Spaces:
Runtime error
Runtime error
import os | |
import subprocess | |
from typing import Any, Dict, List, Optional, Tuple, Union | |
from numba import cuda | |
import nvidia_smi | |
from .utils.lru_cache import LRUCache | |
from .lib.finetune import train | |
class Global: | |
version = None | |
data_dir: str = "" | |
load_8bit: bool = False | |
default_base_model_name: str = "" | |
# Functions | |
train_fn: Any = train | |
# Training Control | |
should_stop_training = False | |
# Generation Control | |
should_stop_generating = False | |
generation_force_stopped_at = None | |
# Model related | |
loaded_models = LRUCache(1) | |
loaded_tokenizers = LRUCache(1) | |
new_base_model_that_is_ready_to_be_used = None | |
name_of_new_base_model_that_is_ready_to_be_used = None | |
# GPU Info | |
gpu_cc = None # GPU compute capability | |
gpu_sms = None # GPU total number of SMs | |
gpu_total_cores = None # GPU total cores | |
gpu_total_memory = None | |
# WandB | |
enable_wandb = False | |
wandb_api_key = None | |
default_wandb_project = "llama-lora-tuner" | |
# UI related | |
ui_title: str = "LLaMA-LoRA Tuner" | |
ui_emoji: str = "π¦ποΈ" | |
ui_subtitle: str = "Toolkit for evaluating and fine-tuning LLaMA models with low-rank adaptation (LoRA)." | |
ui_show_sys_info: bool = True | |
ui_dev_mode: bool = False | |
ui_dev_mode_title_prefix: str = "[UI DEV MODE] " | |
def get_package_dir(): | |
current_file_path = os.path.abspath(__file__) | |
parent_directory_path = os.path.dirname(current_file_path) | |
return os.path.abspath(parent_directory_path) | |
def get_git_commit_hash(): | |
try: | |
original_cwd = os.getcwd() | |
project_dir = get_package_dir() | |
try: | |
os.chdir(project_dir) | |
commit_hash = subprocess.check_output( | |
['git', 'rev-parse', 'HEAD']).strip().decode('utf-8') | |
return commit_hash | |
except Exception as e: | |
print(f"Cannot get git commit hash: {e}") | |
finally: | |
os.chdir(original_cwd) | |
except Exception as e: | |
print(f"Cannot get git commit hash: {e}") | |
commit_hash = get_git_commit_hash() | |
if commit_hash: | |
Global.version = commit_hash[:8] | |
def load_gpu_info(): | |
try: | |
cc_cores_per_SM_dict = { | |
(2, 0): 32, | |
(2, 1): 48, | |
(3, 0): 192, | |
(3, 5): 192, | |
(3, 7): 192, | |
(5, 0): 128, | |
(5, 2): 128, | |
(6, 0): 64, | |
(6, 1): 128, | |
(7, 0): 64, | |
(7, 5): 64, | |
(8, 0): 64, | |
(8, 6): 128, | |
(8, 9): 128, | |
(9, 0): 128 | |
} | |
# the above dictionary should result in a value of "None" if a cc match | |
# is not found. The dictionary needs to be extended as new devices become | |
# available, and currently does not account for all Jetson devices | |
device = cuda.get_current_device() | |
device_sms = getattr(device, 'MULTIPROCESSOR_COUNT') | |
device_cc = device.compute_capability | |
cores_per_sm = cc_cores_per_SM_dict.get(device_cc) | |
total_cores = cores_per_sm*device_sms | |
print("GPU compute capability: ", device_cc) | |
print("GPU total number of SMs: ", device_sms) | |
print("GPU total cores: ", total_cores) | |
Global.gpu_cc = device_cc | |
Global.gpu_sms = device_sms | |
Global.gpu_total_cores = total_cores | |
nvidia_smi.nvmlInit() | |
handle = nvidia_smi.nvmlDeviceGetHandleByIndex(0) | |
info = nvidia_smi.nvmlDeviceGetMemoryInfo(handle) | |
total_memory = info.total | |
total_memory_mb = total_memory / (1024 ** 2) | |
total_memory_gb = total_memory / (1024 ** 3) | |
# Print the memory size | |
print( | |
f"GPU total memory: {total_memory} bytes ({total_memory_mb:.2f} MB) ({total_memory_gb:.2f} GB)") | |
Global.gpu_total_memory = total_memory | |
except Exception as e: | |
print(f"Notice: cannot get GPU info: {e}") | |
load_gpu_info() | |