grouped-sampling-demo / hanlde_form_submit.py
yonikremer's picture
downloading only the pytorch model and important files, not the other versions of the model
17edf44
raw
history blame
No virus
5.17 kB
import os
from time import time
import streamlit as st
from grouped_sampling import GroupedSamplingPipeLine
from download_repo import download_pytorch_model
from prompt_engeneering import rewrite_prompt
from supported_models import is_supported, SUPPORTED_MODEL_NAME_PAGES_FORMAT, BLACKLISTED_MODEL_NAMES, \
BLACKLISTED_ORGANIZATIONS
def is_downloaded(model_name: str) -> bool:
"""
Checks if the model is downloaded.
:param model_name: The name of the model to check.
:return: True if the model is downloaded, False otherwise.
"""
models_dir = "/root/.cache/huggingface/hub"
model_dir = os.path.join(models_dir, f"models--{model_name.replace('/', '--')}")
return os.path.isdir(model_dir)
def create_pipeline(model_name: str, group_size: int) -> GroupedSamplingPipeLine:
"""
Creates a pipeline with the given model name and group size.
:param model_name: The name of the model to use.
:param group_size: The size of the groups to use.
:return: A pipeline with the given model name and group size.
"""
if not is_downloaded(model_name):
download_repository_start_time = time()
st.write(f"Starts downloading model: {model_name} from the internet.")
download_pytorch_model(model_name)
download_repository_end_time = time()
download_time = download_repository_end_time - download_repository_start_time
st.write(f"Finished downloading model: {model_name} from the internet in {download_time:,.2f} seconds.")
st.write(f"Starts creating pipeline with model: {model_name}")
pipeline_start_time = time()
pipeline = GroupedSamplingPipeLine(
model_name=model_name,
group_size=group_size,
end_of_sentence_stop=False,
top_k=1,
)
pipeline_end_time = time()
pipeline_time = pipeline_end_time - pipeline_start_time
st.write(f"Finished creating pipeline with model: {model_name} in {pipeline_time:,.2f} seconds.")
return pipeline
def generate_text(
pipeline: GroupedSamplingPipeLine,
prompt: str,
output_length: int,
web_search: bool,
) -> str:
"""
Generates text using the given pipeline.
:param pipeline: The pipeline to use. GroupedSamplingPipeLine.
:param prompt: The prompt to use. str.
:param output_length: The size of the text to generate in tokens. int > 0.
:param web_search: Whether to use web search or not. bool.
:return: The generated text. str.
"""
if web_search:
better_prompt = rewrite_prompt(prompt)
else:
better_prompt = prompt
return pipeline(
prompt_s=better_prompt,
max_new_tokens=output_length,
return_text=True,
return_full_text=False,
)["generated_text"]
def on_form_submit(
model_name: str,
output_length: int,
prompt: str,
web_search: bool
) -> str:
"""
Called when the user submits the form.
:param model_name: The name of the model to use.
:param output_length: The size of the groups to use.
:param prompt: The prompt to use.
:param web_search: Whether to use web search or not.
:return: The output of the model.
:raises ValueError: If the model name is not supported, the output length is <= 0,
the prompt is empty or longer than
16384 characters, or the output length is not an integer.
TypeError: If the output length is not an integer or the prompt is not a string.
RuntimeError: If the model is not found.
"""
if not is_supported(model_name, 1, 1):
raise ValueError(
f"The model: {model_name} is not supported."
f"The supported models are the models from {SUPPORTED_MODEL_NAME_PAGES_FORMAT}"
f" that satisfy the following conditions:\n"
f"1. The model has at least one like and one download.\n"
f"2. The model is not one of: {BLACKLISTED_MODEL_NAMES}.\n"
f"3. The model was not created any of those organizations: {BLACKLISTED_ORGANIZATIONS}.\n"
)
if len(prompt) == 0:
raise ValueError(f"The prompt must not be empty.")
st.write(f"Loading model: {model_name}...")
loading_start_time = time()
pipeline = create_pipeline(
model_name=model_name,
group_size=output_length,
)
loading_end_time = time()
loading_time = loading_end_time - loading_start_time
st.write(f"Finished loading model: {model_name} in {loading_time:,.2f} seconds.")
st.write(f"Generating text...")
generation_start_time = time()
generated_text = generate_text(
pipeline=pipeline,
prompt=prompt,
output_length=output_length,
web_search=web_search,
)
generation_end_time = time()
generation_time = generation_end_time - generation_start_time
st.write(f"Finished generating text in {generation_time:,.2f} seconds.")
if not isinstance(generated_text, str):
raise RuntimeError(f"The model {model_name} did not generate any text.")
if len(generated_text) == 0:
raise RuntimeError(f"The model {model_name} did not generate any text.")
return generated_text