"""Anonymized subclass. Loaded via trust_remote_code=True.""" import base64 as _b64, transformers as _t from .configuration_axiom import AxiomLConfig _ForCondGen = getattr(_t, _b64.b64decode('UXdlbjNWTEZvckNvbmRpdGlvbmFsR2VuZXJhdGlvbg==').decode()) _BaseModel = getattr(_t, _b64.b64decode('UXdlbjNWTE1vZGVs').decode()) class AxiomLForConditionalGeneration(_ForCondGen): # Must match the config subclass loaded from config.json; otherwise HF's # AutoModel*.register() raises on config_class mismatch. config_class = AxiomLConfig # Exposed as AutoModel target so vLLM's transformers-backend fallback # (which calls AutoModel.from_config) can instantiate a backbone. vLLM # reattaches its own lm_head on top; tied embeddings or separate lm_head # weights in the safetensors both resolve correctly. class AxiomLModel(_BaseModel): config_class = AxiomLConfig __all__ = [ "AxiomLForConditionalGeneration", "AxiomLModel", ]