feat: support unmask only assistant region (gemma3n for now)

This commit is contained in:
NanoCode012
2025-07-21 17:43:26 +07:00
parent 312832e1fe
commit 213446e078

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@@ -5,7 +5,7 @@ from typing import Optional
from PIL import Image, ImageOps
from PIL.Image import Resampling
from torch import Tensor
from torch import Tensor, zeros_like
from transformers import ProcessorMixin
from transformers.image_utils import load_image
@@ -208,9 +208,18 @@ class ProcessingStrategy:
return processed_examples
def _mask_non_assistant(self, labels: Tensor) -> Tensor:
"""
Mask non assistant regions to -100.
To be implemented per subclass.
"""
return labels
def process_labels(self, input_ids: Tensor) -> Tensor:
labels = input_ids.clone()
labels = self._mask_non_assistant(labels)
# The labels are the input_ids, and we mask the padding tokens in the loss computation
labels[labels == self.processor.tokenizer.pad_token_id] = -100
@@ -267,8 +276,81 @@ class Gemma3ProcessingStrategy(ProcessingStrategy):
class Gemma3nProcessingStrategy(ProcessingStrategy):
"""Processing Strategy class for Gemma3n"""
def _mask_non_assistant(self, labels: Tensor) -> Tensor:
def _find_token_sequence(label, start_pos, token_sequence):
"""Check if token_sequence appears at start_pos in label"""
if start_pos + len(token_sequence) > len(label):
return False
if label[start_pos] != token_sequence[0]:
return False
return (
label[start_pos : start_pos + len(token_sequence)].tolist()
== token_sequence
)
def _find_assistant_end(label, start_pos, assistant_end_tok, mask, i):
"""
Find the end of assistant response and update mask accordingly
Returns new position to continue from and whether the end seq is found
"""
k = start_pos
while k < len(label):
if not _find_token_sequence(label, k, assistant_end_tok):
mask[i][k] = 1
k += 1
continue
return k + len(assistant_end_tok), True
return k, False
mask = zeros_like(labels)
assistant_start_str = "<start_of_turn>model"
assistant_end_str = "<end_of_turn>"
include_assistant_start_tok = False
include_assistant_end_tok = True
# str to tokens
assistant_start_tok = self.processor.tokenizer.encode(
assistant_start_str, add_special_tokens=False
)
assistant_end_tok = self.processor.tokenizer.encode(
assistant_end_str, add_special_tokens=False
)
for i, label in enumerate(labels):
j = 0
# while loop through each tok index in labels[i]
while j < len(label):
# Check until match start seq
if not _find_token_sequence(label, j, assistant_start_tok):
j += 1
continue
if include_assistant_start_tok:
mask[i][j : j + len(assistant_start_tok)] = 1
# Find where the assistant response ends
start_of_content = j + len(assistant_start_tok)
end_pos, found_end_seq = _find_assistant_end(
label, start_of_content, assistant_end_tok, mask, i
)
# Include end token if requested
if include_assistant_end_tok and found_end_seq:
mask[i][end_pos - len(assistant_end_tok) : end_pos] = 1
j = end_pos
labels[i][mask[i] == 0] = -100
return labels
def process_labels(self, input_ids):
labels = input_ids.clone()
labels = self._mask_non_assistant(labels)
# Follows https://colab.research.google.com/github/huggingface/huggingface-gemma-recipes/blob/main/notebooks/fine_tune_gemma3n_on_t4.ipynb
labels[labels == self.processor.tokenizer.pad_token_id] = -100