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- import torch
- import torch.utils.data
- import argparse
- import os
- import logging
- from functools import partial
- HOME = os.environ["HOME"].rstrip("/")
- basicpath = os.path.abspath(os.path.join(os.path.dirname(__file__), "../analyze")).rstrip("/")
- print(basicpath)
- # this mode will greatly influence the speed!
- torch.backends.cudnn.enabled = True
- torch.backends.cudnn.benchmark = True
- torch.backends.cudnn.deterministic = True
- def import_abspy(name="models", path="classification/"):
- import sys
- import importlib
- path = os.path.abspath(path)
- assert os.path.isdir(path)
- sys.path.insert(0, path)
- module = importlib.import_module(name)
- sys.path.pop(0)
- return module
- # utils = import_abspy(name="utils", path=f"{basicpath}")
- # BuildModels = utils.BuildModels
- # FLOPs = utils.FLOPs
- # Throughput = utils.Throughput
- # get_val_dataloader = utils.get_val_dataloader
- from utils import BuildModels, FLOPs, Throughput, get_val_dataloader
- def get_variable_name(variable, loc=locals()):
- for k,v in loc.items():
- if loc[k] is variable:
- return k
- def main():
- parser = argparse.ArgumentParser()
- parser.add_argument('--batch-size', type=int, default=128, help="batch size for single GPU")
- parser.add_argument('--data-path', type=str, required=True, help='path to dataset')
- parser.add_argument('--size', type=int, default=224, help='path to dataset')
- # parser.add_argument('--mode', type=str, default="", help='model name')
- args = parser.parse_args()
-
- logging.basicConfig(level=logging.INFO)
- def test_scaleup(build=None, sizes=[224, 288, 256, 384, 512, 640, 768, 1024], batch_size=32, data_path=args.data_path):
- for size in sizes:
- Throughput.testall(build(size=size), None, data_path, size, batch_size)
- dataloader = get_val_dataloader(
- batch_size=args.batch_size,
- root=os.path.join(os.path.abspath(args.data_path), "val"),
- img_size=args.size,
- )
- size = args.size
- if False:
- Throughput.testall(BuildModels.build_vmamba(scale="tv0"), dataloader, args.data_path, size, args.batch_size)
- Throughput.testall(BuildModels.build_vmamba(scale="tv1"), dataloader, args.data_path, size, args.batch_size)
- Throughput.testall(BuildModels.build_vmamba(scale="tv2"), dataloader, args.data_path, size, args.batch_size)
- Throughput.testall(BuildModels.build_vmamba(scale="sv0"), dataloader, args.data_path, size, args.batch_size)
- Throughput.testall(BuildModels.build_vmamba(scale="sv2"), dataloader, args.data_path, size, args.batch_size)
- Throughput.testall(BuildModels.build_vmamba(scale="bv0"), dataloader, args.data_path, size, args.batch_size)
- Throughput.testall(BuildModels.build_vmamba(scale="bv2"), dataloader, args.data_path, size, args.batch_size)
- Throughput.testall(BuildModels.build_visionmamba(scale="small"), dataloader, args.data_path, size, args.batch_size)
- Throughput.testall(BuildModels.build_deit_mmpretrain(scale="small"), dataloader, args.data_path, size, args.batch_size)
