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models.py
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models.py
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"""
models.py
Draccus Dataclass Definition for a ModelConfig object, with various registered subclasses for each model family and
variant thereof. A given model variant configures the following attributes:
- Pretrained Visual Representation (e.g., OpenAI CLIP ViT-L/14) + Pretrained LLM Backbone (e.g., LLaMa-2 7B)
- VLM Configuration + Parameters (e.g., MLP Projector, Image Preprocessing, etc.)
- [Optional] Stage 1 (`align`) Optimization Hyperparameters
- Stage 2 (`finetune`) Optimization Hyperparameters
"""
from dataclasses import dataclass
from enum import Enum, unique
from typing import Optional
from draccus import ChoiceRegistry
@dataclass
class ModelConfig(ChoiceRegistry):
# fmt: off
model_id: str # Unique Model ID that fully specifies a given variant
arch_specifier: str # Architecture specifier string (e.g., "gelu-mlp")
# Pretrained Backbones
vision_backbone_id: str # Pretrained Visual Featurizer (from TIMM) to load
llm_backbone_id: str # Pretrained LLM (from HF Transformers) to load
# Backbone Parameters
image_resize_strategy: str # Resizing strategy in < crop | letterbox | corner-pad >
llm_max_length: int # Maximum context length for LLM (can be < than max!)
# === Multi-Stage Optimization Hyperparameters ===
# By default, we assume an AdamW optimizer with FSDP (Gradient Sharding or Full Sharding depending on stage)
# Align Stage Optimization Parameters
align_epochs: int # Epochs to Run (in case `max_steps` is not specified)
align_max_steps: Optional[int] # [Optional] Max Gradient Steps (overrides epochs)
align_global_batch_size: int # Global Batch Size (divided across processes)
align_per_device_batch_size: int # Per-Device Batch Size (per-process)
# => # of accumulation steps is auto-computed
align_learning_rate: float # Peak Learning Rate (lr_scheduler sets warmup/decay)
align_weight_decay: float # Weight Decay for AdamW Optimizer
align_max_grad_norm: float # Max Grad Norm (for global gradient clipping)
align_lr_scheduler_type: str # LR Scheduler (default: "linear-warmup+cosine-decay")
align_warmup_ratio: float # Fraction of total steps to warmup
align_train_strategy: str # Align Train Strategy (default: "fsdp-shard-grad-op")
# Finetune Stage Optimization Parameters
finetune_epochs: int # Epochs to Run (in case `max_steps` is not specified)
finetune_max_steps: Optional[int] # [Optional] Max Gradient Steps (overrides epochs)
finetune_global_batch_size: int # Global Batch Size (divided across processes)
finetune_per_device_batch_size: int # Per-Device Batch Size (per-process)
# => # of accumulation steps is auto-computed
finetune_learning_rate: float # Peak Learning Rate (lr_scheduler sets warmup/decay)
finetune_weight_decay: float # Weight Decay for AdamW Optimizer
finetune_max_grad_norm: float # Max Grad Norm (for global gradient clipping)
finetune_lr_scheduler_type: str # LR Scheduler (default: "linear-warmup+cosine-decay")
finetune_warmup_ratio: float # Fraction of total steps to warmup
