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Nov 28th, 2022
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  1. 2022-11-28T05:08:58.000Z 2022-11-28 05:09:04.808803 {'type': 'init', 'status': 'start', 'container_id': '9211ed671affc2eb31641ed8981bef11bc820e13d5a1f42245b7e5ebf92c9a15', 'time': 1669612144809, 't': 0, 'tsl': 266, 'payload': {'device': 'NVIDIA A100-SXM4-40GB', 'hostname': 'zoultrexbananasdtest00654686fdf028d4cbca7570c1074fd0ccd-8fgkhv2', 'model_id': 'runwayml/stable-diffusion-v1-5', 'diffusers': '0.8.0.dev0'}, 'init': True}
  2. Loading model: runwayml/stable-diffusion-v1-5
  3. Initializing LMSDiscreteScheduler for runwayml/stable-diffusion-v1-5...
  4. /api/diffusers/src/diffusers/utils/deprecation_utils.py:35: DeprecationWarning: It is deprecated to pass a pretrained model name or path to `from_config`.If you were trying to load a scheduler, please use <class 'diffusers.schedulers.scheduling_lms_discrete.LMSDiscreteScheduler'>.from_pretrained(...) instead. Otherwise, please make sure to pass a configuration dictionary instead. This functionality will be removed in v1.0.0.
  5. warnings.warn(warning + message, DeprecationWarning)
  6. Initialized LMSDiscreteScheduler for runwayml/stable-diffusion-v1-5 in 4ms
  7. <frozen importlib._bootstrap>:283: DeprecationWarning: the load_module() method is deprecated and slated for removal in Python 3.12; use exec_module() instead
  8.  
  9. 2022-11-28 05:09:11.523495 {'type': 'init', 'status': 'done', 'container_id': '9211ed671affc2eb31641ed8981bef11bc820e13d5a1f42245b7e5ebf92c9a15', 'time': 1669612151523, 't': 6714, 'tsl': 6714, 'payload': {}}
  10. [2022-11-28 05:09:11 +0000] [25] [INFO] Sanic v22.6.2
  11. [2022-11-28 05:09:11 +0000] [25] [INFO] Goin' Fast @ http://0.0.0.0:8000
  12. [2022-11-28 05:09:11 +0000] [25] [INFO] mode: production, single worker
  13. [2022-11-28 05:09:11 +0000] [25] [INFO] server: sanic, HTTP/1.1
  14. [2022-11-28 05:09:11 +0000] [25] [INFO] python: 3.10.8
  15. [2022-11-28 05:09:11 +0000] [25] [INFO] platform: Linux-5.15.0-46-generic-x86_64-with-glibc2.27
  16. [2022-11-28 05:09:11 +0000] [25] [INFO] packages: sanic-routing==22.3.0
  17. [2022-11-28 05:09:11 +0000] - (sanic.access)[INFO][127.0.0.1:48634]: GET http://0.0.0.0:8000/ 405 96
  18. [2022-11-28 05:09:11 +0000] [25] [INFO] Starting worker [25]
  19. {
  20. "modelInputs": {
  21. "instance_prompt": "a photo of sks dog",
  22. "instance_images": [
  23. "/9j/4A..."
  24. ]
  25. },
  26. "callInputs": {
  27. "MODEL_ID": "runwayml/stable-diffusion-v1-5",
  28. "PIPELINE": "StableDiffusionPipeline",
  29. "SCHEDULER": "DDPMScheduler",
  30. "train": "dreambooth"
  31. }
  32. }
  33. Initializing DDPMScheduler for runwayml/stable-diffusion-v1-5...
  34. /api/diffusers/src/diffusers/utils/deprecation_utils.py:35: DeprecationWarning: It is deprecated to pass a pretrained model name or path to `from_config`.If you were trying to load a scheduler, please use <class 'diffusers.schedulers.scheduling_ddpm.DDPMScheduler'>.from_pretrained(...) instead. Otherwise, please make sure to pass a configuration dictionary instead. This functionality will be removed in v1.0.0.
  35. warnings.warn(warning + message, DeprecationWarning)
  36. Initialized DDPMScheduler for runwayml/stable-diffusion-v1-5 in 2ms
  37. Decoded image "instance_image": JPEG 1200x1200
  38. 2022-11-28 05:09:12.569081 {'type': 'inference', 'status': 'start', 'container_id': '9211ed671affc2eb31641ed8981bef11bc820e13d5a1f42245b7e5ebf92c9a15', 'time': 1669612152569, 't': 0, 'tsl': 1046, 'payload': {'startRequestId': None}, 'init': True}
  39. pipeline.enable_xformers_memory_efficient_attention()
  40. USE_DREAMBOOTH: True
  41. 2022-11-28 05:09:12.572585 {'type': 'train', 'status': 'about to start', 'container_id': '9211ed671affc2eb31641ed8981bef11bc820e13d5a1f42245b7e5ebf92c9a15', 'time': 1669612152573, 't': 0, 'tsl': 4, 'payload': {'all_inputs': '{\n "modelInputs": {\n "instance_prompt": "a photo of sks dog",\n "instance_images": [\n "/9j/4A..."\n ]\n },\n "callInputs": {\n "MODEL_ID": "runwayml/stable-diffusion-v1-5",\n "PIPELINE": "StableDiffusionPipeline",\n "SCHEDULER": "DDPMScheduler",\n "train": "dreambooth"\n }\n}'}, 'init': True}
  42. {'instance_prompt': 'a photo of sks dog'}
  43. Namespace(pretrained_model_name_or_path='runwayml/stable-diffusion-v1-5', revision=None, tokenizer_name=None, instance_data_dir='instance_data_dir', class_data_dir='class_data_dir', class_prompt=None, with_prior_preservation=False, prior_loss_weight=1.0, num_class_images=100, output_dir='text-inversion-model', seed=None, resolution=512, center_crop=None, train_text_encoder=None, train_batch_size=1, sample_batch_size=1, num_train_epochs=1, max_train_steps=800, gradient_accumulation_steps=1, gradient_checkpointing=True, learning_rate=5e-06, scale_lr=False, lr_scheduler='constant', lr_warmup_steps=0, use_8bit_adam=True, adam_beta1=0.9, adam_beta2=0.999, adam_weight_decay=1e-06, adam_epsilon=1e-08, max_grad_norm=1.0, push_to_hub=None, hub_token='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', hub_model_id=None, logging_dir='logs', mixed_precision=None, local_rank=-1, instance_prompt='a photo of sks dog')
  44. total 776
  45. -rw-r--r-- 1 root root 793165 Nov 28 05:09 image0.png
  46. 2022-11-28 05:09:12.953390 {'type': 'training', 'status': 'start', 'container_id': '9211ed671affc2eb31641ed8981bef11bc820e13d5a1f42245b7e5ebf92c9a15', 'time': 1669612152953, 't': 0, 'tsl': 380, 'payload': {}, 'init': True}
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