lint(api): start breaking down model loading
This commit is contained in:
parent
38d3999088
commit
6b6f63564e
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@ -106,6 +106,9 @@ def get_scheduler_name(scheduler: Any) -> Optional[str]:
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return None
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VAE_COMPONENTS = ["vae", "vae_decoder", "vae_encoder"]
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def load_pipeline(
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server: ServerContext,
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params: ImageParams,
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@ -177,237 +180,28 @@ def load_pipeline(
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}
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# shared components
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text_encoder = None
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unet_type = "unet"
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# ControlNet component
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if params.is_control() and params.control is not None:
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cnet_path = path.join(
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server.model_path, "control", f"{params.control.name}.onnx"
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)
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logger.debug("loading ControlNet weights from %s", cnet_path)
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components["controlnet"] = OnnxRuntimeModel(
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OnnxRuntimeModel.load_model(
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cnet_path,
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provider=device.ort_provider(),
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sess_options=device.sess_options(),
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)
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)
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logger.debug("loading ControlNet components")
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control_components = load_controlnet(server, device, params)
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components.update(control_components)
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unet_type = "cnet"
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# Textual Inversion blending
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if inversions is not None and len(inversions) > 0:
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logger.debug("blending Textual Inversions from %s", inversions)
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inversion_names, inversion_weights = zip(*inversions)
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encoder_components = load_text_encoders(
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server, device, model, inversions, loras, torch_dtype, params
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)
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components.update(encoder_components)
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inversion_models = [
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path.join(server.model_path, "inversion", name)
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for name in inversion_names
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]
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text_encoder = load_model(path.join(model, "text_encoder", ONNX_MODEL))
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tokenizer = CLIPTokenizer.from_pretrained(
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model,
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subfolder="tokenizer",
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torch_dtype=torch_dtype,
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)
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text_encoder, tokenizer = blend_textual_inversions(
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server,
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text_encoder,
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tokenizer,
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list(
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zip(
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inversion_models,
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inversion_weights,
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inversion_names,
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[None] * len(inversion_models),
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)
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),
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)
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unet_components = load_unet(
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server, device, model, loras, unet_type, params
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)
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components.update(unet_components)
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components["tokenizer"] = tokenizer
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# should be pretty small and should not need external data
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if loras is None or len(loras) == 0:
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# TODO: handle XL encoders
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components["text_encoder"] = OnnxRuntimeModel(
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OnnxRuntimeModel.load_model(
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text_encoder.SerializeToString(),
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provider=device.ort_provider("text-encoder"),
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sess_options=device.sess_options(),
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)
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)
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# LoRA blending
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if loras is not None and len(loras) > 0:
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lora_names, lora_weights = zip(*loras)
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lora_models = [
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path.join(server.model_path, "lora", name) for name in lora_names
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]
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logger.info(
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"blending base model %s with LoRA models: %s", model, lora_models
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)
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# blend and load text encoder
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text_encoder = text_encoder or path.join(model, "text_encoder", ONNX_MODEL)
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text_encoder = blend_loras(
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server,
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text_encoder,
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list(zip(lora_models, lora_weights)),
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"text_encoder",
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1 if params.is_xl() else None,
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params.is_xl(),
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)
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(text_encoder, text_encoder_data) = buffer_external_data_tensors(
