Adding a model requires few steps:
- Convert the model to GGUF
- Define the model architecture in
llama.cpp
- Build the GGML graph implementation
After following these steps, you can open PR.
Also, it is important to check that the examples and main ggml backends (CUDA, METAL, CPU) are working with the new architecture, especially:
This step is done in python with a convert
script using the gguf library.
Depending on the model architecture, you can use either convert.py or convert-hf-to-gguf.py.
The convert script reads the model configuration, tokenizer, tensor names+data and converts them to GGUF metadata and tensors.
The required steps to implement for an HF model are:
- Define the model
Model.register
annotation in a newModel
subclass, example:
@Model.register("MyModelForCausalLM")
class MyModel(Model):
model_arch = gguf.MODEL_ARCH.GROK
- Define the layout of the GGUF tensors in constants.py
Add an enum entry in MODEL_ARCH
, the model human friendly name in MODEL_ARCH_NAMES
and the GGUF tensor names in MODEL_TENSORS
.
Example for falcon
model:
MODEL_ARCH.FALCON: [
MODEL_TENSOR.TOKEN_EMBD,
MODEL_TENSOR.OUTPUT_NORM,
MODEL_TENSOR.OUTPUT,
MODEL_TENSOR.ATTN_NORM,
MODEL_TENSOR.ATTN_NORM_2,
MODEL_TENSOR.ATTN_QKV,
MODEL_TENSOR.ATTN_OUT,
MODEL_TENSOR.FFN_DOWN,
MODEL_TENSOR.FFN_UP,
]
- Map the original tensor names to the standardize equivalent in GGUF
As a general rule, before adding a new tensor name to GGUF, be sure the equivalent naming does not already exist.
Once you have found the GGUF tensor name equivalent, add it to the tensor_mapping.py file.
If the tensor name is part of a repetitive layer/block, the key word bid
substitutes it.
Example for the normalization tensor in attention layers:
block_mappings_cfg: dict[MODEL_TENSOR, tuple[str, ...]] = {
# Attention norm
MODEL_TENSOR.ATTN_NORM: (
"gpt_neox.layers.{bid}.input_layernorm", # gptneox
"transformer.h.{bid}.ln_1", # gpt2 gpt-j refact qwen
"transformer.blocks.{bid}.norm_1", # mpt
...
)
}
transformer.blocks.{bid}.norm_1
will be mapped to blk.{bid}.attn_norm
in GGUF.
Depending on the model configuration, tokenizer, code and tensors layout, you will have to override:
Model#set_gguf_parameters
Model#set_vocab
Model#write_tensors
NOTE: Tensor names must end with .weight
suffix, that is the convention and several tools like quantize
expect this to proceed the weights.
The model params and tensors layout must be defined in llama.cpp
:
- Define a new
llm_arch
- Define the tensors layout in
LLM_TENSOR_NAMES
- Add any non standard metadata in
llm_load_hparams
- Create the tensors for inference in
llm_load_tensors
- If the model has a RoPE operation, add the rope type in
llama_rope_type
NOTE: The dimensions in ggml
are typically in the reverse order of the pytorch
dimensions.
This is the funniest part, you have to provide the inference graph implementation of the new model architecture in llama_build_graph
.
Have a look to existing implementation like build_llama
, build_dbrx
or build_bert
.
When implementing a new graph, please note that the underlying ggml
backends might not support them all, support of missing backend operations can be added in another PR.
Note: to debug the inference graph: you can use eval-callback.
https://github.com/ggerganov/ggml/blob/master/docs/gguf.md
- YaRN RoPE scaling ggerganov#2268
- support Baichuan serial models ggerganov#3009
- support attention bias ggerganov#4283
- Mixtral support ggerganov#4406
- BERT embeddings ggerganov#5423
- Grok-1 support ggerganov#6204
- Command R Plus support ggerganov#6491
- support arch DBRX ggerganov#6515
- How to convert HuggingFace model to GGUF format ggerganov#2948