rename to dzgcoop
This commit is contained in:
@@ -1,4 +1,4 @@
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# PromptSRC: Prompting with Self-regularizing constraints
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# DZGCoOp: Dual-branch Zero-shot Guidance CoOp
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DATALOADER:
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TRAIN_X:
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BATCH_SIZE: 4
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@@ -30,7 +30,7 @@ MODEL:
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NAME: "ViT-B/16"
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TRAINER:
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PROMPTSRC:
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DZGCOOP:
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N_CTX_VISION: 4
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N_CTX_TEXT: 4
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CTX_INIT: "a photo of a"
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@@ -1,4 +1,4 @@
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# PromptSRC: Prompting with Self-regularizing constraints
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# DZGCoOp: Dual-branch Zero-shot Guidance CoOp
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DATALOADER:
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TRAIN_X:
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BATCH_SIZE: 4
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@@ -31,7 +31,7 @@ MODEL:
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NAME: "ViT-B/16"
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TRAINER:
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PROMPTSRC:
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DZGCOOP:
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N_CTX_VISION: 4
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N_CTX_TEXT: 4
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CTX_INIT: "a photo of a"
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@@ -1,4 +1,4 @@
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# PromptSRC: Prompting with Self-regularizing constraints
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# DZGCoOp: Dual-branch Zero-shot Guidance CoOp
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DATALOADER:
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TRAIN_X:
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BATCH_SIZE: 4
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@@ -30,7 +30,7 @@ MODEL:
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NAME: "ViT-B/16"
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TRAINER:
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PROMPTSRC:
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DZGCOOP:
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N_CTX_VISION: 4
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N_CTX_TEXT: 4
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CTX_INIT: "a photo of a"
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@@ -109,7 +109,7 @@ def print_model_results(results, model_name):
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def main():
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root_dir = 'output' # 修改为你的output目录路径
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target_model = 'PromptSRC' # 指定要分析的模型
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target_model = 'DZGCoOp' # 指定要分析的模型
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results = collect_model_results(root_dir, target_model)
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print_model_results(results, target_model)
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22
scripts/dzgcoop/base2new_all.sh
Normal file
22
scripts/dzgcoop/base2new_all.sh
Normal file
@@ -0,0 +1,22 @@
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seeds=(1 2 3)
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datasets=(
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"ucf101"
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"eurosat"
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"oxford_pets"
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"food101"
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"oxford_flowers"
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"dtd"
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"caltech101"
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"fgvc_aircraft"
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"stanford_cars"
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# "sun397"
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# "imagenet"
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)
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for dataset in "${datasets[@]}"; do
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for seed in "${seeds[@]}"; do
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bash scripts/dzgcoop/base2new_train.sh "$dataset" "$seed"
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bash scripts/dzgcoop/base2new_test.sh "$dataset" "$seed"
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done
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done
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@@ -3,7 +3,7 @@
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# custom config
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DATA="~/Datasets/CoOp"
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TRAINER=PromptSRC
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TRAINER=DZGCoOp
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DATASET=$1
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SEED=$2
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@@ -2,7 +2,7 @@
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# custom config
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DATA="~/Datasets/CoOp"
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TRAINER=PromptSRC
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TRAINER=DZGCoOp