- Throughput.testall(BuildModels.build_deit_mmpretrain(scale="base"), dataloader, args.data_path, size, args.batch_size)
- Throughput.testall(BuildModels.build_swin(scale="tiny"), dataloader, args.data_path, size, args.batch_size)
- Throughput.testall(BuildModels.build_swin(scale="small"), dataloader, args.data_path, size, args.batch_size)
- Throughput.testall(BuildModels.build_swin(scale="base"), dataloader, args.data_path, size, args.batch_size)
- Throughput.testall(BuildModels.build_convnext(scale="tiny"), dataloader, args.data_path, size, args.batch_size)
- Throughput.testall(BuildModels.build_convnext(scale="small"), dataloader, args.data_path, size, args.batch_size)
- Throughput.testall(BuildModels.build_convnext(scale="base"), dataloader, args.data_path, size, args.batch_size)
- Throughput.testall(BuildModels.build_hivit(scale="tiny"), dataloader, args.data_path, size, args.batch_size)
- Throughput.testall(BuildModels.build_hivit(scale="small"), dataloader, args.data_path, size, args.batch_size)
- Throughput.testall(BuildModels.build_hivit(scale="base"), dataloader, args.data_path, size, args.batch_size)
- Throughput.testall(BuildModels.build_intern(scale="tiny"), dataloader, args.data_path, size, args.batch_size)
- Throughput.testall(BuildModels.build_intern(scale="small"), dataloader, args.data_path, size, args.batch_size)
- Throughput.testall(BuildModels.build_intern(scale="base"), dataloader, args.data_path, size, args.batch_size)
- Throughput.testall(BuildModels.build_xcit(scale="tiny"), dataloader, args.data_path, size, args.batch_size)
- Throughput.testall(BuildModels.build_xcit(scale="small"), dataloader, args.data_path, size, args.batch_size)
- Throughput.testall(BuildModels.build_xcit(scale="base"), dataloader, args.data_path, size, args.batch_size)
- Throughput.testall(BuildModels.build_resnet_mmpretrain(scale="r50"), dataloader, args.data_path, size, args.batch_size)
- Throughput.testall(BuildModels.build_resnet_mmpretrain(scale="r101"), dataloader, args.data_path, size, args.batch_size)
- return
- if False:
- # T15: GFlops: 4.905609984 Params: 30249064 1666; 3057; 564; 12391; 450; 20857;
- Throughput.testall(BuildModels.build_vmamba(scale="tv2"), dataloader, args.data_path, size, args.batch_size)
- _model = import_abspy("vmamba", f"{basicpath}/../classification/models")
- # T15: GFlops: 4.018473215999999 Params: 22926376 1336; 3602; 405; 10314; 367; 17234;
- abt_tv1_161_2222_mlp = partial(_model.VSSM, dims=96, depths=[2,2,2,2], ssm_d_state=16, ssm_dt_rank="auto", ssm_ratio=1.0, ssm_conv=-1, forward_type="v05", mlp_ratio=4.0, downsample_version="v3", patchembed_version="v2", norm_layer="ln2d") #
- Throughput.testall(abt_tv1_161_2222_mlp(), dataloader, args.data_path, size, args.batch_size)
- if False:
- from analyze_for_vim import ExtraDev
- for size in [224, 288, 256, 384, 512, 640, 768, 1024]:
- print(f"s4nd {size} ==========================")
- ExtraDev.flops_s4nd(size=size, scale="ctiny")
- Throughput.testall(BuildModels.build_s4nd(size=size), None, args.data_path, size, 32, with_flops=False)
