Instructions to use eaddario/Qwen3-30B-A3B-GGUF with libraries, inference providers, notebooks, and local apps. Follow these links to get started.
- Libraries
- llama-cpp-python
How to use eaddario/Qwen3-30B-A3B-GGUF with llama-cpp-python:
# !pip install llama-cpp-python from llama_cpp import Llama llm = Llama.from_pretrained( repo_id="eaddario/Qwen3-30B-A3B-GGUF", filename="Qwen3-30B-A3B-F16-00001-of-00003.gguf", )
llm.create_chat_completion( messages = [ { "role": "user", "content": "What is the capital of France?" } ] ) - Notebooks
- Google Colab
- Kaggle
- Local Apps Settings
- llama.cpp
How to use eaddario/Qwen3-30B-A3B-GGUF with llama.cpp:
Install from brew
brew install llama.cpp # Start a local OpenAI-compatible server with a web UI: llama-server -hf eaddario/Qwen3-30B-A3B-GGUF:Q4_K_M # Run inference directly in the terminal: llama-cli -hf eaddario/Qwen3-30B-A3B-GGUF:Q4_K_M
Install from WinGet (Windows)
winget install llama.cpp # Start a local OpenAI-compatible server with a web UI: llama-server -hf eaddario/Qwen3-30B-A3B-GGUF:Q4_K_M # Run inference directly in the terminal: llama-cli -hf eaddario/Qwen3-30B-A3B-GGUF:Q4_K_M
Use pre-built binary
# Download pre-built binary from: # https://github.com/ggerganov/llama.cpp/releases # Start a local OpenAI-compatible server with a web UI: ./llama-server -hf eaddario/Qwen3-30B-A3B-GGUF:Q4_K_M # Run inference directly in the terminal: ./llama-cli -hf eaddario/Qwen3-30B-A3B-GGUF:Q4_K_M
Build from source code
git clone https://github.com/ggerganov/llama.cpp.git cd llama.cpp cmake -B build cmake --build build -j --target llama-server llama-cli # Start a local OpenAI-compatible server with a web UI: ./build/bin/llama-server -hf eaddario/Qwen3-30B-A3B-GGUF:Q4_K_M # Run inference directly in the terminal: ./build/bin/llama-cli -hf eaddario/Qwen3-30B-A3B-GGUF:Q4_K_M
Use Docker
docker model run hf.co/eaddario/Qwen3-30B-A3B-GGUF:Q4_K_M
- LM Studio
- Jan
- vLLM
How to use eaddario/Qwen3-30B-A3B-GGUF with vLLM:
Install from pip and serve model
# Install vLLM from pip: pip install vllm # Start the vLLM server: vllm serve "eaddario/Qwen3-30B-A3B-GGUF" # Call the server using curl (OpenAI-compatible API): curl -X POST "http://localhost:8000/v1/chat/completions" \ -H "Content-Type: application/json" \ --data '{ "model": "eaddario/Qwen3-30B-A3B-GGUF", "messages": [ { "role": "user", "content": "What is the capital of France?" } ] }'Use Docker
docker model run hf.co/eaddario/Qwen3-30B-A3B-GGUF:Q4_K_M
- Ollama
How to use eaddario/Qwen3-30B-A3B-GGUF with Ollama:
ollama run hf.co/eaddario/Qwen3-30B-A3B-GGUF:Q4_K_M
- Unsloth Studio
How to use eaddario/Qwen3-30B-A3B-GGUF with Unsloth Studio:
Install Unsloth Studio (macOS, Linux, WSL)
curl -fsSL https://unsloth.ai/install.sh | sh # Run unsloth studio unsloth studio -H 0.0.0.0 -p 8888 # Then open http://localhost:8888 in your browser # Search for eaddario/Qwen3-30B-A3B-GGUF to start chatting
Install Unsloth Studio (Windows)
irm https://unsloth.ai/install.ps1 | iex # Run unsloth studio unsloth studio -H 0.0.0.0 -p 8888 # Then open http://localhost:8888 in your browser # Search for eaddario/Qwen3-30B-A3B-GGUF to start chatting
Using HuggingFace Spaces for Unsloth
# No setup required # Open https://huggingface.co/spaces/unsloth/studio in your browser # Search for eaddario/Qwen3-30B-A3B-GGUF to start chatting
- Pi
How to use eaddario/Qwen3-30B-A3B-GGUF with Pi:
Start the llama.cpp server
# Install llama.cpp: brew install llama.cpp # Start a local OpenAI-compatible server: llama-server -hf eaddario/Qwen3-30B-A3B-GGUF:Q4_K_M
Configure the model in Pi
# Install Pi: npm install -g @mariozechner/pi-coding-agent # Add to ~/.pi/agent/models.json: { "providers": { "llama-cpp": { "baseUrl": "http://localhost:8080/v1", "api": "openai-completions", "apiKey": "none", "models": [ { "id": "eaddario/Qwen3-30B-A3B-GGUF:Q4_K_M" } ] } } }Run Pi
# Start Pi in your project directory: pi
- Hermes Agent new
How to use eaddario/Qwen3-30B-A3B-GGUF with Hermes Agent:
Start the llama.cpp server
# Install llama.cpp: brew install llama.cpp # Start a local OpenAI-compatible server: llama-server -hf eaddario/Qwen3-30B-A3B-GGUF:Q4_K_M
Configure Hermes
# Install Hermes: curl -fsSL https://hermes-agent.nousresearch.com/install.sh | bash hermes setup # Point Hermes at the local server: hermes config set model.provider custom hermes config set model.base_url http://127.0.0.1:8080/v1 hermes config set model.default eaddario/Qwen3-30B-A3B-GGUF:Q4_K_M
Run Hermes
hermes
- Atomic Chat new
- Docker Model Runner
How to use eaddario/Qwen3-30B-A3B-GGUF with Docker Model Runner:
docker model run hf.co/eaddario/Qwen3-30B-A3B-GGUF:Q4_K_M
- Lemonade
How to use eaddario/Qwen3-30B-A3B-GGUF with Lemonade:
Pull the model
# Download Lemonade from https://lemonade-server.ai/ lemonade pull eaddario/Qwen3-30B-A3B-GGUF:Q4_K_M
Run and chat with the model
lemonade run user.Qwen3-30B-A3B-GGUF-Q4_K_M
List all available models
lemonade list
Qwen3-30B-A3B-Q3_K_M.gguf - GGUF Internal File Dump
- Endian: LITTLE endian
Key Value Metadata Store
There are 44 key-value pairs in this file
| POS | TYPE | Count | Key | Value |
|---|---|---|---|---|
| 1 | UINT32 | 1 | GGUF.version | 3 |
| 2 | UINT64 | 1 | GGUF.tensor_count | 579 |
| 3 | UINT64 | 1 | GGUF.kv_count | 41 |
| 4 | STRING | 1 | general.architecture | qwen3moe |
| 5 | STRING | 1 | general.type | model |
| 6 | STRING | 1 | general.name | Qwen3 30B A3B |
| 7 | STRING | 1 | general.basename | Qwen3 |
| 8 | STRING | 1 | general.size_label | 30B-A3B |
| 9 | STRING | 1 | general.license | apache-2.0 |
| 10 | STRING | 1 | general.license.link | https://huggingface.co/Qwen/Qwen3-30B-A3B/blob/main/LICENSE |
| 11 | UINT32 | 1 | general.base_model.count | 1 |
| 12 | STRING | 1 | general.base_model.0.name | Qwen3 30B A3B Base |
| 13 | STRING | 1 | general.base_model.0.organization | Qwen |
| 14 | STRING | 1 | general.base_model.0.repo_url | https://huggingface.co/Qwen/Qwen3-30B-A3B-Base |
| 15 | [STRING] | 1 | general.tags | [ text-generation ] |
| 16 | UINT32 | 1 | qwen3moe.block_count | 48 |
| 17 | UINT32 | 1 | qwen3moe.context_length | 40960 |
| 18 | UINT32 | 1 | qwen3moe.embedding_length | 2048 |
| 19 | UINT32 | 1 | qwen3moe.feed_forward_length | 6144 |
| 20 | UINT32 | 1 | qwen3moe.attention.head_count | 32 |
| 21 | UINT32 | 1 | qwen3moe.attention.head_count_kv | 4 |
| 22 | FLOAT32 | 1 | qwen3moe.rope.freq_base | 1000000.0 |
| 23 | FLOAT32 | 1 | qwen3moe.attention.layer_norm_rms_epsilon | 1e-06 |
| 24 | UINT32 | 1 | qwen3moe.expert_used_count | 8 |
| 25 | UINT32 | 1 | qwen3moe.attention.key_length | 128 |
| 26 | UINT32 | 1 | qwen3moe.attention.value_length | 128 |
| 27 | UINT32 | 1 | qwen3moe.expert_count | 128 |
| 28 | UINT32 | 1 | qwen3moe.expert_feed_forward_length | 768 |
| 29 | STRING | 1 | tokenizer.ggml.model | gpt2 |
| 30 | STRING | 1 | tokenizer.ggml.pre | qwen2 |
| 31 | [STRING] | 151936 | tokenizer.ggml.tokens | [ !, ", #, $, %, ... ] |
| 32 | [INT32] | 151936 | tokenizer.ggml.token_type | [ 1, 1, 1, 1, 1, 1, 1, ... ] |
| 33 | [STRING] | 151387 | tokenizer.ggml.merges | [ Ġ Ġ, ĠĠ ĠĠ, i n, Ġ t, ĠĠĠĠ ĠĠĠĠ, ... ] |
| 34 | UINT32 | 1 | tokenizer.ggml.eos_token_id | 151645 |
| 35 | UINT32 | 1 | tokenizer.ggml.padding_token_id | 151643 |
| 36 | UINT32 | 1 | tokenizer.ggml.bos_token_id | 151643 |
| 37 | BOOL | 1 | tokenizer.ggml.add_bos_token | False |
| 38 | STRING | 1 | tokenizer.chat_template | `{%- if tools %}{{- '< |
| 39 | UINT32 | 1 | general.quantization_version | 2 |
| 40 | UINT32 | 1 | general.file_type | 12 |
| 41 | STRING | 1 | quantize.imatrix.file | ./imatrix/imatrix-Qwen3-30B-A3B-large.dat |
| 42 | STRING | 1 | quantize.imatrix.dataset | ../../datasets/imatrix/calibration_all_large.txt |
| 43 | INT32 | 1 | quantize.imatrix.entries_count | 382 |
| 44 | INT32 | 1 | quantize.imatrix.chunks_count | 4978 |
Tensors Overview ~31B Elements
Total number of elements in all tensors: 30532122624 Elements
- Qwen3-30B-A3B-Q3_K_M.gguf - GGUF Internal File Dump
- Key Value Metadata Store
- Tensors Overview ~31B Elements
- Tensor Data Offset
- Base Tensor Group : ~622M Elements
- Block 0 Tensor Group : ~623M Elements
- Block 1 Tensor Group : ~623M Elements
- Block 2 Tensor Group : ~623M Elements
- Block 3 Tensor Group : ~623M Elements
- Block 4 Tensor Group : ~623M Elements
- Block 5 Tensor Group : ~623M Elements
- Block 6 Tensor Group : ~623M Elements
- Block 7 Tensor Group : ~623M Elements
- Block 8 Tensor Group : ~623M Elements
- Block 9 Tensor Group : ~623M Elements
- Block 10 Tensor Group : ~623M Elements
- Block 11 Tensor Group : ~623M Elements
- Block 12 Tensor Group : ~623M Elements
- Block 13 Tensor Group : ~623M Elements
- Block 14 Tensor Group : ~623M Elements
- Block 15 Tensor Group : ~623M Elements
- Block 16 Tensor Group : ~623M Elements
- Block 17 Tensor Group : ~623M Elements
- Block 18 Tensor Group : ~623M Elements
- Block 19 Tensor Group : ~623M Elements
- Block 20 Tensor Group : ~623M Elements
- Block 21 Tensor Group : ~623M Elements
- Block 22 Tensor Group : ~623M Elements
- Block 23 Tensor Group : ~623M Elements
- Block 24 Tensor Group : ~623M Elements
- Block 25 Tensor Group : ~623M Elements
- Block 26 Tensor Group : ~623M Elements
- Block 27 Tensor Group : ~623M Elements
- Block 28 Tensor Group : ~623M Elements
- Block 29 Tensor Group : ~623M Elements
- Block 30 Tensor Group : ~623M Elements
- Block 31 Tensor Group : ~623M Elements
- Block 32 Tensor Group : ~623M Elements
- Block 33 Tensor Group : ~623M Elements
- Block 34 Tensor Group : ~623M Elements
- Block 35 Tensor Group : ~623M Elements
- Block 36 Tensor Group : ~623M Elements
- Block 37 Tensor Group : ~623M Elements
- Block 38 Tensor Group : ~623M Elements
- Block 39 Tensor Group : ~623M Elements
- Block 40 Tensor Group : ~623M Elements
- Block 41 Tensor Group : ~623M Elements
- Block 42 Tensor Group : ~623M Elements
- Block 43 Tensor Group : ~623M Elements
- Block 44 Tensor Group : ~623M Elements
- Block 45 Tensor Group : ~623M Elements
- Block 46 Tensor Group : ~623M Elements
- Block 47 Tensor Group : ~623M Elements
Tensor Data Offset
This table contains the offset and data segment relative to start of file
| T_ID | Tensor Layer Name | Data Offset (B) | Data Size (B) |
|---|---|---|---|
| 0 | output.weight | 0x5b18c0 | 0x7f82800 |
| 1 | output_norm.weight | 0x85340c0 | 0x2000 |
| 2 | token_embd.weight | 0x85360c0 | 0x7f82800 |
| 3 | blk.0.attn_k.weight | 0x104b88c0 | 0x54000 |
| 4 | blk.0.attn_k_norm.weight | 0x1050c8c0 | 0x200 |
| 5 | blk.0.attn_norm.weight | 0x1050cac0 | 0x2000 |
| 6 | blk.0.attn_output.weight | 0x1050eac0 | 0x480000 |
| 7 | blk.0.attn_q.weight | 0x1098eac0 | 0x2a0000 |
| 8 | blk.0.attn_q_norm.weight | 0x10c2eac0 | 0x200 |
| 9 | blk.0.attn_v.weight | 0x10c2ecc0 | 0x6e000 |
| 10 | blk.0.ffn_down_exps.weight | 0x10c9ccc0 | 0x6c00000 |
| 11 | blk.0.ffn_gate_exps.weight | 0x1789ccc0 | 0x3f00000 |
| 12 | blk.0.ffn_gate_inp.weight | 0x1b79ccc0 | 0x100000 |
| 13 | blk.0.ffn_norm.weight | 0x1b89ccc0 | 0x2000 |
| 14 | blk.0.ffn_up_exps.weight | 0x1b89ecc0 | 0x3f00000 |
| 15 | blk.1.attn_k.weight | 0x1f79ecc0 | 0x54000 |
| 16 | blk.1.attn_k_norm.weight | 0x1f7f2cc0 | 0x200 |
| 17 | blk.1.attn_norm.weight | 0x1f7f2ec0 | 0x2000 |
| 18 | blk.1.attn_output.weight | 0x1f7f4ec0 | 0x480000 |
| 19 | blk.1.attn_q.weight | 0x1fc74ec0 | 0x2a0000 |
| 20 | blk.1.attn_q_norm.weight | 0x1ff14ec0 | 0x200 |
| 21 | blk.1.attn_v.weight | 0x1ff150c0 | 0x6e000 |
| 22 | blk.1.ffn_down_exps.weight | 0x1ff830c0 | 0x6c00000 |
| 23 | blk.1.ffn_gate_exps.weight | 0x26b830c0 | 0x3f00000 |
| 24 | blk.1.ffn_gate_inp.weight | 0x2aa830c0 | 0x100000 |
| 25 | blk.1.ffn_norm.weight | 0x2ab830c0 | 0x2000 |
| 26 | blk.1.ffn_up_exps.weight | 0x2ab850c0 | 0x3f00000 |
| 27 | blk.2.attn_k.weight | 0x2ea850c0 | 0x54000 |
| 28 | blk.2.attn_k_norm.weight | 0x2ead90c0 | 0x200 |
| 29 | blk.2.attn_norm.weight | 0x2ead92c0 | 0x2000 |
| 30 | blk.2.attn_output.weight | 0x2eadb2c0 | 0x480000 |
| 31 | blk.2.attn_q.weight | 0x2ef5b2c0 | 0x2a0000 |
| 32 | blk.2.attn_q_norm.weight | 0x2f1fb2c0 | 0x200 |
| 33 | blk.2.attn_v.weight | 0x2f1fb4c0 | 0x6e000 |
| 34 | blk.2.ffn_down_exps.weight | 0x2f2694c0 | 0x6c00000 |
| 35 | blk.2.ffn_gate_exps.weight | 0x35e694c0 | 0x3f00000 |
| 36 | blk.2.ffn_gate_inp.weight | 0x39d694c0 | 0x100000 |
| 37 | blk.2.ffn_norm.weight | 0x39e694c0 | 0x2000 |
| 38 | blk.2.ffn_up_exps.weight | 0x39e6b4c0 | 0x3f00000 |
| 39 | blk.3.attn_k.weight | 0x3dd6b4c0 | 0x54000 |
| 40 | blk.3.attn_k_norm.weight | 0x3ddbf4c0 | 0x200 |
| 41 | blk.3.attn_norm.weight | 0x3ddbf6c0 | 0x2000 |
| 42 | blk.3.attn_output.weight | 0x3ddc16c0 | 0x480000 |
| 43 | blk.3.attn_q.weight | 0x3e2416c0 | 0x2a0000 |
| 44 | blk.3.attn_q_norm.weight | 0x3e4e16c0 | 0x200 |
| 45 | blk.3.attn_v.weight | 0x3e4e18c0 | 0x6e000 |
| 46 | blk.3.ffn_down_exps.weight | 0x3e54f8c0 | 0x6c00000 |
| 47 | blk.3.ffn_gate_exps.weight | 0x4514f8c0 | 0x3f00000 |
| 48 | blk.3.ffn_gate_inp.weight | 0x4904f8c0 | 0x100000 |
| 49 | blk.3.ffn_norm.weight | 0x4914f8c0 | 0x2000 |
| 50 | blk.3.ffn_up_exps.weight | 0x491518c0 | 0x3f00000 |
| 51 | blk.4.attn_k.weight | 0x4d0518c0 | 0x54000 |
| 52 | blk.4.attn_k_norm.weight | 0x4d0a58c0 | 0x200 |
| 53 | blk.4.attn_norm.weight | 0x4d0a5ac0 | 0x2000 |
| 54 | blk.4.attn_output.weight | 0x4d0a7ac0 | 0x480000 |
| 55 | blk.4.attn_q.weight | 0x4d527ac0 | 0x2a0000 |
| 56 | blk.4.attn_q_norm.weight | 0x4d7c7ac0 | 0x200 |
| 57 | blk.4.attn_v.weight | 0x4d7c7cc0 | 0x6e000 |
| 58 | blk.4.ffn_down_exps.weight | 0x4d835cc0 | 0x6c00000 |
| 59 | blk.4.ffn_gate_exps.weight | 0x54435cc0 | 0x3f00000 |
| 60 | blk.4.ffn_gate_inp.weight | 0x58335cc0 | 0x100000 |
| 61 | blk.4.ffn_norm.weight | 0x58435cc0 | 0x2000 |
| 62 | blk.4.ffn_up_exps.weight | 0x58437cc0 | 0x3f00000 |
| 63 | blk.5.attn_k.weight | 0x5c337cc0 | 0x54000 |
| 64 | blk.5.attn_k_norm.weight | 0x5c38bcc0 | 0x200 |
| 65 | blk.5.attn_norm.weight | 0x5c38bec0 | 0x2000 |
| 66 | blk.5.attn_output.weight | 0x5c38dec0 | 0x480000 |
| 67 | blk.5.attn_q.weight | 0x5c80dec0 | 0x2a0000 |
| 68 | blk.5.attn_q_norm.weight | 0x5caadec0 | 0x200 |
| 69 | blk.5.attn_v.weight | 0x5caae0c0 | 0x6e000 |
| 70 | blk.5.ffn_down_exps.weight | 0x5cb1c0c0 | 0x6c00000 |
| 71 | blk.5.ffn_gate_exps.weight | 0x6371c0c0 | 0x3f00000 |
| 72 | blk.5.ffn_gate_inp.weight | 0x6761c0c0 | 0x100000 |
| 73 | blk.5.ffn_norm.weight | 0x6771c0c0 | 0x2000 |
| 74 | blk.5.ffn_up_exps.weight | 0x6771e0c0 | 0x3f00000 |
| 75 | blk.6.attn_k.weight | 0x6b61e0c0 | 0x54000 |
| 76 | blk.6.attn_k_norm.weight | 0x6b6720c0 | 0x200 |
| 77 | blk.6.attn_norm.weight | 0x6b6722c0 | 0x2000 |
| 78 | blk.6.attn_output.weight | 0x6b6742c0 | 0x480000 |
| 79 | blk.6.attn_q.weight | 0x6baf42c0 | 0x2a0000 |
| 80 | blk.6.attn_q_norm.weight | 0x6bd942c0 | 0x200 |
| 81 | blk.6.attn_v.weight | 0x6bd944c0 | 0x6e000 |
| 82 | blk.6.ffn_down_exps.weight | 0x6be024c0 | 0x6c00000 |
| 83 | blk.6.ffn_gate_exps.weight | 0x72a024c0 | 0x3f00000 |
| 84 | blk.6.ffn_gate_inp.weight | 0x769024c0 | 0x100000 |
| 85 | blk.6.ffn_norm.weight | 0x76a024c0 | 0x2000 |
| 86 | blk.6.ffn_up_exps.weight | 0x76a044c0 | 0x3f00000 |
| 87 | blk.7.attn_k.weight | 0x7a9044c0 | 0x54000 |
| 88 | blk.7.attn_k_norm.weight | 0x7a9584c0 | 0x200 |
| 89 | blk.7.attn_norm.weight | 0x7a9586c0 | 0x2000 |
| 90 | blk.7.attn_output.weight | 0x7a95a6c0 | 0x480000 |
