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256 lines
9.4 KiB
Python
256 lines
9.4 KiB
Python
# Copyright 2026-present the HuggingFace Inc. team.
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#
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# Licensed under the Apache License, Version 2.0 (the "License");
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# you may not use this file except in compliance with the License.
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# You may obtain a copy of the License at
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#
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# http://www.apache.org/licenses/LICENSE-2.0
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#
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# Unless required by applicable law or agreed to in writing, software
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# distributed under the License is distributed on an "AS IS" BASIS,
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# WITHOUT WARRANTIES OR CONDITIONS OF ANY KIND, either express or implied.
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# See the License for the specific language governing permissions and
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# limitations under the License.
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"""Evaluate an existing checkpoint from the image generation method comparison.
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Loads a trained PEFT checkpoint on top of the same base model that was used for training and runs the same evaluation
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as at the end of a training run (test set DINOv2 similarity, drift), then generates the sample images. The results and
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sample images are always stored as temporary results.
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Example:
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python evaluate.py -v /path/to/checkpoint/
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The checkpoint directory must contain the trained PEFT adapter (i.e. an adapter_config.json and the adapter weights).
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This can e.g. be the temporary directory reported by run.py when called without the --clean flag or a checkpoint
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downloaded from the Hugging Face Hub bucket. The training parameters are taken from default_training_params.json; if
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the checkpoint was trained with different parameters, place the corresponding training_params.json into the checkpoint
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directory.
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"""
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import argparse
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import datetime as dt
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import os
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import sys
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import time
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from collections.abc import Callable
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import torch
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from run import evaluate, generate_sample_images, measure_drift
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from transformers import set_seed
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from utils import (
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FILE_NAME_TRAIN_PARAMS,
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RESULT_PATH_TEST,
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SAMPLE_IMAGE_PATH_TEST,
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TrainConfig,
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TrainResult,
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TrainStatus,
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get_artifact_stem,
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get_base_model_info,
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get_dataset_info,
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get_dino_encoder,
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get_file_size,
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get_pipeline,
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get_train_config,
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init_accelerator,
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log_results,
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)
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from data import get_train_valid_test_datasets
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from peft import PeftConfig, PeftModel
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from peft.utils import CONFIG_NAME, infer_device
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def get_experiment_name(path_checkpoint: str) -> str:
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if not os.path.isdir(path_checkpoint):
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raise FileNotFoundError(f"Path {path_checkpoint} does not exist or is not a directory")
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return os.path.basename(os.path.normpath(path_checkpoint))
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def evaluate_checkpoint(
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*,
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pipeline,
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train_config: TrainConfig,
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print_verbose: Callable[..., None],
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) -> TrainResult:
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metrics = []
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device_type = infer_device()
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_, _, test_dataset = get_train_valid_test_datasets(train_config=train_config, print_fn=print_verbose)
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processor, dino_model = get_dino_encoder(train_config.dino_model_id, train_config.dino_image_size)
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torch_accelerator_module = getattr(torch, device_type, torch.cuda)
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transformer = pipeline.transformer.to(device_type)
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transformer.eval()
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if hasattr(transformer, "get_nb_trainable_parameters"):
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num_trainable_params, num_params = transformer.get_nb_trainable_parameters()
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else:
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num_params = sum(param.numel() for param in transformer.parameters())
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num_trainable_params = sum(param.numel() for param in transformer.parameters() if param.requires_grad)
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print_verbose(
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f"trainable params: {num_trainable_params:,d} || all params: {num_params:,d} || "
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f"trainable: {100 * num_trainable_params / num_params:.4f}%"
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)
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status = TrainStatus.FAILED
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error_msg = ""
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tic_eval_total = time.perf_counter()
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torch_accelerator_module.empty_cache()
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try:
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print_verbose("Evaluation on test set follows.")
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test_similarity = evaluate(
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pipeline=pipeline,
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ds_eval=test_dataset,
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processor=processor,
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dino_model=dino_model,
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config=train_config,
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num_repeats=3,
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)
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print_verbose("Calculating drift.")
