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unslothai--unsloth/studio/backend/utils/datasets/chat_templates.py
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chore: import upstream snapshot with attribution
2026-07-13 12:59:56 +08:00

443 lines
16 KiB
Python

# SPDX-License-Identifier: AGPL-3.0-only
# Copyright 2026-present the Unsloth AI Inc. team. All rights reserved. See /studio/LICENSE.AGPL-3.0
"""Chat template utilities for dataset processing.
Apply chat templates to datasets and generate dataset info summaries.
"""
from .format_detection import detect_dataset_format, detect_multimodal_dataset, detect_custom_format_heuristic
from .iterable import is_streaming_dataset
from .model_mappings import MODEL_TO_TEMPLATE_MAPPER
from loggers import get_logger
logger = get_logger(__name__)
DEFAULT_ALPACA_TEMPLATE = """Below is an instruction that describes a task, paired with an input that provides further context. Write a response that appropriately completes the request.
### Instruction:
{}
### Input:
{}
### Response:
{}"""
def _is_mlx_runtime() -> bool:
try:
from unsloth_zoo.mlx import is_mlx_available
except ImportError:
return False
return is_mlx_available()
def _chat_template_kwargs() -> dict:
if not _is_mlx_runtime():
return {}
return {
"patch_saving": False,
"use_zoo_tokenizer_patch": True,
}
def get_tokenizer_chat_template(tokenizer, model_name):
"""Apply a chat template to the tokenizer, using Unsloth's
get_chat_template when the model class name is in the mapper.
Args:
tokenizer: HuggingFace tokenizer
model_name: Model class name (e.g., "Gemma3ForCausalLM")
Returns:
tokenizer with the chat template applied
"""
try:
from unsloth.chat_templates import get_chat_template
except ImportError:
return tokenizer
model_name_lower = model_name.lower()
matched_template = None
if model_name_lower in MODEL_TO_TEMPLATE_MAPPER:
matched_template = MODEL_TO_TEMPLATE_MAPPER[model_name_lower]
logger.info(f"📝 Applying Unsloth chat template: {matched_template}")
try:
tokenizer = get_chat_template(
tokenizer,
chat_template = matched_template,
**_chat_template_kwargs(),
)
except Exception as e:
logger.info(f"⚠️ Failed to apply Unsloth template '{matched_template}': {e}")
logger.info(f" Falling back to tokenizer's default chat template")
else:
has_chat_template = (
hasattr(tokenizer, 'chat_template')
and tokenizer.chat_template is not None
)
if has_chat_template:
logger.info(f"📝 Using tokenizer's own chat template (no Unsloth template match)")
else:
# Base model with no chat template: apply default ChatML.
logger.info(f"📝 No chat template found — applying default ChatML template (base model)")
try:
tokenizer = get_chat_template(
tokenizer,
chat_template = "chatml",
**_chat_template_kwargs(),
)
except Exception as e:
logger.info(f"⚠️ Failed to apply default ChatML template: {e}")
logger.info(f" Falling back to tokenizer as-is")
return tokenizer
def get_dataset_info_summary(dataset_info):
"""Return a human-readable summary for UI display."""
detected_format = dataset_info["detected_format"]
final_format = dataset_info["final_format"]
format_descriptions = {
"alpaca": "Alpaca format (instruction/input/output)",
"sharegpt": "ShareGPT format (needs standardization)",
"chatml_messages": "ChatML format (messages column) - OpenAI compatible",
"chatml_conversations": "ChatML format (conversations column) - HuggingFace standard",
"unknown": "Unknown format"
}
return {
"detected_format": detected_format,
"final_format": final_format,
"detected_description": format_descriptions.get(detected_format, "Unknown"),
"final_description": format_descriptions.get(final_format, "Unknown"),
"chat_column": dataset_info["chat_column"],
"is_standardized": dataset_info["is_standardized"],
"warnings": dataset_info.get("warnings", []),
"ready_for_training": dataset_info["is_standardized"] and final_format != "unknown"
}
def apply_chat_template_to_dataset(
dataset_info,
tokenizer,
model_name = None,
custom_prompt_template = None,
add_eos_token = False,
remove_bos_prefix = False,
custom_format_mapping = None,
auto_detect_mapping = True,
batch_size = 1000,
num_proc = None,
progress_callback = None,
):
"""Apply the chat template to a dataset based on its format.
