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speed.py
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speed.py
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# coding: utf-8
"""
Benchmark the inference speed of each module in LivePortrait.
TODO: heavy GPT style, need to refactor
"""
import yaml
import torch
import time
import numpy as np
from src.utils.helper import load_model, concat_feat
from src.config.inference_config import InferenceConfig
def initialize_inputs(batch_size=1):
"""
Generate random input tensors and move them to GPU
"""
feature_3d = torch.randn(batch_size, 32, 16, 64, 64).cuda().half()
kp_source = torch.randn(batch_size, 21, 3).cuda().half()
kp_driving = torch.randn(batch_size, 21, 3).cuda().half()
source_image = torch.randn(batch_size, 3, 256, 256).cuda().half()
generator_input = torch.randn(batch_size, 256, 64, 64).cuda().half()
eye_close_ratio = torch.randn(batch_size, 3).cuda().half()
lip_close_ratio = torch.randn(batch_size, 2).cuda().half()
feat_stitching = concat_feat(kp_source, kp_driving).half()
feat_eye = concat_feat(kp_source, eye_close_ratio).half()
feat_lip = concat_feat(kp_source, lip_close_ratio).half()
inputs = {
'feature_3d': feature_3d,
'kp_source': kp_source,
'kp_driving': kp_driving,
'source_image': source_image,
'generator_input': generator_input,
'feat_stitching': feat_stitching,
'feat_eye': feat_eye,
'feat_lip': feat_lip
}
return inputs
def load_and_compile_models(cfg, model_config):
"""
Load and compile models for inference
"""
appearance_feature_extractor = load_model(cfg.checkpoint_F, model_config, cfg.device, 'appearance_feature_extractor')
motion_extractor = load_model(cfg.checkpoint_M, model_config, cfg.device, 'motion_extractor')
warping_module = load_model(cfg.checkpoint_W, model_config, cfg.device, 'warping_module')
spade_generator = load_model(cfg.checkpoint_G, model_config, cfg.device, 'spade_generator')
stitching_retargeting_module = load_model(cfg.checkpoint_S, model_config, cfg.device, 'stitching_retargeting_module')
models_with_params = [
('Appearance Feature Extractor', appearance_feature_extractor),
('Motion Extractor', motion_extractor),
('Warping Network', warping_module),
('SPADE Decoder', spade_generator)
]
compiled_models = {}
for name, model in models_with_params:
model = model.half()
model = torch.compile(model, mode='max-autotune') # Optimize for inference
model.eval() # Switch to evaluation mode
compiled_models[name] = model
retargeting_models = ['stitching', 'eye', 'lip']
for retarget in retargeting_models:
module = stitching_retargeting_module[retarget].half()
module = torch.compile(module, mode='max-autotune') # Optimize for inference
module.eval() # Switch to evaluation mode
stitching_retargeting_module[retarget] = module
return compiled_models, stitching_retargeting_module
def warm_up_models(compiled_models, stitching_retargeting_module, inputs):
"""
Warm up models to prepare them for benchmarking
"""
print("Warm up start!")
with torch.no_grad():
for _ in range(10):
compiled_models['Appearance Feature Extractor'](inputs['source_image'])
compiled_models['Motion Extractor'](inputs['source_image'])
compiled_models['Warping Network'](inputs['feature_3d'], inputs['kp_driving'], inputs['kp_source'])
compiled_models['SPADE Decoder'](inputs['generator_input']) # Adjust input as required
stitching_retargeting_module['stitching'](inputs['feat_stitching'])
stitching_retargeting_module['eye'](inputs['feat_eye'])
stitching_retargeting_module['lip'](inputs['feat_lip'])
print("Warm up end!")
def measure_inference_times(compiled_models, stitching_retargeting_module, inputs):
"""
Measure inference times for each model
"""
times = {name: [] for name in compiled_models.keys()}
times['Retargeting Models'] = []
overall_times = []
with torch.no_grad():
for _ in range(100):
torch.cuda.synchronize()
overall_start = time.time()
start = time.time()
compiled_models['Appearance Feature Extractor'](inputs['source_image'])
torch.cuda.synchronize()
times['Appearance Feature Extractor'].append(time.time() - start)
start = time.time()
compiled_models['Motion Extractor'](inputs['source_image'])
torch.cuda.synchronize()
times['Motion Extractor'].append(time.time() - start)
start = time.time()
compiled_models['Warping Network'](inputs['feature_3d'], inputs['kp_driving'], inputs['kp_source'])
torch.cuda.synchronize()
times['Warping Network'].append(time.time() - start)
start = time.time()
compiled_models['SPADE Decoder'](inputs['generator_input']) # Adjust input as required
torch.cuda.synchronize()
times['SPADE Decoder'].append(time.time() - start)
start = time.time()
stitching_retargeting_module['stitching'](inputs['feat_stitching'])
stitching_retargeting_module['eye'](inputs['feat_eye'])
stitching_retargeting_module['lip'](inputs['feat_lip'])
torch.cuda.synchronize()
times['Retargeting Models'].append(time.time() - start)
overall_times.append(time.time() - overall_start)
return times, overall_times
def print_benchmark_results(compiled_models, stitching_retargeting_module, retargeting_models, times, overall_times):
"""
Print benchmark results with average and standard deviation of inference times
"""
average_times = {name: np.mean(times[name]) * 1000 for name in times.keys()}
std_times = {name: np.std(times[name]) * 1000 for name in times.keys()}
for name, model in compiled_models.items():
num_params = sum(p.numel() for p in model.parameters())
num_params_in_millions = num_params / 1e6
print(f"Number of parameters for {name}: {num_params_in_millions:.2f} M")
for index, retarget in enumerate(retargeting_models):
num_params = sum(p.numel() for p in stitching_retargeting_module[retarget].parameters())
num_params_in_millions = num_params / 1e6
print(f"Number of parameters for part_{index} in Stitching and Retargeting Modules: {num_params_in_millions:.2f} M")
for name, avg_time in average_times.items():
std_time = std_times[name]
print(f"Average inference time for {name} over 100 runs: {avg_time:.2f} ms (std: {std_time:.2f} ms)")
def main():
"""
Main function to benchmark speed and model parameters
"""
# Sample input tensors
inputs = initialize_inputs()
# Load configuration
cfg = InferenceConfig(device_id=0)
model_config_path = cfg.models_config
with open(model_config_path, 'r') as file:
model_config = yaml.safe_load(file)
# Load and compile models
compiled_models, stitching_retargeting_module = load_and_compile_models(cfg, model_config)
# Warm up models
warm_up_models(compiled_models, stitching_retargeting_module, inputs)
# Measure inference times
times, overall_times = measure_inference_times(compiled_models, stitching_retargeting_module, inputs)
# Print benchmark results
print_benchmark_results(compiled_models, stitching_retargeting_module, ['stitching', 'eye', 'lip'], times, overall_times)
if __name__ == "__main__":
main()