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| import json
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| from contextlib import nullcontext
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| from typing import TYPE_CHECKING, Literal, Optional
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| import torch
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| from transformers.integrations import is_deepspeed_zero3_enabled
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| from ...extras.packages import is_requests_available
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| if is_requests_available():
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| import requests
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| if TYPE_CHECKING:
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| from transformers import PreTrainedModel
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| from trl import AutoModelForCausalLMWithValueHead
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| def get_rewards_from_server(server_url: str, messages: list[str]) -> list["torch.Tensor"]:
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| r"""Get reward scores from the API server."""
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| headers = {"Content-Type": "application/json"}
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| payload = {"model": "model", "messages": messages}
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| response = requests.post(server_url, json=payload, headers=headers)
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| rewards = json.loads(response.text)["scores"]
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| return torch.Tensor(rewards)
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| def replace_model(model: "AutoModelForCausalLMWithValueHead", target: Literal["default", "reward"]) -> None:
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| r"""Replace the default/reward modules in the model. The model is already unwrapped."""
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| v_head_layer = model.v_head.summary
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| if is_deepspeed_zero3_enabled():
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| import deepspeed
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| params = [v_head_layer.weight, v_head_layer.bias]
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| context_maybe_zero3 = deepspeed.zero.GatheredParameters(params, modifier_rank=0)
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| else:
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| context_maybe_zero3 = nullcontext()
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| model.pretrained_model.set_adapter(target)
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| with context_maybe_zero3:
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| if target == "reward":
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| setattr(model, "default_head_weight", v_head_layer.weight.data.detach().clone())
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| setattr(model, "default_head_bias", v_head_layer.bias.data.detach().clone())
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| device = v_head_layer.weight.device
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| v_head_layer.weight.data = model.get_buffer(f"{target}_head_weight").detach().clone().to(device)
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| v_head_layer.bias.data = model.get_buffer(f"{target}_head_bias").detach().clone().to(device)
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| def dump_layernorm(model: "PreTrainedModel") -> dict[str, "torch.Tensor"]:
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| r"""Dump the layernorm parameters in the model. The model is already unwrapped (and gathered)."""
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| layer_norm_params = {}
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| for name, param in model.named_parameters():
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| if param.data.dtype == torch.float32:
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| layer_norm_params[name] = param.data.detach().clone()
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| param.data = param.data.to(model.config.torch_dtype)
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| return layer_norm_params
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| def restore_layernorm(model: "PreTrainedModel", layernorm_params: Optional[dict[str, "torch.Tensor"]] = None) -> None:
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| r"""Restore the layernorm parameters in the model. The model is already unwrapped (and gathered)."""
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| for name, param in model.named_parameters():
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| if name in layernorm_params:
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| param.data = layernorm_params[name]
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