Spaces:
Runtime error
Runtime error
import gradio as gr | |
from huggingface_hub import snapshot_download | |
import os # utility library | |
# libraries to load the model and serve inference | |
import tensorflow_text | |
import tensorflow as tf | |
CACHE_DIR = "hfhub_cache" # where the library's fork would be stored once downloaded | |
if not os.path.exists(CACHE_DIR): | |
os.mkdir(CACHE_DIR) | |
# download the files from huggingface repo and load the model with tensorflow | |
snapshot_download(repo_id="stevekola/T5", cache_dir=CACHE_DIR) | |
saved_model_path = os.path.join(CACHE_DIR, os.listdir(CACHE_DIR)[0]) | |
model = tf.saved_model.load(saved_model_path, ["serve"]) | |
title = "Interactive demo: T5 Multitasking Demo" | |
description = "Demo for T5's different tasks including machine translation, \ | |
text summarization, document similarity, and grammatical correctness of sentences." | |
def predict_fn(x): | |
"""Function to get inferences from model on live data points. | |
params: | |
x input text to run get output on | |
returns: | |
a numpy array representing the output | |
""" | |
return model.signatures['serving_default'](tf.constant(x))['outputs'].numpy() | |
def predict(task_type, sentence): | |
"""Function to parse the user inputs, run the parsed text through the | |
model and return output in a readable format. | |
params: | |
task_type sentence representing the type of task to run on T5 model | |
sentence sentence to get inference on | |
returns: | |
text decoded into a human-readable format. | |
""" | |
task_dict = { | |
"Translate English to French": "Translate English to French", | |
"Translate English to German": "Translate English to German", | |
"Translate English to Romanian": "Translate English to Romanian", | |
"Grammatical Correctness of Sentence": "cola sentence", | |
"Text Summarization": "summarize", | |
"Document Similarity Score (separate the 2 sentences with 3 dashes `---`)": "stsb", | |
} | |
question = f"{task_dict[task_type]}: {sentence}" # parsing the user inputs into a format recognized by T5 | |
# Document Similarity takes in two sentences so it has to be parsed in a separate manner | |
if task_type.startswith("Document Similarity"): | |
sentences = sentence.split('---') | |
question = f"{task_dict[task_type]} sentence1: {sentences[0]} sentence2: {sentences[1]}" | |
return predict_fn([question])[0].decode('utf-8') | |
iface = gr.Interface(fn=predict, | |
inputs=[gr.inputs.Radio( | |
choices=["Translate English to French", | |
"Translate English to German", | |
"Translate English to Romanian", | |
"Text Summarization", | |
"Grammatical Codid I use T5?rrectness of Sentence", | |
"Document Similarity Score (separate the 2 sentences with 3 dashes `---`)"], | |
label="Task Type" | |
), | |
gr.inputs.Textbox(label="Sentence")], | |
outputs="text", | |
title=title, | |
description=description, | |
examples=[ | |
["Translate English to French", "I am Steven and I live in Lagos, Nigeria"], | |
["Translate English to German", "I am Steven and I live in Lagos, Nigeria"], | |
["Translate English to Romanian", "I am Steven and I live in Lagos, Nigeria"], | |
["Grammatical correctness of sentence", "I am Steven and I live in Lagos, Nigeria"], | |
["Text Summarization", | |
"I don't care about those doing the comparison, but comparing the Ghanaian Jollof Rice to \ | |
Nigerian Jollof Rice is an insult to Nigerians"], | |
["Document Similarity Score (separate the 2 sentences with 3 dashes `---`)", | |
"I reside in the commercial capital city of Nigeria, which is Lagos---I live in Lagos"], | |
], | |
theme="huggingface", | |
enable_queue=True) | |
iface.launch() | |