| 91 | blk.7.attn_q.weight | 0x7adda6c0 | 0x2a0000 |
| 92 | blk.7.attn_q_norm.weight | 0x7b07a6c0 | 0x200 |
| 93 | blk.7.attn_v.weight | 0x7b07a8c0 | 0x6e000 |
| 94 | blk.7.ffn_down_exps.weight | 0x7b0e88c0 | 0x6c00000 |
| 95 | blk.7.ffn_gate_exps.weight | 0x81ce88c0 | 0x3f00000 |
| 96 | blk.7.ffn_gate_inp.weight | 0x85be88c0 | 0x100000 |
| 97 | blk.7.ffn_norm.weight | 0x85ce88c0 | 0x2000 |
| 98 | blk.7.ffn_up_exps.weight | 0x85cea8c0 | 0x3f00000 |
| 99 | blk.8.attn_k.weight | 0x89bea8c0 | 0x54000 |
| 100 | blk.8.attn_k_norm.weight | 0x89c3e8c0 | 0x200 |
| 101 | blk.8.attn_norm.weight | 0x89c3eac0 | 0x2000 |
| 102 | blk.8.attn_output.weight | 0x89c40ac0 | 0x480000 |
| 103 | blk.8.attn_q.weight | 0x8a0c0ac0 | 0x2a0000 |
| 104 | blk.8.attn_q_norm.weight | 0x8a360ac0 | 0x200 |
| 105 | blk.8.attn_v.weight | 0x8a360cc0 | 0x6e000 |
| 106 | blk.8.ffn_down_exps.weight | 0x8a3cecc0 | 0x6c00000 |
| 107 | blk.8.ffn_gate_exps.weight | 0x90fcecc0 | 0x3f00000 |
| 108 | blk.8.ffn_gate_inp.weight | 0x94ececc0 | 0x100000 |
| 109 | blk.8.ffn_norm.weight | 0x94fcecc0 | 0x2000 |
| 110 | blk.8.ffn_up_exps.weight | 0x94fd0cc0 | 0x3f00000 |
| 111 | blk.9.attn_k.weight | 0x98ed0cc0 | 0x54000 |
| 112 | blk.9.attn_k_norm.weight | 0x98f24cc0 | 0x200 |
| 113 | blk.9.attn_norm.weight | 0x98f24ec0 | 0x2000 |
| 114 | blk.9.attn_output.weight | 0x98f26ec0 | 0x480000 |
| 115 | blk.9.attn_q.weight | 0x993a6ec0 | 0x2a0000 |
| 116 | blk.9.attn_q_norm.weight | 0x99646ec0 | 0x200 |
| 117 | blk.9.attn_v.weight | 0x996470c0 | 0x6e000 |
| 118 | blk.9.ffn_down_exps.weight | 0x996b50c0 | 0x6c00000 |
| 119 | blk.9.ffn_gate_exps.weight | 0xa02b50c0 | 0x3f00000 |
| 120 | blk.9.ffn_gate_inp.weight | 0xa41b50c0 | 0x100000 |
| 121 | blk.9.ffn_norm.weight | 0xa42b50c0 | 0x2000 |
| 122 | blk.9.ffn_up_exps.weight | 0xa42b70c0 | 0x3f00000 |
| 123 | blk.10.attn_k.weight | 0xa81b70c0 | 0x54000 |
| 124 | blk.10.attn_k_norm.weight | 0xa820b0c0 | 0x200 |
| 125 | blk.10.attn_norm.weight | 0xa820b2c0 | 0x2000 |
| 126 | blk.10.attn_output.weight | 0xa820d2c0 | 0x480000 |
| 127 | blk.10.attn_q.weight | 0xa868d2c0 | 0x2a0000 |
| 128 | blk.10.attn_q_norm.weight | 0xa892d2c0 | 0x200 |
| 129 | blk.10.attn_v.weight | 0xa892d4c0 | 0x6e000 |
| 130 | blk.10.ffn_down_exps.weight | 0xa899b4c0 | 0x6c00000 |
| 131 | blk.10.ffn_gate_exps.weight | 0xaf59b4c0 | 0x3f00000 |
| 132 | blk.10.ffn_gate_inp.weight | 0xb349b4c0 | 0x100000 |
| 133 | blk.10.ffn_norm.weight | 0xb359b4c0 | 0x2000 |
| 134 | blk.10.ffn_up_exps.weight | 0xb359d4c0 | 0x3f00000 |
| 135 | blk.11.attn_k.weight | 0xb749d4c0 | 0x54000 |
| 136 | blk.11.attn_k_norm.weight | 0xb74f14c0 | 0x200 |
| 137 | blk.11.attn_norm.weight | 0xb74f16c0 | 0x2000 |
| 138 | blk.11.attn_output.weight | 0xb74f36c0 | 0x480000 |
| 139 | blk.11.attn_q.weight | 0xb79736c0 | 0x2a0000 |
| 140 | blk.11.attn_q_norm.weight | 0xb7c136c0 | 0x200 |
| 141 | blk.11.attn_v.weight | 0xb7c138c0 | 0x6e000 |
| 142 | blk.11.ffn_down_exps.weight | 0xb7c818c0 | 0x6c00000 |
| 143 | blk.11.ffn_gate_exps.weight | 0xbe8818c0 | 0x3f00000 |
| 144 | blk.11.ffn_gate_inp.weight | 0xc27818c0 | 0x100000 |
| 145 | blk.11.ffn_norm.weight | 0xc28818c0 | 0x2000 |
| 146 | blk.11.ffn_up_exps.weight | 0xc28838c0 | 0x3f00000 |
| 147 | blk.12.attn_k.weight | 0xc67838c0 | 0x54000 |
| 148 | blk.12.attn_k_norm.weight | 0xc67d78c0 | 0x200 |
| 149 | blk.12.attn_norm.weight | 0xc67d7ac0 | 0x2000 |
| 150 | blk.12.attn_output.weight | 0xc67d9ac0 | 0x480000 |
| 151 | blk.12.attn_q.weight | 0xc6c59ac0 | 0x2a0000 |
| 152 | blk.12.attn_q_norm.weight | 0xc6ef9ac0 | 0x200 |
| 153 | blk.12.attn_v.weight | 0xc6ef9cc0 | 0x6e000 |
| 154 | blk.12.ffn_down_exps.weight | 0xc6f67cc0 | 0x6c00000 |
| 155 | blk.12.ffn_gate_exps.weight | 0xcdb67cc0 | 0x3f00000 |
| 156 | blk.12.ffn_gate_inp.weight | 0xd1a67cc0 | 0x100000 |
| 157 | blk.12.ffn_norm.weight | 0xd1b67cc0 | 0x2000 |
| 158 | blk.12.ffn_up_exps.weight | 0xd1b69cc0 | 0x3f00000 |
| 159 | blk.13.attn_k.weight | 0xd5a69cc0 | 0x54000 |
| 160 | blk.13.attn_k_norm.weight | 0xd5abdcc0 | 0x200 |
| 161 | blk.13.attn_norm.weight | 0xd5abdec0 | 0x2000 |
| 162 | blk.13.attn_output.weight | 0xd5abfec0 | 0x480000 |
| 163 | blk.13.attn_q.weight | 0xd5f3fec0 | 0x2a0000 |
| 164 | blk.13.attn_q_norm.weight | 0xd61dfec0 | 0x200 |
| 165 | blk.13.attn_v.weight | 0xd61e00c0 | 0x6e000 |
| 166 | blk.13.ffn_down_exps.weight | 0xd624e0c0 | 0x6c00000 |
| 167 | blk.13.ffn_gate_exps.weight | 0xdce4e0c0 | 0x5280000 |
| 168 | blk.13.ffn_gate_inp.weight | 0xe20ce0c0 | 0x100000 |
| 169 | blk.13.ffn_norm.weight | 0xe21ce0c0 | 0x2000 |
| 170 | blk.13.ffn_up_exps.weight | 0xe21d00c0 | 0x5280000 |
| 171 | blk.14.attn_k.weight | 0xe74500c0 | 0x54000 |
| 172 | blk.14.attn_k_norm.weight | 0xe74a40c0 | 0x200 |
| 173 | blk.14.attn_norm.weight | 0xe74a42c0 | 0x2000 |
| 174 | blk.14.attn_output.weight | 0xe74a62c0 | 0x480000 |
| 175 | blk.14.attn_q.weight | 0xe79262c0 | 0x2a0000 |
| 176 | blk.14.attn_q_norm.weight | 0xe7bc62c0 | 0x200 |
| 177 | blk.14.attn_v.weight | 0xe7bc64c0 | 0x6e000 |
| 178 | blk.14.ffn_down_exps.weight | 0xe7c344c0 | 0x6c00000 |
| 179 | blk.14.ffn_gate_exps.weight | 0xee8344c0 | 0x3f00000 |
| 180 | blk.14.ffn_gate_inp.weight | 0xf27344c0 | 0x100000 |
| 181 | blk.14.ffn_norm.weight | 0xf28344c0 | 0x2000 |
| 182 | blk.14.ffn_up_exps.weight | 0xf28364c0 | 0x3f00000 |
| 183 | blk.15.attn_k.weight | 0xf67364c0 | 0x54000 |
| 184 | blk.15.attn_k_norm.weight | 0xf678a4c0 | 0x200 |
| 185 | blk.15.attn_norm.weight | 0xf678a6c0 | 0x2000 |
| 186 | blk.15.attn_output.weight | 0xf678c6c0 | 0x480000 |
| 187 | blk.15.attn_q.weight | 0xf6c0c6c0 | 0x2a0000 |
| 188 | blk.15.attn_q_norm.weight | 0xf6eac6c0 | 0x200 |
| 189 | blk.15.attn_v.weight | 0xf6eac8c0 | 0x6e000 |
| 190 | blk.15.ffn_down_exps.weight | 0xf6f1a8c0 | 0x6c00000 |
| 191 | blk.15.ffn_gate_exps.weight | 0xfdb1a8c0 | 0x5280000 |
| 192 | blk.15.ffn_gate_inp.weight | 0x102d9a8c0 | 0x100000 |
| 193 | blk.15.ffn_norm.weight | 0x102e9a8c0 | 0x2000 |
| 194 | blk.15.ffn_up_exps.weight | 0x102e9c8c0 | 0x5280000 |
| 195 | blk.16.attn_k.weight | 0x10811c8c0 | 0x54000 |
| 196 | blk.16.attn_k_norm.weight | 0x1081708c0 | 0x200 |
| 197 | blk.16.attn_norm.weight | 0x108170ac0 | 0x2000 |
| 198 | blk.16.attn_output.weight | 0x108172ac0 | 0x480000 |
| 199 | blk.16.attn_q.weight | 0x1085f2ac0 | 0x2a0000 |
| 200 | blk.16.attn_q_norm.weight | 0x108892ac0 | 0x200 |
| 201 | blk.16.attn_v.weight | 0x108892cc0 | 0x6e000 |
| 202 | blk.16.ffn_down_exps.weight | 0x108900cc0 | 0x6c00000 |
| 203 | blk.16.ffn_gate_exps.weight | 0x10f500cc0 | 0x3f00000 |
| 204 | blk.16.ffn_gate_inp.weight | 0x113400cc0 | 0x100000 |
| 205 | blk.16.ffn_norm.weight | 0x113500cc0 | 0x2000 |
| 206 | blk.16.ffn_up_exps.weight | 0x113502cc0 | 0x3f00000 |
| 207 | blk.17.attn_k.weight | 0x117402cc0 | 0x54000 |
| 208 | blk.17.attn_k_norm.weight | 0x117456cc0 | 0x200 |
| 209 | blk.17.attn_norm.weight | 0x117456ec0 | 0x2000 |
| 210 | blk.17.attn_output.weight | 0x117458ec0 | 0x480000 |
| 211 | blk.17.attn_q.weight | 0x1178d8ec0 | 0x2a0000 |
| 212 | blk.17.attn_q_norm.weight | 0x117b78ec0 | 0x200 |
| 213 | blk.17.attn_v.weight | 0x117b790c0 | 0x6e000 |
| 214 | blk.17.ffn_down_exps.weight | 0x117be70c0 | 0x6c00000 |
| 215 | blk.17.ffn_gate_exps.weight | 0x11e7e70c0 | 0x3f00000 |
| 216 | blk.17.ffn_gate_inp.weight | 0x1226e70c0 | 0x100000 |
| 217 | blk.17.ffn_norm.weight | 0x1227e70c0 | 0x2000 |
| 218 | blk.17.ffn_up_exps.weight | 0x1227e90c0 | 0x3f00000 |
| 219 | blk.18.attn_k.weight | 0x1266e90c0 | 0x54000 |
| 220 | blk.18.attn_k_norm.weight | 0x12673d0c0 | 0x200 |
| 221 | blk.18.attn_norm.weight | 0x12673d2c0 | 0x2000 |
| 222 | blk.18.attn_output.weight | 0x12673f2c0 | 0x480000 |
| 223 | blk.18.attn_q.weight | 0x126bbf2c0 | 0x2a0000 |
| 224 | blk.18.attn_q_norm.weight | 0x126e5f2c0 | 0x200 |
| 225 | blk.18.attn_v.weight | 0x126e5f4c0 | 0x6e000 |
| 226 | blk.18.ffn_down_exps.weight | 0x126ecd4c0 | 0x6c00000 |
| 227 | blk.18.ffn_gate_exps.weight | 0x12dacd4c0 | 0x3f00000 |
| 228 | blk.18.ffn_gate_inp.weight | 0x1319cd4c0 | 0x100000 |
| 229 | blk.18.ffn_norm.weight | 0x131acd4c0 | 0x2000 |
| 230 | blk.18.ffn_up_exps.weight | 0x131acf4c0 | 0x3f00000 |
| 231 | blk.19.attn_k.weight | 0x1359cf4c0 | 0x54000 |
| 232 | blk.19.attn_k_norm.weight | 0x135a234c0 | 0x200 |
| 233 | blk.19.attn_norm.weight | 0x135a236c0 | 0x2000 |
| 234 | blk.19.attn_output.weight | 0x135a256c0 | 0x480000 |
| 235 | blk.19.attn_q.weight | 0x135ea56c0 | 0x2a0000 |
| 236 | blk.19.attn_q_norm.weight | 0x1361456c0 | 0x200 |
| 237 | blk.19.attn_v.weight | 0x1361458c0 | 0x6e000 |
| 238 | blk.19.ffn_down_exps.weight | 0x1361b38c0 | 0x6c00000 |
| 239 | blk.19.ffn_gate_exps.weight | 0x13cdb38c0 | 0x3f00000 |
| 240 | blk.19.ffn_gate_inp.weight | 0x140cb38c0 | 0x100000 |
| 241 | blk.19.ffn_norm.weight | 0x140db38c0 | 0x2000 |
| 242 | blk.19.ffn_up_exps.weight | 0x140db58c0 | 0x3f00000 |
| 243 | blk.20.attn_k.weight | 0x144cb58c0 | 0x54000 |
| 244 | blk.20.attn_k_norm.weight | 0x144d098c0 | 0x200 |
| 245 | blk.20.attn_norm.weight | 0x144d09ac0 | 0x2000 |
| 246 | blk.20.attn_output.weight | 0x144d0bac0 | 0x480000 |
| 247 | blk.20.attn_q.weight | 0x14518bac0 | 0x2a0000 |
| 248 | blk.20.attn_q_norm.weight | 0x14542bac0 | 0x200 |
| 249 | blk.20.attn_v.weight | 0x14542bcc0 | 0x6e000 |
| 250 | blk.20.ffn_down_exps.weight | 0x145499cc0 | 0x6c00000 |
| 251 | blk.20.ffn_gate_exps.weight | 0x14c099cc0 | 0x3f00000 |
| 252 | blk.20.ffn_gate_inp.weight | 0x14ff99cc0 | 0x100000 |
| 253 | blk.20.ffn_norm.weight | 0x150099cc0 | 0x2000 |
| 254 | blk.20.ffn_up_exps.weight | 0x15009bcc0 | 0x3f00000 |
| 255 | blk.21.attn_k.weight | 0x153f9bcc0 | 0x54000 |
| 256 | blk.21.attn_k_norm.weight | 0x153fefcc0 | 0x200 |
| 257 | blk.21.attn_norm.weight | 0x153fefec0 | 0x2000 |
| 258 | blk.21.attn_output.weight | 0x153ff1ec0 | 0x480000 |
| 259 | blk.21.attn_q.weight | 0x154471ec0 | 0x2a0000 |
| 260 | blk.21.attn_q_norm.weight | 0x154711ec0 | 0x200 |
| 261 | blk.21.attn_v.weight | 0x1547120c0 | 0x6e000 |
| 262 | blk.21.ffn_down_exps.weight | 0x1547800c0 | 0x6c00000 |
| 263 | blk.21.ffn_gate_exps.weight | 0x15b3800c0 | 0x3f00000 |
| 264 | blk.21.ffn_gate_inp.weight | 0x15f2800c0 | 0x100000 |
| 265 | blk.21.ffn_norm.weight | 0x15f3800c0 | 0x2000 |
| 266 | blk.21.ffn_up_exps.weight | 0x15f3820c0 | 0x3f00000 |
| 267 | blk.22.attn_k.weight | 0x1632820c0 | 0x54000 |
| 268 | blk.22.attn_k_norm.weight | 0x1632d60c0 | 0x200 |
| 269 | blk.22.attn_norm.weight | 0x1632d62c0 | 0x2000 |
| 270 | blk.22.attn_output.weight | 0x1632d82c0 | 0x480000 |
| 271 | blk.22.attn_q.weight | 0x1637582c0 | 0x2a0000 |
| 272 | blk.22.attn_q_norm.weight | 0x1639f82c0 | 0x200 |
| 273 | blk.22.attn_v.weight | 0x1639f84c0 | 0x6e000 |
| 274 | blk.22.ffn_down_exps.weight | 0x163a664c0 | 0x6c00000 |
| 275 | blk.22.ffn_gate_exps.weight | 0x16a6664c0 | 0x3f00000 |
| 276 | blk.22.ffn_gate_inp.weight | 0x16e5664c0 | 0x100000 |
| 277 | blk.22.ffn_norm.weight | 0x16e6664c0 | 0x2000 |
| 278 | blk.22.ffn_up_exps.weight | 0x16e6684c0 | 0x3f00000 |
| 279 | blk.23.attn_k.weight | 0x1725684c0 | 0x54000 |
| 280 | blk.23.attn_k_norm.weight | 0x1725bc4c0 | 0x200 |
| 281 | blk.23.attn_norm.weight | 0x1725bc6c0 | 0x2000 |
| 282 | blk.23.attn_output.weight | 0x1725be6c0 | 0x480000 |
| 283 | blk.23.attn_q.weight | 0x172a3e6c0 | 0x2a0000 |
| 284 | blk.23.attn_q_norm.weight | 0x172cde6c0 | 0x200 |
| 285 | blk.23.attn_v.weight | 0x172cde8c0 | 0x6e000 |
| 286 | blk.23.ffn_down_exps.weight | 0x172d4c8c0 | 0x6c00000 |
| 287 | blk.23.ffn_gate_exps.weight | 0x17994c8c0 | 0x3f00000 |
| 288 | blk.23.ffn_gate_inp.weight | 0x17d84c8c0 | 0x100000 |
| 289 | blk.23.ffn_norm.weight | 0x17d94c8c0 | 0x2000 |
| 290 | blk.23.ffn_up_exps.weight | 0x17d94e8c0 | 0x3f00000 |
| 291 | blk.24.attn_k.weight | 0x18184e8c0 | 0x6e000 |
| 292 | blk.24.attn_k_norm.weight | 0x1818bc8c0 | 0x200 |
| 293 | blk.24.attn_norm.weight | 0x1818bcac0 | 0x2000 |
| 294 | blk.24.attn_output.weight | 0x1818beac0 | 0x480000 |
| 295 | blk.24.attn_q.weight | 0x181d3eac0 | 0x370000 |
| 296 | blk.24.attn_q_norm.weight | 0x1820aeac0 | 0x200 |
| 297 | blk.24.attn_v.weight | 0x1820aecc0 | 0x90000 |
| 298 | blk.24.ffn_down_exps.weight | 0x18213ecc0 | 0x6c00000 |
| 299 | blk.24.ffn_gate_exps.weight | 0x188d3ecc0 | 0x3f00000 |
| 300 | blk.24.ffn_gate_inp.weight | 0x18cc3ecc0 | 0x100000 |
| 301 | blk.24.ffn_norm.weight | 0x18cd3ecc0 | 0x2000 |
| 302 | blk.24.ffn_up_exps.weight | 0x18cd40cc0 | 0x3f00000 |
| 303 | blk.25.attn_k.weight | 0x190c40cc0 | 0x6e000 |
| 304 | blk.25.attn_k_norm.weight | 0x190caecc0 | 0x200 |
| 305 | blk.25.attn_norm.weight | 0x190caeec0 | 0x2000 |
| 306 | blk.25.attn_output.weight | 0x190cb0ec0 | 0x480000 |
| 307 | blk.25.attn_q.weight | 0x191130ec0 | 0x370000 |
| 308 | blk.25.attn_q_norm.weight | 0x1914a0ec0 | 0x200 |
| 309 | blk.25.attn_v.weight | 0x1914a10c0 | 0x90000 |
| 310 | blk.25.ffn_down_exps.weight | 0x1915310c0 | 0x6c00000 |
| 311 | blk.25.ffn_gate_exps.weight | 0x1981310c0 | 0x5280000 |
| 312 | blk.25.ffn_gate_inp.weight | 0x19d3b10c0 | 0x100000 |
| 313 | blk.25.ffn_norm.weight | 0x19d4b10c0 | 0x2000 |
| 314 | blk.25.ffn_up_exps.weight | 0x19d4b30c0 | 0x5280000 |
| 315 | blk.26.attn_k.weight | 0x1a27330c0 | 0x6e000 |
| 316 | blk.26.attn_k_norm.weight | 0x1a27a10c0 | 0x200 |
| 317 | blk.26.attn_norm.weight | 0x1a27a12c0 | 0x2000 |
| 318 | blk.26.attn_output.weight | 0x1a27a32c0 | 0x480000 |
| 319 | blk.26.attn_q.weight | 0x1a2c232c0 | 0x370000 |
| 320 | blk.26.attn_q_norm.weight | 0x1a2f932c0 | 0x200 |
| 321 | blk.26.attn_v.weight | 0x1a2f934c0 | 0x90000 |
| 322 | blk.26.ffn_down_exps.weight | 0x1a30234c0 | 0x6c00000 |
| 323 | blk.26.ffn_gate_exps.weight | 0x1a9c234c0 | 0x3f00000 |
| 324 | blk.26.ffn_gate_inp.weight | 0x1adb234c0 | 0x100000 |
| 325 | blk.26.ffn_norm.weight | 0x1adc234c0 | 0x2000 |
| 326 | blk.26.ffn_up_exps.weight | 0x1adc254c0 | 0x3f00000 |
| 327 | blk.27.attn_k.weight | 0x1b1b254c0 | 0x6e000 |
| 328 | blk.27.attn_k_norm.weight | 0x1b1b934c0 | 0x200 |
| 329 | blk.27.attn_norm.weight | 0x1b1b936c0 | 0x2000 |
| 330 | blk.27.attn_output.weight | 0x1b1b956c0 | 0x480000 |
| 331 | blk.27.attn_q.weight | 0x1b20156c0 | 0x370000 |
| 332 | blk.27.attn_q_norm.weight | 0x1b23856c0 | 0x200 |
| 333 | blk.27.attn_v.weight | 0x1b23858c0 | 0x90000 |
| 334 | blk.27.ffn_down_exps.weight | 0x1b24158c0 | 0x6c00000 |
| 335 | blk.27.ffn_gate_exps.weight | 0x1b90158c0 | 0x5280000 |
| 336 | blk.27.ffn_gate_inp.weight | 0x1be2958c0 | 0x100000 |
| 337 | blk.27.ffn_norm.weight | 0x1be3958c0 | 0x2000 |
| 338 | blk.27.ffn_up_exps.weight | 0x1be3978c0 | 0x5280000 |
| 339 | blk.28.attn_k.weight | 0x1c36178c0 | 0x6e000 |
| 340 | blk.28.attn_k_norm.weight | 0x1c36858c0 | 0x200 |
| 341 | blk.28.attn_norm.weight | 0x1c3685ac0 | 0x2000 |
| 342 | blk.28.attn_output.weight | 0x1c3687ac0 | 0x480000 |
| 343 | blk.28.attn_q.weight | 0x1c3b07ac0 | 0x370000 |
| 344 | blk.28.attn_q_norm.weight | 0x1c3e77ac0 | 0x200 |
| 345 | blk.28.attn_v.weight | 0x1c3e77cc0 | 0x90000 |
| 346 | blk.28.ffn_down_exps.weight | 0x1c3f07cc0 | 0x6c00000 |
| 347 | blk.28.ffn_gate_exps.weight | 0x1cab07cc0 | 0x5280000 |
| 348 | blk.28.ffn_gate_inp.weight | 0x1cfd87cc0 | 0x100000 |
| 349 | blk.28.ffn_norm.weight | 0x1cfe87cc0 | 0x2000 |
| 350 | blk.28.ffn_up_exps.weight | 0x1cfe89cc0 | 0x5280000 |
| 351 | blk.29.attn_k.weight | 0x1d5109cc0 | 0x6e000 |