finetune_train_strategy: str # Finetune Train Strategy (default: "fsdp-full-shard")
# Enable Gradient/Activation Checkpointing (for the LLM Backbone)
enable_gradient_checkpointing: bool = True
# Enable Traditional Mixed Precision Training via Torch Native AMP (`autocast`)
enable_mixed_precision_training: bool = True # Whether to enable mixed precision training
reduce_in_full_precision: bool = False # Whether to run gradient reduction in FP32
# fmt: on
# === LLaVa v1.5 Reproduction - Fully Specified Configurations ===
@dataclass
class LLaVa_v15_Reproduction_7B(ModelConfig):
model_id: str = "reproduction-llava-v15+7b"
arch_specifier: str = "gelu-mlp"
vision_backbone_id: str = "clip-vit-l-336px"
llm_backbone_id: str = "vicuna-v15-7b"
image_resize_strategy: str = "letterbox"
llm_max_length: int = 2048
# Align Stage Optimization Parameters
align_epochs: int = 1
align_max_steps: Optional[int] = None
align_global_batch_size: int = 256
align_per_device_batch_size: int = 16
align_learning_rate: float = 1e-3
align_weight_decay: float = 0.0
align_max_grad_norm: float = 1.0
align_lr_scheduler_type: str = "linear-warmup+cosine-decay"
align_warmup_ratio: float = 0.03
align_train_strategy: str = "fsdp-shard-grad-op"
# Finetune Stage Optimization Parameters
finetune_epochs: int = 1
finetune_max_steps: Optional[int] = None
finetune_global_batch_size: int = 128
finetune_per_device_batch_size: int = 16
finetune_learning_rate: float = 2e-5
finetune_weight_decay: float = 0.1
finetune_max_grad_norm: float = 1.0
finetune_lr_scheduler_type: str = "linear-warmup+cosine-decay"
finetune_warmup_ratio: float = 0.03
finetune_train_strategy: str = "fsdp-full-shard"
@dataclass
class LLaVa_v15_Reproduction_13B(LLaVa_v15_Reproduction_7B):
model_id: str = "reproduction-llava-v15+13b"
llm_backbone_id: str = "vicuna-v15-13b"
# === Section 4.1 :: Optimization Procedure ===
# Section 4.1A :: 🚀 --> Necessity of Multi-Stage Training
@dataclass
class Exp_7B_One_Stage(LLaVa_v15_Reproduction_7B):
model_id: str = "one-stage+7b"
arch_specifier: str = "no-align+gelu-mlp"
@dataclass
class Exp_13B_One_Stage(LLaVa_v15_Reproduction_13B):
model_id: str = "one-stage+13b"
arch_specifier: str = "no-align+gelu-mlp"
# Section 4.1B :: 🛠️ --> Full Finetuning through Visual Backbones
# =>> Note :: Run with `--stage full-finetune`
@dataclass
class Exp_7B_Full_Finetune_Multi_Stage(LLaVa_v15_Reproduction_7B):
model_id: str = "full-ft-multi-stage+7b"
@dataclass
class Exp_7B_Full_Finetune_One_Stage(Exp_7B_One_Stage):
model_id: str = "full-ft-one-stage+7b"
# === Section 4.2 :: Image Processing and Visual Representations ===
# Section 4.2A :: 📸 --> Choosing a Pretrained Representation
@dataclass
class Exp_7B_IN1K_ViT_L_p16_224px(Exp_7B_One_Stage):
model_id: str = "in1k-224px+7b"
vision_backbone_id: str = "in1k-vit-l"
@dataclass
class Exp_7B_DINOv2_ViT_L_p14_224px(Exp_7B_One_Stage):
model_id: str = "dinov2-224px+7b"
vision_backbone_id: str = "dinov2-vit-l"
@dataclass
class Exp_7B_CLIP_ViT_L_p14_224px(Exp_7B_One_Stage):
model_id: str = "clip-224px+7b"
vision_backbone_id: str = "clip-vit-l"
@dataclass
