bebechien's picture
Upload folder using huggingface_hub
fdf7bd6 verified
raw
history blame
13.8 kB
import threading
import torch
import time
import json
import queue
import matplotlib.pyplot as plt
from functools import partial
from typing import Generator, Optional, List, Dict
from datasets import Dataset, load_dataset
from trl import SFTConfig, SFTTrainer
from transformers import TrainerCallback, TrainingArguments, TrainerState, TrainerControl
from config import AppConfig
from tools import DEFAULT_TOOLS
from utils import (
authenticate_hf,
load_model_and_tokenizer,
create_conversation_format,
parse_csv_dataset,
zip_directory
)
class AbortCallback(TrainerCallback):
def __init__(self, stop_event: threading.Event):
self.stop_event = stop_event
def on_step_end(self, args: TrainingArguments, state: TrainerState, control: TrainerControl, **kwargs):
if self.stop_event.is_set():
control.should_training_stop = True
class LogStreamingCallback(TrainerCallback):
"""
NEW: Intercepts training logs and pushes them to a queue
so the main thread can display them in the UI.
"""
def __init__(self, log_queue: queue.Queue):
self.log_queue = log_queue
def _get_string(self, value):
if isinstance(value, float):
return f"{value:.4f}"
return str(value)
def on_log(self, args, state, control, logs=None, **kwargs):
if not logs:
return
metrics_map = {
"loss": "Loss",
"eval_loss": "Eval Loss",
"learning_rate": "LR",
"epoch": "Epoch"
}
log_parts = [f"πŸ“ [Step {state.global_step}]"]
for key, label in metrics_map.items():
if key in logs:
val = logs[key]
# Format floats: use scientific notation for very small numbers (like LR)
if isinstance(val, (float, int)):
val_str = f"{val:.4f}" if val > 1e-4 else f"{val:.2e}"
else:
val_str = str(val)
log_parts.append(f"{label}: {val_str}")
self.log_queue.put(" | ".join(log_parts))
class FunctionGemmaEngine:
def __init__(self, config: AppConfig):
self.config = config
self.model = None
self.tokenizer = None
self.imported_dataset = []
self.stop_event = threading.Event()
# NEW: State for tools
self.current_tools = DEFAULT_TOOLS
authenticate_hf(self.config.HF_TOKEN)
try:
self.refresh_data_and_model()
except Exception as e:
print(f"Initial load warning: {e}")
# NEW: Methods to handle Tool Schema updates
def get_tools_json(self) -> str:
return json.dumps(self.current_tools, indent=2)
def update_tools(self, json_str: str) -> str:
try:
new_tools = json.loads(json_str)
if not isinstance(new_tools, list):
return "Error: Schema must be a list of tool definitions."
self.current_tools = new_tools
return "βœ… Tool Schema Updated successfully."
except json.JSONDecodeError as e:
return f"❌ JSON Error: {e}"
except Exception as e:
return f"❌ Error: {e}"
def refresh_data_and_model(self) -> str:
self.imported_dataset = []
try:
self.model, self.tokenizer = load_model_and_tokenizer(self.config.MODEL_NAME)
return "Model and data reloaded. Ready."
except Exception as e:
self.model = None
self.tokenizer = None
return f"CRITICAL ERROR: Model failed to load. {e}"
def load_csv(self, file_path: str) -> str:
try:
new_data = parse_csv_dataset(file_path)
if not new_data:
return "Error: File empty or format invalid."
self.imported_dataset = new_data
return f"Successfully imported {len(new_data)} samples."
