- 15 May, 2024 1 commit
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Isamu Isozaki authored
* Init commit * Removed einops * Added default movq config for training * Update explanation of prompts * Fixed inheritance of discriminator and init_tracker * Fixed incompatible api between muse and here * Fixed output * Setup init training * Basic structure done * Removed attention for quick tests * Style fixes * Fixed vae/vqgan styles * Removed redefinition of wandb * Fixed log_validation and tqdm * Nothing commit * Added commit loss to lookup_from_codebook * Update src/diffusers/models/vq_model.py Co-authored-by:
Sayak Paul <spsayakpaul@gmail.com> * Adding perliminary README * Fixed one typo * Local changes * Fixed main issues * Merging * Update src/diffusers/models/vq_model.py Co-authored-by:
Sayak Paul <spsayakpaul@gmail.com> * Testing+Fixed bugs in training script * Some style fixes * Added wandb to docs * Fixed timm test * get testing suite ready. * remove return loss * remove return_loss * Remove diffs * Remove diffs * fix ruff format --------- Co-authored-by:
Sayak Paul <spsayakpaul@gmail.com> Co-authored-by:
Dhruv Nair <dhruv.nair@gmail.com>
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- 05 Apr, 2024 1 commit
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Sayak Paul authored
* reduce block sizes for unet1d. * reduce blocks for unet_2d. * reduce block size for unet_motion * increase channels. * correctly increase channels. * reduce number of layers in unet2dconditionmodel tests. * reduce block sizes for unet2dconditionmodel tests * reduce block sizes for unet3dconditionmodel. * fix: test_feed_forward_chunking * fix: test_forward_with_norm_groups * skip spatiotemporal tests on MPS. * reduce block size in AutoencoderKL. * reduce block sizes for vqmodel. * further reduce block size. * make style. * Empty-Commit * reduce sizes for ConsistencyDecoderVAETests * further reduction. * further block reductions in AutoencoderKL and AssymetricAutoencoderKL. * massively reduce the block size in unet2dcontionmodel. * reduce sizes for unet3d * fix tests in unet3d. * reduce blocks further in motion unet. * fix: output shape * add attention_head_dim to the test configuration. * remove unexpected keyword arg * up a bit. * groups. * up again * fix
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- 08 Feb, 2024 1 commit
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Sayak Paul authored
change to 2024
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- 01 Feb, 2024 1 commit
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Sayak Paul authored
* harmonize the module structure for models in tests * make the folders modules. --------- Co-authored-by:YiYi Xu <yixu310@gmail.com>
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- 05 Dec, 2023 1 commit
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Arsalan authored
* utils and test modifications to enable device agnostic testing * device for manual seed in unet1d * fix generator condition in vae test * consistency changes to testing * make style * add device agnostic testing changes to source and one model test * make dtype check fns private, log cuda fp16 case * remove dtype checks from import utils, move to testing_utils * adding tests for most model classes and one pipeline * fix vae import
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- 11 Sep, 2023 1 commit
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Dhruv Nair authored
* initial commit * move modules to import struct * add dummy objects and _LazyModule * add lazy import to schedulers * clean up unused imports * lazy import on models module * lazy import for schedulers module * add lazy import to pipelines module * lazy import altdiffusion * lazy import audio diffusion * lazy import audioldm * lazy import consistency model * lazy import controlnet * lazy import dance diffusion ddim ddpm * lazy import deepfloyd * lazy import kandinksy * lazy imports * lazy import semantic diffusion * lazy imports * lazy import stable diffusion * move sd output to its own module * clean up * lazy import t2iadapter * lazy import unclip * lazy import versatile and vq diffsuion * lazy import vq diffusion * helper to fetch objects from modules * lazy import sdxl * lazy import txt2vid * lazy import stochastic karras * fix model imports * fix bug * lazy import * clean up * clean up * fixes for tests * fixes for tests * clean up * remove import of torch_utils from utils module * clean up * clean up * fix mistake import statement * dedicated modules for exporting and loading * remove testing utils from utils module * fixes from merge conflicts * Update src/diffusers/pipelines/kandinsky2_2/__init__.py * fix docs * fix alt diffusion copied from * fix check dummies * fix more docs * remove accelerate import from utils module * add type checking * make style * fix check dummies * remove torch import from xformers check * clean up error message * fixes after upstream merges * dummy objects fix * fix tests * remove unused module import --------- Co-authored-by:Patrick von Platen <patrick.v.platen@gmail.com>