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text_encoder
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)
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text_encoder_names, text_encoder_values = zip(*text_encoder_data)
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text_encoder_opts = device.sess_options(cache=False)
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text_encoder_opts.add_external_initializers(
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list(text_encoder_names), list(text_encoder_values)
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)
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if params.is_xl():
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text_encoder_session = InferenceSession(
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text_encoder.SerializeToString(),
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providers=[device.ort_provider("text-encoder")],
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sess_options=text_encoder_opts,
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)
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text_encoder_session._model_path = path.join(model, "text_encoder")
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components["text_encoder_session"] = text_encoder_session
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else:
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components["text_encoder"] = OnnxRuntimeModel(
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OnnxRuntimeModel.load_model(
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text_encoder.SerializeToString(),
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provider=device.ort_provider("text-encoder"),
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sess_options=text_encoder_opts,
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)
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)
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if params.is_xl():
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text_encoder_2 = path.join(model, "text_encoder_2", ONNX_MODEL)
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text_encoder_2 = blend_loras(
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server,
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text_encoder_2,
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list(zip(lora_models, lora_weights)),
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"text_encoder",
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2,
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params.is_xl(),
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)
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(text_encoder_2, text_encoder_2_data) = buffer_external_data_tensors(
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text_encoder_2
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)
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text_encoder_2_names, text_encoder_2_values = zip(*text_encoder_2_data)
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text_encoder_2_opts = device.sess_options(cache=False)
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text_encoder_2_opts.add_external_initializers(
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list(text_encoder_2_names), list(text_encoder_2_values)
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)
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text_encoder_2_session = InferenceSession(
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text_encoder_2.SerializeToString(),
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providers=[device.ort_provider("text-encoder")],
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sess_options=text_encoder_2_opts,
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)
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text_encoder_2_session._model_path = path.join(model, "text_encoder_2")
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components["text_encoder_2_session"] = text_encoder_2_session
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# blend and load unet
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unet = path.join(model, unet_type, ONNX_MODEL)
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blended_unet = blend_loras(
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server,
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unet,
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list(zip(lora_models, lora_weights)),
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"unet",
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xl=params.is_xl(),
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)
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(unet_model, unet_data) = buffer_external_data_tensors(blended_unet)
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unet_names, unet_values = zip(*unet_data)
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unet_opts = device.sess_options(cache=False)
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unet_opts.add_external_initializers(list(unet_names), list(unet_values))
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if params.is_xl():
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unet_session = InferenceSession(
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unet_model.SerializeToString(),
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providers=[device.ort_provider("unet")],
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sess_options=unet_opts,
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)
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unet_session._model_path = path.join(model, "unet")
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components["unet_session"] = unet_session
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else:
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components["unet"] = OnnxRuntimeModel(
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OnnxRuntimeModel.load_model(
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unet_model.SerializeToString(),
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provider=device.ort_provider("unet"),
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sess_options=unet_opts,
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)
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)
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# make sure a UNet has been loaded
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if not params.is_xl() and "unet" not in components:
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unet = path.join(model, unet_type, ONNX_MODEL)
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logger.debug("loading UNet (%s) from %s", unet_type, unet)
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components["unet"] = OnnxRuntimeModel(
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OnnxRuntimeModel.load_model(
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unet,
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provider=device.ort_provider("unet"),
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sess_options=device.sess_options(),
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)
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)
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# one or more VAE models need to be loaded
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vae = path.join(model, "vae", ONNX_MODEL)
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vae_decoder = path.join(model, "vae_decoder", ONNX_MODEL)
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vae_encoder = path.join(model, "vae_encoder", ONNX_MODEL)
