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## Kernels
This page documents the kernels configuration utilities.
### kernelize[[transformers.kernelize]]
#### transformers.kernelize[[transformers.kernelize]]
[Source](https://github.com/huggingface/transformers/blob/vr_43838/src/transformers/integrations/hub_kernels.py#L551)
Temporarily register hidden kernel wrappers so `kernelize` can discover and replace them.
### KernelConfig[[transformers.KernelConfig]]
#### transformers.KernelConfig[[transformers.KernelConfig]]
[Source](https://github.com/huggingface/transformers/blob/vr_43838/src/transformers/utils/kernel_config.py#L101)
Kernel configuration class. This class is used to configure the kernel mapping for a model.
create_compatible_mappingtransformers.KernelConfig.create_compatible_mappinghttps://github.com/huggingface/transformers/blob/vr_43838/src/transformers/utils/kernel_config.py#L250[{"name": "model", "val": ""}, {"name": "compile", "val": " = False"}]
Transforms a simple kernel_mapping of the form:
{
"RMSNorm":
("kernels-community/layer_norm:LlamaRMSNorm", {"version": 1, "trust_remote_code": True}),
...
},
or for local path:
{
"RMSNorm":
"/home/user/liger_kernels:LigerRMSNorm",
...
},
into a nested mapping:
{
"RMSNorm": {
"cuda": {
Mode.INFERENCE: LayerRepository(
repo_id="kernels-community/layer_norm",
layer_name="LlamaRMSNorm",
version=1,
trust_remote_code=True,
)
}
}
}
or for local path:
{
"RMSNorm": {
"cuda": {
Mode.INFERENCE: LocalLayerRepository(
repo_path=Path("/home/user/liger_kernels"),
package_name="liger_kernels",
layer_name="LigerRMSNorm",
)
}
}
}
that's compatible with the kernels library.
The device is inferred from the model's parameters if not provided.
The Mode is inferred from the model's training state.
#### sanitize_kernel_mapping[[transformers.KernelConfig.sanitize_kernel_mapping]]
[Source](https://github.com/huggingface/transformers/blob/vr_43838/src/transformers/utils/kernel_config.py#L133)
Validates the kernel_mapping to ensure that:
1. Each layer_name in the mapping is registered in the model (i.e., the model contains a module with a matching kernel_layer_name).
2. Each kernel value is
- either a string of the form 'org/repo:layer_name' or a tuple with the same as string and a dict of {"revision"/"version/trust_remote_code": ...},
- or a dict mapping device types ("cuda", "rocm", "xpu", "npu") to such values as above.
3. Each device key in a dict is one of "cuda", "rocm", "xpu", or "npu".
5. Each trust remote code key must be a bool.
6. Each revision or version key must exist mutually exclusive if it has been passed explicitly.
7. Each repo_name is a valid repository and layer name in the format 'org/repo:layer_name' (i.e., a string containing both a slash and a colon).
8. If a local path is detected, it should be in the format '/abs/path:layer_name'. The absolute path must include the `package_name`, like "/home/user/layer_norm".
**Parameters:**
model : The model instance whose modules are checked for registered kernel_layer_name attributes.

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