#pragma once #include "../../cache/kv_cache.hpp" #include "../../engine/distributed/distributed.hpp" #include "../../layers/fused_linear.hpp" #include "llama_config.hpp" #include "infinicore/nn/linear.hpp" #include "infinicore/nn/module.hpp" #include "infinicore/nn/rope.hpp" #include "infinicore/tensor.hpp" #include "llama_config.hpp" #include #include #include namespace infinilm::models::llama { /** * @brief Multi-head self-attention module for Llama * * Implements the attention mechanism with: * - Query, Key, Value projections * - Output projection * - Rotary Position Embeddings (RoPE) applied to Q and K * - Support for Grouped Query Attention (GQA) */ class LlamaAttention : public infinicore::nn::Module { public: /** * @brief Construct LlamaAttention module * * @param config Model configuration * @param device Device to create tensors on * @param layer_idx Layer index for cache access * @param dtype Optional data type for model parameters (defaults to F32) */ LlamaAttention(const LlamaConfig &config, const infinicore::Device &device, size_t layer_idx, infinicore::DataType dtype = infinicore::DataType::F32, engine::distributed::RankInfo rank_info = engine::distributed::RankInfo()); /** * @brief Forward pass: compute attention * * @param hidden_states Input tensor of shape [batch, seq_len, hidden_size] * @param position_ids Position IDs tensor of shape [batch, seq_len] or [seq_len] * @param kv_cache Optional model-level KV cache for incremental decoding * @return Output tensor of shape [batch, seq_len, hidden_size] */ infinicore::Tensor forward(const infinicore::Tensor &hidden_states, const infinicore::Tensor &position_ids, void *kv_cache = nullptr) const; /** * @brief Get the layer index */ size_t layer_idx() const { return layer_idx_; } /** * @brief Provide shared RoPE module from parent model. */ void set_rotary_emb(const std::shared_ptr &rotary_emb); // Module information size_t num_heads() const { return num_attention_heads_; } size_t num_kv_heads() const { return num_key_value_heads_; } size_t head_dim() const { return head_dim_; } size_t hidden_size() const { return hidden_size_; } protected: // Projection layers INFINICORE_NN_MODULE(infinilm::layers::QKVParallelLinear, qkv_proj); INFINICORE_NN_MODULE(infinicore::nn::RowParallelLinear, o_proj); engine::distributed::RankInfo rank_info_; // Shared Rotary Position Embeddings (RoPE) std::shared_ptr rotary_emb_; private: size_t layer_idx_; // Layer index for cache access size_t hidden_size_; size_t num_attention_heads_; size_t num_key_value_heads_; size_t head_dim_; size_t kv_dim_; bool use_bias_; // Bias for Q/K/V projections bool use_output_bias_; // Bias for output projection (o_proj) size_t max_position_embeddings_; // For cache initialization (deprecated, kept for compatibility) }; } // namespace infinilm::models::llama