import torch import torch_mlu import torch_mlu_ops as tmo from common import benchmark_forward, save_to_csv import argparse from tabulate import tabulate import os e2e_time_param_dict_list = [{"batch": 1, "seq_len": 1024, "hidden_size": 1600, "inner_size": 6400, "gated_ffn": False, "act_mode": "gelu", "input_dtype": [torch.float16, torch.bfloat16]}, {"batch": 1, "seq_len": 1024, "hidden_size": 2048, "inner_size": 8192, "gated_ffn": True, "act_mode": "gelu", "input_dtype": [torch.float16, torch.bfloat16]}, {"batch": 1, "seq_len": 1024, "hidden_size": 4096, "inner_size": 11008, "gated_ffn": True, "act_mode": "gelu", "input_dtype": [torch.float16, torch.bfloat16]}, {"batch": 1, "seq_len": 1024, "hidden_size": 4096, "inner_size": 14336, "gated_ffn": True, "act_mode": "gelu", "input_dtype": [torch.float16, torch.bfloat16]}, {"batch": 1, "seq_len": 1024, "hidden_size": 4096, "inner_size": 16384, "gated_ffn": True, "act_mode": "gelu", "input_dtype": [torch.float16, torch.bfloat16]}, {"batch": 1, "seq_len": 1024, "hidden_size": 5120, "inner_size": 13824, "gated_ffn": True, "act_mode": "gelu", "input_dtype": [torch.float16, torch.bfloat16]}, {"batch": 1, "seq_len": 1024, "hidden_size": 5120, "inner_size": 27392, "gated_ffn": True, "act_mode": "gelu", "input_dtype": [torch.float16, torch.bfloat16]}, {"batch": 1, "seq_len": 1024, "hidden_size": 6656, "inner_size": 17920, "gated_ffn": True, "act_mode": "gelu", "input_dtype": [torch.float16, torch.bfloat16]}, {"batch": 1, "seq_len": 1024, "hidden_size": 8192, "inner_size": 22016, "gated_ffn": True, "act_mode": "gelu", "input_dtype": [torch.float16, torch.bfloat16]}, {"batch": 1, "seq_len": 1024, "hidden_size": 8192, "inner_size": 24576, "gated_ffn": True, "act_mode": "gelu", "input_dtype": [torch.float16, torch.bfloat16]}, {"batch": 1, "seq_len": 1024, "hidden_size": 8192, "inner_size": 28672, "gated_ffn": True, "act_mode": "gelu", "input_dtype": [torch.float16, torch.bfloat16]}, {"batch": 1, "seq_len": 1024, "hidden_size": 8192, "inner_size": 49152, "gated_ffn": True, "act_mode": "gelu", "input_dtype": [torch.float16, torch.bfloat16]}, {"batch": 1, "seq_len": 1024, "hidden_size": 12288, "inner_size": 32768, "gated_ffn": True, "act_mode": "gelu", "input_dtype": [torch.float16, torch.bfloat16]}, {"batch": 1, "seq_len": 1024, "hidden_size": 14336, "inner_size": 57344, "gated_ffn": True, "act_mode": "gelu", "input_dtype": [torch.float16, torch.bfloat16]}] def main(): parser = argparse.ArgumentParser() parser.add_argument('--repeat_times', type=int, default=10, help='repeat times for testing') parser.add_argument('--csv', action='store_true', help='write the report data to csv') parser.add_argument('-o', type=str, help='specify the output folder name under --csv mode') args = parser.parse_args() device = 'mlu' titles = ["batch", "seq_len", "hidden_size", "inner_size", "gated_ffn", "act_mode", "input_dtype", "hardware_time(us)", "e2e_latency(us)"] contents = [] for params_dict in e2e_time_param_dict_list: batch = params_dict["batch"] seq_len = params_dict["seq_len"] hidden_size = params_dict["hidden_size"] inner_size = params_dict["inner_size"] gated_ffn = params_dict["gated_ffn"] act_mode = params_dict["act_mode"] input_dtype_list = params_dict["input_dtype"] for dtype in input_dtype_list: if dtype == torch.bfloat16 and not torch_mlu.mlu.is_bf16_supported(): continue input = torch.randn(batch, seq_len, hidden_size).to(device).to(dtype) up_proj_weight = torch.randn(inner_size, hidden_size).to(device).to(dtype) up_proj_bias = torch.randn(inner_size).to(device).to(dtype) down_proj_weight = torch.randn(hidden_size, inner_size).to(device).to(dtype) down_proj_bias = torch.randn(hidden_size).to(device).to(dtype) gate_up_proj_weight, gate_up_proj_bias = None, None if gated_ffn: gate_up_proj_weight = torch.randn(inner_size, hidden_size).to(device).to(dtype) gate_up_proj_bias = torch.randn(inner_size).to(device).to(dtype) hardware_time, e2e_time = benchmark_forward(tmo.ffn, input, up_proj_weight, up_proj_bias, down_proj_weight, down_proj_bias, gate_up_proj_weight, gate_up_proj_bias, act_mode, repeats=args.repeat_times) content = [f"{batch}", f"{seq_len}", f"{hidden_size}", f"{inner_size}", f"{gated_ffn}", f"{act_mode}", f"{dtype}", f"{hardware_time}", f"{e2e_time}"] contents.append(content) table = [titles] + contents print(tabulate(table, headers="firstrow", tablefmt="grid")) if args.csv: current_file_path = __file__ _, file_name = os.path.split(current_file_path) save_to_csv(table, args.o, file_name) if __name__=="__main__": main()