| import numpy |
| from PIL import Image |
| import pytest |
| from pytest import fixture |
| import torch |
| from typing import Tuple |
|
|
| from sgm.inference.api import ( |
| model_specs, |
| SamplingParams, |
| SamplingPipeline, |
| Sampler, |
| ModelArchitecture, |
| ) |
| import sgm.inference.helpers as helpers |
|
|
|
|
| @pytest.mark.inference |
| class TestInference: |
| @fixture(scope="class", params=model_specs.keys()) |
| def pipeline(self, request) -> SamplingPipeline: |
| pipeline = SamplingPipeline(request.param) |
| yield pipeline |
| del pipeline |
| torch.cuda.empty_cache() |
|
|
| @fixture( |
| scope="class", |
| params=[ |
| [ModelArchitecture.SDXL_V1_BASE, ModelArchitecture.SDXL_V1_REFINER], |
| [ModelArchitecture.SDXL_V0_9_BASE, ModelArchitecture.SDXL_V0_9_REFINER], |
| ], |
| ids=["SDXL_V1", "SDXL_V0_9"], |
| ) |
| def sdxl_pipelines(self, request) -> Tuple[SamplingPipeline, SamplingPipeline]: |
| base_pipeline = SamplingPipeline(request.param[0]) |
| refiner_pipeline = SamplingPipeline(request.param[1]) |
| yield base_pipeline, refiner_pipeline |
| del base_pipeline |
| del refiner_pipeline |
| torch.cuda.empty_cache() |
|
|
| def create_init_image(self, h, w): |
| image_array = numpy.random.rand(h, w, 3) * 255 |
| image = Image.fromarray(image_array.astype("uint8")).convert("RGB") |
| return helpers.get_input_image_tensor(image) |
|
|
| @pytest.mark.parametrize("sampler_enum", Sampler) |
| def test_txt2img(self, pipeline: SamplingPipeline, sampler_enum): |
| output = pipeline.text_to_image( |
| params=SamplingParams(sampler=sampler_enum.value, steps=10), |
| prompt="A professional photograph of an astronaut riding a pig", |
| negative_prompt="", |
| samples=1, |
| ) |
|
|
| assert output is not None |
|
|
| @pytest.mark.parametrize("sampler_enum", Sampler) |
| def test_img2img(self, pipeline: SamplingPipeline, sampler_enum): |
| output = pipeline.image_to_image( |
| params=SamplingParams(sampler=sampler_enum.value, steps=10), |
| image=self.create_init_image(pipeline.specs.height, pipeline.specs.width), |
| prompt="A professional photograph of an astronaut riding a pig", |
| negative_prompt="", |
| samples=1, |
| ) |
| assert output is not None |
|
|
| @pytest.mark.parametrize("sampler_enum", Sampler) |
| @pytest.mark.parametrize( |
| "use_init_image", [True, False], ids=["img2img", "txt2img"] |
| ) |
| def test_sdxl_with_refiner( |
| self, |
| sdxl_pipelines: Tuple[SamplingPipeline, SamplingPipeline], |
| sampler_enum, |
| use_init_image, |
| ): |
| base_pipeline, refiner_pipeline = sdxl_pipelines |
| if use_init_image: |
| output = base_pipeline.image_to_image( |
| params=SamplingParams(sampler=sampler_enum.value, steps=10), |
| image=self.create_init_image( |
| base_pipeline.specs.height, base_pipeline.specs.width |
| ), |
| prompt="A professional photograph of an astronaut riding a pig", |
| negative_prompt="", |
| samples=1, |
| return_latents=True, |
| ) |
| else: |
| output = base_pipeline.text_to_image( |
| params=SamplingParams(sampler=sampler_enum.value, steps=10), |
| prompt="A professional photograph of an astronaut riding a pig", |
| negative_prompt="", |
| samples=1, |
| return_latents=True, |
| ) |
|
|
| assert isinstance(output, (tuple, list)) |
| samples, samples_z = output |
| assert samples is not None |
| assert samples_z is not None |
| refiner_pipeline.refiner( |
| params=SamplingParams(sampler=sampler_enum.value, steps=10), |
| image=samples_z, |
| prompt="A professional photograph of an astronaut riding a pig", |
| negative_prompt="", |
| samples=1, |
| ) |
|
|