Args:
dataset_info: Output from format_dataset() with metadata
tokenizer: Tokenizer with chat template
custom_prompt_template: Optional string template for custom formatting
add_eos_token: If True, append tokenizer.eos_token to each text
remove_bos_prefix: If True, remove '<bos>' prefix (Gemma, etc.)
custom_format_mapping: Dict mapping custom columns to standard format
batch_size: Batch size for processing
num_proc: Number of processes
Returns:
dict with dataset, success status, warnings, and errors
"""
dataset = dataset_info["dataset"]
final_format = dataset_info["final_format"]
chat_column = dataset_info["chat_column"]
is_standardized = dataset_info["is_standardized"]
warnings = list(dataset_info.get("warnings", []))
errors = []
eos_token = ""
if add_eos_token:
if hasattr(tokenizer, 'eos_token') and tokenizer.eos_token:
eos_token = tokenizer.eos_token
else:
warnings.append("add_eos_token=True but tokenizer has no eos_token")
# CUSTOM FORMAT MAPPING (for non-standard datasets)
if final_format == "unknown":
if custom_format_mapping is None and auto_detect_mapping:
# Skip if format_dataset already tried and failed.
if not dataset_info.get("auto_detection_attempted", False):
custom_format_mapping = detect_custom_format_heuristic(dataset)
if custom_format_mapping:
warnings.append(f"Auto-detected column mapping: {custom_format_mapping}")
else:
errors.append("Could not auto-detect format mapping")
return {
"dataset": dataset,
"success": False,
"warnings": warnings,
"errors": errors
}
else:
# Already failed once in format_dataset; don't retry.
errors.append(
"Format remains unknown after detection attempts. "
"Please provide custom_format_mapping to specify column roles manually."
)
return {
"dataset": dataset,
"success": False,
"warnings": warnings,
"errors": errors
}
if custom_format_mapping:
warnings.append(f"Applying custom format mapping: {custom_format_mapping}")
is_user_provided = dataset_info.get("custom_format_mapping") is not None
def _apply_custom_mapping(examples):
conversations = []
num_examples = len(examples[list(examples.keys())[0]])
# Preserve unmapped columns only if auto-detected.
preserved_columns = {}
if not is_user_provided:
all_columns = set(examples.keys())
mapped_columns = set(custom_format_mapping.keys())
non_mapped_columns = all_columns - mapped_columns
for col in non_mapped_columns:
preserved_columns[col] = examples[col]
for i in range(num_examples):
convo = []
role_order = ['system', 'user', 'assistant']
for target_role in role_order:
for col_name, role in custom_format_mapping.items():
if role == target_role and col_name in examples:
content = examples[col_name][i]
if is_user_provided:
# User-mapped: include even if empty.
convo.append({"role": role, "content": str(content) if content else ""})
else:
# Auto-detected: skip empty.
if content and str(content).strip():
convo.append({"role": role, "content": str(content)})
conversations.append(convo)
result = {"conversations": conversations}
if not is_user_provided:
result.update(preserved_columns)
return result
try:
# Mirror the other call sites: omit eager-only kwargs (num_proc/desc)
# for streaming IterableDatasets, whose .map() rejects them.
custom_map_kwargs = {"batched": True, "batch_size": batch_size}
if not is_streaming_dataset(dataset):
custom_map_kwargs["desc"] = "Applying custom ChatML mapping"
dataset = dataset.map(_apply_custom_mapping, **custom_map_kwargs)
# Update to use conversations format
final_format = "chatml_conversations"
chat_column = "conversations"
is_standardized = True
warnings.append("Successfully converted to ChatML format via custom mapping")
except Exception as e:
errors.append(f"Custom format mapping failed: {e}")
return {
"dataset": dataset,
"success": False,
"warnings": warnings,
"errors": errors
}
# ALPACA FORMAT
if final_format == "alpaca":