class Exp_7B_SigLIP_ViT_SO_p14_224px(Exp_7B_One_Stage):
model_id: str = "siglip-224px+7b"
vision_backbone_id: str = "siglip-vit-so400m"
# Section 4.2B :: 📐 --> Choosing an Image Preprocessing Strategy
@dataclass
class Exp_7B_CLIP_ViT_L_p14_336px_Resize_Crop(Exp_7B_One_Stage):
model_id: str = "clip-336px-resize-crop+7b"
image_resize_strategy: str = "resize-crop"
@dataclass
class Exp_7B_CLIP_ViT_L_p14_336px_Resize_Naive(Exp_7B_One_Stage):
model_id: str = "clip-336px-resize-naive+7b"
image_resize_strategy: str = "resize-naive"
@dataclass
class Exp_7B_SigLIP_ViT_SO_p14_384px_Letterbox(Exp_7B_One_Stage):
model_id: str = "siglip-384px-letterbox+7b"
vision_backbone_id: str = "siglip-vit-so400m-384px"
image_resize_strategy: str = "letterbox"
@dataclass
class Exp_7B_SigLIP_ViT_SO_p14_384px_Resize_Crop(Exp_7B_One_Stage):
model_id: str = "siglip-384px-resize-crop+7b"
vision_backbone_id: str = "siglip-vit-so400m-384px"
image_resize_strategy: str = "resize-crop"
@dataclass
class Exp_7B_SigLIP_ViT_SO_p14_384px_Resize_Naive(Exp_7B_One_Stage):
model_id: str = "siglip-384px-resize-naive+7b"
vision_backbone_id: str = "siglip-vit-so400m-384px"
image_resize_strategy: str = "resize-naive"
# Section 4.2D :: 🥞 --> Stacking/Ensembling Visual Representations
@dataclass
class Exp_7B_DINOCLIP_ViT_L_p14_336px_Letterbox(Exp_7B_One_Stage):
model_id: str = "dinoclip-336px-letterbox+7b"
vision_backbone_id: str = "dinoclip-vit-l-336px"
image_resize_strategy: str = "letterbox"
arch_specifier: str = "no-align+fused-gelu-mlp"
@dataclass
class Exp_7B_DINOCLIP_ViT_L_p14_336px_Resize_Naive(Exp_7B_One_Stage):
model_id: str = "dinoclip-336px-resize-naive+7b"
vision_backbone_id: str = "dinoclip-vit-l-336px"
image_resize_strategy: str = "resize-naive"
arch_specifier: str = "no-align+fused-gelu-mlp"
@dataclass
class Exp_7B_DINOSigLIP_ViT_L_p14_384px_Letterbox(Exp_7B_One_Stage):
model_id: str = "dinosiglip-384px-letterbox+7b"
vision_backbone_id: str = "dinosiglip-vit-so-384px"
image_resize_strategy: str = "letterbox"
arch_specifier: str = "no-align+fused-gelu-mlp"
@dataclass
class Exp_7B_DINOSigLIP_ViT_L_p14_384px_Resize_Naive(Exp_7B_One_Stage):
model_id: str = "dinosiglip-384px-resize-naive+7b"
vision_backbone_id: str = "dinosiglip-vit-so-384px"
image_resize_strategy: str = "resize-naive"
arch_specifier: str = "no-align+fused-gelu-mlp"
# === Section 4.3 :: Language Models ===
# Section 4.3A :: 📝 --> Base vs. Instruct-Tuned (Chat) LLMs
@dataclass
class Exp_7B_Llama2(Exp_7B_One_Stage):
model_id: str = "llama2+7b"
llm_backbone_id: str = "llama2-7b-pure"
@dataclass
class Exp_13B_Llama2(Exp_13B_One_Stage):
model_id: str = "llama2+13b"
llm_backbone_id: str = "llama2-13b-pure"
# ~ Additional LLM Backbones :: LLaMa-2 Chat, Mistral v0.1, Mistral v0.1 Instruct, Phi-2 ~
@dataclass
class Ext_Exp_7B_Llama2_Chat(Exp_7B_One_Stage):
model_id: str = "llama2-chat+7b"
llm_backbone_id: str = "llama2-7b-chat"
@dataclass
class Ext_Exp_13B_Llama2_Chat(Exp_13B_One_Stage):
model_id: str = "llama2-chat+13b"
llm_backbone_id: str = "llama2-13b-chat"
@dataclass
class Ext_Exp_7B_Mistral_V1(Exp_7B_One_Stage):
model_id: str = "mistral-v0.1+7b"
