""" Ace-Step 1.5 Turbo (shift=3) — Text-to-Music inference example. Uses shift=3.0 (default turbo shift) for faster denoising convergence. """ from diffsynth.pipelines.ace_step import AceStepPipeline, ModelConfig import torch import soundfile as sf pipe = AceStepPipeline.from_pretrained( torch_dtype=torch.bfloat16, device="cuda", model_configs=[ ModelConfig( model_id="ACE-Step/Ace-Step1.5", origin_file_pattern="acestep-v15-turbo/model.safetensors" ), ModelConfig( model_id="ACE-Step/Ace-Step1.5", origin_file_pattern="acestep-v15-turbo/model.safetensors" ), ModelConfig( model_id="ACE-Step/Ace-Step1.5", origin_file_pattern="Qwen3-Embedding-0.6B/model.safetensors" ), ], tokenizer_config=ModelConfig( model_id="ACE-Step/Ace-Step1.5", origin_file_pattern="Qwen3-Embedding-0.6B/" ), vae_config=ModelConfig( model_id="ACE-Step/Ace-Step1.5", origin_file_pattern="vae/" ), ) prompt = "An explosive, high-energy pop-rock track with anime theme song feel" lyrics = "[Intro]\n\n[Verse 1]\nRunning through the neon lights\nChasing dreams across the night\n\n[Chorus]\nFeel the fire in my soul\nMusic takes complete control" audio = pipe( prompt=prompt, lyrics=lyrics, duration=30.0, seed=42, num_inference_steps=8, cfg_scale=1.0, shift=3.0, ) sf.write("acestep-v15-turbo-shift3.wav", audio.cpu().numpy(), pipe.sample_rate) print(f"Saved, shape: {audio.shape}")