# Set alpaca chat template (if unset) so it's saved for inference.
if not (hasattr(tokenizer, 'chat_template') and tokenizer.chat_template):
try:
from unsloth.chat_templates import get_chat_template
tokenizer = get_chat_template(
tokenizer,
chat_template = "alpaca",
**_chat_template_kwargs(),
)
logger.info(f"📝 Set alpaca chat template on tokenizer for model saving")
except Exception as e:
logger.info(f"⚠️ Could not set alpaca template on tokenizer: {e}")
def _format_alpaca_custom(examples):
texts = []
for i in range(len(examples["instruction"])):
fields = {
"instruction": examples["instruction"][i],
"input": examples.get("input", [""] * len(examples["instruction"]))[i],
"output": examples["output"][i]
}
try:
text = DEFAULT_ALPACA_TEMPLATE.format(fields["instruction"], fields["input"], fields["output"])
text += eos_token
texts.append(text)
except KeyError as e:
errors.append(f"Custom template missing field: {e}")
texts.append("")
return {"text": texts}
formatted_fn = _format_alpaca_custom
try:
dataset_map_kwargs = {
'batched': True,
'batch_size': batch_size,
}
is_iterable = is_streaming_dataset(dataset)
if not is_iterable:
from utils.hardware import dataset_map_num_proc
if num_proc is None or type(num_proc) is not int:
num_proc = dataset_map_num_proc()
else:
num_proc = dataset_map_num_proc(num_proc)
dataset_map_kwargs['num_proc'] = num_proc
dataset_map_kwargs['desc'] = "Applying template to Alpaca format"
formatted_dataset = dataset.map(formatted_fn, **dataset_map_kwargs)
return {
"dataset": formatted_dataset,
"success": True,
"warnings": warnings,
"errors": errors
}
except Exception as e:
errors.append(f"Failed to format Alpaca dataset: {e}")
return {
"dataset": dataset,
"success": False,
"warnings": warnings,
"errors": errors
}
# CHATML FORMATS
elif final_format in ["chatml_messages", "chatml_conversations"]:
if not is_standardized:
warnings.append("Dataset may not be fully standardized")
# Apply Unsloth chat template if the model matches.
if model_name:
tokenizer = get_tokenizer_chat_template(tokenizer, model_name)
def _format_chatml(examples):
convos = examples[chat_column]
texts = []
for convo in convos:
try:
text = tokenizer.apply_chat_template(
convo,
tokenize = False,
add_generation_prompt = False
)
if remove_bos_prefix:
text = text.removeprefix('<bos>')
text += eos_token
texts.append(text)
except Exception as e:
if len(texts) == 0:
warnings.append(f"Chat template failed: {e}")
texts.append("")
return {"text": texts}
try:
is_iterable = is_streaming_dataset(dataset)
dataset_map_kwargs = {
'batched': True,
'batch_size': batch_size,
}
if not is_iterable:
from utils.hardware import dataset_map_num_proc
if num_proc is None or type(num_proc) is not int:
num_proc = dataset_map_num_proc()
else:
num_proc = dataset_map_num_proc(num_proc)
dataset_map_kwargs['num_proc'] = num_proc
dataset_map_kwargs['desc'] = f"Applying chat template to {final_format}"
# Monitor dataset.map() tqdm progress and relay it.
_tqdm_monitor_stop = None
if progress_callback and not is_iterable:
import threading
from tqdm.auto import tqdm as _tqdm_cls
_tqdm_monitor_stop = threading.Event()
_total = len(dataset) if hasattr(dataset, "__len__") else 0
_desc = f"Applying chat template to {final_format}"
def _poll_tqdm():
while not _tqdm_monitor_stop.is_set():
for bar in list(getattr(_tqdm_cls, "_instances", set())):
try:
n = bar.n or 0
total = bar.total or _total
if total > 0 and n > 0:
pct = min(int(n * 100 / total), 100)
progress_callback(
status_message = f"{_desc}... {pct}% ({n:,}/{total:,})"
)
except (AttributeError, ReferenceError):
pass
_tqdm_monitor_stop.wait(3)
threading.Thread(target = _poll_tqdm, daemon = True).start()
formatted_dataset = dataset.map(_format_chatml, **dataset_map_kwargs)
if _tqdm_monitor_stop is not None:
_tqdm_monitor_stop.set()
return {
"dataset": formatted_dataset,
"success": True,
"warnings": warnings,
"errors": errors
}
except Exception as e:
errors.append(f"Failed to format ChatML dataset: {e}")
return {
"dataset": dataset,
"success": False,
"warnings": warnings,
"errors": errors
}
# UNKNOWN FORMAT
else:
errors.append(
f"Cannot apply chat template to format: {final_format}. "
f"This should not happen after custom mapping."
)
return {
"dataset": dataset,
"success": False,
"warnings": warnings,
"errors": errors
}