mlx-examples/llms/tests/test_tuner_utils.py

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# Copyright © 2024 Apple Inc.
import sys
import unittest
from io import StringIO
from unittest.mock import MagicMock
import mlx.nn as nn
from mlx_lm.tuner.lora import LoRALinear
from mlx_lm.tuner.utils import print_trainable_parameters
class TestTunerUtils(unittest.TestCase):
def setUp(self):
self.capturedOutput = StringIO()
sys.stdout = self.capturedOutput
def tearDown(self):
sys.stdout = sys.__stdout__
def test_quantized_print_trainable_parameters(self):
model = MagicMock()
quantized_linear = MagicMock(spec=nn.QuantizedLinear)
quantized_linear.weight = MagicMock(size=1e6)
quantized_linear.bits = 8
lora_linear = MagicMock(spec=LoRALinear)
lora_linear.weight = MagicMock(size=2e6)
lora_linear.parameters.return_value = [lora_linear.weight]
linear = MagicMock(spec=nn.Linear)
linear.weight = MagicMock(size=3e6)
linear.parameters.return_value = [linear.weight]
model.leaf_modules.return_value = {
"quantized_linear": quantized_linear,
"lora_linear": lora_linear,
"linear": linear,
}
model.trainable_parameters.return_value = {
"layer1.weight": MagicMock(size=1e6),
"layer3.weight": MagicMock(size=2e6),
}
expected_output_8bits = "Trainable parameters: 33.333% (3.000M/9.000M)\n"
print_trainable_parameters(model)
self.assertEqual(self.capturedOutput.getvalue(), expected_output_8bits)
self.capturedOutput.truncate(0)
self.capturedOutput.seek(0)
quantized_linear.weight = MagicMock(size=1e6)
quantized_linear.bits = 4
expected_output_4bits = "Trainable parameters: 23.077% (3.000M/13.000M)\n"
print_trainable_parameters(model)
self.assertEqual(self.capturedOutput.getvalue(), expected_output_4bits)
self.capturedOutput.truncate(0)
self.capturedOutput.seek(0)
def test_print_trainable_parameters(self):
model = MagicMock()
linear1 = MagicMock(spec=nn.Linear)
linear1.weight = MagicMock(size=1e6)
linear1.parameters.return_value = [linear1.weight]
linear2 = MagicMock(spec=nn.Linear)
linear2.weight = MagicMock(size=2e6)
linear2.parameters.return_value = [linear2.weight]
lora_linear = MagicMock(spec=LoRALinear)
lora_linear.weight = MagicMock(size=3e6)
lora_linear.parameters.return_value = [lora_linear.weight]
model.leaf_modules.return_value = {
"linear1": linear1,
"linear2": linear2,
"lora_linear": lora_linear,
}
model.trainable_parameters.return_value = {
"layer1.weight": MagicMock(size=1e6),
"layer3.weight": MagicMock(size=2e6),
}
expected_output = "Trainable parameters: 50.000% (3.000M/6.000M)\n"
print_trainable_parameters(model)
self.assertEqual(self.capturedOutput.getvalue(), expected_output)
if __name__ == "__main__":
unittest.main()