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if not params.is_xl() and path.exists(vae):
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logger.debug("loading VAE from %s", vae)
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components["vae"] = OnnxRuntimeModel(
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OnnxRuntimeModel.load_model(
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vae,
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provider=device.ort_provider("vae"),
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sess_options=device.sess_options(),
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)
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)
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elif path.exists(vae_decoder) and path.exists(vae_encoder):
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if params.is_xl():
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logger.debug("loading VAE decoder from %s", vae_decoder)
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components["vae_decoder_session"] = OnnxRuntimeModel.load_model(
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vae_decoder,
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provider=device.ort_provider("vae"),
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sess_options=device.sess_options(),
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)
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components[
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"vae_decoder_session"
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]._model_path = vae_decoder # "#\\not a real path on any system"
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logger.debug("loading VAE encoder from %s", vae_encoder)
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components["vae_encoder_session"] = OnnxRuntimeModel.load_model(
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vae_encoder,
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provider=device.ort_provider("vae"),
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sess_options=device.sess_options(),
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)
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components[
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"vae_encoder_session"
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]._model_path = vae_encoder # "#\\not a real path on any system"
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else:
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logger.debug("loading VAE decoder from %s", vae_decoder)
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components["vae_decoder"] = OnnxRuntimeModel(
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OnnxRuntimeModel.load_model(
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vae_decoder,
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provider=device.ort_provider("vae"),
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sess_options=device.sess_options(),
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)
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)
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logger.debug("loading VAE encoder from %s", vae_encoder)
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components["vae_encoder"] = OnnxRuntimeModel(
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OnnxRuntimeModel.load_model(
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vae_encoder,
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provider=device.ort_provider("vae"),
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sess_options=device.sess_options(),
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)
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)
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vae_components = load_vae(server, device, model)
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components.update(vae_components)
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# additional options for panorama pipeline
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if params.is_panorama():
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@ -427,19 +221,22 @@ def load_pipeline(
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# make sure XL models are actually being used
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if "text_encoder_session" in components:
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pipe.text_encoder = ORTModelTextEncoder(text_encoder_session, text_encoder)
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pipe.text_encoder = ORTModelTextEncoder(
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components["text_encoder_session"], pipe
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)
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if "text_encoder_2_session" in components:
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pipe.text_encoder_2 = ORTModelTextEncoder(
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text_encoder_2_session, text_encoder_2
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components["text_encoder_2_session"], pipe
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)
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if "unet_session" in components:
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# unload old UNet first
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# unload old UNet
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pipe.unet = None
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run_gc([device])
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# load correct one
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pipe.unet = ORTModelUnet(unet_session, unet_model)
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# attach correct one
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pipe.unet = ORTModelUnet(components["unet_session"], pipe)
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if "vae_decoder_session" in components:
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pipe.vae_decoder = ORTModelVaeDecoder(
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@ -462,11 +259,9 @@ def load_pipeline(
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server.cache.set(ModelTypes.diffusion, pipe_key, pipe)
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server.cache.set(ModelTypes.scheduler, scheduler_key, components["scheduler"])
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if hasattr(pipe, "vae_decoder"):
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pipe.vae_decoder.set_tiled(tiled=params.tiled_vae)
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if hasattr(pipe, "vae_encoder"):
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pipe.vae_encoder.set_tiled(tiled=params.tiled_vae)
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for vae in VAE_COMPONENTS:
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if hasattr(pipe, vae):
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getattr(pipe, vae).set_tiled(tiled=params.tiled_vae)
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# update panorama params
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if params.is_panorama():
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@ -474,16 +269,262 @@ def load_pipeline(
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latent_stride = params.stride // 8
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pipe.set_window_size(latent_window, latent_stride)
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if hasattr(pipe, "vae_decoder"):
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pipe.vae_decoder.set_window_size(latent_window, params.overlap)
