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import torch
from .kv_compressor import KVCompressor
from inference.model.dit.dit_module import CustomLayerNormLinear, FusedLayerNorm, PerChannelQuantizedFp8Linear, Attention
from inference.common import EngineConfig, InferenceParams, ModelConfig, ModelMetaArgs
def MagiAttention_init(
self, model_config: ModelConfig, engine_config: EngineConfig, layer_number: int, compression_config: dict
):
Attention.__init__(self, model_config, engine_config, layer_number)
# super().__init__(model_config=model_config, engine_config=engine_config, layer_number=layer_number)
# output 2x query, one for self-attn, one for cross-attn with condition
self.linear_qkv = CustomLayerNormLinear(
input_size=self.model_config.hidden_size,
output_size_q=self.query_projection_size,
output_size_kv=self.kv_projection_size,
layer_number=self.layer_number,
model_config=self.model_config,
engine_config=self.engine_config,
)
# kv from condition, e.g., caption
self.linear_kv_xattn = torch.nn.Linear(
int(self.model_config.hidden_size * self.model_config.xattn_cond_hidden_ratio), # 6144
2 * self.kv_projection_size, # 2048
dtype=self.model_config.params_dtype,
bias=False,
)
# Output.
self.adapt_linear_quant = (
self.engine_config.fp8_quant and self.layer_number != 0 and self.layer_number != model_config.num_layers - 1
)
submodules_linear_proj = PerChannelQuantizedFp8Linear if self.adapt_linear_quant else torch.nn.Linear
self.linear_proj = submodules_linear_proj(
2 * self.query_projection_size, self.model_config.hidden_size, dtype=self.model_config.params_dtype, bias=False
)
self.q_layernorm = FusedLayerNorm(model_config=self.model_config, hidden_size=self.hidden_size_per_attention_head)
self.q_layernorm_xattn = FusedLayerNorm(
model_config=self.model_config, hidden_size=self.hidden_size_per_attention_head
)
self.k_layernorm = FusedLayerNorm(model_config=self.model_config, hidden_size=self.hidden_size_per_attention_head)
self.k_layernorm_xattn = FusedLayerNorm(
model_config=self.model_config, hidden_size=self.hidden_size_per_attention_head
)
self.attn_weights_history = []
# =============== New logic start ===============
self.kv_cluster = KVCompressor(
**compression_config["method_config"]
)
# =============== New logic end =================