except Exception as e:
return f"Import failed: {e}"
def trigger_stop(self):
self.stop_event.set()
def run_training_pipeline(self, epochs: int, learning_rate: float, test_size: float, shuffle_data: bool) -> Generator[str, None, None]:
if self.model is None:
yield "Training failed: Model is not loaded.", None
return
self.stop_event.clear()
output_buffer = f"⏳ Preparing Dataset (Test Split: {test_size}, Shuffle: {shuffle_data})...\n"
yield output_buffer, None
dataset, log = self._prepare_dataset()
if not dataset:
yield "Dataset creation failed.", None
return
output_buffer += log
yield output_buffer, None
if len(dataset) > 1:
dataset = dataset.train_test_split(test_size=test_size, shuffle=shuffle_data)
else:
dataset = {"train": dataset, "test": dataset}
# --- Phase 1: Pre-Training Eval ---
output_buffer += "\nπŸ“Š Evaluating Pre-Training Success Rate...\n"
yield output_buffer, None
pre_training_report = ""
for update in self._evaluate_model(dataset["test"]):
pre_training_report = update
if self.stop_event.is_set():
pre_training_report += "\n\nπŸ›‘ Manual Eval interrupted by user.\n"
yield f"{output_buffer}{pre_training_report}", None
break
yield f"{output_buffer}{pre_training_report}", None
if self.stop_event.is_set(): return
output_buffer += pre_training_report
# --- Phase 2: Training (Threaded) ---
output_buffer += "\n\nπŸš€ Starting Fine-tuning (Epochs: {epochs}, LR: {learning_rate})...\n"
yield output_buffer, None
log_queue = queue.Queue()
training_error = None
training_history = []
# Function to run in the thread
def train_wrapper():
nonlocal training_error, training_history
try:
training_history = self._execute_trainer(dataset, log_queue, epochs, learning_rate)
except Exception as e:
training_error = e
# Start training thread
train_thread = threading.Thread(target=train_wrapper)
train_thread.start()
# Monitor loop: Yields logs while training runs
while train_thread.is_alive():
# Drain the queue
while not log_queue.empty():
log_msg = log_queue.get()
output_buffer += f"{log_msg}\n"
yield output_buffer, None
# Check for stop signal
if self.stop_event.is_set():
yield f"{output_buffer}πŸ›‘ Stop signal sent. Waiting for trainer to wrap up...\n", None
# We don't break here, we wait for thread to finish cleanly
time.sleep(0.1) # Prevent CPU spinning
train_thread.join() # Ensure thread is completely done
# Flush any remaining logs
while not log_queue.empty():
log_msg = log_queue.get()
output_buffer += f"{log_msg}\n"
yield output_buffer, None
if training_error:
output_buffer += f"❌ Error during training: {training_error}\n"
yield output_buffer, None
return
if self.stop_event.is_set():
output_buffer += "πŸ›‘ Training manually stopped.\n"
yield output_buffer, None
return
output_buffer += "βœ… Training finished.\n"
yield output_buffer, None
output_buffer += "\nπŸ“ˆ Generating Loss Plot...\n"
yield output_buffer, None
try:
final_plot = self._generate_loss_plot(training_history)
yield output_buffer, final_plot
except Exception as e:
output_buffer += f"⚠️ Could not generate plot: {e}\n"
yield output_buffer, None
# --- Phase 3: Post-Training Eval ---
output_buffer += "\nπŸ“Š Evaluating Post-Training Success Rate...\n"
yield output_buffer, final_plot
post_training_report = ""
for update in self._evaluate_model(dataset["test"]):
post_training_report = update
if self.stop_event.is_set():
post_training_report += "\n\nπŸ›‘ Manual Eval interrupted by user.\n"
yield f"{output_buffer}{post_training_report}", final_plot
break
yield f"{output_buffer}{post_training_report}", final_plot
def _prepare_dataset(self):
# NEW: Use partial to inject self.current_tools into the formatting function
formatting_fn = partial(create_conversation_format, tools_list=self.current_tools)