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if hasattr(pipe, "vae_encoder"):
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pipe.vae_encoder.set_window_size(latent_window, params.overlap)
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for vae in VAE_COMPONENTS:
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if hasattr(pipe, vae):
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getattr(pipe, vae).set_window_size(latent_window, params.overlap)
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run_gc([device])
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return pipe
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def load_controlnet(server, device, params):
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cnet_path = path.join(server.model_path, "control", f"{params.control.name}.onnx")
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logger.debug("loading ControlNet weights from %s", cnet_path)
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components = {}
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components["controlnet"] = OnnxRuntimeModel(
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OnnxRuntimeModel.load_model(
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cnet_path,
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provider=device.ort_provider(),
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sess_options=device.sess_options(),
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)
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)
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return components
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def load_text_encoders(
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server, device, model: str, inversions, loras, torch_dtype, params
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):
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text_encoder = load_model(path.join(model, "text_encoder", ONNX_MODEL))
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tokenizer = CLIPTokenizer.from_pretrained(
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model,
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subfolder="tokenizer",
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torch_dtype=torch_dtype,
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)
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components = {}
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components["tokenizer"] = tokenizer
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if inversions is not None and len(inversions) > 0:
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logger.debug("blending Textual Inversions from %s", inversions)
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inversion_names, inversion_weights = zip(*inversions)
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inversion_models = [
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path.join(server.model_path, "inversion", name) for name in inversion_names
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]
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text_encoder, tokenizer = blend_textual_inversions(
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server,
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text_encoder,
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tokenizer,
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list(
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zip(
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inversion_models,
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inversion_weights,
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inversion_names,
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[None] * len(inversion_models),
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)
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),
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)
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# should be pretty small and should not need external data
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if loras is None or len(loras) == 0:
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# TODO: handle XL encoders
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components["text_encoder"] = OnnxRuntimeModel(
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OnnxRuntimeModel.load_model(
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text_encoder.SerializeToString(),
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provider=device.ort_provider("text-encoder"),
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sess_options=device.sess_options(),
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)
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)
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else:
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# blend and load text encoder
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lora_names, lora_weights = zip(*loras)
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lora_models = [
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path.join(server.model_path, "lora", name) for name in lora_names
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]
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logger.info("blending base model %s with LoRA models: %s", model, lora_models)
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text_encoder = blend_loras(
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server,
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text_encoder,
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list(zip(lora_models, lora_weights)),
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"text_encoder",
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1 if params.is_xl() else None,
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params.is_xl(),
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)
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(text_encoder, text_encoder_data) = buffer_external_data_tensors(text_encoder)
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text_encoder_names, text_encoder_values = zip(*text_encoder_data)
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text_encoder_opts = device.sess_options(cache=False)
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text_encoder_opts.add_external_initializers(
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list(text_encoder_names), list(text_encoder_values)
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)
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if params.is_xl():
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text_encoder_session = InferenceSession(
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text_encoder.SerializeToString(),
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providers=[device.ort_provider("text-encoder")],
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sess_options=text_encoder_opts,
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)
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text_encoder_session._model_path = path.join(model, "text_encoder")
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components["text_encoder_session"] = text_encoder_session
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else:
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components["text_encoder"] = OnnxRuntimeModel(
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OnnxRuntimeModel.load_model(
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text_encoder.SerializeToString(),
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provider=device.ort_provider("text-encoder"),
