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https://github.com/kohya-ss/sd-scripts.git
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Add more tests
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@@ -223,3 +223,42 @@ def test_different_device_compatibility(loss, timesteps, noise_scheduler):
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noise_scheduler.get_snr_for_timestep.return_value = snr_tensor
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result = apply_snr_weight(loss_on_device, timesteps, noise_scheduler, gamma)
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# Additional tests for new functionality
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def test_apply_snr_weight_with_image_size(loss, timesteps, noise_scheduler):
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"""Test SNR weight application with image size consideration"""
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gamma = 5.0
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image_sizes = [None, 64, (256, 256)]
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for image_size in image_sizes:
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result = apply_snr_weight(
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loss,
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timesteps,
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noise_scheduler,
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gamma,
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v_prediction=False,
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image_size=image_size
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)
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# Allow for broadcasting
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assert result.shape[0] == loss.shape[0]
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assert result.dtype == loss.dtype
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def test_apply_debiased_estimation_variations(loss, timesteps, noise_scheduler):
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"""Test debiased estimation with different image sizes and prediction types"""
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image_sizes = [None, 64, (256, 256)]
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prediction_types = [True, False]
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for image_size in image_sizes:
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for v_prediction in prediction_types:
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result = apply_debiased_estimation(
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loss,
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timesteps,
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noise_scheduler,
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v_prediction=v_prediction,
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image_size=image_size
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)
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# Allow for broadcasting
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assert result.shape[0] == loss.shape[0]
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assert result.dtype == loss.dtype
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@@ -1,6 +1,8 @@
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import pytest
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import torch
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import math
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from unittest.mock import MagicMock, patch
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from library.sd3_train_utils import FlowMatchEulerDiscreteScheduler
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from library.flux_train_utils import (
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get_noisy_model_input_and_timesteps,
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)
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@@ -218,3 +220,69 @@ def test_different_timestep_count(args, device):
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assert timesteps.shape == (2,)
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# Check that timesteps are within the proper range
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assert torch.all(timesteps < 500)
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# New tests for dynamic timestep shifting
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def test_dynamic_timestep_shifting(device):
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"""Test the dynamic timestep shifting functionality"""
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# Create a scheduler with dynamic shifting enabled
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scheduler = FlowMatchEulerDiscreteScheduler(
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num_train_timesteps=1000,
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shift=1.0,
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use_dynamic_shifting=True
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)
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# Test different image sizes
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test_sizes = [
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(64, 64), # Small image
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(256, 256), # Medium image
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(512, 512), # Large image
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(1024, 1024) # Very large image
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]
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for image_size in test_sizes:
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# Simulate setting timesteps for inference
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mu = math.log(1 + (image_size[0] * image_size[1]) / (256 * 256))
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scheduler.set_timesteps(num_inference_steps=50, mu=mu)
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# Check that sigmas have been dynamically shifted
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assert len(scheduler.sigmas) == 51 # num_inference_steps + 1
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assert scheduler.sigmas[0] <= 1.0 # Maximum sigma should be <= 1
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assert scheduler.sigmas[-1] == 0.0 # Last sigma should always be 0
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def test_sigma_generation_methods():
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"""Test different sigma generation methods"""
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# Test Karras sigmas
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scheduler_karras = FlowMatchEulerDiscreteScheduler(
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num_train_timesteps=1000,
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use_karras_sigmas=True
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)
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scheduler_karras.set_timesteps(num_inference_steps=50)
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assert len(scheduler_karras.sigmas) == 51
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# Test Exponential sigmas
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scheduler_exp = FlowMatchEulerDiscreteScheduler(
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num_train_timesteps=1000,
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use_exponential_sigmas=True
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)
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scheduler_exp.set_timesteps(num_inference_steps=50)
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assert len(scheduler_exp.sigmas) == 51
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def test_snr_calculation():
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"""Test the SNR calculation method"""
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scheduler = FlowMatchEulerDiscreteScheduler(
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num_train_timesteps=1000,
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shift=1.0
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)
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# Prepare test timesteps
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timesteps = torch.tensor([200, 600], dtype=torch.int32)
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# Test with different image sizes
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test_sizes = [None, 64, (256, 256)]
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for image_size in test_sizes:
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snr_values = scheduler.get_snr_for_timestep(timesteps, image_size)
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# Check basic properties
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assert snr_values.shape == torch.Size([2])
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assert torch.all(snr_values >= 0) # SNR should always be non-negative
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