list(analysis.trial_dataframes.values())
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assert len(trial_dfs[0]["training_iteration"]) == 10
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def testBlankCheckpoint(self):
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def train(config, checkpoint_dir=None):
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restored = bool(checkpoint_dir)
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itr = 0
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if checkpoint_dir:
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with open(os.path.join(checkpoint_dir, "ckpt.log"), "r") as f:
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itr = int(f.read()) + 1
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for i in range(itr, 10):
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if i == 5 and not restored:
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raise Exception("try to fail me")
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with tune.checkpoint_dir(step=itr) as checkpoint_dir:
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checkpoint_path = os.path.join(checkpoint_dir, "ckpt.log")
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with open(checkpoint_path, "w") as f:
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f.write(str(i))
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tune.report(test=i, training_iteration=i)
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analysis = tune.run(train, max_failures=3)
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trial_dfs = list(analysis.trial_dataframes.values())
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assert len(trial_dfs[0]["training_iteration"]) == 10
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