pszemraj's picture
load PDF example alt
925dd67
raw
history blame
1.99 kB
"""
utils.py - Utility functions for the project.
"""
import re
from pathlib import Path
from natsort import natsorted
import subprocess
def truncate_word_count(text, max_words=512):
"""
truncate_word_count - a helper function for the gradio module
Parameters
----------
text : str, required, the text to be processed
max_words : int, optional, the maximum number of words, default=512
Returns
-------
dict, the text and whether it was truncated
"""
# split on whitespace with regex
words = re.split(r"\s+", text)
processed = {}
if len(words) > max_words:
processed["was_truncated"] = True
processed["truncated_text"] = " ".join(words[:max_words])
else:
processed["was_truncated"] = False
processed["truncated_text"] = text
return processed
def load_examples(src, filetypes=[".txt", ".pdf"]):
"""
load_examples - a helper function for the gradio module to load examples
Returns:
list of str, the examples
"""
src = Path(src)
src.mkdir(exist_ok=True)
pdf_url = "https://www.dropbox.com/s/y92xy7o5qb88yij/all_you_need_is_attention.pdf?dl=1"
subprocess.run(["wget", pdf_url, "-O", src / "all_you_need_is_attention.pdf"])
examples = [f for f in src.iterdir() if f.suffix in filetypes]
examples = natsorted(examples)
# load the examples into a list
text_examples = []
for example in examples:
with open(example, "r") as f:
text = f.read()
text_examples.append([text, "base", 2, 1024, 0.7, 3.5, 3])
return text_examples
def load_example_filenames(example_path: str or Path):
"""
load_example_filenames - a helper function for the gradio module to load examples
Returns:
dict, the examples (filename:full path)
"""
example_path = Path(example_path)
# load the examples into a list
examples = {f.name: f for f in example_path.glob("*.txt")}
return examples