llm_backbone_id: str = "mistral-v0.1-7b-pure"
@dataclass
class Ext_Exp_7B_Mistral_Instruct_V1(Exp_7B_One_Stage):
model_id: str = "mistral-instruct-v0.1+7b"
llm_backbone_id: str = "mistral-v0.1-7b-instruct"
@dataclass
class Ext_Exp_3B_Phi_2(Exp_7B_One_Stage):
model_id: str = "phi-2+3b"
llm_backbone_id: str = "phi-2-3b"
# Section 4.3B :: ✌️ --> Co-training on Language-only Data
# =>> Note :: Run with `--dataset.type "llava-multimodal" (multimodal data only / no co-training)
@dataclass
class Exp_7B_Vicuna_No_Cotraining(Exp_7B_One_Stage):
model_id: str = "vicuna-no-cotraining+7b"
@dataclass
class Exp_7B_Llama2_No_Cotraining(Exp_7B_One_Stage):
model_id: str = "llama2-no-cotraining+7b"
llm_backbone_id: str = "llama2-7b-pure"
# === Section 4.4 :: Scaling Properties - Train Time & Data ===
# Section 4.4A :: ⏰ --> Scaling Train Time
@dataclass
class Exp_7B_1p25_Epochs(Exp_7B_One_Stage):
model_id: str = "train-1.25-epochs+7b"
finetune_max_steps: int = 6500
@dataclass
class Exp_7B_1p5_Epochs(Exp_7B_One_Stage):
model_id: str = "train-1.5-epochs+7b"
finetune_max_steps: int = 7800
@dataclass
class Exp_7B_2_Epochs(Exp_7B_One_Stage):
model_id: str = "train-2-epochs+7b"
finetune_epochs: int = 2
@dataclass
class Exp_7B_3_Epochs(Exp_7B_One_Stage):
model_id: str = "train-3-epochs+7b"
finetune_epochs: int = 3
# Section 4.4B :: 📚 --> Scaling Data
# =>> Note :: Run with `--dataset.type "llava-lvis4v"`
@dataclass
class Exp_7B_LLaVa_LVIS4V(Exp_7B_One_Stage):
model_id: str = "llava-lvis4v+7b"
# =>> Note :: Run with `--dataset.type "llava-lrv"`
@dataclass
class Exp_7B_LLaVa_LRV(Exp_7B_One_Stage):
model_id: str = "llava-lrv+7b"
# =>> Note :: Run with `--dataset.type "llava-lvis4v-lrv"`
@dataclass
class Exp_7B_LLaVa_LVIS4V_LRV(Exp_7B_One_Stage):
model_id: str = "llava-lvis4v-lrv+7b"
# === Section 5 :: Prisms ===
# Prism-CLIP
@dataclass
class Prism_7B_CLIP_Controlled(Exp_7B_One_Stage):
model_id: str = "prism-clip-controlled+7b"
vision_backbone_id: str = "clip-vit-l-336px"
image_resize_strategy: str = "resize-naive"
llm_backbone_id: str = "llama2-7b-pure"
@dataclass
class Prism_13B_CLIP_Controlled(Exp_13B_One_Stage):
model_id: str = "prism-clip-controlled+13b"
vision_backbone_id: str = "clip-vit-l-336px"
image_resize_strategy: str = "resize-naive"
llm_backbone_id: str = "llama2-13b-pure"
# =>> Note :: Run with `--dataset.type "llava-lvis4v-lrv"`
@dataclass
class Prism_7B_CLIP(Exp_7B_One_Stage):
model_id: str = "prism-clip+7b"
vision_backbone_id: str = "clip-vit-l-336px"
image_resize_strategy: str = "resize-naive"
llm_backbone_id: str = "llama2-7b-pure"
finetune_epochs: int = 2
# =>> Note :: Run with `--dataset.type "llava-lvis4v-lrv"`
@dataclass
class Prism_13B_CLIP(Exp_13B_One_Stage):
model_id: str = "prism-clip+13b"
vision_backbone_id: str = "clip-vit-l-336px"
image_resize_strategy: str = "resize-naive"
llm_backbone_id: str = "llama2-13b-pure"
finetune_epochs: int = 2
# Prism-SigLIP
@dataclass
class Prism_7B_SigLIP_Controlled(Exp_7B_One_Stage):
model_id: str = "prism-siglip-controlled+7b"
vision_backbone_id: str = "siglip-vit-so400m-384px"
image_resize_strategy: str = "resize-naive"
llm_backbone_id: str = "llama2-7b-pure"
