make loss torch script compat
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@@ -13,72 +13,70 @@
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"""
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"""
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loss for top_k KL divergence
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loss for top_k KL divergence
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"""
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"""
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from typing import Optional
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import torch
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import torch
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@torch.jit.script
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def loss(
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def loss(
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student_logits,
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student_logits: torch.Tensor,
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target_token_ids,
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target_token_ids: torch.Tensor,
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target_logprobs,
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target_logprobs: torch.Tensor,
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target_mask,
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target_mask: torch.Tensor,
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num_items_in_batch: Optional[int] = None,
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num_items_in_batch: int = -1, # Use -1 to indicate "None"
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kd_temperature: float = 1.0,
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kd_temperature: float = 1.0,
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):
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) -> torch.Tensor:
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# teacher_mask: [B, teacher_seq_len, K], where 1 indicates a valid token and 0 indicates padding
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"""
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A KD loss function that is TorchScript-friendly.
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"""
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# Determine the teacher sequence length
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# Determine the teacher sequence length
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# _, teacher_seq_len, top_k = target_token_ids.shape
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# target_token_ids shape: [B, teacher_seq_len, K]
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# student_logits shape: [B, student_seq_len, vocab_size]
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teacher_seq_len = target_token_ids.shape[1]
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teacher_seq_len = target_token_ids.shape[1]
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# Slice student logits to match the teacher-provided sequence length
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# Slice student logits to match teacher-provided sequence length
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student_logits_for_kd = student_logits[
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student_logits_for_kd = student_logits[
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:, :teacher_seq_len, :
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:, :teacher_seq_len, :
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] # [B, teacher_seq_len, vocab_size]
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] # [B, teacher_seq_len, vocab_size]
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# Gather student logits for teacher's top-K tokens
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# Gather student logits for teacher's top-K tokens
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# shape -> [B, teacher_seq_len, K]
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student_logits_topk = torch.gather(
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student_logits_topk = torch.gather(
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student_logits_for_kd, dim=-1, index=target_token_ids
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student_logits_for_kd, dim=-1, index=target_token_ids
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)
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) # [B, teacher_seq_len, K]
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# Apply KD temperature to student’s logits:
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# Apply KD temperature to student’s logits
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# z_s(T) = z_s / T
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if kd_temperature != 1.0:
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if kd_temperature != 1.0:
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student_logits_topk = student_logits_topk / kd_temperature
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student_logits_topk = student_logits_topk / kd_temperature
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# Convert student top-k logits to logprobs
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# Convert student top-k logits to logprobs
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student_logprobs_topk = student_logits_topk - torch.logsumexp(
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student_logprobs_topk = student_logits_topk - torch.logsumexp(
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student_logits_topk, dim=-1, keepdim=True
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student_logits_topk, dim=-1, keepdim=True
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) # [B, seq_len, K]
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) # [B, teacher_seq_len, K]
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# Convert teacher_mask to boolean for indexing
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# Convert teacher_mask to boolean for indexing
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valid_mask = target_mask.bool()
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# In TorchScript, .bool() is sometimes unsupported, so we do:
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valid_mask = target_mask.to(torch.bool)
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# Prune tensors to only keep valid tokens
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# Prune tensors to only keep valid tokens
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# This will result in 1D arrays of only valid positions
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student_logprobs_topk = student_logprobs_topk[valid_mask]
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student_logprobs_topk = student_logprobs_topk[valid_mask] # [N_valid_tokens]
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target_logprobs = target_logprobs[valid_mask]
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target_logprobs = target_logprobs[valid_mask] # [N_valid_tokens]
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# Since teacher_logprobs are already normalized, just exponentiate to get probabilities
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# Convert teacher logprobs to probabilities
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teacher_probs = target_logprobs.exp()
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teacher_probs = target_logprobs.exp()
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# Compute forward KL:
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# Compute forward KL
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# KL = sum p^T_k (log p^T_k - log p^S_k), summed over all valid tokens.
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kd_loss_per_token = teacher_probs * (target_logprobs - student_logprobs_topk)
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kd_loss_per_token = teacher_probs * (target_logprobs - student_logprobs_topk)
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kd_loss = kd_loss_per_token.sum()
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kd_loss = kd_loss_per_token.sum()
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# 9) Multiply by T^2 (classical KD scaling)
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# Multiply by T^2 (classical KD scaling)
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if kd_temperature != 1.0:
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if kd_temperature != 1.0:
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kd_loss = kd_loss * (kd_temperature**2)
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kd_loss = kd_loss * (kd_temperature**2)
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# Normalize by number of items or mean over valid tokens
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# Normalize by number of items (if provided) or by valid tokens
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if num_items_in_batch is not None:
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if num_items_in_batch > 0:
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# If you know how many items should be considered in the batch
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kd_loss = kd_loss / float(num_items_in_batch)
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kd_loss = kd_loss / num_items_in_batch
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else:
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else:
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# Otherwise, just average over all valid tokens
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# Fall back to average over valid tokens
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kd_loss = kd_loss / kd_loss_per_token.size(0)
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kd_loss = kd_loss / float(kd_loss_per_token.size(0))
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return kd_loss
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return kd_loss
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@@ -16,8 +16,6 @@
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KD trainer
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KD trainer
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"""
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"""
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import torch
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from axolotl.core.trainers.base import AxolotlTrainer
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from axolotl.core.trainers.base import AxolotlTrainer
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from .topk_logprob.forward_kl import loss as topk_kd_loss
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from .topk_logprob.forward_kl import loss as topk_kd_loss
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@@ -106,6 +104,4 @@ class AxolotlKDTrainer(AxolotlTrainer):
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if self.args.average_tokens_across_devices and self.model_accepts_loss_kwargs:
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if self.args.average_tokens_across_devices and self.model_accepts_loss_kwargs:
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loss *= self.accelerator.num_processes
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loss *= self.accelerator.num_processes
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torch.cuda.empty_cache()
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return (loss, outputs) if return_outputs else loss
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return (loss, outputs) if return_outputs else loss
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