- return
- if False:
- from analyze_for_vim import ExtraDev
- for size in [224, 288, 256, 384, 512, 640, 768, 1024]:
- print(f"vim {size} ==========================")
- ExtraDev.flops_vim(size=size)
- Throughput.testall(ExtraDev.build_vim_for_throughput(size=size), None, args.data_path, size, 32, with_flops=False)
- return
- if False:
- test_scaleup(partial(BuildModels.build_vmamba, scale="tv2"))
- return
- if True:
- # 3056 12385 # structure difference
- Throughput.testall(BuildModels.build_vmamba(scale="tv2"), dataloader, args.data_path, size, args.batch_size)
- # 1111 9103 # structure difference
- Throughput.testall(BuildModels.build_visionmamba(scale="small"), dataloader, args.data_path, size, args.batch_size)
- # tmem 3945 mem 18782
- Throughput.testall(BuildModels.build_s4nd(scale="ctiny"), dataloader, args.data_path, size, args.batch_size)
- # tmem 2463 mem 15328
- Throughput.testall(BuildModels.build_s4nd(scale="vitb"), dataloader, args.data_path, size, args.batch_size)
- return
- if True:
- test_scaleup(build=partial(BuildModels.build_vmamba, scale="tv0"))
- test_scaleup(build=partial(BuildModels.build_vmamba, scale="tv1"))
- test_scaleup(build=partial(BuildModels.build_vmamba, scale="tv2"))
- test_scaleup(build=partial(BuildModels.build_convnext, scale="tiny"))
- test_scaleup(build=partial(BuildModels.build_swin, scale="tiny"))
- test_scaleup(build=partial(BuildModels.build_hivit, scale="tiny"))
- test_scaleup(build=partial(BuildModels.build_intern, scale="tiny"))
- test_scaleup(build=partial(BuildModels.build_xcit, scale="tiny"))
- test_scaleup(build=partial(BuildModels.build_deit_mmpretrain, scale="small"))
- test_scaleup(build=partial(BuildModels.build_resnet_mmpretrain, scale="r50"))
- return
- if True:
- for size in [224, 288, 256, 384, 512, 640, 768]:
- _dataloader = get_val_dataloader(
- batch_size=args.batch_size,
- root=os.path.join(os.path.abspath(args.data_path), "val"),
- img_size=size,
- )
- Throughput.testall(BuildModels.build_swin(scale="base", size=size), _dataloader, args.data_path, size, batch_size)
- Throughput.testall(BuildModels.build_vheat(scale="base", size=size), _dataloader, args.data_path, size, batch_size)
- return
- if True:
- _model = import_abspy("vmamba", f"{basicpath}/../classification/models")
- tv0 = partial(_model.VSSM, dims=96, depths=[2,2,9,2], ssm_d_state=16, ssm_dt_rank="auto", ssm_ratio=2.0, forward_type="v0", mlp_ratio=0.0, downsample_version="v1", patchembed_version="v1") # GFlops: 5.62689504 Params: 22893448 404
- tv1 = partial(_model.VSSM, dims=96, depths=[2,2,5,2], ssm_d_state=1, ssm_dt_rank="auto", ssm_ratio=2.0, ssm_conv=3, ssm_conv_bias=False, forward_type="v05_noz", mlp_ratio=4.0, downsample_version="v3", patchembed_version="v2", norm_layer="ln2d") #GFlops: 4.8577420799999995 Params: 30705832 1269
- tv2 = partial(_model.VSSM, dims=96, depths=[2,2,8,2], ssm_d_state=1, ssm_dt_rank="auto", ssm_ratio=1.0, ssm_conv=3, ssm_conv_bias=False, forward_type="v05_noz", mlp_ratio=4.0, downsample_version="v3", patchembed_version="v2", norm_layer="ln2d") # GFlops: 4.905609984 Params: 30249064 1603