| 352 | blk.29.attn_k_norm.weight | 0x1d5177cc0 | 0x200 |
| 353 | blk.29.attn_norm.weight | 0x1d5177ec0 | 0x2000 |
| 354 | blk.29.attn_output.weight | 0x1d5179ec0 | 0x480000 |
| 355 | blk.29.attn_q.weight | 0x1d55f9ec0 | 0x370000 |
| 356 | blk.29.attn_q_norm.weight | 0x1d5969ec0 | 0x200 |
| 357 | blk.29.attn_v.weight | 0x1d596a0c0 | 0x90000 |
| 358 | blk.29.ffn_down_exps.weight | 0x1d59fa0c0 | 0x6c00000 |
| 359 | blk.29.ffn_gate_exps.weight | 0x1dc5fa0c0 | 0x5280000 |
| 360 | blk.29.ffn_gate_inp.weight | 0x1e187a0c0 | 0x100000 |
| 361 | blk.29.ffn_norm.weight | 0x1e197a0c0 | 0x2000 |
| 362 | blk.29.ffn_up_exps.weight | 0x1e197c0c0 | 0x5280000 |
| 363 | blk.30.attn_k.weight | 0x1e6bfc0c0 | 0x6e000 |
| 364 | blk.30.attn_k_norm.weight | 0x1e6c6a0c0 | 0x200 |
| 365 | blk.30.attn_norm.weight | 0x1e6c6a2c0 | 0x2000 |
| 366 | blk.30.attn_output.weight | 0x1e6c6c2c0 | 0x480000 |
| 367 | blk.30.attn_q.weight | 0x1e70ec2c0 | 0x370000 |
| 368 | blk.30.attn_q_norm.weight | 0x1e745c2c0 | 0x200 |
| 369 | blk.30.attn_v.weight | 0x1e745c4c0 | 0x90000 |
| 370 | blk.30.ffn_down_exps.weight | 0x1e74ec4c0 | 0x6c00000 |
| 371 | blk.30.ffn_gate_exps.weight | 0x1ee0ec4c0 | 0x5280000 |
| 372 | blk.30.ffn_gate_inp.weight | 0x1f336c4c0 | 0x100000 |
| 373 | blk.30.ffn_norm.weight | 0x1f346c4c0 | 0x2000 |
| 374 | blk.30.ffn_up_exps.weight | 0x1f346e4c0 | 0x5280000 |
| 375 | blk.31.attn_k.weight | 0x1f86ee4c0 | 0x6e000 |
| 376 | blk.31.attn_k_norm.weight | 0x1f875c4c0 | 0x200 |
| 377 | blk.31.attn_norm.weight | 0x1f875c6c0 | 0x2000 |
| 378 | blk.31.attn_output.weight | 0x1f875e6c0 | 0x480000 |
| 379 | blk.31.attn_q.weight | 0x1f8bde6c0 | 0x370000 |
| 380 | blk.31.attn_q_norm.weight | 0x1f8f4e6c0 | 0x200 |
| 381 | blk.31.attn_v.weight | 0x1f8f4e8c0 | 0x90000 |
| 382 | blk.31.ffn_down_exps.weight | 0x1f8fde8c0 | 0x6c00000 |
| 383 | blk.31.ffn_gate_exps.weight | 0x1ffbde8c0 | 0x5280000 |
| 384 | blk.31.ffn_gate_inp.weight | 0x204e5e8c0 | 0x100000 |
| 385 | blk.31.ffn_norm.weight | 0x204f5e8c0 | 0x2000 |
| 386 | blk.31.ffn_up_exps.weight | 0x204f608c0 | 0x5280000 |
| 387 | blk.32.attn_k.weight | 0x20a1e08c0 | 0x6e000 |
| 388 | blk.32.attn_k_norm.weight | 0x20a24e8c0 | 0x200 |
| 389 | blk.32.attn_norm.weight | 0x20a24eac0 | 0x2000 |
| 390 | blk.32.attn_output.weight | 0x20a250ac0 | 0x480000 |
| 391 | blk.32.attn_q.weight | 0x20a6d0ac0 | 0x370000 |
| 392 | blk.32.attn_q_norm.weight | 0x20aa40ac0 | 0x200 |
| 393 | blk.32.attn_v.weight | 0x20aa40cc0 | 0x90000 |
| 394 | blk.32.ffn_down_exps.weight | 0x20aad0cc0 | 0x6c00000 |
| 395 | blk.32.ffn_gate_exps.weight | 0x2116d0cc0 | 0x5280000 |
| 396 | blk.32.ffn_gate_inp.weight | 0x216950cc0 | 0x100000 |
| 397 | blk.32.ffn_norm.weight | 0x216a50cc0 | 0x2000 |
| 398 | blk.32.ffn_up_exps.weight | 0x216a52cc0 | 0x5280000 |
| 399 | blk.33.attn_k.weight | 0x21bcd2cc0 | 0x6e000 |
| 400 | blk.33.attn_k_norm.weight | 0x21bd40cc0 | 0x200 |
| 401 | blk.33.attn_norm.weight | 0x21bd40ec0 | 0x2000 |
| 402 | blk.33.attn_output.weight | 0x21bd42ec0 | 0x480000 |
| 403 | blk.33.attn_q.weight | 0x21c1c2ec0 | 0x370000 |
| 404 | blk.33.attn_q_norm.weight | 0x21c532ec0 | 0x200 |
| 405 | blk.33.attn_v.weight | 0x21c5330c0 | 0x90000 |
| 406 | blk.33.ffn_down_exps.weight | 0x21c5c30c0 | 0x6c00000 |
| 407 | blk.33.ffn_gate_exps.weight | 0x2231c30c0 | 0x5280000 |
| 408 | blk.33.ffn_gate_inp.weight | 0x2284430c0 | 0x100000 |
| 409 | blk.33.ffn_norm.weight | 0x2285430c0 | 0x2000 |
| 410 | blk.33.ffn_up_exps.weight | 0x2285450c0 | 0x5280000 |
| 411 | blk.34.attn_k.weight | 0x22d7c50c0 | 0x6e000 |
| 412 | blk.34.attn_k_norm.weight | 0x22d8330c0 | 0x200 |
| 413 | blk.34.attn_norm.weight | 0x22d8332c0 | 0x2000 |
| 414 | blk.34.attn_output.weight | 0x22d8352c0 | 0x480000 |
| 415 | blk.34.attn_q.weight | 0x22dcb52c0 | 0x370000 |
| 416 | blk.34.attn_q_norm.weight | 0x22e0252c0 | 0x200 |
| 417 | blk.34.attn_v.weight | 0x22e0254c0 | 0x90000 |
| 418 | blk.34.ffn_down_exps.weight | 0x22e0b54c0 | 0x6c00000 |
| 419 | blk.34.ffn_gate_exps.weight | 0x234cb54c0 | 0x5280000 |
| 420 | blk.34.ffn_gate_inp.weight | 0x239f354c0 | 0x100000 |
| 421 | blk.34.ffn_norm.weight | 0x23a0354c0 | 0x2000 |
| 422 | blk.34.ffn_up_exps.weight | 0x23a0374c0 | 0x5280000 |
| 423 | blk.35.attn_k.weight | 0x23f2b74c0 | 0x6e000 |
| 424 | blk.35.attn_k_norm.weight | 0x23f3254c0 | 0x200 |
| 425 | blk.35.attn_norm.weight | 0x23f3256c0 | 0x2000 |
| 426 | blk.35.attn_output.weight | 0x23f3276c0 | 0x480000 |
| 427 | blk.35.attn_q.weight | 0x23f7a76c0 | 0x370000 |
| 428 | blk.35.attn_q_norm.weight | 0x23fb176c0 | 0x200 |
| 429 | blk.35.attn_v.weight | 0x23fb178c0 | 0x90000 |
| 430 | blk.35.ffn_down_exps.weight | 0x23fba78c0 | 0x6c00000 |
| 431 | blk.35.ffn_gate_exps.weight | 0x2467a78c0 | 0x5280000 |
| 432 | blk.35.ffn_gate_inp.weight | 0x24ba278c0 | 0x100000 |
| 433 | blk.35.ffn_norm.weight | 0x24bb278c0 | 0x2000 |
| 434 | blk.35.ffn_up_exps.weight | 0x24bb298c0 | 0x5280000 |
| 435 | blk.36.attn_k.weight | 0x250da98c0 | 0x6e000 |
| 436 | blk.36.attn_k_norm.weight | 0x250e178c0 | 0x200 |
| 437 | blk.36.attn_norm.weight | 0x250e17ac0 | 0x2000 |
| 438 | blk.36.attn_output.weight | 0x250e19ac0 | 0x480000 |
| 439 | blk.36.attn_q.weight | 0x251299ac0 | 0x370000 |
| 440 | blk.36.attn_q_norm.weight | 0x251609ac0 | 0x200 |
| 441 | blk.36.attn_v.weight | 0x251609cc0 | 0x90000 |
| 442 | blk.36.ffn_down_exps.weight | 0x251699cc0 | 0x6c00000 |
| 443 | blk.36.ffn_gate_exps.weight | 0x258299cc0 | 0x5280000 |
| 444 | blk.36.ffn_gate_inp.weight | 0x25d519cc0 | 0x100000 |
| 445 | blk.36.ffn_norm.weight | 0x25d619cc0 | 0x2000 |
| 446 | blk.36.ffn_up_exps.weight | 0x25d61bcc0 | 0x5280000 |
| 447 | blk.37.attn_k.weight | 0x26289bcc0 | 0x6e000 |
| 448 | blk.37.attn_k_norm.weight | 0x262909cc0 | 0x200 |
| 449 | blk.37.attn_norm.weight | 0x262909ec0 | 0x2000 |
| 450 | blk.37.attn_output.weight | 0x26290bec0 | 0x480000 |
| 451 | blk.37.attn_q.weight | 0x262d8bec0 | 0x370000 |
| 452 | blk.37.attn_q_norm.weight | 0x2630fbec0 | 0x200 |
| 453 | blk.37.attn_v.weight | 0x2630fc0c0 | 0x90000 |
| 454 | blk.37.ffn_down_exps.weight | 0x26318c0c0 | 0x6c00000 |
| 455 | blk.37.ffn_gate_exps.weight | 0x269d8c0c0 | 0x5280000 |
| 456 | blk.37.ffn_gate_inp.weight | 0x26f00c0c0 | 0x100000 |
| 457 | blk.37.ffn_norm.weight | 0x26f10c0c0 | 0x2000 |
| 458 | blk.37.ffn_up_exps.weight | 0x26f10e0c0 | 0x5280000 |
| 459 | blk.38.attn_k.weight | 0x27438e0c0 | 0x6e000 |
| 460 | blk.38.attn_k_norm.weight | 0x2743fc0c0 | 0x200 |
| 461 | blk.38.attn_norm.weight | 0x2743fc2c0 | 0x2000 |
| 462 | blk.38.attn_output.weight | 0x2743fe2c0 | 0x480000 |
| 463 | blk.38.attn_q.weight | 0x27487e2c0 | 0x370000 |
| 464 | blk.38.attn_q_norm.weight | 0x274bee2c0 | 0x200 |
| 465 | blk.38.attn_v.weight | 0x274bee4c0 | 0x90000 |
| 466 | blk.38.ffn_down_exps.weight | 0x274c7e4c0 | 0x6c00000 |
| 467 | blk.38.ffn_gate_exps.weight | 0x27b87e4c0 | 0x5280000 |
| 468 | blk.38.ffn_gate_inp.weight | 0x280afe4c0 | 0x100000 |
| 469 | blk.38.ffn_norm.weight | 0x280bfe4c0 | 0x2000 |
| 470 | blk.38.ffn_up_exps.weight | 0x280c004c0 | 0x5280000 |
| 471 | blk.39.attn_k.weight | 0x285e804c0 | 0x6e000 |
| 472 | blk.39.attn_k_norm.weight | 0x285eee4c0 | 0x200 |
| 473 | blk.39.attn_norm.weight | 0x285eee6c0 | 0x2000 |
| 474 | blk.39.attn_output.weight | 0x285ef06c0 | 0x480000 |
| 475 | blk.39.attn_q.weight | 0x2863706c0 | 0x370000 |
| 476 | blk.39.attn_q_norm.weight | 0x2866e06c0 | 0x200 |
| 477 | blk.39.attn_v.weight | 0x2866e08c0 | 0x90000 |
| 478 | blk.39.ffn_down_exps.weight | 0x2867708c0 | 0x6c00000 |
| 479 | blk.39.ffn_gate_exps.weight | 0x28d3708c0 | 0x5280000 |
| 480 | blk.39.ffn_gate_inp.weight | 0x2925f08c0 | 0x100000 |
| 481 | blk.39.ffn_norm.weight | 0x2926f08c0 | 0x2000 |
| 482 | blk.39.ffn_up_exps.weight | 0x2926f28c0 | 0x5280000 |
| 483 | blk.40.attn_k.weight | 0x2979728c0 | 0x6e000 |
| 484 | blk.40.attn_k_norm.weight | 0x2979e08c0 | 0x200 |
| 485 | blk.40.attn_norm.weight | 0x2979e0ac0 | 0x2000 |
| 486 | blk.40.attn_output.weight | 0x2979e2ac0 | 0x480000 |
| 487 | blk.40.attn_q.weight | 0x297e62ac0 | 0x370000 |
| 488 | blk.40.attn_q_norm.weight | 0x2981d2ac0 | 0x200 |
| 489 | blk.40.attn_v.weight | 0x2981d2cc0 | 0x90000 |
| 490 | blk.40.ffn_down_exps.weight | 0x298262cc0 | 0x6c00000 |
| 491 | blk.40.ffn_gate_exps.weight | 0x29ee62cc0 | 0x5280000 |
| 492 | blk.40.ffn_gate_inp.weight | 0x2a40e2cc0 | 0x100000 |
| 493 | blk.40.ffn_norm.weight | 0x2a41e2cc0 | 0x2000 |
| 494 | blk.40.ffn_up_exps.weight | 0x2a41e4cc0 | 0x5280000 |
| 495 | blk.41.attn_k.weight | 0x2a9464cc0 | 0x6e000 |
| 496 | blk.41.attn_k_norm.weight | 0x2a94d2cc0 | 0x200 |
| 497 | blk.41.attn_norm.weight | 0x2a94d2ec0 | 0x2000 |
| 498 | blk.41.attn_output.weight | 0x2a94d4ec0 | 0x480000 |
| 499 | blk.41.attn_q.weight | 0x2a9954ec0 | 0x370000 |
| 500 | blk.41.attn_q_norm.weight | 0x2a9cc4ec0 | 0x200 |
| 501 | blk.41.attn_v.weight | 0x2a9cc50c0 | 0x90000 |
| 502 | blk.41.ffn_down_exps.weight | 0x2a9d550c0 | 0x6c00000 |
| 503 | blk.41.ffn_gate_exps.weight | 0x2b09550c0 | 0x5280000 |
| 504 | blk.41.ffn_gate_inp.weight | 0x2b5bd50c0 | 0x100000 |
| 505 | blk.41.ffn_norm.weight | 0x2b5cd50c0 | 0x2000 |
| 506 | blk.41.ffn_up_exps.weight | 0x2b5cd70c0 | 0x5280000 |
| 507 | blk.42.attn_k.weight | 0x2baf570c0 | 0x6e000 |
| 508 | blk.42.attn_k_norm.weight | 0x2bafc50c0 | 0x200 |
| 509 | blk.42.attn_norm.weight | 0x2bafc52c0 | 0x2000 |
| 510 | blk.42.attn_output.weight | 0x2bafc72c0 | 0x480000 |
| 511 | blk.42.attn_q.weight | 0x2bb4472c0 | 0x370000 |
| 512 | blk.42.attn_q_norm.weight | 0x2bb7b72c0 | 0x200 |
| 513 | blk.42.attn_v.weight | 0x2bb7b74c0 | 0x90000 |
| 514 | blk.42.ffn_down_exps.weight | 0x2bb8474c0 | 0x6c00000 |
| 515 | blk.42.ffn_gate_exps.weight | 0x2c24474c0 | 0x5280000 |
| 516 | blk.42.ffn_gate_inp.weight | 0x2c76c74c0 | 0x100000 |
| 517 | blk.42.ffn_norm.weight | 0x2c77c74c0 | 0x2000 |
| 518 | blk.42.ffn_up_exps.weight | 0x2c77c94c0 | 0x5280000 |
| 519 | blk.43.attn_k.weight | 0x2cca494c0 | 0x6e000 |
| 520 | blk.43.attn_k_norm.weight | 0x2ccab74c0 | 0x200 |
| 521 | blk.43.attn_norm.weight | 0x2ccab76c0 | 0x2000 |
| 522 | blk.43.attn_output.weight | 0x2ccab96c0 | 0x480000 |
| 523 | blk.43.attn_q.weight | 0x2ccf396c0 | 0x370000 |
| 524 | blk.43.attn_q_norm.weight | 0x2cd2a96c0 | 0x200 |
| 525 | blk.43.attn_v.weight | 0x2cd2a98c0 | 0x90000 |
| 526 | blk.43.ffn_down_exps.weight | 0x2cd3398c0 | 0x6c00000 |
| 527 | blk.43.ffn_gate_exps.weight | 0x2d3f398c0 | 0x5280000 |
| 528 | blk.43.ffn_gate_inp.weight | 0x2d91b98c0 | 0x100000 |
| 529 | blk.43.ffn_norm.weight | 0x2d92b98c0 | 0x2000 |
| 530 | blk.43.ffn_up_exps.weight | 0x2d92bb8c0 | 0x5280000 |
| 531 | blk.44.attn_k.weight | 0x2de53b8c0 | 0x6e000 |
| 532 | blk.44.attn_k_norm.weight | 0x2de5a98c0 | 0x200 |
| 533 | blk.44.attn_norm.weight | 0x2de5a9ac0 | 0x2000 |
| 534 | blk.44.attn_output.weight | 0x2de5abac0 | 0x480000 |
| 535 | blk.44.attn_q.weight | 0x2dea2bac0 | 0x370000 |
| 536 | blk.44.attn_q_norm.weight | 0x2ded9bac0 | 0x200 |
| 537 | blk.44.attn_v.weight | 0x2ded9bcc0 | 0x90000 |
| 538 | blk.44.ffn_down_exps.weight | 0x2dee2bcc0 | 0x6c00000 |
| 539 | blk.44.ffn_gate_exps.weight | 0x2e5a2bcc0 | 0x5280000 |
| 540 | blk.44.ffn_gate_inp.weight | 0x2eacabcc0 | 0x100000 |
| 541 | blk.44.ffn_norm.weight | 0x2eadabcc0 | 0x2000 |
| 542 | blk.44.ffn_up_exps.weight | 0x2eadadcc0 | 0x5280000 |
| 543 | blk.45.attn_k.weight | 0x2f002dcc0 | 0x6e000 |
| 544 | blk.45.attn_k_norm.weight | 0x2f009bcc0 | 0x200 |
| 545 | blk.45.attn_norm.weight | 0x2f009bec0 | 0x2000 |
| 546 | blk.45.attn_output.weight | 0x2f009dec0 | 0x480000 |
| 547 | blk.45.attn_q.weight | 0x2f051dec0 | 0x370000 |
| 548 | blk.45.attn_q_norm.weight | 0x2f088dec0 | 0x200 |
| 549 | blk.45.attn_v.weight | 0x2f088e0c0 | 0x90000 |
| 550 | blk.45.ffn_down_exps.weight | 0x2f091e0c0 | 0x6c00000 |
| 551 | blk.45.ffn_gate_exps.weight | 0x2f751e0c0 | 0x5280000 |
| 552 | blk.45.ffn_gate_inp.weight | 0x2fc79e0c0 | 0x100000 |
| 553 | blk.45.ffn_norm.weight | 0x2fc89e0c0 | 0x2000 |
| 554 | blk.45.ffn_up_exps.weight | 0x2fc8a00c0 | 0x5280000 |
| 555 | blk.46.attn_k.weight | 0x301b200c0 | 0x6e000 |
| 556 | blk.46.attn_k_norm.weight | 0x301b8e0c0 | 0x200 |
| 557 | blk.46.attn_norm.weight | 0x301b8e2c0 | 0x2000 |
| 558 | blk.46.attn_output.weight | 0x301b902c0 | 0x480000 |
| 559 | blk.46.attn_q.weight | 0x3020102c0 | 0x370000 |
| 560 | blk.46.attn_q_norm.weight | 0x3023802c0 | 0x200 |
| 561 | blk.46.attn_v.weight | 0x3023804c0 | 0x90000 |
| 562 | blk.46.ffn_down_exps.weight | 0x3024104c0 | 0x6c00000 |
| 563 | blk.46.ffn_gate_exps.weight | 0x3090104c0 | 0x5280000 |
| 564 | blk.46.ffn_gate_inp.weight | 0x30e2904c0 | 0x100000 |
| 565 | blk.46.ffn_norm.weight | 0x30e3904c0 | 0x2000 |
| 566 | blk.46.ffn_up_exps.weight | 0x30e3924c0 | 0x5280000 |
| 567 | blk.47.attn_k.weight | 0x3136124c0 | 0x6e000 |
| 568 | blk.47.attn_k_norm.weight | 0x3136804c0 | 0x200 |
| 569 | blk.47.attn_norm.weight | 0x3136806c0 | 0x2000 |
| 570 | blk.47.attn_output.weight | 0x3136826c0 | 0x480000 |
| 571 | blk.47.attn_q.weight | 0x313b026c0 | 0x370000 |
| 572 | blk.47.attn_q_norm.weight | 0x313e726c0 | 0x200 |
| 573 | blk.47.attn_v.weight | 0x313e728c0 | 0x90000 |
| 574 | blk.47.ffn_down_exps.weight | 0x313f028c0 | 0x6c00000 |
| 575 | blk.47.ffn_gate_exps.weight | 0x31ab028c0 | 0x5280000 |
| 576 | blk.47.ffn_gate_inp.weight | 0x31fd828c0 | 0x100000 |
| 577 | blk.47.ffn_norm.weight | 0x31fe828c0 | 0x2000 |
| 578 | blk.47.ffn_up_exps.weight | 0x31fe848c0 | 0x5280000 |
Base Tensor Group : ~622M Elements
| T_ID | Tensor Layer Name | Human Friendly Tensor Layer Name | Elements | Shape | Type |
|---|---|---|---|---|---|
| 0 | output.weight | Output (W) | (~311M) 311164928 | 2048 x 151936 x 1 x 1 | Q3_K |
| 1 | output_norm.weight | Output Normalization (W) | ( ~2K) 2048 | 2048 x 1 x 1 x 1 | F32 |
| 2 | token_embd.weight | Token Embedding (W) | (~311M) 311164928 | 2048 x 151936 x 1 x 1 | Q3_K |
- Total elements in base: (~622M) 622331904
- Percentage of total elements: 2.04%
Block 0 Tensor Group : ~623M Elements
| T_ID | Tensor Layer Name | Human Friendly Tensor Layer Name | Elements | Shape | Type |
|---|---|---|---|---|---|
| 3 | blk.0.attn_k.weight | Block 0 Attention Key (W) | ( ~1M) 1048576 | 2048 x 512 x 1 x 1 | Q2_K |
| 4 | blk.0.attn_k_norm.weight | Block 0 Attn_K_Norm (W) | ( 128) 128 | 128 x 1 x 1 x 1 | F32 |
| 5 | blk.0.attn_norm.weight | Block 0 Attention Normalization (W) | ( ~2K) 2048 | 2048 x 1 x 1 x 1 | F32 |
| 6 | blk.0.attn_output.weight | Block 0 Attention Output (W) | ( ~8M) 8388608 | 4096 x 2048 x 1 x 1 | Q4_K |
| 7 | blk.0.attn_q.weight | Block 0 Attention Query (W) | ( ~8M) 8388608 | 2048 x 4096 x 1 x 1 | Q2_K |
| 8 | blk.0.attn_q_norm.weight | Block 0 Attn_Q_Norm (W) | ( 128) 128 | 128 x 1 x 1 x 1 | F32 |
| 9 | blk.0.attn_v.weight | Block 0 Attention Value (W) | ( ~1M) 1048576 | 2048 x 512 x 1 x 1 | Q3_K |
| 10 | blk.0.ffn_down_exps.weight | Block 0 Ffn_Down_Exps (W) | (~201M) 201326592 | 768 x 2048 x 128 x 1 | Q4_K |
| 11 | blk.0.ffn_gate_exps.weight | Block 0 Ffn_Gate_Exps (W) | (~201M) 201326592 | 2048 x 768 x 128 x 1 | Q2_K |
| 12 | blk.0.ffn_gate_inp.weight | Block 0 Expert-Routing Layer For The Feed-Forward Network In Mixture Of Expert Models (W) | (~262K) 262144 | 2048 x 128 x 1 x 1 | F32 |
| 13 | blk.0.ffn_norm.weight | Block 0 Feed-Forward Network Normalization (W) | ( ~2K) 2048 | 2048 x 1 x 1 x 1 | F32 |