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DATASET=$1
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SEED=$2
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@@ -2,7 +2,7 @@
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DATA=" ~/Datasets/CoOp"
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TRAINER=PromptSRC
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TRAINER=DZGCoOp
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SRC_DATASETS=imagenet
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SHOTS=16
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CFG=vit_b16_c2_ep20_batch4_4+4ctx_cross_datasets
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@@ -3,7 +3,7 @@
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# custom config
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DATA=" ~/Datasets/CoOp"
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TRAINER=PromptSRC
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TRAINER=DZGCoOp
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SRC_DATASETS=imagenet
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@@ -3,7 +3,7 @@
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# custom config
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DATA=" ~/Datasets/CoOp"
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TRAINER=PromptSRC
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TRAINER=DZGCoOp
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SRC_DATASETS=imagenet
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@@ -1,22 +0,0 @@
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seeds=(1 2 3)
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datasets=(
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# "ucf101"
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# "eurosat"
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# "oxford_pets"
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# "food101"
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# "oxford_flowers"
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# "dtd"
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# "caltech101"
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# "fgvc_aircraft"
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# "stanford_cars"
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# "sun397"
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"imagenet"
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)
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for dataset in "${datasets[@]}"; do
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for seed in "${seeds[@]}"; do
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bash scripts/promptsrc/base2new_train.sh "$dataset" "$seed"
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bash scripts/promptsrc/base2new_test.sh "$dataset" "$seed"
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done
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done
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30
train.py
30
train.py
@@ -28,7 +28,7 @@ import trainers.cocoop
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import trainers.zsclip
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import trainers.maple
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import trainers.independentVL
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import trainers.promptsrc
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import trainers.dzgcoop
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def print_args(args, cfg):
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@@ -110,20 +110,20 @@ def extend_cfg(cfg):
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cfg.TRAINER.MAPLE.PROMPT_DEPTH = 9 # Max 12, minimum 0, for 1 it will act as shallow MaPLe (J=1)
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cfg.DATASET.SUBSAMPLE_CLASSES = "all" # all, base or new
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# Config for PromptSRC
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cfg.TRAINER.PROMPTSRC = CN()
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cfg.TRAINER.PROMPTSRC.N_CTX_VISION = 4 # number of context vectors at the vision branch
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cfg.TRAINER.PROMPTSRC.N_CTX_TEXT = 4 # number of context vectors at the language branch
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cfg.TRAINER.PROMPTSRC.CTX_INIT = "a photo of a" # initialization words
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cfg.TRAINER.PROMPTSRC.PREC = "fp16" # fp16, fp32, amp
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cfg.TRAINER.PROMPTSRC.PROMPT_DEPTH_VISION = 9 # Max 12, minimum 0, for 0 it will be using shallow IVLP prompting (J=1)
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cfg.TRAINER.PROMPTSRC.PROMPT_DEPTH_TEXT = 9 # Max 12, minimum 0, for 0 it will be using shallow IVLP prompting (J=1)
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cfg.TRAINER.PROMPTSRC.TEXT_LOSS_WEIGHT = 25
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cfg.TRAINER.PROMPTSRC.TEXT_LOSS_WEIGHT_STRONG = 25 # lambda2: strong text constraint weight
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cfg.TRAINER.PROMPTSRC.TEXT_LOSS_WEIGHT_WEAK = 2.5 # lambda3: weak text constraint weight
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cfg.TRAINER.PROMPTSRC.IMAGE_LOSS_WEIGHT = 10
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cfg.TRAINER.PROMPTSRC.GPA_MEAN = 15
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cfg.TRAINER.PROMPTSRC.GPA_STD = 1
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# Config for DZGCoOp
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cfg.TRAINER.DZGCOOP = CN()
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cfg.TRAINER.DZGCOOP.N_CTX_VISION = 4 # number of context vectors at the vision branch
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cfg.TRAINER.DZGCOOP.N_CTX_TEXT = 4 # number of context vectors at the language branch
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cfg.TRAINER.DZGCOOP.CTX_INIT = "a photo of a" # initialization words