- sv0 = partial(_model.VSSM, dims=96, depths=[2,2,27,2], ssm_d_state=16, ssm_dt_rank="auto", ssm_ratio=2.0, forward_type="v0", mlp_ratio=0.0, downsample_version="v1", patchembed_version="v1") # GFlops: 11.231522784000001 Params: 44417416 219
- sv1 = partial(_model.VSSM, dims=96, depths=[2,2,15,2], ssm_d_state=1, ssm_dt_rank="auto", ssm_ratio=2.0, ssm_conv=3, ssm_conv_bias=False, forward_type="v05_noz", mlp_ratio=4.0, downsample_version="v3", patchembed_version="v2", norm_layer="ln2d") #GFlops: 8.71577472 Params: 50147752 826
- sv2 = partial(_model.VSSM, dims=96, depths=[2,2,20,2], ssm_d_state=1, ssm_dt_rank="auto", ssm_ratio=1.0, ssm_conv=3, ssm_conv_bias=False, forward_type="v05_noz", mlp_ratio=4.0, downsample_version="v3", patchembed_version="v2", norm_layer="ln2d") # GFlops: 8.612211455999999 Params: 49012840 1049
- bv0 = partial(_model.VSSM, dims=128, depths=[2,2,27,2], ssm_d_state=16, ssm_dt_rank="auto", ssm_ratio=2.0, forward_type="v0", mlp_ratio=0.0, downsample_version="v1", patchembed_version="v1") # GFlops: 18.020115135999998 Params: 76254056 157
- bv1 = partial(_model.VSSM, dims=128, depths=[2,2,15,2], ssm_d_state=1, ssm_dt_rank="auto", ssm_ratio=2.0, ssm_conv=3, ssm_conv_bias=False, forward_type="v05_noz", mlp_ratio=4.0, downsample_version="v3", patchembed_version="v2", norm_layer="ln2d") #GFlops: 15.358944256000001 Params: 88557800 606
- bv2 = partial(_model.VSSM, dims=128, depths=[2,2,20,2], ssm_d_state=1, ssm_dt_rank="auto", ssm_ratio=1.0, ssm_conv=3, ssm_conv_bias=False, forward_type="v05_noz", mlp_ratio=4.0, downsample_version="v3", patchembed_version="v2", norm_layer="ln2d") # GFlops: 15.220859904 Params: 86614504 774
- abt_tv0 = tv0
- # abt_tv0_re = partial(_model.VSSM, dims=96, depths=[2,2,9,2], ssm_d_state=16, ssm_dt_rank="auto", ssm_ratio=2.0, forward_type="v01", mlp_ratio=0.0, downsample_version="v1", patchembed_version="v1") # GFlops: 5.62689504 Params: 22893448 407
- abt_tv0_csmtri = partial(_model.VSSM, dims=96, depths=[2,2,9,2], ssm_d_state=16, ssm_dt_rank="auto", ssm_ratio=2.0, forward_type="v02", mlp_ratio=0.0, downsample_version="v1", patchembed_version="v1") # GFlops: 5.62689504 Params: 22893448 436
- abt_tv0_flex = partial(_model.VSSM, dims=96, depths=[2,2,9,2], ssm_d_state=16, ssm_dt_rank="auto", ssm_ratio=2.0, forward_type="v04", mlp_ratio=0.0, downsample_version="v1", patchembed_version="v1") # GFlops: 5.62689504 Params: 22893448 432
- abt_tv0_noeinlayout = partial(_model.VSSM, dims=96, depths=[2,2,9,2], ssm_d_state=16, ssm_dt_rank="auto", ssm_ratio=2.0, forward_type="v05", mlp_ratio=0.0, downsample_version="v1", patchembed_version="v1", norm_layer="ln2d") # GFlops: 5.62689504 Params: 22893448 594
- abt_tv1_mlp = partial(_model.VSSM, dims=96, depths=[2,2,2,2], ssm_d_state=16, ssm_dt_rank="auto", ssm_ratio=2.0, ssm_conv=-1, forward_type="v05", mlp_ratio=4.0, downsample_version="v3", patchembed_version="v2", norm_layer="ln2d") # GFlops: 5.632660223999999 Params: 28991656 773