| 14 | blk.0.ffn_up_exps.weight | Block 0 Ffn_Up_Exps (W) | (~201M) 201326592 | 2048 x 768 x 128 x 1 | Q2_K |
- Total elements in blk.0: (~623M) 623120640
- Percentage of total elements: 2.04%
Block 1 Tensor Group : ~623M Elements
| T_ID | Tensor Layer Name | Human Friendly Tensor Layer Name | Elements | Shape | Type |
|---|---|---|---|---|---|
| 15 | blk.1.attn_k.weight | Block 1 Attention Key (W) | ( ~1M) 1048576 | 2048 x 512 x 1 x 1 | Q2_K |
| 16 | blk.1.attn_k_norm.weight | Block 1 Attn_K_Norm (W) | ( 128) 128 | 128 x 1 x 1 x 1 | F32 |
| 17 | blk.1.attn_norm.weight | Block 1 Attention Normalization (W) | ( ~2K) 2048 | 2048 x 1 x 1 x 1 | F32 |
| 18 | blk.1.attn_output.weight | Block 1 Attention Output (W) | ( ~8M) 8388608 | 4096 x 2048 x 1 x 1 | Q4_K |
| 19 | blk.1.attn_q.weight | Block 1 Attention Query (W) | ( ~8M) 8388608 | 2048 x 4096 x 1 x 1 | Q2_K |
| 20 | blk.1.attn_q_norm.weight | Block 1 Attn_Q_Norm (W) | ( 128) 128 | 128 x 1 x 1 x 1 | F32 |
| 21 | blk.1.attn_v.weight | Block 1 Attention Value (W) | ( ~1M) 1048576 | 2048 x 512 x 1 x 1 | Q3_K |
| 22 | blk.1.ffn_down_exps.weight | Block 1 Ffn_Down_Exps (W) | (~201M) 201326592 | 768 x 2048 x 128 x 1 | Q4_K |
| 23 | blk.1.ffn_gate_exps.weight | Block 1 Ffn_Gate_Exps (W) | (~201M) 201326592 | 2048 x 768 x 128 x 1 | Q2_K |
| 24 | blk.1.ffn_gate_inp.weight | Block 1 Expert-Routing Layer For The Feed-Forward Network In Mixture Of Expert Models (W) | (~262K) 262144 | 2048 x 128 x 1 x 1 | F32 |
| 25 | blk.1.ffn_norm.weight | Block 1 Feed-Forward Network Normalization (W) | ( ~2K) 2048 | 2048 x 1 x 1 x 1 | F32 |
| 26 | blk.1.ffn_up_exps.weight | Block 1 Ffn_Up_Exps (W) | (~201M) 201326592 | 2048 x 768 x 128 x 1 | Q2_K |
- Total elements in blk.1: (~623M) 623120640
- Percentage of total elements: 2.04%
Block 2 Tensor Group : ~623M Elements
| T_ID | Tensor Layer Name | Human Friendly Tensor Layer Name | Elements | Shape | Type |
|---|---|---|---|---|---|
| 27 | blk.2.attn_k.weight | Block 2 Attention Key (W) | ( ~1M) 1048576 | 2048 x 512 x 1 x 1 | Q2_K |
| 28 | blk.2.attn_k_norm.weight | Block 2 Attn_K_Norm (W) | ( 128) 128 | 128 x 1 x 1 x 1 | F32 |
| 29 | blk.2.attn_norm.weight | Block 2 Attention Normalization (W) | ( ~2K) 2048 | 2048 x 1 x 1 x 1 | F32 |
| 30 | blk.2.attn_output.weight | Block 2 Attention Output (W) | ( ~8M) 8388608 | 4096 x 2048 x 1 x 1 | Q4_K |
| 31 | blk.2.attn_q.weight | Block 2 Attention Query (W) | ( ~8M) 8388608 | 2048 x 4096 x 1 x 1 | Q2_K |
| 32 | blk.2.attn_q_norm.weight | Block 2 Attn_Q_Norm (W) | ( 128) 128 | 128 x 1 x 1 x 1 | F32 |
| 33 | blk.2.attn_v.weight | Block 2 Attention Value (W) | ( ~1M) 1048576 | 2048 x 512 x 1 x 1 | Q3_K |
| 34 | blk.2.ffn_down_exps.weight | Block 2 Ffn_Down_Exps (W) | (~201M) 201326592 | 768 x 2048 x 128 x 1 | Q4_K |
| 35 | blk.2.ffn_gate_exps.weight | Block 2 Ffn_Gate_Exps (W) | (~201M) 201326592 | 2048 x 768 x 128 x 1 | Q2_K |
| 36 | blk.2.ffn_gate_inp.weight | Block 2 Expert-Routing Layer For The Feed-Forward Network In Mixture Of Expert Models (W) | (~262K) 262144 | 2048 x 128 x 1 x 1 | F32 |
| 37 | blk.2.ffn_norm.weight | Block 2 Feed-Forward Network Normalization (W) | ( ~2K) 2048 | 2048 x 1 x 1 x 1 | F32 |
| 38 | blk.2.ffn_up_exps.weight | Block 2 Ffn_Up_Exps (W) | (~201M) 201326592 | 2048 x 768 x 128 x 1 | Q2_K |
- Total elements in blk.2: (~623M) 623120640
- Percentage of total elements: 2.04%
Block 3 Tensor Group : ~623M Elements
| T_ID | Tensor Layer Name | Human Friendly Tensor Layer Name | Elements | Shape | Type |
|---|---|---|---|---|---|
| 39 | blk.3.attn_k.weight | Block 3 Attention Key (W) | ( ~1M) 1048576 | 2048 x 512 x 1 x 1 | Q2_K |
| 40 | blk.3.attn_k_norm.weight | Block 3 Attn_K_Norm (W) | ( 128) 128 | 128 x 1 x 1 x 1 | F32 |
| 41 | blk.3.attn_norm.weight | Block 3 Attention Normalization (W) | ( ~2K) 2048 | 2048 x 1 x 1 x 1 | F32 |
| 42 | blk.3.attn_output.weight | Block 3 Attention Output (W) | ( ~8M) 8388608 | 4096 x 2048 x 1 x 1 | Q4_K |
| 43 | blk.3.attn_q.weight | Block 3 Attention Query (W) | ( ~8M) 8388608 | 2048 x 4096 x 1 x 1 | Q2_K |
| 44 | blk.3.attn_q_norm.weight | Block 3 Attn_Q_Norm (W) | ( 128) 128 | 128 x 1 x 1 x 1 | F32 |
| 45 | blk.3.attn_v.weight | Block 3 Attention Value (W) | ( ~1M) 1048576 | 2048 x 512 x 1 x 1 | Q3_K |
| 46 | blk.3.ffn_down_exps.weight | Block 3 Ffn_Down_Exps (W) | (~201M) 201326592 | 768 x 2048 x 128 x 1 | Q4_K |
| 47 | blk.3.ffn_gate_exps.weight | Block 3 Ffn_Gate_Exps (W) | (~201M) 201326592 | 2048 x 768 x 128 x 1 | Q2_K |
| 48 | blk.3.ffn_gate_inp.weight | Block 3 Expert-Routing Layer For The Feed-Forward Network In Mixture Of Expert Models (W) | (~262K) 262144 | 2048 x 128 x 1 x 1 | F32 |
| 49 | blk.3.ffn_norm.weight | Block 3 Feed-Forward Network Normalization (W) | ( ~2K) 2048 | 2048 x 1 x 1 x 1 | F32 |
| 50 | blk.3.ffn_up_exps.weight | Block 3 Ffn_Up_Exps (W) | (~201M) 201326592 | 2048 x 768 x 128 x 1 | Q2_K |
- Total elements in blk.3: (~623M) 623120640
- Percentage of total elements: 2.04%
Block 4 Tensor Group : ~623M Elements
| T_ID | Tensor Layer Name | Human Friendly Tensor Layer Name | Elements | Shape | Type |
|---|---|---|---|---|---|
| 51 | blk.4.attn_k.weight | Block 4 Attention Key (W) | ( ~1M) 1048576 | 2048 x 512 x 1 x 1 | Q2_K |
| 52 | blk.4.attn_k_norm.weight | Block 4 Attn_K_Norm (W) | ( 128) 128 | 128 x 1 x 1 x 1 | F32 |
| 53 | blk.4.attn_norm.weight | Block 4 Attention Normalization (W) | ( ~2K) 2048 | 2048 x 1 x 1 x 1 | F32 |
| 54 | blk.4.attn_output.weight | Block 4 Attention Output (W) | ( ~8M) 8388608 | 4096 x 2048 x 1 x 1 | Q4_K |
| 55 | blk.4.attn_q.weight | Block 4 Attention Query (W) | ( ~8M) 8388608 | 2048 x 4096 x 1 x 1 | Q2_K |
| 56 | blk.4.attn_q_norm.weight | Block 4 Attn_Q_Norm (W) | ( 128) 128 | 128 x 1 x 1 x 1 | F32 |
| 57 | blk.4.attn_v.weight | Block 4 Attention Value (W) | ( ~1M) 1048576 | 2048 x 512 x 1 x 1 | Q3_K |
| 58 | blk.4.ffn_down_exps.weight | Block 4 Ffn_Down_Exps (W) | (~201M) 201326592 | 768 x 2048 x 128 x 1 | Q4_K |
| 59 | blk.4.ffn_gate_exps.weight | Block 4 Ffn_Gate_Exps (W) | (~201M) 201326592 | 2048 x 768 x 128 x 1 | Q2_K |
| 60 | blk.4.ffn_gate_inp.weight | Block 4 Expert-Routing Layer For The Feed-Forward Network In Mixture Of Expert Models (W) | (~262K) 262144 | 2048 x 128 x 1 x 1 | F32 |
| 61 | blk.4.ffn_norm.weight | Block 4 Feed-Forward Network Normalization (W) | ( ~2K) 2048 | 2048 x 1 x 1 x 1 | F32 |
| 62 | blk.4.ffn_up_exps.weight | Block 4 Ffn_Up_Exps (W) | (~201M) 201326592 | 2048 x 768 x 128 x 1 | Q2_K |
- Total elements in blk.4: (~623M) 623120640
- Percentage of total elements: 2.04%
Block 5 Tensor Group : ~623M Elements
| T_ID | Tensor Layer Name | Human Friendly Tensor Layer Name | Elements | Shape | Type |
|---|---|---|---|---|---|
| 63 | blk.5.attn_k.weight | Block 5 Attention Key (W) | ( ~1M) 1048576 | 2048 x 512 x 1 x 1 | Q2_K |
| 64 | blk.5.attn_k_norm.weight | Block 5 Attn_K_Norm (W) | ( 128) 128 | 128 x 1 x 1 x 1 | F32 |
| 65 | blk.5.attn_norm.weight | Block 5 Attention Normalization (W) | ( ~2K) 2048 | 2048 x 1 x 1 x 1 | F32 |
| 66 | blk.5.attn_output.weight | Block 5 Attention Output (W) | ( ~8M) 8388608 | 4096 x 2048 x 1 x 1 | Q4_K |
| 67 | blk.5.attn_q.weight | Block 5 Attention Query (W) | ( ~8M) 8388608 | 2048 x 4096 x 1 x 1 | Q2_K |
| 68 | blk.5.attn_q_norm.weight | Block 5 Attn_Q_Norm (W) | ( 128) 128 | 128 x 1 x 1 x 1 | F32 |
| 69 | blk.5.attn_v.weight | Block 5 Attention Value (W) | ( ~1M) 1048576 | 2048 x 512 x 1 x 1 | Q3_K |
| 70 | blk.5.ffn_down_exps.weight | Block 5 Ffn_Down_Exps (W) | (~201M) 201326592 | 768 x 2048 x 128 x 1 | Q4_K |
| 71 | blk.5.ffn_gate_exps.weight | Block 5 Ffn_Gate_Exps (W) | (~201M) 201326592 | 2048 x 768 x 128 x 1 | Q2_K |
| 72 | blk.5.ffn_gate_inp.weight | Block 5 Expert-Routing Layer For The Feed-Forward Network In Mixture Of Expert Models (W) | (~262K) 262144 | 2048 x 128 x 1 x 1 | F32 |
| 73 | blk.5.ffn_norm.weight | Block 5 Feed-Forward Network Normalization (W) | ( ~2K) 2048 | 2048 x 1 x 1 x 1 | F32 |
| 74 | blk.5.ffn_up_exps.weight | Block 5 Ffn_Up_Exps (W) | (~201M) 201326592 | 2048 x 768 x 128 x 1 | Q2_K |
- Total elements in blk.5: (~623M) 623120640
- Percentage of total elements: 2.04%
Block 6 Tensor Group : ~623M Elements
| T_ID | Tensor Layer Name | Human Friendly Tensor Layer Name | Elements | Shape | Type |
|---|---|---|---|---|---|
| 75 | blk.6.attn_k.weight | Block 6 Attention Key (W) | ( ~1M) 1048576 | 2048 x 512 x 1 x 1 | Q2_K |
| 76 | blk.6.attn_k_norm.weight | Block 6 Attn_K_Norm (W) | ( 128) 128 | 128 x 1 x 1 x 1 | F32 |
| 77 | blk.6.attn_norm.weight | Block 6 Attention Normalization (W) | ( ~2K) 2048 | 2048 x 1 x 1 x 1 | F32 |
| 78 | blk.6.attn_output.weight | Block 6 Attention Output (W) | ( ~8M) 8388608 | 4096 x 2048 x 1 x 1 | Q4_K |
| 79 | blk.6.attn_q.weight | Block 6 Attention Query (W) | ( ~8M) 8388608 | 2048 x 4096 x 1 x 1 | Q2_K |
| 80 | blk.6.attn_q_norm.weight | Block 6 Attn_Q_Norm (W) | ( 128) 128 | 128 x 1 x 1 x 1 | F32 |
| 81 | blk.6.attn_v.weight | Block 6 Attention Value (W) | ( ~1M) 1048576 | 2048 x 512 x 1 x 1 | Q3_K |
| 82 | blk.6.ffn_down_exps.weight | Block 6 Ffn_Down_Exps (W) | (~201M) 201326592 | 768 x 2048 x 128 x 1 | Q4_K |
| 83 | blk.6.ffn_gate_exps.weight | Block 6 Ffn_Gate_Exps (W) | (~201M) 201326592 | 2048 x 768 x 128 x 1 | Q2_K |
| 84 | blk.6.ffn_gate_inp.weight | Block 6 Expert-Routing Layer For The Feed-Forward Network In Mixture Of Expert Models (W) | (~262K) 262144 | 2048 x 128 x 1 x 1 | F32 |
| 85 | blk.6.ffn_norm.weight | Block 6 Feed-Forward Network Normalization (W) | ( ~2K) 2048 | 2048 x 1 x 1 x 1 | F32 |
| 86 | blk.6.ffn_up_exps.weight | Block 6 Ffn_Up_Exps (W) | (~201M) 201326592 | 2048 x 768 x 128 x 1 | Q2_K |
- Total elements in blk.6: (~623M) 623120640
- Percentage of total elements: 2.04%
Block 7 Tensor Group : ~623M Elements
| T_ID | Tensor Layer Name | Human Friendly Tensor Layer Name | Elements | Shape | Type |
|---|---|---|---|---|---|
| 87 | blk.7.attn_k.weight | Block 7 Attention Key (W) | ( ~1M) 1048576 | 2048 x 512 x 1 x 1 | Q2_K |
| 88 | blk.7.attn_k_norm.weight | Block 7 Attn_K_Norm (W) | ( 128) 128 | 128 x 1 x 1 x 1 | F32 |
| 89 | blk.7.attn_norm.weight | Block 7 Attention Normalization (W) | ( ~2K) 2048 | 2048 x 1 x 1 x 1 | F32 |
| 90 | blk.7.attn_output.weight | Block 7 Attention Output (W) | ( ~8M) 8388608 | 4096 x 2048 x 1 x 1 | Q4_K |
| 91 | blk.7.attn_q.weight | Block 7 Attention Query (W) | ( ~8M) 8388608 | 2048 x 4096 x 1 x 1 | Q2_K |
| 92 | blk.7.attn_q_norm.weight | Block 7 Attn_Q_Norm (W) | ( 128) 128 | 128 x 1 x 1 x 1 | F32 |
| 93 | blk.7.attn_v.weight | Block 7 Attention Value (W) | ( ~1M) 1048576 | 2048 x 512 x 1 x 1 | Q3_K |
| 94 | blk.7.ffn_down_exps.weight | Block 7 Ffn_Down_Exps (W) | (~201M) 201326592 | 768 x 2048 x 128 x 1 | Q4_K |
| 95 | blk.7.ffn_gate_exps.weight | Block 7 Ffn_Gate_Exps (W) | (~201M) 201326592 | 2048 x 768 x 128 x 1 | Q2_K |
| 96 | blk.7.ffn_gate_inp.weight | Block 7 Expert-Routing Layer For The Feed-Forward Network In Mixture Of Expert Models (W) | (~262K) 262144 | 2048 x 128 x 1 x 1 | F32 |
| 97 | blk.7.ffn_norm.weight | Block 7 Feed-Forward Network Normalization (W) | ( ~2K) 2048 | 2048 x 1 x 1 x 1 | F32 |
| 98 | blk.7.ffn_up_exps.weight | Block 7 Ffn_Up_Exps (W) | (~201M) 201326592 | 2048 x 768 x 128 x 1 | Q2_K |
- Total elements in blk.7: (~623M) 623120640
- Percentage of total elements: 2.04%
Block 8 Tensor Group : ~623M Elements
| T_ID | Tensor Layer Name | Human Friendly Tensor Layer Name | Elements | Shape | Type |
|---|---|---|---|---|---|
| 99 | blk.8.attn_k.weight | Block 8 Attention Key (W) | ( ~1M) 1048576 | 2048 x 512 x 1 x 1 | Q2_K |
| 100 | blk.8.attn_k_norm.weight | Block 8 Attn_K_Norm (W) | ( 128) 128 | 128 x 1 x 1 x 1 | F32 |
| 101 | blk.8.attn_norm.weight | Block 8 Attention Normalization (W) | ( ~2K) 2048 | 2048 x 1 x 1 x 1 | F32 |
| 102 | blk.8.attn_output.weight | Block 8 Attention Output (W) | ( ~8M) 8388608 | 4096 x 2048 x 1 x 1 | Q4_K |
| 103 | blk.8.attn_q.weight | Block 8 Attention Query (W) | ( ~8M) 8388608 | 2048 x 4096 x 1 x 1 | Q2_K |
| 104 | blk.8.attn_q_norm.weight | Block 8 Attn_Q_Norm (W) | ( 128) 128 | 128 x 1 x 1 x 1 | F32 |
| 105 | blk.8.attn_v.weight | Block 8 Attention Value (W) | ( ~1M) 1048576 | 2048 x 512 x 1 x 1 | Q3_K |
| 106 | blk.8.ffn_down_exps.weight | Block 8 Ffn_Down_Exps (W) | (~201M) 201326592 | 768 x 2048 x 128 x 1 | Q4_K |
| 107 | blk.8.ffn_gate_exps.weight | Block 8 Ffn_Gate_Exps (W) | (~201M) 201326592 | 2048 x 768 x 128 x 1 | Q2_K |
| 108 | blk.8.ffn_gate_inp.weight | Block 8 Expert-Routing Layer For The Feed-Forward Network In Mixture Of Expert Models (W) | (~262K) 262144 | 2048 x 128 x 1 x 1 | F32 |
| 109 | blk.8.ffn_norm.weight | Block 8 Feed-Forward Network Normalization (W) | ( ~2K) 2048 | 2048 x 1 x 1 x 1 | F32 |
| 110 | blk.8.ffn_up_exps.weight | Block 8 Ffn_Up_Exps (W) | (~201M) 201326592 | 2048 x 768 x 128 x 1 | Q2_K |
- Total elements in blk.8: (~623M) 623120640
- Percentage of total elements: 2.04%
Block 9 Tensor Group : ~623M Elements
| T_ID | Tensor Layer Name | Human Friendly Tensor Layer Name | Elements | Shape | Type |
|---|---|---|---|---|---|
| 111 | blk.9.attn_k.weight | Block 9 Attention Key (W) | ( ~1M) 1048576 | 2048 x 512 x 1 x 1 | Q2_K |
| 112 | blk.9.attn_k_norm.weight | Block 9 Attn_K_Norm (W) | ( 128) 128 | 128 x 1 x 1 x 1 | F32 |
| 113 | blk.9.attn_norm.weight | Block 9 Attention Normalization (W) | ( ~2K) 2048 | 2048 x 1 x 1 x 1 | F32 |
| 114 | blk.9.attn_output.weight | Block 9 Attention Output (W) | ( ~8M) 8388608 | 4096 x 2048 x 1 x 1 | Q4_K |
| 115 | blk.9.attn_q.weight | Block 9 Attention Query (W) | ( ~8M) 8388608 | 2048 x 4096 x 1 x 1 | Q2_K |
| 116 | blk.9.attn_q_norm.weight | Block 9 Attn_Q_Norm (W) | ( 128) 128 | 128 x 1 x 1 x 1 | F32 |
| 117 | blk.9.attn_v.weight | Block 9 Attention Value (W) | ( ~1M) 1048576 | 2048 x 512 x 1 x 1 | Q3_K |
| 118 | blk.9.ffn_down_exps.weight | Block 9 Ffn_Down_Exps (W) | (~201M) 201326592 | 768 x 2048 x 128 x 1 | Q4_K |
| 119 | blk.9.ffn_gate_exps.weight | Block 9 Ffn_Gate_Exps (W) | (~201M) 201326592 | 2048 x 768 x 128 x 1 | Q2_K |
| 120 | blk.9.ffn_gate_inp.weight | Block 9 Expert-Routing Layer For The Feed-Forward Network In Mixture Of Expert Models (W) | (~262K) 262144 | 2048 x 128 x 1 x 1 | F32 |
| 121 | blk.9.ffn_norm.weight | Block 9 Feed-Forward Network Normalization (W) | ( ~2K) 2048 | 2048 x 1 x 1 x 1 | F32 |
| 122 | blk.9.ffn_up_exps.weight | Block 9 Ffn_Up_Exps (W) | (~201M) 201326592 | 2048 x 768 x 128 x 1 | Q2_K |
- Total elements in blk.9: (~623M) 623120640
- Percentage of total elements: 2.04%
Block 10 Tensor Group : ~623M Elements
| T_ID | Tensor Layer Name | Human Friendly Tensor Layer Name | Elements | Shape | Type |
|---|---|---|---|---|---|
| 123 | blk.10.attn_k.weight | Block 10 Attention Key (W) | ( ~1M) 1048576 | 2048 x 512 x 1 x 1 | Q2_K |
| 124 | blk.10.attn_k_norm.weight | Block 10 Attn_K_Norm (W) | ( 128) 128 | 128 x 1 x 1 x 1 | F32 |
| 125 | blk.10.attn_norm.weight | Block 10 Attention Normalization (W) | ( ~2K) 2048 | 2048 x 1 x 1 x 1 | F32 |
| 126 | blk.10.attn_output.weight | Block 10 Attention Output (W) | ( ~8M) 8388608 | 4096 x 2048 x 1 x 1 | Q4_K |
| 127 | blk.10.attn_q.weight | Block 10 Attention Query (W) | ( ~8M) 8388608 | 2048 x 4096 x 1 x 1 | Q2_K |
| 128 | blk.10.attn_q_norm.weight | Block 10 Attn_Q_Norm (W) | ( 128) 128 | 128 x 1 x 1 x 1 | F32 |