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cfg.TRAINER.DZGCOOP.PREC = "fp16" # fp16, fp32, amp
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cfg.TRAINER.DZGCOOP.PROMPT_DEPTH_VISION = 9 # Max 12, minimum 0, for 0 it will be using shallow IVLP prompting (J=1)
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cfg.TRAINER.DZGCOOP.PROMPT_DEPTH_TEXT = 9 # Max 12, minimum 0, for 0 it will be using shallow IVLP prompting (J=1)
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cfg.TRAINER.DZGCOOP.TEXT_LOSS_WEIGHT = 25
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cfg.TRAINER.DZGCOOP.TEXT_LOSS_WEIGHT_STRONG = 25 # lambda2: strong text constraint weight
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cfg.TRAINER.DZGCOOP.TEXT_LOSS_WEIGHT_WEAK = 2.5 # lambda3: weak text constraint weight
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cfg.TRAINER.DZGCOOP.IMAGE_LOSS_WEIGHT = 10
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cfg.TRAINER.DZGCOOP.GPA_MEAN = 15
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cfg.TRAINER.DZGCOOP.GPA_STD = 1
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cfg.DATASET.SUBSAMPLE_CLASSES = "all" # all, base or new
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# Config for independent Vision Language prompting (independent-vlp)
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@@ -51,10 +51,10 @@ def load_clip_to_cpu(cfg, zero_shot_model=False):
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state_dict = torch.load(model_path, map_location="cpu")
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if not zero_shot_model:
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design_details = {"trainer": 'IVLP',
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"vision_depth": cfg.TRAINER.PROMPTSRC.PROMPT_DEPTH_VISION,
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"language_depth": cfg.TRAINER.PROMPTSRC.PROMPT_DEPTH_TEXT,
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"vision_ctx": cfg.TRAINER.PROMPTSRC.N_CTX_VISION,
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"language_ctx": cfg.TRAINER.PROMPTSRC.N_CTX_TEXT}
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"vision_depth": cfg.TRAINER.DZGCOOP.PROMPT_DEPTH_VISION,
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"language_depth": cfg.TRAINER.DZGCOOP.PROMPT_DEPTH_TEXT,
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"vision_ctx": cfg.TRAINER.DZGCOOP.N_CTX_VISION,
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"language_ctx": cfg.TRAINER.DZGCOOP.N_CTX_TEXT}
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model = clip.build_model(state_dict or model.state_dict(), design_details)
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else:
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# Return original CLIP model for generating frozen VL features
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@@ -95,11 +95,11 @@ class VLPromptLearner(nn.Module):
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super().__init__()
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n_cls = len(classnames)
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# Make sure Language depth >= 1
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assert cfg.TRAINER.PROMPTSRC.PROMPT_DEPTH_TEXT >= 1, "In Independent VL prompting, Language prompt depth should be >=1" \
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assert cfg.TRAINER.DZGCOOP.PROMPT_DEPTH_TEXT >= 1, "In Independent VL prompting, Language prompt depth should be >=1" \
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"\nPlease use VPT trainer if you want to learn only vision " \
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"branch"
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n_ctx = cfg.TRAINER.PROMPTSRC.N_CTX_TEXT
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ctx_init = cfg.TRAINER.PROMPTSRC.CTX_INIT
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n_ctx = cfg.TRAINER.DZGCOOP.N_CTX_TEXT
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ctx_init = cfg.TRAINER.DZGCOOP.CTX_INIT
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dtype = clip_model.dtype
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ctx_dim = clip_model.ln_final.weight.shape[0]
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clip_imsize = clip_model.visual.input_resolution
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@@ -126,7 +126,7 @@ class VLPromptLearner(nn.Module):
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print(f'Strong branch initial text context: "{prompt_prefix_strong}"')
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print(f'Weak branch initial text context: "{prompt_prefix_weak}"')
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print(f"Number of context words (tokens) for Language prompting: {n_ctx}")
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print(f"Number of context words (tokens) for Vision prompting: {cfg.TRAINER.PROMPTSRC.N_CTX_VISION}")
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print(f"Number of context words (tokens) for Vision prompting: {cfg.TRAINER.DZGCOOP.N_CTX_VISION}")
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self.ctx_strong = nn.Parameter(ctx_vectors_strong)
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self.ctx_weak = nn.Parameter(ctx_vectors_weak)
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@@ -261,9 +261,9 @@ class CustomCLIP(nn.Module):
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@TRAINER_REGISTRY.register()
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class PromptSRC(TrainerX):
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class DZGCoOp(TrainerX):
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def check_cfg(self, cfg):
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assert cfg.TRAINER.PROMPTSRC.PREC in ["fp16", "fp32", "amp"]
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assert cfg.TRAINER.DZGCOOP.PREC in ["fp16", "fp32", "amp"]
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def build_model(self):
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cfg = self.cfg