- abt_tv1_161_2222_mlp = partial(_model.VSSM, dims=96, depths=[2,2,2,2], ssm_d_state=16, ssm_dt_rank="auto", ssm_ratio=1.0, ssm_conv=-1, forward_type="v05", mlp_ratio=4.0, downsample_version="v3", patchembed_version="v2", norm_layer="ln2d") #
- abt_tv1_161 = partial(_model.VSSM, dims=96, depths=[2,2,5,2], ssm_d_state=16, ssm_dt_rank="auto", ssm_ratio=1.0, ssm_conv=-1, forward_type="v05", mlp_ratio=4.0, downsample_version="v3", patchembed_version="v2", norm_layer="ln2d") # GFlops: 5.178818303999999 Params: 28256680 1079 #a8ln
- abt_tv1_161_noz = partial(_model.VSSM, dims=96, depths=[2,2,5,2], ssm_d_state=16, ssm_dt_rank="auto", ssm_ratio=1.0, ssm_conv=-1, forward_type="v05_noz", mlp_ratio=4.0, downsample_version="v3", patchembed_version="v2", norm_layer="ln2d") # GFlops: 4.860903167999999 Params: 26247592 1113 #a9d
- abt_tv1_12_noz = partial(_model.VSSM, dims=96, depths=[2,2,5,2], ssm_d_state=1, ssm_dt_rank="auto", ssm_ratio=2.0, ssm_conv=-1, forward_type="v05_noz", mlp_ratio=4.0, downsample_version="v3", patchembed_version="v2", norm_layer="ln2d") # GFlops: 4.833356544 Params: 30633256 1290
- abt_tv1_12_noz_dw = tv1
- abt_csm = tv2
- abt_ab1d = partial(_model.VSSM, dims=96, depths=[2,2,8,2], ssm_d_state=1, ssm_dt_rank="auto", ssm_ratio=1.0, ssm_conv=3, ssm_conv_bias=False, forward_type="v051d_noz", mlp_ratio=4.0, downsample_version="v3", patchembed_version="v2", norm_layer="ln2d") # GFlops: 4.905609984 Params: 30249064 1601
- abt_ab2d = partial(_model.VSSM, dims=96, depths=[2,2,8,2], ssm_d_state=1, ssm_dt_rank="auto", ssm_ratio=1.0, ssm_conv=3, ssm_conv_bias=False, forward_type="v052d_noz", mlp_ratio=4.0, downsample_version="v3", patchembed_version="v2", norm_layer="ln2d") # GFlops: 4.905609984 Params: 30249064 1600
- abt_ab2dc = partial(_model.VSSM, dims=96, depths=[2,2,8,2], ssm_d_state=1, ssm_dt_rank="auto", ssm_ratio=1.0, ssm_conv=3, ssm_conv_bias=False, forward_type="v052dc_noz", mlp_ratio=4.0, downsample_version="v3", patchembed_version="v2", norm_layer="ln2d") # GFlops: 4.905609984 Params: 30249064 1059
- abt_cv_3_false = tv2
- abt_cv_3_true = partial(_model.VSSM, dims=96, depths=[2,2,8,2], ssm_d_state=1, ssm_dt_rank="auto", ssm_ratio=1.0, ssm_conv=3, ssm_conv_bias=True, forward_type="v051d_noz", mlp_ratio=4.0, downsample_version="v3", patchembed_version="v2", norm_layer="ln2d") # GFlops: 4.905609984 Params: 30254248 1574
- abt_cv_none = partial(_model.VSSM, dims=96, depths=[2,2,8,2], ssm_d_state=1, ssm_dt_rank="auto", ssm_ratio=1.0, ssm_conv=-1, ssm_conv_bias=True, forward_type="v051d_noz", mlp_ratio=4.0, downsample_version="v3", patchembed_version="v2", norm_layer="ln2d") # GFlops: 4.891385088 Params: 30202408 1615
- abt_cv_pos = partial(_model.VSSM, dims=96, depths=[2,2,8,2], ssm_d_state=1, ssm_dt_rank="auto", ssm_ratio=1.0, ssm_conv=-1, ssm_conv_bias=True, forward_type="v051d_noz", mlp_ratio=4.0, downsample_version="v3", patchembed_version="v2", norm_layer="ln2d", posembed=True) # GFlops: 4.891385088 Params: 30503464 1605
- abt_init_mamba = tv2