| 129 | blk.10.attn_v.weight | Block 10 Attention Value (W) | ( ~1M) 1048576 | 2048 x 512 x 1 x 1 | Q3_K |
| 130 | blk.10.ffn_down_exps.weight | Block 10 Ffn_Down_Exps (W) | (~201M) 201326592 | 768 x 2048 x 128 x 1 | Q4_K |
| 131 | blk.10.ffn_gate_exps.weight | Block 10 Ffn_Gate_Exps (W) | (~201M) 201326592 | 2048 x 768 x 128 x 1 | Q2_K |
| 132 | blk.10.ffn_gate_inp.weight | Block 10 Expert-Routing Layer For The Feed-Forward Network In Mixture Of Expert Models (W) | (~262K) 262144 | 2048 x 128 x 1 x 1 | F32 |
| 133 | blk.10.ffn_norm.weight | Block 10 Feed-Forward Network Normalization (W) | ( ~2K) 2048 | 2048 x 1 x 1 x 1 | F32 |
| 134 | blk.10.ffn_up_exps.weight | Block 10 Ffn_Up_Exps (W) | (~201M) 201326592 | 2048 x 768 x 128 x 1 | Q2_K |
- Total elements in blk.10: (~623M) 623120640
- Percentage of total elements: 2.04%
Block 11 Tensor Group : ~623M Elements
| T_ID | Tensor Layer Name | Human Friendly Tensor Layer Name | Elements | Shape | Type |
|---|---|---|---|---|---|
| 135 | blk.11.attn_k.weight | Block 11 Attention Key (W) | ( ~1M) 1048576 | 2048 x 512 x 1 x 1 | Q2_K |
| 136 | blk.11.attn_k_norm.weight | Block 11 Attn_K_Norm (W) | ( 128) 128 | 128 x 1 x 1 x 1 | F32 |
| 137 | blk.11.attn_norm.weight | Block 11 Attention Normalization (W) | ( ~2K) 2048 | 2048 x 1 x 1 x 1 | F32 |
| 138 | blk.11.attn_output.weight | Block 11 Attention Output (W) | ( ~8M) 8388608 | 4096 x 2048 x 1 x 1 | Q4_K |
| 139 | blk.11.attn_q.weight | Block 11 Attention Query (W) | ( ~8M) 8388608 | 2048 x 4096 x 1 x 1 | Q2_K |
| 140 | blk.11.attn_q_norm.weight | Block 11 Attn_Q_Norm (W) | ( 128) 128 | 128 x 1 x 1 x 1 | F32 |
| 141 | blk.11.attn_v.weight | Block 11 Attention Value (W) | ( ~1M) 1048576 | 2048 x 512 x 1 x 1 | Q3_K |
| 142 | blk.11.ffn_down_exps.weight | Block 11 Ffn_Down_Exps (W) | (~201M) 201326592 | 768 x 2048 x 128 x 1 | Q4_K |
| 143 | blk.11.ffn_gate_exps.weight | Block 11 Ffn_Gate_Exps (W) | (~201M) 201326592 | 2048 x 768 x 128 x 1 | Q2_K |
| 144 | blk.11.ffn_gate_inp.weight | Block 11 Expert-Routing Layer For The Feed-Forward Network In Mixture Of Expert Models (W) | (~262K) 262144 | 2048 x 128 x 1 x 1 | F32 |
| 145 | blk.11.ffn_norm.weight | Block 11 Feed-Forward Network Normalization (W) | ( ~2K) 2048 | 2048 x 1 x 1 x 1 | F32 |
| 146 | blk.11.ffn_up_exps.weight | Block 11 Ffn_Up_Exps (W) | (~201M) 201326592 | 2048 x 768 x 128 x 1 | Q2_K |
- Total elements in blk.11: (~623M) 623120640
- Percentage of total elements: 2.04%
Block 12 Tensor Group : ~623M Elements
| T_ID | Tensor Layer Name | Human Friendly Tensor Layer Name | Elements | Shape | Type |
|---|---|---|---|---|---|
| 147 | blk.12.attn_k.weight | Block 12 Attention Key (W) | ( ~1M) 1048576 | 2048 x 512 x 1 x 1 | Q2_K |
| 148 | blk.12.attn_k_norm.weight | Block 12 Attn_K_Norm (W) | ( 128) 128 | 128 x 1 x 1 x 1 | F32 |
| 149 | blk.12.attn_norm.weight | Block 12 Attention Normalization (W) | ( ~2K) 2048 | 2048 x 1 x 1 x 1 | F32 |
| 150 | blk.12.attn_output.weight | Block 12 Attention Output (W) | ( ~8M) 8388608 | 4096 x 2048 x 1 x 1 | Q4_K |
| 151 | blk.12.attn_q.weight | Block 12 Attention Query (W) | ( ~8M) 8388608 | 2048 x 4096 x 1 x 1 | Q2_K |
| 152 | blk.12.attn_q_norm.weight | Block 12 Attn_Q_Norm (W) | ( 128) 128 | 128 x 1 x 1 x 1 | F32 |
| 153 | blk.12.attn_v.weight | Block 12 Attention Value (W) | ( ~1M) 1048576 | 2048 x 512 x 1 x 1 | Q3_K |
| 154 | blk.12.ffn_down_exps.weight | Block 12 Ffn_Down_Exps (W) | (~201M) 201326592 | 768 x 2048 x 128 x 1 | Q4_K |
| 155 | blk.12.ffn_gate_exps.weight | Block 12 Ffn_Gate_Exps (W) | (~201M) 201326592 | 2048 x 768 x 128 x 1 | Q2_K |
| 156 | blk.12.ffn_gate_inp.weight | Block 12 Expert-Routing Layer For The Feed-Forward Network In Mixture Of Expert Models (W) | (~262K) 262144 | 2048 x 128 x 1 x 1 | F32 |
| 157 | blk.12.ffn_norm.weight | Block 12 Feed-Forward Network Normalization (W) | ( ~2K) 2048 | 2048 x 1 x 1 x 1 | F32 |
| 158 | blk.12.ffn_up_exps.weight | Block 12 Ffn_Up_Exps (W) | (~201M) 201326592 | 2048 x 768 x 128 x 1 | Q2_K |
- Total elements in blk.12: (~623M) 623120640
- Percentage of total elements: 2.04%
Block 13 Tensor Group : ~623M Elements
| T_ID | Tensor Layer Name | Human Friendly Tensor Layer Name | Elements | Shape | Type |
|---|---|---|---|---|---|
| 159 | blk.13.attn_k.weight | Block 13 Attention Key (W) | ( ~1M) 1048576 | 2048 x 512 x 1 x 1 | Q2_K |
| 160 | blk.13.attn_k_norm.weight | Block 13 Attn_K_Norm (W) | ( 128) 128 | 128 x 1 x 1 x 1 | F32 |
| 161 | blk.13.attn_norm.weight | Block 13 Attention Normalization (W) | ( ~2K) 2048 | 2048 x 1 x 1 x 1 | F32 |
| 162 | blk.13.attn_output.weight | Block 13 Attention Output (W) | ( ~8M) 8388608 | 4096 x 2048 x 1 x 1 | Q4_K |
| 163 | blk.13.attn_q.weight | Block 13 Attention Query (W) | ( ~8M) 8388608 | 2048 x 4096 x 1 x 1 | Q2_K |
| 164 | blk.13.attn_q_norm.weight | Block 13 Attn_Q_Norm (W) | ( 128) 128 | 128 x 1 x 1 x 1 | F32 |
| 165 | blk.13.attn_v.weight | Block 13 Attention Value (W) | ( ~1M) 1048576 | 2048 x 512 x 1 x 1 | Q3_K |
| 166 | blk.13.ffn_down_exps.weight | Block 13 Ffn_Down_Exps (W) | (~201M) 201326592 | 768 x 2048 x 128 x 1 | Q4_K |
| 167 | blk.13.ffn_gate_exps.weight | Block 13 Ffn_Gate_Exps (W) | (~201M) 201326592 | 2048 x 768 x 128 x 1 | Q3_K |
| 168 | blk.13.ffn_gate_inp.weight | Block 13 Expert-Routing Layer For The Feed-Forward Network In Mixture Of Expert Models (W) | (~262K) 262144 | 2048 x 128 x 1 x 1 | F32 |
| 169 | blk.13.ffn_norm.weight | Block 13 Feed-Forward Network Normalization (W) | ( ~2K) 2048 | 2048 x 1 x 1 x 1 | F32 |
| 170 | blk.13.ffn_up_exps.weight | Block 13 Ffn_Up_Exps (W) | (~201M) 201326592 | 2048 x 768 x 128 x 1 | Q3_K |
- Total elements in blk.13: (~623M) 623120640
- Percentage of total elements: 2.04%
Block 14 Tensor Group : ~623M Elements
| T_ID | Tensor Layer Name | Human Friendly Tensor Layer Name | Elements | Shape | Type |
|---|---|---|---|---|---|
| 171 | blk.14.attn_k.weight | Block 14 Attention Key (W) | ( ~1M) 1048576 | 2048 x 512 x 1 x 1 | Q2_K |
| 172 | blk.14.attn_k_norm.weight | Block 14 Attn_K_Norm (W) | ( 128) 128 | 128 x 1 x 1 x 1 | F32 |
| 173 | blk.14.attn_norm.weight | Block 14 Attention Normalization (W) | ( ~2K) 2048 | 2048 x 1 x 1 x 1 | F32 |
| 174 | blk.14.attn_output.weight | Block 14 Attention Output (W) | ( ~8M) 8388608 | 4096 x 2048 x 1 x 1 | Q4_K |
| 175 | blk.14.attn_q.weight | Block 14 Attention Query (W) | ( ~8M) 8388608 | 2048 x 4096 x 1 x 1 | Q2_K |
| 176 | blk.14.attn_q_norm.weight | Block 14 Attn_Q_Norm (W) | ( 128) 128 | 128 x 1 x 1 x 1 | F32 |
| 177 | blk.14.attn_v.weight | Block 14 Attention Value (W) | ( ~1M) 1048576 | 2048 x 512 x 1 x 1 | Q3_K |
| 178 | blk.14.ffn_down_exps.weight | Block 14 Ffn_Down_Exps (W) | (~201M) 201326592 | 768 x 2048 x 128 x 1 | Q4_K |
| 179 | blk.14.ffn_gate_exps.weight | Block 14 Ffn_Gate_Exps (W) | (~201M) 201326592 | 2048 x 768 x 128 x 1 | Q2_K |
| 180 | blk.14.ffn_gate_inp.weight | Block 14 Expert-Routing Layer For The Feed-Forward Network In Mixture Of Expert Models (W) | (~262K) 262144 | 2048 x 128 x 1 x 1 | F32 |
| 181 | blk.14.ffn_norm.weight | Block 14 Feed-Forward Network Normalization (W) | ( ~2K) 2048 | 2048 x 1 x 1 x 1 | F32 |
| 182 | blk.14.ffn_up_exps.weight | Block 14 Ffn_Up_Exps (W) | (~201M) 201326592 | 2048 x 768 x 128 x 1 | Q2_K |
- Total elements in blk.14: (~623M) 623120640
- Percentage of total elements: 2.04%
Block 15 Tensor Group : ~623M Elements
| T_ID | Tensor Layer Name | Human Friendly Tensor Layer Name | Elements | Shape | Type |
|---|---|---|---|---|---|
| 183 | blk.15.attn_k.weight | Block 15 Attention Key (W) | ( ~1M) 1048576 | 2048 x 512 x 1 x 1 | Q2_K |
| 184 | blk.15.attn_k_norm.weight | Block 15 Attn_K_Norm (W) | ( 128) 128 | 128 x 1 x 1 x 1 | F32 |
| 185 | blk.15.attn_norm.weight | Block 15 Attention Normalization (W) | ( ~2K) 2048 | 2048 x 1 x 1 x 1 | F32 |
| 186 | blk.15.attn_output.weight | Block 15 Attention Output (W) | ( ~8M) 8388608 | 4096 x 2048 x 1 x 1 | Q4_K |
| 187 | blk.15.attn_q.weight | Block 15 Attention Query (W) | ( ~8M) 8388608 | 2048 x 4096 x 1 x 1 | Q2_K |
| 188 | blk.15.attn_q_norm.weight | Block 15 Attn_Q_Norm (W) | ( 128) 128 | 128 x 1 x 1 x 1 | F32 |
| 189 | blk.15.attn_v.weight | Block 15 Attention Value (W) | ( ~1M) 1048576 | 2048 x 512 x 1 x 1 | Q3_K |
| 190 | blk.15.ffn_down_exps.weight | Block 15 Ffn_Down_Exps (W) | (~201M) 201326592 | 768 x 2048 x 128 x 1 | Q4_K |
| 191 | blk.15.ffn_gate_exps.weight | Block 15 Ffn_Gate_Exps (W) | (~201M) 201326592 | 2048 x 768 x 128 x 1 | Q3_K |
| 192 | blk.15.ffn_gate_inp.weight | Block 15 Expert-Routing Layer For The Feed-Forward Network In Mixture Of Expert Models (W) | (~262K) 262144 | 2048 x 128 x 1 x 1 | F32 |
| 193 | blk.15.ffn_norm.weight | Block 15 Feed-Forward Network Normalization (W) | ( ~2K) 2048 | 2048 x 1 x 1 x 1 | F32 |
| 194 | blk.15.ffn_up_exps.weight | Block 15 Ffn_Up_Exps (W) | (~201M) 201326592 | 2048 x 768 x 128 x 1 | Q3_K |
- Total elements in blk.15: (~623M) 623120640
- Percentage of total elements: 2.04%
Block 16 Tensor Group : ~623M Elements
| T_ID | Tensor Layer Name | Human Friendly Tensor Layer Name | Elements | Shape | Type |
|---|---|---|---|---|---|
| 195 | blk.16.attn_k.weight | Block 16 Attention Key (W) | ( ~1M) 1048576 | 2048 x 512 x 1 x 1 | Q2_K |
| 196 | blk.16.attn_k_norm.weight | Block 16 Attn_K_Norm (W) | ( 128) 128 | 128 x 1 x 1 x 1 | F32 |
| 197 | blk.16.attn_norm.weight | Block 16 Attention Normalization (W) | ( ~2K) 2048 | 2048 x 1 x 1 x 1 | F32 |
| 198 | blk.16.attn_output.weight | Block 16 Attention Output (W) | ( ~8M) 8388608 | 4096 x 2048 x 1 x 1 | Q4_K |
| 199 | blk.16.attn_q.weight | Block 16 Attention Query (W) | ( ~8M) 8388608 | 2048 x 4096 x 1 x 1 | Q2_K |
| 200 | blk.16.attn_q_norm.weight | Block 16 Attn_Q_Norm (W) | ( 128) 128 | 128 x 1 x 1 x 1 | F32 |
| 201 | blk.16.attn_v.weight | Block 16 Attention Value (W) | ( ~1M) 1048576 | 2048 x 512 x 1 x 1 | Q3_K |
| 202 | blk.16.ffn_down_exps.weight | Block 16 Ffn_Down_Exps (W) | (~201M) 201326592 | 768 x 2048 x 128 x 1 | Q4_K |
| 203 | blk.16.ffn_gate_exps.weight | Block 16 Ffn_Gate_Exps (W) | (~201M) 201326592 | 2048 x 768 x 128 x 1 | Q2_K |
| 204 | blk.16.ffn_gate_inp.weight | Block 16 Expert-Routing Layer For The Feed-Forward Network In Mixture Of Expert Models (W) | (~262K) 262144 | 2048 x 128 x 1 x 1 | F32 |
| 205 | blk.16.ffn_norm.weight | Block 16 Feed-Forward Network Normalization (W) | ( ~2K) 2048 | 2048 x 1 x 1 x 1 | F32 |
| 206 | blk.16.ffn_up_exps.weight | Block 16 Ffn_Up_Exps (W) | (~201M) 201326592 | 2048 x 768 x 128 x 1 | Q2_K |
- Total elements in blk.16: (~623M) 623120640
- Percentage of total elements: 2.04%
Block 17 Tensor Group : ~623M Elements
| T_ID | Tensor Layer Name | Human Friendly Tensor Layer Name | Elements | Shape | Type |
|---|---|---|---|---|---|
| 207 | blk.17.attn_k.weight | Block 17 Attention Key (W) | ( ~1M) 1048576 | 2048 x 512 x 1 x 1 | Q2_K |
| 208 | blk.17.attn_k_norm.weight | Block 17 Attn_K_Norm (W) | ( 128) 128 | 128 x 1 x 1 x 1 | F32 |
| 209 | blk.17.attn_norm.weight | Block 17 Attention Normalization (W) | ( ~2K) 2048 | 2048 x 1 x 1 x 1 | F32 |
| 210 | blk.17.attn_output.weight | Block 17 Attention Output (W) | ( ~8M) 8388608 | 4096 x 2048 x 1 x 1 | Q4_K |
| 211 | blk.17.attn_q.weight | Block 17 Attention Query (W) | ( ~8M) 8388608 | 2048 x 4096 x 1 x 1 | Q2_K |
| 212 | blk.17.attn_q_norm.weight | Block 17 Attn_Q_Norm (W) | ( 128) 128 | 128 x 1 x 1 x 1 | F32 |
| 213 | blk.17.attn_v.weight | Block 17 Attention Value (W) | ( ~1M) 1048576 | 2048 x 512 x 1 x 1 | Q3_K |
| 214 | blk.17.ffn_down_exps.weight | Block 17 Ffn_Down_Exps (W) | (~201M) 201326592 | 768 x 2048 x 128 x 1 | Q4_K |
| 215 | blk.17.ffn_gate_exps.weight | Block 17 Ffn_Gate_Exps (W) | (~201M) 201326592 | 2048 x 768 x 128 x 1 | Q2_K |
| 216 | blk.17.ffn_gate_inp.weight | Block 17 Expert-Routing Layer For The Feed-Forward Network In Mixture Of Expert Models (W) | (~262K) 262144 | 2048 x 128 x 1 x 1 | F32 |
| 217 | blk.17.ffn_norm.weight | Block 17 Feed-Forward Network Normalization (W) | ( ~2K) 2048 | 2048 x 1 x 1 x 1 | F32 |
| 218 | blk.17.ffn_up_exps.weight | Block 17 Ffn_Up_Exps (W) | (~201M) 201326592 | 2048 x 768 x 128 x 1 | Q2_K |
- Total elements in blk.17: (~623M) 623120640
- Percentage of total elements: 2.04%
Block 18 Tensor Group : ~623M Elements
| T_ID | Tensor Layer Name | Human Friendly Tensor Layer Name | Elements | Shape | Type |
|---|---|---|---|---|---|
| 219 | blk.18.attn_k.weight | Block 18 Attention Key (W) | ( ~1M) 1048576 | 2048 x 512 x 1 x 1 | Q2_K |
| 220 | blk.18.attn_k_norm.weight | Block 18 Attn_K_Norm (W) | ( 128) 128 | 128 x 1 x 1 x 1 | F32 |
| 221 | blk.18.attn_norm.weight | Block 18 Attention Normalization (W) | ( ~2K) 2048 | 2048 x 1 x 1 x 1 | F32 |
| 222 | blk.18.attn_output.weight | Block 18 Attention Output (W) | ( ~8M) 8388608 | 4096 x 2048 x 1 x 1 | Q4_K |
| 223 | blk.18.attn_q.weight | Block 18 Attention Query (W) | ( ~8M) 8388608 | 2048 x 4096 x 1 x 1 | Q2_K |
| 224 | blk.18.attn_q_norm.weight | Block 18 Attn_Q_Norm (W) | ( 128) 128 | 128 x 1 x 1 x 1 | F32 |
| 225 | blk.18.attn_v.weight | Block 18 Attention Value (W) | ( ~1M) 1048576 | 2048 x 512 x 1 x 1 | Q3_K |
| 226 | blk.18.ffn_down_exps.weight | Block 18 Ffn_Down_Exps (W) | (~201M) 201326592 | 768 x 2048 x 128 x 1 | Q4_K |
| 227 | blk.18.ffn_gate_exps.weight | Block 18 Ffn_Gate_Exps (W) | (~201M) 201326592 | 2048 x 768 x 128 x 1 | Q2_K |
| 228 | blk.18.ffn_gate_inp.weight | Block 18 Expert-Routing Layer For The Feed-Forward Network In Mixture Of Expert Models (W) | (~262K) 262144 | 2048 x 128 x 1 x 1 | F32 |
| 229 | blk.18.ffn_norm.weight | Block 18 Feed-Forward Network Normalization (W) | ( ~2K) 2048 | 2048 x 1 x 1 x 1 | F32 |
| 230 | blk.18.ffn_up_exps.weight | Block 18 Ffn_Up_Exps (W) | (~201M) 201326592 | 2048 x 768 x 128 x 1 | Q2_K |
- Total elements in blk.18: (~623M) 623120640
- Percentage of total elements: 2.04%
Block 19 Tensor Group : ~623M Elements
| T_ID | Tensor Layer Name | Human Friendly Tensor Layer Name | Elements | Shape | Type |
|---|---|---|---|---|---|
| 231 | blk.19.attn_k.weight | Block 19 Attention Key (W) | ( ~1M) 1048576 | 2048 x 512 x 1 x 1 | Q2_K |
| 232 | blk.19.attn_k_norm.weight | Block 19 Attn_K_Norm (W) | ( 128) 128 | 128 x 1 x 1 x 1 | F32 |
| 233 | blk.19.attn_norm.weight | Block 19 Attention Normalization (W) | ( ~2K) 2048 | 2048 x 1 x 1 x 1 | F32 |
| 234 | blk.19.attn_output.weight | Block 19 Attention Output (W) | ( ~8M) 8388608 | 4096 x 2048 x 1 x 1 | Q4_K |
| 235 | blk.19.attn_q.weight | Block 19 Attention Query (W) | ( ~8M) 8388608 | 2048 x 4096 x 1 x 1 | Q2_K |
| 236 | blk.19.attn_q_norm.weight | Block 19 Attn_Q_Norm (W) | ( 128) 128 | 128 x 1 x 1 x 1 | F32 |
| 237 | blk.19.attn_v.weight | Block 19 Attention Value (W) | ( ~1M) 1048576 | 2048 x 512 x 1 x 1 | Q3_K |
| 238 | blk.19.ffn_down_exps.weight | Block 19 Ffn_Down_Exps (W) | (~201M) 201326592 | 768 x 2048 x 128 x 1 | Q4_K |
| 239 | blk.19.ffn_gate_exps.weight | Block 19 Ffn_Gate_Exps (W) | (~201M) 201326592 | 2048 x 768 x 128 x 1 | Q2_K |
| 240 | blk.19.ffn_gate_inp.weight | Block 19 Expert-Routing Layer For The Feed-Forward Network In Mixture Of Expert Models (W) | (~262K) 262144 | 2048 x 128 x 1 x 1 | F32 |
| 241 | blk.19.ffn_norm.weight | Block 19 Feed-Forward Network Normalization (W) | ( ~2K) 2048 | 2048 x 1 x 1 x 1 | F32 |
