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import os
import re
import webbrowser
import pandas as pd
import gradio as gr
from huggingface_hub import HfApi
from huggingface_hub.utils import RepositoryNotFoundError, GatedRepoError
from accelerate.commands.estimate import create_empty_model, check_has_model
from accelerate.utils import convert_bytes, calculate_maximum_sizes
# We need to store them as globals because gradio doesn't have a way for us to pass them in to the button
HAS_DISCUSSION = True
MODEL_NAME = None
LIBRARY = None
TOKEN = os.environ.get("HUGGINGFACE_API_LOGIN", None)
def check_for_discussion(model_name:str):
"Checks if an automated discussion has been opened on the model by `model-sizer-bot`"
global TOKEN
api = HfApi(token=TOKEN)
discussions = list(api.get_repo_discussions(model_name))
return any(discussion.title == "[AUTOMATED] Model Memory Requirements" and discussion.author == "model-sizer-bot" for discussion in discussions)
def report_results():
"Reports the results of a memory calculation to the model's discussion page, and opens a new tab to it afterwards"
global MODEL_NAME, LIBRARY, TOKEN
api = HfApi(token=TOKEN)
results = calculate_memory(MODEL_NAME, LIBRARY, ["fp32", "fp16", "int8", "int4"], raw=True)
post = f"""# Model Memory Requirements\n
These calculations were measured from the [Model Memory Utility Space](https://hf.co/spaces/hf-accelerate/model-memory-utility) on the Hub.
The minimum recommended vRAM needed for this model to be loaded into memory via [Accelerate or `device_map="auto"`](https://huggingface.co/docs/accelerate/usage_guides/big_modeling) is denoted by the size of the "largest layer".
When performing inference, expect to add up to an additional 20% to this, as found by [EleutherAI](https://blog.eleuther.ai/transformer-math/). More tests will be performed in the future to get a more accurate benchmark for each model.
When training with `Adam`, you can expect roughly 4x the reported results to be used. (1x for the model, 1x for the gradients, and 2x for the optimizer).
## Results:
{results}
"""
discussion = api.create_discussion(MODEL_NAME, "[AUTOMATED] Model Memory Requirements", description=post)
webbrowser.open_new_tab(discussion.url)
def convert_url_to_name(url:str):
"Converts a model URL to its name on the Hub"
results = re.findall(r"huggingface.co\/(.*?)#", url)
if len(results) < 1:
raise ValueError(f"URL {url} is not a valid model URL to the Hugging Face Hub")
return results[0]
def calculate_memory(model_name:str, library:str, options:list, access_token:str, raw=False):
"Calculates the memory usage for a model"
if library == "auto":
library = None
if "http" in model_name and "//" in model_name:
try:
model_name = convert_url_to_name(model_name)
except ValueError:
raise gr.Error(f"URL `{model_name}` is not a valid model URL to the Hugging Face Hub")
try:
model = create_empty_model(model_name, library_name=library, trust_remote_code=True, access_token=access_token)
except GatedRepoError:
raise gr.Error(f"Model `{model_name}` is a gated model, please ensure to pass in your access token and try again if you have access.")
except RepositoryNotFoundError:
raise gr.Error(f"Model `{model_name}` was not found on the Hub, please try another model name.")
except ValueError as e:
raise gr.Error(f"Model `{model_name}` does not have any library metadata on the Hub, please manually select a library_name to use (such as `transformers`)")
except (RuntimeError, OSError) as e:
library = check_has_model(e)
if library != "unknown":
raise gr.Error(f"Tried to load `{model_name}` with `{library}` but a possible model to load was not found inside the repo.")
total_size, largest_layer = calculate_maximum_sizes(model)
data = []
title = f"Memory Usage for '{model_name}'"
for dtype in options:
dtype_total_size = total_size
dtype_largest_layer = largest_layer[0]
if dtype == "float16":
dtype_total_size /= 2
dtype_largest_layer /= 2
elif dtype == "int8":
dtype_total_size /= 4
dtype_largest_layer /= 4
elif dtype == "int4":
dtype_total_size /= 8
dtype_largest_layer /= 8
dtype_training_size = convert_bytes(dtype_total_size * 4)
dtype_total_size = convert_bytes(dtype_total_size)
dtype_largest_layer = convert_bytes(dtype_largest_layer)
data.append({
"dtype": dtype,
"Largest Layer or Residual Group": dtype_largest_layer,
"Total Size": dtype_total_size,
"Training using Adam": dtype_training_size
})
global HAS_DISCUSSION, MODEL_NAME, LIBRARY
HAS_DISCUSSION = check_for_discussion(model_name)
MODEL_NAME = model_name
LIBRARY = library
if raw:
return pd.DataFrame(data).to_markdown(index=False)
results = [
f'## {title}',
gr.update(visible=True, value=pd.DataFrame(data)),
gr.update(visible=not HAS_DISCUSSION)
]
return results
with gr.Blocks() as demo:
with gr.Column():
gr.Markdown(
"""# Model Memory Calculator
This tool will help you calculate how much vRAM is needed to train and perform big model inference
on a model hosted on the 🤗 Hugging Face Hub. The minimum recommended vRAM needed for a model
is denoted as the size of the "largest layer", and training of a model is roughly 4x its size (for Adam).
Currently this tool supports all models hosted that use `transformers` and `timm`.
To use this tool pass in the URL or model name of the model you want to calculate the memory usage for,
select which framework it originates from ("auto" will try and detect it from the model metadata), and
what precisions you want to use."""
)
out_text = gr.Markdown()
out = gr.DataFrame(
headers=["dtype", "Largest Layer", "Total Size", "Training using Adam"],
interactive=False,
visible=False,
)
with gr.Row():
inp = gr.Textbox(label="Model Name or URL")
with gr.Row():
library = gr.Radio(["auto", "transformers", "timm"], label="Library", value="auto")
options = gr.CheckboxGroup(
["float32", "float16", "int8", "int4"],
value="float32"
)
access_token = gr.Textbox(label="API Token", placeholder="Optional (for gated models)")
with gr.Row():
btn = gr.Button("Calculate Memory Usage")
post_to_hub = gr.Button(value = "Report results in this model repo's discussions!\n(Will open in a new tab)", visible=False)
btn.click(
calculate_memory, inputs=[inp, library, options, access_token], outputs=[out_text, out, post_to_hub],
)
post_to_hub.click(report_results).then(lambda: gr.Button.update(visible=False), outputs=post_to_hub)
demo.launch()