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@@ -272,7 +272,7 @@ class PromptSRC(TrainerX):
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print(f"Loading CLIP (backbone: {cfg.MODEL.BACKBONE.NAME})")
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clip_model = load_clip_to_cpu(cfg)
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if cfg.TRAINER.PROMPTSRC.PREC == "fp32" or cfg.TRAINER.PROMPTSRC.PREC == "amp":
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if cfg.TRAINER.DZGCOOP.PREC == "fp32" or cfg.TRAINER.DZGCOOP.PREC == "amp":
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# CLIP's default precision is fp16
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clip_model.float()
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@@ -312,12 +312,12 @@ class PromptSRC(TrainerX):
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self.total_epochs = cfg.OPTIM.MAX_EPOCH
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self.step_counter = 1
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N = cfg.OPTIM.MAX_EPOCH
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mean = cfg.TRAINER.PROMPTSRC.GPA_MEAN
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stdev = cfg.TRAINER.PROMPTSRC.GPA_STD
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mean = cfg.TRAINER.DZGCOOP.GPA_MEAN
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stdev = cfg.TRAINER.DZGCOOP.GPA_STD
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gauss = self.get_gauss(mean, stdev)
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self.gauss = np.array([gauss(a) for a in range(1, N + 1)])
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self.gauss = self.gauss / sum(self.gauss)
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self.scaler = GradScaler() if cfg.TRAINER.PROMPTSRC.PREC == "amp" else None
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self.scaler = GradScaler() if cfg.TRAINER.DZGCOOP.PREC == "amp" else None
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# Note that multi-gpu training could be slow because CLIP's size is
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# big, which slows down the copy operation in DataParallel
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device_count = torch.cuda.device_count()
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@@ -334,7 +334,7 @@ class PromptSRC(TrainerX):
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optim = self.optim
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scaler = self.scaler
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prec = self.cfg.TRAINER.PROMPTSRC.PREC
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prec = self.cfg.TRAINER.DZGCOOP.PREC
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if prec == "amp":
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with autocast():
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loss = model(image, label)
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@@ -346,23 +346,23 @@ class PromptSRC(TrainerX):
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loss_ce, text_features_strong, text_features_weak, fixed_embeddings, zs_image_embedd, image_ft, \
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zero_shot_logits, logits_strong, logits_weak, logits_final = model(image, label)
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lambda1 = self.cfg.TRAINER.PROMPTSRC.IMAGE_LOSS_WEIGHT
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lambda2 = self.cfg.TRAINER.PROMPTSRC.TEXT_LOSS_WEIGHT_STRONG
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lambda3 = self.cfg.TRAINER.PROMPTSRC.TEXT_LOSS_WEIGHT_WEAK
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lambda1 = self.cfg.TRAINER.DZGCOOP.IMAGE_LOSS_WEIGHT
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lambda2 = self.cfg.TRAINER.DZGCOOP.TEXT_LOSS_WEIGHT_STRONG
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lambda3 = self.cfg.TRAINER.DZGCOOP.TEXT_LOSS_WEIGHT_WEAK
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loss_scl_image = F.l1_loss(image_ft, zs_image_embedd.cuda(), reduction='mean') * lambda1
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loss_scl_text_strong = F.l1_loss(text_features_strong, fixed_embeddings.cuda(), reduction='mean') * lambda2
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loss_scl_text_weak = F.l1_loss(text_features_weak, fixed_embeddings.cuda(), reduction='mean') * lambda3
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L_zvg = F.l1_loss(image_ft, zs_image_embedd.cuda(), reduction='mean') * lambda1
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L_sg_strong = F.l1_loss(text_features_strong, fixed_embeddings.cuda(), reduction='mean') * lambda2
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L_sg_weak = F.l1_loss(text_features_weak, fixed_embeddings.cuda(), reduction='mean') * lambda3
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L_SCL_logits = F.kl_div(
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L_zpg = F.kl_div(
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F.log_softmax(logits_final / 1, dim=1),
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F.log_softmax(zero_shot_logits / 1, dim=1),
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reduction='sum',
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log_target=True
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) * (1 * 1) / logits_final.numel()
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L_SCL = (L_SCL_logits + loss_scl_text_strong + loss_scl_text_weak + loss_scl_image)
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loss = (loss_ce + L_SCL)
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L_zg = (L_zpg + L_sg_strong + L_sg_weak + L_zvg)
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loss = (loss_ce + L_zg)
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optim.zero_grad()
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loss.backward()
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optim.step()
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