| 242 | blk.19.ffn_up_exps.weight | Block 19 Ffn_Up_Exps (W) | (~201M) 201326592 | 2048 x 768 x 128 x 1 | Q2_K |
- Total elements in blk.19: (~623M) 623120640
- Percentage of total elements: 2.04%
Block 20 Tensor Group : ~623M Elements
| T_ID | Tensor Layer Name | Human Friendly Tensor Layer Name | Elements | Shape | Type |
|---|---|---|---|---|---|
| 243 | blk.20.attn_k.weight | Block 20 Attention Key (W) | ( ~1M) 1048576 | 2048 x 512 x 1 x 1 | Q2_K |
| 244 | blk.20.attn_k_norm.weight | Block 20 Attn_K_Norm (W) | ( 128) 128 | 128 x 1 x 1 x 1 | F32 |
| 245 | blk.20.attn_norm.weight | Block 20 Attention Normalization (W) | ( ~2K) 2048 | 2048 x 1 x 1 x 1 | F32 |
| 246 | blk.20.attn_output.weight | Block 20 Attention Output (W) | ( ~8M) 8388608 | 4096 x 2048 x 1 x 1 | Q4_K |
| 247 | blk.20.attn_q.weight | Block 20 Attention Query (W) | ( ~8M) 8388608 | 2048 x 4096 x 1 x 1 | Q2_K |
| 248 | blk.20.attn_q_norm.weight | Block 20 Attn_Q_Norm (W) | ( 128) 128 | 128 x 1 x 1 x 1 | F32 |
| 249 | blk.20.attn_v.weight | Block 20 Attention Value (W) | ( ~1M) 1048576 | 2048 x 512 x 1 x 1 | Q3_K |
| 250 | blk.20.ffn_down_exps.weight | Block 20 Ffn_Down_Exps (W) | (~201M) 201326592 | 768 x 2048 x 128 x 1 | Q4_K |
| 251 | blk.20.ffn_gate_exps.weight | Block 20 Ffn_Gate_Exps (W) | (~201M) 201326592 | 2048 x 768 x 128 x 1 | Q2_K |
| 252 | blk.20.ffn_gate_inp.weight | Block 20 Expert-Routing Layer For The Feed-Forward Network In Mixture Of Expert Models (W) | (~262K) 262144 | 2048 x 128 x 1 x 1 | F32 |
| 253 | blk.20.ffn_norm.weight | Block 20 Feed-Forward Network Normalization (W) | ( ~2K) 2048 | 2048 x 1 x 1 x 1 | F32 |
| 254 | blk.20.ffn_up_exps.weight | Block 20 Ffn_Up_Exps (W) | (~201M) 201326592 | 2048 x 768 x 128 x 1 | Q2_K |
- Total elements in blk.20: (~623M) 623120640
- Percentage of total elements: 2.04%
Block 21 Tensor Group : ~623M Elements
| T_ID | Tensor Layer Name | Human Friendly Tensor Layer Name | Elements | Shape | Type |
|---|---|---|---|---|---|
| 255 | blk.21.attn_k.weight | Block 21 Attention Key (W) | ( ~1M) 1048576 | 2048 x 512 x 1 x 1 | Q2_K |
| 256 | blk.21.attn_k_norm.weight | Block 21 Attn_K_Norm (W) | ( 128) 128 | 128 x 1 x 1 x 1 | F32 |
| 257 | blk.21.attn_norm.weight | Block 21 Attention Normalization (W) | ( ~2K) 2048 | 2048 x 1 x 1 x 1 | F32 |
| 258 | blk.21.attn_output.weight | Block 21 Attention Output (W) | ( ~8M) 8388608 | 4096 x 2048 x 1 x 1 | Q4_K |
| 259 | blk.21.attn_q.weight | Block 21 Attention Query (W) | ( ~8M) 8388608 | 2048 x 4096 x 1 x 1 | Q2_K |
| 260 | blk.21.attn_q_norm.weight | Block 21 Attn_Q_Norm (W) | ( 128) 128 | 128 x 1 x 1 x 1 | F32 |
| 261 | blk.21.attn_v.weight | Block 21 Attention Value (W) | ( ~1M) 1048576 | 2048 x 512 x 1 x 1 | Q3_K |
| 262 | blk.21.ffn_down_exps.weight | Block 21 Ffn_Down_Exps (W) | (~201M) 201326592 | 768 x 2048 x 128 x 1 | Q4_K |
| 263 | blk.21.ffn_gate_exps.weight | Block 21 Ffn_Gate_Exps (W) | (~201M) 201326592 | 2048 x 768 x 128 x 1 | Q2_K |
| 264 | blk.21.ffn_gate_inp.weight | Block 21 Expert-Routing Layer For The Feed-Forward Network In Mixture Of Expert Models (W) | (~262K) 262144 | 2048 x 128 x 1 x 1 | F32 |
| 265 | blk.21.ffn_norm.weight | Block 21 Feed-Forward Network Normalization (W) | ( ~2K) 2048 | 2048 x 1 x 1 x 1 | F32 |
| 266 | blk.21.ffn_up_exps.weight | Block 21 Ffn_Up_Exps (W) | (~201M) 201326592 | 2048 x 768 x 128 x 1 | Q2_K |
- Total elements in blk.21: (~623M) 623120640
- Percentage of total elements: 2.04%
Block 22 Tensor Group : ~623M Elements
| T_ID | Tensor Layer Name | Human Friendly Tensor Layer Name | Elements | Shape | Type |
|---|---|---|---|---|---|
| 267 | blk.22.attn_k.weight | Block 22 Attention Key (W) | ( ~1M) 1048576 | 2048 x 512 x 1 x 1 | Q2_K |
| 268 | blk.22.attn_k_norm.weight | Block 22 Attn_K_Norm (W) | ( 128) 128 | 128 x 1 x 1 x 1 | F32 |
| 269 | blk.22.attn_norm.weight | Block 22 Attention Normalization (W) | ( ~2K) 2048 | 2048 x 1 x 1 x 1 | F32 |
| 270 | blk.22.attn_output.weight | Block 22 Attention Output (W) | ( ~8M) 8388608 | 4096 x 2048 x 1 x 1 | Q4_K |
| 271 | blk.22.attn_q.weight | Block 22 Attention Query (W) | ( ~8M) 8388608 | 2048 x 4096 x 1 x 1 | Q2_K |
| 272 | blk.22.attn_q_norm.weight | Block 22 Attn_Q_Norm (W) | ( 128) 128 | 128 x 1 x 1 x 1 | F32 |
| 273 | blk.22.attn_v.weight | Block 22 Attention Value (W) | ( ~1M) 1048576 | 2048 x 512 x 1 x 1 | Q3_K |
| 274 | blk.22.ffn_down_exps.weight | Block 22 Ffn_Down_Exps (W) | (~201M) 201326592 | 768 x 2048 x 128 x 1 | Q4_K |
| 275 | blk.22.ffn_gate_exps.weight | Block 22 Ffn_Gate_Exps (W) | (~201M) 201326592 | 2048 x 768 x 128 x 1 | Q2_K |
| 276 | blk.22.ffn_gate_inp.weight | Block 22 Expert-Routing Layer For The Feed-Forward Network In Mixture Of Expert Models (W) | (~262K) 262144 | 2048 x 128 x 1 x 1 | F32 |
| 277 | blk.22.ffn_norm.weight | Block 22 Feed-Forward Network Normalization (W) | ( ~2K) 2048 | 2048 x 1 x 1 x 1 | F32 |
| 278 | blk.22.ffn_up_exps.weight | Block 22 Ffn_Up_Exps (W) | (~201M) 201326592 | 2048 x 768 x 128 x 1 | Q2_K |
- Total elements in blk.22: (~623M) 623120640
- Percentage of total elements: 2.04%
Block 23 Tensor Group : ~623M Elements
| T_ID | Tensor Layer Name | Human Friendly Tensor Layer Name | Elements | Shape | Type |
|---|---|---|---|---|---|
| 279 | blk.23.attn_k.weight | Block 23 Attention Key (W) | ( ~1M) 1048576 | 2048 x 512 x 1 x 1 | Q2_K |
| 280 | blk.23.attn_k_norm.weight | Block 23 Attn_K_Norm (W) | ( 128) 128 | 128 x 1 x 1 x 1 | F32 |
| 281 | blk.23.attn_norm.weight | Block 23 Attention Normalization (W) | ( ~2K) 2048 | 2048 x 1 x 1 x 1 | F32 |
| 282 | blk.23.attn_output.weight | Block 23 Attention Output (W) | ( ~8M) 8388608 | 4096 x 2048 x 1 x 1 | Q4_K |
| 283 | blk.23.attn_q.weight | Block 23 Attention Query (W) | ( ~8M) 8388608 | 2048 x 4096 x 1 x 1 | Q2_K |
| 284 | blk.23.attn_q_norm.weight | Block 23 Attn_Q_Norm (W) | ( 128) 128 | 128 x 1 x 1 x 1 | F32 |
| 285 | blk.23.attn_v.weight | Block 23 Attention Value (W) | ( ~1M) 1048576 | 2048 x 512 x 1 x 1 | Q3_K |
| 286 | blk.23.ffn_down_exps.weight | Block 23 Ffn_Down_Exps (W) | (~201M) 201326592 | 768 x 2048 x 128 x 1 | Q4_K |
| 287 | blk.23.ffn_gate_exps.weight | Block 23 Ffn_Gate_Exps (W) | (~201M) 201326592 | 2048 x 768 x 128 x 1 | Q2_K |
| 288 | blk.23.ffn_gate_inp.weight | Block 23 Expert-Routing Layer For The Feed-Forward Network In Mixture Of Expert Models (W) | (~262K) 262144 | 2048 x 128 x 1 x 1 | F32 |
| 289 | blk.23.ffn_norm.weight | Block 23 Feed-Forward Network Normalization (W) | ( ~2K) 2048 | 2048 x 1 x 1 x 1 | F32 |
| 290 | blk.23.ffn_up_exps.weight | Block 23 Ffn_Up_Exps (W) | (~201M) 201326592 | 2048 x 768 x 128 x 1 | Q2_K |
- Total elements in blk.23: (~623M) 623120640
- Percentage of total elements: 2.04%
Block 24 Tensor Group : ~623M Elements
| T_ID | Tensor Layer Name | Human Friendly Tensor Layer Name | Elements | Shape | Type |
|---|---|---|---|---|---|
| 291 | blk.24.attn_k.weight | Block 24 Attention Key (W) | ( ~1M) 1048576 | 2048 x 512 x 1 x 1 | Q3_K |
| 292 | blk.24.attn_k_norm.weight | Block 24 Attn_K_Norm (W) | ( 128) 128 | 128 x 1 x 1 x 1 | F32 |
| 293 | blk.24.attn_norm.weight | Block 24 Attention Normalization (W) | ( ~2K) 2048 | 2048 x 1 x 1 x 1 | F32 |
| 294 | blk.24.attn_output.weight | Block 24 Attention Output (W) | ( ~8M) 8388608 | 4096 x 2048 x 1 x 1 | Q4_K |
| 295 | blk.24.attn_q.weight | Block 24 Attention Query (W) | ( ~8M) 8388608 | 2048 x 4096 x 1 x 1 | Q3_K |
| 296 | blk.24.attn_q_norm.weight | Block 24 Attn_Q_Norm (W) | ( 128) 128 | 128 x 1 x 1 x 1 | F32 |
| 297 | blk.24.attn_v.weight | Block 24 Attention Value (W) | ( ~1M) 1048576 | 2048 x 512 x 1 x 1 | Q4_K |
| 298 | blk.24.ffn_down_exps.weight | Block 24 Ffn_Down_Exps (W) | (~201M) 201326592 | 768 x 2048 x 128 x 1 | Q4_K |
| 299 | blk.24.ffn_gate_exps.weight | Block 24 Ffn_Gate_Exps (W) | (~201M) 201326592 | 2048 x 768 x 128 x 1 | Q2_K |
| 300 | blk.24.ffn_gate_inp.weight | Block 24 Expert-Routing Layer For The Feed-Forward Network In Mixture Of Expert Models (W) | (~262K) 262144 | 2048 x 128 x 1 x 1 | F32 |
| 301 | blk.24.ffn_norm.weight | Block 24 Feed-Forward Network Normalization (W) | ( ~2K) 2048 | 2048 x 1 x 1 x 1 | F32 |
| 302 | blk.24.ffn_up_exps.weight | Block 24 Ffn_Up_Exps (W) | (~201M) 201326592 | 2048 x 768 x 128 x 1 | Q2_K |
- Total elements in blk.24: (~623M) 623120640
- Percentage of total elements: 2.04%
Block 25 Tensor Group : ~623M Elements
| T_ID | Tensor Layer Name | Human Friendly Tensor Layer Name | Elements | Shape | Type |
|---|---|---|---|---|---|
| 303 | blk.25.attn_k.weight | Block 25 Attention Key (W) | ( ~1M) 1048576 | 2048 x 512 x 1 x 1 | Q3_K |
| 304 | blk.25.attn_k_norm.weight | Block 25 Attn_K_Norm (W) | ( 128) 128 | 128 x 1 x 1 x 1 | F32 |
| 305 | blk.25.attn_norm.weight | Block 25 Attention Normalization (W) | ( ~2K) 2048 | 2048 x 1 x 1 x 1 | F32 |
| 306 | blk.25.attn_output.weight | Block 25 Attention Output (W) | ( ~8M) 8388608 | 4096 x 2048 x 1 x 1 | Q4_K |
| 307 | blk.25.attn_q.weight | Block 25 Attention Query (W) | ( ~8M) 8388608 | 2048 x 4096 x 1 x 1 | Q3_K |
| 308 | blk.25.attn_q_norm.weight | Block 25 Attn_Q_Norm (W) | ( 128) 128 | 128 x 1 x 1 x 1 | F32 |
| 309 | blk.25.attn_v.weight | Block 25 Attention Value (W) | ( ~1M) 1048576 | 2048 x 512 x 1 x 1 | Q4_K |
| 310 | blk.25.ffn_down_exps.weight | Block 25 Ffn_Down_Exps (W) | (~201M) 201326592 | 768 x 2048 x 128 x 1 | Q4_K |
| 311 | blk.25.ffn_gate_exps.weight | Block 25 Ffn_Gate_Exps (W) | (~201M) 201326592 | 2048 x 768 x 128 x 1 | Q3_K |
| 312 | blk.25.ffn_gate_inp.weight | Block 25 Expert-Routing Layer For The Feed-Forward Network In Mixture Of Expert Models (W) | (~262K) 262144 | 2048 x 128 x 1 x 1 | F32 |
| 313 | blk.25.ffn_norm.weight | Block 25 Feed-Forward Network Normalization (W) | ( ~2K) 2048 | 2048 x 1 x 1 x 1 | F32 |
| 314 | blk.25.ffn_up_exps.weight | Block 25 Ffn_Up_Exps (W) | (~201M) 201326592 | 2048 x 768 x 128 x 1 | Q3_K |
- Total elements in blk.25: (~623M) 623120640
- Percentage of total elements: 2.04%
Block 26 Tensor Group : ~623M Elements
| T_ID | Tensor Layer Name | Human Friendly Tensor Layer Name | Elements | Shape | Type |
|---|---|---|---|---|---|
| 315 | blk.26.attn_k.weight | Block 26 Attention Key (W) | ( ~1M) 1048576 | 2048 x 512 x 1 x 1 | Q3_K |
| 316 | blk.26.attn_k_norm.weight | Block 26 Attn_K_Norm (W) | ( 128) 128 | 128 x 1 x 1 x 1 | F32 |
| 317 | blk.26.attn_norm.weight | Block 26 Attention Normalization (W) | ( ~2K) 2048 | 2048 x 1 x 1 x 1 | F32 |
| 318 | blk.26.attn_output.weight | Block 26 Attention Output (W) | ( ~8M) 8388608 | 4096 x 2048 x 1 x 1 | Q4_K |
| 319 | blk.26.attn_q.weight | Block 26 Attention Query (W) | ( ~8M) 8388608 | 2048 x 4096 x 1 x 1 | Q3_K |
| 320 | blk.26.attn_q_norm.weight | Block 26 Attn_Q_Norm (W) | ( 128) 128 | 128 x 1 x 1 x 1 | F32 |
| 321 | blk.26.attn_v.weight | Block 26 Attention Value (W) | ( ~1M) 1048576 | 2048 x 512 x 1 x 1 | Q4_K |
| 322 | blk.26.ffn_down_exps.weight | Block 26 Ffn_Down_Exps (W) | (~201M) 201326592 | 768 x 2048 x 128 x 1 | Q4_K |
| 323 | blk.26.ffn_gate_exps.weight | Block 26 Ffn_Gate_Exps (W) | (~201M) 201326592 | 2048 x 768 x 128 x 1 | Q2_K |
| 324 | blk.26.ffn_gate_inp.weight | Block 26 Expert-Routing Layer For The Feed-Forward Network In Mixture Of Expert Models (W) | (~262K) 262144 | 2048 x 128 x 1 x 1 | F32 |
| 325 | blk.26.ffn_norm.weight | Block 26 Feed-Forward Network Normalization (W) | ( ~2K) 2048 | 2048 x 1 x 1 x 1 | F32 |
| 326 | blk.26.ffn_up_exps.weight | Block 26 Ffn_Up_Exps (W) | (~201M) 201326592 | 2048 x 768 x 128 x 1 | Q2_K |
- Total elements in blk.26: (~623M) 623120640
- Percentage of total elements: 2.04%
Block 27 Tensor Group : ~623M Elements
| T_ID | Tensor Layer Name | Human Friendly Tensor Layer Name | Elements | Shape | Type |
|---|---|---|---|---|---|
| 327 | blk.27.attn_k.weight | Block 27 Attention Key (W) | ( ~1M) 1048576 | 2048 x 512 x 1 x 1 | Q3_K |
| 328 | blk.27.attn_k_norm.weight | Block 27 Attn_K_Norm (W) | ( 128) 128 | 128 x 1 x 1 x 1 | F32 |
| 329 | blk.27.attn_norm.weight | Block 27 Attention Normalization (W) | ( ~2K) 2048 | 2048 x 1 x 1 x 1 | F32 |
| 330 | blk.27.attn_output.weight | Block 27 Attention Output (W) | ( ~8M) 8388608 | 4096 x 2048 x 1 x 1 | Q4_K |
| 331 | blk.27.attn_q.weight | Block 27 Attention Query (W) | ( ~8M) 8388608 | 2048 x 4096 x 1 x 1 | Q3_K |
| 332 | blk.27.attn_q_norm.weight | Block 27 Attn_Q_Norm (W) | ( 128) 128 | 128 x 1 x 1 x 1 | F32 |
| 333 | blk.27.attn_v.weight | Block 27 Attention Value (W) | ( ~1M) 1048576 | 2048 x 512 x 1 x 1 | Q4_K |
| 334 | blk.27.ffn_down_exps.weight | Block 27 Ffn_Down_Exps (W) | (~201M) 201326592 | 768 x 2048 x 128 x 1 | Q4_K |
| 335 | blk.27.ffn_gate_exps.weight | Block 27 Ffn_Gate_Exps (W) | (~201M) 201326592 | 2048 x 768 x 128 x 1 | Q3_K |
| 336 | blk.27.ffn_gate_inp.weight | Block 27 Expert-Routing Layer For The Feed-Forward Network In Mixture Of Expert Models (W) | (~262K) 262144 | 2048 x 128 x 1 x 1 | F32 |
| 337 | blk.27.ffn_norm.weight | Block 27 Feed-Forward Network Normalization (W) | ( ~2K) 2048 | 2048 x 1 x 1 x 1 | F32 |
| 338 | blk.27.ffn_up_exps.weight | Block 27 Ffn_Up_Exps (W) | (~201M) 201326592 | 2048 x 768 x 128 x 1 | Q3_K |
- Total elements in blk.27: (~623M) 623120640
- Percentage of total elements: 2.04%
Block 28 Tensor Group : ~623M Elements
| T_ID | Tensor Layer Name | Human Friendly Tensor Layer Name | Elements | Shape | Type |
|---|---|---|---|---|---|
| 339 | blk.28.attn_k.weight | Block 28 Attention Key (W) | ( ~1M) 1048576 | 2048 x 512 x 1 x 1 | Q3_K |
| 340 | blk.28.attn_k_norm.weight | Block 28 Attn_K_Norm (W) | ( 128) 128 | 128 x 1 x 1 x 1 | F32 |
| 341 | blk.28.attn_norm.weight | Block 28 Attention Normalization (W) | ( ~2K) 2048 | 2048 x 1 x 1 x 1 | F32 |
| 342 | blk.28.attn_output.weight | Block 28 Attention Output (W) | ( ~8M) 8388608 | 4096 x 2048 x 1 x 1 | Q4_K |
| 343 | blk.28.attn_q.weight | Block 28 Attention Query (W) | ( ~8M) 8388608 | 2048 x 4096 x 1 x 1 | Q3_K |
| 344 | blk.28.attn_q_norm.weight | Block 28 Attn_Q_Norm (W) | ( 128) 128 | 128 x 1 x 1 x 1 | F32 |
| 345 | blk.28.attn_v.weight | Block 28 Attention Value (W) | ( ~1M) 1048576 | 2048 x 512 x 1 x 1 | Q4_K |
| 346 | blk.28.ffn_down_exps.weight | Block 28 Ffn_Down_Exps (W) | (~201M) 201326592 | 768 x 2048 x 128 x 1 | Q4_K |
| 347 | blk.28.ffn_gate_exps.weight | Block 28 Ffn_Gate_Exps (W) | (~201M) 201326592 | 2048 x 768 x 128 x 1 | Q3_K |
| 348 | blk.28.ffn_gate_inp.weight | Block 28 Expert-Routing Layer For The Feed-Forward Network In Mixture Of Expert Models (W) | (~262K) 262144 | 2048 x 128 x 1 x 1 | F32 |
| 349 | blk.28.ffn_norm.weight | Block 28 Feed-Forward Network Normalization (W) | ( ~2K) 2048 | 2048 x 1 x 1 x 1 | F32 |
| 350 | blk.28.ffn_up_exps.weight | Block 28 Ffn_Up_Exps (W) | (~201M) 201326592 | 2048 x 768 x 128 x 1 | Q3_K |
- Total elements in blk.28: (~623M) 623120640
- Percentage of total elements: 2.04%
Block 29 Tensor Group : ~623M Elements
| T_ID | Tensor Layer Name | Human Friendly Tensor Layer Name | Elements | Shape | Type |
|---|---|---|---|---|---|
| 351 | blk.29.attn_k.weight | Block 29 Attention Key (W) | ( ~1M) 1048576 | 2048 x 512 x 1 x 1 | Q3_K |
| 352 | blk.29.attn_k_norm.weight | Block 29 Attn_K_Norm (W) | ( 128) 128 | 128 x 1 x 1 x 1 | F32 |