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- 15 Jun, 2023 1 commit
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Patrick von Platen authored
* relax tolerance slightly * Add more tests * upload readme * upload readme * Apply suggestions from code review * Improve API Autoencoder KL * finalize * finalize tests * finalize tests * Apply suggestions from code review Co-authored-by:
Sayak Paul <spsayakpaul@gmail.com> * up --------- Co-authored-by:
Sayak Paul <spsayakpaul@gmail.com>
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- 22 May, 2023 1 commit
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Patrick von Platen authored
* up * fix more * Apply suggestions from code review * fix more * fix more * Check it * Remove 16:8 * fix more * fix more * fix more * up * up * Test only stable diffusion * Test only two files * up * Try out spinning up processes that can be killed * up * Apply suggestions from code review * up * up
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- 11 May, 2023 1 commit
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Sayak Paul authored
* enable deterministic pytorch and cuda operations. * disable manual seeding. * make style && make quality for unet_2d tests. * enable determinism for the unet2dconditional model. * add CUBLAS_WORKSPACE_CONFIG for better reproducibility. * relax tolerance (very weird issue, though). * revert to torch manual_seed() where needed. * relax more tolerance. * better placement of the cuda variable and relax more tolerance. * enable determinism for 3d condition model. * relax tolerance. * add: determinism to alt_diffusion. * relax tolerance for alt diffusion. * dance diffusion. * dance diffusion is flaky. * test_dict_tuple_outputs_equivalent edit. * fix two more tests. * fix more ddim tests. * fix: argument. * change to diff in place of difference. * fix: test_save_load call. * test_save_load_float16 call. * fix: expected_max_diff * fix: paint by example. * relax tolerance. * add determinism to 1d unet model. * torch 2.0 regressions seem to be brutal * determinism to vae. * add reason to skipping. * up tolerance. * determinism to vq. * determinism to cuda. * determinism to the generic test pipeline file. * refactor general pipelines testing a bit. * determinism to alt diffusion i2i * up tolerance for alt diff i2i and audio diff * up tolerance. * determinism to audioldm * increase tolerance for audioldm lms. * increase tolerance for paint by paint. * increase tolerance for repaint. * determinism to cycle diffusion and sd 1. * relax tol for cycle diffusion
🚲 * relax tol for sd 1.0 * relax tol for controlnet. * determinism to img var. * relax tol for img variation. * tolerance to i2i sd * make style * determinism to inpaint. * relax tolerance for inpaiting. * determinism for inpainting legacy * relax tolerance. * determinism to instruct pix2pix * determinism to model editing. * model editing tolerance. * panorama determinism * determinism to pix2pix zero. * determinism to sag. * sd 2. determinism * sd. tolerance * disallow tf32 matmul. * relax tolerance is all you need. * make style and determinism to sd 2 depth * relax tolerance for depth. * tolerance to diffedit. * tolerance to sd 2 inpaint. * up tolerance. * determinism in upscaling. * tolerance in upscaler. * more tolerance relaxation. * determinism to v pred. * up tol for v_pred * unclip determinism * determinism to unclip img2img * determinism to text to video. * determinism to last set of tests * up tol. * vq cumsum doesn't have a deterministic kernel * relax tol * relax tol
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- 13 Apr, 2023 1 commit
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Patrick von Platen authored
* [Tests] parallelize * finish folder structuring * Parallelize tests more * Correct saving of pipelines * make sure logging level is correct * try again * Apply suggestions from code review Co-authored-by:
Pedro Cuenca <pedro@huggingface.co> --------- Co-authored-by:
Pedro Cuenca <pedro@huggingface.co>
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- 22 Mar, 2023 1 commit
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Pedro Cuenca authored
* Remove warmup passes in mps tests. * Update mps docs: no warmup pass in PyTorch 2 * Update imports.