@dataclass
class Prism_13B_SigLIP_Controlled(Exp_13B_One_Stage):
model_id: str = "prism-siglip-controlled+13b"
vision_backbone_id: str = "siglip-vit-so400m-384px"
image_resize_strategy: str = "resize-naive"
llm_backbone_id: str = "llama2-13b-pure"
# =>> Note :: Run with `--dataset.type "llava-lvis4v-lrv"`
@dataclass
class Prism_7B_SigLIP(Exp_7B_One_Stage):
model_id: str = "prism-siglip+7b"
vision_backbone_id: str = "siglip-vit-so400m-384px"
image_resize_strategy: str = "resize-naive"
llm_backbone_id: str = "llama2-7b-pure"
finetune_epochs: int = 2
# =>> Note :: Run with `--dataset.type "llava-lvis4v-lrv"`
@dataclass
class Prism_13B_SigLIP(Exp_13B_One_Stage):
model_id: str = "prism-siglip+13b"
vision_backbone_id: str = "clip-vit-l-336px"
image_resize_strategy: str = "resize-naive"
llm_backbone_id: str = "llama2-13b-pure"
finetune_epochs: int = 2
# Prism-DINOSigLIP
@dataclass
class Prism_7B_DINOSigLIP_Controlled(Exp_7B_One_Stage):
model_id: str = "prism-dinosiglip-controlled+7b"
vision_backbone_id: str = "dinosiglip-vit-so-384px"
image_resize_strategy: str = "resize-naive"
llm_backbone_id: str = "llama2-7b-pure"
arch_specifier: str = "no-align+fused-gelu-mlp"
@dataclass
class Prism_13B_DINOSigLIP_Controlled(Exp_13B_One_Stage):
model_id: str = "prism-dinosiglip-controlled+13b"
vision_backbone_id: str = "dinosiglip-vit-so-384px"
image_resize_strategy: str = "resize-naive"
llm_backbone_id: str = "llama2-13b-pure"
arch_specifier: str = "no-align+fused-gelu-mlp"
# =>> Note :: Run with `--dataset.type "llava-lvis4v-lrv"`
@dataclass
class Prism_7B_DINOSigLIP(Exp_7B_One_Stage):
model_id: str = "prism-dinosiglip+7b"
vision_backbone_id: str = "dinosiglip-vit-so-384px"
image_resize_strategy: str = "resize-naive"
llm_backbone_id: str = "llama2-7b-pure"
arch_specifier: str = "no-align+fused-gelu-mlp"
finetune_epochs: int = 2
# =>> Note :: Run with `--dataset.type "llava-lvis4v-lrv"`
@dataclass
class Prism_13B_DINOSigLIP(Exp_13B_One_Stage):
model_id: str = "prism-dinosiglip+13b"
vision_backbone_id: str = "dinosiglip-vit-so-384px"
image_resize_strategy: str = "resize-naive"
llm_backbone_id: str = "llama2-13b-pure"
arch_specifier: str = "no-align+fused-gelu-mlp"
finetune_epochs: int = 2
# [Inference-Optimized] 224px Prism Models
@dataclass
class Prism_7B_DINOSigLIP_224px_Controlled(Exp_7B_One_Stage):
model_id: str = "prism-dinosiglip-224px-controlled+7b"
vision_backbone_id: str = "dinosiglip-vit-so-224px"
image_resize_strategy: str = "resize-naive"
llm_backbone_id: str = "llama2-7b-pure"
arch_specifier: str = "no-align+fused-gelu-mlp"
# =>> Note :: Run with `--dataset.type "llava-lvis4v-lrv"`
@dataclass
class Prism_7B_DINOSigLIP_224px(Exp_7B_One_Stage):
model_id: str = "prism-dinosiglip-224px+7b"
vision_backbone_id: str = "dinosiglip-vit-so-224px"
image_resize_strategy: str = "resize-naive"
llm_backbone_id: str = "llama2-7b-pure"
arch_specifier: str = "no-align+fused-gelu-mlp"
finetune_epochs: int = 2
# === Define a Model Registry Enum for Reference & Validation ===
@unique
class ModelRegistry(Enum):
# === LLaVa v1.5 Base Reproductions ===
REPRODUCTION_7B = LLaVa_v15_Reproduction_7B