| 353 | blk.29.attn_norm.weight | Block 29 Attention Normalization (W) | ( ~2K) 2048 | 2048 x 1 x 1 x 1 | F32 |
| 354 | blk.29.attn_output.weight | Block 29 Attention Output (W) | ( ~8M) 8388608 | 4096 x 2048 x 1 x 1 | Q4_K |
| 355 | blk.29.attn_q.weight | Block 29 Attention Query (W) | ( ~8M) 8388608 | 2048 x 4096 x 1 x 1 | Q3_K |
| 356 | blk.29.attn_q_norm.weight | Block 29 Attn_Q_Norm (W) | ( 128) 128 | 128 x 1 x 1 x 1 | F32 |
| 357 | blk.29.attn_v.weight | Block 29 Attention Value (W) | ( ~1M) 1048576 | 2048 x 512 x 1 x 1 | Q4_K |
| 358 | blk.29.ffn_down_exps.weight | Block 29 Ffn_Down_Exps (W) | (~201M) 201326592 | 768 x 2048 x 128 x 1 | Q4_K |
| 359 | blk.29.ffn_gate_exps.weight | Block 29 Ffn_Gate_Exps (W) | (~201M) 201326592 | 2048 x 768 x 128 x 1 | Q3_K |
| 360 | blk.29.ffn_gate_inp.weight | Block 29 Expert-Routing Layer For The Feed-Forward Network In Mixture Of Expert Models (W) | (~262K) 262144 | 2048 x 128 x 1 x 1 | F32 |
| 361 | blk.29.ffn_norm.weight | Block 29 Feed-Forward Network Normalization (W) | ( ~2K) 2048 | 2048 x 1 x 1 x 1 | F32 |
| 362 | blk.29.ffn_up_exps.weight | Block 29 Ffn_Up_Exps (W) | (~201M) 201326592 | 2048 x 768 x 128 x 1 | Q3_K |
- Total elements in blk.29: (~623M) 623120640
- Percentage of total elements: 2.04%
Block 30 Tensor Group : ~623M Elements
| T_ID | Tensor Layer Name | Human Friendly Tensor Layer Name | Elements | Shape | Type |
|---|---|---|---|---|---|
| 363 | blk.30.attn_k.weight | Block 30 Attention Key (W) | ( ~1M) 1048576 | 2048 x 512 x 1 x 1 | Q3_K |
| 364 | blk.30.attn_k_norm.weight | Block 30 Attn_K_Norm (W) | ( 128) 128 | 128 x 1 x 1 x 1 | F32 |
| 365 | blk.30.attn_norm.weight | Block 30 Attention Normalization (W) | ( ~2K) 2048 | 2048 x 1 x 1 x 1 | F32 |
| 366 | blk.30.attn_output.weight | Block 30 Attention Output (W) | ( ~8M) 8388608 | 4096 x 2048 x 1 x 1 | Q4_K |
| 367 | blk.30.attn_q.weight | Block 30 Attention Query (W) | ( ~8M) 8388608 | 2048 x 4096 x 1 x 1 | Q3_K |
| 368 | blk.30.attn_q_norm.weight | Block 30 Attn_Q_Norm (W) | ( 128) 128 | 128 x 1 x 1 x 1 | F32 |
| 369 | blk.30.attn_v.weight | Block 30 Attention Value (W) | ( ~1M) 1048576 | 2048 x 512 x 1 x 1 | Q4_K |
| 370 | blk.30.ffn_down_exps.weight | Block 30 Ffn_Down_Exps (W) | (~201M) 201326592 | 768 x 2048 x 128 x 1 | Q4_K |
| 371 | blk.30.ffn_gate_exps.weight | Block 30 Ffn_Gate_Exps (W) | (~201M) 201326592 | 2048 x 768 x 128 x 1 | Q3_K |
| 372 | blk.30.ffn_gate_inp.weight | Block 30 Expert-Routing Layer For The Feed-Forward Network In Mixture Of Expert Models (W) | (~262K) 262144 | 2048 x 128 x 1 x 1 | F32 |
| 373 | blk.30.ffn_norm.weight | Block 30 Feed-Forward Network Normalization (W) | ( ~2K) 2048 | 2048 x 1 x 1 x 1 | F32 |
| 374 | blk.30.ffn_up_exps.weight | Block 30 Ffn_Up_Exps (W) | (~201M) 201326592 | 2048 x 768 x 128 x 1 | Q3_K |
- Total elements in blk.30: (~623M) 623120640
- Percentage of total elements: 2.04%
Block 31 Tensor Group : ~623M Elements
| T_ID | Tensor Layer Name | Human Friendly Tensor Layer Name | Elements | Shape | Type |
|---|---|---|---|---|---|
| 375 | blk.31.attn_k.weight | Block 31 Attention Key (W) | ( ~1M) 1048576 | 2048 x 512 x 1 x 1 | Q3_K |
| 376 | blk.31.attn_k_norm.weight | Block 31 Attn_K_Norm (W) | ( 128) 128 | 128 x 1 x 1 x 1 | F32 |
| 377 | blk.31.attn_norm.weight | Block 31 Attention Normalization (W) | ( ~2K) 2048 | 2048 x 1 x 1 x 1 | F32 |
| 378 | blk.31.attn_output.weight | Block 31 Attention Output (W) | ( ~8M) 8388608 | 4096 x 2048 x 1 x 1 | Q4_K |
| 379 | blk.31.attn_q.weight | Block 31 Attention Query (W) | ( ~8M) 8388608 | 2048 x 4096 x 1 x 1 | Q3_K |
| 380 | blk.31.attn_q_norm.weight | Block 31 Attn_Q_Norm (W) | ( 128) 128 | 128 x 1 x 1 x 1 | F32 |
| 381 | blk.31.attn_v.weight | Block 31 Attention Value (W) | ( ~1M) 1048576 | 2048 x 512 x 1 x 1 | Q4_K |
| 382 | blk.31.ffn_down_exps.weight | Block 31 Ffn_Down_Exps (W) | (~201M) 201326592 | 768 x 2048 x 128 x 1 | Q4_K |
| 383 | blk.31.ffn_gate_exps.weight | Block 31 Ffn_Gate_Exps (W) | (~201M) 201326592 | 2048 x 768 x 128 x 1 | Q3_K |
| 384 | blk.31.ffn_gate_inp.weight | Block 31 Expert-Routing Layer For The Feed-Forward Network In Mixture Of Expert Models (W) | (~262K) 262144 | 2048 x 128 x 1 x 1 | F32 |
| 385 | blk.31.ffn_norm.weight | Block 31 Feed-Forward Network Normalization (W) | ( ~2K) 2048 | 2048 x 1 x 1 x 1 | F32 |
| 386 | blk.31.ffn_up_exps.weight | Block 31 Ffn_Up_Exps (W) | (~201M) 201326592 | 2048 x 768 x 128 x 1 | Q3_K |
- Total elements in blk.31: (~623M) 623120640
- Percentage of total elements: 2.04%
Block 32 Tensor Group : ~623M Elements
| T_ID | Tensor Layer Name | Human Friendly Tensor Layer Name | Elements | Shape | Type |
|---|---|---|---|---|---|
| 387 | blk.32.attn_k.weight | Block 32 Attention Key (W) | ( ~1M) 1048576 | 2048 x 512 x 1 x 1 | Q3_K |
| 388 | blk.32.attn_k_norm.weight | Block 32 Attn_K_Norm (W) | ( 128) 128 | 128 x 1 x 1 x 1 | F32 |
| 389 | blk.32.attn_norm.weight | Block 32 Attention Normalization (W) | ( ~2K) 2048 | 2048 x 1 x 1 x 1 | F32 |
| 390 | blk.32.attn_output.weight | Block 32 Attention Output (W) | ( ~8M) 8388608 | 4096 x 2048 x 1 x 1 | Q4_K |
| 391 | blk.32.attn_q.weight | Block 32 Attention Query (W) | ( ~8M) 8388608 | 2048 x 4096 x 1 x 1 | Q3_K |
| 392 | blk.32.attn_q_norm.weight | Block 32 Attn_Q_Norm (W) | ( 128) 128 | 128 x 1 x 1 x 1 | F32 |
| 393 | blk.32.attn_v.weight | Block 32 Attention Value (W) | ( ~1M) 1048576 | 2048 x 512 x 1 x 1 | Q4_K |
| 394 | blk.32.ffn_down_exps.weight | Block 32 Ffn_Down_Exps (W) | (~201M) 201326592 | 768 x 2048 x 128 x 1 | Q4_K |
| 395 | blk.32.ffn_gate_exps.weight | Block 32 Ffn_Gate_Exps (W) | (~201M) 201326592 | 2048 x 768 x 128 x 1 | Q3_K |
| 396 | blk.32.ffn_gate_inp.weight | Block 32 Expert-Routing Layer For The Feed-Forward Network In Mixture Of Expert Models (W) | (~262K) 262144 | 2048 x 128 x 1 x 1 | F32 |
| 397 | blk.32.ffn_norm.weight | Block 32 Feed-Forward Network Normalization (W) | ( ~2K) 2048 | 2048 x 1 x 1 x 1 | F32 |
| 398 | blk.32.ffn_up_exps.weight | Block 32 Ffn_Up_Exps (W) | (~201M) 201326592 | 2048 x 768 x 128 x 1 | Q3_K |
- Total elements in blk.32: (~623M) 623120640
- Percentage of total elements: 2.04%
Block 33 Tensor Group : ~623M Elements
| T_ID | Tensor Layer Name | Human Friendly Tensor Layer Name | Elements | Shape | Type |
|---|---|---|---|---|---|
| 399 | blk.33.attn_k.weight | Block 33 Attention Key (W) | ( ~1M) 1048576 | 2048 x 512 x 1 x 1 | Q3_K |
| 400 | blk.33.attn_k_norm.weight | Block 33 Attn_K_Norm (W) | ( 128) 128 | 128 x 1 x 1 x 1 | F32 |
| 401 | blk.33.attn_norm.weight | Block 33 Attention Normalization (W) | ( ~2K) 2048 | 2048 x 1 x 1 x 1 | F32 |
| 402 | blk.33.attn_output.weight | Block 33 Attention Output (W) | ( ~8M) 8388608 | 4096 x 2048 x 1 x 1 | Q4_K |
| 403 | blk.33.attn_q.weight | Block 33 Attention Query (W) | ( ~8M) 8388608 | 2048 x 4096 x 1 x 1 | Q3_K |
| 404 | blk.33.attn_q_norm.weight | Block 33 Attn_Q_Norm (W) | ( 128) 128 | 128 x 1 x 1 x 1 | F32 |
| 405 | blk.33.attn_v.weight | Block 33 Attention Value (W) | ( ~1M) 1048576 | 2048 x 512 x 1 x 1 | Q4_K |
| 406 | blk.33.ffn_down_exps.weight | Block 33 Ffn_Down_Exps (W) | (~201M) 201326592 | 768 x 2048 x 128 x 1 | Q4_K |
| 407 | blk.33.ffn_gate_exps.weight | Block 33 Ffn_Gate_Exps (W) | (~201M) 201326592 | 2048 x 768 x 128 x 1 | Q3_K |
| 408 | blk.33.ffn_gate_inp.weight | Block 33 Expert-Routing Layer For The Feed-Forward Network In Mixture Of Expert Models (W) | (~262K) 262144 | 2048 x 128 x 1 x 1 | F32 |
| 409 | blk.33.ffn_norm.weight | Block 33 Feed-Forward Network Normalization (W) | ( ~2K) 2048 | 2048 x 1 x 1 x 1 | F32 |
| 410 | blk.33.ffn_up_exps.weight | Block 33 Ffn_Up_Exps (W) | (~201M) 201326592 | 2048 x 768 x 128 x 1 | Q3_K |
- Total elements in blk.33: (~623M) 623120640
- Percentage of total elements: 2.04%
Block 34 Tensor Group : ~623M Elements
| T_ID | Tensor Layer Name | Human Friendly Tensor Layer Name | Elements | Shape | Type |
|---|---|---|---|---|---|
| 411 | blk.34.attn_k.weight | Block 34 Attention Key (W) | ( ~1M) 1048576 | 2048 x 512 x 1 x 1 | Q3_K |
| 412 | blk.34.attn_k_norm.weight | Block 34 Attn_K_Norm (W) | ( 128) 128 | 128 x 1 x 1 x 1 | F32 |
| 413 | blk.34.attn_norm.weight | Block 34 Attention Normalization (W) | ( ~2K) 2048 | 2048 x 1 x 1 x 1 | F32 |
| 414 | blk.34.attn_output.weight | Block 34 Attention Output (W) | ( ~8M) 8388608 | 4096 x 2048 x 1 x 1 | Q4_K |
| 415 | blk.34.attn_q.weight | Block 34 Attention Query (W) | ( ~8M) 8388608 | 2048 x 4096 x 1 x 1 | Q3_K |
| 416 | blk.34.attn_q_norm.weight | Block 34 Attn_Q_Norm (W) | ( 128) 128 | 128 x 1 x 1 x 1 | F32 |
| 417 | blk.34.attn_v.weight | Block 34 Attention Value (W) | ( ~1M) 1048576 | 2048 x 512 x 1 x 1 | Q4_K |
| 418 | blk.34.ffn_down_exps.weight | Block 34 Ffn_Down_Exps (W) | (~201M) 201326592 | 768 x 2048 x 128 x 1 | Q4_K |
| 419 | blk.34.ffn_gate_exps.weight | Block 34 Ffn_Gate_Exps (W) | (~201M) 201326592 | 2048 x 768 x 128 x 1 | Q3_K |
| 420 | blk.34.ffn_gate_inp.weight | Block 34 Expert-Routing Layer For The Feed-Forward Network In Mixture Of Expert Models (W) | (~262K) 262144 | 2048 x 128 x 1 x 1 | F32 |
| 421 | blk.34.ffn_norm.weight | Block 34 Feed-Forward Network Normalization (W) | ( ~2K) 2048 | 2048 x 1 x 1 x 1 | F32 |
| 422 | blk.34.ffn_up_exps.weight | Block 34 Ffn_Up_Exps (W) | (~201M) 201326592 | 2048 x 768 x 128 x 1 | Q3_K |
- Total elements in blk.34: (~623M) 623120640
- Percentage of total elements: 2.04%
Block 35 Tensor Group : ~623M Elements
| T_ID | Tensor Layer Name | Human Friendly Tensor Layer Name | Elements | Shape | Type |
|---|---|---|---|---|---|
| 423 | blk.35.attn_k.weight | Block 35 Attention Key (W) | ( ~1M) 1048576 | 2048 x 512 x 1 x 1 | Q3_K |
| 424 | blk.35.attn_k_norm.weight | Block 35 Attn_K_Norm (W) | ( 128) 128 | 128 x 1 x 1 x 1 | F32 |
| 425 | blk.35.attn_norm.weight | Block 35 Attention Normalization (W) | ( ~2K) 2048 | 2048 x 1 x 1 x 1 | F32 |
| 426 | blk.35.attn_output.weight | Block 35 Attention Output (W) | ( ~8M) 8388608 | 4096 x 2048 x 1 x 1 | Q4_K |
| 427 | blk.35.attn_q.weight | Block 35 Attention Query (W) | ( ~8M) 8388608 | 2048 x 4096 x 1 x 1 | Q3_K |
| 428 | blk.35.attn_q_norm.weight | Block 35 Attn_Q_Norm (W) | ( 128) 128 | 128 x 1 x 1 x 1 | F32 |
| 429 | blk.35.attn_v.weight | Block 35 Attention Value (W) | ( ~1M) 1048576 | 2048 x 512 x 1 x 1 | Q4_K |
| 430 | blk.35.ffn_down_exps.weight | Block 35 Ffn_Down_Exps (W) | (~201M) 201326592 | 768 x 2048 x 128 x 1 | Q4_K |
| 431 | blk.35.ffn_gate_exps.weight | Block 35 Ffn_Gate_Exps (W) | (~201M) 201326592 | 2048 x 768 x 128 x 1 | Q3_K |
| 432 | blk.35.ffn_gate_inp.weight | Block 35 Expert-Routing Layer For The Feed-Forward Network In Mixture Of Expert Models (W) | (~262K) 262144 | 2048 x 128 x 1 x 1 | F32 |
| 433 | blk.35.ffn_norm.weight | Block 35 Feed-Forward Network Normalization (W) | ( ~2K) 2048 | 2048 x 1 x 1 x 1 | F32 |
| 434 | blk.35.ffn_up_exps.weight | Block 35 Ffn_Up_Exps (W) | (~201M) 201326592 | 2048 x 768 x 128 x 1 | Q3_K |
- Total elements in blk.35: (~623M) 623120640
- Percentage of total elements: 2.04%
Block 36 Tensor Group : ~623M Elements
| T_ID | Tensor Layer Name | Human Friendly Tensor Layer Name | Elements | Shape | Type |
|---|---|---|---|---|---|
| 435 | blk.36.attn_k.weight | Block 36 Attention Key (W) | ( ~1M) 1048576 | 2048 x 512 x 1 x 1 | Q3_K |
| 436 | blk.36.attn_k_norm.weight | Block 36 Attn_K_Norm (W) | ( 128) 128 | 128 x 1 x 1 x 1 | F32 |
| 437 | blk.36.attn_norm.weight | Block 36 Attention Normalization (W) | ( ~2K) 2048 | 2048 x 1 x 1 x 1 | F32 |
| 438 | blk.36.attn_output.weight | Block 36 Attention Output (W) | ( ~8M) 8388608 | 4096 x 2048 x 1 x 1 | Q4_K |
| 439 | blk.36.attn_q.weight | Block 36 Attention Query (W) | ( ~8M) 8388608 | 2048 x 4096 x 1 x 1 | Q3_K |
| 440 | blk.36.attn_q_norm.weight | Block 36 Attn_Q_Norm (W) | ( 128) 128 | 128 x 1 x 1 x 1 | F32 |
| 441 | blk.36.attn_v.weight | Block 36 Attention Value (W) | ( ~1M) 1048576 | 2048 x 512 x 1 x 1 | Q4_K |
| 442 | blk.36.ffn_down_exps.weight | Block 36 Ffn_Down_Exps (W) | (~201M) 201326592 | 768 x 2048 x 128 x 1 | Q4_K |
| 443 | blk.36.ffn_gate_exps.weight | Block 36 Ffn_Gate_Exps (W) | (~201M) 201326592 | 2048 x 768 x 128 x 1 | Q3_K |
| 444 | blk.36.ffn_gate_inp.weight | Block 36 Expert-Routing Layer For The Feed-Forward Network In Mixture Of Expert Models (W) | (~262K) 262144 | 2048 x 128 x 1 x 1 | F32 |
| 445 | blk.36.ffn_norm.weight | Block 36 Feed-Forward Network Normalization (W) | ( ~2K) 2048 | 2048 x 1 x 1 x 1 | F32 |
| 446 | blk.36.ffn_up_exps.weight | Block 36 Ffn_Up_Exps (W) | (~201M) 201326592 | 2048 x 768 x 128 x 1 | Q3_K |
- Total elements in blk.36: (~623M) 623120640
- Percentage of total elements: 2.04%
Block 37 Tensor Group : ~623M Elements
| T_ID | Tensor Layer Name | Human Friendly Tensor Layer Name | Elements | Shape | Type |
|---|---|---|---|---|---|
| 447 | blk.37.attn_k.weight | Block 37 Attention Key (W) | ( ~1M) 1048576 | 2048 x 512 x 1 x 1 | Q3_K |
| 448 | blk.37.attn_k_norm.weight | Block 37 Attn_K_Norm (W) | ( 128) 128 | 128 x 1 x 1 x 1 | F32 |
| 449 | blk.37.attn_norm.weight | Block 37 Attention Normalization (W) | ( ~2K) 2048 | 2048 x 1 x 1 x 1 | F32 |
| 450 | blk.37.attn_output.weight | Block 37 Attention Output (W) | ( ~8M) 8388608 | 4096 x 2048 x 1 x 1 | Q4_K |
| 451 | blk.37.attn_q.weight | Block 37 Attention Query (W) | ( ~8M) 8388608 | 2048 x 4096 x 1 x 1 | Q3_K |
| 452 | blk.37.attn_q_norm.weight | Block 37 Attn_Q_Norm (W) | ( 128) 128 | 128 x 1 x 1 x 1 | F32 |
| 453 | blk.37.attn_v.weight | Block 37 Attention Value (W) | ( ~1M) 1048576 | 2048 x 512 x 1 x 1 | Q4_K |
| 454 | blk.37.ffn_down_exps.weight | Block 37 Ffn_Down_Exps (W) | (~201M) 201326592 | 768 x 2048 x 128 x 1 | Q4_K |
| 455 | blk.37.ffn_gate_exps.weight | Block 37 Ffn_Gate_Exps (W) | (~201M) 201326592 | 2048 x 768 x 128 x 1 | Q3_K |
| 456 | blk.37.ffn_gate_inp.weight | Block 37 Expert-Routing Layer For The Feed-Forward Network In Mixture Of Expert Models (W) | (~262K) 262144 | 2048 x 128 x 1 x 1 | F32 |
| 457 | blk.37.ffn_norm.weight | Block 37 Feed-Forward Network Normalization (W) | ( ~2K) 2048 | 2048 x 1 x 1 x 1 | F32 |
| 458 | blk.37.ffn_up_exps.weight | Block 37 Ffn_Up_Exps (W) | (~201M) 201326592 | 2048 x 768 x 128 x 1 | Q3_K |
- Total elements in blk.37: (~623M) 623120640
- Percentage of total elements: 2.04%
Block 38 Tensor Group : ~623M Elements
| T_ID | Tensor Layer Name | Human Friendly Tensor Layer Name | Elements | Shape | Type |
|---|---|---|---|---|---|
| 459 | blk.38.attn_k.weight | Block 38 Attention Key (W) | ( ~1M) 1048576 | 2048 x 512 x 1 x 1 | Q3_K |
| 460 | blk.38.attn_k_norm.weight | Block 38 Attn_K_Norm (W) | ( 128) 128 | 128 x 1 x 1 x 1 | F32 |
| 461 | blk.38.attn_norm.weight | Block 38 Attention Normalization (W) | ( ~2K) 2048 | 2048 x 1 x 1 x 1 | F32 |
| 462 | blk.38.attn_output.weight | Block 38 Attention Output (W) | ( ~8M) 8388608 | 4096 x 2048 x 1 x 1 | Q4_K |
| 463 | blk.38.attn_q.weight | Block 38 Attention Query (W) | ( ~8M) 8388608 | 2048 x 4096 x 1 x 1 | Q3_K |
| 464 | blk.38.attn_q_norm.weight | Block 38 Attn_Q_Norm (W) | ( 128) 128 | 128 x 1 x 1 x 1 | F32 |
| 465 | blk.38.attn_v.weight | Block 38 Attention Value (W) | ( ~1M) 1048576 | 2048 x 512 x 1 x 1 | Q4_K |
| 466 | blk.38.ffn_down_exps.weight | Block 38 Ffn_Down_Exps (W) | (~201M) 201326592 | 768 x 2048 x 128 x 1 | Q4_K |