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sess_options=text_encoder_opts,
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)
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)
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if params.is_xl():
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text_encoder_2 = path.join(model, "text_encoder_2", ONNX_MODEL)
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text_encoder_2 = blend_loras(
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server,
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text_encoder_2,
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list(zip(lora_models, lora_weights)),
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"text_encoder",
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2,
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params.is_xl(),
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)
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(text_encoder_2, text_encoder_2_data) = buffer_external_data_tensors(
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text_encoder_2
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)
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text_encoder_2_names, text_encoder_2_values = zip(*text_encoder_2_data)
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text_encoder_2_opts = device.sess_options(cache=False)
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text_encoder_2_opts.add_external_initializers(
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list(text_encoder_2_names), list(text_encoder_2_values)
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)
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text_encoder_2_session = InferenceSession(
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text_encoder_2.SerializeToString(),
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providers=[device.ort_provider("text-encoder")],
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sess_options=text_encoder_2_opts,
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)
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text_encoder_2_session._model_path = path.join(model, "text_encoder_2")
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components["text_encoder_2_session"] = text_encoder_2_session
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return components
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def load_unet(server, device, model, loras, unet_type, params):
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components = {}
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unet = path.join(model, unet_type, ONNX_MODEL)
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# LoRA blending
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if loras is not None and len(loras) > 0:
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lora_names, lora_weights = zip(*loras)
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lora_models = [
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path.join(server.model_path, "lora", name) for name in lora_names
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]
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logger.info("blending base model %s with LoRA models: %s", model, lora_models)
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# blend and load unet
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blended_unet = blend_loras(
|
||||
server,
|
||||
unet,
|
||||
list(zip(lora_models, lora_weights)),
|
||||
"unet",
|
||||
xl=params.is_xl(),
|
||||
)
|
||||
(unet_model, unet_data) = buffer_external_data_tensors(blended_unet)
|
||||
unet_names, unet_values = zip(*unet_data)
|
||||
unet_opts = device.sess_options(cache=False)
|
||||
unet_opts.add_external_initializers(list(unet_names), list(unet_values))
|
||||
|
||||
if params.is_xl():
|
||||
unet_session = InferenceSession(
|
||||
unet_model.SerializeToString(),
|
||||
providers=[device.ort_provider("unet")],
|
||||
sess_options=unet_opts,
|
||||
)
|
||||
unet_session._model_path = path.join(model, "unet")
|
||||
components["unet_session"] = unet_session
|
||||
else:
|
||||
components["unet"] = OnnxRuntimeModel(
|
||||
OnnxRuntimeModel.load_model(
|
||||
unet_model.SerializeToString(),
|
||||
provider=device.ort_provider("unet"),
|
||||
sess_options=unet_opts,
|
||||
)
|
||||
)
|
||||
|
||||
# make sure a UNet has been loaded
|
||||
if not params.is_xl() and "unet" not in components:
|
||||
unet = path.join(model, unet_type, ONNX_MODEL)
|
||||
logger.debug("loading UNet (%s) from %s", unet_type, unet)
|
||||
components["unet"] = OnnxRuntimeModel(
|
||||
OnnxRuntimeModel.load_model(
|
||||
unet,
|
||||
provider=device.ort_provider("unet"),
|
||||
sess_options=device.sess_options(),
|
||||
)
|
||||
)
|
||||
|
||||
return components
|
||||
|
||||
|
||||
def load_vae(server, device, model, params):
|
||||
# one or more VAE models need to be loaded
|
||||
vae = path.join(model, "vae", ONNX_MODEL)
|
||||
vae_decoder = path.join(model, "vae_decoder", ONNX_MODEL)
|
||||
vae_encoder = path.join(model, "vae_encoder", ONNX_MODEL)
|
||||
|
||||
components = {}
|
||||
if not params.is_xl() and path.exists(vae):
|
||||
logger.debug("loading VAE from %s", vae)
|
||||
components["vae"] = OnnxRuntimeModel(
|
||||
OnnxRuntimeModel.load_model(
|
||||
vae,
|
||||
provider=device.ort_provider("vae"),
|
||||
sess_options=device.sess_options(),
|
||||
)
|
||||
)
|
||||
elif path.exists(vae_decoder) and path.exists(vae_encoder):
|
||||
if params.is_xl():
|
||||
logger.debug("loading VAE decoder from %s", vae_decoder)
|
||||
components["vae_decoder_session"] = OnnxRuntimeModel.load_model(
|
||||
vae_decoder,
|
||||
provider=device.ort_provider("vae"),
|
||||
sess_options=device.sess_options(),
|
||||
)
|
||||
components[
|
||||
"vae_decoder_session"
|
||||
]._model_path = vae_decoder
|
||||
|
||||
logger.debug("loading VAE encoder from %s", vae_encoder)
|
||||
components["vae_encoder_session"] = OnnxRuntimeModel.load_model(
|
||||
vae_encoder,
|
||||
provider=device.ort_provider("vae"),
|
||||
sess_options=device.sess_options(),
|
||||
)
|
||||
components[
|
||||
"vae_encoder_session"
|
||||
]._model_path = vae_encoder
|
||||
|
||||
else:
|
||||
logger.debug("loading VAE decoder from %s", vae_decoder)
|
||||
components["vae_decoder"] = OnnxRuntimeModel(
|
||||
OnnxRuntimeModel.load_model(
|
||||
vae_decoder,
|
||||
provider=device.ort_provider("vae"),
|
||||
sess_options=device.sess_options(),
|
||||
)
|
||||
)
|
||||
|
||||
logger.debug("loading VAE encoder from %s", vae_encoder)
|
||||
components["vae_encoder"] = OnnxRuntimeModel(
|
||||
OnnxRuntimeModel.load_model(
|
||||
vae_encoder,
|
||||
provider=device.ort_provider("vae"),
|
||||
sess_options=device.sess_options(),
|
||||
)
|
||||
)
|
||||
|
||||
return components
|
||||
|
||||
|
||||
def optimize_pipeline(
|
||||
server: ServerContext,
|
||||
pipe: StableDiffusionPipeline,
|
||||
|
|
|
@ -11,7 +11,6 @@ from onnx_web.diffusers.load import (
|
|||
)
|
||||
from onnx_web.diffusers.patches.unet import UNetWrapper
|
||||
from onnx_web.diffusers.patches.vae import VAEWrapper
|
||||
from onnx_web.diffusers.utils import expand_prompt
|
||||
from onnx_web.params import ImageParams
|
||||
from onnx_web.server.context import ServerContext
|
||||
from tests.mocks import MockPipeline
|
||||
|
|
|
@ -26,6 +26,7 @@
|
|||
"bokeh",
|
||||
"Civitai",
|
||||
"ckpt",
|
||||
"cnet",
|
||||
"codebook",
|
||||
"codeformer",
|
||||
"controlnet",
|
||||
|
@ -53,6 +54,8 @@
|
|||
"KDPM",
|
||||
"Knollingcase",
|
||||
"Lanczos",
|
||||
"loha",
|
||||
"loras",
|
||||
"Multistep",
|
||||
"ndarray",
|
||||
"numpy",
|
||||
|
|
Loading…
Reference in New Issue