quantize_awq.py 3.8 KB

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  1. """
  2. AWQ 量化示例
  3. AWQ (Activation-aware Weight Quantization) 是一种高效的 4bit 量化方法。
  4. 安装依赖:
  5. pip install autoawq
  6. 使用方法:
  7. python examples/quantize_awq.py --model_path ./outputs/qwen3.5-0.8b-finetuned
  8. """
  9. import os
  10. import sys
  11. import argparse
  12. sys.path.insert(0, os.path.join(os.path.dirname(__file__), ".."))
  13. from finetunex.quantization import quantize_to_awq, get_model_size, estimate_quantized_size
  14. def main():
  15. parser = argparse.ArgumentParser(description="AWQ 量化示例")
  16. parser.add_argument(
  17. "--model_path",
  18. type=str,
  19. required=True,
  20. help="微调后的模型路径"
  21. )
  22. parser.add_argument(
  23. "--output_path",
  24. type=str,
  25. default=None,
  26. help="输出路径(默认:{model_path}-awq)"
  27. )
  28. parser.add_argument(
  29. "--bits",
  30. type=int,
  31. default=4,
  32. help="量化位数(默认:4)"
  33. )
  34. parser.add_argument(
  35. "--group_size",
  36. type=int,
  37. default=128,
  38. help="分组大小(默认:128)"
  39. )
  40. args = parser.parse_args()
  41. # 检查模型
  42. if not os.path.exists(args.model_path):
  43. print(f"错误:模型路径不存在:{args.model_path}")
  44. sys.exit(1)
  45. # 设置输出路径
  46. if args.output_path is None:
  47. args.output_path = args.model_path + "-awq"
  48. print("=" * 60)
  49. print("AWQ 量化示例")
  50. print("=" * 60)
  51. print(f"模型路径:{args.model_path}")
  52. print(f"输出路径:{args.output_path}")
  53. # 显示原始大小
  54. original_size = get_model_size(args.model_path)
  55. print(f"\n原始模型大小:{original_size['total_size_formatted']}")
  56. # 估算量化后大小
  57. estimate = estimate_quantized_size(args.model_path, quantization_bits=args.bits)
  58. print(f"\n估算 AWQ 量化后:")
  59. print(f" 大小:{estimate['estimated_size']}")
  60. print(f" 压缩比:{estimate['compression_ratio']}")
  61. print(f" 节省:{estimate['space_saved']} ({estimate['space_saved_percent']})")
  62. # 确认
  63. response = input("\n是否继续量化?(y/n): ")
  64. if response.lower() != 'y':
  65. print("已取消")
  66. return
  67. # 配置
  68. quant_config = {
  69. "zero_point": True,
  70. "q_group_size": args.group_size,
  71. "w_bit": args.bits,
  72. "version": "GEMM",
  73. }
  74. print(f"\n量化配置:{quant_config}")
  75. print("\n开始量化...\n")
  76. try:
  77. # 执行量化
  78. quantize_to_awq(
  79. model_path=args.model_path,
  80. output_path=args.output_path,
  81. quantization_config=quant_config,
  82. )
  83. # 显示结果
  84. print("\n" + "=" * 60)
  85. print("AWQ 量化完成!")
  86. print("=" * 60)
  87. quantized_size = get_model_size(args.output_path)
  88. print(f"量化后大小:{quantized_size['total_size_formatted']}")
  89. print(f"输出路径:{args.output_path}")
  90. # 使用示例
  91. print("\n" + "=" * 60)
  92. print("使用示例:")
  93. print("=" * 60)
  94. print("""
  95. from transformers import AutoModelForCausalLM, AutoTokenizer
  96. from awq import AutoAWQForCausalLM
  97. # 加载量化模型
  98. model = AutoAWQForCausalLM.from_quantized(
  99. "{output_path}",
  100. device_map="auto",
  101. )
  102. tokenizer = AutoTokenizer.from_pretrained("{output_path}")
  103. # 推理
  104. prompt = "你好"
  105. inputs = tokenizer(prompt, return_tensors="pt")
  106. outputs = model.generate(**inputs, max_new_tokens=100)
  107. print(tokenizer.decode(outputs[0]))
  108. """.format(output_path=args.output_path))
  109. print("=" * 60)
  110. except Exception as e:
  111. print(f"\n量化失败:{e}")
  112. import traceback
  113. traceback.print_exc()
  114. sys.exit(1)
  115. if __name__ == "__main__":
  116. main()