if not self.imported_dataset:
ds = load_dataset(self.config.DEFAULT_DATASET, split="train").map(formatting_fn)
log = f" `-> using default dataset (size:{len(ds)})\n"
else:
dataset_as_dicts = [{
"user_content": row[0], "tool_name": row[1], "tool_arguments": row[2]}
for row in self.imported_dataset
]
ds = Dataset.from_list(dataset_as_dicts).map(formatting_fn)
log = f" `-> using custom dataset (size:{len(ds)})\n"
return ds, log
def _execute_trainer(self, dataset, log_queue: queue.Queue, epochs: int, learning_rate: float) -> List[Dict]:
torch_dtype = self.model.dtype
args = SFTConfig(
output_dir=str(self.config.OUTPUT_DIR),
max_length=512,
packing=False,
num_train_epochs=epochs,
per_device_train_batch_size=4,
logging_steps=1,
save_strategy="no",
eval_strategy="epoch",
learning_rate=learning_rate,
fp16=(torch_dtype == torch.float16),
bf16=(torch_dtype == torch.bfloat16),
report_to="none",
dataset_kwargs={"add_special_tokens": False, "append_concat_token": True}
)
trainer = SFTTrainer(
model=self.model,
args=args,
train_dataset=dataset['train'],
eval_dataset=dataset['test'],
processing_class=self.tokenizer,
callbacks=[
AbortCallback(self.stop_event),
LogStreamingCallback(log_queue)
]
)
trainer.train()
trainer.save_model()
return trainer.state.log_history
def _generate_loss_plot(self, history: list):
if not history:
return None
# Extract Training Loss
# log_history format: [{'loss': 0.5, 'step': 1}, {'eval_loss': 0.4, 'step': 1}, ...]
train_steps = [x['step'] for x in history if 'loss' in x]
train_loss = [x['loss'] for x in history if 'loss' in x]
# Extract Validation Loss
eval_steps = [x['step'] for x in history if 'eval_loss' in x]
eval_loss = [x['eval_loss'] for x in history if 'eval_loss' in x]
fig, ax = plt.subplots(figsize=(10, 5))
if train_steps:
ax.plot(train_steps, train_loss, label='Training Loss', linestyle='-', marker=None)
if eval_steps:
ax.plot(eval_steps, eval_loss, label='Validation Loss', linestyle='--', marker='o')
ax.set_xlabel("Steps")
ax.set_ylabel("Loss")
ax.set_title("Training & Validation Loss")
ax.legend()
ax.grid(True, linestyle=':', alpha=0.6)
plt.tight_layout()
return fig
def _evaluate_model(self, test_dataset) -> Generator[str, None, None]:
results = []
success_count = 0
for idx, item in enumerate(test_dataset):
messages = item["messages"][:2]
try:
# NEW: Pass self.current_tools to the template
inputs = self.tokenizer.apply_chat_template(
messages, tools=self.current_tools, add_generation_prompt=True, return_dict=True, return_tensors="pt"
)
device = self.model.device
inputs = {k: v.to(device) for k, v in inputs.items()}
out = self.model.generate(
**inputs,
pad_token_id=self.tokenizer.eos_token_id,
max_new_tokens=128
)
output = self.tokenizer.decode(out[0][len(inputs["input_ids"][0]):], skip_special_tokens=True)
log_entry = f"{idx+1}. Prompt: {messages[1]['content']}\n Output: {output[:100]}..."
# Check tool correctness
expected_tool = item['messages'][2]['tool_calls'][0]['function']['name']
if expected_tool in output:
log_entry += "\n -> βœ… Correct Tool"
success_count += 1
else:
log_entry += f"\n -> ❌ Wrong Tool (Expected: {expected_tool})"
results.append(log_entry)
yield "\n".join(results) + f"\n\nRunning Success Rate: {success_count}/{idx+1}"
except Exception as e:
yield f"Error during inference: {e}"
def get_zip_path(self) -> Optional[str]:
if not self.config.OUTPUT_DIR.exists():
return None
timestamp = int(time.time())
base_name = str(self.config.ARTIFACTS_DIR.joinpath(f"functiongemma_finetuned_{timestamp}"))
return zip_directory(str(self.config.OUTPUT_DIR), base_name)