| 467 | blk.38.ffn_gate_exps.weight | Block 38 Ffn_Gate_Exps (W) | (~201M) 201326592 | 2048 x 768 x 128 x 1 | Q3_K |
| 468 | blk.38.ffn_gate_inp.weight | Block 38 Expert-Routing Layer For The Feed-Forward Network In Mixture Of Expert Models (W) | (~262K) 262144 | 2048 x 128 x 1 x 1 | F32 |
| 469 | blk.38.ffn_norm.weight | Block 38 Feed-Forward Network Normalization (W) | ( ~2K) 2048 | 2048 x 1 x 1 x 1 | F32 |
| 470 | blk.38.ffn_up_exps.weight | Block 38 Ffn_Up_Exps (W) | (~201M) 201326592 | 2048 x 768 x 128 x 1 | Q3_K |
- Total elements in blk.38: (~623M) 623120640
- Percentage of total elements: 2.04%
Block 39 Tensor Group : ~623M Elements
| T_ID | Tensor Layer Name | Human Friendly Tensor Layer Name | Elements | Shape | Type |
|---|---|---|---|---|---|
| 471 | blk.39.attn_k.weight | Block 39 Attention Key (W) | ( ~1M) 1048576 | 2048 x 512 x 1 x 1 | Q3_K |
| 472 | blk.39.attn_k_norm.weight | Block 39 Attn_K_Norm (W) | ( 128) 128 | 128 x 1 x 1 x 1 | F32 |
| 473 | blk.39.attn_norm.weight | Block 39 Attention Normalization (W) | ( ~2K) 2048 | 2048 x 1 x 1 x 1 | F32 |
| 474 | blk.39.attn_output.weight | Block 39 Attention Output (W) | ( ~8M) 8388608 | 4096 x 2048 x 1 x 1 | Q4_K |
| 475 | blk.39.attn_q.weight | Block 39 Attention Query (W) | ( ~8M) 8388608 | 2048 x 4096 x 1 x 1 | Q3_K |
| 476 | blk.39.attn_q_norm.weight | Block 39 Attn_Q_Norm (W) | ( 128) 128 | 128 x 1 x 1 x 1 | F32 |
| 477 | blk.39.attn_v.weight | Block 39 Attention Value (W) | ( ~1M) 1048576 | 2048 x 512 x 1 x 1 | Q4_K |
| 478 | blk.39.ffn_down_exps.weight | Block 39 Ffn_Down_Exps (W) | (~201M) 201326592 | 768 x 2048 x 128 x 1 | Q4_K |
| 479 | blk.39.ffn_gate_exps.weight | Block 39 Ffn_Gate_Exps (W) | (~201M) 201326592 | 2048 x 768 x 128 x 1 | Q3_K |
| 480 | blk.39.ffn_gate_inp.weight | Block 39 Expert-Routing Layer For The Feed-Forward Network In Mixture Of Expert Models (W) | (~262K) 262144 | 2048 x 128 x 1 x 1 | F32 |
| 481 | blk.39.ffn_norm.weight | Block 39 Feed-Forward Network Normalization (W) | ( ~2K) 2048 | 2048 x 1 x 1 x 1 | F32 |
| 482 | blk.39.ffn_up_exps.weight | Block 39 Ffn_Up_Exps (W) | (~201M) 201326592 | 2048 x 768 x 128 x 1 | Q3_K |
- Total elements in blk.39: (~623M) 623120640
- Percentage of total elements: 2.04%
Block 40 Tensor Group : ~623M Elements
| T_ID | Tensor Layer Name | Human Friendly Tensor Layer Name | Elements | Shape | Type |
|---|---|---|---|---|---|
| 483 | blk.40.attn_k.weight | Block 40 Attention Key (W) | ( ~1M) 1048576 | 2048 x 512 x 1 x 1 | Q3_K |
| 484 | blk.40.attn_k_norm.weight | Block 40 Attn_K_Norm (W) | ( 128) 128 | 128 x 1 x 1 x 1 | F32 |
| 485 | blk.40.attn_norm.weight | Block 40 Attention Normalization (W) | ( ~2K) 2048 | 2048 x 1 x 1 x 1 | F32 |
| 486 | blk.40.attn_output.weight | Block 40 Attention Output (W) | ( ~8M) 8388608 | 4096 x 2048 x 1 x 1 | Q4_K |
| 487 | blk.40.attn_q.weight | Block 40 Attention Query (W) | ( ~8M) 8388608 | 2048 x 4096 x 1 x 1 | Q3_K |
| 488 | blk.40.attn_q_norm.weight | Block 40 Attn_Q_Norm (W) | ( 128) 128 | 128 x 1 x 1 x 1 | F32 |
| 489 | blk.40.attn_v.weight | Block 40 Attention Value (W) | ( ~1M) 1048576 | 2048 x 512 x 1 x 1 | Q4_K |
| 490 | blk.40.ffn_down_exps.weight | Block 40 Ffn_Down_Exps (W) | (~201M) 201326592 | 768 x 2048 x 128 x 1 | Q4_K |
| 491 | blk.40.ffn_gate_exps.weight | Block 40 Ffn_Gate_Exps (W) | (~201M) 201326592 | 2048 x 768 x 128 x 1 | Q3_K |
| 492 | blk.40.ffn_gate_inp.weight | Block 40 Expert-Routing Layer For The Feed-Forward Network In Mixture Of Expert Models (W) | (~262K) 262144 | 2048 x 128 x 1 x 1 | F32 |
| 493 | blk.40.ffn_norm.weight | Block 40 Feed-Forward Network Normalization (W) | ( ~2K) 2048 | 2048 x 1 x 1 x 1 | F32 |
| 494 | blk.40.ffn_up_exps.weight | Block 40 Ffn_Up_Exps (W) | (~201M) 201326592 | 2048 x 768 x 128 x 1 | Q3_K |
- Total elements in blk.40: (~623M) 623120640
- Percentage of total elements: 2.04%
Block 41 Tensor Group : ~623M Elements
| T_ID | Tensor Layer Name | Human Friendly Tensor Layer Name | Elements | Shape | Type |
|---|---|---|---|---|---|
| 495 | blk.41.attn_k.weight | Block 41 Attention Key (W) | ( ~1M) 1048576 | 2048 x 512 x 1 x 1 | Q3_K |
| 496 | blk.41.attn_k_norm.weight | Block 41 Attn_K_Norm (W) | ( 128) 128 | 128 x 1 x 1 x 1 | F32 |
| 497 | blk.41.attn_norm.weight | Block 41 Attention Normalization (W) | ( ~2K) 2048 | 2048 x 1 x 1 x 1 | F32 |
| 498 | blk.41.attn_output.weight | Block 41 Attention Output (W) | ( ~8M) 8388608 | 4096 x 2048 x 1 x 1 | Q4_K |
| 499 | blk.41.attn_q.weight | Block 41 Attention Query (W) | ( ~8M) 8388608 | 2048 x 4096 x 1 x 1 | Q3_K |
| 500 | blk.41.attn_q_norm.weight | Block 41 Attn_Q_Norm (W) | ( 128) 128 | 128 x 1 x 1 x 1 | F32 |
| 501 | blk.41.attn_v.weight | Block 41 Attention Value (W) | ( ~1M) 1048576 | 2048 x 512 x 1 x 1 | Q4_K |
| 502 | blk.41.ffn_down_exps.weight | Block 41 Ffn_Down_Exps (W) | (~201M) 201326592 | 768 x 2048 x 128 x 1 | Q4_K |
| 503 | blk.41.ffn_gate_exps.weight | Block 41 Ffn_Gate_Exps (W) | (~201M) 201326592 | 2048 x 768 x 128 x 1 | Q3_K |
| 504 | blk.41.ffn_gate_inp.weight | Block 41 Expert-Routing Layer For The Feed-Forward Network In Mixture Of Expert Models (W) | (~262K) 262144 | 2048 x 128 x 1 x 1 | F32 |
| 505 | blk.41.ffn_norm.weight | Block 41 Feed-Forward Network Normalization (W) | ( ~2K) 2048 | 2048 x 1 x 1 x 1 | F32 |
| 506 | blk.41.ffn_up_exps.weight | Block 41 Ffn_Up_Exps (W) | (~201M) 201326592 | 2048 x 768 x 128 x 1 | Q3_K |
- Total elements in blk.41: (~623M) 623120640
- Percentage of total elements: 2.04%
Block 42 Tensor Group : ~623M Elements
| T_ID | Tensor Layer Name | Human Friendly Tensor Layer Name | Elements | Shape | Type |
|---|---|---|---|---|---|
| 507 | blk.42.attn_k.weight | Block 42 Attention Key (W) | ( ~1M) 1048576 | 2048 x 512 x 1 x 1 | Q3_K |
| 508 | blk.42.attn_k_norm.weight | Block 42 Attn_K_Norm (W) | ( 128) 128 | 128 x 1 x 1 x 1 | F32 |
| 509 | blk.42.attn_norm.weight | Block 42 Attention Normalization (W) | ( ~2K) 2048 | 2048 x 1 x 1 x 1 | F32 |
| 510 | blk.42.attn_output.weight | Block 42 Attention Output (W) | ( ~8M) 8388608 | 4096 x 2048 x 1 x 1 | Q4_K |
| 511 | blk.42.attn_q.weight | Block 42 Attention Query (W) | ( ~8M) 8388608 | 2048 x 4096 x 1 x 1 | Q3_K |
| 512 | blk.42.attn_q_norm.weight | Block 42 Attn_Q_Norm (W) | ( 128) 128 | 128 x 1 x 1 x 1 | F32 |
| 513 | blk.42.attn_v.weight | Block 42 Attention Value (W) | ( ~1M) 1048576 | 2048 x 512 x 1 x 1 | Q4_K |
| 514 | blk.42.ffn_down_exps.weight | Block 42 Ffn_Down_Exps (W) | (~201M) 201326592 | 768 x 2048 x 128 x 1 | Q4_K |
| 515 | blk.42.ffn_gate_exps.weight | Block 42 Ffn_Gate_Exps (W) | (~201M) 201326592 | 2048 x 768 x 128 x 1 | Q3_K |
| 516 | blk.42.ffn_gate_inp.weight | Block 42 Expert-Routing Layer For The Feed-Forward Network In Mixture Of Expert Models (W) | (~262K) 262144 | 2048 x 128 x 1 x 1 | F32 |
| 517 | blk.42.ffn_norm.weight | Block 42 Feed-Forward Network Normalization (W) | ( ~2K) 2048 | 2048 x 1 x 1 x 1 | F32 |
| 518 | blk.42.ffn_up_exps.weight | Block 42 Ffn_Up_Exps (W) | (~201M) 201326592 | 2048 x 768 x 128 x 1 | Q3_K |
- Total elements in blk.42: (~623M) 623120640
- Percentage of total elements: 2.04%
Block 43 Tensor Group : ~623M Elements
| T_ID | Tensor Layer Name | Human Friendly Tensor Layer Name | Elements | Shape | Type |
|---|---|---|---|---|---|
| 519 | blk.43.attn_k.weight | Block 43 Attention Key (W) | ( ~1M) 1048576 | 2048 x 512 x 1 x 1 | Q3_K |
| 520 | blk.43.attn_k_norm.weight | Block 43 Attn_K_Norm (W) | ( 128) 128 | 128 x 1 x 1 x 1 | F32 |
| 521 | blk.43.attn_norm.weight | Block 43 Attention Normalization (W) | ( ~2K) 2048 | 2048 x 1 x 1 x 1 | F32 |
| 522 | blk.43.attn_output.weight | Block 43 Attention Output (W) | ( ~8M) 8388608 | 4096 x 2048 x 1 x 1 | Q4_K |
| 523 | blk.43.attn_q.weight | Block 43 Attention Query (W) | ( ~8M) 8388608 | 2048 x 4096 x 1 x 1 | Q3_K |
| 524 | blk.43.attn_q_norm.weight | Block 43 Attn_Q_Norm (W) | ( 128) 128 | 128 x 1 x 1 x 1 | F32 |
| 525 | blk.43.attn_v.weight | Block 43 Attention Value (W) | ( ~1M) 1048576 | 2048 x 512 x 1 x 1 | Q4_K |
| 526 | blk.43.ffn_down_exps.weight | Block 43 Ffn_Down_Exps (W) | (~201M) 201326592 | 768 x 2048 x 128 x 1 | Q4_K |
| 527 | blk.43.ffn_gate_exps.weight | Block 43 Ffn_Gate_Exps (W) | (~201M) 201326592 | 2048 x 768 x 128 x 1 | Q3_K |
| 528 | blk.43.ffn_gate_inp.weight | Block 43 Expert-Routing Layer For The Feed-Forward Network In Mixture Of Expert Models (W) | (~262K) 262144 | 2048 x 128 x 1 x 1 | F32 |
| 529 | blk.43.ffn_norm.weight | Block 43 Feed-Forward Network Normalization (W) | ( ~2K) 2048 | 2048 x 1 x 1 x 1 | F32 |
| 530 | blk.43.ffn_up_exps.weight | Block 43 Ffn_Up_Exps (W) | (~201M) 201326592 | 2048 x 768 x 128 x 1 | Q3_K |
- Total elements in blk.43: (~623M) 623120640
- Percentage of total elements: 2.04%
Block 44 Tensor Group : ~623M Elements
| T_ID | Tensor Layer Name | Human Friendly Tensor Layer Name | Elements | Shape | Type |
|---|---|---|---|---|---|
| 531 | blk.44.attn_k.weight | Block 44 Attention Key (W) | ( ~1M) 1048576 | 2048 x 512 x 1 x 1 | Q3_K |
| 532 | blk.44.attn_k_norm.weight | Block 44 Attn_K_Norm (W) | ( 128) 128 | 128 x 1 x 1 x 1 | F32 |
| 533 | blk.44.attn_norm.weight | Block 44 Attention Normalization (W) | ( ~2K) 2048 | 2048 x 1 x 1 x 1 | F32 |
| 534 | blk.44.attn_output.weight | Block 44 Attention Output (W) | ( ~8M) 8388608 | 4096 x 2048 x 1 x 1 | Q4_K |
| 535 | blk.44.attn_q.weight | Block 44 Attention Query (W) | ( ~8M) 8388608 | 2048 x 4096 x 1 x 1 | Q3_K |
| 536 | blk.44.attn_q_norm.weight | Block 44 Attn_Q_Norm (W) | ( 128) 128 | 128 x 1 x 1 x 1 | F32 |
| 537 | blk.44.attn_v.weight | Block 44 Attention Value (W) | ( ~1M) 1048576 | 2048 x 512 x 1 x 1 | Q4_K |
| 538 | blk.44.ffn_down_exps.weight | Block 44 Ffn_Down_Exps (W) | (~201M) 201326592 | 768 x 2048 x 128 x 1 | Q4_K |
| 539 | blk.44.ffn_gate_exps.weight | Block 44 Ffn_Gate_Exps (W) | (~201M) 201326592 | 2048 x 768 x 128 x 1 | Q3_K |
| 540 | blk.44.ffn_gate_inp.weight | Block 44 Expert-Routing Layer For The Feed-Forward Network In Mixture Of Expert Models (W) | (~262K) 262144 | 2048 x 128 x 1 x 1 | F32 |
| 541 | blk.44.ffn_norm.weight | Block 44 Feed-Forward Network Normalization (W) | ( ~2K) 2048 | 2048 x 1 x 1 x 1 | F32 |
| 542 | blk.44.ffn_up_exps.weight | Block 44 Ffn_Up_Exps (W) | (~201M) 201326592 | 2048 x 768 x 128 x 1 | Q3_K |
- Total elements in blk.44: (~623M) 623120640
- Percentage of total elements: 2.04%
Block 45 Tensor Group : ~623M Elements
| T_ID | Tensor Layer Name | Human Friendly Tensor Layer Name | Elements | Shape | Type |
|---|---|---|---|---|---|
| 543 | blk.45.attn_k.weight | Block 45 Attention Key (W) | ( ~1M) 1048576 | 2048 x 512 x 1 x 1 | Q3_K |
| 544 | blk.45.attn_k_norm.weight | Block 45 Attn_K_Norm (W) | ( 128) 128 | 128 x 1 x 1 x 1 | F32 |
| 545 | blk.45.attn_norm.weight | Block 45 Attention Normalization (W) | ( ~2K) 2048 | 2048 x 1 x 1 x 1 | F32 |
| 546 | blk.45.attn_output.weight | Block 45 Attention Output (W) | ( ~8M) 8388608 | 4096 x 2048 x 1 x 1 | Q4_K |
| 547 | blk.45.attn_q.weight | Block 45 Attention Query (W) | ( ~8M) 8388608 | 2048 x 4096 x 1 x 1 | Q3_K |
| 548 | blk.45.attn_q_norm.weight | Block 45 Attn_Q_Norm (W) | ( 128) 128 | 128 x 1 x 1 x 1 | F32 |
| 549 | blk.45.attn_v.weight | Block 45 Attention Value (W) | ( ~1M) 1048576 | 2048 x 512 x 1 x 1 | Q4_K |
| 550 | blk.45.ffn_down_exps.weight | Block 45 Ffn_Down_Exps (W) | (~201M) 201326592 | 768 x 2048 x 128 x 1 | Q4_K |
| 551 | blk.45.ffn_gate_exps.weight | Block 45 Ffn_Gate_Exps (W) | (~201M) 201326592 | 2048 x 768 x 128 x 1 | Q3_K |
| 552 | blk.45.ffn_gate_inp.weight | Block 45 Expert-Routing Layer For The Feed-Forward Network In Mixture Of Expert Models (W) | (~262K) 262144 | 2048 x 128 x 1 x 1 | F32 |
| 553 | blk.45.ffn_norm.weight | Block 45 Feed-Forward Network Normalization (W) | ( ~2K) 2048 | 2048 x 1 x 1 x 1 | F32 |
| 554 | blk.45.ffn_up_exps.weight | Block 45 Ffn_Up_Exps (W) | (~201M) 201326592 | 2048 x 768 x 128 x 1 | Q3_K |
- Total elements in blk.45: (~623M) 623120640
- Percentage of total elements: 2.04%
Block 46 Tensor Group : ~623M Elements
| T_ID | Tensor Layer Name | Human Friendly Tensor Layer Name | Elements | Shape | Type |
|---|---|---|---|---|---|
| 555 | blk.46.attn_k.weight | Block 46 Attention Key (W) | ( ~1M) 1048576 | 2048 x 512 x 1 x 1 | Q3_K |
| 556 | blk.46.attn_k_norm.weight | Block 46 Attn_K_Norm (W) | ( 128) 128 | 128 x 1 x 1 x 1 | F32 |
| 557 | blk.46.attn_norm.weight | Block 46 Attention Normalization (W) | ( ~2K) 2048 | 2048 x 1 x 1 x 1 | F32 |
| 558 | blk.46.attn_output.weight | Block 46 Attention Output (W) | ( ~8M) 8388608 | 4096 x 2048 x 1 x 1 | Q4_K |
| 559 | blk.46.attn_q.weight | Block 46 Attention Query (W) | ( ~8M) 8388608 | 2048 x 4096 x 1 x 1 | Q3_K |
| 560 | blk.46.attn_q_norm.weight | Block 46 Attn_Q_Norm (W) | ( 128) 128 | 128 x 1 x 1 x 1 | F32 |
| 561 | blk.46.attn_v.weight | Block 46 Attention Value (W) | ( ~1M) 1048576 | 2048 x 512 x 1 x 1 | Q4_K |
| 562 | blk.46.ffn_down_exps.weight | Block 46 Ffn_Down_Exps (W) | (~201M) 201326592 | 768 x 2048 x 128 x 1 | Q4_K |
| 563 | blk.46.ffn_gate_exps.weight | Block 46 Ffn_Gate_Exps (W) | (~201M) 201326592 | 2048 x 768 x 128 x 1 | Q3_K |
| 564 | blk.46.ffn_gate_inp.weight | Block 46 Expert-Routing Layer For The Feed-Forward Network In Mixture Of Expert Models (W) | (~262K) 262144 | 2048 x 128 x 1 x 1 | F32 |
| 565 | blk.46.ffn_norm.weight | Block 46 Feed-Forward Network Normalization (W) | ( ~2K) 2048 | 2048 x 1 x 1 x 1 | F32 |
| 566 | blk.46.ffn_up_exps.weight | Block 46 Ffn_Up_Exps (W) | (~201M) 201326592 | 2048 x 768 x 128 x 1 | Q3_K |
- Total elements in blk.46: (~623M) 623120640
- Percentage of total elements: 2.04%
Block 47 Tensor Group : ~623M Elements
| T_ID | Tensor Layer Name | Human Friendly Tensor Layer Name | Elements | Shape | Type |
|---|---|---|---|---|---|
| 567 | blk.47.attn_k.weight | Block 47 Attention Key (W) | ( ~1M) 1048576 | 2048 x 512 x 1 x 1 | Q3_K |
| 568 | blk.47.attn_k_norm.weight | Block 47 Attn_K_Norm (W) | ( 128) 128 | 128 x 1 x 1 x 1 | F32 |
| 569 | blk.47.attn_norm.weight | Block 47 Attention Normalization (W) | ( ~2K) 2048 | 2048 x 1 x 1 x 1 | F32 |
| 570 | blk.47.attn_output.weight | Block 47 Attention Output (W) | ( ~8M) 8388608 | 4096 x 2048 x 1 x 1 | Q4_K |
| 571 | blk.47.attn_q.weight | Block 47 Attention Query (W) | ( ~8M) 8388608 | 2048 x 4096 x 1 x 1 | Q3_K |
| 572 | blk.47.attn_q_norm.weight | Block 47 Attn_Q_Norm (W) | ( 128) 128 | 128 x 1 x 1 x 1 | F32 |
| 573 | blk.47.attn_v.weight | Block 47 Attention Value (W) | ( ~1M) 1048576 | 2048 x 512 x 1 x 1 | Q4_K |
| 574 | blk.47.ffn_down_exps.weight | Block 47 Ffn_Down_Exps (W) | (~201M) 201326592 | 768 x 2048 x 128 x 1 | Q4_K |
| 575 | blk.47.ffn_gate_exps.weight | Block 47 Ffn_Gate_Exps (W) | (~201M) 201326592 | 2048 x 768 x 128 x 1 | Q3_K |
| 576 | blk.47.ffn_gate_inp.weight | Block 47 Expert-Routing Layer For The Feed-Forward Network In Mixture Of Expert Models (W) | (~262K) 262144 | 2048 x 128 x 1 x 1 | F32 |
| 577 | blk.47.ffn_norm.weight | Block 47 Feed-Forward Network Normalization (W) | ( ~2K) 2048 | 2048 x 1 x 1 x 1 | F32 |
| 578 | blk.47.ffn_up_exps.weight | Block 47 Ffn_Up_Exps (W) | (~201M) 201326592 | 2048 x 768 x 128 x 1 | Q3_K |
- Total elements in blk.47: (~623M) 623120640
- Percentage of total elements: 2.04%