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- 01 Mar, 2023 1 commit
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Patrick von Platen authored
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- 28 Oct, 2022 1 commit
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Patrick von Platen authored
* improve tests * up * finish * upload * add init * up * finish vae * finish * reduce loading time with device_map * remove device_map from CPU * uP
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- 03 Oct, 2022 1 commit
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Patrick von Platen authored
* [Utils] Add deprecate function * up * up * uP * up * up * up * up * uP * up * fix * up * move to deprecation utils file * fix * fix * fix more
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- 12 Sep, 2022 1 commit
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Kashif Rasul authored
* update expected results of slow tests * relax sum and mean tests * Print shapes when reporting exception * formatting * fix sentence * relax test_stable_diffusion_fast_ddim for gpu fp16 * relax flakey tests on GPU * added comment on large tolerences * black * format * set scheduler seed * added generator * use np.isclose * set num_inference_steps to 50 * fix dep. warning * update expected_slice * preprocess if image * updated expected results * updated expected from CI * pass generator to VAE * undo change back to orig * use orignal * revert back the expected on cpu * revert back values for CPU * more undo * update result after using gen * update mean * set generator for mps * update expected on CI server * undo * use new seed every time * cpu manual seed * reduce num_inference_steps * style * use generator for randn Co-authored-by:Patrick von Platen <patrick.v.platen@gmail.com>
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- 08 Sep, 2022 1 commit
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Pedro Cuenca authored
* Initial support for mps in Stable Diffusion pipeline. * Initial "warmup" implementation when using mps. * Make some deterministic tests pass with mps. * Disable training tests when using mps. * SD: generate latents in CPU then move to device. This is especially important when using the mps device, because generators are not supported there. See for example https://github.com/pytorch/pytorch/issues/84288. In addition, the other pipelines seem to use the same approach: generate the random samples then move to the appropriate device. After this change, generating an image in MPS produces the same result as when using the CPU, if the same seed is used. * Remove prints. * Pass AutoencoderKL test_output_pretrained with mps. Sampling from `posterior` must be done in CPU. * Style * Do not use torch.long for log op in mps device. * Perform incompatible padding ops in CPU. UNet tests now pass. See https://github.com/pytorch/pytorch/issues/84535 * Style: fix import order. * Remove unused symbols. * Remove MPSWarmupMixin, do not apply automatically. We do apply warmup in the tests, but not during normal use. This adopts some PR suggestions by @patrickvonplaten. * Add comment for mps fallback to CPU step. * Add README_mps.md for mps installation and use. * Apply `black` to modified files. * Restrict README_mps to SD, show measures in table. * Make PNDM indexing compatible with mps. Addresses #239. * Do not use float64 when using LDMScheduler. Fixes #358. * Fix typo identified by @patil-suraj Co-authored-by:
Suraj Patil <surajp815@gmail.com> * Adapt example to new output style. * Restore 1:1 results reproducibility with CompVis. However, mps latents need to be generated in CPU because generators don't work in the mps device. * Move PyTorch nightly to requirements. * Adapt `test_scheduler_outputs_equivalence` ton MPS. * mps: skip training tests instead of ignoring silently. * Make VQModel tests pass on mps. * mps ddim tests: warmup, increase tolerance. * ScoreSdeVeScheduler indexing made mps compatible. * Make ldm pipeline tests pass using warmup. * Style * Simplify casting as suggested in PR. * Add Known Issues to readme. * `isort` import order. * Remove _mps_warmup helpers from ModelMixin. And just make changes to the tests. * Skip tests using unittest decorator for consistency. * Remove temporary var. * Remove spurious blank space. * Remove unused symbol. * Remove README_mps. Co-authored-by:
Suraj Patil <surajp815@gmail.com> Co-authored-by: Patrick von Platen <patrick.v.platen@gmail.com>
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- 05 Sep, 2022 1 commit
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Patrick von Platen authored
* add outputs for models * add for pipelines * finish schedulers * better naming * adapt tests as well * replace dict access with . access * make schedulers works * finish * correct readme * make bcp compatible * up * small fix * finish * more fixes * more fixes * Apply suggestions from code review Co-authored-by:
Suraj Patil <surajp815@gmail.com> Co-authored-by:
Pedro Cuenca <pedro@huggingface.co> * Update src/diffusers/models/vae.py Co-authored-by:
Pedro Cuenca <pedro@huggingface.co> * Adapt model outputs * Apply more suggestions * finish examples * correct Co-authored-by:
Suraj Patil <surajp815@gmail.com> Co-authored-by:
Pedro Cuenca <pedro@huggingface.co>
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- 29 Aug, 2022 1 commit
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Patrick von Platen authored
* [Tests] Make sure tests are on GPU * move more models * speed up tests
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- 24 Aug, 2022 1 commit
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Kashif Rasul authored
* split tests_modeling_utils * Fix SD tests .to(device) * fix merge * Fix style Co-authored-by:anton-l <anton@huggingface.co>
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