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test_drift = measure_drift(pipeline=pipeline, processor=processor, dino_model=dino_model, config=train_config)
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metrics.append(
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{
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"test dino_similarity": test_similarity,
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"drift": test_drift,
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"eval time": time.perf_counter() - tic_eval_total,
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}
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)
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print_verbose(f"Test DINOv2 similarity: {test_similarity:.4f}")
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print_verbose(f"Test drift: {test_drift:.4f}")
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except KeyboardInterrupt:
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print_verbose("canceled evaluation")
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status = TrainStatus.CANCELED
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error_msg = "manually canceled"
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except torch.OutOfMemoryError as exc:
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print_verbose("out of memory error encountered")
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status = TrainStatus.CANCELED
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error_msg = str(exc)
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except Exception as exc:
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print_verbose(f"encountered an error: {exc}")
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status = TrainStatus.CANCELED
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error_msg = str(exc)
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if status != TrainStatus.CANCELED:
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status = TrainStatus.SUCCESS
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# the train-related attributes are set to empty/zero values, as no training is performed
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eval_result = TrainResult(
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status=status,
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train_time=0.0,
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accelerator_memory_reserved_log=[],
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accelerator_memory_max_train=0,
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losses=[],
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metrics=metrics,
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error_msg=error_msg,
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num_trainable_params=num_trainable_params,
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num_total_params=num_params,
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)
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return eval_result
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def main(*, path_checkpoint: str, experiment_name: str) -> None:
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tic_total = time.perf_counter()
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start_date = dt.datetime.now(tz=dt.timezone.utc).replace(microsecond=0).isoformat()
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print_verbose("===== The results of this evaluation run are stored as temporary results ======")
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if not os.path.exists(os.path.join(path_checkpoint, CONFIG_NAME)):
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raise FileNotFoundError(
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f"Could not find a PEFT config at {path_checkpoint}. Note that evaluating full fine-tuning checkpoints is "
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"not supported."
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)
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peft_config = PeftConfig.from_pretrained(path_checkpoint)
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path_train_config = os.path.join(path_checkpoint, FILE_NAME_TRAIN_PARAMS)
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if not os.path.exists(path_train_config):
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print_verbose(
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f"Could not find {FILE_NAME_TRAIN_PARAMS} in {path_checkpoint}, using the default training parameters"
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)
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train_config = get_train_config(path_train_config)
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init_accelerator()
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set_seed(train_config.seed)
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model_info = get_base_model_info(train_config.model_id)
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dataset_info = get_dataset_info(train_config.dataset_id)
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# create the pipeline with the plain base model first, then load the trained adapter onto it; compilation, if
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# enabled, must come last, mirroring the order in get_pipeline
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pipeline = get_pipeline(
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model_id=train_config.model_id,
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dtype=train_config.dtype,
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compile=False,
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peft_config=None,
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autocast_adapter_dtype=train_config.autocast_adapter_dtype,
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use_gc=train_config.use_gc,
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)
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pipeline.transformer = PeftModel.from_pretrained(
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pipeline.transformer,
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path_checkpoint,
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is_trainable=True, # to report the same number of trainable parameters as during training
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autocast_adapter_dtype=train_config.autocast_adapter_dtype,
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)
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if train_config.compile:
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pipeline.transformer = torch.compile(pipeline.transformer, dynamic=True)
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print_verbose(pipeline.transformer)
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eval_result = evaluate_checkpoint(
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pipeline=pipeline,
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train_config=train_config,
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print_verbose=print_verbose,
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)
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file_size = get_file_size(pipeline.transformer, peft_config=peft_config, clean=True, print_fn=print_verbose)
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time_total = time.perf_counter() - tic_total
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log_results(
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experiment_name=experiment_name,
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train_result=eval_result,
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time_total=time_total,
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file_size=file_size,
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model_info=model_info,
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dataset_info=dataset_info,
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start_date=start_date,
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train_config=train_config,
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peft_config=peft_config,
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print_fn=print_verbose,
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save_dir=RESULT_PATH_TEST, # results of evaluation-only runs are always treated as temporary results
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)
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if (eval_result.status == TrainStatus.SUCCESS) and train_config.sample_image_prompts:
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print_verbose("Generating sample images")
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try:
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file_stem = get_artifact_stem(experiment_name, start_date, SAMPLE_IMAGE_PATH_TEST)
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generate_sample_images(
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pipeline=pipeline,
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train_config=train_config,
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sample_image_dir=SAMPLE_IMAGE_PATH_TEST,
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file_stem=file_stem,
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)
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print_verbose(f"Stored sample images in {SAMPLE_IMAGE_PATH_TEST}")
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except Exception as exc:
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print_verbose(f"Sample image generation failed: {exc}")
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if __name__ == "__main__":
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parser = argparse.ArgumentParser()
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parser.add_argument("-v", "--verbose", action="store_true", help="Enable verbose output")
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parser.add_argument(
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"path_checkpoint", type=str, help="Path to the directory containing the trained PEFT checkpoint"
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)
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args = parser.parse_args()
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experiment_name = get_experiment_name(args.path_checkpoint)
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if args.verbose:
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def print_verbose(*args, **kwargs) -> None:
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kwargs["file"] = sys.stderr
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print(*args, **kwargs)
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else:
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def print_verbose(*args, **kwargs) -> None:
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pass
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main(path_checkpoint=args.path_checkpoint, experiment_name=experiment_name)
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