- abt_init_rand = partial(_model.VSSM, dims=96, depths=[2,2,8,2], ssm_d_state=1, ssm_dt_rank="auto", ssm_ratio=1.0, ssm_conv=3, ssm_conv_bias=False, forward_type="v05_noz", mlp_ratio=4.0, downsample_version="v3", patchembed_version="v2", norm_layer="ln2d", ssm_init="v1") # GFlops: 4.905609984 Params: 30249064 1593
- abt_init_zero = partial(_model.VSSM, dims=96, depths=[2,2,8,2], ssm_d_state=1, ssm_dt_rank="auto", ssm_ratio=1.0, ssm_conv=3, ssm_conv_bias=False, forward_type="v05_noz", mlp_ratio=4.0, downsample_version="v3", patchembed_version="v2", norm_layer="ln2d", ssm_init="v2") # GFlops: 4.905609984 Params: 30249064 1591
- abt_dstate_1 = tv1
- abt_dstate_2 = partial(_model.VSSM, dims=96, depths=[2,2,5,2], ssm_d_state=2, ssm_dt_rank="auto", ssm_ratio=2.0, ssm_conv=3, ssm_conv_bias=False, forward_type="v05_noz", mlp_ratio=4.0, downsample_version="v3", patchembed_version="v2", norm_layer="ln2d") # GFlops: 4.976960255999999 Params: 30802600 1198
- abt_dstate_4 = partial(_model.VSSM, dims=96, depths=[2,2,5,2], ssm_d_state=4, ssm_dt_rank="auto", ssm_ratio=2.0, ssm_conv=3, ssm_conv_bias=False, forward_type="v05_noz", mlp_ratio=4.0, downsample_version="v3", patchembed_version="v2", norm_layer="ln2d") # GFlops: 5.215396607999999 Params: 30996136 1081
- abt_dstate_8 = partial(_model.VSSM, dims=96, depths=[2,2,5,2], ssm_d_state=8, ssm_dt_rank="auto", ssm_ratio=1.5, ssm_conv=3, ssm_conv_bias=False, forward_type="v05_noz", mlp_ratio=4.0, downsample_version="v3", patchembed_version="v2", norm_layer="ln2d") # GFlops: 5.044246272 Params: 28640008 1079
- abt_dstate_16 = partial(_model.VSSM, dims=96, depths=[2,2,5,2], ssm_d_state=16, ssm_dt_rank="auto", ssm_ratio=1.0, ssm_conv=3, ssm_conv_bias=False, forward_type="v05_noz", mlp_ratio=4.0, downsample_version="v3", patchembed_version="v2", norm_layer="ln2d") # GFlops: 4.8730959359999995 Params: 26283880 1094
-
- abt_mratio_4_8 = tv2 # GFlops: 4.905609984 Params: 30249064 1603
- abt_mratio_3_8 = partial(_model.VSSM, dims=96, depths=[2,2,8,2], ssm_d_state=1, ssm_dt_rank="auto", ssm_ratio=1.5, ssm_conv=3, ssm_conv_bias=False, forward_type="v05_noz", mlp_ratio=3.0, downsample_version="v3", patchembed_version="v2", norm_layer="ln2d") # GFlops: 4.6511423999999995 Params: 28485640 1340
- abt_mratio_2_8 = partial(_model.VSSM, dims=96, depths=[2,2,8,2], ssm_d_state=1, ssm_dt_rank="auto", ssm_ratio=2.5, ssm_conv=3, ssm_conv_bias=False, forward_type="v05_noz", mlp_ratio=2.0, downsample_version="v3", patchembed_version="v2", norm_layer="ln2d") # GFlops: 4.9514457599999995 Params: 2986688 1015
- abt_onorm_ln = tv2
- abt_onorm_none = partial(_model.VSSM, dims=96, depths=[2,2,8,2], ssm_d_state=1, ssm_dt_rank="auto", ssm_ratio=1.0, ssm_conv=3, ssm_conv_bias=False, forward_type="v05_onnone_noz", mlp_ratio=4.0, downsample_version="v3", patchembed_version="v2", norm_layer="ln2d") # GFlops: 4.897707264 Params: 30238696 1683