REPRODUCTION_13B = LLaVa_v15_Reproduction_13B
# === Section 4.1 :: Optimization Procedure ===
EXP_ONE_STAGE_7B = Exp_7B_One_Stage
EXP_ONE_STAGE_13B = Exp_13B_One_Stage
EXP_FULL_FT_MULTI_STAGE = Exp_7B_Full_Finetune_Multi_Stage
EXP_FULL_FT_ONE_STAGE = Exp_7B_Full_Finetune_One_Stage
# === Section 4.2 :: Image Processing and Visual Representations ===
EXP_IN1K_224PX = Exp_7B_IN1K_ViT_L_p16_224px
EXP_DINOV2_224PX = Exp_7B_DINOv2_ViT_L_p14_224px
EXP_CLIP_224PX = Exp_7B_CLIP_ViT_L_p14_224px
EXP_SIGLIP_224PX = Exp_7B_SigLIP_ViT_SO_p14_224px
EXP_CLIP_336PX_RESIZE_CROP = Exp_7B_CLIP_ViT_L_p14_336px_Resize_Crop
EXP_CLIP_336PX_RESIZE_NAIVE = Exp_7B_CLIP_ViT_L_p14_336px_Resize_Naive
EXP_SIGLIP_384PX_LETTERBOX = Exp_7B_SigLIP_ViT_SO_p14_384px_Letterbox
EXP_SIGLIP_384PX_RESIZE_CROP = Exp_7B_SigLIP_ViT_SO_p14_384px_Resize_Crop
EXP_SIGLIP_384PX_RESIZE_NAIVE = Exp_7B_SigLIP_ViT_SO_p14_384px_Resize_Naive
EXP_DINOCLIP_336PX_LETTERBOX = Exp_7B_DINOCLIP_ViT_L_p14_336px_Letterbox
EXP_DINOCLIP_336PX_RESIZE_NAIVE = Exp_7B_DINOCLIP_ViT_L_p14_336px_Resize_Naive
EXP_DINOSIGLIP_384PX_LETTERBOX = Exp_7B_DINOSigLIP_ViT_L_p14_384px_Letterbox
EXP_DINOSIGLIP_384PX_RESIZE_NAIVE = Exp_7B_DINOSigLIP_ViT_L_p14_384px_Resize_Naive
# === Section 4.3 :: Language Models ===
EXP_LLAMA2_7B = Exp_7B_Llama2
EXP_LLAMA2_13B = Exp_13B_Llama2
# ~ Additional LLM Backbone Experiments :: LLaMa-2 Chat, Mistral v0.1, Mistral v0.1 Instruct, Phi-2 ~
EXT_EXP_LLAMA2_CHAT_7B = Ext_Exp_7B_Llama2_Chat
EXT_EXP_LLAMA2_CHAT_13B = Ext_Exp_13B_Llama2_Chat
EXT_EXP_MISTRAL_V1_7B = Ext_Exp_7B_Mistral_V1
EXT_EXP_MISTRAL_INSTRUCT_V1_7B = Ext_Exp_7B_Mistral_Instruct_V1
EXT_EXP_PHI_2_3B = Ext_Exp_3B_Phi_2
# Cotraining w/ Unimodal Data
EXP_VICUNA_NO_COTRAINING_7B = Exp_7B_Vicuna_No_Cotraining
EXP_LLAMA2_NO_COTRAINING_7B = Exp_7B_Llama2_No_Cotraining
# === Section 4.4 :: Scaling Properties - Train Time & Data ===
EXP_1P25_EPOCHS = Exp_7B_1p25_Epochs
EXP_1P5_EPOCHS = Exp_7B_1p5_Epochs
EXP_2_EPOCHS = Exp_7B_2_Epochs
EXP_3_EPOCHS = Exp_7B_3_Epochs
EXP_LLAVA_LVIS4V = Exp_7B_LLaVa_LVIS4V
EXP_LLAVA_LRV = Exp_7B_LLaVa_LRV
EXP_LLAVA_LVIS4V_LRV = Exp_7B_LLaVa_LVIS4V_LRV
# === Section 5 :: Prisms ===
PRISM_CLIP_CONTROLLED_7B = Prism_7B_CLIP_Controlled
PRISM_CLIP_CONTROLLED_13B = Prism_13B_CLIP_Controlled
PRISM_CLIP_7B = Prism_7B_CLIP
PRISM_CLIP_13B = Prism_13B_CLIP
PRISM_SIGLIP_CONTROLLED_7B = Prism_7B_SigLIP_Controlled
PRISM_SIGLIP_CONTROLLED_13B = Prism_13B_SigLIP_Controlled
PRISM_SIGLIP_7B = Prism_7B_SigLIP
PRISM_SIGLIP_13B = Prism_13B_SigLIP
PRISM_DINOSIGLIP_CONTROLLED_7B = Prism_7B_DINOSigLIP_Controlled
PRISM_DINOSIGLIP_CONTROLLED_13B = Prism_13B_DINOSigLIP_Controlled
PRISM_DINOSIGLIP_7B = Prism_7B_DINOSigLIP
PRISM_DINOSIGLIP_13B = Prism_13B_DINOSigLIP
# === Inference Optimized :: 224px Prism Models ===
PRISM_DINOSIGLIP_224PX_CONTROLLED_7B = Prism_7B_DINOSigLIP_224px_Controlled
PRISM_DINOSIGLIP_224PX_7B = Prism_7B_DINOSigLIP_224px
@property
def model_id(self) -> str:
return self.value.model_id
# Register Models in Choice Registry
for model_variant in ModelRegistry:
ModelConfig.register_subclass(model_variant.model_id, model_variant.value)