- abt_onorm_dwconv = partial(_model.VSSM, dims=96, depths=[2,2,8,2], ssm_d_state=1, ssm_dt_rank="auto", ssm_ratio=1.0, ssm_conv=3, ssm_conv_bias=False, forward_type="v05_ondwconv3_noz", mlp_ratio=4.0, downsample_version="v3", patchembed_version="v2", norm_layer="ln2d") # GFlops: 4.91193216 Params: 30285352 1613
- abt_onorm_oncnorm = partial(_model.VSSM, dims=96, depths=[2,2,8,2], ssm_d_state=1, ssm_dt_rank="auto", ssm_ratio=1.0, ssm_conv=3, ssm_conv_bias=False, forward_type="v05_oncnorm_noz", mlp_ratio=4.0, downsample_version="v3", patchembed_version="v2", norm_layer="ln2d") # GFlops: 4.91983488 Params: 30295720 1571
- abt_onrom_softmax = partial(_model.VSSM, dims=96, depths=[2,2,8,2], ssm_d_state=1, ssm_dt_rank="auto", ssm_ratio=1.0, ssm_conv=3, ssm_conv_bias=False, forward_type="v05_onsoftmax_noz", mlp_ratio=4.0, downsample_version="v3", patchembed_version="v2", norm_layer="ln2d") # GFlops: 4.897707264 Params: 30238696 1644
- abt_onrom_sigmoid = partial(_model.VSSM, dims=96, depths=[2,2,8,2], ssm_d_state=1, ssm_dt_rank="auto", ssm_ratio=1.0, ssm_conv=3, ssm_conv_bias=False, forward_type="v05_onsigmoid_noz", mlp_ratio=4.0, downsample_version="v3", patchembed_version="v2", norm_layer="ln2d") # GFlops: 4.897707264 Params: 30238696 1647
- abt_cact_silu = tv2
- abt_cact_gelu = partial(_model.VSSM, dims=96, depths=[2,2,8,2], ssm_d_state=1, ssm_dt_rank="auto", ssm_ratio=1.0, ssm_conv=3, ssm_conv_bias=False, forward_type="v05_noz", mlp_ratio=4.0, downsample_version="v3", patchembed_version="v2", norm_layer="ln2d", ssm_act_layer="gelu") # GFlops: 4.905609984 Params: 30249064 1590
- abt_cact_relu = partial(_model.VSSM, dims=96, depths=[2,2,8,2], ssm_d_state=1, ssm_dt_rank="auto", ssm_ratio=1.0, ssm_conv=3, ssm_conv_bias=False, forward_type="v05_noz", mlp_ratio=4.0, downsample_version="v3", patchembed_version="v2", norm_layer="ln2d", ssm_act_layer="relu") # GFlops: 4.905609984 Params: 30249064 1588
- abt_cact_sigmoid = partial(_model.VSSM, dims=96, depths=[2,2,8,2], ssm_d_state=1, ssm_dt_rank="auto", ssm_ratio=1.0, ssm_conv=3, ssm_conv_bias=False, forward_type="v05_noz", mlp_ratio=4.0, downsample_version="v3", patchembed_version="v2", norm_layer="ln2d", ssm_act_layer="sigmoid") # GFlops: 4.905609984 Params: 30249064 1584
- size = 224
- for config in [
- tv0, sv0, bv0,
- tv1, sv1, bv1,
- tv2, sv2, bv2,
- abt_tv0, abt_tv0_csmtri, abt_tv0_flex, abt_tv0_noeinlayout,
- abt_tv1_mlp, abt_tv1_161, abt_tv1_161_noz, abt_tv1_12_noz, abt_tv1_12_noz_dw,
- abt_csm, abt_ab1d, abt_ab2d, abt_ab2dc,
- abt_cv_3_false, abt_cv_3_true, abt_cv_none, abt_cv_pos,
- abt_init_mamba, abt_init_rand, abt_init_zero,
- abt_dstate_1, abt_dstate_2, abt_dstate_4, abt_dstate_8, abt_dstate_16,
- abt_mratio_4_8, abt_mratio_3_8, abt_mratio_2_8,
- abt_onorm_ln, abt_onorm_none, abt_onorm_dwconv, abt_onorm_oncnorm, abt_onrom_softmax, abt_onrom_sigmoid,
- abt_cact_silu, abt_cact_gelu, abt_cact_relu, abt_cact_sigmoid,
- ]:
- print(get_variable_name(config, locals()), "============")
- Throughput.testall(config(), dataloader, args.data_path, size, args.batch_size)
- return
- return
- if __name__ == "__main__":
- main()
-
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